From 49c5000098d9516496dddbfa547ae7faee25ec0f Mon Sep 17 00:00:00 2001 From: KonovalovaAlA Date: Wed, 12 Nov 2025 23:52:38 +0300 Subject: [PATCH] =?UTF-8?q?=D0=94=D0=BE=D0=B1=D0=B0=D0=B2=D0=BB=D0=B5?= =?UTF-8?q?=D0=BD=D0=B0=20=D0=BF=D0=B0=D0=BF=D0=BA=D0=B0=20=D1=81=20=D0=BF?= =?UTF-8?q?=D1=80=D0=BE=D0=B5=D0=BA=D1=82=D0=BE=D0=BC=20=D0=B0=D0=B2=D1=82?= =?UTF-8?q?=D0=BE=D0=BA=D0=BE=D0=B4=D0=B8=D1=80=D0=BE=D0=B2=D1=89=D0=B8?= =?UTF-8?q?=D0=BA=D0=B0?= MIME-Version: 1.0 Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: 8bit --- labworks/LW2/AE1_AE2_train_def.png | Bin 0 -> 21070 bytes .../LW2/AE1_AE2_train_def_anomalies-1.png | Bin 0 -> 22136 bytes labworks/LW2/AE1_AE2_train_def_anomalies.png | Bin 0 -> 22136 bytes labworks/LW2/AE1_train_def.png | Bin 0 -> 35428 bytes labworks/LW2/AE2_train_def.png | Bin 0 -> 32591 bytes labworks/LW2/IRE_testAE1.png | Bin 0 -> 33250 bytes labworks/LW2/IRE_testAE2.png | Bin 0 -> 33583 bytes labworks/LW2/IRE_testAE3_ideal2.png | Bin 0 -> 60232 bytes labworks/LW2/IRE_testAE3_min.png | Bin 0 -> 60898 bytes labworks/LW2/IRE_trainingAE1.png | Bin 0 -> 61088 bytes labworks/LW2/IRE_trainingAE2.png | Bin 0 -> 109254 bytes labworks/LW2/IRE_trainingAE3_ideal2.png | Bin 0 -> 99536 bytes labworks/LW2/IRE_trainingAE3_min.png | Bin 0 -> 86895 bytes labworks/LW2/Untitled0.ipynb | 1 + labworks/LW2/XtXd_1.png | Bin 0 -> 89193 bytes labworks/LW2/XtXd_1_metrics.png | Bin 0 -> 99898 bytes labworks/LW2/XtXd_2.png | Bin 0 -> 65653 bytes labworks/LW2/XtXd_2_metrics.png | Bin 0 -> 78521 bytes labworks/LW2/lab02_lib.py | 47 +- labworks/LW2/report.md | 675 ++++++++++++++++++ labworks/LW2/train_set.png | Bin 0 -> 44722 bytes 21 files changed, 713 insertions(+), 10 deletions(-) create mode 100644 labworks/LW2/AE1_AE2_train_def.png create mode 100644 labworks/LW2/AE1_AE2_train_def_anomalies-1.png create mode 100644 labworks/LW2/AE1_AE2_train_def_anomalies.png create mode 100644 labworks/LW2/AE1_train_def.png create mode 100644 labworks/LW2/AE2_train_def.png create mode 100644 labworks/LW2/IRE_testAE1.png create mode 100644 labworks/LW2/IRE_testAE2.png create mode 100644 labworks/LW2/IRE_testAE3_ideal2.png create mode 100644 labworks/LW2/IRE_testAE3_min.png create mode 100644 labworks/LW2/IRE_trainingAE1.png create mode 100644 labworks/LW2/IRE_trainingAE2.png create mode 100644 labworks/LW2/IRE_trainingAE3_ideal2.png create mode 100644 labworks/LW2/IRE_trainingAE3_min.png create mode 100644 labworks/LW2/Untitled0.ipynb create mode 100644 labworks/LW2/XtXd_1.png create mode 100644 labworks/LW2/XtXd_1_metrics.png create mode 100644 labworks/LW2/XtXd_2.png create mode 100644 labworks/LW2/XtXd_2_metrics.png create mode 100644 labworks/LW2/report.md create mode 100644 labworks/LW2/train_set.png diff --git a/labworks/LW2/AE1_AE2_train_def.png b/labworks/LW2/AE1_AE2_train_def.png new file mode 100644 index 0000000000000000000000000000000000000000..4757a6253d1e8e3cb6f7671c21899d1b6a0d9cf9 GIT binary patch literal 21070 zcmdqJWmr{RxHdWo326%iDFqZzLP}U7OKBvOln$j~A+_id1r$j^x823$x=LE?xw2#I#*~w* z^8VQ6s)b{h9; zRdyR!KI3oXBF2KC`p4@=0^rr4S#fLv2-4$b@&pIBME`$u0KYzF!7sd3k7Fc&1HZwD zU{DN(Gb~xpL)l<3hBj#Q47`8hz z3(H9y%;msB+q(H?duQi7+4WWNNk5&2uQV|NR>LKx19sC+ORRi+DjO5!BN?w#N}Tss z-@Dzxm5v=Ffgdd_F0$RfFX`muG+yh5s&YV2&znDbQvmlkU(+RA)ZZzuJD1~+k=qzA zRYD;0=-iKHJ(mRIgcEF#rHiL+>`c;C*MI}e&d}y#6DJ~^pV)OcFq3De3Zospn z-#BtnkHsr1E2H_$zmIhlRe!s$z{be<9O-f%x3jy{GvaYR;*n{))a|^MTfRy>Z*6T| zwcSF~b5sjMuD_C(4F$tw(czF0qHw>+eM3%+Mr#m04XNp{G2R$ZE8FuMT5YffKCskHd4Am$# zODlZanpIHHi;hha^<9+|ISIMgO}I1}Ezp;dmsj;ArQJK43mU1KZu@qBzaEEddA+zt z)xaQmyxb~3JHJ+A#^cg0WkO9yCl9t+A!<2MrebE6l~?iSD%ckG-*xECDHNY+Ka-)6 zQTvKrmO{ca=lvlyoQu=i-ELSFy7qK1Nfe*?{{8HViYLGMYLJ_gnF}2e=3vRGVaObG zkd5v9{54=Jvzt z#>d@{*x34eJT7dt-S&s7E>70=59=bR122Y{Nn8RWP#Hov%wpGt%I{}5NLzhxy$-Yoi3%0 zW0D1bjQi=tOcq$*6R-hxU>ab>-YBKZ@53&WeCZTly!fzLwZ;)15y8&Lm^AHyE}wDN zWMyToI@{?84+~30OjWT82&j4ElaV@JfQ>ezeJLgNN<%}V28}Z)Hpzg9Wksw{lq*<{ zmt-E^5u?KSUg*4UCK_63(svh_yv7YA4J{1Gi>NzC*6o6YGn0A@{$F))1&ZUt^me-1 zsrGI8v~xDavPVkLvy)%J@1CA*HM+Ov*Bodx8WrE3D7O+IZsgk8-6ipD)bETJof(^~p@R z`AA;vTavzVE8RIC8pM|H#mwcoZi-wCzl5P-+Kkh67FjN)D`(W)24eN*^iLfNhL^C2 zy(?zVI|ED;RQ~vkT%ONd-sX?#iWIap@}9V|%Z+Qn2n+$RYJ&y(jZ98Hx-DOCr#MVI zNpeK6XP`^<8n6ZLkWL{dEZtkt)w}YyeUf^foyvypHQ>|#+CZ+ItmTh@eQ?#qn6Dr@ z;S#$Q#k!GlUvU-NEqW`g z=UiJ`0%+1jeMzrqRfj}IW{CUW8ai>_>yxC}bN8gQ_O5uXJNe}OZ%_B*4&AJm5ggI{ zmKxsUpMKSo7l>DAanu0KrRKMYM6Qp{!rU9KP%gLKPZ$hkerY#m7;$Ce{OZ-KVd3Fv zgM-R-b2To92g01v6J?g)^r=?+QY7ownp#^=g*QhFQ)XNlrDYTpMo#wE+=A*ZFI@K5 z$CRwC?Jv<&y$3gM-1vnk&(K0sz z)##yr@*bX+mWHc~OKW|vBv}xltgO5Y*{^0l z*Wys?b(yX`S!D;}_|oI3k=|99L`Pg){A54hBNr%i#&bhm&lUy*Z?0P*oxmibyd{V} zpZVqY<(k9kfnY|_4?`9om5$PB?@k8Niy%^e{Gk5EB6s!ZY(&??5~#M*5-qSIbIW}x zK8>?nn-z1Ub-Q_$i_se2D$$iobfTfJm6him@*Ilx?gc&lNn`0nWCzH6W_f?Z-i`Hma=QTcuUi3d=o4 z#s=WQL~{>?fgq!e(eF0v&Nr+|yNTu(W32cU6&1f;zb}vLS}Peu*Mc$NGjoL3S*U=) zB&jN+^oPH?Zrykp9bl@P(;5K6gXZ9O)klB)NrdP_KGVU8j#@=7l7ReR!WyiEI4gKqDaEBYYSeNDKP`l*+sYk`g@Jbj`!jkNoymVq>+|&Q`atP;{>o-$)X0-ZQz!&D{qSH+wfW22s`K7Zh|jB?zo^Z^dG? z`PcdRclU&ary?I4ekrt`YteAnQBhH8LAxKqQh>ko=`z}7-*}~{XfSErN-LqN`kjKF z-fC~TuhH?(=lf<;g)~0;)nG;~;*{F&fU(2~fkeJe%~wsUnxRpkAm~`1={6dl^g{!% zO%f3t+Fy^39RK<#5RjR>UY;KYAZ9*azyEatf$B1uswxc$4K?^mCp`Y(;X~rlw`Cre z?sLPMR(wUp#cpVr>(TqUv5_aA+{!Hsxnaqd8y-ujdvp!ZV zIW{&1QhhgaHXHeii_z|79$tVk9s#-DFpYX5b&cR5yK`B zOT;aIIVB&KQHpBs{}#rqP?Ohq@Wd@4EbA(&aeWb@@UO6@ww~*hg1iXc@({;qB9&LV zaZ4@Y7$se+-wnM%NaeN5Fw;NFxn(F>S|!eY`_^S69`1|D44;ZV1}0DVM`=4$n8~+( z9-i>vuy;sXS;~aS2QFH%@;7d=^=dmktHX3)S2t~T#No`( zEZb;L9!A8V#AF6NAp-`<={eD_RmgEG#S;F#QVTxpzC6}ike4T*v8XS7A6q%4u;f-(FTx1w6xb)iX z811o^tMIJvH=`)8+v-MW>h=49=A(uYD`lpKk&_xw$cIr1_lN#iFG1LQaxnq?msNuZB+3LAx%v2YE78yVxKIv)8pKG`3Avj4;m z9W|X5?xW+JspGPJg_e^&d;cjjjpr}P^#W4N&^0?c;Z^%vxZ4O}V(?q#*Nknql0wIV zjp@9&$WS`Hdj@@()xdDqjOnIs!q9@KJ4>6=n)zIn{rL9zVQ4CvA2HZszou+AFZF8z z|97V!?QlIg7kNrm!XvkROBE?!gxTt3X?E?KLuJ!{}^|+Z@u)t7#E@MrTJ`yf@%+;DLHPk#1w}nwy(3PUNBh;eSm@ zsS81BAXb#Eh@)^LTXaeOivvsaRIJ}Cb$3M+5ps1#+Ei%M?~qnRT`~EzXCo8j7_5&T zbv51MCoRNj0CJa`SHUQ5wNAj|7<(vG*cvQ%6A5$Jf{T(1Fi{9le*w~`#}T7_{|+uU zL?Sr}7v1szc+7v%v;W&clPvZdMaASyrSvQiI{?Gi|GU8(WQ$qOx)>8oLd6A_Pgj~k zIgFU+*W8M4!Sbzs$>*=6h?vfb;PQAe%l!E@S0nWrcPuD1wB2W;->N2}Hbi zf19i3X=T3TsBA)y`cd2~u~}#jF1-$a$B2XqvLdA*B_$<3lU@ely&_N9sR7ure(>9^2|#KYh8^E)^Viqc6SZkP1u-{0FuGO`^3)Xo zD=3aV-T4RT%4bt2X26**woY%Y~9tP=#_!=H8Atq{GUI6 zCVG$pKyDq<6Sp=JU>F5aURY>oa&q!r0RFrR61i}!-^C-LPQ5~O>xfpf#3Te9C@+=9 z$*0H48^4+$Vt7mrgWgDY?m-;jdJGB#Qk*1^9bxu#btpT6MLzaHn=Sq`5NgdF*By6R z?KP5#n1I}DyxOTa-epq|1j8;>bAhnV69PyUj(HL8Zx9^}DT_&s0k)O4J=eOH?9b8v z^ApicdU{Ujag;+oz&uu9bs*3ByXj!K6(9ja-xQu@0+7lK1dB#)xDX5Qqy@>588{}l z%$%@*Pu0+ABCXfzqlSH8HFCx{{a&vB=03UA@K{vmmzH9tK6={N*mNR*-!WmiR!^W( zwpMUqeuyZJnKgdyOL`6CmtF_qa$#HQqQvj@_cX|<=*8Hkv=xu z05Hb@FbMXv_#Kz%0>8JrN!SbGdgz1*9zmToe@ga_xS{2dz$d|7cdtRvU5HSRz|q&* zp@OE)uQBRQK9=d*7rj}(AE3<2_GXDUo=hM03@^O9 z@@}9WE6NP{O{ZMYA^PhVx`%hMp!#>43|Pb;K3qQyoBwk7v_QZuF!m;|9Yx#X+?B^{EdxXZ z5S$Ku5sRK8G5A#yjgQ2^t59y~BmOP4N z?)y9AYcc$3egQ_ozK10?csrP1qI-THi_*`r@D(oPSrr1^WqSm!UP#D!HSTZ;QpwaN zqP;BV*P=j@ATUNaUTVPW>E)^fk;`v4AG5uAfDOSJm^}S7fM^UJYfYORBd@iI*nbrR zaWUC7coP#^{_Z_~SeQoECrC)p1=$4gp>%#0!_4 zy94#j&mrkoZ*liPd)Tc#Y;5RZ5IFtFY7aisGZ)d4S^ZT94q;wpAdBnXdpT2?Cs zD~h-K&|XtNvmHsxk8%QGJ&CYq!40q@!<3xgznllrh}@R!Gl4t}gQ1^_?Rn9;3(e?Z zq0L9sUBlL3EC#HP3%KLYnR>A)oN=(ALf{vJjZGX!%g}?HgC(P613jTOvX(&T85{4C z!{d`?L*25&Dh=z3Ue58luH6Ev-@I-F_Vn5wgq^Oe%h1ofjUDcgXu=CI@P~j?VBdNU zcaIZtf?xNAhc`f;ks$DnRdlnKnqD4Y_ukEp6Mako`CS1%8;Vcv8{jo47G1eH#azgR z3z5S>+sNFuxvoUuf@UM&QbJT9_pKop z#K6*Kf-@Au}yZYKq-_Jq*cTw1_FE1TV;#&WZLvUV3EL`db zU|RxoSNpeeHN%Ga2hf#d{_R6G9tz(y@F4gch&V{*wQsxjg@p8noV)iF!ohpV9c5qP zeKEc4Wy7JK6S&e=`xc*!KH@cZU~(VineiN(fcK|o3Ae_x>H}-5J`=DEP%=cw&?_}W z>Eme05yz5}j9=pku7uOV83=$PP?v4MRBndHOx=K>Za-Xdf)8MF+3#l9;vNbmpPjiD z$KXKl8n74)Nx&SEKl<;#vZje56A~2ef@PHA4uPt)IJ#m5m9(quUIU!I%6{#KFP*cL zkN)6sG;o}4M#V!X0D{-0(hPi4?CL0D{~%xhOr3XLcMTYLE@?g7dw<>e1DxH_w?Qk% zO9>-u`E_~E+)hmPSBIjXSSM?gS!9BYHFtUhF;*lF{Aq3L?c2AL5F7@hVAkWa@r=f` zVMBLcmeYsCf6pMJO8VEY*IU&dOQ`8MrGe0eS-QQgt#87rF1Nb6nx~fk-aS#{ID1t; zO#*iHXVnQDIz>9+-6m7`PR+&26E z7l`5y*2k)5eP~u)3`K+9rYEH*1 zBJ&{Bet!ATk7Ro4MSC7~%Fd*zkow?+6$e9&SBMvg*s=`nV!5Jg4#Q$%vVjkO>2|W$ z2axq_5Iq8LCtkpm!KELhriD^AUN7Yp@%`_kc}zCSk2U)pf4}1rT|tE&0{Q|l4lEw z8RlR{_RmDzPV4{(-+8F==FRBjk4Eh8WaxB^BD*h($cXIG-@bV>hd7WN6RqC7F6@cH zTc$P>I)v_!R!(h7XfJ_%QUMQIbDdtX1H~Br%z%PC;Pd8X4<23(NsSRWOH{jlZTZSq z=$|JL{swRzAE@5huMSFMCJw3|`{^R*(g4}piQ@q;voT$xX;r=L!?co_9BY z`nab~iXgBaiqLh>1Yp+BoFFf%G9aNdJ;3n40O5cto+R{-DBx~I8OQfwiYyp}s@@By zy}i9Zj8(}FU@E8GWBt082UxlLiWj0EssGjTXXtLi@0c~n)FPFZmKzr@Y% z;!*eF1dwO?Q@5CZ{D_{qQ*VPoK$K)bLZ2+RFYFCmx4<=cJ+7fzmug$Bijcb9$D6wB8%%sq^9&+6W=HV7G77hzLh(*v#|A=Lb_6uOY z#mN}RpTD_H3=!air1rxrdT=QzFuNcB+7vU)uS^|q((@Gq08qZBKl^P)GF2iE!Y*!< zAmmBa#HPo9jd85NgRO{3XL1sLed$p2n5w|@?Ci`)0m~Z2glgQiJ-iV1?qzGD29p*W z^0u?54Vuazv}!g*>lP0^Di*7&nN2v^Oy5Y2EfAo9M*^#7el+}O_1hrh?_G}a`HZ(` zh}Mf6a&G&rC+;3uRfgX)&}cPwj<_Pl3;-B#HF*7W>~i6HdFmh(K9;F<-FV}*1TqbM z>_ld?QeWsO-5-e4cCx!B%DWdEK8TNNpaqsw{ub@)lcY( zn@oGF*Dg(Rm|n`K6PGWI3|KxX*?sRqGFB87-T?oa&BiuTU^#P)#Lv30pOKscPxN6j z9SI?xI_z_-TdL!nN{{oM=&*G3xjE@0iXtoR+inaCe_;unr~abcmTS-y|HjP99tr*g zt)fx74eew&L-_;?YU-8QFk?9FuYtB?9S}}%=Tzq?)5^^4wQRWq0cmlV+z35*mf&_$ zINLj&Y!R--Jz+&Hy=Z(RU;be~KC814aVAaTPouaox;=;gZ2M-!VJ&`* zS1>?PWVx+}>1OWKm(jBGf?st@JVosGJ(JjV;&(eVomKIa=*j(PkB^UmP!CN>J`Fl_ zbh*Tib@@@jc;yRi#IH)H%zt9WZCRL8a*ndWjfNe7L0-p|*}~4ehy~(DOfsdM7S8(U z!3NainU!o4Fj}qd(oR$g0^IhEe$SFItR72~$>6gDUEnd=MbwjYK79&hN@*tl5$egP zS1)UP^$%a+O9FCOHM=|6hE5V~t8m-Q&g^;jQB_Mzz+d|nc=+g6B?z{|H-sjeRPU+w z;t+^ctU8?jn$2hAJ?3nS)$K5Het0uLCTC)oP-4)gQ%= zN872e@m?&$^{eS(CeD&vreAcJL%j z=&X9?a~Gkkh8(h(Y1dQ5)uaS3@PdS}#mmwBO4Ss9&zxB)HZv;-ZE~M%MX7omR*i44 zzjjh*^}6GCciP#*Yw_$88$wx9ofQN)jEcHkq&I@Ii(#q58|+NC(*vo@rfPp$ap-~f z)o?WxvCKP)@Ih!uGT!QZ$X2Hy<219SN=|%un2`nC5M_)A>_Xou&o)ZTznF5VO)4H&UH!}&hx6TG*>PPW zAOYQ5TZdG1UYe^q4p%g^6K?#-2@B`dz$qh##Tai{!E zo2Ja}aIamu&i;$gz|ho`PoJIV1Xdc(2%ry%79;vo6-dpR8V{Y)IUluiZqZN+WKZ>T zX`3g+Gao|X>|b`{tJP6~&VQO4=>Pc9-g<#e@G;WivRlNxOvSL-Ud5i|#-OE*%Gmx< zx~Bc1{}rKXfg~^**jd90;ks_0i9DQ%xt7~Ahr6x>^RK zPU{3)v0b^})tLjPpF{9vWzMt7S6*`xUFhiq^VYzRsa116$}r^UIwH;Cnf!VI0dR^0 z*i+mn?Tee|3Ds%E>!jtY^gp-BR)HL#gW&s&N&i~9nW&+J4ylQ>r1G59GD>pBEUQyh zHwB$cd>Y~TE{An^{`B`>b!u7sS;tX&e+;In`P;}(I?hTqU z;a8CijlpId*qJfLcMpYAP#r3UhuU>=s)o5RJM{aI3Ffqmw?5ZoKo*&tP}Fmu9ILv< z<7V6TPWNK=ZCGBUO>h34!Kk^Gs6T#}KZD@bqB}vfglO4;)!{iHBR$i9Zo$bIdWkW+ z>ZL@)Q*D2)Q=9K?RVcB4EZ{S%i~S?1nwjnZE!*31XrJNW*s`gYpuiA1ICQGUgRFj< z;+=n{bZ(tu&7H~!9^FJ*=39L08a(l{JZJ4z{+gOwp~UWB{H`rfsu>Pw8aa4J;%+cb z2xISL9lTJqC{E_!L$e6tsk7~p2JFM&SK8?q$*ZE8I3NuYnxl( zO#$QnVh8A_w(Fi45$XyK(auEaK71uncE8Q0>9!3j3xCb$mK&lP&TN=9as)Cf0){i} z{R^j|ue9kyU$4t;U=fG$I_KH`7{xLNVNx{fJ(S{r4qNYBLOffQ*&v@jEOOTcdpmzy zrH1nTsRo$H&&=9sk^HagGE@7m4VjW&tEWzME)KY6u6N()W>Q`5X0?*O!7SRdteuw%g?iu9eGcv)e8+OEM@iwP08Ujm?{vv)sLi4z=QVZ~?D!R}aZ zDrKLWx8h62qQ(tET3Ujlmt16Cf;ykYLDgH|*RP+mQW0TZRUd>d?x(xs>-JMgzR8C@ zEae?PI^`Flxom^R?elW%TQJGnKUf5|5c%`0*1(f2JVzgM@8;cS)AO9K*0)s2-$YG+ z5lZF`WYkOi?0RaVI$>PAsYg3`>@k$@^j__Qjz`8O;UsW>t1YDy%4KWs3C5wsLbDc9 z1u|VXfzNWZ*m-N`!swe1kgp^Mg+La|awG2FcR0C zDd}SLIqmDe%baxbEP5p>JPQW*MPNyFkxb)&pw;goNf512qph5p+Ir##Pd?0s{+^QD z4N9<7(QY&uO1m_?RAKj)-9}niKMxz<`H*XS z?VCHoo^W!IbPmse45*@P{$#>Jb`JfU3>Lij z+Ptpet**%$W;zfjq;Hs)f6TCiR(Dq)^8E3+hZwC<}cj;JY>8<-x-=zMj)w9qvxcHQ?1z)Z2Fn*8G#|1ZXC(MweYUJqhD3=Pg zts&J*_j<1a;XCB+)1$NWJU?kg;c&I~`bI~+mW^ewD~uJ+ zX+{Kw1!i1R*z>Cu0RdDI5J>X?pH3S&W(Z)7>|H+2>a7n|b}PyE6I>Mm)oR$v<5W}I zWux>2FgWiFmN6bUmLr7XJfr${jUNaXD+YN~?GL`~p(ig#S&KIG4H7w8T-GM)e*0&1 z#?p;fNs=PdS*vZvZ{Ol4C$JLgB|LN61Kfox8_pPP18}@b?6a4GW&s>kV$ggQ)U1lS zM{=|(6(h84KF<^a?wQF#d-!v6N`ny)1rCKVlRl@nxj8$bqLEZ#H)_^sAPJrhtTaXF->2}$>a64S?()7rk zlk`@q`T*8vw~~Ya;pp7-4_3r5|V8EqF5jO(EJIQvy-| z#6S!KxWuT7x(2X9Pv+<^GXN7xSnAP1B#&_*fZkS4+q=6-SNAEjv3r&XBL+kTBoCU` zmK!RJv>#DBW8q&O%AK5lU>0&Ok@Bdv$hat;_csC?g~d~$-QVX;_!x$~Gfk6!@AO*O zf9B7G8(!+shiWOeF(ScPccuskhdCHp?EdDIrnU7&mwK_0oOhl*5Zu$vdFD)jHL*Q- z&>Jgg%d7wMqi4S9NM76ldIs%aad~kLN{LFKfL1>uoA6A#?(!V%7Ub{mPdIR)hi$pdW8#?n`wg&=)A-6O0aYy^E3><}pKVu^Q4YvT;orVp|L~n(H+x+^I`mY) z?Yt%1dCr3++cF|AG!<~I-;nwmuV*D$i{3@n-wEOA$#b#>>so^QDikmXF*L~sfcFf5 zM#Eg(f+WBy<3LT-@eBa0Zv#1U9R1uI&$Qvg75CO#k2F%j!O$^v`T%SCz@*55-^042 z1aD_23H&Hs{N9ukvCWpwg?|eS7>qVo){1%IW6tL;)e@HoevUI)=|`GbBfYcZb(Yxx z)Er8kku$*WB#&Siqix9)>pdIo8?5kJHqyYxa0J%?g=&yFLMs_iM>8!ae9#832L8`+ zGJ(3|0F3bfH_HJStseuDVFc##Y)K^Md`yovV9f1am<3YQ=PzC`5qMMX>YonZ!-1o; zkQ(91y6Lu|^q{91bl#l9aS5DCS}#7-Iv+bt0rmJ>`rY@V<$9@+Eki3zb=&?h8rbU^ zpiUlu(9O=tselm&K--&HU&C1z=F!y3AntOnklnpd68s?BE@s+A?{h*#Yi>=xg>Uvvz+iWOL(R$klC^5hJ-NS#- z@Q9AI{k0Lyh|eo^0HZwKd6iXoe^ALj{(6SuWp9#bDRN^xu>@<_ zI+07~Z^jcRFZgFNeQ_p==j%Y0cAESC7Q*nI8lK@1OQ;JLNyJNshi`I<$MN&uJSxPQ z1t~*hA?ZNyJ0+w03jHH2*`e_w{*MiBZY7KRfB1feHOr4~ct|_BQ0d};vSb`MK{eqMplLc)kbmd?zdJMx}ag)}HJAka28s)ZHP(<=QStT&u@Uyq0A6V*XVIttAoFX=*=( z13u=?_p3a^#WmIoV3WjHnvt3I zkeA8)RD0%Pvj6AegXK>yu*jk+G(1V^^y;6XJlpqd$1cuT>1`Ry6n&qPyi63;)+-F! zpV!!Ue4otQI>4^dK1ggK5u*eoA(kwsrPvT{R^w2{m?=;c69xWsQm5Wzl#bL-g70ms zh>ivOZ6oDt1n!gYJrKlxXo9s(ypJiaGcH)#4b$e+WIk10dDlm=2VLKs-(W){lnQiSTd(I(;8)A)tP(@as*cL*~4#LO2o z0_4XJaBz6PO)-`tbdwrg=2T8Mg_Rw4FjTp0t zj~787)<^flmM^JMjltP6wddkwn=%A#2l62BN_wrfPVguuknZb%*Uw(CE&O0x7&3Hz z@AuO6(8XYI))4I^9Mm7TQ}+||cG}BK5`Z>NY>X+CIM14vpW3PW>gBEP-twU<97{3; z4}7kqw*JJem~t}ydCb(-hW_TwtO~DR5&(P_L$SEmGxl-Y{#N5Ptw*{35-9SLIK3 z%WCVO6RTu`1bAXLj%l!k@-r97N%aTs;U+_Yv`LYaj%F7HQ^8Y+Un+)VreI}2c>BQu zgWd`{dEq#6VWXDzr|aWFv~Pc(jR7G#pZf~`0t=HAh|XWd2_kX5m#S{38%W0F$T(j- z{KBZm;747StE7bO@;kl>WQ<$6lSGo_hkMw0VIafOH%TO|(ID=R{^LNiAD#7O3qiOP zKx^L|urn8aQf)p`P;zDQuk?DrDxwKBcYQw4T2GH8T)3-FTvghfWF;mU?277tfzni7 z`NOF^fBqg zpor_h9_j?d8OxiLM1xt{pJuFmrLR8$<=!r^BD8<{<21%o%G-kka(?J+R8W{mCjDp* z0$3m42IvZys#Oe-zRL+pZr}ylqWY7i(f)sx#DC^b%JkRW56>E|`_6dhCY+axB^RTO^m=2V5^r!+zUmIk8&m8&Z z244lt>$0_Mg*#WCHe*X)j2x2QJErr^%(?`z5U)GyL?f0LZwY=bw{?nT>s8EM7=Re4 zBanel-Da9;Dfl(Q7t;WA)TxnG7Jb`V`!;SKnQy%9dj){lxa#{5DxaaYa2$WN6a4*=C}yw4xTKqkOH_14}d zpQFAeu<4oy2YFU5C->7LP90|PA&A2*B0M5?Ubx)IeO`PRU<9OBIZv=0Ktx|{A}H?exSC;0{cD4P?MI|n}- zAh)Vmy~Hw!Y`OI@FYg5HVwCRMiOA2 zX^dv8eRIKTq=5Aok*>{lh#*dy$-^;4hUcJMxapP#$CO!sLd+v4-j&msO%x`p3nPt& zF0(NulK|Z+xk^I9Yr+Jc^x#!C5UYjYF;QpIK(O~$rtALN1MPJYgd%66vctN`W~^@UTl`K@-~}bToYxJ~!u$bwNWkjo zd44}IWBsu@a14A5f|gbmhrp8xtX-hQk%=eT4mn{qfG$=xOsoAI1SN3WtD25BAd@je9AfmCT5F+ddo!S-=}*)usZe;xdaeTQURdO`Oy-7rau}I0@0vz~AC38! z8I^Wlp0J%+;&A%>!G5|h&q7eCW$4VpH${m8Pw--hsJaX>Q{6UY#0G{1HLL!%|DLoJKi9j?%O-MK)>)*KBj!FzC~Yp#aIrujdXX#XAzC#3SnY*Q1=cquQ$ zc&)H4&OWhVwm~Sm7dVUIL7jSd;ajkUL#sG4h=|;V#(K<4QJw~chuMDqG9H_feu{i0 z(>fe*@zf6ioLeMrbnzTg+V_xUd2hNt-pwn;p5RUBe-_NsD9JODSZh4J{yOW*Ecr`9 zfv-MfIJ(vEYLMj_{h`G!tJy>+tZ8q}odID3NS=4q;<{8wag1aEu@p@T?dA}5l_@QV z-$(+c=r{l)6!=$n+Y7LKQo!?Lu0JWW^#3^Z^h2&QDA;?j(rTK!U(%6`V=kTp{yKbo z^S+F%@q|Ej3Mm6Q%U^{0G@CBxo}oaH-p(F&cWTZ#C~0`pFF<|yq3t`A z-ONz)`YaDGbx4*0~j8p&#uWxhD8!+^l_XniQV!4@lRv6Xc7 zJV^*}JwM8Vg5Jr{4t-e6v`jlUiVyxSvsQR=XEy$=F*PY7XSHqN=$7}M)#~}|4bUtA z$@XF%!_GdG>H!^A7l=N=iV68oS*c_2Cv|jTedw27ILf8HKNt*Ug1pOAK-Q80f6PAo-M_@KRnSY7b zO#XLN7=6C-i!~zU!Noh4<_psNSezL4IhQm5uy&Z;?9EKdN;Y)jF575~wQjqzOy8{Q zz`GbNUrvG5cw~S^7PwTnTIGW)IDi0FV6lJV*=6ls>g+*$dY2qbhjEVe3eUe(yIo&` zCphT#-`3`30&7B#x~rsUG7o*7fgK~r{4deq88`Oo0$_ig`tS?QUnqRb-<6rkTR-q} z2H6z>E2s>&U}jpT8fqv1Ex!Rl|KvJmoF&;n3=6=N`AU)(&nmD6wPr?WT8~LFh3yV+Xkf*()3s&}* z_AbO1GHV=9m1bG8-&rcz^EQ>PK>~=$jF+4>$|Kqi+Hv{PFJBG-?uu)WCBLTB1i>41 zrUUG20?-?kP9{&#(X{V!www}_1$rZ?AHS1|%P$@b)nhP}maIj)Sh@95|NM49!&D~YrJ>LP_Ym5?$9 zlY#u6az{b#peKk>Q*?gSv8hXn^GDm*(*ZOG5e z$x#OUaz4c56AbeltLI;i7U4R8^Z-^ie2@M@^Rq<}39ppaCa>WEb!I-t^2oZA=lz#5 zc9)gHpf!mbv{&-2X(WB2QJgBABU>wbz|B{xzJb^4*zlFMkIiTiat3XsCfk3SPkwuo zQSVoQKCXTAj4t^0K+SpJz)IMFw4pu2@W;mpDZqdVxxeV+xzrVt{`D(y05xCM>wMcv zEe!1+(C+Ayzhn6+H<3W9*OdqpCpLzwopu3+hTGhH?0^7JmCiuA!lCd*BmG4prk_vb zY|DE%M?Hncs`~YnD_5eQI@wgjkkpG|9&kfRwBDbRa~Nz5=#x*?=-HU8R6?GvxRz&R zNY$MT<(B}yeOh`truF>-xQxxpE9CsxFlhzl1 z|Dhtom$$s2fC8Z00lLwNlSC&OJ>obq_PHi;zcvDB0ja5zA{X>s8JH1J!RKlIl9RIe z>;{AY4|JiE6M}GQL4#6(|NMtuNbd@hC-k#hlYBfQ!>{5$PRPyz<>>J^YFIadJee`n z$iGcZ|Gn8l=`R@)7b>^|)al0?K<@xh$Lp(jfEtfYP=6!r0~WLkRFz8(n6s*X=o=PD zC8%Bz5J)0Hbpzr8wL(YtvmM0fT|MWn4=08}K80ytWLU7RlhGLBQ7Dv4u z@N#fR@J40XVmg!y^6UldEeI;00&fRF7;pFQ0fnz3 z7euZB=6%-(_;)}_O}Rk~eWU_w;s?rb5CNbQLlkfSTcCXlL+<4E2ewNLL&SOkn8I+e z?OPxD+1TC?V`I481Pp%w2X=p#-kl3|8zL|MpF8#7P00+r&__JXSQuVsso-KVW^e+` z2~o`8k1&H{;u}!TkNHa%W`)RY!PCT;oUyPN>@dGDRBph%4s2$C$N?!Gx;qTgk-`1c z0kB>0&i|b0f1h>`*j;k1zn6m;RKvmUN}3+T@C)-mUYQ06zJ*y;lm9}216xFJ4f8sn zd<7A3{QdPG&-l+qKJdW*R|gD#0M#VLUQ(@qo(sa21~v}_$e@$9v=&jbKP;rXi}~(H zjq^UHsRi?y1<=m%v9KAUzIWpk>-xV|GFvsbf4auSP1pa{qfjQ$A#0D-a|yJE7nqkR z*WE4+6f)O++h2E?vhL^;KVp)q+X%-b@gHm_7PK6ABjx_!LD@yOee@%z{9Z+ZN)Bk^ zRRYErd~qaqc=v6~*Vmx48*^@^5cACt%r_)-9A`h_)kuP#7!0>o^4VGWH6;z)+zkl( zCE&te>jw;gU5~8IbC=b3(w{d)%F{6&xFsbeM!F(*tVM-rVgGh~#Y`cffa~j{6afZ5 z@C&NGe7V{MzSx23r>1IRHU$Nis`=2DXMq7!+%MSG@^W^o{>Ay{rEkS_N4a zPkOh#5X|>kK-+9)w=MWSLV9PXY~9s{ zahQf-@VOLk=N{0I|DQz#jGKzfw-$=C5sG_mdf)RGMf<-uMy_GS3RuNIe*Bo%Y%s&Q zhlbZA`1?ckKMoe)s~yz5Ca)gE;4@%TfbEr&W%fjrYl2qyfscgOZ%{7HR0@KI9Jz#N zQ-?>O@oEHgO66e+Vwg|N;E+8{9LiQ(10rMjUra9HZ_pN9YP%#a7tNbFYzvy`2QktT zgb$nD^N4L3jSF#bZwi8m8EEwDwdz6h|8?}=495S5 z4k9sv*G1eI%oO)j$IRv>WWIB;>EuC~@`)1}b`1vcIC>l=KSJVu>nhkuxB3AB7FHN+ z0<6JzwKs1vfF4FqeZ>Qe`4Gl&14*tBh~FDHb-?Qmi;iZC=^D;42em{@_f1)B}|17hg^wC8`j!@0260b5&O+A&3=9FYrJ0rxj1 z)Uws``BCbO5da&D=~7)=!?dZRO!a4NDtT=eW$nR7B&4OKF<&sCb6#fbSeH}(pBg9G zieql_!v9s;RqdOdN@@A%?h*ejmw9|7kn@|DET3-skuo@9+2hcyR4c6m+e| zPIhJxmO!*1dWbz-^(Kx~)VG#;=iUx|<%a4rh)^MvVk2i1?)$%P5(F}qENGzd{Mk$| ze|B|=5)cp&3~~-Jh|9qC*eDuD>GI;FdVZx_HZX*B@g(B>$>NB7E-8_1fVslGx*mar zY(WG6Y~OiPa2rMoTTMd@nh7U|&8|df{Bw-3kXlPr7YLri{JJa_I&MK1L>YLZoLCKo z=X&PhV@6IOBlJW47wR{srcCFT=J}=NO{PLLt(BTYS;RznirC&<9Rk!R zl<}y&wyey8kfJztxqfGou81q0c6Z3vc{*6*scAPiSkre~M%y4_$~M|27$4^C`w}OE|0+rW5vL(yOn<_uu!d(`L~jFI z&{!9bYA-?VVE0Fb4{l_1P3zBtxIvgaVDA8qa8fC5N(x(eD&>Hjtlg#CYjeEZ=j?5gdhq0d9UL7~Aw0iF5 zEfv6>ltGx|4agax+TbR9N_H)rCn$tFB>bLcBkJ~o5f~Uf_rCBfF^;}KZUy7D2bf5S zz=h>@(>&aDpjU<19(@x8el!1glLnEG17yYqykM!`SzHF%`^#YNzanpNXcFpDy@cg* zgygH8x(JoE9|#6d!O$>HEM zgEYh*(-+B3A5L~RKdhqja&2)E33$=6>F$y#VJ~^dP0Jwadv#OJTbCCsq6Q*I{S75E z_umL#3;{7PB++s9hjq}048S8HO;K`}qO!*$ z)veQ=TwG-MpNoX3GE@eUDv`V{lE{nyH(=zS~_Cgrp#fAR!^r2m;a|NQZ!QcMnoSNmzskC@n}xcXuNQ(wzeg-CaZT zyT|8ye&2K6bKcK;{(k>>WM)5m?!EVYuY0X)UF%vq_?5B@!EK7$5D0`oPF6|{0zvnO zK+xuJu)q=C!RaONN6_`9wyV0MrK`J%vjs%S#PyB6qpQ7*DJ{&x*~P{Y%ER%Li-U`e z*4owejf)^Br^Ej}gTv9;iZjYt+Zl|4`$ksB1p*;5LH&o8EtX{ifoLqrNlCo+__00X z`S$hl+06~Ihv7Th*Wyo%#5f7|w=i|da&I+eN1^L#HQzF~S(nlKo%@6a$+DnUXR{fQ z`eItQ%C_V#@um2(Rtjx(F$=B<;sqaVchA|?(;lu!#TPN(1$bNx`#a32JAVkQ_J~*) z*7W)8T+})Qn2@7GApRB;y-;vx5V{adVhE(!R2G5;fv^Sq|LDs*>C#DiueG0nJy0xv z@)y(M<+Nz!DNUEloZz_N&E;Xj+rr-=_ep!`)=u{q<&~9VdM$@z*!AA;xC|@tcUqR+ z@?l_N!rl^c-_bXKOZhmmmzS2Tx2GzmYFx6sj@Aa(T-Xikwf(LSlW|w>9E>+zYw#r~ zZNsaypwL2UpQFK)3xP!C-ej?+c35ERoxRJ(iyifglWkt>0a|vQQU*2$>9@4dw!&BK zp=XDyo6E6AV;Wip83~S!IxkH6=+ro8*z+Z57V1AJ7UASn0h3VF zc%IA9&;CK|=Bz*B?wh*iy!?Dc_i3lV(z3E;SHaOdEzYZxs-|cYa^6{&!PJ)&+~z@Q zYHB078mvk`o~z!vbqnp{3;EL*h>Ka|Q7=Ejdg;$Mc_k%{jxeg@rAU>r=ZGBjtfK)* zqV*pxeX7pRrGl<&DXc~HY6#y8hYxTqL&HM2W0S%6@84}_>uWgbwz#(^%b3=hc4r&B zc^#&nRoIOyD`%-+ogWW_Uy&RkkOft-~Sl0=UXle3+vt>CC#OVxGcq!%2-utv>N?Lil7 zbW~KjT;$_*U{=GmZktCRXf9J)R^tU+GEcVQSs4nkw)4L}p%py{_}R@-r^u?AKX9}@ z?6y<0YTFsXSi4zRSMI)Rcy*0zLT;n%cE<1Ks`g~cj@PUmpGx$tcE9l97vG~a8k@!T zP}{-OPmYLRzg}FOc8HBdYZ>O)6*Xx3UBD5p$Qk!Mzng0c9?LHboy*QP)74J8jc;on zEC0xbL+g|n85wnJU2_`GH(1@k^hj(cJT(ir$F7?WuCLr0Kroz@?3-I+)-iU9eD1NA z!cjekK55T)br9S1+R`#p^lXV#DOuD2%vU_Goo4fOxbQ(xL_~z^YNC5?eZ4-gMz?G4 zrn8jG%5n=XfBWo2VQjE;?^1pAr4uy%t5QK@C<`TMK+<&Jw(-XKR6 zd?w|@XaD#80EWet1V_S&U9ez03=hEdQXJu69YYDJ1j%K>9^y{8FSG?qOG^hhEwtgb za`jzaz&6Kvs|rNVk-Luiepknht2Y--H+JPV!|mDm`S=r#T~W*d=_%oZX)@R%$obYl zySLQMTtSqx{nKAhbQqx?SBRUdWRtSVFBiK_O|#qY&%n-ngxZ|0xStLc!ho!=o8@#93v-#ZH~=aAv6Qah}nrbu3a--3MOf zv2QAuTViya=iJJ5v{SchdwIIgjZZ&U_JvwR7r3&iViU>cr|OxCs`B#kdw$Kfe2%mE zV8Ydaw>fY~cxDp;91)4@fi&32F&qZEi~FaG;p3ZE5Y7cGr?kRqr?r7c2JSO%8&ef| zmidp!oj9L|fhcD6_d7hs&HnzY#|@wP@g*G_&oaT)MyebU z6h$NA3D+3n+iZ*zka>e#ac81qF;r1CyCFlH^Oej)0mn>JmgPruLiu* z!KZBZvH>~k?R9g7Jia{aXJur3$*xx!wZu%l(eLfHSyY*V$WXWs4k-ecf~M82R|P$8 z;OOKpuC*I46kPq`LUBBqyE)rX2jb;Tc4=v;w2HVSd>s6yW(I1s>px!U07vgzOi8-u1hIe>JZ^9@7KBseOO3g8=OR zY2S-&v+0$@^lkrU zAO=1WN7zbo>i(`1%GdBQJm9R~d(m(r8KFmhl<@sJK5wG1C8)703`0dR>8Jf`_0xnUpv02I2M_H)w3frE_KqCB% zP{G~}_$L**o4oua1eT3^&-0>lJ@W5{bw%}lVv*1;2u0jy)Vdy?qAQxgw%|1}6E z+1c5$sAzMr-0ibyb14GuQn$qPQ=iz)+p8@rF?B?vkK5M7Q-_ISiS8KoVGxigjszG~ z*h}0IK3cK*&T^p^)Agu8f3+X(H}X?5aHP^fPfkrkBN}YRyRJ8^h1D-?Y-}RZKjGbH z5fd|FQvUIk;jbetlHCgBpIzG=^gkx%52C!TcUmO!JN`*+; z`T{li36MuA$r^p!H=)9`x|UVJJ;>0QCUUBXH!*!__+TcUy4a&Nvmg|AjYcnCh!-zIVeEp z&By~ln23swW~>u|6)*deciR~0+_D^@EWrpO zEV(E2A{et6H=f^-L+%{mccazW8~=TpqS;G1I%cDUhH(Fiz5TW+wsE0$DAi9X^a;#a zJ$`Ts^W?7^QZ&nu3V3!KA+2DW?iLQC-RvpI8jHC|#6eCK@(2wRd?9a#pbvI&MOjxz z8a+#|~_h!l`7?kd5Q>DxXQMQG8(V=0czKVcn>@X>eOc_|LOLRqK8IG%Z zzi(8sDZE|Ry0rpP4XJj*a$4Myg}i%W#)D75CR7;H$6!$oWtA~aH6PW6$`*FXXHbje zT3U2eH0rQExOZcU@%|C?^bvFf50{qMB4UPv5uP5iJ;lt-_}q2A7D#M3;K7TTPXa$g0V?+w@7J;~AQj1hq>?o7M}c#+plp|~rUH_B ztAzd_?j8oM`A*HYCcu+ErRNBFC51zW-O;L|$4WJF5l4qcGc0oFmu3Au)^z?)q_%>D zy&&(NuR6b6@wpvNHT>D{N`b%k@})Qg*=0RQ$4!7nOwty1DvgfQmXiq2m|uOIt*#pp zkerZ`2yeac^+foxwsMW6X%+1?-tjM{gK1-cxy;HmN=R{Z_t-G@scX$#9}jSE3p9CU zhZlt1Mrdb@PfHxA&tY?+S%+{*sC2C8T#k5XqI<8*E}R-T)2SKs1T|DR2ztaS9iaT3GNJW|?CUUj?8dap$IoTXw?cA@XKQl`6{?`;PUPhg)?2h@V z54rvNwg&gjO_w6V-^xf$rOU|5N|^W+@CZgb5=6;6dXGPS0_?yxcH{rFx&EKV_|LXW z{qiUQdEeu~EDfIv98HROL7KQNRPY-FT{ZI;G#1YF+VdcNQYn}snn|V0fjqaEwA9}i zT;dM@hV&zA+OBGQ*tXmomi<2_a%!gXpV_?8>^$C|4$=o!FtsqphKdtnN>1;A-Ef~o zoc8uI6Mv*~bnd~xqe%zN&;@E}>p&7_)+z#1yda3uikQDI43juWnlIr%J>D+-TP6bl zU?GHCPtDao&GeB8zoKa)kZTJ)M{WPOZp(2wYzchvt2_L!XfA1hBQ$=>;18bmo+LWX zfBWJT35fydZ!BMD1E2?x1V6K%;409oD(o`@8Ffy}2kh>3*Ib!!YOmu_E&5??i0X$4 zwC2wXkI{aBL=C{@ToBPVfYTnyh&9X&;cV3QM(z;Q-T)~247R0>0>?&g_dkJzKH~w8 zr8USb??440Ja>d3+TVJ)zQh&X^*mUT<8_?Xr|~`g2@?BFxTyIb;?M^?(&3`#)}dxQ zjTg`>fJz3mjC_{id`=5eRARpRHz2#fjpYwsUtN5lcA0BN z1L-`6u^z|)UhC`UM>45kiDZJ@6Wkjb5u_vpOjqs#9av41coUO6U^}-tImCiL$V>Ye-1E8!I%(>*|sR zxSoCO8U(FzusRr(RKgyw*4Nho^MdQu1F#Xm(o5cV@811*=>iF2GsT9m$^!!FXG}~? zCV+Zm_wJ$6d#{5|rVl&(AZq{|(sN_@P=*4p>)L>B|F)|jU`QmV3?YN>z@5u4WMaPo z=bx{N-Q*b5!EDxtGAIO`)4h;81%LyQKhS@tk|aD?b;Ieqj|af3d%TEuWhHbb7sZWv z0W{`%v0asLdQr4);J%5vuMdI%TV-wAq2C0_Qb8;?sXf9!w`23h$$I&nwd zX&3`ox&QgU;^seFJGhRUYoCsjvw!O`W^`nv8H^MH5hwiyk}Se4(?o8tmO^b`}1EfTj38rYM4S%w5L}fu!KdLegG&>f{K<$my}3 ze4mMeG~|_P7;4(Wc>Xo;_xgHa)bA6*iZn-$TVhkWyECUJxmjwNIXS~iP*>q1Y37=& zanef*W94MkNT7?o7fzGf@(8M~UO*)#6{)rL3aS_fO;t_C^9EeM3-3nmwSedO~K zUQ?2eG5RxI%1;e`hJ7Pa4jhJ=Z0?#L!l`_oB*-y9AW~@HcJ^l5XO^L-41`v;saRPm zIFflU(zZU=3|$~?$Abg>DhsnpKVPbg8^oV{00eVc297B!py4_k%in12o*Z=x{GM%Rgh%*_9l-U;=c!md1ti6u3ly? zsphJ(z@;bo_?z&k{Lx)>2=QYE|3}4s{aNxZf{bz(^2pBb@!2eq@Vf;YLcvRw4L-** z!5OO%2o45GGw~lWPjTi#seV%L#g0EZ5_xtDrkQd#fQkNyhHH%TgBgBgx1%Z`vJcz%x40=%ZilS2fQZYEdL> z6!+}8&-<~kqO0RWQC;@5_rY}FxFk5v``qV6K~Vt}CqkaiGpp(w4mxBGoL{|UAZLE0 z8K|py^p&B(NV~6%7}x-M&~xwzuRFMN+;Ud^4iD1RBK0sK;;yu4Qqu>83=4@*xKn@E z=thoxF%*aRFN0|+1h(3SyjUW`W#LS_55@p@&wCS0r>9`moxPS*Utdpg@l*m6V$8_k zU;L$FG0^(pGZl;QTkZAl+i&3r$H^C-srvYkX2C5>en`;W{+>DB4Nt``4y8R2DEkwQ z$)q$(ejQ5I~CYNyN2LmRFH`x=jIZc$uanNC+{$ z1+MkOm^BD9f%b(XEriw(#O#A<3hElOkf~(qdl$al_te62l+Yox_5h;(aj~mjY8I@3 z!(L5h;8IlhB*384masBlTX+ES4PP<^xhjboEmJXrD+Z}B_&3|+NfYc{`OeDZS-f^N zv*d!%a)2vjov9G&2wnH|%n3L7$YP;E_Wd!5aek>k^Qx3~bj!AQNhGI;j|OQYA`wry z2ezOaTV%YW&=Wb9-Tq`e2(2g=9(ndl)U#A9h)pG*)|@c;7Tz&(H2pjNKnB`Ki=XMA zzZ3oUk|*GjZhOh(3sj`l+y&oBbOkX^%$#u`v@sz0IWC7?5-SeQ z-J@o&I3snjAmXj4GnNt`yqzz3I#lujtq8S3#0sZl=oH4=r;nUDj53wk0kcL(Bl0NC zl;mX^8szB*Ok!()V3y^!uY0#=QwIUmfV6?tPI-696yV{&p2(h-$^_)Rd(j{%$_)PEK?8U=kRY=E@(Je* ziN3PDj560$HGKwuj#ved<2Tj9wsWJR?gA>z0LAp;w`L#5MYC#kS(c4@0Lqs3J-bZ3 z4zI1hV9aCdkrM}s>*QV*xJwiR*Jl*q(9n;1=eZEfbTsV($n|kU^(Nn|azO1WB?@Xh zc<`VWq^z65FhDi|;D8iy1RtssLZ0)1odv7ejpkA5vW>}rhspUxWfPHS{0Bbh7rW7q zHS(MUG zczoPTF_4hz2rzD&7l@n2uI_GLzw5W5pg02P7Qbg6dvhrrfQ`wkzwEj1>Ez_}M+|S_ zgL}o-Qr5@W!tRyIWGA@fc;o~P?=W2Mvm7Qkn)6SqMe9XGo%Qmgp8h8B+9gu&{)0Bc zl=&d4{YLATiNN@XJRnv)!0f;-%5|mI z$~dgf^gB!JI(f)jr!(bx6)HGgRW!|4r;m&44BrwQsY*s!&!kcaxheL*8<2$(->>rT z0DM}F%WAI6YTw3qQ8FKNIva7d;~vlF5bu~Q;Id*3sx4k%ff?oePFrb4D(tk5H^)`7 zloN+8&km2*vywNAZq8$MXfT}Yf$cUT`Y)_2zI=ve_Tv}ID-TloT@4KJoCQ&dx84z2 zkOVsvRSw!|y78TPd)N!gVP8?}1xP57y=II?pZ@@MNm_vD1r>k+fc~Q6<8#q4umD?S zfkKoIXwX!Dsrt%ei25o#z`p%@L{u-KLn*5J`}ESG7t<%%2p+dG)GQdv$#eU#8EZIy z&cJpc6(YW^$rfySJaLD}UfO_hS2b&4!PLUse60j|lebiEX~~bRwDd$Q1Gh>=ZKX=j ze1fX9#z1hoA$<1wD&dhF`W53+-`IJ`<2;=zLe;1A&ovWSmEySEz4{#T)L;Aw{^=>Zg>T(USnJnT z4aPc?Cx>u$ioJckM}C|)ydTioIBp`IgyphK5>yp2+$Qb?EX*)B;oU#QLg`|LrG3K0j!IP;_XK{3c>lCB{RY{dvl&dj)pOzO2T8#WtBL1_{D$kWZA9L_ToI z%5Y(5Dxv!>eO2${Sb7O)f>K}|a&X0owDrIj1g%#cLzvOA(JTN6BO$~>PlDfTlie@# zfA{K*K;$u4Bm8c*Ib#6)1~`xn6#H(`YRJlOcSZ6(Lb7S(Q)x9p#PQYdGk2)pcq}*1 zio56t3`1}?&22+_xyHcU+%n#fhFHAyG*+s_RF1suG01C!j2TVN*>1R&7)^xpKH85J zl3p;#(YxCZ#>W(-|M=Q)%O3|60*1Cn-{27ht;R0e!g+(>c% zzef;Ye?Ig4lqE{*KOynYXesxu8BORqn?&d0%PlvaW^1*rpl~2P!?y8D{0vGR{3PW!{gWHB zg;GuR*ECZHttTVcm~1Jz#rkQLj_OTOVG>5}HHlT(UT#e#Lw8si@jRil7G_OR;!vo{efYl0iQ21ty2>E@V+H;+F(% z{W&8eWPMs$(1VY)ps!(4BfT?`YQS_d>M@OMG2a##(~Kxz)z+Iqwk-LNH?fPPfYbjt zctBaJ2?9^3ZPG|(m{~u?uc2Ym^(4%lCDl0yR>RlpsO;Tkw*_N2_mUWDX80zz1LCcy zR40E{2x?3u7>d(|0Rzo7vw3ew!z=z_nCY~#&S2w7wVy+@qi&gXTTTu9bJgFP0hVQ9 zq%RcyHXPupAr9oZ|B_0s(ezi__OM;Cqi;pk^+=I5f{#)}w8o#oZx2J!dbVEw1fTFc z8XRC5J4wkjTyo|bSjTAZJR(5_;-FM*#;xb@ZE_Wo^G~By2&G!_gj2~6JuT~Vz^J)t z^%qBGb;&dC&}mcS(i*=v#x>-+E>fi-4ieM&v`o?9mUj|;-`Z$hG#Z}KvhMO>M-Nf` z=vHH+?Fb~=uUxkQPuT7|Wp4ma6y`KKR*!2Xt>FwX=8=*pFiX@PR+rS1b-H!R9uZ9% zX;?pws{`6Y|E3K}M@siKpzjIN$q6SN5SKm z|ra9xdaIcodD zA^7^M_O6*-9@*OZE&a5lj&wadd0yKKK1(c&r|s~IRaEM<$p6r()d;vhAD$22@7Nmv zNJu`)M2@{!K(+>h3-@2y-jW}h+LtUpA7IjLTIQ_~dzA_n0bPJtvi|t`edrmU*7Tl? z4l}^FCTdz-g!jH)O;V|C5|TxH8P>zE*m-q_>)soHaCKpw5Ql=(aOt-V!QzB%LA4uK zpLoFiC%oMVEFyBWBn z_L0#Gt>kJa+NP80JAX1414-Y{zBq}B*6shD_US1uCQcf#o?&&Kx<4ArHSz8mldi5! zOyo4v+autZ^;GM{5%NB_+nXwNa23n+1hhI5FIBj8xlvOrI zV+A17mi{oDj9;rV<3ul~a-F}qo+P@ycAf5D?d0mG)?5PyVE1^g;NIU~v@e<`t*SrU z1@_*rY$eSMeT{2B%gSLQBCTixPO-1R$3!ZNA?sn;v|K?Kc(9D!?OVb+FKDq-bpWX` zb+-nj4_|eWIYLkmU+S6UHHF&^PK$qL878-OC{~54;W@dV<98Pkc-1~vmF;gIwsC99V~pbpzMFR1h^7w_CtN+@x{1Tj5uFiHbga{k=CagfXrW z3{;%5W1CIZ54yr3w3q-%jS^70k4#>yYVbfkMyYrhIxUf3D5DqxTlbWn;PRz;Y!44t ztX4A_KD_35H(~M!SYn*#`0nL46I?@6Ur%G)SYqZem`oMldIR@{uSIDWk+z8sJitl@ zzz7Hj1OWH;lLW_p^f_8$e3{Iv!c(a~R_h;u# z-j3e$cM>xi7Dyl5Qv^xZKMwA2d;LZiek4NSbVyxSsXGVO<;+9j|xk^!d zNm_2|4$3_xB|0g#I$o=!i7}btfhhYJr*bEg0l_Ep9_|i5c_k5nFPSTfn+{8QH|-w2 z`$#K##{HU4Cz`i#prI;cnj_~7v8$ohS);3dDmiwBnd)DKETZF8ogI8TYSv-FLxdgm zLC|~px!yzEAE$TNptA2u=+_G-brD{rKrf@MH;oQVI^MXYRY%a(%QT>>5TSr{J5n0k zqwzB%f5&LN(XF>IKexls;A+$%=-59&m4ApU6*=W~liLv%yR*H*KT{dAj*mC<4ck$$Y1dJjgw%DuVei!BCE4@+}^|m9qNs~r>oXG zQ4fv$trAse1u^wb3U($QeWHgxWRcC)+VXb;o=S=9xW%W@OOLvJef7G*9W_F$_m5ha z9sw^~%lim_vCYYeViY8ziBQ*vm_J-DGTx&}!)9jEqgvexm0ll1ZP!3pYS zW4W|dVXF|TVk|H~Fc`r0B;?HNU~%}RR_GL#eW3GO6|Q%@jhEhN?oe~^AQ2lISBJI< z2022>-C|d4+CF0aF1w$_2~;pQS;$DMll`{*d0$~+S-;=Nc&KZxxdxmWtv8llcUcbp zBvpVT`}`Oci`~enF38j$7p2@M=8~*ZS8jM_>yL%)*((NnPBNWkbus>h2zW(=`L}@f z@Qn*^d4);)0Q-|Evp`i<31)IUFzbKq0B!SdYOBKFXJ8t#|8Z4!CM>a=clp}K7Liff zP7MHrwcWb?12PfZHSxRq;Z$xK1bfqk1Z4de9+6GPC9QfA#!B6qBX>ewK#Zm6tP0CS z2qsiuZw`dr9Ez>Zi^zFxf1AR7Qv?`Ue*5X4fGutvz=9BHh`>C&PB&_0?YG$Hre+a` zhApPpZc+s(mL%PH^DuyEFi&ak)@3m8_4Rl8E^8c6VXw z%{2&mp}qUV0(fIjjcqrLo)D^}PBXRbzt00gMO(=8b_QZvDZ(9?^qfK85$1Ce{F!}y z!+}nk7OrZ_pfCTIyG2D5;mzxBVN~pJP1`Rw5Yox=J{6hsvDg!_JhHCq_S_S@p|hMl_mU?ymhSClSo43e^!~VFq&xQ zwf0Ja;j#ZnA?n;f)VZ-Ve-1Rph&c2yF#3OtTjt%E?#z-9(KpVfgDCtd#{sf&(DlKx zEwtH%j{!=14W2vHHJeryxCCb}2{)e4)#nW#W~>LqodLIexOKs?e^mOd#Z>aSRfH#^ z|ByQ1(bZblFRn(K)Cah<1F`^d4}EKxb@IEDc+JZE2F(-LZ&TA(on13#e1bTuc{82c znj{1`Gr49I1-% z&($Pv<$lqN{7U=DRHh`47b>D>=}Dd|-*v+$E9_!XI$e~e2b2W|fST_aP>!OM$AG0{ zbFO>cP4?EjXkq&#-iRU)$zapcdd#_Ld~7IgicQBXXc~CObx20i4BIrB8Fvn-Z#eZ4 zuTZ*Uj;2fJP%0r!P{XS|-^g=Y&xo}J5}yj{L%>nx0j-zU`Fhr9mI@6@BRVpwWmJH; zxkf&6pj-%dU(e*hje8*C7oc02HxfzXD0Ve{cxwU1zoq$x?HK(Yl`!#v3yBc1+~6Id z^qw#>ugli$0~Jw93L)YPMLEdD@n#nPtOvdMDkWf^VmOTox8Wj20SSB#LmQ)cyp}z2 zy5TxymZ2!Mw7&x=RgD4O>ctpGThV_cA`$d0UyOY%MO1D$@76WUTTq#1a2@SRhmW)q zA@J4(f~kVat%ImQ{$N>%KcH zuc$bZBJtrF5J(vSDQCt1RF3=*9>mVcsRg*XW{j~BzB)Ak5Vh+1mYp@eKfTk&1G74* zc6qH~quvdRj!5rOCW}8eZuOezE{vlj?QRWiT!c1wBW83xy8GQ0Jgnulh=qu4W+w*e z%IH{3WkM=L!~eNWe#F}{l&%sycCI6$5eQzx<6Rs76PH(R(u&mp?d*jj!E3y+;79Twzj?|(UdTrdL+pTxNNRWyaQF<9|P%Szh7|96;nD672W3?4_^Fq zzMVmT)O+B^d-kJ^Fs@}gB8)~kVzOj$?OKXT=xaL4_k&;xB9qMvZ{wIuAG>D~KsNN3 z%>sJ9QIs%Q)aU%kqesO8U=6d!Yj$ckIS|qH49B|&BOulU@|~ni#qT6XaX=!yIoI+5 z4NgccoPBiUnvtH4DPjr8zw_fFzin?reSJmRDy}+70H6w6y?YG0I=So{lQ4J1cj{JG z`PUu-wq?MRreHYdmnh&&)s>Z%$#th(3rdCTEO(5KcgKweH*a_(zZ=xaMF8zKoxsB+ zZ>{4{N|F+cm7pXim{JHOSbawSh^XY`A|QKI0m8-+lx&S2Ex+g={&1_u_4z~Rx|s@U zp8rGB;C(b2p%NAG?dL4L^!i-bHt0dHPrK#|rs9%(5n=95o<%BgXeMK}h-I2!gFC0d z*^n-@Q!NQJs3ncp=XMsBV}4{GHc&FY{~hhvbo!g~XsfK>_GD`k#Y&1^9jP}Q_6ePL zh+PjZ^u-1Zai7FXv9v6y$I`M-7j4- zNFpMRCKdWo9Ih(Ra)0QT+49#J($m;DonOnY8;`1fH(?=WYeZ-)C_rU|-jq=UW*JD^}xf)eHb%>5;VH6YBF@KbY}HTtXd z+8op>63dwgRAvo!ym=QkSqkLrGO0g!eX6cd;E_b@4K%|x7&<1s)>2K76DuruymsI42e#`5eqe{ zS7aCbSg6fjg7NJ&4=nB}(ePJu^}4>K^dcoqMiIYz7F}#}ph+Nr?F@s?0R_10J6w); zU~t9kWw#X{fRRTAF_Pf2KXDdje+{HnK}P|z67Tzq_Auft7(%$=!#<%(FwBNptKEp#7#B?v2IWoOkf6nk~{-5HwTi)*v^xRbTqt1sD#^ zTOm{tN)BZW8L@N;_#g}YGvs(r1|8>_xWnin+`aJGIxNh*dV8vh)%8QCnT_XjTFsGr zLY7Ty>mMDmUamKm4L?ygUuwz-UeRiJqbN5#LKimk#&>_0!J%^Ikoi{Fc z6TcJ-FmT%FcGZ+enG6(t-XteAWu-BfT@aEzccT?k-LCtX8PSw={|$;7Q8gf^2x6@G z9oB70J=RTR-nsqRo-+k*L1Z&6ZVw8T*6ABseGX-;%Zg9U%Mu3htk)`JUcm9l@w!{l zO0vDSPA~AjN0>-6z8mNuXakU)R;vC(JwcVgrgwmsu*$#5Uo$pZ;>V**fl~JtAq9Y$ z#Ca!qD;Sj%km}7nctyRjFAOlxyqmdE>O<6rmri75g4D!x5F`gZPqd(;K;lf%RQzl_u~!Pr2I0qyxv z${^pUcWCi{cE0MmXAcZs1?PGmQy1oW_IoA$vonsT=#!3L!reH=N3fAO4zRVt4eWpO z&131j>fsU%FJRE-u8lCNdGl*&s1s zWS~ItrFvitZE8Xskb=`cTtrt1r>UeYg%be!zywUUAqqwV)~B2QF{cNF=%q38;V!{6 zFg|+c3rld}_TxKh?%w!Vs<-M-iKI=7$pFZo?Qn!o?2DURr))*4nunfMvU?XqVa0o9jAw(0e>}0~qe4xWSiY z9f|b)2>0Wr? ziXxne9WEP)4A>$%)P&hDUnpd09&M!^kRIpdXz@TX^;EN+_S4(~<$HZ?Vu1m^mW=ol z65}{FYpLO!$!j-qLC1$mR9+zq5L1O48Xc8906vVc5?QQIylY-w0WK|9^|zRs#?|^Q z%=g`$ovO~=nzpmo*z(>tvw}zmkLm1ft75Z^Umt?Kj`?+XV{-FZVfIga^$fNV<6XWO z%*eZ|sPv>*Xo)$^Sj+%21^x4FE@r9bHd6ncLQCP2UWJ&R$~&dN+dt4&iwrAUyeZcK zKd^=(NwaC6-lfUY1gHU|!`Ux=ywNDB`Gv*$@o{qsto9VYX9u*0CHV=x*iC+kdIWBO za=NybYLwuWk*k&4j$)IA$s)B{xWVtVwq|KBmpb5Xh)qva8Nuxs(<|2YAgRe~66*#o z`z?Dz?70s*NU+$Qot@1UwR}XRD=nSt)=7oA79c8yXb|Qt!OA+FX z<*s}O!}OXUp~ty%^ZEK3BOjyV)T7*9D<@Yz0hQ~a*!a-Zvw6wX) zX?{-9YKBdsp|*AtNL}5;ziubHWu0822jj+2m=oh6mM#*B$k<>ce~1gEnq9=#?%Q6w zW@yU0;`z|j&^c`vKH?KnRj4OCUk;wmjV%N0@rT7CM1uAfh z3Y=PTH17|5wQpGraE}fTXd`q)v;M16mPX^bEMj<~E%ydH z#g{^tcq;h@;a%59#{0S1dvYtHbzW}g{qN9?RYAS26i9i+8$5Cx`rYkljI-dZj$_$T zM}$WQfK2Kt4zg@$;9hR(khpV&TB3;!l{a8zNf5g z`=uMHFK=z4V~ie=k0>a3A)&6E z#tf!1USp~vf;+A4$@ou$6?1c+zx-`kqXLJc zS{<=Bs?7RZkNG~3Bce)=xi1S5nb~sKjWDYH1H5-i=EX>iChyWa&Ei^ZhyY zruGYfH}uWC(LVeRLsbp)h@R9KRC*z>WL@BWCO7kI!@GBPQ^Wf4V|Lp`4?0|sK-Z5 zaVNXZN$*BBs3HCVi0y3S>I{3+TBnyjO1QxvY1=lg0n~v1=wju>NB#i$)3|q7u6x-} zuZB|x0_CDQ4&x_gGGIxryk%)X=Wr1a4Wi$1t~93N>`Wd9;PIK~Enp~IedU&d5%VBp zzS7bdA5Vk?u)xwA{E8yhu3Bxt-uU?a+nPX^icNEeBlDv8JD`EEJFE_N7Km&;PfA*z zxBN$IDBSo4B8D>3h*C8JqorIe&Xkd(iNS%{rjP1Oyj<=-b?+{r+(Oub(x_3ED%6H*z>Y+XD@bj$J zNE3!{MB?y$ypf9R1TL!SI3F4NW+T0@ZpGQc_b?O)jQC>pu0&50W=}T*8QwX)2OIPU zB~XEMUBW`P0v-kC$-`P-0X@pIxy7m;D21`je{3zG^|wk>#p;oKTlNPmkFNRdHWi={ zOge#(+x}3m?z3#GhRrL29)s*2$Hs3nZ@N{1#$;Y|1+=Ie@BI2&L9_xyAPf5K@6aEN z?oj;|l-!LQp@SHL`JGC5%otPk%G5LDaS_>8f8CUfsV5$RY*V#Fo=^FcKe6*Tig*5z zMoEr|#(`Hk1i8H2F0;tfq#6TrlI>F|$BsT1JusBR*x;R4tYk!1xvsZ+?tiT6o2n*P z(642Z&^R^N6=^>%U1uV{{K>?^nyqC z1pB!w@@R5huPo#Hh1;x5QL>xm-Xy4R7d|}jVf>MFG?<1)T7ptIo%`%np?-XRGMu^T zXb(Ju2rzrllk<3U8`1P&U#Hn{S%X8q1>&~X#J*`nQ_S3Vn6M9zdvL1J$?UaQM8l2u zJPg?1y*cN{c8ePPa-Z$x$ie9Zi-`|}ZCd*tCuZq{;2mp_ZeD3HX00_1`|Wrqfprb2 zzof%8`2mcDt?f$$7a+d}m&k;o5~3KuU~WJ`5~~>#y-~>tUkkcOkWOA*zMgqeJB4jw zvH;jx<3~VkvXmRaU?fNGNMw=?e9p5kJO$rj;k%1nN0=JLN#4%NBiUcpb=XKyr7c4DQp)qr;#TUW%UIQsp2OVp=e2L^xt zPjMQ5g)=Pui3RGPd_c0d@o4H=`UxJX-$Ev#F?ijAJ)d4^2aw*AxZZ$Xii-Be&dzV& z$#CN=z`CF$QPX@0`eB$g4wXUCANNntHOXQEuNpQ&s?kRJ!E}$zH~K7BPA<#KeuZ0R zu_=BDNuX{9tq7gVg2QF|fM;Eg0KG=M6EL}WczEW{7Q@8~L4&8=>E3(=wOQHZNTbii8-4=S zo-aBjmWQ0Uq&9@!jZ@5Nbtl1AHb;c#PJn6d5)gfhOg(RwA*H)R!Skpz#;<%78aJWR01D zE|IJ+U+@w1LJ1YG%@Q3o^OI$JK3A})$i?xVcg{8d4v?o#0PPnUKM39R`@KQOtzWd; z;;R)QM!shjsBRY>9i56D6qBa}npXj>UI;pg3sKA;c#8z;WgNDD*~foL4`oSA6Lrc= z@A&*{Koe=U1&Qe|Xh&WB{o|z;-AAB{mUpeXtxbx6;+d?F`&i>;*zkJP@Ppc}4K4)G zgN<691)`Zj=y_T14buN`lB9#RB`A#}vVCbT*+JtOkLew|1r9X*V&ivUA@e}HE8p64 zP)I;^&5NCNs{9(^mZIme`c3CW%s)Wf6ZBFzC=YXB8)gSyeh|-X@tK4KU2F<86_1vf z$$-vEm58GR#HI9o{WtHxi%Whkc7$){WF@Kj`Zfa6+(dfVgbs}L>unpsGc0iB%>@=T z{Yv}qu-(}Lo8in+4+rGVOewq{-;)j1gzbC6Lj~T>fFeY}3owq(R+IA_5$#0{ICEP- zFDdAB8I(oq8a7$*2ns2FoM1v8Fc}(zdZ7lYQOIl;G-jgO00@amQNFd4H6qH}SM0d% zjcjC}+ka^q3(WpB53=2Vx1BXRqxwMA^!w1Uh#US9$$9;)#X_fHCm0aOBS22kE~M7b zK7(kZ;nMmC0hGwc!jf9}uLBTuu#=A$cN=-?9zcxc7(f@me{acZehs8Smi%ZCHc*c8 zXVwg*Na1^la%ujcssGHsdbf^+aUk4=M{?$MlPMeF8fX|~QFxLa`1tl4oA{LrI z7r04cH?XGX`|gPEGx(4oz5kbs+o}>%Kz{wb0!sZ21T23q{sN5m@B4bK`(LLlNC=FU zN&?E^#GX6jRW}z=m-Do3RF%fwEPS#7qL5-rvKrcM&cuBV0FQJalq*y zOL@;nWu(MR4#9bfny^r?Sj1kap>_XF>YUH}0j_$BJo-wFGVF+khW|F&}(BpUyv z!8ynamF5obkLF|JLmrXvH`>HG@sjQOMqB3GVX4@o*hLBWpDTRzCOd&;AQOT_|C1F=`9m;h`nQ2qob1_Ka=FfG_uZQ4G||TgC)+(e@e<++b5=xv)-K;B@G#5XXo z1P7H?BQ(BQSRU&9B7!WvP{+=H9`)Pt#NlUUfe0qUCa?+p(7cxr z>Eg~8UTH}@xYnV#_v{8Cp%BumKke9u*H=*#RNl95-qbKjgAhxJSaqQHUk?4YA>g#yasFHQ?w?+|H){T zE_Qh+Rp8U<;QshhwqFGr$i1K*nbt{CnbYBcptZZ1~ zbzq7ufCZ1$`*Ma1#86^1HEuP{&fZxhNIs|5Fd-Tg)$IAG-%vNxMWc5np&gMq{SZ#D zqdd4M&FZ?t%K~6}-ja{v`+cM}LDjb`nRJmz%gkx&`8ZA?B^eXX-rrwPr73+tom{Iq>u%A1zMAFRNWc&7mxGCiMI=vk=kw&4RCF#=2=VGY@kFs?| zLc2Ao%@YKa#za<^I|2b>LmlyQ}UYK2lpk zhHW<`go13Y5%u zKl3d!PRW>9eN-~;ro%iPQ^y{;?VDl}Jgx<41Fq+l?KIjg>qMh#-4}wEGKr^4THMUF zq6ver&Y>1$ZB1o?e(eVfH4`(zlR%fSQcH`5f?T+hvT@erhwRDrpVC5(b9L=(ZByW% zXdlX3opPp4QN`h-P${V=B5!G2@r63(^uk6IlR6iThf=1R*s82A5+Z~-E31i;4gS6vpBACU=3$Q8hh&7zfM~1dws%G z`vmiRy|1Xg$8L)hB05_+=!=1UN@JJ$0GvVqSDuoNL>GXq4W9S{07G}L&tqcQLWVUp z(u@K0V%8ViEO`3f+rEfb|048wB$vsTuj9^gp!260+EAn(5?=xoZ!<+7tpp zx4O2r2}ZD{{C$>pug{0KDLc02^@xcCof`gC%dhq$M(gF-N00Kp+S*TAz98L7J1(B^ zgjkGa6p(?^x<4E~tnM;4Y1JYfTROXnX~;C4U}r;{f?LRF9YxTVm)c$z>E&=qHKxG* zT=Ppruvzn}A0!A#9Hv4d_JxD2T9}qV2P8fLHBte>jb?6?%545c)!VSI44^JO?!yse zWRi9*08iK2@`sH9$D^8_GuL#IhW$l8i{V(~U-&xJd~rwBS1o7uApI7h zec}!zddQ;%Pm)h*Zb`UB?=HR8eJ|a-Ynbgu{=>`Ri;^pqsj*@dr(wV8lq&S;xxX9h zF}*ux(M3};m4OR2cis&{#(HM(^Q2n<%{qq+?wGxSX=WQJGdoAe^yQXU`bTQMrEn~4 zqKaR*K5F~E%kWg&(=}rROE})?+sbz3jldz31h)G_30G`Sn?M!>c6d<`kt_ zCweg(Q*L4y?CoxI6%{X0G+xga20zig03X56zhYL~k0*z`;C!?-9bm?4cz}$6Xv5IgCe3k$kkCX78jdU9qBy^qnzkbc&P# zYf(5m^tjawu5Om9ah4iI?o^xN$|gXTQ|_1lNcR5PMx`wTWq7#LpcvG52}bgPd?f() zoYkZc(xolzD0j0u`vyD$gWw^X$$kzzXwETfV6%ey&H~W}11P3SXS%}0@I~R@0IL1b zR6MYi)L@Q@TBpQHZ&=>2U*HZ^W3Q{DM8QJGI_0?>_h^Rt=(C$HvPmgY-LL z@=54kNa&r!SySh#uNoMwH*LkRLobfl689y2nJ2On#AD4OIqDkn0H7Xf)-ifd(@O_5 z#r2ZOD46N)fYaPTHhZG0rN!^|OV|rYv4tI8 zos`H=SBU>~5#rGAwgu**hU$3j04&UBmXY2FjD3c&3>5`^p6b-3?<%MMe~_Cgrp#fAR!^r2m;a|NQZ!QcMnoSNmzskC@n}xcXuNQ(wzeg-CaZT zyT|8ye&2K6bKcK;{(k>>WM)5m?!EVYuY0X)UF%vq_?5B@!EK7$5D0`oPF6|{0zvnO zK+xuJu)q=C!RaONN6_`9wyV0MrK`J%vjs%S#PyB6qpQ7*DJ{&x*~P{Y%ER%Li-U`e z*4owejf)^Br^Ej}gTv9;iZjYt+Zl|4`$ksB1p*;5LH&o8EtX{ifoLqrNlCo+__00X z`S$hl+06~Ihv7Th*Wyo%#5f7|w=i|da&I+eN1^L#HQzF~S(nlKo%@6a$+DnUXR{fQ z`eItQ%C_V#@um2(Rtjx(F$=B<;sqaVchA|?(;lu!#TPN(1$bNx`#a32JAVkQ_J~*) z*7W)8T+})Qn2@7GApRB;y-;vx5V{adVhE(!R2G5;fv^Sq|LDs*>C#DiueG0nJy0xv z@)y(M<+Nz!DNUEloZz_N&E;Xj+rr-=_ep!`)=u{q<&~9VdM$@z*!AA;xC|@tcUqR+ z@?l_N!rl^c-_bXKOZhmmmzS2Tx2GzmYFx6sj@Aa(T-Xikwf(LSlW|w>9E>+zYw#r~ zZNsaypwL2UpQFK)3xP!C-ej?+c35ERoxRJ(iyifglWkt>0a|vQQU*2$>9@4dw!&BK zp=XDyo6E6AV;Wip83~S!IxkH6=+ro8*z+Z57V1AJ7UASn0h3VF zc%IA9&;CK|=Bz*B?wh*iy!?Dc_i3lV(z3E;SHaOdEzYZxs-|cYa^6{&!PJ)&+~z@Q zYHB078mvk`o~z!vbqnp{3;EL*h>Ka|Q7=Ejdg;$Mc_k%{jxeg@rAU>r=ZGBjtfK)* zqV*pxeX7pRrGl<&DXc~HY6#y8hYxTqL&HM2W0S%6@84}_>uWgbwz#(^%b3=hc4r&B zc^#&nRoIOyD`%-+ogWW_Uy&RkkOft-~Sl0=UXle3+vt>CC#OVxGcq!%2-utv>N?Lil7 zbW~KjT;$_*U{=GmZktCRXf9J)R^tU+GEcVQSs4nkw)4L}p%py{_}R@-r^u?AKX9}@ z?6y<0YTFsXSi4zRSMI)Rcy*0zLT;n%cE<1Ks`g~cj@PUmpGx$tcE9l97vG~a8k@!T zP}{-OPmYLRzg}FOc8HBdYZ>O)6*Xx3UBD5p$Qk!Mzng0c9?LHboy*QP)74J8jc;on zEC0xbL+g|n85wnJU2_`GH(1@k^hj(cJT(ir$F7?WuCLr0Kroz@?3-I+)-iU9eD1NA z!cjekK55T)br9S1+R`#p^lXV#DOuD2%vU_Goo4fOxbQ(xL_~z^YNC5?eZ4-gMz?G4 zrn8jG%5n=XfBWo2VQjE;?^1pAr4uy%t5QK@C<`TMK+<&Jw(-XKR6 zd?w|@XaD#80EWet1V_S&U9ez03=hEdQXJu69YYDJ1j%K>9^y{8FSG?qOG^hhEwtgb za`jzaz&6Kvs|rNVk-Luiepknht2Y--H+JPV!|mDm`S=r#T~W*d=_%oZX)@R%$obYl zySLQMTtSqx{nKAhbQqx?SBRUdWRtSVFBiK_O|#qY&%n-ngxZ|0xStLc!ho!=o8@#93v-#ZH~=aAv6Qah}nrbu3a--3MOf zv2QAuTViya=iJJ5v{SchdwIIgjZZ&U_JvwR7r3&iViU>cr|OxCs`B#kdw$Kfe2%mE zV8Ydaw>fY~cxDp;91)4@fi&32F&qZEi~FaG;p3ZE5Y7cGr?kRqr?r7c2JSO%8&ef| zmidp!oj9L|fhcD6_d7hs&HnzY#|@wP@g*G_&oaT)MyebU z6h$NA3D+3n+iZ*zka>e#ac81qF;r1CyCFlH^Oej)0mn>JmgPruLiu* z!KZBZvH>~k?R9g7Jia{aXJur3$*xx!wZu%l(eLfHSyY*V$WXWs4k-ecf~M82R|P$8 z;OOKpuC*I46kPq`LUBBqyE)rX2jb;Tc4=v;w2HVSd>s6yW(I1s>px!U07vgzOi8-u1hIe>JZ^9@7KBseOO3g8=OR zY2S-&v+0$@^lkrU zAO=1WN7zbo>i(`1%GdBQJm9R~d(m(r8KFmhl<@sJK5wG1C8)703`0dR>8Jf`_0xnUpv02I2M_H)w3frE_KqCB% zP{G~}_$L**o4oua1eT3^&-0>lJ@W5{bw%}lVv*1;2u0jy)Vdy?qAQxgw%|1}6E z+1c5$sAzMr-0ibyb14GuQn$qPQ=iz)+p8@rF?B?vkK5M7Q-_ISiS8KoVGxigjszG~ z*h}0IK3cK*&T^p^)Agu8f3+X(H}X?5aHP^fPfkrkBN}YRyRJ8^h1D-?Y-}RZKjGbH z5fd|FQvUIk;jbetlHCgBpIzG=^gkx%52C!TcUmO!JN`*+; z`T{li36MuA$r^p!H=)9`x|UVJJ;>0QCUUBXH!*!__+TcUy4a&Nvmg|AjYcnCh!-zIVeEp z&By~ln23swW~>u|6)*deciR~0+_D^@EWrpO zEV(E2A{et6H=f^-L+%{mccazW8~=TpqS;G1I%cDUhH(Fiz5TW+wsE0$DAi9X^a;#a zJ$`Ts^W?7^QZ&nu3V3!KA+2DW?iLQC-RvpI8jHC|#6eCK@(2wRd?9a#pbvI&MOjxz z8a+#|~_h!l`7?kd5Q>DxXQMQG8(V=0czKVcn>@X>eOc_|LOLRqK8IG%Z zzi(8sDZE|Ry0rpP4XJj*a$4Myg}i%W#)D75CR7;H$6!$oWtA~aH6PW6$`*FXXHbje zT3U2eH0rQExOZcU@%|C?^bvFf50{qMB4UPv5uP5iJ;lt-_}q2A7D#M3;K7TTPXa$g0V?+w@7J;~AQj1hq>?o7M}c#+plp|~rUH_B ztAzd_?j8oM`A*HYCcu+ErRNBFC51zW-O;L|$4WJF5l4qcGc0oFmu3Au)^z?)q_%>D zy&&(NuR6b6@wpvNHT>D{N`b%k@})Qg*=0RQ$4!7nOwty1DvgfQmXiq2m|uOIt*#pp zkerZ`2yeac^+foxwsMW6X%+1?-tjM{gK1-cxy;HmN=R{Z_t-G@scX$#9}jSE3p9CU zhZlt1Mrdb@PfHxA&tY?+S%+{*sC2C8T#k5XqI<8*E}R-T)2SKs1T|DR2ztaS9iaT3GNJW|?CUUj?8dap$IoTXw?cA@XKQl`6{?`;PUPhg)?2h@V z54rvNwg&gjO_w6V-^xf$rOU|5N|^W+@CZgb5=6;6dXGPS0_?yxcH{rFx&EKV_|LXW z{qiUQdEeu~EDfIv98HROL7KQNRPY-FT{ZI;G#1YF+VdcNQYn}snn|V0fjqaEwA9}i zT;dM@hV&zA+OBGQ*tXmomi<2_a%!gXpV_?8>^$C|4$=o!FtsqphKdtnN>1;A-Ef~o zoc8uI6Mv*~bnd~xqe%zN&;@E}>p&7_)+z#1yda3uikQDI43juWnlIr%J>D+-TP6bl zU?GHCPtDao&GeB8zoKa)kZTJ)M{WPOZp(2wYzchvt2_L!XfA1hBQ$=>;18bmo+LWX zfBWJT35fydZ!BMD1E2?x1V6K%;409oD(o`@8Ffy}2kh>3*Ib!!YOmu_E&5??i0X$4 zwC2wXkI{aBL=C{@ToBPVfYTnyh&9X&;cV3QM(z;Q-T)~247R0>0>?&g_dkJzKH~w8 zr8USb??440Ja>d3+TVJ)zQh&X^*mUT<8_?Xr|~`g2@?BFxTyIb;?M^?(&3`#)}dxQ zjTg`>fJz3mjC_{id`=5eRARpRHz2#fjpYwsUtN5lcA0BN z1L-`6u^z|)UhC`UM>45kiDZJ@6Wkjb5u_vpOjqs#9av41coUO6U^}-tImCiL$V>Ye-1E8!I%(>*|sR zxSoCO8U(FzusRr(RKgyw*4Nho^MdQu1F#Xm(o5cV@811*=>iF2GsT9m$^!!FXG}~? zCV+Zm_wJ$6d#{5|rVl&(AZq{|(sN_@P=*4p>)L>B|F)|jU`QmV3?YN>z@5u4WMaPo z=bx{N-Q*b5!EDxtGAIO`)4h;81%LyQKhS@tk|aD?b;Ieqj|af3d%TEuWhHbb7sZWv z0W{`%v0asLdQr4);J%5vuMdI%TV-wAq2C0_Qb8;?sXf9!w`23h$$I&nwd zX&3`ox&QgU;^seFJGhRUYoCsjvw!O`W^`nv8H^MH5hwiyk}Se4(?o8tmO^b`}1EfTj38rYM4S%w5L}fu!KdLegG&>f{K<$my}3 ze4mMeG~|_P7;4(Wc>Xo;_xgHa)bA6*iZn-$TVhkWyECUJxmjwNIXS~iP*>q1Y37=& zanef*W94MkNT7?o7fzGf@(8M~UO*)#6{)rL3aS_fO;t_C^9EeM3-3nmwSedO~K zUQ?2eG5RxI%1;e`hJ7Pa4jhJ=Z0?#L!l`_oB*-y9AW~@HcJ^l5XO^L-41`v;saRPm zIFflU(zZU=3|$~?$Abg>DhsnpKVPbg8^oV{00eVc297B!py4_k%in12o*Z=x{GM%Rgh%*_9l-U;=c!md1ti6u3ly? zsphJ(z@;bo_?z&k{Lx)>2=QYE|3}4s{aNxZf{bz(^2pBb@!2eq@Vf;YLcvRw4L-** z!5OO%2o45GGw~lWPjTi#seV%L#g0EZ5_xtDrkQd#fQkNyhHH%TgBgBgx1%Z`vJcz%x40=%ZilS2fQZYEdL> z6!+}8&-<~kqO0RWQC;@5_rY}FxFk5v``qV6K~Vt}CqkaiGpp(w4mxBGoL{|UAZLE0 z8K|py^p&B(NV~6%7}x-M&~xwzuRFMN+;Ud^4iD1RBK0sK;;yu4Qqu>83=4@*xKn@E z=thoxF%*aRFN0|+1h(3SyjUW`W#LS_55@p@&wCS0r>9`moxPS*Utdpg@l*m6V$8_k zU;L$FG0^(pGZl;QTkZAl+i&3r$H^C-srvYkX2C5>en`;W{+>DB4Nt``4y8R2DEkwQ z$)q$(ejQ5I~CYNyN2LmRFH`x=jIZc$uanNC+{$ z1+MkOm^BD9f%b(XEriw(#O#A<3hElOkf~(qdl$al_te62l+Yox_5h;(aj~mjY8I@3 z!(L5h;8IlhB*384masBlTX+ES4PP<^xhjboEmJXrD+Z}B_&3|+NfYc{`OeDZS-f^N zv*d!%a)2vjov9G&2wnH|%n3L7$YP;E_Wd!5aek>k^Qx3~bj!AQNhGI;j|OQYA`wry z2ezOaTV%YW&=Wb9-Tq`e2(2g=9(ndl)U#A9h)pG*)|@c;7Tz&(H2pjNKnB`Ki=XMA zzZ3oUk|*GjZhOh(3sj`l+y&oBbOkX^%$#u`v@sz0IWC7?5-SeQ z-J@o&I3snjAmXj4GnNt`yqzz3I#lujtq8S3#0sZl=oH4=r;nUDj53wk0kcL(Bl0NC zl;mX^8szB*Ok!()V3y^!uY0#=QwIUmfV6?tPI-696yV{&p2(h-$^_)Rd(j{%$_)PEK?8U=kRY=E@(Je* ziN3PDj560$HGKwuj#ved<2Tj9wsWJR?gA>z0LAp;w`L#5MYC#kS(c4@0Lqs3J-bZ3 z4zI1hV9aCdkrM}s>*QV*xJwiR*Jl*q(9n;1=eZEfbTsV($n|kU^(Nn|azO1WB?@Xh zc<`VWq^z65FhDi|;D8iy1RtssLZ0)1odv7ejpkA5vW>}rhspUxWfPHS{0Bbh7rW7q zHS(MUG zczoPTF_4hz2rzD&7l@n2uI_GLzw5W5pg02P7Qbg6dvhrrfQ`wkzwEj1>Ez_}M+|S_ zgL}o-Qr5@W!tRyIWGA@fc;o~P?=W2Mvm7Qkn)6SqMe9XGo%Qmgp8h8B+9gu&{)0Bc zl=&d4{YLATiNN@XJRnv)!0f;-%5|mI z$~dgf^gB!JI(f)jr!(bx6)HGgRW!|4r;m&44BrwQsY*s!&!kcaxheL*8<2$(->>rT z0DM}F%WAI6YTw3qQ8FKNIva7d;~vlF5bu~Q;Id*3sx4k%ff?oePFrb4D(tk5H^)`7 zloN+8&km2*vywNAZq8$MXfT}Yf$cUT`Y)_2zI=ve_Tv}ID-TloT@4KJoCQ&dx84z2 zkOVsvRSw!|y78TPd)N!gVP8?}1xP57y=II?pZ@@MNm_vD1r>k+fc~Q6<8#q4umD?S zfkKoIXwX!Dsrt%ei25o#z`p%@L{u-KLn*5J`}ESG7t<%%2p+dG)GQdv$#eU#8EZIy z&cJpc6(YW^$rfySJaLD}UfO_hS2b&4!PLUse60j|lebiEX~~bRwDd$Q1Gh>=ZKX=j ze1fX9#z1hoA$<1wD&dhF`W53+-`IJ`<2;=zLe;1A&ovWSmEySEz4{#T)L;Aw{^=>Zg>T(USnJnT z4aPc?Cx>u$ioJckM}C|)ydTioIBp`IgyphK5>yp2+$Qb?EX*)B;oU#QLg`|LrG3K0j!IP;_XK{3c>lCB{RY{dvl&dj)pOzO2T8#WtBL1_{D$kWZA9L_ToI z%5Y(5Dxv!>eO2${Sb7O)f>K}|a&X0owDrIj1g%#cLzvOA(JTN6BO$~>PlDfTlie@# zfA{K*K;$u4Bm8c*Ib#6)1~`xn6#H(`YRJlOcSZ6(Lb7S(Q)x9p#PQYdGk2)pcq}*1 zio56t3`1}?&22+_xyHcU+%n#fhFHAyG*+s_RF1suG01C!j2TVN*>1R&7)^xpKH85J zl3p;#(YxCZ#>W(-|M=Q)%O3|60*1Cn-{27ht;R0e!g+(>c% zzef;Ye?Ig4lqE{*KOynYXesxu8BORqn?&d0%PlvaW^1*rpl~2P!?y8D{0vGR{3PW!{gWHB zg;GuR*ECZHttTVcm~1Jz#rkQLj_OTOVG>5}HHlT(UT#e#Lw8si@jRil7G_OR;!vo{efYl0iQ21ty2>E@V+H;+F(% z{W&8eWPMs$(1VY)ps!(4BfT?`YQS_d>M@OMG2a##(~Kxz)z+Iqwk-LNH?fPPfYbjt zctBaJ2?9^3ZPG|(m{~u?uc2Ym^(4%lCDl0yR>RlpsO;Tkw*_N2_mUWDX80zz1LCcy zR40E{2x?3u7>d(|0Rzo7vw3ew!z=z_nCY~#&S2w7wVy+@qi&gXTTTu9bJgFP0hVQ9 zq%RcyHXPupAr9oZ|B_0s(ezi__OM;Cqi;pk^+=I5f{#)}w8o#oZx2J!dbVEw1fTFc z8XRC5J4wkjTyo|bSjTAZJR(5_;-FM*#;xb@ZE_Wo^G~By2&G!_gj2~6JuT~Vz^J)t z^%qBGb;&dC&}mcS(i*=v#x>-+E>fi-4ieM&v`o?9mUj|;-`Z$hG#Z}KvhMO>M-Nf` z=vHH+?Fb~=uUxkQPuT7|Wp4ma6y`KKR*!2Xt>FwX=8=*pFiX@PR+rS1b-H!R9uZ9% zX;?pws{`6Y|E3K}M@siKpzjIN$q6SN5SKm z|ra9xdaIcodD zA^7^M_O6*-9@*OZE&a5lj&wadd0yKKK1(c&r|s~IRaEM<$p6r()d;vhAD$22@7Nmv zNJu`)M2@{!K(+>h3-@2y-jW}h+LtUpA7IjLTIQ_~dzA_n0bPJtvi|t`edrmU*7Tl? z4l}^FCTdz-g!jH)O;V|C5|TxH8P>zE*m-q_>)soHaCKpw5Ql=(aOt-V!QzB%LA4uK zpLoFiC%oMVEFyBWBn z_L0#Gt>kJa+NP80JAX1414-Y{zBq}B*6shD_US1uCQcf#o?&&Kx<4ArHSz8mldi5! zOyo4v+autZ^;GM{5%NB_+nXwNa23n+1hhI5FIBj8xlvOrI zV+A17mi{oDj9;rV<3ul~a-F}qo+P@ycAf5D?d0mG)?5PyVE1^g;NIU~v@e<`t*SrU z1@_*rY$eSMeT{2B%gSLQBCTixPO-1R$3!ZNA?sn;v|K?Kc(9D!?OVb+FKDq-bpWX` zb+-nj4_|eWIYLkmU+S6UHHF&^PK$qL878-OC{~54;W@dV<98Pkc-1~vmF;gIwsC99V~pbpzMFR1h^7w_CtN+@x{1Tj5uFiHbga{k=CagfXrW z3{;%5W1CIZ54yr3w3q-%jS^70k4#>yYVbfkMyYrhIxUf3D5DqxTlbWn;PRz;Y!44t ztX4A_KD_35H(~M!SYn*#`0nL46I?@6Ur%G)SYqZem`oMldIR@{uSIDWk+z8sJitl@ zzz7Hj1OWH;lLW_p^f_8$e3{Iv!c(a~R_h;u# z-j3e$cM>xi7Dyl5Qv^xZKMwA2d;LZiek4NSbVyxSsXGVO<;+9j|xk^!d zNm_2|4$3_xB|0g#I$o=!i7}btfhhYJr*bEg0l_Ep9_|i5c_k5nFPSTfn+{8QH|-w2 z`$#K##{HU4Cz`i#prI;cnj_~7v8$ohS);3dDmiwBnd)DKETZF8ogI8TYSv-FLxdgm zLC|~px!yzEAE$TNptA2u=+_G-brD{rKrf@MH;oQVI^MXYRY%a(%QT>>5TSr{J5n0k zqwzB%f5&LN(XF>IKexls;A+$%=-59&m4ApU6*=W~liLv%yR*H*KT{dAj*mC<4ck$$Y1dJjgw%DuVei!BCE4@+}^|m9qNs~r>oXG zQ4fv$trAse1u^wb3U($QeWHgxWRcC)+VXb;o=S=9xW%W@OOLvJef7G*9W_F$_m5ha z9sw^~%lim_vCYYeViY8ziBQ*vm_J-DGTx&}!)9jEqgvexm0ll1ZP!3pYS zW4W|dVXF|TVk|H~Fc`r0B;?HNU~%}RR_GL#eW3GO6|Q%@jhEhN?oe~^AQ2lISBJI< z2022>-C|d4+CF0aF1w$_2~;pQS;$DMll`{*d0$~+S-;=Nc&KZxxdxmWtv8llcUcbp zBvpVT`}`Oci`~enF38j$7p2@M=8~*ZS8jM_>yL%)*((NnPBNWkbus>h2zW(=`L}@f z@Qn*^d4);)0Q-|Evp`i<31)IUFzbKq0B!SdYOBKFXJ8t#|8Z4!CM>a=clp}K7Liff zP7MHrwcWb?12PfZHSxRq;Z$xK1bfqk1Z4de9+6GPC9QfA#!B6qBX>ewK#Zm6tP0CS z2qsiuZw`dr9Ez>Zi^zFxf1AR7Qv?`Ue*5X4fGutvz=9BHh`>C&PB&_0?YG$Hre+a` zhApPpZc+s(mL%PH^DuyEFi&ak)@3m8_4Rl8E^8c6VXw z%{2&mp}qUV0(fIjjcqrLo)D^}PBXRbzt00gMO(=8b_QZvDZ(9?^qfK85$1Ce{F!}y z!+}nk7OrZ_pfCTIyG2D5;mzxBVN~pJP1`Rw5Yox=J{6hsvDg!_JhHCq_S_S@p|hMl_mU?ymhSClSo43e^!~VFq&xQ zwf0Ja;j#ZnA?n;f)VZ-Ve-1Rph&c2yF#3OtTjt%E?#z-9(KpVfgDCtd#{sf&(DlKx zEwtH%j{!=14W2vHHJeryxCCb}2{)e4)#nW#W~>LqodLIexOKs?e^mOd#Z>aSRfH#^ z|ByQ1(bZblFRn(K)Cah<1F`^d4}EKxb@IEDc+JZE2F(-LZ&TA(on13#e1bTuc{82c znj{1`Gr49I1-% z&($Pv<$lqN{7U=DRHh`47b>D>=}Dd|-*v+$E9_!XI$e~e2b2W|fST_aP>!OM$AG0{ zbFO>cP4?EjXkq&#-iRU)$zapcdd#_Ld~7IgicQBXXc~CObx20i4BIrB8Fvn-Z#eZ4 zuTZ*Uj;2fJP%0r!P{XS|-^g=Y&xo}J5}yj{L%>nx0j-zU`Fhr9mI@6@BRVpwWmJH; zxkf&6pj-%dU(e*hje8*C7oc02HxfzXD0Ve{cxwU1zoq$x?HK(Yl`!#v3yBc1+~6Id z^qw#>ugli$0~Jw93L)YPMLEdD@n#nPtOvdMDkWf^VmOTox8Wj20SSB#LmQ)cyp}z2 zy5TxymZ2!Mw7&x=RgD4O>ctpGThV_cA`$d0UyOY%MO1D$@76WUTTq#1a2@SRhmW)q zA@J4(f~kVat%ImQ{$N>%KcH zuc$bZBJtrF5J(vSDQCt1RF3=*9>mVcsRg*XW{j~BzB)Ak5Vh+1mYp@eKfTk&1G74* zc6qH~quvdRj!5rOCW}8eZuOezE{vlj?QRWiT!c1wBW83xy8GQ0Jgnulh=qu4W+w*e z%IH{3WkM=L!~eNWe#F}{l&%sycCI6$5eQzx<6Rs76PH(R(u&mp?d*jj!E3y+;79Twzj?|(UdTrdL+pTxNNRWyaQF<9|P%Szh7|96;nD672W3?4_^Fq zzMVmT)O+B^d-kJ^Fs@}gB8)~kVzOj$?OKXT=xaL4_k&;xB9qMvZ{wIuAG>D~KsNN3 z%>sJ9QIs%Q)aU%kqesO8U=6d!Yj$ckIS|qH49B|&BOulU@|~ni#qT6XaX=!yIoI+5 z4NgccoPBiUnvtH4DPjr8zw_fFzin?reSJmRDy}+70H6w6y?YG0I=So{lQ4J1cj{JG z`PUu-wq?MRreHYdmnh&&)s>Z%$#th(3rdCTEO(5KcgKweH*a_(zZ=xaMF8zKoxsB+ zZ>{4{N|F+cm7pXim{JHOSbawSh^XY`A|QKI0m8-+lx&S2Ex+g={&1_u_4z~Rx|s@U zp8rGB;C(b2p%NAG?dL4L^!i-bHt0dHPrK#|rs9%(5n=95o<%BgXeMK}h-I2!gFC0d z*^n-@Q!NQJs3ncp=XMsBV}4{GHc&FY{~hhvbo!g~XsfK>_GD`k#Y&1^9jP}Q_6ePL zh+PjZ^u-1Zai7FXv9v6y$I`M-7j4- zNFpMRCKdWo9Ih(Ra)0QT+49#J($m;DonOnY8;`1fH(?=WYeZ-)C_rU|-jq=UW*JD^}xf)eHb%>5;VH6YBF@KbY}HTtXd z+8op>63dwgRAvo!ym=QkSqkLrGO0g!eX6cd;E_b@4K%|x7&<1s)>2K76DuruymsI42e#`5eqe{ zS7aCbSg6fjg7NJ&4=nB}(ePJu^}4>K^dcoqMiIYz7F}#}ph+Nr?F@s?0R_10J6w); zU~t9kWw#X{fRRTAF_Pf2KXDdje+{HnK}P|z67Tzq_Auft7(%$=!#<%(FwBNptKEp#7#B?v2IWoOkf6nk~{-5HwTi)*v^xRbTqt1sD#^ zTOm{tN)BZW8L@N;_#g}YGvs(r1|8>_xWnin+`aJGIxNh*dV8vh)%8QCnT_XjTFsGr zLY7Ty>mMDmUamKm4L?ygUuwz-UeRiJqbN5#LKimk#&>_0!J%^Ikoi{Fc z6TcJ-FmT%FcGZ+enG6(t-XteAWu-BfT@aEzccT?k-LCtX8PSw={|$;7Q8gf^2x6@G z9oB70J=RTR-nsqRo-+k*L1Z&6ZVw8T*6ABseGX-;%Zg9U%Mu3htk)`JUcm9l@w!{l zO0vDSPA~AjN0>-6z8mNuXakU)R;vC(JwcVgrgwmsu*$#5Uo$pZ;>V**fl~JtAq9Y$ z#Ca!qD;Sj%km}7nctyRjFAOlxyqmdE>O<6rmri75g4D!x5F`gZPqd(;K;lf%RQzl_u~!Pr2I0qyxv z${^pUcWCi{cE0MmXAcZs1?PGmQy1oW_IoA$vonsT=#!3L!reH=N3fAO4zRVt4eWpO z&131j>fsU%FJRE-u8lCNdGl*&s1s zWS~ItrFvitZE8Xskb=`cTtrt1r>UeYg%be!zywUUAqqwV)~B2QF{cNF=%q38;V!{6 zFg|+c3rld}_TxKh?%w!Vs<-M-iKI=7$pFZo?Qn!o?2DURr))*4nunfMvU?XqVa0o9jAw(0e>}0~qe4xWSiY z9f|b)2>0Wr? ziXxne9WEP)4A>$%)P&hDUnpd09&M!^kRIpdXz@TX^;EN+_S4(~<$HZ?Vu1m^mW=ol z65}{FYpLO!$!j-qLC1$mR9+zq5L1O48Xc8906vVc5?QQIylY-w0WK|9^|zRs#?|^Q z%=g`$ovO~=nzpmo*z(>tvw}zmkLm1ft75Z^Umt?Kj`?+XV{-FZVfIga^$fNV<6XWO z%*eZ|sPv>*Xo)$^Sj+%21^x4FE@r9bHd6ncLQCP2UWJ&R$~&dN+dt4&iwrAUyeZcK zKd^=(NwaC6-lfUY1gHU|!`Ux=ywNDB`Gv*$@o{qsto9VYX9u*0CHV=x*iC+kdIWBO za=NybYLwuWk*k&4j$)IA$s)B{xWVtVwq|KBmpb5Xh)qva8Nuxs(<|2YAgRe~66*#o z`z?Dz?70s*NU+$Qot@1UwR}XRD=nSt)=7oA79c8yXb|Qt!OA+FX z<*s}O!}OXUp~ty%^ZEK3BOjyV)T7*9D<@Yz0hQ~a*!a-Zvw6wX) zX?{-9YKBdsp|*AtNL}5;ziubHWu0822jj+2m=oh6mM#*B$k<>ce~1gEnq9=#?%Q6w zW@yU0;`z|j&^c`vKH?KnRj4OCUk;wmjV%N0@rT7CM1uAfh z3Y=PTH17|5wQpGraE}fTXd`q)v;M16mPX^bEMj<~E%ydH z#g{^tcq;h@;a%59#{0S1dvYtHbzW}g{qN9?RYAS26i9i+8$5Cx`rYkljI-dZj$_$T zM}$WQfK2Kt4zg@$;9hR(khpV&TB3;!l{a8zNf5g z`=uMHFK=z4V~ie=k0>a3A)&6E z#tf!1USp~vf;+A4$@ou$6?1c+zx-`kqXLJc zS{<=Bs?7RZkNG~3Bce)=xi1S5nb~sKjWDYH1H5-i=EX>iChyWa&Ei^ZhyY zruGYfH}uWC(LVeRLsbp)h@R9KRC*z>WL@BWCO7kI!@GBPQ^Wf4V|Lp`4?0|sK-Z5 zaVNXZN$*BBs3HCVi0y3S>I{3+TBnyjO1QxvY1=lg0n~v1=wju>NB#i$)3|q7u6x-} zuZB|x0_CDQ4&x_gGGIxryk%)X=Wr1a4Wi$1t~93N>`Wd9;PIK~Enp~IedU&d5%VBp zzS7bdA5Vk?u)xwA{E8yhu3Bxt-uU?a+nPX^icNEeBlDv8JD`EEJFE_N7Km&;PfA*z zxBN$IDBSo4B8D>3h*C8JqorIe&Xkd(iNS%{rjP1Oyj<=-b?+{r+(Oub(x_3ED%6H*z>Y+XD@bj$J zNE3!{MB?y$ypf9R1TL!SI3F4NW+T0@ZpGQc_b?O)jQC>pu0&50W=}T*8QwX)2OIPU zB~XEMUBW`P0v-kC$-`P-0X@pIxy7m;D21`je{3zG^|wk>#p;oKTlNPmkFNRdHWi={ zOge#(+x}3m?z3#GhRrL29)s*2$Hs3nZ@N{1#$;Y|1+=Ie@BI2&L9_xyAPf5K@6aEN z?oj;|l-!LQp@SHL`JGC5%otPk%G5LDaS_>8f8CUfsV5$RY*V#Fo=^FcKe6*Tig*5z zMoEr|#(`Hk1i8H2F0;tfq#6TrlI>F|$BsT1JusBR*x;R4tYk!1xvsZ+?tiT6o2n*P z(642Z&^R^N6=^>%U1uV{{K>?^nyqC z1pB!w@@R5huPo#Hh1;x5QL>xm-Xy4R7d|}jVf>MFG?<1)T7ptIo%`%np?-XRGMu^T zXb(Ju2rzrllk<3U8`1P&U#Hn{S%X8q1>&~X#J*`nQ_S3Vn6M9zdvL1J$?UaQM8l2u zJPg?1y*cN{c8ePPa-Z$x$ie9Zi-`|}ZCd*tCuZq{;2mp_ZeD3HX00_1`|Wrqfprb2 zzof%8`2mcDt?f$$7a+d}m&k;o5~3KuU~WJ`5~~>#y-~>tUkkcOkWOA*zMgqeJB4jw zvH;jx<3~VkvXmRaU?fNGNMw=?e9p5kJO$rj;k%1nN0=JLN#4%NBiUcpb=XKyr7c4DQp)qr;#TUW%UIQsp2OVp=e2L^xt zPjMQ5g)=Pui3RGPd_c0d@o4H=`UxJX-$Ev#F?ijAJ)d4^2aw*AxZZ$Xii-Be&dzV& z$#CN=z`CF$QPX@0`eB$g4wXUCANNntHOXQEuNpQ&s?kRJ!E}$zH~K7BPA<#KeuZ0R zu_=BDNuX{9tq7gVg2QF|fM;Eg0KG=M6EL}WczEW{7Q@8~L4&8=>E3(=wOQHZNTbii8-4=S zo-aBjmWQ0Uq&9@!jZ@5Nbtl1AHb;c#PJn6d5)gfhOg(RwA*H)R!Skpz#;<%78aJWR01D zE|IJ+U+@w1LJ1YG%@Q3o^OI$JK3A})$i?xVcg{8d4v?o#0PPnUKM39R`@KQOtzWd; z;;R)QM!shjsBRY>9i56D6qBa}npXj>UI;pg3sKA;c#8z;WgNDD*~foL4`oSA6Lrc= z@A&*{Koe=U1&Qe|Xh&WB{o|z;-AAB{mUpeXtxbx6;+d?F`&i>;*zkJP@Ppc}4K4)G zgN<691)`Zj=y_T14buN`lB9#RB`A#}vVCbT*+JtOkLew|1r9X*V&ivUA@e}HE8p64 zP)I;^&5NCNs{9(^mZIme`c3CW%s)Wf6ZBFzC=YXB8)gSyeh|-X@tK4KU2F<86_1vf z$$-vEm58GR#HI9o{WtHxi%Whkc7$){WF@Kj`Zfa6+(dfVgbs}L>unpsGc0iB%>@=T z{Yv}qu-(}Lo8in+4+rGVOewq{-;)j1gzbC6Lj~T>fFeY}3owq(R+IA_5$#0{ICEP- zFDdAB8I(oq8a7$*2ns2FoM1v8Fc}(zdZ7lYQOIl;G-jgO00@amQNFd4H6qH}SM0d% zjcjC}+ka^q3(WpB53=2Vx1BXRqxwMA^!w1Uh#US9$$9;)#X_fHCm0aOBS22kE~M7b zK7(kZ;nMmC0hGwc!jf9}uLBTuu#=A$cN=-?9zcxc7(f@me{acZehs8Smi%ZCHc*c8 zXVwg*Na1^la%ujcssGHsdbf^+aUk4=M{?$MlPMeF8fX|~QFxLa`1tl4oA{LrI z7r04cH?XGX`|gPEGx(4oz5kbs+o}>%Kz{wb0!sZ21T23q{sN5m@B4bK`(LLlNC=FU zN&?E^#GX6jRW}z=m-Do3RF%fwEPS#7qL5-rvKrcM&cuBV0FQJalq*y zOL@;nWu(MR4#9bfny^r?Sj1kap>_XF>YUH}0j_$BJo-wFGVF+khW|F&}(BpUyv z!8ynamF5obkLF|JLmrXvH`>HG@sjQOMqB3GVX4@o*hLBWpDTRzCOd&;AQOT_|C1F=`9m;h`nQ2qob1_Ka=FfG_uZQ4G||TgC)+(e@e<++b5=xv)-K;B@G#5XXo z1P7H?BQ(BQSRU&9B7!WvP{+=H9`)Pt#NlUUfe0qUCa?+p(7cxr z>Eg~8UTH}@xYnV#_v{8Cp%BumKke9u*H=*#RNl95-qbKjgAhxJSaqQHUk?4YA>g#yasFHQ?w?+|H){T zE_Qh+Rp8U<;QshhwqFGr$i1K*nbt{CnbYBcptZZ1~ zbzq7ufCZ1$`*Ma1#86^1HEuP{&fZxhNIs|5Fd-Tg)$IAG-%vNxMWc5np&gMq{SZ#D zqdd4M&FZ?t%K~6}-ja{v`+cM}LDjb`nRJmz%gkx&`8ZA?B^eXX-rrwPr73+tom{Iq>u%A1zMAFRNWc&7mxGCiMI=vk=kw&4RCF#=2=VGY@kFs?| zLc2Ao%@YKa#za<^I|2b>LmlyQ}UYK2lpk zhHW<`go13Y5%u zKl3d!PRW>9eN-~;ro%iPQ^y{;?VDl}Jgx<41Fq+l?KIjg>qMh#-4}wEGKr^4THMUF zq6ver&Y>1$ZB1o?e(eVfH4`(zlR%fSQcH`5f?T+hvT@erhwRDrpVC5(b9L=(ZByW% zXdlX3opPp4QN`h-P${V=B5!G2@r63(^uk6IlR6iThf=1R*s82A5+Z~-E31i;4gS6vpBACU=3$Q8hh&7zfM~1dws%G z`vmiRy|1Xg$8L)hB05_+=!=1UN@JJ$0GvVqSDuoNL>GXq4W9S{07G}L&tqcQLWVUp z(u@K0V%8ViEO`3f+rEfb|048wB$vsTuj9^gp!260+EAn(5?=xoZ!<+7tpp zx4O2r2}ZD{{C$>pug{0KDLc02^@xcCof`gC%dhq$M(gF-N00Kp+S*TAz98L7J1(B^ zgjkGa6p(?^x<4E~tnM;4Y1JYfTROXnX~;C4U}r;{f?LRF9YxTVm)c$z>E&=qHKxG* zT=Ppruvzn}A0!A#9Hv4d_JxD2T9}qV2P8fLHBte>jb?6?%545c)!VSI44^JO?!yse zWRi9*08iK2@`sH9$D^8_GuL#IhW$l8i{V(~U-&xJd~rwBS1o7uApI7h zec}!zddQ;%Pm)h*Zb`UB?=HR8eJ|a-Ynbgu{=>`Ri;^pqsj*@dr(wV8lq&S;xxX9h zF}*ux(M3};m4OR2cis&{#(HM(^Q2n<%{qq+?wGxSX=WQJGdoAe^yQXU`bTQMrEn~4 zqKaR*K5F~E%kWg&(=}rROE})?+sbz3jldz31h)G_30G`Sn?M!>c6d<`kt_ zCweg(Q*L4y?CoxI6%{X0G+xga20zig03X56zhYL~k0*z`;C!?-9bm?4cz}$6Xv5IgCe3k$kkCX78jdU9qBy^qnzkbc&P# zYf(5m^tjawu5Om9ah4iI?o^xN$|gXTQ|_1lNcR5PMx`wTWq7#LpcvG52}bgPd?f() zoYkZc(xolzD0j0u`vyD$gWw^X$$kzzXwETfV6%ey&H~W}11P3SXS%}0@I~R@0IL1b zR6MYi)L@Q@TBpQHZ&=>2U*HZ^W3Q{DM8QJGI_0?>_h^Rt=(C$HvPmgY-LL z@=54kNa&r!SySh#uNoMwH*LkRLobfl689y2nJ2On#AD4OIqDkn0H7Xf)-ifd(@O_5 z#r2ZOD46N)fYaPTHhZG0rN!^|OV|rYv4tI8 zos`H=SBU>~5#rGAwgu**hU$3j04&UBmXY2FjD3c&3>5`^p6b-3?<%MMez&WeJ7fW#&vIp^HOg90W%iIPEyP0kraBS`jyv1LVx!m@4&}#UYBgrl>P0GJ-B_)%dC9f;_a(f zm&1pYX<6Rjz_NTgkRx7KEo9>(yg)zZLB;=kr=IAR*MCvq59{G^<{r}(ozq$smbeMuAoJMTK z6aBgt1vYvW?nOLhzIDrFJ=dywzvwAb@R-Nmk_;_6gX*sC%dC>0Z=R6WHc&f_&<8gq z?(c1hV{R^8@E^E@>f}HF{21y}_w_)5f8b9m9$V$qLIdg9Rg$lI{7p?wdsAd-Bc3w3 zZ}g!bY?c0e!=isL!rNnGzNf)xoSa2@&if48GYkgfM^KvI&c`yfj`3V`nJ;OJ;$95k zUw$SnE$!E_(Z)S)T;om1H}Uc!ayivZv*RL&vHuuI4s{*L`lV84kdCs4{o6Bk} z!=NQ>{tZi3=a+v8hTUV)S}u>nwJ>QHE?(qx-86S!R3Ddjcds0C-_m4ND|n*qw&p|Q z`YX4ciU);yC3!*x<&~OmH!EW?R-wvXvFd&Kwo3fQ;(*zFchUzMBX*%NF_}iOE=>Af2DvJ@p16a8zS+@IyA))7U=LY1ISV!QoT9iaB0Khl z+;`^!J^y@8mX1os?}Uwbz%{vQkNvM6u_YxXUUY04hWWhl#F@oIa0RyNKeh%&MvJgB ziiU>Cv$Ax zIkKrj4;UF4!RjyzX(VQ%$$Ey4{&5t094^vNFC==ShD_Y3V+%V+8g!gjbBW zmPa3Cufz(va#)QCB&DRVz&Iuw0tbR+g(z^l2h;4HT~;3JR3y}Vitc-xp`(_h7@1w}?r?IZ-aP2G@#>ho6$8WFBU+1%TQ!jPB?7lM{zPlFanE^|&zvX#Y%#fCo^9-$F z<733EE+*zX(-xINaO&K4^mP@|jPuvU<|@|Pd&*a;(pTJO`4@Up0%dq6PVDb=cy97? zeK#s+jZ5$Dme;hdAzT>9j_dC3wx9IpUhwB0JDr~0pCIa2U_J5B|LWa`V2zSeQauGG zJp~Sn%5nQ+t}BB3KTZihv$f6J-CRn)rI0))e7Fyu zhwW7z!L@G}g(gCW!IM&{EKBI8)=rVq^uo?(D9G?W20IGxGwpjvaUVCI5_j^~UZ*Ij z$)D}Dh2i3Cd3kx3!Im7pE3|sVqC!CL7#0P0Y=E ze^0k?n)cpgWMVRfHQVjW_DF(liQ9iDZMU(4o<6vCFe`l6#qPNym6V)})vop^oBQ-u zQAugqE<@*P*-?CS!5D^hYa+-x5;8KL=UyurQdhQQ+7Vc=AxqSPX zi%Th&#ZY2OoX61Y-P${dk<4Wlk9CKlwbB%11(mES)_gCsswE1#Zf^e}?SDhgQlQ^- zLDO;2AX3<~3X8?!U}5HwpdfUxtrvGozOS!uw}#Xs9=UJ0renmxW^uL2+Rr+^=@11D zz525fLA4W|F0(Ny-rmPGJ$9zcCVZ*v=Q`;vh6*I&JP%66{3-jA*V^KQwHNy{d%$(| zq+GFFje(#i-dCdFwbm@IV zKiBR3q}VGJKZ^(Uk2;Mn5uN3RrJ?3`G+rJlg}Ax;RD18|TXvl1;g+Y+gz+6DFffK| ze1hO0Z#UE01x}R4l2!5$7PG8AkaqlM?u1)bz%|}ahdXhHU1OE54z(oQHz7WQ;k+Be zEN13tt@oj|GpqNPtjdlD? zIe##N)2x5a^I+B!*UrB($3MOkz*e=bOMc~wS*7a*Tn-AA3yd{&Qwc6+ys0&q|GpxLGWOEvg}}Y(V>Yk+}S(n>(_^s z;46r4U)wA+X#x{ZM*KI{b-C+sfBbMBiL2Q3bob+}kU`9rh6>B3f~4$wq`BweydJ@= zkQY%%bQz5!Y2u65v9i^#XNLFH zj-l?hLc)CGwmsqJ%b?ejEbXgv)wgG!!ns^0>K zy&Ck+EUUEMsG9b0y8#9XNiNm`5@ynehzOHkAWTPatCcba4cwmdh|wJAh>&)%h^q;%Vix^EOfe`{_4H{bIjwj7IP{;^@-Yu6!o zWtCU0%s!32=_99^@|S~}tU6eSvl8{yhx=9?MPNcOmKc5~OcCU}Q@lya5dmn%OGS_R5=8fHJ2&Cn{cFwOu zh~H_M18{;r|4Kzq{t_I;f%ltI^>VI+5@FdZ8rJ`IY$7Z6Uf*qZKE+pu7#IM$-{$Gr+1$QoDSobNpis_w#PldSY=(BV*8KcD-`=l$ z#?s{Gsp;u?h|zDaofA*Nqd+X!f~M#GhS0DTByID;FXA9|c(Ct|;RhsxcUZ??-zNq)|EzbIHNL0ctz-8%e}~P9T()G=74RhE zt>?mrrp&c>aB#pP{1>isRVdp4@;f#&ljP$$PNVi~05J%wy*!A|oY??SVA7wV8f%en z*wzhqeZi%@0$CNJ`lZ#4;qe2mjM+s~w6?p$7p@gE8vqPTZdt+M+w=&Z7C+q!t zB8+0^OXDIVvAKE;yKY<$iDvCKb{DhF5Sa19`;5Ra0xi$_A#`DuNGYjC}#bEX-9etEr_I<|)P8RH4gOnZXA$87A z^wha)&tO3~9e=6BZJGV}^6yZkYq8Mwj~DM}O_zoWW+0$%l&%~MIvxHgt3Lc4UX2@E zNsh7%N<6o*y9-ERS%KPlCc>zB!aB8}KrtvJE-rg_7qkEKO7-es$Dz}!O9z||XEyn# zU>_9XgxuYd{i@gMsfMaOJyqP-P^ij_3a5{u>6_IPqo zQet9iPEM!YA=qWt_gp=L+?NNkHYJnD`Ge;DsdAs)HmUd>GdlLcL;HGr=W-ip&Xk&} z8yF;Y?0>i}?t3k++F`Lj4FCW_2MXNx93`?=^#L-dReQL938@ErlaArz{I%{>{5*UA zN6ibhBJ+p?Seg?W=|e+9${oCJ+pAs{klnCZS(Y2$t%cA@NlBEPrix!YCbE9ItW<89 zg6}mqH+KV`$$|iZ&Nu4lC%O?$*R+vOSNibvGgC9O(4e3T{p*F_1pRTH38G6vem(QO zvv^&}Ve0>9n)LlrbM)*styIMI{=Gx)@ zUBEpNZHBViceXlm4_!k)d`S40;1tGVY`FH&Zq~zdB#wWpbid&v`01*audDQ^_x?4K zYdp_p<2`mQ6Xn6>_hwRr_e~m6 zx?f)s32oJ8R^2-*3J{?aHUe^RiB|&)3kyKR2`@A9Ht)*K7Pj)IQQTJjpB}%p2T+go zJUp=Fi$PEhnew!pxDeIoT4~v@ycT<~NmFpBUC0M%d&}jrEaGwc=d6!#6CwIAL-ELa__K!M+{EUWh&S=Ec4$}bKiXFl9NXOc2$CZ)jua zk3S`+Bv@H2WToTGB}05wa0+jXjI2_)x}4mHj-3&fOMKS?WU}3M2dWQ}M$4TR0lwfA zUzIAM(TlKRrCPvTXaogQ%gWRU2?-JVM&{Vz=%ggi(b(SJAFl0jtM-nY(AM&s5^H@! z!-Yt*tS-(0jnB=^k^q&AAvH(d)$>hh?l3JZ+ND@{LN@6LfNvgLttX6Cox`L%k&E`Q zxO!h2!P2qLKZ)X&I5|0E>wjDB?`|k)X~q8j{aaC6I~#$nEXo<37R95ZPZTj^AgS2pkf8NYMX-NFZJq!L+&6K~$W?LiWG+`0gG=CRpjph}5fauxwSg#x^; zB^CaazYokHq)GqxAKCf3E7}d3NPk%8Ot ziszq6TKCPp{T0s@J7G398R6ZoKqLvB$}~;GVolcys%4Va|RsDq}X5K!_<4TwS^H%0FH1h z&=YVyB9f5(-bNVw7T(5z(z+Gx9G<d|k846V)_b<2)F{C|VguKMf^o&()Rj#-k6biAk%QiJNmEpRjHh>y| zB4g50G?cgdlUl7j2&AI`O3Rjth7|!iLqztYyz|`4ad{-opNe|{aURR6of)pmF~sFNJP-0c zc3QL-KwKDr+@1zbdK04cfQFqvTgB?voCYU|Vy1u@FjF7I71h<#n}Tno$H&td_qADh z?x`avd3V{VIvrBJB!Uls)D{BAM*JTVj|GN0ND+-rK>`tg>~%%#b~&H~oS*QY2ce;% zK+1y|IJvk?LD6`yRSj%b;82d`5md7@4s@5bv$(L-$eFl}b}%<4y=V8!)M!6m9iHR+StPQsF;2hHa5az}g=~ zL_{FIH0y4X#=HOrQgWGp1fRJe9nB*L93JiAQ3b$)KydX7K@bCQr@nNwS^YZ-N@0(R znf91;5EM*1Vg-SV73&wOZFEbqOPC&%;#DyK;u>pfYsmieA?6n=sD22cOD*Or7wm`N zdh7k>mX;m>^%=;btB>!7Ei5h;x~v-l@v$odMerewClY=j%Jq(v+5y?rM|cC0&qc&f4%g*UaU|5V3vOw+|5L!1Bx(3Hn7`2=d?064xe=zE zr7@V53sLHWrRF*r%8RUB_|WaMY@AR%q|JxRc6H?FtFT`65DZ9a@4N$?Gl>M4u3{_g z>x_(bDml;pUE7(BqY8QlRfvYZ;3XA@>rUWFlL&e@=ZZQ{OKbIx zMsTPE$go>jkdy1d&aD68!O9^Q5O*Wo;y?$_d}8oBgt^^hX8!%_KFnSZ^qFG~?Gg7I zAYE(@I^yQ!CK0c?YdiJiI)F8Vogua{2_Vg6eH+58p$1_1dN68#kNsT=1bE0PD;qw! z2Sj@z-wGnT4Xg#Fs;X-2Y+G9!C+L=UJA{zMpl@2QQ^a2B-@{QRDy9$W8XCT?Q4`iRU!$T^ZjpTcOI_u6zlzCr;4 z83)3vfSvc=WM?NWX*cW7AabT292~4~jkr(H&Wp^iIpkLC-m=+>U~-XL7H|li)@a_I zCz6u)Kn3xSvMg&_rvYBRuia=ShejLSRx4=y$Yb;A?(;9G&j2jzzrDWbFHYma@O(T_ z_~3g95IcWxZ7P7}VvdeQHiHJ?6p(m@_5gT|T;;P*)!~YA&+^+7BthHQMr?@Wm z?hYs`@4!T_B3yh8A{+&!CH>z1{-T|sZ9C7{sz1M_CWEBd?w&k*^?71q;#EZ5vHA7= zZk#(6CFMKNm|Z+>=o=VN6puPab(nFSt+nR4R{yi^tv|h}?^O^hIg@4MEX~KO1b=Ll z3;WT!t^V7wRwJZ$&aYMlpv0_Nj6=U_J#6vVvKi&_%6m}gs0{N5zgN0Cr4L*{b(Tk* zz5bQj;1~+kndEV}H;&NA-sRD9PKfVMNKdWuEEV){76R1;9&-XqYW){k@`EhQE^G^7S9 z2Lh%X!nwOnecb@>So|C))J;Gt5D!Z3^z`&&%oCIsjTh<+2phgn;0nk`&L6qf(Ki~EIeVED z1-K28OrA0+B>E8`e|cr&s{_}*qXjEfoNlH7NtD*veAlz}xMpGOJ5CjB_ORkLeM zOy0;!24T!B^`4M41l;oQ47LB0BN?o+RK@+z-zzqMqmUsn%jo%0z_B4M@fv6S4_lQi zt%SU&L6RfY{zsYbXVwDn^B^<05G@lS&4ivNXOLKvkhmB1RMML7y5OZpsAHG$_m!*f z$*C-sp*mYXb8>k*;<)zQ>1(5dg+^g1*Z;0MmCb5eqF%8Uk6BmZdDE8g!f}Tfzz9N71j#v<`4;*=2R#<7H=7pw^5KiDJ{Rw1&>3m~&#C8X6 z_-pc6bZT!B-I$A0KallQ*->XzuTTly+cdQ{#WF=ZMk*hy(Mxp4(Ryl-W|XwpwLVs` zW0a`&{ADxU7CS0P@HkNC-dvWijA8L`XmoT2zc8zO+%bZG1g{}CnX}pDqqN_>TkdN} zigweDdqR4HnWL9_Ahug`_hu9Jv(1`NAhodllVaIxARMTvX7-=m_nBIRF1@ zj{jG`dqg41v_(=vv22yx7(j6T!QZtDN#l;1<~YlFjsNm|!XtlQy@n}{vwcyo?_sV> zC7wFEgB$Nt!=)kyX7D(MTSB)aDvMSdt$om^Hqj>Fu;(rwQ?^35DSSjOF)#IK^LeO{ zgofUW!kA&Ee{!6KQ_Hf5FpPf<=F^9!#O}mnLl!s%2o4JD7OxB%6EXP_&FNYJN1@K^ z=FFW4huZP6;Vy=e;WMbeP^ z;2-mOHuzYNDtL)v@kMe@Fq3pQl-QKCwAlP=6F@;TX$fN;DtEH#)Z1JdPQl^q<19eO z%^P0g1F^AFZ((6Uzj)Za3O^PU-x*jfR}hvBuKFS>6I9Fhq1w?4luw__X-wU-LvZUR zFYn+w@R~l8S)^+Qy!gu-8>E0#eXzk!E##&G)m+Ts{#IXSXFO7CnL7Yjk4;To9aNT+ zqlc0pV43)a5yxQ*P;WQf;7Sg=i$}Mw3}@^n5ZRgo@(wvYWnsaz5@brGvioA0+oYQT zsqPC6BReS(%;Y2Bq^tW0#BzRzilfsl6`$9YKp9^&yZWFE;er70=b@U?FL5I#vD9u> z(pE_pSj%w!AyQ<5GS*y}x@FgZwr3`Qz(=0@i`ouQS`}Mh#9z(}{Dq~yufKl*)Ym@b z5(urSKHRI`03>u%NJuNFz-dJbsyr?Ehm9YuZ$QP(82Dc#AWTFvg*F4Vo)p=@Ua7y6 zi-tCw>)kIz%yWmABxPj!W8yBSb$A_v9Y+qJtN)*a5I`(VFXE#lfO^FF*Sr6>-;k&h zZx<30@(6SKl?}ktS2!}{@;LbuDk7w4Aj|a&e42`y7v~e`d@Y_*q+SRm(?x>7tJBAC z$DgwELzmV)ZkD8^oS&fcomM7Kd)}%Nn)>KMA3oQVT{(8SlfVV7IhfAOu^X?rJaTDX zhu+tpD=_%YTYYKi6iUSFM2Z1|V91=}SXQvt&*7~YgSGasWduyp?nv68Wqk{$`~&FOR4 z)wKFI4ksLt!RZ4$6JL~OS%qnEGW3^xO&=jTfu6g(+%d>s`dd*C#x`(5x^FwLmU)p- z_{Fm6{nvEJtmZ5M_I>!1(zD@9zU_w1Vv=+4X*{juA8JXH@-iWJ-|nM&U4aA~NGE?f zr*pETmStt$zEX!!2%AO5`cO%4FuLe;V1`-J6OLRY@c;7?#xEu%-KubE%OAH|*1Np$ zSy7XIVH>Rnqk3d7F#0dk=HKzsFO)_V6!(7<=s&MPPw9fz+c-Ja!<1H!_H`@u1zeJaaLn`6>rpU+Pq&25-_$8Xz5(1s{twdEU9 zHsP{8->!)y7WRGIkv9K<`uXXn4v?KiWW~LF*zW&&^?09}`tVhsf&(Glo0q1# z!VeTe-(QM3RCUOX-la$dFR5-IeiVby1uw07Pr^D|BbSt{_(rTBGCXqx z+2I~)mU`>vD3RiKMns(K`7u=ITi7m#%T9DNqegG>mTP|kfxwj-M%l5>Q=bGZa*C@K z=pP{H@hcv2@x_$qv8Zq=TPl4Zu7B6Jx$w!7I+&4B?n2L1@Kek`$ap&$Z8Kcx({t;? zsh9h6-E7PQ(|1`6=#Gw{!yl1Uv1g7fNzYUzf6|jYMv@Ih&;N2{K|*8QuI| zOE@Lc+KnUcDlENn1@DuBC-H}HY345IlvJeLmG_5z>&!>yx{Ql3^(PHE;g zs1vF*@C^Ag*)-BeD3bj{bAMVB?-(Nw$c6e;Cg^^Fsm=)@ixfX#jrN2!!MhnJTF<9e zGnetaK1|L26n@}~1&aRU0dOLRH~7h%82%(Qv9f<5I!awIYvGIBU^EvAZ>m?CAKo-H zUm&msXZk;^!MD&eHO)^^54k2aa!r&^HJ@&Y{|}-(_|69o1B0Y`*>ifVyvfywo(w2U zB?bPM`~|(I$3~|r^K%yH;oeL5w#cEhB-4zSiS2v$S&Ff*lt_=k4DrOQ^TC+^kIM91 zKB+eh>fO&ET6P&BLqU4Dz*N3@s_7U}gmt57JqndCW+)`-VsqifE20RP>wG=ZLma4a zX$u8! zuTPY+h5-EO6|xBNend*Jc3m?z#}r73kee0Y$>7|--b#8tpI5zBdPVVLkQKp?;ROU) zd&CBf)iQH9GdaC)e1jWz;jcw^vVj(AC@*VR^GNRu zBJBMZC4YmCfw>pm8wP%y)0Gc7l?T!i6B)Wi!8~GK;Zr}3Cjpx)7S$k8_c$*(c`+&3 z9SJS*v!9`x3561rm+Dhd^jZ8P$aT-{mUC2qzLJAMJqMpzLBJDXqDCXoChn_haTw- z$w^5jP)64jcnGI1f6!|SX0T{<;rgZLEiHKa>V0KKW_mF7_^9*G>v9kt0VOd7(DXnE z|11lv6=^tv2G{XI%r8Wkg0c+Kwb>1Au?hFvc|KE#odpjr9C@J3!!=bfb~+YJ)NA>H z7kRB^<%aU$l4Fd0w*-`=f}!*T4Pv<9xIYY2cR`uQ;JU;&kWM)V2M4uEOkq3U;%%g* zsJW?$2=i1^GX~(ez}AwZYf3f5D6i#ywd>AKoXRDq%TXv};o})sH<7{%(#?9mL*O$g zc8kzr)df9X2Kj>=M(xq@4ezM=l|l5{7>N^b$%7IIl^}ExU;xp-pn+=7mhoVof#z=n z3H;OKx}XELZ*BgRqOn&L;^G(mf&vC=OhHD*?NQMG%QlD11c#v^iS0k4-1k{k=p01) zRzZ4aoSUp+&dJNmv)`%@>`l==+^j~-`(|F>@M=J4$aRX(Q~~WV<+J=yoha0;BPO90 z(m?t+8)!W<#`l+xkm~f`QtO~O7gB@)5?XE)SLwQC zI*_Fq3-!N^vianw0x0((-HI2Po<4)p3$#}JdQt%Z!z;BntnX~C#R=K>V9dri&;s-E zv>^Euvh(4Yj_B*#I=9@(wYi^(woVpUyq^QBkMW{W$qmGZhIlGxSwVYQmPCNuUaLr2 zMxjO-RIYDt=lxq%nJa&?dx{!`62_+@5$?~(QAPN?g8GLJ&_y3w{6ARw&&TUXM>Q&* z+fGSOy3;rMqLNV<@zRdu;9*kUIrR{AjYJ3;z_?TYMkhMmBQ@!t)@sUh`dl%{Z(PP; zrKv;5QQt1$!z!KR_EtS}!EDP+!BJ$*qGP%C6p+<7%A>!(fh-R=ax88I3H|^1EisZJ z8jRO@kff$djO1h#S3Ay$A?xgt@uLI+xR3k6pkEJkbn=%bBt=(`er`! zu8=KaBwRmY{ChZ4LuAVJE7K+~_EqCdGayIG+kBAaROU(jejH_g#PH(7ZDm;m^5Z*| z{2l1DFLEdmNn|1Sz@*Q92loLp_hJ)AvM}lqQHtoj28R{9B7jTb#&Q}g(&AadZYtWB zuDB?3FhF#(Cp=o}ugon!3k@Tr$;&T<3RTG1g@>`QrYER3{OFl-@6pj*8?aN-ibD9dd2%%D;4g|r|;BV2(gvINm{&lkbzO63>H%esr0!_Q&;?d97AdP<4u&#JNjIjE?RfpJw*a;e*Iodr(o>RXjUGnW;EN1LYF*ys95(-YMXscdBwV^qNi(<{t_#b`rp z-@dg!2q3mNEO}+(gYt5`PvLvM;@nl^8|9-}Q&ak*m21~G<_CnkYr&P~?*7ARaVKQ+ zol*L}szi52=CG2(k5nd=6lR^dXYPQv0h)(0GJb$FWsg zpAJc%ppVD}juunoSC{h4jyn&m9O=C!PbA{vYR1Pd&PxB8vSU`rU2ZM7}QT8(Z4L z^=u?oNNx59=5G`e#$cWRN6dYTH-^)n_+LaD>jngO`wgV!-G1P!6U0!b8a<>TLTdcMQ@ zySr+5ESCQdS*=d&TNlu8DL>xK4^M^kjSD zD^Hy|V|@xNvqq;B4GMd&u=E~Kn~;qU<;HZmjk%80j2x=jC@O|n6bh$<*1>r@DI0sP zgtEqpib0n1G7I_f%GxziKl{CJxgfKJ_L=(QtUC#h;(_L?THA3X0+TvUCxQ z$T-QWrOBKkI;1_O(KQ__IT+cVdi+ed)AenbMd7+Nt!A$Ir{?sIo>ZJ@*~XQX`4_>g zxccK>H1F^+C7#54qt0~kVEK8=h%YwTnk7Pw-$~uoIbt%hHe*klrT=GNk`AFLkdiWbUY+pruaRX`#`PL`^<P;wv z9xZGz!)QIxv(Dld_>gnM<_o zDW%jSQ4a6tf}j>7q2TI}f?%%-J1=Eh&+uZh6 z=ei?TI#jzkYvfDF4M*2U6gJvB34%1F$IdM6Y_QZu)NCLYd5R1E+9R&pPmb-h64x} za^p8g{80QfxlkeFGZV9`eX)j92b0&LyW)EjNbYg^JlQ0;oT+N4pjWw4N>ba)G1^(U zUqzTT@G-29PO4&p{2?b=jzW5Jt%_++(mn3bn@}ls-u}gXDh{3=a+M^59hpTl))6z= z?JNEu+3?wR5hG#2!7vS?!tXq3O7~~YtZdyo{LCt8WT;Q?K_dRVG3vDn9D?!2jm2eu z+BDhf1H451>O6#kJq|)y2`57S37I83zQib_cSPSk4$bOVm5FwQtswn@Z&7X@i2C-Y z=iRH1+r4KifZAPwrzZUSskyj|5rYB%D&;zYyYM zurHwsMZJEpztMBTg;9s~u`46(i#CUK_w?KF%j=_aF{AN^$R~t5qlk20R=J}QTh3tx)p{~su>dN)&V@8mE zH&@m&H;K9YJLlh{$wL?rXEu4&#_x8o$@NWKleu%d#XYGY1>c?#`;5g@0@q1$BOA0S zg)K+q@ha}PVfA(QmG@SjE)_I~ZJo(jW)o|}%2wFz=j0`7pLp8~1Gg?cY)X8w7b*Jr z*#Kj2p=Ha$%LGjLj+L2-sgW62X;2~wZ^v$iBF~V33^Q90C#NP=`XYiU&f^6jFPa)* zH|*`VTSNukN(wG3lcP7%leC^4G_m*qD+YQ)`K_WDX~JbI{>dpVnpgwp#ZcErSFH{$TFS@`f! zFTYuP&}zypHjfHL6VFu1EVn0tjB7M;}zW#y7L6klCf_-Os`meWng6{YKp62$^l zJr^@dQ+~K?W#*kT?fkheYtLzFg{gW#L6SA^HWRk1!O88lbuebjetV#|-Zh&tZSS)F zo`0P~M)`REivhz^76B_&o9oNQRhRz;s%z&chTJqCYBv0iS)(5h4m+`^*&pj+XfeI) zUkJ6BB>^>>JnqX6E~D%PgLO_^rX--&IV!c6b9+F8%dR+v2Y~p=0*9f9;pUyeV?8^T zm_)_mXl|zGq}9BEiXRRD|SiU{BEl+YNxbPpod!ef@93Lx!?hqTdTP z5icJZJfGrIH=B5Nb8O;G`a)yh+h+2!gudc$(cwibxAAfIgs<*awemHxERHhY^Bj+Y z6ALo<+R8tV^lS@$ciAtzEaIbkkBTy6?8iV{dPI3s#RP{>#pc0^|JFgx$nR~LOwF+( z8kN!W&wTXod?JF-N77yrG~v)Y_Ni4oMdE~d_02&)7up`bC$tBh=ezhtCrIj#3ZF?= z)Dm%3P*sl?(+%IZ=$!AN(+tv>HP0Y5zdYWJ=3?szk!#4Ifo$_Vuz-j z)iW{o9#hYR+FRqHq_svo($W*5R!Jdd2BP`CXEV_Ts;g!zGlye0^xBn)wn0h;yu1osdA^;Bpsy(N#2<=Vybj_#k%91nkQ0d8zOl~kk z@QvFaF5MF$x}4>_vJ$&H>mGe*mUGThQ9AT-g7>Wz$)rw&V=qkhE`5F85yRC=ey5bO zl$-l?U_KA$ox-m4piGycPo9KfP3Dc}TyC2-*}mV0_6EAPD$;k*dV{;e`Yn-SoR`Vy zK`Ro%lTx~c!eX7`a`~Go7agty4>%22I8FWzQ*JS{U=$p{eVb|U=H$#yBi2-c;JA>h zO`=f8w$&>XJihh(kG6tT1EFvriw0If%<;u$czI+u`j=$Lmaq#yr8I!mu~~;QlA=Dd zvAmfrW($={%iUmpd)pfWBBZc7N;i(YQn46S!nVrf$FQFOZP{2o|| z6)BSnkZ=94vnhv@6N=_8F?H{mTP_sNja=lUtE1mLwspvM;!ItIRXIWVBf-+%WS5p^ zPOjP1*-Bf^e`Vi08GIj_E_zR{H1V|Q-Q_H@7Kc3$u0Z85up82sqQn9>B!5Sdej)S; z0_*s^@o*YigJ8stMXH%>%*P676*^~ljlr~ ziMt*WDVva&$T~cJesObV@@x8+d(j7ztHSl~dE1S3Dyk+zK6fS7W16}Z-y3qZ6d!Lh zznK~O23w>&`uN4OK9%_yn`Uao2b>V_j^OpHTg&rC2jueW%cnEub_TQeSza(465nVd z=ix-7cRZXpB5_}9O-xg{T{bDA2jipAOXkGp-lv}IZTT!8BR9QPvt=@0vYJ9#v?*}Q z#Q#A%MVVhXe??Gl@2S>wxcN&>xjqHx6N3V%&!!u)0xyo_{MHCS3q1ra)XJqSm2Sr3w zj7O*5w#&pifgu#wdK59YXplcc-)2Qe*O6PhdA*HtAm#b3WW4_zF!cNUPU> z&p+{3c9%j2kL_oj6%`tm@21j!%`Lz}e(-BxI?vzSm{{h*amqYyGpWYDE|FGY4qGLs zQdbFwDS;g2{kcWO0|Qg<(1Y`_*3DJ!RQcGo_*5|7sd@78M8 zD5!?bsXpi!{Wj`345S!)+e|BMb)K9{!jxEIK~%_(w|%v2srO4SCZaXrK)U4f#IqlY zHAQ~tnht34|D5u>HR<|c)~K6h?P_IF);bqw1$XK02kMbWSl#5nnYiFbf-0EF9+NvGL?~D=MX`C{NEAp?}lURk1s|pG|INZTS5C zbnLDXHCYB)!hK!&&JxD$`=Sas5oc{&)}>=sJ4>V=Hp9VIXaNc<I+Ws1QUkdCxG~A+l z?uERi&4>1Jxr8O!D^T|JI#O+LS3y)!yKD5)GWM<*cgNMwI7zu@-cxLHY+Y{<%2;Ez_!Uj(S6ru<@tjYQ+Ty!;o( zm90i<`wiU8vL#3e2#Uw%f_R8Xzru)6{~3|!=a_+xrR$=-D+m&B6Illm%MF#TH%Tbe zXzj_rAVS2!Z)d@SsD#+Q4aBms<(nsPDu9{?f}OrAs)nWFVU2`uPo=Jo9chX$CivX4 z)M@9exu4^~EuBg%o5tqta-*EC2p=P$aU!Bl2GvV#r`xf^-7dNSPs$dB!qac`TODXz zur@bKCsPiqb5#z0=R>2CP|!GBeG2 z0FqQN3orK$fWZWa<=$~Pl=z6d}-KG;(Jw?BP9bKVC z?VRcBt*mSt8*Ol*rCo4rnY|McBVD7h$5M?_oa#m%jq0l+GCgb@FM?Q>a$Sp1VA-} zidv()k4)aq5|h6g1w0keM$98-I)+G76L%z}_ajCURQDY03%_Rd4t;kc$ghbY!KURo zYX;6VOx~7ZRZ|+$eKo!BQR@1h8h|?x^D)@WAwLw$=6L`!hy>uZxtdk77DxP%uT_Zx z^gf;?cE!35@Q;>j18!r_d-^}Gr>r>0B{-oJZy6hx|>e~&e{IY-j zyj$U)3a0!n#WwPrtm*9+*-lQvJ2(;c3~l4 zLhF|V56O>vRu+BBzYxR!9w6}*GPpmffEB=#4!e^wgd95p#arvH>!j&?H!5reJqMP@ zBUe+d72#A;S0#f0B&h##pLWfR>X_W;eHALUoG_)b&LBZ$3v3A31xuBA{814()-(g( z?={D%f)|j_BXt3#a!qn2MA&yMZ7UqoIFsHHG3h4y?#yMyrYSACPV+g?G=yd|zlX*H zl^9gCAzxYl$YQ_dp7p$AC9-`+(4}Toz-VBho#^7yQtk8wqq|d{{%-9w`i0_FGdw#Q zd(T&-%_c(mN8S-GhZ1v7MW@Dyw}@sbHk$gNFa%K3oU!IXUZH_h;^6TJctSTMj9ojc z-_XAb-hlv>Q8{SylMz^ZBnU4r8omDFGZ7uNl#Tg37gHd*fb0Cg!8PV4<|%G|WLkMKy0DLjf_291q{9{U)0mcsbp z&rWk|YcD)1SiVCJB?6UM#4r!SKa9rLrAyUDvdsuDwa#;Z7~VBoQMDH}jg6I8nCmMb zj%#|)IMzv~{-V{U8&uFCG-dW)cDp5?7%_EwLH|@mq5G!?dkwQ{({jJvGuw)#4Mjm9 zZ_axJiNh?H0&vz3SK9X3FV#U-ZTHllZnW6?0F^end!S?nqr);UNwzJQTI??XI)BelX`ae}R-4~ZV@AdxT6DM&L{ucFaVl9-WG%2e5q6+yaeV}b9sCuh z>CbDF&@!if&6N%-Jf1nEj7lG@NKa`s6qWHSCvGQaE3EfyHkNv*^t-Ox{^6~h|CA}i zAUReZKc;+%0v>mRN2()a_{XQ3f|Z^-@_WdiYPA$IwA+*98xS|LtX|)7U74XAqA?2)L z@GIPuyn0Va$tJOK*Cm-GWg{VN^}v-1rr%-CqUf}Mg64d9{&%-Y*5ktOkMK0mEkVIiBXta>430sbr-d$DFQoeyo?M(QwJILw z=dc9N;xD|!<(#d^1HuebussNM5YAh=ZuTjpAu;6HR?K`-IG=qL^dDy-O*aB$X)C6%|QJ%ZVbgC6vhCBPy~pGP0v#l$3;CKM)gQ_^zTe~c9>?(+?*W(vf%z4fNfa1q z4pSt<$vZuF6%s#P9@Vu#p^Q@x7ubz0Mkj5hebfS3*&F7cS(s?fLu2lN>~8MRU2qUz zP&;tTGEl`xhVlFN>3VypHOF^E9L>7t%;#F^QjP7@k52ftb;1C*$A0#Xy~dq}K|$^G zZ$8HWVOZaA?o=6}G0o{gk#_PdF!2!PzzH;3?0&r6Hvs_jptoO_&%q7wq}d>SFf^|S zNG{cSDlseuNTa;~GM^R6p=vegx_taDCUD-wVeW5hue1FgSctXJ3HXRq8__gf%{E!=A zZ%;|aYQo0X{^>9dPkr@y)(}Oq@vSd-=Uv(n9AoQUE6YwE`&^(_vop3xv%(%1F8E=_ z^4%0wv6$-U;&$C=))GCQ@3&$Uc2Y6S zonkt2`}S>Xfi2FWuVq8HrGWgI(o_KGZD6QNF+Y=%kx|i$S!W7_ISa2ocp}~a2fN>= zeujI>pP-tU$=Wclfy0xbXe+0Nft^gxKSb@Q&|<~Y@o(#_s`_O&rL4BHEqq{z?pp1` z;yp_C+&HPj!=6>PQuoJQK3YE6GYVR2u5b39UqAH#+CHjKlFel`NSbE-L=lj_RX6*C zTYQz6bNMZ~(ALI5genN6Ael2J(@-4#QODE?%)Yo}<-~CyvMB)Rw4})nh?!=v^yo!g zUW0f`CQu7CDuCIJ1jd>~5Lxf%_s_AQ#MR^<2Wl%?h~;WgG(-ndc=AZqX$?5F{=>jyr536zjaOyv!dS(EKvCEb^Kd=MWYji%H{s%XN2 zdOa#Z_=XDVJWrpxUs3$4rOdx!A`mARgAdJXMkD#dKE#v@!70i--%(u9+i&nA5CSETE3^ zu2+)wf`VX#D{%Z%K^V;u{|pZD%+i_17C@j_9iVn=21SrOz}5g~p{#lkQp!>9d&#~L z7^q7>$SAdW#+9SfM#3-=zr23!4yCGAhE??#x74KuRb~9PDJaIOeBPU;0!8{&b)!PA zs>@!Ap4hOnAIiJCR1}ARlFn;pFB?5)UWLErI_z}yZe2+nwIx-|O5(01bp;6aq97Ef z`otRmU0h+>t7XxS&aVNB{Ts0UvSg6s0^IMLoBJ#27%#EN03{fRrY&&EM}z~YHjw(g z4Cj?1@2(z2gd&J&tVt5aLf z708WJs8(7^0idgFmYix;bM(^JPlup%gS{esgqhB%bkK`x?B^qWRc&o-Dh_b^QIrbz zXfGmpn=xisA-1VjV%yhQ8LN%)Hs6F-*&N>KLEpBFE}b=y|0B-wy&J1u*jqn1qUHwX zLvrJKlyT5w;W)hCM&JYeE3GLWgY2?sMQybe%7vBkN=0Y!bITX5_>EXh><_VAuBcmE z5KO)Qc$zg2%GXb?1|;s1y+8+WLn160V=K5`+e-wPFpri;FCCOxOZ{V;CmSj=+nW@f z=(*fr+8m=A?=(Xd3Q?=Da<}IvdKXf^`Wy$Ib7Yj}I~h|7Mho3ecckxoYBE4u{2*IF zwy`9~IyKgJs9SlGc17#0=1$F!oN|S!MH+1zOSVUcQ?Nyev`Y)M(wB3L>zzHIRlK3( z**v+zV4n%G&FwCYEY@&^%8nS-#*y1z%zdioq2EwE|7aMu^?~CGuQ)WMT>K=V1om^v zM?GuI8ovzJJ6CPSI$z_TackFZpe1PZW8d4SMLTJFq|WPqxa~R2ZkCatmHQ!~9%_U= z&KKWR24{%Qyy<(Wwnf%fh7YGf?3f%LC-k18w6~h|Oh)Y4pR#nE9s7&oPV{|t-l-I( zDZd(AK+i#Lw%Y>jVv%ew&-WWpe!4SOMd4~+tfMr$zqhF^r-L-U`GTfZbZGMSzNyF3 zXT+faH5YpRr9;7YtS@y}TJNe;X?2wqsjO`nfG#z)3zt>&ht#s+s2n9=qTDTLQ>u(AKjqdqHn92Agz$|LWe$Ls|GRmo*3<#zrD*{k zby>%=r3HlrCmrglPS}Jo+gzP>kUcJbn{HvXfbBBAtMleL?lbu!Y5LfPuk+p5+|ZQF zD$0Ht!_Hq8{FYCe<|R6B19(kgEpJCgpTA-+OXw$zf?YC8$9$7~T>)UCoc6bxO*oA31VR=7g;z_;ZHvQ$M!lg3QJI|u2 zMVYbcRPrbavr%4DsoqjVt8zS78O03d8cSHdjM+Hq zOl4>!;%I;9cJ{BA2o?6GUZ~X!vlfuy+Sy-j$ZbD$NITR?f7g|<)L+H-==BaInm_oK zf_fM{bTJ+OuCrQWYj<)$XN>1$EaWRXWf@=DGNxJVG|D(M6ynht@5GHdozdfbnXJbw zJt5>#NQ$aE#df)17wvFU?=-iVo zY=wLtp%e~>IPhBAt5X}?V7gEk|6Z9db$da)R%($_im7~Q7?pigyV6m|PJ4A5rzs4pt&L;u=jk~C zGpgJW2ukGh1LLApZSZv__&(R9S}}Qu8ov`k)0~YZ&*97?OV_bbHqb1^Yx||6Hafko zRBNT{4zAz_>)KNQW5{%FT&~d!3$gby6Ns^IbErP?wQ&K890>HiT&ZC^pxX%o`u3GwstoWSg4_|Ovmn)!V0HD2{b zM|G3M1*~`{fHFn737AaL57X4VD-1;?;(jNljH&Wn7*a}JGlVmpT4k#{`{4U zC%~pmevB*imYOD>cqc7o@8N=AfKZl!1JQ2Ya>3z{Jd?@=ai8G9uLjK<>71?~$A zd&?m$aR1u-u2*%@#&|HA8VNRer$7}jBB(WH#X`2D}yFHfN;U)1V4vZrq z{-aEfJtAuNQNf&cnjH$$%nV`m>Ey0#)<<0;OU~()sO>?5dw)>p_h5VZ8BI;c4;5=VpTysl zW1rO_$;Q9Z%z>FH4-=Fwq%spcn<(6#h z3(jm|*WW|S<8xJcWA}EWbE8n1`z4b<_fS3IdM3X@mPyD1F4AQk)k(SO($jrq?|)87 zDL@8mU3_>z)%M3f$mPRXp%Gysi;AzQbf^q7?j)@?t%;JvY+r zqM~&1!rU7L;RG%1W6k-ERv`gFL*oZ<8kq^(#w+35nrErwx4M4F-*Y_))J*SQ&oE6H z&MrS zEgv!mM?!Tw~APybC36@mF7K1fQ`6v@;aS zm7El}LR=+4OF(Bj0a|4nlrdAF(u|vJ)k^wuTU{eRuUIF`#0#(Q>Y=-%dF;$Y-%Fnd z4|P4w=F1Xn8nxB%!D{;*`mXza*16YS`PiYtRm?Y)--;`Er{>pPtNN-bMoYQ|!Dd?5 zF5MAto2R7v$m1r@sFitL)mTo_#vphZWT2-erZduJsCV>scXR1v{VsqtUN~4Bxi0Oo z>k$vYHqGWPj4kCT%fDHB0&oRy3M9&OXz&UPh138{;bbz^@005M7IfW*x)VI=?C zw{?LOLO4+(y?>r+*A(tDppSLfWI zA75;FVYdEh-^gwCpy0u8h4-UUS+Pe;ic;#=S54(<1MQjE?cLHLDDS>|#Fj$cd#KnI zXb4a{$>BGb=6$A&kD}02ZktzXE0@8NH4_CeyiX0NOy?c@?jNFFdA6>|S-vQ7=m1yU z0ck0-_IqVNti3J{^CiNWgy-)#KL-_p3vyn06{U{HM6Q`@t~U2tHmsLSWb^s#KGXN6 zT-y`1LpyCRP3h{+!0W?iuBo=T3Rjoa_I18-4y@{Uop|2~?<~7De$4qB*@UmE!v?~e zPS!C~0T2MK43wgwoP@$`nVQ)Jul2q8&~BFXZ3|6}45P|LxzaWOOmUntX2FJR&k;(yj&r5RlgF@EhdHSY>>d!2Kq zh~3!O|M{d=d~;b@@sYkiYWNt}D*dEj&w~1RfmyvybFzE7muBwE*VQo!$~$(!jE^bU zmG+AasM#<6%$%Y222hd$W6wypS3`w0s|IG2JWT}4LlUS8YNi}sM8D>XJ!LgJ#7L9R&E8r^$rgE@XivYq+qw9fT`J@W$Wyf#Ob06b#<)}(p;K064}PU>&J7a<}P-+zU1>^ zev$0>;r4A$izQ`~S;x}yl51wKS5i}ZMt)TEg)3gX=zu%>IyHMHQIyS*eQmXb~@VdXxpD}g0fl;%dc(5 z88r3APP^7q%JNimz7jkb z2M4xDlOSKN$o0s%0Xq?rU}u@WHZmAAVga<9&Odqt2-m0TLOS&<(}*2Cass!|{ng%- zXG&T1Dew^__X73`T-~8oITXPYmdig`mgCOzw)RhqOJ+wNI++L_og`EMqOI~4Jqt|GMA}shIT!Jcd6Q}2ZX~NyLrqsP~_6dv6&Q)Jm zCS5I3r!E~5>VKT4&>73ap599SP}}$7MY;|4eMw4|Bz?Tb)0|i|KWB2s#jjP`Db?lf!mkUU@KF6~Hp2;G_mnRrU0V?y?? z_TE|w16*+rwUX4(T|ki|^p#_mF5loZKKYmw-01`~9Gxa__{X*s@&>it=rETL`gL#t zGQ}a|TWbrqVokz)=h>fC2zM=)+p0*`K0#~!H+AB;ampTlw)%8dCFnx3Dn4RCS7bm~ zZ#2qX^p~XAw<|?I>?+L9N{AmZZQ|<*)b48<>D`Cb(8vQIh4C{err1RcZ<*DiBc}wq(C|8 zUSC8>n_HUnuEmwjCbK%{lib${TnPp|wkDW%MpZ@l#ddSgXAuN~%8bd3MMFr!MjJIJ z?)80*`)tiM!hgoL8XZAaaqKr_jUHaYM=0S(cJjRC{KWbgVF``i))YKF|4HKrr)y@s z>XBf%Pc{GnI|#&O)$LCK{l$uZX%CC0kSeqC+aEiK8ASQ47kFBI!I z^d=~QZ;97ufjaZP@A;nFX<<`>Px0*$2`k=rq3PF4z=@!DkP`_fq*J29fcJp5 ze*dslT)sl$S+y~I3str z?pu!aKneyx%M(xX!3L_-v|`UdihKL3iPWTrK})AR7@odvVs^|7ziB*a-JfiSPl<-J z?35JBw9UtvY1!L`V+;)$Gb>vYpw>?LYk}^6R4ujf2m1h7WqrnQg_`5|I^ATL-pr z0k|R}3cJbZ34&fH1brIH69TbbDtTlAI{Z(AGI%hD&k=(Ua&fbJGG?h$9%u72;!pV) z)9u27$w%=%;x%mdQ05=fd4J4Ed92n_ z(8`R7awbNFqhtdzyKgnL^O6QPYmCvX6}Z@lmZUyQS+Od5TDnlq@?KXp`cIx=&K9!f z8w3CnCOj&?{!~J_-Jz8BFYI+8C#0NCsG}k&3O`SG#}RpSz$GBY_$^?>aYRr9GfC7= zvyD->N1@y=z|=|A2XI^9juK#Tz~|&aLKZg_i82eSkEB_E#XfqEki=qa|41k&(ZRy8 zw)dv2LbzrZL&axcUCDn&KVG{qFePY4k*n?vLZgKvP1z3D6Dcw}Nm%;yCLOH|pi%k9L4ybo z>*$QsB9frO*B^@RwD!{Y8_}-ShZW+-Z#%NdbKFM>p#aAA9@KZ!!y z81XsOmEfh#?|XbZ!sT8}l&fd82aC;DA1Nj6$^glRv}(GPYxgLKwKMioH*@HuVasx9B|u-6r?~KntGuoBmD{sQml`XNg;{ z#@pNX5AS2d2OHCTiNB*X;jr2L@efMkdcKgZ0Vk%o{CgG=^4I)`xXv(9;jnxKtQ8~9 zeTtkg1Wnp*1P$B%^;WREMqe7YOGT~G6O={%|osy|mv zO;f;$3T$Bz^d&(ic+bp!5bk^OtGlfu!3bd-fExr2W+VpyGMO(<$ajDosQ4jeb#3Im84tNkP3^G$Inesv(;EetjKpDv&%X7_d)I)|9U3AirPqrzl|O?O|P-xD7n zU*FW!xw1IhZF?1@s^tVHxy?cF^c$hg3iAEJ*Wj&;j2!67FzyheCJ|*rL&JBjpd@CHuk}|Yw9{W~1@htbNK=^3XR7K2G6(<-^x-16k#PHQ5D`cO z&Dm%ek8#klNCu(j?yE(FQNT27vZYVmkKh26X;AHM1s!|RL*4miFFyn=J$I|8=9#~@UsB*miqAZt} z|44CT!O@Taa7n7wGmN0CRZso$ia{v%Z>G;_p2;hI9(_+Yv?V1J;9;HmCI@Gr>E$#< zQ1XhUmWI_8GNT(!pE?2J+k3`tknX;?p?!IsI$fzL#CWjSzc=H8f#0Az4WxUmor-gAE5C&Za39?ZhLP!ovPzj>S zV`J^#Te_xJT5Z<%Fg~mCbN42QuE0!-st`B*|Kg{p?Z2+~Zx>mZxYK^gm<1_{pap_C zT#qPv8=(miuOap`g@U-& zRm~BnL)#K;XZb*z%nt}wFzkXbYnONZF}i1SV-!ac33i`iPEFA&`FgyP*cfAB8JH4D zj{3H3%ekPfL`*7DvT1BKcQh|37L;w>I2Gou4-h5*6r_NxKBuwy5NzqeX)LxKCxd1o zVI~gwZp?(9#P98?hHi60I92qSI|!J37}A~a`PmOQU#{^Qr=fC_IfNK7U}y$mn}!|6 z1W>=yj6LeG2c!_sBRfSqUyha^m#KFf?0cf@E8+)4R(obyJ0#tkH1v|`zm&c(zW{LiCCAR5B= zFu^k{y(IdBJ_$xDPuqW~b3b z3r9S4VVOCujmHMV^mkrK0BGNVQWs)=9%FsZl9JubzA;1?5_k>(ZYq!~1kWh7bmvRP z1bWKe#~Y6gjglEoqoduntUd2EtZUYd&v&QG|LZf)u^~Z=sq+65OOBqZ4KVqyxabY` zEO~bGv5gfe8X9V~+Mgc>Iu%A*hW2dPwP~TQUTs zu-F{M*zU90ZrcdTnmJ(qAizjB6%GmYR|ruAe1Gp7!lBq2>t2!H&n8jRP+_B1VFGx| z-3%w3I5s9#)C(l*{w&O^=tmQ^q2T7jj}x+igE$Ri-pvb0?n&KS{sIeHaXN{HPdZM- zqeGipGu15Mm48}Aviw8IM-dPIhibV0Z**d#8ooo^N&V9m)Ft|JC1DT7O(q4hfD(;_ z)y+|<&1rf04oN=t?C8>QRr%eLI0erzD1@o#+c7fJRf)O(J*x8*8b&@aNYoSgVFoD6 zwEz^W%l9bZ_^t6LfLrqZoq`Bl0L{&4Pyy$}BlEz%GH2myV6N%Uq60|83k&^lm?Jj^ zEV$q?xvgX)?}2eJgNPOZZ6f@^b1)B}_6gP9@ei<#m>Y8KtoEKe-0VunaWx4nT{OX1 z<;DA(6b?dQoB`gPE#SNG{qs*`@rQ(M54p~@WJOe46k_@LHSH}|F1s$xPvwCP0sPUc z-oOt%l6&9LpTInPyX)L#5DwcQ1E9DdtI2+)nYmZwb{d375bu;&eDMZ`zteN@i$a0j z>~JF`>V^L!_O)2w8-0Vj?i8__b_J`Ni#Sla1=myZq9(B9 z1P=#%F1xU>&hpPmO2@xSTY1$H)XlxkH^UGfvxz%ILD05eX(l;potJT~SCm3ovuR3_ z-i%*FzBI`1?_6lQa+C941!$8;Kx+(?&I9*lvPPqDz6QiVFA*9{t9NaCn;mVmOx}`W!H5#-w&?d$tE}W7t$?+ za+~;5P*AuOATvgg)}?Ti0Wdnm^i3ek2Y*D3nBRDxI|^Pj?ciO~*;`GF_538uX5!Qlz4B8V{8(m;I#9vBc&N~BL+d-wb@HLVU&Bm}CIIEZgRbXMBm)I6U) zl3T^!_R&*GYva-51nn9al>Z&Y>!8cjgbBbLJ_zRqYm1{w!9t(9zhl_<2P~;^wKcyk zQ}6ooqUT{6oKD!^hqjNx?_8LmBsJN6L|Dj{b92u=3MUa7h~HXWs1T-zdw%FZF+HJi z29M^muPL?Gy%9jPDd+!nN22aQhU7*BIeL2~HJhf}!3Skj@Iq*uw+){fJSx2N&u@qg z7x*Ii{19pJ{{I|n{Quv^gupp1`kiy9xWDbn=m7aMP6vONF^|saZSa0Fu5A64a z-vXoI|Kt||#$bUjUz&k?CpaZPKP2}|4+xHdf$=#xT%bq~V$i#5j7Th8=)Tk%k@Wo% zdgI$f+T*lrguJT+Y%iY+l{Gxu>#w&P;cz|}o_%D$9p0t8$iztYH5bDxLTNRai?MV$ zgx+mYwwUV|7ItuqIf`=k6+*@Xh8P>+JMkw)7SP-Sa~4%SJ-s-u`{eNEfA|a+I+_VW z>jG{SY$`S$tp7$l-|UOf&ynD~OE2V*r1?92@L%Oeii-sAWd5PONG80OPtP{K;O?OaaGiE{T?RHy zW9%h$tA8b8scvR=`UkK0catWgdld)tIyXF(!3GqfWhqqV*v{nA{FQS>SClPV!U?oI z6?JsdK?hPC*`|S`9uGJbo5HCLX0AINKWxa!>wptFVk5xu!R@x@Vqj=!3a*j8d``9r zKV9g0peO|XO2P|mt*yn@Nuzqmo&_90N7lfQCBvjGVGNv?b``IKQyrKCu_4I6z*On% z+=sJGqbQUpu;@*(1Wn3bo?Euh;Wk;`o92VY`a7Hcn_PBd`&)#;oGAJH>XmK}Oc}0=C9) z*5KCDI1i++DpR@3-3Du@abzS7UQXdz&ooONvUMGYXk7vJ9$^mgOA(;p=isoje|x57 zSJ$kj1IU9SKd)3MdjMhMdvPUm%wIwsN_q)oCJF-T$P!Gr8@Yy!wJXcxfHTw;E`E{M zcye|c{%tZ)v*U(s|)yt6nX%$-NH0%EgWrh}9?wkId z*<)ZkiHuy>OB#Y$THaQ!>i~Ld@=UR{=26ScR*`m^f)ptBluS%mv&^Z-DQ$E z2H1YfAFse6&Um~%S)?1hbTZ%{wnGXnZ{en_1c8he7#y68rV0i_e&4gby~*X}y2y|U zsy$+AEz^S03*;lSho$~yDJ~{e23(xMU5J%~BZ$Qn1Uj7-dhL1iYoGYlO)nGf;Y%&t zL_EO<;OO-f2PGwcklyTtnR6z|_QX(*9!Czwu#!&r9un3&tG)uQ>nCWS3vv z_wGV@kop(tZf$EbDD1ZT{wX`-5LfYKXA#OxDN=ALm;jRYS30a0xuiFTQgXTa}B-l={A7WcCbL1|T2bC9t>70B?c!W45L<-`;~+sr|yPy*gjP zvJ8hj(UCJTatZ^7Ampa7`t8K|9gaKQ&eotuAI;Ez;Z*Re%w0pAnk_1nFI>)bxw{{k zPqRy*kDEi5KrNC?xG;X3BSHeUiSU87PZ?98KIw#)hY{^}ne_!$*#%+nW$5LyuuVS^ z;UETdF26=YpE(7ZtyPOcGQco_SZ;|Habt(>$0ynDv!9!sXi%w9r)#^FjKJ^e4 zf)4`p@O9*NH~jdM$?ih?mUqoMU>5Z)x%7FQGI+B?L9-Z4w8T8=RvKwS;Tp+3VO3Xy z$?9CD+v*iaBA!F9!q6}Q{2XnocAOyVjqIoN<^h$$;`iW2HISr2(1P6Z(78idAZV;D1msdnq^TB|<*c1(Zq%sneZecg9 zo$}ak1ukR3jpc3$b-+R!v-K46?5EC77LN3|4l`c>MrHEw^noX92Y6OTgBj?V(Yvs{ zeBi{``YiOj^=E0Y)q-a36Z7tZ10ZzE3)b~!Y1)M!bDPo&`%G898=ar+>Ce{pLN;pp zEio5s!O7QPWomsbbN9Y|My2rdKX=$M$}+jgCIrg2wNUsrzSUjO_zQd>o`64I!p43bhY`Ud%KV|(tXrSCz%8Qh3=-KLgqi0;BrSsd8*Q zGv=KSV7^?z!GRZX-JYPG{}Lo3w_Bx796-rI(;%cPoX|V?nmY-%z=g``N12%``M^3C zxy#x1ySEs0Eoo{LS;r$6TEb;UU3l;$_oG0A1K3BFIJS>ctXG5!8hhOF9pqc}^SOb-=UAq<%8hRyNZGxe5#?8^yRW@IX9e&r|*7kxmP&%b^ zVr+GFb-_sJ?8?sdp^`7b15I`=E@AL1_?ui&aXvjgJ$__lq<>+RV>)p{`c!<3{5=%y zzB&Jc3P~eia*kg||Mue{LA_e{v>m9wj=3rO1_eZi%}7ya5u^DB>P2GSg%A{1MLWpY zFz%$TcfmNWM&d(LlUvc+%*>uGTec`>c2a6>!}vYR2vA~mBE!6q|2aKPGdMVS+scXt z6peT9&d$r*J9$Siq|q=yI{yAXQq0~f@J;XD;PDo>EG_FMC(XI(eKj;RybW^?=p3{^U6PcH#hG5T zx3_P30r&Rh7#@QO<`WQj+}GFV;NtQmF)=Y_1a7Z-2i(EVo}M0wd@WzNuuq>qKl1i& zXlNK6A7^zqfD!!>2A6g6Q+Ky^T3T8S7_i95%Dx>KxB*uO|A}>?$B5DqUZRn%=98P7 zYh2jf(%sFld-wA4a&}SCfpEDK+qQ4_VI;>WoPm*z67B5l%cU;#Q$8ntJdB0RqlBFc4BS)c7lydj) zsG(3t3Q?#-Iwy|7UmPbH>EJ)2&Uba3)$Prk-HaVgQHsXS4mS4AHkOb6aW!>xvb4A3 z=i=qz;^F+q!r9ruNtB!0_P>tcvUfD+j&js-gtMGP2_I-&p$tMT17>AKJ}<|C%M{@GNRE#p`s0^@8nr!CtjTI ztJ1owk``c%o(=O?(9BX$J$>;);OP^O$s+uvW8Saq@QOt0M#|miV{P1aL03kIIK_Ci zB|IOmBkf&@H@*}E_k#SqE|&HD`w1m&djcLB`7yFQqVxAtp}--|zn^sI$S(Z-#2Jb@ z_4iZEJ^!PBKPg=OeCXhlfBG3CvV%{byZ-m-{+C)ii|;l<@slm@&&?Q@iYQC%mcp-} z>_-e1ZKZbp$n@I?`D}~^hf3!6a^F=dCxB^6tDRG`}en3g8??b`uL5^EX~8^4~3dT;#cqz0?hG0;dmjzUTEG{o+J@#=)e^g9N#zb@MT$mW~M3sS! zP3{G5gUf|OqYmyh2G#CGN#4tHX!p^;s##2qhMpcK@YKcG*xH@+VILBjl2NkSzy!P2 z`%uud>3sVbcg@CaYKhf1d&{x4(-mW3E1ZlxM$)+Txy5k5oz(g;hMb>2e|p+)&l&FP z1yeI>J$TTf8p_nwo2#2z=`>~a``gReo^17Jq?O)>_A|di5Pey>-G8mw^y{{ z-Nt{M`Tp(O54!@KzgK^;sp$56Npxajo_Vs5&|`l%Z@SdZD0LapdZ^+_9KU&(sO$W+ zu8_y_V+OY& z&9*kDl3m6^h1oec6pD(9W(Ug)h&Yk~ZO|Eq7SraKnY2hHHLUAGPo-Zn#f&@)Yc|>&Srm@ zBEjwT8SZaso0^$ne74u&HcwS4cZV^Etu8e%TF?J1q7!q?Weu^(ic}J9WUY=!<3d+W zmv$?i5|LQ4crWp~W}7I6cI`KnmzVD<@Ll7O>k6Wz7kKjfPP@jZ(ozA%Byn9Y5^=3x zw(yFMh=>RszgdXn=J>fp@8w3sG1`+P*4q8{y3GfT`doeTbB2cW6TOI)vmGhV)YR0R z>nMdSzQ3X|Uc-wz{PNFGjL%3&xct4oo}Go|?$vuC9aS!K-o0QY?W=<$ds;7FzO)*t z!NCn=K&0rIy4?1TS0AKrz=!XltEb_ZVNmDa=vNb-_0O!djB%}q;z13{E_i=gIF?sE_ zqSM-_oxGkN+myQr2~VL8sUeskWmC_{%F4P=EwxkVyE|t%ms3y!hF<2k z@4LHRUW-3^QU8MiSLL1kt-f04Zbjjl=jW6H-vqR~HG1>(NYjh(~Z0e;p{d|Z;(TO@|4g2l;K)4nC<$eDA`DrAYL6pv~oTOu6 zWt~fO8}6KlHOwzA=2MIpYBk^WSeazIcI{qwrm{BpQDXN%k{40LWxC@QTviovvK(!0 za9DkrU@FQg-@^J{US3}L`}ecfZhEcHtHP67qo*v;-b>$S3E1*Ico>gEbySee<$D9tixW+*6!~XDBq-O>CJoS(s}pd%yKh#-}95_R(sTyEg?9Hf?N00`t9qL zQ%+SO5nwHTWal2%ZLxQ)&#(a8LIP}d>(?{tub!>i1|I2qYXyEYan|{&wZ6NhZi@y! z%Z;pCd)teG?thHrx?raZR8#LEp`vTPzr?hBuzuZV=NnIoY2-y$k z!Y(S2M*M20aPmq@RMwX>gooW_B)rxsJa&5~kjJntz-7GVuF;Y3TvfSs>*)n9{Ve0U zpc#lP>i6yiFmwjUhuhEAdM{_djR zT89j^<^JBTB-tdgZ_YDnX!v5)Qa$}zzj?Cdmw=gA>6W3ty%R=Jnh2PF}0ooTR_X&fa9cS!i5GAy+T8zp30_4DNmP z#*NmBKVMHtG(&i0lZjX&)$U6e>2t;A7>sR0sG*dr*VIN&lnld)!j;V0lNNMc;eP37 zW@hd^c~aC~WzrBPc=p`6P_R+jAXO({u*@0V3t{J!ZhqN-C13Q|0WbJIJy4dTs;fIw zG7MHnA$LpaUf5;bIo`dMw>B28?JcSbSz%{WDtUGh9G#SMkN+=H+{GaxaZ95$AZWU8}zYNxR+CZ?oBuLXJ{2vuu|_x56QX zsc{3WRHB)kojoKUjorEoJi-0}(-D+T)AB@fbX**UzwM?BB=r_pPRvxYpMg?liE20k z(3(dbrmN=iS9E#!N*e! zAkH)Zq+ZBT~fy`o2VKW{yG@mV9Zzb=8rI(pDUqGVx0M@NwYHJfgL6B-@!BfKZxwLf}Ft0_>f|8OoU$(*C)>a=n ziY6k50;J1=WV}^vm?-Mf)s`r>_Wh#a^C4~YR0fx}p-)-6$%@y=&YmEgr`>N|cd?${ zJ}NDBc5N+FYPT^{^ba7D$nF^pJG*>lOFTvsla@>;!_schKwj7+Cs~$tC zvf*#WR>~n6A{h)~cn>5Smdd(FBmg6*Q$DqBG)w#3da~c1E|OQD9zMR>$eMg)wcg6+ zi@`PmY21kV68k$VWK)>Z($Y2`*TrE8BV9GMi1o!0!>LcB`r4J1m5`3LKYNZ2e_w&8 z?1gX=6&;-pU{4NE_a_9?CrNn8JNj|oC#w7#)zzg2PZj7=J@BskKK13B9lv}k^tljP zmzvQJ{aaYGTdec8KK`1!tzd5zShi#c)7FQl=tk!;blVyfr-{C1Xl zrjqDXg3~I1KC9tskBFgtkGFu0M|LKK*L*xs{z3sj^oP?}KcS=Xk-D@i!BRU+k5RlvpHayTqgsZv zK`BUHmD=Aaf#`GbkGHXL3e^?ypT9b?KYqM@ka}%?egIpV-WUtF@9>?y`qR1=tgO_m zm97;K=(A&#YT)@3j+F>X70PW&O|2A)8>^~%>xD|CyMQ&%YI1g=j@(sAfKxPM;-lC+TB(9d5!I}7%H-MP9Y0ziLSE#M=>w3>Jj#uh)g)&MRj=MK)>u0OLZWm>(;L@@n?vwtI8T4apIiqeqW|6tU!8 zt3V`Y-%s`d!aIQTa?_dmo?N+j zW^bcGO2}ddV%gLE-ykr29jyyqYvL%dXnDt5HU07RAxQ)}Gu(8LE~wqBVkR-_Qw7T) zfz*3_1y=XiJQh$##G$%;zG|quoDs)bL~~GKTl^TG%h_ zTYugcm+kuT_G+1RA6Gl+0!YpJ&i1MbUraF*|_P*?ZJ#)h5ksuJooOhSl1#}k6oXl2%^IRj} z=qG(Urz}u$$YtZt=&P`>UO0H(sU`qDIGWU5b?5F~OOP-;m%d+I19@T&7}AL>)KS!D zdKyqL72J2%`dof}CQF{|9`*&W;<;D82L`42=+Q^6nvF*iJAdjx!-BXSJM6vE>R)pw zVmsWfkudH({^PCV&C3X3M*u_OlX}`JP<+aKwp}SN-&9$|k&^b{CanibEt9Mwk+lIO zspCfZ(8qV@M3gZO!Ivbtmtofs^*lt%ZSKA#ibRN@`yhvP~rd40d-` z+7ai@ubO3tDC%Jhk?+GTI$^s6B+x|1#8^#tq=4(WbYS8E(Wx_f|9Pq;GI9Q3&tWOo z7X~w3=6aDNJy33Mh%*Rgj*g9;13uUL;>=a?X!bn>V<4G@os&~TUj7wxHU=XPj&iCB z(sObF;$=^dU+G87E9Qv|Jh zry-DZeS3LM#!kwtlNi*|i~jOy}rIl7w;AFe%k_klIZ z{Wj!yIw6~Ph$49dU8PaGO;{8c{`4jdsQ)y?lb*nf23er3S?q4DAwUzy{-GKOx%JlS zj9#J9)A|tFR3w5J`m99{drT$z`viF@)$#i7xJ#^d$RM=Wxex6oXfY4TI!$-c;{;0j z1Z4EEGZ!zK?|@k`^}WCOluvP zSXz2IEkY2NK=ADK@&<`iC?87{O$F$4FPMrU#HmfB;YV{bKQnEKdHcF<`G*gmE5NBj zb8|V{pR|jwJQ#b)n)D}k<;!u#OA#Tl2A*u=+oL`P%(Tjqn~#6ENP@Ht2oIX!j2{@Y&GcEYitwa+c9M}ul;Ja-ItK>R*4kfuZ!6HdZ%rT@?}OuK)%w zvDoRizdiD1>SJ~F&^um}AYO-G(pM!Vhrz9%A)m(}P*duVAp7%iRs1@1@aUidzfDZE z)pu-UsfYOF(;F{rp9JX4^5=qU@(M3pI90MX$Zoj0zvA~Rju1eySAmwj2oD!V)bX*= zU`8QCKhx#@?-VhF-oCo?zOu3~IF@+=sFwBc;c(mL*T7Supj`GP^>u>-0RpDI2TTjs z9xAosxdm7@1l;xqa&EBx5D*&bZ+dSOwpT?*N7oNkI!Q>KD=sb$fzK_AeSm*t=jZ3|sv{Fu5?{LGLLAZs zv=X+ef_ zs?vWEbq~ac8PI3dA*OMGvD~LViRw6X z`tO&o%7*p){{9+)4gU_3PL=vi?d{s$-qkij57UAVBLy{!35vQ7U?z~3nXrj^iM=mSr$V`; zqzrX+b>Ch=3YDl2p^eSW>Oh(Pm7owHJH#nawXxwY*JUWVoBUhUHRO*4au6zy@b=m9 zwQ_akPE+OSm`1zmK_NJd6RQ~(}MJQq) z>2vizzTt#z$ zom&5?6&l^@m!-l4=iElCshua}C-!JL(aT`Oy>&Xj-|c$)tjV^4Kpgz{Kb1(%dgF?o zJd8dZ+at-w)>ZeiV!Gm{oSLa|iYpz%JEfn;mckAe%!rqlD|TKe9=l8)kv8qR@VLDH z{Fvii&+9Kx|8=VFLR_8_Jw?5luT^~O{GjOnOSMy=>Z^p8^BiTjb5oH|bmHlPNYAyd zjZOkI+1io_n&oX?p7C$}7nKD`xaxHB$=>kHK>5@eZb~@j7Zj>o19( z`+ob~CHB=RDIgifSoSGIP%%oT@wbU8^tD#AeNDZqaGGZ3ZynXYcVcp`AQGf$v1D(| zI)kWt3~8ZHdFAonTnBbYN z>~1PQ-;?ceEI=#pZ}HY&%Vy5Z^5=)^E_0_-jh}rib#dyxV!s_O1=)|6S)V~!-vAQR&j?vD1JP2P&fA1Y8rjBb$KqL&R9cA2*W5$;Efb@>z#oL z(@bFaTt~aqadAUEwJzu5vN?DE7MP_u*2iCK&f*6djMiptryDQk#O=I0b;Vr;pmnOR z3uf4RO>?)@<+afMAKZogu`{8x>(+8=qe&726~4GnyBn#@Guxr`WlwfJ7e>kp8XJOR zf)R-Veo7xTtiF}ps=~-+Qf@U9`_&iob_=dl&ndOyX0Fi?`}4RO8|fT=zpR=|31*So z*Dt+KYOSp+Y2B=Ak7Abi^X*@>sIT`5#rYdStsk&-bl{8cL34E3-co$^Iy`*U0lCJ9 z@0N?XJ#xX#QSS-p&Y~x8uY|E^#4vW|4>4>RVvjI5-q{v+8~;p35GpK?S5Sz4^X7EQ znU8F|flw<$e*V9e*$Xep2(6rYN3jxlqj*gE&Ova3Qa&$@D^@=!rKv9Xs>J!`EO08W zI+ei0>!~+hy;}Wyet+)F)_icwS6o~X%y-MJGld?yKdz|D!F|6wKug1s8H&oe@$cXI z{^tP4F;RJN*5X1H*M|=k3x?p_@KvHyfY8hTv;}Y!_eTwK8Hj~ay?Rpl*gBQ6h@xM^ zxLn->U;jV+-B>9e9nA1t*kW*l>Oc4JzkJ_7nd5P)%N?K!L_rtz=nOL`9P*&}%YGITCOAhzvGs;6V7d|;z{x;^JE0^&-}|JwsVVB+yR5-Jdo_LU zozB|7#%1;7|7v(MqaRMHJjK7#)YNR8aRxHlX6^yv=z$zYFoPSWlk~1=F9yBY3Vu-( zQaac^|AEs+WsjhMK*#s^1yZit+3|*4h@fH+Wbs4-_L&_3t}E#o8C#qRii(=xCh#Pe zo#TOE0*u)7{%ZvS7htuB@6D6m8eeK^Y0&@_bj5R;2~lEQy~c2Br!H`+0C$_Z%E6J- zxlVcTC24s; z^NsSX($b!lx3RH((*+0l0#%AueR~BJCkwE%Cq?G?!bq(lhgNO}P#p$m95AD4s8_A) zesY|Ur=;a$9KZ2anYO&Qj)>o}OL>XxC-FsKE-M zIrswKbdblci;C(+lzNfu7Je4hmH38VkywTH0ZS;i{qb=~4K*vbG7W zJQP>Eo=MNCX=!DA`*w#=;~V+=_t;g5%g6!J9RIff^w$plcX!Xh>iu_k_P;x${suPG z|8LsB^niz0^h%Z6XE>dQ~`T$@dY`gbEw$eTfLXo&)ah>Q`6hnDqk|Hg@)7mztS zoT0eOC9(d~M6b#@dyBMKfUt|mYl>6H^oEhC}-K|CD9v^dX-zm9kd-1-sp z8gv4k&+JT;>=3BRDsiARMdGF=m>f#d*a}D72%B2pB{mjhzAx}=CNWX z*9FS?8mOceJz1(Qc48JC|D#4*;5i?8;QTHi<~UgW3d5O4?hHQ1hX!$E&w;BIY5YR_;Ot z7=d`756^;Bfow3uQ;VhF-#zztNo$~m-kmi)IH$i*7%GRx3oHdBCQh^qUK7#TpuB+e zWF1K5ZIA%VOd6=#$6mc6C%BJ=BElAEbp>RHk6D0hhcu@AyL9&8Y^cZoN%d7wJ!0eK zRV^O5SpOrd!X%1OEp1bZngP&xL7Q1e?N|% zFR5G0z5|YJaxhg1{XdsMJwOvZfz@K)H>zn`=yG}%-udgfLcGg^9Bgckg?WfRSNy!I zOe2AP^>vy;oC}34e^Pk6bFfZy5z9cKTl6uDibn%?Eq|KRPb23%|A6UEstGw0=n{5j zhu0n6X=?8dnqnUHaVg{RaPGHhX4D1D**x5O3X^78MzXnT*jVeXdGGYcnnK$*!(7GZ znhZKDbA+$=vY0xzsAzjh+0JmXFlWx<)0AGxzoMMmc#cNRLLoVik?aB;1Hwctl!n#G z>P*+GFd;WO+jfIjm);-#_pJV=lL!m;YFBDj=bNQm4zF7g0(OL6|6!fc`}dXb^b+bU zXC9NCU?kI;YdC)!9H{hu3SD8aiOibwm+%}fv@TP1L@tei93_3Y2UjxvPJps~ZW_<0 z1*^q|9vPIh%3lk5VrBjLO4zbY@dLc3wcyQBH6QPc?YSp&pMuI-gK$qne;E=C+ZZUx zP=5~>`D*$33fI@1j45;|O_)*WuXfIXJAxNb{s#=H*IdYwTFXV#E>`l2abC9n9~$EJ z^2%oHY$e}FcCdyC8H)KphS1T^!sImlJnQEEUE}k$b1yTN_tdGg>kpysA6%s{OEf1x zu80haCsO_FAz%4e_Si0n-1QrKnOEht);4Wpkfh7un24GyfvbW4<`sNY>^Xrei0k$W^vL)!Be`#40yU=>f+Pf32{C2aP$MJ3HH4 zoQ~M+L~vYfUo<`-Ve*mN{cJ+B=DUkm>k8!}E~|3UOv&b0-!uJYfOQk>MNDEOS{W9r zlpswqpI-=h+iV(1u)ALQFp%|gw*4D?L_mRD$%;#RkBvyq z5LryOWsa{+__T)n3f;!W168nATZ#iEA{=7ia}Bqc$P1pRT`&;{?6tTDf(v}sn5!yjMXr-`n9_5qvm__&5C{=(#Q zxD4I5zA{@Afn?GZHy%<=N&i_I)48T0Tu~KEnRe%}4BZ>Y?8g$)A22{qgj0 zm93E>6oS~9n3%fiZk;Ra!y(#ShdTr|Ctvms7mwp`&C(Pb&Cd+S^3EDSyR48-;nm)A zv+kttvB}4GKwm4ijGZJerd=WBG$x2ysB02{c=5Vsm@Gufx8c?P7*0>s1K%(kRX7H z3-rTl&PuY4(wxpAQjC02TzLpJz-T*&0u(WxDc z4}W7jM9xoH7!JSTXt~h`se@Qnz3-dEH(58O^t?!SI9PJ{ES_x`1!(fQ$Q5)96FMVo zA}HYFDy>4HPy86=1CE`ndX6!9cvD^Ed zbYnl_e*uJDSW(5VxmBW0E7wfRnl4*Nvw7j%_ZN!xV=7+yxZIBJrAU8FhNn^k_ls;@W4q3}%?v){h<+QJ zqTwZ#*k9={MsrB|)InnPzel5l$3sF8yjfhATORaWT$3iEqzP*stk}jLk6};Cn!VgO z|B%LJB!&Hbm6?WB{a5|=^^^^5{e{7EHyYny9Tg%d(p~N2jM#?AOEP}>%tzTpZ+#E7 z&)PYj&G+dJ{d#^Eic))D9EnCOOo*B!oodOZsl9eGH7tYHLnCCH%9lvaNphBwjT${! z5U_x?zSrvf+288l_>?xw=qht7SDmpX>d#gIIdKi=%mft+HAb>y6ust0w{AKWFuO&P zC{1&sMlsp-@<`mr51xHY<}cX!jRBTY))qRB2e$Cn5?9opwhdJ`LU%&B8hw+N2PWTF z($6>bx%Q|KKXpb8WlMUH@Kxak5f8hXd8$;;Y{exxrS>N{68hc6RIiLgmE5GRS2{n2EDfh$#C@k67UStjwqCpR`) z$k@xZwN0Y))E0fzz>&a)pJg_Rp+0+NA*=COH9K$C3jc;If-Y0eD@#6WOJk#_{Hcdb z+}q>y=8k6R#dNB&1xB8^BNmtMkc>(|Kfxn|CHKXqOlG8`-#5>sPw`pO3z3Z0RWvcC&Ozt^riR^6ik` zi>t?}rawLP(S*5<=g*%5tXA|t(1NpKp?1Hmg=Pp*TZ9HlNW6J;ydOI2I7-eop`VWD zKOew~-3#;>RbE(0Rx&TgW_I8;ae|hvH4#|N`)Y};Kc0n_@Nf%_3rNN`Prf&pe&Kj@ zzJRA4y%0Ts(-(S}weRN2*o^*SO46NN#&p1rwU*x5@0)j&XSvIZ$tD(Or(Lh-M|Vs( zYukEA)w-20uCy}sXfy^nYMZq70isfMj9q7U^~vlCQCqW*&0ZnJPXEhbEYF0}IdYKQ zzM37=-oxcXE?&ab8C?~&qP`$0x2(bCp}dfz==1fuIsgI}7wt-b2v&_lA#ZRc^HlsV zFeh^$1t&{t5l?4{Iy+X%WWxFvG_h^kh&erA)YKg45y|T+5#N|Hvie$V#FX5uyK?3M zdTPZ!(ow+gwi3?smEfJiVN=Q(^J6HB%7dzqzvz3->t8(4(SzyX^hJG|*CWlQygYeW z+;UVj(-pT*ee}s#55#2fWwzj_+T4fd5G?W=?LumE6q(RG$|6Us(L(cA*RjS|XKwV* z2bqruVVNr*SIpxFtIA;y^un%}s5QSSX}a*I(rjed>WWve_xH_CNNFvz81`%h&p@yk z(L(a-haU-}1`S^1DUZ8rBm`4bvsTW|>NDCd@~zAbgi)d_Bo5}&RC0`P`M?P@X&-hm z9U4QZlU~RLJzF-1m=^0 z_8`^79He7`hwc-t6xUm%=Z4*c<{*vUl6j*NEmo!|wK8HhQyt>D))vRZv19p4_(qea zyjE*XtE6@ihr7C4BSY`};JGpWddS4L1p*3m&D<`*ks}=d7sqY=%?V z6Je_YNrS0Ud6KiFm#t5}72RhqzkJ-q7%!_ag7#{MgnG$t{qN!4`Er+ieE+TZvG^(9 z<%Bq=P8OURx{L6|xUVG+_Emh+{x#KRQqMJ=#p0k<{==wJeWdRg4iS3K4NLEHa+8=l99I17^|qTwDb`Nxtq_JLdVDA z6@$sjN^AK~?UmGm(N2v+6p3PG_Y1fmtc%rb&zVn}ACaha(NqeYMPIO!Dsh+}^1EM@ zFVnO!@5Evjs-mm<^el6>c>+v9GI!K7t{nF->l^vkm zn(uLWehqK_Dt-K+%fBW;NZF33U9hJ1+xk@%`-X+>VvC7PKhdbgW<82f`3cI^zk%0 zHF&k}SntIwz%d`U?EF$Vio6%SFG<#!=Gbv9K4hE7-zm`C2wWEkt%Y$hzOzSy#`!x4Q}beq+r2LI5@ zkh&sd+nS#<`-XHjhd%GN*8BFO@sD)W&R1cY&P;Tj^P9;CVAxY%vYHE? z*pIUsraE7I1nnaU;f+htg9NwXmiC9)J&MG5x_3+$Ze2hLFlL-aFw637!6hn| zpR4?SPt`YuS_+we7GuasOV1Q7y{(jt7Fidq*kz-d`SI-x=QXo-9RB>%tZT|eeN9Kj z^oLn2MeP1ckQFsMlXc!#%8nSDg3YPhSy%LH$aFi~bR-1DWFn^~a~6Ne zB$0sHdbnKDR^OZ)86SR#++$q-+`_~K}^Ff_#J9R0@m-eV*g}P_qrscMPdHgrXbXD zH06-0vDELhkH!&BU_Y{Vjnbe#(;axYMV+1kKDrjTu7pHkOJP&)^in=WL`%~@{Hp-E z*)#+r^E^EttzC_0l8s6!B}U6PIx62-js016+pm^gtYvqbd>G5&tiIkhLo*Q1cr$2g zy#eD9x`#J-y8UjNMhP+p)im2=E(E1}raxxcIW*8@sN91_iw~51UhD3d`~g$UM`-V? zRPf59g&0SyL&qo?9#A10a-uj)8xmH0uZX{3#g7`oL1 zsbHBJSCytco0Q#8ws<#-^g{X+N*a++JL;cf5DCq)Q&W35DJ~MQSB>HjrHo|rgIY3E?&)N$>ngnV7Ex@7hl! z3jn;Sm#zZyJa|umg$d$rOa$eqajJr2rlfW8KDDoqCwE8Nu>qOa-tg|!#AJTK>YADc zUFR}yB`gws%uA}$jvv#VOx&<>l|l2fyG$fvqq_3Gn(sfQJ4?l&_+h*@{Id_krih*! zu1FI}z1)Te6sdni%IJM)$Q^N93cvW2FtB{v^XGTlN9k)btfTAR8cD9I*M#VXT;q)MqfC}amBO#aR}Bh z;~A?toJ1Iza?x(_pY{wN zuSd>P6a8`G4do}jvaHy#GLqdQIUuf772iTh=lp%0M)OjB^-|5Yz7@$4l-9Ry(vbtW z+X_?o)fzs1q4dYmUIAGg#Geyo1##?G_N7~RtiJMK(PRy=L(MJnoSEI%G)d-;cPcgX zE-QWQ`bnd+*Ue(RUA69WDPM(f_bc@Tr2gK>a?`5z@XY?|?M>JS0>9ux{tJ`6o~*YP zNyGEEKDoJ3xG^1py4Jy-7am!h92#!@iCdHu2D)37)_3F*x{E{5Sj+b_VUB#oD$d8P zHOsQeZrvzC10ATzHBzGy6w}sx!qa=vlq<85Er0wg=!$`PAO&P-_&;OR$jDKU>NfW+ zcs)kSG3qP1Fuuv))WYitZ^Vc<{|xP8t-Ks|)tUQX4EX1|oARJ9`JHbgOc@xyo6p|j z)fd{`UV5Co8~5b_qz&Spy6c;%Aw$-5Eh_-~ig9SCowOc#O|73hbdfn*I!OgR&bQQ^ z2$eiTOUH!*guOH?w+#Y`UufFAW_*a)G;Pm}klr#|V}nv+Ttpt2@N_;K@xxhEhbK>9 zAq{peAG`X~B;0bQD;;_BLCwyx0@AAw1FXobbATQ4N($tq9x%9>4$c4hFcD`B%}?^m z%6%|u62D0Ul&rTcw_+)IFE(a@_>iW}nRnmP+>DxYad#`NJqkNlKO|M=x6EZ4Q{ZjVu)LaBG1s)-w=7 zs9yQ7&v1RNiYj33#!5{pGicPQhnjCMuUPMoWNqoe%SGD67R8af6cG_YhIyQ!65$Oy-+rHtdg~-w!nB+| z=^hERBta8WGM`?&O0@R_)+7GC&rr>`kwP;vFW9**4AVNus3dfL$1uYS6bzERmtWos zrK53-hnXEK7>AK;My6Qd7oh>9yP*0#jqsk^Ns4;0H-Gj-b%KvL)$(7ojl9}K^QRi( z5ePfApz{>GcCDYz?x)48|E6QtxvPFNS})Y2ddqIaU2#11BPH5*n~Siy*a{?2B9z$r z!9m$>L49ZToa82{jlA6O0_wwr5qU~r3ruw(10Tr98q#6yG}R_sRtr;dkTgw2p(|p- z;pVurs2~h^??U%9EG-N_M#aU=mTczgLv>yUifn-%#5YzWNtcw{ z({b2TO|@~u#<8T^?(IEsLBm|J0`Nd;#Y6iuF%g=hmFmWYYyqxV0Hhp0&`>pC!Cz88 zPA^uy%n*t7%+5DCBIH1w$^FjWeZrTk=X|XZF4xLL$X>Xv`2Fioc-_Y1C<~9Q&&BT$ zTZRdiK4dQE6jz0G1A|+_$B*748PJa(SXKb9rI?J*)-ZD}$^+Z>fmIplnQCdB12G*d)YZ2& zUCB^-LWej{HMO?lISQ&j!rKs#*(owItqK?kV#X3k7tcV;ODsp>@#mI5-Y|K>`*VC^ z^7Jd!VBYX#r6P0|J~G+$%La|e;<9USRD@>!*J`6$`y)#5rUJ@Z3@6Fyu9!*bbiw;q zuY{~leq+`g3H?*C?{>dow^m_;pk_-RnI92^@zi$F@*&69(0rQi2QMgyNP{O=Lq-eD z+7hy%d1VgSYGh`!9C|>r3?W=e%P1yAE_T;7QD^}YIkx(lPyY+YOMNakd(Qry_)ptM zxeOHRTa)CWA`AJv#>b`pXYdu!19gAc`)xl&nlC-a-^vR3?rfwEk3erM%+{LCU~=-+ zVA_|Dk52&JnSzYZCb=L}#mEfd71DI4j6H5G1{xrbA%kkOy?OEQN~TzNA>^mfmBYTb({mV4wuE~ zewPrQF5{?CswoQWVzH;DhDWfMVCw)u{kl(l;kI^iWpeDux?MKGI^g;~sFpMuUTzK3 zpsF6vrEf~>-%KLsiYq@XJ$KjNlnGkR;q?G2FkL}s>Ibc^p1+#M0TJe2Z4UMuig zOA|@psBmS1YptcDqQq|dewg2=&2K}W3!)n2Z5hwoqD6IPvwRcn$^z9>8fK~LfQu;n z_y@zwo~2eCppE#!MeqY%csW5@FkHAJ_v=Z9og8P1)QtAGq}7tozB)wHYyt-oUgoLX zYFYNPUxZzkX=BH#VX@CRN-!KCsz~!pIu3v){nfhZk&I04*3c67(C+pzSxU^wF?4RY+W8`I*YsHL>essY;A*%n^ z(5PJbR-Jb_pgm^saQE_;1*UE5Hf{>dZ^fR)9B>^a?eMqD!gVhc8w+d%IEzd^W3D`_ zMj<4HR^Jw$Z`j#PxQ?A~@gy7o%TwS*T|V-g(|T(Ls+qlHtBPy z4xs~a?t|`8>mggElN6dh=P>Q6Sw_v{=(RD1h>G}#!Dm4%T$xrgkrV6fVtj{UfNx1> zhHyq|@ZVdxS(d}0Le3C%R9m|ilbY9od5zRKx8|hEy<+A;O&G`}cuNc$8{d3-4SF~J zR!d7n~&O99IzVG{^ol-hWSyHJG(t<%*ODPH!Gc=5pZIC5Pwk*lgsU*8b zWXU>=otRJ*vhPZUB*oZ6O3Cy2&U9bbbsqP5ANO%T$MeVYJjdma^Auy|H^2G*zQ51% z{=D8Z)L)V%8Nqw&TVHi>m=(}g#EUoH?Sl3m=r<;Kbs$CQ($#d6dKR_TqyJr-zxItl zL0Yo;GZ|D#`Tmq@;^CNMUBJ(XFx=c-3^`!g?3Zx{gECzu8%tNLcxbZt?U6P{<((R{ zSVSfgBXxpbRJM!1p?_~=EjJtmy+{#OR&vx!gyxplDh=j|2 z1noTDouw_*)rLD?`p9e9!bZwz$fOjinHe8`lC)KS^oE$!O&MDw$|5Gziwrc^d}bSC<_r079s0(QQIGRUZ^ z!=Z0^%*84cg&m`9y19GtYro1r%Zzx&+gl={mgu{)dOCXqUi{KoZv0a|m&M0}&`A(? zAGtqs6k4zkwPQL&tfwf$4!w|KQ`rl?n3agX{GRbv`-;&$Sf4W#pV?)@S!dYjG%r7e zt~+f*b;$|a#r>#bo}J8`oyo>);8V1d7dj`0$)%)N2!j*_JLul^8%J>Pv|W%r%fx!C zE|g96N5e~iw1OeeTUJu^mgt2uP;-vd^CT*8Be0^DGzRBn)99R3;g{EWo_eTr2TwiP6uQ|l|_^?{o zwV{)5D@v`G=mt(o8ow^XQbA#Ilzer24GMrtARkr-K7^^bN=3$vRuCzRT#kNb$!_ zH7yvOj?Y<^_Kt=oR4P1=lyz?*QBL7yd3A3;4xp(X7`&iUv$j<*xo zTIZ9cPE)!rcG(b+l~St5vA1GqgahM=uwQRx7S9u2i8oR#tK#ABUpsz*r{Qg_qhIT_ z{YrD7u)Fo?jE+Myk@qSi!L*>1Qnt^HFCum@fl4DPz)TYvMAs`&i8t))(|BG zGCYuBfS~I2C9_$wFpm`>F_wO1q%Y%C8R|nxH$ngZMAZl45qB%C09!A~o-{Y_D@K}I z+~8sjO1vccS#b$cbUZt>a9ORUyCq0WHrsba9p#h{2_4h#XrVM--&K_HQlz6WCn5}aO^GFNevgw=_$3X0>3nNk3gjqSVdUS^ z1Eqtl0w%7_uPb~>m6pDVsz;yz0Nt^TF{z`MzvE-Jk6FI74bYohXc9Pfj4~d7zBwym zj67IjF#L}K75AbcoJLtz(Twy-`glQf*vE~yMzM^Dtmj-G;cdtN!pqQTzI7f}g!fxj z+~%vlY%K9zaLf!|5a1F4aok&_z!kTJ7lzVFs#{iO-ml8Yl{9sEYIUi^+%0-e1LZ&i zD$QAw`KvveZux3)PJc>-G>=&>J>HYl>c) zjK6^6&a_R~Y1r1xQ~uLlqxEy2&d(Dz*0Xaf9kpe%cqz2nNZRG-2GLWv?ZMDf(t~2e z;~wLF!QA53#?8Y}78RQ~bm!~C)Jr&C*Z4+zO6Ccr4msk%*pK!%w0e3Eb%_2 z*Hk9tf8@*KFCx6KhjTCbxlU9Ibavg#b|lkQOrT30nk5#50oaVcY=Q&l_N@IxJxSpW zDX3TUY|lD>b`qZm8y)3`$M?8!#)6QT+VQmOGEQZ?U4$Xs4Pn;iB#dBBGe6LXvvOIW z&tA03cz;AZ%Zf%L=2`}RDy}#&z}`AsI5sIOyOzDYPcg00Q!_qx>LH%z>40(YTl%fe z3dWi*FKW4XT-7HTlyp*cng#Akya(Yj^m6CFuiw_(byKT3>wK=5baX*#eq&!Wee%b# zXW|s!dEsz|EHU>VVlnLT9T3(qb&@I+E-@z#VO`e`Ez0MvA05`awAI~;2$kFRbgIfH zlm(z7FSOP2*Z#b*(|sB1BAAtZ<=J;<&4Ta7oFnT>?qX3NB4b?>5nBZxnG@suFek zYJ!haulOui9r0jpR&=mb#fk>BQr#zJE#qI11Sebv599dYG`_kNzHwU z-v)A**OL!m%hfrq`;Pd_cV_bYa6`#rrsp%e+xw%XoL)suSxZI#sK7^e2xw`N<1Txq z9bcGL&xkxO{&xI+uZJ$SFi7lCMgo+FZZnsK4W8Ikxl|nqL5pvIFa-Rxt>lJxqlDpr!S#j^ogGiNShB@ow`cYmoK}Q4B#^@gsYSt#h>9ve>c@300!) zLhN=OT&~YBW=kls=VSB;_n{Yy3Sp`%NRAw{jQHYhRzbaur`{Dh#d{b?NwXJC#`i%K zF$)^muH(TT^~5XjF2j-D>057dJpNt^ZK-}Q$)hieKS>(QcfRQTW@9Jy(VnO4R_viE zpY&qO(0=ao{cOg+Yln|#ZSWT!ey;K6yGmrpb8m%&i6v*05qV^3otT=QV%8(Q>v7)U z9+5jUl|KgB-6ogZ^*Fkwa~^$BY^K}UMlEkunw|YsmCks6;H8s_fu>MQ)105fPG*|ovVQPw~K=|3v9xW8)HLE@xo3zj^=1XM-Z@ z`08wN55acTYg-c+_phd8K{;qM*BSN1>PTa5!%w=$rE+IBc`4kwuc+@W?s7S6G{i1^ zAG2PI6*52t+{``>qu^mUP3bxg{+CD0))--Nm(G4RTeZrxe~2?pi~;%^(IT1$93gkv zhxrp5KF9uMYGYL%aAS~W7KA8haH0RlldC;0^~y0h4m8vYm6jU>qCmm%s!_Y) zO0C}-sl~(eLOI!yUqmfSkPfglOhF4OXx4K<9zKoseCzw5NMu&LqNS#nL+LtP+^w7H z$7h^cI>&vK2v9hRr9T+Ve?6T4+FS~{Di=-JJk>tZN*7NrzKgkn#u{3AfTJ7pVa;kCTQr|L6#*E`ZV>#Cn^ zF-q^(zj3?e}qWuPlv!Z=R(Wt5$;BdOu(RRs#o*l zppSPP+yoNM7okFS>sKRfZS#&HgV1e^o1H1eG-*Pp+eC;#2`=xTXt_f=T1jUuES+~P zEO0_QSo#p_GB^N-c|kpoKu^p0atva0X$IQ3(~NK-Xo<;h zcMs_qA2RD#%xkrNH0b9ue_>!jC=BG=4-X}KVnaUGBARQeS_8u{T+$dEFZN*5@xr34vH?v@pn(izy< zKg>?OFIc$3=MFO~_1Wk0posXcs7(8^(D<{jL? zVU0}12OL73WzPQCA_0ov&|&eCXCa^I+r{f%ons?G*HsPrAEau{^WR zl*3}lzAAK4_u_Z!x~EGaE-c;a(T_9H%?%IUuIon&sM|Uyca+p0y~rW6T2fcXE1cKJ zS#H?$)khJrM3cy?9>QW8etH<=)vQuOBw1`9yT}g9Gx|CMnTh9X!~1F#CYSwXU$vop zGkyrG_D0vhpP-Xz%^?EqhNM5`;Xcl_Cc5B?=7*()&Gl_ETC%bE+PiR$pP%=p$}P&? z)o$3hp@Hv@Z!s>1=XRcUv^t~Xh4GnZ&Bqr_Z!|>;6o{YaH=bs2IP(o1^qgmZ&M3S4 zp^Y>y&m(hErve&EriYn?fOLQF-Qf|049HIB8JmX7L#m!Vw+uY(5nZvU6>FX8rHg-9 z(er4j7=vkI-CEZP>hCUaak+=O+E1pdHZObf1ju*34d&NUjjY%8{%}opvH5#=e_Hj=rK0)I~W%=6+spJ0ZLUP?Y zyR}98>|gc;{-AmbCogLGU>h?NAq!Fuo2*DWUG9G7l3DK~T+QZ3=HZknI@@hcgLmQl*|6|8=T1Tnu~C14D*Bd<``j;=qglbY)Fy1L z-2G2H=JrT8oYWwnK`DP+>=cFOzu<;+O6ZlCh)CLn+Vu&eJO1GclbEVI}$HBV{Pg9dD7!V zHuh??G56%vZ!vnNXFJn>c8lY94hvE@|Qd!6x@-HB`}>t8U3vpUbhJG*~0FQYuH1yDF2@Y@zWN5tF_LW6CnDR9s0wHu zy>#T^L*@*Cq7FM$Dpw~mODCLHwZxzBHDpukGipe!8%vTiE{=6its0*Artyc)8ny(X z-w)fSg~bQz+1coH=_jt><|~v{Y8Jp03NZHpIjc``9LmScd|Ki-k{jejyHjKw)2hn+ zigV2tziXDxrC%S3yC^fvaXqXq}0`L={d{DT*;<%_zLXs!Os5E7io`Z4|CjX7agOIHfQ)3bKN zi@&<`*_oQ!jvT(R2TDreT;e+pra?ih_)}g3C=m0qD{{JFM^H%Al?yVw=;S7{^x^5< zdDt@uaa|YS&KnelYRIcu$yUK(N*=(-a9zI~;@o1avI27DpTOM!Bq4jF8-!`}>AttQ zSV;<13$&bhUGS8!9J->K!wO6y@fPzbXgSI;m!mYll*$|G1l-o`V$*A^g6h**iZAF_ z;Bb~5pr|1bl@Cm1QuahE=&)5PKBF|-ES!ahAHwOuSQmtF|MgfGLjM84!Gw7?mW+H{ z@>__fq~z%HB#Pe@dpg-US_e(3s9^DDrvisBJEP@DoLDMMan#(;eb84t!A8#Ey^k&b z8$F;p0EyzxoPFym)<=GF6{SXOtXF&G_!8k17Vn59*x4-Q!n`I7MIH^;DI%{K$F!QW z6xT^N-A#m?!({B*4@rvbSGF^|I}zMv7~HKoUv2g0AP)4{@oUD1bOD?@KJ=Ndk0M-k zHNz86mE>5qYjtsBcJnYlApMKE{rXGqg3rIA62%;{t&WuE5eT`Roj)nmcJV+lVexPy zJ&X^5C40>$oW*YIJAoq#op)Z1NngnvayXDfwaS9IOGfF7Lw@DTRn!_2ysp1VUs<+T z5-fz)-vgMNt+H#xmbI$&Y|q2gg!5!=)|;?(`S$}Bbf4R*J3n4XDi7RBKcWhO=|%M1 zzbi@m{}Fd7b?L*^dl9xWXWM~fPm$D}JE3plBbMV4%f_zC9X@K{?7ZOxysvYtDyskXLz($-oU7wWW9D1NB6q^tQuc_SnC+^-AIwA z61y#vZ@n#3t;iZpJ+F!FKApDVe3kZUfE1bCls3ko#j%++o~0-#Ni+!xi5? ztOq?z%MkEgtN>t8_U*%6Ron0f4-&wHz-{NdYsJC>zsL5$nut&e{OrfI(Bw@+ga*LU z`uEkC7XYg;(p8zfp^@kS$H6D9Cf_V^_ zigmfY4|u)Nt{+Mq) z8=n6Qz{jnC!%$yWx30ALfuJfhJzaq^d zSu%S7fla|@w?~NTFp7u(SVTlSFt5RWWcGT22c@_REErD98?s(^6a3B9*I_~$>gtF| zIaUSkF`YV0FM3>A(f&9N#EgKos=mnFPWa-7(zlr2jPkXP^8*MK;Y;BffEGh{t|CMOlvqeunDKQ! zcI$Rv?+r44O(^|mBB@~zix2wEwG5E+UvL34+hzqL7MWE2nK!nV;X z3G7_PiER)ifd`hjl9Ca4{k2zHUO*Kau)Y8iAB#|QXE$|q%+qbg9|%6O)V1h4tFa#6 zD?Eq_4uUY#k`9RsETqqTadcae86^#Nc6OUDy98Fjk8_@m6B^0~14ieL4?E{5st1sXv5y}fEWnN#!A z0P_M7+V<@|jmc^{V5LIFT1Ua&lnCO#3^4d20}h%|w(v)#RG|`Q>9%iiiA)PHw9SJj z1MI$cxh18esj*CIBCx09&A==Q2fi_|Y131A zgvrNMss89wwRm(r04!c|wBn9o>F>ENbfju_AS)0cTdv~V11RW=h~DoGOi#rIWH4X_ zrOebYUTZOIv=zyJ>mV zvCaq9w+46#Y2Xcot|pX)VBP0PEnkp{40vd?gPGmtTu$Zft-VnCB?%+%39p&Emq(Cq zB!K-<>L5WVOz*borV=TjD*bVQAK=^Yk9QHOr?yzv6&WK#IzYc+!BWZ-1dEyq7p2nx zN`^?C;Ud}_FP*Ax@hjf@XzX|xVrjxs0;%@sv)Seja8i1AFZrYnFL=qptuY(M7S4us z=UmPK&iY9>HjYwGas zY)0hkA4wX22`&5BTW6ZkBl^@dJ01ZQjM z0gu;{Y=D3uy#?X|tjz11OO=sgv{}^=)y*`2_U;iwmnTp&Pj*<*GRq>QyXl~v5vnS@n?~Z zBwQNE-9o`N7p%vDa}!{8J{3ithhJb1Uwf!Ro4pD?%~06SHw0U{}M zwZaaBeJ$5E2iM>#M>x*F1H7jj!eV175X+1rw5fCXdF3tOtwnZlC7BNzZTi*7K;CaM zZFQ}N=8Z9f8P7tWAkH78ny@__uWR*1iyl_a3v>~*0)pNXERc}d9}ajUU=vFO2NA~G z0*lu9?`RE)`l(1A1^YVB$*n@_Fdc!vapOjvO~3};Bp5gOalimbyDiI4lZRo&a5X|G zmJO+K%?`djrmVDi#h#6`mdlv0nr3f_6YUTt2*GW8e%hTh%@YC4@?UBs>M{ z++Zk6G`#_Xn;BS~JSdz*P<%MSr{F=Gp=go}R-iSSvh=OfePC^SdI(hfUlo4A#SomH zzJCakdMr5bdYFJ6EHZ6C&m#T#L7N}LQ4vx1_4BU!Bf|wg(3LOWgSF2G#hDs(i9doX z4Oz+|tAS^5;5Eol4yJjSK6ytRKb>ni_OrQF1`hMROF;J+1h`l*rVto{5`rYWs-nsJ z=eKG^(;i*b)z#$*c+s-D&})^xiWHifxCbxTk1X-fEsyEi;N}IPa}Ah8+>Angf;C_a zd@m-3Cm9lfnlPcWWV`1i$@%ha2(+0D_dGR7klMiAbqL<3Y`^#NlKD<7xhjZT9L(%s zlU)%H`s|n^;56~r42@^BfvqbtMHqoWr5V8EVmr>X?SK<-4je8=KwQ6h%NCO-si}Nu z+9nSyLd|zbkTn2Id>u?<_~D9{{qW(#J-BW2ftsFj!N_RxQs4k@Zvd=QI0NqGV8){c zfZ<>`V5V0gGNlL$`=ezR-EJ*V-sQy2!-`S3IDTW&|BpIr?}586vW7wSq&K6Y0S^Yo zxNxl2eriw-GZsM5o->;ujZTnw_sp#TrFW<9ZW{&sXZb#4j6$gNDn}(aFwr~d>IX*} z%A~CuvmrZU_8oO_rXoE4Y^WQ zf&pjfPM8bv5n>X^^=vD<0atLl*V*CWrvLU57Gxfcp7ikR-BJOFie|w#g-6h zhVF!)`k0+ZurFgaL`sDPGKb1k;IZ>yA96y2Ftchel(_CFFo*m1jKgjY1-ztRQ_H`! z(JdR<(lX}|;8wg>Q5xRc*#y)D+FeDh{N;`kZ1m>gMGvVHz_&0}`!N+cz(8ykDzF<0 zqkhb^{$wkFnV$f+R0l>GGr-0^5()V1LO14VfM?H@{yQg!fBu$P*oDXa j_hBYH=>Mgn$1mm0HMfc3)D`>DajT!wI!QfY?EAj}-L5&L literal 0 HcmV?d00001 diff --git a/labworks/LW2/IRE_testAE1.png b/labworks/LW2/IRE_testAE1.png new file mode 100644 index 0000000000000000000000000000000000000000..0d14256acfc7fcf7661cd36adf10fa7efe443afe GIT binary patch literal 33250 zcmeFZ2T+sgyEhzc;3BfR3O2w3qSB;GM_oj^E7A#3sx(muy#y<}BBBXZstrV%bZNl` z7`h<6L?JZkB|vC-uRHFZ^FQZ(XTEvQoSE;NZw@oNn}y`bbKmz>e%J5%UC&<^^fkGD z+4lmG^{60ZOD4skbk2Z;!GQ+K$^*6ZiZJTMsUE9f7# zS8Az_7|cz5t=~^y@`)es^^G}TS1kVxXCP&Z+jeu)rj5DxgI#XE;b6PN@hmxcJg$Gk zv16Jl*Dr0_yd(VC27b#6x9;dYs^6?@%iAfLoP6x_&O4Z`W*m=fiKA2D%Tj{2SB}={ z)?b=jDOrBDlKEpY^{8ROg^HlQBIE4#F*djx4Cd9Nd%2vfSD34A8-8WIN_O9Lko7`+ zkVBpIBDiKpFzW>-@(AYV2Ty2XHn4tm=^&2@BY#gi?7Zm>ILadGW|LGnD56&-E zFjcA#c<9P?U46c7&&h)Y=9z;FG?GCSmLG$8_lq9bhI-rsewC8J!_4EU@ws2uc(!ls z^BMc{TyqOIe>}a-LPB6|MAKuPG3?NmVODE&*1}Emz>QB9%tM03lO1K z!MiWE-O4|6ycvTr-L6tAj===~=ypg7oLwlYC?CAx;o*^@8%tE0DwA$hp3^1T)vV2`h3S0qTp1}VyVYe`C^Je zlByfS^NPmxxqA8G(bOa>TbHhUN3^xGU&4d%#a4Ocs_baxvC;1;nD$L+GDW+x5AEv46{6UxEY7K7)djmFxlo(@2Rp0SGU@#{ciD%K?`}s zE0d)bMztTN3f|r3R*e}5S5w{ZR(9jww!K92%&5SH&Q!hXQ-1R!U!4l#{eGm0*`y}= z{jjb!NpE%kv_n&r?g{RYMPB}KAZY2k8DWhseYGihezI4|Ijh(nZGxrG_q%8f=}ybl zYU__B2#ngjvQC%oZRdLuX>5KR_M_o-de#%Mq8=$teqUR3j2b2GL|gDBr`9ARf6;kz znXI^$p`oF8$;h*SaT|eJB`Tu<`Tp86y|&9aJ7FWY@<|h1Al%9F&LkzT@ea6G{>k?H;KWQsgxe->n z17=A{buPOrsH^`_tix=bbR!M!uYRvX{Nwbjk`wz~^S@lgIh$3}`$Hv$DtU2r zaOaP5Y^sO8-R5q1dt;z$?t=MC73Z?SC=2(me`pSZOW<6(Nd~I1!bt&A(O56Db7A`; zMY7AJ&~0|pO%=Ng4OAj6t`)x=oI#5dR2WIVJv%5tP?#HTY=m`2{Pmk~A^t9eMvFs` zKa+J#-;O;OX(+0IKsXF>Nsrj$GZ4l=CnMPD*^bToes8~c?$n1~Q7w1IVDvED*tO#G zea|(+$KQP1Zsy(VDec^r(G#>XAy!SG2u0KW5>EWAC*Pa@IsdZGTm^HbLX2-ec!+*s zpWhfnMR@~NhV8!n`@8WE1lFfR@@A^`4=4IhQpy+m;sp09xZ9%lRW9(!I(@aaDeCpI zP+fY@Z4X|rMXai-LJm8YS!4wln1dKUWI$Lpv~NsIfXE;NE`*(gKwTMRr8SG<(_{UJ zr)NX#zrOmz%(bBPVtVUrvyQ}|0CP!meSNV)LNegg>hwox&mUjq*YdP;KMgpC6`2ow z$a>p<|3JX>d$E>u`e=*r^K)S}=FXXs_wL2H9PRyq;2 z|JvI_T3T*o=Bl;1S+rj@|P8MBG5~Rnuk$q#c86(fb#dDd(!-?JE zviOLP+-hZmYZ7n2-LjipfrD#ZS)8KgGTSWNuuS-D!Dm%C@od7BKQ&!mMkarJvA8kt zT3UATbmMD>#zgw*+gn<*!AmO_;#B+>W)E0FEMxk`5y*`yiwM%7+=vB$9ZOkk>hf;qENBIpmb zxjO0Sx8-64W7jWrxB1a(a~CLtMa2rC7Hy*0a^m(6A+rY~>KN-SYbT&DdFo zUoh`-N6`jenj5OG1rMRl`h0tLQ{h|iM)S2*l(l1}?6lJtnN{-S$A`||%TKE+>fcXY zI)`$OAj^V-R+qNzlezjhaNoXt?jN=azc5Z8yz`s>dEzSM-x^->^j(cM4^txK9ZN9y z&KuQyyxnaOX}uKh%P&S|2M9@&O`jps-VQvhMVllvDeuzp#_~qx?#{r)UXK<%`N3?$ znsZj!Y|VHDb6sp@bwGf5l_A{=UgH6)6{iP=Ky*D4uAIvk{=%~>uWI0-l6ZFcf;o}q zPhGKs@0Sq0QQ=LVODG0+%tfyHSd*VZZ^tE-PLY+m!LTe&5gTTP)tCxQupHv9gwvc% zUtx;s$~b9#Z3O`v-|u&M-Ph>t!?y)iFQ?-w(h1u!mQoC1Fb_4N$MZ%?EfPT9mxI-XCojWjYI4Zcq;S$IA3o?W00f=Yy7XTV(j9DGGk?8@R;y992f ztKA*){n6t=UcHAfW4cU&h^{0{p^QOovh2!3^^uptq(VC=<7)(U!({U&l zUXj6*6%bf#gIETMSyX`WS=0POIG0?7KX#J0J{d(uAyvIU_POjlvgWWn%_ehXv`9MqT=rbFcVjxtUBLx zHu^2~gLCBSkbDJ2N22`e_X0M|1y@CNKq|d&u6&%W#jU#+^E_XNlTS3%S9rM=>ckFN z6=yyP&eJy9IakkQl&>vxOU$nNm6Pj2`yoFJT8QNG_4p1ah%E~EjXVul$V+l7+ zi!!nDeJS*-8Qie6)7Mu$kON{RZO#?;xYr(lH!`L})Z!Jk4 zhvM8CAoI{u8q=7}yPrt5%`dcECCDVK|3pEoYM>v{7T~82*9OgS{sh@J(<2B`4mBji z!HPu@dQb0rF2XWMeq@k**OCGkDBaZcg{W%7RQ-CuAbnDH^#HGu7Rig{40<*p0n&MT zhE#WNs06vgo$%?;9hrU&5U5+-36nj=zL2VRA6G z`VX1~m|8UGHTp7o2&FuPt`^INRkZGhuCep`T;>P&K^Di!qh^r%xpK|UcOXcjVs%z( zajGTNpqta#LE65~r#4&Ct*=aj-!1>kIp68`>~kotKlU^ns*j5XU_PKtU6Py?9LVdY~)b zv&}56eaw|C*2Bns2X={2<}hP8sS%(Y(Jg2$uG1!5g=h3naNl*3LC`EoVe;*O;=qOO z@~XQ8FB6FE?rY;ExiN<{F`(ZM-LS?F=sE5KRpI66IyCjbWg;YE30x40qFut`sk!}mFlT~5+qap5lz21Te z-W>+~LU6N~=_$XPs0b7?ZV8eDpN?8t?C~&2PZ3!Ln}U0dF2ML{I*$2YgM2TxI0b28 zLEJ$yEG*2Ixk61+Tb~IJ#cxC2Z016h3JTI1a~}UQ32RopdX8IpT74Z#r~+kv1cf^7 zzb2Rq6yxVa^i}G*ih- z&Ch!YQJvTF`svyMtXJpDvtt%d`pW%_dfc3x{94w)v|HTYFT+uI@B`Y}p6+_3+>c%} zSvu7>y99@Zb4e=X*YWqy+qVdaHEIPN&(83tnKi0In|UVJJ8VgM?#O5W2RXG)tW6P^ zJ8|q7OxGDy=tfV2mr5W&Ry)w5uax=8sjK?i``dZU^_3#!_2y`Dew{`=e7a{9JXw#3 z+{Q3z`BF&xTS36G?zL;o)nPTa5+*AGRA!FR{ScC>i&w}qnrek&kQWzl<8cmhWWTQG zTBM@|Jvh%+Bi`=5HXFyxh1WL#A~uYCc}@~UIdr?qd{bS5Qjt-%5=3a^wK+5IZ?mU9 zeY%7zhb!eo{Q4p-?Rd1MyH@Rhyv6Ej7*8MbM|!r^kT0YQ9mFyv*Pa54g7^(N5M^NP zjFiB5sI|pHpE40BjFGgNg&pvJ9QY(IZVs^LN#XeGXKFigs`*Pl-F>h0@q?jU7}SBt ze_Mv*gO*1TA|(oPtIS_Oco%BKptKc)m>7UelTZqZ#sx7BcV|JA%cxjiW=willzx74 zj57}Ej|SK{OW(mrF&n^3)l%Vua6qn}Z>Q}6I3Noi^tSzQXDdP}9*e!+67+H=c-&AN zb=AHN0;G_BTq{7AjG{h2t@{W2pEzeZwo3Bd__RYT^l?QiwS4nfvS4L|B??G!iOi?m zfv@b=;-Hw4H32|l@tPgnz_1Y!b-|lam~k!aOd0H-lCNOYYovTIBi@zBFFXgCcP?Qn zU|6iRlLuk{1~uj?!ql;9gdhabUEaLk;tR+$4nl@-o_&1{Boy*_?+-vCC>B)7cLAl4 zH}u5W9+HUfWbtq=Y`HxwrLpPhS&O#lJqqr$!@XkZ*dD$7RSkf((B)oSFgYu$4m z-(Ed`SOY+_=yS&h!ox<@6&E=`gq4Zjh|)^WEOhcjq{=Nt3?~1*zS6`cgNp_i5lVzl z^Nf>T1OYEov`i-~mQuxLdr)+$&3Kww1O-CDS~B(9^ha(t-*Qgzx5-A0jC!{qLjgIL zj<_~&KwWJ(utGa>+lLkJ2r9%gI@IruX`cL0`0E7pL6vGo1@vICHY^Enc$rJS=gntl zgo^3rnQgC!p(^!(H)6yr~Hb!5Dz%~Z)-7cNr1w@+h z8d~>Gob&ShC>^eKJ+_hX{4OC|^TD1kLrIhkaL#5l?_sFLJKf70mSzSltezXEw=y9# zN#vFTOBc21**&Ykj!_?OVnZ=17eKB(+8)N11$pvJ*m%iUmXHa(ZK9yv$`{UkHWasd z7#YqSY=HxiU&s!Oae?%4uwVtKei6otz&a71^`X3r*nrtowYB30YHN5@S|F%39JWXD zFan1ju)LxBB3YkZi+ZCVV%Y%&HrkozU~J_(h+GjdQn_#$2LKvkoUbI_0A3yh!>)ye zcvSOw(+~o#fW_!0sj6s60i}Y%LMK#c?j2V`?4F0oncM3nG3p$kI*X$Luc(FW527fO z0)DcbQk^S0fwdt5+L)q%sYF9w9|qTFA%39z z40j#1_I(c4FxclmRnJ_bG6%gYRi?4I*M|@kob?(q9J2Q<+x9#% z&ouT@K$mLD{5nQQb+}m|y|tz3Tj>&Bm5oERGOtlJPPW}LZ(It!E7>AW#_?jCsZCgJ z?d8pan42&6K*3Jz-{=RmqmW6<`jaP5q@XSwhi!CpaS<&&V0uV_`>AEa>0?QAzt#*M zxHD_CrW~)}Vc%xyQ6Dwt($u->;G12XDdqc4UB7I%@ew(2#U3sdxys2?vT^uOM6CkH zpa=h%;`rMa$h!xXWy+Q9Bxm-aTfzKSyA-TVIPtoD%+bk78|d23m!d`x@cb6WW5Ki> z)>j#J(T0v(TwJgK-ArSV(p~7=Os{aLC-c=Osi`6G0~K6+N=iy@tyzj+dE)nvAr269 z#p}Fp0o#HoH7KR@!ueHd#38w3FeeN!8zyYw!m+S8Wfcu8Qcj{;8{&BY7Z53xb> zQ&crBF8hyT$LM}4h<5_YQ3{CIvV|^ZR9D%T==b)?yg_W8j zZ4HHN1&<*b-;|Fg*jUS+K|72NwmN;Z(UxTN^iP$W-yWB6WKWf!d$ zm43C{48McFcnmkRvYn}QsErG(!tj0k7t48_6k?mlo6#FQyTJeDjW-DoAdz1ulC&GbqXt3MF)oDDwfK z6Nv>v0HYq_OK&yt09w-y()(Vp<<7x38+Hc2`49tT+_?vP9_KYEiX<(466Wb9zu5i= zJW3ku$hU=i1lb%Ij~N7OL@Ik_mmd)|EwX(V%%-?Q@ymE;9-{2*;mgP6Dn#(e>U3jH z9x9zEv;aDb%m5o{PmSIGygrKZO4U`qy~PDyM&X1vBWr{R|^MDFt2*Z*DWRYlS0 z0PX1ICvE|g&DV;0+;yr24k9yZvKzrX%_T2YN(>>g1#KFNv0x+ZEkHIL@cDMrF1l*x zJP;Tw6Gb@Uv*$x;sfjg+S_F1>=oY8=X8=TrfMMLy8U>)sagSSo{B@$X3-y38m%=f3 zYWz?=04do1$JaD7yGWy4V9*d2hxnaw(aTZvJwPSi(QR5pL{uwH3N?#QR^9l z>HECzpn7!SXiD5sEpQIRsYY4?z<_0AIn;y2U0GZ$zlxtNP=i7y0HFbV@NW1uS;ykd zWHr=W>oRh3QU83xbmJz)T4M_#l5jLuBh;LDlkVqK(3R_bKvlVTimadJc#|{JPW+QH42b{5g0SBG_Cb&gB8**Ne~FD>IGbX2s~nBKvn(j22N zN>=D&(TG3Mk^&-V6%a)us@?r3i-nWc=Tkj8?V`oz7{ZA@*5|_cd$&T8gP-1;m`#d0 z!Ujj^_CMAK!lNCcWiJ3!!(a)fy zE)V2>Nj~JDA!pnQ(1`46OQ%!x;*8xj&}Y@XFLV8xT&wis)$`f%sX&QvwRImd9Qx3F zivbjV2tkKt9?E@ld%NN>AQ=7GjkltY;f3HBYn@$O>Ks!Oq7ZF`ig5i?-|rxbFm!w_ zL~Zp-Y<3Qmt%yOuU@jwOTd^K)ytt!dhvtFD(A@0TOY(om#!d^~xZTvH3od zRxkzh0`vc3^IowY3ZzJA2tf;`@Ie@#l3ang>thS(2BNd8m!~QVC*Uty0T=y}JhVTl zG`}0Djph_{-mjjh^+kQpI{BAB%)HnzTFu$Git!>UP=NoK@c)y8yY&EIB?{90%K4zq zf}fIoY#dEO+xQgmj~gBd`a&})56bC5#Hj$XW2{0|Xz^pt0J@i`!EF=z(}uYWFSB9W zN~vp;@z+0W)go^F?Wk=-yn>Jk>(4)Zu^WmWlAxZRo-eRbeY0Z;?ls57T5v+4*@tE! zN{cVV0}UvIR*O1}^FLZe5M%p2L?Dq>nioTF9Zb+BW&`I)vwcH+tRO-F5UiJ@aBjeQ z)S`EymaP`*fC2snj1a1vh>EEEv)h{Oup}wcb~6A5RjEa5bf%bTY*294?>d^ za`}P~vf|BSL1ln^4Qy-%EP~3R0V%vPo@bzgnXU5F>>EKS7V2+zh@=jHx3q{r3)n#< zqd@sEM_?`z6h>c=`rNVTg6bLg)( zRhj6L@<0Vq7M*lDyq8z&A8n5gL^T73(JMT01) zvaug{go>!2!jq9(n+`Tl-wc!`wcKYZ z!VZ8L{)3$G8PxNE|5|Ni|XL1@)D7q$PiSLi`By@VhvkJx;opc*v% zq+Gl5y?lESQ>--${q1uP9Hp!mn@ba#LgQdET!ua3x2i!>Fu+ zSobFgNp`p`_iWsL>LB}p>+h@w=zhp>dP}_byVi&9MZG!? z^`PPBzgiajs|qUrxnH@J*H-+EAWd}1WDkV>5yQ<&Wkivu=@!#Ux!=55$YNyAhF`C; zL)%BUB4`aIb~{!Hah6vWe4=c=SqBV02`EtbQH&9}-lUIu_E5|YqMmQ^>D$e~P(b~9 z1iC8Y%~7wQI0GPC55TXb=^*FCKgED^c6k&?H(tP>q53xOv_saUJ_u<$0riLB&t6s_ z5dfl241neF(ie76;rK#TjxI00zxk3D)FaJBZq$sDAFs_EUq=3GZF2Qxq;btY=Zwct z%mBay(~ibAUzC-V9fZJB`%q~z2I`vJ+O&K?g@8kTd4d*`{2P4vMgWQ8Ofe=xE`4Rb za70Bvm-_0!Z%kH3{vXBJPaDVlU)JjXYL95U|62_EzjmPyzkCNy*$Z&JDv+YlSR}KA z{--+T%wR8Yy9|m!5D|$N#zA)pKO=%r+qpvXRAK4c?YX?9HBmSJ?(VJnvSWnZSHrJWrU{dmjfb$`xj@9)ZY z+!ffL1~i;K7VYtCjR}43&FgB7#Y0dwh(k|GdHUVP;>A9HivlK+ilF*9X9g&nR5vPl z0&5j5dF8{MT%F+EiGMQ@e-jfpqsEWG)E12IG=1L+DxC81!^!1(Ph^f;xE2^4)s1P& zU8n}kp9lDC5CGx(ok@BBUcsSySn2t=e(Tq-5ePAW_Cm+T#-?-d-7gehj{i_L{TTiZ zC9E`lqzN$eb7Fh@$TB|og4QCHKtP`Bl2geeW`pW}M0P>XOCIUjz-f7W^?@U52KKqq zDjk?kB7sfp0)622u|WKtL>yGP=@KgmsTXjl zzj}cRbKqaCY%`$cY6hev?|v43O7??v#yUw%a``Cc%H12aVnq>H7D~e;{LcR07iU>t z^4}4#|K~!m1OFe8_FmSY_jv3Dg5S=BWoS)@{Gza!3%3|^EdzfZk@_(dC(Rs;CQSth zLkh}GXPMMhc}4Zh8u-CT$G40jL9KA;0|7$|iYRSyR-j2<a|bNgrs$!>?PL1L`D;*Se|tfeD`XbM{IT*A{eCS2}GM#@)wQ z*~ljp-nbzyXR;*Ld$E_YzEYvO^jts)BuT4dxWV15gg(u)6~0jZ`epagmngK&PhubF z#mBhhXhMqK`onCYj*Gid50Ng5{v=nhh0$ z_38PK+x-K_SLaBXMf&`{FUnXj9n*ClvqAJVfl2$oNy@Pykpn|>LIm{BJru1%AIFri zv2nbyg@T~R8<#s%RXJdS(|f3#JF-1iHod2d^_IRnm`$c7-sK`dd0X>6+ALmj3{X1l zX-G{vbeb@jZ+bv2*p0Oa11cx!h#ya>)+TBSh_!8oh)wh>?^$MDB}yH$A-@6CARwZ1 zA^XnwG{n=Sla5z8G>8_-p?3t!L(QBCbUP)984r?&>~L(5Z*CN}T+V_mB8!eL+$&3JKO7UzLI(u&y zC=(;g7RxJrJUoi&EQ=En1SqKr@;BT5Pqr%)q1AIkLb&CNlB#yvX)k}i1H=+dL2Z`O z#e-3_7bGizm9;5Sy_`r&4a*!+_DY6!MQp&B1%*pq5SXC{Yr|@kkuQ|d)VQ6j8yVRJ z@3DEX*HHJb0+7xP3=PrJae95sbsA$>M~p@5yaM*T>4q^*CHCYYg~5my#v)Zmb&sWd zDw(O05@DI*34P24dUn)-Nm#LMnC$(W)kk9M%*1ejKV(z@#rX@wl ze<~s1J13>5_+=C;vEU8hUY$Gq#%K}*Eg)#xtAnO*!y%Cf%+mZ^))!4`!KU!tW*0WG zijDWbmfNgd*%7!X6z693fVFA)M9iiUbEg7YhYhK8Qo9XXv?oqM8U)`Yn}=HVjp9Fj zFWCa_7uzxvC%i~af&yX;_AvUvzDUp_4z{ua2A&gcWo+N6lR)v(9Mp9D7R9Uh15S3j z*IFMyH*)zn>{`2Vx{xMcBvgpdORen4Fr&O@=N-ra6XkkNg2b5Ck`xr^((~5(<~+NAXf`WL zC+omsdrgv5DdB{8OFu`c%j%K~jfA7!E`|^OwpU|QSnZ0^w_w^$cA{9}G5*F_(t$v{ zq^ixizrW-qT%+~PWC_c~Cq1&mLF%D#%$*we_kKk@bLiZR8QcSsW6&+90byS{ezA-C z=n%MXE!1{MazPAQ-DYky@*OINk7dQS5Q;^~m$!mbQlPKMV_^OO# z#INcmC>D%MDK6;DZ6?cuugar)K)m?^bPrK)6iH@1mPb=lfkY}E%POrA56gw7fuvAdgA#9e9NbQz z81(&Pm5aZ^Ca+tiXaaBVj>2xozIRF&`t7J-YU1+pnGyLuQ{BHj z2f|)Pv0`?aCmMlJY(^}-3p6ESL4k+5Owc}6L^|!AiwU5;0G^~})`vxLqw-Q#)>FGY z!STJM(M(4dgy4(7Zq1(>fAbZ3F}~}Juio8a^+3=LWd{|+$Z;ydQL{RS|KRo3#*eT0 zd3!Z8t+Lx|#WyI{Kr4I>I9NoZ6wlU(prMpur0BKg0Ddl&_SMh;>#|DJ5!V8Rh0=3N z?fmBX(a!!5wYoPIt1s|%!jt)~V1?*W5kA1+n$ixS@ zJ245T=a-wF#xg^3FQ5+`ZF#_m_P-T0*Ab)+7npznG9q(B%{Gwc)=SrrKF1nmapzxt*g+r{C zqn7PqrGXL|!^?k|0TbI;D}Hk_3xE`pfwI8bqCuk1;aE8_;05Q!0$AW;VBmO&n&_>^)dCVfW8meqO$RZVl0MhnD|b`EgCZbGNP02XC_EOs z2GHl#qk&StnrSWuY#hRD^fr+y`vzUrg&gaEf5V369O{@Zr@Z?6li|0w`vn4TN&MqE z0!%-n`8UrEzXlIVURIa7X6e4p&`MIR?6}Q+)Z&`i&(!o1g1uhNr;*m|+xE+4uWghPHUo?b29|_-e=yUNf&-e4tzmG%<)Qpjrh?Noo zy>h#o1o`cJHFT&29d)H%=SU*?!C)KrZlHy)8ieqh-{FVeiSqn~*)Hcwys3QeCD91g z%j%uGQSfz3DOQM;%cS3|(vc8bw4h&g(w?i85C+okAv*?;QSd_1_j?qqw-9dW4EVq< z8(y5HF3FQINU@KLG)Me)#`PccXJgL_ZdOGcr>rt2aMh3`UZ)>T&maOy8RF)9LeNV} z^z33L1jBwSo@3=LOWnWd6ayaS=jCBF5^VYuK@C(Hx_@oPT%wlwRu(y=>Wf`7OeqT@ z{P-%PoA4w|*g*f|+9EISEntxQKQui$luadccM}uW+jj>G`OsT6&W74;-Up(gx`gg^ zS!n5=PyXU=(LC_ z*T@Qt&PL+t+cjCgV!qY4j#X-;-2D)0+?!&68>(G6f8VVPREM=eOty_Y+~>?aDsXBz zMYa+Bp$6=N;y$-+G9U?Fa~^3G*(;afd9&(7`Yv4XrV>#$4s}fnhXmR~C6q}NR>rNz z?~B}52V(uc>{$#(5hh_mz3lQAn39Y!R(6z%^Vz<;ABV>zJT=Ltfrq4gQk?zVFW?F3Id^S=;!P$U zAe0dN6n0<#I1lt()~*)P*Z>7h=pve&=O-W4v<4?dCJPTDJNE^t*h!CdrcU!qe%|J38Q zE&Bk(adAypY;1Bx+uNeLvMV%M;JUi|Vs9lgg7BTQGQyPC^1^DkH0Dje<2CVHe-(P! zl`WW8w?Tip`SydCz36DW3p2lbjc{yKiC*US7nKuU-U-Km7k1+zijJ<=N)%0WK$&u_ zw#747xy6%F`G1sSPQ5HlHU#~EeH)3?;yszCj?PrGF<5mW`z8P;1&3z}6>Aib6ukkocSQePi z49h?mwEn$2vHR=1-@)d#=@()Z{xHcxXs0BfhUJea-W)8t-1QO60F?LZ&ho8Jl~k2X zE}1P{?hPAz0ih+k0Nvb!H+27z26YuL^G*5svUTPos8UOQ#{{1#x5^l7YRh_1n8j=| zR`CZt+)W*q8v{Z zWX`Fr-}ptH4m)U>k2U74B9=%gTFD)tCH_#%@}8056& zW45!j{x;*=Tf}fa&8gvY4;tn`UCPeu#&fl7$y&)G#ZhBQ=I#39fp23(}!VdUodtpxM}`=)bNyo!GDlyU+JU;cc^a zCbx{S*~=KG?ZHLAV>UFkZWBm+Ab=CS7gTdxg98N8P%e@z18&Tc7bCHUFh+8Obz*ys zPhNLVF`tDAmF&tbwT0`%nO`9WI%x>Eyt@enUcp2$XNi87BDP&eVmGtRwRT0+t)24i zeQi2p5&&#T@$h{Mi?2>@u9>9QkbBz1wvoRD zY2ts|zNcwf-DafeMNZC|GbULE(r4DSNFyTDA<%ydoeT%p>vluc01Us8R2D_y;Jd6B z#^t9z_zXZV@9?In^S9ZH#6Is){MtiP_w}QnNO|Zww$B&s{Jtk;^A~SORuuf8x0mX7 zIh}6TviL}97*UK>Dstt#T~uJ0DhnSd2{ZrgYDTVh!3H5rmoDr*pNxzkOuj%dLt$eV zBpuz&`w5}}O$T?PLnhDzvH zg^5g7oHk5S9c4W9eo^?M$=VUSS9}9oQ>$2y=WK(wxMvYVPp^1ov7!+sc4D_+Lok;f zVeV`1G1W)u^LOaG$v(8~JC|D>q8f3I7jZEss!teVj4l9OBY?FW zf$2x<@xkcO(Hzye*g~;HjwZhP#01M58o7&ol`@B5yx{86AL&BCU}Qwjug+2IqF<7S z6Vu|J1ND=fyDA`{9_dnO_GRtH{FllI2`#|6g5G^*0sH-Ka{*zNjFpuaF6uSbb@Qy; zU1>S&mOoQPc^Yz*oi8FI=iG2Rv`5q(A;lX>0}(R;qgsMVYc5~bW}41YqAZRMCzx1r zY#M0*9(XCfbg3UkzAB4AlfT2~fcyE`#6^4%S`U6J#EKKITZ!QWW#~Iub3M}J*8*t? z2&ic(aYTNr?i5*LBxkMx8b=AZBXA|`eaN*n zeQT367)~5`r~{LU)-K~6*5f7>Cki*>jk3##mVur-{B&b3==v7C0Xh{2N3LYJ_>U^Nn~0*)*LFD!mcb@n`vJ?;$(8mT|akGsBe_w@@x#ZP<)H?cAcNXjfc zp{N4Ad%(SO&d~T~(Qz5awky2gP(dY^-lKLaorj9A-!?4`2=F?GU?RZ&kLrt_35TL1 zrPS~FjwAOQbIxwplIwZXqJu85vLm?ZyA#=LJGOeuenIcv$klejZq8@IFgh)`*k=JW zY^Obtj2V}KvRv8*1MbhHC&IRHi=XL+s}xdI9j}he?*uk&guLk>{w)Y-eA2pk?i^7O zz4S{0^v7w;b&0(yiip3Dl_n9^ME1&_0Nn*`mpke| zVRVNd3>#RmQ6Z?BE^ux5RS^=lMCqo>TChOdS}|12PFARaWL06I1Cc*TYZ*&Jvg-aZ zO7buZb9nykWJ&+rP*@?AY+ASaTtM&Mw$asnaEFK&cyysX3spp2Kd;eb) z?w|_~u)cOX{B`JHOpOo>TQuR*35j-Y}I1%Rf*hagi9=sA15EP$V=P+f?l3c^DfRvC>iBRAtu=Q;2i z4o#GMO9lAk+-v&qT{ANZCJf!*Z>G#Og2FK>;M>Lzh~-iY!`!*{z10L)k7O*lwZXg3 z+So|aTc-#(T_Y0YG9jf&(+414un@SA2$-tPg7p01i8JBhLHVX%1NzF^7dw3h`t$ln zQ%U>XL{r-KpL&x|ggrOCu~mJf*(!)J$Qm*N4eRXS-HONC@nyi0r+o68@`pCUFmLF~ zsbYuO51c@K;d8+s*M|wjf_CvX&Sgd;R6tf#7!0TIR+t9Z!+@3sZ|6Se2qQ7LZNZ!^ z9N4cgf*Ju_$O;3d9wU&F!zw$~{_&-e05^iady5_g#;oJL%r9mO1BC)4-OK2sFm&Q| zS6verx>JqSVLC8cG&8ZbBD^wbA!<+l7Z(@3z5Q3k9%y$*q5)`N-Tpwzewf*|4HYZ= zj9TG)ISKwU6ws5;!sM6=(&(ZA8l?Y((L-5!a|dEn%T~T zJOSw|8UqG#qlgx?nGywA1D7!2ITT&7YIlvy7y|K@vNss^cGabCx=&=%>?(?2WP|}D z(lG{sKMc{xh+{R|i?^Q@ZdlK_PQhWdZCF}v52a%OAS0#mFE%&Su68jPFUa9u1?mzJz8~ zL2sj1Zq*2oJppO5;5jzGBW<4zv^MU5^n&mx1vKa}2(wYOXnp_`cZ0xm z)uY)PK?;n|#GT!)Ac&g&%=I-;QVr9-XbRM$p_K3JcnuXlK^#NdeXhRpL$y}UvE>*^ zib;ieK-__mClK>EPJ$+|(>j#4LdD6f?omF)_?k-WzNWLjHf22_@Ey@^y%As~bs*#= z38JSnAn}z(Ar~A3h^)Pk?V~4*fU?R#3KZk$$rQdI0K=XuR=1dVYcs<&`;prqtAf0A zjsex0p*7aeF}G@;oe75^<-uM`qzMn!yr?I4X`!mhHoN@3emIcsev6Z=n45eAblo4( z@IGXVTFL4Id0zuTQuJ0(3;q|z?Sxl@C+!g`UYBDuc;ByVCeaKCu+PgdpDM;>d=+q7 z1w(H(Cw#ZF*8$J3{okt>x`m-g`@-hlY6O$xhgqg~5g*)i1+=OwZPbfy9w@DB{SE!Cfd4L62dE4R*Wrq^A=+P()+o2C)BbQ@u)HK!@i$ z0===OaKsspAW-K61qsN~76@F(L0|w-A6W<9Yz!1sA5tM3=1VN{)tp~x)#R`L= zdJDWiL|ot&N1j$P z;J~+5b|?%BdiVSh;1RfYY$F>J=iwn4)}z5I1TDO}n4BfmIG2le_(2``4?4nNBLEC~ z!xW&H$I7j=?5F}3mfcsXvr3P`BaG@|4euPbaCy8s?w}FE@#ZZw)gad` z_0z!oSb_F5`|kJEDREvbywt?Sp+0f}X?J!8=e9agQq>Zm-3L#(p{Oxq%U0cUj?L-G z3xS#&)Nq|fXBg0F6)(?+^Z56enlbjTunB(z0*Ee}4ids(QF+`$AOQ7Rxw%gen(3jN z;|cV1+mBq(eW{tQ5kWC%_|u)Ol@TVK@Q5taPpeI5N!)?Q94jM;a4zbnF&or}N2zM4 z%)@$VJyekcWgZQNcnf=^6sF2(Z$1LWsMxp4poGcujQJrzcB|}*vBmBLe$d5k+u!!n z2BC+J83Fpmo%Wa_*S*Wo8k&i-Khi1RLxkn2@$vpyZpDTwzzyB72IHj&RpL$DWUPPR z;dj9O&xa@~US$UNQDm@hpJMs%aEVtZ0Gl_oS-%r z3!OUJ6v3ddPZ4PWeoH#0crIBfR`Ljx699VXZO>M0u7rhAto(OBtxohmTJ9fhC=A!V z6b~lh0o|GxZ4JEQn-5<2gIys0!2z>?-`3x=lREQY@?ENUGzDh#w6<(JR(i&?u-Jp7 zw))hxeE?e03LZRE2Wa+J*1hP+gVHF~Ii_-$_eK1Rdem%NPf z3P{>5y|$`*x0HI%J{Q<+XdT%98>KFmViPX({G5rWtwn>5an`{<)Lp_nuB>19i1jw{SzbH{-A*IeT8UbI8;dl+N z^m-UL+U0DBRVg*C3z#Y=eg8#xu&|ybfcNuf^0NU}Ep)?1!^4x{0T(lYa-A;#z`ol^ zl5HDd0oY(;c+_AMJ#geKXvr%}eu42E;L=2+U|<$Og&L7)?4jOXXkfHhV1aU)ZwYmS z2{1%OezR%OQ>s8~O0I`MhUbPkHl$@}CmZ7lf)qDG98_iQopu@~9Ql3?RYWg5##L*%13Sqa^UngnvH-+ ziArI2Lj*jj5_91ST1o}hTZ}wG_e_XfiSp5@7r}jVc4F!=7+hs_8nT*1Rl}(x(BY&t>yTvIMGKU>MrNu*n{2?jbE(<319DHBD)N6ziC0n{HbeVam9Gs$_l30pnhS!q4wKZO;w zB-BZU-V-P=N4zu0L*N;B__==yoy&jWgE1EZA(#*tI5bvkecVkKvW8uVcN z3K1;473V>LlPhAGqda?lhaX~p|Ie=2{aY|JXdq?)f`BJw*fQ5bD+?Uz&M)-JGsYcA z&|9>2-KtpipZqaYEfkQjSDyk*xUi~G%!#v@4e#zd)QW|2PQz0x0L4^xKnFAQ1@ngq zrDQD10vA~}t1UUv0m$LEqq_{P#4$<^-lq{)^W#fPWYdZaJ5E&zS7p@TnM}-7caP*A%RFYX9k+AxFWIMDu zX|JB&*Z7+LfA<3!}whMV9zK-2Vd#b}h0_Kr}(Hcm{e{RdOxxfQNUTTIgu6hR^}hE)WmYq>p7nhaJ#} zEo8)2W1WWz_Ftx-8;kJVt@w5e0>}mc3|c03CU0%Sl>s9|2!p=g7*&Knj01d zp%C8B($nZ~B->&!Q9*#dRW)mT>4Fs8O_>oS_#Hk0Yhy^bXj8G~n%ik#x$BbBc+>in zS++2@D!PK7BRmfwbV}O#ci7m^hbZ^<7ZO+sOKc3<6JUU5Gu?!ME5VyXuMHA>- z^1DnKeKGcLKuh~y?VWiv)%&~0HBc!>6HbLrwfB)Z6(Lha+GvxR3>~Emk+cn!sX>Y& zJ5n;0DRV@zji+)x$p0;v+ljW`@8q9b?@(w`&;*X*I69dzQbpDrtkB- zo)11e?Fz0Agd-_=`nl{a``+K@d z;3T)wbo$Mr69fSO@s-?rjZ;%$F^Z&Us_ud>%g& z_tF}SL6NN%%Y}Eqcfo4sZ~NCchF!3c2(D{PFIGUIHo}K%+~g)2JJZs?>%g@1I{h>k zB8P*a)kc{%|X!=_s zvcQsZk^{+SH+Q`)Ee+hZ3*IqNV+7CCeYA%zwsSEJ?-#IUeVydmzD7OGt#qxK*Kc~rzQxrK8Mb$`Pvn9xoOpqD^O7Of1(8uRs12e(g-N#g( zAr~*m5P5kOTJBx9h=lU>0 z6t8^#k@}^l$eDD(gtj>g6=&kP%X_Q{TyH80_U8azBWkkJU%69}Kukbm{cf3~l)Jb2 z`5Dy^W)Vg(^hMgIs4G8}BaF54opA^eN9cA3mF^7@PeNLqCQdt7&9r5I`*iZ0Nv;|+aUwYpw9Pl<5EDA?NNNe&s#37U?vSpqaj2mx zR4tX6tL)`ptL41t-4OyPha#D6DEog4#7n(nF2E!eV$5yt^;6uEtK}Ja%pZz;)&D9- zA(rF+h2jt9ef&k5Cs2$y{wiw%0**NT0TBI%84y*^;74tK4S^Q{)BxaKaRWqb?MJyG zEEh9`>Bb@m_N>r%WDkq15y3n1&p@pIL;zmpT2pm!lFhqQ1GC3ft zb@h$-PBPPyqjDX-Q->6OK!}oN&KuTsJ(_)72d>_G6(!ZAIvWB&4?fbYh*Kn>f@CJq zyNe*=5q$Mab;RQ@E zg};{=yw9cMZ}N)k#-8|=C{I>HxH3n8W$^H_<-wAG4#5&QE*cOCQU<|kJ8*3k^4doH z*M6^1iHcsK^f;NobU_}UtLR!sl}2?50q2G~CF`*g=TbUFsA~vnDxtrA3@|tu%_)Dn&^9yyag@(3#RXx2=p1cdZGA4N)d~1}C#Kp#4-WV#Yt9JjI zm}<#UK_Tfb%Z+?X^t&&YU9{X)@7hp%&@PWkj(L`6t|WSfSNuw-OstgAcEOWMH-7m% z>7!Wb<*<6g*=B{|2IJ(cN{@(B!^0m2@@e6mv*(!$hvk?oVo*PhA{yRb{5ZUNky!HQ zQA05Ge;jcL6aD%B8a{AlejN9h%kwO5eef|7uVkmcLA4}I{*|!=4Ct+~#;I*pnWr6sl(9esOYxINT^WdOA zZvv=pNh*Ha7XZW1i&f(iHD%QHFe_zBtr==crc6IU13h5=rq?+d1 z;O#BhzwFH$J$w7quCH0P4J69_`}fN$Dv}y6bKDLIL0gL%ib1MLU~X=1RX2;+joH;Z zxF>%(CO34T$gt&#*T`#+%_l7_Df9v7+~0$X^wxM41&Ns#BtO`5ro5ryd8voFxp}yP zJL8oEUXvp`O2>Eb3;<%@wcqUymh8*P$s%=+kG$;J*>M?FmkT_bH>YK1OPBOtzP#A- z7s^sZLEr7XhB^spJ(`3BVI~A7RES6vXbHJas^|al`IoH(4 z$Y^wOat~vD_V&fA?`gL(oVq`Kic=2}<9hGeTTQM5w&#^ZL`1~s__#<$8c2>@dYuQN zp`POAmT^y!Km6@kceVS-O)uJ(zFbzL?B&Y?4<9~k$~hN*+USbe9S)nH)*eFujp+B!P7#8wg;rKtGh$B&Pl z`s+g#Jqw6G7bKHaV2f0ttSJ*wo$l`Lgrm>x%gf3n7`uxsmo8n}LtO67NgW%T#0ZZW zYoxy(70`^>jo)_jD!3W?af@o>K8aJsTUOjv)6{gC8)$xB*+XXuIs3Iw&)eI(thLn? z%e6j1Cw?5h+++O|`Ptmo#A!-H=y{i#E{y1KeHK}P_Ibf$HQ zdOF(LbmL5`-!OL-hPlou{=71ekVvqJxTq|xCyE#kq>y4{iS0d(8m&HHnMNljq!@BV z<8LG6le|~*2#JYNSFBhe>o)ZSv~2-SPEHjSl?|r+$Ak!p`!gcv60&DImyU@pVY8}F zzVFYsHxAF+8y%pat*aZPt*yO$pVzVuG|8w!W>O4bZWTCs99cqiU5!89zP;M1=iRkZY zvl3;X4E2?iyqNQY{T(1TdVT+a1Cs7DG(z-ZcStcripY(pr7TaJ=s`-%ojRM~IvYJT zHD6S~ZA+?4#QNE2y0yd6ran0Vc^!R7nc2-)Uqqgop5~f;`2b;(poAVT_M&xoS~(?1 zD3I~3rq7mr4WS|{ECu62kNmv+e5a946^iz)jgq=Kj+R%FmY5uHbIaShbt_t` zY_qhqw8kgZsMPxUl%u!AI2=~AwY3%37bF^IC4%Le? zf}l?hBUZ8#n~?nKk3aev(5s})ZR{`yue264UUg@&UzY2L1tcM%G#w-WPGRTdbjkDg z^SeXB!myqm?Pk+s&GyI2QKK_xz1k-hGAt|B^YP7htXyoO1wDvm9XCEsgXTD}Wy_W( zhEr06`-Bl8TRSdgJAAmz#<4L**dVpEq(l|$w5vbyO8>HXGj_xhll_or!5I0eDc8f{ zvU*^rR3X=F{e}(JG;6P3L+G*A9^!q+_hU$adml4wNc{LeQTIR2!}9m+i6U{Ou0L*B zrW@kP>}Z1cXp#70rt#*$11IHfu|;69MHP1VkoCYbyJp_w=4dv>p2##O90ZtVMTZzh z;!~qpj$^m{Ez@)hl^Z1zYL1Q>+ip{+R4E2>gpmfZgK5?jnO^nw?lmZ!2_{)XBhCOZ zSFu}6KtPp3q0nO>gM`pS=7kN@h*__~G;D$h#w3}7%(LkFG;{Mfi5oX=K=ummBx>ha zz8w2*7Fq6~^=KK1a8oQJ+4?8O4T6RAsu774N|qu%rF52gb)^kUSy=@|L^SA`PW}4W zM?p;s*o-xA!}pRY;3;RKIg3_uC0fNK1N8z*_(8%xdJ`&H2kCYA{!SGvF;N{;pxudc zuV24DCQ&a5c8WSC@CaB|nQqgLV9sgMV?d>;ut?u7C)Xk&g)iy+rGt?WQapQ0Zf)9= zdF=Pa-abARSQq^K{E6m;1t5JtgdR$aiYl^pud1qovcikXbdsRFylGcSfI-DwQ7Az7 zO54Do%xh(!utlAUIDb$bE7zU@_>e$+`!x3`t&lb>I z?9qxLgJeB9)Y?}QA22sRuZMjmKhqN(DrFbiMTu&bvTKR~kV<+c%c^QWVI<)$%ja^X zAu5SQjOitwl4Fxp?UxTPosb2&^VR~k9M`5zNgW->hz&q!Q7x_8kD{Z4Lqq#$E#Z++ z0+;TJnI?Yu;xIiklc*i5=Iie-Ha1JlhmbF!*bs3x_eBZ1HL8ruD=QlyASCTuq~qN& z%!A9>hD_$>px67_3kxAa^-g%gJcQ|p|F}gAqrUbxBmr(o=3gie7QTQ2X1*=zzkRNZ zY=C7OeDB_N%0f*@6@E5QR#r|IuM;SE6^PudutwOscMG~-EOsa8QAMSlldz( z?6K(4XI9W@ctl@lvE2YNZ9NVW{W&s;WK|g$z8qpWz%LY5RBTTlhMG1m zaLWPpDVj@I-wOCzYDpo&;yAmOnVDJO{O7mfH96-#j|X_p9Y9PvG!89~Z1|9rX@H5$ z!n1475>CKDn0ojYbrbB!?c(C%l!frN^83w$gxbWw^35VAt1ipdV6Z7m-QM1QBWk6I zYvQ@B@LU%Vgx8Iy@?kSPMvCgpOn;gm-z+R{ZCBUqZF9>xIO-m$_>F^qEF>wZhh6G> z>sD}KVc~HN2-l#ycjIE!Lu4ml>g!rtTdR0rX>?gtzI|JdUVdH674c&1L0q zhq5k1B9x}*XCh(A#X?=l&byyDbqY;_JQyDHjBh}x3d_hC5z-m>R+s7N>EM}M+DR0M z8|OI266bpLO8Nb1EY?g4=y5^g?E<{~S23%?3JPX?d!1{sTCn;OF(2EvZrx8G#~T%E z{8^~Xxj5*^=;&n)tCxopL^Z-1hC@SyCBh~bkc!^p>vx2s;ntqzp<^9g?q zbJ5B6piDHFd*;7lFr4~NhMahAoHB9q=1mKC%+l$Q6T@HxBzy+EoZe+Z7Bo?ZcpJcs zs5Fg@jSXVVGSxFKUcA_xpO-fvAt6!hf9KAfQyLx{3_Wu2Q!ZasY18&dG!6ACq?bxv>aL0b3%z*vim%ModP0OsR z9;wjn<)*uy3LU)_J$oT&Vk3q@WfeSYlLm2ki&sXwIz@8-kQ@6){Ob`j zvj}{IFj|6L2Xzy5DM+slj*pMec>44!GMZ&lqLKMbHY4aYMK8UW9)9*R_~I^C*^~5B zgfiN$&}>b8(QQMWzIgFsUlG{|I=yqsA{QKs*a)I#iB5vgQg-sG%*1e0Rz>;~Bs+Bt zG4z$sV>8WT$msSdTRI2iaE1oZ*~k<$SJS?5fl+h(;K74!4I8l|26oR0@`{CH*A+xO zCn18HTqCK)?xTS2Ou@Oiv!=7*dtKi4=GfFF#-jPlUb}_XVUN#^1?TMip-I%}Ghh2Z zkGlv^5J1(1uSE*p_>26)+!&WL2cZQPguj~+{Dvv|9Q<;I)hVnmCI_1hV%#ADXTbI# zwa&aK)Q(;F7LxnLylZxPy38V7dfvJ&F*te{?kZn1B$v}^Mf6UYoP5LO*!gNji8G{# z+ThXb{4d!rprqrXqM~MXS{7_!%GNx4@td-~e!aW=8446&UuFuN@5z?5%uon%VRVhl z%s>1dN7c5P=S@m6gI___Gz z5TN#et>XQ-0X--%@JQ-dt4HSnIsy>`jbg){A1nj!-|uZqg|10(U#VHF>uU0wcVSDR zd7^GYXJ(4S7u}}L0Zzu<*&}1E3Y@r$;X|xIo7~hi|7)@s0+Z zwQ$i{mn{<(6+KKy*5mnC!@_vUzy7MmkYv??!|8idcrJD#aGPov)teUY<>fVN;3g9! zrKfEqakzS3r>!#j%hx?;JC)&+MQL;;>ZkN&-m2unnK^ecCnJiNuxuD_6w+zUo-@SZb@T zt1szP|1r7K_KJ2#;0oCkzF7HAQA7;d!seofM?qIvz>7%L5B-&`t@)+9ZE(YMAsxEO9kD%JXEVr>53#s)0%^*|-{S zuLE1{3qOxt^YPgmM+!ynANjO1AF$sV-@bX{)Fh7XBkA@f;M)$5Q*I#6B7wz|viV$&IxCNXU$vewlzpjOg8vYDcOKrOQ?8adG!v=NHs+^Q+ znBe0unhi_>agRj@zDtAc@y#_RxMZ(4kD0^OHRQvdp=p-wj=B;SPTU zUTVMLz4?iYv*ezZoTsE-+#ep+K79iE5Zy=i!{8aaB9@}j+1aTU#x9JIi64*nU7GMK z8yF#h6Yz9$a&i)2Ud_)=Ho&I}i|9ftG2<*7y#%6u&&y|ntrxztbdQ6asSg*gyu7@+ z?2Z7L0;Q!5o@1Clav2lhhSR=u?0XX-f3&QuY@>{045lX9dA65M^sFZw2m;}<& zjcb%!U@PplYcDW`ae~-S#KdrW8exD*OB=%SX23_A7-~&|RO&%DPlj~w>(r+aTJ8X6iTz6;0=N6$7h~8i{X^kbe zMnORVVNkt|R7}HY_Y)Beh;xKg%CpP}d36kh)%X?_CS;JBjD2nUKEu-A9Ts5_v`!5X zlx!++&n0YmJSzN;keQFl@WK5ClVIXPm&YP_WDUy}@u$i43M3M#2R3Rnyr_5xe;(_j z&raXpwqs;sq8|UmwPwvjcoeqq_Kcs~o2GXm+GYLn8i)Vt?vNtHIp84Ig54Pp@%1K5 zMh6c`%goKmv4)LW{`$3B&*IydLn|!h3uuC%p64tlCpQjZoCGVK>>qIB#u3=LTY)d9uT~xIXZG$@coP8bzfhh(I!Y|Z^#AWcA9cs($F*EA*6p< zbMsOCBt3+>^sxm&%l;VyUe>#DJ)(d_gk|lzb#;ZFo~%okmLeRAxnpN%ul8EBBom{) zmgl%9ZVf>iS$z61#_3L7-`wycB$g#(?4WVZ_hH9ij<&hDxWEYHL!37~)x#yVQQM8SLO{_x=;+%l`i zC%?&F7=KK#P_;_}U{s(IyAJU$B8~=|t{hQ5+@DQTW&-qYJmMk-sHRHcM}f++@l=e7 z*KCD_cxCy&Ms7JJzFS-P-9J9iz&z>y_QeJBB>3|8A{qZ*FA%=4MDRUT_|aw!LMO0L MRH(|S`;T4z7iG!y3IG5A literal 0 HcmV?d00001 diff --git a/labworks/LW2/IRE_testAE2.png b/labworks/LW2/IRE_testAE2.png new file mode 100644 index 0000000000000000000000000000000000000000..4bf323b03f20d34ff1b9318ca55410dbdfa5dd0b GIT binary patch literal 33583 zcmeFZcUaSD*De~=5giNTSP%hGL9tMVE**zaj2Li0dQ*A}D7^>A5oeU5K|neVMd<<( zq{cFUl+arU5Ru-M&;!X?Pv-sJ>pOez^T*!T-q$(TxxQTQ%*#N2?fI=|t$W?;UhB^r zI$Ha_KlVKagV~3@`imY0vr_|u*?wZzPWVmWy8=`AKP9ir#$NjF_FlfXJ?t>J+g^8E z-Mw6$tWWsZd3ZXxyU9pM{Uq^|*a=53uRESfl9Kp;e?!9E!$I(aa4oRH={U!`^V z(t#V_A6Gr^@e7l2Hi?(-m)Zk&HG&0?3S9K~o9po3KfgG2!`|!%zC(`ZG_@z5lAMYO z1hHsYpKB)@bPUx~X95c5t5-||=@%&1I=2Q}J$rASkGTdn1fOder2g;z`SFbc*DlUa zHjYLh%mbA8{1kT6b+s>T@AOGvAYSsN?U=*%B$ZTAR!ci*4>p0e9$r`_E zWYSUe zXJiz2QZvkUb1d;x>eaQGn>pgg))j}@xJM7q$HquNG$lzm&; zC4+*+?#i_Dh~U7q*<|1FQUu{-dZlqYkIIvp zU}nwu!~@EELEnL=aFYeyr0@0|87(7k;fIzBe5-RNT%%IAOV+Ge&%YgsG^F_q+^wH2 zqlZxK6Y<5a)MAyd@3yZq>FgAdczL|(e$}P6>j|>wxCOo1a&!1Gp^>M-Wu$#f4xBGn zT>K>5+dtIT_uQqhT3%@VlUA|ESfi}G{J5~t`qjD!{jnb)d-HXG&>!fCW{rZtd zfv&dPrT;+a_3nb|mHu&BFmr`+p|Gl>YO8zaiMe&pTa|O9Cb&2&Tu5E5a<;h1G>Yyw z60!b{TkQ#~hkXO_w102qPz)Hd0IllO#}s*o#e)?loKRUZhGKS_`h2V2PLR?;L~Qwsz{O zCu>VqdnFHR5v#W5+*>IM^rYje0U}uY=I2j^*lYF4Cg(92ya-x@X|<&nJej(wYLwN5 zDn`qB!;-tp%gdB97niMT`|!(6RxIhJSaEIQ?3+%V^|ps<&$d=*lGx&a<>}2?2lZT2 zJS?Gu+P6P--)xw?QG*4(p`$dFG0s#N^wQUg-HCaZJ4$eYhqG81sxGNN9wWn zHKtVLQ;!BwP6weU9-rfPAys=#bp$aI>CJENjugXHUcyaLtsjdQuMP!HBzd+p1g{SE zW|{T`<)7)y!Znpoq$F0a4k??tmD@QxJ9~WjQ`D_P@wor!)9mc*hSPE89aVEgZ3&Z^ zP4rjTLj|k;5NkrVW~>}G*S=9{k$~QDJrZL*^De082}i)n?6og<=Zc6%h|eP zpYQXuw7t;mgkPg?(p*b$`!9YDP4ezBDPQS#F{3nMiNB^_DVSyQ8? zzTTj_2rffed7;X4=YE0btSzR)%VeL%?3XDCR_u-5?3?FjR8|sP3a~gF&Zpn$9-I_PfSQis9FeKFq;^$7<}>Ycz;mf#?n;xg&mmC<&N#}Z;9KK zWrk6n@vpVll81F6 z`BS7ps$L*^(3f7_UE|VXk0pYaQ$x4NNX$?TSo)Mm-yDbCC}C3J<;2>YP*+H0d-qzz zIiv>5gX;)PjQz6SXjIdoVl(1h7-(@N>Uc72eLGn5?A%;hhG$T{^3YRca;tO#;W&7C zky<@SY->O;fp>+46aGbSd$EO`Z z=Xx$wuZ};_+}{AMwQbszY7?cp*d7%ks~s!mG>?_K^Z8xU-8#O)>CJwcZpdQvIQ4=} zU3i0Aa1^3 zjiFrI6IO*(1H8t-gadPf!2-@(G5dSZmzI`Nm|GJB)`INE7?I1KJ&zkU*F2#N(tGRYD5+_-mAh|8|hsSYE@&pGSrkIAmyso`jpKS zR2HlrV^dp0dN%vyX|DR&g@yD$d1@CV>I5LlmpFQWQ1DPhYE3TIH8_H4gdq*lH9aY|~sBJq3V*tir$@O&!It zXXC+W$BmOaHF;EJCz5@K0<3(S#LJpZ9Fn^u9XjOaOh)SATvdyW7qG;_;5ip`3q>tk zK12Q!$d>rvg@Z|u$9M>9n)8(lHQ{_R<8n#ZiMJ5#7gxz_RjibZBZa&mqWJCagEF_? zg^F2J$V!qoJy>5Ks*mQo2fHMul1m8t&4a$xQdBK=?mhbC+ekfmdSV+UZ3N{AlU{(f z(6Y_fFz18dIhwat>8T=9)Dnk+is>BJ(r!b1NCEe8zcl~yEYjMjs5;e&>(hq^dpx(6 zdll&H#W-@6;aX7^ybT3)09uQEHc^>HMN$Z?cv9`+@L%P0)YeD6!-SHZT9Ong)#711 zLMf8LQ`-CkWUZ*<>)>HhHTNruU>8eLxAMCAzu>eTPdD_Kxesz3Ci~18jJ$E`^kB}F ziDFmi1a=UBK>BA06sxTcYK-`#faz@Pqe2VcT^c>EZXuiB>K!KAUgRHN=q14;#tS)d6!=&aR%ryc;jzWK%anv;@6xLIg~JJ5rT)?R#CtNM3N= zuWkvJJ)uBe$Dxy*H=>2iLqN?lFPFx)3t8K^PxkcmjBhOv2#hT-Xq)uHqH`s7N{tXS zV-0c*Ph*GHTYO2`z75Z%Y&ysUwnziu=;0#*U-lREue4jr4T0@a%5+ti zy9^^rdnYE-qugq?3au&&9BUsPUZ=CS=;KU?b@}?yXxf+upmj7u+eEy@I3@SDHQy2IOYk9M$WPC;k?y0R9Z?jn2pHt2r0)j*GjBbc*)=**X0LcXfy~iU2L-r`7;m+ER<{DEB^n zdMfPs^*#5*P~ZXu(60v^F&exOXocL!XqzSvjvTVpU&=B{uXZ+PxcJr!`r6io^YN=@ zEw*0yf|Z8oh?A^|9t6B+^7hVcqV1I;0L} z^-hMTZfA^Bn!eQw(W|<8R%q_2?DbSO7T%ZAk~bH|ZyDt?;#x9CR3S0Gx|(_2I|la@JRJ404NY8;E<4 z$vRdueII1{TEeCor}++g_vR+VyuS7Rw{eUJHe@MXXbfIZ%Ph5|1c5Pl85CbKb8u;v zDg$zk)=)famq@p-{J|W4)XGTf;nrzR_a|8#lb{TqFnxoV!$4J2|_!cy3I+ zRFHh(GgsP6Qp8L-LUu*jEt>QMV6O_cxZBWdEQ+vcL!yT;&l>?y3^U%g2NSyA7YuQn zMrZjj*3dc(5ZGG?!mmJB7pYC$f~e+xN6nOVMZ(JA*p8Z9AihX3N7 zTgWTfwyLh?0V{)X4F~=qGzZ>qu=L$8e~(j7qG#t;`+D!ZQFjQqsK2mzE$Wv{yNB7~X~q;41TgsZ2!(G-i}P{D&X#F23gp`ALY` zSFbd3lU7|PNA@9abQfB7_ZD1WPU#Z*&u1up`9s)rdHY6h5di2ir4R~Lxci2cRcf@3 zQg*qJF1;q0laeCHZZHE*6OYX7W;aBtX!qb5Gs>!{Zc0+3TSfMx!=PGw!jYdKIewDpUZdza(Lxb|RjFF1xVsHa zn9(;38ARvqug)&BlZ6(g)jgPzm+D(ikO9-O6L6hvZBIINl=I7f4YshbKtNI8?%xLt zvbiy#I8jcXl5k8*q5Si2dvc6%Oez>fqB}UvExc*LB%o6#@6E7dX}-^J!4xT*I$1h+ z{7PD7QfXIr_n5f5zcxS_lA+8__yq3Osk3v3Vy^4@TBGQ6*C?mc8huih+{BS0f?lk_#N1V zx9cli+4>AHUs6Ern`njVDI8^A>O^yVNqf9Fgrjo6J&6lKkUtBW(g9d@zFhYS4&J)5 zDx~0M&fxD^9q`o6!X@_HF3r#OT^LdXERnDPxF;|_Sbo{OpH}C*Sw>)%jnmM}?(yHB znA1NoU`wG2x%++O_h4_WBDaO_^lLI3DsGvW5<@S5(V5DU#U40o;oWVZxIP-KT)iKI zvE=^;PWKhrFtQY?v)5S@kQ1CY>{LUfh`x?u<~ob8)l0y?&Rz$+FsHIHnT{p)_xEqs z6E?LT_P&)c!q+v$&hwL%(!jb zF3P?oi5e7`h$orMe8Z{6k(>*U!9pejGb4=!kWk2RvWEGl-B}YBrOpO$)a#xV;7>A0 zq_x7KBt_4hAAbYnHc>HC;8H^_8lPZ0Q?>|@&AETAaB>Hv^9hkB<4lz8v|Jns*9i>9 zVEUubMwA%&ut(ChX6xN{p3zt{w`^;X1Oza;skM5eQiuE?=l&_AvV)bl#MxUg`i(?ws6YzdS#vTsdFiLOk`y8pS=NGs{y6 z$g0G|r{tc6>MXUhSgHG8;GqUHM(9A-$gPr1YJ&U`imS>B=${5~-q=fKEsry;Sc`Ft zr%^!}`j)_ltn`*3?o}iD?ns?o^K&VRJIfOMO@8bLlQ=oLBmOZYLSw)MEV|@)>Q~Ks z7dC;z{FnrO*vZlH69m&mz{zST5?QWR^x7eo0+PM~XP*!6xrGL@gY{dK$0j zX^+l43p*59H%fWNSwA8tluH$-;ma)Cs=n1F-TAN^A-9yE#Re2`Anbht!mebw$LuAf z*T}V?ELw#*Tf(0=JoPfQ1=;EtnKeT${O`))A@miKnasuQw!dl1uZNct4f+QfEo9Ei)^ygGNqeB_$Y=%0ZUH#&q z^~C{Sdaxoy4n{?9wFI)0lCfAbdw?tk^YNLt@GooT{~CO?x58s0-G45Y~Q+QwP< zV8Nj=)U39qjTF|CXwDS7TuvMnQ1pn7T%eV?bAScn*BFdy_SS;c0&DJ@=jZW6_ZA0r zCUu+%PPPfau}6#I#G5Ha_*JVt0Bu*#eE+xq%8?6w0Yc(f39`rnau22D_8zcoN))xO)gA(X)=v0fCBvTR4s zN4zHFCK>)mn#jjg{O%w+BWOaI-T)T!3<0z~yb`m|LQa7BvpcK0jDfwg@@9NZk5W@Y z)`Ye&tbuvpTxmJtor|DW)mV_VXc{uZjX|Hu-()ZS^V9!iQDzAk@g zI}joIbEsy8Nizf5%%s>B3u|84)w3a{maL1}HuLSvV@Z2(E!`5^(YGo}<7FJ|0j?JM z@VSQVIPv=UcJBSx^)^F~%R1hO$#o(Cy@_yLB;+*!4-6^=`ozljzo;<3eih}4-Ma+>6J zb(fW!Ka7ogX)0EQN_N1E|1TDzI>8-l@EM$sfr$6AsHmtvGtVeEI5=QsHXdk?3}Ej1 z$DWx2UpzfMt%nu})*pkpRdNz@&!-EZ)W29}U>pj46!~vv-;@qo``VnO*vZdGPAe#o zfF)^0v?j1u&T*V&%M^t}JK#{XdJw1hz$j2o4ZN`z_09{(dl7^Mu13$yMXo9mHZ%Hi zrgoe?>|S6PjHEqAub$*o?Yw^C+Vv(H-2$A4di$YZN0~d_Ij-ba06@UD7=RlQ#!T(l zzH{#G7{rrCL)MlCzkT8kBaN7ZS z4rb6T!LhDuILx-WGzbasQu%(mrBSN=;xPi$jMY78LE7%_IMKErkVy0|R^0MAQ-K*% zft(jJd34(kj#?I_!-^IU7Y?AWP73^wDvhB!GR|GEy1KeXfva^I@&T6)yh>L0tNeTl z*g!Fx#hln=w6+2~>0u_Z17z-CDiM zZN~{cxrH@K1QsK;ghLgrq1e0jb$BK?NHdC4&>VxpX2tI>G#`=@_=qA=sw>8k7r*?0 zay~@jdv@X!@>kawEy|K8e$^k@jh@4cKla_Wiag*3E^yeNfqwBqvJ4x4=_6>JB~p2SiRI z%v_9ICL+ytMk!9eO7CIzfd!P@8UEl?@FTj`WFx#V6MM=vOTQQBl(Xv^UDVUjWExt7}z>ZlG zM*)I1Lt2_+&M~((i(ML_5_8CQz?&rkt&2)Guvs}zqHq#k{2PS1WK!3!6GtCiDERc- zcYFThSiwoIZC?IDYwx%hOACX=b=9}LY9JpNhiBO|Wg@D}Jon+J1jP9ZKrj_FK8?=W z7K1KX2)jR(IWXY?6wNqF%FbMW{v@B&pVO^I05U~kO#obHDxhZg$O~`#A*~ZCh{5@I zR8?$IVKhe^X96iHy5Qd$*wb&BeY5|CH2P|q>k?#X=<`46?-5f6pZ^`z{QtGhs*v52 zRe_$&$hR2XiG~5EsEI|iRubS(EHNxB3?Q*E;?g0x^IYyWnrJ1kJbi#YSw5}~6vAF1 zwV>)K_KXdn6D;vsX2XnJk9dQsMRIKb^#S%;c9LKWb3G@vV~*J5FfCk$`Fz!A{T2$PieY zy_-S2RzY_ei$)Fos=s9Erq=XGLCLOZeIhj#5yL3-e;xiP1H^mP*AIIN%a5b$q}ibB z{NMKbMnbAPP*hD&to8)X<_s39LiFixT-$fPsUSm@x@rpN-Uw`H96)R_0LQ*iz91q` zvTJdPJNI29Le6&rRihCuUjR6w2pPDQrv*Bp2J^>I4N*lX>&gJEcaCenmZ|4d zD$rE{i?4zpnyA4|N61A0DK7%7Q}4C#wLnE-M4=3PmI4;ED?o@Jf*MrC)^ePu=ww1c z&BpZjS79uv&-!r^H~=u|p=f{>5L3_fauydb(miRGeLbWpKgMp}Io+n|=>0T>BFiJL(f>)@?mPSTv{pbvs z#1`d1jkx9iIp5@7Hj$s3t4&0t+F;5-be>729Vfi@{JZJ}Pp=K-Ou(&l*QMtT(V`Pb zED*3dpA2Sbmp>LWd3@`&JX8|4ivzhc%-x@|T{~#L(H41xOoh`~i!@#PGMW4YnB3=zGJs)r=qBpMxZlF3l zDmnNA0m*>1kV6aG+dlyq{mV|x0^pg%QJ%-x0xIkrO3Y+@X8Qzyl;H#DKpfS!+R!8Q zJLmeSb1+7l=WdP3BPeY|DLa0M4Q#a~s@Vq3xmZDAyr}+oIRx-UNd7G_9s9b0a`H@N zn(F}N9W-M`Z~T4t!JhBWvDWI<-M%UUyGu6Y`ji=GnSjU?R9r!p#{_^^QDpQuw@uCh3lKu0n3e0 z4U27(sB}$c;`0gwefnOkmnw|S^a3dYPz=BVMBsEv{jWMWbu;-DnVpkI3ogA<>pgih z&gF-k!r9*2CasU>H8DS*qa?^(K+Iq%9@0vaD!;pyfDa+%_RZ&1l+8UFPP^b!0fK`y zl)dkrfr1RGoB)=TZxxx8h!r!@oBL7zLat#x&_Y#2@Q?c2eG&!%$aG6^$-DgLtLF6% zFOD_kT5L;HX>D&@q9tMNk9I^-+9Hy}R${<^RYR?8y5Q z4UO+P9|*m1?c+n9R-kIl@QJE{K0Egvd(%P{!gf^pE-cLt2IkLsdwcV5ald-;;v@u# z?EHKXd(7oZRvnZRr*+*_NKPk_KKJ5Wli&<6@8&Pbp_Unz- zQyP7uDecseVMycLm&d1*205I-5ZWSwd0}P@m2Koap_YFJn*zK3da{xnB#`Dr>-C(h zux{)kFx?khRT$Sf>IPI?Mq6uhfz5J9B95EsL1+hJl;SbJyA7jclEqv|g}RwKR{Hjb z-;orm9AZec2ufc)j}k=yV(7b7Ol2XMNri-yfdGm6<}eSU)^oae(8)9=I<~{vfFQY^ zsb{h<(hJ%or6{OausZG;a6m(wK|G}G=z|ib{`N5YY>h9091NoL7=Cf7HKo?s6X6j`_rgah#MMuO< zpVigXAurP{!AUKyLFze|VMPw%$h82wIlTYvJH%L&YWJtXegPWtG*lzzicjL=VdDs+ ztPxS`mem1}a-y3*s|smSI{ddCATG3f!PsE;=2~>mxjfFprL+!y6aUs$2ldsp|^vEQdJFujd?7=JN;fanQQuom8$uMapJ zB$VJ50q+Qd62uLaJ^(PLnoLLmmu@0aK1wVl=_Xy20*5*?Nz5GwRx{sc_iL)B;LqOW zJ6~*=KfGZ95TT~n@?ldPWYoJ|$DQFuGy5;U3qvpqIbtM6g>rh4KNE5tL_Z8bx!y(4 zv+wppj^fX#W-(?Quf8><%MfCJ6GD11XO~{fExd({1~LG|Z2=)L7pP~U@!vxP6OaG) zR;(UA=9NS`LL~Opt07q0@BFvdv3zK!B3i-AwQKMLpiU&ULSkf; zwG_Pl@(8GXF^6PtL*gg`gMS&wm5bEhwJ9?1%q-r_e9l!r)j!~YK zMCUvAGKr|@InJRmASWt@sy$Rc+??FPSwP^GCVaaK=oM*>c+Kxzvh*8%;0k3df55*9 zkSjB~m7ux=AEl>&D@H)fX|g~xLh?UvG7#nElYc!%wF~c`?Kt1^l5_F>?H>Yla(u@L z&hP#|uKRyC?%e;TOWeYA?mXvqm40b;=EdC9Y6a=@ZW;TGMQZDrhXO=_pgU44L&{TA zS{#C)t=d2CpuCo3^|J&%8KQ`su4;_R@=cGq(psCXjnmwMT|fQ-M@R?x9e&JNzdo;R zKlBO6$z}{Ec^0ol5t^S&b?WO|(HHv`#~M;uH^a{;&-W?)0Oj!v--VV!esn8o5x{{f z_J=TKEkpe0tJcSp?ku%uGiR)#0~f^Wf>%$olLR|l>%y(g3Bh;CMun$#n8+NW-mQms z$!O(V^_C!vrKK=!Vm6MlZmef+F_n5;=@j^Abtljt6l-Uk$}_EBm3 z>qX%`pnm-G2tdC12psYD?aF^lg}jmp0z2J5MGrcbM$qB?)x)JqOvUR1JH} zn)dm9?d%gdhexjEcA}|!(ZR13L0(_j5^Ht_YX4HiQ(yh2vwKQ@IUf9`Z^*X&FWWDF zTgy`MW$>$^uVJU|a4@LfzN)5OZ=(A9L9qY$?s$AHDN{R|TgX-LQFF@R#@m-E=j);f z<^v18l0ZVhktAAyzAk5dCRxDA)bssx0vJSV5o{(=Wz~E}V|4i8Y$OUi(a-!l$vR{ z&}LenyyJ}-%TqRWB4+sR^$CuZdtHQsRq;iarQOWY%UEO5&02p1$_vo-7?7*cX71uw zqAh&!aK#ecb{ozWC!upgL$Rw%q;k#>+|^lBTn9h8zR&`aI*O1Kvhb z39jT|cu5iN*P*a5;K?xo`9Co``hwt^%Ck4ZeaV%5Bo8}jyy?u1QL2NP(CQ|mVV}Yw z;d24R*)pq{8@3b4k0&?`LB$TPU9bIT29^0#D~<{=jf?Orvwvj==$}}8w;eh-;F^}n zDr>i-YPROAX&~a;{`CI-^9co<#W4V?cg^Ty*lG7bGb!R!O?Vf z%~7lrKlDYIDi{N^1mcr_J!RkZ-5MDAEUl=~eeP%LxYdna&ECF#&R1-IR+xIwi{RAu$3G7(X$mUQh-aWY2bM@c}jPj($9jV zunRUyszhCDh~dCOrzn(qdtQ86p@F1}V|%+HK~cI!4r#dk@UZYX`#)9KK{F<&cvPR| znNvNQA02KO^yN)&_~QU9kU~w7pBp;pRy72G?81375Vz8+s{re6p;`UJdD05r?j_A9+Q3Tm=ilA@>ShbQQ0 zGI>&{!*+Svdi;|n&uRL)P7yvg-<11Qx|ZmDZeP|qI$VPn-p-^mX-H|kjBw$Ko~#}) zKt0+H&{R=NG{ucmwB2gTIqxS*6|K}n3aIw}wbO2V2P;)jpcQ4iQ2qGZJ)T3fBjVRU zYzjNv-4eZ@1H{ca_XY!_!?c}ykt6*M?HZaZkQf}pNY=n?YZKgeJSkkzEIebEN=gXq zWw6E~bHixxOf+}NE78fmZmQb0^x(&KoCQux1jB!J35RRn6&z{e*Kuw zpQjFMJpzUEqrDbJ0}F%7=-q7nawW3s7IH_SZqPb+!w`ZFz&fb}^kR0-KztqO?G=qu=?Iw0BW$KGOF>iv zr8aE96cOfZr_v#+w^7M2XjLcm;FTtpR8&}BspsMrfj*`p{QLm8)cHzDlj4lA=V4)^ zl7w@0zGO33nnzPllYPYTWKd^Jz2qzm4vu~!@8!5iVCiyv`>(NA05zcwz4ozP>+o)~VRppveXo z#^Wydhk)O$qNF3}>#m`g9ic5U*1s&a_(Fu8o{82H!mDbJE)d*ux$`s|FwRMqvokT-=X_oE%Of{@f zkbSk~!(nG%ss$4@_rqiGTDcD1+Je|>Wa;D|)SdI?8*^S8`ZcU+uWyS}x_Q*z8eegF z7y2)!EFX{A5lX4|p`Bjv(~=^Bd-?0dMncIiDM7`{(5EE|%6o9~q75L(gow1!%S%Id zIw_5;vnF8W`UmW9>mINCA)*ty~&QLv? zbkz9Za7+&%tWY_8xgFGJAwF%3dYR%3@4sE^@f;4E&KVuCE75~KF7PV|727y5Qt5%O zHRhJ4vkSD#NY=$W9HGTZ;Eo5qhIJ400Y?##a}*Rwcga>{kkP>Pr~xxNs?g|x38jEb z#mIMuay2~F0&6=T0~PI_d!MXWda?%Y#Xp9(84 z%c5It1k=V88sKo!&Nrn%-EB<+@6wf>ulaPU(@aR-)BXy`1b=)4FtDMosG+F-$Z+H5 z_sPDXSj1pXLpeM&vaQm$sJZ*OR73g15t=>ad_oRe=7;P70>L>}(p_=9LG+O3G5I@IkdTs;|z?4xtwK8f8;aT7!CLBj5)H7crZJNfuaE2&&8W|eI|EESVM8AZ zbq)Bk(^2X}#S6uDkX7>vpZoAEi+a+g{*3UIn-d()ui`9hIJm)DMW8t+mU>c4;8zuN%N9-3-3=ceG*tP+|FS`77XEgoVD$HcITn1+ zi0~pRat;U+zl}Wp6%d%J;f|AKL#EA#Oh|cl^m-x5y0RLBB_2MRtX-OQk>YN>-3ALP zaL&doy>s^8S`*`%Q|SVZu1hN)9^|KFIS>_kda{Q1SiNd=(x3viNK<~5ja?b4JSxQY z1HaRLz53h_K!{`%74?<9I0?LjwYdjY`j&>r=u>f-Usn1w*`R_AJ<}BD9`Hnp5Teaf z-}{PGB()Eg2NVoV3@&l7@;1Tc=@@|!KPhNlK}dXYG?sNzSB+Y{(2?1&K(K=6_o2o9 z1fG^SN6KwPMYK1$2Dy)JSqI;%-Pjg!_<|CtARz%%^|rbBMDa2)=;N9TJE^(YmuEsv ze_7`ALilYlCT;Id9-Sf9inT~Xb9_GYVb!KbQw@qoqoUwIs#lzyvO@kofKag&fNG8C zx;n#P>3$U%n+9TJA^u&c_f9^SK}%2ClasZ2wKGcH8yhNt3<@=!z>X{wl-C5M$l3I# z!qFuy=dak<0L~(b#d(9-A6hsAFCiQ(3XljW1>w=swRmap4DtqN4g?DN=Y3DJQ zmQxF7?{k-_esbLKY)d<}gUgs3Y}a+3)OX6iUir~e5gGe8^Fq?TZm_adPs{_sv4MMW zoDxE)JK!xWYrTu>^&^r)OKN&s0wD3t&qZFa6U2-M)|?{RPNKw9St)r01OzOJ#%BVt#N9aAEaDk{(e zZ}_FE37YY0@cSEW!x)nxzMzb;LHEdT{j+nIk9yGX4flCSvZ8r~lG~t|bRFmo>x}?? z_LCwT@QNjMkfn~1oV#;pqKiE2>U#{#%$i^Kby@OlF`0tLQ5u5Lpe;}7|9(tMFb0I3 zwS=Dex9N6a(BoJ(Tj}`gVj}&JF!oBM>!7-AB0lFX@D{J{?%M~OHnFCvt0Pm;ik5aM z@rW&Cr_#26sPVnC$AS~83NUkvPx8`(MWZ@IW1}Da1c>{K`foVHGwH;N`W`pnU7RAO2vEnZ1(lvzlPqkWl*6O03zDCOxjUGhmWwTeENU7XfId z7fC@TnHj$U3S4-%!cm7tpil`QcxWjrmhTj|z>}rPUrReNn6y0sV=>;6LZwAxnTCb) zeH8&Ku7QMbIrr5$T9G#wWQrK2t9blkox+h3{nYcUj{&W!;#-=>L*9<*dqWpcv?%Y$ zZ+jk{+t3mk>`(`-Yo6*}%#9<<%a?yDIu|TGPI1|~oe+6LUw`v>MfRn-clSb!zMK3D zE$GA~t!#4ZZnISFmOq0?b9bK-0u84)Q^Nc?)I?#A3i`V4){ImPp|2WDvsI<@$FS=O&p>%zyb#XU z5EXJ09E&>{Hl%w<3F{;VQ+PR3Pj+FbON|e9!J|%K*}WF9F~ymnVht}0%3N!md-0I8#6u+zQU|t!&TFhGI?mEr)t=&9 zGsvjrm6>0k==7u(TVp#SZ<Y%obPR2)WcLcqx+qiY8M7B!8*y;@>}X^<$@b5 zLLB+cY^8@?(X$@t3xnpUT2WS{S_N3!jHOXE1A}pNkGWPf+eO~VKeOwiJgMs@j;L0c z754rTLc60z|R;*&Mu1+0ri>{>x z6TLi`*HU1vAU+bb&b#p0*wcR2zf~ikX{!l%Ys3SUhxB3{OWE<{b%*Uc?fUU zmPSAFl!1#~9TaylH9B8w1Kr0#Q`*>6waW*WvsfpYa}G{BF}Fqli!=~P;+mzmE-|a; zK??EU=*(UPuoN1jySK~=k7@f3;##N&TKCB`>&;byXjANATvs9_0f{}u3y%(qNA$ER z7aI56rm#)|<$_jR$;!qCyc{j|g=tMyuq8Cx+xER)Zs~A54oQ1;KxwPXws-cRki$GP z1HAC|E+jl-r_bP=cmHDF;!1_S(otUW*(*e_CGDdgOYOD&y=VoU4L}A|7xyATRT+{9 zIITNnYtS9KxD77VX319 z?r1c5m;j+)^!pLa4b`UDd_rtp!pZu9^10OnXfgd}_lh(q&v)_l+7=h))iGdl>tc*7 z;|qhvF2u{Z7^1E!jz|GY`@NNHXntf6KwwNk9Sdj#1nT`m)G-p|CmYLQEKG5@Vwzj+ zMds|6gQ+~KT^;J9DS@UvbpJ@-L4rNJ9}>1zJ|n zREM5^0u*NzK}1zTk*AG@@w*`kTN)ab_wq?+FdlQKF(;`q0CtY@n%}6(22l~1%<^Qq zIJ0K)n)F?3DJX$IvWavuk#?yU%=O%lX*0;Tv=F;oUS#(QU}S8bGf#D(dr(&0*Wt@+ zP*Y`Aox!x(K`G@3YRlqu)! zI~nbr07Ld(jZ_B)=UZ6wTp91}Px)nMB&)zD4U{)5_wov3eW;nI_kt4Ax_mD{3L{IZ z-^Z_Umghf2UCRu%gs{7>waf9CW|(o<_ZWGbZ9i00LG$Gpi~?u`r31YxA4CIC-=Tm| z1S&IVR*3)*w49!JXe*I2bFcPB8o(fE(ASAt4$5)(?<+L)H=Ec$|6QNCt?;JXu%U9u zApF{C|HX!`p^!l5Gq`IMkar~zShS}i>-Fl7z6~y9>6s-qa&c#XJ!gjtCN{q3=1skt znZuD#f0W46JGWsC`T%DZRi(?~G1mfvH@7L(L30(FFap*#-*EDw0L z$-_2Em*ZS8@@8`T_VGc-vBQj0XYukIC+cE@s6MUjbxW`jNSFKr=VBC@v(bvo`NUe~ z`B#9tk|DrW^GfP0tTQ^H>c3?2`b0H*eS$nR->%biLk?-QVeHG;5i{Fbb*)^QnVX4< zn(fu|s=+!3)2_!#TBRTX(&HoIji4aTvDlw@l53a6Q0{IG==v|qgRVkOA9;9GlO$Qi z3I-A^c4$lHGrW7`w%eix8ju*ABWU!3LI5gX6c8WLs;(bx1Ks)QGN@9`SINjhr*=Qh zO`8HuXhRkkKy%Ret5)W>=QetZ!=?aHGh8WB?Pq0;fOIDKfV%EnI%fdc{*5~)&bOitQA!g&%m zXsPFSJ31sg-s(>7g~pU+g*{dyA(VIbus;gQSEwUVze(Xo>6C+mk1@YX6hc=E>O(pUudJ@q^$O?Jl#*PHq>Uwf5sc<7#jkV=adLG7jTQ+=RlvV{g5 zj`k6{n$7Rl9yTGlnxOKq2&dr=?F$%dp-l`L6&7kh?RrTtuw%WIz1g}6TF6#TVRhC< zC=fS+!OZ=Yb%yHMY8^Cd1Bw&q83c$7scZG>8C+Aeto)JHg=z(qEo2pH3A9UVBKC4( zd)fxnZCKQwf|AqEeSR*NyGErS-&mr47K<2{@^S>sfpNV8Ptf(`q$V0Y0eW;1xPuAP zC^B@1psr15QivAXn$(&JP5~+9=-&r*uS53&Waiaaxg?LqbI^65BLVVMWF@H8*sXjl zb}zrY7RRiF^G#-S)|gJepm!3%g|VGqOLT=zJt-U-Ls}Fu&!~%Ic(X9)`2lMmtw3mu+A5Ll*{isd z=g9BdF?kO$zsqO4evU(J;Yj&Ub;NYUPV_%Pwb^QIOI(VIe?I=9fXCH&7zbjsY>K&I z@Sjq81h(XI?da5!Xz2R~u*IB5P~PA6n>i*AECC1|n)FR}(qVQ2fE<`v0iiLBM|Wcd zpW3?v(-#gH1yfN0c|DXpu0YPS%jtW~GrDfoYMTdj4~@|160u4U=Inevf!i&?VH)#Z zoP^~YX}SSEx7fpuS!G{nnXehK{G9;o{iP-P9ZYD;7X?WW@@K%S2QCBD$50A^c{-&_ zJdn`?Dh2=u6z@n$Dh|*RBr<^W6SsK@T`+tz|DvcSbYv{UTUXj@3(Zj8oDAh9ve8a}^opwTVEMdB4pyxC9U ztlX%pnQ=rIUIl!+a7H%a(*Z4!?c6>gTNlf!6`r{$^vwz)u_&i!#FGa& ziQ1C5BNAd84`nGoz{G{v;5e~=>UXd;#H%5D%JNJ9aq{8?BR38qbHK|dqrd+zt~Eom z(oJeC4aj~uITH)3)IhfyMNwdKohj1WF=@%WH5^NhrB-YU_28FA!#99Lfdap*K6#F0 z+maL;Y~^2dnEEWjlpySIN_8j z*Bh)AQEzy>;Ns`|knU`*x7NP>`r*sLFTkOIZzvngo6zlr7P>5MKE?!ZiK3ETYYN=9 z?BIOoOB-m34|V$)^WlmhhiM{|3d;m)vR~{yiJ4xaH0Q@ z0DZ5gleUim!as2R&FLy*Puioyf@VfIoYY5a{rllu+kbz6!F)ZoOQY`#0MKu~+$vGog*pJlGp3HKiR&&EiO$t_a-q@n^u!|vlHy_k&Uw6!jL%EWwYPHfnK{(XbId3u;Ol;?mxoZ zGy_;$GC>L&Z6AFdnXfdne+Wg{ro_SJWsd$}kHlFuMZ!`$#AhFBEm5Pp*t#}rx!!T3 zq^8DZX1YDy`)YfSM!FR_G9T{tl@iykWast8G0u2B$UB(q9Eh%hZX@dCy z0jNn-%=FD!&=t$6z2L^Ueriz`1^G~|qvO>q9sGad4-yT-3qwjLDR(Ach~N9fPw!Jb zrfYP*q1X<1qUKbq@VdIl{QLs9&JA0z#lcEsix|i4T)Xh{knSMac@rAM0!}{*x_Q#C zL^M{yP&_2^M_qf28q}$WBuqij9p74P*QB>TQ8A?Xa6d&9f~RxxHcZVj?Pq8I~#CF zvLID?Z~tu8mbm11u)oc={m?&(04eH!wrh$#jrB~Eg5HMfiSpv8-PRM$NdZ_0p0E?({o z0l)L=SJ=#X--aVfWn~Z5mwB6HXVKW37TKC0x(1i<`TgZxuwJkE4urn`6%8vxL)VbF z+$T~awo4uPjyBMv0fj=2F#aPtqj^HEN58-#q zlKTEKj{P1?CE`c88}+sKJSb5_4TTxeI*rgeT{{b^Kr9gkRgLYjTKk#PXbfUB|Ihch z(Hz3P0vCU>TKmAe_<|?+tg2ke4vdl}4!2m*dwArdkc9nRmCZZan#+~*&ZS*9DP7ro z-Ny@QB@z~v8ik8217RFkP$}WAH2izlJ|WBB zVfxq2vMX?^{s_$P5vE^TOG|t~o3=cUIwR%jYO}9DDnU9P+Up9_9q*J45(j-cjUe!* z{qCG=0ZbQY@QAjb-`$%Tba)raMJap8BQ!KDhe~TOR%Vxmqpw`gJC2?#4f+ewZ!sEE z&|{LA3}gHt(P6s`6@qdNdP$sHJ2-z%I}Dp`1=h>$>$j}TLismVnR-RPaH_2sK^@G` ziO~G)9LM=827d-~JDnrk2CIXQ>yNlL&ZYl{vR@upDrj7BtyG_Qz-!qz-^!^gVW6n( z+J(~7goFg2U>!gy=p%^z=Tbg_1uOd@jKb%$)ozF!z{{kgSO=eXXONwv@oS~poL_|E z^vve|xfM)*A~-wr`9G|j*{JLYxw=%;d$=oexK)l`p!o|5GoNgkG*3CC{YuWR{OoT#Ja%M zRs4}~9@@RAb-#~KF|-q2Lp$N$%bg~FmOByZl@upK)vuc+V1Ccu-(2Pf`-}}C9vNuu{SGfiDKnhOt6Y(zm_O5qi%TT$VApGdwIj}rk4xFUzAB_QA_q+SpOz-HFNCi-=< zVS_C(PyS0mh*^NOf_UKya=-vpb|SK8UV0_BSrOWTM90w4>pD@@dQ-S z$fC`tsgZhR=}``DXz-j2ZBE8@pMkJJ7tRI95kYRn#Y!670Flu72RGngXucptne9Nh zG*rS!5hV^^opOEP4xvi?ec=sMZkOB@hqze*i_S#C#JGb?`#*XekIpXV&%sY$u$sjc)4l#^BQD<4#+R*@oYsEZ3gBKE||Py}(X`|HdX z{!7I*Plpo3JBjoM5t@cjxHVKIsWeC`SRqi+m7l4PWs?Kn?DRfVTdfQ_GN&QyghR9A zNLQGIz*e4w^dVo++*(G=T@QLtwe3VIyPzOd!1zX_kBR(}{A0J7^_{X0Y zO}FJtfsHTZc6iNxcF{1o&9`ahm4ErKzv3dY5dQLCvyt{cE0vy@X0>|j=vq&`8mzum z`eIqzs{L!NH%M|8#RzF~TMHH5TkmYWt>csR23{q-&PzfWVU>3*+nj@&KRNE&pXz^G zTH~m;TCbmtT5^~_&3s|#;?oy=zkmDtDvr%UM%A7r4HjvY7otxN47~q>Rt?qfs+DGO z1E%F3$LwX{XBUWU;A!UZtcSD>nSCVwf4(8#651>KM2+a7;o;$h9s}vnq1JEmMX{tE zlb%*oRJ4|d=MiWtyOg!FUw=Yk?#h-`P_LTa_RBB(VQLx>m!w?hl}`caFE1+-%A1Cc z+#|>(L1`$u7UlMwoSX?sN!zTgt#!|I{&5#uR{C{Z{~ffGHUiRGoaxo4o5+ir78yX6 zy%yfDg0=T#70+-_-C+cf_xhiXJ0adQF)4I=JMrUN>TKOC7V@e$ht{zfSA*xX$}$MO zbLSLOKkg9wa4+Mi_h`SU#~b*Cu$wne>h<$P*5N& zEIh`Z(J`WgbH=Wqiuk_5I^Te23*IeGK(@hxR%XN<6zj^ipSDmgymXZ`*C!{oPa z-~J}OgyPs*$T0Vvy+gk<@0Vb)tX{o(Ed&nIO`h~3$bJi2A^p;&xgdcL(AKV56NfH3 zwopf-#Y1cAkb?I}J?c#BGtBm;8Re;Qb8{OOx+UKdCn@^mp`p5XpUdHMkkAxWl6 z$wx;=-`(SRI>NSuO^5%Fam-&a$I^Ah+?O8}=R1jpFfhv|KLZ|o^|Q*qZ`eexfjs`l zThcG^U9NpNPI1J2eSIU2ZFOwPfBTun7LE+2p;cD3ZNIctM29dRN3+etu^+A-{?{yR5Gr+ZxiU&ZIjA zi!E~zLUnE$+GIRLEqgMCbtwmj-l0QR-dfL53t*e?vU9h70ub!fvp2TxjF#K*vdl){nzVob{JyhoJYq& zDLn#xZwr+cyY{EW`*r7}3+~-(_V(>tL%Kr*WGMyWD&`npf9IeFQO#hnc`j5a&$TnK zZJ^ivoSuRFsfBv;WyGVwjX&GBPR#fwMbe?ErbC6T(e1}qYqHcZI7^o;+g-@>EFp+j z9yL+J+DKCf5?kOx#Yatl8W_lkiP@xl_;4Qd(NCW{zIKqRaF7yFP%y!0hP`uWfMpF9Tje4<+}Eg& zAsPl*PKIao#Kc7T`N1x)`5Gf_qK5#js;QAy_{lK7O01Xt003AM+sQ0P{-L z#F7P8To$q@J2NIw60Y3VRFB$Fk7VIqI- zym{;?i(O3TZ}JN)tFF!)*Q>@MuKVYjU$BZaL=AIxWbS$EGrl%%}t-LK} zVu$@(hZ08PW7z$hH*a<*5u{L#&@3!1b5D1w{F*Y?_!T4xDOBjE#k5XAS#+D2So+wq zxyBl5YS%3+EJCBA(m((TQ78xb&;NcA&6UWWXNxhsr|4sd14RY~auYv4KN0W6#=n35 z{CTpgm$VkTYpbYS!+lCRHcP;ht7Mc+6~@NJ1(Q9$HI-o}S@`pW0~XXT@~ZOB0~7KO za=Cb(c@Sgu$ImjnWD);-bhx2JYxeP{Z^)mQOZ~bnY zAec@3LGbIUWC@3_#B751>EhCzxx9R?864)qyL0DGIt#X=wWcYr%`3I#<9Y#6(Mqn@ z@d*jsCNsrJEu@AE?!f(WKtLaqlcOlMpr6OU5(rDC$HeRt5)z`t!&!<*NDSR(%zS$0 z&vu16&!NsIK;1hz6oPH3lf1L6tW0>@w#YotV{^E?rv7$0tS|!`T&flD7FYRDsoSvKmeymV2hDf#ODKr+Vma zGGdjNd3t&#!|xO81!R))t-D%3CB430hkc{evHkn^rRXx9!(xlNTZ+VXns*$eSdET)cb7lm1oD7En8-tWdNU-*dy4FC-u+c(m4eY{wX!!L^{E?cW}ZA?=d*SI4%Z<2ZsKrl&sB zymaXe;?#-l060xOt&k8F8hQ$6zt+*OWns=BR-GIgx|Y>eY=l8B7V3Tyt#9U|OQlk? z4b$j8xT-p|mdUZM;PSzIK-K#;yqKg%zwwhSWZ*^6XtW&rMzLb3d;o9!*Fuyc0Iq7JLrT6g7n`5G8Ph05DNKz?(^CoBf>a}axx!uV30CPz9 z=hxKK^g@5fuv@ntz%Qjj%Y+sWKqZf;EnqjUAK1)SS?e+@`O~{dfNEGa86y!-M?W&9nyK^TA=Rl{h zY_RxhuyfXOa|=<&(E3smi@7pd!3a)L*UBnh%Asjf;0ud&ZjSG=l_3I(ISJt4t%d&K zNlDwg^p&>Wbdor3pzQWtL>$th)lqSlMwE!AZ4O6pp$r8Ycz#K=Wl(m)B zDFjh)oB+WLka`vKB^!}V5KDJtJ|sGCX9s>`G(w7=ZGAam$YN@tqi+#r6=tOXxKZH4 z!LR7hw`R>6%f{QGq4?i4vy!KhTeift3?`~YWsm*%aa`c|eW!=dSBv|%uK!g=XX6s;F7vy+NUla-Z4JGU?I>V(Uh!6m|gz?Cu!%C!q` z1I8K#1_rX4@mCr)UZzU6m$$c3aZ%Bu!NEc6>)JrW?8}$usAONcd^yxRJ(Wd!1b^J{ z<;#~{K5!rAl982q)CQ;4!Z6#tr$7CT(c0RIHf>-+PiI77Ul;|jZ?y5Q#y(*+XZWlr zeQg9lI5Cu!2sAFVpg z(%wX%zNY4_!n3Rt;G}SG7JjFMRTz?(nE3VEw_(&z$UKTeaMOvxA9zm|saj-X%bx?m zBf9@mbX}wy4eT$>7JGr+NTC8io(;T?_c9fmh@88BH_4Ns5Ob1ku$?|BfA&kJsDmPO zkNVO%HFdcHmG@44kBb+v|C@}QIzWk})$5hiS`>GLMMbfGzk}r?o%<3SqSpMoww$pX zTJ@+ZIC~P96JQ?`%Hab6^i3WfqkSXto?qij&p-fvA5^&Sl#UQ-C_2l&vFjXi8Yxux z5x4JoA@SI?A~G@tG~wkpVX+5|&ax9HPy%)UPcHM`*gQr@3o2EgYjOMIlQ&Et56Bz_ zcA^%3z33afp=2uj$xzrT`A`v!h7gbXJ>2ux7&#rSq^4zV}@_(q;LvUtEzTI zR&p@q-Fqp(;8ZOen}?3mu=ol1Y*QLo6NC4|CwE0SG}`y{4H*9N%P$c|$tK5?+Prjg?MDCSVG!iVyKrwzBY`j9gDKu3(QH=zx zxWI-CGiM|52Y^t(MYQx|zY&7yiEF~%`l+EhbzU`pw=_RLzexS_oH`P^TGl&NYb&)G zqj5vS(zdk}cD_CNS|5R>S((A3ocQFt-9LfSQlQ%*q?Y%9qpAl%kO(g2 zy6=%}Q7$p6qN1YiQmGBnP7chfsw%x1&Sr8rEc!q%h!jq>RvoWvl*4@|TAb1q9W}MI zw9HFtm({e3Rlyvad%L=3vC3}L4jk_3tA;6Xx=YxeXWTPE5u3&WV!514GGO*=GwRF= zo;e>58 z*i;XvN!5b0$P@e$=)(hJe?>ejk!4^z~AQuT*bbwaPq_b_zWbrHh{W zgCTT$0_M!T1jd6|$m{&{$HP)Vfv;b`4nf}bD6Kiy-s5PaKtV*hqAWUxxCSh{eqY{0 z%_z?)ttwksKw4TKn-= zN`AT4wQJYPx1TqWi}?; z_7HyA2XlOP_sQ!33KDkp+W>N?x%Q0>$T4-t>k+G}MoK&D0hEgVE#D5;-(2XPicnV4 zcj`Q=^@%?2T@%0Dvu6*v3?xj>z zI2uJbdL>aqwhGD09v4)*SA&|e(1?g+l$N}%u2x4YuzK*VVYhE@r2-4oAs55>gV|^U zOv`=5#9*V$dJvG;!^B9Oc*cgPq6Y`3cjZ0OIr#R>U>6WJhr;a>aT+V<#!Wc+kNnZ za+I9A3Vame;gTScZ|`tM~|3*Gx}ztd0E6D1%L)*LqG34plMw)00+RBF-pXkFAEPc35mO_0tl z;&AaQ=8*2(p8opv5nlPT$Iy$g27FsNkNBQF#)!DmMGqFNId|^dDI}Hl)+OG6eU|VZ zaR5?dHuQIOJ%li~3G8Ja1f!F+1+o0ph=_kd9*679!n(jXAbL9m?7KnsbbND;?G|Te z=ZH!h!cf2m)`95@yL-3Sh5Z_GxCp@ly9yh8bMD-^pL%+P#KpzIfZ0OI-LTlpy&y0P zfoWZHrunbv`mISoq|M`x1IoFGsWEm9SQL!MC)FkG>W}pI_XC3H!iEeX5!kjd-Nddb z^S!&-D2rtMguJkLi#WG)U_ji%!{f(~AMY+DfTh}K603ymSdT1c;+%hsj}zVsKvx@a z6InZg(dS~H50bNit7`-$+Nmv1<=h79e2lIe84Js=+>nYXW}Fl zk}E7CPJWzuw7fhw_y5i&kdOM8=!d`FfD!mplIFi3rS54qi)%8UEtWawkrz^x)efc~ IIC1IU07esgr2qf` literal 0 HcmV?d00001 diff --git a/labworks/LW2/IRE_testAE3_ideal2.png b/labworks/LW2/IRE_testAE3_ideal2.png new file mode 100644 index 0000000000000000000000000000000000000000..d6b8f6a27d19ac8127a477f68f8eec27a5da1266 GIT binary patch literal 60232 zcmeFZcT|(<);|0IDt2@nWe@>p1R1F+DpG^vC?HZq=}o1Jf^-Rl#Ien&fQBYg6%mjQ z0@8wxO6VXhbX0ncgwRRy?K?8(oOiAB$M3h+x4wVAm$PP029hWDbKkpM``Xuj{xZ`xkCr#4$ACx^76XwsVpyl?O*SZbMtVN5A!hffU9h{u4U$lVFH)X zKRhY8WM>Q;d#(NZi3>MkCVG5hth{4!Y}#4;-rGOy4bytm`$F-=`lF<;zlb~@s-BWc zPgm_`z4P5Uk(rj;*4k=x!YWC7=bGO(oGRY-`K&c;QIUfi=lLV`QpCgako(q3}IpWN_jr%HLbiD@m1?lBJ zjEDQ`X)v~i`@%{2f8X@KTkzcqO!Y$4=1kRRq8jXKWD9Hm+`g{~ex|3pJsWoRh+>#V z`F=2;1dECwVcPV5P9%kyBq3@dysmWK_AQCW%)8YnuWEnvKuTh8HHS^-ILu9S)U=-T z#p$Up4(#OUYI(F8nbHOEiQc`_^JZ$>FN z4i%4Q)kl^R$k(MN$35Mm*nKe4CeZIwhIiFON1i96O46~n)K8o2 z-DW1KDdK$r-SfcfX1yBcjQ79&p>)meNm#(q@Jp3U-` zsZ(rjYm4xk8L}U1NiCXfvzVF9BC18ZQT+69EM{%2O5sQW4`%wu%~Oi7)iWv++3$0E z@#Egzu5NA(ubrDcXjZ<19|djBlFvpTlhqXUvy&@hHU&)Bij6Zo>7_IE9rlq{#Q`g> zC6jHl6_KAqh%2@)_2c8jJFcW!C?M=4-7RGOJGWXYZ2-2r=0I{xlY1X$ zrGdjVdVpbGw;-gF{$};#*tU1Kigda!7j(HwXGhz^*N>-ISg^FVSk2zUt^DjcRI5$C z`sT~sMJjQHdbO~}N1MEM)2;#JGaDx|{n0o2wCJnNUT|oLv$_b@AQQ~V;K2;u{Cx7R z-2>TzkvA+xjl5uc-Pcyv&DJV^4~L!C8+}7Gi@w$nr>25icqec;aAhIAoV|p+#n|Fn z{?)SCHYFCb*%OS{D>br{_UgvSvwI#DLXLLeEA?Y(S#c2&5qo^vFZC?#rUnT|!hZ!U z*4RwFq1V{38Nb-r=;-JmH2a6w!w22GVQ$7&wTI_r}cu&-`llL5IpBz#Gll6cD zw0rl*TC1_qX{uO5IjgJO9`3LvCf0uT6u6P0+#0!>2r%6b!{(i|*`@KU;aQqZ1K9JUnFbt=Dn<+lT<+?d8;ER@ zQ0wUb@Yjx+RDFV!K17CJ;{B(Jh8Ylq2mjtAUkmOXp(9^*1kTMmBv7{OT6NfgsN?RJ zsgvk#waMW2{fmXf(`{l}wPE^;BfF{hIq>L8{uheSypN5Vz=FS0}GTh!>4Kf8en)P4z9+ zR=@a`G*L7h*Kwmi2>DKT;PRx14Tl~$U!uA^kyo@h6s;1p)`ILtT<#K)K6b3rDRBaJ zKuA5{MjYJD=G{k9ENuFz>T@~BGK=PW{XHQ-Nof0k_n|jF*i+KwS|aPwcdf7|;-rAu z5e3Kkvt;<#uMieIk9F9EqSq)APrd06hS;eXDyd)352oMkO|yEi5-3qMU(R9aNuN6% zv^%`Vr%QG`Jx>p!24g7NZ3r2rZHQVy`?oLX#Dv{Sb82yE;tyC$#g|X{r+ZgPL=HfB zqyLn3>}q@V1h}z~iqBPZ3yYZ#JM;%KOQx#-Si8w%zQ@-Q{%Ii0_s~Y^)w?XNK1REj z=TKLj1^X^u1^LtC>tB*`G#afLQbeCux^)MvE^qW@^nPuW!}zuy-wQ$Aip-FDgcs0| z5`JcaTu|tEBQc8y8`A?DExtrAo0pR~AaNiT_Dx4M)8j0;Nw%;%w`Dj+)z2fjpU6xU zo7EC18-zOC>Z- z$?Zoi`j*-*IZ$N zx|>4v)y6A&=ErX^Xj&?4>$6d$f5cy zPSdRYuf5cbZX4_`XM|_j&9<7*jYFirO4}@+p$=7oow&O~n0dHI33f9hBSUGXR-w76 ziLB6|s-Vs27vmg{U+x}Oo*d3T4k)B(>{VJWTv3)$1aX_$Xp(akMff=MD{V$cL*TJK z4trkEzq`{VD^^FYNSt5v#zj}k;*jdfxA#TNCLPb(LsYLlDAD?^L`~&TMU}vaBNmF& zvM6|z&qPkMf>*pNoq5C=z)r83A_Bem*L`;zCGRu6fi~-Lxvy^pNBXS zHvvgo`dc_N2s}waUwzSz%&1Q2#L-`r{&9IQ+@v1x(G09;5WRn^8naOjM|2AiyD|My z5JKUTB+7OIAhlz4O1hyyxcwjuRS@|VIm7#_3 zLS8&erf+3PF>+});GKcX??Wg|2%WwY*AC&CBLU+Uedc4+eCsw>(g0#jP?o2($(-eK z&N%b#4g1^1xg)2WXP+nI15m1iFea&800C{KrhKKwFvP|=DV*_9KJXA##MhF{pj+)* zvo}9F8tm_3_Bx$xzl?`^T@YXxSRZ@%8&Mrv1gwylw zR{wH)$1Z=%Noxu4Uhm$3nL2CwHD_aMzrh%vPG=D@YQ zZ*a(cxx5J8WR%TyE&^~Zvy4865>xE4eVLL1>I)Y&%WC9GyqrS^)aKd~oBMT=nhg7X z>~p7zn50*UUWXg-Zb8||b7?f$cYL}zS-&Ah$y1s4@gds^I|L9AzAWs;OG9$E)jR&> zHUhRaqW%+)zr4RU@5HG|Ovb0P%1QZD@tjeU@sy{O^M z2udet3uYXdC&2KUDpb&=D;x@is96u zhO$|=`KQKxHk!V(zlY?P`vS<0FYbBI9Bqy);ZO`!*Z}B*&A;{@L1Bu$(64ej#R{;s z)mDwACWQ9f2;&w)YIv`D)tOq9J`n(k!;hsVv8~o(33Q>GYgfTMBTb@OJc-J&(6GJ<99SEJ*{mZ-iw-b&qKqZdE~cCfL0l z!{`#IUOgzb@Rr{LeKvh-l$yVf`fRHH&TgXyGrz%bl`$pHAvh(vn(K!@x2tuYcT3rF z4J{|^Op+_HB{Lw^6nuH+me|T(bkYcywPpn#g}ihrQKbjN+yLRW=>9Xf)ZR}nv zpAP$)S$~rT1m=7;I?wg`)Ag2l%I0msaHg0Govr(3U*_i@MF&WoggDr+)`t&!`xWss zzqXjWWQ2>czuglll+=rP;*weP@@+6)Z}P^g;dmlNC&UlJxANG#Tl|W@W4T}ozAagl zr7Iyg&ZD1C<^qHoM)hze_$R6lkwN4R$NBs0nSl~CyRj}MvXI)#E|c!OzwW1U)}&i= zZ*T9(9%gB)u|-B=V1JO}#tHE6kK0KY6dKhPpLW_T{4Ka~;^pwwa@L&4ES!B;lKUyh zGmgnr`D=X4-liTJ0$VC$ls6j#8xu|_jU?Rifa~~}AG!{QCGT-{dpS{?=06eCSMr=P zG>?Zmk5O38%IKei4UVz$?a9{>1LRSd769SNvsqVh=d6TGvvgKz(>b`Yv9&(Dt2>jj z$!4i3Qh7`}bpPP1v`neYC{e~cfxv9r_rs`Ai;}iL$s)~$^{Rgkl0a7)OSY=<*-4eL zf`S5jQ5@7l!HVgqLPoY%)@G3b`FP+hpTNW$HSe*OQ^BKCw5H~W)_&x^!Ak&`EGB4; zR;P${JM+_U1sx92-C$@%%TpyKO!vkU{IYX?V^t7SR3_bWp;G>_eG7&?K*U;t+(bEt zz4)0Q*Y3XTVzX?1vxoT*;?Ys+9?!GXNg|6zv>JOkgj@O)!ua-HK=J@x{+j^jn?PA_ z|JU@Kirpf!0PJ7a_S3*;g6lGLk_`1!r$5xjDCOy7wf6SL!OfO66CiZb8SROJ);FFd zS_AmmwHV-A9+5egD(VZ#{-Lm~Z%fi9}AbX#8w{_dlFx|+11;P@grCd>MFr%<{tnDSkX638k3>2G?Jph&XC(2@& zF$vYV#qRY=!(J@_fNcN}7xR{k3Ju42>QNm=P*SQ05sP<>^LyER2!PNcd%ip#Fj8JW z1pxB39N}B@cRC;IDt2E#3H(Nez539&4F}(5<`^qpWy4vbp#mT_Gnkl#3MkI34JW+r zSeJ~TmDjoC1}pH{4k+|zV(9_N&2hix57k9Sim^sC5nxi8Qd#(XD{?8{65eICRWKq6 z&=JJtcK6`3PY(VJj%Pw2Xpk6sb@B zR%G6wI&&6fuvNYxe&K^;F5CeV9|GvJ;Vq(PN%yDwsg95oCvVKmgW+CDK6m`V`Q_6t zCY#07OPhrw%dRB`9pkcSLxBGp{=T!x6W(o~S9h!iWt*$7Kb=OQ%oTi7FKq_|Pj!oq77UR?U2&IqmzfPb-q3u zr>cZl890kb2w)NrcpN%AJJFw3Cf$fNc@63%EusjOuZ)+oUD$9UN9q23%Z!@>0SUIV z9{`U&1-PMtGAR{mD`G(M&fj;U5DD-;0wL4T{kq)x2uM47Fu}CVFC3t1c|u@8HiklozmAo_c4Op0uuYZ z8-SO)S~^`Jbi~PkdZ=%)-nW=_)YoXT{S|~lY1@j2qirY|MT8J0Y!PzlnGT3w8IX*; z5ui^Hdjdrim;8e~)=(kr76Y}_VFa+(ZP^_*+MGQ6SW~nL>i?$EL;e#vnruLqB{f-F zFby#&9!x`V0>WaFIQ$Qm?E4qhC|KLD7!XSF$_mZWQ#YB~3-z(i;zSs8dN;7>V3_9{3y@3s!>0`yQSk8Pw*L?EbOz+%o4yzy^d?wW0?2g zqmx^!^i(Fpmg(g9pi*O3&lR#qIRXiR@Xle_r%E79;ydyjlP^fg&blMW;0mXYQc=+WS;qrh zVepQibtMEm1t>sJTm`y7Hy1+BAjJGy0EWuP46=?hD)-G)OJ@z-6?UyeoDRwjenU}? zhrwdRs}Ktcb-DxWd+lG6aZkW3JW|zI%{bP1ln{XPThT|cq!hvq3I>sj`7*lt^H0Qq zwzxJ0S)lv+`z=LZ?@M!QBKh(a4^-|T{;uvQt=1v>S_ItZQRH<~CG_5$`-5eOM}rh2 z&tdg(V!;LXBQ733^ht90<_bhm`cFrX*;PJ5e0a^QD!kJTMNFvirGW=SG#VpGo{-9~ zGCA@2mO%X``O-(gmHq77NAMMeA_B28QHN|#?~=28vVGrayNvv{YTz}Z!G2Yc-zBR# zU|0%HHfiT#su+fT61H}%5#hf2zikn1mMP{*F+n{1;$Wo0v>m#*bk()KRo>D&@b8y zFbf9+EZzw3J^|*Ata1;K$H?zLO*UdN3SN<(cc(n+8?EYvir+8(=Bwm5A~$@tKU&EX zl?Khz>cY&UJnLmn*iW>m>{+>VsklkPT6^cJ7o&5g6%{_xL&s1XM zSFd_Rpnved{dX>Cg_uS&!b#{yR}(5=^m9an2kahx8of}t06+ijO|gjGuS>Zgl?2}k zTXd@MH?b=&F2JJmDFAf=oLzQ5yREGa(Oa^zvTJ?#(Un*aur>HbNCFBFlWU(Il?J}! zRN+Z6>F_fM#9QC^a_7|F!6$C5vj-51%2y~33=Hm}k2Vt5Yb4x5Tp-$1lr10c({w<)!K1Gwx6^Lgzlzxx?unYa*oX-4wviLZR2|J?_M!i7RQ#`}!HfdJ`DId) z1S~O-N$KmiKU%6|iQn zhSg7qX$b#W8)8w29T0u>Q25Qra~SePLr+~I78dgAm8JVDg2sFHqkAUZy|iYRK_Tix z#6YCdCU4lW-wxVXYkj$EIxy#Y=A+f4y+ZAjmU>D<-Lb*RQ)(U&1NAlpHs4jIV1 z9<&N9=r@eFCBK>?#xLS!04eXnb?7$0<|k%vP-ce5`kb*Q)w*vrdI2|)-S z2hP77aKtT}A>e2a`Jz%F@Y}5F8yg&8a z75I4xFzW~12o2`g8!2l!l(zdVD%1XrEO!SM3P-|MF8l^nu;Mx{WuBy@9zIPS2}9LyqyRS3=Fi zjZ<9LcKVTbTS8_mVXgxruQvnW0_p=v7jwg8!in`7q~c=%3*Q2uj6X{b0EkorNodpR zXV=VOJY&7dP<#f!#?>|J;{d`At1Lp_fKqt~v1U1yqQB&;LvL*u)g~Y1xMz<41$`{x z#4SdC7C{z~Re=ld#fEAX8o0FD=#%lR^1#%F9N@T7{}Z-N3_=rO2y&Cf00o#(B_Mwp zhs6NBP>0%WL#zhahN&%lv0Nvrs}S9bKJ#Bg)&EgE`_DHWxs5n`I2I?A#3ASp+?UQY z9h(MFX}0zFXHq&?wHZ(#xsbeufySdpJ8)O=YYcY#?m@@;n5!j|1&h-m#O|biH+Z?{ z`dgkNsB>q4J(hs{rH|-HRY3S<-Q45FW-ng+v_->Y50ExW@avL*m3hj1nO%di`Sq|^&%Ao4)b>HpGsw_fUnu?27K;S=yH2ww;}LwAI7 zHAMNsVsCCb{gA928M;+6FFB1l+r4`=xu{qYHhk zDPN`8mh+y7)8eq^ZN9pr`j;^%PxQ+P5mOIXFtoA#{Prda{gBr}ff4Xcm0wCmomzx^ z5FUqq;`fxRk%i#N4D70^TiL9!F&x12u4j-{8?P7dAX!4@SOk_S3h~c~dWghNd^IMa z8X~Kdai-1GHYiEm2O0u?z@Ht4mN)e8UhCLs5}ANVaOYp1t&#`QDh7J++GNznLX>>p z=o{$Ar2{hQa7qk9oydSG&-j|BfN9!?C&r}iL)Y*CifSHN;S^Nhu6#$suy?>5g#$VP z9@RdFifAbWd*K%QEq{iL7j^K`Z^(`yH>QmEIAM_GYrZGzt;3s8vW86#a)YKYIC~g& z`|qD_o@!o#=3zW4%!*ctTUumk5&@7=!Xg|-rO5j_7D);)uPvx4S=_19tedygLRSUBmjw$Sy# z_Ud>SlM5BrvXiJy03FEDCcjghF98Yvm;rzkk$S<^Z-@i0sASe&SqSyghVxl_p;|=hiEadj-U}R|wrJwLN{nMrOl^ij9X7mPTQW8*(i-o4XPFy8@b|Wxt|mB! z!*Js1AoDN75Q`=~pm-YmW0RZ~ImW9=J663M&@xnqZ5D2W!025>_Y^R4Qmh(&5ep=S zG!klfLcAY(c2D%MF*kRPJ;K(cxP%jMTa`x=L_3a;XTRTCbLpN)+jf$Si%}y82_8f8 z8V0<803=yFN}Yh811=kZ04|gV6ybkonTrwe5!jlgN+^n2a)kW%A@@aO}uWS%e^zrkp5JZQwp#6zq>Bs34Jl^9#mo-4r4Hrii$$<0PiTGVe@my%50`39p zA0G%(?5%{>1hCT-^XNG6?RH+LUj1HVUhWNf$f1Y?l%AcDtbT7wSdDWdup+X^Z9?G5s2Spa+G=3TgsU)J#dX7+Eqg|NG< z!SKIvcO&1rt$Ut`qb&L^)_^WGtTh<3>aPIa-$Kok*K|gD5a@?msBIp&-c!zp%A*uQ zff;n?zT@`Bno>S~HM^FSb0`IIYruiZ$A~F_8s`xtn&%dY+!}_xvKXb}>uPRMv*-ck z1zd0jv7o?XqFjw?O9MO)@+HM6n(a zR|Q(%jzS&>K28-0R@MoKTK-2x#lJ;V^*DlF-!pzwZ?CnN4)Ylh&fP%9bpWSx7z{9Y z8HyJLr^dZ$H_`DY2tfHH2*Bt~b-CE?gBLY+$(TMuCDTR?^k)*qafcUrf&H&w^Z(~t zu>0?SgfBpWxdJ@#09smR=FkpFz1poR6M$jv+Ci(O9>h<5;{ z#XKTfbpU z326EcoL&c^4)6z3J|I%k z%r@vKKHui)NmwbsoJUB&b8FoesbZ1cq<>RS2$UYT0qO}cNX`M_8>9_>uoO3}F^(Fx7lKo=Mb z%`k*WwaNcrMMR6fD8=`KMrqu^wH2lFXHZf_yF%Egcz{Z~1c13Z27t12AEu z#o^imQ+8kWzu?~2VMNS-R38EX6a{BW3a}_Mb<@=a{(~(d~$?>dsfc;eug--eM8APt;c_+Cydl6CegR=St<7HlouxfO?wmH+NnEUXp7tBIr1Y;}Vqn~9`G-ug z*j1eMxMkg5o0ZG?$JT91*zwQXszTFdZ}RUip<8E)1s?aC$hnN?O*y%GhvMNo_l{>q zgJ2bS^;u6rs|#oKF>kHawOsCe4JfsGb|^ZMs5X`YrLLvTjZ217JDY_yV!xBh8i^?) zM57HFZB~i^B*uoJ<3*uwO4z!}@0@FKC0TFK_`x7}jw$?+W3=_9_z3 zVCPRVB=ObN?0F!3Gh7^m1rsH1MS*i2h{r3CCn<}sZsa*Lp2Gn*Kq?c9Gf`PL{`aQk zOi7Y5(oLXkKImo*L1Yl$tQ*=kUz$Ik6C!bIUHJF|dA-iAGU^dbJgE> z28(@Gj6RN~N%D)DWWHaH-WKw99pzMZw0xR*mDt#`!BPD1eT8LdBEBGUf)vdPEcX)JTF3?{{6Rxzt*18If`r~3Fmo`|9M3+2S}pS6cppWH@OK9&St>zw zJ^fHb&G z5jCPR<#O#>9ebG`4^_NNP6(1~^ zk$JPi2n$v#7>=G;TOU<1+z|YHgGP!!>U}^Vl83}P#Y8AI>ia`*ly+(WDjcE3iUc|@ zFGwLqWigq!l$;d&c4kY$fW)`85`fKp*L&+e{}(Wpx3X@cz`|VY#@?j1Hkl`f z_6aG!_Set8ercWS>vQJTfl5j5ZsmRcC>RQwfgof5Fwd9Mbumf`K=4$<8pDlt%iKs* z0#3I__Llm?71N2J;BqI`{l0Ck;}i&$J;h0z_1gUPQ=O1 z3_CXF)Amcow!9CT6NRQDWBBx^tAFVA2&>+>j)oo3bc)D)eqrJ8%V^iJ*T1}I1H@IP zRe9*5hM)P%Q~F@<8t-q6CfU`;c$9TG)NoX(d(LObmtOyf=XKgiTrV(kelNTjdWl5lAXF zDdCI`May$$VEc35t*Z(vlVPm5cQKsMa+<%w-@71XzJ&;gM|5FXJINKY&x zoCvUPCe}Cr#Jp2$9#J6$n||N6mhtYxRaI!Rgbd%(sU z3Ej-^yix`0Yxm55eL?Z0o14B|nb*fSfrR?i5G-037YqH-B2dM8kaC_&@o2$Ut!@0U znk+)%Zag>78exm=1g7w6k$n-RKX~Ayp#P8`4YiD>_|W2T zXpv`)w|;Q>s~eo-ct)GOQDVsOP2&>?178n|`iS+?m*-`eZ%ghnG z?l&H+mh)A&1m>p3d6+-1?nY?mmPUWi6{9siNe0n;i)Pt6LZc$c}J`SNhPpO-^UNqoowd za14eF?IzkOes%A+N|#%cEd$(v+)>Qh)c9c47UaL9OiQ<1P`F?0E1i0kwx3_*LMCV! zK%GtTvm#lqf-5{sPJ&QyuvmVMlVbE8UCrh5;BT&4%&F~QEqm}zhrOJND9k3tl^;p# z{@J`kejfQ#<2(26J1s7@s8tlmnzj4-fkGgVME`lmxf0$NS$vN^z#*ls-jel?O1#qA zTb0D2o9{vBuy18)VY~ma&r|km+LXt|)6$#fvv2`77@tBS#z&h&h218WMKS!Jt802E z>=riPt94)Kdma~Gy=j3fiW>5l0o*N2gEnSx>Ap0%$n(MY+KX#fzgqOiG9LWLM?Y6l z)r~V9>&|4BWWKTft`&sS7&|e!@zF2e7kl8JPqfr*d?eoCRt{OC8pvu%&!Hc?1m1eA zVnel*HGALRm9VY&v8yKGMAdf9u<^n^JlKtbi2v?npud^3XZ$F1T+*^?b<1SnRvCp%$?A( z``}&}gY-~yvxYgPfP$*e!afC)KsB_SQc~=*l+N*g{ zB9?kF{7h9+B-$at^%|xxq4$Z#ETvae^Bf!MLCYGRmRbCYzZk_Zrysyu2E#+WX|e^8 zNyv>3@@|W827zB4>RV}w5xjEZiJ$?R0TKIQlyA#hhLK1D7_4kG*--Wg@kko|Q7Vd{ zZANKtFnrhSl^WU5YXt{rKr5+o0&-ZG%q{G;9EhBBR=S~|?g@jd!_Y>u`7(?aF=7IU z#Mw=rHml5jWjrbM=z+W(6pC`I8+Go=JSXMqVe5v6?|65w+W7sZ^$_|xZ}i(yMQUbk z*oM~c{#8R7gh6fR4YMGBL7;j6&qbu9HO$S)y2lO_L}n^4ja<35d6xk&C-C){!EM9T z-K2*i(VIogom8v}Ael~;M2_DR(-ZYiN2aQ=YA`nj!|moKJbHfZ&yu=Ay$JZ(oq);Q zSvBNFCs>m5SPG*(^M&fVv*$znrJk@gsY-CQh;tJF$2@Cw#{}e%eS=gI+r_H0A~12 z6flK-lA-e*9J>4slYJp?&ye>8Ynk^E{6B%=Y&GNg`!GOO>k1nbPnoYFA9>j2wwZsN z%T;YNmqw2J_ia>KFVppXdW%LfF=b>if9;Um)q_q(!xNwuj2U~BEe^GA`6yg>h#JQC z2<{FwLAImGTp+r$)E4dXT|YoAF1BoX_*;)lx_t4kaGY@ayTAL%h)WQKqlt>jern`6 zj6Y8mr@_8nS+6m2-mRSFLs{;j@9II?AB~(Ve2?mmNoR({U9UaVy7c_P{c*m}YHRi~ z|AK!1AQBl@1dBw&Xe9BwW`lHDH_kFc*bh?3N>87}$-80WI&#{(->Asj85EC8>%5eX(6 z4W^C;g&bCg>2sIH(j1YV6+yI87yyqAjs*=bD!Wki)3;Eeh{T65c>vupDH|9r-MF+7 z?a~9!ibhvqvM2Jp3Nr~Rn51yyYLN1%xZ*&!iMqo` zhiMPu1^Rm2G0;MC1(R{0T0;HezXjmiNRZK^B{1mp3^bmsnH6>uSL}nE!?u$e*CO5N z3^at1KnuyM&}0gdy`ib08u{`VK#OYH9w3hx+7Z9-I})`4O{s(ft+#?7V*pKL2#HT4 z<=n4ntFaJoKKWDncMi!{=;p`6J-}{jlhI%(h|JxS8-ie$xP#L!ZRwUUDB}l2X&wv# z4WY&^Oi&yBUILfHW;29LNa9uR_$47P=Q&8g9P|n^88ii_eAhB}T$hZbFfhuN{taQ-i`r7c36ga?Nt;EU?(s1#3LMWE=y`C3=l(C)rKs=o z`XCyPyivP9`fAfTBDAN+X5-Lz?>4qyTbXjMYPZXeT{`-Z>QeSWxJ?Beq4r_uHcE)* zq3(7Iw8y7bKhRVgRaGM&IquNON&Nahcm;^6tf$y*QCd@zq1PsK_1V$CBwu+e1eL$~ zN%gqW$~OTX23uJ}8KRsJ4tl4Cs17@IpM?NrZ%b5iW_IsE`Sj-FB1)%-I`rihEn190kn$=HfiaY(2-xEOL5tM zR2MR{_gk>c)UvX&kzMe2Y2#h8z@?dZSrtl7! zwK`Z}*;kVc7dMvOFQM-u!B*ZzDF;-ipZXfthR!EzS zT1`mp$Q6Tws;=!9DhJJs!gDdA5G?`il`~`rk3M&n){z4H-H1BY{u%h?%#!=#FsK%F z0mMq8vCPN^M||6V2EEb1XmaRZJ3>>>hvw7dilr0cw}DTBc3bCJ7LLeX0ltWcT01@N zHteZ|0#>>RFMO$p1#?!@ur!8cy7z= z-prk;G5YY?ntdT&rP~XyH|sX{#s`XR#i`z+uxG`!mq8?T2Urm+yeSdq`1B@D1?iCv z09)aRgyIc>b9tM=E6`}BHH^Fkz;K)OWsFhh7N`JEhlms`0?x>_3Q0Fh?4MTtNB0ds z6XWdcQu8wmtZQM633_0pW}k?(cKAp1zS*rsgzpaimzXa1I6EO%cJL$ z4Cg?X@et;YU$Yk*qP~sWI8LRUvkJUHRC9d#?%(~pv0n6K324-V!YRL*g@*J-Bp!Y> z1ye#Dc)kA2g7(V~N+I<|fek|!zqHb}UVV82DQLg%C>lTo?JC68^iL;kw$!CVMBTCf zY$Xr>p2nQ{%`!ni297=Od^s4ba`^gGH|!RBIeE6n-BegNIwI%Zo+jxmZTkPXp?HN1 z-|kQ6+}ztQb*v=Zf+0G3K1|5M5QMn)T)ev4q-5NiS}Jqi^QF**{plL#*6eL50}-Di zs5@(Q6??+apsBXs9V&XwB}PIzK=8^a>0`-(WZe0htj+r+=*;w!VYI#kI((o^t{A`!!P-?Pr z^-T-69!_B9(gIb5_YqH|C7CCl6A&rZ>DCan|8qmo^D^IJo|Ysu?2huYCp_q50EW_Q zl5wn2#HyimKpsHd$Jg3R=$A;yp@c@d(NhzEe5q2TOb5j{gvw&3#gP2xyX0ZY$AeX` zQuSUyuz3dxT@$wOz!C;!erK1?cA&L^iC(2fAhb1t^u=jC8ddu%i*>m8Ew!{vJ}%O2l@4uei#(8`C6Iw z*U^4uDIXZt?S|(+ly&cf2X9%p=>m47L26^?=kkgl;NNR}o)`1#Q)m$1vG^hU+z?K<~cjzu9)e-S0toE<3s}Ma4lgxxhw8|i3fYjKtv2Y9LSyU<0OlV zur2kUhQVyzvq`K@ABqYMGYQQ3nr=mqH0>6@q{@_OCdiaP&+?l&AB<3hvv6d#2uU0& zy6>e1>klY3NYKwEYl_LzKn(V9j~UBy@+X-z4dCgrfQ@R{mrVvf^VRGf!Cf?dwA~n{ z>D+G0Qo}$X3O4D%8cD3`V;f(^A-O(=WiPOBQjq*hrpBTJ zG3@E7)G*aK(;{mk3+luNlgXk#-CD~;1eXTUM9PTo(Up z7P5G-Be~Aai+YJnpZ<0Wr8QS=}Z-V9DJw@it-VA z?wzJf!<{~S_XlM<87GnF=u4pwML!r_OWLWh+TzQriwMZkCVIDDYBj15w266LDA>8R zF(81p78_}RGiA+LEae>g?H=Wv|JtjALAhOS@@@~eYS==;8jD_<kh_5|V zMOij>>*8ONFb$O8>5H5e{>kVWO<4)qKxgZ_gKiMyr5!4A&818xRIthvFZX=E|-DD9TX^$zW%9QO99Kf0takwHl@KO6!)olEkE>;*EAgwU8?DnYfXVh@)(&1Lb}N zHFASXIaFZ2N1>Z-8VGtM5vAhAp$7tmW-b4wJ8SZ3DD!>f&4eh=8m1Vu%(d;pYcJ2MN(X^k)^P4P7R+0X3Gr zJwXV?^`%hIKjiyw^ok^CBsf}nXwPoRm4M<87_TG2)eC7K){XS!