PDA

View Full Version : [SOLVED:] Need Help Creating a Macro



rsrasc
05-25-2021, 10:33 AM
Hello all,

I have a file with over 350 rows and would like know if someone can help me with some coding. Basically, I have some data in Column L, Column M, Column N.

In Column M, I'm listing a number of days, and in Column N, I have a list of Weekly Rate. What I would like is a macro that will take the number of days from Column M and copy the corresponding rate in Column O.

For example, the first line from the picture has a total of 10 days. So what I would like is to copy the weekly rate of 0.153810---ten (10) times starting in Column O. If possible, I would like the macro to only copy the data for the days of the week--from Monday thru Friday.

This all for now, and if you have any questions or need additional information, please let me know.

Regards!

PS

Attached is a copy of the sample file that I'm using. I just updated to make it simple. Now, the sample file has the Total Cost in Column B, the total days in Column C and the Weekly Rate is Column D. Same concept as above. Basically, I copies the weekly rate from Column D times the total days in Column C, and I manually pasted the the values according to the total days. In this case starting in Column E and so on. If you scroll all the way to row 327 we should be able to see all the output for the file.


http://www.vbaexpress.com/forum/image/png;base64,iVBORw0KGgoAAAANSUhEUgAABRIAAAD/CAYAAACNQypJAAAgAElEQVR4Aey9beg2WXknWLCbxM3gaJjMrGMQYkZ23JVVh6aj3ISxQRM6Sw/05kPIrMnSw7j302gLLgR0P8SWjeAzKOk7LMQJf9xmB8WWCH5wc4sflk5gTTezJH7YNip/k44vsZNopycvo5lskrNcp qqus5Vp07dL3Veqs7vgf9TL6fqnOt3Xb/zUr/7nKrmb//2bw3 4ANwABwAB8ABcAAcAAfAAXAAHAAHwAFwABwAB8ABcAAcCHGgCSUiDeQBB8ABcAAcAAfAAXAAHAA HwAFwABwAB8ABcAAcAAfAAeIAhETMyMSMVHAAHAAHwAFwABwAB8ABcAAcAAfAAXAAHAAHwAFwYJ YDEBJBklmS4FcH/OoADoAD4AA4AA6AA AAOAAOgAPgADgADoAD4AA4ACERQiKERHAAHAAHwAFwABwAB8ABcAAcAAfAAXAAHAAHwAFwYJYDE BJBklmS4BcH/OIADoAD4AA4AA6AA AAOAAOgAPgADgADoAD4AA4ACERQiKERHAAHAAHwAFwABwAB8ABcAAcAAfAAXAAHAAHwAFwYJYDz W/91m8Z/MEH4AA4AA6AA AAOAAOgAPgADgADoAD4AA4AA6AA AAOBDiQGPwDx6AB ABeAAegAfgAXgAHoAH4AF4AB6AB ABeAAegAfggRkPQEiccRCS4QF4AB6AB ABeAAegAfgAXgAHoAH4AF4AB6AB ABeMAYCIlgATwAD8AD8AA8AA/AA/AAPAAPwAPwADwAD8AD8AA8AA/MegBC4qyLcAE8AA/AA/AAPAAPwAPwADwAD8AD8AA8AA/AA/AAPAAPQEgEB