From mboxrd@z Thu Jan 1 00:00:00 1970 From: Sascha Schumann To: egcs-bugs@egcs.cygnus.com Subject: Bug report: internal compiler error Date: Mon, 31 May 1999 21:06:00 -0000 Message-id: <19990524163341.A18405@schumann.2ns.de> X-SW-Source: 1999-05n/msg00600.html Content-type: multipart/mixed; boundary="----------=_1583533110-4113-255" List-Id: This is a multi-part message in MIME format... ------------=_1583533110-4113-255 Content-length: 1923 Hello, we encounter an internal compiler error on multiple platforms (at least Alpha/Linux and Sparc/Solaris). This does not happen anymore, if I change a struct member declaration from unsigned char to unsigned int (it is extended_info in the attached cgi_main.i). Thank you for your support. Compiler egcs-1.1.2 (release) System Linux 2.2.9 alpha Output gcc -O6 -mcpu=ev56 -v --save-temps -I. -I. -I./libzend -I./TSRM -g -Wall -c cgi_main.c -o cgi_main.o Reading specs from /usr/lib/gcc-lib/alphaev56-unknown-linux-gnu/egcs-2.91.66/spe cs gcc version egcs-2.91.66 19990314 (egcs-1.1.2 release) /usr/lib/gcc-lib/alphaev56-unknown-linux-gnu/egcs-2.91.66/cpp -lang-c -v -I. -I. -I./libzend -I./TSRM -undef -D__GNUC__=2 -D__GNUC_MINOR__=91 -Dlinux -Dunix -D _LONGLONG -D__alpha__ -D__ELF__ -D__linux__ -D__unix__ -D_LONGLONG -D__alpha__ - D__ELF__ -D__linux -D__unix -Asystem(linux) -D__OPTIMIZE__ -g -Wall -D__LANGUAGE _C__ -D__LANGUAGE_C -DLANGUAGE_C -Acpu(alpha) -Amachine(alpha) -D__alpha -D__alp ha__ -D__alpha_ev5__ -Acpu(ev5) -D__alpha_bwx__ -Acpu(bwx) cgi_main.c cgi_main.i GNU CPP version egcs-2.91.66 19990314 (egcs-1.1.2 release) (Alpha GNU/Linux for ELF) #include "..." search starts here: #include <...> search starts here: . libzend TSRM /usr/local/include /usr/alphaev56-unknown-linux-gnu/include /usr/lib/gcc-lib/alphaev56-unknown-linux-gnu/egcs-2.91.66/include /usr/include End of search list. /usr/lib/gcc-lib/alphaev56-unknown-linux-gnu/egcs-2.91.66/cc1 cgi_main.i -quiet -dumpbase cgi_main.c -mcpu=ev56 -g -O6 -Wall -version -o cgi_main.s GNU C version egcs-2.91.66 19990314 (egcs-1.1.2 release) (alphaev56-unknown-linu x-gnu) compiled by GNU C version egcs-2.91.66 19990314 (egcs-1.1.2 release). toplev.c:2261: Internal compiler error in function float_signal -- Regards, Sascha Schumann Consultant ------------=_1583533110-4113-255 Content-Type: application/x-bzip2; charset=binary; name="cgi_main.i.bz2" Content-Disposition: inline; filename="cgi_main.i.bz2" Content-Transfer-Encoding: base64 Content-Length: 37011 QlpoOTFBWSZTWWv7KNAAUKT/gH/////7////v////v////9gmNwHvZSqUHvr jqjo1TQLaSoAEigAazsD7soAAevPUHfevvsnPtu7N7O72BShXXtb7vvtvuGj 57q+jTvhvbO7vs+nd8G8bLXx77u+49tfffMbzx3vr4+58+hvWtud1vd99cd5 987Xu133pnN996td0k1QUN9eufQA+vABd7HloUDbX13IN32l99u8xypKVE+2 0PoDGm9b26+6++977zdU+x9Gt1Goe3XvZSUOgBbAveVIH0De+nQD77PQuTnU dKKo7F67t7e54DpPV7DodfbPZite2Z2Wveksy9tdvS3K+rb1vgd73fO95gPT zbur773x6Pi+vr4m+674VfMSx9dm277jvb7Dvm327333k68c+jrg+quzbcov p3T7Pe+fe9el73eu2O+7n2texny+7ve2YuyF1TLdnW1IfYX2Gjx9nV97rt97 y+bndX33QB8l7nl9XuD1d8+r57dr67z1x7OHPPvPQABjpWVdH330+RXc1Oht 85uu4yUe30+9vorPrx73zzg5QglNEAgRoCE0JplMIyMmk8RqU9k0YU3qMSnq aaHlNomjZJie0oxqYEpkEIk0QJop6KeU36k1PKeiAZANB6QHqAAAB6g00AAA JNIkk1Jpk0U8npTTxTGQBkpsk9pTbSam1PT0pvVG1HoJvUaQep+lMmQYjaR+ oEJSIQkNRplNMqfmianqniZEaMmmZCMI9TBAYRgAjAjR6mgwIkhAICCNCYmg TRpkBDRTyGntUmj1NGaj1G1AGj9SDQ0GmgYREkIEEZGo2momJNEeiPU9Tyho PKHlAZAAAANDQAAHun5lH4XAUABQBSqyDfsOFyKcVVQmAcDItYUsSIUoUjRi VqipZQnGUoKccwpxOCowElKmxKBowBNDOVl1QE2ySJWAjOMAjMUKzkAoczmo M1AZnWcIMQBhdZLAQ5oRKDCbCCwgpSoAH8p9xHw6VgVb//liyhrAQrbJE+Ww nk5T6BfR7HYfxthJ/u/L8L+P/bn497SB/cnogqF9expIj+THwnHLs0BTQEVD YyEZCA0hSFNSkFNIeqhKipJDisgAieHi/e/l5+h/Oh2gMGKIhkgqphqJn/2X 9zDyv3500sxQ/s/I4VFCcmNRJqLVV+tjEY+V3K3EwBUbHEWBD0kJXESiG2gh KGKYnKZzISwPs1gfhSjERQFWCgieZO2XoAwrDJBLDCMSgSwtDIEPu7LNH44N CUvdqkqn/FOn8/ol/H0eumzT4AXqGjAUgp7VRRRJowMfYyI6UoqImbHz5wv0 TovoyuCSkaQpaKUoqL9/mR5BM1UPhg/NcYk/T9acWoOGCVmSrw2UaBKT9D5c AHCooYgChCiqX4ZzQyTKcdmvUIqD9ajfuJQGv6Woaj3IL57XsVjA/47ksTNu IdsHFOZkmXflyzaGzPkcHDOVLp0Vxx1ydCJ3yPyoAQoIg2W4MnTlOpgT4Los fMIZOM3NHJQ3MEVe1KrHlaY66raWLr1MOMNhNcthnMjFjWvw9jZk3PSkpqJz 4S8iAZ12DodqpU7+0MpqG05TBzc2ty2rnLjprWmkpi004hYsqFa5TxYWKVu2 ixQR2ngZpMQcmIdBEmw6zjZzuuBzft3NOsx5NbDGmIWOJK4goZaoUZilKUZc zMGC5mYYysMSYZW2xjtC5tuFB9RpjZUF1K3Llc79zt0LN42A1UUH3l786THX Ko4kjZUYyb43AxCte9u1LWtGKKa1FIcySEgToQNTTWazZ7DOsqzCWrWosqxq JtmSRgZo5GYVtrURQVQzuPNHJ0EQ1tqSxGLT9Bt1ueRpvKxtKjWtKrY3l5sN YcawrS6sN1PiOUTVLd5NV3tWVhNqFtq2ySy3M6TLaM2i0KUxKCZRjbUoHVoJ FHiSa4i0UBlVNsqBharmVEkSY+uY73UN4uoMiqKGr1fV2ycQ6AMuJTiFVEXC 2qlRSPhQqcpYiltB78Loi6V2W4P2aZlha2sWDRI0bRZbUYKqldcEURXiJ25M mod2oq4WWLytMVFzraYKj6DMTm0iqW07MKzp4nT0jykgpILDicTU7M442Ck1 blGwAy0LBB5kDUDhNeOOJPU+a4Ie9SADxT1PdcuFFygq2oAgC0e5cy+DMKmZ RBWXluICpsRRWc6domYGJA3IzwNvfrh1BoTquKmo2204GjQMYpFhRKgi8buh 5pD1/JTJ26hVt6DDsXM3cwwqbuhqNzMSEu0xYu2VuJGdHUm5tG1jRo01KzYN nCHhmPHMIVkFZGRZmZrRRUxmsEHtDqkbtURsbQOloJxoqrWtiMTeObkglGIc TVtRi2sRNJrRbWxSRapHEKUJS0CtAUEw0kTMFBEzNQQU0BQFsaeYTJyiiIpq KoMSQSNUoRCQtKEGbTohooiKCqKdapqI2YKihiSJaqyaSioDRtsFFUPgLEET Vy2xooiCSqZgpIpgpiSoIKKqp2pcRTVGLWMYpttG1Hn1x5xGgKHkGhGkoaFp