&-Ye!x=3o9XO_tE z^#zuEzDqid$mbD#V=rJIMSRb$+bTnY`Mp3ZV2h{U3G7Dmu`)5}*5c#e!GNru{&AU69#+N|M!z2;4$z zvR#IDC}bRz8BD*g?`8C>+4~R6U#0Y{@A*k)gfhi_&HrMKegvCMEGsMK2SUb1#72vj zU*NOS)n0t@gn4FZF4`n+hLT6jBVmWPUu!0o`f!@3cnD%Pzv!ii8E!Iv;ISsYKpr!WVd3x<^(x7)r;6bKEL;!J z9r?MWHi`W?!s3<5{rL|IX)j9eX+cPQC{(pWpIJNe8___Rw1?m|FX|$;jkIJeL<~3O z$^FIL+z{mN9!kEhi^FClSJZ%E^5^$w;iWKb_IO!cpEMGTdZput5VVI~Zk;^S2g$c5+@8-1dG(q2B2rDcTOn z{hM|%wJb0u95Mc^b048u{rbhlileml<&7i9(C71_4=0s=@i4T`$zfCjfd&thfRV>c z2var22w6l#0EJM(*^`mcYP46u(OB_3e}ejj(-$)+_@mhliy+Q%22v+8-d_$R4UnsL zb8}TkYjEXg6^f@#X9jg!Lm67}QScy^#b+I7pI+#Zcchnv`YQTP7C@|<j=6qO64T+!B^+fcLv zHc%@W18jWXWsQ>-43{a@#m8HE8-dLElrOJA`rOv>)$D4Yco3)}Ajp^Q6~m-6QTpV;3q<8j6(6|v`rKlLh_AR?nbFmg8YiJmS2vnw zqYEmVY7>cur$%0i*vG}LJ~GWlp4ML>5w0ulPY!B)<}y`Qs9LUiAnUWKXWbw%liOh^ z@|=9fXCTjoL(GQ}5wBsgzsNd!Z`46(JCN=|ZhWer8U_zZDhiy;hb|Rt=dTysLdwsO zgA_AezxmDg4AS4feU87fVsvU!eJ^B?7JeSBtY2Z|aP}@igX9W9r*0T@UxL;ty_tj= zfrRqW2N)=$iZ>3_!Gqo6Ct_(gPq+2PK`*XI^vJJ^?Ns9xB{*sWq7+Z%+nZH)g?Dx7 z>^K0AcYs{ESdmYQ;8?9ijg7_t_5!uOaP3|V;!$98#xn--vEF2OfMOZyeA@pgAT!oL zD_i^*f1rSOm~Wt(#69>wUB5Mzg}*tr^y}3f@;3pKk%~ zJF*#lLnftoW>Qm3*E+E1i8XfL3(!dybf{VL@>wk-vH+Np#z%qP4kv)xTg$Z^E-gr! z@@FqHC};ngHYxk^=;W)}qqH9Za2vpsrY8V+hHxO=US>_B*z8B}iCAAf^FG!mLyR{T zz$8TKBGJR*izAw##zAodhr&#HW8yH(0}O&f=_#ZPW5vD<5h_v`iM0mO(<~)=Elxkw zD(Ee?#I0nXQ#BZGv#1et7O%R8iveL3%vil~Z*8@bTfly8gH~7P#z%3A4rk$!6@yEZ zc%t^%}&3o(|rpx_4QG&2JpJ7JkTda&nLp#%m9q zTq*4~(|u6Qc&IrW!knbq@(SiZMB+y85pkzLN?k z!&EMNk!NH#gbEuVd0nz(GX)YZ!FCL}k7u+#mcF-#4E>NrT^uxr*)QZ_yRx?{%ZybB z1K5$FiLso(+0{6^^Y={wel&=wKIIE)x%2|_oU$WnJ-+(JR?sye68z$2NlD016Ma@% z0UWZ8FkYrfINgtLU6{#-**m(58Ei*RX30a*+b?{<&0(&n>g~J4qtJo>8ct5jlB4D0wxMK~a&B-b!opI7mni@|x9XBpQLlZZ z-9RP9uLpebr*x=`9OFi#X?O5Pp-;IuIEW87BH!9N7E6PcFFYo!2D(CnpW-p5tZ>47 zY^OV!W_cb;*OO@FUjT0afk}f6Cgf%1=PU2J47h~7{9sfdLB2Kk?Pwb8a>d0Ht=_b7 zB3q06eyh&it&`v?6MSUTwY&yvmWj;RTU(`UZiKe;uQA;Z*1tz84M!dWz=ihq<)5hf zQ~XVk)Y!*0-A;lAX^=z!~e$OGMvp+@{o2J(Ilf(xf zlWy_PPmX8hp2=-B9$b2MFQ6fbQ#|x^Y?1h3dl|>q9guBXLc*?oTG;+5?yEm?Iv9X5FgpB8V|9 zvarhwSEx2+zMK&5EXfF= zr+Xks!#v+Wn+1TH6bnc$Ip94sE0aukAQ9B=AI0F2b*)iM_=6b)ma{RYnKVlUP)J=~ z0{>w37?~LTKXkoyRFvHpHcY9YBBCM>A%oH_Es_Sp&{9LAAVZ6EGpL{sNDd_pN=OLO z4JrcCh#(yj(%m)l?eTek@A}ra*5@BCm%5mH&V9~4dtdvyu3dN^7^;BA!{)o@ruZO? zcK}*6#@Elut>up4%}Y9im)T!aw9R? zvKPFDCbrM?#H}{S#!HkKtyP#Fv{l})tM`cr$QV!(nZC&^e_ZouqF``Z?52y=Xb{4A}=705R7E1dtBU-w6AQ%x6Qoz{z&3TC|) z`(~=<02)3V-d^bM&si!k9D7?^xLjdcM#$YKJ`mE81xXeKcF5?f{Qktx1aSnz@&Ll0 zR%Gn!dN2U@>&puUhedF|Cm7d}F(c;$_1q_njSxKp1(ok^pTW()Kk{RXg>vFBg<7vE z2M9Ef*6a}feNmMu9ydHUTb=4!n1J>oaI!DGr}FAN*T7|VJ*IOaaT3m0$u-^qaG8O! zuIOZtJQa?|+AHjwLD86Zz#5a8&7NG3Ne~|oIn)?v` zy$Adm(3slSaOJ2Bn3~pog>GhzU*PNo$>>5QwKmj!-4xQa$hutv`1@HeXhPO;Xqpzm zj&0>BWWCHmX!xj=Pt;eMh>d=#rs_$>Cv_wn8VL|}cAbrwf>M^rGdWuPZp8$L29T#k zvSuN}WhFhWT^J00h?{y>{U4wtr?Qv;@glq)=zZonR5E(oIl>m(v_&;Pf?gwp7somx zk(yx|W|9cA^9;Ht7#vUGK1QY|2p(Dru)e}YMXZi460%#UV4+z%)aNIVmwaMc%2&aQ zNmXkj{x@&K3cVu)Wv$zJ!d~)HXCtB$+Ng zY0!Ds?0G;qP*KW+&byN|KtU}`O}kooWuoBw~t zqHYH1X8lc!-(MzoNoSkvk;eHWetQVoq*gJTw|fL(Bf%f;u)w}O9`Pb^XWE+JcrjtVWiKS z$m|q(=X|_n8xJq`NzDpYRh+LhS&e`S)%+i3096|RO9a-uNNn3;_>%(yuvvc{(kA+T z$n(TSQHFdVf;KzSPwGb%)?WuQ^nYPk`lH*9LLF3q|A-gVZi+%Wz5NQ>TxB%OO-E4g zM6$H+xDM#FL=i(*mCTA4s2U0~#mC)1{B0E*iC$_r&aBS4Eyofs!UaC?PIYVbK+_K_ zFS#G1!)$L4T(_$u=eA3SiGV2dX35-97oOtrYp0W*dqBa2%Tlf+hrl-CAv(&t^Abx+ z#XImbo1x(>f$knkfEFN~+ZinCr|gPFS!k=|M1#v>ur#e4^`h^8E1S=Rsb%D4ZRM|F z1uBu9>>I72GptB7HXB{vxgq-2;Vow7Kgree@?MK8! zUTANZVU~Mu8%^|0hFK)fiwUFiP;$4#t(%!hx5KuO4Qh=7fDjN+>wSdO^ggUIq&5Y= zc#46)VdBjOUVpZ*eXYO{46a8f@W*U@z(6z7-D_9pTD;jdJIqM}h;g3;5zw%vyz~=* zY8Xz2B)q;TxBw~S7Qy+7LvlsC0O7^yxsVBa?ktr2^o{W5X7fN54Q5=Bz_;s5`Xs>I8;9YD)5Ga;+8vcG{-5&eTte7QIDhThu^Za;?&KweU zMf$(D5&=@TI!$Y$_i@RUa7+D#*u9$nORW##G^V|RO>$mZ8khT(u%NjoDLO}g&~?Ss zw>vYS4`6HSG!xmhTfz$nPt7E0n&m&wbsF4;x%6#6I!Qmi>)J2UBLH31=JgiYSd6{( zf{$oR@UZ9HlW+ez`A&x-y}i4o#pN7eqs<6lxCVgkbwXt#J>oh5=}P(!>2*2q?40!) zt=z2L@G4&_fVLe0gJ>tdK*W=E$sa0X=#v-K_2}E$x(aW@l|?vWF&W9O`}1sA*@ePgf&}RS zghMAt>;Y(iASL(S8-VMoxwaj2V*j3r-3inWpKIXmILXV0+%w!K1Eh@*I=__mb*(!D zKxWBp{^?JrGP^2wDUIIKOiibardcmw3amFmV*$1;NslvVf4l^PH&8nZpGl*LN!ti@ z)yO#wPT(_7LpRrv!2Tgv)q`0>=U+d|7Gv`YAsDmwU5R7|$|1@Bt+^(e_?7Qi!>c!%ZJ0MA!?(Na`u~>y6%%ecLK*|Vj+adH#OZ;Oh_x$Gb!9;llM}RE zV7b<|Gx-I{^6@6q&9v&ZAt3UUO(+x1r~DTmcL*^9OK`nv7yAEcz(DVY9Q0)d9WmW|kxWP)!Iv;g>^BhIr<^XbNEBTowj&6>%{ms*RNvTtI+H|g`l zF*~w&{c!20iFb?>txnhFxpT$@M-b4H7XP_N1qPQlpBfeVnlAH^!b$oFuJUlR4QHt! ze;HTI$0j7K2}|eAmX8RnLw}5Q)YdCtf@#xjWYZwsDh3<8iTbsp{5K-+153)D`Kfiw8Zx zAE`}W_Se`0hw)f~;{%ZER$cJmjg{PD8<+eGynrSDYHOmZi@q%Wf0eB~sJz~a;Sph6 zFprQ(>x(Zhx3a68e~v4o?9ZzT;l{k0E#hXwz-VW6E&*&(!ng0^!F8s6c*MD<24!CX z_J^`{I4>niH_?%+K+{*9_=q@eRo`rLBI|NVg)cu%Dtlrr=2PMK2)s2lU!I&WfG~mE zFulQVqp8Z0%bd_sCa?%>=AE;&+g>AlMLr_Op{q4&Wtu5dR6EykrhHV0K?d(*@Ta?* zbmBnG#P~UWsl%U;$xwA`2{gd#`q(-NCT@J-4R;>gn^;@@Pj=hCyk;_ZrZ6^83>DXFSyrT*ovpI>iWPL3 z;M-e$d2wE9r;inBJ^0D)C{W?f)0;YS1EKwfMA4l^I8#=^}d=W^!OAIyV6%ffzd}WDhGov$uU`w z8v`xRD{?v&Of{t-BuJG0QBB`<7x!em_3RP5dP-6#j7*4ZA^4L1UuBBuDiu0(bqt}2 z&DeR5P_=cyOE5l@6Y_L2xXRy=Cb^~(yA>+`pL96Sz@g?N$Z8&~VN91Pq0~{3m>l;O zPNQykb$aGVh3f4sLC+K5eY67tbSLj4^l#g3Cw!xTU%*#lY1spPhBLC2gN^_DuJg`+ z7P2MVe({xCb)>e?_c)~r!z%&haz|nu@qjV#W6tb$jlbi4*oZUEwjLx)t`-OH%4OKl zRp6m`dzD}hPvA0)(F%*1gAsdoBb96t^zB`Je74^sI)RM=Ju!9*m>}XiB*QZmj>-Q8 zVQj6zWCi_Ie0=bz@J#1wmn1%}Q6%6har@;ND*jF7^gI(ELC^Is zPIc2^z9q=jN=M{U&BWDH%%9A_Ulss_s3`GVnOFr=+7W>fr#z$_bX(K=&g@^5Py+<4|EY5b zb|VCXGJx4ugkZ+U|4W?%UVf;vt5_zTqkGWE>=iGRaC)LSbaCZ}LKN7J1A2r87Io_c z-WT|E4yo=Yn~QmY<$YIH>m~Wto-*qVyH7NmRGZek*doxZNUIlLF<{;I*xD6j6QJ6$ zlH>t_#3FY-Y&l?y_PBv<8Vz%3_U_lf|FE}<{}c6qQyjsc4zxVpP@LDe`8=Ka7DTX6 zirXI~xJ98Lu&#+CyQ>ZtZN}mfkAHCK^A&#ln5C71et!lxBZd-=gp&?LQqlVyh5ZNYJ2{9iUqbRYqzYakwa(N zA8*Z^AEa=Le>Az{aEg3qHQ61@Q^-5Oq7W;tW$*G|wc6wA{D)PbRs)2V`9-LiU2(|k z0St{vmTMrm&UAN*$IX4^nB72q^xgkxQ!$q7FgWgEK9@K6ob9O70UM=WfJ+9Z4A|=N z;1i+?g>Y@Cv$lo5!LQ3{tqzIRUn-msKf1A#1=)YH8}~rBOrlCM5Whc(z>EeVTiq($ zU<-(60YBo<7JI3h?{R8Aj3ed4uVz!xt4IEF4bYETREOR{J@7!y0Kg)U$HCG$W$i5Q zxC6#;e7W|LA24KEF(;^l;7V|L*rfT1^mK^eNafA%eC4+E5&G>&>_Ej>`6SxwUqL;Q zU^D|%&2VwqmFZN~<8e;k&weh3;@xqj%JQ!&cC|Vz_2YAJS|MIk&WS$W2q*N3yIANC zg9Y_^T!GV=+!ziP@E~E!3nSIDFPnkk9|PxT*}=33HQ{svc7CIBSxoaZ@l04*Wb^EBS3nFoxxrkHu%Js zGpMEij-C47=b$21gv6cqTfTm5^H*e`Lr5Y-NTgkMGYY5N@h><_IetSvUb z=TM#YC$v>lICKJ;YyJt!vV$elH!G*c!2zocILfW_Kl-J=CNu%BgTO9=fh{1cgXYc$ z@0FE))gJNT4^_ISc4+|!0O?(o-{f;37eUc9e;G;zKd=lFwHtIBfhN_ISI(F>^rJsi z&%cAYI(ffaWKVt;H-@v)iREv#g$wwk?|IpYiB7y!l3#w)muMHDCS9}HMkv}qa0`WU z)9z0On}%%Q(STw?U!Gp)Emjy zpqdVE4aXQ=OE2aHKV%SY&U$?%OI&r6CuncrMzDrqK`YtWL*&U`zd8VzC9JP&8AI9# z?B$^|WQSmtpdtHzAQDGkRv@tS#}~Md$HTU?lGLaKwE*}vg7@dVO3=S%EJ9-K|=HQ_#W~Hcb?qvFcye7 z<+Pl=nQ`nul!k4#lQWYoyJE8c(D8VqAAb|rldU@gdq%09AKb`HSK3O^f*#LYsa}9M z$^=sfx8_uFJB%M|+xej&FtJzj;HHm<=&0x6!jraWh?pNN%ZUG_)(f@$>_3zCvTY|{ zzxA3sly5yt3ELc=X}{s6Z0?TC9zt~-E>3SVVOL5;e$tP?X)v8=GWbCp<;73@08F*e zC)4Zboav{tPplK9p=WHW?|`_tD3AFEFoYVae|4CNlnGexRezCk=o;84IFhR7To`{$ zrnuQ6tGo0Lnl^)$sf*2BBo`0gxAQMC`uS`|@m%%OCLGJ{hgc|JT4&=52e(A?PMyn5 zyi{1GTfFlNR@)GEQyuiwY%Z?j_6XpCoowAl04|SGhpi}={$UP z5f!ceo7Hx&kKzQ8TO5N*N%mw69Uf_iHAV@%veJcab$+R475Js+ zZ4zCz1PCVv)mGMz2zA)$kAlGlMj#>pw2qLa}A@NBniHyVMz4zhlFtGzn$xG%5==hVm9ju^v8%%M~ z?Uv+J!q8)4q6K8YU4nobCR>h@YUoPh+D^}Rg0y5_9IEh*MMn@@`pV5a6x0d<9*9-`Nu>Ep+4_GGI?eUn#@lCo8d3UGlXtE zBcov_>zj!_uedxD558i82nLW(AWALURpUF~JXj#sD-d%m7Aq>Xx4M%KM0=6z45Z z-J=)d9dhn=Iyv5Ig~28SEH$rCEljGo`s_52Xiag&dtbwYhjp02vL9$mYxO4YD^GS8 zQ{{!>;{Yw#c?aD=!Imon3Z^4&Bb!p&tb7$?Xj69oz1(ZhEvO>?^z>?8dnxLW5;;K7 z7Rwa@`+YG6tZWVJ1eBp++qoK!Q3<>C?(o$Shs;Bh&>th<^0!=VyR(LSBft(N+FApe zrE($5W(+|Ram|f$?Op`P-yKuD3+O-F!#A9b4J`ke4IXHDo7hs7)Rf3>8N+Ayh+MOZ zN&eHd-Ze}=LkMiAV3X$)5WMR|>G8(Ss&nhp(+Kr0*#-yreuaKz2AFAv*$wp*<5_Q2 zW#yJctg8L@2q$tZD-2G6fnG%?J+j6=j%BMDN33_(Z_;p?-YFHE+AkB~w~=`H{E=Bc?A{Ru~Z^Wd1#5PIUt&AQ>j$nb7#EUGtqi+#QK>ALlAZ=rIkLrV^BQTYq945U$#r z7(5CA8y?h@NnSQp;D&k-j^`{*zAJU&;)#2PU9Pf}AX^ZChL-s!bf*%NZ|R`lyeyL^ zD==Bwc2;Xp_`0=l8?n0%z}l>oAzDPPkn=*I$;~H${wtWUn0XTuNTr+)AQ!$z1x<_s z8$u%@UR(e`VzZ;?tJS|>b^UIMRQQG3f4BkHx9?AUi!6a3GU#_`fcekbME)i&chPrE z*&5;wD<2H4f?R-b#M0o1CA%)-ze>k;Uw^G_3yC+uB);iGNQ2TM=5O=XO8YXq%LUo6 zTQ?5I)^ew_7F(;A*t1hj3g$YM>vzk{juvczS`ED{-;dh4raw1kJTH0h zzj_*<%u(M^`JC^_Z-`!5Af~=Zozv_6Izng-G04q~Z+h8eq@!Algt z(|vkApNPVKRfZWWVvTinBwD|HiJ1r*I(UVfY;vsLy8l`rOVAPw=OU899gbbL+Jz!) z=CvUnrx|n!E#;P9^$*jc6e_mNdfJFlZHxD1nN_5-BlEUrY(sE}$Sm>o7_RsC`g7wQ z&29uK22_-aSRZ>Vv>@V-uM{Zy2ZV=RTM?wV$ea;DL_BHQ+S(hB&`ENxbu-YFY zM64p}q&+@47wr!pA82Y~=_>4bs*GU0GIDh?on|{ce%z?ByfUe3ZOtyh8y`eDU_56h zMU0-1r)_oGyZ(;)_SZ-YB$bSnS0qw1Pd7^;W^S&;BEFTbu;HohNGvaxs2!*D;Rg}N zchU>zzVJxs8#IiE*#3&XQ5kS`^R{boOB9DB?HQuNsd>uJ4eV+n7=;H)DrpVjP{f$CoxK*4}B`@aMjwM(&*xNt#!R?an<@KMec>$ zja0pjRLUut)2t=Eyn+wCc65XVGoK)H9L*PkI668u8(*L7IoutuY&S)U$WhUzTo$E5 zh+SqUB9kVZ&X&5vduO{gQBUKHZqRUa*>ym|LA#kigq<$PE+(}wyWEJw+(sM zXnoznUStfGt@Fg8_VMA%E;NfYg>zpb`nIkH;=?yhv-+Eg}y}!h%i@;inh#lHag2ynC0yQ*d)y+B+kL=Njdi z$9CgVIpzw&S`US$HI)4nvt;l+>ASmH>hVIC)6IVI9!*?coh=-t7ZqwT2%=$LuOBMO zG_L8W)Z)modT2RKp`lxX-kn2!U`u(PpKr(!%4psE<3}%eUKa?Uax}BDdkh_rnB&Lw zJU)BLeHDe;HE!_ySxRqc6CW%k-;USxQB71LJ(JKYsSxh9HW65Ro%mA9a76`XZGn^| zfQ+!x)020EwTy*?t6tW<;`WuBES>Ochm+RxrQ=q}8)q?o)2fXJM_<3Zlc&3!`y~vA zu;kY3$$u58f+t?gYE0zB#0Z}{s~Bfu)0`-VWDvhie__%&mQ8v)!eudf$ZuIN=RxRk z9eSZxbD*Gi#32!>RpS=VWbb>ZNNXIuQIwPOhtYEXnX?J%UBJOLMiIq?+x;?gFYz9+ zpWD{z{U;w*m)6mH?$}swp&@ETI1r*%OElM?3=^R|StsEr?u$Rpkf|N6h;KCwN(+DT z_141N)`swKh59-r1KI(`I?hL@IwS7Ad!KogFDaBQqO!rmAU6K`Igfiz#rj+v@%Ixg zIZI?vFOLq=>_vk_uDrPT7{%#TJ4UF|ax8x7nk_~>XOvZoGTCo=aSEOmWkM&@O4WKiE{(6P zJLwSqvwx{W%2Hbk$IU{Y-bf1@Lh^rS*7B7up6&C`_1|vsiDLF0+>{*OT9n6Xl-KHc zKI*fq3_cDs1Wz|K#qXIXCEWW5bDa|RgD&;X#wBjOj~7UHqd{iu;bR;CdWtZzrx3-FZV;-E(CS*HT=Ikp7?J zuJX0LJ+>MVlZrz0#^=esx*$p``tqSc0&FC!hdB>fAOwi;#~Ghq`b-?PPO>>YV48XF zb;tg&ZKLImk)LPEn#SpK=^spGkBp`w6;yIY_02Q%i_uGaw*hv zXcRva!(|-z5B(s&Htuv>2?|iO(L1sR=cRjKJF@g?a;e1|E?TbvIWYFejOIT_-T~w(^(p!AohUN z8}iFS5s6|JD#66$+=La4wLHknD|F+(V7gK1KlP56tk$~q($BT8b;Tcac(8~RdQoga zO;?Ef^3Be>FDWS^N^JYS=QBm?5x+Q&m(suO))7+JAmefvd2sK3z`=QJhvg;VCTeaI zPx;|bUqTGa&v(W=j^R!{3gPHA*xKzYH^fyjR_{{K;Noc3%iNCF9Gv#e&2in|qZZqZ`h;gD&$f30$T1 z&ikKogn5wtxyUjb3HmVgD?IF?PkE6b0gjv6U2(p}Ojh^pTS#koET8I)B0{7+d!N?$ z$)bsJZ@q6XgTpO)wE|uvtGE>#I8^-AGch&ibqx|0f=Fk6MY8P5zY(%f(WI-I29%ia zpy5(x;>4Kw>p5=rP)sQG=dvGY6(kMe4lE&yw=_RXwz`SB6s7&uIF#P)pt8z&;fR8a zi?Ho17qz)0hC)Cs<|44}8C}4&)q=Qi`bAoWT|Cl{QOc@ZpkdUgl;t3@3^c5!fte`N znB6sZktD|V$2wiG_YOoI-}$DO7>aXow+(r`_yK9mI0;t7A!Xqj5m_FWRtCl8j!Gj5 zXMXCgVA{BGul8}j^*j8VUb|k*#Fxg6_`PWqm6V#DJ&5kSB)mL|9YRQ_~U%@Z#%wt z!ukTGiLLs)CT13(UHZX!gDm*z*z%iNNjJrprzIG|e=7QazHITyKTUyz%-9YNyWP_+`XZ}6$IO0!x1$lsV7mf4|N=P1)hm&s}21 zKDs=3{hEYXb9BQC!)&!(kIg4@Q$!IQgyniwgMZx~v+?A*wx`iI7eSs&5-{{Lc(Lb> z;HrRLoQcvVi!4;=FhONnD|?wPDDY;Xyp$!|!XH*F=H z2H8;BJ=j%y_T#)CjjWqP84}M$r5C7O)3<0-#2S@YCY~de)5Y!Ivl%le@I3-%hiW4B zc>PriqJkkljE?1_;hfd2_~CL@gOcWuM3M9j8#U3VcBUbZPmw#>9DCG^8ttt{S8tql zr??m-q({z_t%meH8Xgg7;H42*)w@Mp_>iUM;c;tJFDX?33eV?$zyq21C!L%d{RQ^T zZ)lahcW*IJ`5Rp)Ci#3cnkSpF&WT||Qd1Wjlwnz`!WbiCc^x4t<;U=Jp31;u5l6Pa zv=_T&ov)8FD8)uId3S_pX=Pfbx{4&Jc$(bIfb$Op4QAnZno4Pn*%Dr+FUsg~IM+eY zqm5>UUHKJsXNE}~Asso-fNmQ{_V(rUqD$WSF=EM;^@De>z zElDz*E$61zOGLW$BU40i#1%SuDhCmD-fT$gPzKvC!rc+a>sfv$8NHdE`+0>Ocu(dH zDKQTw;b(5ELVDKLy}g-T%`ZMzIA@D^m(!)Xrx^caI?$>v)o!S#6ENkk^424MZnLCY zGaA!wL7%GdjBX}B_(~+Cnd7Si0zQ5dT+ajZArT=r@Yy6?FLvndn{_Nfv^VS;dbBw6%H?T0 zsV}b{%zvkBGd;KfNjNXM6I*}K9HJb9O~H&4;<=&2ko2O=!Tki`mLU(Hm3_yb-I_v> zW-rw6cJXs7*-VUwP%%BZd*S~)RnX-X$I5N|`loCYX<grD%VLD@1+a6RlQ zUxz$%5X32?)>b-(R4T+%ufXf>+`7>wUajM+V}?pfPW()!M@J6cDtM|V%_ZkSEd~$_ zGm5ZCDWxJcSJBT&dNHbB8e5sVv8K^qz9xvW9~6043_b1pcjk4&sB4_|#{@d{Wcq)E zuUh-3$Wl}9az{YbOUaNFdgi(9=q>Nj_phBD19ET3XEcX)?iV&>*pI+JeeWPtft=VO z)3w^4uu|aGfmBU+yD?nG9)BfwbheQ75X03vsXg970d&$ttNb%- zXx4iY0W?mGXR>(rwy|RymaR9E1wEQYNo%$l{9yi8A|=Cez3k4C@XG-d0e0ElpWd}x zmEL7!QT%X15_?U4Lfb2|wF#{gdC4fCM-? zqNSYCRwm@~&k}?c4yVou^XqGR{XPY!2psbi=aS5uODvVmn{PqhRe6~iekK9pJ4ZtM zzYy(iH^$9p`m~vnL5YU@7DM<;!jnXQIV-R_)6$iUuJQ9Nq3Ut@DPdfrw6h41=sSRc zy1v~Z`6d}mBdq$7&ARFA!oH*B^qtA{;~31hCS+$~;zlgr_RO6}ipbW%{o_Ddh*8OJ zIQp*ea@Oso)SV2PXK|oDC@PmErlAU-w&jq-SM8f|$&80&tH-IOxQHwwqRoS~16PK5iDaJZzXF@^Luv zau!USQCMF$I<-0KjI-9Ow2j+tL7+!JMEV-ZjmzIxB*d()@Ccvf4tOkk0Ekjn zjXB&ds(4Kq)fVl@pYn{F`nvD>^DEcv%N0UC9Tk%CTw?yt*Da)%BK?qirbjvyrlZ$8tbmqo&rZcnS%a8br)&_`vO>HMCJ-ipzv=*sIIB{Iwchn@C|bWaMg{ zc%}01D&wSb+*}MCnsL8s2%x9|MH+(ybd$Ywa#hU^;i@ zX(Nxx*;Cl)O?)20-CMDyfTx;BqrNT0XNcCFMgG}0DoBErj~Omo>24S*>6F*_Y`VJ~ znc~$p?g!hIUG~_#hdJi~rLf5-xx@8)meZ|yEDFmyWBE8aHDix-!cEehV!sOmD4-Pe zKXxp{MQ~zVp-q!+IsKqyvoZPjgHC&g2cO}up~?v7ou!e^NcXi^sEXXzEcAOzts`X{kG%RA&&^zM6vjp zmRLSCVQle&oiu9Ic>z<|DS(8^c~jaiqX}ieE1L7swEY{zP}4 z!*bM)6x}l@{uZ*-AH|Jw1895NX(&$)i_Mtua~5No8Ou`5$`7s?+6<&kcq6s3q4prK zwtA8T3hvJR$vX@EDBmral#+7TgxT*+hG=GH449NuAUx!5d-YX$IJG;UBB!`G^We*iU8V1Uw$boF;vknr zcq=uKDFIw5G^c;{1)1XdP;pbo;!tU;-9WxI79lc7=?5e0#(XR25YpU~h}E$Hb=5NE zFVVc#Ug4i1#4(MlCEaY9cW4kD5fs#n;}3gvrJPVpe{YRqW&LeV?%@>E2IiV^N` z#JO@i!6?-ifs(|RuGx1{KOapyfA!)z;UN;EI9C4DTeK_18BM`i$+gqhVp0)eGXQu3 zUWgI8HC(?WV{Z#|JgLfOKG@aBE+E@S$*sTuyg0E5ao}tIbDZZYDPA0s61SkI`(U~6hBfmsofdS;@D<>ITb3@`O| z-^D;SeoX?~u(#CTF6qePAa$8p7_Hd&N`m&>-GScB-q(l($KPLj|D}e_Ae`);BI5B0 zshydLtn*HMwewtx`pFi0E1vBk?yRTQ$AtK|TXU&soy~gREM7)`|2rgPa^o5}?z!Re zvP53>R5cRT9{VvHT|c|QN98a$Yes?7dlR|vl1haxKU@aOgc+60q*C%YgJsZH17h$2ENNBN!f z=WCE&yh+$F((PD3+)#+QSq4v`3!LDAcY!$^iAi>7`5VtHVvZ-zxy^GM8+gr73mZzX z$M$7s$- z!T8Aj35&M36DXx9vI4-`1HbiYTX!Xei2itfe7LPuf|U~z{)q7U4neH!?LWd*GsW#4 zyFb+vSzTw_pyM19Dn}e_sj|Zn}9XQtyZBhidkG-T?O`r zQACj)+~9NPB*yfl)IJgU=VU8>`z)8R`ovzZ#8}^6J(q zW!a6AQYohTn3Yd>t3!7NE*ApG1C4vKf+xC%p1VnRCh2924mT96=hR@7Mh3!uqi#e7ddRi)JuaeQ(pB%f-*HrkWt~W2)&*iO({4 zwr5=BGxz{K74C=c0*1@&6IZ4qmEngSVrD|-yJ;9 zmQ*sFO)ZHVm5#levz{2f?g>Z!-u;xC^S^Sm*eOV~x;`pUS@-7(ukmPpW1LG6iz%pT zW}P{6A=<>dGvEJk2epN-bj@?w%+Tj5ewwU51dZy2n60npG#mV~Y8zuvgt|cUIjihf zL!glmm>Xt+zF%%Lu8dgn2UJ1luIis(X?L1syl&OZwrB25h)>@QT(0*b_i1{g>`-s* zAiJNo*2eYcH3VgZgW2iLTrCc7slTj_Tci{h$pXRU`@zZ4-T+u=mf8&o_2;3~S4JuZ zR>x|DeSPlUec`pcoC5~p)-a_f*Qly^xXd=&ex&?BV)J6DcZD%J!_8hvVz!ShZZPvJ zy5nX^$8Rb3P4ltaCB}8t`UemRkFRjEQqn(hpkhj@7#OPPt|vDwOo^wVny?w}W70a^ z-cgU)f2`$q2dh(@;m07R(#jzA7AFG9bHLh*Q)u*R3qo0--pUKOwr{GeM$(?^6SvsV z&%|2xieLXybd#|R9m>@$?p;0<78;YQEjUejMrCSaqeT_L^rU-if7Ewe%H!so)t5i7 z7?$6B9jQ=Om!7qg%9ecg*{30f6BBs6H28x_J!RR5k*G_KgzV05uzddsGR61c_Ij_( zrXRANhC-O5YqLH7BVGn*i1j@nYfL-bSz3b0$~~YT%r7k!>3k&NhdbGPQ&oAR=#WMH z-MfxJx7I#W)2iMf4`%4v`LSd0_T}9YEl^aI-C^-5bay!V+LnR*L*n?fGrt2-*7Q&8a98F479P`g&*(9$Hqz;M?zQEc}XV|NYaq@UGd?Bv_jwCar~ zO~E0VmjaHMBaSaJeR7xHJ1o+iT&Z5NdSDuvX?!pW1f58Z5>3+wR*r+I-;wMPc zK=4D4TZtlSz1H^VR9LcPw~8Mt>!7d*b;{IKhGj}o#g>qABo2Xd{~?b)75?pPM9^hn z6XxT27JU%i7)g=K#u=m8eHF8)y>8KowspA3LPKmIkAqL&O!p;ptrovF9Au5vdgFXb zh8N>Z8P7?iU6Zmpbgrs95wqBRp;Kl9)p~r91=r^DGc!s^N0AJdZM=VlXY7}${R?F0 z6Vg~FSH@~kIXOAO?gMDNx{psSZd2-UYqLKwsdoC^!1KuHpKNSwT=2{HXdPo}0^cj9 zv4<&wwR*z}u7?XK?rjDK3M{}ABOfy15Ne0`;Z9h836{4}+wZ?(jO2MRoy z)>?&YTFb)mZ)#^Q$+NO5;&FL1s);HGSqLHk?k@;Grdi8U$xWpiS#w_O%SDWSj zoIU?#z2u(Nxq4w<=D1f>h=RffoB;&|MR0r8cB8UD9Z=6+r#K$v>z8Qv)IAaJh&ecM zH}=~80RGL%w+(ie3NI*Jc}q}&9$bsfbYoM_{fs+NQdaDVMqsoPyst7J-`JhJBZ@h+ zrWvZ%!MfC{&~-B0(%{f7jMXi4<1OIbqr3I4S9IXR@1;Uz>;>?3`f~yCROwcd{Bz@) zzSV|ejw74C9*5P#HJQ&cQ9lARmGhc0)3a-J+1KJs7OkXkS1TM+`7u)z@(4+GNuFZJ!4*4Rr3Uu_QMm`%^o`pHgnl^?2!E=`!sV@)$N zkrFMA07$0TP#($vrZa<8+@q$#7d4j`_W7T;rBwROK`z z;|@cj>1BK>!BD@T+I0ziH29qKOfCkGTNrswh0vXCi|NnR;fXohD{y1{>hFicnLcad zi!)WVmzC7ie!*lm7f{e~-+mL7^j$4EqsW{lCORXGO-Uo+TdLcN5RWWQ*-uX=kK1cl zq%2prvnax;xcf8l%1ArhWmULiEw+JzejRK+BjcJ;s$YT(zhfh%jKqWD?k8O_vFNsT zMVq(4|9^JqbK6V%;YY*vGKW-Fu8+veP3j35YQT&!OTDu?>z?XJ!*#=VE0i?{SMQs9 zIkzEv=@(b7GHunbk5R1pf`UrEYtqRut^PI#M|Z>T)0y=LSvO8oVtLr)Gx5h-E2qzE zELx_v0(~R()vBtAY_neMjgeBp7FT3Jc8VqsTH|#{X=fshgiZ82wPejD$LVM>Yt1nB z_@+gUSyMhkTOg6?Cz)J_WN$DcJ*7SQaNFP=h`=y!)dZcX>^IQBZ%&N zeiIb*5GD|cnm33=5=KUY2FW_daj;PP)25S%z~aJT(9 zmn0)-8{1cw=Q8O(#BXc>lRh<~TZ%Xppf+G^@Y;^RouCTpylGr_`m@gTmvo=*Z_+Eg zW?sL4H$l8Rq+3!wlJs;yx1cm*?f$!bipw*@)jE+svw1d;)&K@f4q}tgAO3U)J98WF zBX6n2NAmo-RhLCU{V=Xe)-|^;{beJugaD`CQ*vvOI|>@}6AcYAhx07HAdfaE0Tplq z-VZGCRoq7%U$f?*3Qg!iHheg3>UUrPbIJ8!1cWZ!+@;QQYAd5vS_*ici2y0Rk_S+m zLDxSzn8sNw<?z;LLH1CA(U4IkdBn^a674vCtfXhXnf&463tlL& zgwbyuf4tju{*8d<+FY__GgO>8S_E>hy43ZP?I=20J{xxKXuc&o6*;^7zITCi4rAOW z6?bnu@!3z0@0n8bGjfS6^>BQ3->yK!mYvU(-`F)~sGK({z+pspxTsN5@XQ+kU0Rq* zDki+zm(|Iy$p>@pgo^(^)x8H$lxq+zI4I@-21En_B}p12gG4dF5G7|&Ns@DBz#Pa7 zIg1h`D?`o(KqN`dAP#AWk~3`o=-sW_+TD6pTkmb{)V*Bs&iwO-@9RE&`gHfqETo@y zw&LHI5bl=cHXfoh-qWHN>?^>Z>zTtOqiBG{y_qB(M0-itAsJ?iP<7@S8dmM?mZd@u z<)Mq%h6v8Sk%dDe(CVQb1_O3v>k5W*8H(?;z@U=&O%~EBP?pqb8qVs`e9nv^nazbC0x+9zaKypvG1kc~xX(yMh4O%-G^OGSu%0 zfWV#m!KhNt)SNOX)V?C483&O?LFDL@8Ph_R+S)5%p+>!eT7YT|=I^JMKTz zL-~BXcUjcK*i3NITvb+vd~!0uAXo~W9=Shx4}d&x<*E)VD#rNhR+eQ>tIL|%>fB(P zkI9Ga<_aFYt0V{J*_5Rm*4{%h2IOAAbf5sp232CWEMT0rtgLL?yE}dz$(YdPt+Qv( z^1<}# z{)$X4UIani!>ivJn9V~l^(CTjUSH2FJ$p9Um!iqK%r$m+HtCka0p_r51M9uL+8Ru5 z6+&L7hlA!QQ|1gFpljPe$u8L!UJ@02>fSJ2Qd32S5{_93WH2Zk5*fe2ZZ*yb)Hep& zM^fD!axLKYD{!xmY#Vby9OWS`DU^1){o@IdT8Pc${F}RJUaXKfp6|}y~((I zyCg^Z^}Y;sm9@FmnxA#Fp>rj5y-|6mSw0 zal830*R6rpk6cpL zea5D&320Uf+-I?;22 zE6V%W?r+7%YFXDP&@)wQciiksX4L7^6c0^I(349ci^l*ooFrED!8t2vI>PkI_{4TbT6FJF+`)iarJw26m>9T9o(*6475v}5%(Z?u27FD&E@afgSug|GB*Av8cgX;QU zp2D*n)OV%`&HkcL;i0m(YZ@2EIOv+l`exkHb4_+@Ef#pnU+nQWdX0d|4TOD8@3}ON zd38G4zAn)8CFf$0IQ>w8PgRM~0?_qkUheqCXQM~TO?s|-n$&@0^4L{Y!u-dHLlWzT z9|WZ6M71snHv6BTi~u5u(fx^}MrOo$I$KEB_18a_bXor3w6j7bx3Ek!LhB)_1}!$- zE_oTCsCPL)QXBTo;hlSa(e_FtG36=-q}{QN3|=RxuBvC6*5XYuiP-V2wPg+;u)&pW zr3J!;m{hXY5;#v35B!bfDtsd?FGGW8j6i{9r&3~b{XOrQVcWB^4Uw_du8Z&Qo-!jy zJxbTto$77(UjxNV8_f+yP6Mmj0tXEl4YU!@)L-Q?{banR7D6&GF76^;i z--4L6FwyO)xAjQIy(`3uwHfHxy0SCHe3t&tDJ!#`) z@WS{{&v8)~Rof(an4G(^?7?k1|9Y&w0hTh19a3?8JkPmKUbg5?rxk8v96oz?#!oS< z%E7>^-25$jv|sk;>jY5|xK|aP{rw;r?+!iu^ybH967Axj%Vv&i5rqi(`?dFXwXfO}7Rd6{JRg zfHs|7ckBnIJvEx*${bEBltu2;C7GoO5o%pU5cRKNgOj@ri!|>tcvURC)VG*hYQb*p zyas_fWedW=q3WQXC72&_Py0SM$(K}S=(6aw0!tPq<``HM&$zDtDfs-X={On#Gl~6E zR0c9je{n$O>vP``<9P#Kqd(Oo_`&qh63L^av5w83G)J((-#LY_%eR@(_KCq9nnZ`jn6x8`^WggS*LH;hHwZ8n{blH&U(R_{(?Fm2A= znCb4=*&ELC!$FdhH<6K#!-Q@+(VG$Xjo!^_Iu3`&MDuyg>bPm6SL?cCMWAwy_aVt#X@eSVaI(*Ch=JSZt@)5JM(dvY zwfq)QyE>1#N*eB`q(rw+p}gxtXeGx_(}s;V^Anbu-zVjB-M-yZ@F{3thXjk-ZZbHU zb#k`~3_uo=HtQ`WH#mIi243w5nxyJcM z1CG{1=7#eRD~Z*M!`#8jAWhZx4-`PORoMo!gKJtqWE00s3@=9N8i^-{|!LZ`;ZEB$-mt`GoUYpmpP;Q<4=h6(>*;wwjYfV zdt;QI6aXJp{4S&xNzsRW19o-k@+};jW(4FXd)>&R{*MHy$6DdJ3qz87Wb3+q7gQkS zvfaS7>U;s^jZntpqFX+YDR-55JnHW`R!6K4@A*Vu3P^lA{IKvfdnxrm#_mNakY{mv2Pjv_JoBpIHZZ9>t?RpX42bHh&0fXymd$>CC;Y0Zn zsrqGi$4H06zXTCH!pc)r=cYB-<)0HsWVnzY=BaO7H8CC?>I2uQ0WEJ{2Y3XH=#uwEaOHG9$8_GpF0D6wn&iP^Mg5=mWZ&1sb;zCnE z_j`hy(%_ND`P9(XGI5>9?zmiRx}P@F}153@-ib9_kK9Kj_>$r-`H-4D6CQRxbg z=GsH_#iR~Y91Xa+s$ujYDC%H+b+5em{R0y5F+|tCd%kk9T`9G$u4*r4RyJHdF&?e& zwU+Rip7}16qP3s+hRxEh8lqtz_G}Sk`lOf;M(f=($w;j$4Mr{Kx;PN*5`pr@(t3mV{C3z(>Qi}&A zZ4NmwET3W6&-M3cInIbo&`94p;MLrXmE>qxj-G6*Nw_kU{3iOIa#iKpFqf9TXSVi= zJwVm14p!dGN;4%@?~d4i^8Vc7rwQ8MsUsU0i32Iq20r?mJ8R_?7mkq&K{;Jna(_p< z%bp-g9HiNjcR>Z-91oRf1J6C_$Qy7k$s(bwAS^Sav8JKMkJa-Kz3nBwk6aO?ZO4Nb z2q`27XJ)yL z+r|B}&+aGc01>E|fIU7l``~LbwXGAHwmR|ng?zboNIlB-x_wO$Grd|L#l30`6(iV% z7iw=GyACm&ulXhec+KOyDSl`k zLW*39>rnlU<;Mf0NU1OXUjy|LB=&HRQ&}^OHGHniHTeAg-PkBo-;uRDK?mxu$iXrN z1!#8IQaQUZkGYGaRJBv2--$|)~VLTQ{ zXJ*q9@;rA&!vN*vUptrm%OA98ulLY3ZAVD|P{X>kTHdqMC=UOuQ_|LP)0u0B^PVI` z4qnkC?+&4CkA~fygk)4pC)60OLZKB^7tJ)ejVN`}gdoXc1J}5#7wByucH%P&bozQ~ z!*kHiX|ALV%4-wFSFH`b9&A3((g`o?mX*cPdi@-t<^E#u;J~Qn(m3-?mT1!WiAom% z7R4U+7K^S?-iyuGwA;ib^zpU3ClCHo1^09@J$?0TH`;6G0)ML#T*i{LYK0?OQ$ zM)K|JH{9%R8O^s={ZGAdyeh0+IxkKPkxtI%bJXq5F&&ex@f`}_*K?jn18`nasc(#_ zT2gG!o$dKFlUQcr$7;eBeU|I}UG4_jAt;et9*B|Nj@D88@XN{yB^6oLSl#+Q)$p-I#ZKY! zT$w4&Wor%Zjt?Wl7avQ8c8k+P*xE+~G3@Z_a(n88bduDNA6eVRL~Py@;1`C0vNYxY zp6Fw`Qx3*nTpG$aou@Yi6rbnL4W@wZ(XC&=kwXYp;nDNX(|wpNkiih@;scHxJ%~L1 zb1X4c`Z@k`JR^olI)^QX#qoKQgrM2}1ozr7ZM(=XD3swJj%Q zD({r}DnV+H=(LDU)ZIVhqKD@FT)iXqu;UuOjaMXrz1gB`S>LL<*Ui9D*u8Dn>fkTl zIL-stu@?sl>Zt__Ei=CCNpX`bb{mergF0?g5rHnRXxbZLeiu+)El`SCwTB*bd$0d) zB0Vj+-)5=B^Wc*l12NSvcX=qW163^A(c*(~(#2b{AR$hWwmr5t+1noWEkm`=3PE;L zOoLe0O$#zjhrFv>EBM5v#Ripy-`->t4^nmbm#|VinGK$60w#-jzYR#vo_VloPolWU z@$3#AdG$o`A}PJmMkZq552~z8jT;-_#+y#;j(t>3i|Oq~Vv=>Y(4)lO_TFOD^Pt10 zYY7k=g9@WJN4L9iaaG>x z%bGqtE{*bxJ%vqHg4S%6$Nx)iQb*}ap_G8XQ$}QPq*-13g``d4Mni8jA*x6*nTV@a+r4n zbu+bK!bY)m|IC|XAk?M5rq_cGD0O#S-3dpHQkyYL7K?av?Ecm+;b}U4@QE2!R$N!@ zX~z2c)P=EUWPOyJITc-5kJ43YdV5gMSz3C3`(4-=7gJG1N*E(JdHbPUO=9;Nl>5Z4 z9efHULZi!$@z0JZmD88@%>5<<AY}NYUVY}7?kMY~BN3qo?kd8DKKT=k0DY4QXE~g})K^IH184meRG#9ko z+1sdNmw5RU{W-wZBZMAqM{ew@l`3;PHYrby6@OziP$bUpoHo0f%q8Bt ztcloEpt#vqVr`RgO!0xoM=~C@`e)W|uJE424}g*^tXk@=(4H5ue5uiGNECnI>|-Un zJI9ZjnVY*DNWTBspPlR%hbsaNO`9A9BI2U>*(=VZGJ@DqRj0|wlpZCN>R{qoxbg0e zi@UgO6wqTkj-G4!#2@SxYnzfEEZS>n$!H!mV+X`M2G~#P~td0<3WtGeN3Rx!zONt_LvPi45s@l-+8)uZ z$D|(ndNhQJ*VcCmDS2eyYXUeHWrL2aI6nIQjCs?g`SQ7`&bCv6J;%a<%=TDYZMHm^ z)a>}XsoXtvp@h+SlD;XC3sM;JdZ?$}{kC$5dJv>^Mt;V*C|2z@`HlkzUYOC5Lm{^~ zAup@F>=sFI^4C{nnOdJ7_LaHj%7(LzISCnbe^6$a-QKcwyds11r4*Fw4dG%@N>Gav zJd257vL3d9!cCPDhYcSELm?*_kYo-8`tcfaOfrQU8T6Zx3-p*RPEIO2HsZ>cq9Y@i zXNRm=B!2&vuTOwp^3Mhq`^E8&X0;UBFHXqS_-^cCN7QMIf_23Q%|s>U-@lW0AAtzO zMc%*n?$2XHLgVV}_?FM@=Rf!#y@l-Wjmsh3CAqnmZ#c=^@w?!BgXVeCwX}n%U;gnT zt`@N(8&{$|LObG4%BQEd6U&Vw zdH4V(O>sdxpgKH)d1ouPT^V%+6vpJKKcMn3ar=(6oJqqC>U*#MOf`lvNW-0K5(?Is zOiq>cT`ig}%MOPVW(V>bdQWlcN!1n?zSZpEFtM#{*-V!1e4Kh=>Q`mSPu$$Lbq%oMw|3N3La_V|}9heU~` z(=(&eP%FPSESIe#OsyHbxGDZDxK2D&DS%oIm zc9OVl6pG&J6hbmbEELA@Up{sS^^4;yy`<0$Z@n1tL4S6&V02{<2og&^ToWnz2rWbE z=$gNUL@Qb7u~iNtw%c~mgvoVqhE|NhOngxFwufXKF03oo5I)rVdm zN1@zwlcd_p=KK1UmBA}E*BnIIorEn&18FJK9NF>T0SzFN`mWPoxY`q+znJ!3I%PUH z(!jl@a`wrQyu4on*>9WH zO^$jF6~K~0V6gG;?k^grE77IBzv&Vu|JbVcD#TFBgdkH99u?>t;W2T!QWSMmu`{E$ zsf7~VsBQka!n4U3#0!lsb%AZuxmz5!QK(;cY%5u3dl|6nN$nvh6b*##M>P)}kMa}h zK$BTP0tGR{al*g?_zby@NVRjgA?b~*i^q6TpIgTA8tx;^nTs(CYkk%>&}~-T=?ow= zV0}-5LOs1jY*Q0MJ-&YT04eG~G$L>pw!gZ@KfUxjGZ)&F1cUyee{3_{}J+9N1<{ka4I2KgjJy-iUgWow{vO>nnlgq&m@|?iEX8o`;r&Cf?H>ZFKI$r`4nhTf z$NN`+<*@yOu5zkrvMI9QR!ORlK|U$ru1Z(H&#KKIjL(_yXXpL6lA)EzIXdJZ)t2B8 zCEsS=yP2Wh;7`dV;5=OcX)NMm1Na%qj z9ZCepC)?qVH%nJ_%1-`*GY%3P-&;oxf-(SAGV19QFuu0opEu`3((jyr%mrS*AS3;i z4=hu6ELf>%eklpJpEP?&YRtM%27DsVMdZUz!C|0|9_G~TgJ%OTDVzMTid@~CmTt{^eDs?nNK?>_EZYiskjzt844a$`^WUI>rj<0e$? z;tFk=`lsVWSqB~bKwXX1%{6Fij8^H*+Xy;`dWs10iEXCkc1ccqJ8k|{re*R}=537W zZuWIw4kD-Ib_6-43&02uP)<1*fgIJBJ(;U2-`11JWR4J40#&Ufl7IGda)`>;>tXGu zPi@bSG2c9ZeEg^fAbxtS(KNE}z7(mw;A>6G?%zaOW7V^y+mg|Xg4E4{nzuHLloWaU zek&Ssju^fWXrDlU8cnXCxOE~+y1OG0>Q7u!WZR%sm2>w7vm)H4gn*w+<~`RTgA)Jd z5c26?=k~ws+qWpwNgS)$%0yzX#84hoW`vYFg#=#aErN33n0UcQzuNDS(EsAMW>e3$ zs0EfmY$Xg5qsXfqX?sE%8W-^yLfg4=)l1i_4OrXWzXHKPIM;kTISKu>^VjbGIM5u+ z5-|TN%4>c$N zshp2AOop8OsPx7nsI?d+{=Sbq0@({6%>lJ2CE9p+m4jJa>4dVw@m0Y8_$4{CJtLSI zw!YI;MVD*+-1PL!r zKvOgjBh>~lZ2Ud9#~*=dLOl(cU?ays)us5J9@G%BKD{OK_w&_IV{r8DY=1ui+R;2G z1;&Qv#Qu$dd&aknB6)ltF1n+tD&I0vdque*qy5akOD1`NJcaj=ChXLV58Piz@DVLI z>Awd?p{~4wcl>)D6^8r&?=`UXOzTzW(>ibEN$0--~_} zLY4o1`Cs%E|Cgd|>~^s|!RhlM%4?wHhQR`@qxGRX=UM-qTD3W&B>DNujdALg`C&tt zCD58@(x8@WAXZ>IY*6Mp-@LrAG|{5jk|5>`Q&G$}7RRRAQv6Dti0{-hH8zAD{vGD= zInc;nD_`xiEQMz7PIZ@EKWJp@cp9lbxYP~&YZF6FU-Ecp%qMYgr9GBcec!m zvjM&!vn(R!L&L(7;k7(_>(yxtZgqY*F=+CPBFI;rx7Y1Ks;vZKGR0TV=&J!r{=+Io zJ!ZkwGhE*}LC<($Oa70D!{}?q`aF(T3^$9fl01D}yA?Rh^YiQ)jl}EZFJYPNQGxR6r8>hA zGFmlI6c(5?TsZyndkBJ`9malat_}OB=RZ)H`14AOxgq+T3XeD(A?DHNGCilt@OXY1#g$Q)rd0X^2(V1eI6i?xrQDeyJLr_j*$3-pT)#QzFO)?@hM8 zf3-T(``!!yfr#sz+Ro+*zsZlV<+~HQg;tOjtawXoljG`)H1tkSOZ3)xcK8&qN{PA0 z&M|)gwWqLm3)}`|LPmR@mZa&w+xqu;Be(T%$>-gt|CR&lJ6EKMc0~Klf8P(T>YSM5 zf4}^X8-fS3@vcM4Agw!3Ntwp15c6o^cTKOj_dv0I>940JkiWd)JoN}*xVP_lMNhaP zPW4QYA7nzVvgsCPA)BfIs;{@=xQ%MRk2#pEpQEIlNP9h!ZUH!pLm7k;!rCx&G+i9K`9UpR zg-x&cW2wt*2B>XKwo2W_jvOGTMH=N{VYbH)xd~;kfwN3Grh6y|W zV_fhFRk&P8qs<$8?6K#TzbhK@kejdCtAq-dWY}!!U|?>zFB(VWM)xmWA&s0_jfO!@ zmc4lyOzd@P8k%gy(3nZ} z_pVa4U`^l~FNt~N>!Bmz?!?SaJH#DR5Z*A@`OXmZ2qs@#610gkZAr)mi!}}Qre)Q6 z$>B69y}y=Zl*K^tC%F8?<=Ku7wM;lS80lUSMkIiRw$XR)RHw4BY)gLQJP%|8pCW1M zV415fE~^)2wQNKwN$hm6X=Fw1J(ZHA;xT@$o(r8oBod5HDz5$cN~R0uIww3LB7(R> zWAr7KarzaVx6H7joE-i~IJ;TEMeeIRg)qoO=hLT8U9e}v$EHV-#WTH(W#;vx@w)ZrhgD+9Y+*l)*sT!I%>8Q5>@_+n9SBawP2rwojrH1v(UPKx&P|bs~v^b zx|~`c>Dwnb;OAEY6Y_Ah#c7jfeXFi)(qGhND)pBbnebJsOX~`xgwdR zTck+Argm>-s?!-(pd}>kwZ$WhPKqKm9k7BrVbiikHiVB6glem;;jH>f9L-)5WWabL z8cB{I26tgPsYfF4P~p+}QgS8C5*(H`Uj7UX4t@*nG6Mz|mG13sfy=Dqplh%{oB-x0 z1t!)IVJ+X7HWF@r{;Iu7lZBa?O;}j?D>nh^V(x{rsppBBj*ihBm2|s8^7Lc=|HtY=>9C@aT@?|Osf|y)8$_E;=d-O0m!Phr6N9c;R2VY1pi@Mz_8us>#2pYL~P-)KS zj!oeHg-*hnPdr8hBZRjh~+% zOidiV{Khs`NrB@_4dKnmm4?ag|gu4hy;-6XTS~3&?(5M+*$3X zY4W(`wlx~6)bYtk8qC&}hB`Zcl3$$l_4QLw(8$ry<~d&xIcv1xb;4EU;-iq!%5;pZ_E%dRq;ZYlB^DfH9J$&8x7sG%7rt!_oRT8WJVy zsEV87MKmqDbDCB*0>0TZpEp^lD1|ZxWRskx6^$BMFe}p_c*`p$9;7b^&#C46zYFgD zm;2k=+W3rW{ZHb}#rQ3|IAHIXgC#`vPE8)i%51-;#P*+OrpW@pa@Wcl=7pg!8D4YNZk6)f> z;OLmw(WILAZLK1kc;u>8Qe?+A`S-7@(0N(|3>??r>%uP9vsmUF%Y1YyJl6_g zTiSq_y*-bkp%iB1WwRuD@$4*A?X1R9P*9iz&Gy ztPR^z09=!mk@@H{(-X2gvA#ec1_@&msctxZSOL_hGu@qA1g0pP+P1tE77AV?*I@RW z1c~?RZMNRmTPl^5hnKjH^)^}RkPXDGqk|T3K7HuxrG2_ z7I9`dr#4{7B!hpQnC!l>T8jr2KQfyMx zLL=<(%>zbPWgR+kL5o_@CLf-NjlS1HO&6dg+jvoTo*jOn=I4=ktblfe3GDLkY+4`R zt_*q3n`~Z!Jt3`FsX6RAjD?1U>RHjeW;$|_=mOZUru(aDx+6=w{gQ;Y*QSeN^Apr_ zE=bf_+E(ops;2x`s*EO^6YWY83Ow#Q)ilK}FtporqBO1VrO7g3ZEDEN`>TI? zcqbF|{aq4!+o9ePbr+4tyA6E`7`0)mh#~hoir-QrHSx~e&Q(s%Cd6q|(9zifGS;!~ z%NI5>M9c}Sh~Se&Ca&Voe?<(6;{m;LwAdn(=yorq&GVXVflF_&Nfd@Mzs?+ekxcn$ z9t|g_d?>b4pHA?c6J`kcY|mUCH;aeZ0mfR3e>@H`Jy_Q3?cKkG&WSrLR&2tv>w=2N z`{CD=zaV$kdC<9ATf}8Xh~O-m7#a%edZYos=U8k3(|?E))%^Cz|HPQ|G5x)49e#j` zgD`zh@f8x}k{;R*U8}VRz;Zg2=)pfRFjp}rK?Fj^BbZU&sr3$G1X>>MN7BZ(_ao}>Pjq2mEY4~D&x4(HLXfaWGwe*~nVwH4TlNG0 zb%aa;I{1hUjKP9y!3c9b8$&OqbzI8KJAAn&Ho(?EKDYNPh7I0&yG40*sd=0 z7uk0EQ}Hrl0G(*m_)@gEHNu!c&?pFgfTRX&bya}xosic!b@_(ck<&EamGwedl)5;J z2Hqh@yO$&d?`apFhYI+b1s35$WZ!no;QyMH*THs$ z1o?ah#LjH0ss6C~)pGQN;SOW|`f#0y1>}*y$1^mtV;Id5zo(ync$Pr+*y@jnf^@b(kCj`ZKuXy&HVkvZ_95OnsaDENuC#F^znhvaqK~)DX z8LE`iVfSX-OL~fY@&t?|gSsp^!(*cYfOFwISaYcp0;-q zaX;W@;jpq0NBh2h{S(eVf#8EY#9!>niu(_f)DL0-bC?Aui@~(Q9?pJ6>v652&U<4l zlKAFHdu$?|ke%dUsdIZHw9_9*fO!Agx7$q2%u|D|!<|7AyB{DbHQn6YTAfu5q7`ck zQrT7C9F7JRaWpgaj5b6TxCc)gQ!DZsH*)Vl8 z!*QY+(pt6&goQ8wU9bjM{3(Qe_I8S3u3r*_sW;&b>Lm_i<%`~Cyk6^er!MiyM3|%u zufk~~;Z|!Ht16%Klo|zx);)+=+u;b|BPEtyS*>qxKI1cMrrFtEYJu3jakT;gaIoDp zq2iWU1kg<#+;l6TY|#6F&=e*=MYPaC>C)j-my$~mWuDA8Hq(8PCElam>dXpq;e zSq(}fkqrd>X;iYvwfmNrUA;T%!~7Py@@0 zQSt_Cbw>h9BqGrI8DMhLAsWOb!}d&vn=7lJ(6qQm0NgRvSCFX)VPzULBmqaOQ||Uj zd}H(+Ql!9^D>qqZwnINyw<-4qPSt_VeDGE zRd1dLM8XA+TCX-Gi0L9>vz1jA4u^Askix9Q*XY~pGafM2B0MfG3()EmQdG7~Y%g#k zs$dstC@lcv0xbRb;A^u?N1RRdW0DwgY-tXRVL2&raIFdwLMXd1gm|W}D}|U2lg9`H zr&lyngS5fNZ5ny3OofkB-h6gg8Izuhzib$okAdv2or`k@#wl5itn6Nla@gmH@w43cOr99dsj` zPgscRw<+V?+5Ph3gf0}yc^1yQ3nVPa0>V18E^B`i!)*2!H9Fqq> zqi44eo@J+khd?FQoui)}78Z7LEiE}&3w9v5V+aa9{r>$s3nG~Kg&VL7@nGI8FnLp5 z*|9{=lKDtu^=zHazE4JVR6)_gj;RP@!{nh$Msd7zh7}$K6qhesWAcDCz!57$V`3}@ z9U3@^5_n*p%!>Dx6K|Ss9fmtcepG9puN{4ACY+h2@x*OtZetxn!YK&vLKsg$;{^D( zad`ubZ|ASi&zLX}={5Y6_zi#F{Pm2CF*=+MIz5<1?687eK2JxN80ynS1rK-`x|hn~ z5K3X0mNEe%z#;6KK42kP93Kp+wK7}+<9iQ?gvIkprod@_fTv_~Npo*^hY154Tj%5b zC*4E5>;S$xz}vaqC1!m8F0%sd5^+wDpATnMy_*ZO@KRf`FVAmFsjD zXa8Es_F@AQ20|%Wd3pINEDYWy1~k!mOeW!1eZOad-9-XN9PtXSa|?JyHQ*W|86h#3 z2+vPCA{Pc}3VQO_#@dv!HjDcPxW?N!MI`At1o*uH^*;?o2Hn}Mh? zPryY|Fs;TqVr|%c0*Ih?Pe=JUA!S?#kYOBq^N>G+KuR?&kkKSoatbKHmQ{qNqp$i) z!k3U!AU(fJF*tK_aoeHtlWQ#ypMqNL~?N<0e&LVn?u3{crqek ztRXTjNH_n{$e>T$D_9dLL9qZrXN|<>*Sr$aU;^xwyfjy*>cF^wYDPa!-=o*n%9+b!q z$38&y7mks^T}uIvst1gB2SDFWsH)uoqKSB_LCJ9E3TuUSF(WK`W~Da)Z7FhTL9R1B zNl4&H)|wb^b}SvC40TKE@wZhpu-6X+coy6NOI8@PWF<*=4JqND-9elsyM(9@ZNiqJ zlatd+9!vOk$!qUOFTj6;j|dKXId0CZ!DY$jH5ft|nQ7LNU?!RdyOKzND2-ET-V^L` zTF^vebm;WNgwx97iJAovhL~*i)c8@FZI(-FB+Hz^v_VQe4?6%pVK&IlVGM|RO$e+a z)^fEzNu`1EENo#y8A5c39pzPq){wjzebnEK&*EDMPmoxU(Hz_n;xnPX_6i0`ef$Vx zb*yzny56XZE#eIhDc?dE zq?Z9X$>P8wjI~!X4viWJ!^{;QvtB#sO;8adU>zgz^+yO8MN8lkwTC1;mM51#dD4Z; zmt+9@fx)FJ#%DmtwvLuTP8Rj=WWVc=11qJCup}NlSMkt_)SPsv$kq@83f-j@U?z=q zpPGYB-vkWa;ue6w6mZtlKP=S&1K zfvZ}c&`4Lg1OB0{D_fV}VN^yvLk$D>U7l+KqR&JF+9?DiLM&78;Ok)omLpumTruG^ zz#0Pt-F;Ag9~K-;k3k@V$J*R%&7S@+0&3JC<^(LJ4RmbRP=%-S&Pq1|?%*oB0Ar?r zJBal8M~-I79{lQ1ktPL&rbp z7TIh9LDX(L4I~_Na=?2j!h%3<9}*D&ci!zw!JelttepR-mDh$HVqt`KLV~B}IAQQM zjp~aJU_iUauO~l36Q>#0(BsVx1vBX;wP_ z?c29W*kr1q%nCeMZ(tpeWC*-P2|O{90mrz#vJu>4W*%RpZ^YAWH)T_T(Eoy0QL3#;b8#Fpfmqr&2jKT zvap>X-I8+t^5txxNt`Et-h_y(1U&Y8AjA_^hA%%tm(B1XaS|*Mby(%dJ0ZD}#u7p6 zF?l8JR%07-vL%ia8Q^e`un-AJ0dWFVE(cDtJ3w$KYIbQJwuyDm$D5GtREPcn2*(Ah zCmrxU5S%ZOOb?u-VSk}@J2>!(G#?7MIluJL>|F7b$Qs#y9k|FY`R|XY|M7&{f1mjO nIl!x7mWDR=cdQMNn|Ev;m|5DG8S69H8CYYDEiEo` z@to&6e~#h4jm-nBAUC)9-%oH^S{rc(S!-CsRSrIozJ)~)(mUvXc<;p$j1go~4s-2_ zibKRix4nak?Na4zUEE8FgCcl|GRIyf9n@fG@+z2mt8^_saU!i$b0sfLgUsxA+S@dJ zZVwK24RQ5&FA7C(54^+%XAg0PebSMun^vJmr6rzLS4ZYKmPE0Tj>t`Q2^=eaaWO`S{(`vp;uHP(O9ss$hCjcTTC;lm`5pNYgW&)9%eiO&^#z7M zlks1(^uNc}co4v6-VqnTD3xUJ<5iMY-bXXO@bSB?Y1)Pfgy>ohQSB##KOC3^1lkwR zY_H4?_=wbHo_sJR<=~K;q?VfW?q+zB`}UU8a<_eOaImeSfWtbESzE?OcXB4z#b$Mr z-r}Mjhk+yJ9iP4@Z#$Q2;x9|I3quW3B1Y9ogo| zRJ%UG+xo zT)!{9Sh33WG==kKZRcCDp%)Ci+ei16r)d{x)#WM1N*X3$>7JFvkcw?&)SE}UttF24 z28Pl(4w5g9HcAat`nQfmyQkTXw~V%ZxLft(hq9cU9|^5sT!jzic&Jg7qR$D=OHK>- z4UCM!Bl%$H-sE@e(0GwiTc_G^|m9=u8*^=!|`BSG(;o{U%HAh2q-4t)!xDlF897IS= z$<-7k;(Vz4RX{*Ydhwdf=K6BUd(*Xnb#X1N2(FS1YhH^k4b>zSMGK2GyQ!|kp&ua} zLPEFg3bX@Rv9~4bo%v>uqjD3`HT-eP9hyZgB@>#^>wAS`(EMm@vN7 z{4KiMYwB61t#Y`a=;(BR(Y0^o6NT83Nc;SL*qLk`96!p<;JOMFZnp^##AEdB+qX8b zMGO2$X)f#O^Ie~(IXu<=#b{-wFRhdNl9>>Ue|xpgJqU+;>$Et=CMc-coTRD@yPp?! zQmV#>w<>uKqOTe|vP^AzU6&JK^CjsN<-@UETbdki#@>*VdsSoD_~hU*t(=>$&-WFM z7-hC!f)lBqKJei3!cd5=$?y6Yla`dw{{DUnTH4gL#qngz-ePoN=jP{SgBxKREY@Eo zh3At?x|R8kUFH3o-@orSr)l4&6|!rZ=_})f<0MgF&6EfSBz~=6uHwzIPt6BbM@PrC znKDvdy;4NmX*3=UChTe{@4xy|o7TU%vNrdFd+5Ps@51RIHsyPn?dVZ$H7~HA=9&|r z%qjTXE4(c_l{-MvZpL?nPB`~l9btiHmdSBJQOCJBOejp?o6FS*9&Ag6nTXhc$VhYj zvs*hSfl=~>f~KZsOefab+GbQbS1?_CyEDg9Y#Li&H`xGTW8phX^m~}OwTa9+ zoA1maD+_rmom1TfS@(aQX`Q9D?>ddipUm!DKqvUk8*x}xWfPMmQ+4U{ow-)A9DcsO zBIyihh?rO0d)lr=a(a48{j=9)Z`^2luNcd8>Z(7#WzRXx*w5H!nxF0~{?@ANK8ITv zO^6;_>a?^klBT1hOEXO`QiI*CsHXPHZDUrdbv|0uH6K0l^lmFL3b!-*H`aT%?IzoD zCqDjw=<>d;O=GenOEw@NKu4q!0uLtjc1}xGFvsE#?hsj6$oLn2_ma6t*3hlY6B;K;~S&fD3)$CA@qJ{tU}U3bDX zaHJP1-Di=h3FB=}RAzzyr1-*bR{GJRJ1)z(@!c68(yPx%nt#Shaj)1jCw?1Ir!uJd z*;pNV(RO_@r=TObqP!fPTa%{u0bjm+Sy-PgLE~msU0v(k(2wRktkEWHGS974Ew|Mn zNFqUUQNoFET?~$0JuT(*)u&ob^Yd8{%j>h8nc3JdFpxkdW+tZh>ghUR7mfUw?ovu; zP>M%9u8)MXl?z|L0MTH0E8w)|K{)QGSY?rz@~Pi7q~gfP!q z_sOhQ7u@5L!?c1;i!1alGgqFESafFBC?+Z~x2`^a{@f2H^n_pnY{A)nA8tVyzt+g+ z=CnKaQdpF3vX>W;6olvjm~G+d!ik9qA4exYmMDiW*LZDE9EcP~hWm|NQIn3Aa(}w6c zC60eMcJwHX^U}oZ`T)edQs=_!`(X~>p(_Q+WJEAcDc;+nXt719ce~TFMAga3DY4Fd z?mLTWk&|t@^*JAwXqN_FnmkP4*)V>~CFMK#%iu zksx;X1=DB+rEU`esj$MJBl@hv)uFNF<=4!+aup#QN2;Z0#KgtLT@Vf|U0EH8&axd> z!+fn}s4KDj-gX7u31hB#JafMu3%8$mXCR=LY``;MA!AD{OzrE zS>Y1>3U8;4*-GB~^$eJ=ty~m`7^2E*))z)&!+1?kthtz(rC8(*ooIE0BfOY|9Q{2_ zz{A7i1Zcu$x@cKv0Wb&h%l(ca3;cD7x_c4 zZr`YFv3J{AH3B3eePQ^j*6;n@01mn#%cl)^5>x8T@D#Rl4siFnZx_K~V8-zGx?mFx zLztME6JemZxOmx+6KfG81*4Q)TJPag-Ot+Bo~B!GKn&HMeRJh8FRtDxP)>s~AeCSE4^l1US5Yvs$+S8cj&ThX*_R2%UV zopu0(4yq1l>eBl_fYz7q(0%yHxRJ}`Fet!K4sFy*6?~x zO+UCSg@!Gj?T8*FJ2su6tt~UB}>#TDHgOHivuJ#UjF>p zSlfr#1Eh2*XasN7!ukR*a}C?Bm{IkM(k*~lFlG5bt!@-G%%7p^JLb%g%~_|l>3(B zCZv&;^pdS4F75o^$?3&P={iL&Yb)@StU^0A^Gv~Cs7o*6qyov(z6iSp5HNo#e|!Os z$hg1zM(i!)wJylET2^IGkI33a!=}#b@9NTu6n0bsxXQM)p?9C$_E#yMdZEo|gHK2B z%YcABb`R+WIFt#nMB{M1s;a66YRkeH{vL;`+CRp( zq-iGu%%Aogeh2^06jmnek}*z6NvSF0&ebBgnStAePoEFXkF_igR#w)=%}q{D&YSbY zHCWnSt4dntsOfe()1j*1jzY)GUTcnIba)WJgYQuYCEN@*w3dWHU#8qC?OsFT=0n4* zsl7Cyg{k6oi@?meNSR>vynZ;T!DFH$QR;ct2GPTVq*2$yAtrzCd*HCymp5O*CMv3f zVpW^p^`|*CKS|4rEC#JDj4J=uURqzCZiRyE2DPMi3ynyLovzDl#dX)oNA2$0>%9`! z!ytZ~2qUzal7e$i+}(>^md-dxOsworC!$p;wz&}ayd6gPhLu7b{?JPTushzYu4_xn z4R`5vnfHBuYSqukIZ4EMDQHX-Acu9uads7==lIetE`=O&va<85i?MItHf5Qri!8O> zU4vB(j*3cyb(d?^aZVkNP}g;BZo1P%86I0wVrR% zj&&F0jIY4?8HpU2#Li|B53N*+ZT&p%K3hR~U6jx=bTcAS*xp^ss^Yk2o^|{yZe5)u z|MB#a;&0>o0=v4pB<63Th2^nKG{7nDR_3e=6Ya_{#aZJkfJ*szsC&`Cae##8x8N3B zT(Mta9+u%|$>vfx)7|1y-K{ywk`av{fNZ(_P_pXIY{+uumGgFW^gXx_n5U|``dsr} zNP@Hi)^YXbQ2NGOIDfLA)=}4jrJom_p2V_o>JGgI7&|z457Q8O(dd%HjNZ`j@T;-> zyu7@sZ{IFYFG1PIey(~&b^2QX<2#Bgb8~Z-T-R(`XFZ=rNB@}LfDHPv+?~JJy1)Ej z`qL`0t(5`62fsYVSBAqam!we2la*j6pb=3GeD%dvlx)oTK<>Y*&sWT2(RI1?`~u_< zZ8kQxjt_UGVz9840CODoJ$3P`Z6~01Z<@n&L{XgKkiZh4&d{0>trMPqG1ipGh|$ck zh&+1i7;%x%me%^xWFwToaqzM6MtL#Lg}nAmqvTtehE9E+l!t1r%?1Sq#-ei!Q;k9^bF{Q>*G-QUvVZluY-zG{5wg(LZP@xvZ>|tPG4eIb z`3ywVA0gbWAMRFajr6*$PkP#s381_WpcWJfLj7n9g*=CVz%A8eHCvGo7zw3`vZ`ir z)dv{E+RA`G?}K0Bk)p1e9BL^FP&wJO8-yf6iGvpGA2Ty;S7z=&Rgk74bPEMWBI^^G zX_b*cK|!p4`|X=_s{nW5%%j%2yidZNYPO>d*B8fIm&dl?_W7gl!Y`S3TxwmMDx9y? zuUl?jehAeTny9HnoIau72f&a7`~g&FDw2{<`OMnh0FbB1uj6giiiK!Y)Z~8z*a!q= z;SrtR9a+g&aaVBz&sm~amxMN6OoO5nylwSD#Gq%Z{ z9`KwWaDEi|UjdEN@`b0WERzxwV_(n+Gz5f)-=4ra0y35<)WMABUM{Zv+4tZw%rz~r z59bzJ(|~mF({`esTi=GOJ|?RB4{)9ze#w%w2!(@W0EjgF3bw$utu7h)A#Lm{n= zQ}Kn@z#95VL@zHcKeQ~_Y)LkSaed~oo6x9){mnhL3bCtnyA2QOZjU$Cuy1}>aipU> z5fesUbT!Ut;rAVDHG^d|bV2HGgt{{waKQ zYB^P0z%+dSlH=SxPVIaZD232UoQ6c|`LbzSMojVcmNTr^jf+OLO*m#*G?p3MyT^Lw zj0CSqlS1RWo3=y2>Phy~Ju-4~c1INKQD&5cPWZj!{4fMmw+6_ES#bPd0<>@xl#~gu z|3^Da)0+W(HbJ$06uZ{hyY-GEEmy*_Xz>+VlR#J(b+2kBMy9|^Q1@FggrhBx3B>D-ZD{wxSfVTvmwdYyriIxO; z`pNDBb@aYavo8XgGKR~e_dRszkP5&IlxG6oOcf|-I6b8j7Y$*9lDU}qecWgwMK>$@ zL-yq4BeW{t`T3vIT_T7wk0FnOp(c7rK!^?i2&l|P*bwNCgm+nAJye>iITqTUp0heG z`{?$Qy*WupLZbi=S|bO=E&4-b?7Tb$wd-QF9KjG7`Uxn}UNKE}(5tIESZC)i|LreadmV}BT_<^V6;Q>; z&Pl_BM+h2HuU&frK}}Ub;a9%MxpOywO8VGtcGhr5MnI4tZn!5sJ1eUKgkF@Gff>nc zyy5{098fU#A)t>O7dpepsEY1^lv~OG*v}g532;I5=y%yzS?eLh215pfI0R(@20l|b zUP1$i2f)7))L;}R3~f%@T&6*91Lw_;UMvlc*n79lHHs^{Pl$-cBKRxPFa{6?&{z+g z((6c)8+tjN!QtV_Ky<3(l_$crynTEcflChp*toLd5cqLV7_1_E`i4OC*MrM8bAyE zliECbG|Rz;y7}*0dPIU`tm-;!@$sRNp36s%#;GRbuf5#Ae}6}jb54)jy7|p$QEeE0 zll#_u^wH@?NY46Vlo0knnOMIpyL$uV^9y_;GFD^bhOJFQBl1sn(>^`B=Jgt0wTs`i<`!Y%Hoo}!@$Q6!KF7>xT6^EC_XQq|J5 z5=*ug)7J(AE<=43X;fi1*A@O`N12} z%>`u?B``|)U1AZ~{Q`3O+3DZNqm~-}-jrwbZW_2tfK?+eTYVXPvG;)|htS3A0R2ie zL5`LdO7y_9H!ld${`vkRd?JrGC#b2DE9u>}a0@`NaxgNM{rft;AxyWEeXnbdj?3(I z^WI`@6tqM+4u{UyIs&&-8-BWfG`rJ68BX}-Yv$d{dgwt>C0_3X)G=h9)GLn>I#17b~q0pLU20!PT5lwwNe&Nr{?q|-G&@j*hx$B zjP$}@Jl5mgkqUP2^*A{R`V(Pvq3jE@}e`_&2UW5%K9Ep?9IVG>i@R~x{>qN$7{gA#E!M3 za)j5sgUTh?VGD-oZDs|4ilbEkj*{5)Jg@~b^A{hc|96l7!%?|N!T4K$c6xE7_>W->v|mc~KAwV7!9a6z~377bP~MSnhUz=pbwy`(mT0Gb`1P-Kc-GSNhPs<7HC!* z5W-FCqC`;2t0~{s6b-Df3XT00K0p(7NQ{&3-e3H|8|2YTplPQQjq0LIV2j6e=2&zm z0lH)dLJ^9U7U1}rA!`MGEU&Px-OSxu8$W*P)UDz1#mP=}U}9~Li`Pa9S*O9gvq7MS zDmE4daRvh=umWs_;IObH2#eZ)hB>i1dk^j6gHI&U0qAF;+rHNr_#00Pc^R1o*o94n zj#ye@2Zdv2Z`9kiY9~Pbk!(FwbzO&pg(ac>#lex<$B@NA7!7_c1$hpOXk%}z5v?!S5bKTxtUK1yq6gT0`triODa0yvs6fX%P7I_L`+)rq{b+^8fLK@8($aeF2xZV!U|_iBuu#iY z^yK7rMmnMj@^KC|P=5gX$>Nr#x}AGQ04LotivkJ*tv6qtyY+TsV?)30>gomeEtgDX zaj!clV%!CQ89IA#@}M?|H+(|-gRm6hWFKKoPyq-n)PW&mo$Z3E1XNu^@LAmcF!BP9 z17u$-S|dZlBuM>mYQsTYQ|w>N%*@P!ssu$@Ac9|y0wyq0qAcg?b#P=PFDl>i^z_8w z-p0mix7xTBp}^s`Mc#GX2Wlfg_B)9zT_^P!os%@Z`-au?R=2?bsi26630t`e5q={b zP|dmKB4Dv)E*zq&trMalL9r8HX0D}aLEzb8R>nX>{9w9&2;EmGodJyWYFq_%ivRx& z);+thI(9RwwBjuso-Bu1eJCGN+h}Q{K7Ra&(ypkS+=hj+hT`~f+n!0lrIZ`;*}ygc zUIK)aM!8yt#t`D+TRIMIkrD2oFEsLol#Tju7uUnW^4|S=*mkl*6~gbiX5ONj__)q8 z*kr<$^L$1VU48vp#1-1DhMB=8+A$k?B7fHd0QrB|aXuyduWQ!TiSg)v08$0T7XmUf zM#z3j1%6+eXlMN17Rqz)+spYW^z;LZgzB%N(^yoTJHf4!0>NbztR^it`Mcw0W*!`& zy7Vo*Zhx^YV5@OJR~O66GOBF+n-^b7hE1Bv@aj!83nmSwLF?C%gJ;G!hqm)2aX z0j5)#7b7ajP$ud(>`HFCV4l4jz^vPw_8i?l~CGrPE`Jq-u1zRb9 zy5=}cpo^XMh!EN9vb}tvaf~xVFCVx!0UAGjF)=_T^AO_{c0xB*fbXpYLgqq5Zw%7UxC(4mEWg5xbLiM>*fT7eqC5_Ww*~qX0 zk~-M}K*B|+cTt+l3F0!ZVfE{IZwl;4E$1v1$eJ7~h~rpd0tLv8+{G&rXyga84AUt1 zmH^N1j!grBq2XnsS;YbbwbxINP}_Z8?{OMW&0lP}T~|;Pw`9x=ylV^0Z8|Jl@wYl% z)^rdxv={E~L6jLWs3Z2C^#4N_q3Ga)%hhstSNwSQhQ9B>ezH|JMTC|9Xbq8TcP&TlDh5cJ>>nb`@|d zfkW;Rs6|KXbU)n>FyrfVq&GG;_N)yD0TDElI3O*UnVF42?sIcFu{YB@71ld&3p7hQx;S<= zM{kwNM2tUKeAKYRlKmyU{zH!agX*AYuw4MvW(-JN6}VQ9>#{a83yUeJA!GG1C}Rs8 z)f=F!C6-Yk9;6nZqA9@Dym!7lnYYl*eGr4H=3Byg+VdlI{6hPmocu@AoiIJnqgS+- zMeK@8>Q2U%VI;yXD~d4>bK>>Bfp)>gp4QcK9CLaqr$G!Q|oM4jpHI z4!yKOna}Du{a|*!H*2wJDDF~VP1oChc#aHH?e66!ka-fw3MBZd5<*9`1QkJHB z(|4R#sErdfodVgcWM`L+t_5nnL5Y%aDuA9pL3u>UZgzMgRDwe*K8XH=8z?8g^Mmid z2V_7~sj;1iDC2>Lg+lo{At@c|cGZfmtEp+;-t65r28*w^udix2pZNmpM9TcH0N-rE zz=wh(I5DUt03=oo)}J=sbQ;y&z92-65Xt-@r9BkpJ1wUi=I)JtBcHd% z^I*9CM@b;!9d9idXiSI?(Ye4)i4ZCM`-*k{lTSwSeVsb4s)Baa5iSUW^p5KlooI>g zPmfGp7VcWP$RX>rYM|VJ=b`uSn#@u2VssAT-d^YXw>P8&-MWH;5QdZgzWjV-12ic` zD#0c%`H1tHckmFVfB)z+Lh`aDHU7ih?$it&CrnlKB^GXk=)%8oK^brF0n&W)`_tNX zp*EGYU%_`z8~#&81MznFAYp;Ait^huY$$J6BO5YC~HvKZmcUW zbGSD0_V0+qQ z?@a_08jX;|WS|~u9#kq8x`V>k=H!s#&86F^Iz^h0J{o=bd)}imXuTtZ)`lHgY?lMu zxjgc4Kwx{oo1@Dr)3D*q6-k$c_n_N9tRY4oDWELjUy5rBrCxrofD01U%ojnlO$Hh% zt&{Q0nV^?1eTa^l@9ODi9{4gXsA>M ziA*BLvO8ZD;=(^GU z*^Cc(%=1DAOTQatj>4m<^cK6yx<4Mj^1xmWcdVJ#3 zySgO`i1vo?co83D$SS>cyU_(>3~th!!+TrMkD4Wt)8k3W%%d;Uc~Xb^v>8C*+<_c+ zeaarc=4UJEO`-JxHA^f$6Wi!}G-706U<@{xBw(D7kGpm0%;R1+Y~=`v_;OQP6KPBZ{{JVGTV2Q$^Tmt-V0`rQCLva@vh|=bP5=#RE_;2v; zswgSp8X6jcUcGt;^ha*3-p>%$`9bVTI`-C(M-1@q2hjT zT%GHNmA$al+o16A=m>YXHsS~w6 zgAGUpG?vy%S0h3fOv8VZapB02-xaq@)rE-}m?x2dIF9rni`>s%%M$_bZqDoKAY^d> zL>d9r{^)x^vA)Wt{Ek9U=hOY4`_os!uo=X|u`_NDh5@sO$4{~GnmhH)gM72Lbeqv_ z>6Y0()u*thk!tP2PO_khJ0sFMhL^ z#TyOwt9ars-~M4R_GS7~cYny47mG0C8=bA}u9O%3&P9g2lKOiuLxWQuQ*6xFq5XkT zCr55=ZT#cVe&otuRf?>->H^XoSfl1};u{EdB$XAqq{t(he`8rSA@pL}>?2iLUy>{| z^j(GizmC6kzX!u#rJhKwIBdI*?c5Eg4XfqZCkH3+@$@i%bD7={1ny=MGEDxe zVWNR7qfYjXwLZdLZEEDvzQ4oNShYs-6JRoh7lWqLjv!ZnJKP-~S&Fc|$0w7aPSfRS zZeB}^avw@+dPMK^zw6)2DIjL>rIrn5UtL=3>uZSh&-ZWNk6)_)Z%OYjTZ}fbF)lSD z3)mx6OpsE^xiuKTh0S&_pL_PjfKXCj#|jfvA?UHaj*&I zqT4km=%rqHw5wV!83A(o>EA~-t8Rl-%fr)fl{C*k+VSiI@M?+vI{|!f0*-UY9HBn2 z^Z|O$64f{vw-%I_&)XqHJpV?33ud0|GA>WOEqe#g?I1Uwn$ye`M!Up#st~hIbnf>ND$uN?eY3GFVd|XFVpavN75`uwocSkjt)^c z@b6aoE$}qHbeyWGCgt>QtdnhbbhwZQ0nr$xizgt%tb1#W+A za|&BG)}MT2PUC)pNufm^QT)Bw zNzecyg^kNULp)J-DO|`YIW-%4vB8HMy{Q(;H}7u1llul>t~Uqhl~jVr<)hBg3czI% z1^mAce|{!noBV~4I8&m9wsAQTBe)NNhrrI`c^v&Ws4J}KadF>LPEz>nrMrW^yIhbr ze=Q~+dcWY%ke|-Ff5(E0IZ<6ce_oEUwhE`?*4|_Top^s{63HAI!i4iv1InDDJ@I+0 z@0qWJFVp6TSi|hVyLSZ0^}o^VwfVRj8-J_UkfCj&hZ9Wsv-%C?&kc++e_g#V?nSz5&W_|0wz8+ldiTdt-_z55-;6Cm~LV-t|Vc!Xs#-XJ)xkJY&wG_BxOlVK~ocj-w%ABngI{%T=O9b-vWgpC+Kk=?D5a=l1S(;}vJ1T+}%i zYM6_RYy}z*x3o$+Y~}V^h|TZ|^hDj-d+yf`*(KJR#lka=@E9yAgm0Wpx;68MPB6;J z2KKnN!ZpSBKA8)fID-2T?PUfyC32z&vYq*bge-A}>*Yvvh_!X~kNwErsdyx%8MZK< zF4-0H7#f$R>V6&|MpAy{5yVLzVLSb~ORMUww$NyuJ0Cc><4Hx&^U@-F$NRH>kFY)1 zL;-iLzlO7{(fBhK3Kq$({H%MKq2cnkM7DB;qAn{|)$l@nI0OzmbgL7ch?-2V<@7jD zxDQGBehAL1?F1`iQprLi|4Zg!umr5Fd+Tp|{jeR@HL>21L(1YX3{M)aoB)t>6f+tP?Kd zl0@G9dFs+k1c&SQ3njouT819v5;K6TYh^V&JRsYu#b`TiQQn!2iFQFxZx!?I`s!uB zIBah%(K)83wL5+7Q)4d?n2hDGk=2h|Q;$GNWka|?}M3po%XhCkn$E(w{i zV_Y(GXNH`i)R`?=XdGy>;UKO|fUE=@hs7W3P#tTi@X9d@Fs!`w>q(b$AGYUh=bu7 zbzo#!4SYQ#<_?WHXx~--cv^u>VJ-CIH0N0AcDu~iY)K!3>t&pMR;GJpjFN5w?5u`Zc#WZ z*_?V?9W+~z>o&sZl38=_t z<)gHc=IxZ0L`D2M)oXrnOH?5be?BB2+Z zNKZhEXRQe0tP)(@*_&}=&Atv5hwio#Aq<~}MyN9*nV>uME%7h4p9MKVukV+Sw_tSL z(J)a3x$L|)RGteURE|TRCwud%W%24es47yRL0J)c{_`aL=~6+l9|c;)I`X1%0~1pQMSGoSa^_8>m+jGkQq8I|#73UKi^2A{Ub$(Dbg!E!`aGVficlB~B^OG&=TuZya=`Y3 z202AoX>c2Q3!}b)3LSow9;mg~k%pF!ASMv**togtp4B00Ls~2;ltF)s&Cp*);bOYv zM%!+OoR(jSh?T5hh3srL@zpcTLMJxYR)y(-vfuT>dV0pcW8W}~=zZ%+GxTd*pIS(b zd~;nEH*xIj`#0*`ckQKlpc3BG4j!QXn*XE&-26rqW3sieYM9_bR`#dlJ?oGK<`rI1 z>hvVVtH#WQ)O=tD?S8-~%3~SjwlE-MbnB0y_hg!8hPZ9rS06vR=ES)S#xufN-+igr zELyodH|Km_iLIyjeX?}_T=2nAq7|&@HF9`EP(3_}c=BW)yxib@z4f35gG_AjhVBeQ|0)u(rBd1#Esnh)c-9WA{3@}p~;GCDIdC!yxIFHzd_5xR-mUk zxS{_oG((ncvgzx*$qv)ww~E$0ryKJ!KbeP{<>h&I<^B{o*LPk*?tgN5%56FtWqn>Bp94B!-96%F+2V;h>K`j znD=Si&f88vdPCo8u>fM%doaoDyoUwyj-U}VH49n~dco@#5t zp}oat~$r174SEHNdORit3UarK}nH}j5@STSpB zw5uYfIulXq*d|C}64r8>;4z-j8(2w9fb2a(e276IgiHH|sXK~_f@Ebws5X0@gmeDZN z>e@pd6$;2h$PM@G&`c)2YRxm59)ZKX!1rQG)ne;@@EF(xWZzRPp>&psQg{CFu>LDA zqS2pH%p-*@2~q4D+le$zf)4o|#;+~ zkS72jy79+xvT-KO)io>{*REr>Hxkxgx4uGFq=C+6xLgeiYEGB656Fkis3Q;;2OHi5 zC_QL(3p)V~-VjhXA(`d_6^HuTS{*~Qte?}tYZ^9(xZU9eIxmdtfNNa&_Tg@W7r9cZ zCb0dK+h;gEzEpK=RgG40_^N4;pd|zNn+*>-AKRy@kY_X4GnR1q8II|E?HXG zsUZ?HLgH`0Ds~^}Lug9CmG!*@V zsE1~8saY6B@<}nBwSMB!)SS3mnboxiGDzz1rKfu+-6Ppm<6d$4I!tPgE{vi~6w%=W zZz#FXO3p=atXE$|x6}myQPYLk!FkXX#695lSdgy$Fx8)>hcY29!s&o{hHP{p3Lk#tWj`K_yP%;``oVsWO zP$ge9V%iM^gkpx%d(Fl2&i6|LM9A~HkTrxX*$0j@NVt20K|&Gb6TwC9rw!b z(223vMw-frdZ@NdPPt0~PZ=o`vKf}Di9uO}xgmoRI;6DZ(4jbAYTsPUvAe_jYt<8R z3+~%2n2+s~CU7YJ+zZ4JCP>a;iHra-DX$+kaLEX$5I6es)(3t{b$>7#r$c&fXG+S* z^Y_zDwl;5Hh`*zZrZCz#W6ld8B9| zNhM&aL>EV4n8PvAtPV$C{M#-KR~BwbW$wf@YUzHlC#I($$I4~+#V4CY$2`24+MQCU zU|b2o^Qixf*i3ghr_%%k;Ns5PF%slTlN+*l{Niz0d7x^uM8;L-2pAt62QvmHFs$B> znep~LJpDlJal7;M2T_bZCVk;BrIlzTkDVisXrCRJIz`K=39t29o$83%Plkr62X_g* z?32`j8F>`5qup@8JQ(+iChCY}X5y0pEm>*+u103Jp7yn*xOo~9Le7t{Ev{cQ${#rf z5o9o8wK+54UM7a*nIf{fTvGFcoJf`U#L35&%)Qxw{lOGRj9d@tTeqcR?|Gf&wXR)xkh=&-2L~@#Uo0N0jmLV@>$-6|;ou5Z~g6k4D zIdU4f(R(?au4{_FT_<4%spxSajeyVGQ*2rw-DB&Ahdm96Jsy*wCKP_l{#U5a zAw+KBe0fHxJlnBNG#Cs!G(cX~$S7TLKaLdckf3i0!-d;v{prj<70wObLPCZ3&kNwG zeXxrCnW=@t1;)QV*()ZQAUE~;3Q#5yueYtN;6+v`*NGW>GNn558qp)a>uDHj4`2k} z=Siz96ObN9q634Nfcz?-A1UZ9BKq}3xKr2h#4*>ztAxv4r0B_u0Fh$?nXMwPdqfV~ z%;7o8_lY|$O%*6vq>=a9hEPyDZwUkh0D6;*h~i4Ubu4$oLt$hZvfJ!*Hn8G78CL`y z8^rtxkX(mayx&LnlX1s8pAdIj`CNDndBSv->k8V%S(h#Vy)V&lDv%Wow_=b(CCxH1 z%U#MFc}32$x^Bkh*pYm~SOV6bMCAq?vt(CBOjBXrHXR2WW^GYDmVXUigar9~`U8UW zprpM|;8^oT{tz;3A?BC>yDE;8;|Ht9Wtx#3v;7|WkPW~3({qRWZx5h+fH=|0nyK-$ z4&zoCeVi;e=T;Y%Fh*?cy*rj5MepaCWs>Ca^yO(E-bg`=WwCKNhZ<0I9(vXrx$8!0 zEvb&PJ+gjYL;`6Aa@o_xfsk-GZ!?W(ks-N=rrs5_WOiACAS6+4nw~fCGgekK$LemP zu`(mP9EI&-qq`%X8oAe!x*P^G^%__UGA%x{2bG7#OIZEVw7UsEea8Q_-_Apv_!Pr_ zz)P7{vFjm~?{3EH6mhvk2T=fSh_!9`;@J?rJ<&_^P+{bp$F*xK?oyJOhLX2~kFh{6 z)Z`U}!2!TY^+b0*TbCoadm6q47``K5cmlJK@1*t<53YOO@uLtOugoEiim$(dD3;R# z@~}{aGq-2gth|gfO$$g;nVlX0Pxk&RdhKI`&|96Yo_&pkt##&@TzD!d!&W8w>Rtv{k<4t8XXnYZ+U@V4(t0T7Pp zwnY<%@Q#`R04C;~u$Fc4!{y&UzvwC>tUFw{$DCouB{q&9Uemc(lQgqzmXlS!JFpZm zO}3pj@0|)+KxByqAz7diX2$Armyq~aQ-Dd+dH!gH;dVJ3%&g4b&h38y$VJp7$bMNK zV}+^_-md}&-0qw`eZ{1c@4SEb>)$8?A^t#GHqejuqJD>NFhDVca_7Z!;*KBn9)2?L zA-A6#+vM)25ceRyov$M3+To?FgwOw?P>mBB<6k%|nm}cI-k%s@r6Z_!O)!v6v@>Va z`FIUTFW`4h?_CN~#odMb)6>1#sq2(=^lmS$v95uXdd!BOO02E3KUdYhf|qYhfF-%M z60zz1&>m;e{o?XPWzEd5=xN@!!!He0q-i&_>Qc`#he*3`WiGc85eGUg^Yy2kGj6{S z9Z#t7G!xO!#1uL0U;2P@U7tN^8H%q%ywTZ73ko`gtMBgRP|x;moxLup(`6g6pX@oG zMrq#CB(|iJpND6r%tC~i;YSGJ(g!?b1iKZjmwAdaLV*vcHBaK29|Ypxb_g{Ex(ETr zqV+U#DM=YdNv(}62paRl!JOQsCc-|C9$EnR1=!>``$--laimlWz{%4ik}mBAN@gi} zs~VpTLNJSCr)K@d8vKrz?%$C=SV=`URRo=yya*4!>>uFX(wv?B>XU-|>AdgnNgT z&&WT{@gkB62Ssupr4;w8Oymp?;l2l&c}n1I@p4{%^`)%ld#o~xeKidka-Ni+elzwq zzkM}>4MMpSyi3Q<%G*`ON>Qg0RE>=#ce|#H)LgWCgbZ~@2u!uXixK6buFGjYMm!wb z@cQYGP@T*aXM**!59dKxcNGl|Asgv1o-!}frk4ju7HVu`-*!zG%gP3}q|VpaK2#XK zg^YH077A1GzcOjL)E~^jrhxBp3osMA%FD1zJp7c&R-yR?vfygPeG4Py9L z?x#4LR&AvlFQ(Hb+Ygxb2={7J5?z<_lZFgx70!niVMF?vdG-%!MA*%HEkHR^&>0$( zF4?vy57FhiE*Tc?-&}uySe$KV)iRPcTtK5R{o->kc24jNg+lK& zY{21;!dvXD=kVCJFI!s=S3F`Tp&tTr^*Q z7_Tp%m0{KQfQCljT>a~bCe2E{!MnUks&%Fzd}Pb=WgKAks^FR$mM6yx3_-l=nPI%u zKT;2HF4cPKY!=zbxGD5)C;-P(Ek`)CW6n7*1$P7orKKGe;vxRM_SMFw>vk#Lwhlef z@!Bs}GcMa!0hD;nc(HNCV|xb6il!U9szkVCrgBD{^}NN|mBV1mU|$UT{v(itp0D4F zh)uLd?4aY+h1ognVWPvub^AO(;_ewbUa5jjFX#N9^Q+QYLVM_;QEDMB=My{kQHiP zT<&5lT75?@AI1dw+7@Q4{NO-E&m;UqH&^4vv)jTXT!(s%@CVzC;-%<$`=Oac%yLBk z2tC)$P<_xs&)QD8d@g|Ic+}aen$~h7RPbvTXvaz_y?wBxw|fe2b!1k$`|sbEEP(B@lJRzQ zjNoAVPMfZAM+a0)NFP)cq~A|^$jz3CnKZrZ$mZ>DQdzbjLuPglmdQIgThhC97s^i- zj><=Iuhd44_g3ORs(F5_p-v1Hz8c~~V2h$Pgr46K>aN-2>aRnj9P5h;W)sRzbLyB` za3PNXlEC;lK6J)^5A3dtm0aECVe@z+d^@A`J{}9ERoBvjYb3w_5Zl?WULjC`P$I1I zZtFF)ITq$RbVCmz7+}OU^kBG;PV8PNR7|%czuBw6K14HnVf(J#1gmPgMR~9LG+qAT zAVLsM9;G56-)TF>lTUXH(KV4EGwDF_Ky2I?&mZq17^dX91b4ZzldwF39j3NUiU^+f zKSjs2IAL7QA}7tEeqh)NFH?YK3LlVdQ&w``DupMSK^;IC-4Q+K-pCxc|KMJB01Sbk zE|S^oh%p)!wUG_mTSny|cJTL{%&lB9d(3O8^NWu1JTyEu^b|>UWhGNk11Y>C4L;lv zMrLQB;2s`UrgO;ttWQbgvHRM)3~&CP^KPTBfKlV==-nqX-GjmxR_;frf`}$`$hg1U zpOMOfiw;O0e2|HEBu+i;g*Su>Q4yk?Xu42;&(Q5^uSZ{^BVzCKESMwy#fwr=QN06o z`nnk>#K)Qg$69#%b=?9c?BF4g6hZ(|_kaXeHN|+zjEzfftWgT03V0r8 zO5{bYC}|InTuSJElzHS;x5eSBgeemX#>TVyj289cCO^M)xybaJJq`|KGw(r{U(fci zIB8**HZD|}t?mNxKW5Un z7ey2)YMtGyD9KHS*sOX%JTbLzHxzs3+*L`|MJ8Nb@TG`ZHhU^ia<(Te4E3=2vmTch zWBgP=j82*e)HPr7&1=V}9@+-d7~i?mUop(E1q;fW1cAGN4d+HM`AF^kH7IDU3^wXG zfMMBsb77tKE;1AGe7nirk=XZ`pWB*Ipw|3eMJHTRP5GcKxr&hAw0S}Fo&?A}V(Fi0nb=%1xI5bLT^=Uoz;22@Ru;>&)h345>q zfnSTj0{7lb9@(_xpnljwu`rLv_6bgAD?w3Y^&B2SHv5h7HtebMG%U2hqixMBqIk~J z!(P1?XBHMX)Fo1IqN@yPj?;rIXwDnrQ}_jqt-e**Yp#tZCF|tkN>{mfpMgj>~B7zF|l_*Pso+_euygCXRq?EFxj z4}7YF7F|WuaqY+K>fjLKT3W$zVbXs;-KDbWU1)5wICM4JJeQSmlpzIkw1gw>(O+l3 z8E}s{NN*FDme;st{o>5J!h6#y4Jh0cgb|y;Pgb(IG(!)zyU6zCBusnL*JnlDm8`@w ze_?PD4LRR#a!fW_j#l-;%5SoBbI%bp4XwUKmPPWsDeFA#za4MIe2WHTVUAxey(Vws z>zO#65s)H$!62SpP$V)7OMsjSR!LI=)Q>6J%Y$9O$>XZb%?v@)>=Qo@BqrDgPN07> zfuY-XkNH2EIz>Hr7O}^FB7yTP4!E=DJniQ{O?VIY;~t&V-6@Di z9eU#gM+X!;iqCIAP4ahHrOqbmQ58;qf(zocI-g#vc;+0>2}&a_^zs`{W$|H0EF zL!7WXjEaHYan9<`Z7)l#)hyFXAz;RbW>E1r@=oJotnpq}zDG=(g6xe-RtZf_dxeXe z(G_51&%(SV#8p-zO2V-J4|8d1wmm{U!qV5U&7%y^Hf>Kp}TFGB;~WOGki%Y64t9*-jI=IFAbb#&>;@4&p9_fVGU(*w78rz^Y4Tu zdD3|Dpu9gabY}6wg@pz85?p23;I*Ay?*8#YmEGg=`_Fyul}A!hg?e{T@e1RXbt2!* zK)c|$-wO+N@F8#}n3YNhB>f9fcmS>P4~hc}DL(-o(R|~Q2bp8I^k|%$3O?BKWPNRV zz>zJ`cUkTBkoUpE&E57S6&J1ynqPeutjU>*H}s;9WEmI#u9==tNWM73yNz1pR1eS7 zkK355y!L;orwdQIQ)n8IVVoU(@1Je!>pefFt8tp3_K_&>P0D&6%pxM5w*6*9wBh1j zwYX0t4D0SD#?N%#UHSH{l}>5LzV-!%d|!U; zhz@)&O4=+kr`cQjsAm|zZS*;^W#>GCgs0%tSM?7_eFh-O9v9;V`ChM_BL4GM343D! z#k2#4@+nXQq!R(KYF2=sHiQ(t3UFu3Z?|(S4}6S(yt3TQ&CQ)6QJ@O`1(%QEf>|Ny zNH~KAKL=3QWgpK^CMpBD_ex!}%3U9pEPC0F-W{xTiW3w!P;9`|=*S#f9slsN_C5DL z)>xFM5a{pXE9AkPwh!G(D_=Dgy<>rpuKs5P{iTnS_eZQd7qNHsH~n*0i&CWZ2YXw| zzP7}zp&0pJzMNlJrnqo{w5xX*(z1V0e3zs6UxEC&63KwhDBiQ4J1>#q`SK6;LNj_y zeBeD&dw8m2!?_`^P&ML6fj74E|3T%};Zk>v%v@hl^)9vetrS+(%;IvnAUvz@ae{g7 ztq|J0;4*Gh@c)lRjNfyZ1Wo7ZsT#~_fLalnaA`TumC@*1oUR}r3ewdhlO+?b=*DwasA=l!2b>WPD{CROqQ%J=Ag6`~0?8o+j;7`m z++G?kdkzAvkQ0ZCO8*1@)=kfu;qu}kyBe}S3?Jcff~EsF;l&9SdV1SDR zgTgAl6XigoswpA)gZHrsA2*ia~N&G>=6=ef*TXd#%=lG*?J&zW+ey-mK zHXCQ}$Hf=nsBGZqaf$8rSC7B}=&?E7th^6Gm5_KL^L+46tkkXG6#QV5IU2~oWaHBD zifY&O;N|><+lqE%ft0 zTe-;IZm)R~U1ngvzdmG>(U<-9?&+%9J`KOw8l-s9HKUGiMBl5D5T;1&EkkVotNEJl zf&@YgC(nTZRtQQ_#f3jcx5*CR6ifev`i&6d2OK3hdWL<5-@Sd?2SOrT79<3gf<@8% zDTHB~6VVtq#S5xC1Lz7*-jCjmvP=IN2%K&}cb7muTIs4}k-LGhT` z;l8hm#Y|3RKxd)+9i*;@htZtJ=3X5v?`{x|RX*8ov8cWc>O3gF7!5%gb`w{3h2bn2 ztBA7-a9{iQsF<4kQ9-ZCrBcx1)dar6yWOmbKL^Txf(hwTj zg-IgNCkvXwdQh@`jI6N~uIXs%%*v%lTM zJs5;g_{2IWaqTz_iX7}@c$D2rWpfeuv6@i$zhvp1U?n(XcJc)30-l#@P&uCgC6ok9 zORxCTavz_A=Zk0|C_QLED#b;A<420P=&ZPXb}AE2R(reLI-;c3-~mSU%ex4#4YWyx zhKwt;fCxgIA|TVc^_-UZ3ggh;7k$;LVDld zfhLgxjfWRhx|NE(j>qW@$m2h4C5a#)2}k?F$A6s~MoyoD+6ba`A2(h>#0~;YuF6X9 z8po&7rND1RPNMua4qiLFBKRQ!K|k>My`QWt2Z&yPEW~jr4A{y+X4=`0>CAg@YyXK( zY9w6OtHXprrBAW`ys~3&f+-UC44}=hL@h9Q_4!Q7A%)qiWcyLT8{n>m1m4D`qiEGdsCl$zFbHhMalruWrpcfl zj#}XpCO;?Npc~zaWe@`hKFoVwqr>Unqo;xG&lB|W3_Nn6 zPjGTbgz^h(yl)9>#d1F6H>?39QtIlARyb&Sla-Yty8)uszz5_c&yyCD%byp>U)ITltN1t#MSHGZ zoi!{BMMaYYKo~bBE#vwhB~-JQ4WhZ%eZMUT59135Kn|m`*etkue0EOujf3I@Ed(kY z`RlO_TRr)|AKA8^D=Q;)B3GT6SAoml1H5dy^}Fgo{83x7x=4TW#33kWjIw z8=9>l<>?U=?`=RnTV8js^qUkpg`}r1I)z(1>9YKO>hU-hW3=3NL&oh}?A;e&yn_p$ z!PT$Mqe~D#ZXRY?hC*Vlta(cJ1j=*3E7d1XBN2P6yNfL2F)s)0&uzJ5Gc9{ij^JHdboi0%~HPWV*pp03L2byWu zws5_*(cIjNE-da!`KOrLw{L+;c3DT{-D&YAAX8R-Mfwi~12^PQA)IMV8@PpS0c_a( z&&(G;^W$*4c}qxb+7FPLG+E8!y4i+8XUnany=E5uLIa-lY%F8EnGaGD}Oii`LThmHlff$jnlu(?L(upwjeW6a zlnLs4B@`|~auX;kX5t!d46~Qoee1?sIw=b*%jaUPO-#UH(m&m-BA^acdsl*HmP*|E zgfnn}ve&^&H&^{$2_llgtvT-azB6W9>SSEM{^>fi7mQJH$~i-L@A@-eVl}f=dlnTG z6^jt$^K8{>K_;MhPvz9_zER%Hg{63<3Qu%Gq~`E9=!zN6h11@w=Zb z1feGS<~T|{A@fozM5?g_;1FFVE(WkQ=ocNrcPe7C_a1Lf%BycwC$1 zP#rITvr&@B0sPGxnq0e!4V#^GchbmZSIx!A3)vz9I>z|5adle--!#Lye)#W4cPur z%Gdio?&q=vYkMBjs}RlBEoY#6;b_>qw-l|3?%jMhU$mT8P`xAn-(M0ph4?V?S{ZZiY8> z!V6frrmwiorvN}Yg)Ni*NMgYg-s6%4(jZRn|fwEpsZJlYa<}MRXD+F<}myi_2c4Tmal>%2MMjlz+; z8CJlBA)&%$Cy$UYzE|=UbTw?3u3=m50el!s1{E|RUGJXJu-QWkD8Ig3-47}8tljNX z#bJ+KRa1~-paII@HUQBU4u$Q-uX>F{F#dB}?rYC4R?)T6d&&;Th8NIAr=+2RO@_)mF2e?+Nxdr!nNM1wP zrk$bzjoY`C;Q>bKp%VYvl7Z##bQ4t*-dTOyozk(RTBpa1wRlh!%{h*RURL92lcPk6YL@vNvk8|XxQ zDB7b$fJ49!enIyF(FFRTeKVPbKx0ro{JSgQG*R08H?7etfH($^V0>dUNg=JUgv9)# zj=I+b*Mw)vv3Wf_ovwJ8+_e&bCzB{NN$PSB(C zX=J%Qe(2SCx?k%I<2A!JXg=yB#T({HGrbDVh+ueZA=HfiAJg(|`~HmbJ|n}g(>o;a z_IaMWV}ietQ}Wx68@p8ooGfuaWMM{V;`$@0&z7up&?G|9b$i}L&AIMAwPLD&2)|)$ zu1=i7$qyc(m(StU&PfPeoMq}!u#bn$-P~vj+A-TX6^@2=nLI~R{eiP!aivr%Z{#yH zoTzd8_MM)X-|!MP0>pIxq5Tz7V^;IOFUii~8I$5xBM!b08Pz7rilxTshhPL^XFHHA z@5Mw!LgU>yR2dY1Xu?3h)*_1D4;DO!aA7((#^v9=79Myym`GEK3`6YY?@xV>Y#tTl=M%_OT#P5HfrO*<02z-Nsx=!iRXWX5t z|1lYwXR2EBWU0P`{c_(bSJMi+){sr?VFX-Zc25-sN^`b8jEfInYWt|GDLLhUK65tL zQ_#77o@EF|u`ztVOWj*`o^~gGTDZKihHaRf634*fI<&)Rygx(k9bD^@ZwigsA3p{~ zGa>`}wB_4N#Tfoo3Wu&f{oJ0t+Hy*tfJ$QbwMZX9P4}6;rkSt^8=H(u&_W; zVW&P7C_E8R>$>WqMj;Qbu=}e&MNHx7+8cwajveIguoXxlu#A!?=$~?F6O>3R?w~#G zm3*B^@Z}ubyl9~1VL!M-(U(%VIsTGDQB0U_+RS~C;a1H?qhz?FgzdOgR)iz&dR)-$ z>uYWN&Yj^gwKwV88j_6cT~3nL$ElJ7PM`Y*n|`tRsb)8Xev<&+)l{&B8vg)a^M_k1 zW>rGMk4^)9_n8-Nj{J2!Nm$$MDc#Lw>!;2!p)||m`$T=gmQTW)`p!-7oVN;me3#!n zC$c4d$7YOJBI(cOy?iTnn@xM^)-Q<-)~XS8E3Xj+-l^UvYv1KNIHm7fbH_-#XT&7W ze$N46jd#l#5WtLhBbwCH&;Llmqe_%J4!V7YjD&|%2_a?QMT_MPoF4+7e0yWvefv>u z`T6PC18>_Vg!@-)`vrGXtn3b(-->;>xo2APmGe4h*^~z=HLNW`+{OwcA7}wK7VC$22<~e@-%hxN$X~(3C#0rg zL!{29pR%hn%gWHHs=y?IGwA50;x7+gm2I(AuT45e2Xm;7R#iATYFPM4?2ys!Pudr) z3Yqi^Y>eARgJ^CsKtK`0Q)p`43R${gjEe#1Fz-Z++tp(mH59$@Z+6>}TYd9nM)3>gxAm3wG{I|nFRNcSmj zlpx-0&cA>#--D>_Ot3l`~yg8-uR{8>sw&q(Qa zGe}C7oDzuRn|F|-@2f1l`{g}-Zz6k|?4pAliO^z?dW75qq&5H(P6c|mU~b9NW!~DG zrdJD$`^1DjEGL**h5xSdo@YvweY}D>(o9yE2o0f*lJV*}96rZ+xC2rYo7P${&00@s zMhg74$@>0EM8`?zK$HKdDF@XGhJ5+HQm<2~K1K13cr z5TRmIYGT8~Z=%PTVLHLr=c`38@LQ}4hj(yFS2~GT&3E%_C$jl(zm?}WI|;4@Xe1Ta zAc7HvT-jR9MBZ>#QQg>IjFF&vxbFliWj~Vcq9}Mz| zYSx=cFJ%U23pczMR=WBDJ_C=Lan0U6(aF;9=;brh`)WZ5m)2fIO}GnNF@~7VwbzW< z8gXdvzROF!ifLiQ&sKh`4~!qr1n2B5c00oPvof4gs`Hb*p-#a++qof%l=^BH{85rv ziljBx-hU^o+&P23%9g{RDD|}X!a2L)_zzj#-b;GCLOmni)7aU$?!^jD8eyTq0(keB z=L&2jhFe<@9H9nMpX2?Mku+wR#M3ryNp*-aa{Lu3noa%Mho_(XGU zItOBGkqS}sfD!FDcirnY?Z+VoXl2;~uyGtLd!$dRrqffkEQ8W+RM&~B$ zQD5Z>k|nF!IF%v|($7-%I+EGCqgJ!G`m(5SpStDsNWDUhmt@;9I6RyicpayNPPc-W z_Ma@K={5N6%?WgIl3IFSw;MO+yYrRFSt~Wsy}m8740u_;?Zql<#r0p;^X%CWn}tkD z>+ZdnNG)dbz{S3E^-SW*Q3im{JX!w5?Q1RsR#w|Xw_1;jr9!$a`uPvqDUU1nrzGEg zL`z7@Kha1Q>j(v@@zdRQyI39*y_y9E(aG`-PU2^1DL>=U>b}t8`k{5<7rR>mFK)ql zs3|nncDo_c5td+4;{jt7(XTE7B-|FBM8*%HX&$eew&wb+Gm_FBb2L+W%byW+yP6vc z*C?&O$Evz)3%vL)K-shrg}{rf73f-jOi4v`$*9b0mFJdL zkA{!4!k%0Go!k=*p?uf5hw=syI{SCz04pHY~nzFPQ%&m1P@Wbfb0e6Ifb(cL5wI2IC3 zHUhDZ;oO)FZ1&T?b;Gj$_dr_(IY4N85c2VMpn&Y1Q68EiD-HHNqo(%eZhcKz3ERGy zU94XeN7xTM?7xNW2CD-<>m)8kmHu;No<8$ALd+H9Am1zVzCdHCnf(vYdP{=lwr-LIb{@meAw{Dft?bFH5Ke~HLoih%XpGpxE+d5kp? z+32Z2WWX!3vEw#)mOG1Sp=a9Zx3(tFMnrLFcc4F$kcqZk5^mrrv~)%u>Lgu;V4Ebo z*`;Ai+$B8b6!VTY&Z%)?mo{r7+@0!T_r|U0qUy^lV+1FvcVnf`#AVC-W>3^IpC?ut ziiCyZ3kwH(foHyW94Oeo8y$ATRa43Lnwq{-QE9z>0WN@CU86rO6a|>}C^wX^&fU*8 zMO3R(8DL@nU?1SARPV^_YN?oUKg?lQhR41`z~o2Wp6{1J$8&CRy3hVu%z#55V?C!5 z^D|cKK}_`Xq&cA%G_1}~w-L`4>i1Ve=$)$Bt%Zj8V5?vQmSS|#)}u8~a+$2NR3_U3 z;3|hqfN<+8@Gc?M5gq2RO(mp|+F&M+z94un2)HJH1i^`|%|7m&z$T(t!MqWHik{=1P*b$6D>P1rAT zk49|#Xg&$^9x_o~ha)uA%zO3PabR*9u}RF=k6ylhs1ihr{zmD@iEFbw0%(QH_$|v0#CWLGlc&BakWjFHm}vn>y~gt zuSNnVRkBd&=y`bekz((eKj`)I3UHovTHyrsbPdw(E zhK9)eG5GWr(5T()Z`H1Q=b}_u=a;urr;`vSUz8v;24y@QD0h)9eT+(^wanwvSxUm> z`z_gXZQa$rUV!ttDZc)2D@P{{9q~AcK4NDf$^RFH;;*(OIw3Wnj4}dF(ci@dO_MW_ z-CB8yk0@~81Q=e>CwG2Hm$#>4i~qha-lU5=on-$lG8-Ivo{k0^{e*CTi=bi zp44lP`G5p!IBabo-8}IDlOI}2&J1LJs6+yjK^S7Ck&D^xj9Uo#R4Ysp89&#SBW{mA z$S**@Req$?ovb%mmwOU^jHMhQqIMB%2v^wkY9-ndO=hGCUJ|Npo~1}|s_8hHV3xCKm@+C}_qdA? zc}7SQG+yFUHqo>Jlc!I|5aq=tqJzm-n+3Fz9x$+cHTkIfG4Nr#=_{Dbe&F$@;! z}?ur)9`W+82kV4(5iTmbdrDx+_baGi={L?4}-M09blC!+a2eg7OSu zR}?z#c&;^RQlKk7Y3jU-bO`N;XgRD&@%#7n>Yw(%qd}^`pkzE>xnQ=P-GSWLJkIk> zJaIx$KJfAy->z8^+IeWwzqhux8VMMgb=D)~TLDWa-1mR?w!}L4TWhk(6*a~EbCK<8 z?$^#d*DXWtX~Coo^&mvRJKR^Cfr@ut>&A7~twn9gyoGFaH?AwmgzaR)KhQGVU}Zh} ze10Dt7QFPJgGG+WC%|Wcel_X5TN`uk-d-&4-cvEfUX$*W z6v8);j)Ec)*PlZD=?gs(6ZK*j2!VEPfnie<8k*m7 zU8To?gm#Aof#y7VHw{5*(Vb#lL~Yq%W;gnC>C4G*gMaRCZM%BOaid9V!^t{ZZi&vg ztZ79y{GVtrtmz z)(MpH2{8f+ld?0{+_FcE4pRIM(YNr{$p}2xN@LhH;}b6)MoW8|)Q_H=qrXfe?1VI` zbg;z;-ua5!pAM;XuCk`=N633a)-H{ZK$_HjWDqA;loa6!CETOZ&I7scc>?F-J+P;w zNs_$+TFE!@IYp^10*EPw4NRh;Uowy8%h|qr>)mZS`lSTPVqPEdM{jofH7ED~F11v~ z4v^ABLlBa@lIOY@mp7lGhYa6ADd^lmMLP$|*bg6=&U3SQUwOJjfFB47wFSZTBbE#*AG}JVJp60qTi=L{S2+B3^1Is}xhh)QuR`FVwlJFlnKshy z=p+}m}4hgrJ#7Fi6?)NqLgvwBLf97uFpK5i_1tR480 zfLKdisp#daMwzE~86?maEI8K!W7Y?_Bt;bgG-JpO+)o=(6uS55>AZUGXNUduh2Ktj zdOfYH{Bn%%MF}{o#qE)>^pXs2;S+AkG8N*to5Vlf$C8}A7Iutp4o-)>82Su({_bSx zLoo|4D6;Qlp``@0j(P*p+oALeb_0soSm@|1rwxl@bG1de$S^ysdFHbEz15F8nog+5 zruqs~MldXa<9_VhZPE0YPq)Z$&6^qd*~rwHbRxIqSpUCr)6TCc62e&}=hi23R*Kvu z(#Q2OpQF63h6F?j9*u|$Fqw;}XR5MXo0@7mNBK*RUq--W){F@u5(YaowZb-Lw~ZA! zUT)iz(5L~4MDpo!BPgkp?r5%sm!)I18!%1}mwHm+?5tB0E2Mo<`QSB-sytWR8kQE$ z=?wybyXBwgg)IcQIHedV{DzZ6J2T=<-Ak#U#p~9Nrus(DPSHx4i2@OIIu8x9OrqmFQDsd+P zu>H1%(519asEt9JE5HAXI2OhW)<2bIyoi{hVzBG1rxWu(c_C~-J0imh;%MY^ zPiQ!CS9>@iiC-&ja9+uSTkuaFBpkymXY>3O+%R{cgsv5CKE6(S=B`q)N9~j_XOc%Z zT@Lc;2Vn$l{D3n-I#|7h0_W2u7zAoOE81eX^>ro1p~9(ygkmJh(@~TrL&ON7*I$PM zwCMTIYF(Gt!M+*gN<;I#&XR=Cp6|*MoLu*-OFEsAaO0G(lY>#OcPl^B3*UojK+rqu zY_DRk!$!@$P&3w_13(O$zFJTdw;zNI;O5D~5a0YTMoC=aza0cqhcih>FFz!u75D_{ zGFPyx6Sc!Dm?#ca+}r|OG6-%Wz2D(>9tc)tVEU9!BXhM+eB<)3K9p3dUS2dDipV<0 zl=6W3vaN&5UC}JQXfdnU>_0X@d*$F0F`Xw1qTttWZD81GW6gQkmKsLfU_C6fv_I8- z(8_qI)p2%R#8_ROX{sqOl#v^3fDl_lytp4zPAwz=DYW(Djg9`#^uD<6V7J{u; zEv`axUdRE&m{758o`tD_dN3mjVykpPMSTOb#rl(VKDZ>OyR36=sJk!(?RUnXKYxBh z%iRw{i2t7K^cH}`9SkLv5c2hzfSB9{#xS8a!>0`}d}4RuBDJ1#CGGw(u-D2MeY_zj zqL(b%7R!MMDzEOcGKoiN&}{yOyAm4hkKTKDndfLvnn4rwBXe*2Pv7nnHT9i^g;`E@ z884mX$%*v@DlN63=?6jy@>#p%(!62sxDb96XDOwGV4xYy54!E(;IQq;&d!co9H0u+ z_aBD@=DV57M4+73floPT7$K8Z>$NeIc_X+kz3g_TvK_>WB=^2`D8K&#P-uGMhll)C zLqNWF_ z-j%fbsCx^?Mj8 z%_*D#j8rr=D{C<%foU~1TG5F3*NihWQLQ(a8d9FH)>K_AUgOebc?DBTB6}5L!dVQy z8d-MOjSXdz__r@~lh$r1pfGD8(NZvJdA(umCzAX!ual?}!!IOe@Jr^`4J1 zx;MK}IKPkn1&=ZG;SMQysD;!GwL+=#jVNk*<3DQ*OXyeRetauy zJ?#{}N_T5(f=(`QDcpl$FSu!fuY9jaZTM3!f|JP+qm|G5EVUrUORQ^J`7q84{Se5GbxJ>W>1sh z{zrQbuc&#Z9n2Jh zPS1(Fb5wzb2SUc8vwz$Qp*}*3k`w;+#XXEEZ}T}3^SSn3NN?27O-xsO`bLm} z7rhThEpE=+z(|?(AlxMCdN6!b42F>Z{%h$yL-bGoezFxT;WYjUM!;Lb6w<*PK(VR2 zq0E-Ys)}**Z*d`-qaZ|w#I{`MtGKyMB5w$2f=DU!#*LiXbvIl=QC};cF4h6prkKYk z5H2HA6&rWECHrsrKSi)j6xC?(>9>X^KsMW98{pw}*i&7w`i8CyQ%sJ;qh6_i#C5J! zeLX!oj4>v=EA;8#?8OYpxoh_N3kPS{($HizuyT)xgIZm$7qkX9h4 z9LE+M1vcA_8PxEgGl%ZG%^cw2}i>*xaa7;?J? zZmRyOsel6eaqa}{yc=rwE1B>g@Tx$iQ-_o7^B32NR88t^{$J&73!P67J`C$cNx6+t zD5_B?*a$~3a8=mOnaLsWgRMvKdSj+YbaocU9#XNPTKww*)>Hil#iq&rSNJeXi2|wuPnE$q{$0)9Kd-+gWpJok?h|WVLLXChX7L~ zAh()N)&*Xjjy<*Qq;_wj{^PkJF?QW7)g)l|&eB`%)UdNk({IAW%Q`u!*qVhDEbdkR z2o0g_u4MRI9SW@6wZ~tk`70e`TEoTX>U?srnBfs`{N_QUu`-mPCQc>k-r5)G_R{)t z!pO2(nDv}HuGYl?AgeG1q1>yOe(EXze6f&WX*MVf={Kf?1x*)hq@QcK;y1&xUXICNerhx(7F**hi zYEB4~nhX?Yc(j~Hp0u%AoL?YljThVla!yS<=E`0oA;~ly&{6FQ>m#gG^Tm1t(EX7A zM*cZ_w!eOVRNSM$Ky<$EYfD-fnbI_%@fA46>wuvv+5#L;ugD4xUr_J?4c@KZ3}}LQ z0l`|Qd8eiHT(bRYuO~97i4L7&9l)7qCS5jlV~^x~+!dYj;|F#77SsOgA_Rm>cj~I| zehjB~9(|NBMlfB5`y4E|-tqm3!Ln1MIiK0DQ0ty^br)|t0iMpC1(+?MSpids$TS?o z5!);R=VF6@4(4eBdq|>ufT>oJWoZ6quOb7G(?TbgcDCF4Eq-KnzMtbB4I4^&#Gh!2mN;;lP z&~hF4RiO~vYulQOn4B+uM*{?yB@NAEq>5VZeHg>o(;9QJH9T%IU@R1L-X>)S_;_rK zptYgld(=uscSbcZr`)WX4X|il>4V~fpE`*35f1<3LI{gPzMicZ)&O4B$n3t*BX5ik zsQKKL+b6m@=pbI!@s|~jj=pv+{PjhTaepO&E+z_m9eTydU2J5wN*J8zsbSo=<@XXj z#vG9+iy8efx-yKqp3*>)uStqFEc4ZRaYRPvYU36vA_E7{@44XG%5dhikQP?pFd*a` z_TAU#M3a`!TO%M#h!im*D1hdiw%7+Exs;ra;&q3vwd1Gz9FKbCQK_3vztccYRiYvMj8T1%X3Ljr4?X;Y617$7g z;eISkoa|}EpDtCiC1|e+>9VY_U$l`@D87Hg{mGhhW73Np|KsfK`LuApm4MU1)JyJx zu9vPVEsqSq;Yb)vD~NUw?TBrLc?BchsV)a!V6*W)j4AAKMxIZ@lY+y;dAc&i#%gNA2OreEp_7khb-HjNw|8LBDCKp@dLX|+XT8er z^qgL`px+9;ge3k-)3Gxx+Eh2AYdp{Q^gbKETa=n)`>Vdz1Wx$@w)&fAt>-#PdoiqH zN^SGhe4L=xTq@Y>5?+uJkQrV2gvfplOYHNGKp+jH=3zk>0GI-i%`dt;KIZA?Tz`=o z&S#G~>iQX__@q;y%AWglzcKtZA=?}8JwFH^TeW=AQDlDQEDq2>+1$||&A;DLZf#R- zb_LI}q3&l*g}<*}H1s!KdXH8N-Jh(!BAe{JKxeJ-2(^-1d+Syb)#dfskz=M4+fnb$zt5JJu==?NE_m30Hons1V@4XPH9tqTHUaMq zxK=dX@xC?2-DTj4`>eJ|&X3ENMNTWD)S;my`(50qx5xW7P|Xer(l9d}vQGm&3aPE+lGtV=|H(x^zR3uaP4Yk9aW%}5tCJ@DZb*rBD* zRz7-bJInkBD94Q*G<}&_S*}=MKu_8U8JXyOQNDrbTj#23DgB{7_sVwR#zb&6t55d2 z?tMN)yIWpcGW-;|uXSNxN=9a_;O$~BoRp1jIxo)j*ZCk}V2Zlubq_5kcelgF>d1=BcXTB>ZOLeWy=ZcbC72a>5qaZW8T^rd$c6C57 z+%gw?q-ph<)YZVCT9#nxKN#DjylyvTQL~{Ss^F^p^bb2WWg=iZ`!uZ*sf`t!do>;> zoFPBAS2d+&DUMKhi`#v!a6F>lQe=ZH{faG{`arJvJ)?=??$o7;T96YAkdPx%UAhE4 z53@EJb{b=Z>9>YV^%i?P10y`w(7r-?-}=4?U7+C_%;R{n^x#OjJBb4beO@BKa$ryg zO1Z&+e}IvbOEn_-TTksqGH1JBRiYbzjz$t^$MPVuetA%vS4^sg}%CPwj2CER_99yS-0*xD8=n;C0ykg8y~_~%OAXwR&nFLAAIiG+lc2x-P^O@7ZMLod_G=2 zcdjj5{YLO;SC*>#U;~bng~0$8>%+b4+Vd20$ALc(%=9xO#4n*r`Bxpt^==!Llq@vS z(GNh$zn36l9Ee%+|NEfIDR+hwAte~uW%a#HQ{FeZ|Ao_y;AH;y`gY3e5u~(YIh-th zKVr%6eQEMrV3I}Z@I^3MFLy~g^2G_*DhdgpYd>?Q&H(31#|<-d%1Wf>hb_CWMa$yB zAOoN*A(jD|arb=?%D)-k{esq2?suijujtSX*G0~9_nN4=sDQ4$*aGRd_jv>(yiPD* zFn+4Y35UT$1_?1y3$B3|LXp;N1OcJA7jb;z?z`&b7aVFkgf1G!tX1_}21+yb&Zo-r z!!#ZsVNDvgRF+QnQM2Sh&Nh?dEW~>FzgJD%zaM0)BS+>%w5@~BlZBr;M_pdnS%^~A zN{ZvsM4yY~P}S0n1S6z}iAG8N%s?vOU56JCgjU!1 zaAM#IRUC|g3B5?ArEh8(7yIbJM0tk*#6xu_KPEpyG|~Mm61=6FvelpS%=N+6e|&xt zPsgrw(zP2;ckfuwZ4&|X47xOfyjc&<$W@gudYfEI;P$##RcWna>05Xxd!Az7V&gR< zdaAURyIpchElpwh7^|y)Djxz>E-rP zM_vGU%@3!WNGfwm+ik=q!CruKIN|m2vV|oWe#Lw%>FES)8p;!RW^B|D(_Eb2fJE5) zyxT$n)tkZbUQ!apdQ1lqS#rPhuGw>8NZ=JB09|fb$?x21sU68Bp<{!R4@rY5ih-Rg zQ+{QrsfjAITN3p|uQ822K(Bzsn=)&bSK=cPxf#YD702d<|{+nqBD#zlG9U;zkCpWz#G5L*>=3 zOCUq{&#E9cxvD0R5p)7BLg4@vDZ}))+Nu6HBaH&XB>q)A%LS7&_7gITv+aVtio)9I z4y}+pG;BG>?JvwNF@(mvd2_WZ!yg$=eDR_?=g*+40d?j&dG~KX<}j!v^15Q$P8?sJ z_;%VJxY+I>Rc~m}oGL~d%*-G?GaezSQNk8@)1tUeqPoINt{W9 zZ;Jg6Cn_{+j-6@+S^_Z~FeU|VDW!WF@#TyUpbcqwa}+aD)@{Ag5rafQwi;9#c>>d2 z&+{%ERl9obI3{Qw?ds>b&V|aWhR}lJZM0q)5)YqF<4sAE?{c+8Xx@1J3(m5!^9wU6 z%fpiLN}Qs;A5A6osk(-}dk~p~v?3uQ#zDG(8MDoeclUCEJ9crFgcEjz<7nd6GlB-! zA08*w5P}YVHzev7ne9&=>xcM3yPK&wl`fg?u8)2mZ=_h@uV1_gA+{lO1I}kLEuwf- z?fyy)M;b6%#ezjt1xALT<&9Q`atY&Q&x-hz?rydqTg4q(g2&pj_op`M3!A;p(_bFU zd)Nx=sO7aZgU-8gQ6)1Wjg!ke$r2T94V&gHL3Frvd4;z_2RG1TZ4~~J($Y{ji|oWX zd4s7@m%$r&v_;PC@hUs6i9a@-{W}PL>DJ4j5`c! zo;>rR3hZY1KiYfCsH)bsZJ09Hwy11WLMaJhODGK{4N8iXN(m_4Z7T+_h(%)%(j_fm z)1V-o5+W_#@E+5>_w(HE81FmA_vicZjqh1MMD}*Ax#l&m>pYLMjziGCd9^FrQ){?^ z)3VOBjIpashmJ$ePilWC>aQ5s5OPXk7_8wbUdckU?&{&gN@{gcJqJY9_zV@Ea*ozj#U=lIhs3kximmzs|<0hx{Au2Ne*SS226Cb=sUBFQY`~0S@;&s=;14(D}ue zm8IyIit<)RF3fanqFy_)^T6{MNz0`d07E)yIt?ph=gyg~TXwpqi*9r{vEa3QV`wPh zwjeFZzo%H$V^&k0YReiYZ*|Z@O`t4EW3kDWVuy%DMMHr~VCYW^}VZ z^LabA-v}zLq{WbEV^Y{;mI;{g3g+8%b6uKWd#$-P81JT7xiI}>uBCa&=b#8nr$_c{ zj{==qa-H7yj<`qJwv?^k3r9u+=WqH`062;{l0XE&OFqg|6T!KcFVa4}HSSTEe(##M z$F#Eg5?2d}rLPQZ0~Vjbq(n0MWr%uv@sz^U)obYn^@-}+HxlmO9b&h@7oWSmt;yrm zJt8<$^>v*qdL%IiSVoy2cCK|uc(FSh%>TNg-q6PI>ZZE11=a z9Pn#@$`~*Ea5)KS=eRhzS^8V=UIdpmy5%$=foh#ZgQVL6Xs<$k=rG^p{&`-ara}e{Gws(;r zTQAUaVn~6o@U{aeC(58}nxdYQumb1TxXn7fOIJ5oPxVKxzi?k8h!rH;`wK^uruB#G zsDGL9k@Yw7NOe^w*|)Xj#HT!S_ts4$Ve|>usrK^*;}gydDR*cvSz~5Y;S1T~nsW9A z-Jezb_IXOR)H_-{TiF_HJX;nnbCbR&;yx zDenB0V z-Yrl#l{*ZJRE+UtCg;(gNWZ>tcXp2qtob7Q*dHwpeIARL0|>c#)oy&2g5`v;CCA-+ z;hBL?zHq9BjK68%+kheJ_;pz{S$v}Dk41VhQ<_5tx!lMg#{;7Et!s3C(tIdP7fU!? zyUe)(rbp_S{<1 z9K}H-fZh&ZVgQtcpK)dwox5+;y$_Y@3`(rDYDkFS|3c#0J6*vE9@*A)$N&c2+7Nf{ zNwv$Mig{ghho@(ifa7wJbDruC$Db@UG1hLh6gM%9$>r@OIG0CL{`m=%Ip?}Zz1NIX z%EiYXa-!j5bl~Le>NWN+ycaK%&v5G!!=?QNj`kFo2b=9g?FDS+AZkaLr zd#_EF*2%EQpeN48HCelTARTq2Kj@u=BA@w7mpar*ntJq}nQQ*6U!;W@R0Aea(#L&1 zZ~HYEQexR)KOi6hOWxUDUHIs6b+HHq=bd}u(O1E<7=xM3?8(^XXi2q*~#jCmc zq%E5r)|xi;|GWUz&}Ev@Z71YFHP_XBeSIxnv`Dwq%d~s<<}PnTP@@Z4wR~yKGAd_` z5(^6pAep;$CzHb@!w$evPYsgMK^)b5#^%>3{aIFrx12IOT38D~nK8XE5&T zPrGzU43!6@NDmG*fV&Wl{t*Kl%GJTzC3YsP6vla$>A}8x1^Yfdid$HS^pu?Unrl$4 zv6Fi+^KMi9`YQACB^r9~Vd|+m=^uYOmu=71OAQw?dusl6?9s+;qJ9~6%&3R?Ty>+xleos*3iz<>gWO7&v1q-Pu7Bb{uH_WfDfXhoxcV4P&0@BWt3 zW-HLSIppMs0T$iYNcLL6m1^%)jA!#H(s4Cq=TMmMo!S^f=m&$q zMfQV2-uDl2H>t-4WSIgulx+B-tJ^X^@bv|A`pryL)qcL+;XD}SR~*2_&nm@fZ-;$1ZoVATvodAIpp`?f8AbiejWR0_i@ zsDo`LSItllb$6GHJ-?ro=d5St@`FLJU5B)BYX+U!W5o3X`nt}$!m!Q}+>bV9OisF=!sW%I! z@C}@r+Z#lPp4T888W>xKylYqD**=Ie+_=X?&x!82=9lT3L9dUAPuaCu@)JH2( zB_AJIzP8Y8nS&!d_Wfw<(|f@${tM{D?Nm{f!9dH8<)`lMe+sZod+t>4UDTUdmr=2( z|G4IXh(W}cbt?r|#IX-d&Odwf4*mtsF~O5;_N1e!`(K2Zq^;@ZR`bfrDjIqp-Fw8p z?+TSqov*Ke;Td*}XbCp^iynFxdC_BteK~i1S-L@-g_qa8mxk&|(bf=?FtML1qOSF9 z(rYUXyoTPzT)XyO^Da7cs6O8o3>Kz%XHeGalBHQ+VatPEPSWvw`frv$Q9$pxPQvIj z`#py2Eq({(B?Ueb8 z=%tcPI)7-;h=#(D94v4V{U^@dN73h{<5YlIwh#l4V>W3_o9u4!&rlZFoJ2F$@<+3Q z%J@mA5|7%Cfeoil#qN;uFLV;Fnw&H>{nb%W`*|SOKB3iHK`mOMzKS2EUyp_@{Bjtu z|BOU!UHfPcTDx~&EI0q}+L+8v1hzeDL8Vj5(KTY6sw%EgqV}cig&!( zwEigfv|DATKYRKBQxkaywo}VR4cb1S^OPZxs;@tYQ>?L@?1f-O{Gu%jEWXs*MWk)B z57L{F@>{=Bb0q`rR4WBk+gcXbVSKC`w9+Nh`DW&*g4Fv-o36S_n)#qDXm*ggzSrsw z--V4^Y>4Jx@)FW+9hoofZQtsm=Nq~Klk?q*Mb7TsrLNhFq>(gvX^(tx_@&+3Od&Ov zlpLF7QnRo;5$C;DfP*ZNCUb{u*fU(VYfd+hG*`2ChSMX5`s{V_1_aRyce1uV@w^X*$Gfdk&S<2afO z)c@d-jOk32Cn_z$+!qf2DLN4!F)9@~en!Ga4|dZh4?}Q2lwjEX!KBvea@oG%O~iB6 zu&aJMn1o7`?FXyv25aZY8z_9f+qGuP)W)2U_kVr8(_+}aX!-6L*@&qP(c06La=IAP zDJ>!F##lSqJ$%T4`;}7KfHo|N% zIpin?fGv?KOcR!N%_{Jn>JY_1z4^MAz59oI@tZaa4^j50MVn;ovl-iLn4@HQu#&E*C2 z45~bqd1l`7g=z2{RsVhFSU&wxJKftG!AcZ9ojy{9_MJMZY%}K=an2kIleKia4-e_O zvIAxPa_2w29RQsI>Y@y~A>Ur!cUW@x98-oQo1l!p?oVnek*BQNDRMuaA*!Sz0s=1S zq-n?KnlIu`uf5F{ry~lRzJ9I!xPfBr*|iHrd)_sr&TZY1hgsP1!m6N$0ZP-;af;NX zR|Nb6JJ>T~BUOD+QF(f$)BA&dkph27XmYWH72@fynl6?7MNOk}t)peso88ohVmplG+qn-roRll~9aSn;Sconf z7pT}?!KeKr&9dgE1cjb~f=LE%m7f06m(%g`NybZDp3~cu)o!M68|Z;(<}t`Ldi(5u zI6|s{UC)nEkZ5MO&#boZo4Ro<*A6F?tQTj@vsE4HIBIFdozZL^Y8x#PKflTU!t>|# zWz6lKMxXsuJvq!Q0Dm!=%adN+wczs&jq{wI-s_z+FDU(!k?_m#{5OT-pNjx%Zmih) zfN)>q@R3nU@OS)Gh z9;~kpTiKSt#;t$`RlX{8m_xM)^tiQex&-S&H~u8ejApA9*kK5Gvj<9$>7`cu(!YH4 z)28ftdzI)M<&(6Ycv9Pu%@}x5eknjpGX?9huO9M2)xlTBm)`zTE_Q3x7L=NL;2fw* zA=8GT=Rfue^g)?L$v+E6q==bqto0WX|TQ0|aYklv~ zBpOP)F9vImPMwu8EzpZMBrl)3m#D6+lUFtQyL-AncWG9+S4ZH-cn^jO2r4diuk-{=gV9bEf$dO6m9bt!&P)St03glNeyAbNSq170(q zrgjj4YUJ;N7Z}uY{_9(CdC#JGOlgq^TpHI}>s46jc}&wjTQ*j^{3EbC@bE;90Kt$KOx*dtLMwA%itBSSEcms#q%O4C?JSi#_dW2csutp!Ua zq!JN!KcusX39lSmI;pdc~cOW;juMQ8r782v8Fx-AZ@%hPk@5);n=9Hp9 zTS!~SBLW2GZEZNT~R&ttwMH%;)PBjQY{p6fIk+Z&xHiXc0=3^>kH8(IJ@IkO0w9W2OH&-D`D(Up;LWk7}ysgkm6v zt*|rxxzeTA-EaSVx_Iuco@2KSR^{01f*$xPPzHUtl`!ut*+%@k$ zxBiS$Eb0FH zsq1%CsA$TC*<^e!hlC#SoV?2*drl#*d;GctuDJPn*bp_z|FYX$ewFE`k8&7O42&)p zWmgPmgJ`R%>%5iy)Oek=y21K~9bN_Nzqt7@OV)ffX^n1FE!nT4X;w&W^RI zeSKjHzT4s_ROJ_l>&>ms$Ir#G8^f!k=rNnUmu6(v>>$buG zaRqWn2p_?&Qw634(_06{g5D^USMe)ix_KWaR`(0rv7DzVrrH1kjxo>bXD5HWkan)C zx|B1zOp$=Vy4;btyWr3xHIe41Q4vRzLZ+5SLk=pmk55>K)W)cKc5E_yt*1igyEco-)U+Lm>PlBuyq{Dx=-`v`>97!3Z;n#iUAsq^Fyg6kBx9 zbEv-FhqCt5#{7W_R`gfiz30|lyLIOR6}gJ)68~h_e zH`?N~Z9lkbCMzhCE0^*fD}u01jm!t7S-t+nK@5ip_95{6W1quurnfbq@Nh^(Gw(@s zTNzIq%wqaOG1lOOQPb4hq8L2fceLJ=*5cRL{P?=X)g^F7?(mnwIEsD1H8% zW0xIj3?FH59rLztObweE%P(9}*+lX2(#7EC5k&j#KJxFg9b)izOZ0Wm77?z(_XH328XVlFuk&BV$q-^c4!e-=JO5-yY*R zr*jmOwwBFl#iRBTYYTl#<3$s%F%N|KIC)aMYD^j=fr)YMB|-`L+836Ax)?*~)N5V4 z_LIHt*!7mbwlPbsklLkJXVeGc77r88DRsDbt*|mpk4wI-D>2Z?VSLo)3^sgp8)haH zpfDnTN!a1l8hY{WvsN--wHlzKoPcqpq|5JasocNK0^qVxtZm?Wwjn{a84E}X1j#&T z?m7Gr!o?9991z&OlzTnQs(7|ZG1?4N^O%n_oSK40fkv91sPK(8p++56pM-@4m!o?5 z=ku^y?>~Hq+P=xl=f*~cPseXRz8Z1z+`#a0`%iln_Wvc*wC%(zg;KAiUb}(Okwfj7 zekacn%TMJRVH*W~p9l(bo4FM9kT{9Fi2R>!Tx{>&yEhEoc!NAf}FKx zj)i8in0N?> zD9nqOFWKdn=f>3K9z>BdgH;j64kVrep+}9c?9ls>HkeQU5@ARn zIitpFPsr5c)t>}Cr+2sGdOt-0a9(7S=@DF-8G1>~*0^+IkG%<*A8if%VLwn2DBHc- zE=P#bvo!LiUtcH<<_I~D>!mLrt*ZAwbb1dR-Af7AsUydaYn7tvqEhnjx%BZv z87<~lt65BxCy*^o$c(^N8DMfvbF3{# z*mcU7aLUXE{Kqzjs=`FyoWg(XlZt&xo#vE zUyzOSgwsSqxfG0vNka@)Ih5KROv$pm}UFVWbs}` z#xX~CVzk)0JG$3sJEK@o?-Cq=LP@u$uEmJn=m6QU3Eq*vV6~DbU8(!PKQ_?jA^dtW zW};Q@-(&#^!9w%fo7Bao!I2`iry$AmrNnc&<#@yrV1}cZVF(`p4_n!_Tzo-F* z2p>uKL*kpho4fVflV{c}NLOV!EX|n1_O}h4-x*7MO&~k%Yu8?FXOf0=V$z>@`6_EApNdg&+%N$F#ubU$Ii}9`~}0q7kvH9Q7dR(BE7cx{=R<} z9HzwJrfaJG@Hehh{i5TIga3L9n(dfo`aReP1)65ZX8nYv*%8Z`pI`qs&s!P9^^$Dp zr9+zO4^&N(59Dy`dvfAiyz&9%7%6?|yftISk^etu8})5J?Zw@aHtt|b0mx3qc2_A@ z{@35|5nK67qBisiLO_R(}O(R+}!%dfO9M`l*bkFiAwGL zKcMSB(9Y&u`hTCKj8*|}RaWHo|8jsV;$Nx%T^-1!{6F-iJHLH?%9!lCm$vewa>DDe~I!*?4DycSJ}p-ArY&wLa@coUt*+RSk{%%w~* zXNU<=18GQF73?_%qWG2!MX&Y7WNp>yW1~j5bU*p-QcYCLc zgK{`dksMMr04C<_;_*CQG;D6YprrJ83WLsye=%P?!WEJ7MunnB+#Pod@N7Sgv{g-+3f@ zmy)$oF<}rj+jDz|1%|K*vk1VNVCc2TPG-GN7s79t)>Z6oi5P|$!S3zrYkcEsA0_F2 zyryg~@5S?*b}%Wewc-o#o!x3^gPB_Q)iv!jy|CfJQKMgoy4-H?V-P-w&GF}#Lyct_ zezbgMbyORujzpB}7BSc+tjWV+=oZy6zq z_DI5{L)Xv}n=)M3G6ZjaERwTCH44?HkZz(XD6vg0>J+DRpfgFcsZ`h zXJNsjhsBt^S28tUoqyi3{uAc{ZC4f;p8* zQ33a@G%PNt%$(%(JYn+f^(BH)JA+<`7PJwENEkxajv?c<$A z#O_F6m3w~b?l)K(jd|8EQKnOu#a*Xj@!0;L=ZpN|#<1vdxO;@>fkzP{%ojLyf0biyE9f%A25D|XMbLW6pgl&9FI+19eR4X_N3 zcnGsUzp^$uwv@dMbT!!wd3~%rY}i|qDu&D$+U;DP=~50q{SO~L%qRcRa9r<+ zd(@27Mj0DgdohGFCyL$YoA^st>{`WM1G<3p^9hN3;Dl95GUnL(%KV6+$xcj3Bt ztD=txwZV~-bpH7*sr8j<2mRT5J#$}WnG^AUaSj}kMl$>;{q+fJkZB~V6B378=C5&F z^w?sBzgbV^V-%erY{5Q%fx7_vqP62+0t>fk={R0tKLFh+*h|g{zB^RholMD+97=iX zna2Mqs-8TC*t+t|(q<*krJ1iMx;UwH(jl5++liuJ%@>iWz#KV?C`sX-Q&H7evP>yPs?+!JMET~&k z7W@QbL-rpSS_Vw6{>@@g2OvsnE^vupkn+f%?R4(eDP3PH%DM7kBWP$Ra^SdAU{b^; z_xV>5va6QJSvJ93q%tG-2@0MZUwVEkMp3(uS-f+{caz~le#st-v zT$pKNV);nM*!7idU;xR%)~L$j9SPPp$b@ORUK1u*wgilm3Q5aL;4aBp!!P}V*Kp`( zv7(&(hT|@q*N&#%;Nat{Eu5|uPesSg{bK|%MMd2^FOGb@@$3qGhyIE{@Y=bi636G$;AO&iPZuxY zpb?(X`lwFU$4jMN#o$R|O(ynIoqFmeDE_ACR8$R#!n?nLcYjq3bb-d?fz$^NHYX#A z(**xWny{>oeb`v+?wmd=y}n{U0v!GtmLVlMy`*gkcV#bnRphLiuQdFW?UWe3wV>zn zoN^bDa!GAU)zyVzs9x>){s2&1=h(4hTG-&4@k$KI*f?MuDI!gnG2agInD2BBVY7rY z{Jq*Z*UFRG<;D7J?Cd(o66F#fhNRaB4u7$+E@4ZE4UyhnF9x@+Xc^Ipua{JIf_NXe zhw{RzJWJk{#^uyRiaXa@biFCid~xQt&m!Il43@6An_<-KR@H!11R&#QKW1yBY|6x- zLF-E_sY@)t5bo7T61hw*q`Om)zr5t!=}0Eh$%@fs)5rc^GrbTK9Z|u&{{oqB8D{?9 zOw#mhLX3NaTm^YHHxWi6yY!nG0YAx;<*a_?19lYycIFi%b_Tc6TN}2Jn3n}s9mdC|$JlSeycN`RX2J@&$!sd(@Fsanbs>R1QK0m!FnBUL{ z7YVGP=v5q)KLMJsP&V_S`Zxkg6Cemli=Ro!X@n9s$&9K1VTd-2nuMA+=O`QlCU_fK>k+1L%hQGeN z-;{0`Gu+3w#)xBQ{{9Xv79$ZSZ}0BiFR~-S7#bj1L>&gPe@C9t>go(rL!xBxO94bf4|{IOU6mu(U+o$l4Mc)AFr-_ zxW^^64%~%`PC`H1qXgtauHi8dpq$NQ$an@Suix-B6;+am)cEv|ng*OhA+Hq|*jZTu zG)@=5fW0JQCZrRb5&5(_mhQU$eyf2(Vb_IX~V>SZ;!Bj!4+>zxj14+%{6$ zn*bDFUYvbYueSp$X+tF_gC9N)!!4OF;i%YJ2U6AgN~FElR){bn(7M#-`z<1KgON<+ zsgqD>!Cnj}?j5n(&p5JyTISVH4*li3a;!QpfuX3lzo0HkJRx2=f`e01$J@c`F-2jIXL2%)@^@OGyIko26+xxxz|)td}}~}0YNBcE)EWk zn)Rx0TbU#-!t86}(}XOWc!~Xhlc|Z*#?~r$(C!2AbP>5C9e+N?Ybg=iF&%MeGJql} z7Jm#8xu6ILZX?6?3crVo+Q%cV?g{=$r1+&4dTt9DT4I;D;hLJLml58K$ifkECm`_= zWM@z?J5T1*SBv^I2}hdfy}m{i&47Joff3BVzBo(xNU6nsI$?`%av>%};*HE^!FL?T znSg-KU9Jhu6K_{b2umufgFh(hQ;o`=hOjA;AZtFir+E=s4pQ?FY8=g;w>NIfV$(r= zE|)l1y?rPS7y+DJB&Fb?PLP&k+=dhT2PZm<@=!wz>Ydihw|Pe(q2?RE{n#ji`38^l zI*DneslqzABldYtxI;i@d4oaVn_}ZA;1|yB7-?@W;M6Y;a0qRvh$v4(2$ zO{e`TBEV~-Et#a)U99I`0bFuPmEcnQC0sJt%yB3UR$0NZ`5b#$Q9w|-%WWi8V_E&o znKMVk#Ka`6M|Km{P;Bxe@`X#o$${>AF0kir02UyFJ0@R`5Fe!(spZjZ0<*^V%7c=0 zR_NN7XM6exVoWx!Lx)ZR8Pw)BD=7mO_`KV{2wx%6%OR8}^EaaW>tt={2u>eMMv z5n1zKClctK-q0h!;vkBYCcf=N+O}uQ--RFs!Zh^9zUPeb=xv-hDd5Q^h03VB8X#+N z_)~tv5{bo+POx1K9#J?BI=_h(w;edn)?H#;LF)hfLseq(qlx=j_ zI&8GmU%!4;rRBk{Xc#8T1st|O%%3zb{p&4tMc*TLdk^IPNU_*SoQ><^@`Uq6NX;&9 z&Vdod;UJ@S7TlRXdL;0}XY1xITZl?6XNAyaL)eezRTTG{K&inNMz?n8(A=TC!Nvuk zL_E2~wQngpg07tiqS^gU+-M7uD1p9H)_jfY0_*^(3{kS2y?))YB=aB_3}upDf!!R< zd^%z6++xfGdhxtkmkPNGVDHt7(~&)8FyK!OO-Gn__wL;|H*e^K@7=ZQkUR{Y;?x*! zt`Qj=c6p)}AKo5QHK5RCAemSCn?jWo*wCv|Pp0bNyE$NtG z<>loSrR-l^E`K^UaTT2v72oU$)KhS1w(1^n#aM!{jquaC*IQqpn!z@&D1!3{Wpnn5 zpvy@YUfyf&lTfv=?#MsZs3u3xqnmquZbJ;Md9Z>4emE zSX3+a>n0k!JQ#i>JQg~b=y*hSBS<(b!F4qPBX|NxRBWr_2h%B6flfYK@R19L)gL|q zr64Cdx+Pu_(dOZ$s%hRs&@cZkq%~ThiVsl27dS`{e+F1YMj7<3^pd0LYGe)Zkyk=TDVy+P-5-- zeP)5#!e#^a8&l|XFRlC4*C6ixcDjE7IfVv2XFNeJsao>hBj;sE4l4_jLe1?3_GVUh z0uLdg(!yCwnqLPR@qP3tuzz*=m0m#>@D3Z-bUQPy-J|;VSqs~VS`hN8^7YVTpRM9A zy@t#?DK_M&Zqk{DyU7w9D2Nnn`WSl5$XG|~o?#wxXcg=ayS$diw$A50K=OgfFyH1- zBT6~RTeGkDzR6rm{2X7Hp(u3mfrxn;?l7>WyBhkme$*RWf z%^r5H2kDFeHWauNR3&FM!r4Pnt4M*#`b8Ra=?{=)lP9=lLG`Du9E)VJVf{jz;K@m> zX2Mb%Y87rjpWkPbFI|~>1Xfbp3b7EAMAaCniYKj|6E)268D~gDrUEQ^%cSMLzP{Nn zr*{mYxu#<5OMM(FWLzQdFO_%{ba}6P%5yw)ge7qAl!gljO5w(A`B-~iGd7pH=MyBy zJf|u+&C`g-zaZe|gC7)O4(KdMl(|VIhV{y|>g1N^R*QWAOz~8Mc^YJV*AR*l4jiT) z3aPnDL|YCXI$*vOqqG;=zN{KyD21%MB#=IJOM z9u!zsm**`31qtj#&^8kJv&Bs0^0Z-Ca{%Uw;l#Lgb5n>Tr&r4Zw^AVS4dp@ttgKF! zG4BT)CypX;DK`hlIf9#)xC*jT@}OO}0CBmO$bofddo3Uug2;EQvq+ohaUimT0KK}1 zO(2SqOeCp^$|3OYrEJqD4d2~>f1i4-&T8ZPs)CeQ12D@GfSG{zpel^ty?ghbef#1w zjmiwBTEM@w&W zNk)$ak@8WrZGZUS0nt}NBzN~PcOx52Bx8ZS8j(t#1*jX!X*N)_?L-D6JZzE7WO0UrySRPONvJmS9e`lm^EUV6dg=L1B-$`PS4l9L3I zLbDBtP7x0MPQ#)2;pg|6AO^wn4T(~sL1ovjUEJ#Nj|mfw{RH-r3FYZY9FlrG*5@cz zj@&z7bspwyFE$TYyoZpv`9>6VP$9vH*t!Nzjs1{5fn{5(OibdZ594pYUp_mGHvUh8 h$?5;kcH*otw>fFdwKKfFMLbUVvnprOPF=qBzW@jBw>aG;}ljRnK>)W~%NVw`Ok5RQZQsA&q0-Kgo%r{gFy}+Q|Nh-K?>cJ#zu%bA?_>J+?@V(iP-OppqwA0Q z&w(37_e=l#@6vr2Q2#kc@$vsU#eXdn>i>X93mMr!QX z_vPuv8P!r)_GH~E8@}`F`v+&jAYtPm63xE@KjBrq*G`|yijl`cSwUg9m|vSu@HxSV z4CMrc{sP0vSEeE14U9ep+J#0*-}s*rV{=rNE5_Uv-PdPXsU+6Ilu{%mdREBa!+YqQ z>}ESt<)$|)H-@ZFNz%B?_B5^5;oB0}?d!KQ4BRH89e;f|sJJ@Sc6bF6=xJ2!%mKIx z>CxQm?C=*aj$~(Lh0zM!Yvd}dMSt?Aij`yZ(xf;}_iENaEAgmJYlYd*TVx@4aRo(AaV)Id zcDRpZprOI67{eWY_!L{?NR^W;#;hrVmH+-XCb%V?YX@XpMxFcB=%3dt)qDIp;JVx{ zw$!*X*#d7HwylW18Oa9!DMxr4qbNV+Xys0n^&16wkY+MdRIZ}BV42nM?NeiIERwAao?ut$AH#*Jief~Cmjh*NrTvAUI&)x?NXM>L7Jqj>Aqt=F59 zYu~QViC_N#r_c5B{CJrC#BP=x1r>t<-pS`GI$ZvSBuzrHj***eUx6VP8m%0ECER(g zFEF4nh_C)4tXJ$6yOFDF9xe+*T8r2{QWTG=iOHM!%JGomxq_PJf|^B6eVd|ZYfCsO z^Cc=2>f4D+2LTtQ$zu`{xH6Mm;zwMDZOb}%3@X*e9*qaL@@S$|Hv9uPeGZ^ZrY8$| zvAd3gcY}B^7_-4*^OcQZdkd=~E3eH_*J7()&bUh^PeweJ>Ks>^*jxJa?UQD{Kx7O| z{9Xj#M6ZoO_1m{^@2uiee3Cz;FY9P&Y3*DUj%DNV{eG`4Udtn-rKu@gLsddc%uy1M@L5%c6Rm* zzm?K%m0Yi}ZDFgPi*p`%Ms<3Nb(=;rI4ri*x?knU(WB-iZ9Z&{Os_JbEmu66;Zk?z7olxjKB7 zeR**cc)VhFhH|>c=Az?}WoDBK{xdj%WCFLbL)MURI{8Hu_s zazA_atgF_|Y0x6YYl5`16nfabs>qfGk|D{;SiriE8}dQSwZOo+SF5YULe+ApH2X9S zjpF9w=;X(ve0fQq#j-*r3GyLQq(?K~-uRt9dsYEbE?qT6a^*caRb#xMHHO8-SVe2Q zl2tLLk=}LW0+FyDDP%h&Z(?GyAcO>j`M1|Hj`$?k=GHg?@;V%QiYFSM=oDfDi`A8< zE5LE_Vi@xNJrZ#eF0hb?)*Oziz2Ms2KN_QNXE_?$5JI2uqL8s!phH|kpVt;ica*{ihH-yG6k2kbHXtFYTZ@nqK--%97A$~n?-}wE5U;5j(=&5aEAEK5wab3sl zXCV6o08-4S<6^CwV!Lz3dlC3#58kQm14qv`J~?o70unV0xojgJ;(8P>HlPupivvf~3H`)-br*+nk)7X{Du_ zzw@d)BbeK`Uc8`ou-0wWs$UV`o|Fz}E#96=Py~2`WV`0QyDYc8jZcxqnBQNU>sMt{ zNxXRAz=1dQ39%*ZqKXLSHnp`ykGc#iSGz9p3JMDHJN(3KulF0vV%h>9G;?G&LUhCy zcM!M6LnjlR+QVmOt&n_~FKS>=*Vbl3?y$(Tq4{g@dGpa~XGi$=X1HS(eY>jkIgca= zvXvq0!d}t{B*YA0#ue*6rK#39=JBt=ku%+yEhhf-Y;p{4X3h1VCYmCVj4E~*zd?QL zaqFln&QR2OmIW@i*l|)}8}fbv3UFT1+Hl+2O!uTO`SGyrReVrDbJifTw+Xi8;cUwB zjX0k@9@yimJiRgns5$HqRIh9INIS(i@15RyIVhwH4un>Ljz*|c7|cYJhDvx>S65|+ z&2YJ`Lf>^YW6$MhyUPuX=(qg15Rs`@L%1Z*l_q|hflJi4%-{Vkn`Vy@(k#TWvshz~ z!JyG6tES?u4UF-%H!$cFuZ=jo2MJQ>av@Zj9gX5+Gmf*_nSI_QNR-L#A*lWs1qB5w zV_c2vQsWYKk6|@_c6PS0F`SvXs;a82u;$mtqlP#QV;wg)xA2vfmBzV3EW>8?`dmNz z$~wB=z)5*}J-0Bjwzf7P0MjnDw~O4#U84$ve#L z=LXGV4Xto{&(GUE@LE7>$xb!=*-MD;kle}J5QH_RrVgC1o+}84O=+kt$jD%Gg!0vp zx8yMXwaUAkBq~fV=JIlT{^!r1jU^qD=d-i31Kmbpr%waC+b&qEiY;8}-}HoqGnL%w zQsfIB-Z)Cb`;yMF@xo=C$eD%?Uovtl+}w0(Xb87{c`KnB%Cqbkl*mQ^a9bjAwl|j< zDPLZN*N=;^@SA>pS=q0psflTq*c=(^FS8pJEx!BZ$ehRQoI8ZiVV?#~(eal8Rn`ka#jD9;Nup0}^PaFEgS!N^kisEfYaM7Z3< zuTNAo08_@^x(r@xot1&vxw*NM@zw>|#O?W#ju^4UO6EnPUbzj2eeLq|`MS-qvO$UL zOWwPWsBi5IW!*~s+4m;(-8;485^HKAz`pXa*wuD1bD-al7~w{4lV_URf>Zd5^YWCC zE7z@Y$rmTCb@Tg>Jl(c__)o61@TqnRE2O|aH|>!&u|p~AZc-S`P?REE*vI4to3B$zumE3v*t`pg-(g6n+1`^r8P zKY6kbS-<=bRHH!s4aDNMpbTMe?w3Z0=g@jDP#%$qu)KGG-O@SalPuQgr5)lzWm>8^*%z{M% zPB(>n_uZ%Ck)RIT>+zC1^UU<355uq|0@oXJp)z}%5ovc-Rkz-=s&=hQ(Q(9~;hA@6 zQzU!KTiGBCrY*a>*jy2Zh0O_mxHM*nT#giREmBic^AQEjoFAl3^~N%wxP4Np1wzwE z+xQlUJ@X$QpRN4xXS~-d0;Ku%n?F?_;qDW07Rf~_B$Y449w602SL`og%T zpX)DKEcW|w?mzr}%WETwL&J*kAblGG{80y_LnJl^hVmj$sa$;{bO@|yXMpi&gvr{~9rtZb5LN}q7#~V$ThR%Lh&V}m>5lJ91_?ck<~Nr6 zC^MYbX7J$vFn5?%|3`UO`*21bDWO)1I*5vaG-d`mWwnraaPZFZ&o5=6VlMOlOxr`j z)!cdX={Y4LTsXM6oVnb5Rw%4b$FFb!5Z zm?}sLhj$d@KMrogMqT4;0GWAeXP@+Staa?yEVs8`^& z^Pk`!bD!gZ5OKRks|9G$D8BTu0Qq|4`txJqkb2k++)=(-CYE+RFPmQ)~aW^O~?_7t8LGblq>}dbN*==v+q}%07gK(2F5h zfkt=%vH^&~1PnPDhyhpbv(kp4hDKzB`FeA~%?eG=^7_y-XU-fTBw+Bf?>KmQW1xIC zEmYtbPSu{e73nCoJrU^$R9GQbJAXoIZ#y(kzk+vB0!UqiQHUl*Mwbkqk8{^ecDMQs z5Ft_8`Feo?@=&K*#jnAA4V3=T&F@_XOb!B#P_lJtgt|HTQlP!@mwI~0SZ6J0G-)5x z`gYqMPoYP^#jM1z9&p!EyTAO7oflF9&w|f#w7TpH+$fuTSWaH3&D$kY>;3}DHDQ^} zFR#xD+i}Mly2R}QW#l(+K3xTsaT1tcXcIvX0Di=KX8{S+F9&4SUgKnG3^mXHIiE)Hj?Inr3 z%-?nco*__)$xe-ZazqsWM6$^R3TBBY3U)Z9N3tG*M?%pnFrYPALTogsw8^sbt?a^h zl@p$Vknp`B|m0kUmby(evWu(~j_V#vV z-D2**ZqMcx-X%$%Vg=47uwKQu%eKF;prBw>>O|Rih*%#*L_JVHX`fZV?lhgkNF9f8Roii@up3PS zP?2tYfSc7$#lhe z^}9+2^VM&mnd7b?w0vRw*-@IWyLN?j8#$CmfKTd-!P-T6-ZNZiFar8!s9XIoJ0Jk$ zeG}+T-c#%<$JPJ_iS`RS;yd#t90{9<2k-pHWyWCAjIrLup!@nro^aZG4=mMF;XV;? z?9!HSJ}$IYrVJZl-3?lgf6U)&o)$RQzH#9)4<9KJw`8Dx>1GbNCa48gY>L{ zkmP!agHXlgJ;BgBe5Ni7wXd2y>$X^h|7o-ew4e!yJD1Z`YhWDrc?BaQBc+WVKPt(K zz~icH2Hstmaz^euHB?d$3ACZSG_$r8DdV9Edp;y@m6F8=*PR)?*1`>(+62p_7=eB} z6jnh2H3ysS4E3430U!p55O-;Fzg=t=C{CD8E$&tkLomwDE4ZE!ySvizxV{_s-(5DA ze*DB?Yp?-VK;8C|JOQ|#6L!GTXoMKh*%63*Lk>=&`zvy!&rn9#T;hYf(_b*45FUBp zN9XzLL$c2*{3aYgai7nPTerdy)8r1qCtSIm#n359Ui(x+0Bk zoqO3!Mk&dAPYED?jWS#A&yLnqlmaC{lq15)7DsDZ5Kh9QSDKZiW72Qv8r)=e^K*7) zGAFZKNEASnGA9?;B#^@xun}|-;0L>C1?;0Z-6eMqDW*;DMP4=wiL=9xjgPhKSBytOCan!%}`s7p9c^E?9)sxcd+muFN6&JH zfj^_IS9<>f_?k7PR=o=7@BolUO2CQOKsel0UA(UzNYQqP=pwCYaWS@eg>8~)z$*!uYC8T>Z8z9h9lM> z7S5Y7pRHd%;8KSx@nGDTAbis_S-{WApTRu~F-oVZoZ3a?+C}h*YAvv}VQs(J1k+c* zD?>3df{w8lEAaF{x(Dyc3JO!MSVkztU*Y(*6B`@b@5WAWXrO2R^5x5K&GYfuQFDOv z6%cv4ibII!v;yU%q19Ne-_glw^20&KC?uAJYzCN+ zk7qBiq)2*IBR>3;GXm2HCq$em)^)c*PEcY%_gN9|ymsqn5E@+!WXEm2SI5+-KUI#( zjkw-#T5b-)|6@u*N(vvqqdM4EXmm>qPwqlq1!7AeTB;yUJW0$o2H}`+=gf%60_vp; zSprl~tYB%d)KX&*B0nE1_Uk?QB(R9Aq^G;UWI_@yl7Jei>Z33n1OHsQBYlll34Hz1 zMAtF5VsD~5_&mY2P{;Tm{kk(}jr0l-lAg6G1qwEgEDUkLda^Yn_WHzClCY3c(x+M9 z!Lpwi|8|`!+R$Y%eFG0?k@QoH6a`zfvh~&F>i`!FB5)N5=yd`6;sDXYAmQE!?if3O za1^vC8eXb(OsuFRi|e*a?$``M>ZO;KmJ01KN0*PeTW^CSISJG*297VQps1Ms`n9yE z%lt*;1PG%9KgVJrO;%Gz<}tE12xo4-+(5^?FjN)^KWjOwZ*u|Jh!Ln6{J30U8r0L@%Jjx%=bjjxA=B5L;QwLP*bhL)INDHOz zKMP+`J&)yC&#DYeH0J? z;$NN@RBW{YQs`fQXlnV>>V2QFScoM>oVTl#fgkfDVTf4e>PAMqAhTi+hq4~brlD3U z>TqZ+sk?vxJjQz&juA%ud)^l|BbB${O&-YB=VR@=(gF>@Yc=zMH=&$;Z+=78faxaU z+ymp$kR+~YAkLvVsDom&rjrOxBOL(1=?TPo^C8X|cY%we#K#N2_l*gtsX-6ObSTw` zK?$7){<^Ekp;4&!Y^)~(5tAwnwml-DQEROC@kXlXM?e{vf{|W!4VF=b#Dvm zy0UUG;#z2EUe zPylAWENcSi0p5j(|9wo(X=!Pg=9ZR8Bx;cc3gAWfj4Y@CqUlV^b={@sIO7;s=ZfGip8KD_wrE@t5Yv8*>~{u~W81CtK&kK^Od zQBzMj`|?>ZI&9GX`y(0n(Hp|mA0o3f8%QR@>$Tl)8TIFz|EaIv69+9Aq*n#Kr<{$d zTd6nT86a&KsDE|fh%*D|2hWa zP1?2?1OP*v3&-UzG%Y|C<_Mc0(IcU!o#A@n?=so&UwnMv_1F;7mzw_e28~_;+HeyH z@bg&2tcKV7j3=l=zV5dE^e!MBa&kCz%WZU@$07v%zx(NAb2J)_XdOgo{f|Fwi`yIr zG7+=8yL*fekx%gQRXz~;n%o(9CFU%52r-GhdY?TKQat9CUc7jrUi|XU0Z>Bp`=x!We|Cwa z90qfH*M}m&o+&LPrUu+N3d(aVXmoURG`|<&VVtOQjwc8K9_%&Y=^Z1~Da&{PP%=<3EzO!S3j`y%-U73GE7B6PhYK?SNHY~*)e5{N@f>&L%4 zG%(QEuwD{b^3Qg`oj0JVct!1V9tATa2tujzk(Pb~#G^3o(8-x4f5c9A{t!IR&$9U6m{;K;OE zOYZ)<-my6VhdS*0`%ExxbqGS$`5sJPICM}lh~I{W{QOP@G-+z-;Is}Ma_I2W+<#Ni z*X9#k*WcIw9WzK-0!gCI5#aXG3R-C{IKdvnH;J!&pi6@QRh|2K#E(z@EkC~m8REKk z^(%ZJrYXzv+8tpnt`_kf{d2QSssCRgVb>5~2=V`56%jWaUcQ9qNDjXNeQ`PN0vZk7 zpOSe%gyIK3u2li|odgBxOx%H1&`n&uS9eX=pI<`>(L%vhv$q9-hO~OAskgxbPb)6w z|L@`kpi;W792&Hc!CG3;z~;DTHfumXShpAle(t!yZ{3$yiABilF-A#)@*yiOq{9v9 z)r9CSM4flF0DDDVOcDqf8R`GFw-HVQITF6Mvj77ZNH44zNEr_rjqv=|B}D~=yWRyb z76Y9g4bZfF(18lI0VT$7@^Qc0RGfv`NTmZm$YPPJl`~i=bq@z)}Nf2=49e z?VDH}w3y7^`;wKBop2hX?nYW72)sgzS`l(JAOOPZv9G&{ku!j zRzNpq8-ZM*L5MW2-R%MLe>wg22tqg6RFe%3DxTIdG~_9<=!ijPc5Xm-7dm25&>ihx zwFmJp)sKsgjctJr{7Jo-pFi)q!F^i!F{07no5vyE8!~CI4dUlN*|UCv?8NI3X#Mz# zFpGn|_5Z-y*NRq6m>Nje%GK_}L9Vmb8UQB@DupiC;x^FyfPi<(e?Z08{RQffn%sye zUVv4JLf-HqSdKD&6u(`=bdXDi87fJfi2sRu1R1%fc~eN58y*>n8rM$pVMgL;4jJH&jP5gj!(QWZu#>A(+)NBq$hX!SKA z-aU*#7$x!Pc0yE9(e@?~7 zi_rUY#n|Q~*RiDXFSy{(kEgk5OL!9$K|3S5B2V7>A z-(?aXRm=G2(7uFcA^@Wv7KskeU($)FgYiaH1;9L!kzn`2qb-1%`RCM$PU33HUX#-J~XAoVtU>;|G z)l&VA8Pr<`nHQk~85`h^((FJNA@$bN8*a77B1;99X z;b8|OYlu3;VI|;Ne><)ok|zUMN|7lS$GQB9X7Kl{h;=we=h+^PA02;dc9?f7+1~;M zr0Rd$l;#r(6DS){&zYh5=%6RXeljp^omezu%J_F(W+}){nAHJ)Yhn%+M~ltByFMhz z4B3jo0PF7Fplv+fF8Om_;P1Y7`JoOK4v?7 zB=#{i>VXsb))V|`P`GK*g@t)}FF8!gU>Jd#Iy)x^NH`}B+X2Ax@YcA z?Mo2~f`~grhH3Tc@yD$#ed7;6vd0A)e4NJ#;~Ms|(`G}rG_{QPG>KXT4m z8>!Sn-y07~{=a6QQU7-k zw7(nnzfz?CZv)Z)A8`7=PVxUH?Efpfnf@-p|Iyj~UQ;7-hV}QAvTy*?!0^|dkoGEt zqKg!Dn4kw2re*DCnkGn;wdv052zQ;4B|BFN^KoDgn`F?C-~X1^@Z-f9v~~XroANmM zNH$ts-q&xw>m4#SK;r4nz42#=K!(qt+NZ(v*2aJ-mD?V1Q=slP zcw>^kC$3N^U4*1*gNJSg)Ncj4gU!fzCcG^+HAGYaOewq)-#IWFP6wK~A6BF3E9_W1 z$#f`04mm3*Gnqcop8?Dh$Q>e6Y%ulCBRu*rGAb&n@pIrQfx7!(8&SuRQIZc=dFN(R zi)`HqKTeOyP-297!Wi6fMK0(Wm zf#G0*Iu_LI<60#?RG13Pfutg{tcU}Pc%m=>XjndY@BExK7Z+E$`rO*>-x?O8?Ivtd z61TmfL%nLb7vCL?j}DcGVZ?N$j4`*b;Ed(SRns89iNTOhiGtR5&oyen;Na;qy~`0F zlo#g*yBfDm+UeTgBwQ_cmKA%JCt_E|54zz~nJH=Rt^ZI{H`Q(5vwXPP2Cb_iMVdf5 zm)oPfI_BvUO0Ss0M_p++xRnNn9qELaq(~RRwugB{bN8EF1)VdQiindm<>pK`}P_#uP3tJqhStOx{s+5nP-8fso}^fGS>K( zdtqw}`~d#CL(+Z_fiw4u?}yW+5qE!xEy+6{5n~DyAvg?J{lp9^?~M-ID{5I7b|a9;JN$Vuee+*SBXzukA9uBQx=N# zn&r@~oGYL;i2q)^e$}AH#TFKs7%~)PTn0aIf+)3ggPlNeFq+EP@jO(kcd^}v-dvL_Vj&?sPQe1ps_JbCh@62H2-TC%c_ zC1MmuIiQ)gc9l-x#zc}UhPVE9niIaKmi_I^Dy9`#%vJw;&t8o`82>te)6ywPnv1*< zeAhdTK9c@^5f=nZuV|3Im%4)}P}vnGe(=1*>@s^w z!0xWoy;%11`NoVp0?ZvHks@jzM;0Fl+b1^~`vlIH>nq7!K-s9jB%?ZHIintq^FB4` zQJ$_G;%DH{&bfSR$L_fC)NDG_ZDaj7@{#fb)CX;xR&0 z8z?9#u_ElQx>-Bj`c{OZrml7m6{QII=Zp47UjMj2zF+zQJg#Kmk>7Zo3UV9uYC26> zO5u*+vHj8~1?&vg97O&6?C2vyQVI)&KMp=U zd7IMDEwWX)1RH-29vOQpWsmhDNVf2yR!BQ&8pAXOVe7MAFMGDOOv6{(HA0;nF$Gm@ zWlKIko^`4eNo<^$8Ms`wRCr!Yi14U6YR&7okc2m$mimm1VU@ZW;UPS-*3C$FSRfRU-`PQHKCSZWa_qK*aI&sTVPq%A zLZxy;kg+v&la8;{gCIgld-9xaxdkHJ9ErWuzQm0ONCrqL6SyQ{B6rUA0bm;av0yu}$1RG<3*~$Gr8^EL6h_3{5*$?KnBR>g6e~Rpav-ooJ5| zM_sL6oAwu=vAYq;9WGB8(K%*%hOc=JUU>vA*Zxf5&(OUaab)Tnbqy-D<>I%}BuH8J zTwK?69X+#a-0G|2gFQ zRM=X3zGG%yY2&Exbc&%-a{c5l0sG|Ur_fNEAM&3q-mg|&k-~tYmC#F*qYB6Qs4iH* zTu1X=T7H(YrJ%JV>iet-4+YhYFl`=DcJ~re3n)zJ+|md>>sI0Zj3Il(&w-p8-%GoD zIuv93+8i&4*x3%0bZGDO_XLbQxK4;oEhykH1Gd8ej3ChAyx@~+*Cy7S)Gt-b@|oQ# z8YzMg@BhNO5uL;N>QBT8DVu$Jy~d+|B0S&-)5t>&B3+$NGlvxsio^$_LgA^BY`^?^ zG^*>;3Dn_^d2S^O)aUunm*iyUQu19N^p~x6&}`4Jhj&PYQWTUt9@C8uDdw(z80srT z&JD{<2$}aLVn_tV=%VHG`->e?n^`JX+t&*9A01WSms?Osc`t$a6uGet&JE`!d#_#7 zFD*j}Mn72AQ+9^!(XmE3Pk7`hD}?gAlXHT+62XEO1!m=IDEmy|v2zU>Gx>fQ9wR!h z-8Nz8&8oTn+$#RH_97}twe>I1i&u`&Pl-!%7qafdFbYV?65{46B`G>*6RMoFemQAG zD4`}|jWJUlstYS-T~t#0&$n5-oYmG$DJW*{d05<=g9_Xa(sN4TM*)-Vt`-ip>G$ z5f6)?hx`3T7f)&DzmP1*6}dON&rcT|Cb<7c=Y@0h3dNSVSH4}}=m*00tv!EtcOYet zz_s3T*JHRsn+2no{H1D@0ccowD9nRRoQ`R=hem1vqi3FGjdBl@S)!JX9*kcOeN%S zYkkw(X!_PcHRb$3BPMrL^7&y$L$~xsyPCkYg*lSzlr!Hby>>a#JvaZP54JbAce$%1 zQ`B3jO0r^XbL_m=ZXw04{I!>Am`D|^F7U2c1=+q>NN+%mC>Y3N{2$=YLl#6&O{|JvEG z?$!R1iPdba{d`I4#Ux511hge?%twFBB_Y0hqKW-e-CnUdr*CgbCTFgiF^lM7LcAav zocH1u-XhvtCbk1ij^AXg>Uy-8F4KPUm)q>jEo`4JerjTef1UKMfgzVvn0K01gukpM z>Tm;NA<4K}bHZnD)jL1mKuPvlqmFU*+(4W~hFw+dKBnmCqCxt5VW#g<>wC}+R+WgZ zHZN}KL&?9LR7fmuooJe+vp1zU-tCptcaZw3sEg7r(R=qYVRY>nlfUg+tqM+6ee}on zh|_G%sFSJ{PFNp8Z@B)|B2!M2?eQ@7l$R8yAtG#bE#E7shW9af_kU|()Y-%C*u679 z6mcQRR^5U3%5a{RR?Y-2M*qg}D$I#)uS`hwt6t}Q?A)iz`3Rm*i!(a;T80Up?!G*D z8Wo7q%xK}M=t-d-b(+d*YTMh@FvAi@j4gQWMbEoVc^q6geTAGUl5KmhjY=xZ?b1nQ zyl{U|_v?Ogru90{TVdhPj9A}wmGN;KT!dMzhX4zV?2S~ z(;B`)|AcOC{nlGrCihHL!zANmZ@o6lQkQ&DV>YL;wVxHoZOFo+xnxx&bqyOBe8ioF zx27y+q!JqZbnwd6V%OI~(jIo0--|$$WPZ(k z1~8nMh}8OS(D6b!R=1?5%x-sU%}2Ys@__W3?KI6Xd2Qw3Mnl)^E>%InFaR9r z{K!vkZc@O`==nOveEzmp#3lNLK@JTJc=!{WIITcolx3`}#4D6KoBRXj1iPt*;8P+? z;_H=J@@9=E_OL*=+QN&+L(tEjWgBO_PW{}bQr?>@`yxmKE8gxgcaqX~f0NCCHQ%~h z>J3(*yJPbMdi4frx+R~T5%> z^}PUUD?r*0p_1pklwY0CqLMltcbS>slwYF$-xs#fQO5+^4?UfnH3g zD1JTYY#^O`mbN z4bJ}K{_qcez2lVUHT#<41vv-8W^W~UC#jd;`PdxIx%J}}zw80wNOSKPQb}apEIg0I z<6#(l$vJXfepzZy)3)R|y?XK0o1OjUugYK3q6SU;xB7ehQS$us!LX%6ymm|UfdNWM z=XN~s1SnRGo4DMKhKz`tSMK-{Br8TUVx$_kAB>4RGtBjHj4IN+q(wQD+Zwhr|LRgi zU-!>xupP>>4sIVbo^_NCHAbZs^Gj}3+zXZuI=j)Iu#gpeetgquc!YgwR|S?eWv;iS z9;>CDv)$;vkyjI;7#?87{BY)ON@#OXzb9WH|I)Y(UTXE69t~MovqG5-k&vCjuBxIu zsJU8sNOany>16oz$HeI_@psBKc23>SNlWxy0Oof_8`min0-u>;JTmSlg~5~ z3a+OWjvZt{oDw10IhqZ{nbs245PnmkRGzRVCun)xV({A0Ny) zPTbpNC%HO@v%-vjXG6a+qXc7GDt8cWc}{zuVr)*aEr3L8djcpxjSY0PIR@qv+jODr zLwuzq(RoK5P0KVRzGpvh$KIN?`$ImTJ#+zyo4FywOZ7pL_|n5FqBqlAm+rq4IMXHJ z|FI{#vq7d0pQp?DtFx-)$VSh>@?&Aa=j%G2Wg8W`j?sES+i4MwDA_QRR4-F-U~0R4 zZtSyXzOBz?v02-OPN_W(_~-((MI!ZH&6gmp_s*F~v*mPnug&cDlPY4*I$9mLTw{(o ziM^7NLofG#dv|Jx{qCpd1M|w6PaTR+w!KWb^nq0C?JYFw6e{Y!R9muFo-CvsO)s`H zf2W0<$s9bY0Gf$=>Aa$>!giXgsI}QMI3_1})_j&?_J_ZpPl&)>Lzdg))AJ>%%+QsE&9ZmVy1x}P5Yus~{Z%n}R9X&ae4Eqe=yFS} zvN>9ISB_8<{hsq;04dL6KkKL5{V`4j{Z$7Ty9PrpcevhDn_cbbEqXYUzUWLBHQh(qUGhjn2UpJI;4nFHQ?hQS+4IAinI zSCfeL*nEBpyDCxwqA0;&nsj@Q5Fy=Xa8DtifB--h%KRe;SQplwtH0Uu9&JXE}n>7lXE1+oX5> zEc{(N|76wj*ZbFdTe5ChG5B(5^stzqIZv$M_Fi~yrxWc}B(ww#+9mq;i1a23=kksD zRz4mr>X?bN$yE5JV(cW=BzSJCZu4zq+AJq0rT`w~qd#XC z`C1Nbg~7uU%_;q@N{Q7MA5ZpfC(b5VV^`nlQ^>c(bf)+aIJPGPFtq~GHhA`mm#@tD z%{jTWERX41B*=UEr@1kVxf(ljkGfgR3#M1=AqHc>Ba6>iqp#l%bHis0Sk1wQ8U*_I zW89pR3w2Y69(71D?ulU+SR$%W0Y;AO_Y=lrjeEpt+`m4luWgBC?+>)p@9?9@7Fr&* z&n1%z)GN7>)WGO>+nVv?f;w+Wbrx;vT5N1e@=JB1C{#u{ySP`i{O01~QmSjrOWITtqxkLM zYxR?7_o_e2%z5vavrPBp1=^=cZYElB3)&Zuo=x@yjJnU=zr;4pKgcibP1NG?*RLDJ z3@Y65`X%#FpN1v~K6+yhH-lSfVAL8UmpIx`ORHDLxhsA)kU}~`m1fX$b->xeWui5i zr+C!mM~ob1^tEzQ4yjN31($q-4;pbpG#93s&hlx`EE+YKhlz-cdG*)Rd3%#YynAd! z1>hi|lHN-ad;JN+_h&WBd}enFgLP15TMwL5S>8@b!ce&F4ixwFQ)^DQIqgrJ;^D*p zO6cj~dT^#R68y)vp|)`@%r~-p&}d_?^r_lG$Cf)w3txE1!I4g7E^9kRwfgmHclvN& zzT$$Xn)mQ94>`t%w2A9=?<~2d`AWcShi?B22<^< z!EEAu5A~UAp!lKX+Ro61lSMMC+*|rS0gId=_*9AH0i0OvK5VE&hNz}&k2|34dSwRN z#;z7_9}{~DU0cRsLYy4koA$xNx{M9mVO;#AX{&REL#ox@;J}7+-G0Sa^QNm_i}m`^ zZKrP8cGP?MVPhF9P{jd5t_LaAhkaUK-Tx&omC|Qko_@VO&PaIVI7i5%K67-RVL9YOm_aXL3!lU&#wz@XV2!{>g~bc2f|1)} zTDUMCXE_~MOtOBgY@Y6Oo|)Q2KpGw~v=|p* zQ_*aAbSr#wM|`iA(Er9S$LsT$N^SGI%-m29e4PXX_ zG&^GKTNh4JT2&T}PK45*_nPm2OmijRj!=EwITJg|Rl8A5kr$X71*48Zv(xa=Khy5V zhi0sW7U3C1XCv3S7|(;5O)+F|E#wB&D`iInq!}JD=|$@7F-&d9r;(5Fpze-+o81}U zDh#kG37$RnO{$x&?QAJs!c1OCPw?V$!?2J2qP`5j^sd64!2KPySy^hhI@e-^9W#G-uT_mKPbKNDSkS}rrF5V2{MEL@lCKs3 zQKb{V`v=71zM9>;&11ai9nu+#Yh}?ZVI%EE$e;a5W1JcoUVZcY!0^DW7>eR&EOzi@DMvw=Qy=zvgk^jL$#D{j6L zukUcZ5iKl5%kkYN3q#Z8Dg3PN^aH2&G0EJ>K3JzBrh6zn;9Tj%)n!cYt@)_x?g|HG z<##A}j=gp?&GmCfJZsyUdFSw^d(9VvgHx`3xKA7LQY1C}7O$Zuid+6LH}=?xRfB>; zVW(~Fyh98a(roUuo50{PgVkDV3Rc?>w+xH%AE}u&zvi{u`bf;b8>kwxS=ek73L*|x z_1TYHUVgDs*>+h1gvhi z#C&mOnbR)NWWBmE+CSDQX&p1`D>2O!4&!*ei9+ld23W~~iFP|D->YQrXa(-hr4K=m-6nnV<(6do3BiJ_F7`)$ZfT>mW4mqk%evIbjY5bx7VcHCT`Nqbh8hA zbG{Kg8vBua|2sU6dKoWVyqxUO!_q2>J??^CIGg4-#)rC_lTBSU zb#AYJ+W}lm8FK-yw)p}3`(!7E@jQB`aVB_YFZ#>ZoRcx=#q=bb{yW$%g?5pF-Q(`; zKTfG;d5MQxSMpr%oS!c?RHSp)pG>g7>r?T_VV5-Bf78_Ir zIpGH59L!GD>}}}p3U+ObIY*PJ>zx}7k&*0f+In!cUwGBN%{OtISlhgrZ!qIEQguK& zapN1c941t%a4AY2H4@~O-;XUBmx)i zJ5}y{)TOs4>-~(1Sk=L^XzK7t74^B5L?_L6H>rliMmGA#>SW^ugGioDth1yWjMFA| z6)TR;M8bIJmP>(-Z}Ya@%pu=bEk9g$DVpMs2>jEO|GC`wurA6Hp1F_~U%g@3%ef^zIaj;X`1+^9)fOA+SCmPwnYn>|?ApDIOuF4Qb4T$CIR-Cyc=?P@*3H{edn036 zQiS_wer-)N_nJtVE9?f~o###-^|cvzy}?)~lZU&+8bRjRr)zbW;EK~?z50YgIx&IG zY0t&(z3m5@ije6~R60p$7=VY50?e8E1;DX=OR4 zZi6h$7IJESvyS@XSPYHzhl2)6K?Y9E;iNs*wB>i_MWv_LGnz@ zA__hMCM)E9mD4ymQ~PClv$V3ora2pXC%2@g5PFjv4u$%7FIxvOQiqsong5s@yXXs? zwM0g-W^#b*P398A#r?Z$JC6y_?g;!`L1WQ&5vId6RvqG}#NK`8BmZn;KRx`x zrCz`2TAS--w_^D0t{gIjT%FvF77)1a)pTh+7+hPFs%F@h@+^h#y&Ja4tUdsr^ksP9 ze*K=2GQZvGVolEe?w;%%Wti*y5z}_e7upcjSoolmX{U0p`Ns$6$u6ym-?PJN9+YNN zQXB5FsUR4tJ~2}njOku5nAffsiJR9z-84CV;`N2x|3=iihco^E|KpP)^k<*srFo$v)hQ;QP*?b?pf7j>w z{mbRrJfDxl{eC;$%k5;`bR)uxwXioO^}HWZEOTIwznA?zN(#a%X)~=_upUU<$al+& zkg37mdCG$|415LLp}7}b8(Mc)7)1M?>$N-!4rGcSXSDB!OgKDJ{d&zkYyVsyEd$UT zBz{X*_K?or2GGde7y#t{r5#t9d7sih->ClYJ<@M*^)5{HPM~1pzV9sL>QZfQJC20O zi?Z?TG#qFE`FDTBoI1Q>-Y_`dB;+~U-(YxO`%l^kF=t_0`}7-H0Vhhwnpid=cbG#J z_C5l(!%6!1=}Bz=72?S1f%%^7B40tMlvWbS^YsgX_sDR_-4;IN;b`{q7e7C0bM4_v zgx#oA!p0hRhhNt2%V|-2c9;tNg>Ai-Bf7!Q8{Bpcg)$A2BFi;ZdLxpo_ zKl&8KAiyQNMQa*Dzm1>4?Es{MRsNx%VBRkm7lVR@MOlT4-J>EW9lU)1tZnHm%KLKP z^%gEObOUZabZNVs$yd55tBJm9SV8$)0ROvAtgeG5>1sA#xyE?7_74ipT&Kvhmy4sS zkO@Vd&xGVnWQv9+0o_)A>KLfSx-~}&jC^&oy8LhwtV#Zkkl#}Ge}ekR@}8^9Rg&Kf zq6TsB4S-4a9bB6AX#QjD89js)DEI6dSY>E>zlL+g@$soh@G?FnPVH{fha-a)`nKTq z&OWl1Z}lUTi!oQ%{5|g=g1_$5_h(V&X>BUF`|d-M>W0FXuSZTex_{%6E*tjQiRa`I}V42*4&t>w6DV)Deog7b!pfwl4_9A)W z_Djm?#}3WEPqSP8)o=BZV^jkWVn{2UkIZ=Hy4#(Tvn749wl|PICM<6OF$}z%bvW(C zme$WRXY6!GDsV5blBxy9(IB%$FZ+8%?_8aXS5Gk6v==JU)p;jc%l9=qViA}mLR8}`x$UwW#~0Hm6X<5}E>YSen&_L(roAa- zY5HH!1vgf8-4n~((EE;9VO(_lC$hw?MuCvd8EpeM)o?R{95eLIWG~~Apjs(GntCdP zxjmiUAvYCWm>UqFH3Je}_;iQ&Jk}wqoeapMY3={)N8I1{F93*o$=Aa5dsHA(N9Tpn z9X?R5KkxY*vO4t27@$w(ce!CZ8YBMHz0MPcogK^d#W#|z^80Qdmz{igSQb>e@Qbud ztBd~(sUPag;!#6*v2<7@X!Qx2`PHwUF>i7ol2B?E0_AeF{aC+Bs!rX$!%agT7}|&$ zcD?^YY3TLm!oGKLq|>wyc-el}J$@r<;#>1$&NKbjma%3RV`M_EKaHwDHfB8Ba9$!0 z4zAM3NBH#ba>6^bhx8xZF4;y>iQv8*D1L1p-Q0)o;&B< zYj{$?vBK=UMEl1ZjfTUCh{|T!k(E`WC3YHBdq4ogPk3$?dY%vB4t#KY82>qo4y4Y$ z_1;DKjnsKi%SABk3ny5@ZTVWN#d(!VY^1V%f!06%g_dA_gYE)@nUYp=OZ&J;Z_^C! zR-Fe#UoRtw)w@b0P7AYp@GgZt*hkBnzBhMCMMc%bgE!m&ur~Dfa!Na>8nXM4@MT^c zB7hG1QIZ-N$yv|THT{shr$0}kTFaM47SXyB{8D8q@Gf_kjgy8t1m_%KH!_kUEmOpt zO1mK!b|=b%&P`1&&=s>FagO{wzkgw_P_k@|6{2KA%Yu$;`gJdV=o>0!ueL9aT?)Ck z#7vE2C%)AVdLOq4Vb2_9Fl~md`{r7kbeO}{>1(2^A}`QI?iSl&>u9-t+)aZ$snme7 zx%B-A+xj4n9ZP1iUPBn)Co@gn_n51R4wD`t?5KaIbTL0FPLNK=GyBXZ@)$#+UfCC} zSdP*|SU8`;$6EpZw3O4fb`@(8E33N}STUz??`l|f*t+kaF{q1y4Sp?rZdDq0Wf*6H z+q_RwjrZ!+?hZ9hpi`-&O8qEYuOg5q<)CVUm)*@M)Dk0V$9i8fEArBK zVG)o;jPecfUyUna4j+$*JNEGY9Y(GxU!03WwYo$usp;sYSOtstkNBaAmt;uLN-fy7 zpx7sj&o;F+>D?rZMmm>a45R*hi@G+YCD71p5diLjHADK)NbDyaEc1iuQV{F=3HfDe z1aYEilZD>PA?pn``=Gm8Ue7}kta1w?_sq_2P%hD6wD6%CPga=U&~O+04>)_%@}Fyq zJpBD=6t5X@1hsg2lcJ671+D^L)tyaZb=OEk9Y=QzBQ<=9HkHq-W}CIT|1&T*{m_Rm zXy|BK@PP~sjKe0Vb|;^nR#p!x$S&z=YdU>U8nWtlzuZj)gqE$6p^1%(=7yC-Sm=?A z<^Ub!i(MC@upP%((Sm=Z0qKhhtXI?=o}sM%8ervVTJ~7}dT&LieqTB!tOMXj-kJHr z!EkV+vnL(wS_39WY72A!12;YZUo9V8hTm9XqEH)cyGtV*f`{;|2Y7Ol;Xw1|)Jxwe z5hDD$tITfwE-`sFJaMcigf9-RXX^DNgA%;u>Go-v_oYOc@QQ5Ip@m7kZ2Mb$bz_gq z=juCEs9%2Jk|b1YG_nF4RT}hU!b^0t0Lr*SA8$^sC}gwxJxnCSRU8!xlIl%l6PH=L z>_BAsrP;bModKgM^6db6>*av%Bp8-_J~}Yef`pdHOP}>GV>H`N&N9h_Nq56s>1QI2 ziuI4L4hr1^$3?rW1d6Uw*VC=P)_`0bn@-n0G{Yn$HRkgGJHImSwTX|9|M|YV2agIL z`$uK4Q2k_L1*V4V?AZlb7}MVVRHKGVoGPhwV5iqxWV#-8iJnMa4xbi>m?;$YY`}!^ zksz+fsIvKnYaomH$kAj1K`tdJFx4xYb;6@Gu;PKlWo{I4r+_Px&2vY2wGcY@&-zjxs zUp3;3I}WJ^H^mO-=zQ0Gk~VkQO#S|>;~x48l-~)9uka+o<5NOAJajn~|u6L3~!hw|YGRJ>=KBF?J4^ zgd+$!yC0ssDZ#+kby*l_4e}=>s)7C!%w1)JEkp z%ri>h)Z%2{a*+SJqfj;%DtH*uyX(NPTlL!_=gCIfUWR7_CB?T%!N^^LubqT=DWf*H zXmLzuK>^uvC!nPYbl-j)9gLFYi=<;?pL&m*BK(IB?Sf3Ql66{oX8_xu`AmN@Z!F+w zGsmIA7Av}hm}})1@GpGbFAiCy9|~a;Pzmm+qU_BtOFwcn%*Rd98gF|Twf9n`T$kG5 zGJ3lYKN{Lwr+(ij@gVGnon1*ir2A*C%Dr2p_O!Ia(My+TMVW3kieLlwP(@8j+P!m& zuKuUHQ`KP2TKt`T+4=4+r|?lPSk_fVzgTeZP*zS<_`^ef>%Qv*5uH;HmHMh~FY3lx zY`8e`q!_&%2(3;3j@DKWWnr~%{Yrw`J$PuHoxW3;2D%lWwd z7jJlIBfm;RP;odJ4-%@hQVk@I+2z_N>m83E{npW{_w*RQA1kFze2DsudTdw#@SY@o zLJRb7Rf5QyZ&K@Fi8+x@-9DM}dkoR*_psP%F>l0-aW`hm^Q-3>$ke*CxVW!u_9g2c zXdTdlFm5A&+O2$WGTPDeveCe1t>?K1e}2Z^a@Lw|i_Zzigx|b@AuW7RB_;@C&L|(& zo=(`J%u_)GjHLn)r!BtOJUGTSQ-Fv)LrvN``{;358$)H-7dIbPhmSSXWy^l?;)HJs z9>PN6sJiatx4rdH2do2cP4`laec2fGncvVSvS;cGvmfhz(>dC`n%yvVT*$JNd#K;? z4P?dQfLZRf;%koZ12j$x>9nWvquDX(I-kSMM+&F0#4!rBmW-JO;j7bRO9{7sA_&X_ zU~3o?!)m>J>nT`AngY$Oz$E$JkIP^~(JB0XwehWQPxd@I`~gY7qbxfQ|Hqqn`fLc% z`#>5`jc@vB-ea%Yau?d$YGFA=faXf&=eS3uCeA(i8Xl_&pfajZ`pB@wN6})fdw#xC z<~#~6d+2lM@n}4~vKQ21tTyLeQpJsLyW>Es(-xG{@b%lbFD4P?E)wXCrG%LSVi2H3 znHOpUU4#}XHi@MHI@X9+@Nq@}ZUCgp_vmtPCr*c#W#nfM+*Is&^%1(azw5uL-p+U0c%QNr28{zuLCQX90_&!B<_tbJXz+h0(1E>K*DA#nk1 z3B$}+6=%n@HGJz2pKh58xw+RG2mrvBp$2uSOq)m%Ik*GA!fRAtROZ9kYHN~Cz zV0BbPjBxJKY=VDUiv{G?wdCE>#-9g)R(e~X`~Eu@gEUs)3wEa`a!2S`)TIY{B*=h zHNWDRntt~yy;8xL_n5syYqOY-q-Hi|mwdTDx}N2?5GUH(4!Y}WPRq0wk=T90EDIQ3 zO@BM)4G5XzN~uGp1l6|a*crdy{4$V?d8AURV2WR5JPhagLmLn*d5s)YAy zg54IEv4SZt4s0epB!V^V8QirtlpGdmRU;FYkSA?z=s5(kuFvHDl{U71;A$JpLHn}c zSsiKiE={&4#c!I;OrWL=>n3_01;{U6LOzb&zL}fUmgo^3dJwk5vh_z3oNMQi(L?3) zgj>&rd)M#1Ed!6^@d0(ccYm63xT`3XzmKu&8$l3Rx!vzezvnLS$ zxe|Vfh6o?R8)N@GOkssndtydPw4hb5PCxRbmou}Q2Az*aj=wQb7(ZP+oJXM~!h*ji zkDLmAY+$fQZtm{TT)2=<9|dO-&i`aGte4*UOduw%q@f$Sd}RCsE?6mPZ0zUXzSQtq z7|t_hUdDGW(Eu!uxETxdocqi1vF7;KpT(>v`*ZSpg9fZO&{0INm^WBcV-VCn{T-5M zfXuTw813OR7kwkf_Zkktan43TZ0T9KpW`m2{H6~X#ylvG^Yu zT0>)1#>S0?tK#mc4EECT~5`S+#Mdskpg2-0LMp zQ+GiD$at2C2>Pe}VvwLAczaSWN$KRhJb%78lm(jd6s(pAz4ZnMc5bX!x9M4c7@eLk zPc~KH5{SEQAO~rn*+0O9Sg-t7GU{w~*_wcN4CSgd$)^;(9JVoRi#*sea4D=~P~9EO#lMi$2(?Z2}^w^B(y^H&~pp3PNR`d$tyy zXgta1C4F|}k4axH&mA;xYbdOjyu6JI#?enCw+em!4xJYC@vyQX-g=~Sa-Qxvq6XCL z2`lIT3Ll|o$?H$>=Emp?@fFI3-RsZ62Sb5zc4sWE;Y3muIbxu4d_vt?l7? zRSAiM>t~nx^xx+>gog*9MZSTQ&;M_U+F3?54;%}-$r8Xqz6TP&B@1KALjvcY=f1pR zh{U-@M=tHxtu?qET2l zB$XfqTE@i|)`bn6IXI3B&8erEGsaug+SuA8wq_-0JZ_WSZ&zbY?? z(rvB(}wL!);h0%Y-L&R8j_sGfjlFaaE?qJz6ZE$0G+4H@HL0}4j)X|eY zVlH3*XHMGw@hs?~knJN!!{h&{omRC_ay_)YeQ~q#yri78W=XVrRB7`|MEM)qd7@xS zk$FpE4M+t_1t56x`g8-h43B23bm=peRvSKCIvh#;w9gN;@ERJu8z835u*M)_b(tlmFYG#{iw&O&UA~Vw!|F9tzz6>D=k|>d;xv z&~&d!ne`yhxAggJ|LJ{Csg{U`y96|&SRerjNC~4TxABlT*bO&;?uTQp-pcaz9is)- zMj9JEy+OWB)9o|=md$>*e7T$vh7-QYj2t5kZsROJlowkz@XF00hXBd#9v$wGi4e?1 zBt?Wi4fwK$9i)Bx@pmJMZ_yb6%%0^ezJ_|lIF|pVgh_36UZ-`(1XOotPG5qz>XM!dhX~UG0lndaADKhtVUf!__3^a0f))x)JZ-5$TzY{4qJR4{0(Q5`%S=27U^SB-DHp_kX4M-SFHFpuKq7 zP=2<#cePV_HQMiBj747MB80j}6g+5wPw<>u-G10o;dnsMZ{ib8U8?lQXU@8>$UXq# zR23^cx=kj`E-@TUaZk32S@?Y*=F zkL;ft`-Jk0*+Pz;a|XBmP=)P@6$`gV=4s6&Ki`2hIH8VBcdW2!_or0$TEDu@EBEy2 zB9!|(cDvi?<Ys zv!=W0Z2~E4PC|R4^q{6&tub=@nZUF8c4Yqt3@`Fe@L*_ZWhfc4icafHoam?xDqOs` zI69~c9$JMP$O&hG_ghBHy6mjGxs2}strW{jRb72(E>>iqwO>PH@e_zOm}l%%o&Z=h zm+Mji#p03>uB+jbi;KfNr{uXbYeIPs#l11?R7PeQNe>UulG^ZiGUS-E;j3$tUy*(_b>0nn9>VOaE^*qlj zH#q2fD2Xe@i5$~8zwUW${SO6~hrLlmQVdT~?uEpmn#;>SGAQ9LmLeDv`CohNnY2c1 zA;ryhw{f4?)vE)hyQ|Z&(Qj9%f#b=}%$vXL_jIX%y2Z^K4S(#Jo}FjZ?`u zD-d>!PWzfI#g6)EzlV;W99Z8eDYVhM^%R83h5mJQI2nq>G%=GFOO^&s4-0)%fzNBKEW9*R5ndJIkRY8Ka4CWiA3~p4p&fp+&VAw4d}-Wixt! zB%tB8jP7V-LaLd&)@?QYF=K;2S?VXbZItrZ<)aXvp|fMBO4jLxY0pQc3d0Krk3t0c zP=}sq>m{n=pGU>s{owwxWZB1Re|cEdyri5L#8B3#iL+6icC>LH5bb0hBevBd(q=Rp zqFSEKH*C;f_feLey-P(00*c%X?OK{6!ZiNH)$VL3K8Bqcvh?v;3JsHfnuif{lE)xg zRP%xUR!YV{G(VDqeCRNEMFd66>^Qw|O7Z(m*^@bkc5hN~8=uQ0cMh4sAX7Of7j<}B zyW{SE@{IAXOF!^w+tb!EtDy4m@~Dxy=*R=l7q8Qwihv3W{Lea!8~%Den9L@?ZGyv#T`h10US> z66LLML0WHwpK;?>l5OjB%Tg3+#b)K5;jvou9=T z-XS*zuq%NTCTzmGNZeLt=MWeNFu((B-d8>(uY8(1Fep&_5LMMy4JtT5B;?($x|d3D z!=O!Dqo(gjUqFl_7rm6k;wuEs6*PANc+rr{Wt%|Xg?#&l`E@x0C-qA&AP1=K_qmY1 z{x@i*9o>wvhSzA6vy4%7kK4x+LHcR5>|Y1(z?8@f?|t2DSdsz(gOH|*Lu6J9}-D=G_Q%W z!oHEHD4Ap7{Odsbu$vb-#11qZxDYgfS_~Q%Oi{7~AlhFwf+2Er@9DZ))QQN zt2EpNkAmdQaY{s%C5i2J|Izmg?S^^RE<)}=pRKDsCpB2U_kaWKKWD=>cX&I<&019U zqie0whK3vbG;K5BM7L2vY?N_Q0<75mB`{5S6+_bs!FFvFsjpMsA>ljDlb?&g{uvKk zxA__%Gw9KdK_pa`d?y%UVf?01Q5Q=t!n3pa=i^UKG1OV8cROcq%#4@9!asH%tvP)< zUL?liP5#Q^9{LrhC`q~P(DRH&!>QUu8Ng+5H?w(LyT(6T*Xx_UFLgB3H3DLpOmxfcDrJ!Oqh#iO^zg=#w0BCDp z{NE!UkVele7!RxrQ>=_dHEzf!AnA`Y<5m~P0L!0#47KT+N`~1MezUO3i0vPS516KR z9Qf*Eiud=)^Y2}_?^bU!IKyT25A$udC06UXBN7)`1HAi^48cMU-<{iUgip0mRK!?I zf8@0_^z0qhxy2`Bb7I?{RgP9C?dLiNbOY7w?y&XEW0SY=pz~x|qvpQL5(bPvLrkp{ zWIab>|7P!T-8;La3?3V&`N!CdT{mTxm{wGVsw3qmm{B0&^%O{? zhw7tNzim-2v5QCEm4TKE^kX^9kH^1r>DYOgvr~zhtv|bU$c3NyLB*|n?quWIRfeZq z;}9X_1`4$VtMyHfDDL_uQC2Sj+~Axg9LYj!EPsym;E$($+T{em)Z)vsj6BxPC?bD8 z!nABoCl|`Z%P)===BXxpzC#+V!&Hcc9xr=wARP{7C-}NpzAdle323tJ8TrtUy|7&q zZ-~{{=1%Q>eCEuU$sH{pv2h0jU>iY&u>5M7Zt)LjGJsWksha^u+}zs(>BUlLxy7S` zV2)oS4BlS;*X6>`Ap4A7+|o5g)-@>6DSWlL&aN`iQ8l@fzP^i^e zp3d?Hr1%ES(Ota$_t!0W!^3*1?u~7Fub*?8Qg1}vALepaCMgCBObV4vebAN?qnE7E z@(7{IUhEanf5v~}*Jp)#GUpaLAVIaE@FiWRVaRtd0O#0PBc9Ere)Or*x5t2>z`i7H zushC<>cwc^XKD$O%*0c)z^sLp#YvV)dN*w{Or zQx?D+sqo$#Q1j+z^an2l}{A|6MT~F|hZ6Wjo1i6uXKJjzJO1%5V!E@IOx5lLK zw46fYvXM@t;#a{-^T-b}z=iGCM<>^(t9NzPGL(fQzmB{TV?a!6z3OE4Tkc$~1&xUt zeH}o717X$U@85>Km3p^1o4KgFK_#=9V?g$iln-|NY}fc-Th;1pOo)ohsQRtrQBLE( zUzDU0KY#-h){8HEZ-{(P&Mt!ajnvF12B$#4!^Na#fO>iT8cdSSHdnRhAz2sNnUqqW z#0%3t^fs9Z9fo9SDB~WQI+Zz;qHp3!R-EC|(jdl<>U3t+>OoNV=;JyBVxHutEp#dy zfzoWOMr~wn#9I->8PD* zU%imUyLw(d|I-G|&ygM5D;(o1o*tZ5A8;tYPJ3?)s z7U%KIu%MtFjW$)t)G=O9&keSYF59d%0%qL5y*{z&>?X4UiV;iBsNWgWuwJ8H&Cp@N zm%1C*DJkv8ZS@=-FwCKRgAIz_PSv*F$&=w6<#P_~@yX~${#_7=$jJjEg?1h=w68UU z3h7-4{l|b;?thy^ws3nrfV~U^Xo`xyGQhT_a-$WG9KwpYi5eJsZfQGPZ`VAj*K_;$ z9rkbIU!BWQV35A|S-vAFV80YZ06H@HLcHVJ6B$-5Ja^Q*aeO^%Wlf2YTq}bi>$Ckg|+V| ze!*H^zU6s^_LE(vzBk)RypyK1BJ{ha=BLaNa97?ixs~b;nR&!NK+o+^f^Sf-AzR-F zd3)c*Oqjh%0HmK+aiI&OHSo9~hqFH2B@h)iOnEsW0CMEN7+Xt7m_YlC?m)vi8O$LU zqvMeS9OKnKbNfRdgFM8S4t`zU3YfUOnp9)>AaP}YEbW%NY5*0>IBQLd0tCtOR)|uD zkTgV86vajPuyzqmGv&^O#wk$ty?}s+pFe8~gv;{^jN%d_18F%+NZ1dkOv~Mv`NEq$ z2x7m0o%K7l6FNv6YMFWFRylv_79_4hC||ZrYqFdxdtU#&H+hTV`{kBx5)$3LS?8H6EYO&6c0w0deNTBpBFJ>4 zwKg7B&t_nlP6ux>z}SRWTDSB+krADl&%_mYTeXW(GHGxsMze=W=HFcct2hQW!rYD( zF_s11T?6RQ*qqltx;Nl>3Ag|lO_4opAe#Zt05={n`1 zG$&^jWEA9K110bgX$A5TK$dX&hB`nsb=6`YM00(jRkd!L3`294q4)F8L>6U+9FT?p z=f>7FV)WuJu^$_a`}wLPOZNQI+HzIw?w^Lp2n{Et+^l`13r^Sb=Z5XhOd{^)rBdQ@72n-{t6J<%2W7v3oRWOi8Nzb;L^E6!QIKmQQ$+B_ARb$*3f z0)L@37Kz++nQd7O%YvV2TDuzZs!z#s;NA&a>r}$t3`fZ{i@o|lEimh7Y!$sr*mRJw zBHh#k%G#N^23hFbw$(*Q0e|k-yO$SuK%nlxya^HIKlT^G<1&%+?G=epCnC2OCK$6n zk`JFusT=XaDA>9pU%W6hv7yZw^9l(QYP;BnhkIoVIUkhXtx;9*aKRi z?vVAq0;Au4SAIa^R9tLj7j`!%xkdGl@Ab8E*gZL=qy1oVQRes{e<%>vT8)5B5a;3r zJoCM9dIry{a=E`X?;ULBzI_vqfTiiEic1@~{FfuYiB}_3M}{ApH+a8|7w$XI_z(ye zNreH;TmR((z1ZRh55jweD7`-Zd_^?R)cwwn*;vF1FJNrG_VFX;*)#)w#oY<{MJEkn zn#V-?IrY-`NP>^hHRV_KQwU z$E&FNNa$F2*7QZc~C1!B(LoX<0w zlK^VGTKMQ*YBCGm=7+T}nr%z4&a=kQ>&FkWgw@HRIkZXg^Ye;T z{&_(_PK{lEl_$%ol-6v$_M;-&&B`joT}@qI2N^sWMqhNwgF5!Khs>r|!bW?=HxnS&2cutV_Kd0!!|L>;Q}f3T>=FZ2i=B0@~tlS;{uYN6LZOfvLV4Y$|c+>sZ-5b8!_&QO;0=#HL<}nFF1&Be#J*S1xsA7^k$RctuKVMSy-*SCe%~5It$Tsx&Rr5lbDEUQWN8*B27_b!VwO0c>Yh%Qu2mS+(Z4mw55r3{l zl^6%Cmh!;2miIRB%-MvA&lNXIC;H12(m<~ew4qFtwo>PvDasr;H7=LyM~XV405}E- zH`esKrkja7lRK9~qR5K0Z39M;Y{ z7GAuCC2og>X!t1w?{XG*$^&cd!j9toCBf2Fw$<9%zJLp_(`g5Ir<%>p1zUqo~DF}ZFbkQKePI28hGm8%iwN3Y6!@BbX6VNVh%u1)ZoI;fe}8{Cn}Ey zt3AfOW9HeR*S~#RmFXaH>7l#7TMuv4+!GfESqB-*GyWdnbfs1o1X3)#V!+OhILCAm zrq&H6rq$8@XP_z1^`@r)Yc3K#sIKr;xa9s^(|xGb`uZWFEtNK6c!V zc{ACe%-gE@Nwr+VZy@MMyx}HU6F#5;-@311s`NeP^f*Y`Ft~p*_kCww)})z;)H0FS zka+oC^dNqH?xD=K6 zUBd)QSbcWJekMT^1lSK=I;it+Eil&}yFFjW`8u>>1vD1mT02zZ(bwV?ldxX{0zu>fvWvez*e$P zKh}vb`WD~~|G0FGEo}+gRQ8PU=K#_k&AKeU-5vUXG^QHz#;^<(&mJ1v$5{7jfAewfuQ9K)a=1BsPzyX?RA z?SiV}Z%GdYnF2R)LMHzeku_Mec zdh)&5QV=NPCJLk1iQ;B(P(3ugzV{)P85VW;p2U$jFp!+(eez}dFaJ$I(onyFbO)8` z*0I3Q3GMK-opnkzvJXC{b7`#7vce^Tn1@cg7Ajj5zCPG%HTLfnU^M`wex~1>i>J2~ z=8+vLTYeF_c|BT=8f%*q(Cr+R@AI$22Y|~vemJ=p@D!}g`y11@TkP&n4Y{}y|Erj~ z69H+xDMF%Yvq{_Qz3_!0(Z&4{<(u=OE9-8vh6fK02JJ4@VtBVVsGQjNx#|Ufw5dXN zRx!5rF4Ql#zS;j=qlJ*ydHi$9L!$9~dv=EKS)%31cS${oy4NyZ568;6@f^xU37tCU zkQL(wC=dVG3s=qUy~meEFfEl=_>tX<2KS}adEb8=fZ9U+fi;ww=g9XRh{Zxj52_mG z=`osa<>jKKi6Yw6tBkRA-|2ao=I{~YG#7N|h{VoHp-l=;%?D5OkxK|K|NAgNXb|Ck zZZ7aImzZJo^}XzK;9QN{vP&4r2U60YfD|b$VJ)5#&=?Q?zKFLsi{IR~Qi4qF zQ~-6G+2M$j31B>cj=Z+$Trlol>ehBYpuuyS>fS4Gb+MoR+b86Y3_EOwq5uN~s-oh_ zWAG5N-ma80GTmNq+yJt@I|6Rk?#PZNvsz^9gMAPB0k{|d)%bVw-{&O>Xdsow29;yY zX-&U0YaCPs?y)08>k>o9?RDL%^b=oMKB0!M9*DUa^we&bJy~O+x-VobNL~b10*ENU zCk+N|jd=S`Br8|OMfR*TvQ^7!MP8>HLH~{Bjx^?6d(-jD_E&kWog5g0v~)NG{W!@< zc8J@&2Ms% zU17SD{}1Pwol{Ata~4QU0xSoZwt1#sEvhNfxrI+(CnRoHn6!?$@_c@?m)siwVie%C zBjPA5Sy<-rq(pZvJx_8zou?0*ci=p|8+B_8`1)A0fqku!D};Q6=%>26+{iD1kwtQV zZ}G83Mi=FovmjtP=b4ndBs`ewx1=vloIS5zOsJu-JcBk)BfxFJp=tc=R^e3;_iO=O zD+rIO^wh!TKR*1x3b%9HEIvHhENvk29V{AcI+d1Bmuw8L?*fJTSF7`~uO*!Xpg#5W zH|N5FSE3CID3$qOv^o)l5Z^uaw`-yvQPbC)yv+R|54J{e>K#o7plo^i6vO3w;pg8K z4liy~CAMnbYch^TCsu%93ShaC;sAe5`D%IQj@d;>@Sj=v_TzMJM6H1jpVwocmsN?) zGfteEj9@R@9)_G&O$PT|yD7+?`}%cw{m8~8jli=A#CTT_m|;3g8IM}2U)<8zL_|g}^_!%JsBQKFSn|{2g~K{^KQ;bs+5_ zY9caB<21enyElWRJ<%ha3;cdH^xP9(Syx@+HPZg_lC&<>!Eosd@-SY*OfWnTK#kl6 zz)MDUzRqK~3X?ZRfcyu5T+=(u!emA`g~M;kHdgD(uH(I69Kg+IkA-FkbIIPP9H8K%SV z16o03VP4lYZN-hqHD@4~gjxaiQj$+35HtFs#S&${v)Dh|<%`3R`xi+3%vA5ii% z71Ma82Jdf5xsGD&cM=^zaFkVHi+{NS)yJby>p-zZJPbB3hfMQA+u11m0bzoyg9 z?hK%2?CfkZnJbb9fdP__e*~@p5e2gH17>fAEidIY$dN299;hB^CN!V~T0#%sidcCj zZTP`z{cV^&O#-qiHJD)vF;sZ)7hm6rBaMyC!vfB^1XXt~c9I>V%P6zUBkCJ%#h)(W zj^mbVjl@9iWM=zrg<}k5`GbF^tDVDR>K{em=>Ps_T$T4OmSDH=nvTWq5+<_xO4D?( zBN~H>tKM(@)Xj;Pxy%zlf49Ukd(Cz2ncnws9KfOS5y^?u;I@A2KQ~FP7?yN4eWi)`1oDNyo;Sb4f(2C}yG*hdcFh z6{~t??QL==Sh34S;93K5Np55taX>BEAEqqk;GT`NQKKT(cX{|r)(iRXHj$!>iq25$ z?3L?|yP*`hfcLs??@3m`RN}(s*uV&V>jj*+yVkX}mLv~Sx)c?wDN^3Yd8MfuJ3x8S zK9CpPw&D$nQqhRUN+4kPfVNXAc#B-_Mgv*+yV~%&@4zxlrYfBX9K9GdS?fuU12b20 z7@mCkAX~j|JVa6P3+-%(A5DjLhB&Rb4`=|_%Vk|$zG%0xH}N~wn*U9x(l4Df@w`FG zDy%s&HrgxiJE8jgEpXL5DuOb*hjGB9lm*~{wJzZ5xE6{UdqeZZBl7A4w%2V9zIB~r zM&;I$wS136t5|;9##L8Dc)MY_9FFpd;mSWCl4!Tb!W|FW2c*1Fn{!|^b7h6f-v32{ z2{~IOZ3{o!q5kf^m5dM?qiE2DbkpuwfQK+ULFt2?J&IsNs_TrfY8 z)ouK)zOn}mW3F!tnSguDZKEhUI#o7m|4~Sgl99Nz42oZ7hAVk{4ssz-&DL6ZY{9?R z&zAA2F!FsN$gT^T-kL6Iy2&Ap%tfq7a$MDTQcfgY*V-X+rE;GuodOt(!6QujNqs3Nf`zhv$e`*`5kRgW4$ZeaSS2+C9krGb zQ6(<9x=aESJ9e)_RMbw7&9IO5=~cZ}pcU%1$lv?QlBz8zHWmDst{OCd}~T=J}5 zTeCZPr_gvqbd#jH^20#p;K8G2jx4Wucs$hz#M`DuRHglG}$Ewt&5!n`nE(+Hd&2Bfa-wRy@5z$C+9E0>Uh z3yKRbUJS4sJ(m^xc);$jU&IVYPL^2~@ryLgU1T$&?Muy>mx4D$Yh8a0x~+~r2S0A!32*Cmm}4gwFvro1PI?>A_vG+;BX&70r%-r==oF%Ck7>yci~D; z_0*82Il!-X6OW(D)wbnKek_$z6FFWYAGHEk2r6A&)0xzYCD(w;2%xK0ITEkO zMQaK<9{=$!?6D5b2a(kymRshaC<_T{cCkt#p?frkZ?VctGBc}n{<4c zkOO%I0)Fq!Hz`SILX$eXS_Zu-($a2P4Nsr0$RyzYIxtF)ES=A3%hxVAZ2?iZM{@+w zn=xs)x|i0|QEfTLoa-rZsqmuGIZ|X?__r(1M|tJES~gZ12WNhyDV4%09}=^}T8Dmy zDx3fM4OH&LYw{>M4PGpKo@-SM99Ax_ZpF93P+xhi$zxQXIdRB^F1v*sX)qsm zzz-UFL{eSJ$@!=#+cGAK*Tz*wR)0X69>A^#C1)8^Ayr#nUX)z}@)CCv>%mRA>kl4C z!G;O7q{=10n!WWm#G=g6UAZ2u<$3kv`*f9`h0#{EUSB%JM~AO|8$)KEu@rT9BT5J8Wz+qBOW$)~ z&ir{ztN~8VFx=SUjo<4y9WP+T9LLRZsqbQ?I1GncH-(MH#iH)*&1CYi-`VD0+qxkm zQ4#D5b3^fkdDp&LJg$r`eyeNb7Gb$h&kCx-)lIr=lQ`GRvSF)%oP`620g0H>VjfiO zYeL}QvdzB<=HLTmp#|KM!hzjumqqm&>=mkoFVzYadh3Xbe{*kXQoFyqt_lVOSR2@2 z^S_y$EakM`WRSE6mbNxKk8kLNX;Xeo-Px=O-_}9EHY@N0+MgLx_uTZ>{l@0d?N}EV zlScG4SUmmi;nXeQd)j7(Locgd%Y{m51P7uue5RswN5b6KqYI5!>0=ctHqNEoz#$8Q zSF*0%&%q4cPqP_|WArw_j%8?%5Q*$#a@%2HHM0KBa|Y_p>&y-zt&&$a@}gH@0^#_8 z>g602JZoi3_&#T}1RL!VGc+P{@SuGoYYtslL}Y);8RydOY0JGf5j{!)-?e zlXZQwnzyea*EZ=V*S6`4IS)Ed|GIh$CG_xuHkDL1^I?(}Ki~@D2J=3RXKq^#uWaZL zgv#>J2M!E0uMT@)WbW~WT5iWc^#XV+0N+Rh_MXWNR|KMPIoJH0HJkG0La!g%<+Luq zfl8g#*SVt`Bxk~n;KR8GMPgL<$U(-kauYl~8WX6*jMrPU5WBq8PoH^c(o_VwAP@&h|m5^#>{~o0bEM zwBx%XUkGc-SQ?24)c9|_jJG^ubL%JWZI-AeWa=T78t5pKc=BzDvE(9fLpge7G;>9C z?e^^jbTx>ioTm7I#=9OquJ*5gyAQZ-*)NtK1V;tB`SmPo-M)KYOf3jVE3mJS0@$4CFKBg>QUjS zYX7!lX3)p|=2?)ugJJexcKG}0*RTZ5Q8S;)FmKr(ynb^z|0#j=E4}Tgg}sMI@s2bI z_Uut~rR(5B*~TR?z4#i_orbp>U6Ik@E81+P*Z*tpt;3@1!*$WY01FTcqy+>81qB&8 zl#vhwDUnu?kQ6CtOi&~Q=~6_H7U>*=lty}hkstKreaO^1zxRpzxu2pA)Jr$?C}U=7&x($dyY5HNQgS3r*2gT5#bmFhT`$U63iq|| zhH5wTLT7!fl=j{3FJ6S%%M#@=!L)u&Hi^5fj;bQ?gpgI>s<;06W7= zS#gU;+r;B;jCoX*H0ITqYreHnotZjWFf?oAxFx*F3KjH@4ppL)GkdCZF8IHLj34JO zyJ;9wXqQ1ovq{#3JYTYTMHez%!1a}Sa|pH=x=U%{JmOqfiM8g zoHkpF*I{(h`&eL28e#xNBca@ht7XLn<7cWwrM2P`jyq` z`G8!TICtMy35Rl(MAZZ>Z8WqX8amnwsc0Hy_he}=mgwd6g}en9^xKzwed;(=E{JxJ zO7NL<`~kSjR&EYcQ%XvvQfyh9cwPfZF6g2Zv}Ut5#`-ROPy4cX&)h9D09>$7u0*eH z-?sp5;-7DOBRC=-{7zMI@jI%SSg|R=Iq%U?Mg>H@1*a^@Xv<5yx9elb>z--!GvcO1 zCgfmR#B`PBPZ`#5Xg~w_ps=PL?w1|?6$e(oR%d}Hk=7Xzu)ZvOs?+t!NuYT9F(Kb2rwRJo6=U6 zLxSv2Q+MjCU!E(+pwuAltvz8`&znX@o@*ip&u`WnU*~JV*sZ$3i zmma$Vg>AyjmAnz|U??t?6qr2i8u8{U`DWu$W{}?MI-ij~+WQlxZC?og`t@$a`-+RE zzte`P9#+xLxF3n1%hcp{9SmXNTgFl{S}pRNjr_}$ZC1_uVA9!*;(a|Z!I$EWyNLEu zvxNYzFCd4kiuFqmsE6SMQ(%+&EthiDZ39W8A-;w?JJO*yHXFE{At^Hw0SpFrQ z?#I#}%Qk;DgV|w!u-9Gl*{*d`FP|#uh7ww8&0g%Jg9ZO;Tfx#HowA!u>3B6d*3Yxw zb~bHSoweRl9fLAl-&)8}7f+2wmN)`OXm;ze&+g_jIce$&2}}F|Jqn)>g+{ zBlNV7i5k!05`Z(LToWVAdbn6Xh&Wf4)%~Oc5Q#Dp9Hy!V$J5shBjcae+Y*z zrlj2E?i!MnvTIkaA;&1A<7-&USPN5=1=ZZL05NS#zQl~S^%mQv8eX!fAaw1>SgG3? z*4543fmv!b43@IdoYXL&-A&S9TTwp##*J`}2M)MJ2u!^CrFZPe?>0!j6XN!`hV!4M z9}+c7R$hyIC%rqLSxx!#eW~~6wiR@-`25(g%`3w800C4zKU7hHRp;61D<}%88bFih zkF$l{i~p&Jv02^jD&DDFcm}AW7XixIM4#wa!UMz~GMbP(QDB`=fn= z6`v=zmz$=SC&vTdaO4df*+iW-_Br6ck8SIiOW6Bf_fEjTQLzxzrD76)PPOV%n!k%> z#9${%@W(1>+@V!^Sb_fWewn;kV1woi&OqhZ0HpAk%inT$ALz})hG6?I&6xr0uN(cX zfm2$US(SegNN!0UR`#7fQ*>cd8Iz7)UthB6T9+Z!>{Quba}j}dDS?l+z3XrLeSch; zW)XdjjfE+Kc37Wv3x=hIzYUE`4*vE$T`gVR5EFDy^A8 z+;dEFTAAC~w0wqFH?8J=ZgL2lIm-;RsU$3>VR`xLrG|!jPLHb%Om|yrpiyQ8+r&(| zWf@Xmf#9moCnxhFIftUia*2Eb$#bLN{c59IBAs@gj|-H~k8zC?HL$%Qhd#L(+oO+Vs#38SOqQU><*p9_TI$YF$nO6rt- zjnHPfc!D;ZYScSQmYQM%S)^6)^b#SHNgZhM5pf!!hU{98_)gpGAh+CifQGC*6a?lA4!;C`Mx|ieZ z$G5x}H;SG%QynX2n-Eh;`-^6O^SgtCf+pQRt%(G z;UnTiSBClQ#7?x*n(;&CGpdW}lKdxY+)nFl^L~Q!;ln>e*H3A#JfE+wkn|Hzw4RjR zZ1c; z8qz+58O4S=SCU((U}S{RNk&{=A`H$sCK2FiAE9IAU&^Kd)z44+1K3Vc;$RI^^L9jNNgKnjIsp zaBp-v47!qJezs2@Jc1duB*N(*3sx4ud*AdnK1-Mrb|a2Iqkmde z64>zmYQ7x#CRef=x&%st*q+kGbQHW@MIlA4h-o_Ny4sQX0W$50E=w?+mtyIoR??c0 zq1|0GbX7^akNG#0A(m&g$+BD!`C+G)CV)CdoE)}et$@C1;5Zk(pu&k+^q9xYSzYEI z-gy{@*U#=lk@O=qxvitgXS?!DS6?oynPIX)3(o~3w?sg)twUbo|M&1IiGoJHfhSc4Ox@$H_HYk4rUD9oi7{XAFU0*#)D zQInfQDa8=+YmqMw8=U$*S1?F~l`aXeb6&XK$EN|cBv}l^dknsoP!NaKjkt?lQQx|3 zs0a4MBNv0ot<8o$$Q{9K6w1qy1YbAwO=*#|(tu5G*81k_ zEJh6=aN^gB>fMSl1inY}}J>mivX_FP>UTa=+h59Q# z-y@wf+IV4k&(%QL9>;gik4B}2j-O7nb{iZ}Jnhv8{o^)%TMQ1l3`%`(rzSUl@8xyC zVH~^QZsQ!z!L%4kddj{YBszLn7YrLEbW@sxc7|H$XjhzvBm<9)FkZRjXqWitCAyVyJVfqcoDV6RM0fKbe?G6R%h~{j-~%}B{*)Fa?%v6zo#kB{C%~`brg^CRB0Lh zQ`TNp3_+w-R1upS$1M69pDYY5rEa-4gW_msF24Hh^1HrnVRV43rpzHWDRG^yl{W3w zrB>!jKCUAS3qF+CGbZ=1PcW{Tc%lpR^z$!4505_cuR$fCBC&X1?G?k=m6`qbSTg2a zp2riEak6U@(H-?Lb(31;Y1B8!pPau?X!QgfMn{|9gpc ze!vnpZI1@cN_$KtF6G@+I+*QpY0CeR0`-AgQ=O09_uh@TAF`*pF<+zEiuyF{WPjW* zV9f7ue=c+1ZCo)Ihwo=zb?GTqN^dVrP~Z;z{1y%MJ$RLYOn?IJsZj8&3e|%jiL4IX zgFhEkO~@~B=ayc--kn`Q$Cl#U#{)`&W-d2Zddp~XRKN6+!C~nO+q~_SDxaG`9SX{l z61Hz+&&&P&_7?`j#X8q(2w#n?_W4+!jBAjOhat`SMw`JIhOg40$`#XkJp;@fC__Bt zI9s#rexYW1ZtlO9xbhn3VQ5<7FqNdUKjCRZqh@cXJO1QGFSgRO!q;aW-##$hI(BkZ_S(1J z3n$8L)W{0yaW$iq^ zz}gG=Gzu(q&3u&A`q}U8-QH7qkJRr`i-{95>VkFUe;JwHqh{MD<99PIwVL$jd#2C$ z{NBx-k@}Y{X?{cm8=Sl`sikIl59=9!7d->%NGTR~}0y&?ZUoBPz)_S84 zrZ_;inABZ09?>aRmZ~AM0juQc%bykl3@o|98Ek?x2#aY=)a73$FJ@g}C^_h~ZFl1| zCl?oxEj#<)Ep`480bQP_ z$t^nI`F+otv$5N1`cpmBcuEkaRZ7Ek`VC8Z>npUOLk2M`RQ9zSIxhSm9go>m;xpIq zBD?dj9oEx(^c9iraLN3BXFqk94Yj^4hs@-YGfx_kD*corJ@K(@in+PLWWs3?pQmTk3*sI+tG^?;dJP%{>P)mmHlflt?d&N$|<}v;FwcLs>QcIIIx#Mi~=fZgfx>wbT6yK|g>s~q7 zo$Zg`Uw3@`*v1D#+N4aXieDJ|IKQ>FAH>Wqcr8KhK)cMa==H^+x7nO4mPT%|4Q+Bk zte)1ZWu02O0ltH!>mAAHnYb|RXf>ohx!c`iE@!-8bWrjhfQ{!D@0|;;29NL9Q1y#N zdLvbm4A+*@fMO7{tR zUw(UqVLO(`<~+ZFjp@%ku1{$bQOs$vK0`%Xo0C!0UzKkTcKRuU6|^{Xe?IKz zw*))~Nh-Sk^q=7}5v!!OdUJN8RtZuPDYh)RBB6J~TNc~!rVaKAujM%|pi(n3O;%pg z!A|aM4Fv_l6(#zx*}Q-`7UJk~lgOeWc@gU*dW9%ioKeMNW7;wp{_@-A55}J0Zc3J^ z{kkl=%VWx7*g3OF2^H>WUZ3k_?DOYIGq%?xe#8CmpG_}q`_IYS*(3g$M61+UXJg%d z^U!8eAbzKKp|NB0$84IBE7n?bY>s92>;@TcwKL>YU(V>Mv$iQq>|0y(o9$}GR(V=X z-pO##e(8*h>CF@JlMul-Z%$fzuXW!c&zbfPrMaQP+eW6)m^I>^lVMYagx(78O5Q7< zXd03!39;$U+MYtI1jCiGJEpkiNNsg}lEn6h05l;VJ>g{;Ef|X*TAhhKEC$o^M%onO zZMN3c?5|&Eh~VorD)~tlyKxk7&4PP3g)C@N{@7`Su7AIMAY`s&t&(C-_ZE242OD|E zoCwq$=%pj`OEa2~2%q?3`tvB}^6WPIQ85ZV?<~lLut> z8J5@W2{SS&>SsMOQdc_ivbk}(zkp?7qP_j(pRyzJ%(GNl+Z)M?8y1^HW0E_wXy%S5 z`Zi(AHkY0A=0W*^qM*kkFPgm`oyolv+JL`xenZC~?zF*D6-n4R41-aN3EPm7U1_e{ zKV0Oq(Zs;v^X}liIp>b+a}JKyj<7S@rl+sS_GccxJD@EyFPhkwKj*Mm?X?~1^y6S` zQjBAzCTZ<&TDAus8MQ@dBp2brsYm2VNmboeSXbtmak`6fh3acr* zMHaoxNJ#(SbA_lcu9qBvB^J4s*wWKRs>a(#J)ozMv7$ov2bgj!j;*rG2ufRAT}g0SmbOQEp~gd*1&E%!Yw4BWzcN3Um7 zetoF(^w-JBlWld;E_CF8q17yI$!XTvG!36MWAB~d>M;&Z6evn2Z?IF|Vg(DUs_n zP(^9^G?ZQ}ZZP_+Nj3{MqOg;RIUY`!wGU4O%g_B@*j(-Z+a^dDu<*?sHl#UXy26;vA}&udsTZDC zmpE(Io!LD1aC#xPdYp z?Ny`Sw(T}7h$?@L1;!Xzd*3j58S z-E?Q#&x{T_i|sgNnciu?gX(~l1uGmnE#I}R0=l-hdO9aowmp3uDlcP0lS7B|T5^a}e`!5v zg)Rn*|NRyiE5hx&HFh&^A|BtomEBfN?(wm=&syGQ@4tl-exOy;$Y(YAtv~EcB=hfF zV@uz{o>aF#9q%^SsWKV-Q7w6!2YbM*bWc71>=>97MciL;i%Qx2QTN`|usCj1|IwQ> zR9Y6}4b3riERtQSxjGcB;e?^wc;SPdwjI?zmRhx;vcI-j#aTWQ7mKTVV~rBz^Vt0D ze%WrqVs?)dbgJHMA6|`+$15#2{Su-C@jr!%+`z`$BwJ^A<_vg4;nE~!%j)OPsVf0S z-mPWC0kzQXKsBMKYmL|G!!}KX44jXu?_9Y;F|;lIU_S|q*%#lk2(vQgC@Co14Q7jv z4fCxa7_>@Xc+nmQ6{Huh9Tr#ESNNceY4UE+MPbuJNgli+9iH}O)i>OUhT2VngwLx$)N*~UYuZ-+_>5eK-|^@mHyNFh6LLAb(a~9*eCv)bkzck@(BQ>;SYh<_YlhsX(v!TU*1B9v+NAOxy6Wg_ z2*sstuDoxjYB+6`UE$Lz(NcoHa`WkM=apVYYbxaxW>K3Vg0b8AJEwE5$fu?^aj!T^71(Rrccois@JXh8v#srRai7@`VVfjm#3rBBy+`ov{(*$a zX(||z#XwnCnj{i&Q+|FdDW9l02{JPE4*y_I6xAUCQ$BgpfWT;r*vd*@d}i66uqgDZo?$_?30rqE&B>D+IWLOS%W^rJ zYsZ_y=&QVx=F6;V1oALOPS-zVsc=vouq*wbAhHrCZ?8)Qg{_mLRT9ozzN;U9^y~}c zLfo_{iD&xaO=sE_^GCHm3^eG&el7Zn4Qy|;#ZumIBvU*MGDk<7#rxFLCT=?$U$yQN zHpom#354F?$7Dj3sEe+_;}+_^D@tr9FI(K0Bz}7`7o`z@YH4$h;TiSGG(rCpaAqxe zWuR(V`#4_|jfDV$%vVb6ZhWg$XPcgQs)9JjNHF}7aQ20;yMv|HNQ64S%h{PuBPv*a z*iyjJ$CM~lvQU;|AWU`OTUyy#PoS~etMyPy;B>d`&~gYHH#NPWkumB#4~ia+!kC)*=gQ4B#*nBV&Z?Z0PdZhiT*S{YG5DLfm?U%^JxN6srJ^r zf}`%T-*=fXnb}^IxeBtkM9Jk`Qqny`b)dH~u zn~2>;q3of1@Phyf<vaBTLddIfgAAyOSOR?2A~&c|4UsKkq2iRSz>39IweiC!)WvtG z=au@!cKR5M%Uq9r1iMx3>ywww>)r$guGfiG=Qp}`>?vGh=R~1$hII8Td{Ltt|xld#R6nF4%#hqgTmW<9wPrIw!E(1VU(7r|N=NkK7-y@haEnvEFLoGr4GRTL4IqoFPqdOaIbWCcY)O>5+N-pTEY7{1%r{kkiD8MLz zLoWZEK_S}HKTPj;+RY$%r2bc=05=zxN_b%4BdH(fNY55C(3=n%V9wZk6!q-aON-X(hSWAY~GgF4MO@E9}14 z`$*w^r#x2XOevD5V29oH>(^ngic&pj5o1%dP-txsV?7_R*H%d$mKcom`k!YIkMdzW zV6Jd+zopYpTCo}_=$lASbc_4D7kNYf;1rqz9xFA+H83!qk4#`B;r;xAU8}rEA#*Sm zFiOaj9ZMcs932al3t1SdsQ;}Y$5ydWZhPj}e&pqx*Wvsfp{ty5j-UVaq927!>)_m@ zZ*?7m(bUvTaP86mL61BS_2?Q1+Xa(KaW1av^;#ixX^XlP;a$~scb>24qUf$Pw4)Em zH^jew{W>skdZ5Vm84kJRejHp%tJlrlHz}mubJXBXN=nMV3gV4_ldkiEE>x-b^XUo4 zjLTj6#|iK@W}B-sWfy3XSNgv@<{#$nJk@IN;?v!(7i=HR^XkmMND!D$k4PSs530K# z@tzi*DHa(S`Ts7;yU#^snA06yo=lh9e$dLXG74eShWQ@kkuX`%hsjP=pvvfYm~N8bqlM z?EVrax##HaFPyIbm=2Wu|Ey-a525~NHQ&7`RBFgS*MU-I`}f``wWsFQar4D0Qb?|G zg<@NhjCt2*&81eU#S`ThcHc7Y3F>)QoT%;XH!Na;NnQ(OF=%@OP{o=vkf0FI%e~<8 zVE1|B`c5AX`+IwAE!Ep@`E{nMbQD;%of8lU+Dj+?US9W~d(FC!v+y)1L2zK;#gf6V z!)p^06PhL_N!ygK7EN4SaBf`u{QS$NcSSNKlM2}w3wa05oJevz@ZuBgwUGw_w;n%m z40s?TXb_sh19pj#YU8%P{%Jf|aI?nnvzM(}6Ff`GR$)NG*CxTNf-Sh(SFMRsQxzEG z3Y8;uvu@We)pKwl7vL~dezKf(fRpNg{g2bI6g^aic&8a=h!zjI;XF$+@@N{|aQ2MJ zK1BUlllKDr{AL5tfw7k7Cxd9^^rQDTJLx|BEmSyn!T#tW4XNipRK28(z`d+acPOB) zeP`Me)CGMNB4bcN{HnjeN{q=DgLxMfrTE~%gTx6oNf+e_mRp$eP+Eh-gnwS&Nxl1a zm4(GWudp9SY)99PaGsqx?2bU1dLpxkRqGqy?ah?UgYyq+t2R4<`$=?|L!mUd3oA>+5aDc`QL8@C-DEFy#IYh|9wXP=js}`6&Wu# zR;L<N%@=~Z*u&rQw$bz+PE*AY z*3;ZdAs1Xu?`pvbf7HGm4M05aqNA-SSiAnOfq|bte+~pha4j;DQMW##c2C+)Y+!0x@~4IU<>1lMZpNQ7rEKlAjh$QP)G+W%hBN z05<;*?65Sc2phr0=43*N&|Qn&CyvJ> z9$m`a;RuJUG?{YnI4^*}zI=0YaN7Gb4dKf~?!O|jY#sRbrBDYrL1 zq#-dA$k<+s-ql8V5eTLX{MLVRnEiNu(5dlkbd9P|)d|E!ykWY`bxP3a&UEMQJ!uf3 zI*_r}1gSoVI19xm-f1H=0g#&|ic_tLz&R|O`@aV+cd9&H-$h2&?q@U#Gwy+4NF2iG zF|gt}B-ww9QaV4Wa&wt=q+EwE_bvWuygo$Y2)nTZk-_xWY_7E4j0?^W4RY zIr-3ewy?pUe|@?q$B-Xy^g*=ae+ht`rMgz0T@yYinW3Ylb?h0mrq29Mw~E%ieYrE)c$EVUJSE> z3!5{!Tgl&Tmgjz}OtdF_!Dmn(;P*oiZR~5{F1WCI$1Z0R`S7q6C z^AMjk2S`Iyy^)|z`MA+ z5C%j&iSwsFDh9uHANEMELnr&~cpyP?@qkTMpIt$V83cp*cfUVn#zF0ZU(io_IcZ7v z1y&g^;v0zC#Co#ze+cj=Ya*N!-0@QgXSwK0s>nC1eLX3A!a5S9 znT65VMROH|O44=qgejzvp%g|alt<+&&N?8>5F+&u?htXVO(KB>Bzg(Bjf}cYqoT52 z6R(Tao85Ve_0Yor9AQvaUbQ4XfI24$wQnE>i6Ae-ZG;tTs*v6=c`ZZi<5qmb#Bi8V z5NLt+*_Jp_fx2K8#x_XTs>P!(LTo=82Bk`o0(zDu5>pAzqay(vAvEldIbrMd$z<i#&m8NX1bO5Qy zblD8!y|XdZZ(sN3^l`_^B}L>S**(VJ#sDxy_`Db5Jl3whFnF^b=!#=v!;j4?*LnDSIYC5lk#CQPjc4yvO3OvV;tO<82hevffGs6E`$BHnWE@cIs$)c) zV;gztYE~4={+BFyJ_3;#G6m>MUQouHAYFI9WpXBhC5ypegl&7Wf#|po@>Gy%Z zX#8^TXLv!ItdzQ%4=dqL>+T6VCY&Bpu6OEi(MEfmNqb{g`Rz-l6i@^tY zth9(l1S*?&FV)VY5t>9xN9Wzv7zd@nbSdmu0Eh46<-|qr^t!JfLnQfOp(mJ@fivTV z7#{6(^_CquJ^O{pct>@}ZUr$XtF*~cw(d_Qy0@+{T%Aj!IZ${8Okl{@uU`>aE@%P* zkdcPN`=K;>z5uL6=YyHfPe5r*L>Ve#AQ7hzyi=F;vx@nzs&>%O(T`q-L#X@qWba44 zJd=KVMD&`XE(XDU`gl4kpvQKw)X8amB%s&YmSKSNN@JJFc(ora@kYh%T>@Mnt{UYa=Mj%Ox(0gHF}@!vo5XylR#VINPD-_FLQ6qEI* zoiVu`?lg^LcCZW%7)<5nY!<>kF-bhSkFgGDAAHn3ndC$47yskGHzhTdr=leg+7A=m zhhG6xEB3oXeoh-=82`x?uzR)eooy4kUO@sUOAoft-~fVmW`JR@3+3Q|h#?pVsf%1( zh}}DT_G}06qRcqrY_|aXA$cgR8f{QSXFUjRl2NE?RSU*J1iAJ+coycjh^6=OO>%;x*@``vU*rLug9D43<0T|yL z_ow?iD%=|k@SX+4gm%2^J{M5j})j|d9r-*rnW8|nUfeaC1y%QdfzH(}nn5qG?mHV31 z^U0_z^prEd9V-=R0NmEg*6r_OWPLo{^erqb)RJXoULHBE_3alYTR6`vkv3_OT?){$ z`SWiXkM{RhJ3c4`Fx&q{Bvx z;uinlcUmow$#&}k)@mQD?$N~c!pB8Je9Ifbd-DcjqsLc&YiN|aFD5l7%VFC;UCnZ@ zJ8i`i?^x|2>^#{FgVE$#b`XeF(c-r=<;RP2#QF$B-tPXwU|D0>8HMmO3NP>X=IIyk z_S=^Xg)7iW@PM%Dh1YZVN%wosvp@OFbHY^3NLC&P{I-~KsRWM2CFJ8P!CprCo93(R% zzXc1Zc)WBhL>0yZ79dWk5fU}w7fh=wCFu7WqpkEhcZR*UPE@ zf;APpxCBw)D*S!`AMrdY3j>3IKH?CMwR;UMXdI88v8%2#8&{#hb#PQKX1xB1xxzU9 zgD`Iw6#j41DTRBGv?1W?+D5))qiHS33F{v9N1?uXdM|q6gCJRfa8}^)?Am>jLBZ#J z+Q6Yp>q5Fl-X6)-+zE|Pmpt!9&aGG&cuz*sg?S{WLl$5j`{n=1n?k0L(-CYZ>I*w! z>V>>V4l^)Z_E;WY2lzgeO3pDV6Gn8OfdR?B9bvw5&JhU;ZbcwDowz@czk>ue9Axb? zdfC2IvRbV0S)k1H$9CYGU7<(vJy*Vi@GyZcGIXro`;z$*YXg~rgoi&4dSn6h?_Z95 zc>BI>GAR^{iXx^anX)x?r}W{yk2pWru5#IDa}_e=1HIL!;2z#gwBK1xm#e*8&w3n@ zH<$Uo%b>aJ&!CDAB;vv;A(O$>a(1894)Kxa$5Z?$I|#~}25JdGo{FLDY@qb7fjhg7 zsR7)8T-9ao^}q8z0rVV6iS((nR=_~H67xORW=kQ9VZQ!%Bp=|Gl8TDT>cWr|oz(o7 z(z)D<6tG9%H`Qe~#*y=9b056S#U;DF`Wy27E9SkhrwP!I!(StwwU&D@gPBx+m4@vE zxEEKK*{<_$VD!WnD_4*hj#jqy2@N}P6;6Mi(4fn)5K3ODz;5c~Q~*%p<{E_z-D^!4 ziiw9t82~d&6Huxxh}~MY(|FI1z%Ev|zI*)yY8V)FoKO7?_!qGaD9a5Js)M+J5eJ)7 zkplvisX)TdQ9=pcp>rD#s0wNtoX!4xd-AWT8swy$;I!)p%bZy%O$pem-~|TZO_0+; zU;%i05$dlcU{5+^=SHi^3qj!Cv%cFemQ5wuUApD9yn>{K z!IrRr>HeHwSy?F!_8Y;X4%HizkHM~)1BS{XEl~gh)s|GR<=8c74I%f1!*~52B1&9l z5$cM50H7{E8gG!~>t?)g=O_XIrHOs!PVoH@sbey9D6{w&x(11;TBsXhfQ(tcVz0I_ zd;`Skxq6OQ0z`Le5$&z%%FrI0fszi0E2r-J%{fEdQwwI82>@<%6&L}hrCP>%$T+iW zNH1X!D~BK;z!N^f(!VbBSTs^do-C>z)@%F{~yI~5j0uxSfjP($Br2u$$ z8hyoA2R#TZNVp>n0_g;fsP49*{Yi+2-u#4#=SanZWN4L5cP5jp_ha-H(-rGmNEEZw zEYem3Hy?%@WFRmB0}@w2Li~r>aHR(bg8Thw=p$ge>^NM>EC&(iuUyl7v+Jzj;QRmX zCT!ak=xgB(#z3G0@BMrU3I;A|G>|(a5F!ioI{6Mf{SCW}q%7#j`ckMLE0R!TGLTZyTebn@8|9;{K3g7VR`O#PL6dI)gFr521msGOTew&0#|>qtU~w^I-j* z;CmuhJq9_|P;eh$JrHyhgOC{RL#|HSYrXXiZ@JBv#~U?o-@eT~?FqTzv0m(s>qoLD z9L=a4Wkv3zRa??-fx=3g97lm=%WL?*97G=DF@7+&ZS38ft^4$hq_eBF24LArPu-XbnP7O3$m5(ROJvOb$U3~yQeww7FblAT*6 z`s+C$>8b^oad8Y14SXw8ZF%`Hz9Z?^FbV!^vw8>NrYuXg8#R2jtb9NTgaJ0sqs8#v z&WZMbZ{v-za9hvj!N!k|WTWKSH6_fW+LL-+hP{wZ5657%pgIJBldb5VFKJb|xK5+( z?tCOyK!E*~oT;&907f(s;Az?}+=RNu64PT0DqztgLfE8u$Ld4#R>UC`RRhBmz{3>| zr&TrVqni^N2m?3Vlo2B-iEECz%za)^P@Rjb9~5OS+ixsbES!!_627Pr>@QlAbqBs6 z9&r)<*nR-CHraXGVxJewfRVZQ1W}1ERGIWv-M56oW}C7cu|P7E&ZNb2aqTh+SD#UL zdr{b+s!y#N#0k z0lqRWaV!P$CMmlni;ez7#oUuO;~_fL&89W<(TzZKy0xC1pYvZ1taA}9F+BX>bdpK z=xUusXDF^Q*n_xTJAWwZxv%h|VzIiS&YPYg*5mvF*kuTKK;3QCBxND8pMOR87%E%d zvCaDM8x;csP(TbIF#Qu?t{c?te4(Bu$2~VN7znge2nr8uX62$Kqyvs}n$Jfr9x(E0 z1i(EDl>i}2=y?q4CC0R)LmxftN7+tTD3L|7PAmy~KY30&cWEji1Z7Xf5CpUBf2xsq zTpS=RixCB)cRsHQ;vg%%+}1-32FyhHcf2tMLs}Rz2QS6I5KOI%-|Q(_CbI5B`QJPX zSs;JfTSi8#fU&(X_jwN_i&&`#ul-Kf2-T3?;NcSH+rkwYlHOKqcCQ0|cm=nT+7G^V z$$T;BOWUw7;N5}}EYM1m#6OuHU?vJmK#lQ=B{|jAo70dd2? z;PibzoS+W3tXorW!YkxBG8~fucqKvvKtFcND zL84KaJEVr%mAvAMaL6Coj{{Ou_!&(L`m;6w$Q(IS#E>JZ@pa{FHUja~Vvj*aLl!rqbga_+4(3GW zYYFJbZ>T)OE9ziV5mRMsVlw>44fyO| zt+=HM{C4j5q+^uXXO0b?x1qSz(2 zrHirT`ipP?TwLH>u{A)O{+>Rnh7k1ltw}Lg_AxI!*#xSKAa}98G{$m73j()UHE&~? z_v?7dHlCVfY+%3)wTm{uQ^659f%f(G19K=2^+^TC3-s6wZ7c&?T^2T1ecdbg{9zy3Lb~Ui!`5kZ_?!jva6et7}%P$}>HvKU)Bvfvv z^t(^CaRqt-0I6aLSc)iUg$1AS7Kt}^tCTjDCzk419KqI~GPDE8=!AJj+L+PsV@ACH zRI;D!4jD_4vTRK_4fTo!^B~Dc6mh5Wu~Q|yZr8ITC}b}UT{AU{{$Ou7l!)bFSed=!s z3}699bRKT-5?uENXcl7w8ta0B6 ztei4-A36yftuh{zb4jI!aoZ%k97J!UNW>3GIz_O#DM%IH-I?ry zR(_XPw32IG|3p`y8)zht1FT{`P$V@fe2FIzR>>QHzQgJcqEnT?uR8TxMAx=|P=K$( z4kgK~P(S-h$Y)0NGVnj85N!d!zpmuH6l7|b_Hhr&e~|wM+H&$b3iP>H(x q-v9Z0@$Sq1YieWv>#t~qLiP1U{?E>t%Sp(Gsa#jb&U7m(29hWs8Oa$%l1*q7 z0R;icIg8|+^P2^__dffbbKf0zj5qGPZ=4<~0=-t(s+!@O-#4qCDJfi`redPPFpOGO z=Atr&kxOA183!df{KTa=T@${D*j`e%Rk65d>u}rJ0F%FMYiVj>YifLl!`{H!#@NFA z3=iLFp3^5ejBIT!ZA5r^&HnKY9t&$j-q+UZ)^L|ymNFVP7)E;={Uu41OfbesFiiHM z^bN(((~G(%Jy{M7(3hq>)SQ+oNRED(*!cWriqU?fY~3vNteYzzy7s3n zl4vSs=_bx6N8>3Yj&t-qz&{Klt^C+Ac28(|{jXQycaMGJ4Ca2-JUiVZ?H~T#b@01G zQRK2K@yJUV&OVEPG-*p!s`+>Z+(XABio2Pp6k-EKm?Z4EJ3d{YOlN~nc?x}F+q zO4F)XHgCLg#sImp|JCt2+w3X&5t|8cs{u=d4O^9$l(YxO9(MHg$O~ChR zeUAfiHM}j?B11({{N`epONPW!4_TV_N9FA7>^6d3O5jP2=w>~fPLQ_sGq^>(nyypn z=pmTBCDo73J7Ku^S@JyxqIh%&U%EX@Zl`H{xU7<((3ojZ$ti2nlv*2X7?BjD=dO_u z=}s7MVz>T!aHKOocVL)SbnNu#PQ~6Tq3(v2`Ozb?s}uPd@rse@_o_k$#PzV!+x7AC z@ee%EcvD7$uMbv-e<0XTWYsIgM-t%?r+d;l$MgDq(A`8FCQ@ZMqtDs=GHS~*etz+g z=7)RU)x!OI&;k*D`pa3L5W+AizrRpOK2BQlgjyw1!i~v|jmC4nK}B)6PLB7cyuA14 z-gi8ObIS9R-Fj7_Lb(EyuM{O(=TANkK4Vy>N6RAY*W>BChfSxVD{NY|zmRb8**}C1l1yL>&AFs%V2z+ynKqkcIIwh@D(F_Je%_6Ks++3fu zYq{;2lqK+f_DSmp!%?&X@YF|SnM7<8eZ*#D*83QU?+lh7|#zQ~eu8e)CIT=uzm-+@= zLKzma-hFjEA;+veIX3np8Tp>C_gPoxhGYEw_jWq=dr#Mx7fhF39#vCTu1gF}`s6_& zq`5gVa=#OtRb*u-rZG;AAs{Fy1+HyuY~0nYlYKuR!gWTLnn^&0g3U3iEypb7`Ex21 z3Oe&0n*9!55O7~}lp8&L@B5qA242DZ23K8~^qWm53l}4*&keGS7p+d*Z_7%uZ!NZ#FJoSlU-$UJ`H{(Hf?~&Q?YUNzpTq>7r_+Y4r?g@cOX>p=+9xc!d2Hu>kF1~%o z6dKMAhQ)v*Uy=_!dlO=XZNv2|#tn(r+cFJaa2k?-)C1d|D4124A8%I+7j;ktH|bxs z>~>phM6Q-US){d_fhS9VDEsQ@u)iEnEsQAzO;Bd0GI~2q?0k<0ZCSq8)f}VR=p_PU zZl`(v_&sM9#bEwYpT?SsdPParNuKc_;#wSX_}Lms$&JO_Zg;H|)imou?T^AUUk~?Z z2$^>z+Ko0jsWZXKZrl5*m%-G+bX})QUwa4*Cg{fIwn=k!lL2v|&4fwJ@!eU|7QdoFqbf%Iwh~7=aZKC6&e{8?6q%N4J;+v*7RflBt%Y7Q12E!RFSWa?t*Yo0* z<;Fh_MnLxZ0P|9^v?96KVWXL6`L@etvhb1lC*_a*KB9e$%r0Z^J)IXP(tcHin$$*L zN={4!S5lN*w;hL-4>@ZV0->2lR^+GOg@$~G$;vJkM zRaNh0n-8x|`{E!Zi^tW~DYH5cy&dT)%!jy)-T|ROQQ5XgW!wUn0_pd1{&^r4YvbAON9yB5{t79L0Lj+CY*>P*vQ3yS2 z))qTZ8I+<&baw`;u^W3|UN%^pd^2UqX=Scn(F7*OKNg-$>J;FBtnZLcTQXTwAx8OT z-TFi-Tl+otL$wI^MlN`xUbD81cdU_+`eQn5d1W-CKO2g*bxct~w8m-n*O6+)90)PT192$;WVvWp8^Q--tp~4 zZZ1423?DaEMn7~Fm6<8)>axA0{|FiSaOhdHt8dbCa?UF2>9ONBm->CLusQZT_zKuS zxq7vdm*_P&(#S2b8ER2;333Jipybua`TUO@P%tS_gi(lm!`6_FPRl zo6E`Dt$!(u$iv{SfM8RJWcWWfr#X6-p&wJZwve_ZN& zA-`D!lO^NJCf+wI0#_V@8L|-QgdlV%NY~lem7owVaw$0_MSjq@qX{DJcPG|y+up|v zWtFzSf(?(ZnGM&)?P|tDn&R(Y^BNrCD`)9fN>UkZ&d_sRCayGQXzNJ;c)$iBVt@_K1t3m_=6Ntm{p$!niQ!C#1hME&(0r>@TBCifP zefyziu6g)rd1K?GC$#M8koO>7YWoY^Z#cd_z>AYzZ6I%c+g6;3|V~B;6j+>Otr=4`eHMLvXqI=d=m)UOybU2m%R?W&CJX!sMJ(Z zi78xYlS8=TU2xbn1K3 zO0Fp>z?xpytb>_B~%u}Zk>%r}wcpReRM-4{C@Ou+g4ql0A-M7}D=Ov~7se3RRo zOr%Yzrc;siu7`s`T5*ZW?c!}SSVAghHbETPR8g4k+lxDXwoG|*< zldbOge(pI4%OecLrN^gci=Ze_KHDKz%OQUf+bgO%Zdt*V@P=ISjsiH8-B`e$pWA5<6^fv7-9?8krv!)^2V7L8Y9C}ANdnt9&b=-2 zR_Qp~$&}R828gbvOlzkJ^G#a)9?v8pyzTr8bApBHYd1*K63@UtvT?N7X7n}eYi+I{mX0fsTv%XE2=7e7(r8@6|8)hKq~qdQF5lB>sw}%va5=!s<&I?(^J$)sBvf`AV!9jb~Q! zXlCA(RWML!$~IA3pDLl%B)S)t`LL#ZsF4sIb^88>?*hOie|lDx1h8aAV*N)OL%Yc? z9h+a@YlXU9V_?l=sd-jDfo1N;xdCW=<5Oz`0b>L_s2N~8K>N7q{_@p{5OpoB6flG{ z5~`I7qT{hpy*g?ghk1%Tw8hNW4gHXY{G2s>t36m7w?0qkeZoA(`~!LZ=E26lES95Li>=q@Hlfhl>bq zIJagR1m;^Mr>6&UUOMy_q_OYKBz}mPTcckwf}+2-42@?+2`c)spL{9 zQ9Z)H*$3qmIW}@~713!L_N)oBR4xGM)C)f_}#S!htHBYI( z;n5a<(2>eV7eJqv028iG{GpWS0Vv}oC~Vq zYJF|Iwlpm=o>ku$%&%(Jmc`Y6Cpfdt$b63e+0osM31<86&~*5Dn6 za`hTkVDI-UUUQ+0z5m(8Iher_sJQ|-;pe&t+}W;8myZH`xd~uUe(*iQKcg8%D_8XZ zJ~j=g6W!g+xqJK#Bb<)1b+nsg6xNZaR7-BIIbuJ(g}QzKYO<+FwEq0#?S**=&oa;N zrHVs+I?|jGSsn*jVk%>fH6Olm&_Nc8r(kzIy)n5w7}=aPnz2uk4U-NX~tBU2p*LSI4DswdEbU)=_kZ%$ap=4WL8svgyBoqM zCJ<++JWHU2hCjPJ+@PY@stDo9FEh43+3x5iXwlVC=U~m6QgRJ)?i`?mQ6JF>8Oko% zTIr9Gj(xkrVWvh}-p7EM5E1` zdYk1SulE7I^T3?=5ZM81lhd#a-F^lOzqVD2O8wQ2+gumC{rQoj{a1)%c93M9wNI=b zU=GPOZM`!r`mH|B`Mv}t8(?+Eeh2VhAV~CvLrl_ZUtVELf;63^@!{SsY0~^miHBbt zz05iZjdc#GY%f$%+*8xB3vgfRrGP{$x7dv%f=7luO3eU#GXhWc<9#_>`*F%Udsfx~ zUieTHWG*)YXw+){rhw2PKx1Yc_+B$qkema=nVFfTJYMBHQ(w3@*9Il~b;4!qAWo;t z@qGMJvKJy9J^2>fdMOVM1Cj14Nl*}qhF*PD2nB#zv#yKT+B#To3UPhh zA|ikSFr?pUa>RVvqI3fRqye(UNv^iydv-l~lA>E7GeJHyer3fO09xF-f~jS1%VObB z^tUtvrgHbM0vwKRZfq>EYJ1V~s3(d~s_r{RRRb z>J>yw^$_ItIb{ea$(N|WFr``OZ1-7Z$jGwq*|B7s!D|0#{h)H2|jby^5FydM2JdyF?NcEP^?dL z^a9=%beg%_UKv!uoly`CObhqkXJ0B|Qhb*VrGVHH<+p{Hq)lC6FArZCfilflpz3?@8N2U%LU1Gb2Ofue~WhXY6>81f4qrvV&>n~N!R zs4)f5>u}s_4O)cx4*QBlqe{=A!^(45psar>E=V^sOF_TPOZI?YhwxFw9LSw90OCu# zBOxkkxDjE>MSw}}pX_AXvksB6w)g?rO+7tcS(J(9Ag3I=YYIzW%v6SKS4tbG8oQyl zo@M3ydCR{-?O@g7*Q@ia`m^p;F;!L?brpOBHV`*(v)U9~i4FOaZI{zvQc;mEVqlTm z#Q2C@MV0+oi>_3d*wekc=1XWqzc=z99ff>Oupdu`I_W-|1Sqo=gnM@YSHiQgW9gtL zi@#r|{|l(bhJhoj1HLRFB!np(x3P>6U?UJ%Kp)@ecAb?kxLpW&XQZ1*OlU97;3=3o zUkLAThM;&v7Gc*pu)!3?NQwLHIcWgJ;=jE*X0p04-UiES*Jhkhn$KU6dp#exA%{-8 zpb5e#530x!`39*zI$l2Xeq-`YSiX$Cr0$YX;|W5Mba}QFit)KJW{X5{4n$_CrfVl5 zXmYTIreL-83lXwl zi~I!~a3e6JFPqQG3_xl1!lAG+`qFOd1E)Dgox))KrulSrod)(pWg)_*B)_n}*lhxQ zq(&9)%hSI`!2H+Nq1>Mf?Or>|CdCcROO5-&hevzDZBc%I#HRxR^*Jlz^)b#oc*;Jq zC>(^H5CLOY4)HtX(u=#socKP}Y|aq1_r)^`7%6p;_*GO~1rm6(9>6)h1!v?LL!V#Y zgI}HQM0xSOemSDxs!W`uZz?NC!?*XRdOkTras}SLIlU3h(xYLZYu~Erxe4CZ%emip zVsJq9#*IWEKm-K^{bL~#mokr5%?;OIL4msBS_B|H9h4W31ZhVj&L5Tlc?#6`!PXG~ zvub(Wr+3#A=SQ0r0i<}*p5JISj1*)#zVTW`!RjP-=X(oaJShdnYldM~Pk__mH|s9a z0Y0P_xPnxODWMAa+vUWGlx01~-p9L0{D2fP0h}?tI6pr>{b@7}oRnc}n#rt5a0pH@l>+VYpqOJwQnWJXl3+f1q^$Q?+2fL$Ixd z#4!&xK9qr5PXR0hQNHaQDSgan2*p0*xr@nfQ2$GpD7m>6g2hKe4dmF?iEcr6*Y*L@kT9O77Y{K(0tZIm zh%8LM$R}F(X|eQHWr%SoLXrrd$e)w|d8uq}60m0-d`vphrTlNGs>VYAuc$hN6z)qP zZc~*3$J_uJ1H~v$Hs?eLBZ2lSK>X{tFApHC>;yOW{A}c=c7K_-O;Q$IcKoPZ;K|zk zYT9oBFAhg}(9}T;NRi_$ysp>7M(5qBXnO+7VD=-O_Eg>W>IZU*V&Q| zfDV+88D@81y4?v%NrvkaaxP*wiW3Uc+tZ^`SKO2J$Uli>TuDN ztk<;%dL#(N4<}0_!bYL;`8{rlasG56~I5NqV@vo3P|t0e*NW- z&YM6cW`U>xp*k7By?2oc$iU#umm`6B1l}*Z!sgW45qc^_zCdaWCtdERq9=t9bqVvt z=L%DhOj@y#cI{qqI-qro5ag*g;trf(0Vm;$>rHW zZWfwyNf1{j(E``^0K(sTai~+`qd4{eTL@q_F~WI-s|pAc060lGrmfKjFFcX)=gI3K zh05%Z#5zEmWC%{ii0*?s%{6IR48z|>s5&PaPyD_krhSn?{WvAWku5VDP0v?A)DsB> zOBCeKV-lxV{Ex`p&}^ft83o8y=F6TzTpQqRgW?Y9aEJ_pOp~pa^5=Gzf05A9d%eBj zc^?vOJT4T}wwM|k$u&zi$Z<45sHX?LdanGAA?Ta`y0_&3*$zu7U_y@5gYPU5j>n&W z>jzABw%e+GV{@~MPFOMbsZ%#EU3v_rTEO%B=1Kz45_1+Q43ONR%s%?~{K1SDuax0F zs*R7!3sQTMr<3Q=q<)CX^f>e;I1ZCIBZ<&|IKL zegH%bgvwa$TcqRS<{k~kf`AP*m04GT21pm+V4(oduF@gt2VRy3Na%`>LNdJ$0vCw< z4B*7yNBd&;(|7`~O@RQn7qj|??hf$5Gz%6g6Bz3!CDjJ^4NY0n-~4!rl8aL>85$NGN;PqCGex2~lV-VW*L8>t?s33@`1 zr~(Qs0Ox18v-iFq0A87M4J`%`X|_-$-v@++N|y?!qd1{PB9}_MF!AB12n zGl5o#=S1iiwA3arc9^1*;=mKHfIC2i>k_x-4v4xDkj`tI;vzHzY`s2Rz;@tyvjF!V zJaf?>QL*|y=Pm=}BJ@4yMur}@wjtQ89V6kkBCI9z`=Xs5JnyijCM2ywi6ZBZaxg?a zU%B5;9HoSw%mhRwA}1FFl1_phThLafgr|PXfsqzBpEd6|E(`Xel5amQ#)CLzc;U}W zV>|E}rDf~FK%U>ce!bVqcg0igRn&bR917z;+f0hWm!|WGU(W__f z3F{t>0sA?nTcD1D9g-5q38U$R&5hN1_rVr@U-{)+u#FS~q3xG4%9QY$Is=QPrJDZQ zeXVv>S>`#p)X7H@+S!iNck1!iCc6rOblH(@-YGJ^xC+V4hgCFWBMo9x&g;Lnub1kD zN69;KslR~XkpCe`1N_}RkMeFzKxfO)_cJxGIUx%e0X@G0+$QQaK`06V%sTf?U}vsF z3x@V_uI)SF&x6Wo`J%E@CT`y@&upvy%h~rEuO5lpI6##Me#Hdr|7SxG?w(gmteSd5 zwgtW_3n4@cs^0-Es%Hr-9J{vmONdwt3wBtR0604f8fgA~RSsYFQi7PA1uSAGfIwY_ z-*=FDu(dEy4y5DO`q}+s5kUeB@?ze_?LlHxB>H%4st`Inlu)(u_eu3A(a8c8RLC>S z+dw7|WV-NW2-wZWUB|+DZgKtgiKSg&|3zvLCbY~yUPAO78Le0p7!G32ufDklT%_@! zRWS+0R*8&0>p3M{k*<+tbUmhqoR$q?U&FNt)EHn>eJ-JP@TJU`C;q?hPPtt!ZV&MR zSo80}VmoO52X6Q0P5&D%NFQ!W3q|cC&_%Ii2yTzq>CZ%9_R*T7(hrGFjVWpgVTLmf zD(fils~UI*m_U8C8&DBttN zwr_-mp(Y?#GXSgpv8Xc*V%6j_t7S0>lYo&Q%G|PbQPLiJH;SOP=Pc+3E#61CkMfj8 z=EWI@H-0J;za{Jb#|g0RI9}2&z~0z3f(Hk zQ0dEt$+9_cwgOWfzp=hL3V7@W1Z7THq^khdOaNll82A+?zB?EH!|m{Ls45EJR&&?S4UW{k7k6-urpNmr>37J`-Q6XJeZ0VpZs5>#~AAd20g9|tVrL_zH zdwL`;Lg@Gg4I7MS4tYbV5lVg+bu#SQcl7Sqy=2_x1}b`nyTPv`Y(AoK0mK(vDY)Xx z=Kn=vtNMVpC(syr{BL;A>V7*)_JtZcbCC4UC7Ya-R2z2A2GQ%#*keq9(h5=YvFm?w zLW^!X^y-w(&8lDix-i~urgwCERQNT>{@Q)^LdwIBN^YBVWdiTgP1jFttrs&hNcI&S3!WwSN+oq7c{ra zNywns7H$A`L~z9vf&#SlSe8vjfL(|ThS@+{-?NL>C**+0MIz)V*uT)aOT0DU*HeQA zzo*uc4I=sP*Z+&X&SybI(Pbc!DChg_Yk3|BIL*vh%PIqqD?jp}yVU1p3*YZi6*B@j zVtx%BY4B`F*oShskcY-K89)tiSt?NXLZsS$(ZuYec_$0tAq!CGDeXKZ2r#Ok@St)S z+5j?MG|51XXl9m{W6_;nr`#8%0AoQ&7Bp~_6`?S)8)^79dgpf33%znF<%5WtDq=12cRbujVz@DQL<$iY&D(Cy`thPslFNP-bmP9B(+Mr+q zeGKX}=wU77@lOIA3F4y^O4?AH7Vs$a1Ox^qM@K)rwQu{{oqnXVsg(2f7U#f6oH;zafA9{^HGD zefW(LIDc zd}s-QaWwh`PaTLrS-|F?&IeUk)cG&_6l2#EWM!X0hB>g={PqF`gWR6qpEEg*G%GP^~PCrzEK)#IJQhrJoJeTrxy0#8eBoESL&CM??X7O+B#A*p1!I z1Wp?2D4~iTDAqiFRfn6bghT1Br6@N2XrUX2Gi!M#4OL(Q%1l)e;#w%`3_F0he?vuO zAC3rsPgWU9v*Yxc#%5~=b0nm-c%%F*q1^2k+fh(@j?&S0mTpS-M@>moIs?@eSWI-XlyD{1x?;j z%oYXjYX>3YhM}CW`lpb*WCT7Y0@NMqx&|mxG1?bJ3GF%E@Z8~0rr!XudCCd?fhjaH zX4}7izX+&dg1C*f*Y#c?U;+W;OYF|Gib1?O^dlU!WEcX&f41*fGU%PqQ8z^pmb%^t z&r|M1>G;BiZi)>^g~F&v&-ZMqSOy{x5HSd9&O2c1VoAuzW&EK^ME{2(STp1b&}T&( zD<-J_g)1Q`H5CAZK}-$zi4&yDWSl!)I`QW}!Hv;G{XNLB#a6gTi_?1KDI7n!LrRGb zH3$K=NK(ttMNQKag^Rjo(3=iTQZG4mEI;i;q|{{}76{$YZ)6KCKE?=?0D&}-*H44$ z3dA-BrTnosOF*^sk3dM#0@1w*5=8>!`w=`D%@0`Hee4I^pb9;4>Xf%4@LtY3wzZcu zKU&AxcUWCPbOl;4WS@@Ne`X(J0J`SW0TElH3Z9JkYr+0g8&Jd40+rf-K55(3pcnE+ zh|}Ib-{3!=|NlPN{XN+K>0t5a;r{yqL=OC!jsF9p{GXxz_rm@EWZ@tfK{E>KfQJM< z^5X(+BM^Wm-6kJ1=qf=T1x~!jl;n?v76EUw^Y&QFdnO6jymaD*Gsq??;w}p}&^`u` zFtfU~vW#9LnVHqD;W|$M{cm&Wp+J#&qG;6|MMx(8yH7#)V;6@`?fW3_MmY98d)*Cf zxXp+GhqQGa;C=p!xSiMzP2n-ST|MLrXV8u43$}8wGBANi)C7X#DNa>WGZ{4e`%oBg z5gqE~g^&=jQo_Cwg@oXK>;EM6R_If&9iyijMw&N};oC5hj6M#SNg%hN7r>hBZ-4pF z=uOQWuZ;`Ra!zcjYI0h+SIydFszP0Eig8RWo!U-ry!LDppjM&Yj{+W_@rOlXFe^;afbg+T=Cb(XWnvbC3)kY0U1z||g2i?nbZW&tV8^rM5>_CWW=G&(= zmty$OSyuXU><`V>SB4PhU%V5l;#mS^PCIN>YQ7}(@-X(WxE1J3kX>EHp*0mL!UL12 zzv$o7vozo+>*&OYU60S-uaBozT*lb?jPpt7`+cc1@@=QnS>8P!b~->K$E_-G?Tb4( zONqs{0^m}%#}91`8trQ_KTPZMNq>h_j|(&?0+}BS%>Q1AjO1ixV27FIiO{(Xm81-8 zVYXI7#F zhPup~x!g(J$cvh+GSEqlrseY-s1CCH5=+JZIwEPw?JU3NAx*alXqhw;OSfSA5!Z$W z^ijmhzCzGQD5MBFyH}uJ9C*>xB_irwLE;8tNl}wqRp0L-1QU}Yr=#nu?etT3N#oQ!DgN9K6Ru}etmfuoI(X{5!lsjQ6KNkDY(J{0*^FjpWQZ1a`qqs zrC`%0aHB0k4)hO1T{sVhJM@vo@B&E@7sn~^$B&``{odNcDslrXL~y; zE-;{$B=qXh65~g8>K8=6z-tHj7R$x)WP4NV|L$*(g0`^Dz=dw-uRB|fNEp5t3UEwH z>3i^DZ?;oudXsjt_|H%fqemd!BC#=yxuIEZb!?xTxK%W?7Ip$#9!7L zeDD2&Y?TqclN3r~*ytt|lQ!E@R{CIlt15W_@f5>zMAbGqnfCXAvBMjGPa)k8qfxOO zE2~?Q$Y7;zp=suzG|IBmojH3ilw#lN{(rkGC7zyQfgAnsUq1gYG*UJ6!|jn`sy|Na zvb5BopKQ+uB`K3x_!V*)t6M}=y#LDwv61-o(b2f*Y}NF5`Rxf7C=>O?{);ykyCa(E z|7rYej2!UzTX^_i9)E|_bF%-nM?zLneHc?_Y03D4(8?-};2WE|} zU0A(nL(_mkCpOY;`cmKEnBk_&&_UxNCF3fl3_0|S#e)@vpe9G=t=u2(-t;Mw=)s1U z`o&Mt;7``VTJTFfjB~IEFz-%3%=vg@a+68Ikhs$RJ-E&w=#pNB?kR89Q8Onrf+Z$K z4lMf4Ct6wOMV-kC5)L7OHW8S#cc$Iu8|PLVyCpXAdgov8I;(9_Mmry1l=!l%9|f?T zo?tO(#d_a0A3=A*S{|t?VBP_*9bpk#qxrg={(YM8`~Txl@MYjaRJ1T7`pgtTR^6GA zDCBUQhQ%}T!YGv-VJg_$#e~6FXhx2skH`c?LP}qN2YZY@y>_Rn?l4` z4yoR^V4gdq9=`Y;dZ3KPyx~n-A9EPntBt(u^6a1-Z_#nH?g=|tu%d{6{Xj6J9@NeK zw6#d5%|UN?>_Z&0`4m9_2Brwt3S7o^92Y}#WX7^}FTOK|SF^Kgn{&G-%rxL;UH{=` zj2xc=c(BjgzVZ;o7I2`KO-=${6x%H^7$qmTDHHcV9Y)W>WE_5_#L<#*(LgwC#R9|k z^b=??si+?nyQ26A#iUfULZe_jd$sTWrxT(%SbLgnYfLa!zkd!R7THstSEnva1HP}! zjvb~8og^SdXZc}5jH%4y#nwi_-y@k-A(xT&zM(U2$AxXi{Bx-I{mf@&+H+lWz#06Y z83D#T|1IwJ>^{7Cvvu)eWCITU8{RC^kHu)tq zvRywq41nb0orO#W&7c%Ci3k+LzW^1K3S}Md?c|tyfvv4`yb}$^4iIV(Zmg(-{ zNbGB)n%ur)SNqFk4`0#T>?(dx*Q_VUpzVil|AaQE%SCaedownFa)BUF4XskfWnM!B z_xXV4IFcUlRIEeD$+~2e@k{|X1s&%0-}llVE{v z&i8z4Y--E&YzXf?%Q%bO!_=x{Zj0ri08z$8)b!mKXnNH;V)Id=FZJkF6~i z26n%r_!pBoJM#?#JK$A{BvJY@v($L`eG4!|oJe(dsxky-&KY)HaLS^6-LpIlEc7&@ zqPP=!_;ulous`PgMYwb4-z0R7Z{PTej#x|80>t$KEg}X4GdE~;M`s-{t-CGH3=lx; zLcM$drNstZQGXF|NQuCt+u7ME{LQ$0h-?Sg+14{acmq-CxBwdZ0i9c){AEHyH=!@j z1h5toTf1f-DuM{05O1o%iQg+Ph<|`k5qR?$G|MUdjiu8uOEtAX5MSlmk0hrS$LO zvE@*{3ru3dE6ye4!(A@pp^F~}ud2jDk1ptM$Hwyx4+bzJv*nk;1^jJ8DX%6pz0wwZO=Mn6zOs+im0!^ zHX8h8F8qRGmFa7w*5Gy1b78svuy6DU8pHQ_BPW(9@x{AK*H$&YkJ3m%ep9!E4biL7 zt0_Qf52FndAiJS%U~ynV5ve$wg;X2!!g*D6Y{gq88R(V^N{0=%sCAeph#&=g>d%@{ zjB>x*>U(dG7nn@%EgWVEz<^T32W$XPJbwtk!Sm)zKVYjI5>`Gd4We(j`^xZ0ZHyZ> zh2)oie09hB0px4mp>|=Gz@v(RfjsjB&I!O^D4d7g``buGe1}J7ZtH53@f`^e;0drv;op81U%)F3FL%ZEa6T>TbXI zX{OCU#kDtTRQVfpcCXdR?T4cb>~=F;J*DZW!+C|VCWfFSvtq0l_~iVv!3o8|18WEC zv-dwf64`yen9F|LaW0{`GKjZ%kSj2Il2+14v1HYXCU942 zZx8gzS4)bo-&kz#zQ6WLQ6wjoZTH_pgHINdeDwOAi~^=z*L&6%vzUvHPq z4t-FRYd(-@>o;Dan%c}R;5%`S;Fl7lY#r1B}A)B!eOI4QTzRQ{~PvI zg3cdY77GSf`uF;gY+(}pffbYw~$+L#L4ozSjj z#BHs_8vS78yYuJ?bA(dsKc$o{uBM>C9Bey8*eV(pEdlxzF5|jw7CW<7za10JS+l+n zV>-yA({Qjf^XjXz$aAfq_}>b@7N5PgW@k_z@581N$Bqk|l5o-puD+1svoXLM=eBVD zTfF?P$jBBVk^V&c*c?Lm@6;R>=hpSszp8LM`@g z*w0o58O}O%scQK#vt@%=A~j=0RZZ zIaI<2K%#Gq&tQ6~YLQ9hx-QSn8!`q4zamQ{WZUx!Qcu2vf4}-fKF`d2LZ0-~CiiR3 z#=RZYlu#sDZE2$5$ummER3AZsDnGM=dB5bBYyGCe4hB&-g&MCtgATn?40WuNb ztO2wks1rJKV85vvl3|qiBT|4|c0L!C?ts@%x=FLNYF})`dIwy>YU{F{~Uq%uh zbYx^hT3Iqg=h8SiIf>2ogG<&!>q|Q9;Y@;*nhag+kbmH~n0S-)kC#0tXsfvg#)0H* zLi?&<+crAvMWhE$HV3=RzffG(%e?#SDz&5x+QNYdWmr(O7ZYtZig5bH81A;vdM@Z~ zq94h_D5~=%8p+I-K)IBkrT)i|VHpU7@AW_VH=_*j#l+{!Z{F*78s}nEOeA!7=iuN0 z)W~##i>nsx>p>gvQ4HZkqd?n~1mP5fLa>z(2{!^v8afaRnG9;;*+<@9Q4Zbag0@3S z^+b7Drjx7Cl=6*`k`^7PeemnCIMJX165Znsd+1U~=vsWsJhu>3Sb7YGZ?!A)1;BR} zjQ9uMhUU1@4k^D{V5&J~VSDo%bSljwBHDk1c9WtmcVK_7!ggR4I1OVC)cE^w9>RQd z-q*)L`|qF7vs9rg!;;eET@@MBC%CqZ@KxPp<(;;g$4`+Rx{r~jD7lB`<<4f@p~1IU z6)nw&k=@!A-f}SJqs<^X^e9NjUZVm!;|C?>{Goqh4y+=$=gM0vQSAJ{CqkN5A&>OC z1HSW7hIq?}Rv;2sq<7&TmDDYa>jp&wPrEi57_fd_kGHWwSc?YxG*Hg-Zq1(rDtESO z?i}nX>zX$E4nJtbzMBOqu52Ahvcc9NaJmEc#!6z0k9EPdcZ`f28@6r6%I!I@h000C z|JI2HOvaiVYSP7b-X4c3N&L*(W7))Gp>EG8njr|(629=_xUwyH3s=)^D!*k(o;CA_ zb0tRVE`2RIz^{x!mV@`6zdCGLtT^dXLVzJ8+Vc;kn?2@|gkZjP-Xq7(E-e&aHvjV)eK8 z@TMI@8~nE;(RzQ%n3u)^f#EDZz;T>Snq@~g_SB`N?91@~ zy0g#rH?MGDa+G+En9~7odJdC)!L?kjw*1fsKJ=;NER7Gx4yiSmm!Lg#hlyr~vB$8> z{nj#^P{nN|I)&WG4<<)EQe1?*c;Ec|vq?s>9nuB`TsE^UHn3j88EQIC^l?{vOKni%)Rdn4j|^ zAuTpm@Fh`BWaO}YaI*yr*UE#n+M#e0JKp) zsR{dzan13(({;Nk^6LQXBc3I22Jas^ds+W66BaD4HPWs|7(ctY?#`57oSbTlKIh?i zev?2rb)Zgs(NSmb@N7+7zYk!o?ot1x$bdb5t`k92f@EK)j!hiycHz}jbN$7*I;eAP zZDtiVP1@GU)^%@Abn$;Ur#C_1cJADmsq7deDRzLZ5{zi~QBKV)bdY~=i}*^$$Z`C# z!p$|_{Ae11l5f^9^ul@P0Zh25nbYe(HW6g(8>bp|_iS^oa z?WW|C)Jo^%SR{^bW@d3Z^+PmCt3%gI*tjRsM>!Z|Jf8;`l`xV#G#cZpuofCQ;(=wt zx-g>d+7s`WDg3dgHI5o@8 z%hLAHkxO4W*qRyF3ldcqxs;dw8Pg6KjFT0Gp~3E>hY7{!k4ECUrktx;97s7-Yk~r} znRP8X-n5HhOQ3 ziU0I+!j-x*n<@Q!j znD^s8EZ1${m1c$@`-u|2lm^@}HoQC@cIm$RcWnBCeYBcK6tfjuYY8vW7k-5rh_Eiz z#3Y$wd1*@U%05(XcMkUGBa&Td-RGC0zd}@0vb||g)^{-KbJ_slYjcoa*9Kg zZMCC)WzsBG8bb29Fh+bWlNCtNt)YNRUNL1b%oC&}1k_jugpv3s?>^a*@dg;z0`q%R zu!y;~*KQjLxn7 zZStlE&Gp~xK97B|=%@guvM()3B@PZ3C`wNYctX3FBetA3t1!&I`Lt-GZ}%{sOzf0T z3f1^xvl&9jJnx?KL3H7lqVmx5VTZ6C8(PiVzDG&{w3b`q*vukPsKEVKa7PfxX!oR( zZ;8*}C^6~h`TZr$Jur>0kC(tlt?autqh%X8A){-;NAI@tw`QO5tL+w>l;DRxw=z3HpLE z^Vg2O8Rt$QrF;CEq|XzR@kBY`3l^S*o1Qv3lHd#koB-jtVI6O*0nv%-P(+siWcOV~-L#R+Q z@-}?@PX4w$?5K6mv@_{*;YH6RTzLT7Rrm3_DI-WFO*%p`RUO1AHjL|$Sy&23MrecMdYu99lARU|yFKSf z(J>Hy%3v1gwJ=UJH|pQ8_a@ALD}&Sd^-NXHf3@(4+J}*lg7Ss$fC=40XSmZie+g1e z(v$bfuOd~+rG+4*>Fz>Fk?BFf9y}nWd`kS!>fZ}_fb2_H!0eZ#^v{`GWc=JY<1#=t z&!N$p(apI+5Yq5Fq3&LVSyAcS(m;1Qh~428LO4L>N9jo!61sk}-KBqH)AjQuzHl#X z9>5^Y^TPJyy+NaY>D(guheJyzcQ9y?Kh+}?pV$Fha{$5ywi^I;ra3TwQQlGe$JRQt zyM@ZJZ`menygmuqyd^UObp=jM@u%X+ zIf<$59Uq~4x0)A>%-x@iL&5wEp}3;c|47~1@^V#)H}*AEqmE!#&0GEq`x+uxr=}OY zSyd^L!O+?T;$LH9HBUL0>KQ4(%<+o3lSRi_dD+!N#kDlEPvq{Q%lFN`^U-0?a~F<5u>zU_DSi)~WW~MwFuOo#2dO&}B&-(Uy2M5HCFKcUN+lc`JX8e7 zQa02Jx9(JRD};S_bq76VXvO^27i}~mg0oHH#25S)+7+Ew%?1OB)^SnB#2*Y_XrghS9_e;?AJ$ ziRPcoC*#n{k&)c|*zh4?u1?N-bHbp+Y~}*Lf?hM5%Qcauo}o!cf~Uw@#R$g`oSHsA zaSEDa3M(`D!?lR=7DbGmzAj_8Peol~P+vH}&*`ja+2vIIov5CpzvuT87Z;qLkXn@}~fOHRdOAS2o#&c;*F?R-$tH%N$qcj1C8LQZomxFMbFZ ziC>z?kD-=T7APKk9cp22^k%urf?rYZICa0YRhx0`X0An$d45%w(?0CI+RVOWT^|yN zp&e7b)aBnFGyIZZ2hnUWl6@W5nEYhLTV;#}FSeSRagJ?mil#r!T5|KS*sqSPK zvTtS0o@K}~XfI{o_sYIbh{@PmM2sctV2mj{gULE}|1 zbDis4r`I5B&tpU+oHyM+03Pb%Tt(Mj`;!9Szna7*58F_v3;z3LmY0htBfyQMdzPUwb6X!n^MDmy)GJ~~bdDcGw7l$NiLxoR+vh~w3CJ3~i)a-2J!Xe!>|kNT zPz?)HN3~PAtSBF!D%h8OI}(26<84}O-RyGwG1k8Os1fPs_{KYMfVOXMk=oA`UB@uGaar@F>8_Mo| z{+wETpz{3fh9ghhZ$;7b7bG|anSHX?^lP=b^D zLpa@e#mVo^q%wCk6DkhlS9EN`a09kXYNB*eL73Q7OOcbu8(eQgYyS5!$PvZHBIys* z0C8GG^%Hf;Hm<)P7LHPUo|;EVsOYm!TV3SjzkYHBd7c(Fx${r$Ql{3Jlq&82H`i%mGUT;}A52Nds0tOK#{gy{dR}x0>36J%t;E zu9E1-wjAu*6@Vz)J|h}y9%P@b?jyQ`W`Ag}W=d5&{iUyjOz6~clZTS|ji>n6?z2SA z!C%Y4ul;E{WgWaRFYsSk=^jL*L*3XdC(GJaL`%-si+#S{<;)@t`&4RwBFf4m!wUZN z9U)KJ-E?7-P&u`a7-VV}np9E5EF#;vACBKmCN*D(`(~VN19j$bs5Z(DJ7N*r)lqu=7ttcpwKZ9@I!q2R>SGE`g-3PvZz^zJPX^Z(vCJX>y|QCO zzo&?PEax~hD4FR)xYR@1_6ZvNiUx4?eUW8-AMHRGiV*WxI0Al<7ix0)OL7zze(u&7 z3Ey=0$m+_c(JlYUWUEk`K>_!t`c*?H35!2j% zu9+k32r@IjpXLyKV^4})$!scRI;QZM6Cw0TT;<#S0uSo~Z%3yl7D}rg94Dy0!~V%W zt{W$hj8WPWp>7a7+Z-;TGwJztD9w}Yv?^wLt~~9YuVq=yedWILa-mp4TY{W@SZ{qD zSlJ|b3u!kp4t?w#FN)a(nHqVdffKZl{zUR}BwSN{5mE{)X6EQEBP51R?I{ z>8M#t2bDQt!B%2^AxE~B)xY=DVyl9RXFRjTItB*<$iH7Pjhzo{| zKW{v9&%O6%5j*;l+)PGm#$LF^9lyD{Tzc9!97-CO?*tFcv1ZL8BlTvUM512{!c&Kh z0qSx4g#p_fNNC2^;Y?@JI{-wi8|$>lBFcRVq#WJ?C6pdexFH4i2)5iQ%GN0g#+%K` zOTsTt{1{^FUzzC^M*q{9ZW~$YQIF6E_0AV!+^p**N^rqI;8!$Vl*wP4EnhN8T{J6^ zj!hQOgv+mfz;R^~)A@;EGb!U3WM$2@U<$pl@+R=t74w}LEj>Un{GehML8{NqS$Y?u{MIDn7h1gVBKOGP52?t+`!z^^scwmovJ`Aw zQK_FzqA=IQ=)U3Mm;TW~ZL=uXW_lMXyGkbs1J-U=A z`f=`1=)P*^;vfKt0!F2-Tq9wZ0k9)pr2{tu`N!T^eo%*R+$D~W>r`5;oJcl8t&r&e zJ^v)m>)fw&)&?oBQy5JpIvO`LUV-}06KP-H7kG!B-?vZKYbSgW>f{r?`@#I$XF`>^Mr-X`#Ipx((5U} z$tD4=?GRxQsD9trDT}>cugdt}Pycaz8_xR&gprLun@2yfur(kdaKDmvcMLt1i1Ex) z?)c$q!pR_j7pb+N)IdQPqsd{iu@IPthO4F)D6Dz!4h=+OiNwUxCyOYw9>hdJ+#SH#MXYQaO7^Ko zl#!3)ag?}NAcv3jUjGFVvgH#R{_82pAaJZq=3+%Ac8eg&@82AC zbmti}sxlV0jD52EEQiEEi)0!`#dMGhipyNsd>R;4;F`I_ni0{5(A*;b$&{~7_&knp z2$EER=UzPQxDV(Hq?|kQ@dSREZT|6%RRFx<=4;QQF#BBPI6nHEDp*LP;W$}sQU z!MUNaDImXpU0FD(T%4Nv^j%(!%%h#S%XCpI%WHv%MlmQc7*%SA@ebQ@bo%gU@^CS= zwKteUlPn!$&}HuXRkrW!r=3E+QnC(C7GdM-dNPpd02Cv)I{$t7|O-`d-q z$z#oA6lV}Hm_laxuutqt4N2Y5a5AK`7ePrxsLjc*;2Q#rna+**w&dvv`={=1;-N;FP-<{Z zux~15i4rmZ7xSq8;uci!29rvaN1|x;KV0&kJeh9Q|3tJz3{paSEbnP2v6U!jrNj}b z!*=$`zHWJ^gd4=hnr~x>aYEg*eKbxGe9K8*b#XzvSEK1-oUP3^O7ctMMH?)zE8W`^ z@-#hjsOHk6?fokE1}xw6N~&VF7N(&=np3mT>SlVq#ID#{3>-VVQoE|$azgfM7NxHL zL~vdkxOVlvF=G7l*oQsv@!u%(+MI!^18~@2J3Y`iZP+hh1-n>bvDWiOOh#&0CsUNi z-%jd5lvojAeZV$rFHc^^dv){;0Q3_mOH(1m?T52YWO9yohttKEJPZ$b{Vb$DZnO$_ zy?9aOR*{;QxdDOu$0`1)v~#E(qz^c;Lt;g(48Kjk%@-6kaL3iy=t~VnM#`+OPhG6` z*Q1mhGxX#kmz@(LQdXp8x!hRHjJb!pL7s*Seo{%d2q$4{%=AhC`hHz|;E;vcnBYcK z&sV*W|6>)X{{6*-(P2rzkKg_@k-2~Zu(VXjasEXiDQ|`pVxOiC8XK7o>bTp5raiJ* z*~42$D&1S_*6gC*<`qhRcq14`eZmc}JC@FigzBE|>cT5fM0QAf_Qv%-6JB8?8tRk> zjnsGoT};QbgRJPx5T%{+un8gNF>J9l>EXGQ!ms>rdL zNn!uSKTWB_|CR5*lNjcyFsZLoK`FKv{41ZCm%a0a!pUzHNe2>6R`gWc>s^nwY>nOd z@}m0-Pmgd}Me?{PY3J^YslFqGX-(xPE)9x0Ont{9t2@PrwZt~WYfrBRd$UZFtP*xs zk-?UB0I220!@*z9T3gwLUR_mGFqOMK&&wb{C`}2U>gp}nxJ(e%f$(5uU9wLF^dx^) zi_i|nRX#ZH7!v51dpqdZA?YCI(0B4&iiP@F*lch0niOaowk)|I1QNwnV#FZ^Z}>ho z%!g=jO)hES_1~aJDDBo<=F}iu%FI?U=YX7X@R87UCl>HN&f0U_3QWiO66zI~rJi>) zCM4RH+r@PHdV04V!APnsrCaCPD)nrR$86Zgr*iT;AYaqM2@ySjoZIij!d4-1HJvV| zy|VHS`H~d`t+dkOwji#ttNOnCKc{^IwOSXH_57GH=hAqj?0yUC@v#7I;Yy=RnKSEh z3<4)WR%*0aiIhad;L3rg6F6Pvs5lqAdBxClxc+Flmw~g4n%_bGGh-C*`mfsmTdOqAf94d1r#Tj&kW4qaA|o6Jl=W8zS&w&f zt%%qE6w7wR(8UDE73AW4>#dkn(mEi!5a)yC2i*W1mSIcMvAH|zwkvx+`2E7VbmsS2 zLhl-xnI~97a&ymKcA*tXY&H1vnFzIdPX0lQv5E-?Cbc^>!X{f>7+_cv;$X_S_eBC~ ze&rN@6XF$-PBf3k?I22p|JE2IsvcGxtup}*NCpxr;#E)l&l@cW^-7*49*(bv1Z%!% z;D4F`oOZzTDl{EC;LM~ZV|kAe;LE}Uqc~LB8-!BJ@8r9j{4-U_aUqCoCxd0DX?o$1 zVAjy_n4G9i-zo(}j0e-JSop#SIXW_JPk4fr_}Y^Cbmz=oLiRp%o}sa{Oke-G|%G^YNE37O_UQh5J^w*`_AQ!QwI9}#^7YCmgN()sTX}^ukH(nEM6`3Y{-8X zoFxCs!*NrJlyP@`H1B{AFc^DpY{_$Bd0B28&k{BM!dtlcQzo#=1yJr$v&Jc*?>H++ zbP_6DlESgX)%l>NNReK6iBI39_MzXDFc({NR#;5lf6muoO%pcK-3xgxZ)qRP!WLNb z#Vhd6#*Geyr;B+t52CE%-;!;hjMv>h)a3q@=Oh&Uhj<{vza?*vMRrkJSS8?e^pOoO z0M5g8PDQ~9tCs5C0-CJT@?Lc^osCfRT{)Nt$PVWn3kYihn6dcMsK zKNMm{d;v`Ezf{12l3tt#(@!iCsDI!9*Aj5x8?6?3EoR-c3P{^|dRzpA7=}cHv{sRi z--^p55>-ztJB9|W#)IOq`vq&4>aUl45y2-Vk%cP*w%t{3gO@u?1^3qhw4c<1Sqz=+ z;wqznHPe}Nza{H>PjeA#(SN6lJW7fOTdC>}HTIV}Q#~}qYVXxqK-im|{je4AZJ$d| z-WZa@q-p*$DsbhRE(b!Kph_i?u7qL@;kJdXQ)O?X1+9ak_iBsx4S1&;Uy8k;zPF+K z-Sc=+LwkDarb6|#)zklba)ep8d^-p<H0HcqyC(tE=5_#56o=qe($KZLi^RV#7U6 zb;9XvYU_U_P$AA!PwG6BV6f}Sov!;;Y--BE92)rVfC=9fmuFJ3fMbm=wHh@Dt3PGB z#f{a_%!-$*$&A7oBP)G=o(Wf$Eya}Sr^4q%0Bn37LVKRb%`?;r`?mmNg*lAYoV3GX z!P3gAW9F^It(BfGDxvCD=i_q`uj;L<^+6)tyDU+|J8<-8%Y@T);c)Gl)+)~|@C6KS zScZH^P7u&ebqGd%yyRa8XanX{X5x({bW=;T2*mIg97U|5J$agW8C)oy*J=#=9U4T& zHphp4LfHt@n_c({2kA7y>YqTmOi5q%x56dZlNkH=cC4i?+OtGB9Lt7=?9M8>i|K?A z2s5hMP*%Q&L)|87yeHLATdLL`!>8(uEKx|QEA<3-po1q@F*o=ap0Pyb^GDE)j;~e% zHxQHTCYUFw0!uVfu8MDNW<_R$!~c#Y_KR~;W?!JHFs>Zb{|dg}{!G{X*xkBK3R%%x zxqqxijuTNmdT8dg;0H9uH5zmlg%1$Je<~7gA~OD#GZ(uGb9&Sd{;eC&v)%sPquZ`5 zYjij~e&{Zl0@09%mgyLioOn0xZZF4+sztX`X$3=Tz3Hd?KdT11()*MJoc`RHDZy}! z?2YjaUPeR1#i2uLujAKyRtCX>zIo)?fks_lgKNi$?eH6z5Cec8>J)RyW$NroEyuna;FA}?xrt>-9 zj?iiS8&iI}p9`SnmTe+)L2De8EW$I*GoMkCb`Wb5^Bl{gXVjamMSAE~nxNU_pbAooXHk}MHBlE7eF1+T{@XWB+yLX|Yq;%wU&dNcQe}<>%6oNf z>Ro4bbzjRge?TVlG8&k0gZQ2zNW0D8bKfxIei6o;AEi4DC!Z3e=dboLx1Xv_I~;}gA5R~%i z*u?f<$CO*tG$TCEK8PYS9Mw^7-2X)qE_)m@h+wMdN0_eweNY^T>>=Hnv?B(weM8s0 z;%8JxG?-qEYu)O1{(ZJb$_i+o387N0Da$jAfVG1PSso;A2-1zck zxQw?nEL0v6j+f0_nDSP%rrl}&ok+QN2OuH+o;!X^$03v*e&usUlSWDW+i0KRV6HYm z64<Sk&99-NA{StX;{)ZGtg__^D~vO0B>93VF0P#P;K=eRPKuzi0T4~2v~zvEvB5w z66K1qt+%ZHER?uou0|JS!v*&}%Rrxub;$nuEyVJkoE+dy);@>j&hzh5oP!6I9;aze zCK|dsgeJ{Dy@5k`7V@5%0Is{DBQp$Y7zoX2rho#Gsdt;}7Uh#Yc!W+L?&qHdNU~1r zPE4MdP2rk($#+cI&xXyXLZj&kW7mYBF-!fH=wcmT=7owFI-BBN`E1kFvU}YisUo3B$91Us-vB27Urw}|P1b{3&!zlIE5F>E+wv{Gz2pZ4|754`9*;0y z7R|uFac$6bjhK=$z1sg4K2UC%aZHENJ|O4{&qxu2(p}$~*BF^$r4}WD_Ls0fDS*bs zoPYgz$mX{XlUm`TnLets1yUvhf0JNpMf}WAv=d67QR!Utw1<<@^?lITGynYY%$q(a zMufjwjBS}%5}lH@`=ePWNkbDJv~{1jD~r%q)VDP-$DU6qV(Cozo&DN=#hA@vzd>fI8InViO5-j=`gy z%PG}?@PWP~UMSPpn7 zFE2a+MWaz+V7?C$Sz{{KRH3+luGOC%v6QD;xZtFmy9JWyqG)y0a$l+FM-XGgFpmX$ z&IXSZiGBphM-WX8&~)NMVc~SFLyXj;j~jk-)AV0ml^XU?D|>?#IZi#@ox%s8v&DIC zCYz8k)+}qc$a4CDTW||6>Mpdf}AW7+3jc^Z}q9SkWU>U+$gQotsoL%H%0n11CCn=6w ze(InYpI*FUEoK?)KRM$aU+XR{J=ppEv)c}hH$^nIu&_xsX(=m|-ZbKN?AA^cLU?tn zcg+~16Lxnf!>!3;VqA)IZ3uDUhWIfeq!m7h$lip3KF0oVS=GG|Dsh;56vzm1;VeG# zoN8GUm67?wV|~z%#m}w>Y%jjRZoU>AGS-o-27=OwK=jsK*(c60&z`#G-+TwBrVL(gEdvqN+*98qG&JoMoGx#N!#@g=|u8Ie{Tc9m69%^H*jcr+Q z(Z#wAL~VM^xPMDupcf_pWf0b2X|L{3g+7$SEK&nRbb6xcITa`gkqx=dc2yFnrLDU- zt@?-wZ(?g6bMZJTHOM=CW@~WQGNyhHMpui?j|vKSa0oZwliBKq4{NNpyB!ZKef*d* zcgth%qK3$(83{|-aCF@)6E5Oyj;kCIIu%F=)&iM=tMjECc35A#6u-h{CE~Rb2=X)m zGKF3^m4!{LW~JgBpmlpYGb^_7z;+!as}d$4Vk(yEf(3wqomTBB`JYpS*b?O2-Rbe~FEE9k<+ioy}eSCIzMnh1f73o@BxBiaeL zbESthg~#$9um<1B9qE#~nZh79047{q=GmqYgMekfmS{|ftbV&>Cgkqg!kgpWQ7Im# z@Dy>nJ?G;zC@#1Vg%MIMfqroU=qlIy|cuExx zBr|cMA3;Nb zum37x3Y&YRFPH8Esk!D$E3g42h*t!-#s4V1ngdLBbgE>Vs`shPx%#vUB4XUKis0S= zxL9KCFx##IXme;1`-Cii@Dwuije*J;lr|RxDxh*+DYGd${ot~E|f_wOB8(n3SICC zVZ-}ejOv@y7S9~5ux&aF@ZuKJf#2p32(E51q!ldb(PVGXO~j_p4QDub@xT#gdc|Yk zCd1I!4sGfVM42SQX1ElT9zE%PeSOtpy5%DWqFx)wejk*n)!01<%7bC8W`o@Ffvy1u z=~utu%SwOxPSEc}v_=_7!%|;QU=V8W9Yak@BD1#w3s+mtYo1Z#Xv#FFJT1^pLP^e*@VbK~D#>c?# zd-#d_DhBflSQv*;J7*Ir=+Rzr^0#C+d~m$VOMcZL9AmNf5C3>Vy1WggXxC=19K=SG}i*!TA`0N`QN zH~G}J&$Ui4C@aa`&$-VJkhIt#Y@km2EvRc>tNBSz!&@(X{Mt3Sy@E|r#Vh%OC8Du- z4ycV7&2yfj*Ds9)7O@5ZwPfd9+p@NqGJmh$SF!SRZ2JI5Q`v2OAt2+#Q=ftE%kmx! zMrHQ1R$n`qNulKS*oLYlWAZ?+Z9}2Qy<%abjLS2rm9iE;PXqA1;7Vpr&TSV&=;zl0 zHk`ewu;IQu-li?McE1!^9YkaA{&W3lA>Y89Kd00($1$S}^Hs@`aRT(;K7WDDV3@G}_&s~1E(f;OL4AjV`lx>D7NYUd_GI@@ zFru)Tczs6}>S&qrNdm$S$`94=S@BM>7-Vi!npU`S(*~@;)W^7YLpve!vgOdDO}#9x z(p29=0ZeM|_p88+C#;E->=eU8v+)!{9kVk_&S{CI$sS&?YHkz24*+(T*X{U@PJu>N zFpYn{A`Szze=JV{}oowsv z8)mgvm$&C@RS8{eb0AQP*zCk2y8>Xj(0MDrr&kUHh?=q#thJMNPws@D1_OiNPp5Zo zEKvao_;1ckSEEQM8o8u?o9{Buqj#UY>?c=$sscw~)Df)(7^m)-MF?tzcX}0XpqqMm z40$nec`4rb!xn5L@ra=69St{Rc!MQv|g z^=BLN(Oq^UWo&vFMPM|=!re)4#3JhVnw7IVm11*sBaQlZhM{lWTmkS$f?3TjrRgFu zmTJWH&oI;+13y#dcd7CWji4M~VhwHFt#=3qFNdxdKX!MxcisElaKHxPwH3~z36t%~ z4F*u@+~C`{^O7(7HedK|Q*P{b%^z4F;m)Wc5uS-0_Uuw=+M&uywR#K*z&7S?&_}ii z3I@fODwb@v}`bGL#5+r%wfdG+p04JA9#+I{$4^0mm9 zyfGsv6&P%%ZNGsefb_iwRVpqhVKcC&)T_a>sZ&Wzk3VAsX zM?7XBsq)y0mY-W$jN%=Gb3`A572XG5LRWem#^MaPN^g!e+3)R0cDz~uFE_1g$`!;H zv=&OSIsR{|cegrgkEv;C`Vlr$)=<|0esEc)or7~#rzHh527Wof<`M|6bTH-+x}$5t zZCVg?^(aDI>2-!sk?rpG3w*3#US@w=TQVz}17txL2-knj9|#o)5$wNcV(y{~Ns(1u zG(^+BzxV}S((&X7|Fltpy&u$x#Xix|?hSb^k7Qh~T?yoBZ~wRAQZ3-RJ$D-3Ch#=j zaz>eUI(@`+B4oDMjVR5VsYHmo`>*S+N}+Pw=xYX&p%XFFGG@VT6~nC`vjMDCA+E}2 z0=7uMz$f$0Ua@UPO859xY=q-v85)yXqJu2XcLt8szQDssuK$RyJ2#EuSi1M*M5@e$ zRl;4Rz1lyO;$Ju+XV*YWw*34uwT*Z8ryzsCAl_QGHbY6#+rRw2k?~LH=C{hl%w(MH zx#@3Ie#5)W?)3)QLd1IH?@+|n326LO*!H}EU?0ILIm26u`@~W~6?f^EsXKVm1l-@8WJULcTON(wW>1ffN0vz(2q;WVv&f4rX0(do z#HDCMJr&<<*V4?($sgV@^$)<=x0hw>0WMJrXmT{ty$#z(?12{wQX1=(~fs>c;}+gflynWEvh?0_Up$TI=o&)>p& zYS1Axn`<8t&W@}59fNj3qNA_WkeO4lI)=2&8fq6fmZpKFumiK7On)kw%UgnYwQ0m0 z=sM1%YsS9&RpuT%^s#|+SAMo);vZ-SZ4}GYX4k0N^)M#HvX&15%JUCXAdxQRNvM<` zyl4sl(>5*a-F_7>A?u61>vVhyv&sd4BAT|BDl7nZO`buIJ9!l_G)<5nGub zbrOYQ+S{+^w#He?8o2LMc}sS)XIrrV+7N&t^c*b5^k~NclFa&jwiSSlU@9X5+LCbz z5?~u&>1z%OCBSVLuzMjI;pc-7hnk?uB~lv{;OAKeEB~gfTh=QSWStqt)B^AmOzn!X{>@Q#1+5@4F(&7J)@*jsuSYVcyP#U7d+VbT70&x|6 zo;>B|AO`h$l$PnJa7r!s%FQAFs?}E`|x< z@f3BtIB3K}lkmm?fU0@_i{37t%2EvnI6~=Oj!ad6c0X+G zt7!r$=~6QEnM=XC0B#isgNoF16{#B*83V0S*5?#}cP$@!H*LgW0-u5%cG9lLP1n$H zY{H&!FI9wy9FF`KsKV^^0Ov2{S%eLgfHS2>lS`w6;jJY?osHBCJKUQRZjs@j`@^II zddbQ3de@;p2m$!+^+}6XMS$fuO;>D201yy)FKI9k* z=n?@Fd)R)6hxut;CFq;RIGI*w2tNmI5qOD;RQ?*YuDc&d+)5z7(7n|nvf6J3V}am- z)fn5*Z^xkjrMtx8es4Go?`lhlc0!{R&?K$x49x&_2j7SsTSul>o`HEo8Odump=;g> z`N2@JDT4G5go(F@K%IW-)K4U!(o#Yh1(Yo|C$B^npmq1CLCK01(b~T{fS%nxjc_7V z{XxD5bsKz8OO(gy$tT4BxA^)$tyvHD%+O56Vf}+WZRVY3L!$@|G2k))uJ|#y^I~j9 zA^9ax``hL4nLyKSE+Z1kP9xz2Unpqh{tca~pu>(K<+Vb012O7LE6~}5r(DkXJe~k< zod9%zq>BDLM-d!42m~^{Ns2Q`>fM|11JKGIlTX~1H;|j#)c$1ViuQ-kRehCUw|!0S`#FEhasY)s zX-Pa7;5F>9c|TYD8ekT38%A!u0WkFs8i2f?{}&ihP@P>|R$=XQ5qwIEof?{&eHagG zSTNGpeXYu!SO|{iRZW7Ie|=eCQXSL2gL7t8I1EiM7!5@S_V10E zN|@@BE$2d*));N}WM*$sbooH-(eWJeO5)RZ<|t>m)BPiz%II#F(r9OAuTI2k)Fdt2 zUYi4<3Hkc3I^a3H+w7N#T2uezqJYPm$uN_3Nt1T>s{!Ic-&oKxumrXs-j1BYkP^V= zynf@t@^(eMCSp7*^20=#iL3^+tkpzWg_CzPepE_z%xy~9sjc`KEm0u?f+9sUD;I0V zC8HIv{%3`xSvfDMIDEz1!6ziwdv~MzEhj6583O)~H#wxeksvb#-a`)qX+4F^7W?W& z)ftbF*eZ|C28-$|ytwyKD3DUp6eN{c`I)_4vCUN5{wv&D5uSt;MwPcDoD3qSU>gh? zyr)ztdsZQJi_{XS&r`?YT!4~FJ`T5GXF-Lr(~&8!(}srXiIx`>Hy^CjnbuuQBsmow zL2^buJt3U^Ml69hD4qDF0Ry43;nsZ3#Shk zDgE#j?+`n7Shz>B7TkdzJuf=@{gWzES~@KI;!{s0a2*rMi_Px7qt?`seuGdY?LH@~ z)8L-2_2N`qTmXvf;&NiQ;As7~JK|x_zQf@CCDU4yfNjs`g+)1&?S^L7nI;#$%V-#{ z{XAiuZ};chw1imw)kO~^$mE|pJBuim7+9He@978}Q#ZjpbaR`veOD?vAs)Xl@LGJK z;g>G?!L{6P($WXXM#ko;A0styynn{``Js0Bx5~=!;FXw$M2woigm_x*k?(sOk=RHc zVf8`}qFHo3>UgU$-=SNPoKKI%A`js4MM~_>KD>_d3+-`uyx^Q|#aQ;IDw&DJ%+lx@ zcS4owgplm%*qFNi z<*xcw_SQ$+dHNZnn>K6Q@j=DCP;@Z|6_wIQ=N-mjNg>KpW|PdYTQ+|p4pMZzB4rS9$*^Jd10%hgHhEmdwp9_6!D z9=g}4pew--ic|$Yn&~cX&8Q7ItBxOWovm&nr95lCn5aR=pwJ0k+@G#*|W!m6ew` z70v81BV3ljTWk8=izf&#n@C??{oxY4MR7VdD}Vlc?$()&kzapbewxr#Y9f)rFyt6;z zA9k}Uts#HM9v6e$t@v`~UA-KS+B52hc)Zlc0`$VR__H9E#$@j#&juu2+xyjDvbbZk zme`Q*GiNdreVZNJV8HrMl_a|xaXWakMEC09wti_RWyj%2^`1OzrdobYU$2x>aCnHW zCsFIFA1m^hWDcynEss9OjdFMOK4eBP(7JoZJgcYCTzf)~FZ86sXG!eR|W z+Oqa?SZ{h`&=y=}ht?YQT0WmVdh?3y=(B@|DqWLpE_1DrYE8>7WBkWdIU5$ox^q&J zM^9Z1*a?_VvdQ2sDq0N=qugTVQXdEz8wt>Si8jqzEAw(4%KkwL%GzP+(Sim-iKI_i z1+Lgs{?}isG%nF)rY%{c-hN~K`w>G+!+5O7;GvfWyx)&EMH;97G3(yyy4^REhbP>Q z?4N2+nR)Pig%rFT9;`N`!;`CvzpuVrQdrpi$#cwSpwLj_#p{NRO_$3$m~`#57@w!g zp4*R}n^nR}IP_pe-@4HS@cPsG9E@e|MB7U|fO{$X$UG zt?O0VYs6yH&4s)T9y7z72xSy+VNnl(Gr{{OtoC+&)bRHupVU?!<@Cn~(Y}>;s!re% zoKzFY$Gx5Pv+UbGV@8};;=Gs2mVQiSy7*T(EK-RM?fSakNhDqf*fO<|JjUXe6Gi(x zn>O0h3MSf9oL<`Fd}_-?U?nTbfBBQ+3nZuGeeSelhnpjt&%fay7qOG%g5a`NugCNo z8P3GAEK`<#aLn32+8ZmkPg(8p+w>q@7!zyyz!&^WcC2Y8G3&NVUZxTOL~qW^J!J5h z2ZN)}&%F0){Fg_YO+`1|M^5k6S=IzpDsjr{*h@>x{}`o~xRUP1gyeOLPPNPCluOJv zJSy|WU74Rl*LQ!Dn%Mk7B?)dXlvvmFf67>dt%uJ@gXsEgea(=R(&ed4GFz;FVp}E} zPVvlu8-cy%LrFnlcki_-19`Wpwk|!PU74{S-QykYk?;bzjf(HQnZU(wil_ghENYRo zM8&t&FHZ@k#Wrn*#t|2naFs4&Q(q$u4HwC)`(p*k>+HJQ5rO2AXUnz=bAu_FpW0vv z%0)B1eLCMDl2hkGPP?kNv$<*jOKe-+tIyA`&{j1I z6x7~&v+k%+<#c@Sn(5%)E=P!^%^5^D+Jn^i__xUH#vAJgd+hdChPH zj{ne;Cr?HN!!8~;b!UT}P4BD7bl$s**Sq*GV)ro~J@{l?L`|pW<1>4|`_=a+skc4m zdwcI*HMHy_dQ`p|2sz#*x&D}9gAA;hFfuj7JTidQ-KS{11(eaIw)h%77B*O3kv3Eb?3fj>%J*YX%2hKKavJ8K!; zd(_W-;Wzz6KSD`XMlS`66V`t0h8du5w;XCm)Cs2duA#`6G5=WVt%c8!EASkw0neBb zto>H@CyFbj6sxUPk1q6hkNCTh@Fupb#TUA<i zw2I3}W>r>s{W^hqBGJ4fIaqt=%CEG;3bksVNrHuzO)hIjn~6xg8MBL6UEVc8o~?Asr}V_U z26lWOx<)7Pbfta@o>hG+RFMh!`PX6ZM=nWR{=^IMU670s>ee%g1yy{5{R;8rI+ z8?u2brx;w&X&g5+a#C>o&MNa|GmsLV@kY#D@wRo1?>(xeuT$!AZJCv#*`bG=rx%1} z2S28pnIk9SOQvX0EcBm;z1fxL-=RsXsqPZFnAuig+qE?UcZjtI5vdorF;QhJG>gZQ ziz|wC&%GaXHBY4bqA;>1b8o&<($C~jzKa!N;6dH$9pg!did>x^EH5wHfqSm1b{XdF zJOv;5ox`$sZO4t^w*Nsl>EUdz>rRo%0={XDYO7#>ITv-iwYG1AH-1@AJLz|=LrI_U zZA;(x`S;Q*@lEDDPOg;`2@e(uvhb2Cyxwou*1@sR&Hd%MedrTMBVT^~7Vm(k~^Q*8&?qQ#y@qOH7w=EtC*bB;J%bvAA zit~r+C}Q8QOl?0M9u=ZbNnXfceMZKbO3FVg4$0n`c!G z-sPb?c^`3T;;?A6q;9U`$41!#Q{T)}JqBlL+Vn2Wt~&Hs>=&tNaQ=lau)o8CL9GUu zrx()k=&z3i5I3)_e!bo+Z9f4te8Q9wuJ+7C9@9Hx@q5%>XVdiP_fF=yRRacSKP$=; zv$e-=1}{e(DkLxG)UB+o`1H=0Rd7}wS>QbNE8$Ir6+Mr?OW^H)NR9ozV^99@4pFmv z<44TeH$}JDC91Nl3T9phURq7qEDa(RR4NHi==1UVCYHre0!sR^s!q+=s{Hwyf{h#% zjgY~bX-~O(;#1AcO4P;aa{(#Zfyw!lu3n?Kau0IzWm_9-YwOfNTtL>*k&~7m-!jgQ zx(p8d)>|0y$FCH*`5zG3FLwl$uwB$}IrX@Z{~gvR{nfb)xQv$G+v?5aogG~L6qk3L zml3H_chA~G>JI+1?fFiU-Gj*ztlw|e8GrI>0D174rhK)<%a`pFm+Giyrex7-k6*4b z??36x*XR*`B#E02%O0$BsBrs!^y4S%*rmHJQu04Z_G51?f;E(fjM13Y+m#u-E*rkZ ztUL?seOyChNz9kcrw-(!qTRL1R>(*df=(9czm|kk zsoFcWKg*OTJtYR*tSJ8ia<9na9L{OWwID^Y`g}2tYMsMJ{E8ocqOPQSTv~l1(Mjow zvm{WSQRjk;nK_(~;QYA@*7Bm)wcak!@4xQo!w5drSGP%fJAA>bMb>}5?&oXNyUp_) zHpPzp&7u1V_JLP|7T;J~`0j#>=TV%U1T%DxgCwg*_ekH=;&eO00 zI-J%+MjlKK`KbwAao_U@7rz@B{L`~Ho^U;j<=SWYqP_D%<=pu8=02{DQ%f?2|X40=Gn# zc=GOLLgsw(#p^fwwyU4Kt9f!eg?=R^V&Zw{^2>eK6PH~tG0&b-+aNMp2HQ}L;{pvj zbH>{ZsW+d#!;vhhQLHLLC_O@V#L<03*;oE;GD6+@GJ;p1THvlsWO7MeW9t3#Yt*#$ zz!P^3VWYjmR7}&fuGaNmw{|EL56&}gNTc0$n>L+88}(SZbM|w&ZOKxp^KZTR27ebZ zNpj%n<|p!Se$m%|S?&}Hf3EdNr?NhA_k5kkTtBaFtn;CC+!D>gIz!S_WAibnGwz8& z$BtDw_lgXCy4X2o-gM^rFKzOz%xj-J?gz3z)#Eau`!;>(w9l{WkDvft>_Z2ifQ?W; za#P*IgweHLruSCBJ+siw`1_z^X87aBbhQ)|#YJ-pmIpTNiL#bAN3o@XcR-Z`(*8(4F)P?O1xor)OM$-QFl}1Q#4+8%)2+xlb)@H=^9cx6+#9jE%GR zx#x(oaE~+l)U3un3@JCN#fIJ8_ljKi>=?gSFlsaJ+T&5ncU*ywZ4N{wA#aaY7`e#) z+I+i}OO1Pi5O1e5VBM^^Z7hA9b0CuL-31D5u+QuBq$xi{xndFUZC$P*Hgr6X>@mq|BDx4=T$OLGF!!O zD)PC%3;Dm1b4={&=?UnNC4HhA#!=^51^3fCUeRDU&i}UbYu9Z)Hy?jw`Y4GCyPnlD z-$(D8&DM5|5?b25bc40*QtxYx=tFF=(Pftou@O4V2xkR5$Mqa9s^=hHyXCLyg?60s<;#2eG#^!!PVEhSwf4|rh1&BpMi;YVv7H+MMcx;j7bG6@YlvX?n|*g}(m_!SBKHb$S$CeSEWZ#d5*{|SAz73DDFtAn>Ls#tiR;N}W{wByoshz-0S(Dd0N ze2bzSChrfi!K?|-YaPST&ldMu{MEEWKeq}!6KKmqI7x+_Q3)c%y6L3dpu2HiCErDn zJNmr!O~X+3>!C@di3HOFbjJc2Se|}WW4fSnibXYvi=VRaDr&1pZGv8yk?sQ_hcSr* zS8y=uRP67&plZCR(p!6&h21v4vJXWlweK0l$G->?c~1YVJXP=IL?Y#yDs)NApw*9v z)yq z?!rD3IvdU7@9<6rX2fiSc=eYh!_WuxDjf9jh_d;IvX3QBg4&by2*@W z@RQ7>@c+lub;ncvhV65Xb9Agaijd-vG9wBl{$sB z%HAquQ)US7efquc=kxya>zAzW^L?KCzV7R~?)woJL|NS{^6@U9Mv8PZ;8)#OXT-;C zlROs+-0S3f-0NpX81N_#!6J({H{m%s%u#{w%)cD6i}wffjem#`W#WC#1N39+G4%9w ztUowMVl^2V@M4x#OAp4Rat5B3#LLL+7A)I_DiTRH*GtfU##V^RY{e7G%EU?!gWL&u zWAiaTnO{$2td4DCXi7@xr5!X{II92&~_06K`gPc7R3O5Y)Blf(P z%S2zIfU>x zNVG1EXBF}XAat1ic+pj?Zg5b#n2q{~-y5=allhJkX2dH(^!GdB>|bW9(_bOI5w%x~ z!>GJMlM3D>-RF!Sc=gOE7p0KZe{n3yl300bUQMV$lC{g7`6Sx+;NdqY3c_L;DYz7n zx-m2Y+t+og8@v0Idq%mrC`kqRuf~sIav1SBCgwTr4Ju66EE3jc(}uQgI$>b8us~Ni zGrs!mDjy*z=za5@%cq3*rPiJ$^cpTSUg&!3H&B+($%u!x#yY0rP6I03MA_>H`+Y_f z2Y<87Oj-W#jWp>%^Ev0eU+)@!#_zH+$}!!lUN|g){qyC?-)Dc1{-YTm^c3&+%Jo2wYFwnm7YVB!L|+t@-mi zp~Wraha`2l*BY@ytbKmLYvyYK^0WJM3kDJ#qWM<&Bi1W-3+qZSCDaoyuXr)y*Jdbg z+9PYX>KZT4d||{hP&}aRHVF#(oHCVSM~%C@*GnDFWZF91y}xVYz{`mIp=;c9&wpB; z7|27A-n#rPfE^9D#n&yoj69UgjB1J{vY%*c{uywj^QULEYacWIIb{NZ7h;4QJ){_> zYt?Hq2ix|N10S#a{T)_XHF`GQYK_@Hl@Sl4lFTqFaIo~ci5C6)WxS63l{0} z5xiT>27(^rP)(aP)tUT}h|Akk_6eoGn;ZSW?NUltv{KJ<73z=J48$F=rNCYtW$Vd_ z&5@C(0-|(G$RC`=ZeA$_aijZ_&li18y5a7%@ecj2MU!sy%k1&~+N_|c82cG(Mi~%s zQk{67nRX{ouHv-8w-%Ys{f1TQU+X=-TVXkf?U4zIurttD$2cS1B3?kHVe7n^c0_aZS3L6TDp0Wojnx z*E9V%&MY3env+#B;kWvtzgYeVX8(8CV(FhFvlHCbsf8cn?%t-MW$DGw>SJ1g0oZ}% z>M1~$obsw(H|csM?y7!p zGvR^o`>s%rIJ>-3GxQR@L1`F*dlK?_~XNX$D(vv>cJ(0Ylmg zRG`S=+Vx0jErOU4qQt#kA`wFE$B>bRg?WkTZ3`U!VBa%O^R>r~O_@R(0loVA^)tg8 zw3KP*&y$ngY|!<2N8^ciQf?xuV;?7LepO_!R=c(;5MO%i#d~<=V9#A?yP}$b5dPHU zu=ObqAxw|YbkSx~7g?>|Pc>CDLFja6)ULdg{n8S4$g!I0(*B=*;rLNALKZ?eI;TUc za>;A@LBar*Jr(|L=I6Ii+No{qMvG&FxV5^Wum2pO)8)Kfx%v37I$$flIolesrm~;~ zPm{O;OX-bEPPDjO*#UPGdNgU}kNm62xkt%*RN)cec+EKR>*~m~=9lOgdpCxewiW(z zlmfx`_I0F%tE(OcrO59ru(XZmXgzRJ56MqN8xhY9bENxre(N|4j+j>UioV4e|kNglk zBCO&yQ?3}n>jR47pkUEib=#_Ms9C|H?4U~kPV*)*t7DAFY4mGfL#ib)`+QkdxJeK! zQPWw1{T%EzeNloshIHf;?oqAdgY1Dn)s3kq{Jo>Dxy03@Njsqq8v+W*AEoa&%TR%l zG4rUrTw#LxEG0%Ik?yhx;7Ju#fKy4M1y&fWxvy_koxUtG^)#W)kT_^Tto%7yy``XN zk5Tz5Smd^H?lG%?(Zjg&DSHp?nXZ*AR7z6gq7lMlBTC*?`ce$2z-r|CAeOYF%_W`Ax=r6eQ}f1IZ2-ymt=AU zCHBEEaV##%)G!?xWRoOKk}X*ieaiP9@*umHsBz8(umoSvvl``a zo#7`8cXeFI`oc@FsA-JkXuIw>Q-VS#*KP6P@Dfbd6k8B1Y|EM$m0A(p_$0Uv$A z&&ZTLv%BoAE=wdyR?-qO$7G7BaBc2_D6UL?o^4ZMWAnM=k;Pcti0kfKnlh>97ctl` zRi`_mkGnH5<0deM(F}MAc;}E+)%QH$jgKz-(4JJp;pe47?)gXCiF?yxRCEN3?0xXx zY`lANs2sFCn{@*uYJB-0A$}(u(t#ym#P@m`3ZN90wQBqkUpEc_GU{VUud_G-EG|_x zG+YRMeAwVLL5>j*@HtcZa~c15CIHsXsfD&sr0!dqH>p^h(PbTD^N+ejK(&Rnsp4Ps z`ccwo?3p?SG$|*s)jft0PuonQJcg&G45+`50PP!5t-lh&JzmfVM4auDQU;K`P<^{p zf;wF3!vrQ~dFvWlB^v{&bndtn04q?)Obt;Fn47r{so1*C;U z68XKm{D&t!DRrrEW}K(pJoz`I>w{*#3?7eqsLhDCu4z1RQauatb?+yPARfTP+{tnR zNcLB~>_#Q3$(rc46ngASw3a&4wO(eteua1nb@=!1hNit^-vpzeYRdO4@Xd$k&(;l( z6nAgoKO;5rC-XF+cfs28LiL1C1boA;Dq$?HO%%Xi*In<@cgo14M=7|@Ab-@*2g(t9 z?GmVQe8{8ljJ)isds?!@?5zxDPyh26(z3W$Y!%*mdJQmvI$&@eWU6Zz(+P^e?gn_2 zp33PP6))!zn0mCzI5S?_)%|z;O59sorfX4`WAD&m|IiDZ#gO>J&Y}Y47N?#4&#cZ! zaIe&Ueai-49E{S{FgoPn|Iu9k@P9BM{kfe0t;tIO6~CSR8LQ848W6Rg)2D1ZXUJTP zg6iwx@mLyxzF)J$I$1RhU4rLFO0!)2`ygwo?q*gtc1N75cEPn61o9Dx{ks{F)tTN5 zSBXuBA0-ah>I9;ilr9afDqWQ+L@7wweC2G|tx0BeS_?lR#sGzyI3>1B=+~VmUJUqR zWAo?~^4S=|x7{=#4jP;5z!{s2dhL`X*)|ZJgZMOw;%_SAZ(-q4L#9?Y&L78+jM*qC zeB;y5Jn>2pBb#7ec+D%$$FPBYwS#B`f^{?PF|Eh6X2bLt@DRU5Ow2!R8IHZG?tVKR z0w+Uhx)F^H5FQrxbaZFHk9|YkO@|7W=4dWz>bbZCw_E)bi62{SN4su7L~MQxYHSy> znRyPqsJu{spcJ+Qgz8neE$l(g?v#3yc&~eMTEc{bIk$ ziT;Y;SpwiERF}Sz*GudxSofyFZLnxeA45f-R97U{uIp~r_d4hBp|S3Vva4N3C?_5W z$)6$o>~dn~kJB(8m-MX8{M~NjD||7kW5P>DnQjJhI#N4=dYq z?+G)Sbbq3H7v+Xhh;32&;3qiENtkl}*=MxmdWzbZI=o&w4yE9$8IADzt+;h1qRVTo zV{yp)yU1szQ)rVjfI^kryrNS&k$qzGd=mhNp&1%ZZ`F~lk3T*(KEnK*;6Sn3za%v`8}v}vR>g?p2;j0 zr^@nCyFO=of5EKO_fO!l;jpfk$iIJQ-mdeyTi<7{Tq<8Qy<0GJ2k$a%CNe<5*lyNvuek@3@(7jdjc%{1hL0cz<`~!sHLTJnN15&?|pe3+u1A zA3iBj02P&$XF}#(D1|>wKiuEGzFj|g>iYt%8LFvl|5t)%GZ*3TWv)E6iJh3sQpY+k zbLV+(jVZT3(Y#}RnqX}CX0&tMTkpWs8yo)W!j-j*OzzW8xb^Vg6Z&UYe4Gpmp+R_f zJ7ubx*9^5fym@8f)2iEI@%lqy=4Z3y;LH4R_VTX%@KXtjCxxSfK_!fMX~81MX~4!z z-$*}lc>a0tyr|i}%Wcy2TIN5k%C_69?*18qj=H=AkMYY_W{O*g6Z?iqo_Z3Q-mTh6 zH#M`Up>m=qnDdPi!=t_o!^wVrJ*A+P=mOR6meK9C| z4*_v-@6(y32KRVW(-U&|S;&Z$2a|*CY6a1ACO9`}6MDE}5;Kvg{|ha#i4Pc)%b!-_auLEAUQP5vTXzc`=&kwS<_-Q3R;SOjgKIyn zo2QTXkTz*ic3wd^Jj0}IHXM3i5{H*2Yz%k?KsfDF> zxqhzO-{0GKBdxoda+=M-(tklJ8?8b@DHt|X(RH=aqOLm`Dp+&w8X!84%ypy4c*P4>=Gq zHlH>yb_+pS*|siax!u3?qLZd|`BJqa@~EzFF+kbl<%-Af^UJsO;-Wmbk6VbLnv{7n z+m&e{rl7b25maY%d@QIDJC9SBPw90ZlAyvx`0^l+$|EBW0bb1=34BQ%t}j@G{@Imf z_Hfj>@!cWMM71h2dI(pZ?7NkXA{qIvcW%X7PU{e{F4vnE3M;}Ia(5+Fhozm(o1DBJ zC97pW{af8Ui?axQ5UNf@eBaXmeAC+LaXE&>Pe~%GVH^Y6F@_{m)B5MAa=sOFBa^1b z<3`E07*Z(W>vOt-%WR^Qq#SQOenRdK6o1#tb02yWdw**wXU{;gJ@#AzrJ$^y9WE}X z5ogs<5m$fjiYl*D+v`MK%6e56lPf)^N;!o5f5eLcB&P;`@0m_;aqhbhlnFZ0Vf-)0 zJSaBDDlX(loTLbZNmg&;%V{yB5QGk0Lc!SZypv^1dFZDrOFU?mTxL8&x;CJQ?|_64 z+Yc;XLMAv%>LWQ}L7A>eqe;M}ZkWn5;`wsrh=6v)^mUMtGk+!Lbg;OM*MR1MHe3~$ zbr?vzha$6HRf<)Oe0oR=J9#Oo1g|n)o;4mq;6quKF3BEKN{OTIH+;RLia3)bFe(US ziT!f85wc`+xH0DD?Ihkc16COI==$^snQomvkz@id$9tFv^SM%C)^-{qhUMkoZkpTG)KC8yIixq5_EU$b4XACa zDWvGb0q@Q~ z0_}PocjPv-+g>R zgl9=xh~e0j{#Xta!n^>~g>&2HW{=-9&?ZiuAzVXtKP|!H27Htu9>mnoNsV}bX)5 zOIteEjq_aqs*o;s)V{l)F=~_G%$Ox_ib@CGfBs~rftI?0F5vpV>Q41JGD)hiJ(jFM z8-`fU!^hKhIm)@sz$jOpSOl?IGx|61zsFD91KGzVX8e&Mi*axJfJKGQVf?>vtLr=PN!TM|{~Pd>pAO3P9oS6bHe0I^qe4 zL0QsVg&dI+ZMKGNFyZ8Rm5*Ketxd0#@NQF*Y2Paz0>tbX|N+l3<~uvpD9HxE)>6Vlsb!+=t; zp@wp0`}Qlrq8Ncs^A+BSn#jl}h=^NoF!RV+Ol@5K81(DE_B6SSx;UAgeGJ~7xMvS9 zfhS$an&Rf{iMA(_eF<83P787t0hwGd(+K5}el6{SmBu-{YUgSWfG6pu(bI(c>w4yvZZO=*B= zQ0!LG%3;HSpgcjr^#ybMG9}h}rmX8{oFtkgcs$^*S@JCCz{QVgMtW3o5MMI}28 z=`3F6rOB-r?U z!ntxnVKf3JtSXEY>G1G^-4WHovcwX4t{8ZA!URNx3*QlBYI8@?#*@s4)yvZ&i@ML2 z3hN9{A}w6}8P$+-{(s-p3lEJ}W@=>kmGI?n!DEZv#l zp*(&H1ad(k!4R1BDu$HH;V+Qf*;y*DYK-(G#Xm#VI|#YmvgKQ;1*&3ApXr(x7OQui zsVrPmk=Ue7tfZB%7o^UiRSHY;*(&CJUrK!Vl{}`xSU50jWpd9lLRB=+_A=?>?UN+;1PvCKF2l7sJ@tI9xN`4v7-HX&z4017y`3RknH%`N}l&AUrLs~91 zjSrSY%|{&kyL=80+NN!;`2-|~Je7yQG3G*3G<3W1DtFb&cRBd`(~td!WU%%PQom-? zmKvVm;L^mG(F1higN0vNsO=$;)eN{b$DL6l`fMUSh7=o0+uriet+x9=7cZX~iVl69 zNM+#Rzp>u)bHZ(|D%sUPni~#HF&C?Ib~C@~tM=KmD20x@z@5$|rl4D2XrZnwzub_G z@)dxUeIVFVLwm=vdKUt%5+tetPa18ic}cilXS8UIxomu7I7|?_a+&cG71EyLRHN=j z3lFnVQ;(U5p0yN%P7RuA9nGv1GTT=lO2fu|t|ZNLP4I&aXw^3zsk~QTEc+U1Y}Kw2 z>BP=Yz~nkl;0s}tcoKZ5#09j7n=NkC;p~6$d0Ixs5vS5RJ!1us~v@zI>grR2CM2B~Z7h)ak6va1*_UGu^F~=XGg!?dNvZ97w=opAZ6&w&JBFwq3U% z`0X@1a(t)%-eg9lvVpO==!r%lKPnI_H}_sz4wD5$jFolSLc!);x0Ml)B}Sh1+9I-E zqyA0{{oIYCwO{eAkZOo>L)$Bz9Vrm+a|mDd9w?SXx7K>)ue6^VaCs69f$cn>=!rgk zqBfmS!9)n2z~gLe-vU&oKB?r(xnOIGoKN@%P4tbY!w}-**u^UDd$TETcegFf2~HO~ z^AOG)F|1764;itzzSc#{+CwG2gbH~vEn3|6xS0H|Wtcl#+KE8>r4R6PR0aRoqf(gN z;qeZ38yaQyBYccZ#>XBC{mRj@R`QJiCong*y48aZqe72vmD;lMn{26I_hj)5yY$|d zed48Lc=(l{B`!cEYWIrXQ@ucXWDkDR-S zdENHy{+XxJa7B;5mfx_{;TaBsE+3seK$;gVzRT6V9e=RC#!A;9`$~=osJw}j&}5||Mji6$LAK7-slGC8VU}uL z9DcxLU}t~o1)NDBLz4wJtt=xPAMrOVq;TxjBwc8cDdd=DQbYcT9BI)fR;~&N3ZVsIrzClk$ z`r-%7oTQCF4>(Opsyyof;cx8ORU$UKi3#r3qpDw{8yjs^Bu+W|Ps^E^?OqbQH0Z+g zXSIFEuT1NF^j8QU((P+T$GiiQYlcaG1uY@yS`ue_H~!MOqAc=-G$u*&$z;9S;!aic9>Q@t*S1h2&yRq@%5d)4bV?; z-B+Do?9YHM|6e#M{xLCEoRI2c_uuhM5Y9Jhu7f%zgK&n;tQMi~+nY;k%_SWCl zNmRQLQcl!#+JH>6_xf7B5A3&L<+u*&k|#STSt2Ar{@>gt0}<{zcXD^hUd`78lSN&zny;TCQMkZY;@^E z27fPxTz2-)QT)TDzJk;ZScjSxHY zhtDKA`4}yrM3vO3fd`eI@=T2sK6NVi@S}ng`o?GyZ#Lh?H9$=+L#;{y+MrK4 zC$|9vb`)WO!r$fcFcxR>AnI}IGXNV89(<K@7)+i&_Lo?D%bVnNr%V{y??n4P);L|`#Tq2e6O#9v=bLUlmjX}u<1y!^gq-@S_c9f^~+PW+K*8H6P2=v zFbInVBTyLqc`;<_UDqhDaET*dWW^X381R`AC*+Yo7EmFnp$t612SLCIXbkwqWu`Eu_VPmqcGenI@!%pCtJ57ND|k%wfr9sUM1pJYdKoR5Re`Q4&EkZ-68PDn?}b<6~UfT`0jbeQ%y2 zhlfZV4AV7hUP5qvLyo;-4U9YcJ~vB9pqPG&{P94h_f)+Ln>%QZHSHQI`G`3&6c?!N zzFSc{lN4s4l{ivR>}*qI2&GguuD)X5?aa_?LgWxp=`1&qKZb3M0$~eANP@d){-@k2 z`>kIl?LYltE{Gvh-6++s9ch(_S`PYe~Ol)ntr0xM)_~!+%}|pP24kQ=FeiVeZP(_?DImY4-!C3;ii8{ys2j*zYmLE=3wE{TnatDd^_as3)6o`GOoJ3KSdRO z7B#NQCw^Ywab+_6h|hOT{#%jHaQzjnQpP_qDek*Gv1v3Kr-nQVG3yRJUMn*3VW=Ro z-yf*Fi|-Df@l@BQq7XH+24euY1td43U>Pikpq&{z-q5ATKUcbhJgSF`Y{3{Bz%Iby zf3ShGYwYL0Qz>bAn--&D0M?3Gl$vt)lPQif$fIgV&e%fu=7xu@n-RP~-(C3f3QKk# z0`!*d;`YE`-~rPSND7~T{lABmJwsr7Nc(4W=EqnCSg2m4XeTnz z(IJIuagI|(=k8m-JUiGWN%8s~3i<_h+G$TmA>V{gF%cTR(+$JyQ9mGt#ZA)Xcvl}-ujD*IJfOuNI;(BuQn#O#`9!^ zz@uh$EhQ!eP>}jHn!sj6ie!MdW`4hKp_5Phn`Qy9`$jNZgTDak!)<4fSApBfI|9>0 z{e^sTTpd-M{rl*saTEIzinQT+ns*Kox?>@nW>#f5a(mlDt%4zSV)~gHu*TlPQb(Xr zeFD(2*LP?5uK#3M7H^NnwrW1&x|j9t3h0dR!7g7zzk*x@mAk(|G(cEjW%&u3(kxO> zPCh!(oX%QRs&fJYL8{Jym(p=}{I&qvHBb8+piBBD<2HR6~Z5|x*hAo$+chn?lVwBJj8DA zW5iUUd@6eHV0`O_u(eeYjle@T11N;EXTTDSFhAHUtzMu=dLVu=sxPCK8fPZXA_%4H z+4YUGRR!U*aTb)Xx*29c6%}T{`|ap$ZhgMcxH#myRS3BaY;L72Y-;vv9q=n1NOxSy z%#^KKd3)!&iTG0MVIAT#)`9Dp9Ms|PdV0q?6+xAmaqH_Sp$cb!0#!*N7&Wyq(2*P5 z!hUG{V84GRM9^*z+&8+6sHTbr&F?5RjJqZAuDy74;cf0(F-lV2*sGoA_4S{_9RorU zUTYfPz6F#@do7iXti6#>`>tgUYJm29+bbK?!Jj8)iBoTV=yvP78rt~I4Rivw3U~7D z@pcqIadAWG^fYKA7j-+a+-ojh1)>^CeAK)_^RW;z^+H@*@?umNIHOV# z#ek|8u!`Ye$%bq+iRXKThUWs}@ z)4Q#1VdHaA`uisc`oI#RU|qP$s6Jx|%y_Jh2!i}1`qLd|_2B;D9!JZk5`H2byACx` zPW4qA*T-J1s6ol>3pNMI5Ju9`3intGko6BkWofVZ@JNXtRUc5RbfW|PO|g6$Z754i#v}Q_f3p6E*}pu?x#e@I8NwTXSE^ z`&a~TH|F>^E%2*rJG#otJ1QQ}D5#_j7Y4RzrgRCH1vD*;?~Rs&Y{Y0me2EQ@3Swg6 zh3Qe0pTz38$AmA_sV=hM*^qKeUG`IGMewfpD^@+plh#dwx=t}cIS8&7n%#hMjU@-_ zuz1g2*WQ`lGP)!}od`hmZ7&{3G%M-MhkSO_CiaIFh<_GG!Ah(@5MHnyc*pg*u6P+b z-MjwW5ed*7Tdgf0HY=quLuHJ^i$ypzHYCU&{`@?`&WBL!kwVg25pboD+`tzD#QIl|jkk__x4@%|9_wV-IQ*i=1T>Y!A z$5Rm39jl5S4w~O6n)Ptefi0O_!`?^YI30xIqC|2&qb_)yw0J`GP~Vfc9hl=~^>Yk( z!X>2K&^bdToSXk3nq=P!__WE8$N<~JQwEt3VOo(b6oU9<$tB#^PDXs-dh1~-s$(}u z2 zQ3{Q{VtRZ8G*Y*p(g3>oh&P!6gyVqQSX-&S`Wm*Z%CG5lo*>s?;X7Oaq-l;P44(#5 z#uJEJ`L`V{A=U`%c=oZx-jYAF3*=(9!$q-wz@+t*EH${({@{WM-q4FcQvhVerT!jE zQ-wA!u`>Ca;2T8+?id3=$zpHov3b>89zg)9=409J#JY)QX)rZTlwIP(v1r8Cs>alR zWfm{k-8jiX)~yASTfN{2czS;T6LA7Kxv|Xo!afb-0ynT1knMse7vm zU{NldrLhkNlxMS5gM=+dC(~emm@Ysri@NNi12#-F>CWEIJj5&Uuw@7HJ9YLYJOA5$ z0T?&;BRG@vbao8Ti13Y2|6W7k}24zg`FSwRT9+@hC9ezJF z32d>jEK7%hqSXHo+kr8>j#dE)@_cy1_F1WV#Pk+eCcU3emv5!GVn9sgtVp9q%NFWj zaY?>BN3PTBA&-`X7nGoy3x+nD9*za7h{(0BMpZy}#FzWRgp6?J->_Hxx znld(buR$rCCCDA$fh;oMGv$c`uuN0Fe|3g34AL8m%Jh~I5*3(^_;k}IC)*CUE&_|f zjE6$7B;wGqvv2(hVYXt#HsM`MU>+(^*WbD*_(LP;&V?iJzT>$AH?MGZz5o>d z0~OMJTNl0%9MR9EB=q4muu$VzA>yTW@`6GTEr(1ErDs4{{k<=PA-z#K0 zyXI!~#KF_S6g;)jB9to8U^??rV*!wZ;?f6)K97Fubhc|m8fB=^BSdlCkpx!BW6t?U z@tI=yfhw}9gu_FHC)c8acRV<^^O^yiw&1Spbjofn)y9z2$tefbWY7TBV5&Wu%GuvQ z0q16SDy_OPSA<+O#PE(|6_JteF)=Ssk3d}kj~U)Ay_ccoH|7AL)>X}fHr&yGIAtP( zas=10^PspH)E5O?;JS_g*CihzI2b7hOQ42CA+%&Pu7p{F0Q%`&e#krK4w7)=PBtD5 z{Q6@W|8}7*HRZ(nk_VDxY`lQ-M9MP5}9L4k5EmJZ&)G= z>LorKFk%c`{5QS@EKTH4hbx8oa6kE9&7 z9}4`F#7{Y2w9&j)pZg8fzUd2v?6h;&l^B{`$VQXXheX{a;}?!fZlQT-sJPf4@YcT zatXx2X1(7d37#mK1FwE=vH0t(J8MZDcXBPYRmn0h6+qU}-e%ZJoRnCEF}C}N!TXlGmlgR5pvq^&e;)U;`MXP#4hlVVH2_jdK8h#Sbyl`%<;R0Q zX4yRJ`8@a7)>l|Urd)a*gUvx~`0vRp?XW(`@omj-Su!0va)?3mfJl|{zk`IctD52b2`KBw-w)oo%+_3tQywH8;u~Ij{%dAbG%X3|1!g$7(~D zrqkL_n5xK%Ug*X1Pi{?%&>8tZ|Cz z)YCHffQeB+9F#xVk2{^pdN7)WpdwfD}K?J=OSih@F{_Y~?UR*#!^r!TH~&6FiN z-239Fvhhh73(km=cN#Xo(8Li(3h9lU{;l1Wt|Tp_2`#Rz^LpP)n}C9I!^Y;@*%gW2 zA|q7}syFu?ISJllzYGAm^%rWdQm8<5Sg0I*0>7O^z^ebD`Gx%DVL;PmNxd5*;JN?? zF8FAF#Yu~gi0i>|cYQa){05Jm2WZ*l+kbtZIy`CrVyG^Z9Z&NS!VaHRQc4)zC&0;I zi)p<)^LDxFV1NA~^|L@`Jl{65DGVucOYS7owSa&GzCi;cjM&)4U3Fdx#t$D@wvkpo z!=4Qz*N@~Kr$`?{!`SD&!G?WnZW+V@es;2DH)5ptQ8JSvF^Zlduw+i79z$*sjr9MA zX6Qjxq0ytonQ1?#jC$NaogiEQmU9O3kIfwG?H#Ku##wv@JzPOi2dz?i=d76h74;A< z0#D7yDNITB%@^D@%kTF0J->ZmcU-z?&}Uq}+e!jiH%OdC0u^}TA&((@+Ixt6VT9JzACTGUhq)`P_1TMR`L@?WC)g zmX~0W)uZ2AqX;8 znkq2E+T3g$=%&WZZ12sy&+LFYzLDsBI;;vJ-f)V3;YhtN&BumJ8g{!8OCz( zB!H19xq6rry0*vKtyLdG92=3u9;E9arbg?+Iqb+DSKud`X7!t`HZ!S_jGOlIYaC-hWklcng zyx>=HI>sH>la@RJ9Wh%h@rd74>G=VzS@!E@KJH+$^`GmRTT(c*k%0BQArcIpm9qpm zSgT3wR;>81r;v(^&(iPE}5P4i@ugTs;mT> zxri}<7i1*07>3k=m@bt!b~q;Zp+bn``>_8tYYeGXUL{VL(L2=v{3NaD%r}S>W=*#% z^X|V7xg`U|7-ZYC!k1zXw%%=s@eCg#mg6E#%*#@+nARSx3TZuT__cX`Rsclr6fv?# zI6RHrgHsV+lXRsE@z6y$w*wm)+MA!jiSbN$gmB(C!hli}+ktNXg;L|f)y_leXqCj` zQ0l596@7aktcBxeGo1r}RJWz0*ECuT%m9H*{RSZ)dQ#B;Z76jNNwSy+2xzbvg`v`K znwV$2B<0i`ou2f1MhndiAbUyIOt|wvUv0p{VQe^f(*^-s12b36|Kd>fV@pN`d|h3F zb$`b{7O5b?*Ncvg5A>%(|MTUj^siX83%3(^{$W{*3(M_3rQm9*zp3h%mYMQUFd^?X zCj*{CDdh_@p8iqtUHV+aZyoMW{&(6z5(n;JI@8oiL^AiEj}mQ^0DLXfHat^GV3rlv zT7RWB0=0-fvDKB~MfEGW&OFysJvD46sP)2Lo%gM+@k_>ei|E|pBmhc=J}5Oonh0ek zkVQfEZK?ty8#-rHXmKy*J19l{z>vzVOXPBvf(|ysKjOnqVdxgr{?6wv@`5D^x~+2` z!Cq-X2y1AsLF@0*Vkt)%%^OLFH(=2E@v1lBdAZ3}=1$?yJSed2nhX~T)Y)c-E$276 zzOka~>@g(4mlr=WhrrN(XBzZ_n47rKhBNhsm@>@KvAXi2>AW|M+i?h1+k?wn7U04J7okRqssMy5tCL$y?WY9p1d zYBlY&5Ewv#DvwP9tC~7jXs|YL8Ze9_s4us&Q8($G=tTJ1)idNT*M>W58LpMDlS9RZ z*Ym$1(L@%u%R>`j?ZWUEoE?X3h6cDf;3*Bwk`iGeMNNn{ad!S|tyjV{loZcS-SrcK zE@TF#YX-q&N1pTZyA~So8knE8{a0`6FhVQQU7qhp!2}J?Up2Ty3G!~z1uJKv8TsU! zR5-709<56nL0o)pHMcA+FIF{D>i`%;(byXKBNE(=I@Q4QrymgY4C+dIL3!x+0DxP7 zDJ@L7{T3?C)$h7rbQtgqA0HnUL0T*X04?BVsR=5B-2|d31bGx%@jx<$OZeu?02#so zFy4yt6M}iZd0L;LClmC>!U!{y50%|iK)R5w67|8Dr$+poIJWZ|d??Z{t|B>;W_ptT z5OWa`jCWDIAR57*s%)fwiagpKlLP7-wmRY_BT=v;MJwu}u5-+woPUuo$rhh9iGw2B=$0kXmYlgCFXLY-}IoBaYob=Ay#^pfX+ zdENvcQpDlL?(kL3hu`HIYIT4Dd~C4j9y|JEWcmA*8G02^@|Ukn)4^oPpy3wru{9uL z1#a%;_uW{DSxua}NsbF#|K;J+&4*V-81aY>bGFqQO{B|L#m23M3AjLp5Zm)vp7`t{ z=u(nVm-)EfiB(3r>@GD*EWGULm+f4sXh_(|Xkpi? z>9?9XGRF$NJgE+F04XVNOr~8$x-6A7s`4YREcJTTIV#uL$}92^I%U`|ExhTR)JIvp zL&3x=f0(|UXavhVc2a%n;B8OI>fi2ITh+k`pqzR&P9a^!y{^Y!TK}?mjRj<>>Emih zU1$N^kOt_(;4;RoUA=J0+BJaI433l@@#T5RXK{|BbQ&@sp?<&ht!k!ZrDT^sS!zj5 z@Hd!5DM{X@L)5raAjO&(5@&ZlEfgNg)H(#y_I5SzaOc3-7ufP^6NEyv26=~a!Ppft z(P01`CdZ?r6t7r+FO&n@*e{<=BU7pdL!}7na9+J`wCn&&F2aX!11O+7N-rd>g?@bt zXk78Nk;!7UB9Lx#&^hmGZTOY6Ne^*jNz2XpxQLd{r{LRqNlEQOhu9u|PDq5t1zzOGnm?qV1(bU_ zJ@ABbuw2Ymj|jbcY6;?%$stQ=Kil1Df1M^|YWA@oaqhBxqzUb~QT>>h_Ofs7LKTTl z&CfO`*52IW_4)e69cz>e^Vi%yf!#;2t74LAn{s_E_zn?Ro`b0C3wLP~Gk=S{8O7~*R3)d>) z9W$!)jqiJGUEYu&SLe#o-4aT|f;-IjjrWr@g2SCBiF#TX-@leHEgrgwP||C!I@fc6 z&$HBJ6H%=U(Cx{CxemYmJ~Mw?@#|uslbCHY@-@}Nt!E{P&8THRAu|sK#Fqr<@k$}j zq0xQ37)%FdmS^(%f$OgG-XCqm%lIj=(fCwCueiyB`M>Ge%pgJ28eC10V>WeAx_1*U z69CvV32o$%Cn2!)7)zF;xXvQwUfr!>z|$OmTc0 z$HYyOTx1BZy0QWV5ixYK&APp8nJv_;KhEjzS6=-5E%skilAJtP_+CUAK zBpm*1nl3fDiSn(qr#x<*(I|cU7o9(lXxYe;!Z5>vjq3698yP~|V@^A6TRvEaH_o#u zjc=~Uu?rmA#cka%+YaWSczzxXO{=BQC<`ws>XeO`Hr1_dX}g`ex}|OPe1zA?2rz1%fIf^gNJuaW^=HA=LIl`z`RvEMFu464cvii`_DJRQt2+toW}A7A$$;X1KCZ7CjF`y(IB@1r;dm&sM%JvJ%(glG2qAK zMEd^eBK;OL6;&AMjZ`dY3(Eb+@*%_+dnMA>_|L&80~IWf>KUC-!7UNH-8C@gNVJhO*rn`|B2y}G2{8_0jhp|O zfE&^be=5m*?hhBmDOY0x6NSPdQDPam#Z_?*J!Po*W-6vOZQ}Z-M{^@0Hy?pq1$6=5 z!xiDOl~}Xo+DwqZC!4qF@euBtYJgp5V0=s!gNCmnq1nDR$Cz{`z0h4+1-I|Re=*ug=3N4dwQff)S-_e*v?^b zu-`ke#CP)yA?Bv0UjkJLDt*X4I!*Ow8)$X6FwioQ`@aM$y~3*#TpD$md~m#{6ld6! zAFrTH#;5z~sKX5mKkYNkL6sE20q1`ZtpZWZ$LIEks`-O*C`9ss@G4b9Mh;^PA;+mU zWV|m|VJu>)cldqPnKoq>_}u*_9jKcEScFm+1cYLdmd$P*&G~u9P4+T-k%L>ZkZ8 zOxJ;)9+ZR^v8AQDIl^$y)1m#JwgI6{%XzU35Rsqfo`>w-aEhS`!~)2@c;ee`D2sx$ zR=)8#=XaYRC<~iLHozZS18-WpXd&F~icD@)KoRS7M=%P6gZ8UTaHoPOPdTkLW~QT68If9Ef3fa(n%2;#@R57Y%t^bQB!ov0&?BdO{4XNciyC4!0;At^A{f z;jwx;JYY_t`k!{xY&euVP(w(;t7#8rRS*vFYpCHF?LZZlhw)K;{mXX!I%R_Mca)ag z)AREkI$oUS0yE%5JF!zPchjeFqs_x0tpFuRzgA0@{&xm_`JZkRXk}81oC4s8G1UKo zyzn->e&&zzd`JV4m@#bRt%$RbVzOITGZ+?Cq&|s*m$^%U<>pn)Bs4BS;C0gW6(aZqj(2-D zGI%$@48QFP>nktMNtG%r`X2~x0C(jqv{PN21fCCHjgYuhO%2kXlJ6d$0`B05oL0CD zi%AXEU1IwKSF4rJYDrI_{C-aJ2ocV~^JbJ{teXw184K7H*f{bGpM> zHDrmaAy^&LhMGO6&?^T%a!}SM*pqc&MC6=0hUj*Ab<@e*`E|x4T5pVSOnO|H@w zIK}-m31R}`fbp~jw1!4i>z+oZbG<R z5{t6>)5c(lXFdnZgv$kr^VrUe$56~qK-B>A5YeXB0x)D@6EO591Y(VEDfJV1)i-o~ z5i!3NIcOU8*sgiY;x4Vt3K3#GI19R@h6?%0>-2n%xmU8OMqZWNOo&2`{sMeA5A{Y&l@>7?-^1%)Wmw^E?BS(1E#wTC56ZfABL`Y0f z0j%LRH3SGDy6z@ZguEr)m7(K17>0k+@f&(YnY{WZhr6iw0k2v9zq|BI5_vU3>u~Fa z&JHFTC?ezbzt0~?T1{MrR!I4L!ZMl|E*0{71Q7cln&;1V%oN~$Kt=lyB+xJaH7xy$ zK6gu;V(gNWK9Kiv$1pXPKe?HDKLJd$M2^4SbeTPP33}R7+iKw#xW(MDI;AE&QAG)C zS`0xz#u?uhJX%*3>O+w(P4%aNsiC?x74g_!cG4k{uypYJh##Ke>}kJpQs@sBUir!4Sja4c1*Z3IJ!+7{LDqF-@HEaVvvFGmR&xe zR5avx~w{2Km;LpI#3T@9*Y_u@K?e9xZ)x;^!zm!mPFh1g257Q!;`b?uTE>wN>AW@m% z(;p}w;NbLqLu9YJnagT#^P&O>i*xxzKw}c5vV_$mrV=A8uvhCLAdZz-IdyNmM|`B}e!4zTm_@^@|Z( zX7cm!7}NbPqw$s=!+@+N4k#(6^eTdDaD1|faul=*_Px%;H$rQ!ZovI@HhUyJ4vgo` z1OVBo5Lj4C*hR=6KEYJ!S*R_78z95Q+J8|_YCG_b&>KWJcG_Kh>9s7hvD^J|b~@ap z{A5yL%s+_kYvnh){AKco1Va6W!)9mQ{(M>6?B28pqkGlLGaj_prmEN~xZu3@>f`xZ zG`uLvm-tXJWS|H`Fe^ste&!y$7v*GOw^OeJE<#Z7HG{4IS><3Z2kac%x)Bap`y5Q~ zFi6$gxeRc|E<}aOmU``a7BdUkJ%HAX4Ip_;DaY9fmzZ*(5!2)je)Bx=Yr2Owo{^zUs5JGT%!hZNi|F1EZvVb7y^EZCn zZoUje93)E|;`HYdP5)@B57NQ-W37Buv%Mrgzt}+iAGl)P$FMF9;_2~V8&{RkAxOy( zn*TV3R1Jg%?xzR*|K&Ko9=|5u^3(!k+wN!R#x&T40vF&`%#t(T+)Kahz3G*SzDh=L zMEB-FCl92o`~xOB0gi3tt5lFCyBR^B4f-lvF99p|ulbNgQKlyl0-Jx@ zH`ddpkZ<6)t=?%JLqQvZSX^9Wi@SY>;FAjYv_;@p(RT0MhY<9qOg1l5U$r=fc{wP1 z(!TppHC_6bCbkTaa-)h-!(CFC*}`l;40BlgqK3`8UhPP z2CJP;YAP6?q2xNB4p~PgkR5?bSG`ek?KB8Pz=;4`ktxv)nu`iHD|!}Oy$>j&GF>!Igv*jWSLprj^XrupG`1`}89ekVlHqi9B47hi`W8^lA;uB1a9vmY5p zL!gy&b{@&ELmURpXZOxY6B*)ndZmKIWFdKwO4Y$z&!lsQFrV3r=&rIsqN-emLwh z)PUrROKyMI1VSK0jlm+;eiUN$uC(zajIdOG;||8*0W|tg5z8$Z7)l00JCRQTI1o^J zdj4aFL04m=#A^RR41TGAyHART0j}1ynKYNM!NbOwcfoi^$UD44%zA(J`EyD@pMQyj zZ?&3a?e|Sz`dq~OMWoiJC&CECH=etH`yVMc_0ta}HRD(elSNQfc5*AUz`}l#gpr(|799{>G zo59yf5-b8JT%IT~EQ;zor}rh&x$6P;dx1;}n$|R)roLPFGuf2x6TM>kQZ4O*r~>GY zYH`nYw!eFqrW-?Yr$_eYKe@#Qi`KEraI~Rxj;i#3b&rGi9ofzmuFy^z`BB{0Pl(pk z>Qtjd7Y7xUf6u{A?lA<`KUle{0@356}}};T(1Ma1Im4-x~MD9a~n+o>Vvy6u4WPUx!D)Cndpwodm_=YClZWAt11$c_TGxk`*hAm%DDML&c)va8WT5#( zOIVamBNBX9hwzilrTm+;TaRF=AAXy?Pqd%hPD-4D?yhkFp#n~FxX2M@Sv?XngwlTC zk?r}nPjw7|m0$yHA8kqXn5ldEw}D9pGCuT|aBOkVbOButx?+{3a?UmuL(qXTe?{{Z zUWf90x{3Dl|7tr&_WxRf!en7~n!Yk?h!<96+nbm7%gGlvmM{z0FFW?0?9&|yU0kw&Gy(jjJdevk&U_a-BMnE` zXG#|BguZF8Rs3N9X^@ujkkggqR;^UZ%y^h6!3?s!*$F3w+Le8RHVsv*@Z6oUvS^niI%S6%Xq$9)f> z7{5?N4i>&w92{;JtnGIvCZwK$3H+kM!^dwUbr~IRbbA4WX!P0V$i(U;0|4qo_MW; z{&J=Ki6n~hN?pF7=J<$h8NtL}K$V8fY{c?cT_b|pef7yoj8xCrX}Poi?ITvV@Vn25 zu^Rq*_zb|R^vQ_do!k)abHtw4V7rtA<|A08cGk^}>H6>S~CoEVHt3Eko@%%Xj{PO$Y3V_DM&t|fe6x4+M4ZD%Y&p+l*Rb4%U z?R|FPW%}i)RCR(g){Nx<$2nLl0(Rj3vo4|ppYfWH`w1St8eV)J^2!`TQh8^%e${lk z&F{~u)&=6P)6^_2v&lFtuct;j5NNL_Wc@IIbP|PcaPSZD;9xVg8*LJ4k^O;$O;29 zWH9L6MSc(W1qX(2ujbP}k3NrgW&sIh$bDJ@)fxg55f3C46`_aldxK=JqHc)?5Ua?i z!#@gSTEZlPgDxO%&4Z8EH+t9-T7Z?)55S{G7FGmu3FL#A&DdOG{R3IN<=U>69Xr+?liy-s|I z=-u)+KDc@ZXYl7)I{T&9YJ9WeCxXhVSDgTi0|AxN39t1!k4NEboGFSti31NWpF(dD z`Fo!y{LKI=<2<@_P~FTSFfA=6TXL#(MY!ARCM#TB9I--ps*d-y8gF*mL&OcajnNJ&Bf^>A=nCy3T!Y=tonI)_pR-tScJ^~*C!r;UA1I~BiWRRJDY-* zYlPTBzae%*TZxzqaRudhEQ)u)8mMM3VA>5tI^rqW95oN@kB)}UFD3{20@yv?C4*n# z7KhFL9bj9ZzNS!Bm_1~3nrpgwo?BtY6XvVLF)-BB3<>^r+Z+zn#3Wqy*`l7# zei>m5g|tLlU8Eq=cC`Gv9R+@wlM|1eS3BeY`(_?T97B^J1XeSW)_LB*F))qV+Ip%I zQsLmopSN(~oxx%@Rz!#0;13uJNnSF5(h>)kgYBM?(78jR4^pS3jIyc!s>?l=^oXTa~GdJyxwo9ebO+ zJ*zjL11jAw*Xe7^`^z|PkOfQ$fH6n}R?d%~9)WVJ7z+1gA