ABeAAegAfgAXgAHoAH4AF4AB6AB ABeAAegAfgAXhg1gMQEmddhAvgAXgAHoAH4AF4AB6AB ABeAAegAfgAXgAHoAH4AF4AEIiOAAPwAPwADwAD8AD8AA8AA/AA/AAPAAPwAPwADwAD8ADsx6AkDjrIlwAD8AD8AA8AA/AA/AAPAAPwAPwADwAD8AD8AA8AA/AAxASwQF4AB6AB ABeAAegAfgAXgAHoAH4AF4AB6AB ABeAAemPUAhMRZF ECeAAegAfgAXgAHoAH4AF4AB6AB ABeAAegAfgAXgAHuiFxJubG3ijIg 88MILFaE9Hyr8c77PSrmj9tgBf91tG KP JfSFuewA/wH/3PwrpQywX/wvxQu5rAD/Af/c/CulDJz8B9CYinRT2zHn/7pnyYucV3FwT/ripe0tvbYAX/dbRvij/jL9rC2ffAf/K N8xIv A/ Sz7Utg/ g/ 1cV7izcF/CIkyAhXtf/vb364I7flQ4Z/zfVbKHbXHDvjrbtsQf8S/lLY4hx3gP/ifg3ellAn g/ lcDGHHeA/ J Dd6WUmYP/EBJLiX5iO771rW8lLnFdxcE/64qXtLb22AF/3W0b4o/4y/awtn3wH/yvjfMSL/gP/ks 1LYP/oP/tXFe4s3BfwiJMgIV7f/xH/9xRWjPhwr/nO zUu6oPXbAX3fbhvgj/qW0xTnsAP/B/xy8K6VM8B/8L4WLOewA/8H/HLwrpcwc/K9YSPycufuWO aJr5US/rR2/NEf/VHaAp3SyPdvMW 5 znnrHPwubvmLRnjk9c/jicWOOj8fecJM6b79upBvth1fiZu27887Use/GVgp8qSB78x5mtPmDt97IkDNce/Nvye If6twVa9aks0vP/a aJO9zmqa23z5myfJnz6fFP9aFT55fBOZVLevzGfO7uW4yX7jSO8yZMWX/9 ZT4Cfcd9RDxtSfumLdo3if0Q0r8fbS84/WuXdhw/Bm/jweGfKJ5wDdE3OaLv2r7557xIvkgNX6KfaiNm0tf2g1l4M/3PFAGfo6qHhvdNQHVg2 6apsSP3MbQuJYWbkqiGu5 Zvf/GZGU9sB9p07Uw/aVPnumOn0 Kbn9c/S IZGXQ96jcnzsLM0Qplflth1IpIzZvadk4ZG2s CX/HI zAVCa/ONgt 34NUxfG3MbE iT9wKiL NtZuf/a1J56IPmjU2Ok4C/97Q/L3J nxT2GeOt87K8pOevyGlETvwzQ9aDh9YhTEbqZJ8Y/EIh67uu0e WE89nLtXuooKX5htO3zRbBzjQGy4Lftv4x5KyAIdwhPxd3Ngl9DGvlDXxDvOCl wnnnrrl7R8ZeYJtLF5cutVsGftX3jdrJpdCO8ykDP9lFPlDt/teeME9EVhKT4RfchpBYqZD4h3/4h MamOxM28jcvXvHO/ikAcidJ57IOmM0r3 WDgQ36m3D5g5uOG3pMvPllyN2kw8KCTtQ9ngO/GNBOh v0uMPYK02/sTGgF YrBG26ePfzUbMMPvE574s HtD8sS8L94Ykx7/FOap89La5ffT4ycMhFU/TPvOLY9X55gWv8b4OXP3zhPmCUdATcuDtPil9yVOuS vib fC78zBrQP2b4VQNvFPyDLJ6KSDSnj3z6rfs3wdvBBu8fneavTYxyXgV/V/4T1oQz87Sz9VD8eSR6lws cpi2ExEqFxK9//euSe4n3uZHhrSyez/FWpqXbz ufpXEKX5Kw4Qz4RdrSxWbKL33sQj6kNP2AFdcx6fETHu0DfRwXs8w9Of6gWJjeD8nxW ePcdIAI7TkR8Zsyf08 NuHpxxL2bTv8uBnK8Y84JRU2/T4pzBPnY/rifT4WzyOkEKnPnc32Sw86dG0 JVowph5S4YlfIim4tLil55vY05tIAmpOR6is KnOHdjPaoL7g/2yk8RD7PG39I9T7/PLk2Hn p twrBW8fn0tniZbdl4Hf7PhadlkXqz60c/Gmf 9gbafC73IaQWKmQ LWv5QQ NDL6YXM4Hq7hCpJym9c/SyN1fWl93M ecdOWLjlHfsljJwaQY7zp/ZscvwXt4nQ5NvZKzDPJ8QeFRNHhxgQt8k6O35ZN8XffkZTrQTIP/jYAlvfkh759FYFJtJsT//gHhUSgRTHp8btt32DK1Pnhihh76fF3KJx2MH27x75MjZ/qPLd1vYAkhAXbJiRUlVLjZ7/zlnxQa/tnxfS7d82dWtt/OxZ2X/HBvEi1TcZ/UceN8bR3c