PDA

View Full Version : سوال: چگونه رنگ نام فایل ها و پوشه ها را تغییر دهیم ؟



elham.sanie
یک شنبه 12 آذر 1391, 10:37 صبح
یه پروژه ای دارم که به زبان اسمبلی هست میخوام اسم درایو و اسم شاخه و نام یک فایل رو بگیره بعد همه فایلهایی رو که و شاخه را به همراه اندازه و تاریخ ایجاد ان رو روی صفحه رو نمایش بده :
از درایو c زیر شاخهA\ تمام فایلهایی M*.T* رو نمایش بده نام ساختارها رو با رنگ آبی اندازه با رنگ قرمز و تاریخ ایجادشون با رنگ سبز
مثلا :
My.TxT 4000 5.11.2012
main.TBK 100 18.05.2010
و
.
.
.
با تشکر از لطفتون

Delphi Coder
یک شنبه 12 آذر 1391, 12:55 عصر
خوب مشکلتون کجای کار هست؟

elham.sanie
دوشنبه 13 آذر 1391, 09:30 صبح
سلام
مشکل اینه که اصلا نمیدونم چطوری باید بنویسم از کجا باید شروع کنم استادمون در حد خیلی ضعیف به ما درس داده بخاطر همین کلا مشکل پیدا کردم

elham.sanie
دوشنبه 13 آذر 1391, 09:32 صبح
اگه بگم اصلا بلد نیستم بنویسمش خیلی بهتره
برای این سوال 8 نمره گذاشته

elham.sanie
دوشنبه 13 آذر 1391, 10:07 صبح
من یه چیزی مثل این میخوام که تو درایو C زیر شاخه A\ فایلهایی که اولش با کلمه M و پسوندش T باشه رو بهم نشون بده
http://barnamenevis.org/image/png;base64,iVBORw0KGgoAAAANSUhEUgAAASwAAABkCAIAAAC zY5qXAAAAGXRFWHRTb2Z0d2FyZQBBZG9iZSBJbWFnZVJlYWR5c cllPAAARqdJREFUeNrsvQd8FHX6P/6esr1nd9N7AqRCgFBD70jHgg3bnXo2lOM86/m13FlPTz1PT8+GBRWVLr3X0FsKhPReN9nepvxnNgmECOqdCOH/2+eV1x3Ozs7OPPP0z/O8PwTP8whSkIJ05YgIKmGQghRUwiAFKaiEQQpSkIJKGKQgBZUw SEEKUlAJgxSkoBIGKUhBCiphkIIUVMIgBSlIQSUMUpCCShikIA Xpsivh7t27V6xYUVxczLIsQRCX57eFn75sv3WpSOCPyWQyGo0V FRV+vz8oQGcpOjpaeJtlZWU0TQe5cTGBpygqIiJi0qRJc+bM6a 6Ef/zjH3fs2NGnT5/Q0FCGYS7LLSlCQ9Fq8fiZq8kVK5XKowGaPn26VqvlOC4oWyRJC nzYtm2bIEuzZs2y2+1BnlyMUU6n8/Tp0waDYfXq1WePdxitqqoqQQMfeuih+Pj4yyJYPAhfeb0pNdrn Z71M+w+SFEUQJMf4/yutJGma4AUPdXksh0QiWbx4sRAyPPbYYzqd7hcH8wQpU8klYN1 OH/sz3xH8CSWRsD7fz16also4n5eDVGOQMi6328temWiKEE15fX29 1WpdtGiR1+u9FBcVJJakeJbh/ot8SZAgkiAZ5hJGKAQoWsr7/Rz4S8EogUWff/75unXrznuP7f8neElBOwUNFHzl5fLNm15/amnqnOuvm5wUJus4xnG8gyRC/8sLMRzhI6G8XDIXFRUl+MC4uDjBK/4XX2s6WlTkojNyEhU/f67bblGYo37+NGuT3BxFoHLb0po+YzOioq5kHKjX6wW1EWL1S3 ZFjnOSpFLUg18uCozP75QpQi/lg3FMK0mbL9HFhETGbDYLpvw823HWUXo8HrfbfbleGQe7q2n92 98fOllm7fBhvmPLty//YH0F+8sNKe9oatj+8eoNPxx04rLFhf4A2Wy2X/6wrPP06q/eeP2zrYUNLg//M+e2VlZs/2JNqc3+k36NZ/2OHR98n+/2g2848+W/Xvh2z1HHlYy1BOG5hDEUe2rTvtUfrc2rqfvFDsjvchTt3b9jzS 7LJSwBWCpLv37mmxOtDZ1C6Ty4acPaPcerXP7/lUtCRCqo2wWUsN1XXs7wGMoxt0zOGT8uRqenOh/4SMHRTXmlLvFNcm5XxcHNaw8UNjp/Kizz25srdh48cqCyORAY+prKDu3Zvud0TZv3t36A/4Jdfmfz7hVf73baMyb0CZFKf+Z7jLOp8PiqQ0V2n+/HGupsKD+8c8P2UsEA8FxVwbLdJ1scLiJ15l1RJw/u2JBbyV45Jby08sPb80+f2HLsdL3T94tNndfWmHf4yLbTtRc5w VF94sCeHfuL/4uUlfdaagq+23+yWQj6PTV7d23a+vV7//5i+a6TNS7m0jGKvGIvjdYNHB4XZQwhO8MNRcbA8IzByiY7BFHi nc7iHd9+tv1Inc138aSAUGsNA3MiwxLo2gBPXOWHV3718dLDxY 1e9BRi3U1FW77OdRBjb7t5WJKWJi/o1lzN1adPHsirshMkTbhYT22Nh72AElqKj6xe/M5n+TYhZ+IZmqmsqfc6eHX4rPvuUZ+p3rPlkP3/JwtOdEpWeMYgvZvkrb/crrNgWp2OxoaLnNCSv3bpZx8tzW355bdB6Y0Rk2bprR4Jwbvyv vzozf8cjRsz9cbJw5M00kv4sFeQ0VJpwZF8W69wJGjdDCWjQ7P jUgzOPA8ETy9XKqPSciaQaaEa2U8YCona0HtYUrWVt7kJXgJ5Z NqEGQpfTFKonP9vconfUgfbGgvWf1PCG6fljNXwxIVvivHWH9+ xZMV39uH/eOOmcHVodLLTwXFsxzO4W1tYmVSh1FCkNiZt7Ozb7X0MotDFxq e58n3gBXZJw24brVr1w8Evt0/OnhFJXd0K6Le1+iWK5Lh0uf2EXOISTDL10wE8xzAcRUOmDAnVG iMaHQJDJBc40Zw6btrcDMR1zxg5t5NVKGlcwJUTCmPYkJnxJzn KyciTrplxPZMwc9KAEMWlfeDL6AlZP+OxO7sETFqzwc8KmgM2b/3eg8crfCRjczotbSB4ztNcfWpPUcHWY+U2m/+n6mN+j9/W1uq2WiGcJY9KGzpoeERDg8fS3DPWDjhLQ+meLU06U/K4vhKe4Lx2W6vF4ef4blU9bVSv7BFTc3qpvJCrNLFJkqZGztuR dlTsWbFl09ozbQxIXWzK4JzJEcdyrRxJqVIy5C1tRMdpo9NRUn