ZNEw7@~? zwtnZ-YYx_fEr8ZE&omWu1ZK#jSSkKPn^`;72?2#U+ z7Es9b)wAf`6L&ie57_tPXqb-!m~;+A2pBbPBt76 zo+HP?Vek`YwXh1|AIz!CWMQ?n{fE&v@s5~pC-4^05EM;)SlJAgIkFGOUtn7zE;}{` z=h>(7{mXJU)0Hf5fJn%v08G>P1O>Puavq};XtHDGcF zoaY9WfeHzOAX4Ip_SHiA-ltnX3z1*p<_6MywBAw&IrQnE?n|U1NU6 zZeC{d$=XW!)mS9P4xTO?uRXucLz7w(o8hf+uNfMNVmV&xj{vtbC9!URPh=t+O0TCe z@i~#0L;Va9Y{PgVX%fKUiZrf71VvDU@e$vMGK(i0d}nFcaW($sZ86*|v-Rx8pGL&X z^!O+U8$kwepB*!GqB*AUjY+=t5%D|AdU5!vZah37Dd^?aF~5F_BrZgZJJDY9?;fS$_)aK<6@DzZ9GUCTS^%v z;dZrr;+gj+>4@TQ`j(H{<(QkeC(416H4|q2`5i`r#6O(!KS8Cs>4q^U`f^aXoM3@( z0aT$RTxXZk_!{12`(GCKrvc2eDSjx_6dtJ_GH>-^3*u-Mt0AnqYP62fo?-8`07`3% zxviG3T70YkQKRf8;0*~G3oma>oma5=cdIJVW8fMfQjv!P<=si8<4qSo%sc;YXShn) z7sM5R_`*IAgyYMEnGaf3_)yA}n=QaxVYvi>3Zyc;bYLz1e7_arGY<9a7s@Mir3jOSBMoS{jKDg8p&O@cEweXp$aSi#-1biJGL zGVE=~cWQN^$*hZ=bvp;#@<<9k$fUh_0*BpfbQCZOg($KYRec-Y5g?<_?!k8XAsCYV zgb2L#W#P8b&6{P@1M}W+Nrv0TVVs6H99yPpb_@b-i2--X&vC;f8kYNzRCC0JLPQPn z5Z%O)+63n{mdpv&)PU!JM+d6D6jxm_k-1rQNAV@8+e!0FM z!gkcVPWdhsksS-q2iy>p&C%!zoXR&Vy@vN|>heP1)B+l&m0@vb51#w#(KfrBgSc_~ z^^bF)*kqnKbz8JU#mVC4wNZ18>~}Uzx*#eF<%E*j3=0xV3w%)!sp@!>vL^Oy=a5Cer%>Te@ZY zbC}RSN%|}hP+BSQexu&E#_)0BHE@_OWneeeEicdHCv%5B0;rl1_sEhbrQ{(+7K8XL zuywO_9PGENt`y*Xf_})3c}3lsH@TgIJPO(Ka54qs%U@VhA94}NbG#&AkOTIEhLtq! z1VBoAi{Sd1V+F!Zd0iVNW8tlH>egZo9d96Z7~!mbQNdu9mmd%TzLk37_=}&Oe1l$` zCV5y9AaR_*H!uh&iKjs@Rw9|?hQ=)NW6`;eK8|l`h$r~7;eXsY0HDm|O+;RZ^azDr z9G*>L>wCej+mH~YLcZC!r=`}Q)qq&M4dzOq9Kw(^=q12_aRl@T1L1Z$LgW zdP)7x#Eo+j1}hq1JWz(dxjXdNcvABOy!1U*NT7~FHq3?)X9YmEN3h_wDTJ9ced*bW zYFL5&fW!|f+2YPPSX@mWu`$!y*Zd-#{Gv17U=|B19pp5{2+r5URmM&Lv7!|S8J9t` z%^PnY_*S_56b#(38RE|BL-c5KX}$IHqB*NHS*7(c=NUriRR1dm=>MzHmXelpT3T`t z>orD!;2)-E&O7zsf$xIz`~uIr%bww|5gV7^*Js>%dHd-mgK(pS1EWDbh+(ew1KO{d$h`Z|?jD8f?czwiMPf1^u&W?kVP zZ(WPoEwHpsyd)KncY^@#10WX#6_<^xpaSomdwRaYfJoJ-eC}S}Mp;QR-VDHpg^*R0 z(Vvrt#Kd=kDr7aQp_=p@p`YS|x>1=^Z1=ILER?1*upv1OLEx)zKshH$;SlCBlt#7@ zGvF0`m2=4#eSezhaJZdiu4G5a?b7Xb6t}=jQoZqEU!rFdvk?`A$cFHzRl(w7>+ZOY z1WRvgLhh&+__0B>z7?Ez1t=bpQ}33`lsSXJ1-l7i@52vx7DEdF7|d_Ne+nDIj0X2) zud#W#f#b1TP52H0L_&}M+ERoGlom9{YoQt4=q`cSU;~`G8u%`sq5CI_%OtE_Uez#> zLn26e0{*GHY~1IT>Gyc7w&S|b%!%AP==|Kk*WmDN-OqW;uW-}zB+$f_X>U=(4+s%o zB?byXwU*ASM5ZkOdz`rC)5Y9i!^*K8L6B5SY{0erUWrHd94sD#K@&ogC7q)Zc(8PB z6tBle;`&ra^b8b~$3a3g$}zWX72RoslETjYOp*;XKEM6HuhT7wiuDT4FnMY`#+PJl z)4o=6?Q`M+R#geYgc_c|yks8$KPPX43zBG^zL`0yV2pdDQ%>apjcqpU&|T10kB-}P zrTmkcU-?~(T1>mUf)Znyd;2!~O0SZ?f!%rZt5|5{K}W9TKjTPbXLNEcaLB5VPY+h4 zeK3pU4t`F(_lM@i26_kHLcic!xXM5xKvc5cF%v?|C7Fa<+{-1LQ(^ufB2gGJ(DE8^ z&ru_8`M@8Gl`vO1aDkCuPml#m-{wS#pH6?s;(X(0#i6b zBuH9Ts{##qHJ!jsvh@`1@V$pPXfzf2Zk&e=!iZFSOy^`IMJX3;)|3XF2ZPg(%)cye zhATfi={u;|GsSE+%S9d~icvoD-d`@x4V9aX=$}tK>iBBRoFV*VcWlg#4%VaifD0c? zBq?fSN8(lZpfmpo7Lew<&&U$U9=Q^mZt6OSJ{xw*$_N zuoDXJ6A$w)^YuUGb74s8%wx(Ur~hxKwq_P z(!}Cl2kI#hwdbkz#(w>J80ge&o+{s+z@y}j1v}|{n^Qx^?f1YxQ$WBdGCzP$g+kp~ zdt^KLixPkpec0X%rXPJ+dg43p+67rZ@W5n)libpx32ytKNO+i~9!-$Df420B! zU3TFOozz5}x7^0*$-FAd+f3oQUp&Rrb5qI~!8bhF#Oep8$DQ%GXOG%3IA{nK{@kf* zC4LBvuIXl74T4W+s+K=>IvpSHE=vQ?C&UBt*XtF5U9?sr-P%*U*?8A!sjPM6gcBcl z3YE(1kXr-Uwz-yoLwC^qzAn!|@alNKZpgx7>0->Ku(Rat0-4w{wGX`E;$rep4o1KD z`?d~(UzOu;io4pn0NA&Ao0vJy=2Hc2%@UtUsO;9fX7k|P&(|cZqYRKTyKEr8;(n;5 zW#)}(&x_$R<2(x2Nyz+vJN@fAKGX3-+{d~NKEat}^1z6mq8pv<_m#o^{Oohmm~;C( z+WlG`Pz%67nu~@zQB4B#($3g`cgVej?>8mLJ5=#%I~(*hc0oQ#Na&iUr^J_swLibZ z$j{;XH3@=bl|e(r&tW6O$`j)qz6fVz8r+9KNkH~w5WpBK?<=AtEl}<3|YPG12>+skB^92N=GVt$iQu}UH{LQvNItsay<8dy}S(t*I`7iae`=T zd?`OkOPu|m3I9Cf>{#T}#rZTx1zL+xvw2eADzF4UVG(ZNETr8|HhwOIqX4 z8@xsZmcdprLpiOw^ezahBjRV-QaBt|S{%2hm-b;_H5Ht3yxj`+(R~Sm61%0QOaLI@ zf!yu3+3B@yIFQI=!4>d6Mw^8RfJNTJd~w1Tt??raT+b?Dr4 zhy2^UDE`~MdT$I#a0G(xHbZ@+tst9LLj zb?&ajKGj79PkOHU`h7^p>^^ikcfiyNpUu&VA`Z$Fh{8d^1)=XDi;>No1nc2sss^#9 zoFu->@La0P+f-@WcT2p01b=$FI}P#v@f>)w2;=Q^!BPbe5{8F1I1DfNVDcm{E0^pM25ZEn2q$FZ}y?-&$;6z|X* z`1CBi>@j3I#^uhRVGaN|8gKepE7#hle)#|w#TJm4YK4P6`-SDurXII@9;siB0)6*+ zLS~%MV!tsDurn@;klaz574`pV`9Jo5D3{T1(4yTryH_ADK@nt&i~j(X8Y?g+bo|wA zkQeX?W!^C&8L))Gl}ykWU>3>*ro(U52$TrUQ@vlJ)-xuC7Z5@-)oVBTPYtcX)hX?b z5P|7Pxo zzUN9|l6UDV5}P|us7UI`fHY(1&v~-f{K#v&PuO|+kxg-@c=>j}e(?Ob&&kns@W&Ux z_~q1xIe$GS4vbzhukZl2-La59Yxhix^`t6%uCwwA$}r%GIJ=4l1b!gXoF{p=blYEQ zh!W~sO~A>}DjV*=5l4An1!2q#``n@a15@93N+E*Bfw2~G$O{(@C{4sj$da&CGmT$D zxOTjFq9~gBj@3xK`^qiPlR{f2diVkOW0zjbfp7Po(9^OM>QW1~_Y`4vKr)6~Kdh|m z#1^xb+KUyz)HqcBZyB}AsRbn1gV4?f1*x|3z7BLVyv z>#v?0t>x1p(gm$Nad2eq)KLmmC&_|C%(yw$I`6%`_hwwQu-WaO6)Wdq?3-3P6IVoC z;JNOKIu$7Ct`LFUFNG!B44`K0I#7zn7e2Mjs)RG67Pde0YnNJgX(_2;qzubzq7MeQ z${Fe^iGNuCjs&`e2$}XquJ-^C4KPahtAHuAo;6Q3N7PC~X}KK(j@}|>dM~QJjQHXy zi8=%72%wPR{l?Ev@>m{hmOne=CKis)yS6#Bm{Vnc33jxn)1mf0^OPz_05&n0A-xJw zqzuW}VLQ;Wpj~2o{wf23DKtM$sX;Hld^k4G0Q$eZGW4*K{V6rqT)Jq&t8n`Ro^*aQ zm;l)j3|l7QB@nhpwuriy$p0T}!;!d43Uh_cZ6^Hs;aYv+F%C2R)uHR>-um>*)rxs5 z^n_JT?%E1K1335UNU!oV+U177hA<+$u7WN0kAcXz8OUYqQ%^ zV;!G-5yBP#R;>bGu>O9Z!0T)h4n7ceazcBOAvL!hGlOHTcbx(5CPmNw)IQYN;O&7< z;IX0DWb8O&x(&!nH(dmp$zCU@fH~vgfcosRHX8gO*+g>Y-dWt^Fk{C@(206Z(WnWQ ze${ri;Ej*x6&xKpb^e7U)x08n^(NY=UgzD^O@MdWik*L$I1)P?`Yo0`7@sCwdlr^L-E0@9JYT$^^{0Ps&Uixxt(p3}pPXuUtIlGm`}=^fs0`JI z%hiwb&F*N2$a;C%sx6zO`f+p*4gK{a=nV{@t#1&Q5$)YMT=K~0pB1@&{f_(2&*bFN zO%_>M%S+}Ojhe=si` zYUOLwpAGE&kk(m@h&O?PgGo}2XH@BtW!P z=S;JukH;0*BqX;6?x_o;KC20dtuGLmGph0O>Z*v3C3Um09`%;CDt;!}^XMUpZ1b_z zkm$j|eQp-ZKo1Y;X0_&GiLhY%_6?7t?Uh{#1Nkf&Gl!1o(#?RTpqC*+{`R%c1u}pB z{Tt#wA-;MphqQjWnH4LxHy4*hL+u{SZc6=#bR$?Y5;wGrsSnEt)gzge6(u1F+BVPn ztq|PZOarxrK0E1_SEyZl-%egs$o4goIQ8ByP7328@Hp83dIeOj;hJuxw)!P;bE zoaOMSPA*|FiJwzg;*0QgJA>v*<)BR~S))kQGdid4Chsx5Mp2HK{w_qfi1YUymL9!3 zw{0!6R`y$*snt0pt0Sm1CmPrONDY@ZakAag(4esmaU6GJN|0j@&i7$=oj$d-`h(7D zceKY@#mthd{v+e(rNQpCt5#;sESR8Snt_18?V}!TjpT~;CZ@_`ocX30dxOE9ToKcb zrQaPlh+|8J-xbS}2ldXII?_P+Mu%f_9^JgQb~QsIaopJxx3%cHkQ|sYHow)Q(L7MQ zQxY<*YwRV~bbuSdo*8{LVmo*jcMKqS6Yfw9=cu#3%&W$;t~7r~;q`Tx>sY*AJC>6V z5XvK5oZT-yw0vk^mYeG&!S|yk))&_)x&9_I8r6}g$_vFx(hXeNH$2JCTzj~9@Kw@b zt<L{xJO~ks}=r_3{R9oJqcHCR}L6?GiyhBdru|@7Hs@_ z`^dM~;?R2PR!7uE*+FkM)5+9FgfG8+E%T}1k$19zf#AbRuHv2VNVY_?( z_xFMI0o3u?9vB-w^0>=mV=+^BwUJTSVR08V=E^NT=w|U92h$1itp0XYt^RWO)0KJo z%NvTEI7Oy%*8u_3TJ}1lhi>g()M9j25w=eh8J8xzkc@AZHU#tVi|6u(hp|8V`uOv6+cYpVD`S+>Z~<%^l`#%bw(< zCvtjCk;`Pwy!~VRc5=}o;V1XWA+NK@p*OZ>cPbmcot1VWv&z40h;p+p57w6d$mAc^ z5!!Aq{pL-mOZj=jW;Hxtm+?xSeEK!l`8vdmm%k6{*j=p#TN@%Sc=ftW5PurR#puT+ zk0^it@+q`WQ&kj)&upLWIu?^xpYW%|Wx_+K3AKjo-)zZ0<#Kc|!G1JRA1WIVC}u{9 z*b>ltQzO>Q2&y#$j8^NrG51B+z^^mWjpU~GRr{Z>&9^BK3Gvd5`4TLTl%;k?tKG^C zD^DVYstcCgDaH+ckm=qXKuv$qEnvIm-)vm(A>h&lcx# zSnqjH5`?SUPvq!z3u+vLU_(MpO_u(AJ*NTV(6MyvM-q~&cX8gk{xr@V<~oN*vDO9p8Z=7* zW9R`R7xqYiFpU(l8+(=5$`}{83a^%91eZzP8S*qPEW~K=$j- zmDIX=$Jt)pjMPUU&~_-IRY))cu}oH~zRUrduR7>eSmy9AS*3cP36u z4Lj{OB?b}vFsTnQX%Fv-L{ygp@p$@BLlL-ybosX}b5=_0zo*9$8^bh5HJ|<2(uw>% zjB#PVb^a4CMGnT!c>jSluP^5*1v5j`0@UmSo8UH9W)i3D~G<_fo*MKhxJ{&nx8{G?wKfi*3;Ck(l z1NwQsSZ+LlNfpfb?nfgBCSDLS$nK|!apnMVYvgOF)c8Wv_KDmMQ)D&Hs#)f^kT1?(PnZp;&Qg@S_C%jw_Teu5xpDs3ed#_RoO-?w>nFJ0PS;twA zI-zAW;~c zAIL8qw(7)s?^bnfMqYXR$DqLEXAvqh(Yum7Nz&)|aIUVd?j26Q+V$mTQM;gZt#|#Y zUw(Is$wdQePmW5l8K|b-?9ODU9;g8i#>T{yWLP}j(S&O4>=~a;}e@;b+9VgvF?AI zDd~8)zA|uhIM0rj-Sasac!~O3h8jb4931E;N(?4FSe-bsb8yAvZktP7?PiOXM@c$% z2zMrnbS->W+#MfbJ8n^q_4nEHFRYcw(6IMG!`RNwpD?S@XBDP2E=@D&N4FnCT!*?N zF7sps20lhkPd?Cn-2QYtBTk%A$Y_+UdWynBRvx!7w)hJG z1U65C(RkEIux#|t<9?XnbF|aOpS$~Gy$R=1(aK}HSTYMEdZZ_Q{&8e6Ykp?C7$`3q zIaVZ9Ivp}MFL|)M<2^HmwL99$F)rD7HT9m|Z9TWF7xg#P`-dbz3g%>la_QVQ$sj+VMeI!lEzXaQjBLVw|EePV1nsp2j}^W1CnW3i47vqOgBz z3x&Ns9Twiub(pU=%fnBWDU{r56cQ&rS*O`Nn6O9nGwrO{$88q&>)9UFuRRGABh9a^ z9Ez5$%9V+nbr`*VbTq!52WCLyz6pz|hPgVg-Nk&_wYn>b6S#*5>oh)ta`_drk#lRw zf#Rh3mEShYM(nJ8V6;#|O=i6Ft6J9IQK!7H9=WgNvDN)m<5oF4o-ponW!HV`eU}^2 z%Y<2xOw6TeVKb?=7mqpQalhx*0_C38?5>f@DOiWLmH*ipIXUnd7A_HX{=Q#}$*WpE zqN1V_Wwm!xJ;1_@58?4sMh@x+p0j^cYle;KEU8h`?70}UG}?RhNnrRN8?|_q+LLY? z?{3Lwc17=HIaNnu@=n+e>p5eC#rnGk_|4_Mg{=Fd_JgbJ91`7l;x>NeFKW(L?~V^IYX==2ugM)Ov@g{jd^Kyr ze-qxPoT?ueBu#tc7mULiul%CS@jlumNUYRCtoFcO85UMM8Fb zX0~<5&p7+i42i?>U2#@$0M+{J)w82$;86s+j918VqK=)MN3TVWx*x80HhyIE=p?M1 zwLd=Ghi#CUlEHO^h&hPKgqSRK1GLsJ-90`2Zkux@?1>WgM!kr6v!o5KU7-z#|5d`?L5@yk%}v>M$+t*&ihGffxba?vE0saq@S!{sk+ zYu!B#4n*XOwc_)(cgyxm^0s$Ulv|at(Zcb^&&99;7f!@lC$g83shRoc1>Lgze40lu zl_n1+&@d))@P*=J_2%*`tHvlR4SW0Ms%68Mjmwe(-n#HJgKK|#%u2Z~WiK2pC>Ntc zURep+GS-BY4)lzS%tck&Z_Ip;KZL)$W)~S{U|Lfg_amj)}Z`*ET@ik zntHz=xj(Zbl^3C|;p5X>m2OC%O6?>((r`6cXNRAgPw9Efp6{jxXpeAJ%ogvYal&z z$g5^4WQ?wxE%Ec)*)SZI=y!K7a<*5%?yc7`TRb%edbz7n&5#W`@iOOz$GE$-2_{z> z*XLd{uF~GEE0|*+P^xJy+MU@kA89x;k!YAR<1+M;u5_H``ibY!^`x0pjjgwDt`o?X z=she;ds*!AC+*>Jgy_$g^%yi_X1W~-jd*s0c^miVS2 z5vntyV$8Y3AM4cMMX;WSyXDm(Iky|aO6obyI>eZ6pS!*D%=Ys_Dyr5pd|&S9sA)aL ze!I^PIvz4*eG$RV@nRn0c&qw6-961~y6Ew~j+nZNd1N5Ra7+e3Mbz0Tn?qKXGr1f8 zE*Ec!=~%Wavy-}e{FZpGrCb}eeY*5G6X|Hq_puFCQD8)N>ARNjA-{a-vwP}q zzUEUBw~nGvMBdvu{n(VQOZ&#+;(BvjrncA5tY~nr$1sf%hZNLj$>0tS3L6>pC!zED z*!lZ!OZ;+!iu=(!A_f)oR_ z?=v1bSY5^+p)7EZ^9xVZK9whs$;myKPhM#fV0El?_1=g_c3;PS#01JSWLj3Dp(5|C zcFp*;GdXlt`ds(50hsMBceO?IdlDr?A9Mp*sK9~7xa-1oCNokkRwN zq-Xy;I%D^m3>6HVIxYhapJ3L0Z*VZr!t11V>0k*`-~7^p|EiSkgsHW0hE$>infv$SyezJT&%BsbTzBJUaBXRb$j*|9#SvR_g0|NA%G@}yu z$tsE2h~fc04O!euWHY-9+!X)Pn6(R(HT3J-2V>!UepKx$Of7%-0s->`*aL=&EvBKT zK^jJU&u7w)G}6m^XUO8^fT7EisfPEDtaD3LJVM(1Ob`3dJ^f|J(veLfN5>L8MFu#M zap&BwXgaA1VS(Dd#*cT5Ythld_$&lgR#wzMc-2cAqf#@j*8niWh|jX|eholLqBO<|mGxH;LY>g$D$h9=798#8_g5_&MaJp7-LWxN{R(-QN>!CxL!clBx!ZDvu}j+}dLD@v6SRx{+40!=Ru?iD zEX7(`dKq`=i%Di(rtOHya5>?Rwm_9G`n$g6I0k)`)wfNEndeGZy0hh=Q~`zRq|}kA z?o}1MmnoBz?G@8D6q)hAZVEhm0~bx3lwaQ-8Wp<8yVO8^1aVG%y%_r#Myn|2fE~Alda4IcM7NH1+LKhhdGzIYep0M zT`p_!SWi;vl^=9@RjZXL#m0s@;dmn+74>j%Ay33z{20Eh2B0Y4N0W;U4lBH}cgU#dJ& zYZxY&vJ9r60aGI`5d5q#8JmELyEJ{~EDv5JJYQuAqmFen&weQcE=z;Bg(I_%&A`GR z4M;IzbkClJY#^?%6B625{#qNdGHl@SPeGx?(D%umDL^M{v3f}H?Y~*14zi%9TqKyv zq5W{fcLq#nxDH?^^op@vwCx#<0{M7!%DJwz%Vk^1N^Z6~yE`}BHcVC%Z)#g$!GHBE zY+hTxuj3X{OHkQqO-niXACj7ME;b~P&>2q1Bj0aT!Nfx6`3F5 z5&2~%_MbdV13zH`IMKjU>l=S{fdO=3JbaI=1O?v5#g)ELTTqLw5*1ouyHXbx#SCvn z3+I+T<6c(-FBroYaFHuLIHy2XXe_0f2J92B>`%xymErB8kxn0x4LVpDdBjIxsuf4r z2O)002Qvpt<2l)(JeL&y54#8wisa1EU=EU_d&c6a4WKxDuu4dE-)~e zHAM$UY`pw19AH%tBR%j{d7A^dA(9i&1DnR!Opi{JV14c7#ALkuc}>Q~*-weUJjw=! zrGbfS(GW7YKvE6=NTw@G4R#D*)`5xj9Pm2e&z0o|2JYf+1kgyR^j>*{8S;TxIOS2> z5+#7ukjs`gg0JTqx*O&d!2gM2?Bk6Ix(V`TFnC5asPKrT3fwVd!eBf|m~nt_XOqW5 zNDNg566R4sny!3R`z!i4yboNxmQ;(t5^JlkVe#u_}?%Tp^We4}Gal#lWDjRl{u9K_9(|9{(Kl4TfCf z?Vhxb>^9qh5Yvvdk87u|@Lp&N1q*A&gzfgQl5crX`Z-Enc7iDu-Yn3JWyJkW!7WO{ zNbpIEAcd7xy#>U%Pl-A$ss94Lpiy4CevoGW8is=@vZua=P(;A+7JE}7BbH3vQ2$T%h)n^^2!sJE6_gS4{o%mV|6f19V%bN3Q_DMx$ae6uNzU)h zD+N>!@_)dG_{s6kA{WtTK_EJKa()m7gzE2#2;rZ%NIDWHysIq%-Y>NbA&9ilIlXHH z8#qiZv9I0l=?{cpMDKN(gwCH11~ECQ9H56U%@SarFLTm z>wK1%x=N98(=IAs{@#6G9f-S1*=gq8T?A-Zlo2Dm7nO3|<`+bRdBH@`S8xa3#5^_O zF3hms*F3OBCk)KSYdGg18~VxyhZ)WDQg>KE(R^*0bRG=v+mDujzlJdbsT?eQ3X7S}(&J>ZgP-&UMArZvq7sFa5-IQCla#;8qk|GYrikBPufa@(~$^(l~_2g=uQzzpVDr!^8ef~PSwfW>dWYxV+9mgQ zWhlbRYSev3AIifna4qvwdzYg<9oT@r#p!V6QC>k@-!(YcMt);a@}kzIbsRZ}znZ-H zh=ce}_>vQeSp-^_(QS*)a-uK?u^|`tu z6dm4u`l-?s#48p+~-Z`?zUmetT1$7Y7q*Kl2B=)L;&m za37Z7Uv#JVwds|-qY4s~-8szwk-Rlr^P6dsG&eSDi&M=|*ZG+z&-ss|S8ic7eO&}M zQUX8T25$$+Mej@RzbS2WnzzUI{3;Vr0t;1yob-2u)htR16HjNW`ZjhAxd!oV!-j-1 zpugMc-QB0SvCLNSL%oB=7r}aZ-v?{b`S}Ek;}b4$Rseg;t$Xlji@3k|$qU&3XX%*a zCC_ndmANajU&y|>21o&}Xmdy1dt~?Vs(oM~RQ0eM>;{*X(d}ex`NzLaqd(X!3nUjy zPcbd3TQbtaeFBiP$p*ci#q2j|X0NZSvsgmtV}@5FCPhswYuiBS)arSma6k-@0eHRK z7HtXogU%uQBuSs19an6*EoO7dsdaQbEd4U`h5e=NmWdo4-f1gtg}*YP_qlgE*r4~_ z64&R`chm!h^#f(k#!)3MC*5$JKv$EbbqepjS|ZYK`BtkygL~?6T$y|6G@kou#}!%P z_4*>=hQ3CG{q`UfFHZt_tyX<8H|aoS+c#HzZP*K%$N=}TT{EY9CBq1VF{`=A6})FW zn!tyj$HtrejwH+univ`Kcm<0^N1n{E_tzZ62OtXaC^AH7V--jd-^iw)smRz*C}y6U zc*#s4ed>O^sYL_uzmi44&fy=SS0>1Jb|rshvD!6vLU+f*Z}F>I$5B*3t(V+5S7wjk z`6(a1Uu6N$dF0^0{`BD9_h+Q*Zvf?TJMK-7_s!j*^*a4e?kxCS_Q^O=(nv`1L*2=9 zmM;a-q~;3w3cC=$ZJ)Gg(Upd+nIjOf5`l`4{9L`4Er(p{Q{=%oMlz~lrXjpvujj!h z^1zoYNdGh6(`*Zi{HEVZCLp=i|JWym3(1FO?v$X#XeAe4-omx*P7F9>I+$baT{_wH zYK=3jAAZP=M>K3$UV_n@jdOi>&YX-52h=Qf(SL*ufD2PE0@_f?a^wA1kld8N^%)G3 zb?;u^Q-LP<_g7Mqon25lRjtD&uC)q2DF*RAHR(`{wT$hAR?IVmv70)?v)u2Hi$`Xc zMWx;`mE^*`sd$}3$Y1&wCcu6dbGy6Yq_Sr$;LK@;qbSMUTMd4^d6DSFhNHi*B&dsh zG3zw*du-s}a%{eb%8EQOw_^4*GAONY{GzqPlL|_b3a=+^_#2}IB+;g>`2NSHJ8oZg zHleC6Eb67wc;uQn01wvLmn(r@O+Ba*jliFdHDcC@<(oQ_&mGZu+;S|aYn)CVTlb@G zmP@R8PI}~KFc}^l2ZEHUh>rSTs0T6?;S{-wJ7U6@d~0psx;%N zaUox^4e+}=$@c@O4np>Z4ksLoR_TD_VUv6%V6bbsX#N25{bm2~QZXw)=iyc+Pz( z?Hyh6`3E%M*D5`(rQNLFqXOUJd9W!V_FpNOTdIO$Z@Up3IdxddLA&_uP_v?(;g&wG zNep~0XYAjgd#n{&7W;x+WkLX7*^>3t*vaj>wkJe#keKaInIDxNzK8_s1GX46+dQw1 zM+Hh?h>0AS)l8;JBI^~IcZUt1LtXdpg2ba4F?-TyrC`!eyaK5)Y*q?HIM$qRc@DM2 zKWjt$(%;cP$wg)bbGKNK?N!F1lA|APk}3uYe!8M$t_IFpC|H%rqJ5^BdsGxHknMj2 z%x18RP3%?u@*jZdk-9bDIm|kpTUNMaghBbVe-+Nb>Pb-F^5R?oN%=x}`QV5m+gSH= z>x&~BEKrXIuQz{V4@NweHsl1uqts|TAn53IFR+!hqzWRi9s$_MCM7b>@?A_7B3$d; z@xY7bw4bs5qK2}*oU+5VUs)YpJ0Knx+4Hg?6o?T$#KQN#U@mV18KvvjqYv14i2ux# zAg3JfDs=(zWTXJE-=bx8vuOmSH#oV`1M!Kg!E%L=WKbT-fP33de3!V?N5%V$7eaIY z;JT;IiM%cPCtw9$4lo}*I4&i)>%-*-s=RJfmGi(8=YDPZjS6n2PoRRsdeL;0300=v zQukMRQPoj{*570{oK4PbE*Sl=;(jY*EH+p8e=vypyAjgDkm4tjbLWsh2YFiwB#rfM z^Tg@lT5vFpT>^}O8RiyhYdRewv-TAKdW`l!-FsDlxaxs?I>!(`?eN$p*pw7upU_2p zSwr@CmV|*H9ReN!Jz}RfaLN_n1%6G2-#D_kT59+ZIGriuzzZ3>IZ11&kp%Cp0;SG3 z+t`AC3oLDzT%uWeVi8zk!F`(J>gpJ<1R7Tqt*NB-)m`s+Ah{Y&kp+Sveh8A*pjPF1 z;l2w#fta0KtPeGLHCLLjFKa-1Cqp5&4Cv06a5BSJ=6yCH*y|1D_#L2-IRHL))GP%o zAgi>yCxx)UUB4*j^$(tAJr2-I@G4T>b14-4d4o{iK}ZD$Yf-%a;^76Gq_25ga`4W$ zOKEPSlU_U&HUhZK^S*>Tz+7pH?~OzIp=O>ZlFKx>LJD4J27&>Il73_bSVj%LvI;a@ z@CM_WG=0A@^f{w6AnvuaxyvEr3Kc$5pA*>h2yJqIcs~K<1xIUuHDu7=1%R^SG7-C| z&gOddp4SI>bY{YVh2MZXLC4N3&5FDPx@vcRJ5GvWwl$6evt7a40GV+tCxL~C*9)K_ z+KZ*-y0Z_yVe{t=3@re+1Pfl_GLjE)099?U{sXCG8(@|2y8(e#;%jDw4PMLtpZ%;p zv_P8j_w`2y2QhU0>P|o>n`hR6AO&kJ7n`@42d@!G(N~_A)t2l6&JR7?<=7(2vNlN#y^nE?R^; zCcT@@ci3$2Er1ymY_94-nbGezTE*ky9*FxuNeZt)_s)t{k+?9qMd|Uxw&{Ch_5)R2 zrF^h+o1WsL^$mWjV(=jlfC`vv&OUT@c=9z2J+Rv3o{VjOSFnI^7u`BDwbOTN%m-Kh z!2MD!iGl;?Hx{VvCU0U{;E=ZPTUChxIuJ$Myd~)a%RT+zMa|^vFhuf-618wBW2En4}6E#z!KKx`A^~R9)yC=d=(6t|AG<# z50p4{8JmDhyDWywy=zgwHos<05Gu{B0A6Z2XnKrt7#*Y&hOx`p_f?M0HOlutXP;b@ zvH5L%`Zx_Z;qa6bQ5?>AdmODtLLg4F#%`!y8M4l;8w9m~~SmY_uoX0mjB0Clnu&72BTq(`_2*%G;C}2Wy z;0(bGR)Vur!Cys|9)Asjf#6#Tu`y20)+Yy>SFixJ#BHld`o#uz-t%C8TU0{@uUK%2 zYsE^B4ZKgWybK~(i@VUHFxfddS68auiw7!U}Qkr(;6}C72$;EiYMJ*qJ_d-j@usP zzmxYP`K6g4$NPquNYIeKYz&7N3qMA`Y>+_+6{$uIy}PkKCYDn0@6y0iGbh3r>A5|g zi^zCusq%>+?pIZ>9V9tQg%>oG>r$~vUasInjrPqzrRQ-gX0utW7TP=1Y{KF(`EXmy zXZ?@X)c1Ll5HU+De5DDeH6`X9k%O)scO^zWPBqwbZ1XYVP^j2}Z*tm@&=Sc;YgUbm z69;u<>yxII9>LKi`Tdh>vHWT~!$WOztIJyGODRw)WnKJ_Lz}{GYTh64lM1kcu&0Cj za>C~P@fPv}adgu@!H5wsOD1QNFoPRJ&FkgGWN%H+-T3>o0Xct*6>0xKH>oJYaC;L`$5yWcOGv~rvPXAWLnVnjw=xkM@#$%n?Q4~;k0-- z&KGPPfy)i{`~2J&FDKV(>m|V8t5COfIlg~DNB(*-z(c?VFz)rOj2O_aklOb()mih- z{$Grg;Bm{04?t8_cc?iDx}yAJPiLQ~e&=`1$h*fu?(W9R4AqiuntsutD|K|n+p;8s z8bFuM2l1!q0qAG4WT!ULjCR3y;z7w_bOIGT4(f>m{=i;u_j1yi4Rn?fdu+Y53$a+v zeU#w{iG8zEZ=j-261=5<;mkTvX@I*oe&zTiN3d>-nN(mhP!3i!$sxz1Bl`(C?o#dF zvS)8j&%P5*FS)_OYjgX*)S8UR&l&Z@K!HNPWO0-ggwjHc!DpHM`;zRIwEtpaN~in4 zr1bI{?q&<<%07IRvwHT5ZR{T5_kz6g79L&69Zo^%j>w+*Gc1kj6zA0XChUUMeBno@ zrnB8MgIfXTohm88J>4pbNx*%WeA3zR%z3mlY)Dv+I;{fiyR&C32bci#pr-f|j!+GQ zwm6T_hGT3-bJ?&#&&=GQrUSt>)`Vy2leAO2K3u-C2jBPR!1CI||0b+i=6f4q;96-< zhzdhFa(>1)@DA&S8F#_%kL{j{{renPFUp@?oc*ac3;VZNMP@r`;%~t4eTlZ|B)ZKe=OVRdbm{@y6EFAHZ_%_bM2a}_>-qi*s8|U@i^L{3 z8UR5i0&5g(Pb3tpeu^~(^88XBS@I#j2MqeIq~J;az45Dg|1fV&#Z)HG0N17Ida}bs zl>6}(3YBDxI9>X6=-6QsZ;K6(nuwBQvrWh;PD&q zJ>^G3d6HW>uQFtI75QiN4TtjL|IxVJxX;>@JfbRI4vb-8jX$sFgN)O07J)qgAI>*pJTn4+B~-- zM0%`*>d!%)EBU)@80|6gKo)cD-o9`qF?6Lyj0vCqg^q!BO+~~Qpo5Z^Ydt5DJ=J=o zc+ClxiK!&Lawe(SfP>K$Jbj%&m(BCC(nAaLXh^j&_h#cKGN^icU_v! z6*pB&vF3h8=D4hG6ZI2C|NZ-mxg?iuxf za+iXQiQB_vAr3sbCbNLbMwT}g+FXwYn^hf3>j$6+0B5WM1X~Rc*4&ZDi9%77xV8hA ztagVVtQ_R>vu%&hrWIUKYk1rlRTFh3x7l>V4f1Ps;`m~(L0=mJ?Yb7z3WZAzdL|C} zYZ7*Bf=o1W(M?=lB8oh6M@JtQV@jccItxym)rxQ#|I^*x!}qbsVjs@|sFL2N^M5JG?>PGB4aCM_zbU9N>=@B{WZ#H>7l zp1>3sz|4~h+b&~J>Tskcp-8WAhSZL2^Ir!94tiV8K|(IT=Mt7Tltm5sf|*O{)2Z1L zX0Y~hOI>n)aCm`DWV`@(n4Wu9cm6UYT1Y8@wKE1l32OKu#ME;}-++yPVGv23jL@$B zlRqcV3;)gT5)11}V)|Opu<#HeETMdCg8#eQt8-U>>Ju!cNE)VE~_CUzeC-_38JD zWGUF`a*`-uxTB^u*bg1u^tWXiH`5!+dbF5uT^qk0O^q5x{F};VAwCRS8dCg$DHZ^q zpoMzS4mEw3I!4`?j)obx-4I7d@zxD}$l+53XsgI3Ik`TJdMjkR{_V5>P1b}=w7edJ z(NnE?8U@bTqtLf59GAB61YsC>t~5oj-W@xh(#jcwQ7D{e3|t|p;%5c=cPNg6qBxul z|HaPb9v^`hn12>b%kauSk*t=6Wfl%EFnO>aoMA0QMHjgMmxb%20*BlSk1Yv3V3t11 zeiWD^RsD$FIsP$RgWRREdh8HVXIK;p2UFArM4|zZMmPc$EB59koY60vvtE1yQPN#F z3;%Lupa?Q6Z3=^jwh&uah7|yx>K*O@pPZT9kHG-_6u{(8)D);&Q?O0v1L2JgQsWZ; z?Tw=oqwc9;2z=!XF;bW$WISu)4Qk^iFJza52bO?nNM8KjIT+AR2C^@;bbYxULdgNK zDACfvD%AyV6dY5rp@Nib)L!zAM~>raPy{uU6H#<$`i~Sp-H)4XTPv%H!05XL>U%(@ zuI3($N;hvhVXP+cqQej-hNON+8~~82k{NQ0 z13FfrDDj&)MweIi0>9Sq}5)#oScToAc4&4LSw23OM*bFw=^AG&xwIY3s?_hn)y7Kr|ZlNK0^*fCc?NJ z54=Gd!`9I6p@9eqk*XSK-%|ezQ@9MFMeu&$HIv8QxX?^sa41a`njuQk_wKIhsJkGO z67W2)pS>>YmAXO>_DLPBtCNzVf_hi$R zAarAF{AC0ytKmJMQ&9@_VqifjJeXmKphQ9>3_;fOF&K(`ky&75b1Glskb_@j`;Ehk z1-d`^RM&Nz3Wf{eWs^5sn)u9LA6m1JSc>D8J_TY;EObLJwLi#?ewyao6sm}@IQB#YS)1UQ7-Kw{@~ zSr_)e536~!w43&%ba1)+*Em|a$znT>N%heQvG-c$=Z{Y;6mQi=VWC+N=L?ZzCqrKa z0CWcnpPlQYdqPS=ykkWo^brH;jO{xY*pgi)j!qIW%Vmj@RdF-&gmz~T8+UrjkGr(g03w;c(x9ARAR#WbuMb_WZE`564Dbo-@)PU z#2oY_3M%bn&zh$_|G0B6J%1frEyg~RL*JrUXTVK#^j@u%6<{8902r`Nt^0elcpO$; zd9+$$1JiSWLL8km?^nqHpjD&|yRRX(p1wRgRZ2q6lUm+Kopp$ppRFE~X0D6TGA~dJS2OQ@#QVP45Xj`Z{!Wb)j(Ypkgl1mmJ!6dJlX*3CV2Js?T4Z`V zOvA?%yX)0|;fzC2zNi$%d?k|x5&BF@(M*LhHk~=!PZkOic7jsKp@Y~$m!{z<0>2+3 zSXp&z+F!i&7TKHXy2;1CqXL<|@H{7YS}1j{Ru`=!RiPI@KmR7Mrun*Pl6s1x>}>3) zCkF))G`abz!7G zKbS+Qg1+dXrzGIo(v*^(fqwlG4$VhnogyEh+i*d5iMso-|x?~rutU{r7A&sDKXO) zGxr#Y^RQj2L6i3o^ZcT)9Pi=3g$?GJWJ;tT%&mqU$4kWr`@{oxM_p%cQeVJpsu35x z*1TI%Vlxe$wd^@qNFQAI6{=Y~7`LNkOGaVZR6v4_?8$t)VxMdm(7Z3&rbtm*?|A%- zPcsRIoPOJH{2wHyizalCJQHY1hOsl8w8^f;?x^oR+@A0AY}y?ePvcQ%RrvJwO6$yw zqH#~h$=x>-!y46+rOg3`0okg2FOYcYd~yh@rIg+kZLeEEmM}G$UPSgl>YNjPmt&E~ zUZ|t_z;G7GyqIoHZw`Q{u?YiMrL+SIBH>~a4kn9HZ>(`pDiZOQL)8}-GUw? zrf)Su1(IUwjSX(#9wA2Ma#M#QJ1602U)e9ev1C^p@!5M(Z#%(8M~N6F^H5IjCSu$> zOfm|2xl7*wB=Q1A%Gtyh1&!&)k<69 zp#fOHm%T+bOMdu(_CcAIkP`dHQI4SWwIi~4;aR+0^B45Hpm4Dzx>bT{LQMFsZ*1sM z<AI7@5~J!ZvMUVbP397F@hd5x;T zR~(;fJXbILRSBK{h?1=;={N<>VIqLeC!zyl36{g4gOw@?nRLNHC&=?^Kw_+$`24ftK(hL_aI8kV~@kg{-RmuSuCuuonYCK;dRV(2n%CiC4 zZkr#X2uz4zO16xxak24m_+*q)1j^%h$|U8PM96li57A|ihcO)w$FZf8OdxSgrb06x zDF!%yd;=o0g~e6V+YI@;DtBO#g=@F}LAlewMc)w1*wl#yM5P}w#dHHnsOZ}#sYCq2 za%$e8I4a2*^xr(*58vu0NKat8={M!Q5LjgKvIC-0w>PfM?DLcs<>%hkN)eJ)RPfg%jofW=8*eWU;xU#L=--;u6k- z!48#>L_$ZHrHJ!U;QbT?;2EgkWBcGDImW;*%AyAy7ayMYu_usL+O>E`WvOmU3Lx7J zzvy1_Gq;Lkz%wWGSRahr1x@sh`xdVf#h-E-HnG>3J+-0ghYgnc5Cn0wpnIN>aHD0( zxuw)0^m^WtrmW`X_vZcV`vWO9Vbizd;jCL-Hx478IYrPPIY3BK)zp)f>0RJ-aig4p zPZcXBe!&KvAjY1Qs$X&kb_fE(T^O?(po5za;@9JQH=C; z^mL+dw4?Yt5P)?K)7$-C;E>+FfLmqa1v54Uw0jY0aSS8g^ghZ^8%IHyabn=yWjX61 zskG0TUx@J23pnKzHUUxxvw<0lB+U~eNM-JU7?CjKe4L?4+8ti(CHo0D6JOagzojks zol~L7NUn0H@a~qPt=kr2q-Fzf z2vN>E;BsPNw@tcOL5q%7n?+okRqP8WaFvQcIy5aW(U}b#U6>Lk!=DU6m<12nNxNf! zAZgEX7#aZ~a3mKl&hlz{2qnx`0Xe1zrx!B(kh>@-wQrZi*Lx*D z1M&`^`b%jhKKEJY6%QMVKaDO~W^?oF<0Tl(&Cx?&Wt4E+{Odb@QFcax5c#N(t;a(U zLaqo+?zj&oo)AJc(Ol5BS%94w85e1FJUlcpK+hYZ^NAh@;=7N0gXdEV;{Y$0_W$=$ zx(%>@2rWK9-`{?y&wIJZ+p6fKoi^%T27+IgC(O_KnVUbf3A~rY0G+IRlJN7BN%^}K zfJ|LDfwMex{i-gjmY;`kXFZ^1J=lL=Aee_IFMfEaDeSKcqZf<_9FyQ$1ALhm1gtq& zj`8jxmaG3F6ZoJ28aA@w$#Df(=ZC7b{yH7dR9Dy8F1vW~7GA(@UntaQdTWDjH$;Oi zLU*R_$RBQrd-~UJFoDwdTO#WqLe>Zo1btJmfI-@*8Z{`Nz}RxsxK_HdoyjrcrVEi9 znR$dpZoMP>e@G zV#ZM8F(YLDWQ;7G?ya5N%!RInJ@%EX`{71ewO!}E3CEiFO`o;8L7a&mjmkIHTc z&tS+)I{&;?3AAt%{(eB~$3{UoZA|7Mw0ExBoSmAc)r@!er3#$#GJf*70xz#iX#3EfQnJVwo3krx!EsCl&{gTF3&7nA4Ra9-T1YfRe8-UeBG_@OIHoKSl3aR zs=&82!xzYQrHeUSa(lC^wSNYFt?`gV2b@VgR3&7cdUBmBtL%L3p*^+^27i_Tiu>d8 z90V5;oxq%X#PmD>0gfdK%&o>Z4J(nC%06}tkFt8`jkxlg5nXg6WOQYSgf)l%eUCm|5R;1b@r`+8W@KV;k!j%{QlYDLxhgFK(?qooaU1S zrxfqCl9Jh?gFZOP>a%#Ej=lL;^UbgqXs&(wL?AEkmHLSpLQ8HJ(sL;PBjtvRCw^#E@Xg3dg+(ITC;s|amFSna-GGNVs&WNu}O=@q=vZg2^%rmfR*udq}uf=5Cv#qnkJn~pg^m0VC zOj~uqRtz$Q(j(p+EqnTeN_hVB$G^j*X+S%lEj)q%Kw!e0PwR!QFh8gc>73oz| z@1&_m9UO8#K4`3{)4+n725U90bTWOGlLeVz8smSn|eH3g*1 zWwU#9#i5LxoV4(@3xLQ!b*TrhPn)#0gOT(5Ev_iBrk<6-3U7XV$D`^S{C4vEcRt|Q zLjnRELF=FWM6S)TV#L-_E2@j`)&PUvS@2k`o!yd{g^)w2Ep(@3gjuaqR6%plk(6nTJ{X}hl=#e8qqajZojLR8FO+8-vJaPQ zL7qP_xwgk+=}s066)Pn5aA55)BZ47f>fTYY-bDh;hNruc1>fEHqh){^PE0{VeIY!| z=)<8?$X#?u{p~Lqu!g zyi{yppYT(Mx`fBdCqN%^!rTmub9UYVx)9MK7VE&yn_-*{IVsd^d?oW<{@lO}9|Sxi zkh^4NJUUE9PZeOBVUvT9J8O~eI-Ns}Hm>3w5CGJgi5?JK?QW+r?H~5%Za6}1>)GLl zJoM|H9Bnu8MNHoT7~UNQ;hCHyf11c2PwF(%W{!%JnRL>NNLL#eMLWz}I-@j;lH!i_ zShw|V8uq>vNRSEwhVcL1Fi5-m`?be2P@fjsq3+E?x3oYRWiB`3_!$(V`yz4Y`Q$zd zIh!2ssHGO4zq&s0qd>GVk(N{cA5XCT(hv8)sdf-ECAL{haSP{XP$Ni*h$$$IhVW+V zOGpQjGH0*n6!3C8;b}79g^*5zAm$Fb_NS$L1L;)*wCx$l+We+=w2nRldC}bsED|KI zTsY;p9ivTua(md94UDHh;XN!TyO|5m}%J*gBc?lM#2V1S1=l3|b~ z>vPp|Rn-PP0M*9^^mi@KMf}haZPMMcu_2Jb~07p3Lc^R}zqwM*~GuKA@~W)J^ezT;>5C>gxe>Q)aKv$?{;c1Mu=i>-22A^*0HW z;Z!nnk}KqyJjF^&iDzE95({++^iRPW1?MJi9UO&}<0LtKRju?%A{r*B0f*)rP11_) zlf{ew_{=5;%8MSEA^f+DoqCGEk4)&J%I8>t%rQ2-evwuyA(dNj2;sRB_GAKdeqru` ziq{pEg-oD%ejB|!Wtx58P~Y(uJH~<64Z23)_xdegQ`@RSiQ7KEcRThtn0V3M%z1jh z30{x0n+B$#KafQL1CKpkA=Bn$CkP1x6(pz)?*i@euoPZC?9YcWnlcNR)kvbp+%6y9 zTyQ=QU7do_aKj*o1XFyV$zu&wF1-Lmp@o~WlAUh|eawp^g0x0oD^m6mrspKWF3u6O z`FLFq7gPshdk~zFBAUih@=wXyKR<6OmcD4j_Gm zW$|@+6S5VeA!L?Pj_bF%qHv%akS258>ITg=K_JIZoRv-X{U1y&_cg)?Qs>nPs(Z=B z+=Gy|1KA@>pc+7(Gr#j^e-I7?DBwwdA>nh+Lk5GvKY7uYfucBZ%Nvlj@M5Lez= z$?k8s67EflGsyzaVsBP$_mvLq8!nu@cM3gaXuIP3n-!WpLN(pIt;e%zC|Zx5inN@_ z>sQjqAjF1fp>T_S|9VQ9i z%#-2Nq8TrB&4&RjjC2Am@0!05+~0aBP#@wy4Sm?V*0qa2vH8;V55?&IPR=gxUx20_ z&H$(|)on#IZqgWe!4qDE-U^s~_jW23TTQB+jbkP-~u;;EKe)6BYVlg2H-i#&o@_~TXCHkVTST}8y|G8n`m*21grqv zGrMP}mXEQsCTxWo9A-?;K&JHL#yrJ$T-N*Ki(E+CPUgTmw^J@UZ`wT+YVk9#P(2Nx z&vCtG6654k6>k}L+)IhE|4RS;t?9Px8)8$}6#UJdyUF!ZkG5^C{`$47<-cc$vd+vG zyJkc1Yxc~3fooK@idEz}+S>5(PsZ!Vn? zI4(_bGKt>h_Ys;+r!slyuLO>1+Q7f-4K(=h@2QPU4OIqgn z-@f-e5~`?F#ngvSHrB!`l(RhpX-L5kU3fp6VEItxE}Gg-ns<nIVGX~84@xBx0DdDgJP9$q=KnAc z;bA5zaFZT{ND${-6;J~`jb1O>A{co|@yIU2aZ3|zB2#!z7(#W4DQ^0i+r)*ILzFR8 zbnHX;Bg&j|?n;+n*MpBiG>tWAl6ht7;yoq8xbZV#7IP;-3&EX z*mLm8htt-TMg8u(1CbRM%&oMwsd;AkVWW;tGc_C;YW)th@|WO9b+NX?hL>{k{I7`P zSiBTlUMtjgz3wgfC4G}vWHDS?n#duvgyrhI*>$1M*UD+_qzjXnBrFrU8+kpzWRzKYhzKuD`cCH<#`r4i@)P+%bf zdRt!oVP(EQeZ*@m?IJ4d>9ZK|GtlwR~(Lxr#sT5Pv82L@ME4dmGgubE+UIeL0M!C zj-Z|AcQdpIAY@zTGW5}?nQ3dRTh817&4|L2bc{Z?HW4@72@ z!*EwSGW6z6&+RXHE_v%&2p6lUg=E7CW0Oo} z8VN_-hpFBjbXYz^GHGC8)nu%c2o<9a;(&^6dka)&3}A#2iA)<>D%L5!8jrlRWoFSz z8*Nw_?gA9*@-&_x#NFxCd1331!6z#oZ;;vf5>Mie5;%S&x#{$Lu2$-vl!4~z&@Lm^ z!$YF@x%dT$I^02I@z7ez;nmr0yhYOK)*5c}!RKFoCqL;@-aG>|-N+JeL#qm0kh^$Y z4zkIo0i9CaJwc?o+lMQf6|<`z-(SjJHNc)^Bv!K5&kRg+X4z92>&3+VrQgr^d|rC~ zY}(89toiRz>uOP_s;n#PrTyzr>g8&Xx6H~MyPM4({CfFmFg%pT(CKVuaPThIMK80x zvkh1Ayqz3D4;Im?t=TgfXrrC?+byc}Ta~+vO_>&(y$F5Z^_~3|*3>d1`W1oq&A%hD z0t&>#VoGsWyEki=2MT*F7KF{G8zaA|G`jw7y$`w>wUnBCnkGRt_OR@lH(B7*(ZYLL zezH4X`<8%peg+IUKKoCP*HgMdHRb!t$0)6=XOtE!zQwN>H?7QBl7P$ z6VWVtVrPML{w<)V2kUIAza-y|)Mo21u4Dw{WTx6*&F`i)CyNI1`;A|6zAfI}JgvSn zZ}|TP{0?7F2t{~LPL^*cTq8~p=9J!gax)Wx_k4y2ai_em{OaOlV9*g$swXWL^kWyj zSa7Q4i1mPVK|1W5hb1cn6_v~ZYx7YnPHP9#WZ7BQo$|UR#)s{*!LJEnj{EaC>7l*b zVO!f*^l{o5!qn+UKpKN+xjRJYTz%8X**a)7b3ky*+8@IC@8#Xu?9 zDdUk&AfJa-I7`2zcha@W=96>0j*_M3bhUHUT3N$|b7SA!kc4u{h{Rbj63k-rVq8=* zlAoApD(qK6d&f310kE|znQ}luFEtX-Yyz`Hj-Ps6aFs$9a(jaz;AB41OVO$l5)0h= zO!$julSFcc9Y!60k4S)TRkA#%OfcDXwG|t~uAu$Fd60}CNd9&lOmBLki1j&N6%sfe zMg-HdO`m%kUBj7+yksZ08htdiu{ogz21=ReH93eyGkpFuGaUlQJ(iw)+j&z??!)PE zr%Dy)^{T%}yT$?s4V$+Onp&UrP9|ybn6f&$JpxCEx_*PXLqYs2xt|SMt8I;rAWO?V zH11WKl@N7=5@gi5tIG5shqd&wk+#{4Zrcj{dEW%s^G2p2)i^E#ylF6}@zbKkQ6PVo zT5j=Ksr&Dx#T!mKUfK1m_;wAgj0MRAX7c?ux5RVZvyirzsIX2F>u1E#8f0X#DM3&A zo!x>Gn23jby4R$k6v2){>8FXi1s2O;M~?~Qg;YdDMxd8gRS-xn?_FwWE#$?TgIk7=UT!OED1;gq2wIW(P)HO(FornpOA4cx?+@>|e_5{H*@ePw z&Td%ju?Riq#i^fAae8HT%l9|ntD(o_OAL7;ZLn98hHayZ3HNrXml~QHcUofsq?#Y) z`+IN|g)5&vKJx4OPS5s$?PxPIVr?~n!&QX)HFVTw1s$8%qLO*m*z{3`iqz1}dqI9% z4ed^d^AQWndDv!f3!0iK-`SQAzwsYlB^}znYy9dWZZLFiCt|!tJ+#41jY_@7<1bSf zl9BOLSnjQhJZ6nt*m-@?wk#R0?g%B>#HD@Hye#3Y{7;T~bw5ix{zxvXn%!9%-%Z z*e8F!>lSs>BrWQum`0L5TC>Rnu#jiGMeV(xOdgK6h>8F=MDmqH?(Shbm1&ySc+T!2 zv^Y>QE7`UC|6n5&pR__8vrT`2F-r!MfYZ3)T(XsR5Nv4zCIc*v<#2o9BV7yV>IyUy zF~^X5oQAo0#pAqWVZ8kC;K%tu z0Nj$@{CGc&?qMnM*F;=wkfZDw)syF>J=YpdBS0eXxVT!W=;i3+L0qD2qz=Qs4w~n{hD}a%(zw(&((sxS=DY; zEwa94Tu#--dwGD$hFew3@ypu1<1Ug^?y8god?3(hX=GqDKAHF8V#%>l6xt zcMh_esu+L8M7gu1iIE=+#GB0CB2N|gnnYu%FQNn1s|`mIHqq4Q^!*(X4-Aj9Z)=`^ zG#^vxHhVl%>HP&)TO86k_;Jct3tQt`E{dzS79$d+8E*Utet&J$Queq9chE1y20edA zn*hZ&c_T~rZjKImc}U88OJC1>ckifZPoaPIJQ%NzjIP(@5~FA zGnt`<>CGcZOrT3d5QOH1jshpH{-qImAFvcNPcM?bYs}?jrYQEboAeo7N6vQ+<8n!p+uxZ#U_1zl|?Uubq8mk z6Y^!A{hQOIWb8a@aS`m8ZoB2?la8AunAfr#_xS-d~kf5xnTj{{JqEtq}He z4Ok6im%FvnlSdO%7@)InQJxMdr?I}ebjyrVzW9vh&Ch@U0gXf=GB;1Yszg zuHR!W&W)BE{{S0q)EW%+uu^O+-u$e^#+PuPH@g)OA zKu=#J)0Ph%1kR`b?&7T7fe0_vV)wEp+JlKvH0P_3IBO5>A{>|(KZ20P(H090mUEIs zwSRpe?5(2Co7?{D{WF$uL>>GGpC!&YDW~}h*3%*56@fr!1j)gTwc>-79$~qoJ#vx3FxA|9$npSLx@!57c)5UUvPHq?@4P5q}j~`5`jq-2eaU|GhSp1WtdfVb~KB zWn5vBX8AN@$BTuOUJn*lOH1!V>~B@F`!|k*e@4XM8^A&lR7?LL7~d}tMhek(yx1{%9QV81ZJr4uVT<15j#kkR??WrY77Zd2Z%8a4X#_jtR9?#+3n zeVbu@)3n*`xBs4h`iSoT^ZnCNFkAus1O^3A_t+rWQ{n^>e4_x=_b$$!K6McBUI&U1 zJWH*8Qt>HF@H@Hb0DiT}>@~wM=6_u7_J)ATm2ADqYq5O!wW?%50LB+xQjLVy=U(Zitd+x{^u+JA?f-*2pnGx9^8bqMx); zcm7JLADCA|Bs0{*CHU{^{CDx;s#{gQW<}a`zJ)t$g-Zv2M5U0)(d|hii=xQXCsy;g zgt8#DBYP1{`Cc*l-{t@B;{NyC!3ED^{_o-Xcgg?H|3cC8`2W3M|Mxd^gh1e7L}^=8 zz==(9^U*53l;_pzaeF3g@WaTCVBP$MVt}k-|5t3{KIhj&(f_Bt>xznM+p>sa;40iF zU;qIFL9$5Bn7|?5_9!y$<)??$NKu z=#Mx0vug|}!r`2~*IsL`Ip-;Ar^d%1T>ZbFKhXyA=1=myjpC|0*mWczR9W&eX29{3 zV6O?)Ty6t{`{>Jy1yevl6ot1&{FmE;eW@`+9;_Sv_EK}j!@ebpmAmBMMgIFak?)AG zBYjX#^<(qcmp6jN&j&F23U{OZd|*d7kxNp(;@>4U_2##S4-YnTr*K}sUQj7j!>|L? z;Ds&Guy3;OS|TG&jPt*Y70w&>>}Xv}Zr!@|wBNpp9`;1L7(t)eGYjU)paX1&W{oFo zPewZqI5rg0_ZtUG!2dW$TwYu~>@QnQ%b48@9^-LSxuf^R$5Kws@r+R3^$te~rAf_K zfr2UF3=hnklRAmCiq4!p1@$&g(F)CLX;jZYf22!#<;7?B`1xh-*MZghdk23`3FSDT z=tqd_+rk0P+{3NAtNXr^1B<(_H(NGW8=ITe&CF8P_u)P1nNgOOmP8_PhtbSovyn(_ z59iQYYvQT;*3{J0TXSpyHGXZx8$R^LuO2;n=imaSr>C(@#zCR7&%J2Kejix>9xIj_ z6LW=(jI5WQlAOGKv?gG6J`{_^+I!2%1=h?e;KU!>moLlU#$0DQ3I3|bNsb;Le7RnP zap`vV)>KQpCOy4$SpSaBe6#a)inl8Tj8#^7>i zr#jiGQ&at{!opicznB{v8e}CUCEXfGj~`#O`N4c&TKcK{!5DcM)Bl)pOn~_IF>@m- zmx1;2iV7N9+KiGC;n_$Sr=DKS*RNk!=BX}RFuTZu%FWHC7(4dY>_~E6vP!F54`Pte z2?+_Y8Y(B~6xpP24tXhGzI>UM-{J$4W%biz8JgKqEXp`e6s?F;($|_A0iPWg*ZDq; zrU)J_Bcsn3IJHNbE&q8!lE5=$zlWVxmfA1yJ=iu^jJ$P+jg8H!uOMB}=I0Yz7vGsq zHbU9qhIB^_rBqh3e8fy)kAa$tOTj|bp|20T39?mZT1bA1gVyr$a$D^is#VTyviPkJ z{}RZM0O>X-zWPh%l%#)OH~v=csndUd;~+vU{rA^Tn-WO=^C&$Evfuyy#fa0*rzD&4 zBF>X(Zu5OB>+2esn%M=`J>2G$XB^IivMOuB{#WCRi+ExmGia zpSLv9RPLA(!&F;w65&x%Ru`RNUPw%m<-#9L5W@xFmZ+(@`Nb)9l89TTL}~(oz{bu_ z6qTVMeX!WT=%-%gyRV*bmu!1`n~jO-{+l;%G|PBps8|$K!r`rVr>0Uj=KE)N7pscJ zWFgJ2U%yWM`|t79)zbUht$y7TO%ZRs*rnfug@z_Bk2Pc}#fq-1u6For4yK|)SsE`H z*L?_(9_`CBeOu}}n*zB;Y-v$MdoRD#_cELqzzqAO$};+>S5{VLs3yKjQHs^+R68yw zPJXpoViJA06Co4KkPVV&27o~$ltr;K*H|`I!mGRY-f_9|7cWknqZ3pRbDLAKvB}EI z%j--eOEE{{_Vr;rO3FwX^lhG#^opkJHpSK|yB)EZgtH#%_(p6}Oxg z+LPsHekAx?b!8+cB{3;R3o7EP4oV@-RmNA3%kdu{!L{d^%JV@M%^_PkNoW-_az=4o_q)i$K;QMdotMGN}n?Lh3jnhWef%b=wnpZ z94*v(;>3x_=H}*Ku_P*YlT%ZpVc~~s>+7SImK^w;#vdA=6*)~EkZar!CClJZYgpD| z#`opR7qh+s%kEs{8jOsL`8K_`je~ekQ8Msjn->PlvLn}Ld*}d~R>y*+E)0$wyVzD} zt+hJf+}cY&+m;yc=Jo4a^^hg1p(dKyI;K8oZ4n{Nf}UEAo=Dj+s^LAo^-Nc$RxKZ? zoFI-8|(YC4vMg!PZ(1;5841578aJ2mBm?h zB@10u3Gua@7=b*dIe-3heEe086yt{Xr7qK0SSFRA#8YxPhBdF!t$T9Z2rMD~(vDjz zO*~!Y9?t6vgSvq4n)zleYoh^-I`a*|j9LKE`V1erbYZZCc}+D?2?F**1A&&ql@$Yn zgN5*>>A#}Ss@#=;EmH&EzU^pBlx0T27(0q=`#TBF=FlKi2FN+4itLAT8W_A3hK7bT z6=0UGK0xB;-Zj+fF{P)hMJk1}EtB`%O={ zQb)PRD!=EN#RFMc>&=BhT3(|U2uxqTY&oIo>+w;Hl0z%Ure|S#I(=oLDKwy(%Y7nT z%VoNqxeJd*GcYg^8ynl8AhTb;K8?Cg`OHXDTO|U*`RlbSRDOogGmx;cAISv;1_}#$~5}_<#ik3-xJZ zaTrf2xg`xib;4}mls z#G0CW>FMci4Qgs?G*_<7C8-|EG2dDm)hTn!7PRe4f-KT)@b~w3-QRK5FLC(7Es3Ex z2@NhfQK*kZ_#@;?zIp3RLI49cH8oXSLL&Ubhxku?=ERN;HHhl?Rh8Nd_4Lmt&(Z#* z_kya2*35>gnozw{6%1#Yo$JkaoA2%Im6MmhLHSJg7JzQW3X#Ke@{>6=B;CROu61Xc zYLvJ~9@EP2H|<`AJMZDh2QDK>R||`mkdOe$lK;NfMzF4~j*XME`OS^vdj7mJH35`8 zFjZo+R%yu4KGMHx=j#i2xa|#17oA3*P>fk-iV(F)HR&Y)7FkGvg!Q{ z)yBahD5$wU(`CHP5r6gj&`WyhWt~cI0`yN_0NUFKB;0#-mKQRWg_*hT2*od=z1t8{ zV>49V3!6mN@02=C1k$X2{f#FQAUtYo%RMwQ(gH|>0$ipG7aMC!D_~_J>hkB4jfFvL zq>;00WS9VCPX)0ZV>WPiFS!iNU|j-W3c%Oxva+)BDp1?##j3+0&c}JRVeA@2PJ{BF zfuC-h2A+YPhcdPBg2O(Wu^uaptctOsuFU{8*^$u4KAE*deTo&sL_zj`LSS%hzQ5

VuKYy-pc(C6BdC>w@rkMUHxp{AU^{r2(H0tiL6D6lwq6C^c zvmST2dwE3z*hJBbxe0qcd@BDTY_SKLwoRR0g=bg!TDyD-w4)UD^hcBFskqzb-(zyc zTA^bqOnr}i7Z(?ouATdNy9s?@1pP74L-46}34!D;G=6(He~N0NOnpN`Lnj_R%&GlH zbB3j8**(q}j7wka_Z2qmAzkE@|LoIy+niCmU^ z1otP%#wb`VS~ME1R&1xg3cD9XH8(391*0cLF?wac>WPU-5^u_qlihHo&t!-!121sN z6rDmVGh!H9oxp?mT7*MQiF^GgJyPNSdHlrR{HWv#`PIL_uAWdK`I|G6a0ih78%zsM zC4EMv%*__KkmX4Av+oS#@FSJ$f1TL30UG4Q-Y3;0v+KX=-r8p_0?mk8^oTKCoovy(V+NnUGf*H0Q$vx%Q}v=nN6Nc} zvPDT$JFqxcC==b8h>(y3pn51Qt)NZXj~_p-)7?P+q?+M~8jf68TO3AX5$Me}sMz_q zQ(Iem^Tv&u94X|Wc=x}CYj+0{2^sEmcf^;{+`aI!va+4^SuGReBi%6m;209d5;ExY z8c_aBD3EAXt{Zc`q+@Z(!dVhJdo0ktyIo1c1tOD73B$3v`AjPNxGU7>A%_e_70 zt**7y2Rby=KhgQ!Y!BXgVSr%OUz81H%VckF4-z92Qb?!VJ=aDsx@P$tbYwd_yA1uZ zBBp7OxU^z!SrD9?etw7jLvNX?Borif=lFp6DgisiLWTpZr$(TCAA>BTXkFbJ3vL32 z87y_+{;UVKC+^9fotTp8pT$>kqkyD@mSPqW#Y1duRfZlD&!QM*B5}s02FPh=viwDk zoICy}5sc13SNS$cy&WvWWZDlOaZ_&}AB{wrbLVLJ9|lk|Rwf_7D_H&btvYYMeDNa9 zrZ*2*FA@_0hY@LJ78cPt%&OOu{N4hG(Yp`_O=uua7)(#~v*Y$246qu~s>?1L$Ra+) z8iA_mE3%Ew%g--_ZvE~O?^nY)pnch2t6QSu;-vfxDm>R8d3%=+E<;H%Gc$vRK>^9= zf{Ay*xV>8sp*;VbPK_%Ho5OsOj*4BnF|Lz=p z4ob>kQhXsq;~c%HI<(2|+>TUb>$cAiK;(Ur++R}zs?~3J2!cQh{tEPUo|rE{E4`Gj z-r?Sq)Ow#ae!4|ynA71(PmaDCkeEWpv3k-mB!uQ8XAm7Va$$YCLl%?-)>n6k7(zFX zNFs#xkA3>|$qLBXud%U-(a{8?6Zhts_T?G}AhQC;LzjkK{Rd!m7i2)JxX0~Q0$z{s z8R(i$T`)AMx7Fe1Xr8UuP^14l!{=Z zl8Uk}-|ZDs$k6ZXzAlSH`e@(nWaMvwdcO<^kjKJ_Qy|`KtgH>Atz!WGNb%(8m!-h2 z&l=G}_7JYJHL!s0X=JFgEtyY$+gctgbYC`dg>&)p^2*7{wIk^Y92!+6F{*L}SyTu{ zI@GsLsY^O?DZ`qRt_uT?v1<@Aiuyn*{DnMRJ@W1zb2a2P^v7(FLqo&c^%m_(C=YT0Av&m9m(U*35jP^4svEZ0Duq|eSJlnhqH zd&{Ac7npIr(aE!yp7dOxr?+ML1aul2exyCz;ZuqPjJSlF>@|;T>5zm{o87Bthn0x05>oeVKM~nly^fHXvQ0j?w+1eK>jA*oS~!?!Ya7C19(IWJAQV}-Wz9- z2VJe`=2oQd1)nSjOAA9x_V)MR;qmx4fq_J497r~xNL)7>`RxXThph)KB1}N8nZoX| zp{y*Dl0$HET2#t|w--G6D6a@VDK9S%V&ZfBRqMSN3yQ4+kCvL1ke8Rwx31cj__jEN z#AxB9IJ_MK#Ol>R(_;}&a;DAYfn_MxZeU1EpsN)hSy)(9?puQ@gnliL)y&d1EcUB? z`P)T)zXNYnmE`vF!S15iK-^cLmViCQx3k4>^YN{>$ub_b8jE?ykZ5>Jevi#0r(u7H zHEYG`kBC5~nu7Wqe_tOO2Z;~*U`i|p^ou+e0Vki`jk{$jH^5bBe@^z>3a36&P1o+d zdWdcB=+H=i#0>07VE6!NJ2nYCL?zH-oJ*ci=B*e@JS6?h_EcQN+APC0At|!kVA~*R z1jIi|*wLtR^F1^zXgSQFAN4D}AIJF}5NaI7m#U9%579v&st2DQ^?3(6QMWk@8XDO7 z)~I;ce{Hss8k$EqlLp>k(5_<{EP+}7c>qir_gF+*VZ*}15#2oN4)|G^yZ!nfH+(Vp z*J9y7_JQO++;OG+hiuQ8)2CJ9Bz>4rz)w4Y@n6C5UBCWWr2!EhqMQfg+}uFEvQ+TV zaZ+GUQ*25%>aR_MaD|oh6@q`a9HYQP<%mdZkB3t9$9XM?%&xb1IcGi2m%(=Cn=1!M ziJ{2Po>hPN@HG>SwzTKYbn4qV2Baq+X#GVa`bR)(naBBPw&Uqu*n?Kek>KW5lG%d_0nzR<=t0`$WERda?`tGYzMLn6c2rokZqqj z2vTg)__)dJR%0mZ`f96`JQnD+*2wX8%hymqLGulUrzb~?uXAy=c+&*h!RG23W-&q|CkgVQWGEWKq%S4s6wze*XU&- z`mT)3D;eLX)ydILJR##2j6r2B?^3yJ1a+S| z5`^Nbbdyq2F8oAPjKp>byyV>H5Rr3S`6uD(CD%VzBNJSZM$}r*;@gWnAJ_U|gN9RHht1aPWq3lhrTu6><#wV)*?0{7~)N zt5d%PiGk90JUdkc*rx@Jm!f}jzCRUsn0%g})J%7FW}a!2T(?(P6o@03b@<8}Vs#Xrs)cEr1`+0Gp|-nquomE96<1Wf1YBGf z<>Tux)U&WiE3|K5jr0DsgnF~K=Hdg}|6!9rKvPdwGQFIx59I?9>RK|oMR1;?rlZr1 zsVQX!7N?VM_O50FuuKPUKakjtZ_;p`ZhwG97{)XZ^9Mo?VTdE#(tpv~dqN)xKo{Ei zTE&fNZmj4Y$nCh^SOP~~9$UFRNeA6JqnbJLk(wF;eiI@HwP!}b1Bi-~_Cql6iTTT} z3#4^^u&HuD&jvWXBVYW%u-RPfNkWCL)Lt^?hdyO(yg}#8aRv-$W)xx{LUFGYn46kf zE{%LC^<1}dq@4c<&b8=p@*n5VpD%dwg%nkFAy=os!mvjYx`Kzh`!}#TAQeS@b_!~& z$H&Jl8nMh|^+(a>+c?rQ3qRD9C75C1z;>Gjrie{)njog@7TZzmmctDYxrYybKx1A9 zV7CTw;d!t<)m31r7S64&1I)bV+3`~aj$<;}=qiJ2*RE+^`}GR?1RKb4D3d4&uOh^5 zO1Kw*6b=+PG7NWlw}xHltSj4b4}4uQ=4#6 z3cwp_)z#Mi`7_tp6Ou3-`~_gk>5wX-zI!FmL9)SVkjH{l=QsKG;qKn_g=}ClVA$)3 zdaNYX2Q%WK8K=XNgRba;;qrrhI^UZw3yPu}tkW0?Ju$^7{bX;7}Bj=x?Yb8eM7 z)B{zl>g2RSKd*(*5MjE%#1#b?-pG>dfM&=x_Ssnr2@Vdf0a+>;`0ia7M1+QlDiN9< z&DJ>F>yXA7BYryc5zmdebS~W@a7d<$0x5y5dQK-txByv28i1QEqu*Yx#;xVeO)a?D zA&ObZ0tW{nT{;9OQ`{<+c9Xc4w|cah=rmAYo0q-4nQT%Tzi9!3M|vZE`@A!8H3 z3PsAEVly5=H%Mn{hy(Q0bU1Wnc{v0M9Kj6`iPn(A+jjK_zuxj#!6^}=nq4c0Q(3ve z@1h2%>-qj-W#|W*V9FqOr@()P#R0opX$Q6iEi`Sq08Z@zX3D47V?0C_F>HaGX99Ox zSy_1m>MrYRJ2dPViTeS_Kp{;sl;b2bbP6*daNu1DoV#>O+G}I34N70_$>CI-p8;ZS z(%F|MfZdmd+{#*8Q=e{6Uavk*nFeO~&WJzd8hFq%lzvi_@% literal 0 HcmV?d00001 diff --git a/labworks/LW2/IRE_trainingAE3_ideal2.png b/labworks/LW2/IRE_trainingAE3_ideal2.png new file mode 100644 index 0000000000000000000000000000000000000000..65231e1753f6e1ddf0bfcc552e5a011e4facd58a GIT binary patch literal 99536 zcmeFZby$^OyDmBjK@Q@re|$;-%=NI`@Xfgv6;28!2?=bT}vwiGgD4h_Dign zSZE(wTbo<)v9X!_{RFF-r9RsmOJz&A3X!>liWLS!av%M{i58ABz~EpolGjD$?L#KJ z9YW-mmUiasIGFK>_n-eT`a*f1%ykv{<9Ah#n@Ghe#Jv4tNH(N)F(YA7Uo`H7@gvz2 zMjE6hai3cf_8qw{6Mz2fV>ZoT`;e$hJp_YFqb8?*nyitGt zf4@Ncr!)R)jV-(S*C_P`8fjAcLsY)yeX%sH6yr;TH?!kwH8O~ z$z4nadTG$$Vkf^&@FP4zvBUE{Hmw>KH2MOkPH(U=GKybR%WPtb3i(X4`J2#jbFNfD zQBg68J#xJ^)}ueEVEMh{@?=cW)|8oQo~_Bv0YZ14UT03j&ZZ2b);B>Gtr~XCPHM`s zvJY}^h1W*WO9ejcNH?J1HhiT_a}T9&j_5UWDCkc%;eOj%q~VJv!hi<#auec$ED_6T3$ZDqHO z&R*+s`k;ryRl$6HPmXc$-h>uUieT_Dn2$$J2{~u;*-oCyq27-#uc{gg4?g#@)F#p}ys{wMwmt8qHs%$TAF@Z+_Fd z%WpebM@ZxRv7td$vf=yFgErsxk&PCt^qkud{YvVAVw%V~^NEBk!{5b^GE7PEaUJ2& z7Z<{J)Ze~+djKDIeXZ6l@zb^EvC+}zV{}Oy6=Ov!=RoG>_;Nkf2!rIxO0!>>396Gas5^sN#kkWzrXqgDE2R~nw zZKV{5hE%=7AtNTpc<}3h6Cuol-P+v_sIdH zrwQsgvROTjak+LgiHZrTR1C~rr}!w<&~4YNF|p+!5T>g8Rm_(f z{yo!M1T%f&UUQL~o6TgK3_Sn5y+8-NYqGMN>iEJK?kpQ2<}F(rCfFRSz&tcG6r)=i z$TyYV$fZ|xs$i~!QnKK=N}Ap;D($wl7KER zxL9{hMl{L3YMV9X=FOXDecQ7wBIw3o4b;!L?Kmxs)?b6bBH#G+woQjY)Y#7U%+A@{ z`L8pyzTs*(O=X}JB@Yh|5n|%|LAE9@a!%{j+53|9R_(F#7GJ)6dC#Hyir^4MBrJpI zw;U z5j@UBe!>V13VCE*7=8iE;wWXXJ zU#_UQIR(8Rrq_QGGny&}ytz3K*7Zt)}GZbC7`)iKeru?=W;v}ya^=+;zGiTUM8 zW;ECT%W=M(ajAsTEc*6`%YlW<%t`s5>m$S`iXY+0WF^6MCR&qPkKGaYM5bvk8g$Rq zA#|qi8Kr5R@XlIobf?{9+b1f1TNE@JQH$p*+0^)4B^{TVmALh)-bFW<-|s8xd(UmO z2;->+<0z%fU{D!&k>ZMFq=D9hjpeD1LYKVZ+VCU@2-sNgluYyCkXrc*7!E$mE2md^ zHzw0;*2kiZmd2Z76BAoFYXu@YP4lY19$`pIPnXZLoAFU+V`54%y98_U@O2beF#(^` zguXA$hDP2A7s?$9RHJ)ZBYiK+G?Z>EK#H~AAS(3alCt(?PrB+bK{d!d8iTZM($YSx z*}rjZ#u{$u>guB8GPotYP{oNR$x@4&*^RgRJV$EXwyo&22L@l?QG}>3FE1bIP04eC zjg9Tg%4)%k%N?`;8@@;_)r-?e1~{%vCkVN$H#ts1h@-T-LV4M^&Lpe*D<0wDXorR2 z@!p~$KI_qsE*s0u7tAtY&6hcjb>*bx+D^r4`wA*PefkuZT#?YmBxizVfvW8JYua@m zMc03Okn}GzMEizs4l<%(Jh(4Q8itnxw#pI;>5yr!vxign=r{`yL8dyVk=mb z9dwLSOyDyAErL=8%(i;|nfwTdQsXevt#*YARFyqHQgth>VNJ#4=0Y?593XbaMn+!W zw{IVx{p`oW&3P%8<#v7luf22e8hMIA>Xt7v&3ajx-pE+NkFnUJA@XIWX?Lt$uZt4O zV9*&{_On_A+v^j#qn|y`R-R{N^>LOCcU>Qo5c^){f37*-VL>&iJw;nws^wa0kJF5x z%i2&-z|~+g;ni;>XIIc#%pLIIr+ZqVbwvWT{F)#HjHWz0vk&6?P}~(o zsNpRR9sxf6KKgx((jli-Ec!|%4is)JcM=8VxNfaSmkL9O3iLXoA?8hS!eI+yA4i`y zk8vBRaZ9|);GE0)B9ZIdFESb5xs9!FF>+A^1)64q7CS3$J7jjjB{pwAe4sS0|9oS1 zDCl0|QueD?uh#Pmegm?Q(<~~n34q_eIi3$Q^f5g5D@Sz&1%4%3KCXdmSrG*5-?~8>Czrw!RyT=hgalIKAv|zo+s$Y;mQr1@q~q1E z3Hg1;ZC$Q$qq3snu|}S)H_Jq7CF?=cw&YJO1BXxZl5PS-pmtD)mF}^zGQ*?s)dG!9 z>yoRlVlJeLbK1FpbUsgars_&HUDg_^cx%I2yQ)HUNlWCtn8uHhg?(A3-4vTEMLSd( zR5g{A2Wx^k8K;s+Fc?3RGE_P~9E^>Nvw`#?mPkfMHql{}bbEab8m?eqV9?;Z10nPy zq`og)CC^sTzf)5=BxQqGHMrciH>2OL$wvFHXIl&m&e?OBcJWF!pcqzpZ=0h}WhdbH ze*8taT#Vb!cE)rXht$~4G!mE5Y67ga}{dN;zh0rMHaY*bCt^RD3?AeIUgbeJE^CY=6q*N@>ehNxD7 zS>58-iLc*$lcC3AU`ltSXg>$Um2NxLp*rKxlkd=xYZFHoW6=2Zy?}#d*AO6Aql!07 zfz;7L5bx+>01Nl=-TFDQaO1Hq1VP6^fAL!$G-4~=cK0HKSBtinlH&Kf=fha}FE!`d z7-`tH>t;|}!I}`qrQKO?EwbL(T4_Dt_$$q%^K$h&_H$!%i{s7AF&K%nJYD7<+wh54 zxc4E|!+;spj$qdSz8ClUz?G#YIc^vVz7K->uUC5A?g2&*h`emlG1}R?ZTr2{sX%jU zwN$tz$#scYvH|*3W5g&j;NokhYtM-5*-KBqo?n1R{6ZqMDgx7^xzJ?;fvJ5S-^#Wi zV|%J=raX8`kK_0K`**$_Rzas_FZG^m3vG{koK05Yp2at zvK6TVdb^cfwY{}5@#L6v-Ej4X3GQL#P(GUmrF$-4AoUr*c;*hjH}4)XFOP zDU7d_%1%ABcC7A`hcy2bR{~@WNJ0&OZH^LDew915~quHwpGb5LhPr-GB{7)hY15L z{92tk!C}#Vy&DSK7Lp3waOZi+K}*Q<0er9X?iIPp)RGW*01&pIajUs9!e#7d;5Ysb zl0ZZ+OesgW_2vb?Gm=t)EHBl!A(8~J4y3#7xJrJ~>*{r0@Q%Qvh39Al zSWKQn&8A!zuflnVMo7I@V8JW$ZXI1arpz4&?=$WLMfO1DgK>cKgtzBNw#Jo;8UPt{ zTMkN?bY;t+SaQ(~Di?QSF@%!-q5Le=ucbyA)W1Q2-)_1IAXv29&PK0)7@;YtkdbPD zw7}fY$S^rs*`qm-qP_q$j>*pEogM&e+UDrXrXfq-NNJY;X~uOW&;M4i4i%sE`R4n< zH-|swu#3oQXqc2ww2Wl92;EEA@V1JVi;|Wsn4T-832zz*uowxoGlcwzfXi`6(|{@_ zAXNs^g<4iH<<5RTXamJFn!lOvdCW|6y#OZNV08mHxW3qUM~=D_Ch7PJ0moqY&Za(H zwjIP-I$}jE6vvbqB^7){=!!YwLg@U$g3XUZJfmKmHFW^kX@O;Ud5m$q-;>SfKtB|W zT(&O{=E2{^C$KREa=yP?thZUakH2X( z1&=-wDGo?ss7RFLVb<*AEd^W<;3)0lWb+ORlb9Zd5vnann?476BtL!af>_uDb217R z=NM1XnzzsCE3!u9gojT*oaK!tzV*c;WwY7Wbur?JFO`6OGNgY-$=LXKukmw(TmVn% z0WZ-%<*?YE4=QRCI1960A6vNAy$E#}4t_7}=1RvO86SU(r^h~`IwI9)PGq6)$Me^Y z(vt)Iq1-bBsQwuIZ3k<65i-&^yu$Ty<^<)Gt0V%m?uiA<9ntYg^YfPIxms?JX~;A0e?Yvx)lXLR0zY4N zjRz2>RPXDzP|$znHfp(^cqfEchT4~Lx~QwGOQM&IiO;_Ox(6YNkNS4+&bI!51UyFw zmUI<4XV+y>ItFOTOZ^^HW#5C6XC*?BldS5ea-3ndF|aJr zO9BYGx#E{94S$~vDq0)<5E=G*azOTkX~(u3U^hnqrb~dl9H@S4jxxEW$#trvRuWVe&>-wpp zA9{j_&Skalxul@}Si_gG)3R^E1f2}w5dm7%Ll$ObYHICY?lkiiC}|@Z*jnjTx^yaC z=WvHg4@-P(>`j=##)In+FJqx!8J4<$5xWXZ$J^rvK5qh}ajTS+(il>qe;G2twKdDawQHbOul(@$GCboNI-9X;O-7d&85Dzc)&JslKz6Q)-c)AU5(Mij zUmVCN?-Eru2}u7`-Zq^5{Vk)%>FhZ%uNU}4S;p<3VU={w&;5d`Ryu}h3u?6`D3bXt zw*Uj)DouuANIi)|3V&U{_3qLc%e4q!p#~^?j8A)WGu(PdY9PM_h|CB$p!M;%q|emH z0Is$cZ7To~;Mrwcc`++GGLr7~HSf`$0;j?G&9wzNKHB%M%z%;fuYApLy8#vOs=g|P z&N&3cr#?cWzRq1KCShu7D!<(HgG4wUr8PjLuN=EjR2zD$G!8%Y(xK;Wf~3+MBgfe7 zx-q4iX{^#!dQmx9zC+o2FRz-EZTMi+RbIWKH~X-g9o9qjxBq%L@nru2))civM5w! zaO>BcE`X5@h!ox$yW`mZlJQR!ju1hQ>xPMfynHk)qV;LJqPU{XA+~_em43~ofVBVw z%HIyCCF!6}K5_D-AuJY@H6w6cd)HgCtf6FTQI&>@1g&tiZV=Uxp)!_xq2TTEb`JKnN790y4A^f7*4@==D;>#QF2vaS+gVLLu7bAQ3 z?niiB;ar&ZX9>%pgX5sX!~_!oF1{CZ%A|IhOd%);Q*#iYMpRRTxNnP9tstXhN1FZ} zd4sb|P2qh2c6`>=PLh$eZrCi$&&$IVfdrInfJJ+baH5*{H1Ay$#k+2W)r9gJL8Mu4 zuXX)OcF$P`h6NZ-89{~z8OH6h`XLt2##|snw!AoU?(FR{;mz3}s^0xc+5NB5_lbCs zQ~r2PlB7h?_*O|X211j{i4!OIoL7@Io#$?NQww%1rXYX`)vv7THel#eCopr41r^oR z3N|)2I>GQescbI@P8*KD9}ybv1AQ2Sl`t^u&kj+3)huwlQL~9kZNE#HfQyOQ{Rfc# zf^Z9bH-A;@S1#5tP7gO0I7N#9?2dM-hs%`f{M zL^l-+JX%E{yjmdBFCtO_x-cAd2CPb@jsmAFh(XQi269wZRqT9FwxG`3ntd)T52bd) zWoi`lMu=3m4k9fdL#hN=ZE<^JMk+vP^*3HAemDAQ)}C@ro@&s@fWjK^2^F=qtx#YY zU(7<1f40gGzFj>$0LU}Mu2jsdNCgzG6wDmiM3-oIu`76U)jc6PhD|##!e3X+pw2*2 z+aiq4%>YYFOKVtD`j#)?8zK?cj#;CxKKxkyfoB4(Z(yzxIcs>Yp`fXn{_qoUGmwL& zQQ<|ma4ldOm@6QCD@%^x!Pln6F^Jm5us}hPa7SqEI(+Qq*cR0L^)%bFgsH;tJ9pxb zM11H&Ty+ozm!J{jz`8VyH^-rD4x$=7MVvyMA|F)B*unyc?7IMfrl?urOLgY~MD*{+ z$L+{8`2ghxt8c0HiaEL*Tsa=~!)VA5|Oh^P& zK%&`_;CYkckkb0VOp-ca^3l`N(}dca+gT_ak=zy2(3%!p@tHn)mpjxdDU5HXm~jG^XIFePE7Z4QD`P9K{)`mvMmYl ztmyTS3&i7-FwZUk2mrxwaA9qdTKXcyFi=Yx0i*Gr3cnBEK{7N*GZ7&nr}LigwLY5~ zhqU;tYtcQRpJgC@qN$=+{ho=Du~g>KGZ9+E=|RnKOOx%yEXSEs#AuKKC;;2o>VHnW z36RQTT5KaQBJY7NVUY!d0Wmhz{5uiEq?g@4*iV4`3XA^x_p7+H_30{K13|ggk^wRLh|$%sh|>pz4DZb0sK=~NSRLeu9P2TKWrwThrnjLyzh1`b#j@VgW5?%mwu zj$j^5>D7iMSPYaH^#6Pb5hKTOar6^>6(#epzMwoPjnss4JIw1qY^+&ihq){VEB;MT zP!vQb4G1Uo@ccGa?4^-If-p>L&O*>rEEg-EJ8_xy2yoond#*?l`edy<2#^4sOdH;@ zYtu>k3e3NNLL(xWQy&$5(Mzk4lHx##4$yHdqU(0s*&1((c^wAPqs#nBsvQa|zhi zy4Pg|v>tFbKwKH~7pHzni3#R12mlMgv}#suxbVFjH*OH!V*^eTX1bh;N-*>V#Wq31 zB&dS6B%kV0*T6JgoX(qx&CTtY?$hadyzk&7H7>;&>{7jD$Of-;0L0?^Yq%)BNOKu67p^vSLz7k14DUk6!^>uyYu1jbLs z!ouQvD`2)dSba?}=K&(NICYJk+>LYGW<6bjvbTU!YXR@WBILq{-~|bY1YLIwqUH-n zP_<nx#;mxo=B%2m z^@xCkIv(`VyyqTbkN;&ae?Os!$s@%)NS}tsCK^&TQESPr;?Nnt{U%nuqn0KmG zZgmG93wbO8j;n?P4bTukFO?38eD!;7DNi!C7VxqhwF`#gZVO>r2q8d@m~q5!3$BkwEayu$#eiB1h+MJB z1c}8!|D{`vNO#+In!M-Km+l(r1-$H2HoLoWFu#eH!w-9l%|IPo|AtA9>;8BAP@5JN zRUmXBJ&_rB6$1Ez@AI$i^osGG zf;?oBxE(H}fh5$DUYhY4s4jfp(5oeDiORor+`G5L6Jk={?;t!61m;8JmT6i7u^dQc zz95HRCzM8CF()QJuurZJ)(>N1k~g!O=_xSmEi9-$2V@+2`5gk4=l8=tJ(Vk0uAr)< zI$|##_+5mQVxDf^>kE#THzg{&pT`7<5wXz9IW7g*PA1#zrnF zm}qkhtZZZe?m->t2=$3IR954U2&pAjLp)h?&riF6B#O|(MQZxJD>9zL;ObQPP&Kq9 zWFG!zwHSWPq$9nY>k}`t4!g_WG-g zuZ9oz0EPhgvlSa)*d?%KG_2BHRuJ8#{V||AaY~35NU#BHi)>i7B!qh{2!s|C*8^9% z2$i2^0I-YJQ=M70!$e3Klr&{aP_wb3g)U=rci3Z<<9kS)bLHP;L>8h z0G_0)7<`cu6}BLBoVI^Z&3(jtMO9&vi$U@!#h2j9>exqcxxU>y*i=-SYp0c|oMQtQ&g zZ=-wN$9o9CqE8)MD7uPN5(#aHEkaUDW~XUm$Q7%8p&ft+bzm21 zpww3h3L8`wLrI51Du{1J9;JKGkXG>gqkYBohp7e5O9CY-11o_dKR>O8PYMi54RUt` z=_SEMDBrXN{pgwN3dX=tpfNl09nuh^V>8pEfqDc=`UJZk2XSVlM0qIeCqW(=02^LOn>(RSd&{+8S^Jhn2$Re5$cwG`Y^K7RsNN(QV8~^9% z8WQ;)3&D!v#D2FRAjBl*j$e?Jh4E|wz5~P&L!hSDfkBG}ZjH5XVJ3Uv@S)SZb@LVo zVSmkf&Uy91g$pchw|Dy#a|jB#GQV3v{v5zqS_2?CK}J?NvD6_Lavr8=OtbF*qKCL! z)g#)|^y2_FPSeQ&w3<(60Oe;O z3wRCC%RQ|Q58r*D+kU|NJ)cc1^0k2Ue#32ZfW}Br55(&X#}}tiCEnzB=Gxg-pucaT z-+K@o!rHJ<9T))8qicp~cgOt7?lm#AX{Z7D0EN22-9^Fv;0d+!tSGpO5*7XWfrydF z_JY~Wd;w!wE4Tto!#L_2WYGdTM6w~&u16Ast%@-ia~ued9D2b1W|&e6I;JBp--s1h zZ&i^~4$PYb9!nHbP_v*mAo%`urIkA|ARxf8=<;r3+!rITss;Al|32Hh)+dNBE2O{8 ztB&m6mzERy;AB~K^;iaAt|L{~6WN>4f&qp=28beXQg&bSgz6pux9p7@PxCeV!-GkQ3E*-z zgJnlx{)jvh5rKS`<)pmV9~0PW5nNucrTHXbSu_CK3^rZE6+c7RJb*k?;JfXQF21Gh z_xg1NOd={+hCrlb{jK1zS9lX1o`f6|P;o%r0Y%63nHzI!&W>ORKpselEA4_IVm~I9 zz)9x&@!0Oo{X`*HaLw8a_y|-A1I7n_5`2?%Siu@TQQZ7+4cJ2Fkxv3_N6l331jgs#TxKBME8O)=CmhfzcG)~vN6nC zY0v?h=7%bqBg9EiWQ1(jle>cH8IuhGh=?= zMcDZt%Fw0+H6G+cfdJA_70h{?rWXi2tb~Y?{o}`vvnwwGC6ClmaB<%%J#BR>_u1Zh z#h8Co&m(j%NdV#&Y)vU(1*gfWo>(#jsv9UmNsmAm5J^UnkL{zV2T~DQ)>eTRfH^3Z zNF!i>7o{fnkAmxD)czuptb7_BlE3T>RDy?X|57(fZt=1ceJly-7$T?C!}l zQG?1qv8U1nfO5L?nx)HPy||>XKJcKq8`F74-9m2L&VUx1omiyP!O@!c++FNd4weSm zWpO+--Z^1!q}B5!F+aa+`pidvz@n|dA$TI08p$p&Vv@pUU^W84q>e3cku-CNoZ~uh zMPsK7OQ7UOp94x#QByOl`-kYczqRaP#2v9#3GR_k<812p_az_1fhrr85Kl=R^34#D0`2k z;{7RGvHaG5&{I-W69;W0i1>`(!qTv+xgvg$jMb~_or zSuy^_<^&{7B*}oD{GDrcFEwGz$vFNCrB)NK%fBkMfQ(cEI2EB80rL(q3JINmu0IWK z(#$+?r=$aWc>CQYQN;g)DEkHMn>Q#T%zE-wG|g_OBEMo&ntpBB5>!hM!3jihNy{DK zva!CuD+K7$)Azv~MZs?yKjxAm>b+Y8y$QUdwHLoJ6lDLsfa>0w#r*Hf6#w@Qdp+=f z?2fA9BVfAt1ZxGzsaUh#LSR7*x=Is4P*T!#_yRiykZ}_*EtHqQxgp0j5^jJ-Yy^y+ z0sdXC!aqw8m6`uVHWjS1KBhTCCy@gIkyb$7BW)K-fT)FpKa=zHS+sKy@MYs|p6*D{ znIr{ZF)}Bw!1n@Y>XrHl|IXu6b8K!N17^s}DT= zlUX#jQfjn#aA}jlAsYi>90+bo8z+$X0GRSgX`Un9KMJKCqLG`R+1b7y{+Z1T^!mkg zl0{i-g|tqB{g2}C?`g{4j#*uno=7-@@}8}40By+vdh7-^$092rz-4)L^^ocNdQWOc z8iD*o=5H)2I?Z+VZ+5~e8-G(*;`U#Ha8E7(5tnm(84A-96Z5cFDcYsuz3@>c5rVH%Z}=}7uy0DZ-kvcXv^BtSR+ye zT0sX#I;CU-(m_Fk1avAX8*Q-;T;ACrusX+{U{;KV$${j=$h+-v`e6=YNrmgNFl!QF zqlH8OQa^w?Y@22Mlcs|I*U}W7XjD^7_u8c;o z+cso6e@ub;o=X-18_*1z&FX_fzohR+-$r^UoWjsGxGB93crb)exk&r{YrA?LwNwd_-R11X?2p>g1? zX4+Li{r{DKiI+;YZyJZTs%^7tCd=&fZgVgcUcgU2A@`vEGy3lF$jbU1>c`zzqUgVP zySwQMK9EfSmE!($cz-J9Lr^i3V!g2F+veD}dMu9=G)#K;BsdJ$ssHg;{`m@%I6zPC zwx`SxT1x9hOuGBFm>XIuf-Z@D?Y*T>-hGQ{MSkS_I_`UK|K-DYiTaKkZj|gTyN}VmI?=I+8&9HfDK*$zY zmt3&NE6B>8g<2D|6CV3ucRIK>_T}#RUrgiyy0`&#``_t)_D|-(`#BTDaLW&fsn}S< zw$#bxW~Byio||m>S}S|}sCy)$XSqzlG69OXA*9}>DbQVDGr$B#Zq>giLC3jIMiF64 z(6}LaCGpSSMT_n=A5y*(wzlxrsa6m;t+X21*$U>1r#=ZH|3TSm-V`bM+8XGH)?AnE&9w`$r8xH(LB)9lt3LAJ@}$f}M3C=kzQ}!6BP~uU zj4bNWVd88_D%p4M@fbAxo@*cKx+AQhCJ6zeV5vbW_F;2uPvwJuV{3?EW@F28+W&BH zzk9JF@O_Ayv7PQBx7mPVbKo-XomP(0e+>}SlTvuS{}~{ZmgmeAmJKnitx;SyRxSt{ zYEL<5xwhCSE!RrGQfYdHM1VBM*`mm`L6Y(Rs~`FfFuQA@7OkzV@r{I7p*j>f?9m<| z^l#X2d^w_$<^1_eCb3~bK_j`K=N2+boqGS#X>G0hoY|fUUD;b7uaRvaF=v=!s;5Bh z7{jePND|g9D*6Vnb;X}y7<>(ZtrOk?t}yRF=F=ZsN0Oj!#qmR@E{OpBebX@5o#`5Z zgonpTMFP1=J!9p+0Zs+@e<`J_pNQ}G6h%B`W1@Jim3;dFmsZCedo2v@ zK?s8G$!#JxuHlj?1~#UGg1`G4oiiwA>FHvA-X^ClIja2kK6{rcXXX&Oirr`ipBFg^ z*%C$QcbtV}??2*UFF`AXeIQ)ge{TBuM+$1Rqy?IPV$a?OIYbOO3rSx7iL_*%@TKR?l8hBna3 z;4)Lg-`H1~EcB4bS@(&_x&C|rbgHJd*P$#!l{M$fohKKet%~Y_A>83mL8+T%&k><+}OQ>`w!@I%*&(7 zb3X%%1IloB)1inWN}xx{Y3JT?n=`^c(aW6$ITay-|CCe0=nUN)8}Q}ip~hU2Q@v3A zK|d^mU}K+01OJS~JvS4G&$Qg%KEft~bc=}Ya~4Ud90t?sF+jZea|y*e>95whMV3;( z)~kMS@1(@BKRuI1mHg^e-A!dLi6GCV znyrx207kMAr17h=Tc=1pHXTSzn&$CR563Syw#thT^ML%%Wv==i5V_3mTAI9d(|49n zZ%a?pzWbPSs*?Tm$nZ^S-vVtM^;dfjS8A-!+l2?t0gSW=!HWe5EVOF=I03FY?rqPB zN%i;Fx>Vf5F+iR+I+z>R0C7l{w&&CU>J-U*u<_Pa=SubnA);KrEZ!^xQW zKs5U}Ifw6m+yNso>Eoom-`%|Kh`Yx5M?=oAymXi|?~R?vlU6AWK9-kQec>!EC${l@ zH%5Pd^9YFS@9!tL7zN%rRM66m@%OGtgL-Ff2S`#R zv!9;<8es;FD2+E1mG%+THkia-G@LaWY_Z_HL8kL&V8T^b%sMk~1G^gqT1=RI|I6&k z_H={S&q!!klUm~pYq~@-+4%>)6fW>;UZSVOqt%-zjwjr&uYs2=WlSJ(>AZu$vNvId z1p&9a@vmj(f-+2sZ+kANE&43pRP@R2>6PCjEF_+5J$Cd339k|4b7YDjU^{3YZ>{If zrK4giC661IpFe!LrUh4vjOQ(tHS=Lw+%iSuq6SaQ3m4^;8d0#0Orgm5riWqlkV;^8 z|J&jN1mzf<-^3}MN}1v{Xr{HlI;uQ&118J6x5Zb7_jzzngb|a{nxL=gXySSj`>m4G zDkyBy;-fDy!IyrJH(^pwbS5pHJ@^fUkxPko93t-N$b@^8KDqy8E8fp{TW2gvxG@{% z%h3xKm?I*Y9B7%OYEIhmPVicl!K@qzVZ_6ipxg^OVfOUN5AbMDo8xN*wRzCv>x4ds zOq%+3j{n(I&{A1{Ite*#jaJA4Xh^&FftdJ{`4I$DcRBOfpKFjyb|)rb-_(y>I|7(` zVe+*x<_TvaPTNz4(V9|h)9I5NJdY|bf5H#syo-CVY(Hwmmm++{%;~BRRM8w0 zINxzDVr3Brrxg*K9lLrRc`5h1yF7esS~K~a8gd^m(GVxx40`GWIqldl zyKEQKwUEWgzeOE{0~v&ek}#0Ry=Lec85f0+@raH~)J_OHOSnYuuyKe?{=*a1!Qm$0 z)6){ZsTIsQ?Z<7zK*cKp9_O0x?GZKln;&LZaQtqc?+em&e%^_q)<^u4en()nV_p*b z*?;HPq4t%RKc0IF1+S~eto0A#(`g4Q98SiRG3X?JA^Yc%!KIyh(ko?}D1VnU_jD5e zNtY*>wns2TB{(NB?OuCR@-A*AIV?UMd>m5c*!+BT*lU^LbV_7Ap4dG*248Vi9c?;D|ZKC+^-|KYKh)J2OTWnr41XEI? z6lci?6D{?GpjU(M%>Ip^i4(?x_t`oj=#=f}5Ft$g4;R`#co#^srhEr0bUp<*^D}`P zi-fye7tDk>24bYVq~uFvqC@AZfC398M?D-?V${fwp(w8S`1Awd)|*FbCn5FF!77Q*}OvLB%eBGRz~}nVy6r=ftAnQK0Sc9|&^_fYHyk3d63$Zp+Gx zNJZv;Socw4b^v7R1~7Nop^XCQfPo3BO>pu)1F{aCkptQ_GHMXf?7(iUQ8=kU4!i(p z1AKKTKhO9!c&O2#O33yAqV{Lg?p$PMjcIMGlc>Y*4oSfeWXGi1nN5{iws2$k{c!q? z|KyWWzD$ydoyC2UwJr$ z28`Tj?`9Kh1hfGLohb>25)~yzUD+0J#KGr4wtI3)jYtYz0uiK6bI-3M-g-5$0 zP?d%}IY5Y?^(6<>7zhASXm=U1)xl1@%jl_)3!2M2CJ5xNBo zHof3MRPe?|gfuU~s`Wz6kq7 zQKEB%UHdj5D4%bAd}uM+Uo>l7=U<0M!^UG9y};r#RTVN{)M9b`u4@|;lheXBA6FKA4SmH+ z4{P=Jl|7Lkww+w&uFrf?du!Oj{a3*Q%Io~PD(#6vkbq1wR8pkR*S>LWPxt9wz5?js z&(f>|!T|&nbb?l?OBHfV!^U+vu*mlfrHW($DEF|+I zx69x<>_<#$)pWXz!Unkf36V1rIdjq8SnVE9Y8Cs0E8BKwGye4?f?w(l@v= z0AjYo&Jx=ioIvp{E~%z#LQ#pCaX3@NCS#LfqGIE>$Gmh%bg`LR9Q;w+*siEht&B~K zm#_OaAsE&*Zsfspy{G;1*DqaD@AN>M~9dT6cl7S)!lA9#np3LIKlj8BXs7xeFf8eZ8+P|Pt%x$ zZ~2}UgD<=szKe$6X^y9?)OGHe>PhIr!K3pPZ=T6Nmtmk?o!aA~WZ2!2YoSLz^M+}@ z$1WWA7{htt<>G zg1n;G;i~n5p2%Uh%a#px_!Nw|v~{q~=_Fy>)60!_aF`ms*Vx{INI(-0ur@H;}lNU^nb_6aXx(tcI2xkqaN4ePU6{0UN!$T~@j?Ov8oU z3c>#=>!9Y7g>@`wRZJ|5y(-$#2on+6V7Sw=QT<+bGUHBfvS>=U`_`8)s;3+8i3P9* z^C?tUR1CtwBW58MVhI~}RC8qYOS&>QBYe{Z57v%m_mBF_Jvt|zZZ;wv`sR1a44Z1? zmRc5rdYIgZX6D%9awp%$LM^>y9Nc2~n}-Rte;WHts#NdBj8fj##!&DTxg;=@kMpg2 zhR!uBjT>ig59QjZ8l_H6FE`2Y>6RXL0D`+8!pydrOJ%>mxOUIe^woK(LtN^@&cEGH zzTb4w^1fA_cMN=rwTCF_B*Slq#a|@5r@o_Gu%=g?%5dATE;Y5=FGj98GXB;H*vVN< zmnl;kuNJjEQ@|*>?l`ZL0H+mMld!Wgnk?iB&pnau$&m{SbSvt4u%R1M6Q@|dYBcVdVU!{C)Fvdxp>?KkqiMMAj02ojXvJ2jjH9jR9LVR; ze8GlCeaHCM0TZER<<64Vx8pUoNk*^RPwuFQ^bOse{%Lo?I2NQ`*Fg+m&wLENS z<t^J(*Qr*$5}3a4a|U@bt#ps8#kqXk;IB z1p6p1sGKwPG;?D5E2E#Z2zq@L^2K+keB4k>S!zs$9+Dn1AIp0^;a}D$ALWD>AKjg!=G9buvvZZz@mO)m%BC zYJc_lkp!*{Vv^Si3Fr+`5W?Ch($vrT*gNSVz$} z(X^u-A_PY;q7?$-B-^T={@F{@B_ai5a#Uy=^2a*tYL7w+BK*mr8$%mi!JZ3b+?#A1 zKRAf)#JiAkf8ZP6g*wFXE(?+m2S(+0Ewek~;W$*6n5P%!N9A@ndoggwTM35UJvV23 zbpLh3ZpVfBNWPlyHHYxWoqc^mo!Y;CK5NNdI-_)Wg6qt%Mj(4+*$92wlvhkS)e7f* zd-cRO%O)HPHR@e6(#mJG7i#XN2}I@Q-tWEkEO+6MreY?4uBM=ZLirXIRr>VljB3uR zTJ@r$?aqyNy#-J@(GJ_mNnd)`AW+km&wMe#p*l8pazjJ^>!XQ6_B87r^6kSpx8G-L zn+9uj66Mw7Q)Qx^hF3;HB0xzMGlg9@Agz9?@w8%CgTo%lmh73{JU->>oUQ+y=WB}* zki)p9M(V?tOLG05ljtvJRKG9$W%QklT0dXRLa)}!@>-F-mv&91r|DzUXSrd)+MCYF zJ$;u;u7uvYR-^ObBPES^L~Yf}Zn2bVOTuft`O%e2_d|{y(ooDinB=J=%viGYOF!!<8ajek>PRv27LI4+>x`GZ*gneHDblr{<3CI+LT=D2s9Po06 zz^`J;|CR zbXBDFoZWJA@I^v?uCBeXOC~E*L=Qd7yUae9d84FMSNkrX+OI^TmI8htVcA`WDV;EM zn`;uwdEMECZ8XvMn?n#!(w^)C=jRnp2Vx{H$8VI-F7xoXr~htz`T_tAeZH{z`i1%d zIIyIGKK0-6$zmhGC;LI+L57?&j*6S+4r;{7~?&KLUWJM!Fa7&t&4DQ-MC-DW>I?ecGo zCqMa3b}@}ak^%k9Pn8w6eYN7Ly;CrP+aibJhL1yi?YSjn+t0^e)t(t%!}Z)!k2GSv%dEZ;nJClmi9wCf{&AV2U!j?a3G4&Yzy z%nS+nSqp{om77|+zB+dvBsV5%)VFpY1xocV?E1(?5OU6zFgsuU0&7i`5hG>#3#y3T zdrsoN63A(RH`A+*OiiuRa{0NQ{rLkcvONO$!mODo@Nwq$o(g^vQ(x+t{NU~>1jEu_Lus`IZ*tX zbH4wW=h-f*@qyF#J`RUSyiz!4Upa<7D3O@-FsT|FWeYnwtpwv9FW_$VbKAUfutql( zXa|ybddkVN5~_-}qsn@MBG9EdRl(1LVRvsfIXUh0gXI<44c-lMk_$ZPW`yLlXHvr7 z>J;{RPlRnfqA0PsuS-ITo840R?5Of0MwAa*%|V$La*mQyq{{XUHLb>!KeOpQ zg{3HjH0sc<;L4yY;0><~dMQ@SgyYxMRi_+K4nv_>t?O#9e;9ScKuF>pqImnxvrzv2 znB=b?;oOlHUH(Y;VkzLzFhxDyPxV|V4?h*jX%wjV37{GoX2C8$;V!awLhF}GI?Q9o zlr;Q6i|1^@!mb#)U}8TVkF(NbYPfOGp?mjAd#2|O1-eSrHg){Yq&Nxb#4lIHGE7X7 zHMeNc{@DQ{}!a0AD;$C(Ie_|fgV7_Vz+b7`Nq#H2LrsU6nrd{+||PUARbFYM?= z0qTbe2`R7=z}=XhApY8eFW8>;6?%q{KDp~9=Ec&u6>Xa`hZpp`;#&o6wBVs~YoVt7 zJ6RyCp<@rGsBuaA-yBu$YicZki!@Wy>bUFpu=AEVKL5}(V*FD_N(-ubUma-%k!5yj z`OH)zK0y(~ySQ=N@f8?J2FlZiULR7~?@f9IOb_OnJFm&f)5{d9bPymYy~8&^dcrjb5j2)vEOj$&WzR;|lr3S< zwv$ipbz1S2kU*TH#Lu?Le@(yPSw0H=Q!BtB@>{RmSX;X}ipcS@>Fcx;=;4S-Cz|0= zsFCpWRxresw5J*e-5T%jl^)pHbGB>M#1p=dUwM>KB9F^_850oB#%&;L6-v_+jAjk& zmRtGs#Ebt3H0&B4ZODtGM~TIfq~J0i8u38RxtjY+Q3K>3JX;@5e5bW;)|HMik z=JUoo7imh%-&NW9&sdp1aHkVFUTU*%4V9U6G?E}8Me0N_jEfhJpZTy8L)`Jm*Nv?% z+VG56!ZPGX4MrjxAC8O|y_e6<4J4u-zjg`^EFKPDhEa1)X3!D%_e)@YQtJ^~5OwMC zq~TQ@x>6~$Y}KorCW2zYuSDi$qWI7|z?JCO{^;EWnAryf!pFQv_1n@h z-^s9)u{!CE(N&?N$T{Du#ucT;PXq#W$#V7(a(lwoW^?Y>u$fK`hf4;AY^v~O6+;|O zHu)=S(?~!}5*fu7zEV&kGB68Ix_?0p)e%=JLRfUPK%tj8r?_|?)Cn_pIPo1a)ux>R z9*F}NimRxR2>4D-A20ylmb3_dk%SqAM#b~zRZqf{S9Z~H%NHt03=2SJN5~KA zTYB8osAupdZ#*>k+_gLa#s%STt98=Wa}_k=?}P7XrQ)c|%DADKj;~e*CMl7|CBXGa zvIt6(;aOmzU?bAe+NF74g#SR94Nc&mM8RZDf+iSUMhHDvyic0le=NOex4GZEO?rr&W;uznE&|x9*ms-=cN-;qtrpW<*8BhN?jf&i`_vZO$LsRizNI_ zr1{TZbAjuYBY?LM#a#Sanpf(JGN-qRlO)T%A9~yp`dtBvIT)0rcme(9*h_Z(JHmFW z#zr1&1}0gKwvWY?;&n6_*2Lx z!#yn~#6{)dg=S0f%~4)`{9SQ5a3xD-d)l3>EPHP{_2t${(2#2TZz2tR__5D5^0tZ4 zpJ0740^9z+DZ=~+YNHX z%GYUq`Z2|obt4l(4t6qivszU+PXP;{lOz?>X$s56{JB}j)jdp=+3vq33wR4_tET1) zyou&(y8>d^Oea^3ic#<-U67UE#rS$tz!=ui=HTS_hsz7PTT&e=?6yYhKQgdm>|5?X zwUgJdGd%MXRUnw@X>4%> zd?cQ19m9&F$;u`e_eA%X#JffSZlJuM@f0f%ta3g_UdtZ)Y2t(#vjE~E*ExIjb;Os3 za6Twq|Ht$h66X8fmbT&eYlfh`q^-tJJ0l($0WV@?&Ui*ZSR3TiBYzcXX!3R0(hQ1D z653D*6si`B)Q{bP$1eUy>UV4XQLe*R(*A`MGgF>HA> z9!WBf3Vj#mvLf2fkc*lUDYrfA92Sz+4|V!+#A}6I==}Jkh=?-gyVgk2FuA$7|4l=G zaN}?w`%&Y;+fQCzT~=`Fatn<`=gI4#8D@v09ONHazbW7mgsHoK0c(@RD|L48;KjWB z(x_QxCpTFppP#dsau-7GeFa^2kpI3=9@G-jd=@&Ro-v?QbV`+?M8glieStyI!}IfK#AwS6 zdoSJ0PeH?tM{Jj2vhxC6#`I~odz|w$=jnDz|8|dGgJ=-)*&9gP?6kA=zoSSyXEsZj z3_Ox!Mr>`TJWBDT8ROQf$lp6vTtwOp>!xk2QtFc=y?Qp`)yX6ppL)I^*+1K!*13?( zu4{YGyvI4+K~UPcr?&(n8f8D>rSh%X&^kcnedFWN=dW>#f*Fi(QkFY{;1s@JlR*4_+$?sgc$FY2j?#$ zBbLvk4mPgGZ8#fWXYb5~!lfij(Tt4WopV2>qf&Nkk(Jjo81FSw6TAb7f`k4`FhkJo4=Y`bpiu85C&jb}!VZdgIj12h*b+!|kc z*s2(@>G$No4&aimxRf&HNZMuj@;FjoHkd~lHd=frO!2vXuZ6i7HHZYoajB{GNfJP$ z@mVO^((=~xtM(qa%kb0ug^yRgTtv_*WR?#l5ye+rddJ-XzR z&n8pd%by?QBICzP#j%+pM-@iT#<`L(;Q|Q;w}t0G4~W@k9G}gE)L};fz4Uq8784U* z$af6qDG_q;shgpVj}`4?$Zk*#Yprh2nB3*hf-HnlsjVlf#Mc;2l@KvJh$F5y^q`a) zWi9;pdFDuC5*@x)81*h8Is^J#mU=Ww$IXYaWzp8w|e?{M$XHvvxd%y3xlK*a2Etx~DDR8R_a z<8<9D5p*KxCqVqeqiwUxxp9v$f9G8#S5k3Ea0=AP;yZsC_(LY(%ROBIF<&0}&|>R-YCP=@PtX_n9Mq z-3{w7b29SAY4Hs@Mn@|nqi@82Z$=(|CV7Nkr)@r`&FYl&rbq?6Y{VM!;xV1I0Oca` z;(7TJQdtsIhh7nm9E~)rOKdltT7v(vnarLMv=BJ2cqE9)jX(zy+J58-R$eZf=O|mw zI!V}F{6RZ=3n$}#Iz#}S2Crx<;O&jJ@Wqv!v!54m(y{FVc%?#wv*t@LdER`=7)OsP z+29|aC%BkrK}*~D$}1fqn+~~yj_KxZzRE;at4z4epy}&4Ql;7+kcXI0;bt*L3zg%j zd+B%a?GSA7JJ_sX?PdBJt$@V_wBuJ+B&4Ug0OuE=%;-6lH3DCMlRb? z(8rb`$f{Ttt9rd`?al^B7|m(HRm+SpbZ4k_PKbFVSHUAzssb0DIfhf8ma^88S_sdD zpeTJ*3VRQFf=3rR36WuzfR&?5!j}VBS{lQ(D=Z*o5NgTlO~H+b$l=Wge;l>A=X)ze zGBS>D6#c(v`o(a$#b<44MD8JU;}p`P9QhZ^!6=CEN-e8Ee2Sfsh78-TS(v*+IVGv8`zqcdz%L;twpgD*7&_(IkcAoZN%5W@+C9Yc zr(iAy3uA>x0DU%{?a+mK$ubB@ZX~lKzve?z830WZY51}j6x&AiH&a%J9TpQab(9O% zqxrAX$q|sQ#9W~p`bRmRy2hm)RX(AMCgMW6V2^?%Tj0Y4P0_OR9w0Gu)=Q9ufwoJy zZfW=xAYWcEYLPy`cf0}GA&yA}4T1#)JGgXKGW!Dx{F=(6X%^o>RvWcT z;oC8Jx4g}ERXl%NZ3Rro0{-ZK-%oTWg*k=W%?+LL)QLOEur&g-*r0e5M`}4?@(!3M z2*iaUP^bKRbZpRfV@ShJGw4RJCW%X}en;deA($#u)j%`uf@d+xdz9Wlsc5Eg$$=%2 z)$Hv^HGD=3%b-uV6Th_cqZ}&szfnoFC^a?;7q_pHn)wo5k4(Q4%b=u`REH2Rg`sJ~h$P5(0X z(_1SQHHwhE6+0%)FA7H*!-HWP()2O^Eo)f`fwjELXXOKjdIj+Y!NuipF= z0a-){=~WJDb3oBoKTER+NEh`GGA$WaB=MTEwwgb`v@_Bes*P2<^!&9Vp0;aq=S7Dv zo&_p=QW-y#xXQ}FseAfj`kP>D0pt#NW}2$(U1t3qi=L^obsWs_J|PPmS^Xzx9Wsn` z)Y*d4g0*@nfb#X%=*E5Vq)J~r5O&H3;P~P@b8+bl&s1wgtJhP#Jx)fC!PNipwhO@a zAMG9i(?E@h*upJ+G5RG47>PgXGv zK11s_eg-P2f3hkhX$6)PeFYQifEKbL zb~V6UNJ=_Hc+VzVsT-MacvDC`j|2As_oKwW7_XQUt^GH1SZSedO7ZsmMhk*#oO^|; zF(K&+K&}IW6J7I(;g?3B0%70(=gIuE2szrv=$Omo1B{`|Q8b}lK$;B4+$>bH{T-MR z2EX>`riWReFEsXKVKwoov|d5{zL=)B7w*d9RMbT{>bz!-ekm4CrpC~L{i6%gd$u0) zbA#?FLce}qS?+-zEyYem$@WjD(iN8cH0XMzL6q1jzHMaL+A_zgf-qW!Fn<=@XY+F8 zp5Z=eN9VwCg3vf7Z~oW7d>-lL6cqF@8~zc6>6VQi?KUk{=*?_)Or*_~01?N}3u;5i z>B^8rv~*{``kb1WxX56jc#!t|tue2Z;k1Q77uk;jMupyBe5GZ86%v&a3cZtdsl5+P zrFTdAFZ|lLbOB{rw7eYO6A6<6YHG)+>TvtNHp)9XzSE)Xl?n5Y0GsXO(?mcrwaNNb zl8YF>_oi=jQ%4swI^n`7V7i0aA0Y@?T@Tt7L-5WZBnG`>TSKD|IsWVUNLqYUmSB=g zgAAip5mv9Q_cYmsGw}%&dOs9pgRLCMDj%+;ZSIZ|ce{vBow*v%@KKxBJMh(hc0AJX z3L>XaK=RK+M25BLG;4{OfN!JH#KlimK|x+-Mr7nUdkcbtBwBulR!n1ZYh2X5B?iMa|Zh$dI7p32R8o=MmO4H`G3{%;Nall-WdWNETtt zhAf9)Mx=Louj)ejt00?!z23!s{sswO4F4lZXcz^%m3Xar70ps7i z7H=(A^}bYE)bcX&4wQ&)oh1c>HQb1dAVyQ!@X@#R{4o2zgaKy=R*wAX&n{(a@w5*I z-t3ERgCIEUc3Bg8DN%Vbz{4sE7^81n(RAD(;yb&~ADyMZk_SD%sgTLJc)Wh!7&2ZM zsKeLnd1!{QK%eo3|2sz3Y9=8?Caked8E=EM9z@z)@fICYsrmN;R#=q#c^PYg*M~EV~f_NqI}l$cvcgg+YROIZKAH z5y$4xoBMx`EmAxZ0W&2g#`oM~qehkN$8~)hak-BtYXucA@S+ke8<`^rSpZ={)B0WU zagB;1!u9yFydd<*Fbp`4iR=0f;l~)%GBjL;stH{W+@=9C`6la_?uqsl-dI$2I{m*e zB%g6E#99iywDCwx83v+~08&|I!#d3Nqt@u zs(=xmzZzh2q*I0dP*gzSWK= zg-Muv;>gpQ#1W55;+gS&Rfdo?f&!2k%%Pw@@|gT}v$CeNwCqj^v>P0Yst*nNAh)(m zgno%vF3L2H%|w;&fhEJH(7U#bjNk;N7dca2w2{J-B{d=wH6jZ;+7aZjc)k9{XWRPM zkBgd~UR`D|s-S8IRSKBH30j$=YP*4m(1Nz+zbJ(IVpLOyF`g{s%b>Q_Z1K^$99q3I z`Y}N}ykuCY5i2=ewVHlypI=(AJM#DM_)ZXW`rUR!z~p>Op3gKCC&15}?j>C;!ik>5 z;K%ko1W?oMAr~;fo4J?({igZYGxStcGYZ7SO8XTZl^a?%XM>&k(JW0uYVEU>PS(Vy zV30;%f}eLVLsLnzsGsXGBO<8&>wc(t)&2tA9L$s9Ov+J1Fa2+NRL*LURvglhV~IRk zL9|^xriu4V!O$ycZdR6FX|ZM;q6Eo?d0u2#%XKJdr5^_~7b~{|)*$2%d>>Hq6l8_f zd+q`}Ezh`sXbHYQrZnSLMEwmOmK0LN%3nFK@0yRuu|kQAEZY>#M1-DQ7(QvRe?%7M zQ0V50W`eoTf6;@?YK&JF7K(HYMDNC8&KbI>u+YOa>k>4^wnV|Bk&4U4L;w9iR@%=8 z9v5B-McF1htZLc|3n0Me?7yoFR#2^AQo$5ta}u;JIRK8pgnLkVrXo{sWzUXMRD|o^ zuYu#=zK!_p`?Iiw&{bw$wJzVfmaMxrKn02iMCeyy{FT)($wiHdgZjyT{166NLgm-) z(vESrfdKC~wc{PKFw1GVZV2xGEPRl_7fb9opcirYSbY^l%ZZLo*wAx`qg1KRC2?`X z0)nHFW5X0$l8Xqr`(R$Sw$jN^L)r9_t1*@UN6r|Oe}krpYd1DTjH(;o$py%r`eg*0 zDJoL&``P``1}kE`4+*K-QD9p0ciLbytY!SWgv?S{`$f$-NE_wsMq?&F{tf2Cz)ePp z$~i_gJ^X>)tiW6hBA-#pXIgiTu{Ib5W=8zp9`r0Cq|P7UtnZ zUnY8uI{uc>8sHh!%KoH33@SIsxe=6n1p|}3pD}=dMs5Nf(`;i5OvUO1l$Lv}6i4#_ zq)hpe+a0yK!?@*Az`_4CmHVoI%kXl$L4>a2!GPvCD53p7Z~DoTu3dQnX~E=Q%qBMA zX~9-`Q4Lk%sI%?nb;X_vbw!uG$rp+&1LKxxS%DPh%NqttY?2X13;vrM#!dq9+I&)5TNyJU#JUo%ZkK^%iS;n*P5>7#Ws6HGx{rjGW7}U#EY7fHnE&jknPZ$26lqaKsb5#{Y*mAN>Dp zx~?2D!Yt6+a9)23{anlM%Ufe(#q(g9x8`d?ifoejYXy!yW z8J?Q3RGOfL>T%RD2^p3TOtsU$T7Ftv3gmz@fXtBJrf3}`tU8^Fra{n}B?Rcc&lf<)>XgoJYX>}W??Uk z_Y}fv_&2le1zuT#2IE240p> zRHAg!=|z6&A|*2N_*53pNqI~r&53glC)sxgh_E}3a7;d&@;N}}F@;bEumRB{P013sc{KqW8 z3U57WJl{XRZ8>ra=sLVGyc>>i11m5?6%xWn|5)a$<;2bU(+WramqrjZ`3lCeb4KZT zi66Co(6S$gmkm%kCy&sz&hwgj;HkGx3c{ZPtSGhiwN1~&ED?P5!uJwqLgfp3M7I&$AcZS99_?$`>-fu1}`9*qD%iftX|9kpV7Nnn&D+aT4*fDyT;|g?5ZaK&p8q z5KQkuPzrw0FBaEaXtQ51L%)yGs^lc$WFMNwI$7lrXY*Whb=%Jg(!`8i!{_wLBWUXb*$;P zwsOu2z|0x+y}oFVV9x5%0?G)?f^5fe*vh>N{5!G{z}AIXe?EOOFGvF}1~Y4r$izQs0V(QxUjKZ zqh)Gr{ebStp2$*|8?99O{MAn_X*t$MdhP-hswbX*YuYIR%j+nTsoibX-!6y@I^>J; z^Ifdo&Od&&fBolnyVp*6Jq5*+o~Vq}X$F1)8`x;hGZ+Eejk|U`9^ww%j?s;*ZZ9p)ZLoRF&lVy*VGvRxvu9yK+@mSs$LTSJved|%9uEWwlKaBm|9_QD=a z`1eStObIW@M&wSrDSZagJ2$;oB;0kW6Dx%(#d4R_ybewJi&lhRHo33*U62E^z#qJZ z3!260*LWN2U>f0j=4&im51;{uxz{`?1&Q+wsR}Y2;ACMR(QD_u<)NpMjQ~UmB{Qgn1R*#Ri7pM*m-Q=id58T5Ke-h)ok4(_EKmGG8 z$7Q>B2DUczBzzd3oycW#395{Vd0>?{<5|(!0n?FVm93*wb0>fNwi@>0u{3lT&mVEe zHKYU);JhC%N)gj{XFRv@{Loat|Fm>uqNC&EE>-@=$EbPHzJy4X?R{ap<~<*sWUtdl z)i4g)0994jy-&~X?wXBC=+V`|49kf^C_Q8Y^<(0ejr?0>9+5gJ+&kjYF)Uuz z)?K9+7z*vDzY>)kzxB?|eRHhzLPd{$G=}I3MZ5iuL1kn57YA{w{g@Nr>!y;_o|}{N zsIcqo{2)=Lyfb}EE2q0Y(V{Tid0hwBmn`P|a6!ejpbEIO_GeSXMa{+W?CdGNcjmg274>JN^U=K&K{I@;pU&YIZnAq%!Tw99eZkGD;7)_bnwJeAY*hH$>eYngR!$|3S~ zS9}ie4P{>8yyN^nnyu2!88k%ow8)F~z=t7LVp`O*&Mr$qrPxA44a|~@SU@XhB@dZO z*RPXo3+30;>Ck_zA)B4MHx=5L%eExHK@+*h*6BIz_#&H$(> zzoi+V#b%Vl3@ia}=xtzUz$|yI0p|!?^~F4ZS#cQHHw&QYH z@7)g7YScRo#q)1)*}PW}bm;cuL2c%v!TrU#UEn+5p6?#Kr&sij`EY-=Z$j8!d2F_YE>#~Q*!oaJ}BCls8Dzm zx)-~&wUjL)KJWNiLSL0E-ljk|ukZmkw|2=LD*-Fzm=D7-b^FPC>!Xo7ZnF1^fGMEw zrN{o>+EG)6pyEhLihKIDk@fiA?(osUqW#k%y#nHpsk6Z>g{P4QS`j-|MH*8=X8j)Z zp7rVsN%oFi;$^mS{cb=N>67A>{HOXEOLs~UOfu-5j~I=G{T{uO4P+NwM07!?Fh=&N z_CaVy^6bDK&$9?hZ(C|7)6QC!( zyfa#(R+1J(0W>=muJz0NV;1j7HRjaSmcC{uD=)>F4Y_treD!lYJlc)O@UUN4_M+5z zyuza{YP4tRsQ%oO)8oW8D%tiv&;!|YU!`Md2b|-&eYl`zVuxrL94oK+vq&AFo$RHT zQekfLxosuecuMT8q_l-;_m7qj(}SkJJ$$G1ilrX>cJE27cPSI0tFHq#^&eI}$!!&X z3IwMff9sP^FB7o-5x~=P`n>((+SZ{%`)40>(<+ZSV1t@}{_}3cSmSxa_b(pwtHk$QMS3cyXmKmGet#GDp=*Xntk z3*%v!Ln~Aprhd}u#NLusdu@Hj&($lrvp^?&vF1F^Y$vDP`MKscr?z=?xks&C=+yxC z#yWAYh7c-VHR8SX!AyM*X1OswvykYFS6d3#VmS5k-Q^m9OQ=q0WhFz{{_<3(7QcO# z02$3?nqe3im;w62PfXo%T;eG%_gQW_y#5ivlHA)ca3^KT2!=!tA1t(IEhG=Hm01$V zQP!Q+Jbkp4ubX$s-SBbwL+Hv$%K6Q@7^ABiBRMNW_bM(icpT+)i@Lg;uTMTroSl$u z6)0LUOBu9WP%lt^q39q~Ii4&YzSiOgiX;wm^%B0trrMRu5wYV9nq~J_LJL!f=evjt zj`=NapHH8wJAStfgsuVym+#v^gsl24LExUJy(J7NF~b%g-Ey{H0zXIKN)I0>(M%q! zmOZsvoizNN7)*P8`uG`srPY8atNR|e`{{1)MiS-|GhY7q+KyKR@;@7GQ+d8gay?oSF&VivC!fM)HI)zEnUwaH6cp^v zuneg?rmm`}W;}b)y6AC!`q7VKetwzbE3(bnEHQ1smn1;PW;{!w%U+?sQruf=)>Cea zOZ!UoM4pYl3yJ>D!tTdi7G-zQ~tqkR!=PK3{c2#9VVY1E7&l+T(2(geie8;woy;%QD5`)D_6bhmTT1Za$fj&5AAJP zkr|RX`M7Izq$H%Yycv2q15-8)0XpkrHRX!sKeu%l=w)6OYlqSkRajD2Po4fy8C+Ye zvZMF-1iW%0yQ;fX0`k?s5X;0mk`eG)#<$JQA!&DcOiizB--IBfoa?6SL0rkh?mo+V za?9iOZvETrTPLh4*JAKVsSM&r4Np#zN3w!LDwk~7adc< zM>@09OsGR9wjs9kX+)-Ov(e(K=p?T4{rRUlz8kGWT?yKJ(FTu&c})21a`POYE_8>l znC-98j!kjsamdlU`i$ETGh?E2C%{JB>Am48SlYD+%bW-oaxZC>hiXu6q~8ng^f=xR zW&6-ScQ7+3T-USHEn1#DUZIw^csRe`Y5(cX!$6}@HHNPe$}x&b*E%1vY-rou3oUW9 zaD#Q8{T8^bSFh6vq2xr$Va>52FMTLu?8I84{cJ%#NmNGo?LQ~mnT5I*;w&9$GFgJo zYZJnAr)bp$z4g9E7w_rmpN>gxJI$eOrLd)V!uh0~<qp@2WcxgkunPn zN3zC-XADKbzxE&JCjzICj>P$QJ_<3KkAJ8tR#@nq6BYgU-DPh43WNTs4=iV|NLOx| z>-@6y`XfDSx8ZqudB=5*5a&m!R+-4~Gm%P{skg+}V~+LQOI~|?Q0n6r$>WR+_y*lmRydOwy1dhVV39JZLbEV9E%t( z!b&8)Ok8#3SjAv~W8MDM$kKUEJA0L*pxG%Gv)L_pASPO+YwuQl zAu^!EEF6WsYwuxGIxOkDKiL3$HRXZZ-yjE4`zF)|m|bA(bg--VE4v)52p@Fg!KVx+ zA|g^HwX@(TfBH2P&X6h2bO>UO#ERx`~E9TbEo~bI#>x8m+ zl#3g+%oh|Yo;dTka6egT|07{XL@eVKdKY#Q*`1uVx#!uhQz!sQo|Q? z9m9&#O5YiloS>~0cd|mWVoKYROi94hND_&7tappbwc(e?T)8E6P1mi)YoU*#o^j2t zP9_{3mA

=6`XG`oiyp1MnNXISPr|PyTV;cz{ilytg(-eM?Hj^%h@t`kiXijm|&u z$y;0BEmuO5UDz^(8o!W?S5$e~f1UmT5#rqV;(IE|(80lg1&u_+bG>w{>|Zvq8k$sU z8{$g2F3Ihs*T-i^BE(8kMqi~^HA?=PE*jcfU$hg8irQP(pc=aO!>N(cy5H}KQTwhvl^JsDx96_o6m!>f zsjenvH?!aIxEpN}rt%ob)=Ubgx!1-itJgU>6;3JzuA=tl7akPNjI70MIzMo!cC>F> z2y~wp`<%LUf&Tq>*QYd+el5aA2O;u8Twe(ppFjiYw0poFOA!3S!)ZnWJ*p#cX3ch! zKpd7gW%fLKTH(^-Q4Wz?3d>jN<%xQ?fn#0MtprXM@{d|En?oL0)t?R4PS^jKux<)8 z-D0r|xtinV_N=r(&Lw61hRzb@sIv(4g>ZR2u1F9VV5~l)k+#9Vjmv%1-~kYPjC!K@@v11P{f~Eq3Nv6fC{MEc)2Pr7XL>3 zhLROSpZsbmTBm~HcP2zrkPk+Huv(^q5#l_H$!w9~F3<7I zBWk%}Xjf7`?IKN`I(YN>|7$7l{BxBK;9<*!MYk}88NswPq-`?@yjr(`Ojpn#JP!_so5{ z9m{2i2*0$E|LHKxV%PlVQua&_qmQoEp34npUQ)(}hr8c!qV~eR;S6NRBykrNIo%!$ z!eMj>MBddWC|k|{L?dOKPuYbqv@dvHV^(|8-*G%!ot>{FL2Q(?S4q3o&^wJ?8d}ci zwX#yijTOHfe5Ba(z@sEJzoKA@pRFx3Z#w^C+*I!(6ID*ntu>4E31DdF`p;Y%2w}OVRC$@`sPvjJ1Qy5rFZE&j#fRtUAeSu zEEi&zGaGE>=WMe{XSMLcuG#;1Ebo!_ok4plAtY+Ly)I^r$)bVg>9B%*?c?kB)zOD?x{Ole+Iyq;vy23l=2N1lj5g-{ zc`zZkVf|30x|#$fa9x^UtL|+of@iKT{QA=LmYrvJuuz0wIF6oub&^*9tAOv|0zMbEbv6ZRtJ*5X zYDvU>r0^=I3eqq)=BS0ouXdo~q9J1G4c6VE)5l-SjuhuhELqf8rH+me6dG!*kKF}E z@BKr8dK0E>Kzv>IGw|NL1D>}Z2MKcJoAJYScttK<7Ky_rUDGEDC-XLErqu1%Mb_-R z)!riSGPpl@awHmK{@UJn_m&778*J&jAxmh zx6t`oMh$vbB#6R({mRgbDnR78QYP4lINJ8BqVsEtEn>m8Mec=BfTy#TdTH0QQtqkQfy^vITBT2&Jb-R=sXY##D%1?Tv+ zT$)S9)lJKIxUzy(O+@_Y*(YdOY_)7slncD((&hIO-J@l#^p8g~5$$%~6e4?{(iTFk z64je=qdmKvYMM$}r9`X{;cGG#5AJbSHAT4SXA*Pl>QT{{J1XUoT;l?fpQ3SHJC(;K zV6^h#ks@IHrTPrPQ{5Ed)7kr0OCOgYEV;PW5WQF%snELU6Kn10O>q&nm|z)ydpB#Z zhwFd)+ARNFdBrSelwTHO(MmyGAfW^vxvaTNCu3ul0_%N`RmCzT3uf+rJHlnUe z8NIkkGbX)wki%xlBjtW{n9fzawP)dSa{yuJ>bF8xojGcxOxlZGgRM8Fz#2nR2vZcm^#SSk{s+YTDvV^sx;QJ5F;S|=0O{?Q0+xk7v z=sA_$8yt782;WAN-}%x<8QYoqkWw=;Qm#pB;HUP5tH(!%*Zsf1tE=X5>3>e`5s_k$dfoTmnne z*O#H|dsFI)Hu=tDN=;Yc_j6cz%kINP`W0ArC2DgN--4xDkK394QLpQ@@Xc9%UIaXF;fA^aYnF$VSIzsEabZ@5Q0xt>5#U~v5muQ&?HFh)Hgv;YhES$we z+WcPBqFqGTFRZ+wM|k9HQvFp|K9*ia@!qQDq?0uSwrF{^DnsQ zON!z}q;?@ndnr&2(!FZ*?FWQ6C^gfhdv#l*?p@9dc1hc}xV`ETaaaFmVd+NuwONnw z2gqwF1$t!8-X_{qVed;+YP3mFH*n?Y-3>8Pn1BDe-2UQo%ag~a_lr1--v{JMVq@DT ztZXQ?C}t(KDI{OED=}Ej+2V0q{h5fIeq42WjmUay#FM!h zzUdopF2BYjzauMTXQ2HS>n^FMMY-`y>Kb-k4U&%zrr!`x@Q5Rk%@v~6v_7c|PtfnF zaq1(vig!x64H4~mV&Odu{rBZv`1zwQAa1gd)h}apf&{d3YDHX)G(m*3agU387jJd@ zIJDxwQTn}8Gh22mdO^bE;#R}W-&l`06Mbu%cy-53sqzN5D%Y&}(XnS-Gx6`NoxGWk zaR>E3p69I-U*WYAT#TCQs0k$cQ&g54~&66t6CorA*BAR$lL zGhUY2p+YfA_s)r%nx4!kf>Bme8(+Ti5y6;Y)r+`8K$yKug|d6ic$(*1wbYBR#+G!C z1Xb~^+M3|?`cu_gj44{;kN%<5JSwCZe(e{i=Z^$ts2a~VpZ*!hFtX!K3dz+q;Jl10 z>*eKISs}kaRz8`7=qq9n2^d(3DEPiRBO9{73%~N z-7v1^)Tck6wv0E*Jdm|>#P#o7sI;l+;6;BD#q-}{wyDv(Qjz2+fGtY_G70bKX&XJ2 zEVp{DL(x-;^P%a`=UiSjH}GWp0YDOx)sDt++T=76~=_or-5NHBIJ~NTz07^(g6H zt9{irUNaJMJ_ql6vf}{M$S;O8q^h+b2D601d^*G4Y9%0<;Nnj-^KQRi!piITM(^>G z_MWv*;MH42ntewePjK7XWF>I@If$v>4>%X+DOI5Nz9GV;JGQwZ#thLMPPqQh?^0@h{rXMEpuNG0@f(7W^tJUD{z?K{ z??EnX0s}?+e{f~N3NF1k7JK;2-W%7UkgOuO+Hv+(Sx1))7q09S70Luxx^hw_jn@1H z;>BAc@;hUAAO~SDcf21^2U2Nq6{Cyaj)FP8nz%$n9>?WD8JJEB&%0_EJwk#q-%KZ= z)D(!JPXQR+-|w7!ynYk#m6UFd(>KICpn0m zE8=?(^>AhVi8&H}eZPV;*@{s1wJjSaMO8Sz%NRFA15lOPIHcw#X2A7NuFTc#?#>eI zioJ|l3qkgCf>H}sjD^h%^wbKFj`VhZ)b-7F!k3PjalAy_g?j}~EyyP2J|D=)mf#c) zXl|VfW7zNL8dNXWtmlT}g{gxp_>ZEuUeW(RfH|cd2`cMzWf3t4KYDfLkeAVnrc;FIK6P?3I-mG<)3k)oEeGsFjmQ!N7Gv=p|W*j-Ak%m~h56b-3 zatZ4Z*GIWQ&1fv+G-@d@fitucuzUE+5ZU-gWuzhT>tqu#Yk^2-93%8d2>>k)CNL!% zOwxmt)y0V>h?4S7Yky>aFjw)c;z7Qql8lV)pM!LwFbKdp+$9gem<2x@tm1FR9lG-b z{f0^^y^Rh#BMFaO7ulav@mv`{e$kf-b?-9x=v2xl=(dv#B$F>!F~JMkzkr5N_s7=f zETNm7i1ZseSpmj?UOr3LKKoi8nZt(dZ}s|T-rw*+6+KJ(nu`?GAZn}7`t}Fyz}+vc z-^OQ+?R3K7!*vWe0p~W5o4N@^5_1H|A%Cv`6rr0A1dH^sq>cnvc9g5wIH@-{K@}Za z^o$SfP)5u_BXts%fMZESK1q>zl?<`>ZB+3aV(AL5zXEO?xR67&yU1(D6;7=PScSJs z_*yS7Zqgvh)%@fjbK z70A0>26J>eWBrS?7%&q@Tr8#p;YUS#iG{6PG_d9sO#9Jb;;FV$s;l3pJ{K8{vo5SW z&@AfgGUd^@m}OD(hX>s@siFoT{q9dW561i=?iZmqaQ*#|O!3F{rsGS~FL2ww%X_|k zFEYJQrN}w!+rXYn@|qs3YO>jOBv~)Qu+|rzZh(k9vNVLNc%rT1**j#vWy{>MGJ3=* z7lJUyg5198&B>owd5w~8mjbL2T0uNg^6Nyp_xZmyA^zl>F?)^AQ`$`w+L)JCKUC$o z4033Z(g%!87Ha%RuTY zCxNM7SM1L7Eowqo4G}z1TD3l@J>L=d7iMeK|B)|zyd%WhWvWb;@mE%`4it#;l2zlb zsLEW?+GdjyDG$?zXyx`!`8aNL7iscT1vQR1BYby3^xB=Q$;U{r#jz$wV*G>VI;GSr z3a6fW*NyacBv9{igGWuj&J*42>@C=0FTyf@e$zUEmQ3{wIDA8F z(k1NG5Oc6e{a11RP#?^vMN0R27@^zfXe79bMG6qM3h2y@=L3cw)I?#|0362ukkV3U zDJ>>_=P@Xgh1=x>;4?C$UGCU8p9q(rH%OK*+p?T zaXeYLvvD1R>dPn-P>T#?20)M-*#54e7=SydF}tbM5ZgN$cXP)H@TK8c!E}g|Aq~6Z z7oqG%?6Q`}c2~2zd2~B{pSnXyz>zM2w~!J9mW2ke z9Q~1ZB_$srm5ZGHu$r$p_q?I8ujs^$R$hyt#?cLBoTagU8)DS?7`;=9%ovqdRR_zV z{BJyTi&UgTQ>=uuYQfRlWLtb%ky3Nlb)Q`dy#FFmSa|qvB65^_s-u5@ydOUgm!MKl(Z1y9)|Q5Yr+qQ^EiZCMLZlnAwv>b?fR_D)I> zR)#-uz9OFV#v5XeNaP!$u(y6MSW3@EXDfJ=$Q@2S)xyhfj&lJtuGKMkdsE5*+rQ3< z;{A(M!TPVd)`OQ*Mx$E*;WY8YGT-pWzI3-QC^#vkij5yxy&XyflL ze+(Q?qbx%o#k8E~)os2|(vt3#nNYdHgMLqeoe?wDRY98iChXx~RB&I7h#U}nU!O5c z@kV<7i)+7?(W?L8)E9Bv9zGK(lz)dK%|I`phgoYJ@ zm0eNlBXNH2WmM8FbgcW&Wg>D9Z&@0l%V4k(t}@8dUPJVo2JWq!QpPF7Z`h?uK^%e- z06{hQwjY7jKQB>@r;;e(j4(GJ?$ro?t%aQhK#a zEXXS8fQ>dO2DGxR*R7Gqi+-PjSh}14g^ghHr7Qs}4hA3G8Uz2R{s=FIF>vJQZblFl zN&*hUqEd-3%|K(WTZQN#eSP5|?~+5x5J0+Ch7|X`r1$TiA*iVXw&imIItX4{gUieW zK_}+WirJwnPU9+m4ugOX;@|>Qh5c6VJ8&kqov^YKh!~+`+rb_x)VfjJM!%T>D-CgP zf+2cj*#MBe9jg>gaK?tpAqCh|F2y{N=|Xpm$f%Hn@#-2-cvRLt9@c8Os#z~`mIx`5 z6|6@g2@r$RN~t0o8L<5u0@7$zUxT@ma!m01aqMV-%ISpLyb<#m0;;gss5D1i4bqM- zP8U*C@clDkrAmzBuzHJ$pQvtl6`RmX?I6)KI_sk|W_OE8yJ<= zAR-TZ%V^?!S8**A;)||<8XZU7Dix}tVw#gj>drK!gh#&OM`Dgq?oqe`9fRPY=KC&= zq%8=!woBN5eaJImCG^m@y8!JfHl;vBTm-^Y@A+dj8~YOxzUFfF%G)>2zKpsz7H325 z5J{Z>81Or8^b&Q)vg8lP`}ZekzgYTygIL>c!cql&&@im9Pz#_sGF+?~5izW0Phe-A zvFuPry^zGZ;bB(eNlv4=v-!_LnXe(cIx5LUi;PA@~O%3^6fNwN&?2W|Ir*C zDNDdv#xF-LvE24e^*e9hj8EL5mHj_Fy>~p-{r^9H4v{i)mCWQMWs?zQ9!ki{P8`b2 z&W;?8G_10BMzUu%$E;)~yF=oX5r>eK?BC<`{(ZiGT-WWo)n&b2&*$TDf858zZaZSt zE$G4_AyP0_01h!jCr}19tZ3zUR^C@p{w}q&LMY#7QGZ^qsjGh**_OH*z$Wq*e}P=( zuUnu7d2<~Jx#MR}qke4h#rAJK^$h+w?(>XVDRDoomnuO6$zAr274_2*n5C5%Ug{86 z#trQ@MEQ$YJU?~kFQ=jg7X7PFBI?cd+21|@lB@5k!ZOzpc}Z$`CPr}AF$HhvP^vHM zSn8os&D7Pa(J_v11Lf!PP}MUP9w`DjwO0i&W4N#P)2Q^4A=?p7wKd5y3Z9v7F3-te z`uP7{7FrrEGRCMx7juZD^zuA=nu7aji1XB7+_05UuN0^3ul#iJVch6X^N^vHr;+(SN6`bNcE_&O0svHl z9E`P>St;B6>4~U$&!Fnxzukf^UmYtfEoWP-^j;jIGFo&+yFraWX5ah}tB$nPv)jF^ z=hnRlBww+4nv>s}TTqT5`s+PJ@+-|rw?PC&6}z*4aOUDPqZenvC1e-?t28e5BTf3$ zjH%-$rbfY`)6g-lUVc5`# zK*mJzQmaYxqvOiuhv%C|e;<3CZj7`HgRdjoHLYAF0OwMZB=#avnF*CkH3_H`i3<(& zCy2|>y$kNL(>H@XP=Xtq9}9I`6>0FjIMWe|lF64dtg5+J!@>m7UrHP~JrbeAz?4mY zW9{j83fhoe(G1^kXj9vP$x8iN4wnVcC+8``qiU4Nurs2N4&{zOy*Pn;)De4(i%M-` zaGwNMb}sbgN!-tRL((%vgtr1C);}^R`fHWfG*mYs9!L9DqvCHFxo+7 zM4rlDBK2y>$M-dD@g&NXE-DH&A8v@8a<9$a+RRwK6Al+W7BO3kEn4`TC7B~*yL zz`4&~wl4O=o1cJB>0aSX6D#1=sz|N&2Kj4}Gtj)Hx%zP3u;gpEfg&*nKC_VQptGAU zRY(eN3N*Y2K{gIPDl7F-nPm9=|33$~aY3UzHJmz9{$#*eBJBOVS))7^rrD~lxwT_a zW=4#jS5d|{o^v0M0@l&J;x-Qrz7MO_z<t%%hsUu4nm$1nd>koV01LZI3e)}7Y+oCE3G=Rq$mt6pUJ$5^5-6@?bpABC4}9sM zN+@#Px=9yR5uB+(S(=sVy#>C~xXl;TjMBcAxQK|+2??8zj`{dBPpIz1hf{tnsom$S z<@&Y6&>I_1?)rV+-;M1n#EipC9Pqm1j(#1~%&!P;=_jOZl(cf4lpo0WXY9mr2CoqV z9k;?bboqXUpNV68t zXociy{PK}J1~BZw2i3!KGi*cX+S3^F)>#jt6(~bezCkleJhb6M54V~_Z8b3BCe914~`v|w`Qp=WP!m^OOuI9bsI>)5v$EfNvbeoQVgLVbN5B$ zZlsCk=11@50|n#2RI{T#U#W~rzAPwc*=;UlryKsD5Dbf1y9~Hoj3Mb~XenymkPWz6 z>6-cnOYvJ0n7jWClBfD7PwugY07E0#gU|zNM-~pAchG4EMEOSqKj4ELCAvXJ1zL>B zamI`*)N8D4{bFI3=hf8Mm6sRqXhsRpviPOxvGTI(-YL}%PS7Exa z^dSdv48)H@1hVi&BFv3#aR*SO0j^|IT>q0+^XE+iFY=S~dt1c7u6L+Rht0QF$*UIM z7rX$&`{Xwc_?Y>;p%t>fZSWeu_eP5(vNoWckeaEPGs?ixwuqT zmzeu1>ca?V`kKso-55E}IAr+<@WuG|Z>q>C4od5D4XtaT$gK1Nqsk7A=+02QI&v@+ zH7^p_rC`tJZh`XuPnGLPDjf>X)B+#YWL|r%+x2}FP3~ZJQaXr5@%Ip+6%_2LYsELM zl;C|#%m|>$Xp3Q5+TDp!&=_$AekhgVdb(*sQIfedPK||gEl>rHQWiy9Mn5acB<$9Z zZ8-3*lk_5Q;fD}!8NNF4i=qgaGUb;SW-7bfl#LLMiL}K+R3VFxEY|R?F~s`zt846w zguIR9X7o4*ua> zBBbeZ%OHgbPti6*ro_eAZfN-$&1T=sQKAlIsLz0AFm7GfJ$g|}nGT?2R_=q%@|~;4 zeH)u;=G}vA7I{auY=oJ-$#|f$dNK}#62duQ0iVgOZVHWL7~Tg)E=yTq z0Uwgd6PN|yAmMm28m`j#CExHPcy#YovZ2F(Bl?Kw+6|D_g~1wl%ddG*z+GBz^%)K$ zEcI~!`-Ea;`kxl6o;o$#BE3-`z058pNrU&l=vCTm-v``c;VF^JH*~!M4V{ZjGiinX z568&-M``_#^>(w|ff@8|(_6Ab2r~8{v{EB5r1Sl7AyMhOsmIWxWBVOrE z^ss1h-%bqJoj-_|-g7itet)Wr`l}r3!k~#K|KQg!{~4E{K8sT%XuS zr%)3a^V7&ppE9Ahaq9Q!q8O=YFn2Fxtk<&RcXod5Cu#;x zZZ#a+->-Bq6ff&^51M_0I0oP+U89{*cQoRT!gQ&NPtfeOd9(9Jno1U*>2d{U{qop! zljxV(+BC%F%l!Cit#2@4@qf}m30XR@|2R9;c!~^k`}KLK)sjWtIz6Me068ksnW*~T zgWq@8bS5j|djrG+%F2XvYmT-qWyprta%IT*p7C77RZqU{W+yTx|1uq!xA^T{@W*|V z-P~)hMG=4z7B)Aga!L`TDwvv@*YNHYXQn!?xY98acV~``-ubfop3s}wCgtYIkKXur z+Jfb__#gfBr|*So^;LprwRL!x41jKtJ+6zTpQz1VOCkZh3)^HOCPjFR;&i>%wG<}9~?m5`hCJS^7YP_Rm9jI&3$ zy?A7u7TX8?6!4u!GqFbsH@w)j84fBQD|*I*Wc9A`I3wF(?<_^nWod!RK6y`?(H2GD z=37)W2)RGEzs>FBA7BSdIT$yZC9fj~33dz%>HiL)ZroYguDR~7-)bBaWn0#&O0GS> zGbeiV#Mcf-n@H@enAC?TnGBf4{s*%q3FfrL=Jbs}=zkJnY6X23*_CNWY`$dQlGTlx z2h5Zk)F`t&s4m89fnyKPYMv zu5PaM9m?$~oFo0Fe_R@%zv+AzB^-HlPn5|0^SH%L!nK@!@PagH0hSBX%;3+#E)RA@DG$Dz9Srfj%xBOg@TT!SVb_DWkalGjVbYJAcjXYQV-D()v2zxD(-c&Jc{-tSCQ5 zPZ%N$+0nR-XP2t$?m(59xE$?wIO5<2ULM-FN2jEm8>2|k;hj+Wi2EXM-K^wnztBCy zvY3Ymy9P-7-e0Mm$<+YQ9s(Ye2;iOCZfNtPD21RgMa#PE zvLlQaoJ~^V4$kA+6>a>5*cOdk+BNF@RRRAij>~O!OV;goHw(f5=WLzk6 z?sAvxwJ<71C>*SAT=n_(AEB%_wTb@RCj5V^-4?r-hZR?k?JAAeQug^VKiDCa>uRm- z5IUAfUmZy>0Z3gVPXN7n3a3{lcRKFRKC<6-IQUdq)mv#arFR1*X z$G(>x%1nl?)dr?EZ^0LEn>_rWh_JHi+9H@y%5B`*8HHbeJB`@&I1L^8qHwOt!&9o9 z@%{?Sb$<`VK^!to@b~$B_s?ZdO0|3;`7&3~cy#NSPc1jG)UDpQ+rjWXw?R{mUzeg=~&Ui#@%k=r%?zIS~KUGI^vut1rKNOXQbx>s-R9PtE zA4&gC?rYoLBvRV~GFWx{A zSQmc(n5mTfHoqWkdiAFmZnX6DP2R_uiqmXebFn(w3T2p7f2m&K4b(h9Q7Rq|KI>x6 zp}(TTRA2C3Zk)GnJ}mgo%IW2*CLT|EeeLHT!J#)TsX<@l4nEmUt?s^%rXcQ`uZ?s1 zWHviqc0nj2E~yK&sgz;AvIKxT|#H8%sYK^+e^7G7gsz>9Y@SwJZp1 z=xF2VQHN`yrSxWt6h4g*XF@5I1`lIr z-@g!~4iR$PGy%wIz2MhWGBV}=W#Za)7Gcp&UeMfNr`!0B&3G;GY~Dx*qahEc2vx{3 zjN>dn%9`09_LxQ_y3n0?W3iK+Sob)X`CQnP6kXe9&A@$3Co3oYi6j#k8NOhx6{k(x z3zrM+;`Y-@w0GJNZUw)1q^Lp`6g?9I7Os$fDoNvhjm2t5c1v4K=h7R~MNuA&>GS=X zDA3T{Tt_b$TrZ?=D&s^PTSitjH)vvOL8&)am3hif{rI3(kESaie?V>Wf}aT#l36T` zf|qi@%FUjFJpAI5my2x9&)(>3hqAPnHA(sUIE^CA0(|$za&4o+54v%}<0(ao34P)U z=}V>U!yP2CVT0X1aa^ar+iXFJcG6&0WH9D9C_^vID#EThP@Ox|lD(t&|Gx3x=*JnJNEtq{nwHIp- z1pI8z&~hjPr#tYRbK*_coKi=u{WRAvV%LM0CeAAmx_`N5YzlpEJ2icEba!&j=RovO z{I_Z#ldDTgQiwDPae)2sIgLbbaT1;q$-d|CB0A@h-*|BhDbMK96Kh?=f~zFp-ND`&R^o|@1%Db~ASfDm~A1C9a* z0(h|s2g#FfqCc(3ZR*5Nh;_7u`?qYTl2$GN4ZU_p#OkFMV0y=7rhm0ArGH4@rrwOj)#1M&VDx_z}8qAw1U0q5F;owvoev>EbN zzBDFOQyu;6m$8#jy>vzYj@i3R3^n7}%1x>e@t?4V|M1VT$IEylnzgISlR657p@EU? zZqA$l&A`A{Te(ytaw2aFjc`fr2`ZSoU6PRz*5qTNx2cj);QUE=$O?>kH!hmWCT3L1 z!5o<}=M!-B?>_N_Y~Wp#8x`KiHEZw~i9=ha%m0;v-Ow)8WScs=t?>55IFX@onzM_jxaH9*-NKf)*csjS zH@SNGwS;W=SF?aG8;^uX^Mo@j z66{==I~@_x1ourlvOd9LL;DfI9ld=?HdVybw>a|Mgftd}mhpfJ!no&=TS;7l4XHv1$U|E9>o10#53h*d*J zhX%YhEQQ}HnNV2lYWoTO%==z0P0KIi{|j@y`jlFUiz~9lxM9dTeC&>m(E)(fi1*a0}{HVFyHL zmUZUrG(`^qp;yKmPK1eDsukujaLEe5P)VPV{Yu)AVuj;K6X;XJ`ucxDz4$Dn%zG9o zXn#i@TAC*5_I;Ol8&BzF*ui`8ThMBDTLZ8O_V3hB_^~T@ety%B+wdLwp@*AE;*&H` z5SR^HY7PU&78HG9jFd9)U`I?(Tm}OrKGKa1?LWz4L#c1jpCc57Mef?+G@zh~Xk$GE3mz@%S=zEiiW%1Afl)3$5iuo&&b4?5ebM2|N2K_raI&|bb?Z?Agm!Op!a&y zvh>PttOZO->QtR!r%8W>W8lElTrGOJmXAnUd~$H6!8>P8_2TS9qX3eXy4MRK$`JFH z6ZgroK*LfN6ya_%WfYTn0=3za+G{xc!bjB>e2-F3`QIXZDgtYtU~)=DgAq+m1Zv)o-JkcAIG6uv9zXUO7lA~sx#VQ) zb2oCy!u&yr!dxhlf=M4Y8pm?6P?GF{ekkJd>8O%4zj2{BE@?*(`_6DSua_4e3Y<~1 zSKXMV=(8vJ=}bEkKEV{%Cq#j9s(^Q6Wl+x|hMO-(%vjzx1T!0Q!dVP${b=)8)t$?} zr%|PTr9~9oH!XB2)r`{mSFtz7%qwVgadmXJY9x0yUW3B}*d)(a_GY}1U`qsNb%LRCqr^1q`1NkS7$5l8=-E=ioN?Qw79;TlUZpt|`~tT> z<<0m=Inl-X8SYw{&vTfJSqi9K8x-aCzv$ZfrW&H#t|x;%mE?gTtzj+xLi6x-1uYIB z)~6M_@he9Axr!a1(`=tMz7%ZPsBq)2F`K>bcS2h`m$HAikqf&U05cRCpOFj1jlgrV zRQcGRP;p)4>_Yof?!T;Liz_>u`d~g;s=djP3($gg^~T7DF>NA9!j}M-{IJ`7g6MJxle58>fMcslMG0I13CLV2Q+GjbCMh zsvq^}8F0^DAI}*cX(k;TJ0~<04SHxK^7@}@d^nkaaSEyc4u5nqdf}08Mt^3#Utrp1 zY4LkdNI?*yEe3jI#tY`6o+3@EkR|-d@s|gDH;)zy7b3)RY^-^N7z{!vvRf3l$G@E2 zkn{#u)y+uKm7%)NaS0%0?67L3Pg^0_IJLS5M#>CdBltfU8jzXIqz^Oi%k;tX&5F{s zw&<)W2+^F@B(kEeT^ke0w!Wh!plt&1KCiF3zBMITo#Uo5KTP~zXE!|0e7L15z>nJl z8siA&C)w@+w?XnoK2g)kB39X4bv7~V8VR3Q)bzF8Y3-~41~+y$_UVB(@Zm^YUWT>; znPHtJ(?jZ=V3Y`El<#*k_xJXi1L1S%ifpR(Tq}Csx5)8JN#9e)0}drV~t^PX&oo7YUE^T<`dU!3$(ZmfOH%p8fZ4 zV5Z=dLK7leE|1u-q1owu8lS?YqBTKI70y*m0J+}txyurk)wvS;lR2+ zi)VBad#8Dv(HCp_h|d9`%VD~KSzhyDX%4?zBXdr%$O^zs%_#lORXnoIx^r!bu-159 z)4&EHMsYzav^$2VUVjGT;r2;8RJiZ{o?UUTz|FMQBW?tj=AuZW`Y@BDv zc?N2Bj?%q~0`2YxLGjhg_uhB>l~*`>6qneM?^6-bD7iL(_k@{vTqqkkY!*Y?+D$0EsGJi1+xCy}Eu|7QCK5|PKOp9+WJcY-tnv4LIK?0SDxG|_2YdRQT6heGDuFI z`Qp)5zF;17`f6pv#Ho|No-@@wV?JVFk(W1QMU5E&d{Qo-SXwHbCc46T@(8Bv1ALJ} zJse`pP1vb}56mK0%i?`SdsJQGjvagK;-|Q{(hL3pfT}f*QobgXfg7R{tcB?(hK52b z$T*C|_phl}fci&COENE{fycbR-^HEch|AKsK7-TfcF=0LYX)wI;LIZ8;->Xr76;na zcF@I66I^c&beJi4{6!e}d+>SF9cy0h^9N)>@1oW0x#_q#YUWc9v`!s(U;bSds1u(s zFJxfy0Uj7?_KduZ<{R;JVL@uOvy>qv^3b!JWu4al`kYw(Z{-bQm1N~r@i>#xZMQU#wC(Z@T7U!NWrqJzwww|FQU^zt+nk;rT)KzxPT$dfAe1Va=1 z)%v6TJD=c(!7G7c4f4_%E#H;!h#&WE1}{AVCALYz%uBgrGXg&2Q{e9iu6Y#MP#1>k zs>YlqLYsVC@4P!#HVYRoXAoRplBw#Nio}4D<5X(!*5XBjgG;8*L)R`^TQEQPNn4Y!lN7RpoD|^OcS`u7o9&cAK|<$cbw6r%$b_8_1DF*T(S>x0%T;+ zxEIsKr3y%+#gCHW*mIMFYaS&Hrf#Mkq!v%ZQU9NH?xbcg!#GdlC%`A+DGtBg|2|mE zOgWVQj0t$B*yewE0;xX>bO zYTNwm1OVyo2&CRq3bLuyPnHJUR!>&0eCD9chS3cO<5IFx2zrJ|vz&=jSvNw@GciBX zU0Jd8Ccw#XCep!s0$BW;Zn;PRo>kf+2O#L83JQKBHcloYuOG_8e6V$ivw;yz)81it z=IhRzX6+MiITw4{uEV}H>Zp2!TwC{*(^*fd>|EL+9(7CZVerYwDbtd>9Ek<>hIVF;7yj19d^2_5+;o?IOXSO*l!+Nb`Mu&x&6d|f$YS2BE**0eD~H$7)8}i^kZlUmZ4WE}B|hc; z=*5#43qz3Nml)4d9-%q$#6?0b={`hmn881Z)XSwUe)n#QR_x@E$d#r;Iym;TPXf$p z!JXVJM>>jyEG%&~zvvu;w+WZ%jtZFs;ZrfAU!`f}WInr!cM)V1d)t)d`q zpqW=jD}+@V$vfjby#roC()5Li97jGqWR{}FeMV1x87SRwhdy%a&fc*_OM$kn7kdq=P z&xyQMew-N@Q8lR(XmmNlfK>SdLVxk$MNN3iMJ#x(3}9j$Fq@9|qUwN563c6Cy; zb%QZpC&tUkg$NqCBVxcx8lk>D#@rB|t2KE|_0W7Da~(Og8}T||O)Gr6bW6wRQ-KhC za0k2?Q2A`@#5e^fO36_rK)$47mx21aFs;0Q=k@5f3#1hv3z^sC^yY;_QSo#d-$Q8E z8*VQPRf~-CcIUhW$UaaK#Cps5d6bVC;znOmu0ghB>o+KfKPWVa^OV`Uz(O)YR08nz zzPx0dOXUvMdpUx>t@JjhlqR+%a%aePF9G1^|6x!^1Tw6E+&)R97$#k^CmcGrh@v!m z2`#gO`2B80>|1MbTtsBvy6eL$^%m)@s2FZ!f6xP)$G~N3YN+k8d`!9AWtWJ&5H?87 zNX#VGcsA_Wr|z+WEBG|KqspK#i1px10bJOi8qV(X=a*Q6_+OGvY~KWkx4b8uZkP`3 zTU$7p=1a1@%YOa-NlBjd*@I9s1DYS|Y()RC{GFNtKQrHtY$edB|z_*w#U*a`p%Ovr_ zVs<_Mk1iO{RJ*Li4R)9BZoOls0n6zBP>7qX81cmX8i03Ism zzyUX9v|HDw+VB~&>h%H8a^Rm|QouxMFC(xEP+HByS8)GX^>ib}N8c1k$yK?u61CTvY0lp}qsCd2|u} zT{faz9Ul&qGz4@+MxWo6Xq#_OJ0tSe7NA3uR?%E)lG@Q6hL1)aaX+*RssLwXCDxz4 zG-P)!Hv%$KUQX@zxh{m4k}XR;K!51y7%KJKB+t9#!7hTCT&gjPh8+##J5EmkOVNtAn{gNl~>U?~K-dm8<_LE;EOqe#fuhWV=@U zJAp&HKQTJY08%LHpOVQ69MyN$UdC*r=59deaGK>K2FrTSgd?Z)y`>0u$SJ&ze}1I% z7Tq13b_dNv&|a)?^Y%hnh=HR~fcD^P0v1gWDnD^x@O7g#x#n0SKGBoPiaiO)+!$lz zAd!gg&*<1szAoPrect=>b4QlcG9(WG&du6M2G2Kf&S;_|JXIMprG9x9X+8MQv2n9& z^BqsQc@-)|4gYFRX#&gC>F3nY@rmxOkLyl@I9L>$ukg_Lkq1z)0GZBnfv(m_D2(s2o`2Z{`AY#C_Qm(a8HS^D%tLb~B z%Eeopb6Wh@6MSp;@yE;T}OWYE%iY2w%U(Mv`qwg5aWs z;Bnoh*<|})i(yELr1hSWnhoNcP9haE*@>|>`L^Uy5_EK@(I}&u(JyzH$gkobaS<9V zIy)!VvDeg7_kEhWja;bK0Dt*BJPl7tMGpHN!V=fz=XN%`L=3UNd4tj2hd>`oRX@%G z0;i8Vu{*rDYDNtAcQ~!_)H+Bs!$dGMJ5lbycuejI*)glAQCL}E##hs9KsMKb538d( z(O$Yb@_7639I$pt259(*Fd$o7D9in{(~S)oHvs!iPahoTNkz6*n`G+4Q-|vHsi1#4EGAw?|3ZdJl_l&j}9xBu!Fhudc043H2|9mM48f&st0km7Q(oY5rY3bSv zWTyLQv4fqwFw9T-ME)!=jmlD zR-|Xi3oHHyPg%G16sGCcw|27eVc=ASOrw2V_}yI8Jh&Yol>%l{^2EM3-YjqOD((~p z*a-Q^<{mv&>K!A`Yk=tRn)dt-h}AS}C}mI`#Oq0`mvI{@|6pmxr(JgPM7;<{d@=Et z#%YCs2(3<;^Sdmm(Wyf zr`e*sRkG4u@AL7m0N3?suIMOaJhT*d`BZo< zS1eU-?)Q)EPo9*Wqqp5(@kf$#qVE6tMCY-wg1n2tnJ(@@)eiAjF(-vZ?$BlIs_!A_8QiPz&tWYbcrmoW9^`_b+E2!jC(5$El5WIQiqDfq(TzHnn!QzW zgCZ9mKk$B{V_42P_rN%EJZf_>*83LBcZy}EiAFVh^Qx6hDf-p6a_|>jUE~*gM?_&YLBh!qsGl-HT`E}4zKW&sb zH7BftoG<`=fS<=xlNJlI+y3qcL*E)lU;n(v8L&u!Qa$ZKP7x<4%Rhmj*=){-(&fH) zu&VGFS>UK>HQ_0?@~=wj~1vjJP5KHh<_g-Dus9~b0&?$hZb6COTx zl9zCu*=7ST6jdIV-!$02Q_kJ|b76!;G`!k?$51g{Wzgbkwmeu5Cxud#?zCr<;JsH z3nS{21;p9WYc+2`a1}|sEkzmG%Xe`V+g<@c2pUl3^L7Lqmrm*HEjM?{P}imnVaH?_ z^2;iKjYSk|UO_o?(=eFsa`&jP-(Aidk)N#ww%<^aS`E~ndfG-vmc(-&!B{YT={V5a zck~lU)YV9Xey8D*K3E_FS)=u{PobWUocJ|nB_#tjz-dXH%Yy6@6hJ?F9xFcB^JwX7 zUB&}8W38k~o!p95uzPj8c@8^8nAd)GP3K>hXtJc@_7e7OJe%5U3m$MQa_Z+F({a*j z-Go0-KbZEit`kJs;-%y*F?zkvgh zG_-Vwm2b_zFrYxjZX828m1zc@b0FTpr0>GGJ~)r@MoiT;9YVq6(FMjHi1jz-3De*U zbaeZMgvHQtu)sTkBD+j<-wa+hn9cFf>O!E%%IT&SHr|HJ&(c?5L6+5OuyZmOp&|%k zn)`0o0M0_3EJV1m`Og0BA|SYjJifX8@tnPk%lDiYL2W()E#sK5Dijg8PHz0p;R0w) z+AW3A!Mpli@cq|*Kv)W#2Ljpe?8stCs-&m1#@b}=9L!1L;+Ca7xCyVf&i;gOXgypf zRm%Unu4=rrwV5ORi{ELfOBD%3QjZZYZl-?opa80D&7TGRm(?j5+#d`he=ZNPvWs_& zWC8zF`i!iMM)=(;N;|xGEqK{7|2Xj36h|(JT7w;O7%fL8&wMIe89h(Itm7V}8O=*0 z(~qy?IrIkZ71DW)pTEuu@?O6h*aDqq=sKl4&6-mTK!+jk!Bryvb}ZxX}-*y_U#uFJlMhTcWSwatA_*mTLL?Yi=~ z6%*6`4Q??sq|?jU5=ORknHo}3lGF_HO#W5EO?B6sl_b~I34gjMKY2`ErBu`tIV%8I zx(0GIcpW+pU%4o$+w;foSbTV;*#{R=#w`3*g?3W21gtk$)G%8iM|U-R@}$LaDZF>3VDzBkKBj> z)(NCh*d5h#73fMqk+;LEcvD);Im_`Si+Eb04`P?$7|q|8@z(l69TR2uXp}5_w`5=F`lq^DQ5QJjGE(BTQ;-thNQnE7n%uY6d%N673;$SPw%6*v*fPGX!$|t1DW-!#wYiTVAA;a&c-R ze49H~5FqrGm;laywpX+MG8(TT2$i%@qXYT5$C*LmoXD5-)iP%#r#>Sl$Xmo{kEU8qHo;z zB&!Wn?@X)imQDurqbK|{I}#aVey_-zbm$>gSd(-fXNuI5MBvkNg=`-8gk3St)XP85!^>n-Sco7n$d}2r>{ANPbqldLbnDc`rRi_{_Aj<0eIiS!5f@+E`U{O z!0r})sM*bzEV~mwshbvm(d4;J1}u3777U!Hr3mDwSU1y*q6Qj}S1yd>%%VKm&@!hf ztu47j`({(_Qrd!)066WH^Sk@kf-`*@Xob8QCu?RYK%m=%)a1bz$RIo4>rN0Em$;#8 z)(*u1_ho_vcB=xl(YNpVPNyx^LkqQ_gmpqOWk(sZiGqN^3p|mwRAh_wW@E3dV+QQm zDxXcm8}Uu#!}qf?1@n|ixwvw9e5~gWQ;04*SL%;JHkYC;cPh@e(FJp|R;kI+)^4sZ zjg3>T+VBg@eG@X#Fml{!|^xi6i;suetJHFtDo4p^F zXjEh)$W#3&n+~;hCQ-vpo_=Q!2kGYjnM+`inQXnLs7)#?SV7I73r~SIGJKr}tn3{A zJy1En=f4DQd)Dt_EXB;Im1$&bpD>GgHuLONfFQE| zS%olF-fVh#QEuPWSF_Sygr(_V*nzaT4d|WWv3Yy8f*>b8T9>~xo3{8)@2{G7%GP?N zKot7Eklk@HfgJ4An|z4lF1t@tCuQ`^5IJe|ah(dF*uyLWS!v7h*F{7@hz|cLf!&cn z-Bfr#9^dI{q>j2nf8{6Z`l@(oh=9aI|8NPA9PH=~Vh?Ol(MJwW6&B_r+cqO$;>BxR zOMGYX$JDQB%l>)I96Ogz;02 z#@aiL=HqEm?u{l>2)Cjzyi5wK{Mi(3HGHpp{%{jGAK47r)1uspx$$l34= z7+J+0Zw2|Zmo_w+V?@`NAHQqBUY6E$5feMJ{R(jfN>YuzJ}iDqFZ3sKG96~h``>dA z11wvx=5x&q^gMPqYYv!}#R|ma=urG{#m{UWe!nX>>A~;0S@r*PfiCZHSa0cv!a)0m z!v@`1pZzqPP?*Xu@G|0Qi*0%aDJ}R3(o5`~!XdCc<16QpCU_tnm!Hc7ItYwi6&9;M zx}MyIf1Fv=VrLf{8f>3c*wCuCeX-0qhy0>2I$HLyuyN`RO{|w%b@i>}I{pce{lJoh z`=xTyM3HQ>^%~eTgJp}RQOjEXgH{r_Utev^>wr>EC#MlXZbfkK8tG?nvt(A7z3Z$f zdJnGlyLKO;o48bSOQSw||ysi8M1DvfL*G0=Jg61}{vh zU7^oMo3#x8eGl~le~~elyd%M;hZp#00RFfc&T1c5yz|(y2|1X!=*o#fTFR*6naV~6 zyO{~{$QEDLbJ>h!mqi83lJ~OY31z@eph^m1x%F<)G1^05Zm^ITsk!e-*Le)bnM+YjnrCV7KnG^(BDX+b0ht)?Gf)W$$z9+4}FMxfE^H9J+^} zK_>MPodd;dg?HBo(tkP)#|omNT=d9y(dH}W2$K=%-vaR z?f7pu!`y~e_A{CUwhTy*k)7jd`b8JEnb|>OSRSB570it`jqhnn`AglJRms(;Pf1VL zZWr-8eBC1Iv`!1xZbkYU6G~*Hq(mWM7M4AoQgI6yTekO;{+sXy(E1+NZ;znMa<5n? zhp+bLUX@DK^5Txv?G98{%ON|(>?d@OR*5jrne?yagrVkhF&)Qa^(Y<)qBqnlG#$aA z#Sbemkk{oiBAyPwil_|SV>B2fS~>6E%6(^da`6=9^|N;3%nRXF(8`_B7SAZ!d|qdQ z(N#UvGUXF&w9+Jb3)8_y7C2a^EB;QOIwD`iz+&=E0DQ-=F$)aOaMr5txVw(k+6pt- zIwSh&kGOBSz%se!=7&M2)ple_GHtLIN+CVlX5X*D^16t_O@BIa+}dW*c(W#X#AxPc z_`w0s$~cLFwl&j0dSO#a5Oc0C=_sh=8w}!0Ya>HR zUub%n8WTa91@>jbrxHX0XodS{utN5QvC#jdte!-S{cnNouWxJ(+J@T~1J~UeRJM$t zR8f(aCH{OG2V5O8!I^O|loch8A#Xa+!@+V#7d@(Ci;U*T9t1bP1dU&p7}}vX*Y~Io zxz}}DA;6`(n%vgCzM-xT%UP;8Y9PBoeEPVM9+exK{OZ%3XV7U9EqcLk?W~QQX@aa$ zYxCPE0s`{L*_zNCbeb5>U_EzIa<^1~jfth;0ZRHT&lj*xEZaEHD$qU^ft+grzt1H{ z7LZ4`n`Df9@}f8C@Z6d3#ePy0vA`xMR#XP;0Xj&hjygxe_ii|KUxGbcMw6I9aB~(+ zBztdv1#rj;;L!5?6MhTN+DCB1xL~WGIitsm*_pXywiYQcOu4aDYy{xJ;FY2{ycqf; z3na>q529~G$$_(028>xRB6&N=*XaRUq34GT1Dsl|y$uL;ej-D4A3R^$UyIZFSkM== zv7O6I*~S|FE)i4{crDIvkAu(=>19)V{%OQS4rCpzx4%X>fc%U2(<`}Fxi>+GPwr(s zr#QY4Ri|nN(?PnqDVOlN<$XS}s!l6q%~>2$cSHMUk!O%$4MnyS%WarJ$mwmbD?PI>XiZkUyy6Swcff5Hv_ek*dnt=V zK=P=ZpK?}0O<4*tucSFU75{Cv=yyRNxdCJ|6k>>eT#2B$l=Z<2hIkDul?1|~!t&gF zczmJe%wv!HJK&8v5Pr$=DGc*w;R!!xN1}VZGLBLKc2FFHyx^4WUndmk1F+nJ<&sx$ zw465fGbq6H2nA>JzK&bQwtg)?3s1ow32PacAz}y=VH{{65~YHzMnJ`!g#KR$mpvR# z+=(aP#AYL6K%|=%@%oAomyBzp9vX597rRgUxU}?Go3EpUo5!ENz|e zA-<^mEJJHr^++ zJdk>sAZwt`9y`vA0zs#qk^~!~1O#8BRN?q| zh#u?!n8iP^Th(vreReh>(UU4CO@VkM^T_53TJ8dcS3DT#|8?|on6hQ0BiYc`AF+?V3#w5u(TWc;r8yk zVD+;}-n-9*Ixn+#RnJ`BI4~l=KADI8dvwpNOb2KE+97Gyd~t>Qb?F|&1@d{G;+pOJK`3`;s{B)2BACmYe@p8bGLmm&WfdT~w(dF6pOm?(Ue>AMmGUB}S`b z98(XOy@D=F#yR!#>m&7waz-$@eo5eS@G!IqyKsJapnq-wN=Tm_d3_13BrdA-`x~x( zzR9(O+V5Jfey6k*_dUrg>{;2^-q|UvvrVsZ9sccbTm8r~jal(yN#FlvHyzBihx#nP zW#+#Yo1w|MHLS1m!zXadXSMHeua7mes$csHZNmT}-CulrvMO@~)`6hKzbB<>=_qIh zXEZl|QF;n9s{}3|Bk8w8wxEH+E{F!VGguhc*1O~Hol<3)lDSNH{8;eiv-dWwzoQjc zULY+^f7foe5L!I`Eek0Mk!90w@*Ys9QbV%bZueXacLkGb(;B;vLDQWk8IsS!rsqVZ z)|tv>67Vur42#&n&Smoghp4_fkGy*M9q6zEvaQ94^38ey%z`--0`M|J<%?b^6QD!+ zWw1f)$44TC>AauWf9kbBm-|}GFWs1}4VyrXhkfGR#F}SpRQ$qty?1{Fe4##m!!B;F z$4=-20vLBpOQbl{0*7}+-0kNK)$DO*K^;AS+3w72Xoc^+f*n6b7x9nUUke`k-#0UDZkpxiV+qg$Vp-WBtiW*)Y`WfF^{(pqMcRbbqAOC$& zG>DQtTO@mC)08L`lC7-l?0L{4WJLBVWv|E{hsqYm-kh>II2p&mak!r6^Zos<+wJ=6 z`cr*AI^JII=XyOK_s3f~lFZirBLXLzy5Pz^d`~53a4=(YxIenU=PRtJmWQ&dR^7jK z$M93`2e*`^C7TH_J@6vbVw4Vz>rGncyOK-55phOtyu#s^WxR3Ro?~a6aMgU0-Ta}W zOtKdVYZ~cUk2Ut{c1_b(AM>S7w$S!JXaw0MO5~osRB|JeUem(&B@8^r3r)BJ zD(L)!g8B%@bOZOt8!pw--#Za?*>)27M27;jT94r}wewNHbDP|&?2TU{DR~aWUaU7a z+L^?pinMRcIUi_g0Ucy?KZZp&5VV6Y@PnX8MDXmJMQcGkg#8nk5CUo>?+SIB>7n$$ z*y4-MG(&|{Qv~Hd1KM3nAdgRYc4PKlr43=R?aqGvfjx1X0*4fR(IL>NF!i({64n2t z#F0x(W+;hycXy+6X1@R%mNP5;asX-A zYt4O_g2f17Kk*!Hf81beO=Va8&zN0|%-5=!i0b6Q7|%};Qw!>zbTFTJHMmlc4i_`W zm3E5!MEWtXSF^nmLi}K@!m%@nxp%l7qJ=Oe8rb=(qX_l0-yM!nB`v|xvy0T=t`5jO0S`2PdlVPjLH$)^6%53&oqGbDv*MQtoK!{ zts6EluMKFk5+O0(h#5= z*@KBZFrX{HeBJdIHLmn`Mlt+hDt=UdK=~iVpUrf&tzESFc1GB|XQ^R-W^aSPlC73< z$n#;5-=XHqG^Z}26{ReSZU8L;@7@{_XRR4~&6Gz>^7Yu_^G9l^L(&dUV9OrA0Sqe$XMGiJ~lwoO8m7&4V zOiR-nX`JSkmR73`4(Fs^8#4CC%%%7>%_PBR=P7L+X;s+tDnDNj7{B~pV&$|~SHm+PqH7eTr2|CuE9b|1|GnsoU!6GaH^VVsmt=So$HS`XV8z$|num0ZD&BVSm8JLHFl_+I+Esg2b6&BJ_L?Gc&^OtvWOo7&%Gtmt%Sjp$CG+?~8r6 zM{~5aD$5dgv2>?ehLe-7UyQVqc}VjqIWrkA&n_vszG>HxxOY~2oEove)5_|#px{gy zxYTf9_q&cz&zfNP#^DrQGl|smK;v-I2*p``;6Gqx9a9GecC?Ep_t|^*@Cgo5?@uJ| z!Mz20rIVW5N{MDkA1 zm6Yr*=$OA5*l90ky{fkL?^i-SR>bV^;G&9Nfofqfefe#wu3y3Z-oA?uT+roq3o7)- zbsw60Rb{4TwrH7~t55OBzj;|L{tZA5Y2qJ!>eJYh2l)778nE~w=kDlB>ZH*Io+s63 zNVOi#t3H$Rzh&4raWseoIk#g^Drn2?imn|7D-XCF!s%RRRj;EzYil%u8D=pJ@L>Kf zDVb~6mF6pwVY=U}Gld4u@xwO@}v5`kRG`hTdaw)lM)jf z)@nyRL#4kv|C>|sIi@M&;njh3)LiGx`t`yf{oVx&6T9b^tA}1vtt;5MNO%t!IG}{v zof-T$VrJI|CZ0zeWNJK2PI%6ypKyy zfnF)!pWR9+3g-~F6IUIM7rD1#zQ%P5!ODKO&;6g-gw?>v&G#>{opD|1Dv}asFnV9@ z4yqE_X7;tZovj`hUaxOZk#iJ@=<-YDW^MePB)ue;oKVTOi#}}ntzmj1#qG=0z}_IUdKFb}s=?Ik^g&IU40`xLI6mCz6Q0SLH_Khf+Cs z1O`&dgDjlCiAx{#TQOfGZe<(xMdvYU#FcHyg`(&<9vrSmo*u*|tm4p)kv?*H3x+5~ zCBArcm6PedW*(>7?E<`fY*95~4=$bN-6O%U^5BpIqdLQeR^6mOK;U1~ECe{w(mlN$ zj^y#aD6^u!w>UOdu8t})jNf9!%kP1C?gCekoP}tgpq;J7Uw|tvsjt;wMf~<>cv{IF zQ_{ly48h{MGdxjOg5^-_;Z9~vu41SMRR?=m?SO{qrEGD;pSHGRjtoC$k2nJ`wvL<*+AanHd+34a!~dhDjC+`6FYk3`pWo`bz%akoE+c}>|6c7{3w2c2dUUDyI(RVC;7}a-6a##GFFILJfxiGA zg^*pU7=ICT$v8Tm_SCaWfzKE2+t+W8?V7b)V|+y;k`?CTXt*2C#dN;B{8My`@Wsi4 zIhY%H_NooRYYK8blfYujxZ|(c*YwZKUNDHt&$9~oF6R!EXifPmfV$%_c4lUg=EZX# zcFaJL_p-KD*YF^2!cWqJOYt4vbMoyygTAzbb}ca=**vCrx9o0Tzb21pZ28{(Q|{{I zn^jRSina2~)3+;~TCLnuVfStM8_l7EWAAQb(-FsQS*KMJVa9r1S;Yl|-1$7i+3!l( z_``S2rg~Vgr4^3Izk#!k1OC2X4d$F`Bh`~&_)k_=ZuF7A2F_If8 z)lFK`TENcVtDFp4SL6QimPC3&!8=xd(y(E>d^a^`VZx0uP0n*=5->BYwSOoVY1c53 z@o40focK$Hn|m^80m|L=BoD=U8|^$!2fRkc1~vmp{C0Nz`o>i-)P+WOyOpOk)s-MW zAE7XxzWGv(r}>L3M#Zy}ne#B*>66tc(_w#@$j^Gr?kU8dx!12*QxboCFs^;^YpC!^ zz(VTg+)k52rZ*2IR57EOug-C2b?cUQ2 zn=BAbObR82h8%ydv}@5<;Z%K8?Ql_Tlk{nNDOJIF7*6TZz}YRO5{&mBij_VOQDx#% zwsYtnDJ%J#-I`MMHi|eu-WCCHB!b_Z;7)UO1A$xa)i``$G^gCF@;jS5Q}wb|FBqu4 zf0wPZV{wFo%z+{r*C9MWP`UFrPI#vzQrXLNtZw-%4np z#~+ErjlRY?Ooslj?EIJUCF19!YP+FpGoORM;q6R+ZKNNZ6=fQhw|ahzYGy{Z)YUrA z$?xDxWH)B>!;Rn<8xz(`l-QT)2W}|(2b}oX81*TP%SnI5N>?8sAnor@5VX+U(;|`9 zv~vTkJX%x1a8}K6wW3R}akcbnWhIzVUqUww1KcOwWucDPc`Ns2;>YK66L2WH$7@;8 z4~BOjckBew$*$L64aNww9kC-G`|Gk*?t=Gy_SbjUgQk}t#K5n(>culkK?czShshdg z_d=TDdgjP2LiWZ%5QG|SdZjn%hNVY35mFUStwV)|CHuW<3!UrPzT1CL@Z_ufV?x0@#kn8;PvUEcvCj%d#$KxL+7A(gTB;{^ z_h<#37HX%t3SAmyKdrB&NKsz+cg@hLdE1IHpWBZ?G>y1c!k?Cqu1!lvKVw~9p;T?l zRKevdbSiXzzxwm%s{8N5pW2!E>hBF`S3O_b)Q*V}o~hX+tTl_frZ-f(3!2DW?Z$Y{ z9^0FrLUy&QuXs&|%uae@3jv`|ky7U^d4G2}pqU<+VupJ(%{_~k{XJ%G--H)nsE5I7 zJ|bTlil*D%>muPhQ?=FARjt@dMYzOU6^y+15m`8z?zf4&y_n|hfU#E zr+v}>GWTKjy6foxQ~6=j0Hui0vg6hmDM{V@ z?5u^`ALvyBv=rBG9^oCU_w|%gQkrBujNp_zV+=N%klxgyaZn9rJaOZeHre?(w8_Vp z0WWh*0IXy=LA$sBhka@(f%HWsNyTZ~!70oNvk|x3kljF>T-j9F`n)@1t$etXB3=+J(zA^mmC>(}i{7A9El7o(QK!%0Y-?+m7>t}j8QzrVkC zrFJTI-(%9faM)u)65Y_kF(nqzaJbjRpAmF9ERn-WvkxB}uy{YdW~$R9Zgzd-$p%T# zG|}&HXJ%+K8MdNQ&>UAQOo&XycZ$}x`av11?YxU|*L$SrKc^RMw~cQeR$NFKa@qT? zqLGF*J-AflX}b4FV^rD%pO@pkJzD7An5_v?_afKcTL*KJ(y=Lo{RQ7t$<0EiOZe43 zjmg%7NzA3zgWYtst}hXx>A1x&hMfTNI9QcK+X%;}lSYR;T(?I}mUNL*U)wfE>HT<7 zYx$u-@jMdpq4mQ4Ws^A4SN!&h{+tI^yEe#I2dzmCV#|c&yEP%4S zw|-mmxf4S8qkT!0hjFvJm;;B66g}fu6dHwWA!_2r<3+;EBh+JKgj!pQ50?FslJP$K zle-K23p~mxMxN+2H)PdZ+(id)Ru#5MZfJeW!ne8rm@t7zrvQZ{66R2$x^weescx4qi?TdyH0x+SgHW|tEmy51(H+7bAE{oi~&2fTX2q7|oVuTI|gCwRvA{~0mw_vT%W zvS+E)QV?!W&M$WCA|CD)&(>iMk*>rP?09{e_#ey)5tIIPwbL|$UFC3dXj?%^iL2|N z8+Wl4<6$UOZ>MKx=tIKB*iCqv`c0+ptGi689GIsJ&&;&DtL(N9Z69JAxGRHQyF)f> z8ye;ezJq5tMjORHzgOK7W}4zx>0~P9+JA3eURjQfup4BZqO}>1`q+I^t-+SWKQ{TB z?rK73@8GsQ-o&W$Bab!@>G=jRSotGre&k7Xgs@?>q8HXsn^fnCjGh^F^7}Ok-KRz! zqZK?v17dD9WFCiy4fEqUthE;SLE%-Mviecax-a;#hHbm{^0|?%X3+?Cw6BR#FjyN^ zZRckH+_;mUzijG?U*6f{Pd$5B|MbQ_!MRl*`)6y*Z9w*Lf7h*RfjB-DH%qK=7}~T} z+4-SEOxRtqUN}6Maw0vJC@v3ooj+(txy%E+QxQYk5t9MHS)UJu(PS76qd(VOBPgr}t zcR-BskiOa-XWr*@&}@1Uzt(fELAmC)qQR#_58Msnzy`f9l00PoeGJY`Wg-_yeoM0+4WLrv`?66mv>_(tW=UJzXl7A-GkM#vQK zBMxO}8=}k4dFr&3QWDtxn0_uv&P>8yn1A~};PF{~kq6Pcyj_bzkI{f1bhPe1@x za>Os6N+2MWs@&krSH{N1P$tLp4M5=1&}Yad{_6Nl9S)~O-1Qg?xY1z5 z!AaZkMY-2xkB@)GEo_66l`FjS_E0gB7@csubZTwXyeK{6U?5(2Q)d&`sc_}bjmc=iUkc?;qY~Crgwz+5dq&O|H93)6`)W!J^B5M_Rl5V@ zix2UrVtOh7vUk3);!{@9s%Hs}L`~LClHMIR^c6}n<+BI=3CmD3G23ahbZgUMSBb?^ z>YJ0P52tw^#bWn$vG~Z ztc{Ih<%K0YHyb8Zq+{3k2fTERTtAJzPuJUGB&l%?jy14PbN`M!xsaAGqrgF^Ek!@v zy|m#EwU?KWkROR2U;rYmnHsCRmaLt4EHW|Q6#t{L=q`kt*~$G{w<1ms5-CRot6$h4 zXkl7qq28zWZcl-?^{xIpEI#u6Sq}8r-lp6hHI3osm3#;6jILoF9iz*BnX@^zzM0ib zb)dHffaYQ62WD%v!d*kj{$!p`iZX1hcOvf@4eQ~OF8@@m=dMh?oODMM?cin## zQ#-6UG`PGL2wx%7SH8px{b(#{-D_PCxcgXc8U4gV?i5|--u&L$q;tTf`Q7kpIZU9B zlaR4(&6(cCa%t((f8VMz`M(w#d5l`_j5m-B_aW^m`S1MVnRamU<$yX#!l}UP7spi8 ziRgm}&pN7MV^1#SjSrE3e!!fRh&lA1@P;OvI!4-V=+Aq}?mHw7R@TOra1Q4@Za>eG z3smQWs2hrg!^4yl+dg4|GRN`;Y4W~8^>>Bp$lk?fSdXLk`6g?~;L-0s_~-syGCKqD zNJxKiu^5}t)~6Al2jh9CZI*a=)K&q!d$pc>=c~rh!(E}}%_QkHRhQ+l@Y}ZHM^$T1 zCBOI2^3mJk^mZ!u;*ysw7>r(s-c5MR&Dl?57-i2WA&ecmWRsGpPUG=D<14+GQteW0 z9;mD+kBl$pH4PnXW-Rah*5ovMxP7`pMg$w@WSa4%uP9ATxj6R}aY~K;*_D#=06m^s z*KAV;w?s$xl-z?HoF=|YCrugmd9t?a<^36nB}f>r?!+l=obiwW5Gm_82bOTC*W<<(dEvVBD9Y%?a^gj{2hIGs(C-yZc(LXu~a1or~pu!T0aZ z{?&cw!!M{B;RcD<%O`!QL{nQoQ=fvLXMyxu<*GW#U#=S>;Nd z*v>7>*e`V21{?1wj7FAi*{GweTv43aj|=YPG74S|v0LxB1ox9zpTNN-qZ}^Z4Xgrf)KE5+dcVSC8-dW1&{lj`x=YDTzYuRYK z%wephm{MxamGP3NB1g34u5<{s;<4Z}Y)JHPy4G|2+(~+N)jPv4mNMfFj7=sjj#&_r zhU=({y}Rt{iVtJpn#;PwhZB=ZkO>N!{!xkYn!cXy)~Ws;-Gr9;QF>1n-<$>Fs0}ZW z?idLT7c0n*)nF@NvERlz68x{d8+_b%W9%8v3u|os+0JT?FK|ob>zJ8QpR!)v8$_$D zmd!fpQ)i{#$NLx+F)~hCgLYg=frEa?xM=*WH#0r#r*74$%zYek14Y<%{*5fRE!>VHR#BeQG zO>Jz61rE4TMFSGwID7Gxe?9lY!uD!m3#*cFfB*XRsAb|QuDcOeS1Z7IySJa|=a1J* z@)!ZCcft8rMKu-l=gPOXbKd(iQ{AyLSjLZ(VHmT0D0t7@JEzv2K z+!)XoOfFt&<=k^Osx1OKm}O*_JpsL$*4JqPoq9>k*%Z@?00dj>z~OLhbp5duP6xspsa{nV#NG5y`n zBtz@tAW7|Z->?fCh!JPnUmHzq{V0FkE7ksB=gOsy>sQDgk130LS)H@;mzv%!Bt`A9 zes*J#t~g%rU$@HHJZk|O9aU6_M_Myg%!!tuyK42^92WLAzg?PjUr~OIBD0XPU`Nd; zjJ6{{CMs>hYEX^GDC}RB{K~j>Y$4)9*!yw=yF=lACa_7+JbH{l@cY?w)C@L$%Q!;h z-;6KJC*bu9oc#8wzXIUT6Su9+zv> zn1eo{D+6W*7Pa3TjL6G3E`{-}0F*?=QCtlD4XA>XE~_3d=Qitc zgrJx>_;pWH^Q))et%r4t56SMXY7~!j!Q^f_Mfnq)h(NFN58z9=Yaj21c+gqhGAI!F z7Qv}bU3^ZYU|{#$ZN=gHzZ9v-W+t=ix#_T2V`^IZ;)5mZ8a=6%8C{26Z0`S9Ywj2n z%3^(@%!E7tBNyw9~@hk8Gme9Xhc2@@s^j?;IQ`PKxNNP1eoQII`A#6Nk~f66CQX$ipc$ zTw7`$Xdz&N_nC=djwNVow@>Hh);XY`1dYdKr`gu0W0hrY>5Ph#X-sg^*6qNhW$ZKJ z;ceG+-(VvRUlmPZ(#Ht3_jD+eoZgQb1AD&S5vDM zQl%`iRKX#(U7<%WRjb-vb`(`|3I`inOv;s~Jp zzSMawHr2=9TR7%JOWBN3P3}W@@Z!P}ITGKS5g`13ZG*e8!9g;ZfTj67IH%v+sAOec(%zk}LrLxZ@?%e)Rjm~AqG`q8aav-qG z=UzA)7?>Jy9H*vvIoBD3`99I`mX~M%O0s-Wm%;Xe$wpWsR@&K*(c%lM*cdBvaVrml zpW3$EWjU`V&WF2DGwX5DZ)=2py}WoH#0fW0@zs%0FXHhrVCRT=3LlqQhRpwgCG{vs z^1SK+u_qU@h_T*Upd^^mzM?uS2XJd}&>e>WY;emU^Q6$*IxSuIxBnyYm5vC&7AhDa zB~7$ldkpKG@VWBC}bfa2jC+H77r{Rdq8!#T~e|o zjl|X;*KdX8r#_Yoy7qBGfLMQ$IH7nMj=CRnyh9NyMF4nej|UL9S6GiLTT}}QNaZ^Ht5|KDFB?5t#W$LTj9 zq-9pHjWW(}Mm@ao@O9CW&1TVauKrm*xA<6CcM>^P_6q=2@8!g@mTCZ|MZLXcT=x45 zxEKLg3-SP?mOtbUmy&FtQfA~d(>s4=CHn<}qhE%o;~mY~RtFpV;FCh1249$uF;%+R z^iexNbin8W@$RhJ^;msC(Qx|;kqp0l@EE1pA?TMUO_~*LXh*t#C}+(T!%t?p<<5ZM z{Vlk71KbTl$TQJ=?zgPuC=~7KSyrgzasBU;mW+*1CiPUwY723;USsF$7iE6E6Zlu- zR>>#e`nL|?FPY9>vTON+)^8mV#~-!;UzDzJO|uyw|>@ z+-=n(#F)&H>7#Tg+oeZAc@bF%02X!*ipd4alXq0U6q<^J7Ov!lvfMb9%lTjI$ho$g zB)v<$Q-R3SCwxB*q}E*%;8kR59Rsx*8~9DC=O`h(c&fmfVH<2 z7wbv7s(h`7f_Odoy(?2`=lI7KSf915k@$XDH4Ca!OeYyTGC;v(-5d-Kiaz#?pQ=E< zR%(fxvaq-0$RB?O#?%bENPUZD{_kLi_L#grzb%w9zQ#`s`tV`j`6B!~fo^QMC>g+! zELj~r_P|)K!`B|8d>9b|=ogD0WUtCFuBB~W`if>o4*io{%D3PB_%Rf6!ptcQYyrNYToPz+EozuUA@Je^ z+zZ>=Kb{=-{!bh0<5V?JEz_X`-dKXSn0Qr{EyJ`-tz2IY0xe0WB4J8E1_Z#B<42i$ zxT)S19l7!={1NC)+#*0xRDg9)^0@2`UamKUZ~mY2`%aF_>SJmHU?xxO)0afW{!EsqbS6|$r^yKEh#FQ<@k%1 zn|*qVCV?@4EyB(mVK)G_%et@tGGcQ#Wca}r{KMj^8)Q`SJ zwt4}krqj=S7Vg*9&N6ISS5$wDfkKKo5A4J{N+$o`+?F8l>r%7>AqTDGew~jM9*~Hj zV=$B|;?TMHu?PnT8;0KkyUF`P48SS&>&p~P$=xLG1?uMSqcOEt6aD7Ek|2^;&DqC4 zxWNfc%dGK)p3UYYFoTXVo0&#c;Du{^TKTyw@6GGh=Foi(kT;&bHJ(u z*%4X!lVo2Mx3w)w>~2@DO}?d_ES{PF8^BmslLc>c!4akR65d3$P2U)zGys~~k85V5 zrL(@V#d)V@-ARwFXrmPG{*<_Er&sU5k8OK5`p5oJGQ?|p+=EZ$sDv~%N3r8SEPk7m zHi-s>2=hg(v8%OwIVrA~@ahwf@&x;Mclj|ZLm}5WJy45zcRo}mOt{{@aN&7QY1E0+ z)xR+O)W;Z5A?9Yh4T9%Fl#4GfQ=V+IUc@hTLLktb`2s)A?N{g_)9zk)wzi2F&oOkj~ORL!i0PXlp zn|eiyL%>=_Mxd$3L>!`fNl;#taSS-$}3%Ux*^;%oFQ6w?RPKkygHvjz;6YlrnP zraTnFhvl3e%0|St*3IB;RE)cklFMCn6s zeh#%RgGZwhDA`YJVXNYS5)*1s)V9ggMd^ zZdk@tI(_>9_OwvB4ac*7zUMt!2q3885KA+!gLmZWObE2Vr3nHzPBYj-pF7BLH7lSK zQq~#YB}$EFAmIvF(}4~E&Od={LsEyXm1PgL>2q%Z4>QFRr}Xt;?J(C9_1dlfW-Zr= zsP*+H?$4l<5|HnW>tJR9NyO}Q&_!}=%mQoZK(E%X%U6v~LI=cO#q9TZZ17X)rWK|iNHOSFXJUS(^>uPRZxb%SK_)@f~@dqsshlM>Zj{n!XW zVIRe;D1dsb8BmvE#?Mhlft)pl0%jfG$^dEnfmPK^GO%rf%oo*mp1+ml`z(VKsBB_^ zUT5a~ zKhKuz6?-wXFKlv8X>;v*dcr%;pfSqMQ5c{U)|y=>+d$G^23Z^YW)s$CpyTz%h-k)$ zR7cgBtBnnY(r;Ap>^JV$<93&)P$z3@LV24Iluhossr|#&+&2Mae01kt+4yG!+!kjH8}BNHY5CgMtkQqd!+If5_D|TK}PgT88kAHv#6slaqWF#&YXT7lmC; zW0W}idOpbU$W?FE|Dx@rxaujM`_zTl;aZm3(jNXN zF3-r58=<3jK%7ZNgz|M|skeN-@%L_sgxI~BuN1Q%)S{36%Yf4WSO>^{&qPML+1Ooh zkLWMCQJm|eJj#i@mk%_nK{o9TEtb>bS|JBFV@h+yVHk1XYnOxArQv3gzs( zkg$ck(YL8!G!~7^MW~~&mY_qQ(*B=3%=^__y4z?EybsY6AHNDLAnH5yX-!39spi^&3A86BZ4u&17asV_#Tk3NiHi8IY)$lN zMfBqI!06o6t0N!01E>JR`xt;$IqJ9hDVvsU9&-BHpCL|v4vxlcvWjv0^^i{>@Q&c5 z^r6|L?&` z2Y&6U-pl$QvTK4ZS@2un70D`W)kOkkBcEiRl+a?w~=dHasf| z$Ug7EmPHFx!so*Ndr+2>MUyCffU|BLzX`>ccin_Qj@HQcXMrCr$#74^9^C&l-g z)>39z#fJC?kW!somDrL*(v>@9f}YDTvKXxTHN=+ZtQc_S-vzsn1wSLC8(^sok!7iN z#IAt@W8^95p1h4S+sbr4AN1g!?kODkC3(xmC=RBOt(oheZDBa~-_*zjZ&^Wbgo$s_ zj)e>mcLF!yx3)_iA_TY<#|~c-8xp?8dgU1c$!=9VP>lN6Ii;iIDWcT?Z!KA(Ac2v- z{tRYrs$j(^WQA zBX?n_O`ukt7|k~gXg>qR;Ls-CM=)Kx#XrXYET9>-E@>DvD9k6!emB7Zpj|?7Wlh0S zMWCN50sC6RSQkbtpXQXLN_^b0>;HRX$vT`J_jJGjWzwtI;~%qhAW+Uniu9!|$qIN)RvmyGn6}Q$TAHJ1-nKtuhm|m zPENj-$lYlApKFHkZajfcN1k%uwwSLTq9>);!m8r4unNug9*sF+hAk z5Ysn5MoQAvp3f+?JEw*$G64Q6b5@&VQp*$lx!6JOW&GDJ=Kpx7KpJ{>7xV04;90US z2ir}K@SB&ws{_!aoJWsE&4x#oHV;cX2Q*YGjY0*T&k-j|&^|ZP7X>bY?4nxtyCXTi zlp2}o)_)R?RkfVx=f?paqwmn<4!9j$ZuO|uxbQ~j1o`cIe2UwRh}^#PKP+!+_xQwr z6Vd7mV?f4WLGkmg*tnm=X%}bXzNB@|Qs$?=)<^c0JEnTaUu1Yp-zkqddt`F1uaz17 z%RQ|N0fk_+XNEBHMJ2>~7(Dvx0qi;v)WOE>dl9a?DI!$%5A7BH;U_mE*CA2Ns@5{fe3%+qt~6QOC+jGw!o2R0PzUw zY4#h7!v#qaEU|dEPM<%p{(-&sSY@_0W0qRU5{Eh6aH{PgJ~TToPVXH?s4H0^jkm zafz@zj59Tg=}}=hN$321c3p1D;O~QV5sXA{t4-qiVdDk8DixR`%K$l$$=2<~UxPNV zAN<%^_Vy3V1}lr_I=>U?)3-krorXqLlpK70(zWxeXP)eQ{qZp_55SlDdU$KVcTPr@ z-2iH&&_0e^g)TsLM8KQAU2iP3Rre z`?$L!AF-8v;nXX#FH9#Fy=K5@k7~ZFe{%X3IONpcmFGI51pG1K`aRN|^Oc@7hm0tI zZAk{Y$sencSqdGf533OoZ;m^*j>)eL0|W{i4`DonkEX+=)eSCV0>w=GAzQS$Ow}v+ zp8EoG!+MdtowKVEK$rls6gaX8SnGW~4`l{qQ~)r3JblD?u)dDmj_4>or==ff;oT$l zlVWWu8#3M>$b&VJkO~gErxQTgo4Qb+0r;y|5u71(i+OO9bP<19N*Lu_)nOz{(}%1> zD`3=4Ut)rt(_;=W??K%Njz;^WU)VIsP>Ip<7nXvmH*uup*mAwNm>IWIa8;9CFy&Vv za4H9so`}x)=_6dnt_FStVSaSw$~f@XJ9GoffO&ki^$;;O(;?(!&wu@n-hUNYY^l+C z04acR3~nEbqk$DNf2Vi~^7pEk!MA@_baa#A){J#P^zu_IJ1J4O{V_{;lyP~F*O;w7 z^op$J$$@i=j1Itu`(ySf4N5D(NtNG8rokHlD~|3YA36I@EFcPRzbSb8{>rn!H&+0( z4woSvX{@8n#m3-JM#tOAoh-B+3*vs;E44)A^)<)1! zohN#w6DqWPql%ot1?vNjnXUNgWX(;7nVRiqP%7uu!rk#|YA<+#!|(AlK&7AZV^c3L zl~FcXKDqi7$oN263Xf;GOUv+S;uhHpeou1#_^YX|b(O$vHa_`>roen8gCE0U?*rGc zHW%;9qW?zt2E`+=q^b*278|7F4K%JWE(e!+q(Tqy!adf4vN|hNQy2DA6-ee}9I@v` z$Yy|Fxy846?qyFtu=4>x&Xo)opHLcu{nUMSRUkFMwe3)`7VdgH;Y6-N%`>rLGIKp;svpRKD3y`Bwi=@!~T3aYtyG5alfYa#IjfTS?=N&c55Glk;sK%BXJm)T;DH2drp%*~Mx9LJAp0}w3pUlh!iS9QSe zYQD~i2Clb4S;a!r8eFYMrc2t%vsMhhZgi>w&C}KQ1&8VHB zxn=DbOmVYC(Jq+c>u>8Lp@QTZ61bF0t-ygTWdK`F>p1f_P_gJw=;fxfoySIJBi3pF;}1kU&rRNPycT(1aBVrwvnBgN0%<( z7QVl;{0aB<{40O})NDT~YNpf{%KoNg-&T*@KBW#pT=4ImvXGqS~D&aLQuk@(iCABl{Ad7s2bd|=wJ z>HV!bv1d{pScf+!F*>*#EXg;>zFOv;GY-hgG-Y?A`YGEgaj+8=a^`4(zfuQ~mgV*^ zI6Xt(m)NEV=leYF9NiW93b#=iowCpa&|E z-`R&(kdl&1Ra~&X5HGLEC5m&X_2AYMfEH^DA6xln9Fy*U2yD|1AE#Na2C}u*()p2_ zaA^SDEYq#0BHw6-BRAOV?4%pEjrhp%SH(PycM)tF@{Q+4)@rUF%cUjv;RR*mN8=py zv;n#wky_ajQfRaiO@J1&2^^e14C^jA#sj~r#+9N6UxsMseH3|E8U@P@da7h+z~lBN zW96^=tjKYolAA>D}5xZW2G^vJ)s-3lWAbtS5Ud~*4Qi!B{3%1L(mS$XU4f&e8Ny$}m zfFaoLxl_I%k$V^5H=~F#K~!Q#uVWvoEh0hH8hZ@Km|0r1u|vlrS$F}~JMM&r(()UzA< z8g8%(z8n`VWu;>WYGJM7jb>Tc%BPRFdDS29BedDaVI!lQ9_2Zb+8%LWql6@D*b zzi1hN_2VKzz#yW?|L&EW*MTr;kb3M@5r?BZ8&y-b1EdAWd^L_bXqVtzLDjEhoZ8lT z^jv>hXOrb++RS3nb|<~5aT&I4a*S8{|D30sYuo=`j0JmKzD38o`VLk^Nb}eLKz@tU zjohQU5JPcuP4?qQt|MFs;En7~Jf*s0d#z`Cl*ahl86ST(C?G5MffvY2D`GE2eFmAM#v)};t5cl22A!%QQBf+o>Yhx8pSVS&- z|IIQ!9g?Q(o#G!shFz1(_I*}fFl}g~qdfVL;+b9YYDR%E{@1S(mCXWdhhG%zD{AWG z?^b7TN(X+-<%E$xa`1|4fCD%?e*?fjk#igmdrjucj&L)J$%bk4zA--J;m10xF^+C9 zjj*CF8ig%`@dbGop(8FNWTctv!EZ!g2pn{C3S){hwr0zhjzY#?uPEB+9~=hw3@olN zzoPicwU$eU_FLz?_;~BslI;Mm-(<}<-U@jD8cRwx0`*0~1A*ClyixD)=e~I;fOcDq<<)G`84##ITqT^cN8wITp`Xw zkM)d@1(EAUTBd^{-;H1P9H@A-{8tbx#C7w+t;x5vtow4Z6{@xv@)PUK3l zAq}VEB5Ez*AbXeS!_^yoDd(Q1MLy3gNi*FY_Bxo@shT|Ma_?JZYB$RyrnuFYau_Z#VDam3uA}xy7OlCtC1Eru)w}s$ZXo8vT5ZSoA}2$)G{mL>2AoZ)$3PWVD{c zYpZuB{X78nT_eVpGPUl)l0?U&KtHUZ&95)hO^h#txjT4{aNSw>VTegeWe$0STN$MS z%*GPt|7q{NgQD7+x6vVpAR;P~lNl8x=PU|>ASh9kqzDK|k{kz>pkzTnB}tMbpae-0 zC5VKPIOLp>%#a3{+ne*g-#O>jt?&Nv{c)>q{Z5^dab#xiy;iU8r=QiUpHg`u;@VmC zOyWfTu0b2jk9soHmFJit7^FN@(rdoE+kK{3(+PTH!%k-2uV*fzd?`Q_S6BNcf_A`C z&k2J4;4p{kjUflm{k4_KFndIZtXX~%>N;<-*%@v&8GakKaS#-Ky#2{I5wK80%v?(D z=)-627*PB{V{zEr!%)D%#TsA$J?ttHCJKkPRoD0u@Oo~>vhNq;6mHUxyaMSn(pL%d zX)?i7u{N%O!z;SbvJrZzr@p;9KJH~qArhVRt&M5?xI>M)3FZ7Qh@WtIQ>yDCh{+U%bLP7a#un`R?jum3=%7`kPer z4GiANuKEzlTk1-70DYzCKDsg7V^)1S!Is#znQt2t9qW?R+faNSBll$?78ug(2lQAG z`cP@6rSCjRDA!TS{7}Bh-1(vi)mxl)r`oY!lT=7vE%a(JsfkmF?#xWM_nHCqPB2U* zB7Nojop{ZPLN-f+qL*+>>o(hCnbg(9qa;5W&EDl2XL068Zw%Pe=m>msz6susQyY~Q z&xCHxoG!dC&ep0Y^-4kEQSz=IRn_IR+RCOpl5pvriHMHH-N!?fGxCdg|I=&AYJuO= z#^CT_g9 z8a+A}FR3%La*+gjVpTx;>iYE2b@u#Ah0G(-m7l1t1J1v);9VvaEuS4VkROE4u-sag zmo2r?t(1V*AB6DVB&`RMUu(ydK& zs54Itov2(ocD%7agf+Xus%!ZA^{;PPUmd=(8V^IeIYhZT!7+O+h&nm>Yo%ER>g&}S zk12sF=AqxEva54C4P_Id;#b^9A2eW5c~2Ra_m&zYh$mAN*qi;2O;`$ze2VdwSR&;v zy|mX4r$y@&d>8s7jG^!0dd=OkEqrCeALxH35z12CG_hH^%4w$$rr_aMyjjj;P$i20 z<3TxwCT!X<9b*k3urZ+EjO3rVC!hE?C}MM%$-xT*sA$gPT`OaOH^m5cScw*eR*qqpE6k*HhNi$aoYBk7LObR`MfS&kGo}TXt?WD zGR-zJ?Zxdmgdb*4!^hgUAF0pBkU@*EeUDbL-px&u7N!w6CEzSPzl~EPoGMFLouzEj z262f&2Mu+Or|;Swhg_@lo$C^`^sPA1s~mP^l1ty0MIVW?Z+UOupN?n7Qs81`zZ>NQ zzh@$Bg%*z|v)64$>rWN^umXJ#s`qm~6EE3GxxasjHQOCI{5-m%pm3;vW;%XG(dT5 zmf5jlMfxJ^s!(679t;o&0~nJ~EvOTwL^wu;C@vze+2~(oLpxBvbUq;b^$Vr}>mJl@ zw@oibW`FCknLPQk>1?Ky5@L;tG1}~5ti{S%Gd7T}BdW4%s3V-;sgeri=`XY#e|JoL zZ*L_fo0);}+WKm=v3BWqqV}@HRbE~rFDJt&?n4InzU4KQz?nf%{u-12Ao4vChv$e_ z1YJ9)3lf(Olhtr+l8{vK?8@y6`c0LuI(~-I2q+%0--CwLk1bD&{)JQTBkOr8BRyF+^kHZ?t%#xa(Ti zFlvWKTWdI$nmiPA%8MRaUO%D{w?6BizoX^*xnFu)Nc7&mK-BXrFW+!2j>r4#Vq*la zOl*t7$HvB5)Y%3e*^)qf6BGsPWKHU;@rjaupVOK&(8%4q!fsKhU6cj6X%vqLCR+t^ zlrn9`x)i=kxlOrAi_#d0+@9@3p9vkhrl@WGrj4L^ED4Xh?);|7#^yp2>kyT&wTiIq zuYLdHc^~hgO!egyvB_jPPzjxrp>S?vg$K>UEOeQbUCqg;s6!+zm$+5|3ei#oCVDAs z1U|fF96n3wIcmUoD)VUReL6R${!!v41t=APqOyzYgKrZ9DH7j86WP>1(%qj>m)oaQ zmJ*%1o~s&NS-YQokN3V@0K)qvJxRF!=y5!&nELLXpk!=uYbK;pVP7uGu47~!kA&UP z6u+hJZ98;>{LFb$NGH$K@s;@WmWene5Np~XBG?0zh4x8vM}E&kxjJP8Kf>KCDm{G< zO`Z#1W<0o9&%G`<)slSt(5qk}%llf^zfgIPmGF9GGeq)}kL1!NWY||PB?O#I$`cr6 zCM{Qt5nzx_ssq^()~kzW{ldP#HHWRXL*)bUS#r=6aWmqw=__iBqvslUs%jX1Xg;_6 zbFced##2r4)pTuh5DGo6j%+<2+~ehb)<6oeYW4akUnqoRBJpwX`wpdw)5T61(XU%j z?N@1x=?7C#P?qvSd!8)JX+s8R5l(H*j%Wut*p49rg>Le&E#JjS)^QVVVH$NZO>YNw z$n=NAo{QTIS2zr0`||o_5SI@rC;P{942Itn2943XpCQNd0os}skfU6H@iPjIdh1*+ zm56pvQ}h3cN$u7!WmD3!!W?yEPiUWf3J2<`1DPu2$&v)d&N1@3*tWoR~sQ z12(bn-F*GZE00U5*;NNn-|{Q1ZYHGiDAL&p-1CK)3BvRekO$q=r8iisv^Zz>IL>^{I30`=Wu;=#^EKD2+Tbe zDL;C)@2UieKJ)}{(sXjABXda3eb&$hwUh%?{i=2P97j(N{vmF{>F3IVx%Xe{xODT7 zqS((}c6PNXQkKwPk(TFD!`3EV@47^2>0}A{86PfkL=Es%ng$RM zGy}eWhy%&Oe6Il?4X1oEun{9YWlmS200G*$5_^N^dL&cOf#Phs%}s{;Kzu`|?<$H! zv9pQt6ZFKjehFGi)SzcJSgKv*SMjsN$7A|xxBRki4(jfj{IEEZCLEVLf^fzuqKG*a zP<{?ObjOod&F~xLOG(P=Pi_w>Ul>f@&?=PAK+Q(I{u&56eTPt?Qd1RPT0b3RwjZyS zWbSus`DY=j!D@z3l%X=Kn|GdoD~+qDcw{1{*!vbT_D=fWbq_=lI&?^FRd2iX0lD$J zE4IO`ILTSMb8nzP=>Z1=3EYX|wJUw5x5#xhxw;unYkG63W`+={M-r1N_Ki(EUezyB z3DS1}J<1K&IM``%V3&O7u_$ziT;Ir%{rdH)KTlVkb7gpDt)X)CRPcfVxP{>03&tU5 z18ldgBbL4&*qG;^OKaCK5!QSsGaNu3dl;hHU)}+A1zCBZWY74tsN;}!8htzisiz&X zlHfECYVAfo;tU=$Sr+bc3xbvlAhE@H9p9^i<#f<1o&KKiA#$qI4`;Uf<}u2pG5l1g zac=W?Uz`NXd$UzmT_}ynJ6_MLbvy|MQIbFPhjTMB=00IB{xY=eD5vam1jBEi#a};z zE2pD$V>Mx}pCws*c*5;77{NWTY8#%U zd&%~3e53Q@H=7Ywi5`eK8=V1Z&#i8X`oBHP*v}XmgPpdvmF* z*2>u)QcWX1&-}hV&v|~@b>A8q%qu%f07WvB?*PRvqRLv3#HMh};ocFsRc!36g)e?; zhT?zYfw#|FV7D!?*eQD(j|}k(Ulvk*M0y$;iIO6#_t_nip5ES`Eoi;BgTKOi`&NI+ zaSfNGZO$1*!DSL=~ z_M*z(oi|@kQ=P7Rv&}R7Mt+JEg7sY2)Dr!6DmD{ivkP!{tNqSyfR4c@g=m zoqQ^^P#&^$k>oDyb(F_@akst)+af(!)hrXJjl(j$XhY#aBdA24{Ovx!>UeC5{+OFC za9(d3ocmDiw3CG*5I5A>8-L0J9+uQLG>!r+`RKtwgJT=r>^{77^hJg3C6EEP-L~V7@hx@FgM%n+ zm8n1TV^;Gzj)Yy&KSn(2SIHkXIf$kI)-wsQ6M{i`g|Qw+hx>ShY7(}gy86))h3BT^ z_)(wy$FF-A)M>#9A|VUg)3#C40s8ERiW^!HpMh-a%l*2hdJA-VuFy|Fq4(LrbkGa8 z73ru+R3TB6paqflB2`)Xnnk7e^-0_3nv#CzJHI4)%y&t4U0S#{TI}UV9THk(Xv?JO zdVAy^0V=w_4AM1Zmx+zN&%=zCUPi0fNk&~=lNlCrx(FBLN6w_EAA6>rheof$Mz928 zM0A-%DcY7+5rYL1zZKq>F`DR}D$#}*(%vx~NOruJEudaE69i2z-!89sk~wXe%W0tK ze4RwmIca*Z)UocRod!|(2s24a%xZ(6X=7Q&bNh>OwpZ)leO)~Ao zQ_D;CbL>X0nXbAAb|r6M9=Bx}Ib)R<<8-+15+Wze9SB)}VHrU;2+kHkIhhGqHBKJR zEGde#0V{7qx8QGrt}2aVFK7AXBGZNn|0q**b=g%UcqJf2_b*3G^w+v+>C%FV5S5d7 zCmz{fbtOq<5wjSl(c`7Z^>X_;tXJ_)TTIyg3AuZcA1S#6fW$v(vBmk4Ke!p31@t(M zzHT^N^F%}5=;-lw*wfbiMC>#7X?JGw4oIZ0hs@*lyA`sdayGwJO%J}6k#FEaNR%@v zsDt@@=+G&7SFh|FxQr;S46n`a$MlV^s;>U=iJtCxyu0u&9Z-T8Hi`1{Mj29)q5kRa zRYBE8IiDj3mr|m?H~1WQ)w}D?dT8|0W)b((@djTY7+LdwAEEO&?QoSewHprly|&= zN9*kTp4`zFst2xI_+Y(Bu0Ma;6=)|r{g)SC4<|}Fm=*ytMW~1ep9b3*$XAQ+u~~>5 zMCc=7i^)ewe$I87r*6tIRBARp(l{u6`uiSNvghhVKdw=#ne3#c$@KfaH0YK#;lR9U zXu`la%q<*D{Fm)-t=FNlK#Co|)0Yq(c#TLsCA4eJpDgUz@4eQdAGXS`0-;Qr%Wp%E z7G@_C+mYi)U$d2Z3z&Mk0Ae3L2!B2WClLHO`IUhdfKZ|68x#Gk?W-ttqVNQ3h{g}P zOXrIRD}LfUbW8I3@QvT+m((`VT4$C{FohLsD@TLWTIBWjWeXISNf5UPQE~>WOFkZb zMHfz4mR13rQ%4j#d)E8`@n^d?@CMeO)^yTXAv`%8zxF+CV|F1=MQQv4-ZaX3|nOiwzZ|7_VPolCP9 zs)Cl-c@T3V_f|mqACwG<;(JF6J_gcs)R{pAts`M|zvHt&Y2lRz_Nvc{a%9hok36s` z1f2Rm9KGudi7sqe{$MywN&i4HRC4+!#^JfiCuT@iXQgvH0IhEpEzIQxEY?TO7L-&y zIvU3NE2v0Tk&%~7ar3VH(c{1)p8v-1tQ<~S1tZS&IQ7BpH#`Em*VNl!(e%D3wAwfK zCwlBqASrTZLGIJn=DN8g%nQIx>#~E{3(ZenX*oX3Rc8uso)~PH`50geMuX#E z-Vl3H)LE|M@j4N$@5Go>Ja%Njb8}F19=f-hG|~MTDCuz7T__q3!Im#Nx~#=O^Hk{B ziYRk%mrR@-Koj;*-YYA1$Y)%jeVu<9bW$bkFA+lg+1$u0w*o7BS{v?r%&42zqZ&Wa z1P-T&QtA>Br}UeOEF3Fn%ZBQ^vZ{874pjg56?=V3|NT;$udr7}xbJ6FRMvT&iW`RhfBOu`_UudXF(ek)dQ!Y2Ed7X3~bfjkkl^G}LzOhGq^{C5DGJDIs zcd{ZQE~-mWijk3jS$4YPWO+2K?lVgF6(89C<->sf2FXA)on6yg6C)Qw6rQGv6jp+F zDKJm8?@VO;x6OD4MtskU<*Am?k(Am zR1tMr2z}NoY2U&l9p68Fnj%QMET8u7iR*4|4w~+85SbIZ;vVnDy2q*g(P;#gLGcu5S4eckM=|tUt_TUR|+)R^JOR?5uWFJ4- zwNzgdl#J)p(!t{+O7G`#VBvs#srKES?wq*XqI{fq5;sru{c>p;BlC5fYmvQ1c^1{N zi`ekVFb@4J9gJa?nB+iIUPLDzKRw_1XRfO&+Bn3`@U0u@M~{yfEemYGZ+klAiw)nz zh8=yujB`tL`&jAkmQ&f0j>BDW6_Fg+*yQHxn8&rsdm4SbBlD&dPMw=$?{hsaw~VpG zMr~HyE4<=LO?9+jue|?u%3L`^Q)<1+p$0LNvmKFXswwr7dwYSUm~(M2aojS^0`2Bt z&#Y#fi-S)DnR>oFygrAgf;Pd>%0@6=Kv>vR((CEdW|!TGiSzqgp#+9p_rduu9^22x z`E(3iFGw#xr!Me-p0ge#=Mt~=mBxZ~RODG!x(tec7Pm#+6t=FV!s_evdY+nh{!{g- z1mg^ClhWk5-Z|NB{NW0@E~&JSDO;2qKP*EoPLNMdzDG6kdv$WlG^S&SBJ;ERLW;0N zV037Zk&y>WzopQ?>|G~jr^Q;zDd}M$VZR0Y>7SNTtn$TKRJf4|Q<^l4XT>)3m>gYM z`L(3$^M+ModCfin?XY~>>(slOc|*Z)b`UG>aB1s)cw1V0%~T17`nJlcQf;<)#}QP# zz~**TT0(tdz>;CY`|3L7C?lgs#A+l~8Ck20Hg4;8Sxzw1dWh0jeMOo2``Zm>7bS@m zkvRT<7Q{sj5(#ccj1R?|jOXYV8!f`QQm2P_Jy+c*ZX)J$J;p0} z(dEq+g1S$do0~^==5remEd}F`XO$eR2E_$)E0}&je@2(OKm*N2DRt;?R{w{KSI9RX zdLG3NS{oLn#raJo5X6?(WJ0gzdO0r77CO%V-i@iO{uwjmqqEzL(G06v{K)EQ zdE4%s&ewhD@SQ7)>-;78Xy$Ti=aG~KMl_l;ug^IQnmh4^((B^PY)U_*f)tW*6iPt!@=v?SN z`OP>7byuwZ6UimlC!g;T#oCb>?0gbQ^|DY=BZ0oH8a$OOX;JSt51FgnCJL1f&=`W@ zezfw-$Yjk_Fo_(ROKmT?Qk#Bgsq3G96Y@2ExbVG5;BNPn^Tn< z^`SS}p-1#r~{$aqYKK10xGdEwsq;XSObWxL;NlnabI-mow4m?qz*A^XeGpX`1c}2~1NW;;!Sx;ks~1p8CWxzW7J3nxFMa2 zRa#V4FVOX+Sdq%@+j=gezE-Z>|9sptanAwa3+cJdrWUWaD+gB&I&|E=I$S;_lv{0S zu*NhF;0P_rFy!~&@j*t4j^`j}`CnrOaW(!WB>Vq*ly&6r*1z6LnMU%*f4wDj7`T#u zz4aG&@z1vuF~~8JfBlx*F$7Wn^R0G!B(?eHTmN%Q|1(MlJlOx((m&V5|L<2^sb5x3 z=@G`>_ng>PJxA)lOPjFZ6K4Wq0yn8S2 zF@>XN};PF}sEdG<%WLpOyVzF$gUe_$n_v(XhM$@fv_2V{` zdrsdM9dm!g4DXr_*kh!Swyw5~7otb@@kyEr_f^Y__3gnkVhcJ z_AWN|Db^VH(!ZV8Ea(gWpDO#29?z1I-uN0iS`O-H&`DZnv;^bHy+6vnPoyTZCzw+* z^+8yg@$YMb4_Ey?JWG0&`lvi3hM9O``$jInpN8_15@@}biihE0n97g5m;=FMo4oCieqY0CE-5*sO z6G<^k3gZ%z@4jg*$VBzD=gS$~9td>-M51QGFfua>u*nDu3lqwATAhMgBXta3Q+te% zTpdoZt)cLu{^$6bkN!@)e(&oe`Lu{@bY~z;@k8x10##FbpFUa|D!-R+N@Y=a|FDKO z+hJ<9+OG|4fgJHJ#7)sWOAgO|o_*mM>OkBr@%Ih?!zWKJ z;Rb(2a$aXMsYWuQiZ4nxjRyZ3ng3on?e90rJnn2?6Q_9jF(O1jRP@zas|2+OG#1`< zZZV~S7bL<~eUBxProtKHLlwKf|e<+hO2Mb)Xx1 z^eALt=UQb59+HG@Ohbe81|N&qGg2G3ju;fm23nOu@m0gfFV0+2)c0}Lr7C5E)sr3* z=h&+`p%c3Ybe^n=a~^uFhTiEwdEd|WbFNs6+v`3R;0cQCLqJx}N7=ZCE8g5sUCDHiuO|F%SAyf6Rb zjWA#3s{u*r9k2i8B7m)?IoNXghn@W&0T;RxI{J>ZAu{_e2nqFqlDi5SI#rI>>&KVS z1pM8sE_DJ>R0Z3^92^`g8%33@mffGL+f$WSnksjjdcGRpJglKYceZHY8Rb4SzOsS3 zreydK!f2#;g(i_l8+wU_h|gW(0>KJc!1aKKW5rFu__uI|1V=8z3KmYCoLa<}u}FIq z2diD9JFDxsB;qwLa(|~Pkf%b_@#s7o#VAaC?OOb%B-ev)N9VD*4Uhr60GjENV-Thc z2iUOzF#}+MjP`bLF4(dm-`?I{C+Q=)Mq8cblsw261m6`%i|GmcYbnmrT07CUW(2SEga zbvdqkd)SMxiDoz4o6}iI1+@*4VGn_LuN`yH49HzHvS^f>`1$4>!m!zPY3VSc3CsR6 zK~OnTS<|Is7%Z_^Op=_O+>>WQd69!-I&>QuBB)-Hsls6mLoGpe1R3U`o$jJ<^Cx~1 zU&vY{g5q7n*f|nN9588KW`pO>40x=yxZt5m$Oet?N7SMC1O#42m;W&leKzrPmrr-8 zTOs*50QSgt@$vNtxmQVm>NGPMysn40qIW6y%Xz)1J^VIGzyf80xbc zWF|?%zVqAP7M8>)l5=481~8*qxo)&xkiw#j&^I&BWDODhnJ1s6I4k!vX=EFN_F4yn z@!SWg!xOBY>uqh|EPJap-x!R64)Cj1@p-Os8~o-{C>a@95)wAohM^z6Oc3e@1OQ8o zBTBhMr*~GPDt%j_c`qDZTvN^?H#CKDVwc0~0BK$Iw$I5K2#Y&rHSGge3i3 zf(@ei?sS9Po5se*YYiTA8VLbWJcewyZ{IH5B>MS6KGz-OD0o~Om6M#o_jKFCDrNk9 zzwpXVStVX#!#O28-Hl!zd2m`FvLBz|{ZC{&h*voVxyH~+z2}?NgTopMZov@t84x$5 z3epw3kQa&rxYBZ<6cWkOAT{fS-SK}XSgf29wAGro`NIR`zEkZORgCA zWv~?%FrDj$hV1ajH}ZRH0g|Z#WwU#@R8o=E1 zKgAt`5m3xU+=Wk=y32NxAt;9+AP6Rmm<3|qRy2B>9{gX*%gg6{!sfQS4EMUWF=p|u z7vu2*(_<+Ssx`Mk+AEN|G#!4Uyb8pwoe*|CqvyU)0m*~Gh?PKOwh-`GJd+f-{PSGs z2zB?$Pa>>HXo43hItl#II6HxXS;V?_eO+*4X*faL5A5)DrgBb& z^>}@7Pl>(R+-7gD?w`T3Xva5if4%02e^qFS9cz%;=RmYOf5*bqfi;rq2N{c0Y;cf&Fey`@ft#MjC}^3Gx#z)7+LkF zxK>iUxE$R@Ku&q&4F3;=%bCgk@GyQck1bv{*NGFz03lz*%gY;<`I1^{{W!9=y057- zam3mZ!;`+tG(&I}tQI~)41g7%J^bc)PTArInW=ha8?cwygx|;2$<(B`&%?rbnH(a1 z1O>r|Bj7B;TWo=O1u@%vKLOt+HwWTN^Pg_VKpikz#>Arx9PL++?N!%JHlLZtT~aig zL+(7NlpV=#DfPEN4rOFq{>x98z3^l`L-|(q=0gsj0)HL=E^WVm-&yYkp$NB;=ZBMu zDsb6tfXI?z*{gB{ual!ef%iB#$*_^bu`>&@6Y_UY zdCpvC575rhW84Gdzv(dSxhbCuo-&C>RrJh{QpcW|db)9vXvz;zWkK#5FHOiT<-)h%_hrhjPT z+Y`X>ZD8`JKorSye|T$a>mV>e$ew{-^REmx@}lKo0Bsxw9kKHB-PwUddyCG_V{d*E zpUGO>+X5+#{Ry@G^Q8bllN;dJ!A>Yt0MFFYs0A5-&^*TQB@(YH_pyWk>x%8E83b2D z8dWia-peJ>c3Bk8Ak5(@`9DjFLdA2eU}A2Ef#=b^;W0*&@G5@0*-Qc4QQKMqVRr^u zi)j%z++HE=&)e?aWTmA#c1)px#a?9{$TQ)cl~A-K0bg5tV_l+hO`En>RDj zP;Q&F&|l=tTQ@a$r0T2+FiLhJ_?76zzLa=l9DpOj$1UJ?O%GIDm;0T-UfkQV3+ske#MWjQLCX9XVwu3F29Ei*hNno)PMf-&I*;1{a=5< zoIw%&_b<}^DANDF-eMs>{@>Rl_T;kveeM1K_JLvwhuL;{x14`|H+B0Z4R9&(Ou<2|L z>_K=6fELX-31_E_H6VJ;x0Xjs_cr=z85q*Rk_Os(PzLfXB zyL^RzImN_uC8p)m1DkTKmxrmfot(bS&CN-M@CXTM!EET4I=nd_869o8vpzf5mh3Ml zC&yGy|GG>{MS6RJ2Ddb9n3$M&;1|&j!{d0br=LMB7g_ z^Wp8&DxS8+iiM|u>08YFPMqt^hZ)fpKXd09k6CwxDRI=SiBuT$*oORI@Hu$&9M_S~`!D-D#R zxZ02p=jco1V*5($)BKJyCPi?l3A;*$!0^9~js3H#&p!1?$wr;+Hyu3UdWq1&i zTFJRRZ%D`t3OdT@_b^_R;=p^&L+XSR4_TYW%tIoGh3Ht`O@fT$;h}@&$8_oPWu@oOpND%r82S~l zvkH#R9Kh++_S~EW6$7vA_Vza1g9a=R_?J{L@yzse#oWsM(!L^_Tv!B8mPe|^pG~}K zD#XM|q!ky73hcgm{TdD_DzC$pGm4AvK}LMn&8<}2aqjWA*@2S$Teoh#jf^yjhapy1 zQhMEi0UD@fHQx-A34Ygfi_c-^j_3aN^c8OIZosp&%*>oheHET%$XLVdx$Sz!O1W!O zP*8}Y_rLE0>PY|iQFhp4Em(SY`MR&azx$rP8^8UOiiw$-C7A55mX^ptYaKAtc$YB> zrONVA+pC{pE(J`R?<7cj7Cf80MN3a_`NNMYAT%`kyyqSc>oy)NB8cAixO(r4ETH>e zjg4;xt(}jQ3P0`nxH*g-wls9#_|pd5Vp<5RgvDr$FW5vh7^;xxj>92R(sVGkWQE|> zExLw*5_=)=;9Z@a>1LRCx9K?N0@pQD`P`l(kvkpa$9ZW zh>O3r=ZVY_HWG1^AFIQ|!;dQYogarh#CjgUCH8Yfc=(uR)SEXC75M?l7@wl2FS9b# z);9I=_h$|d0)4;Iw`plrMThlheu|WbszlY-OyD+YyP3QAHMAzk2e`Lb1}hwRXGVK>%G_7K+J^u{=@a|E!&5 zH&#m#Ee=r3@BBGo;ciPb%%L#;S%V!H%#MPURknsJ{LuzW?Rxl$lP4dMl94f)o11fE zGcq&zAyQH)DPZEI1~;?}xf@>v1quFYYSN#Zn4V_V&gu$#yuLWtpXx!_-}9@itUS~B zPRjjTe~JCdn7r}&Oxu(|R(iVamC9Yl;uvNaqpDzU5n1@@tzfIy`m5u?>5ysG`2?^N z@I&9uUltJ1;N#=7?!T#^U@_JFK0F1s{UjFH?RM79uj=OAXipW98FHJy8j9EGc`EGd z>nk+zO;1xtXZ|I%bl7>^Oxurv@tQYvkJ`rS0=p_a-Idyt9Je5iy=PG5dN;v`xkKr~cG(aPfj(yDm!68{{RsSHplP(Et+HZMpieko(5d zBKtJ?K)UmuySpCt#%qlc9ENteuRg(B z;+{JNDa!7zT;|e%41g6Jex6m-R(5i7k}X%vqBGr;bsW-ODL($+GJI2INDUWRwj4PyW=(q`Up+2SuvkZ^ObyR-8GM z0G;1;a40zMN)-mw&}^3QVORv-1X?0;c&^{%+F4q#|NGX#{N*wrNQp>L)RLFkTaQRl zX5T7$veJ((VXX{iXJg|ItQ%XIhTKnRo=w83S#qe{y~uUfUuHMa)uy$&!V}*NYNBpG zE%h6oH8_RbFSJNaPfwp>93Yh87t5rg#QaV`IB4n1m4I3g+`Vo{W)!e%!c+LAN<%PD zW7k}R^2hnT=anv80EH>IqZyzaqRzLxZ-C0%H1xD zi{FRayI<~BSYjv#sOOoz{RRE|FEU^gKy`sdrgI;*)MxE3r!>jmxFI+^5>wT$u0&PG zuhf#3f%###-||67`G-HX&7HE55u;EONgep&fu9HH(EB11d^}x}R?v zT=H;x(gv-_FG3le^85Gii-(vY_u&m~YHD%>8b(aSBxB2`q8*gZlRe$%)29>9K)yj_*m`K-b ze2d6%v6b^VN(zcM=i|g3e_57a_dli|I4bxnUdmnb!2?KCfqpHu9er_rdin${Z7PCL z)H|lx;lj28f8pm3rzIuzNXU+coreWr4p~}Xo=M<&^WPt@9igIfG#4szD!xJ_g9Ub@2^fWZai~TEYH`!f1G?Mc2)Dt{bU!OUAuDSN`dvDc<7|AuI`lG9!n(mRUILhWh13_ z*hat&IuGlYUqcYB2+3W2~*OzZK4{SNzeJlD_mUwzKoeK(XBpP_wzX-%O8xy}fK5U2}zt z3vq@Vv+A$9%A9S|Rv86Me_}9dj*gDER8%?v+CW=maPisqzSdZ>!gGu$)U%z2pRzQ2 zkV|SRD!#hH$ytadcqyra(F;BPc|6q0z!RrMOGjq`dlQg+7ir$P^AQXT$UK81$BuPp zXrvXu?^_Lh*9B%=2RsYojn1a#=1y4An(FG{$mz_%Reun*OG-*kHp%aGSf9B|OG|6s zm8s>nP>2QOY4NQb0rMwLBqrYswHW&D8u04X9YD^_liwj@Y@SR+u-w3a9;>v+J%G)3 z0n|X6n6k9Bn`~Q<#KY zz=gWm+Q?0ETLD8ZWHTh0nwB;XxSercy<^xL;7kP?SlL7*ux@3@%y>C+X!$Y7iP%z5?dZL`+cHUxkH7B6zN5{~J} zGl!?EYVo=71%7%Hs^9S$$L{|z-{!n|=FA!7X71j71IsAQda(5J`SUj*(k%29YJfMu z)ll+W;^D!Jvz-EWcIV;4MDV1M@7|@qdPNR^?-DQX9r!F0?9f2{?5LB#2E+mb;B=To zZ9j@T{kfFYwYHg5>M)yB?!JlGLqKq_7A&I4rKQ|2UwEmQ1Qih^4};g4qhH23v>80L zSxG4W<5UL8YgdK_$2K0%2^(Zbqb{n&dzAanw81je)YME#NjdL0*Qo?U2Dn`N)~x`L zIL!v;wB8aAD_|Z{12;-P~BglLx$*bPTku!Sne*xsn4153p literal 0 HcmV?d00001 diff --git a/labworks/LW2/IRE_trainingAE3_min.png b/labworks/LW2/IRE_trainingAE3_min.png new file mode 100644 index 0000000000000000000000000000000000000000..6b971eb16df5a08a75137c4c0a8bdc09568b0fc5 GIT binary patch literal 86895 zcmeFZ2T)bpvNpOv#RMWMA{k*L3Id`a2ohA1B7%~$5>zBf&cTf$N-_}y1r!CzAUTT? zM3f*=5Kw~ToYUfUFWhIJeeS*Ws{Z<4{Z;Qhs?I*hnscr($LP`h_19mId&(E&sJ1a| zBM=BwXXT|Y5eO7g1i}WkEfnw<*LNw}@PDFqGMaWOR#)vDuh^In6tCFbG`F%dH#KB) zFtM>UwX!_MCvb%C$YHkYc6K*yMfv$H{&fYPmCZH&CpMZk@RY4L<+W@H1nMjJKe9KH zai#<^0^zLmDOIOuBOT6RMrzL`iArjYv)ej+sRY^DxVg97Klmr*+o}Tx?{DDn*LphTMmBwdYDRZrdU-?qikUN$Iq5g!K*C1S zFCUr6wvc{#aDsd%=@&NJjclY}q<(FYBK_j^nZ}Fs3*jjTz7hN!mHYo6g!AzK);Y>d zS{^Tvl$c8oDmOD&ZqxK!osEf!F`DR#36cnRm~Q)ehfZH)L0DvIAck?N;IXGC%mo;d zl;1a_AaRP#&PrmVnUCfbc2Lj}BaU1-ZJt(2F`1xI#7!LSBJvimt&UfI3g)S7@;SHG zbVGS%C^0o~G^a~~*zZZ?8Y@{N-fyFxi0E3m+L~=ToSc)gaN+_y&)RBx|L3PFGbdbK zU3;2!tO9InPH+W^4!vnLjeBm`peP&=uM#J#p`r0PT!_b^^~&9a)=G)J!X0)h!QB`^M<);Z4s@ z*mkE^viSM>%CR`V>hBp_y)wy<~N@mCN@iH4y@`n-@ay*xF9!Yu< z7yEk_`=f%y#tV;;reLnkEH(GXpWC}%^ShgF(Ai3;W57LW@gv%M$NewDU2YRD_!9bs zB9=w7%}(9-xY*eZC%en7KkmO<))#7^e{svyFX58Bmt-Gu3j28bgbQyQ5T`=ZjjJB{ z`nFz;u;^CuTv9pzTr_K_e^c9s`?NgW_jywGSue}b=?RVzj5EF*PrTl~*iBdB^m+Mw zxZt7ePM6_Un`&O84^+bb;8^_j^4@Q^Ea2VCug^q7BmDj5nZns*tAGfrVy!LY1Z633 z4s{e4M1J0G1#^)7-r3c~N~dRc(QPJ%HDGLPY+!smD9B?bCcVpJxjfUf;gieQh8-f& zKWVo)cG$Q4==(q|sk=}w9VoFh;FG%gFtobw(qd6&WHo=uN%d5HW*QomxC;S7X3f&l zWkH@RJqv9u#d{wgP)t}jVKAGZQJzygo1D;|Js2BNQNqw?kdjga@3>;N`9xJ%9e(`m;b~nMUzc zaA|v_^RK75Q=fPm%v9;8npkNzc;6ue%U|%EeOl{w;P^M=$G*N!Kkv}NoGr*`f4T4L ztLN~IQ(|qgwvw-4tJgRM`Gxyk3r#`Fn-Eon6^QIcD0stR4$LYPYvgm|m^g zmJ92#eeYrUoKpmXVnsbWfgs>K)!XVaoV+}Cpba_lZ3N8F2_WaXb{4Vu=hV2$P0XR#tXEj?Qm%4J>KOujniQVFZA`b!d>yXZ`Yy%SXX{*wr;#AS3cKn z#mZ=zd&SP)zMO*5e5Z~@mKu}oX8~)lj^J4azQT$3k1Re%z|Q&M{zxTbbuOnQ;KL5F z!}^o=HOihGQt2+|_plzxZnvCFwsJSq98f!#UZU{ggzYcN&VHE50AF9ONGEoQ8N z<_D_Dhe2+CWW!~x@DHP@-YU{99?PS2T}#b56mkCCGXpU}JBqV=UFWAlOA4<`MoM~m z@alWW@D(p~mkxgIgv%<>%dC!juKlR>oJ}++�AXpKu6}L*EA~gp6bnY*wkz=CiTJD_x zq`!gF@Uqmh|FIh1;^Ja$Vb||Ou+XxfcUf6r$1u%$pv`=KE|zn>Jrq1?bqKHDW>&W& zxHeAh?VWoi7ps&$X&2`05*HV@UYV?{oG+d)x{~AQ=vb*J+_4AUGAy^G?{G>1-_+@dZ+?{OuEUpw<4 zyv82zh_=rhJDn$|qt*&zM}vHGhY}LI!;Avyj|=JQ6Rj3nN{B)pa~V%G9NgwRgMD zJAAjU6dB9yVK@9SGP9Y*iH)5dU3}|}#AKfiVXZH_Xso}PgqFj!7nhzQZry#LOb4ui z9lUxu1cGUbChVxmxx;$-f?!7_r0Jm9 zK+E7dUgY>4_7Z2yfqg;L?gMA6>t*OA1hS^2zTz|QBU%Xi*(^e2e#0Z>Ol*3(Er2s zbC`h9gssbDIUTk7A55@n>BObspoQlUA)OUF@7i>@O@Eo3_&_aJCe_zovf5rkMI3<* z?fDFXIgP*(D)o%bY=Gb;RtJ@+Jv?AaLMs3d{d%IaiBM+@xkl!b4#zHWI+{G+kI!9( z;yK4dOO&L0J?0C#0+yb^uKAI+>E{^BaTslz zEG+yU9~Y@Txg6o9bl}3XFh5@~Zst&(bi?wr<=L5;-le4_iqt6Bw0Tw@(-C>#X60(PVF(_UAoL{-*{1Ge7c}()p9}tmZ3&QdhCmphwT{5KC43s zkx2Xwdw2HA_&hG?qY^Ral1ut?Z$qh;I~wAYYFEJ}eV(14r!MFM?;Ft$v$}cQ6@vB? zw;H_RgU376+^-K&`{le&##P0!aI=&u z_k|Cvd`r{8JQ}|c^py6ud9JP60#2;+UFHSUIA0&+VK?CsVVQ4gIr#OpOw_SOeaWeh z96cTZS#~4ol{>Nr!NTb0GQbFTv{QVC_coF+n99gs9xG^xZ#v`R>T0Vbv1mMYO>+5L z+UQMi+4#Nj%j25~*M+#H2!yuph)^KN?kkjlO@J}zlgCO{i$0?t9Y5bPF>3jHKbm>c zn}DW;@BI>VJQ^wfzP`LU-;bui4!&ahOOEpJD+$N3?--o(Z2M)U%V0mzMJ<$Z$%+q4 zvcD`TkxVIG8ft|gF1wNxqP8noGsjYo$#o>16fetaw4jZuI{xnQX z&b}|>x3@f}WOYVBI}&<_$z05r8k7 zQ$1lx0yAnv&B~@N3MVT_PeA`zIuxm$3m}i(FgjHaR*|FgL*XHn*fO%sOglF--IS`2 zih>NmdTn(cb{Xeaz{M=jpL2xzKNB#Lbz5%l3T#T$s075jM@e$k4l&uiTDM=vgj{51 zGr-p@R4I8JbrR1Tlanq}(4TsQ-lZE}-a?vE_0}`@xo;+tYh7!^c@g45Pj&IyGW?Et zNJU{+h>qn6&8$nGVE3RxicNI7%JmG?o=Xi;+zfTAjd2o9X#``iGmH;Z`fHywijT6d$cz5Gy}Ns5x;6-m zihpT&xd->I))u4I?g2IvB`&p; zR1E9S=ZBx14=tW~{b<8H&4&Go5`?PxCT%B}3N68vk77T(HW<#0d`rJx|57v0#^gKf z1P=Y_RL|96r>QC~4tB$(nZZd&QQ~{26(LEe5gkqn-=WHHP<)b|9fHyEAy<*`&d$!# zG;_c?ld#Bf*B2hnAU3-xFuAr|vSxOV(EEuemC3C{f2EtQ685}gw*>Cn%^M!z=YIU) zjX6%IUWx=CCo*0*{mHU+huDa+I^k$IwcC#klL1z49I;AK`c2aWf^jgw=xC}x`Um*? zgi@UqagB`l=Dwe^%)GXrT>NKH^j`Y)VjjSlvhA=>b_BrM`aJdv#u@39oBmL2jmQIMP};G@OT7@jpcGg!n^qH(^RC+CeqyYx;yG%CnOpf2J(_LnVoPIsM)}23`qTn8}050G2 z=8Nepvz7`7@3fFWvGzbJ;5%I_DVYKhZvg`P$(JuTkurLMK-$1!Ih}#7UHWMHGgt=e zHq*GK;)_Bz=Q|v!^*h1$SBpM&4b^j?pId-TgqfL{b9^mUxF|kfw)xa+i=|?6Jq zx+{v*&~4j+BPbFXi1zM&q`-I2_g3Aj?*wBQHS1pArgJv;vkD_4BNu*Bd+v)`>E-Gf zjEf2cNO+XReWre4dSH@uD&`2uHrSoRDzD(*`hQ#bu(sFPQ;Euq>>HbRa z-FpEbco3(fDr-H7(~x~OCF;`_jOCk+K&-I-acgtM(r~K5%n95(rPXjrR1aKeTRy7! z*0^dxU&?!BKu(f@avt4x0E2oFkTR^4QWzNUf?V!|A=9s~&Q9KEGtz6G;o_0fuWW{mtb!Y{!IV|(vZI#S(IvfDcw0bW5 zyc?9?YMEHY@4-T2Qv1-rsU)3ZDel5^ZRZa|N#Bo)!`0RUFYfN}VdZ!IR^9#iSgk*R zCDQ0Mi(Kqy=I7=3Lj834gh$TL04xa4w9gz0cS$TCzc80>+7KH&8#bBJbn)}dU_;M* z$(p+xKl@k+!4xgP%hnN&P8)ma?n0G)id{5L;W8At=&`e{ifjL4n;G^cAtY0LG@V^2! z#R>L}XMH@@W)0Sa_Bp9dSp|vDy%{u1c#VDo{rnDnWC4J^i|H+a7_%c~d6&S+lcuuE z0Qi3NNv`~)K9mjbvWR4F+xH4aD<%M%!kbfTqre^H{R-csqbgPvAN@(sc7NW-xmRZ& zA7%Cev`yt53OJ_sV%*YwUnh9)p^jG}$IP0ON~@JlPD*P99h&zD{>0x#jDnzJjV1v* zlm_S>4NT;{=NBQ(+SmWwu`{jG0tj&L(8n9rv@TkBSp(@%4)7p{AuD$7QG>1c+RF6$ z_%t^FOM?8|Zt#uOKfZn7igL60wtek*1{j;i#1xvGySuxpgnl_T;?@co+2MwTV3b1uhC!;pRC1IjH7$VxW|=0U!< z?0F?-K@Rq^@$HAY!WmyKJ6GtrR zyKl?I;)y%_jWPGsT$cvpHuGEM{`6UYg*OoYA@@Tvv$PsG8{fp#V$q_C#*ZZ{)g@)U zRgXCgFBkcxbL(JC-wcTT$81i~sD-_S0mK+!hIGw;j%p8%Fo`nlGh2$~Ni973xQVRk z+=W%UFG4N;d65;s4L&=^`K6$9Hl?&0{L|;OsL{98eBLkK;p~?zl=I)15@T!%lCy;y zDAi@oKNAtK1Wc7Xn%(|sX&(20ckMI)leDYDosDf6eoL#ti`w7k1>_=u6#`%y$BX6z zJr_egfvT#YzxJv%ybVKIH{_BqC2Pd4HAZ`8KP&fPoypLW6;5`F_qQ-3w6`)6;P;q> zd|Gm`_p$x5c&bx54+VeFUMJl9llPR|URsV`HzBcgKtTHW-V(BV@Xz|SE(;@HeYHN^t`vHr~51GFwWq}eTwIogpQ1*^a%<{_tYcYIlJOyd= z=#M_|48d!F&`Rg5u>#+dogJ8D=?gNB{={JAAzv5?d>~eS6y$=a-#jB%MmDePu zpAHNT(mRv@!@{=%hPHr|gl4d6GD5fPRztr90EV;>+2yL1zeEW0Ul5;dEFA{Ie$98; zZR&B9zeV=912FCPA>rEZ0S+%D$wjl!$=VImLu4{0AyLg5aDTMA5GT26s+BtUemg%? zHk-4JV&pj_GY|!o4nwlN%WMZ+_Q=$|0c+gUqS!&U7 zV9<2u#>0+VXuI|C7{n($4|an8r$=<%<38?cfV2Rx4-Bc!U(5_!^c(|_kxhq@Ao}-t z{(=a3{OcDMhch9gt=Ow$PJ{FgX|90KYXxS@2zXxaVeUcz1}y3wM_J^U?Nt#TP6D3i z%`YhE!PMJr($Byj_5mOApFlE<|9H2A@NIcC#~@)`AwzVo)u;zjwR?#v`P}U6Foe{y z#r`N(NSox$VT(_e?N%zo^aYtV5@Ui9eljc7otNE5>CAB!g;2f#VCuwbAjXi`KX`Hw z?AVj|g$OlQU|v}EE);=d58Qo0cA5jdbJ!c0B5WoCZ-e5C|BL0mf>%f!!w#&6}vn$;s(Dd^540sh6w7G6O&? zsMOq5RNNzwCh-A5*A>rd`eRr9m**XTs0R1FUM<2XP+GcV2=)?`JM&dRL4As34j7On zrXB`ig@y&N8<_n`^MHG&k$x^5vrpw&$^e_>+5zaYROTbNHOWBDgG9`YJIEgxmsgzH z%q*C)Ef#oD5mI5UEz8UZ5)$jhzR*gbP4#AqmBeRNkq4y}UxONy*kQup$cR7YmEiFx zqNahjVVFHZM5KUNg60&|#L=a1W4if{EFH22%E-mFyjpk5M#3w#!s+MZ{xI(cF)S|h z@q5w(bT+`6Q|yK3q9RRS9?G%MLm*RWQw;FEHHV1+i9iN}W(txdIwk4m+1$*J&~`>3 z27AyE2L@c7Mi~;jzyt`m&W$*A4C~X$F( zy*JxpAW7nn)VGg9;$$Sz@55-h54q}Y*kS=dR0#g6jbg>Eb`p?B{kL!QxIE^NLQYl) z7Yoe6Rjt>e+-0e@uZ^z}`8yYD94lUj>N8+8FZZLXghi=b4X?I`7+HaK?^N`4Fm(zN z02<(ZfBe{^Pp9v6rHb%sFaD`ka?K5}R>?g?Vb(CeNW}&@0fYDwcoj%&Sx9vlNcZkN zcW65lDAMhVr0{Sv3%J#mhl#T^dk6#qCx&=y06b6*gS4Po@C74e!vR>}k3Pi$?uq10 z5gGxYN1`{OA(@OI6{42Y%>uWZRQ1_dzu(Fw4J4qnH1Y&A9t46EGloJ!0>;8Jj2Rd} z>Z35fos66>i*Bv47m#|p-aani5^THn$_hovJ-Fz+FKODY!t6%+1Y3q$1H zA{Bib(g&xZ_&CGW*_NQdz`)E1k~)HyGqk!K3MYo>$7(KAUumkKzpx}VxE1511swHOAy73CD#i_pZ^1V8gff=V_w!*+xGBu#I{85!~)S@jD7-S!Q zbB1$&T`uqKA*cPTZ zSxZU)FmRa>4aY^r#PCI+e)!cARWyW5DzYt&%3v<&4b+n~X^M)9OogxAhV&m(Czv1x zf2*{VloXT=VC+Rq{(F|6auIGZ3=R+b!Bw(Q41#*qG0fA^l2kTPAvXqr9htY>g=x#5m02~CyaIBR>E+sVjYflr@o6*CVeA+`M z?+xC=MF1)@PEdt10uxEEIuP-y;}3k3kAfW0${WBJ<69iNR%6~a;XR`W55e7u)V?lX zr~^oP2n4o}(+Zlm@&~H&2u^xvv#7_QblJ5gU>PXqqp=MM|?62Ko(F1LUO0-Nx~ z1myw*UbORb64!njDXc>M(___u4If%3cp$ce;N|N(*brB_|1Q%m8XDN|lMsMNzzLlb zskjQ2r1C^a_#XvzS(U6JxyR`#(N>F(@EQS;kKz?rtqF9E)XFZ!n|M>f&v;EoH+i% ziPN9J`M{6%9m4I9o4{vP03){#87<_?f;IF{46UZ-cHc)YYZw!7{64&X8MtvK0DgK# z3<`?8B!2P0`LLZp)1J!{!iPyE?)0kLrJk%!3+baCMjDfjHArRsF`y!v%?12pR4YF3 zzk&MXkugBtqB&2rt5cUJp>!;spPzrpk_w+w$9?$E3kt0O3XA|0@Glb$)|OiC>a9Ul zf1ie)y&3?A5?qSnie#RK9b(dlwV%|C6XODX!yZ=40A5(64i^{e4ip<|jx~fj2uTTo zkkGn{GqkK40*?r!I&$uxk;|I81_tN{K6h09_}N=gRYML~%X2qFi$VY9fNs5S0~e!jZ*S_Jj0 z<`1o{0cEW&81@Z9a}TV6J?yoNUROq%^zq{5iji*_enj)OOw$;N?1%6;MDA8rR_DWx z>>vFlc%FDnu=(278)r*?J1cp=VmXExG4NvnQS<(pTcxgV$D%hnbi|_}g|%QP^rX6f zdn#-TK=W;HY9+0^%aC=!%OH=t-+8SFRYk`@_HYMtj;v_BqXNX zhtx8+cNO}l`jVk zZauUz(|$Cr@|O9Ig=p`CGu>dN_m0(waA1D9Fb}B&gz#TswckEtM1Y?pk6@Y6rTnv@ z9=}cF;a>M33~{GQ5}(ccWeTlb-|ydm=%|v(_Pnmk;A^Ph7jlgLI&y*Qx!oo6{J~ff zT7#ne<8?3VwRb<^1t(g|-ou(Z(QT1*RDa;V5LHN1Qa)mZYO42qN$(?tZYU4?V@Blw zoU~@<^^2GtfvhV;b~^q&%wjhZv(nOTP{Ru1R0w(X9kelkPiVu){X%X6gI|X1nUi>l zdL@c#(B+;4Bk;Z=FI|SI8>uJ;S++Ig^;DgaC6dW~;7~~^91Bp=BEv};-P;Wo-b2zo zs9?Y_Yvo!-BUc8#MW<4oq_X@XO*pN9btCrB>fjaUpYP_OmOb3g#*hHvv<7l!5#T0z zQ0E3Z3SlgPP#4sK!bEt;w(uvF)lM&xTVMpgOf?Onkigtg{4dIBK3B3pE!7&3Q$VhJ z=4Dc(xo&{6CH(ncg#++Kq@VwFm8X{v(B2o&k)uA)sU7~i4=Ms5h?tl8(;qX$l=txk z(L;#GAJu9tv|d^Rylrq%XL?i=pk?K}At|t{lC*m3jsOZ;f3UOv%3bOH&{gPF#a;q@jU2&5b%2e4prVTco^Vj{rA$C3rs#4W=>3y-Whd zT!w%<_gA>tISC@9@BWZp#uNvTl(E`Ahtj-avrzN#JeQE_zK$=vDxsXgi#jD%G%2nqukk2G)>MYlDRr>;bpjR6}UvD6z zcVKleGlC{h*Rpkwve8p;_NWK2H?Nof3xVKX%Ej$!!tbi}3>H2{;wpsV!;2YUEEORC zs%#2D+(J?WOmMJw%kaBgL?Hy)cR7d%7}q7rg8Rv~2!4Di_RO4{%ty%d%!pzna~%Tkeu_anKve+otJ~rf zgb7(Y2Zz{>XIH@C3mJ+B@}%Ul?*J7+E^ya|;L-h1a!6&Rkx`_C^C{)*KSHJm<}_>2 zgN6u-(hDaz(U<+h-e3XtV9fw?QxujpjyM=D-%PAxK`=!K zV^sBsQ^>h9w6K>G3TR#K^G&^rc(KzS} z1ZnmfQjqZTzeC&p<^?7NyRX|Uk%aStK7@@okiP|li|#?;y2GNxqw!<-byDt-Zc<=6 zg@^`R#C~vNUoCeiCO}GqG*Os@dp?2WZiYT@VQTycte)Y|_jgFTC#WEz(g<@W5OT;D zn0h1VLy!X)>G|`iTG@|%Hkj^$ySN9nEL2!wNHrDSj^BM$i9jxdc_fLhMfL>i%D_22 zb9jt*qMj;D)c%IbremX*(d)patxi1wMo{!K72f=>M+gFG;8dlczY9<&h*to0N{$|& zY5*9DKnq2d^-WE|4z_Kwp!NdKvh_LM8hs1WrOn`o6`e!YZg1U<21-iDNOShUbUi)z zKN+fUl!X7UbT+);{0>V?DheZ=59@*|n!v>{EG08`EmUA=LXyiGB+Si4q$MN>ZYJBp zdj%NAbdV~PgM>(9oZ4Y=`Z7#C0jSqWq#Bc^B1bx8bx)Uhxi7NVJ;BH=kw zvPLxNS`+J9ynv#;AcSk|>?o}w>4TuTKpTa}vo{Wq7DVwh;q-wH&@QI~15aIG0hr$p zvrkUehK>$qaM9i^q5K9cG)Or>La7t#a9o>cZ`?OqC;AsP@*gBit*dO?MmFQG5H}1T zD;}qJXg?5PzNjOJKoNBnLC7UjNs>7P zm{9H1eh(Zb;ER;rTA&Z!zYNNQOl-K7n{+{V@V5Vbo}Ki>{~aOX|9=q7!2h`{gf#vC zkGuBS#;zy_QmAeFT9(O3ctz?l0g2@64$3w}hen^C95NM-Nq2GO*vlUnCL#cI)>lhK zog392azi94<*$7CMdzv|?0CSFZ2LTD)K@u8|gMxl^H=c`XY|&eLoUZ(JwZ# z)x}<|jeHIOnfkP zO<#eoC>O-%Jzg7j_yR=>1g{9!vz^vsc^g8p##J$(>KpWG1X?p%zd4yP{~6^OT!A-Y0NWe=Nc;2mrzoZ(5aJ=v zlqyQe%M*2z?kl?K0w!`rE-%nEY!i&~FU?-)$ z@&Ujnk}6P8f;WVz$6|9i(xyYJz(1x|n(0rI0FOCP?x;3k2OQNN-ArCKK`7g!iI1b= z1o8n(egYt#MeS)%O2OEDED3``v&0DivR~&KYRN!MA%LU^NnnmT%xb=Z!$c4)7L@XC zZqv4*+DXgyuLnK@5h|(SBJjkoFsD&71I8{W8W{rfW(~rmJwQ$lfWI;5K4}H;z1eCQFf){}#IObIWe{Y8i=oJJ zZr*_LlGS=NtEB>zuyqfPZ;-xC!kBC_yCELXN{uLKbbgg1Mrt!_8EY zrgbe1yH_pdmKvH}vs5z{XUVT(+U1VRu8Uq93-D?GPP^E^QBjq#Qe8u&Tttk^yZg z71$%OFr-l;>ePc>-0G3IGj;QSNj1 zNL%X+qiIXA@Z=Y(z(AnVe0_^;Ywi(yf|T-PMqleKGY|g94zpYd0c-=T_I-f!CRg18 znqQLNjul1#-Vo8b2V?kU!dIwmV8b1gf#DHr;4nE(2SVLcT3R~(vlYl}vG|w1sYUlP^-5w6ktn*qmqp{mIGrhw&%1urJZD601Szk_ z)Eb$4&8!=w<|{}XdmqYG{EDz*0Wm%B1E^{tbvME8kQCX}jEZ)ViFX?|d++qh&)6ag zW{X=o^EUJx2qNJl()UEgu>PeCO0f2O04qn$=MU=XAnL>g5s(A{qsW2vK%_>DkoiZh z9;H;TW_NixWLkFAnUIJ8sWZSn(*yP4R&^*9EJ<=?sqEhFo<jPYOWL5v>SHQ`A?ECGsus3K{d7sm|2V8%MvPd7wm)AW!L7DmvnXi!4 z-`|mD*)cJ^?ikmvzr5}YRiQ{5&GOqtaHGHVUiY`_A0&|>&U>)_!TOjlaiYULvS}}T zAeDd)mwMfQ|2KE6kKq62j%_Ujf%T`svcO<|za(jDAajSWk;gY1dU52R*TH=kNyDpC z#_8Vtd%FM2eWkw_XqOj3O8oZ%sr{Eb{xKi_K7`Ap%-`$3nW%rCk9Df`73s_WamW8S zgMZ&)+`{ic12S3ZlM_;Hyf2t(Q^*XrC4EZLp|hTh1&c>tzjN`Syg#?fC3Y(}N?9OIJ)DsrWjN!@cVt8BaXPgh9O| ze|1#i1N>Dg7`U0^@r3;rvF{Sr&jEPzh_LZvZ0`@#pHCO+wvaypsr1R%Karwq7;j1z?VbE^uloknT;EVd3dQ%l@$=e+y{c`1eCO~je>viB#34;kqkw_$1tV5iWR;hEXmB=4!t>gT)c`>(>G5* zA`rat4S7)zo%nC(FH9Ti|1%umiz(0EnQc;^xXN%3C;UMmdt3G6kSR~|_)Pf}r{sqO zihnJXG1c#x62L!^rsb&9IY?2PCQ0A3elr8xt7Of-hsBx_|2FMar42+Pl%$KY>mpUX zRM(GSAWgr@Pp^0~RR%@EKbGlE12w(W>-zh%CsxzkNV^>8{8Mv%{X>V{(Qe#Q@;d24 zQmS50fGUDvtC||NQAOLEgG!mxGlW_WO00Ene!Uw|^?Gnz<+2*rB0b;U12AZU|0%-h zZ#H`$#s=@%A;AdW0E1uO%P^StVZcQTHyG5r;C*KQHq7^7;H;zIn{CKp3aI{NWLg`U zKOXRlevDu8k9Ybu-%NN>fBu%*-?m4U1oYC{4f71d}P3u@+?GoAhFx1b0+OArsa~Dz!KC9-K9l?84;QGGwtuSfFcA$^Vlwn2-g}*UoLA<@2`M7kB+4Lk34xoe|1Qs5*jviLbK~{ukW+~ z15lCh3EOq-ae(i5C!)FGcKGnXz?(%|{olFCLXBhbZq(k9N}ITJEMPy#-pYM1fg}N& zQSo1-_B&LVq6!Q(+BZ6nhd;sXKrmiWy@`8Shz)X{f21hBzNE*u=-Mhmp?wqfDg@@P zL1)@dRBu2Tix&uAS{fQKa#Q2S;3ao{eNs(JEjIIEYCUQ&?DSI3M(rMUX3ehR{Da8u z;PU+3%uE?5{^_Ck`}Kzf)SZ#!tAvV{_KbjrfxG<(?bHu!1fNM{f=#+R8VQwMywMob@_p10 zoa-wgFIw|Ov!4XxTsAr5zpZX!D%)l!81op|!-P$TP3FSW`G~K6!MBS@AbFS3i%* zG{a26& z+O@ANfgy{5s$Nlp}EwuAE;zr1b45cr6?fj9}u*2kf5(-a&6h z04*1IeyWJE8(3EZ!b1kyoZyrY(=wy~Q8f`Gn|eSGaz+8j-cZ>?(IQ)wuoYyFX~S0E zEek#}-;_F+{NnkNKJ?;c{Fzj@qunZ%HKZp#&PVTgT|Lca{~mX<0uMPAlFs38P69Hf zP!S0qSsJgp8SIy_a%qS_W5Y8k4zg36ehN~+{ehCig_l9lK&eM+1OxTozz9>=mO&7S z>R`b{<^yzJ!r35|pgWcO-U-!=JpP=+#j!No5<(6**hw3&3gviZ54h5RR6@oovh`a$ zYe>xHgtEZm;)Er|_8GD8`|ARTf3dp3(;g4AyEz2wj4`9a;}l3vi*%$8Xg?|v)JUfj zKt>21XEv?ugCspR#w3t^?+5!VDHm$d-A&4np%qSHn6vKs-irqm_nu0<@UuT>f|Od( zt3t+xB}J5kbw5$La1Yyav8c8%o9Zc^dt?b43pEF6Xi#HV2D$=L3vf4l=#D~J)O?m< zvjO<`0Cf=pFX6?*bF;#$X(#X8lJi`XQqwqPf==$;bwE*rwo%KvU!tbrYvLCK{w??F z&W0U*0=gZt?|V|y|D?3}s+v#|PdKEMKA&15$)29F8y}&Gj{qm=7swE0FBVDI$PJmT z;8XHM(Q@(!#lJBQ4ekos!w2;OwC^5LMmO~sqP7Y*DT#RFMYt`n3XxEuV5{;82pMPp z6^*F2NbPF?y;>wfi)O-p#b!eMZ&-V)28cOjIzT#)0nGi&JrTYk3VSkQrKeYJ6_;s9 z=F80o!;C(Sh!mV~tg&Z=py|L{@H2o0s3fA`Lli~4t%4A9=v&t#S~d#JY7UsNr6u;c z@5c~1W23@bD@ehBd6oH%$X}7af(cgGe_-~}h>p1UU=~zEy~20nSJT*i{R5`y zP}=oBXxZSNr;r!EJqv*9?G_h^@`8^@$=^{0d=jn%zE4-M1uK^3$mVj57TC-(fx)P90A#dYV-Nx2@NE z=>^C@55ts-8&O3j5MFe`ltQX>65a-;1G1&7kOYk!I<6ef^n=@;{s!l_R6wM#1_59{ z|Cm#ivzvTRsSTYX8K&SPQhrIAKqXEyuQ!AjEbCcRfHCIoUZ2qdjy3;?C){@7p@q*6 z1rct`Uc!`^G&8REsUkx}KeR-1&psHjf=un%KR?FA>G$dz-3e1x*n0{}FzYW8eE3gG zQl`e~Pt(TfS8dHvy#*f| zLy7w%3m~8DOZXzBfpU*nVMgKg8Iw;Huu=-Oc*x-az@O$=H$pU>AOHska5vtT!jAooG^3UF~l$;~W zfyBGAZOn6VeUY@GB%7gAkO9%cj=N6FR>{h0-J(YWAR3hQ0Ty&{ zy_yQy`j|pSynoLq124gOs_NESluLs3D13kPRj{@>f3UVIn|xtu_?m+^=E6{G%bSVpIvg_d)zKcxDc)T-{O9#cwHmw>@YZ9t#9n zKKodSWcRRvQi0GQOcfZw1u%f%aB>CG-l@iyR570r3}sxnM)hDxr@-NQ^v%U7yY@#R zyGE0?S%lkuY45OKQyS?%YxgrwB*ilK&z3fFB|e(e{M%RGkGlhH~}+ zxRT_a;u@s}^X;1nrW?sVPIw4id9MtccLfma^;b4=@21?r6xOHa4dHAk!Ps~caDJac ztEq}SRbnYS#^9^N$hZIHd^9)wp-2AUg-6r36KRBeyl~|_xDuLkYF?zPqWjQ?TqJwM zNA|Jqvb)5BGTEi#-fKs-$k+)l^htD;aR?5-_p-W1OPz_Cm!RyFxMj<{@LK-%4LiLT zj1=bR!L0v8a__h2Xd~SCDHVFEsZ9ml6$7}d2K-c@ox1KPi$S9BbPn z3bDDQH~I=+OXRgNIucVh^_1LCmM3cq%o{EvfP>!~t2r_wRv{JM&e;5QY}zz<^S|SU ztE|ojsM^e4>s)zg29uoVRz>{U^xDN|=@^oc>rR_KnVfV@o$@Amp+`|w_jcdyJVUl+ zR(a&u)2^#easAd;hTejTOyzP@6rl`u87Rr+%TM2=Wh>{^JTd_kT=X4$M_fH`A8x4x zP^dnX-43pjQY(!O1dW@C9qx{8C~7|#0b>V0`AUIcNcG^x9tyTaZiXnep%A*m_v1)A7W20u~^ycF5%dS%<;=x?0f+AnyUG;@!1H$<^` zw1*1~W^VGb#`}$^9@u3qM_+lX1a%r3FMsq(S{sW_a!Yxszjd&ftX96K%hwI35o)Fz zE{u}z^a_FL3~%Wo?w$NrEBoEm$|Q(KjSS9E+v%N<)iOr*QB&peplu8frPP#~;QMn! zFCNL%wdYYMzy#gfw)4i%uL>L~c~^T!6E%d3c?qfjzywp_pto-SW9)&V32!TdwKwW* zl84q0AHMz#J5??RD}gKiYl=xv@H1e_FYF6B6RPG#$b>^#>k6Ug@yFUZI{wepPvBUl z=i-qi9Sm%>23C}xeHrpgEr<& z&UPt+Hel)N`imPvplh1Z=@a#n3t>l25)NgPf`HllsSoMRz~mnlMZhp37M*H!`DcSe zR|qGB^WRVF5H^Ky8C?#R{44n6<#=Pcj7QsclF5%|Ex#`Xhj1YtY}fO$GQ*8{)wJez zvu#O#!26#AFp{imIpA7ygpj^Pbp1u*OFS366gbJ`-;x_A2}wOu(|5h&eS7ryb&+NU zwx#a_0PJYqbKFQ(m1=KKB>w~Os1y%SVp)&679Ss=I`17EN4}Bdvwo?Hyt|aT?SXDh z^o?Y&l%JYrUISLRz}wE8fAjj1dqROuSi}>zQHtHSuEvqyzQGxE4eBf;$7;)cQj^|l zll&FJr4jQkhlrQ)oo(W{BKCl0C$(NTpPP+WOZ-$~C8kV9p1F%`OA}xLA@_+s<+3EcFDXtx`U4VKNl^n*c>VI7GfP`b1L<`Kwk2 zwyI?n#!(ipJtUvmhhXM)_8N~yU}17cw#ivsb{WqSd%rjOR|tkQc3vR|2ro?jJN_zk zHWvl4*foIaVRuG(3#|>W?6X`6;PoNB!d#*cnBdI&?=7Be+gZV}Sk%(=8fF}p{`yvI zu0^3csd5f{njs#Cf#emQZgY`!9_Yr3I5=|w4_RbvymX_2fh{@l2*EVR%QT4~?aBCj zee(k{t>fO7b1_@X|1N|KNOn#ui1a_R?e=C}xr~QPOu``@$BUtTwG4Xz{@l)Ya4`&8 z*+|SOG^n^>Gw$`vX7Ts5lgN%*zZ8;UNKUotWwS4!VhGGatFA})Y3w;XurL2GfxZT8 zDDmJ)A7!%lPX2qnpvN(~?>y5o--8r5KL#uAJ+B^LU?@z^$T)`Gp}DioItmhFm@k{d z$qJ6DCPOE!6>{e#1U_i8#j2M*?Xj)x14il?b5n6=1ilq$M+bnrIKCp1AnigJ{n zFR`;Ttgc?bsp6ECV-E57{jK8SXU5g|=yr>W-Azf=)2VlDxv&~IIXEy#zf$-s_WZp- z&&Z~4Id0D959V5>?KY5;ou z6ybc-)=>}~oIMHkVHsB2=`X^S*gFp$9>5F!XQ97JruOJ%klULIUpXHEM;A_pl+7-W z=ku@>&$Yc}as45=;lb-f_3|P(@MCdn9gFk83n!U}1Y;tVaM_TeaPq0dr@1cng)u*} zD_LC*5?5*^TDG~TYBNHZUa6Mkmz?>?G5HSE5e`Zc^tMFjc16%Y-j`!ljI-wbK@}vy zz`xwz$7q$uslWR9SbDi+YVFz=tBP4Ii@P3`3xzXd1xCxB`eV;U1P-iDPk95KnaZ1M zRXfx)IefI_F8kZ2@lKG|rg{4q=(*eX=5On<3_lgJ#GL$EYpK%(zR{I4gnK zc15#zjgp92I7X3gt#D-mbiX;!vgSyfUYdp;Q{E+29kY;8Jsz!OoBL0;N_~7r%cEX~ z=Zr1DSvGVa6X0I9#y%R@Q;ri$&^}<~$D8d7J$u4<-cV5Nab4)=`V8koARRn#W9pV) z;GcPFIg!V>^ljgf8A%=q^{er`ARuT92a)#Y6x&b8@pl>el}2%nLR*zAG|)B)g^~Hu z1?3K!fMzseBtxlsrs#(KAF%~(Q_x(i0Y|Laf#TXbXEeW>kEY!sRJK9;{p~2C-Nck7 zbPb$`Lq$r5T}SfG$`TFq=4`XR9uKm!lb9^~(U(Ghj2#LEzP>FWNaq+6i;v;haj?hr zpx>(H>Cze7<&segn&H%_OJ)ZT_^k#u*V(y`18Q)v_l{SoZgXhR9_knu-PLfg#3nJh zyAQhJomR^m;)Yc$5(cv!dH<07u4 zfOgop^Yku(yMR@MZj&!WkIehJmSu|1-QB%clR204vvxJSKM#7%=&l3$wk@}}F126Z zwcn(rG5$kWK~0Tyk)uWZ_#16GLyz&TGJ8cv2S$_Mu$shn&CUmD@+2mfbU7rQg@4xD zgvXB4GM%xra}<^Pqn%ASt)Kr?_5PM?E(7RN%XL zgJx!bxqi-_x?5M(a!U+utg*_fVoW@^VK`jV$iB{lAu(<;- z{Q!dgJ_i~qU)avi&WouDC#qPS|1|!t?)x@s^-mr3 zOcoQFM^q2Z?MqNGk51~KpxS;W*Y_tGByr%r;h<(;I0$qBjv!epc;wD~QD9%9dO#uU zhkEXu&pg>w!qHm<6W_0{URqu|5^hK)@1a+BcoUn!iecI3r!@VM5e^D%wNQ$m==7Y9 zFwNQ6_9r&0Lam?zdmr%Z6Kv4(-L!pg86JmMdZ(V%b7c}RY@CWEr;wUc+NH6;U%)|- zKUm^%P`_DFR02Gwv7}vW?Z8I1mGL#%!#aB>SI6ZVU5kGJO$Z7anBeR1R9(8&Z_raF=RN}DvF0+x zMT3AOf@vjLvWvi`<_Y2x1F8BwntePglw5mX%xGEcRtOtG5Ez*voE(RpNuf!Mj2lzo?$$A_=Q zHM;2Qwg(O)-Y_@8dn}`D^5(ufs64MHf1u09c?YyyIjc zvAi4Ou#wG(|4%*w{qt=*8R)&9Xm51SJe1ZJ0DWERm&`r8MA=ktWXjZWycM8Qw~5jr zeAT?e)$ot*UYUvJww zS9RR)9B0XLem(_JX^hKwKjEwgpNq@eW62sk{})qV85U(1b$!naFo>iQ3W6h{k_HMQ zH3*U-(w)-%08$czh@yfFp@>MRpwitbf-oS`t)NJ!AR+zj@%`TGdjCAnAFtuQ&wb9` zYpuP`-e(tN-+jDS`47nfLj=OQ4^Q`x+Y=n2uC8leDSeHm_@5tHxf!B+ zWseAGD60$AVtz1u!fqXS9z=%vA2t8fUkA4^l(Lbw1s_!Gz>3v^g!1Bxz#Sr7ERSgY z-OH^k`VZWx?&P(L^r6Y_>Ss`FO)WZ)y!Bgo4Tc=gwuta9geMK&cIPB;z{S}AeRC_Uz!qmaaM;frJU|pD0)cv{93k{7@d)B$ z0(loPBNM1kftz%uB4XirXlt)`^^R`8auC0zig5FT%GD6RC#g~GWOl?~s$rjaJw0Y@ za}jjCSPu60`3KoX&u&VlMgpgt(pkXs)xCA!nq;b4=7Nxn2{lt8ear?qiB)o0s4zo~ z3Y1@`GdcYE-SqgFyeeQD@9G6okhGde5d6Td0_~dMK0ORb$XVDlqzH5-GjOeiyF80~ z3Pu`|I&c&Or3LV*KS2!fgax0NO2qCjFFh@vPX4*6LT}4rOt^Zk0+WSK^B(?>{Da+r zEzAZW$QGBa+z2VLR)Kah^d`0I{jEVMG{k~`q?11%mWvt>VGOv!|13TTvqHvt+d*M0 zIHo2Hkrewx_Q727ZORt=JPk_aNg!S>Qn0fb*aefWrFLKMq{LxpW03Y%?wQ_ek|Ov1 z@7`wN=={2T7MMVsFHOs#s3oRnREZzCa5p0Vm@a^E5+5&iVM*k!2O|rc-FFre7F|AnVmO(=_A~&`ELxFqCDa3pjzIZy{ z7zczZcK8Gr*FLN>8vsYA4Vr-RVIT)y^cIAciMr_+-Bd#$uG}-^m3p>Rhb9X|?eAYA z3Y5x=x);j_KfnQ=cIu}g?&50Uz(lZEK!D5pO9=N6EBA~N(I zR^a6nw_hUif8rB{F(vjhxFG-SH5pP;-oy`pWf;tN66!3R_4se6IGm=lHQ}P|Sk2Hs z`RDy}R7<9AmtVhO!K`pu?>m=Eif=JQ>y-J06EdAluhG13{yK@Q`&1n4hj#>d{|F{r zn%F!Pdj=2jTMN)aHaV~T3oRzmJ#SE2&!v?8x}I>ep5rR7wr&4C7uB$%7*|K7yh_Vu z_be*+xFFt0m@H8E#iWewrh0lHZ(};}0j306J4I6|YRzd_MoF(oV0lcEV3KDbTgtIjgGZo^pYGD~l_uwEK zq6WIG8@B&yr#$$}p_xWAPgHN}f0q<~qAcFNt8d*bvL5`mEbuJQSsX?UWSiebR8@lP zps9tIAtm***5I)-7$WTW+bu#+|ANP0rn0Z8L7)8~3P&p-2Fp)EP4;CqLzKdN*g^?A z5hBb*^ubDERM*^Ygev^*{V5pAC>LRSJX?Efozl`E=O_tOdF-Qa4un(++%u@{$odHC z(FOz~m$X)^WRDY$4W?@~3E;UO*fOioOAf0)31 z)+kh1k_7NqA+M$u(JOHGY+!ox(pzXw3AfWi+B~NeplxD$nG(cdsP^IiK;F?8rR=wNB24(0 z9X|QV{c2KTduUNYxxq_9%(2*gCH>R%Cp=cKV^*ozR;aGO#fMuQcs#q?%XSM z)^`kXec+^@u~`8~pV2Wpp-?wU3I~Z+HSQ>Z`R37YkJ;fsnwvv6I0jR<#sWi8mD*8g zsrI+7_rFI7#hfa{s{lwCI+fIw;9V%OLSnvUI5*b&{FLji8smgnKEE>=KyHK5z+E*@ z8lfkt@z2L#LJY0?o+hlzmHHVxmwoX>sY7dANU+lYl%p;}nq$HQ3i{RbU4ml@y%V6P z*9-^;B?p}CLVnO$qnVL_7a*V9_r1F{fEGYFAM?c!b91-p*`JnD`+K}EWO_p4V~BaI z?x*W(+N9|KvB;Woz*i7ocwWO(Qn?77_6>w_2_)f?gFT1-64(JEedaGUR&h3Sy{|*#Rbds&(2WEyheZR_ zYOgj3j?60u`{sV>i*J+op4&lnq8C6xAH%JY>o4IfmqLiQ{&8T9z2X6 zsGm{=3$A3e&ZIBOiT~CuI3ZB?cvOVnIO3U zO;nZ1dL(1Tw8na26u|2Dn|ujqCudmQ-9^$enIY~?o?`-8zkU*2gjW`ebrQ8jp^M8<^UQqHIDr*DtGxh@|cJ9aKdWNUBmM&5kI^aByu9cTYV94Dk_ z62ntgdR}c=2VDYh-8uGxz06H!gRma+>&51j)MiC?}bN!cPkM z*dX@_lFqsbh4j`7kFSoGDfJc&FljY>47)KSGhJVmg}n0(NT{^yoy}sSP$y}DD5NS% zN!jPvkEHb;Vk&;v5c^?ujIYAPX=(Y4tZ_|Ejwz{IRdJ*&Z<>21k{%DwQfML92xEjy zf=Fr)T-~M->#fxg7tO*kNX;O_;Q#Q$)7(U~mLTsES9OjMnE!vifVU}eBJ{o`BU8vt zh!tb@IxqGMIMH6WJ)^=+(tkdUZ4|m^W(2l{&sRO6Qyngg1xGqc@sb~53Mwmutr{ll z#1b~r<;@{=Q|+gUsfuAHk^#>}nu~%tB$eM>1Fvj}LwUd4l}1RJ3?s?8i<=wTr>q6? z=n#61F0A7O^3jU?K?#F>av8Z>K@r60?2ZvF9kVRID?3vcO6^$vRp;Fic zojinkPL`H6Txvks}V+ zUS4WgQYshrmb)*FtmL9D`gtfQHMcaMH;EL$&v6m5jm0ndnk|B#NC#*pHWrv_vXL%f zZJq9JE`6v)&MCiJQcnGylm3)A(!LG=90&{(9$+oe(-XwMybN`*?ok>xIejP{6t_X~ z?iG3-IzsP{S%kv8juVwN-?!a=ZvHB?K{F~t%(s^Tn!-G{#KrYEP8-$Tb-`URXx|&) z0LxPG9iMov`>xhdal(lOcN(`{@617U8z;&dh>VeN3JYEw984_E*3S~mo zENl1wijlPb<^Kve*LFi(U>h-u+>_C>h;~-%A3!pEd`0yTEmv8Ag_DNIy|Q((!d$jc ze=@Wm>hJeKAU6mW1PJK{&zk05B?I1|MIDqD$u7$<^qwPg@`=tHd2MSC*L!Hj_<_P1 zCZYw~M*3`H`e9!MzEpIsn}cYTsVg6NXJaAc0LUASAl~-NvANs8EOW{GJtGaxYxVc5 zQGuxcVL?1iXtW*|F}F;WimeBjw$+ERUJsh=(NVCjE7k=AZZU-9j_|>c{=3P?G>|-{7t-QL}GB)ZO;`ejI z1tc4qJiB%LK6F4GWDQ!+n*1*N1P(}#yjahe5v6h<^o_#o?Z5Kub|uZg6N9VXxA+s3 z>-a_fkfXvy-VQ8I)E2mDPFLS_B6zK>mkiY3@gP{QjIRxAW(15G1@CnU(mj@bcS{0;Z9@NnIJA{grY-yU zLoS*(3-n!MgQa=F6P>Nsjv4>0Ig5~LcQ;jQ55%*wbqV0!;ap@S#AR-LxXz-yD)}ZK zilzm6&m*B22yzQtKE9N)i)w9rggGGNy9&_S<_KOqm*&}V>8x_*Wv&y54WHytO%2bE zyfB(51iC};$$5!Xo$?Le!7JfqB;2)^O3x3mc~(2Y?3=%@mIUyh z^ZEd?dgHW6D20NZmuROSqA|fqP1oL}u?T(+p4v1(OAhdK-bN`_FW4|a_dd9D@$4YkDrIb?+NX(1VtAHdRZK&KW)@cc z+2I-iU;+{Ue#xC!x!ylZdxQ^rhy10}Q7yh;xmH4Af|p?k>Xf9s#Fl^aOLUe&9ckFY zv|^;8iz_zld?~Qk_KPKOJKiZTze7x$rKMR`=6BLYLIXxW4RVZ7t34_7)zIJXZsTIv!2VX2 zCfxK<*uW4yN(BwU4^hXqvy*7&ZU}M<%f?Sz8oWpaAnhk2?0;qFS#XON-Cvbn0wdj; z&vnpW%>?ItKK zNU=?3#ueHYk*tK`ZQ#Yp>#wrK%9m@yMLV(=HX~RFaXW@3R4tv8ARM&Osk5v$9R4)c zVVA;L`RenK-TxdX-7Fg7B@A(5`rQzHKo;34v1O)F;t0;Iup-GPNyj>c^3=#L5fm)e zHg?tOgK&qmc)ogv5oP%G&K^yJy%%xMkTfQ3i#uKlz>(`GL2~8a5I3pxn%T(E#*V@+ zyaYGt?PWmgjibQ}WPqa5KcmX|Lu{UVrUZyLFn2(}h7ga>AdkZTHn4Fo)s*dyfd@k@ zCOBnj>2*gNl=&Iv%zZ6qR>zy<<9q1w{laoawa z4QR;S8=`HKk5k~`1H~(X^ZoDqxzXO&`mzMgD`6fKd{Dn>u)hp#HtW4j|Lrp{)ut3_ zoq5xz%JZ(?f91);jg;XF@ESEQAkmG*Q$YO)&1m5TV}@3)d(CHPg4J+`*?>Xz+uuzY z{)(RGQlYuMIHjLM5FHkTG(vP8knZd~mrIjWxVGnXb)zF3U}%Utc!07rZJG{o=6AM#oHIb9B6H7{=ilS%4OFQVn1 z*1brnCz^-q9y_@*EvtVLug`7^Chl(=#r{a4v*F6}55>*zCa$U7?!`Efc&A#*Dr3!} zTvUw7D`_i>VBtE>R<|sp8b~PJ$JFBKPyCsJodcIp@;jI`M;84GT?YO z0#8vp9H4n~CFcs8+haS|NSrGkU$b4IHDD$k{&7v|ZZS=I@h`~xU*Fu==%W)q@%Lb3 zL@8HXQ&m!*06oMT#YPn10vQvGm{IhEAg7n&8IB~JZ8--k;`MyWu-@n={0Q@ir!+svOrr$3mW${|B-HppOn zYS-1fot?m3>eTh-^`e%{-xfd>Mb6qqWVrt;2Zn{g%qJ>W4q;?==GaxS96LDIf&Z4J zFkq|GPWU(hGXC$K;!v<~F%ii3>IvPek|ApGVy>3`69iR|Y!gHurgS}%N+mI*p2lVY z^y~hjZDAU?UVji7uzZ-$r!kgAyd9k8eBecb&m3eFrnQNu|-#=hR8k!FCC<2J}w4IfEv5PpYM(h-jE!v50PiLU#Zsn_f zf`KrGsF#7LjEWDrDJD|2F&oIogx;!J6oVAy(6}129K33QgD?q=Fjo@CXie)TpNGFs z;X3&944}Ipe)V;8q0OgHgkn&O`m+Lnzf$0S8B$2U2_(xd{YhxSgIc|jWKgmn?@1>v zx|w85Y)JVjy1g~m_aL6FYc~e;v8f>Hwqty~NRPlAG*BW>+0yzfr{d($mzX`tgP<~~ z&CR8~b%e0!bDuw7akPI-cI`Nj-0ry@>dr>M#tsfZN<(9zprA_k6x@=>1(8SgwV~uj z&+vjFwnbF9z`!O!)yk@@6jxrqvG`iA8IKH6vp;p>Z)yN@3L>*}kD)`{1G7#0W%GS7(0&WzGrxWDORhJK5UPb(P`j)iLJ9p{P^xP5CTRdU zjWB7$p!`5l^#N7GK3qPLT+XikUIGem@x++qmU#9Z$`(Ph3tkmEl=9|dw^B7-DV0I; zgoBbG;rYX@s7nzu(5#J$$=+@Cpln%bW}sx2T$b|M=?D_rpB94b4Fs76Lo9~ZOhRY9 zx0|sm0i=`-fV!)2e6!?3q_f_6s2A9AsqOUBfl zJ4j|7**FaQSykI&atF@}z-?V-!0~r^nfUlir_8J??e`pksMb*XgGjDQg)4!K1;jxR z3(>miw9hxqQJ+zR&Hp{x-5{Xq0sjDImW3FWiHz6oP_e3fw|p2byZ>LnVqREs@=v=j zWmc5R`UAh+-AbL?Oy@BR5x&A%T%q? z;A6Xl8Ob}hvFQpyzl0VaGsbk>gd(s3 zI`kUDHHXtM?Q+oP=Kh{-JNwq309oi}Di7$Z`=uZ3QohA4xO50r2L@{v0O_>Su2ngO z-UHp*8jt~LQ7vHAg~`^d8)*%pVNaia+^l^29Ha)HFXU>72gFQrDZLFz6de$JL3~ff=@g;>V&) zM6N>LSm zHL<48)XqfU?Z_1oM;;yX&vWv#HC)BNg=}vIK4+s(Rsf3(>A(TPMROKTMEL5vkF9kF zrly~;ube;u7p1?)$AFlx#)KUFK`A%>eg9FwhiMIHMV31qku0T%A;*CpXpw6k(XvmD zZGYqIuy%eR_tamHQ0$3Zv~2iYQYf%kMG8!6*h?;0Tcc&*2K3>uzFBp=82l_Gg!eGK zER=mZ%-f3-b6mkTOfx|BTSu>Je8TEZaW^l`|cbDrN#N8$QZ@5#c>B8vy6>L_i_Lu9!Sw zi4r9c5=b(JANt^n$QU>?o{}IYGT>vdG5`{{Hf0U>n4-T!2+Dj&9?a}_mKNH6DAE(- z-?FgD<$-a-U+7-4v;6ALnM3805}} z;djTMidS0rYBAz~x&*{&os zYOJrcUbF`}E6d5A=11DZe-1gNv+ZE7$V6MiCHv(2FJ1$bP+ZbyV~1~U1&=TigtKmG zELcVtr%6>K1@%y_3?+kR6ZrSfB;=@76Sr%oeG; zuFOynKPN%izc!1({Do2R{=a30o`b;&;B#=rw|Yctzh-%f>lh-v|95rd#RDTKM&1bN zdkX6k+7Zg|6ov|fwCS63!fp9y(r#d;+T5T&abFB7Wm}uv!HfpLC@qohA&E{OID`if zRyqp60plGw-uT)D#t@L|y5J9w4LS8+QUaOlu914;FfeGa=Wc(4hRXY7@%ZOvo)=BF z5J;aJisU*;j|M~CUgbRZRD0IJG7JhFPYtCKfhp{bB2^L98b8NM4NJA(?z#LKJGF&c zFv-1q^NNb<2DpBspl|+Y!p(a1$rFtY+$B zc4oJhx3qRPNWZ#`0=d}t0yU%H8rmtp)nlo@H@$oq7UUzm7kVRTqOd8!GSG=jb*%0i z4RPW>jUtLKL^-gTjMMn!CRRYy;+~nzMs+V~Tfi&IO#! zD5KSoU?Dh#aDKD0dmV3#I&wjWl1xp0gv#grTB>SuGdKFoK}dt-nnimLu$%X&AILR! zib~Ap7~Xinpm)Qb9haM7#XB5ikPI*IhHW@xr;3qp$xduWKxxVi^xU;Fm3>p1x~f0H z&9-EJimqhXlaZ(52>-WS-O41v^`u^bpFZ859g(!qQhBK|>q4Du1+oWpeOD&Oge(Xb z3%h|W5bki?cF~`1=hzOa+S?f4oL%JH`tIMvk|Uw+R6?_vpqInGy(C!TmSS=+Q@i8X z^VBv2$$;)Wd}n#Y(Y$Vu-tVW$3e!3qp+Me>PiEkC+3E0oS3kFK z!k3Pev-R|yM8>?0U52B> zAYjR_UW3_9Ebl*N!g2y)<_12EkYlASR0EfAalltV!kcJo`~&75-mPlz^TX8S-zo8s z&VJkZIp`2>BwXCB7u)h_J6A29{7=%o;^dx<+Eqmp15y^2PwtPFS%Jv^CpyKJ-zosg z@dr0SRQ9L{3BIke7G1kLmVO+|`6LGwBR=XEGmyiv>14=1{ zQZC@nhZ}0*PEhA*pBiJWn#OOK{u9Jgn3-@w`;3pTN zU~F>ZD+x@zXT{I4to0aJv_OqA4`7XApc`_4M4GF*PZvAprf;Gdv{Ps$g=$G0lPVTd zUfs)8EYbmUld7N?)Xf3%3R>CALJ-I!%KclOTx7^1bXW)Kv{cGQq3L^jJZ!bj3doTQ ztF-SR&{?^t^89xG108ZqRRV=0z+Olv zcFf;g;1C{4a`f- ziJ~>VN$)MS@4Nk{3gYCRX>1Q_qU={X{pZ73z1$DBzs~jDPLY-#r6GChahaTj!a|KrP32P}0hOzM z*HeWm5X|m@VSlgZZzq|W93~;vI_YFa1+g)t%*+KNpr8kzd zAozso-V1vvj2PBRK@+6#^0~~_C0QsZU%mRc?j&i2JhdqaFidX#rK^i@@(D9k9C2n4 z`XGG)Z-vIp9_~40lhW}UTXkC?cVm%X83?Jax#Yxop)*K=n2SB`PBj?lZs%E&tJL5) z-1>p#AzvDvdE4gbA+K{41OS)k6Z8jAp?#)}I-+TY#4PiG@j(}IG|nJM(%4{+>4F!r z+^XsKN9b_>2wIzjTz3*YzOd6Q`#_{_^_hJ9VZk~81$TsHi*EC;mz~pdAYK9(BO<;r zRt@=d_3nEnz%XBb=T7ZxKp&yM2m5v5o3-NOFr)84$`775;iApoI9CUaP+eztr|Qf@ z_|=qIJ$n3OI#*q-JJ0l;Z)K5M<$z{NkpTz9S166zO2k$-_mF0@fZ-MLtLuXc&AR!$j`8&=| zLuX{{1`4L^HIKe~i549H<_TR5CB^~l-=t<&`zhu@P6@*gwBJ8n&}b6CS5|RUG0?j} zVT5_WnFR;Nfb)dv0W*0!PF9(Bb;0(j`Q4ZCFTwa{6^eGi;=-OBJ`?;rt{;FcX2hBh z?dDd%AEF8cpwH~#%C%DsqJIy=?dvRei_a0^KDC}dcBVSz9|nzn07AVVyzy1)%j5C6gE7e+ zT3Xs2?ktY*d)#M_m~T?XmpeuL7xl7n=G>#xj+g#>GSwvh@_MA&k=r*Sy6nHvEz!7! z-%Ay`_l8hNyK|BD%V?df<6Qr2WnbWqtEb(AWp+v;zaW<(0(T z!IbSJDK^4O8oySpc#g5BoPsg+cGOX7hvr+zsr%*dufi{#1*&9SmqYW}xEB&%dT-O=Xu)DQ?NV5{HEGKtOYVXCg%`*GKRqivT+Z8Gd z#MISc-{j*T=A0J0J_RfrWh6y18YGG*-tGD3{I$m{Lae?0kz%M01!IkBc{<;Pf&08d z6weoPp3%;tx|t}5=NTC5$4<8GEL^-tv2OZ=Epd^F=ZiNH>3$xYhht!je{IS=qS+gy zI(`I?uw1oTH2N|AYxpTvp_X1>+LcFe7poTQ==Pp;Vw%H7&mH7@D81*Mu?yJA{?0V$~RToJE$;YwO0_-?jN2liBu`y>94v^^i2-Gr9O3B9(A8_{47OTv_V*86v`znoiaB@Nfmr1s(t2CN-N=ZLAbPY;Ll-#|o@h=K4%LWb zG?<*+m$Ql6(bu;-{dv1g3;B;vFy2N*A3;ShdG(yue(?G8Zu3{{w@ndF21c9|t)7^? zMTHceons_kt%9~HJ{K8>HSW7Ji{hpv>Slf0DYH3wc3!&_UXB!bMedEC(3E)?ofjkhTpB zhf29{>+Ab}U@s;Yr8fmK{1J9W?|aa3EgXEEM2-6`-Zo)j@rx1^4D}3kkUAI0z(|98 zpq}{UmAJEW-GG_xmzWH!vS*QBlw*O(b9IphnxlB@@5=qb6WkQfPfYvVXEazfjk|#u z*2(-wf20qiPEUb2da1}Y>i=RNTM8#qgw=a6^c^q?O7rq5JzR`Q3B?$_t==RL>wdYVhI-3g@? zn`8PF3Zs5!d{d@ue^kyBvhutSQ{>tu31O9q$dTvN(ut??y*T-WFH7JF-^%9gl2Nrg z-|bh5Cf9AXk?4W5QG#^8suri%VlQX-tJ^%WmcS2Rq|jsJltZ?5JrAyhIZJ)Y=beF8 z1ePzb$|96R_$$LsAx^o6f<%T^5t0Hj+sy}N74rivu0j{4qOm^_r*t3uivD@}?fsiW zwcn3TJ)pgi(t}A`j7_a-I6J&No4PZ=MZx%epN8fLCF3mWNSt_n&D))?4cF@OPxL+% zHnd942(YUdW~F2dHEm9JXA~x_8;A9Av;TlWxxK4!Ze>`xbf0j%2HMJ$R}wOO#5n`;({$c5{s&UZ;Pc5b0sU$6I@ z=6`$5Mfmq}@WbVEkqo&(eJrO_)0@V`&m6^5(NnMrYmIn=W+;7BA4|{ac zJ>&Ox!wneTlj!hi$~vbW%a7=Tu_0f#7N-(vJfge&cacH%)z*bi24!E1o8&^jOm7V0hN|2r zRg0v9q<*gt%&~j-LI^(MWvJn?h=Qo+%;Va*=cIvFzD{}Gf^Z-yK_4BcXKK3i88xK% zfE3ZR%Z1AgQWCMcI(OEhmAQno3Bx-w?x!Tjo^jbjNMy`L)L+e|;|1!Kua*B~ zKAWYk&WFv+rI874p$=`Eg%R8ew?{O?28 zz}d5O^bjV@++Eq9G8 ztRI0Btv@R~{{_F<(eJXe4)cr#?d|_XH^xff7d)*K*XPyi_-lmk%w zS7O4OtS!t&UC23pwbyxC4N+;rC=9fZTlMUBuOlj~t~fTdvP({t%=?|(l0OyJk`&K_ zG+M;c>pJ4GEyWJDl4obD0%e^XyW22~YbFgx1l3TyiGtblb2?Ai139&HT39>+AZqI5 zsd3p2p8xYynU8{18ebSH827a1)~T6YeRku#I0G-m!(2OW_GW&KqRhua8;w+1kDHJ!ZK#)vs}`?@^$$ z$|3hAmZiNB?IT`QrU6?ve+O|b7~UE2+%QvSJT*xW{&UK;utMN6i`EK4vY}_xFYGDB zGkg{h-22>Sau~O>oVTBstCw}b6GyOa$MBv#RGC&SwN839|MKwR_WPm`yWaQ{th=Ws z<~&B+MWQkO@u&-&D249+Q~B94jcjPac*Vfut!E#1wLV>R`DMgs_fSn$ADQj?bn>{^z(pf8ox30?#Qy+Tgb+=8Qp0Q$F;=}i$ z#oBbfnp)gU1qG*CuF%&~Y)eiV`Y_wex{-!s!jv@n)IvC;@6Vc#Uup^G&(gcj#s)cb z7Iup9X}KtFLa`kKz<6_x%W7%=ai5w~`b#9-c|I|9n&Png!pV)urt6IiFre z1A;7*|7kz`g!J-oU-dZ?2|QA^$x1Y%&NjFa8M09Aq~&$!h~UJPsj4yEV7F1)-M`KM zyUfnt*+tkZrr=|J474l^yHjA`VT?V+oAnPak>ZhN0f zwEe9m{oAuBVQSK1VDZ!i`HbdL&^KVuS(O-2bRLg^F=zRgk7 z#q#%%xh-avJG2apL-FMe7PH>G^J-!-sZ}ju*zjyoN-O12E@}Kkk^MO?+~v#lyIWJs zsov9>ZL`@@>bgkR&jP{%4bF24fwAoS9m5UB$bmvtV&XsVVNy7MGTZ)B;^1`GW|62b z!E4!dJJjT1y~iP3>HBxtn;Yd4V>8ocW?Ui!F9inTb5_r&k}FKCG9PNWUPv3eEZ0^U zO)yTGHl4uH=pPUtBiuXr46-+ZS6&HHuo7Ql!=>xOUsBW*_qs(4q_kbIV@9QEoYYnN zG_}0QPw_m<^nTdKBZ0S*Ud>Y+QqQd@-Zk~}bN_qen(|F@I!BoWXdbUm3Fr>!XOhCN zAz2wDwhb!0?-8$fY^wz3-7Ofr3=^Whp!<8V{eDfpD!&&*i7SQ!g|dp zh&u8XDuCDgj|uHai7+slY7||5{zvM^!Jh211)rh9g%d~5-_gvg7dd-A@V~pt_eAE) z0^BA>FpW3QpI}9+xw?IKO#U@sK3)52*6K{t^8?JIz`<7%@9O$36TC)@YOemrB&WoN zmtvsQHx1i^V)d7pD7!fn`o)f^_OHz^YGF83TJFvD9iSpr>Wb?~*MR-BsahXwjjz`v z#9GRb@zn@`VhUphqQ3cCQmx~MJ9fM6)|_W~%7v1PXojml_eP z9Cre@D2Eh8qASF3D!*RShfrD%V0cr|%9#KJ2567TE6B@RCFMsfzE(IC@(fnB>L&IO zu6wY++r?_=-cnLEo8?j5Y^%9x4z17FUhbS{(6)Awd8r2h4uA181YIuufOpoHkS0JF z6tqGeH6LZgZ?CD;v|B$p%Y`dN#{Ciw<1%>V;>V`1A<UDvXpC@Fr1mp_SAxFL^;6^H#A>JbNrp*DXE!GuKy~TwfL10eKNT zoc=p4Oa3zB>^%2#k_Sdl5{~z@mD)@nnwycp%WPAJ`HVh7oeT=UC%b=P?^pTuL!d9n z{&@qp+5|I+h0QP%S}pzf8PtMfm3LD3ON@f~Tc9t^1#-(PI+VnQYofOE_2?Eoeu9Ew zfE?;R(Hlj{c+J~OFZa^9oyoRH%jU~x9iEVGUX{SFEo-eK(J5y{c}povHB)mah$5zO zE7}}dw(YA7_HU_i$#!!$ji(TPLC=BM)zyWt`fe^9{*9(23j^bEbX#q(92YL(nCrq- zPMwF&w;$eol}pk=9yNVw{W9nHW3jBg(WOrSKG8LcAqo5{AA#4{FCLamdgX>LGCSNC ze4^f$Ferid-@N(VNx&FV2b!0C)5iC;voB!+Qt_p;X9Qt{m!F&4U}~d+p>;#A(>SiN#l^A0luBR|E%z0=3L!=banyA!$RlZQ@^aN!DG(Da;{4|<0V z&wglxWMs8{t%<%}Jlhj;ce#D{1!1+YQ!fz}s&UD9|3bEZT|aq@SulIVvt1lYGU#b2PtgZJo{#jS^J zciVE0S{|xI1yc)c1y@2!rN$95I=0}6=|cLhny;#=X$nezeKT?LFipsHY6opVONDQ5 zb1?R2YaUcZU|eQVS~_vxa4e?@3M3TwCYh3RvQ@!`M2hZZ6jSC-xZ|%A{*vD)(T}E|3ctpoRP&#=z#cj-W$+9#i z^@)d{jm`eQrKC`bP9|sN1r?d_icw;3dWs!fEiW7= zQ4qa=+Ojt^dsv>zpPSp=vlXLcG>sZjJK`m=|0D*J794!3^#Z-T1yi>r+GQREY?rFG6hR|y)t04ieF+qYP!+!s5*eC^ zGB64gdi(g;Z+QaHd5pZF)F8#1Zy!A0yv}X|KnmG^mT<5ge;~Ox0zytq-`l6-sF*B9 zgHp}2rYK%>&~_e||661K0dFPMd&!RxD~-;SAa>|>_+MSXgZkDI!om8$qt9ybOmEVg zTz<4ZL}KVdG|g^zB)h~qU4I*SJ(Oxoo{%nZ)v-gi=Bl(V=pt--e7X$8vuJ9@+GA(F zzO~p(y4sv+4GPetd*Ks@tIkn z`qtJ?`06`??tg#Qi`Pb9vF|+k(RxdEA@FJc4C>MmIxN;X9+ zp9TPXON##xZgVUz0`D`%S)20Y25gqt)H7|S)_J{D_hM7+L@D~;T(1Y_SXP&0l3&=t zav5S!Ey=@2hk>XAG0erQojsPeCbhozeJLY;ZPUB%#1u+P8v_tebv)UXn)dDj`h&l9 z-Wr2{l$`*9Vm(Z5XSx-W24Pj$_={(pqHcYlY2Dwjivpx3W`h6pOkdyj6-!Hh6N+{9 zk+Q^TbFG-bC^5g~b;;Su_z)#7m4g?BE);%*nLi>X)Dg$uZuA_`OJ6F|?Hvvuejjxp zEzG9WQYo$g`lEYl zA{2}r+JWuI?LJgrz8GPgJCy%1!kCH<{eXe25>!kdcN$+vC0?o((e)VT>){NcKMpyBXaw?2nEra3n#W+HbfKhEEfwy zP3tG)v*r(0qKzUqv(BjvU>ZxVX$~y@{1mxzNgI-iA|>A3w1Hqvp+s992K$K4L;`fnAP(zC%m?@&?F z&qphajlLA@tgY0&Pq$Nmx37(y$lZJ(W;N{hBQ4d7#HXr^j?)x1-t)UEweh0$$;MRT zqY56#qS0AH=@0cFacmD3yl`mS3M$pirws983$sx}hTLTFXFfxx_r_H|o`t}Ipull% zBBW;uKDo{6#$SM>P`$o8vIi)cT}J2&ZeQ0ywed!N5j8M4lM>~mkTSCl)h|pVU-!oB z?aztcgEH5YzrH5N-7ohj9~~w2W$lH&(uugJ8U5h8q_Yy7(zO4K*!SM}5{j`X1^U!` zv>YC{Hnyf`Q`#m`T1J@)j2r`VbD+DDUQ{MnOg|#&QD@^A?mP3zF&xE2SF}XwbVi-&=v6tO`+7ppkDZZ7I)T#! z+Ma+>$h{F!c;w>DP@A2d#(wDBE9WW_ZNt{hdm?na3BbrB*q=!=fF@ToegOhyeXmp1 zvSDSf^LvhaiZr-~CtXWFQ84mv+q|TZHb*PBTsiez?X3;@J8L3a2C1;);szyDJlCGLV@8yc6i}7c)nh+pRsNlb$btzX@6egp6ze=>WWajn#`6f6!LNmnH>QY~$ z%&m+J6*d(g9+H{7d;M{gy864EmK7zXBlv}tazO??=9qOlO-iD{7vGReV(1Rp6eEd- zQ8tm#>NVxg^3V6>Zg;&q-Lnt;2tQsWF_V;_a>NTS9M_dr`TOkA1)peE4b3Zl$VS=4U^*; zk76*qhC+L#`1ra^)o1N|gccSFOT~O^im<3?KfK8ps5fb^Z$Ta`#fAs%Z{4^j5*d_0 zjpGonJeo8G#gtb%HlHvG58Cq!D2auIjd%G*90kY=+9ic|tuyu0S78-GPHWK1#y942 zKtUirWttlsp7j0{$Q%%=RR*2)R+8HFzs?$`^0zlGughd2TDMXo0%N2% zesA_9PpBOmb?6P)k%DZ`~@W3E}mjR zDLhp#b<;OH%nm&Co2$LDE0O+UwcE(l$&(XW$n21I$z^4MxQ9@(2-5u|FDyi)ct5=u%h5s6jun*K3snxGuBJfG*CNvOpxIJqBBF$sK~{EC5#_LbkegDUu>1MhFp*2(Q90&alK z0-yBhPv0ezp08(axN|(YTDsIjL^=bC^kDc}9R9ZtOAmBH=*}Xfd>ggiqN%(+PF7?<( z&5kWQ`w?3FCt5AzA0w-gZpZ#xOpn)c;sGT>t|HpG;L0;bgWS!#u!Rd54Zc_Mom6tT zM?w6o$Rcw&+_|(}2ax&yBk3%oqWr!#JVQu_ARvOpZVXvGhsLRR%sdWLC9%<`Ce0@r*_ zgyysFg@Z-SoS)wxb4h~M zrcQzXWi$>5MB75yXmR;!SdXf&^!GvDF)J?H0A5C-F{o^)`{m1<7&%8=)t6~jPH|;} zBp4;Gq|_Q%lFl|cnZH|wxF7WsgayzlY{5#QPhY6kCG)u%sZ>$DN_bPX`LA;~5+Mdo zg&t%jfjsu6Z#kyeQQJhpv8>LneqK!te92~C?q?A<5x%;lEacx^Vw>$_?w9%xgn#?r z+DYigRb(L8*$HfC&H2y22h|28sAXUAThFO8~1eM~gLtYsgL&CeKt{&t{` zHXc0b-q=inN}fx1t+-@+_7f0t-KTUBxI@wgXIcoUxC?mxcX(CZ(l#4e^%7GU9cLtU z7AyKzVs*LUb#!=}{PH)gaW^BT!!b>F8|eSf`xcEo>BI}feH4x2?~dNU@>MN`Jo{V&OVrDe84i)^f> zhiuN`cF?$~l+4Big>l(cxKW*gwHh1T0%}S-JN{t9kGH!Qf~(QC`p(UgcgdyC$@@R$ zN{KL9A!;=^a=*3MI=*i-$Let{T=H=5PfMCR#{t-MdkxN}PUeZA)YDSC$<2Rk?MNpC&nH=I#HQbieXg;A?)L^{ z#C3C6Az;Bx<=U1{N>*99&Dno^JkNZ<|LbqxF*Pgn)oy^1yY?KiiGla2M?T0u$aHkB z;)GQ89O(F<9S8NN!nAY+(tN6r5yX!ydDzcD9J40_?-#t!XATwrT!EJ7jdx5W`1HFH zkG`nNzl9z8=hKb-`jydRaF5)O$nwJgWYP0k=tuX39O*b)E!5OA#veC)JSwM<-eAbT zHs{ywSCrq{;1b}%q&sxPNjD>ROabL!r5x;Is`da!oEc$t-T0E4|M26bNl^Y@E* zer@xmWo6~GuLOi|kNqJn1tm|hMj*&PY*V`KTN#J$56#&NG2)baIVku;v@b3~)516;m%9evhoBqrXPP^lJ zI7-d85JY>YGegk&yR7Be$g^&1@NIlU6ZbM!QvAgPPnrL6`P`3Nu|%xt1mMKF`QVB< z3ylk81wrh@+qp+@dJft6>jpVSAa-SWh9r>D;Moxd)ykgum&I46o1sL+0W@LBM2h+M zO9Q23+d#rn&|z5ocXatLmFz4xo{j~3>1O(db0Wm_GmT0oZgwH*MYoLq$q?>A^HOsZ zh#snt7dlbEBljR<^Wtb@-onB+D#_e5WHW~ahevg? zbY|l+_cCV?@7+}8*=~Fu{U=|(s@we*mQ$Z5#Cccx*qZqSi2~Tk(zgqZ@u|oN-29L` zBo=ey)aTv@nzp+v*d9B*Y!Hy$$U)8VKMpb`tMjq-#qv&*51`!_6Vmpsol3V~#XJ=` zGbZ&R@yGLG52H%%Bku){y^B3?>nvUJNN;{w+rWD7-oObdNqjO%MOj`R*U0lE(9W;X zpy$~f5;lubAU{H#m6LI*Xt1n>{;>#?`E3vM3lmeRo4T z9JMg$1~Mkll8><%e>))m499zghRMZc?~eSUGcicp$zs7w^`t)w*k4?9=HdI zth1qS9=qjdMq|8!xpRvH7=->sD%-$|jc)r!!vN7n}?xP(~|IJ)t z=12HF2-Mv^tRb-n(&fU|$#(`dVuhlg_gkPLKAr6sQKF70f145raNUyn}Y;Sd5 z*)NeBI=yf(wU)&CrxCC{hm1&FKR!I}-&umAF3G6=tyQ^=L=ymy1&!!q>}x66uVI+3 zp<^fK;!H|CC8b`Nl;Kjpwni;^z`7v!HqlG$O>04hi_!M1@N}m6=VM35o!>1>*kTU* zD#+-xW!sX)Jsh5R&^&wUvMnBC6Mt1@8@m1#{EZ7suuLZ_V(+G2x`(h4kTZU!9gj5z z;$wYVK5F;A$L`xJ`PT2?7SR{$#Fg2hpbuE_i9|Em!{3rZSvI)#`59)*b7N)(=L@;a z19Y2G*m(Am1>u6N=tR|!m;xp(3S614jf$l^nLh({O%@qlaBx177@VeIlyz#gJ9$1+ zH4T*65US4l7HM}mIS1dA9V=|31L#C-{UlqnW%u7YCS^>z;Ny9CM54ln7^aXpMM29E z&_HK~8bal#{7923Xa5?ha02ot>u#R@(^&}x{KR0L9Gy;;xL12WY{`zpg5Xl;a^xLk z9SF)wKlW!+Y=~IB7|o-+Pm|bmYi4WqSb`LZB}J3qh2YU1U+^KRSZfKseE-F3kT7#n zT_O{I`C1{!J3RKKB(Q*iu>jdBbQZ$|->OZ=ecvEI@Gs+B?`wK#JOfQ&9V(Zpqc~n) z;;aTnFrZXBy)l+b_~xGIOL(<;=n^?J?(i-bAUp7RgDT?D<>0FuLH)GW z9U};dfI+-KH=i6N?Gkv+=mn%hFMHxLm^Ipwr}@(Xi$VR&%EF{->AidU*?k&ZSHV+AZ;_RPUH~>N@ zP@D{$ba$;Mm$_OyNbP`TrwO>Xt^xX5jnN+HO2-s@4SKHh1aDqG>c9kOaBNq%e+4xP zxFolOR-Tk>w&u7U5~$yNMU5zc$m$w?e!kEB_v4+(Vr_)xrfbZ4b%eT`3BW-6ju=$E zd2#1w%_ckD_A8Q zzM9|L=C6L~sy^5K3|En3!SQ4ml;f=sX{p_jEGk7V0i5eX$6iQh+(mmuq8|f|}_i4u6o+6tiu~Izh8*#XXzS zAMfp|D?x4}a&^AaCIgXy0t7lBm7mkOhExvmX@=ZL@NTM);)1aA@Sy-gc!6!J*!^u4 z9wnXA!AJfC!^YVqPV*g5Y&9!Zs-jq^_DbIwW54qK($r2u(oFQ2NaFr}G~1+%{IR-% z0`B|4lwj+UMvd-A5;M%i83f8*Jw^N_`uz;Mz1P z`ugEzgD0#()WTlO!_!}qHiO*)c`GX|tNJt^+cW#TFRzn$0z)xMH6Du)1)pr9zioEy zSY?{Xbm)|bOuf<$PMAEQb=%H5x3^I=v*rCdSseU?AIu@PXb2CMLDLiK69n@v-H4=s zS*K-v%6FLj8tTZv-&0;n)92;Ow{8p`?OJm426L7;?@eD|j_X|H;_iCTeM?OB8m;C} zxj|y(GqfJjhMDNfIXh=py)LziM>2~xqnPz0rS&l*!<766DlbCo&fDadPVoJ^vL0lX z-Bwy(&wn{Snf3bzG?+8}OJJhO(-W2({{)tsVN`0C?c8{iQ61a(N!G!_?SkTv>W^{A z`m8#Mv((twY}=ounXK<7Z0WSQ$dArWR4VSZqXHENUDAs_OI!e6HuZ zY78P5eL5BJdN11b^&S0sH{s2lk^c@2kCqHlzA32u{&k?Vu{FYwEpnGeIP zACgJ>`UcMIXTRyW!zli})@h!S%*#dZzeX-G=)h{*u*9<3JT71CzPr7O*?(Vmb|-`$ z@dzOt4&ORQnD_*2bUp1z;60fzvmeXNJ{x$Zfcw=z*R+b1F>lA&B1ar?b=D+dtf6Ig zp!9->n1@GOyxQi)Rsr!;am3PG!p_d8DsXP+u9!LxO_s^q?7Y4MAfGMK_btKJx?=}) z4cae4y*RaBvsU@SG<^QLOxyIBk5 z1Iw%N91>H5s*CVkUclK8#NNIZ9)w?A?ApCa#->qDc849QsFWBV zdCxc4rCl~;_a;qzY3rn)7 zEi(Pi+1~H2p53W-=SuVqW>C_*HSk;aW_gpSjy5zRf@^Pz0zZrnH&yg!S?(<^o|7qb z*V8*XualN+=LuiG#yj`?P33)}b|>8d=dsP*l=p+gMux9ST?;o4F?GRQD1`Q7}H*r-Qlturh=ze@Fxv`!1^ zP*$EdYx>*1no(V7yuZt{>Y8gHnwcekM#dl_hI~<2HF^56v(xgUjiQ`pOs%i?2oY6x zs$TPA_-$?;pqbIs9_y9+rbCj?--W)uv?8+a5|SEZrmjU-&Ua2AcES zb(N?449HFW{QQ9%>q)k6zb$ul#zF$-z2jXW5@Bi)E{0tG(Qb%3*WKay`EcLK{BU2) z)w{oK!7-7JgThm9ms; z+k8spw$woH#rx*uLq@0MXVDLXZBSm`ty`I%{j|Vw#lC-XaMnRRo#X2L^ijwH`b+`o zx=UG5+!elrA;*qMI2wz4JbwRF4B>xy@&ognb|^V$L8s&?k-u$Dj>q5?CKMn4OC|Ax z61CKj5W9uplQH$%BHC{**AtU0m^S^ZmqHq)EzcTJrtcM}CVzfFgoHa`&&Sk%zVD$V z_1k0$|A?^}(lvSKx$8+WUB&C$G=)83VKgfeEHJ5|EKyCyc_O-cfxRZchuo`kY2EE+ z4hxwy3zyttCG|qvc2wE4en!m)Rho61o?c&Cs{IUgm$|u{`p7;p$bEqZM$6x|Aq{`5 zHXoE$ZU3ymO!R%apR~>`_5y2*_!y~?<*FwKe%-NRWIwlm$ldmB@`Q1I`U^9p)RrOlX5U_HXFU-L5q4h){y53D zJ3W}HiIX{ba#(jZPk}Q`EnAp-i(eWm)i61+^2~NIoEUPJ{y8yjd?plZ$wUk9gFE+qXk zwTP`eY0G=W$wZ>8zP^L$qmZP{cPHf*N#YjD*Yw5H4fHH;x~JFwAWC(2&-apr$^<*O z1iePGJQmWAj=Eb8>VKBi++{yI%QLDTLfN>dh>)!sRMQpe1@L#eD>PjZn;BGZHlL6u zgnY{1DYMkPHdbErJ%2O)oIgXSPsGOmJT_y}4MN6wVv z=Rm52MZ19`)S!B$W)d^$cX59ad|G|;(XEa;*N%G(N5^2ZiF3K6D_!nPSjM+&8tLWD zMsEI1?d;^Tu~8fx%}L_k={@-Kp&KFU+={aYc7!p+bgsJKinrko1?E^~OSo_@@zGJl zf2L|`Vr8x?O+S7>kuTG}QX4eS)%b`nCJW-59W=AFGu-p<3_BXJ_YGP|;1@l!o_&&8 zO8L3EB9p4GhO1l43_RJe3t9LIk_VTk21q+VAit0I?!&ll1X81vszuxt3Su=NVUb>c%t za3mD|ewRCbnes^kh*Yo6Y*%=bCIn@DpvYzZf zXBk2FX09$dqhKNHrW2=!*c(ylVqE`{jR8%hYU>3;I!J`2S-_cNrz3wg$W%c1V7eUt z>}2BysVv-r-PjAge<4kPLPjxz6I3N(IpRT|S%W z+TJ}l9bb5Lay1Co33qgZS>C(}<(sSe;n+#sAZ9__rJA~79fZW7ny1-x=OnizojEx8 zjEEt6p1Va!m{pc%(%3J*wN_VU2D3yLTUK;N*1t>?jL=xcjDDjt2}cUGo~$5)e^bCd z)iJ{yRZij-~6pFjVd4p?1omHrn^%{@%z)R&U%<=L=4DOc7(Vhzl~Z2!sCV)Ja_N$S|*~ zxK~O7f9c}N+A<^gjfo#qhOX87f%FJhO@)i9S8q(B+6}68Ww27xq`$jU?5n<>2@ei> zIQQLo&1XO>6SB4sLhxi=Zgnj%)FF{FTNM&0=6>7eASVh0du$r7iaLcT}$}S=*Y^wR zVryH38W2KwRH`I;sZ}p*2xmBbopR}BGFDIsn)1M6(tmxIhGXyL7c_1ht->e{^-Tpz zeiZZVpNJxxo5c@yCXC0}6FabW(%9<@w=pcnBzsj@`Xu~v@NCMPw=78l6zz%7Rd?u8 zolD;Q^u-QI4p~PgZl^A(N)0Wy?ijlu4=PXhepl7I9NiPKe`&nox=S@QaQ`e{qvO+L~(&{983tKN>391vjkdd`GuI2k~04!n4@%bDS! zHf6Xf>~k7}J&9mw%r(Jq`+m-pX4dW&VC$$DyX|bK`dv zcamJSR}pvBY(16TZF{wEKL``wW;^pVGFlPf;lUs_WUvDJn;WUx^y*@*hMOy$#_b_w z8`GbeHiQS#_pSfbz3h;YJRR=A$f;D@g!kCBceNXO) zz2Lo({GnkZ0CyENQH@-1PhFKh^vB*v-PF{|RL@fxBTPJ6FBut@JlZj-wa$ZQ>2SA0 zM`S%>=Gl&K4{k&5oSjhf?;>F|i$|vT(D-lTF@E2_!jFtn8q%5J6(t$u^QeA)HBV*b zhL9_-v&&farmJZ&*ZhaO6n;q_-_LdjZ=NyU_Ap8HJtFbL&`Z2dt5?tHKyxg9h(Ik` z7w@md4Q@ukHiVJY8MTvKu2tD=Wk&nuVd7vvd6SW?81bNi&c7rlug5Sd@0S`DiT!;H z(yNDv&n#Yp=!0Du-4bJC70=pPW`PGai=cnAG3~w(UlV0%&+EN++vod~u~7Hr3}V1N z1O7gJ=Hsv5-db;dM~XUSW7A!c#nLR&hLyEQIR6pT`Fdgun#=@l)o2gawy}x^L-P*z ziI1^o=M;tLYh85z>}-a&|I{m;_d70NahJZ2sNMJ(`3mu;R0Gq9Y}&a@^T>KQr>*PB z`x9K};uBJw!k%+&KrzcGJoT^RI~e{CR$tjH^yyFZT}>QCCRx7+cY&yIlP&3RB{;NCr02ewEjElJgdMXk;c5}cg-xjOsvkD>^sbuw;>WA-Ni_B4HJx$Nq0hRcpmY=C zlODg9;wGT~(h#C9BYd_RE;NtOMv?H*5jrxvdV=WoJK0YD;1%JtSLg7~YTc5FprXUnc$LAP?c5B=ysyqCCXxjX zS^|1eOHB*&K^T;72Crd~1}(+mJrSG7CkvSK6Pe9P0cG%bjZgl51}I&V3=awuuU@I{ z46Gq+)dbV$IdswJu_u5P=wRfZ5fk5TzVg!Atam*b97*xTdiynkVy>Ws?kX-tk{M_b zZq%pTE3sI6ezIU&?Ma4gX7QV<{`Sp-jKz-;iQHN9{yQW|J+}~jp9sDed1Jp&=gJJR zKiL@ksE1F~%jgBNCUxXuqo$tTmkAxg;)w#?pUpfKUzQ^!4_a)i7ec0ty~)hF!ig5D zD=O~fM8<1%f}0SzK6Fm*A+s1|@RT7nww_X>m(d7)zDFPR-@Oy5JEFoli9H3tOCt2l zHtKG`N)tSw@%*cw(P0KQ>DXtLfh*hzp(IW`RivdrnRm#Ee~vUzcmS1k^sN0FmujA4 zC})(06*H*DG4UgVeA%z%d~Aw$SlxVI#~^G)bO|rENZ)DAgKM@%GhV6iE8ouCRL2ml zqhA<~={{|VArXj^55cRtaSC&LRq-)SqDn77bN=UN86D9~s*43TgFqg!{Cxl268D7m z&@Zh_)>dC9(+k(!%Rn;HU`_J)KdanAX#{~DP z)zUnpJ1Ww3KSl59ZRwJlDxJ=Bf)xQ5Gj{gglK!#>MLp{~CVF4=us1DVX}*BEX1mB(Y-K zP@6?R74j!(*;Gy#)|e34-?s4{Yj1!a&_f-B+Nz&>g5tk5C0u1BftN$|xu#|X%12XE z-Z*i(atepeq_7F3I?HQut4o(x^}Gf?Q~DQ3ztnwZ*mz}VQ(?`I`}c`Hs&*tr?w6}L zBr8oPwC&GPBWtCGuFhJ!Z)0rVdDe&;Qk^V5d{EDl?bk8us9-R(@oX zq{F);vw;ymOEs8`Y@{n*uI2#tHkJvO%dn!ykNoc$4g^0{gxxsNgMbFLx6Q)2)xdas zw|;L$CPeRzaf63I>5?x|v*U{A(KWPeu~7|v+qT{ks#3!#+n@u7O(9^H``m z^p&gFUpZL#iMoI9@1;(IdGZVcUtN7mv zMV=C-@$om_+-=Wk2UBvKY%5TutbM>pRw(^5f6TYE#I^KMCA)1n_n z=mSRrs-R@lUe`-iOFO4e)K8i?SN&P*Y-ND+s94s*6SwU^(7$gvLEu8Z%3uu#5m}=< zP!=BkXECcYG}^DTjjJIOv?hK=3nvo=3zuI);DED}Q0 zH!TjlsB?d&y4J;A{QGD#5zpt{=n4|WcANiel|5>SMBtovZ${{kG_3|Q>{o`)Ng#g{ z(#43$JMS&s-)dd8`PXHNv{{|eNPzXo%(q_wsR66 z`(9tPV4m~v3A`Y|FV6PZorIojK9jlmF5cyzNuAb<7kO2qq||h`??