From mboxrd@z Thu Jan 1 00:00:00 1970 Content-Type: multipart/mixed; boundary="===============5412152184538285879==" MIME-Version: 1.0 From: kernel test robot To: kbuild-all@lists.01.org Subject: [jolsa-perf:bpf/batch 3/19] kernel/trace/fgraph.c:338:12: error: use of undeclared identifier 'ftrace_graph_func'; did you mean 'ftrace_graph_stop'? Date: Sat, 05 Jun 2021 22:17:37 +0800 Message-ID: <202106052230.vstaFSFh-lkp@intel.com> List-Id: --===============5412152184538285879== Content-Type: text/plain; charset="utf-8" MIME-Version: 1.0 Content-Transfer-Encoding: quoted-printable tree: https://git.kernel.org/pub/scm/linux/kernel/git/jolsa/perf.git bpf/= batch head: a97ee897c79e933a2db6534c261debb0b74128cc commit: eab4c0b2dead035b7b92bb88e94be65d15379ff0 [3/19] x86/ftrace: Make fu= nction graph use ftrace directly config: mips-randconfig-r012-20210605 (attached as .config) compiler: clang version 13.0.0 (https://github.com/llvm/llvm-project 8ec9aa= 236e325fd4629cfeefac2919302e14d61a) reproduce (this is a W=3D1 build): wget https://raw.githubusercontent.com/intel/lkp-tests/master/sbin/= make.cross -O ~/bin/make.cross chmod +x ~/bin/make.cross # install mips cross compiling tool for clang build # apt-get install binutils-mips-linux-gnu # https://git.kernel.org/pub/scm/linux/kernel/git/jolsa/perf.git/co= mmit/?id=3Deab4c0b2dead035b7b92bb88e94be65d15379ff0 git remote add jolsa-perf https://git.kernel.org/pub/scm/linux/kern= el/git/jolsa/perf.git git fetch --no-tags jolsa-perf bpf/batch git checkout eab4c0b2dead035b7b92bb88e94be65d15379ff0 # save the attached .config to linux build tree COMPILER_INSTALL_PATH=3D$HOME/0day COMPILER=3Dclang make.cross ARCH= =3Dmips = If you fix the issue, kindly add following tag as appropriate Reported-by: kernel test robot All errors (new ones prefixed by >>): kernel/trace/fgraph.c:234:15: warning: no previous prototype for functio= n 'ftrace_return_to_handler' [-Wmissing-prototypes] unsigned long ftrace_return_to_handler(unsigned long frame_pointer) ^ kernel/trace/fgraph.c:234:1: note: declare 'static' if the function is n= ot intended to be used outside of this translation unit unsigned long ftrace_return_to_handler(unsigned long frame_pointer) ^ static = >> kernel/trace/fgraph.c:338:12: error: use of undeclared identifier 'ftrac= e_graph_func'; did you mean 'ftrace_graph_stop'? .func =3D ftrace_graph_func, ^~~~~~~~~~~~~~~~~ ftrace_graph_stop kernel/trace/fgraph.c:52:6: note: 'ftrace_graph_stop' declared here void ftrace_graph_stop(void) ^ >> kernel/trace/fgraph.c:341:8: error: expected '}' FTRACE_OPS_GRAPH_STUB, ^ kernel/trace/fgraph.c:337:38: note: to match this '{' static struct ftrace_ops graph_ops =3D { ^ kernel/trace/fgraph.c:349:6: warning: no previous prototype for function= 'ftrace_graph_sleep_time_control' [-Wmissing-prototypes] void ftrace_graph_sleep_time_control(bool enable) ^ kernel/trace/fgraph.c:349:1: note: declare 'static' if the function is n= ot intended to be used outside of this translation unit void ftrace_graph_sleep_time_control(bool enable) ^ static = 2 warnings and 2 errors generated. vim +338 kernel/trace/fgraph.c 229 = 230 /* 231 * Send the trace to the ring-buffer. 232 * @return the original return address. 233 */ > 234 unsigned long ftrace_return_to_handler(unsigned long frame_pointer) 235 { 236 struct ftrace_graph_ret trace; 237 unsigned long ret; 238 = 239 ftrace_pop_return_trace(&trace, &ret, frame_pointer); 240 trace.rettime =3D trace_clock_local(); 241 ftrace_graph_return(&trace); 242 /* 243 * The ftrace_graph_return() may still access the current 244 * ret_stack structure, we need to make sure the update of 245 * curr_ret_stack is after that. 246 */ 247 barrier(); 248 current->curr_ret_stack--; 249 = 250 if (unlikely(!ret)) { 251 ftrace_graph_stop(); 252 WARN_ON(1); 253 /* Might as well panic. What else to do? */ 254 ret =3D (unsigned long)panic; 255 } 256 = 257 return ret; 258 } 259 = 260 /** 261 * ftrace_graph_get_ret_stack - return the entry of the shadow stack 262 * @task: The task to read the shadow stack from 263 * @idx: Index down the shadow stack 264 * 265 * Return the ret_struct on the shadow stack of the @task at the 266 * call graph at @idx starting with zero. If @idx is zero, it 267 * will return the last saved ret_stack entry. If it is greater than 268 * zero, it will return the corresponding ret_stack for the depth 269 * of saved return addresses. 270 */ 271 struct ftrace_ret_stack * 272 ftrace_graph_get_ret_stack(struct task_struct *task, int idx) 273 { 274 idx =3D task->curr_ret_stack - idx; 275 = 276 if (idx >=3D 0 && idx <=3D task->curr_ret_stack) 277 return &task->ret_stack[idx]; 278 = 279 return NULL; 280 } 281 = 282 /** 283 * ftrace_graph_ret_addr - convert a potentially modified stack retu= rn address 284 * to its original value 285 * 286 * This function can be called by stack unwinding code to convert a = found stack 287 * return address ('ret') to its original value, in case the functio= n graph 288 * tracer has modified it to be 'return_to_handler'. If the address= hasn't 289 * been modified, the unchanged value of 'ret' is returned. 