mRHFIGfjUeTFgfisBv60EeITEJfsVtCIk59bRIDckp2X71q1895bJI18gB9in7kcwIZJvXPwHDL kqSPqYMqNPjX4x12kUFFHVT tiFfEhpaTuU9Pgp/IRTCklpMUsCJsfvPEBLS9gvaQfWyfFbyG4dyCkk58Hvxr0VFPPUgbz4XR64XklzlB7/FOap83H9kB4/4xEP086DBqen2SbH32Ml/FznB1/04mIa CY5fomL sK7n7Mf32FxVSan2M K3woI WYjkn/z4ZfPFSki7S8jFX75AwJZcu6x3/rrz5aBX/V91C4keg4qBz/3BdfH9JwcUuDXXIeQWKmQ Oyzz57DzYWvdRsZ 9B193O2IR6WwrnXLGzAbHZ5/TNr3pkX HzJ53h7ZpYFX54 doEBVFBkiuPE9PgJRzk8So8/gL3i NuZKQln4nBtSh9/Lllu2zYhA3yTF3 gLkj3RNxPj38i1lZUSP8wkR7/EEx wODtkJJuLz1 iv8d88TnnjB3RIVvBUSqD2k5kB4/x1bWfbnP6Wm2 fATvny42bvZ8GcY6zBmuU2Dn Isfzjnfa7rc nS4mX3y8Evf0BPVy/KwD8xJlg21N7c4uMfcxtCYqVC4u///u97SZjmpG5UmJh5Gh4f5rz 8Vl0zTnt7y4v ysRdYDS79eUU8a9WWLn yXa je9b7PgL2AAzezLgd/ GKLrkY8TbGTEbQ78/geoiXYnInbKOgtU40iy8P9mz4 5jmw80m5Ih/W//5IbK1JJeQngM/ 759HyB9xTR9v8c25MBPsb5zZ1jibG2xwsqd5Mtcc B3V7m0kbB1IuGSxpzx57L9/eCQmmIvT/zzt/vs2yT4vaKpEI/m0tnYCNsi8OvnAfss5PaPEaDbLMvA370v9i1qdnKCrzZHx /hduVCIv K0G5zTcWPVaFC X7lK18JJUdOG3c6dtAhfs3N3SHn9c/S7h/7m0uwDztaAOHElW6zxa4Tjt7S/1KZpuPUYcqDf5pj2r7Yx3nwDwOHIf553hWVB78//j6BZZvxbx8iZOyd7iw2aJF/nvizAX4ecGqKbS78bV8qxpSZCJALfxvbrh5kwk42ZMFvH5S1eEp1gV8hk4L5bRk58Fvuj0TDPFz IgX Ibp3t36jt4zFwhnYgRfwJr08v4OfYufSBL8vvlYC/fX4XfWHCZ8wy8Hdx1c EozZyffH3cbtiIXH5AK4px9vb2zWZm9xW Ce5yxcrsPbYAX85bVs/wE4wgOAKhPiXE3 OScot4o/4p RbaWWB/ B/aZxMaQ/4D/6n5FtpZYH/6fkPIbG0WpDIni9/ cuJSlpnMfDPOuNGVtceO Cvu21D/BH/9bbe11sO/oP/17NovTmA/ D/etl7veXgP/h/PYvWm0MO/kNIXC9frrL8S1/60lX3b/1m Ge9Ea49dsBfd9uG CP 6229r7cc/Af/r2fRenMA/8H/9bL3esvBf/D/ehatN4cc/IeQuF6 XGX57/7u7151/9Zvhn/WG HaYwf8dbdtiD/iv97W 3rLwX/w/3oWrTcH8B/8Xy97r7cc/Af/r2fRenPIwX8Iievly1WWf ELX7jq/q3fDP sN8K1xw74627bEH/Ef72t9/WWg//g//UsWm8O4D/4v172Xm85 A/ X8 i9eaQg//Nr/3arxn6u7m5sVs xrb1C/wAP4AD4AA4AA6AA AAOAAOgAPgADgADoAD4AA4AA6AA79mMCNxvcLzVZY3TR/6q/LZ6s3wz3ojW3vsnnnmmfUGbwHLgR/xX4BGq80C/Af/V0veBQwH/8H/BWi02izAf/B/teRdwHDwPz3/ezWJZiTiXz0eqF1smYs0/DPnoXLTa48dOtL0HWlJtQHxR/xL4mNqW8B/8D8150oqD/wH/0viY2pbwH/wPzXnSiovB/8hJJbEgIS21C62zLka/pnzULnptccuR0dSEhuAHwPJkviY2hbwH/xPzbmSygP/wf S JjaFvAf/E/NuZLKA//T8x9CYkk1IKEttYstc66Gf Y8VG567bFDR5q Iy2pNiD iH9JfExtC/gP/qfmXEnlgf/gf0l8TG0L A/ p ZcSeXl4D ExJIYkNCW2sWWOVfDP3MeKje99tjl6EhKYgPwYyBZEh9T2wL g/ pOVdSeeA/ F8SH1PbAv6D/6k5V1J54H96/kNILKkGJLSldrFlztXr88 tMbvGmOMEsn1jzH4qceKelZ5eX