Ns08H6n4+xfG5bU11tTX2z1d0tfmU9ztb6utraBovDd8V8qi1v 24HcrYeL6oRQ20mItVae89ktjbW1dQ0W549q5/bmukNb9p48Xk6roqJVIaFEbe2P8gFLY31VjV2dOnjkuEHhjrq6 hoYm69nkvGXLZxuK65u7h/KM3++2eVjO7bM2NHsdPmXytGvvmDWgctPe3P3HWz3eq1AJebah pGzP2twuxQMiZaDU45ZR8BV89o8P/v11XrWP81odPpp3W5uPrznqU1TtfXX5rtxKQWi71STcDrvd4fQ yHMHzXJvVbnV0sJQvWPeffzz23Nf7C1t7hBI6HM2n8xr00uh+S YKp5Wx5K796981vD5dUeRj23ENRMlPK4BnTZw9kVm1t5kxyU6T pVInP6Wr/VB3OHF2Zu/nDU2J8aj2155OXH/rTimZQfELvqMKSFmcgiRbsfDLp5KtLT/1YOjify2m32Vze9iVZ5+n9y9948uHfP/LcW0v31zq8LN/JV6752MZPnnls4QOLXvpgQ0GVw39F2qnUUeq6w4Xr/74mVzDBShkN3tWat+L9vz388MJFf128Kb/Z4e0qD566k1vf/8cnX66pkevjDZRMU3Dm/Lv2F21+/7W/3PfgQ4sWLHj4wQUPLnjkkSdfeH35yc6srmL9X/704Y7CuvOzPL6ptGjv5xvLhB9oabMxQlwSYIbryMevfvjvJXsr HczVp4TO2sbyw4cZnazLMa0GLhdrgWL0KK1cz562KjW60HAlLe E8zrayIy4H4y5avnJvXr2d6cr11pKDX77y1KKnX/v+UDWhkEWEhmhCjB0PQiQkhfbrK63ycLU9Ii1kGafHzlOsUiYT HHxtbau1oaph3zdfvPvtoaIm33klAGvF4S0bNnzydTGMWo3BZv N2Nk1EZ8+fPSjcVrFpi+DzNDER0WNH8jtPC+9Oogu1Oq1MxxJp r/RQl665oqamu/VDy96P3nzykYffWH641snzvvq2Npc6Uo+2fe89/fDDT319spYVPTMPV1NjS6s3NErjKV317J8WPPvahvK6K6CHsrh Jk0ekh0vLC+p4O2uUwm+tqXXxUnOoP2/t6/ff88QnKwqtzrO3FWI09OunJQzeE1YYDSQtb7N6uwar/tPlTYpQc6q8KW/lJx99v2Jdmc3dpAwLUXRGn9HXTpOVtMByfrmbkDirinL/82lui8oQpVZ1JkVKQVYleqqyjbt0KwmXKyd0llp9rHXQjQPkXY P0KBkj1/AMYhfeNGG/Vq/Wkr4ok42n1BERU+++pub78pA/NJ3RSyx2cCEgO5jGsD5SbVL5Kk+s+HCJ6s6bJ8aFGnxyjqICn+ uHzrglRLe2MZIQeGq+4kpIEJR4YwTHUSCqj7eqhsx743f1Xz7z +rJtJ6PjU8PCz54oU8b2T+vTcmr7xkJyJuPhBJ09m6Mos+4c1H DGai0BUkwDR1/7yu+aygOs8HTpbDAZ5QzhahPC+fN0kOftLlahN0fat338qUain z+lz8jZCSNnk5ylbNXHr/zj8zf+z2Z/+m8PDookNKGZ0+7KnCZEfy2H33vr5U8+f/5vrc7HnpnXy3S52RYytM81D2Q5tprcLSpEkJEpU+/tO43nmJZj3z//8puLX3jK7XvhD/MytWJ1RBLTf/JD96jL3fZaVjBcjI/juiR3LCSqrEmTyS2HFDJf3IhpYWxI+rhI+YTrRp09JXzsP+/P3Rcj7xaPGlPjMm7L3L6pLDZama+IVHdcNOmP86fuo0iZnBNUX XY1KSFzpsVTVx82iyLPr7iXbfrq7/kRSUnkrlLN5Dm33BvOl+1f+ehzGw0SrUqtMphlVs7PsIKgdTHH dhtr9YeEaKm2nUvetlHx/V8e5l75+ZurNkUoCYImmGqLjwsbnqBW9ARPyPOMz8PwFC0RrE9 Ly/Glnx7b0UfaxKZkpCRHac4vMsnD0tLG+MrfLOGlhCYuWiGp2vTN d8fy6z1yCeUuyK9lGLK4spfP1uTjy6ixD4GASxodGyKVtr/ENquf5OVqrep8K0DS7qoitdKUGGX94KPn7j+276bJ/eLUcPolSh1nlUjZE6s+fTq/9OStU+JkBCVYOpbhZJoQzk+6fEc/emdhUdmxR56ZP3pgmvE3j5rcpzf8sOOYECGQPF/BcV5OSRxY/M/TOrtMKgXHcSwpUymVUs/JopXH72s6vnt0ei8t/BzT5nRbJCljJ06gGFotV5sju5RlJCRiXUUf7Nm8UTb6lt/fek1U3fG1y975YH3xvhC2PTrnSN7yQ3V6NpGd0K0okxCScmPm2 rLQbNkXb7xyEIyQORFS0rm3VDl+wpSBUslV5gkJpqmosPBwBGY PPnew6M/PHqtQkK3NdW0KxI83mEPoUIU5WntmxQ4XR0tlEhoUjL3TDZFag uqwQ47S8mPLt2zat7vI7aTTp44bNDxGrg8zK3jH0b27WHFtw++ TxaSlmmR6VU9QQolEZQwTtMThcwJRyWaTpHHHLiYiZ96tA3r16 naHNFdduOmHKs1cpUY5+dZws7Fs7eH9u/eWOFTyQOlO+Nu8sZJjWX1c1Nx4sXIaNfnOrJhQbbt2FBfWq+wh cVGxXUwA4249vWpf7p51B+1t7vBBI0N8jKVw37ZC0AqtXqemWY cq8ZprEnifp3Tf9vLOb4EQjAZFJA6cEpfhZPnS/LzKgYIS/vaxe3NJweE9ueVOn9fnjR87btiQ3s7NW3YfOmWTCZkhKdca9Wr C44ydcE006/Y3lh5qLuN5kpLKQqJjhptC48Kg8PQboDL27mIuWJf15P6S8CnX/yVlbJ8QpZKMj4noneJftm6jVt4u/BJtqM6YNUVjMnQ3oJbmY98V8zl8/+FJX7z2XVmDS8ieCb/bFjFeag6hZORVpoRUYrKE27jq8ftSHpyg8foEz0aQp9YtIyc88 9bto+N0+fvzGVNMlAKUKm303X9PujZgo8QKPSnVmyLM+s7VNcv uFVty86Wj73rqrkQlLVcLSaRRT8i1k37/bL/rPIE2Qx6UQm0KD9X2iBUKpSGi39iUFQeajxYwkwb0n/T7F7PmOjmZPswk4+oqWowRRln7gpOtbNv77721cbfjmleek8vJ YUOkclo1+4EnR9/m5QT3RNABFjAMK2YrcoU5RlTC9PHjpSppO28cp86wCiYqsU+XC MBvbznxyatHBr704JRIJa1Qykkwfq8QW/CwNlRUN3IhSamJZormWZ/X62O7hBuCtElkchlNsH6Wk6uN5stRPFD0nXvXY+Ou93AczxHyk BC9RsllD5zucPnFnmLOXVt4pkXTa0BSiEJKcH6PlwmwQu5oPl1 a5QlPMNGQxcamR0d1CRI5B1O539N7kDlzgEnXLorhWePufT1pj lfIE2i5YN/Imo3r6zIzVXX5dYpkk1zR7uC8VSvefOXDbzZHP3KzhE6a/tgzg1w+JiBfPKEwmEPNykvHkcuVE4akjZ444fYjj737xikdFSg