EKSgqhNDQYIpmIOYxkWQliYmI5FFZJbS0bCpb+anO+eHIcK9ZWZeYVKDaVNK 01e213uh7eceCzza5Z7kXBLyTEHtgcgd5XF1uWhxJ3jfKOu98rFyKWgTMJqx lNYq1i2jzssUUzLpgOQoIxrG2wZ1iJKDWotrGtFZbGs6daoo1pKxsUOlrG0Q xo0YiQrbNOXbVtWYxLTUawVbGWhoaaaEoKClozfkw99CHglAHuAA5CB1aFod Ila8xyKNPFCkzEE0UW1sDWtQ60JtlKAJ0Yw8hOSKBpUMGyA9QtLRyOYjLA1R UTA0RAktNTxkE0g7ZXEFAUumlSkOiNBy0uleRiEKRJJKClmpChooWqaWKqWo kKpCiqGkWubV7oZhJLZhXyR7tnXfvMTUskMhkz5ePk6j90ep5B1s+vRdzE0q UKhpBPY3OW0fFJxRBcj61N26mZlwMbgtxMy1LaNUwOdLNJw4vM5sscw03dK6 DmFKiom8j2oswxQ0JYMqY2BX1bURmAeiDE/63x+Dh7dwUJQUNBVBS1Ee4mvq eWmnnWXkTw49cKDTycwUJJwmNuQmKucuVwdC00BVJTBLVFb7ecDidTiCSjhB QGzxQ4QXtFDGU3Kx1zlpNOgKQ0FUhVs7ZIlp0pEU4gTInm5/gzf7vT5epfvj f7kqRT9nKcWj/9+SRO7/4kcP8LW08vpp1ELS1p9VmY0tt/pzAy1BFIiRVRES X5rIUgN+iwIUp1CBSlH4YANFIhQJSjyKTSQgH08C6XPRiRj+pZw2KQUEOoiV ujGgqXMWMQHrg8B4OA802jhtbVadrRMTNRFVrYkqg0VFH/DtPKNC0Y1RGtjG 2hxoLYxowRp0TttUU6EjYslG2adrFjZwbYjBbMDqLZtnEljamNhtpKoomSrY dFExVa1tWHEU37TucsGsVFZJMaMGDbFxyc5QVa061AbZtGLWqJaqHeR5g5JG zoKaIuOX1hwnS1RSzWLrmnSGcWwSGnaxU41gxFETtEVBqqX8UHIoODOHOk06 dLsYppA0FA0FBTQUo1UyaBNI0lUpSUtIUA0UgFI6A0yWv5HNRSFNERVUVTEl FUERExFVTFRyEpZtmfWv/iHzA5xv/PfLgmKk5IpYQgpQvmLFqNtfi5l+vZQ+ mBAcIqsXhH08/fbgVuIVMa/C2lFKP2+3O3SWMxRKX6SYEoUsIrV0nCRL6/Ud 8/My93ewLlwNSVl+ZU+JykfN9kvswPM0fNSWSYf9aeX65aysLVfqveHP2Hip HtPmfa65Qfyj+deV7P2kcUhLSH1yw+OvaqTUtR4P1q+8CpLjK7vNCh/83I/T nbgjbT2TbWaTiAP01cA26cYcZoudJSXJZ/pemTs7/0vBR30+LHP9c7lGydy0 s3lDbPy5VmL4naaaa3XLl3zjN3nnTKDhUpJS50n5TbhRtVHN6yH7d3midHXi n6uW/JjOklvR/FHDyfrbaKrRSNlYUCk5RMenOxSS4ODpmCy1968aVon9uH7U D5TaLFYhtH73Kh9nrR8u1AziHWCawRhOdV6ZUyASB3nKY4wrYPPj5c8Sncvm DV5waUoK+uRB0tAGISG8tBPGAOfSvLO9rYg0e2GCSGcUyZE8zupehNUA8Lw8 Gr6LHmLgoeFsqIW5UzjpG01BihLJaUrpvaSANoiUVLxTWPOBgWOkkFkF0M7a y1XL7FkBjaQo1rWZz19KDbahdpaBkLFdJkTLSFG1sRHrTS2jatFSzikUWhJp I2gGiK049EVttBfhygSOHl9Lpei8pwCOYyAPElJdPtKzIUg82Fn25wHgQUGj GwFyDcyyYGh3L4tsaP1L5e2EjS44C4uzVQQmyu9cURlI8zweYi7vvxiA8pmz JJtgIUHfipg8eE4tcUfycYkaQ0EfZ7Z956NWztko+cch4dYNKFeoa3oLR0nr iYgSLyjrLGsKUhDjFCae+gvR9/W5C4bvc1YNkDQCSRoavZfaqJKElLmDxeUH FBAqq/po20c9cTg0H7ucrBXd9wDHFFVbl4KSuy0jdS6XiSDgD9eSNAKDtSo9 4IoYT6vLjkzA/KJYmRgIeNpDsJMZJiKsEKuZAwxoTEtBEK/Eb2FxEEVRhO7t NhPh/hnh7Hpy0hu+PBnhyPrdmKYYl8i/x+n6/wyMCPoySw+yF9bPI/F+TrEs kd7bf6fxk7ltzMOR5il0goyABgsFKgUSTR65EJjILBhZdE2j5IBy0Rh19g/+ MLqh1/EvxnBC4ziPzW/5xOr86lVj816VOrmBUlGpbKWMmmQ2c5B4iCs797LL /koHUo2Md/KlnONHtYzMvRGVk87WittstIteJXUf9BPImmxtnTm5cpp/lR0C Cq0iZP10bdNnbtAW5WzFHFabkJr6XHKPen/OhhqBzVU6fqyV4B84Ki5oNCIp p+lXL10LjtOuZfpTc3dEjDlJYdu7xlhK8nf/3ic0aIsu+SlPzXPHfM5fT1S6 RP155nnifahrpvfNEu5q/e8uy8UzpnGVJUT833z6y6XpjSqnJs1qjWbi465z 4Sy1sVVBCkzkjPSMJPWuxrRqyc01VK63pRZnBU3VMspuj5b/L7awof/vwTMc 9XPqx5Nz8379ekO9tKpJ5T9bxlX0YsXOkdVnXlPp4sN5TapwFppy/tnjhwNf YZb5hp3NFtmNfx567ubENTSe6gpKJ8ZpJk2rccRS5Kc7tpHQg8aVm3OcabRQ u9lnUaqvVctMqVytZa4Rs2XDVP769uz8iIcjpEnTvgdVa93qa8+kuHoV93a0 Nx+2p6l9JelSIJ0NcigzRds1ZtShQI4rH0k0y7xbibSv7CaDkTOWkHk2pz6f rYP7XXokMzAHx+yhfPRAH/V7BkHTwIHwBovjtpmlfl/my932/yWLl8A0Ahhz RZuQmSEQnTASZIe8kNdtAEbG69OQWB73VgfZ5xcu3gqS5x4+mYIAjhhOmSIg i33cA1NGNicAyE4+uwKWDzBOU4C9RBQCDC+WzEgEQCEi6YcQx8zuBRAcjCjk /nROu0qPTmjTgnfylTGIfoiqaSCT+TAvxJEH70fzp+mH15flSkHDlyAsdQlv pFSQEkQkUCRRAqGWSy5AIm8sqj1IvaZCLMDD9ZF3BihJKfXrEXzj2nshapWl Pvx1J8oT92ANBTMmRJA1WIJ74FLAQxPsPtfpaPqM4fWOQ5ORVbv/H5fu/J7v tvtsrPue5Q9xqT6bD6RvYmEp/O5bCxV+PjVc3PFcWaHtpbFXNS1vJcl8x06r jhLWPKa41LMV6vVazm62itKipkt1oynXMq+CtrQtKkjTe+ONtkuaqVvlZUGP NlFO0nVKd8ydbc1qVA1pqHHI4bplldA0VzVhcS6LoLEbx1MYN/iZZNT1anve ruamTrKRiiGiO0ETrNKV3ozL33ybelid6E61zSbCOK96mKkT0IymY9SF0MV7 eqCJ8XzrqRvI3zpptXc3qus6s0iPVv3cTeD8aY/qKCEeL7CZzP2ce2OXObsA IY9BH7gKeEnH1D5yx+Qn9CmnT3nP/YA0mhoT1PqNvRSlPxAe/AfhP8R8PHhf q/+pnyblVVVVVVUkLPZR7HekMu7OPnzNWIWCO0ZGQKfz/r+56OJOYs8CU/Ts UEfLDgiCqhJJPqP9z+CfwcgMmCOUUOoGe/pdOIAZ7v6ZMRft20Yg/aevrJCF LZMQTz8njHuOvMSw83A/oJ4jfsW/pslZT2S+VVDAB7DkHILfAP5zoPO5INEf M84Z2X7t3B3jcaIIBkQRAPbgpWJbw8N+P3mQ5nee4h/3XpSBsXefPr53Gvqn Q0UfefrcpxZSgTv0aDtnZVLBDI+rrcDwMFofaUP7IiK/vInbM0bGa+Zl4jEf qtl75Pf7/z/f9/4fh+jXp0a3T2tuXLGJK5aaaaaaWupSvSda2vLI09p+VDbN ASZBLwh+W+6QvzHZFWeftOz67zvL58zDS7cAZu4TFYoLI+e1iw5zkDNKYgyU wAUUjEIpC2mCVzmZ2eQnzemX9xUWCRDAGB8aAayQcQS97FMDdgpDAGFI0G6S xYuKPr9cXuuxjL6q95B/tMYU1Yc/T6Pl6/Pv4E5CD4Sl/BUTAi2KZcEws89u ANU9QcQXPKPl0ztqMrMW9ZJ64x8oMYj+CQzdaKIpmMPPWi5ATHh8rAbF6mP1 HvuJaRjRAP0BwOujCFxB1DMpAEWIMwYEDXwUCDMINSHU5tpFXZyEDn4PkctI w35EgDgYcUrFsdaphmh2DiUkZyho0Ck24OFpzC5QuchQtWDEEO29S6qG0EDV McQ8bXZUFyUDhpxx77iRj1IWagO4rxQ4TOebQTIUWauKIB/M5G2bWw5CEcHe vaAl2MOPz8D3glJmWRJIU8KYPjxjUdPJTjIk21N5gnVi1RALTaZIm6lQrHDa unXKcRAIKCG82uUcCOAMyXkylHDb5JI4eE6AnFYQwY+6DuRxoxxl3LESkj7x 07KTHDAYkgROaRhVru3zs60aT+TFN70j4hcOxxdsfkwF4whLlEU7wPJNRgSX Q8kS6NR99H0Yh8s825DMi0liIHofSCh/ARE0aUU8Pvy0P89P50/ax4apllMQ 1adrSQLNUJIjCIMgEiqa4LAQz2RS0FTBlzhYJA7cP0p0AosiwifaLCErvCfV Z7rEMQ0FQYtVLoA0RTJVK2VtTRE0DWNpiCAJimZZihKEIpaYlqRooCSGRKFA mjfLTkVydVFqDiBk5YwXWRikRFgosDnJzdRiREQiijt2buLAB27N3IRV3Z4g nEJ5AnXQKZZNrMjIkn5t+YPMiV/IdL/Ew/0M/CGmWjnepy0xcGigaCkpA8mQ 1ERKxFBmUAqfT7CgaPh6aAN1ev6p8sj0ffF+gf2fG5Vfi+H3fA2Iblt0fOZd BFR3vcFrznIF/h/x/+l/b2rmN2JH+P7/3r+//+/2/7qaaf3xW7z+h314oOC/ /PRajVX/JLSUfwxv++s9HfX/jWEwrUey7ROONnbi34w7/cZuLfAer0x29Mp9 8WdPWp+6OddH5I0ff+n0k/REoyMIZE6PpBfmRhH5gf2i+pH3nnw/6INLIX8v 7cs84BGsT50DvuIoBcy9MIT9lBs5YsO2KBKhDu6/yGPHpsfYkhR87/nn+fpL MMm2djkmP4hG4kua3h2dESbJhZQh0CDPOye/RBAQQEQzgiari5UYsRmDWn5Y C1eX7I/mOhoR/OcXi1+BnBd+mxs4QfVkgdUxiJZIy0DsbfnOlNwYHNaBxrRi BwsTAxOMqESqCZ+39ayotNQR4B4hJY6UFxsuqpx271whjAxOpIRqKKyPj2w9 +JuNrB5EXMoHh2qZ3H7Jm80RFkYRAsCwQgzxF8BNoYjc0FnljKyGzkQ4zeoi Q4bycEPR8BDAQwEwdchlMlg8xwWD/GYwS9CMMzgf77cwSI4NSIuMgDCbgkpZ mc0TnMBMKXCADgpAeeXmvBea815rzV7nHbhtJpjHgONuJgOxJvgs4pO4qiXz cCk/Tue9qqjyQe4eTz30QFBeLkHmcnpLD+0TpDzfKPyaxfbnQdkaK/Z2Igpe oPfDvMbwbqB6lS/PjKKuWWVvh7qP7hbrks41DKPGpbnGp/b2rWZwHaGEDpxt 2uasdvrKG8jPqjpDdMMUXS5ogw91JEwkxmaTNL0wrHkQBdUKwhzEtJWlbOhx HOQNjgs0ZtpTFEm5oyO22QqKUElNrZkBCu2fUc5IUiFJWBZt5thZ/45AOQGQ OTjQFLRNMCQG3b5/mblUXmNMxHJ+a4r3XYLCbtJrgVf1I8TvXWRkwjVO7j8g bRz51J48zunBBBowijmhQISau8gIQjRTCzWnK1SIKpoLuzqS7GVv0sZMyRNj uh0YnoR/REr2b2DYinXOaWPSbQMoZMW0DGd7Zy8R1PqvRUlhqKZk6w5od96s VAnVJ2s/80FQDnzp+wPGgDgHGgSy72KBz/PaEcN6f0SuuO4xCDS4fVofecRS mtdTcEHxCwcRoxwNQ9ZU6EUBqLyEojVPHM0nMMHrTlvJbuHE6bIhGqlaKnQE klGk7ULGYTOU205xzMuzLmTA0nUmkTg7uzCEdtNOUwC3nNDA1GjSiGBhKQpZ iA7waDRxJdGhxay9BzdGacYpc0VMmtGY7gAWa4laZ1lioqTaXlnGCkFAQWCG pBYdWnNLOus9l2EESQ5NlpbBYdE2yiJYFJTQNh05KzSpMSq8QQGReRiiJiB0 sQ47ELPd8LMFahIUCQyIRDwKDfrQ7kXaBpetySCPOxj7anTF6xFkGtm7SKRw hnYPJGKG8ulJMyJjAxpiWcwA4dSmrEwN6zwDsTavvnmY0KDuxqxPGhh0oNoI Bo0otQkOGIEjzYgyLvrR6ojofCh2hqvzUfdzKA9DuzrCdnGAVqnd01AFDRAi lgoAPEi8qE4Tkh0ml0NZYmVKB+PjHCJkJlA6gDYip/YwZvx6ZBYjSYhGDGqT R5biLUT/X6Z8bhlADTjK3kQvCKTiJZH25X9ZhKyFCtEWvamFeUxCnz8G58tn 1+XK1mTwQLzcSAoKe5032yj2fGDpEPU+jY8dbeZMm0F5m9Q5b0ttim2DtQJ9 pQAxjsMEobjTBmPkf4z859GZdcA8HcrnYqQMENgWnacL28g52DYpZDOvgEFl QknaQ755OvN3QfqE8QjkSkAfBxhc0rhtQymbUtId29LvCP5YeiQUYB2I9N4O vuHY1o4Y2xDBlCqp357YnmQAekCSEDnyzE1A5k4VW8zIWpIYhWXacu5Kc61n Bv9K4YYwo+GVyvS5kCwviJ4Y6jINK9ud0vFtym81mc04lMwUZzDrmJe0bu1r lmMvBkdhcJhDmNmDhBiQZM92qglkZb8eTVbIYLRkoKCKURKLjSxRMQSztfek fhPM186nWpJmQ0bVgkwEVS0lMv6yHfNhiVneE8O/DmQzhmhesKGIKoKNQKxu HVxr3w4PIil4iAm97ySF/IPOKXnSDUdatYaklHcR8blI8L5JqPe2q/V+dctX HtdypLaUNty/VuIXip8r/oxS/qMfsD06fYtxCMVftO/v+suiHlg2eS9TKez+ EWfWhj36VBNEkQkVYKsgioBEZJIBp38PNPX/z9/c37u/B97efs0OdgVU/w9+ SWJ6o0RgJ9EFBO3/hHvJJ+99mw/Mw1/MnE0fj05gufx8z+r+TmQ6a/nen+fr /G5ls1dP8/5/2d+dnm6n/fC/zc6mA8KII8U/a36r9rHiP9eWs5EJmn3cfj/d BOWUOv9NftgOFeUV43IAaSInb/vf8kXch4QF5Rfj/spmud30dSec1IQudsP3 NLxNUuWhkj+7o9UM3VZ8f74nKxeX8yCaYSCGXDOWsiFhMBJeBWia8jsslFna knGk72SitEu/fR8fhyVEaUbRabboaRxJQeSXCFNypO1HlRxQBsn7JHO5iUMQ pH9xuNJpX31q4vttL/Xf4fnh7H7MAoiwEJ4JA9yT+KSVA/P8Wfs+79/3v2vk /d/o+1+X5PIQ8ZAOIT7cP3DzfCq/f/J1JDT8hQZ3dw/buuX2viFHBf0Sb9VR dSLOWNcZCQkJCRRRRRRRQERSwH1zikPwfYFBm3B3KNHN24NUbEiGVrKp/A7L Q4YAQowcEfkFEB537e2R4Vrxb8F6kqamy3Xo64CbkeFgMgpgjURkJE7XAc2x zLNIiIN9rM/NTmfFen9q6SHhd3J9mnp8iIOiBH3pNKskgLJJMkoQIRC97zui 0REcpkRxgwD/a932/bov7jb93ijIPMVRScX7MOcJM81kUiS78fWpamEdo6so YRu4yOZ76Q0m2RNbB3ignlXh4dtMkFXh8O+WM3038rhbdyRGRCOvW/NuqFqI /ZPK+GhBa3JcHuneWirGL1qcK8WAomns4NmJjqzJiEQIC+ixnLBPV9r6rEYR JGa5QmpZTggcRI//5TxmUIVB9phNLIHFmlDlA5wAsTSRoQIOW9BAZeGKAiOO Q9psMNBilecbLnbOr2xSVLvPB0o0Fqp6yOkeCZ+M4hBpWuURwsTeJUnWurlR ZnJ+yeTZLdSPrftR2uKTG1LFCqGSc/reZPcqrNDlOEZzoT2teuJpYTRZXiXh lLFDBmysIwpljExG8qoxZh1lFFy4LQAvQRVqrPnyNw/nZDn9fxM5hv6J71+N q2/r2g1iWTkQlOHnNJtcDuvht+3xkXvihEO7u72vdZsvk4X28DxRziGfoMmp PDn9XdtPLyfIxV3k894nOKTxo/leQLJ3LKusSxrD5vlZPOHl7osXu9c74y0z xftXZSJ+9TNZynps8FqPL1zksrPjwxopF8J7YfLpSCOGfui86w5RFMFtlHLW tWqT37cy/Vn3/S+9T18bdfG5tO7fP/3d+M9a7+HJ0cqdKUVizmlVK7ZVwXvh s87Z9Jh4z2orPbD1ppKSzhp5e9PRdXd1Y0qZ8JX4izVG0mPopUfKIypPPERJ eddsudOMrJ4mnkOqGuxJLFtmnnVNw5lJUliGiye2lcUNbFFGrd1NyKTwEWkZ yJwpvneC9MVnYtz657eEMI+m83L/YYOOT6e0hQHaA4qgDiKCOWtiG0NoX2Sp sO7FjOCnxPlo5mg67W89gP7OCt07RospHXPk4aIwwUjZ3Ls/5Qe3snyfmmzf G5SGtxgf0XKrbdg+zYHVbJawPv6OhZ3M4pCDO9+u+3g6lPHrrT2dK77cdcsR jK3jfi0JkHHNvTcdEDUbyo81uCGi8pGhMdCLWNg7G9I6qLFIPfUpsxI4tJkU ciRhVAnzKdkPHodRCKx/Aep/I2dILOb0gem0/SqToJqAcmbQ6kNqWLqH9cE4 JDBAwCkvhdzfrHE84oTajy8eahvjRWk4jbnESCeQj0dH99M77RdcGU5PiJ3r 1lilVZO/LoRzt0uRtS/lJvG/tpNctcToZ5y9NLNNTifacoJjvHtzvr7a8va8 /amMtE9su88vZpMwWV+jy2blGljLprlqPe98aquO0srVfXaPKhvHp1fM89XG YzQscOXaVb7nP+DBY8Drezz48JnBWXBJS5TiE64u/U9QmKlnhczg7GhneV8q N1n3zjqi724ZU9CQSlXjLkTnu2JNvPVwfbFjhx7c/rlnKnOJZcOJy1c85bkM sPykiCEU3V8HfjpzpLlzoOPlWT4+47u+SiHd7UvNs1dejG1CvOzBzFNqlOpa 9PIw9/lo+HKxPM7hxKgp8ygKQQUgg3bALW10iIYpQ2J129Yevxkoa6az3Jj1 NH8Qm8M2NYbeE/ZgUwJCDM0gxCNAgdISHuyH3fcGVOwhVaBU6kpYJTqOSJxg X+DwwhyUoQmZl4T1zFEyksdVCVTUVKJpESlDQqRC6VCJQ0hDjRLEGgiWjSpp QNIwSlIBJNCpSIUigFCUCxIJoNKKaoabGDFMM4MgFKIBQ0qxDEmhUErqR5Kx DQpQgcgSIYkKApcQBoIhoDBTNJQVrEafiQ/YEg+84Zs2G6oU98GYyTVJCBqa eW+UqHF/9P/kH+z/V/thR/R8f9Pb+Ld/v/7fX6/m/nv8efU+3+jsP17D6OU+ Tr+pc2+t4eHPf7dt8Mvrqf56vW9aX301NdsH5czhgWxjPfbNMvbTPqKX6YBH 3fWfgaP4Hf5ODRD0+yrrp7q4+bVRngtfNfR/DnV9S9Lxc/EtAI+sOE5y34ur teZvDtGVMTJLSRSRDhT6sVnu+uLBi5yetStO/brYmN/d/7eK+78fvR8CdF/d Mj4/gtBM1+PL7/JEn6exQg4ojkukC3dfs9XhKg7RKWddPcr9OO2a/aQvVk8Z aS/UVemdE1qnHUu1C+F++q/ferV6/H8hdO/WSn4jBOc6H3qfJSS+Mb8hf5vv U+4eoKt+T5fl++qIBNqkc3qfWms5lbP91x9z+Q/CJoigGGGYA+7H4+vf555i 5sti+w3Ez+Y+s6/hP/BVq3bA3zmFDWqTMjW7NcInF4mbk2kmLk3gXK3AzboZ M30E+PnjLRF81KiRJgzRhS0ZjKIKcGHm/8TuJOIT31PRsMbh3ZwZxnHNeRkH nZ92o+mmjvTjjqJvHXTv28qNHC1U4ayxbGWVhMs+cb+Epxdr9inJ4tYhWdk6 Jxk34px6tuzSptc3xeJcZaCLaA7MxnfXodonVs9VY0yjYizI2fo83GH5HhnX S3XDvy4l/XrTTG+wRNpAjRIS5McxHd3Q9XnIdPNC/3vUdJHv9XiK9s+1KrgY efoc6S5gQM5t4NyBngYOhNjLrM1SQqcsjacWS6RWvkYHLFjibq8uFZXySw80 ZZNfhiDDWqxux1YdiMiprnn4zyjgkfBMRXtMihfBxHkWim0IRgKAqDyIvdZN KDRmhem1bwbwvFTREmkUQC96uVnDHeK0c2nEOCAy0b61QQBZAFmZhgV2XRh0 dhv3AnSf4J5qiEqTzVEOyohtvt/937ZfsVELePH/f5cCP6AR4QP3CMkMz9T0 VEPRUQz6dDLU4EIH05QkIp7N/4pXhApJdXj+N1+Dd/PvCVX3XLT0LufdVT+2 FlOW/b0vFnjc2+yzmvpuZ22rGHzvet/biDV/c5JmaIk+br3SxlRUyvpWg5om iT6OTkh3ycVU70hcPVFe+lkZthTY1D9O+nc9qfqaTXyplNlL4eB6TY6iAEk9 S58a8v28cNWvNP3LajfSHnJ1vc6HOY9Kd1x+ra4sXWzR1Xda6qbavew794d6 37nURHMmp0n3Kha3Bq1O4iNanKNDZA8wrWRrxUazHFjCsq1uIiT0U63Wu+3O wiLzS4ssIXUqO1McOFWDEoT7fWXYltgpfxsGqohE3YoB3hQjWtoX/kqIZhkS OlRCWOdh+1QH86UUUwLIAEABEgEBelRDC+cUMiN0gwt43qFlUgTGHHB1F3OE lNNF5UQ4CAckaqhKQkT2yLomZIGie5Cws+kRVKAoRPefYT767v33+FvK5aBa uvuwY0O3zNt9W2lGo/Wj8sAL9Tys4kiJIq/1lD9isIEguLRaXyb9Ur8ThXHg LfMghlvpKRJVIWtlscb2tRB5Q/MGs/JYT0ICh9DFHSBy84T5QaOrka+2KN9W DqT5l1J84Q9K4LwDigct9sAMnEBkE3gHQP1QvP91LSCqUJDzAfebhDSJqBp7 2+cXjpltBhnvy1Nj2gZibns19PnT4GEhETM8VRDL0y7WtB9J6+dInXrUhnFu R7HerzEkBPVZLWamkDSVE6U91DueOfmrm5eqhfr3xYQOqEmMu3lz7T5IrN8w bofhZt2kDMwrfAmPs5fP27d/Hn0kdiZ3eNaUlKSlh9fNmmHlq7MzB3LPEUYP L0MdxSWDLp0463533z0Icfy426YTI9qe49yohSJroeHQcMtk4JDOhs06jq8h BAgECA7QUonXWrQhIQX74GsfPnPPz6fu8b8e5IR9weoFg2I+NAhRj3fr28eg iqezR+aX8fd5+mGYoh0oiXgVXhVDMo70vacPEpynzZs2zTL0MGNWJGJA9cpG tr85Uq3ZNmm9KNVlVmZwDgjt+V/KD+U7Ahcz1pKmtUgawKgG8O/XYHnusUAG 8BGMt8sdB9NJVOsJyVnoCpTlakRSc0161aFHkQdVHWdLX4/DO2qDd7Qxrd2B 3TjDu6QHlzi39L5QuLiBi9068b75VQQBPCaddXwvXLna0kXmcuNE7uco2bCW H9WMUptoVYaaGyu+aFd9E2sfWqIWOcNIO371/uB8Ofbbfly8+3WdMZObfGL2 5y2enTbFZO/9Jcve80rrhUQ3VEMOsUOJpvVQ+q9eYfD8nxt8LB8f0pFZ9/6b Cfq/Jz4DrPzqiCPGT8Gdzo4eQ34AX4kL1uSZgTOOfT5Xx4aeryn53fztX1PK cJmbjOV7q11O17Nkkq1xLje+damd0DJKMUM422MQIUb+0rICzpSpELt9LoXT 5YmBMGWcMs78aUcPvA3pGQB54rPnje+NFXhGidmEQqR57aswdxir5O6zVdls cDVQzNqbM5VHmEt8ubiEfVEQQG3lZMNQkKk0IX0BohoFE8Uvi+Xn+rIGQmEJ hDL0/hNfdTpL8nqo6c+rlOQd738/wSyd1E/fr8yItsnSX4Uld7e76pkTnb5H 0XLdW++sq2Vx7zeuZlfKKUifHhfntnF7Tle6GDbDSVMmaUizbKaEixQ4Pd62 914MjOfG2MlV0tU/v9+g8tvs+0aeWB3gUrjba1Iiyyh89gpPllBN6TNMxztl XnzxFMfp6PnueEbcXljdc9ONdpU3lflpx4sUWqtvZKM/jjy0c6U7ZX8FvUSL 5RKUyehDEqHhN9vn76TRkhp05XwoyjhbglPCxlXLq8pzRwvOJ8dPKtMpFUo5 O7ehBhdDtFZGcE1KCW/bnMnMRRNceN64004zVDllstVEcmjKmetOJXjWmdif SZ4k50fyfb/p920ttnvwlwXDjSipxtaC0+OX4eZ9yffBmlfOUE/ORBPfa2k1 tNUtDtEyl5cYPV+tusP9r1gGsrSHAaSLJb+L1jDLmFpUHin+JclJg9ZIeaX7 vok1Y+5iJUuPVfGTmaNYWKJX9VUS/hN+KCZIU7r6WNIxen5a4o5cG1ETLf8O 3VH2yyUq78TF2CVvoJ3V27g7SbGayDb6nzb0nIwU7y5QP1cAOdV+DdyjmilO k0k2m1tQcZMjShJJHN+/V5XXGGs39j9qaxPH813V2u+syXM7ZMe2RoHNNwzd Xc1p5TumEp0QETcYkgDXFw1924lwSV0iSCsgOSO057J+Llx244D+faz9uW8G d8ZLkhroYumbZnTPG0NSQkzntVKUCTUUkp7XhVphiv0q55L9XXmmJaSSSQj+ NAOk1u1pz2txAgRgAQv5S5x4vZZS1aftscKdoqfBJ66imOcL9vZ73y/L8vy5 7CwJerbUhNt874eMPZuR5pvnlAUMNaHe8ZsZJAZEYhhjLqzh18Ct+2qlEDv4 YWTvdCYatHGaARD+dTYYpZKTvGPveOC9dAYivMHy1lBfUqggS+TQhWT2jpLz DFMd5YbNycweJPE7roRpFaVpRioBUSREYLCAKRQMOUwcv6vbc16wuJwkhO4s Mohmdv0/D7te1q8/FR6Vfj1mvlkXO/SPg/7RRlir4kcdl7KS5LtpY2+9XIta hRpp+8YrRHM5ma28z+tR6KwGBaKh4/L/TY0h/dH/MBBhCifpYwgpC4wJh7og 4mXRMwqv5BGebZgTUFCYwFhAzBFFbP7MyCKii5BtJJ+wr8fl55PO+P9OF7SB 5iIB1OYP68FpESf0ovUsDCESDCH16ZH6j+8fZ+H8v0n5RH56/t/bYg5oGxZl iYfzz/6/0k/5pzb9SklDM75ZH+Q2NnFof++P/mjArF58zUu9jtV3WjeUbgrf bbK/b0nL+quGbqaOG8z6SP4wSw0tfQEfB7O+VU4/PFq3fXhw361UhOczc8u9 NSEg38uQ0+w1af8BEA0htI4m297QO/GqvOHpAxEtGrUWiaEaYlpaGlKaDkJo 1oUusMH4D8GrfQfy4zDjuOGiF2ZsyknEgPUuQiy35KvimhXU1cfdQW83RMHc dxnS2APpbi7H+fw2owMxnjj/1k0qT12rx/7St7IvDalxmJb+WNarXN+hpNHV S/oVfZU/V4nT+0+n15PbfuBRmlNWcC0QZwq+QG97Nog058Msssr5MODcIIQl PM0doM1KVoyamvHB7XQr1M3hplGhssCStpnk43vozM58IWi0hLNEw+L8Pr+5 6uZ2wZ7HBHqqHo9B+z639SaGbwPhh2Y5JjFNDQUpEYxy5AcaV+IcBaI8cZx/ J7vjLlvLaGXocGZEvhg3bBRnRmLlPl1G5f3jeeqwWG3pKYwj364vv2KA0sCX R9K51ekLq0YfgePXTM10PqPr5OkZ6qIiyhRAEhDEDFC+XG492/d58QapFo+n 4oyK+LtBWYn1+wEHGkeAIY2B9VvpTX6bY5cXKBd5ixPP4BXtg1NC56WHUvGG j9lwqIsPdeVpVXEHoT4gjPn47PO4PU0nFtG94XyN/dzZzofUwQISFM/0dpO7 iS6/c9i9fr/n24G+vn4cUNLqqwSQHn9wPyRntdLmmRrA84cUopI2xnk3PntQ W7n+hy+JsyECBCppinrE18ixBUp63ZNPDkXkwJIQIXb2dPhYbuzhKua8/LtB sbIO6GG9jbRDAHHFVAUcCIBMOOxUJz3eQetifpgkVtOFHL2djCkIk7fywZmA +6ip44TOhWqcKY4ujnEgHkXe+6t8MwdkeUrMpbeWFGFtQqmQtQ1D7Ivn6T4f OTL1e6h5Tfc+6/SM9QSBsmwmj6r1kxHz+HRCHovkuyZD9Bu/w/hihQFt/dlv VAvlfZ5mT1iMgnxNMtw5gu06Wp2yLxzPKCRZYmoJiHuyA/1fuD8XPfbvR0S3 2lLReat5Pqf07cyGZcfhQ3io7jjNj0rqclLAvLw9QHo23+71B+Ynr2ySKaza GBrcRmDAI4Qt7CgwIx35/m65mM9OvngF3rWuPiE+3+f7/9/2+jY93dDw+x3f zZMC9Sd3Bmfj5SqWk03OIuU49LLcMm3wnu5m2Nc+Ib6HuyvBWgL5N/usl0xw UC8rZFqwmgLFvoT0pTRiBleGAczngizu6QKSL1HqTf4/u/e2o3s1eq4OelQT pEn4hUz9vIchMfeEDAHpEWTeswHSXTPKeRbl4kkxDYhpu0HXXsmnymC+WbEs MkSWLns3vYxZlc7t7Mt+EkmohmZBJ9FhYElqSzdUXhwxnKlXg3fRjC+L1N4/ fkE4H5K2u/EXJbFBxUFSYV0G8MiT36Fr0o0J008iDJ/Q5DM0HupvlNnuzwXm +C2dVfDk61zGG7dc067XUjgYayZma474nQz4+lT0t2zfI9jouvXYd2ux4HEQ /Ri9LmZE4C0Q1HyAGGDt7veXuw3/nnlF1rnn8LHCPeOvsFYp6h1hsZy696ay 