yWdTQ60vQd6bIRvC43xB/xv45B674b/Af/183g66wH/8H/6xi07rvBf/B/3Qy zvoc/K9WSLw97MzucHtdxFZ8dwliS8kxuMo/h50xu4PLjtuDMfSlbK3l a517zzxKIWQ2JVBOPq//Yn2GWMIawIx86rYnY6m2CtzdCQlOQP4MZAsiY pbQH/wf/UnCupPPAf/C Jj6ltAf/B/9ScK6k88D89/8sTEm8PZtc0hsQA929nwrrfrTns5q4Z6D4nYh33ovzdwVwuOZ5n12Bh3L2g2JI9BuQz4X/iQgIBSno86B95oW/fioY745DmuG/FN42DZgqGie0rwXMuoZAo7T1npuNahMTj3rY9OlQepxtShvcx NnZYNtAX/sTsPGqjnSu3JETtoWf oWh3zmlP9kWfg4v 2G DmwJ/yX9zpbwt9F3xj7NfvTbF3Oku3o77Z9s /rxZ0X4KaDKB/M/tm M/w7 Dbf/Hc5R7gb06YbLHS E/hF3Vg5Bu34euONoZfxt837hz5YFv4edzTjgErrP9dfNkP83VgS/GvaPwXaP8uGv9xu3Bzc8O7xWyJzPMDGTb3PMEulLd1pKxBx/0ZdrA9vD3PLr4r9vZUoSzkp7GN52GdzlvnQ8eNaU7q2MZWXXLmVP/48 5EvZHgRmKinMF3NKaRgqOe8SevpZJC6UpItMKlyFsKfnLfAvDY6wXmuY7KkbMveeYlz1i0MzC13 VI81Wkas9eQ4MlrYsd1n7ayCZgq0HJ4vze72QfuqRx8549m33O95b5sB dsvFxIDJfrs3S7 I0hbHM/YGwLfxdh iFpdzCHE rAtvC3de2Ues91YVv4SUc670e7reHnuNotDbZnyLAt/PRQKB6e7Q/KYSF1U/g1XvuwtT38XMfHYxxf/AUfnMrRHqwx/tP4h/Zv7BsPeBqR0zPqysZ/0/jrGP dhn 7479p/B3HNz7 m8Zfx/hvGv/Q/vlbu/FZbv/Km5EobLVGSjGG0uQvJg0/7HdCE/ KbB/CO6Wcz8kBEncAOm/KXw8mhD1211u vVHNoqMBiM8unWGe41PFliwxsH7TA5g2nu24fjq2VEmk6EL2tw8DKhYzws p/pmMnjP7jgVD2orlzVbsE8KZFvj0sudgeifIkXCnRUQyUt6ry/XNoPQC00Jid9w/bB1dUVHb7/ikK0DaRaf0PV47wievjp11IbctobKIU8TTllu9G wsxb05iNltAyfbe/b7dubbcH66HG8dDNh4uZDo2jBV7nDVtvHrtmTAzXtbxM Y2kHFwGnGLLd8LW1lfaH2eY381zgkVt/ 1vC3cdNv3/Ahb89tDb9EegoXtoaf4i/GXXNj4X6cpn21zvo/jBWZB8offLrfrjv 1L857btHOA/3gRvD38f1lL6PLt4ufotudiLPtvGHub/V HNMT6kDfC1tZVuyjvZ/1P51eo3TJoo2Yby7Nfxt3C4Z/61LSLQDGz3Q4WMO6jjc9gx1kv0sn 6XJJ QqK5zcguV7 mE23tn7HIKSHdwqtgyEhNCPug71gkcyrejvPvb/D6bbNhlvnJf2jMZn75QZ dU/zg3yQMp1pFQx7P2SDhj3klhzSvmsQDZCtzu7EUqTKTzbMUDvYtRzERkmxzBTgma0g6 3rvVswcFFt/1FpMQSnU5c5h9eZ5w7urYBUQ6p3iqC9ymOPyiBlkK2vKBhLh9zqyf9npf5zbuCFvrlhESp8vtfb BB/PZhkn988jm9B9/96LSx Ms2eYpfvQs2F/ ubnL8 x8qe8TuztbwWzw799UyoTqwNfwyus44QiaI/S3iJ0w9/8Oz8eyP7ltq/yjmzg/MM33gyuOv23fb96n6LvsDwfx2d2P4JT7tG5nW728YfyuSSnGoRz3sbBB/TeM/H8dlffelD8Ff//h3jK u8d8Iv63Pl43/1iUkOg/rLaXJGe2sHiIBi4ptmtMo0OCIBz22Dkwsmw4NIIPlt KBOxAhO8Z2OZUx08GpYotsWKypQR MsV4UgwmfSeJP5ytEG9nR8bvsnIHitPNP9c90DkKskwIaCYxWVBQzCCkTK6rJj5jwficKzqWzkG iXFM8JifLDJ8qOaUCWy/bL0CyESrGU7yOsvKzZbueERMYptx77Of8TttfHbvxrnOQbzyJ064bgXTcjUf6yM3A3XEc4b4Zpy 1WDe04b8uQz7XYJIVGXWxt 8qTF3PUZVeCn9lK0j5JfVeB3qxE1Ar2wUAV FX9 /ys1P1Xg7 NPbbT7EF0L/hbn3hwtF4YfvGrBT20ejR