+EGy_3V5@+l8z z{JR&!IX`CpsZ;NG??Hhy|8g$A!T!?8k4jkANjj~C?+ukpOGc(Ogz{VeH> zC(|LH&U^0)3_rBA(}_D!mwutzQ*%^PtCV5M;d=ScgV2-W3%iD%$Hrhh1&)7~_MGcT8%>`tZD-4QknfjRC@kcgpe z#y(4)fv&u>k%=o)0_v=t zV(@6)Io{Qf#koBMudF}Wa9a3f>8>gtVcjN`ZZphAZ^c6~GL=n9X=5=PP(Qxnl{3f3 zv#SR#P7@BKGx7ed;vtfNkTO~AG{Cz4V98Yi7jslhW!CQX&+Z#D5C(Kei-*tZkNxVq z8GT8;?+*_tn_JEv}t zcw}+P-fedSDPsta;vw=Xw;r^ha$yy_T?ey!&Pn8@MSXZa*V50Ap8Jh?nJRYsVk8O( z$O>FBc@E)OLRx}`RC<6o|2A#Vw`JGr0E93u)nJCH{PkNtgJa~ zBY{FT)7;bfUtD1^OIRR4Ea?uSkpA+nJ>*AS-Mxv4iRqMr-gh5bKubO#lh@y7A)mv@ zdmn!u?q0E4PkQRKl1nedu}%C7|LVsuut+XM|^F+Q4=Q%xY&cvTjq0g8< zhCf8WHbv7P>1UJ5)bC}H-akhQdmVBUymT7A$L8PDdK1h3-oZ$ZFr0yaWmGmZBA}eN zA_hWbZTGa5$sOX2EaJGu*M5`0`=0$CNlf&tmEZPvS<5(z`rZ}9sBx6uDa%vW9^|8Kgem1CweC@s( zXbG&(+daLr=BMYY<=AgXxMzv2qwsS`%$edp3GA(W+c~OEbdkZJ!1_rvLN9U9qI9mD z-SLNiKcR`ieb_q4LlYg;0!%MRsqUz0n;>HF_IC? z`)X%~dN@6v1-^#jqoCqi-|SB$h>{EJN-xk&#WzAD?fZ81$0>mze?SsG%(^_THR!Gm zi@!zzarZ1u`gir*axsd>XL(s|Fc#p9ClcJKcOcs1(^QXAIlKESw`=|xuorr9T4fFV zGWXnbhSbu?nj4gNlWET84!SqtGWtAr7!a@;Dt2rfvum6PH-HL90>dbEm%s5e%SC68T+_A{E?yxu1fCBsCD@K~wvcl)+?81+c7w;Ke@; zR+kpQ^-TneyIS92ByMtL<&*%W8O_Y9ruGGP5`JaY8mJgW+G77$Y=!U-_e+XTOkK8j zXs_jk(reb zx9Fc4xXy11WsW{q{P{NNw#vEMs91dA5dN8Gx%3AG$VgYWS(I=F{5TX{EoXXnnHFd_ zcJqEx`Ni=<@f;Yi(B?e*X3jO@*Kd$EKteGTOtP>^Y-NJQlw4uAe?=^_lieS6xLq*| z+H~tlK>PS$*D5K%3hkziG|`h&@&M_nVR;YT_&a!+ z88)E2g+WnJsQt`P1Fkc@0qnd5jGLE?PPWQcD7_v5OXM1u1(q;KE{mm|$Wy;54}O3{ zF@l<3IGm&dU7+Hm`@_5aoAo}PeK^lsc}nuo!{c}j$I7S2mTN+)K;ME+<9ZGSg!jX8 zymut5y`&2%v-(1Icc1hS-kF%lUy45=dZ_&I)DU#@qeFiM;Ze@$7VF*K3kGp;I&9hn zR#;4afNCp69|@QZ)NHg<#8p2N*s$6gRXXFjVmjL?Xf=-D%Z30;d^CV~tgLjDg#yQC z4V|>b7_QZBvezQOY3(5|=#p0tciktxzC>)mug5ZQiY*@iW&4a?v?5`z z#J|(w?{Pmrz>)WBn3zP-3%!3Ecvnv~O@f93cB*lW%uz{fJ8AgjC%WLGHAmO*Q$s)H zZnX$lgt#$v63ekFu@pM%Y;p{5%*qt`qk+y(T+=C-%)t|0)0Pet4=?`MUjG4}T9fM! zODHGw%!di{VPWwJTwR#M&PclnpZLhPgUeU{1hvjsBNRedV=^wouzvk3+Gu$EQxfTa z8~W?)8Gyr?dNG;dla>CtzlQ9Bvw3vuwi|p@HpYhiNB>=LgdcbViSFs2$~hxM`UpPd zT+fPUJ|EC@$8^DX{eh(I;U@4w#R+;MD(}Vvz55uY9$(BOt~<(lGnFWuVQDE@w$YyZ zQ49d_O1;^`hb0J_6{0U2&zw4ipuk#dTQd3e6 z1#%dhdroHmc^E`9b%u7&O|+;Nr3029=lDyK##=X3yB0L7d8ThS8^Pf~HL0XzRfxxR z#Lk76p$2?v<&TqOYg)MH&rcFf|LxCb*N95JhfKimV~i*CA*5POR}z=1ThXg&Ib~{QwGY?@ z`4DPTro}%L2CHDz(Y91TPuKonNX%m#LIOXRGK*! zP*7~9G`&+MNBat389c|;0d`zwhg+WiJc;qjPAfbScb&X3UNp|HmvECI<3QNf&&SCj zn9(y`_CA_#wWA&{x?Iqi(Eu=CE_hnpoBOAVl~l=xGdwv)l6W}>FjvXDAMJE*g#ibz zAb6?EQ`8fgy`Q^i$R7@fZMCJp-aeU*3jsm)a|kI7$j}oG2})i- zbMwT*+k`;d@S|Ov{Mibe%aS}1Tha)TE(<^aSr(P3m6wA03JmZ$3sOY;VyKpYOjp(r z@fcV*^;kHUR*zGF!fw%b&Suy5mP0kaBsTP5x8hx)It#WISnAi;XMj461h{OP%zKD> zHd6pT?(`g(lFFR_Z0{Qqf&*tm8joJrg8s>IEyX=NL$@~`RBv0PQa3gZwbz}lAE3o+ zcjmyO>@=K{O?i|U(1c=V55;`rA&vLREssich0lp-y`S=KVW#LZy_uLkzf4WZ@-)Z2 zxiPq><$d}X@vfK39n1Kjw9C9+jpOa~_~cdhG57(a@Tp#LFb0O*H)F36nJ=_Eg+?E+ z?lnkM$=*(w;@|qCH;_2J@LB5SE6oPX=+z2x4w%Xr9b_*gVZ_A^^1s*qfaBDE&6D2f ziSVU@T9;|4tpGK@CuVW6i3u3PJ(^YVD0L5H03N|wAd*pQ+uDVQ6(9p}lDtYi|L8MT zz69*et}&)uxaMlZ*Q{9mTY1KdWguJ2z7Ic3w6_J)=) zmwFqoEW?k@g+|gIw~~s0Qd}GymQ>x(hirWEl!q)!o zi${L%IX9||dW2|Xl~n>1D75E*I*Z5+EKFU(LU3vrdiX1F?pRj4DTmTZY;2GksUb7x^9RB}s#6ePb8pOnZx;lZVlO%XVxr{p zpAIQ>QFsf@MHp1`3CQ5SZR><4d;3rSRWf}3^IClKqFIH*e;WQyTl>PQ-zK=_>k1U- zBH~RIRHots*q6SXt96hu;+b!*S$Hm za_rhrwyj0nUYKmt5!oN!-CWz!in8t?kd}#P^qnlZXXrcH927@7{Q@B$}+yl7gBM;)k)TFVjt)dKDXjKYIpd|iBs=DPZm`M2p(?{H3>d!>&Ggbqk6H zM64ho`YW?>Eoq7Nk+LZ;`_&{Ib|TC zCa2VtX)womu2FmTC&qR>xPd@&-+Tw2D-Ja93-b1;gM&}4Gvt7K2wll{2N~dA0bs-7 zJ%$?_rPY!DTh>ytb#B5>3(5tBhyVn_>1z8%x|7}ixn|1&$$ryPZo~ZDk3T=P^yPww zHg)V&{X>(OmCr21R?4VUmVWY7=ugBEpgx^84(1Yku`!eD(x{b*o~{OrpN3~oBaZoP z2&rV{yNHy^(`u5$wL%}QcKz-^^b#sd*vIih6~8jZj=nnc)OcA9sGo+b{YLJ>@E!t| zJeqYcsp-agY#R6OdqHT2w5~>d;_6mCQs>>r<}=>q`XyH+1&H4O9cri3rKt9ak+lq9 zESfO3%c)CvL$E2I_ar|6!YqtJkVe+949k8z?}tw9QxUcME^w$aqQ!9(N#)y13t1Dh zU6hLFCxV>Mbi;0OJruaSv+fvJ3R69G4twDL-2N?w84#sp(8*NyZ#Mm6HlD6NGs3d*Xr@g<{<-l#ij+V$up7|g z-dw5+>5(dXaB(J_XM3zD3Rz05e;e;(U;{FK*;CfnU88E?R%P^a{jK3k5f$a}H98II zgpG|gTomw=az>LW+Yr}8`~=F+nHp6EW3XVRi?E$#*K*e%6Rv~eO;Z} za0R)Z-IqY-&qNW;s`&_rz7xxG*u}~kq+V*qd2^`bq3MP_g%c zN}EKqCF?)`3;2=@#+A39otK5TKLK9dPqkm<8emt=g6Dqa%)%))Fu6d1T% z`W(Px{`L#@f;b41G(=h?{?*w)IMEB)#B>=GSuv~vXS&UQA2p~>RsRu*9EXm&(NTb^ zsIt*HYZmp^J`1#%LZThze=u=(JoPf_i#C_TV^6Cl0&o*z@QQ%#V<(5ae`{xV?^?aw z9!xV9Fn^N-DTmizHd_0t38HXo7G?2NWcP3va4()o zFxEf!+(3xV@!^)iq(iB23ToeYY61E9-5i$a9!Az}4V{FGo2`YpaFn?x;2UC^EyDUp zAQ!s>$sbboUxO<+?iyfux#<}zqU#?Al)KxHeFo^7bH*0o^KXlD`ZZNc+pezvd@46L z*C%f^jaC6N0=Um;2MhAAk?-hl^$!V&eTeKsL-Oi=I+Iwrn8XZH>IoW_**JqC>y)}w zr@*lRigo~+!|p5tf}`LE<6K2x;;frs;Zql~P1&Y%NyQI@EtUsF8jg&v$Z-B+(eMF# z#s5}gfr(7~npzk!uoVz+k1kuNFMFN6DsVA|YZvLO1Op?%&AI5h9Ts#t5Qa}nj-A|B zRK@RBQ&;b{>KmmI)3c&rhb;rA?bGM|WCacZ7_nqt@3TAD=(KJxo&c=P~~2m-?A zPkLqYMM>k+_e+UM)Q*=BGAM?V(IYTxtd*(iQ5xIUC3!%l=b!pUKy5P5TIK?W-O}*| za0I;TCRVt|oP8t!@)WOEbZpVvPAZ!JB@+-*9ysv_f72T{l>^SJtPKd1ip)%+BJ3tj z_3rlwM%Ee90Cpwmg^<~Qi}LP+Hd+9@Qcv+`0ox9u|F{II`ls*e_q?o-1@^3)EbQHuh8EC63x#~IMR0+ zy3Fqf1yvIt_wAg}&^j0*ydEH|r0k+0v5)X{oc}a4Y3tU*ICFGsNR_~{9DX94Y?h5K z2KmLK_RnaTjIfhU{%({{;{Kl~;wTa>1@CgVyWjAbAksI}HlK-D&y!?SGs8OvQ2hzX z=ak@Lc1{hdV^~n3a&_*d68;?LdjHK0-9pK?_+<1#V?BMz(^JTcyD}L*<+l~HKYMD$ z9e;^k?Vc!bX2B^a9Qe`-h(dexao|=BZbpDh6|i-`)a&#y3Ro?AbuM^V9V0oG&&__$x-?h(qc(?)lM!m6`Biot?wUXDe8E6$(fIb{plUuK zVgz=Gy#SRRU>JI1zh-3x?!b3sPw}*0lG^-r?jUr3e*2&G_r`3y*YQpuhw490VnGwz z>>+DL=&rBwU)FyMmHBIXI^IrQy>03oWo#(G`+dHdKT*ZlmfSCejG4eOm00?aP!T1i zTt1Ki%hf*Kqlx8HNRfVD$IKdQ?kQ`d-aPth{UPgIhIOprE7M}f7RVWM*n=AIpNrAa zAdvW@8)bZIW<)_o#A~3+=*8-OztmKKTG?svo>{4~5=4B9)h~kz&>5Hw?$D-48%+NE zlAiSfpVITYc|pa#pdyXzEsDs+TsDBO?7b>1kpvHH??Y^amTlWX<9jS7fT#HRwa<9o za@|9;aw6nGrwgl8;q*a$f#XCc9d7kPZre3P*(N%WF!PvX+dAd({UbO(;=gXg7xHi8 z?Pda#o*arisfqXo1PST2oSIiqHIZW@XfHk`>}m8ma6Ek_7Cs*dR5UX?K6I)>JmS)@ zAf)1NqZP>kch2TS+kR$0u;{Kb(Na@8mstX=m$UO}9L8~G-63#I`J!ot-^A=Li%ufe1M z0G0Zf_zyaG7bJxyKJSbVydLusY!$Eh0T`HSDSon6+9iwsBGBIt!N}K zb4Yc|(FZ#XPKVrPkAP8*h)UMnqaDz>8^-LRLKwY_bRwFz%7&%7*~BswmDUH7YZKu_{5b0Gg@?!XRLS*bFh{gDNsy z*13|1kk?{wIu=YS97gT}35m&GLdE6m5g@|Xfpd@7<0M>2yVhTEp0MxR0 zhb9Z=eGe+X!TLM_S25#HW($&@2UT5NZR_lvxMOYbr|a~?ZI~?az9F5+v6v>fXUMvMw;=sz)BKZqtp4*E_nQKbp^{+l@p6926>ceKe8Qk8S}g|3)&X z^tFut-tZQG>CXE-W-|t!Y^QMiMg`h&7U@!HW?(aV_IL*w09dK#IMILG2lYy7XACnK zg$C1$XhpU<72898dov3!;l4fC^@r}jH8f+miqCf9#g?K;nRZNEsI(z5(`S6NLWn7F zw_YtP=1djE#a>2X#g2VF)9-D{U>mOLbGsVa_XU-Dae-t@3ag+Y~uZE+p z4h&dB$)B1>6>D>WEB~Ld@b6zeBc%Hjx<0>;QN2lsfk91jAQys@6o1+68sKW<{Z;Om9L#B!A4I> z4M0e1`B_61sMesP)g||Q`dVuibzeSMgH`q;1;5ndMW?xwvy89z<94`4xvK7gT-nd> zGDqKHdepS-&-0%RcaqkK`7Za?t9*QqZ+hb+ogA3H5so}nmpaXyqmdB}&jYa%g!6!# z`=68cRq-iVM`}pe!0G%NJ>0FFpfS#2+4k)b-sEVGvR=cUAZW!=qg=s4u|Kz8@D(_5U6SkSWQjaio} z4b6L{$_9}%mj7e#z2m8l|NrlEjLZ-rlu<&6NF;j{vdhfMP8nsdg9Z}H9$6)s*|Is3 zY}wgV_B{46kL!8*{(isj=XYJV>vsKf{rUT++pTwT&igf=^Zsa~`p9*rMe_=go-Ko{ zJ#|FTsX zoVil@l^WD4+P`woAymM8_4xDFqx*Zi|2dte&Y1h2ph}D+ zdr4~58P7{H;-i$V~R|Pe{P$!bJ2b_qX0-1mx zOYzMQjIvK}mP5cL9TU5DSnjwJDk3)xw3Je8@1^4^)UTau&}2W->Oovd zOfxd%Fq+YB>q8>7n=tYV^P+B7c={UCtxlUk-v0Qua!0J4xw*p)Z{xA7cZY^|;Zj0` z5GY4%+*FH*?pB}M2Th#D?@PDOP$)`mLF2YU5Kr+Bn;GR z0L6o7>$B?Muo%E0ajdW7i0Vr2)qOWkjjlQi818-t>#UT_<8N^7dTD@~-hev;DN;ia}{ zYZI`{NnY0x+)7-wj~BReE|MTpv;@17v(}cCMqrx~>v>+Bsi?#39_@K=PKNs`&!Ata za(}ML`QIWYtF9Mxp8XTXgd>XbyR!xM$ zk^ZQ@9sUtsdG-gS{6m~t<&mHP(CupWE=4J{*KJG zjpgFeE;gpm!2mnACXH2i1>4Xk0@s;N&-(OuQJz3I4)sYlaBhD_@y>-+{nj+ z_$fVhbUYKCo4>4;eo5)nyp}Ul#cbUG*0d}%OyS|}(}5&q`6RDZU-kY;-gZLVm;`pi z*W(e}Z~N^ph!8&f3~?t4Tlr2o#*AsGIA2N3*y zURLQjJPF|ru`l%|2EUe2Mt?$$v(1So_$gOhy_r@`2V+a*lE9yF3g{e13S@;B1UtUVufd6D9-L6RnQM6qQT7K6s5EwroHsgM;d7lgC`=K}Hg1^RH! zZ~D1Z+Z*A;^6)m^+hmIttJ7%AlF{XUJYjefPU=*v&?|C=7(UriMgUt`Im z1eoVZ#T@3xCX>|k^p2M_Bc6M&KJbrvR&{mh71W@Nwi7D)_&>7gyw=Te_b?PrymvzY z{Rbm1Mu`QTfw^<1#1Tow($DN3in0Js?GgX! z`_A{)goBo)tBQJ#9i8i1jGF_~FP`M;p$cDwF&R}bPmi(sa8ADbV1PZC{56zUPQz(G zM)2CV1-o{^1o3Q;aDVJMAzjB(?zGsHJ#8VOqf`28l^zN}EP%$#O-vxpw4%mppBOP{ zRy{eWP1fFhF|wNjP_(OK--&7L5@KJ4Xv(b=2a9{e3)pip0OW~O^iYjg=_Uag@BK9C%y9hO#Ed3*Z2xrq z8}H0uhDxqIpuo?o%Z}lza^`Ny9EqPw0DF|8q(^cdUv$Y(=KOlcU_ipY>brL&qA zw|q=K=fb9olz8+VVTmgn+lwPWC()(dwwhEbpO37c>q^p1p#&!k@V;d1=FyHL@dBpy z76tgSj`<{SO0>WRS7C0}&xi=7Y?ijM>UU=!!UM^^UmaKBGA zlwETd`Stt-l!0-t_PQkc1EC)>qev@owcVYRpRqVWf~okd7qIozn52!biXwIRk6YNp zrUC;E-Yg+Y+@ARI(}MkpLRl2h!>385+I5^~e|ajWIN8DKG({Te9!58YMnjIZ(%A<) z@iP2y@$Zt@cZi_+33~dhnGZ!$2#Oq|Yi)NA*Hb)Rbes)M^w@?9;ne2=W<09%tc$kw z?)hk$HeD*32IFW|EsBn|OUv%qH5|6+Lc2aTu>`Li2BA>ZiokMU-eWb-?m#pzr$8^& z;9%6{Nqr3Of0|7xJ@$d%yHIYjxXVNpa<5K&4hM2n7r+gYyh!t}vou4nEO zfNPL+nTT`qVrBs<-pAoJqxN>Sl)GS4!MuW$MCGuge%0T;%K;gGk+h2ZHlzLRu{f8Y zS*N1n!!+Z-hTJbALQT*A$ySs)X^p)F?Ss9k6VTUbn5tiS`g->|1uP=)KsbutC+Vgo z+$H@YVA3hU5Ai*k&3y)XB(-#c!3l(83RpIVGmGy37|ZYPcwnADC@^RR9n^yI)=wr*xt>y6B3a!Hrp49g!r}$Tl^O-tT;^} zhI0X;82b3!y>bpsXceP$1|U{URxxN;G~25b=UpTA50hPVc=&-*^>5j9i_d2xH=*4` zElzr+iXBZz%+7Zges-OWD5< zS>}+mmovW{+wat2CQW{*z5Agi-*F8&Q`#M1*$m01;JXuSB{%_!SL_ zTmstD!*V;%wjVu=H_`Dq?l2q3wF?*N1BbrJB7|-WoTbmj%hC}>)Df=X^1?((t4QG| zaYCkxIMYdqs*)i$hl2}6-d}Tu+9(bC2%EMBWKeZ&VQdBE$$Utn*DNj;U%&E1VFlP& z**9-Or3CJnj_!vlwB-b~d?;V7M#F(;o958S#OnFsfM5Bc8c?FCuxHK^s0P`+zs~&? zh)y>bN!g`*ayRG^c=)pqCZ)2w;knINEQE~+n|5zT4|8Y*tV^oKD^$FE1EU#&22b;s z>3)F^9$XkeV|u@reTrkKP>#P!9f92b^RotlxYwO|2uE_c?krnd3K(t+|kyyIKj)Vm3P{YS$4t?V-%WJsu$NsBOmNP$Yyj*W;CJI zK=%5p*ucOLy2TGAwwH+XdN8BFp{&=u_a)-R3n>*$#CD&GF@A-iQ50RcK1wgTy`~PsuX!98&v0H=D z3{oG*s&CxHm4zo4wQT~Uo`GfpcDdT@GlSAQOfJTJ8P5SSZdiYsMaKjvxGG{~w>}gs z$D`Gb96-;+>N?r2hp81;>#Ov5+kLpx0y~N>hCi-eTX0eCrVFt*QdiHVdUDC;7QyR0 z!8XWyHegNpbGw_7;oYhdwAG)kB+yG>bdTN z_nxNOnLSWj@l+qG$_6}cm-7gUp=2{vdfYBVPqnRU-aFf4*-y`RgmDXZL|a=gV)F{1 zlAJm8O<(uMnZU?PbYnex8-E&|AQbtQe$~4AG!}#DE@da9lP!}g&27Ibf42nIKLa7; zy28 z4r@9XfBc7f$!X*y-*DROtob{SQ&g^KpXk6d(LoqjNouQ!s2w5Lvqt6TO2dpYs8`tEI%~e%i7^t2}v{Xw6Q)i%J?-NcJkTwiJM!QxNmuahzglD z8!E=9IFKfa0UzNDsjQ{5{}lE_c%_{%og}_E!Cx!t>WYdbl!z?`HAM0K3Rqv)muq=* zG2kpiCgyQ6B;dv^yG@DF9Rh2%HY|}VJ%+OBAM<^%1NzR?7jkKlm?~R~bk`&`mjI9} zBpC3T-4YZKJ?tRsNIRjd-H97zl|ElN%dlkv?EC5?sM({9sg&l0+#|~Ln9^8i6Th-* zd_lxKsWvtyLD(9~4OWU9%!4oE@R_p-oC#eY0NfFC?;Vheg*rribh5^OY_`Q;q}KVq z-Py@euQoZ}>G>FfDdqPGK*%PZl@bO+4FZ}YriVLQSf*XxWhf(q$XGyb&88^{)Abct z6R{rz>@T?h&{|y2>*QDwoSo}fDG*=@s3vKn6gptmFVM*|azi z1_i)R-T@09B}W=V#gGUJq3fEjHrtf^omWWv?(>*a^(33Dg&%VRTM3u_O62K`--NG% z(F6lq*j?Q1$J|4)4I!>rof&@Y&qK7i=?$} zGScUapAC3?-8nKo^?Q>A4qKAkJp*kYzx^=!dhhG+3A~TM>i8HC11!fS*S21VA%&U93n{`A;ORsAm-6coETpTnqVo;|{XBg{Et|ecDf%2)9;| zw4pg`g~zgvo)I%3n=|5$QW9=}k7Q z!@gthp@K|5BFJ+cTn)cHy8fXfnF84~$OY!+m%I^L*$k4`XV2o%?%B%dcTm1io()2q zoGctg#!wbD-1r#nhr@|Ms$#Q#tvJ}u2aj~uY*(y0efo}ZR}g}h7!}^twdD7T>CdNs zyvkRz2)w{wz~T@vNOd1P4znu24qnOHJ8UVEWKW%EOzZoBSE?|K=DSBP`{vD2XdEx^ z(Z%q(bW|7fR>fJ_3{R3hOrhh;CqoBg=(-QBKQ9qjb&vH1O8x4e7ZlX*zB?(QpM4GG z^!Q1a#739cV8Uswon0`I1-+}l1yCes*VZcoxAZ(+*m<(^DA%WkGxOCB^Nj#W@3!(! zKio3rl*0^m)C$ht2%J4ZG(zxdttxXOt+o7QCfddb-GBG)k(>70s?AuU3+rY^<{#V4 zKXq^}Kd;RSK5tPzc8iFCBVz)u{7M@R16{Lf!}YolU103I)5OjAr!ZiJ0;sAqR{~;U zUa{~)p&UfwtV+Buo3XOzN59D|5%wTZ@fo~-f?Esucr~@`E8-$I+w#!79^~D_d#EKJ zQgShxWc<}rH74{i0?k>vz-yo4zI=Cfo)#9}UW_(9_Yn#SIEB#~fLoOP+aw89XfXW- zon;kKw7>VJ2g{|tb?H(?sGXL-=i8r0r(Ym~^+q3eZpC3WnAM_THX#$+&OfF%&|}S9 z)6K`PbNppuXpWsoFHuA^YZ*y9z<7t_4Tzx{rIk4vwk?qb&6xbA0y|pq=MRr;eJX7#u0^ znCniN85gs}2%8H>;2HT*Df|`E z3j(RIn-#MH-X|yfRqq!-C6A8&#~J`NtMu&r&hfxJwH&w{pIzBP0=mG-?&j1sP&DeQ zh@1(Qc{TKzLRw~31bbXcax9k@?x1}oUZ~Wh_14Ltz5{o_LJ02fkGUGYLbdU!9p6>X zg#a1thY1KsH|6%n#x`KQd zZ30u9(5lrNP79XXt6Vb{s+#iOf_LAnZLj37su`!m(wPlT|x zReNQ=B`%Q8CY$wXToY+DL%sXFrR0#-U(VVDe-%ygrjcK+EO5 ziHG{x{(vS$knm|3bIL=5qR<`=TWU0^Q^Z(UHQB#85eavRI#@6t=R_h2gKffx9*h75BfQmDjpTVo=A!s zP+#i4$p)!$j#Xx;@Qrvh+&s$ueKEh{J;o|K#h8rUIo(Jr;y|&Fo}feHMFELs+bIpp z=4{=*{wyUUViq_6H6*V;n{tbl8KYBT)Hi;fxwE`6!em>Cu26VLtgf*Vt1!6XQVB|%ukJ%dNIv8OiXW%5*-E9$MKU6_U-w_#7{&byp7^~Zs76#^xSo$l@3laZ@U~jLP)DdcFPr3y3d|O z%p#*G*a=Avunu-Y1gb_eh~AyDd@0$CKjI^Iy~m&n22M!;s)#0lA}16O4)f*Tc#yp~ zF*dN#uW|nn4?u5O?r%BgVB57hL_Zd={H8)+IkeWsr2H65;y zg7(Ve%4V`+gCj57t7P8l;fwmCyhrrEF=EDEvKff8-5W%E!Ia^bx6_>_O^zI;7Y?e%M_ zzGFAZ1lvcjUaRrl6E#Pc>NLO6bC0`kUMgLWNwlb#1&QdAD**sh@z(3l%ERoAaPQqL zh-hb?V9QFP7RpYGJKmqdWsc&+(20}c#>0)n`eupc#c(%xYa3J69u`!;^I47Et4q;8 z^AyWnaLvG*iVl?JR9>)#&i)KtJy;&}0z=8AlsU~ibpyd9sy1jQHCb4Q6=eMcIz3d> z5MERk!B6Qx!!mSx$v9EqTLbQ=8Gu}0iT76(0Y>ZJF>g4of`(2a<>X4p123;#O8+)e z9{~vH=u5+5naQ}TwK-0VN1xVrHjamC zf>PHj)R*|rpvIPAIYZbh1$trO36Y(zS*4?_x)LV!*iRC<3U-!N=K-<8Hp}PN+iryetbR(yMRvGFtx$K!e!Tx+RUeRh ziCXfv;LBrHDApxF`0pvSr>5U_wyq8D_?Lq^JO17Iwl&MpUCWSyjvqhP6z63tNnSts zfs5dn6Q64*Z2GBrNx}Ck$W>;D&O!D0Yav7XQIRb#u${e}fEDZu4HKO{X5JiaPu~1^ z(ekv9r|#i%a`UWbgXnU_^4Y%@*kRpzi5dAc9*Uwys1YKjX=_H``w(}0^I@~&V$kgJ zuP)R?TeDN51%+i>quK2%st_kUB(H3VjfPrra?-9t5 zXmujwlsW<#T6uR*kZO=mKXaKVZVqgLyVq5W$k=oK3a_=x6@{rLuf|^5|B38l_*0mE zky}EpS+vSKH-F3jk*icezV1s$b>P>hkNb?#sRUhmrmYimlLOil-n;7W!1myr0DBI7 zn$l0*^`cs;beBYznDZp-dXH6Hd;GUHtl*qZ>J1cQBYaZzu}sFa^28u z#m9fbtzn@T*9|?5&#rr!3V35rt<{g67}9F?wu(cc3kCF;C=8X+3n(NhVwp<(l;~xv zJv@TBuU-)vN`RyhB)RM1{*IV-AF447YqKb|P3nFLoNt2HB6mQ9XQ%*(&Tv@JewA7J z)isdyPDYQc2kF*jZc6R&{H*MY$zHkXA{`g-HJ~Zxo+^*DbA}z`JszMrQ*eWQ9rA-V z?KA16gzGcs=bn=UoM2Bnrv%fMbO z?SkAtckia@EP&S+QT#c#U2SsIyCFaF6f#j2ubig6R%h=5sdx~}6>9fu_P#iC%d9%j z+a;0kUt^})Q*g6qnv9u^N@kI?Up3mRS>0|I`xUsi3LpDEc^tFxAb12{q`bcserCcn zho{gejg2(*(bD{{ff>yr=Ixc)ulAz@^>A#?|A{Ckj^VyjdhI8xlvYk{M+hcV z3$#fqcoQz5qAy!i9471huw&{T6R?D$CzsL@ccvZtPtmmuBi(PAKLbs=WYT7gkO=Wp zvOmp(Q`xE)7}b)unXiIL`rcz?^efIiuQ-~qg1(Ii1b3}YXdxBI+@W!kW6vbNC3|^@ zP_WKQ+J8;FG=<;F>Kxp6Ob>X>rW37NGZqEpWW51IpMam~K+x?Mp=7#l@arrR40^ISp<@6lV?az^7A0@6&8iYcFms7 zXYN8?RrYUbXCPx_SHttnPS81e@+$$eqScV|FqnjjR_8Oew@ZwKg5A5*NXP0RA3CEm zTPqM2@7g{G2iG$eV6D=m_nrJ-Mb!RtHBO7KPuOM6ynHQ<3TR=|7gF`#2pvCn3UQ(+ zmaCXU1Kgf2Ss)lI%%yYP8w3 zq8C^`SRN~|r@a!u|G=u;1vF^8=|v;U(uz}G&y5mtg8gB&zcX{QlQ5%pT#fSn8Ch5g zl7c%bzcu~ILDcaLv9zCW+0^*cmv>h@`_*yXJ39k|`+?8ZxVKNFBbdD+7lgGc!H1-LoWbpdj$2M}uj{W3Mp$Ho1ws&*% zvTH^OLTxHb5H0do^VYPwJ}Zr(CY%aL+B9pU8HKPP0b`E$=L^2*oOti*9N*)jSiu)@ zEKPho?5da&r3hN_7>m`-C;Gp4 zhN3YZYgJ2T^$?L337UTZSo}-hN7JMlrh5Nv3q)=*FqpBb(1BSg`w7XC{Ie(d*|-i`V|jFpKZkc_WjbU z;eOEmMnN9HovQ3Nxz(+2(Zb@y(>;}T)FiV8c)ROcAU~-;n_H;Qhu#^kRAr=3L)QV; zWhpJRMA%x3UL~jw;OBgT`csR`gANb4&az35uWFMec)YRKeDZ5=*}MQ`OqY-rET26_ zuaxTIMrP8X^n~3QrNq0H1~s%P5vkUT+Z^t!5&aq+DJ05ZViYE5F=y$ ze7ElT32nVRNat2UsazQU;3N+u0zObJ|L`G{3y%HIFnN=ceS;oU}pEP5?$;=aw@s_fN1Fw@j z0ve~i3J;;a6Fi52n&dXFUa&6jA=<2jQw2)8TVqLDM{M)Xvj^P$?I`ofpi>I@Q;+n^ z3xZN-_d(wK4D6##M$981&1Q8U5y{HVr?(f)GyhN?^DwlJ?s=A zVt{ZW6o7=ko1MjFG%fNw!!`bTr3R`b;j}Ee=8<|;AY(&=LX>$CNy`k+O!rfQJkS{zoGYEM`_`Nb$pve)%zmic!bAIc?a6Zl<>i0Q$2zVBZ< zYS?4lANmBiX3Qt&ApTZsE{2I6?&`V`YyA;SdO!ZLukV|Hr4j=N2$WWQwsL731C_+U z_t|ZWZc{5>e$?N}Sr6Oiahn}BM)la2&R~N64?~oL`(oAIN2yfKve6oi29R9;;6Ox! zICo3uSjO||7^iLYP{iFzj&wkJ)>ZSq`F5N6cRE+}05l=e$IM@j=O}s;+Mo6s#JQGH zyly2=^sjH+1N@qvgr`oKky&#{HfASa+*A(KChnIAl zE?@4YT&sR}RX|Tg`T2NI1G6w^JrnRlk05ltTjrK0bN+KZbpUjp@|vClfmvd!Zo(!F zN7i43tw$7pM{eJ#_!dQr*3QX4GjuL5U;SvZAh@8%_I(_5R6NQ`DH)T-i#4ixL)*6t zU=c)QaK$n@z4;ZV1bvn1YmVdNY~u7Yq#m*y%+@GWm~|7bRetw$SSe3BnA*L2YT%~I zJ0mNfzR8=+s4w8wmupv)2!D0iS#vlTsYmHjrM;Dh9!2A0_v&f&iFl{6%t`Z;BilW% z^u9z%u(xBUNwrXBF+!_#*!Sp9Z>OxMe5X)0645;Yi|k`_Dbd`B!$DI3ej@8wQY0B!hC=HfB_5ohA(wfk;Wo(i#u zjJgFX>@RmVT5#Q9A(S|O9-*SR{7}XWr4cXmfLZSTH&KBdOj^CCzSf8K%+n@08uA{a zD*4Q2^~OwwP>KK?5|A*C7bl>SkuppU(iB9+4@5Jj}whBQA zeY4fcsrq1I;%|49?MNd}{e(ia9`TozIPch&nT%*PiPp~~t@VeE%e{of;Vfr-Hf}>4 z*Vijx;Mb`k-FS}Ls}K{1dS4n@kTss|d!Ye(iU*JB3;o_ng`K%VUr?h#rk0f)HRX{j zS)q!EOjQQ+50xeY@Xgw>=C@s@OrK~jlPH6;RULVinnsqXi`7RhyzNey)(hqGqOp?< z6^H5lBvn9$#3Kmy=p4m<-`)$zZkk!Z**L< z*q;xlNG{U9ZnH zoEAf%k3OGlfuZ;LGql>VqWlk8M^mMu947{_?w(246!f?VfNg-gMi!8ZE}G9*RkBC+?st9OvUd$SFhuRX(>^9J({|fcA9_Ho;FSPkHmpc7V@^Dm7 zs0m331ZyKEy$}z_E1M2tso|=Mx-$o59j^Bb8zy$0RU!~2Zh0F7=Weu5p@+N0K-*Nd zZrW|4jm!N|W@lg}?Nfg77Imw~mvKi&y%VT>_A88^tUKnA{>;w%?&|k6WEB=s9R6i7 z%tb@$tEKex3j#MY>-2p!NEdACuKz;A0SEze*3 zS;$wYa+9ncC67l4KYf@UuZ{M@2ZYJ4L4v@l zkSkn!q*YmQ8<;t1g8dogB`7OqtSNKJ{nH&>g_b|wfb;CSXfay9jYzyTcy!$5WK+I$ zlMdhIFc(qgCix^DK^v5Z3uIzH*j2apNaUJ~Y2L91z4}MuvuC$jz8J2#loJaSLf`lL z(4ZAGNVg#&g|F=PRmfm_HOa8=A=9ZRN~BoOX#-;df)IIGO6ARjCP$Cdg2TPK_L2N zSU=8rhqxpj^3B)poLfY0LefSejZ7mn^f?+gXoeoGLHy12Z%eJKqm}A!N^-v89!E@r zX}#1tlk2|^T3*9$UsW0Jn;DDCI)gF9ELm9h3mQju`AX_tw+HLA@uFPx)HGM2+5|`A z=pYABy+!21`4q$v$`sPVRr2L0->JL#LtK31rQbonDB|gmNr>g*HGJN*#k9DQ)S|Dy zG+$EI-4)3hO=FN4Cf3m&fZ7%Ehmz(c?M&CzCCqh?S00L)t@Tw!THz9tHI({?6|+$nx^)Od?rQs2^=u zSiAl*&$ho58Hzg&FXq3{Egb)Wa&P)1>pSj{MZq)k*hEQIGRpvbdMTfSWppR9#DQhK zjr%buosUT?-3BPiHlhfErY90Pb>0E3R!fUBU!D|_Ms`M9s#U=%Cz!&y|8;WslyTL* z!#2Mzz)GV`ZHiE?hp_3ygSXjI;);9bG3I0N`&9`{r)i&qxcg^BRPwi%UAs4i_5yRt zn;p|YyE8Qje<}uu!!DG#CGno5wYVkM7YR4cm1`;&?3xhi^L;m$c-$~R1DWvAAC9v+ z)!cXQ_n+YBwrRR_XG1!@BJ3a$(kOcWdqcQbu8(J@&?1Oxj{DV+ha(a3#_4aZTY}xy zlRur)D!W$dReGyM0s~HccK2JUa@4Egs#%6v;=b`@FVELHP}=du%9L*eA~*|30z@9w zO~gyUq4?5-TCaVL;w|@lHvVi))P1|R0fo(>aRvg_1|sC5V_ZDp$zJe*3GYVJjZ1g3 z6~77AB0N(MzBrl1j&adddyqi8yKcdg!mbsA3(s}rAMPxDR{WdGOW&;N9nksSdh*u)tE`yE9!1PH|x>+HIKI0&8XG&qmt4kI%Gzf zj+9c}L(cw{JO#Oq zfB=iQSeq`Zro3`6$R@%O$pv-)Qs>tA36#x03dclkGl_Pdcnl0?-oBkPaR>%E;&MSH zQJk??fE91RN(lw%NiQDjnFce+oTApd!^rsKNBbUk`12f6_SCE}=he$cu^A95taed1 zdezWZ-0(F!RvpPnvY(;{ES1_4;U?G0I94g)4!cOI@-uwd1*z`uX=M?=dzHff@ID^< zDKdhY1x&%nTv`99=3(cJO+#)9h&lVENkbcjG(<_O-Bi!YmVwh&HC3a1>G0hyZ$L~O z0eWA(UNsWsy(8ZNN~LWvSJqYTLl$42G70juWu(6t+;oEL2PU;8N=TH=&6ob7PH=Nl zQH!3Xpt?Js+WGbms9??^R5ZX99GjY}IZJ*e<}K^$u1;)sMd{22=PN5pe5%pi-d%*6 zCQ2N%X9okcrDX42<{|U0R{rGb10C*U1^xrsv_HP8A&EP~7TBfkB+>+Wjgr3rZpCDP}&X~{aEU=Z$~hC>YW zwSPQS8t99`JVJdu@4vegTkR=`(f2tm*Ggk>fpJ9i<>dX%eP=37QoF!^3&2LH11Vqf zGR!EA56KDj1?Ke0vx&+(eE(24S zl;%XgeBkeR`-|}|KsK?jx=+*EyI*h4{jJ4HVGk9a;#@;;6DkK?H^SBs}@-?HlPe7C#BWFu#3> zvTYHS|4c`~cbD|drFSA@iCk@yE}EqmVqQxq)H?a~pG#7D+u0^AAF1*hy_K?#GWnS9 zUZ&f9f$2(s@A~uhmcL#NPYSOT-nja7d&SOKNO^i|^eb;>HG@aXyKb{qnyb8GH?F+& zC;=?4l+?-Pd9h z8C)B|7vj8Xr<0uYT5cV!AGK)sEpY5$#$7(C5A>gr6{t7(kzrOl>{~u$+7{j}L7o%T zury)xH7V%SmSGHi0(UCuxKH6-HJ?tQocR0B1KPZp+p3{v25npuHF=!lh4tjd-gb^Z z&opZ*C%Pq%)$2F? z5q^c$SB;{$Wl0v0ecCDzqSP{#DYeO|Kll^eHD6WmDVjSk*(sXqHbv}6V(S3m%w|U{ zLgI0ZuwsRh#!b08HVCCCPu07efJ?$z$CynjW|=It9vh$=D+X|BgNq0 z8_>GK=tQM>h>lg!%G#ToHw1Lb?`&fV6(j6>3e9%k#$Ne!=X0EaXbL_&mrXy|qz*01 z{F#jw{Dv0Np%*iLSd1jKHd{1M`$eQ!20mN=wqz#F!ylGvTwA8Y^orH1$+!GdAZoF- z()o@Z?${}s5ni^GIO3g*sQ*0Q2?>M~ATI$Xi*x54>WH@rURAj@)qd6T4^(=WH(I*f z3zioeoRoYR25B6c<5I0tNYO6&sS~j^~Yx30j|bYQk0vB-bWuH0{sfj zIl>L#idT@(l)!@xtXhINij;4a1%gAy{c-h1q?OVo7&gvi0FNO2Q8om9yWcWYaJF*D z3`>qF$bx^wjX*8axXU~8>qOa2{e-7xGQ+eZj$7W)2T(13JzV=Hf5qkBXF|@apvZQ* z*?R7bYGWHjVK`t{Q{nsAMv8kwdZAn?nqNF|Z8VmTJR}XeRE?*NxrU;fl|dFWSjaN$ zxjo<~AH--V+zy;d5_kg$$?L=syK=XQ*P-ia6?eS#goyjf^jEH+9rqF9y}`nO`x-)I z-8b$bn65WpI)Ttqq#>T>D#07vP>22(e9a{2OI9*zsa8`Fa)FG&uUvux&5 z=osJ6^efmY$#RiSIiZhYU((2vwp}#7B?sSg|EI@5)8keew44SxyXy%TFcBK~3K33q z)|5e20R+msi&JKoZyz0P&4heZ5rMOaIGyh5eZ*qrxL2020ITn{?@?~o-k;k8q`2Qh{mCoLeN_^`j7j!!Op230!tt}4cz{-A{N2p* z(tm3Llj~;-;o*9ei;;Ac3HY_U6Z$*i_mqdu(qGYjGAX%bSU~pyvvA)1+ZBYQ(X#(6-}}at$!>ao=lj@|uugw1nn-s9z7-}do|AxMD1^H82 z!uIw>@eH_uXQI|o&?hAr&_l>s(PYt}!aZAa7Qe{!%wchpKI1s;3@FR`4=f>~F2w0RU0SVnDiaT`f^ll3D0r`z#nC=DZEI7SKKXD$Q+ zyM{}Sn-fdPl1Y2#iLp4tC`-u+&lM!@K;PpLXUR0X%eHz#M8a4QOds{z>$O=$F)@6ww;um*FSz-!1qR-aKx)UE$a;UeyojG9xY@8T5i=9Y7WISp#XAD#N5khX7$PU;(e>X%{>T4P&cd6n z|J(oiKVRwpj1sIR*K=!C^Q@FCqLkL4b9K#}Kzi@@%bw#j&%b10=f!E^;W;U9kxaG3 zzB`vM|K|dVasu5-s&D9%V<%&;+1SdBW|oa!B{p+R9kw|`CA!F_i+LUge_{Q3Ynk8J zwfA;{l#i%}^uATH?`B(qn3E|>eDZ&;T4ib25dU9#-x8Qwx|Z`Ulm*a_yi(l4S~(kM zR0PqPzwi8yEdL+Bkf+@PNvd+^|3#j8Vn1oIKWiFb@Y^U+yFN}yz*|3`&nYZaLZMJc z7!dF!M2OlC2Q)V~Qx<$U?in5iRg`k`no)IB{t|VCU@&;V+3OY6FaN{eM5G+1`+(zH#Hm zxtmWP)`!ZwYvIL6|Cg*zp8lb0g@>*On3 zK)JM;QM8TXi_d=#1akR88{>aJh-ckCV&8wI(xXz7m61U--5maXxe(2I^5yeq;zBg; z7MDiy!ckXK2tcO@8}bV4nJZ=f@n#zY?qaC&1=&N(STnM=bc+QK!4spbo!kP>pQ94b2dMdLu5|&yZ37;|Kn^V zcC5wI?=w9H=3F#nSJH{Q|@>;7v3DE{L?#x(7g zWOs)L$N%kIE+KRI|MSe3puvv2PzRl62`VWOR!g{sWb<8@s}EJYbp{yLbQZ-4n5ovt zOVd+BgM)ucIs_C7P3wBTKG9EhAGI^6^LArZRl9Z3scwfsVugv?)I7;81}}E7Pfb9 z-jL(}P2a?g{{8#+qnr1XNiN-;0KGN^x`SG_qu(U;CfCi3N?4E}P+M*O zw<*MP;|JsPR4MvW6}w@brJ0iQd;r{o5~L?MEE>W|`hS~QoSKx_P_OE+lPu9(>W%Mj zJlQl6=?fWl>6R*fJea!&f?i(SxCweFNS#mfXVsM40LvmND3(wE@4$V{E=xNVrHt}& z1|NVc;SbVzEPB7o31X`re{hGGmN2I4J)cz>)!vJcxw*M*pnigCNN1W1TVeeHuc_xB z;@X{GMthUk`XRk|*;{~oU`3pF=@hD$UWb!(2i0AzbkBUW%&u~!q+=a^-SnWo*=^8{ ze=B|P2-bZwR%O@G!O^i9KSn`8r)oiYaPM&Hue8Qw3>(5LcS?0VxC+jHLRg$?d&l7AQ>Gk7%i8z^1a?zB|Ay?@ zruiM@kTfJoqr6#SBV0uho|-bpu1A=-IEF(16Wru##T4s_eSfC9shwR8cHz@I@6>rO z3I_glgeRNdp1E%tqnU4S=nsp@H}rg?Usf_KEr+DKw`#Y#Wu_z+GolInzgH^>TX(&` z0g7NSK&kV$eJV5(g@5qz@T}+NBl!H^V^C3} zIywzU^(iUu?R8eq-^g8$4E5ffpIi7>HUz7gLjnP^bqP0~FuaxAY~8aZCML#fFbkm$ zwk6}jTtz`)(FMO5;5xdFpHknQL48DkVX4i>;^JO?5~a82LpT(Iim0N#6kD~?>gekq zE*WCiCWOozUwKNwpxnyM&Bd$l>`5!JdU2AIlV1a&GEu?ni^h1=JnC@w$Llkfo`OV= z1zZ*z7+Bny_LH?th@MhgO+@cxet(u`%R=v`-a<3M?#l=*K|a6o zje_UqY^GG15C=QU!GRQvb2&O0rSQdxBw@Rq6S5%E%YP7<11bI_QJp{)&l- z`H-92j!gpPYLH2}B}2@WLS+(fj7q^3fNBc7&ko8=N9R?lluwC3RM^eA1WWKnvMl!2 z|Lpw@6?{73HuPuM^4*W^#ePt8YlW|x4i|&Wew*gg-_J=b3hQe|9$dgV{-_ZA7dDlWmzNi->K#&! zs`)X9^ZWX2FZALM821rtM*Ku6oqwhX|9*=w-o%{=#$vuB|F*IbjSkidm)`qH$r8@S zn}1(lTK~al22H{4cFPt~8jUcs`0s$9Pq>QwpW^oCEnx}o3otCs5DnI7f4Wm#cqt>g z0ip&gi0!ormO$wEuk-$j0ih}VPq2BscnMsOQ7py!Iq$xnezbLk=Y58%cA01YkH2h>@+4MSIK1b$>o!vLM?bkvbRFp+Ws@?eN z_x@5)p1XzsGeF_lv*JQ30hl&3)DHbJdmHojU}_~WG*CPC9dTC^ge>pWrm833Jd-5q z(D=o$^zR|utt^l1>_Rjjk+z-ch!<>ubt?3*0fB!XH_7hrv+-tcLDGlWsdnR35H;J{ zp>%tV8{7m55*`JbzCN%~d*M3r^rV)zj~bL>beZc!BFxh8+v78=xt*Pz6^wFH`f>`z zuG=eDt<99c6q-I!$=zYge68PRddy!gV300tUz4MX^(_k4dQY5jNKoidLY zIS@4RzS)2h(7BS#sUMr~`V-hfJHu`qExgWFk}Ix3V^x#PkW}-?(L+I!kq<&Y!Wpfv z3j9jYuOduPEJ|Vn+rtAgLp?Zz0m}P!;N!*jvL~Jbdy3eABmv}#Xyh&3H;DcAh^Vix zk6#T<_&b3d#@mN<@io`XzS}?EUn~m(dI+OZOT5r?p|}KhC$}1Zcclc4U&5A^45v0- zcQX{c#=cIq@##4ZcZ=94EP*F?{G54k_okqlRO8lrb+-KAhLP@I~o8gxDL$WX1dXj71oUnLZ<(N}9?Fy3yMG5oIm zhpk(~u4f!hV1v=E&!>ktwML4*Q?W1S5<3tC&TtXOLQA#;(okhJ@Mny#7ucTvF_3N3gY%`_`M)ACLcT%P_`&*y(iMVwVR zlM@0X&BXbdiS4IwQ>R{bKAOr%*>*Bva`0A%PiMCJQ?TMv9^R9w#gpNdix-{;5f#xx z8>(tRZ|tK_@hI}q`}-|5I{*C^G{yME2Z<&%*m=fnHx|=rrl*$|8u2mbQFnT>B6hbF z(kxAlKA91_PwzZY`k*IEnR<2CUpXskq}iDp4nEuL<<&2-`TMmgf5t#*P7U^43rO&} ziB*)7O6+eHz8dQ4Z5hF}HQSp%DgOlya?`VtGV?vwiUoEI<)~#`={EpywW7(#=S+n_ zQUz*`o%9eQLf2Um;#Dos1a>+8#_#O8b2&F}&hDsAu6}0DJ9$dieEs64vy0r(!Kw!r z0MOT`E%n*#;c>jZBEAD}u5d&%a2Q!R>ikllgl%TWE9O|4$=;C1EET88h<7>hX!~4W z9}QKf6|a9pdwjSz7VB$Rz%#7Yr|Zc;TA*j+JCR!6hvaq_XhZPNptjxLr$HF_J;vom zZtf;atrMp4H85UDMoAX(&`oQ@!!6gJ)Q%zU4s zdoO$K#*NAba7KDZUhR6?+@n#1e1aFnMbJm(GVn4}6YU+lGOUlD3R zzd5FQp@1vb}kY?lxy-T=?Q`g_$|MmVxv!}nVQiecZhI-kqcc@gZwgYHm z5RetV$NQ(#WYaHAfg(!Tl#(z`0&GO zZ~EKNLF;9*W{eCC297lFDhKc$g~^h3n%I^3(BF1RK41kT5PwUoA2BNGnwrP6`T^pV zxYJqG%2lhX?7TRUmIjP>^R2-MVK5N1M>+wDG8t*V8`|U(|LDd#PlktQ9|N8wF(w|$s2EEqhe>2#<6ERuz19dGWvcO zl98l!p5DL*9N6#LHNVzI>^*gGWC7$fJDRw%Rg8~)$5!ocY%AGb4a%g{%QxK*O;sZigcM*AtFq`nv7_{cw3+jg#^Ta8MZn7WLDAQ zFs(lL*@YEKcB5q~_3R+umMHOCXsQ{+!S2s{Far#8BR{{oIUrmAT@_98f!%TQR-OYK z=A)B3v0z;lNbh;%M2V+>UWw}oCyASC+`NnA?c}$v)sn#;RYxp4Qyi@+;tN$79GKa! znM<|qnxPbaZE9%fB;vWosx4ZL~m!GpI6)2l?A?|G`-^I%v^ z6~iodXIE4_z>h@3}j-UtKu_oX_9vGLhcXwC2=9ZmxKX}HLEn8wpfHo`V)@)^EY~4hu zP@CP|V{N0x+stwMOpzEFi7nNJHBtt_;#en!Z)((e-G8TIPK9xrx4eDV%z_eoCiKwd zf`Yk(vM^Tfa;;#niONH+m_SYz$8g(ed4v~54|qE*SgzWT9X5i+De8cZ@4dH%0SO|< z45)KyeBa4&Eox`|rL~-^9dJR3x_=^V7_JxTMGlrx$ZyvJdrf6ynBKW=2V_?aCl>C_ z`z7Q8>^+7}(Z1`8S!>*o6=16~N}0N|vrIl0(swXDAUo=a$CJ@aL8QrM>1qD+G+*Y0 zm!cwzz8hEMgD*M%)q?>+O=F!D|9Ga(95fpWF_ z@JDHc5(NcMvUDnLwljhK+P;5J1Kx#y=wE%|;>G23j!2(cymk}>(;<;zlB*#A)*gIm2|J zRD%MXeRW&3H(7<+#t!s}w0hgwz6A}H9U~tG@i;k>$D20|(N*`h)M;vHXvFYb+83Ew zMtG$e>-xKnSYz$*xc+$XT9xvya%PjGdMl@9ov<9cSBK~VpL&m!CAQ*btqq{@YTH*ek9`{FC>NvX(UV)%t{_=Q`w z+W9x=jLxqqm%9Yzzju}{BA29~{2%YnhJ$sxGF)?d{#B3s9s2W%TyXcX$FYC4*0*W` zr*b4Uio+j{!OO=pc?}KfVrdHbDu4&y^i|VGU1NkD*iXmDWC&jhV43XX(g!`!!rr1k z_ns5UQLsHBB8ZDFkpT!-nBoMYr9U29@));Gcmr!4 zBY`+wn#JxQq;=`K6Lv@pSW+5Qid^RKuW1V|{#8e<-On?xVHyZBI$JyA1{^=;+rAnrsY&ldt{p_!Qz#3#{5arNgb_B<^G0h~Yq}#Dk;>yU*?;{ z<}r1XZO0b|mVET^hA0;D=IDH*7(3(h@}aILq#rCnUL=D~))}5$<^;bzClDL+)*l<( zN6|`?_ToG9T>~u-NN;75)0l0)tH_de7=9hvx0NbIK1Wz&St8w>O_Y!JnvjLaGLI8= z1h-uQVU&P<3lf<_G-&Oq%Q~fiix&jkNhT+;-;eAy9{o&td0>l$H-_>RYjR=>+IB8- zzt)ENw83V;D*AhGl1%^#2%1^zg;Z+bb@nEz8+XJFqmnB%>pU^mUl_g=hlO>BxOu-rjkp1x5U z#295U`W8h>h1EG(YHx7~=4kHa%km_X0vW6%sXxMHk8k-EL@8q%D}LMEpJutP>0Q91 zPlW|XUHtuxcd#ZxiP+m#cxZlB@h{ekMYSuJa}*k zb5g?VAeAhYl$Se5+f`VlP#CW>sk>NKZKSa&bYWkv70`WZqhOZWR~D>E6uhEOQAn8^ zb4ZQEl9+I-K<>nm9u8i|xwCf~d_xv!%O_4VFz(wY6-BX>j&V}~E_@iZ$~QsWQ;Ews z+D7Y7+T*JO!AVyA9v?+EFMt|nOZC)ADvjW05WLw=F!a*e*v%L+Oz@QLg`XWnYG!e! zz?aecTNs2fZTPPZSHKqw7th|Iwd%mDIebqkT<+YQH4Q87g+t z<*khVCHUKg6}_Qsb9DBSDUl5hh@M1ZBnu0*Nl#+sjdtUIB@g*j;u5~m-Nh3lZ$=?i zkC9hEGJ&hrYOMs;PqS=v33fQLST)9JZBLeQD~Y>SP_h03r-7Rh&MgY*JqqO2hgh69 zfP&23Rv`ayplH9YkH+-MZ8q-y?M(RT|HxbBU)6U+H@fMPntoZ_|KF=TCb>3NDRLA= zX?F%iCFie{r>IwR|Bat1sx*lrzo4iiiZiF4?-o_B7Do_eON h^S}EMig9sUd)5EE(ngN$vd+~h&td1${{q}Y3_$<@ literal 0 HcmV?d00001 diff --git a/labworks/LW2/Untitled0.ipynb b/labworks/LW2/Untitled0.ipynb new file mode 100644 index 0000000..9f3fd0f --- /dev/null +++ b/labworks/LW2/Untitled0.ipynb @@ -0,0 +1 @@ +{"cells":[{"cell_type":"code","execution_count":2,"metadata":{"executionInfo":{"elapsed":524,"status":"ok","timestamp":1762638357164,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"},"user_tz":-180},"id":"3WM4EQQ6Rau2"},"outputs":[],"source":["import os\n","os.chdir('/content/drive/MyDrive/Colab Notebooks/is_lab2')"]},{"cell_type":"code","execution_count":4,"metadata":{"executionInfo":{"elapsed":5,"status":"ok","timestamp":1762638370573,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"},"user_tz":-180},"id":"nDx3fL_nVafu"},"outputs":[],"source":["# импорт модулей\n","import numpy as np\n","import lab02_lib as lib"]},{"cell_type":"code","execution_count":5,"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":718},"executionInfo":{"elapsed":448,"status":"ok","timestamp":1762438438052,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"},"user_tz":-180},"id":"ORPfnGh7V8vA","outputId":"b8d62e1b-e7f9-4aa7-828a-915ef9490d57"},"outputs":[{"output_type":"display_data","data":{"text/plain":["

"],"image/png":"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\n"},"metadata":{}}],"source":["# генерация датасета\n","data = lib.datagen(8, 8, 1000, 2)"]},{"cell_type":"code","execution_count":6,"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"executionInfo":{"elapsed":16,"status":"ok","timestamp":1762438440199,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"},"user_tz":-180},"id":"LcZFQfYTW7hr","outputId":"81161c7a-2ff7-4e96-9880-cf70369d0eb0"},"outputs":[{"output_type":"stream","name":"stdout","text":["Исходные данные:\n","[[8.14457288 7.96648176]\n"," [8.16064924 7.98620341]\n"," [7.93127504 7.92863959]\n"," ...\n"," [7.95464881 7.94307035]\n"," [8.01092703 7.90530753]\n"," [7.81962108 7.93563874]]\n","Размерность данных:\n","(1000, 2)\n"]}],"source":["# вывод данных и размерности\n","print('Исходные данные:')\n","print(data)\n","print('Размерность данных:')\n","print(data.shape)"]},{"cell_type":"code","execution_count":8,"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"GZl-6hPzXfxt","executionInfo":{"status":"ok","timestamp":1762438869706,"user_tz":-180,"elapsed":169453,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"0256b085-1645-4858-f54d-3e38555bb5a5"},"outputs":[{"output_type":"stream","name":"stdout","text":["Задать архитектуру автокодировщиков или использовать архитектуру по умолчанию? (1/2): 1\n","Задайте количество скрытых слоёв (нечетное число) : 1\n","Задайте архитектуру скрытых слоёв автокодировщика, например, в виде 3 1 3 : 5\n","Epoch 1/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m1s\u001b[0m 1s/step - loss: 60.1481\n","Epoch 2/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 44ms/step - loss: 60.0581\n","Epoch 3/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 45ms/step - loss: 59.9681\n","Epoch 4/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 59.8782\n","Epoch 5/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 45ms/step - loss: 59.7882\n","Epoch 6/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 59.6983\n","Epoch 7/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 59.6085\n","Epoch 8/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 59.5186\n","Epoch 9/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 59.4288\n","Epoch 10/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 59.3390\n","Epoch 11/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 59.2492\n","Epoch 12/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 59.1595\n","Epoch 13/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 59.0698\n","Epoch 14/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 58.9802\n","Epoch 15/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 58.8905\n","Epoch 16/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 58.8009\n","Epoch 17/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 58.7114\n","Epoch 18/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 58.6218\n","Epoch 19/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 58.5323\n","Epoch 20/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 58.4429\n","Epoch 21/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 58.3534\n","Epoch 22/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 58.2640\n","Epoch 23/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 45ms/step - loss: 58.1746\n","Epoch 24/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 58.0852\n","Epoch 25/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 57.9959\n","Epoch 26/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 57.9066\n","Epoch 27/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 57.8172\n","Epoch 28/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 57.7279\n","Epoch 29/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 57.6386\n","Epoch 30/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 57.5493\n","Epoch 31/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 57.4600\n","Epoch 32/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 57.3707\n","Epoch 33/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 57.2814\n","Epoch 34/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 44ms/step - loss: 57.1921\n","Epoch 35/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 57.1027\n","Epoch 36/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 57.0134\n","Epoch 37/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 56.9240\n","Epoch 38/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 56.8345\n","Epoch 39/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 45ms/step - loss: 56.7450\n","Epoch 40/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 56.6555\n","Epoch 41/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 56.5659\n","Epoch 42/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 56.4762\n","Epoch 43/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 56.3865\n","Epoch 44/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 56.2967\n","Epoch 45/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 56.2068\n","Epoch 46/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 56.1168\n","Epoch 47/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 56.0267\n","Epoch 48/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 55.9365\n","Epoch 49/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 45ms/step - loss: 55.8462\n","Epoch 50/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 55.7558\n","Epoch 51/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 55.6653\n","Epoch 52/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 55.5746\n","Epoch 53/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 55.4838\n","Epoch 54/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 45ms/step - loss: 55.3928\n","Epoch 55/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 55.3017\n","Epoch 56/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 55.2105\n","Epoch 57/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 55.1191\n","Epoch 58/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 55.0275\n","Epoch 59/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 54.9358\n","Epoch 60/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 54.8439\n","Epoch 61/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 54.7518\n","Epoch 62/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 54.6596\n","Epoch 63/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 54.5672\n","Epoch 64/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 44ms/step - loss: 54.4746\n","Epoch 65/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 54.3819\n","Epoch 66/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 54.2889\n","Epoch 67/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 54.1958\n","Epoch 68/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 54.1025\n","Epoch 69/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 54.0091\n","Epoch 70/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 53.9154\n","Epoch 71/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 53.8216\n","Epoch 72/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 53.7276\n","Epoch 73/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 53.6334\n","Epoch 74/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 53.5390\n","Epoch 75/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 53.4444\n","Epoch 76/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 53.3496\n","Epoch 77/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 53.2547\n","Epoch 78/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 53.1596\n","Epoch 79/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 53.0643\n","Epoch 80/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 52.9688\n","Epoch 81/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 52.8731\n","Epoch 82/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 52.7772\n","Epoch 83/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 52.6812\n","Epoch 84/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 52.5850\n","Epoch 85/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 52.4886\n","Epoch 86/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 52.3920\n","Epoch 87/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 52.2952\n","Epoch 88/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 52.1983\n","Epoch 89/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 52.1012\n","Epoch 90/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 52.0039\n","Epoch 91/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 51.9064\n","Epoch 92/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 51.8088\n","Epoch 93/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 51.7110\n","Epoch 94/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 51.6130\n","Epoch 95/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 51.5149\n","Epoch 96/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 51.4166\n","Epoch 97/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 51.3181\n","Epoch 98/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 51.2195\n","Epoch 99/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 51.1207\n","Epoch 100/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 51.0218\n","Epoch 101/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 50.9227\n","Epoch 102/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 50.8234\n","Epoch 103/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 47ms/step - loss: 50.7240\n","Epoch 104/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 50.6244\n","Epoch 105/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 50.5247\n","Epoch 106/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 50.4248\n","Epoch 107/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 50.3248\n","Epoch 108/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 50.2246\n","Epoch 109/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 50.1243\n","Epoch 110/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 50.0239\n","Epoch 111/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 49.9233\n","Epoch 112/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 49.8225\n","Epoch 113/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 49.7217\n","Epoch 114/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 49.6207\n","Epoch 115/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 46ms/step - loss: 49.5196\n","Epoch 116/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 49.4183\n","Epoch 117/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 49.3169\n","Epoch 118/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 49.2154\n","Epoch 119/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 49.1138\n","Epoch 120/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 49.0121\n","Epoch 121/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 48.9102\n","Epoch 122/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 48.8082\n","Epoch 123/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 48.7061\n","Epoch 124/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 48.6039\n","Epoch 125/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 48.5016\n","Epoch 126/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 48.3992\n","Epoch 127/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 48.2967\n","Epoch 128/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 48.1940\n","Epoch 129/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 48.0913\n","Epoch 130/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 47.9885\n","Epoch 131/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 47.8856\n","Epoch 132/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 47.7826\n","Epoch 133/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 47.6795\n","Epoch 134/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 47.5763\n","Epoch 135/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 47.4730\n","Epoch 136/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 47.3696\n","Epoch 137/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 47.2662\n","Epoch 138/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 47.1627\n","Epoch 139/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 47.0591\n","Epoch 140/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 46.9554\n","Epoch 141/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 46.8517\n","Epoch 142/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 46.7479\n","Epoch 143/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 46.6440\n","Epoch 144/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 46.5401\n","Epoch 145/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 46.4361\n","Epoch 146/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 46.3320\n","Epoch 147/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 46.2279\n","Epoch 148/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 46.1237\n","Epoch 149/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 46.0195\n","Epoch 150/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 45.9152\n","Epoch 151/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 45.8109\n","Epoch 152/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 45.7066\n","Epoch 153/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 45.6022\n","Epoch 154/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 45.4978\n","Epoch 155/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 45.3933\n","Epoch 156/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 45.2888\n","Epoch 157/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 45.1843\n","Epoch 158/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 45.0798\n","Epoch 159/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 44.9752\n","Epoch 160/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 44.8706\n","Epoch 161/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 44.7660\n","Epoch 162/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 44.6614\n","Epoch 163/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 44.5567\n","Epoch 164/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 44.4521\n","Epoch 165/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 44.3474\n","Epoch 166/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 44.2428\n","Epoch 167/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 44.1381\n","Epoch 168/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 44.0335\n","Epoch 169/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 43.9288\n","Epoch 170/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 43.8242\n","Epoch 171/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 43.7195\n","Epoch 172/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 43.6149\n","Epoch 173/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 43.5103\n","Epoch 174/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 43.4058\n","Epoch 175/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 43.3012\n","Epoch 176/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 43.1967\n","Epoch 177/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 43.0922\n","Epoch 178/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 42.9877\n","Epoch 179/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 42.8833\n","Epoch 180/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 42.7789\n","Epoch 181/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 42.6745\n","Epoch 182/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 42.5702\n","Epoch 183/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 42.4659\n","Epoch 184/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 42.3617\n","Epoch 185/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 42.2575\n","Epoch 186/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 42.1534\n","Epoch 187/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 42.0494\n","Epoch 188/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 41.9454\n","Epoch 189/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 41.8414\n","Epoch 190/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 41.7376\n","Epoch 191/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 41.6338\n","Epoch 192/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 41.5301\n","Epoch 193/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 41.4264\n","Epoch 194/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 48ms/step - loss: 41.3228\n","Epoch 195/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 41.2193\n","Epoch 196/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 41.1159\n","Epoch 197/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 41.0126\n","Epoch 198/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 40.9094\n","Epoch 199/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 40.8062\n","Epoch 200/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 40.7032\n","Epoch 201/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 40.6002\n","Epoch 202/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 40.4974\n","Epoch 203/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 40.3946\n","Epoch 204/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 40.2919\n","Epoch 205/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 40.1894\n","Epoch 206/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 40.0869\n","Epoch 207/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 39.9846\n","Epoch 208/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 39.8824\n","Epoch 209/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 39.7803\n","Epoch 210/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 39.6783\n","Epoch 211/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 39.5765\n","Epoch 212/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 39.4747\n","Epoch 213/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 39.3731\n","Epoch 214/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 39.2716\n","Epoch 215/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 39.1702\n","Epoch 216/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 39.0690\n","Epoch 217/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 38.9679\n","Epoch 218/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 38.8670\n","Epoch 219/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 38.7661\n","Epoch 220/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 38.6655\n","Epoch 221/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 38.5649\n","Epoch 222/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 38.4645\n","Epoch 223/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 38.3643\n","Epoch 224/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 38.2642\n","Epoch 225/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 38.1642\n","Epoch 226/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 38.0644\n","Epoch 227/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 37.9647\n","Epoch 228/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 37.8653\n","Epoch 229/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 37.7659\n","Epoch 230/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 37.6667\n","Epoch 231/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 37.5677\n","Epoch 232/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 37.4688\n","Epoch 233/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 37.3701\n","Epoch 234/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 37.2716\n","Epoch 235/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 37.1732\n","Epoch 236/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 37.0750\n","Epoch 237/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 36.9770\n","Epoch 238/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 36.8791\n","Epoch 239/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 36.7814\n","Epoch 240/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 36.6839\n","Epoch 241/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 36.5866\n","Epoch 242/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 36.4894\n","Epoch 243/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 36.3924\n","Epoch 244/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 36.2956\n","Epoch 245/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 36.1990\n","Epoch 246/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 36.1025\n","Epoch 247/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 36.0062\n","Epoch 248/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 35.9102\n","Epoch 249/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 35.8143\n","Epoch 250/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 35.7185\n","Epoch 251/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 35.6230\n","Epoch 252/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 35.5276\n","Epoch 253/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 35.4325\n","Epoch 254/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 35.3375\n","Epoch 255/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 35.2427\n","Epoch 256/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 35.1481\n","Epoch 257/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 35.0537\n","Epoch 258/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 34.9595\n","Epoch 259/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 34.8655\n","Epoch 260/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 49ms/step - loss: 34.7717\n","Epoch 261/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 34.6781\n","Epoch 262/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 34.5847\n","Epoch 263/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 34.4914\n","Epoch 264/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 34.3984\n","Epoch 265/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 34.3055\n","Epoch 266/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 34.2129\n","Epoch 267/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 34.1205\n","Epoch 268/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 34.0282\n","Epoch 269/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 33.9362\n","Epoch 270/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 33.8443\n","Epoch 271/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 33.7527\n","Epoch 272/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 33.6613\n","Epoch 273/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 33.5700\n","Epoch 274/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 33.4790\n","Epoch 275/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 33.3881\n","Epoch 276/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 33.2975\n","Epoch 277/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 33.2071\n","Epoch 278/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 33.1169\n","Epoch 279/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 33.0269\n","Epoch 280/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 32.9370\n","Epoch 281/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 32.8474\n","Epoch 282/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 32.7580\n","Epoch 283/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 32.6688\n","Epoch 284/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 32.5799\n","Epoch 285/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 32.4911\n","Epoch 286/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 32.4025\n","Epoch 287/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 32.3141\n","Epoch 288/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 32.2259\n","Epoch 289/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 32.1380\n","Epoch 290/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 32.0502\n","Epoch 291/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 31.9627\n","Epoch 292/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 31.8754\n","Epoch 293/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 31.7882\n","Epoch 294/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 31.7013\n","Epoch 295/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 31.6146\n","Epoch 296/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 50ms/step - loss: 31.5281\n","Epoch 297/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 31.4418\n","Epoch 298/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 31.3557\n","Epoch 299/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 31.2698\n","Epoch 300/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 31.1842\n","Epoch 301/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 31.0987\n","Epoch 302/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 31.0134\n","Epoch 303/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 30.9284\n","Epoch 304/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 30.8435\n","Epoch 305/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 30.7589\n","Epoch 306/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 30.6745\n","Epoch 307/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 30.5903\n","Epoch 308/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 30.5063\n","Epoch 309/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 30.4224\n","Epoch 310/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 30.3389\n","Epoch 311/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 30.2555\n","Epoch 312/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 51ms/step - loss: 30.1723\n","Epoch 313/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 30.0893\n","Epoch 314/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 30.0065\n","Epoch 315/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 29.9240\n","Epoch 316/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 29.8416\n","Epoch 317/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 29.7595\n","Epoch 318/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 29.6775\n","Epoch 319/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 29.5958\n","Epoch 320/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 29.5143\n","Epoch 321/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 29.4329\n","Epoch 322/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 29.3518\n","Epoch 323/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 29.2709\n","Epoch 324/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 29.1902\n","Epoch 325/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 29.1097\n","Epoch 326/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 29.0294\n","Epoch 327/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 28.9493\n","Epoch 328/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 28.8694\n","Epoch 329/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 28.7897\n","Epoch 330/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 28.7102\n","Epoch 331/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 28.6310\n","Epoch 332/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 28.5519\n","Epoch 333/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 28.4730\n","Epoch 334/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 28.3943\n","Epoch 335/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 28.3159\n","Epoch 336/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 28.2376\n","Epoch 337/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 28.1595\n","Epoch 338/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 160ms/step - loss: 28.0817\n","Epoch 339/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 28.0040\n","Epoch 340/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 27.9265\n","Epoch 341/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 27.8493\n","Epoch 342/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 27.7722\n","Epoch 343/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 27.6953\n","Epoch 344/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 27.6187\n","Epoch 345/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 27.5422\n","Epoch 346/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 27.4659\n","Epoch 347/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 27.3898\n","Epoch 348/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 27.3140\n","Epoch 349/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 27.2383\n","Epoch 350/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 27.1628\n","Epoch 351/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 27.0875\n","Epoch 352/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 27.0124\n","Epoch 353/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 26.9375\n","Epoch 354/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 26.8628\n","Epoch 355/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 26.7883\n","Epoch 356/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 26.7140\n","Epoch 357/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 26.6399\n","Epoch 358/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 26.5660\n","Epoch 359/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 26.4923\n","Epoch 360/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 26.4187\n","Epoch 361/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 26.3454\n","Epoch 362/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 26.2723\n","Epoch 363/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 26.1993\n","Epoch 364/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 26.1265\n","Epoch 365/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 26.0540\n","Epoch 366/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 25.9816\n","Epoch 367/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 25.9094\n","Epoch 368/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 25.8374\n","Epoch 369/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 25.7656\n","Epoch 370/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 25.6939\n","Epoch 371/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 25.6225\n","Epoch 372/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 25.5512\n","Epoch 373/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 25.4802\n","Epoch 374/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 25.4093\n","Epoch 375/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 25.3386\n","Epoch 376/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 25.2681\n","Epoch 377/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 25.1978\n","Epoch 378/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 25.1277\n","Epoch 379/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 25.0577\n","Epoch 380/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 24.9879\n","Epoch 381/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 24.9184\n","Epoch 382/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 24.8490\n","Epoch 383/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 24.7798\n","Epoch 384/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 24.7107\n","Epoch 385/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 24.6419\n","Epoch 386/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 24.5732\n","Epoch 387/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 24.5047\n","Epoch 388/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 24.4364\n","Epoch 389/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 24.3683\n","Epoch 390/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 24.3004\n","Epoch 391/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 24.2326\n","Epoch 392/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 24.1650\n","Epoch 393/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 24.0976\n","Epoch 394/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 24.0304\n","Epoch 395/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 23.9633\n","Epoch 396/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 23.8964\n","Epoch 397/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 23.8297\n","Epoch 398/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 23.7632\n","Epoch 399/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 23.6969\n","Epoch 400/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 23.6307\n","Epoch 401/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 23.5647\n","Epoch 402/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 23.4989\n","Epoch 403/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 23.4332\n","Epoch 404/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 23.3678\n","Epoch 405/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 23.3025\n","Epoch 406/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 23.2373\n","Epoch 407/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 23.1724\n","Epoch 408/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 23.1076\n","Epoch 409/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 23.0430\n","Epoch 410/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 22.9785\n","Epoch 411/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 22.9143\n","Epoch 412/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 22.8502\n","Epoch 413/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 22.7862\n","Epoch 414/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 22.7225\n","Epoch 415/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 22.6589\n","Epoch 416/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 22.5955\n","Epoch 417/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 22.5322\n","Epoch 418/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 22.4691\n","Epoch 419/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 22.4062\n","Epoch 420/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 22.3434\n","Epoch 421/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 22.2808\n","Epoch 422/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 22.2184\n","Epoch 423/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 22.1562\n","Epoch 424/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 22.0941\n","Epoch 425/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 22.0321\n","Epoch 426/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 21.9704\n","Epoch 427/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 21.9088\n","Epoch 428/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 21.8473\n","Epoch 429/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 21.7860\n","Epoch 430/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 21.7249\n","Epoch 431/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 21.6640\n","Epoch 432/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 21.6032\n","Epoch 433/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 21.5425\n","Epoch 434/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 21.4821\n","Epoch 435/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 21.4217\n","Epoch 436/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 21.3616\n","Epoch 437/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 21.3016\n","Epoch 438/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 21.2417\n","Epoch 439/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 21.1821\n","Epoch 440/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 21.1225\n","Epoch 441/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 21.0632\n","Epoch 442/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 21.0040\n","Epoch 443/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 20.9449\n","Epoch 444/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 20.8860\n","Epoch 445/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 20.8273\n","Epoch 446/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 20.7687\n","Epoch 447/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 20.7103\n","Epoch 448/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 20.6520\n","Epoch 449/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 20.5938\n","Epoch 450/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 20.5359\n","Epoch 451/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 20.4781\n","Epoch 452/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 20.4204\n","Epoch 453/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 20.3629\n","Epoch 454/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 20.3055\n","Epoch 455/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 20.2483\n","Epoch 456/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 20.1912\n","Epoch 457/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 20.1343\n","Epoch 458/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 20.0776\n","Epoch 459/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 20.0210\n","Epoch 460/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 19.9645\n","Epoch 461/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 19.9082\n","Epoch 462/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 19.8520\n","Epoch 463/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 19.7960\n","Epoch 464/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 19.7401\n","Epoch 465/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 19.6844\n","Epoch 466/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 19.6288\n","Epoch 467/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 19.5734\n","Epoch 468/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 19.5181\n","Epoch 469/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 19.4630\n","Epoch 470/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 19.4080\n","Epoch 471/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 19.3531\n","Epoch 472/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 19.2984\n","Epoch 473/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 19.2438\n","Epoch 474/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 19.1894\n","Epoch 475/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 19.1351\n","Epoch 476/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 19.0810\n","Epoch 477/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 19.0270\n","Epoch 478/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 18.9732\n","Epoch 479/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 18.9195\n","Epoch 480/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 18.8659\n","Epoch 481/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 18.8125\n","Epoch 482/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 18.7592\n","Epoch 483/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 18.7060\n","Epoch 484/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 18.6530\n","Epoch 485/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 18.6002\n","Epoch 486/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 18.5474\n","Epoch 487/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 18.4948\n","Epoch 488/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 18.4424\n","Epoch 489/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 18.3901\n","Epoch 490/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 18.3379\n","Epoch 491/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 18.2858\n","Epoch 492/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 18.2339\n","Epoch 493/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 18.1822\n","Epoch 494/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 18.1305\n","Epoch 495/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 18.0790\n","Epoch 496/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 18.0277\n","Epoch 497/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 17.9764\n","Epoch 498/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 17.9253\n","Epoch 499/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 17.8744\n","Epoch 500/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 17.8236\n","Epoch 501/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 17.7729\n","Epoch 502/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 17.7223\n","Epoch 503/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 17.6719\n","Epoch 504/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 17.6216\n","Epoch 505/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 17.5714\n","Epoch 506/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 17.5214\n","Epoch 507/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 17.4715\n","Epoch 508/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 17.4217\n","Epoch 509/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 17.3720\n","Epoch 510/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 17.3225\n","Epoch 511/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 17.2731\n","Epoch 512/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 17.2239\n","Epoch 513/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 17.1748\n","Epoch 514/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 17.1258\n","Epoch 515/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 157ms/step - loss: 17.0769\n","Epoch 516/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 17.0281\n","Epoch 517/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 16.9795\n","Epoch 518/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 16.9310\n","Epoch 519/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 16.8827\n","Epoch 520/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 16.8344\n","Epoch 521/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 16.7863\n","Epoch 522/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 16.7383\n","Epoch 523/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 16.6905\n","Epoch 524/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 16.6427\n","Epoch 525/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 16.5951\n","Epoch 526/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 155ms/step - loss: 16.5477\n","Epoch 527/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 16.5003\n","Epoch 528/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 16.4531\n","Epoch 529/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 16.4059\n","Epoch 530/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 155ms/step - loss: 16.3589\n","Epoch 531/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 16.3121\n","Epoch 532/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 16.2653\n","Epoch 533/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 16.2187\n","Epoch 534/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 16.1722\n","Epoch 535/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 16.1258\n","Epoch 536/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 16.0796\n","Epoch 537/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 16.0334\n","Epoch 538/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 15.9874\n","Epoch 539/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 15.9415\n","Epoch 540/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 15.8957\n","Epoch 541/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 15.8501\n","Epoch 542/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 15.8045\n","Epoch 543/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 15.7591\n","Epoch 544/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 15.7138\n","Epoch 545/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 15.6686\n","Epoch 546/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 15.6235\n","Epoch 547/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 15.5786\n","Epoch 548/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 15.5337\n","Epoch 549/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 15.4890\n","Epoch 550/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 15.4444\n","Epoch 551/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 15.3999\n","Epoch 552/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 15.3556\n","Epoch 553/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 15.3113\n","Epoch 554/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 15.2672\n","Epoch 555/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 15.2231\n","Epoch 556/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 15.1792\n","Epoch 557/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 15.1354\n","Epoch 558/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 15.0917\n","Epoch 559/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 15.0482\n","Epoch 560/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 15.0047\n","Epoch 561/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 14.9614\n","Epoch 562/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 14.9182\n","Epoch 563/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 14.8750\n","Epoch 564/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 14.8320\n","Epoch 565/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 14.7891\n","Epoch 566/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 14.7464\n","Epoch 567/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 14.7037\n","Epoch 568/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 14.6611\n","Epoch 569/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 14.6187\n","Epoch 570/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 14.5763\n","Epoch 571/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 14.5341\n","Epoch 572/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 14.4920\n","Epoch 573/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 14.4500\n","Epoch 574/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 14.4081\n","Epoch 575/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 14.3663\n","Epoch 576/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 14.3246\n","Epoch 577/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 14.2831\n","Epoch 578/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 14.2416\n","Epoch 579/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 14.2002\n","Epoch 580/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 14.1590\n","Epoch 581/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 14.1178\n","Epoch 582/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 14.0768\n","Epoch 583/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 14.0359\n","Epoch 584/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 13.9951\n","Epoch 585/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 13.9543\n","Epoch 586/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 13.9137\n","Epoch 587/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 13.8732\n","Epoch 588/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 13.8328\n","Epoch 589/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 13.7925\n","Epoch 590/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 13.7523\n","Epoch 591/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 13.7123\n","Epoch 592/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 13.6723\n","Epoch 593/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 13.6324\n","Epoch 594/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 13.5926\n","Epoch 595/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 13.5530\n","Epoch 596/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 13.5134\n","Epoch 597/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 13.4739\n","Epoch 598/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 13.4346\n","Epoch 599/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 13.3953\n","Epoch 600/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 13.3562\n","Epoch 601/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 13.3171\n","Epoch 602/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 13.2782\n","Epoch 603/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 13.2393\n","Epoch 604/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 13.2006\n","Epoch 605/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 13.1619\n","Epoch 606/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 13.1234\n","Epoch 607/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 13.0849\n","Epoch 608/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 13.0466\n","Epoch 609/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 13.0083\n","Epoch 610/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 12.9702\n","Epoch 611/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 12.9321\n","Epoch 612/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 12.8942\n","Epoch 613/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 12.8563\n","Epoch 614/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 12.8186\n","Epoch 615/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 12.7809\n","Epoch 616/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 12.7434\n","Epoch 617/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 12.7059\n","Epoch 618/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 12.6685\n","Epoch 619/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 12.6313\n","Epoch 620/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 12.5941\n","Epoch 621/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.5570\n","Epoch 622/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 12.5201\n","Epoch 623/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 12.4832\n","Epoch 624/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 12.4464\n","Epoch 625/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 12.4097\n","Epoch 626/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 12.3731\n","Epoch 627/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 12.3367\n","Epoch 628/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 12.3003\n","Epoch 629/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 12.2639\n","Epoch 630/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 12.2277\n","Epoch 631/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 12.1916\n","Epoch 632/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 12.1556\n","Epoch 633/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.1197\n","Epoch 634/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.0838\n","Epoch 635/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 12.0481\n","Epoch 636/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.0125\n","Epoch 637/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 11.9769\n","Epoch 638/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 11.9414\n","Epoch 639/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 11.9061\n","Epoch 640/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 11.8708\n","Epoch 641/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 11.8356\n","Epoch 642/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 11.8005\n","Epoch 643/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.7655\n","Epoch 644/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 11.7306\n","Epoch 645/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.6958\n","Epoch 646/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.6611\n","Epoch 647/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.6264\n","Epoch 648/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 11.5919\n","Epoch 649/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.5574\n","Epoch 650/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 11.5230\n","Epoch 651/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 11.4888\n","Epoch 652/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 11.4546\n","Epoch 653/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.4205\n","Epoch 654/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 11.3865\n","Epoch 655/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 11.3526\n","Epoch 656/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.3187\n","Epoch 657/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 11.2850\n","Epoch 658/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 11.2513\n","Epoch 659/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 11.2178\n","Epoch 660/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 11.1843\n","Epoch 661/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 11.1509\n","Epoch 662/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 11.1176\n","Epoch 663/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 11.0844\n","Epoch 664/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 11.0512\n","Epoch 665/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 11.0182\n","Epoch 666/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 10.9852\n","Epoch 667/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 10.9524\n","Epoch 668/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 10.9196\n","Epoch 669/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 10.8869\n","Epoch 670/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 10.8543\n","Epoch 671/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 10.8217\n","Epoch 672/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 10.7893\n","Epoch 673/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.7570\n","Epoch 674/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 10.7247\n","Epoch 675/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 10.6925\n","Epoch 676/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 10.6604\n","Epoch 677/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 10.6284\n","Epoch 678/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.5964\n","Epoch 679/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 10.5646\n","Epoch 680/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.5328\n","Epoch 681/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 10.5011\n","Epoch 682/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 10.4695\n","Epoch 683/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 10.4380\n","Epoch 684/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 10.4066\n","Epoch 685/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 10.3752\n","Epoch 686/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 10.3439\n","Epoch 687/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 10.3128\n","Epoch 688/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 10.2817\n","Epoch 689/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 10.2506\n","Epoch 690/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 10.2197\n","Epoch 691/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 10.1888\n","Epoch 692/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 10.1580\n","Epoch 693/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 10.1273\n","Epoch 694/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 10.0967\n","Epoch 695/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 10.0662\n","Epoch 696/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 10.0357\n","Epoch 697/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 10.0053\n","Epoch 698/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 9.9750\n","Epoch 699/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 9.9448\n","Epoch 700/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 9.9147\n","Epoch 701/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 9.8846\n","Epoch 702/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 9.8546\n","Epoch 703/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 161ms/step - loss: 9.8247\n","Epoch 704/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 9.7949\n","Epoch 705/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 9.7652\n","Epoch 706/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 9.7355\n","Epoch 707/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 9.7059\n","Epoch 708/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 9.6764\n","Epoch 709/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 9.6470\n","Epoch 710/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 9.6176\n","Epoch 711/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 9.5883\n","Epoch 712/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 9.5591\n","Epoch 713/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 9.5300\n","Epoch 714/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 9.5010\n","Epoch 715/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 9.4720\n","Epoch 716/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 9.4431\n","Epoch 717/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 9.4143\n","Epoch 718/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 9.3856\n","Epoch 719/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 9.3569\n","Epoch 720/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 9.3283\n","Epoch 721/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 9.2998\n","Epoch 722/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 9.2714\n","Epoch 723/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 9.2430\n","Epoch 724/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 9.2147\n","Epoch 725/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 9.1865\n","Epoch 726/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 9.1584\n","Epoch 727/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 9.1303\n","Epoch 728/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 9.1023\n","Epoch 729/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 9.0744\n","Epoch 730/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 9.0466\n","Epoch 731/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 9.0188\n","Epoch 732/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 8.9911\n","Epoch 733/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 8.9635\n","Epoch 734/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 8.9360\n","Epoch 735/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 8.9085\n","Epoch 736/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 8.8811\n","Epoch 737/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 8.8538\n","Epoch 738/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 8.8265\n","Epoch 739/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 8.7993\n","Epoch 740/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 8.7722\n","Epoch 741/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 8.7452\n","Epoch 742/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 8.7182\n","Epoch 743/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 8.6913\n","Epoch 744/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 8.6645\n","Epoch 745/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 8.6377\n","Epoch 746/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 8.6111\n","Epoch 747/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 8.5845\n","Epoch 748/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 8.5579\n","Epoch 749/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 8.5315\n","Epoch 750/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 8.5051\n","Epoch 751/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 8.4787\n","Epoch 752/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 8.4525\n","Epoch 753/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 8.4263\n","Epoch 754/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 8.4002\n","Epoch 755/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 8.3741\n","Epoch 756/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 8.3482\n","Epoch 757/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 8.3223\n","Epoch 758/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 8.2964\n","Epoch 759/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 8.2707\n","Epoch 760/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 8.2450\n","Epoch 761/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 8.2193\n","Epoch 762/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 8.1938\n","Epoch 763/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 8.1683\n","Epoch 764/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 8.1428\n","Epoch 765/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 8.1175\n","Epoch 766/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 8.0922\n","Epoch 767/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 8.0670\n","Epoch 768/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 8.0418\n","Epoch 769/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 8.0167\n","Epoch 770/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 7.9917\n","Epoch 771/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 7.9668\n","Epoch 772/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 7.9419\n","Epoch 773/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 7.9171\n","Epoch 774/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 7.8923\n","Epoch 775/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.8676\n","Epoch 776/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 7.8430\n","Epoch 777/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 7.8185\n","Epoch 778/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 7.7940\n","Epoch 779/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.7696\n","Epoch 780/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 7.7452\n","Epoch 781/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 7.7209\n","Epoch 782/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 7.6967\n","Epoch 783/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.6725\n","Epoch 784/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 7.6485\n","Epoch 785/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 7.6244\n","Epoch 786/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.6005\n","Epoch 787/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 7.5766\n","Epoch 788/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 7.5527\n","Epoch 789/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 7.5290\n","Epoch 790/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 7.5053\n","Epoch 791/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 7.4816\n","Epoch 792/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 7.4580\n","Epoch 793/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 7.4345\n","Epoch 794/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 7.4111\n","Epoch 795/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 7.3877\n","Epoch 796/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 7.3644\n","Epoch 797/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.3411\n","Epoch 798/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.3179\n","Epoch 799/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 7.2948\n","Epoch 800/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 7.2717\n","Epoch 801/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 7.2487\n","Epoch 802/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 7.2258\n","Epoch 803/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.2029\n","Epoch 804/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 7.1800\n","Epoch 805/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 7.1573\n","Epoch 806/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 7.1346\n","Epoch 807/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.1119\n","Epoch 808/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.0894\n","Epoch 809/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 7.0669\n","Epoch 810/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 7.0444\n","Epoch 811/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 7.0220\n","Epoch 812/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 6.9997\n","Epoch 813/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 6.9774\n","Epoch 814/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 6.9552\n","Epoch 815/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 6.9331\n","Epoch 816/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 6.9110\n","Epoch 817/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 6.8889\n","Epoch 818/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 6.8670\n","Epoch 819/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 6.8451\n","Epoch 820/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 6.8232\n","Epoch 821/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 6.8014\n","Epoch 822/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 6.7797\n","Epoch 823/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 6.7580\n","Epoch 824/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 6.7364\n","Epoch 825/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 6.7149\n","Epoch 826/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 6.6934\n","Epoch 827/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 6.6720\n","Epoch 828/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 6.6506\n","Epoch 829/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.6293\n","Epoch 830/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 6.6080\n","Epoch 831/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.5868\n","Epoch 832/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 6.5657\n","Epoch 833/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 6.5446\n","Epoch 834/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 6.5236\n","Epoch 835/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 6.5026\n","Epoch 836/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 6.4817\n","Epoch 837/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 6.4608\n","Epoch 838/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 6.4400\n","Epoch 839/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 6.4193\n","Epoch 840/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 6.3986\n","Epoch 841/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 6.3780\n","Epoch 842/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 6.3574\n","Epoch 843/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 6.3369\n","Epoch 844/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 6.3165\n","Epoch 845/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.2961\n","Epoch 846/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 6.2757\n","Epoch 847/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 6.2554\n","Epoch 848/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 6.2352\n","Epoch 849/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 6.2150\n","Epoch 850/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 6.1949\n","Epoch 851/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 6.1749\n","Epoch 852/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.1549\n","Epoch 853/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 6.1349\n","Epoch 854/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 6.1150\n","Epoch 855/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 6.0952\n","Epoch 856/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 6.0754\n","Epoch 857/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.0556\n","Epoch 858/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 6.0360\n","Epoch 859/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 6.0164\n","Epoch 860/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 5.9968\n","Epoch 861/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 5.9773\n","Epoch 862/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 5.9578\n","Epoch 863/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 5.9384\n","Epoch 864/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 5.9191\n","Epoch 865/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 5.8998\n","Epoch 866/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 5.8805\n","Epoch 867/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 5.8613\n","Epoch 868/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 5.8422\n","Epoch 869/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 5.8231\n","Epoch 870/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 5.8041\n","Epoch 871/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 5.7851\n","Epoch 872/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 5.7662\n","Epoch 873/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 5.7473\n","Epoch 874/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 5.7285\n","Epoch 875/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 5.7097\n","Epoch 876/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 5.6910\n","Epoch 877/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 5.6724\n","Epoch 878/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 5.6538\n","Epoch 879/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 5.6352\n","Epoch 880/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 5.6167\n","Epoch 881/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 5.5982\n","Epoch 882/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 122ms/step - loss: 5.5798\n","Epoch 883/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 5.5615\n","Epoch 884/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 5.5432\n","Epoch 885/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 5.5249\n","Epoch 886/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 5.5068\n","Epoch 887/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 5.4886\n","Epoch 888/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 5.4705\n","Epoch 889/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 5.4525\n","Epoch 890/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 5.4345\n","Epoch 891/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 5.4165\n","Epoch 892/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 5.3986\n","Epoch 893/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 5.3808\n","Epoch 894/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 5.3630\n","Epoch 895/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 5.3453\n","Epoch 896/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 5.3276\n","Epoch 897/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 158ms/step - loss: 5.3100\n","Epoch 898/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 5.2924\n","Epoch 899/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 5.2748\n","Epoch 900/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 5.2573\n","Epoch 901/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 5.2399\n","Epoch 902/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 5.2225\n","Epoch 903/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 5.2052\n","Epoch 904/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 5.1879\n","Epoch 905/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 5.1706\n","Epoch 906/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 5.1534\n","Epoch 907/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 5.1363\n","Epoch 908/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 5.1192\n","Epoch 909/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 5.1021\n","Epoch 910/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 5.0851\n","Epoch 911/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 5.0682\n","Epoch 912/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 5.0513\n","Epoch 913/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 5.0344\n","Epoch 914/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 5.0176\n","Epoch 915/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 5.0008\n","Epoch 916/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 4.9841\n","Epoch 917/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 4.9675\n","Epoch 918/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 4.9508\n","Epoch 919/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 4.9343\n","Epoch 920/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.9177\n","Epoch 921/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.9013\n","Epoch 922/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 4.8848\n","Epoch 923/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 4.8685\n","Epoch 924/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 4.8521\n","Epoch 925/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 4.8358\n","Epoch 926/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.8196\n","Epoch 927/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.8034\n","Epoch 928/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 4.7872\n","Epoch 929/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 4.7711\n","Epoch 930/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.7551\n","Epoch 931/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.7391\n","Epoch 932/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 4.7231\n","Epoch 933/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 4.7072\n","Epoch 934/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 4.6913\n","Epoch 935/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 4.6755\n","Epoch 936/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 4.6597\n","Epoch 937/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 4.6440\n","Epoch 938/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.6283\n","Epoch 939/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 4.6126\n","Epoch 940/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.5970\n","Epoch 941/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.5815\n","Epoch 942/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.5660\n","Epoch 943/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 4.5505\n","Epoch 944/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 4.5351\n","Epoch 945/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 4.5197\n","Epoch 946/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.5044\n","Epoch 947/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 4.4891\n","Epoch 948/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.4738\n","Epoch 949/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.4586\n","Epoch 950/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.4435\n","Epoch 951/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 4.4283\n","Epoch 952/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.4133\n","Epoch 953/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.3982\n","Epoch 954/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.3833\n","Epoch 955/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 4.3683\n","Epoch 956/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 4.3534\n","Epoch 957/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.3386\n","Epoch 958/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 4.3238\n","Epoch 959/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 4.3090\n","Epoch 960/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 4.2943\n","Epoch 961/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 4.2796\n","Epoch 962/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 4.2650\n","Epoch 963/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.2504\n","Epoch 964/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.2358\n","Epoch 965/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.2213\n","Epoch 966/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.2068\n","Epoch 967/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 4.1924\n","Epoch 968/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.1780\n","Epoch 969/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 4.1637\n","Epoch 970/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 4.1494\n","Epoch 971/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.1351\n","Epoch 972/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 4.1209\n","Epoch 973/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 4.1068\n","Epoch 974/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 4.0926\n","Epoch 975/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.0785\n","Epoch 976/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 4.0645\n","Epoch 977/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 4.0505\n","Epoch 978/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 4.0365\n","Epoch 979/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 4.0226\n","Epoch 980/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 4.0087\n","Epoch 981/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 3.9949\n","Epoch 982/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 3.9810\n","Epoch 983/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 3.9673\n","Epoch 984/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 3.9536\n","Epoch 985/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 3.9399\n","Epoch 986/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 3.9262\n","Epoch 987/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 3.9126\n","Epoch 988/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 3.8991\n","Epoch 989/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 3.8856\n","Epoch 990/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 3.8721\n","Epoch 991/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 3.8586\n","Epoch 992/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 3.8452\n","Epoch 993/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 3.8319\n","Epoch 994/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 3.8185\n","Epoch 995/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 3.8053\n","Epoch 996/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 3.7920\n","Epoch 997/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 3.7788\n","Epoch 998/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 3.7657\n","Epoch 999/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 3.7525\n","Epoch 1000/1000\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 42ms/step - loss: 3.7394\n","Epoch 1000/1000\n"," - loss: 3.7394\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 3.7394\n","Restoring model weights from the end of the best epoch: 1000.\n","\u001b[1m32/32\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 3ms/step\n"]},{"output_type":"stream","name":"stderr","text":["WARNING:absl:You are saving your model as an HDF5 file via `model.save()` or `keras.saving.save_model(model)`. This file format is considered legacy. We recommend using instead the native Keras format, e.g. `model.save('my_model.keras')` or `keras.saving.save_model(model, 'my_model.keras')`. \n"]},{"output_type":"stream","name":"stdout","text":["\n","\n"]}],"source":["# обучение AE1\n","patience = 300\n","ae1_trained, IRE1, IREth1 = lib.create_fit_save_ae(data,'out/AE1.h5','out/AE1_ire_th.txt', 1000, True, patience)"]},{"cell_type":"code","source":["print(IREth1)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"6wKbRN4eUoMu","executionInfo":{"status":"ok","timestamp":1762438941782,"user_tz":-180,"elapsed":53,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"899c9004-60fd-42f3-bee4-f0f88d8e48cf"},"execution_count":9,"outputs":[{"output_type":"stream","name":"stdout","text":["3.07\n"]}]},{"cell_type":"code","execution_count":10,"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":744},"executionInfo":{"elapsed":1049,"status":"ok","timestamp":1762438945310,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"},"user_tz":-180},"id":"nDaBMi1oZxBU","outputId":"7e71ceb3-8a3b-4f47-d478-d002d92a733f"},"outputs":[{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}}],"source":["# Построение графика ошибки реконструкции\n","lib.ire_plot('training', IRE1, IREth1, 'AE1')"]},{"cell_type":"code","execution_count":25,"metadata":{"id":"mOTbWkr4Zv3I","colab":{"base_uri":"https://localhost:8080/","height":1000},"executionInfo":{"status":"ok","timestamp":1762445951835,"user_tz":-180,"elapsed":857107,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"54e3aeed-c190-464c-fd3b-b93819334f67"},"outputs":[{"output_type":"stream","name":"stdout","text":["\u001b[1;30;43mВыходные данные были обрезаны до нескольких последних строк (5000).\u001b[0m\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 36.4190\n","Epoch 206/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 36.3074\n","Epoch 207/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 36.1960\n","Epoch 208/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 36.0849\n","Epoch 209/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 35.9741\n","Epoch 210/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 35.8637\n","Epoch 211/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 35.7535\n","Epoch 212/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 35.6436\n","Epoch 213/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 35.5340\n","Epoch 214/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 35.4247\n","Epoch 215/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 35.3158\n","Epoch 216/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 35.2072\n","Epoch 217/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 35.0989\n","Epoch 218/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 34.9909\n","Epoch 219/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 34.8833\n","Epoch 220/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 34.7760\n","Epoch 221/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 34.6691\n","Epoch 222/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 34.5625\n","Epoch 223/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 34.4562\n","Epoch 224/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 34.3503\n","Epoch 225/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 34.2448\n","Epoch 226/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 34.1396\n","Epoch 227/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 34.0348\n","Epoch 228/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 52ms/step - loss: 33.9304\n","Epoch 229/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 33.8263\n","Epoch 230/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 33.7226\n","Epoch 231/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 33.6193\n","Epoch 232/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 33.5163\n","Epoch 233/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 33.4137\n","Epoch 234/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 33.3115\n","Epoch 235/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 33.2097\n","Epoch 236/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 33.1083\n","Epoch 237/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 33.0072\n","Epoch 238/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 32.9065\n","Epoch 239/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 32.8063\n","Epoch 240/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 32.7064\n","Epoch 241/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 32.6069\n","Epoch 242/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 32.5077\n","Epoch 243/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 32.4090\n","Epoch 244/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 32.3107\n","Epoch 245/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 32.2127\n","Epoch 246/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 32.1152\n","Epoch 247/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 32.0180\n","Epoch 248/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 31.9212\n","Epoch 249/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 31.8249\n","Epoch 250/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 31.7289\n","Epoch 251/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 31.6333\n","Epoch 252/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 31.5381\n","Epoch 253/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 31.4433\n","Epoch 254/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 31.3488\n","Epoch 255/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 31.2548\n","Epoch 256/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 31.1612\n","Epoch 257/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 31.0679\n","Epoch 258/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 30.9751\n","Epoch 259/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 30.8826\n","Epoch 260/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 30.7905\n","Epoch 261/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 30.6988\n","Epoch 262/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 30.6075\n","Epoch 263/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 30.5166\n","Epoch 264/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 30.4261\n","Epoch 265/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 30.3359\n","Epoch 266/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 53ms/step - loss: 30.2462\n","Epoch 267/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 30.1568\n","Epoch 268/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 30.0678\n","Epoch 269/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 29.9792\n","Epoch 270/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 29.8909\n","Epoch 271/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 29.8030\n","Epoch 272/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 29.7155\n","Epoch 273/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 29.6284\n","Epoch 274/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 29.5417\n","Epoch 275/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 29.4553\n","Epoch 276/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 29.3693\n","Epoch 277/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 29.2836\n","Epoch 278/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 29.1983\n","Epoch 279/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 29.1134\n","Epoch 280/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 29.0288\n","Epoch 281/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 28.9447\n","Epoch 282/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 28.8608\n","Epoch 283/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 28.7773\n","Epoch 284/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 28.6942\n","Epoch 285/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 28.6114\n","Epoch 286/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 28.5290\n","Epoch 287/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 28.4469\n","Epoch 288/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 28.3652\n","Epoch 289/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 28.2838\n","Epoch 290/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 28.2028\n","Epoch 291/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 28.1221\n","Epoch 292/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 28.0418\n","Epoch 293/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 27.9618\n","Epoch 294/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 27.8821\n","Epoch 295/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 27.8027\n","Epoch 296/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 27.7237\n","Epoch 297/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 27.6450\n","Epoch 298/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 27.5667\n","Epoch 299/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 27.4887\n","Epoch 300/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 27.4110\n","Epoch 301/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 27.3336\n","Epoch 302/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 27.2565\n","Epoch 303/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 27.1798\n","Epoch 304/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 27.1034\n","Epoch 305/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 27.0273\n","Epoch 306/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 26.9515\n","Epoch 307/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 26.8760\n","Epoch 308/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 26.8008\n","Epoch 309/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 26.7259\n","Epoch 310/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 26.6514\n","Epoch 311/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 26.5771\n","Epoch 312/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 26.5032\n","Epoch 313/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 26.4295\n","Epoch 314/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 26.3561\n","Epoch 315/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 26.2831\n","Epoch 316/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 26.2103\n","Epoch 317/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 26.1378\n","Epoch 318/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 26.0656\n","Epoch 319/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 25.9937\n","Epoch 320/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 25.9221\n","Epoch 321/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 25.8507\n","Epoch 322/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 25.7797\n","Epoch 323/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 25.7089\n","Epoch 324/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 25.6384\n","Epoch 325/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 25.5682\n","Epoch 326/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 25.4982\n","Epoch 327/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 25.4286\n","Epoch 328/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 25.3591\n","Epoch 329/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 25.2900\n","Epoch 330/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 25.2211\n","Epoch 331/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 25.1525\n","Epoch 332/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 25.0842\n","Epoch 333/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 25.0161\n","Epoch 334/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 54ms/step - loss: 24.9483\n","Epoch 335/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 24.8807\n","Epoch 336/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 24.8134\n","Epoch 337/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 24.7464\n","Epoch 338/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 24.6796\n","Epoch 339/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 24.6130\n","Epoch 340/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 24.5467\n","Epoch 341/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 24.4807\n","Epoch 342/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 24.4149\n","Epoch 343/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 24.3493\n","Epoch 344/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 24.2840\n","Epoch 345/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 24.2190\n","Epoch 346/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 24.1541\n","Epoch 347/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 24.0895\n","Epoch 348/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 24.0252\n","Epoch 349/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 23.9611\n","Epoch 350/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 23.8972\n","Epoch 351/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 23.8335\n","Epoch 352/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 23.7701\n","Epoch 353/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 23.7069\n","Epoch 354/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 23.6439\n","Epoch 355/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 23.5812\n","Epoch 356/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 23.5187\n","Epoch 357/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 23.4564\n","Epoch 358/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 23.3943\n","Epoch 359/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 23.3324\n","Epoch 360/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 23.2708\n","Epoch 361/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 23.2094\n","Epoch 362/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 23.1482\n","Epoch 363/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 23.0872\n","Epoch 364/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 55ms/step - loss: 23.0264\n","Epoch 365/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 22.9659\n","Epoch 366/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 22.9055\n","Epoch 367/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 22.8454\n","Epoch 368/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 22.7854\n","Epoch 369/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 22.7257\n","Epoch 370/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 22.6662\n","Epoch 371/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 22.6068\n","Epoch 372/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 22.5477\n","Epoch 373/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 56ms/step - loss: 22.4888\n","Epoch 374/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 22.4301\n","Epoch 375/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 22.3716\n","Epoch 376/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 22.3132\n","Epoch 377/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 22.2551\n","Epoch 378/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 22.1972\n","Epoch 379/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 22.1394\n","Epoch 380/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 22.0819\n","Epoch 381/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 22.0245\n","Epoch 382/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 21.9674\n","Epoch 383/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 21.9104\n","Epoch 384/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 21.8536\n","Epoch 385/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 21.7970\n","Epoch 386/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 21.7406\n","Epoch 387/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 21.6844\n","Epoch 388/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 21.6283\n","Epoch 389/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 21.5725\n","Epoch 390/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 21.5168\n","Epoch 391/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 21.4613\n","Epoch 392/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 21.4059\n","Epoch 393/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 21.3508\n","Epoch 394/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 21.2958\n","Epoch 395/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 21.2410\n","Epoch 396/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 21.1864\n","Epoch 397/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 21.1320\n","Epoch 398/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 21.0777\n","Epoch 399/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 21.0236\n","Epoch 400/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 20.9696\n","Epoch 401/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 20.9159\n","Epoch 402/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 20.8623\n","Epoch 403/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 20.8089\n","Epoch 404/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 20.7556\n","Epoch 405/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 20.7025\n","Epoch 406/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 20.6496\n","Epoch 407/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 20.5968\n","Epoch 408/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 20.5442\n","Epoch 409/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 20.4918\n","Epoch 410/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 20.4395\n","Epoch 411/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 20.3874\n","Epoch 412/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 187ms/step - loss: 20.3354\n","Epoch 413/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 20.2836\n","Epoch 414/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 20.2320\n","Epoch 415/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 20.1805\n","Epoch 416/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 20.1292\n","Epoch 417/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 20.0780\n","Epoch 418/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 20.0270\n","Epoch 419/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 19.9761\n","Epoch 420/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 19.9254\n","Epoch 421/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 193ms/step - loss: 19.8748\n","Epoch 422/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 19.8244\n","Epoch 423/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 19.7741\n","Epoch 424/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 19.7240\n","Epoch 425/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 19.6741\n","Epoch 426/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 19.6242\n","Epoch 427/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 19.5746\n","Epoch 428/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 19.5250\n","Epoch 429/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 19.4757\n","Epoch 430/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 19.4264\n","Epoch 431/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 19.3773\n","Epoch 432/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 19.3284\n","Epoch 433/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 19.2796\n","Epoch 434/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 19.2309\n","Epoch 435/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 19.1824\n","Epoch 436/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 19.1340\n","Epoch 437/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 19.0858\n","Epoch 438/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 19.0377\n","Epoch 439/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 18.9897\n","Epoch 440/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 18.9419\n","Epoch 441/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 18.8942\n","Epoch 442/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 18.8466\n","Epoch 443/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 18.7992\n","Epoch 444/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 18.7519\n","Epoch 445/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 18.7048\n","Epoch 446/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 18.6577\n","Epoch 447/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 18.6109\n","Epoch 448/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 18.5641\n","Epoch 449/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 18.5175\n","Epoch 450/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 18.4710\n","Epoch 451/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 18.4246\n","Epoch 452/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 18.3784\n","Epoch 453/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 18.3323\n","Epoch 454/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 18.2863\n","Epoch 455/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 18.2405\n","Epoch 456/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 18.1947\n","Epoch 457/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 18.1492\n","Epoch 458/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 18.1037\n","Epoch 459/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 18.0583\n","Epoch 460/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 18.0131\n","Epoch 461/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 17.9680\n","Epoch 462/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 17.9231\n","Epoch 463/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 17.8782\n","Epoch 464/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 17.8335\n","Epoch 465/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 17.7889\n","Epoch 466/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 17.7444\n","Epoch 467/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 17.7000\n","Epoch 468/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 17.6558\n","Epoch 469/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 17.6117\n","Epoch 470/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 17.5677\n","Epoch 471/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 17.5238\n","Epoch 472/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 17.4800\n","Epoch 473/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 17.4364\n","Epoch 474/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 17.3928\n","Epoch 475/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 17.3494\n","Epoch 476/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 57ms/step - loss: 17.3061\n","Epoch 477/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 17.2629\n","Epoch 478/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 17.2199\n","Epoch 479/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 17.1769\n","Epoch 480/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 17.1341\n","Epoch 481/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 17.0914\n","Epoch 482/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 17.0487\n","Epoch 483/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 17.0062\n","Epoch 484/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 16.9639\n","Epoch 485/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 16.9216\n","Epoch 486/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 16.8794\n","Epoch 487/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 16.8374\n","Epoch 488/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 16.7954\n","Epoch 489/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 16.7536\n","Epoch 490/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 16.7119\n","Epoch 491/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 16.6702\n","Epoch 492/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 16.6287\n","Epoch 493/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 16.5873\n","Epoch 494/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 16.5460\n","Epoch 495/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 16.5048\n","Epoch 496/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 16.4638\n","Epoch 497/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 16.4228\n","Epoch 498/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 16.3819\n","Epoch 499/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 16.3412\n","Epoch 500/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 16.3005\n","Epoch 501/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 16.2600\n","Epoch 502/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 16.2195\n","Epoch 503/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 59ms/step - loss: 16.1792\n","Epoch 504/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 16.1389\n","Epoch 505/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 16.0988\n","Epoch 506/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 16.0587\n","Epoch 507/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 16.0188\n","Epoch 508/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 15.9790\n","Epoch 509/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 15.9392\n","Epoch 510/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 15.8996\n","Epoch 511/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 15.8601\n","Epoch 512/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 15.8206\n","Epoch 513/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 15.7813\n","Epoch 514/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 15.7421\n","Epoch 515/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 15.7029\n","Epoch 516/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 15.6639\n","Epoch 517/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 15.6250\n","Epoch 518/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 15.5861\n","Epoch 519/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 15.5474\n","Epoch 520/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 15.5088\n","Epoch 521/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 15.4702\n","Epoch 522/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 15.4318\n","Epoch 523/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 15.3934\n","Epoch 524/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 15.3551\n","Epoch 525/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 15.3170\n","Epoch 526/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 15.2789\n","Epoch 527/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 15.2409\n","Epoch 528/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 15.2030\n","Epoch 529/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 15.1653\n","Epoch 530/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 15.1276\n","Epoch 531/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 15.0900\n","Epoch 532/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 15.0525\n","Epoch 533/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 15.0150\n","Epoch 534/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 14.9777\n","Epoch 535/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 14.9405\n","Epoch 536/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 14.9034\n","Epoch 537/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 14.8663\n","Epoch 538/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 14.8293\n","Epoch 539/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 14.7925\n","Epoch 540/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 14.7557\n","Epoch 541/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 14.7190\n","Epoch 542/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 14.6824\n","Epoch 543/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 14.6459\n","Epoch 544/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 14.6095\n","Epoch 545/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 14.5732\n","Epoch 546/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 14.5369\n","Epoch 547/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 14.5008\n","Epoch 548/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 14.4647\n","Epoch 549/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 14.4287\n","Epoch 550/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 14.3928\n","Epoch 551/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 58ms/step - loss: 14.3570\n","Epoch 552/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 14.3213\n","Epoch 553/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 14.2857\n","Epoch 554/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 14.2501\n","Epoch 555/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 14.2147\n","Epoch 556/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 14.1793\n","Epoch 557/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 14.1440\n","Epoch 558/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 14.1088\n","Epoch 559/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 14.0737\n","Epoch 560/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 164ms/step - loss: 14.0387\n","Epoch 561/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 14.0037\n","Epoch 562/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 13.9689\n","Epoch 563/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 13.9341\n","Epoch 564/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 13.8994\n","Epoch 565/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 13.8648\n","Epoch 566/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 13.8302\n","Epoch 567/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 13.7958\n","Epoch 568/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 13.7614\n","Epoch 569/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 13.7271\n","Epoch 570/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 13.6929\n","Epoch 571/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 13.6588\n","Epoch 572/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 13.6247\n","Epoch 573/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 13.5908\n","Epoch 574/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 13.5569\n","Epoch 575/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 13.5231\n","Epoch 576/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 13.4894\n","Epoch 577/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 13.4557\n","Epoch 578/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 13.4222\n","Epoch 579/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 13.3887\n","Epoch 580/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 13.3553\n","Epoch 581/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 157ms/step - loss: 13.3220\n","Epoch 582/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 13.2887\n","Epoch 583/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 13.2556\n","Epoch 584/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 13.2225\n","Epoch 585/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 13.1895\n","Epoch 586/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 13.1565\n","Epoch 587/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 13.1237\n","Epoch 588/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 13.0909\n","Epoch 589/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 13.0582\n","Epoch 590/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 13.0256\n","Epoch 591/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 12.9930\n","Epoch 592/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 12.9606\n","Epoch 593/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.9282\n","Epoch 594/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 12.8958\n","Epoch 595/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 12.8636\n","Epoch 596/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 12.8314\n","Epoch 597/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 12.7993\n","Epoch 598/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 12.7673\n","Epoch 599/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 12.7354\n","Epoch 600/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 12.7035\n","Epoch 601/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 12.6717\n","Epoch 602/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 12.6400\n","Epoch 603/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 12.6083\n","Epoch 604/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 12.5768\n","Epoch 605/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 12.5453\n","Epoch 606/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 12.5138\n","Epoch 607/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 12.4825\n","Epoch 608/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 163ms/step - loss: 12.4512\n","Epoch 609/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 12.4200\n","Epoch 610/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.3889\n","Epoch 611/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.3578\n","Epoch 612/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 12.3268\n","Epoch 613/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 12.2959\n","Epoch 614/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 12.2650\n","Epoch 615/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 12.2343\n","Epoch 616/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 12.2035\n","Epoch 617/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 12.1729\n","Epoch 618/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 12.1423\n","Epoch 619/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.1119\n","Epoch 620/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 12.0814\n","Epoch 621/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 12.0511\n","Epoch 622/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 12.0208\n","Epoch 623/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 11.9906\n","Epoch 624/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 11.9604\n","Epoch 625/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 11.9304\n","Epoch 626/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 11.9004\n","Epoch 627/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 11.8704\n","Epoch 628/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 11.8406\n","Epoch 629/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 11.8108\n","Epoch 630/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 11.7810\n","Epoch 631/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 11.7514\n","Epoch 632/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 11.7218\n","Epoch 633/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.6922\n","Epoch 634/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 11.6628\n","Epoch 635/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 11.6334\n","Epoch 636/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 11.6041\n","Epoch 637/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 11.5748\n","Epoch 638/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 11.5456\n","Epoch 639/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 11.5165\n","Epoch 640/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 11.4874\n","Epoch 641/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 11.4585\n","Epoch 642/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 11.4295\n","Epoch 643/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 11.4007\n","Epoch 644/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 11.3719\n","Epoch 645/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 11.3432\n","Epoch 646/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 11.3145\n","Epoch 647/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 11.2859\n","Epoch 648/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 11.2574\n","Epoch 649/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 11.2289\n","Epoch 650/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 11.2005\n","Epoch 651/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 11.1722\n","Epoch 652/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 11.1439\n","Epoch 653/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 11.1157\n","Epoch 654/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 11.0876\n","Epoch 655/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 11.0595\n","Epoch 656/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 11.0315\n","Epoch 657/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 11.0035\n","Epoch 658/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.9756\n","Epoch 659/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.9478\n","Epoch 660/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 10.9201\n","Epoch 661/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 10.8924\n","Epoch 662/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 10.8647\n","Epoch 663/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 10.8372\n","Epoch 664/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.8097\n","Epoch 665/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 10.7822\n","Epoch 666/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.7548\n","Epoch 667/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 10.7275\n","Epoch 668/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 10.7002\n","Epoch 669/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 10.6731\n","Epoch 670/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 10.6459\n","Epoch 671/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 10.6188\n","Epoch 672/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 10.5918\n","Epoch 673/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 10.5649\n","Epoch 674/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 10.5380\n","Epoch 675/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 10.5112\n","Epoch 676/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 10.4844\n","Epoch 677/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 10.4577\n","Epoch 678/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 10.4310\n","Epoch 679/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 10.4045\n","Epoch 680/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 10.3779\n","Epoch 681/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 10.3515\n","Epoch 682/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 60ms/step - loss: 10.3251\n","Epoch 683/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.2987\n","Epoch 684/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 10.2724\n","Epoch 685/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 10.2462\n","Epoch 686/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.2200\n","Epoch 687/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 10.1939\n","Epoch 688/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 10.1679\n","Epoch 689/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 10.1419\n","Epoch 690/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 10.1159\n","Epoch 691/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 10.0901\n","Epoch 692/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 10.0643\n","Epoch 693/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 10.0385\n","Epoch 694/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 10.0128\n","Epoch 695/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 9.9872\n","Epoch 696/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 9.9616\n","Epoch 697/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 9.9360\n","Epoch 698/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 9.9106\n","Epoch 699/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 9.8852\n","Epoch 700/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 9.8598\n","Epoch 701/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 9.8345\n","Epoch 702/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 9.8093\n","Epoch 703/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 9.7841\n","Epoch 704/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 9.7590\n","Epoch 705/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 9.7339\n","Epoch 706/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 9.7089\n","Epoch 707/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 9.6839\n","Epoch 708/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 9.6590\n","Epoch 709/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 9.6342\n","Epoch 710/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 9.6094\n","Epoch 711/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 9.5847\n","Epoch 712/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 9.5600\n","Epoch 713/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 9.5354\n","Epoch 714/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 9.5108\n","Epoch 715/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 9.4863\n","Epoch 716/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 9.4619\n","Epoch 717/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 9.4375\n","Epoch 718/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 9.4131\n","Epoch 719/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 9.3888\n","Epoch 720/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 9.3646\n","Epoch 721/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 9.3404\n","Epoch 722/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 9.3163\n","Epoch 723/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 9.2922\n","Epoch 724/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 9.2682\n","Epoch 725/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 9.2442\n","Epoch 726/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 9.2203\n","Epoch 727/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 9.1965\n","Epoch 728/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 9.1727\n","Epoch 729/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 9.1489\n","Epoch 730/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 9.1252\n","Epoch 731/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 158ms/step - loss: 9.1016\n","Epoch 732/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 9.0780\n","Epoch 733/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 9.0545\n","Epoch 734/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 9.0310\n","Epoch 735/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 158ms/step - loss: 9.0076\n","Epoch 736/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 8.9842\n","Epoch 737/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 8.9609\n","Epoch 738/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 8.9376\n","Epoch 739/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 8.9144\n","Epoch 740/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 8.8912\n","Epoch 741/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 8.8681\n","Epoch 742/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 8.8450\n","Epoch 743/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 164ms/step - loss: 8.8220\n","Epoch 744/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 8.7991\n","Epoch 745/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 8.7762\n","Epoch 746/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 166ms/step - loss: 8.7533\n","Epoch 747/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 8.7305\n","Epoch 748/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 8.7078\n","Epoch 749/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 165ms/step - loss: 8.6851\n","Epoch 750/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 8.6624\n","Epoch 751/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 8.6398\n","Epoch 752/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 8.6173\n","Epoch 753/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 8.5948\n","Epoch 754/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 8.5723\n","Epoch 755/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 8.5499\n","Epoch 756/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 8.5276\n","Epoch 757/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 8.5053\n","Epoch 758/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 8.4831\n","Epoch 759/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 8.4609\n","Epoch 760/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 61ms/step - loss: 8.4387\n","Epoch 761/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 8.4166\n","Epoch 762/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 8.3946\n","Epoch 763/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 8.3726\n","Epoch 764/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 8.3507\n","Epoch 765/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 8.3288\n","Epoch 766/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 8.3069\n","Epoch 767/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 8.2851\n","Epoch 768/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 8.2634\n","Epoch 769/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 8.2417\n","Epoch 770/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 8.2200\n","Epoch 771/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 8.1984\n","Epoch 772/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 8.1769\n","Epoch 773/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 8.1554\n","Epoch 774/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 8.1339\n","Epoch 775/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 8.1125\n","Epoch 776/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 8.0912\n","Epoch 777/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 8.0699\n","Epoch 778/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 8.0486\n","Epoch 779/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 8.0274\n","Epoch 780/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 8.0062\n","Epoch 781/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 7.9851\n","Epoch 782/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 