DcLZei967Z7iCcJbkblizXzpgTHJ2/0iVQhPeOzX8otfx6TWGlNC+2ZlxYV1WS2lDRIIhAj2QSE1oePY Y1dpDhTvzmUH9dGHxurDAB9aa4mMb97SRMMTHEM7mgi0/fP/VHu2cOx67cZCCoCAXl8ZUYXHJYT91dUGGzgb8a49aw6LSxg2MP i/gl8j55MjMjF4Zkfrzvtl2tGjTvn1MVu+RE+K0PYVZlCY8WtPt3 Wu0nYl9677cLw/mxcaMmCxwrKMw2lpecHL//v3bTraaR4eMHJgkl9Cy82RaMC+Nlacb+w1IOycsSk1ocoa4WMh bi7Yfr3YeWb+6Rp7TW3Og8PQRpzQiUi4javfuWPnxB+WpExY8N C1BRknkcUm63+65L9tivTy0/9QHn1OnF3E0LbKQ5+jkKSMidjzwp7es6mHDR+cMywj/+SYE7cDYEJ4vLnaU6cP66HAVEKnVhg8dr9q2+tDeve5+o8+6Kb nBnBiDz5cs2/lJK0kQXtrU574XF8wfPzBC/r/8TOmHS+p1YdNumRjb9Y1K1NLk6RkbilorTKHqULpLtw4ZljJ0m po3hxI/txbeQ4hhqPABk69JUEcoWJanA+mJ9dSuz/7+5X5Zr5GzpoxNi7+Q+JBqKjypfvGK9ZWtYQsmRCm65nHehkPf PPvijhHz7rhpUpYpQp1jWf3uJ+uPFLvlaGmVR+csePHheaPTjb Lf/NnormW03/indPr06XPSzy+axo6fOJtKmj1tkPkXmQM6Kok41WYrrPJEh0N3 JbO+X8wuUmlImDg7deNXOz5dlpM4Mz1aExAgmVKXMkp4dn18cR 0hU2pjUgeOGpT0v71wd9vOzz8m+kwZP3aE/rwgiZDJtdkDLS8XuxNCeZPpbIFZsGaRKUMiU64IQ/5H6aG1CQPGnF86kYUlD591Q2ZM1pjhSYaLFCOkmqQp06I3fvzp F8faFt48d3aq0uUT0haelkv0hvgRt98anTX71gGBb5uyJ9zgDU krdVI8oY3vnzNxYDR5WSSnQ/RZlpXJZArF5a4oqlLm3vjfiUJCnz60QWVLDL1iDXc0TQvphEaj +aVFKXlIzKz5tzW/+sPJndXXpMd0SRgjB02cNWjir76jqs0ftw2bccMNc5N/xBSFVDNpVs7+PtFKCf3bJslyudzn813WNyGPSJswL+3nSmPyyB sfvJ8wcR9t/eHvp06nGXyCErK8Lj5y1mMvjb8rqSuzUkZMSBnxW3NJ0DKWZS+ ghIJgud3umpoaQbx69rQ4IZFIY5MNHtbirL8CpReJRNLc3MwwT G1trVar/WXmnyDIkJE5s5Vhds5WU+W9dLXtjhpKU1vahNszwuLaGuovAFN Apg2M4khnQ4P9N/JV7UO97UM6ra2tl2ao95LmmsrsuQ++Hpa8YuXGU5Bq1ATHc2qV yltfX6++rLJLEDabzeFwdEMA6YC3WLhw4e7du1NTUyMiIi63Pf svXbmgBiRJMYz/ihgLtVp98ODBAwcOXHvttTqdrptJuzj7Kak+PEQJT1O9zcde0v vmOWhjemt9TRaLxcVeaJ5IML4+n/e3Y1e74V67dq3Ajfnz5wt62OOkBqRMFx4eZjbIuI4aMOP1tlQU NfkupyEXGCVoYEFBgWC+16xZc2FPWF5e3tLS0vPx164gQpTwu3 V1dYInrKqqEpzhL+cVz+cJ5wo+8Te4cf50gSBmF730b82us55Q 8IGChfqlhulyy0zB8fOQMsRXQV5eKRIYJbBIcIYhISHd35BAc+ fOffTRR+12Ox+kn6OlS5cOHDgwyIdu9Mgjj8ybNy/Ih5+lDz/8sH///l2PdJR/ZDKZ4AMbGxsRpJ8jV4CEfCLIiq4kCM/lwum7iqmtrU2IpKTS85ZTrhS8xVVPQXYFGXKpGPVbFfrdDtQ4Q KoQoYKi62oLB4cdlW4oVYjWgLOhjEW4Fjqqo9Jnc6DBhyg9lJ1 LyE4b6uxwsKBoUKQ4muNnIZNAJQPDQ6fG2eVUjxPNbiiUYJxoc cNLQkKLZob1i4gZSgWiTFBdpa/O1oDqFugiEGXo4BT8OFUEjx+8GSkRUHTyy9aKigr4afHkJGOPe QBXtcvS5Bc7FmUSQ7i8Y/iM51mbu77a7/Hz2hhNSEjHLAxY1l7narUTCrMixNh5UCCf31Ljtlg5qUZuipUp JRdQfI7hnHX2xhbQMtqYqFTJBKHnnU0eW6PPI3hqXkxgpUppSC/FBTrPvD5Ljcdi4WQhMlO8ol1yeXCucleLjWUZntcpIqNkcvklZ c1vo4Qstq/A47vQ1A/vX4sZXVqvPHYs+wgLixExAVvmgDyImYdxz1Qsygx83Iwlq/CqB0vuxNBOPMGivXh2D464YfeBFLgohY/DwHD0i8SxeiQOwj/HQxPg1dof8Gkjpo+A8yCW5OG0oIR+8bhfBi2B9Ew8fweGXJUqW Id3H8Wb6zH2cXz1p8ARP1q+wKg/g+DhTMXX72B6VgcHv/kbFv4bbAh6X4NVr6OHdKW1bHj81Jbv7E6Dv8Ehz57XZ8H7sSYK Ppsr97m9i5f5nW2OsLmDf/9kbHoyyXk567GaH/52bNluKuOhwQ8/ZjYr2+vAXM2GM5//tfhwiVcRFT3tuYxrZmq03RSJZRoP1i5duH9LhTyEkg95bchN12 t1tPvA3w99+Z+GZk5nVHCMn4oeGHHDqox+P+qNqFpZ+Okr5cdO srqs8MkvDps3gRDbTxsbvpqTf6DazxHuYkPkwudSpszVK3o6xg zLoroeChXqjmNrX4wNw9nlmDYnVh1DfDQcHHw+RGRjzHZ8vQe9 wzHDjOMF2FKECbOQ0sXU9B6KVzPg4nBiC5aUIWMs5ibAIIHSh9 Vb8dIevBePPyfhTC6WnkbYKIxIhiESEyfB5cDytTjA4oabMEgE z0b0VeoGN/0bu7ejNQyWTmCCtgY8tQhjX8OiLHw7Ax9+BVMUhpqx/W2s3YyFyzG5Fh8+jRdH4683wnzFcenL3suvSQ2/fk16TAhf/HnRmi9LvpkQ+sCNVP3+M599rJrwVVq2uebtmZXbM7XJCxVHXju xp0hm6BWb7W0jGa+7Hb6D57z1tavfbm7t3fe5f8lP/atk5xvlUebkkTldG0x4d53l0BeVR13pryyPcG8+9foTpelxqSO HE4ydVQ2JG/dIyvBwcXpAoqANP16trSv/7A0r2zfzpfdkexaXbX36VP/Rqb293oJ/ntgaHf3EO5EauWflPYe2Ldaa+6iH9aepnu0JOTAk1H1xew3YBu xzYWK7KbPi+GH80B+faPCmRIgbQOvw1EiM3Yw1FZihxLYi5EXg swHo2n2l0qNPoPuYNcLUgCgzBsd3APnMHYUT32LFTgwDduzECQ 3eTkeKGqQaYju3HYfUKOWRFocBV3EScRIf54MfhJtDUdy+hCtE BfvwRSQ234zBSuhuwdgCnKjBUBXWV6N2CN6ZgqgaFK/Hwp1YMBXmKx6Umiekz9FpwkLF0ccYb8jhPEt5kYtzyKq218tvz Bw3Sh+mkg6LqsjPbS0uVSdfm2z2SKnalq111haqAxuL93ONexs bDZL+N0WlZ0uUY+uO7W4tyXNl5CjOdaz5OUuxvarJlbZwaMpQ2 m4wJb1SWpgXP3C4QioHrZSFJmvjky4ebmysaY1Rjr45vvdg0lf QePrL2qMHU3tl8UybT9tHF9PfEKJkMyLpahvr81zSZbzfbEKFA KvE7Cw0VmN5Xqezr8fqnfjdTERQ51DHYnMwXwN5Ez7egwM1GJu DrItE3HYGHhYOD86i4EXE48FR0Dbj/k+wk8ENkzDIcO6RrB44GHgZOK7qot22z2HqhzvuQYQL7cBMvBO V+XBGwhSIiZJGgmxCbSvQhGbBVYZDdA4qJPaHpxiVDlz5dV91L 2NUaMfwsdXOgqDD4mR+t682j1XHSWUe4bAieajU6XE2VPLmVGP v/ppQLe9zswzXISnCv5qK3R6e1oeIPefaGKUhjmmx+G3OLn6QYds ahcyTMibSwkPzOnVcX662wev0EnI12bqhdPH0nU8M3vbIzGNfr Pb86B75mjwvL6W1RvEHQyJU5kR/eb6bUMjipkWRPxR8sdRz+qv8TaR+8M3hmak0dRUoIc+Kji5qEP oTsBSgUsypUV6N72X4Y5IYi54TDBX+MBGyMjy2CvUm3J0ByUX1 OvDXBTaQlKBvf8wMQd5JIBX3p3UWeLqe30OwD/83suzEazVIGIfZfWBpAxmQY4KD0wvCj3bsOloCmQ/iRhQ+UB6QXogSRkFGQeGFq4c1Idpy17bW1ZlGTVQIt+xxEn5r+ 4Q7IdHTrERs62wHFPKzHe8QnYUohoHfBibghSgJRajBcDzXpb2 LF3HwOZ+DYJyigFEcSeoJr4dzO+he16fe+VrGnNvCsq4JCeOa1 izK23a8G2N4v59grLw/gCJFyynCQPjcQh5IRU9KvfsexfEPj770uyJ7TPiAa01m/SUtBf9m2QIvNgsRobghCdsK8VkTnvbjcAFSpyKew6nzHyF8EKJ zESbB2HHo91/1kDNoqEMxB0M4jA7UOGFU4SpH3eyaW7ux6mVQIzAkB5ITYIT4o dNoijjqRKcJ5cERgQkJMvDXflw4KPyRoHqSCfLmfXRm/x4ya2FSViTpLxEkhD+LCC/uKdJevycuWtsXnp/oqKoKdj5wMtn9HLKTTaJqsyIbfAwZkhk6MrMDcLR51+nX5hd8u zZlbL+uraOkeHGqQ/F5ThQuSkKCZet2VJf6QkZMJrzDyPriui1fKajrwhIjLh1ff8uB aR4uJ+KFBI/A8W3YWY5vavDnISB/3JpKIUmPKSnISfrvbsjrwIadYiD68FxEVuLlXNT8/2nLQE8BvtiBpq1Y+Qb+/DIO5KFyI97+GiUUwoyijLUHRfYWOFVQCqGpBpRaFCI6EHjYbPD poe8xuwX6i5YXfPlPZ/jMhOvuCkA00ZTKBEJGBPSQtVczEpaWKjt6ydrxPEB0YPIKR5Va SqaFoLXCAa/dx1ggl1LSLhVO4UIyhURp4HlBnwT14XzuOl6tJGXnt2nLwgypo 0hXc3c5VOlJiUa4iPh7HqfPV0/qTVLWZdv++LHvNsgnPZH2h9eycsyW9R+VHtjj9F3CFOc3VELBl gh3SkRgXjj43XjqGBy9kUOjHfi2W54iBE2tblg7A3zGi1N5WHw S1a6LZjScH/lnsKYOozPwf5MxOgl7t+ObUji5bqbgqiXSjyEPQgsc+Ba7C9DY Ckc19u1GmwLRydCWidwRaP9qaGKQHAGYECYEElUQAddacGw34v ohXtsTwnGv4/gPZ7552xY9r89NfwltXzVRqSURKRJblScAX9h2/AD0RpU5impPR8Q+fcE50SQdUDOKJkITZBLSb2liKXANRY6WJnl ktEIv56ynmnK/qcs74iMkVEioXGvmmkpFxGBvWduZEmWvZIXWZzt0wFrZAY/PNBU1Fx+hEjMVgj+15tdu/rShplUMgWPS5EJI2iaiAPvriuz19eq0AVKfzVF5UJpxTahO1Dr ZmCnmyGjOa/X5L2GD7G9lJlkWfkbMDAXKTsUn27G7DO88Ji7o+do/PX/DN+FMVjjSKS5eK1Z+jcdZfPsAZivQPgrHcWBYdHTB86gvxpLNa InBogB41PhhmFSKD7YhXYcJ4ZCKEyLiDwkJx9W6kadiKP42tPM/zuCBJ3C4H776SyBXTMCtLP79HuxZ+GgHZj8NEdeCxOhE5C/Hu58jrQxbK/DACzD2gHVCvm376Renlymmpo0YLq1bW1fg5hRGdWKmPGZguHx1 zbavqCRp5QnSOG6CITKCcFTYaku9Zdtbqkp9Ln/T/u/pXhmq+GS5vo8pjC4vXla6HdzJnT5yaGTqQJUK3kNLT/3z/9oS7hn8wvth2ghVWITixNeFu026xrUW+/CY/sNU6qby79+yaENMk2aq2ca2wp0tiI2dNUvBM/6KpUcef17x1MFh07JpfVZE+JLKgu9K4hh23y4vNSUpIwl0iyL5 Wt3mzRU7NAZTLHl8qTcqNiy1v1om6+FKKAQD4VHIDIEucPmYPr hxKuw2jDV1pDOGMGTqxMLBWTKGIUmNkM7bEaxfrzQMYRGlOOes dSHoE41oVeCmWdTXo0RIIwdgaIAfqngsHAdPLvItGBwuOAWxbB MVgRQeehJXPTmtMMegV2c5PiQNL7yDkQtwjwOqG/HSjUgO1JTHLICNwX2L4Ndj8J9w36gekSJzRYf5zOEh9UW1X1xX IdhmN7jQjIibFg/MmZZx28E9n7x2/AcPm/3E8HFTdTqaPb2l+ruXK045CJVeTp+o+fZkbezc9Lsfi0noFT33 bs/Xj59552532LCkmx+P7tNLTIENKaZBsxWh/WWCeZYlhI66g2nec+Qf99eYY0KuXxwTHy8E7XG3DGn78rXjf1s iV5DSzNmJC9YmCAki6yN1qWFj+8oitYHMOTl2/u88Xz5b/LfV/vgx8Te9GSnKq9E057t067T85c9X+j3epqzezy1KGDRAekn1pX0 Y5+abb1YqlU8++WRiYiKC9JO0ePHiV155Zdu2bWFhYUFunKVbb 73V4/F89913QVb8BLW1tf3rX/9avXp1bm7uZSnMBClIQbrC1dEgBSlIv1wJ/X6/TCbT6/VBjvwsCXE7TdPdh6P/nyeFQtENOiVIPyZBxVQq1YWBntLS0j744IOvvvqKoqggp36ChB Ta5/O5XK6IiIjgBF1XaodlMJlMQbb8BLUj/UycOPECSlhfX5+VlTVjxoz4+HghvQ4y62Kk0WhWrVq1fPny559/3mg09kw8lctM7UBPb775pmCeBLYI2hjkycUYZbPZNm7cWHv+Pq