Gv/aZYov4Zfve93dqrEG4aUxSA/6nt SK4Nv8UruFAb/r4 bHj8p u/Xo0p02uM/9bHfzK tu27Yvy3CSGxbe/UA7p2Ch2fIiTq 9zeZfTOnFEwRoKVskvml3H/VLGFGhBH3JgQEheNgVdIFEKNjtFEbEe2W39PCb5uME71j3uXOuLZh7TtVaVuFuGRZg4KkU3P3lN ZtUKjuF6ns5BI5ZCYxzMg TpnRiILl/tOwAzlyxnQthMdWUjUx1pY1JikoGqzUz6QRV2xv0TsxvVaG8Q8kg8d/KMGpbmzOYb8Tm8PbOct2qyRBXppUnfBtULiXLltMdvFP/iZMLo/TrlpbuyJd21budL4W FsCtOAHPEnD2yQ/7pf9TxQDyzYIH4GJwRkPjXebhA/4Xb6m7GgOvhhg/gHcN0eYXT78eGS9eMfxiQtKtvvC/GIztI1zvi/d8D28PfQgu0eX7Vd/LWM/zT/ObLDlmK83fHfCH9l478R/iHw3V5l8b9m/Me W8XHVixQUbGdY/WArgZFRBo5SKLG0t9BtoMn5yXbVA51sE55rRiz8zY0cgCm7GKHZ96eKraM/BT0gcJ6VQxEnLuOvY/fTL42Tru92asZqoPLZXyGs3LvVP/Ie0b7dvYhzdCTQl0nxu12xn1BjRbpdG4nplvBsrtWDgq1kMgiIM0alNfpYp1jjw1SPJT7dB VKbGPBE5Pfk55lx0sEbvZTkZx0Fran2sHmX374tQZVUcmINr2aiYuUzZeIySeUq6LVQBYO36yX/qcjqceJHusG8IvoNDuFL/sZRXgl79IK9e0sxUd0cU6rBtjrLX q37RabeUBzYcf J933Yr2P3hFvGPMLU8lk3ipvH34NqdYF848tX66v ofdf1XR9L/2wRv8A38o1Is7sbxR/kvPTBFvETJtnY0fGGx39zHA mbzH kt 0X138Lx//rWtGYh/cYdaErPf2lxSxhNk2irxMYU/C0oHkE/tvJJB157vU9j1mfK9sTCy5xuX3ZfM9wrA TZTvFJfh4FSxxeunCR8QDI31shi0hCYb z/hTyonlC /36MXHqVdnKfKT4fgVP/o 9zjbnmznh3Iy3/7WYp8VyesyaXBzr2h9C6tz7Mrm2cPjoTEbuYildXfw3ZMbX3Cn1jCTbdZ8bBbpmzf1yhEVLk8m 2SgibjdjBP2TJ9/prYObyyXHEFbS6Vrhs/bPIvWLR1PzYx0O0EIdEO4AX3rR3DzIg5Gy8WEmfKZey03SR OxNa n3wucS XfwuSorxwNtx2ub4P5plWGH8VRtQV/z5x HpuHMt2Gb7p8ZV/QxrRj1sN4lfcd8RFQbodm/N Mn2flytxziBsb10wVbxB30jHLBJ/Jr/atwp4K96/DcdY/3cOd0PbDL MsDdGH L/f90/Nsfzoa2scL4qzbg1PgXLSQqXuNwQQ9cI7YsaEa0rKixmKoEpxS6df9YH gZhKc4ZgXX5I9dKySerM8u7NOLhcTF7AD 6SVxizl5MiPE/5lJ36RJAP/B/ mHkNgcRP1H/Y/NsXD aP/Q/qH9w/g/3ErESkX/l77/g5AYi82F55tfbInoIKuqX9eRbdo/7HrfLEVOW/E2f wwkMZA rr255rqh4FU oGUGy/Uf9R/1H88SLutQqojtP9o/1NxzV8O j/0f j/aur/ICT6W8LNn80vtpTt4u37Ry1JtuHozvESY73tlyMjdiV7IP DRF7vAH/uBynEP6cHwH/wPyf/cpcN/oP/uTmYs3zwH/zPyb/cZYP/6fkPITE36zOVv32h7DrHwj/X S/n3bXHDh1p o40J9912Yg/4q85UdMx A/ b4nvTz1lzJNPun f pQxjz7q/3v72//Epj30kDH33Xfa31ReH/jAUO4Xv7gOr6L o/6vg6lxrAT/wf84zJrOtaGHbvqjrzbzPrb6ZcQ4BifAgTVxgDpT/MEH4AA4AA6AA AAOBCbA7/xG18yjz/ 7Ojvgx/8uiFxT/ 9 c1/bu699y/7v9e97jtGLwIp9fiVr/yr3u63ve1b5r3v/abFHdvHyB/1GBwAB8CBsjiAGYnTIuumU6gi4t 0B Cfad UnlJ77IC/7rYN8Uf8S2 jY9oH/oP/c/zSM/wef9w/u883oNbzRJBL XvtQ/m5BmGk7NIKTzJFxqfKccT81ylDMbyaY5cfPVrzbmwQdbGz/zGWNeeGEuGsumo/6j/i/LqHXlFov/VI9PaUf0Nc89l9Z/sfCnRXF5aTnwQ0i8PF6rvjMH2dbkMPhnTdFyba09dsCPgbRbI