290 * 291 * 'idx' is a state variable which should be initialized by the call= er to zero 292 * before the first call. 293 * 294 * 'retp' is a pointer to the return address on the stack. It's ign= ored if 295 * the arch doesn't have HAVE_FUNCTION_GRAPH_RET_ADDR_PTR defined. 296 */ 297 #ifdef HAVE_FUNCTION_GRAPH_RET_ADDR_PTR 298 unsigned long ftrace_graph_ret_addr(struct task_struct *task, int *i= dx, 299 unsigned long ret, unsigned long *retp) 300 { 301 int index =3D task->curr_ret_stack; 302 int i; 303 = 304 if (ret !=3D (unsigned long)dereference_kernel_function_descriptor(= return_to_handler)) 305 return ret; 306 = 307 if (index < 0) 308 return ret; 309 = 310 for (i =3D 0; i <=3D index; i++) 311 if (task->ret_stack[i].retp =3D=3D retp) 312 return task->ret_stack[i].ret; 313 = 314 return ret; 315 } 316 #else /* !HAVE_FUNCTION_GRAPH_RET_ADDR_PTR */ 317 unsigned long ftrace_graph_ret_addr(struct task_struct *task, int *i= dx, 318 unsigned long ret, unsigned long *retp) 319 { 320 int task_idx; 321 = 322 if (ret !=3D (unsigned long)dereference_kernel_function_descriptor(= return_to_handler)) 323 return ret; 324 = 325 task_idx =3D task->curr_ret_stack; 326 = 327 if (!task->ret_stack || task_idx < *idx) 328 return ret; 329 = 330 task_idx -=3D *idx; 331 (*idx)++; 332 = 333 return task->ret_stack[task_idx].ret; 334 } 335 #endif /* HAVE_FUNCTION_GRAPH_RET_ADDR_PTR */ 336 = 337 static struct ftrace_ops graph_ops =3D { > 338 .func =3D ftrace_graph_func, 339 .flags =3D FTRACE_OPS_FL_INITIALIZED | 340 FTRACE_OPS_FL_PID > 341 FTRACE_OPS_GRAPH_STUB, 342 #ifdef FTRACE_GRAPH_TRAMP_ADDR 343 .trampoline =3D FTRACE_GRAPH_TRAMP_ADDR, 344 /* trampoline_size is only needed for dynamically allocated tramps = */ 345 #endif 346 ASSIGN_OPS_HASH(graph_ops, &global_ops.local_hash) 347 }; 348 = --- 0-DAY CI Kernel Test Service, Intel Corporation https://lists.01.org/hyperkitty/list/kbuild-all(a)lists.01.org --===============5412152184538285879== Content-Type: application/gzip MIME-Version: 1.0 Content-Transfer-Encoding: base64 Content-Disposition: attachment; filename="config.gz" H4sICGyDu2AAAy5jb25maWcAlFxbc9s4sn6fX6HKvMxW7c7Ykq04e8oPEAlKiEiCAUBZ9gtLozAZ n/HtyPLM5t+fboAXAASV7D7sRN2NxqUbja8boH/+6ecJeTs+P+6O9/vdw8O3ydf6qT7sjvXnyZf7 h/p/JjGf5FxNaMzUryCc3j+9/ee3x/uX18nlr+fTX88m6/rwVD9MouenL/df36Dp/fPTTz//FPE8 YcsqiqoNFZLxvFJ0q67f7R92T18nf9WHV5CbnM9+PQMdv3y9P/77t9/g/x/vD4fnw28PD389Vi+H 5/+t98fJVb3/sNtNZ/N6Nr388vliPv2w/1LXX3b76YfzD7OzaX1+8Xl+vvvHu7bXZd/t9Zk1FCar KCX58vpbR8Sfnez57Az+1/KIxAbLvOzFgdTKTmcXvWgaD/sDGjRP07hvnlpybl8wuBUoJzKrllxx a4Auo+KlKkoV5LM8ZTntWUx8qm64WPeURcnSWLGMVoosUlpJLlAVmOvnyVIb/mHyWh/fXnoDspyp iuabiggYP8uYup5NQbztnmcFA02KSjW5f508PR9RQzdhHpG0nfG7d307m1GRUvFAYz3aSpJUYdOG GNOElKnS4wqQV1yqnGT0+t0vT89Pde8S8lZuWBH1a1FwybZV9qmkpbVmN0RFq8ojRoJLWWU04+K2 IkqRaAXMbi6lpClbBCZAStg17fqCNSavb7+/fns91o/9+i5pTgWLtLEKwRdWtzZLrvhNmEOThEaK bWhFkqTKiFyH5Vj+EeXADh17RUQMLFnJm0pQSfM43DRascJ1q5hnhOUuTbIsJFStGBVERKtbu+M8 BqdpBEDWbZhwEdG4UitBSczs7WqPKqaLcplIbYn66fPk+Yu3xv0e59Fa8hKUGvvGPKBSb4sNuAk4 ZjpkayV0Q3MlA8yMy6osYqJoa251/wgxLmRxxaJ1xXMKJrX2cc6r1R1up0xbqHMuIBbQB49ZFPAw 04rBYnqaHBVsuUL76ikKaavpVm4w3G6bCEqzQoFWHVo6pS19w9MyV0TcumpdqcDI2/YRh+btokVF +Zvavf45OcJwJjsY2utxd3yd7Pb757en4/3TV28ZoUFFIq3D+EnXM3qINmnPDo5wIWPcdxGFHQ6i oaEq2FNSESVt/UgEF0zJ7aCZK7Md0VpIZgUjyboQFjOJwTm2HfsHFqbzdlgSJnlKmr2uF1ZE5UQG XBGMUAHPnhj8rOgWfC40aGmE7eYeCddK62j2RoA1IJUxDdGVIJHHQMVgijTtd4rFySlEDUmX0SJl Utnr587fPWAWLJ9GjuuszT8C82frFYQk2ETWmc5RUQIRmiXq+vy9TUdbZGRr86f9BmC5WsPxllBf x8yPLzJawcx0CGotKvd/1J/fHurD5Eu9O74d6lezg5ojCXBNVuh1DG73QGvrTF8KXhYy6NJ4tsoC 7CIDqwOjjNYFh3lhuFFcOBHDTALPeq0/5F23MpGwDyA2RBBKY6e1x6s204AGgRvSwjsp7tGNBgvC Otz0b5KBQnMsWEBCxNXyTh93/Y4AHwHSNLggwEzvMjLG296Nt+LjrIsx1p1UcQgqcY6hFP/tQENe QAxkdxSPVDxH4D8ZySPHLr6YhH8EulgRgBiwXWLYANAVbFk47khFERPmbbDp8d0pwRBQjCsuCsAF cEILa1vjeaxSCEgRLZTOIjAoWBYukv6HCVv97wzCKQN0JhxHWlKFKKlqjvrgShtvOyWRGAwTPvU0 tByets7Ot4K/iQR5xuxxArgJH1hEgp3KsWGVkGYFObTgbpt2qmyZkzSxdoceuE3QsMcmyBWAYSsr YlbCwnhVCu8wJvGGwaib9QytCehbECGYtlVDW6PsbSaHlMqBaB1VLw2GAITDjo9UPa7rFxLIEE1S TuLggqHj6BM5Ce24dZRZmFhI+snWrbGppgaawlRpHFNrPfXewu1Z+QhTE2Ek1SaD4XPnnCqi8zMn UOgToMnHi/rw5fnwuHva1xP6V/0EYIFA7I8QLgDS6zGA2603A7/74GHygz22HW4y052BfuYsdfJJ oqqFWIf3ZUoWI4wylIHJlC+czQ/twdfEkrZwK9RoVSYJpCcFATE9bQJnmROTFM1MVIMUliUsIm5i BYAyYamTuei4pc9GJ2Nxs+5uN7BCtgd9ttv/cf9Ug8RDvW+KK918ULBDCWsqchoOC1qOpHACZ2Gg TsT7MF2tppdjnPcfQkeRPSZnv0XZxfttODgBbz4b4Wl9EV+QNIyyM0jHwZoRQnTvcHFlPpK78Gms uWAtmiPW8r28PaEIJBGfxtunnOdLyfNZGCc4MlOafF9oHgYBWqYAfAv/ZWEIoVcMNqwKw5JGQ3Rq pBtxcT5mD+Tn4Mg0j/nIIAUB7w9vYd0cEvtU0XUl1Mj5u2QVIK7wABtm2GEb5tUJ5uzsFHOkT7a4 VbSKxIrl4UO/lSAiG9mEvQ5+Wsd3BSSApOyUQMqUSqksxUktEIS5DPtII7Jgy1ElOatGBqFNrLaz D6c8SG0vRvlsLbhi4B6LyxF7RGTDyqzikaIACsf2bJ5m1TYVAI+JCB/yRqI4IRGb2scYDyLXh9ns 6uJmE4Zrrki1YXCknhKcz+ZX2ebmpDL6UZFlIcInYSPz/nx6GS2y0zKzi3m8kN8TurySm+/JzM9+ QGbqy3gSF9Mz58To6Zff1X4xOykDuEIJCFgQ2GZns2k5amqqlpSIKtosr2YXo1aQiQDRMlnw7QXs I4HViB+QnYdlGywwPOn9OsDqhrLlyspwugIkxNuFgLzYlKQsrKKTbp4xVSWQ8QKoQQhio2ydOgpi VZcjugHKhZWhRFJELsUcyliQCNRMsdpbybIouFBYF8WytoVp44zglor4ioJJlAOs+mYrroq01DUU WyL3BoIllgWC6jxmxElBkWPiYMMMVxz6Hh01IQFHm1NwNflpBaDPWgaI0gWmQ7pe4i1deg42A9uY kk81P81+f5J9/b6rnjoo0V6hBlH6pNm0ms3OzgIc2E9h8lWIfHlmK8FFw0upQM8D1mAEAwl3JAH2 1Sm2O7IbStYVFzHtMtS+wBrYd7p+pwdp1yYhe1AVkwRQzKa/7nM8ZTZdwI4zgNxdrv9GBH4kQieW dmZ3/PZS99bVapysELMWrOFUF+twOOwlzufrUDzuBeagox+cvpfRBc07OBH1Ml6fn/eBBI5QCDjo mH6gwFl5DKShpSAFT6jSN2oWpw1scYllzNRJ4rTKpGjXKVSIBA0QJZpNYppbLKwTS9y2MiNCaXVc