YdSih8FhcXN3v27MjIyCCzfpqampq2bt163XXXabXaIDfO0sqV K91udzcbH6RuJHi4urq6oqKiC+SEQgghGPWehxjZE4lhGCHuCs YL3YgNUJAPP02Cigny0y1iJ7tmOz0f7LCHpIW4DLsGXJ1sCdLP cumiMPj/0/XQUofcKli1GNkbMdT5H9VgS6U4hjs6HpGdHT6cF6Vl2NiMkf2Q pj7X399SgSMOhEain0Hsaispw04LUjMwtBNp3lKJw3aER6C3Ab LOb7EeFJ3B1jK0UuIUv5qG2wmHC9owDO8NVSvyKlHqFUcQVUpk 98GYaPHGPG4UFMESiiGh0NBih+u2wyiXYXrfHrCv74XJh20rca AN48cju2srhQsffogGC6hRYmeMrvNVVp7Csu/QpkbqBMzL6DFP0bCl7theaysD3qhOHx/aN72j6cRbWrNjjaPZhuQZ8f0yZZ27/nkqNtSerKTCs8P79pVJzwqX03pseX0VoU8ZbkqIo+gLr7D5Tn1 dctpr6JVj6p1Ad07+8XX7G46ub7EQUqVR2WtcWGbqhWTf0XZyf dOJE6yxX8jAOaFmEozXX5vbVFLosrRxHMt7fXzEkLC+o/Rm9aUrP/3vSsgzyDuE5wXxiMLT8/BC151eCOxZgQcPg83BlyGI7JRumwXfLcaTbkylsWwgqM7BwbID eKkMI6eKSuhrxaYf8KcCpE3E53PQJ/Cqyg/ipRKMm4j79eeUkGNQV42tx1BOwNqGeheM4TD4kJAGsw61O/BJPmxhiCFgc2JbCWRzMMwEhwVLv8fB4Xh/rKiEhXvx0mbIhmF8354Y4qFoFw6fxtqv8NUpFLBY/IfOmNiL069g0efoFYIj3yP6HcwaAQ0FZyGWvIS/74ZeC+U29Hkf6eGQXPEHsZ2sWPd+TcERhgr3lZVwx7a41e8nJ4 bDU9+67vH8jWUSiat152Hyjufih/Yl6w421xS2Hvm+dPM+9L5HHtM7LEzF+32e8u0tdSWtez4s2t9q nv5XdVikSnt+Ayfr9dQdbz2933ryh+J9h+UDXxx+XyStUYr+x1 JYvunDygPbOJmJt9pgXOd54POk2O67yHiPf3Dm2y9bmhmO2Nhc 6VbffquSd3gOvnHs+4OU0SyXy+FycSkKdcIQ3aVUwv99sZ7zoc 0FhRQaD44fQEMXN+i1Y2kZEnWIVXXMgrcfr2nE9nrcPQjrD8JG nGvg5tu3ww78t80OmxfJJpRsxTeVcPFdTjifJGqMmYxvnsKOhX hlIIYa8egd2PIslt2CGXr4/IgeiH88iD1P4qs50NXi3k3wEmIvuDjoCKglKD+D5zeKk8evT0Z sj0w/cXwV3jmC4dMxfxhqLGd5D3sFnnkRt72NHYfwmg8fLcXhJvGTHR 9i5wm8tB673sGIw/jrClh6wqYGrbk13NjoOzaNemn3qKeeDPHnln//gwusv3pvyYodhpn/znl9cz9tbvWuFW1Wj698e9XuvYxiQNyQHJWG9IsQaeB9XufJ78 r2nFL0mpnUL4kAxzI/6stn3O6SbVXbVzjC78galeRnOL5jxwGeazzUSmWE3bVz7Ou5wx Y8Z2S2n/lyY3fGMOWV3y5xqyYMfOPI8GnDiQNPlpxxCAaM57ys8ebM/9s2+rX9o/91cuyDf45KCLmkTS6/4mKcOGWqScQ1GRjswWfNnebIj7wd2JmKuenoL+0y2O0UkfgOZu LPozA4H5udcHcqFkmJW4t3RKcMPHKE98eDCVi/G0cD+xpQwgnUBcZTSVIcqVPJoJFBKYNaAZVEVDBB0yhSjELFPb MppMYjw4iaejgCD0xLxJM9ZXjxC1jS8cAE9O6hgagUM17Ahrdw QwZsfkjPhi1utO3Bsv64e4oI4XjdfBwvxckqwZJjUxssozGzNy ISMGIqNuxDXU/YGSLqlsHz741NE3c2k6YMMoQP8TfVeXint2ZXk+nO6EHJUklE1 LAUj+V4a3EJ3f+h/g/+O2PKKJWK5tkOBH9SqTZO+/vQBa8mDehFkKQ43/tjTyTV6oYvGPDY9/1ykjlWHITqHOIiyOTr+817oPcAsfSviEszJo70lJ5wd/t6/Q/1TJp64EyjktIlZaujnI0nDnK8BCTP+1u9zaXW8mPWsgqf4CYv8 Uror9JowRZJpEiNQYgEn21G+5ijw4HPtuH2IUgPg6uLsbE1Iq8 ag4ciKQxzzXhnD1ovVF8UOOdloFTjrnFw5uFf+bDykJI/NRPn50RsB8HoCd6v/R74wDSo34vaFlS04EAZTviQORDGwCCVoLetLXj+fZTEY+EkZMv QU4mAXEh25aB4uLtMK3MuVJQKvhx0wIzF9oOmGY12oAbONkHKA sxSI05IICtEjNcrXzGhlbSkEwagscbjtUpjein9Xl9dEUgZKQJ ZQh4zQOaGp7WRo+SUYG4kJM8xXHvU0l6/l2klKhlBcjzH8Rd8JkE7JQparaclAT957hSCoBVU5x6pXFuL29 4kS0hXdvt6bbnf6yJoMXgn9KFKbW+mttTNSQipXub4Pv+vU/Y9N2HbPXPztm10eL2XlKW/qs+IY8FRMCYih8f6rTjEYajg8IqxRIsvI2GogovtmIsWGHK0CO urMP82UfEn9cfjR1E0HBGKH5kBQnSGXhLaTLxehOtP4NAAseoj wv7+8qeSQMbi+E5sPg4h7nd5EJGGp7NFFRXux+fCiU3Y7cOfBi LbcHXU1EQ2cecCe3GwkuDQEZERopZygQ8IVvxjO0QPNIeetWrA ei1bN7fVWUNnz1YQDU7GJ3gZvn3Mm5ASHMl3lFkJXFDRePz8cK jgPdtnTi9ot9m2ttPrG082RT5zs6Q7kzmC94tCHdBnQohDvB6O kqrHvzUi28J6/QQtb/781sKvXqYpVZ8xo2WXrLfs18a2wuNKFEiMhJAj/yVPdDRbc5EzEmlaUP4uDGvCoTpUxeAOtaj4qSMxuB6Hm9F6EcX yC3ooR84kDCzHzjIUM6KH/OUPzTLwkUjsiydvweqHsPT3uFmNTz7FZhfUgj4L3nsIFqZizS7 sqr4q69zous+ZiI3CiQdFfnOdwheIyIX/5HrSyoF718vFBfskE95MyRQSAn8gZzuXlBBi7s/9pmAIrqOLyzZ9ietXZfT5EVcF9RN/neDblVBga2AfNUIZropI08b300T3Sbj1di1oe22Z61LuH/irPCERAMQR4iR1FMYk4j/rcEKFZ8/g0WsRJUEtG0AIaddBC8pOoLgVqS2gGLGyWtgIshQ3CkG68sLrH ywLuR5/7IMndqHcAZtcxLQnftn7Ee6KI6A1om8ysrTgI6C14dAWrK/BFIMotMZY3D8e/GI8tgnS6zBN0+O1ruvikuDoYyLBC3lwgLu2Zjj0MAhRtQ6UCbw