7w7ZkJTTdv1fN2D3/E6c2tcyOJ5IB2ESHfaT+u6pZvKhyi7TV8Uo3wOzMNiK BCs6HZmSVoPVvTAy0evQqZgzKlBCyY2TR6Gb6D4+vkN+I/avg+8v47/R+z6b M1nPv2/FifxfKf0cHmT+tsky/ThTpy1Rk0cP4D+jE9nLqOIVJMzbNzo32/ws AU/d8b/uiXYeSnjTj937WbgwQfrP5j90hvH+zf9Fvx6f1N6BGG/8VgzlDST+ Utq+8lFCIR409j6KaSuXfFnh7KD2KhUxlYlMDt8wMMfOmYMN3PE+dvmGICPD 0fx/OVq3Rvsf8oMy+VH4xSTH3180vq+j+D6aByRsssPt/Fl+TLXAM16fT/Ht 9gUbThrz1eX8n53ji/kZb3yyT037TWVMBDbCcI8E1VMn/IfeDsJ59P15d5cO xL29e/s82uQY17zpzfxVkIp++In4EgJxDOyQyqyBvO9jbpj0TLdZQcjh5xTj TjpTwn0qP6F518t1+XIpmkqbkpSJUlKU4dIvSdMZrVvFmRmuCqWSq8HMe03z n4aznJmrXeG1Vr8/i4PA/56bBltQlunXrGazsxqvJWXJSd8nN5bWqR6TXWEV 55Lmn5QUIefr0kGhlwBgCAy04xojXpyjQwGtJSSNDKctKgzPHNx+vSu8scH1 1vomY1RO3ebxJIzZRHrz0yv4y8Pxy588zCXgMdPoX+gAYH1NWAskfcZdGDPg nzw9sT5qU/Etbf5sxrczMa3nOctwOQUFJ+IlWIWZT+sBIwEq6CqIlgqSCQOJ IhR/DHEXsMNcGD9hLP3bRBNqFOeGTwNlj2rGYU3OB30mSJhIgmUiEFYqEBIs GGWoi8RynQgacpYggrrDZDD8haqkBRQOIVJQgUkXfsdR4Dyu4T2I66h9SeQK iIA4wYCQmXHN7XJOo9T62R5BQFRCCeYE7JDkp/clxJxGMSrNUwVJA0SwmHAZ DqDikhwgGYghJSF1JDxh4Rx2A5aWIQoqgQqrYfEpnQavVWDuQdHQiYEGGA1C QDiLyA5KSEgEJRLEkV4rBGOMMzyGiIWFzldInU2wvK4aJ0ryQ5K8uEBwgN8G KtgYCgiVqhkpmbbYqIrFU7WAInhZZIqJiImROknjI2wv7b1qEoKA9PW4SH6y H70lA+zZAFPu+n+EaX+H4Pg/Fs+966wRR7tB8L09/uegV8fOu1fNjgZfVoWW eWvDHF3tZ6DNlMYFCX5oKBMg68yERnTaUshqDDe9+1ruEc/KtaQcSsezc8Aw S1PiVOOdqgNUFypU1nxFm6Un3fpEV333YOWHK0eJz0bn+itkWbdFFpxS2IqV ZKHzXBmsIz9Zc4+IT2/qGB7Ox7KoiTgoeg5pCZJCZwVWcdi6RTDS3JS97w49 uI37AiZsbFP87oWeXPi7NCY4k++3CQwSbdAzp5P3e/dXwxRxxm/r5YWhnMxV 2FYP0KRbXEazC2evlfOK2tv9RhgGZoby0w9cTxN8MYUUkZ0QEFQs1k06y2s0 SriwUOEsVaGKvmzNSiztvMbr41ktE/mO1DP9CZDJNEkZ8ft1xftBt6hHpi/2 FQMp3oCjlzcoDNDwT4l5CTFDYeSifhPpp2m13IsiWk0bcKXz+1qYy/sxHgm0 tX0rx46Ac0YfCgsO7Z+GOPUoWr6Nsds5jPBcMpadPaQLQ6Avk4R5DSd2JVhh AlhclydOsw1pqT2uOQdt676teE1afT3Ulx7h5RLKzTfVwVL8ZHXBbLS+cjla g9KHUq0LaQLh3zg5ZFnbMBlDnbl5e/ZxtANC1gG6JhvfhdhMx8k/luUeaaiO Fd0oki1VojqSkKpkZSIW1IVGq/CsQGOM5t7i/fvy3xuuWz8Q7M8IObcQ3bIh q1QBJAkNjzCyOD8raSLWLpqphCnwlDdjQutTulR9Mwks5zSFEmffxeU/G/le k7j4pKadMcIcNfEnUeolxtwPT5U55FOKcfyIOxI5LophPLo9ldleCi0Qe0W4 Z6KCOvXEvViQ7b2YkgBOOGQCrYy4q7c2NfdFPYZUJ3pGiAEZn5+nCr1ymqbX 0lb0RL1bFwsw9dIE2gqJShFH3ADfstqrHFccV8uo9Pt2yk8zXtvxGr7blfCE PTaEqrOWXACbFwcBKDDscKyNrT0oPPLqMJIbc52OL03LG9BFwOX2H2aC2gWE nypzzY13T1tJByvY2oCuuws2qppqcpxa6c42cNUUZvHMe1JwS83cyIenebzZ XzhEs+XntwTdtDaST1gWDhXBys2+j9GmzvXAlfwW7T2bOuzMIdEylZTHznqq cHjSIdOmBrebszOICvq5HKDGqSWfh543t2bagr7LLIuyJrAwYM20q2omEi/p jVG88UlAZy9fPyj3x4T09Nrb5FG67u8Pmia/KnHoxGReN3y2nfOQZqtWBqz2 q6t6NlOtbVYa4wtth/Us57MkzhsDNY2STgCw4Q0SWvlSCKMNRBw8DamPDX1z rknIsbK6Qd639dwElaRR68qGmByyNRGM5CRltbD4pSzMx1ylDQi/Nd5sb8E2 vSTMxEGJqSgc6p8x8eWfEu3PA+WOUi+DLXJoEwh3arCk/A4eKmYWMKxoLdS5 czsrNshry23vrtvwldj1OAhPpg0QISQL3TZgDtPTg5P7g7HAuCq/flnwyoaw ZDU3q+RXrHZ4IeblQ6wzzCenCUgyHamjrkWOXF7ODCbFFm8hPXVFgTscupPW 4SyTnmy1Jmo23joxpoRI2Ju3uBSpJ5MPrUuVyZwd9uQdh2QmJyELguTabp/H RLoCQUz4abX1RHVzVGGflgYZsRyhNeJGaeMMEqVKyp3ukpzXHIQR7eHEQHYt sYu11xh4v1hEAhlpVw7FGIYnpsV6vDn2b8zv7iyPBO72eY+64Veb7478ZLmH jEabyNVVTbyry9Hr5eBS61zztC1ycedjPhTrBCoRgNEAsddu93vVZ7DCK8Z9 npcR2gE/eM1uotiLPNLWiivr85JtehX8MHyXtImKCq9vqvn6OuyiKiYRsID6 M8hfbhwJsTcyk279Q7Ik2lagK5V9bROKUcvtBCYYBTlpihbSZfWa8G6NamdO LV4472576W3N3F9g5TOw0EAkGRkQhEUcuPIwQo8i9CWqtZ5Nl+L17t4B8X0U 76a9fn9n6m6wk+6lcjLXul12Lpt13d8ONB3NPAuM6FwnjkGupucFyiG+a9Cc jPdmUlBI5O83V4DxAT4sHIFu7PC6Bhj4yp5RIXNLssfyHiLGxAZt+fTXRqDx 2+cvgSd9yHv24XyulebOEUiEtohQup1dERfi335XppLKbijWW216NIid52mT tSQ8Z+mKZ78ctMPXPsp6s9FjF9eM6lX2TwuMuT8iWsnlKBysNWUo1eC2h4dD fQXNOzkzlHv1kJLh274Hq3J+UiyBJmKMoRykWTOhdr2lplrMctOciZD909F6 fOloVTxtTbShljlpSZswWbXwaji02ajLCq/ispTlx3phRx48OKU+9uNEpRO2 IdjJu6GKnEdm5+TOwHtQkAduGmUtFc6xTo/hLjDlneTjirLn0iV+7t16mpmX sHElw4V1kmplVUHMbTOdFM0NjTyztfxhFEAgnMaC29aEtLVGn1GWm2z7NBnj bEs58lhUp2OGU7+skdFtV/BB1ZGgTOW0mZMomerSI0kZg1AivGB3k5OsG8Co 94gdc6ytvrpVWwH9dHqyr4eNC3/xUo9wL3ZE6A+UQ2yUnoDmjLcTq/tJEUEL UhCAe+ZlsD3wwJLG8jn9PvKoFji7I+6idx6gVoFyIsghID5wDnEyJSrBwOfw 1r6DR8gOl0P37G4yJInghDxKfwF2PH0pVLEFBEEFd2r3Q8IDU1qh7EkPjZk7 eRD/erB0YcndBDlDl5Z+iohn60h5HqHxv4xfKecN9y9EXLTQSJCWJD11WjET eBl8HmqewNwfGUsW1AIrpYSlCQYQhzYUYPVjUwYW0W9nq297wBxJQwZSyEDI VXtA7JVhMV/UOb/3sVXwAwqIc1V+YzNj1hwignYNxO0AGSC0iIRJmJxbwMJp 2bWV6lsDRAHjip5wpzAF8RAKU2Ng8/3Yqyc8nMR5a4JPKYCENkEPk4sETYO0 kEVU0ncQYY1CORKT6kfTMdnv3x0mMLAmgD+hJcJ5Zc/aALLmN6TD1HghcGgg Rh40JXwhKQNOpQ0HnvCocPs6cDRsm1mLmOYdwJ8V6dTF3QHiAbkkIkfC7v0i l9OB2iry8bRMPTg9/jR5KnqEZFJGEgken4qCIRV7hGy67qPtSvBy7RUpEoaY +/0DgTnvff/HRFRVX4jHz2J1nuhhgJyzhxms8wT88hJIyLGSBHqTN+DN2Bp+ U9DA6mwOjAkYuOVc6a6KGsEwpvbaRn6JPbp+yT/pqpNnM2pEPTZNx8AMOP93 2SOa6egReiaxIAQDrYkFO8BKYAUQYlFYv3IHxAVDfr5l4fRGPhrZ52zYQCq2 A/KAd/61Ew10YYofGv1luEB4HlbMi5UuigFrBuhlF6fVZ/BICQAQpZGkkqmJ hhShJNoHy06SE1qvbPP6KkdEjlJCSaYosvUT6g+sD0HbMq4kNVrICFjDayh0 4ePrxVmSYONtGD0kD7XvHc0nmU7NkPB/VyfaiEMmCdSCed1UrPMyXIo2lS0f MLeO/r0wZw/aftPylF+B3H10fu9e5cudV+cQ/Ty2bhTtBBQOKB0x6xQ2EwPw l4bucrUA1atYKJMl6mZhgyNLTZiYmZA3aGLdTaz1K5HyQbVPulfM69PUZuED 8Uw3hJoY5xShjXwX3KYac3PDrRIS7mwkSWT6yN5HjBgA6+inpJJB30dh8DvL VTAuDZ20VEO4IfCZHvazjjJIEic28zJcwriF5HOeigfkNF8eUKLkuXi/F/rK B4jAmA2rrd2g2Q46ZISGQtujSQiP3RfNtDqkVDKNIkQ7QCiCQ+9T27zrHagU