gNpI8OE+wTEKtmVDKgYjb6JEsrjZlGdDBlhKXl91ST+EcqeM4th+wHWDo8/VITdJiQIqBCi8QLDK Czfh4oK0SxjheAurXxYjg3Ca5wJbyuupM21Dxf9kpLi27o1Xd9X0ImA5oF9cefdf52dhwI6sEaCP 6i9HW00v56MKz050dhYcsrMmROCu1vdvXcPri87ma7qlDsSJBJEr7eWhopj2TIiQSTG/aPvoNWNd hlvlT7zOUCwHzDHcLuDspCjg5AI0APzxtJGmyaikLQeIwZEb9BhlMT5HANjBs1OKWjkQgWNUmUvo E6oQr2DNzofRbjFKB8n+KiZax7QYriAm0WtzzTTgFUvzRiKFXZOiX+sYvHh7nTy/4CHxOvmliNg/ J0WURYz8c0LhRPjnRP+fiv5h1dciVsWC4VsH0LUkkYXOsqz0tnAG+6QSuYkVMPu8jxchPtlen1+G BdpK2nf0OGJGXbeWPzxZq8gVNwXlrn5VPP9dHyaPu6fd1/qxfjq2GvsV0gNasQUchbqCg/VzyD/t CNYgSon+FmA3nAEBPIbSO6/+37DkmhU6hIcOwKySKaVWeGspTdDrz9JM32hpXljRDVlT/QDBUdZR mzc1EHccpT1/GR6go00Xa/1hxRu86YkNMzw2fLUzXLxurgO1sR6ZeUER1hilFja/+QS2uqEC36iw iGHNt6m6uoeenk1/UQEn//K2ynjs11Eatxz1KCeuYCwBh0rNdcZ1/8KgaZ917YHR8ZJD/X9v9dP+ 2+R1v3twHhzgSBs45lGqJd/guyAB6Z0aYfv31R0Ty5Z+2qIZ7XsAbG1d3YXLIcFGuPaSbP6LJnjn odOVEVA1aMAh/sOw4u/OAHige6OvZn58PDp9LRULXVw5y+vebQYl2tUY4XdTH+GfnOmpGYZku3nZ fvnF973J58P9X+ayxu7SrFII9y5atN34qZPeDF2765l9fqhdR3efFLUUPfaUxLEbUh12RvNyZPqd jKK8u96AEXdjmMTWhNuqSFjAnpkZvk0ZbHGtMbk/PP69O9jdtJkNE9kNERTvIRGp9gUWzpcw6JY/ YERcUF1BUS7kbtigDt2CB1i6HLMokwTiY6vlRPtxmU0Rt4up6q+H3eRLO03jPvZijgi07MECdXd2 TKiSpOzOu+gy1QhAESSvsOJfbWLZmba929od9n/cHyG1fjvU//pcv0BnQRxgsHDE7WXWgNmjfcSc MCUL6lzn6usfvARDOA4oduRFqkYSiJxbtLzAMo13FcugPwRIhbDXW7PWfjXLUAVVQYa51LcpegAa c644X3tMLI3Bb8WWJS8DDw0xH9O7yLyN9AASJqUQBRVLbtuHLUMB7AKOqarMdXbs6zBlCZ4klT9z fGIMh3LzaNefqKBLyH4QVyGmxjdx+kVd4U+/uSm3STo3xfYhOoblRidmSaHFdPzBnssNAcTBiqgq iMA77OYdckCFpBEC4RMsrO0pD0kazthbGT1o9CAametj21UtTug1jOLtg0tbI3oGwBrtPWvndlmz we7Qysk9tTMPX0J6EmDVZq4FjfA6O6CBbtEtcvPSF8cfcC3MHQX4AMe3RKG1dLIXT0B3EHRrt9XV 0MQtYlC8iPlNbhqk5JY7D+VTWNBqASOHQB7bRR6TARnHx4XyikXcgq9JIgPzLlYQc8BksLVCs27e yIvKeTWua+fWQ4jQqxjjR8Z7myp7lYuQl4+9n7Jtg1G0mW0XoiO++dfvu9f68+RPkzi/HJ6/3DfA txsrigWeF/h9aDHz9oFW7Wub9qHDiZ6c6eK3G1iIYnnwocR3DpNWlVBVhk+h7ICsnwdJfMhyfW5V GHhcpsHnjA3HPHNNIViXTuq3QAsGq6f4MsQygczPraJNbj7TALPC4VPmzZtO/3TSXyDEWshLHsc5 fmNxE246oHcGhJhTcQiTKSlAPb7bigWGcQ8X91m1dhL6n3r/dtz9DvAMvxma6FdAR+tgX7A8yRS6 YK+j8UdnQY2YjAQrwk89GomMyfB9L2r0a2mdB40N08DQ+vH58M1CjEN40lRXrWUAAixZrGFalQ1Q REIgu17a5VO90GtMrfG9m2t6WaQQfwql44IupV50jmi+PFngWyT7/GoIZk9733aEaLquLyjWuZxD IGNL4QE7BHwY0hal8zxrLbOAx7fxV8fdDNwa/eb64uzD3DJNSolBHGHLuU9oG+pdwbkD8u4WZegx 3t0s4fZ3Vndy+FqupWmgGNChYZVeoeHxCkhEF+ebjwDaqFgWuoJioVV98OCnTXboGvettl1ulw1y vF3Kl7jxLO9YN9XRFntpr83r49/Phz8xVezd1brnidY0NFWIQVsnIm1h0zk1GE2LGQlVeVRqjQt+ 4AtrZocHpCluEbaJyNxfCDCxiOtRSbrkHsl/vquJ+go7ISPFEC0iywWk/CmLbgNT0BLG66k/hJVH oLLwKIAoHayIBoO0Y0AY9iCzyPmhl9iZXVzgYxYwW+hAYsZPOmlWmCfOEZHheAkCXRlQABqiIbAJ QkVeeHqBUsWrKARuGy7moqFWgogiOBjt1wU7xQSnB2/Kym2gWyNRqTJ3LkxxDfTUBhU2eYuRka+Z jQGMlo1iLqmMh5qRnvByQOhHYelF0xjf6dcDSeA9I4YcuJEmagcbzBE5QWLjP45cVAzcirVz9Le0 K4F3OiObvusN7COV4Le2euwS/rnsnC0UNVqZqFzYCUaH3Rv+9bv92+/3+3d2uyy+lPaHDWDAufur 8W59mez6ZMuDGSShj0y1hPn+QWL9ICaxu6BzJyQYihMTOpIV1Jx11UwIWVHY9Y2I8YaxAWas8GfM UuKPoXMRd/7g7WN6JVOeWqBUc+dbGaTmMUAujXXUbUE95nBLAtHZOS0lLKpjWJE2HyXLwfghlCME D0ZE3V4beNCsCQue9pE4CfIFy2TmfVbkDYQu51V6YyYxuqQotMpINPTDIj3VGkzoFTGyAnzG296a Ntjghoq9hPIYzVyX+CV3g1fsuIufiGMtIyMjj+5bGUhzdX4MMCgrvO8pe9FhnaQjBuODQSzPhxrR DADzY30Y+2MCvaIBPupZuIwsX4dYCclYCjhasHhJT7TF7/EsdoKBKdeo0KHiV3uQlRvhfraWuKlK hRzXkUpUEe6uYiIa4SwERBo8+Ef4MJUF45DSydHBSRaKNyiiTq1iu0jLtIRD1+0/J4Pfg9khzZ8X 0iB1Y4IOFeI37ZC5ChJTh9VFC5/U4qQBHciAVW0OTLTMljR3aZG7RYACcf2mDe/BNeu+ZvFbpsGb Us3RF7+eOM51RF6vjzd4MlAwHl6AyRcfzQFp0T6V3K5WmJ4+enZoaQMIamaOJaVw6AD2isjVyHjc xAApBvy6NKysb28dg8aQenXWdHrrOaMDSm7igMhwrkN3MX5g3oUMnKznhXbNtnNXHfC2uhDxOtk/ P/5+/1R/njw+4/e4Tv5mN6786OxoOe4OX2u74uI0bV4sukHNFnB3baBpjp9MFt+RSfxAGBBq9/ip o8MSD+78gBycb5kcrO3j7rj/4+SS4t/6wFoFgpqxo8+X7+Ln9+ZgxE0OOjJ8I4JlBWoXDE6ehlbi 47w2ML/1G57p5dyjLhgasHL+jIfHGSAWmz3yzrIRwh0e0t3Q0XXHeO6bqyFvXCty88ACdJ1GYdYo A5Sd1HmKMUzMfbXfWT2QYolTZG24+JcMBobeeCAZCAPw57HHXgEZLgQnc7ty3rxzA21ycjzsnl5f ng9HrNUfn/fPD5OH593nye+7h93THqtOr28vyLe3mFGIt1u8UmMFhE4CklJvZg2DrLwsy+IZRrBH EjpqbAEZaTjST/K1/VMIw0mIkXIJsG6E8MeWRj7lJvW31AYvaEeV8k0yULoYqkXaoPd45VPkgJIN Zdw/smCIeQiBNH5yw6WzenC02wvoDaD3qyurTXaiTWbasDymW9cZdy8vD/d7HQMnf9QPLyGD5Yl7 tDSt//0DqUWClQhBdKp24ZzrBpIM6QaWBOgNCPXoPYQaMBCzNFQXqLCFpo8gmbYnr+AWRiv+KK0+ 3YwGtA1oA8HgVMAGwGJFKI3Xw9HnXti3/NzBkEIwwFOakXyZht5bGbb5sKn/A1EnfKFxlr/mP+Yu vVvMR9xiPuIW8zG3mIfA7GhctzwklPUP7O9pDyoPWXgecgenGjX37O4yDMjBNuZv5wwEhhWDhtGB xo9hyNh1gC4QaA/GD94EnjZyMCQEbTkoJCSqoVUZ9ZOqhtHlVuGc3EiFLz+NAhCnixO1rEVxap/F 0aCihKS2oKT3ABImUcTi1zH3bxRVKDQdPhO22bOgBUa76AfQPORf7fZ/eq8RWvUDSOOq9xTYuCqy SxL4qytDmwsDXb/DsrM9q1E5uSLnQVOMtvA/KLblhyMY42K/ni1Nj15xUMShCpRy/hoi/gKnhaYV c77lsBiA1Ub0VJG4Ley/WqmJ7uUEUZnzo4pS988stTR8ccOiYC0cRVLi/iE6pGXF/1P2JFtu40j+ Sh5nDtXNRQt16APFRYKTFJkEJVG+8GU5c8b5xmX72Vnd1X/fEQAXBBjI9NR7ZVsRgYVYA7FWnPoY Ufsm2EQr2rKGwUpYnjxF0LKRqcwFcyBXZGn+sE+EYc+KQwmr7lRVtRUYZ8Bf4KOGY5CXq46nSlMz pZOcU8qrrS3NQ0gD4PA69JEX+A88Km52YejzuH2TlAs9m01gyQBoYe0B4+7uTFk3GXVLMCmOWQE8 cJbd8+iDvIqaR+Hfb32Bc8gyJ6ZsHd24lx95RNMWq95R20PiQMAa2YVeyCPlh9j3vTWPhKsF7c94 ZNfIrecZ9gBqMVoLZIb1h4u54A1EeaGrM82SE2t+UJhPGvgR0O0cF5xopQvIYVzENeu5ipEzyO26 AR6ojvmoMCLLMuz72sFhqwP1mDniQiRsKIOTxNh3Fca2JVsVzp0YDWM4mWMFC/0CS7alcWUNcH/p CtaB3aRBI2HTveEyWBIsIdbRPIELOKH2RM2BdkCi4qqiCCZy6agncGiUy7qw9PIIga1bUejJfMce pbWK9adTMS1KTUJ8NKCUzRIRPzQtH35DNZVIwSJrtP7BQIJNlicnbk03pttwk6tYoqYqD4epbzpt goe2YjUxMOpqaywaDBopbyg+NGrZP9j2Ccjhj4oE0yTo7vX5J42XqvZ8U9U9TJMYDZIHfmlRyEKY