U4nyvFy022IwIl/QUtDnf9v878O2X9KCn+08dKRa9SQltiBaCPSoghIz1tFvuDZWr qbNoVqI28t11ku9EVvhpfl3oHGfu34999pZ/0OtDp2f+2KKT+lBC5SDa1zTcFq+/jNcZ5eT5J0b3lkvVbp+b4QJY8D3AEwrxDhkA9SLU6BcHdSEeWA O6H0br24PKAAJY4CF2HccaHr+7HY+PwUMTsGAiXh2Ofdux29lh CaguQIZEO3SYcFkpxlyDYW3YnYfDDlGv5CK8CBavxVM7kO88/066XKE9oFFpEKYLuFA5aA9ONUEi67QdJBTReOxGRJ/Gextwpoe7vpAYGEJwrktOCXUEFFtRFRCDwx9CH4LoSBFjRm+F/3gAmLUFp5YjJR3hPSPgbl3+l/zDLWG3Lcu+4w5l+74ZKjVpCkdprpMRJ9jtB3JJeYTCFN2xchVi kmiNEmWEzKQ7z+xHRkkUGok+QapVdFTpqzeXL33i1IZl9o4onC Kjk+VqFamOlavPQjy1tqz7a9HuM4a7tgy/8wZ5R3rIM/WbC/81vzi/yi9ITEy8tKnC3dIgXIatbnAUO3WZQ4jmI8Vvfuk4K1i7lzTaKy XaSJXkEu4s/ys8IYu2NpQ1o8knMicxBmOi8Mw+PPQsIsWlGTisKHPDLTxuEZY cA9LwYo6IMdOevPC9seQBfHwAI6bB70RpM5IDdRrWh4YmlFnFD SdEcYvAo32x9iBcFWh0izbD14jlm7HBhKw0pKs6LJ5N+K1GtPg 7MiBB8WxNWHMEuWeQIYfXDT+BYbNwe5iIH1/TgNI2ERG4Ty+8Ohh3bcF8Fv+Zg0xpT1M+Die/xAdrcPgojpwBuR0TdiJ7Cl6aD2NfPJaJ+SORqcLeI3jwn5gQI5 rUO2eg/E1MHA2TEw08Xrg28DKuuCcv/kf+56+WWZThTWX2nRLGauND0kyT/5zYa0av5D+cenlCjcLffFodc+P00IRwvuqH8m1LGk8dbjlV5PA tc1ZvNKZPj59+h9ryRfna5Zaa/JaCMv+RY479A0zDft972hSq+XD18pdbk+4xTpqrLF1TsurN+hq bu/hgK1OypzZVkXZX6rVzFRUfF374l+IaXXhbq3ur4Mn8VEikfvRL SdSOMx99oQxfFJUcI1FN7zVsXf6OP+46+qq/oZUIvzN7SDztKqAa3j/47GIpSZM+v8dHhEx+IGlIjkJC9AQlJOQYNBgLHOgdsFT6MMy7H s4yzEsMREk8kgdgAYNsFRgfpk7A5ASEdpXySLw4H9XRIlp0dH8 sjEFCVMA8hmL2VHG/lw68GQJJQ/E8UEhiYqS47MyF4cbJyFZ2aqAIxIW+2VgQjQwD2sG7JXpMGQdJ JZol4lcEKxceianZSJfBqcOcmRgUCxMlCm32aPxJhjMaSHuiBy SgNCE2Gf5Q5MwIYP4qEG0Sjyvice+rsP0gRu0x12D+VJgDDqTX LNxLw7gXjBrRgzCnLxQ9IRiVJIRf9yeNw0dLxayP03h5bbxMrq KNA2NvepQ9eMLv9cqzRiXmjFLKKV6qk5kSlAkGWeI1JMFyjJw2 mWkapCJUHtFbrU7SplEE5/NzWqVBJ1hlSeSo2Ov+YjYOEZfPpQZ5eIpWQRtSRkfBz/EUbQwRYyRFasTshQo7LVPxBMtIOY7UmOUqKaUdl3Kvj04LE2NQ Qmu65p5kY6yltoXtnaTPmqdX0qDjw2+4zXO8kBHSV79XFTM1Zs gofYjuki5S/AqMGV4snwhuXMhQpESH4W7zixWadl/P+oW8RFzcIjkRKlqIMpREt0oZPEKEKQXBwMOJi4EySkznfIJDo 6Cgz4WXXp+4ai+wRKxIcfAwYIUv0udWDhm/6DlpKSTtQalwb364feJlWXGTasjl0Af0TAiehZyao8TINoAwCU 8ApVolg+yXxeaXFWPGJ2TDLjBEYJGQFZdiZEqEaDpegKUJPlZI ZmBWnGMW40VrK1gaSj20l2/K9icxZnxOIYniWYZn/JwIbM/zpJRS6CViP5qXsVlZQcQVRpk8YEgYF+O2MyxBiMsaHMcIsiOnl RqSc/hdTo6nSYmghIxwMVKqligEoWI4v5cTMkyJlPe7GJeV5SmSFiSB Fb9LqyUqJcF4WMbDCb/C+Di+feWRIhVGiYRhPS5INCTdLkss57b53W5eqpGoNB3ixbv9N jsn1hk4KM0dN/k/0gUxZuhfY6YlkvM7okjou6y5iVrX8S+xoerHRMk6dwukz1VnhK z8x2hyMilkXX5FLr3AmgTd7d6k4t+PZ40ExZOff33hP+XoqSRV w6S+6AsICb1QcCODObynPYbq4oImo7Wh531KK2mN8gLnUxqp7l wFrYvk0aSsI8kjJEqJTnkBLZEo6AtncYIt6CpNgmYaZIrz02hC IdEpfkvuBKco/rdqJc9xXJAP3XgSZML/xqgOJWQYRqVSBTFmfgnJ5XKZTBbEO+xGGo0miI3ys6TVanU6na BuFyjMKBSKlpaWnTt3CrIVNGk/FTmQ5IkTJ9xu9549e0gyiFXXGbERRHNzc1NT0759+4Ixwk+QID mVlZWCul2gMPPEE08IKbXgCQ0GQzc1DVI3N1heXl5RUdGvXz+l UhkUuHbDJEjRyZMnhX8PGTLE6XQGeXIxRnk8nsbGxoyMjGXLln X3hFarNS4ubtSoUZGRkUEl/Gkl3LZtW1tb29y5c4UALBg1tLtBgQ+CjRck7IYbbggq4U8wSmC OECwI6naBcFSIJQTtvO+++8xmc5BZP01SqVSw+osWLQpi+3Wlv Lw8wcbPnz8/yIqfIL/fL9jxjz/++DwP2aGLNO1wOIJgdb+Qj+1BRZAVXUmIDoLB+c+S4AlbW1u7o SQHSwtBCtIVpl8F9NRUg72VaNNhdB/E0+d91FyFDRXgTBiXiCgZ2ppxoADHnLD7xAkbpRr3jkV7Y279G RzyISkGqYGV9Yo6rC1EWn+MNsBZi3UlKLbCzYCRYuogDDefZzZ YH8qKsbEI9YSI9aSRwOOCi+mcoePFmX2lQmyOcdvh4Ltsdk9Ap xX3DLYFzk9Pw8QUhPbMV8QVYtlG7KuDWoXMkZg1BhI36k5g5UG 0NMPHi0AjigG4bhx6G8Xzi/Ox/Bu0aZA2Cbf06zGPUbeu5ug+qyUA9JQ5MSyrb6BlguM8ZXXbVti brHyv2YkDsjqBnnyuss11J8qpiCER/YSDVPvrRNuxxoMbWprsHKtUpUwI6ztAIb+ABHsLvigp9Bj6jAz tk0xJOoGeavfWHlphaZVKlWZVr3HhWZkXkn2r5fi6pqMHGfNg0 6DrwkIpsF5/9d6GM3kuSyvHseKEYeTI8H6jDaGangD0BD/yjuCNlTgZjruux9+zumag2LkMT5+ANwcfm0UlrC7Cu99iRygmm OHwoKYcdUY8lirO2RTtxUsW3DBdVEJ/A75Yhq8YPJ0pitbJPXj2GBQ6hCtRV44D1bhvEqbFd+meYWFvxa