o6Av/B/7oY76LdMv/poVQ qH7842NR7cd 7C cJb0kbM2JX9emv/71ftHvPe8Z20diHwlsEgctX17qX6r4s/0f/rAxhJNE15e9zO9rEhZJrE0hKqbCv1S8ls4H NH/ncIp coE cME1VX AeWHf9hfn69pL1/0oiF/Lufhh912ktuWZ589BYl7Dfifnv8QEl0OVnNUe2WbCzT8M ehctNrjx3wp 9IS6oNiD/iXxIfU9sC/pfLf3rPHj8k0lYLgfRAyQ XtI0hAsr8ad83w4/EMWkn76eeXXNJ3cnN/ 9 t/Ud ZB8q2cx/szPtELqJdhOuSc3/lNsjHkN8Jfb/sWMO c9FX/68eJd7zKGfvS4RAjU7eY5x0u041yebK 5XZY/UEzhZ/9sfZsDP4TErbNqAl8Osk2YUuRp KfIsJxkVO2xA34MJE qKBu9CPwH/zdK7ZNgXcv/uSVs9AEOOYOF9uUsFn7g0wLSJQ v8h6a7cZ505YEKW0HPVjSewr5AfOSGS0nObngi66NfwxotGxai4okLtAsRRIel/xXIv4l8c3lBfzo/z7/ VbMp7b6/vvHwiHNNOTXD3AbSnWR203aSnFujnOXpMuyaFXoLaCm7rZR8wt08iKb13lgRT/jHoEtvWfE O g8hcc2MucL2HGS7wtzkt8I/yV2 WIF5Ync0 2ZvjouhuDyjPPgvt3fpO4EfA mlObWm/MD/vPznhzj9oMTHgxB3a 5pPm3eOvH1XXrAkw9U/GA1t6UHqalr5h7EYqbTuwWlXVoI5Ac/9tOlXwkG//Pyf66tJMFAzooigZi4vtRsT8S/7PjP8ePa9C3Gn9tE2j722PADCglm3KaGliHTjzrU3lLdK fHlfOemchu9gOLn9w/yvbE14fRjxYknNIM KV/uGj5eh6Wazkeuj8H/yEkhiKy4bQcZFuTO GfNUXLtTVa7G4PZtd95d79gvXOHG5r60huzWHnfsl8d7h1AyGOjvvGNPs0Mmu0 Gs8HRdCuIdbyF/Ek FMrL3Y G0sz8IeC6k/3 XxM1R0VBYAACAASURBVNd98aN6T/WgjB8RyCPL4 /8HGz//LHIcfZa/PzuKF52 877P2Kae26t2EGzO 6773nz8uZJ85JXfSfK0lvfg1CKc/SwxQ l3u0bvm5e0bzPNKO/d5hHPvq0eaD5kLn7ZPuwF dh7TQ2XRv/00rhNmHoA0P9APq/cf9H9YzEDeY2vTuNhAES4q/5Fzv 6P9kdND/NY1vXCB95O7r1ztIYVDO7Kb6wHXjnO2LX/w3th2nvop tLq2Pt0edmrs3sbcbe/o3Hl MIbuWX7cRDPS cNR5E 9rJpEVWpnaKn3Wf C4584WM6yr7s4dvvXFqP6Pzb05uaGd7GtwANpyLZeR8I/iF3IA9S5jjvS5TvFkA1TaWm4O34wmLIn9fno I970 wOhjXB4/6UuKfzV1T8F2FPy4Dl8bex2 91nTfGWH/szC7CgPhSry2Pf2zJuP0bX5PrzCn4eXYDzWzgWR1TH4o45yHuDff5xTj9Mvl2RoV/RiI9WPLMi0u2cmkv3X/pzL5Q/Mbxr/FB6twH55BHl0s7hf9XlXZRHzDd/1FdpI 1yKXwNHuVZqheMnsqKv6LsF/l7bNvXh4/ j8dBNn 8Q9PcmmuFATP6T9819JMQ/5hhwQwno1HW9k/8I83i8efBDQx3jUsqMmJAapeaH/5j P0GT785Bv6YZDiIn1Mfr2kf5Txb7HFweL3W/isD3/4jktS3fYcMxIv8eEG7klDtvU6Cv5B7EIemOpIDvTrXTdba hndSejj0MlnZ WhrtuRzJYOQw6yQ8sto79Ndyx9F50/JODJorrMENl KWafCLOy0HZ0uBjzkgjW4PYpaAqOd7uvG8g5YPv4d1480I1linDhPPhI80O1AbD8sj38co3F9lv G2RHFmG9D1vU8Gh4wzXuCMxE8PEPSwRTMz EMeoZke/NBG4uLwwHZr3ty81zzy0Tavjz7yDvOaRz5p/nXzjv5VFtofk3glN/Z7x0cLQLdZSPxL5anz0Xh5domf22Fu6LyvPU6B35iu7vOvSb3R7Xn60QH9Hwut5JP5/o/qql72TA/9VCep7pIQQKLN3L o8Uf/17d5fR3Q/aJs45rGDM19mnFAzPiT6EQcfehNT5gX//B3HVFKClTT 180zcuf74VB XoH WqHSwR0rhfL46e4cV02pm37D07fpfuDkvs/eoUC