zOQ2ICRIgCjQ+JNCsSjiTVUUiRJSERCsPqooZGBxlZphchgUFMtMMopURB/M TQrkK1RIa3C7gG8R11HUOB4O0O5ncp2YaIICIixBiqsyUpTQEVCFPWLMmAHb aW9skJjFqGIcReNGEyAyLYdJPvVWkqU6h+HXtr28FoE9uPlo9pZz588+B7W2 SSaybvM6VgdSEiLZbVLAKpSvsjQ1a3NmCLZy1aMuJEy/aBhKMEbGFuTD5AT9 U9YKuUMD1pWdClZPr7szM74dOZs70580VUxneZY1hlz+FruFP5nYogG6T5za EhJJ2+32flVeozfUcI+Pp++3XxDTidJiKSk+hysyhC8kzK/rnXDQ/cu/eZYA BCCi+tNEVU/qw7gEQjjYDQkNEqMAr0wlQPo5tNt3U84jGHGdvQlDANq+cDaO p6TIGQDzJC2B1hVO6B4UA5b9vfQ508Z0uGnUybPybkzMMEGuYEnyB69/Y6z1 tV2E2iILRMkpWkRShA15d8y3Z3gRUJFRgvPh6wHg9HAKSq1QDvAzGq5JOnS1 tle+KMSQaO/AYkJ20LzHmujPS9Pc5y9a4BjzhmSAQNmCFh5gggUYIQaJhF8h w67OkXgCEArQQAzADIpAsNCgWdnjO2duaGWwiHSAsKh40UFmE77LBRQtAbp6 ccMsD9Em+oMJkszGVxgxJEscIosmFklqS+p511NKEIE5OQFx4EgUqMInh9o8 c0ECUdQ9xQtILUKkYX3VKenMrODoKEEzAWFT6yw2qQSCUdSAZH0E48unKExI SyHrrAxJBKclXTQMChy0aHImoIPNyG+ABoIa3qLZ4QaehnXCSOBqBPa4QPhC FCqMhk1kIKAsIhxzO3fNYHOrWaUX5HIwALujLHaAEGEhfjx9ufXK7IvbI+7H fLU4VDUEXnRyiI9lAHwEVSKEkI5555fX6jB2gG0jEM8jYgydwUHwBF+GRlJp Tl9mz+a4dCL6M2gZh6SHIU9IoW7EpF69x7OgHQiECD1kCikazBc3FBq3zDv7 PjWQmptDM4Quc6FPP4lcsXxvN/nvzMiWHHOsJ0IXxhCeMxPWU3R4iI6VwehB oooHXWoAgtG0luJ1ALZ9tmIg/MkP5Zp4hdip5FfpPpipCRqKCCNwYWPEjqB0 lF0367G0bHiIAQprmE1hOwz6ukugFSkvHAFe2p6UeU3Zau3N/vd2k7jR5O0l QkFXsj5Zp+cIflWe84tXVPZ+qKLfbNqm5lB2Tqi7vby9Jxnp8R8zSayT29X3 1sYapqOXeUDuETXJTFesA0TkgRiATAe+TEKxKIBAhIoBfJg0iEVEwBXgHz16 zXYHcB5Jy0o0qhKDbsUU2FR1JRm5zmM7/Jeq7fFCZqY0VgO8EcE1zWGidxes NYvBMek0glypNxtkbTimiJWtJkje5m4dK8Zy3CzZopuR+3CzkDrVN8tnqsqp S31q95KA1hnTM1XjhWgfMmebrmiRtpCupoifNRBAA7twxcZ1wOp5GbIJJQXE QY4N1nKIjRFmxRwqKWJi4IkWZGVdkcyoIcvrHJg3DGMiNFUMUwIqlGyY0rPL XSjSi+jckOjUdF0jlYTyxS5fHF3V34rDShiu6mcdIm+5xb5k56930FdeJ6Ws Hm7HS3d9dEudkBrfHBlJFDZ1oA4MCYuXxh5qVkIJgxEbSJqEFsOa7OYRULuz MGQr4Sdmku0UiWdxyui6za9TpzQ6wIkkk6aZkOA568r62FD0F5qySdniSowU Gut+M8EYcJIYgjZTH2e8D17fMXwhIiRFJfGVywBqd1KWCmwK2JaZk4cd4M+i Y0Q2ofOnYAd2KRCKhTJ5hT/plVyJ+gvafUh0C3YqbaB82fHivXCSTwyIaBx8 2FnLNk9GcjAHMgnQUBA8fPV2Bh/LABIkga23huKe38P2m/zB90Q9xQEOsBVv j8Wuy7XIj7S2Lwz2my1FzHrOgTI+2Qmm+kN0e8IgH2Eto78mHtpSwl4VAxDc bOoKDAgIsSLA2IHpALB9j6qDKXITWfJUQ0okmWYBZV3vRpH6MBz9Kx0vkgtL p2OSb8AO2rMCYQdkOPsWqM50Aio/xtQPgXtRZeNTmbATi9kDbqgZBJBciJXD jwiYLoeWNenjnr6ghEh6IkQOIraKlgZUEgMI9DjaXVSDDJpdrBKyoQ9AFgQh 4g0jQh551wSJeoYlR4zGyANUK9Qh8SAcgRp+hCPwvkwdAvjXP3Pcf400UURC zNJEtNidRZJ4GyD1knh+VLdEimCHW1I1asiN7C03NwUHl1LaJiU2mSYPRhc7 XELhnzUA6pEW+afggf9k/KR0yyWoJQQjxPvvkCWnM3gdPbwgQQ1hCQD6kQjm wUfTt4SfDeblr7d68et8ZpisrKnsKC18ZDSIV+TZN2an9J7J8eHWip7Os8Ah lKPt6HOEWk+aCSPEXJdRCDrqheOUaSicxWqOeM5M1nZnzDpxbLcjA40KIDtO 1CQxp1LkpgUF6uJVG7dpa9hy47dGB0RzNOQa8Bgs40iKgni99TXfFXumhnbn i2HyJIQwVz4JrA5DwMgHEPKYwHt3MP5sN0JgQSswbBQkwfCx7JbPuUGmghxQ SHEo7ZNRIlbt1KtycPcoQoSSFdE6HelZNoaOKJWpYCDnUQoZqAjCHAta7jMf Akd5RJgGy0Cinnw4V0IBcEXMwbxTtBgyRDWbEgfTzMMn2DBp/b7E5ByBoGqG ooBwxq+kxlPtAh6jkfSbUUp2m1GGdUe3oechoK1hYqppoCIPDznJqo9xBEth EsZ875nO9g+dUQmRzY1uJkSZFy5sqQJkfWT34yuhoxyPifz34QilPym035I0 8/0NHL24tQSC4eRE/Woh/fq1EJFMjIgogTofnBPopP+og+3YB+hgH00/7pIe Vn6GehFExId1YQxnvoGYVQ+ugDtDJHqF/0z7QnmSn5QncDQI/5o6h5B/mk5I eiD9+eSJ3bvKHJaUoE5IB8f6cIdz5ilT/XIH0T6jGMvU6VUgsgCyHy9zEXB/ xp60PV+jCfwBGJIge5D5pz6U+C59TKYVsOqXH50+tIFwoCgRAwadIfyuk9BC FABSrQov8+QViN04+6kxr8vyFXB5RAxoCLYf1XotRx/VTYMnnaErlmoWo+85 nKCGh9sSj0Z6vl96YDP+bOZonnG0SRZJuY/DpJoeJn5p96a2J6+SJwjDNTUK EOoPmRGTzVMdYLr+Cl7xk5yU2uHAmXoGDqPWrT9mzQO3Sj/tCXWHycUbJ6xv 7FL+LIZmwOj8MqMi1FGDbQtcJIZO+ORD1ie4+IeWbHEGkCMh5rbIX5pC+kJF +LvEFlPyQsO85FB2Y3PZ8cXVusdAnWBGLB9d7DiRmVQtR+qm41fK+LAou/gy eQ4FnDwbpJbFHzj9Od2ceRdfM8znrUgnYJIiEIBYBWRJTDow1RRqo9vIey+o T8fsfqeI6+NhDY1jasGo4PZEs2WmNBAQfUoKlNzhQgzmy4uZgIZNs7Q2WYtL OUlJOLUpDjs8N66lOTCmOTLKLClwMhiTIQdSUqGILgzjLDksMk0dOwb4uiBv ub25DEmG+1V68XcC9yohg0qIcvms7uUB5S29HrqGlnBkbJrZkABLSl8eeFrM 9RVvNNjWwPXZYiueKhtI8BRNdIHs6kndJQRCaISh1qzao3TboY2EiAF9UU6r Xrniyt6tU78WkRmxgA1WRgrADuwi9aPHPOKrbK2d950kmQKL86ohpZS2m3ax dzoOv8eZaYUx16n8cDI5L2gOhYQOsHkCslsLUVLI9+unPe7RHMaeogIH38M2 Kg9SBhEbAYRYyc2R+OKCIep/SIdHh5BtoggiVzGiozbF7IAnPmIe4kD8731F MIHkJ7chVAbABh4Cti4ZFEA3HF18OfWfp0IWSTpkLMEKWkWLuh3AY/4gKrqw /Yu1kFExgsY22NAF2EHj8wv0L81WFhmoia2TSEYS4cIoriUpco8+TyCe7LKI BGpDSeSQPo9uoiaVqMMC3tzL5KOoeeCR2gkEdqaEEhqlRP4DifH+Anj/2HR+ /6XZcJbUCWviDPi0hC4QKAUNOBcIUuH4MXDDW1dE09uwJ8A8JRIR1fuBVDQi 3RCKpddAvR7bNhpsaYB3+KfQZJmNBX18ra7WyL1L15KKA4R1GWuRbnwy5cgN iORV7MzNi6KcsurK13mZbK0a1C1LyzJjbrLlCKSlJ4lSHicVo1APvMe4FjV9 mUGPi+QSTfNdvpEyYRIMmabZpgdXzD4E8cPMzrDQ+BEPpZDASYlAiU7VfqQ5 ANxDsAgDkEQigej9P7HqWD188jlYA+umHEkWCQC2cMoPkmYMUBEc9xO7bR0T zE5HJ5A/LXYxQplAEkQciKpkAzjp49o153Pm1tNQxld5wLX+UuoeYjd6I5CS jmjQpgKvh3ApUY2bE/9DkMdhFUhvr9R3ZDcc7TIwTrnQZkEMSV1RWQhFdB2h jwir58ViBxE2jZ4onGsNetBPcUkgsiIeccQqF+xXKPMgGwfbBA7kinlF6918 +JmVhbS2fDKTNZxDchqLkqOWhTfb8aNLpT7Yo7QN/zhQJ/UWRwBEESkfr4O5 5C1T4+7+Pxvzc55WqqIDY0s0qTSddG41AEHeDRQk1ATeJQxVLUhDCPI0tDXJ iH2kE4ycilKWg5HRPPutjGaRKUoE96k0Idyh1Mw6JIAXrmQ4BZnCk4Mgpg2I K9DHWXTJu3CdVKOqsGTu7BBSOJoysLCo63IG2xzmQFIRSKloXuai7Lq5Bu8a Qo0CcFIjAKW6qGJMHXQViwMEIYjqARF3xDRoOsF232MRsBLw3+VWnnYoD/Vg x9E+hYKiBod+oe3PcwlFo9BtyJTTpkq21BW2r9BZ8fPmqIo/tpR09lOtoXtA wPTcCCnssnAHjwy30+gRQ7/siQgEkIEnyfqD2INCNgzoRKKCAYChpU0ppZJP 0B8ZvzkTlXxPQzuNzDqbAPQh11o2D5J9TqGsjAqqhEgw+fzCm31VWzpr+MW5 