lKlAhq34RSC0JiEa8WO2C4APiF34vKOtR7EZMomgmmfdiTgN+H gtPwmtDbDA0PeQRG9lArWYuX38eWo9AY0HAK63aiKQ73mVH0PZ 5+F31GBXbDdkFtwKR2nILD+PYVvFeMKA3WbUbyf5Ad2wO2KHQW Fa1Z3FJVSmriPae+rT250S37rE9qGJyNbasWFOzzKPV+y97DFP N8wsiBZE1uU8kRS/6Gqj1HuKQ7FLEpYeEq8CxrKajZ8lHN8TxOquHqC2sPb3KwzyUP HiU/+3isx1O5v+n4dmv5sZoj+6sznsuJjVZJxK4svuVoybqPagqPyv SxbY21zMFVLt3K3gnde5G4/f8sXrXa5lfCn2spa9Xe/wcFY3cdfvPEsjxZTLxKreRdTp6PNfRheognZPywusThNZJB2VF UZyG68yOfFZ9VI0oLtwLOwP0yDCgNRo3Fi71E91W7C9cuxpDHc aNZHAR3+WEQ+OHBu2uxxY1Hb8BEA/welNeLu23/eToyFfAV4cGVeFOB6BAM7uxGI2Xo3Rd/TBJ7RAv34p/7MWoaZpih7rQFgnyu3YBV9Zg3D+OIzjkzQuxQffVvaO2P3+cgW Ryq6alukGlETTymTMDs3vCcxLuv490XcMN/xLGuln5Y/G5gq3oOPgnMgV4rwQfurMCj/8HoEvz7Cby4Bu//DuFXHMDDetSunRw5K9MYqecqvy5e+mHl6lVRqb+X1u8u2VJomP NFn37ahrcnVu5fpc/I0jWcbCqrlxsHRmX4GsW20IAECW/MW+eWpphm3RkaoSLd+8oWv96w+Qd9ZGZ0nOFsYORtOmUpPU3Ez u3NlRc4/VzHC2d5a5nXOCx0zsMx8XKm+kDldw+XLFkR+9St5/crFhWv2+jV5aTO+z29d3HxjreKTt7YL134ttuvm5216AEDKSd4 HweVRK0heoYSCq/eT8OQiIlmJNvwYR2ejQgc9uPYZpxKx+845MvRjsYhOCWVBqEx6 BXoM0lJQdsW2APcFSJGkxkqG77dgaV1mDMLN8aKvs7Di1AxQgg WFYIUQetCMWQf1rag3HVOCYnAZVWBhkKnDialOD2XEd7FVXpwV A2jCrHh56M5MQhVgtQhJRxJPTldIBOwIBJmI0IokQUDVuLzA7B S4oOhGvvyESqBRImcEYFnbsC2GliyceNAmKMxbjRu343quQi/4q2khuG9JuiUBq3Y4hkxSbdzd219tY91cOU7mhQz+w/rrwlRyIanntmb11papIufFBfKSPmSBlthcxPZUYMmKNLYP3rUA IneJBUjVqUxdkPdKZvX1gp0KiGtVPaekhA6lKD4tkYN5aOJs9l H2LD4MQpaoxcDWx3hOJR15mCeD+c3DVdtrLeHq4bNjopLg2dAQ 8GnDScOc+nZQkTK2oqthYcpQffoRH1GvOQSV8V/xShTYBN5SoGMXogqwj+34NlbA2Jvw7u7MfN36FeBY7YOhAtBW/xO5BciV/B7LpzeB/0IjAo0yYnztX588C3cHuTMxJ3p51RI7GIP4Km1R56CWpISSC5U SxLuxOoV/aHdCSfOXcHlhc0n4v863CIAUpcilTg54fKICSF68n5egp04i8P gKUNpPSLGiijFrVFIkeO916GkUFaI69/Cg9ciugl24TkTA/GnApGp4NegLgD0dIUXUxQx2rPcL69y2yzypIEK1ulqKuaUo2jK JZwhje0v3VbisdQha5xWSG7ttZzPLc49dKB1kITMrDr7YltLXZ YWSUS6QtdlSY2kJfo44Q9NBxtdXXd0IAhVhOqsrFiqnI21isxh 3Zqy+ZoShqcouUZkly5EYYhj60o9/AjanGky5TaseduikDjyvaZbH0oaN0OvUfUITxiA3+UCY99ZPmg 2YD2HKQSaTmGDAcsEb1YFG9uRj1CCEtqxfz9eLYPTI1Z0MidBE XCStAzuMmw5gcgs3J8KYxclF5M3B/LKQevQehIHvEjvi7SLQFEQRMdXulmKCx+/0MGeTX5s/R5HW3DfQ+JkdPJcvJ2J5mZxpqvwPSx+HtHJeEAG2gfCI7pJ0Xo Ronnz9Kx2gobGbd+1udTR40cpWKvT6yaYNtYXuEVKQ7MSng+Ah YrywoqR0IVfkdO695vmJtY4LUcf9iNxEL7v5QjyIu+WrW8+uKS xUZ1w+/juQE8cRzBW3ieYcuH3ZRShJbxuP0mps+7PDJ3qbm3jeM7pf7Vk xfu0NkI+crSc7hFKKCLB8KDUyIhHhhp/P4IpaVi+GwPGIlmNGt85oCfBU9EKJCZhVCBklQ1A7n68o8dfBo vThowSN4+Hy4HVezFkPBLojtUTmoajFO+vR4QM9a3oMxD3Dkay Av/vkQe7PsOnB5H6B9wdCKt1yZiY3PlpP3zTD3uO4ndjQMvF+J4KZ AuMkEbR5xDLe0Cd19q25dXiM1XqMc/E99HD0SJOs9HyDkwZ1sVQDCH2gBPniVh3jBmPfd+7RbknJAPvj MkerJRdRDDP/W9XQ9bSsuOt8iNHFVNeTErsXpUhKIkQ2Ak3EBhI9QuBEk8QFEF TxjSD8Nd+Upan8d7/tJ0pcA4ZJqelPUEJRTPFijO4dCgGpmDjSmym8W4dXkqDmUQpg7 PmSFBCmQ7jxuCRzupN1Tf4vBD3DBbdKWXELYJjPIpFe/FXNd4aBjUZgBTjRZjt1BiYOSSn4c4hndP0HDx+EUFUcX50ejHP Rlzcc14FxAnBwA94dzWIaVhwt+gGhee3tUB7NhALgyJExF2FHl K5WFamA3rbXA3ODFMPwQxgHM7Di4u2HaKzHkyeMUkeiIFIXbgo 7ZQyUII67ZeSUoWGbJ+llUrFwVxKTkrP4XMIbspduKxk81o2cV 7yzNtCNAFnJuRsPi9PSkmZnGzPHuUqkqIFjSK76Anva7Ue+qJs 1342/aHUWZOlHV7Ty3ockOkpmiIMJoKsbUeXhMPqtVeToZFSzsc4WVr TafmVYVJdqI8mef4SQkn+KiVkAxroFd6+CiMTsW41HlsPJgsDA mzzBwbB2U4ce7cTlbWwhogGmnHDp0eiVoxIhY9szagicM8EPNi Ev63Fv9S4N138yOeFLBZP3IBu8HR+C9Yfw35g9iAM0Z3TcxH8t xtaZQC1zcdeAK3SHxjG7+mtn5wLGz/Cf5aBvQYP3gSzBa1CeNCI7W+g718RxYuBW9On4p4bmRFQBHh6u AgnGtAnD3t2IPtWxBl6grFpalr7Ycm2NWz/u/qMu0HhaPYJ1lMul0RnKG372qpr9aSy4cAR2ni9JjyO5r2s28vZ mnweJ+ex+WwWv1ZDyRSE32LZ+UnZpqWuuGuTJ92ko5w+B0Ep5G zdnrq9m9yGwdET5qg5D+O2MY5WxuNkfTZfW4OENNMKOeGvbFz3 