BkbTVMQlvMjEZO1fA5/1/HrXPD69fJvkRaaXn97Bxq8+jdEWvSA+OdDNpiJ3SFNJwiyp1uLub8H6 7uvQ76fnf758ejbcZSZe+CFrj/ZOvMFaxUAcfZ46olHNJEcHyS3mY3i82a+xW4kVqAIOBuupYmD2 iekiDoDDlf7+4O/CHQUJWc1SLgDcpbojKeNPBOSXhD1bFKpLzFAXCCKbDQFJXCQo5UEbChJbHZma IlvWcGiYEcAgJq5eJMl261mNIgijMHDguohbdAez2xC5wL/ZgH6IL/tFXxXIrNDA4aVLwksYwKFr pPkRNdbGW0IiYZXbAYunqTxLuHcwot7/PH56Nr1n8CLGMwoIaI+yUjJAmSIwsPsI71YJyHXEr3s1 fao6J/r+EuPOsUjMIU328bJDNYbmWEDP40oZVSPLEaBrE6MWaoNEaZezNsF0SBhipz2+07O0IZAm x8uNnCFAdmIdfgFzFKZMGwHSKsvKqxTc9EsAQClzlTXBhMWVrDXMrHIIhs7XO7pDjSfC/sufz6/f vr1+dh+crbKxLOjImCcRflci9q2eMbMrI1g7RmvnYsdIjZSumgfWmq3dFTpuoEnKwAs5O8IBX8NW 7Ji6c37dauwF/rfKlM2F07bjRLXH8J5OZ3t/jhs6nZqPMpeqc3amuzMH9qCpiW5hhLnFhTOFSgQA vJ7kBUgToUtl1HT3xEcnx2CoBqvTNllcap8rYyOhqLI5EwHhVTRZQcx4kvyADLn5/CwUQBkuoUv4 kha3e1YAI9wo3xc4N5kK+yRDv7ghUmdfnc4cUZM9nKFPKoQBmsxmh5Ss7okQvSy0P4wmUm6H3HE3 FoAd28QzLVpyzDGnjfYx+lZRnIsYWA9BgrUQIgxy2ylBScP2bxQ61W92as6gsBitJo2NkBjLBq7w QezqKeNEUXAc/4BChfeoi+1UnKF/GMEPmvxesIGKkYHdkRemhgxbyMnVA0WTOiJ0D3hGkjhdKiLn hjCrj8B308UxwFBy0ba3N+ocCXEVmQ9Gh5ifDQAhY3guZfZoiJy7WkajQ+PVPUBo/OxUtr0VpenQ VGpFmq4IKuhbXAhMd9F3paDGI9NtY71oVLFSUhsU3LvUziyPRVFdzIMDOPi2qoqlSZr2icQwzh/m 98+C052ecEncEGWnjmWy4LHq5LdPjz+e7n7/8fL0v4rBmp2ZXz4NFd9VS3eLs3bmO2aFM8RjdmnL mr2lYUuc0rggPp+wjlSNk3O6ylcwfujkq40qeVORmsOLsKKKFn36TE7sZiKeiVp72r7R+5kSDb7Q /NJFxrj52A7mQ6eNW6fApyzyr5wT1zSAir1T0XSMZTsyfQ3VOmq4inGii8BGKys2OENd9g+VpDay Yy26aJ2x2CkAIyYiAX7HSuEDi35woRpPt+xALKn0714EyQIm4V3PlO1lbfqUD8CyNGOwj7WaiXWU 3/cRpj/tddQBMlSAzLNTop2f+Llz7IApLJLmVsiWQEGubPf9QSA76AhYKgWeZDgF8LXctXEUdAwH gKF3MuIVjb2YTuoKzrmExO/GdC+LWGiHk7R+4ftfxIUFLDFnB4eQoslnzPR1CnfedwOKvzPZnA5p a6wJM85XlaN/VksXYpUrf0Q0lCfALG6KG4+6r/YfCCC9neJSkFZHF1ACI+sKfhPLqCpXuaSaCyw0 4i6pEXjREZj2NyX+JMA62iZTWrZ1KbM7aZgcjVIqE67dOV9+fjIW5LjSspOsMAyXkGFx8QKTiU3X wbrr09oM+GAAhx06b5hzWd5wIHjBciJ3YSBXHscGwTYD3vuMbCaM0vRQHdusU7kDNilmzcaFLIKd ZyoBNCQwQ2AOX9kCZr1mEPujT8QpI1w1vaOvomOZbMI1l2ollf4mIuID2dhCsQHRYSx82AFpnnG8 zFFIAX+gxxx9/we1kZ8uy2DflobF2TicCg6vrcDQ8g3AKd7a1JUBAYznJtquudnRBLsw6TaL+kTa 9tHuWGeyW+CyzPe8lXkcWT0eIrT89fjzTnz9+frjzz9UjoSfn+E+fDJs7b5gDOAnWMAv3/GfNHzL /7s0t/bpdYOR2IE7AA6kNs60LDlW5sChzzW8uWXnlP3Ulzo+CT5FBNmPhH8T6ZQyTaL4fXjzLqYZ keiRbw4wV8BgLmcx0PQNltsfjSuzr04025za5PS5ejjHpnPUBFoaQcBTEgPmuLh6tFrOYk5xC88k 1KoZ3QZAGxNbSKV2K0Jpw8hvUkYpkCjfQnKkAGNAbDEPpsYbeiBp3Erof6IDE3EmAWejJd2L2Z7g fOovauxVUkVHBp0LMP1MxYPSiVreF0SXi8wBwaPCf4i/aAHp7CJIu1vpd8QLbLKX3//ETKjyXy+v nz7fxUboCS40134dOucata37pOxlzp2lIwXq36z3EUJV5gmXUrtst+vQY+CXKMo23saz34gKibFu Ma0j6qh3qy2fS4GljrY77tykzXZdt+yRy7JgoYG2EPS4spFlKqol9iGJI0YrP+adkKVYImUJR9ys ZV8Mg4nHPr0xCoSU7+FFAAOHUYlksg254bIIqFJjNHT6xVVqHEuoD+P18vXxRh/YCmBcyPJam1k8 C8zR2YjDAZ9HJiIXHaAISObTzoJT+A5wS9nzzAOVqjQvnYQj2o2EMxf2SmwTjOgugtW72Q9dM54p 6EsHdzhfDPbteuWvPPpFAN12OC0WMFpFkb+EbhlSNdXTIM/yIZHEqesbEhW8I6Z1pTHcdLr/ZkUi qYuzdI5W0bWORpTsv++u8Y22U8AdnLW+5/sJRZQx8PtFwQN978AjoqgL4D+728raDHfpIXP2HY+k rHB0fz6vaLMTuPUZjMxKsehKBS9H1P44WtIBa+PCLnfq6j5ZrfsWzXL0zHOlgcqgMO+iyAs7u9KH sYecTH442Eg1DVzyUsenMuuBQbgfR4cTReHZZRWRLXC3HWv+B7wjOq8k0lqSdRRG09wawDaJfJ+h XUUMcLO1e6LBO0ffxzPTKjQ8QA5w9AQN/sktGjilF6FMFJAIH+DFSs/zsZwlfNIlRbuPHYlnNQEc AvCWB/7K1SP1OMoz4rWkEORSVJDyYinjNFQmCXK+jlQ9qqr6AZ6quzcJIm+zzDWHyLvyzy+v8Nh4 /ovIW8eR68tztxwXDddpvzaR69tHskO9GPARNXr3d6ZAkFKUGM1xMm6uE+nUegKu7+AP84Zl6Cfy 2gwQXdeYS5iG9EBgmqHwJaPAyfDUgJV1TTMs10N4FzuV1oyviFEtAkzZY3E0VgiqTLUJkMUKIyKJ W4v0Pr4Cp0BhNbym5dkq2rRF5JtShhlIhAMIBoZoGzlyPiEe/uc5E0SK+qh7NBW5Fg67vqsLfmUt TPRTkaQvV7ZVsyZivlFlelrsAvH1+5+vzoerONVmGEL109L0axhmb8/KQR86t6hwOgYghpdib2sk KWPgxbp7LV1W/Tr/fP7xBXNFE3MRq+ayOsvM5S2tST5UN95XWqOzi2VjN4It/ZcxVm5zJF32Prst EnIte21sePzZ15KsuAnYx4Ujm/FMsr/xVp4zRVEdBPxd80FcZjp5O8U13oe/SgcXriX4ZqiT20Lj sqBRHiQqvxM/DBk+JLOEe1gb3cqQ96OZG40mqnNyvBfcHp2JcgyAhg0t61gKwQk6ruEoV23Yc4s8 +G67ssHJLa7jZTP4pY4Xmia4SGDdY6YkXjXOUvOU0cvXQlq38LSJML4QH2FFkyinHtbPSaNxXCRa vRPbOQMMj6NttOXvcULW+F7gOwaIELYlMNkltTYiBOeqr0WXCM7dyCTcnwN4NoSuehQ64NKJmlTI tGIQV5GcotCPXJUltyhpyxhebO+OhCY9+L73XtO3tpV1b4esZEjeH1VNuLKkjxwFWWYmAWpq6qZy deUYl7U8ioYVzhl0WWYGQiOYQ1zE3Vu4hRaMkHRJSCwjTWR+/iBaeeaRh6pKhaPho0h1Ug7+o28A hD9Xm46z+zJJgaUKLPMvCw1vqXcXj9zI23bDqXjIB51PH51rJrtv88CnqUw5siJ27vms4A4sk+Ia o2zgGnme76pEk1hLl6Us4873I1axRciSMfMaX0spfZ9LpkSIsiKPMXlNvXLWIw/BJuQeEITKulLI XJfd5lz0rXTsNHHKOvP1Qeq93/qBq2t1dioxJNB7U5tihKR15234NtS/G5r1cYG/ipMDK/q4DMN1 N3wg39NfOcCvaatkWM4j6VrCmezYuOqNAS+jSorWuReQSB8t73RFvUXi0wfhvJaQIuQfvDaZaDkd zKJf7bnZO1YB4t/c5EiQlglOwbv3jOpSM65Xd69TLe/5hdqUhQqmwXHvAUVWtabuwUZ/QG8a5wpS Q1TwJngLuoD3sbHpPt7aprL0ic7ZwRBAq7XFeNlkaif/SnWxvL05A+rfog388J3aYMbVNelYOYAO UIXhZgQ0hfP402heeWPSYUxR1gfYvM1EQULvU5x0b3zZ+gFJkElwZW5a2Vi42rlnZBdt1u9dEG0t N2tv67zHP2btJgh4pRyhU4kt32msqY7lwKc62VjxINcO+QZpT5xEK7hjbnjdCvM20jBg7f1Vx0Pp 3AwYxbon8CSxV7LG74FBdmRIHN7vYefB97Zt5XCeHKQO3XYLk9BXJ3i0vyGcQLJdCJwpvpHszgI6 2u22LmwZRytTxKTB+FTr98AQkpASMyrNkspKVGRgL5gv+Y0Pi+HqRHPBNuMUtpOYQtbovKXo7E7c d+2HnQ1UWajKeEl9gwOdKN80OCl9b1EJ2hwUcVs184BZvW/gwurra7OcP/qkxA0U+NFMulhGXR3A CVVni56dR8GW1XQdFyXqHN5tvE7ytbcJw742syBOuGhtPvcH8LWcZ9xuF3DvTWpzH3lr7Npba1Ut j6Zq4+aGtlr8GkrjbRB5w/jzsbo12Q4+UW8O+2M0w9QzY552RcjtdQXmNrsoYcCT87KbcCAFm91b QwIUm2DzFkVSxqGVFZV+Y3MJNrBGhrFgxgoJNuv3B0vRbd0VNTodCr+2bIlpW5ci8Z3nUlMK+wWu QJadn4JJNmu9QuWmLd4Ise98BQ/SwQbLpje9XQZIYENCb9GpPOS91gckP6MauSYGHEr8enz88aQM s8XfqzsUYBOzSfI16if6L2h5K4GSPPIaNJiXWcJZjQMgajh4s2BdukmQilNTany9Z2tWm5gveLa+ 