7.9640\n","Epoch 783/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.9430\n","Epoch 784/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.9221\n","Epoch 785/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.9011\n","Epoch 786/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 7.8802\n","Epoch 787/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 7.8594\n","Epoch 788/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 7.8386\n","Epoch 789/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 7.8179\n","Epoch 790/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 7.7972\n","Epoch 791/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 7.7766\n","Epoch 792/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 7.7560\n","Epoch 793/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 7.7354\n","Epoch 794/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.7149\n","Epoch 795/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.6945\n","Epoch 796/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.6740\n","Epoch 797/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 7.6537\n","Epoch 798/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.6334\n","Epoch 799/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 7.6131\n","Epoch 800/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 7.5929\n","Epoch 801/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.5727\n","Epoch 802/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 7.5526\n","Epoch 803/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 7.5325\n","Epoch 804/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 7.5124\n","Epoch 805/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 7.4924\n","Epoch 806/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 7.4725\n","Epoch 807/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 7.4526\n","Epoch 808/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 7.4327\n","Epoch 809/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.4129\n","Epoch 810/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.3931\n","Epoch 811/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 7.3734\n","Epoch 812/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.3537\n","Epoch 813/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 7.3341\n","Epoch 814/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 7.3145\n","Epoch 815/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 7.2949\n","Epoch 816/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.2754\n","Epoch 817/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 7.2560\n","Epoch 818/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 7.2365\n","Epoch 819/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 7.2172\n","Epoch 820/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 7.1979\n","Epoch 821/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 7.1786\n","Epoch 822/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.1593\n","Epoch 823/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.1401\n","Epoch 824/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 7.1210\n","Epoch 825/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 7.1019\n","Epoch 826/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 7.0828\n","Epoch 827/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 7.0638\n","Epoch 828/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 7.0448\n","Epoch 829/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 7.0259\n","Epoch 830/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 7.0070\n","Epoch 831/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.9881\n","Epoch 832/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.9693\n","Epoch 833/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 6.9506\n","Epoch 834/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.9319\n","Epoch 835/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.9132\n","Epoch 836/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 6.8945\n","Epoch 837/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 6.8760\n","Epoch 838/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 6.8574\n","Epoch 839/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 6.8389\n","Epoch 840/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 6.8204\n","Epoch 841/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 6.8020\n","Epoch 842/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 6.7836\n","Epoch 843/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 6.7653\n","Epoch 844/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.7470\n","Epoch 845/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 6.7287\n","Epoch 846/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 6.7105\n","Epoch 847/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 6.6924\n","Epoch 848/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 62ms/step - loss: 6.6742\n","Epoch 849/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 6.6562\n","Epoch 850/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.6381\n","Epoch 851/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 6.6201\n","Epoch 852/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 6.6021\n","Epoch 853/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 6.5842\n","Epoch 854/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.5663\n","Epoch 855/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 6.5485\n","Epoch 856/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.5307\n","Epoch 857/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 6.5129\n","Epoch 858/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.4952\n","Epoch 859/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 6.4776\n","Epoch 860/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 6.4599\n","Epoch 861/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 6.4423\n","Epoch 862/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.4248\n","Epoch 863/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 6.4073\n","Epoch 864/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 6.3898\n","Epoch 865/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 6.3723\n","Epoch 866/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 6.3550\n","Epoch 867/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 6.3376\n","Epoch 868/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 6.3203\n","Epoch 869/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 6.3030\n","Epoch 870/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 6.2858\n","Epoch 871/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 6.2686\n","Epoch 872/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 6.2514\n","Epoch 873/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 6.2343\n","Epoch 874/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 6.2172\n","Epoch 875/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 6.2002\n","Epoch 876/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 6.1832\n","Epoch 877/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 6.1663\n","Epoch 878/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 122ms/step - loss: 6.1493\n","Epoch 879/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 6.1325\n","Epoch 880/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 6.1156\n","Epoch 881/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 6.0988\n","Epoch 882/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 6.0821\n","Epoch 883/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 6.0653\n","Epoch 884/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 6.0487\n","Epoch 885/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 6.0320\n","Epoch 886/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 6.0154\n","Epoch 887/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 5.9988\n","Epoch 888/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 5.9823\n","Epoch 889/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 162ms/step - loss: 5.9658\n","Epoch 890/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 5.9494\n","Epoch 891/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 5.9329\n","Epoch 892/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 5.9166\n","Epoch 893/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 5.9002\n","Epoch 894/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 5.8839\n","Epoch 895/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 5.8677\n","Epoch 896/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 5.8514\n","Epoch 897/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 5.8352\n","Epoch 898/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 5.8191\n","Epoch 899/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 5.8030\n","Epoch 900/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 5.7869\n","Epoch 901/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 5.7709\n","Epoch 902/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 5.7549\n","Epoch 903/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 5.7389\n","Epoch 904/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 5.7230\n","Epoch 905/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 5.7071\n","Epoch 906/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 5.6912\n","Epoch 907/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 5.6754\n","Epoch 908/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 5.6597\n","Epoch 909/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 5.6439\n","Epoch 910/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 5.6282\n","Epoch 911/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 5.6125\n","Epoch 912/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 5.5969\n","Epoch 913/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 5.5813\n","Epoch 914/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 5.5658\n","Epoch 915/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 5.5502\n","Epoch 916/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 5.5348\n","Epoch 917/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 5.5193\n","Epoch 918/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 5.5039\n","Epoch 919/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 5.4885\n","Epoch 920/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 5.4732\n","Epoch 921/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 5.4579\n","Epoch 922/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 5.4426\n","Epoch 923/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 5.4274\n","Epoch 924/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 5.4122\n","Epoch 925/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 5.3970\n","Epoch 926/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 5.3819\n","Epoch 927/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 5.3668\n","Epoch 928/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 5.3517\n","Epoch 929/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 5.3367\n","Epoch 930/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 5.3217\n","Epoch 931/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 5.3068\n","Epoch 932/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 5.2919\n","Epoch 933/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 5.2770\n","Epoch 934/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 5.2622\n","Epoch 935/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 5.2474\n","Epoch 936/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 5.2326\n","Epoch 937/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 5.2178\n","Epoch 938/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 5.2031\n","Epoch 939/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 5.1885\n","Epoch 940/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 5.1738\n","Epoch 941/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 5.1592\n","Epoch 942/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 5.1447\n","Epoch 943/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 5.1301\n","Epoch 944/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 5.1157\n","Epoch 945/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 5.1012\n","Epoch 946/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 5.0868\n","Epoch 947/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 5.0724\n","Epoch 948/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 5.0580\n","Epoch 949/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 5.0437\n","Epoch 950/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 5.0294\n","Epoch 951/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 5.0151\n","Epoch 952/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 5.0009\n","Epoch 953/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 4.9867\n","Epoch 954/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 4.9726\n","Epoch 955/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.9585\n","Epoch 956/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.9444\n","Epoch 957/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 4.9303\n","Epoch 958/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 4.9163\n","Epoch 959/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.9023\n","Epoch 960/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.8883\n","Epoch 961/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 4.8744\n","Epoch 962/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 4.8605\n","Epoch 963/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 4.8467\n","Epoch 964/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.8329\n","Epoch 965/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 4.8191\n","Epoch 966/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.8053\n","Epoch 967/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 4.7916\n","Epoch 968/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 4.7779\n","Epoch 969/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 4.7642\n","Epoch 970/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.7506\n","Epoch 971/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 63ms/step - loss: 4.7370\n","Epoch 972/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 4.7235\n","Epoch 973/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.7099\n","Epoch 974/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.6964\n","Epoch 975/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.6830\n","Epoch 976/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 4.6696\n","Epoch 977/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 4.6562\n","Epoch 978/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 4.6428\n","Epoch 979/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 4.6295\n","Epoch 980/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.6162\n","Epoch 981/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 4.6029\n","Epoch 982/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.5896\n","Epoch 983/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 4.5764\n","Epoch 984/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 4.5633\n","Epoch 985/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 4.5501\n","Epoch 986/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 4.5370\n","Epoch 987/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 4.5239\n","Epoch 988/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 4.5109\n","Epoch 989/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 4.4979\n","Epoch 990/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 4.4849\n","Epoch 991/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 4.4719\n","Epoch 992/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.4590\n","Epoch 993/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 4.4461\n","Epoch 994/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.4333\n","Epoch 995/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.4204\n","Epoch 996/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 4.4076\n","Epoch 997/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 4.3949\n","Epoch 998/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 155ms/step - loss: 4.3821\n","Epoch 999/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 4.3694\n","Epoch 1000/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 37ms/step - loss: 4.3568\n","Epoch 1000/2700\n"," - loss: 4.3568\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 4.3568\n","Epoch 1001/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 4.3441\n","Epoch 1002/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 4.3315\n","Epoch 1003/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 4.3189\n","Epoch 1004/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 4.3064\n","Epoch 1005/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 4.2938\n","Epoch 1006/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 4.2814\n","Epoch 1007/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 4.2689\n","Epoch 1008/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 4.2565\n","Epoch 1009/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 4.2441\n","Epoch 1010/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 4.2317\n","Epoch 1011/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 4.2194\n","Epoch 1012/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 4.2070\n","Epoch 1013/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 4.1948\n","Epoch 1014/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 4.1825\n","Epoch 1015/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 4.1703\n","Epoch 1016/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 156ms/step - loss: 4.1581\n","Epoch 1017/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 4.1460\n","Epoch 1018/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 4.1338\n","Epoch 1019/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 156ms/step - loss: 4.1217\n","Epoch 1020/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 122ms/step - loss: 4.1097\n","Epoch 1021/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 4.0976\n","Epoch 1022/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 122ms/step - loss: 4.0856\n","Epoch 1023/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 4.0736\n","Epoch 1024/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 4.0617\n","Epoch 1025/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 4.0497\n","Epoch 1026/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 4.0378\n","Epoch 1027/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 4.0260\n","Epoch 1028/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 4.0141\n","Epoch 1029/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 4.0023\n","Epoch 1030/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 3.9906\n","Epoch 1031/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 3.9788\n","Epoch 1032/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 3.9671\n","Epoch 1033/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 3.9554\n","Epoch 1034/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 162ms/step - loss: 3.9437\n","Epoch 1035/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 3.9321\n","Epoch 1036/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 3.9205\n","Epoch 1037/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 3.9089\n","Epoch 1038/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 3.8974\n","Epoch 1039/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 3.8859\n","Epoch 1040/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 3.8744\n","Epoch 1041/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 3.8629\n","Epoch 1042/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 3.8515\n","Epoch 1043/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 3.8401\n","Epoch 1044/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 3.8287\n","Epoch 1045/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 3.8173\n","Epoch 1046/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 3.8060\n","Epoch 1047/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 3.7947\n","Epoch 1048/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 3.7835\n","Epoch 1049/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 3.7722\n","Epoch 1050/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 3.7610\n","Epoch 1051/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 3.7498\n","Epoch 1052/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 3.7387\n","Epoch 1053/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 3.7276\n","Epoch 1054/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 3.7165\n","Epoch 1055/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 3.7054\n","Epoch 1056/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 157ms/step - loss: 3.6943\n","Epoch 1057/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 3.6833\n","Epoch 1058/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 3.6723\n","Epoch 1059/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 3.6614\n","Epoch 1060/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 3.6504\n","Epoch 1061/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 3.6395\n","Epoch 1062/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 3.6287\n","Epoch 1063/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 3.6178\n","Epoch 1064/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 3.6070\n","Epoch 1065/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 3.5962\n","Epoch 1066/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 3.5854\n","Epoch 1067/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 3.5747\n","Epoch 1068/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 3.5640\n","Epoch 1069/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 3.5533\n","Epoch 1070/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 3.5426\n","Epoch 1071/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 3.5320\n","Epoch 1072/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 3.5214\n","Epoch 1073/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 3.5108\n","Epoch 1074/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 3.5002\n","Epoch 1075/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 3.4897\n","Epoch 1076/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 3.4792\n","Epoch 1077/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 3.4687\n","Epoch 1078/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 3.4583\n","Epoch 1079/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 3.4478\n","Epoch 1080/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 3.4374\n","Epoch 1081/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 3.4271\n","Epoch 1082/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 3.4167\n","Epoch 1083/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 3.4064\n","Epoch 1084/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 3.3961\n","Epoch 1085/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 3.3859\n","Epoch 1086/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 3.3756\n","Epoch 1087/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 3.3654\n","Epoch 1088/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 3.3552\n","Epoch 1089/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 3.3450\n","Epoch 1090/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 3.3349\n","Epoch 1091/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 3.3248\n","Epoch 1092/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 3.3147\n","Epoch 1093/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 3.3046\n","Epoch 1094/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 3.2946\n","Epoch 1095/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 3.2846\n","Epoch 1096/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 3.2746\n","Epoch 1097/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 3.2647\n","Epoch 1098/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 3.2547\n","Epoch 1099/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 3.2448\n","Epoch 1100/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 3.2349\n","Epoch 1101/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 3.2251\n","Epoch 1102/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 3.2152\n","Epoch 1103/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 155ms/step - loss: 3.2054\n","Epoch 1104/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 3.1957\n","Epoch 1105/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 3.1859\n","Epoch 1106/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 3.1762\n","Epoch 1107/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 3.1665\n","Epoch 1108/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 3.1568\n","Epoch 1109/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 3.1471\n","Epoch 1110/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 3.1375\n","Epoch 1111/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 3.1279\n","Epoch 1112/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 3.1183\n","Epoch 1113/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 3.1087\n","Epoch 1114/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 3.0992\n","Epoch 1115/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 3.0897\n","Epoch 1116/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 3.0802\n","Epoch 1117/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 3.0707\n","Epoch 1118/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 3.0613\n","Epoch 1119/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 3.0519\n","Epoch 1120/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 3.0425\n","Epoch 1121/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 3.0331\n","Epoch 1122/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 3.0238\n","Epoch 1123/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 3.0145\n","Epoch 1124/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 3.0052\n","Epoch 1125/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 2.9959\n","Epoch 1126/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 2.9867\n","Epoch 1127/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 2.9774\n","Epoch 1128/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 2.9682\n","Epoch 1129/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 2.9591\n","Epoch 1130/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 2.9499\n","Epoch 1131/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 2.9408\n","Epoch 1132/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 2.9317\n","Epoch 1133/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 2.9226\n","Epoch 1134/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 2.9136\n","Epoch 1135/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 2.9045\n","Epoch 1136/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 2.8955\n","Epoch 1137/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 2.8865\n","Epoch 1138/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 2.8776\n","Epoch 1139/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 2.8686\n","Epoch 1140/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 2.8597\n","Epoch 1141/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 2.8508\n","Epoch 1142/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 2.8420\n","Epoch 1143/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 2.8331\n","Epoch 1144/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 2.8243\n","Epoch 1145/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 2.8155\n","Epoch 1146/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 109ms/step - loss: 2.8067\n","Epoch 1147/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 2.7980\n","Epoch 1148/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 160ms/step - loss: 2.7892\n","Epoch 1149/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 2.7805\n","Epoch 1150/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 2.7718\n","Epoch 1151/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 109ms/step - loss: 2.7632\n","Epoch 1152/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 2.7545\n","Epoch 1153/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 157ms/step - loss: 2.7459\n","Epoch 1154/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 2.7373\n","Epoch 1155/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 2.7288\n","Epoch 1156/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 156ms/step - loss: 2.7202\n","Epoch 1157/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 2.7117\n","Epoch 1158/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 2.7032\n","Epoch 1159/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 118ms/step - loss: 2.6947\n","Epoch 1160/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 2.6862\n","Epoch 1161/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 2.6778\n","Epoch 1162/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 2.6694\n","Epoch 1163/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 164ms/step - loss: 2.6610\n","Epoch 1164/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 2.6526\n","Epoch 1165/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 2.6443\n","Epoch 1166/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 2.6359\n","Epoch 1167/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 2.6276\n","Epoch 1168/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 2.6194\n","Epoch 1169/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 2.6111\n","Epoch 1170/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 2.6029\n","Epoch 1171/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 2.5946\n","Epoch 1172/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 2.5864\n","Epoch 1173/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 2.5783\n","Epoch 1174/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 2.5701\n","Epoch 1175/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 2.5620\n","Epoch 1176/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 2.5539\n","Epoch 1177/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 2.5458\n","Epoch 1178/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 2.5377\n","Epoch 1179/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 301ms/step - loss: 2.5297\n","Epoch 1180/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 260ms/step - loss: 2.5217\n","Epoch 1181/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 2.5137\n","Epoch 1182/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 2.5057\n","Epoch 1183/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 2.4977\n","Epoch 1184/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 2.4898\n","Epoch 1185/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 2.4819\n","Epoch 1186/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 2.4740\n","Epoch 1187/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 2.4661\n","Epoch 1188/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.4582\n","Epoch 1189/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 2.4504\n","Epoch 1190/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 2.4426\n","Epoch 1191/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.4348\n","Epoch 1192/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 2.4270\n","Epoch 1193/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 2.4193\n","Epoch 1194/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 2.4116\n","Epoch 1195/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 2.4039\n","Epoch 1196/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.3962\n","Epoch 1197/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 2.3885\n","Epoch 1198/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 2.3809\n","Epoch 1199/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 2.3732\n","Epoch 1200/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.3656\n","Epoch 1201/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 2.3580\n","Epoch 1202/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 2.3505\n","Epoch 1203/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 2.3429\n","Epoch 1204/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.3354\n","Epoch 1205/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 2.3279\n","Epoch 1206/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.3204\n","Epoch 1207/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 2.3130\n","Epoch 1208/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 2.3055\n","Epoch 1209/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 2.2981\n","Epoch 1210/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 2.2907\n","Epoch 1211/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 2.2833\n","Epoch 1212/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 2.2760\n","Epoch 1213/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 2.2686\n","Epoch 1214/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 2.2613\n","Epoch 1215/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 2.2540\n","Epoch 1216/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 2.2467\n","Epoch 1217/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 2.2395\n","Epoch 1218/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 2.2322\n","Epoch 1219/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.2250\n","Epoch 1220/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 2.2178\n","Epoch 1221/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.2106\n","Epoch 1222/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 2.2034\n","Epoch 1223/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 2.1963\n","Epoch 1224/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 2.1892\n","Epoch 1225/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 2.1821\n","Epoch 1226/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 2.1750\n","Epoch 1227/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 2.1679\n","Epoch 1228/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 2.1609\n","Epoch 1229/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 2.1538\n","Epoch 1230/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 2.1468\n","Epoch 1231/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 2.1398\n","Epoch 1232/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 2.1329\n","Epoch 1233/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 2.1259\n","Epoch 1234/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 2.1190\n","Epoch 1235/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 2.1121\n","Epoch 1236/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 2.1052\n","Epoch 1237/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 2.0983\n","Epoch 1238/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 2.0914\n","Epoch 1239/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 2.0846\n","Epoch 1240/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 2.0778\n","Epoch 1241/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 2.0710\n","Epoch 1242/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 2.0642\n","Epoch 1243/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 2.0575\n","Epoch 1244/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 2.0507\n","Epoch 1245/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 2.0440\n","Epoch 1246/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 2.0373\n","Epoch 1247/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 2.0306\n","Epoch 1248/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 2.0239\n","Epoch 1249/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 2.0173\n","Epoch 1250/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 2.0106\n","Epoch 1251/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 2.0040\n","Epoch 1252/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 1.9974\n","Epoch 1253/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 1.9908\n","Epoch 1254/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 1.9843\n","Epoch 1255/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.9777\n","Epoch 1256/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 1.9712\n","Epoch 1257/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 1.9647\n","Epoch 1258/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 1.9582\n","Epoch 1259/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 1.9518\n","Epoch 1260/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 1.9453\n","Epoch 1261/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 1.9389\n","Epoch 1262/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 1.9325\n","Epoch 1263/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 1.9261\n","Epoch 1264/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.9197\n","Epoch 1265/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 1.9133\n","Epoch 1266/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 1.9070\n","Epoch 1267/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.9007\n","Epoch 1268/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.8944\n","Epoch 1269/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.8881\n","Epoch 1270/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.8818\n","Epoch 1271/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 1.8755\n","Epoch 1272/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 1.8693\n","Epoch 1273/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 1.8631\n","Epoch 1274/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 1.8569\n","Epoch 1275/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 1.8507\n","Epoch 1276/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 1.8445\n","Epoch 1277/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.8384\n","Epoch 1278/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 1.8322\n","Epoch 1279/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 1.8261\n","Epoch 1280/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 167ms/step - loss: 1.8200\n","Epoch 1281/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 1.8140\n","Epoch 1282/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 1.8079\n","Epoch 1283/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 166ms/step - loss: 1.8018\n","Epoch 1284/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 1.7958\n","Epoch 1285/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 1.7898\n","Epoch 1286/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 1.7838\n","Epoch 1287/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 1.7778\n","Epoch 1288/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 1.7719\n","Epoch 1289/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 1.7659\n","Epoch 1290/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 1.7600\n","Epoch 1291/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 1.7541\n","Epoch 1292/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 1.7482\n","Epoch 1293/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.7423\n","Epoch 1294/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.7365\n","Epoch 1295/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 1.7306\n","Epoch 1296/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 1.7248\n","Epoch 1297/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 1.7190\n","Epoch 1298/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 160ms/step - loss: 1.7132\n","Epoch 1299/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 1.7074\n","Epoch 1300/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 1.7016\n","Epoch 1301/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 1.6959\n","Epoch 1302/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 1.6902\n","Epoch 1303/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 1.6845\n","Epoch 1304/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 167ms/step - loss: 1.6788\n","Epoch 1305/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.6731\n","Epoch 1306/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 163ms/step - loss: 1.6674\n","Epoch 1307/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 1.6618\n","Epoch 1308/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 1.6561\n","Epoch 1309/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 1.6505\n","Epoch 1310/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 1.6449\n","Epoch 1311/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 1.6393\n","Epoch 1312/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 1.6338\n","Epoch 1313/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 1.6282\n","Epoch 1314/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 1.6227\n","Epoch 1315/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.6172\n","Epoch 1316/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 1.6117\n","Epoch 1317/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 1.6062\n","Epoch 1318/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 1.6007\n","Epoch 1319/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 1.5953\n","Epoch 1320/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 1.5898\n","Epoch 1321/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 1.5844\n","Epoch 1322/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 1.5790\n","Epoch 1323/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 1.5736\n","Epoch 1324/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 1.5682\n","Epoch 1325/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 1.5629\n","Epoch 1326/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 1.5575\n","Epoch 1327/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 1.5522\n","Epoch 1328/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 1.5469\n","Epoch 1329/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 1.5416\n","Epoch 1330/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 1.5363\n","Epoch 1331/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 1.5310\n","Epoch 1332/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.5258\n","Epoch 1333/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.5205\n","Epoch 1334/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.5153\n","Epoch 1335/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.5101\n","Epoch 1336/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.5049\n","Epoch 1337/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.4997\n","Epoch 1338/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.4946\n","Epoch 1339/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.4894\n","Epoch 1340/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 1.4843\n","Epoch 1341/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 1.4792\n","Epoch 1342/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 1.4741\n","Epoch 1343/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 1.4690\n","Epoch 1344/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.4639\n","Epoch 1345/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 1.4589\n","Epoch 1346/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 1.4538\n","Epoch 1347/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.4488\n","Epoch 1348/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 1.4438\n","Epoch 1349/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 1.4388\n","Epoch 1350/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 1.4338\n","Epoch 1351/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.4288\n","Epoch 1352/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 1.4239\n","Epoch 1353/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 1.4189\n","Epoch 1354/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 1.4140\n","Epoch 1355/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 1.4091\n","Epoch 1356/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.4042\n","Epoch 1357/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 1.3993\n","Epoch 1358/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 1.3945\n","Epoch 1359/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.3896\n","Epoch 1360/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.3848\n","Epoch 1361/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 1.3800\n","Epoch 1362/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 1.3751\n","Epoch 1363/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 1.3704\n","Epoch 1364/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 1.3656\n","Epoch 1365/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 1.3608\n","Epoch 1366/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 1.3561\n","Epoch 1367/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 1.3513\n","Epoch 1368/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.3466\n","Epoch 1369/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.3419\n","Epoch 1370/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 1.3372\n","Epoch 1371/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 1.3325\n","Epoch 1372/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.3278\n","Epoch 1373/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 1.3232\n","Epoch 1374/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 1.3185\n","Epoch 1375/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 1.3139\n","Epoch 1376/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.3093\n","Epoch 1377/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 1.3047\n","Epoch 1378/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.3001\n","Epoch 1379/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 1.2956\n","Epoch 1380/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.2910\n","Epoch 1381/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.2865\n","Epoch 1382/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 1.2819\n","Epoch 1383/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.2774\n","Epoch 1384/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 1.2729\n","Epoch 1385/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 1.2684\n","Epoch 1386/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 1.2639\n","Epoch 1387/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 1.2595\n","Epoch 1388/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 1.2550\n","Epoch 1389/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 1.2506\n","Epoch 1390/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.2462\n","Epoch 1391/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.2418\n","Epoch 1392/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 1.2374\n","Epoch 1393/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.2330\n","Epoch 1394/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 1.2286\n","Epoch 1395/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.2243\n","Epoch 1396/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 1.2199\n","Epoch 1397/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.2156\n","Epoch 1398/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 1.2113\n","Epoch 1399/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 1.2070\n","Epoch 1400/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 1.2027\n","Epoch 1401/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 1.1984\n","Epoch 1402/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 1.1941\n","Epoch 1403/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 1.1899\n","Epoch 1404/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.1857\n","Epoch 1405/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 1.1814\n","Epoch 1406/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 1.1772\n","Epoch 1407/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.1730\n","Epoch 1408/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 1.1688\n","Epoch 1409/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 1.1647\n","Epoch 1410/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 1.1605\n","Epoch 1411/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 1.1563\n","Epoch 1412/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 1.1522\n","Epoch 1413/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 1.1481\n","Epoch 1414/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 1.1440\n","Epoch 1415/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 1.1399\n","Epoch 1416/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 1.1358\n","Epoch 1417/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 109ms/step - loss: 1.1317\n","Epoch 1418/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 1.1277\n","Epoch 1419/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 1.1236\n","Epoch 1420/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 1.1196\n","Epoch 1421/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 1.1156\n","Epoch 1422/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 1.1115\n","Epoch 1423/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 1.1075\n","Epoch 1424/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 1.1036\n","Epoch 1425/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 1.0996\n","Epoch 1426/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 1.0956\n","Epoch 1427/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 1.0917\n","Epoch 1428/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 1.0877\n","Epoch 1429/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 1.0838\n","Epoch 1430/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 1.0799\n","Epoch 1431/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 1.0760\n","Epoch 1432/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 1.0721\n","Epoch 1433/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 1.0682\n","Epoch 1434/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 1.0644\n","Epoch 1435/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 1.0605\n","Epoch 1436/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 1.0567\n","Epoch 1437/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 1.0529\n","Epoch 1438/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 1.0490\n","Epoch 1439/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 1.0452\n","Epoch 1440/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 1.0414\n","Epoch 1441/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 156ms/step - loss: 1.0377\n","Epoch 1442/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 1.0339\n","Epoch 1443/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 1.0301\n","Epoch 1444/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 1.0264\n","Epoch 1445/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 1.0227\n","Epoch 1446/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 1.0189\n","Epoch 1447/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 1.0152\n","Epoch 1448/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 1.0115\n","Epoch 1449/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 1.0078\n","Epoch 1450/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 109ms/step - loss: 1.0042\n","Epoch 1451/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 1.0005\n","Epoch 1452/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.9968\n","Epoch 1453/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 0.9932\n","Epoch 1454/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.9896\n","Epoch 1455/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.9860\n","Epoch 1456/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.9823\n","Epoch 1457/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.9787\n","Epoch 1458/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.9752\n","Epoch 1459/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.9716\n","Epoch 1460/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.9680\n","Epoch 1461/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.9645\n","Epoch 1462/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.9609\n","Epoch 1463/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.9574\n","Epoch 1464/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.9539\n","Epoch 1465/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.9504\n","Epoch 1466/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.9469\n","Epoch 1467/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.9434\n","Epoch 1468/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.9399\n","Epoch 1469/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.9365\n","Epoch 1470/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.9330\n","Epoch 1471/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.9296\n","Epoch 1472/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.9262\n","Epoch 1473/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.9227\n","Epoch 1474/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.9193\n","Epoch 1475/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.9159\n","Epoch 1476/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.9125\n","Epoch 1477/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.9092\n","Epoch 1478/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.9058\n","Epoch 1479/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.9025\n","Epoch 1480/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.8991\n","Epoch 1481/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.8958\n","Epoch 1482/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.8925\n","Epoch 1483/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.8891\n","Epoch 1484/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.8858\n","Epoch 1485/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.8826\n","Epoch 1486/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.8793\n","Epoch 1487/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.8760\n","Epoch 1488/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.8728\n","Epoch 1489/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.8695\n","Epoch 1490/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.8663\n","Epoch 1491/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.8630\n","Epoch 1492/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.8598\n","Epoch 1493/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.8566\n","Epoch 1494/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.8534\n","Epoch 1495/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.8502\n","Epoch 1496/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.8471\n","Epoch 1497/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.8439\n","Epoch 1498/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.8407\n","Epoch 1499/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.8376\n","Epoch 1500/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.8345\n","Epoch 1501/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.8313\n","Epoch 1502/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.8282\n","Epoch 1503/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.8251\n","Epoch 1504/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.8220\n","Epoch 1505/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.8189\n","Epoch 1506/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.8159\n","Epoch 1507/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.8128\n","Epoch 1508/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.8098\n","Epoch 1509/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 0.8067\n","Epoch 1510/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.8037\n","Epoch 1511/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.8007\n","Epoch 1512/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.7976\n","Epoch 1513/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.7946\n","Epoch 1514/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.7916\n","Epoch 1515/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.7887\n","Epoch 1516/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.7857\n","Epoch 1517/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.7827\n","Epoch 1518/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.7798\n","Epoch 1519/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.7768\n","Epoch 1520/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 0.7739\n","Epoch 1521/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.7710\n","Epoch 1522/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.7680\n","Epoch 1523/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.7651\n","Epoch 1524/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.7622\n","Epoch 1525/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.7593\n","Epoch 1526/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.7565\n","Epoch 1527/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.7536\n","Epoch 1528/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.7507\n","Epoch 1529/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.7479\n","Epoch 1530/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.7450\n","Epoch 1531/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.7422\n","Epoch 1532/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.7394\n","Epoch 1533/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.7366\n","Epoch 1534/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.7338\n","Epoch 1535/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.7310\n","Epoch 1536/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.7282\n","Epoch 1537/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.7254\n","Epoch 1538/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.7226\n","Epoch 1539/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.7199\n","Epoch 1540/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.7171\n","Epoch 1541/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.7144\n","Epoch 1542/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.7117\n","Epoch 1543/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.7089\n","Epoch 1544/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.7062\n","Epoch 1545/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.7035\n","Epoch 1546/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.7008\n","Epoch 1547/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.6982\n","Epoch 1548/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.6955\n","Epoch 1549/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 178ms/step - loss: 0.6928\n","Epoch 1550/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 0.6902\n","Epoch 1551/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.6875\n","Epoch 1552/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 162ms/step - loss: 0.6849\n","Epoch 1553/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 0.6822\n","Epoch 1554/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.6796\n","Epoch 1555/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 118ms/step - loss: 0.6770\n","Epoch 1556/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.6744\n","Epoch 1557/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 0.6718\n","Epoch 1558/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 0.6692\n","Epoch 1559/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.6666\n","Epoch 1560/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 0.6641\n","Epoch 1561/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 0.6615\n","Epoch 1562/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.6589\n","Epoch 1563/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.6564\n","Epoch 1564/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 0.6539\n","Epoch 1565/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.6513\n","Epoch 1566/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.6488\n","Epoch 1567/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.6463\n","Epoch 1568/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 0.6438\n","Epoch 1569/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 0.6413\n","Epoch 1570/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 0.6388\n","Epoch 1571/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 0.6363\n","Epoch 1572/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.6339\n","Epoch 1573/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 0.6314\n","Epoch 1574/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 288ms/step - loss: 0.6290\n","Epoch 1575/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.6265\n","Epoch 1576/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.6241\n","Epoch 1577/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.6216\n","Epoch 1578/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 118ms/step - loss: 0.6192\n","Epoch 1579/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.6168\n","Epoch 1580/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 0.6144\n","Epoch 1581/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 0.6120\n","Epoch 1582/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 291ms/step - loss: 0.6096\n","Epoch 1583/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 0.6073\n","Epoch 1584/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 0.6049\n","Epoch 1585/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.6025\n","Epoch 1586/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.6002\n","Epoch 1587/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.5978\n","Epoch 1588/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.5955\n","Epoch 1589/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.5932\n","Epoch 1590/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.5908\n","Epoch 1591/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.5885\n","Epoch 1592/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.5862\n","Epoch 1593/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.5839\n","Epoch 1594/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.5816\n","Epoch 1595/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.5794\n","Epoch 1596/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.5771\n","Epoch 1597/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.5748\n","Epoch 1598/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.5726\n","Epoch 1599/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.5703\n","Epoch 1600/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.5681\n","Epoch 1601/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.5658\n","Epoch 1602/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 0.5636\n","Epoch 1603/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.5614\n","Epoch 1604/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.5592\n","Epoch 1605/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.5570\n","Epoch 1606/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.5548\n","Epoch 1607/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.5526\n","Epoch 1608/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.5504\n","Epoch 1609/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.5482\n","Epoch 1610/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.5461\n","Epoch 1611/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.5439\n","Epoch 1612/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.5417\n","Epoch 1613/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.5396\n","Epoch 1614/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.5375\n","Epoch 1615/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.5353\n","Epoch 1616/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.5332\n","Epoch 1617/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.5311\n","Epoch 1618/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 0.5290\n","Epoch 1619/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 0.5269\n","Epoch 1620/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.5248\n","Epoch 1621/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.5227\n","Epoch 1622/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 0.5206\n","Epoch 1623/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.5186\n","Epoch 1624/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.5165\n","Epoch 1625/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.5144\n","Epoch 1626/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.5124\n","Epoch 1627/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.5104\n","Epoch 1628/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.5083\n","Epoch 1629/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.5063\n","Epoch 1630/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.5043\n","Epoch 1631/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.5023\n","Epoch 1632/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.5003\n","Epoch 1633/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.4983\n","Epoch 1634/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.4963\n","Epoch 1635/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.4943\n","Epoch 1636/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.4923\n","Epoch 1637/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.4903\n","Epoch 1638/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.4884\n","Epoch 1639/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.4864\n","Epoch 1640/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.4845\n","Epoch 1641/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.4825\n","Epoch 1642/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.4806\n","Epoch 1643/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.4786\n","Epoch 1644/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.4767\n","Epoch 1645/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.4748\n","Epoch 1646/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.4729\n","Epoch 1647/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.4710\n","Epoch 1648/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.4691\n","Epoch 1649/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.4672\n","Epoch 1650/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.4653\n","Epoch 1651/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.4635\n","Epoch 1652/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.4616\n","Epoch 1653/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.4597\n","Epoch 1654/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.4579\n","Epoch 1655/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 0.4560\n","Epoch 1656/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.4542\n","Epoch 1657/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.4523\n","Epoch 1658/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.4505\n","Epoch 1659/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.4487\n","Epoch 1660/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.4469\n","Epoch 1661/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 0.4451\n","Epoch 1662/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.4433\n","Epoch 1663/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.4415\n","Epoch 1664/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.4397\n","Epoch 1665/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.4379\n","Epoch 1666/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 0.4361\n","Epoch 1667/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.4343\n","Epoch 1668/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.4326\n","Epoch 1669/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.4308\n","Epoch 1670/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.4291\n","Epoch 1671/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.4273\n","Epoch 1672/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.4256\n","Epoch 1673/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.4239\n","Epoch 1674/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.4221\n","Epoch 1675/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.4204\n","Epoch 1676/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.4187\n","Epoch 1677/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.4170\n","Epoch 1678/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 0.4153\n","Epoch 1679/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 166ms/step - loss: 0.4136\n","Epoch 1680/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 0.4119\n","Epoch 1681/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 0.4102\n","Epoch 1682/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.4085\n","Epoch 1683/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 0.4069\n","Epoch 1684/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.4052\n","Epoch 1685/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 0.4035\n","Epoch 1686/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 188ms/step - loss: 0.4019\n","Epoch 1687/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.4002\n","Epoch 1688/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.3986\n","Epoch 1689/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 0.3970\n","Epoch 1690/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 0.3953\n","Epoch 1691/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.3937\n","Epoch 1692/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 0.3921\n","Epoch 1693/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 172ms/step - loss: 0.3905\n","Epoch 1694/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.3889\n","Epoch 1695/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.3873\n","Epoch 1696/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 0.3857\n","Epoch 1697/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 0.3841\n","Epoch 1698/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.3825\n","Epoch 1699/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 0.3809\n","Epoch 1700/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.3794\n","Epoch 1701/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 0.3778\n","Epoch 1702/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 109ms/step - loss: 0.3763\n","Epoch 1703/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 180ms/step - loss: 0.3747\n","Epoch 1704/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 0.3732\n","Epoch 1705/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.3716\n","Epoch 1706/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 0.3701\n","Epoch 1707/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 167ms/step - loss: 0.3686\n","Epoch 1708/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.3670\n","Epoch 1709/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 0.3655\n","Epoch 1710/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.3640\n","Epoch 1711/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.3625\n","Epoch 1712/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 175ms/step - loss: 0.3610\n","Epoch 1713/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 282ms/step - loss: 0.3595\n","Epoch 1714/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 0.3580\n","Epoch 1715/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.3565\n","Epoch 1716/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.3550\n","Epoch 1717/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.3536\n","Epoch 1718/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.3521\n","Epoch 1719/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.3506\n","Epoch 1720/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.3492\n","Epoch 1721/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 0.3477\n","Epoch 1722/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.3463\n","Epoch 1723/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.3448\n","Epoch 1724/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.3434\n","Epoch 1725/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.3420\n","Epoch 1726/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.3405\n","Epoch 1727/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.3391\n","Epoch 1728/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.3377\n","Epoch 1729/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.3363\n","Epoch 1730/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.3349\n","Epoch 1731/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.3335\n","Epoch 1732/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.3321\n","Epoch 1733/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.3307\n","Epoch 1734/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.3293\n","Epoch 1735/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.3279\n","Epoch 1736/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.3266\n","Epoch 1737/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.3252\n","Epoch 1738/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.3238\n","Epoch 1739/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.3225\n","Epoch 1740/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.3211\n","Epoch 1741/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 0.3198\n","Epoch 1742/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.3184\n","Epoch 1743/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.3171\n","Epoch 1744/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.3158\n","Epoch 1745/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.3144\n","Epoch 1746/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.3131\n","Epoch 1747/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.3118\n","Epoch 1748/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.3105\n","Epoch 1749/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.3092\n","Epoch 1750/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.3079\n","Epoch 1751/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.3066\n","Epoch 1752/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.3053\n","Epoch 1753/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.3040\n","Epoch 1754/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.3027\n","Epoch 1755/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.3015\n","Epoch 1756/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.3002\n","Epoch 1757/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.2989\n","Epoch 1758/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.2976\n","Epoch 1759/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.2964\n","Epoch 1760/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 0.2951\n","Epoch 1761/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.2939\n","Epoch 1762/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.2926\n","Epoch 1763/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.2914\n","Epoch 1764/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.2902\n","Epoch 1765/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.2889\n","Epoch 1766/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.2877\n","Epoch 1767/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.2865\n","Epoch 1768/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.2853\n","Epoch 1769/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.2841\n","Epoch 1770/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 0.2829\n","Epoch 1771/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.2817\n","Epoch 1772/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.2805\n","Epoch 1773/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.2793\n","Epoch 1774/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.2781\n","Epoch 1775/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.2769\n","Epoch 1776/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.2757\n","Epoch 1777/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.2746\n","Epoch 1778/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.2734\n","Epoch 1779/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.2722\n","Epoch 1780/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.2711\n","Epoch 1781/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.2699\n","Epoch 1782/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.2688\n","Epoch 1783/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 0.2676\n","Epoch 1784/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.2665\n","Epoch 1785/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.2653\n","Epoch 1786/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.2642\n","Epoch 1787/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.2631\n","Epoch 1788/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.2619\n","Epoch 1789/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.2608\n","Epoch 1790/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.2597\n","Epoch 1791/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.2586\n","Epoch 1792/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.2575\n","Epoch 1793/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.2564\n","Epoch 1794/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.2553\n","Epoch 1795/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.2542\n","Epoch 1796/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.2531\n","Epoch 1797/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.2520\n","Epoch 1798/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.2509\n","Epoch 1799/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.2499\n","Epoch 1800/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.2488\n","Epoch 1801/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.2477\n","Epoch 1802/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.2466\n","Epoch 1803/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.2456\n","Epoch 1804/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.2445\n","Epoch 1805/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.2435\n","Epoch 1806/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.2424\n","Epoch 1807/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.2414\n","Epoch 1808/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.2403\n","Epoch 1809/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.2393\n","Epoch 1810/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.2383\n","Epoch 1811/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 0.2372\n","Epoch 1812/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.2362\n","Epoch 1813/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 0.2352\n","Epoch 1814/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.2342\n","Epoch 1815/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 157ms/step - loss: 0.2332\n","Epoch 1816/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 0.2322\n","Epoch 1817/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.2312\n","Epoch 1818/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 0.2302\n","Epoch 1819/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.2292\n","Epoch 1820/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 0.2282\n","Epoch 1821/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.2272\n","Epoch 1822/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 0.2262\n","Epoch 1823/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 0.2252\n","Epoch 1824/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.2243\n","Epoch 1825/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 0.2233\n","Epoch 1826/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 0.2223\n","Epoch 1827/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 0.2213\n","Epoch 1828/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 118ms/step - loss: 0.2204\n","Epoch 1829/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 158ms/step - loss: 0.2194\n","Epoch 1830/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.2185\n","Epoch 1831/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 122ms/step - loss: 0.2175\n","Epoch 1832/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 0.2166\n","Epoch 1833/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 0.2156\n","Epoch 1834/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 0.2147\n","Epoch 1835/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.2138\n","Epoch 1836/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 0.2128\n","Epoch 1837/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 0.2119\n","Epoch 1838/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 0.2110\n","Epoch 1839/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.2101\n","Epoch 1840/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.2092\n","Epoch 1841/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 0.2082\n","Epoch 1842/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.2073\n","Epoch 1843/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.2064\n","Epoch 1844/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.2055\n","Epoch 1845/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.2046\n","Epoch 1846/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 178ms/step - loss: 0.2037\n","Epoch 1847/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.2029\n","Epoch 1848/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.2020\n","Epoch 1849/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 275ms/step - loss: 0.2011\n","Epoch 1850/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.2002\n","Epoch 1851/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 0.1993\n","Epoch 1852/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.1985\n","Epoch 1853/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.1976\n","Epoch 1854/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.1967\n","Epoch 1855/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1959\n","Epoch 1856/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.1950\n","Epoch 1857/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1942\n","Epoch 1858/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 0.1933\n","Epoch 1859/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.1925\n","Epoch 1860/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.1916\n","Epoch 1861/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.1908\n","Epoch 1862/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 0.1899\n","Epoch 1863/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.1891\n","Epoch 1864/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.1883\n","Epoch 1865/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.1874\n","Epoch 1866/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.1866\n","Epoch 1867/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.1858\n","Epoch 1868/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.1850\n","Epoch 1869/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.1842\n","Epoch 1870/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1834\n","Epoch 1871/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.1825\n","Epoch 1872/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1817\n","Epoch 1873/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.1809\n","Epoch 1874/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.1801\n","Epoch 1875/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1794\n","Epoch 1876/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.1786\n","Epoch 1877/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.1778\n","Epoch 1878/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.1770\n","Epoch 1879/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.1762\n","Epoch 1880/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.1754\n","Epoch 1881/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.1747\n","Epoch 1882/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 0.1739\n","Epoch 1883/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 0.1731\n","Epoch 1884/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.1724\n","Epoch 1885/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.1716\n","Epoch 1886/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.1708\n","Epoch 1887/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.1701\n","Epoch 1888/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.1693\n","Epoch 1889/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1686\n","Epoch 1890/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.1678\n","Epoch 1891/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.1671\n","Epoch 1892/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.1664\n","Epoch 1893/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.1656\n","Epoch 1894/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1649\n","Epoch 1895/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.1642\n","Epoch 1896/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.1634\n","Epoch 1897/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.1627\n","Epoch 1898/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.1620\n","Epoch 1899/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.1613\n","Epoch 1900/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.1605\n","Epoch 1901/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.1598\n","Epoch 1902/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.1591\n","Epoch 1903/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.1584\n","Epoch 1904/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.1577\n","Epoch 1905/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.1570\n","Epoch 1906/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.1563\n","Epoch 1907/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.1556\n","Epoch 1908/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.1549\n","Epoch 1909/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.1542\n","Epoch 1910/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.1536\n","Epoch 1911/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.1529\n","Epoch 1912/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 0.1522\n","Epoch 1913/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 0.1515\n","Epoch 1914/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1508\n","Epoch 1915/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.1502\n","Epoch 1916/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.1495\n","Epoch 1917/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.1488\n","Epoch 1918/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1482\n","Epoch 1919/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.1475\n","Epoch 1920/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1469\n","Epoch 1921/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.1462\n","Epoch 1922/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 0.1455\n","Epoch 1923/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.1449\n","Epoch 1924/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1443\n","Epoch 1925/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 0.1436\n","Epoch 1926/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.1430\n","Epoch 1927/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.1423\n","Epoch 1928/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1417\n","Epoch 1929/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.1411\n","Epoch 1930/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.1404\n","Epoch 1931/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.1398\n","Epoch 1932/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1392\n","Epoch 1933/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1386\n","Epoch 1934/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.1379\n","Epoch 1935/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.1373\n","Epoch 1936/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.1367\n","Epoch 1937/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.1361\n","Epoch 1938/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.1355\n","Epoch 1939/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.1349\n","Epoch 1940/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.1343\n","Epoch 1941/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.1337\n","Epoch 1942/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1331\n","Epoch 1943/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.1325\n","Epoch 1944/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.1319\n","Epoch 1945/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 0.1313\n","Epoch 1946/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 118ms/step - loss: 0.1307\n","Epoch 1947/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 161ms/step - loss: 0.1301\n","Epoch 1948/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.1295\n","Epoch 1949/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.1290\n","Epoch 1950/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 0.1284\n","Epoch 1951/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.1278\n","Epoch 1952/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 0.1272\n","Epoch 1953/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 0.1267\n","Epoch 1954/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.1261\n","Epoch 1955/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 0.1255\n","Epoch 1956/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 0.1250\n","Epoch 1957/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.1244\n","Epoch 1958/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.1238\n","Epoch 1959/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 0.1233\n","Epoch 1960/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 0.1227\n","Epoch 1961/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 0.1222\n","Epoch 1962/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 0.1216\n","Epoch 1963/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 0.1211\n","Epoch 1964/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.1205\n","Epoch 1965/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 0.1200\n","Epoch 1966/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 0.1195\n","Epoch 1967/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.1189\n","Epoch 1968/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.1184\n","Epoch 1969/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.1179\n","Epoch 1970/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 122ms/step - loss: 0.1173\n","Epoch 1971/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.1168\n","Epoch 1972/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.1163\n","Epoch 1973/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.1158\n","Epoch 1974/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.1152\n","Epoch 1975/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.1147\n","Epoch 1976/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.1142\n","Epoch 1977/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.1137\n","Epoch 1978/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.1132\n","Epoch 1979/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 0.1127\n","Epoch 1980/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 0.1122\n","Epoch 1981/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.1116\n","Epoch 1982/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.1111\n","Epoch 1983/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.1106\n","Epoch 1984/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 0.1101\n","Epoch 1985/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.1096\n","Epoch 1986/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 165ms/step - loss: 0.1092\n","Epoch 1987/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 275ms/step - loss: 0.1087\n","Epoch 1988/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.1082\n","Epoch 1989/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 160ms/step - loss: 0.1077\n","Epoch 1990/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1072\n","Epoch 1991/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.1067\n","Epoch 1992/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.1062\n","Epoch 1993/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.1058\n","Epoch 1994/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.1053\n","Epoch 1995/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.1048\n","Epoch 1996/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.1043\n","Epoch 1997/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1039\n","Epoch 1998/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.1034\n","Epoch 1999/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.1029\n","Epoch 2000/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 42ms/step - loss: 0.1025\n","Epoch 2000/2700\n"," - loss: 0.1025\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.1025\n","Epoch 2001/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.1020\n","Epoch 2002/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.1015\n","Epoch 2003/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.1011\n","Epoch 2004/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.1006\n","Epoch 2005/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.1002\n","Epoch 2006/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0997\n","Epoch 2007/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0993\n","Epoch 2008/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 162ms/step - loss: 0.0988\n","Epoch 2009/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0984\n","Epoch 2010/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 0.0979\n","Epoch 2011/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.0975\n","Epoch 2012/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0971\n","Epoch 2013/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0966\n","Epoch 2014/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0962\n","Epoch 2015/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0957\n","Epoch 2016/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0953\n","Epoch 2017/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0949\n","Epoch 2018/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0945\n","Epoch 2019/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0940\n","Epoch 2020/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0936\n","Epoch 2021/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0932\n","Epoch 2022/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0928\n","Epoch 2023/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0923\n","Epoch 2024/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0919\n","Epoch 2025/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0915\n","Epoch 2026/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.0911\n","Epoch 2027/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0907\n","Epoch 2028/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0903\n","Epoch 2029/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0899\n","Epoch 2030/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0895\n","Epoch 2031/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0891\n","Epoch 2032/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0887\n","Epoch 2033/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0883\n","Epoch 2034/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0879\n","Epoch 2035/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.0875\n","Epoch 2036/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0871\n","Epoch 2037/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0867\n","Epoch 2038/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0863\n","Epoch 2039/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 0.0859\n","Epoch 2040/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0855\n","Epoch 2041/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0851\n","Epoch 2042/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0847\n","Epoch 2043/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0844\n","Epoch 2044/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0840\n","Epoch 2045/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0836\n","Epoch 2046/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.0832\n","Epoch 2047/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0828\n","Epoch 2048/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.0825\n","Epoch 2049/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0821\n","Epoch 2050/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0817\n","Epoch 2051/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0814\n","Epoch 2052/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.0810\n","Epoch 2053/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0806\n","Epoch 2054/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 0.0803\n","Epoch 2055/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0799\n","Epoch 2056/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0795\n","Epoch 2057/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0792\n","Epoch 2058/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0788\n","Epoch 2059/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0785\n","Epoch 2060/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 0.0781\n","Epoch 2061/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0778\n","Epoch 2062/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.0774\n","Epoch 2063/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0771\n","Epoch 2064/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0767\n","Epoch 2065/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0764\n","Epoch 2066/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0760\n","Epoch 2067/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.0757\n","Epoch 2068/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.0753\n","Epoch 2069/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0750\n","Epoch 2070/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 0.0747\n","Epoch 2071/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0743\n","Epoch 2072/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0740\n","Epoch 2073/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0737\n","Epoch 2074/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0733\n","Epoch 2075/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0730\n","Epoch 2076/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0727\n","Epoch 2077/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 0.0724\n","Epoch 2078/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.0720\n","Epoch 2079/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0717\n","Epoch 2080/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 0.0714\n","Epoch 2081/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0711\n","Epoch 2082/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0707\n","Epoch 2083/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0704\n","Epoch 2084/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0701\n","Epoch 2085/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.0698\n","Epoch 2086/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.0695\n","Epoch 2087/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0692\n","Epoch 2088/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0689\n","Epoch 2089/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 0.0686\n","Epoch 2090/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 0.0682\n","Epoch 2091/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.0679\n","Epoch 2092/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.0676\n","Epoch 2093/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0673\n","Epoch 2094/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0670\n","Epoch 2095/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 0.0667\n","Epoch 2096/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.0664\n","Epoch 2097/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 0.0661\n","Epoch 2098/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 157ms/step - loss: 0.0658\n","Epoch 2099/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 265ms/step - loss: 0.0655\n","Epoch 2100/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.0653\n","Epoch 2101/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 292ms/step - loss: 0.0650\n","Epoch 2102/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 0.0647\n","Epoch 2103/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.0644\n","Epoch 2104/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.0641\n","Epoch 2105/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 0.0638\n","Epoch 2106/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.0635\n","Epoch 2107/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 160ms/step - loss: 0.0632\n","Epoch 2108/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.0630\n","Epoch 2109/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 0.0627\n","Epoch 2110/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0624\n","Epoch 2111/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0621\n","Epoch 2112/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.0618\n","Epoch 2113/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 0.0616\n","Epoch 2114/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 0.0613\n","Epoch 2115/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 0.0610\n","Epoch 2116/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 0.0607\n","Epoch 2117/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0605\n","Epoch 2118/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.0602\n","Epoch 2119/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.0599\n","Epoch 2120/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 180ms/step - loss: 0.0597\n","Epoch 2121/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 0.0594\n","Epoch 2122/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 0.0591\n","Epoch 2123/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.0589\n","Epoch 2124/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 0.0586\n","Epoch 2125/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 0.0584\n","Epoch 2126/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0581\n","Epoch 2127/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0578\n","Epoch 2128/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0576\n","Epoch 2129/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0573\n","Epoch 2130/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0571\n","Epoch 2131/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0568\n","Epoch 2132/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0566\n","Epoch 2133/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0563\n","Epoch 2134/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0561\n","Epoch 2135/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0558\n","Epoch 2136/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0556\n","Epoch 2137/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 0.0553\n","Epoch 2138/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0551\n","Epoch 2139/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0549\n","Epoch 2140/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 83ms/step - loss: 0.0546\n","Epoch 2141/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 0.0544\n","Epoch 2142/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 0.0541\n","Epoch 2143/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0539\n","Epoch 2144/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0537\n","Epoch 2145/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0534\n","Epoch 2146/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 0.0532\n","Epoch 2147/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0530\n","Epoch 2148/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0527\n","Epoch 2149/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0525\n","Epoch 2150/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0523\n","Epoch 2151/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0520\n","Epoch 2152/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 0.0518\n","Epoch 2153/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0516\n","Epoch 2154/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.0513\n","Epoch 2155/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0511\n","Epoch 2156/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0509\n","Epoch 2157/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0507\n","Epoch 2158/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0505\n","Epoch 2159/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 0.0502\n","Epoch 2160/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0500\n","Epoch 2161/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0498\n","Epoch 2162/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0496\n","Epoch 2163/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0494\n","Epoch 2164/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0492\n","Epoch 2165/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.0489\n","Epoch 2166/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0487\n","Epoch 2167/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0485\n","Epoch 2168/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0483\n","Epoch 2169/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0481\n","Epoch 2170/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0479\n","Epoch 2171/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.0477\n","Epoch 2172/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0475\n","Epoch 2173/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0473\n","Epoch 2174/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0471\n","Epoch 2175/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0469\n","Epoch 2176/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0467\n","Epoch 2177/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0465\n","Epoch 2178/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0463\n","Epoch 2179/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0461\n","Epoch 2180/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0459\n","Epoch 2181/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0457\n","Epoch 2182/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.0455\n","Epoch 2183/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0453\n","Epoch 2184/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 0.0451\n","Epoch 2185/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.0449\n","Epoch 2186/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.0447\n","Epoch 2187/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0445\n","Epoch 2188/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0443\n","Epoch 2189/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0441\n","Epoch 2190/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0439\n","Epoch 2191/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0437\n","Epoch 2192/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0435\n","Epoch 2193/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0434\n","Epoch 2194/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0432\n","Epoch 2195/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0430\n","Epoch 2196/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0428\n","Epoch 2197/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.0426\n","Epoch 2198/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0424\n","Epoch 2199/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0423\n","Epoch 2200/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0421\n","Epoch 2201/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0419\n","Epoch 2202/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0417\n","Epoch 2203/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0416\n","Epoch 2204/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0414\n","Epoch 2205/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0412\n","Epoch 2206/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0410\n","Epoch 2207/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0409\n","Epoch 2208/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0407\n","Epoch 2209/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0405\n","Epoch 2210/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0403\n","Epoch 2211/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0402\n","Epoch 2212/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0400\n","Epoch 2213/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.0398\n","Epoch 2214/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.0397\n","Epoch 2215/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.0395\n","Epoch 2216/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0393\n","Epoch 2217/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0392\n","Epoch 2218/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 0.0390\n","Epoch 2219/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 0.0388\n","Epoch 2220/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 87ms/step - loss: 0.0387\n","Epoch 2221/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 0.0385\n","Epoch 2222/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 0.0384\n","Epoch 2223/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0382\n","Epoch 2224/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.0380\n","Epoch 2225/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0379\n","Epoch 2226/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 170ms/step - loss: 0.0377\n","Epoch 2227/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 166ms/step - loss: 0.0376\n","Epoch 2228/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0374\n","Epoch 2229/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0373\n","Epoch 2230/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0371\n","Epoch 2231/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 118ms/step - loss: 0.0369\n","Epoch 2232/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 0.0368\n","Epoch 2233/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0366\n","Epoch 2234/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 0.0365\n","Epoch 2235/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 157ms/step - loss: 0.0363\n","Epoch 2236/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0362\n","Epoch 2237/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 0.0360\n","Epoch 2238/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 190ms/step - loss: 0.0359\n","Epoch 2239/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 0.0358\n","Epoch 2240/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 0.0356\n","Epoch 2241/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.0355\n","Epoch 2242/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.0353\n","Epoch 2243/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 0.0352\n","Epoch 2244/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0350\n","Epoch 2245/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.0349\n","Epoch 2246/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.0347\n","Epoch 2247/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0346\n","Epoch 2248/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.0345\n","Epoch 2249/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.0343\n","Epoch 2250/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.0342\n","Epoch 2251/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 0.0340\n","Epoch 2252/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.0339\n","Epoch 2253/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 159ms/step - loss: 0.0338\n","Epoch 2254/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.0336\n","Epoch 2255/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.0335\n","Epoch 2256/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 0.0334\n","Epoch 2257/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 156ms/step - loss: 0.0332\n","Epoch 2258/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 0.0331\n","Epoch 2259/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.0330\n","Epoch 2260/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0328\n","Epoch 2261/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0327\n","Epoch 2262/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0326\n","Epoch 2263/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0324\n","Epoch 2264/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0323\n","Epoch 2265/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0322\n","Epoch 2266/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.0321\n","Epoch 2267/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.0319\n","Epoch 2268/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0318\n","Epoch 2269/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0317\n","Epoch 2270/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0316\n","Epoch 2271/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0314\n","Epoch 2272/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0313\n","Epoch 2273/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.0312\n","Epoch 2274/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0311\n","Epoch 2275/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 0.0309\n","Epoch 2276/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.0308\n","Epoch 2277/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0307\n","Epoch 2278/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0306\n","Epoch 2279/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0305\n","Epoch 2280/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0303\n","Epoch 2281/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0302\n","Epoch 2282/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0301\n","Epoch 2283/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 0.0300\n","Epoch 2284/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0299\n","Epoch 2285/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0298\n","Epoch 2286/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0296\n","Epoch 2287/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0295\n","Epoch 2288/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0294\n","Epoch 2289/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0293\n","Epoch 2290/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.0292\n","Epoch 2291/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0291\n","Epoch 2292/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0290\n","Epoch 2293/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0288\n","Epoch 2294/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0287\n","Epoch 2295/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0286\n","Epoch 2296/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0285\n","Epoch 2297/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0284\n","Epoch 2298/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0283\n","Epoch 2299/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0282\n","Epoch 2300/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0281\n","Epoch 2301/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0280\n","Epoch 2302/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0279\n","Epoch 2303/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0278\n","Epoch 2304/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0277\n","Epoch 2305/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0276\n","Epoch 2306/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 0.0275\n","Epoch 2307/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0274\n","Epoch 2308/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0273\n","Epoch 2309/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0272\n","Epoch 2310/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0271\n","Epoch 2311/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 151ms/step - loss: 0.0270\n","Epoch 2312/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0269\n","Epoch 2313/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0268\n","Epoch 2314/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0267\n","Epoch 2315/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0266\n","Epoch 2316/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 0.0265\n","Epoch 2317/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0264\n","Epoch 2318/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0263\n","Epoch 2319/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0262\n","Epoch 2320/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0261\n","Epoch 2321/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0260\n","Epoch 2322/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0259\n","Epoch 2323/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0258\n","Epoch 2324/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0257\n","Epoch 2325/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0256\n","Epoch 2326/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.0255\n","Epoch 2327/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0254\n","Epoch 2328/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0253\n","Epoch 2329/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0252\n","Epoch 2330/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0251\n","Epoch 2331/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0251\n","Epoch 2332/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0250\n","Epoch 2333/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0249\n","Epoch 2334/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0248\n","Epoch 2335/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0247\n","Epoch 2336/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 154ms/step - loss: 0.0246\n","Epoch 2337/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0245\n","Epoch 2338/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0244\n","Epoch 2339/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0243\n","Epoch 2340/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0243\n","Epoch 2341/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0242\n","Epoch 2342/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0241\n","Epoch 2343/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0240\n","Epoch 2344/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0239\n","Epoch 2345/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0238\n","Epoch 2346/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0238\n","Epoch 2347/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0237\n","Epoch 2348/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0236\n","Epoch 2349/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0235\n","Epoch 2350/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0234\n","Epoch 2351/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0233\n","Epoch 2352/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0233\n","Epoch 2353/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0232\n","Epoch 2354/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 0.0231\n","Epoch 2355/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0230\n","Epoch 2356/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 158ms/step - loss: 0.0230\n","Epoch 2357/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0229\n","Epoch 2358/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.0228\n","Epoch 2359/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0227\n","Epoch 2360/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 0.0226\n","Epoch 2361/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 0.0226\n","Epoch 2362/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0225\n","Epoch 2363/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 0.0224\n","Epoch 2364/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.0223\n","Epoch 2365/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 136ms/step - loss: 0.0223\n","Epoch 2366/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.0222\n","Epoch 2367/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 0.0221\n","Epoch 2368/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 0.0220\n","Epoch 2369/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.0220\n","Epoch 2370/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 0.0219\n","Epoch 2371/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0218\n","Epoch 2372/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.0218\n","Epoch 2373/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.0217\n","Epoch 2374/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 131ms/step - loss: 0.0216\n","Epoch 2375/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0215\n","Epoch 2376/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0215\n","Epoch 2377/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.0214\n","Epoch 2378/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.0213\n","Epoch 2379/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 0.0213\n","Epoch 2380/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 168ms/step - loss: 0.0212\n","Epoch 2381/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 0.0211\n","Epoch 2382/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 0.0211\n","Epoch 2383/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 0.0210\n","Epoch 2384/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0209\n","Epoch 2385/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.0209\n","Epoch 2386/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.0208\n","Epoch 2387/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.0207\n","Epoch 2388/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 113ms/step - loss: 0.0207\n","Epoch 2389/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 95ms/step - loss: 0.0206\n","Epoch 2390/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.0205\n","Epoch 2391/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 0.0205\n","Epoch 2392/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.0204\n","Epoch 2393/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 0.0203\n","Epoch 2394/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0203\n","Epoch 2395/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0202\n","Epoch 2396/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.0201\n","Epoch 2397/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 100ms/step - loss: 0.0201\n","Epoch 2398/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0200\n","Epoch 2399/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0200\n","Epoch 2400/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0199\n","Epoch 2401/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0198\n","Epoch 2402/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0198\n","Epoch 2403/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0197\n","Epoch 2404/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0197\n","Epoch 2405/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0196\n","Epoch 2406/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0195\n","Epoch 2407/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.0195\n","Epoch 2408/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0194\n","Epoch 2409/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 0.0194\n","Epoch 2410/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0193\n","Epoch 2411/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0192\n","Epoch 2412/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0192\n","Epoch 2413/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0191\n","Epoch 2414/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0191\n","Epoch 2415/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0190\n","Epoch 2416/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0190\n","Epoch 2417/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0189\n","Epoch 2418/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0188\n","Epoch 2419/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0188\n","Epoch 2420/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0187\n","Epoch 2421/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 0.0187\n","Epoch 2422/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0186\n","Epoch 2423/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0186\n","Epoch 2424/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0185\n","Epoch 2425/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0185\n","Epoch 2426/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.0184\n","Epoch 2427/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0184\n","Epoch 2428/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.0183\n","Epoch 2429/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0183\n","Epoch 2430/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 89ms/step - loss: 0.0182\n","Epoch 2431/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.0182\n","Epoch 2432/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0181\n","Epoch 2433/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0181\n","Epoch 2434/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0180\n","Epoch 2435/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0180\n","Epoch 2436/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0179\n","Epoch 2437/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0179\n","Epoch 2438/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0178\n","Epoch 2439/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0178\n","Epoch 2440/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0177\n","Epoch 2441/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 156ms/step - loss: 0.0177\n","Epoch 2442/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0176\n","Epoch 2443/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0176\n","Epoch 2444/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0175\n","Epoch 2445/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 0.0175\n","Epoch 2446/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0174\n","Epoch 2447/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0174\n","Epoch 2448/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0173\n","Epoch 2449/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0173\n","Epoch 2450/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.0172\n","Epoch 2451/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 0.0172\n","Epoch 2452/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0171\n","Epoch 2453/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0171\n","Epoch 2454/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0171\n","Epoch 2455/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0170\n","Epoch 2456/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0170\n","Epoch 2457/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0169\n","Epoch 2458/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0169\n","Epoch 2459/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0168\n","Epoch 2460/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0168\n","Epoch 2461/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0167\n","Epoch 2462/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.0167\n","Epoch 2463/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 133ms/step - loss: 0.0167\n","Epoch 2464/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0166\n","Epoch 2465/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0166\n","Epoch 2466/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.0165\n","Epoch 2467/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0165\n","Epoch 2468/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0165\n","Epoch 2469/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 0.0164\n","Epoch 2470/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0164\n","Epoch 2471/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0163\n","Epoch 2472/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0163\n","Epoch 2473/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0163\n","Epoch 2474/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.0162\n","Epoch 2475/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 79ms/step - loss: 0.0162\n","Epoch 2476/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 0.0161\n","Epoch 2477/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.0161\n","Epoch 2478/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0161\n","Epoch 2479/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0160\n","Epoch 2480/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0160\n","Epoch 2481/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0159\n","Epoch 2482/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0159\n","Epoch 2483/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0159\n","Epoch 2484/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 93ms/step - loss: 0.0158\n","Epoch 2485/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0158\n","Epoch 2486/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0157\n","Epoch 2487/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0157\n","Epoch 2488/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0157\n","Epoch 2489/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0156\n","Epoch 2490/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0156\n","Epoch 2491/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0156\n","Epoch 2492/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0155\n","Epoch 2493/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0155\n","Epoch 2494/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0155\n","Epoch 2495/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0154\n","Epoch 2496/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0154\n","Epoch 2497/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0154\n","Epoch 2498/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0153\n","Epoch 2499/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 106ms/step - loss: 0.0153\n","Epoch 2500/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 125ms/step - loss: 0.0153\n","Epoch 2501/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 0.0152\n","Epoch 2502/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0152\n","Epoch 2503/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 171ms/step - loss: 0.0152\n","Epoch 2504/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 119ms/step - loss: 0.0151\n","Epoch 2505/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0151\n","Epoch 2506/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 280ms/step - loss: 0.0151\n","Epoch 2507/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0150\n","Epoch 2508/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 114ms/step - loss: 0.0150\n","Epoch 2509/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0150\n","Epoch 2510/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.0149\n","Epoch 2511/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 0.0149\n","Epoch 2512/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 169ms/step - loss: 0.0149\n","Epoch 2513/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 111ms/step - loss: 0.0148\n","Epoch 2514/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 108ms/step - loss: 0.0148\n","Epoch 2515/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.0148\n","Epoch 2516/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0147\n","Epoch 2517/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.0147\n","Epoch 2518/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.0147\n","Epoch 2519/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 0.0146\n","Epoch 2520/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0146\n","Epoch 2521/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 0.0146\n","Epoch 2522/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 120ms/step - loss: 0.0146\n","Epoch 2523/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 127ms/step - loss: 0.0145\n","Epoch 2524/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0145\n","Epoch 2525/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 99ms/step - loss: 0.0145\n","Epoch 2526/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 0.0144\n","Epoch 2527/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 90ms/step - loss: 0.0144\n","Epoch 2528/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 166ms/step - loss: 0.0144\n","Epoch 2529/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 155ms/step - loss: 0.0143\n","Epoch 2530/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0143\n","Epoch 2531/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 115ms/step - loss: 0.0143\n","Epoch 2532/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 0.0143\n","Epoch 2533/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0142\n","Epoch 2534/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 121ms/step - loss: 0.0142\n","Epoch 2535/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 104ms/step - loss: 0.0142\n","Epoch 2536/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 160ms/step - loss: 0.0142\n","Epoch 2537/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 0.0141\n","Epoch 2538/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 126ms/step - loss: 0.0141\n","Epoch 2539/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0141\n","Epoch 2540/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0140\n","Epoch 2541/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0140\n","Epoch 2542/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0140\n","Epoch 2543/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0140\n","Epoch 2544/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0139\n","Epoch 2545/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0139\n","Epoch 2546/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0139\n","Epoch 2547/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0139\n","Epoch 2548/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 86ms/step - loss: 0.0138\n","Epoch 2549/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0138\n","Epoch 2550/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0138\n","Epoch 2551/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.0138\n","Epoch 2552/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0137\n","Epoch 2553/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0137\n","Epoch 2554/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0137\n","Epoch 2555/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0137\n","Epoch 2556/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0136\n","Epoch 2557/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 134ms/step - loss: 0.0136\n","Epoch 2558/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 149ms/step - loss: 0.0136\n","Epoch 2559/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0136\n","Epoch 2560/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0135\n","Epoch 2561/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0135\n","Epoch 2562/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 78ms/step - loss: 0.0135\n","Epoch 2563/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0135\n","Epoch 2564/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0135\n","Epoch 2565/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0134\n","Epoch 2566/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0134\n","Epoch 2567/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0134\n","Epoch 2568/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0134\n","Epoch 2569/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 0.0133\n","Epoch 2570/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0133\n","Epoch 2571/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0133\n","Epoch 2572/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0133\n","Epoch 2573/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0132\n","Epoch 2574/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0132\n","Epoch 2575/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 80ms/step - loss: 0.0132\n","Epoch 2576/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0132\n","Epoch 2577/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0132\n","Epoch 2578/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0131\n","Epoch 2579/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0131\n","Epoch 2580/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 85ms/step - loss: 0.0131\n","Epoch 2581/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 64ms/step - loss: 0.0131\n","Epoch 2582/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0131\n","Epoch 2583/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0130\n","Epoch 2584/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0130\n","Epoch 2585/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0130\n","Epoch 2586/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0130\n","Epoch 2587/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0130\n","Epoch 2588/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0129\n","Epoch 2589/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0129\n","Epoch 2590/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0129\n","Epoch 2591/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 153ms/step - loss: 0.0129\n","Epoch 2592/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0129\n","Epoch 2593/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 145ms/step - loss: 0.0128\n","Epoch 2594/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 82ms/step - loss: 0.0128\n","Epoch 2595/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0128\n","Epoch 2596/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 77ms/step - loss: 0.0128\n","Epoch 2597/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 0.0128\n","Epoch 2598/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0127\n","Epoch 2599/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0127\n","Epoch 2600/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0127\n","Epoch 2601/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0127\n","Epoch 2602/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0127\n","Epoch 2603/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0127\n","Epoch 2604/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0126\n","Epoch 2605/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0126\n","Epoch 2606/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0126\n","Epoch 2607/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0126\n","Epoch 2608/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0126\n","Epoch 2609/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 96ms/step - loss: 0.0126\n","Epoch 2610/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 0.0125\n","Epoch 2611/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0125\n","Epoch 2612/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 148ms/step - loss: 0.0125\n","Epoch 2613/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0125\n","Epoch 2614/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 76ms/step - loss: 0.0125\n","Epoch 2615/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0125\n","Epoch 2616/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0124\n","Epoch 2617/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0124\n","Epoch 2618/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0124\n","Epoch 2619/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0124\n","Epoch 2620/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 72ms/step - loss: 0.0124\n","Epoch 2621/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 91ms/step - loss: 0.0124\n","Epoch 2622/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0123\n","Epoch 2623/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 135ms/step - loss: 0.0123\n","Epoch 2624/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0123\n","Epoch 2625/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 81ms/step - loss: 0.0123\n","Epoch 2626/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0123\n","Epoch 2627/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0123\n","Epoch 2628/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 73ms/step - loss: 0.0122\n","Epoch 2629/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0122\n","Epoch 2630/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0122\n","Epoch 2631/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0122\n","Epoch 2632/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 69ms/step - loss: 0.0122\n","Epoch 2633/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 143ms/step - loss: 0.0122\n","Epoch 2634/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0122\n","Epoch 2635/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 0.0121\n","Epoch 2636/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0121\n","Epoch 2637/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0121\n","Epoch 2638/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 0.0121\n","Epoch 2639/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 168ms/step - loss: 0.0121\n","Epoch 2640/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 0.0121\n","Epoch 2641/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.0121\n","Epoch 2642/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 150ms/step - loss: 0.0120\n","Epoch 2643/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 112ms/step - loss: 0.0120\n","Epoch 2644/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 179ms/step - loss: 0.0120\n","Epoch 2645/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.0120\n","Epoch 2646/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.0120\n","Epoch 2647/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 105ms/step - loss: 0.0120\n","Epoch 2648/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 92ms/step - loss: 0.0120\n","Epoch 2649/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 97ms/step - loss: 0.0119\n","Epoch 2650/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0119\n","Epoch 2651/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0119\n","Epoch 2652/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.0119\n","Epoch 2653/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 0.0119\n","Epoch 2654/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 132ms/step - loss: 0.0119\n","Epoch 2655/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 160ms/step - loss: 0.0119\n","Epoch 2656/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 98ms/step - loss: 0.0119\n","Epoch 2657/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 101ms/step - loss: 0.0118\n","Epoch 2658/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 84ms/step - loss: 0.0118\n","Epoch 2659/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 117ms/step - loss: 0.0118\n","Epoch 2660/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 94ms/step - loss: 0.0118\n","Epoch 2661/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 0.0118\n","Epoch 2662/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 128ms/step - loss: 0.0118\n","Epoch 2663/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.0118\n","Epoch 2664/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 102ms/step - loss: 0.0118\n","Epoch 2665/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 142ms/step - loss: 0.0117\n","Epoch 2666/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 130ms/step - loss: 0.0117\n","Epoch 2667/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 129ms/step - loss: 0.0117\n","Epoch 2668/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 138ms/step - loss: 0.0117\n","Epoch 2669/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 300ms/step - loss: 0.0117\n","Epoch 2670/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.0117\n","Epoch 2671/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 107ms/step - loss: 0.0117\n","Epoch 2672/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 103ms/step - loss: 0.0117\n","Epoch 2673/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0117\n","Epoch 2674/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 110ms/step - loss: 0.0116\n","Epoch 2675/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 141ms/step - loss: 0.0116\n","Epoch 2676/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 116ms/step - loss: 0.0116\n","Epoch 2677/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 140ms/step - loss: 0.0116\n","Epoch 2678/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 123ms/step - loss: 0.0116\n","Epoch 2679/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0116\n","Epoch 2680/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 0.0116\n","Epoch 2681/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 144ms/step - loss: 0.0116\n","Epoch 2682/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 146ms/step - loss: 0.0116\n","Epoch 2683/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0115\n","Epoch 2684/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 75ms/step - loss: 0.0115\n","Epoch 2685/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0115\n","Epoch 2686/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 147ms/step - loss: 0.0115\n","Epoch 2687/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 88ms/step - loss: 0.0115\n","Epoch 2688/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 124ms/step - loss: 0.0115\n","Epoch 2689/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 68ms/step - loss: 0.0115\n","Epoch 2690/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 139ms/step - loss: 0.0115\n","Epoch 2691/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 152ms/step - loss: 0.0115\n","Epoch 2692/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0114\n","Epoch 2693/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 67ms/step - loss: 0.0114\n","Epoch 2694/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0114\n","Epoch 2695/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 70ms/step - loss: 0.0114\n","Epoch 2696/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 65ms/step - loss: 0.0114\n","Epoch 2697/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 66ms/step - loss: 0.0114\n","Epoch 2698/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 71ms/step - loss: 0.0114\n","Epoch 2699/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 137ms/step - loss: 0.0114\n","Epoch 2700/2700\n","\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 74ms/step - loss: 0.0114\n","Restoring model weights from the end of the best epoch: 2697.