79Ltu/n+dyVfc4fS0eITdFWiIiy7zny/Rjrmz7GpkZLo/hpqv6c63+5IYguP2Rp505RBtL2sdmWubMZErVRKgPLvW22nWGN YglIi6xFKSIg1TyF6IAOCbArH0BR8ewYv34ZwRQDKKYBs3+4Mh dNYF04cxQctcPrBtWF/OO7KRCiBcl4wevDYRdSZOyeiuhEvrkOMGdcbApAOHpTUIiGiE0 GjUwnXbcMHFGJTzymh4Nko4jzUNgSguMWb/DGAd/vxnu8M7Xl4+22sI3G3IMhL8FITtDEwhqByBb4NRxYn4kDm5WLE A7g2Wzx/0hCcysc/XkZsG45TeHQqjD0B6Kl1XfGnf62U5/SReV37X2lusfPaOF32HHNMTmzMipr1b7FhfG1VbPic6YYoM6yH m0/usZfkNpae8Xlb6zbI/SkjwgaPUbmP1qx+vKQkOi5d7jm0uMze4lfEGgdPUNYdqvnh5Za Yu0PGz1E1nWzIXW6pabDXNHD+teUb61UJ10TnDJPWrSv7+tVKT 3bSKIV/7wtFrX5Ka1Kl3xzu2lH80VvKiDsjkyMlykEx6UtLSr4rWl3EnD 7ChN+e1i+Wb93nPLi40ndYqzFIONJaVKfOmRHdL1spJXuCEhI0 knvjmjCkBkJEvRk3zsWpk5gW1gGaFJGEaT4kB2TAFIlx/eBrw4q8wG4QUtx5K+4MFGFCe2OOC/3ax4mjcd21qNyFapsYZPXKwHUk4tTdV5slRkwdBxOJQdpzAWd0 HKayIupUVxMl/FBqCvwRSDr/QYXjI4bDEYeQHq6F7jYMvhaqUtSux9s+EWlblYSp9+CJ5Zi5EN tpMajotQhvzoMh8CSpt+N2Gs/8E4fCMeqvmNkztkbjqvz6uXfKGms9BV9XiLsWeHlTJuJnRmYNT 7zjXuc3S5qPuyQTHosfOUolA1tX6SxaX1fupSMHRUicjtpDDbx RlzFaBVY15J6kBCtbvqLO5+c8PlaXRkUP0kZOTLjebVRna0iwt mr7qW3NNq0ybmIMYbEX57rYlNDsbMpt0E+4mWhxc8feKvGJaO6 kIZqLuSkqZnzvP9RJUo2BEnxI6PV/8K3+V/netUzc9NhZT+sEUQod0GvRPPfXy1rL3XA7qJGv9J85UXGJ6+m/Aujp/1W6rEBPVw/9JNBTkDrogkBPwQbuIAXpChPZWdXgJAEKcuTnWUaSFEWJO0YGq QtJpdIgE36WBMkRGNVt5os+y0G73V5RUSGTybxeb5BZFyOdTtf U1CTEXWVlZaGhoSzLBnkiCJaQ1Fit1vbheoE/QZ5cuABD0xaLpaWlpZu361DC2NjYzz77bO/evYISBkczf5aPAl133XXCv4PwFgigNgj/W1dXJ0hOdna23+8P8uRijBKstsvlGjFixHnHg2IUpCBdYeUMKm GQghRUwiAFKaiEQQpSkIJKGKQgBZUwSEEK0pWh/0+AAQDKGChQdHC51gAAAABJRU5ErkJggg==

Delphi Coder
دوشنبه 13 آذر 1391, 12:34 عصر
خوب شما باید کتاب بخونید یا جزوه های استادتون رو با دقت مطالعه کنید. اینجا یه فروم هست نمیتونه جای کتاب رو برای شما پر کنه. درخواست پروژه دانشجویی هم در فروم مجاز نیست. تازه اگر مجاز هم بود من فکر نمیکنم کسی حاضر باشه وقت بزاره برای یکی پروژه بنویسه.

elham.sanie
سه شنبه 14 آذر 1391, 11:35 صبح
خوب شما باید کتاب بخونید یا جزوه های استادتون رو با دقت مطالعه کنید. اینجا یه فروم هست نمیتونه جای کتاب رو برای شما پر کنه. درخواست پروژه دانشجویی هم در فروم مجاز نیست. تازه اگر مجاز هم بود من فکر نمیکنم کسی حاضر باشه وقت بزاره برای یکی پروژه بنویسه.
حداقل میشه بگین چطوری میتونم دستور فایل رو بنویسم که بتونه فایلهای ام با پسوند اولش تی باشه رو بهم نشون بده ؟

Delphi Coder
سه شنبه 14 آذر 1391, 19:49 عصر
خوب برای گرفتن رشته ار ورودی باید از تابع 0Ah وقفه 21h استفاده کنید.

برای پیدا کردن فایلها باید از توابع findfirst و findnext که توابع 11h و 12h و یا اینکه 4Eh و 4Fh وقفه 21h هستند باید استفاده بشه. توابع 11h و 12h از FCB استفاده میکنند و توابع 4Eh و 4Fh از DTA استفاده میکنند. (DTA راحتتره به نظر من یعنی استفاده از توابع 4Eh و 4Fh).

برای خواندن موقعیت مکان نما از تابع 3 وقفه 10h استفاده کنید(به این دلیل لازم هست این رو بخونید چون تابع چاپ رشته از شما موقعیت چاپ می خواد)

برای نوشتن رشته به صورت رنگی در صفحه از تابع 13h وقفه 10h میتونید استفاده کنید.

برنامه HELPPC رو از اینجا (http://barnamenevis.org/showthread.php?90984-%D9%85%D8%B1%D8%AC%D8%B9-%D8%AF%D8%B3%D8%AA%D9%88%D8%B1%D8%A7%D8%AA-8086-%D8%A8%D9%87-%D9%87%D9%85%D8%B1%D8%A7%D9%87-%D9%84%DB%8C%D8%B3%D8%AA-%D9%88%D9%82%D9%81%D9%87-%D9%87%D8%A7-%D9%88-%D9%BE%D9%88%D8%B1%D8%AA-%D9%87%D8%A7%DB%8C-%D8%B3%D8%AE%D8%AA-%D8%A7%D9%81%D8%B2%D8%A7%D8%B1%DB%8C) دانلود کنید تا به عنوان reference وقفه ها و table ها (مثل DTA) ازش استفاده کنید.
و اما برای نوشتن حجم فایل باید در نظر داشته باشید که یک عدد DWORD (یعنی 32 بیتی) هست و شما باید اون رو تبدیل به مبنای 10 و رشته بکنید تا بتونید روی صفحه بنویسید. زمان و تاریخ فایل هم باید تبدیل به رشته بشن تا بشه در صفحه نوشت.