5xCXGQ1DOEL6k1yvIwZeEDs/buymUEOcbkALvD8//nj8hOGHGMPptmU1s0rioozkiU5SwFKHXXNK CxpdCbXFmKOE5qPRcDTV00bQLEa2DTGFUyitHZ2zL1hoKWyAFLkFGrOH2o3itVjllHr/RoPH65Bp ypz6CahzfoqqzLjH3Uy2j1emQZKBSMogCtccanLYW2CSpG1oeJcZ16H6ynE3wVfyHW0T+L92fWLt eOBiIcFy+xqDR1yfNCZDZWIU40gYXAMpAHLK2EvdJDudLxVhJhDJVnyBz+hVxLQ3qpRtGH6sTfte G0MvxU4UxY3skBGi7ehnr+DFHjSOymGYm7NsHUmntUYrSBilH7mjYUSUOgtTEJBbDSdiETzZRB6h lOluj0CtUNf691n1rvqRfH75znYGnS/0mQhVFkV2OmR2R0ZFu6MrGm0p80dEAa/v0HOEHx1o6iTe rVec3JBS/LX42r4WJ9haBdcysMKOGlUeEaOoVbAsuqQuiDnxm6NpltdOUsrfh1aM+Wv2sy8aVjJd DuicMk/NvHT+/fP1+Y+739F1RatD7/7rj28/X7/8++75j9+fn56en+7+PlD99u3rb5+gU/9N53bw sqFdSXC1U8MJPSro26q8ySjzYyGtqBwWlouvgCRZmV3Y5xLgln1R61H7qWqfZJM3UqdNeaCADx9X 28ijsPusrM3cTwir8Nuk3TtYX2zoBYOkuQ87WpUUpRZ8GTBtTvSPKf0ZHCBfH7/gdP4dWEWYycen x+/qVLEtTNQ4igrVk2f7iEiLU7A4Hepg43Pmtqqz1b5q8/PHj31FL1rAteJkeVMg9CJg3aqjaOx8 9fpZr/ah58Y6pL3OpTD3inNpk7FbLiIFGlwmOAw6NaFzkz0Q2pcPp9W53ZGAJpCa4WMaM6P3iw6H xnwk6JYLkCGKkNmb9GogeM71krxHUopaKJpjwktDZc3ZqFHXv6OkP8glo7l6Ke4+ffv6+uPbly96 Rmfwlxd0IDGZTqwCbxy2QzU1odC2VG0N9Xz79H/2wZZ9VWn2tGnrHZqgOHOIvH6D+p7vYBnCrnl6 QZ9C2Eqq1p9/M31flo2Nn74440enzAGBTsxnM8ASwPVFtqTHqyE/n1TiPFoC/8U3oREGO4crbmib H8uhX7EMtwF3Xk4EKH3Z0W4gXIkVgiW8hPMilF5E+Q8bu8RIYUdQnTCdv/Y4SeVE0JZ5t6xRS4G4 GqGpjBfrjxRKSrOsskqyomq5KmfDXungYEZKZXDYMf1VCJ8ZGoUIXIi1C8HNzmDt6GpDYdSKb56/ Pv98/Hn3/eXrp9cfX4iJ/LAbXCSLOUeeNV42mcjVtgiZUVaIyIXYeS6E8b04B8RvYACohJjA7B6H iGVrPxgpqtziD8YionnAiZ0RencNxNNKUKyEvMmct6PSnC9vxKZww3am7S+ctRUQRdmhN7PgOrnj H4/fvwOnppbf4v5U5barrhvdtGnHtITE1bUFd6c/Bub1ZD6Itcj7Gtf7Rf15i395Pi/tN7//7chU mrKxtxjFH4srb0mnsGhEl1y4za/Hdh9t5LazRzw7ffSDrQWVcRmv0wCWYbU/2ziRi4s9OFJUds2Y U9l8pirgNUl3RPyqoBPPZ81dmfY5Namz835yS2Ni/xX0+a/vcEcul0yc1ut1FC0b1XDb/ZiSnOyF e7j2hFE2VrPHQYPFPGgodf/WgjZ8uYU2/QB10W/tVrXQ366lrUUSRL5n82/WyOnNmKfvjGgjPlan eDGi+3TrrYPIvXCBwI9YTnxGm7eE3o6aozdB9mtF74o63K3CBTDarjfrxRzQ83yaGFTCLT5L38Lu r1IqWNc3ae1qtFnMB4B3/rKxAcHxM3pfjQYitBiAd7sVv4GW06kNm+X+7Wkm75ypOqaYqu7y8uP1 T2A6rcPb2nOHA1wHqHRzHl5VMmYIHxpkKx7LXA3B49Xv9TmkmvV/+9fL8KoqH+Hdb34eUI6BTWWw Mq9jiqGe+SbOv3KP35mC3sMzXB7IA5DppNl5+eXxn1SkDTUNT7xj5rhgJhLJy0MnPH6ht7a+0EDx G5nQsLYbtJaNs4HgvcKEgSVFQ8+F8F2I0NmPMOyThrtNKVXE17w2fW5NBJGxUITv6kuUeZy5BiXx t8wSGpbKxFaiKkCFEDE0EwZweDWRd4CBHdgl/t1l0Dm5GJsI/9nGDa+kMomLNgl2az59qEk3ae9/ gXLRMkM1MTFsHRo7KVg4PWaG0u2eBtcbirE4DLdS8ijdMgaOK248dBkogWCP15LVLtToEIuEZP1p DTpGrD7zbhkDhSrJa0swOtQCPSBRGHJQaUvrtbcx9uc+buFIvPVx0ka71TpeYpJr4PnrJRw3EXXJ NzERz6ITEj7VBCHhruCRQO7Jq3z8RADzgqr4FDN4q9L9Q7AlLv8WgsojbOQxfXAj07Y/1xhpTuK6 Ywcu3lmWTBYBmixvvZW3bGTABFy1/6HsSprbRpb0X+Fp4vWh4xEAAYIz0QewAJJoY2sAXOQLQy3T tqJlyyPJb17/+8lMbLVkQTMHL8wvUfuSVZULYa7D3X0MjTZosEj3hj2SNhUmzLU06ToteaW0gQdl P1YpfGBQN+kpaeosLtes9QKfHzoTi1g5gctZ50hld1b+em1mHSctXeB3LIEfcKUzpVQV23DbqtJu GyZrGCkrx79YAFlEkgHXtyS1lm9FJMC35eGHljz8TchWFiHeRmGcjfnWWzHl60RyLrtek2ttjvF9 dNwn3ea0YpawfZnFu1T2sT8gdesvubFdt7DkMW10FI2zXLpMU3SHK7Yp4s1mw+p51oXfBqiZ1i/6 PZn2B+0niPuKY8eO2L8YHNQgx50fsfs3kMU5UX90hRWvVw6vX6OwcJYHE0OOZlbSnqoAvg0IbMDG AniWPBx5okrAxpXXwglo1xfHAqzU854KcW+6CkfgWj9e8zueysMdu0eOQ2spG4iJ7yTeiHXgzpb+ kl536FW+LNq6zPhsqiThDFVHhvZSMR0k4K8ora+iM+OyoJVsJjWAcRO4bJXRJZtrCUXVs+zWDpxN ODFQ5gjd3d7Md7f2vbXfmMBeVlceuVs4Nh4xtC33ReY7YZNzlQDIXTbc8W/kAAkqYj+F7pz7rntv LsziHNJD4HjM2E+3eZSwxQSkSnhV75GlDbk9fIB/FyvXzBHWu9pxOX9+WVokkRxcagRobWfWkw5g FoEe0JUdFXgzP3k6Hv60I/HAzjw/IJHHZS/WFA6XaSoCLPVeuQHXhAQwsxGlFpdpKKQHy8DnWokw h7NZVTjkBx8Z2KwtiXrO2uPEWYklCLh9hQAKBcIlGwSruclBHJy3SAI2fNtAUTfsSpSLylvOLq2t CPyVmSjIMa4Xsl2UFDvX2eZClwFGhnoNK4fH9HoesNQ1T2U7G+hzcxlgppuzPOQGIZxJWSo3kvOQ m775hk13w02SfOPxFdr4rkWFWOFZvTN/iWdu/lYiXHvcbERgxc26ohXdLWHaKDpBIy5amFZMIyKw XjPtCAAcrpnmQWCzZAZiUZF/L67pio+X9vqhjj4kxdyMoueMjTSSK9Wd88iXD9opjAznBrxWncIz KyBt0U3WLuEy2FbRtW6C5fxKv2uqq8erI49b4VXsdhVTt7RoqiMch6uGRWvPd12HKxpAwfwCAhzo k4j/uGp8zfmuydRkQeh4vPHcNLpdOOFzIXKVfXAdslOsg/gLP5PXCx3rPuN7rMW1tk2xjdFtQu80 BjC5y3e3HWDx+X0HNgJu+UJktVrxWwSc54OQv6kfeSpowNm1JQ/Wwapl1ojqksDuzKw6f/ir5ndn GUbsoaRpqzgWwVxDwBa1Wq5c9nPAfC9YzwkFRxFvFNcIMuAu2ba6xFXiuPPC1scMqjs/k9FEamfx jTQ2wLZtWNWzAYfzFjtMAZidr4B7/zZrDWTBrgBxnoAgNLfpJrlwVtyGD4DrWIAAL2bZ8ueNWK3z +XkyMG3mFv6OaevxEl4jDn7gzi87xOPNLTtN2zbdZGTKmIMkN3smF44bxqHDiCxR3KyVh+wRgKYL LWt1EblL3uuMzMLeeEkMnmUraMWauyAa4UMuOLm1zSuH2/GJzowNorPrOCC8J3eZwVL2vPLZl8aB 4dQ6SrijgX4OvfXaYw7hCIROzAMbJ+ZKQZDLq+UoPHMlJQZ25ncIrixWjUeJNYOdgjVGV3kC1ZJG AmHyHOYuMDqW5LBjv6cHIeZrkjcVdzYdwQw7MwBNG7Vp01sqaliSJ/U+KcTd+PB2jZMsurvmzW9L nXk4z0yPUj1QctUcwHOdksModMFbMUUYQkDtyxO676yu57RJuFxkxh1eOlGUEP61jPmEwsY0VcQb 0PcfqGmbhdULycDoSJP+4upgL4iklnva1ckfwyczhU1yFNdSvk9Qg4/5ttPINUeRae82UDT7i5Fc lOforlQtq0ewM/Ijc6RrUmD3c1ePIztGByZ1a0xvacCkMPlbr3Vyvn97+Prp+cuierm9PX67Pf98 W+yf/3V7+f6s3pGPn2Ocqy5tbH/jln1M0BaSCaNcyg00PcF1DwYjZm9vs3k7naJ5MlqVHq7ohEFE cnjd6YrBTACVEJfBhi1v/8o8U9zeAa2Z7Mc0JatmExmMnbkMe+3P2QY6c2n2jypM9aILKkZz36Ar AZM82FebSKfihg6DJhoa7qyWKg0daC+9UCWm+b6KhUrL0dGc6/TEQQPs1z/vX2+fplEm7l8+SYML OCrBFBt9B5VNk25VffeGj/oo8khml8jKeEW2Q9lQkDP+eR45+khSecpG5ZNZ9nkkriIvjEwG3Ka8 0jHpkecmW8HPP78/oImF1QVuvou1hQkppp4DURtvLcsuA01TzoFh0mmsuvzphD6LWjdcLw0DH5WJ XJpQROGSDZwx8hwyEQu1YORAcqle6BA93vhrJz9zquGUIDnA0CrZOcVQnUACfVTOVHLoqFbnatTi qELPXoKPqPwqPRJDjijfDU5Es09wCfX4Fwz8DGHfnS02sdhKPdqoGJ8EnJjZg4orYaIpOrRI2Udt grZEw7uT2tjC8XqFE0smeeUG8lMq0g5pAAI8NcsEwMH0WkVNKjyVBkkrKryYAHnR0EbJqOqrFDAM qzy0nNMn3J/HA9Ykpxtso4aGNghRwcLl7jUmWNXNmOghdxKd4I2nTwOghiuTGm6WXMHCjWsbRIbS