VrOVKS /px/Gm/t/R ExHPYs6Frl29sNuSc2A/j23JVcWhScNvfkYjlu3YwxaLDVh kxMNBP2DsHhqG0aPlx9hf8WiTIv68vImFUi8a56Fj6sHTe dVJ2Pj92MPcZzSpurGVVC9Ny Pn2PXcrunNv9Sb3 h7 q63R8G3e2v93ycxg/L4x 7eVyfA/FnP3XZEH96H46zvuoMPei9//3fsMLD1HuTaOYTzUQgsZBn/83NSiCbua4f9xRPyQXmR2f6JF7yEXOhfSCLsSQ X/yn6niAG1dF239zCvytiIL j uENxJX9H8kGNIsxak6TD8G8CwtFvxpqSL9aPDbv/0FrzlLnUT/13mS2znb522z/yMeUh9BM9l8M9bpHC0hfvTRYXZ5y8P2VQ8fe85QQ /M6IvZ/1FkYrR/W 3/SBTmmdAk6vKszrm2wj/ qbj/Y4fJpc3kJP71ONhR8M3Yrs4DMRqb1TkhYDD8E3BO4UkpYufvSFg4JAfJhye5r9OWd2YK/P2v0RMzMvS7AMf Wh4355gGP5XWignDzEMWB8QDZj/7UIkNbGyEbRr8GnuI46G05R2wPH4RO3o47lSw/oFAPkiJdEY2DMLT GF5/Ixk2I7r8zQ2OZ5cclzJsw1JSKCHOX4gkLNBaDYTz/ogkeHiDzr0cR1w9j6Q8bfPjcP42cHrCCvkyyGvwbPX75UW/zHOOLjZcynwo/8jb s IE7/R1 PpdmIJCySeEjLnmUdn9onEZKul8tBeSnoxe0Ak2yEXXNaHst9ykAf95kusrM8/7ff/xEfiBvUl1B/MSVgE5 Ih7/yr99j7nnvH4h46ZgOx7H6P1G4s7t8/LuVKHbc4 Ky tDK z/6EZHGCdSOUNsy96MiObvv 3vPD35pT8ljuU p rjPZJGdKPEfWSbaBGMMZiSOHFTHiTRkW68v4R/ELuQBdCRuRzL4yn9 7K/hjqX3UtfdXihSAyr3l2i/X5bGTvmlxN9jHw2O5GBJ7pOF nhZLyyPX8aObKdZZQKDjHsvOA2YesFxhFvkMVx 9d7y McmjeuzxjIc07Usvo5zOv0MLfciQYFmEoYe9N72tm/Zl61fLxZI2zo8Mr4Ud/qhQJ5jIdE35RJCYufQgRvSw0vtp A/hMQhWn0fINtBSub6YS Vbehw77V7LAzyrEQSeuir5VPioj7Ps5PpPn6dAc9SPuWHhx57sG3XfNfH13rBvX95/svYke3r7v8orrS0leJNcff9AEU84S/90msx9JL6HP2fG Xpo XjT2V1nJV9HddveW6l/R/9WME/UBAf5sYO58S/910fsrXV/95wsSPbBAiJwjF17cZpbLbjQ/hnvbFMEbvzO5JhOZ99sHbetbasr1Pgr/lBiuI36ATUoXaxVUIBPWQMH2VxO95lI 7mFjP k9jtQHOK43rgpI9d 689Wh6/GzsbV/H z3b58qlLu6ZmLV Lerh/efxD3rznb/8m4q8FBs7Es WZITw7hGYT0cOe772GPNuQHvzlg14c/G093 3kB3eIxzuz4/rPeKbw2vNbXto8xW3y0wQ32GcLbuPEXxvotglDqv/8uL4Mdyy9Fxv/ZB9QYP9H7QILRyQ2snhEbYoWFUPHvJT6Da/6HfNf/Ti/P/V5c e/ud88cJdmMf1mgOO6v9PHyzJg fi7nF5L/0dxD329l PNsSVu8HsK5yIyrs BNm6qP5gr5ML05eNPhtTR/9F4g3hBXAj988e/3v4PMxJDbNlwWpzGZjsOg3/WG8sUsTuvI mWBnQfYNgd3BcVL 3pFPhrFhLbXxjF8uVBVTQ8yLZLGuljCv3SZrHsS5xbOvaUX9z4twNmXrLpzDSjB0kvx/WDkz5e1gvL43cfpFrhcBCEHCGRoAg/kD8Gemjc ngZPyyPf2zXuP1zcXMb96tfHD5Q0jT3mfbvw b dw4fP5kSCvlBj7b8sEfLyujhMDRjIBZ wixfY9CGmtoB QDR qq9ltuIgSvy/O5wNIfd N6xt887Ewu/tGIcf81ldSzqBHPjKDNccD8FfvR/zG3xXjDbBMjz6 j/aCkjiU4025lnNvJXd6dmPsu2abz/efOSV33dvKJ5xrz10fb9eW9ubszdJ42hmU/jGUoLkj9K/19m/0cz1KVIzDH7vu/7u0mRmGcZUpzpXYaXftRk3P75 z9u42S7r/uQZaMfb/zXYhj6Mstk rF8Q/0fjStorEGzEkPvSxzHX/V3PIOTg7vx/g9CIge6sm2awdZ6nQr/IHZr9UDt3AX