g9lfYACH70rQqgVBD9kgP3hcB7qPcj+0M9SWMuhg9epTgxTLXptGvqwJaxFc 4JNewEVYFh83dwG/Gih6KAbE0IHJTquRsBygGQWDGlFSRjET9kjEklKIGYE9 HkiUkkJlAk8+ymPWOtPHWUOhGj+HYxsG8HpkakJE9+Dk1Oj0qnVplDnAzdZT IQNIcjV5R27wch44DPGhn/lyGEfAeLOj1GigcReWgL5TeAsQDgKK9X0R76km AYAtabXCKiGtM11Hld0k5BvlSe6ii5W37FNJz/HnK3XX2utNWHToUhi0nEQR GRcg2KsNveGTMszYPIat91njB7YthCVD37b5RBajW30JZr5ui1tcUTpkQ0do 5LTxElGIVCrXhxfTW1zUgm8/PJmUurq02bZ9x+Ah49Oej4pDyChRxo+mphgG V+3B2CA0enKFHOA5BFG48DEmbbNySQnUiEISGyvzchxkFQKQ0oaOSRGj5cxt XaYQucrsxhrtyRjYRNYlkMARju45lDHllcoWtlkgIHpcsJN53ZEM1CEKE86g ayiUvHHMOwSRgSEGgMbbgVnB6pMQug/1xZGueUxCPs9z8BEjLkobohIwnTST U5uSb0qjkNZx29604sR+RzQHQLA3kjEiwiSIWH2QfUheoCynz4fbG1ik9yPX rxvtyUJ/EVEPvVEMMX+JVMI+1+8gL7HcMx6kTT2QSQfgqOt2H0/Cx0Qk4hU8 c+tbVbBGdVRD4ch8AIB+AA2bBTVi/VUQCDEUVT2h8uVFB5XmeP2LeSVGXiNw JLckwx+CnkJ8RPP6/ohtm0dacXNZhhrIQlksWaNQRipg1o0OH3cxAOETboeZ k7cG2t5zhhOCRyZnTDaqfYd6alCk+pCzeHeyEb7WOHul0DHhR9HwrzS11LKl oMIQYLAWE0SCJA22EpQwya6GnMiJBICoh00+SfbvjcYM37NMDoRJN7UEqce+ cQBNyI5EEG4MN72xD2X45qi3CBmRhySsWDZFVIigm3kHAanB442DJ8uPS43O Qh4THBlKmR4X1nrq5gDQWGiy0DUALMtUM4zJHCBotDHLZCHml5lRQxjIuB/o 7shSgmyyqywYak8+9IQgQhg9NuGTlCoVCVTmQzhKfPGuj0GumZuAD2IFeBiv DpyLXI0TpqFQ2CRBJfwTFFkOQZe051yPF6rGMIkhIwUkFJFUgKEKoIqJ8wul CGkGLo8EJX2Ddog82TDoQqFmG2EAVXNMZokRMnYBiG85PiD7/L2LXjdpD2Ad CFDbq4bdOmBKsd4pogzXXi1pgO5N3lOOQdfl9Pq9z8vFDklRKcSDSDpHKugF QsLG2qd3K9tnBuF81h0p+2lp1MViWl3gS9qQbHXrY/sq+JL0ln+uE5m74a5c DeB+4yhKnSUkIEiQl0+YI+T5aRyuHPux6PT5q6Kvtxs+hM57iFs2r9y9FrlX sYkvXrsyplI1PA4mxw4JJCi4IRCkVA+3YBoIlA6kUcH+hX+Rup13gYx75Tds 0e2ynpW6yQep5UVdajOFCyChSheTXGdrPSBxNE4gZeiY4epOqgfKoheBDl6j 69zca5tZwBNGiWOZlNixsJ+77/Nl14gg/XCfXbAeQ0JwzQ3ITqDfIcFyJNbB exeyURrqGRGNLgujAyno24jcLbvXHeQ31TiTEnBZEONzmKgE2ODWYdsNl4Ta rRI0Pv5ivy/X7W+3heNX1pAU7vcUlhHGlq1bQp8wI5gKUnklKpqMctJMJ/SP FXka1c7eUJIbGizKjzPdXDgXxgZiKqbYMuIA5ZbodtDgSEpIQ7mbHDgC8QZ3 DUBiOQA1ShQxAckQXQHHYU0JQBoWAF66OIbJbBp/HKHA9CWrsQCsUird3Dg1 mlEhFYwD3AgOXtny/y3Vv2I5ZXH3jSZkCAdBpqSAHAbpiR8IrCEFBEQqhBFR SxURUMSIRIT+jGmI6g+rjgNQVuUqOm7WSr0oRKCIYlQIqIZ0qNGucoU0MYu4 52M0ybMQ8r9b3ZDL9P2BWTriFHiAib3LrvA+1UQ5cgsAmjqXNED3wDFnARVU 1RdXLIRQMRQJOoAI7gyifVkyjeCMESREAIQQqDB48wbBYa4m3CBjI11lw4vy cMQXNJYQDjIaLsq5wHcBjiRUTWyZRchQKsEBE60m0na7YzgJP1EC7UhPMiUr kIB8vePcnPk7AygPooIPmoCQQ8CD3bctSeJAAxBLRrPfdRQ2uBCAEBiYMes8 o7kKiP+IgVE9f1e0tcHbbAfFIM8YoJPP4B7IWgoeorCayGUlA4mm0ogtEliU 2NrJkDoe5MlWCAeF8SJGtwDaLPgVtoMr5nBEEFASyJC1LJvf6/Ht930UYjY3 QeD1iu+IAlDl0SUQqhSoKAflO5nJESQPXqud6Q0hJOR9LxrQfI6QiCZaHuZP 2lQUfuD+yRMPSJqIBUN6MO6SkbyMnObKYeEdI5NloCPbuczDQmEwglvEO8Ra IglIUggWIdOuZ4wTnFM8UoclD5jFCwqpCJrHbYmQpyMlVAuQR/ykFH9VBQZ9 lIann0NFNd2uil7EShAkUZlYgwC1Mga0GvfG/H026eXprVpz4Z+H73Q2dQm2 U71DMmdxZYYhhF/NqkM9we8m5wHjOYYVinnShGVzkTxthCfik33XCskNFCNp CGYZ8xOdujEmgPpHue6SAAkWQmTb+LB27AA6IZAIp66eTEmzQodtrWDsAdYU nSFiBvBgnfHxKyaQmh6CJwJXXrwr5QG6OFkNt8hOdHsvsEpoKnj952M+6Slv WT3icbUcEUoNheqohFTXiOauXv7nJMoSFYZb13fG1BDGJfxngh1yCiVoCYTN iCFtQZoY94rBNEmEoMis5htTpDKYJihNtQfWbEohKqXX18M9NB2ROFN7EpAo soG0BbAIDn6ocjkYvY5X3QDqdtB12gbCJW6ly7bSg88eedzIzKCulCNeHWyN szNIX56hkpUy2PC+OzqHJmm2Ar/ryDz8j6+PmXS4X4Ot1v5YGnNLeBi9rw7v WXdHdB99Z1tCObuMyDHr4+EjVMrOhCQJJfv/oLa7VyLev2ocr6kfTK2Qafl9 zAj9ucFB6rAUGs8xG/T4Te4WBlt/mvnZJJhQ1F9ZzueHk0QIXLIAnf4our+X 6qDOASSB7oNTQncHJCjkPVooU5AeGE5sgaOpHEHjrD3J1A6XbC6QKQ67y8qC hGZOgQu5NtyEqg5MlVhWTE+ZL1nZ6Hs66Is9khwpOn787NMxVQhGghlNc/I4 BQ6duhhM4yAMnVB8y1vh415DkeoDvysGoM826iAZs2ozcjFZBmx451AJhNg7 wOYXvoy1NjzyJt6GtzCEkaj49hkhCaRK7KF3fSntDQhOf67GRGajbRM9jTeU 48k001t7beJ4w86JJMCZBsu0+5r6bot9D6Nq/aBvvHBWG+SiQmHFA3CHofp/ WnbGYviiXHKmqqqqiGCLBbUEbBITt6WbEVfR6m2r0Ty883g0aPPx02v3NVcv i6j5vy0RV/Kx2U3h+x9n5pm25iQJhHI9scxfNBfLJJanIkQyvE4BIhv8mUCP pcowdLAf6OuInwaS85+kt35lvnMsI0Q40qktY61TKpJo3czu3Gt3+Kx5wjii Dfj7zuEMNwyaMw3tAYFgIMiKkZFiAVxIo0jpRcSFKoz5TCgYY6gOhkqk5LyH hcH8GGuoSJvSnWdY/ohrK88aEnF65rCDdSwSvicFETCGhrmpRIhmaabhRcuJ gqbsCwzUqkVSawKoCQPEugKa0HwRRwYK6LErFwPAnHKLBZk/AgiIgrQS2Jxf jNVsxVMiJEp+qiYUC0OkpTYSy0+lVaMMpuHWRRDrWy5ifj7Gvq5cjcnWVPrh Z06Nwa3IYyEBVRFVTt2mbskNExmQUZxyPL2w6zOHcpkJwUkKZWUMBIZxyxee 7UdKRl6jRqOVeuUrHFIn6xyemR2T9rSlOs7DMTN2kper6tNvicYooilKVDQs 7MnZvE+UM+El+F7KAXzAbXHxQ6kxleQmRQBhNACwZCstG3a+ZmYnpMjInbn7 yz6TPp+VfH+2jOSHxgSUxNOlBaewUld8uyi+9nUyk7nvzdw/pi4fdANjcoHL 56LW3n9JYS4e4mcG0cQ5WpBYTgqpLo+h6wkgl65ZuXT2lbQ97NEYP4+hY/PV SXk+rOglqGrS1ocHd96cYMmJlB5eRTeKERW9IBbZ53X+dkYfg3G1gGmBl8R0 BQCoRFkJAOPD28MmZjSeS5nUVGoWir1zJQJcMAJukMqoy3pcRkFAwXRCnzCH zgBw6SMdWKwL7MikWBoctnHqhoC88sGbAWUZSSGlQJSCWBQiRFClCYUKBEqB ECFPr8UPsPsF3khYDZrIOPn2uoaCvNt4CzomwlliHPKuvL7/hSdVnaUo/jFS RXNujLqBIPIpPrICJ1gg2cDgK4hBn6ASS3APThlOQ5lPvIVgBgJbZ0y5LbWr KhSnebgpoU0ge8xBQN4x7x0nfotiHLEAJBOMopmVlSBZgO3EHfX36NEpD7o6 HOJkqRFJee2kE6nirenjrQs3s3YMiQVUI3d0BrV28ZONL/Ls0vgO6SB0sO/r 55HVnlHDI22by50dGWHHLrnLbGxMlmZHwJfZ0DOAnUQ2cdLyMv3LitR1KYhM gP1eRiaDOMAd7QJ7goctVOb1LmaVEHwgjFB2iX5T4fPzZSUqflUGjFFxKUIF 4h2jfwWAmCoJVIImiqSvkBmIEIJGRPhk8avb0+FaW02eHs5DknZayiE6gEKY lpA7S0GN311yu1LJZVcuH2SiQ/jRmbt5Y4rtktoHENCGSBJ+TmYtnznJG7sU grDO3UXoZWZ5jYJVOloEVxFTkkpc2o1MCq0Cppqe8Hg57y5o9rv4YsJj6EZF JFD01d0k5hhh2bKWNEuUw+Eu9CUo8RexgHsBlNgzpi0N0UyeIY0DkZ7mV6NI