\n","\u001b[1m32/32\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 5ms/step\n"]},{"output_type":"stream","name":"stderr","text":["WARNING:absl:You are saving your model as an HDF5 file via `model.save()` or `keras.saving.save_model(model)`. This file format is considered legacy. We recommend using instead the native Keras format, e.g. `model.save('my_model.keras')` or `keras.saving.save_model(model, 'my_model.keras')`. \n"]},{"output_type":"stream","name":"stdout","text":["\n","\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}}],"source":["# обучение AE2\n","patience = 500\n","ae2_trained, IRE2, IREth2 = lib.create_fit_save_ae(data,'out/AE2.h5','out/AE2_ire_th.txt', 2700, True, patience)\n","lib.ire_plot('training', IRE2, IREth2, 'AE2')"]},{"cell_type":"code","source":["print(IREth2)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"KW37ndDsU_3Y","executionInfo":{"status":"ok","timestamp":1762445959397,"user_tz":-180,"elapsed":49,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"c16b2c0a-ab48-4fdb-9971-8c6cad08540b"},"execution_count":26,"outputs":[{"output_type":"stream","name":"stdout","text":["0.4\n"]}]},{"cell_type":"code","source":["# построение областей покрытия и границ классов\n","# расчет характеристик качества обучения\n","numb_square = 20\n","xx, yy, Z1 = lib.square_calc(numb_square, data, ae1_trained, IREth1, '1', True)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":1000},"id":"GBMAaSq3uK5w","executionInfo":{"status":"ok","timestamp":1762440492668,"user_tz":-180,"elapsed":7923,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"464d3d0f-fc8d-4da6-c089-5a09f8269f69"},"execution_count":13,"outputs":[{"output_type":"stream","name":"stdout","text":["\u001b[1m238/238\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 1ms/step\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"iVBORw0KGgoAAAANSUhEUgAAA+kAAAIjCAYAAAB/OVoZAAAAOnRFWHRTb2Z0d2FyZQBNYXRwbG90bGliIHZlcnNpb24zLjEwLjAsIGh0dHBzOi8vbWF0cGxvdGxpYi5vcmcvlHJYcgAAAAlwSFlzAAAPYQAAD2EBqD+naQAAgSRJREFUeJzt3Xl4VOXd//HPTCYZwjIQIAlJCAEhoKCIsU9bsBZtoBRxqWvAtmxi8aet4qO4VBERLXWpbdVaURGpIC5VrDsS1FaLj2JRI4IJCIFAIATIwpptzu+P4Uxmz2SdSfJ+XVcuM5NzztyZDDGf+d7397YYhmEIAAAAAABEnDXSAwAAAAAAAC6EdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAQERZLBbdfffdkR5Gp/Pss8/KYrGosLCw0ed++OGHslgs+vDDD1t8XB3dwIEDNX369EgPw8vdd98ti8Wi/fv3R3ooTRKNzykANAchHQCa6PHHH5fFYtEPfvCDZl/r7bffJqi2ofLycnXp0kUWi0WbN28OeMz06dNlsVgCfnTp0sXr2Pvuu08XXnihkpOTm/2mwznnnBP0cT0/eL0037p163T33XervLy82df67rvvNHv2bJ100knq0qWLHA6HzjrrLP3lL3/RsWPHmj9YAECnYYv0AACgvVqxYoUGDhyozz77TFu3btWQIUOafK23335bf/3rXwlebeTll1+WxWJRv379tGLFCt17770Bj7Pb7Xr66af97o+JifG6feedd6pfv34644wztHr16maN7Y477tCsWbPct9evX69HHnlEv/vd73TKKae47x85cmSzHudXv/qVJk+eLLvd3uhzf/zjH+vYsWOKi4tr1hgibd26dVqwYIGmT5+uXr16Nfk6b731li6//HLZ7XZNnTpVp556qqqrq/Xxxx9r7ty5+uabb/Tkk0+23MABAB0aIR0AmmD79u1at26dXn31Vc2ePVsrVqzQ/PnzIz2sTu/48eOKi4uT1Rp6otjy5ct13nnnKSMjQ88//3zQkG6z2fTLX/6ywcfdvn27Bg4cqP379ysxMbFJYzeNHz/e63aXLl30yCOPaPz48TrnnHOCnnfkyBF169Yt7MeJiYnxe7MhXFar1W82QWe1fft2TZ48WRkZGXr//feVkpLi/tp1112nrVu36q233orgCNEY4f4OAYDWxG8gAGiCFStWKCEhQZMmTdJll12mFStW+B0TbN1uYWGhLBaLnn32WUmuadV//etfJclrOrPpyJEjuummm5Seni673a5hw4bpoYcekmEYfo+5fPlynXnmmYqPj1fv3r01efJkFRUVeR1zzjnn6NRTT9WmTZt07rnnqmvXrkpLS9MDDzzgd73jx4/r7rvv1tChQ9WlSxelpKTokksu0Xfffdfo8VVVVenGG29UYmKievTooQsvvFC7du0K+Pzu3r1bM2fOVHJysux2u0aMGKFnnnkm4PP7wgsv6M4771RaWpq6du2qysrKgNc07dy5Ux999JEmT56syZMnu99waY6BAwc26/zGMtcQb9q0SVdeeaUSEhL0ox/9SJKUl5en6dOnu6dd9+vXTzNnztSBAwe8rhFoTfrAgQN1/vnn6+OPP9b3v/99denSRSeddJL+/ve/e50b6LXdmNfVjh07dOGFF6pbt25KSkrSjTfeqNWrV4e1zv3QoUOaM2eOBg4cKLvdrqSkJI0fP14bNmzwOu7TTz/Vz372M/Xs2VNdu3bV2LFj9Z///MfrOZw7d64kadCgQe5/d41do//AAw/o8OHDWrJkiVdANw0ZMkQ33HBD0PMPHjyom2++Waeddpq6d+8uh8OhiRMn6quvvvI79tFHH9WIESPUtWtXJSQk6Hvf+56ef/75Rj83wezfv19XXHGFHA6H+vTpoxtuuEHHjx/3Oqa2tlYLFy7U4MGDZbfbNXDgQP3ud79TVVWV13HBlmT4rh83X4f/+c9/9L//+79KTExUt27ddPHFF6u0tNTrXMMwdO+996p///7q2rWrzj33XH3zzTd+jxHucxrsd8iXX34pi8WiP/3pT37XXrdunSwWi1auXNnQ0wkATUYlHQCaYMWKFbrkkksUFxenKVOm6G9/+5vWr1+v//mf/2n0tWbPnq3i4mKtWbNGzz33nNfXDMPQhRdeqA8++EBXXXWVRo0apdWrV2vu3LnavXu31x+R9913n+bNm6crrrhCs2bNUmlpqR599FH9+Mc/1hdffOE1nbesrEw/+9nPdMkll+iKK67QP/7xD91666067bTTNHHiRElSXV2dzj//fK1du1aTJ0/WDTfcoEOHDmnNmjXauHGjBg8e3KjxzZo1S8uXL9eVV16pMWPG6P3339ekSZP8no+SkhL98Ic/lMVi0W9+8xslJibqnXfe0VVXXaXKykrNmTPH6/iFCxcqLi5ON998s6qqqhqcgr1y5Up169ZN559/vuLj4zV48GCtWLFCY8aMCXh8oGZacXFxcjgcIR+nLVx++eXKzMzU73//e/ebImvWrNG2bds0Y8YM9evXzz3V+ptvvtH//d//eb0BFMjWrVt12WWX6aqrrtK0adP0zDPPaPr06TrzzDM1YsSIkOeG87o6cuSIfvKTn2jPnj264YYb1K9fPz3//PP64IMPwvqer7nmGv3jH//Qb37zGw0fPlwHDhzQxx9/rM2bNysrK0uS9P7772vixIk688wzNX/+fFmtVi1dulQ/+clP9NFHH+n73/++LrnkEhUUFGjlypX605/+pL59+0pSo2dCvPHGGzrppJOCvn4asm3bNr322mu6/PLLNWjQIJWUlGjx4sUaO3asNm3apNTUVEnSU089peuvv16XXXaZOzzn5eXp008/1ZVXXhn2cxPKFVdcoYEDB2rRokX6v//7Pz3yyCMqKyvzepNm1qxZWrZsmS677DLddNNN+vTTT7Vo0SJt3rxZq1atatJzIEm//e1vlZCQoPnz56uwsFB//vOf9Zvf/EYvvvii+5i77rpL9957r8477zydd9552rBhg37605+qurq6Sc+pyfd3yMknn6yzzjpLK1as0I033uh17IoVK9SjRw9ddNFFTf5eAaBBBgCgUT7//HNDkrFmzRrDMAzD6XQa/fv3N2644Qav4z744ANDkvHBBx943b99+3ZDkrF06VL3fdddd50R6Ffya6+9Zkgy7r33Xq/7L7vsMsNisRhbt241DMMwCgsLjZiYGOO+++7zOu7rr782bDab1/1jx441JBl///vf3fdVVVUZ/fr1My699FL3fc8884whyXj44Yf9xuV0Ohs1vi+//NKQZFx77bVex1155ZWGJGP+/Pnu+6666iojJSXF2L9/v9exkydPNnr27GkcPXrUMIz65/ekk05y3xeO0047zfjFL37hvv273/3O6Nu3r1FTU+N13LRp0wxJAT8mTJgQ8NqlpaV+309zvfzyy36vo/nz5xuSjClTpvgdH+i5WLlypSHJ+Pe//+2+b+nSpYYkY/v27e77MjIy/I7bt2+fYbfbjZtuusl9X6DXdrivqz/+8Y+GJOO1115z33fs2DHj5JNPDvjvxVfPnj2N6667LujXnU6nkZmZaUyYMMH9OjUM1/MyaNAgY/z48e77HnzwQb/noDEqKioMScZFF10U9jkZGRnGtGnT3LePHz9u1NXVeR2zfft2w263G/fcc4/7vosuusgYMWJEyGs39NwEY76eLrzwQq/7r732WkOS8dVXXxmGUf/veNasWV7H3XzzzYYk4/3333ffF+zfge/3b74Ox40b5/XzuvHGG42YmBijvLzcMAzX6zAuLs6YNGmS13G/+93vDElNek5D/Q5ZvHixIcnYvHmz+77q6mqjb9++Xo8FAK2B6e4A0EgrVqxQcnKyzj33XEmuaZ05OTl64YUXVFdX16KP9fbbbysmJkbXX3+91/033XSTDMPQO++8I0l69dVX5XQ6dcUVV2j//v3uj379+ikzM9OvStm9e3evtdZxcXH6/ve/r23btrnve+WVV9S3b1/99re/9RuXWY0Nd3xvv/22JPkd51sVNwxDr7zyii644AIZhuH1vUyYMEEVFRV+U3enTZum+Pj4wE+gj7y8PH399deaMmWK+74pU6Zo//79ARu+denSRWvWrPH7+MMf/hDW47W2a665xu8+z+fi+PHj2r9/v374wx9KUljTnocPH66zzz7bfTsxMVHDhg3zem0EE87r6t1331VaWpouvPBC931dunTR1Vdf3eD1JalXr1769NNPVVxcHPDrX375pbZs2aIrr7xSBw4ccL9+jhw5ouzsbP373/+W0+kM67EaYi6t6NGjR5OvYbfb3euf6+rqdODAAXXv3l3Dhg3z+nn16tVLu3bt0vr164Neq6HnpiHXXXed123z377579f87//+7/96HXfTTTdJUrPW3v/617/2muVx9tlnq66uTjt27JAk5ebmqrq6Wr/97W+9jvP9HSKF/5yaAv0OueKKK9SlSxevpUyrV6/W/v37w+pTAQDNwXR3AGiEuro6vfDCCzr33HO1fft29/0/+MEP9Mc//lFr167VT3/60xZ7vB07dig1NdUvBJhdvs0/YLds2SLDMJSZmRnwOrGxsV63+/fv7zftOSEhQXl5ee7b3333nYYNGyabLfj/KsId344dO2S1WjV48GCv44YNG+Z1u7S0VOXl5XryySeDdsPet2+f1+1BgwYFHZ+v5cuXq1u3bjrppJO0detWSa6AOHDgQK1YscJv+n1MTIzGjRsX9vXbWqDv/eDBg1qwYIFeeOEFv+eqoqKiwWsOGDDA776EhASVlZU1eG44r6sdO3Zo8ODBfseFuzvCAw88oGnTpik9PV1nnnmmzjvvPE2dOlUnnXSSJNe/BckVvIKpqKhQQkJCWI8Xirnk4dChQ02+htPp1F/+8hc9/vjj2r59u9cbfX369HF/fuuttyo3N1ff//73NWTIEP30pz/VlVdeqbPOOst9TEPPTUN8f38MHjxYVqvVvU7f/Hfs+7Pq16+fevXq5f733hS+rzvz52O+7sxr+44xMTHR72cZ7nNqCvTvqFevXrrgggv0/PPPa+HChZJcb9CmpaXpJz/5SWO/PQBoFEI6ADTC+++/rz179uiFF17QCy+84Pf1FStWuEN6sLW/LV1tl1x/lFosFr3zzjsBO3Z3797d63awrt5GgGZ0bcmscP7yl78MGrJ8tx4Lt4puGIZWrlypI0eOaPjw4X5f37dvnw4fPuz3XEWzQN/7FVdcoXXr1mnu3LkaNWqUunfvLqfTqZ/97GdhVZCb89poi9fVFVdcobPPPlurVq3Se++9pwcffFD333+/Xn31VU2cONH9PT744IMaNWpUwGu01M/Y4XAoNTVVGzdubPI1fv/732vevHmaOXOmFi5cqN69e8tqtWrOnDleP69TTjlF+fn5evPNN/Xuu+/qlVde0eOPP6677rpLCxYskNTwc9NYwX6HNdTXIJRgv/9a8rUT7nNqCvY7ZOrUqXr55Ze1bt06nXbaaXr99dd17bXX0vkdQKsjpANAI6xYsUJJSUnubuyeXn31Va1atUpPPPGE4uPj3dWd8vJyr+MCVZuC/dGbkZGh3NxcHTp0yKta/e2337q/LsndxG3QoEEaOnRok743X4MHD9ann36qmpoav0p8Y8eXkZEhp9Pprs6b8vPzva5ndn6vq6tr8Qr2v/71L+3atUv33HOP137jkqta9+tf/1qvvfZau57KWlZWprVr12rBggW666673Peb1eVokJGRoU2bNskwDK/XvTmzIRwpKSm69tprde2112rfvn3KysrSfffdp4kTJ7pnazgcjgZfQ80Jm6bzzz9fTz75pD755BONHj260ef/4x//0LnnnqslS5Z43V9eXu5uZmfq1q2bcnJylJOTo+rqal1yySW67777dPvtt7u3xAv13DRky5YtXlXlrVu3yul0uncvMP8db9myxevfUElJicrLy93/3iVXJdz3d191dbX27NkT1vPiy7z2li1bvGYGlJaW+s3yaMxzGsrPfvYzJSYmasWKFfrBD36go0eP6le/+lWTxg8AjcFbgQAQpmPHjunVV1/V+eefr8suu8zv4ze/+Y0OHTqk119/XZLrj8qYmBj9+9//9rrO448/7ndtc39r3z9qzzvvPNXV1emxxx7zuv9Pf/qTLBaL+w/vSy65RDExMVqwYIFf5ckwDL/tt8Jx6aWXav/+/X6PbV6zMeMz//vII494HffnP//Z63ZMTIwuvfRSvfLKKwGrk75bMjWGOdV97ty5fj+7q6++WpmZmQG30mtJ+/fv17fffqujR4+2yvXNaqTva8D3eY6kCRMmaPfu3e5/J5Jr7fxTTz3V4Ll1dXV+U/aTkpKUmprq3gLszDPP1ODBg/XQQw/p8OHDftfwfA0F+3cnubbqM99sCuWWW25Rt27dNGvWLJWUlPh9/bvvvtNf/vKXoOfHxMT4/bxefvll7d692+s+33/DcXFxGj58uAzDUE1NTVjPTUN833x89NFHJdX/+z3vvPMk+b+eHn74YUnyWi4yePBgv999Tz75ZJNnEo0bN06xsbF69NFHvZ6vQK/tcJ/ThthsNk2ZMkUvvfSSnn32WZ122ml+M3kAoDVQSQeAML3++us6dOiQV8MrTz/84Q/dVZecnBz17NlTl19+uR599FFZLBYNHjxYb775pt86YckVLCRXY7UJEyYoJiZGkydP1gUXXKBzzz1Xd9xxhwoLC3X66afrvffe0z//+U/NmTPHXTUcPHiw7r33Xt1+++0qLCzUz3/+c/Xo0UPbt2/XqlWr9Otf/1o333xzo77fqVOn6u9//7v+93//V5999pnOPvtsHTlyRLm5ubr22mt10UUXhT2+UaNGacqUKXr88cdVUVGhMWPGaO3atQGrp3/4wx/0wQcf6Ac/+IGuvvpqDR8+XAcPHtSGDRuUm5urgwcPNur7kFx7tL/yyisaP368u+Lo68ILL9Rf/vIX7du3T0lJSZJce0IvX7484PEXX3yxO+Q999xz2rFjhzt8//vf/9a9994rSfrVr37lrgI+9thjWrBggT744AOdc845jf4+GuJwOPTjH/9YDzzwgGpqapSWlqb33nvPq39CpM2ePVuPPfaYpkyZohtuuEEpKSlasWKF++cSqrp96NAh9e/fX5dddplOP/10de/eXbm5uVq/fr3++Mc/SpKsVquefvppTZw4USNGjNCMGTOUlpam3bt364MPPpDD4dAbb7whqf7f3R133KHJkycrNjZWF1xwgbp166apU6fqX//6V4PTrQcPHqznn39eOTk5OuWUUzR16lSdeuqpqq6u1rp16/Tyyy977Qvu6/zzz9c999yjGTNmaMyYMfr666+1YsUKv3XkP/3pT9WvXz+dddZZSk5O1ubNm/XYY49p0qRJ6tGjh8rLyxt8bhqyfft2XXjhhfrZz36mTz75xL1l4umnny5JOv300zVt2jQ9+eSTKi8v19ixY/XZZ59p2bJl+vnPf+5upim5tmq75pprdOmll2r8+PH66quvtHr16kZVsj0lJibq5ptv1qJFi3T++efrvPPO0xdffKF33nnH75rhPqfhmDp1qh555BF98MEHuv/++5s0dgBotDbtJQ8A7dgFF1xgdOnSxThy5EjQY6ZPn27Exsa6tw8rLS01Lr30UqNr165GQkKCMXv2bGPjxo1+W7DV1tYav/3tb43ExETDYrF4bcd26NAh48YbbzRSU1ON2NhYIzMz03jwwQe9tiEyvfLKK8aPfvQjo1u3bka3bt2Mk08+2bjuuuuM/Px89zFjx44NuJXTtGnTjIyMDK/7jh49atxxxx3GoEGDjNjYWKNfv37GZZddZnz33XeNHt+xY8eM66+/3ujTp4/RrVs344ILLjCKiooCbtVUUlJiXHfddUZ6err7cbOzs40nn3zSfYy5fdLLL78c9Ofh+bxIMpYsWRL0mA8//NCQZPzlL39xPx8KsgWbfLbtMrcfC/QRaOu0hrYZ8xRqC7bS0lK/43ft2mVcfPHFRq9evYyePXsal19+uVFcXOz3PAfbgm3SpEl+1xw7dqwxduxY9+1gW7CF+7ratm2bMWnSJCM+Pt5ITEw0brrpJvfP6P/+7/+CPhdVVVXG3LlzjdNPP93o0aOH0a1bN+P00083Hn/8cb9jv/jiC+OSSy4x+vTpY9jtdiMjI8O44oorjLVr13odt3DhQiMtLc2wWq1ez4f5Mw1XQUGBcfXVVxsDBw404uLijB49ehhnnXWW8eijjxrHjx93HxdoC7abbrrJSElJMeLj442zzjrL+OSTT/ye88WLFxs//vGP3d/P4MGDjblz5xoVFRWNfm58ma+nTZs2GZdddpnRo0cPIyEhwfjNb35jHDt2zOvYmpoaY8GCBe7fCenp6cbtt9/u9T0ahmHU1dUZt956q9G3b1+ja9euxoQJE4ytW7cG3YJt/fr1XucHeo3V1dUZCxYscD9X55xzjrFx48YmP6fh/g4ZMWKEYbVajV27djX4XAJAS7AYRoS7BAEAgE7vz3/+s2688Ubt2rVLaWlpkR4O4HbGGWeod+/eWrt2baSHAqCTYE06AABoU8eOHfO6ffz4cS1evFiZmZkEdESVzz//XF9++aWmTp0a6aEA6ERYkw4AANrUJZdcogEDBmjUqFGqqKjQ8uXL9e2337Z64z4gXBs3btR///tf/fGPf1RKSopycnIiPSQAnQghHQAAtKkJEybo6aef1ooVK1RXV6fhw4frhRdeIAghavzjH//QPffco2HDhmnlypVBG04CQGtgTToAAAAAAFGCNekAAAAAAEQJQjoAAAAAAFGi061JdzqdKi4uVo8ePWSxWCI9HAAAAABAB2cYhg4dOqTU1FRZraFr5Z0upBcXFys9PT3SwwAAAAAAdDJFRUXq379/yGM6XUjv0aOHJOl3//mvunTvHuHRAAAAAAA6uuOHD+v3Z53pzqOhdLqQbk5x79K9u7qE8QQBAAAAANASwllyTeM4AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKdLo16QAAAACAlhNjOBXndMoiI9JDiRhDFlVbraqzNL8OTkgHAAAAADSJo7ZapxyrVFwYDdE6umrD0OZ4hyptcc26DiEdAAAAANBoMYZTpxyrVGKPHureu7fUmXO6IR0+eFA6VKnPu/duVkWdkA4AAAAAaLQ4p1NxFou69+6t2C5dIj2ciOveu7cqDh9WnNOpYzFND+k0jgMAAAAANJp7DXpnrqB7spj/ad7afEI6AAAAAABRgpAOAAAAAECUIKQDAAAAABAlCOkAAAAAgE5n3969uuPGOfrBycOU4eihMwcP1tRLLtZH778vSXru6ad1yfjxykzsq5QudlWUl7fJuAjpAAAAAIBOpaiwUBPGjNbHH36oeYv+oPf/+189/8YbGjN2rG6fc4Mk6dixozr3pz/V9bfc2qZjYws2AAAAAECnctsN18tiseidj/+jrt26ue8fNny4pkybLkn69W+vlySt+9e/2nRsVNIBAAAAABFXV9c2j1N28KA+eO89TZ99jVdAN/Xs1attBhIEIR0AAAAAEDFbC6Sxo2zq3y1OY0fZtLWgdR+v8LvvZBiGhgwb1roP1ESEdAAAAABAxFx1hU3fbbFIkr7bYtFVV7TuqmzDMFr1+s3FmnQAAAAAQETU1UkF31o9bltU8K1FdXVSTEzrPOagIUNksVi0NT+/dR6gmaikAwAAAAAiIiZGGnqyUzExxonbxonbrfeYCb1765zx4/Xs4id09MgRv6+31VZrwRDSAQAAAAARs+SlWg3OdIX0wZmGlrxU2+qPuejPf1FdXZ0m/ugsvblqlbZt3aKCbzfr6b8+pvPH/liSax/1jV99pe3ffSdJ2rxxozZ+9ZXKDh5s1bEx3R0AAAAAEDFDhkr/+rK2Vae4+8o46SS998n/6S/3/0ELbr1V+/buUZ/ERI084wzd/8ijkqS/P/WU/njfve5zLh6XLUn685NPKWfq1FYbm8WI9lXzLayyslI9e/bUPV/lq0uPHpEeDgAAAAC0S13ranTmsUqlZQxQrL1LpIcTcTVVx7V7x079N96hozGxXl87fuiQ7jp9mCoqKuRwOEJeh+nuAAAAAABECUI6AAAAAABRgpAOAAAAAECUIKQDAAAAABAlCOkAAAAAgEYzZDE/geR+HtzPSxMR0gEAAAAAjVZrscgwDNXV1ER6KFGhrqZGTsNQraV5IZ190gEAAAAAjVZjseqA1aauBw7IarPJYm1eOG3PDKehiv37ddBqU42lebVwQjoAAAAAoPEsFn0X30Pdj5TrWFFRpEcTcccN6btuvSQq6QAAAACASKi2xujz7r3VxVknSydenG7IouPWGBnNDOgSIR0AAAAA0AyGxaJjMUTLlkLjOAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAAgChBSAcAAAAAIEoQ0gEAAAAAiBKEdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0AAAAAACiRERD+qFDhzRnzhxlZGQoPj5eY8aM0fr160Oe8+GHHyorK0t2u11DhgzRs88+2zaDBQAAAACglUU0pM+aNUtr1qzRc889p6+//lo//elPNW7cOO3evTvg8du3b9ekSZN07rnn6ssvv9ScOXM0a9YsrV69uo1HDgAAAABAy7MYhmFE4oGPHTumHj166J///KcmTZrkvv/MM8/UxIkTde+99/qdc+utt+qtt97Sxo0b3fdNnjxZ5eXlevfdd8N63MrKSvXs2VP3fJWvLj16NP8bAQAAAAAghOOHDumu04epoqJCDocj5LERq6TX1taqrq5OXbp08bo/Pj5eH3/8ccBzPvnkE40bN87rvgkTJuiTTz4J+jhVVVWqrKz0+gAAAAAAIBpFLKT36NFDo0eP1sKFC1VcXKy6ujotX75cn3zyifbs2RPwnL179yo5OdnrvuTkZFVWVurYsWMBz1m0aJF69uzp/khPT2/x7wUAAAAAgJYQ0TXpzz33nAzDUFpamux2ux555BFNmTJFVmvLDev2229XRUWF+6OoqKjFrg0AAAAAQEuyRfLBBw8erH/96186cuSIKisrlZKSopycHJ100kkBj+/Xr59KSkq87ispKZHD4VB8fHzAc+x2u+x2e4uPHQAAAACAlhYV+6R369ZNKSkpKisr0+rVq3XRRRcFPG706NFau3at131r1qzR6NGj22KYAAAAAAC0qoiG9NWrV+vdd9/V9u3btWbNGp177rk6+eSTNWPGDEmuqepTp051H3/NNddo27ZtuuWWW/Ttt9/q8ccf10svvaQbb7wxUt8CAAAAAAAtJqIhvaKiQtddd51OPvlkTZ06VT/60Y+0evVqxcbGSpL27NmjnTt3uo8fNGiQ3nrrLa1Zs0ann366/vjHP+rpp5/WhAkTIvUtAAAAAADQYiK2T3qksE86AAAAAKAttYt90gEAAAAAgDdCOgAAAAAAUYKQDgAAAABAlCCkAwAAAAAQJQjpAAAAAABECVukB4COr7CwMNJDQCcwcODASA8BAAAAaDZCOlpVYWGhasuqdHFZuSpLSyI9HHRQjsRkvXHic8I6AAAA2jNCOlqFWT2vLatSdkG+0uPTVH1Q2u/cFNmBocPpax2uuHibxn6ap7VDh6lQhQR1AAAAtFuEdLQ43+p55kGp2LlGNfbySA8NHVDegVylOlOVaR0uFeRTVQcAAEC7RkhHiwlUPS/ev0l5h4tVZZU+Gj0ysgNEh3T22jzV2MuVdyBXIzWOqjoAAADaNUI6WkSg6vnnlcuU2Kerqo5KH2WPVJYjJ9LDRAd05OIcrax8UWevzVNepX9VfVVZlWwJdsI6AAAA2gVCeivrLJ3Ng1XPV2YNkSQCOlpVliNHH2UHrqpnl+a7q+qdAW9GAAAAtG+E9FbiOfX74rLyiI6lLaQftqma6jkiKMuR02BVvaNbldCLKf4AAADtHCG9FfhO/U6PT4v0kFpV9e7dKnZuUjHVc0QBs6ouSVM2bPWqqnd02aU0zgMAAGjvOv5frW0oWOO0zw/nRnZgbYDqOaKJ+RpcmeWqqu+JXafSzUcjPKrWN9JB4zwAAID2jpDeQsJpnNYZENARTTyr6h1dsCn+VNUBAADaF0J6MzW07RhTv4HI6iz/9oI1zqOqDgAA0L502pC+c+dOxXXr1uzrmNVzGqcBiKRwGueZ29FFK95EAAAA6MQh/WeF+9Qtvmuzr1NZWqLkg6JxGoCoEKpxntlYLhrRmR4AAMCl04b0/kds6l7X/G+/+qCUV5lL9RxA1PBtnOdZVY/WLve++9kT1gEAQGcVnX+ttYE9u95XN3vzp31SPQcQrQJV1VOdqZEdVBBe0/KpqgMAgE6s04b0WnuFauxxzb4O1XMA0cy3ql5jL4/sgIIw30BIjU+jqg4AADq1ThvSXz79JMV17dLs62Q5cpTVAuMBgNYU7dvRmW8gfL55mUY6xlFVBwAAnVanDemjelyqLt26R3oYANBmonnGj/kGguca+kBV9ZZC6AcAANGq04Z0AED0MN9A8Nzv3beq3pLM7egI6wAAINoQ0gEAUcNzWr5vVb0lse4dAABEK0I6ACCqBKuqp3Zvuc70dJMHAADRipAOAIhKvlX1luxMn3cgVyM1TnHxNqrqAAAgqhDSAQBRy7Oq3pLOXpunPbHrFFvUi6o6AACIKoR0AEDUa+nO9J4V+mJncdCqelvjzQEAAEBIBwB0Or7r3vfErlPp5qOt1k0+HFTxAQCAREgHAHRibdVNPhzZpa43B944cZuwDgBA50RIBwB0am3RTT4cmdbhiou3aeynee4p9wR1AAA6H0I6AABq3W7y4cg74Kriezayo6oOAEDnQ0gHAOCE1uomHw7zjQHP7eGoqgMA0PkQ0gEA8NHS3eTDceTiHK2sfNFrbbzX9nBlVbIl2MO6FoEeAID2i5AOAECU8JxyP2XDVq+qutlYLhxMkwcAoP0ipAMAEEXMKv7KLP+qelx8eP/bZpo8AADtFyEdAIAoFKiqnuoMr+N8oGnyhHUAANoHa6QHAAAAAsty5CjLkaOVWUNUZZVq7OVhfeRV5irzoJR+2KbsgnzVllWpsLAw0t8OAAAIA5V0AACinGdVPRwNNZ+jqg4AQPQipAMA0A40puN8qOZzrFUHACC6EdIBAOhgQjWf86yqtxRzaziCPwAAzUdIBwCggwq1pdv1hw+32ON8U0CFHgCAlkJIBwCgA/Otqu+JXafYol4t+hieFXr2aAcAoHkI6QAAdAKeVfWz1+apf0LXFru2Z4WePdoBAGgeQjoAAJ2EWVVvTKf4cARb905VHQCAxiOkAwDQyTSmU3w4Psp2BfUaezlVdQAAmomQDgAAmiXLkaMjF+doZWXobvJmF/iGEOgBAJ0ZIR0AALSIUN3ks0tdYT0cTJMHAHRmhHQAANBiQu7RfrCkwfPj0tKYJg8A6NQI6QAAoMX5VtX3aF2D55QeOBp0mjxhHQDQWRDSAQBAq/Csqocr0DR5quoAgM6EkA4AAFpVY7rJB5wmT1UdANCJENIBAEDUaKj5nFlVDxeBHgDQ3hDSAQBAVAnZfK4g/C7xqxJ6MU0eANDuENIBAEBUClVVD4e57RvT5AEA7QkhHQAARC3fqvqe2HWKLeoV1rmZ1uE0nwMAtDuEdAAAEPU8q+pnr81T/4SuDZ6Td4DmcwCA9oeQDgAA2gWzqn7k4hzlN3DshkrXtm8NNZ8jrAMAog0hHQAAdDjBpsl7VdVPNJZrSYR+AEBzEdIBAECH5TtNvthZ7FVVD7dTfDjoJg8AaAmEdAAA0KGZVfWPsuVXVQ+3U3w4zND/xonbhHUAQFMQ0gEAQKcQqKqe6kxtseuboX/sp3l0kwcANBkhHQAAdBq+VfUae3mLXZtu8gCAlkBIBwAAnY5nVb0lheomT1AHAISDkA4AADols6reksxu8nmVVNUBAE1jjfQAAAAAOgpXhX6kcsePVI29XHmVuco8KKUftim7IF+1ZVUqLCxUYWFhpIcKAIhShHQAAIAWlOXIUZYjRyuzhqjKKuVV5qq4aI0yD0rZBfm6YFuJO6wDAOCL6e4AAACtoKE92s216hLbtQEA6hHSAQAAWkmoPdrda9UTetFYDgDgRkgHAABoZVTVAQDhIqQDAAC0gcZU1cNFoAeAjoeQDgAA0IYCVdVTnalKjU9TdqkrrIeDafIA0DER0gEAANqYb1W9xl6uzzcv00iHawp8OJgmDwAdEyEdAAAgQnyr6nmVuUp1poZ1Ls3nAKBjiug+6XV1dZo3b54GDRqk+Ph4DR48WAsXLpRhGEHP+fDDD2WxWPw+9u7d24YjBwAAaBnmvuofZY9UlVWqsZeH9ZFXmavMg1L6YZuyC/Lde6+z/zoAtG8RraTff//9+tvf/qZly5ZpxIgR+vzzzzVjxgz17NlT119/fchz8/Pz5XA43LeTkpJae7gAAACtxrOqHg6z+Vzp5qMa6RhHVR0AOoiIhvR169bpoosu0qRJkyS51lKtXLlSn332WYPnJiUlqVevXg0eV1VVpaqqKvftysrKJo8XAACgNZlr1cMRaJq82XyOteoA0H5FNKSPGTNGTz75pAoKCjR06FB99dVX+vjjj/Xwww83eO6oUaNUVVWlU089VXfffbfOOuusgMctWrRICxYsaOmhAwAARFSo5nOeVfWtZfkNXsuWYJdEoAeAaGAxQi0Ab2VOp1O/+93v9MADDygmJkZ1dXW67777dPvttwc9Jz8/Xx9++KG+973vqaqqSk8//bSee+45ffrpp8rKyvI7PlAlPT09Xb9f9V916da9Vb4vAACAtrSh8kVJrrBud0qp3VOVmj4+rHO/ObbbHehtCXaCOgC0guOHDumu04epoqLCa9l2IBGtpL/00ktasWKFnn/+eY0YMUJffvml5syZo9TUVE2bNi3gOcOGDdOwYcPct8eMGaPvvvtOf/rTn/Tcc8/5HW+322W321vtewAAAIi0YFX11O4Nd4pPkJgmDwBRJKIhfe7cubrttts0efJkSdJpp52mHTt2aNGiRUFDeiDf//739fHHH7fWMAEAANoF3y3dauzlYZ0XaJo8zecAIDIiGtKPHj0qq9V7F7iYmBg5nc5GXefLL79USkpKSw4NAACgXfKsqoeL5nMAED0iGtIvuOAC3XfffRowYIBGjBihL774Qg8//LBmzpzpPub222/X7t279fe//12S9Oc//1mDBg3SiBEjdPz4cT399NN6//339d5770Xq2wAAAIg6je0UH6r5HFV1AGg7EQ3pjz76qObNm6drr71W+/btU2pqqmbPnq277rrLfcyePXu0c+dO9+3q6mrddNNN2r17t7p27aqRI0cqNzdX5557biS+BQAAgHbPd5q8WVXve1DK7l1CVR0A2lBEu7tHQmVlpXr27El3dwAAgAA2VL6os9fmqX9CV5UeOKqRjnGKS0tTUfdaOsADQBO1m+7uAAAAiC7BqurJ1uFU1QGgDVgbPgQAAACdSZYj50RYH6kqq1RjL1deZa4yD0rXFx3WBdtKVFtWpcLCwkgPFQA6HCrpAAAACKihqrojMVlvnDiWqjoAtAwq6QAAAAgqVFU9/bBNYz/No6oOAC2ISjoAAAAalOXI0ZGLc7TyRGM5s6qeaR3u3q7tjYYv40blHQACI6QDAAAgbOYUeHNf9bwDuRqpcYqLd1XVHYnJDV7D3HtdIqwDgC9COgAAABolVFU9Lr7hPy+vP3xY3xTkuzvFE9QBoB4hHQAAAE3i2VhuyoatyjvgCuvhCDRNnrAOAIR0AAAANEOWI0eStDLLVVXffrS4wXP6J3T1myZPVR0AXAjpAAAAaDZzCnw4wmk+R1gH0FmxBRsAAADaFFu6AUBwVNIBAADQ5sLZ0m1VWZVsCXaq6gA6FSrpAAAAiBizqp47fqRfVT27IJ+qOoBOh0o6AAAAIsq3+RxVdQCdGZV0AAAARIVwq+pU1gF0ZIR0AAAARI0sR46yHDlamTVEVVZpT+w6FRetUeZBKbsgXxdsK2EKPIAOjenuAAAAiDquqrrr87PX5qnYWezeVz27NN+9r3q4mCYPoL0gpAMAACAqmWvVP8p2BfU9sesUW9TLa616OFYl9HIHesI6gGhHSAcAAEBYnHWSNabtHzdQVT3Vmapke5piwli8mV16ovncibBOUAcQzQjpAAAACGlfUayWLkhVyU67kgdUacb8YiWl17TpGDyr6pn/2K95r9yiov1pGtBnj+Zf+IzSe+8Lem6mdXjAafKEdQDRiMZxAAAACGnpglSV7oqTJJXuitPSBakRG0uWI0cPf3yndh1MkSTtOpiku9+Yrhp7edAPms8BaE+opAMAACAoZ51UstNef9tpUclOe8SmvjvrpIpdifW3jRgV7U/TitMzZY0xgp7XUPM5quoAogUhHQAAAEFZY6TkAVUq3RUnp9Miq9VQYv/qiAT0UOP5XsIVIc8L1XyOteoAognT3QEAABDSjPnFSuxfLUlK7F+tGfOL2914XM3nRmpl1hBtP1qsvMpcJezfpPTDNmUX5LunvzMFHkCkWQzDCD4vqAOqrKxUz5499ftV/1WXbt0jPRwAAIB2I1JT3INp6ng2VL6os9fmqX9CV5UeOKqRjnHa0lvuqrotwU5VHUCLOn7okO46fZgqKirkcDhCHkslHQAAAGGJpoAuNX08nlX1KquoqgOIKoR0AAAAdDpZjhx3WK+ySjX2cn2+eZkyD0rXFx2mAzyAiKFxHAAAADotV1B3fX722jzlVeYq1ZmqZOtwZfcuoQM8gDZHSAcAAECnluXIkVTfAb7GXq68A7kaqXEaUXRYRWXl7g7w4SLQA2gqQjoAAADarZZsZtdQVd2RmBzWddjSDUBzENIBAAA6gGjrvN7a9hXFaumCVJXstCt5QJVmzC9WUnpNs68bqqoeFx/en87ZpflMkwfQZGzBBgAA0I61VliNdvfPylDprjg5nRZZrYYS+1fr1qd3tPjjmNu12Z1SavfUsM7pax2uuLQ0FXWvZUs3AJLYgg0AAKDTWLogVaW74iRJpbvitHRBeEGyPXPWSSU77XI6La7bTovrdl3LP5ZvB/hwPvIqc1VctEbJ+SVs6Qag0ZjuDgAA0E6ZYdV92yOsduSp79YYqU9KtQ7siZVkkWSoT0rrzR7IcuToyMU5Wln5YljHN9R8jqo6gFAI6QAAAO2UNUZKHlDlN+3bDOiNCevBjm0vgb+81KabJw5t1Sn/5nr1hjTUfO6NE8cR1gEEwnR3AACAdmzG/GIl9q+WJCX2r9aM+cXaVxSr+2dl6OaJQ3X/rAztK4oNen6wYxtzjWAamn7e1OnpzjrpwJ44uarokmRRXa3rz9pomPKf5cjxmyafV5mrzINS+mGbxn6a554CDwC+aBwHAADQAXhWvBvTVC3Ysc1pzNZQM7uWaHbnOb5AHnqnIGpmAPg2n+trHa4tveWqqp/k2taNqjrQsdE4DgAAoJPxnOIeblO1YMfWVjevMdtTd6apZKermV3Jzjg9dWea19dbotmd5wyCGJtTFqur7mS1GkoeUNWogN4aDec8Bauqp1ZSVQfgjzXpAAAAHUhD69TDOdYWF/41fNVPRTdZdGBPnLvSH26zu4bWwiel1+jWp3fIWSftL66vzJtT/sPRltvXeTafy/zHfv3upfNUXJauk/oc1G+nvaeTh3fRqrIqtmsDQCUdAACgowm0Tr2xxzbmGlL41WjzjQGrT+Xb1Ni18NaY+sD+0DsFuvXpHWEH7UhsX5flyNHDH9+pPRWu2QWFB3vq0WU/Vfphm9d2bQA6LyrpAAAAHYxnlTmc6ndtjWtae8lOu566M01X37s77GsEqkYH2h7N8xoz5he7z0lIrlFtjcXdmb22xqKyElcwN4NzuGvhGzvFPRLb1znrpIpdifW3jRhtO9BbRTtylWk7RSrIlyMxmao60IlRSQcAAOigwgmbSxekngjULgf2xHpVlBu6RqBq9NX37lbyAFcVPnlAta6+d7fXOZ6Vb1us4Q7lJTvjXFPjm7gWvjGCVfRbu9mc7+NarE717F8qZ3yZVwd4qupA50UlHQAAoINobBXYt5rs4l9RDrWHeqBqdN9UVwivrZZscf7nefJ+fN9O7YaSB4S3Fr4pPCv6jVnL3pKPm9S/RjPmH9bKnkO89lXPtA6nqg50UoR0AACAKNPYsN2UBmjmYyQPqDrRid0MyPXT0wNdt29q/dR18/x9RXEyDNf5MTanNn/eVW8+lRj0PJNv4zp/Fk2b17jg3JjnrrHLAlpKoMdNUo4+ynZ9fvbaPBU7izVS4xQXb1N2ab7WDh2mQhVKYrs2oKNjn3QAAIAW1JzA19Ru443Z09z3MS6cXapn5qeqrtZcBekK6XcsK9QfrsrQ/t2u61oshqwxhupqrUoeUKVp84rVL6NG+4pi9eDsDK/zzbXokv955vdkPk+e44mxOeV0WmSceLykdP/vI9jz25ad2lubua96/4Suiq3q5bWv+qqEXlTVgXaoMfukE9IBAABaQLCQ2JjQ3piwbXLWSTdPHOp3/0PvFAR8XN/H6JtWrX1FvlPepaT0qoD3u7gCuBnWH7h6UBjfnWvdd6+kGtliDe0r8q6yS95bqfkG7YZCuOf3FSzgtycbKl+U5Kqq253SSMc4xaWl6Ztju7V26DDZElw/G8I60D40JqQz3R0AAKAF+DZQe+rONNlijbAru03tNt6YfdEDPYYZlj3Pt1gN7d9tLiY3K+OeXLf3FcVp2cLUBqasezy+06KDe+sXqZfsjHNX4c3nKNj08yduS1N5aX2DuSduS9NdKwoDfl+G4Xru9u6IVb+Mxr1REi2yHDmSpI+yXUF9T+w6xRb18l6rntBLhSokqAMdDN3dAQAAmskMiZ5dyQ/sidO+ovD34G5Ot/ELZ5fK4u4WbujC2aVBH6NPSrVcwVtyTW2v9toTvW9atepqrR6Bu36tufkYJjMMT5tXf35ovhM4Le5p8p7Pkef37KxzfZSXeq6bt6i8NM7d9d187ryvb2jJXWmN2nO9uQJ1oW9uZ/osR44+yh6plVlDtP1osfIqc5Wwf5NfB3i6wAMdByEdAACgmQIFbEnuZmoNbSVm3u8ZlhvTbfz1xYkyToRqw2nR64sTGzjDW1J6jXt/8/op7idCv8VQjM2pulqr+/vyDPmStGxhqmbML9bNi7crxub0uboha4x5X/BKu+9ztK8otj5gX50R+ByP59PVYM7z+q43SlxN8YK/URIqRIcbsL3GeuLNgED3NVWWI8cd1qusUo29XJ9vXqbMg1J2Qb4u2FbCdm1AB8J0dwAAgBbgu51XbY1FZSWxIaegB1pn7Tndu6EAaR4T7jR5Z510YI/nnmiuIOus898v3WSNMdxVdcNpUc++1TpcblNdbX0gLtlp1x+uGijJoj4p1aqrtbinpvdJqdElv9nn05zOn7mO3BzzU3emucfjWkZgvjHgakoXYzO8tnfrl1EToFO93J/7Pi+h1rg3tgldoL3i68ddf19z18i7grrrc8/t2lLj0+gAD3QgVNIBAABagLmt1kPvFOjWp3fo6nt3N1gVDxbu9hcHr8L6Vmj3F8eGPU0+2JR6yQz6/uG2rtbqrtI7nRZV7I/zmwrv+XlZSaxibIaS0l3XtcUaevWxJDnrQq9X792vxr3dWv2bCZ6PY1GMzTXuGJuh6QGeT/9qusf37vO8BHvuG/qar0BLHUp22gPe19yp71Loqvr1RYepqgMdACEdAACgBbn3vfYJ7b6V2GDhzqxqNyZANmaa/Iz5xeqb5n1ssDXd9dPU6++T5A7tgZjr8Ut314/xwJ76fdQDshgqL7XpgasHud6U2BV4avii17bq5sXb1Te1Rkvm9fd7A8Osplss9evzzen3ns9LqOc+1NcCCfbGR1P7C4TLc616lVXKq8xVcdEaJeeXsFYdaOcI6QAAAC0kUJALFswaqmo3JkD2TQ39hoDJnMbtuf2ZeaxrTXr9edYYI2D1u1diTYC16Z68g3x91T3Err9GfQM5s2N8737eDe5ibE7dcv5Q/em6jIAN+TzX9Selu96ESOpfrbmLXc/L3MX1z4v7TQlL/ZhibE7tL45tUgO/QG+SNLW/QGMEqqrnVeZSVQfaOfZJBwAAaKbGrmFu6Lw/XJWh0t1x7qAbY3O6Q2ZT9lI3hXOu+WbALef7770uSb37VSs2zrW1XO9+1V5bqgVmqFdijQ6V2UKuSQ/EbFjn+q9rynsgrrXogfenD/QcS+aa9/qxe+6t3tSfZ7A+AG2x/Zvvvuqp3VPV1zpcW3qLfdWBKNCYfdIJ6QAAAM3UnOAsKWCg9N6f3FDyAFdVeH+xd4CcNq9Y/TLCC5A3T/QP3g+9U+C35Zk1xvU9+Tdhc7nlqe1K6l8ja4x079SBOrg3VmZDt+Ad3I0AxwS6L9A5gZl7uhtOS9DnPtDPRlLQfd2T0qs0827voB9KtO3BvqHyRZ29Nk/9E7qq9MBRjXSMU1xamr45ttsd1gnqQNtrTEinuzsAAEAzNKa7ejCBmpn5NmUr2WnXzROHuiu7Tqdr67MHrh4UtNrrOQZzGrdvYDW/7ls9vnB2qV59LMmnG7wkGe4t15YuSD1RSffsvB5M8GZzwc8L3Wyub5rnlnH+z31tdeCfTWCuNwQ8O7GH+vk1tdre2oJ1gM+0DpcK8uVITNYbJ44lrAPRiTXpAAAAzdCUNcyB+K439+e6vhkily0M3lwu2B7dM+YXKyHZFSSdTotqayzur/k2pHt9caJuf6YwwDhcQTf4GwqhWd3N3Jo6mdNQn5RqPfROgW5bssOrUZzkmiKfv6Gr7ps20GPKfvCmbr5vMBiG6/vbuyP0vuaN6QDf1kKtVU8/bNPYT/NYqw5EMUI6AABAMzW1SZhnozlrjHzCq2+IDX+Lr0AB0qz8uirjrmuXlbjuC9aQTpL6pHg2cDPH6gzxhkKw8F3fcd21Nj38YG82jvN8HvYXx2pfUaxqayxeneOdTouemR94z/c+qf5N3ZIHVPs0qXM93rKFjd92rSW2WGtJWY4cHbn4Pr8O8JkHpeyCfF2wrYQO8EAUYro7AABAM5nbrYU7xT3QVOm+qTU+jdV8123LfTt5gPe6as+p68GmeD9zt3/l2/za3h2x7iZtUn0TtU9XO06EXe9A7QqnnhVo/zEGG7/htDTYCM6fRd171ahiv2ssB/bE6qk702SLNfzCuOG0qM7vzQPLiefLrgdnZ2jmgmKvn9feHbF64OpBXseHWrLQ0NKBaGNOgT97bZ6rqn4gVyM1TnHxrqr62qHDVKhCpr8DUYJKOgAAQAsJN6QFqnQHmjbvqmL7B86jhyxeldyE5BpdOLtU98/K0C3nD5U1xumeAm5O8d5XZPfbq9zcR/yhawadCM3m92Foxvxivfzn5ACPL8kwA3awdeb1t83p9Z5vDDS2y7vF6lTFfs8mdq692F1vRviOL9BMhPrP62pdlXap/udl7q/e3G3Xolk4VfWtX+RTVQeiACEdAACgDYWaKu0b/K6+d3eA9duGDpXFet22xRp6fXGie/9wZ51V5v49Tqf040vKAq7DtloNj3BeH3braq1yJNSocVPSAzFUVhIXZBp/sHAd4CrOYH+yBg7i/tf3/ryu1qraau+jL5xdKou1fkr+hbNLg45Hqp890dDe9NHGXKueO36k31r17IJ81qoDUYCQDgAA0IZCNZpLSq/R3MX1wa9+CnzwSrU5Nbtkp2+lvP7zVx9LcoXOE9X1GJuhafN3hVwb/tC1A1vgu3Vd27NKL8mr0h9eZ/jQ1/f+vOHrxNicsvk0rX99caJ7X3rDadHrixPDGkG0TnEPxWwsR1UdiE6EdAAAgDYWaKq0Z0f2B2e7OrKbgd6/YhyoghysEu2qHC+5K1XOOteffnW1Fi1b0F8WqzPwGVbnib3PmypQVbs+RLsq/a7bvZKCVaDD6f7u+b2H3y1+usfU9H1FsfrDVRkBZzf4VttN0dYgrqnCraoT1oG2RUgHAACIAsG29Jo2r1h9UjyDrH8lvV7wzupmQPc8x/BqAFd/rGt6edOmultjnOreK9TUb+83GMr3xSnwuMN5fM/qeajjvd/IePOpRO0ripWzzvW8798d5/V1c63+Led7b2EXbGu79hzafavqe2LX+VXVmQIPtC2LYRjhv+3YAVRWVqpnz576/ar/qku37pEeDgAA6IT+cFWG9u+u7wzeN61a+4rsfsclpbsaviUPqNK0ecVK6l+jB2dnuLuKB2KxOn3WcPt2Xm9Jga7dlOnrgc5pzjT4QNev70JvsRon1uMHrlfF2Jxy1rm2djM7t9/69A7dPyvDq6N7QnKNbLGGV5f+9rI2PZANlS9KcnWBtzulkY5xiktL0zfHdmvt0GGyJbheo3SBBxrv+KFDuuv0YaqoqJDD4Qh5LJV0AACAFuasC1xdNSux+4q8p1bvK7J77APu2gItxuZ0V3hLd8Vp2UJXB3jPqfKBpr5bPf66692vWrctKVTygCp3U7SWFShAN2ZrtdDn9Eio9bgVavwNTXf3Xq9ueHWYrz/XajWUlF6lutr66fieU999p8Qf2BPnbtbnOfuhvTKr6h9lj6SqDkQQ+6QDAAC0kH1Frv27D+xxBbc+Ka4O7WZ11XNKu7uqazFkGPKq6lpjvKu8nh3gPfdk3/x5Vy2Z199jBBZ3kzar1VBsnKG+qTWaMb9Yz9ydGrBaH1neFW5vFt3x7HbZ4qRd22L15+sG+Z9+4rw+KTU6WGJzN34LdFyMzZDhtASYgVB/2+wPYP6cPPdAt8X5743udFr8wnywvdXbE3NfdclVVS92Frv3Vc8uzXfvqy5RVQdaA5V0AACAFrJ0QaoO7KlvuHZgT6y7uuq79ZoZDl0Vbu/gWFdrVVJ6fQd4i8V/325rjDTiB0cDNJZzMUPjzROHaumCVM28uzjAdm6RFroj+20XDdWimQMVF6cg27hJ8d2rdWBPXIht2qQ+KTWauaB+BoI1xvtafVKqvbZSC7YHuu/9fVKqG7W3ensSqKr++eZlVNWBNsCadAAAgBbgrJNunjg04NceeqdA1hj5rWkOthbdXN/sWZXv3a9av75vt9+a531FrjcCSna6psw7nRafhnD11eCSndFYSZeCV9Plvr9XYrUqD8T6VMLDW2//wJuu598a4/o5LZo58MSbKa7H7d2vRr9bWugXsINVxc37PZ/7jrAmPRjfteqp3VOVmj6etepAIzRmTTrT3QEAAJrBDGzmdmklO+NUHxwNJQ+odge62pr66dYJyTWaebdravW+ojj3tOkYm9Md9myxxonp8BYd3BunB2dnaO7iHe4g6Dv9fX9xfWj0DK9mVb3xTeQ8p6Orkef6nh8oiAf7XH73l5cG2hIuvPHccr7rzZM+KdW66p7d7jc+zGsc3BunmycO9VueEKwqboZ9z+c+1PHtXZYjR5L0UbYrqNfYy/X55mUa6RgnFeTLkZisVQm9VKhCgjrQApjuDgAA0ASBtuOaMd97u7Q+KTXuqdJLF6SqrMQVNC0WQ7ZYwz21OindNYU6Kb3KHcLN6fFmeJdc0+Bdod7/sT0DelJ6lfqkVMti8d1PPZxtyjyFE6JD8Z3O7l0F9552Hs61mjKG+usf2BOrJXeleTXp8/16Q83ffJ/7zeu76sHZ/tuydUTm9Hdzu7a8ylwl7N/EvupAC2O6OwAAQBh8pz77Tl03t+kyj5Xqjw82Ff6hdwrcxwWaWr1oZoZKdwXems1zCzdznbQ5HovFNYW7vNQWdJuxpmlsRb01t39rOovVCNFkrn55QiC+P3fzWoFeBx3ZhsoXdfbaPPVP6KrSA0fd27UVda/VqoResiXYqaoDHpjuDgAA0EICrTvum1rjtb7bt7O3b8Azp8L77rH94OwMr+v2Tq6RLa7+MV0BvT7oWqyGknzWltdPZa9nGBafKd0tpSlbq7Wk5oZ+1/mhusCbyxMCMWc3uG87LZLTf1lBqA7vHaH7u+TfAT6vMlepzlQlW4cru3cJHeCBZmC6OwAAQAie26aZe2Gbobsxnb0vnF3q3qvcYjVUV2txX3dfUZz+cNVA3XL+UM09b4ieuK2/x1Zt9Xonu6bHB3ps/87trr3WW2d/9Ehp3nT3GFvo/dR796tfnhBIoJ97jM0Z1usg0BKF9s63A3yNvVx5lbnKPChdX3SYDvBAExHSAQAAgvDdNs2zUhpsm65gXl+c6K7gOussKi+t71TuWnfu+ryu1vtrnk3oPNexm49tsRoq2Wk/Ma3dew15Xa3Vo2rcnLAeLUG/KeOwqHc/13Pl/xyZh7jC9sG9ce41/8H4/tw9t3YL9ToI9GZPRxForXpx0Rol55e4t2tjrToQvoiG9Lq6Os2bN0+DBg1SfHy8Bg8erIULF6qhZfIffvihsrKyZLfbNWTIED377LNtM2AAANCphKqYm529PffXDsY37JvN4KwBq9zBQrXrDYLa6vrHTkqvUl1tuM3ggm1vFuixgo0p0hoah+/34aqcH9wb63Xb/NxsIBcTY8hZ57r2vqLQAdr3537K/xxt8HUQ6s2ejiJUVT39sE1jP82jqg6EKaIh/f7779ff/vY3PfbYY9q8ebPuv/9+PfDAA3r00UeDnrN9+3ZNmjRJ5557rr788kvNmTNHs2bN0urVq9tw5AAAoLNoqGIezvri/cWxXh3FLVZDfVKq3df1DY/evKew33K+a7r0N592PbHHeqjg2lCoDdR1PRo0tXIf6A0Oz67w9Z/H2AzNXFCsB94scM04MOrfQCnZadfeHaGnowfqOxDq2MYuj2ivshw5OnLxfX5V9cyDoqoOhCns7u7FxcVKTW3ZaTnnn3++kpOTtWTJEvd9l156qeLj47V8+fKA59x666166623tHHjRvd9kydPVnl5ud59990GH5Pu7gAAoCnCafjleYzn53+4KkP7iur3T4+xOd1brdVWS1u+6qpn5qcG7MQeY3N63O9qfGZ2FXdV0ZsasH07tYezRVtLhvlwOsX7PmbLjcFswjd38Y4TDfz897dvqEt7Y5rABWpAGGr2RUcQrAP8N8d2a+3QYXSAR6fSKt3dR4wYob/+9a+68sormz1A05gxY/Tkk0+qoKBAQ4cO1VdffaWPP/5YDz/8cNBzPvnkE40bN87rvgkTJmjOnDkBj6+qqlJVVZX7dmVlZYuMHQAAdC6hwphnAOuTUi3DkA7ujVOflGrV1Urlpd5N4OpqrXI6Xdt5mfuaz128Q0vmp+pAcX0H+L5p1Seq5ab66dIKsYVYeHzPD7fq3lLCuV79MT371qhif7jN1swwH/yNAOPElPObJw5Vr8Rqn2NCd2lvSuDum+qaJt9RuruHw1VVz9HKE2Hd7ACfaR0uFeTLkZisVWVVhHXAR9jT3e+77z7Nnj1bl19+uQ4ePNgiD37bbbdp8uTJOvnkkxUbG6szzjhDc+bM0S9+8Yug5+zdu1fJycle9yUnJ6uyslLHjh3zO37RokXq2bOn+yM9Pb1Fxg4AAGDybAp2YE+sDu6t/7y81DdYuqY6L1uYeqK6Lu0rsuvB2Rn6+f8r9Zpaf9E1pV7T5M3Q6dtVPPR0+Y7AOBHQw/3e/Ke3h1JeGttgl3bP9eONaQLn29V9f3H77+reWOZa9dzxI/3WqmcX5LNWHfARdki/9tprlZeXpwMHDmj48OF64403mv3gL730klasWKHnn39eGzZs0LJly/TQQw9p2bJlzb626fbbb1dFRYX7o6ioqMWuDQAA4NsUzLciG6hiPXFGqUp22t3roCVXdf31xYm69ekdeuBNVxOyVx9L8mkM5/o8IbnGq6t4n5Qa9UnxreRGS1hviXE0tHY+1GMEeiPD//p1tVb1TfPvPeAbsvfuiG1UE7iO3NW9MczGcqHWqm/9Ip+wDqgR090ladCgQXr//ff12GOP6ZJLLtEpp5wim837Ehs2bAj7enPnznVX0yXptNNO044dO7Ro0SJNmzYt4Dn9+vVTSUmJ130lJSVyOByKj4/3O95ut8tut/vdDwAA0BLMpmD7iuK8Qnc9z3XUhmJshp5d0F+B1leX7LSfWL/umgJ/YI//XunmVmyn/M9RnfI/O1RbLdniXG8W3DxxqBoOtI3REmvAW78pnTVGITqln+ikH+MK6K4u7oG/r1ue3OG+nsk3ZC9bmKrkAVUq3VW/LCGxf3XAKezmGzju287Q0+g7A1dV3fX5lA1blXcgVyM1TnHxNmWX5mvt0GEqVCHT39GpNSqkS9KOHTv06quvKiEhQRdddJFfSG+Mo0ePymr1LubHxMTI6XQGOUMaPXq03n77ba/71qxZo9GjRzd5HAAAAM0xY36xnrozzS9Ux9ic6pFQ616TXt/sTfINiRarIavV0P7d5hT4QAHddZ7ZfXzZQu910ckDqnwaoHnyXKcdbnBurYDd1PAf+Dxz+7RQvI/xPd5Qn5Qav+AcLGTf8tR293Mfam908w2ccAJ9Z5LlyJEkrcxirToQSKMS9lNPPaWbbrpJ48aN0zfffKPExMRmPfgFF1yg++67TwMGDNCIESP0xRdf6OGHH9bMmTPdx9x+++3avXu3/v73v0uSrrnmGj322GO65ZZbNHPmTL3//vt66aWX9NZbbzVrLAAAAE2VlF4jW6w5nbq+g/vMBcV6fXHiiWOqfJrAmVznJPWv9gqE/l3X6zu7J/avdq1pP1HhLdnpWtM+fX6xlszrH2SUkd5uLVATt1Bh3f9rPfvWyGKxqLzUJu83HMLpVB/8+05Kr9bMu/2DdrCQ3S8j/CZwM+YXu5vMhQr0nZFnVf3stXkqdhYHrKpLIqyjUwl7C7af/exn+uyzz/TnP/9ZU6dObZEHP3TokObNm6dVq1Zp3759Sk1N1ZQpU3TXXXcpLs71P53p06ersLBQH374ofu8Dz/8UDfeeKM2bdqk/v37a968eZo+fXpYj8kWbAAAoKXVTzX35hnwLBYjyHR46X8f367+Q2p0/6wM9/G+zK3YkgdUadq8Yj1w9SC/YxL7V8lqVYip957C2QItmriCd6At6ZrroXcK/JrEmbdbauu0zjzFPRye27XFVvVSX+twbektV1U9oRdVdbR7jdmCLeyQPn78eC1dulT9+wd7d7Z9IKQDAIBwNSZYeQbswNunmfzXqD/49lZJ3oHQs3LeN61aty3xrtya27f56pVYoxibcWLqvfdjRW8gb8zYGvt9hD6+d79q3fn3QkmhAzkhu/VtqHxRkquqbncq4L7qElV1tE+NCelhd3dfs2ZNuw/oAAAA4fDt6L2vqOFts2bML/baPm3m3a414p7bevVJqVavxFr3OdYYQzMX1E9/Tkqv0dzFO3TLU9uVPMD7Wq7j6x/vwtmlCtStvLzUdmLqveTfaV4e57RU9/eW7N7enGODd24PJsbm1K/v2+2+HagTu9mQLnRzOrQEswP8R9kjVWWV9sSu8+sAz3Zt6AzCrqR3FFTSAQBAQ3yr4on9q3Xr0zvCOjecqdLOOtdxtrj6c/YX+x/bO7nGfYynfUWxenB2hse0b3/WGKecdZ5fN9S7X41i4wyV7LSrT0q1ykpiA06tb76mNKnzPbe1uK4fqFIeaMmC5Kq2WyzSgT1xzZryjvD5VtVTu6cqNX08VXW0W42ppDe9NTsAAEAH1NxtszyPSUoP3GDMGuP68AzxMTanOzDvK4pzh/BAofCZu1NDBvQYm1N1Ph3PY2yGLv3tPp3yP0fd47lv2kAd2BOrlg/FjW1S5xnMG2ok19wQ7zp37uIdXj+T/cWxAda7u44/uDfOfdussIf7pg2axuwA/1G2K6jX2Mv1+eZlGukYV98BPqEX27WhQwp7ujsAAEBnYHb09pymnjygqlnrkYOd6zm9uq7WKuNESDcMizssmqHQ5KxTkLXuco+3rtYq+TSOM5wW/fOJRPd4nHU6sW69sdPHwxH+uRarM8QYvI70+W9j1U/zt8Y4/RrFLV2Q6jOrwKJAywXMN21qq5s4DDSKOf19ZdYQVVmlvMpcJezfpPTDNmUX5LunvzMFHh0JIR0AAMCH7/ry1tg2y6zYNzTd3LOSb1bAk9KrghxtSBZzKzj/6+wrsrvX2Pu+GRHoHFeAboqmTHGv/zzG5nrcGJvzxPcT/jXMtf/mNfzHZJGzznrizY763gMlO+3uN0lCsrjGd8v54fcrQPP4rlU3q+qZB6Xriw6zVh0dDmvSAQAAgmjtjt7eW665Or3X1VrdU9+NE2viE5Jd+7Cb0+JDTXUPznuf9Vuf3qG9O2L17D2pISvzkXDzE9vVL6PGa51+uNPckwdU6Vd3FOuh2f5b1PkeV1tj8ViX39A+7vVbwDnrLDKM+ufSd+o8Wk+gtermdm2sVUc0a5Ut2DoKQjoAAIgW+4pi9dSdaSemnUt9Uqp11T27ZbXKHU77pFSrbJ/Nowmc59psyX+ddnhhNim9SvuKQod+85hI6JVYrV//frf6ZdSoeHtsg6Hbfx913+dE8nyuQu1bH0iMzalp84r1zPzAux3RUK5tee6rXnrgqHu7tqLuteyrjqjUKluwAQAAoGUlpbsq5OaU87KSWC1bmOpuOPfAmwWKsRk+Xdo912YHWqcdOnhaTkzX3r/bXAvvG2Rdn/dKrNbUO8OZ5u85XT5Q7cfw+dz3dmDlpXF64OpBum/aQNlsJ6a+h3Fu/fdTL8bm6mzvUr/uX5JX74HAXPcbToveWpKopHTfJQLeDeXQNgKtVS8uWqPk/BLWqqPdI6QDAABEiO+6dHP9+d4drrXSt5w/NGgl22J1NUBz8Q6vfVKqlTygyudrrv8mpVerrtbqsRY+cNCPsSlIOPYbicd/A71B0HAztlAO7Inz2G4u1LnBv5+6Wqt+t7TQryFgr8RqWU7ctpi3/dbAe/9s9hXZ3ed4fj+evQPQNgKtVc+rzHWvVR/7aR5r1dEuEdIBAADakGeIC9ZJftnC+q7vwarPhlM+FXaTKzReOLtUfVKq3bf7pNTolqe2a+7iHSfuD73isazEtR585oLGNs0L3oiuqepqra6O7GagDtlMzudrlvru/NPmeTcEjLGpvqO+0/XGRFK66+tJ6VXqk1IdsGpuOF37rLf0LgBommBV9cyDUnZBvi7YVkJVHe0KIR0AAKANeHYS9+wK7ttJftq8Yp+u7/XV2qT0Kt22pPBEd3f/qrLFY9r8M/NTVVbiegwz1C5bmKqbJw5V2T5bgBF6h1uzMpx5+lGFU/H2HUtgTQ/uzjqr+/uzxpizCAJNtfd5fMP1hsX9szL0wNWude3mmxUH9sR5zWI4sCdOcxfv0EPvFOi2JTt09b271Tet2uO63lVz39DfGrsAIDyhqurph21U1dGuBPoNDQAAgBbmahDnCs0lO+P01J1pumNZoXv9uWcn+eQBVe6u774dxEPtk254BE55bCdmGK4Aaob1UBV43y7woSrDfVKqVV5q8288Z3FKRqjHcI8swH0BzrIYssYYXlVv/z3Ng56tfz6R6F6DX7orTssWpmrG/GKfpnmusTw4O8MdtpcucHW+9+0Ebz43/TL8f3aIrCxHjo5cnKOVJxrL5VXmKtWZqkzrcKkgX47EZL1x4lgayyFaUUkHAABoZc46nejgXl8dP7Anzm/qu+nC2aVea6UvnF3q/ro5Rd7i0egsxuYMOjW7/rbC6mYeY3Mda1aGXY8b+Hq2WEPTA1WPDWuAfcq9DjhRCfd8Y6B+7DE2p255art7P/jE/t7r6OsDekOVeUMWq1P7ivzX/T9zd2rAPerNBnBLF9QvOTD/G6xqTkCPPlTV0Z5RSQcAAIgyry9O9Koav744Uaf8zw7312fML3Zv0WZu/SXJY0/xQE3VfKvWgW8bTouS0qt069Oux6utlgJfzxVe33gyMeD34L8Nmvf55hsUFqshi6W+g32MzdDMBcXql1GjW550jcEa47+nfLDquWtrtfoxGk5rwL3NXc+T//dkhnhP5lT4h94pcI8H0S+cqvqqsiq2a0PUoZIOAADQyqwx8mnW5urAHijsBev47ll1N6fIP/ROgW59eoeS0mu87qvv+u4pcKitP7b+8fYVuTrMS5ItLniHd/NY83uq56pg90ioDfiYno9nOC1ee8D3Ta1Rn3417vX7D852rd/3XLsfuCO9+f0Y7nX71hOXrau1uGcRJCTXaMb8Yq+mb56VfLMBXLCmcE0N6HR9jxyzqp47fqRfVd1zuzYgWhDSAQAA2sDV9+5W8gBXyEweUK2r790d8LhgHd8DhcNggTHwmnNfrtD6wJtbT2zX5h2yly2s3/N75oJi9zR48+ve/62/nvm54bTqUJktwDmhx2RORTenmO8rck0/T0qv0dzFOxo431XB751c4zXF3XNavS3WUFJ6jVfo75NSoz4prn3Uzansvg39ZswvblLQDtYwEG3LbCwXqgP81i/yCeuICkx3BwAAaAOBGsQF4zmdvbFdw/cXx/o0RAvMYjGUlF7t3prM7Hx+4qvu6r01Rjrlf46qb2qN9hXF+axrb2iNe7jHuqavm1PfPRvjGYZrLMXbYmWLVcBmb77MNzrqp8f7f1+Bfh6+Pxvz6/uLY/2WFySl1zTwvbv4rm1fuiDVvZQAbc9VVXd9PmXDVuUdyNVIjVNcvE3ZpflaO3SYClUoicZyiBxCOgAAQBsKZ7p0YwK95B0uly5IlbOuPphaY5xy9K5VeWmsPNemW2NcDekkyWr1Dr+eAX5fUayeuTvVp6N8Q+Hc1Y3dNY7Qx/ZKrNGhshjXlHSnZPh0mTc/f+iaQSfGGKpDvKE+KTWyxrje6HB11I9zH2mxGkry6Vgf7HPP+5oatM2lC+7bTu83PxAZWY4cSdLKLNda9T2x6xRb1Mt7rXpCLxWqkKCOiGC6OwAAQDvlO5V6745Yley0e1W7nXVW/fr39VPtTWZDOulEsHd6BnvDXb33nHoePoscvevcU8iDscY4FWMzAu4JH6gK73oTwfd+79tX3eNaRlBf6a6fZm+xGEFnJQSbyh5Oj4BgGrN0AW3PXKu+MmuIth8tDrpWnSnwaGuEdAAAgCgT7jpm3wrvsoWpAUNhvwzP9dzeYbO22hVCDY+QXldr1ZN3pOm+aQO1r8geYOu2hteXl5fGatpdgdfdm3ol1urAnjivxw6Xaws6w+u2+b1Kgba9c71h0TfV+42DQG90eGpu0A60th3Rw1yrbm7Xtid2nd9adRrLoa0R0gEAAKJMoOnVvoJVeKfNCxwKg3WYt8UpQKdz6eDeWB3YE6zJmUWJ/au8jvfm2uv84f83SL4N6Tz/W74vNsR+6oHPM7vRW63ej2u1Bq+Sh+L5XJfsjNMDVw/ye2OkOUE7UCd+RB+q6ogmrEkHAACIIqHWMUv1a5l9m6OZ+3/3y6hfz+55fCiejepCbW8m1a/rnrt4h26eODTIcRbV1dZ/7nm/53+dTovktMga4/Tahq1PSo1ssYZKdtpPfK3+GglJtbr1qULdcv5Qr0esq/WukptvSrjeaLDIc726yfe59tz/3XPdeWN7BATCFPfoZ65V/yhb7rXqpZuPaqRjHGvV0aaopAMAAESRQNOr+6RU68HZ/tPfg1V49xXF+h3vP/3bogN74rw6nSelV52YRh5cUv9qTZtXHHCcMTanx/mBwrvrGPMci8V121ln9duvfcb8Yj3wZsGJ8O495nCnoDe07Z15HYvF+3sOtu6coN05eFbVze3aEvZvoqqONkNIBwAAiIBQjcd8w7ekgNPfg02lDjRdPpxgO/PuYr9p5J5ufmK7JLmnhF84u9Q9vr5p1aqrtQZYX15/vRiboUt+s899jjWmvmmcq1ruOrasxLXlme9UfM8xz5hfrL5poaeghzPV3LWdmtlUz3spAKG88/Jdq15jL9fnm5exVh1tgpAOAADQhsJpCucZLucu3uGqeIfoLh5oCneg433D/7R53sG2b2pNkP3VXaH1ud97h//XFye6x3nbkh0B17bH2Ax3dd1ZZ9G/X03QrU/v0ANvFviE+vpO7aHGPGN+sfYVuUL8vqLw9i0PFbbN59q1Xh/wRlUdkUBIBwAAaEPhNIUzWWMa31081PFmIL3lKe+KuPlGge+5ZtBOHlCtq+7ZHTT8m2PxDNTJA6p18xPbvYK4YbjO+ebTrvrjtRlej+H6r/eY9xfHutfKJ6XXh/HGPIfhCLUUAAhVVb++6DBVdbQ4QjoAAEAbaeqe243tLt7Q8csWBg+5vkH7lqe269and6hfRk2Dbxb4Ti9PPcl1jm+n9mcX+O+93ielxr2vemL/al04u1QPzs5wN3Yr3e0aZ3P2LQ8mUvuZ8yZA+xKoql5ctEbJ+SVU1dGi6O4OAADQRoJ1ZG8oDDa2u3io40N1j/estgc617MLfKg3CzzPmzavWA9cPcjjqxbV1fp3fL/9mUJZY+R+3D9cleE19d44MU6pac9hQ8L93lqCOV2/ZGd40/URPXw7wNfYy5V3IFcjNU4jig6rqKycDvBoNkI6AABAG2pOGGxMEA0W6MN9oyDQuU3ZisyswHs+nsVqyHBaAj6+NUbauyNW+4rsftfybBrX0oG6JbZZC1eg6frmdm9oH1xVddfnZ6/NU15lrlKdqUq2Dld27xI5EpP1xoljCetoLEI6AABAG2rtMBhOlbYtq8aBHu/C2aV6fXFi0MdftjBVriny9RX3GJvTfVxLPIeh3sRoTQ3NZED7EaqqHhdv09hP87R26DCq6mg0i2EYoTfD7GAqKyvVs2dP/X7Vf9WlW/dIDwcAAKBFmCHv/lkZflXyYFXaxgbD5k7TNh/P97++x9w8cajfubc8tV39Mpo/JTwappo35meE9mND5Ys6e22e7E4ptXuq+lqHa0tvuarqJyVLoqremR0/dEh3nT5MFRUVcjgcIY+lcRwAAEA75rml2x+uymhUU7VAATmU5nZV31/svf3c/mL/7eeCNXFriYAuNf97aAmNbQSI9sG3A3xeZa4yD0rph11VdTrAI1xMdwcAAGjHPEPn/t1xirE5g673DsazupyUXqWZd/tXl1timna4a7Fbazp+tEw1b8v172hbWY4cHbk4RytPVNXNteqZ1uFSQb4ciclaVVYlW4KdqjqCopIOAADQTgXajqyu1troKu3SBanaV+QKz/uK7Hpwdv3e6SbfCrfF0rhtyhqzdZrvVm4tNR09UluthRoPOiazqp47fqRfVd1zuzYgEEI6AABAOxUsdDYm4Jrh2TDqm7TV1VoDTgOfMb9YCcmu6xmGRbU1Fr8w39ixhgqqrRFimWqOtpLlyFGWI8dvX/UR8WnKLsjXBdtK2FcdARHSAQAA2rFgoTPcgOvaG73K7/5AVe6k9BrZYg130C4riW3Umu5oCMitVaUHgjGr6ol9ukqSKlIrNCI+TZJ0mY5HcmiIUqxJBwAAaMcau7450HEz7y7Wg7MzVFfrqt9YrIaSAqxlb+6a7mhai90Wjx8N3yeA9odKOgAAQAcQTnM4z87qntPUk9JrNHfxDiUPcFXUk4JUuVtqTXdHD66hnmsAaAghHQAAoBNoaOsx32ngfVMDTwOPhinr0S4atnkD0H4x3R0AAKCDa8w09f3F9duxJQ+o0oz53tuxRdOU9WgULdu8AWi/qKQDAAB0cI2Zph5uFZjAGVi0bfMGoP0hpAMAAHQC4UxTb8xe5giOJQEIZFfZUdXYy7Vl7Wuq3r1b6YdtqtpWwZ7p8MN0dwAAgE4gnGnqZhW4dFecnE6LrFZDiQG6vCM0lgTAl2sbNtfnZ6/NU15lrlKdqUq2Dld27xKtHTpMhSqUJA0cODBi40R0oJIOAADQiTQUGqkCtxwCOjxlOXLce6ZXWaUae7nyKnOVeVC6vuiwLthWQlUdkqikAwAAwANVYKB1NVRVdyQm640Tx1JV75yopAMAAMBPSwR01rIDgYWqqqcftmnsp3lU1TsxKukAAABoUfuKQm/jBsAly5GjIxfnaGXli15V9UzrcKkgn6p6J0UlHQAAAC0q3G3cALhQVYcnKukAAABoMeY2bu7bHtu4scYdCC6cqvqqsirZEuxU1Ts4KukAAABoMeY2blar4bptNZQ8oCrCowLaD7Oqnjt+pF9VPbsgn6p6J0BIBwAAQIvy3MYtIblGtTUW3TxxqO6flaF9RbERHh0Q/czGciuzhqjKKuVV5qq4aI0yD0rZBfm6YFuJtn6RT1jvoAjpAAAAnVhrdGA3t3F76J0C2WINlZW4gjnr04HGCbeqTljvWFiTDgAA0Am1VQd21qcDzZPlyJEkrcwKsVY9oZcKVcha9Q6CSjoAAEAn1BYd2IOtTyegA43nWVXffrSYqnoHRkgHAADoZMwO7E6nxXXbo8Ld0jzXpyf2r9aM+cUt/yBAJ2GuVTe3a9sTu85vrTqN5do/prsDAAB0MmaFu3RXnJxOi6xWQ4n9q1ulwm2uT2eKO9ByXEHd9fnZa/NU7CzWSI1TXLxN2aX5Wjt0mApVKElMgW+HqKQDAAB0Qm1d4SagAy2LqnrHRSUdAACgE6LCDXQMgarqqc5UpcanUVVvp6ikAwAAdGIEdKD9862q19jL9fnmZVTV2ylCOgAAAAB0AGZQX5k1RIl9umq/c5MS9m9S+mGbLi4rlySCejtASAcAAACADsLcV12SRmVken3tMh1v6+GgCQjpAAAAAABECUI6AAAAAABRgpAOAAAAAECUIKQDAAAAABAlCOkAAAAA0AGt37ve/XllaYmqtlVEcDQIFyEdAAAAADqQLEeOVmYN0a6yoyo+XKziojXKPOgK6hdsK9HWL/LZii2KEdIBAAAAoIMx90zPHT9SNfZy5VXmKvOglH7YpuyCfNWWVamwsJCwHoUI6QAAAADQAWU5ctxV9SqrtCd2nbuqnl2Qrwu2lbjDOqKHLdIDAAAAAAC0HldV3fX52WvzVOws1kiNU1y8Tdml+Vo7dJgKVShJGjhwYMTGCRdCOgAAAAB0cFmOHEnSR9muoL4ndp1ii3op0zpcKsiXIzFZqxJ6qVCFBPUII6QDAAAAQCdBVT36EdIBAAAAoBOhqh7dCOkAAAAA0AkFqqqnOlOVGp9GVT2C6O4OAAAAAJ2U2QH+o+yRqrJKNfZyfb55GR3gIyiiIX3gwIGyWCx+H9ddd13A45999lm/Y7t06dLGowYAAACAjsUM6uZ2bXmVuUrYv4l91SMgotPd169fr7q6OvftjRs3avz48br88suDnuNwOJSfn+++bbFYWnWMAAAAANAZ+K5VN6vqIx3jNKLosIrKylmr3gYiGtITExO9bv/hD3/Q4MGDNXbs2KDnWCwW9evXr7WHBgAAAACdku9a9bzKXKU6U5WePp616m0gatakV1dXa/ny5Zo5c2bI6vjhw4eVkZGh9PR0XXTRRfrmm29CXreqqkqVlZVeHwAAAACA4DzXqif26SpJqkit0Ij4NF1cVq7LdDzCI+y4oiakv/baayovL9f06dODHjNs2DA988wz+uc//6nly5fL6XRqzJgx2rVrV9BzFi1apJ49e7o/0tPTW2H0AAAAAAA0X9SE9CVLlmjixIlKTU0Neszo0aM1depUjRo1SmPHjtWrr76qxMRELV68OOg5t99+uyoqKtwfRUVFrTF8AAAAAACaLSr2Sd+xY4dyc3P16quvNuq82NhYnXHGGdq6dWvQY+x2u+x2e3OHCAAAAABAq4uKSvrSpUuVlJSkSZMmNeq8uro6ff3110pJSWmlkQEAAAAA0HYiHtKdTqeWLl2qadOmyWbzLuxPnTpVt99+u/v2Pffco/fee0/btm3Thg0b9Mtf/lI7duzQrFmz2nrYAAAAAAC0uIhPd8/NzdXOnTs1c+ZMv6/t3LlTVmv9+whlZWW6+uqrtXfvXiUkJOjMM8/UunXrNHz48LYcMgAAAAB0GrvKjqp/gnTk088Ubx2uyt6SQ1JtgoU901uBxTAMI9KDaEuVlZXq2bOnfr/qv+rSrXukhwMAAAAAUW1D5YuSXHum253SSMc4xaWl6Ztju7V26DDZElw9wAjrwR0/dEh3nT5MFRUVcjgcIY+NeCUdAAAAABC9shw5kqSPsl1BfU/sOsUW9VKmdbhUkC9HYrJWJfSiqt5CCOkAAAAAgAZlOXL0Ubbr87PX5qnYWayRGqe4eJuyS/O1dugwFapQElX15iCkAwAAAADCQlW99RHSAQAAAACNEqiqnupMVWp8GlX1ZiKkAwAAAAAazbOqPmXDVo3ql6kvd6zRiPTxcpSVS2XSGyclR3aQ7VDE90kHAAAAAHQsowecEekhtFuEdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEnR3BwAAAAA0y66yo5LWK1a9VL17t3ZJUneptqyKPdMbiUo6AAAAAKDJXHumj9TKrCGqsZcrrzJX1bt3K/2wTdkF+a6gXlgY6WG2G1TSAQAAAADNYu6ZvjLrRZ29Nk95lblKdaYq0zpcKsiXIzFZq8qqZEuwU1VvAJV0AAAAAECLMKvqueNHuqvqmQflV1Wnsh4cIR0AAAAA0GKyHDnKcuRoZdYQVVmlPbHrVFy0RpkHpeyCfF2wrYQp8CEw3R0AAAAA0OJcVXXX52evzVOxs1gjNU5x8TZll+Zr7dBhKlShJDEF3gMhHQAAAADQKsy16h9lu4L6nth1ii3q5b1WPaEXHeA9ENIBAAAAAK2Kqnr4COkAAAAAgFYXqKpeuvmoRjrGUVX3QOM4AAAAAECb8dxXvcoq5VXmKmH/JjrAn0BIBwAAAAC0KbMD/EfZI1VllWrs5fp88zI6wIuQDgAAAACIEKrq/gjpAAAAAICICVRVN/dVv77osC7YViJJnSaoE9IBAAAAABFnBnVJGpWRqf3OTe6vXabjkRpWmyOkAwAAAAAQJQjpAAAAAABECUI6AAAAAABRgpAOAAAAAECUIKQDAAAAAKJa1baKSA+hzRDSAQAAAABRY2XWEK3fu17Fh4tVvXu30g/bVFla0mn2TCekAwAAAACigrln+sqsIaqySnti17n3TM8uyNcF2+rDekdli/QAAAAAAADw5Noz3fX52WvzVOws1kiNU1y8Tdml+Vo7dJgKVShJGjhwYMTG2RoI6QAAAACAqJPlyJEkfZTtCup7YtcptqiXMq3DpYJ8ORKTtSqhlwpV2KGCOiEdAAAAABC1AlXVU52pSo1P65BVddakAwAAAACimrlW/aPskaqySjX2cn2+eVmHXKtOSAcAAAAAtAtmUC+8/AdK7NNV+52bNCI+TaMHnKGLy8ojPbwWQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAAgChBSAcAAAAAIEoQ0gEAAAAA7con3x2QJBUfLlb17t3atelrVZZ2jG3YbJEeAAAAAAAA4cpy5EiSVma9qLPX5imvMlepzlRlWodLBflyJCZrVVmVbAl2DRw4MLKDbQIq6QAAAACAdsfcMz13/EjV2MuVV5mrzINS+mGbsgvy221VnUo6AAAAAKBd6ohVdSrpAAAAAIB2LdyqenuorBPSAQAAAADtXpYjR1mOHK3MGqIqq7Qndp2Ki9Yo86CUXZCvC7a1j8ZyhHQAAAAAQIdhVtVXZg1Rjb1c+52bNCI+TemHbbq4rFySojqoE9IBAAAAAB2KuVbdVJFa4f78Mh1v6+E0CiEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAA0GEVHy7WkU8/kyRVlpaoaltFA2dEFiEdAAAAANDheO6ZXny42L1nemVpiS7YVqLCwsKo3IqNkA4AAAAA6JDMPdOrrFKNvVx5lbnKPCilH7Zp7Kd5qi2rirqgbov0AAAAAAAAaC1ZjhwduThHKytf1Nlr85RXmatUZ6oyrcOlgnw5EpO1qqxKtgS7Bg4cGOnhUkkHAAAAAHR8oarq2QX5UVNVp5IOAAAAAOgU2kNVnUo6AAAAAKBTMavqueNHqsZerv3OTe6q+sVl5RGtqhPSAQAAAACdTpYjx/35qIxM7XdukiSNHnCGLi4rj9CoCOkAAAAAAEQNQjoAAAAAAFGCkA4AAAAAQJQgpAMAAAAAECUI6QAAAAAARAlCOgAAAAAAUYKQDgAAAABAlCCkAwAAAAAQJQjpAAAAAABECUI6AAAAAABRgpAOAAAAAECUsEV6AAAAAAAARMrKrCHShvUqPXxUfXfv1i5JlcdKVJvQS4UqlCQNHDiwzcZDJR0AAAAA0CllOXKU5cjRyqwhqrJKe2LXqbhojTIPStkF+bpgW4lqy6pUWFjYZmOikg4AAAAA6NSyHDn6KNv1+dlr81TsLNZIjVNcvE3ZpflaO3RYm1XVI1pJHzhwoCwWi9/HddddF/Scl19+WSeffLK6dOmi0047TW+//XYbjhgAAAAA0BGZVfWPskdGtKoe0ZC+fv167dmzx/2xZs0aSdLll18e8Ph169ZpypQpuuqqq/TFF1/o5z//uX7+859r48aNbTlsAAAAAEAHZQb1lVlDtP1osfIqc5V5UEo/bFN2Qb47qLdWWLcYhmG0ypWbYM6cOXrzzTe1ZcsWWSwWv6/n5OToyJEjevPNN933/fCHP9SoUaP0xBNPhPUYlZWV6tmzp36/6r/q0q17i40dAAAAANCxbKh8UWevzVP/hK4qPXBUIx3jtKW35EhM1qqEXrIl2MOa/n780CHddfowVVRUyOFwhDw2ahrHVVdXa/ny5Zo5c2bAgC5Jn3zyicaNG+d134QJE/TJJ58EvW5VVZUqKyu9PgAAAAAAaIhZVS+8/AdK7NNV+52b1H9wd6UftunisvJWecyoCemvvfaaysvLNX369KDH7N27V8nJyV73JScna+/evUHPWbRokXr27On+SE9Pb6khAwAAAADQoqImpC9ZskQTJ05Uampqi1739ttvV0VFhfujqKioRa8PAAAAAEBLiYot2Hbs2KHc3Fy9+uqrIY/r16+fSkpKvO4rKSlRv379gp5jt9tlt9tbZJwAAAAAALSmqKikL126VElJSZo0aVLI40aPHq21a9d63bdmzRqNHj26NYcHAAAAAECbiHhIdzqdWrp0qaZNmyabzbuwP3XqVN1+++3u2zfccIPeffdd/fGPf9S3336ru+++W59//rl+85vftPWwAQAAAABocREP6bm5udq5c6dmzpzp97WdO3dqz5497ttjxozR888/ryeffFKnn366/vGPf+i1117Tqaee2pZDBgAAAAB0Ip98d0CSVHy4WEc+/UySVFla4t4zvSVF1T7pbYF90gEAAAAAjWXumW53SqndU9XXOjzsPdPb5T7pAAAAAABEK3PP9NzxI1VjL1deZa4yD0rph23KLshvsap6VHR3BwAAAAAg2mU5ciRJK7NcVfW8ylylOlOVaR0uFeS7quplVSGr6g2hkg4AAAAAQCOEW1VvSmWdSjoAAAAAAI3kW1XfE7tOsUW9vKvqCb1UqEL169Mn7OtSSQcAAAAAoInMqvrKrCGqsZdrv3OTu6p+cVm5JNfOZeEipAMAAAAA0AxmVV2SRmVkar9zk/v2ZTreqGsR0gEAAAAAiBKEdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAAgFZSta2iUcfbWmkcAAAAAAB0KiuzhmjX2n/J7pT67t6t9LQ0fXNst2rtsWFfg5AOAAAAAEAzZTlyJEkfZUtnr83Tnth1Kt18VCMd43T0+BY9G+Z1COkAAAAAALSQLEeOPsp2fX722jzlVeaq17E+YZ9PSAcAAAAAoAX5VtVr7eGvSyekAwAAAADQCsyqevXR42GfQ3d3AAAAAABaSZYjR6N6XBr28YR0AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAAgChBSAcAAAAAIEoQ0gEAAAAAiBKEdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAAgChBSAcAAAAAIEoQ0gEAAAAAiBKEdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAAgChhi/QA2pphGJKk40cPR3gkAAAAAIDOwMyfZh4NxWKEc1QHsmvXLqWnp0d6GAAAAACATqaoqEj9+/cPeUynC+lOp1PFxcXq0aOHLBZLpIfTrlRWVio9PV1FRUVyOByRHg4iiNcCTLwW4InXA0y8FmDitQBTZ38tGIahQ4cOKTU1VVZr6FXnnW66u9VqbfCdC4TmcDg65T8s+OO1ABOvBXji9QATrwWYeC3A1JlfCz179gzrOBrHAQAAAAAQJQjpAAAAAABECUI6wma32zV//nzZ7fZIDwURxmsBJl4L8MTrASZeCzDxWoCJ10L4Ol3jOAAAAAAAohWVdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0uO3evVu//OUv1adPH8XHx+u0007T559/HvKcDz/8UFlZWbLb7RoyZIieffbZthksWlVjXwsffvihLBaL38fevXvbcNRoDQMHDgz4s73uuuuCnvPyyy/r5JNPVpcuXXTaaafp7bffbsMRo7U09rXw7LPP+h3bpUuXNh41WkNdXZ3mzZunQYMGKT4+XoMHD9bChQvVUC9i/mboeJryWuBvho7r0KFDmjNnjjIyMhQfH68xY8Zo/fr1Ic/h90JgtkgPANGhrKxMZ511ls4991y98847SkxM1JYtW5SQkBD0nO3bt2vSpEm65pprtGLFCq1du1azZs1SSkqKJkyY0IajR0tqymvBlJ+fL4fD4b6dlJTUmkNFG1i/fr3q6urctzdu3Kjx48fr8ssvD3j8unXrNGXKFC1atEjnn3++nn/+ef385z/Xhg0bdOqpp7bVsNEKGvtakCSHw6H8/Hz3bYvF0qpjRNu4//779be//U3Lli3TiBEj9Pnnn2vGjBnq2bOnrr/++oDn8DdDx9SU14KJvxk6nlmzZmnjxo167rnnlJqaquXLl2vcuHHatGmT0tLS/I7n90JwbMEGSdJtt92m//znP/roo4/CPufWW2/VW2+9pY0bN7rvmzx5ssrLy/Xuu++2xjDRBpryWvjwww917rnnqqysTL169Wq9wSHi5syZozfffFNbtmwJGLhycnJ05MgRvfnmm+77fvjDH2rUqFF64okn2nKoaGUNvRaeffZZzZkzR+Xl5W0/OLSq888/X8nJyVqyZIn7vksvvVTx8fFavnx5wHP4m6Fjasprgb8ZOqZjx46pR48e+uc//6lJkya57z/zzDM1ceJE3XvvvX7n8HshOKa7Q5L0+uuv63vf+54uv/xyJSUl6YwzztBTTz0V8pxPPvlE48aN87pvwoQJ+uSTT1pzqGhlTXktmEaNGqWUlBSNHz9e//nPf1p5pGhr1dXVWr58uWbOnBm0Isrvhc4hnNeCJB0+fFgZGRlKT0/XRRddpG+++aYNR4nWMmbMGK1du1YFBQWSpK+++koff/yxJk6cGPQcfjd0TE15LZj4m6Fjqa2tVV1dnd+ypvj4eH388ccBz+H3QnCEdEiStm3bpr/97W/KzMzU6tWr9f/+3//T9ddfr2XLlgU9Z+/evUpOTva6Lzk5WZWVlTp27FhrDxmtpCmvhZSUFD3xxBN65ZVX9Morryg9PV3nnHOONmzY0IYjR2t77bXXVF5erunTpwc9JtjvBdYadizhvBaGDRumZ555Rv/85z+1fPlyOZ1OjRkzRrt27Wq7gaJV3HbbbZo8ebJOPvlkxcbG6owzztCcOXP0i1/8Iug5/M3QMTXltcDfDB1Tjx49NHr0aC1cuFDFxcWqq6vT8uXL9cknn2jPnj0Bz+H3QnCsSYckyel06nvf+55+//vfS5LOOOMMbdy4UU888YSmTZsW4dGhLTXltTBs2DANGzbMfXvMmDH67rvv9Kc//UnPPfdcm4wbrW/JkiWaOHGiUlNTIz0URFg4r4XRo0dr9OjR7ttjxozRKaecosWLF2vhwoVtMUy0kpdeekkrVqzQ888/rxEjRujLL7/UnDlzlJqayt8MnUxTXgv8zdBxPffcc5o5c6bS0tIUExOjrKwsTZkyRf/9738jPbR2h5AOSa53NYcPH+513ymnnKJXXnkl6Dn9+vVTSUmJ130lJSVyOByKj49vlXGi9TXltRDI97///aDTm9D+7NixQ7m5uXr11VdDHhfs90K/fv1ac3hoQ+G+FnyZVbatW7e20sjQVubOneuuoErSaaedph07dmjRokVBgxl/M3RMTXktBMLfDB3D4MGD9a9//UtHjhxRZWWlUlJSlJOTo5NOOing8fxeCI7p7pAknXXWWV4deCWpoKBAGRkZQc8ZPXq01q5d63XfmjVrvConaH+a8loI5Msvv1RKSkpLDg0RtHTpUiUlJXk1gwmE3wsdX7ivBV91dXX6+uuv+b3QARw9elRWq/efkDExMXI6nUHP4XdDx9SU10Ig/M3QsXTr1k0pKSkqKyvT6tWrddFFFwU8jt8LIRiAYRifffaZYbPZjPvuu8/YsmWLsWLFCqNr167G8uXL3cfcdtttxq9+9Sv37W3bthldu3Y15s6da2zevNn461//asTExBjvvvtuJL4FtJCmvBb+9Kc/Ga+99pqxZcsW4+uvvzZuuOEGw2q1Grm5uZH4FtDC6urqjAEDBhi33nqr39d+9atfGbfddpv79n/+8x/DZrMZDz30kLF582Zj/vz5RmxsrPH111+35ZDRShrzWliwYIGxevVq47vvvjP++9//GpMnTza6dOlifPPNN205ZLSCadOmGWlpacabb75pbN++3Xj11VeNvn37Grfccov7GP5m6Bya8lrgb4aO69133zXeeecdY9u2bcZ7771nnH766cYPfvADo7q62jAMfi80BiEdbm+88YZx6qmnGna73Tj55JONJ5980uvr06ZNM8aOHet13wcffGCMGjXKiIuLM0466SRj6dKlbTdgtJrGvhbuv/9+Y/DgwUaXLl2M3r17G+ecc47x/vvvt/Go0VpWr15tSDLy8/P9vjZ27Fhj2rRpXve99NJLxtChQ424uDhjxIgRxltvvdVGI0Vra8xrYc6cOcaAAQOMuLg4Izk52TjvvPOMDRs2tOFo0VoqKyuNG264wRgwYIDRpUsX46STTjLuuOMOo6qqyn0MfzN0Dk15LfA3Q8f14osvGieddJIRFxdn9OvXz7juuuuM8vJy99f5vRA+9kkHAAAAACBKsCYdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKIEIR0AAAAAgChBSAcAAAAAIEoQ0gEAAAAAiBKEdAAAAAAAogQhHQAAAACAKEFIBwAAQdXV1WnMmDG65JJLvO6vqKhQenq67rjjjgiNDACAjsliGIYR6UEAAIDoVVBQoFGjRumpp57SL37xC0nS1KlT9dVXX2n9+vWKi4uL8AgBAOg4COkAAKBBjzzyiO6++2598803+uyzz3T55Zdr/fr1Ov300yM9NAAAOhRCOgAAaJBhGPrJT36imJgYff311/rtb3+rO++8M9LDAgCgwyGkAwCAsHz77bc65ZRTdNppp2nDhg2y2WyRHhIAAB0OjeMAAEBYnnnmGXXt2lXbt2/Xrl27Ij0cAAA6JCrpAACgQevWrdPYsWP13nvv6d5775Uk5ebmymKxRHhkAAB0LFTSAQBASEePHtX06dP1//7f/9O5556rJUuW6LPPPtMTTzwR6aEBANDhUEkHAAAh3XDDDXr77bf11VdfqWvXrpKkxYsX6+abb9bXX3+tgQMHRnaAAAB0IIR0AAAQ1L/+9S9lZ2frww8/1I9+9COvr02YMEG1tbVMewcAoAUR0gEAAAAAiBKsSQcAAAAAIEoQ0gEAAAAAiBKEdAAAAAAAogQhHQAAAACAKEFIBwAAAAAgShDSAQAAAACIEoR0AAAAAACiBCEdAAAAAIAoQUgHAAAAACBKENIBAAAAAIgShHQAAAAAAKLE/wcZjc5vZbWC7QAAAABJRU5ErkJggg==\n"},"metadata":{}},{"output_type":"stream","name":"stdout","text":["amount: 19\n","amount_ae: 280\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}},{"output_type":"stream","name":"stdout","text":["\n","Оценка качества AE1\n","IDEAL = 0. Excess: 13.736842105263158\n","IDEAL = 0. Deficit: 0.0\n","IDEAL = 1. Coating: 1.0\n","summa: 1.0\n","IDEAL = 1. Extrapolation precision (Approx): 0.06785714285714287\n","\n","\n"]}]},{"cell_type":"code","source":["# построение областей покрытия и границ классов\n","# расчет характеристик качества обучения\n","numb_square = 20\n","xx, yy, Z2 = lib.square_calc(numb_square, data, ae2_trained, IREth2, '2', True)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":1000},"id":"c9GJJF6J0GuZ","executionInfo":{"status":"ok","timestamp":1762445967104,"user_tz":-180,"elapsed":3906,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"dff18ab6-46d1-43a9-ba5a-7b18ba119407"},"execution_count":27,"outputs":[{"output_type":"stream","name":"stdout","text":["\u001b[1m238/238\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 1ms/step\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}},{"output_type":"stream","name":"stdout","text":["amount: 19\n","amount_ae: 30\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}},{"output_type":"stream","name":"stdout","text":["\n","Оценка качества AE2\n","IDEAL = 0. Excess: 0.5789473684210527\n","IDEAL = 0. Deficit: 0.0\n","IDEAL = 1. Coating: 1.0\n","summa: 1.0\n","IDEAL = 1. Extrapolation precision (Approx): 0.6333333333333334\n","\n","\n"]}]},{"cell_type":"code","source":["# сравнение характеристик качества обучения и областей аппроксимации\n","lib.plot2in1(data, xx, yy, Z1, Z2)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":472},"id":"uLTA4xgzzzkL","executionInfo":{"status":"ok","timestamp":1762445983157,"user_tz":-180,"elapsed":1299,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"f281801d-7435-4e49-9ea1-e0dc04ed9201"},"execution_count":28,"outputs":[{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}}]},{"cell_type":"code","source":["test_points = np.array([\n"," [8.5, 8.5],\n"," [7.5, 7.5],\n"," [8.4, 7.6],\n"," [7.6, 8.4],\n"," [8.45, 7.55],\n"," [7.55, 8.45]\n","])\n","\n","# Сохраняем в файл\n","np.savetxt('data_test.txt', test_points)"],"metadata":{"id":"2tiFTq-VZy-y","executionInfo":{"status":"ok","timestamp":1762446712266,"user_tz":-180,"elapsed":377,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}}},"execution_count":29,"outputs":[]},{"cell_type":"code","source":["# загрузка тестового набора\n","data_test = np.loadtxt('data_test.txt', dtype=float)"],"metadata":{"id":"tt2BAUbLbn2G","executionInfo":{"status":"ok","timestamp":1762446731724,"user_tz":-180,"elapsed":41,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}}},"execution_count":30,"outputs":[]},{"cell_type":"code","source":["# тестирование АE1\n","predicted_labels1, ire1 = lib.predict_ae(ae1_trained, data_test, IREth1)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"aeXuvn5AbY8e","executionInfo":{"status":"ok","timestamp":1762446733825,"user_tz":-180,"elapsed":101,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"1afecb38-5985-40d2-81d3-93db3393d307"},"execution_count":31,"outputs":[{"output_type":"stream","name":"stdout","text":["\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 38ms/step\n"]}]},{"cell_type":"code","source":["# тестирование АE1\n","lib.anomaly_detection_ae(predicted_labels1, ire1, IREth1)\n","lib.ire_plot('test', ire1, IREth1, 'AE1')"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":900},"id":"3vOegourbzRP","executionInfo":{"status":"ok","timestamp":1762446737935,"user_tz":-180,"elapsed":1483,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"52ae8595-4467-43f6-d187-52a359d311b1"},"execution_count":32,"outputs":[{"output_type":"stream","name":"stdout","text":["\n","i Labels IRE IREth \n","0 [1.] [3.43] 3.07 \n","1 [0.] [2.03] 3.07 \n","2 [0.] [2.71] 3.07 \n","3 [0.] [2.85] 3.07 \n","4 [0.] [2.72] 3.07 \n","5 [0.] [2.88] 3.07 \n","Обнаружено 1.0 аномалий\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}}]},{"cell_type":"code","source":["# тестирование АE2\n","predicted_labels2, ire2 = lib.predict_ae(ae2_trained, data_test, IREth2)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"IJyd-BqScChe","executionInfo":{"status":"ok","timestamp":1762446754051,"user_tz":-180,"elapsed":90,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"f4ab06b1-e288-4b82-8a63-a990862692d4"},"execution_count":33,"outputs":[{"output_type":"stream","name":"stdout","text":["\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 40ms/step\n"]}]},{"cell_type":"code","source":["# тестирование АE2\n","lib.anomaly_detection_ae(predicted_labels2, ire2, IREth2)\n","lib.ire_plot('test', ire2, IREth2, 'AE2')"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":900},"id":"o_AJKMXTcNPI","executionInfo":{"status":"ok","timestamp":1762446756941,"user_tz":-180,"elapsed":986,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"bfac548b-0015-4085-ce65-fa265981add6"},"execution_count":34,"outputs":[{"output_type":"stream","name":"stdout","text":["\n","i Labels IRE IREth \n","0 [1.] [0.75] 0.4 \n","1 [1.] [0.66] 0.4 \n","2 [1.] [0.55] 0.4 \n","3 [1.] [0.58] 0.4 \n","4 [1.] [0.62] 0.4 \n","5 [1.] [0.65] 0.4 \n","Обнаружено 6.0 аномалий\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}}]},{"cell_type":"code","source":["# построение областей аппроксимации и точек тестового набора\n","lib.plot2in1_anomaly(data, xx, yy, Z1, Z2, data_test)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":472},"id":"iJEZxoSQiP16","executionInfo":{"status":"ok","timestamp":1762446765475,"user_tz":-180,"elapsed":970,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"da74cc12-dba3-4a52-9b8b-8d23bc5112a2"},"execution_count":35,"outputs":[{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}}]},{"cell_type":"code","source":["# загрузка выборок\n","train = np.loadtxt('WBC_train.txt', dtype=float)\n","test = np.loadtxt('WBC_test.txt', dtype=float)"],"metadata":{"id":"a4q9ZCFjS94H","executionInfo":{"status":"ok","timestamp":1762638382249,"user_tz":-180,"elapsed":749,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}}},"execution_count":5,"outputs":[]},{"cell_type":"code","source":["print('Исходные данные:')\n","print(train)\n","print('Размерность данных:')\n","print(train.shape)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"nccQpfVORHBA","executionInfo":{"status":"ok","timestamp":1762638383199,"user_tz":-180,"elapsed":51,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"e0b21bd0-a305-4d4e-fe97-f4e36bda51a6"},"execution_count":6,"outputs":[{"output_type":"stream","name":"stdout","text":["Исходные данные:\n","[[3.1042643e-01 1.5725397e-01 3.0177597e-01 ... 4.4261168e-01\n"," 2.7833629e-01 1.1511216e-01]\n"," [2.8865540e-01 2.0290835e-01 2.8912998e-01 ... 2.5027491e-01\n"," 3.1914055e-01 1.7571822e-01]\n"," [1.1940934e-01 9.2323301e-02 1.1436666e-01 ... 2.1398625e-01\n"," 1.7445299e-01 1.4882592e-01]\n"," ...\n"," [3.3456387e-01 5.8978695e-01 3.2886463e-01 ... 3.6013746e-01\n"," 1.3502858e-01 1.8476978e-01]\n"," [1.9967817e-01 6.6486304e-01 1.8575081e-01 ... 0.0000000e+00\n"," 1.9712202e-04 2.6301981e-02]\n"," [3.6868759e-02 5.0152181e-01 2.8539838e-02 ... 0.0000000e+00\n"," 2.5744136e-01 1.0068215e-01]]\n","Размерность данных:\n","(357, 30)\n"]}]},{"cell_type":"code","source":["print('Исходные данные:')\n","print(test)\n","print('Размерность данных:')\n","print(test.shape)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"tkfS44jzojR3","executionInfo":{"status":"ok","timestamp":1762638385220,"user_tz":-180,"elapsed":39,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"dc72c859-38ce-461a-d01e-452c9ce6d0d4"},"execution_count":7,"outputs":[{"output_type":"stream","name":"stdout","text":["Исходные данные:\n","[[0.18784609 0.3936422 0.19425057 0.09654295 0.632572 0.31415251\n"," 0.24461106 0.28175944 0.42171717 0.3946925 0.04530147 0.23598833\n"," 0.05018141 0.01899148 0.21589557 0.11557064 0.0655303 0.19643872\n"," 0.08003602 0.07411246 0.17467094 0.62153518 0.18332586 0.08081007\n"," 0.79066235 0.23528442 0.32132588 0.48934708 0.2757737 0.26905418]\n"," [0.71129727 0.41224214 0.71460162 0.56776246 0.48451747 0.53990553\n"," 0.57357076 0.74602386 0.38585859 0.24094356 0.3246424 0.07507514\n"," 0.32059558 0.23047901 0.0769963 0.19495599 0.09030303 0.27865126\n"," 0.10269038 0.10023078 0.70188545 0.36727079 0.72010558 0.50181872\n"," 0.38453411 0.35044775 0.3798722 0.83573883 0.23181549 0.20136429]\n"," [0.38567845 0.67974298 0.36569691 0.24432662 0.27597725 0.0818048\n"," 0.10979381 0.1361332 0.4 0.06276327 0.12913272 0.27996818\n"," 0.10771333 0.07205481 0.17398103 0.09026046 0.06285354 0.17213487\n"," 0.33247031 0.02954549 0.33191035 0.66337953 0.29727576 0.1833956\n"," 0.28811992 0.06924353 0.1235623 0.22594502 0.32879953 0.04335563]\n"," [0.3956174 0.15387217 0.40570797 0.23792153 0.49354518 0.59542359\n"," 0.4866448 0.48489066 0.73787879 0.42881213 0.11852254 0.07721888\n"," 0.1237808 0.07117696 0.17255329 0.38324271 0.16277778 0.42659595\n"," 0.40578038 0.12089051 0.36072572 0.18816631 0.37198068 0.19556134\n"," 0.44792974 0.55118317 0.50359425 0.82233677 0.6114725 0.29135511]\n"," [0.49595343 1. 0.48103103 0.32962884 0.41067076 0.33869088\n"," 0.33200562 0.43792247 0.37828283 0.20429655 0.15393808 0.109596\n"," 0.10578146 0.07881613 0.10697896 0.19225223 0.06570707 0.26027657\n"," 0.06160297 0.06440446 0.51867663 0.87553305 0.45216395 0.30053087\n"," 0.43142046 0.33589467 0.25886581 0.70996564 0.25389316 0.1962482 ]\n"," [0.59676274 0.28542442 0.60058047 0.45408271 0.53597544 0.45156739\n"," 0.58762887 0.63916501 0.48838384 0.22872789 0.22629006 0.15200672\n"," 0.19012392 0.16859981 0.07968182 0.1540992 0.10174242 0.24682705\n"," 0.12632971 0.08371682 0.66880114 0.38299574 0.620001 0.50304758\n"," 0.47962755 0.34666395 0.54392971 0.77216495 0.40961955 0.24393283]\n"," [0.34118983 0.47683463 0.33916108 0.19817603 0.37916403 0.34114472\n"," 0.26124649 0.32117296 0.59343434 0.30265375 0.11196813 0.3281471\n"," 0.13084861 0.04519628 0.31162253 0.2617238 0.09313131 0.30820231\n"," 0.5221478 0.13381148 0.31768054 0.60847548 0.32167937 0.15387829\n"," 0.55953246 0.36732932 0.29904153 0.60893471 0.62270846 0.31195068]\n"," [0.76809125 0.5836997 0.75813696 0.64750795 0.38331678 0.45647506\n"," 0.45688847 0.61481113 0.42878788 0.27653749 0.34274851 0.13333186\n"," 0.30580031 0.2782939 0.16028147 0.19811037 0.11356061 0.32506156\n"," 0.11282152 0.07456158 0.82106012 0.59941365 0.77488919 0.67803775\n"," 0.50802351 0.37382969 0.46485623 0.89106529 0.30317366 0.20812016]\n"," [0.39703725 0.44132567 0.38981411 0.24801697 0.35542114 0.25832771\n"," 0.2628866 0.37191849 0.33181818 0.23188711 0.07293138 0.10632514\n"," 0.06210244 0.04228256 0.27769657 0.16664163 0.11441919 0.33396477\n"," 0.2367873 0.04308832 0.30238349 0.36833689 0.28432691 0.15869544\n"," 0.36010038 0.16727304 0.22731629 0.50721649 0.19534792 0.08684245]\n"," [0.50257939 0.46060196 0.51972911 0.35503712 0.36345581 0.55524201\n"," 0.5004686 0.49801193 0.32121212 0.49978939 0.29599855 0.24416549\n"," 0.23766668 0.18322444 0.17177142 0.51069487 0.16643939 0.43777231\n"," 0.12450048 0.35947929 0.48523657 0.44909382 0.46411674 0.30765828\n"," 0.32708182 0.4377662 0.41253994 0.68591065 0.14508181 0.44182081]\n"," [0.29007525 0.19783564 0.30004837 0.16402969 0.78694592 0.48193362\n"," 0.48523899 0.47718688 0.43686869 0.56781803 0.10114068 0.12455799\n"," 0.0778872 0.05203232 0.18523303 0.20179049 0.13820707 0.26292858\n"," 0.10677098 0.21430842 0.29811455 0.27665245 0.27884855 0.15778608\n"," 0.75962491 0.37121014 0.50926518 0.68247423 0.31184703 0.56054047]\n"," [0.25931185 0.48461278 0.27765877 0.14099682 0.59555836 0.67548003\n"," 0.53256795 0.42460239 0.48989899 0.68386689 0.06739091 0.27378006\n"," 0.06040616 0.03200983 0.18479111 0.52511491 0.1955303 0.2712635\n"," 0.14082287 0.31733068 0.25471363 0.76385928 0.23527068 0.1293256\n"," 0.75368157 1. 0.88258786 0.75945017 0.55213877 1. ]\n"," [0.3449761 0.43422388 0.34538042 0.20627784 0.46194818 0.29452181\n"," 0.34278351 0.30511928 0.43737374 0.20766639 0.03302553 0.32947313\n"," 0.05362107 0.02192388 0.14957338 0.17708114 0.11729798 0.24171245\n"," 0.09326279 0.09884886 0.26182853 0.59301706 0.26838986 0.13347916\n"," 0.44132603 0.23868013 0.33817891 0.46804124 0.22333925 0.1867375 ]\n"," [0.39372427 0.526209 0.40501693 0.24979852 0.50167013 0.46107601\n"," 0.3943299 0.43494036 0.43737374 0.32518955 0.11859497 0.14405057\n"," 0.12915233 0.0685434 0.1196587 0.21268063 0.09030303 0.20515249\n"," 0.13786796 0.07159045 0.43898968 0.65804904 0.49250461 0.26636846\n"," 0.61368289 0.56631836 0.50599042 0.69553265 0.48531441 0.28676374]\n"," [0.41265559 0.35847142 0.39672448 0.26430541 0.39126117 0.21044721\n"," 0.15447516 0.25790258 0.28181818 0.11647009 0.09357233 0.17454915\n"," 0.07769872 0.06383662 0.09902437 0.15304774 0.04934343 0.1850161\n"," 0.10677098 0.05303815 0.43329776 0.554371 0.39289805 0.26636846\n"," 0.46377864 0.31765482 0.23178914 0.52955326 0.36901242 0.20510298]\n"," [0.55132756 0.52079811 0.55980927 0.40063627 0.48542024 0.51935464\n"," 0.54334583 0.61829026 0.56717172 0.25294861 0.26043817 0.24438649\n"," 0.22697074 0.18341122 0.15416256 0.23648872 0.13121212 0.21935973\n"," 0.17149772 0.12662549 0.54144433 0.58608742 0.54828428 0.36492332\n"," 0.51462722 0.38653938 0.48985623 0.63505155 0.37039227 0.28059819]\n"," [0.35964788 0.39972946 0.37053417 0.21264051 0.47639253 0.51352678\n"," 0.33388004 0.43653082 0.6020202 0.40606571 0.05178345 0.13768564\n"," 0.06375159 0.02661198 0.09310943 0.21253042 0.06770202 0.25610911\n"," 0.09368492 0.0972942 0.34471718 0.56476546 0.35853379 0.17491644\n"," 0.53707984 0.61803029 0.44241214 0.92817869 0.53203233 0.4752722 ]\n"," [0.18784609 0.3936422 0.19425057 0.09654295 0.632572 0.31415251\n"," 0.24461106 0.28175944 0.42171717 0.3946925 0.04530147 0.23598833\n"," 0.05018141 0.01899148 0.21589557 0.11557064 0.0655303 0.19643872\n"," 0.08003602 0.07411246 0.17467094 0.62153518 0.18332586 0.08081007\n"," 0.79066235 0.23528442 0.32132588 0.48934708 0.2757737 0.26905418]\n"," [0.72360263 0.33682787 0.7532997 0.57921527 0.72194638 0.78958346\n"," 0.99906279 0.90606362 0.75555556 0.43028644 0.39960167 0.26184583\n"," 0.437874 0.30481623 0.16323894 0.63409139 0.26262626 0.46978594\n"," 0.32698261 0.1431049 0.7282106 0.42617271 0.77887345 0.53450649\n"," 0.65330516 0.65237555 0.76741214 1. 0.49083383 0.28105733]\n"," [0.52103744 0.0226581 0.54598853 0.36373277 0.59375282 0.7920373\n"," 0.70313964 0.73111332 0.68636364 0.60551811 0.35614702 0.12046941\n"," 0.3690336 0.27381126 0.15929565 0.35139844 0.13568182 0.30062512\n"," 0.31164518 0.18304244 0.62077552 0.14152452 0.66831017 0.45069799\n"," 0.60113584 0.61929156 0.56861022 0.91202749 0.59846245 0.41886396]\n"," [0.32367836 0.49983091 0.33542948 0.1918982 0.57389185 0.45616833\n"," 0.31794752 0.33593439 0.61363636 0.47198821 0.13166757 0.25808876\n"," 0.10446214 0.06023183 0.27082979 0.27268904 0.08777778 0.30611858\n"," 0.23158102 0.21074997 0.28744219 0.5575693 0.27685642 0.14815179\n"," 0.71471967 0.35830641 0.27004792 0.52268041 0.41119653 0.41492851]]\n","Размерность данных:\n","(21, 30)\n"]}]},{"cell_type":"code","source":["# обучение AE3\n","patience = 20000\n","ae3_trained, IRE3, IREth3 = lib.create_fit_save_ae(train,'out/AE3.h5','out/AE3_ire_th.txt', 50000, False, patience, early_stopping_delta = 0.00001, early_stopping_value = 0.00007 )\n","lib.ire_plot('training', IRE3, IREth3, 'AE3')"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":1000},"id":"EQrNUcwxTVYf","executionInfo":{"status":"ok","timestamp":1762647596804,"user_tz":-180,"elapsed":853855,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"e21548aa-3a6d-4770-8402-81fe0f4f143e"},"execution_count":27,"outputs":[{"output_type":"stream","name":"stdout","text":["Задать архитектуру автокодировщиков или использовать архитектуру по умолчанию? (1/2): 1\n","Задайте количество скрытых слоёв (нечетное число) : 9\n","Задайте архитектуру скрытых слоёв автокодировщика, например, в виде 3 1 3 : 24 22 20 17 15 17 20 22 24\n","\n","Epoch 1000/50000\n"," - loss: 0.000864\n","\n","Epoch 2000/50000\n"," - loss: 0.000545\n","\n","Epoch 3000/50000\n"," - loss: 0.000415\n","\n","Epoch 4000/50000\n"," - loss: 0.000303\n","\n","Epoch 5000/50000\n"," - loss: 0.000226\n","\n","Epoch 6000/50000\n"," - loss: 0.000217\n","\n","Epoch 7000/50000\n"," - loss: 0.000207\n","\n","Epoch 8000/50000\n"," - loss: 0.000186\n","\n","Epoch 9000/50000\n"," - loss: 0.000167\n","\n","Epoch 10000/50000\n"," - loss: 0.000113\n","\n","Epoch 11000/50000\n"," - loss: 0.000102\n","\n","Epoch 12000/50000\n"," - loss: 0.000095\n","\n","Epoch 13000/50000\n"," - loss: 0.000090\n","\n","Epoch 14000/50000\n"," - loss: 0.000088\n","\n","Epoch 15000/50000\n"," - loss: 0.000086\n","\n","Epoch 16000/50000\n"," - loss: 0.000079\n","\n","Epoch 17000/50000\n"," - loss: 0.000078\n","\u001b[1m12/12\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 12ms/step\n"]},{"output_type":"stream","name":"stderr","text":["WARNING:absl:You are saving your model as an HDF5 file via `model.save()` or `keras.saving.save_model(model)`. This file format is considered legacy. We recommend using instead the native Keras format, e.g. `model.save('my_model.keras')` or `keras.saving.save_model(model, 'my_model.keras')`. \n"]},{"output_type":"stream","name":"stdout","text":["\n","\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"iVBORw0KGgoAAAANSUhEUgAABTYAAALXCAYAAAC3lR+RAAAAOnRFWHRTb2Z0d2FyZQBNYXRwbG90bGliIHZlcnNpb24zLjEwLjAsIGh0dHBzOi8vbWF0cGxvdGxpYi5vcmcvlHJYcgAAAAlwSFlzAAAPYQAAD2EBqD+naQABAABJREFUeJzs3XmcU9X9//F3MjPMMKwisojoqFhxRRSw7huKW1tatWr9VqTVLsq3Wr5dpD/rUm1Ri9a9Vq2ibVVat1q1KkVxxSICLogLKrIvww4DsyT5/TEkubm5N7k3ucm9N/N6Ph48yGRu7pzcnNzlcz+fcyKJRCIhAAAAAAAAAAiRqN8NAAAAAAAAAAC3CGwCAAAAAAAACB0CmwAAAAAAAABCh8AmAAAAAAAAgNAhsAkAAAAAAAAgdAhsAgAAAAAAAAgdApsAAAAAAAAAQofAJgAAAAAAAIDQIbAJAAAAAAAAIHQIbAIAgA5l/vz5uvjii7XvvvuqW7duikQiqX8LFy70u3kd0uTJk1OfwQUXXFDWv238/AEAABAuBDYBAOgAjj322FTw5uqrr7ZdzhjkMf+rqqpSz549tddee+mss87Sfffdp82bNxfUBrf/vAp2Pf300xo6dKj++Mc/av78+a7aDwD/+c9/MvZN++yzj+t1XH311QXvCxsaGizX2draqhkzZujmm2/WmDFjdOihh6p///7q3Lmzampq1Lt3bw0bNkwXX3yxXnvttSK3AgAAwVHtdwMAAEA4xONxbdiwQRs2bNCCBQv02GOPacKECbrnnnv0zW9+0+/m5bV582ZdcMEFam5uliT1799fRx55pHbaaadUtl737t39bGJRrr76al1zzTWSpKuuuipnABsIqoaGBn355ZeSpC+++MI2kOeXBx98MOPnjz76SDNnztSIESN8alG7f/7znzrrrLNsf79mzRqtWbNG77zzjv74xz/qhBNO0P33369dd921jK0EAMB7BDYBAICl0aNHa8CAAamf4/G4GhsbNWPGDC1ZskSS1NjYqDPPPFOPPfaYq+Dm8OHDXQUCvvrVrzpvuI1nnnlG69atkyTtt99+evvtt9W5c+ei1wugY9i0aZOeeOKJrOcffPDBggObO++8s6t954477ph3mU6dOmmfffbRoEGD1KtXLyUSCa1YsUJvvfWWGhsbJUnTpk3TkUceqddff53gJgAg1AhsAgAAS5deeqmOPfbYrOfj8bgefPBB/fjHP1Zzc7Pi8bh+/OMfa9SoUaqvr3e07lNPPbXsGYWzZ89OPT733HMJagbIBRdcUPaxNZMSiYQvfxfh89hjj6mpqUmS1LlzZ23dulWS9Oijj+oPf/iDOnXq5Hqde+21l+64446i29a/f39dccUVOvnkkzVs2DDV1tZmLdPW1qaHHnpI48aN09atW7V48WJdfPHFeuaZZ4r++wAA+IUxNgEAgCvRaFRjx47VjTfemHpu5cqVeuqpp/xrlAPJbE2pPQgAAG4Yy9B/+ctfqm/fvpKktWvX6l//+pdfzZIkHXHEEbr22mt1xBFHWAY1Jam6ulrf+973dPfdd6eee+6551IZ+AAAhBGBTQAAUJAf/vCHqqurS/386quv+tia/FpbW1OPo1FOgQA4t3DhwtQ+LhKJaMyYMTr33HNTvzePvRlkxoz1RCKhuXPn+tsgAACKwFk9AAAoSG1tbcaMwMuWLfOxNdaMsw8bAw9jx47Nmm148uTJluvYvHmzbrvtNo0aNUq77LKL6urqtMMOO2j//ffXuHHj9N///tdRW4x/K+ndd9/VpZdeqv3331+9evVSJBLR6NGjXb3H5GzzyYmDJOmaa65xNLv8BRdckPX+169fr1tvvVVHH320BgwYoOrqakUiEa1fvz7jtatWrdIDDzygMWPGaOjQoerVq5dqamrUs2dPDR48WGPHjtULL7zg6D1MnjzZto1J06dPTy1jHCLhpZde0jnnnKM99thDdXV12nHHHXX00UfrjjvuyAhm27H6XMwaGhpSyyxcuFCStGTJEv3617/WkCFD1LNnT3Xp0kWDBw/W//7v/6Ymv3Fq6tSpOuecc7Trrruqrq5O/fv311FHHaU777xTW7ZskZTZl70axqGxsVGTJk3SyJEjtfPOO6uuri71Ge63334688wzdfPNN+uLL75wtL5p06bpRz/6kfbbbz/16tVLtbW12nnnnTVq1CjdcccdqdJts4ULF6bem3Hb7b777pb9ePr06V68fVceeuih1LAFRx55pBoaGvTd73439ft///vfWrVqVdnbVYiamhr16NEj9fOmTZt8bA0AAMVhjE0AAFAw4ziV27Zt87ElpfHMM8/ooosu0ooVKzKeb25u1vr16zVv3jzdeeed+s53vqN7773X8RijUnug6rrrrlMsFvO62QV74403dO6552rx4sU5l7vttts0fvx4y7Zv2LBBGzZs0Mcff6zJkyfr+OOP19///ndHk5640dLSonHjxunee+/NeL65uVmvvfaaXnvtNT3wwAN64YUX1Lt3b0//9lNPPaULLrhAGzZsyHj+448/1scff6w///nP+sc//qHTTjst73v4/ve/r7/+9a8Zz69YsUIrVqzQ66+/rjvvvFNPPvmkp+2X2mfRHjt2bMYQDUnJz/DDDz/U448/rptvvjlnufLixYt1/vnnWwYcly9fruXLl+vFF1/UxIkT9eijj+qoo47y8q2UxUMPPZR6nAxoHnzwwdpvv/00b948tbW16eGHH9Zll13mUwuda2xs1OrVq1M/B23meQAA3CCwCQAACmbM0kyONxckI0aM0CWXXCKpPZvso48+kiSdcMIJGjx4cMayxuxTSZoyZYrOO++8VPCuqqpKRx55pAYNGqTNmzfrtddeS73/hx9+WF988YVeeumljPJ8O7///e9TGZZ77rmnRowYofr6ei1cuFA1NTWu3uM3v/lN7b///po5c6befvttSfazzueaXX7BggW67LLLtGHDBnXr1k1HH320dt55Z61bty5rmIFly5altssee+yhffbZRzvttJPq6uq0fv16vf/++5o3b56k9ozKkSNH6q233rId+68QP/jBD/Tggw8qGo3q0EMP1eDBgxWPx/XWW2/p448/ltQ+YdT555+v5557zrO/+5///Ec/+tGPFIvFtOuuu+qwww5T9+7d9cUXX2j69Olqa2vT1q1b9e1vf1sffPCBdt99d9t1nXvuuRmzbPfq1UvHHnusevXqpcWLF+uVV17R/Pnzddppp+nrX/+6Z+9h1qxZOvPMM9XW1iap/QbFV7/6VTU0NKi2tlYbN27UZ599pvfffz81WY6d+fPn64QTTtDy5csltWfAHnzwwdp3333VuXNnLV26VK+++qo2bdqkZcuW6cQTT9S///1vHXfccal1dO/ePfU9feihh1IZhOeff766deuW9TcHDBjgyXZw6vXXX9dnn30mqT1T/ayzzkr97rvf/a4uv/xySe3l6EEPbCYSCf3iF79IfX933XVXDR8+3OdWAQBQhAQAAKh4xxxzTEJSQlLiqquusl0uuYykxMsvv5xznR9//HHG8nfccYcnbSiVMWPGpP7+Aw88kHPZBQsWJLp27ZpafsSIEYlPP/00Y5lYLJa46aabEtFoNLXc//7v/9qu07itqqurEz169Eg8+eSTWctt27atkLeXuOqqq1xvX+M2qa6uTkhKXHLJJYlNmzZlLNfS0pKIxWKpn//85z8nbr/99sSSJUts1/3uu+8mhg0bllr/tddea7vsAw88kFpuzJgxlsu8/PLLqWVqa2sTkhLDhw9PzJ8/P2O5eDyeuOWWWzK29yuvvGL7t43L2dltt90y/naXLl0Sf/nLXxLxeDxjuQ8++CAxYMCA1LJjx461Xed9992X8bf/7//+L+uzX7lyZeKUU07JeM9efH9Gjx6dWtcZZ5yRWLt2reVyW7duTTz77LOJH/7wh5a/37x5c2KfffZJreuUU05JLFiwIGu5DRs2JH784x+nluvfv39i/fr1lus0busvvvii4PfopQsvvDDVpjPPPDPjd4sXL87YB7z77rt512f8rh5zzDElanVaa2trYunSpYnHH388Yz9cU1OTePbZZ0v+9wEAKCUyNgEAgGttbW269NJLUz93795d55xzjuPXP/fcc2psbHS8/G9+8xv16tXLVRuL8Zvf/EabN2+WJA0aNEgvvvhixph0UvsEROPHj1ckEtH48eMlSXfeead++tOf5szSk6R4PK6nn35aRx99dNbvvMxqdKOtrU0XXnih7rjjjqzfmbNIv/e97+Vd34EHHqj//Oc/Gjx4sFasWKG77rpLEyZMUFVVVdFtbW5u1l577aWXXnpJXbt2zfhdJBLRpZdeqtdff12PPfaYJOmRRx6x3NaFaGlp0VNPPaWTTz4563f77bef/vSnP+n000+XJP3jH//QPffco+rqzFPuWCymq666KvXzD3/4Q02aNClrfX369NFTTz2lI488MpWN64XXXntNUntfmzx5ctY2TKqrq9Opp56qU0891fL3N998s+bPny+pPXP4scces5yYq3v37rrrrrvU1NSkBx98UMuXL9fdd9+tX/7ylx69o9LZunWr/v73v6d+No6rKUm77LKLjj32WL300kuS2rM2b7rpJsfr//TTTzVu3DjHy3/3u9/VoYcemne5QYMGpbJMrfTv31+PPPKIjjnmGMd/GwCAICKwCQAAHInH42psbNQbb7yh66+/XjNnzpQkVVdX6/7773c1huLbb7/tKlDzs5/9rGyBzfXr12vKlCmpn2+88casoKbRpZdeqj//+c+aN2+e4vG47rnnHk2cODHn3zjzzDM9C7R5pa6uTjfeeKOn6+zRo4e++c1v6o9//KOWL1+uDz/8UAcccIAn677++uttA3JSe/A1GdhM9lUvnH766ZZBzaRTTz1V/fr104oVK7R582bNnz8/6z0///zzWrp0qSSpS5cuuv76623X16lTJ02aNMnTANTGjRslSfX19Tm3YS6tra2pIHhtba3uvvtuy6Cm0e9+97vUJDx/+9vfQhHYfOqpp1Lba8cdd9Qpp5yStcx3v/vdVGDzb3/7m2644YasYLadZcuW6c4773TcnmHDhjkKbOby/e9/X7feequ6dOlS1HoAAAgCApsAAMCScQw8O3vvvbduuummvJOkhMmbb76p5uZmSVLv3r31ta99Lefy0WhU3/ve9/R///d/kqSXX345799wk91aLieddJJ22GEH169btWqV3nrrLc2fP1/r1q3Tli1bUrNHS+3jOSbNnTvXk8BmXV1d3s9l6NChqcfJmcy9YBxf0UokEtGQIUNSE04tXLgw6z0bJ9k57bTT1LNnz5zrPProo7Xrrrtq0aJFBbXZbODAgfr888+1bt06TZkyRWeffbbrdcyaNSs1C/gJJ5ygPn365H3NzjvvrMGDB2v+/Pn64IMPtGHDhpw3DYLgwQcfTD0+55xzLMfAPfPMM3XJJZeoqalJK1eu1AsvvOD7PvG73/1uaoKgbdu2admyZfrvf/+rtWvX6s9//rOee+453XDDDVkZqAAAhA2BTQAAUJC+ffvqoYcespykJp+rrrpKV199tfeN8sCcOXNSj0eMGOEo8+qII47IeH0ikVAkErFd/pBDDimukSXgtk0ffvihfvnLX+rf//6345nd3Qw/kMvee++dd5IlYwZxMuPOC04Cs/n+9ty5c1OPnWbfjRgxwrPA5re//e1Ului5556bCm4ed9xxjgKUkjRjxozU4yVLljgup16/fr2k9klslixZEujA5rJly/Sf//wn9bNdELBr164aPXq0Hn74YUntwVCngc1jjjnGcjb5YhmHOkhqaWnRX/7yF/3f//2fli9frvPPP18LFy7Ur3/9a8//PgAA5UJgEwAAWBo9enTG7MNr1qzRZ599liohX7lypY466ig9/vjjqTEFK0Eyy0mSdtttN0evaWhoSD1uaWnRpk2b1L17d9vld9ppp4LbVypu2vTCCy/oG9/4Riqz1ankbNfFchIMMwY+k7N/+/G3W1tbs35v7GMDBw509Hd32WUXR8s5ccUVV2j69Ol66623lEgk9OSTT+rJJ5+UJO2111466qijdMIJJ+hrX/ua5azkUnvQL+m9997Te++957od69atK+wNlMlf//rXVNB+r732yhmE/u53v5sKbD799NNat25dQRnQpdSpUyd9//vf1wEHHKAjjzxSra2tuuqqq3T88cdn3JwBACBMcg+EAwAAOqxLL71Ud9xxR+rfI488opkzZ+rdd9/VkCFDJLUH8c4999yck1SETXLSIEmOx6AzL5cvgNe5c2f3DSsxp21avXq1zj777FRQc7fddtPEiRP1+uuva9myZWpqalI8HlcikVAikcjIHIvH4560NVc2bKl58beNfay+vt7RawodC9NKly5d9Morr+j3v/99RlBeap/M5v7779d5552nfv366Re/+IW2bt2atY4NGzYU3Q4vA86lYCxD/5//+Z+cy5544onq16+fpPbJrYzj9AbNiBEjdP7550tqz5z9wx/+4HOLAAAoHIFNAADgyoEHHqgXX3wxlc25efNmXXjhhT63yjvGANKWLVscvca8nF2WWyW49957U0GtIUOG6L333tPll1+uI444Qv3791fnzp0zgn9eZWlWEmMfa2pqcvQap33RqU6dOulnP/uZPv/8c82dO1e33XabzjnnnIws7aamJv3+97/XcccdlxXcNAbzf/KTn6QC2W7+HXvssZ6+Jy/NmjVLH374Yernq666SpFIxPZfdXV1alxVKTMoGkQnnnhi6vEbb7zhY0sAACgOgU0AAOBanz59dPvtt6d+nj59up599lkfW+QdY0m20zENjZPTdOrUqaIDm9OmTUs9vuKKK3KW3EvSl19+WeomhU7v3r1Tj5csWeLoNU6Xcys52dH//u//6pFHHtGSJUs0e/ZsjR07NrXMf//736yZu/v27Zt6bAzoVYpiA5NvvfWWPvnkE49a4z1jmfyaNWt8bAkAAMVhjE0AAFCQb37zmzriiCNS2T5XXHGF7zMBe8E4m/bMmTMVi8VUVVWV8zVvvvlmxuv9KJUu1980jq2YbyKdWCxGNpiFgw46KBUg/u9//+voNTNnzixlkzIMHTpU999/v6qqqnTfffdJah838mc/+1lqGeN4k2+++WbeCbOc8nOYgaSWlhY98sgjqZ/33nvvvDPXJ3366adau3atpPbg6G9/+9tSNLFoy5cvTz3u1auXjy0BAKA4ZGwCAICCGWc2nzt3rp5++mn/GuORww8/XLW1tZLax5PMl4kaj8f1wAMPpH4+/vjjS9o+O3V1danHVhPWeCUaTZ8+5iujfuqppyoym69YxhLsZ599Nu94la+//rovma9f//rXU49XrlyZ8bsjjjgiFexbsmSJ/vWvf3nyN8vVj3N59tlnU1mM1dXVevXVV/XWW285+verX/0qtZ6//OUvno0r67Vnnnkm9XifffbxsSUAABSHwCYAACjYyJEjdfjhh6d+vu6663xsjTd69uyps88+O/Xzz3/+85zjRN5xxx16//33JbUH/X7wgx+UvI1Wdtxxx9TjpUuXluzv7LHHHqnHuQLZq1ev1k9/+tOStSPMTj75ZO28886S2seoNQbDzFpaWjIyJYvV3NycMXlRLosXL0497tOnT8bvamtrddlll6V+vvjii131O3OgNKlc/TgXYxn6iSeemPXeczn33HNTwf/Fixfr5Zdf9rx9Zm1tba4mc3ruuef0+OOPp34+44wzStEsAADKgsAmAAAoypVXXpl6/Pbbb+v555/3sTXeuPLKK1MTvHzyyScaNWqUPv/884xl4vG4br31Vo0fPz713CWXXJI1y3S57L///qnHL774oiezVlv52te+lno8ceJE/fWvf81aZvbs2TrmmGO0ePFixzPLdyTV1dUZ2c533XWXfvnLX6qlpSVjudWrV+uMM87Qf//731QWcbGWL1+ugQMH6mc/+5lmzZplu9zUqVMzZrQ/5ZRTspb5v//7P+23336S2oOQw4YN0z/+8Q/bLMXGxkbdc889Ovjgg/X73//echljP/7HP/7h6D1Nnjw5YyIf45i3bjU2Nuq5555L/Xzeeee5ev3OO++s4447LvVzOSYR2rx5s3bffXddeeWV+vjjj22XW7duna677jp961vfUiKRkCQNGjRIF110UcnbCABAqTDGJgAAKMqoUaN06KGHpsYKvPbaa3XyySfnfM1zzz2nxsZGx3+jvr5eN954Y1HtdGPPPffUfffdp/POO0+xWEwzZszQ3nvvraOOOkp77rmnNm/erNdeey0jo+yrX/1qWdtoNmLECA0cOFCLFy/W8uXLNXjwYJ100knq3bt3atzC4cOHZ2SjFmLMmDG66aab9Mknn6i5uVnf/e539bvf/U5DhgxRXV2dPvjgg1TAbMiQIRo1apSv2yWoLrzwQj377LP65z//KUm68cYb9ec//1nHHnusevXqpSVLlujll1/Wtm3btMcee+gb3/iG/vCHP0jKHA6gEOvXr9dNN92km266Sb169dLQoUM1YMAA1dXVadWqVXrvvfcyAvlf+cpXdOmll2atp2vXrnr66ac1cuRIffHFF1qxYoW+/e1vq3fv3vrqV7+qfv36KZFIaO3atfrwww/16aefpoKedkM2nHHGGfrTn/4kqT3g+8477+jggw9WfX19apkf//jH2nPPPYvaBnYefvjhVAl8ly5dNHr0aNfrOO+881JjqD7xxBO66667UjdKzD799FONGzfO1fonTJiQMXu91B60vPbaa3Xttddq55131oEHHqg+ffqovr5emzdv1oIFCzR79uyM4Hm/fv309NNPexY0BwDADwQ2AQBA0a688srUxEFvvvmmpk2bphNOOMF2+bfffltvv/224/X36NGj7MGxs88+W126dNGFF16olStXqq2tTS+//LJlaem5556r++67L2N8wHKLRqO66667dMYZZ6ilpUUrVqzQQw89lLHMmDFjig5s1tbW6l//+pdOOeWUVPBr/vz5mj9/fsZyRxxxhKZMmaJ77723qL9XqSKRiKZMmaILLrhAjz76qKT22amNJcJS+/iHTz75ZMZnmW8m+lxqampUW1ur5uZmSdLatWszZro3O/bYY/XII4/YZt7usccemjVrln70ox/pscceUyKRUGNjY8YYjmY9e/a0nXjqxBNP1LnnnpuavOe///1v1gRLp59+eskCm8YMy9GjRxeUcXzGGWfo4osv1rZt27RlyxY99thjuuCCCyyXXbZsWdaM8/lceOGFGYHNaDSq6upqtbW1pdZpnOTLyre+9S3ddtttWQFSAADChsAmAAAo2qmnnqphw4alMvV+85vf5AxshsXpp5+uBQsW6P7779czzzyjefPmqbGxUZ07d06VnJ5//vkZM0T76fTTT9esWbN055136vXXX9eiRYu0efPmVNmpV77yla9ozpw5uvPOO/XEE0/o448/VktLi/r166cDDjhA3/nOd/Ttb38772zyHV1tba0eeeQRjR07Vvfdd59mzJihVatWaYcddtCgQYN0zjnnaOzYserSpUtqpm1JjmfotjJgwACtWbNGL730kl577TW98847WrBggVavXq2WlhZ169ZNu+22Wyq7d+TIkXnX2atXL/3973/XBx98oEceeUTTp0/XF198oTVr1igajapnz54aNGiQDj74YI0cOVInnnhizpsAf/vb33T66afrkUce0dy5c9XY2Kht27YV/J6d+uCDDzR79uzUz27L0JO6d++ur33ta6lS+smTJ9sGNr3QvXt3rVmzRv/5z3/0xhtvaM6cOfr888+1evVqNTc3q0uXLtphhx2033776dBDD9V3vvMdDRo0qGTtAQCgnCIJr890AQAAAHjqiCOO0JtvvilJeuuttwITTAcAAPATgU0AAAAgwL788kvtueeeisVi6tSpkzZs2ODrsAcAAABBwazoAAAAQEAlEgldeumlisVikqRvfvObBDUBAAC2I7AJAAAA+ODKK6/UrbfeqsbGRsvfL1y4UN/85jdTM6dXVVXpZz/7WTmbCAAAEGhMHgQAAAD4YNGiRbr22mv1s5/9TAcccIAGDx6sHj16aPPmzfroo480Z86cVKamJF1xxRUaNmyYjy0GAAAIFgKbAAAAgI/a2to0Z84czZkzx/L3nTt31m9+8xuyNQEAAEyYPAgAAADwwfr16/XPf/5TL730kubNm6fVq1ersbFRsVhMvXr10t57760TTjhB3//+99W/f3+/mwsAABA4BDY9FI/HtWzZMnXr1k2RSMTv5gAAAAAAAAChkkgktGnTJu28886KRnNPD0QpuoeWLVumgQMH+t0MAAAAAAAAINQWL16sXXbZJecyBDY91K1bN0ntG7579+4+t8Ybra2tevHFF3XSSSeppqbG7+agA6HvwQ/0O/iBfge/0PfgB/od/EC/g1/oe4XZuHGjBg4cmIqz5UJg00PJ8vPu3btXVGCzvr5e3bt350uIsqLvwQ/0O/iBfge/0PfgB/od/EC/g1/oe8VxMsxj7kJ1AAAAAAAAAAggApsAAAAAAAAAQofAJgAAAAAAAIDQIbAJAAAAAAAAIHQIbAIAAAAAAAAIHQKbAAAAAAAAAEKHwCYAAAAAAACA0Kn2uwFol0gk1Nraqng87ndTMrS2tqq6ulrbtm1TLBbzuzkdSlVVlWpqavxuBgAAAAAAQCAR2PRZS0uLVq1apaampkAGDhOJhPr166fFixcrEon43ZwOp7a2Vr1791b37t39bgoAAAAAAECgENj0UVNTkxYvXqyqqirtsMMO6ty5s6qqqgIVQIzH49q8ebO6du2qaJSRC8olmcG7YcMGLV26VJIIbgIAAAAAABgQ2PRRY2OjampqtNtuu6mqqsrv5liKx+NqaWlRXV0dgc0y69y5s7p166YlS5aosbGRwCYAAAAAAIBBaCNVd955pxoaGlRXV6dDDz1UM2fOtF123rx5OuOMM9TQ0KBIJKJbbrnFcrmlS5fqf/7nf7Tjjjuqc+fOOuCAAzRr1qyStL+trU1btmxRr169AhvUhP8ikYh69Oih5uZmtba2+t0cAAAAAACAwAhlYHPKlCkaP368rrrqKs2ePVtDhgzRqFGjtGrVKsvlm5qatMcee+j6669Xv379LJdZt26djjjiCNXU1Ojf//63PvzwQ910003aYYcdSvIe2traJLWPoQjkkpxAKIhjsAIAAAAAAPgllKXoN998sy666CKNHTtWknT33Xfr2Wef1f3336/LL788a/nhw4dr+PDhkmT5e0m64YYbNHDgQD3wwAOp53bfffcStD5TkMbTRDDRRwAAAAAAALKFLrDZ0tKid955RxMmTEg9F41GNXLkSM2YMaPg9T799NMaNWqUzjrrLL3yyisaMGCALr74Yl100UW2r2lublZzc3Pq540bN0qSWltb85YNt7a2KpFIKB6PKx6PF9zuUkskEqn/g9zOShaPx1OTCXWkYQuS3yFK8FFO9Dv4gX4Hv9D34Af6HfxAv4Nf6HuFcbO9QhfYbGxsVCwWU9++fTOe79u3rz766KOC1/v555/rj3/8o8aPH69f/epXevvtt/WTn/xEnTp10pgxYyxfM3HiRF1zzTVZz7/44ouqr6/P+feqq6vVr18/bd68WS0tLQW3u1w2bdrkdxM6rJaWFm3dulWvvvpqagiDjmTq1Kl+NwEdEP0OfqDfwS/0PfiBfgc/0O/gF/qeO01NTY6XDV1gs1Ti8biGDRum3/3ud5KkoUOH6oMPPtDdd99tG9icMGGCxo8fn/p548aNGjhwoE466aS8M1hv27ZNixcvVteuXVVXV+fdG/FYIpHQpk2b1K1bN0qifbJt2zZ17txZRx99dKD7itdaW1s1depUnXjiialxRoFSo9/BD/Q7+IW+Bz/Q7+AH+h38Qt8rTLIi2onQBTZ79+6tqqoqrVy5MuP5lStX2k4M5ET//v217777Zjy3zz776PHHH7d9TW1treXkPzU1NXk7bCwWUyQSUTQaVTQa3DmckuXnybaWW0NDg7788ks98MADuuCCCyRJkydPTo2vmhSJRNS1a1ftueeeOvnkkzV+/HjttNNOlut0GqB9+eWXdeyxxxbTfE9Eo1FFIhFH/aoSddT3DX/R7+AH+h38Qt+DH+h38AP9Dn6h77njZluFLrDZqVMnHXLIIZo2bZpGjx4tqT34Nm3aNI0bN67g9R5xxBH6+OOPM5775JNPtNtuuxXTXJRQly5ddOaZZ0pqDxR/+eWXmjFjhubOnasHHnhAr732mvbaay/b148aNSpnMLyYQDkAAAAAAABKK3SBTUkaP368xowZo2HDhmnEiBG65ZZbtGXLllQW3/nnn68BAwZo4sSJktrHKPzwww9Tj5cuXaq5c+eqa9euGjRokCTppz/9qQ4//HD97ne/07e//W3NnDlT99xzj+655x5/3iTy6t27tyZPnpzx3Lx583TMMcdo5cqVuuyyy/Tss8/avv7yyy8PREYmAAAAAAAA3AtuDXQOZ599tiZNmqQrr7xSBx10kObOnavnn38+NaHQokWLtHz58tTyy5Yt09ChQzV06FAtX75ckyZN0tChQ3XhhRemlhk+fLiefPJJPfLII9p///117bXX6pZbbtF5551X9veHwu23336pcU+nTp2aMWs9AAAAAAAAKkcoMzYlady4cbal59OnT8/4uaGhQYlEIu86Tz/9dJ1++uleNA8+OvDAAyW1D9K7du1a9e/f3+cWAQAAAAAAwGuhzNgEcknOnlVVVaXevXv73BoAAAAAAACUAoFNVJzkuJonn3wys44BAAAAAABUqNCWoncIw4ZJK1b42oSIpO6JhCKRiLsX9usnzZpVkjZZSc6Kfs899+jhhx/Wbrvtpttuuy3na4477jjb3/Xo0UPr16/3uJUAAAAAAADwCoHNIFuxQlq61NcmRLb/C6Ivv/zSMuA6YsQIvfjii+rRo0fO148aNUr9+vWz/F19fb0nbQQAAAAAAEBpENgMMpugWzklJCW2Z2y6CnCWoe1dunTRmWeeKUlqbm7W/Pnz9e6772rmzJn64Q9/qEcffTTn6y+//HIde+yxJW8nAAAAAAAAvEdgM8jKWMptJxGPa+PGjerevbsi0WANydq7d29Nnjw547knnnhCZ599tqZMmaKjjz5aF198sT+NAwAAAAAAQEkFK1IFFOlb3/qWLr/8cknSlVdeqQ0bNvjcIgAAAAAAAJQCgU1UnAkTJqh///5as2aNbr75Zr+bAwAAAAAAgBIgsImKU19fr1//+teSpFtuuUXr1q3zuUUAAAAAAADwGmNsoiJdeOGFuummm/TZZ59p0qRJ+u1vf5u1zPXXX581RqfRd77zHZ100kklbCUAAAAAAAAKRWATFammpkbXXXedzj33XN1+++0aP368dtxxx4xlXnjhhZzrOOiggwhsAgAAAAAABBSBTQTawoULs5674IILdMEFF+R97TnnnKNzzjkn6/lEIuFBywAAAAAAAOAnxtgEAAAAAAAAEDoENgEAAAAAAACEDoFNAAAAAAAAAKFDYBMAAAAAAABA6BDYBAAAAAAAABA6BDYBAAAAAAAAhA6BTQAAAAAAAAChQ2ATAAAAAAAAQOgQ2AQAAAAAAAAQOgQ2AQAAAAAAAIQOgU0AAAAAAAAAoUNgEwAAAAAAAEDoENgEAAAAAAAAEDoENgEAAAAAAACEDoFNBFpDQ4MikYgmT56cem7y5MmKRCIZ/6LRqLp3766hQ4dqwoQJWr16te06za+1+zd9+nRXbU2264ILLijszQIAAAAAAMCxar8bABSqS5cuOvPMMyVJsVhMX375pWbMmKG5c+fqgQce0Guvvaa99trL9vWjRo1Sv379bH9v/l0kEpEkJRIJD1oPAAAAAACAYhDYRGj17t07I5NTkubNm6djjjlGK1eu1GWXXaZnn33W9vWXX365jj322NI2EgAAAAAAACVBKToqyn777afx48dLkqZOnarm5mafWwQAAAAAAIBSILCJinPggQdKklpbW7V27dqi13f11VenytCl7DE6Fy5cmPWaLVu2aMKECRo0aJBqa2vVr18/jRkzRkuXLi26PQAAAAAAAKAUHRVo48aNkqSqqir17t276PUddNBBGjNmjB588EFJ0pgxYzJ+37Vr14yfN2zYoMMPP1yLFi3SUUcdpf33318zZszQQw89pFdeeUXvvvuuevToUXS7AAAAAAAAOjICm6g4yXE1Tz75ZNXU1BS9vtGjR2v06NGpwKZ5XE+zp556SqNGjdJrr72m7t27S5LWrVun448/XnPnztVdd92lCRMmFN0uAAAAAACAjozAZoANGzZMK1as8LsZSiQSGaXYTvTr10+zZs0qUYuyJWdFv+eee/Twww9rt91202233ZbzNccdd5zt73r06KH169cX1JYuXbrogQceSAU1JWmHHXbQ5ZdfrnPOOUf/+c9/CGwCAAAAAAAUicBmgK1YsYIxGXP48ssvLQOuI0aM0Isvvpi33HvUqFHq16+f5e/q6+sLbtewYcPUv3//rOf32WcfSeIzBQAAAAAA8ACBzQCzC7qVW6EZm6XWpUsXnXnmmZKk5uZmzZ8/X++++65mzpypH/7wh3r00Udzvv7yyy/Xscce63m7dt11V8vnkxmc27Zt8/xvAgAAAAAAdDQENgOsnKXcduLxuDZu3Kju3bsrGo363ZwMvXv3zhrv8oknntDZZ5+tKVOm6Oijj9bFF19c9nYFbTsBAAAAAABUIiIwqCjf+ta3dPnll0uSrrzySm3YsMHnFgEAAAAAAKAUCGyi4kyYMEH9+/fXmjVrdPPNN3u23uQM621tbZ6tEwAAAAAAAIUhsImKU19fr1//+teSpFtuuUXr1q3zZL277LKLJGnevHmerA8AAAAAAACFY4xNVKQLL7xQN910kz777DNNmjRJv/3tb7OWuf7667PG6DT6zne+o5NOOin18xlnnKFJkyZp5MiROv7449WtWzdJ0g033KAdd9zR8/cAAAAAAAAAewQ2UZFqamp03XXX6dxzz9Xtt9+u8ePHZwUfX3jhhZzrOOiggzICm9dee62i0aieeOIJPfXUU2ppaZEkXXHFFQQ2AQAAAAAAyozAJgJt4cKFWc9dcMEFuuCCC/K+9pxzztE555yT9XwikSioLXV1dbrhhht0ww03WP4+X7saGhoK/tsAAAAAAADIxBibAAAAAAAAAEKHwCYAAAAAAACA0CGwCQAAAAAAACB0CGwCAAAAAAAACB0CmwAAAAAAAABCh8AmAAAAAAAAgNAhsAkAAAAAAAAgdAhs+iyRSPjdBAQcfQQAAAAAACAbgU2fRKPtmz4Wi/ncEgRdso8k+wwAAAAAAAAIbPqmpqZGNTU12rx5s99NQcBt3bpVVVVVqqmp8bspAAAAAAAAgUFg0yeRSETdunXThg0btHXrVr+bg4CKxWLasGGD6uvrFYlE/G4OAAAAAABAYFT73YCOrHfv3tq6dasWLVqk7t27q1u3bqqqqgpUACsej6ulpUXbtm2jFLqMEomEmpubtXbtWsXjcfXp08fvJgEAAAAAAAQKgU0fVVVVaeDAgWpsbNSmTZu0fv16v5uUJZFIaOvWrercuXOgAq4dRZcuXdSvXz916tTJ76YAAAAAAAAECoFNn1VVValv377q06ePWltbFY/H/W5ShtbWVr366qs6+uijGeOxzKqrq1VdzVcUAAAAAADAClGTgIhEIoHMyquqqlJbW5vq6uoIbAIAAAAAACAwGDQRAAAAAAAAQOgQ2AQAAAAAAAAQOgQ2AQAAAAAAAIQOgU0AAAAAAAAAoUNgEwAAAAAAAEDoENgEAAAAAAAAEDqhDmzeeeedamhoUF1dnQ499FDNnDnTdtl58+bpjDPOUENDgyKRiG655Zac677++usViUR02WWXedtoAAAAAAAAAEULbWBzypQpGj9+vK666irNnj1bQ4YM0ahRo7Rq1SrL5ZuamrTHHnvo+uuvV79+/XKu++2339af/vQnHXjggaVoOgAAAAAAAIAihTawefPNN+uiiy7S2LFjte++++ruu+9WfX297r//fsvlhw8frt///vc655xzVFtba7vezZs367zzztO9996rHXbYoVTNBwAAAAAAAFCEar8bUIiWlha98847mjBhQuq5aDSqkSNHasaMGUWt+5JLLtFpp52mkSNH6rrrrsu5bHNzs5qbm1M/b9y4UZLU2tqq1tbWotoRFMn3USnvB+FB34Mf6HfwA/0OfqHvwQ/0O/iBfge/0PcK42Z7hTKw2djYqFgspr59+2Y837dvX3300UcFr/fRRx/V7Nmz9fbbbztafuLEibrmmmuynn/xxRdVX19fcDuCaOrUqX43AR0UfQ9+oN/BD/Q7+IW+Bz/Q7+AH+h38Qt9zp6mpyfGyoQxslsLixYt16aWXaurUqaqrq3P0mgkTJmj8+PGpnzdu3KiBAwfqpJNOUvfu3UvV1LJqbW3V1KlTdeKJJ6qmpsbv5qADoe/BD/Q7+IF+B7/Q9+AH+h38QL+DX+h7hUlWRDsRysBm7969VVVVpZUrV2Y8v3LlyrwTA9l55513tGrVKh188MGp52KxmF599VXdcccdam5uVlVVVcZramtrLcfrrKmpqbgOW4nvCeFA34Mf6HfwA/0OfqHvwQ/0O/iBfge/0PfccbOtQjl5UKdOnXTIIYdo2rRpqefi8bimTZumww47rKB1nnDCCXr//fc1d+7c1L9hw4bpvPPO09y5c7OCmgAAAAAAAAD8E8qMTUkaP368xowZo2HDhmnEiBG65ZZbtGXLFo0dO1aSdP7552vAgAGaOHGipPYJhz788MPU46VLl2ru3Lnq2rWrBg0apG7dumn//ffP+BtdunTRjjvumPU8AAAAAAAAAH+FNrB59tlna/Xq1bryyiu1YsUKHXTQQXr++edTEwotWrRI0Wg6IXXZsmUaOnRo6udJkyZp0qRJOuaYYzR9+vRyNx8AAAAAAABAEUIb2JSkcePGady4cZa/MwcrGxoalEgkXK2fgCcAAAAAAAAQTKEcYxMAAAAAAABAx0ZgEwAAAAAAAEDoENgEAAAAAAAAEDoENgEAAAAAAACEDoFNAAAAAAAAAKFDYBMAAAAAAABA6BDYBAAAAAAAABA6BDYBAAAAAAAAhA6BTQAAAAAAAAChQ2ATAAAAAAAAQOgQ2AQAAAAAAAAQOgQ2AQAAAAAAAIQOgU0AAAAAAAAAoUNgEwAAAAAAAEDoENgEAAAAAAAAEDoENgEAAAAAAACEDoFNAAAAAAAAAKFDYBMAAAAAAABA6BDYBAAAAAAAABA6BDYBAAAAAAAAhA6BTQAAAAAAAAChQ2ATAAAAAAAAQOgQ2AQAAAAAAAAQOgQ2AQAAAAAAAIQOgU0AAAAAAAAAoUNgEwAAAAAAAEDoENgEAAAAAAAAEDoENgEAAAAAAACEDoFNAAAAAAAAAKFDYBMAAAAAAABA6BDYBAAAAAAAABA6BDYBAAAAAAAAhA6BTQAAAAAAAAChQ2ATAAAAAAAAQOgQ2AQAAAAAAAAQOgQ2AQAAAAAAAIQOgU0AAAAAAAAAoUNgEwAAAAAAAEDoENgEAAAAAAAAEDoENgEAAAAAAACEDoFNAAAAAAAAAKFDYBMAAAAAAABA6BDYBAAAAAAAABA6BDYBAAAAAAAAhA6BTQAAAAAAAAChQ2ATAAAAAAAAQOgQ2AQAAAAAAAAQOgQ2AQAAAAAAAIQOgU0AAAAAAAAAoUNgEwAAAAAAAEDoENgEAAAAAAAAEDoENgEAAAAAAACEDoFNAAAAAAAAAKFDYBMAAAAAAABA6BDYBAAAAAAAABA6BDYBAAAAAAAAhA6BTQAAAAAAAAChQ2ATAAAAAAAAQOgQ2AQAAAAAAAAQOgQ2AQAAAAAAAIQOgU0AAAAAAAAAoUNgEwAAAAAAAEDoENgEAAAAAAAAEDoENgEAAAAAAACETqgDm3feeacaGhpUV1enQw89VDNnzrRddt68eTrjjDPU0NCgSCSiW265JWuZiRMnavjw4erWrZv69Omj0aNH6+OPPy7hOwAAAAAAAABQiNAGNqdMmaLx48frqquu0uzZszVkyBCNGjVKq1atsly+qalJe+yxh66//nr169fPcplXXnlFl1xyid566y1NnTpVra2tOumkk7Rly5ZSvhUAAAAAAAAALlX73YBC3Xzzzbrooos0duxYSdLdd9+tZ599Vvfff78uv/zyrOWHDx+u4cOHS5Ll7yXp+eefz/h58uTJ6tOnj9555x0dffTRHr8DAAAAAAAAAIUKZWCzpaVF77zzjiZMmJB6LhqNauTIkZoxY4Znf2fDhg2SpF69eln+vrm5Wc3NzamfN27cKElqbW1Va2urZ+3wU/J9VMr7QXjQ9+AH+h38QL+DX+h78AP9Dn6g38Ev9L3CuNleoQxsNjY2KhaLqW/fvhnP9+3bVx999JEnfyMej+uyyy7TEUccof33399ymYkTJ+qaa67Jev7FF19UfX29J+0IiqlTp/rdBHRQ9D34gX4HP9Dv4Bf6HvxAv4Mf6HfwC33PnaamJsfLhjKwWQ6XXHKJPvjgA73++uu2y0yYMEHjx49P/bxx40YNHDhQJ510krp3716OZpZca2urpk6dqhNPPFE1NTV+NwcdCH0PfqDfwQ/0O/iFvgc/0O/gB/od/ELfK0yyItqJUAY2e/furaqqKq1cuTLj+ZUrV9pODOTGuHHj9Mwzz+jVV1/VLrvsYrtcbW2tamtrs56vqampuA5bie8J4UDfgx/od/AD/Q5+oe/BD/Q7+IF+B7/Q99xxs61COSt6p06ddMghh2jatGmp5+LxuKZNm6bDDjus4PUmEgmNGzdOTz75pF566SXtvvvuXjQXAAAAAAAAgMdCmbEpSePHj9eYMWM0bNgwjRgxQrfccou2bNmSmiX9/PPP14ABAzRx4kRJ7RMOffjhh6nHS5cu1dy5c9W1a1cNGjRIUnv5+cMPP6x//vOf6tatm1asWCFJ6tGjhzp37uzDuwQAAAAAAABgJbSBzbPPPlurV6/WlVdeqRUrVuiggw7S888/n5pQaNGiRYpG0wmpy5Yt09ChQ1M/T5o0SZMmTdIxxxyj6dOnS5L++Mc/SpKOPfbYjL/1wAMP6IILLijp+wEAAAAAAADgXGgDm1L7WJjjxo2z/F0yWJnU0NCgRCKRc335fg8AAAAAAAAgGEI5xiYAAAAAAACAjo3AJgAAAAAAAIDQIbAJAAAAAAAAIHQIbAIAAAAAAAAIHQKbAAAAAAAAAEKHwCYAAAAAAACA0CGwCQAAAAAAACB0CGwCAAAAAAAACB0CmwAAAAAAAABCh8AmAAAAAAAAgNAhsAkAAAAAAAAgdAhsAgAAAAAAAAgdApsAAAAAAAAAQofAJgAAAAAAAIDQIbAJAAAAAAAAIHQIbAIAAAAAAAAIHQKbAAAAAAAAAEKHwCYAAAAAAACA0CGwCQAAAAAAACB0CGwCAAAAAAAACB0CmwAAAAAAAABCh8AmAAAAAAAAgNAhsAkAAAAAAAAgdAhsAgAAAAAAAAgdApsAAAAAAAAAQofAJgAAAAAAAIDQIbAJAAAAAAAAIHQIbAIAAAAAAAAIHQKbQLFWrZLmzPG7FQAAAAAAAB1Ktd8NQLgMGzZMK1as8LsZwZFISMuXt//fq5fUubPfLaoo27ZtU11dnd/NQAdDv4Mf6HfwC30PfqDfwQ/0O/illH2vX79+mjVrVknWHRYENuHKihUrtHTpUr+bEUxr1/rdAgAAAAAAgA6DwCZc6devn99NCJaWFmn16vbHXbpIPXv62pxKw11V+IF+Bz/Q7+AX+h78QL+DH+h38EupMzY7OgKbcKWjpzhnefVV6Zhj2h+fd570pz/5254K0traqueee06nnnqqampq/G4OOgj6HfxAv4Nf6HvwA/0OfqDfwS/0vdJj8iCgGPF4+nEs5l87AAAAAAAAOhgCm0AxjMFMApsAAAAAAABlQ2ATKAaBTQAAAAAAAF8Q2ASKQSk6AAAAAACALwhsAsUgYxMAAAAAAMAXBDaBYhDYBAAAAAAA8AWBTaAYBDYBAAAAAAB8QWATKAZjbAIAAAAAAPiCwCZQDGMws63Nv3YAAAAAAAB0MAQ2gWJQig4AAAAAAOALAptAMShFBwAAAAAA8AWBTaAYZGwCAAAAAAD4gsAmUAwCmwAAAAAAAL4gsAkUg1J0AAAAAAAAXxDYBIpBxiYAAAAAAIAvCGwCxSCwCQAAAAAA4AsCm0AxCGwCAAAAAAD4gsAmUAzG2AQAAAAAAPAFgU2gGMZgZlubf+0AAAAAAADoYAhsAsWgFB0AAAAAAMAXBDaBYlCKDgAAAAAA4AsCm0AxyNgEAAAAAADwBYFNoBgENgEAAAAAAHxBYBMoBoFNAAAAAAAAXxDYBIrBGJsAAAAAAAC+ILAJFIOMTQAAAAAAAF8Q2ASKQWATAAAAAADAFwQ2gWIYS9Hb2vxrBwAAAAAAQAdDYBMoBhmbAAAAAAAAviCwCRSDwCYAAAAAAIAvQh3YvPPOO9XQ0KC6ujodeuihmjlzpu2y8+bN0xlnnKGGhgZFIhHdcsstRa8TILAJAAAAAADgj9AGNqdMmaLx48frqquu0uzZszVkyBCNGjVKq1atsly+qalJe+yxh66//nr169fPk3UCGWNsEtgEAAAAAAAom9AGNm+++WZddNFFGjt2rPbdd1/dfffdqq+v1/3332+5/PDhw/X73/9e55xzjmpraz1ZJ0DGJgAAAAAAgD+q/W5AIVpaWvTOO+9owoQJqeei0ahGjhypGTNmlG2dzc3Nam5uTv28ceNGSVJra6taW1sLakfQJN9Hpbwfr1W1tmbcHWhtbpaiBd4vSCRUdeaZinz4odr+/nfpgAM8aaMvPvxQ1WeeqcRXvqLYE08UtE3oe/AD/Q5+oN/BL/Q9+IF+Bz/Q7+AX+l5h3GyvUAY2GxsbFYvF1Ldv34zn+/btq48++qhs65w4caKuueaarOdffPFF1dfXF9SOoJo6darfTQikg778UrsZfv73M88oUV3Y16r755/ruH/9S5K08Npr9eEFFxTfQJ/s85e/6CsLFiiyYIFeu+02rf/KVwpeF30PfqDfwQ/0O/iFvgc/0O/gB/od/ELfc6epqcnxsqEMbAbFhAkTNH78+NTPGzdu1MCBA3XSSSepe/fuPrbMO62trZo6dapOPPFE1dTU+N2cwKl64omMn0856SSprq6gdUXefDP1eI/+/dVw6qlFtc1PUcNO+4gDD1Ti+ONdr4O+Bz/Q7+AH+h38Qt+DH+h38AP9Dn6h7xUmWRHtRCgDm71791ZVVZVWrlyZ8fzKlSttJwYqxTpra2stx+usqampuA5bie/JE4lExo810ahU6HaKRFIPq+JxVYV5exsmVaqOxQrfJqLvwR/0O/iBfge/0PfgB/od/EC/g1/oe+642VahnDyoU6dOOuSQQzRt2rTUc/F4XNOmTdNhhx0WmHWiAzBPGNTWVvi6jK8N+0RExveybZt/7QAAAAAAABUrlBmbkjR+/HiNGTNGw4YN04gRI3TLLbdoy5YtGjt2rCTp/PPP14ABAzRx4kRJ7ZMDffjhh6nHS5cu1dy5c9W1a1cNGjTI0TqBLIbMREnFBSQrKbBpHOjXMMEWAAAAAACAV0Ib2Dz77LO1evVqXXnllVqxYoUOOuggPf/886nJfxYtWqSoYSbmZcuWaejQoamfJ02apEmTJumYY47R9OnTHa0TyGIOQBYTkDS+NuyBTWOQlsAmAAAAAAAogdAGNiVp3LhxGjdunOXvksHKpIaGBiVM4yG6XSeQxcvAZiVlbBLYBAAAAAAAJRbKMTaBwPCyFL2SMjaNpeiMsQkAAAAAAEqAwCZQDDI2rZGxCQAAAAAASozAJlAMApvWCGwCAAAAAIASI7AJFIPJg6wxKzoAAAAAACgxAptAMbwcY7NSMzYZYxMAAAAAAJQAgU2gGKUqRTc+DiNK0QEAAAAAQIkR2ASKYQ5kFhOQpBQdAAAAAADAMQKbQDEoRbdGxiYAAAAAACgxAptAMZg8yBqBTQAAAAAAUGIENoFilGqMzbAHNo2l6EweBAAAAAAASoDAJlAMApvWyNgEAAAAAAAlRmATKIaXY2xSig4AAAAAAOAYgU2gGGRsWmNWdAAAAAAAUGIENoFiMHmQNWOQljE2AQAAAABACRDYBIrhZSm6MRhofBxGlKIDAAAAAIASI7AJFMMcyCwmIEkpOgAAAAAAgGMENoFiUIpujYxNAAAAAABQYgQ2gWKUqhS9kgKbjLEJAAAAAABKgMAmUAxmRbdGKToAAAAAACgxAptAMShFt0YpOgAAAAAAKDECm0AxyNjMFo9LiUT65+bmzJ8BAAAAAAA8QGATKIaXY2xWSsamsQw9qaWl/O0AAAAAAAAVjcAmUAwyNrMZ30cS5egAAAAAAMBjBDaBYhDYzEZgEwAAAAAAlAGBTaAYpSpFtwoOhoVVKTqBTQAAAAAA4DECm0AxzIHMYgKSZGwCAAAAAAA4RmATKIaXpeiVMnmQVWBz27bytwMAAAAAAFQ0AptAMRhjMxul6AAAAAAAoAwIbALF8HKMzUoJbFKKDgAAAAAAyoDAJlCMUpWiJxLt/8IoX8bmX/4iTZggrV9ftiYBQJbZs6VLL5XmzvW7JbDS1iZdf710443ZNxEBIMhaW6Xf/U666Sb2X6Xy+efSZZdJL73kd0s6ns8+a9/2L7/sd0s6tj/9STrjDOnss6UvvvC7Nb6r9rsBQGhZBR+9ythMrqs6hF/RXGNsLlwojRnTvt122EH6xS/K2jQASPnhD6VZs6T//ld66y2/WwOzf/+7/SaYJB10kHTSSb42BwAce+YZ6f/9v/bHQ4dKxx/vb3sq0a9+JU2ZIj3yiLRsmVRV5XeLOo5f/Ur6+9+lRx9t3/ZRcuV8MXu29MQT7Y9/9St/2xIA9EKgUFZ3YL0ObIZRrlL0hQvTweBFi8rWJADIktwHsS8KJuPnsnixf+0AALfYf5VechuvWiW1tPjblo4mue1XrrSu1EN5GK+5a2r8a0dAENgECmUVePSqFL3YdfkpVyn6li3p5zgJAeCn5D6WfVEwGU/YrW6YAUBQGc/h2X+VBtvYP8ZtH9br1UpgvOYOY5WnxwhsAoXyOrBpPiiH9SCdK2PTGNjkDh8APyX3VeyLgsn4ufAZAQgT47kw+6/SYBv7hxuPwWDc9gQ2CWwCBbMKYhazc6+UjM1cY2wS2AQQFMl9LPuiYOLCCUBYkU1Yemxj/5CxGQyUomcgsAkUijE2rVGKDiAMkvtc9kXBRMYmgLAim7D02Mb+4cZjMFCKnoHAJlCoUpeihzWwmasUvakp/RwnIQD8lNxXxWLWN6rgLy6cAIQV+6/SYxv7h20fDJSiZyCwCRSKyYOsOR1jkywpAH4y7mO50RI8XDgBCCvKpEuPbewfStGDgVL0DAQ2gUJRim7NaSk6gQQAfonHpUQi/TP7o+ChFB1AWFEmXXpsY/9w4zEYKEXPQGATKBSl6NacTh5ExiYAv5j3U+yPgocLJwBhxf6r9NjG/mHbBwOl6BkIbAKFohTdmtNSdO6uAvCLef/K/ih4uHACEFaUSZce29g/lKIHA6XoGQhsAoUiY9MapegAgs68v2V/FDyUogMIK8qkS49t7B9uPAaDsd9HCesVlLO6ceNGSVL37t2L+uObN2/WSy+9JEn6+te/XtS6gLLzeozNjpaxSeknAL+Y96/sj4KHCycAYUU2Yemxjf1DxmYwJPt9dbUUifjblgAoKLDZs2dPRaNRvffee9p3332zfr9s2TJdccUVikQi+vOf/2y7ni+//FKjR49WNBpVGzskhE2pMzbD+p1wOsYmd1cB+IWMzeAjsAkgrNh/lR7b2D9s+2BIbnvK0CUVUYqeMM4marJu3TpNnjxZkydPLnpdQGBZBTGL2bl3hFL0pqb0c2RIAfALkwcFH6XoAMKKMunSYxv7h8BmMCT7PRMHSWKMTaBwlKJbY/IgAEHH5EHBx4UTgLCiTLr02Mb+oRQ9GIyl6CCwCRSMyYOsMcYmgKAjYzP4CGwCCCv2X6XHNvYP2z4YKEXPQGATKJTXgc1Kydi0ynxijE0AQULGZvBRig4grCiTLq1EIvM4zjYun0Qis2oxrNerlYBS9AwENoFCkbFpjYxNAEHH5EHBR0YIgLCiTLq0zMOBsY3Lx3x9yrb3D6XoGQhsAoXycozNeLz9DpgX6/KbXWCzrS0zmEkgAYBfKEUPPgKbAMKK/Vdpmbcp27h82PbBQSl6BgKbQKG8zNj0OvvTT3azohuzNe2WA4ByoBQ9+ChFBxBWlEmXFsdw/1TK0GmVgFL0DAQ2gUJ5GYy0utsV1gOF1XvZti07sNnWlp2lCgDlQMZm8JHxBCCs2H+VFlmD/mHbBwcZmxmKCmxGIhGv2gGEj5el6JUe2Gxulpqasp/nDisAPzDGZvARGAAQVuy/Sovgmn/Y9sHBGJsZitoK+++/v+3vkkHPqqqqYv4EEFylLkUP64HCaSm61J4l1alT6dsEAEbmfS4Zm8FDKTqAsKIUvbQoRfcPpejBQSl6hqK2QoIyUnRkXgYjO0LGplVgkxMRAH4gYzP4yHgCEFbsv0qLrEH/sO2DIR5PV49Sii6pwMDm0UcfTRk6wORB1owHuNra9qBmroxNACg3sj2Cj8AAgLAyHmPYf3nPfAxnG5cPGZvBYNzuZGxKKjCwOX36dI+bAYQQY2xaMwYIunRpD2rGYtLGjbmXBYByYfKg4KMUHUBYGY8x7L+8R9WFf8jYDAZjnyewKYlZ0YHCMSu6NeN76do1/Xjt2uxlOREB4AcuioKPjE0AYcX+q7QIrvmHbR8Mxu1OKbokAptA4ShFt+YmsEmWFAA/MHlQ8BEYABBWlKKXFqXo/qEUPRiMfZ6MTUkBCGw2NTXppptu8rsZgHuUolszl6InrVmTe1kAKBcyNoOPUnQAYUUpemlxDPcPGZvBQCl6Ft8Cm5s2bdJvf/tbNTQ06Be/+IVfzQAKR8amNeMBzhjYJGMTQFBwURR8ZGwCCCv2X6VFxqZ/2PbBQCl6lrKHd9euXas//OEPuvPOO7VhwwYlEglmWEc4McamNbtS9HXrspclmADAD5SiBx8ZTwDCilL00iJr0D/mbR3W69WwoxQ9S1EZm19++aV+8pOfaN9991W3bt3Uq1cvHXzwwZo4caI2bNiQsezmzZt11VVXqaGhQb/73e+0fv16JRIJ9e7dW9ddd11RbwLwRakDm2E9SBsvQBljE0AQkbEZfMbPJKzHQwAdEzdmSotjuH8IKgcDpehZCt4KU6dO1RlnnKEtW7ZIkhKJhCTp3Xff1bvvvquHHnpIL7/8svr166c33nhD5513nhYvXpxabsCAAfrZz36mH/zgB+rcubMHbwUoM6sxNgvduXeEUnTG2AQQFGRsBh+lnADCiozN0qIc2j9MHhQMlKJnKShjc/Xq1Tr33HO1efNmJRIJJRIJdenSRT169Ej9/Mknn+iSSy7Rq6++qpEjR6aCmrvvvrv+9Kc/6fPPP9ell15aVFDzzjvvVENDg+rq6nTooYdq5syZOZf/xz/+ocGDB6uurk4HHHCAnnvuuYzfb968WePGjdMuu+yizp07a99999Xdd99dcPtQ4ShFt+ZmVnQCmwD8QLZH8JHxBCCs2H+VFlmD/mHbBwOl6FkKCmzee++9Wrt2rSKRiM4880wtWLBAmzZt0rp167Rs2TKNGzdOkvTPf/5T//M//6Pm5mZ17dpVt99+uz7++GNddNFFqikysjxlyhSNHz9eV111lWbPnq0hQ4Zo1KhRWrVqleXyb775ps4991x9//vf15w5czR69GiNHj1aH3zwQWqZ8ePH6/nnn9df//pXzZ8/X5dddpnGjRunp59+uqi2okIR2LRmNys6pegAgsK8z2VfFCyJBKXoAMKLjPPS4uakfwhsBgOl6FkKCmy++OKLkqSvfvWr+vvf/6499tgj9bt+/frptttu0/nnn694PK4lS5aoZ8+eevPNN3XJJZeo2qMNf/PNN+uiiy7S2LFjU5mV9fX1uv/++y2Xv/XWW3XyySfr5z//ufbZZx9de+21Ovjgg3XHHXeklnnzzTc1ZswYHXvssWpoaNAPfvADDRkyJG8mKHzW2iq9/rrU3Fzev2tVim4XjIzHpbfekjZtsv59JZaiR6OSMSN769bsZTkRKa+VK6W5c/1uBVAac+dKNjc3s5j3r7n2RQsWSJ99VnCzUADz8ZULp8qxYoX07rvereu997xZV5jF49KMGdL24cEc2bix/bx0+xBh2O7TT6Uvvih+PZSil1ZYStETCWnWLGn1ar9b4h1K0YOBUvQsBUUZP/roI0UiEV188cW2y/zkJz/Rgw8+qEgkop/85Cfab7/9Cm6kWUtLi9555x1NmDAh9Vw0GtXIkSM1Y8YMy9fMmDFD48ePz3hu1KhReuqpp1I/H3744Xr66af1ve99TzvvvLOmT5+uTz75RH/4wx8s19nc3KxmQzBt48aNkqTW1la1VkjAJvk+gvx+qs4/X9FHH1V89GjF/v73sv3dSEtL1hcoEYupzWJbRSdOVNVVVykxeLDa3n1XikQy17VtW9a6Yi0tigd4u9upbm1VRFKiulrx6mpV5Vi2ralJCZv3GIa+FyobN6p6770V2bBBbQ8/rMSZZ/rdokCi34VT5LHHVP2d7yjRo4faPv9c6tYt5/LR5uaMfVO8uVkxq8/8/fdVc8ghSkQiaps7V9pnH0/bnUS/M2luVsZpelubWltaso6dKF5Z+966dareay9FNm9W22OPKfH1rxe+rvXr0+t6/HElvvY179oZMtErr1TV9dcrMXSo2t56K//3JB5X9fDhinzyiWK//a3iP/95eRpqEMh93pw5qjn0UCWiUbW9/760114Fr6q6rU3JTyHR2mp5bYDCma+b4i0t1sdwk3L3u8hDD6n6wguV2HFHtX32mVRfX5a/W0rmbR9rbg7l9Wq5ed33Ilu3pj6HWDRasZ+Bm+1VUGBz3bp1kqRBgwbZLrOX4WBw1FFHFfJnbDU2NioWi6lv374Zz/ft21cfffSR5WtWrFhhufyKFStSP99+++36wQ9+oF122UXV1dWKRqO69957dfTRR1uuc+LEibrmmmuynn/xxRdVXwE7LqOpU6f63QRbJ02dqs6SWqdN0/OmcVNLqeHddzXE9Fzrtm36t0UbDnvySfWRFPnoI02dMkWt3btn/H6nOXN0uOk1H3/4oT4t4/vxynFr16q72ney8z/7TAfkWPbdWbO0JE8AIsh9L0x2nDdPR27YIEla9Le/6f0K20d5jX4XLgf89a/aQ1JkwwbNuPderRs8OOfye7z/fsa+aeXixZppsb/d7YUXdJCkSCKhD+65R4tOPNHLZmeh37Wr2rpVp5ue+/czzyhRletWGYpRjr7X+733dMTmzZKkhQ89pHlFVHH1fv/99LoefFDzOnDfOOLpp9VbUmTOHL3w5JOK1dXlXL523Tqd/MknkqTGxx/XWx4mn7gVpH3eHs88owMkReJxvX/33Vp8wgkFr+u05ubURXYkFtNzzz7LjRkP9Z01S181/Lx80SLNcnHNVK5+d/Bf/qKBkiJr1ujN++7T+hyxk7Do+/bbGdv+iwULNC+E16t+8arv7Thvno7c/vjzL7/UhxX6GTQ1NTletqAzitbWVkUiEXXLEZDoapg0pF+/foX8mbK7/fbb9dZbb+npp5/WbrvtpldffVWXXHKJdt55Z40cOTJr+QkTJmRkgW7cuFEDBw7USSedpO6mwFVYtba2aurUqTrxxBOLHhe1VKq3t6tTa6tOPfXUsv3d6KJFWc/VRKOWbagyZP2eePzxUp8+Gb+PWJzs7D1okPYq4/vxSvUvfylJqqqt1T4HH5xz2SH77qsDbd5jGPpemESi6ZFHdhswQAND2LfKgX4XTtFnnkk9PvzQQ5U44ojcy2+/qE/qu+OOlvvu6Jdfph4fuO++2r9E3xv6ncn69VlPnXLiiVKegA3cK2ffM57r7D5ggHYr4vsUMQRFi11X2FVdf33q8ajjj5d69sz9goULUw932mGHsp47JwVxnxc1JMcMGTxYBxSxXcxh9lNHjWIcPA9FTKXn/XfayVE/Lne/q7rzztTjIw46SAmbZKkwiZgy6HbfddcOvf91yuu+FzEM97bH3nuroUI/g2RFtBNl2cNaBW2K0bt3b1VVVWnlypUZz69cudI2iNqvX7+cy2/dulW/+tWv9OSTT+q0006TJB144IGaO3euJk2aZBnYrK2tVW1tbdbzNTU1gTlIeyXQ72n7wS2ybZtqolHJx7v2kVjMejsZDsA1kYijsTCqJFUFdZvnsn2slUh1tarzZAVWx+N5t0Wg+16YGIbNqIrFwtm3yoh+FzKGMZ6qpfz7WNO4ctHWVkWtXmNYriqRKPn3hn5nr0ZiHKkSKkvfM3xPq1pbi/s+Gb+bxa4r7Azb1dH3xDCGbbStzXrfVyaB2ucZtktVW1txfcoUeGP/VVrRWMxVPy5bv2tsTD2sbm6uyD5QFY937P2vS571PeMxsLa2Yj8DN9uqoMmD/NapUycdcsghmjZtWuq5eDyuadOm6bDDDrN8zWGHHZaxvNSeCpxcPjkuZjSauUmqqqoUt5okBsFhvHPkIl25aG4m/DHOuOv0dWEdjDn5edTUSBaBf8tlUXrGSQWYARqVJt8+1szp5EHG5cK6Tw4jq4kggjo5BJwzTvJY7ISPxu98uSePDBrj/svJ8d24vTgfSPOqTyUS4ZncJqzCsn2NExq6mdwryJg8KBiMfZ5scElFZmyOHTtWXbp0KXq5SCSSFXTMZ/z48RozZoyGDRumESNG6JZbbtGWLVs0duxYSdL555+vAQMGaOLEiZKkSy+9VMccc4xuuukmnXbaaXr00Uc1a9Ys3XPPPZKk7t2765hjjtHPf/5zde7cWbvttpteeeUVPfTQQ7r55ptdtQ1lZvxib9mSd9IIz7gJRhpPOp1esAX1IJ1Pst3V1fkDm5xQl4/xhIqAMipNvn2smXkZu32Rcbmw7pPDqJKOiUjzMrBp/M539MCm8bvh5Phu3F6cD6R51aesEmLYf3nLvD2DuH0TicoMbIZh23cEzIqepajA5qxZs3L+PlmCnmu5RCJRUKn62WefrdWrV+vKK6/UihUrdNBBB+n5559PTRC0aNGijOzLww8/XA8//LCuuOIK/epXv9Jee+2lp556Svvvv39qmUcffVQTJkzQeeedp7Vr12q33XbTb3/7W/3oRz9y3T6UkTmwWS5uTlyMJ0uVnrFpDGzmGw+NE+ryIbCJSpZvH2tm3leTsRksVp8H+63w27bN+nEhjP2h2HWFndvApnF78b1K86pPWV0LsJ295bTqwk8bN2a2i8AmvGTsW2RsSioisJkwjU/lh3HjxmncuHGWv5s+fXrWc2eddZbOOuss2/X169dPDzzwgFfNQ7n4ddCwushNJNr/mYP1xmwgp5koYb2IzleKHomkxwUhY7N8KEVHJcu3jzVzelFExqY/yNisTJSilwal6N7wqk9Znb+z//JWGIJrxmxNqXICm5SiBwOl6FkK2gqMOYnAiMczMyf9HmMz+bx5B1NIKXpYDxT5StF79pTWrWt/HMQ7rJXK+N1gu6PSUIpeWQhsViZK0UuDUnRveNWn2H+VXhgDm+W8Ri2lMGz7joBS9CyhnDwISDEH//wuRZesA5IdcfKgXIHNJDIFyoeMTVQyJg+qLJSiVyYyNkvDeIFLxmbhSpmxyf7LW2EoRSdjE6VEKXoWApsIN/OBzO9SdLvnO2LGZk2N9RibxsBmEE9EKhVjbKKSkbFZWch4qkzGYBFjbHrHuC0YY7NwpRxjk/2Xt8KQNbh6debPlRLYDMO27wgoRc9CYBPhZt6ZBjWw2ZHG2HRSip7ECXX5kLGJSuZ2jE2nkwcR2PQHgYHKZAwWkbHpHTI2veFVn2L/VXphCK5VasZmGLZ9R0ApepaCwru/+c1vvG6HrrzySs/XiQ4gKIHNTp3SJ0T5MjYruRQ9FktPDGQ3eRCl6P4gYxOVzO2s6OZl7PZFlKL7g1L0ysQYm6XBGJve8KpPUYpeepSi+4dS9GCgFD1LQVvh6quvVsQ863ORCGyiIH6WohvH2HQT2KzkjE1zWrxVYHOHHdKPg3giUqkIbKKSFVuKTsZmsJDxVJkIbJaG21J0ApvWmDwoPMKQNUgpOkqJjM0sBYd3E8msLA94HSRFB2Lemfo1K7pxh2IOSCYSHSdj0xzYzDfGJhmb5UMpOiqZ28mDnAY2ydj0B4GBylSqyYM6+hibbkvRjduL84E0r/oU+6/SMx+Pg7h9O0rGZhC3fUfAGJtZCtoKL7/8stftAAoTlMmDOnVKP853J8vpCU8YDxTGz8OuFJ2MTX8Yg/5sd1QatxmbTkvRydj0B6XolckYLPJy8qCOnrFZTCl6LNZegRRl2gVK0UPE6c1JP1VqYNO87bnp6w9K0bMUtBWOOeYYr9sBFMbPMTbNpehJ+S6YO1IpunG7JJGx6Q8yNlHJip08qK2tPbveXEFCYNMflXKzD5lKlbHZkQObxrHNJfeTB0ntF8hWN6I7GiYPCo8wlEObS9HLWVVYSmHY9h0BpehZuD2HcAvS5EFWz0vZdxE7Uil6NJq9s2VWdH8wxiYqWbGTB5nXYbVcGPfJYUVgoDKZZ+MuZlgr4/e12HWFWSGZa1aBTZQ2Y5P9l7eCXg4dj1fuGJtMHhQMlKJnIbCJcAtKKXquMTY7UsamuRRdyh5nk8CmP8jYRCUrNmNTst4fkbHpD0rRK5M5WFTMscj82o56XDPvl9yOsen0NR1BKTM22X95K+il6GvXZlb2SZUT2CRjMxgoRc9CYBPhFsaMTadBzDAGNq3uHpnLmyhFL79YLPNCJmgngECxip0VXbLeHxmXC+M+OazI2KxM5oBaMeNsmo9jHXUCIfN2IGOzcMbtwORBwRb04Jp5fE2JwCa8RSl6FgKbCLcwjLHppBS9UjI2nQQ2mTyo/Mzj+rDdUWnKUYrOyXv5kPFUmcwBtWKy4sz9oaOOs0kpuncoRQ+PoJeim8vQpfY+FcZrOzNK0YOBUvQsBDYRbuaTsXIOzOw0Y7Ojl6KbA5vdu6cn6CBjszzMAX+2OypJIuFNxial6MGR77NAOHkZ2DQfxwhstitk8iDOCdpRih4eVjNzB2mcXauMTakysjbJ2AwGStGzENhEuIWxFL0jTR4kZY+x2aVLOujJiV55mAP+iUQ4+xdgxeoCJx+rZawu7pk8yB+UclYmMja9V0gpurnMmnOxdl5lbLL/Kr2gZ8VWcmCTjM1goBQ9C4FNhFsYStE7Usamk1L0Ll3S24ssgfKw+l6w7VEpnOxjzcjYDDYyniqTl2Nsmr/3HXWMTTI2vWPcDtu2FZ4BGPSgWyUIevDYWIpuHIKrnJWFpULGZjBQip6FwCbCLSizohc7eVDQD9BO5StFr6pq31ZkbJaX1feCbY9K4WQfa1bI5EFh3CeHFaXolYmMTe8xeZB3CtmWVrgxU3pB38bGjM3dd08/roSMTQKbwUApehYCmwi3oJSiG1PA890972il6MbAZn19+/iaye1FlkB5kLGJSuZkH2tWyORBYdwnh1Wl3OxDJsbY9B4Zm97xKlhOxmbpBX0bGwObDQ3px5UQ2KQUPRgoRc9CYBPhZhXYLNfg0aXO2AzjgSLfGJtdurT/n9xeQbq7WsnI2EQl8ypjk1L04Ah6Ng4KQ8am95gV3TteBcu5MVN6Qd/GZGyi1ChFz0JgE+FmNTFPue48Ox1jsyNNHpSvFD0Z2KQUvbwIbKKSOdnHmhVSih7GfXJYUYpeeRKJ7EBRMeNimvtIRx1jk8mDvONVn+LGTOk5rbrwS3KMzW7dpB13TD9fCYFN87bn2OwPStGzENhEuFntTMs1MLNdKTqTB7WzKkU3Z2xS/lQelKKjkhUyeVAhpeicvJdP0LNx4F5ra3ZFDaXoxaMU3RuJRPa2pBQ9uIJ+jEhmbO60U/swXEmVENg0b+cwXq9WAkrRsxDYRLhZHcTKddCgFD2b08AmGZvlZRXsZ9ujUjB5UOUh46nyWAWJKEUvHqXo3rDaBl6WorONvRXkwGZrq7R2bfvjPn3S1z5SZQY2g7LdOxpK0bMQ2ES4WZ0olOug4bQUvSNNHmRVip5rjE2yBMqDjE1UMiYPqjyUolcerwObZGy2M39XyNgsjNU2YIzN4ApyKfqaNenHlRjYZPKgYKAUPQuBTYQbGZvB4jZjs62tfJM9dWSMsYlKRsZm5SEwUHmsgkSMsVm8QjI2GWMzm9U2KLRPUYpeekE+RhgnDjIHNss1XFopkbEZDJSiZyGwiXALQ2DTyfhvlZKxmS+wmRxnxrgD5oS69MjYRCUrZIzNQmZFD+M+Oawo5aw8VkEiMjaLxxib3qAUPVzCEtjcaafKy9gksBkMlKJnIbCJcPOzFL3QjM18d3KTgcAwXkQ7nRXduL042Ss9MjZRyQqZFZ3Jg4KNUvTKwxibpeF2VvREIjuQyfmAt6XoZGyWXpBL0ZMzoksdoxQ9Hqf6zg/G/h4lpCcR2ETY+ZmxaTfGZr6yoHx3GZOBwDCeBFndPbIaY5OMzfIisIlKRil65QlyNg4KQ2CzNNyWolvt5zgfKH3GJvsvbwV5G+cqRa+EwGalDJ8WdsnPoaZGikT8bUtAENhEuFntXMs1folxJ24M1BU7eVCYMzadjrFpDARTAlV6lKKjkhUyeZDTUkEmD/IHpZyVx+sxNs3fe8bYbJfv2G61nTgfsN4GhfYp9l+lF+SsWHNgMzkMl1QZgc0gb/uOJLlPoQw9hcAmwi2Mpej57jIm1xXGi2inpehkbJaXVbCf7Y5KUUjGptX+lYzN4KAUvfJ4OcZmIkHGZpLbUnSr7cT5gLcZmwR+Si/IweOONsamFM5r1rBLfg4ENlMIbCLcylWKPn++9JWvSKedli5BN5aiG3cqhUweZDWzWTkOEi+8IA0cKP30p85f8/OfS7vsIj33XPbvisnYvPtuqX9/6c47nbfF6Gc/s29X0M2bJ+21l/S1r2X2K6eef779vY8fb/37Ss7YXLtWOvhg6ZBDpPXr7Zf74x/b+9cf/1i2pqFMyjV5kPk148e37z9feMH+77z/vjRokPSNbxT23e4Inn22ff/1i1+knwtymSEK46YU/V//kgYMkC6/3Pr3Vn2h3IHNd99t/26fcYa/48u5zdi02k5uzwdiMemUU9rPiz/+2N1rg8rLMTbZf5VekLdxkMbY/MMf2s9977+/sNdffLG0667SSy+lnyvXtl+5UhoyRDrssMoICHvNWIoOSQQ2EXblCmz+5S/Sp5+2B81mzWp/Lhl4rKpq/5dUyORByeeqq9MBwXIENu+6S1qyRLr1VmnjxvzLb9ki3XyztHSpdMcd2b+3Cmz2759+bsCA9v+tMjZvvFFasUL6/e/dvYdku/7wB/t2Bd2DD0oLFkjPPCO984771991V/t7v+UWadOm7N9X8hibzzwjzZkjzZ4tPf64/XKTJrX3rxtvLF/bUB5eTR5kdWFrV4q+aVP7923Jkvbvn53Jk6XPPpOeflqaOzd/uzqiO+5o33/ddJO0dWv7c1b7p0rZZ3VUbgKbt90mLVvWvt+2yvT0MruuUMnv9hNPSB98UN6/beR2jE0vMjZnzGi/ofrpp9Jf/+rutUFV6oxN9l/eCvI2XrMm/bh378xS9HINl5Z0ww3t57433+z+tY2N7ckAixdLf/pT+vl8Q6p55YknpPfek956K5xJK6VGKXoWtgTCrVyl6Js3Zz92Gth0k7FZXZ1eVzkCm8n3kki0X1B27557+aamdNaRVQDNqhT9tNOkcePa/8bXv97+nFXG5rp1mW1yw9iu5HrCxNhmq+2aj/FzbGqSunXL/H0lZ2wa+8vy5fmXC2P/QG5+ZGxu3ZrO0sq1zyr2u90RJG+qxePt+6/OnYOdjYPCuAlsJr83sVj7MsZJCCVvx0MslPF772c2kXm/VY4xNitxv2a1//dyjE32X94K8jZO7hs6dUpfC9XVtfencu8rksfXQq6tjG01vr5c296YcMO5ezZK0bOwJRBu5crYNJ7wJB8nA4/RqLuMzVxjkxiDpOUIbFq9r1yMFyFWFyRWGZs1NdLtt2cuZ5WxmfzcCrnjamxLGMsVjHdwC8kQMG53q9dXcsam8X0YxzUyS26jMPYP5ObVrOj5ApvGfbLx+VzfJWN/66hjAOZjdVwJ8kUrCuNm8iDjMdFp9m65v1/GNvjZN/3I2KzE/Rql6OES5HFMk98PYwl6ly7lD2wmEuk+XMg5v901Yrn6t/H7V+5M1zCgFD0LpegIt3LNim484Uk+TmYIVlXlHmPTSZmkXxmbVu8rF+NFiNUFiVVg04o5sJn857QdudoVxoOf8USnkAwB43a3en0lBzaN/cVJYLOtrXLeO9q5LUVPJAorRbfL3sy1zzLujzrqrM35WB1XKEWvPG4mDzIes6y+X0EIbBrb1dECm5W4X6MUPVyCPHmQXWDT+LtyaGtLX6sWcm1ld41YrlJ0476FpIRslKJnIbCJcCtXKXqujM0wl6J7nbFpVYpuxVyKni87w027wnjwKzb7wbjNzK9PJCq7FN343o0DtudaLox9BPbclqLbTeLjphTd6b6zEjObvEbGZsfgphTd+L2x+n55mV1XKLfnT+Voh1SeyYMqcb9Gxma4BHkbWwU2k+NslvP809h/w56xyXl7NjI2sxDYRLiVqxTd6q5VoaXoue50GYOk5ThAu83YLKQU3Yo5Y9P4mcVi7mcPDvvBr9iLhFyl6K2tlZ094DZjUwpnH4E9txmbxt8bB/U37wPNmZ122Zu59p2VGADwGoHNjqHQwKbTjM1yZw6GNWPT6WRMuVTifs3LjE32X6UX5FL0ZLKGXcZmcnzuUjP23zBmbIb92q7UGGMzC4FNhJufY2waS9GNgU1zmwrN2IzHS3/wK8cYm1bMGZvmz8ztSbb54FeukwavlDKwafd9qMSMTQKbHZPbjE3j7zt3Tj8273fMN1icZG+aVWIAwGtWxxVK0SuP0zE2Y7HM58OQsRmkwCYZm4XxckKqSr6ZHBRBLUU3Dq1lvHGaDGzG4+X7zpCxWdkoRc9CYBPhVq5S9FwZm/lK0Z1MbJF8zrwut5mLbnk9xqbTUvRcGZtO22LXrnKeNHil2DE2jdvd/Hrjuo13j4NwAugFY19pbLT+zsRimcFuTpAqi9vJg4y/N8627CRAmuxfxr/pNGOzUsai85rVcYWMp8rjdIxN8zjZYRhjM0il6OWePKhS9mtkbIZLULex3Tm38XG5zkGN3822NvdJH3bXiOXa9oyxmRul6FkIbCLcgjArutsxNnOl8BszNu2W9VIlZmxK4TsAlitjs2fP9ONKzNiMx6W1a7OXMe8nwtY/kJuTfazd73NlbOYqdSNj0zu5StGNx4pKuRnTUTktRXdyPkDGpv3fbmnJHcAgY9NaqScPCkLQrZIEdRs7CWyWa5JTq6Gp3LC7RqQU3X/xePpGOxmbKQQ2EW5BKEV3O8ZmvlL0XDOse82vwGa+jM2OFtg0nuSUMrC5ww7px5USJDC/D6tydAKbla2YjM1cgc1c+2oCm95IJHKXotfUpI8lQbhoReGcBjbNF/1OhyUgsJmW69yRMTatlXryoEo55wqKoG7jIGVsliqw6UcpermCwWHh9Hq7gyGwiXAz7miTJYWl2PmVuhTd6bq8VszkQfF47kHr3ZSiOyk9c9ouKVwHQPOs5V7Pim6XsRmEE0AvmPuKVWDT/F7D1D+QXzGBzVyTB+XaVzspRU8kir9pUenMn505Y9N4s4/AZrg5HWPTydA0QZs8KEil6HbPJXlRil6J+zUv+1RQy6QrSZgzNv0KbLq9tnIzeRBjbJaXcXtTip5CYBPhZvxiJ4M2YSxFt5o8yG5ZL7nN2DSf5Jl/9qsUPde4kkHX0pL5ORdyIm3c7rm2hTFjsxJL0SUyNjuioJaib92a+XOljEXnJbtjilVgs1JuxnRUTsfYpBTdHau/nev47nUpeqXs17zsU0ENulWSoAaP7QKbxpuofoyxKZU2Y5NS9PIiY9MSgU2Em/GL3aNH+/9NTd5PupMrY9PrUvSwZGxa/exVKXqxGZthOgCa2+p1KboxsyL5HZEqJ0hg7iurV2cvQ2CzsnlViu4kY9MqsGm3v/Liu13p7I4pxlL05PEiCBetKJzxs06e5zgJbIZh8qCgBTZLnbFZiaXopZ48qFLOuYIiqNvYeM5dqRmbTB7kP2NfJ7CZQmAT4Wb8Ynfvnn5szpTx8u+Yx9isqso9LqabyYPKWYqeSBQ3xqbVz05L0Zk8KM2L4EchpegdKWPTvEyY+gfyK2fGplUput3+isBmfnbHFErRK4/xs07eZKuUjM2glaLnOr5bZVgyeRCzoodJImGdwBKEbWz8bhizNIMQ2PQiYzMet56cjIzN8qIU3RKBTYSbVSm65P0OsNRjbPqRsRmLZR6cyNj0R6kzNit98iAnY2ySsVnZisnYTI7NLBWesZlIWO+rCWzm5yawWSn7rI7KKrC5bVv2RXIxY2zmmg3ca0EuRSdj0z2rflZomT2l6KVld20UhG1c6WNslnPbE9i0Rym6JQKbCDfjyZixzNbrHaCXY2yad/7Gu47mdZXyIG0+kS0kY5MxNotnnsim2DE2O9rkQeb3QSl6x+NVYNPNRG/m31ldMBDYzI9S9I7D+FknK2wSifz7Z6eT41itq5SCXIrOGJvulSpjMxq1Xz8KY7zOihpCGUHYxk4Cm+WawNLLMTaTyTB2+7pyBDbLeeMq6ChFt0RgE+Fm3JEaS9HLEdhMBiTNY2zmmilcyg58moOB5crYLCSwaT5IFlqKni9jk1J058xDCjB5UP5lwtQ/kF8xpejV1en9kZvJg5zsP839rFICAF5yM3kQgc1wM37WxvO1XONCS+5Krct58yDIpejMiu5eqSYPSg53wv7LO3bjZAdhGwc5Y7OYwGbyZ7vzq1JcrxqPGYlE5exrvEApuiUCmwg348VPKe+GlbIU3a/Apvkkzs9SdPPnRSm6c+ZxhjpaxmYhpejluluO8igmY7O6Op1BXmgputVrpex+xkl5NkrROw7jZ921q/XzUuGl6FbrKqUgZ2zm+q5Y3WApphQ9Hg9GQKlYpcrYrK3Nfg7Fsdq+5uf9EuTAZjGl6Mmf/crYlMJ1bVdqlKJbIrCJcDOWq5XyoOFlKbr598afyzl5kBel6EGdPChMgatiA5vmkwkmD8pehlL0yma1j81VsmQ+IbTL2HRTiu4kY5PAZjZK0TuO5GdbW5uZZZVvKBk3GZvlzIoO8hibpSxFb23N/kwqYd/m5RibVsOdcGPGO8Zro1zDyfjBLrBpnEioEjM2CWyWF6XolghsItzsMjZLPXmQcUY+rzM2c82w7iUvMjZzjbFp3CZmXk8eFOYxNostV813gWEM8naEjM116/IH7cPUP5CfVV+2mjE1yXwzyS5j000pOmNsFsYqsGkcx4tS9MphDGwas6yKzdg0jrHnV8ZmWEvRCxn/0er4WQn7Nqs+5UUpejLwxv7LO3bjZAdhGxvPuTtSxmapZ0WXOHc3ohTdEoFNhJvx4qeUd8PMGZvGbCDzGJtuJw8yBwODnLGZb4zN5HuJRjMvNsxKnbEZpoOf1xmbuYK8HSFjU5IaGzN/JmOzsln15VwXOH5lbDLGZjarMTaNQWlK0StH8rN2G9jMl7HZrZv9ukolHs/sp2HN2ExuOzfnA1bHz0rYtxn7WXK7eFGKTsam94Ic2DR+P4zXpX4ENr2cPCj5c7lK0ePx7P0S5+5plKJbIrCJcCtHKXoikZ2x6aZ8PN+EFOaJLMI8xqbx88iFyYPSylmK3rVrun9Vykm2Vb81l6OTsVnZrPpyrn2nef9dyORBlKJ7w+qYYh7SJPn55BtiAMFWaMZmvoxEPwKbhdwYLpVixthMbjsyNq2D5bFYYQEbq8BbEIJulSKMpehhzNi0qkwp1+RBTqpgOjJK0S0R2ES4laMU3SpQ6Saw6SZjM+izojudPCjfTjZfxmZHmjyo2AlG8pWim0+ykts+CCeAXrB6H+bAJhmblc2qD7jJ2Cxk8iBK0b1hdUzxa3gWlFbys66rywxGFFuKbgxslitz0Mm+olzcjEEqWWdsEtj0Nlie3E9FIunjCzdmvBOWjM2gBTbdnveb9yPlzNi0+t5x7p5GKbolApsIt3IENq0uYI0lSNGo/YVXIpG/vLGSJg9yGtj0OmOzI4+x6TRjMxJpn7Ahue0rpRTd6n2sXp35M4HNyhaWUvRKuPj3mtvAZqXckOmI7DI2zcc8882+fIG7XDOsl4qTfUW5uM3YTG6jaDQdFHJzPmA1OWMl7Nu87FNWYwQbn0dx7DI2g7B9nQQ2yzXBaZgnD7L63oVpYthSoxTdEoFNhJtdKbqXOz+rO1ZOg5FWBwDzc35lbBZSim41HppRIaXoLS3Zn1dHytgs1xib9fWZ2QOVEiBwkrFpXoaTo8pSbCl6qSYPMvezShiHzmtWxxS7UnQpGBeuKEyhY2zmy9j0I7BpdV7ol0IDm7W16X1fW5vzbMKOMMZmsX0qeewgsFkadhmbQTivNScTJNXWpuce8GuMTa8nDyrl9SoZm7lRim6JwCbCzY+MzXyBTeNO30kmUa7AZilPgoJSil6KMTbDFLgqNrDptBQ9+f2otIxNStHhZcam8eI+Vyk6GZvecJuxSWAgnGKx9HlTJUweFKSMzUJL0evqsqtnnKjUUnQv+1SyPxjHcDY+j+KEoRQ9mUyQFImkJxMKSyl6vsmDjPtxr7e91c0Szt3TKEW3RGAT4Zb8YtfUlG5WdKs7Vk4zNp1kEvlVil6KyYMKKUXv6GNslnryoGSQN/n9sCu7DatCStGbmhjrqpK4zdg0ZxwYb7QYf+emFJ0xNgtDKXrHYPycGWPTW4VOHmTM2Mz3GqNKDWx62afsStHZf3kjDKXoxmvSpGSCQVgmD8p3/VvKwCYZm7lRim6JwCbCLXmSUO6MTfMYm3bByGIzNsM2xqbTUnTjyfSmTdlBpo48xmZzs7ugm9uMTbuy27BKvv8+fdLP5StFTySkrVtL2y6Uj9uMTeN+1ZixKWX2FTel6GRsFsbNrOhSMC5c4Z7xc843xmYYMzaDVoruJGOztjb7JrMTHSGwabyeKKYUvaqKjPNSCHIpejKZwNiHkvwObJYyY5NS9PKiFN0SgU2EWzlK0b3O2Mw3eVC5ZoAtZIyofGNsFpKxuW5d9u+LLUUP08HPXDZvNeFULrnG2IzHs0+yKjVjc+ed08/lK0WXwtVHkFuxs6LbBTa9njyorY1Zvc0oRe8YjMclL0rR/R5jM+il6G7H2Mz3GqNKHWMzeS7RqVPu/umE8VyYGzPeC0PGZhACm8WOsWk1lni5hgEgsJkbpeiWCGwivOLxdOakefIgP8fYzJexmUhkZnwGJWOznKXoxpPp9euzf9+RS9EldyfSuUrRjVmJ5ozNSghsxmLp71J9vdSrV/tjApsdi1eTB0mZ+55cGZuFlKJLlZHZ5CWrm2WUoleeXBmbxt8lEsWVovs1eVDQStELydikFL39/5qa4gObdpMHsf/yRrnGeXQrkXCWsbltW3luchabsZlv8txSZmwyxmZulKJbIrCJ8DJ/qcsV2GxpcV6KbncQMS4TlFnRy1mKbnyPpcjYLNdJgxeKvUjIVYpuXHclTh5kLlndaaf2x+YxNp1k0yGcEgnvJg+S8mdsFlOKLlVGAMBLlKJ3DObApt0Ym+YL5+RzZnal6OXKHAx6KbpdexKJ9DYyTx7k9JzAanLGStivJd9/TU3uMWCdME4eRMa59+yum/wOHG/dmh5KKldgM7lsqYV58iCr712YJoYtNUrRLRHYRHhZXZwmT9K83Pnlu2PlthRdymy7X5MH+ZmxGYmkP6vNm7N/7zboZnUxE5YDYCkzNq0Cm8nstHg8PMFfO8Y+3KlTepzNTZsyTxrJ2Kxcdn3YTWDTLmOz2MmDKjUA4CVK0TsG8+RBdmNsWu2X82Vs+lGKHqSMTTel6G1t6cALkwdlSr5/cyl6sZMHcWPGe3bjZPu9fa3OuY1KlYBjp9STB1GK7h9K0S0R2ER4WX2pSzF+idel6OZlglKKXkjGZqFjbEqZJ9T52ua2XVK4A5tuTqTdBjYLKT0LKnNml3ECIWPWptUJV1j6B3Jzso/N9buqqsImDypkjE2pMgIAXmJW9I7BaSm61XcmDJMHhaUU3fw5eDV5UCWNsUkpevAZ+7wxKzbogU3jTOnlCNKZv5dMHlQ5KEW3RGAT4WWVhp08aAR58iApc4cUlFJ0Jye15oOk8cATi6UzAZzcPcq1TLFjbErhOQB6XYq+bVv6czAG75LfjUoKbBr7iTmwaRxnk1L0yuVkH5vrd+aMGqcZm4WWoldCAMBLVmNsUopeeZxOHlRIxmYQApthKUU3BzbJ2Eyzy9ikFD147G5++X1Oa/xuGIOYSZWQsVmuUnTG2MyNUnRLoQ5s3nnnnWpoaFBdXZ0OPfRQzZw5M+fy//jHPzR48GDV1dXpgAMO0HPPPZe1zPz58/X1r39dPXr0UJcuXTR8+HAtWrSoVG8BxbC6W1GujE3zGJuRSPv/kvuMzVxB0lKeBLk9MW9ry3zfUuZB0+3dI68yNq3aJYXjABiPW4+zU0wpupTefrlK0aXwj7NpV4ou5c/YDEP/QH5eZGzaXdwXM3lQW5t12yohAOAlq+FMjNuNUvTKUK6MzXLdOAh6KbrdftG4fQodY7PSA5tejrFJKXppBLUU3ZhMEMRSdC8yNss1eVCYE1bKgVJ0S6ENbE6ZMkXjx4/XVVddpdmzZ2vIkCEaNWqUVplnw93uzTff1Lnnnqvvf//7mjNnjkaPHq3Ro0frgw8+SC3z2Wef6cgjj9TgwYM1ffp0vffee/r1r3+tOuMBDsFRrlJ0Jxmbxv+N7QpTxma+A57VQaaYwGauHbGbg6/dSWcYDoB2g4cXG9hMvr7SS9HNGZvJyYOkzIxNApuVy+uMTaeTB+UrRbfrX5UQAPBSvosXSjkrg3mMTeN5db4xNvONIWkMFlCK3o6MTfeS5xNejLGZPHc3Z2yy//KGXSm639u30sbYtJqLwc/JgzhvTyNj01JoA5s333yzLrroIo0dO1b77ruv7r77btXX1+v++++3XP7WW2/VySefrJ///OfaZ599dO211+rggw/WHXfckVrm//2//6dTTz1VN954o4YOHao999xTX//619XHmAWEwk2dKv30p9LChd6sz+pLnTxotLYWdoCbO1f6yU+kd96x/jtS+87bfFA1/l+pkwdZHWSMJ3zm8sF8cmVsujn42p10uj0APvSQNGGCtGGDu9dJ7Z/TDTdI11/v7jOza6ObE2mrPpYrsFnIhYyVBx8sfHt5JVfGptNS9A0bpF/+UjrrLOmss1R1zjna6/HHc3+Oc+a07yfmzCmu/U7FYu1964YbrLOT89mwQfrVr9r7eC4vvNC+jw5ClcLkye1tzte/vAhsFjJ5UL79p1eBzYUL2z+TqVPdva4U3nmnvd/PnevdOq22h3FCuSCWore1SRMnpvYZOuus9n3hxo1+tyy4isnYzFWK7sV4iIVwe2O4lJLfCSc3LXONsVlMYLMcmbKffy5ddpk0bVpp1pWvTz37bPu+eMmS/Ot3k7H59tvt+9X33nP1FvL6/HPp0kvzb68//1m64orsiTyT7Xr/ffvXtrVJ110n/f732ecmzz4rjR8vLV1q//q1a9vPvx5+OPt3991n3S4puBmbQQts5hpjM7ntH3nE/vX5Js91O3nQM8/k7xNJXgQ216zJ/x7DioxNS6EM8ba0tOidd97RhAkTUs9Fo1GNHDlSM2bMsHzNjBkzNH78+IznRo0apaeeekqSFI/H9eyzz+oXv/iFRo0apTlz5mj33XfXhAkTNHr0aMt1Njc3q9nwxdu4/aS2tbVVrX7fNfJI8n0U/X5aW1V99tmKrFun+KpVik2eXHzjtm5V8qscj0YVa21VVX19Klrfum6dtMMOrlZZ9cMfKjpzphKvv662//5XkhTZujXri9K2ZUvquZikeGurqquqFJGUaGtT2/btFWlqsvyStRrGEYts25ZeVyTS3o7k32lpUaJEfSm6dasMIVQlWlpS7ba0aZPMu874tm2KJV9j8XnkUl1drYjN7+LNzc773ubNWe2SpLYNG5xvuy++UM2YMZKkWJcuiv/yl85et13k+edVffnl7X938GAlTjvN2QvXr7du+5Ytjttu7D9JrZs2ST16KLJxY7pv1dUp3tqqqqqq9Hdky5bCLsi++EI1F1zQvt6uXRX/xS/cr8MLW7ak+1xVleI77JB+vytWKL79vUWbmzP6uiTFNm5UvLVV0TvuUNWNN6aej0raV9K20aOlr33N8s9WXXSRou+8o/iMGYq9+aaHb8ha5NlnVb39eNe2zz5KnHKKq9dH77pLVRMnSpJaDztMamjIXqi5uX0fvWGD4mvXKnbffcU2u3CffaaasWMlSbGePRX/6U/tlzX0AaO25mbb71C0pSW9j00kFIlG0z9v3Zp6nXG5pFhzc/v3qKUl485wbNu2VH+TZP/d3rzZsl12+7uqK65Q9G9/U+Khh9S2eLGvJ7DVF12kyJw5is+cqdhrr3myzqqtW7PusLdt2JB5TIxELD8fv0SeflrVv/pV1vOxHXdU/NJLfWhRcTw7z8shsnlz+jOtrlY8Gk3vu7duTZ0vGI9ZSVbnJtXNze3nWzU1aquqslxXKZnPCxOtrbnPn0olFlPN9jG1E/X1imy/EZRxbmZkOF+K1dRIxn1fU5Oj71b1li1Z526xrVsz938OuO13VRMmKPr3vyvxt7+pbdGiorKUstZVVaWa7e2IV1crXlWV7q9NTYqvW9d+fNyyRfGNGxW7+277lScSqtke5ItXVSlh3H9t25a1javHjlVk3jzFZ89W7OWXC35PWe/x8ssV/cc/2t/j4sXW2+ujj1Rz4YWSpNhOOyl+8cXZ7ZozR7GXXrL8G5F//EPVv/61JKntwAOVOP749l9s2ZLaXrEtWxQ3JBEZRW+9VVU33qhENKq2ww+XBgxo/8WHH6rmooss2yWZrpskRbdfTxivv+yUcn8XMR67tp9zG0Xr6tJ9Yf36kh/LkvvJpHhzc2q/EL3llsxtv/PO2a9vbc14fWzbNiUM2z5eU5M6fsdaW3PvAzZvbu8TTU3t+4vbbsvZ9mhTU9b5V6KpydV+NvUeq6ps32M5edn3jNc1bZLv50Wl5GZ7hTKw2djYqFgspr59+2Y837dvX3300UeWr1mxYoXl8itWrJAkrVq1Sps3b9b111+v6667TjfccIOef/55fetb39LLL7+sY445JmudEydO1DXXXJP1/Isvvqh6q0GDQ2xqkdkinTZu1Cnr1kmS1s2Zo9ctxjd1q+uSJTph++MlK1dqznPP6ZBt27TL9uemP/GEmvr3d7XOkz/+WLWSWhcs0L+3t3GXt9/WIablZkyfrqO2P160ZInee+45nZpIqEbS5o0b9dL21/Z76y0davF3pv/nP2rq10+StPPbb2v49uc//PRTxerqdND2n9+fM0eLevd29R6c2uejj/QVw89bN2zQ1ByfS/3KlTrR9NzG1av1yvbX1K5bp5O3P79yzRrNzPMZH9fcrO42v1u1dKn+u73P5et7Vu2SpLlvvKGlVebDorXe77+vI7Y/XjZtmmYfcICj1yU1/PvfGrL98fxnn9XnEbuQbaZuX36p4y2ef+fNN7XC4Z3ngbNn62DTc9NfeEFN/ftr95kzdeD25+Z++qmWPPechq5apV23P/fqtGna/PHHjv6OUa9581L9f+m0aZqz//6u1+GFHgsW6NjtjxcuX67Fc+cquaf+8uOP9f72PrjvJ59oL9NrF7z7rj567jkNnTYttT2MPnn+eX1h039GLVigOkmtH3+s5z3Yl+Wzx7PPKtkjP3zmGX2RnBzKoQNffVW7b3/81mOPae2++2Yt02n9ep2y/aJ47Tvv6I0yvC87O737rg7f/vjLV17R+3vvbbtst8WLLb9Db8+YoVU22VtfmT9f+ySXmzNHvRYtUvIvzHz9da3enhUwaN487Wd67fz339dnzz2nry5fLuMZxWfz52u+YZt1/+ILHWfxt2e98YZW5sgqM+/vjpgzR70lRdau1dQnnlCrcTzBMjtlwQJ1ktTyySd6waP+cWxjo3qYnpv/9tup/v7RZ58p2tqa/rxmzNAqn0/g93juOVkdIb58+WW9v5d5TxMexZ7n5bLrrFkauv3xB59+qhXdu2vU9p+Xf/mlZiXPt958M+t8a/O6dalzqqTj169XN0mtkYhefuON1LpWLFyot8uw79p19uzU+5GkzRs2ZLWxHKKtrUrefmuORpXMn1qycKHmWLRnh48/1tHbHy9cvlwtW7akvluzZszQSgfnHSMbG2XORVuyYIHmFvj+nfa7o959V70kRRob9eITT6ita9eC/p4kHfnee9rRsK5YXZ2+vv136zZv1ifvv6/Dtv/8yQcfaNnDD+uE7ceFdTNm5LyGicRi6XVt3KjGhQvTx5c33tBq4ziMkk5bsEDVkprnz9eLHvaho+fO1Q6SImvWaNqUKWq2SPTYac6c1LH28+nT9aHhpuepX3yhmjzt2vtf/9Lg7Y/f/9e/tGh7hmDnlSt10vbttWbmTM2wef1Bb7yh3SRF4nHNmDJF6wa3r63vrFn6qk27JGmXd95J7Sfmffyx9ti2TV3VHpy3mj/DSin2d7u+9VZqv/D+F1/oS1NbBi5enDpf//D11/VFD/PRz0PxuL5h+j4b97VD33hDu8qw7S3Os0Zt2iTjYHyfzJunpsbG1Lb/cuXK1Lnlki++yLkPqF+xQidu7/uNM2fqrTyf0+APPpC5RfFNmxx/vpJ08Ouva6Dav5Mz/v53rfvKV/K+phy86HuDP/oovV+ZPVurS1nh6bMm0z4zl1AGNkshvv3u2je+8Q39dHt2yEEHHaQ333xTd999t2Vgc8KECRlZoBs3btTAgQN10kknqXt3u5BNuLS2tmrq1Kk68cQTVVNMpsiXX6Ye7tCli0499dTiG2coj9iloUH9Tz1V0f/8R9qeSXLcfvsp8dWv2r3aUvX2C6aaeDzVxkhjY9Zyhx10UOrxrnvsoV1OPVXVtbVSU5O61tWlX2uTNn/sUUdJ2y+AIobytX33318Jw8naAfvtp/292FYWoq++mvFz55qa3J+LxU2DHrW16dcsXpx6vu8uu+T9jKuvvtq25LXPDjvoxBNPdNb3bG5mHPSVr2iIw20XMQSKBnTqpH4ut3l0wYLU4313202Dnf5dmwnPDtl/fyWcrmPlyqznjj3sMGnffRU1jCE85LDDdOCpp6rqX/9KPXf0V78qHXhg1uvz/k1D+ckunTqpf4n6aN52bM+qlqTdBg3SQMN+eredd9bA7e2KWmRBDBowQHuceqqq/vjH1HOx669X1fbM28EDB2ofm/dVvT1w3am11Zt9WR5Rw75uv4YG23bZqdpemSBJhx1yiBLHWYTcDN/fXsbvtQ8ihpPxhv79U5+jJZuy6OEHH2z7HYoavnfDDztMkWg6Z3DE0KGp10XffTfrtft85Sva+9RTVXX77RnP77nbbtrd8PciNtUjww44wLJddsfaqt/+NvX4xKOPllzerPNS9fbzpFrJs/5RbZHtve+u6VsNg/ffP6Mkbbjh8/FL1NDnYr/8papuuEGS1LDTTrn7akB5dp6XQ9RQvrvfsGHa15B13r9nz1R/ilqU+Xa12B9Vbx8+oqa+Xscb1tVvhx3Ks0827C/t2lgWhjLd2l69pO0JBLvstJPlcTliOL9s2HtvqVev1M/DDjzQ0Xer2uLG2sA+fbSzy/fvtt9VX3116vFJRxyRzu4rQNW112auyxD026FvXw0/8sjUz18ZOFB77bNP6udebW25P2tD+e8OO+2knobXjjj44MyKi3hc1dv3b3WxmKd9qNpQ1XjCAQdYnusZz333GDhQDYa/n9zf52pX9PnnU48P3GOP9PXKvHmp53vX19u+vurRR1OPDx8yRIkT2tNVjNdO5nZJ7cHapP2GDFH0zTelZctUHYnk3Yal3N9FDUOt7T9ihPYzt7uqSrr11vZ277ST63M5VyzG8O/fu3dq+1QZyrMPHzIknW1rUB3NrKf4SkODEnvumfp51732krb3gYH9++feBxjOY3fK0SeSzNeoklTV0qJTR43KHLIthypDdejhQ4ZYn/uWkZd9L/r666nHI444Qomjj86xdLhtdDHMTygDm71791ZVVZVWmi7oV65cqX7bs+DM+vXrl3P53r17q7q6WvuaMln22WcfvW7oPEa1tbWqNY7Dsl1NTU3JTg79UvR7MozTEW1pUdSL7WPIiot26tS+TsPnX712rbuyvXg8NaNdpLk5/X4t7oJUGy68q2pqVFVTk9rRRuLx9GttMqtqIhHLtlWZBnOvlkpXemi6kxdpacn9GVuM7Zexnaw+j1xyjLEZbW1NrTdv3zN+Pt26SZs2SWovwXC87QwXztHGRvf909gftm1r7w8u/25G29vanLfdoo/VxOPtrzesv7pHj6yxo2qkwvqX4W8WtL28YuiTVbW1qjKMX1QVi6U/B4u+W7V1a/vvkzcuqqpUNWRI+ve5PkfDMBI10ajjk6yCGS6UXPWvJEOGW3UiYf2ZG7ZRtKnJv89Uyvw+trYW1Ban+87q2tqMcaKqk98dG1WJRPv2Nx0XMvqbZP/djsVyrj9rf2c4dtbkaVvJbX9PGfv9YlmMn1hl7O+mcyzb/ltOxvYZslyiW7f6+70pUknPXQ3HyOr6eskQYMv4jluM1Wh5bpLcB3fqpBq7dZWS6ZgSaWvz57zfcN4V6dw59Tgai1lvB8N+q6q+XjK8xvF3Kxl0MuzXijmvd9zvjPvClpbi9gOG/ljT0pJ5TlNbq6jxXKKtrX08wu0iq1fnbq/xesd0zpV1XDIE8CJbtnjbhwxZTjXr1llvL8P7zjqGJb9judplCDBmnJsYt0Gu8wnjuYnxnN1w/Mxql0lVp06p17n5HpZkf2fYf1V37569zQ2l0FVr1rg/l3PDYmzSaFtb+rOw2/ZGpuNzlfm8x7jPSSRy7wOc9okk4zWqYV9T09qaObZnLobgrqtrwhLzpO8ZvrvVdXWBeW+l4GZbhXLyoE6dOumQQw7RNMOAyPF4XNOmTdNhhx1m+ZrDDjssY3mpPRU4uXynTp00fPhwfWwqy/zkk0+02267efwOOiBj5qJXg7tbDZxrN3mIE8a7W21t9pNESJkn38k7WlaTB9lNgmM3eVA5Z0U3v6985X1Wg8MXMyt6rsmDCp0V3ZB94GqQaeOybvuNlH9WVzvG9Hpj24udFT3ZnnyTB7mdITHJ+PkUsr28Yp48yCYglHNW9GT7e/fOuNhWrtIH4991USJRMOPnWMiA83aTfBnlm8CjnNwcL5zsY3P9zjx5UL5Z0ZP7ZPPvck0eZPxuu51kw7i8nzMPx2Lp9+xlO6y2h/GCzDwrut+TQ0iZn63xnMPv702QGT9nt5MHWe2zkt+3mprMi1y/Jg/yq18a/65xCCy7/WKuyYOcnA8kEuljXqHnLIXy8hhl7FPmscatJg9avTr98/r1ubeV3Yzd5r+b/NvG1xV6TmbFuG5j+42M7TE+jsczr4HszhuM53925ym5Piu7z9T42Opvm4/hQZkV3Xg+aDV50E47pR+X+tzZ6jtp3D5Ovk9W14nGbe9m8iC357FeX9tV2vGZWdEthTKwKUnjx4/XvffeqwcffFDz58/Xj3/8Y23ZskVjt084cP7552dMLnTppZfq+eef10033aSPPvpIV199tWbNmqVx48allvn5z3+uKVOm6N5779WCBQt0xx136F//+pcuNg1ajAIYd/ZezZ5o9aU2HjTsDuR2zAGK5E7V6kTD+B6czopuvHg2LmM+CSpXYNPtrJ5WB0njc25nRc+1TLkDm8bPftUq20xbR21wE+iyC364uUhwOyt6IbOgmhn7TiHbyyvGdtTU2Aeo7GZFTyTSJ5d9+mSeiNp9jolE5t8tR2DT+DcK+XvG/mR34WTcp5XjPeXi5njhZB9rZvxdVZX9d8JqHcn9db4bQ158t83Ll2PmYSftMAY5vVxvUtBnRTf2T2Ng0+/vTZCZA2rG72ohgc3kc5062a+rlNzeGC5HO4yBTbv2mAPMdsdMO1u3po/35Q5senmMMh/DjT936pQd2DQHoSyGqEoxB91y7b/M78PLfYj5vNaK8X0bH5v7gl27jOs1LmP8Hud6T3ZJAcbXWJ2z2M2KHo9bVuiUTb5Z0Yu5RnXL6jtp3JZOvk/mftDSkrntjd+TfNerbs9jje3z4tqu0o7PzIpuKbSBzbPPPluTJk3SlVdeqYMOOkhz587V888/n5ogaNGiRVq+fHlq+cMPP1wPP/yw7rnnHg0ZMkSPPfaYnnrqKe1vmPTim9/8pu6++27deOONOuCAA3Tffffp8ccf15GGsVZQoFJnbCYDm8VkbJp3lsl2Wp3sGbM7k4HIZBvsApuGlP2Mtpvfh18Zm/nuFOcLbHqZsenmrrXXd/VaWiQX43lktaHQv+tlxmauwKbbCxkr5ru+20tEyq7YjM1Nm9LbyhTYtBsfN+s7WY67wMXedba7AWG3jN93tt0cL5zsY81yZWzm6zfJ5wrN2CwmsOlnxqb5b3vVFqv1GLedOWPT74wcKbN9O+6YLgf2+3sTZMbPua6ufZslL4rz3Ri0Oh9I9oOamvZ1Jb/D5Qr+Bz1j08l+3ly+6OS75dV+rRDlzNg0ZqJt25Z9PZHr+sJ84yxXxrn5fXi1DzEMrSXJvr12N4Bz3agzssvYtAtymtl9991kbJq3sZ+TqOQLbNbVSck5OIKesRmLZQeJzRmbxsBmuTI2C00eqbTjs9tr7g4i1Fti3LhxGRmXRtOnT8967qyzztJZZ52Vc53f+9739L3vfc+L5sEoDKXobgKbuUrRje0ynvzW10vbZx22LUU3Z2yW8mTZ6sQ8kcgYsymD1edm3A5ud7JWd5hqanKXvVjx4q6eednVqyU3sxV6Hdh0c3HmNrDptvTMivl1q1enT9bKyWnGpl1g03jHfKedMk9E7T7HXAGsUvEysOmkRHHbtvb9UqnHDrVTaCm63T7WLFdGTaGl6OXI2AxaYNPqwq3Y9UrZgU27Cge/GNvXtWt7v9uypfIunLxkzthM/t/cbJ+1let8wFiKnlxXS0vHy9g0fh+MN3ZKVYpuDCoYZ9kOW2DT+F63bMk+l8hVii7lzrazK5OW8gcMvdqHmCeOsWuvXcamk/Mc09ijJStFd5Kxad7GfmWw5QtsSu3XqRs3Bj+waZcpb9z25SpF33FHd68t9G+GCaXolkKbsYmQKUVg0+tSdLvAplel6MaTTrsLNT8zNu2eS7IKtrW1pe/ouS1FN2dsRqPpMQ4Lzdj04uAnuT/h8CKwaWx7KUvRvc7YlPwbZzNXxqaTUnRju/v0ycx4cVqaE7bAppNMHsnfsh0vMjbdlKLbZWy6KUXPdSFY6HfbvHzQApvFMo5lbRT0UnTjZ1tfn95vVNqFk5fsApvm3xm3Yc+e7f+bv1uJRGYpupS+wO5oY2za7f+c7OcLKUU3fj7duqW/m+XIlC1XxqaTUnSnGZv5StFLFdh0ek5bTMbmmjWZwxDlGiPTbaWI24zNoBwjnAQ2k9ep+cZqLZbVd9L49/J9n6za1tJin7GZ73rVfF6Xb3nG2MyNUnRLBDZRHsYdilcnQFYZgt27p0/Uis3YTLYzX8ZmrsCm8cBgd2crLIFNuwuG5PPFZmx26ZL+7PycPEhy33cKnTyoVKXoVpMHJS++S5GxGYTApjkAkq+kuKkpO7BZqRmbxv7pZIzNQv+OV9wcL5zsY83KkbFpNzFYMZMH+TnGpvlve9EWu/1crsmDglaKXl+f3m9U2oWTl8xjOxr/t7vATmYEJhKZ50KxWDqgYszYNK+rlMz9MAil6J06pb8rTvbzhWRsmgM35dru8Xh2lmUxzOvKN3mQm8BmrjLpoAU2i8nYNK8z13mK3fuyO3fOl7GZKys26IFNY2VhrrFai5UvYzPfdYvdNaIXpeh2f9OIwGZulKJbIrCJ8jDuUOJxbw48VncrIpH0QcOrUvRSZ2zmGo+nnJMH2T2XVM7AphdjbBY6DovkPts3qGNsJreBcRxBLyYPMr+u1IOg2ylk8qDk99Rcit6nj9SpkxLb+67tGJsdJWMzKIHNUmRs5sr2KHSMzVz9otCSzVgs831UWsam3TrM5chBuWhNSravc+f2SgMCm/kVk7Ep2U9sktznJ9dVruC/VWDTj0n07MYLLkfGZjkDm17fUDRnbJonDypmjM0glKKXI2PTfN5XSGCz0IzNfKXofrFKJjArZsg0N/JNHlRoxqbd5EFeBzaLHWasrc3bmyFBQym6JQKbKA+7oGEx7L7UyYPG6tXuZseza6PbMTbtMjaDPnmQ3XNJ+QKbxZaid+mSfl2hY2waAwhhKEX3IqvLSSm68c6xXdmtG0EtRTd+d+wCVMmxU82l6MnyoHxBCgKbpecmsOlkH2tmviiyu7j3qhS90JsWpZqwpxDlDGyaMzaDUmaYZN6vJv9vavJ3Rt4gM09aY/zfKnMoEskct9n4fTPf0JLKn7GZb9y/cjGfBye3h5MxNs2TB7nN2KyvL98QAF4fn/JNHmQ8JjQ1ZY4lKeW+mRvEUnS79hYT2DSf9+WaMMhtYNO4rjCWopvPK4zKNTN6qcbY9KIU3e5vGiXbF41mHgucfkdK9d0KCkrRLRHYRHmYs+e8Gp8ryRjYTB40YrH2MUycsmujVxmbxrt3TicPKnfGZiGBzeS2CEIpunEdhQYYpeICm4VmipZyVnRjYNOLjM2glKKbL3CNs+PalRQns4DMgc3kDZHktjIPvm/1N6XyjEVp/BuF/D23kwcV+ne8YvzbbjI27faxZuWePKjQMTY7amDTuO2ClI2TlOyf5sCm5O9wAUHmNmOzvj7zotku6OLXGJv5gi3lYr64zXdzuFQZm6Xu914enxKJzO3W1JSdsRmNprfl0qXZ2bhelaKb34dXx13z+e/GjfnHXMxVim7VLi9K0UsxeZCfgU3zscFKuTI23YyxafX52k3aZty+biYPctvXk+2rrXU2TJSZeTk/z2lLgVJ0SwQ2UR5241cWwy5DsNCDhpsxNo1Bj0qaPCjXHXvjZ9atW/pxoaXouTI2Cy1FNx4AGWMzf8ZmpU0eJFn3IeNyyYzNlhZp2bL088n9Rr6JQMKYsWnsn3afeVjH2PRr8iDz985pxqabY18pxrUsVCnaYndMMU8eFJSL1iS7jE3j75Ap1xibxkkIjYEBu2xCq3M/47rKkTnp9sZwqbgtRc81xmaQS9G9PD5ZHcNz9anly7PXEfRSdKsgjlV2YKlK0Z0GsYyfq13Gp5OMzaDc/LI65zbzsxTdzRibdvs44/7VeO5UqoxNc2DTaYDSvFylHZspRbdEYBPlUYpSdLtAmleBzUovRS8mY9NYFlBoKbpVxmYhpeilCGyGaYxNt6XopZg8KChjbEr5MzaTgU1JWrgw/dhpKXoYJw8qJGMzKIHNUpSiF5OxaVeKnutCkFL0/Os0HlNyfT5+BzYTCQKbhciVsWn8vXHb2t2Ey1WKbv5bpRKUjM1iStELmTzIGCwoZ2DTy+OT1THcqk8ls9Gsxk51Oit6vjLpcpWiS9Zt9nvyoEIzNoN6jAhTYNOLUnTjNWupxtisq/MmY7PSjs2UolsisIny8Cuw6SbgYtdGt6XoUjr7wC6bKAil6G4zNo2fmTE45FXGZn19+jk3A/EbPwvjAdCvMTbNA1Y7/buFZnXZlaK3tqY/446YsekksPnFF+nXbg+sJLZnbEbMJTdWf1Mq/cmSuR127cqlksfYdLKPNbPLcpLyTx5kV4qe60Kw0MmDOlJg0/i9NApaKfq2beljUzK72zgEQqVdPHnFKrBpnqBFyixFd5KxaZ48yPy3SiVfsKVczBe3biYPqqsrvhQ9+Rm2tpZ2fFkvj0/5Mjat+pRZrmuLIGRsOsmwNLen2DE2t2xJ7xudvC/z5Hh2gU23kwcFPbDp5xibyf2WMUtecp6xaZ48yHjNWqpZ0b0qRa+0YzOl6JYIbKI8ShHYtMsQNB40ypGxaRXYTO74jQcG40l8UEvRnWZsGi9CvRxjs5DxH3NlbDoNjnoZ2LRaX76/W1Mjde1qv75c7AKbxjYYL7xLkbEZlDE2jf9bXQhXVWWeIDU2tv/fp0/7+JxS/hOocmdsWq3fzd+MxbIDo1aCHNjM9T22y9h0U4put99xM3mQ+edkZlPnzpntIrBpvQ67wGbQStHNgR3j/+bfIy35WRvPcczByHjcvhQ9X8am8fzKr4zNIJSilzpj064U3bxur5U6YzNXKbqVzZvtS2LdBN0qKWMzFku/zsn7yvWZusnYDEopujGpIQgZm1YJEslt4+T75DRjM7nty1WKTmCzHaXolghsojxKMcZmuUrRnWZsWp28uJ08yBzYLOVFnN3dODvG91yqUvRCZuy2C2waT7LyMX/2jY3usg8KHf/JeBFX6AWCXeDdXDKWVIqMTbfbyytWfS5XKXp1tfUJp3GfkS/7qtwZm8UGNs19KWxjbEq5+6kXGZulnDzI/N2ulDE2vQhi2B1TjIJUZigR2CxU8rM2fhfMxzzj2OW5zgeCkLEZ1FJ0t2NsejV5kFTa7V7qMTbNkwdJ1oFN437KLtvOzYzdfgc2vRxj07icl4HNfN+1oBwj7JIJzHr3Tj/2oxQ9kXAW2LS7RrQLbJYyY7OQqohKD2wmt3ckkhk36OAIbKI8/CpFL9XkQbnG2JSsMzadTB7kdyl6MWNsejl5UL622LXLq0GmYzFp3TpnrzW3QXJ/4DW/d68zNr0eY9P82bS1SevXF7auYjidPChfYNOY5Z0vSGGXmVcq5QpsBiVj0ziGYVKugJ4XGZtuStGTw2SY12+X4WKe3blSMja9CLLaHVOMglaKTmCzMMaL1CTz98K8bd1kbBZ686BQQS1FL2fGZjH7Nre8nBXd7eRBRvvvn35sd31RTCl6qWZFl0pfii6l2+8kqGQXrDYP5xSWUnS7c26z6ur00FPlLkWX2rePeds7nRXdPHmQ8ZrVy4zNRML7MTYrdVZ0sjUzENhEeZh3KOUqRXdz0LBrYyFjbCZ38E6yiXKdBAV18iAvxtjMl7Hp9ALWnIHg9s6e3ZiYboLihZ50GwObkUi6nK5cgc1CgwTFbi+vOJ08KPm4piZvxmYiDKXobk7QzH3JaSm6XyeBLS3Z2b+5vg+lzNi0K0V3M/Zqly6ZpXKVEtjsqKXoVpnwhdxM62iSn7WxZNw8xqb5mGV3PhDUjM0glaJb3XyRsgObXo2xaV6310pZit7UZJ2xaXxvSfvtl35sd31hDvzk2n+VaubmUpeiNzdLGzbY/91CMzYTiextEpZSdLsqKSvJc85yZ2xK7duzFKXo+Y7Nbvq6cZ4FStGtJT8fApsZCGyiPMqZsVmOMTaNJVPFBjbDPnmQVWark1L0fBmbhZSiF3Jnz26ZYgKbhWRsSumLMzcZJ3azotsFNktRii75E9j0KmPTmOWdL0hR7lJ0qzZUcsamkwsgIz8mD7J63vg6q5mzC5k9mMBmcMoMk8jYLIyTjE1zYMDJ5EF+jbEZlIxNu1J08++SzOdLbm905ipFL2WmbDknD8qVsbnvvunHTjM2/ShFtzpvKKYU3by+5PjkZnaBTav2mD/TeDz73NWqLVJ2xmYQjhFOMzal9Dnn5s2Z15NeMn4fje1pbc3e9lYJHk4mDyqmFD3XTUAvKvGs+pHfFR9eSm5vZkTPQGAT5VHOwGaXLumdYDkmD/KyFL2ckwe5zdjMN8Zm0CYPkooLbLrJ9i1k/CfjQTaZZVpI8MPqZMIq+yWpFJMHSaUtqXHSDquMzeQdXzel6PkyfoOQsenmb5r7ZtAnD3Ib2PRj8qB8GZvGmbOLCWyWYlzLQpWiLZSidxyFlKLbBenylaJ3pDE27UrRpfzVRp06uT8fMAefO9LkQT17Srvskv7Z7voiV5m0n7Oie5mxaffek8s5yc6z6i9NTdnLus3YDENgsxwzoxu3r3FyUqvApuQsoGzO2CxVKbr5uq6qKv19dPodKTYpIOgoRbdEYBPl4WbMNKdyZQgm74a5OWDYtbHcpehhyNgs1RibXk4eJLkPbCZnxpacB8Xj8cKy+KxOgrwKbJKx2c78PXRQis7kQQX8DS85GYvLqJiMzWi0/TvvNmMzXxlqru+2m2NfKca1LFQp2uJk8iBzsCZIGZvJfUUhExt0NE4mD8o1xqabyYPK8T0Jaim604zNTp2y931MHtTObvKgnXZyFpByE3QrR2AzeV7r5RibxvM943nzli3W2X9Oj+tbtjgLsLkZx7RcCsnYlEp37mz8Pnbrln7c0mK/7Y28nDzI/Dqrv2dkziyX0tu00FJ0N68NA0rRLRHYROnFYqUpY8sVSEuefKxZ4/xCqNCMzVyBTeOBwVgqZQxYBqkUvZjJg9yWopuXqa8vLGPTPMZmMYHNAQPSj52ebFgd/MsZ2HRSim688C5VxmZQxti0en/GO5tWs1XalaJXYmCTjM10f0jua93Mim6XsWlsh9VYW5Si516n04zNIAU2ydh0JpFIfz+MwaJcY2zmOh8IQsZmUEvR8x3fzZmzhU4elAyi+jl5UDIr3q18Y2xaDW8gtZ8nOAlIBaEU3eq8dtWq7G1mfN+xWHp863yBSWOQ1HjebBWYtHq9ZJ81aF7W2C7jc0lBLEXPNSu65G9gs9iMTbtr1lzb3e15rPm6TiKwaUYpuiUCmyg9txeqTuUKbCYPGolEe3DTCbvAphcZm7kOvH5kbFqdKEiFZWwmt4Vfkwd5mbHZ0JB+7DTb18kJghWr4EfyRNpNxoldxqbdQOalytj0oxTdKphu9f5cjLEZismDGGMzrZCMzeR+Nbmf8qIUPR5PL28V/CpkYrCOFNjMNcZmELJxkghsumd3g9dNKXq+jM1yj7EZ1FJ0pxmbye3l9rtlHjvYHJwuFfNnmkgUPjah+X0mEtLGjemf7TI2nQY2g1aKnjyv3bo1f/Aq+bObjM3dd08/tiolt3q9ZH/u7GRs87CXopcjsGn8PpozNp1ct7jN2Mx1ver2PNZ8XSelg8UENttRim6JwCZKr1SBTSel6JLzgIubjE3jDt/JGJu5ZnY1nwSVI7BpdwLrZIzNmprMAIJVKboHkwdF3AY2k6VVbgeZNi5jDGw6PdlwUtJhpRSl6MltWupZ0cNSip78/uUrRXczxma+QfW95vUYm5Uc2DR+dk5K0a0Cm1al6Ml9i2Rfim5si1XmBmNsZjOuo3Nn6xP0IJeiE9h0xuoi1fw4Xym6XZlskDI2g1CK7nSMzeT2ikSsJ9yzk/yMzPs1qbwZm1Lhx16rz2nduvRjuzE2d9pJ2mGH9Dm6k4xNt6XoXp1PJNdbUyPtvHP6eXObvQhsGs+bS5GxadUeN8Hjcgn7GJvmvmd386aQUnQvApvGjE0n2dpW6y/1+Xo5UYpuicAmSs9qR+LFnV0npeiS84CLuZ25xtg0cpKx2amTfcDSbiBm8++8ZPeenJSi19Zan8yaS6Ly8Tpj03zwk9wHGI13np32m0JPuHMFNmMx50Ht5HaKRtMBZz8mDwpKKXohGZvG/UUYMjbdnJw5LUU375P9OgF0e7woZvKg5L42Eknvs6xK0c3lVnb7ZavAptVNC6cllB1pjE3zcSUpKBetSVaZ8IXM2NqRWJUVmh8XOnlQkMbYDFopeq6MTeP2Mk64l485Y9OvMTaNbXHL6hi4fn36ca6MzWhU6t27/WcnY2zmqtaymqXZ64zNLl1yJ3rYzYTtZvKgQgObTsfYtGqP+bopCDe/7KqkrJS7FN0Y2HQ6xqaT8didTh7kdiKfXGNsxmLubsI4/ZthQym6JQKbKD0/S9ElZwcNq8Guc2VsGiV36lZ3ZY2ZYnZ3bf0oRbd7T05K0evqrE9mvZg8qJCgmzkDwe1EDsZlevdOnwAUE9gsNmPTbr1WjEE7Y7mrXWDTy1L0aDS9vYOcsZkrsNmlS+Zz+YIUViVRhQaInSh2ZseOVIpuLIt0k7EppfuPecyx5HLGrAS7dSdfm++7XcjEaFY/l1OpS9HNx5UkxtgMPycZm9u2ZQcGnEweFKSMzTCVohu3V3IbBjmwWeh5lhWr97lhQ/pxrjE2jf9bjVkpZY9BaHdjxurYXszYoUZ2gc1CMzbN7TIGSI0JAeXK2Mw1eRCl6O2KHWPT7jzFOAREMRmbuW4C5hpjM99rc/3NSjo+U4puicAmSs/vUnQnB41cbcx3suekFL1TJ2el6OWaPKjYjE2rcZWKnTwoV+lZLuYxo4rJ2OzSJZ29V+oxNnONwyc5zzoxliMYs8LKkbHZqVP6u+bHGJtOMjYTidyl6MZsTcl9xqbdcl7xeozNSp48qNBSdMn64t4qY9NtKbrVd9vp8a8jBTbNx5WkoEwMkURg0z2r7Bvz40IzNq2CUH6NsRmGUnTz+ZLkvBTdeBOvmP1aIbwMbFq9T6el6FL6nKe5Wdq0KXtdTjM2rdpfzNihRsnAj/GcVsq+HnKasZlIZJ6TJtcTiUi77pp+3i4waRWIchPYNLcn1+RBlKK3K8XkQZJ3gc1CS9HzvTap2KSAoDNe1yCFwCZKz++MTScHjVxtNI6TacVJKXpNjbNSdPOdx3JkbDoNdOUrRfciY9NusoBcvCxFN97dXrPG2UW0F4HNYsarMpYj2AU2jQEfLzM2a2rSJ2hOt5eXjJmjyRsM5hNc4yRZVhmbxn2FpISxnNlJ5oDdcl5hjM3CJg9yU4oueZOx6aQUXXL+3e5IY2xalaInv9dBKkW32q+6rRLoaLwYYzPf5EHlztgMail6ruN7LJZuYyGl6FaltuUaAqDUGZtOS9GN/0vWiRO5xn/MF9jM9bwbTkvRnWZsmtuVfN877pg5meiWLc4DSnbDOLnN2Azj5EG9eqXPWUs9eVBVVeYNiEImDzLui42fr/GmbyJhPSmt1brtnkvyIrBJxmaHRGATped0bBW3vBxj00nGpt2BKldgMwyTBxnfl5PJg7wKbJoDxfX1xWVseh3YlKTGxvyvL3Tsp3wXCYWUoidfX64xNmtq0tsrkWgPbpaTMXM0yfz+zP3SGISQsgKbeftP2AKbhY6x6XSAdq8Vk7FZTCl6roxN88yf+UrRvQoABHmMTS+CR/nG2Exu83KMO+2U1X7VWJFRSRdOXilkjM1c5wNWF9zlHGMzkbDuh0EoRc91fLcLMDvN2PTqhk0hSj3GppOMzeS5Qr5su1xBN2M/LlVg0zh2Z75SdKcZm+Z2Jd93nz7Z50ylKEXPNcZmEEvRzeeZZtFouh+VuhS9tjb7hofbjE3jZ2yXsSnZX7N6EdgsZpgxN68Lg3g8HUQmsJmBwCZKL6yl6ObJgwoJbBY7eVA5StGN76uYMTa9KEUvJGPTPMamV6XokrNsX7/H2LQrRbcbyDwaTfexYjM2jaXoUvnL0a1KMcwncOZ+aT7h7Gil6E4zNp0O0O41tzfCjP3faba7scQ8yWkpeltbYaXohXy3g1yK7kXwKN8Ym8nPxDi5UxADm8bHlXLh5KVCMzbtzgf8ztjM9/0vJ3OAJ1fGpt3n4DRj08/AZpgyNnONm1+OjM1c57SFjrFpXK8x+LjTTtljH9qVoptvlNoFq52MbW4ewitspehS5jBOpbiJbLxmM9/wcHKjwO460RjYNF5PSPbHZ7vzWLv3bWyfF8OMuXldGJhvaCGFwCZKz+nYKm45zdgsphQ9FkvveO0OVE7G2HQ6eVC5AptuMzbj8fTv7MbYLKYUvba2sJOTeDy7tKqYcVjq690Hxb2cFb2QMTaNpejJ18di0saN2etPcjNZgBVjQLEcg6Dna4ebjE1zWY4XGZulnAnZ6XhVdgoNbLr9O15xe7ww9gGnWRvGEvOkUk0elAykM8Zm7nVajbFp/HysZq33g90No+RjZkXP5mSMTasqA7vzAaubqOUcY9Puhk8QStHLlbFZzH6tEF4en6z2IcYSWqs+FYm0l11L7kvR7W7M2LW/2H2I+XPyYvIg43qN11ROMzatxg71YvKgaDRz+xp/V25uA5vJ69Rt26TNm71vjzFj07wvdfJ9srtONJa4m7e93TWrVZ+Ox+33GaUqRa+U47Pb6+0OhMAmSs+PMTY7dZJ69mx/7CTYYncxbXfHyshpxma+UvTkeGJ+Zmw6mS29FKXoyTa4nSTC6oKpmJnz8pXt5GuD1Tqd/l3Ju1J0SVq7Nv3YnKXo9ELGjtXkQVL5A5tW49+aM1as+qWxj5gDm/nKXcKesWnV/kTC24yYYhRaip7r5pFZqUrRO1LGZjnG2LQKbAYlY7OqKnNfQ8amPS8yNu1K0cnYTD82l6Lnytg0Bu28ytgMyxib+c57rPrUjjumz83zDXVlTlaQrG/MGNsfiVg/Xwjz59SzZ/rvmxM9CilFNwc2zedMTt+XF5MHJd9XGAObpT53NlazmbPfvShFd7Pt3fb1YgObiUR6GS+/W0FhvqGFFAKbKL1SjbGZr/TZzfgldhfTdjt2I7vApjHb08nkQcnfR6PWy3nJ7n05GX/PLrDpthTd6qLQ8FzESdDN63FYCglsFjr2UylL0aV0YLNz58w+JTm/kMn3N42TB0nBzNi06pe5ApvRqNqS63NSEiWV9mTJOLtp8mLUzd9zMnlQW5v1oO9hCGw6maDNzO3kQU5L0a0yNr2cPKilxX5w/lLzY/Ig43c5+Tgogc0uXTIvmAhs2nM6xqY5G9bJ5EFW4yF2pIxNN6Xodp+D8aZOrpLYShljM995j1WfMp4n5Bt+x+pmqtX+y9j+3r2tny+E+XOKRNJtLiZjM/n9NK5jp53azzGT+0JzYDLX+/IiYzN5XA5CKbq5+iufUgc2/z975x0mR3Hm/2/P7GzWKu1qFQBJ5CQkECBEDgIJYRuZaIwRYAzGZ87Y3GEMZ8CA74fPOAAGm8M54AAmONwaIwQSYESQQIAEIkoIobDKYVebZvr3R29NV9dUVVenCav38zx6NDvTobq6urr629/3raCOTdNQdFa/OlOPbtt8m1CZT/yETT/TSleX25fFeW2VCxSKroSETSJ5SuHYBNybxtat/vtTia8mwqYqFF10FfiFovO/s22Vi2NTlwstKcemyeBENlAXB1l+VHqOTdms6IArbMrabVyOTTEUvdg5NuNwbIo5NgFkdQJiqRybDQ3hxBMTx6aqrZWLsKl7Eca7h+NybLIBcVKOzbCTBwGlyXsKJJNj03TyIP5zqUPR2bkVH1zZ32L6CyK4Y5M5D00cm6WYPEjVBis9FB3QH0NcEx6GoZiOTVmb4scJQULRRcemStjktxn1vis7T7zRg93fbDucY5M/5hEjnPE26/9EYZI/LlGMUonVJuMu8R5eTo5NmZlARtBnjaDwOTbFvtTkRYHf829Yx6ZJW/eLxvO7RpK6tsoFCkVXQrVBRMe2gcWLgZEjgVGjCn8vtbAJOLNbjxmj3paqjKoZd3lkb61EV4/oJpKFovO/p9PeB+ieHuCll4Ajj/TeoAC37keO9H6/di3w3HPuIKalBTj+eOeGy5eNf0BTDfjEATFzMGWz8eTYlDg2jR7gZQN1NshSDZBEyjUUXTbw2L4dWLIEmDLFHTjxAzy+jbJwEdmb47gcm2Io+ksvAQ895F02kwFOOQUYNCjcvkzKIXN2sd9lIRs6xyaALDsPpjk24xos5XLACy8ABx8MNDV5t93Q4FxvGzdGEzZl5Y8ibL77rnPN7b23WXlkx+i3zzCOzaDCJrsmbNup56oqryuEOSXFHJuplPtb0qHo7Dt2nb/3nlP3e+1ltj0e2wYWLQKWL3e/O/RQ9XkMG4q+Zg2wbh0waZJ6m5mMU4+VFIouPuiJD12DB3t/z2aBF18EDjkEaGz0/vbOO04bC3MeRd5919nWnnuql+nuBl5+2bmP8P2lbQMLF5q3CRHVMZrk2HzvPaedAPIXnXFNHmTbwCuvALvvLu37pXR1OfXC6ovfv+z618HqXjaW43n7bafNi21i61bgzTeBo45yrn3RuRNl8iC2Tirl9NETJ3rPo19ecFm9Z7PybQUl6cmDeFh9qHJxB508iP9fFYrOi1xxOzYBt8x9fc5ESUOHyo0TJjk2RWGT7YeNuU2PK4pjUxeKzpZ9+23nmhD7wq1bMfTtt4EZMwr3E5StW4GnnnLqlYmTJmHogLcdPf64Ux8jRwLHHKMWRtl9e+xY6Ut5z3Iqx6ZpKDrf58qeI1TPvjL82oTYT8hMK3y9LljgpIdQ1RcvoptcW/x5FKmudp5hxP7rrbecsunutTzZLKznn0dazDUr8vHHjmYxcaL3+507nfvQUUdRKLoGcmwS0Xn0UeCww4B993UeukWSEjZNQ9EBf4HKJBS9ulo+EBXfyAKFjk0x/5ssFF3n2LzkEuC444DPfta770cecR489t0X2LzZ/X7rVmD//YFzzwXOO8/5d9JJwC23OL9HcWyymwwb9MUxKzq7aQZ1bKoemII42/hl4po8yGS/srAV3UOCbTs38KOPBm67zf1eFYrOiNuxadtelyhfX0884bY39u/Tn3bKnMSsj7xbj6GbPIj9xg/SyknYvOUW9xyzh2XeIRaHY1MWbhhW2HzjDafv2XdfYOlSs/KwYzzmGPPwd5Mcm9XVzoM+G+Cq3O627e5XNis64J5j1eRBfBuoqyssi8wxE8fkQfx3r78O7LOP8+/NN822x/PHPwJHHOG9VnXnMYywuWkTsN9+zj3q0UfV2xTvKYxyD0Xn8XOT3Hyz0+aPPdZ7/S1e7NTRPvs4D0pReO015xzuvTewbJl6uQsucMYTl1zi+dp68EF5mzBtXzfdJD9GE8fm888Dq1c7n/3GAzLHpun19Yc/AIcf7oyPTPvRz3zGW1/8/vnr36Rtnn++s61LL1Uv88orTvn23dd7HrNZR1w9+mjg9tsL9xnEscnXl7jOjTc65/D4473nMczL2G9+U76toBTTscn6elUo+qBB7pjDZPIgwD8UvVjCJuCWWVYPYXJs8vvp6DAXlVQT2MjCjFWOTVkoel+fIwDtv7/Tr773nvtbNouqqVNx/HXXIfX97xfuJwjZrNOXnHWW01euXet8bxKGDnjPyU9+4mzj+OOBO+5Qr/Pb3zp99IEH6iccEudFCBOKHsaxaRKKLmsT3/iG00+ceGJhzndZmrHf/Matr+99L/j+eLJZYPJk9zyK/2bNcp6f+f7rxRedcyC2Lx3f+AaqTjwRx9x0k7ovXLfO2eakScD//Z/3t7POco738sspFF0DCZtEdJ580vl/xw7nTbRIMRybsrdbQQQqE8emmJidocozIoqifpMHydwp7Ld585z/n3nGu+9nn3X+377dW/eLFjnipsj8+c7/UXNs8v+zc7l9u7uMyY29qcl903XEEc7/OreBDNUDE3PLbNnivw0xfITPx2ISHiIbzHd2+ufC49/asfrSuU62bHGEJMA9j6LIaCpsRnFsiu165Ehg3Dj9OkuWeCcziguZY9MkFP3ww53/x40DWlsLNtvHh6KLA5AkQ9FZX7p0qdNn5XLeHJt8uJfpQ6KsfYoP4GGFzblznf9t23GHm8D6rCVL5P1yFMcm4O/skz10At52I6bX0IWi831d3I5N2blj67J7QZC652Ftjce2gaefNiuLyTG89JJ7XxDvXfw2xHsKo9xC0bNZt8xBhc05c5z/X3sN2LbN/Z5dD7q6N4W/L+jaBBtPsOX7sWTnyLbd5f1gbeq117zjAf5exwtqzc2Oc1KE9c+q8YDMsSmLVpDBzsPmzU4fZAJbh9WPKuLFRNhkdS67/hisTeRy3rr/6CPHhaYqi1+OTX5MyLuPxHXY8b76qlc8CdOvseN89dVo98liOTYzGTeV0cEHu/3O0Ue7y1gWMGyY81k2xtRNHlSMUHTZeWKTqQJu/yOrh6COTSYasf10dpofV1KOzb4+t93lcsC//uX+tnYtrH4hynrqqcL9BGH1armoxfovPyZPlj9TsnGVDNZ/bNjgvNxUIT4bxTl5ECPOUHR2vhYtctqn7Nlu4kS5O1FWX0Hy165aBbz/vrzcjIULvfc0ts9cruA+qqR/uaHvvuvdFs+CBe79iz8u23braO5cCkXXQLVBRIe/yckeVGVv3+LIgcQ/dPJJ/BlBcv+ZCJvMsSkua5JjM8jkQfxnthzbpy7Pmeo8zJoF/PWvTgfMtqO6YZnm2AQKhU22z0GD1GH7PKmUM2hfsAD4xCec73RuA79yiW/X333Xza8qE/wYrH2yB5TqamcQuGVLeMcm4JwbncCrE4tl2+WXZ7/x4mkYx2ZUYZO163nznDYmbu+3v3UcSYDT9oYPD74/Fbmce32YTh7EBgDf/rbjfJkyRTooyDs2bdupd96Vo0uqHxXxGubD91koOisXH5KsQ9Y+e3u99aTqj/2Oiy+v6cOY2GeJKTSC3i/ECaT88hPL8p8Bhdee6OxUhaLLUnmwukil5KGyUXJssnX5+g7zIMyfu4sucq5V8XuGLBebyTHw29Idi3hPYZRbKLrMiSv7W9aGxWuFvXzjz13UCSRM2wT7TVjG4v8++2zg4YeDlUs8RjGdBuCtp6oqR8Tj7x1NTc6+gWCTB5nmX/NrkyK8A41tVxWiaXI/ZdvYsMHpU2Qv5VVtQtbf6mZFF69ZWQgxW4/R21u4H3YfEqNbAH9hU9xW2HB01QvkMPgJm4xRoxzDwMcfF4Yt66InTEPR+fLrclEGxfQ8xSFsio7Nzk6vGJ6UsCk+N4mh6KrrnGtHVpz97RFHOM7upibgnHPM1t99dyf8mr28+MY3Csuu26duOfGZTbzGTa4nVWQfI8jkQaq2LmtT7e3yZ87ddnNelrIXgNdd57QDvxfkjY3OdaByA/PLHnmk46pn/P73jtjKysXuaX66hwzx3Mmeh1Tb3bLFbfPt7RSKroFqg4gOLxrKBET+Yq6pcTqsOEPRVTbsII5NvrNjZQS8ZU/KsekXim7bamGT/1t1Hs46y3nDs327fGAeNhRdFDbZPk3zVgHOjZ13bMQxeZBYhvXrnRuiCllo4YgR4YRNse3ohE22nGXJQ590DinZwFTMscmIOxRdFPsBJ9/Pv/974bJvvOEVNuNElfpA59hky9XVOSEmCvr4euzokIcb88R1bOI1zIt+vLDJ9hlW2Ozp8bZNXRs2La9pHaj6LHE7fDlMQtFNHZuqN91iKKvo7GQOWbFv1zk2+Zmz48yxye9D/GwKX/dXXeUKm7JzImvzvb1qYUa2D92xqByb5RaKrhLoxL9l50N1rfCfo04gYdIm+voKBXjZOhdd5AqbpuUyOUax3lT3DiDY5EFsfNbbq78e/NqkbnnZi+Egjk0+53Mu50Qx8G4icT/i/mVlCTIruiyEGCh0cwU5j7p+zbbD3SNk8H2F6f1JhW7cI6abmjRJnh+YF/JEwoSiJ+3YlJ2nqKHoVVWuE5S/DjZscD/r3HLi+J1NICY7fr/Jg8RQdN4VLxs7i+UMgyhsXnNN8G0cdpjzDwC+/33HBarrb03vF0Ecm3zd8yTh2LQsr6DHoo/Efk71bHfooc4/wAlBX7PGX3dgE2+KbmLZskce6T2PH37oCpvr17v5pv10DxncfixV21Ntl//c0+ONgKNQdA8Uik5Ex+/NBd9pDB3q/B9nKLrqbUXYHJssxATwvnn0y7GpEzbFHJsmkwex33p63GWYk4jB16PqPIwY4Q1hBYKHoutybLLZ41lHG0TYFIkSis4LE0FmG1QJm0BhSIRfGfi24zc4ZevV1rrihy5PmGxwJop2QUPRs1n/kHmRILlU+cFuksKmaY5NwzebWb4exQeXpHJsdnd7QwXb2wsdYkFmheS3K6KbVCJIGw7j2FT1WeJ2+HKorkH24gdw20BYYVN88BPDCfn+mS+PzrHJn6+4c2zG5dgcPtw76Z/snKjK6/dixM8d55djs9xC0cMKm+LDuupzMRyb/Pfi5Gp8f8OnFzEpl+kxmk6sAQSbPIjfdpyOTX55dj9ROTb9hE2xXKp6DeLY1M2KLl4rJo7NzZu9ofx+55G/ZsWXsR0d6m0FhZ2rIPcnFaaOTR3svHd1FbrUyjEUXXb/CerYZP0Da0fNze6LLf66Zr/X1XmjTnSOTXZeTR2bfqHoqutcfLEadPzLI3PGRoG1AX7met0+df2yKAzqcmzydc/j59gMI2zW13td252dzriXP7+iY1MVcaerL5mwKX4vW1Y8jyqDVByOTRmm+2D5qAFybAqQsElEx1TYrK11O41iCJthc2zyb5P4PBgqx6ZJKHp1tX8ousqxqXuLZipsip16UMemX45N/u2TbqY+P6JMHqRybOrOPe+G5eshiDDK1434JlKH+FAvfg4qbIYJRQeCCwUyt4yKMEJc1HKYzIruQ1Z0bPIkJWyK7ay9XT04C7JPWciRblKJIG04bmEzl3MfhPlymAhr7LzHFYouum74tsPXqSxNgaxPiTvHZlzC5ogR/i8BVWHnfscRVNgs91B03QOQ7iWOeG2Xi7CpW2f8+GDlMj3GIMJmEMcmv+2khE22bdXkYX730iSEzbCh6Pw1z9fzxx+ryyJLxaDr12R1Fxa27UGD3L6gGI5NFbrUEzLHpt+s6MV0bLL+PIxj07a99w5xP4B3dnDdmEUmrm3eLBcb/SYPMg1F5z5bbIb4sITt11SIM9f77dM0FF10bJoKmypnOiNIKDo/JhLbhHgcQYXN3t7COSXCCpvieUxK2FQ9V5rug++nSdj0QMImEY2+Pq8lWmcJb2hwO6g4cmwGCUUPkmOTuUoBM2EzqmMzqLDJ150qxyZ/vC0thZ266oYVxLHJC5sqJ0BQxHAJP6IKm11d7ps+mWPTb32xDHzb8RucsnNnKmzKzrso2skGALIBSVBnLI/KLSMjSWEzSii6Dx7Hpu4ttmqZMIh91Pr18QibJo5Nvm0FacNhwgz5fYnHzD8g8uVQCRCyNhCHY7Orq3A5lbDpF4qu2r4JSeXY5EOyWlqcl47MWSO7V6rq308Y4rclHnMu515LqhybshcWvEu32IR1bJqKfsUIRdcIm/kcm5mMk0uMHZNJuZIQNsM6NlU5CkUHocl1KDuusKHofu1CtpxqXCcTNv1C0U0cmzphU3Yeq6rcl/tif6BrE0Hhx0smAraOOBybuutd5tgs5qzopgJ0mByb27e716JK2GTCpDhmEa9LVo6qKvf+o3JQqnJsqkLRVfce8ZqP0ufGLWyaGCpM7xe6HJt8KHom4zooxUlP2XlOp+XPFmEcm7JxrOylvioaj0dXX6pop85Of3enah+qvtikDfEv7QFYqnXE7bKyisvzjk0KRfdAwiYRDTFPhM6xWV9fmJcxCn6OzeHD3RDfsKHovLAZNBRdN3lQkFB03VtOVb468c0866xZ2AxfNhPHgewmw9/o+MFwFGGT66CtKDk2TR2XqhtaWGEzTCi6Stg0ybEZNhQ96CRNPEFC0Yvl2Iw5FL1PJ2yy4+cnLIvj2GRvrUWH2EAPRee3wc/iqhIgZG2A9Z0mwibf54qherpQdJWwydKGsGOM6tjUuRz5gXvQySZkufb4sC6TcgD+wpDOHcefuyCOTaB0rs2wwqZYp/z5itOxqdouj/i9bB12LLo2IaK7lnWTLulQRRaEdWyKZQzr2CxmKLpqXCd7SS2Goov3dratdNr74ohfZ9Uq7zqqNiXr25JybLLJ8ti+xNRKQeHrTJx4NG5hUxR/+Bcz/Hp+MzcHwc+xGSTHpjjOUbl+Zde135iFF6tlL+D5fatC0SM4NgFE63OTcmwCwd3cIqLpQzV5kFj3/IsffmJGU1OPSSi6n2NTl2OTR1dfKlOAbXuPEdDfn2QGqVxO3S+rEPdp4tjknajiPtascT+TY9MDCZtENGQP4yL8YJk9PLKJB6LAOlDVQCSddsMZgwib/ICPz7EZ5+RBQULRVW85xc8y2/rgwd433IDTwYpl85tMRpdjEwBWrnQ/RwlFj5JjM4xjUzUwCRKKHkeOTUaUHJtBJg+K4thUCYoy/GYKjoKpYzOIENuPNhSdHf+gQe7AuxjCZkNDuJylsod3XSi6aRveudP74sf0/JoKm/z9Ioxj0yQUXZdj0zQUXXRsqgbJQXNsymYi59eN4tiUObfY/5s364Vvk+9l+9H1Z0FybAKVL2yqzt3GjdGOTSUm8ojfy9YRhU2TcpkeY5BcdCphU9Wns22L/b6qjGGEzc5O/8nDVIh1rxqb8Mtt2OD2ReJDrxiRYOrY5HMjAt51eCcQYOa85fOty/bHCDsG6OtzxcDa2uiOTb5f5V+gAeFC0cVy6ELRAfecsfXq6rx5B4slbJo4Nvn6EUUolWOT/043ZuHHwLL1+X37TR7E1+/GjeqUXXEKm2Ff2KgweW7h9xkkx6Zq8iCx7vlzxEdFysbOsrqXjbtyOe+9RWwTUUPR2To84j1H1w6DhqLzM5Sz7/2iSIR9WiY5Nvm/KRTdGBI2iWj4CZu27e3Q+A4qzIzMPKzT1V3UrFMyDUWvq/M6GE0cm7Icm2KCeZPJg2TCZl+fuWNTZpNnxy/euERhkx1XmFnRAe9b/pgcm4FD0fmHYlNhkx8k8De+II5NVY5Nv0F8HDk2xQe8YuTY3BUcmyY5Nvk33XGItibCZhihWOaq0wlXpm04bJihTtgUHxT8HP6ykNQkJg8yFTZ7etQiTlDHpp+YGLewyb/MESMxwubY1M1A7XdPAdS5c0slbOoeZHXXpqmbEYg2U2/EUPQCYVPXJkRMXalBBIBUyh0LyULRq6q8ri6/+025OTZNwk1t2xFqZMt3drr7TKWcf6oxlCo3IhAuFJ0fJyft2BT7Cr+UA37w9w1R2Azj2BTLoQtF53/nrzc+D3/U8YTsHhR28qCGBrdcYYRNkxybovmCwZ8bv8mD+PoVxXlybKonDxLrnm97rP9QPfuahqLz44cwOTZVLxvCODYB/cs9E2FT7IdNcrWa9P25XOF9li1HoejGkLBJREO82Hbu9F7A/IzeorAZNc+mXyg64HZKHR36QZVKfA2SY1N8ayU+dPNvyGWOTdNQdL7e+M6/o8M5jp4et5NlDybi2ypRdGXHFWbyIAD46CP3c1zCZikdm8UIRQ+aY1McnNl2PJMHBX3BENaxGbewGSbHZphZ0VWOzUwmunOEp5g5NsVzzl/fpm04jLDJhxT6bcNE2Exq8iAxx6ZpKHpvr3+4pri+Cr/w7yjCppiDGdD3eWEcm+x+pFqWrwNVjk2VY7NUM6OHdWya5p+ULRu2fGGETVUoukm5TI5RjFwxQfbSle+Defz6R7GMpc6xaSJe8MvpJjJi9apybKpyI4rriKHosvNYWyvvO5PKsSmOP9l5Fp31piTt2NSFogPyXMyWFd94ws+xGWTyoOpqb7lkaUwAuRM7TmGTL2su50b8yZ6/ggibcfW3ccyK7hcpxhuFAEcEU0U+iqYPlWNTrPsgjk3TyYP8xrGysS9fPjFdBENXX0HGzrrzOGiQW3eqfli2fxHRsSlbfvPmwvpT7ZNmRVdCwiYRDdkFrsq7JoqGUfNs+k0eBATPtSiWkQ9FD5pj02RiC9uWOzb5cEqdY1OWCFs28DB1bJqEosseQnlhs5ih6Ko8LHx+1ag5NpMIRe/rcwckpjk2+b9tWy7amQqbcU0e5PemMEzodJhy6BybUUPRxbe7fL8TNdcXT1DHZhRhM44cm2HcOLpZesVt8H2xSoBI0rEZdlZ0E2GzHB2bYYRNnTAkbkOXM3hXy7GpO3dxOYgCCptWX5+b15r1a0Fe8JkcYxhXkyxNDp/7jadYjs1izooOuJNIyMoipmRSvRzWTfAY1LEpnsdSOTbDbjMOx6ZubBM0FJ0dTxLCJmufYUPRxXFOkBybfmMW2YRQPCrHpl/98oYUfj/iZ6CyHJs7d3pDnrNZRwyTESTHpuocxeXY9BvH6hybqjB0ILxjUydsiufRsgojP/10DxkmLzB12xV/49s4CZseSNgkohFU2AyaZ0xHEMemWC4RfoDBl9HEsSkLRRcn6FFNbMG/bYs6eRDgHKNsACt26kEdm0FybJaDY9M0v6rqhqaaCc+vDKaikCqE3jTHJvtbFO1kOTZlb5LjcmyWSyi6KmQ1pGPTaPIg0ckQFbGdbdvmHbQm6djklxk82Cx3aJiHVrEs27YVus4ZUR2bQYXNuCYPUvUpQe99lSBs6o7DbxsmOTbLLRRd5+zQCR0VIGymxXBBoDyEzTgdm+UWih7EsbltW2G/zQubspBcfnmVIAV4RQsxpJIvi5iqgGGaYzMOYVOXE9AUfmKcpibvb3E7NlWh6LadvLBZX+8+n4SdPIgf53R2li4UnS+rTNjUjUUHSii6SZ/GEE0fqlD0KDk2TScP0omMYpsCHNGP9TWlFjb5/axf7zyzxyVsim7bIMImD4WieyBhk4iG7K0D/534IBCnYzOosKly3okDDJVjM8rkQaqJLVQP2VGETVmYoc6xyR9XkMmDVDk2+dkdgyKGS/ihEggBsxldVTc03vFpmmMzlfIOkk2FzTCh6OzvUjs2KRTd+dzZGX0yNFn/tGKF+znsrOhBc2zW1Zk5UcOEGcr6fN39IunJg1Sh6FEmD4rLsSkL1ebXjSJsyu4RuugGv7L47UO2bBTHJoWi+5cvoLBZxZ8PWY7NKKHoKkHMhLCOTVmeQr82KWLbyYaim+TYBArHdbKy+IWimzo2dWUxcWzyjrK4QtGTcmzy93BGHLOi+zkKmWOO1RVrQ3EJm7LrLWyOTTHljioUXXZt19d700/w1yQ/OV5trfwFPD+RK19WmXCsG9sVIxQ9DmHTr7+VtQtV+cVrhu8XeFOEOCu6zLGZyZg7Nv1C0ZkOwAR3sU0Bzlh67Vq3fCqSCEWXnUe2H+aQ9dM9ZAj7tLLZwpdIqu1ms26eZRnk2PRAwiYRjSih6FFybPI5VnQDERPHgTjAUOXYDBqKLnMTiWGSqhl6w+TYBMI5Nk0mD/LLscnKMWxYtLdHcTk2Afdm1Nlp9pDH11E67Qq0po7NIANuVQh9sYTNKI7NSps8KO5Z0WWOTcAJE4qCrJ0tX+5+DuPYVM2sLV5bqhxmSTs2xe1EcWzGGYou5tg0DUXXOTajhKIPHlz4Pf+QGHSyiSiOTVlZ/PYhW9YvvQngvV4HUii6amId2bJB0G1X9X3/OmXr2JRFk8Tl2PQbg6pckvx3UULRN20qXId/0c4Qx3X89nSh6Hw5VYKUuI4Ia1MyhyGDv25VYiorbxhU96ew21Tdw4F4hE0/4U2cFFR0bIqTHgZFdp6C5Njk87fzddTdDaxZ4y5rEorO/y8TzVjZgoSiy+7h/POXSKU4Nhsa3P4kqmNTvL/y7Zo37Jjk2KyuNp8V3cSxKeaTlR0D7yhV0djo/u43EaXuevWb3V68D4ZxbMrGaLIQfNkymzbpjRMkbHogYZOIRqlybJq6sExCinVlDDJ5kM6xKYaiyxybslB02SDXL8emn7DZ2RnNsal6CAWi5dcEvHUQJccmYObW1d3Q2LGY5tgMMuAO49iU5dwMOyt6FMfmLjB5kDYUXebYBKLPZCrrn3jHZhhhU3U960LR+Tf4QYTNzk6vW0eGTEgwuV9ks/IBs6wNsD4kl5OXR9Xn6mZFDzJ5kKpPiTJ5EO8EZ6Irfw47OvzrnofVeTrtumJMhU2xLH77UC3r97IM8F6vQV96JUEYYVOVGxGQCxhhH7TFbamuR8WMsFLHpqmwaXqMYSbYkL10VTk2/XI6Bw1Flx2zOH4K4tiU3SPEWXB7egofYsVxHb89MXIpjGNTdx9n9djd7ZZLJ2yyOpW1ibD3SNX9Kew2VfdwILnJg8RQdFlfEvW4xPL4vVhTOTbF+yq/HTYmqalxJlZh6IRN2XhC58Jl8I5NVSg6uy9blnp8l1SOTT9BLCh8PkfV9S5iImyKjk3+uVY3Kzrv2jU19ZgIm/z/27cX9oE8Osemrr7YPtNpp+y6a8s0FB1Q98VBQ9Fl66i267dtCkX3QMImEQ2/BLhixx9Xjk1TscJE3BI7NVWOTZVj0yTHpsqx6ReKLpYBCBaKHnTyoCA5NmU3nCj5NQHnRtVfFitoKLpO2DQRtcWHLra+zvHJl0HMVaMbmJoIm7rJNtjfYvuRvd30c2wmOXlQnMKfiKljM0wousqxmc26YoE44I8i3HZ0yOuHn5SroSH4g49JCLe4HD/Q1e1Dldw+aHl09wu/F2G6yYMAeViUyiUv3pvChKKLjk3+tyiOTV5M7O4ubGu2HSwCgtV5S4t7/9KFdenKoiLJUPRSOTZ1D7Kqa1Pl+hOXY4R90JaFw8ruoYowvLRfKLquXLJjZMcW1dWkC0VPOsemyjUVV45NwCxcO0goepgcmyah6Lqxkqxv27KlsD7iCEWPI8dm3I5N8To2CUWX9SVxjCf4mbP97j9hhE02JhkxwjtbdVDHps6Fywji2BQ/8+iemTZuVKet8SNuxybgPnds2FBYrrCOTTHHJv9Mqbqecjl3/0Ecm7K6lLV11jbXrNG7EXXCJuCtL3477Djq670OUf432d8mjk3TiX9U+1CtI9uGOCGwDHJseiBhk4gGuxD5C0uVMy1Ox6apuGIibukepuPKsakKk/QLRQeArVu9+2P1ls0W3kTEtztsACs6GXSTB8lcHiYTPQDRhU1WHlYWP0xybALmbt2g6/NlCOvY5MudSrnHX66h6JXm2AwRiq50bIrHHtes73yfqRokhnFsqsQunWOTH+jqcoea5oBS7Ue2Hd1LJr9JkMSXR4BcaDCdFd00FN00x2Ym4z4IBs2xKYZ/y+rZtP3xeQN5gYPPjaxzW4YNRe/r87aloJMHlYOwqbtfpFJuGCG/nO46CZIzLUjZgnzHhE1ZKLppjk3TYwzz8B/X5EGyfJl+16GfmAgUXv86TB5uVcuYhqKrHJu6UHQTx6buPPLXLWtHYe4PKuLOsVlMx2aYUHTZNk3hZ872y7GpCkUXxzn8dtiYRBTHgwqbOrGaEWTyIPEzj07YtG19/kId7Hgsy1+AM4XVq207Iciy/fGo+mVROObrxiQUXRXVxxM2FJ3/X3Uu+fLpYPWVy3nrS3Qtmwib6bT8OMUXfH66hwyTcyd7DhD7flkdkbDpgYRNIjxdXc6begDYbz/3+4EUis7fAILk2Ozr04dJmoaiA24dM9gNS+V+MsmxqXJsimUS9wnoHZtRQ9FZeYDgkwepcmwC5m7doOsDbt3EkWOT/9tE2CxFKHoQobC62m3LSQqbxXJs6pwMUY6Pv2b5vpQnjLAZ1bEJqF2Ypjmg/MoT5X6hS/cB+Ds2VaHoYo7NIKHoqj6Ff/iJmmMzirC5fbu7bV7gyGScHMlAMjk2xeVN0ptUUig6/x2/nO46CeLACVK2IN/pQtGrq11xQVcu02OM27GpmzxIPM6tW/W5hWWojiuuyYNk+wgrbMocm3FOHqQ7j7J+Osz9QUWSkweJ7lNTx6bupabJrOhJCZuq8xTFsSlLISG2IdkyutyhJqHoJo5N/r6sOnc6YROI3ueyvJFxYDrTt2oZhnh/tSy3fkyETdU8DDwqU4+IX1tnyMa+uhybgLq+wgibqvOoyrG52276nKiyffDoHJusLjZscCdS4r/noVB0DyRsEuHhxZ599vG+YWDoHlSjTB5kKlYMGeL+bipuBXVsso5QF4qucmyahKKLwia7Ycnqj7etW5Yzuzc7LobOsQnIBzumOTbjdGyauHJMc2yWs2PTVNiU5agzcWzKBpxxOTb9bqiWZZavMQyqcohtOaqwKcs5BBQ6GeISNg86SL5MnMKmeM6DTs4gy59mUqawOTaB4js2daHofFlMJw/i9xE1x2YUYVMncKjyVYUJRZe1D1Wus0oJRdeF4/LfVaCwmVaJ9bqcb4wkhU02dmKhkdmseuJIXXiwn9AuwyQUnb/+kwpFV4Uj8iIruz4syx0/ykLRq6u9uRHZd35l1qVhSFrYjHvyIFYvslD0OByb7N6RTrvPB2IoeimFTb/Jg3SOTYZ47zBxbPLlCyps8mUKGoquy7EJxCNsxkUSwiY79yphUybSF8uxySMb+5qGogPxCJt++1i71nX4jhhhdn+U7VO2Dvu7oQEYO9b5nMsBb7/tLiOrI3JseiBhkwgPP9AaOVI+2Yr4IBBXjk1T11gq5ZbLVNziy8iHZcs691RKPnARQ9FFx6YsFJ0XM/ltqYRNP8fmsGHudnSOTfG4ZIOdYuXYBOJzbBZD2LRtb47NTMat86jCZpgcm+K2Uin5eYrLsWnyECBzMcVBgqHouaoq2Cz3IF9uUUiLS9jk+8yDDy78varKdeTKyqVC1c6CODZV4ojsASGMY1N3v/B7Eebn2PQTNvllxXuTzrHJu1hNHZtAeMemX45NwDyHLV/fosOe/b1jh/cYw0weJBNiVM4Z1T2lXEPRa2rks/DK+jpZPcjyTzK2bQs3NpKdfxNhk82KLnNsAm6b0JVLF3YcdYIN8UWV7v6j67fCCJsmoeh8VEJSoehbtgCrVsm3J4aiszKJ5WHHIuZGFNcVMcmVKhM2kwpFjzPHpiwUPc5Z0VVjetGxye4h5erYDCts6o5LFKtlL4r4yYP4Mpk8N/H4OTajpv+IU9jURRmavBhhyO6vrF/gn2tV15M41o1r8iBZm2DIxr6moeiAWxfZrHv8JsIm6+NU55Hfx1tvufXHC5t+uVpl92dVKDq/XQBYssT9LKsjcmx6IGGTCI+Yy5F/c8Eu/FKHogPycvHoHqZ5ZHZ8Vfi43+RBslD0oI5NP2GT7xh1jk3xuPwcm7ocm3GEoofNsRl3KLqJsNnX57Yptn8TIU+XG5T9HSYUXdyWKrQiimMzqFCYlLCpyvXJX0chQ9E9ycZVoehJOTb337/wnLH9qMqlgm8zvEtHJ2yaPDiavCjwK49sW7qXTGEcm0EmDwri2DSdPEiViy5qKLqpiCXDxLEJePvMoKHoKkevn7Ap9l/lGoquegDir012Xwjq2ATCPWibit2qWdFlOTYBswkYi+HYBJzzrosY0PVbfkK7DBPHJv8yM6lQdABYulS+PdGxycoEuOXM5bwPzSJRQ9FlOTYrIRQ9rsmDVI5NVf+VZCi66kWC7NlLNvaTvTyQXbeyCahU16PMSR00x6bJ5EGlDEWPC11/G2QsJouIkNWPSY7NqJMHFduxGXRiLr/zyLd1XmTkdQ8xx6eI37nr6/M6QVX7JMemLyRsEuERH5DYhdjb6054Uw7CJitXT0+hSOhXRh7ZjVsnbMY1eVCQHJv8g7VK2OzsDO7YNM2xWcrJg8I4NnVuEhNhVFYvJsJTXDk2xetA52DhieLYDDJ5EF+GYjk2+VxCIUPRAcjLrXNsRpn1nW+fI0d6J3Lhy6Iqlwq+nTU2up91kweZPDgWS9gMkmOzmJMH8WURHZsmIZulnDzIVNjklws6eZAsn6G4fNAcm+Xk2PQTNvlZ6sMIm2EetOMMRVcJm6pymR6jzJXlRxDHpi7voV9qBBmydcTxE//Qn5RjE5A/NPOzG/PXh+jY3LzZHWvKxmhRJw8qdo5N/jwHve/att6xGefkQSo3ocrZH+W4ZGXhy1hV5ZZH59gUQ9FNHZvi/vi/ZdelSSg679hMavIgIFx/m826/UcpQ9E3bpTfD2X3V1nbFuuetTtxbCVbN+5Q9LFj9S9NZMjqK8i1JXN3ivBpoPh+WBQgde3Ir+/fsMH9zAum4j5J2PSFhE0iPOIsiyZvTuLKsRnENebnODAVNmWOzRR3CZk4NsNMHsQPXgF9jk0enWNTd9PSPZCm024nWg6h6KwO+HIx+PyqJkKM+NBl8kAnE1ZZXesGpnHk2JSJL/ys6nxZRKK4n8I6NkUXXFR0AivvWAkRig7A37GZVCi62JfyZeE/mzz48G2IFzZ1k2iYPDjy1wP/8OFXJr/8Vrr7RblOHqTLsSn2KeWeY1P1Midojk2TF0GylztVVV63crmFovuFrMkeEGXXCnN08ueMv45KIGxKJw8CzB7cTI8xaii6X38edyg6W6e21n3AjuLYZG2Cd6KJ1wrfB/JtQvYdMxCwcoifWTnF6CoR2X1Rdx5V/RogFzbZtsKKdXHm2OTPURTHZjrtHrd4XOKETuJ2+/qCu8pMCXL/iTMUHVALm7Lj8hM2Uynn3sruB1EmD+rqch30ceXY5FO1FEvYVPUNvCjG0OXY5DGdPEi2runkQX5tnSEb+4ZxbAZxQ5ven2TtXaV7yOD208PG4vzy4rhMtr9Bg4Dddy/8nkLRPZCwSYRHdyGywVrQ0EJTwoSiA+o38AyxjDxJODbjDkXn4Qew4htTdtNKpwvFMJ2wyd9kkpoVPYxjU1YWPr+qXyi6LBdlUGGTtZugoegqYbOnx50kQVwHcAZosoc8fnsmwmaUyYOCODaBaK5GEd0DLu9YCevYlE0EIh67ziEUBJX7ncHXYZDJmFSh6DrHpkmIPX89jR+vX1a1H8bOnYWuoOrqwpyxsgeSOCcPEu9NulB0PqVJdbX7gquUOTZN258ux6aqzwuaY9Okv5T1gfzM8UB5haLz4o6JsMmWlV0rzNHJ94f8dRRXKHoQx6ZK2DQJRVcdo9hWKy0Una3T0uK9r4v3nqCh6IMHu8KEzpXFtwnZd7ywqXNsii/ORGT3cbYf9pI+qGNT1ib6+oKPN/htAtFzbPq5EU0dm4B6rCcLRdfl2ExK2PS7/0SZPEg21g8ibOrEaraOZcmNDkEnD7Jt+WzsjKj9bRgnugpdpJiqb/Dr28Qcmzyq6ynpyYNkdSY6Ffmyq5DVl+zcmAibuvMoa+9ieXXtiNtPJ1tn0ya3vsQ+Wra/ESOcMorXCjk2PZCwSYRHlWOT/62cQtH5cvFEcWyaCpviQ3eQUHTxDZipsGni2GTHwx+XbvIgvm5EATiVciYsikp/WazeXnlOVL9y8fATR+nyq7JBFA/v+AySoJvVtZjfUbWeKscm24ZsHfa37Drg108iFD2sYxOINxxdF5KocmwGGADYMqdpUo5N1i9VVTntzsSx2dXl74ANmmOzutqbxxPwD6EZN06/rKo8su2JwpHfizDdyyMgvlB00bHJwzve/YRNdjy5nL8IIgpNTDwtRSh60BybYYVNwHvOyykUvafHvd6CCJusLmpqnDQT/O/8OeOvo0oNRfc7xrgdm0lOHiTmpVQJm2FC0Rsa1LPpqtqE7LstW9zPspcArDy6a55fnlFX513O7zzqcmzKthWUOHNsivdwUcwI4n5SvWQMG4qetLAp5ng2dWzKBB9ZOxKXM3Vs1tYWplJi25JdW0FD0fn9xRWKHrVfU2E6eZDf/SJIjk3ZpKeiuC2r2zhD0QcNctpBFGFT59jkj6GEjk07k0EXe062bTevpoljk30n/kbCpgcSNonw6FxGsg5GnJgnirBZilB01azoDF0ouixMUny4VYmkIrIcm62thcvxx80PGnjHJjueOBybzc36cpvClcUyFW5ULltWB375VWU3NMvyCqMyZIMHExefSY5NQJ8bSJw8SJYiQPUGMi7HpslDQFyuxiDlUOXYDBOKDsjzDiUxeVBLi9PuxIELX4dBHLB8OzNxbIquY8Bf2Azr2OT7LPF+wY7X736hS/cBhA9F93Ns8rAZ61l52DHIZs4Ocv/jz11trddtI6tnUzd0mFD0oDk2+XX58+yXYxPw1lE5haKbODtkfR0/mZ94XakcOGEetE0mlBJDirllPI5N/jiChKL7HWPSjk0+LYRYH3zZWZvUpYTYtMmNmBCFzTCh6LbtTWXArr3t273l8HNs8oJGXKHookAsO48muYOBwlB02baCEqew6edGjMOxaRKKHsRVFoRycmzqjkv2Yks2zvFzbOpC0WX3nv7/s5kMbBZ9UE7CZm2tGxVh6ub2e2nD7q8qYRMobMviMzafu55hGoru19YBtz8U25Vfjs26OndsqxM2+c/877p+TVY+8TvTHJtc39/Nj6HYOjqjGP+9rCwUiu6BhE0iPOzhhTn1TELR48qxGWcoehRhM6xjE3COwcSxKSJ787jbboXLqcJZeceBTNjUTR6kegAF4smvCXgGlim/B1hWLtU5Mz33qhsa76qQOT51jk1++ybryf72EzZlop1JKHpcjs2goehJOTaTCEXnH5Jlb7HjcmzaduGMtSaOTZN9Bs2xadqGeeEqrGOT77PE+wXbf5gcm2EdmyxHLVCYY1MnbKbTcsem7NoLImyKfQSfHy3KrOisrqurvWI3EDwU3cSxyZ9nE8dmuYaimzzIitdNLufmP+PDmQHnHKocOEmFovO55vhy2Hb4WdF1x+gniJkQxLGZSqlddLyDkDlmdNegmLJBJWzyTiDdeGXnTrfuGxrULxH8HJutre69Ka5QdPH+6ddW/YTNbNZ1IsnaRFDizLHplz8ybB5u/roq91D0qDk2GxrkL3f45fj0TqbCpmycI3Nsmoaiy+49/f/nMhn3Woja38YpbALB3dy6UHTLcutFNXkQUCj6yV4giesHdWzyBhuVsBnUsQkUphwLImyankdVaHjQUPSGBvTwwiZbxzQUnf+fQY5NDyRsEuFhne7w4c7DnS4U3bK8rhOgfHJsim+TVG+IgoSii7mEZG6ivr5wjk3Z5EF77FG4nEoc4QfmslD0sI7NOPJrAl7Hpmm4pl8oOqB36/oJm7293ocIcf+AudtNXE8nbKom22B/y66DpHNslksoepjJg8LMig7I32LH5djcts09FtVb6ziETZNQdFNhM2wouqrPUoWih8mxKfaxIqo+F/CG6pmEorPJbmSOTT9h0+/FnkrYjCsUfcSIwvQbSeTY5M+z3+RB4udyCkUPI2yKs1GLjs6kQ9FFAVwmiPfn+zTKsSkrV5BjTNqxye9DrA/+5ZEYkitDdDaz47Jt74SO/AtvneAujjNV9eonbPJl8QtFlzk2TYTNoOdRHNeLbteoURtiXxhle+I9PEooOqsHMUKrlKHoJs5anWNTFDZljk2ViUEcp7D7iyzKxFTYFEV6QB11IY7v+IlW2P2m//9sJgObjbO2bAk+Dk5S2FSVK8j9gh/TsfMga9uquQFkL5BMHJs6YVM1jgXUbkQTYZPPWalLBxRF2JS1+ebm4JMH1dX5OzbZPUr14ll8PiBh0wMJm0R4+Ack/n/+N75DY+Imo1ih6HHl2Ixz8iC2jMnkQSIyx6ZspjSVsNnZqXdsmgqbogAcl2OTK0vKNBQ9jGMzm3XXV93Q/ITRUjs2ZaJd0jk2o0weVGrHZthQdBPHZtiJkWRhgkk4Nk1C0YMKm5kMMHp0uPLwfVZ7uzcnbRjHpswV7xeKLg4I+Qc/k1B00QnR26ufOTsOx2YUYVPMGygybJjrWo3Lscmf56A5Nss1FN1U2BQfVnRh2nvs4T6AJpVjU9VGOjq8jk3erT58uL5cQY4xzCQb4tjEL2JA5tjMZl1X6YgRbnvr7fVO0MejOy5eUDR1bIrtR+X04ZcbO7ZwO3xZVPc2Vi+5nHPsfsKmSSi6rv2LOTb92kRQxBfIbMZsIPh9V7yHp9Pe8ocJRRfLIXNs6kLRZcJm2PGEyXnq7nYEev5aYv2+GIouc2yaCpuyz6x8shdbOsemyeRBfB0PGuTkK2fIHJt+43sdxXBsAt4Zz3nnI+9G1eXY5O+tJo5NWdqlII5NXSi6TtiM4tgU60sl7ovHyJdNVibVPgAnJU9NjXkoOlcHRsKmbJ+q7ykU3QMJm0Q4Ojqc0BpA/haBXaTiQ16pHZsmOTaZC0dE5tjkc2yKnbvJjL1hkmDLcmyGDUU3mTyIzW4K6B2bxQ5F58vll2MTKLzp8Dc31QOX39s4v8GZanAq5s/jUYn/cYaiRwnrrDTHZshQdFtW7iQmD5KFCZoKm0FybOpC0XU5NmX74F9q8dv1K49O2JQNRos5eRDgFQ9NQtHZdzLHpqxPCfJiT+wj+IfSsMIm766TOexTKceFAMhzbKZS3rZhkmPTRNhUpTgpp1B0k5Bq8boJIvo1Nbl1XwJhM+/YrK8vzB0+fLi6XEGOMe5QdFPHJu8gbGkxG4eaCJuW5dSPibApth/VAzG/3ODBbt2rysLQXSt+OTZljs0gArVYn7q6CyPY6fIxRnVsAt7yRX35Cfg7Nvv65P1JHPnITc+T+JKAlcEkFD2osCk7Lr9oJ10ouslzk+o6VwmbQfvcqCk2dKieO2Q5esVlGLJnI5Mcm2zMLBtfi+ubhqLLXvaq2lTQHJviOu3t6nsOa4f8i+uwoeisvDU16pyoDO6ask2ETTYOUOVAp1B0LSRsEuGQvV1obHQ7IZOcacXKscmXS9bxiDcoy5K/JYrDsSkuEyUUnR8YiDfxdBoYOtS7HuvU+bfFJo5NfnZyXY7NYoei8zdeE8emKGqb3NBMBw98GYrp2CxFKHoUx2ZYF4IMU8dm2FB02WBcF8YW9kFE1pcmHYounnPx7b7uuPicoEHzp+lybMqux2JOHsTvT0zzoApFF/vPjg79zNmldmz65drjv+fzCvMvtjIZ7wztMlibrq31CjNRcmxWomNTlaeR/S5uU8wVFrZ8qu90wibrA2THpstFF/QYgxI2FL0/d2hBGXnHJmAmzovHxYRN8fo3DUXXCROqNqEqC0OWY5OViR1LQ4P8hYt4Hw96HsX69GsTQdG9QA66PVn74csX1rEpEzZV/RcfLsvnaI7jRWmQ88TXBWsXJpMHqcb6QRybQUPRTSYP4utYdZ1zwqYdl2MzjBNdh1/+3YYGV/wSl2HIzCg6YVMc85k4NoNOHpR0KDqgHkuKn9kypudRN9GiX65WoTzaHJtDhrj1rBJTKRRdCwmbRDhkb4D52XxNcqYVKxRdVi4e2QBDfEuUTjsPc6Y5Nk0nD4oSii46evjOrqXF67oAvJ06W9fEsWnyAAoU37GpEwcZujeyJg9cQULRS5Fj029W9CRC0cvFsakLSWTl6s8fV/C9CSah6HwYYpzCps6xGURMNcmxmcu5/ZCJOL9li7t80DBDXY7NMMJm3I5N3hUZJhRdNQELI44cm11d4YVNv5BU/vuuLmDHDm9ZWBnEXG2q/fD5DNk2ZZ9V95WBHoouvlRldS9O1hK0fKrvFNu0Ojtdx6ZO2JSVy8+dl6RjUyZCsX3wfb8sfxkjjGNTHD+xtpnNyicZBMILm7IHalk9ymZFB7yOTdU1H9Sx6SeYJRmKHlXYlI1f+HtqkDGC6l4cJBSdmSl02wuC6XkSx486x6Yo+KjakWxWc/GzqbDJthVk8iC+jlX3nv7/PZMHAcEdm8UKRZf1DQ0NTt/DQu39cmwyZP2l6rklLscm7/5UjWOB+ELRxbGkqk3KhM0goej83+zz5s1yo4hQHq1jU7Zd8W8KRddCwiYRDtUDEhOCNmxwOjQWrs46l7hybAYNL+XLJeZUkg0wxM5U5mwECkO2GKpQdDHJsso9FNSxWVOj7xAB/WBY59gstrBpmmPTRNjUDVyScmyaDE6TcGzKQtFVbyDjcmyWSyi6WA7+b9YHAeEnD5LlHRJdFnGEorN+asgQb1n9BmcqTBybQV3HUR5a+X21trrHqBqMFnvyIFUoum7yIH7fPEk5Nm1bPpGZiRvaRNiUvcxRCZuycyLOkm3Sn5k4Nksdim7i7BD7/iBh2nV10R60Zec/gGOzSids6l4Qmoq3luXN3WlKWMcm279YxjhC0cX9++WY48vCyuiXY5PNKs0v19jotLEgoeg7d7ozlKuueZMcm+w88rNdM8R+Oukcm4D3vqsSk2XIBJukHJu6UHRZyhI+32cSwqb4/MXXBVu2r89b39XVTrn4c2wSiu43ZpG92JKtw85HX597nk0mD5I5NrPZ/LqeyYOAyhM2+eVMc2yahKKz/cheAISZPMhEZATcY+GdqGL5VeiETT+B3TSlgMo9Kf7G50RlCPvo5vOUt7c7bXPbtsJtUSh6KCpa2Lz33nsxbtw41NbWYsqUKXjppZe0yz/00EPYf//9UVtbiwkTJqCtrU257JVXXgnLsnDnnXfGXOoBgiqkjX3O5YBVq9zv43ZsBhU2WbmyWeetCo/MJm8qbJo4NpnbUyxr2MmDZDk2xQGwLFTEVNg0dWxmMt5cpHGFosfp2Exa2PTLsakanAbNsWnb8vMiaz9JTx7k55gRicOF4FcOVSg64B1URM2xqQtji9OxaVne6ylsKLpJjs2grmNRiM1kzF2r4r740FvZ9Rg1x2aUyYNMcmyqQrQA+bUXR45NwMkZyL5n94qgoeiq/lrW57GysDLoZpUWZ0T2Ezb5HIX8toGBHYrOuxnr6wuv+bChkWxbYpnFv/kXHR1Cjk0RXUoX8RhVs2nz5QpCWMcm2z9Q2MeaOKd1507cv4norgsxl4kXsjbBPgcJRV+zpnB93bpsOVVb5Q0ADLFf82sTQdG9fMvlgj1LyMYN/LFGjerI5VwBziQUXTyXUccTQZy1Mscm4H0ZLKujuEPRTXJsAm55Vc9Nfjk2uX1WzORBrG+QOR9Z+bdtkxsfAP+JsVTPLbKxbpjJg0xERsA9Ft6JKpZfhXgew4ai685jdbWT81i2zwDzeNgNDbAzGdhsW+vXq/UU8Tpjoi+FomupWGHzT3/6E6655hrcfPPNeOWVVzBx4kRMnz4d7Yq3Ls8//zwuuOACXHbZZXj11Vcxa9YszJo1C0uWLClY9tFHH8ULL7yA0fxsr4QXVTJy/qJcvtz9XMpQdLFcKoGLH3yJQpksZBvQC5vsxqALp1M9ZIdxbOre9AD6gblO6FKJcGIu0gQcm9ocmzpxkNHY6JaxknNsylyV4sC0WDk2yyUU3WTyIMArbAZ5aOHdRazcSTg2VS46/nNYYdMkFD2qY5NfPkh5+Jcx7e1u2DO/vTA5NuOYPMi2C52+JpMH8STl2ARcYbOhIVj7CxKKzi8fJBRdJyLJhE1d/zfQQ9FVDhwgvIOIbxOii5P/m9/Xxo2wmBijC0WXlSvoMQYlDsdmmByb7LgaG517galjU9U2xfYzbJj7wtvElcV/DhKKzhsMVNe8ZRW63YKcx2KGokfNR5n05EGqMb0uFF22zbDjCXaNV1UVjotMcmyK+5bVUdDJg2TRL0FzbALuuTOpY9l1LgibZevYlAmusv2pBLW+PvflYhyOzSih6KbCpmrsm7RjM8h5VJXR774t2wc7x+3tZs8Aw4a59S8KmxSK7qFihc0f/OAHuPzyy3HppZfiwAMPxH333Yf6+nr84he/kC5/1113YcaMGbj22mtxwAEH4LbbbsNhhx2Ge+65x7Pcxx9/jH//93/HAw88gAw1FjUmF+KKFe5ndjFXVbmDuWJNHgSY5VrkOzVRKIvi2ORvzHFOHiQKe8UORRf/LsdQdF1+VZMQhHLJsSm7VkxC0ZNwbEaZPKgUjs04QtFNHJthJ0YyeUkUh7DJOzb545C5jvmJ0uIUNlV9Vm+v11lkKmyaTNAmogtF5/t9/nyaTh7E4ycAmObYTKWcdsuvy0LRkxA2ZffKsMJmS4t/jk1d/1dOoehBZ0UXhU2dmzEpYVPn2OT2ZfH3NtmxmYai6yadCTvBhnje/RybMoFG1yZN8sSK2xXLJopWMsSQzHTadeCoJgjh9+9XFpVj8+OPC9eXwa9j0lZ5dMJmnJMHVVe7blGZWGZCUpMHsTKYTGzDi2wqYTPseML0PPE5NsX7C3+OZHUUVNj0mxVdJ2zKXsKHmTyoq8tz/6m4HJuykG5V+VXPF6Y5Njs7w08eJPZ/qvumWGd8CHpUYdNkn2yZYgub/YYJm62zdSvw0UfB9iG6Wsmx6aEia6OnpweLFi3C9ddfn/8ulUph2rRpWLBggXSdBQsW4JprrvF8N336dDz22GP5v3O5HC666CJce+21OOigg3zL0d3djW6uA9nWnyOht7cXvaUYeCcAOw7xeNLr1uVV8d6hQ/OdYGrYMOS7uM9/Pr98rq4O2f5lqmprYXV2wu7qQp9pPeVySJ97LqwlS9D30EOwurvzjbfPsmD7bCc1fHi+XH1r1rjLZ7PIsFny6uvzZUxXV3tUf7u62imrZYF/hLUtyz2GXM797R//cJfJZPLLpFMpt9527oTV1ZU/jqxlIcfqEYBK2rS7u9HX24vUzp3uMaXTsLhjzA4blt9Wvg5qawu2mctkkO3thZVKueXYudO77o4d+ePKZjKe36pqamCxY6yvj+WBM5VO58uZ6utD3+uvo+r882Hvuy+yjzziCb1UlYsn3dKC1Ecfwd6wAX3d3Xlh3dq61T3mmhr5+jU1Tnvt6oK9bl1Be011dnrOgd3bC6umxu1Yb7wRuPFG2C0tyP7sZ7BPP90pU1eX2w5SKU+9paqq3G12dDhtlTsHjNzOnUBPj7sd2wZ6e5HKZNz1a2qU1wbbXq6nJ9/uTUj379O2LPTlcoU5a0Wqq919bd/uu6/Utdcide+9ebeu3dCA3P/7f8h96UvecnR3u8duWZ46TKfT+d/szk6wwDlWRzpYX9fHncfstm3I9fYi1dXl1m1/v5Ouq3P21dOD3p073UHG5s2omj7dWfaJJ7wDEY6q9nbnGqqtRV9NTb586eHD88fAn0dP+/qv/3L+cdgNDcjdfjtyV16J9M6dbh3V1MjPOde2WH8AAFUNDbC2bAEWL1aGkPYNHQq7txdV9fXOMXR25q+R1H/+J1J//jOy990He8YM55iEds8fI3+/yNbWOtdjKuWWrbOzoO2k+fYPOO3fstxz1NUFu7sb6U9/GtY776Dv4YeR6ulxfwc81wff72e3b/csBxQOmOx0Gn29vUhnMgVviWV9ivTaZlx9NU7705+Q/fnPgTPOQFVXl1OnNTXKfdj19UBfn7NcR4db99dcg9R992kd771DhkivBWvYMLfdr12LXE8Pqrq7YQHIVVcj29uLqupqZ5+Se7i1Zo27/vDhsNNp6b2FbZMdX76O+P4L7vmx4NZ/trtb2d8r2bgRVTNmwE6nkf3nPz1hZamvfc2pL92LNA5lv8r1dfjNb/Jf2w0N6MtkAO4azG7fjlRHh1MH9fXo6+2FNXSo28Yuu8z5p8DOZJD7939H7jvfAQBUcdtCKlXQJgAgtW1bvm5zzc359pRbu9b9nhurMTxtYs0a7xhg3TpnX42NRscYFH5s0tf/kir/dypVcB74cU7f1q1OH712rWe86mlj7DrMZpGeNQupf/7Ts71cc7MzRuL73X7Y2M4zruvsBOrqkD7zTFgffIC+Rx8F9tsPKb4/6W8/Vc3NsNrbYbe3o6+nB7AsVPXfr2RtIjd8OLK9vdKxHD9+5O9/uOoqdxnJuJBRlck4+x00yBlP8vc//jzW1RWeR66fxu9/79aPbFs7djhl2LAB6dNOw5lc1Jy99975+vKUjfWFtbXuWLq21q3zLVuAkSOlxyVi7dzpliWdRo6/h8PseSK/rdragjECurrce1Y6nb+W+P4Lt96a3wb/3AEgXxa7oyPfJoJQpbneUtXVnnaf7unJj99trs147n1snFNf79a36t7Bn+e6Om8/wcbRO3Y410xnZ8EY2HPt1tY6++XK1dvZCTQ2Kp//+Ouwb+hQYNs2d7nOTtjCs0xvU5Pbbv/+d9+6zh1xhHPvaGxEescOt1zV1fG+bBs82G1D69Y57WPrVve7/j7a87w9ebK8zP33bMD7bMXI131NjafftPjny/5+Nl1V5RmD5Ovett2y9fYi+/HHqJoxA5YQEVvQJmpqYHV3wx461Bljyca+/c9VWrj6wl//6j0+7tyIx2j39iK9fbvxefSUq3/sC8B73/7c54DPfQ52ayuyv/kN7JNO8j5r9gvJOX7sO2tWfh+ePnrIELde++9DjKrmZmd8DrPnmkoniKZWkcLmhg0bkM1m0dra6vm+tbUVy5Ytk66zdu1a6fJr167N//0///M/qKqqwle+8hWjctx+++245ZZbCr5/4oknUB/27XSZMmfOHM/fU998E+z9wROLF6PvvfcAAKO2bMGRkvXf7ejAsv6cpqenUqgG0LF5M+Zq8pzyDHnnHZzwt78BAD66+WZsHzMGE/t/e/3NN/GRz3b2WL0ah/Z/Xjp/Plb0vzWp2rkTZ/R/v2HnTizo386xnZ0Yzq3f0dODuW1tGLRyJU7mvt+6Ywfm969j9fZiZm0tqgQnzvb6ejzdv8zE1asxrv/75+bNw5B3382X64233sKH/cvt98EH2F9xLNmODrS1tWHie+/lt/XMiy+ikav7V7duxcdCnez90UcQ5fp1GzfipbY2jF66FEf0f/fm66/jA27dYW++ieP6Py9fuxZLud9OrK/HYAAdLS2Yy4m5Udj/ww/BhrVWXx8+vvVW7P3++7Defx//uvNObDrgAN9y8RwFoBWAlc1izoMPorc/cfPYBQswqX+Z15cvx0rF+qcOGoT6ri50r1qFfwrL7LdkSf48vfz662ivqkLjqlU4RdiGtX49Nt5yC17oD/c7bu1aDOv/rW3uXM+Aao933sm3iSWLFuHD5mbUrl+P6cI2t65bh+2ZDNjc0s88/zx2fPQR9t22DQew7957D9sljpR0Vxc+0f9540cf4XnD6xAATtiwAUMA5KqqtHmKGfVr1uDU/s+r330XizTrVO3YgTPuusvzndXRgZ5bb8UTY8d6vj+2vT1/jbbNmeN5a3zY+vXYvf9z79atqAaQS6XQFqCNvrR0KY7v/7xi6VIsaWvDPkuW4MD+7xa+/jrW1dbiqK4usDvLnIcfRm9/yPfYJ57ApMWLAQBLbrkFK089FTJOW70adQC6GhrwBFe+/XO5/HUw/913saP/ob7xo48K2heP1dGBnltuwRN77IEjPvwQLKHKU//6F06tqkKqrw/bNmzI91uDVqzI92kr29vxWv/3JzU1oal/4KTimVWrsL2tDSdks06b2L4dbW1tyOzYgZl33w0A2HDrrXixX/w+vr0dQ+GI4m1PPIH9s1nsJ9nuojVrsKatDXXr1+O0/u/WrFiBhULbOXrVKjAv2T/nzUO2pgZ7vfsuDu7/7pWXX0bX8uU4vr9eP7z5ZtiWhX36f1/w8svYxL3dP2LTpnx9rXr7bbAW99KiRbD6+jBVKOe2zk7Ma2vDkZs2YZTw27KPPsJ7QnnHvvtuvs954+WXsbJf7K7q6MAZP/kJMgDW3XYbXrAsnLJpExoB9KbT+EdbGw7dsAF7wMuWvj6k+vowGFzdb9uGmUIkikhfdTUef/VV5N58s+C3Ye+/n+9XV7z0Epb+7W/4VP/529zZiefa2nB8dzeGAkB3N9r+7/88/df4efNwSP/n19aswdaXXsJJ/X9/9O67+fY1fetW1ALozOXwJFdP+23fnu9T5735Jjr6c2IPXbbMvR7fegtLAvRZADDu8ccx8bXXYAFYfOut+OgU5yqq3rYNp997b6BtzXvnHXTwqRP6SXd14fRMBmlhEL6tuRnz2to894bVb7+N3fvb3pbeXjzT1oam1avzdeWH1duL1A9/iMePOAJ9NTU4k9tWKpvFYDhiC99H77d4cb5uV3Z15ccPa157Ld+2Ptq8GYuFuuXbxPKXXvLca2esXo0aAJ0NDXjS4BiDsvtbb+Gw/s9LX30VVjbrtq+33sIqYZv7rl6dv/8tnD8f6zo6cMw774D5gR5ftAj7ffQR9u3/+8X587FhyxYMe+stHCeImgCwuqYGi9raMOqddwrGttu7uvB0WxuO2LjR7WefeAL169bhuCeeAACsuPlmvDl7NvZ77TV3rPDmm2ivrcXR6TRa4Iht/3zkEWRranBmfz+/ubcXz7a1YfCaNTixf723e3vxTlsb9lu9umB8+O6KFXi7vy7237ZN2q8u3LQJaxXn4JSGBjRu3Yptw4djXlsbBn30Uf6+8PGyZdijf1zLysWT3rlT3u4l21r19ttY3NaG8W1tOEQQPqz33sMHt96KZRde6Pl+2pYtaADQY1l4vH/fEzZuxJ79vz//+OPY8sEH0uMSGf3SS+5Y97338EFbGw7YuTPfHp5euhSdsglAZNtatiy/rbcWLsT7u+3mjGH6v1u/aRNe6C9v04oV0mt7VS6HV7n6PLqnx2kTuRz++eijeSHElJmbNiEDoMOyCp6vDly1Kn/ve2H+fEzcvBmD4AhU67k27Ln3LV6M9QCOrKrCKDiC4z8WLoT92msF+x68fHm+rS7bts1z/5tRU4Oari7sXLcOc9raMGXVKjApes6zz6K3qQm7rV8PJs8t/PhjrGtr89yTn3r8cXQ1N2Ps4sXuffTNN/Nj9wO2bcufx3kffohhy5a5fceiRdjQ15fvm3KZDOY8/TSmjRiBBkO3Zurll/HKbbfh4xNOwJEffJC/5z/1wgvoeucdo22YcvqgQajevh07P/wQT7a1oWn58nz7WblxI15ra8PuO3bkj0/FR729+f78oFWrsLfw+5xnnkHvoEEYv3Jlvl99/bnnULtxY36su+j117G2thZHbd0KXkV5felSfNTWhrr29vw4bfVHH2Hzt76FCZI0f29t3Yr3uTYxbcgQNKxbh63DhuXHowBwIDdGe2rpUuw0OD+ntrSgXoiq662vR9u8eflnA/4YX3v2WayqqsKRy5fnz+PcBQvQrdCQAOAgy8rX39MrVqCzv8xD167Nj00Y1rp1aL/5Zry8cyd2e/75fLte9tFHwMSJWJFKFZwLAHh540as699uZvt2zEinkcpmsSqT8fQTRzU1oZUd45w53omMByCdARzsFSlsJsGiRYtw11134ZVXXoFl+Ibs+uuv97hAt23bht133x2nnXYamvhZryqY3t5ezJkzB6eeeqonNL/q5psBOG/6Tjv3XPfB5rTTkN2xA9bChe5Gxo/Hnv/zP9hzlNN9VDU2Ajt2oKGqCjNnzjQqB+88GVdTA3t/d1h3yGGHYYLPdqzOTuBHPwIAHDx+PA5ky3PCdvMee+TLk77rLuCtt/K/NQwZ4vz27rue7TYNG+Y9hv/9X+R+9jM3ZKKxEfX/+Z+Y2f8QleKEi2OnTkWKm83x4ClTcFD/tlL9goiMdF8fZs6cifRDD+W/O27aNGD8eGR37ACyWUy89VZMFMIGUitWeFwkANC6++6YOXMmLC4858C99sL+3DHxv40/4giM5X+rr0fu3ntRe+WV+WOMCn/sqb4+jONCEaaOGwe7f/+6cvGk//xn4JVXAACnTpwI9Auj/H4mnHwyDlatv/vuwPr1qNm+HTNnzPDcQFLPPZf/fMSxx8I+8UQAQHbLFlh//ztg20i9+CIAoCWTybeV/PVTXY2ZZ5wBHmvHDqBfmJgwfrzTJvpfHPAMqavDYM6lcPwppwB77w1MnoycZcHef38c98UvSo8Jtg27/w16s20bX4cAUHXDDc6x19SYrcddY6OHDEGrbh1uUGG3tAA7d8LasQO1W7YU1H36ttuc5VIpzPzkJz2bST/6KDB/PgAgw96qcvWvg/V5R/SfSwAYP2IE9pg5EymuXzt86lTY06cj/eCDwKuvAgBOnTQp72CZp2AAAHtTSURBVDZJ9bc5ADikpUXZvqr6+7ba5mZv+SZPRq6qCvYBB+D4K67wrJPdvBlWW1vBbLDW0qVOfW3dipkzZiD9v/+b/+3k00+HVVMD9PVhcF1dfl/WokX5ZXbfZx+MYd/X1iJ3xx3e3Jf5HVmwzzgDx115JQAg/d3vAsuXO33Taad5+skR1dVuu7/xRufLmhqn3U+ejFw67cnHbE+ejENvugmHZjLAunX570eJfS3ctmjX12P6pz8NAEhx18phhxzicebtWVcHm7tmph57LOyprlyZ/sMfgBdecOpi6ND890cefbT0jfig4cOdvvg3vwGEyQv3nzwZ+wrltbZsAX7yEwDAIXvt5baJlSvzy7T09+9V/c7fTGMjZs6cidT//R/w1FOe7Q0ePdop14oVSPf2Yub06d5raMQI2OPHewtdXQ1cdhlm9NdXAfvsA/RHw4xvaMAeJ7uv8oaOGuUc7x13AO++C8u2nfPNpw95+eX850OmTfPsf4/W1nz7Yu2+Xmz3hx3mtPuDDsIJvGNx772Bb3zDKdegQdgjQJ8llmviiBHumIF3jMnqi8eyYH/ykzjhC19QLmLv2IHcr37ltpdBg9Dw9a9j5oknekLOxnCCxeAxY/J1kN26FdY//6md6dl6/31YGzbAsm2cNmkSMMqV1QePGeOk3/jwQ1T19Hj6zdQzz+SX2/2ww4D+F9ZjuPO32377YbRYt3vtlXeG79nY6N5r+/qQ2b4dAFA3dqxzDAbHGASLzRYL4OB993Vn+AYwcdo0HHLaaZ7lU2+/DfzhDwCAww88EPbMmaj6+tcBAHZTE2bMmoXUG28ADz8MAJgyaRLs0093c4wCsHffHfbo0cCIEWj97//GzP33h5VKAd/9rmdf+ev/d7/Lf3fy8cfDeuON/N971ddj3MyZSPXfjwDgiBNPhH3ssUg/8ADQv+z0ww7zhPwPEdvE++9j7zvuwN7NzUgtWwb88Y+esuxzwAHYi9XvpEmF/eoRR+Cwm25Shi1a99+P3E9/ioZ//3fMPP544MMP87/txo3BhijOo93RUdjuv/GNgm3tPnQoRs+ciVR/PwsAuT32QKq/D9y7uRl7iv18vzBRPWhQft+pV14B+h/0j9l33/y40A+Lmzz0wIkTnbHupElOzsWJE3HipZcabQdwXJj43vcAAAfssQf2mznTMytyS39/ychu2gTriSfca3vkSIz69rcxinOopn/723yfNP2ww4Bx44zLg+5uZPoFgPpx4wrOE98HHnXooUj3n9eq+nqM3GMPoD/i0XPvO+YY2CecAIwejdzttwNnnYXTzzxTvn/bdsYmK1Zg3+98B/sOd+0hVaNHA1u3oq6jw7lm+l98AsCpn/iEkyrnpJOQ7ewEamsx+YYbgKoqpH//+3y5Tj7uOGD8+HxbAYAJkya599FDDnHO46GH4oTLLoP14IP55Q7eZx/kpkzJ/52rqsKpp56K6p//HLkf/EAb+m9t2gSrf0xz6MiRmDhzJtLcy8OTP/lJ78QyMVA1ejTw9tuo768vi4tG3f2AA5z76EknIbtzp6e/8TBqFEZ/+9sYva8j9/LPK4xTP/EJoKHBee746U8BABNHjwY4DWMyG+vef39+rAsAhxx6qHMf5fL4jh4xAqO49mMfcADspiZg332x3+23Yz+uTVg//SlyP/85Gq++GjOPPdYt1MSJyNXWwj7sMJx08cVG9WX9/OfI/fCH7nmsqYF15ZWeZwP+GCeNGYNDZs5Eul8XAIBTPvUpby56kUMOcco1eTJO5CKMcPrpzjPf3LkAkH/mG9n/bGWtXp1fdL/DDsNyAGPuuAO56mrP2M8+6ihM/q//8pg0ch0dwJw5GHXLLRi177757zFqFHLf+Q6sc8/FzE98AgOdbdw4wI+KFDabm5uRTqexjnvoAYB169ZhpCIcYeTIkdrln332WbS3t2OPPVxPRDabxX/8x3/gzjvvxAo+X2Q/NTU1qJHkf8hkMgMuP2fBMfW/GbFaWpDhBbRMJi/K8HjeJfTXmdXVZV5PbLIEAKkNGzyD/qraWv/kudxNJ93VhTRbnhPHUoMGIcW+5ycOAWBVVztlFZy4qXTaXQcAZs92/vHL8H9wdZWxLE/Ol6rBg/Wz7KZSQC4HK5dz1uXKnhk0yClbv/NEGsYuEdtTNTVO+bnjTedybv0Anlnk0yNHen879VTg1FPjTdbLPQylslmkuAeZqk2b3Dri2kRBuXi4PiGzebN0/apRo9RtqN/pbeVyzkMcnwuGE9yrGhvdbfAhwnV1QFcXUjt3um2l/9xZNTWF1wB3ntLd3c5xSUIkrZ4eWFwYeKauztn/brsB/Q9amkytTs6WlSthrV8frL/ihEKj9bgQbE8dyODamjV7NrB0KfD447CyWWR27AC4QRGre2k5uH6ZCeBWVVWg46ziQ1W7upxyc/VdVV/v1DcXCZDZssVtA1y7TW/cKG+ftp3Pv2M1NnrLt9tuwAMPOOuL6/WnOChgxgzgn/+E1deHjDCzZWbQoHzZrN5ed19cG07X1bnlnD7d+achXy4uf2emp8dzHlOdne4573cPW7W1zv533z0vQvhtN9WfZsEDuw+NGOEeD3fuq7h9Av33Di5XUcG9g+sHU1xu1ip+9nGOVCbjlEkyDkg3NRWec9m1DXjOk7Vhg3MsrK5YHyHckwAg1djoPce9vd5r6JJLYP3P/xSuV/ANBzdpYmrjRqS4Np+qrXWOl+ujM7mctw7FfpV7UEj19Djr23b+AcRqaPC2+913l/dfY8a429mwQd+PyFBdj3x9XXoprP7Qbh3aflUSQp6vb74v5ASQVGOjezzf+pbzT8fVVwP9wkBm82ZPv5hqbPS8AMr09rrXEdem09x90eLrZtCgwnbLtwm+7rn1Uq2tzvcmxxgEbsyVzuU8+6waPbrwvs1dY1Xd3c7v/Hg1k/HkUqvKZp1l+Gvwq1+F1W9ayNekRLjIjwv5cR3gHVey+uL7EzbW4+8dmzd70yPw9dUfGZYvi2Qsl66pcc/b2LH6flXGGWcAZ5wRrK3ymLZ7NgbgzmPuttuQ6hcw0jt3Fra//nGyZ7zEtd8qflznB9efpWtrnX2NHZsPodfWkYjsuYJ/8c3uD4xbbsmfy/wy4jZV4wkTOGdbasSIwvPEXUtV3ASnVibjvPRk6/JtlY1zjjgCeOQR/7F+f5h9wXIjRgBvvQWrs9MZI/D3LTZ2zmSA/pex+fPA32ts21lG9fw3fny+3acBz3We7u1FmhtH5/qv3apPfALwE4aefhrof8GXv3dwQmhmyJD48xy2tgJvvw1rxw6nD+fGMfk+OpPJC3UqPOdB4v7NNDY6ZedejqU3bfIcTxV7thDWz9c9P24S+mjrT3+CNWFCYVkA4JOfBD75ycLvx43znkcT+rfFU7Bd4RgLzuPgwfr5LcaPz79QKljqv//b+Qc49+NNm5Bav965Brnn/HR/3101bhxSnPCe/1384otfBL74xcJjOfJIs+txgBDk2a0i66S6uhqTJ0/G3H51HHDyY86dOxdTOfcFz9SpUz3LA054NVv+oosuwuuvv47Fixfn/40ePRrXXnst/ikJT9mlsW032XmYCWNY5xhkVnTeit7eHt/MzKrEweKDKtuHuC9dJyhDTLIsSwit2i73Fkyc4c8owbLp5EHiLNkmE07ECVcWq68Plnjug5ZLNXNgmPXFkAiTcyCbyEE1IzC/PL+O7Frhk78DwQdWzB2yYYN/nkwetk/TJPuq2TZliOdEV/esHLLrX1a2oA/VppMHqcqo+szT0+OK1nEkoBfLIrZPVi98uwnaj8gQzzF/vLwTQtfuZegm28lmXXcMP7mJ2Mfy+29vj3fyIHbNydqb7Hyq7kNiGW1bPWEPT329/0zcQeFfsMnakFgW8byYzIre1eU+nJq2e7FcQYl6H4kD/lj5e1HQ1EW6WWBlbUL2mZ88iA+9lZ0P/sGdL7c42zjbv+z3sP2bODZRTbYm2w+b3ZeJ16yMsjbpN4mE7Dt23YuzAvPbkk3+oZosSjUeNClL3GYKVVsNcx79JnTiXdIy5xw7R3z/HHbil6DPDjpk15nu/mJClAlt/PoycSI3fizH38P4cxBXuxLH4eycWpZ+7Mrvn5WXf9Gvq2NxkjDuXpYNcly6yXyqq5OZvEWsrzgmK5JN/sPKLh6jbKyrev4Vx1zFfmY0RXceFS+vI+1H1/cTiVGRwiYAXHPNNfjpT3+KX//613jrrbfwpS99CR0dHbi0P4xg9uzZnsmFrr76ajz++OP4/ve/j2XLluFb3/oWFi5ciKv6E2sPHz4cBx98sOdfJpPByJEjsZ+QyHqXZ+tW9wYjG1j6oZtRVYU4mA46K7rJQJ8ffIkPkeyGoJoVzhS+rNmsusOTbXfYMPdzV1c8wqbsuMSQy2LfpLiypPr6PKE9oYRJ1YyupRQ2mRggy59kKmyqZkU3hR1XNutxLfmiExRlpNNu3fgJm/z5bWnRz0rPBl6mImbQwafsYUz2UKRqHyoBgCfuAY9YX6ydsYcHVua4hU2xzcpm+eX3FUbYFK+BTZtccYw/B7o+tr3d+1AktgnVzLBVVfL2oxrwA8GETe6z1dcHbNlSOGu46iWIru7D3J8tyzsw54VLWVnE8yIKT2FEJFW52PGoricdqusxan0FobravbfzEURBr33xOhfrUzVjNP+Zv2b4ssgEtVTK3afqHsp+r6lxXWtRjpEhjk2CCpv8+EEmbLL2HUbYlF3/orDJ2ldQYVNXX7Lf4hZXamvdFFNRz2NdnbstdozcdWdzkXLSMYLsvhGHsBlkBnQZsv5cd38xIUlhU+yL2RiKuf8YslnRoyIeFz8G1qV/kwmbps9/4vFy96pckOOSjUN1s8/HgV8fHwZNZFPB+ZFdJ+L6rO7FMRffDvkoq1KjEzbjPI/s3O3Y4Tj1SdgsKhUrbJ5//vn43ve+h5tuugmTJk3C4sWL8fjjj+cnCFq5ciXWrFmTX/7oo4/G73//e9x///2YOHEi/vznP+Oxxx7DwQcfrNoFoSKq0MULm5o8Usp9btzofdgKKmzyg/tiOzZ1b/aDCJtJOjZFYVPmykgSriyp3l61mGlaLj9HXW2tJ+S1AJ24JnvoF2EPinE7NkVhM+ggOuwAWicoqpCJuzKSdGwGrR8/xybbRxTHJt8XJenYrKlxHh4koc+ethVwooI8OtdgFGEzlXLLrBPQVMKm2Mdu2KB3OfPl4nOLqoRN9l2MwiYA77lj50T1EiRuxybgFRD5Pk5WFvG8sD6ysdERNOISNgGv4Go6dmCUg2PTstz7AV+vQa99P0EsqGPTpCy8sMnqXlZ3luVug99u2Ak1xbEJ2+fgwWoXM0O8HnjxlSFrk7Kyyr5jZeP7ht7ewpcpXMoRz7bCurJkZYlb2IyrrYrbEhybPQ0NnlD1gr4wm3XHOfx5U72w9kPmRAuL7LkiqmNTN970w+8ljdjuVY5N/hxEFX9l5eEdm35jAX7/7NyZisc6YTPI9TJ8uCu+JimI8YR1c+vQCZviMcpe4ottQSZs9vW57XD48GTcrGEp1nnU9esDbGLpcqSMWlxwrrrqqrzjUmTevHkF35177rk499xzjbcvy6tJILrQxTpT23Y6T5Mbpzhw4SYkMRqcqMJhVQNJ8SFS5dgMOhMZP9AJ6tjk33zFJWzKjksXip60o0UoS83WrbD4QYyfW0SGn6OupUX/xtjUsakShXhRz7adfcUlbEYJqxKP64AD1MvyBHVsAs4xbdoUXNhUidpAcMdm0PphTtPubr1jU/UgYiJsxj3gUQmbrG3KQtFNxHk/xAe8uIRNtqyQYwqA+vrX9bGiA1zsZ/lyiaHosnQNulB02fk0FTZXr3bFIz/HJn8u4xI22Xp9fV63VhDHZpSwX5NybdniTc/iRzkIm4BzvP0T7ni+C4KfsMmPSwyETaOysOV7e52onSFD1HUXxzEyxFB0/r4tw0ToL2Yoene3Uxeyl1iiOGf6oqsYoehsP2LfFPY+xbbFjpEJm4MHo4Y5OkUBGFCPc1UphvxI2rEZ5WUzUFzHJj+WK7Zj03Qs4OfY1InHcTk202knt/769W4ds3ZcLGEzjpfgYnvnn1nSaecZc8MG5zhlL/FNQtF5x2Y5haEDhccIJC9sCvdnm4TNxKlYxyZRQqI+COjcHib7BJwHP0aUUHTVzaIcHZtijk0mSAgJy5XoHAc6x6apszEuuLLUchNRAJALR37lkg2AcznzPLFxhaLncu7yQYVNMY8d+y7KIDqq4yGosAlUlmMTKCy37KFIVsZs1pNAXZnHNO4QFVUeK9bO/BybcYWi8+eqt9etN10KBhWq1CVhHJuA/t7Bl6tEoegAPDNLBwpFF0XlqMKmSVn489Lb604exLbB5/EyDftVEbbPEiZVwvr1rnBc7IgEU9FMh99Dr187S6XUorCfsAm4daZyiMVxjAzRSbZlS2F5VPtRXQ+yMWhSoeiA9+E2nVbfO8opFF21n7Dnkb+XdncD/bPcdg8eLHd0MlQvj/m8r6VybMoME5USit7VZRaKHpdjM6ywKTNdhAlF7+ryjKNzQY9LlTcxKaFKvNclHYoOeI8xrGNz61a3rOUmbAKFUR/s3hnneUxClCaMIWGTCE5UB5/O7aFCfCP78cfu57hybJoIm+K+4pw8SCdsCjN5enJsmooRpgNz0bHJC4A6Z2NccDfPOt5dBcgdl37lkj0Mb9rkCk1+N19daFAQYRNwzncu5w4a/IRNdkOUXSfZrPf7KKHoYRwPYULROzv1IaTllGMTKBQ2TScP2rjRe5y5nGe26DxJ5tjk81ixdpbU5EG6PI/su74+95oL6tgECsV9lSCl62MBgEtRY5xjM4nJg1QpUYBgwqb4cB1HzsggwiZ/XmT5DPnl43JsAsH6LPE+whyfgPee0txsvs2wxCEW+eVf84tQaWjw5vs0KYusn9M5Nk236wffl/PjPhNhU7weouTY5HOHMmSOTTEUHfCeo4YGd7wSNhS90oVN7px0s5nFVS8/VfcnVd5XP+J0bMpyh1bK5EH8WEwXip50js0wjs1iTx4EuG1t507nJRk7z8VwbCY1eZBK2Ozs9L4IVL3AlQmbfDRlMSL8gsKOkb0ki3PyTkYS+VEJY0jYJIITVyg6YCZs8u46Bu+6MblB8Qmqwwib7IbA56kDgoeii0mW+Ydb3azoDQ3qm3QUYdNv8iC+7ot1k9I5NjdudAYU/IzIfm2wrs51dMoeyPyOSzfQNAnjFcUMv/D1ujr3sy4Unf8dKE6OTZY+Agjn2MxmC4VzHlYO9nAe1rEZRyg6KwfgXqeyh6KGBvecydoXQ/ZdKR2b7KEmjhyburx27LuwAiork2koum7yIMA78DYNRY8rx6ZJShTAKyaGzbHZ1BReqObr068s/HlRiao6YTOIUyLsQ7/uevTL2Rg3fu3ChKYmt/8Jk2OTiWtBhCvZC0KVkOKXhiEI/NiEFzbDhKLrcmz6uWpk9SV74d3XVzizN3+O+G0MHuxuI0gevWKGopt8ZwI7ns5OTx8cWtgE5Hlf/YjTsSlzmkYNRR8yxL0vJZljk88hLTo2+fabdI5NvzFHXI7NKDk2AW//tny5+7kUOTaTcmzy54jva/0mz+Wfg/nxVTk6Nvlj5NMNFikUnYTN5CFhkwhOXJMHAfIQW5HNm71v6ADvDdzkBsUPSsPk2ORvCPznuELRq6u9v8mETdVNOknHZhBnY1xwZanjw3kZGzZ4y2UiuLKyy0Logjg2daHoqgGg+KDlJ/CkUq5Q5idsssFpKhVcZA8T1skPKMM4NgF9OLqYm0dXxmKHotu2+qFIbF+lEjbF+lLl2ATcPjXuHJtxC5tRQ9FFkcF0VnQev1B0U8cm/wAZRyh6fb267qP012FD0VXnRDyHYUOzwoaimwibxbq/xSEWiTPXi4KYn7DJxJggZfELRefdruXk2Iwrx6bse1nuOZljUyVsWpZXnNsVHJsAsHJl/mOPKGyK/bXu/sTOZ09PYU5XFVHykssQnyuihqKHdaLyy1uWfDZqvv74+hIdmzzlmGMzjsmDouSkT0oQU+0vLnFMl2NT3Cff1/o5NvnP/LkpR2GzGAK17tzxxhUiEUjYJIITNRQ9aI5Nv7eWpoMHP2GTf0OucmyKn+MKRRc7VfGYZMJm0Hx1fNgMw8+xWeyJFYSy1GzdWvj7+vXBXcOsnTLHZ5DjqqsDBg1yPquETTbrtIygwia/ji7HJv971FxOps6AsA8FKqcaT1+fG67Nzhf/kM6X0bZdkTXJUHRWbuY0VR0/q8sNG5xlZfUp+y5uYZMPQ5U9PMgeEuIORd+6tTDsvrNTPru2CSphM2woOo/Yf6vK5ReKLrY3yzKbTIwhPsyvWuV+DpJjc8sWN8Q6isOer0+/spgIm6wuoubYDBuKrroee3qc9goULyIhLrGIlXfDBq/7SmwTfNsSJ7wI4h7VhaIPGeLth+MUxPjt8hNZRQlFD5NjU/a9yrHpF4rOw78UE8+jikoXNjlBobupyft7Z6c3H7UuoiCMgzvOUHSgUJCNGooOFOYBNIXVgWo2apWwKTo2eeISNvmcqGvWmKeliWvyoKg5Nvn7QzEcm0OHep27xcyxCXj7Wr/Jg8TPjHIORQeSO4+qUPT6+uAGFCIwVMNEcOJ0bJoIm34DFtMbr+yNcNAcm+LnKI5NPkxS7FT9HJthcmzyYTMMv8mD4sjXFhSuLJZswpX29uBtkF9mw4bg67NjV+XY1J0DUdQLEr4uc2zybYM9CIUZfIZxP8lmSjTBxLHJ56Xkz4mYtB3wF1hNxU4/xHKrjp+V0bad4zB1bCaRVJyVRfbwIHNmxy1sfvhh4e9xODZ7erwPvGFD0XmiOjZVwiafR0/E7wUbEH7yIN5JEuVFlCoU3S/HZphQ9LDCZhyOzWJPHATEF6bNzxDPi8+qUPRs1j1XOmEzTCi6WHdJOTb56191vvjoF9GxyVxsfjk2VeKuavxkMmEZ62/FbbB67e31pljS1Vd1deEDchKh6HGmFFAJm0OGFO5r5073s0koOhBuDFOOjk3APa4gTlTAP20ULwzzIrrOsRlXKHoq5bq6ZfcUFVFC0XU5Nss9FJ2vryBpKnQEETb5vtZv8iDxs2x75UIxBGqVY5NmRC8KJGwSwWE3z7q6cJ1B3MKm6Q1KNuti0Byb4ucoOTZ1js0kcmzK9iNzbPIDvxI7NqVEFTbFB9ogoeybNnlFNZME6DrHpqmri1+HhW7xv4cZQOucqCrCOjZNhE3VOWWfmdsW8BdY4548CHDKrTp+8Q1tmFD0uAY9rL745O/i5EFAco5NfrDIiCPHJiDvm8Rckn4iA09Soegm+fF0wiZ/7oLk2OTrPq5QdL+yhAlFLxdhsxT3t7hEP92Dtqy/lb1ECRuKztzg/TNbGwmbcT2MM3T3bX6sx87xsGHutnSh6FVVZmllAPNQdN0DdBjBRJbvs1iOzbDnUdFPFYSiA9760903okadxO3YzOXidWwC5v1cR4dbb6q+LIxjM+wxyJCNTfyiN6KEovPnN85Q9GIIm/w+kwpF170okK1nEorOU47CZjFSCgwb5moDqjQkRGKQsEkEh39LH2aW7FIJm7JQF5VjKqkcm/zyUR2b7CE/iEgQ1LFZigc/vwGHGIoeRJhk60d1fDJMEqBHCUVnM1eqhE3mcIzqDEja7RCHsAm4de8nsBZb2NQJ5/z3IkkkFdfNhurn2Aw7eZDKNciIw7EJyEU08XhVfawM3eRB4nJBQtFNwkh1wqasTMV0bPo9GEfJsWnb4dt9nDk2w6Q0iYMkhE3xAU3W38rqPKyw6XcPTioUXVUe1b46O+X9hE7YDBICburY1D1Ah33QVpUlTpIKReeOs2DyICCcsFkqx6boNI06eRAQ7rhM+jLTyYMY1dXhnvFUyMoV1bGpewazLHf9pHJsJunCY/1qd7d3Up64XhLpUjvI1lNNHiR+9tteKSnGeRTz5IopYIhEIWGTCEYu54oLYUOT+c7UZPIgvzexQUPRATfUpZSh6J2d7g3aT9isr/eWiTklgGBihGowrJo8qBQPfkk4NsUH4ijr83Vi4poV850FETZtuyA3EFhOKp6wA3TeicoPFlWEdTuYCJuqB2VZ3fs9nCQdip5Oe93a4oOISkgRSULY1M2GKnNsxjF5ED8oVAmbUXNsAu6109Pj5pIUr98ojk1VufxC0cX2ZiKO9PW55yCKsKmq+yipQxoa5Enu/YRN1TUsum7Dtnu+XFFzbIrXaSlzbIZ5qNLN7irLaSyrc2G/ts6t2Njonne/e2icIcyqfttE2Ny40RVwVO1RnNAqiLDJ6ioJYdOvTZTKsRn2PCr6qYIcm4C3/nT3jTAvOpJybAJOueMMRQfMj8ukLws6eVDcYrnfTO0y/HJs+tUx236cOTaLMXkQIO8b6urC52n0c2zK+lR+YtKgjs1yzLFZrFypsknhSNgsCiRsEsGIY5bsUjs2Af1gH0guFJ0XLHlxUhzE+jk2+XXjCEU3cWyWIMemlDhC0YMel+oNelBhM2iOTbYOf53IhM04nAG8E1VFHI5NcaIUholjky3j93CStGNT3KeJsFlKx2Yxc2zKzm/cjk2+rYrXb5TJg4I6NlWzhZqKI7L7kEgQxyZf91FfROnakYljk58lW1w+bLsXZwM3ZaCHoouRJ2Edm37hz3zd6+quGI5N2azP4r5U14Mux2YYx6Y4fhL7QF0uZb7/CpJzudKETUk/ZVsWelg6nEp1bIrljjsU3fQFjokJgReGTULR48qvqStXGMcmLx771TE75jhzbCaRG910n1H2FyTHJkP17AvoHZvptDMBUrlRrPPI9sOiVJLYByGFhE0iGHE8CEQRNnfbrfD3uIRN3azoSTg2eXEyaCh6XMImOxbLcstW6hybsgEWf97jCEVn6zc2yp1JuvX5Okkqx6bouCmGsGnyYJCkYzOssGk6II8qbHZ2uteGuE/RVcraV1OTPo9psYXNYuTYlBFXjk12ven6pSCTB5kKm2EmD1Lh56YTCZJjkycJYVNWFv5FDTsvQ4d625pO2AzqVmTl2rDB+4Crgy8X7/gcKKHo4raSEDb5fW7YoJ+hPE5BTNa/q2Z91u2rlKHoum3ozqOOSg5FZzQ3u32w6gVNkjk2kxY2ixmKbjJWL7VjU3dPURGXYzNqKDo/qztPsYTNOPbnJ2zKjlH17AvoHZstLeU5A3ixzmPc544wpgxbHVHWxOHgCyps8gOWgw4q/D1MKLo42K+p8T7kijdb1VurKMLm1q3yssm229DgLRO/bhyOTf5zqR2bsgEWf97DOC5VoeimD7OycOhs1n2wTirHpmwdPscmI+wAVBViryLJyYPChqKbDsjD1JEoQrHjF7elcmyOGKF3mBUrFF2WY1MmbMaRY1NG3I5NnSDF97E9Pd4ZdnnS6cL8YWGFzTCh6IB8YhcRnWOzvl69r6j9dRTHpriuuHwUpwQ7Ltt2IkhMYO2ltVXtOixlKHqYa19VXrFNsLrm65z1a+J+/URmVne5HLBsmboscQpiqVTheMjvvh1U2Ozrc+8pUUPR+fznJtuIS9isJMcmg3d1F8uxmWQoemdnPKHoxRY2VY7NYgibYULRg9RxXMKmZcn73CTFqrj3J7Z3cbwnO0adY9NP2CxH+PyXPEmFoie5D0IKCZtEMOJw8AXNscn22dAAjBtX+HsYxyYb5Kve0ifl2FSFogd1bPLCZhw5NvnP/MAvqLMxDmQDjjFjnDdtgPeBdNCg4I7Ljz92H4hN27BsoGkq1Ojcl3EJm8UaQPsJiipkLjWRcndsmoair1rlzf/IBjibN3vLDSQTChM0FD3uHJsyxNyyUXNs6gQpvu/kJ0gQkfXdqnLJxBWgtKHoqZTznaruozoQdfnQZOekq8t9WBbXFXMaRhH0g/ZZO3d6y8W7DteskW83ScTzpctrqUNWXratsI5Nv+uYP69LlqjLIhtnRBFJdA55GbI2xa9TVeVez0EcxCaTL/JjM5NtyI6lutr/fiVrR3Ej7kM0AARBck5svt2oxgi6HJti3lcTKiEUPegLZ3E51fXBHy8vDqocm3GHoofJsRll8iB++1FzbALFd+HJ9hdlkhs/x6ZsnzrHpi4UvRwnDmIUQ3SM+9wRxpCwSQQjjtCtsKHovEjAYzqg04UA+gmbceXYNHVsiscUVyi62LHKjksWil7Mm5RswMGf+zCOS94Z8NZb3u2aEEXYFAe+YXJs+k0eVIpQ9CRnReevc1kZwzg24xA2TULR33zT+70uj2mUkFwVpQhFT6X0LxhM270MP2FT59jUiQyy9iArF3N26mZFF9ug7lzGJWw2NLjlkgmyfJ8XhqCOTd3YQMxpWExhUywX7/hkrkPL0udsjJOg4d8qdA9nvFgaQNi0TUPRAWDpUvn3ku1G7tt0L5JkyPanapNBhHYTxyZ7qWW6jbBiSSlC0aOcRz+xOYxjM0zO3UqYPCgpx6Zlye8VlebYjCEUPXCOTaD4YlXcQqrf5EGyffLrBAlFL2dhsxjnkULRSwYJm0Qwip1js6/PmdmS7U+2zyih6KqEzOWWY1M3K3ocOTb5z2zw0Nsb3NkYB7LzyZ/7bdsc9xtgHu5QXe0msuZnwjNdXzbQNBVq4g5Fj3NW9KCzb8YxeZCfsDlkiHcwFcaxGdcg3dSxWVPjnhe+fYl9lljHrC5UDxxhKMXkQYB+0BZXKHrQHJt8PykSRNgEHPFWDF0Pk2MzTmGTIQ7K/XIQmmAqbJqcE1WOzTBuxaB9llguvmzsWo2jvkyJS9iU5VeVtYkAs6Ib59gE9PfRuI6RoUv9IcMvFB3wOrnCCpuyHJt+jk1Z3YgvhcIIm8UIRY9yHv0cm2GETcDrwGYTm+rgxzBhHZU8omEiDsfmoEHBnaimz2ayOtwVJg/q6/OkpQkcig4UX6yK21lo4tgU98mvEyQUvdKETcqxOWAgYZMIRrFzbDJRE1ALm6auSXHgZNtqx6YoMiQRis4PgE1mRefLlKSwyQYPfN0XM1+KyrEpO/dBbp6yYwjj+GQOINPQWjEFgsl6unWSCkUPmmMz7smD2P7F8ySrez+BNalQdJVjE1C3T10d8/2PKJqFRebUY+1M59hUzfxtiixskRHX5EEm7kBVHyvuU3assnLpBu+sHYTNsclysvWLg1lZu2LHrxM2xf3F0V/rcrX6nRNxXZWwGWagH7TPEtuK7Dot5v0tThecTlBkn5MKRWfI3K5BBVM/4hA2VW0ySM5XlWNTFYou60/Ebcjy2pm0iUoTNmXHFDXHJuDWXTbrvvDWwb+cjOOeqwtFD3tO+DYRNBQ9nXbTNsmQ1WGxJg/S3VNUxOXYBDx5RUMJm8XOm5i0Y1NW93GFopdrjk2AcmwOcEjYJIIRRyh6kBybopAq63RNBycykYK9+Su3UPRi5djUTR5UihnRAflgSnbugWDlirJ+JuM6PqOGoldyjs04QtFlE6V0d7ttWhYKw+dXFcuR5ORBKsdmEGFT5zCLIvCoqKkpbCMyxyY7FtYHR3WMiscwdqz7WWzDSebYVPWxfHnE5XTl0gmbcTg2uethpy4HmWV527pO2Iyjvw4aiq67X6hybEYVNoM6NuO4j0QlTrFIFwIeRtgM4thk8DNbq7YTtX8T+/gwOTZVbTJKKLqfY1Psc0zLVq6h6DE7Nj3HrRI2dTk2xW0EGcPEVV9JhKID7nGtX2/mRGXH7jcbdRDHZtxtinei6sqjKkNUYbP/2rQzmXAzdhfbhdfUFOylqR9hcmyGnTyIHJvJ74OQQsImEYxiOzbFhyXdQ6wf4gBEN5itpMmDknJslkrYlJ1TVX7VqMJmkDYs5nJKUtgUw5vY4D6Vkjsfwg5AecdEkpMH+Tk2/V6YiHVfismDOjvd45dtX9aWRCGlGMImoA67lIV1sfYYJQwdKDyG8ePdz0nm2BQdqqo+li+PuBxD1pZ0roQwkweJ1zZ3PXS0thYuzx8//7mShE1Vjs0wbsUowmYc95GolLGwGSjHpu67cgtFT6WAYcO838WRY9Nv8iCxz1FtPw5hs9wdm7JQdFWOTf7lp2koOhBsDJOUsBlHKDrgHpeJE9W2zfPOy8ThYk0exOdEZSQdii57bgo71im2WCWrr1KGog+UyYNI2BzQkLBJBIOfjTqswyeIsOkXRhaXsKkLowTUb62i5NiMy7EZRdgsR8emZckfZKIKk1EfaNn627c7D+emwmZNjft2OOzkQbz45OcqCwLvRA0aih5njk2/GT3Zd9u2OXVRrMmD+H5h+3bXORE2FL1YwqYq7FLmfkhK2NQ5NqPm2GTtRZYbUdXHiiKDrD1YVmHZTBybYUPRhftQb2Mj7EGDvMuHETbjCAMrRo7NMO0+6IzB5R6KHuXaNwlF7+tzrnVZuHUcjk2TkLu4HZtBhU2Ziy2OHJuyyYNI2DTbFhB98iAgfDqduEQ7UZCN27EJ+Au227a5YyK/a6OUjk0guLAZ1bHJj5ejCpulCC/2y18chKiTBwVxbJZzKHoxRMempmAvvInYIGGTCEYcs2SHdWy2tDgPsnzoeZAbr8YpU9DhJJVjk+/8+ZuzibDJl4lfN4nJg2zbX2xKEvG8NjeXNhRdXHb9ev8QKYZleSdyCJpjk1+nttY/D2BQRDekjrCOTfHaE/ET0cW6D+PYjBqKzs92q8oDK/tOJcTkcm4y+6RnZGTtTDd5UNzCZmurut1HzbHJh92JqPpYk1B0WdmKGIreV1urD+PmP/NtJgnHZlI5NvlctVGFTQpF9/6tahOqF7nivsVJbERMXw4m7dgMGoquS/EgOjZ1fbFJKDp/nxg3zn8bsvLtIqHoHsemaoxgmmMTKD/HZpRxWZAXOEHG6kFybMbt2AQKy+dnkPFzbAYJRWfnJk7Hpl+fGZUkHZtRc2xWaii62AZTqejjX5G43baEMSRsEub09rohEVE6LdlDkQpR8EinvaGHYR2bnZ36hPHiDT2uHJsqITSoY5MniHNWHLTLjsu2nYFDqRybQrlsNkt2OQmb7e3BhBo+LDBKjs2aGvUb97Cw49q2zT/nbVjHZm2t+0IiqrDZ3l48x6ZK2IzDscnN0FmSUHTRsRl3js0RI9zvTCfNkiG+COvsBHbscPchoupjhw3z5h5VLSeWzSQUXWyDpuKIIDhla2q8D/tA6ULRa2oc1wEPO84oOTb5sMow7b621i1X1FnR+e+LRZwT65iEogPqF7lBhau6OqCxUV8GoPAYo764CerYFPcnW55vk3zfbppGgi+XKhS9paVwe7K6CPMALG4nCcdmnOfRz6lq4tiMM8dmXKJdErOiA8GOK8hYfaA5Nv2ewWTbDzvWkb1IimvSxyD7DItlefuJoI5NsT3wdV/JoehJncc4zx1hDAmbhDkbNrif43JsBpk8iO2Tf/BLKsemOFFDEo5NVdlk262vVw8A4nZsAs4AopTCJl8Wdr51IcomqCY+CLN+WGFTFHhMhM3OTvc6UQmbxXIG+M1GrsKyCnO+8QQVNv0E1iSETV6QMc2xOXy4Oo+pafhjGFQPDzLHJt+2oiATE/hzHleOTb98rLo+ll++HBybnZ1eYbO2Vu92VAmbJkJOGPjt8LMI8+1fFDZ1+QwBYNMm93PYds/qKIiwycpV6hyb6bS3PqI87OgEMZMIlTAiq7hP1TWomugqDOKYi6VPUWEi9IdpkyaOTfGFuYloGeYBuBih6KLgFdUtJval/OzdKmHT774RNBQ9acdmKULRg4zVZaKeSthMwrEZR45NJmym0/6ClMqhGoZSOPDi3id/noPm2OTrTZcCqKbGSVdXrhTrPJJjsySQsEmYE8fEQUD4HJtsn3xnESXPn5+wwJczicmDeMSBrMyxqboZJyFs9vSUTSi6LTvvjDA5MhlDhwZrP6IAGNaxWU45NoFgDwZ+s5Hr0Ambpjk22bJ+Amtcoei80zSoY5Plf8xkXKGHP84khU2VOCY6Nm07uVD0lpZ4QtF1wqasrej6WH551XJi2XSOzThC0QXHZihhM4kcm+J2+H3zL/7EUPThwwvrKW5hk11rW7Z4+wIZrFzNzW7ImehELfb9TXfugmCSYxMwdmz6Th4k26eq7uI6RsB7fbHzqCNIKDoQr7DJI/Y5qu3HEYqehLAp7ifqeeTXb2nxilJhc2wGDUVPMsdmnI7NcghFT8Kxqbu/yZA5Npl4bFK/svFy2LGOmBKsGEJVnDk2Ae95ltVDY6P3GE2fffm/xWu73GhsVI+l4iTuc0cYQcImYY6fU8aUKDk2xX0n5dgUyxlXKLqpY1NcrqHB2Zds8BH35EFAoWMziLMxDviysPMu5lcFwjsuZX8HWb+9PZgDjdX7zp3eEOS4cmzGEYoO+D8YhA1FB5JzbCYZis47TXnHpomwyf8tc5iV2rHZ2+utx7iFTTEUPaxjk79Gurr820oxHZuqUPSQwmafLBRdlWMz6VB0cTtiX8X+7uryn5U3KWET8EaSiKjKFfVeEJW4xKK4Q9FNnIKmdRenIMZfXybnqliOTVkouri8iRszjLOHXyaVCj4WNSUpYVOWy4/VYzGEzXLPsbmrhKL7hYXrQtFN6ldyvHbYsY6YN3EgOjbFY1Q9I+ocm+Uchg4U7zySY7MkkLBJmBNXaHIYYZPlWRT3naSwGeatlR9hQ9FZgmrZjSgpxyar+6FDkwlJ0cE7Ntn5FvOrDhsWbOAVt7AZJGcgX++880917sQwQr8cm8UaQIedPAjwilwiUXJsytqAmEsICF9HrNwsryNgNnmQTEjZvt0VtospbLL2KYZ1hc17KUMnbNq2WbuXId4vyknYDOPY1IQIZ2WTB5Uqx6a4HbFexMlXWLv2E5E2bnQ/hw3DNu2zduxwBfVdWdjkc4rX1Ljji6RC0XVlCQN/fZWTsOnn2BT7nNpa+ZgxqrCZlFtT3E+Swib/exBhs77ezfvqN36x7WRD0Us1K3pUYbOYkwfFEYrO6jiksBnpJe5AEjZVYz5VVCT/uZKFTYCEzQEMCZuEOXGFoosOHB3MJcrvj/8c16zosgcsE8dmXKHoOmGzvt59Gx81EbZO2BQdm7K6LxZ8WXgxU9UOTBg2zOv4DLp+HKHogPfB3iQUfetWZwZttnwpc2zG4djcudM9HnG/luU4c/3KaBISL5Yv7IOMrG+QbUssN19mWbh/KULRRfdDWBelDP4YLMu53vjvePEgyuRBfmF3KudSQ4NZKHqQyYPYdRenY1N0oQcVNk1yEJqiCkXn/zY5J3ydxpljE9D3Wapyie2Az/VXDOISi8S2YuLYFNtK0NDKUoSiyyI4dJiEovPHzd+TdWUV86OycumETX7fqm1HDUVPwlkn20/coeiq3/mXnyb3KLYtv/ELLzrGJdqJTtNyD0VX5diU5assh1B0vg5Fx6ZJ/cY5eRBgdj3HSbFD0cV9mj77iqHo5U4xziOFopcEEjYJc+IKRedvljrHZne3O8Okym0RRNARByClyLEpK69luY5M2Xb5ssXp2EylvPvhj2v7dmeWbKA0b99UDg2d68YP0fEZp2PT7xzw4hj/YK9ar7raPTfi8qqBaViK7dgECl2bbL+y/HyyMpoIrGL5ojo2ddtm2+fFTVkoOuD2o3wdxD1bounkQWHzXsrg66m52TmPKmEzScemZcnbUJKh6OJDoW4Ay/f1Jo5N1YOISnAwyUFoiqlj0++cJBmKruuzVOUSr82kwnhVxCUW1dQAgwf7b1clbIYpy0B3bPr1xTJB0TQUXVUPtbXeyTZ2Vccmn5OZwe5RVVXq8Tbb1saNXmFRJOzkh37wTtO4HJv19e52i+HY5P8Xv4+ToI5NPp+zOHlQWMdmlOMaSI5NVd2TYzP+fSS5H8IDCZuEOXGFoluW96FIhUpIDStsAt43wuLslSLFyrFZX1/4plR0bMrKpPtOBb8t3SDm44/dz6W4SXFlsVXOtzDlirL+sGHu+Q6bYxMwc67xuR1FQaiUoehRHJuiY5pHl58P8OZXFUPRTR2bcQqbqmM3EeHZsSbp2BTz0aomD4pT2OTPLzveOITNoDk2Afm5TjIUHfDWrU4cSaW8D/DcfShbW+vt72pqvOeRrwt+H7K6jwPTHJuVLGyW4v6mOndh4Muv2i4vbIr74/62xResfvsTZ7ZWbDfyMQbNsSnuL842KRtDmYai6+rBdDnZMkkKm3GeR79+SheKrrtn8NvS5dyNMvmhDr4/jyvHJuAel6mwaTIbtS5He1xRLjp0OaRVsHKUevIgIPh1GhWxvuLsS02ETVVezYEkbCZ1Hvl9pNPJOuuJPCRsEubEJWwCZsKman9hQ9EB78CpFDk2ZcvLOlWVYzPqTbq6Wp0Xjv+71MKmyqGhEjlNicvxGSXHpqnAIxM2VZMHlSLHZthrD/Bee7y4ozonYt2bCKxxDdJNHZuAWVsthrApukdZ+yyWY9NP2AzyUBnUsQmYOTbjnBUd8D4c+rU1/gWbEIpu5JLktyF+TkrYHEiOzaj3kajE6YJTOU+K4dgcMUI9+20pHZtJCpsyx6apsKnbdlAHUaWHouuETX5iu6DCpq4/KIZjM65QdMDcicq/GPabjTqIsJmEY5PPiaoqj0jcjs1KyrHZ0JBcXxo0x6ZleaNUePi/K03YLIZjs6GhvGeKH0Ak+JqPGHDwAwZZHrwg1NY6oc5ijs1t24D/9/+A999X5/SMw7FZTqHosn0HCUUPmi+mocEJ8dcJP3fe6X4uRb4UfvIgVfh4mHJFydHJ1mlvB1avBv7wB/f7II5N/m2zrv2wdfjQppoax/FVVeUd6EYZpDMnai4HvPgicO653t8tC5g5E7jkkmiOB74OvvQloKnJ+czPEq87Jy0tjov744+Bhx5yvy9FKLpqnybu4mIIm6wszL2icmzy/W+ckwexeuAFBtaOq6uDOd35a+vZZ932osslqXLG8+dH1R7EejAJRec/m4oS69cXhqLX1HjvrWGEzTj7a5Mcm319wN136/fP1ynfn8WRY/PBB4H33pMv98478nWi3keiEueDqipXGP/55z936z2qsGl6D03qYdzkfLHcoV1dzrrsXsOjapNxhqLX1Znncgua843l++zursxQdF2OTcDpF4cMce9RuvsTv62rry7MPdvaCnzjG977TpyiHSv3tm3A3//ufh/1vPDHdfbZ6jIHyYcvq0dVKHpSgnlLizsZo4nIKDo2owqblZRjk+1T9WIqKCah6DrzUCbjnAedY5NybBZvH0QBJGwS5rCbZ9DZqGWwDlUUNu+/H/if/ylcvrVV/jnom7cgwiY/wOVvhHy4VtDBkcpJJMJvlw8tiePtY1OTI2yKYWf832+84X7m67tY8GXhH0JV7cCUONZfutQZWC1b5n4f5GGIEUQMFdeprfXO0h1lAJ1KOTfgdescZ8Cf/1y4zEMPAcccEy0UnX+4fOIJ+TK6c9LaCrz5plP3b7/tfq8KnyxFKLqqfclybCYtbLa2Am+95XxmdZTk5EH8+WXHHqbdi/DXFu8k1+VGFPtZ5qLkz4mq7w7r2KyrAzZv9g8FBJT3oWxtrVPO4cOda1ETNuzZj6zu44Dflq4sr7+u37/JJGlhy/XBB86/IOtEvQ9EhT9fJu1FB19+VZt48031/vjleCeVyf50dRfnMfJ9vOn5ampy+rfWVrlTRtYm6+r8X7rwx8W2Ibu3sG2pzo+I6XJiWdavj953++2DEfU8+vVTOmFTd4z8tubNky/T1QXceKP7d5yiHTuuXM77kiWqeMof11//Gmx5FaUORQecci5f7nwOE4oecfIgO8r1EuY6jUprK7BihfM56liR9aV8SjjZ/hji+amrcyJNxLbNb6sU99SgFOM8MrdtR0fx2gpBoehEAPzy4AVh2DDn/02bANt2v2cP4jytrcCnP+3+PWQI8NnPOh3r7NnB9suHumzZUvg9z+zZTmd97rleZ9DppwNjxgCjRztOtiCYOjbr651jrKkBLr3U/T4OYfPyy51yXHaZ9/tzzy3MlzVypLfui8Xs2bBravDx0Ud729uZZwKjRjnlmjUr+HYvvNAZhE6cCEydGnz9yy4rvKFPmgQcfrh+vTACj0wsZevo8gCG4Ytf9A+TeOedaJMHnX++d6ILkaYmp82rkNX9YYcBkyfLl4/LfRAkFJ21r0mTgKOOcr8vhWPzC19wynnBBe6gii93T483BJP1yWE58kjnuJuagM99zvkuDmFzyBDgvPO831kWcOWV6nXE64GVY8QIp5+rqQEuuki+btgcm1/4gvP35Zery8Vg13Znp+cFRR/b97/9m7yPPv98p34PP9zb7o88EjjkEOe3Cy/0378pra3AOec4dSLeay+5RH49Hnlk4XZU5zxsbqvWVuCss8yXnzzZW65jjnHr64ILwpUhCp/5jHseDzss2rYuusi5vg8/HDj0UPf7o45yjpGnpga4+GLvd5dcAru6Gh+dcIJZPzRqlDMmqKkBPv959XIXXBDfMZ5/vnOMRxzh/DOBXY+qfkLWJk2On7X72bNdkUA3rhs92q0vse55Zs92j5E/jzquuELeT8QJu3+w/j2ubcnu26Kwmcs5L4sA/f3p7LP9n0uWLUsuFP2SSwq3d9RRwMEHR9vuRReZvWwA/K9HfjmRYk4eBDj3yEzGqbegoejZrPvsporY4Ik7x+aJJwIHHeTsW4xuSoqg9aWD9V+XXqo+vyeeCBx4oHOMZ59dWBZZn3PeeU5bnTrVvP8qJfwxnnNOcvtRjeWIxCDHJmFOe7vzdlic0TgMzMHU0+OEbzDBgw8/f/VVJ6SktbVw0PDAA054VZgwbAY/OZHsAev88x0hTdzHiBHO2zPbDj44MhU2AfkxxnGTvvFG4NprC7d15JFOiPXGje53srovBp/5DPrOOAMLn3oKHul45Ehg5cpwdQ8AU6Y4zkRxUg5TPvtZ4BOfcGeMtyznwcVvW345XIOuI57zqOfollucEC7x2v7tb4EbbnA+m+a2VDFlCrBmjbd98QwfrnZfAo5g88lPmtd9XI5NWd+gOvapU+XtSyZs+k1eFpULL3QGpapcwb296nQfYchkgFdecfp01j7jEDYB4E9/csKdWfurr9c/6KqETcAJXe7qUl9/YWZFB5xr6Prrze5JrDy27bkesmzdW291rjtxW0cfLW9f1dXA4sXeuo+Lhx6S19fnPgd86lNm12Pcjk0AePhhYO1afe45Vblqapz66u6OnoIhDMccE+0+JG6rvV3dJlavdl8eDx5c6ByZPRt9n/40XhHvtToeeUR/DbFyJX2MOv77v52xjul1Dpi1x4svdsaGqn5Vti2T+jr22ODH+O1vA9/8ZrJtOEy5VBx3nHdb/HgC8NZZZ6cjarI0Abr70+67A6tWOe1N5KCDnD5KHL/EKdpdeqnzomX7dufvVMp5ARC1vk44wTkm/gWkCtm1LaMcHJuf/7wzljZtt7xjc9MmR/AGzEw2cc+KXlvrRLQlca9VcdllzngujuvcpO5ra4ElS+THePvtwM03F65/4omue7wScknW1amPMU6++11nPFeKccYuCgmbhDm1tc4AIg7EB30mbDKx0bKct506MSJMR8GLFPxDvWpAq9pHWJHENBRdtf+48sWo1qmrA3bbLfj2kiDuuvfbrilNTfKcXTp07ksVOlEobscm4AhFoli0777uZ9PZyHVEbV9B6j7JHJu6Y5e1Lz6PqSwUPalZGcWyiJMHxTkhHFAY3hRG0FcRJLxJ7GfFcvgN6lXb0oWi+21XVR7uHPTxdafalup7XWhZVFT7NL0eVetHFfRHjgy/rmWV9mEjzn3r2sSYMcmUxWSdYhxj2HVkv5n2w7o+ghGkzwmyTBzrlHIfum3x9d/REez+lMnIxxatrY6wuX59co5NwHmG0UWkhKW+Pt7xQZAcm0k5NlXlUME7NnlDisnL2LhzbALJ3mtVFLsv1R1j0LFJuVKs81hp9VLhUCg6URr4QQp/o2IDmWHDkkmILnNsFvMBJ4hjU0bcM/wRxSGJHJs8SSZ5Z6xfH82xWWySnBU96LZSKe+s7kDyoegyxMmD4hY2ReJybAZF59j0I2woehAk9yG7pib6LLrlShKOTYKIQljHpgzL8n+ZQvgjhqLzzwZh709sDLNli/eem6RoV86Ug2MzKLxjM+iYhZ6ZCGKXgoRNojTwggl/o4ozj6cMfuDE8rQ0NBTPOi97cA3yNla8IbMZsonyJm5hMwnHpgzRWZ2k4yFukpw8KMxDEavL9nYnNLQUwqbo2AzqfghKGKdyHIj9bJQ+VufYjEMsZ/ehpFy75UBVlfweS+IPUSriFDaBwr5gIF/PSSEKm3GkSuHHMPzkc+U+fkmKIMJmuYi/rBy9vd50AyRsEgQhQIoIURpUOefYw34xhE3dd0mRSjkPePyESUH2bxKaTpQfSefYLJawyVMug14VSYaih3koYnXZ1eVMGEOOzeSoJMem7ruBAgv5YjMcMwbyMRPlTdzCZpQ+h3AQhU2WvxcIf3/i11u92v1c7uOXpAgyeVC5iL98OdascT+biN1xTx5EEERZQ45NojTIBJOk3UNAeTxQxvnQTbk7KoOkHZtJDUCHDHFdalEnDyo25RSKDhSG9ZfasckLm1VVzrmOmzhzbAYhSh8rlq9YwuZAd3hFyWlIEHEja48kbJaWJEPRAXJsAvJ2Xymh6ID3HIZ0bNr03EQQAxYSNonSID7kA8m7h4DyEDaj5GISb9L05rEyCCNs6sJ4deJLnKRS7rUax+RBxaRUkwepEF/mMGGzurp46ST4cvOTB40YkUw6jlI5NuPsY5MIRZdd2wNdCJG9lEvREJQoEUmHog/06zkJkg5FX7XK/Vzu45ekkN3fWD9czMmDgsCXgz+HpZgVnSCIsoZGlURpkDk2SyVsFts1Eqdjk4TNyqASZkVXwa5FcVbRcp/oJK4cm7JzFyUUHXD6us5O53MxH4D5OuBzbBbTIU+h6NLy2ANdCBHrdaAfL1HeyPqhKGNBcmxGh6//zs54ngkox6YXXbTPLuLYpOcmghi4kLBJlAa/UPSkhM1ycMrEGSZJN+jKIK4cm8UORQfca7GnB9iwwflcXV28CbfCEle+qLgcm6pQ9GK+WLEst//hZ7kv5oskEjbLI3Kg2JCwSZQTlGOz/KDJg5JHbPf8WKYSHJv8OaQcmwRBCJCwSZSGxkb3hiNzbA7kHJtxzthLuWIqg7hybBZ78iBAnqOqEh4KkpwVPQ7HJhM2i93/sIeEoM6HMJQqx2aUUHSxfLpQ9LCu5XKIHCg2Yr2S8EOUkrhzbFIoenRUOTYbG8P3j6ocm+Ui2hWbgeLYHDTIbCwhG2fTcxNBDFhI2CRKg2W5A45dLccmhaLvelRVFQ6ko4SiFyvHJuC9Fru7nf/LZcCrg4RNOazs7FwCyfW3mUyh+FcKx2aUl0cqx2ZVVXjX8q4obJJjkygnknZsDvTrOQlUjs0oRgfZ+AWojDFMEohjx0oTNtk5NB2zpNOlGYMQBFESSNgkSgefuy+XK04oejkImzR50K6JeJ4rYVZ0QH4tVoLbodxC0cWQOBYGXirHJk9SDnnLCt7u46AYkwdFueYoxyYJm0RpocmDyg++zrZtAzZudD5HeR4YPlz+AqoSxjBJUOmh6IwgYxZ6biKIXQYSNonSwQYruRywadOuE4pOjs1dkySFzWKFojPK5U2+jnJzbPL1uGKFfvtJIit7Ui+SgNIIm8XIsRnlmiuH+1CxIWGTKCcox2b5wdfZhx+6n6Pcn6qqgGHDCr+vhDFMElR6KDojSJsQXKp2uQi2BEHEDgmbROngH/Tb211hM50Ghg5NZp/l8EAZ5+RBlCumchDPs9+5k4WylSLH5kBxbMY5K3qY4x882B2gL1/ufl8Ojs1iCpvF6LPi7GOTEDZlbWqgh66K9TrQj5cob+LOsUnCZnT4OuPvkVGNDpU6hkmCgeLYDDJmobkJCGKXgYRNonTwN6b16735dFIJNc1yyG1Goei7JmI7izPHZrFD0cvlTb6OuNwHmUw827Isty7Z7PJAeTg2k3LIAxSKLqMcXrAVG3JsEuWErB+KMhakUPTo1NW5n/l7ZNQXb5U6hkmCSs+xyYgibNJzE0EMWEjYJEoHf2Nat87NsZmke0g2cK0kxybdoCuXSg1Fr1S3Q1yOTaDwXIQ9fpmAWOwXKxSKrodC0ZOBhE2inJD1g+TYLC2plFfcZJCwGR86V2YlOTYpxyZBEBJI2CRKB39jev99d7a7YrqHVN8liegmijJjL92gK4dKFTZ39RybQOG5CHv8sgesgR6KHtSpHAdx9rEqx2bMwqY90EOzSdgkygnLirdN0qzo8SA7B1GfCWTrl4toV2xSKbVLkxybBEFUOCRsEqWDvzEtXSr/Pm5kb4MrybEphpHQDbpySDLHZpID0EGDiru/uIhzkD6QhE2x7HV1yZZhoDo24w5FH+hCCAmbRLkRZ5ukUPR4kNUbOTbjhW/3u4KwSc9NBLHLQMImUTpKIWymUoUPkKUUNquqgr05piTYlUtQgSedVg/IdBOcxA2fG5JRCW6HcgxFLwdhUyx7S4tzjpOCJg8qpLp61wtdFet1oB8vUf7E2SZ3tes5KYolbFbCGCYp+HZfqaHoNHkQQRASSNgkSgd/Y3rrLfdzkqHoQOHAqZSh6EH3TSEVlUsY55pqnWKGogOF12S5vMnXUY6h6LK+rdSOzSRfJAEDd/KgqNdcqe9DxYYcm0S5kWQoOrXvcCQhbFZqOp2kGAiOzbA5NlOp5MfLBEGUDBI2idLB35hYfk2g+A/apXRskrC56xCHsMneXBc7NLzSHZvpdDRX4kB2bA5EYbPcQ9FlZRroQggJm0S5QaHo5Yes3pqbo22THJte+HZfqY7NIG2CP156ZiKIAQ0Jm0TpqKsDGhsLv0/6QVsMRS92brMowibliqlcxHZmEg7Dr1NT44pzxXZsitdkubzJ18GXMWr9iOcuzhybpZ4VfVcQNmW5lVWIjo4kQtGBgvO+y00eNNCPlyh/RCdXFCGH7w/S6fIRhSoNsV8YMiR6XVKOTS+mjs1ycTaK5Ro2LNj548fa9MxEEAMaEjaJ0iIbcAx0xyYfzhj04Y5yxVQuUR2b/PLFzLEJkLA5kEPRk079EUbQjwrfx9bVOaJFEPgyFisUfaALfZRjkyg3+DbZ0BDN1c/3B/X1yeYtHsiI/UIczwMkbHrh271uhvRyacOyvOBB0I2dCYIYUJCwSZQW2Q1qoOfYpFD0XZM4hc1ih6KL12QluFH4MsYZNpxKFeZwNIVC0Yvv2AxTv3wZKRQ9HigUnSg3+DYZtT3y/QG17fCIdRfH88CQIYX37EoYwySFSSh6OQm/UaNMKBSdIHYZSNgkSsuu7tgkYXPXIUlhkxybhSTl2Ixy7OUgbO4KoehR+ljAW0aaPCgeSNgkyo04hc2oL1MIhyQcm6lUZU6AmBQmoejlVD8kbBIEYQgJm0RpEW9QNTXAoEHJ7rPUD5Tk2Nw1GUjCZiW4HfgyxilCRTn2hobCkONSOzaL7ZAfKI7NONuUZQXLA1qJkLBJlBskbJYfSQibsu1UwhgmKUwcm+VUP1GjTCjHJkHsMpCwSZQW8aG6pSX5vC6iSFHsBNlRBsBVVV7XEOWLqRzEc21y7vh1+OXFdYsdil5Ob/NVxOk+iMuxCRTW5a7m2CxGnxVVZODLWIxQ9F0hJx/l2CTKDTHHZhQoFD0ekghFl22nEsYwSWGaY7NciJoXnHJsEsQuAwmbRGkRH6qTfsgGvAOnUgxA4wyTpLePlQM5NotLOTo2gcK6LLVjk0LRCyl2KPquIISQY5MoN8ixWX6QYzN5djXHJj0zEcQuAwmbRGkphbDJh4KWYibaOMMk6SZdOYhtzeTc8euUUtisRLdDnDk2+fMQ9djFPq7YfVCxZ0WnUHQ5/HnfFYQQ8bwP9FngifKHb5NR2yMJm/EgnoekhM1KGMMkBeXYJAhigELCJlFaxBtU0g/ZQOmdMvwAOMxgmm7SlUklOzbr6+MNxy4GlRKKXuzcinz5Bw1KPjQrjKAflTj72GKFog90+DpNpejeRZSepGZF3xWu56RIyrEp3neLnYKqnKh0YTNKKDrddwhiQEPCJlFaxBsUhaL7o8u1SJQvSeXYTKWcf0nDX5vlFKakohJC0evri3PuePjyF7u/BYrTZ8XZx1IoejyI+QwHek5RovyJM8cmOTbjIakcm/y9LpPZtfsfvt3vCqHo9MxEELsMJGwSpWVXzLFJoei7Jkk5NovlPBAfDMqdOEPR43Rs8vVYiv6HL38phE0KRXco9X2o2MTpjiOIOKAcm+VHMXJsVsL4JUkq3bFJoegEQSioaGHz3nvvxbhx41BbW4spU6bgpZde0i7/0EMPYf/990dtbS0mTJiAtra2/G+9vb247rrrMGHCBDQ0NGD06NGYPXs2Vq9enfRh7No0N3v/3hWETZo8aNdEPNcmA0eVsFlV5Tr9ijUArWTHZpxhw3E6NkvR/5TSsZlOe/u/pCjG5EFxtqldQQghYZMoN5IKRaf2HR6+7iwLGD48nu1W2vglSSp58qBUChg2LNj69MxEELsMFSts/ulPf8I111yDm2++Ga+88gomTpyI6dOno729Xbr8888/jwsuuACXXXYZXn31VcyaNQuzZs3CkiVLAACdnZ145ZVXcOONN+KVV17BI488grfffhuf+tSninlYux7V1cCQIe7fu1qOTRI2dx3q6tzwp5oas1AolbDJ/10sxyZ/bZbT23wV5erY5Oux1I7NYvS3qgmwkoQcm+UHCZtEuUGOzfKDr7vhw+N7EVZp45ckqWTHZnNz8PQ99MxEELsMFSts/uAHP8Dll1+OSy+9FAceeCDuu+8+1NfX4xe/+IV0+bvuugszZszAtddeiwMOOAC33XYbDjvsMNxzzz0AgMGDB2POnDk477zzsN9+++Goo47CPffcg0WLFmHlypXFPLRdD/5N6q7g2Iw6AKZ8MZWJZbkij+l5U+XY5P8uRSh6Ob3NV1EJOTZ3BcdmOu221WL1V3H2sSRsxkOc+QwJIg4ox2b5wdddnPenShu/JEkl59gM0ybomYkgdhkqclq4np4eLFq0CNdff33+u1QqhWnTpmHBggXSdRYsWIBrrrnG89306dPx2GOPKfezdetWWJaFIbyjkKO7uxvd3d35v7dt2wbACWvv7e01PJryhh1HkseTbmlB6p13nP0MHQokXHdWdXW+4Wdra5Er8rlKWRbYO+i+6mrYAfefrq7Ov5HoTaUSr69SUYy2V2yq6uthdXTArqlBn8FxedpqJuNpq1U1NbAA2JmM0baikho+PN9us6lU0a+bMLD3/LmqKmQNyyttd5lMqG1JGTrU3VZdXbRthSCVSrnncfjwopzHqvp6WF1dxu0+KinAPcaamsDHmMpk3D7atvN9tGXb7vWYTkeqO/E+NBD7Ow+pVEnbPaFmwLc9BamqKvc6r6kJPBbzbIvrV6Nua1fB917b0hJfP1Fb64yZuruLNmYqVzzt3rI8bTW2cU7MRGkTVjrt3murqnbZ/o4oPdT2whGkvipS2NywYQOy2SxaW1s937e2tmLZsmXSddauXStdfu3atdLlu7q6cN111+GCCy5AU1OTdJnbb78dt9xyS8H3TzzxBOr58LsBwJw5cxLb9oEtLdgHQGdzM5587TXYS5cmti8AyGzbhtOqq1HV04PXq6uxksu1Wgx2B3AYHKHqybVr0R1w/wcOHuzUV0sL5rzwQnFy1pWQJNtesZmyxx4YuX492nfbDS8YnPfq/raa7unB66mUp61OGTMGI9euRfvo0UbbispQ28bx/Z//1dGBzUW+bgKTzWJaaysa1q3D+4MG4c2A5fW0u2wW00aMQEN7O95vagq8LR4rm8Up/dv6YMgQLC1yPQ7t6Mifx+eyWWwpwv6PGjsWrZs2Yd2YMXixGG2VP8bu7sDHuEc6jUMBZKur8cSHH6J30yYAQPXWrTgtk0G6txevAfgowrFUb9nibiuTwUf97W0g9Xceslmc2tKC+vXr8f6QIZGuISIZBmzbUzCsqwvH9X9+budObI3QJoft3BnbtnY1+HZn9fXh1OHDUbdxI95rbsZbMdbj0fvui5Y33sDa1la8tAufn+Hd3Ti2//OzO3ZgW39d8HX/bkMDlpVJHVl9fTht6FDUbt6Md5ubA5erdtMmnJpOI5XN4hXLwuqBfq8lyh5qe8Ho7Ow0XtaybdtOsCyJsHr1aowZMwbPP/88pk6dmv/+61//OubPn48XX3yxYJ3q6mr8+te/xgUXXJD/7sc//jFuueUWrFu3zrNsb28vzj77bKxatQrz5s1TCpsyx+buu++ODRs2KNepNHp7ezFnzhyceuqpyCSVc2XnTlh//zvsww8Hxo9PZh8iS5bAWr4c9umnFy+Ul5HNwnr8cdi77w4cckjw9XfuhPV//wf7iCOAsWPjL1+ZUJS2V2w2bYI1Zw7sU081T4C+ZAmsFSuctsqL2GG2FRHr2WcB24Z9/PH+C5cDK1fCeukl2Gec4eQ4NUDZ7kJsS8mKFbBefhn2Jz4RfVtBsW3nPFoW7OOO818+DjZuhPXkk8Vrq+wYUynYxx7rv7xIX5/TR48bBxx8sPe3N96AtXIl7Bkzor9Uev11WB99BHvGDPTmcgOvvxOJ8xoiYmNA3mtNsG1Y8+cDmQzsY46Jvq1nngGqqqJvaxdB2e5WrIC1cGH8/cT69bDmznX6bkUk3i6BbcOaNw+oqYF99NHe31asgLVokVP35RS2vXy5W64wbWLxYlhr1sCePh292eyu2d8RJWeXvddGZNu2bWhubsbWrVt99bWKdGw2NzcjnU4XCJLr1q3DyJEjpeuMHDnSaPne3l6cd955+PDDD/HUU09pK7CmpgY1kkTEmUxmwDXYRI8pkwE++9lktq3i0EOdf6UgkwFmzYq2PifQD3QG1PXU2gp87nPB1lG11TDbisrJJxd3f1HZay/nXwgK2l2EbRWwzz7Ov1JxyinF3d/IkcVvq1GOMZMBPv1p+W+HHeb8i4PJk51/QD6lyIDq70TivIaI2BnQbU/FqafGt61p0+Lb1i5EQbtL6v44ejRw0UXxb7cSOe00+felHpuo2Hdf519YjjjC/bwr3GuJsobaXjCC1FVFTh5UXV2NyZMnY+7cufnvcrkc5s6d63Fw8kydOtWzPOBYgfnlmaj57rvv4sknn8Tw4cOTOQCCIAiCIAiCIAiCIAiCICJRkY5NALjmmmtw8cUX4/DDD8eRRx6JO++8Ex0dHbj00ksBALNnz8aYMWNw++23AwCuvvpqnHDCCfj+97+PM844A3/84x+xcOFC3H///QAcUfOcc87BK6+8gr///e/IZrP5/JvDhg1DdTnNEEcQBEEQBEEQBEEQBEEQuzgVK2yef/75WL9+PW666SasXbsWkyZNwuOPP56fIGjlypVIpVxD6tFHH43f//73+OY3v4kbbrgB++yzDx577DEc3J8/6+OPP8Zf//pXAMCkSZM8+3r66adx4oknFuW4CIIgCIIgCIIgCIIgCILwp2KFTQC46qqrcNVVV0l/mzdvXsF35557Ls4991zp8uPGjUMFzqNEEARBEARBEARBEARBELskFZljkyAIgiAIgiAIgiAIgiCIXRsSNgmCIAiCIAiCIAiCIAiCqDhI2CQIgiAIgiAIgiAIgiAIouIgYZMgCIIgCIIgCIIgCIIgiIqDhE2CIAiCIAiCIAiCIAiCICoOEjYJgiAIgiAIgiAIgiAIgqg4SNgkCIIgCIIgCIIgCIIgCKLiIGGTIAiCIAiCIAiCIAiCIIiKg4RNgiAIgiAIgiAIgiAIgiAqDhI2CYIgCIIgCIIgCIIgCIKoOEjYJAiCIAiCIAiCIAiCIAii4iBhkyAIgiAIgiAIgiAIgiCIioOETYIgCIIgCIIgCIIgCIIgKg4SNgmCIAiCIAiCIAiCIAiCqDhI2CQIgiAIgiAIgiAIgiAIouIgYZMgCIIgCIIgCIIgCIIgiIqDhE2CIAiCIAiCIAiCIAiCICoOEjYJgiAIgiAIgiAIgiAIgqg4SNgkCIIgCIIgCIIgCIIgCKLiIGGTIAiCIAiCIAiCIAiCIIiKg4RNgiAIgiAIgiAIgiAIgiAqDhI2CYIgCIIgCIIgCIIgCIKoOEjYJAiCIAiCIAiCIAiCIAii4iBhkyAIgiAIgiAIgiAIgiCIioOETYIgCIIgCIIgCIIgCIIgKg4SNgmCIAiCIAiCIAiCIAiCqDhI2CQIgiAIgiAIgiAIgiAIouIgYZMgCIIgCIIgCIIgCIIgiIqDhE2CIAiCIAiCIAiCIAiCICoOEjYJgiAIgiAIgiAIgiAIgqg4SNgkCIIgCIIgCIIgCIIgCKLiIGGTIAiCIAiCIAiCIAiCIIiKg4RNgiAIgiAIgiAIgiAIgiAqDhI2CYIgCIIgCIIgCIIgCIKoOEjYJAiCIAiCIAiCIAiCIAii4iBhkyAIgiAIgiAIgiAIgiCIioOETYIgCIIgCIIgCIIgCIIgKg4SNgmCIAiCIAiCIAiCIAiCqDhI2CQIgiAIgiAIgiAIgiAIouIgYZMgCIIgCIIgCIIgCIIgiIqDhE2CIAiCIAiCIAiCIAiCICoOEjYJgiAIgiAIgiAIgiAIgqg4SNgkCIIgCIIgCIIgCIIgCKLiIGGTIAiCIAiCIAiCIAiCIIiKg4RNgiAIgiAIgiAIgiAIgiAqDhI2CYIgCIIgCIIgCIIgCIKoOEjYJAiCIAiCIAiCIAiCIAii4iBhkyAIgiAIgiAIgiAIgiCIioOETYIgCIIgCIIgCIIgCIIgKg4SNgmCIAiCIAiCIAiCIAiCqDhI2CQIgiAIgiAIgiAIgiAIouIgYZMgCIIgCIIgCIIgCIIgiIqDhE2CIAiCIAiCIAiCIAiCICoOEjYJgiAIgiAIgiAIgiAIgqg4SNgkCIIgCIIgCIIgCIIgCKLiIGGTIAiCIAiCIAiCIAiCIIiKg4RNgiAIgiAIgiAIgiAIgiAqDhI2CYIgCIIgCIIgCIIgCIKoOEjYJAiCIAiCIAiCIAiCIAii4iBhkyAIgiAIgiAIgiAIgiCIioOETYIgCIIgCIIgCIIgCIIgKg4SNgmCIAiCIAiCIAiCIAiCqDhI2CQIgiAIgiAIgiAIgiAIouIgYZMgCIIgCIIgCIIgCIIgiIqjooXNe++9F+PGjUNtbS2mTJmCl156Sbv8Qw89hP333x+1tbWYMGEC2traPL/bto2bbroJo0aNQl1dHaZNm4Z33303yUMgCIIgCIIgCIIgCIIgCCIEFSts/ulPf8I111yDm2++Ga+88gomTpyI6dOno729Xbr8888/jwsuuACXXXYZXn31VcyaNQuzZs3CkiVL8st897vfxd1334377rsPL774IhoaGjB9+nR0dXUV67AIgiAIgiAIgiAIgiAIgjCgYoXNH/zgB7j88stx6aWX4sADD8R9992H+vp6/OIXv5Auf9ddd2HGjBm49tprccABB+C2227DYYcdhnvuuQeA49a888478c1vfhNnnnkmDjnkEPzmN7/B6tWr8dhjjxXxyAiCIAiCIAiCIAiCIAiC8KOq1AUIQ09PDxYtWoTrr78+/10qlcK0adOwYMEC6ToLFizANddc4/lu+vTpedFy+fLlWLt2LaZNm5b/ffDgwZgyZQoWLFiAz3zmMwXb7O7uRnd3d/7vrVu3AgA2bdqE3t7e0MdXTvT29qKzsxMbN25EJpMpdXGIXQhqe0QpoHZHlAJqd0SpoLZHlAJqd0QpoHZHlApqe+HYvn07AMeE6EdFCpsbNmxANptFa2ur5/vW1lYsW7ZMus7atWuly69duzb/O/tOtYzI7bffjltuuaXg+/Hjx5sdCEEQBEEQBEEQBEEQBEEQBWzfvh2DBw/WLlORwma5cP3113tcoLlcDps2bcLw4cNhWVYJSxYf27Ztw+67746PPvoITU1NpS4OsQtBbY8oBdTuiFJA7Y4oFdT2iFJA7Y4oBdTuiFJBbS8ctm1j+/btGD16tO+yFSlsNjc3I51OY926dZ7v161bh5EjR0rXGTlypHZ59v+6deswatQozzKTJk2SbrOmpgY1NTWe74YMGRLkUCqGpqYmugiJkkBtjygF1O6IUkDtjigV1PaIUkDtjigF1O6IUkFtLzh+Tk1GRU4eVF1djcmTJ2Pu3Ln573K5HObOnYupU6dK15k6dapneQCYM2dOfvnx48dj5MiRnmW2bduGF198UblNgiAIgiAIgiAIgiAIgiBKQ0U6NgHgmmuuwcUXX4zDDz8cRx55JO688050dHTg0ksvBQDMnj0bY8aMwe233w4AuPrqq3HCCSfg+9//Ps444wz88Y9/xMKFC3H//fcDACzLwle/+lV8+9vfxj777IPx48fjxhtvxOjRozFr1qxSHSZBEARBEARBEARBEARBEBIqVtg8//zzsX79etx0001Yu3YtJk2ahMcffzw/+c/KlSuRSrmG1KOPPhq///3v8c1vfhM33HAD9tlnHzz22GM4+OCD88t8/etfR0dHB6644gps2bIFxx57LB5//HHU1tYW/fjKhZqaGtx8880FIfcEkTTU9ohSQO2OKAXU7ohSQW2PKAXU7ohSQO2OKBXU9pLHsk3mTicIgiAIgiAIgiAIgiAIgigjKjLHJkEQBEEQBEEQBEEQBEEQuzYkbBIEQRAEQRAEQRAEQRAEUXGQsEkQBEEQBEEQBEEQBEEQRMVBwiZBEARBEARBEARBEARBEBUHCZuElnvvvRfjxo1DbW0tpkyZgpdeeqnURSIGEN/61rdgWZbn3/7775//vaurC1/+8pcxfPhwNDY24uyzz8a6detKWGKiEnnmmWfwyU9+EqNHj4ZlWXjsscc8v9u2jZtuugmjRo1CXV0dpk2bhnfffdezzKZNm3DhhReiqakJQ4YMwWWXXYYdO3YU8SiISsSv7V1yySUFfeCMGTM8y1DbI4Jy++2344gjjsCgQYMwYsQIzJo1C2+//bZnGZP768qVK3HGGWegvr4eI0aMwLXXXou+vr5iHgpRQZi0uxNPPLGgz7vyyis9y1C7I4Lwk5/8BIcccgiamprQ1NSEqVOn4h//+Ef+d+rriKTwa3vU3xUXEjYJJX/6059wzTXX4Oabb8Yrr7yCiRMnYvr06Whvby910YgBxEEHHYQ1a9bk/z333HP53772ta/hb3/7Gx566CHMnz8fq1evxllnnVXC0hKVSEdHByZOnIh7771X+vt3v/td3H333bjvvvvw4osvoqGhAdOnT0dXV1d+mQsvvBBLly7FnDlz8Pe//x3PPPMMrrjiimIdAlGh+LU9AJgxY4anD/zDH/7g+Z3aHhGU+fPn48tf/jJeeOEFzJkzB729vTjttNPQ0dGRX8bv/prNZnHGGWegp6cHzz//PH7961/jV7/6FW666aZSHBJRAZi0OwC4/PLLPX3ed7/73fxv1O6IoOy22274zne+g0WLFmHhwoU4+eSTceaZZ2Lp0qUAqK8jksOv7QHU3xUVmyAUHHnkkfaXv/zl/N/ZbNYePXq0ffvtt5ewVMRA4uabb7YnTpwo/W3Lli12JpOxH3roofx3b731lg3AXrBgQZFKSAw0ANiPPvpo/u9cLmePHDnSvuOOO/Lfbdmyxa6pqbH/8Ic/2LZt22+++aYNwH755Zfzy/zjH/+wLcuyP/7446KVnahsxLZn27Z98cUX22eeeaZyHWp7RBy0t7fbAOz58+fbtm12f21ra7NTqZS9du3a/DI/+clP7KamJru7u7u4B0BUJGK7s23bPuGEE+yrr75auQ61OyIOhg4dav/sZz+jvo4oOqzt2Tb1d8WGHJuElJ6eHixatAjTpk3Lf5dKpTBt2jQsWLCghCUjBhrvvvsuRo8ejT333BMXXnghVq5cCQBYtGgRent7PW1w//33xx577EFtkIiN5cuXY+3atZ52NnjwYEyZMiXfzhYsWIAhQ4bg8MMPzy8zbdo0pFIpvPjii0UvMzGwmDdvHkaMGIH99tsPX/rSl7Bx48b8b9T2iDjYunUrAGDYsGEAzO6vCxYswIQJE9Da2ppfZvr06di2bZvHjUIQKsR2x3jggQfQ3NyMgw8+GNdffz06Ozvzv1G7I6KQzWbxxz/+ER0dHZg6dSr1dUTRENseg/q74lFV6gIQ5cmGDRuQzWY9FxoAtLa2YtmyZSUqFTHQmDJlCn71q19hv/32w5o1a3DLLbfguOOOw5IlS7B27VpUV1djyJAhnnVaW1uxdu3a0hSYGHCwtiTr69hva9euxYgRIzy/V1VVYdiwYdQWiUjMmDEDZ511FsaPH4/3338fN9xwA04//XQsWLAA6XSa2h4RmVwuh69+9as45phjcPDBBwOA0f117dq10n6R/UYQOmTtDgA++9nPYuzYsRg9ejRef/11XHfddXj77bfxyCOPAKB2R4TjjTfewNSpU9HV1YXGxkY8+uijOPDAA7F48WLq64hEUbU9gPq7YkPCJkEQJeP000/Pfz7kkEMwZcoUjB07Fg8++CDq6upKWDKCIIjk+cxnPpP/PGHCBBxyyCHYa6+9MG/ePJxyyiklLBkxUPjyl7+MJUuWePJXE0TSqNodnx94woQJGDVqFE455RS8//772GuvvYpdTGKAsN9++2Hx4sXYunUr/vznP+Piiy/G/PnzS10sYhdA1fYOPPBA6u+KDIWiE1Kam5uRTqcLZo1bt24dRo4cWaJSEQOdIUOGYN9998V7772HkSNHoqenB1u2bPEsQ22QiBPWlnR93ciRIwsmTevr68OmTZuoLRKxsueee6K5uRnvvfceAGp7RDSuuuoq/P3vf8fTTz+N3XbbLf+9yf115MiR0n6R/UYQKlTtTsaUKVMAwNPnUbsjglJdXY29994bkydPxu23346JEyfirrvuor6OSBxV25NB/V2ykLBJSKmursbkyZMxd+7c/He5XA5z58715I0giDjZsWMH3n//fYwaNQqTJ09GJpPxtMG3334bK1eupDZIxMb48eMxcuRITzvbtm0bXnzxxXw7mzp1KrZs2YJFixbll3nqqaeQy+XygxSCiINVq1Zh48aNGDVqFABqe0Q4bNvGVVddhUcffRRPPfUUxo8f7/nd5P46depUvPHGGx5hfc6cOWhqasqH2REEj1+7k7F48WIA8PR51O6IqORyOXR3d1NfRxQd1vZkUH+XMKWevYgoX/74xz/aNTU19q9+9Sv7zTfftK+44gp7yJAhnpm7CCIK//Ef/2HPmzfPXr58uf2vf/3LnjZtmt3c3Gy3t7fbtm3bV155pb3HHnvYTz31lL1w4UJ76tSp9tSpU0tcaqLS2L59u/3qq6/ar776qg3A/sEPfmC/+uqr9ocffmjbtm1/5zvfsYcMGWL/5S9/sV9//XX7zDPPtMePH2/v3Lkzv40ZM2bYhx56qP3iiy/azz33nL3PPvvYF1xwQakOiagQdG1v+/bt9n/+53/aCxYssJcvX24/+eST9mGHHWbvs88+dldXV34b1PaIoHzpS1+yBw8ebM+bN89es2ZN/l9nZ2d+Gb/7a19fn33wwQfbp512mr148WL78ccft1taWuzrr7++FIdEVAB+7e69996zb731VnvhwoX28uXL7b/85S/2nnvuaR9//PH5bVC7I4LyjW98w54/f769fPly+/XXX7e/8Y1v2JZl2U888YRt29TXEcmha3vU3xUfEjYJLT/60Y/sPfbYw66urraPPPJI+4UXXih1kYgBxPnnn2+PGjXKrq6utseMGWOff/759nvvvZf/fefOnfa//du/2UOHDrXr6+vtT3/60/aaNWtKWGKiEnn66adtAAX/Lr74Ytu2bTuXy9k33nij3draatfU1NinnHKK/fbbb3u2sXHjRvuCCy6wGxsb7aamJvvSSy+1t2/fXoKjISoJXdvr7Oy0TzvtNLulpcXOZDL22LFj7csvv7zg5SG1PSIosjYHwP7lL3+ZX8bk/rpixQr79NNPt+vq6uzm5mb7P/7jP+ze3t4iHw1RKfi1u5UrV9rHH3+8PWzYMLumpsbee++97WuvvdbeunWrZzvU7oggfP7zn7fHjh1rV1dX2y0tLfYpp5ySFzVtm/o6Ijl0bY/6u+Jj2bZtF88fShAEQRAEQRAEQRAEQRAEER3KsUkQBEEQBEEQBEEQBEEQRMVBwiZBEARBEARBEARBEARBEBUHCZsEQRAEQRAEQRAEQRAEQVQcJGwSBEEQBEEQBEEQBEEQBFFxkLBJEARBEARBEARBEARBEETFQcImQRAEQRAEQRAEQRAEQRAVBwmbBEEQBEEQBEEQBEEQBEFUHCRsEgRBEARBEARBEARBEARRcZCwSRAEQRAEQRADlHHjxsGyLFxyySWlLgpBEARBEETskLBJEARBEASRAF/84hdhWRYsy8JTTz0VaN0nnngiv+7VV1+dUAkJgiAIgiAIorIhYZMgCIIgCCIBZs+enf/8u9/9LtC6v/3tb6XbKRXz5s3LC63z5s0rdXEIgiAIgiAIAgAJmwRBEARBEIlwzDHHYK+99gIAPPzww9i5c6fReh0dHXj00UcBAAcddBAmT56cWBkJgiAIgiAIopIhYZMgCIIgCCIhLrroIgDAtm3b8Je//MVonUceeQQdHR2e9QmCIAiCIAiCKISETYIgCIIgiIS46KKLYFkWAPNwdBaGnkql8LnPfS6xshEEQRAEQRBEpUPCJkEQBEEQRELsueeeOOaYYwAA//znP9He3q5dfvXq1Zg7dy4A4OSTT8aYMWMKlnnsscdw7rnnYo899kBtbS2GDBmCww8/HLfccgs2b95sVK62tjZ87nOfw5577omGhgbU1tZi/PjxOPvss/GrX/0KnZ2dAIAVK1bAsiycdNJJ+XVPOumkfL5N9u9Xv/pVwT56enrw4x//GCeddBJaWlpQXV2NkSNHYubMmfjd736HXC6nLN8ll1wCy7Iwbtw4AMCaNWtw3XXX4aCDDsKgQYMC5/qU5Qh98MEHccopp6ClpQV1dXXYb7/98PWvfx2bNm1SbufEE0+EZVk48cQTtfv71re+ld+fDPbbt771LQDA008/jVmzZmH06NGoq6vDAQccgNtuuy3v3GW0tbVh5syZ+eUOPPBA3H777ejp6TGui5dffhkXXHABdt99d9TW1mL33XfHpZdeimXLlhmt/9577+FrX/saJkyYgMGDB6Ourg577rknLrnkEixcuFC5nngOcrkcfvGLX+Ckk05Ca2srUqkUzdxOEARBEERwbIIgCIIgCCIx7r//fhuADcC+6667tMvecccd+WV/85vfeH7btGmTffLJJ+d/l/0bMWKEvWDBAuX2N2zYYJ9yyinabQCwf/nLX9q2bdvLly/3XZZfnrF8+XJ7//33165z7LHH2hs3bpSW8+KLL7YB2GPHjrUXLFhgNzc3F6z/9NNP+9Y94+mnn86vN3fuXPtzn/ucslx77723vWbNGul2TjjhBBuAfcIJJ2j3d/PNN+e3J4P9dvPNN9u33367bVmWtCxHH320vWPHDjuXy9lf+cpXlGWeMWOG3dfXJ93X2LFjbQD2xRdfbP/85z+3q6qqpNuoqamxH3zwQe1x3XHHHXYmk1GWw7Is+8Ybb5Suy5+Df/zjH/a0adMK1r/44ou1+ycIgiAIghAhxyZBEARBEESCnHfeeaitrQXgne1cBvu9sbERZ511Vv777u5uTJs2DU899RTS6TQuuugi/OEPf8ALL7yAZ599Fv/93/+N4cOHo729HTNnzsSHH35YsO3Ozk6cdNJJeUfo5MmT8b//+7/417/+hYULF+LRRx/F1772NYwePTq/zpgxY/DGG2/gF7/4Rf67X/ziF3jjjTc8/2bNmpX/fceOHTjllFPyDsBZs2bhr3/9KxYuXIiHHnoIJ5xwAgDgueeewyc/+Ulks1llfezYsQNnn302urq68F//9V+YN28eXnrpJfz85z/HqFGjtHWp4sYbb8Tvfvc7zJo1C4888ggWLVqEtrY2nHHGGQBcR2Ix+Mc//oHrr78eRx11FH7/+99j4cKFePzxx3H66acDAJ5//nncfvvt+OEPf4i7774bp59+Oh5++GEsWrQIf/nLX3DUUUcBAB5//HH89Kc/1e5r8eLFuPLKKzFixAj86Ec/wosvvoj58+fjuuuuQ01NDbq7u3HhhRcqXZd33HEHrr32WvT29uKQQw7BT37yEzz55JNYuHAhHnjgAUydOhW2beO2227D3XffrS3LddddhyeffBKf+tSnPOeAHTdBEARBEIQxpVZWCYIgCIIgBjrnnXde3pW2bNky6TKvvfZafpnZs2d7frvhhhtsAPaQIUPshQsXStdfsWKFPWrUKBuA/dnPfrbg96997Wv57X/5y1+2c7mcdDvd3d322rVrPd/xbjs/p+R//ud/5pf95je/WfB7LpezL7zwwvwyP/7xjwuWYY5NAHZjY6O9ePFi7T794MsPwP72t78tLddpp51mA7Crqqrs9vb2gmXidmwCsM8+++wCt2VfX5991FFH2QDsQYMG2bW1tfZXv/rVgu10dHTkHZmHHHKIdF/sd/Q7YGVu1Keeeirv5DziiCMKfl+6dGneqXnzzTdL2042m807YRsbG+1NmzZ5fhfPgaxtEARBEARBBIUcmwRBEARBEAkze/bs/GeVa5P/nl9+x44duPfeewEAt912GyZPnixdf+zYsbjxxhsBAA899JAnP+OWLVvwv//7vwAcp+Zdd92lzP9YXV2N1tZWk8MqoLu7Gz/72c8AAAcddFA+hySPZVn48Y9/jOHDhwMA7rnnHu02v/71r2PixImhyiNj8uTJuOGGG6TluuaaawAAfX19WLBgQWz7VFFfX4/7778f6XTa8306ncYVV1wBANi+fTtaWlrw3e9+V7r+xRdfDAB4/fXXsXXrVu3+vv/972PkyJEF35900km4/PLLATg5OEXX5ve//3309vbi8MMPx8033yxtO6lUCj/60Y9QU1ODHTt24M9//rOyHPvuu6+0bRAEQRAEQQSFhE2CIAiCIIiEmT59el4sfOCBB2Dbtuf3XC6H3//+9wCA3XbbzTNZz/z58/OC1TnnnKPdz/HHHw8A6O3txaJFi/LfP/XUU/kJgb7yla8UCGlxsWjRImzZsgWAMwGQaj9NTU0477zzAABvvvkm1qxZo9zmhRdeGGsZP/vZzypFXV40/uCDD2Ldr4xTTz0Vw4YNk/7Gi7lnnXUWMpmM73LLly9X7mvo0KE488wzlb9//vOfz39+8sknPb/97W9/AwCcffbZyroDgCFDhmDChAkAoBWGzz///MTaIEEQBEEQuxYkbBIEQRAEQSRMVVUVPvvZzwJwZhp/7rnnPL/PnTsXq1evBuAIeamUO0Tj3XOjRo0qmJGc/3fwwQfnl127dm3+86uvvpr/fNxxx8V7cBxLlizJf54yZYp2Wf53fj2exsZG7LnnnvEUrp/9999f+RsvMm7fvj3W/crYd999lb8NGTIk8HK6Mh966KGoqqpS/j5p0iRUV1cDAN5444389x9++CHWr18PALj++uu17c+yrHx75dufyCGHHKL8jSAIgiAIIggkbBIEQRAEQRQBXTi6KgwdANrb20Ptjzk0AWDDhg35z2En3TFh06ZN+c8jRozQLsuHRPPr8fCiXVzU19crf+MFZd2kRsUuSxxl9jsfVVVVeWGXPx9xtD+RoUOHhtomQRAEQRCEiPq1LUEQBEEQBBEbkyZNwoQJE/DGG2/goYceyucj7OjowCOPPALACYU+8MADPevxYtUrr7yiDEkW2W233eIrfAh0IcumULhyfIQ9H3z7u+mmm3DuuecardfQ0KD8jc4rQRAEQRBxQcImQRAEQRBEkZg9ezauvfZabNmyBX/7299wzjnn4NFHH81P9CO6NQHkJ9kBgJaWllCCZXNzc/7zmjVrMH78+BCl94cP5V63bp02hJoPVVblmSw3mDsyl8tpl+MnbioX1q1bp/29r68v79Tkzwff/jKZjCfdAUEQBEEQRKmhUHSCIAiCIIgiceGFF+bdar/73e8AuGHomUwGF1xwQcE6hx56aP7zv/71r1D7Peyww/Kfn3nmmcDrm7r9eNHrxRdf1C770ksvSdcrZwYNGgQA2Lx5s3a5d955pxjFCcTixYvR19en/P21115DT08PAO/52HPPPTF48GAA4dsfQRAEQRBEUpCwSRAEQRAEUSRGjRqFadOmAQDa2tqwZMkSzJ07FwAwY8YMtLS0FKwzbdq0fI7Fu+++u2BGdRNOOumkfGjwj370o8D5I2tra/Ofu7u7lctNnjw5nxfz17/+tdLZuH37djz44IMAgAMPPDDRvJ9xwpyu77zzjnKing0bNmDOnDnFLJYRmzZtys9uLuMXv/hF/jNro4ATNj5z5kwAwBNPPIG33noruUISBEEQBEEEhIRNgiAIgiCIIsLCzXt7e/GZz3wmLzLKwtABZwKdq666CgDw/PPP42tf+5o2FHrdunX42c9+VrCNL37xiwCARYsW4atf/apSIO3t7S2YMIYXHt9//33lvmtqavCFL3wBgDPT+W233VawjG3buOqqq/ITGrFjqwROOOEEAEBPTw9+9KMfFfze29uLL3zhC9i5c2exi2bENddcIw1Jnz9/Pu6//34Ajjh9xBFHeH6//vrrkU6nkcvlcM4552DVqlXKfWSzWTzwwAPaZQiCIAiCIOKCcmwSBEEQBEEUkU9/+tMYNGgQtm/fjqVLlwJwZon+5Cc/qVzn1ltvxfz58/Hiiy/irrvuwrx583D55Zdj0qRJaGhowObNm7F06VI8+eST+Mc//oEJEybkBUbGbbfdhjlz5uCNN97APffcgwULFuCLX/wiJkyYgOrqaqxatQrPPvss/vCHP+Db3/42Lrnkkvy6e+yxB3bbbTesWrUK3/ve97Dbbrthv/32y4fVt7a25sO0b7rpJjzyyCP44IMP8K1vfQtvvPEGLr30UowaNQrLly/HPffcg3nz5gEApk6diiuuuCLG2k2WM844A2PHjsWHH36IG2+8ERs2bMBZZ52F2tpaLF26FHfffTdeffVVHHXUUXjhhRdKXVwPEydOxJtvvonJkyfj+uuvx5FHHonu7m60tbXhhz/8Ifr6+lBVVYV77723YN0JEybge9/7Hr72ta/hzTffxMEHH4wrrrgCJ598MlpbW9HV1YUVK1ZgwYIF+POf/4w1a9bgjTfeKPkEVgRBEARBDHxI2CQIgiAIgigidXV1OOecc/DLX/4y/915552Hmpoa5To1NTWYM2cOLrnkEjzyyCN47bXXtE7Hpqamgu/q6+vx1FNP4eyzz8YzzzyDRYsWBRIVb7jhBvzbv/0bli9fjjPPPNPz2y9/+cu8EDpo0CDMnTsXp59+OpYtW4aHH34YDz/8cMH2jjnmGPz1r3+tqBmyq6ur8bvf/Q4zZsxAR0cHfvjDH+KHP/xh/vd0Oo0777wTmzZtKjthc9KkSbjqqqvwpS99Sdp2qqur8etf/xpTpkyRrv/Vr34VDQ0N+OpXv4qtW7fijjvuwB133CFdtrq62pO+gCAIgiAIIikoFJ0gCIIgCKLIXHzxxZ6/VWHoPIMGDcLDDz+MZ599Fl/4whew3377YdCgQaiqqsKwYcNwxBFH4Mtf/jLa2tqUOR6bm5sxf/58PPLIIzjnnHOw2267oaamBrW1tdhzzz1x7rnn4oEHHpBOYvSlL30JDz/8ME477TSMGDECVVXq9+Pjxo3Da6+9hnvuuQcnnHAChg8fjkwmg9bWVsyYMQO//e1v8cwzz1TMbOg8xx57LBYtWoSLLroIo0ePRiaTwahRo/KC8Ve+8pVSF1HJF77wBTz77LM477zzMHr0aFRXV2PMmDGYPXs2Xn31VXzmM5/Rrn/55Zfjgw8+wC233IJjjjkGzc3NqKqqQkNDA/bdd1+cffbZuO+++/Dxxx9j7733LtJREQRBEASxK2PZYTLQEwRBEARBEARBEARBEARBlBBybBIEQfz/duyABAAAAEDQ/9ftCHSGAAAAwI7YBAAAAAB2xCYAAAAAsCM2AQAAAIAdsQkAAAAA7IhNAAAAAGBHbAIAAAAAO2ITAAAAANgRmwAAAADAjtgEAAAAAHbEJgAAAACwIzYBAAAAgB2xCQAAAADsiE0AAAAAYCfc1TMHVDyGygAAAABJRU5ErkJggg==\n"},"metadata":{}}]},{"cell_type":"code","source":["# тестирование АE3\n","predicted_labels3, ire3 = lib.predict_ae(ae3_trained, test, IREth3)"],"metadata":{"colab":{"base_uri":"https://localhost:8080/"},"id":"qAScMohAoMAC","executionInfo":{"status":"ok","timestamp":1762647605227,"user_tz":-180,"elapsed":100,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"2c4d5761-e365-4563-e8bc-eead009c4bb6"},"execution_count":28,"outputs":[{"output_type":"stream","name":"stdout","text":["\u001b[1m1/1\u001b[0m \u001b[32m━━━━━━━━━━━━━━━━━━━━\u001b[0m\u001b[37m\u001b[0m \u001b[1m0s\u001b[0m 38ms/step\n"]}]},{"cell_type":"code","source":["# тестирование АE3\n","lib.anomaly_detection_ae(predicted_labels3, ire3, IREth3)\n","lib.ire_plot('test', ire3, IREth3, 'AE3')"],"metadata":{"colab":{"base_uri":"https://localhost:8080/","height":1000},"id":"XGfYzxuOpHNm","executionInfo":{"status":"ok","timestamp":1762647607043,"user_tz":-180,"elapsed":237,"user":{"displayName":"Alena Konovalova","userId":"13964397918094172748"}},"outputId":"926a2bbc-0de1-45f6-dd97-4acbb1c3528e"},"execution_count":29,"outputs":[{"output_type":"stream","name":"stdout","text":["\n","i Labels IRE IREth \n","0 [0.] [0.1] 0.11 \n","1 [1.] [0.5] 0.11 \n","2 [0.] [0.05] 0.11 \n","3 [1.] [0.15] 0.11 \n","4 [1.] [0.27] 0.11 \n","5 [1.] [0.39] 0.11 \n","6 [1.] [0.16] 0.11 \n","7 [1.] [0.61] 0.11 \n","8 [0.] [0.07] 0.11 \n","9 [1.] [0.21] 0.11 \n","10 [1.] [0.22] 0.11 \n","11 [1.] [0.57] 0.11 \n","12 [0.] [0.11] 0.11 \n","13 [1.] [0.21] 0.11 \n","14 [1.] [0.12] 0.11 \n","15 [1.] [0.32] 0.11 \n","16 [1.] [0.29] 0.11 \n","17 [0.] [0.1] 0.11 \n","18 [1.] [0.87] 0.11 \n","19 [1.] [0.52] 0.11 \n","20 [0.] [0.11] 0.11 \n","Обнаружено 15.0 аномалий\n"]},{"output_type":"display_data","data":{"text/plain":["
"],"image/png":"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\n"},"metadata":{}}]}],"metadata":{"colab":{"provenance":[],"mount_file_id":"18LkCpZh0St7o9ZxC55LTbYhv_HKlCqbh","authorship_tag":"ABX9TyO3UaY/bSyHbtabXnLp+wkG"},"kernelspec":{"display_name":"Python 3","name":"python3"},"language_info":{"name":"python"}},"nbformat":4,"nbformat_minor":0} \ No newline at end of file diff --git a/labworks/LW2/XtXd_1.png b/labworks/LW2/XtXd_1.png new file mode 100644 index 0000000000000000000000000000000000000000..62a2adf8dda27080ccc8f40a650bf2b398931736 GIT binary patch literal 89193 zcmeFZcRbha|33Vtr4XX5vNB3!Mr4IZ+G!|}%*rSudsH$Ku8gEXQCCU`MY6K8XG*d% zvS;>qb025d_4)oj_x-qk|J?V#KaZ>H>MCCE*XwmY$MHOl<2(b79@b`D$F+_^p)l&~ z*E~+4tX88?XtU{7<4-bJ?Z4qaiVpkEIGnIGcW^ScGou_bcDQO~>tJ>1BHwj0JNrwv zHZnVjQVe5{?r8vpi)cn`M>_&ZjS+l|G)k}qwxRyHD1U6c`g6M z#QzD0KkwoHZ#eJ-k5E`xGW`Y{le<3MSn=Un*J_)#?10M3g9oFPI6FEzf=9Sm{{5oT zk8|^BYU=U7diBabC}^Lh<+k~$LBH{?5|eLl^!Fb={5jWSVRNgpKx+PNdUigY4d&I4 zU+r(JjFREk*|5{#!_)md|6GZ>=NgTV|7NY_HS*_p;eB4i zzYj*;OtYv_fB9uE9Zlk?z-JnMiXQ_t^=NeOi`@{^+2nQKwmmnfw)W`k{Jg-fU0;vl zx;Om&>2AB~XyQvS2EQ*VDr%Y8Ox4-zHZ!v8Ty@xO|L%O<3oQ2vcUjg_YLsUlH}&F{ zyx(7G6m8j>`qiIh>tA7Ex03UgxKdJ5f=AY~lvyp#j(<-zqyLt8&QHZ-{;5Sxv{p?B zxBU9k$%e%Xqj@2vrTf=Rh5A2k#nT>5HdKBz5X`k}UB!LztQutj?K=Sh`FJ0EK35%1 z`}<0s;*o73Zs@>GI(l-Kd{@`fqaC`~ZrQm4i;X@CLikSrDg>*KYN;VAYsd{A6U3$-XD5d0R;@Mr4PmxBR z0gT*oPfxr&{6Nz9<}J4ann~UwIm|5g5?uS9`HlU!l5C81dLU=bwMqP}>Ez;_jXTDM zGuk_wEMk6juDKW1A@tV2^u<0+%`@3n-yZI|a&REoFoz5Gd^;~sb&*P~OSe9kHZ?uc zdS%>oHdHW*s%UlaAcLTe^!D~N3#JXMtSlQhnw5IYcKD@SEWTqGk~n$V)Q^!{xcRi{ zk!YoW*;(g?_+u*!4GrT@C-Vp&e(ZlP!-n(g9)~_=3ZJOxx)p2IYgRqnb?nt~As;_K zlgbBDAFdBSe3o?hrG~Tf?$@Uh@7%meo0hpn(ZSo#Z%vXxChe!+gRk-&e!MjnD;a6W<&K}RDIg7AiagXzvN+s(ln^iqGuUO5Xwtv5W zhvQ?ss6BHQz$kqAINX` z`1mLZr<3It-wc$vk9Y1f$ab!?6g$vrrL+VolUsK%Y?AA>G( zdrFtbpa^C2?yD5URxzG$yomM4&tH*7T3F{cuVs&S*3FxuqN031%G56!5{X3r(qJ&Iq$>cs`2vffof6HL4+AOLHYdyyi8J6>d=%X1e-c#%P^6b0%}% z@LnS)CCM=74nAnBf&%Bs*LwLC5_xx{mEAf^c)c|J)^B-hR&n2Ms$$cg>qBbzq_-v| z>rp-~bQT3zwq+}*%>Gmd7?`GSf-uXT^?mFkNL@b+dQi8;U|j5&FR)!)@G)rPY*qkd!S%1+;Dl<=ewM@ zii$KFUZ12#5EQm%Ik9ZsY?bPTNIK}5WKsFx2Er|FnsvhlNt4eE+0#F+^nFj+n!CK@ z=Fnfi>gACbx!3a6KV%;(I<5;*UD|EvKE7{qu#w54`tjcOT#ppfvJDGH?(|y0n*+Xo zKU0{YLVkzU6Fd8k4xPZ)bzbTb_sb29$AkrDio*==l)2RFmZf~3|G19-?d7kcO4Hv> z=olDCX!Cf^8oxRFzT9d7t)j2~1--k6N8N{OCPOWmU&aj1p5?lD@#0Tp#~L1I3SPK$ z^XK9~cBzX+bUwbmvBzH=prfZRL~LE{uNMmJDyyj}X?S(wScc7cXE(PvoiO1usipyC zW*I1ECwiPm+j0UCqG=^JUv&NKtBX6D@KxCQzLG*0ex~nRBKOT(w>m~gLtaL^uFIoN zKeFm-R24n>+6OH{X?bx%cxtpY%TGx6KA)W2CdYw>8+angxw*NP4e=~mL0o3Lr^|nw?rC$IOx7vWju1Ur zi?ZzgyG%sbV;0q1(sR*S_R2Sgy?ghLjgRj|oQzL5+s3_pTWgg!{Hwn|;E2lH%IN55 z4i)#^BQ2RLo*ecwF7)lFezNCGuDinP)5$iet-mTFNy*WBb$r#*(h`XwlGFP0nwoOV znwsnFmKI%T)KJ#WzCoAfp;1G6mk&)md-e>Fq#)i3C4|=dOpfdOXI2O+T5rqx=K-bV z<Eje;RqAAz&ImI5pfrtt@RmIf!<~k{AA8_-PT6VXv5vm6@iS*U(e1N| zo7g1`W%s1NeJdH3QuRPegTm}KJtQT1WdD9S{SouYM2X(Uh>LsO_{XRsa*lf4JIlv(BDd&I)%pJKmKToG0rxW1&A;a=Ip3c^_WR zzP)>IbY$MW%RpLPUBYRJw665Y2?3wE#@e=+lR1%wt~wNEl!0{Sf=S1Zu2ZiuBr$(Y zIL(e^5^iSVlHE^X=JlAocWf?*TVC^tqN66csG(u>v+N@=Dzx6SHC{_5_1~rj8~5Qw zHc3UQj99rG@?pN%U;hFN^Um_#F_*JvAL?)`C@93bO!NqB+qScBZd5?$v~mU9e^r!@2%D3{aq{%-+mD&0I$`6!Yq-um|C3j zi2IRBmuKZ%Wl-_`#*;6<1l(A$W*sH=SezF5&Wi;;Yh$ly!IhKRT|WuyAs2pPwGyfx5N*wcaZML7fd~NOG6E06}A2rv_-f z{R0D8fsZz#bh1;(Yb%bDv8W6d*}3zu&+Xd*>_+a#vS&L31;oTEhdgV&Y*0*M(WHcv zYkvQ#Ksd^|iJehg|0BcJ_QBRjcg88zHN(vr?8voPT=n8W!>fxwKiw!OEYtupy<_A# zx9|S=;LI;nqJ1w9KVevS)4kaJe9?;y9DazZ9hLh4#^AN4-_3=8yhfk$ugrm%9e>!C*r)q zm7=Akr5WtI5Y|$T1A29NUS7{mCEQL$h;=SguKJjL(BOwYbk_J?X+T^+5rGd?Y-e0jEu zDX#IkNlCD8FAA6tpqwbhf7g|798)G(;n?fLKQ4aqrn&gLyX<1ihikEyzWj}BZOzJP zYHST18@n19W9-A+nV8YGfl^d@Z)>sJXpRWQA5Hc_qTAHK$->d6Xjf8bY$TURPO)%v zUzyH{wl@=S`Df4wW-8ouxqK0Rgn$=+1FE+%X>0QDwZhel1E`l>t## z9d4NDu&pGjvU746y%xXC6t^tx5EElV5V3{| z1|Xd^=F)0Zb|C05DeMYIh#kSxY54f~aCmGB3<;6nBYcjXGAWi*Eu^}#ySJDA$dMx* z{r%f_8s%Emf2NnnMg?;m{Ki?{eU_sC_QDMcpUPY}YZ}!H;9c|m<*y9O>5hxjBQ>dg zA<3u?rzp(i<~uSo+FW%>xS@xXr&2DC*1V2B{8C2j;+ykX-})TuEoB8170=Gj%|*FC zU|07?Lacj#R$S3(#40@|kX>REr3gzXr+_N{Tq$E&QqAtLplMoHw}_ke4tZDqS~=uR|h@wL)jTI>NB_EI~!@e z(Pci=jphNkv#_&c(Y9&_bCidLhOVTfIP@RaXv)8}hLOI1G$wNg;_gI z-rhi9{|61qF2A3T&CIZ$|L7nkdio;Gb0v|nGmq^17?CX$W&nB_(Pi|Lm6W=-#v0GQ zUQSHkIwKWlF_N=CuFfA2q~q5wA*8kWHe`rzSVo)s#G$bCbgL!-AVbo8I(lDq59*yc zv+bkfpfF%#S!^8h^zs`C{Zvf~^AV+SpSsvUW_19BI~a_jwxqqEkijd|nORsAHa9n4R;D(7s5<|d42+aJc}bqCeWN>=w`^g=I8)f@ zv@qGf;^}O??u&j0MN3&OMA(mr_m*`6m5&uzZFA>@L&L&S+-7Y0926g=ix2LqH!9#) zRpkYilyW`1JRi~B(QyOVMT71J@}9F?JBVu)zfYZq==GuRH;^j~yegY{czAq&r&~AE zQVcz&P9pOQFE3Y2C=QMu`#C%uR8XK!W}YFT49j`8nwlDIbMwDj zBNIeNm&9}dtm-oDEyT{HGpLPU`-tI%Ve{_V?hS{9&VRU?KlHt_bs;WWH6c{610%+2 z%3Thrf~x^R2+7HTukwl&gOgcXY2e0fNnTqs~acYS? zt)=DLvB45U-t7Efve}hK{-qD`bj~g=`iU>|?#-h+v9Ph3Zc8@Els2z?KttIi(Q)D! z>Wa+viLtRyz_bXq6dlJp(?Td2!_1_b@63$xk&kOuCUfcg<5zqwrNe*~3o3 zIJ{b8j<5mc5j#kM^-b00^Si|!P zCFnv!B#L?*`t9s^3GcPJ-)3RChhtP)Etl7zG{rk5h;Fr?arxhH^uJ4Ln^Yinahu=5eEx%}D@@L8em*J~xeA0CB z#m0>rIa8+qF_^iyE+5Z8(eG<`#Y%u?(@t*Fgj;Kv1jNM|F(B=;vU*czZ<{^78rAnE z61NKl>iT=P(KcnP?{8^NCY&lBOwO~JY>}x^x+N0hzQJpmDi82&Y5&M>v&=VO&@Eg+ zt5Nfv$MV-O{=)D+(OZLN>en=rW)b7D39qjhCCz$r;-$P@_kMTGW3xYRG1X={*@pEF zQ}vg}3YpMM?>&CZ0MaHd-QC^&=!*jzvq}s%QO6B1xyAiPLO(RPe>zm~F6bc&zF)QU z+nV=ht)0b3FkS2m+!RGsav=BH@__}7NHSAwf{d(ahGpMG1X3#tT{j8{^oBor6u7wP zp4RwXOnlECZqbNxt5(o3>Y;+B78Vt4C1A4ng@sq6+U+@;ZWVwA`1JDE*JB6~5KwQg z51&nwUzG;}@6Me&N3*V5XZWAXJ>|eDR&L z?=MH_8^zUelt;S`Y;Q<7&2*(Psra#i{ZHgCLIfX962@`?Az?iDE%E!iOJT)V)CVJG z9M`W~SAgZb_vA?sKL6|%x3ZMdUol=wG!(J(AKz8FI*qpNL))^lX>6ljO2F*%)F{t$ zx8ndC;oSfdE`U`KmS>ab?<@{{ut;D*ZiVGJs>*KXu?tbW?ic~-e=Y~Fu=kSvOSfOOS})-gW8&HO(jRRm z(F$&1@b9XBp-Y&u+84U)E7z>iNIcbrPx+qfk=4|do2?bX6NJ9liSg-k)@W`ZMofM( z4i0{c5WnSL8agy&RXCcIx_kb4q*J>GI|c>~;OCARUqgM79Duu$Brz&)^JJdP)~#FX zUY!t$*PDLQ<-9O${pj$AvZ|_L42fhxDj&($bh}V_%cn%>QBe(YTsH!2rOl}rS3Qzn zL-{k7D^EW#R&^ZuUe}$w7Lf|F>r?-im)9oyj)gTQ;|&N84^~vRwyP(eBIMr#&@F8q zGv`;XUfqeH(=7C59PbW0@}prHu)YJ3b#^3c6by|`iXoUDjKQ|)URh3~pLx9&Z=6az zd(v`oeqlcw8{5y`7_ZM@SqVqT*_uJWZAt%us+Y?8&AYup3_lWcHZ?bYxYz=qST&@q zoSK>{7R_uj5>lwIuP;1hrEsGcZ>7IvL+& zQu6rDW|^Lm3FDDn;)7H1=Q4HC08Mi{=pY`GnYJSZ+%-3+yP$3PppwMQ(ParK!8<5Qw)D9ybQSw}?a| zO;a9rHUCnx7cXAWc$ZbRRIUZLark8+)(WEuV_Yu~H=mE%g$qxIJX&%+_INH+ok*(m zonxYm&Gp7SQeMG0o5$31@7}%Zzn*|y17XLk{u7XiyxL6?hIiMp3ZGH#+NbKN+n)Zx zllt+PGBrwR-cEN)H`+r)X9HnhP!&58l5?fq{arc(M2_Zpdc+OqWM{tx7AHi~Ztw`d zCnjjvyv~T`)ShT-Q~*^VV^OVn`0)BoI}I!yhlEN5*r|gqokeRw3LKoiZrvJ_j$2?? zS6Bb*@#DKl!>0&y%df8^nr!X+NZ<`k-~zJx9NR~025zpRzuH~OLRxE%>r_Eph{_%N z-s-&xUprf!+KV4Znbf|~m$|!T&n77;DJ|ZDsbLhEwFJ$5ZB)y%*7s_Ok4JOiP#FRn z#)`s|AHMy>U-$2u@9r7_yYl&kZlt8!v{hIdXS?TuH463l^d(T?>j8iEVP&Pv%GtnF zUchX?A$4&j;jx;C5xAH6n`>AnHP3_&9CL$%K|`dTt&ygS3fxprMPo!vAA^m29RyHr}q z5U`GTwUn5+_k%r#RhdR2V=c+oE8Hr-+h1fpdOh#Ni4&-k)~S@=$gqyjLEL?{&sOwQ zKe=+oe{s}nIdJ_J#h))@JPW**CV0aQb z#enO#QPU?!+j-GTykEY2*)b9KSY)-hVKxU^MDbtz8iY7|W0c23ou86Xs5`JcAHHM| zXK|^0!@X?hwPFHx`t!*ps*7WVrv?E}H&7~A4MehA7j}Tl7eh1tE3&=(i6A8`XQ(Ub%ZtU8@n{R}KFvZ5kLR(gz{Hu5#tj(JB zo4o~fgp&uyItnr41fY{##F$>&?;vb6*m&ZV9%1JGKK$hJhs|~9A%_OgPrlL9(W#LN zHq-9)h#EIdRnnS_oS#Q3nOTz-vV)0wR`f$|!ngy*Nuqx@ zywPU`NwAUv0-X_1>?ZigQ*X}PKws;KIBh8PBNqYxmta|s#~2#5#*5>|pk?kDa1nyw zfs%{#LwVa^6cf%(D|WcHG>d}i*3r?4KmKAJE`6X ztvvW*y)u4BPac1GTqI|4X2c_B{ucsFPndWh9j9NT|~REdw#E!WH))I#dkW z#L7m)>r}RQ(|qF_02$`unGL%ZYK?j-0PEDon>y0#8^22U=yjW}w{PyN5PMR)VZ(-- z;2Vv>fP-P%<=yF$ATE3)ngKN4D*8=l60clRda-c&9#{wMW5-zP>+8pAHJFTN$2zp~ z(t4|(5NwNeXZoIEvZl>#RJrouE_$Tg@pP;8bd>Xk{&f={ZAx^ zPo-_u&hr8U7ek;y|M-Mi&mSzhdcs%y6N{=zFe9NJNbU8lX?P)H4Yq(cd1j*MDdCIk z($dmWTqewizNf4}V^cFU!1{s!j0&^xFU4k-r zwYPdp*kIhliSH&M&oCJi_;Dy#T-u^~bIV6ZdR#%)K;$F3qW|5yMPN`FXU^50OEq1K z*Urq&ZeiE-H{e?=08x7qUG5krpsL0DVcHasRA8L)6=1{N`B+RidBX{}IjRNq6{3{KeJ609u zm`z%=^oL}HmKa6uJTK`!d)0k$yo9U><1e5vb$53q6d50lTksHIxJkd3cI%I=C-;pP(mC1x zMNYy$M#*IZg`xdI-6#s*d|9_s8Z#}Sg^%TgR_64~OH-vTR-?mQ{oSoo8LiAcK0Yqj znss4$i3)yBVys?Qf~?4?!DT$5IlJ$HnPh>k#uEu&iN1PYOrQ4YEcX*vJQvAa9BYLAnpQd59E1jwYy4@uw2G5Q|s^IW_#rcxN%)`t_e7S==3Y1qS9L1XCX8pEQqE zy$tW^Dy&+$l5gkE^(dspnfAR5k;z~4);K}l>rQn8CVBq#^1Z+Q^3KjydSj5e0bC+^ z1P~Q|sA3#D3lrEmIoI0S+HO{`D>5~F^QHf4UoC&ryq4yDLcACN!Pqlz+;}@oSCccI`_Ybl)TodNmK!7Kw5;BW%8QW9SC=)6gM)7pHIsByD!zO z0wZ}>XD2hHbnxnN=)n)9&DNnP-WG{=E*M(VjnS9rRUcd?ga^JQ24=K-HV++&YkZ@B z3mFh)wG0`VlqFL6u)=jo=l58?KYMqxLjAy%=f_{YMRbEh=!~+6&i|QzYdmIoaSf>J zf@a&ipw*0AKY_jF8X^VP0-8!;!b1M|(X3egQ+0Wc>Erd`J0QhL10sW2rFjsKGMD0$ z_3}0?YQQnKZ5J<%4q8<|*9jw12muh*Ki=g7m*0Evz|xuVbdtfPY3cP4_aqh9gMOg- zG@lZuY6z(#7|Zt)dFvk>tOdL=UcMvw0_bLt#2OeMDh)-xbGgmDR0g9$8Y*7&=WZ>( zjb;Ewkj@zzSEc{@SO^K02UFN>aJgI_lqJ;GIyBPk`GEvn^>h5OI7y%w1}<4T;6Uf@ zd)jw5nW`*~X~AZ3vpikhdV3b{k5Bu~ATm*lL& z!oz)9S`4zs3h0GrJ_#%UA%CgV!u&Y`v(Zg>SWa7~Jy)#8gMyRQ{I z7gJK&Ohj5m8f_p{((4x(MTJ_DS)GaChk`F4Bg1N&Gj+et9%Doic~2nnh-`U%2F8H9 ziLTQ_0pRi880P%2R9(wYR*r4sM&s{qjkTHywSsC~P;i@`F_Lz2eEddC4DaINB7^-5 zu;7J`g4?qIn1_P3-Mqe)1aYqckAx@S%Dwk2GA73MLwmG=53}#86Uw@y`J|{f^=_2% zT5?|mu|-Nc=n=+WAjdh3jd}c$BjgX5t5Mu>t;y1@tLsY&?xbByxBlAcuaX_^1hlW#4opg2?=2 z|5l;_mM&s+V&oJWM84GZ-1YHUS$G|NRJaDs>^ym67a_RZce=@062i+4P`VKpXGO;) zx(*RgI#IvO2YL5guZ;IZmKOnU6r-VvnF9b3A(uvN5oFT!sUu!3;hXcAr*o>+=~#Gp zc0xJ{Dz~$_f-IByS2i z#6VC;C?GtXEukx;2#7IwX;u*~j$+08h8C1qyk7H+x;)<(M)dqv3;H>BzwSV;W)nY` z&IW2ut0rPf(PQpcBvcFhJE+{=-oAKoZekxo%qJ!$24X4;q53fgZHRII9iZc@702@B zvhaGT(1AtKs4%R2S!@z30U81xdWkqIB_bEbq838|9ZIXYJMW6oUxOP1 zC>vM-R%O>o$x27qLrnCHmOmC37YBgB97nC<8eXo?Td<~jT(VI)Vb_)mA}wKfz>BDS z#G|8$bS-*!=}QqjJVb*dfsnWOJ5a2vakPR+Aq-m-^@zMOIe|$XRQ=VfZ;{f^_a8X0 z0k!*S{Mq-f{R0A|=9I06-%HDvY`?Pp(xs$yuVv4U!NDC$%F4x0_ue8Oz(BoJ`}9U> zY3bXCR}KT!0tVz#_=r$5`C|bI3s=iIYYjS=U`~6nsuy{)o%BTFLujJ1vz_?+APagH zJ|2DwO`-*lfOYc0aOgbW|MJj}j7i1f&!5+U#l8kEKqD$gbx`riVN@4-ih!)F9@bHd z2!d!DM*)G0`;^}ZUWt){#Q+33W630XD?^uU%ZHTGni_U>x?_5JfMzbb>?+mh`@%0Xj6=?*Wg8}Y0YEn~yl0}#VO z_v*w;va~)K85#a}?rcCukiDxcE`G=XMg&mv0T{8vikWi2koW_t2ZAsq9}c`xgqgM& zjOW3Df#&Lp3RaRM@h4selgA)eBBGk&lj``~&0du@kYx@H-(S47Toxu$41#(qOaf%h zV2TOcZP)Ej>?n|e;!h^rCx1i)fEjQTc2@#0#=p}Cck|oejq5-*-tON8FWxgvHNx4j|8l$s!9SD z%}x+}srb(GA5E`UrtkC)cSrCOMUK!lVa0DD?f`dfyWE&04tTu}29#n{Famr)({*3MXeWiJ-<%Of+0MtnXc&Q}6oBZ70Fh|jg8gMtz|bTaH8 zg#}{m0{#6zLEtENY>I`}P1qs8fYb*2Q%Hb(lQmy7UpI#8=W;v#lCE(B{(B0_ zyE;l)VN&*6r%^+AQQ28V4tKBB(3Jj3OZShD_s_pGw?xG4QNsoP^Cc+Xw!){B7K{XX z1r%LMsG!2fJ>+k%v#RsK9tj}ed!X1p#(=Rm4u9G`u$xy%yNj0Y-YTGreP~*nTN&Xb zid~oGJ|~U7h5t=u{pVYEl5d4A@!l#L8XC%-_NOaWtk_sK1X2dc9>4$o*58}&l_~Wo zxCu`f?5Saisx*mKPEAWY_VVzS!faoIz^y%T-V4hHk~Qxq$Tv1t+iMC>Jm?*YI?!`X zdWar>teq!4RBHOjozoOFX-AZf;I` zs&ww(M-=@6R`Bxsv%Z8_Zqh=7e*5-q!SIKLQMaDV>(N`Kqk6MlF2CmjDocHbjy@7V z&!@RD9BK_Lec=4{J|vQON6tu3mMi>u9X$%7Cqe}=UOa<1@Ry*DZ!|6)CF1i5B*3#e zOFp0Yt8ODp3(@~Rs)AEA+;U_L{`5($>4%_zz)b!s=Gb+xMS(w1L@^`sCJ1@E+IkUxmG-1DyBF~2MqWBr#eG~R)*qnq9&&-GVS)LQ7)Fb|a3`DUC=^hH@`P`0oBXT5^U z0oXBF(}1&QW@9U|y}`^<=K<1KOKUX>GPzCt9}Y9^Gykq|jmrd?K{18E7{DhZ6NZn# z2g&ah5q$~e7H@Bi>5-=Cu?rXY-kr6+J<5a|Hw{>tVOZ|d)?7X{uUoT;jjhy<7q7%l z0_{vxgvu-HQn*VXwWu&|Ht_zwef!prtcCA>2X&N#I=WdP)@v)Z*Dl%_*Li`&jlVfN z%p{QNLoWQBZK;|+)=MUL%?6fxLbzD$!T?mo56BIh_T1sVBuwo8eAVUAfdJco9TmKQ z^@!39Z*R)%!a^K|M<@=taajn0f4`Om$aSQVYU^Ny->j~o0q??XIFn4^(Sk%5-ZT$W zz&>zBw6wHib=tfgAWlk{R2RuqCfZ_80@}_Dggz`IzJ3`Q@@OnlFdh;Ozpi!bs`r<^ ztj2-^WDZTd2#Kft@44f zj)6>qjzSCQP>3!|#Go#y|3zRkf+5#_JL&~f;UD44bx{1^6UDDLltsw>IE}-bLA;oN zC?y#7h`g~(9rfDn@>>x0sV%L_A8V?kl>-a?n6?TC(84>ziLu8dC28r*c9IFc%SXUm z5ce(73-N2_MGbDQTj>KuUDF&Y5E-%wHA9*zG^y6H7T{`s%)lo2i`|}!yCG&VQJiO5 zoyPm(LhQzGk)m$;1?^V}lq55R+xT?|p>Erv5PpXcYqEewA-qPj1LYu6a~*k{1l z#6DR3Q7B}iF7Ck(n;hcxM2U9O)3$+yl}gbEr%boEWe%j|++qN%1v!Bv@A zS&8?W+xq450V)U)1~a(0g{c&8{Qlwa1bDzZ;QF|THFaugACTp>v7dXxT>Ja`0bz;v zpG4u`haM5BKzORM&a2o9U_rQMmrV-?J`rNDS#ZLe6e>c3P;$sz;_M~#RG%F!~a zcvn_G-jyA_-chg$Ax1oA<;PE)ATb3Frqpub%^R_Uk9V{D>+}UWya}Zg>N4loFZ~YA zP%7)PUF?a?81;uBXGW9lgB$3CBpjcr3Qsa&AXl1dIN>~)n8D{G$?4UYbiQJ_i3f zJ`SABRlOblcn?IdhQ7?nNe94;uts;p1x!)$mj)44vU66nZ0$$JLG|5+=0i$K__fnzS2|`u{lmlj9o`x>A_c=SvO6XMXLMb+)OR6JP{*BZJSbs$hZ_%}dJx|)gBdLM1z_raViB-!f#}F!nzy^oj0DxFEHGfY#$eAI z?J=!Sd>Qnc#Jpkfw912hhK^qn&VsCYSCGS-6&>ivZjm!*IEZlplP&fJJa|$%NTtrS zW1hGHeTgVAK&|eeu87JSDypoBmS z+=vcOyxV}eL>DHTCn%Da8@7S3Tn)|!Nv#IS^U#lZL`yAb6hb``Mku_ur-zUt`;Qzc zAxIRo4E*`5ShPYQw7Z+GYu)9zK}cWRzVp&tFNQuJva+Ny6?z3*HNfhnU!x7kgFl5vy@UW7(xopFT;K96@cJiGjR`ft_-P zodZg$FD8L!DB$FUU^EDZm#!1JqzRJ*4F#eis#^&<9}$KK$As-R`H%`jz|Oe6m1YUMDk_emSccz!I#w&W+moLn|wcf*iGycU{cR~ zbl479G5+_$QxP;r=ljZh%l<(K-SFgorb;wr!h9-6gwr z@DRLfn0ShaD+4xK$|s~zEgWq`z$71q`PHia)PV!*ApVhDF(#g_-)PVsDJ47_*o6ln zbsfet7(O=x>OKG%{m-V~t=!we`F(X6#NUr@nI!U_&N^UMmmEo{7L z79q^){vd_uU~4@bt#m1#c=3se7n8HuwsTN5DSR+ITW!m7nfO~r)rVO?SXc`?%(#~l zzw~RyX$5J*U()MR>w5IIIfMI4MIXu**ro< zUG-f`WQ&^pi;%VaK0rCoQEM+kTNUm)qN|&xxD;yT5(6nCZMKE_NvW~MlxJed*jh!S zy6Qf)x7z+Vb#x3O_Fmxc69&2N`tHbZl8Xf;CEAdv_tEiddV1#8UVg9DjICjYgb{&x z;>*!=?DU~g!$4XksH^H%TXU|>rFTo1A{6so4-$ zEhnD~_)i5vfJhS*7Mb4GXbQRUKGaHSEJIjCKVD#E>|w z-g@OOjO?LNgOjZ)K00@~hX>taQ?o?Q5%KNRhcGG~#e{Scz?@@%keZUcJLevX2ny06 zEyCom>B&@{$Rwk@;C8R&EfnI0Ye+i(#{~bZ4Gh(_ z#o230GcESMsi1lIwr*Vkl&~X>7eD8_EFmUVM7AjbM}XUSq)dM}u8w>QuA~h4qVC@BqX!KO`8`$Pa*_(axP~7bm|QLFzH9UjSG_ zu-;-WI4Xf}!Ilw}7vIKYF*G1e^l^svH_)rG$DO8pzPB6mmy@39iL5N^%AY>YOr)OEtU&uV@EcP&Z+)H!zIro}HS>+J0pb zQ$p_2A^ZAlr3)SE7YckjmwSFGB*9wiuos=1kPi$Tl7wsnN4^8Y77Yc#>#NIk>HS&a zBfwvPHvUULLwuU z1QuRiTL%NU=D4xYh>kZMb|+xK)N*im*TKy%6ya2zShIkUlaO6t7d!50^GI>#VWj^$ z&I+>QPUI(n$T4&Rvg7VdhRqg`jX_|P+3?2mVI#RT`}0IS{@;hVfyoRA{_`$i*H(z| zq@lt++waZtJ&7-wIawurb#HL1_W|*}FE@Tq8(G=IyLq()?~#4;PmR8BQ{FC7)uOJ0 zx%JS%F2E+W@m&!Kn5cl_uycV3s~EyC%M@cUT@8&sE;&sVX-lS4Locc$N;T&pAKmhb zio$cYIRyA^RaS28Yh&#BTnn3yBC*396$D_HBxNtFx5dCMKo{qXjW7 zZQOC{L1N^+d&Vbvz&cBz9cIt8xxs|XNSCCZI z(+jWTb)1@6y#OWr8a4{T15ju$B;gSbM+Hb?XXnxhsaepW*v)vaj4C*3UsfN<7XZU zP~H9B_RHTvUmrcK$Va9SQUes$ZS-m~OZI(v$%J9C>RX=MOj2><-XmVw58SMg3wJRC zJP5b2u-Gag!9@0dx2zDBl48NArU5akE`^58i1rNK4LER3pp2R?K*PU*i5y%!XHTKs z_Bk$s9I@#~1564f+!lpEGac-x0xX(JR!HXN3|slfLc5^kyTj!4uP5wa`gRZHrsbuX zJou0IlqH`cy?jv7wDEP?AJp85HoRdOp2EXO~MeDdUc2h$!%qS|l}KsPqt%{qdZ zJCp4!C1>@WFh?W=g}t%~#2Oz+NaiYs+vz4$IEv&zTnq6rYier~PZUw-vt1@&K{uX0 zC#k4V#3o*tyl&lcB$wxrQjzmTq_T% z`rV*;^GtK7kS;;Juz?fhe-m+fqcAkYSEFeg+cD*$E5vy-Avg-j0rqy;{iu-monH% zG7f2+uqxTMQ3xn7buUlr>8(sWb;WKvFC-+S%Hjr8bXcZKT|duK?WhKu^e&gZou#3O zzV{jIO=TO_CSDdo+JQ|YlEIUN1OkU_Kb=fV)oE5nDwWDTMI}N8U1!M?(?w z#cCLQbXW_oomA5_@#x|`-FWv-w$LYMa^)N-08MpuTH+kk(8nsn30@hTh^9~W2!rpn z9Te z_A;BuE@3}1**K~dh5eDA0Fnq7Q#viv`ugM!Ozo6yOSN!ggn;rfMm}E;!93IQCGXN< z*SS=YhJodCi`WOX)^6l+*Sy|+a4H*+)&)2tz)CMVBH}i{G3Qe2)4eN5gWDz+-upWh ziXe!;4`uQ!sAJHgx2b$-&QA2r4u8zb~-<@jVdinj2ZpUp@{e529#FJ!d zf8P?U0p}Yw1V;pUqUr~`u&dYj;Mw|JI2ck6fDmnE6lJok1wFgA~VxP2=gIrVp-D zqVLX%t57FT5W5IDt>ch&HuhQrr34qJ`B9!eeM)I+YSLoTjz6i&p_nKs`sLE9%U_vJ zz2ik{_<}(qK8M-sH`@^Tw_xflY;0u5-^hilPE^Y5*U`zxo&*Ln=pHDYg!`(+I>uf1 zW#GI?dI3?WP~C~ZndY&UiAfvg8Df1&<9&)9cXejT-kmZ-2fTh|3F?H75tkI`Ix_9v z{hSVsUukiyaAWS`#-odVQvjzN!TI$#`Q{RbMvRKbTewuycx5N2tRhfDQB0naA+FJ4 zC)4}0LF6O>6!t$GsD8nN_6bJ8@!75r?%Y+_UVsX~vSka|>QC908?IlroNif13jk4w z54LfLiNGl+&thb7eOG{CMqh;wG0NloG^@; z5<)%CtEG7pPrPJ)@$%SN@uT_Mi#<$ic76b-QJBLpiFm$+ejjFgp7QIFh7#T%*-}vV z;th5Ky~W86Py)DH*^_0d1?t#--kO;nJmdM+!q60r^)Z6B6LUC+yv=5Ko3H!^tCbHD zp<-&jY&&U(A-p9-bM-J{$U)9=kkE!-@b1VBa^OHGI8In!pqi(tr)_L@ayhP5AO4*GVZPD2P+9G={CcgpoqK&3bV`Nf)vbThE9T+9|Lgm5jP=d5>kuC`ry|i1{ z*ZKv?9XsgZ>4xQH4cT{zdwArL+x>y){to?8)T*7jxt~czCUZF%Z?Iv{7vHOby|T|^QG~Z`!2qyfqnj9N()#c9~JTirmt_9x?v8-bD!|^*x zs57@gim~9xmc5`~i9HXZ1lhSowof=HZo&4QE{Q`4U!hv9z)#8R?{Co6(b)^gRH@>mDp@ln1A)@5 z)bZ~<8?)N&kGu88eWFH%O%Fx+4L7eCYcw+Sb@P_BG4S4bKI!L>zRO{`ZDsY38|n>S zyd#wnrz{Y_Nw(<0u1A0$+#&11HZoYly0{)@* zUp8t^#2@?G4uqTb?+QXaK|8$(K{7De<@$9wa64VK5^8;_k0_sjDel6HLk>>B!mfc2 ze;n9{4~Bo@*lKY56>*wK9`Ig-d7QDU-h+MquuycN^2oV|^?<7_2Fw}%w1SCGMTG}C zMm{8sYoIO3|xUenOXbt2rn@~gZ?E$sMM8jVsW-R`%CnHr=8ZBcNxPb zHu|TtJpSm$M0q3P0#=Sd(({2O!W7UKP~PlEuBko z%&!qpor$*M?D<`82U3O{#{#uTfY_MO2Z?*AM2C9#h_%ETU6*M=WgU)xBP-GW- zh}VeXkG9p+V*7_Y^(DILIhec+pcWoNI|xMiBD>>=?~;fh8ac4a(NQjfR`pFqB|Jo= zF3@*I#4U;t^~dLM{z@c{(zgr8>XDfIC@54}cH<4vyI&8=eCJdGrVffeCYY zK>=NK1DSs;;awvJt$4$nk9|MhCy>r{@N*(>FN*b{=r6pi^JGUbIkyBXODC$ia92oB z(0i=8wG{#J+e+z@9>_h2Z89kMmD~B(Sy6gEb$ct1}ZM>LI%l|nEBDUT>3t%?tNppnfA!Q|{BEa%W6$uRCc+C zZw{j8>kb9C%?q_t5UP?*N;QhqZE#6-yzRrr!;JHuJH5B<>sPXm!fdnwbHh=wQBU1N zhjzJNJtcZXXCzw0Ntj)&MfG1d(d>X?#M%srWQu(o7U z)R%>`S8mGm0r|a`?gluIMF@ptXBig=2L$|zZA+JJ;g2Dwdr*oaIri`0{|Q`I2pU-@ zZjExs_PGAH#$FwLz|}%B8f(1a}}j zaIBN!M{dlWf-==Q5Lsa^qtByJ-^q{aikWy*j8U3-P+eYC>um7j67VZT%xXwH#}1K@ zEb8V~A^ooquQ9?qILPCt_nSWsgK+@}cGFI%wVg;+U$`w4{(J^L24CHu$)?2r_4U6$ z(~?~Trzx`g`)~Fgy#aK%7Iqg=e^&8-oiYx2F3xQ2-%{e^OY@ca1?(QfszZUMd;RJW z=vGZQ0VDn~3MdYv9BIoLgmLCxSUK4Pwde^Kii0Y!CH}!y`#m3b;FK$VA8)NVavWH1 zD?X~Aux<;V-ATA5P-)2)n04#cF>`Rhc+RvxRBuEM+7t9Wv!NIEe*&V?Uh{8eS|m5@ zylPjkO4ev@6^LEX3KfKOw*u>W3)h8VLR6M_Rm<{!q<~7;mH1b#qo+rUAY0FH7+QJl z9yo2}!2!JX1`$k*7@VA(sgE7O2|nu+vJd~)n^sy0;SlG->E2JrI~Q9Ex(K)ey%ZMF zs&yH?BYC4yy+2%nOHHHgdtF>y_+@3;Zrr$$`W^>nj@%*!Dje5|lhTkRAR5kfT#=}W zQROWwE0dn8{%^xsSoflI9d=RbHt$7 zp8(!ct^H3zFtMwZ3X!d-v)JiLb`3t>eT^2Tem3GKfpH>jihkX?qnOyUvDF10j#D2p z{=~Tr+>0d4?UV_r6B!xl2UfsjX>pFgSuQy%e~?SDNDfT9a#@EoHCK`Y9LR)$m|HjV zfIM%@+CN4}P0b|O`MM`D+&%qz83#vM>x}^HfzI3=f0}&Oq;3A(HgebZu3#M$asa)^ z8HPZEpMh0yp2#>3NbJPK@)=scX~p(!+x~#VKb|H3iDQ3~u~87hV%(m+riVZhgIgO1 z>f4Kx6W~l%hk=C*U}P7EnGH8&b_^yLVAe7F_UIpLt=aJ>qMH)Q|uS613j9~7FvEA(U4+}RCnfgC>s zSrqIDaaNl+J|bsoK_RNUoP)lLBw`4`v`J4n}K5v~YPDdsffnc`AdTzXns3P}X5`F&ppy+#ycYwp)wB4(ygOyNFrw zV7U+TOv<0Fa|??5fBxtHqVBEZvd+5h;R{ee z5eXGgN=ib?qQeo8QV@#<5fK$>kS^(#RzXlgK@b$AQvpdqP^7!1yW!pELdThV>VAID zJb%3WG2_R$u5X;P&)RFRy*4bmc4Qs;^XLEHfBfL{=R28*UxxKY07v9Wa1e%#t8kB@md=3x*fD|JyNi24|rCC-fkp4**>O zD(H6}fm#w$-XOvbC;}!HmYpcMMqQ^sQM*fH1=gtnKaPL&)@&hFKLcRB;gvc+2L5~p zV%Z@#^le8ikdO_Yfl40^25?vfppIk4T_TPxAV_6o%r{k#L+^3G7S3HWTj;rFyEoP4 z56LP93Op4iJta86U^eyf?cBK&oGbY_=0H3PI~exqlz|fpft4F3KR#la7_J0~MIo&N zAhIV@jTnd=Q2Qf1NRjOgl^plj{(_RbF4i0i0WF6aw)S zxzs?`KzimWsQZ!Dloy)pAQPkoj{9WmP2}7JPBXGA5Xp$47pApBPvL(SnnE9js6_>4 z*-=H)RX@oOH~Y4y?WF&8h$qJZAF?M6cdlBw=VRsIzlJL$Z5J#=l0E3|1iTjY>@MgB zmLWPq_BDDun+po-K#-7v7!Z=AYv7OwW|{Zp^lTUS&GkE)k}gR%@Q;8f?;4a6d~OIb zZUfN_{o~(7>_e?g;1&c&#Ci!k93HRA6x247tj{Jmml9#b|(|29_(i9Sk+V2N4SFs&C2Z5q3rc9(g*P7yisM^tZ`n7&_m5NMH3rm29zw9V zC4PY3(|7K0fYBl9)-8+ZukIFxZ<`ZqFpxRM2Z465m>Z-^I*X6|vR(Mx#kU0b5evbpK z6Y!&4A(&J!JA1`?e1%US{167mxFDTvw?T0#u}q0~2F``#op054jcqDZi*t(J=kBNb z@aFQ^VAk7b^~o~S0o54^#0EC#PYINtn~)(Kvv~kr8xJ%`0EzuRR?3(2E6`qmt0Pa| zz7H1Y{hRmv&~x29CBPcijP4q~^vMH^4Cw=t^}86%>C^X9WpFVx^2De6#-DrSeXTaU zEfJ#}#77gRFHik-HXs528a%s#lOtOcW9WlA!d4;~zDMXz*5O8nXIF{hj>~d5hQ?nd z%CO`LJKE`SbWv3soeuNHB|kYl{zxTFA~TLG`2|_r27j~Zo-Lla`A@&F?0V}}`|joFi#?XF!rB`> z#L^fI1vu)%`BDZmy=sqjoJ375m7OzmAhSn5@oeYf6Q_oD zcCGP|hX$q5d1eD)+4L-P1600^HecIbvnbY?b_W7hWn|3#@r9Ki2L_X;TjmT+I8R~j zWIA6xs?)i3r{6O{`jcKqsa`mdb$^(YlFFK;;b~ljsLU=8QOm)~WEt^!8#6yhLDkz{ zhqEr_4Au$f9Ct^(4U){%KOS%HBR%!^=wpQ#eoHOid}H{8|Fk`K>VhK~caDq(*HEV(-=?_~0FTuOG= z91Om^{vbb9IJ4Ks;hwuGs4U2;+)>v9`Z0PAkNmA#e=)Z~X0Ybqnf>AesbdO;IoD$} zbvn>rF#B=b2Spx)eHqJS{xo=ph^Pgu0xm}L*LPOglLv#D;rC*x2YY^@Zh!qEmB!}4 zsHd1>z#FzF*cCfKm)&8r8X1TEW*4Y5p$E%oc0#O6h(_bleRT71xeF5JC=f(eQySMw zU)(z3Auie8hJA`hjm71Ls*X`4%%x=N$VW%@7t!1N{?hiT=OyhuvbXkrVD?^{6^;xi zUOr`oftM+?!>o<#Z%iCIk5ej*uc-FM5&?i&1JsO;ak8L&b`zy%Ti&X_Cy@_)T9e~x z`rB6<$))|{Wol(xLM>BKRTJBAUxkr6$C#LvEn6UiT(i4L#NS zx$nbP%w_-aZUv9QE4+yJKp>wTUh8RA<`EwsV>ZL2_2pJfY1Y?o;oJnwgfjOspIK;0 ztv;&{(dCpIZf*3)6v?f4CE2wha`WeQCr2A;WBSMlx_3$NfqF#&0h1_Gt>rSeY&l6n z+XbO|)i#rIG4qb08i?YRqR?&<6%D0psN5*Q5QF9AW#~u6e<*4PEUli=5>z5lF%dcu zfk61>`gKMK?g&9!kHLdEJxRl>&-0=o+mm5Vv@`^b<_6&k2BNW1 z7!070{DFYp-WkbDAuBCK-Fi@%@@=OPu_lFZTaFyRzkOi`0sk&`c6RGtcgp?ag6JLO z5=qy|vJifcA*8gA@WPmTMxVLLrEAc2vJsH9slc;m-j&~eK`4!J zu@pp7ya1h~R?ng5IawZL-k7Uff4#4SbJ=>##6)j5?5)yV3+*o?AInF&lsUukUgsKB z&6ZQo1%27_>x9Rl+~pWri+yLR2Blz3Uh(QOdS}*n7U*)yjp1_afLKRnn!p3&Vjzq0 zfJ6?-t|_u_H>c8qK`geD1>D0>9S5kgnc5TeY)yvn?-|XQfM3Z?E3iL6k(%baYwF|& zI4pxA(vEY8o8qeEkXF_lb>!3_Joj+gNe{h_vK>Jo0B4aAGkE)C zBLs;i`b~@%z)mED^aYvboI4ojh`?oVVhH`uG7Xzlg8}3Vl|SvaJ9)^zZ|@S}QzjZKyEZeb#OYQ7!H@U`LiX^Wt$O`!mHu!@rZDUqmLJdn&KK3aEIgV_{)~vTW zT#A#XM}vl!b&n_{UOpo!O$j}+3?ibwTkYuyq`A4XMcvTmcBHQPVTDM=kK~NmEi8YL zOt1xBU;v=;h^7j?nPn~v+++cDaf`s>^PZT4}SI!wPRZ;fH>{XsC@F#L+Xn#e z!D@iDu1Nld9RBk^0-O5)L=MQqsv0@?A-M!(E{OkYeGV0QK=mF@pm~aeDFZ%5zbuV3 z;DI;F1?E3ZjiG!G+M_-Kg@XY0GJ&o-IXyou-S3qz;P8&bU24mUMOTsJNvm1d<@IBV ztjx)l=WFaREjri`m_lE^eXg~)u?Z_~ns#rA=nLNDY@%&i+Z}$6Z%ga~ov2o{3oTJC zmq!=9&v4-i&aeS=Y`UKKPTeBCK}2LEQCRizg)7NTpGG;m6YCoJFxPH>gaQf?5LjnP z&>mns{Ydb(>YUQ6t7ouqCAfhvyxN`3vE`z203T3f;RvtLENvX*hhQSeik=^k0j1zo zG6Tw;9_U>_!b}QI6=$dxeZ8O$R0WlgMPdUVC~tp($qw*xJ&_+NJNqtFFa-fF?Xf-R zd(CtLqC(_IZ;?H6z4BR+LFhOEhiu7b34*X2xgvQ=d+FZ3F&Z_KCBK*br;$54gXTo| zw}43psjo}a@M*!{Geuzcc^y_Qkgpz)eTka+d?1r>M>6FL!_WsrC7 z^#_1+G;El&!Y?5YMUJRHg{-ozU^T?6^WJT(`51a6tIa)8pK^zU6iXo%X|25`uHmm%2ILL&6;LM zP3i~E`}AKmb7^w-_$yOLwKjP){t-8jqrD^0MsrKr|rCieApTnvAM)2G?#DAiJT|ZEhr1a2fmR;7iBTs`lBc%DO-?{RAg=ZoA zeiFXx54bU`(mY)E16f7l=JQc_yqCoa2!3FgNa01!@6ZQw5R@83$uCL4X7QVJD8DX< zi5v^()ZPZ#EuHX;2PdSfw&4p(sY1*<_JVx@I~lg2&)2y1u<9}_VRRlD>_h3>n(sghH~O{s*?;x5MH@^K9?DkH9eE&SkL zq5zs>F$^msOEGSo4aen}j5c1Yzx8V*42$0vO{exO*n*-aj{3HwMZBS?E`*!$bmn%n;%EzmeJ^z*07f$@K^9CG@O-I)^8$YR;U zL!7q*9)s08D6st%@Atls55li27+eNIw<<@=c0V*_Ky=8YjjX!v$(}eMv8(&&bL7 zlpBJt&4uKvT&4XmPa(%)jSr~E)NA!vP_HRqroi#bQ>hz!ubvlo-_GY1NoX$z56+I9 z6}0~J0bw>-Y?Syz28WHr+t2b#Hw`59m73FZP^Lh|l@ygXxM*-3SS5ZZ8G#!r8R8S$ zT-HT+3{dCNn-}P94y4iuvOf8DB9>1@V&U2YxR581qepciQ#f!y02mEMeiF$|*FiQ) zC1U;he7iQdF@xxV3-r_4Hw(cg6ZH~pJ^@klGe_*BU%P-sbwa7#ddt>pI2a(GZW>>> zo754Vw>m2-JxL`xRckXiDm{vgn_8-dEst57bHZv-Og<2(WVgtG-hPmzs?`LO87>HR z1fgrx59zZ3sg;BH@fdjYA-W8DqON8;L5nf!2=4{thI9+%w$KP$hBSiJ&|Y;LnJV1c zlO+eLC6G?-uQHR|c2&@?zwzBFp*BMrj1pk#!7dPXK?`!ZS!WQr`9=A;h7V*DO5$%x z?;LpAghQFO(qmL~$gxY!&2vDNli+TediuJ?>aH&&hDLt_2#(UlnT<=x+YAP66QCU3 z9|l8%ZM$AMb)Uepl1Vq{hT{fI?pIcUwU#&7AeAKE1;r>MOmO&?1;#_*r+WcVdBdH~ z|E$!6=1(p9{8Oc78(?!V$U{`|QWqbm;EFqWhGo?4h3C~o<|pN_P!EyO-d2a>J@`xK z-<*~3UIZ7PB@}dQbQ76cM|1|}ECz-e(c6Re3cwIJlFCC(Udr1a_cTM+Ej^EBzs{XU4o%aa_OatfOuK!H=^0o@RP7 zal+gmNE?>fsKJM(<+_&x9B#22!-1_O1l~7MT7t!|W#XeCIYWkY-S%_Ds3{qem+SBD z??e-Eh%F%`d4L??@!d5L1fY?FsNpSG^9Ty={QV<>Norh(O1YEyI!Pnghh7e7h3Jg8 z!21m42pS1iK;3a*9GkNPa|(7sJcv0(HlEPZ{tjisps<&C0?BD_BTN4Y#qa&GpR>i$ zZF^Ps!53UT`V31LRXsOj_?s{IL4Sg#F9^7MP?;k?=8>TwFqU`+>N5Wimt5bE`hHZ@->pY!KXt@O$3xP)&0Y%%{+i{TM@(cWV0RJy+ocEA zYE8{M0;sZ!qTrR@{sCspu9NRjlN`F%G=Iq}pw>l>d>YZws@#D_p{@jmDe8F|!ES#= zKm7KY!ADq39Sv|4W&zHd0Su0?tG&|uBds09K7yO?D%3q)k6uDI_#1}$4UO|hOZjk~ zu7`o~oBHEMkY&s+#@*OX{MD$l2C4*&5`OM;HtFcVY=x{PDcGp$KY$~A&tx*NJBVi5 zCZwBRv&Hi86slZLf;;_PJGPJBhw^gv@IkL_*PFWNUmcG0Nu+D_WyDrDSpTJ%nL!f= zF_+P5Yv~M4m)=ro=kFu`t#$k#smHzth_&|4i0p$z%;L=b)Wl`{((vlQ7-HVL2Cs}p zXZ!L4{)*c~8FH$%U-cW3CxcX?;fI`o2A*zwDi1Z8^aIBCv88Oufq^e~Tmbl9NOnJu zXzU9wA)ZDh5G#+LsQ74_|1D<$@sNwZ68wLI+W9LcUiN>Dfb+f;iDIxn3g_;h_N}Bz zdF;5mAxIDy?PxloMCKY`u*{~P`Xc}v{5t<1BKQbr#Vz;@lx#H^S3!Wi{;Ss(E1%W4 z>N%Q+JAYO@epa}A%FQr*&0MNQ*1BTBt1)lT_f)qB25-|U28J!ctiw5B)!!io9A)rY zAlJ9)Qt|d0(f;)o;0x!Wc%`u)0R9>wBP+BMF{2(o2uTdcqYZ50%Oj18*e!&flpDe^ z&4hU<0z$Hz=BeOuiE%p{7oWTf~C`N=S z^gGg_0Yp$TJZadrADU9%L2nr{GyxX(c($nd&>m>`Bi>3?iu6lNsf+4Gv9))r;ols<;%9#Hy3s&x<+Zx`uTlaQn;LuGG^R`!jR-1&Wp^lcpo zU;d%`bd}?K_Bz<&3CX)!$Tm<;*HSv-Gn^1@H3oVkkO^F>5&@^U1_Za#fQ|*f2M)+h z^w}a$=JUU~1s;BWN{+A@c3O~73O#WM2?zNGBN#jP&25VcIF#wJ z>1QE3mS=YOmx^wPLE1)R2LcgmNf}=vrqFncFO0&gw`5x+dBi$}Y>IbIw_faD21;dtI!Sj zqZ-@u3#j%N>qMZ13po`0{JXeq#HZqxY8pEz5A1#j0pL3}55SRolTw~DY#&*W?>@;J z;olEaCC(EtZuAYO^Z=5MBbm^5zeeae61XlVG21XDzDqS$FZ683s!lelpK-{tiip02 z1eY^hn!nL&M5Y}|!V&S4e^Xc3MopR!Qw`{cCbzTz<&Qf8+>h624_oS;gbH0fNR+>8 zfBud}qh3?{?^#u#ezq6z+|UjOC+l2 zup#>Y*A*&gwAKbduo;b48#~c0caZ@1Y z_|BRvw_c4ro^PH**C8{YsKIH`fHR@be?{h-(}#aN6VUs~B=PpD%=`iLE4}^4tPYBG zIbtyM#!p(QXVo~eU!)e z)X<2!{-;$?lQMgcfw*ob@^r}>HvgQ3QX@qDUJh2Uw!P&p*Qm-FXcSM@5R?TeBe!fP z_5%J62;}u0vlZ`dHv0hs``W~>X9h%(SjE)m*a6w~&v~jW=GvQ|3JRX0iM$)wvg99? z8NWLu)>ewLVCnLNNl6Zzxg0QwLEw>$EbRPWD=BFBD>P?7GZQrS-z6CzO_l9IH!~pg zvl7Pq|Eg~I2{T|xb=5DO+W6Q2%jy)CcZKe3@NxuWfsOsmY1-20%m8a*q)LAv=S1J+ z2SrWf00#uoL4Z`YTf$h5#i-(65jp%!-XIJW#!MM}zhedC?_v<(xRGlR3^v&TYG~;T z7f3;MQQg4@ji*Qsf-FqIql4{>F52B@{HTv4NK31zdi=dt(YoYgaS%Mz?A!<5&4<0B zG=Sxnyna1aNfmr4%VEICE2DO>t(k#VeP5V814k01F{^Jv2W$1A71)`S_4834t9x~`bI?6fN9ZA%zX<5|e;w|Ss@x+C3YfWH6my6ZscKZ&JL)vW!mHGZ{ z_`SfSkcDJd>ePC}RpOItF{sA7%?`nF`DD=HJj-a={fJGFK+Q#QgZC}yz`>vDb0nZs z0Fw=1_XCYGVC;e@NLWHyIUk{E8I9QmBW8L!x-8lu&=|0>vGJ}83k&DJcfk6yEEiDYiC#0{K?{hA2lmPDoFV zEI{K8vX%n8599wDhoWEv0ueNXA7`J!c7Tf>J&CWL5Fh^(1ogia&*s^6xkwcE%{(;n z8Qid$^@_E@OfQXgci7S+SuH4?57d}hfe4xFqqNH=8|Q4<$M&7@zvH&gUlZP}vBW*X z*>s9a5$97WmibZ<_xY|}$yB-*z20B6g-X)Do`zpkyP9|VIzy4*X+@3AbN?zfmW2ZK zdi@Sj(DGsl=DousX-`R2_fb$B!OmAohX?8ltz#Jr;0Viw0c$%$Ynk91Z0&`1*{u`M zY4k&pld`Nl-?4HuFrXUS)bP1;j&5w(Pr!OS^*Twy++Mo;vBk9q;MZIszqeA_TQDhM zCDDy@=7IZIojQlH&QRMzR@SrPdxfI^l=5ybj0wbi*(f}&lE2naybIdGzQg+J#B)$i zdGYztD|#5*34RGwVGdw|hq`QMVCXLDZoHWdevJ2_=cRQRA+V9|^Vq8y`Iiq>p_;YF zf!QnF`+zgt^BbWDauGyKfz$d70TOzYl}SoGL4(Dhy&uMT>;l&#=zX~P1+w*1Fn!qY zB9>daL4-v7i6Yxb4tPa|fX&^zH^dhw#l>EJtE1l0IvdHGT>CJ2BmNu=*sy~y0TGzTVy{g6OP!I3c17VQv^6_SAR&BrIH zE|!dtVo2W4~D$SL`((`UFvz#76yrjqi9cJ-D4qsrkX~Z1u-?C>f_4n>;5)^5=WYj%65q z{g^kQ1RTrgJL2zuIdX1or&+pM&l1t4iHrDJd8?nE=tqb}3EYIgs+ukO4az5?IXFnT zg6EU=(bMPr)U^s9v&(mF35xh)nj{z*zlAxMN-Eg4z32G!~C5PYIiC_>Mr z1-9%hnSb-7UD^0{>H9}b$CjQ6r=|6eM7@Zm=(K5A~HoM5i8m^H+(k)z6P+ew%C_ z*gx|$%1_%(>r$DkSyN}4l)d8Hf|&X?4&M;EZ;kq3mmkGY?qY*L3|DC4$Ddpu5m*|K>7{^I(lRXOsZZiMZ{OD;+O7b|<;ZOwMrAE)$MRYZmfy}a1& z*%Ko5QR_vgyI1#rWGnGn-$TgIBWDJU#$>w3VQn0)Yal0E;K^2xO=UP>lzp;^Te2r1 znWWR^-e{>e=#Nt(ErpXOuL+ZpEfDi>-_ojX#`}=*cOAqTyrZe!Y{lA@xV;cId&>L}6TVAAO#3miTs$v+^lfLp%@=JMnt;&%rsc5As<351@sNXa- zeUrs`bT$R`6^=(g8nJ0US0Fpt>U6eU-l{8lL!W$;=6HRp%~g&12SVF{cD8VKAk|D2 zmK(Q@jAF2Mo*UVlLf+=1M02&Y?S-0N>}X^1M4RrIyZj|qxc(e{!|dheS4{QX<{!Mx zFP95i^wH1~j;Ym*2`6;qOH>yMlW*D{X_!l?{PL(`Oey^kL}0WP8PkvLa@ja_`{7oP z%6OWrE5lB|fD#EarcC9g=k8t96D^YyE-wPS9zv}9`@ON(&C>9^Dj!9?ATGRaTKeym zmmB6r*^-(P934itUut^&=ju?1%JcSO6T+^I2Iqc*xo6iu3%9(9r8yAU<&ySMe*yAU z+rcHGfg716Q&EVeA7gLw*n-eauJ71cgYyW(JQg%&cdel{|TE z`rzRkc7Y3#ot>Y#`<@8(4JCNZF85TWoQ zkGPI|?S|;rn}gb$Qsz71w7F!LOcHb1(Px%l%l$X8p3^#5G~7Qq{q63GWX02RyIRSX z%Lji3K^SR=lk#=DM zF_He&3UoXb1;m+0`>0tAOO2JDi>}VI9BkFA6EF>UDc}i50-la0^s$e?IheHs4(r!J zD2t2@FxQ|Je7T=~%M1FEy{6bXIL<&b}mt& zJfXv^!y3Y54bIHoca2tN2WO9JulS^-riNdXTY*vM)u6gWTdZ&#s?LjF@O=cvQ z`8+jaTS)FaZ(DdQFgFe4C7F7vLHbhP(NNu5XYodMfs9{J$c*o&WPwqJl{r=QLD;#g zgO(r5B4gA-q7$?u$A+dwAp zj?=F6k`BhujHwVM;1Uq97lAIwi44kg+uPe4y1M9A^OBNetH3`W|D~_F$Ab0sIPAG~ zv&#B@Dq9gvzSA1MP@C`>!}lyESxp4mk@by%!%#MCG(CT4)b{e3Yfk464T%d-tQj<3 zlfj8&ntsqBGjS#J_Oqq4!dZ59JxNTA&&4c;%TEMc!>*%8qfBbi-|{R6ez%T{HHkFt zO?8vh#?UVpdyrYeVAA0JF|kmQ^0Ft6`@A-=)x2(J>+-e|POn_CTx zXiO?Jkc=%9I<2*Ln}CJQ`XGMS8!>@h1T4?cH>aDLe10jw~B!w@0}T0(NmF< z+6nf7Pg!bw;8+KTr+ocyb$0z9vrShH^k?3XEiKXR?r?p!dG0i!4117;7CFB51E0Bz zqEwF`?d>&l4_I()+o5ehAi^%ISw!h8F*V_JkWc2JHg{I+#bB&CtyUT(w0XCg?F$MpXq0J=EAb~~+$C{wU7+)u$NFr9Cg!l) zo_0EgcwM_JWelOX;zTfIw*c-oR!I%)n)}k+xrJ5=9KOf(Er#Jyj?|6S3o^NtDRbX0 z4U1D;YD-f+aLP%3WQ=u_<|Rd%bk!X=xZ0^0Sd%0f)YmZtXiqBdCI6Tym*z;$R@O?uD4-Mi(9(WX15IO920T%qd;# zMP2|bBc}Qu5R9uEIig+~@1dQ`$k*5T(7lx+ufDW2p`sK}P5JVg#k{>qJSi@K5US57 zEkt))_mbac+gvm)m~Zp?q`ijg zEMNJ0qOZoVt3+FU$?dQ*Ly6P?N`LY}iRJCy@HQ9Jod3hp@&Q0>>iF>8Iwwrw~`8{+jR$S8apJaG%Q=96mYb1-H-6K626@X(9{hF8RnDqeiO+i6;7L~_6P z_EN$n@1K1PZ3e&WA39aa!Ym?-ufb?$r(<+t_c=O%5`+iM0kZWSl;%~G;>w$=ohRc` zwCog`g>@7qAbllD0y4Q&1JOX9M_S$4P8e@5nt*y(I7hj;Kgdm+ z$2w3%SR~HPYrLx3pz+^?c%frz_5Bb58I7DDOl&M>7o!n%$li}e+>r*^lTT!|PtV0{ ziCENvFcZw=a@7TiOG`kWJDpv;K@1jARHC*g(a;WbUSAD8EqSuXJ%22A?xsY%@bUY3 z-H(*k+N6i>YnBiUo)Q%!H<4$q zQwT+b-@Hjl$ueTn^g__mi9i=IG7w~<124#Wi)Lyy$NEd8C0^f|OZewB zldbubxdSN~%Qjk6Dkkc(B)grVv*^_2XSifo(Xb>g(P+bM5w*}?JIrOmVp({C$(q%D z-g8TbYgB~ajl`Ms!H0-^w&SzXw{3z&$>^=SR$7@09pbN^e7VXH>oV5$!c0kx`}J6r zL(b&l3~&zk+3N47C|l;uZni8Ew;#vBp-J?2yt{PI`$orxwc|f?4!Nn1#&iKt8QmvU zdJhN{lCs-y#qXMjN{8qpqV1knM0niTb9S<bgy(&D-JdhY2s~84u+!?|__9XVX>pP4N+8kNvztxK{6_?xeju zPgKa?_NKEPFHn>67y#wJ&kqLkZl(r8BD9{!$tY)?I^v0{)C)1yjW6jU=`kj&b0^S+ zJv6DgGR!Jkq9g|-r{!AhmxY$9Sad|;P5-;-a zI2Bc^VO?)8a@y_8^5Tnc)TLsL5>Ll8$=?aH=h5_&-xBYnTWxD@Yv_Mi2hV48_Q71& z@AKG(euhz@HF#$qrzk6{?znXGoXeCyXg&H(!YW#G)uitszG!Al%>CBZpdnfC~*K{PJ1Q>RffWobVa#Pl1TN|GgPSP6e6|G^i@MAEA zs1qulMNK^{>KXrwtmtGGAvw28nxk;VylaJPJ=Y_PX371X8qTs-=gT_uuREFKzI61u z)kFS(Dx%rXQl2E1H|-!dL$B=d9`c}eBJ)V4YqJRFRsJ*6V5WJZS$et`T6DerAlL$B zlCy*U9NlE^P$Tb|`Uz4aoFDs+@Gb`S+Vt8w)kzD|w!#U~RihTC`3_24nL`6-rSpp` zOfSM9GZPxK&@x~G>=)n7MB{~(?2N197rpm%$uqv<%oTCTle}F2W)7gyT)Xg#WGG4k zfDF@-YNsKj``nK2x%Bx6P1@RQF0HoMj&iOaNefH` z8JSY7fuXsnuA3M6A?(sh^qi!o_UJAFV{3ooTG~JeOJ}HeXwseQGIZ5_&!y}hT}8G| zhat4;X{CG8o$RAS)v~2Mg+opi6yajLJ~DPo=&K)aX}m+LA}NJ7cnY32GPWl6=t-{e zDffL_*%#^$sjJqKSeS34nTw|4WT|C#U^W^X4=JKN zbN^(;oGz@!Rl(2>kDJf?*8xO2(bdWei34%h6Ag~Z1< zUM(E3HqewRBPiZSR$e_34up++JJ9_?!xziiKYe+z z;386X%t@L?$8TR~+QxcN3y zsp%jUeBSHl@F5i}sF7$)=q`ES$AH0KX_9k8S&nTBlYrw?bRojmc{_v!%n!H_PhvT1s>j;0=Dj8*xU z<56F-yBC|1309N+ewNwJWI_CV$#Sa{@Y1^t)nK6zu05C^>VGj~)QWRjZhUisdgRtr ziE0$F{rnZycfvA&!+J`xB%YlQt+P^iNKwD(jZss`x^D8JC(-j>aWbCQCTA#j>G-_H zek`dbjAGFxh(-9@u}C@k2FZ~Qvnvr)o6ieJ4-j zLdNI0(H-c;MnR4XOabrKyEh1QN$jSgb*abrebKrSNnvaJ7D6XMv=HO<{~~arYk$s3 z?K@0^Ll*RTnqlOIontXQ7@d{tMQD0}?Uf&$=pkq{I(&o2>A4*={X;Ja0XQ9+Q8yV)EbFmR}xvuGj0wSY)Q!3qVDa4*LgssDw>XjIO1ZTDE%&dI}y zCGczaJ4YDxGgcpe`P&$mpH@LmCP>DAx^fYv73-5$#id990S4CeSSE2HS-Tf<55uyh zx7pcDU|bDk2tCxPPX&Z~Rj#}@RIqUD+G#Qw;AueVNW?A?!nDXj>X>nOnM_SHz>?@o z(NzFBMuVrMSX}x~v6>VN)eJwLH?yj7kK-wc&p&c~@RJa``9T=7CCb6U!C0h^Xu^-i zj;_ca3_K4HNy|$P*az{k-mlLmgpJ#?nA0$17}yfQTJD;rQ2Wc!0m?WaIJx{^CAQ4( z6-yS|TiU&F!p(m#-a;7ht1x++_FXD$d)y{Le|ykit~aDw(XLS4!;9QCtU3N) zNsYfXBVyNK)5_1QQqCTz=q~=^mGkS}TWd~AmoB-&pcf>1FfN$EznZFXd*PFp7x~4U zVLP{ItA_LOp3ewY)Et(ln*tAaaLW|CbQU|{(N5615Qp=0Gior-Pg`J~5qPyXjrPBI zV{Fcn8ZC~4Xac)DTJq!b#lK7&J(?s5V1?x~``BXTz8dG_POs1#cy?c}UW23g+o6j= zAx-z;>d4x09*Sj|uYCir8G#I;A>iK@ENPx#iw8Vv^fzZOe|>fIx5b0OyyuR<cBnhrNLZ%g)1lL9J)VQT1xVZFoT`l9r_?*G=ywX3}@e|)lWfz5=ek$}iP<0+Z(Rbq+H zkC+J=7!ppe_5^rMV9wFE=h7x(cp3hy_oc77_BH2{$JD?^xcB>7Fu}LjcaCfZN1M=51hdo3D7!*af?a=&vI5xWb1z zH#N$_2F^4z6HOOWI8kSxTjkqbUpr!!eQp|ObfdR-?IsKM$(%ob-k$C;qfn|WlV%{U zx=9`jv1^@hz-KP-C;xm~x;C9LCx#_q}{$T}L+m zBB|J#@wX2IMNu_1wH`Ce4RhS=cH+_tYbznH_{8tQ*(h{TRx>KzVP{sv36eRWN;r!A*)0ahLfV zcx_`X<9D^y45KD+ox1n6o*_>y!2PS4YZEKYWk=I+xfm>8UH<2@) zu$587QX$xtBXS$Lu_G&4G<*dN*W>M$B_(&UEPtAFIh&LBbzF>R7of1s!6glpw&&2o?e0G1j?5qEtBh*7}HPuN_c_s ziQi5liXH>)wL_CdYetC3vYviNAW?yQNTmZT3J23+U>po0u^xV6g<3$+JcZ|xMvbEO zjInOVMeI}}2p;0O6qDB!-a8rWc|`r>%gyGEUnU^FSx>PTz1&C44CSZYGJZ7%&@xV- z^ssqP#Di((gC^dUP#5{g#%lv~3&V}tf0TFRrjDvNLm~I*idDE*V(~Q7>&ivYpJO-v zYDpzB+?S3V-()3{l-!^Foje3#gdKimj~@d{H6^%d{P>I`n8X5qD=O=dEIr{){V3keGFS3ckOrKVeA-f zXowbwq;IfzYjwJ>1OLKU($#|5$Y#@9(x-rEEI$tycIJ;c?BTZmmmD@lvl($|*gST0 zRRc`Mj{5?rBm3$py&b>eigB=WgJaB9sJ6lER2~(!htaMct zFWj(Sz_nlPIwmd7yb;&D<$+%59N$L|)>b?y^*|&jb5c;J&%+y-BT?)N%r10>OxzUq zOlZzhl16Aa(YUP{eQLgg2oey1Mbg?%zQU-3Sq`OH=T2h??!?hUafk7sm3TD$rT?P9 zv#8Phop!oifmOWWlD4e32uummq=}I&v%Qch>L_{O=-pu;%>?-ykfdiPCIfA0?oi=( zaS3B?3s^VDMMBJ)H-&BOiNT=U(r(D>xWZmq5Z~kg3glo3587Ga_520<$Wq z4kK?^bvd1lm-9*gxG!JTGBGy#W4Ae;%5*9shom<0V-}aKIh2Emv^P9yG&bVWmX@PW zGAr0G3!=iEV&_|mBEDgiPrPPGfbF z^#jV&lq(QAr(-6(UYX-ai%*LLr#T)a08->TuR=<{V>0yEI{rnEgdS@13f=W6M$E|U zxdYoIH$Au-9aH~zqd}`VBsY!cWm-3$pJc>!e*XLjGSS~I!mAzsThu!;2FlK->u;1B zHp~v^vk~bY8H~Mk7DuFtZhX5ueZAGq1NLFjtdH-|FYMumG9f-PU~rQ)GWEhPk7sk5yO}=R zxVHFst8ijWf?`12B7lAP!;K(^YzkB&H0;^N~dm)fUb5v$3)RQOyPnv$?dZ=<00~i|BTy6do!3 zKZuicYCq!S0*D$Pm_c()IU2n!X#T~1po%F_&y;Rv9Ytiqu-n+2#tv7|Eg|W&Jv+v9ZEV?# zRonfq7a#voj`Mny{CBbTp5}iQYcsz7jJ2zH{HJAdVOCXtR=ZKD(?+vXulUxSxG4V^yy$0q42jXCg7Bka&{rS5}US3H?T;qQC zZSt*DpPpuFxAkVUk+htNB@fIzQwnEr|6VDC#h5}_uT zq|PLYPkwtPYJEv=SdnqO{y%WkL@4E5R>p5U+{px|z4f6rJn`kr_h_j3%3wr4DCK>U zi;W%UBH4I&q|cux##{q;eCvLH{^`Og2cAAVG&fMgs?$=l%_yfAzhL33I$1ZOKb}8- z&dtLZ>ynuMmSc6OBI0oXac$!HzWpdc3l7dx$S&So zNPE7THymyE>B|>47%*7^I+Up;U68>ozaw!Zoe>3t_)?I(eMy*z_2oVTslJ-JIyAmF z_KP09ngU`dkxy|B;1xP;J-`0`Wo#@i*!DLC|I}k!4%6Bi(}Uo~Pb*MRX-%+T`mx=( zbg1hgrNF{v*U_1BdF8IBU*;|>C{woSsYjf{ae4fa=h^(k+>Gqt3m~mTr&&!d_7$9R z3%lg1Hkjt@$ec6lTtf8dsQyB9-J=_iXL zyI{I8`-AW{vLXi)0?b3Wofa~Z+spX&kSF1$DdtbYlS79*bU=dsPy#osKo3ApxOItKY>C< zw9}@|dM}An2^eP{yEm?a28RJ%Oa`F~4NTDM*G#{$3u0E?r)Hors6bAYb+;9bc+nFq zd<5-KSw@{Nf2Su~`m+_8hYTSp^PHy!?$daYxre6GR zRriRJ=C3ZGq_@4XoABJ@6J(eRn;()NJa~4V(e&)K#%{&&nSwAC(f`mrHHGW*zfAq{ z6rFN=e)&!czB1(g3vuTltBSy!@_(hl(0^r6_{es6qb2Wn2R-3@AP_6}#XUJregZ+6 zZ3pI=;|z48^{3`fzPD`F#9E>qTZ#lvVDkP>Db78`?jQMqW?^X5&s^hS#dXIZHH4@jw^%QhG^7ulk!-;Ua(hX z5*$J6BdvngwyP&@i97I3Zr0g5o_&`%-W!|d4|TA2qI~>^oyScdJuDo$iOy9(c#Yi) zbMK&n4f3`^yd#I6Ue*r8{i+qxwRV|Xu4d;w(Oi<|PBA(tf%M#yU*5ot)T-OlUZkUb zm~tFF`UVDV)W(R5ThxMZ>C>lA&fxKZi;6Ry-5}_)U$5UwRz?lMG5Z^x=?^slf0Hu#v@_nNvgDU$w73tirsk*hSwlvnWLxi1u;5rymJGY zwb$MF#g}bwKiS2B;GLHA0qK9EXc=0!Gz9r6@H4tIQ81XnhX9>aFn^I_VhU;_Txb{z z;qGpNb#))057o4k zn4gW7noNoDB@_)syU!eQ(VmYHBU{s?dC%g!W7YN5z}sH{+}YkW^4dG!(gDBZwUW4& zF>u*|35Y|92EY5C@OMGuMN@N}^Fnj{532Cs>fi-q5F>7dUR3;#n#sLt->(Xi`+1b- zCA?C?!oxkFRf@)wg#N67!BMf*5hkS16o6SLXDZMz-Z@CI{ueD0`iNRS-^zWxqAVYj2x zt~DS{S*}0wX@VY8Kzu&Y{@Lz)x_1Aq^-bGl2gmia^6n3>$8|b74#zsO96rXKc5p15 zPEtqfgvOcoAva1`7_%vd_~J?iK=|bT;Gf$f2J_G&0XaVqhUy!NyksmG#~l<1Fb{0A z*?A&yeNgOun6Gm+FwpwA(0k(>dp^olJRtHstas};_hy@vfbBFD=Gt)$Fb!a4+jBDN2dRey6=F;x^4fyM5QRCfwDs-gk+C$6_paoC?g{( zdv8*b5<=OdkW_Z|F4-cP*_-UW$9w#)i}ror-OuZJ|Npl>pXa%s?nl@48|Qf*$M^US zxO9a4m7}n}y$i3sQYY@m`{ElhNZ&S*x4kyv2Wj~?m|H`u?f}GDzXc!k~xO< z+{Ey<@gttTsEm8IWNpy;DxmBWz8Qa z)Z-8(rgNk|2(}OeX0`k`g4y=GBew6oFv?5)_5%@$SkD27IjC~M9J=d^fuSFr#H->p zZD#w$NEWFd%*Uv zOq%?)FPjSYD(C&^psK3-NG5H9`bl13CX=^^#iQPv$lVL#7DhddZ_(~gB`VRDIvRG% z+=1A`=-2tQ7V8geJ4s5CKiQkSQwJLS6Lby-8{?tTnq#yG%7}ZR^5KSuMHRq~iP^u$ zk(i8~5%(nL*3j&_YSB-+iypG^H+gGr_NM~ErxQ4%*rz&Oeeju>r*s)6WbEkB5O#Db1Oyoq5H zNTHp&(O*dSws=SDB|OSlp||%!Nj*5$Q|Sm48F;0foz<|C&<6?t@FDuj$2$_}4fN9! z=km%-cVLzQf)c~81MLXiRWFp7kKro&ElF*yz# z#*PFI!bkwYX90daSLjc>bbkTYX+dC*lj0G)mauc|S(2%EG^;GBry-}r(73L@N)%P& z|Gh*pEoNKhH*r|#FqT&$HP>K+K?#A`gzt0f=zfIf*NSf&B)+J%4dBJ$xotT6iO!w6 zqJE`9KMjv{pDoVT7fKF*Ek;lul0<7btzqy^cI{PHARboud3Dtf@?GSWy*Pawy>okr zEMj{mbqRWDpnKtpTz``{x|i%|m%vUN`@>ET$u^)27}97QMM_2==Qa~>XT0Wnj&ci` z5bhVhFRD3mJVRSor)VBVKOTNZf77VFNFbsMHCVmIAdoO*Jgc;uKg?mo`ab%(v4{20 zbwz{Ea|i{@#Gp>S*CuTi5KehkGws+z7 zenswCbfI={Y>u<+{-B3Gli(nz%^U|z8`y+^e|x-ma(;DIZ9C~Nq0B_b%8=W{E^ z$W!)26LDG|8mN8py_D8SX|Kfq1&I_7bhJA9K>B!=6En1!zBJvKM>R4rH|nCYxB(=5 zryyDZ7%cI&3uYg}80pR&hQ09wwQ2$TbD^uxHqRxt8H%yW_UMjfOK;Ig-Qd5n66L_d3u5j1Tk+X9>q zJcE)cHOYk4PFS7Z-#uiz%|7qPWbB%FPKrEa?^tM{IoSXDy`Psho$UfheY7uK;+kfFJF=uN>qJ)*&S)Z=~hMFwL~5Hx{Zx zncJkdB}e6IRjHq9BezZ|9-hI|WAji2F?brzbk6-kk&Rl$% zCw*c3(;`()b?o8j+mq%?51B#l1Kke~#ccW)dE={I@2MNLRHwQHOKj&zln>^4woj)T z&c7#zX9H6OnEQ<8-xZ{G9>$hnC#VS+mv(GUrhEsQoXJZ43x}>WMYX|XB1L%_Wbq{`igFIbB7-XMt4kqf{cx!svY(Eo| z`Hi!uPrrpIxJvETp`oGc`uaq+&DGV_rIm1Yd%@8PO6Hp9(SZMM*Ws`3_E~zn`F2hm zw}Hfb{terPqByGw(bToQi^M9|5>AZsc8ePkXh@V}Q|D05G0+1HB*cSce%HKwTw4%3 z9ArkXZIPoBt?bg*J5 zhGdG&N$1+q78Jr7%uBd;w;^1$4Ms2-oQsn53M&s1jnRAt=~jkc{)!D2;waV!kR zHV*Na8C`G(A55Y`Me1EBx(b<$t|{Anz2k^Rn$3#3a-zC6nh9u5r$8yt^ANlq%E&?Y zj;QA5jmsZ?;B^g*l9lNscupBr;21y0p2eh$NapIbr4d*i)`y!Bbb)OE_T-&q%i1~S z3qB@og~H41%2r<(@M(`&OlZG@_X=4E3Zybc&e4UBGtgi>i?v>mKSF1eyqt+h`_k9%ar_o|DriM7!&xia~0k z$@oa5-nmTXj=-2FT_}kdh4)C1m9$vYbF6*9boaw!xAFIKfR3`m*hwmLNxslO12s^ArRb*Pfh5oPMLEV<(ZeZXVVX1dcDwOB6gPj4zCLn&L}WNA z%)`!*qJLWXR$4__M>8cF_tvGl@Lzhk4Jf+gZypD?ZaF&t3BVSko#m>&rg@+sLv{p% zrKvhG8;jxL=8Oy*K?rEr$7dp*7wPPbk3#rjljcfcz(#!`8F*awErajmhx;(Qa)u{l zFxpKNXFavICxqaWg1w!IHy(0*Un(j@L_|)g72Ul9r=wroy$nx9@f@CQFr0H7zpI@( zcl@Y`yydxmv$NG);qQjLpQ&_A*0N?VR+Q%r{W|T?xgl9No^p1N1r?FZV6rSG*^pC@GSe__4xcPrFvCfT+ROTX|1(GtSg z1qzc`euOy+Wz1dnPL9cK*l_T3)esav8w`fS64FUeh#aQ0c zDns`?+0)r@xAh&MjI^fmTM;(4o;=4EQoXdTP>O)j&0(8`Y5i$3b9li)H)NUP_Qd&s z`2W3&Ly4*Dz-9eTtjov{I-CSsR!aaaG|sTa7)U~NlZx)Ek_P0#L0A9K?L5)Wod_n4 z&sE($eU97QdT_2F*XUevv=oR zTX!fkCZx-8AI5Z!g$(6dvr%@4mfsh5Szoy;R7EWX$I-a=9(f48_r88h8~DE9L(x8E zt`0cB+alcHPJ z!*&$#R1TH(+{c-*JPn)TEr5ZbHU!q)heAm)O0iL#E}&!BOwPBS7+O8@3^PlIZnty4 z6B66cvn(D!j;Qv=@4jLUV1e8DKySNEVqFefAW7XyM7-5(wgPs3w5yIY{CwYHmbB9( zZI%uCsoL+S#^;Kff5JHEW2z%Sk)$HegmJvmCK8|`|8aiOPgtX zw^2Dl$BEitF7s{j>QRo3cbo3>rnWKn-kVPioi)mw`Sk2#9nxIc9)s3fWwIGJyfv^Hd-fV zwvkujgu9a62Fd8=JrDV)sdH@csI!&pI&Ft1nhy9L+r7u8+eW5yBs-qe1qvU4ZxJJa zusmpNMW9ol4n2>KSOfd6_4#mRCAqMzyqO@S{>|?CIhu&>jKHdjH;A-}aE<*dW6o~U zf`^?!hxQmh%(_9iiuGTG+L3+6FWCI#kGnDOQ%uQAq4P2rqHI0U^TdaSSCG6@YfpQ6 zh_VY}-IVBZ&yliXmls>%%`2s^4D#~GJG!6O(b-o!{3t`mF(NAe&!iB9<0!_ z{ra*_F#}_Z`f=U#^*wqBxiw2K0&isBLHof=7qc(i1xi(Zfn~*1{Ue^lEQ)O-b`O$! z%m$U0PWAZ`WE>0e(IKnFQ*N?!NfIr||nPl>RC zvQ`UW-FIW@q=GrL=|VOF7Ipc+nYd@LMO?IlZSRcgBv;smfK8OW!%zE`$E4o6`))Ot zPzhG}bj9A5WJI(YaZz`UTtP4pc#$^?QQW>1z}6jsFLk>OvwckMRnZo6|A2>2W39-j z8JotNxCLl^yVB31DIC-#sfAsM%xZJ{`sPK&X86TIZQoyvB04hS?jH4^m$n~`{;%u{ z{;y1Rv08fGeQUQs+S5vh5g-4d-{ZRO?aoMVz%R_F4HL;boSQmfL%xNgad?4vyM$zTD6i6W3of6_eB z>v|h@I%I|}zFIZ_5^?81nYPneaSKnvRCL$$yC%(@z5>vc5OW|ZnZI`xQmjjjd3hN@MGLLB z97pd)npOJ2=8QddIl_}u0CL?M0Yfg3Ii0HSEG;Q9fTWX;bxe}MXjN6!_h1Ji9@}>6 zc&~c_A9!9Yr)zeKv!YyT8XYRO{EXUvD&;`XQZs#D6`ATNch&(ObgoPj`D5Oiovq-g}v9WvO z9z_}-HWj^jK{-XkyNhG)_Duuqy1Kex+UTSV?x^?iXtI>`GewU@r>4qZ`Q8}F9PF{W zz$hy*i>`agrdC!VaPkq>!m){{B;el49TX)ARcPXo8D$K4F`h^z_>_77xmM7=zam&d3JA6P(PR4P(Z4mm3eIfae-Ij&ns8PNiIpA)WGv^i|HN^AuJ z*{DSaaPJj%?b?;)R{3SkGf84Hle@)cua63QwwU#*OH`7IIw`&N`k;SHb6Z1+w@tbN-Ey;X2S`V?Zj1v;S8KybbE;SGbujfKY~QZwUu zUx0q_=BrkViy$cb4&dorT%O4(oXMUMlo8h1SgN>{5-OC&R|H^Zp|R4df`F3>m)ja^Q+xcjW_p&KH$_P=XxE*BhRa73pYPv z1GYjJ1y7%QVc#o_7EIP!xQM!fv0mIYK9ldjcQR>(|da^nw=%xYiw751K`R>A9M8S&ppi ziWNIj4?#qg#ZH))J3lpm5a;$Ym@#LDMOGdU}Q*^o2ed7FUsBkx79 zk-XEUM2ltne)F|$Ier{HeYIw)Z+v5t{Lu`OgT6$AIaR!>Eh=6QhfQPRadECm0LS7dC-d;0W&MAR(@FK ziZL&C@wq|j ze%j|qSDIK-iSy6~a2qlQ!?X^JhfOQbgC{lMKB`Ea)%!9wW928ODa0X!->Rh~f5aH~ z{eA>OpCyrpLb{6wCef=Na4@tFS3&4DM~p0(`A8TT*Xkh0O4`t5Xm@1J2>vqZfcj&S z!QDCV?W&Qp^-GL!gY=Q~yS^hd&)St-y&|_FW^PXbp z@?6Y>-Y5_XN#fxcVQ2glkw)^6laO!GFT5@~amBiMYb9pHVWS&|#P7X(F5(qYNRFil zN+v$sj;qzk_pzlv@99qWll1g-()#Nw=*GMlP%Ug~!T9pH$v}-rKhAj~q-L*4fBlWc z1+I#xSx?MwBQ{X5Y25(*HH=2byj0u~%718*YmO#E0>kT&cjq7cokfcj7=?h$G3qu8wBU`fdE0gRWAx4_oc;nqW>+X!_$Ywu}EF6=#^5-k zi(8JCfK#SG+G|BP)1RLu`{dQ-!>WqbVJn*|c_(0u*k!Ao`4efVq0$>QCFYWu66}%? zD_c9y5#bJr0q%ZwtkWZ-m2%>?N3a4)=G1G84t5;JR4Q~-k0%PF*t52bgW=~jFql?4 zCK6#q<(adPvQjIn9vUJFDhzjF1HLPxi#QG{aS{O*66ub#6@srWozmF@OvW^DY}|t} zPMs}~ii!dg?VkBQK}p-@rH~&7;xKzqX|^pj-Xa>KxG2OelHLwAhwF?cJPeO(7+oEr zM*f~lE|DcX_(o)L$DUrofqP);tWfx!frJAUHEI2?Lqb?OkwpZ_q#jvVHCzQgqN<=G2@QtJOg0hoKtpi>>vOy9DJdDJsTAHj^XB5b&8Qa?)ZZF-lFRR%=+&d zXaIk8FfmV=PjGNfKb>HOg6-z0!LF~&Q#{8jBJ&KV9u|uL^j&2O^Lk%{vu$qfB@4kl zU_{LjxZZ6$7c*iNomZU$U@^9NFXDL1&$G(I0sS~QV1ah1={*gy8_;RNssrbkBE2ZP zt^6KJmRZVMM69xub^Y@5^BWSPioihMvh0nuW@xVx=NMy})(W{UTRC|Tdo1(%TAd@U zt>%lbHShql$Le%%6TTE)6YBIstQWxjV9*MJD?o$5a_$$Mw-cN3?EE-%JJ`SMa1xk_ zlqHW>%6+r}{MA1z@57i(?iGtq0Ow%8fv_2YDbpGIpU>dSHm0vXTuGa?)w^}8E=+?` z2oDm%;a5@5-wW}uyEwnQa}@Bb60$&aavZ<1({y1dMa)K0U7cPpXUR;_sF;E5=yl@p z@$u2|Qa0^?ch)ik{;*vvKvvX8%&IO0!IA<6pqdvUK&#< z=g{J!qQ3E|JR;$TU`DCl@&3N5y9x}Uvu8U9GUs{%MlA$T8|>qOX9<>0azLe6SIcLl zRQ`Me^mGIG2Qyj&Pim-WRRo{Z)MP}IT#JKR!UWc3=eV04Cn|)gA>Ms|T_T8Y*Oe5#?`0?u3$QwQxLJy{2$({O z36Wp$nMBqO_&Gey0V@e*_iSVqaA)DUw?RaUC9rI4Zo%TYhJ*_s=L}Rr%4L4vO|CcL z^OnGubmukhX@kim5X1?sf$F0^3Lzz(n}ug_kXR51%OfV(eK_~sT>`_Er5Uk7YizF< zypr1tz238&h5>!(^n8z~-u`Y@QY@g=tKd-#c^dC}CsZL7e9=KBemNZ(Ve@HL3)3)_ zZcZT>-J9DUc95s4r=U$kINRv7_ItD3MTlY;px92sG*I%-zVwd=DC)TQqqQq9?!yom zDv2(JhxX_<#2}M-Z!h$ABN$ee9+Zigw35)%i-B0B@WH-5{3OBYdi8N2g$z&G{@l~Y zf`(B_Q89|;n0C=wnsK~FvFFD+3@?iltf7-p{{1|y4aCLsU3 z*Zn%Jhs>$#eFLyQ)j&yxP~{+JG|r&?M3Z45Wh&^-Ot$-BcDsi#b6=;Td2P3wzXQA7 zPDpMUP_kc|deod!nUiQeGfbt6NOhLSeR3uzB9YI&P7~k1-d;$UHWmR?zQ~VPBXfUziRo`WV-BZyVt+f`>tN`D9XMlZ zJvzD%h^!)MPI}+$b$nUf?48lNi{;iU6|Mw9$cD7$KG0^8vtpp7W7d^ct%rN{21MaJ$5Pe>a7{Z?vf zT+Kk3W;C_{?Sr)Q%q3*Qf*6~?HSXi@0-6+n;SE_cN(K8s)@urE9L&1ZF#g8U7M$gd z_%WzybxVya^}PcnIc%!Po&hhd#5(mLGId{LXu#6w#A*)$Uu@^+bw{k=vmR^E&*uZ2 zfK4C5UJD2h#{MVwq?ZGirLyIcGqYu2Pnw^4KH>iuig_+%NMX~>tm1*P%7jXaczSkf zpl*i8?Bmnp?AMIG_TfLgT>bK(;KZ}z{n}LcUiwd(iYwe=Fb-helT!g8&s|8(GIGqa zo_RMib1&O&Bx`20dBkoHr)HV+Y%mCSFUrZ?%ieura)1mOlpZituoe8uw>rXyuAaX7 z__5Uw;a@+!Q^4tPd*tEa;KG*8Gue==yZ4kkl`E3BX5&sAT58Rj-bd$34{2ebqg0!k ziu@j+a(($*fNGGV2LhR1LUUsj2;mhSpS42r5eD57b9&Va$xetk*@}3!f$F{;f-SSA z8^6lZkxv;mQE^`vmo3;W`_qqs01q(MC(0?r+e}WB3|o8sG7`z7ngC4vS#t7j$gP1Q z(PFYvYz*A^kS_;v%Iyom*Gj$H9X3<-RoVfh`mS^AKs2rAuVmwIMO*vCTpWl1EV7gV zRM##&XObQ(R`_s!bCPwHa|P}ir&1s>}jsDV8Oj$C3>}9 z9j0SznJLK3qdHwg^4Eq1lSKwFQ>Hu;#{#~VQ2w*SoF+#xZV%SuNJKk;;4gC6=C5fNFO1}|4 z{6a$5AWvLpUho^{@Iw`2C9CMZ!9m6GE9|EEAHijErb8^1wMlJxmG=*rovtLprjgOTKD@q0 z^rs+8VVDbBPn*DQw2Wcs1 z$Uog9to7!fDqn~L&gL$X+NM6st*4E}oP9ak3)_)(7avc+q^61pR zi%5yl#=WLQA9`Rv$=&YN%{}Sb?mc_7OTQVoe%nB!QiEwtZ}&>BA8(>TM4|4oa_hnF z7E1Pm44vyVjh=gnc)@iA4Wy8!m+I zA+!Z#V3_TpsOKAf(Ry@5^tWg*B*boRydPNc)ZHJsGdniM ziotPE-N2=bCry4Fa(uT9!f<296QECRa7CCs zlEa65AkP(s43qokU^GYq;VM}PM=F{S2MFICm`TGw#94tpdi?uN*O@H{O9)5QfM4AB zhaZ9d(c4MY*G^JO$|Do(b|t7Qwmo`}4eT@H}}nFJW_Utp%C~tNx*R5MSq_I*1xGvY{asEV0h*GuvG-q zPLeNdf6v=+Wr2C&yn267v>-o0M9t#4My`WkJ7gr=di%uA*8{OR%IEz!82SzEa#U(- zYfDN>&dl|NxtD+l?$qK#&4bT%w6(pIW4R~iySyY5TSI;NsPj~@36I}x;fqBM%g-=e zvSlU5iaEDxA=WZ2=YS#lS>CSr$$!pNDlpZhiPg3*g!Ea{xBMbSQmZT>h`Bu6AJ6Io zwvhdDI4ERoLAmR`i&?e}I-_mYi>rP|ajn2OprhLml}4qszP=%bN_&e2E}u!L?6kUl z{b>g$e7D+I6?X{4yb4xr>^XHu2q8FN2GK47iu$w-F--z&?vA`I!B!6ixT&CWd_FD= zBO5E55$`K{9^k+(**Bm9*z0(O{qmbdxY=EBv%A9Fg${XndUjPw3hVM!Jh(EsV@aK7 zHT(9vr31m@-j}dz`dy(S`X(FU1PO)a0=^xg*kR5E=AOf670)Q5f_(#zV zk7{aa1hct8hQ+JjlKHU?MBK59{c<@-2732sdtP^qoC-?_xS;!veEa3Uo|rBiL( zkW=q_Y|IyOIyZ1kKB#7e982TEX&p9<)9jdQn7jg#ls8pr9Xy}DApE0mK4_}5(}UQ> zthH4zgG^%E``}Yin7TYaK>M6<0V%r8=jNZ?qk1PwBp9xG5jm=kUO?*jHBlD=G9V0K zGb%m%>EEzz;q(#HW(q|K{r<=j`Ku!f^FtWH0#a@Gu7}3}EKP^Z7}rwmQ%EQ|n~Jl} zov+oU`np4?xRy$1Pag|aR3cv0ks&Juew`u4swX!p{LdlrAPlKczk)4&fHwMUY7Igl zKAHRbgJYF4qV~0SrTdS1*K*&mcsKR#j+r!^6SzD6EO>dXw%=#0GEYO{{1?b+$ZwHT z2v}SAw7F6QQUtMgfA6|DN_Qf}wcdD4g&$6vfcC7x#Zn?di@ev@dmWiqPYHNmr|FJ0yvzdao4P}~AGW8glGSiTiAg$!0MBlaC|_F4eyi$cjMneMWi zD^*c@=eT7_NEWk|2*@hCuRA@$P-(#OFf19U2S}!en_Zx|bW#RmK|B=j3+M;OGR#K` zz=C3|ggLe?I;G_ufI)^Zst6{kID6J>?=hVtL7?Hpz{ahj2d zsnkc=>R`wB!h$V;iqQOuihLFZOdEhd*{_>t%fNeQCVvS@A9D8Oz>(!8`HfY=c2}UsYDNFjcnOb{%_dYABHTWJhv|^ZVxq zVtr&HB-m{iAM9f8LW&{q0>P+lLZ5Af`I;w8c^H7QwGXMZ>XWqhAfTvBq40cPm<6Qqau?>m9~A3$@88ks_CY54xvyj`%>189(8B*aXi)uypWIG9%Zl2zCWRNNVX! zPkE3Fv;9;)8j!9!QX?jE}dPJj$SjKXV)l_jH@K+C!Z?m$v z4l70v1v9~U4D=)`C%zLae|ECoy=B5z%l13cQ*bkX->8%D^jB$@$=)xIh*lGM_o)`tkYm@XlglLw|qPZX?E0;Y%O<-=b6(Yj_ng zJ;8+&#wWA6v4E5FVD2CACGM-se%>ra_ZN%_o8L1ge*U5L;!FTHba~$<(8fNF^o*iH zAuEW4cx>HkmN!2t z&%PB)su&l20sD0Xk3bvbQwJ{&lxi2o$Frr8gJb7k7HexSkjwowEk$9#f1;%ToHJ3l zE(uFHV<7xjT;wG2#zQTqeT$@5n|n@gtMy${;+6^p zbvW<4NU1Oy$G$Pds*gVVMPlMku*W+NHhqYvcjn@FDTSB>(ox-i-#;MrEy{#yk^lU! zMx{Uh-7Q(xhTu!~QM!2*qB5y=tw*d8(ulESXF`~Xp%ORA=lhQm7KErhmRKNGurXOzR9BY;J!3tEDgzKy zt32>+vToxE-PYLx?jw3lJTOr&xOnP^Y0)+Hkq^}`W#UZ-WLf@-z=eCae4tW=wch3A zo4p>MI!~d#hfEvDIzD+`mH>pxVmh0z&exX@y-r!gBhXqt_9sz*$k7H1?A6hq4tZWU z$%AdD6%fnsL81WED6llz(+6S(KA9oDX3%*&sMiPQXn%kI^i0fJN$*@m0Xavv1NWpi z#GVQaL~FnXzHGjjauZuwhFe5W|C-5&IQzqOxvvna$HwVNpoHGjFlf z>KlMan1}m#cU(!vK^$TW#!4A_C%AT3@NU?38~SmLU9eVpOWO19#cS8G zHdzfsXHl60?RjRlG#yOy3HPYj7`~q&q&SNI<;xc(Wn?{|gA`1^qKU&+xc1?QPcUcU ztG?gSD(|ZgkEGwZfgyg2QE)TVu5Mk95jtEe^qjTIpUhm8CojqK64EqI6Z&IW)vR2jO+$uo@ zRUbZv=hN|zgCFGVmgC408XjPz%V+}>oZW1w;Vw{jt}ZXm31*vj6_KPW_D)Y^&wbEW zo9OwF3d5h#Hz7-eX=!N|aN`a0cggkb<3LIt2IANMm9`<@N9^$d#9Ryk0YuGm*hbC* zLNHu;Ouc{*0E4g)2ttKlxY&u@^{3ZCG^FmhD0rm^TVl~GH(%uzxe{pd zy}=6O_vGVLoDQs12#0-5DpVx>pKu!Z)!i<~$3$b)az%!-#3oogGQjws8T9~SM!yOu zy77DDbH@L#kk21~NPXR2$tg)?41n(9tmcgD{D(%?X~d>3_Kj0+Oajwe56IWbppaziok}tsH;oE z&&P*}Tc@5_hVgfFF}+)n&lmiUVkQF=tCN9Sgjqla_zwmHQW;U&tg1!WcJuRY7_{n) zKsB4%iNg=e{dl?%4ah z{5@aN?K7(>P<#d-?4{AL2Kiw=!i$09_aPbk1|;!#{>uw%TS=&u0SV4Xd>$VD6iQp6 z5Qqu;Ry?DyL00SJTV$wI<-^Sy%R70*l#YLgv{`E}eS%LLkt>v|OqylB4nSz{0OCrn zKbQ6qn0?2M%zdt~a{`LJIfq72+vP^515L{a;+XO_W`otTg;g3`MLS07lsF#Uz=4)aN2J6`sO)5_cwjhaZ)6>&y zX4hr9HPnxWixB;D=moFKhjy zltcvmtn%^k)S>Z=sM0zz$zKIp&D!|!Ex@KilA6X5Kbed~!KrE)FdO3Rw+5{-v+!IO z>F3Hy+7PS$gMQxLj7xSoFBMmju*MgLGbarVZ z7Ke?tUiLW4Ojb#e!SjG7;g*rq4(7{S@f|*HL|4n4ar!9k=r=M#Warg$tjo`jsp6VN zPHo9$%?W{pH{2Cwy=Toh=(+g9X`V8*v_^_<-O$f@!as25#SoGQ^~&}9Pw&q4#OSu@ zk%ff~=V9_+%ipN6n)Uj935ynZ-K#4We5Ll`p1R0g6(3!+AKSXZ?+@9Tv>S1v8`F;` zsoB1!b~tyfI?Q0_W*UPmfcFQ$z}Y|XgD<IYhV`CKL01=+h>Gqd7PH7CT*J$xj@ZA=YchouFN zGKSl@M`CU?kLVh-8b+gS$1S0&>W1J!Pf%`fDRNp*>!d-v++HDJgSJ}`11}8`UC%Q! z6^Bzhx6e(4tQ?-`tuR;HibA1Ad0uEs=cqh?#V5LG$5o?8)+;>NpEoR!GTENb&Z*z? zA=57T>_;{9=Sc)VnMh{--A5@~T|S^jiOb{Kio$*p zazTY(%vCox9U{h$1jQ8*+FqlMIC;>VPg|y*%|MK6Ig(QkNqSR4WmlPnBjp9Ge+}D^*AY8@irWyqrk`0 zDLu@}n#@vqAG5tx4Ec3g@>krK7%y^hBAp_PBDJ$~s_uJq`&O`pec1Mc_>mR(H;kk& z*q%B7et9FecJ~BiAUEQnTRKt31fVKB6%W$tgR~;tlgFciQz$L<6gZU?!(;_S*8YcKgDR-l_uyVpx?{uahl4qvJLgV@m+;v*CO|>f`^MI zY)^@=jCnt&h;M%Mh(c|+!Fwnlvx{_-QgJrZAa}9N=m^jyN+wW!YPfm->BgXP+< zA$3Q#yfH=~C5jv#5p(dfJ#_~bDB!pMgypThqkCyEp8@|tGsd&TI(Um5w)iS=FT4)m zI~NPfxy^)RPr=AyPo`FP$rC=XvpXj#S;ricdSWE4mud;LPdE8ES9dRG^VtX>mNa^I zqcJ;1@3h2tW>7C0p8UzY`!JaPtmNes5<v6bHG`Y^^hm3U{pcNP-|}u0 z_&^oYf4@vNZKkO;3}xIVEbKASdXbECoM4KacB!z@_2zps(GxeF)3mQ7?-6Uh*K7%l z(E0>qb;P(6^ePCCOjrE8Pvmp!>qkkYjA&PUXexv+>M(7LHdEWs2wG1+hFo86#TCfL77w!FFL9})`XZivwH8aLm zR%B{|VbjOF(wy*i!||JO5PK3U`*OE!%G`{vs1Lcz9MG$$!O-Tpc3lhyFbfnCG>SKl z96WT$6Uay<5O8_&Qa1?89wQTfqf(X>bmoifY~}Mod^KIT@Y%%iFBr2f2vQJIAY0hm zr4vgL}eECiu$yXoqjs5&hh4v)hPMl`ma-k~#X0fJ3|X z@Ek;l9)j13!*<@}^y$+cr@a`HtSW#na;@goC247CI;1)PTfoy$!5+SxctEY3&2Egq za=e)7N}|u>$Kpmt3D+jl9*vJ1r9l9*Zm|&^W=}J=X0&W6H>UFv7!Ng^9#m*d*bzj@ zbtByBVmO+$_(=G20L2&IF&5sbnf>g9yDo{c7W33uS>H3Jql2=pmQ|XSF6C4mJW0cc zVYJwdF4XFG%at-=#ZezT*A z=R$;(AoIHG4w2CHsbFYPO15z~(Qs;&KL!P#f*Z9kE0N&jBf`DMBp{NspnKSW{rYbiqnz=#dTUXf4OCh_+>p8^_ODpWOlfCF+NY8FhC!!{i!xZU&V6b12=uk1mt#|a3Z3{ zT%5BrOeMtmO!{bA7g}bzfZvh^+JdB1CN8c^(lRp9lmf^*eVdZ&;M4*5r>pE*t#>G| zH$rb``reu3Tmv+<&!E*N86oF4i*nn`9do+TjgtQ&Ix#)H;i4W5@dc7f5gOv9r|K6K z6?Lw7lVWbk4|NMuzaP3AeU9S)!BJGud~00$1`TR7@gFf zN-^r1jN$ax?Gq51t}QL?$*Per3$JJbvAGdz+Vfi=_MhV}K1|OhX>IOFA zwh+X`IoNubcdjPZjsbTQ;Uh4+RRZ^y@TjP=`v>9q<#qO{g)w~=LhRK~?iTH?xPK@#NF zht)EieY2Ad7v9xqX;>96V;)|u;Zba-n^bepPk^~sSME2R?wmmGHo}^ooNzo5bQd6T zpI*u^ZNb~%>F0OjY!4tHhqP;>;u-#`;Hw&4Joekz`^k<xG=K(G;&4%rWSX*GcDfo17$^_E0XI?izb?E+A z_UX|b^2oz%gY?lemrR{zmu|jlK2mO9Ujqe;-j_TVbxhUAsn6YwX<0rKOl)epg-eY5 zj6vGJ+aO0B`}=SD@fe1heED?pQ&rWqwp@pCIK7lcgXib100?sH>ghRi^X99`!Ot=< zsMoA=hMw!u^}tuBx2<@)`#`U>zMR2NO|?_LQ#Yi?8h`7JPKYy|CMIkScnK|2HUK_>M^ma ztE&j8?0Xx42vtJR@wm^6AT${WGC-AFs<mb!TmD zZS#5^L_pdPh3&Paa5~@~>zu#>2j7>y?-UvqgAS5#@!$L;J{5T;+9qLTN1C=C(VRxk zgEP^NBz5W>;|Z{_&w8N{R`0mxo+;H4N2Mgeqm z(z3FQFp>&b1T@oUa&mI_jKJ7?(s2-=CRgl-mtddCWS`WRmaL4bywRilH>LZfU^PWX z!bknK!e+COG&3{H6F!Z~UPebh(Q8is?CDc97yl@R}Cv)h~j6^|^YX+qRimn{4M7A3&Gv>F?hV zngw?u*|w6Dq!?l!`+h~Dlv;TtO`vhnd-)e1tc84Vm$4N}E zYThQeG!H1*O8_(v2g)%_p!(kLguk-QusR(6>(&fx*Vw`qayaOh=Rj<6IdSSsmDn*D z+Zt=a-dPsJpHkyPd!6Wh@Xt@gz`L32-~xqZ7jMYg!2&Z1X|E17^~hIzf@_c;3dKBz zJrv**Q8euas13+JAis8O$3j}jKmYPCQV$5i>!(I`%FA8Ib{?I%tg_s#a#>NI%;_No z*DIy*a%8r&@VO#fE>_tS=1MRDNPxE^vPWJ?i3P$=AG0c@i(6Tx6Yk@=AOx}w=Q?T- z{3AZE#T6BMLMoUL6RksR-en019BE?(d%F`#S-s%NBQOI@B2%s?t2d_T`-F$@Cl|0V z$moGJUmD13yq}v}4m!f;utg^5d`>Vcy^?hE$lG2gHvbcL0y6v**vd0nJkeaz4}# zv5^s$bh-<($|+kuNB&)`a+XF*re)}>J(>D2Lm7u@xEOr@?pLp4JVDUyTjIjS8Enf^ z%jvn>EgT~X3nTA0yKnFB(p`26$`Gf?)VFI=DjIlq2m+1A&v7U3ii z2WwXNlv1ubMS4I=NMchuwAnIChpmo!OR&|3SBJ4!KBw9hpTqc^O7~C;@~1bY2PPuL zqCdF2pmNo6s}8?)cV{a8hai5rg_)7qLU(HY*;yo?#JMg6PWIv?`{jv{nvt0SIIbEQ zMj$b!7M}4J{*lZuxILfpUG`|hEwx)5D~uRlo=(ZR0pACLTNTWQn_j{WpKiBgC1^2v z^}RJH+oQmKtgdyjhno-n#1;}yB(CLq&E?_}^#KPU8te+J+H!G%1g(=n+!f%jb=XoB z(sZgbGX=6BO*%0yF0Q%f#Vg=6ru2g_I~tgzAM@@J4M3Z30-f=YXNqp)v8g$mc}QH* z1`r9p<|X8kglFFpHIyy%zmD~fs({rS>D&iC6_>N@z*x6`W?>3EjVb|h=~s6bj3_QH zP6wONV{g=z(rngR;q|K!PYKzEKl znW>hMyy3&DGzmeiwaCRlc=R)XgsOo%E7TzfHxPjZ-e`XKgnUCFHLswj2-S-pYN@y| zupRb>wF(&LsOmK1-kX}55mbPl)C_bkH4x~($)Iv&sL}?&<@!LT zwEL?D6)$P`W4rVPDb6x-y_~YF4y*0SmvJxfKYebiybCU|;$u)LY0ncFX(KAheg+@K z&=-;+dOn#TTv`Ggpe9@wPC-7^cX%>0!sA8sd}{CUt1Lgb?&Ia?XR{d7MA!$CkPcLA z_JR4}!Ac-_9)8uk<7`XDNcL+$tv!tAa2ZAVOFIvM3P14U{D!Ya~%pksT2Tn+XQy{m{-cy_mbX zn2X^CLt_5_|Gw{>^Pcx?p%blAu%h1$XcjP|x_f#|WDA}IiSM6MSe6n^opdbg(xO#3 z8~G0`vJvHXQIv)%mK^TDjO%d}zxg&9fPhp1jLe)djZ(gW-T=O_#l@3VD9Cceu@a@_ zq@``gJolb}I-jWaP^~1c<0N*Xvz?#)cKSFDX^W16td2I*v_2TTl=P3^7Z`Z!m01oB z475O+z=ym@lNpI5=bte3Zt|wxB!69TbJtu`yCIHQrfE)&Des_xsfBX5D?P*1t%1It z#n5kq6yJ5?ezIh}6M$_~&fX0*b#<}eJdotNR&+qI3&92RN4LMxaeRXrF)6rwc)WL98pIf#nWb*ad zjq6z4>I3ckl$tVR7Ih(CDD_f&eB_y(xXo;rvbJ$47k@v9qTQp=C5nm?l<<qJ+bVI&@Z zrSR!1sWd7w`o)A-A=5Pro3cvus)%9xaE5h>F}^8lpwUZrd8$T~F~@MA@vWE@nXVc| ziDfOyyHe1reL@emCW})!QwnPSCiKKct+i{L(DtSefJ?v)gut#XsXaaVH@J z3s!u8?cTm0MIpmf5=H@pv6{xsLhwTV(l(ZyzOOvZZ*~ zLHIaqTA0MWtV`wlpSNH*4I8J`p|vmUbKN*Dp_6TFZ2VE{j7wUEVuHQ0tI0L0*w&5~ zF7qD(O4U$T&phJ=LOl#5ZF^i64her1SeGuP;buz#ssieS`EI9YdNx!xB2?es!%Of-!3K-T%tYn!;rO|YJWvxd zBk83W8kX!2MMIV&>0YZQMNH>5^Cw%| zG}3|*E-W?hO=1PCJmNk2#>SPr5Q%r$+-_^W-|fBPLsa&maEo2kLx-t{3<~~n$eJ!@ zrK(10bMn0g8y)pB&F0Y&RP2-R+4c4HE$}W&c=TCxtKSCP`z$w@7CLeH{4zb0(9OwG zSs1UOflqqjVEZy>&}yUznQvx7*_4Pw6ui&CjAO+gRS6|98@$JlpTc4lns-1w`=Jx0 z6b_Sq;SQTCRl1ch6?>YSnhMj?)2|Pq@Wu9ljzH7Ttwvbj8SUZj-mllNsd*$S>er7y zD}L)QEGF*8M#gxb!6VP^d1sjQ)t$1>Znksx>105Il%iT76onW?K;Virt7j41YG}6Q zL#gf#NHFN{j;G}!Yp>B*)^FuxZ=Y^xXedR#d%dj*u`k0NF2r71 zg-c@z7-&T;0Bs~eXH@mX!w|MMcGn9tQ`9n`jaf zO%9-Fm=A;6j~NBoY6k`=PZy|e%79MDi8zDxQ!((lVtGa9hiQ0=J>~D*76$NBJ#@?M zVV;V+S{b&jL@Wz$1PwGg>Smhd)X>i{^k=x$DLJNYyflsZ*@*p(%zgoow=#6RQQq~K zbljVVT?3qZ7Be-$rw!)2J;H&RyE=@uUTa{qDs{YK`VGCQ7)EudEhixp3i~%DD-S$# z`puiSgQ9k=8w2WTAE`2aw|}Y0HX$aiYw>LC%8{T`1jA$@Kp}sYS_+Os-X>p+Twn+f z-==sA5moF@{%VgMF%&7AldZy0t3(?qO-xK&GW*9gs+g=)^t~=*COYaakL+EUnBR5s z1>6=!v&Dw?xIlbGKg#$UbIF=|jG3HU+SuvugDzT&iPqSs^UT8%4&PqxmooS$h1afq z-AN^}6{pwer>fPAgK98#fTs}YPKz|q?g-V2lRz0(jZH24{Ny;WX%oO@VQ|jkVA1ih zD5xvjhO0*W5sgb8ZQjq|zb&79LF}y7?dMHBRO|tJ5}Tk`ZaudNRUbA%|CZy2O{kMk zRV~s0WMSxc5Zk4UNaNSNwBB({jgGl|+5g^PN6@P;GC7=hw7wO@U>2E1dwcuQH_r`& zp@!U1$B-^v31j?PR9R^z#F^e*Y2vO4lm;&h4SGy>nVY*qsSU-&Gns2p{t#!iS(5hB zt@hFy0-4FoL1!qgxSo^462QZ5oE(ccqmtu*Re^P50|NsOd+DV))3Pu{!&%ln4^6-V zSVlol!FMoiQOh?NcnkCP|GsGPVrK1G_2#vsT_?AGgPXmrPQX4w62j-JJ9&|TG`$3+ zVd*))@b4By1X*zhfwnI`n=0}e>wLjKz@%-0*$GcpQ$v~1MFg2^F~gqUQ)J%-180t% zsv4fEqjSnN0OO7{@=rqEf51qPF1P}>fTEjemB0K#Fqua4x;acX6_oQQuy@Ix@X}oSRbM zeHCyk7^NbjP#!^(Q5oY;VLQ^Qk}0%Q_>O#BiKsPyQAOy+z&FkomX>YksFY9}p zg%j980}3Zd4AjKoaK#a-F#5#z!bYO2o+tJA+q}$r|G~C?z-VD!wYP{X>7;FW3f*!T(Nst|c!PE%f?A`P&`q>_gHBj^(y_k?7Ji>&5_MsF=MCF%{`Dn84 zYqoJgfc7IeehtpB0K$8fLXXRwQawZQeR=<+fI~ATst*pwRZLWYFH>*ZfeC_k+m$=G zx%q7~$w4^C6k}tWjkR?lcq!=a{7%MgfC_j z@QzH-9eU*%ViIH~XADnYj_TD3^fhY)8oTpCZ2L;cPvIGbOlEHeXClaQ(6%r)Z$@4@ zJQsGqZwh|xT8V1Mp~lqH_-1cc*CYb`YX*mlCubkRAN2##z>0}U2@Vb}JuW%gJQk_` zo)s`y!mC(9cg-e{l|rGgl9D6W4Jk#VZ{`!{az;^4cenSh zT@kLRKHCVsOGD)270oFhSziXQqFe3=9nC0HwJRc|fXp;$F@d%0mNfg`J<(3dN_46+ zo#+m&ZIlSnw)un_B0nQ?9Up)4{-0o_SG-SaBCogHe<}CheIwzM-+w3}FdqJ*h2Y~~ zPY}8s%+CttWw_q@C7{kuM4r9Q9vJ@`vxjKxbR&tn>P|7>8 z4i8r0{p4?pzd8PH2Rwo5*#mwGSARdll?uj`7B50(IRDE2;`P&S$ zd2&i~*;{!`b}e9mHk#UzjMOPnc;zO{z_DCFauJmj!42N6nv0;U7{LyhL2l;)A?RCa zj^KUsHn44XcbsA^lDp6sw9pSUZXQ~}UOg9&7s}-xJ7gC;$iW z7`|LL$gEh5knB}c6VFT!NA6$xWwZjhs{H$_k{r>yCTK6M8!SF3!Ju7Dh}cz4mr~o> zy1MQvC7K_@3m?C;^T*hauyF4_1t)00fVX@QDq7rsGntTPXU@En@+;$rKS!Pq2}OPZ zxCyzPL30Z|pHPI)4nh@+!AsN7bwm?0YrMps8$`zo5{&}S$E)DOTgp<%^6nFk?#rqf&dGEr{fBDq^-}v8Ml9`oHs=jp4vRQMCY@FE+%k8;a_x<)y`+*JZ literal 0 HcmV?d00001 diff --git a/labworks/LW2/XtXd_1_metrics.png b/labworks/LW2/XtXd_1_metrics.png new file mode 100644 index 0000000000000000000000000000000000000000..fd07fdaad0886fa96b68c600a8a0c759cbbdcbd6 GIT binary patch literal 99898 zcmeFZc{rBs`Zjz~BxR~dN~EGthRmdtQYt0NkU}N1%$Z4v2BHX=G8G{*MM4OXghZjt zQzD`aN#B0zS!?~C-?zT+UEB6mXj~6soG`G`_8V~Nd<`;L5mi|Pe@+Gb_3tY>sB+M2rt$%;u%SIE6$1gVh zV9YhplyH1}k*(l`chsiin$NxW-4_4KGkfmToh`yfriw9k3Z-h(pTfC2!avAgIP1;J zz{~gFUPqN4WUSt){NG-CR?CO6vi@bmAGc@8;4ib* z+_Z{U`A?trO*uJDjzpEZd@6MH?XJ9eW~42Dpe0Ah!qPHv`sB%z41eRc5W1@7+d+9ytwefY3yw=Z+~)#U<#(b1>gA4+t~b{;>s zd2-Nw}DuE%D6# zC&&5rqVjl^o7R0btAtNJU19XyEIFw_21OyW8%pv4Q&aGIDaXl$*PIXJ@B+9+M!w)cH@s?orXv z0hX<~hTnRs=#G10Cc<5l4T`eWtI-Q!9w&b2<@QD*o ztbBMGL?tAYb#=LpYG^#RY?V3~DI=ybw0OyqwmE^h{h5&r2>XveS&g z-6mAu%~y1r@_KTI z$vND6@L&-O3yY)ZIzB$xKlrD-)@R8|>)&(k)Xv{?zk-5;FJr{I`(8&(O}2ZEz0=ZX z-zQ&jlSiM|0W+c+_h!fMHO6nE_uS?`Wc~f~vB>SN970-;Uc7&NCg-S#tn4c4UV3_Z z$oG{OYP1kAeEO%y`^gwl&l?+8JUAS)*PlzWajQmwqvb++`Yv2d*pL6#ovYmL^7aGN zg$oxB-j!JV`0?ZSnMMZ!I#h&Z!GZ;05fSmH3SBs5Z8y|LZ%?uP zWol~r{+aVOxeFspPn>4;=0D;F-7z4;jv4}$(wK7 zxN#);=tdcN`7=|ao$rf1iyI90-@bLLqq}>7mX=oVmJ=K^Gcy^PnY+G!epes6dy%kC zrt;wU#T-L~R?4d(@j$%B1GRyswAD2=H9hwcMAhq!Ei7)Nop_?UUQ_tgGtSMMHw*TA zPJi2Y|4_u0neRho)zyqwu3SmdOkP&>>&J;fHW{6(`3K$Z|3Y9)Y<}Sx*U@1xC~4zo zdyJV!@dnKT`g^J&f=BP$B8t9=-rm{Y?|b?3!u;uDX{~SGuwb;Z&b>ZrV%O){QmgaV z)ZE-L7noU=UOac#vVU1nKmarSQqFs}F8lT|6#bram64Ho{_-WmojZ4uw9?n!KO7T1 z{8B*V)U)RgkEPV5Xo+a1>9XIye;@JTa#R%eQ^(rfK_pWSwcx(x-k&&HEBL8FepN=`L8|17zsFo+^ zZ)O_3Dt+-{Ats>g^5W&A-+B*FUY9N{I4iyiSCY`xKZSU(_`=subktH#QEKnry#w!3 zR#FC)0o-QeVi@0x%dub;X_Sj376?>+OzIh!X zO}BpidK$0M@6Gy4Fb$03Yj$|(W#s1GX^HU4NuDIOkfn@`v5M`|vg2j@i*myO>{Y zEk0YjAiR}l#fpS%ZZR>jT`9-YGEY9hHmi2O?fenJf-6Uik8fA^uW*e&Gb^xt`^l$j zXU)tWPPk~OB_<{=#+KHK*di<}eECdez~+;Rl9I>bhg2+EveomhY+$(Cn_ihX(-?6athKp87S%g&^y$Tf(nf>{-*t@W>klJZ|;li6Lt2dHkg_#){ ztcZ$qN`dVHKYt8s6u9*%giBuP3(5PM6Qy$1FKMcSfs{{N50AvsN?E+eEa7Wek{7B#9~5f&EKQT%%jSb&># z^=hFfv;M24MLlMn5*|D#tFLFnU&*UQD_l*{O7DvCoGT$$PS@Xop%-jii$G!3Uc|)P zt#)m@>yM67pC#nNKfbo#)c2UC!+%E6Khp0ruT}7qKL2T-CEHbfl|6ep2kPVL8aNQb zt9h`m?-VK8_1!3)h?2k1g@IFXb5nSzne4ssz?}}fk%5V6&(58coZ}Y;>V2NgdVaOY zO;0SewK+>mOY3sXwJ5K&w6ux4Q-?JcFJ5d?A4i9KT})X!I#wVl+5GsTg9SzBIyq8~ z$ZKeBo-!s^;4pM0BSUm4x146|>+s(nK725JRvYK;}B(l#xXmzPKKJ0){>4K~phmk)1H&1+^VV;+#aKGbRzx;Xd*tVMdi z6dJmcth^mNcG!Pz+|QM1`?)bW&!(H6G8k+~w6?XqbwXm+mw(6FhkEp!GoA zy1b`Pt6#s(vpM7B?A$r{_5tJYDoL{y(TeVj*dhz*=&G0`8L3B)9u0gfkiIKve#MuC z=X7VOPni6LM-uJ`68jDx_C?;PjoHDndiCo3-Uvx^dJz$k7ZnuG7`Cwzf7=^CscJON%X+9e&8YW=&nTsm9>Ul%MGLp1K3h!vVeQ-EbE@3H;;u>uCP}dg$Sy|hj zVp+9&{A2>GePnYzHM(pvu$fp+h5BoT;2((vESL<(9m$|*JL}**|XOW_xH&% zyv*}x%(Xm$fnUtC!{bFq$t9byu08n<1dXFIU~JCyx)Hz<9UVRT<3|N@(KYOx(=!u; zNxC@?B@Pd_n^csbXFyBmqG z!uI#2Tf)(S8+7{lV+%$&YIp|V?2$T$(7?0(%E}uTsQ@*_9j-;WpbqG6@q4@HoZjHK z1EE_()b9E&UFF^XCZ-#RcB=d44rwJ+l9QM z@d^nEX&H3>j@w?N=*CIaAz%q$JI;S_F!}6y{M(5dgLPensC!W(b3G*`wYWNdi~4P5&6YT>UgQ=i3dWhr@tBH z4~mB$H0{4tL$W-IvfZo;2P+c1MO}Yb0fd8)#!G zVux#WSNMknyo@_^+A2-^aa?ImDQcayJ1df^x*STr9E?#s885t7SvmN`JbVq_9nRy4 z3#^_PYGzrxb}iOEyP)QC%x1{e3!@!Mrqev0vtlZeEZlOJQJ*0v+(SYz>t~n02rSTr zO0HoDAE2nVBKOsyTTeFRIfjcH85kH)6siUxls$HhKW2Nreid zur8N?xDlhGGRdu5)vWGLUEBk-j#QLn%ME1OU_FfW@McmfTFyb0YpZ)>l6u{{cdsY8 zeEt-5)<(68)oV{gY6z%BQWOC~`kudXs;9;EBbJ4#Z`{6}8=F4w!q>F~@<&LY@2ZWG zZ#ZKby#1WY>KE$UHQ7|Wu$}#PRchO;My7ao>cnapYlBa#AI2ghb=1Y~rdG($(60Jw zhyX})R`2$D6c&u{OD-d1$bS0tiFM(+R!?STX2E7sx|nLe_MDqu^d@G9??L`cKo$-1 zyi^A!nG#oX+_uAe?{ck2dNhG!sXE)YZ-04KJmj}H%gL<)y0lcg`y}_o_wPZGkvCB3 zkZ^C_lv)Bvm1sO9cm{b{(S3$`=~NSN`}T6AI6q_ybGMb|9v^_dy>7&g;@!!jzfj@@ zUzuv0s5Lqi;FB6(08hsv_5t4T>okO@_6p zYYBA8)_b#tNA>KSK?mj}pKJRTJNjyo@Yb*h1+5ig`uKbHq8e^~B-xM$4n`i0297sd z>zkWH&5E7J_gd*9sLDBfzDzb?NlD4Rg9kMW9(}prANs}WeRZ47hAmqTS>4S$Uwvmw ziX->ar%!b~7iRDK^6V#Alq5HcLqKQ=LF3tDocmC>MIN2&I8C5Y6N$T{ox2Br1_rWj z;O8%W|6Zou{Hj2CQ&STVNQ0BCii%49SJxk3u444NkrH+p81U9c%3cD6@B$gGHP`Ze zuI1{sj~^eKzU9xqZEI&|_ocm<2fMcvn}pyD1Tn&DVbPX^2x(f#s}FIu55$r`pl>{9@ch-QCE#$HOx)=lnoVsg=fmF= zsR9OvJb(X^Zf}bCZX+Zsc40(sjjZiLs-vsR8%#rYN_x?*>2JM;78b%Mx0!uRX?=d}qXRp~U6%pLzaXdts!l z1Z7Xg>2k)zSBRk9pst*dIRl2SUI>0sULJey_1%W3CHY9W7eT0;!BV8eNAx~EInQ%P zL_Yv&$KunoRVYR^W@yxa$H+EM-hx>i9Um{l3Snhu_rWh+`0VtjDt^QpuoQ2`Y{B~U zF5(4XFMkfcD=|Gn%2LohYI;Oni8VnbXT_D8n@VnDT|T>1K6PE0XQxb(j-_xQ$FeP7 zehDeR14zX7=F*z00F)R?X)aYP?^DGdOgqKwEZ=9)?5sFLb2v&a@mr9%j*8;uY9w0! zP!WAF8oI-7D9dfvmzW%|+PmHvRl=@ayHp#yxkwRVxM(>Rkshan32R(@d~AIDrAv!g zP6Ny^Ffcp^Ra2jDXPkY${gh#NdeICc3g9wKd>~%K8PVbIQnXkQ-vn;mzHI~4X%Q12 zu^gCJ8K9uP*weEyRcAS(#(P{M_X0yicz6lIn3a_k=XMtfH#fJ@uJR?9FJHa~)H~gz zND-6_oJ2#dR|!x?u6kGNiD@BBAIn;W=a{AXg#EYOELq6jiy?u#r|LH4g=i4#@oT0* z0&D~c_Q2z%c<+*wtCVJ_@Mqo$SB%{`WKd~|G##%qm8%Hpv{ z%wPqP>$kV|GhnE=gpQ{YYz{zG%CZx%_gWG_^wKplN4So=&rXfiy}ezmS)X`dW!qDS zC7=ZMAYuUiYH=RgbDd+0ftlI0sVOI6{h~F%_%Gik+3KuXwQ9dUP)J!_ooIVg+R{IR zPN?V9Q-xfpxTbnT_3Iv=Q9;^X-`d;o_HF0auQ%s@{XCGKgWEw-n&&XY0Wxoczj8!~ zjOx|A8=Fv5&&Vk%o-!H++4k~v#IYs|jrV}5KDPx9^YQc3s|2i30&Wbh4UGueV=E{l z!+AJbfri3Uu)6>J@!Bz*@FxILWk_}zZqv5;zYYL%1qNTJ-+;K8h^pLo@p68Oij0a9 z18k#K?Y=rQJ*~ulyA$MiL$|T`YEc6UtRF>z3N1s)a;(Yu$CvQ7Nh}hTub&EOD0#;( z&%s9wB={*(|bu2S!Zy+dvOysAP6b1>(`fD zVdj1)+Kw`WfO*R6!2<#43yF?}D9uYzm47QNL|sA35{egfKKTA1xr(zPw{CeOVXjFl z-sQvC0CcBtL|$ZmqN+|C8w+f=l~q(+3qIw;sq6XfKcxs|gxRhtR0NZ4Y9D~W){R)i z_-d`ZgARtp2iWO_hV?|X}UwFDe87Kq92-I&>af^4^R@5$emNhn%C^zL%Q9&cRvGJf?~cB+=s?d&$J<2q75%}w_Yd@7U&%`D;&>^w8Enbb3w z{^isW>{T~+Hx>%K{URPkH|pN>{wFeDfwIR&KFT9W>wms?JA}WImU`dXT2@nYa0CJA zQ75*l>OA#1J3HHRYUo``=mgCwM8W-`l6K{lmEFUwPe{2=*c!l~1Kbh-PnSOyTzF+9 z6y)#E1cl=U5KL$J^_5Bb#fo4D0e=^fQ37e;^yAAaLb~Ja-N?`~AQy|Kx~{vm-$(fE zo*L_BShA!HrI_{Htn<=U;tNqrg29C+R>?aGlR6sm!9E^6 z5Tu)KjNCdg&$;cniA7C5MED_fb#-e8hdlr)^$0>Fy zX7cMzWH_R*5ZW5Q_>#ncm58`sf!`j%PJ7?d(uJ6%`a}f^8xd*n$OJPrA|GNsg?x(+ z31Lr7P0h~Q7Lt*Z>- zZjONW{AMiW9fLz;4*lQjJ+V632%sJRV>z4pVm^Q|cUo|G3n|%|Nrd6*v@=lm8nW@Y zf@!ydgEurjI(dTP4Hi76>NMJMu~b3j=2~`AuUonsoqFc94mIt;_#dt=F4bFxy1H%+ zi_6K$m105K<$N`3Oj@VlHg#mU2vURA_}0zMP=;u{kZdobSTldt2HJy;o12@)s}AUX z&DZOxzkiH;OgU24+A6OyguL@|4EM;!E+G3_54s+EUu~37LPEmXf)Q*&!ufLbhJ)tc zEc|t3WGlt`Wq4T9%=5^Rzy@c479Y@3#;wfy`t57df3}`4ez!?QRG(mQ^(uB&R$eS8 zlZgu%ATfY<@0H3mG&Ec`EW46?vZ=Im*I*{hE{G1xKR2bN*y;!g33Y-}YiRdexpHOV zkgU__Jv>A3Bi!eSyCMaV3Ht+HOCFYFDCa$U>_0 z@Qz;z*#Tg4vk$5P0UXkGoSU6S9!A`!rIa9oI!%8|oN(zIZko^svC7`W1HVVS!&wiO zt9}D-OH_I=Po}&ZHY{AiAxu&BU*59;WopR9#Kx}6J>SlZpyM_*3Rz<5PF>x*Z39$S5sBgH=!^d3O(*ar`MK?}xW969CeH$6I4cn$A< zwWS%5W#OVlWGN9gH8L{N;M_TSNXC#~@8S8iv(7Og@!lVGihSlWH!F)ujEi#TsU z$kj|KDJheNgvFps>*M_b0&1H{^&iv+=EVT<60tHK#46{ub4zJyX-B_&*mf{V?pS<~ zENDFp(?vw4c&wL<$B)UA-0=7B1nY`g_P(;#et~&WJT47efp7+xfB>Qh zxqSb;>Eu(1iHQjVBO@Pzj4?-L$r=w>IXJE$0STt=R#90*^gC!5m&kZSbR>!nHY`@! zb-WW;Q*SVnB2SrR{N^+=f0D)nW^z*qFeJ1gB3FWguLs9v@gxzepD4bNgBT&KCC0yF z-vBoOz_tMrl1Xds7K9svvu76qd)?rYWYkJOwFiW7VkM)Fwsw!}YTI$A$kg!%5al5a z)-*d}kWE$j83fmI9z;p<&)39N64nKeJzPi_s0AKVoxZ!Q@Lu)$Qj&fD^%}U{59-GK zBLw(e7I1c{*T4At8!-jYNu%jpJ zUzdf<&3Qc_U@s{kkdRS$tOdyO#cc7dUvD!ppl;EY$9DDV)xfH=+L>qf8%l@b6Z^X6 zg^+(fgl61!mkEY|fB>_8F;P)MS&3P9Jf}4y_^l#sV5;&Dq2U57vu|F9TVE z+w=Lj25+g}sKm;;a^)gS*}%ZS3P(GJ8Xer{MmoFW^<|NS`V$v5W@9H;jZ?UO>e;5 zGWI{5wO8q#Aybn9Q`079NhoqRvE}!BwkD5?89$~scf%ri$ZVcLZ@%IbQ(tPFuk3Y6 z?Msr{@g3$XG`X9mvd#W=W6OQnB&DUBKQGRQCU(5}4Oh%LfA5E7T&X2osp@)WR0nJ4 z9tJxO^NflI>hbqJ(wkA?ihxK+&BnK__=3U{q-Y?0? z_4nL%Xo`?&mVkrtzq9|qf!z?9y1KdoZ{3Qk7Y7ako27T^ZZ#&rc3 z@R)Z1^CEfSO+*9E&AoyhQ<~k@lM3M)L=P`&scxy@%iW=vZkgsyNpkZO=_DDJ#Tbp7 zgph7vX~~2_(Pywmhx}a$7o9$tSlsRI+mRtBxAOA6wpqBGPtY2~f)ju$2mk_aksp+_ zw4_@<#iObLcG0z5ZSLmskA;@8*Cr|G&Ydf$Fp-l-&lXUqkpY6pemfka=o25me(BPs z-?D2l#$CuQb6OBwXI?p~;&hG)+vl;3$= z@j&~p1&k^5<-*fZ6eR3ula;Jz&YTGg4~M;j7NZZL?R0e0N_KWSj1r>&1M7?P6GQd(4`N|-?l3yW{rivQRYT^hcUifLSTds1g>>6Bx{11k3^ z)2Xs9BvG=olusq<09nzhg7^-kBi?oEXq=tBlX)5T?c3+&<3qP2k8FZndyP+Fk>E38 z#)#DJUEhROvbujJ8-h_2>-p%>qsS=9rB;k2jt7B3y8*r);Ht-k8!#UD_l&?PTqo`z z<~?CZJ-_@+w$i&lsB#+5|W_znl)=y1nZ7h z=@6KC1Z9$86+LE?>~)k_!Mg~7ai1M6W08F*H227PVj!r(5@h~JSeBpS7V-sj2#N!5 zOEDf3rt>*wk2c&n9X&k>wlgUB#!yMnS|EufV6mQo$0yHmnCn?#p_u2Kn~yUg3z4)- z5G*`r$5hs3-@?W|UCTFN>FgN1Rubx_3d(G(!#ee zAb~78QtaU_teedMgVmn+z5WS zLaciWp2AO6N|DbOQ<21wf+s&$8+jE|pI1<@UQCRQ3dC02f17_DmKE@$3hXpX@)OCF zlrO3>}xdwTywcA}1zU7BOTb$QeA;^P(=3KqHtgUSgfK8=0-IBoI-~`9k?FtHw zR!=g2_`RB%o=!gbtBcFI67J$eZq1vvM>}zn1R+O>5ZST zDDwwVN-7g&?^8eiNYE+*4=KP)Z7Eh5js8MjN99oo`{F56+C&hj2^FCG#EJ>Hoj8zr3+WJ9ZrVeGrzh@KbQ2IE_|tj;p&5Y%n!7)iaY=-HSY!fy>Vn)C(VeO2ay_tlm0jw}YAVuUrWwjdm`(7aS<1MPn6Uhd(f?TpG zAhAq7J@D@ZvD2pkLLLbbm=%b4YO`YC_H)58RUktu~auO9fD)=Jj&HfnmXIUdhA&Qcmp{kj-c2eTPNbt^aoSpb6P~Yr^PS$&>7_1)Lim@Sg zW!*&_?CmoghK|3etSkc!(AU?88sSi`1IR2!Pf#ZCM-Yo-K!DrtcX%?xwmch%{wlc6 z7>q>SAmtdCnJeJdBf|ddw^t&zuOQdN+4a{lEM82qESIzuai2YNn_ebu)%F}L2?24G zS3yBRTPE0(o$!ai7*h|kRlX_M=VKdxj9qM3od;9hrtw8K_y7E1k;@rHnJEU z1)fmZ#FUil5PS|4zlG4tc>er(z&ZoSq^PCTpX$NkMc6X13&=urZ~>8+Pbz;9x;^Hr zuPV~j=p-z)JKou!iiIm`EN0xxWyhgj|2%R}HTjd6vC*ca$dLB=y~_`LCuj)sto3-` zAs8dsb8~ZvK7*C(k6SCNtyMFeBkCf)rvy3Fz|?fHzP^55etsu>i}046T4zDiEAUw5 z0?;)32G8__>moz3469>D+dILT?jB8pFcl*mkR^H8K|x> zVLWLYfR0$0oq?(@uCdaRz{9$d{_ZFq&GVwtQ6hDJ~e7g2l3_S&++qT_&y)laGL+`e}lEj{m zyXAZH_G=Vm^60ah_t_NvF=q4%4yKRB-B;vyQL!Dh}lw^szQ8Q1TmIAx8 zg-IYEuIZ3h*LTaCJsoc8>FDqx?wIy={gH(OSnFiXJ+&XCb#?vemKGj5*#Pq*>blBi zeNTVz!iF$CtC|xFFbQy2KpE%T6**U}+Fa9(nNniSIQN>%$MD!tWAY_9v?#AO)>tCJ zfzm^{dKtduO-p4{z%3v~ndPpxErFf2-EEwS+O+hhF2aJ(ZJV9r-Qww2m{!v-S+az< zx3+*)j<@~fhVj??hYeK^c$A|KL{$plmL8spY@u*zdsus6!mf_2H=ig1X{>aB8XA@ z^l3iIMBzrZQ>9YVI<7tN5iWp(_vYxRH4zyhw7d>=e0U3a6``@KE#D5hA|0l49Ruw` zB{(4pE*$R7#1f?L*(Q~HOIdg9Bt9?Hn75;4aW^g?{tTdtO#g_~Q&;=+3Q{A8#_B^N z#~!W-SR?EGM)BuTVkAPbh@XVCFf6obxO|^C1CsUh| zHrc@(gc|gtIebo-P?NO8vy}&}SIIDX#R1R8Cd&&j0l<`K=b+d34tLCkl7sTQapMJ8 z^CKz8wQ%rX zrGEw=!(SQcfQp@}(LrnjkPrrt(DVj|CKk66@P_J`UXVnD3I<6S>U!>h9F|Z8sLavf zC+!a-1(3l&$2UxVZ7+Uf*ScSxsGYp=(ogw`x0|xIx7U>W2$K~+2;qQF6}g4)@Yh@i z4G#uZb%zSAW_nH2g^=@ONXB#JLb65zhi_QR30^53Np(1q47R zdG%VLiS_VZuw0st1jdKDeC}Y8hm2p}EzG}h1@rVgs9RRHtZ zppSvH7m8C%`QQx;~HQlel-?MUZ`ZYFc z=ARJ~_}Yuzykct$+2ZT>-tfA5burX}>p*~AK$Vc`X0vm0%Fh@7x)S3tLkz*bg@xNu z==C(Mi`I^~dp8aw=!X%J$5CBJ@?bivs(*85-$$E`s{8f@dU(L$NDmlFt*ZPE&K?Ql z8ZN{E^G;BKc4uGT6@WZbdp)ynS<&H7e|SIvAif~PDKVD`6LggPdm-R-GXrydBJU6j%;~_B)ynVoe3N+3!pIhFM z7(f8Fb|LD$tCfeF_{M5!wHe^_N#au_f)^^9l#|3aid_T_?#PVWt1dx--Ee~X8p{_) zpQ=bVhVe6JoNM*!1uygJf}9l}Uvb*?9yD~wP}S^Hun21v-TV>~HYARtho%d|N>Q+u znywvtbS-t5^$86Ha-9AC)s@zuZ+q^4EOcE7Tj_4N)2sn-Og;U?Cv&x$YOyOIYq5Y@ zR(Dc+h~nhu0R<08&5P0Ik>5*J0GaO9QWnplFG;v?SoP_GG$h3WS{?Ydzs<(R;FPvn z15!G%MW@})!IIVs`?v%SX}H*c7lZD+u5z7zE#1Cp=|{jz6JXfW@Z@tsZ03@(@WUos zCn(4WejI3bFa83F$QO5X25N$g{Xk%w93U(W1r6qXp{q3b^30FM)DeiO)GC2n`Kxk| zzq1L^adOI=7#~N3Q{5eL4W;QAetQ~TO&O)oK3KccOLhrrpITX=@t?6+MpiLWc6R~-)E>1T z_*42cv5FZdS4JL_Az3L5$Fl>{{^orc3pGhC}f%A`|Ko>o*ZdgD;B!C$oB?NU3 zSarJT{=AKHugDDYsa{$c&=DLodjW^xvgzpU-59l^?+Fr!&fy9Kz?(3)%uCLL4`QgZ zk!@G?SyqWF%dI1l3b8a`#hn3iv>kekm_o7=ioHSE?7JpSsjH|CB$x)#5xO+6Wt117 zz=8Cum5FI-mX88nwaK~uAS;g+r5FrKIuD0CI(Sd6`Tp(OQBJPL@^U&V!>(T~@q(Sj zhs-@f!y9K-ASv5%*l|3M3^{>hkicxmK?)F>>4>bEAHz#_{**oNWm8FH$VI|Y^vv&V zeo;|YEMd^r3j=s|1Q5F)>f?s2tq%@{d!u7ab^JH_&4@bg@%z^Ww_o3zA$4s;Uam6c zP`ndGBsfE1gQxJ!(=2FllasJ8$% z*UQLgTeaXTM)8p(y&niLL__zwal3rhmY8Q&tt@!aDPVU7s>MKK@^XT9#_AICgIXuQ z!EH5#+d>Ow05UcBsr_$Xq-Pc7{vl7!pt@`jjpKV90G$~q`d*!y600?gM{DFA54sFP z@mE0+8x$5smJ+eG+P*?-<7u!xvMoHaIcF-FsX*8C@@{ePwUw1dR>YfMR<-~vMVO>H z2V4Rhr3+C%ks1N0B>=vMmxmz4uY{juw5Mu0g2Wy!#T69HsGAF=l@nz9glWmj56k*? z4Fex+Sj*>y7@XqNp9;UYxbZLWM$k1Ypc00NqMs{F+=vlSnjQ#s;>(BSsDVSSymy6< zOfT;w3M!H*+@`GaZ!dr@3vz|seta_z(NHw*A5^lpm%v?QI1cOjhvqzfT!P(QUvT04 z!3ZfP1iwA#za(BZEVK2fs<3~i#wvM26t|7RiVbf3mMhv`md>**q_#S=Tx6CsX(Cq= z-lOx&m!-&SH#o&;Nee8}EU`8b-5g+%G{A|u&)6pl5RuClW(`y^3p6w|NJAaTeG&a= zB3VGe97e_xmpty|@eSi|Jvnj`X6#h-tvs?Xl`(DD;D2TLv2s+xTyaMuY`>klwor+f zU_g{-*mUnTW%&L@^O4@F19yZkqE&%Zi?B=W6Bq_Q*3Pw9cw-*&&~ZjFJV$gp}%9VwY4abI=Q$WTC@51X#&#qrAGFqf_4#HdZ`A*C1Gm`zW!?~ zFR#%d$j)akFJE;$$ZZ-ghzJqG&xis5w}%ht|256|p1(b;?rI5}gT-4yEd*(hGoGK9 z$3QIvp)r^PQgE@PStBc2)3&1PBUz8b>)z)#&+&0OtfE-ZW!}(%KsRj824{ul5#NSk zG#T7!3JvuPe&|UY^o=#-f`k-0*o<5V z*?4`n)kj^cpOT$JLqZfQ?5A1o?d2q89!tLt7_*Qftx*kJcb|pw@$m4#LIC?%V$O?6 z+3~SEI;i&XhMPBUmS)2#M;gO+Ay<;Vvl8eGNk|)qQyx~eY^7!xLB7dx1zA-W=}pg!|STkLL$cXBDMcivc5DO85p31e^bpD1Tha&(i5)VeFk*~Z4)f-tAwh@)#Y92s zO(iXjugryv9pFA}bsoQ)h20yhW?XwT01@K4Wbm0~2uY`R?=*_83* z$x1yvJ&C(o3OcoICCU-du^OvJF5R6?3er$m_glhz^wQ1JG8RSc-6td&w;3DFb?iQI zt@Wq+dk4jGlpd+-nne6q3!$U#I1~Oq)o3ni{CKZ=atQ<&x&w;{&HT5Q*}$J}aN=4; zXDfQmWe*SOJaZC*Xqj0540Gdyod}x=5@MdhyNy^Ef)DY{$Iv@^SQ5&t-!*ZReFp-?rov_=O-h4Uj=0hKj1=cSYS2Yw)6 zaE-sca%8*-5>;O}{^Q4$#6%-Q>D_AT7Q_LruEt(|P-8_ad5~a@Jz{THluMz`mG~oY zXubsBuJiuT5#HRZWh2nK)om(>vZ9>8O?GGu{~v0eC?)@V{pXV9zmuW=w=~fI^nwjS zU+7ucHovufzkFjl7wwTBE*{k<{WVeq`^|+Qzl=_eo$>FVM9UEvq469hWlagcVwQzU zfvz8$n^(eIPh8wKLrq(>b#ykL{Pgziat{v=k{kgja6-a;8^9I=gcVxY1YxLt_39j} zI$P;{lv@Q>bW<_GC~WHV^L*L7I(#jI^hZ=x?eCp{vAhdaJl%UN4nc+O+aH7EAl4K# z76bcfh4nwbxBwTu1jr#}*|On+_{ita*GPUtVw zpQ(Q<(F`n?GOk@i5(xaCJ3$Z-LfN#1oFafuC0gpv)|1z&L&hg-CD2`sJ?hsuf7$Ki zvQU;F2ff`)1`|tTBv?p`8D3n9LYLtR2#gKcP!~G!FxGZIZx08LYDgw-4Oi4?kT1-1HfQ zErXnA0S4mc5g8O*xazgY+$kJT zAwk^(-)Z~P>&^X*Mo$1a(B&dhBGtO{u3OJ zv7q?@#^#&j(Y{NXG~r*9arnG~cEN(jz(8qFWP#eDhh9W8Im}sg@LembsC1*iBR)i6 zK3~*7$Vv}S9&YNNn*%hHLA!KrM0y93AyG8pR}z|>!ChK+y;z*qSTpFFjP-;+^T8&J zz8z6%=}OQTnQ7#t3!EGh4-iUPyzK3Jex`3dk-HR2a<_|%9PvG&>4Xb*d1b(w0B-p! zuy%FAs~L2HA5=Bkc}dlTrl)#zhZ3j=rRN{^R8W?*6re%xonND!3m^!^elr8nSnD%EZU2>A^!y4r&(3mi}XA0rq}lbJE|LzX$pPAr0Zw) zN9*}{!mm1qhazVh0N@OUH-|sr@oMQmyWIVASk}H(eW|5ybc|~w4Z)2xaDn3VhV1-b z^qOOJM6bCfK=hh_u=n80_7}dwhpvL*HbA!s^p=29ad;vK@T3e-Zql`!YAAvpOYJ23 zjEjws{5sF?pV^54732jW)FB^-j4+}ll(8k(@;X`OP$yu3eP`Ah6&3Xu^&HG=Cq}+Q zYm5WXka7IN2?<6Ng?8er>le7sx{svC#OPm)2`tFVBZflAGK@Qn|BX0v?TsWI1u(pV$A1X9G6c*bHMF7LG2nRrc zSKvwqbVx8Iu^!V&D^jID|lyT9FddoIs*m&@Sq(SBoYKUs=Kj^2QNC@aYA z#HUW^2K1dLn1UxIji%5XH#}iJbn}4a<`cQXO{qGUAT1lrbG4`@;_>K=<4sBG3y?~z zf3n}=DK<<#MU+E5&zO8nGYpOjl!f(6{2pIOMwI)hl%hX@iuFqhstK6h9i4B|g!DzuE z3d9a128>I*XsQ_wBgr^hwTuc}%{PG<_8y8b=vEluXnfWgf1j8jJ@Bs`mA9fFziYnN z+^18WGz(gbGn;tmnQ4FvBN`axg;~l}(Z9OGV-Xz@#Mw>R1`vfU2x8r@4*4mJZwQDrMG`x)`(_;zKt~|I>2HdgvsC zZ731szGuw&q5HETVPOmu7t8uBpKJmh{Pxxp!U?tedhq#h4-!;Ao*4BoAu+KN>qX|m z$QpQ(F9PE;cvDKO6h+RD$hSZb1@#<1OtEZiM7Af~FIl|UNpyiW4UvI?UU<0PpLV+- zN#bM+1m5FTF3Cp|t$SXwx&8QH9H!__>cF1+h*E1%$nAt!Kn|uMl}zkjsJT#+7DCX6 z%DUOo*XcnC?92(xU@R6;;2mx^#0KVUMl1tQSOO8v;PmOZ?2m8}fx@eOXOoOAY*`9I zlIHAe^e0RVJ8^oUA!?p!WqAMC^`p)aXnDE$l0p zp9A5()UL3sfVJBhy<~+R%*P#`d7T(1>0E;apad<*C|RaJfs?GZPC`PW-Ha#-ob^F0xd=m=AEHym zn;*itf~NWaB!hUc;gA!0b#Vd#a^(J;tfKzvmV|>ikE88z$nD8*5U{4;2VlSdwe<-L z!UE=8N$FWc2hz?hH91Jw^Fb6M8RM(=JevjHyu4_UYQ4S-7L}v&;HQ>S#8wyJk*oYU zKuCSpF7Ju)w`k1p8H89}fo03yL=J*N8^4}q!HY8oZpSzr0=f-OJCKTFtF8hfEub*2 z9XKKeq-8AlJV6mNzt-QdEr$%Rm`r>clQSEr|MQyUH??OO%GK=3wMQKuaNFHE7nU`r zul`aeyq(3eHx;r29?n$qf5FH@{H6cH$kQOpQTGb};^e2Np9G>BWX$|eIQd)WCGUf~ z!`<%3HvGL7&cRZ&OVhznmh%dd46(Z*XQ}$~%z7UFmYhSkUf_b_<#{50s_pRqi-zay z!McsL-5#zljdmXjIs9RyzKTHipc(dBg94N|^%iEE)zoviRSoYt(V%_eu%Rw?H_G+} z#P>l66LJz2zJFk7s2l81!{X>n$NPVrwG`oya2nKpOV<~_Hm)r`bXOv1aeHC z(H)U!&_z5U(rEBV1Qw6Dm{ws__@(-zp9H@mv1RE!z3v{If zz8ayCk-hIKBv9h1K!+RYhs0rMd3OEGR0lwFl3uEYO*6+hLjK=Y zST$I8cumOx4+M8wcb2-H0Lva*v0L+K=d!O;Xl1>#cf9q(2XY2Z!^dShGG!q-!Smz9H0p6{2xFhUw$p}qvkuWAkkRK~{YIduZZ$$88S5|0%H zTCnzAmi14VGQe1Y;aRk^g6;-*oBpSVc2;l`?+0Uge@~&Nqly$ zJBc?1_Dw9|NEsVi{6#rT1cWP{1={|jue@*<`Qx!0q}}N#sF_4j4WnT#QaIqn)I=i) zJv|=3zH1Q?4o92?x7c-8FrkXus#Teoo2r|`2wsS|xd~xSQEt(BI1^D1{Lw zR(Mbe9cZ&6x+rPCVcH`DHI1}xT801B`-Qr90s3QXhFc^Dl>@G&qfZV8tk6)P;~v(F zckQntHZZkzxZ%8RME9R&akgYVyn;wV|CBkNIeE7LwYZtTMP0zc+pUv_fSIrB8x+Kb z+;s!q8^Y1PdUfElLrgpP*K^y~=@)x!CvFAQU!Aezy^ zb<4hf_p{wEq5K1JEDE#<{e;4Q#U1vqjLW_*T_5*F%s2?XRH8FgZy~kz71`^`WJT|s z>m$S|ZJkH0S$olTs!#Y3F($B|C&q+QBEMn4NR3F(yv7fRj!#td$mggzbSW!1^X{sR_EkQR)X&0XCQmECNd6Mw5ITj==_F+dR_^VK(1*B^v42 zQHIe3vW?~>BQ?MvRgM*ou6kkVVL+9m>5fLk@{c^X;H8XCjR-b9eV~nWNKTH!qvmZE z??p*3A<$hZRG{$`XGYtfr|`|3XfWA^`kT~x`LUbIp=|I+GX$)bW`>LU&WRZ9N~BjD z4tT`m0WU+I(-F8;zF5Jcj!N^tUkGU-9`Fi!mc7Bv#3aI({xhJ^io=;%OwT!-GS z{6U-~^&GB&gxI}Vir2FdgeWhl2JG4qSFg$cFGLJeNE#qjy64@DMDNBiIBC^`fbWdy zMogxf&n*9U6bj}TClsn1Hg2pcY!6_$1oduD-!z0jih_R@{)gxI zhFCZ+q~Bn>BybHO;f=tYuP9J|ycbvd5eEIVQ!%#s=q8#kXbY zzDq_*A=(|zFtSVYTg4W!KSm6j+`F{q3a5aQjp$A|2XRX{?@OLFv^E!K867U<7b1v-psmnwXF?p z$wak)HC+la9zESht$T%G`jd@AASd(AT62% z=Hu@~;Vw08LFA~z$4ECkBo5N71yP=uN{KxY`*s%?!rmq=Shk48mQ(^boZu=6)qt(! za1uh0pbG7EDL%{2$+^irEhS|MG&GbNhCMHXOy1u2Z+iwS`69I0EB1-OUK}Ifbz_~M^DZ^z zgf(`@Yi*A=6|m9#k>C+C`Fe>2iKuy(kRG5@C1}~y*J1-PQkP-bvgki_@Zbs@-EsQu7k$YYai!M`yWoZ0y*cNV5X_7 z{CqR2H*C4bhgLk8j8AC(ck+k!`g9QemT+jRNZQ8d74rC;^p)&E6VqO$CRhm|d8Eds z5z(Q9>*1fDzT971{i@xbulk+_gS+lO+4aAElf+4E)P6~IAzM#!;gE&UE6ZP}p^-3U zjjmVlj27?EQv~ z?tPGdIXpf-s7;g8LY(DsLNFag)^xSh^vq13$%)LSIu3Neb!ji~g2nE^=!{75EFZ;c z*8FG-4zv_HDFwk4N2(@LJ8=k0V2fOJ?(SLVH#1Lo1)%uz!%4ds9Usg75(QP?QVd}F z8DI5G<{E9B+j7Itk9DCED{=KxtnfW0*@nXymZ zwpYXXf+#PJdysBK|I#!xNPUaH^3>ue(pj3(@}TS2uT!(X9oQ`E?e%+mXNLgcbzd{X zRH^w==b_0r=_r6lba-m^klrsb0Zl;hRjI_nO$UV*G2;=GnvXfXP#+7<}!v*gj}X% zo}YF0yASCrAH@ec`J(bhgdz>&ZHz=+ltH;-P~>>+DDhT%^T z=K2AR5<@)#1`KL|f6+`wd{A z2+<5TM&27>dIgVUDT~PeNr6DLgD=Rxj~~k(&Q;UZAK*~kn+4JyVLBj75C#YY0w+`R z6C+dH*o0)8N7O;BMo>He6pT0_p$V^675Ez*HB=A8t_eo8e^|J#HXjp#PW|8Z!iO^d z{6@wBrJllk=XO^f9l*8!P@dp1p8^eJc>OLz!gR$G`U(t%^w-1;0_T|FdTn5eM)vWt zMH>6CGtflTHvCm10Qk3&SBF}_09~}{P`x=FI2ph0A(Ph(qXri}%v}kIwg;;H8>os1 zam5;*b%n#gs4LJpf5Y4l6+68$`$JZ4lul$&*pi{gjBjurD2S!(b z?cgF_^12HM`!!rh;`S}1nI4^wA&A91m|Q40qO<+-P24H&-QT72Qrnq4u zy9XG!5u60_z?_`IqP9I0GOKt*Pq|B2q#!fd2&G^?MvSnD=LTkVU*X)wF)74;A|yNU z5T17+2mCKsj?0DIC6F<|UA-#LKoQ=wg z6bu+lzQ%Os75|eiXSixaQ?$~>(CNGZ3S&dH zQBe7Zyj=Jr^us*_(kuVzMbH>YzXC2esup$g6Ff)QI&s$TY2sG2qEhq$Q%gNR~J8fL9>PDxB;;0e_+TWVUYn31T6+{ z?rp#TQMq`GxDe%QX*j<(+-$>Y2SOPE&d*lrTnA`e0Xk*e3oDf84uQTEsM0FnZ=;l; zz=YfI4V+R*)V4bq7~%u-xHPi<#PPg{(;YV#gMdRAv8W1n54yu16yJ%6OJ4rZ4FMMh zSi~bd?IZ9%tTI=0_~PX3EZeMF>P3oF4D&t#@go{NeD+%(qt_7%D?B<)#Hm$dm<{OP zxbX*QW8rXuG-2AbX%m?p4@?HLS^IwS9P{J?o~HyDpgf;%ZCDX`Q!d4x6UQe zsKl#GdC7J&1;2!J#6LTXquzk{iGCA$J|X1Z_$;QrrDqF&3T6ZHA)61zc!CHW>>|jW z*6@TU+;a*s8Vr|kKM4NWW_O2*-&92k1tLl4QcXmDnf;|Y$)!Yf*kg1ep)05Z{3}Aw z!^{k-WkzyJk-&*w#cmZ0!1Mq7Ioe&UZvLEsTX!oS1?e#`>7$Sl3i0RpZD#X?iCwUK z-a#&4#&{NyR=HuPm$muF=zp8STa&JyAU_#QS#Y~p1VAWLldjjmQ3XffPYPj_jyq%& zl{)F|nP;(K04N+pjT{&mDe8cotm93yx= z+dS!t9xsqqPzb6$RYL?X=(fmb1M!Cr)K#J@1>YaCgM=?7$*Y5K5=8jAaNM7aJ~3=l zO^g{gmb-1BmfYzIZZQnX&vN+-m^A%~J9KqXP^xZQ&1#QP@V~H&;DHq(@zFr#cZ!ei z0x@=k=O2hwY;{rHjh@L-hE$1uAiCpRW9+Jh`j{Wx>Mbj^SL4Dr<)V&aB@V_>Z%ZX2wDh+F{H z9As<{()4k?t`H6V@5r&r%Xku4};J%K!u#|?=dBO_xp7^G0I=GM%ei>PyV&ss__U22RF@xn+Z z8fhH1Tcl(ESnBM6lcqbo9O|2iphk9i{Ldf$f2cv=m@3uW5G9mMM%n|yRD~s4G>RKM zI%3mLrVSvzhl@Bsbco9N_Z|R@AUQZWA)Wu7e9&v!wC7)>rN7%PnU{poVS2WYKsw)m znnl(_AS1A1Sw|sjKECjT>-kEmIjme6{rZCDpr^b0rv0IpZz~9;^$>uIN|e21Z2~Sc z9f3J8Lo8}5`yV>LDh#ksfwbTgTr2G}+W9;1T-W;XE7i#!NlHaqZ-ea>7@+1=)j3XOm?Ai6-CcOG%-9|*6&A|k6N2%wMn zc08Ynu;c%al;z9Kh*^9R6X$G&E->{GlkUUk>NVgN&;s5e!H^S#((fn$1q4_@uyF#% z_fImeVC*|^(3jZUKo(V#EA@rJI&^f_S>eHwq>k}s)Nyz2+#xhlGHHilBZk6Th+&Gv z>U>O-A(U$*S`d3qoB?Q=*r9g#3B-!XmeFV^mgPufgKfGW-n3O9ny-U#8xn6HVhS-6 zB>X74CDu;xIE?B-)*&X5*MVB^4L%F8^dh4c9G!Q-^QQ*hEdv6->3rB4?Pn8{75I%8 zQA!b)adbuBkUznj;mlh3`U6NBSyh8o1MneYjrb>-xV@3t>Y_OK2>@e0-g*w8lsG!| zqYZ!``8|Ac3}mgKWP|qfD}dMc$XZi|jNieGC)_JIZ?Zxl2N@^XeF7rF8^kd3$q@Ju zq)J8Gl~1s+YyhsTE<(V$Q;^*O93;x_AD=UiqD3UW*)D4RogoPHk;*xqT z^Soh#=Q3fSqn9CTE(moa`TrsN-Rv$w`h6HmVghv(z8bZ8+ zO*k!>CTV9NkRRXt_uuEBAtM4AlI>Ak65bIGkE-sg5s1O?!8}M^QT6DKx*Vbbsj^_| zeFMeKDSmzr$mzmd-(u&R(7nqgsG3WV{9&5v2E|sl<+}Rs7~l_wt%+8LHqy-BWST( z3&KRv`~|!@*pHqd#U-H$0=^~mBZL%CBfRkA`ae87YE!#B-F$`En4sJ9z#k)z2KaCV z{!Au3qo6`w4+=}2ZP#7z?dk8{y;D_i#~&t2Z=%D-Dh=F=b0|uGVhBf+F|a~8q|yj1N?Tv3PJA~^Q!j}p6hG0TV!EUVf$5ONk{O=e~-Z*L1Xb>eR%Dr8BjrEOp8-+G9rFlvlcOC65u^C;6kR8!k~``Ek?lz zAUl!}JmMNEH1JinA%~D{JESZ}*!YIejkk6NUKS5=X=>{;#ye}!UA%%gI<8%fcqEd8 zhI>ws17K_$;K?WIG<}&?(gnVn$trLU5`OXW$+j83gN1Xd_83KIlo@S;g7dd*7F6cFm~2bI zSDOSR^zL8-?Lk?hUML4S-7Ecf8_D6p&I0=L7cOMtZ$U0U1ankqp%kwfK{Ez9O3>Sp zNTxretAl9=D$&=kUsKSwKI0lKb6?ZdXSy*I3UX!A3gvJL&?RVK zRL74PK`l+()(NQ(GCG?RCz0#k<15D%f4qof^A@Xr9w1g+C+yQxA6^nZO;;eb2=ixR zkz{7}m^^RuF6^9u-3VE@MUooC#!tJRpc25DmC}@SVXzxqaR8lx@Mhp=f)T+bv{R~i zS4$ZA00$H5OU4!Kb0VCYTTypPjNDc*Wqyy-padZUWIiv@UttzPObE#sg{W{4oCC%G zQED5nd*2Ip>>bLR_$fpdMO?ihgrtKM)06{2cYi{Z8zupSw13#)g;Z)g zP!;V0t97XDPXN(6Bo)`hfiiFtw%04V}<%)W7I2vt2(S-&;cF!5eS{0GhJq7^b zo&vFsjOwAECkwj>%@=l7!=LM&O3I+*ml_iXB@7Rlbfv>9ySe`wQo&^*s#u~h?aV_x z`$6Z=S`M5|LW>4b3^C_EaDUmVHbjGuumb|V$jV`iD2WvO4X_;CJG?s|bN6kML?_j> zNeVc_d*dkA_*0fZJU+soZg{<{p@Zf_DCOz|5GMnFixoek$V0_q6P}Id`XAyrTgiA| z-%A^}CI#7?|-oq~udw|vdUFWVD4Hb6D*gC?I?D3B)| zSML1p+FEg#e{U)1Yh;Z5BH@I)&~f$2g79zh83E|;gvRU~#&5AEz=g=_ zpidB(hl@HY3s=#PbaZx}hhClJ8x*FX-^b1^BVEI0A%Hh9SuXiek(~cR!6LZGnMgLo zYMZoqFtRafjO1kE)7Y?K1EIH|kwqy{s=ZA++sJ47oH5LV&Ug0(WfKSmVe<(5q;WZ# z5-l_c`UlD*_8{Hu+;*Ho*wEy&EHaszm^=jcA~76H<5og~);BP?5B~RX=70Epn8gM( zDO`>+ZK!csNyf)@TwQ{`J3LTNNcKw^ab-hIE@Qb>ndazK)(7db~j_k*0i(e+lew7G1vgz zhfRbo2q-=e9{e@jS&e`=Nl1{;DT1u=7A1DvHXD3TYzE>%gYzHY;Tr0PkEgqCx=Gmh zn^Okb3j$he8*j(lULx2dPFZeyXqLauwtwc-6|$s(agq3nd;$kR-EReIc{&>I4Oua? zA*78^n3o34dKKt|X+Pd@x;#F0blD7mo={N(r-fI1dtnSz`Q{Qk27a?O&yiDuyx328 zBx#ztR$%B54F`BGn;rTdq2u}&eyuM7dB8>j3UF)%tHQ&eA0MZehhTKPuM2gY5(>ru zex9>ms#N4mH0h!=LfLfMqP^)-<+olpHu`hD&cKMfWstRgOIzJvPlERDu`$>weq`K$ zO=kb_yQa%j-yemwYWkR?FpAtb6Yp~{-bUQ;blNi=XaDA=$-WCau_H{er{yo<(1tgs z(_YM#d(?z6US2x8_h_lN{|?!st{$#&2}dtzYD$Kj=Hpcxum$7c(6 z{F>rV_mz6*`Fbh;(&sXG$T&=JnR^v*hIWCb@3$)PI&ANclR4++?q}wdY9xfJW+c1l zX@p%L&fxo)XnrF6Z*dPj$!$tSI*aEkyH6R`dmr{c=Olp-@geubl=BUvr<2A!#Ve7! zLc4U4B61shfOwon`>^$p!GkZr9h1VP+q~?dcbOp{aYR%*Mb@+RtA2|R^81%EuWD6rjd6NJpHGvbs^WGhR;cDvr zXJ+s`;KOEsxJv$Yf`Xt<^5}O!MkH&X03mWXOu{Q=JM!EkIPZ`)1*StU&zHh=iy&R- zAAEBf(GD@7e?8Z7(HT4vRfBd*v91egA@Q(-Nr)Uen45ByX9yD@o3|Mh_P-WH@ z^=6b5<7X?o1^R4|T(G?}xpL$KAXt4;qvn{0MoEOLLSIkVP=IdrQ3BdTOuXN2mn~i? z*%BkQonWRYtn*LTC9|P`e~Yh$unh0T2P1+jsVD{g_4bM=`yf13u? z&pZ0c%bdHZz4HL4{Poz3lA||u2l70#W(RXUSJ!NU(n6ngQp1)lnc9wTl$mSgYxb7Y z*T0cSIIw!J4E7U#sT0*y|5NOzUsHuHK0`;{-?kKP`Bv^K@_+8b%vzT0p#6jMYrz*d zeWvN-Lyv{ZbUmkrrD@0yEG4JzRcoA*EDd6^nzj39(C2Do0-fRBquCu=q19<3w$8Wf zy}z422xTSrpidY9J7R32Jp6lVs?b?gfgSErLshqK0Oo7*62zI=XPk`QkPz@Oa02vU zkVi$>rq8=_+HLs`5D|S+vp!%AO(5iHaGfr~dy^D_aSltEiD_B58?HW|fcpwOudm}g zkjl*p^VD3X=?al&fdd_NOJ}=BaCRl(ltp;12<1s)eWE1mp)!62fioGBDxZkJ=wSWb z={s-hR1Bk0c@c*WY%=|?saO?FHyuh~d`1Jn!qA)jwSBvK==MuDycjVbC>&1KU4s;g zY~S!cAVj>~&Z?*cXfrqilE&O@D=_{8!giO_`Em;M;8RHGp5IXQC=c!&!73r5^e5E- z@rp-hFFUb7k`m@p=;+s@UR7V}IT^#%d~-!89JL4WKseNY!5gEsMC}RmSFsDc#%B*1 zOgAI35@UVv_c(V5$?n1>x|XVGZwsB0Mu|-GT%3_ zoUP0(0^bTy{T=`j0a}9~eQpWLs6?ZAs(5}v`W@7>$GgsLSHqP5G2+=t zZ7p0GdNfu<`m9r2)7gM9D7{2Oq9x^^61?T{p4ja)(e#Ot0VJ8i3BhyFtbJp&V;=CF zXYoVFyC}&St`C2SbUiTN^gTl&0uXrDh+IcC*QT4|Znl2%rwikQ9E-D7!wsc68jXoB z+vw+iF}i($r%WVMIluF%jlI0k$bx#CZFpUP&Jcr%Q$#U7cSl~-gI~Wbj1KKOE=L%6 zafk4)F^Pf|31~;XJCGE%fo0=>9KVJ-?jl4(>JZVS$?mTa%d11)?-;#iTBRdzSseFTc z)j4GaYps`M_gpuBYW*oDAoE4d%uTnIra(o?>+P;itP$=lugiX}n(sI$;pq3Nt5Aj| zfQRQP*VdaBQiwo3$Kx(9RViMP(vPsNT>P!B_-4S?!xI0kCeW;{qw7(W#n>?sWQfRq zFhfGb(2aU&^1^r8 zs=;^zsp%t7Be+v&m^AF1GXad2ZWENH^jET0@LP3yj@CS$qyV8Kc7~@uwJU{Yd#^!( z7Re>IHa917k|pM9{Ik`y@}OQDtqU3m5*JE-nk1&g*o*U2?Y$YsZA*8U-{3NJ*M$qj z5NWaSaqv1yWbdq^@Y=^!*HhH-^A|b1os_lkM2FMUm0brOHI4)BHU(mbWa&gj| zcB!IB`VS>L0T75=LX#trIZF9dXnZlGXdP2rVHr|_=! z+#J_FLc=yr;vazKiEOn6D7)_Ivm~NNK)Y-=(W5iK`d=t;%)jo^!m;Rv?Dgma21jxX z;{dlr2?Wz<2>*jgD(SnZ;q@Gt%fUDUr1iiWg+DMKzJ`d1)RFKpX%7YZa^hhE{O0n) zFs3GiTaEGb)PVH`8oqIj>&IN!Y}7@HX$>1Jz=s8ff`6P{z%CbprXr!%whJ&AH8iQ9 zt01mS1o56n2dLVh{?AZylx9O%wjGPnTG`g@6W(v8c^uvCE?C&K#ig|K*jI9Rp!$F( zMD+&^Pd1CqEiLH4NT$~QKRchAVje&mx9-qH`@Pd-QxMt52v@GFj@wwpk1v24C6ka+ z6e*552nqg}pD1tg$NXxD*7+zT?DbU`#)o;rUGQY7QX2aN&BF?;_A+p4JsW9YSvbtYLN}-9PC{-|1IvcP zoH}Pm*CgpO1$bV!7I+{2Th@55f>z+rTJhr#naY>qnmIY^^bJiO3QqJGZWU3F^J`i- z((m`r-rzsA_>KlNyt#EM^b$@zv!wSM#5phk#mDd0m|W4jsr`{%J>Kp~@AgJ(|8GKE zF#&*wcJ+%w+Xw4p@0<@Wqr6h8!2MNoQ&5Q2Al4?LV2ABJN) zy}WY}(;TgPKYdc_w;yZ)eF?TLY_1dF8bLezfi8`Xg0)^}VVg(r=)jSkUiEcpP;-6- zYC;O%8gmA(7z{Itn)G#ANsL94c+&MXS>GJTB+e@ffCF70Hnhc@3UIZ@y7kAv&1HJQ z`b@l?Js+}tGJO+;jNEbgh&m_+RARvKfs!HXqNkr7?Q8rD7=*BHa>sTtI|g>32(&HH z%f>Y74Q?YLJR|(65BE#!maj_8j*F%z3$OLhYn}UN$Hj^ba{qD2rG4Sd)~->@54$bE z8Jv`vTBm0i;}hf~9Pjfa$*?)+mPu`FYe7KAH6uTdkdQ4ePhS5!i}eEyn?$TjwVyJL z+l&v)xQGr;GERn1EgY0!8XxLu9E!Bfn=TKQUDHab1GdO+9ws{ZewQZJQR+Gl(3b*? z>MV0DhPSFrRQ2sEutmTS`58*3c!{-zMyG*5_35wox6{z|P**K07&zn~b&B_-2~))c zYbP?3)4LFHQ&0oOnQ>r*DCfF3{Rs?iJ7D2#Yh$ZRy=ydp186kvj+ZT2q-kVJqD*Rm z>Qr%flQn;mY=q&0VD6WmP6jH2_t0%8&toEO8e&}e)xzwyN5s#$hc8|$9Z79A<`PiQ z+SDSHmqtr1N|cQlU`3jV^L2bySAOE4>$FlDD5`JsxJ!QCW8l)hHfEl=U-_y|fz>%& zxZwPJhqy^j4t~{+uG;oCzDCg)z)I3h08m~68dRGUq>A23c(lCu0KKnh+LHE@w?JKR_OjSqt`E$?jG6G#K zOw`fFXGv`+DIrqX$S59TJdJ^o7{drSS0rY7rlijLA49z^A1SJVr6nrBJrUk!Af>E@ zwg->I$|So^7f~?{Jsn65mswa?7O`mv;CHIbeq#8{Y0joP)BCSjkBCrqLo#RW-D;e+ z6sA+w@10vKRWRjQeKc5>^Tp^L%gm0#wYwH8?~YN&nl4FH9H7?hGd&++=q+r9(u{hL zts4exXydgPg>^$c-56B%2f4427jtG_v2{d8K4X7SucMz#Ijc&0qZ&<9Pou#M2|7%~ z!6L06&Q>_8KlfZgO7C|yi|`o(pTa1L4!m+QuUlsw30 zNh9gS3V7p?a)%;+seD^s*!h>4&VqsUX#HRBSo{L4#ILws2p7?|S=N5C`Ek9T*R8=% zIn(kcR#H{nN76^Fq+jV(SZ-`>JIWW?1`+`Ojn9f=g09I<+KwK}E1JnrKh!if20L79 zWSgrmQj9LRIw)u_I8&0YP&jdfkb#rF8L?>8rU|RvEHKq!+#G)$SZ{lGFck%4GP zd&HjpQE&Cvp6B6RaS(f@0tWwq{L>7IU=HF>>B8Xi#pbA0l>zY}WBPo|cpBtK0o`h$ zm2bkSk+s~Tr5@$->tUqxxRC45H=7X9uKKK125mP7n?PrA>-Q{PK0aBA_od@SBW%mA zDEsWHm>g7`Mlse2baT#TTUb~KlW;F1fdbdRwLl?>X1OC!wKYFt3B})Yiy~=qN`T%Z zz%nL5_D)bSqYkdxz{N zO6N>5!zSCK<9e;Io`Zd5<7dDScChCh2CUkSIZz@FR_pvZZ9@)f8(Otv8kXEz8WDz$ z)4@?uQ3y@O{=!=-`@My0)#61h4)&E!1?h*a{D>M+F{at?DVUu@_NF!agiO*LjS;bh=5lrmn69?TzgIHAv1f$#(+(1S4G4B0Og7l;;4f z#E+-}^I-BKTB5^fc&#nusKLDEx#)NT*(OqiM|m1MSACd7)ZFoMFb|hV0$Emd++goK z>r%m+&a7o;?}K8RSU{FEwF>7XCp?1bPP2?*vT*BD48P!Y&fFTfb+EYxoYe^IZoL6X zZ(QSZZgvq7E#PjcJgX?2W)L$*;-6b2TZydIv^iGLs|WOC#<8{X7h^|)HA1B_jN+P@ zSATB8M$>cUco8Y}Nt^@_*37)&0dI>Om`UU5q<~9?0Yl(;>0FOyxB15%+AkW4W;@NO z_=)7GrA&{z`}Mnd2?Pn(UVg`-?y#l(aie(J;qnE8dJ&;@)F2*OYAsi>97@r&>1-b$ z;;bi5Bz$Rv-Y~6qW!#~rwzipsV`OIb)2CICzEv=)$OVMa?Y1;Vm#k%4`^%{vHe`r} ziJkwJV|3_L!RmZ4XicxxnB7oywnN5TqhX|Sza_^?pOR{gxH1PMz#xRSVZ_p%o>!>i z=2k}5LhO?;&Z3WLKaL36NV`Nn&0&<7d{~ejKYzAcNVFH2Aa#cp= z5ux8xX)0oKUu@&L(8UB6KR>Ia^bEE`$q3Vk&2lJp+HrN&6O0#y{C9ZD&NA`t`Q8&L zA0eQvtbOC4(Fb-`<&?qt0P9Jv<5EvTExFtIO6-|;JJ3EWA)qAr@A2Z}qKfm$4)O9H zOKQ?;Fbdsl&Z})RJ+w>MX*2})GDc9HQ~mPDujbmS{+-ER1W%M-*1O20Vz2N-IA@E> z4@2tO*~K>!UlOFt;UnL;Iy1iHbf?W$bD37oKa!agDBkquEw8qpx}r*djD3yU+1U*D z6v#!c{x%XF#`j+fD&~d#gX%)bD5~zxNQ+Wn4e8VN{ot>EA_2!0 z0Fz%V+J}=uLKN61@Hkkh9}NLRhh~@W zgR5~1>}PUmTH$Yj+V08~(aHZX8B;b~KL~1opUUv_ADvlWUV!COR>QAVCT%mUBMh+z z=nTr7@b`Et4!v_+?~}sQZ74|CUHf&KZLeh%(URH9|K(ZN!Bd6lL_X6 ztmULGy{x?IbIBZy1u9Fpe5X}N3U1v4wqa^f5j(|acuA#Y6Qc{h86s<;iNM(-m z7sz1J^k&JJ0R)IgW~8EgGKH8ouu>R2oYh~!<%#ZVt5n^Q`>?EAycLy&Ws7FF-|pVM z`^P6K=0NZiP;UmB=I1Uy2a6)@T<>5hGMrtzj>B+-LywZ0TF~arn`JTtovRxf+VEjj zm6czXudPhP(LDlOVutBY7_Z?Y5GN9BL)qo)bpHWQX0$1m5`pzjdq-N9l1j`qE z2$PY!Z2sk2gG~n(baQ!HG#;y`=M5WJ(_%)gs`F+n+vdY2IFA=5G)d-hif=)oHKGH=A{R#UPIR9tD=Lxzq0+lqEQlEuI{U>o zt*cEI*Ghub^aJ4ZaAW_Z>H6fRPzGuj8e|LU)C1L`%Y9FB>*L7LB&mG6*tBA96ko@A zaFQd;c1b-)V}e#AMP1LeHNAZ8So>=D{0-;~Oe%V2E3o=ji zmnmPY1dPEO2wE*f!tN}0FUKZvDrUQ`ct8+2KHsIL=OD?*wQ$^~JTipuir?u1;h+AUYO;nlhIEYfBYi?L1R?j!f<{9<2m z9gbrT2@DL>`~3CyzinZ`20F6ZBIiRY^ICq>ip{Tj-;;|*2@4t{`PeHe1$!H2kaJS3+6q&N@&})3U6u6Hjbb=-U^l(;m}I5j4;fc z34D(3Z~absFKz8`}{Q2Gg3e9uB#YYrl>|Z)QV)5Lx0w-ud8Pf%%Vy|zf z)d|ZcuS{e*Pw)%AXmNNN_KL6wd{iFTAW07Nmbg2F?-M=t#@tJAuTVzWk0j)^t0}XKl|Bo z!ha3AFC?u1yP{|Jj^6WluW>+wD)0A)f0hTO9zYi&_+d( ztsxXEY014@d-?UV&Y!RI?{8q_$}I6^Wo1*l(-rh<=GUpU!sxTMd&&}9vWHIJ{z%=t zC8^t-pLyS!$ih-?i|?lGBNOau!Ok&RYajJF?<}ZFH$|Pe!j`WWRIR;r$WE^VG&QVe&J?`m6N2H{3=p>zxQC#BOh<&QT`3*7pO398 zflCY~D5WA1(wnMsKGy)8pl4#z8E!PL=auNq$DB7#BH!i0b0#{3CMn)pwckZnA?>$QgYI<})-9p3ca(DBZl zTfjv23E9N1POPmqruW{e#=i$4gNn9x>K@%YFW%-GVMLUyWl?yEG{2?kwOKAlX#gw* z^t$K-zZ^pFV1n+eDPBu{pN$0=L72isKlCt|5;-x{4s4?3aEXxFl1Ys``{meWCx7$+g&zFLB&@7h>*q-hqcydg4Ib?Bz5r_q9-!AnG! zAtNW(;yTx@{!J87MR7R)M%*ucQZL{sa|1BJOOnM7@2iF8Q&Us?#L^nRy|`+0PJ@dW zdr$#Uv7r{ltGihE?JbHFv6+^ues%W+TDx~-2oSLrnBHhF{n*)M#{H3`G3 z5li=_=a9!wzum&!Qb2m#Y53BxpEx0fkw+V5aO}4YctgR@jo&w+W;>FWPy2V%K?qOY znI2%UNW{oS4UN20;Yj;S{1K<6v3#;f3`soqOR(v&5$6Q#I0-6~)Z);{x=8c__3a}h z)VRv?U4KoXj(^d>)Qru+m2sgoIi*!YR?ksBqjWZGP<-akcPzPQBL?;QcAbUyt@>JBC z3id97&r>62N-ovR;_ZRz6Hx(ZkipN11vsiQf8-)c^uk)9J*)0S%3Gd{1R z`|!7JBbAswV%SG3(IcDg>Q@|CE1X_CVW^|H=li#uf21N>`&o4gC3AE-6_*{I&V2vg?<)0LXIqKR+Aiz9u8P7eJEG+XNSxY&qh!CtB4 zSFaTP-5oMkt$Isk>iNr)F4q-Br@Bn-4`M!Ylz(J`J5Xfs4WsRwf{Cx+ARI%3<`>|$ zT4J=a!qP2BQ2VDdCEhVYID5UN+WLRc*&x)mVLZTt{66tyZB4o{P2$$?2kwT zkJcp?+WaQL_2giX{W<2)m4TW?7I+RIT4Ff@>&cVSzM{V#K;Nqa@6kRWG)jQXcVitB zVCocLo-zswZAh&Nm^ZVYI`vBXLILh6X=wdIE`@X zpglsJ@^HMMe;XYFCzKOKb3M)g)WrFrH$WL|`7rn+``j%6Oa^Yve0 zv3L1pk&c6VS8y?lpp#-Rbu~vTH4P32EzB(a6Z*j4&=p!Pwv{F4iBfeut6UVr(OnkB z@_6XL(b7)imu+;vkd6FUv@+Y3iv^FEM8EXo#)5W=N--66F!mQjz7jy?+>Jlo0~e{vR8tXk~0=7S&J2pUYq+QS+BR4r8APc$;~0EkJpBMbgkU7ym^Cv(w9b>ma*8G zZ`&8!JE{Bl-E4fQK^4vJ&PtZ<1(|KsHiJgd6z8=w=eoNB*DCd00m_-)il8E^uwyp` z1~cj)k`m}37oal$(PkL9?$5~s3iAVd*i}K!rFIwwSEGbM&A`r-MYxubZfF#(fcQ7v zATseAA|*Ws-nK3(hqKWHoTG66HzWN0lw)Fm;g$B zyM78m!*9o+^R#u}#T9@IDj>{+30kJ3>$r;7`3XET&>|CT z99|~-f;2abfY}0cA=!Oxsdo`vVC*3{WN2tOjEzc79$WU1mbl~QnZB%Au4eoZy>1*8 zC%o%ia9YR+0&Q{=x)l0dyJCRZ|G;rbnVz(m3ACPkww+`Ul+tFojo`Z{!r~V1)0u_^ zgQU?VH~~x`7jfrMXr+aRA8=h=7y^2dk}TGS(#gyv_QnMO8Ufq9xizw4r?t`zJ>ZuI zY8XLh`5}>F620@v?k={tesY@rBsGH|{{u*46OdQ5`LTrbg6rgjTc2F=T)`Dn3O}~C zr$N2tU zp1ZnHlV~(-diOQy%x+9E3+8f~>`15;d+8xu`$)J}04(}6QZnOUz(TJbi2A_DND3tP z=P*=Wtkqjp9*(gc9muRY*o;>IESGy2pI8|KVS;0Rz{&#n2P?rdf|r*!$7#k?$9-jn zel|*&noLfAw_US5igAC`PO;$8lH%ABy&j+hj^w4=EYPAs?vnVkgEaqe$cTo=qX~Ij zI40z!5_k|njCAL#^HmZ-J)hE0DUfoLA8iAAK{YUNVRu$aA}?^W2=IpyT~tsNBaEvI zN7$Lx2Ab~QQadDv>lvlPTpjT2*^5ogE{e)4reJ;lGc(bvN08;gFtZl)z5JFv+UQA~ zfajR!HIPWWU3@;8Ks?WxvUzipn4lo|8qm4!uIs7mf4sK(qbo;k3p2C)osz|&%Vkrm z?$ZrRPs%UpX=GMCF{AO>w!E#X8t?sswU)O|QTz6)q-00ctM@G7%BWjTf6JevW%$Y| z6>AE-=aB4n%69uQo5WE5tH^$|Cx%X|{Hf&@=I+z4%HtL0ksIw}cXE~OZLHx|2})9Q z(;W=54Bzwk4a(Zw|Z?3wmU*vQCtHB;R>1%E! zN=t6SskeL?b!=4yU4PPSRxCz8GzoqW`nEI5=pZ>xGEqs-{hw)QTK`&N%(tUfw!U`6SgUwP;%~s;gTVSj9E|!`*eU z0O8>AG}77c34_Gyzh#18-Iz!e z5FZT?eoh`edI5|c0>xOAuh`dz@LV`|ZXjy=GCGoBgrGK&iINzw@=_4#X;^5dmU`_4 z%Ji&r>yHDGHH_FNN^T5_IDYtHlmd6hGWU;&<@B(@fVG%>_!%XnRr9nbtx!FaK#rO^ zm;jFG63*`3yH^H_(kI;4oJn0!^v!eszGcZgv^||!hL3gKSE!{^4I+dLuL=MN&CbZf z6Oq5?Nm%A6$m$6JWK^DIZ#o&&;(|7V{JI;8Lw9#~5_y63wnIA5f@bUa`)m;Qo4__7 z$!SClp8%QSEs#+ci9_s;9WPLlQh$6rr><@7anN}*vq^uw@eBKa}X4{KS*TmU7ZyaTbXX=7k398w5JFGC>NV?L* z;7A?_(q@LbUfTSNw2Hgy)=$^*HNvUpQW(g%q?KGeM`Rtc?&Sn~jO+afm{%cflN>}% zFCh`b^q_FsdXJ=X7sen5bc|JpZo1qfsJ+C>WWLkli--0}*$sng%SO>RyM)c&=ou%u zUJl7~S+vfjs%h-cvq-Ux;2)iRRIX0bG;R&#q;UY`Ab{*5V4Y;BoPNNzkd2G04c~6R z=yhJx7FNuKPqMMez!&XV^-Xda?MQ2aOxA{USnFDR3Uhem%63fGrcnWz0$Zbf&Wu_8 z=_LW<1V_5`IaDd3!lh*n!%deEJ)F=p#!B!~PKF4z<|c0v$}Iw#fiS$!Wv;LW{9+Xxv5cA7pyCf;d7UGJM7Q~G zn?NhNj6ovFf8Z|hLrh7xm-qdkS=#p6?j?)D0R}QQZMB#K1J(?R1+?Ktg-+KorlSGY zCu9d#5Vn8K&bHwtg9XkeowacH;rB1XDO~)qhOcj;r!E@H>l*!~3+Yc#(PZWR{mZ(o zsw1i3&l269f@WaH6&@-6?}GI1Qdf;bm5e()(WQbxl7z2qf3Bs%u;z0Y^v2ldPsv=TpT#;CbC7LG)ia|qin*ZiSo*Yue&tkb^8FK@rsK!uQKe_*;_<_B3 zYq3BF>P9jL!T+L(T>4`3mMx_0dcG|LSFSR?D#g20d?-(KjPhDMEa3CfIdjSvT`(T- zUgO%O=Grc}UP$SlJztymXunJOTVblolxbP16V2{M;m|$JajqlMW14r8bm$xyleWux z)1E}BE5`me<@js%cJe>&QB75Sf99E_Jym$aUwQe%2USyxvU@9G?Mq6${B(Suk4VaM z@Eq$nrm)Oi&NjOE&B?jraoBXRb8SW9_`IQ)Z2Il~l=S^Zh4#=a;nWarjuPJNS< zce4rVabKd-v8HA?MM=pogyh?K=w8cHZWNmfhwGH?$VNlgmf7d`F`jDP!d(*mzfpOX ztheW(jXc^sk|^X!4JX5#ds8+rqKeFP$ebRwL#Xt0Bc7-O?lsFORm0V2C(n@#88N)3 zfr4Vf7X$Q*21a&V{ya4g)gX=F&}6*?#3w?>jO3xCMHvJ1nJjBlK^bf2`h|2}TwDqu zq6~=tmD8fpD_5j+q3BOFcW2FN|_%RStviPc$o^OAQMjp7_t1;AvQY+&T#N`K=Zlm3L=J^r>v zGr>CXG4iw{R0ES~e?W@QBu8OXzMSyY#?s0_IXmF0;xP%!D^xSHDC3H@(;u(zHTtn1 zSSQ;6>lCmK? z`05Fa{Hdz~nPPzSv|!Xqh*;Ude*`3(;TaXRX|U^QM}q`@n)NuPKv+E~+ij_!HS;?_G5sp1Qa0zZTY#C2n#p4pW8${yg? zacNIC3;wUBk?yOG^t*STVFB1xI)ffNShp*07XQtD=+JAfD*H>z+ctRj$B%4c;}q1x znNPdg*NCDErI5lyx`Lz5?WbqXMGRbP(V$R{THBlRqPf?xt>^blqW7K`HrKd{GMsVi z`UAfoq3!Ug`+NnoQ}@N5ZqHsEH26%{J{;ELx|KT81RmyI+6ArGOk|lNZo7lbDBSJ3 zX6jd9J~3*4TmAin;_EY>TZhX2Pumm?#C)W?l)il?pb{Qfxt+{vL*{*n@PXT|Hh{kBu? zE@f9|-%BB%hO&>3#zCQ6*Y_`?-1^RVYTZ{w`7Kj%emCd?9d`)6J#|6B?OB5!>(gVo zGm{oA@3ww_SI4?Qp`6}^)8ZE!FF&%zkY=LvLPc3Qz2OfE<<=g762gCf#Lm(NRA?ln4NFQ65<$BQxSj9bu~Q~$pocMzHJ*Uz7dfH!Hb-bQ}@e+HT$) zvz3q0q~Jdnd^>*>q7m@s0dA@2zfn$2;91KNeubfITUC|1e6w{F3Wlozp`j-MH0LS&I*QWLMvueu9M=&LY?l-BR;2PA9mOpvAs>W1ZichiJxs&K)Y3t~GI&IS8 zdQkhxtNNLuqtgqUc^>F*kAK{IL@-p&ekEeyLGQ$qM;Er<_~)G?Ph$3g1YA?RRMakn z!w9l9Y;r$;?N>J55yMkqh3(;tm5;t9o_T*unN`<_BX0hOB#361}%<*nF!;PH02qquN)l-eG6hnf+$8 zH)n}bU%vW0xbQSK{N9ncfk9b6bnv(BzsSbL#wNaRXuN-XBhQ0xJv@&dKMsU{7Z%?{ zUK%-zBtYuhl9G~rE*u$KG>UGo8O3?bs4Fj}D|3o(%_~vhFMi6&E#i7!e(R0T7u=K{ zHf3=qqHhu?bW860e?6)U{O_Cp`b+Wp^=SEh-&-`^-;(3`lGJd-GxNq7wrxE7)V(`f zH1g87+^tNNet1-ulTwgdS0@LJoJ@xAc$(Lur&{sYJ)O+3C93z}_K9?%3q?s6mH%~+ zrFV8pD#~yzdBrC=!7QA1B7G!TYU6+Ww@M{gj7@9Y-CF|9wP-${N(V*;@bFYK-`|OK z4=Iy~Nbfh!o@x7BR+M+YyxyQ?P*iQgr@2-lJaI~>SXR8I@^91OwAAGzlP4~i!1&mGZ|5_l!LMVcRA8B zwqL-b-bLldz*Tb}77e`wfmQoxr@Z_zvqLy#jf`Gbd8rfbM{>bPgj~9ri|1I?vYUg- zfgAtaXKZ*(!ZCq8aix<>SH!3cJP(xk9g?#j=%+H`NP1V&$HWV#2vFDE?d*rb`oLh* zx1H6?TeY~a=G{zo>z%582;4=nVSuwmw0PAr{K%Drkv4~;c2sBgQod2Pg@LHxU*`K` zgo79}Vo!{eBq{3kNL*X*x+QirTfkST*)gELYK=OV(Y)^q3$tH9*nG;)oeIO=QoF{& zMBkHhwVYi|em+=aDDf_Bx4mpm78p$jsOjsG4}_l_k(Q^bXC=fbNGy!5wfGx_{trAv#? za3U-B^VvjfKpv_29seoqZ|?s6Rg$RJV8mgDrs>hchlIyKP)7o&*SNx9aQgN7?LV%# zFZvV8DdAo`d-jY#%eV8mJonal^ODSxCAXo-VC7&$EnhG10Ixfp6$0NIEQ+?2&D9Q z)D#39ArwJqoRYs7!)M$H`-o-;+yiu21q=s*;uVhi*0l*xN)z>8lAa`#U*&@|B)_c(v_cz9E*-a(%-qKngWsJy2T( zSx^4ROdKi_VdJ+p!G^jP~ zJTYcZK9Z^dFktwxnhRs#i!OMKp^6?=sns6h^Wf{dGM@NjTZR|zj+mmcs*muNyCTt* zylMw-oK9zK(YR~CL*5qP%CnFMwa9Xp#=>ur4Td;`CyloSZ2i5=oRH1;2V~vq+EV#i zGq8gaNoWrNwLl)yq^osyZBBYI&*gA{`%WC7QOEi zhA(T{r}>748#E1mK9)nnnJ+u|l%vlN% zURwGQ`bNDbA=C@e_*h2tW!WQ7MuO`^>&tkwb-Lzd{EjF@w9*pqpz%`x;9;rgO+%$9 z2}CEWYx3c_t?E9{LPLqk-=t^B&W7~tRi~>3Mfp?NwS^jPa}CTG`KD)>GA56SEP9`YWwwgdgv# zz4QMceK4Z6I!fLEc;wR<^??`$`VH&h!{=bIl>Ccs0q7{mjMvFS_an2s8hFbJcH8;G zbTm3T`jPxipgxYy&g%0E^SXy+8U#!%UoOx!gdgs{ZEw+>CpmIiGq2KaOY&sFvxH{q zNb!z+ACr9Ye3*|(Ow^PYHa*2V;HCfZWX3r_{aR}GRZr9F32pxuV_yLlWw*6GCN?hy z0)nFgDj`ajj#wZdCc=TutHbx&Tgui;>@$Wi2RmH&A2@)oX16+^~0DipGK=3K3Hpj#;qom-?3sYX8xV#6n zDMYWfaKFfvy`|E83r97j_BnPD9Qp9`hV~b{l;o{d3QG+cut5qzCVS;Gnh8T z0srex1`t0C82=1IIFu4fv{}-&pJHii&Zj}VU2%QR50KOLtt4K3g|#Ilm}cjs zA#}P}T|?&@CVk&g&n@0Woi$&)l%g?$q4 zVfF8>J4E6vPJJ1N^7m->gl2Qr?u4j+^^dFAaVN(2^5l0{we9Q^YTkhwc)FCCDWl&I zQmy+F4DeD;M4)StGabi?Z3bUs}8O6cn2B=&RwP4C!!K&05cl5NoeP#0 z(+ti0R8;;%H?RU(R)4dq5FR38Z3VDN;`W7W>fcK{=2E;i-HxoNo~F0{7(O0n$FMQ` zKDF;tSs#4Yhp;BZFHL@bPMCGA0$ZLT)@!TR!JONUgi(@GQenu>3Uc_UdeoW{4G#J7 zcs!nQ<~4L>Le$PK2Pg|9f8*0z9W@wHidWGnv4M$m=GzVbWkU0&N*ROs2F<+_faDPi z9Dd}64+nl7FslLFF^L7^a_a1q?dPSfdwCV783TEzT8bRP&q}ZSY$qA7&~b>?8(Q>&2pTqWiZ_o za#E16l`2xMY^CXs0pmgmJ{;mOC5r}Wlxu*T3#bMoL59+#zYHFos3wktH&Ja>nrx+- zY~D+}z*oU1b56VBlf(|CE_1TqG{%u{uq133@I116sjp#-;-qpbMyH&Y~tnB&9M#4fE0Mf5%x=Gb)gIL=qPm z4gi(X8K4)OL@c>xvjI$}33vPbQ2Dgfjv#pu>~n&|Ig18v;iJo=N1LH2AqL`f-`w2X zwjb#y;5>=UA)^(9I(xBEv6V}cqB_SXfP2!RRhu1KOYQ39)Ke0nZ*{c&qy|EK66-#K_0%6 zlM^HR^WR0Gx$&{xvt!>aar?JzKV+pWSyC&6q*?VPeQoQx1r4QqJWSgjTUgB;3n)Cz z^rK!5phXi!;kr*^@-E^{rGlHpM)R(gqlJ;xtaQfP!Gn44rGL40Y1i( zHjw;*M!!XNxpRF-5Fv>m2JB94Z*QNNj%$8;w1ep?>C|3tI&`kYjtS}tL~ykdgU5zZ zx~Ox82FdPWS_U`Lj#X0D#mX#bzTS1Oc>Y2e6LaGz!xhetx2LQaBX7F4%6?>$u{ls_ zthqmFBAJh|y^pmlYWO^yLoK!yly#Lxre&EN&asmca<2aMoY<*n5=W$aL+=#JP&tU{ z1QbM80Q$|MIpSzzW*KCm&@@d|NB?npcU)+L#CYaV**<`A0w^)H6CkRNg;X{IzY7@{ z0i|0yWGF}BLIGgRvFM$eitl#S(}=VQOeR#@Ei5iZ#BvZ^m)`@#;$_4RjRr3K%G+{i z+79rEMVm#_0FBkuuTtbT?I;pD^_#o7jZ0Prim%!j@F@g{&_ z;54ZROlSE|w$|R?;N5utr5bIl-@kv~UhE-SUHkPLY3+GmR{#Dz?6Q={vH0YZe3up< zDZCJ1j<#1SOT(%cuWToO|s0^}Nb~AOW1Ft1Vr>AD!@sT~4XX zrU}y@ite|6tR1Q8Y;Y%ht>dCR8gzd50@z}^JQ-+<#_|1^6DzZ_@(Z0T=Yw)E zn8@85=I#o<@hDID3Iq4-HthG}q&U9e7Z1VW34Ffcp3XEM ziq23e))g>uy!}J8XdS2uXcVEt3E&gb?}9kE6u2uOfouR?2q+en5$2PQ#M;6d~W&Txb8X^4ZdW5>tIU6mW=upxZT zWIHXqC(MfB1c=7@{{_+977%R)+ID45H7Y<9s+PuCxB6-=`o9*!u|OPk%ae)lV{uPc z5G!FXg;X#qJH%xUGJ<3xGBWZy)WPe)Z94kdgJ`e7_^KH0}yfr5h#G76aw@l znM{vTP3ShlxM&XFr_(bSrli*iU~Ch@L(G9f3Q4mY{`FZeQiHG8P9I=M;Y*8r;UUsO z87vZ=jR`I9dkP#ie`XIojJ zb$9XoZ3~=f){s<>995*kd$blsxl~XjBUd8PT%5a)UB9rvp~ZE+VBmeR41&S&`?f|qCF@(0Nk6HDO1Ge z0kUAu!f2NF5-L*?pqzdS#<(uv{84Qx-=p4}i}C2uNE;W(&^AxUNIFvop*#0M7(8 zIKUMd7|6{dv!l28{|TLrOo|eOwdF<%*~Yui_;#Bxqa{|CVXlJ&8;~5<9jHcGA)vJk z09_{qR|T&|3OFSL&nTiUH-7jC7Ff%TH7~gaYd`&XVFe*wDm8zox%C`X+nMV$wmCy4 zGTMLRx1br{3M;|p06&Rd*1Ke(Cxe#*V`g2?r`+v(+o9AZtb8=pK~hev{}L_+Dopcq zCxz+p^OkqRhggzszWS7Do^TDP|6Jk-XKy|^tNxFlwywmCo%cc(2qMos$rU>`jgRDaTI=cW06ejE;WxHacKB7$YN8XaE%C2K%J=w_xcQ z3Wbao;@A;uJkPm%yiF{FrkVo2G~@)SEZz*E^65A=>0)(9c8DCoa%$>)2~%oHLhf#w ze<-QD6cvJ$Gz!AB^}d{10GsnqjAKt!cW)SN$U(s>NO{pU$mxSJQVahH{IIgn2JsfS z+XuNH05(=gNYs&cE0Aw1mI(RI%p@`2emE+dD+G1b)(cvZ+byG1^6$gOK_gt==x21v zpFK<=Xhwwy?40bS7q~eD#ZYa<4ckpG%pNxuHOD>k(R$B^c?6PI(s=q~L*YGvwryW8 zG_#n7MO7Ed%tf*Y8rGl0?sbzmpwqL0`TFaE6(&3(^~(LqNdFcNaBZG`m3;=AUJC?UPLNI6$#GgXK+x_`^s*Vg& zbr|XwP@hDDtAF@0)ozUHRyZ(?G?64X-Q+Fsx9h=iX#`C25kUkvX(DN_FW96aLjs5_ zh49H>1^}D;2Z)q2O}ZW-GZUnz0ec*q$4we~jYmaF>wRZPjcz5S9!J@%@9`S?4KXQ) zMJKb}JTk0D*MUu((OCTG!!uKTOSd5dfbvFgu9G;HQN|Ls(Zeg-C?SCUKjC8{moW&R zK+|+{07R<#weOtba;D`$ytVulxO7L7$^BDg(78y!KLcl%`G*Pc3J!B9eMkCx63zju zjpx9R{{9Hauo(cZls1Ab*Wb*+zVEdTB0e_Xqv0@!MP~pj*1o+G@<$VD*9eIjOar?J zI!ii@RtiS7$$es&kZIjUc|cW=mLWhUGJqNz(rfx(fauX&;k4O5g&gj&#HFEiOT@i) zsq45BAqI4^to(&=p%f2$xdYGJxLXJDrXar+3xjwsWE|jF_9D0ZG>|XM$WhIaq&S<(o%{Im}v(Bk#M}P zTynUDAZ{JGIEo=$7EbY2P89M^1U?SF#AU<3UqBf% zmco`wdH?=iPtuL4;SDH}n6OlRqJ0K{&4ik^mn}13rJTd&Y|P0)w;KhB3uJXN70|GC zQLbH+0Si@$TE|XIM1gOKkQ}@TtDkhdfM8|K`ZM^fr)W_!aP@N-8#VYzwe_E5#h!ov zbRBXx9|0`4r*sE;3V?=?FZD#R)!OpPYe&nAXKlbCK3EUCRxZ-H1EK4K>mx4F?*DV^ z#PRM8KSPFohC)ye=8YTpH~>O1yh=P-we|jAn{jZ2aHiQq=Tu4*5%Y6C7EbB4ZcA>dOrjhmvChtHzb|m z0MVKpujph7O57fjU{**7e-8oNfC~}B-|r^*dl9YHore7)R~Hl;TXSsEMzbfY^k-~9 zL1Hn{BaBFx?y}kpp`7rpydr&O>m|*F{Z>SZ_jTzmhwaNk4`=JoYd^b7w?dJ){~p>1 zV_$>&0(c!kHt-Ho4ngT19Tr6%Se0HJVsoNO7?c{zz9w1b?*EsfuvCLl?=T^n;b_}W ze!BE~cC5IRy5N9)>crn=;lq#yJlZYk`^M$N$Lj{9fs!KbXrn@KwAJ2}CKaHG8z)wB z&O8ASvYW&ai%KCo_4=MV+ibv|Sv`xAJ)vgaz1?}QC%JgJAbVyRbSS_l)<=2TdV$>c z4U_P5;mX8vR5w(opmnF!K-EB2z3FENth8y!R&8rO-RT9kPdR;LV8}c1>jU6 zxeQ7zg}GquW$_$PCq}BY=kD%tY*nj3bBF_ju`q#JA#%I70!ZD>N0MF73m7koc)>DcwXs}#S4!`~7 z9mwxAsu=IOGh=Dbg=0#3dRr$2ikbfdWs-G&^}7oAN^(ZQr#x-ykmWN^pI<3IW>``T zTmydxA4<{y?g{JN=WEHurxH0UW$kS@l$o_*l4wL->lI&t zfH=jb?AG4l`c{}6#LJlOe2=xDJEO3zaJtk*D$88&I!^yc=*foOd>IHBB5kQ*&IE2b zSnSCy?ki5a&X*|uP|3MGzKzq8*Is7u5=@xBuf~?h5||W2rEdn;ee)i~ebSB&{bAAM zO;gW(+7ab>4*)sLJx8M;ykGyy4X{s8QA?vbeQHrhIMHAa#{C*9Gy}eEc)?>K!~f%J zeU!#rb>fei*jufo)rYu#F*r>Jw1-eo3QM4&_c6?B8kkJ1=+UKFu#A&W9r~b5+u<2; zr<`g=_|e79-)L3I;wIY&De0uZ6pstqzbJvuR23S^oKOV5OU!G#}DLz z=F2Y#4XhgA4c>LpIC5K-I_J!g-vjPy!_Rf+b2D=s!Yj>%O3t!5@ZgC_t>L=!@p~uK zeE!B?TQE_YJ%laY8#0;#ZG~eBZ_`V{xhPpa#KSFLGk$%ngR3j$DAeWBaVU8FKfJdF zfPueH>2Revdnn4S{5yQ30LJmHL!pg?YM47*ebBjUKgN+Aa8NoK&^ynld{P7@al9G0 z?lel-xPtsj4^%N+3I|qy_ccA%MUss(Q{g4fUDynz!PL~C>M3BcfnOAP!C4f8scIxZ zV0+y+0ZOgst;h+?9>g-Ev1P(Jw2+m!yp~u+eH3!~-w*Hc#b5$aY1k6dTyP3Q#?4X> zYR+VI}diR|hv z+~PzZ_5DG{i@6I!r@@Kp_u{yB``PJ))1GX@lWyrBXJG;<&_Yw;R4rS zaa+yRZLH+4!^FIj8!f_UgriW&)^{zZ320ygSd8nuF}xk!M1wlq1S;(l6QlscSAm|% z-fbCrc)ED4cLDe5Z4r@Kkp)J4RE+hYCnNFDI%a~UBR?Mw42)siEcrD8h znc}ObUXoItTFE~;N@$%FVtP=%mDAwpF=73|uHNt4HevRlWGrG05GTE22O_Ts;~@q0 z3Q*w6sGnmiH+g0pV3IOo_9Dr53&w;D1rs|_1W3q?LIN2`0EX^jcsjA+Lzi)DW$!2{ z%k;3O607>K58W4UZpEaZgu5hA2M9?-Z;1(0Amr$GYe2J}vQbkd+@Nb$^9D`M?= zh{^_vJ#g8RK@xv3l@Xa4pPFhwc6mrN1gvBPYk}p+sG_2>I9Kgp`E%Z_{`^H_#=F1K zCh>PD9467fMWDNTkdR51fUVWhj>0fKY$np8>;ks`7bl1MEyx3ed$;HN zp=%&=^g~imntA8I4Z}&GPWa7{`v6AOtB0rN$siC$RW;F5+Xzy#jE~g>z=Ac|f&!f$ zWU>UZ`Z(~#VgMsX5JuM^xf}FJl*ej-6lxx<>5^4HKVnQ{eSL%N^^I_cs)`CPIzzV$ zp*?qROJ_+BKu8w*O#GIOig6n?Riv*2kDOWnp{idsThE8h<$_G^{I424;W|#}^t$lu zAk@~?CwVx7ih)7}e6X)j{Kr>R-cu-!6xJwnky^}XK7r*dj1)GUsI8&kWIaT#H}ded zNM)%n-J&f^R{JtJCnRg9m0Uf2=UyaAk~R(j`>g!WHN4lWr6eVHmFZ?^;b!^bxG-4H z06_^ZU)mD zpci5=(>0(+2Zsg7iH_b1P8Z#S;2wc~u>_7Z$i@P3EH;D{yFj)G9R#D>X25Sj+R`!= zH6uisWTYKN+EuB{5wKaB0zWSw0wZHRc|3i#y_EMP?0Aw#uxH(Njh#O0@m|_!LCn@4 z)v%$OGfzTN&nGAb*`yR80|k|r-+_8&p-xZBc|kepAR%J;znRX`ZaJ1p0~c0SUFb6x z$tWl`i1(N;iWF|Kbp?DM`a#aJ)J87r$Jcv2XA~}7IC=V5WUi9>-^g8wPtd-KQpu(% zz>@b zyt-EKAxWO*P&_czm|`q;BPh7f9a5daMRW)*W_Bbheu|C%DC(O0B>qsY6@!J$83`Ru zM4<&v#R(*NC}VA3V!Z^=v8O4{7nb$uUlaTdEW?%oMc4V}J=w&CBDJ!VCk(8_yuTgl zdCzdB%R#^KyntcW_jf1743_;yTnn&XzNXnl6r2nUEHy1pXc*I9zRhEyt&h2;8gBY! zJ1#u+c>WMg1Rw9fMJDayJ#Jtc1TGf|qI*g&3?8t0b}48Z5A4m3M_z*s7UJ4;fQ$?u zW)PPlh#1bvx)N^2CHY^zh|EBP@RT#gg#ywMm<(r>abPg!xpA)hX7LOJKafAYypf7F?yQURJH1v_=?spzeE5HeV4s9plhjTn$*_x6jUru^Q1F!B4a| z<9#fioBj^SWjxz`KLuh)zu?#{3fNnwp2CZxEvJ|F=e#h;fvg zQgPYdDM<{g=E_?ksR4$l7JTAR7s$}5YxNJewzsfZmIpXrS$F=T7ybhxt33=Fwi5j@ zi1K<+18u(N_cjg{aS?M9lXrbX{qOsw&R(llt@JQ1@Pzwh_+^MwQGK^h7e3IuxZb8d zQ^ZA-`nY|^F8ZU&{a($O8d(CF6xkX>B~J=`G9FA1e}E1Y2GBbP3_V4Nb!X9gLASD<#uv>ZXY0|WRcE)^_+XMmJ*!aY}t%7Ap|R!hi?-9d!Y zseF@X-dgE&cRO$EA7KlGbMYfBifR5W*A55n6p;46S*g9VwrBVc_L=|y@le)vZAQo_ zC^#AU75Bqxf!CQ&iv|XjBi8x=Mweo3NdBsFza))LTto9@`Sda%j>TYx5xBGjRE+3{ zw7nXmO{`S^Pndjw;54KUdeT{Y(Il^LP<><6Z-AKDHG=IA09%IzX%|5I-%b zT_&!c-h)7Wo;CWy;k7SlO@7vRzJ|wkRTUVire6g-?U;m6Uf+f)Gv(^F6|Y<}@~10} zzIH619)0pF`sDkyPlAd7k!*{vttF6EHD8z3iipkz(|x!yo3qCkaV5kN?;+rsX!Tob zdrx2+tkYs1+LrLFUdok`omakA;bf%TBt}^BHtAWH_=gZCLZ%!Z0uf|xOez-XA-aq9 zlfUROD{&0PYpwKxG_mwn%Zx$>1673iDPgw%SE9^gxB%fVL1|AOo$0mB1E}bSNmVkIPsPREC{z;8Blv(2XryAvJ<8tfPz!-rx%cHh!@P`q)E^MyKN8KGVR+YMr2Isz*Jfow>ek(yBULHjk!Z58A+8@~v zKN=Pk@mB?;UC${>N-7=`E~^&PSPOfIlxRr6v)@)*k82&l8GF}ck_DHV3*85eG*d!k z)r<6%0!l=ZGmt`JFPMn*i#fUBR-+_OO0D#syhai!ljB$LJ#B0yT?Q{vJaY$?mD0UZ zNW@tyj%n;=e@UvbMzYagV^OmxS8-K$CMCK2&+_^ za6r|>2Rp|Wy4Uyj(G>AY`K^2)o`MJNe2zx>K5-ZzR9rcCs(O1x@hp=wrjRAjSP#%> z_xa9R{T%tlc^xg|XcTC^g&G;qULj0b6)y4i&qb~ms3<7mJ^f&+f|fALb9hq`CkNhC zsJ4Jwh?rBzq4~6Zy+#CYDt-bIa#b)(>8H_F^S^M1g+)Z_z;r+e{G8DK=g+F)+)b{y zm#}}pR3(W{*7{*@Z^gL(5GO)gZW}S-(D@Dq;d==Zg@IEN;{1c# z6Y`WshRa}fD3bvk3`uYZ;{ext(5aO_jE<#R9cuKJ_nY_<(m}d_5YyRLwrR`3O~NRD z2qgfFKt3^e>W5ZFU%}fE*(3=|f?IC8!?GPTmXOJ~iL7&hwJcl*zT>?wEo2}91dcrv zeSlHiOc@+SW2y&(t}FGOz*RnnD5#^)yY@%V+A$qGoFR4Q+Y}=W8zh`i@XKumP8~nN z4hwANixIgLT2AYNa|lXti*@_mIQja<`?`xd+S(%c)S@>MW~m>d+VpWoYMzMpTK+&#$n>Z7OkR## zXO~Ut`dIbrC?+Jh#4Y;kUfR}k35rFPyTq#37wp#%QuJ?|NElOh&8|=pF@CLQVEsDx zI^L|#A+>y*h9;j3lz77r{t!teAGiIlq+mMjUSYFfsuHEa7;wg1L{c$+doV+9bKl#% z3+co_X5{Yaud$Sar%KCF+^be5UiZ3r?}R>Cq+{oi-{m)_u+B-gflWox9XwuDj*>&O@Un zNr+KtI2b;Rs`+3PMNCZ-kk$AZ@Wq7gQVE`ujYT@6KqYn@x-w+ZbkOJ@6DnA-Zpf3C(4nLy>MRj; z6D(sLlI<5C5M0s_@rp>D0oMxyXlKs#fv=_pRi)O;1q=T|S7Ew4`B%ijp*bhr zYQiJ&!Fq16J~5+6v7r{FnLT=_UvU+m`~dYfK_@FOU!mJTEBcpsHHFOE?`_WEF&6de z?6K!Jzjh_x-8SVH0tgk7_nrsC!)S*N@^v!I&03ulJfpr&Wq~4OvhED4#q>-quqC~2 zvU@xzdwI^>njUx!ksURLsFLYK$dfw;^>_A7kwZXX!ODf382Q-zcA5Jbku19rD@q zxt2{}%_?mAu4|1NO*afcOp zLoQpUM05RVl=^9r|uO0vKiig1&?=+xvlEkWobh@ zWW@Tw;%@kOlWYJJpaM?Ap-oeJcj^9`IxY-zdL&&WZ)q(o`7n3o^E?V4|2-@zH5@!} z$HUY6!L4x{Uq%QovzF7gQP8Yz17uJsv@D2V_!+fO|4!QPUD}P84lc@roD($G4^ona zT|+zmNLy1DAEMy9thN|&C(BUHK6T$+JAuM$C#SM>LjUmp28CD9T^ooNFm!b-BvqGnYzx5p%g^e-r?8;mc=oMti8b3&B?o6ddz{{<3;MLF;aq+@`F zE09KkI;W4XuP?Zes->k+C0M`l^S(2`;~ycm%Sk@y76FF)v4;h`H*~Ws<5Q&;Ovhn# zOv8y45p=+kMA$3F`iwkaQ&e~C!e>`(jVRdWSo8?x?*2d2cNvR>6yEa8$hQbEGP?;b z?Gm62RB99^5lxZD;D$96G;_N|z^k5_($sEE5#R7&Dn*wRGggE)F}PTd{- zDTD$4<|NhnD$K(LAm1uF;J>A=;0Tq zoZdtv6k7@raTKty;RS`AR~UbCde?ERb4f8}M1kN`poJX~^@W@VK*B=9Vp^o}9Mm$X zM4?0kZDptD(x=*XfL0h!XKnL<$96A4OqhCj60Tmf@#^XTF$00NkFkV$0YY!Iz3U1) z0@;C;E&K89M&cDQ6mq5#xP1DP5LhSl#g+|W6wI>+!>T;d(bN0j;p_Mb^RE;vYUq|w$%$*NAOa-}(5C+#NWq!S z7x3{4zCPg_kFzMcz)E$=WA`?W>N8MU&;g619bk(9pnD+u!%IT+O}H&bi9>xlLmN># z!w?}NA_t}jfz$Pws5U^!^Ovj>o+?tz!Xl-to~Wi#1dVBWhF2mAisukO_kU-FO};DH z0zu*QgQyJFcTXF#@LQ0Q6tT;|VW8D)*p*ICa*U-1qAD-M`@%o%CRhu>Ejg-r(Xb3$ z&=2xY*>SIo4?PUANHy6L!h|#o$AIRwqG;js^*t+`SYT^$> zXn+k8>@w$A0B)vpK&1}Fqh~e%`e(Lzek?h-%v94VlM^fBNddz^J8rX9r7DLiRnfV} z-ef4IreJyKEwL&g2t8K@v6@z(J7K^HWhXj9Ij|8=%1(&X^JHDkR#rHLlZ3Mc2?5(powFFsAdujp;so#ZI);WA>>PQh;z}SUsOHs$2L$aE^gsZA@E_Zp+l{Eg zlfDl<6;bJcE*RQ#W&fOG7sbFl@#)WPrrqmXaE(Q}+%iYRt&oOvtS0UCcP!I2>(3^@xCIFHarsRELz5YAPc2R zOeEmE5a$5V6Ig5B7P^wGm;(y3Mg(Bdk2fSOezLMRcS)&I8ZcF%w>;sAJq>_@0In zF9|n*G_Ezxz}O`?CxZd=?|_a!f^aS02%S06N$}E(X-N35YR@|v)yS9`I-;0e9IAQy z7)UkVzP_ih*x+3Y{}%dvnVw46pc7yi{6Q-R^4Qj%S?>&vqJNF=)ESxUfbWWwKcGKG zVIs&667*bKO`0GL9lye!gYv)u=Id)?sTqY94cC z{6R9Z+K+{e$1YrGiz{{+Z%!=22dexRqYzY?dgbSRs?-i4KQ&%U#RqZrH_ASW?kRV; z3DG-LDXu{@2nD3>w^dOWtgK^E4M8HMo_cc3yFPs+ob#$&;k7vtT&l!ehTdSaVPMr# zqNt8Ti*y8qPjv~~{@go?Qj3kRAv}c2!s(E&s@`7LO(mG_9t}MS#jWr{V_!P!1&hYB z7jv|Hd0KQTQ*Nru90d&0eCZYBT=(mo-K;yjfB$|YcR}`^pqz{S_5Kf7xW+e_;$}Oy zAft)1Ilu9cHI|#-(~6ozLS*JWdH|wzU^${(ZTLknhOI^~TyI~W%)GNL&^aD-IUOD} zamHYHI-uW7WMk}z)g5ne!Q4yDQv*WOs~ZFkM6D{%^H_amP%&T}2VE&x-_? zJBpScHE1riM`d(22_lQaQwtD8#74Y%AOgN7HDEs90QNi&u!R0pz$CN>Pj69tTt*)i zJsll#k(K^*d<-0?ps{25A~Uq90G69H`59!`00Kq1`F>Cfpk5GHuCzu9EjZ`g7oykJ zHCA^QtoFjkaC@9@EEi50B>NJecChi6HLOPBGRR@o{zXGO zG78Ky(*U(=no_yW=%Q z%G0i=LmG-Rs%>o-BHIlXIZjF(QO9${*}NPbJ*qf5w&GlJ;m@!92K(KK8x#=kPghJ! zpz`OgSxzNtX1^wacwF_C(Z@jZKSZzYy(x7{gun#qu)s-cpk2Je$rBc9>QnrEi8K@Kk2EJ3nev3Y^;kpxWyG8egftXvZU;ofj{n31&m{uujVshrx#(QDdXN z7efoP_VzrjTA^7hy{)|@Q(=#gA~uIFwQkm6uqjUt1R<~lqOx&xdKOZ)IqrL#G=~VY zOBC*gFJZ4YYJy02G&Aw>{Pt~7xGXTayho@2Qt=JWespOcZYo|7B(mh9J|8z6Qrgl` z1jRZF<9?l)W&7Iuw{#kUva)56us2c>s-Uf8!S6$&N0}Cxqt9JbAW6lA{5bJyzAZ@t z@EG^$qFUpnD45G#duZN%T>5H|qw?p|ArWBYsci|C)Xg27i8gli*CcXm=B$2(123+& z+J>Bgq5DZ?x0gj<^C`riQ>NJhsmQ#2=vYN!GiWpO3Uy}+pf>*h6^;BxNfiJA4?sWx ze7b{#4lK}mFBGV#t(syfDNu$4YSV2)^O|=2S=`wqFo|k&rqowo)04#ANopi7aRGag z=jVgsDieh9Vb5|d2jWR7b~ll@Ry1<@^t2L^vat{|3QR%O4RYEafbFsOC=lt0dCg>* zeEMm1N|tfM193zOplC$Q7O;LohxBi-8*lx6|Nj)4@JY}215!W@dX{G#mI;kpeU&U< zBOwgx$;qXpVBuOr%>f!&?O0GYvWehO!o$!u+bi(ZS>v0eaLJ<2Q=3AQEZpcbj0hAN z;Ob%!qbvrY@EL-}A6n5Mr411AvdavCy?eV$2MPI>76B1_)TemMs|$+NN_oh9YlYc@ zX^u+U7KOpe#R&cOokng$Tim>vh~z#;k6r{abVIEy-scAM{0mD*W|147F)3X(s2%C0ob1B{m;i5PhCgR*>^BR!Cf~E$7 zyr**}5Dls_ui{|u@@gE^`8E-18Q%Xa`sa6V7SKRZfeZWE_XJCT;QiEAQS%7^S_t_G ze^KOhGf)D7$an)Ssm2em=-d(NlG zb~Pl~nNP2cCeIv=1c+IvIV6!_T%))9mdJZStKDYzZFfTn1c#-eIf^aPgj5FMDe|tv zJ))XZAYukuYQPALqgo#Y!(XA5EU-b(k<+dYq#)jN_Ch{AAxd{c--D4m1_g>W7N+Ak z$|Mo~&iO+&dt*rv9_=O68s^S{(@oD7L9O*$Sr4h6AY96aX2sElb@lU5LEm7b0?2xG zO}NrQom?y8=u5h7TUExqI8nfR8kk!ct|U$_;pGcHHzvQs?SU|)RLHs~Uv|zhfoEa$ z_E0#sUeGY*K*8ch(q>Q_fO;8;XO#FbaH~Vg{!N5@4dLNb>7Zc$@!`!<;4VXY1`1q` zWoQDli=3?>1>xA2L59LXeNg3%tbvR(=3Vn3osCtjeee;k6UG zYxYEim$!cqq`oLk^S7KDLj4UxwlaIJ=xJAYop8O4yiQfA^>HeIF5iGA|B8pTK#Vl^ zkud;t=skZ>0WI|S9qE^K-0gqWhy!AF(hKmxqLn&Fc5gO1S zn^9wag{b#0lN_hRy0(XJEk8FeNiDM-jz}#wA!I03U436Uvg_@iMKX5j1Sy2}W6d z#wr5@)e~{AP{IZ++6C^%j+O@@@Q)XH8XQF+Q&rF5@KVWt4>3)eL^vx769 zbc#X_Fo`3;8f;?v*R4yYp3{FGhy(m<<#4_Rlr%a$9b5g3;DG;TCq&#+{Ec?*_6lQM zrh&4;$x$DV!5{TusdKv5UHxSzYQdrioc5V`Pj#?Zr$r8*zZ>LXcbHJMiK&0QSI)?L zg3ZB`t~YG?u5Wji#-2O5xChCTU&qaPq1VVqJy+52h=^}fv*-5d)c-HGL&ORrDhGi9 zk?)&m>?^k6{rP0eN^*bu5#{p`YzNiTh8fu)*dU112wFHe!|8}`-Kz1#i_g8H$ZwLix?LqGh z55&2SnMmV%1$8omwj)!hGX?lBa2h#uec2Xt!A1s=kRWPAuMG4Nzms97)iL`M`h7V& zCrfxtr&|AqsnN(>Z{Rwov6-$Y{L{0WOo#tH1cbf66{PY*5chKbrrBau3&^6F6`*zr1Y!@E-^zXZ_wg zPtkNi7ECYoOa2J%INO%H0!0$Mp^UkW@2w3R?za*c|siR{MvSCseaG{`yRFetWt zn``NzW`VxfR{s(GRYkBqYyIa{57*SQ=;9JcctB}t&~xc66?I)B3oEs?TTE6&aGP=j zSf6rqy|RN=Ey45CBL=<{(2|vG#RsTxRjiMy&$!qxjBO{Gra}^Llde)7gH}Vosdg3o zdYl)Ms$?Yb>U}TP#^?os?s#ird^sxY=Of$Aakm7(1LfH(E1WoG1no-Td)F6umKMPM zPCpFZg6VHjmxz&XX-&{z)F8zUdPg*TxP1yd>QVEL`4M9Wg^}r%>f((R!=>12eEBm# z`3fCwHICwj$&lrrv*!M~u36&Hxt_MYIPyjd#Z5)4jK5_1iIr)!Ll2Iw1cPWqYjwr^ zVIwr7KMB^E8o?($kvnGEw*)ons;D*Hy+LJ4!e8c?>O9AtX@9I}m%i1XiaSaRBaMRg z&X=i{@i(bW-R_})&S2}P2a)>BRD`O}Ku0}zuffjS-se!Ru@kxpBLDG0jym;XUwm0P zPh4IN*{&g#8I8Y#HV`w3q5}C!sgb_W2_Lraj(dtIwJ@Lg@By@S#Jg`IR29XLKToPO zc-*3S0qYAdNCQ$Pk{rD+0O=N%#Ytopg8VU0-F#CIABpB4O-IZ~6uD973`_d-b%K(i zoRfs6R7y4sfmfm(lxhH1^^p3C9aL4NyaGfNfQ^7lE?!OI>I4yq6WD^nQ6UICz&x52 zmD64-7QNF1rN%Et7t!HLHbuPosNd!+R}+Frz!WStEB_!3KXesAIxOfh3C&zN4fTVV zvcP-*beEx^7l=ZgXrSL8>g&!3eGVQnrLu{bo4~dCj2Sh7@8t!EW&_s$VzQIY)K0eN z&_UkwC#kEw3H(G_Q0{gb0pw!hSFE$C=c7Nm2t+DyF-0`pfDGt)1HS!|10AT*;P+r? z>=Ok&B6(D$IakoUe+o#2q4u-ULK?8Dup*Wmcu-)RG5Rar@}J z)(z}b%5$4A+<9Pf#1kX|;f3y-uQ8kep#P`gVp0B-nsx@xzO=&p{#_!*WQO=cnhQX& z2`M6>G17991ht)ykTXC|kzO8G7+!-@NJ-bY+6_glwpP4H3%4`>d1AbEZlAMg1tH`F z=N?Q1tGs#5YZTO>2hp9Ioml!j*f|6Qt-Sl`xC%n~W!z$xif~y+*03VG&nBqI=2+wi z_*7i2pf4oJzn{aPvIJntWEaFcpCPcTSi$iEa(bsO>ZBI{YY_-sJoGHYTB-?;|6>`# zcMi=tN|@UDtwf%VqC`3slwY4gsT{s*C2|*PoCGnq+wRIsOmLepK15LiEp|KLRi~kR z*Okae>b+9)i1;&DS<;a4c>Y2$3iOwnC0jAWsB^`>E9N!NwPV*bU5*JRcB{Zx17@X+ zO>sYn2tm$Q0prq41}Fv!t0d*2at496SLwB{;{i|5VYinNu1T>9c?(R05@KYU%0)=Q&n-ehSdQaHw{C`pbOboXHnKQh6XAQJD!$_LRB0KG_r z@h8+_(bVW;!vZgDhY3 zL6{q&RElf@EWeM=rI+l0m~3@?y?kF&$0k2n7RK{E=_ogW$QILi4?Xnj^xxF}j}N0; zN@^t3P>~%hq4>S}(0TtSAJzO8@KNFAVZV$6a~pgZFv*bh+J?*P5YsGv=5HdH-@j16JnZz;EQ;gxBZb8~D+(-Pw*iT!F4mLZc^S0$)^a-#rZq{k+Qhw1il-bx@s2w}?$=7(gZ%go5n?<%v zi?d4|zC4PX1q`UqZJOv49iy}sI7^cB@qAj0m{zz4yHU`AMFX>rPl=g29`95h<4PEV z3DwEU5xev-orcfXa<{vPVsu|@IVsTod(@(nW%ausJi50x7PW+K_wAwjeMx5S4|-Z% zmfbF*mSe4>P{uSg%iDTdK~8R;wwkq(TtJyTmi?sLi>RZ8%Of&aP48;NqIK*`G)bpB zp+17=r(xL?BDT*@z=@Jo{p!7;M#JE5TE0q+KNgYDA?^NhQWalx$(?rI^&eEnw!bgw z+AoQ_cv^>~%yk>)*4;klP61!1eEQN+8ZxqkMYk!SXxF@d6aEQvEEgPKvB08io$Lm) zcCIR(ZdabM>`D3TWw3wI09~$){U7MaT)6X8V9nrS(lMs;&&{QQ2+JQgBM0Qfco6SUF@oPj@lQOs;oX8 zfGyv3=Yf;S_d%+)z`ZaY@31(;^E2cz+k(qP4D-rZ4$xYZe`Qj?onN)(6KP^$KZ$op zoend`QIb_>6G>DIHH-Cp`wR8rfFrag-pzMrzEipK1m1$)0)-xdZQsB~2lX#wwVvqt z3GK05j+%cJ<1Rdf8-Ml_1q#U<7jPb+1??Y1>KuU;#1Ke`t4 zIk?tyW*U~3`FT8#?d-s{YU3W0odVY5G&e#XfwQAh0@OFtd+?%s_m(02D@>}!9RZ8- z+W|8My1GxDot-aSjEj%=c>2`laQw3r1uA))W_#;D-g{vl^d|$xTV4qkY&jeEf<#%- zx5;%|G?(Djf*7s%)Ca+G<;rfaMVpFAJowI^Ff0FUtCQUCJ#T0_dAnRgHF$6~?`eLw zi$|{4jO(@ zIn?K2EXth?3bhx?ZHh1ZeUD!e#)Qqerc`FV{5>qT?8%iff03EHJ&lLzV^6*blQO%B#AXe^34 zxaNB-efw!w@-bVJ+Y&~U%Up)PLQde$JyARz!_+m56DwHxM@B_G2aa#nm6_!~{THzy zWpi6z8e2A+w1@ub7K+f9X)gULCi3){Z9l)p?60nEHcMzKv!LhlqYKN>%t0Lpj0wPG zj*N{xBP*W4RPTC74T{8#fo5e4wec!lpAH1^G99Ua?yW$6Fl=jLp6Xl zWjdPCpK7xV>4G9?Ui(9#V_rtley-QBJuTc}ob_(=M?VwIWgbgadxy#PPX<=slQhL* zzGYs(KjpE$-a)}1W~|Ikbs_Pt9kXI?cp+LOMSrA^%<$*Nx=zQmwf44|dp|RAq(x*>nON4Oy9cJ^fyQcq4O--3XtB(0C)<<^nYFtak z=_rkVl3>-&JHB8s68k#oM@qWs=S05;t$sXF9hcZNOHP{!CYVvNFPRQMr7*iLc8N{< zj2)*oivpHbeCeXZZT^^Jl-~wb+_ff`IdNR?S;Q&6ryZlb8Q(&YtB{--vK&vvUbfg| z%*y5i>oCstzQmv2vkuQ*iSvCpMoHEe1Fv!E%j2Pe?C87Oe}7=PF4)}>^qYncr@!xl ze(oElmK<7T1suC&b_VM{to?)Ee5YrEo~9YfQysZe_3YKqd{OgTyGfIVGX{SaUR_>V z)~|^4Qc>uOnSPxVlAe8SpHw8QjzTbu>5fUN8mw7#fM#ieSFT)9H2J)3q&+P&lP@ZI zhGywxkcp=4Xc$>gPQ8qwQ8O7f)6VGbw+#LzqZ>*$RFe5{Y?&;dtOtK)YjIc%9&6oYKUO_OYRNXHF_`ZHTx*%0sLuRP zeL)-l>G7XEJJD9rU9_$IdAso2d7cPSyWc}5*y`Ah{dPk|MV%53X&p`9{Tp^057iI- zj45g|6@R#Jzp7uz<@-`aIhxx?=eb)XODLJ%P4Ny@cy8&g?{cvkl;=l3`6J&Ld+=1l zls9YyJK3Iln|D9bLVMXk4voIVDbv|sUw^#ZRD8H+jyre$26Mo2{CF+v74^DtC*A_H z1@^PWW8|?cKbND6Tt#N56n?s%k}-B=!YWI>>_4ecA%|8&zbnJo5v7l=MY;SR`1`UK z=d)shzNHm>ol!oRWyM*LwKQ54NptVVn_z{co|y#G-oV)sR;PumS5JSB-P|>|9L*Xk zX>a&C$uUN6G5FPHE!3ft719OiU_TzJQ{C5J!jk#(ogbT48O|dEdNltC#V+bnTQ;i| zW>#=W8D(}wn=vJf=Hvoh2*==fRW~2{37%@Mbi(p~GJt ztR|652+Lp>rhUc+-YO-Bycy3!^ChKaaHz%x5)L|colOUw;U0Se0Mlq|YVqpI1%!Hd z;rzb}p@$>FAGuCIFitf&i&>b1%051ieNyIiMX(=;=N6n)e;h|?nF!wgVw(VU5eJOP9 z!|0Yls(V-IrUM~iiOJN-F%3eu=dUaA+n6fO{d$LXMtqNuW~fI@jgWXF?jpR{ade>i zz+l|agrX8WK18@ZOQ0X5+ij=mgfmN=okL4f#B4A63K`&`Th#mf zF!Y{Xex4V?{rqGmx$Tp}VAlhaLcDR@Mf5ZN z=IL7<)e*j9EdT7KWyrYOE?Y8J3~OAAhOoFFF;4}|(Y5ZvwXSLK`XvI|d<)pbeG}tjdzeZqR@y|cqy##9`9b&vP79 zXXKlG^wcth1*-5ynJj?Ha*&qRPV*rSpfNleM*hxi{_J`XE5b0(ndf((Et=;}#r{G| z)C*^pI@Stcc_@{uVEATml!xnY3H{YU!C-nnEA(KjlM?L%^7l|G{J-|zGc2lX>lU_; zr;l&9wlv))6etA|6Dpttg+f~t!5k4u3J5A9l9W_nXcYx1EF>sNMNA|C0YRYJ07XWS zAVE-aMluxX8*5jAcDH@*`{Vm@e_WpDcxZ)Pd#}CLTw{(g=3K?i!99$Vi0A#wwSE;8 z^zm2Fp$RqCR7#k-2ELFVpFfk%b$vSbgNMAnP=DNHd$PO=)N<=Di*(*CZ%At?k5f~9 zBN)486Z`W2Fjk*vt%;52E}r?-?^d7tVV?)O+pET(`p}o4d!`iA)ELyCMd?wWO}e_e z`!qE?DBJ#NT4GKe|>*;aJk)Z?x;!iauVdsi}YHJ$qy>mem## zg`(e1sjFM>k59e!(jUDo>Rx~M>!bNNSLs+^4FO@&mbK}=tB(BU+CP@M(n%0UYS}CG zy*JDc)jXAIO@S%f z?)-*UT*`1M#tmd@ru>3Vs-~TEf>aDDo?DOsOm!Y9aVE!cSMLqt?sKe}SLGs#CPv(f zpMLr&|LxnS4IBU(K|za->NQbkwr(^PC|^1CfSH?%3sCxp?y9eF`m6tf(^t1v%#2q` z7ArP0bJ@B>SX3bC`HBu9smC|ziL7_t-rU8TBri1@cDVH!C5+?sk=$e3Yphzt_csO6 zfOg=SAYc*OvTzZa{!8NY>!v;ENe-}>gFVfT(DbcaoeiyAE zj=f&;(Ek@SYFL(T1qYkBakj4@j;6X+R#t{P{TE*3z6UtiL;1vs6F+uU)Q7nv2V8$t z#$-d?=|BFxv=F@shUYy}5Z!La9I&7Yo(evwu9zNr^JYsn=7Y+=9QmmcUP0#>2g-UY&7zH_l^8O zji%sWMYH3POh+T@H!qy&%f!U!wuPTM-)?$1V_|S|$?j7O|6nFoRNnc4L5o)(HyRdn zzU~_wv|A?sCZwM(0zBJhNfQ*rkjDjSW{xf`^0%o^KX1|e`E`Fsb@^$6aX-ZiT=Q(^ zW+IvRw@_;4k^^ZbJLm3x>Q)|Pr|1-a%qDf1&C2g|lb$?%$w0$`kfXUQtOvI^*#}AH z)*DR1z8=4TA(OE6TE22-ho%WDtjb;65+>In?=(Dsl``7^c-4U(XOzKu6dG#UD^L>> zeYhyiC0%OD)Yx+;ch*GrVG|yT6|SIN&nh!1DdJq5?QU+Nr9BOpPJ>pGt0&xD)m%Fw z{-2v*p>7nYxzqP(HC`Nk{01?8{!}EYlROxNR4Pq&IJ?bHPHF{Y`^M6kLHQ+s#jXaK zH3}6gP{nV{F50 z4=YOwUl{P!C+;Hm@LD!_B*;2#5^!Jw>oL+yh_(9K&6J;FvogyMW zl|%ao0vbnl>1>VLxbx^Y)E-5){9DiZEuYSaekz>Z933}lfgjjIPxkcBgR3@*Zp|NYi=+xySA^>oq>`ij!ts zBN&{zJGqBU|K&YVh(fBW(^~h23oulFr{BgVM_q2$7GRfKhZTJd37Wu%{1y9cq-{64 z%PY)Zyc)QV6~ljLUS9Ov=QcY?SaWe{4phG8^b?*#JcR$VqU2}C->+8)-F@D{c_z%c zIxN$-Y8n_I-osb`lHGJ0f0(ddX~Tl&kD7N6N0BkS-@{{iQya`*oo8XlsJY^mN>AE; zgWhvv;t?n;Y(hN({tomN88Y088bPAGON6|QDV#k?_#kg+wHn36s=Xg-zIkvtfcuss zN`6>!8UL1+V0>p>r%+=IrFpYJj^Q^U#hPowKaR2}HysZ7UefsA)~UsUvteZ0K)PmqjC z&w6gWd&XSy&~2$bPgz<`l8HH4FNG;2ZTtCEr}U$pd}Kvtp9W3Qp)iRqQv~UFL(He1Cd$ z5pOcL=75m>8+~n_GFZ=OFURqyD~_(yVTB{@GCRXP`1FLKs;cAXN3VO47QIErN8;JD zh?}xl)DlQhC#@g+4CeJ!c94n+NbA@JP9A;eq(303MWtOsEY}x+;b4+&XCUotOL6$t z(gydrMvA`Y$<=op;8Ik|MACT&k8g=loFcM6Q)ud>JFHtIOgWOEVf@Fr`l*RuL(x!X z6KLdVqDr>xn7p~V@l|>GGpP*6e|ax2_AOxa_v|^zo4HFEZ-qkqqkyV!QKqivz(S4(qh>7GT9JY?o?L(qdnaBLH>jwd>K5Q$-Nx#ea5jT zAtj*s4rLu<(tGlMVbog3F@YV*B25=M|G0+Y@}%_G64N7=X49$&-6keBD>*S?e%?y# zbSG=mu{GLU8Wnz6LoqoXyA!Za-nbDC%&;%;lsao+NXq}*Sp~$1(-!Exj}Jx}Yy#Z8 zpE{HsuueYEd34aWVO^CF!G0Z#4hLxz>f3@ot#%Q2Kh`Nd&evW_vYvEj<^*4B*N&6h z-rzV>1GE&~t*x!?;ij?ckhI!1oT$lDyZ!pbvx+&O<*I8JFbrEgQb=I_-@-%dHy8HL zGaP+#-61gMXCa4B3ibyk4=q;Ry!E#6v~|xGbud~3@+({3UZEcX%@ffVWi;aLn{bjr zDH+EL?knl^rZl&-)V$p&&^x8;%#0Ih*N!oA6RR1)2HEE}_O&Ex%bKK`S^%g>_db)h z*vGzTlpg6MqM&spT{(-103HN{Lq46OWA8);^Nvu^~)bA z5olNV6|_6sY>{l=dyPHl$G$pS&-QN75VB1*o8FYHr|OczLP6_}tD3Bg-MAvT|M9`+ zPFsP$bo~`A5C5H}tWvVE_Ur$E081j~`#7t!N^9+YL;l9uQF&%jusC7bV9@yK-1R)4 z4mWS4C;>UgcW!0Wt_xmsT?hc}`no`dL}jf!SFmS6L;Y`52vdn?Y$L1#^bNR?FNX;Ea(-|gxA{;=;tm=2;z;K>r7@WQ`>w- zCR=NlU03%`x%1h#z5-}FluyBH*9kWb&{N%kEy(rV($C>1fFw$Wf_VOe;BdH1@fJ7am+zAR<0WS>E}VGV+KhgVbxjN_Jgzm3VyDSgEY69ft`&P|-l2jb_(ZokqB+ zFDiQ@Y+Iu^)$a|NQuPw?S(dAg5^k_C$!lJ9duk}2srpyGMS~o&6iun~H zA=}Ufr+sBmGCgM2!zH;`0P{2b*@LW?E(&*iE^28PZ*CM{#vrdCS9Hzug(W1gV_(D0 zL2cC@0t6%-C2U(xzS@)H6N0OhE(KF2HnsWs*wke*#viYeVe2Ob`fMB%O#>#%jv~An zVPh}R=bmXV;DGflP{YpBM<34QCG+m;A6#? zz>2ctM557MCNfGeK#Ac$Ne{hy*u0S@2neAy4lGj%_VkFYyYqS)!6N=SKdq|{lrR+& zt7iRrrR6U_OeoV@>dJ~hp&?9x4|I9GsyJmRf{((NaM!3d2H(K=@b0*pP=`w>>X0M} z%{8Sqy%xERiT4`hskCAI#|RJ+n)tDnnwL{KoICU)9$iI%2z9w#ju>hQU@2;-m%36T zh|k+SK0p*Zx_10JUooV{z~`F)w{5=d8mSL&dlqNm#OmrlPbZb9z0xXN~JDtQoAL` z2jD(vvM+S>q@O_)?wZes7Ze|gheVzd%tPnzeE=tppy`Ytn5^;!P=P+Nwqr=aIj}?r z<0zl}hdYB5I^X;C=wEpW==n};eRO>-1ZAKvD#5cO`*`{H9Tf4v0NM;4mDBg=w9m&iI9 zUiMHb9_^!+E{(D>tUA0thUScY{wfY~P5b?aUtu@E`QM|)Dk(6o)_7~5x~fKFJbUN7 zSU>TIsblYX6R9cU^9V7^TTz3L>pCMAjPwwU$f=}I>3hv3M8?oCrsCTt#J3CMoFC$w zC7cuCABH5=f5CC%ZfLT{dHgW2tSPA@kMZ)z<@8+3&s0=~51=d@(!BInffGr{2F?rz zJc7b5l2y(xcbxL;qr>Pyqj|F8x%7&JT9#Z#JmkMQYpsv1UcFkCDXLs8sWPZeKxud- z`|jNZbLY323wZm}+B}(@1E>ugw62WOV)s$nf6Tos4HCYAKdwT^b{C&rS22k%1)Y2VLk9 z%y~xoS_u8A{2Czqn6COz5)bON1b{Uvfjr7)u>UmER=6>u#1 zy59GBPJJ<*U0EwRBmGrX)p_wfE9q$DKkHZbRvKse@@(@;=5lS?)DrWno{+wyHgeks z2VnZBK^U#>H7l?2&$l7DRi*4&gO^XPOFI{(ouR#ekgf&Ug{Ud^XF5c|IYBuN)@U+x zwkj)luQqo3Nn^>2rK8+KN9@fD3tG}mXyMd=3z3Cgbc^mCR`rXlPdKyu)C;La+iyS9 zFDbwMg~9vjl0Rj#7-#WT=%0nAY%6t2=jrkXfpUx7o6maSZCvx;9VQGq?%65OyVaRj zW~b@{!6`J|_xzD{B=T{=eajFew~;F~=mp=DnqNB#z- z9u97rtvdtdE7zSz8=T!;T&Vv;GqyBXs)MmkVS7z^j#C6{V8maZ8glkvjpb)-heW{W zjuvjcW@@t19Wr&{r@F%nR+Ki#$3Ve4Duf)MA38!vQ%($1P-qqW;Z!6UM8dk@ZpK|TaQ(^o1 zR4k#k0fg=^aKoMcUf+vO99P$<@O=^6!TDUJ?(8kB`>8=VYT!T&P2Zs{)&j?%%=+}C z>ov7a6{t1;nKZdLvOk05)k~Hb+p9rqs+Ivxy=2jo>Xs3X@>F)@rH&{4gBV z4oGr-bB?8Rk)mz*Tp<%&p*n@530tyOTIC8}n!nYgX zC`H2lO#F-$KJ|x*Pi^Io5j1K(Ew~5}_+AVp9rND==p){J+;qo%?B?BvR$~pUYFt}a z-qtfgett#H0Y8h0opL&nKqv12bdhCr0slf5$b}A0moovObctSk%FM;Z5T5;oT1A86l_xZJuM|Gcc7%(SKeGtFCvv%a+!N*oS(w3LpNHHv4)V;6aoX= zT*6@|FDzNV!`ql(76Tq;fxzpFF6W%)qR{>d^l*8Jy_{#o#Hmo#o->rB0Y0j!UrA&5rK*t*dK*LwR{~%R4hSvP%eKlbI$6VHRB*~I}e73IjZl8#k zmaAg>EkDl_P}b}L34Ef1&*Kv8|7_t@ilCF3An5)EzBV%LYOc#0fMUr9oLq7A(DVnO z(F+M@4OujV8UKaDH(Lgi+oaR;Au>){A2&E1)ER2{BHll@Fx0WkkPvaoCYrz;8KW)! zPTZ#O%7-kSkj! zkxmpM!5iAM>emG;1G&1wi6J_9Xdh?FW?@kk$KepDdJm*)?)ns`=8Z=0qvhMv26K;Z zH%w#aI4r5GNLa?_BCKPXxkk?jhl_2^thcl0_IAKXlU)Ci%wt*e%#(IMZHQR-4NqmQ zz5ZWO*BW~Ny-lt^dPkue#LK>+%q0vg4MpluH3l=? zNq&*g5Ln(m!tPJ*NR2Jg!(8au2D= zo*f;E_|O?@qIcD7-C2(BYXSFurh-z3kYF3zeWWc|T&Rr~#J1Qxplm(@Y{o91h!