x0QMNWIbeIFZfqBuuDsEAoftXk1JUx6WkKK9sAGsEMNtUk3H1A4aPd5EsTJwR7rN+yymP2hjKCWq hd/6oW0+oSGV1ky9BKASm0QYnk2Jnq7WwcVmdUkcua/epozEubo0H+5CGKXavB78gXWxoNr88eHl +fZ0e3h7ef7++PC66JTV08GXNSNPIsP4pjnEiPq/J6QURrMMQZriTDHSNxhdib+jheswNFLJcn2o GNZyqM/jLH32pEpKQPLVpuQHTc7I0N+fqPoeIakPKV2JhYU6sIG0JdxXX0ilFPn73ZEhDKwpT2YG JtXlqfp7do/Bcuvx13rtOVstvRmxAxiC5eodueScOe7am5smWe755uRtheeHG/sO3P6RX0L++YcS LcWhiPYR96xAUspo62ISTdmFpATZxQbVLPeVO7SBpncL2XAYg4eo9gEA8Ip1K9WDijfRicZ1MiL+ cmbT74xMtKWQHPqh4c7lwiO91hr7jarPJmEgTl7yI3dz0y1ydGwyVr6dXtfRCE0TgQX52uJrOhwZ x7VcdmxhE/2nc17/SiUf/QY/c4PStgF0oZ5OZdZGqkuRiQUd5hyjDJWommNu0cOe2PEah25x2A8M dpCH9rCKcGXDU0soW1CpkHqgkbDY92TpQkK0A4+KqMceCaPTwmwluMOJhM4YpylcFgs1jcdl62ZM BKnzNWtzBXFctkEAceVVQkPYb3ZR4Xu+z3YYYWHIpqgbA0vuEUmun22SjuXkax7WRjxtso23nG9W fEp21w47mmDpDzy2WVFgWLMNQQjb4KQYbkkNtmGfr0O/Rc/WQRdVJKTbp2xQsA44iDuIqKjPHisU HuNMoqBhsOIeWjWegB0z02mEh3y2+afjiKVEtv1OrxX70qIxhS7fsKJyoFX48lX+yuG/qsLQZ/sQ EX79zKs/1huXbz44V/GTmBB2Co8nNAMZxV8TEdFmZRsCw7HpnRavduHFcuCWmY4fE4cVRySmE6xA liogxC9PBG1sdTjzppATxx/omR8dv8wWjbjQefVJDxnfM9RRU22Tur6rUi3EB7oK4gtH58fZbI3j pASBOMTS21WonhllDA+57zRI3eYn9iJjYmncvIqW7PhEqHEs+Td+Hq4D7r5A4pkOr1wK2R5E5neH Wy8GzmcE+SyDyJLPXRi6q3mpgnjWBdcKqKfiBB67iOBpytXuUlQUVp/59cs8kOpYyK5S0uHUlrXj caoXGpNiCKNhmum6gc4nf1I9DU2Aad2uYJqJOz9/s2ibbhX/HbWYOXpimMyrSATZTpYWC9WOi+Gg a5b9y/2Pr3gnMjlwmh5MVSttgiKgye5K+wOGTCb67uX+223x58/Pn28v/fufdFGz215FHqM++9SS QCvKNt3JYWSVptildU7O56BC3KMnJgp/dmmW1YlolZQREGV1B59HBpDmcHTZZqn6SXPX8GkhwKaF AJ/WDrow3RfXpIC+UB51ANyW7aFH2A5EFvjH5JhwyK/Nkil5rRalrB6wQ6+qO9gI4Ngm2xBiNpH4 kKmRRoCKBr69x0M1mTbNqKpt5yjW7Pevg38445UJvj6ekibSmgKfq8lzH1/Nxonpcl/7iq4bLV/k jTjKR2vMOM60BFB/dX9pQc7gdpXdlrGRA2J/rNXSyhOMWlHm3E0QFijNq0wd9U0DtVoqhvHs7KH2 3d4//PX0+OXr2+I/FpmIzaCDY1kAvYosapreiS734jj0t8IoV2ji+NDGriW8+cTUXXO9w1Sx/icm nFbCc5bEfEGsCjwTSxSjSLvkvyfQYhgmFXJOtFQqHHhL3quvxsWdVCSWKvT9C1/i7mT2Th6DVDKb C2ckOraLdrcxIfrxWirZyXeX64yLSTkxbePAWfJZ1uIiioKD+pssDhpGRj9X3pkRw/dZuVcqgb/R ogo9wcJ8ZVtX4jntI4e/iZWYRHZsXZd3ZWNstJLqQXksYmOnPcAmZ3jyPWiGrmk82fW3dVLs2wNb SGCsozPTTccuRSm9yRNa9w7z4/bweP9ExTGWceSPVn2kR5kmxNEIO9IB9ZGbu4RVyso4ktJaIyoh aIlyxOjXKm2bZB/koFgdrS2rq+xknKjpfotB6TSyOOBhSael8EsnlmSqqROP+0ij5RFqG+lfk3ym txMczaI2xSmwXfqWMIbEZ40Kiij0+b4sakWjbqIZNU7ypqMpWSQZK3V0UCJkL64drTRS+KhFYFDQ fZJvUzbSK6E71ckw0bKyTsujrdaHEgNjSaWi30ZtT+kpyuJUG/xtEHq1niEUn0aztQ4f7rjtFZGj II93eornKIOhaPnmlCbnBiNfGRW/q0kt0fJdilphan3SViP8Hm1l72FIas9pcYi0qfIhKdAnqOLD HemZ0O3xkZjEOqEoT6VGg3YwV4qBij8qJbLjiKg+axS8PubbLKmi2L2ynm2QZ79ZLbVhjeTzIUmy xpZ4N12h4yi0q6W9c+jEWlUS7ch3OxCn7KMFJG+ahLZk0ZkpqkYaCZcYBoENZkIwhgrXgrwhvWhT PaWirVNOZxAxOCXS7FE+qKICNVth4tkm6hDt0PgyaaPsrrAt+hUsqLBrG191ZBCPra04sIyCwbuc GHPbVgyMjEzR5rStBYA70vOWJ4JENJaVqoYj4EWl1Xgm0KdmXQoRtSoN9hF16SJa3hy1qBJIhn3I WmNySWCJGk94m0TGsgpEmBGw97PHL+I4FlWmb751rq+heK0YNanspHAgGc3V5FHd/l7e9elOMpFE n5uksElySiYEwbE30Vem9gCrWq7TMMTD6Oi7R2SqUewjilPXqvE0srv7mNTGBkjBVS2lPKepGjsM iZcUJpOeCqaMzWFJ6ONdDNKVvl53Zg/Xw3HL0gVUEW+X6ZcmVGVVY6xAonJd3cHEoGfDCIqjs0ZW mMXbakagrVLeUKVnN0LVS84d5WymAAxc3hTFAVc7ZWOYqH0YYjYnPVE9Tf31nePFypQHkUpXOxhf QdLJ4Dh678E6h+X6h0JZvpuCzmGWor87VIkwojWjFaTCEnu17C0IH7MqVSMXdUkVhebQCsmko3+I mutBxAqiZxoVBew8IrkWybm/wzBd1eePrw+3p6f777fnn680WJ5/oDaEqjE+GrbgZVfatHpWO8gB zQZoSdcWSoUR43Ojjm2eFnA8sLKVra2pAMGwOPFRtFlXEA2M04asf5ILLFAFWhEdjZbBHY/6g9wz NVv9ClhuRDiwwcEKtvG4s1T6zVXT0tzyTVP7+fVtIcYYA6ZWHnVxsL4sl0ZPXi84+HhqJTD+YpE0 UcOhTACScTRDgvYWv2AEz0OlM0ks6LvNCS59udT+h5aHz+dzeK8IR8dzZxmaLHScmQLWYRQEPobL 1FvuIGLDOGGgk6dDvMxlu7G30RFP969MABCKuFxTGC496XPMbW2ItPl4i1DAFvefC6pbW4Lwmyw+ 3X7A8vi6eP6+aESTLv78+bbYZh8otlkTL77d/z3Ekrh/en1e/HlbfL/dPt0+/dcCo0XIKR1uTz8W n59fFt+eX26Lx++fn4cvsV7pt/svj9+/SI8W8piORShbYgMtrTTzh4524gbqRL/izGp+CxmwgN0X pEpHaTUA0VzENgLw22PM6913sGHiofQJRS+ZexSiytPAiFn3sbSEnYWndzbSaBW3L3zIMVe3jmMf xfvEthYRR4wqY3WZjRrB1dP9G3Tzt8X+6eegs7toOKGCvoc9XL9s7zGXqZVrlLl7Hrv/9OX29s/4 5/3Tr7C+3WCMfbotXm7//fPx5dZtIx3LsMFjOBMYqzeKf/LJKJaLG0sXCS5jSzHW2t40rulBdURO qLje8M+FI1Nbw5EJYww3CZ4jLCET1Nyo3CAR2QYLutnDmOTazt5TQV4WFiRvjDV8xNKcOzYqLEbc BgVtk32tFYkccwZLlmiupx3g9OVXSjl+g2Zfeo+xnN2Yn+vdgdMY+zjQaHhNK/NIVyUbdulO8lTW 3+tJsnoRiQDxsVXDu9Eym5waNsZaJ2Bg2PizuStk1s2rv7KEf9ciMBYYcWd4B5fbJ6b7GLXYuzZO 6ZbSkAvx9hjEJDyus51DDNd8l1Jgks4lpa2ihigAswhkTgo4zHt2oQKX56iGiVOrRcatWJfC0Vcz bdG79NIetR0IRgZecezOeinugNM2SZKP1DwXredBTsR/Xd+5bDWkAYkV/uP5sn8EGVkFsqskapi0 +HCFBkYXpIkpMEOjlo3t+pc6qTWVDHBUV1//fn18gPNkdv83F0iNJJKDdJlelFUnHookPall7EIC KOeONjqcSv0wMRK7Sb29G44DM9PVk7WM0Mp1vezLpZxMLdVRSknLg96A/aIxv9/LTNcdd0MgcWFD 4DPA+TeXQXup6locMdj9boeP/q7ULbeXxx9fby9Qk0nmV3tlhyNIdWMji84zcs11X+swI/WqfVtd IndtLFr5aTYfhD3bAtUUjAhIVEiSDh4qgs5WNtoc2wKnsecVSeu6a0P66MnXOOdCAEldY0agoT36 mOd35nFCHntsn6mTeIthSMtGeS+gs8o1wQVZW3Gvich1UnPcKh77O2pdwAKsE3cGxXK26P67M0/z kuD14+X28PztxzPagj88f//8+OXny/1wsldSwws021LZHrT1uD2MZVcPmKisk/A6m9RX10LMoNST 1hk6BJ4zGmik9yVVZ9aEUpHfTZyXmva2XqBrOdukjM7ywiUHWnm3e8a1+K6SA2zSz2srqpyhCeUt oyPXrbN2HP69pePoNI9nGChl1LpOLTGViatb2XgvXH06pEIYslZ7xHCIvabxFPeuHdC0kLgTTHHF sA3bv3/cfhVyXNp/xjc5Sm3zP49vD1/N682+2hT/1qNS+56r99D/N3W9WNETxT19uy1yPBUZW3RX iLjC+GZqlIgOKU4pqiZOKFc6SybKGARB+dqc01bVN8hzi+F6kqPTHu5tBC8Q8c5sKindoJF2lJz0 RL0aT30mCz3MiTIrayONbY1iXYHy8OGMwlKxT0xVEHTyYrQufR8VMB79TaQVOEIfZ56ZWxfKkH9O HRl8TuObYFLvWhrJEplTPJpQsyyoE8X6ox3RjWznQtQunphrpNXTbRbHxKPeL3eZoMHuiiHKth89 0deMswayf7n0V+HWqmh2NQMxlA+hUzV8M5uePls95FHMjIjaG0ziW+VRH9TVOTdymnNU2Q2Q2O28 