kSbmBzDOFynJspIZwGaJmMDz7YAdNMpeWaWjzPZ5Gt6DydRNkp+e8KAzGevY nE/jI0THjdk7RIm8OUWDCE68i0hEb3kpoOqZ5uXL0naq+b+bs2vwuxvK6wMo sIwj8AKKIzlDwhpUhqaDiDo8gvhtTUvteIuR89zQXwVcQSu6eKKKEiSeDh6F g1VfMv7iGcuzZgHE5w6y5NsLlyLC01iuy8dXYR1CKT6dqSjO1MTRCWg1fh2L 72Eoj578nXXgT74ryKRiACgRoUFJDOQ3arEoDL2UbKUKCjDIF9jWLhGdZQPM 708uiLUM14UPo805LsyT64tJzhf+K9hvCJADzIp+0g1Ben21jJg+a2Su8pMS JtjzOtJsI0ZKJ/ogFd1Hx9sng9vZz0rueUVmqVhLORLfxmf0c1zXiOCkeCZk zQ3dPvKZ2nom8EvjelxUGeCjY+mDpkHx0O9wMO/xIwhCEMy/bPK0qZiKpCpD tFTXn3cp9csD4G5RDI2KE5VZbWTgG3mDXTgiy8IE+WA9SCAUieLCCMlMKFIt p87HXZxeuylZOSEAGR2+thRNdAN1zDbDWL3ASSeC77c0pyQOQ87ADLEStfDY kkmyDuJ6olFtikHiIh5qIVYRtrLSQQ+MDODbvWA57ljKZSxFP41l5IPJ5i1w gAXrMP/H3XtfAAUN733Op8+qgdzIvV+SbtF293HyjEpPpum2TMxmhM13Tof3 vN+nptjS6fclFxckHBffVZDkjUPK3Sm4cXWjQGl1vwWeVNuRka2DVpbYW3D5 0mwwhbDUH+6lQ8BF7+IuuvTiosKJUUg2WusbaiIfFzcKUtJrkMipg3MelTAS 5nhDlmq7ymo9rda/vtimprybft24hshAtNMklBIDDggQPcRDkF+q+Xv7X+wc tdFBZofD15vuyMvaAVfmXqNzQr3wvCTZ9vz0aX96bBmTwUY2FPtuJiW2WPkk fASwo0R6kzBod5DWvKmdTm7H4Pq3MkmYGWln05NmlHuRyLCol9baJ7Oora9y eVYwkjIUGIgYZoU8dm77+JBV+zpOg83UnbhedATFCQT4zoxJG8XBVhg7kaWU kQcJQzoCo7lDrIb4jr2AuEhCQQQeOwkcASwrMREbOgWSIYImSCosQHLgBMQE FUjQlMEQkRBJMExISSEgnLI1TJD8sOiICSRpA947aYGCIO85QIQepcEaHgiD Dio4s6AoLhY4JIHJDkPtI+xPUUp1aDFTEEQMwzBVHZPJAQOEBQHACA3hRw8S QgnkJjYR11cmloKaBSo45FMTEFIHJQ4LIDy6kcRQFxMnIXkRHEgTQk1S7QVR RBtijSdDtyiKiTMkFThkNRKTNDxA2KdU4rATwQ5KwPUPKlRtucwnVBzGg5GB ZrSC8iH3gpRMamRSMBnp+9mjngHrqUTqdzBNvinstGaLKEWmZcwJLnUjUIUW ipfJJlzJrTGvHFrHfckiMdUy6ocxVZUEeBCkbgj0WttHkYJhzzOXX3Rztbwb GYwiXXLm9rOJL2foSdR5NMbYz8C6DgVNIDBExBABspm3fjYoBxxkhwKNpALY JFjJjDFuXOzITKBqC8eFTRMipd1EArO43Rs2HZV5ZinlXr1nqSlUuebkrE0j E6AyiGDwRDEEPQPZEW4STVRVTJNVFkXhMShUyRCS6fXml7d+k9q7vXjeQBlO DW6rm/EiimKPD7u9vfvVXsOhadIUeDG2t7QdWg54onLPHcz1ETfhR4xkA0kN AWbUGURKF1eyO76MTAXhQ6kno8mQ4wU8fUwp1UirV0SUKBXMk9SWKrdlVIdP d6QRhlkwJCSUDQT34dFOwMH3OTZldiNnOfHQeu+KLVb5KSSUkAepIzLMwYG0 QXEjaJxYzmoCd7zeCUMSrGes9xIWumtrsa8M5MaPBrWlx6kMts9qCFKGbCBJ Il2iLxQZIEdzpgZN5rKeJYgbsVkALty4Um7nblPXsgJQnhNiwiB3EuUiFoim aBvwHKrsDmySQ0hRIZ+E6NyEqmkvKqud98fALQIvzkA0JEh4RDeDyw0szYtc xg2B2MsCG0mxSxoqh66pUDLD3rI40M3uYKTKvo46yHWeIIYHZYQNg4IpDtcG 4XpqE6AFF4FpyI0p10FAE+VhTvB1CHoKdR5FfR97wXhAPJuMfiIiYSgiCKGK UYEWE8HIlmiG5375ozc16HZ2HVSxXibZjGPp3L9787LrnWnIlsuNXi2fgMNB 120xLPXQfRn2hPnbN4Qk9KdTA8yKRe2hDJ8OqQfAfdx8DuE84yTpawAOKVJF EoWlg8vHUsDplRZHtN0Hzo30J6Jlg599DvLuqZOTbwoEgbc07E8tdjTpcQCW SDJIF2vtMee2TzLuZvwHbU5Ht3YRYbWXcLlom2SE2riWIfTn7W4Ek83kr1eE qQDIdOaVACRghEpBkkIAqG/6LCfr2QilSHI7b6HC2wg5MQAtemQ4RDhu+q4b QVZEC5EYBAUUuGm3uLuFFJAkJKNuZuXmCmFU+sBSFQrFd7mI8BlUmXhix5Nh Q44uTFPcUwlCCJBhzMBVEs7p0DPHjqw1IEBso4a2pxhPy0c/GzpV/4Pqd0Q0 UUbAkn2v6f3sm/779OQFonxJ9J+Ll4gsk/gQUNSHwMz++hO6T5e/2Mh/gnoM /+//r+nb9r/hf8NpHzWf49UPHtk9JkO6DpATvj1oepPh7qPYT218D6gFD7wx eSESEhISfyL+mNvrvpKX9QibVsbKYx/ofwJCGuQAgd/tIqpj9fAYIVUK+SQy I8AKbMKbHX838LM/LLwHPpQ4tQJ+70H34SCH9McYKBipKWIZgKu/45w/Mbmb QximGl/b5Sa1zA9pqp6R6h76ef3yABSfty2gEkjJ6ICfsJIixIGgexVr/JSe cRTdY7vsh/L/m7h7+gvsenwLIB/UQFfAyzrKpb1ND4lz51f4g/d+KohlhE2I tB7lh9BsB7RxIgpiInQcXcdzJlmOG5s85y4IzBs5eCS0QRDZoJVtwXm5exTu 38qPnWRjHzlxIW+RTI5jcuDx3t7I/zRk4GB+4gkNU1emppbyttz+BVVeRBE9 C/jcle/RF9zHzg9VLyYOmb7Gb4nLkIqm45EWMYAetEOT9CIQbBz5Bsc4khvl ciGqZhjNRQ9IGJ/LOXwKtH/DBLHc9ZYINlRDZ3r/auB/YReOFs80WyZ3kpCS SJI5AbMHFCjHenQQfoY4tD47JLCPGaKEWgWkRAoCoCKyQYgQthnzyHuXLa+d b9dnXW+FIjqDP0SUdx6C+XseANw5xFQKORbUmltx4vrge/OzljRbVmGJpJZ9 HPy+ExZ8bLWkb1CG/PobxnY4tMDdc390Ip/DkWklwzwHzZ/gD98RJBVkJA+e CVDSOgNKNKmn1APIpKE/t/u9HP14tv0KqIfYoamRUGFXwaqMFCImZgKU7Jic wzVUCEh0QFBjmTckxREFGkpKSwZMbS5MXDHqCpgYiWf7+wMShBSACIsRE/02 irFnZsfe+DJkhE+YNJFVBEBrVAuhM0RI6qId+3r9PD456Z05CVl4Mg/nmsl4 e9jISxKJAfd8Zjf2/ba2mluhyb3KMccqFuzOlyEtZg68iwkzOQHq2Cs8BYCg T9DUAAbAmKYcj9VBxH6b/m3vUCRTiLULGqbG4cEkkCSH94hxwazzAn6yoh9w R/tIUkw2J14oZIAQNQCkHu/YqAekR0m5QH8eYOCCA/Mg54PwthC14RwzHBjB ZBjBFD6QNEFBZ6fW9bOb1vXXJbtyi+ah71eiJ9SQG1BikdfTg5zPrmIAxQ0Z 10VqCP1Vm1TdyMXSgbgZcxKJQd1NATUsmyz90ZFIR89wXCrxzCFR8Tovnu9n NOkPXuYU3zk2sCWQATPAci6jpBxlQBULRzVM+XbIPBAB+5DJVInIwHr9i/r7 plvsLiZmNE6Dq4OcMMza223B0OZnN3TcMzLbqo8kKSTTPoZu23mCmCcepI8k 5zIGYI3gMQYThFmFm9nd0wY4Qa4U67XE7IPVctJ1M62TiScgchzm8YRy8V+e 467lrU5dyIniBPc6+Dz2szM0wTEUU0RBBEyxJQJQxSsSRUlTMUooozuTc8YV 5ujwtGyErKMgiolIkRAMogGnRGNhwae3Jeo02Oc4ZhBmT5S0F9xZGJtgDMh8 pAJwOJpQK/1eni/0r98G8zT6al9fMenoE9kaEZ77dwZiEwWaiy5UMpgYyULV hCxPuIURXpKqKM+6lh2pQWJEBP7bP8hdyRThQkGv7KNA ------------=_1583533110-4113-255-- >>From craig@jcb-sc.com Mon May 31 21:06:00 1999 From: craig@jcb-sc.com To: zack@rabi.columbia.edu Cc: craig@jcb-sc.com Subject: Re: egcs-19990502 u77-test.f failure on Irix6.5 Date: Mon, 31 May 1999 21:06:00 -0000 Message-id: <19990503174921.22285.qmail@deer> References: <199905031712.NAA13324@blastula.phys.columbia.edu> X-SW-Source: 1999-05n/msg00039.html Content-length: 331 >It also looks like we missed an optimization; that s_copy call should >be unnecessary. BTW, eliminating these copies is on the list of optimizations to add to g77 someday. Though, not very high -- I get the impression nobody really cares a lot about the performance of CHARACTER operations in Fortran. tq vm, (burley)