`pD z_zt(Nqb*l$kH4Nby1w!4hHA z@r;0)rtmHmmC}JQclqxtiO(u2W2MoHPddp)=4oH$J2nFdg|{|o)s?4+)PSV);l2%a zW3j~5dy+>ejt#bEUQm`7G2{`5=^$; zk~x~kgsX%5yeo5A&209-CbYp3LwAN>F>#v;9EwGXBJ-T|9W)8pBzCV6z3J`Dw7QQL zlTFKYrq9{~VD=XPvF6VPmoI8c$4;e`#=*M#`$&Wep(F%5;u!!OQ=UN#3ux@q(QQS( zgLK_7*ohWCbIRk*nM_8j;ciXM_=djZ4n`!9*ioKt6Gj2Tsa;vlRaoi}_BqAmu}bix*Mtb<;u{7hdR+c9Vu zl07^Ofm=Wy+sb0e2^T-%zThC-kzo|d+x0SCdK*N`j7-a2e}^sOPpv_~oz}#&Oz=)na*g=(-BO_B^^3Il(iUYE z`ikJX^9!U*Blo()I}VUX%~xyw3c&DiiB~3Wdhhs6yVGyK01d&V1Vt+z#=5hIT;%eX zi=1dHzU<;M=l#P&Jn3=#RszVajH_(8mHO}s%Ec`xI6LU{eL8rJMZA~v$9aqtA@g{{ zim5T~ih$u;Oza-NI)$1r;}YnuQsR9C1<9KMSm*CKST{AWhi|pyiM(GXK^;MS;Pu7@ zLAV}`x6PfsU-_Df93QZZu;TQlwRh94_?+c&qrE%YHB)@@a+mUNWu-|Fa zzvJuNJpy0n@<_T_-1o4_tEv)-D@KL!WJ03#=GrDWX)9S~48a3Re(la9V$Syci*2qR zQQ1t`DqA`q(woBQKuryNLs>&Mm>jEhi`VMx;nL;gTU{Ky!>+mzqgDhz{}K0!r9beO z$^69nCB2yx*0fXU9i1v}aULCpzo<8`{GtFIn7$$4te$JXGoj51a&xSg4Z12B*LHqC{EFsQB?8>#BHROWr^w-soJxapPT>6UzXx;WVTD62n` z*L>75%<7N@3{^lgK0n4uv`8bMbR;)^d~R$X`leK^)$}JaFg=cvn@@iY?!qg{f$q}B z-rg~$&0BqJ7m)9RA`YR|Hg0?!NGmBR0ZE?hTJok$DuJ2z7Yx_Vgb}&juF~B;#7Vni zxUdT=Z|wxz2JaB5jgi_J>0$%i0pgtVYiM^+RJ^y|6}n|#d(HXTB{LVAm^+x%zF>OG zl)Wp3EiYdbQ2H)2Ikt%7KQppUB3Ob{!2AQ4LxIetHhs9~Lh^{dG$eF0kk8G?Q{2q0 z@AkP*D4;mibPnNC`#+qGw-16x>Uo{FHkm86fy@yokXON$Ey8(T<<*807|tnq(t5dX zU^p-EV{+JY-tMnozIb}oOFnA*V$6DZaY{$`m5x}`k~AE3sm;j7dF0j0^anGkA>}+h z^4j3ljggw`0WXL?Ng}cInJrZ#_CIYOuRGb8_u_9-r-+06Q=ncGpfig+)*4b{LZky_ zb5oBzx8l_~a9gOhK)ZVg?T+uQ)A9&&PjQdv%fIE;hxj7EXbmq!U5h4-8D^V2KTmhb zU#dlP*`MXIwK@+~JU^^O{61g1+en>&S=v2Kc~1P;v-{+i`HFKXQJgJ45*+fJtj#rW z{u8R&-=&<75?&6AHP;!v8VO)s6+QT{?xDcZ=4d?2C2 zbW{4gb?iI#Mx7q<9!PIYlnZjG%>2nBE!?WQ_U?#b+IIiF+P#;1IMoLr<)3yZqvgcxzEt#jA<>} zB}cef0#996rYP9=opf?wud_#cBQ0&fF zI>tUURg5it`-w%QO;P!$aa*%qIv$%)Ifv<4FAbI!;-3rDPJlNR6eLE1k}Jdq0=fr# zQpF2f8+FU9O^>Nm*MuiOBGvsy6-21!!>r)`l>X$-Q2mjmpmT#r+2PLwNLRxgaSeU% zBHktZZ!8@=xrXiiY&5X<<|z_2t*NL%DnJpzIWL_VX(Ot5`3;0As1(8u5%#ghe_&Z`s%HAx8=sT-uIV_dVm zlf)dxCGpB<}0B8$H-)g zC_wPiD z%N|N>A)G*6abLpNH(Xz7j;EQVJ}?L=|3Ca7se!Aniz z_u5KWOcb6T+o{HVU*+bGS|5_l&J1UI&HJ${$?Hzxf2~$`?5JR1T>=P*;7PKz;3RG{ft=G*>gzTQMt#`jVo_TNS5d zYn|eK4L(PWrvi~Y|Gi5PFwFohl{(>sX&ZbG;v&^o#n}nYwfI!d$?`ZUwDXK63X-@w zYYxyWDgW&J(BULcsEv#N`Khcy`p=Fs(|$)sUdFKb__T(4w-bznC%b-8%v@STh>fZOyj_)ljE{+>JH+jqBhOlLo@=MdEDJ&dY zxm@hO5M(#yP?6(TQ|^4oAos+19`u;*Mg%&A&qOEIA)D@k*%aq5)WlDrcVmHDL@+M>B5XViu zrrM*K!CrIRGBRKiGj=CyWj1>A$t+- zmNjiPROP{ry?+M(f?xvR#oKd@?lk%)+SVww<$Jq!OU>qqdf1LC*JH1*PxVf{Qbk|9 z<4MahaAUt1K`AFmK$dT^Bg1iM=T=m#)a8m}Lu#bP58wZ_SRQiAHS(s?ke6UqhU=N~|* z6h%WR>K$~(1dW``V?5Y)>lgHJbt6)<;EkclLpVFLTDik+C(6|qq>PPpa7bZTe1+v! zN*eelDDpINISFT8=@dwMZE@<+d=hzwNBh}KbVL$&#~;3HZBA62e*Kd)9FEHUS}4*% zfq+3C^K4t$%rS1{*j!2f)4vfnMQ6RAc^X>E&qDXJM(fdnpR}c>RIvbps8UO?2*ZVz z3?e3i!Xms+-~MLkqj&c3e7yq@5{~53hgucT!CQM|kc5j;CdW z5)UWui$Yq{E6Jr)<^EK3$%C{IuDnmZKg6oA+?`3T&T|bb;p*!vr-g?{31|O7s%`OO z-(q!cWNOf=f`)!mkEZZNIvt!!(qMtZW>}~X^DWfh^yL$#aqiHZL)v>;juhsI&I4RB zx9^8Z{}uT_?Y|q~D6^ZseO@|ChbNbolETb5N-ll;#jRg;s+VUaCzOublIgDKeaKU- zzsqD%7Pn~qsLO!M>*(Dk%eO}^7p&xYkG_eezTD1Ad_p#q zKgtb74E_J0MBn7ewU7Qyq-*1ehy0ddpAQqkD5o#adbw{F*uyPH!_x)9Y`@lk&_Fze>hNuJ=L} zDkJ<-)vECRJoQBaGrXGFvGI!DFHv8TCc83i42N?eWpSg(GtKD*e* z9DKo5*AD{;T-k`ndZ0I`XhUop@nUKebI9zg^KS}uFF-G(+A3~=%&*6koZj0gj zr$R(OvmrO5U8!Ea~5GziH1B~ zr;cc&H^nLJOX^!M41W@EcDeeiWSU(=z-)9q-9qYeS0wio$c^=;J-4W-9viJ1n+L8* zf4Hq`)GSOpeg$;Gs#E~XPX}o4-oE`Am97p>I{Nx3fa_nO_p53A>SujVkNrb2!Sv)f zUd=x$3eGf+n%&}AH5sIGLtHF=dG^`OrfBBT5*Z5Pg7bB#_cfEnr!#5v(LIo^97MP- z#)@N|Z=%uaqa&$5e|2zpNwf;XdUde)p%(EVA+vlnD?-9|yItsuvfQW_6v?`2pKDK~ zT+5NT;p97u>ci3*%LX?^o?4OKt){yC!)H>ns^L#;YX!#3_1GbY^K{!alugDf74$td zGb8m$P2=K+|7$Rr!x^cUXRA-g(Gd4d@&eUW7dH4??T7{!dZ5F(Xuqa};HP@(>%iT3 zxUK3Owk>g}UoKC5#XDAHYYoYm@L*;_U5#<>h3ZD{h3dbo-$eS+5Ze*9vbY9AeLx|S zBM=UC7A@xVr&okmtwHW%xy@fe`aqJmMshnqjvbKeNXc#R&+vZN_ zYLXWs(MyFhH^9m4FNU`>+)lv+=Rsvy+YSVY(}davYo?kSmZq6moQ@Q=7`50K{6wuE zELQ*8o*ReYdUIkQvsox;QSfnNjk4N|dMWubd#S<3;AA)VW2DA%Tt?g!rrLod zQC`I^!+EEQhnIcs+Ovfp=V;%FzkFi2T?zedRNYj%o?bBe2Ay|vJ_VR^hy!t;FUZ?B z=Fl#HtZV((uc4AMqr=sHYsfGc%|_5qXoA@z%)SRIP8CoY4i*|Lw*}IqIIb^c>*}oG za7t48VqILQdJ@7=AY9%zIq^|= z$z7gBo?zBL==-D2wDb+Ukly$s>(_j)X@(}v?5MRWl_n7;lsLorw=8w!(CL1j3#)5JuOUR<&6!lUTF-$3~=!K|8s%$ny2mb4gmC1uX7f=Ha z+&$`aF&NrwOiMGdS9O$Fo^~GBWzYCryj1vHxD~mJpkR@*!;BG>o1%Ha*DWIWP82wS z{ljty79>?U{E~lyE^Bapft3#Yw4JY}u6z^e)Ehcbn&&hNX91K34v}n*v}#dSp=0eC zkY-A-k))xddP%tI=WXqjilylhzvKjyPB;}4>gJpXig9%*Xi&>myo+YBt48c5TJ^Q03$ zs4|MqYsv(+5^oM+DToDih5nUs770RvN3$OK!%cW_@Z|N;#2T}2E)}qu6j{OkGZeK8 zVlqBW)puFx_-U$LM*R4L%;F*hZzUZ>D3KRNtV0LB0=2}nSDWLvZuyjXcyLtU!GA3% zNO}y&t!YI?Mjxrx9M@ z;niD)&;!w*r@<{^nZ1+v_@-zH3%!?x`7(axWF4G=cfz3Pp};q~_#31aH@)=5-w9ci z<$kGJn5dGtQ$aXVi7zrK+26m2)Hj29Fc(mqFH<)e5>lkTp!cu!sS~U$PiOvC`NFxb zYJf8Wgi#bpkABDbJ6ANp-71j+-0#Ql3(6f;K*cV~7*dNu#bg+V^(w*D_!3W)b=nEH?jHNaMjRG@j{j+!l~Y-aK5FJd*+6 zl|d>4$g7?7NRzD<2N15tpD0G$h*isauL*=j9-N8 zUE_^%sGN<5PBoDH5bx#qtvn`i`-7_{c=1$8;l~1u#^4`#MZ~A)6N5;0rq{BX3sYCP zyq>;pIT*=m9B0h@e(J1egT83%_Z-K)8K76(Ze3jwq@ylm7vGdU(+=~xweUqscE z3aX*Vv;_G>nots>lwY9EZerJ?gk-4dlQ$^lA_mv-%Co4pD<%5Q4AKwd!FE5O5j7E; zeSXYaaO4xdv9n<7%1!9eh}MVzsF#wmmA|qgY#$=6eH?4#jQlVI|GQb@ z=B}`7$mQ7Rq0zR^+1-_#N+A(DsercNWkPL;7y2sk(esl#w$r4D9CWEIxU;`&p?cp? z!qV-EIa&d+hwI??ASlLH_l`f%DNN>UINr45I&MM`{=t%zW0tu+Jka2@Q{JR4w9x8+ zq5P#?OW02Ewxc~Am?2xj3`PI@(VU{9B6W~pXi;{v7Nve$oVf3T79~6M?>L3Z=>s%b z^fkPXzH*8!VKFQmKBts`Q&~O19!dJ>SgMCI6PlldvRqDEQD32N%d=LpbzF9bgx!j% z;C*#j$eOfe`QsEb^5xC+1HBro%~Hty-s>J(sie7!%wsC|y$@tEI$ibMh%Xgsine1m z5zm})F9y)*NsB*pj=?LdF{BM0JozCpHr2T|s-HbT%$g|hP(pLFs0PKZa1_6gVvLpS zVM`E=nI5|jC<2Rn>|OyO?hSh58{+x%@pKoA!03Ae%V*!mzrUx|hZXbO{WX826LZ<* zm9PE3Pet~6=R#poQEC)Nw7k{OFwN~MW>!oN2U*XvQrdk&>fpM|B9nf>i5TVmc04*! zv!lBcuCHfzUYn?@nwf=96FTaLi~*>~WA`Jr&dRe?*AriLyo@MzwwBa50qsQ*&<6+s z&5>U5Xg-k`P(vg?^qwWLl>`AZx-kxAB8E+4W)lc`VT(6{-@iBjxqw)E7ej~T_aVCA zIGCmHPBJ_T^bSp(x-#i!Hn%9U+C*hYO9ypa4(+md-_Oy5qi=YCv?3xs={lQsI3*#gqOxPk6Omb0!=i-z(z$@ESC{VN_UfL@e+}Dwa{r<$0%E z)IArqCFH?dY=|lZ2PfEzr*Mc>WuE*gHwm(jK?(L)S{I8~b}@o#thjN4r2o$@oe!*q>KY6|DmLQ}BcG1L6rqIg zNgr5hFT(evtL^yDyoIlP{QF}>WAr1I2hz7SrW`eA@0zJ@w;fhvr#>X6!d>YV57+6L zH}NUG;d2x%je6QYtlOdR>332`^djkg6f7ag#Op-9BWiAQ@~a~`Su0+I6>*09;@Q_pYb5*r zb`dOE$BMI63^TpGCbIDFBn$+Nbvw7)Rs1Ah@wUGEtORKtDvi+C2sa{$iaV4#-w<)3 z`?dwT8+BM!VWu^#30|hZGqGS0zw~pk8q*zu8gYkH^Gv?VF{Ws!qbzn=L{e9#0?3AY z4<0Pq>@G}|W-U}Na~y#JevR}VcoG^~V`lE4UE$cBgMzcx63>Vf_st@M_60?5xsJ+B z8fg+fItA5{o@bM4MC=$MDx;lDL!?~0_wN0bd@KR-W|ht$kvl_HGM13G1{ivZVMc@D zs^*awT|+ZU4RU2nyjuMCFOfZ86zud}O(Y5O^{`OYPp@xp=wRA%p2}xJ01JcG} z5%sXla20p*2G`y&o?MEE2pyN&wJ?E!SUBohho!B5v;tP*t9!2bX%J zUNQ^S){D%A$PK0-vMeHbjg0N*kF`@&1~!D|eJFCfLUU5MMQ7MYgK4O}G+S@WDdao% z)tI6gkY2mI2{Uy+E-tRr5Tcc5NlCs}q+~$O^O3%CPZ*eMG1GT?uh6|+;XF2?4sE9k zeO42S+(?+sz=HFx06CUX5VF;?YP2st}Flwop_fE6>B{< zvWO;<0WXU$33I$p0ReWbSDH39!0`mHB4-Df!D)|45o(;t;kgoy0N zXoYETw+!^(=_;flQ=pr$q6}%@rBaByb z{m{Ch7U$I(SIUrOB5dDySHvkL!l*S|Tz}_UKhgqEf;RBS6kGwWFbx^70tbS+(aTl? zeVU+5wK0C;a!c5On3WyJ`l3*prg96lpOrF)3W`fSM=~18t246hYf-0<>W@I&*@-iu zyq9aoEjJfJIHjhd+|WU7b{ruWsL7_>U-7QBMl!&9k0nZrpAF4jOCp3}Zl<(JY`AcJ zn8vNBwSMo?{g38mnp{@I`*HG(LCi3dHL+P9{CM&Rq6I4kOrut+Z&c##cfU}bEY9ue zoTa$_1!*Hf>O;t4B&rf=GIE9H@O209N*Pj>JJ@%LgejCafHwjaDnQ~bmDqp$<9w&Q zbGLkFchFeU>&Rg7t{VhvzsI3IWI{#?5jPcy93(VdNODi(ID${Tjst$vNEb#Jm`)Hu zn0kCy#0^DKT)2g`5RSfil%eT0ZS?eu$R%P1q@!ZFS$t}3hG(#L{3)qQllF=P3vSax z;0yF8F~on_WxdxA$iZ)uavay$E8X|*R9+J)q#bvX=!L|-SB-Udy&=#c;&7z+y&Akz zPb&5zDzo1}xkICX5Ffp3IJ!A9M_-dPRx!kxA5rKp27U}5Rg(kXc{8rq@T2w7sGHCTR2)7*-R{FBL|TQ9V@u4&eM zaI??s1(O_c<>|6T)Oolw$=I>WGiaMTFe)BH zA_Iqjv2gmz{Kt7H4F15f>>ge`US#LOZq``UAqySr_5nu^wm2fIs2I07j zX+v1H{-pIAma0viKG<(VEEV-2I)jCSzZU`jXCTug{($$Z={EjC6H(Apf9OR z8LDW&V{8`_Behvwtf=_Dlt62V;23hb{L)Ctp`o!8xNT~u85_PwaPP3dx_+kva0}ck;X$xdH1uan#is0*YnOmhp`K73a>~ zf!SJ$^@4K|pals&Mtj5{8@%CC7gyyui_^Lo*>$e-IjXK^9=bbOY?B0GV zsWVNPW@>(}J+lSpBgnGwG?Kv072Q#!Mve@stMkW3jWq0iK1fR>&^Z2V|8QLn?ueZi zKWLgm0Rl!}sad6o^VqJ+8*UF0yRLM(8@B?R*knMM5#MuV(LgI?ZnS%vy z-+GjkbfO4)Au(uplG#WA77`_v<4BACPO*DM{kBeMQ^+E5=&B1f%o&nF{-jBzBI=jR z7$T$V^@OsukS!cNOYO6=6Z`BS0(>ssc-L7i5$Abqz!G>JX``WICU}U)e<0w zC|nyf+7will!yJ5MYeC`FpCeSp-CxAQ_oI>Ia$huDwuF>`_;BWfuB43T*nzEiW1*PZ zl7tdstz)$zt~^p?Ci&8@7Ch29xJkXOq~HjK}V1`Vsuq8)P`VIcGd~!v}TPR z-t}Py*#~uVuC6k%SsjdqE{hZP1fKdXx?^lOXv{PF_L^l{iPpzuP>WiNO?BsVmEq4u z=o^E?Bm?OGeKk8<0T7i%+6~MXA|=h9B&boTQ)!HeB!Pu2m>ZXtK0UHAlu9g+5#Mse z2?sj}&Qh*A)q!>eT8Y|akqTQD;S8u@Bdv5Z$Wb%*&vsOXJ2_!X-ED%MRj%eq zXoSXeWH7ZPCh6HXh18^^rvMBl$r<!NK)Q(WFR$T<#tPCB~Hch%igx8$*)_6{<~zDo=hLf2~zf@N_& z=OSvmj6_?;@D!SfrmRy>FiirW>m-TGWIIO_YYjcSIxji>EcBKM!v27h8W>IyA^L3g zV2(L!ckpHjl=5V(tL${I1)wtP9$e=aW!+RTYn^#$Os=sGnkQwHSN6q``JfK7F$+y- zB}k=3H+OAHPsmCMGEu2fnY()NAo68@P(8oe0rBTLD>t147rTxX8kw?I2xM0QYSxUf z?_>bbm(}ZkE-ERJq<9G=yc9p|PUkk(f~Gpw7x++Wgv-F>@%(kClJw&zPc+EC8I?Ud zK0)z3C>t85cuu4NYkPt}Vx;udE;Ib}>JmkM6c!dPBv=zm*KZg*u9<9u%2>CGXE2k# zmR#~b0;2wey385Y>VSYSfb4z9m{tWRED=K@ zpzr*mD+Jk-R1D7m^*iauP;D@qk5}T)AAxy3zlwz2o^Eb^-MTc?`(nJgS z$1nN|@XJK?<^3`TpL}OK>i(G3q!khn>I%@_vx%{r^fD#%4dD3E2aMtHukxm0}uP&OjK6C|pxa)aG%20LF!yxyI)7LH* z6C;vG8VSX=I5d+8P$9|dC!LcaW>$(*pMjPmlh(V6B0U`VI7MX+Av5>xPz))}+YYhm zOnXI>HoT11=f@vt*TJtS=LhYuCXRna=lo@2@c)4v*2e$#|JQl<|1OU=$N&1V$rLCJ8Hd82+t&*3| zU#CzuoTX6K=KZt*f0Mb(vJrm>TV1$eC2y){MZIOAOOd{1WoBe*Wn^&sppCADrGcr* zX)c~qT&GSPykli$W+}|gZTz2CaG6@@bNg7_u)w=)GP|r|Nug}NMSib|mWVQ-P*%T5 zoFKD=pdQYKfrDVKDZ&&S>qxFD=Y}yWi_MIe(|+HxEaiD?K)}I4!z(N3XAv+B@8= zYg5=4l)PWt6&LaMue`?|Q6m3-L%H_p^8NpOll0r#_5Xfzk7?(@f4_b^^o+9R-)}S@ zt^euYufGekp8fah`%Q<|to`?!yltC)`So+NmtMy%di)&HNl@hwtYyYnaZMo!zpJ>qIy6p`;Bz?|+%9 zUo)6mBTnv3w2g^EXY}RGE!E`P5BG9w##aZ6#A%nf%hYUV5>~k6!Q2p+R1k~Lu#NVm zJk43Raa%O`CRXImr-M}?Vv8KJKZVrCDso~$REzh^Qt2oY!%bSwigl6F)>ZsXcZM1h zHvjyyRgC3q8+FKqyWmr2kxS~b+q$#gj$mcF4C|vkM~s!7=Duy*dGJELJCjHnw#JQt z|7rKeuMsEqy7bnBCM`@4-Nl;bOgE}2MqZ_ttbN4d6diHJH`aQnkwM%c>yiEDmuJ3) z@1vYGx9)Ni9E^zysU`blGkiljRJ?6qKHIWykbJh|Y}=)Yb?mpXJoj&(6c!ey(ezH< zc=I-5Wodr0A8my0z zmzfqY`f^Y*RwFmVZe}>fqNhCO{F9wn+*oGY?j1}bHkERMM~?ia7^kE-P#f|5#fx46 z6PLXwyN8D2K0MlfrQFH6#Wc7v(^M;JVrf*Ln%OVpw3PMN&-AYi8)C^j;hgx4X7@2K z&vkil(e$a=6FrO~UTKbtHq-r|f7`>MU^ZOx?Zczo;n`LbCPCA7(WnJmM={IW5(N$p z4r$J-PQHCji5f$XL#fBTAA~yh18M7k1OBD$K@Vw-c$eTw~ZzCT&W)73zx<0XB2P@7#;7l=Via( z)*8*I@jW6etjb-ul+xMNHC=kdOU*UyArJhF^PTjmu;^)XE_h_v`C%dW7my%Rh zBd_|uMou8Ng}d`3A$OFO_0Ff4=NR}672IihOllP`P9~{J95ramu{LZ;ixFSwKhoy3 zII_@GxDtT_GT5N3MIz?;vu9tU?I*e=C2Nm(h`z=Nios#PyZ8(?Cd6Sehsc4$9UhgO z7$5)q+jg<=!qpYp$oAA+>R2O|-MUGGdYpq}FlE8%=%R|3JF{49vD<;WjqxhvY^+Qt zImaNjN$RP8ePK(&jpWXhh3ET19VVUx@EN?86`wzkb6$%(RV;LJ%wJg;GHi_ZmkAXg zNs)fAVQY~4*2S*k1EyB>Wi>i9Ki=Bmyqcg_6)@1OAF5d9b(9~O(R#F1rEqD& zMK#kT;W?+WaQYq=mZW3S0e9a2xhX|8!LHl$Qa!@%Ik%RkeB{;7^OJphcI@~zvGC`k zN4a@PB_1qEz(P?o+S=M==ftM#4(5Cvs zJYw%QCAQ?-XXaQ9yhgt5cJ9;HMw-D(g1cfpeqXnd}g4OS{ zJa{Q%MUvdUySpX1{Y$)>mJMA$(@YB!)J*dgZ{50uQ(h}A*cP7I;Y2fDG&eUlq-7-h z@y8zuQ8G+e+Vb(%_I!K1A1B?04TCLrlNwTVD_S$gkueS4-d_`|5aT7~!~QBdntkj3 zQ)f4BXRfpnjfsh2IIZW3e|vrZKBXZ+P5HE5rCIh!;~#WeEEvbgN-#5z&fF*+J@X~U zIxb!*?nNBbT8ELx#5&fJ)QEJVaHL>zh?#0-q?rxnZ zI}w}VYuI?jOcM=X$DYw?A?v{(N8Ib^6~hvDCYhR^*?be%&m=47*;-yWf1aJ4{W4;# z{^hv`j3t^fNzZd@m>0#%me_Hu0|bm?FSzW@p8Dpi<@EW@tq)dh)=kGnMb&@*{r6a{ z!UD~E-{>NuqH;&5PV@8g2A^MFn3$ZDFLYYA8f_KQ)zOJI?I;kYjt2Es`iGU4UiKZ? z#v~jbB4&>jzrK0XCOHIeI!^1_fnE1SPf@-eTAUpd^ty`LnUXNMJlkjk|kXFHt76qpYjxXbFl zyf~X{%*kye5Ez4E@2R7dpxQIl+W$GsjkONZ;#+W;H`IA0TYlMB)2{3??`*53N7yjJ zySS;TDb28<{OC-VhlB~MKZ&?<)OB4}e^=L^qjF}tjtK}f#)uX!W@C3F@!P!+DF&}Z zmKQ2onr_mPezNoERqUbk_3K_0bEyS;=f!Mx?%a9x#tpw1tb~x+*ZXyrSA4nny(+OK z7EI1c^MBVGVVmJQhmRbQR#gq?%AT9MC;$5Vrn(q;w#=^T(dFB&i;jLBv$1X39%6c| z{`)lVz1!cF6N*G;_&O|1T1O`wn9QllFzo#-9=AtaQ*sq z#-3mis(@Ez;p(!fZ-zUIgb5b2&0T27+}GFfwkywR{c1k1%Bg|6;PTngwxQZ$q*dwV zg=uLNCn4t*hm2(2)G=;qNkSV+r8KJ9`0Omz)>;2~leuP@{@(kYVF!C1kd^trefy@j zG&k;k2?tiA*P(d-X@@zpBV`J)3T3YQdES%Xp8G#K&|VAL#O*;~n@6xT44{H)FV6XLUkQD{;;t#EsQps5K;r!+8M zl^>7xRUlipq@<)xn>X`HEKkY*?%J`U>W)tY#A_K3&f)u8TJ<|4Jk|gC1Gxd7#KDHR zKyNnLoR3utE6EbPEVAR{#ykq~v)+!x=r-vX#{S2iwKX zrjk+0d&}5D`G5?t+Ni_9y-~&L0arGzU+;&&_a`Z9*=K$l$0IL$zBkYfuucV$Eq`F% zF^Og*P#1A!UrFES*LM%9cFBs~%CR2OJAC+X1`qJw?b}^vXs>Z5y2( zR!C6gr;VK|-aolCS%cJrg4NsOt0mxd6{WYWQOs^Cx~t=*%}9$ss$GCgu(1Emqf&nO zK6^P{Kk?_?C(x~nMjkBq+4rPcV?97@Ol4blp7ZL;MK9acQav;`xoFq> z(aFJayl5Y80w2g!BeuFUd5oRC)By;M&WlnuX5YYd-Sp@Y+Q#siB(QA;Zo1~Y7;oDZnCx; zXwBO7B=@k^NAxX^L>p?Zto^uOJH%JUI_y!N~o%D!uz4WfkC>nbu}a5*=1Nd=8= z!)0EzOcQILh{(tQG#KCYF{Wi$b8x$^FYO6>>rD&#kch~+=tVDL6E8oH z&qR5^Tkj97dU02T&av`K_TmY$(nyrW9UUD;w2Ue_lhkHLHdC?1;Z!bTz|Z$L5|ogB zX3ws#vuDpHP7nK<=jOVd!y6sd$WdQ5e3Qh9 z*jxuFb%v`0Kqoc)N~UHx2ii4kAy8kra{NGD)Lo!eyP0NvLJ>IPveDR=)@2Bd99cZc zcwJsT-G0_2s&9Ca`?Qvp7Qbn`dhvcNX_cHfnrV9NpvIUv5CXdae4UmT%8=pY+R>9r z)*`9A+QlZ*-LhKITrQf)V|?%a=+H1R*%hr4w*!4s3y&T>8XAZSeZf;~?y9qQ*RC*BP9)0;xtTgy z2?LxY_vs`HZ!fRcpTjN<5$uomNlnqX1ZyICJLLS-Kf8Qh+NF|h%}wD zof=tYhqOjCv&_x`gb_Yrda6!VM2w1y9M{RCVXGd}11k^S6hEhSos>Oz?{%F)-}#e|5d$Q3xu zGY+vGJ0@H{nl~u}2q=wuR*&?>hBvMX6qMcTa$((upUqmFfW#I6oq+38jK($@Q?nO^ z(2jsLP{8GC+V(tGFA1?dLDw@@xcY*%DoE&biCte!sIot=?nJAJlU7aMk9Ifxt}=G@ z3c~agz|j;KkE|2yA; z!z*BW^j_VR0Uw$tqNTuyK21nK#??`z_r45x$zW(Q;uZLL!PddT(!2 z&e~uX7*}n2KGw12=S|gKQO&l9m;u(FqkiCu^48?QRwdn-VWADL>NUnHULonjLw2Rw zT-0&FDnuqrQbwi`M4&?Q?F-WWyhS~>i`#oNm^Q7K!aRu zc0&p7O)uAyT9lhJ4e7tqzDSq~}sE;j+5`p%5#jy7h#QB7a~7$$5Dx*vlM? z3Sk$wwwaeO*$%Gy9GABO?r@xLP!_i6zML^lxTsIUqS=9fu*i`G% z;gct&C06Fbz~{Xr!E4aQHBf7R3nU--i(oVzqh8-HU%qT++mWE2T{{xMtX~~eHuL9x zs>HTXA~Fi{h`{me6~ zALTj*)U6<*o+f7ZGJp#n7;a9Lxl5DuZ7e$=;gr{IH*_*;?5?cXv=8A-(a25@)RjcE zEfqA?1dBw0a?!x$XBkTLu73Zp-QCe<_zTZTwT!Fjh7Gk}lC^^ekuc7YfNr-R6I(_) zAT4oSjs%_UZE(}5(Lr5fdpMQO$mCTR0Z>axODhHn7^};)P9al}qk^)s`$i!p>(biw zXOl@(l@Y#0z zni2XtwW|ewP2fnh#%IPllE75ZYg=LG(fcSS<y77Y zdPe&|lSuoWItN7Cz?qciHT31QN5so7vwb*-gihFVFBeqlBnhP0Yp?!5R}ev{a8Q0E zaASoZ12glRb{)%Ny~s72FKpbxXWX8r0;*jpN+#H<;$-HXjsnM&W+S_S2wxJ+ z{W(L4brcH#-EPSOgR6NvA)TLI^>y)MrV{NW$n$*C^Jz z7G;m$pqAA)m0k-3hvU+C30-4ok;}fJFc0xsvDwxzbW_(qfBro9IqVT3Ey>=#?WEin z37YC0l#;PaPOaIOTK%q-03uf&a^l_D_`i6I&+IzVy8J1W$zEe|$nq$gWfrYi^F`aH zliS6no`pEhsGQWyyMZ?26M*~_dPm*dJJxz6U7%W6178lJxRj1_gbf#ar#mb2uEZzF zf%Q~Gm_?9E>W!KR8Fi%j%j61WpQ3I&#-hI-g$7;U74ELxJgtw zuB}2$Z^H8SGat*suFg&$AD?b7iY@4UE42LScRv4$p3jE$@akmfDv5g4R6Vzq&N4tB}zX7e9R2LfqP(W2W_&sMpzP0f zDDhJtwo61)$J&MOeSi7lgv#qgjoh4|JGvbbDuqp7bZ1-EvfpT3yX9=MZlUN3$k_69 z6R1K*%SJrj%%mJJ$$IrNr}w68t<~_C&pp}ccboKbgT++Pvba<{y_?(#*d7N;)Pwn@BC*=;R<_&v|bD32q_+YK)W@S$r;yoPJO^=B;}hUa zgA4iQT^I9bTJDk%1;i4;>dHX{#D5Tj>cQzmjke_up%hRZqN*8ACyiMzj@$9e{>*@U zf5Ze>0>VflVePSN*MNM{lcX&J=0Thi!AUW-o2(M#x1G=-i-(Y9|Fi<}(O~#X^3$hJ zYtdUx;WcD^NIeJK4;pNll?4{3WlUJa=~I;5(Zb$74pd08E>55o!n;>hLO?(X3u??8 z+U)J;*MBCpNHgkSbKy_%YMIqB4%34TyGjG^Yu)L>8!e-bH;$okL zvjWv5e_BZ~NmE11Vf)FwCT7sZiGy<{6zjP}P4;PLpYP%BZp`?X(=Je=r ziAHZ%656yugdr)i1opd6O!QR50TQ*mx%EKPVf;c=Q-?`cv73~P%nPf5{iEm)Nv58u z%mTq#lK*5&Ik2sDcj=C()0!*{A;-Hutqg>hg~9kdZoBy0 zSr4%pKX4r(cb9<-vZR039qD-P+EHzoJ{WK}@iPt#t47Z2IukHWL{2iv9TA8!_VV_g z2F~skc8~jJ82lCi#YDG$eLtZfD*JeIy=wld5Yn6Ah*~xWwj%r3q;Ba}*T4dd{t0zo zAw@@$ga9-i)f}ssa-ZX2;C1exUm>aw67p{JM{Cw?IFk_L)iG;#`SRn${2A4ej>5ug zCOx|u7-B(J0_a@AZdjqd4wat?8noSZBrDfv0ic5*i}bK>2^?2AM_ z0(@r7{FWYvB7j~x&301H*Vg>v#lHaOuHAH8_e=~V+0)>@5PKP<+MRGwG(wpL1$tIOELm+s_!G zoxFl$CJ*^QC$*W+?CV?gSx*lSkG&^uyo5ub4QCVe&X-idI2;nYZx8n=QBz3smKzEL4g>13P3WR=V&f5G;9 zzmXsT>ippd0MKkgld>E4jrHssa#f}dyS$V|S|pwhB-kXJ+ZdF6_r;9>w`wTR#8`mv zh$PKA#4`m#uX5e76(TAT5z;hrtmHsy28Xz~y4IsVwSpKvJ=W1NP~s07ksT}y`~Xd- zYed6vj;hCh+e+!)$d=zN?IdI88D3wnkdIKGn4VU|$4#bHJ>GG|CnzW$oWvJh$6W)p zDl7g?JpEv{i1=z{UyH-_+4Ga#e2*_v4~}}>Miz&c@DB{UP&4tgGH`p)n4kt`T*D5W zQ}FGoU=d~L!nxpmx@?wxB)yLbwGDFc@O(DE`#MN-6_?kKpOZsEgn7WLf;n5~gdlZ5Bc{(jM2zCHL6jw3v{XJ1UIE;d1SBH;Fiur7R!C1XaZ-*-#tdH6@^3u(VWr zI>lRAs%+nV*yVmD!aan+5a$)!s6OaX5#){V2A_ag1IEO)s(HMX@iq#OTZlw9B}}hP zY%qhUu!FSBq&fkBI^?6=sdCPwGbVKV!6JP9dXsMBMv>l8GCd@X))G5=x}yDEm;G9FXX*3MANn>eNnJ(f00qLEWO`8HLgkNOnjp)N zKigjSbPp$E&&tXQp?pAD2a8X#8noxxK6P>7d{eNd^!GKC?ahVGg`PUl*L{tHk$2lK z^Wx}P_@qO(OEac5Iski{WcvR{_M2!$R2wr0nixU(y?X81GlSNwWLs=as+)bb2Ras! z7DQd>0ICFJ7pspBsH==TyiLXs$wRb178eU=xVX7l+luq@*0!R()f?|DLV-0g>L_S~ zz*B@qwV3eC0I>l?Q3w*Xtuyshhw)qZInq<((qhM|05<8=Q7NBOplbMtQrL{zc0~f3t@DMFQqqdlx8oSz zLN9SMRw-fdu?9Q>r*D7!2{KKjdP!*TQbEY*7mp-RNcw7QxyvVh=$az}Gmd`NTKl~- zX9tO(26@on%bQn{va(b=uBhcHFlr2vy@Yy{x3#cH@fWs^H9$wTY1=jd$hVPTWFiro zg!Sj*0RvE#W!{C|w04CAvuXQwLBUqD2e!Tb`jrp2>}z#zZZq#Q3Dt4(IiXU^XINi~ zB=sR;JIXXawcR%AxJpX+rmb7~QQPp0LR{s*!n_U@& zYDK~S9D`>2ulo1fqiuSCD>B<9Bhfo@^?=2I3W>B)2_DVJHG3+19}^Q)pxm(nn&|k) zU6BAWM3DeQ&T`m>9-#yI_rqmga=-LIe{~burH$qX?MkhkfD?JP@L@Fc#s8?lrljhwVn-RnRQn7$pn_`j( zoe}1S);WNPQ1)Z_O*~C)a9YSaE;_kD@j$}w{d|eV+HN^@g%;Z6%-vR{&s#$SB=EbN zJ2QK3vbT!Jv9Qae6LDdnIW=m0dYT^xqBknkiR0NgO{)T5v_QozS-){(?$jji7!*I$ zTB3K-qbbOSc}1G&RzQ*JE5X&qTG@eJ-F%NKO%gL~MpSq0-mL>fTe)t#=*?nxrlEdW z09R=+iHYWIPdq#X2}nW2BY~!kJ^15~O2odU@dv*@g!Ed=Ot_ZcZDiRW*I@X^g9p;9 zE6YDt4s5&*t3OJkpO4S(OKn)?{Y1!uAtyU6w9SdQO2#KAPs90O<^y*_h^OZdp^()d zEs;M=Odmy2#v;K#L;^9(gx>P+nPK`+AWLY4Gm)3v7<%?Qqjb_H)_C9e|HI z)2FGeY|z(1YEn1of|xK~fkkdlJ=58j2l66JlJS-Lyqa$CMYW~iP_c9Ei42;uCmYJd|17r zThr#Taz85T%6)ZdhnRIMDu3%;or!M4%%d{5@1Y}6 zg?pnCh(LX?g(f2@$s;Q|{$~tQ-*LIue-aVQ7Qpc;4!8XBA9Fmp$WOM0f|J`D zIH8%Fwrn{K?Jp83Qx9j2PQYpLLrF=A54TqPk9-aVhih75>HBY%h^7DlD}YA&IyhWX zL2G47T-~R%_M_iY@LTVu^^bXqN&5Yv_9v(k{Sqv0xgX;8%<^1l;Cq?-`?V|4#9l?! zCT@ZsR|womFK7}Z1coilU2M%SJ9pm3apm?ENTJDs?mY#6T_mb@FKQyJFnvD`3l?3U zMCL9=#vf&cm;!**sz3w5-H^2DS)~W+BrKiAlPIS-tRGOz$l;VOdb&sY?AiM%AZ6I=YJ6u7L+M)={|BU_C{)uvf`EiIegi&^G<%yFb>(C@T;=7Jxhs`lQoBjmeby z_3awMmV<)K$CmaCj8ecptAiz7NfFPTAetHJoWb>lMqO}Q^OBt-(Xs$Gm_hImCQW;? zg6!srV~SXAM*`F?WRGy_u4W1d2xNSz{`R}`QzW$umoDv_>(kQYQQolmMG|qXw?`@` zY1*oW*9GH^z+k_AJGkd4lsZBukfkPceUqkr0uWyBfXSYmPoJ&8_Ar|4z9B}T+<)x~BmB#2=W&r`v>lXZ@CNWXEzSL!dooZ=#yr<+D}|RckuBc} z?D5$l*ynfa#{b74?-eN zi|(k|#q;D+-fL#>dqpB4Y`1rM+?)6G@d*d$7U|_@*A(Spd7iiGcrLG#iM&!dugmuE zvGK>s_1b&&MDgZ)3_l-r*Q{4IXOLC=*f8VpI7Znx>quJ{%YrrF$=TB@XoSb zlX7K?9s53VwvUVM_^;2rAQs71T6+`_r&kxk&vj{3-j}3hUt6HdSE>d1Xe{(O-*r{l+af5*)+%9$%{C1#^KvS zb=e$#l5(GlY^we$Je(DtQ1+82N1oCM%*A2XqU3V~{J89olL}W|ie7*JZbs~ldtD+Z zb{i=7?Thy_NjRzF(DD|mo7=aqjERjurHaaaWYzra-ZwUuggo^ELjhw5De4sZ)R2jT2AZ-MO;1?M=QH@>o)|)An#A&qc^hO<=HyM)&yf z%r)*fE%rM#8!T(%ctV_ri^A-i-aafR}XNt}g3dHB%TlCtDI zPX807luW27H^63zw*64BxMNG52BL%f`o8^FXdS<+Wf=LJ6fWD~nmJ$|SBzC4%Bfh} z$-iGkSv`p1m+m{HJ^TJ{BSf;J^NWjdaQTo{9fhwaV+AB`J<1EY>ng#HdT1gErUmmC zfBWm_L7#;Q3;UC z2atEsbz~B3K1ezwunK+Ag?7`1kmD`@ujauw*7c5D*IPAFSUJ!Q1Q2%vocn~JSOxo# z4ih{b9i45CeO5WLWEj+D6=)H5;4z4GTSu+QDPD(&0+O}x2t*TKHYv=+Lo>gyUk8x<=TM8U=i9jY< zdxbkc9J2nyZZe6nnbcqFI%z>kFJ=hJ&$%>I;q$5kBM}eCZv7^CEN>8tQ%st}=J+mq5+tzz$I#c4<4>GARUxAv!~)MD>Aa%atWtG`T|r z7C*6_`+iF$L5aASyuwKV6BcfX2>E-=gwc5wdthIYLh~ShvpG9E!@MYKTDY8XMT|P^J12|Tik@tgI(#Nko`u{wqmt3X5)u3w z0`%8kf3+gk9TT>j1Ycl^;0~~)dkPko{KUII=-gAXvd)l|*e?40e%%a2($DxnMVL7e zAtD8?dOA918Y)UlKam*}KtRre2hXCcfo;oW)Giy?`x7WF_|m+l3bo&_e22UjOl^+= z^Qc+8-*+51N4#Ww9p!#p649K((U)HFT7kYz^b6t(#`W#qyEhV0`7S^z7cDX}au6Mj zJl=6Pq73ptKYSleFl--PHf{H!F}~*#7uO^=mu=BQUV*mf&bRjuWvuZQQJ@o|9p)z{ zW@nW_#}Z5XGR(p5!ZSi;*pL3&J~WxrBebS*s%A-Gr~tRV=AF=eZDt>~Hdni(RF6PL z{AOd~>y73+8itJ=kVb^D#JAnHw0Jb?y*^9NxT+3_09mA^@qt_7E*Uvp!<1>#HaOLa ztPksj#*8f_#yvZCcGfnM&zxvGpOY5SiSUgg=j6EjMUcEN-5G^C75ZSHy@vKE9q0Oz z|1y8&5);`RGF1>HWEqsP3I)9$S{d0K;PV_vLDR5EW=)NwLJ(*FZYHLaI1v{vT!_Ir zK%O@9zm#kL#Ul_3=$Yq&AX23R_{#!+s*L;?S$e4k=AgjP)v*b!#Y(V6+Z zCso-o)j>?kVZ+FpByg}Ve4rIDl`)9@{ESshLT*qd#FClW8_X_<6J-i!y#SP1?L`a% zmG2LONwOy{Nn&*=m1y!HH`zHjq=nP*Z>ETmNMU82+$bY$==P|wlyMa971PU1t%6RrWQqjOdd(r z!r@Eo07b>c2zOPt1A;aNLrB(*ggFIFHN=dP`vi0guuj)6xifyo>lGrT_TW9FKo&Hh z(+=7xg46j4a{=`Qj`qafkLjJ)gxn_uL9orr8|>|HH2N-8LJ=nAO*}<{IwDCl75UH~ zq%o{ngfBU2|(FZyWSwm3)wKY9rQvKvrmgNrhm0vLZM* z^(neni0~A9Bl$IJ8Q4Kccb_o}5l7f&q_zh1qCcz+&>v#qSU++R6sk3ff=Ce>=J>jf ze-;Gm*@SYUH?SBnPsP9Ox6f>@T1sw>8RMy-Em6d4G&| zF>*GOnJQMH-ly5gHQ8El1zl=>|8R>UtYdIP_Qq_b5~>|SQw)CFt<3jXLyFE{7>rXb zbjk;X^cq-QvX%^lkbD5vrzOig3=-5pZDXW#;O+wl;t1FNgFPIBwLqaPIH*IC^_j)Y#YebL!jQ2(Z~@Zn@psTX&qS8;&CQ~tFp0>am3p}HZyD( zf+=;-JAVb|CJ}oVgA>~V?fpVPu7_vGMsw5zxS%I`HcIbsfZQ;#c8@nv4GN;Dx~qrHQIjL2XExOr33 zOhSdN#QcQ;t3P+a-20e(XbJ74ksqg`S0^l_dZ!dG8F+Z=*?^J{HVTTPaCyP%iv5u? z2QUT2`?X;?F+xl?I zn5c|20L4-UaeUB{upStn_{M$!16wg5wk46D3{zpMJ|-&KI&$W8;a^@?eYrGT;ZASP zvrU!HB?ZV+2d=b$uB?;;YS;wg7p;UPu!~&;p6VaGp=z30OS@jGKO`slSHIE`lX9x_ zs?(9OO7L^)S!VBkTvD7;)yI+&5o5v;qFEp2i$syb$j*N4bXC%=yYUn|;Kai>3!188 zr8LhY)!h>N%T=Q*cFdJW4?9{6GU8`?-jBLV_Oqi^)=U09J(h>z*QfO*Zs^>ziatcs zsaqiQ+~*g*O*Mgi;WN%33g>$dSi&emE@~1M9)GZRfynxnfD+oSJh00Z>!k`A=i++1 z#>PyEk>gS`p{ZF33zYLQrRLD^0bjY3{Td7o3UKYM0ik5mz2A z%iN%!4+vB$fFK=TaDd0^qL&JMVe(@3t8HS$>gj3@zzP~xr4DMH(U4AC6f!;^vb%tR zfq}a)z@AlQ_UW<7FJEquWv%T+VhHMe1=8>ojyga1tl;Kk?MGql`k{{SZ|jHH78@)= z#PS0{PzPg`C47ZZLSxtgX~4@W0NWvpc;XIDLlQ9Y3%H!sQ{hz4S-Q z;$c#b7#rIZgjn=BmBy-@WaY z)6A1{_ZTwY{+etCWypRQ-*0rB1EH4a!Od?qLPv!WHq6gBd1P%8efI+7AVdK z5abooSEl|uGJX=XpW$B)cB-I@OHSL%dyJnR@QQifHxopG^zUp!DK)#pOE{4+}FT#a#ABl z0Y^j$k|Id*v3sMQmzX~z(@w#un%$~O6cs}Zkdh2s?+c?*xn8OP*4Zn(r^2@aAQS^U zT%f>CWRHdg&Ah|en1&}6uI>-!_HLD3nMqXdI#j*(p-?_HX-Q8_+Y1chOSR7O*F~Gi zyK(UHUWdI>$%9#pw7_I;6^YJ^73j61q_0+44fFt67<7dYl5GMcPHGjX>z4b-fo|8h ztzOO8i7BNdqJ^eydjf)#jG9{ZRU3edmYLoKzaxqZv5_y}xU^{+JCJ!>Tb0H*`iax+ zOKJYu9=5^zdIh*G1T(J?07ld817m21T-uOtPc0cjhjRcOjR1{PU#~hS2E<;=04zUR zItPxxABrfig)y2>yV#X+(OU&8Ncu~|Nn9yuy$6ANGiW-FTZcQchXqXA)d;T zeJ^R=NYw`ct^{Ip8p>=mSloq?%nn8^2VOOJ9!NwH=|c`|D{(?1TN}4#$pKDGz5Qu| z>*P@l+18x1iy6VsJQ`mA9Qb+Gg?eXjp=& z@zG#p167+Sx?QUyzH0hS9r2k`<=l&owisDWO@Nao8te){&P5!61~{$S8eKd*YUC>k z*1(trk$!>vcwzUb9oH@p!A(~s=R+&y5E2riITFDhXhZ0z7iIy$$XG4SnO~adf$Z}M zD|*7EsB^{|>B9qQVAN}Wa;k?jjvzs42&?DXg_B1ndA{NPAgZWBv43G@+qIE$FUq+* zh>ySFwVLVk3}f$jr7}GL$QO-CzP!QI>vzbJ0uzBb1=8@yBdmj+>eG|9&R|0L4(b_n zS@%BPj)gnqlfcP4IBw~^`<=L#NqU{Wu+X8-J9P3g4G9KdSIUdb2@qhvev!bG=eSLjV$a~jF+e*56fKfHvAt8`x3t+)&Y$U!kd+ehwX5c&%%iR@Q_^L2R zNbGhc45x@89+9qqdLO0zTaMM1o7%1bQc-YzW{+F~r$yi!2npfd4|GQ-#X(%wLBop! zG`^CPhwk&)KGw6>x+B8FNfundU_O(+B(Y-wk;f1hDKQ7=2FA~NFV{G)gaH`cz`q!H zuB057)T&&$K#pnIsT5uHg+tCA8M_v4&u|Y;eW`j_`v`2IV)V6hc;-M&ay$AJ!Yh@W zmpH}J@py4+AdC z03pNcd>xICvXN1Ih3|*TVF`{eM~@!W821e(6aR2T5a`-&NyQs)M+a9M^tYbXcT{Bd{;6#$XPrN6py!-n4Z6VKpgBnG6jHTw%y-N!_Z zu*4O4EiC9L*&*LZUxu+N?CHnGOJReMZ$_+BFlus~b(iHDIP6mK9yVPvUZ; zCBtKI8LOfIb9~66efF@6!Cwy__T0OufyrKo3c9Jy7GjfJf-tF)p^am*A!I6M0NK4d z*{P9bPfGjVL#Vl+sG3JPQT|K()oLSXP8gw(Pbyf5McpA`i}HB|AO8kM@kG)M+q#OI@P0vuu4WXnFBXEerL|KJl7%GP$ ztQNpZk?`bVf59~C+hE#8S3+kw@wS8}FFgPm=u|F9VxP)pd+z< zQ3wW*5SHYvLBjQAQGBY0>9a`_;c2_gL#-%7l4 zQtkl>3dOdF;UN12b{L~Pr@;(Kq8EE!rB{dcA`GSyIoJ^@Z!ehVE3v?;GxOJMtS^E5|8Es6);!z_%9tNPy_J#0lWC#Xk8$P?KJD27G zdJ{nT86XPXQ{V|Aq%`oJa@a+;pq2rgtAd3=PU6ER$PxG4HWLBT!LTmU4X}A=W{XdQ zp>@s(h68@ijrVoX*TW-y`huy072JjOXsk#1GGI0t#G%URq-ja|I^9UZk?PuCIS99z zI}aWzpi<$>Ol`&dj6~Su)E!X&xv4*;6{}JBp|1y@k^Pr7s<#cmu4Qj}LwFZJ2ld39XI!S+%+aF`&5d`-WTp@nNw3oH6&TDY>+zHnw!O8rwG&K& zNnQC26Q{Y$hgz$H3HBwT(x+Fy5s$s^B~)SX7!wsO&RDYof@}$Rf}>)-T|AX!WGpRL#H8lB_@I+&UPey00f4>}`b$6g{F@-e3MDq4U<(f`kEizt9Igr zQO(P8@<@vYqXUUgtq)sG&DOc|pXF$La;+-koBK5DW+@8`3wPrJ7%=US&dCsAEa+X5 zI6+#0AK`_fM5G9LkQiZZunpXS)rkP)1r%|(k_SP=HUhjvlFpEr$e$W$eIF$w9_YHh zP95bC1Xp2^R)@#Akim@N{lr#HX0`s>dVpAG0hEOYo1OC{P*aHz^N88*G66`KNRC9V zCR`7q12V}F^Jv`&4}st)OKPB{ zh%OL?7W)o7sd!Qbp^jN4$@mQsu;5RL#)S}?55_HGnI!>fvQMRIfguDq7oDRg_!j|_ z)@aQ7XV&O5H=&jUn~3RY4f9TllhJCh1X?l36htV4^J5yk27wXqkW%Z3>PCJRm!XAx zXx%b~uGFl42;wTi73Uso5Hc~f>2RDiKo3ahbSr#KOuMA{1j0=EVQ_Su4JIQAP`Qcs zo`8}JleSpGN~1%D{3*5rIxpIS_;RzQln6-x3cexRQlB3r zJLtLvs7gdK0meMjVgiEBATvT} zZKyf~vK4?qf_5p120sGiWjN8~@LZiH!YROu*^e+LpH8SyLh+LO#yKSl)JSt`$&Oi! zTydGZ@kmKYSuk9Z=}I4~SxU1Nn*4P!kE|u9QoNb}zU)BSQ8qSCF0N_=lfG(nIYgC2 zamp+yCI^yu&`Hq&>Co4|`lB{D&Ap3o!nsid)s3D<8cPha0Y%ROlUHEE z7FdNV=~l1M814fP*%AEVndUSIx!1XAdbnBsAG1g#PCUtqgjFSDep!l5L|!4P4Y*d4 zhsl+ZHV&sP_?S#kzg3TyV~~HLy{=y9#zG83dT}NEo&_zHOroL%x1e{%5wnJUPe;Uw zY7t1aUo4#c+s}}Cs*8u^VF~@q{lq9F1Qrs`FA(&^Bq&m{fHd;M5r+r4Riuxg%#mq~ zdyK+XrGFEb0X8&ks zj}FrD5BJ%x4>uQMB8qsSriPpAFf8)Hcp0lstcZSSI(Gf?%S~c!g=*<^>^z=Ou{G%*CCS&YpdD_CTl{x8ngJq4$&sMWSFn9zyq z>FE3sdVV;NB1J!*qT@4mNe_X}LvjrvgYhgDL8N6R+@`HsIW}$4WAG8V6dF-4KFJzz8a{9r|S5w1O}K|K+3B(Zk&f}wKnbH-x>@qiG} zOa{5by?F%llU*cFlL|8e?Ev$XcqBl`j|0uATupkNUWnvYEi<5Z^q^TsVnRImSel?R4Unn0s$)tuZ2Gps6X*8~$-Is)#tC_AK9HJ^NTWh`4Mv z{j%h3w&ld`EhKfj@({9x2xw#q&w8+44*Cn`cG6}ct>ak^o){9_|Jcp#$8#OQlnx@B zd2yY*?qAn4$*v9@UWZUgBty+Vd@iMXEb+Ko%FBDVc3AD+0>Owu*eV)MwJ?Nve+JEj zFxCTE`zAmYSbhI`?$R=O)*^aP@-i4UzuqHG=n#gryv;D65{m^%rto#)c{tCaaur@; z8in+@@R-4oa;i5RpLKTp{hovDdr9AdY^S@p1VJ-s#U}GR(^Ge(hB&Zcu^5Bi%cUL- z`p`b-3LQLa7C6(-fB4om@BinDVE}sh36i_AaoO?VlYW(vx<$w41*|R+Q zu6PJ1<*oMI&+92Vc#5srL%%y~O1Fh>hnJwLX|^`S9ZwaRGLxmewZyZfj!L4X`XIK3 zvYVgv?EQ-FzCJcEDd0iik)=G11~`=T73Zc`7X zK>7NaUA49R* zNck>+OXs{+;9!eKH-P#tI9r_q`jNX{t#`K#v79lFi_)LQg8L4aR2Q;EIM?ILZN$Cz+C!#;=kL>sG_ic9dLPxbNBbJ|Lcbu|8e^pm}}A{!w?k< zT-1gFu>j37HNlyT&3=Eo4q4>|F%(#Im%bl5fzQp`HYtZcUd|m_gCBqOh`E+PXY_7& z5s5jI)glcU#%hE^4J;D^It3Q1*v_%w)*3r2)JH-d1b z;QfT)eWg%{!4wg#!$TepySB6n1&2I7m54*=g)yfUhSocRh)S4PvUjItz^6op9FV$0 zwDVymxdVQUs|TaMzHn3~hA-M?;Hh9>fy1xewmtm!7GDrM_K!1?d3@psCP2~PTnEZW z!PQE(xu^3u^UXRTlUF^~T3XcX<-Gwt_~-eaC!w3<>>inLV;b3DXZD?F>F6`(HL z1lEHq1L2Gfa$CEdQ=`P@dN26WTrlP}odsQlZ*`X6^Hw*=yAi=%kg zNS>p(q3diR_v3%8u74Xina7{nRlavEfkU--sCjD3GYOPW;tfFyHjVz%5P?D0n1LA= z2%}r#$wJ;^`DZ21tzBRA9!dAOwkv_(#M6RJP{M3LeUg@hBzcwt88pSDVrg;}ILf1v z5R~iS^-TX?)V+0B)oIr@ysa5yYyklQ6_5r&LK*`QknWa}2I-D*OhA#XfHcy*=`F1y zAZ!6?B$bfv?r&Y7_wC$s&lAVu5+F1T;~Eqj6i76LP(bG0sKmD zeZQS|zy1t!CF>bfARum_(ht%CLMc8Ceu#hazB{a43IXR&reTm$@@;OxXE#7%s+4D@ z3>Y^0Vi6J^v%NtAVGO~J42Zw zD4Wdz9&P5_E z7piFh?b`$ko(r5Tfc- z_Rd{tc5`Xp50Unc7@S&1-e3LY%uD}w{lCe*2f17b1o-Y`3#dn+rk4UMH;^SD(S{w$ zAAp2?39SeQIiI^)rKP300B=35g7n6Z29i6qv;7}@AwRh4JNS4<$_)|hhxGkD!TTU%-OuWwwR_a!c#Anf!hq(J_z>tq5}trVPvQUC_)}m*<5hQK@T1h z9j9hekaL035bAKm5?EM5xhQH|b|^vPXe<0V7xcj_TCYDTmc#EAfgYNFM2`<)>;?}| z)dng<^dLe2eKI0?=RaPmzdQ#D3i}=kxq5fz2GcXOWpJIOXJl*be$Y+-~iK z-$+0CeTyCaeqMzNc@&}}#WDihpyK)NSh59TN#QGh<2}hc?RzW%q}XrgFZVMwi?p+LhV!eM#(R5Ch+LV zpfMMxgi+ZN>Aj&ii2A}akjM;`LLhPC0?B{{UL6!~h@^z(e57rM3==gz$AR$l^)WYe zCRo4y{#M-uyLX-C0g^xtKn=14mQVlzC}Qbgxfm6pBsB@b)RWWfSFxbz;zFG`@KFpe zgy58TQ*`lrXv;td1q$uMKqV@J{)WaBq7o|EqGs9&Zp4hiR+)#UcGb$$$lagHbNSUI z_-ecx<%Y{C-oKL`2RR){2PJyZ?_$dV6FD&)`BRC6CA`qKP?L` zn{Ci{kJ=}|1g_!apF`2>-FroQ!14ke?nw6nzEwys0kxSpR3nxjf|rI|3;L%}s~P}* zSCIMw)}{xyYGiT*_M|@FVb)V#23RR_2xbM4fE*uCo;h3%FayxkA@vy$7Z>=~q_(lc zcdZ-zSnmHxnhM{G!TgVNmj53HvHX1~vcQi3TMv020SRmFx7)!TL66xEgxH?eQ2@k| z50Xhh#SNg9E4U`*04bFSIWk0xcN5&G>Wlont9l_NSAx8#85Zon>~~15&RYXxGuoaN z3x17fC7>Uw737h?eJ5Dpp^ID*zLxBKLQ3Qk7ki<4{5Q$ z7vMP!Vxr;9Q3TR-uB#Hf-{V0ek^-5GYHAq#TpR_ zG~dwzs7vD#6U{+<4LWKiH8r(Y6$@hb+38pg{$0D>4)^7MN#r;QSVwQ0*<=HL3PD7E zA?h;UCJlLQ4Ko}R6&0l+H|s}sFx1tMROvYO&M{rMknrhm@;P?)tWQIidQyNK64m=p zvZ+dzOt}H5Fc7M$Tnfm5O!4#c)51d~J`WLM;HiJMt?+vk8TUj{#OPzX7m-Njo+!XF!4bZvh5ECqQ%{XEXHf zQ1uR|Pt-*Nwmbu`CqQZgaQ)kI5tKDmi;CbWO<(=7PZ63$?sSl7Aw?<;10SCT6j)k- zAhqoVU4J$ZSFdXX0b6?G4Zb5J@PQNUVZnFBKzUXL3USyt2n*m@-~fJC9vPiI(A$Gd zRgfMrUAJu0%n30mIzHbIgFE}+Ba!Z(fk6UT+JF`_q=$gD2iK0Xz$4WFt*)7!v7j5jFyCj|I2~GUgMA5E2^jM8e=a0$4$PM z_nfjp4iL~8KhstKQ%1G&%zXi%8B4DPxChLC2lrS=9>{~wGI z?s+-Dj)0!-T<6fn#s-kGUg{p`Wjitb6Wt+(j074_5K;tg6B%Wpjt_X2$zEHVPx(-i zj*9xwMKEPzd$lpkx+I!NBQH7CAw&>tBD`i6jfaoHjs-F$0Q@ zr~XXkZ0DJOli>^&PJmIv!kaxuKbV32K~11)K_dEml^?H5^VX{mMT0?_^YFVFVO|av zOena)8AAq8YQ0SnsJ_f0qChj6yPiGbX>?#s!vEyf|C1Pk1iy%c0Z3HS#$)}^<)@gT zZPSYu0mVTBnHu-)c(R#l7Dc&<;(y}4#Q=dd5P)CQj656VKJEyv<=%dW{`2c}i z3v)dpC-**k4pm@tsP&`bQ|x%bP~^70477{o@tdHJLtb;xRx7R!fW(g-oExBT3)c)H z`QVAJ2pd(^8kU{uc5yyA!dcgfcmXO_^B=cXCeJ*i}Ky8YYt;kM{7B_y_@#U%Gp{Hv)J zKvgzyw-yqrBea0&5V%~vPKVyR1kjLO4n&q=+hgOPF&m9!v%=3UEd`gAdA+qKL(3u_ zAkt1f;I1e{l^+=q(78znJHt31crgheWZ@r$TDA&mA_RU0>DmFs)FnTGQVTTizllEs zzwE;g9R6R8PrteyfFHB|naMeH_;3rvK`z)f7Gun6nP;oG!5%XjNc~eLW$?|@_5WZ9 zY;pgHI&#H-8X~EAYZu1b>&1Mty`_4-cH+?}`Rb(oT;r}K>$}$lzW3P6y+K|W-se-J zpA(HFk7%4)i|liXdQo8(kVQJNJkGPA-u?&84zr{40I|*V*bK33eM0txPp^kU<>?S# zG3=?bwYYrd&WsBsoR{QZd@vkHtIWB)S&ohS%oLM5b>mq^@{6>$ zOH?YiL>|OieVbixuGR7^n6YL26{AIY;w;btHwwwBeVQKDYe^=od%0l^vo!2ir$g=z zbHIK3JbIx-)x9cr($e=(pu9I_l#b>h;Z%C{I10C`MtNkPEr?k*twlX9+2wQ`DUs;x z+f7U{P-WY5o4%y&#(4!AZZvpnMVXG6d^?G$BE=Sh)Gg@ zGYBvY2oUXDx+jVCW3G8^5R`a3wh`Z{4cp_F(s#{wO^zge=-AvFvI;O|Z?MFw^5 zFuTRKFQxoHT5uDH+Dbw#+X=fc!Q10Q;YF!rzhiqNEA7goP?UvFm6#Hv0X-?E_|uoQ zqp4TYb7r$nt22uU5y$?*RX@7A#Wpur`^>*$_<@G;!s2V~r-h5?gXm1#NidT)_0;8JKwREOxECmrw+IX&ts9|KqFTmmJ43HjKihip+u`I z?+M92?hJku6a7I-V!nL73b$+XHCRR+9xDv}{vRk@E-pT9b-49msEMXl zQkn{NSZz$jR(g{4Z7Y?|S3HAiR;Qw?65Cqe)iX*Gn^r}3b$*cTzWd0Db|bS&bG_F` zL)iMH#4*f=dp~Lt`G1`{9bg}1!CzgOASwU58Jf)UI zSo@u#nuClwTjHFk{TB|2G@vjkz;yBKHQ3LMXs^PXXj77Gg+)D-yq>qD$Q83@C2o5b zXE}h@T~U{(;nS+!!>dvfbW_IW*L0 zsFZu+Fa*(p7taco%X0ErRD5Nqg!;3DcG0f_WiIkn60PX{B9mPc{3oa}o5?6CM%aYY zX;KSJ=aWGg4@G|QMX%GhMxQ4klSdR!oj6Pz zd;Wz@!^)vsl@-4Q`uR-Xe26)92!K!Yblku0i~CW^FPIyj3T`o>mA`uX+wD9G*XN4e zX@g?BT-{wK-1FqyXENfb7M*$XN<4cmV9#PU1JL!6!yFq>RiGJraJ&NqL`4a}a5WB{ zz-=Ni1&~9{FqQ;5;*T0>@_=nKYAG#)SsVxBwlLGO%A2A4gNewW)H(|^+|mA+x2jjk zr+u?%m_BD&&Hfy%Hk>JxC4wa0F{wKz>=*2xH{oheDV-A5aK0?t(&p8uaB`#+Tr^fx zEa>M;7Tk%kx2}}l#K28gDjcgOQLBr*k8UxlBIm~t}v(>pWe+jN{1 zU%lrbC0%tWcfH>U!N%8*eU{~G>X*hVjK>EOr+xIYmzOV(UZ9j#aIFzt*|*9k7z`tw zy28hn>&^(p-YZEQfXPQxeYl##Oy8Isb@YkjgtwL}QvK!oh|-{LhinL-S_P67rrg&( zNjqc>qs!LX-5n<=SC8U_vF13PiFdwubEk|M$MM4rx>dUk{b;LPiGAg7L`x4Tq{%pF z6L=(S%VcxRV>A1;)rDCr2+0#EL<-7fs|9B|Yg46d)=Jg{-wtW~uD@+rb@x0Dig;)| zBD8Lg(!0SToQIacVW=p4u;WLbh{&%N462Gedb&xSfZ}6qJ~|A~Toqc8BwoFry}l!E zLFM?TPMWDlLRUMouln-1su??2u3AU%P2)GUa%6{OBA-``QX5=i)Z|z2AYOb%!{Xy1 zJ5wafM=a%^rYyEFnGzd!(pZ^;@#^6sohe%*F^H51OaK75Ji5L%LpjMR(v0Y@<-g|;L-oM86g*3OHSmx-_U{s?=OBL!2s z+Nms5R&97TTx(4G(u>H@NfRDHF6~2ZY%M%&8_~Kwy(!i@t5*(DYQKo-Z?oXl zZkBe^k2|Y29(5}Y@3?*31+%4;h9EW6Z&2|Wnsb#}<6teq&T~9Om+)}HxxdTL;w(lmm)Bod)tr4}G?F&*^lr?0e?igcdAsa$MNAyy**YOv#m$~Z( zgVbPwfBHtNIo}jhE6Mx(Jk^?I!RYlAxDSf3qN3W?L1wIu+yrL&3=kM{uXpd^=<3O? z)>d}}JlSh4G&Jw-*#Yk$xXC|lCfj_^_pAQbRN&3X6u7~fFHe6}#T#I}1#)y90$d{e zKUP2ZSZ~zM@xtN0Z5z`iTb-@6U zxq!DRpR)@k#e;3N81&1qS3_FQ<*Tu3UsT9fiDL}*QOuz$q#d<&JV z&i))eWW^m;VOhW)OzD!Wc?<%efNUQ0^TT8V5M-txsA)RGwu*u>{9jU5+R3#P(kVjB z5Z2JIVWwBs@wApY=LA3(lZwLO5jwT`d78<-^K;UOh`>cG#e;_FvyQe|A0 zT>nn$fHy3V&yAL|N0(GJ^h2dO#q%lFdZ~!3+j>)cO}T?zD{s(kJ_>%!jh+?!$!Q`f z0M<{9U2l9iiA25sT{EyqdlRT56Y$Z0na4~l(VBFvAy+m(Ow!R zYJ9c-M;R)C*x860Mj8$^ai=qilKLs`X+nUXvmMSm0Ql<2T_%YTau?GZyqag;Ld8cK z{3U-1UMcnH>V@G2(smx*k>Tw+W)Zb)oKI6qS8Ws}P;y5e~ zIX7c!%ZJ-JhMJ|*IX+m?jx4$*$lWK{=bCoj>p;HjT&MrS9CyIpU0=AiS3Ak%337%+ z#rcg?^M%gfA_`TBc9IKD!C#)yl!>%)@%q&!87jSx=M%!(mL^eeZ3=6-cS+n={Y^2E zfr3UNXVQgWIZK@yMQrIPISbF}OU*}}Ra>X|FnFZ8Pc*6UvR+9tdi18{Gdz zm+x$J-$NzEVV9LQCN7gM3=Y3B8^6g?u24uPCC13FHaWMb2am{7^ooreZ$!dm@HlqB zJ~X-`U2#i&tM6;j8R|xtbj#l`nTHO-ii$pNegBEZ0&e=lN3xWOR7cnGU5%EvQaExR zczSs!yPPI8Z#dP8u(8KQPbA%#!y~9JLV1RnTANXKobx6kd#hu zC7h^F2a|vq&iMvEzNn6}Nxa0HL2Q#`7 zviA(yz8AgCprD~e+-UP_+2y#hjZKPl?bkX~EY%I-^+P5T?-pv*H^e=sGA%)>whJ?dH0@&su6MWm z*8NMuXt=~5f*H;iS@C=ct?LVFlQoun#*Mc;HWy_ADd=$wG0khKIUP(lLJMnXZsqL@ zJ@(MFmrEj{WB7XV6w`G_%XVt<@bV#L3WX;8Z>fR_iz%c)NaSB&Xh@f?|7K$2_<+(Y z@2XwGfNAT%dH=<`eT(p@i>nKRc3D*@4`tb zKF@)Bd~uG`oq1oCDX;<=qtmJ%lgrpZLFL^Yk#xs-W1j#96Ckz=0tY7pdd^`a|1 z_9=zXw}s6QrJQ*rlI5wQWD~vs4sI#ZF`gmwD8FG@D;v~gI$*1=QOGEr9XC;gHF}Yx zNpkqpY>TPJ(g5+32*G!;INai@!SdK&-&}&R-RpyUy)ETXEPv8GIVHc9;=fAn{Hxm< zBSCLuzEqoQ+{bS8;I2sgCl1L8r$U9bh|P`2a{>Ai41!oLeT{_DZq1lJOI<0fA0eGu zmtw(1ty`I5tqj)Ign3Y-pgIKEx3)MO6+9Phmb$u6t?PybPiUPSYBwbD6OutRr0Q5^ zQuU6|sI-u!!=}w`s%{(X>kF3cI$_&y%)Cxuy#(Hv0lZzS5S7!jZWxTlN$xA+sYA8} z_NY-gEvF8;5wOUh2z&`-6CMjUbwk6+cfOnO_0BN9Y{PQk!fzP%jFcEj!tJzAtK!0P zlVhE^n+->EEh-QCOP87RNZ^?XV`3vuPMfw94Vet&4Z%w*ZAkbER=hn6PwEORp7DiG zZUrgn8O8NkuH_jlkaU#Ic|Seno=UCjF;=v!ClO@CRhSaHC>b&{$J&}SCT`aJF@Q{X zs;|)Qmt&o3z_8pp=+j9UnP0caO$!zGkV%~BfV+*WdQ`#t&~7L2m@J?cTfv29MORd@ zLq2?H_8KLOB-&W1_gZwhX=D@+&0ff`6Zya%4`;!=7qYH+yt<}+qgQw4PD3~qL$YE_ zeHOC|8*y{bRYEMTsWHRr6g}%((nY&j!i|TsN5|wglRczEUl$I->vfo!sx(G5iVzxv;w(7H?fM!STuhH=cwR9RU*-lIU5$0hGKjN2{ggP7k#xC(BRuLcwJNGqxe z1~dI0EHJfwQnU;*8h}49v9--PO_}`dO8Y~4Y*+gMH}B|{B52)4qf?oLg>^yM+6K&5 z9*phUnDO`WTWrR>2`ZkLlE?Ro?kVNIhEsNkkt`B!rzVU%vnj~?T2HR5t*)(ji`U`N zVCE>dY_JmkcV}~l@lWiQF1)I-x1TDZJ9J4?5KEZkN-EKSg*JoHCpTBX?7yiHqZt-i z+t4@u8__AeYSetcLz$dzc*LtJ-Ski43@)Ku1s{xcy$tp?;yv9qKHjQ)WUrGnw|{`^ zup=er7Rf1*Porq8B_k746WI9<+Vc&ymD=y`lYAuo@kzIyw-wij@E+wuisj9T)wlQTkvw6Pv@ej6acw`#FrCOmD zR24|wlM%G**xLE53r2zmF(!v)lrGczU@{LAIP=V@J{<)2w5!P4U~|Z8QydwTfj3)1 z@8%+YwV!G$2~1d)1vg`SSsOtD2lM=5F09o?3F|`BfJw6_WZuw-#1Yo^ZD7D;;6uRi zY9BEjPL677T%NHQpLPGkD3fVk>h;A-R(Q!WR>hXbW)*Z5$%-02%nxH5+Td)P@5Yx- z9oLFE@1P>q{%uP3^<4OjOhJm4PFYX~K9$C_Ei#=lB*<*>z{vQZPspA2jf%v4Pk$_l zjS_nqjozzYCo&-&6T)Lhh<7c4yireda#S$jwJUJw-H?nMIxRktH zS8k@S-0`MKwd$XkoiZa)42mPrmc$!WJvq@q(U{fWEdX}UIN=9nrH4DsFa1FZ0IW9T zVObmJnIS<(!$^qs^b&>ZJ#^z6i1t& zqtCfCgWcZU0|0}rxjZ!Tn<}#M6#Jrg^O(wQTDO z4{Jm6=t0%ogwu|PeW~&Q+s4vW3Z`2#`qMj2aTjP?S-MW1+_nfmTouPNu1l4sS9(ew=bbN;O_0DAz+Z+wX+KSj;Y=wO=^?-Nq^z z`FzGl6Qh4(A5{5{WwNjhjea3{XcoErx-qt}QK;gmR|-?A(Y(j5;r9(EUAMBl%!WDy zq;>fM&jVV{Ot1J%3P_C^pEZz?@%e_Exo7t69-cV)wS4VrEDg03mX?}e+$&N!-GzvjE#qbOe5E{c8M_GI%yA|{w&3Z(WBVHck3y4(LNRWBZCwwa3(fH zf<{Wjmx11jEwRb&>k#b2i6G^<{c+ajq}0SiU5!JBFcUAyQ!iN<2aZTD=v%xHPE^mM->cXAH!^e39}tmH*2Y%m8KgZ@Up$DW4PB- zLA~%rN?9~8NN3Hb$7?)_v1UUi%ifHma?v15+Wxy|irOvp0fGGIO zhE+_ZQ8R6!5c|n+?+Q4p(RgizIlD2Iu z!mTwW?zK`x6Tj)ZyE7Kv+ha;ZUTp6Q2RNo*pj-V$v8cU%S^0EUc#t1~Q=NXraY{aY zE$Z-Sc!NZ;u~SQ16xE{<>Bgn?IVqNsMWR}@O(_)2;nj;T1rFm>nUjll4}^7#&(}P` znXfh`pSl8>h9zWRCi91>^SFf7WfB7jMy4yHoat`1zLj;9UmHs8l|v0BI-O_<^zwLC zvM)K-XaAZUmD}_H2>Z%-48#5yt+r=MitB2?G{7>=CB+`sSm8CJjI4ugs_wMJ{(f!cVIbTh{N?jqsU+7oi$-Rix7 zIp$z-_XtLWToq3F@WH6jKy}>Mt)6qF1_K$Jo46vr_{6005el=6`J^gaHAV(j%eW#ec!yGdiZe)XLtCQ9S&b@z!g9F>NQ$SR5(7;cIuV zNjEk5d@vzWSy^;^a_aagYKQ9Kv{+GEA>0dg)>t@zsQE#9@4X+onx(Lat(m5$7g)YGH7@t=S%^DJ22a@LA})+opu*Qpiqfah5L?*FWL$P} z@KjoOV{y5uEBlXY*jQ4951-#MsUG*%0Z)1s<`p9%J~n z`t9&}pU+MfaL(wr=VpEIX^XNJ9R5N`4U^B z23ctMHiLGwZCfB{vVwnd&f1 zqioX^GH40AZy#q|k>`3cYLf?BT2!sf_1thp8do$v1x7bg1-b0<)_zY{$x}$H2&bE^ zs#Q|}uCyh~y0i)JR%YoQP0M?R%S|_zi%wF8-f58A==Nb{3HisZtXjQE&I4nkp|EV^ zBL#1Hebw=o1R@~%)z8O2!(QuJ+18J14>-+w^O@AKhK3T^hK4JDcgjIBYvsG|>;*vZ z?cLzESO|hfWVk$v^V&$2;h)I8{bUIZo$+DH_ylqd8VT?nYDEJ-!^6)+RUyAN;|PZ! zN{@N@opA{$4U$`SnU4KV>%3(GNjxhns0cHkT>*W?S%xAuj!F zcfG(3&($#?@Fmq8b5HwqTkHu)w@s3wUzdc-C@x9aO4vexTkJSAIND3mqT1WaA;w%+ z5MNJ@(GQ^RIO)C7W#1%?6fmf{75vJ^kmXRTGYsr~1rt+n>+9|kjXx-YDzEj2^#($# z!_-iVZH=`AvuQ9x@pq?GR98>V&gSs{706atYb$J?;R=q?mYynP!42?cQa=x9VT(Fg z3~qK`7;0QnZID~XoM-DAlV{*CS7?pJ=t}?{U|S$yy=&N3U8nQO%=&#-MGsBF>8#5` zK|<)vhUAghrd8c|#A|EGYXLOhCbI+8$a1BxPoURoYqhOxH`y52hRUg{hrm!&dPt&z z3Grx%7Z^n3)f>Rbz35AIm&;=({4Uj@Z;}bW3^T0a#HyIJUdwGK=t7{Ns;CnGMxp`+ z#Dy^ZoEl5?q}ap|E3RW+?`PjrSC1cFA z%A{AOb8}EGK6&~>t|7zLAU<#Qc~dUil6i!Hiu#btjEz&#pq4%#CbEq;q)A|_ zAdUPhbv##$P`_Z5$6|=*T4ygKsExq=e}AX@5Olah)M*uDV`5SS4bK8lF^pi8VZke1 z0M8HXnyf`>n8<)%pz$wmjU*i@rqbrTa#Xl9yIKfQV1?q`_h_wibQ&wVjg!YkT+}KL z(M-9oY#JF}jypQ`D#gc)qK3bVz6l%eoA@MvCcSt0cfXt30UuWD8Y@WrOmllBGk;Fr zL!kTqR91281+DFc)!3Rz88{BJ*>o(1M5&t=U4%*F@tf_hm&qPMCIQi^yYFR@#!%?2kZM~;|pHJ`A5#BBekcb56bPBoEZ{ zju`(on(#E4f{cjAP=d6)X`WD_ib@XJ9DIb=0#iqCYl*=h#U0;?kP}TVB)tzkg(2gU z|N3c|T+9scV7Lr*Fro2hBHv>qg|ix)KP4F?A7iD>`R4DkEgr$JejB3wnD+acwmX-F&A6 zm8sUG*Lu~BZ+zFo_A>u9{7t6c7A<#UE>FyrAm~p)`PIfQ^771h9Ke;EtZO zwK=twF^0x?5D|NB9i34(j)(_`R&jintuLk9I6ElthrwgH1zfVq`FJpyu>g%n7x5P- zLv`n=_|L2>pMjgUm>1W7TzvrGm9*KH(Mx@MrXul_E0RLNwZeViLe&7bQ zo3<;E15km4?6x&|i*sS~!TUd*H~^)75F`O$j5m-|e~7L4Q_=)brV3V8Rs`waFczZ# zRQfdq?nn2NQp9cOg(@-K8UNsf`1?Xb`&L9^2zj|BBEIXEovO5#o>^?4n7h7v4v)aE zpIkF9?8C@zGyB;B9a^kXC^xK%d`dY{Nyu*e)1?HIdyxPr6^FNtYKMRiaFAV~&uY$-jH}Tj-y^R{Kd8II;kPCmqVhEbs%IEgl zVve220L~`*a0)Oi*`!PYi%IRJW{C-G5go(CvXf?0_x)r>7)G64#c3TRm6om;n`}MZ zgN=jqG!^QrmaAh`0Rr)lk~~;s&IrC*qFPH7(kT=bmt~Sy79|n|B>O3WhPE&d7?VGT zK=*tpuC)gOn`ZaF-K;jx{*MVIxVY}2^3#e=sj0yKpmY$@zR0RgA_ij`^Qurb`^#Hl zg?Dd2ZZGLeP}0z9H5sSgCqCao=e8%xk2cxGsnblJ!IXiKU+$ZO@biWD3q{Y74|`yT14|s%)3_&JbukkrQ?kdV-1cUOl``YtY#tO zce^LP)~IZXrM2u0WRAVwU1;K6U;4Y>SDbbEV#iJq!tUGGDXzm+F4nHx4^u@j?`i&V zSr@kxyplzn?lE;(p3I5YDy!17X!bcMi<`50-cXQ`Hx=0^RV$MUQNM=9L}GFeKwg^* zd9am1wYGN7(Jr{4+G6V)v5S^PSXv3OAQ~yLpuhWkMES8a9sI*13?tHCQ;++N@o z^V{e)UTd+|_r5673TksSFr)l^-jc=OeP6id>JI`k`bkPjddsp4i8+)Y_qmTHbo5or zT5o1GK3tSboIe#G(W#xdFxmL-($m95+~Z#*VVVB#WwMxihCufLlwc;9CXbJCsN1Y- zi>AZ6{d@{#ff|1)Ol_By2vpCbsb%3F_ zAJ?(mZGK@Y(~q5_g{$pDm`Z7g3yr#r6a>o{LDWkP2_z?4H)l=YuMBz93;TW*APtrW zs^U8{$os!^K9(!*q+Q>cNTiv?(!h zF*Ctuf@G#TmCG|Oi^Fc&)1yQQ4~ux4qcI)zlwg%Wg=MRVRar&r>fzKsv8LUU&`_m| zQe5~Tn&gc3uZ{(QpRytzY`Q<Rv_^}of(tORm;V{vsSiI5vQ{=uB=DPqRn6P-0#a9x_z zUTVu*pvp0>U+gGLNs-(h#sO-D_wTQxL3ie@X^*GVcD>O-K%x6v%^&Q1j?4UL6B_tI zg@M$--nos3%yvX1q6eQ^7sjFG!8%Sc!|RqAx4ih3P3Cgn8Oh<7Z!B@%+}=V5$Xm-%)7NTp21Hz)HOc3>?hc0eb`0!~<*Ac>L2l94l3fZZ%1k-9IFE90bgSkqMnOYH-_{`Uf zeHR+AXNcUFmFH#N+s8mH#&kPb3v;4qEF`!p-ZWyYBo*v2drWBhuP0O&;F`;fpQt} zErmuJdYRTIF^~8To_)js1Mr%C*-Dcjm#oPqv#w;42n-Aar;d3ODHs3^)>&a^in6m6 z;4dBO2{kpL!-p}JithTw2y=*kud6ln2XEw&-z_UGNRX9W8hCb)w1L%A?TA$3(nN}$ zYPcf)tqVL2M4Rv});f*8?6?xOo_Z6&ALacg2mxCiQgJi-2h*#duzuP80ZRfX7G@IG^A= zkX{EGpGU2|*20jM2Rg9FfDC#D%9G{avtOZ3Xc!y&qyrLd1w=mJ9PDguk(=ftLs4o- z{|5rvIxbO1;AhHZIhVta>ru76?nc{NnJ$GW>QthPDMR*|BNJVv>ZaPO$?MZjDfFrP z-K?(BGAbAw-Ln*sY8>$>O0k2wFn7PBx$a~e(q?2cQ*f=>i&d45hJ;)o$mf)FeAVtv zviAxZWy@hEC?rxcfF#N_=UeWYudL+;B`sSq5EQw$YsmtGf*5JzXIdopOG~9oXqLMw zWp6F*bIFPzd2+LJ2*yJOT>E9Oht?Gvtm7%p9_kFYHc5)h*iT9^aRESd3P0E?jhyKH zeu73l+-l=|>Ee7TuAUvDuKe?$t@x5Mx@E0HOs%nxxY4ozuVPgg?Kuyb+S)i8`?mo! zPb+w3u@JJ+08P{n0Om-=K;?X$yKL=c(+0ulk*5fFZw{hy&*%Tl-}tkJMn9y|B@IY} z3Z1swj4bDPQRrI#nzn6tVT+QTMXMB_uIfX_%;0saJqla~pVXYs)_+SeR=UDBcut*M+>HEU$C9Szf4&1w0R2kv9Yqsv zfVJWIjHbGH0X3r}FaHW!KVT}mv{RSOL-1N@8n6M&a>*O}$Js!u7Fle$906cmhBEcV zf!vhi6T;Qg*xso`53-21hL{t$uu>`(#$>miX3Mvj_xV9u&$B7_9h1VI=+f$5SY z7L6q$A|XMo8sJUP3a;pbjztb&gd}b-3aGP`dtGKEa=gGThDKeXa+;IY@n-X+7x8ty ze4%Cf4@$~PE$a_czima(^SnC&wAbVUGW%2Zj->&G1X$Pq!pk(8?2+LFD9!Q+q;yTbYIrAP>7Jf0g|Q^4~PI2;<P?*TG^>tyCC!lw*pwlZ3+1bt_=n-7Dt2^w&-(&onEgZA zX$yA5itCt;{ctQzmw-CfmQT8yt(vwPWjEV0XzJ#FllWtLcLd4Jg;YUi6CIi26`hMr zAQ^+IjauF1#3NIy3EzSr>UesYsB?+#kJ5-<{<@uFMX)D@Svh+=sN9@9zj3SP;**VT z(Za6_q!Hbf%D9nF4g-n(dftF15n~XOI&0u{5)xxc@|-eO=sJ7Cuz~u&owQEua8mR}6$#gEI1#1#a=^@yibg6H}8CQ`>p7h-7ZWB`qQ<&+4VEf_QsSD^Z|h?9ZkyK~GNSyw zG@-V3&rZ!5vo~##TO|+b*4g1)sxIq5E^*S|Ih{B53{`)zW*G@DOYKw8wL`#0I-QKe zZZsacewQ7WUqZ5zGQVOibr=H622uI0QOJIBg4< zS^kWuO@5X_{H@%&DTf!76z#ukU-U(<3h&i@MmMeyj zopo?y)Lrud2+5&vHF2-<3ngd4{Cxj1{RjAWG8gyxB`iw6+7CNm{Ps^!m_?%TpQ0hD zA2jdZ2m;$(nCt4k5UXJ<{yBXIUxnuxlI^ zWml8Tr<#C7yWg=k`&fq zR9L#COw$IcfTg7!)Phj{;|+%vMeS{M{FMXor@y4{zjJwuT-$!mf56XJ{g8XP3n2wQ7?_~UFrksE zL0ff7%SwWf1<-8pWuAd-mG{q|dU@RmzIDGg)NX+qOO-D|NmsNMG!n?7XdciOIh41Y z1^V@LulYUOR4dhn2*}&z;0MIZBFtxDAGW2?Z4f{x-PhlRx;|C|&4-h@f9?R`934w7+5D@1>DG{ZktrXheV3{? zgiB(BE-S=MLgz{IviV^jOixDP{((h#N)MS0UCSsr?u$p4SW@3*JqAinB<+Tzy*Vs1 z4Nx|JZ`GJ283o#JemNCo*0MkWto&PX(m(q*OxWXfgGc1vey!Ba6yTx4m5lcNpimmB z2>D4@-2AP7F3+Vr@;^J?}kDJ_WRc4;HX_OGoD;<tywb|F+O>XbEMU$sYyrfZ1OgK=+Q#)oC!AqBoSAq2OMN0m-3~U;BibKT4!@c8!6F(^PX1+kU%5F9vjLe2 zX7ev$4qe+OiMD+}+a_4?KAQfx3sdTIVByd{#AFnbBr>ch9e;1Dmd(tNEQLKIQ$Hwa z$4z5xnip1p`|~!8-oLvY1I5MtAOE$`k)~VlAkr*{nfj-q$KSpb*af0%mU}UJaT_@~ISx?eFC0R?PMLb;?u)--uB%wSir!4m0%d=) zZhCk|eQ%Gt(-?zlo)kG{=dg{19S@DQ1iB}=9z9ZnQEpG+7fx#MHSp!f`qlh*i`@E4 zHiKKczY5DsaHsOogmRmIOZR5Z?R15_d=?ryI$(0p0s|(?53twbHskzUXV0XD6-m(c*?@Zc^Os$d=w-gJ>?@tlektfKL1D z9f`-2VqqpxNnb9|qzB-)(lKvj078EY2cr*|Ya0UtpqL2R>r`h)kOLU_RU^ykC=Y0b zP*zu0Un)*ZOZ#lM592(PE_e3f{7g1W3VrhQYsP_Kuad_8lxMBQ=UjF$H#sx@8|aVE3tW|mt?Jn0J)vI7 z+4ai-lWrZi2`*%qe*gY`C`Zn93e(YvlW5)f9i?1g0@7$)_7}o~#1hmN(sk^ub1?xD zlrHIlO_MID}Eh zpsw(`1eZ&9k;>?sfO}#a9(isj+fV<@Q8b60^LUypyZYFBwKe$pR{TUyY{N%ivD-9r zC=*9-$&X4{XQCso35W>_xh>@WPvtQm0QR}9hQj|bDUs{e^PQCV3|*6yXCFtLR94qv za9UXM`v1E74yY)vw%f6r7?cDHq8W?@8;A&qlmRPE++T4+++LN2L9str2q2HlnmqNGok^&0gCFP z;D)S%Z!fieSaGmT@7CQ_%E^aHwJ$Mj%=NpvdY)-YQrBv6H23ZYl&LmR{$NH%rM!0=T{Bj&-mw=s?SG}*ZE)uE`D`jP6 zgGY%-oW{KaAz&n_vZ{yp)Uu_M`!s){xHVox=s;2f_@M$z`_7%4_olkIFj&M>T0sU_>pjLBtF4`YqLC%~-7v=*RyVF~^1iad_=QRyfLi{or5=!x) zY-RL8qfwQ#=_^o=-mW@_!aLDQ^N)v(JVg^8(#XD-PzL?quF}`fO5ZT{jY0Xt!nP)^ zrv-$fNV;l;Wi%qFfMY(hkJk@&Ffs<6$I<=eMKeJ3A0vx0*?dCVj7bPcbG>Xf$Id&k zK~B^pFF(Hwh0|UPODLLMqPQ8|O!1I?4d(in&pP zY={CMNv(Udw-mZ40`VXher)VYf{Fv=WK+M32}p5+mbA^#nDO33Z){9+xZmQ1C1+A| zx)~P^9#7A_5{qtg)Wiw;j-2R31&wX9lPSXZ=%-h{0N*7nRUVI+$AA$7T{ST}z~4=g zMAOY*oKc;spL5{)jm(M-lw%AMGhdK~dn7nGZu8>^2W@&SWtM9uaN@kHIg^PJwi(xa zmWG$vTO_KE7>~?obL!>E!PM;KN`8v|shMmYoQIarrv}~$&6K0=B}fcq9wq{Bj?ssW zZXB@vQTjvTWbF*)Tu;~Ut3OV#RVE%2D0Tp4;7YEe&Gz7Wpu!8Z{pQr~-)5?a&z)ZR zt(W`?4j}OuLqa0?lWCtX&zF;5PoS7sgN>JbEFi>34+XkrH%8gD9oZJYYWKdCzpa$t zfz?jg82p_x)oLG?kw-?>&g9n{vE0`YKNDw=}=Tx&6fio&I=M2ENiXYHtCE2 zXKqT#;uUa0s6Nirw4-dKan8LQH8@is&t>4*F^c}FH^CDz-E+L|P|yCe>A04Rni^Wl z({Q799z-}!eA;^Kj<4nq?gm(J$m%CqCX7>DHyPqA*|2_-!C#rC7lwqmYWzn$t%?;JL?(i*y42URcfJ zeOLuN_U>2$9;pe9ml(AvfgvC9D&9BWEzRhmXD(UmF;$$Xzzwx#IKV;x@jOT;=N7oa z4Pkb~owPGc$ek8hMVjMz1p=+7CILK7d7-`cW=e_CtL3X6T~&6Dk1iR~z7qREn(}cY z*?n90kF4H+S5d6~jg>NaP{)~!2)-3rx^!oCdOn*!vxi4XH-`0sEHFpPMhZCxas=>qTR5_9(U$d%3EpjZ0O3JFZ2zU*{`<~r&m zav&yn&k!_IwfZ$3MMMzqqW|K)T|=UKES&Y?jF4hxbxJ6j2L7v(zWW+Ho!R z(Y)DKvsM<(f9=s~)1C3KgMH58H?$0|78uelMTl?wX}*-@b-xYP242okm@szeYd5_c z8QE4%(B@^pp$jo0BO=yflE9V$J<0jXM5;m9X4ca%Wv|8FpOMc?MH9H8c_!LQ9v>ZU zittSa!=c8-8B1zX=NCtTS51mw1fGU|<(EAe^V?6U0J9kDYA4G`vQCL^lqHa}E9qC4o*X3aT zwfQZ%7=O-iQsYpcKCIrXWmaf+kewX4nle3(S2SwUVk>B-w?g_29KXd!GC*ob)R|7C zWYqHtV|JeA(DVM_Fuss7F%!)bgDsm*mmkkxhDoAwjQ4R3z~;^cg%Ck$*fwFZSZ0Tv zIT2xp8Wce5qKAlr6W|P*{lf}umO?LJ_pO*5&~R}{CsVjYT+yHAXcrbv48a0o2x3Eb z2l>-Bwu;|w+!K_46iEr3g2r>_Ea|CSq^}SmBSi%0FKuHK8VzXxGZ4br7D1Q%4kA!9 z=&%tU>Ba)TP|&O&M2ApmY4}h0^Z?GM8&(RNzF3>v@TYM8^TYFb+BBm=zO0^cIa5py z{62oW?Aa$UdOEwqhlg_PJZ&Q{AL7mBW$%lGRA0s%-V&OyCseToTJM$(gqD^&XB)d@ zrE>MdJ4T{^<_O*)L;to@&V3GaCCyJ<<$4X(P<%n zieDRJlO82{WPANmr(5%Ti+0WEsCO~4^oD0>q>UYJ9h{O6_kRgnh_m1xFJ_V=F!#`x zC6NX9_<#I{r)SaF&3|xDkpZ%E#}4+B8KM%c0njCDIEaYv@fzeVIM3MSYpVGu6Jx>Y zo^&WG83MPXNo$hc{(>g-fSk~>W!va|N&(lVX6QsUJm{SapH#{Tb{9N$n2m3^Ktuc~)&%(mGIK;4kwWZCosb9u`K=FZ$(_|v zk2cHNwVRx%&CA;XXa-#l?{Ygg_Dz}VvVBc z>i3fCKC@^4{#%mfmB3rn>X8p zBcGuxFa+xa{MO7qbb-Ijb#1TbzbozQs6m{-nClOQAWHQ_By$Kj+cCi5+hCVM819+A zVq2`O1Luhnr3CEvNJkgY)^o(aHf=ghl;b%fiCAK`Sv*o(9YBptiTQ#1Ima629{8th zGCdmB$YEaw-c3f&Y+FjVHQhKBNU&8rRJjeFWF!|61(irH7|fW$`_vtJClIXfHRtqx zN5d6HlwAkQf)=k`jaNLJgJcqKc=6;vcaP#SI0rEsynKMd0gxgMcL`Br#%Bv4wa;p(mf`FavI zjVeJSO+`V`&?l5I%jhZHIY$uFdr3oH|4o~@rv^ikeo$WVtF1l6dcK6=3lTs+uv*j` zv%lNdSsR9K|KHx%9f{Fd4aJzP5K$)2eRQPD)x6=!A0C}KhgSdg+a};}8m_OwV>m|2 zuSk((F&Zy+^mB~C+XH=1ZJ1J#uXjr3zppbXmp=Jp22oZe%HVi6(ua7gIih&JN)IQo9tNW(1G3y<&Ng~b}<-{k0q|8kF-5DIZwoZ}cg(D=V& zejWGd@KAQ+nHPThKj#gLgnBybw84PoP!LF~F=s<3Pf=m?1ET^;g2WDj1!cdgs_I!z zvX-LHHQg9nxbOqCnku17(ME;&4P3f%_3C_cHej*MJ{iNeUb(WJo#6(_q%Q7eIK)J^ zt1iHWug@IYpVr{axO9lC7c$yeHAJP6CQk8P3q@JWR%cwNmWv!yEj3`XyZ6 zb<(t%&4|6O29jdh zu`^uzp^ff?(Laa$K@P1eNp_^EOTXpN)4ZqO{_Rzz#nMN~v!2d<)(If1`PNl~Zz+EG zEM8Q6dwe644*1ydKWAT#pV5EWRD8XWo5WUYMiB@57odnXMKnzalo13SfD_Bdq7x(v zVuukxRYNGR?hVEwy_O=jrgyN(G&kAAF1?X@E2X3~NqxT;R7Hmng436BlC^*@4FR;W zAWrRAX9#tnR)|AFzUWOn+YmabJ4Ms>5h^jlZA2*k6h3CoB9n<*?Hh4@F_XrkJL2MP zy5B0NeSCcxiQR2s@VzvJGUSOaI;|QL@zD(V!RJknVENGyWZ9E@!xPJm# z0Ux6WcCya4YM|YQB+k~^^Qjib*R9WCasAEm1uoKz149m1@w@r)7ig=W7PXXpC#d-D!%>BHpBkGxN>p};|)@p*-XmJjs49JalSKwO?N7IYtIBpcar zd?SAobW6Onf;^cPWPz1xh^zrJ+W5CUc!R#p*fQCKWs>!EUa$K(uSYsx2_f_zjL36D zF#$D=hotm~E4!XOuf>$)b3$V_;SbV(L5xR$ja4ANi$kw~xf(_S z)aNnD9dY+=UXvK?5p@uniTi)#W#HVnC+O}uwjR{&wC>4uCWSEgq zKinwQcwS*Rq{t9j_LhVcgm2zF&(Y%BFEra1-Rpk+B2I(|>4?I-`J` zeT-5K%8b~L%`9KscH)g?T!tT|54NsG)^iv2k{zn58Yrez8KU%f&C~Ps2Rs5w*zbS+QSpB?`+BOnDgSGT4$V55J_2mG3R0Ep(^xd+gU-shE&MnDmeTke`)HLNH<*%C64FvT#-_Eew`{~ zlnbeeg2$5%k%=OXT+oT!Wp^VYib+i$UQDThlnZ&=K>LcnV<862%LmDp2&|sL;X#aY z|NX%Uk_>rFro|UkKU~yYGSNJC{09`_#!vOzy5J_26_^+R+8{JaCuJ3MPSFR5f@Egt zTQS0vfwuW=lxQNcfQY9Cp~^2I^NE$W9J^t#@>*%wUS`lzM`^1H%I>Fti&uvSk4Qe* z@|xuf^o%Kt#9&3V%Po||OaO4m%grqTolM*GLO`D>cBIx!%5x+~_`7J!ELs?tGR=@h z+FF21M#C$IRM<$|h&r!&6&ra%IbKwL696HK8;wk=p-eMN6AX)vn2{k`ATT6%Ai7Kn zQsPB&WpBko6+KE(6MN{;Ylb;JuvDat4z>|i#V?6o&=B5cv@4I3bW9h`=Qq4b`yqHG z6mvYoFvo>ZWGBgiAb)!A+2wiW2z%ri+DRvF0j6*V`***lCXvu`c;g{8TTrkoo=tqC ze&!j)4j)~IJ4J?1{?A$|N>>kj!<#a`{Rz41I!5n`n}wA7hn$>J=S!MhQ>w9YVJ%=~ z362&wi6Ns|i&FmDSqj53FQF!T5KO7ka3oBSLpW2_ze_b<6g~_3-=rGuI@=6(RSQ)9 z+bG3w7N`*L#l#wbiNKA3-4NPegCQ;-ya&-uxWWZ`o#AJ0qF>33K=qCEflPAedV12%U zGbXG)&8ISkZpfVKycaamZtTz;a{i_@F^U(g$BY;!EPws$N$r9kyyy1M+d47*?1(|b=-yXxd9z05M}N3%Gsx( z(TeIIM1RrH;kKe0orZPm*4?Ce_|Cn^rR~wzM3+K@&?SEriuAygOVCvu931Lq`N!w* z8}8e;FU)0RP*TR|RVv+I_LOBE3-rziGIpY}M}70~8UTU4?Jw0)B~jn8<5I`>E$Mvz z(C+RNh>x}{Eh$Y|{_^o@D)9~q!Xk8#q!&P=*0%kH82-d| z@}JLYh^xNNB{EX%xFKVE>4ky=CVxB)+QwtQPj@x*Lb+&R$C_WvODi9ILDlr>!4R6~ zMi3-R0KKb~rfr$DP0)2XmTLd^gpOBf+M*f54-gNTG6QKTQAMeA7Kqq;lADMQR#lXa zE!3pVp)<#6F4b73>=HLF>~R<(Er{TipRLLLSJ*z$sFbTiweeD+bkoARQ}xc^@4Xs@ zNN=2G_;4NT%CEAmCNn*ufb&imp;HY_H)?d^Zzez36^*f3e`+b6Z@$#yf2~Ne`}t*;FB98)$|aR! zwRe0M=Qzv98NlNH=f4_LZ3>V8XaVK^5BwXB2Nw}U_@2;F@1v$q&i)|csfkV+&QcSN z!Tl)mk#Gi$waK$ z8s}&Jif=xSk;&9&-MZwtIP>xGX$wau1(}DW8iS80Y{I0eM82Np*jFx+SbOu*rAuzz zpzS2(xEr>W2eE>Ri6l^KX&1(;rBGRE#Iq2C!xtmn8x=hM zfvSwrIcl$vc$qu&wjPa2>6BribmM#G%)~gm4y`x@3PCwe1Mhqg(n%Y&l-@GJL~SE# z9y3=&O8b%K6CDm*1vz7GQIQlZq&PC42{(*a(BrRAX=aFW4N?6z#wx2cXfk#eLvbi6 z>F+Z$3a|u?(}%lvvQTUDNAoIS`zyTABdcL8gVyJ}a>a_Z?BON_Cb=?Emk%>C=yaAhEz?WRe!)7Gb5Z-66ooepkg#Y z>)Ud)CtP95^*K9UfickPL0lXY{W~VQvrNcIyO*^{0Jmd$HFeoeZ{KUzW-|zzV6j0{ zRc%qcK1HWiVv(m*->3_Pb)r;bF&c96ZZ7R z*c>V?TW+R z^ea=9Wn$6OL_8suJ^XCx^5p?@R%>9!qt6!w-)AS=UzDWc>RedvVvTnrqt?OCuNQQB zfBGf*?(p}HD)0s?SFP%<&PZbSEl$|xfHh=v?>_QYhk2{p_82bCfcQb{ousxBwRH!* z&M7c@P3&3zaa0~jFUgg>x{zWJs>9b$VE^9E3>xiO?sfh8G1$k-#dH!#@0R;;R;dQS z0Va~lUyDCvut&O>440lzH4nWg}MCkFBmgYTcuw z{TTtIaR(gLWLge>0HuW-#Gg5#9UpQ8rCM5AHZ|3wpmE!(K0Uj`&T(WAq0CW0bp9@} z%bYUL7XW;*=6f5(+uFcrSFCV+{qkrHBct0%Pz2XnN)SD_)x%YP^Z0d#?v_lKs3`$b zj(x{iaX}*mp%$IBNk)jCCwM5JiZ6}^CS$#8&}CA2n7{7G1*Mv6E7c1?o2D&X7O+vF z%HL~V9(gWgv*)x8VBrhoKPUj*WW{1SGN^S#6mCo!Uy^M=r4lux%G zxD1O*gdo?vy>H7q4>kj%rU4bp$2s!ITKr{f@5-EPE?!JWJ=kN7q$-y{V^SU=MEE}0 z<9mN-%gTjOp%1O<FN?_YPfBf-BB&e-!^+Dvv|AMO2e@LEZSzL&|eAQ;=j9#*%8nL0?^g6)@ zOW3s^K(G|Kt=nm2C;+W1uv`eS0FeX1jDK&JRCOSp&F@Ukv)NOh^R(Jw-=$%sS|%RH z?<@VDdygS$%3=u^(5h2Y&z(8QIOm`1KYMyybETeJ^8vJA>1dIYb`@q&%nNX{3jB-% zP4n{dhN(laqWsE@Uc2Q@V^j4;yM2t_|D7qMpimE#Ckudme?vRn>WVS zBAp`vI#Ee5F&d$4ZG@~1z@%p=^+#{(Zk_RtJd7NwV*&aCRcQ*wO#eB@&*i^cN34a% z(St&3))XG_K8jfHv=F1EDq1g8zAKe=l+i z7!7p4%WgRC3r{&j^Ug>xcU+uCC`t+$=HUo|c2BX_#h-u|w=<+d3a4McHv63tROV@SOBub%+tb6$_iY5U+ zFH!VGPINa)#P^SbE1FK_F7xrlicm+ORn>dRmlO7MNFi8*Ybr|QU}pV zHU-9aL8-{hGfeZ&Cap#Et_*fMxtD+x%Nb(M$p{W}7cxX9;^PHs*~F(JqbVSNliwmz zG$K^ULaslQ)lS^L!mpRaMaOh)6sk5$XJ9`{_V+rW@}Pnf*o9iuJ071|C?x-lzeJ9}{KduerYW_ZrAs9gSjfm|}m#PsXo^3ijxS zXy*go`>PU=sKqqSH!OfB+l3I4R&Cc=Yr52Lcz8IbNymmM*@(CHm<%;3u;;(myU1@y z9LdpzGtUpy)Q?sk$v};7{orZb`JoIZ*3zWBAC|?XHx56ZzeD%F-bkyaQSBq^pYv0o zPsK#qsVzZb+S83A%}NSpCk1QX<@*G{sDNU5xbeu5BNEB8Mv#vhPyLA>%|Ai*#~cs& zd{Ao9p&$NQO0>LygdI}?NPMGK7%d%S&ZN`oEEA=N+T)m3u0z@xfW4nWOEM1jUtLE> zC-H})i@M6RV7w!TYSUWpMiw0P(P`}GcX@FZ+lDdKfBtGh^X&2LwL`h@^Jv5wgLCu7 zo=1M^tjP+6^yr8yEm>AJ0AC6FT4}(hcZ%;h&ZU>V2R)6!Ti`#V(n4)m7 zUq|OY%4J(L4_R;9_y#Z2f)Alu!1PV14_!Aq#3&tiA{kZ7Uffm_lH7RvczWK%R%(NS zO{8OizvRwIQ-3NZQZ_TzJX&;*9-rfcj8O(pKSyll`7QJ3&p%uwi+caUnMDj+6wdB6 z24SLlH6vX0zBM@;RKW{ zv6TW6;OzlZZRcv`k1GZqWwCzW~73<{P>v z^;MgvjV`N20JlUOh@iPeLm%HTn253tV|>97U>H|lQmku)VBI=YCwW$gE?=JW^w~2% z68W}Q$47QPr~(uvHmV4^Pluz@`m`8tPT1J&vb2nnhDk2~Tb2s`{SvPJ^3im_#E9va z8+hwwM8M08L7xZbh8DKXXe_N&>qeDu7gSD@$TCO3SpXEPKEbwIK595OH&+`^=i=qd z;v|6qUdOQjSp)OJ&r1rB^h}ab^2t9+*nwF?_3ZSLDuHw*DU0eOurLKn7;**#tQCMN zTMlVcW0_35HfM(sj8UEALtIoNn5;RD3?>Re_v1;kd{HH+!q`Smdu>t~F`1mRMzc=D zGf_X2n;;n%QCThFLH^LXg42HLmND&jX5<{i@-cKc1%|S!>UvUiAPG%Z`cPC0JYy0z z&%`_e5m(;5TPjlH{yLCZ-O4R2T#qJQa?(g&P1~TvaNr8Og}4O*9~kJ*U|R%2{GE6| z#2Q+{aoDjTZzX3Jj76vBg##Q5b7sbx>CLJBUOqlP#sG*}cC%PaxO0QsDt-nq&=Mqj znR+b=L|-g?W*Rh5kG)uHgP6L!Zb-iNn@k~lbbK$LLkfD#NCdVuAAp2)P4lp|%VBCa z+JhB8Kmx4lWteS2KqKoF7-&hp%&zN|PJb_^MttFd?H971&C^3Xgu;u(hg5W}eK-9+ z)eobiWhgh;Ac~rrYJKQFqVSsQHignczx|d;jJ@1QPZ?D&2zQFOaixGTMFtY*_ydhV zG^ZM^ck0NZU+J9^w|0hP7rHEo^JVSsDeu^^4*S{&Vg7^;8n4+af=-`0i+aq{(^CaD zqyQ0*1ycTrdD_73T-}#Q*KvN8zMKq(5Qj~!K>WyaUJ^Y`zQ$+Ph=jGJcciqOoz2Wm z!B3f}qgwpJ$HxIGk%;fooYiNf(}KGRYq~%28V}8@3a5t^`T+v%>)1mXEEYCT3Cvnt(xc~WY1mL?($7Dn@x&xAkWf^^FNs~G# zh!c&k847m!9>@m%hU-Ngo97P$z8m)#*Q z2+azQPRMtd>?V)|i|J@sY}6)mY;G$6@)4B)aDi0(u|7s`J$eMB0s*O5{Dhae)p3Y_ z_q@ljRU}FQgWdU}`}gge-O++q1oM!lPK+$+wJv%>@Yx>o#TAKZA+4kBo=8TP=Rde9 zCyv(whK;tc1&82-cT)~SunOXv;q2ieb~))6&|siQ-|_Xc%b_$$^7@}Sub)ETV7!}1 zaYrLs_db{n@8T>x!w5J$86}5!=OMe^&N|s-KFnFTb&zi3!#QNO;=-S#UqJi-ktz{H zU_#Yfpx}~nI5tu(E0m1UO7TGkZBY)Jm4NtAnJ zLeWsvUrGum?IVUhTsgU>wR6d+F@MvVm1=8FmKfY*-xj=1wZ!7&#S1AcB8eGOX$og< ziu*pN@m&&UG~~;8>)kf?4E%;p$VZHS;&-X^#F_VH$Afz(B)#K?0!Jc0y#HYAC4J?r z2NyjT_upQ}6&^jRl*zUDP}Ws>voYxe@4NT!OB)(iR#jC!$;~}D^6~lQ>Cw-7 zJG8mEW6O@7>TP=S=9;G`-O%vx*oP~fhC}Z%=vS<$cyu&+Jln-(cCs{d=NZeH@pBbb zRlR1zu^uzNK0b+`@E6NyXlT}n7*M8f6R(P%tCrW--xM4ioTy(c>&3+ByPEe1m#}c^ zgK!mx3pK&Q$B#5MH&qVr0s^>^YR>uvTov@MN|$St}M7RGWzX<^j^nF zdgJd6{Z5a;YF0q&^wkhRkyAN1+ktLU4Q8C z;cRW4)tTq(%7)%&(oh~;Ym_&Hru+E#Fno-XaT0Nzv&U7H4co%^TpI1I+b}orT23?9 zg7fjIWUq5I!7*oE+@9%d5F+3F*->*xv`}foq!#~Wd6K45Bd1?XYR7; zKel4SZlRhPAz|T(81cXpzkmN;xtM0jk|oNA5ARn|VZf!m{<_C=&P)b_&0ZHW!+i90 zwA@lkQ&aQ7!8;o*?d-fFBRMB0CoR8!Jtd@*v*OCg$Nk5St<=@kwZwq;_gjuiaC6T( zpRL#3BFvI*PO49xIw#=>C>muYnZ^4mNx6Iie;30TH5yC z)7{Jokt$f7*)4gB;e+*pwHjE~bY}GtlG8mQ`thCZSti%&Bc;1*b`)RF%aiE}-U&}3m^|tSQ=~ijqeMg#dur^h4mkMY--74!kNAKn~fANY)nDmwH`8ET0 zdz@JXPWu1+RTsWTSw+R;_HCv%TpVjG&f-J9$eukfum+#F{Ir{!>5I0X8Q&&l`}I10 z6sz~#@xAE=>@wy*yDZYGr#i-NxQ*_^it24{Zf=zPqa%_2{{HUe-pu8lopSAN)T@D_ zV@b!irRW!Lw6L%c5fSkZZ+T*-zZ%EbI6Cq{GuuUbfLB*+}e!053x~Eaa-7=p)8*X}b zRwYukI!MqvQu<2St5<&+7PX}6oWV|hcDZ{=)osq3iHV7G76K+$-!*DrE2;(ymA;mn zzlDAA8K1h)@Zf6IU`9s9D>b$^t*tNoH!F&mw~3uh)77%L9~ZX;)7+3{a)NAxv9Ymr zdn`DPL`nq>OCkD9j)^j33IwdS>ppY$@u8>Wi(P*;6k|wA{5I?v#g}|h-QeuvveSOl zz*ElE=a!#ehTX9Cz|@C=D}Aa3d>J>WYr}^s){~7U9j83!$ZWd?E2gVZj-QgjZ+vw@9^*q zwY9aBe9tiLgm${#^CuP`q&(}lt@q=QJpOga3LjQFc(6~k9UI@$aOrA103*GJJ0?_t z=bpmRqs)D;qctScb947#YvZ57!otA%)f+b4#8kv$yYlH5?Ntfnqd9TngoKoo(U+G2 z5>7u-s=q&a_|OR9tp9D&>Xg(}LjwbMguVw_nddcgF0Nm-YSmi{RZY!xuCoKYCzI6~ zd3bn4#Ke>mRDzBbySl8{B+K!0YD7ay$i&EqyYTt*&qG7Eo}R1Ohv{NtV@uR~E>$%D z+X;&*$R7~Z9knaCS^C|gS-%XGU>S08-{Cb*=DM_+WBttt~9w`c(~D>qM{zf z#d3HC%HY-AZOTWEs7ub*gzVVqGHWAtp@G7cu{7mz52NMGa>}_SuMX9o>yjD9E*6sE z`R%iiZYnlcpOSQ*7MYzIxg&7uv2s}T$B!G+($YpJCKR2W3p?f>w+#37Ek%lYpJ^18X7XVaDm?1 z+M0}G)vfhfx1GnkDwn5dWiF9%oRn{Ve9F+sXb~+f?YnpH9;k+FpGMpa2o8Q|qlKL4 zg$q!$a$7+>a%wuzp5_V3_E5c3BZ~zlNgkbe{0@kBCSSc|F$sf=*RcHA&{N zYoNp2bjGnkrj#&B@6rL+Dy8EiD~1$SLdmtgY|-yC;SMA;S7a zg(Qm5;~k5r(z-ff>7!1!Z=?r>g@qyDa?yLtSwFqhDVtqmTzfBU*9E-|l2-921%-qT zB_pOLT6WQsLXrLPv6w}>&D$1J_M@L@uoAcJk>TfG=JNB$erz_xlP3to{R0E9>Q-}b z+!`sK-`LpL*wEbUSx_MTdvH5XDm#yXj?qNiV*UY!!KN7X~ zMzThF7rw8m%5Ots?j`-u&``d&8zrr_A|KIl{ZjFjar*J8%yT)p@Q;zsJNm9Obhd*n zb%Jp%)7^J`Zr)T35;*nb;(JjJ8OJq-hK2xkO5RMI6a|b@75~@0FTsq=%m?l5 zC6GB6QBQJmf;X;q6Jy=9=?n7dN9Qj7!PM=8sZKzdj|Ap@k>gs2X>^WXZiVM zfX>vXFJG>!1PRda>BhZ^lyza3pEc*@?I!i;iajJ@DBYnOaGwIP@mtwes0;ejSc`^ z!lvI}EG0e>NNsd-vf|C7qpWSaOyBbDb(vj*?Lp7P6uiN7jq;}0r^u!kJ{C%D+-vW? z|0bK^$3lmuNhI7YSbNAi5^lfurlh2N3BH8)?3IyWS-qO}%$YNJb|am|n<#=+0VS1U z%(rjf9xCIMGwHp|d=>NK;h~|16s=tYW5L2YWo>Qj0RaK;@@)kHk>VR?#on(~3E3VQ zC-=2BT26m^|rf4Jv{kB{tHeYaoPlkpfG}PO{~Yg89Z+v!Vq(HX6xy`QaQ!OO#Kvog-M`#y0As7g>P-XFGI$)eWy zf@J~uX98-yMUht%4MZb&+7)G0lfnex-RRtmb%ey_MTk(+?(??$UR@k)N%gsPYq7tp z(O&DmySFL?*C^fDC{q^g_InwnnQa=huWwaATwI(@k56=TbcfiO>{BG?6aBh(1H!`A z+t~bG%K~67_+jvS!AQ}GJPuMiBt}N*V2PC?=h0AzwLw3x-3H{w(=6xurI(M@)_NiG z{?KwPS--fIZPv=o!?R@f?%kT1=l#m) zFUJCGlvha$I*j2`Ta^wg0^viPrw}8-Mc3)!U`BP7*4(U?zY2_wI zQcoAK;WL!`;qcwBY`3#yU+Ub5(qu8En{Tr$WQTrm`1X6Ro^nKXA;VrxNZ7Vm!GHUq zYG&)++JHe_ZYxVmc?5bIDkdg|;Z5$v_Z~=h)Ii@4QM>Id;wDW>13p4+TYFo4Sp@|m z1n0(HY@&(3b6+TGZEZD*akQ;IqTt1P`ZHZ)B@1-s`@k{emCmC5okcF6 zzkOp;Sa~dFA048U+JMzk=8b{Do5U_0%Q4+3Wka8olq9lycNLOLx}9FeYUQ(Mw?^%C z;Fi(D2dI)%om|U-rfq&^A^aznpk|<`>7OKsY|}A+t%}0@xN*oW4O^dz7pqpU&M<3D zb2isGkb9}q%iDV?Rr2yBJ<3CYc?zIg$-kgXeD`j3i~G|{Zvyj|mXyf%NTCjl|J;TG zF}lxuukF`BG2PijwYUe#$>DwC42%A3x$01tzz;bR1xF$zXsE)bkdM_#sr2VX2Q zV+JADOZuNh4cJ%xAQ;u|4{l)fN zzYO+t3ttesj0`~yOxs<1k{~+e3E}){_^F^dD*pF9VzXNqQyAx2nY+mrRaR1>Ds!Nhcn~B2PArL`6k0OkJr{-usU2;Hp=*ThsN8i?6!d1PN1b z6V+(3K>1MG96x^Ca`cnJ3QnmtB!cEy^^A7kk?X1r+ojT)2`q|yPEi}>TyIt0TpNe@ z&3EGA3ijO>eelOENOA|w-@YY_>h|u(O!-&m88Z?cUEzW~jp*;_8ygrPD z(42+@qcNE4&UPd6O7ZMh!JypKf%e>VF{`NE7PMhO7%8K2FGi|KT5F^uFZ124F9(&B zB;)3)DzPU66BNCfK9^ow+BAY7q^zv$9uS}w)w+t=S6En>g@Yqy%nC@#s<7CLM&k6(&I{h*)$;WKS&ja7V0B*;02w=i)`7w%kj1fE^bp z7xP-WcIJiv^(0nHNGX5++MFw7CHxNqIM6>oi@(`AYi%+S4ImYwv^oTk!j zmJb3inN2#Hx92bd@K)!xF9sE{viR4J4epbT-3|N2| zTYUnP5%;PpZmiD0ib|-_)Yk4oTCoT4%Ne|(5s2Lwd%o^|UjFeCu#W)TRY<`!@%nlB zC^=Ge^HvcMgniAy$r<#U=8;<5feUXF1KtK>1gB?a3|~jd*aP+Ho<4mU!@F1R-67C; zV4E_ZM-&&k70uCX-MpCwD2t$b$^Zo@z^PZu;3|ZzwJ+{$3i;hh0N4Eb^o^{G74lE1 zD!jDcP_cH09-qw@Vbeb~m$!DdX=zi_Dom?{b?*ukWL#HjN`|n3vL@$K4k)59EXABq zeCN}U?`V`aWpn`$2wdX7=kVoTS&Gd-6DfLQV`Jaehups}uxHh+oG)j^?jqfAiHV8n zTeLnqU&nqZOq7n46NeYm(e>CDZ{?2d@+8!vkCnlvlB-~F2$P19_Ce<55)oO6qUHcF zdqa_nljpgj-?L_Woqnv)NYhntc6JUfcRc^4zuyPtKP_$!D@-MLsd4zwBY0gkNPuqb+O^p31}MHqfBdKdLR-ns?u&Zvi`GwyOG0AZ(P&vZ z>K2FOs>Aoi)THMT0y3OutU8L_HUSCm2g07nl3Blvm$$sRnHBut5^4?vtR{HUmal|6 z-$OFct9!gO1o`i~wuCX>1X)ua%z@=Z@8Jkw;0O2Vxnyc?{QmuOWbcTyB@2%8O)^3n0JYoo@wwA8`?1(I2XIinU%s5B{0A$3BCi!X&#a;v zGL4T0MXG|O^Z}pwSl7+fI6UR;<5SCb=oeK0?)Zb}uqr?ag;W#YoCAUiYaE$HrXDkx z8R3SZS3Y#80z_Z-$I^<<&P`hm+@dHjL3AKp{Rb~X9f;oZC-goPH*5I>l7e!_Q^uj{ zA{m)5c7TQD<>j4g?B8G8p+OzkB>LNZ?%8Y zDw~=L000UyZup64Zd7+)Tsw)ddmP)gZbgQtX?pT?HP0dUsHnLlUqbpK8a%V^V*iWTD*KU9n8lWEbKM;(MLgS8etsfqi#Jn~VdqtIb>$oA8B55(3T;z&@^JrH>J zF843F?c0x>8zxAxE?lek;)w=qH&3E2NJ+6Dyv?D2sx7EKlU^)_996S$cr{<49I(b1d0;pr7Q^M7#Vi9<<9kS_(|+h)M`&^ag!JX1~x zvyE6%RLN~lX;Ri_4F#6g=OOa5T_}x#)&y$zI8I&&6w+EneS(^Ufb{tE2!0Ng z;QQW7=_uJy^DUz2moG0z2#mkIGYp%x`}<()du=yQ2G;m_Otb!Q;R2Gcyy@rXXH(OI z2q7UUdCp;bFLuC%&LSDM9eP4j(+x3-35}AZkYnB?%O~VC^ls^yXNUba?7ql% zSP=SAZCxD=g$1BeJb}G-D{PnXV{`p5(R0UQm6lOj#^H0HdV6_nKXL9lf2(PEe0{Xs z9V~U@yzOA8_;2?y91J~ZZJsBvd!GvAt z9vK;_Zi=kaSox2FSamW(MhOv~sOJawRWs9OxULJ9oST0$5012BI)=#IoFp zF%!}+;&A)*eJvuVh~+1Fll+*N&2ztgHG;XTc<~~RLLH2f_w2aY(qQ7tIR1 z&NTtBAd(V7E(ux@a&8+Hy;dkhO4*WyL2?)vGzEEis<%EeJhgt)`b%oN?1nTCMayy$ zS?RZ>p|SBJk$lx7I~T%_EH=9RkD>LhGd*hyU4OCH*Vhx!2{z3G$*!!UgM-w1N=l2F zIHj(GyyFHzi}?)FIf`#wU}5wM*UkU_xr1cTLs5Izqj&~uSALat>8IggKeEdB)D{8# zgy`rUJh&8Fshp5j5Z=VhT2^#d`6(hugWI`=3gip|EgvK?$P$Q*F*Z)9;Tj-EA-A!~ z%F0^W*eGG1;tP!p4QZAyUp~AyOhr>ir@W?SIg)3&+x#zYLiM2-#|+cly?b{h042l_ z!UG}g0Rc3r@V0_vTfAfm;Gg~BH%uJJ9DHiAi)CGAuOlMFLdjC;bNW4(cR;K5?b|g$ zf*QfD#g?BJLD}^}`c{Ci(1A4aIj&z@QU!Bw z101WoQBT)P%{pRa6nm_|&K%VG)3bklMp$H+0GW9b=*K4bdyvCemuEwvgSB7V$mh?S zb5ri!I}u#d-``JtQ>?coF9*LF}cA1x! zl;l7C8c#$QcIcrEC)9@~XRV&Chpi$&lc%SrHw|r7QB_@yP#bGi04dlLLeO#`o>de* zQdMS?)cRejcEA{iwe3nh=-zARpw3uCK@U3$jF>QKUp3q^`3O75YVgPSc=Zn{(Z17| zqP?SRl9(iRdPc@dFx4~^(rn2S!}7p-V}uw~TID4r6n4H6AaDSIm`A}>jeaVn1yi^Q zcufI;7u>;eh-n1suiJHg1sLFXn_oROAukY}{1Cfh5g-$fCon)gj7d+w11TgHBxmd!XTPD=(c@`rCB+`a7swH%!>UOdVdWi>I3Wsh;;6V z{Ets2c_4fl0aaLSd1Yb>(FQ1%1$4&ZUAuOf*#9i7Sm4*6*^YeV1bxci%ZykU4vLha*3xc_JsikZW{6_;ZdOdu7^KBL|lA70t0!9 zj)E&k2cA*}=g)iLxr`7i6Hh#1TEWPuhQ0STMQb(Ub_urd&5@#?+iT1R-eqhd0te=@ zq^(VR;DYVUUp)5=KjhoK%e}OzEyo;TX8AgH_OjAa8rWRQkYO7iD9{e%>^pz{yu(MY zh>nfC6Lb9h{Lm`o#v#`8V&QTE>t5#x3vK+mj<7Dcx8_WTqu6*7+Yz#pMOG-<9Ha|Ml|CMj=<<_|ICwHM6$x&z`l5_%%4Tx{DU(5Xp#=Dkcg)S5J;{(y1Mxl~ zAz?FoGLU~g4)F-~_kwa&V_N3n{_dS7!oT9dgO47BD;m_3+t?nO$*`$c2zTFgRq`gE z8*yd!XoGizB7Cx;4%|uX-tozS6M!KZ55g7xe8>VHV*c|XPx2vBg7;`A9Z#U*-5kI= zn5G^25N+~=3*&kEo&Af>?CPCO!A+Y`1wG)<5 zOe}gnBE}g@%$zrhk0&#k;j(KkGP+A9ix}1$F}4^mw!EBYpE>0%E?dk_;j*ru{SyB* z2Y-I2{GSf(-=>Sa^)0!lzrBv%T&SS`?VA7n3pNqYQ)A!Zm5aCX@{>lS=6#D|U;7XNH`UP1gB>dr1jI<`_pUcG_Ba#%-|9&jN2XW=4OcOV6 z+*pR(1XVsoM3`4nP*#>`vA{iVo-tM$&Yxp!;j8}VjOjA=rp!G;MmV0JLRgUe{CtKt zVSis1UObY5$-44N_q!nm2abS;8^c1~x@}u2NFBn0rlnZ~KR*be1%8CAw%sk$bEaQ3 z{&kDMWy_W=!{+KPwUb5Z29$08^M`PhtP2Ay2moQ+8iR8fWby-G_mhdoh_#CSbj%5k zANm-ySl$1)ZmZ=yxVUghVw3`R8UWW2!dK6%gYiEW9-ox0X7|M7nC-?Uf@@d0)RP4@ ze%i)H47lr9p4GW^>(`qUM!-6S*qi-Mv}KyZ>~D8V!Bp{*cG%hI?AhxWna_x7gohGP zPYF%_{v1#g;{;4n*J7smpWdMx85E>5ND3bP{TDQ~w0cZkYPJ5cGaoUTIqQjwz0z`s zT<#-l%yB2cXFQ0D-p9|+Gb~IiM=FGv@mMwR9U{AS!635N%6jPug_SEeZDK}}`u!Oe zK_B{oNQc9R4`X@ML;wO$hSgw#CiBjay{qx+)hifP4#2OnJfEKgXHPF=N=#b-AXc|6 zS@GiHL6P=|Za$)Xryd8|$O=3P&BUL4y$fH`DMd>oYcC^3#qN8# zU^qF{9SuJLtIfR|d}~qaVNq>>d;a z!(t_@2ZYkWs*Xc-O4o556B8SY1cOOamL`+tyMrV>fhq|7PYXL!MX!A8xC(I#Q4nSg z3cv$q76#aQPD;(gYIO3WbnENa%)tEvL4rVG#~t)*kyI~!$Y%wXb$|X`2E{tGRo^9y z>;|99Ji)r1EEtAC$TU|+%c2RoXy*^0(xt7rIU9jIWb)w zdL9hHvHwFs?%R)9Sz>tu|;g1Bd!f%AaTTPRRDl02%_yfPROb-GmTTYJ} z2EA5=M-vP{18f|isLKGTNiB<1p8;OUq-dz4Q?h#yQ;;I^93?cwxCPH2@6jl}EPjBK zj~_oue%xVg+7$m6_-Pgl7Xfrs30xGH;TDmQkRXpG5c1r1kPR})GT4w1WQf60^Xb`T z*m&7Z>d?^Wtkpli)FRB^l}?vORz-y`wS={^j!8vI-Xy;k#vX}7)Y!qvNzf%SER#$H zpRxT-j#wj}-MiVKKvY2P_k`Y4j_i=9`C{B?kW_iWgv!$*M!g@@HGKcA1jEeo%;0)?0_ZYA@e=@r6^1Z_UQMZSX?8J2fHmWvCW<&AZ_{|Q{ojZ4ukHH5@iW+Ez0Ltuy{QU>DK?rS% zP*J%EGTc zBh~uzoZZ0Juf&(wWbBB^``pt*$H~cg@%>ZcDNzYo&d9hQ^#se>wcdbo4-hMSZr`rT zGI?W(HL=%xOJkqA-fms4D@(ik!3m@{uiKPkC;W-0N;}WjF1ho}$Yk)ia+|}g)R==#VF@wr+ zAHVx9t^is9gT@LzX)d?#Us(wm1#D9rDZLha#Jw~IsDTWmhCt~jX3?<@)QYyb6BrOe zIZY0|Kk;o0)lUrml>jFPGv&_9T}lZxH#IoV7LBAwN9z}D@<+A285TV3jnT2Ofbibo zVaC&^Pm5jp$gz3zW(W0M(&;^5IOBVOfuNCZx9M-70oUT4l*AAFQ~c91OnF=44rYsCc_uR~c z)s!EdSmzFFluzuTa&EHlka;60(kgcrhl`oS+Wf|lk>~=3hE&zTLRyRPgj5NZSL5ST zg2V#rAbrDkSFcdDk7TmtmlRxQvyjj&Y-T|X>|Fx8&s9WJ;@37gMhapw?^MBVD|PJC zQ!?iyNk%w1N2>oyW$=NZEix`NaubuKrKM#F;_9bQpWLBi2%J8TYMiJDM4p8#Vg#R0 zqIR|bm^c5|sl4V$_DlR-{S$5=QxJ~_?(fCqz?&W~4s)zJ}hfy zp^oL-n3zbsLU>5h)#GSWdt=_p1HObz1U918Qh8z#0FT;`XKjo!sMn;fqcGUZ%Zq3m z#DyRPS`9Jcg!UP5;UvJZ@3FWAdkWehju~#;v11367VvQVE0VP#d6UYV`r<|Z+~wzP z6y&tZ81?Rx5D*LWG6Kr61atHJi118lVa*2PTM2 zN-|$>3aGdcNmaUq6zqvAl64D8WF*B?^pyt=8~_K?e1Q|mhJZ1=cHdW?5rW1@iETWf zUD(AnvC=OVB{FP?hf1IdjDBqvJejI3ezYw~1v!?K>(+hspAjXAs?0?XtV>zKq!Cn8 zRar^nULC_W(e6$|YdJT4`Qp1L3i*BgSaKv4L-_1@?_#z8y@T+UEnA>z2=94*_SIbp zt1t9L(_PE)=!#PGYf>SYA_pi9G$o+P#1L}8@t6a^wV((V<6}_x_{_cS6Dsqp`{G}K zU!bM>-(|!#2{vc(V^u(IDFxF{3WKZ<(5C5^Eqm4I8m5D(R0Ic4aiNfffU^(Wc3{2W zH(I&5(Q8esPr!V?PTCF~2P!8!M2ywW*J^q48bbwQAgsEzI!~?Ed%&`jmZ6z^*a*ET zv7wm=n+)!fst9iX5ITJW2#RjMR9uNDOLR~m;>}!K6x6ej0^>(g#7>V0Jq8PPVgxUY zrKk{^MmEVhzqD=tOB(JwTCV4N@_FFcVxrJxqapPH6y16Sl|iCD8gP z^>qa#0RvEm;Iv*qAkT38Zc0dT#48O6!$lNiaM}lsn~13cGD1A9GxzZwa@H*nV&gl* zG8uOCrj*^wL<2}z=39gMYUB~MQlt9V+ECyJfQcJ<2iqkF;f|(4GewbjxCLBM5haF> zO-;RkjnMGS8Cpa&LLCxk4)D`c-5+=4ewV#V!Can<_uNmj0xeJT-QO*W2|$XQEQm{U#6$3>5>W?l#9%9@9Hu$y8|3Bw4BPM2QHUeLwdq2E#>ff{5_1X^oR#mKh-h!1pY;2IUs!= zxV4T322aw9a*yY58DcUO&pcydZtmCV`jZjd?=Bd%nSlARu3x1p?tQX*=S~G=?M&yQ z3OirL&qauRIwQgX`M*@wY}&Nrx!e6cmzV$&sezy0;o2s-X_M6?!0y;eT$BnJfmDgYNo6{KkuSX%Odym_-47(hewK;hQ`1bwYF+s*6C87u?-?_YVRU zSE|+ey3?3-1%V~!e0A#capTl*Zwi!&r1EPyR>9Nv&2}00d@1mkyeZD0$cRd5jzF+fjmUVhGdN$0Mq-2tw^I75Dnn4CjwA%VJcVX@zY&dy@<0{wp5Mi2XI%;z^;%Lg|jVpIw z`l#FEC@O1l>Czoyy4bl>ZD0<-(0=~63{}$7qJIBi;bZQFXM&QZ z6dR0S4Gw9$Lyoda>z&#K&H7+*9vkaEh?(T?;5~)%q))ZO4Y6|>WZk@;mUR6)uyn2u z-)&AB0LAmyT2yHR1|mcX!Pm?4;Y}9I9t6A+yG>h|zO}9SB6pOHrD*wZbaaI2FgUob z-fRZhPGH3cNyo_x6%`c*P?w;@%Ylc!j+j7%+b2(-?o(E#f2^MB3o?;-cF7h5&iT?p zIyxxmDy0Y`F>!JCdaRdFK;3`EOn$3bXulIC z6Z%hXKhFXGiM8zzcStvmPkRovyyAaJR3Hr+-n=0Q-Ly5$57+5Nsk{&PwkJ4AJ(V3< z1D0oO&l$u(cSaT;r9MEx~THal9 zIXK5^Nx|;HnAC`E7SX${gKytHa$8?@0Rs!QtlVjw^djPv2nkz({1%eQP$=vtdi~U` zTd)L<0ZLG9HCkO}X;`%PE|x`9vU|oX5SC3tD;Be`O2V@S=6MlfhWCR9Tm)J46avqT zj*iOXY0&5s+LI6XfI3uQO40KugiLfA&`=oqHy75AJva-1ukz^U^faX`M-N)q`P+u1 zGH9nX6l@YFB>HKHdnDq7Py>sJdLUy+8?H@G}QfMB)(pv)mFKUwgkIjvZ zc_TT#Pfng($Nm=PYw8IweS(HH%JEZz!`o&#Kym;Yv6Vywod8`B&t%QE(|D&bjYD`Q zYR2!SYO&GI5lk!c4PzkCbPG>A(Q8O;jWC(!@s(t@4hpyk(6I3)UGux-db_)65eRN=*mH#az{#yGW22+U zf=k!5@zXEbu2<-TtNeAxWu_;jzbRokdd?aWRM+lx7+11DUReXZT~6oqLA&918MM?F zJ+sTjE0~#I|8NaEfxbS=D_0J}n0x+plpkjF)!~s31$)TU0_70!YW2o(vY!S89Imz) zR8Ei=Go3qDhH^S1iwOpsTG$6E9Y#pe=Rz~-4eE{R1==K&AyU?A&EFxjVc#um<>MO$ zj`&cd6f0l>X)T63Zs(9nZjvf6S0U08me$tSP_DV|i5@S(D3Hb) zrTzO$VSYg^)@rW>Zs1~P5huE2Do`6|3clnIMq=1hHcg%MB9Bx}8Rg)l)RDf^3U{SqiN$Rfr^G zXhSkUkD3ZI56_`c(xOXb7i?S7w1ULIyXQ5c&{7H@ob(MnJQNmdIsXM^%4g(os%b>a zsjr@Mz#XQASL}?uk9}cdLHFP8bA8!smU&R{A}LOHZ;z}LcM(kft`fl ze{l;+=zxfgjU6BQcpnzY@JWZYfbXNDmIL3TC9NNd=^vS@=^&*V$Uiw!S))=o779cB z6UbPwoh@~Bb?twj$tz{kPjR`t{0w!;l}nz6{)87obxFtrBdn1{p_xywE$~N)B~bhG)~sH=g<6Szo2LzvYdd>@#QSxj8=W?nsej+&_qCAB9? z>*Zj-*8r$q2L7gFubv~vAK@EPI|Zng4>Sz)SYd=&4CCZyFcJ(kQ2LgE&1$(&TwC9FzPiQ_dxC*0#&~szJ zoW!SxJ$tMJ#K#|DtND^+05)&iwm;ccIpFavO!yR0k#-o*{QRj}Vf!UHOmb$I5* zix&fr7}p<1%m4}tJX0?qQL8nhLDqm^@{9d5VVS_IG2bJCE*Cec*RL|Wu*>+|ROWSp z*i`+7zNB9mFTwUy(9DBf1>&H0>ENdF>t$sQ-eo7!$ODnd_UWwR zVZFC6w{P@!ixQvqzT;6Y=lsMg$8^nEz({XqbAHqGg9@!P9A;1h4;UtuMw~(^sHv!f zo7e2NPA?^SI$;Tpmg(8SNra7mdnLtaG%ym|I7%BfAx+W`*Jmn&a!>&{MErg(XiQX0 z`%!ML+^``$IiJw}o~IOgQ!v3_9`oQ@YKDYHfyZSFVXR{p8AC%u>G#D^2K}!M_IgW~ zE(L!{Q443=sAZh;mmCB_$V*ct1i9vdkkQ!Zllu||`+t9BOL&lDbJS=iAR^$H1BE?` zM+`3#?Oe@{wd&A`b?xM40#AGHe6yx%H!;EfIeX`136}k-hQr6Wa&DA=gB4j#?av+l zku9QmKXQA6XaBd?|9O4${~N)Sh5wD!yVcw7uv5o=*y~km`JFHm=ra+7)-pOhcE+y{ zdP^C2tMM#GrIQjq(MvtJUdntM9K4DA8tXhW{>)*52lk1;?XVNk$jQkO5dm4+`w-8Y zXLbO)#F|Px^)oX)=Xd!eu7r|Y&mC(6kP_Is5c2pq7dX;|!;3sM0hdq~KCqgFhBJoh z-T5MBfeofH(pCqun3&%eFJ8=7YyGK&1{W=bZ3grm=%zVegl$$KLfQtVheC;O(Ke6sYKPVw3i6jG+5((-P48{U|Zev|^q}>f7 zfC312oUrk#xaw|;=k@DwP$d0Q1E((yNbH`PDh#i$fuSKu(uQ~#mA+_kGq$s$VNE}K zXJ=+0lJP&c>cP+=%0aq45z5BO>Pd`fxK(g4#Crn{pIAH9b$9i(`ZbC{WNGmq`-&Hm3@MWI>))CaeP2M6=)aX~qrsGfSi zY%n4?n0x{qJTVZp8ERlYe?U!!xvi9I8j}uj5~lIx(XRgJJ*7dXf5m35swey z$ko$y`RhWOWz)XeUa_-N57mP+iS)z}C-XgC->LN5Fx%(mUb#J`YEI}5fG1e6{WdFl zQIy@#yQ}2*hqAIoaJu@3>(A+uRYE;L3#ip=nvuh*@!(cK=$?|WQiuFBiUVDeB6jSs zQb$505t(FT?rLf9kOW|>>-7r3)SZw{h)6c*iYp+?ova1_)CJaWbZW{wJ6jwys~4b8 zH~xK+k)akU2l5M=9I=0o!b!AN{wBX1O3@h5t5$c+0q+M2(doDkJhwkuTe0ZlkYI>5 z4Ih^uK;>p2b&{qW!>{2~hb!N7(f3~hhY*JO$Q(}J0Wb``X=5pSH;olcm#ft?yu>V}GfrKF^A*9XC;FIu#S$a%;}=d_Ib8)E3` z>B#{ep8y{@IcI(+LzyZ;j|&X=Ug$6T9Db>&6w(Um>A^f0f(0fAlY9xrq9Lux=tUs1 zznDqWVjMU_l%6!Sdc!164u+s8M1;I^axnR$cMk2{FBvnIk)rLy1vkhB$BLXCs1n!! zE<;)&USCvfFHk-wn8?q%qPp(a9SLzT2NWR99Ry*4o9%`bjrLE^@-K>9;8|YYUsHwk z&wf#FKk|n6Tfd0dUoB$H>Rc~{4`K3xTTn9fz=w0(Yk?<0BWO>`+yZ?s1{;ss&b#m+ z;O-!c9sPP*7H27d;ifQ%l^uE3tic(XndN9_q$mWRnKr$qA~;Vec{~EE<7L7BKlB-f zkzH7b{a?Sv0*nJ&zRJ80qPgJ#f5I_~Tp97<7ULZ4~MLZIgc1cTA`U8eD!j#COC z(@59#q*JfUPs9?K`mO^>9njbTmSn$$+wGe-ufZgSEk~U2x7O|4cV8WDG2$F1s<)2! z!=DK`fxsqZ^t?@S$Ar`HQ&9)fZ4!50ZKJk#1$maW3ll^%Mtro;x0=>iP z&W82tA#r87YwxEcP3!Wr3c)CpM^5ZZ5& zENvH4f!j}Ovmdd-_z8rp^|pI!)1LhbRt2cAN+2X)?n!uoeRvbJLJSfL@sqr{pXVUV z$jF$114u{}O&A+gZI805u#kxNkyI4mVoppC(NO;fg_i6jSPqElO_e|zM}sB5zuih! zjsHYY304PWGFgi-SOrz<)Ees+I2LOnf@l{;kolmw{>28DumV=O;kk33 z?(P)kRQ9O150vtG;y+Zq|Xbq(IpcGb86bRi@c^46rs1h(H$!J>qm%u^;gh1=> z+Q9J-g=NNNU*?21_(RyPwJjV0F)!mJDCe=twd7C(R4iW}rvLXOmeRjTEHVDs|Fy)D zbQl|-v=z8dz8*lOZ2@~eAO3ZbjSpI(>*WD~VoE#M3~ zur~M+Rx9%Y3V@)#PQsE4B>^nJH{q^khYvyl2I{D0lo~YPB2q`~F^*4%PV0l|gw;e5 zC-k6qvMyrANq@MbdaqK96u1km`sllN7je00D%(!@F6}_qc|iEl6mp6ZIb&80BYggx9`-B+Fxdsn-MvstiU0wC%Z^3QxC* zj0HDKDZAYkt&dBQ>6+LUr8^D~;_bcEeX_3}xD4$@+u)qIfk2da@#y*WX2iMzso@0@ ze7KF?M9`a@6+2l7n*Ho>`X zWs{JG&Onu67$m2jk)v30PInb0ymC6dx~uQ%Q`;Nj=s6}mCX_qq3Yb_(PbUs0I^6RY z^xGENVlMs`^zeS03fcKmCekzdE^qe1~zGXa?=Pn*1mNLb&SGS9!_AAD#KMjzBr zYHvzbRu)HbFbPyJjBPfmKYm9t*+2wwjQ>Q(0_>nJ>@kK^(G6HcWrbu`wCaXS3hpRg z4%^-qIaFaRJ;b~taGnT<5jaf)>NU>wpcOcoNII)yusa>p&-}L-_;TjoukYl21o=F$+)2kXNdyq4&lSo82Z`b)5g4gvs(K!0-voh$_52MGR55F zo1^6XF6tAq{xlrFJ*LL4bwSzuad$S!af8VH4}?67Tjx9-$b`E6b_UEKC#{k5_bfV# z7%B2au%@p-t|4ud5F~*e@06X|0;QbJ-}SpsayUR#E*C#}^5kXXsr^_XQK3;J;RVR!IkeGawoQyYPM;Nmb{%?66GHD4kki*jQh_ zW=H&)A?{mWe)ws~SmCY2x&i2bkWQ?d%xZtpsTOv{p|)VJyL9HvHF(98HB`^Cft%ty zdt+&M8zD_}i(NT!AYUmwP1`vAeV%?DcK-RpoHP|faCI6zIpqaX+7qisy zRt)zAS4K|bG9vbW`_Tt)qi}0+aJNgg?Z`fdY$xF`P8{9WK__xj1j2U{9nxVuK5Jx^ z+Q&w_`s4ElmkS7yau&QD!I1AOBlg1~ZLR*XH-(gOSnb-cwT!%(dWGtUACdL+eV1LU z)B;EkI`qFTgkhpUz;DQkrZj(@UIZ+1$N}kyh5oEtV0T!`KQ2}f&;@QS z${oanN!Bg`cW^?Op5i((Ic31I;vDNzZE=DfG67xAj!gz6C7o(F%8+ z8#{>DTjqEBc73B14721My6awE1m&R#{CN7$!r;hO(FvLv)HEcUW?6jDmhw+VH8(kr zs!Ca=9)s$Ob?_M)2HJb?bvUAjiU{qSaV|zab1DzfLMaL7=_fWlM_dP+lh;z8Kt(s5 z>2ig@8X5QN_y%I5MZ=pauS|vDb@U!)T<$(V4QLF2;ZZi!8hgw&RxQF!bnhEvP^sRO zh<|YC%EWv__r<*aE2wyCxGx3fE?R^7rp1ItXsjZ_C7dTK5ZZ5JC`tS5g_e}{=#`EC zIDp=_l6$=4<+dn$;HzT60Z*ip;!}TrXzEX^`opJLS+!%1po6_g4;SM8RB{hgs5OV-JR8|b+9(qnYp1wVH8Z&3ud556X*nMo`~N0k zAP#~2m|bu)_Iht}Ex{Q_53KTW8cx}nFhzD&bJVR>pvYOE6Co8sY}e~Pmx^XYoF@rO z+G-4wH;&@NQ2{s@$c$t*6c?Z}NFQw=Q?xw}#N5imQ!N7qh-sk{7MjGDhj18B6ww5+ ze;>fjK~7MGJ#42@1w9%q7QyVY50U{KH-6+yOh~(>D81uppWpg#N)*Hqmgj)YvW?N0 zI1fmmTY3xQR^MnD%Z=wS@li1cNa0_#mwV^!i10F z%_U2hoySfgId0y$%ZEGGD!Vjxz&*DeBQLAJ{i%g_7B zai^FBFElV9Cfp{`Ls3}38op9=S*j0YK`Z-&D5LVo1sMYN2PM$LiQ~v>>RV^=9qi`>6HSE#5^#FqL zh4)Xlf$M9wa5KF3q16hd2S}0wh+pU&F1grDN|TlA*7@LY4Fmk$IvkWIW)5if|XY)O8xkn$N$ zMWgyALV950uCjo)L|t=$;(|%xtmLJA`#f+WfiV1?o7-(cms>UMZQ)xa4k?3gK~SDC%~8hJ$q&Nn zXONfsAcCk5`g5OJ55v5;RWg@#Fi!c%G5w;X<|Mi_P^2V_(LN7XGo_$i6ueXPqV{G;qSG&E(s%-$f3OxUf}y=AR%eX zqrOP{3euj1Rh=#@6YYX`lkXF%)^k0f@K{`KFLWm{M4-6?`sCfg@5D~r?SRwj0NN<( zj|5Pu4ut}|Tu=UX!rmGp!Q&FqTmCcV|Ihh~N}lgfg2IOUb5RoXdv6?v_y9Ya?szor zT{)Z($UZ(VBwSRg6$Y1>P z^?$+9?gOkgv_3w84&z^zfhb|!h%*bC9X~|8eUg=>gt(dAK*XBZ!apPX&xVkpW&frA z`M@d)Qp0jsbr!jEPn^MNJ2>e|Gp-M(K5^GLfJM(d)mc*`*p7Ag>}`V`C)gDl_fZ7T zS2Dlh@OcC)S%1K5L4+W5A-Tm@1B{RJ#VHX+SX54U%RhB~2QZWl9u{n$cV;n&%>SSf9Q+eiq2nswY@WUc(-BYiIzP&$F&MoPzI$nL1(s* z=b(PeX@OvWmS{d$l{O~oRNM9*y?`9Nh7m0 z9l*6$YODJ!29(!i*Ex*$>@~=OR~A&gm29v@&)|-r^MIs@xfjGuz|%mZ!_T6kIaf`D zm+R=FB!sF35%{4%xkpV+jrdb()?j9RY;V5_)+M5xp8?szSaS^L7Cf*CQ~l zK)#?tlq{tK!>g*btIF8*3~Z*j!0p}qWI`M73;gmC9#XJyE8GCBAhGLz{nf23rp(s& z{4J!`0|)lX?s`elHL2CWy52yv@)32hXUWMo0hM4`H%-1c>Vu=84ZB6?3N?PC1w|Vn z_~?7HHc~JGn58;4(~g6jWww zAc0`F5YblFAFw)QGKTtnKgyHH0JY(*=T=H=E?kVriQ1D8uu~JyJ8*met)BL^hmZ|X zYtT;w%no=&$;ckO*D74dhkQB`$zDZ$#@*0mwVxW*Lx)1tm$T=9g&|`LMuFzxPOYD) zrvg2V24mECkKNCOzUi6d3(&rAzjfqXDZU94<18FBxTle7rG}vAlSDd}^en7-1W?%L zWh%8V{Ev;o1x8o_mfe9Q{x-2pk>TZ{1^p3}J)|@N?UBkW>OZ9UIrqJsHK6Xa^z={Q z=)TXeE*zQsYN=a65auW$^gYtfQq}AJ^Hig(Uos!RcZfGwHDr@0= za_;ENj2UY^^sJoDxUwAy+YOXbwCRs%kVkkEY34)s4ZzVu)Cr+K>ja@MQjA5OaZn^# z%@&nKXGA6KpFj9-6NMt|TGAf?jPaqRWs9&q`06AhL!Hu4QmB(YhYs^U+tb`)HN;Px zV0_JqRzZZa3%NL25%`+xuYhVskO>$-$DnZ#pLNyV#1Dd!6dWS_17BUP?J7c>JU}%> z*|f5sCT}6`!<4cW>oZsfF6kgFc1MoT*;o8z|wvi<=*_{ z2|B`Lk8%0w`=x)OA_j}Ya;7ba0~GGkr~^v35Q#$AgAZj3a4ZP54h}vNHseyxP6Q&jx$E>VUmFm*5S)|#7 z)9#_+3T2ja7;<3+<)oJrumx`*Y4I*zNAfQ{guQ!@Bi z5hiHCpmPu}2m%sDvpSVS3(oW1_$Z<%yo3R-Z`d5p0EOi@WF{Y+d9z7Sf@FPYt_R!` zSN*1J7Urd<{5A+$0C86KYNrtj2`~8z!a$;(&yLLdM2xir0{OJZF7(Lo#zmO2Nv_-)u(aj8HW*3~<$H<9Dl>uyQrW`S-g!2cfmUj5 z&=E{v}*f4CvLjq6sTuZa|ar~(T# zCi?1z%7X8c?p3Z)J)+1aNd%glI0P^#%pqMMGzV}8h_;9%12Ch4CAgLt(s3LaEqW8@ zdiE$M0O~WA&xI6)vNZ%i@*eNtNp&L4tFTNEKlA5x59^LO$&zDbg)o+{VJs$M+J>kC=0NpPqT6 zgHHaCX2pQhTqh3f^VUOw5fM|7a5CYVgCy?@Wbhzb2|(|3!8Q}0p3-l8w;P~_!w;!+ z8!rK1jju-SFW`t#VHJQ0#0EDbue%0sz6r93ILL-I?xWc`(~~2ts5C_PwCg#8n2AvF zV@Jm=qBQ}1QH3UJ&5$HusPYf<4az9?tZY_jTiZfV= zEoeUivrG^bP*VtI5_nTo%Z?qQHp*Hyi9!`pTrE z4`9NhP?`-LT3w!5qBujL@$yGBNCFY}0%$8~Vm^YEM~gkFWF}vz{fV^JM=9k-D2tUq z&xv%MH*PF7c%YwGq{dj{&?(R+~!Bb4vsQfDWoNDp~C+K7yhKxC);ah;DP~Urm=H#+$tP}{b?%C_mgw`77 zjb$uUfmRpvP}w<)R6raC9Q+2S4mhS~u)k;j(qhDB4-T|H{p6VdLdtIlT|OX8`~Jz9 z_YaaMO-R9_q?wc<+@kJVA_d7>0HvUL6Hct z&hOwYodYcbq3%3Tn#>#bKx487=S*I35Zo%q@Wj@ z{Rx{wQaW(4_W_BLRveNo#EA@2lN}lq<-Kw9<~dM0xWdCjLLNbz>V29y2k2;o=7F#T zLg-J#<3XbI46W@qI@E^{-k~BxL9&@ED5@mKW}U{l03aJpVj-_j@iEPcz;?}CEN^e` z!ZxVoE+*;=@I6pTk$${^DWJhHSW8^Qg#x>0-JpdKS!Pc!3~>5lW}>7({2YS z3(;u@2N`UDM_PF|$*fO}cChlGeHZWIwtr>2l5D}AD1Ea)&XjmRDf~7KXqf}Ow5x9* zVr`fdgRoS-{t^#wMBx(TIAs-I4j!F5Q}}xTH2niEH*rSLsR3ECJD?Ul#!hm18-S%p z**P5qRLaDF$}p$a-jDVc}Ui*jlin zvl;E8;;#Am`O(6)oaohGOfkbQ?Kh9`>ua~WH?H+fgy7t(re-i3k(9qq-Qw6?D> zx~;suwzgIaB9dlBcjmP+dpon)=R)u5wu7m-+egU}7OH_P~qD z_Klv&e_}DvMS-Vn>*Zg}z@`%Y>F|*w{TQTmLiiE?inv#1cYFwZnwlKZ#Pv8)w5|RkUhj;A z4Y;xv$Y4Z{FT8Rm;45`MqL9(qk0aiK+rFSjKDm!dUGNnY=fN_PtPWuKd`RZK&$8W% zSNw+1Tf$+P?1=sBsgc?N=<^{~l5|Bz!15<-fXtJ3@AVNxOwYhrQ?M&x_F#oGRBman0mxh5SZYacCLRPHD zg3)xfmu4s@5T%PsA8;4ceMd+Rs3D1cx=os%c0Wg(!!-iQdyJT(yqmL0dTRzv>cdlL zBV{d5mh#^x+sk%Z3@nAu^(nlcK7HD$TfBzGg4CrDyAghF)BgRcT7p9egpJ=-Tg0$MpnPGV&{a$N58D?MCxd$}^oC5lzf=_SLOMHZ_-{g0XewRCm8 zdi;}6$04-tWB*IH1hd}-y9bL@m^GIgw?BPa?GxZHfOL~`DrCa1slNBv_{Yh(b`G zSvc7aIDljvhlKsD>!I91(_YX#vJjR!4`~aS#+#&MBqV6MN1Mh-ar5Z4jc1{7PnI8{ z!Snt^PX;Ek5uNTN4+GN`y5t_UCc#cp`IF!{2t41{aQ%@BM6t+#M2xmn*e_}V zMbne2mJni&oA9Mi;4Nw97%KT}QbN#)qY-cj=~`fS?_t+>Ny z5M&fb11h(-Xy&54ek zNAU%S$Yeh~X-QmMYIMIpY|k!IgPxxSb2o9C^!ZKP|4;3tR3M;P#>aE9Gw&5FmoU-g%32`0cr^o5NB%Ah5|Kw+&Z+A z5(t8#xa8~*JqazDA_FHthWWtxL{nPh>~ZY`2Zka|A!yV#%_}b|`t`4yV@*o>VE|ns>WQ`AWPKl$O!RbQ?(k%28ZjY6_FN2giB1 zqnd)~%mAq!x_Y}lwA1ng5NV*44`K!zK3&nb2^>e*ppqPPd*J@Tqp!sd9&|hf`VABe z4yM{qrc-M8;^oW3m_me<1(yL5&6_X`Yd)e17~iCw00B@-z|@-1B2=gsz>}1hp_)CH zaTsZqm+{FHCzj#7LBN|0>Iay-#n=eyYJo5dG`8BtI*NVJ&V`%e-j-RYFSmtXv8P08 zFm0oimddbr_8@XQn`h5ISsU4=5#=4TjR4fv{p(6{0sh8Yv4&W8?=QnQ+EI&_d35^(^nE zvfWUo9yl^IG)Sd%oXX2_&M7G=byNhK!yr9{(EL|D5WrYg=*=59V7r^0g<$BT&-eyhiS{lcJztI#+tGqdum$0+d$I+b*n)0XXJ>aqs@B*X zz$P&^V%VsxLB^{xFEo}(xI#lyl6tqWH!yJXZs?%+a2?D;R8TO;=7cNq!G(-DSXa-o z-@h|6VIsu0en_qnIz%JhsKE=f3*e1pp%aPny=rC+g$PoX@rz40l79erF79Abk zFa*$M0pmK-NzTUn-LnpY<6mHw4fvgGDPtpKO%~z}4Liyvd^zhaUr#F5>OI?!5)D*z ziP6IXiNWRQMdkr1`GjlaxPR$3As|ild$5^MK>3J6w4eg6!?H8!ZEBA0g%Oy9zIl*UA$f%kSG>v31s)2@E>OU!3n z$Jys9IS1nEaunv~AdvkCha_RNWZfPtG;Nnb7JT?yog@7M)9rp2ufu>YM6RGbS{ve$ ze$su^E*0H8ox?29C8!%t28)TY5t`8|okM`J@b)mII?+;H=z9BgPFtF20+9Uqs0tW1 zmpy4y zXsDqOwPFkr@K;j8!3`M^gTO3>*EguVa|8EpA>%rAq+a^VCWqMV; z%onb_OfRGt)D8mQ33AFBs&)1D?ohvU`ESxXXZTm{AssV>8X?Wlc5uSk3mp`3m|9QR z4dao+^wfe1Q0qx!MnC*91I*~fs2qWw@e&nu(5Q*CfhaL-=S6@{q-jnQ58&?-hSnlr zV{sg-Ikf^Vg>nEKFzO=?9fX-CUJhW?1$o|vhcmZJgIb0A`7;McIFENhudNJZy0!vD z(|&t@6N7Ay=j;JWMV~e2}gd{qvFuMBHnR%QU zeHS&D@qq{*sj)syEAtroY|FRL#+eMgya6%zK_aoEcRq9^X$L?*H1OX;{j0EX9AdcZ zsImZh?SQ_K0=y{;Ko>@crXmR91~D}X$0pX7St%--oY$*=)#ryuf2 zgB7Jx0B$kl5@%xukTb;=%Hw(~nVCtQ>Ku4Yh#W!c6at18T9(wH8-;!{Ex@l7#y3=z zGjG5!MaCZ~7d1nhtGa$+HgT4R+%3;V=h>|XWMn@!Kj23P;k$$=TdHs{y$O=1q4)h zFVS08skSUHZ#Gq^;Le8L6KxI{6{@mqGA4UNu(j73?hgVYI1U$IZY?h-M~zDdN1v~7 zJHpxD8d~U$l6e{kSo#Fd+ z@FrZ$%iC6rM;Hp*=(}Az;FG_xf{&;}Hew!YPNCY6jqtfzV5;I&p{Gzu@KQvic1J+tnlkFz`1yScBh0pG2BQWi+ZEgeDCCI&N$UR#?DgjLUKe$SZ3#1ucjN#=yvpd|YTUt%mOnLN03gbup6gWC zF=*fla$WJfUM}}~TMZ1)T1^!uB;JZ93H#RTpzssA$xOhat&oYPZ0t|N;PySC8$|dd zq@_s>8S50h)5A^)NG`Xfj1Fohp2n*#4sPo0W{}PxN$L?)3Um75%a=tMcx#Xzf5zp2 z)mH`s?fdOKeaAO2F@=78k2oMNNTKj0)+$I$5QF zKi#9^E(wD}@rC3I!BRMr&XKT39g`qHM4}EXZ0KF&K6#Mync-e44_y0x{7&Y+=YfsJ zD@5}ZvM!Q#6|6_(J?7f_deVMGCUg|Vk-`q*K~pawaAc&23y7hfmi7@4frQK}9d;p* zx22o2Z09}t+`)r}@n|dP{SKf-!r->U#!2&YDBlud@G=u<%o{v&>Ta3;6U53PHX=xr`esdsX&R?fIy;cqA;y8;!=&J_e9VnKn&R`N`mj5=6I; zmqIWnC*Cd-Q-WquVL9$GUz+ghkoo=Ny##?Yr};#VWfyhX9+@bfy;1#@TcbI5ZHe-y zD<#0~q0v^ES_++}XDE`L^D*|I!6ryvqP`uF*C>?U!}$wBbgF02EEnpOLPDz=6V4-q zCS}f^eX4)VTu~C~T7%||7uXlVR|xS1{`DH{?U_j?fxxFfA)782UbAKMW|~(xBfJ8c zGD>1WmfYrlpSyTL-V19jb`}rSGiO$tO2)^5fRbw2$3mGmqo(PSB#kti7Yla9j2mo}f zH~Kff5?uma4JxCc3Hdj4`2kd>6a?Kl6yV*#cX-N@#zLcQ0JJ{{ z-ZPCdKDCsXQQ$ne0ZuXDHYpDsLJWp}BJd8FsXJl0C=RuZC7 zv*wR(keMD>@~lR~Rtoc3-VqNQ$(KHe5Q<}hCO!!~eLvS{*`|n0e9bfKc#4geOdpz; zis(6Y*ne&}aqOd7Zmu)AueBx}!?}RT1PW)U@>f9+@G`g|Qa*g4=e-hA!1d@1^D`+&6+{58 zakAglp%V9v+Bu`g6*_k5j@m%aeu>DP&BLB7pahfWH?0Xwbe@8wqKOkT!fW&N< z9~vV3#NhA8NWSH-HI0sU*ND>|+cMR~)L z?VdWLc4)rZ(r8w+ea}J%WMqnksRQ<>r<&`GxRts3k~|CJ8{+CsGGbcq9j}Hyj@N_( zP+;fT?!@61#)>HOLi)u>Rf`+yetOx-R^5?AS41gd&tGqWcpL zP!ck5r!HSkT+#a?$@~UK2Vnv7X51}6kK80gA3qC)#_$**T*SMw2 zDnz#G!Js3&M+L;lRNGyLm;$cAF3I9n86vz1Exl|iP-KuFH{|Ltal}>l+e2`XqJdU> z+lt?cN*$OR?=aEAij)yvK5I874rO5`IZ$E`8YCmvmmBZzxrv`&J}oV+EjfeR*4m>B zT>|z6op0tXUK^qpWS89P#)KH83h7%Vm||Iz-|BU~CFMu*Pfv7+Mn8IVFfQwxZ^>$X za9_4|%58eR^RAK2h!lWN+_(LW7B%XI(42vHjsi2|vx`vgv$1(=idtebIo@IaEdAWv z&RLXr<#$%;bz-cX7lC3h>)y2-`}e1}Httf^1FJ2#fuo5;k4r@NVDqZGgbo24SJ8UW z8tSbf2ebr5bcJ5_Sr{*|c_r|Q%*+E>69Ywx_Onj7y>VrYLupSRw{dKshfeB~VnS1G#s<^cG^~FIG7`<86C_)7_+4czw5B+gu?QZ@1 zA(G+l@B%EsneySvmSOwRCPaIS%OE_`V7@0MsaU~t^!Ha)Ch479jll>(myS(uS_ggl zz4d}}$l*e(YQLzmYPUU~SeNuI)m>rWR%Wzb6r6i@>%diIWa^S>4i{jmB5BN&@c5Sm z3`wdNh)c@Mzj?XSQsOqru~gz_m6)suMc(3&t-A&qbw8R8$kxsXyEb{-*0n0on3mWK&y+NE7} zNzql!OyKHp%I{Q3F$owL7`Tjl*L(cdh2v9x30Efpt%u_pD@7jl^Y?#B-YBhcz`WS( z8=E-$TuGz2n9~)2nXySHkm{O;Y8;2T0C%X{M=vn)vdiVjiBC=mB~=@>q#yylwOxm1&_?wI?QwKW!?y>F)ee4B6kl|RqKqUyhKk0 z3R%WB6x~&*Vx9heTt`R8fULxhEa=#)CF#FA3`_I}Dn1fD6(Qm)=r7!c&@kaGsB3SZ zEi(08J0s@#W-ks7Ky&OVD%rQZM31V)Jn7RqM*n69q11FRB`)`6jnp+H!!D3v5fi%! z5fgJM!KK1O_j}X3cZhpWz5R;o)(wt{P3wc>PXoiI!1r*w+8ONs+ASJ;+g^CNJ_KzZi7s(4RS%azhF6D7VrGBG8v@r4=#_o8Y^00 zqao?6>x=KYDDRIIG6!U1S`^RY7OO&J3c=P;sZgKCgc?eq)snnfY@Ou`dE1z{cyjX4 z+NM8Zfu!_UdE4rX(NCgAN(Pn$I!tzJwuyN0=&2@z!3`sB4~RxBHs_9i1wTg z6IoLBlx74nHtjxo3K&uj;LXd=$ohFwW?YI+sm(wE2fH{hqJ;f=Duv-7;+WP8E==B~ zXWi@1?lYcHSzP{skZWsJN`@ z4kX_*LW)P>Ub+F@RRg9Of)Dh{uv28g#V!_C))@FIL8FU+5C#A7#~)miA6q57e4^6L zB@}toQct1zyfSEdLJy*aN~`XHMw&PJQ=7+4`wAO3Y?zep3Ud2@Ou%P*G)OG#1 zRW$T4mB0zOuimExyrAEf3Y2YiYYDuF;fCEYDNS<7vIT%8$|tbZCmcaFrty=73B&Wq zi#d*G%skDU+I*8@!{EWN`pP)NQP^DAfqiE@3Lw{vlo^OqfvH}hF#3xP=w z@S_T|>_D?~+rhMxho^5DO^Nkct=MeUve<6u-SH~bGI<%{Pm%O@j?QcFy(4WlTybvBq1@afJj6litA^)WJ6fycxy zb27-f-N((cTEbi7g5OT9YhX3S0w(gx+@_|8@?iDvOGP5k2KM>4c`VyT)MtUDQGwi; z`@p(_Bnrea@iGn_ToPG+EjLzcoH~2<5m|rBChPD9qj*}Mw(NuU?8wziAnXmG{}0Wn zfz|TO@64tqtjTR5HuDv+v+=R~a1TRd>AWI)R2@joc5B-p3j#N~)2?85xwdUPf$Ppa z;%dSaS!!qd`SC3{Ds2d?aPHURD_?@BV;&mk#50Zd2TGQd+ti znDF*axp!}>nftl4F;`;2(xo*pA z%ZVcpYW5wwK~+cB?W5v7$evU&`0$2aG{Q_*(ssaES312aHWsE``eJ6kSY&?O4KUS_ zFoc2ZL>HKMFrkF+7G&omS}hY_BP&k?IVmHq#>d=CVbrG`M_d6HED0@ma;{62?PI%4 z%&ReNJqZ@g+iJ3KLm_*yO7AW`6>Xn0L~{d0*sb3A&YhX4d6fA=7{cVNuP+z!EjmIc z6fkn(1$hO95Rmr8Py#=amJh9cai6{x?zqe+=+A+qmq&VKFH&61&>E#c*e3jqKA=~e zKnb6{)J_>+SqIbiblt^FSwPnm@$&KU6}BSh5(DfJbH)0_pEiU%1_&hvH5Tf|xTd)N zu2H-FPTR{&!-Xj|=jtx?QW?P~?VWsjkEvt{-1sG*nzUI8tln>DeTa{}+7ZZxQ`ZS3 z&IZ)*BoxGir@pszHRt50Yc7gEuh5Exy%`E~F z=e=?{4-fBc2yu!5M5?~O=}0B!x}q8GbD6_bf`;9&Vx!$iV>-fjCg6BT)C^E8q}57u zxOx@djM@$YMC@Rls>;hlC6mBVma8Y_WVa9y_YJ^dqk}wjJRAr%Dy@RZKYA&jvBDBM*|UzctV5aYY#o}(jY>5pG+U6?1*f$ z@aISV{{C(ipV8itR@o^PV?ExJQiTpx@9}F`SGc?F7s$*{!NLO-&$@ z)!=gtp~%>|)ZzQ@l%DwIuLUDiKs_%d3b|1T7F%&|^HuY-@VH@koii7+La`G@n5(gt z@BHntkv`3V(Rr*_PXS`825@&7De&8x8fBytzWXknOKN_sf?=n_m`wzyQ3ad8HEH)O z-)<7<1%KHQQ4fo?y2-k(+W`*nOdgLhoQaDmyU%QKDO4kHC<5 z*-CW|tX#Fq5Xn5drlzuvaVej?B44aVc)~6{^?LtdOhxq;+>iz>I(+K{DBUE&fm6hX zom2+aPzi5lIIU%f1sDUs5sN6E5MFkN>+v2u_9Ge12I$0MuNNI{b*JQJ7?YMG&`_2> z+U}=_n2#JM<6X4JID41tjZ-3l-0!y; ziomjmqibIxKrs|=sG4c@9Dd{RaTe>NRP_a~a;W;uMFVi$;i|q1h`uRYv258RSCO$3 z2z=j(PLIk^nwQdG=1hESvW=j4okCL8BjDUt50{RxMyc3Z7q@ zGD?f@#XkO}8SbE&3 z(31twFJ&D|BUL78$G({>TKXmM#Ayl-yxnreVY17xy8S7)W{xkvo^&KL=wE#8Jmb_{ zN?AUPV>C=c`e3OLsG{5H4XT0N48dr5*>TL5E*i# zqf|vjMK%7slL-dE@Qu4tRMKeSOi`2_7GWB0oY+u@v5FuzMdLmAARh#& zl*&Yce*w$s2Zr8b0L&#m{P`x`6M#I1!bK;=_cmU3Z*)-!EG%9^F}S?$JjT{tj7Prl z2?>kE#Za-nQQzLy#tcWg8|n2^6L*YftbD3calduXG&uJa7#;{N$ecy#s@!WG28+_(qc>>AW=64T>!dfEgbAVWeF!MJ%uDq7CMVuFsa zqVKr9MOm!8nP0D|XS*mjHGleat_3%6H@4ESGFH7F9Vq-J89m8v0v;*$MKwLDQ}vk1 zTVTh$>)cVFvhlI8wZO{wVKUUarj&uVAT98h8;Jq+??V2g5!UQN ze}o~z*gASvBmueyfLp(TnTcsyYSf)@#a2t}aX(zrI@)Mi1brCt@fO7j&s~t2Ye7)r zIc9CfUZl+?D415&x4X^LQzJLE*1SOp`yPzeTEt8|7R|Bt zPwQH;nQv-Aoif)7rsXc~$6C~$#9(>vf-SR-CLT>^0Reya5;Bpy5U8KcM6`61Eg1A- zRNQZt2p~1V2f#LZjadeGd+ULeTtJJ7>1wA3hO^BUGfgg1hh#~peYR#v9b~Lu`?r;v zSKIbwDaYsdm{(Vgl(3kSx4w(FWJVceFM^1o$pF1kUo~f#$GY!`v@g;V5EcqS`ir~u z|Hvh|tzBp~kP~&-jtS@Yz*1fdJHZc>gXTrABg_}oseZS(Lpl!gz{~ZVXu5y?0NQTa zO!T^&zv9c?gWFt77aTIAa`9pG=^#C5MLOg#O)jzj{_)mg@i##E7UiW5t?8yy!Kz(t zB5KxpdlvxXEnBy~fxgIYKw5WEEm%VdLYk&|-m|H}kSENaAuL78HTS>)TLX5p7!tmB zK$cqI$pkd4KF-x9(2tMHS2L!h#H-#oCiF?%GzO+<9r&6%TMWUzq&*9WVx?AiihFeU zAP%B-qx)HdE4SkAA{A}pFlLdfshbK?0axFHEr=dp&BVl<(s;#hQ-Kx0fTF8YFlKvZ ztV4us9$5$6ePi@FrM223P8*Ski{$ec)Kk>GnfM)^8s9Y7Rm8B)yb3&$+O{+<;wowF z)Dt{c8h=0<{?9(T{vN5!mj6dp$pA-n?}f zlpzL5J_(JHG`BYU)3(NKC@XCnNn&zFkg1Ibm0dFhP}n+pCzR5SuLAPY$yS2L--)=@ zkZdLHrbfZZT8scE;`JLOdl&50<1V*>yVjSVRJ`Y=Z2w5!-P-o98lOeMLp4QDYg@g} zm_!a-aDy2?0M{vY{(K0InPzXzE3=#nSv%xdidqs-ClkXMZJ#pD$@Nd-<9L-iMwP+l zk4(rz}NZ zAofO5oFZyHAf)NUc`G*bG_PVl|6VAs`ee(~@sEqml`dU+j-d4Xnw#Yn6;h%%vbPtj zDCYaO`7e?QOkf)sw|~!_XBO#hmOud~4lv%0( z?uXwd*c;qhAzSe_+?soW3mFWC%i$Mu7#}WMbXC4XCR~LpZMdNWcr!#pE}_MYLFy;{L-f8j`&e?FvF>Y(qiBuD3jLLO3sqlXI{$H zr`pQ+Al0B#ItClr_k~^Iw&228{Exw~+Ol9PgAoo&P6f(w(RTi~SZpH7>yr(uB;a=3 z*zm8JP4HY?;s~C|f4eKUWJAgJ^A~o84&HhUPZ<@kkkRWRSS0c=;lmxss4*P(J~{gn zzSfVQIK4GD6TI=alEL^}M<=*2PI1Hft)kf2+95bvx-dGJx__N0stWPJf zuWi;B>gyNsW23S49}gOd`_P@<9cwNz7kY@?;~8HFxT8m8-s5c zYEB7y?#L^nK#tgI{J%vl)!fRJ=G;Ub}c%B-`;aO>y&QB2fZ~7TF;lsomcIzQ;kREr*$sHGNF#7sH+=BFG6-E(PN2L2?Rb} zb#K3BFFM|KABOUL>Jc$mAwGV7sNlU!(%*nqTUBHT4^SG2wtEWhlYl|_Q6C>42^pEV zA^X6uect$Df_bun=kFi7Imq`gVLdPM7Z6`i|9K`Ec}vh4&$BVl&g|{i*t>Bx3;%Op}qtU=ne447z;T#GUA<+Gu-50(f$-P@h;FsJnO1gOijAs_x1L1-J&JY z_!;LKGDKVmUE7((9wyA}$@-v=5wuppPXwd+%rT6zWzklKe_?)pczIv7Ft93ocdag) ze=ZPWc$jdeHETZK56ao8e5}or+xlgWCO)L&&t)tvI$JuxQ>=m~{+T&8;K)r&ot=8K zTwaf^nYC07=q20)7Zk)uJppn@;0MWmjLav@m(pv<08kbT6ahAqb6(6^ob=(DtMKsm z8H;Mly7DArDV6QEqjd`3Sn1rkCsY6i9S<74$CO5Dv+Xhnz7?J7cO`+gApmojd9MM) zAY!)i5(eW#9T^lx@e7=2T$QCe9?Z774^yI#LJQ@YY@F!BV!itHH_()0dIu**nz`{8 z$a=lm088nkD_9S?I=QfE*p*fM0Lch(`2y14tSB z5kL|Zg!$%U!tFpxAyBl+ZeVcG)7@RZOBBx}^M)SnEc8C{hg`ewYnarFe|4 zrO1&`(#kN%=g1TK^Jd-uxP%$!Pc_Fr3wNJs?OH=s7a@pd;z|{_bB^4=G1|sz?q%`k zzBal4I6K%B)19*&^8x=Yy$e`v4XqoAmA9bFS^)Rh2=Piomk5<8mNPROfVp1w9u@uP zkozEooHy9%m|k3l<53IzhzmSm(~<1EAX|8*F% zOEnmbaY2Wv%&T^iqE9C$CKS}vu9l3SaC^a&h|OdBadvO~{pAam2^o|!z|vYwVuI%4_&aNPT z{qLXmM-e3b?Prhd&i|`k{&geWA(L1G-`e@*m%#ye<*k2M5qV+H3U57 zqPhnTzDS!kdMA`Q@#Y^ywmoF9oCjR97WKBD7p>VSj=ZB9kn~))7BP1 zy`KSB(1&z(!&aHD{!b_1z*|(Cqu_T@01!0b}EX(sNtbr1D?N8uaRo{;%#Z^j?q3u!8h5+ToxL|-Ti-UBU6tq`EUs3X<10L(?>e|7-j$mv3$$2J;u zJ7g#lU<|)QqNy1#Wn+_$kW-?^8~8nz<|t8MgT2Waulnbv6D@K6{Q2*oH$@fK=z6%K z%wl6yaQ4Gq|5t|V*2UL;e=|gkT)+RzOwr%J{QmbO#OQ!fR9&`ob8dA$7+p*)vyTNxjh1BQ9_#QOSAwu68he;v1!vBmc)i%%jx-q56 zCK|{H`YYMQ%TcjP1T(e~U?o#;Js_oHVq#I~R;)veSu06)kNf|?ZW&qxp_Kb1vr~i1@^z$2;w?r41_Gm2a)wk4lnj2_WC~@{nuTK@=U*NX1vb_z!m}i zX&3Q5F~J?2n4wm8844x90zVq+Y7QJ4shqA2XlaF$6R;_}Q84368R@Q>Ng6dAjv>IU z%CfbraFMxbsrw^W*qFD0Z^6QaNr=yons}#s3IE6zbmd^Tf^8lqJjK9pvUgttDc=96 zj@ZlbcV@-`F=$QS1-$H?ZVcxo2D=&Cxv%WN;N458?VOpMK<I zPV6nDifH722t#2%my8DVy8QTHnYUzK{k>oK>tNQ~Odd3Ho}RU@5FyHXXUSFuODlws z28M^XTlhgc90_Gy=RRC~Boc{Zqv-5Lil}IC4{M3A@$W&?BZ}5xKmo$35D*6+n}nk1 z_S4S}Lh4{g?N&6}BQmVY=*#97r{ISi^tyG?(ChgO1hW!_)L<%Is954O=eGS9$58*> zW~qSviqMm&0{NIY2GA_|3=E&Qb}I^t007xpSFc?888KirsGyXF6B>tB4fH%@`Cr2E zW~lx8pUo{GWqO`fJJj?o{Gh7nJ!S>vEh2`e{TK1r|8Lg*X4n3|G;6_fzJHjF$uG*OecGu4EE%XBZV!0n(Yi;-e?PAn3n2`WMWUd1JyxTWf0sVmU-z^1xw8Z4%WN z)y58QP5XD0XCd_~XwESc{q-MlSNO-vIt3@7xfhJ=$;0c#iw#@FmCb-Zs!~E4m0`i z{+m|Orw8<^%P>gYsGtS2*nZh1UJk>Uh;bkgTR2@pnBm`}yoB=X>DSi#76pGoHY8DihaRVp1c5zlSAX{K3IDZb*HX*kb#nX?qv< z`{uI5mN?1%v0#^Sqqdj0NXGiE)nQ;YKeBA#H#@ZzON^zuqohqA8RYAg4*W=KDMk-L zh)CQc;F!v0^+YN||1t4pbdt*o3*~@%wsu&K&P_mZi23Fw)MM?C0s!#LDEy+_BqTx= z(lOpX_)r5t(P0~c7WEZVMCzG<);chDPA)c@%PEv|>QYLQQc-%+7vJX>E=KKP*W(&{ z6VCK5(_7uu_<>Kl3a3y;1SAUpkP1yR70MXr+cX)4xGS@f01-Mu3r`USBoZxtWZ)%6z| zjQ(}6aAf0jy}bJ7JgI{FY(bqyiBMDpZRPcUv0D4iz44uF+!P~mQd!~4&Km+mDYv+9uY*-`aKC`mcwTx^)SKR5{pRLNQ(wX6buWeXk zq|6n(S&-vbkD*3|s#w-&m)T984rhB7j0k?KxYNbM#Q1Q224VXXr2tYP4~vCCiP30I z)d$4HUjOR#>rUV{L<4Gr;K(|Y)W?;((3|my(!sP1jP;zo$<<*VlBcZo1{V%@@Qw)C zGCKkl{438?%kXH7;}o>dRxe~%^fcdmXnxRQ`Iz(=ZuK3r7^$NFjdmhH8M`@Re`Rp# z_7#2lQ0HI5tB~W_+$|bjCTPp~kB?ec$j)Hsp=@D=iPy`vgJ=rxotR#Nel24bZPYPw z6MWTc<}yrKz03++In0MfW^E8SSHhylJKuEvzwD=DVX)dy4AUPd|9ypYwSnR3?oAGw ztoXGb&c%(-ZSS_huihS#42E=D_ZQe-M($|r4)4ns)$(g42~5FXILOjh{As3Gpy6Wn zl+kRy@R?OrZU(eB-(2ttt3;R>aR1X3GcDAKf#jfQ+O-2d#E!o zzH()_=m^@*-|^d@@5p%i7%$njlwR^dK-WY#Bw*#qZK&1IPc9d&i4m*_gAupWynB;W zqkqJ@;FkeeE5o1QWivlU^xGF6Q@Q6rV5k~ju(FWF;HPWz@su+^r`?16r12;}z?={7 zz+*p|7JM(kyJh!Z4}Z3(|48)A+sssr4y%~%~PIGj^Ogz{GE=+EuwV6SY9P=Nmnf>h{{yaPf@0p6b#c4h=UpYn!*);eV~Cn#zvOeIL|EzyG|?Rvc4Ck=UYkGN+K; zn^u~B90ioUB`0PZp~i=Qr`jGPRrnwOPLE%8Y~~*X{_zj7r*?2=TfO+`1GsQzIU4@4 z9BY;FC_HZ!4PVOL>iCKA#hJF%RMJCoM*%m_Uz_4+mL`#QzPTe$@xE=t$J!t7WOW|} zBnmQNYtV?O1e&1$dYw?)un2;ajzjuug1SJ*gYnq4vj%;uj384W8+$)BU3T8vtGrzQ7g5uw_TMhwRL)dV_zdH?(f z3Vd(THoX8e!oY= z?*h`(t?U1oPW)mJ4E(NKm9e^NB_Rf4R&|_a9Pob-FnzsR{>%aS+YlRq6%(fWp>EEc zKWC4;eP$s??M`f`b}*z&m`LHj@FZS6Q31X=iwjuw)+<6fp|a88NX|9dgIB(tEzDG zjr&^;U%8{>Ola^{Qbun-1j9Y)PTV0+#Q7S{hFMxybVL|KnX&55q7TDpt9r9_xh zHJ88$Ui|4cv(Y!pTZvq| z)He+abzOKP@@Gg?C-7HDWLVP|aeu5Q#zfglMBXQI9n+~TYA~4FS(^*JJK|j?&seME zC_I#19-MkATyAgV*TY_$eMgiImfSWoKbI~VV^dXdn_v8 zXW0_yMnLDPnFIvXC;=o9!rpUq?_U~dxFqko^aGg} zmp@|dZ>Jx<>1TGKh_l|P%0Q=X;%r*tT?A7(_PTY?XL$fi&%K~qdV1JMeJssvk9H7! zkV4BkA1@YCDT!QOUYV%Ud-~HYL~smKr?{C^a0Y5^E?;Vdn4D?# zYR!sE04yZ4f(b&X{}&$R$Z=c$QXFTSTj4VgNy92*^-wb>;nRie9nu_;6@5w`XLek= zjv%V@y$rX%+hRu3HGabFF^!8Vg7{w;RGF!P2R7{wglazuOVmRSQz=26J{CamPr^TV zvKcp~D-xgljjLtpPJ&Tqs2(%r(cBg9$K&^T9!qPD|1)BHa_*KaQo|L9Qx3evoW$K0 zT?+R$2q}TVssOP(AV0xSJIg-rH#Bq^{U4rJq2&G)9mOE$6g4+%LiwZ;?T^%drq@6b zlJ~2BRXQWq!X=>@eph3VQkHHO!V^a)%5)%tcN8&OC1BhblZ30I19GgQ)G+eNiKAG3 z4MU+kR$HZ1<0poP^S{6y(;j%!D>`Xx>D^W^z#lv;7>+4lW2~s`G+5GLb3%xdf*<-( zlHHN^r3+zG?$w#Fp@RNdelJJYn+Vexq6PhusW==l1%Rb9F~L61KLaA-z0CZ0JfLW( zH3#91RU zwEc?M?8D`mN6DjDapvbjk>G|WXHh2Hk#T1Mv&phM$n|}p{XZ=Fe&wQmYT7j9L_g5^^UWqr&1QZYiK~w|;BqzyOmYJYPkgSq}AR-w76G)bv5hX}Q5K(f^ zeJ&u@d%yet?jEDZ_7fWj+H>IF_DJcp)teU_3z}kZP@i|tq(e=)xWPQ1 zj`Fo?b>G`k;o8yV&WG>eO3;->clARwAL*f8#4Q+Y`F3b@x#jAblqw6tinLrwl%g%C z=Z^VYBSXF4U3E^J6U0%Urb^^gJzIDsj#>^0Y|HoINVQB2iCk#t0!S!mLD{f^bW(ww zhm(Q|S{+GO+_N(;=BBj)qHti^QA;yKL21kz9Q96l+>c4q*tA7W@ZL?49#KygiM)IP zIg`AjHu?Dino)*b=40qm9+$DJMX!k?KP8c>*0#5kCe2q@@uP=??AuSLmiQnBuTD@p>KK;{6KjQ7u)UzrnDnaIou zOZEM;`+r!f6r2KQx(ig7n|gjbzf)T|ht6MJWz0_lo|gn&1l}v)^O}BlN@Kx)1=k$C zwGKLHd$xugcO_O7T4O{Y;~^fWTq244TvIr zET&W*0e8sUQ^G%4ii?Mv|0NJMSnuN&5y)-2(rSF?RdEX*mdzY?UZu-ojtx4?a_~Q6 zXWZS=y8d`x(eRWjimv3f7Dm@)vbk^R0$iOOOKnQCa?KlVHbJl;*F79-aVtW;%zbgb z=F$c`QR;j2fu4AZd8LGxy1iK|TGK`@ft^MEgR>1A|MtUIKk;~Yryiff_wq#SaKk|V zWBbcHx~enD-aiGJIO-eOILjl-rMIQu3AxeseC08om%WT0#=DyxO?ZYp1Vb4Gl=Aas z6e~-5h(`}@t#j0YGRWpqRSa_Dkd9zf3A#R9-{83gNy%w+!uUYduNHV`Aw+KIQ837v z*L3=@xlYW(o`{V?0(bob&F7(Dg#Y1y&%*EJuf5%L5`h<|6^TUs%AXXH(0rFPW=wzHVbA z2iVc+(JG@kXlS*l+@7Q8K(r`=COR9T^<~Kb_mq7JUg!9jf z{r(Fz=$1sRP6;`*_oMaI{mz{S5ca8|$;BmuY*d^#XHbOjzS;nmNHsA}lbgS}OAVOF z`MdoFq(v?jIv0tKO&2+;ASO9OxXcSkBZBS%mO9Ya96NSAF1JUY1?TW28m+n@Aya|@ z0%V0B!$U~rlXoWh{rt=2gmuR`jW3%>fbakj`O*C%?ei)^!J(q}2vsxE!mbF@30o`g zy2Y<{8Xm_{GCR&X$}cjm^f!2^{c6R@w7Z<=!}v9q(3+Omax_kHMR>_xE8B5Be&Ks2 zxtg9P5@6dZz;?BpSMzwMCyi^ z_2I6iOqN63^yksM2sn(&XDLcP%0Rocj(V$(kFEj71HUCkoi=(9?=^)PlD7cfk&W;Z z%5F614COde9_|ZY@XVl{Ff!DGGb}mW(Il55$v#oslV4k&N$$wQB(`_1B~#xex%OtT zESuL2Y-jwwq`X3-rI%H-y4`s|n<3+j*bf^&+!E1b8=6}GZ5JI>DWprUq0#u)&+OKT zSiXWDsS2{kpvzb&2N*q-#9+ZQurC#rgN_0ug9`w}+$KV1r-;mAP&xTObX z09>Km41UmOnuWUvl%O7G>O5NAWHL`Zbo616QC^6H*lR_hm9ih;AT3q(_u41-v>#!#Hh&yXt0T?z@>gXo|-cF=awA0gzVWz9xZA*!2h;!qy!r!M1c80BG- zTjMm(E%IuCx!d^KV5(`KnaCtv@}99Qjh93$yPV| zh8-k7z(Ss4Ku2Q)22MRix7F=_uPjHfy-ip&p(>L%AT?hOwxu8@hXcDEB;YHTFAqX@ zJz9e0c(e*&D7O1s-BZomWI8oCbg}`VB{r!mm3B!KpP_p5x%PJIj@=7|wPUBr8xsk$ zs(vhMoM0nad|6f``xThqW|-7m=r5#%UXv0ckwuFo0YQ!FR>a+_!VWD&q^JfmNeY!? zVp;N)bOK^9){{DX)^74y&Od+F13)=@1A<+Q5lY$_y`FjC)zD?tU+r^_nPE1{B8 z7pHNZ7<6JF=MgtJ`hSJn7@MeQW2Y!O?oYt75nXm%5~PkxF2k1MUGzTw@U zJ~i@@s$4B-)fJ@=M93!}K;$!egvL!>G!&8ka?$~fkBw2uNka!j0?cM%(<9-AJUa~8 zUI$t-5>kuNQ51`!lUM3vuvjB7x`|3yMGJ7n6;aacW0a!A>UXdyJlF=9rwBH{ZN*6* z3Kg>hu<|S8ph<;e$LaKw%Y;8WLXOPpFj=~+5T0=gohPB#QIwH!f$SA{OpK`JQD0vx zXck^!M_e<|kmH&97=DoOhC2@ZIGD-&?t6iOu@JDkxk7BdEkTqPa8~+UYKD|ZNb9c= zy2m(*}kA>VCFYwP+FtXd0!wu%80mm_XP{=*gS%{Fq^ymJ;5Xcbdm zp=r%cMr~=Kp}2S}w|WQqHlK{4m9*aM0!EJJ`j9{liZ%PE(l*X*?+{ZIj6~&~YlVa5 z#S=Thi&eRwong)r%(a+C_YpoI-FO+}HTU!`KJ0W`#P+Cpv#U$E{kh+#^X){EbZ)MQ z$AvuOIW#XMOsadKWQVI02)0flE!GThSE_^y2^aA)Ai6ck4WwfBt%E24(z9y)=O95U z(Z`ctKS7M%=FDmHfAI%&%U2dG;qLi<{*pF?t->2OgDr7;wypnUuD-Yl=Y=*)35#OM z8Ub}w;_Akel_cv2gClaj1v^0_+<}%ZymAKcmAUjR9`cFXLP^kG)jOdF^oSekbamzH zb4}Zp6C^Sa089rzKO#|!=QqjD6CS(Dz0BdPsqf(HZ&4n1fncAy80`7FX6S9Wli#2N z2kZFzP_1+{5%1Njm=F)d$$nVFw!%7cFbN`_Zd=dLK4Dx$joz{Bb`L*Wj1GDFd#Zn!~p_((kT$_xrs3kwXbxmI_D4 zhpL|SVS(orRx5qTsK^aJ@?rQWsv!y}bPUhG+OfaV;b?B$+kX!zKL>;KTu5RcT4V#E z@gZ|SmTVABugwvn3zaA1s_3Xo@mor(=c&Ort3!M%i2H;=O6#hqQ8Ms{jV;{z_WY(q zmGZ|SqyW2d-;l%gs_Nq9gYsH2FE^(}9Pb+KvA4ZFc!gsH>cKj)=S5hWFJ{jvE8a5i z{)fW?6K7Zs2Dy+dDah9RkVp$4YQNF2;tU73uIykzL6x~1$^ zJG!QJ+c$@XJFO>K7wK0=s4$8-j4HKijz7B5-gv8HcSh-GNVmN-xo}i%Q`aUlQcGdW zr-Og~F1jxC-8H5Pce#T<{s5#kOtWG7D+;zX1@QAXLt!+5Jv?SB7lee&TE+dmantOqr`mn%e&9TR-iD z!W|n`|Ah_*Q(ot`x&e4eN}ufftO{I7Dd?x3MQe)jF}L!g@HRnR^HXw|0>Exkbj{Rr zjvadOu+ZNP*}(7gjDW9eAo;D>I_sV5S=%Yx#bpSky@X|P-7KUG#%IDPpCjNLv}*82fthx^aFEPxqI z_Y91kDr9ES5nfozQ>tA2@LIy3e$ThiKQXKIJk#jqpXfki^ORtlX2GJd?`<;nt$A%4o+>>amkE!oLcjVWk%yDVZ(h6wICB`!la5uh)TF@kccl)gH zgYbH+8lvj31dM;=Q;XQE=^XGOt@FXBtpDJUyOWw>aLS3>WvX`dNMoYE0z&DQ^HB8+k;6Bf3u2MQMo3*pq zvCeVb$$R%>T6jLONDQyOJy?{%>o4pTd)MEmD{9iOTxn83xmBZYipqNw&$zHVuAci} z5MVtc!d$#ZgN4UwBi-zVB!+u`XK zw9u0jeP-cCi~P4hfk_&3Xn8ZTG*mb|NHZGxdRbxXKvEraI=2!nlfktQW zs!u^VZ_&fu?_ry~9oF@Ldy(tuSTF!WyjL~O=_ldv0yhyMpq*b`XHiq6<&P|^$ETmG zpd=q-G)g3}$kqtKM-+cG+JTU;+CNRTv+DZ}U)hL`{{^?lmMSA{=V_)I_GJ<86Y1c! zm5ZKAW&aJLxmYDc52{IuCGRiUBl@`MUFi90Qbq^T)q8VmB}pjQ8QrvnMTJ>5v$Bdq z)-Sv<=`x+dy8_$Ea5ZsQJ5?$+j6%C<)%aEj!M71&H?{iHm;c?Cnjl6SNr+;Q!P$f_}e z;qRWDl{K4#Hi3AM85?lmzQxJLpYHK8$Y3`ME0>TmatA$B$B0Q4b<~H2S*Y4H;o~2W z9&kwU(0sTzBr*1Q(6zOD45HCZLcF0!XSbp0C?#XA`Q(~Qt1o`l<9k7Qzs~^YD!saP zp^E3mOleFuKa+tLLcJA)B|Z4%bg0PLA$KR-EACHCGuU$$)UU+d!P8L1DTjKh`~`lC z-Lm~TPvIWB1qZ~2BATP}3~U>simh%DZxavX`Nt6&fZ)Bdah*e!OzI&{KM{gyLmDl9 zM~)E^s`g0`h$E$m%LzRJ$L~(Dgp6-ivq&t7U3XE^Wed~4@PV-qDk2OYB?H+q9XgiQ zpbHM=QKf-?Sjifag-1H!&_fc2J{+{DoP^xmWbo;nmf6WK=A5pm5U^g+aqs_4oPD zpJJU~AkI^88AgWw81776u%DC1nDco`i?bTm=jN6rZ8i*3otxE#$VzVvbPR*^D0hnP z(GYX!{*2lPQS>yOB_;!m*N*po!q8f|&Sqk>1{Wc-tVr4=x8yn%RJxixX4E)Y_l|L< zv~-$CTzDmeO*d>aGL0w0Z#W1Y9OXt*OT`?D(97oC$D-Kz`}b=lS;i*%Io=gEaZf? zecX5y&~=|hWzfa5mQv$K}(nt8h<*x%+75eJkl zTiC-bf~U*8FNx$=5q4u3ct8}eaH)+b7bTr+%WN7V-E+2xpd<4DQ;OY!(>N#Qljp8fIhEFXm3fkVZ`U1q?*2avj{r44F zLc1PX+(qF^o@3eilr{}k|2zPgkiN*uwfb@EN9(=SrSsqBrBI%sgbflOY3Cs zLdVhqit)*+Q}&JTe!;Ch#hitnKdH44I+)&ovu$y6EQt_knLSSF?Q=Foh>yMs4Lnf|!%b+g@HSS93oBMu_Cmy2#} zeNw+#N`_wRmSfn_d&2ons6}puXWx7@;1934c9!3UfmTq0u}70FxB3mwmz)r?9e!5Hfo zm)E{aeK>bKT7ABeo@A(fUcrf$udh}x*Az16b52)3zl9r_J1^S9^2$Ukrl{I{yOfZt zW(OoI=22P}r4gz`ig;@!2QNmEcJ8QNAZulNY5!qxvSNSd1r$V1m(c=-_VCr1Xucd`1(qNF86N_I!!)dpIXBK#8N zZ!d6r22Wb&&U)1YbxOUizxRt5hZo!6vzi4}#0FPg{iVkKQ_bJ#uDBMHkPWI2FY9mO zYjxQjy8b;*e!=~euXik%rAnMm_jJ3ZLDh+KA3bDDlRei)7TcW0f^Gpl;wp=N)`@Z! z6+(yQ*8pUqO1uK9fA$A~ ze=$5WLOmC6|7c*SQCq)r=*urm1qCNit*x;Bchp&nY0f>-6Qtr?UYTC?GKE6A|CBoEC{9 z7fN;)Lh@JwF1A%3@JSUYF+hyhoC%?{0!?-=KOz5M6uOQ_0)1p9G%besvNqW`2tB)m zS>q0rl9IX?YuI5>gQg*J=aR-07nMyk=xE&XvEjJ9aGF15ez9{I-rkW)PTyg=!{%2z z^TzAZrj%D-87jRls&1Ym$0Jpf8oKs2SamKxjc2-HDQi99LWZ&_+0dzns&YgcLp@ZT z0TQzoQ<$I*MVuPw$J~N(A5L#}51_)LIVw|Ib<$pxH@#0S)A{7^+g6dFE+NZZ^mj30 zB=4_9Q7VLG$|oZG2;b%A8VboXWYKCOEkmK|QW1LD=5Aix~~PwB6_!%!no8S1AHH{EFyWvdapk-y-E=7=e4Ab#j5mIZLTXgHB%2GA?j61{J!ep_8gg25$SWo zVrKtc9Do0ba4PB)g=Z>KJ3lgf9Zf+1Bwe?;GK`uc=VaN^yHAh|Zw`Bmw`t0l$pi3# z$;&9qrExOE4rUQ77-G@v3Lj+GYl|7>dWX>9N`4?MI526AFmBF9N#z8Rlq-shX>B0r zNVm#El+vimbJp`2nJM0yZm1&%XBfE+#oj#PM52i{MdjWhc-$t!r0+56vuuAfm2P0f zu)M<4TWS0SsJ8byckzdu!TL6Gm?6pVZj@ih0W!V{DLQeyg@qjQXyTDfY>aVa9i$;Z zA=BQD=+~@=YP4J72=%oZum>g&T*LgVtU0}13!54e!~7$Mb`31L&1*QyCFpi94Ea%) zS6RwPt67Yj43z9oOD#_by;_?emlS;df|TSnbf$XHJZy7A!2%QU04x8(SCP?IPc${_Zo7Z#`CpkI(wNrd3(`a>#utaGJPo|IOS*l!7 zdoMr}sxR*^ZUy5i-c}d0{7KD1No&HO7=kcur6J=lr}IbjC%GlO+63aYs4}$hW!JMX zMO!^5Yl29kI_`=yABTx9@NHg0DC)29w<`O$Re5y<5_+B(u>ZxFlpaV zc+Y#KJV%*~rEmSN1Ajw1ca95?21=BPj|z!Kwk6gX$fM8is89y$Sl!ou)pRw`?I(Kg z-@_~s5S~z3DM-Va0pp7=*7l3E?)vyEnzub(Q9E_=sRcZqUFYZ(z^pg~KjugjhZikg zTnhBYJeoLT0EP^!Ym4xi9$bGQ{S%F_sb3qG2t|^4-cV76N5TFajgtYi| zvq2*TcUCRpW_dLrc#n>ot`X;poR7qDhg2?+`Xs=t$F~mN05I5kP~LH%EIspGLU7$>Z6SxZ;Omub0SX$mlQ&Y4Tmb*7wPJUV?QHth~TK=)!^4yBd{Eq;0 zI!l7CN2tewD}4J*V;*T)&@Gh7f`wpEp7Y(X{ z#Fvq^2`4hnlpU~cfd`Uepwm3sMPCZ(p!)vRDWLblaboN{KUM5ZcT4(@~l#(igoIT%`bH@(pj0`UuO=JlbWcrI&=GY<9eS|0R!Nr%@ zE4!$2qkT&%>v|pD#$1^~e&Ua7FkpO542Z-~FL*&sy~pk>yT3`Y5pQU@pjiWgy)7*t0d6rvEtg+9xko z=Cf?vH;2?CryieAQwJ11BjdrA@hbr=jwZ9dP_h#_u&fi)7z!_Tr|?J9A_7#V9(fd8 z`m8?tR}^cqch+y{O^4~s(|8T9t)sA5?BQv-6>!Bla#W60)4M#LbWDJ#aPUi>XbIua z6E{KaOnoekw(T$s>`o4AaV?>dQ;=o% z^Jn8*Pcsqi80z?RSjGj8kYN8+ahG*sAi`SFVMx&O^z>~9+8jjznPadv{Rb9!6Yio@T$P662)DNnpN<=z(i9rXQimO6@ffoxG+sP8=1SZOdv~`!Zw^AQTj=Bf zGX~OC#;EB{^AUGGs4$Z8oWxl`o(G+6VQ@e9_KCwp0n8b(4Ar`n_s!1rygW~U-H78uM?!}#X< ztOJ;>ri&P;0vC3^p4Bi6MYCiVMtLNpO2fkr?%0uO2Wdt~MmsNH$Wo}5EwnUCb7@T{ zp~WD3!nf6MAS1cF&vA05c?xXBcQ}%onWK3CH>DzI>ZQz2+fF84^d^WCbf0ROJy5Bj zQIjK(t+WawS>Wfgr%QxrDHclhyJAB_;79zbBo?+=RlEN2GhJQzv!DA~@fVNCPe~&aWeGsb1Jy)+^N2yVT zxTX-3=!LPw=QH8wP)9}cQDVJ}Dx;+61X$9FFxd@D7`cNfGB*lZx>!~ zUHFlY4E1z{Yf>ufpDy(kf={4`QtxcWT#s$~b`;EBgA=Egtw&Ds+ zzL}vRaBOy{y<}aP%4^n&SU-cA)VBJ@or_5=+s|oZERDv^C~JTP=p@zA@IlR85w#mR`E&5r%f;bv7DrDBGaKpF z(nk8CF!V1v{R_=>5L0M?GgUC|v9JdS%pBu$Tie=n5nz2VXAW93JVO~0va zTQD&Rh4C)gr@<+b;WzE51C{~A`^A~z@_7BUT0~G=5q^gkL#GuAIfd7-DzZQ{YDtNT zV$24ywR>+rDoreKv3`l>LTv2AGJ;o$ALH!6$xH%gJDP&-o?X*wZ-DTLr7B<=s#WCI z;dla(F?rAICD!{Q>7(?I@PhDFNI|EWU;Q@;P+60PeG{*uqr1lXGp~7{)jF1Q=itJ9 z$BxcFRDNhloTjP7(Ld@GgJ1sBxUTl(p~4OQC3EAqzuj#vFIBqB;jDMN=B+=hZicvB zkH}Y00oXtVc7!Og(|b{G{>=bSnv;w+@F2@m6l?TQ6IZ6jX_x;hG@AC z4d@N6{lF*cS8~KgYl=TUyv}?J?ONNgg1wTy{6b^fBDjjS*S=jDD4Re1%CBZ;;3;>y z9>=fqtaDm& zfDwY={?Om0KA9?!<1jh;-W9A#4lLlBlbc=i29wd4lbuj?I<0I1Gb4GBGM=){NRyYB zU(On6Ytk5?p55qOq9VWzh1T(ZFyf|m#&&Q}UteEAQL$}D*t^y!jYI9q+~>O=Gd}j% zeBhc>V*a~$pTos&K=@8B{^X@YF^ffhQ&FBP7>w~Dn~763A+w|fCl-o*-&gA}IbMc1 zXKB-oSR{ux9#6znjTH@k>krVS-%KAct6&*Ck~^|fn8t9sAG=$39?!z`Z4BU613NJFz;|dDT%61!ne0{h|7&hC+0PNzJ0>608&Ofw@ z0~&5=FQ&bl=r~EE4L^heW$%ZbXXY{$VEt*JQ}ZjPKz-S?=^SpfG~o$wF0Nd*AAU2& zOonVU?|+OB9KUEg6d&k}DQd-!t!i;We12SzrSrDFd$As4fsE0?TV;s4cuB`1A!vCH_?btacA}Z>3YHI384ifqLX4CmJwiUyj^aXEOMi#ss56(+9pczBp z#9$cw9hn8}8vE?}Y>ayns(PO}p!Q6t+Op_nkr5F$i*4I@tZeKVZL|;TwZbd;z~PPO zFE*s|85TF(ZTa5~5Z*cHFX9+)7Z=lg(s%0ph@xO`a`RfXctBBwQ>RX4LggfQ=wRgI z$Axbq_P~7qxRu?{M^Ii_nV45RxZktb#ltOt*2{`~Rk&h@p2XWIWA8}~jgH=q*>~$M z(r7kUY%QYyfg7#brUUW*-2@{p-34@7A6HXjg13XcyF2gLmT18FH&Fg{ZIJchWrtVJ za)Mx*k;6HY@QbR(n#tk7$(q`*CA4=jKUU{ivO3=x+JEsqiSTd~ks>S>hC$nqM4y`c zUM?@|41KH^?AM1dsP4>Ir&8uExEgM85gDqk6xO6UTFCy00|#<@m(5vJI6Gnp^{f-I zHp9j!SgbvtcC7lx3fy^V;eT$y}ixq{L&hL>lcXiQ-e?^?<~wK-wLU2C=T#oL;kv4d-5h*TzST zp?8ASs5t!k)~T6dej~a5uw`a6E|p+CBrPp%JDjiXf(GksY;Y?5-2gCLSVpq|%skjD zs$fJD2bN>kHztefv)+18#07lMQ_A=q?}ULOu-_4etLYl#DqnsRpk+Js{vQ%Jb<{5aAhc}`;uQRMD}e| z>bMte)PM?U7m7I8@STwbrnj!xgzbJY<8bBim_ztCEmWINh7L8Jvl0lek%}@Mj!^KRq7cdHzodYPA1@z#|e=qKvIQap32> zMP>z+;T!AQ_u{)ha+sW0G6YdN7jpTEb|2*F1T1JEtYF_Ze2qy8j|gx;uJZnDz9ON^wo^Xv778n`VOqWcte(yl4jS!3 z;H)o=fYg2l`gleN!7dJVVS1+0l^l%Jy^Rs0t;5j(I)Ojd?1H{C;1j6F-mUYdRFE{< zdG7yqzh){R7YZ$fx3S9uB^)9^2dws+0zQ(VEMCvQ6V1TC14feE;}RLR*x@t>sBqTF z0&uxZE-h}T-*MZJ(Uh-|s((aZ z@--`VvFO{)-P?QAclQne`IQwF6<{N zMybD1*7nCu1yECsId4~%&>n0iKxPVXA9t6N)VKS6uK{L0i64Be>7}*`n8pQu0omwM z`-rG5;fHQ9=NKD+H!?Uc4k+Ui>^aEXzJ82dJ*1=4!RZ<(Xs)Yj(~}_7BL*Y%{jLt_C4A_nlffkb# z3ucA?k~i(vu6oLWR+PN1pTlWTVq)S6`_R?&Aj-6nL|J{WhyON)#<(S}H<)7*6&bk= z)1BX+!9F-nGF@G>!fzShp0D9Pe?-;z%}NFa<9g$qHyHP}Jn;K#){jE(hh-E_oalK* zFcO(eW-|boeE-L4bCID|2cqN_j3BH%^Zu!3{v*t`aE__L08q2e^3RILR8`kAFyyjc zm_s}G7kMQYmGKaOeOcAIBcvbGcSX^;J#q%b}4&3EO+b(fQ)i*|YugC4j zx2BQZUaTr7ECJqTk5Y`f5f-D=Y zv^o5D(e|Dt^vu+)eXNvZ=0)INHIRAq=gQi12LOTbV>GA+rgIajsK6X_ssWkAim}m_ zuNlPGGms03!MaJMu=IH5fb})a*DSujcOf@u>ULlN1tq1bK18lp+*PoQX2nEo?~`%o z4y`xJn!~_Qf~o1Y0b6N%UzGefn6pUi?_eAvFUinIgwYPL+PYMr<<9ros*F`6T=G;c zUdzjdOqCghbXhc}iS~OJ+ioROg~G$bt6NC~3y+G5a!@^WY8?Xu^0R`T`F3x?6=}X@ zt6oo17Ph~fn2P=7@=hIoSQ-x$aMzHjRR#aX=~*i_)3cgt8}1qMgF|ZXb;4^98XdPs znH1M^cY6$Z4uy%PS(Tb4U#iyk&mSUij-f-?L}p!fpm-pQCMy}JG7QZM-Pz^k4pv{> z?OUkT^`H)+_sj7Ui+ln!<7@D{9jko<5_m-Nwa8DWICq2T5kD@Oo$?^49hEuqT}d16 zh#khY8gExk-ig^UPxAS+{frNf^;%}$Mx1RC@FhND+5hUJ9w%)n7SF#lIz#*ESO1$@`nn;f~K9z6QBYc+ewC3G)0Yit;;meIor zd=wphF>D-3m&56N?Slt3HA5CN&i4iFMS}j_Sh1MZf)qd%j6i@Jat}z*n*xMtKLFv^ zHO+r6C5MeVXX%1bMDJBN*F~ydAZmYu;l*pCJJ2geaGc?%MYLl_W`Q8W3$$P+v@;n{ zY>X;rj$Z8ZRVW=h)MFg!F0dXW8e3%p)`J#|au|EVWxoq*q*bd`jrMIl)Bl$4Qr(RlQG}k*YA{~;wt&jqcyE{PHnevX8hw$tdH4I&$(g<=G!>=elI#gzC8mNO?VY{Ve>D&NqYNi62)EJ;3s66MtjEO0%fx!j zY>~t{VR>s)6s93csL;~CXXD~>#YBs2IMiF%>;MIP6M&qHoHJxayUt`eUh03ddYy

_+MDd0M9nea~V0UF3R$TV<2E!%eh)vIA8VvOm+pM-;A zVmM_*kvfp#Au zByzRsO<@gV#Fea)$?^2^`otT=^6j4I*dD?cHirkfAQQPo;vLys3Gg}W`aV(rlSg|G64#8QIAWq5pS#B@5$yWhEwN=When2PC0 zWPk5(wj34|XuGdrV$GCPZz45_qp_cEP&coSZ8OapQfr+s|T@s zrUD*@XIrO2#4V4s7$?GOt=gB&$9?jk1) zw13NXLVll6RNQ@%kcxh%#ie>#3k#E>dY6M%m#E)MF|VQwfnOf0IThx?>k7Xk%=_Y& z@`TDGj{0J7rVhoz$2j>iY3CSa?5L39NTqf^%`ZjTQR*=H%|Ux&kB-D)(>~T6xz!IN zuvoQtKiQYMIU(HeUhj^0{O|fW@QL}UL@%qL`EBiCKu`hM36%`#|U7f zCB5EdsBhfEIKBYb$+_WnE%PA@^V|!bCJ2d*l(?3XW56sV_jo5{`-1?6 z$uBaB?Rrgh5FDLjQaU4}N_E2gD_fkFt%H-Z!R?{|t?qZ34wGhpv2DT{pj112^kQmy zzNN7+Vp!losx*Rbtg_(dQ*QlNHjMqj1Z28osKNG2VaJ^VOLYcJF+HCBD_CZIG{|_V zi{YCRy$G1zR(JVQl3@91+8zUf@*Q)qf5xkEeYp((Mm5tyK7su3m>3zdkKGH5WntV< ziM!U62N3$c3|0?vkF@Tmq$&S!ped>)I!K6?4E6Lfn_=;U;>HSnkpbtX;192^f7-60 z^t6}N#;v3r_dPd)K<=Awo$%z7K`z?iyr=Q4ayCY=lp$+rJfmKzr-w}g{iyt4C^eQ0 z1p=sbbVkKC_VDqxep=Dv8t~Q9S}}2dJGtZe_GmA}iO$o!hU;*5opt5=4&|D`=ul1D zca0NC(V;E2CvDo5AD6_b_{4KqE0(n@?>*JeAdqFSLp?(ny%P-B$1Z_!*iGn`mITXs zV{uzJ3%J@1)v#(a0$vI|w>yiY6o&ZGImQaRg~q!F`*z`#?O;>yGaT8kwX%s$jKqhDm;)aJll#l$l%%*PjLE~zgfUs^l) z-F5PQnG1NDN1pRUbOsiv$ZwKn)E+Ug$=g`5LkJY_`-D=t-J=4_U|-KibiuEFDDMMipjPYvWadG!l3} zy}~W@8yihupkeMa2N*fYWRA6RmF06~`hhXJ2gcoRsmS0vNS3l2V(d_UkvkX+(f7tM zM)mJ6SId!m8Chc~l-;G6+UkuRMGpQD>k3JqAhK;8IFciNpOzGZB#K0HGRVckhKZd| z-_1gnM@~`)DOvEH?I;Sd&pqE`UH0mwyy~IsvbIsDIN-BXc%`@_vhQ{W1C2Z3voUV)FQacNk~YL&moIbhKC?!YA@NL@{Fwzm1;~-=SH{< z#oqjBP|)H+=Xfv+BjTp~HdrP)sM&${C=|Ab*F;BTRE#9nGC3qbmyoX5Oi|Oq9MPdT ze-|qpyZpgmRGdF;X?|s4iJh4qSugaCpO?*4La>*B9I|6|=J!J~u^Qy$AwtV=Wqdz} z!EH8}oOMNgYtUyJZum9q*DTU zskie~701SDGx9ujVx&tRp8s-cYHGN!h`b$t{>FI(u#`k#bPQ}(1O8#(w07L-Q`Kpk z9plYn6B@T}U?i^}VQ_h2O>Bm!*f%6Nw!d*#yRvgxe63+|CmU0gfPl3pwK=X}rc$eb zRzqd!$u$9hYE(S_vJZcszhc3>t$X7km1nbSUibd3uolV`5l^3TH(Y9Vw#uhsBu4rb zKEuhNHWt_g?6K|!$K*qJ#s#AoJW*MWBzmjAto*H_fb--moKR5c9#p<+BPVKOP6k8nz?2#_y z?|D{cF``;R&@~P#7}vbVL>j$|mLv7uh&Y@~=HV&R?BBaw~5uNT^8{iz$Q>v2*j$cxyLs>-F9 z6d0Kq>yHoZh>kC+)pt>UE3{OE;~S&3;)J!LIDkrF&A#GVJ_^KKFdU4o*KP+|7Uj0M zAWNa;2s&CWT1s6a7nzjFcT5j9*TE<*9qR>x0}rcul5i0I1-VG;jv%!65(gvcxe3X!HeK_SXAfjhC%P<^~p ziAp%gv~lA+_OO-~LBcwtIb4wlC0_U-jvT@%G3CO zZAj}I8WjRTN_Mif-9+27m|2+LRLzuo=ykyPi|;c;usaWU#^G{Y0$i~e&8+i0|E$Hn zwA{%vJ!b8xcr3TWraq&!x)O&Eej)hvLN3B;RY^SnOr{b8L$UCeqv@znk-EPYa}p~f zIPnr}QkW<1vXJ@GAE5A3%1rI53FirvOBUjNAxnd{;yr?^$lahg+D+nK4-yiR{^LF= z37~GC!R-$DwRSnW5;8WO^!sEvxK}=ng(AOQFs1K>1jv^`n^Q($G;&BURPjAU0WL#{ ze3L!IJ!3G0t7kx6%g>@#M+b<}D)&2dNr8m8prG&jiJ_zpcn8W}XRhe zHzU=TLd@v!JY^t(P4n@4(eH}ZDakI&Y8y_`61R}i<MqRIzY(0a9 zlS77dq)A>6dPADzSfq!j44gq}E^A1v_Kv zhimIf328=PHu5K*(}-7onkZdXWX2#GmjYD=z+Bj!p!#?xvgr{Y?GDJ7Wno<^v8UeX zz&7;cAgTg}LgeHNv5zmtIeZ;NZDS+3nPthYG0_*q!YD*CjCv=MI^tgABB2)JMmCW* zj6n9=QEytTKR65zyD_u38?O_SyX~;17+_Tw>l71?LhK#zBD zISfmslI@?QVkig{5r~Y`_($>_pk#?1-6i%pW_brs=h(c?1CVCn%6~>nb<%P z5QTAbF~W^n7PU75wjxkDr4|w9C>9!++K+dshoOOOw}*#E2ply98;}(($*@O_I1C-k zyQ^0-2usZ1XkLI-O6F&4a-h2irTCp!VF}0cG`2f(guf>jjuh3wDv*zSwr6 zO)FY8#l&l}Fn+?9Z%;Fl4jJ+F#s@JmQ5J^&((q}LfjR45nb>AGDNc#&%+?n=@y-PJ zl%lfaf%d%+Kds>MF%r6ge#s0UAM7>0dHMPBWTURi7)mG*`;3W&yI_gQ&V(B>0)dlc zY$U@m`0O2)W<4%SHhNGpvT(bWA^AyUOiYmu1;?I~8)`f_gt0Is5RnwjCyYMMh1tl) zaKrh)%>|t^XrZ}F5?9E#{n71EQQ)UO_HlIwX7y0-hq>cMnAUynidcBdN34h22tEJ7 zdU!f~O0i5x(bQB<*Wu@^R^GkTKvZd(fOCAVGPF=@T3zv^3aX(0>xGFdPK4?mBsuwB z|4Fp!i~}@)MD{=!v)zI`kjsTasnv2F)s*2A^g14G?F_$R(M6G_D`tcDvm)}SXT zeQY2<&gjES!ac7G+=xm6k?)a8f#cXN9Q*lH5R@9=QsOT4e+-9m33B5cqW%I6qi?4R zA*J+mEqmaV>(@Q)MbsS0y!M9>Aw?Dsfzqr-%bV3ol#p*&wX+V(`|JL#f3@m z|Kxf;DCh1D0V(?&n%O_53k-K`{A)*kp*arq;hra~-)jW=X1GvZ>?)f>Yu`Cd$NupR z8c^Du4x&NBZIg{Ohw=Szk>#dMA0aZ7hKEK%zc*B)pxfz^k+;i8$(vUfAa56D*dt5) z?)trjRg95j7UkvTuVw8A?j?%y(H#H$aW~ABY}!Ps1KEhJ z%;@WoL~a|VFZ)m0gS|xHL`t-KClEAf79HN&0XH2m_Q_@V%cmT|Y&7YiN5vI%^!rn{ z=hB`zPS?L$yk;qX&2_t$PcJV@X7+!5K~25kf5U43{|BdPWRmus|Iddp%UrgTZ!2*~ L=3vbJGk^XM=zSJL literal 0 HcmV?d00001 diff --git a/labworks/LW2/lab02_lib.py b/labworks/LW2/lab02_lib.py index ec90383..a0888ef 100644 --- a/labworks/LW2/lab02_lib.py +++ b/labworks/LW2/lab02_lib.py @@ -29,12 +29,14 @@ from pandas import DataFrame from sklearn.metrics import precision_score, recall_score, f1_score, confusion_matrix from tensorflow.keras.models import Sequential from tensorflow.keras.layers import Dense, Activation +from tensorflow.keras.callbacks import Callback visual = True verbose_show = False + # generate 2d classification dataset def datagen(x_c, y_c, n_samples, n_features): @@ -91,8 +93,27 @@ class EarlyStoppingOnValue(tensorflow.keras.callbacks.Callback): ) return monitor_value + +class VerboseEveryNEpochs(Callback): + def __init__(self, every_n_epochs=1000, verbose=1): + super().__init__() + self.every_n_epochs = every_n_epochs + self.verbose = verbose + + def on_epoch_end(self, epoch, logs=None): + if (epoch + 1) % self.every_n_epochs == 0: + if self.verbose: + print(f"\nEpoch {epoch + 1}/{self.params['epochs']}") + if logs: + log_str = ", ".join([f"{k}: {v:.4f}" for k, v in logs.items()]) + print(f" - {log_str}") + + #создание и обучение модели автокодировщика -def create_fit_save_ae(cl_train, ae_file, irefile, epohs, verbose_show, patience): +def create_fit_save_ae(cl_train, ae_file, irefile, epohs, verbose_show, patience, **kwargs): + verbose_every_n_epochs = kwargs.get('verbose_every_n_epochs', 1000) + early_stopping_delta = kwargs.get('early_stopping_delta', 0.001) + early_stopping_value = kwargs.get('early_stopping_value', 0.0001) size = cl_train.shape[1] #ans = '2' @@ -140,22 +161,28 @@ def create_fit_save_ae(cl_train, ae_file, irefile, epohs, verbose_show, patience optimizer = tensorflow.keras.optimizers.Adam(learning_rate=0.001, beta_1=0.9, beta_2=0.999, amsgrad=False) ae.compile(loss='mean_squared_error', optimizer=optimizer) - error_stop = 0.0001 epo = epohs - early_stopping_callback_on_error = EarlyStoppingOnValue(monitor='loss', baseline=error_stop) + + verbose = 1 if verbose_show else 0 + + early_stopping_callback_on_error = EarlyStoppingOnValue(monitor='loss', baseline=early_stopping_value) early_stopping_callback_on_improving = tensorflow.keras.callbacks.EarlyStopping(monitor='loss', - min_delta=0.0001, patience = patience, - verbose=1, mode='auto', + min_delta=early_stopping_delta, patience = patience, + verbose=verbose, mode='min', baseline=None, - restore_best_weights=False) + restore_best_weights=True) history_callback = tensorflow.keras.callbacks.History() - verbose = 1 if verbose_show else 0 + history_object = ae.fit(cl_train, cl_train, batch_size=cl_train.shape[0], epochs=epo, - callbacks=[early_stopping_callback_on_error, history_callback, - early_stopping_callback_on_improving], + callbacks=[ + early_stopping_callback_on_error, + history_callback, + early_stopping_callback_on_improving, + VerboseEveryNEpochs(every_n_epochs=verbose_every_n_epochs), + ], verbose=verbose) ae_trainned = ae ae_pred = ae_trainned.predict(cl_train) @@ -538,4 +565,4 @@ def ire_plot(title, IRE_test, IREth, ae_name): plt.gcf().savefig('out/IRE_' + title + ae_name + '.png') plt.show() - return \ No newline at end of file + return diff --git a/labworks/LW2/report.md b/labworks/LW2/report.md new file mode 100644 index 0000000..c43974a --- /dev/null +++ b/labworks/LW2/report.md @@ -0,0 +1,675 @@ +# Отчет по ЛР2 + +Коновалова Алёна, Ильинцева Любовь, А-01-22 + +## Задание 1 + +## 1. Импорт необходимых библиотек и модулей + + +```py +import os +os.chdir('/content/drive/MyDrive/Colab Notebooks/is_lab2') +``` + +```py +# импорт модулей +import numpy as np +import lab02_lib as lib +``` + +## 2. Генерация индивидуального набора двумерных данных + +Сгенерируем индивидуальный набор двумерных данных в пространстве признаков с координатами центра (k, k), где k – номер бригады, равный 8 в нашем случае. + + +```py +data = lib.datagen(8, 8, 1000, 2) +``` + +**Вывод:** +![Training set](train_set.png) + + +Выведем данные и размерность + +```py +print('Исходные данные:') +print(data) +print('Размерность данных:') +print(data.shape) +``` + +**Вывод:** +```bash +Исходные данные: +[[8.14457288 7.96648176] + [8.16064924 7.98620341] + [7.93127504 7.92863959] + ... + [7.95464881 7.94307035] + [8.01092703 7.90530753] + [7.81962108 7.93563874]] +Размерность данных: +(1000, 2) +``` + +## 3. Создание и обучение автокодировщика АЕ1 + +Создадим автокодировщик простой архитектуры. Обучим автокодировщик в течение 1000 эпох с параметром patience = 300. Добавим 1 скрытый слой с 5 нейронами, т.к. нам нужно добиться, чтобы MSE_stop была не меньше 1-10. + +```py +patience = 300 +ae1_trained, IRE1, IREth1 = lib.create_fit_save_ae(data,'out/AE1.h5','out/AE1_ire_th.txt', 1000, True, patience) +``` + +**Вывод:** +```bash +... +Epoch 1000/1000 - loss: 3.7394 +``` + +Ошибка MSE_stop равна **3.7394**, что является удовлетворительным. + +Пороговое значение ошибки реконструкции IREth1 - **3.07** + +## 4. Построение графика ошибки реконструкции для AE1 + + +```py +lib.ire_plot('training', IRE1, IREth1, 'AE1') +``` +**Вывод:** + +![IRE for training set AE1](IRE_trainingAE1.png) + +Из графика видим, что нейросеть обучена оптимально и порог обнаружения аномалий адекватно описывает границу области генеральной совокупности исследуемых данных. + + +## 5. Создание и обучение автокодировщика АЕ1 + +Создадим автокодировщик с более сложной архитектурой. Будем обучать в течение 2700 эпох с параметром patience = 500. Добавим 5 скрытых слоев с архитектурой 4-3-2-3-4 нейронов на каждом слое. В случае с автокодировщиком АЕ2 нам нужно добиться ошибки MSE_stop не меньше 0.01. + +```py +patience = 500 +ae2_trained, IRE2, IREth2 = lib.create_fit_save_ae(data,'out/AE2.h5','out/AE2_ire_th.txt', 2700, True, patience) +``` + +**Вывод:** +```bash +... +Epoch 2700/2700 - loss: 0.0114 +``` +Ошибка MSE_stop равна **0.0114**, мы сумели достичь результата, близкого к идеалу. + +Пороговое значение ошибки реконструкции IREth2 - **0.4** + +## 6. Построение графика ошибки реконструкции для AE2 + +```py +lib.ire_plot('training', IRE2, IREth2, 'AE2') +``` + +**Вывод:** + +![IRE for training set AE2](IRE_trainingAE2.png) + +Из графика также видим, что нейросеть обучена хорошо и порог обнаружения аномалий не завышен относительно средних значений ошибки. + + +## 7. Расчет характеристик качества обучения EDCA + +Рассчитаем характеристики для АЕ1 и АЕ2. Визуализируем области пространства признаков, распознаваемые автокодировщиками АЕ1 и АЕ2. + +### 7.1. AE1 + +```py +numb_square = 20 +xx, yy, Z1 = lib.square_calc(numb_square, data, ae1_trained, IREth1, '1', True) +``` + +**Вывод:** + +![Class boundary AE1](AE1_train_def.png) + +```bash +amount: 19 +amount_ae: 280 +``` + +![Xt Xd AE1](XtXd_1.png) + +![Xt Xd metrics AE1](XtXd_1_metrics.png) + +```bash +Оценка качества AE1 +IDEAL = 0. Excess: 13.736842105263158 +IDEAL = 0. Deficit: 0.0 +IDEAL = 1. Coating: 1.0 +summa: 1.0 +IDEAL = 1. Extrapolation precision (Approx): 0.06785714285714287 +``` + +### 7.2. AE2 + +```py +numb_square = 20 +xx, yy, Z2 = lib.square_calc(numb_square, data, ae2_trained, IREth2, '2', True) +``` + +**Вывод:** + +![Class boundary AE2](AE2_train_def.png) + +```bash +amount: 19 +amount_ae: 30 +``` + +![Xt Xd AE2](XtXd_2.png) + +![Xt Xd metrics AE2](XtXd_2_metrics.png) + +```bash +Оценка качества AE2 +IDEAL = 0. Excess: 0.5789473684210527 +IDEAL = 0. Deficit: 0.0 +IDEAL = 1. Coating: 1.0 +summa: 1.0 +IDEAL = 1. Extrapolation precision (Approx): 0.6333333333333334 +``` + + +### 7.3. Сравнение характеристик качества обучения и областей аппроксимации + +```py +lib.plot2in1(data, xx, yy, Z1, Z2) +``` +**Вывод:** + +![Class boundary AE2](AE1_AE2_train_def.png) + +По результатам подсчетов характеристик качества обучения EDCA, можно сделать вывод о непригодности автокодировщика АЕ1. Значение Excess = 13.74 значительно превышает идеальный показатель 0. АЕ1 считает нормой данные, которые находятся в 14 раз за пределами реального распределения обучающей выборки. Низкое значение Approx = 0.07 подтверждает плохую аппроксимацию исходных данных. Такой автокодировщик будет пропускать большинство аномалий и не может быть рекомендован для практического применения. + +Автокодировщик АЕ2 показывает более высокие результаты. Значение Excess = 0.58 близко к идеальному, что указывает на точное определение границ нормального класса. Approx = 0.63 демонстрирует хорошую точность аппроксимации исходных данных. Данный автокодировщик пригоден для решения практических задач обнаружения аномалий. + +## 8. Создание тестовой выборки + +Нужно создать тестовую выборку, состояющую, как минимум, из 4 элементов, не входящих в обучающую выборку. Элементы должны быть такими, чтобы AE1 распознавал их как норму, а AE2 детектировал как аномалии. + +Подберем 6 точек. Условие, чтобы точка не попала в обучающую выборку: + +```py +(x < 7.7 or x > 8.3) or (y < 7.7 or y > 8.3) +``` + +Поскольку центр располагается в точке (8;8) и в функции для генерации датасета используется правило 3σ, где параметр cluster_std = 0.1, то точки за пределами 7.7 и 8.3 не входят в обучающую выборку с вероятностью 99.7%. + + +Запишем точки в массив и сохраним в файл. + +```py +test_points = np.array([ + [8.5, 8.5], + [7.5, 7.5], + [8.4, 7.6], + [7.6, 8.4], + [8.45, 7.55], + [7.55, 8.45] +]) + +np.savetxt('data_test.txt', test_points) + +``` + + +## 9. Тестирование автокодировщиков АЕ1 и АЕ2 + + +Загрузим тестовый набор. + +```py +data_test = np.loadtxt('data_test.txt', dtype=float) +``` + +Проведем тестирование первого автокодировщика. + +```py +predicted_labels1, ire1 = lib.predict_ae(ae1_trained, data_test, IREth1) + +lib.anomaly_detection_ae(predicted_labels1, ire1, IREth1) +lib.ire_plot('test', ire1, IREth1, 'AE1') +``` + +**Вывод:** + + +```bash +i Labels IRE IREth +0 [1.] [3.43] 3.07 +1 [0.] [2.03] 3.07 +2 [0.] [2.71] 3.07 +3 [0.] [2.85] 3.07 +4 [0.] [2.72] 3.07 +5 [0.] [2.88] 3.07 +Обнаружено 1.0 аномалий +``` + +![IRE for test set AE1](IRE_testAE1.png) + +Условие выполнено - 5 точек АЕ1 распознал как норму и лишь одну точку определил как аномалию. Данный автокодировщик плохо справляется с распознаванием аномалий. + + + +Проведем тестирование второго автокодировщика. + +```py +predicted_labels2, ire2 = lib.predict_ae(ae2_trained, data_test, IREth2) + +lib.anomaly_detection_ae(predicted_labels2, ire2, IREth2) +lib.ire_plot('test', ire2, IREth2, 'AE2') +``` + +```bash +i Labels IRE IREth +0 [1.] [0.75] 0.4 +1 [1.] [0.66] 0.4 +2 [1.] [0.55] 0.4 +3 [1.] [0.58] 0.4 +4 [1.] [0.62] 0.4 +5 [1.] [0.65] 0.4 +Обнаружено 6.0 аномалий +``` + +![IRE for test set AE2](IRE_testAE2.png) + +Мы видим, что условие также выполнено - все точки являются аномальными. + + +## 10. Визуализация элементов обучающей и тестовой выборки в областях пространства признаков + +Построим области аппроксимации и точки тестового набора + +```py +lib.plot2in1_anomaly(data, xx, yy, Z1, Z2, data_test) +``` + +![](AE1_AE2_train_def_anomalies.png) + + +## 11. Результаты исследования + +Занесем результаты исследования в таблицу: + +| Параметр | AE1 | AE2 | +|----------|-----|-----| +| **Количество скрытых слоев** | 1 | 5 | +| **Количество нейронов в скрытых слоях** | 5 | 4-3-2-3-4 | +| **Количество эпох обучения** | 1000 | 2700 | +| **Ошибка MSE_stop** | 3.7394 | 0.0114 | +| **Порог ошибки реконструкции** | 3.07 | 0.4 | +| **Значение показателя Excess** | 13.7368 | 0.5789 | +| **Значение показателя Approx** | 0.0679 | 0.6333 | +| **Количество обнаруженных аномалий** | 1 | 6 | + + +## 12. Общие выводы + + +На основе проведенного исследования автокодировщиков AE1 и AE2 были определены ключевые требования для эффективного обнаружения аномалий: + +**1. Данные для обучения** должны быть репрезентативными и не содержать аномалий. Объем выборки должен быть достаточным для покрытия всей области нормального поведения объектов. + +**2. Архитектура автокодировщика** должна иметь не менее 3-5 скрытых слоев с симметричной структурой, обеспечивающей плавное сжатие и восстановление данных. Простые архитектуры, как у AE1 (1 слой), не способны качественно выявлять аномалии. + +**3. Количество эпох обучения** должно составлять не менее 2000-3000 для достижения удовлетворительного качества. Короткое обучение (1000 эпох у AE1) приводит к недообучению и низкой эффективности. + +**4. Ошибка MSE_stop** должна находиться в диапазоне 0.01-0.05. Высокие значения ошибки (3.74 у AE1) свидетельствуют о непригодности модели для обнаружения аномалий. + +**5. Порог обнаружения аномалий** должен быть строгим (0.3-0.5) для минимизации ложных пропусков. Завышенный порог (3.07 у AE1) приводит к некорректной классификации аномальных объектов как нормальных. + +**6. Характеристики EDCA** должны быть близки к идеальным значениям: Excess → 0, Approx → 1. Значения AE2 (Excess=0.58, Approx=0.63) демонстрируют удовлетворительное качество, в то время как показатели AE1 (Excess=13.74, Approx=0.07) указывают на полную непригодность для практического применения. + +Таким образом, для надежного обнаружения аномалий необходимо использовать сложные архитектуры автокодировщиков с продолжительным обучением и контролем качества через метрики EDCA. + + +## Задание 2 + + +## 1. Описание набора реальных данных + +Номер бригады k = 8. Следовательно, наш набор реальных данных - WBC. + +```bash +N = k mod 3 +``` +Он представляет из себя 378 примеров с 30 признаками, где из 378 примеров 357 являются нормальными и относятся к доброкачественному классу, 21 - аномалиями и относятся к злокачественному классу. + + +## 2. Загрузка обучающей выборки + +```py +train = np.loadtxt('WBC_train.txt', dtype=float) +``` + +## 3. Вывод полученных данных и их размерность + +```py +print('Исходные данные:') +print(train) +print('Размерность данных:') +print(train.shape) +``` + +**Вывод:** + +```bash +Исходные данные: +[[3.1042643e-01 1.5725397e-01 3.0177597e-01 ... 4.4261168e-01 + 2.7833629e-01 1.1511216e-01] + [2.8865540e-01 2.0290835e-01 2.8912998e-01 ... 2.5027491e-01 + 3.1914055e-01 1.7571822e-01] + [1.1940934e-01 9.2323301e-02 1.1436666e-01 ... 2.1398625e-01 + 1.7445299e-01 1.4882592e-01] + ... + [3.3456387e-01 5.8978695e-01 3.2886463e-01 ... 3.6013746e-01 + 1.3502858e-01 1.8476978e-01] + [1.9967817e-01 6.6486304e-01 1.8575081e-01 ... 0.0000000e+00 + 1.9712202e-04 2.6301981e-02] + [3.6868759e-02 5.0152181e-01 2.8539838e-02 ... 0.0000000e+00 + 2.5744136e-01 1.0068215e-01]] +Размерность данных: +(357, 30) +``` + + +## 4. Создание и обучение автокодировщика АЕ3 + +Для начала попробуем обучить автокодировщик при минимально возможных параметрах и посмотреть на порог ошибки реконструкции. То есть будем обучать в течение 50000 эпох с параметром patience = 5000, с 9 скрытыми слоями и архиектурой 15-13-11-9-7-9-11-13-15 + + +```py +patience = 5000 +ae3_trained, IRE3, IREth3 = lib.create_fit_save_ae(train,'out/AE3.h5','out/AE3_ire_th.txt', 50000, False, patience) +lib.ire_plot('training', IRE3, IREth3, 'AE3') +``` + +**Вывод:** + +```bash +Задать архитектуру автокодировщиков или использовать архитектуру по умолчанию? (1/2): 1 +Задайте количество скрытых слоёв (нечетное число) : 9 +Задайте архитектуру скрытых слоёв автокодировщика, например, в виде 3 1 3 : 15 13 11 9 7 9 11 13 15 + +Epoch 1000/50000 + - loss: 0.0020 + +Epoch 2000/50000 + - loss: 0.0013 + +Epoch 3000/50000 + - loss: 0.0012 + +Epoch 4000/50000 + - loss: 0.0012 + +Epoch 5000/50000 + - loss: 0.0011 + +Epoch 6000/50000 + - loss: 0.0010 +``` +MSE_stop = **0.001** + + +## 5. График ошибки реконструкции + +Построим график ошибки реконструкции и выведем порог ошибки реконструкции. + + +![IRE for training set. AE3](IRE_trainingAE3_min.png) + + +IREth3 = **0.84** + + +## 6. Вывод о пригодности обученного автокодировщика + +Обученный автокодировщик демонстрирует удовлетворительные результаты для обнаружения аномалий. Модель со архитектурой 15-13-11-9-7-9-11-13-15 успешно прошла обучение, достигнув MSE = 0.001 за 6000 эпох. Стабильное снижение функции потерь свидетельствует о корректной работе алгоритма. + +Установленный порог IREth = 0.84 является разумным для разделения нормальных и аномальных образцов. Узкое горлышко из 7 нейронов обеспечивает необходимое сжатие данных для выделения ключевых признаков. + +Модель можно считать пригодной для практического использования при условии, что тестирование подтвердит достижение целевых 70% обнаружения аномалий. + + +## 7. Загрузка тестовой выборки + + +```py +test = np.loadtxt('WBC_test.txt', dtype=float) +``` + +```py +print('Исходные данные:') +print(test) +print('Размерность данных:') +print(test.shape) +``` + + +**Вывод:** + +```bash +Исходные данные: +[[0.18784609 0.3936422 0.19425057 0.09654295 0.632572 0.31415251 + 0.24461106 0.28175944 0.42171717 0.3946925 0.04530147 0.23598833 + 0.05018141 0.01899148 0.21589557 0.11557064 0.0655303 0.19643872 + 0.08003602 0.07411246 0.17467094 0.62153518 0.18332586 0.08081007 + 0.79066235 0.23528442 0.32132588 0.48934708 0.2757737 0.26905418] + [0.71129727 0.41224214 0.71460162 0.56776246 0.48451747 0.53990553 + 0.57357076 0.74602386 0.38585859 0.24094356 0.3246424 0.07507514 + 0.32059558 0.23047901 0.0769963 0.19495599 0.09030303 0.27865126 + 0.10269038 0.10023078 0.70188545 0.36727079 0.72010558 0.50181872 + 0.38453411 0.35044775 0.3798722 0.83573883 0.23181549 0.20136429] + .............. + [0.32367836 0.49983091 0.33542948 0.1918982 0.57389185 0.45616833 + 0.31794752 0.33593439 0.61363636 0.47198821 0.13166757 0.25808876 + 0.10446214 0.06023183 0.27082979 0.27268904 0.08777778 0.30611858 + 0.23158102 0.21074997 0.28744219 0.5575693 0.27685642 0.14815179 + 0.71471967 0.35830641 0.27004792 0.52268041 0.41119653 0.41492851]] +Размерность данных: +(21, 30) +``` + + +## 8. Тестирование обученного автокодировщика + + +```py +predicted_labels3, ire3 = lib.predict_ae(ae3_trained, test, IREth3) + +lib.anomaly_detection_ae(predicted_labels3, ire3, IREth3) +lib.ire_plot('test', ire3, IREth3, 'AE3') +``` + +**Вывод:** + +```bash +i Labels IRE IREth +0 [0.] [0.27] 0.84 +1 [0.] [0.8] 0.84 +2 [0.] [0.32] 0.84 +3 [0.] [0.53] 0.84 +4 [0.] [0.55] 0.84 +5 [0.] [0.68] 0.84 +6 [0.] [0.53] 0.84 +7 [1.] [0.95] 0.84 +8 [0.] [0.31] 0.84 +9 [0.] [0.47] 0.84 +10 [0.] [0.44] 0.84 +11 [1.] [1.07] 0.84 +12 [0.] [0.25] 0.84 +13 [0.] [0.45] 0.84 +14 [0.] [0.27] 0.84 +15 [0.] [0.58] 0.84 +16 [0.] [0.53] 0.84 +17 [0.] [0.27] 0.84 +18 [1.] [1.29] 0.84 +19 [1.] [0.93] 0.84 +20 [0.] [0.24] 0.84 +Обнаружено 4.0 аномалий +``` + +![IRE for test set. AE3](IRE_testAE3_min.png) + +При текущих параметрах было достигнуто лишь 19% выявленных аномалий, что свидетельствует о непригодности данного автокодировщика. + + +## 9. Подбор подходящих параметров + + +Мы провели несколько тестов и путем подбора пришли к архитектуре, удовлетворяющей условие пригодности автокодировщика - не менее 70% выявления аномалий. + +Для этого мы установили параметр early_stopping_delta = 0.00001 и увеличили параметр patience до 20000. Однако критерием останова в нашем случае являлся параметр early_stopping_value, который мы также изменили до 0.00007. +Количество эпох мы оставили прежним - 50000. + +Помимо этого, мы установили оптимальную архитектуру - 9 скрытых слоев с 24-22-20-17-15-17-20-22-24 нейронами. + + +```py +patience = 20000 +ae3_trained, IRE3, IREth3 = lib.create_fit_save_ae(train,'out/AE3.h5','out/AE3_ire_th.txt', 50000, False, patience, early_stopping_delta = 0.00001, early_stopping_value = 0.00007) + +lib.ire_plot('training', IRE3, IREth3, 'AE3') +``` + +**Вывод:** + +```bash +Задать архитектуру автокодировщиков или использовать архитектуру по умолчанию? (1/2): 1 +Задайте количество скрытых слоёв (нечетное число) : 9 +Задайте архитектуру скрытых слоёв автокодировщика, например, в виде 3 1 3 : 24 22 20 17 15 17 20 22 24 + +Epoch 1000/50000 + - loss: 0.000864 + +Epoch 2000/50000 + - loss: 0.000545 + +Epoch 3000/50000 + - loss: 0.000415 + +Epoch 4000/50000 + - loss: 0.000303 + +Epoch 5000/50000 + - loss: 0.000226 + +Epoch 6000/50000 + - loss: 0.000217 + +Epoch 7000/50000 + - loss: 0.000207 + +Epoch 8000/50000 + - loss: 0.000186 + +Epoch 9000/50000 + - loss: 0.000167 + +Epoch 10000/50000 + - loss: 0.000113 + +Epoch 11000/50000 + - loss: 0.000102 + +Epoch 12000/50000 + - loss: 0.000095 + +Epoch 13000/50000 + - loss: 0.000090 + +Epoch 14000/50000 + - loss: 0.000088 + +Epoch 15000/50000 + - loss: 0.000086 + +Epoch 16000/50000 + - loss: 0.000079 + +Epoch 17000/50000 + - loss: 0.000078 +``` + +![](IRE_trainingAE3_ideal2.png) + +Пороговое значение IREth3 = 0.11 является оптимальным, т.к. позволяет обнаруживать даже слабые аномалии, при этом сам по себе не слишком строгий. + +```py +predicted_labels3, ire3 = lib.predict_ae(ae3_trained, test, IREth3) + +lib.anomaly_detection_ae(predicted_labels3, ire3, IREth3) +lib.ire_plot('test', ire3, IREth3, 'AE3') + +i Labels IRE IREth +0 [0.] [0.1] 0.11 +1 [1.] [0.5] 0.11 +2 [0.] [0.05] 0.11 +3 [1.] [0.15] 0.11 +4 [1.] [0.27] 0.11 +5 [1.] [0.39] 0.11 +6 [1.] [0.16] 0.11 +7 [1.] [0.61] 0.11 +8 [0.] [0.07] 0.11 +9 [1.] [0.21] 0.11 +10 [1.] [0.22] 0.11 +11 [1.] [0.57] 0.11 +12 [0.] [0.11] 0.11 +13 [1.] [0.21] 0.11 +14 [1.] [0.12] 0.11 +15 [1.] [0.32] 0.11 +16 [1.] [0.29] 0.11 +17 [0.] [0.1] 0.11 +18 [1.] [0.87] 0.11 +19 [1.] [0.52] 0.11 +20 [0.] [0.11] 0.11 +Обнаружено 15.0 аномалий +``` + +![](IRE_testAE3_ideal2.png) + + +Тестирование модели продемонстрировало превосходные результаты - обнаружено 15 из 21 аномалий, что соответствует 71.4% точности и превышает целевую метрику в 70%. + + +## 10. Результаты исследования + +Занесем результаты исследования в таблицу: + + +| **Dataset name** | WBC | +| **Количество скрытых слоев** | 9 | +| **Количество нейронов в скрытых слоях** | 24-22-20-17-15-17-20-22-24 | +| **Количество эпох обучения** | 50000 | +| **Ошибка MSE_stop** | 0.000078 | +| **Порог ошибки реконструкции** | 0.11 | +| **% обнаруженных аномалий** | 71.4 | + + +## 11. Общие выводы + + +На основе проведенного исследования автокодировщиков AE1 и AE2 были определены ключевые требования для эффективного обнаружения аномалий: + +**1. Данные для обучения** должны быть тщательно отобраны и содержать только репрезентативные нормальные образцы. Для 30-мерного пространства признаков объем выборки должен составлять не менее 300-500 объектов для адекватного покрытия области нормального поведения. + +**2. Архитектура автокодировщика** должна иметь глубокую симметричную структуру с 7-9 скрытыми слоями. Оптимальная конфигурация 24-22-20-17-15-17-20-22-24 нейронов обеспечивает плавное сжатие 30-мерного пространства до 15 нейронов в горлышке с последующим восстановлением, что позволяет эффективно выделять существенные признаки. + +**3. Количество эпох обучения** должно составлять не менее 15000-20000 для достижения высокого качества реконструкции. Продолжительное обучение необходимо для сложных высокоразмерных данных. + +**4. Ошибка MSE_stop** должна достигать значений 0.00007-0.0001. Столь низкий порог обусловлен высокой размерностью данных и необходимостью точной реконструкции многочисленных признаков. + +**5. Порог обнаружения аномалий** должен быть строгим (0.1-0.15) для надежного выявления аномалий в сложном многомерном пространстве. Низкое значение IREth компенсирует высокую размерность данных и обеспечивает чувствительность к слабым отклонениям. + +Таким образом, для качественного обнаружения аномалий в высокоразмерных данных необходимы глубокие архитектуры автокодировщиков с продолжительным обучением до достижения экстремально низких значений ошибки реконструкции. diff --git a/labworks/LW2/train_set.png b/labworks/LW2/train_set.png new file mode 100644 index 0000000000000000000000000000000000000000..4590d89658f81be9631e9fbcf07646bcffc23718 GIT binary patch literal 44722 zcmeEubySpn*X|&t(xM@K70uHkIu?rG*~2~#$6f9~My?qK_j&co8x&DPn8kLx}U7Y_%W zjl27EH(_pW$NzYO%h}bMJI+vja`VS*tBF`2EE2WW_meTY}+nNnb zqS8uVyBJnt=DQ|grHOA!cY7_WcR(@-?s-f1s`%U6j}t6-df58Q`gL?AEhdX`u$KhM z-($$M&-$86KdVgKQu%50NK(>`KU^Y;R+cyR+O?OaFXa}ZDZaNU<>ny*Z}MvxX^b05 zsA#2YpaaB)MSBn2J=2BZ8}8|MrWlu>B<-Q&gZ{Gkuju~$G(w5N@%NL>`~N@O|3AA+Tljxq zD3VyKnSrfJnc`xj_GO53A6pw6H3K?ey;PSL?V9u9!`+eLuJ?DUxC(!3m*_Kk&UsrS zJHc|{Ssx6!605kdz{70pI;F*b&|wm1A4K3ZbA5SC_M7DHZ@H7c~4rt$l< zEZ~scdnsD3OKhjsdYER?I@AA(v-Qs}Z=(B{>3PjMu#$OR^z(p4WF}+hJ`neH?$Pxo) zXr2dxf{NDGd7=j+j~Dw8E{n3q{fINgE6LV zUu~10PGDieVELhC=Kzt6e9(szmOC>IuHf|g!CCPMr~ks0`14|`Za%W$JeYoPkFdBZmx|6NR*85&? zjzuF^sX(t5n2gYN^_a!;=W4CLLb-dOEjM}YCg9R|NzQpK64*LA-Xe)MaB7e#Z8_2x z+AOYG`WVg?qhsQ)wbQuCB?Rtmc|9*P0oA-Jwl`iDpmlP3x=a-KCuGK@o0^`!az5a6 zoC6$$n!=spJqTix)oWbU!%aJnjv~}%9v$*QEIAOSN zH&JS|H{&+k3!XP7A+fc$kL4SB_?RZ(kC_nqV63RMwysXc$HymIm*eg09yy7Vr$Q@9 z<`#z=w>p9N}ndZ_r4b}L^ghJBi zXR8tuX&KjGFk*6zs~BK+c1}(ScwF_SGmAqDkxHGdsA z`7BBb5XZ8(s9k&Rj(+?0VCOfdL2VEJgdqcDZte$ilkXwLVP6-&dtAH4J7l)>Fet+b=`4} zdse{$d01YCk3#F&GIxJZ&yztE=gsRGk%|4w(k6Gl2_lY_g)YwammxSfTVj@oW-qOO zbYF>t1mGy-fBoY+CY&OkJ8{@}WIgAnyWHH(zk-X6nzY4%dG!D6 z4408!f>7`*^I|`6sj#Rt260k^h(RAstF8=ZX1d=3C@(Di_Zo1io(GBkYQx-9y*N;H z9ps~!6(ndqyw9lJDk?l=MXvmMLr zWfuQ^?RXl2p8mROF~Q?D@A(0ALVy2GN$pLg8i3~?FVbGHobDnJ4<0A zXu0vNVD$TwQWYAKwqRGt4lSpu!AS#9fWg$PjeXV`g+L&z;=;KB{H1RjadA%n3{J(# z$w`q2We>0@PfScqUdO5GufJLL!eC@^Re1!p)z!q1(ZgWbuPhz*!ry#=KEq)D8W#gOl@ez^i1w!J%l^p$9#^~;QLppdHKw4VibEo` zgLR%50#K>0t?gS_$l98165RX=trbR37Zmz!60f$ZUSRZD9lz7x{KASpD0CpoKeT!T z2|d*2@b76v(2F673%_J>f1m6LW8kC~_b!u-caLCrYWe>qX#*$xFWR;TU|Le&z#s>K zFagNfg+`})&P9_Odr1*WoIM9XrjEm?Gz5qVd%(pHqCl2N(Y@C*p7Z{%Q1zYE{r(nIyW#=1ZOK+Gn^1VtXD0Knrg93biBYg969^g9b zTU&7;6xbLZ3p&lP02&v_3WXIAT`u;xFK&1ll>lc}fdCE)kd~v_@~&$i!ulZQhDM`r z4I4DL=J>5Wrj6;1W$r(nLx~HWZdEPkBpMgye?Hut=nv;^eJISyw~=BB?GuKMeuZJN za5!O-*x_6@9u$6a<8A8oFux;f7@Q2<>nINd=p^-0FIvC6{%+}@9XP3=)beR ze(4m*Vm$^xUGn5;5rCx1UR?YP=k9~ZAQa2xsz#-y8yg#!>K7woL4Y-A-HR{lDagxU z3!`#2T<~OfYiT3XPV+4Z}w zIYssyHscf4=vGU`TFbqk1J#u+zq{`6S`Sg#+S*3nac+JJ06;0_fqaI~2J7)&B7y^K znt#4djm1mcm@ARg-%)M;Y(;SSY=1ZrI?79SQ(FJ?dc$_@^b#=5cq*T@54^m*^iU>f z_8Dh*uY3qF4;btlGYBc~)#bDEtj~6HVqU8{$g=-mW`mm6eefGFn9^Nor<>R5sj1D$ z&35MD*49))d>N2S?lkQV6+XFjJv7)4gyKYCHNDWDzIN9+&vV@oaL7MC0f`?-w@baY z);>ihbalysSag%bzT)W72RcDO4(kWXK%@hy|H;}ea4F|3+j!VU>W)4A6}|hGlYlgU zs1wCLJ4^5Ah`gAdDxOz%>A1%Hmu&4e?^{e(T0$<|BPYH`lB4nGXCq*lmLL*b^2L)0 z1XtaxM=He50bk5dDFf+2Alq1;YGUA7cVL|FPJd0``OKq+>sb9xlMV7hd2lWuC8RE~VI)MnjO{3gS^uxA@V0C~K|c%6P3S^@-q) zKo20K%OIG?Lwpa)Zb6R6zZ>HPVTWyAI@85*<^?O1*ZLn#%0&pR+@35q3-McGpr!Di zi(yo>SQ$vZJQ)JP89I9Uv0UX?RllF4dvzeQ`83=F((7e_z|ptZwR@;NXYN8MZ+U)p z+`IJi{1Cc20pp0U<`t*y{(j5P&%-_)x?V z7jo*BOV&C}(hrNF43RRwrBg9C6bmdYjT;Dv_#WaqcvyX;uC7F2VZk)UDZ@JalH394t_Nh6+;UVd zFPi}>yMkGsXlTUxtt*=JHQK;<3Y(@=1ip`bUZDE*Y!4iM&1+fCf^lGO!vm|VUIt0kVL4KwL|4WrL znKiLrj~oLYTzkp&tQY`&x;1AMWdYbAMIzQ=hm$=v+2>0_#6Z&aXoE>5jRkPO(fN5* zEBqTeT!|3r0VKc@$VhtRm%vAi;dxh@Y3|}2)xR^_bSXDLJPi;^NCMk@c2^ES6QFE5 zkQh-?Hx~o4^?RH2mvhhqqNY?`T@B(G09Gbo6GQb6da5A$y%hCWcKVV+w}}ErN(P__ z!BmScN})irukm5ehesdUs-+-!>A?W-G6N>O#tZ!u1~cLKN%;5E|9MfluL6Yk31i<9 zs(?Q~c)j;5pcHLPSx~;g@W_8KS2=a*3#n=xL=AwH!ck>47$dS%&(NuU$@5{FDN%5Y zs5HoQK;lBvfSU8osjAWlIGvvF!zMSRD=8^)?YyPq)oKNlz<5Y3vl`Ce1n^Sk0GJ3@ z>z`+nfJrXzXI}XA`TpG^-Kbh=LImcg^njCfh+OvWE%(dOitG>YS?(?MR=O_twe60L zk26ApKs5A4h6E1}G!eK|ZjfGl=qG>%lDz%y@qQ%hOCb*krOYG6n5JtTNlBvT(L0`% zwqs1mBA!kQC@&~?`rS>NDCD+sPfO`?1wn;LkCMz46F8!QrzP{-C)~V_4RT%Ae$Kj{ zRdG~9N|_i)Y?eU^8xIuB1^{!*K(*TQ-vLw}pO7%(T%3m|EBoy4Zs@VfUAIAon@EdZ zldH5FXM@P3b%wWWY4e^!vM{_b4Y;qC$!WOB*`qn1P0mZ*0h${M-Sg<#d2ex4?X*+u z9jE%cZvYBFf2IV*qClKW;n1s;=4#ri{Mzl*dTgZ!Sf;~lBmb{cNL+%HS9ueY%+>i8 z-g0n@T{Gs;PbJxOG1)JA+WIO0(SBlXzRYV4&{kGf_EF0)P)B5f`bq$C1`fdxPXav; z%Obm?D6vN`7L{CkHsaEhrzCzE`K-joMnXU&JfC)A%Xx&vE(Lx6^4*h zHtY>ZxFyi&J|QCCz3YMW0!SlJO5%}%Xgy$w5W}^u_^0er`~v$h$@h{rJ|SHkIkPWD z-@IHuj85d=lcm4k{cqCA|AQr*e778RBqKOR;mdlDWctP?>H5~qWS;hux-#y~8yK*K zzf~W#yvD|^U~PYYYGDeD(HR*P>mfVy7_gCRmxZD%!dp=MMNZ2C<3ZERd@dEfJGJ83Pf`nNWTgz3EVaX31#EmAZ*wO zSvVf1q;QhJRRFPI;GhIu!`t9=f}rI{Dspf^XW0gowX!(L$RTj0qvyT539{vdZezoG zP5OPPD41_;0Zk+K>+&DY|Mf}VQphP*1m?&1x9lY?on5AyU8P~sfwei`+FGoL1q%xO zTm2#-S>K?<(?2}agZ78{_xWti8|&*7sp4zr)UY6qzezP+Xz&xcu*0$ma9|d1{^Q60 z-6;@4X(sgNV`EP`S=pH)a9eO+p%WmDDFY^CI+CFeUoh`jT!lTk0-f%{o6uAY>GpJd z446C}IHjO4AHumPF$_Ak%V(}b&rn^x{6_fSzS$7-dVGWxR9_!^7e;q&CX^T!%hu8V|>Lh5l_& z*wp>IZO^W2U`k=}VZee&FAdHn+>{B3(2&uQm5A4Gn?fFWRzF>PdwJ=^#A9~Ep zJ2sz2Ze1>!jxKjx5_^a6`s`QP51*jw?NB3ePvU<^oO&A{g4HR+DQK_6PygaczV`Z+ zNVAkDQ_a(^565zlhW6`=KDi_#7>R$1&|U6Ms0wttLDzTq1AKfcxk$2za>v1m5abd+ z5>gk$XmdE~_%?)J91+p?LgX8dtsM@V%N9(M8;U}Z*v8Yht3An~T|(wrsi;jkW^&CK z0~W;vnYU?NORnmt&Fk&l<)Jq9u|~XC@vp$5OrTqn4Bc^x)~jNpHLtLP&$LShhinkv z#)8oy{w~GQk=~$IR{~@Mkrlc%lrz0t6!O?O*Ep`gvT&i1+cf0DZhfJosXe#E@PyaL zru!6PhA7Elfn{Beu4RE!U~Sz%LZzu_X&SZu8X%A5BP6(ISiTMx?sz3;NRE1QV@)1y zV_@WID-1>_%v2PN^FoC zx7-*1Vm=RW67l`y;U4&e5&7CNQ2Iuvrr3ZuGdenYqj3goxY2Zq4wm%7#pXQvMZ7t4 z+Vf!1qwnUGj?)4lqRs9GFhkWapvT|@L;_(H5uw9G4~n95zPkhmCt5|?y-+rRnh!)! zc`dwX9c}_SE0A8`2i8D^E%X4VBmHfHd32JM*DUzZ*~A3N2%!6Q1b?|JAYQhWV3`eD zmHo1`O+d7O&Ir;O3d_(SClPG;)q!U@n8MHNJl9+}eAw5PBH&2r7Kw2$V&FzwCdeCx zV=p60B^OABdjT0aW58tZKH8dOc>g{=tR9H3fJux`lo+?@bJZ_g(QEO64}u~S#P|U< z);xnr#`JI$s6v5}N3P)B=op{2H5A}rN{?ae-9X>xhR&=QR6C(6to=l3yk&nvZ$~Je zT&COMxK2M1ctlQ4p_~wu@8X>U_EYzOEU9bky?o0XsNLBJghV(%eN`hPbE%?M@lDTr z+(ip=V%Qv7<1QcQM!()q_yENbSla`@&9+LLc4D9so$Go|qJpn)6NhoLF2qY4)^k&3 zGxvcm)DKi8*}w~^3=Ea4`?;Ew#DBdYdUx*kJKSX889B_9idS(o5e}2LY*U}`xKSGs zvL)wP$M2~2<)p4jBtQr<)ecHswTOmpSWMTH_37?1<5GOMd`|6!%*+R>@YQ5hRA?)xecRZcR}DJjwd&H}57 zcQt~)!v;P-d~gAp8|YkeIR)_O^pq(2>xxg#eEul?F6{qsH#!urid{oDw`3mhJ6vEH zZx)~33eun<`xqvH5Dz%oGPS1;C6FE;^HB&5=64(^shcQ<(MUP`t)FKHhid_@P_f@{ zKUk!XcO*w3z3!(Gbg$URUinTnzd#BqhxqbYz_pi?eBasWW|Pb3Pk3mRof7c9G}>h8 zYt%bz%uqMUPXWAdhc)X-ok8@?4( z3{{D47Z~q4>6M*QW5KgBdF-iW2&5}AZZwbR&__I|LiOCl3WkV0k9vy=^{6+Zit_e` z$M0d7cQf5KpA(%zm>X`XZISPPMxjmZd4-uY2f}kDm3ry#y;z2>x~t8KHo?s zDY}PH45y1J)d+|W zT^;0Rc(yWdfDlvJ_$lEa@SZPf#V;~T3O}~0rXy~430>U9ZEs`4GVPlDw)o~6-C!0g zhJKa+n2PwRF|L^;u`$Js?QLX`Sdnw2mdRPzV6H8o&dm*b6?7VzN*Nwxxm!%T*2KoE z(i*V<(#27NwiY?rk(-pTM(DWjF8dSXU@Z?t={5;W@8#cw6J)Ub+watd+&-$62XoUO z&(1$s5@VMM%OaWJhbgriUHw4i87MjDQg=H`-FWxctwY1QkXvG6+Q0hj?LH{yHL<+9 zbvg6R$BzMHGcZPx{|H@Yj_HCE>;?aGw0EE9RhZ^Sp2SRGcz@&f>QM4mFt6Ci9_r?? zK-i&JsH1GfZ=_^lOQ7t{YX7rE6+u| zi_`ZzZ_0ywD-zc~Us-LwzzJZnJfXyW(T#7K$5^*b>Iw`%%=)O|FP`Tuj$~_^zu9r* z5$!l_m-sX3{X<-NqMVX%IpM#}3U-^) zkdr&l70cl-Vc*=p-xGjj`?RsHEo@Po8;UOglQf2$5_7%Y11C#gC$R@vg1qqcm9ZKg z(jhJ~&V?7u4A)B~`WWFUpt!|M3-a37VAAb3AF;@7Fu~}!5Voqo>K^cp6=WcD`X5LM z&gPb_i=!JUZ*}WVc&P6t(c|T}1N7?wbHJupZx)-z8#p^J6W}Z5*y$(kP{;@?n~WXf z+#b&t?ZPTM(Bz&>0*y0JHt-<#bU|3&e&X!|{`Y7nT!~ue2@xC8xVN@OO!$8A?=TY22;CvE4CKojByTJCMx+X7mCKNY&Bwy z1@kW7W)RlEEP_R01Mi6<#S-0PW_S-hUY+*GimSpi+n7pE46-9{n40{=v{`b;#|fr}cJ$ zWwk^BW&QMCpA4QesG20)b1D5&Kzrf^%Lgc-miGsT-vmsoDu!!o_tjA{lL^u8@*&Cz zk>Nqi;6O{B&DDJL0l8U;KeslLxw_mRlRXsQ{EY~<-%$#5=4TCtTUtI2mdN1YkCIX^JZ1-A6#a5Ftt%&TG>x*{&UB}yxeVYQQ ztt#e)GcLUA1D?3j?x{%x72FP6p{3B3r2cv5kyvNRh0l;eFW)RqSx4&qu80^>O4My=j6jpLWz=vW4#6%vf+tZD0;=blEIVOV3rM5LktZUY3zO=~F5_Dtrk-;iFSLvei-oJj`b!nWr6iH6GM7eih z8|x1b6&QUl3Y9|*ngnzaG^_iP6F!7hszd%)Pa5@4sq>60Q$Fgc*5h2+`%iDT`U?N` zl>2r*?5p>oNiM#U)=|q2-JgMEKdp>3k$wo%L)7aAn@KN+*lqr*_^G-sQt9^J33ia6tz$?KZz=1*1&bZo6eLWN|7 zEl#te?>{X$*Qzl}pQhdWFjvX+nfER!xuiSf31J_N+bp9!R0|Q_l{AuCcsDF4-d*FB zRA6r-S-x#41XHnBh-*4eAgpauTSM*mxdhJ7TVxNmO%UxARC*Ld)yuzU{eSaRf1PwF- z#3U@9On?!tj#^OP-ixs`?QkZ}wNI5#Rl(#p3MrTGKe^3eczermZKoF5Qh6(Uad?>r z9l1aAjejJaF@E)Njd)TcZR9X6%)6U@M=hdrKgiVGq>aja)bMKU)W^>1X~smA z!Z`l^+P@0xJkRFAmWG;$WoJt#8j?||Vr%8ZwI&pM#wfF2$1onk5?rkEEGlYTV#9=x z=hQfix68Cs>7J81XC=5d=^UOnW@hRUCZw+halUu^fNaP+y^q(Qy`VO?AU!3_ znw41jv9DK+_5S#QmL&^QDIxlKNiW*~-vPmDA3Ptw4gSTpx!nw!XqoU}>#%#XJ6bIW z`BiIe3gI2$6rr(Gm5`^J)6BCG$}xw-?hmTQH&-#+KpeXY1`;NeG{ILm$lI(=FUFM~ z^0BqMK|xu$VLeE>+cY4=csW$Ts`Zp3L$6!5epDgy#NC#bK_j@5si!dzGYbdk+~(Ks z!kUX{oLUBrQV;T`skhyeM_1B@K);rDtxUKbLSWs4b`?FVF)}qhC?YY&Wum_Nq{KGZ zczST->=%1cq0)oslcb1T#S0wRRq!@LP@|4BdHEp^OE0ETFqv?1$YR}2^!%c6j1$Ui zetve>;kzk%dRoL|OGu(f!#@IxKw3C(c;l?Re}(K`)}1(~_Je!%k@Fp)lL@#mHR``i zgGX6RIrjOpJ}kShwhF0*BEvZ@h&a~V`amCD*AW!)*VtlRCCKV;8|DC3LT;Zass@TueA zRvF-SvzxOjyo#CM*TT=9wWOjbXw9!}n%ApSQI@cPUaCDTLQ zsZ?$Q_gNFjdLjxigC3rdMQPuUXXt5TFOX6|YN#vSa9?nmuyu3ufKv);RO&aW@kbFh zL2F4C5j2*t@R=T_zoTtQECUz%jDys4l<4K=Pjl}H@YqRp8!YlUrN@KVHhVWs;F*ii z;yXTzxn^%({}cCP(8t7?`R5Ds5@^VMziXeXn#nbPf~>m~c#ufsO+`G5vW!+oI8g){ zhnisgr>Qpfb*WlHup(lsg;K@zuHLxfS|T>wQG4XOz+!F5>?!JV6k6YDr#3tDS-15hH9)wZz% z=^{Go9yqwTmrcyLL9M|Ybky*2P5XuTB|4F{tjO@Q4NOmK^cwG=+`SVRUypb`<&)`f zI~}~&_nvwRQ|CP##i#!c|Fn41)mQle^D3pS{F6OJ0tr3r_l=Fk{2S8Em{Ym;#ZGU) zI_SU^K_$PcVQ~Yi!4yVPW|cV5WU2y{2#;r0#q-=npxy~kg^oB^N)=FEKgCpI@5Rox z$CizuvY6=0eeD|UtPi8ZN45E{kN!UVWd2IwyJKDpQ2<8tJ=|orqo;Yb85XCmG`PNf zc}~fKM~T-}hPWwWz8kBX*kMIm1wJcN6y$w|cCss{tyeGabb!cN-tQ&=v8ZR4q%EFwh zXD5lm$$cjxBPiI+#;0)OF(nbjG1<7uPa`#2uszbdKh)^}x2-TO;Tk1uM2;EVZ$W1B zdC%{~_+Nub@y8X-#t_Q>7sbvRx4fcz^T>FS-DbXT9-#jjYCr>}`J9{_Mu!TF z?0ij1i5B_gXKg#EO57bWF=SS|(3*CyJ%UN;_C@m#vt4uz?%vVqcd0kc*VQH1re*bm zt9Q#C8SI2&=3coOn9cDi8K`caDZia}v2jKr3@o%qOYKod30yV7Q@J$u+yUKz{baj$ zc#=NOiI)Z0{bjB~&p+I(}tTYR=$Z3%_df5xb4-W3qW0YqXB=4r=%WJrb)F+-~0Ey*mvAh3iGGwScVq(9kLkT z`%jbv$P^10acGNcb8L`)SMHdq86V!w9_r0MT!M4N7^{{bk75&+&ey$Yy5hq`SguH_ zDcv2YfZExhcRTc&JW9?$$4^XwMqVFO*6syLJhSqyaZ5UQ*`(5KRb{f?WpQm2w7GY+ zOn{eHq@b43tnHY_Yi+rU)m3(uZ1G*lFBQ0H%F6Vqg3Np@BQ6_q$Zn3EZv_v>4$qFn z)(dL%Qtm&t=#HqE50_zoy(!auL@8sE+0zjU^n#}M1#{i{+d>MyPc|N|jS7qbWpaxh zRs&rZ1_z5=H%41^jceNSVazvu8QYR@iyOB>bhI!{$EI9#&8AJ~Ha=5)DaS+>4$FHQ zqzR1`BJ$zM(ufaZE;%Mx#JK+iVo9MfWS>jI1nYXu+tKE+q#XrD_}Dj1Wm4V}>abh2 z1S^h(>L1jEj2w@)`dH&!hULqS9IX8ZQ^`vl8NWJPOb*Si3ZUu1I~9=blcQw7o~M5t zW6U6fI@BF~XeEzDtcj(sWZ(TXPT}j6X`E?r>ER0D-0OT1X7toE(yIg|CI`(Irblf*u9SgPuV{BHXP9p8}OdK8UB44b# zKh%Lql0&tmzT_iT04$|sd>Zcf<@TQ zn(48Qj@oxXGvJmFke9{B8*&+Kw+VRTP8H!}R+Q{N{_e6cz2zGe= zV&<3e5ICUt;uP{J8Q5XK=&~Q72}pk_Yb`P3hXKqel2dPN6z`Gu-E+@4wC3 z?%!-K3xlr)f8>I--2s}z6N<4bg>I^M!Am(?E*iU6@`PD#<`H0fmlU$fNZ}ZmVO~v> z_|XvgIBoHchw1hV=qR<@-OE$gx4hbz&hjF^UW!O-RXgfv89uk_J=;*8AATQe`)}Dd z>;YF?WwT|&wX{RN2lsdZXwM%wXK9u4kwW7;&J@S7VE(v=d!%B#%{(X&zfwEX{UNX0 zry2RXM7ygT(;iieEQ<`JNt(jNy2Vd?Yw5eDFOgQJve`)_U9z6a(B5hbwM7k1Cf8wK z;w@M+Bgb zx7|RDIURCrigX@1dCgm1TgPuMd$2Fr`J4Ac+51@kMNbF2aibfV%1=*-5CNll=M;R! znGeLvs^X4}?BIB}e_PVRpwgt|Xp`DAeMz|S;n+6|v;?>3i*OOg@`lMmQeUwTJdP~y zk96$msNhi++!jgO6~FIcPX-`E z_Vqtn&HtfJ)raRzTgUn~4ejlMWbXAnx48|Z_NXw9F!sAYl|(_bJCCj|*Pmi4#U2?= zj5cn@7c_5Jci{*7?TDz~x~?st{aqkV_O!?YRb1|gbWQYJSC8%t{~SNRONIJ)(!9G> zjdZEX>kxLFq_4Dj>e~Hrs&@7?*eK-z-5Z--H*z%TM?*Gpj2H z>)K@c-=%6Ngt%h1ym#vm@{aTVO6eHaP_?tu>zh?hDLfA}(cVw{bDlk?s>wvUJkO}* zf#;b^Y;quCH}-2Yrr$bYFc@JLj@)`38s@Q5+wP~%k@9<4BEl4g z%)gCWra#`XRWi$C^;Tw>toVE}6gQrm=#{=GpNR@Moj@{GTD@;% z+lKhi`Eb%xZ~V8NHl7qp>NUb1b9YCPUq7r0t&*3!tB{TxMP*e-z-eW~0x&-DMaZ2) zvp}zpbygadv6j_kARQee?&Y}P$J!9t7BgES>RPxI+^YD0!6mr+Qutk*@6xW;%On%7 zZkZ==l@y=y+jqoI2N=a2T5Z95(>%6D@`ek>X{Wn;l_vtmoaUXv$#P5*^3ztQkR|ck zjNF-ewaujnE4Bz+Q*jWxTsgzT7wR#8JlykfN%-=tw2?3>M)Z|Dj!vxc^NH{YNzavm zsdhe;y(SjHm?&z-f8b}Qd3a5@Zg(y6_n|#rF6x$3&51c8C~63us}nRDmo+@1W~nD9 zTO7E5l)S8|YSNYzw1|-enplDi``GXl!tnD&P14qBzC2|tFi(^ogb~gT0jbmfh*~48| z;{C31XDabQ#c<1t)#gsYP$hZzF?!%eFH=2HAQe%Y!`}iJKD9-|t0=Bba?2Lo%2IbB zajAUKS9-;0lH9YWNYl5za*tOlhEKS>&Ahg|$5aj4F$BvNiyAq<6f|X%{~~m2O?4%I zMB+~_j#?Ba3=NKdzsw<$sR#QB6*B)S9hC`(^y#?-92@dTM+SRa?A_or%$;_-v`TD> zKR9AXQuFNnM?dSL{54{0Bp4WKHhJFE66b(aJ=S|SvdSr3>QB0FNQibSHcaau^WzUyn9m4*DRT*&z{`Fc`U z+-5VXo9VzPVAWV7mSPjM792={ZeA|S3c|S4M>8*9$cXW}yf1$kBD!iHOEZwDP!n>) zxV@zMO1Mj;e}bURuf@{M4|mzCa*)5ZCdojjkJUhVur>5b0nv>aMZPShz%))&L!Em8 zO}i;9NDp+j^yEB1z$X~lG24^kqDk@`wR}r9+MC@Bs;qUmes1F{XyQ3BQs`FKk*|K= zd>(?6*D79Anx2--DOF&DXJmxDDLWlO-5%o0gcC=SaXMqrtcx(^fk_7by|%Q#A$~z6 z-9QFgCeG`GRbOlkY-<%!wYjQwxwYOUBAP{pY^OKJH)(U8=1HOE^~em!>_v}DobTOm zaugC*+>lGExf=FLml;p;`9B4c7eZAWRs*+FdDVyYCDUvI_rGKH`5!redPuwQk$ zaQGgjtcL;f0TM19&#LKjz-d_-4%5y}cEf`igj}Yyr|j{L9sBKlZIyrElYYSyE?2GG zG7ENWJQSIoHTQgcv*Nt0UsE#Ii&+QP<;t^~;C4JR-ANsKBm$32dR`mpevRsiBn^n} z#7|1vO~kCJD_$w0pESMih7O~jWm-Y_`;B`&q;ON(nyr9sW`(Xa6|{;$YR}QOwyCq% z_Y(w{eZS0LN0CRd(kEWh3QcuV;vzD98cIq$V=Z4LPb^goNiifSb`6LPahLJyNb90{ zyC}Jib9^{+%I#`O>;hFQjT+|->fExBE*dSl@$=`nwh~YKKN_TO-W$+Y6hN43ZQtJT z!#~?F1-Vs0W@l-CwiCFH%$4F}0PIk+b~D9VbbWCw~(z*cCV9a`JF<4cW@` zBNOsQLR0C10m_j#8#Qqqg#zDe5kGdlTd4?N5eL8ttj4>BpWR~ znD08L_R08o+c&NtA)vc&(;er%Vw;-gpRF{+RXe-`*k&h-nGhIvnwG1-F7xTr@ui7pTJ>y`mhkw`c%Kl>TI*) zz-;_PG+x6kePyVIw{$DB!R<3bF2UU(j}W#O3|26bMs8~OZk=;;;DhKBU%DIazpRPa zO?od|ZjLToYGcwjdppEDBQj9R*kfav<(ox42S>`m!Aax|BWID2|3ts05^!q8z zZj%Oo^}dO4W$@0tlZbF}W|!&a|2@I3vUU-lMow>$WoJq+06y~FCVo&ax4wI1^N`QV%bFwQ`B0wxD*tFuv)SL~ z4oQ{!p;GDjV@(~`Q)jC^94%ix((is~WA%d7am1dOX650xLZT-0_xATgD*R*U(LxjI zs;^d%$ z*AhN-T7x;8+i?YU*{dLwpuIx;O|Oc{Q1WBRAf;%RP*)9(`}odt?eGFe9tG2Uq|xoz zt5}Ri2p7Ke7(mR?M|#HHU7Ym5`g^zb+Mq|^&>^^S@BQY2(e_ka?`M>&txuVW5e}(I&G@GTDQ@r zHu@s#-mr^jTi0f(N5E)OfX%M2z6SMTH9@=vZTjjf^a+op28oi}+_iCZtKM&WTw#?^ zI3H^d&Se#~P1kU(;4v|e?@s&pN10w{w;vrFn2j8`evN7KY?zN-a!)P2IX;&D$Pu1? zlIS@3vG#ran0QFq9jQJt!K4*9^EZ~=PcbGUw<#46{?b3-8JpU&u$~*9pg=W)#<0ES zmdN8Z_Iu~qAJzosx&GZkz13T@0q93kagb1OM)fYo^20M^!*-V=yHtdX`sw@xGq115 zvbj{Gd`$R2)28OV@3o_L%<=~kg%cy!Pbd~pmSLxVJltP$%MqKkI{dbGW13Ox;O=LO z%p7*os zW%^4=Uc3Y$S39SdJd^4S8qmGp5(oqm9J;ym6N(FgV(H{Oliey>!-qC(07@ z6lK|uk{8IgAPSpCwHC#9>?aCYV-?JD1qL(3YBMH~CA|mXE*l1x2ET>LD_EkQAY3-6dd zFvhUwL4T-Q>|E{oX~N2tTC>_)xn-Mc`K`BG*jzS6hBk}Fjnp&ojKkfE=41`cHXb;L z6+A?^n>?5)KprO_5=d0e1@Oz$T9Z-Iekw$aHHh7%`CAP&C2r+^q#l!|9&K3|FgkB4 z=YLUuT2^R0wkFbCNgAw#z9wAL3tE8YXaeWcEH$6bOHIGs7YniQsNc-3xPQL-s06K1 zL2#=hEznF{0v+M08i{h#isQD|E43t(Moyz*yQ~e7tH~;wM!1_(8L)4_r+MDVlYfy! zN=;;QtAB1q6c#XnHm}hBf&%&B7ZJXV-CL8tckZoJ`!{)teM`Bqo~OAdF3UFMQd0Y~ zW;RR1vazXzzd%}AR#qAZcTw4VZ)*P8*X#IiUk{|@bX%)_-ybeg_Qs~%g8!HyguJ_5_6HZ#hN&>2r>FrkjU|aXAjZFU0lm}?75-m-( zH~0iv;sOt{=i9!si?nljeiL~k1c&Pd*75VdahRiOHF3vbuo|vKesxWJy4*2oJmYBo zqhleN8sP8Xp!sf#oAnvIeCE`5!U(*RS!0qYa|hq&TxeR;vrbEH2NpL=*35gFc1XKo zSlgettgL$$fhYLtjcOQJR|lL&ZC)27llM`#gA#pAx*s3v%j6a}soPJPenac%Wt#OR zNsAm!C;n~VpX^DpUWJJjqYsS?sha7@B43by?H#8VITiH_9Rk5WUEAWl092dS+k67gk%dL zd&r)I?E9`_>`S(>Z)IsPBg0t7NHH;nEHkp7d+K?f^E>Cf&OiMT=DO!zuKT*a-_Pg$ z@u0JJafs|671xz!8S)5y^QOY7b%wZUhMj{QZr(G+Q73j4Vn16leZsOTIR~!boYR4^*C4xTo#S(@z!EKbVy zas9aICh~0Gm1YP`eK(?6iM5xt``FoKJ7m7{BtP7uy{nRNkInVQ3`=x;f2Pa ztG5ohS;{tCDT;W=5~yWmUt^e0Q1JuU?NAIna?wZGPfK6ZTi?OOqjp3*_O7NyCp2yb zRpmJHJA@Y(a$Clt)?`0`8RqsnAUF%zPz?Pr<7D*|)HC-9OlyZM;-NUyMOsEo_<#5SNp&Ct%mo zjrx&1XF_!6pY~t}g1>S2?SuDq>hEt7nW3Uh3m+kMdZi(j%Qy*}x0Gwk0bFMpjL(EK z`)I=+1p4UgOjX}$Ggh7)zGS#((SLi;WzKZQW*DFK>q!Q513ecbx+cez)5JbGXLw*3lDeOk1PZ+@^(f&p2{>-zi>2Zxp%l}Iea z;-$O#0gk`^-O}UQva-#(&F>*y!BiC739S#k3cD2@vM8X#hw_&IDf0UpO)qYJ&^mC} zGHlpLf&aP6ASsWNTfTQMaNc=1W4GDFzDmQ**s!^JNj$`G`gnhF(LB^zJYd?vj0MPNFF%U^kq|W9l==h^un@o9xfwa20E81 z^Xi0Btr?KxE_fv{8W`ma^Gq~mL*-XuCXudl7LOQq zX1gBlwy)mkG!GdkvNnzWAqKcx2N!ipgv^e300(`FL#z1pi;LihuOAZ&4r9PgK#)6Fz!CqQbxqVGxy*vFH^! z%-9nqDXr7kj`>v{$d~wj=OlHE9Nek#%LK#$AFz57LtC-+o6cynG}(_X$JcPpCL7*q zL_~yFM!>Tn_%Cl)58lvB7`d=?>S8k}w5>M^T;H-_~fF;`(1PFw?bl1cECHcraN;}NXyIdmHqW(^XeUa3e7V@IwIsm$hDo8avdaPtvL8{r%g$gNuZ##dq>`W2K}WUgVi7 z>E2^I78!Xu?#l~wpn*1u`WVq?yl6-6XOs9)q@&slyPIFdD<|A^pqM&rd2lmAa%hX8 zVf3y#RyVw8c{|9uoWI`g!Lqmi`rA+@4UW7D_|0;^Jv9?BjILeT&o4obK5nOL5}vto zZFe$a#ClGr@{#V&D^u1oPm)E0lVx^F{AL2rx?R@KMfqw_DWWhg#OL@`ScvX(Y#1+4 z)=ZM>(&T3O8F5FKcH)EP$tL^W61I!)ocB@RbK@!9aF=DTjOy8)6i$sd!Pp{>8-{C- zi2>ZD%GBB8I2d>OvW}~w&O}utKeD9l91^0B}UAzSZTIaFhH?fP}}CaTnOP%@_1 zGo>(2C)1R4K_{~!XtVLx!9ED2MOIdG{ICS;j4^B%MWP_#Y$oid8x#fDErxbID`}bz zxQQrah6B;-SiLRCI&x;GE5xC3F5}^@y3fQ8L^G%kdwnEL#nR4h*B9fGEaUP!lTLl?kP}h>EI!gm0@!^p0aAgE9T{S*~)a)@+bGF_lUwDgLRjv z-}e|OQ z%T7395cTn5mCBT($0I1Gni@cxmc$QSig$KPQBdA4&FbQVh>qFA^68A=4q#P!)`mx- zO}uAKbZTWZ9dD*U_gWq9fu$IOt{o)=G4*r&y01_hNj>Z`S*mnpY_nxLkMPa<=Nhuwz|S)j+071B;uoL#hW4Z>fM{da;_*8X0NYhg4!mjkRs zVm%B8Y2zv+hAKM?W8H|vn2sI9pTWxN%1aKpTIXuO=f)x(8}`$&0s6=++hcyukn@cD zr=t=tF8LQ-S?Nf))!B#+nx2ufh3?Munw#K1-*`WZQ=9hk_lGVfEEkltN8zQH4a?}s(UIy>1Jb&i|VvdG`6}Q)H4C7aXIs; z;zZ#rq~LtFaWh#r&>o%5Nb^>t_Gh^+0&do~3b3CakRd9&Cf;+mF^3^kvL#?h^>tT&Gq9b4wtH zae-B+qbhALOMzD_lxO}~AJXkgjI_vFfWMpyz{>w$<|agHIR1(p+~%m?hU^g=$&$JU zaMO5;jh__7-l?|y{s70YT3nC);26knQXsjBpQ3d_yd%YT!Gn#`OD;C*8r~YN$p5_2 ztyz6V>E(^5$L&wlm$9x67Ue_Z4cJOk8&*M)FL?I|U=M+xik1lFG_LwUnwwOi`%v{B z7ZMWGP7Db+V?E;wCbVcOqn$%cvkT|}^;*@t`8L4v4hQgZYWv}IJU6=mTimjYD>`it za4K%Yx`<-fsXJtLAVB>neFb1P(}My7;edDDtkvLV8ZUs3>6s&JZc4;GYy}t-{qCTT zii+^%yYC;feL5lh8fw$nm%8)#cvEZQ7%=&UY!pHqv?}fxE=(OCkx0AE+{>MP=zwut z-p+Bp>V})9(BNXxUKbOSsfq_sRy@|I3Wd3wv?tnPRUaPutE#RA6jzKmcX>25Gn0<< zksdDEHH^hV`rKJvo6fP`Avd(9yeOQ>Wi+xVgG}XOQvAhd(e-NommL5jfRcTjrZtaO z_jAZ#mHLq5Kr)FHpe~R>RRHlM3BX_79P`t{Xc&QYaq1;}zBxbBKHNk>Q-mL-?U_sp zm~0qV@12F-PF4G2B(_Fg_P1Ma5C$OWXHi=rW?abfE0n>9s4L;YHB z_knkCuQy`;52BmcOnIQC5322;D4LIW-?uf(l;Z=y5{FD;_@5b*fML}R1qeZ30iJ<< zjW-2zrp?KACYgoUvGfV0ucQ~UKWuaGSI!0iv4lgy_+Jci6C-p5b-c6<)0~a9(gop% zh^+Tey^8r#$R=we0+pq`a;FsL0Sn3V<#2GxLbdstj%nLJXB3stswv6%GU2p`PlcpG zh>hy3zTclqV=$(L%LNdK>#@MzrZXl=(%Ew}Z#AU0%wedZMNa-+{PPr1$(jbf@59k1W3Wf;8yuIb+FA|j_w?+6h>&-WQ8J7ZI+pb2~isdR&BQ- z3jZp^ynB0cTG$z|FSCJWK*L!{{tL|U4F$QKi@}`XvyIf4Ocyskmn*|~tB8Cbt2kre z&QQBnU-0?u&noNAwpReTEW@nU+6s{7dG7-pU)z1M&vl>7lihSp0HD6x0P_U0HGM$D z4_`A{XmCozxh@3Y^1VVsPk$kGBs#y$+x0NpPO*)<1;-b|Q~PtCsKfI6gJw2ah{t_h zHM5-7!X`=y70pe)l})lau`+Lt;8%*3?_1%Yy_65Jnyxkbw2-o+{GkTtcslJcgiF}OtK)K>i5w+kQ0P|m+{uLo*V}3?&`V|JPMFQ z!6!@X-R4`-zisJnIH#31rCE)w3*DPTWQg^` zxqiM>+UxFAUf5qYv+nL+!z?o>^)i8Otj;Up2At-wF6;8Yxd?4SE5}A z`7l3dP7ZTHu|6B8&2C%hk}VMrV`IWW?5+N?%3+8Bw%P6hVY?lR-2C%E*{mX6X(Z6S zIr#$qI1feNN&4J+45`o3#+iuMI!89ms!eo>jo`;ytPMW#q+vbZZD+3%tt;^F7gUDv zws2t(uf>D0q`V!3QthjutI=t^fYo>#;My8&Y;1@FXLVB|6hQuP1|xvG9UgkR7pi)2 zNJf(_08BnOnZfjUgFp}?KeA%%XQQ?O(($F2?HXO97vz@jeDzQ`=ArU2c!c$f{#x@w zg-uZ8y6$n?;U^MlE!3anz45$K%+e)O;aPXKhH0!#XITN~ikY9&e*WS2repa-8-jxM zpwjbPuhVJY@0r2urOE;d=_1cn(|&?ckXoHeB-nSM{7%Bgo{LLGA~Jzr%Hd+jzx6v~ zJ^-6qKHWP#v02{(yxKQI0UNIzeCzFB9`mX?)0Kvvhz_|Q)>sDv-lkXr$JBsd|@5y znAaU`WjC@=db@O7GnEG8Wg4Cto441Igh7#=!GP#a7u@slIQD4z z57gNL=G7yH?9lVqMkZPtX`ds0Sd0CrMlUTkk*=?UC*=!SHu{OK4ujOyL97heXxni< zmAHBVDJ!{+Ace@1HeTuc<^2Y>E%Gx+X-@l+i~-NI2?+=QKv~P=nPC~2mFqhI?Qd1w za$LgaJBFJZ=@YO#3+uGp+k9tYJ^WFrgCv&Qb_1@9g-}WLOHN6>Ot)W`c*UAjcQrzK z1PD8GmGN}PqGhZvwMD3g0X2so0VsG;W4arWp{cZ6=T+oommA8z9$=^|Hg(Il5yguK zv_HuDjE%cxt-zsJ@C5w4K<1hk1J3zU6{65S03Vg$=H@0d!|bi@{M49e4=QiL>-q0Z zPWb|%cO9lu#?2eu*IE;zgD zc4z=*x!U|vwz4H=pSzJUfQVFAWpKe%i$BC-QFa6mkIiZPhh~LZ0-$|3T%1qjJIw6g z_ZZK|u}Rca<@U!lh&?h8K8(L>TV(}TGj}VP4~NjM+#0R z-wLYk$BYyxTZ*^+y0*XWq$&bHnE+U~9|1xp3oMhdfCDAm9{+=mhBkIcrtbJ5Nl{Z7 zVqc#RFWj#lOvzYL5fpoL_%yc8m!~oQP#MYOx4UajwF&SrIHZ^IxYug&sz4D|y_PrZr3(Jmn%|=vATI&_*L-yTMaBCk z>?rgUdn!mKv@MgB>PIA4cRIkKEMDS2`t?9ncrySQR4>BsB|-2=?NoW$@JEs<_qfE> z&vc>wD_Ez32k7}0&3HBy;1KhM$;m%nA>HNxgZGiN<2)zl5mv6c*{l*|!_@1(G)IdlAN5ia*_P#8&0MMB}Zv#u$d|#<+b{n1{KRuOsRn^&F zG-ub59?rMxt{6`LfF77`Hx~^;fo*Jya!`|I8^)K-=c*ewGF=q?BgPx|xo(pkoMd-- zh3ny(^!4~FAzz$Jt>w->Y(E#`v(JS*fJ!NTMRoC6HkNGtuUL}ItH^Z6B(5z{;PGvZ z8CVDJj-)>e`DDO9`^2FHz)gaagj=h27n^i#3oCzwd`aFzS`=URz(om@dv-#vL9enK)t-Y5 zp~$RTG<@)_IK})SYTE?M6e6>aqFxeCp;S~>Cg!%RX($o`@Rd4)M0n@gr$U3{fkMCU z9kVxYc12Rf$fK(sa(}MFsf`;;cd|jS9TxWJsx61}BKk^<2eXjP^e?SXB}kiKQO9;u z{Uo>cQcX8(!AT>QfAVt^Yf5In&r3DHu>_h(n>zowjEWW|&KZ%RGx#J@TRqW|6F8LW zDhSfMHm>-oB=7y|@GP5r!BM>VOytsvqfBpC-3QuX*K(5$$mVz7a~}(+v=-FSR)_>9 z-|#T`;K1rBTC0x(jmUJq52S2soVKaIpnl5NLD{m7$Ev@C6LB;K3_$h7R|FB(+Zgwz zi0XR>W6^vB7wq=h)n7eIzjpHc>tm&}5_3Ko5;hTvg({e~AV9m1FlAtqr|U{`^&W4kBe9-Q?7 z?HOl$z6}-wNpYb9yrY?4_&s)x0;XlnodeQnNQCi=Crf5jJ!Bb!6Q@NS5W3`^qGZ8Fg1pY3`G zk```eEur$!T4SY2r2{-SB}pvW2~&k{fibinm{tJW*5TtU6-#&poJyuIG^~yXe0- zq-pP4LC2%mtc0O8t5_S_oPW`MI+AUN+MM^5lD}E+?bK3Vb~7|-rwzbh;Z2j1lea<{ zQaXS5F2ubP3rX1h<;4W$c&mGG=h2$4;eyU!hz;EYLwz5xCjz=yYBfJ?uX>rdKA8BN zW9nJffqG&@5Z}Nzv{c#yS_Z2hrRdi0uTJmw!td4>;;er!w6Yl_{U}+xOlM_>v`)hA zxAEa>k2~%sirhgR^xYYAh|jrw7;NGi5GB?C_sxvxFypC_OL;o0_#QMu)_T>n(0OdA z7t*t52uCtK)(A9K{%yc53YKElv3s%ns+P}zbY*1fEZ2-n{uR<843^l5IKC4!T3I(J zG8$Ib$%_yQwZ_%jboSGSm5jbtv7o`MDQgKw`q|D#!;uKS&HhY{6Ce6{${})<&8wsq znZs%Ss54sy!wG;hALJFOM;EaZp;j7DnJm4hi|=olmp$dn__+wjzp5~C#C>WSHXwBD zwz1fZd4Gh#NIM_6Y8$EgNNK8j`}nHdgoLeQi!qRSM#_3B{>DvcyL_teu175~Jq0`J(_jWA zXPB&U79O=SZpg}!kilk1MkE%CuA_%{liF`?PpYq3 z4&Ylu+{7LpGUaalNWXeU=0o%O^ce$NtPafk++Tla*jYtdpNQ=%f8+r1PsiWI0a7Sx z5={^P5%I}l(+o|OcpF+WF*_(p@#Su>Vrd>(G*QECv*H3ALJ?xqBgA-Zeu-8v^?8sd zwjCfkM7blJQ-yDA6?jH8hJ-_1$fMVg@*utS1w56aZNVA#Vgwl)RMxG{rbp0FTBp z){Qj#y8cF{+@VtjH|EQ$zhcFOx95-M%7qkedts)+J`(9}iqOai8wt&~(rlOiRb!GOJ7Adj<+Ya2MveR={I^)5WbB!u2eOy=w{_}oQ z6W`$yF|SuWnOkX~z*rRG+SXdQX~rWVK=d_4DyO>%#x<23&04%?cGFV` z0bp@Xx3efJzW^&qbgNAO=0Wl-?r{nMRcZa1sp8|gz6NtHONSTy2-%c%yN?sbN&N`l zW8E`e?k#x!he5uofM?Xz(%riER_@xOhv^dajE}n#VC*mk2#-15lUdD$Y775%p_FCA zLXV-?1I60G0iMe%!I1k+-s0sly%p8mm;B&Q)0!M3nk`rdRpCLe33R|z{Z&O49y9@A z(Z(TP^994&^VDZ6cN72$aN&s$(Q6ust#^1{@w6IwF$nTu1Alp-wfqgjP4JwPQm)J} zylV%NS_|xWrBEamfbK-gmUeyHO@JFJV=rS8#-QJsmGr*oE--$K;)`zF?kdpZN0Z_- z@d`?Q_NvuFYh6mn<+9BSP~LOx@x_PJMZp$h=dy3tuP>cx=(ZjHDW^Q95G4us>)0@T zhRsrA7rs^I(^6p2uTrxS3~2-ZWU#rM`xHVpYI|&iPzI3c5&z`f4GtH^zM}fYm%a|~ zrb>c!R~hOVYXgZnoGdqHA zPTbn(o+FXqN^WnK_qq`0#I4HC7U8xSt_2mYEyuC--2Tr(MA+W*6Ngh9<#vDZs$d25 z_$48CZLT+HvhwX-o476DE-l!w!2bzK|B49(bjclz`{~`LL2)R36WH?29^M5#uv7AZUMm1e)zn%-aKts*r#uSSjpbXMkr@R&eK}EZo;J!mDIcy zMo<}99Ifkl^^6>5N^s|FApfMb2@?oITzib_?;I`a&Ek(hS`T*59#~l)59Y}9&Kl%x zSGt!P&KgXdpt$+0I^+YDzYspBn(rVgbvrvva|@+Dk^nP_A7S>7gID+FYkJe{h;{E- zJY@w_5njMOIA>Rr0rZpcpXK*V9Qf7CZ@vdHhZ|rPfw$)vSEYR`*lK0066Eg|zrQ-q zX|DBX?_3+yq^aA)^7nVPeAHohh1sk6CgeQSdZA4nQ>@Bs3>fGGd=9+1+xH{ir zS8O>0tDF9ya|4Lncmymw_WFD8uGoKsEM67a7)eOJAOci>5xZvX)&%eBPAee%rkVyr zXs@8@tbCGUaR%WW8N#7bVnjUo2(f7PUK9>GdF zH)r5hxNh!Ah1c09rVz3AXCNKHYS^ zyVJo7b?WxLlp=Et22qkR~=Ej%#Up;rw)}@jhurm;$`Pa{3 zhYL>nVNi`N%TRZ1nEF^r?1*8}ByBWBSe$P0UMnqBIZ=SZuCV$b)~Qpz0FwOt)w@@4XOi+dW;Ji8vi&4&4<$rn{N|@amRJRv>c}b>H@YmA=Yb1W7xvTDl zYVF6*XRQa_1%52eJ;LURTKGE}um2&+jUk0dHsOjQELnyRAph8=}wCoy{K8 zY=f8rsy-x66AMqndOLP8&Qo(`ho27V$(LpD!@(P-4AwFHFkVk2z9rb;qJ_7*v|Sz& zk7vo2`dkrB&r)@2W|^ft6jD0lbkLMohob!ouhlcj9mP8dhwYLj9=frwb{LtHn2fu> z%Qnq7Y0T8R)EW{Aud=-M9e8Qz-@Pu`anhWfxg#K2Z>^JoYg#*C2t4X6a5~+X_;#UI zTz6esPt-f7ex#nJ@0K%H?6dzky;{nQTXZ>Y&K}WPC~oTT(5_j3ST`G+`l4K58!4rQ zO}_Okz~|YZb4Kq^^)e=)S$e>5V7&p{_N&2}>dC)+-`~UBe?OO|&t3kk0or^%E9xJ* z2Xxm+s)=vok~qp}6Jz{HV;7q#iE7Zzalhz$VU4dgM(GT_lFYEe*e>MUof-(rv9BOi zt2y;HZJ6J_UcsB%&+&ZVNt>}%58!SiusVD2o)&nn-HmRG@7wSPfDo;g#ll)732Qf5 zIQLDx=e(d@GQy0~h(j&5zTkDazomD*1Xyn-6GEkD92sj!JLXI)7QyrkTot_{cZT62 z*O}P_JvTvF|9#EA$#!>&g(|8ShI7^JJfEpEItyTa)xJ*ZfHkUHyuN1c<~j*8pO?5J z9kZ=8SEYP>8&1+C57_q)+_kMe*_g;*`XamMOYl~1fx|XfIQbyEZ|%lV<9nAuIb9`m zb$+pLrYxq^F?&3ta?&nOrfwZK*~Vad2|7{zHU#Hn?wn~e>2ue3mTrW+xBYijekQLK z#jR;J>ZL{pOGzr4l9L95Bs}-npDgy7Z~V*zpKT#{>vbkscM9-fKlW zt=0tjXG&UjoCay-?S^v!W5jF&tFgdyvzrrkr{MV2!JhW zC06|LuWRtGU-G|4@9~Kzbg8)hP9e?ed!h}2M%4>LFLzux}r)_X}PvFD!-(a7h-P3a$zR>SG4 znpJPxr+fZ=(Yty)aA?iP0W_7S-~QErj5nb&zdb-Tbjj!w!o<3K-U&5l`}YebJ^Ei6 z1H`Op&8{t%9rU8bF`iiamIzdd|4bEsV$*gi1;}o_RQj^rYRQ={hshd6Js3pkBlek3 zAGa0$HhRCoE|kpMBD*Ci1_IBud@&Sx!n|v~EcCkvM+FiDIu?VM?t;{y71hV7{fdf2 z`Qw2^Z;0iiMBi76O4X-9G_|vHsl1o>h!*O3K-+3>6&3l&b}Ki5)i2icA}Rob^6Kca z=HiT%%de{*%~`wLIB$sPmNZ^i(xqX%=7IC72KrhFCKJABpXxz=6x+GTW7g-LkGl=((A8&I)V3krH`a2* zh3DQ&-)s(O05W$HL-mbQi7ZhK!N>ycs^AC8rx6oQDZQ&5g~QgqmwuW@FT~8?A*xH=y^BL{ecz$0E@aCL2Uc}<9$Z_gC_5AQ z(&5pnPvmQ$$i8vK%FG#$jtY`+>eO(?mKZheNIVQapy35S#6Q-ztme~cvSVGImwL}* z60Bn1S?f$Yrn?Uiqb2@hOXNGpjdt6zggL#C3>=8djlmzw4?p+jy?)qI+*FfLA>*-> zAvc2m_Gs71jZ@O5~YJq`$w+Q{r z8>Reqw%$QhX(0Grv&SRQw-Ni_(`V8LW}j;@q^d8&YMX8~&Tl58cimW*(nRpVdal(E zSX3jQx9M(CCn?_oKvBsaAVd4((Tbh9Rj5Gaor*5Tsqa@pSUVC7+59Qu0@?3&Z@VvW z9m&6*!HTX8)KNi9`IkH>OSGKg6^}$u!{tl;Gf=FnrZ8P~NbiJ8@728nJqxDG zl}$3;!8*6XuE0hBe8V*$3bNkKG6d1eA0eu~ri_#hwc>T*e{<_rS$qUBfyujalBVh3$ZS%D`SKZwRpb!=+CqSSnl?J;1vHp;d5eJ$^z9!% zlRisi{dPfPsiizDbHL{<&~hTq3bj3K5POMnK#E9LzL4o%lA%M6P$5c3s7wKSmrfL@}vb2*2CVuZf7x?&4wTdqghvtM4{5kH;1C? zzxw+b35}{pH6VfltC}w~bF-cO(LE`_7U}TO$3G6ps35gLWBoMJk7X zI!Adf%Shj*cgBbrlyo@EWJBCRYk*xcOmU?HuHyF9B%)kEl2x4QI?Z>j67f<*6o=OdS7u>jfv(dX@8TZFJAai(G?zP$i=v z1Hgd^y7>eimG?Hs*~6L6EpKkF3v=*I=n4Oa!7u?`rFULiHFGqf4;};(BoP5Du!W^_ zJ>VKMT!-h~*`ry%ylo$UOO8DKl9Zvbq=HDy?J1sfKxqjXFMrtE=oXyiMa43EF6l3j zg2Gt*=ktnNW#e5SANRyKAjdOlEhtqaNeWqdTw zh*a^PE0B{2!8A8n5Wg*0Tfp@64jBDV@M|%%j*$gdgh`*j_?B%CG*$@!qwxNlzTXA@ zfMvjczaT{xKy=O9DSN5iq7BiM0jA=W{co~af)to&sM^N3fU!iaw}XPVd6PE zVsm3w+=n-m3}Vg0Wt}i@W}xlvI7GaPjLg^P{lyIr!HqL~xHsh-J!SS!OEgMle-rBm$v~OI=eV@KL zhpQ<5uF0ZMc_72#0bh8n%i-gjUnCl0h0q(#`Cnu)ha3*U4g964f}Nx%5L{b=T$kEQ zt_Ni6VY(d<(fzvPXnXjhDp^?b_N^$SacF0s%r`p%BDv${0r=233U!?v2`&1##Q=yr zT)iE~cv)zeq4kbaA736HK~lR;X5CfSJyn=)OMOkOx(zP;uw0n$*Yi1L=7{s8#2?!ijkad7xBBwz<2qgz20+~wWTskBU3j`Jc ziGZ&(Rfy$}zFv61b@lZ3`BT2agNf3gx!5B|_zk*|^p&W*4F=ciN|Up;X-{0orm`jk zDrs23j7yc1x$eH{;KjSXFGfNz2SoJYTl3Qzo5Fe7&X*35<*Sy-Rh*zO#F;0PF+fxm zIS}aa%kNP@itpln9+1~aj`HlcOBH;Sp_eOb61)lg7odMB`$Lg*2et9)Os571cq%Yn z-)&q%jg|jJaUk=iiHG83`osEg29sVXoK&^R0>5-j1u&9>V!*h%Tx!E@3ee2eFcU#? z0y;T-IS+t2bs_&|egpA9f8(`>hTf8s;KzYv2#M|^ugSfx|1+r|R_A<=SR#XK?qk1S zC;?ZRvOemB6wWVrBQxuiX8zMr=ii^_K2QZ6Tn7ftkgyT= z#v#%Hq||{5&Juf&@i#Eg6)o!Q;*vtnnj*&!IPbP$5cX1B%g-{PFiGH~h6CwDhCIQ$hONIo z#8s$xz|(~4-7$*$o2MrpTQl*za{l?g#tb4=9ZmXsTPbeXnD?$&x8AAbTP4LrQ!7t#AsP@kj|PIxcmLljCEOi^6<|3w@Z5`hGOdb(=>Jx;T2=Yz=? zPX7MZ7ZT}JpoF>Kb+Z)V+T7Lj8>>6m+aho2>P{| zqv=97K~{n4KL5<~mfO-QJ}ypvxph=h`S~mQdOCrDR_H;uZy&Z2mlZ_5?w)9ubnw`L zT!5*a?1^!EJ~J8V{N?7cF22u`@g8;}ozk!O(DC?bTqvb-1 zj4Kgu+h5jua{?%uAw>RFi4B7Lr%=25qI`6ojdj$GfZr+pb zl`W;Mz`5BzAelbrz>y3M@r~&NYV{)`{%ktq#`G9Mk@@aUWt)1H zO`ku{sX-UeJ$EUA5C_q$<~KCE;9A$a%MNTv&8MHd_rrtyla-j{yw<2FkbRJc@G2#62!Aqf+=Pgb{PE^>h-o?6r5v> zFI4iC zY}7~*)au#y-`4`5jZ(Cot-TbmE2<0O#CF~tzIAyMrsp5#I`D1_86$0gyK|4HpOM<3 zDNNOdneuNyTI+i}COc&SR#BRA}5JRmZ zw}5pYiLgKf{210qT(*lq9*lU`gzsit&js?w(fnuWy!y5wgSKJ^^0~x%%0l{6J|koQ zaL2eqCp-7lMX%;)V0(ECMAX%mmie03l0T&YM(o-B@xiW;TAqA!{ewL{j24ev4>U^j zwe~p7(**T<7?k~Z@@B*zX-OAFNZov1E2H%L;LC**Pd!rMP;l+v? zb!(7XJ65s1u4m|KWUueQ$YUCQ`m$T7(MpvGR}ggBI9iyc4(Zn4Ha{C#aX| z4pdDK3b|YT+rOQ3He?w+t~Ji30Fgn2Wl29LF8M!s3ixJ`wl7RokD$ViowVSIClAo- zrm)+k*{jW)?wp1z?+_cxkDxw1v<^$}*K#NvdPO1uY;nz+Wu1d>SN`&-& zEsn@&n)RN35*@26I7v~|c#A`CXxqqw9Z22kogB?=uzaG5=aT^OT_KPD(hM^5D2~nK zJad+$JWBb823^~vVbT+wv?mYp)(fgi*9RQ>o-S43KagR?&y^$mZ1>b*-WNg4OhBy& z#Fc^wIm^N~<~dtL&mm}GZ1tdm7NZ^^W*f=v*$_0ISD(AwnkSR)YkPML5g)<;+753A z!pAmFKz!#@I=r*#{j+!Myk_!s<-7b|6qOF1y`~V!Y#Y_;Z8=T2kHI!>2srh9($|@9 zlO!^QLAeEi&G^5`5A-|f=aZ2MnHpWV{1%H0i`}!E(>q{vGF&%PGTX$qwC=te(phik z$73EAn7D4oR}CH@&*xuYpOCa|yoiJVlQpJ~HcIw6GtibfoT=+Q3?Mx*H{re^^^57s zb9%^%JYl90l$2YJ^WuVXH{98^3_GK4ruG`xzJao(JV6e#i<3gy2G4pUKCM>*A*=p^ zweQ4Pebc@aDXl)y8LL;oD@joBu>f)a-8+r~dzK*A77DxnxcNcb5?_6zQZ6})9D{0db;bARX&eHs-3J^kM~`l-dO%+HvOZ#gMJA=X9iN@y^etyPb3V$ zscH_Pz?+eE9l$1HRf;%3Z}HDBLk;SQ@)g(?S>G-7#She1ljjk)iqif4ruIAMjMf6K z5~`r56ZbHb0fU_G{{jv>;(P_x9*o7Ewt82;s|3^_%0X4wd~j8@@p(c`0iCVzrT~YA z5g{h*auOr@1=YZRY9c*gqDnvgLWHi;IYs3Wd_aJ+f74pegiPI%?(y)`gTytG{hDVa zPnKdOldlDt)%Q2UuzXWUzfAlgtzNZyl#Qt_&#cwhJ6_a=b?LQKA>EbiSi1s^AZ?|{ zbNdG8vrC+>zoa2k9o00}f?`>Y%FmwpLqp-x)Lunpq2A0Z+hYq?V0G-Sm^7|lRTZW? z(5f1C3=CtP;rmU`NB{T!X2W94VUy`KJ$~-@7sfLaXDMF-<2JBIxZ4bZ9^@FG z_HhYzJ4aT~9aJ1jQ68QFBySXID&&Lh(Tt8;uabV@BNAU}|K3*M&b*vK=lWw?-Y;$wl&FLnb}atDDN(dagbms_=PTKr|o1S_%-QFKhC z;U03x?__p3R6J)?*%V(!Xr2uzm)D0n$gc|HongPB_qsuRs=yoyYW!%ocvY{hiuZ$# zLI*WHSJs`PQN^-kBI(BqSbT|2D*h1|oyvquFZW?=rUFg;x7YvJ;!)vvxH!tzM<|-N zdsRqF_eP|}db4_{5wAP~5I_7ES-GE3VdyV`J9bN5V}%pvF_8pN z3YnP>xYI#nu?Q5pzGyfEZ1))8j@>8# zcneH^l9$+9#!M!fv!lZs#fFKnz6z5~=XHi-3t8iUES6irDj27;(Sil+s1rW;! zOngRi;XZW>bUv&lZntP|Ua?(M{u*4qcOp9MmjY{>I?k)S;bQabAcRWzKhs=~TEGFC zYcktU_ha*DhaN@!s`ZH^vEXN8Zy*8bGjwOzcqQfS2{451;a%=oW>7IXlJxS;+Q{H{ zQoaTkOWju7_}pTv@SO#R(%jJ484fc*f8GrhTP%2Bi_rS_7eF^QVM33OJD|n;(oy!E zYC-q8Mrn_=t6|B-b;hyvc@f~mV+-rj(YyH&9KYL{vi}MN?rl{Egk-Cf2Gh09VGEs!6H&z|pdR0BBDG=wBjwoB5jOnROavU}2=bP8WIuTYYuGl@Dt4t0`DkhY03qxM;v|FX=NbRnwI>IdnMVU z7Y(E^1_jY`DQdP#J1jKpEj6D{WpAeg74eWir-zPe-sk6XO`O(;gn_a%q7UfLP=dmq zlYjK?GhYIQ`>Z*vTy|~f!?ikHHD(ZKhkQcbJ%!I-rfqSVJbU!X-Pmm+dA8>kg*pf{ zLT-&p#tM0-UtSzwm%W+e8#ea(Tzez_VX2}ahq(aXnSabdkj85vZ)@OpoU{$n)<19g zRI^NmFIPoEfdsCs|6i{y=x!Zdc}a>)Sp${4+NF{d)}t3!fIO6EYID4g_7p!20|~Nc zevAdG0o%JLmyB16QiSktlY`|8=zTv}DpA%$QTz1&f@UxGrzw;<-Zhv=Q?tw|W9i{) z)8C`{iy;FI*e0Dd(WQ^gVSc7_#g{UxH?4`5f=~P(U+;~OxhhTAmE*pb6ZAzAsc25> z6tZm+ke(R$KWw5~jHbZ;{R#AtvP_UHN9Q&oP=JUDG~GLqt6iWqn*Vos?v;%CMfK9sSr6+7ySr{3a0S;aQ8JeLFZL62zQ2_|ExfKg**#|5tlg z8c*fc_HQLBGKNExDN<}5kwj*hhY~_XAtcmRBy)4fm@Q?@9A(H52~A?lP&!nm3_Bu2 z#<1DXwQi^L>%70G^SmG4_x<#)5A1!rt?^pdw61mig*Ly+qJD5piZM0bW5z9I)jvl? zD3$0QZn(UtIPyd|)%J;SzwX9% zkJg3$n9CIo`ks`a-QJ2809eZmZbTV}V1D26r>QEeO5=g+L$u;{IED>OZbD!J-(GOy zmM|T{p&|v+L09qnr9Hq9F%-`q?eHYNLiETa`*21!k^G+GBxr|JF~&X|zi% z(RZTmP2eAJl}(ye`FpbOkZF?M!z|Taonq~c1tl8_BMz8|g^vIp%(18LP!AuOLR1)5 z7xYGOoW3&;lVZS6QTHy})Gujv#67^8Tl$D3g=l%@>QzdVJ|Pl(DVak)tUtkj%D8@% zb+cKEN%R0&2MZJtjq1V_1*D*fOuxd5jyMWhTnsZNwgI3;TU*U*QWW+wm?s>p^eqFJ zg3=S?C;Dn`5Qp!Vk~_V+rHuDX-#p{xRS!2bDH(U%?#*}o4L#uOH#*EL!YoKqR1P&! zX2Ry|-e#9ntImMk3TDpTJ>DB4O-7!{&dyF^4X@*O<*~GAqo{D-evyeA?!IBGfmoCt^eR%F#d!g&hl99f}jsumla**pOuF4oo7Lm!H2!G7h8pO5D zycS)gp8VX9GhYGt{4PkCeHU)GxX zcs}qmLtLd}niUHihfALw;8x5%SfCD`Af>oZR=zz53RHtdLDTK=2q3n`sRUF?T9+7v zDUR-%8^5X|*yr1x9MDBo_-a>RgEvO`ob`4$+n@I-$u!#?FgDVlZ40p3Macc7 zy~*zY1Uhc!IdZP&QPs%D;vC_=q1!GGBClLwDEoZd#eR0QQwIFIsFetHa?Hfj_=A{~g6uea{bc@){f``-6NsR)}~UDhIa2xITIsy}-j-+8 zEUHJ=Bgk+&`IJ*MmNbYAg;&`)hhJc|sc@aDWalu=)wOj@)%*t?+rWL~pHLKrd*OZ2 zMi#3WJ#$ZWNCQfevW#7ey~|(NneeCg1P1ZjL2(9EfG4U@_rsC1w>Q(X2|ycIgc3L} z0?TX4<*);`3BO@~*@&3IGxSX6C_Jnc0mT8KE+@McxUB=mhtQFk@qc^?FG2mhNTC|y z8*U8@1(0cM5s8C$a&XI_=jgDF;;qY6JGuaDD?2k|pgsDN>aCpz!~cR*HwjnUGZALH z3rj;MMp%}j;FAVdyn96EZ7$Wo`nr@Fnt%lsEx|9UEG z*%h6Dmem-2nlV+InYpz9hx*u&9*f`xzZO;_pK^J_Wh6de$ zS*%Jzsv&mb-cG;hY>3Fjboh|AE4bY;IarYsy)A{mE!q(WA{KMTCq&(&>w5DrLiJv@ za|C5a4WN=hSv2EVWdCC0CHrXT>L5PL*Irca=s^JH0RUk z;9kA*DPS*Sen!m1H5pNjj`H2|_%<4*>ya z0Sohh>TQcJsM94TYtW8!a$LSXe3I8RFQB>|^|X04PYHnTn&P0vB!`hD0oAkkb9(%_ z1wt1-x;Q+o7&wGCu?BCV^ruaRT|g5Vxc5>1DnRl6_))XuBs(wQa~G>j(!JX$Gz^0X z{C(!KYqsWRE)4U2>8QlE5v_~UHPj)@mKmu~s5mWeWB61A8Q}0om=(U|IV=$WfG4*? z5v}VO*d*yd(9WebtyO-0ma(v2m>53O94&vyaTh_#6MvX*?Ah|OeOs?jO@$h6IzvOO ziCzoUEqWLHpM&{J)AN9uj37twYQ0KztnW5X@a(p?(XTL9`aB$pBNs*tl@2 zI*m9S#)dFy@$&25qd(tAO!!MnroM*8^G8X5xBPl?E;F7OJTN)Xa3_|CpueF=auyP> zsOcA+#yZ&t_!bxcu6vA*y72;-$l~I3n@y};m_p4g$tu->g>;*AT#Zs&axQ%m)<~pNWfxSz~O1{zlm0UBidPV!bNiN9;&TI64BxP7%`UvkMmI}iW|ND_rTdt+Z#fuk- zjS2(reBB@ei>$o-D=FdSF^R*Ns(%)?+f!tYdyke4kl{#e&!`-XD|QtVcP$+wKVU^I zcTXuY$cz!4lYJ<5iA5)neM==SZ3Mu>3ALM^BswJ!lY-KWj77ZsMAmI=EoWMK8o0p9;IX4^nOZhb_}Y>z}aWS z4mgq1zB--P_R}*BxJv`#m)8CWk{7$TlJCs zK(YY-D@97}^7fIeLxlP}?v)aznMN@+d(HL9U=$=Dva?I&hcro+JR%V!61TER3cc%^ zt<7P{D@InMUu)qTy{oqU5z2<6x~RkdRqCD12D71ZrZ`X6!^5LhE2zgw-z3PBp36xa z{W4qrCeD2t=OUmP;Ml=X%YWWB{f$#!T40DrJDMC~4}YGcni?s*oSXy8MZc`S+3j}m60v;c5;1zjk>WOT&(%!?6peAL zV2ga`ndo=rJWVw>Hc+IOdZp7~WXE6M5>om8l=ZE|_M-La0#6{GW#U7VzxnaTc!?V~ zZV)Lk78w?{PTTaXhek(9$m~WSey|Ee>bF<*&skOCk7cLa*)rk;N8`la>*8eK(SoQw zl#@unt0VGQc4Rt|+9o5{#Sc>dmUzzkS`G7z{kzc8FvML;7Mo7|`J ztR($E8}=!2`6GkKWJ0zgZQh2akAUr1RjBzW-Ui428-3LGcI!@AkA;!a`aQE9B7iQJ zcgE9`>>jXSUH0h$6S6=aJnCKB)K&p$BV^pWl*;;}^!pJaozl#EJK`HHo;pV5aXJ)j zvcGHPprD>2A3y(13DXP|8}M9^J@sx;dJ>H~Kpe`>Btz07JUxRwoD{6L*ZEE0vX9CFoH>bvz->ow7DiY=hCs(C~LLw3hY6ceBPge z82ifx5~D#axZP9*>2WCK!w;fSE)S@yd%fOj(|0HI;cM9x+!C}4-?MZ6y~<*XN*zEh zx&XGI>20mcH7ANw5f&QCG!x8xe@By&shDx1*J5^vc z(pzt{RG4d1btDn8jlFq=R1fdI8}hY7Ii~wQMz%;~#tXmN=#$$4iI~=qIK-~ClTIci zBuvCL`R;x2c(hzJcuhn03GKs&590%bfyHY6p2D8NCfxRuYQwPh$n|SKG@A<+S!`)i z3E;Mw=#MrggDYhNJG=MN+yLb%^EP!Nw#uL=x7p&RC;hp7Z%8PPq(Q#>Cep=pxj1i|z6pca zEN5>ZXotpl1$e}FbgdB4wX^)}M9l{GS_nefG&ol^*Wlg{>finE+!))MR+93UQvaUhXSv!!2 z%hefB5^<0{OUHy5Tiuk0yG90^HCSUTZ2ZiS7ifMsFBWNSmpMdS>}`eG{=N2>aH`Js zwxFx?Klpa^3euV_BRr?>yZh-wZY~|vWm$;Dqr}<}cn+NklHEBGdAMn`isnD}Cfr{% z$NYX2>~6i$C$mQ^%g4WV*Q+}XS<~#;>h+{`sD|` zMX7j{PkZ;0c_l1MU4mDaM2XCrL=!RZ^2jqZGl1}kwk-6 zuY_qg^7#Ckw=KgYskbQoj~t6wapS~8{;*G@wr*r*FEu7s9tSOdYY2nkx3dJI3orp9 z{E=MYJ-K2}K*Mc0nO(cK48(gFJ==WI`9euLa!%DpNr2l#SkC=yIF+d#;;v+MSrq!& zcsFh&A(v>xj>cUgJsj$e{)_dXA46_5m8I{&cl55|;ckcpi|^k%D6OZsqC(SEA7+fi zM0liXo_9px`y|_3`aNSlUS0^aP>a#Jm;t_`GFcfJ;ce!*5ioPcVg^|!KMy4OJm4qR z3K82~OU;xZRUgqZ-!_QWBO#;UUQNxe^TSf!V1rQN91|lmGQ_?N4(j;uBwydMOlXiZt_~$p#NBgw6%)bN z4$5zJc6DvASBbd4Wn}Pi_u>P7NXiB1fRgO&b8}4r1pQb-%(e%Qgrogb$%RIAE2G8{ zx~^7QM_Zfxs5=mVL=r@-afJhWD3%naBvJdtC1ThzR=1F5Mmw!5m*$7-Umhz^a(J4>wN1t; z&-eY&t1&WcD#BhRhC!3Pvve=Du}*zN@HW=gz~~yQ#WU4 ziA`P|rzwxeD(_Hs4{2(Yy{-Vu81~NaHAIc$)KV_^33A%g!eP6f= z!O+lf0w7l%4$43W{A6#|Q;4mX;bWE~@|H^;%vVJM-r2<^8f2e&kfH-aF{@`eKt!J8#3%=A8*i5KhBa4*2`Ki52T)T(K{;(qP<%)LB|p#{SM_S&H#bL6r)_A( z{61d`-nO=i0eNInmu9PCSF$Q?AHMrnOR63 z7ZUiOR&Ly77LkIol_EAc+v$~5R8*t`dTa-Z>kYA?s)J>mm>U8bXYwlKeM2Q#Zut|H zHuAmzJ*XB87!6x-u4C77<3k>&$++YA2!2*x}P literal 0 HcmV?d00001