qGoN0Xo+a9HSXUCLCJXBtfzbTPgb56IXmTP6GQA0vbEPXhxo/r9thWBs/YmeNp6zyzxnY7Z7D2l+ 67QZSTePfz49fv/rH84vtHDV++2id8v0E4OMcS9ji39Mj5G/KFqb1Mp4qOLOwITqluld9bILdJ5G REtKo1ad+TkzaDv93af7168UsLd9foG1X116xrq3L49fvpjLUf/UoA+14QUCnUXVFqyERfBQthb0 kER1u00iGy5rLmvV7TlEdbSOz54lAvHolLZ3ljx0NUgFHN6NmCZ9/PGGl4Gvi7eu0aaBUdzePj/i /tZLRot/YNu+3b+A4PQL37R07dCkSWFrCRHlSnxABawiTatIQeEgYjyu8qmgxqF1wRub8xjLS24k RIJ+lOAQQ008aBfe//XzB9b/Fa9XX3/cbg9fZcsCC8eQagp/F+k2KuQA8CONZgD637GDXbFmPla9 /0swhRjJ/7eyJ1lOJFnyPl8hq9Mbs+oegUBChzokmQHkIzflAkiXNLVEq7GWQIaQva75+nGPJTMW D1RzKRXunrGHh3uEL/i/IphjJmt3PDTqIIrk5JF19ehO6SHp4iLXE+vamDb0tVagnWsEl7CsS7pq RIBEY649Gw9DttL3eFmHrZEKGAFKntJAi7DOgbGRQGWX/u14err81vcOSQBd5wta0EO8r8OI42nM 1EoEwMVORQQxVEckBb1odia9cEdCZxjmDSlX6oKss0zAOh25ThEH0+n4gVWG5NTjWP5AB1ztSTaT Szq0hCIhMuXZhSivdgseVZ3HAolpQ1gkTUnf+umkN3T8eY3k+ob0x5IEi/t0Mr4mx+iM1bwiwZh3 t7TLZ09heQnrCCNIgIEgvrBi8XTgahxemZdCChVXyWBI+18aFNQMScw1Ve4GMKQvuMTzuPXDK7dQ jrikh5vjrsjIXgbJta/cCYFIR4Pa8Kk14GaQwG5Vu8mmOtTd1XB5dkW4+XLtLexEpekmMkRP2FsX UYH+c3sZuIhZejWwog6osmDvDs6tSyAYTwZEI+DD4ZgqkqWgKZKOrerTFRBQCxTgV8QKK9GrmZiz apwSwAi4QpfevipiP+9DKyo8ToBIp0eR9EueGVVXQ6qtAm7nDdGW31Akf3EnAgflNjzHgsrNtQiH Yz5Sm+10Cg7T/NwyA8Y3nJCbFzBjMuGWTjAm5gV56QSDNKdxcu8pGQi+5MeT8+cOkNwMJ+fYC1KM JuQiRdTk6zbckBcHPcFwpL9SdXAeeZCqtqqXg5s6OMdp09GkpicEMVfnm4wkYzJShSKo0uvhiFi4 07uRkbWkW3TFOLR86CUGF6zH+VxSeB3otP2g4tY5Hz/cZ3epm1DvsP8NFayvFr2IWnum6lkN/7uk 2KsIIEvu0RsrN0bnPlVtQWc4ftUq5dxJNCvC0J3cnrBvUA9z7TA03IoOwoqPPI47NABbls0Nd2iE dYGTFkGWscRshGW6GiQ1BhlNq7n1jqQ3jo+iJ8dstObZ7oCKeoCbVUnLolQ7xeJ0jvZTbWRam+EL QoIP9cE15fAu4yCLZdRGhfU19/1c4NdtOk+pd9eeQhuNNW+29WonoT2gmrWyvm4qwtfddn8ylkVQ 3WdhW28873EANV/v+8lry4BbM6vSp81MMzLtKuDlz2LSCER81ab5ivXe8PoMItan00h0xZIZNrEi Pl2woLBUGKlnW+3ttPZmIy0o+h6joUSiW8osohEuq94m2ISbayaowjhuze/rwfVSj5MJ2KG22osA Vr+8HQeFvKqMLHgCK3JRS9w3TUuUrW2nGE6fchLSCQwbEg3hd+hpPIGYVzMfAja1DONMSQCI1q9N xG+8vmwc4DRIklwfcAmPs6Kp3SJSqlwAqlgMbc/r+tZGBc1NVtxEApvl8Dgeb/Pj8OfpYvHzfXv8 bXXx8rn9OBlO6iow3RekqrXzkt1bSbIkqGUV/SAHi5FFtJ1iVfsubDA0d2db3Dq8340DoCBtERe6 Ewe6L4eJ5soDP9C0FeZr2RQuIcbSLwKdfYnNZBXSwYhwIxoSlNDbkUeO0sh84X00kioeX+lZgy3U 2IsajHyYkRdzc0liwihkN5fXXtytqfHo2Gp4eQl8ifK01Kt2QwJpWDwV4e+cUTeeGp0bw1VHesI8 aSSrkJKaNYI+Qh/1uQjEaGen6CmxgDBteZB/jKD9RV2wuzlnEZdV+5ftfvd0UR1CwsIQthLLYjh+ 5w3hFqJjhRBH3j+aRMPx9FwZnvANNtnkq6o2g0vTUMlETsh8aIqmDhu5O3vPIGqcLNFnFWqMfLEG 3TZL8nCphjp8PTz9DQV8Hqno/PwFRUh+BqQo8ykzmE1VhorjO73j35wdweq+ssyhLYJcF4G4xyoa 3QIXrK9HU31IyP50HwZxMs2NFd0x33RBPdgoMVd8ZRZjmVXGsBQbzXlJGHRv99sjzBBHXhSPL1v+ OKPZkfcRG74gNevhQlmfTKXcvh1O2/fj4YlUPRj6/MGkhaQsRnwsCn1/+3ghbj8KkPoNzQgBXHyh VC2OzCr3Ay5az7lBJwC8n3YSSt9eo12duI1hLdZx2Yf0Pnzun9e741bTgAQCxuFf1c+P0/btIt9f hH/t3v8bH3qedn/C+Efm82Pw9np4EXvMGFoViYpAi8g5x8Pj89Phzfqwa2worB/0B2kOFJfk+mhJ OpHZiRgm+UlbpPogkfUL55hN8T+z43b78fQIy+vucIzvfL37ilQ8OP6ebnwFODiOZNxd4SLZnbYC O/3cveILZTcJrvlJXDP97R5/8gEDAKZKT4yXXoFtpiWDUY0f2I9R36Rfr5y39e7z8RWG0Z7HrjgS r8l+OfI/R2bd7F53+398ZVLY7oHylxZvp6ykKg9VpyiKn0aqJaW0yYxVPDkW92UBDUW8OWr6p0ZU sBJ5JxqmewhwyVYgc9LoLvSyoTrq3wdVBZqLe60hOxG5vK7vcctWLKMOFbapw17YYP+cng57b9Io QdzOqgBEXE1glHDTzkcCqVi0Perqisxh0hNYKS50hJHlokeYT0ASbkc5VeA6GxtZTyS8rCe3N1eB A6/SsRH9VYKVoTuFgCWPRoC61WEKR1Bp3C4IianNmMduLiatj4QZUf+jyynWL4B16r2yQJyWscct TSDrcGqX6H+85ElOK9DZa6usOJ1bAEzaor/MINC9aESoSO7gqY0bX+mpePg46Nks4vLu4gk4A+GI Xt6h5GRe5YEwT13C8YNnNG6TAX7WV6cSaVHwwfCyTYYWXB5QNlwlKtJh8ENoxWGhya26DCzIe728 14hp6cYZi67QAv3SDDeNzge8ZOgfQ50tX2HkoDlgOQbwKzR98QRe3GPO1+RWECR1LG2xHHZYLO5B TPzjg58K/VxLs2vTb0UD4kDHbWSgEawEDtjDC2N22yWmckBnns7nRP8MuthWQU1f4CCFSiNX52VJ s2adym2YwlQxK828VwY2SMggHUiDGzVON5P0TjrjaLgUNNrENyZqBVouPIgqNkE7nGQp91ry1NvR 4ODZBaRBUSzyjLVplF77sqMjYR6yJK/R6CUig6YgTReYeVHZ9Wgoe69oVDIADG+pl4hbjw8Hl+SO M5ej9iFKA2FA3Y6kJseFn8ACQ3ehb4/42vm4f0LX2P3udDhS13znyLptGXTKU7B/Ph52mvcsCDxl bkYKkaB2GoNEhAnmaWajitLEmYB6+1K2QPrP7igzgUUK+z4y4+eoxBsMlTpKdRLflprB0WJ9cTo+ PqFvunMoVPrRBT9Qv6/xvrcyzfd6FJpJ0S7XSMN9hIhWIQ7UtFLm2sitlIg9trO/PF/IDF2LmX5M IBPVfWsUpJ2T0IqEwvo3rzEkvKipmOgdun+eU4FY3CFXH82KucG/5D1DgSvLl9gHv0EL/kh/jZAf grzLHpiDlXdABRqMhnlTJKaBLi8RdCQrxpuJj2ZU7tpZZXjGwE8VDqXNrJgPGokMb2TKjRrCiimi YQIeY4puJVBVdMQjjpqyWTyz6stDPR0ROkzA2Gz46PxXl7xSuqUQFyro6RJE85vbIfVmh1iziwjp bsf0JDlWFZralhfatX0V6/dP+AvlFquSKolTQ5pBgGD6ZhBx7nUF/89EqGntdrdBDNUj8/4Nn2L4 ORKlFjSEBaB30tKqhM33Du1q+eGg6VmrIImjoIZNXYHmUla6ZIWgvIphzEOtG2yDN22m8K9g7RQv OWEQaQNKfA7FfFZL+lkG/d6ysLwvzDhsAF6B7KRbbHcg93G+R02bGBYYaFLxPAvQ15qMN13Z4cgj GxALgGNnPwsEgnq+bvJaUzj4T5VhXKyDmcFBuUueJFsHZRabkeAEwqddCWwNrMj4ZpbW7YoyIRKY odW8sNbmGMMEzaqR4cIpYK058bMGI4xSA5vDLGAmdL2IHobREWOMud5GsTGoFEmQrAMe4DxJclpS 175CQYE2iNWIUgYdzot7R9IJH5/+0m02MnTjdENjzUCbCBfMXHccRLlwqztyUbaQqD62n8+Hiz9h T/ZbspfYyjykR5VjQJNMIpDk+/YsWWl4kzraOWipZHniTz+tSpJzm9fxm7gSdg1ok81SfXZLfLlX ZSnOwPeztWo6oHzKp9lBWAapXlSBTuvM/t35ZCzx1np6X7Pqx+ByOLp0yRLkc+gBXRq+AJIgecjP IUc6sp+pDr0IOwJq3gTdZDQ8V8xDVUe/UIq3lXYf1diQLc4dMlrtcAfgV+j1np6Jr2D1qGvwt+ft n6+Pp+03h9CRXyUGHy38FdgiqwSXga4NsBrzDdOLO2TFwlrFEsS3Pf0YKwj6Q/QsVcXChp9bSTBl lOwXxvpuwF/c5a8aWkA0F8H4dbxAhsFbgvDeolmzAF+r8dLF8KblyKbACNZ0YxG/CeqafljkaH8Q C4H+hRqqdUbQGBTptBXHg9N8Ykp0dJnnlvgVBTSzDSxeFsx6Y0CDxDkMOsoWpqDK6cG6LehqM90E EH70m2L3ccD0Xr8Nvulo6AArMJjH6Mq4+jZwN1eUVbhJcjM26+0wE9NR08JRVroWib/gGx9G95u1 MAMvZujFXPk7QFowWiTeDlxfezG3Hsztle+b27Gv07dXvq7djnz1TG5GJiauclw+7cTzwWDorR9Q 1qhzAz+6/AENHtpToBDUhbuO93RjTIOvafANDb71NWrwVau46RP9KfXOhATLPJ60pdkQDmvsotDO tcxTMia/wocMAw5QX6JfFmvIMCgdSZkHtRFHtsPcl3GS0AXPA5aQl60dAWghS7fMOMTIXRFVZJw1 MSUZGKNANhRUuqVhpYeIpp5pyztKUuOHzb6bLA5VUAoT1Gb4wprEDyL+t7K2pS6i8nZ9pwvPhqIt LB+2T5/H3emnG4x2ye4NmQJ/g+Jz12CIMN8xJqPWwiQjPaiOcz3kFcazZpFTstSsJYY8kADRRgtM zyQSEPipuOIbhy6V0j+ULBOBgM8fUuoy1hNsKQIXYqgxqhgpmhnXlgrX+6aea4gS7jYi04SNLgIz 4M4M1D3U+cWNp8+8tOYvE6zEwCYidRZNqWqBVYQZZL4ggrVNRS3pCOo8ze9zohMCgQ/T3N8ZNCxY IuX9j+HlaHKWuIniGtMlcMXJR5mncd2bDgA5PiP6W9HJn901DFMpxNw+B0URwCh+MXz3AWmr349c MMMXO/MFoRer83AZ5SBYJhVtpKkJ4FmE1J5b57lcuMZN9Vy0QF01eczuFB0fcZrG49bBVtRFq9J9 3bWh2XVYJBHp+QGD8uMbGvE9H/6z//7z8e3x++vh8fl9t//+8fjnFih3z9/Rc/oFGdn30+Ht8PPw /Y/3P78JFrfcHvfbV54LbrvHq/ee1Ymb3e3b4fjzYrffnXaPr7v/5cGhej4Yhvz9F++Y2lVQiujb MgKBprpQVDIUfzfGMUa3wyfmLM+YOU0dChQLKr6Bj9QOKWbSwfGAKlfoiQ5hkeKTgUZpXE3TY6TQ /iHujJTsc6a/SgHWn6tb9vD48/10uHjCQMqH48Vf29d3PbqfIIY+zYNCk/AM8NCFMz3+ggZ0Satl yIPjehHuJ1JPdYEuaZnNKRhJqF2QWA33tiTwNX5ZFC71Un9OUCXgbYdLCmIOSNpuuRLuftBUfuou brxyETKp5rPBcJI2iYPImoQGutUX/K+hSQsE/0Mdxqr/Tb0AacQp0LTrlcDOYU5cm37+8bp7+u3v 7c+LJ76IXzDf2k9n7ZZV4JQUuQuIhW4rWBgtiE4BuKIOnw5dRkSdVeqOG7DhFRuOx9yJXDyEf57+ 2u5Pu6fH0/b5gu1512D/Xvxnd/rrIvj4ODztOCp6PD06fQ31II1qfglYuABxMhheFnlyP7i6HBOd DNg8Rpdkfz8rdqeHXe16vwiAv61Uh6bcGhyDaH+4zZ2G1JqZUTZeClmX1Cc1eaGtWjQlPklK+vlA ovNzjSjohm/OtQJE5XUZuBwgW2iTYE0BZueoG3f6MKpON8ALDN/kGV/DGVJxSgq4ET0ygStBKcw9 dy/bj5NbQxleDd0vOditZEOy7mkSLNlw6oFXJFcJ68FlFJO+fXLVk1V5h1ohuOGby0ijEQFzS0lj WPzcgIlaHmUaDa4p9xK1nxbBwOUasE3H1xR4PCBO00Vw5QJTAoZPhNN8TjRzXYzNhNhCTuDxZN0l FjBqggDakpYa3dTma9OrzkI4jqVq5oOUJUnsctcwQCXZ91FVu5OF0Gui7bRdl0TO1EFH81OiODiY C8vQziFJqVtHdRKuc3KkJLzvs5imw9v7cfvxYQrUqmP8RcgpKXnIHdhk5C6u5MHdBfyxi+g1vl45 a6h83D8f3i6yz7c/tkfhbGOL/nL5ZFXchgUlvUXldG65xuoYydycOeU4n0OvThTWlPGFRuHU++8Y dQfUrvPi3sGKiGNFTDRKoZyGeci8onJHQQ2YjoQ1vyrOtQRl9HND1BGyjEuU+RRf4GjPQsVoAkLm xB7jZY2thrzu/jg+gtpzPHyednviREviqWQ5BLwMiQUKCHmQuDGQXRoSJ3b32c8FCY3qZLzzJeii oIuOPJ3uDq6SO9kM7Z0krKlXzCA+X9K5Vp4tgZAqXSLPgbZYuxuaraQzQEyIGD1WSO4uG1d4rPFy dEZgR9I4ndcspHVLxNtO+hoKr5o2IUs8jQhDOGrPVx6kPGVsO9+4CpeFdx4dq/sUE9ADFi9jMcwy iSyaaSJpqmbqJauLlKbZjC9v25CV8q6X9QZi/eP7MqwmaL60QjyWImhIhqIqckm00m5UeAdPbTci fYYv2QTewDHMRyqMzdAUTF1Uu/LN9nhC9y3QrT54gNeP3cv+8fR53F48/bV9+nu3f9GMdblFgH69 XsY663XxFQaoMLFsU5eBPqTO9w6FdKS7vL02birzLArKe7s51O2oKBd4HcZOrWpvy3sKzql5Ojo9 woYkK9kqF+PJSWhLp18YWFX7NM6wI9wCbqaOhsR7JmAEi6BsuamRETuEGxX2gGkM0i4G39CGWPlg ZKxumzrWn9kVahZnEfxTYl6QWJf58jIyBXzMAMvzZ0zpCB/iCUXPV57lvRdIGLdxjjZl6IXgNkPg SZQFBrUIuA2IIwZoYAm5sMn9uhOUWTetWYAZfpsDyDcwmwT4DZve0/EYDRJa+uUEQbkWO8P6ckq+ EwLu2hABTIEg1ANSx1NXdw2150JbWRUPI87ZCIsvylNtRHqUZeClQdES3IY/4OEIIpEpoj+Is9+C 0uZpCKVKtuzVeqhmpmZSG6V0I795QAT58tDZbM0fYmKd8itxDDKujRvjmciS3IzPp0HxlXLiQUGN GiqoqjyMYY+BmBOUpR64CJ8IYJfojh4C5O43hBsxpjKskcelCgoux+pHpvJSQ/y6jIWh3dSJ5wUN TQJuq7bgOgJRAg8OhbSzvFRxb7+gMhzzvCQ47J4WY+gZok2IyvJMIdpUDFD/fgR4lP7PhKPigzWF qQNNrNRe/6t5IpaBsZeLJg2qJUZp4g8s1JaGfpTGPEV3Wq/mSW5c7uHvcw/0WYL2asQKrfM0NplH 8tDWgR54ubxD8VerPC1iI9BxFKfGb/gx0+OV5jwx+BxOytJYorBsVTtWUZW7rZvjc2nK8lkUGI+N +JKezT3MWJ6/zvFpF85Vp2qRRPGVW7NEll5kcg4ZpkWkPw/puMZGBlU2wD2fR70PSPfMpQQwDn0/ 7vanv3l80Oe37ccLFXKNyxBLHveENk0VeDQrJMXPUBiX4kt4ArJD0r0O3Xgp7pqY1T+6N3Mlujol dBQ8gJlsiEjA2y8lmUzYkvYNcJ91upPK0mmOUj4rS6Bj5HrwDl53f7R73f522r1J+eyDkz4J+JEa atEY1OYpn4oSGsL9GEyDAli5BUw5etzpprUlCyJ+sxCYSSIXDC0M0KIfGAVpCSpaAdIwF0fTuEoD kR2ml5MNDG9Tm2eJPuoim1rOHdtk7iTgWqBGtFdDg8+sUm69gdzO2xZRjrCuZYpp93Lxr460EcRG boho+8fnC09yG+8/TsfPNzukYRrMRUyf8s7fPjNcoIRJk+Fzg4wGrXEl6FJ0WDpTDj68U+a06jRq plWQgZyXxTXoNvLI6g2wEEsu418aELPZ6BhhaukCjl4Mjj4o39+7cnutg9tAYgrurDJck2TSVMA6 55yFUrdnZ03nsZZ8ndG6MVeJ87jKbe+gvibYSpSILwjy6b9hOxDzLxHnjlCTcGa5GplYHnaKNh0z CdEe68u6yrDhjMBfH+wzFBj8XnQmuTkPPwbGkSwXDciOCWxht06F8fMibjPSmKErq3CBcixHYeJ1 +BkShZMWPr0IJ2hErFjiY4HwNkwEAuFWKM7yFYwK+Vpl45Yo2qEgn9iYRTxfWDJ2N4C8q+huNQN2 YH/oQUrbnmWAvMG9jhRYXDIo/WR5zz2iqFNaTDuafh9bDViIWBbijROJLvLD+8f3i+Tw9Pfnu2DJ i8f9iylcBDwgGhwflncjhUe3yob9uDSRXJ5ragD3x3c+q9HUrMFc3zUsUDIpk0C1C4wPUIPwrA+p MCTqUF0lg6FWDUodRQDHskbI20RU5qW1O7W+g/MUTtUoN9yvz4+osIeFs+/5Ew88ndf2ZkwE2pxC 7OSSsUJwQnFlhCYH/ZHwr4/33R7NEKAVb5+n7T9b+M/29PT777/rOXfQW5UXOedCte3nV5QYold6 rJq3P4jAtIi8iAzYpnX91pFyAlQlvXsTtdKmZhvmbD8tbKC5m2ny9Vpg2gq2ljRpNWtaV4ZXk4Dy FqoDTGt1xAoHgLcw1Y/B2AZzC5BKYq9trOB93AdLktyeI+EXkIJu5FQUw5EA+jWI3qxRpQ3dDonG W1xSqHwwPLB2zpxQcsLFC5yKs0wZTeLAwZZFi0/LfKmfCueOqApn9ke95vb/WMWqPDFmwNNmSTB3 JteF85FW/nBdz7lojMaOTVYxFsGBJa65zgzTUpypjhwlOMDfQkp7fjw9XqB49oT3v4QS4d4im6fT F3jS60+ghJW6SFTWs0KUBbI2CuoAlamyKey3AYuTefphtyMsYdCyOg4SN48trFhSqhRMRI8USi8m FIIwfhEF938BwqD3KzzvuVbVnRfDQd8jXi4uEOpeG3DsTo+Kr8JDGp20GNOd1IxK6yIL27GA8yYR ggG/UuMhnvRr80I0RrvC4bJGp62dx87LoFjQNEq1tr1DRQFiX6VcsITBxCcAiwTjQvExREqQzTP9 2VvEfJYfilK0eebN4db3Vt2i1tDk+vzKR+Tp7oE8zh6nN14+cABBVZGpUp2Oa0VJda1a61dtBQj3 KeyJ8o7ullOfuuCxK5KEhPO81WMUOHAVukV7Z9g3uf2eNGaWZB9dGbAN8a2QEry0Q0mrHcYG5LYZ Ua2Q9AWcKG6xToKa+EwuNbmcqJNGrpcqAxndyJ9oITph3pxUefICR4cVIfprCTQGjvlUeIUOMuCt AT48iu9Mg7COCraGwnv6xBdjX4TZGHegGh4BWax8WsWs7jNM3e0nEEMh9k6c2eeXScbXfn+zTXFD bTcRN+CqsiDhd+Q4KsS8CxaBf5qy8gYFkmukDoDfF61HUdfbo5PS+78L/sK3X8SS2oxsXgUYjdQ9 z952INMTB5opiWg7v7/9lzkIYM/T7t9K4nU6qO2xPs6GnahPHkVW+/Rr5Xr7cULJCjWSEGOxPr5s NXe8xtCP+U8t5rMBNodVwNiGjxiJ4weFaY2vBBS8vM1LuRyNC6YipYm0B4YZXz/+8rTqeOZPL1W/ 1LhK2bXm3K3EMsx1c3ChpYNuDmC5GgrjVgzpyVkt4XjkZ4DQpJyUE3rFGHMmZak5yD3Adpihp9zx qhHPDf8HID71LSqTAQA= --===============5412152184538285879==--