Z9ZK3UXsRvyXi//nP98 rNEDGz9k85Yf3EgIpD9 z9D4wfr02T/8XjPK 9KHPcR/ufgvUiETZ4L4I/4xKMeCo2wLecb0KT GyHaRl1Tz 1vpow Ub0i8OBXTVvjP78DlWYU8m1R bVf6VO7TNRQTuoeXqp/qv7Vft5X4XxqHa/ETZ4hLxJs1/rsW/yWYISRe4rUN3JODbGtyG/yzpmi5ttYeO DHg5RbI o6Av9P5z8t/eOZOPwxA3oAkw9ll 6zKEj58R LkCwS0sPzKS83P4fBiP/p8T/Hr2u5FvFH/HNylWYdUrtGfyRGUFsn29apd/JxO0tfAqb2kkVGekcf53fKDLoS S9/kCIstIRY9gVSkD2l/ EZ6vyDEy9JJv UiD8lH4H/uvaPZyVSPVxC2E8ZeyorR/whJKaOciHl5SCbHzpRsLy/cvzj9xrOTnug9tgB/3UDiWlmrSMF8Uf8p5hKA2Oa/UIPYPQwxg vvi3P6uAHWn7w44c2frilbWip8ZQtsc6D/ B/LG6tIV/wfx38Z3GNxUYS0C5bSt224yxA0sdm Icb3uo2nNvyJbZSJOXy5voWX3 jz9EMd8rv4Ydb0ZFmJlJfMyfugP/r4H stnSJ NP4iPhIy9/X9m8J/Odibm5ubgz 4IN8HGjMzU3pf BHPn7A9/A9OAAOgAPXcODnf/7/NLvdl833fM/f9OIh7f zf/YH5l/8i982P/VT/97QNfT3K7/yv2NMiHExOAAOgAOZOHD37hO2Lf5X/ o3bft8771fMf/0n35z9PcP/sGf9 25FuJKOX7FK77t2P2mN/2uxUT9Dv0RRu57aPuLv/hr4F0m3l0zxtjSvT/7s/ 3rVdvecv/Cy6ewEXMSDxXet3I9TlUa7/rypuNSDMkn3lG2uW3HGfL9EA53M7jH DHL7J5mFdGqeB/y3 avUGzOfS7C nXdlrOvNV/iD/av61y xRc4D/4zx8ikbPGaZ9fY3HqTER9/ynHczMGT HwNdeA/ D/Nfyhe2nVBgnxc19vvracGPfn4D ExBiRXEGeOcjmd4sU7MrZh5Doj9YazpbD7TzeAn4MpPIwr4xSa Y/vW/w537u24aWuckZKW98Y/teqpKWIMdiS83xJ58CP9r/WHVrDfmC/ D/Gngay0bw/3r f AD7fiJtmv7lyP EBLXxpKF7M1BNr/p5YiH8l2N5QuJZfrNH O0Z8vhdlrcXBrwXz QYF ucYv41xd/mmlC75OS4iEd0/sMT3lB/xp5PmUz F8f/yUXEH/EX/Khtn3wH/yvjfMS7xL8p4//0FiKZuCu7d8S M/FDCHxXI9t5PocZPO7rkxBDELipXHxRznl2XK4nRL1UBbwYyA5sKG vVr4T7MLaYmanH1Iy5jf 95vFvXxk9QMrCX U34FfrT/U9yo4Tz4D/7XwPMpjOD/dfynpfk8psq9TH8qxqHzOeIPITEUkQ2n5SCb352XClZx74OQeKl//VFOebYcbqdEPZQF/NcNJAZPrnMP8d92/OlXcvoKp5x9eP/9wxcGEf9tx3 uVUL8Ef85jmw5HfwH/7fM7zls4P91/OexFb1Leo3/csQfQmJOphz37dPAccqIW2N2jfvEsBcXH3YibWfMrciH8 anjYNMLOk9OpcKVifed2xM0zRmf1TXd cpjf52Bzc9q5B43FubBtvc2LVR7uydwHfYtbg4j2Y/4Ls9uGmH2yHNzPiF0 f96bNZ8DPi7mxDepJ/OwO7a2W1o4o29u9QL28POxG/nXGq3lzZ3vKMMXP3CX8C/3UDCeHKVe7Oxn VqE43ehb/GXWJ613O v/UU8Y8tv EaZpPmaZ5oRcQ6Vfz97xnvHR5a/ht5M IGfDPtH9n LIE/iP C/f/pzelq7xytv6vEtXpRs/iR/0X43N69gs8q3S ytn/28ifETPEf6b/C1Ql jgdSSa0suOFFwIXFpw0G/8ItpOCYP/Rp7vxL6EHSNih1om2gwahDOiERG/60ZjdYbieRMW tTsa0whh8fZgTLMfri3qhdxCxDLL7h/3jSEBjbZa No3jekFtNvG7ORx1q82H82 EeLT7cHs5HEfxRbXFD4SujRmfgfkfteY287XVlQUIqPPL8fu2tP8aYyZtLk3PupOuCH1 /d/ Wz7Pgz5Vbq7D9xnmgeeNrR94K5M/4Z55DX6HKc/bR54zSfNR59sjz/6yDtsHm2 T5sHm/9pEBatn/Z99W/9e z4Kl3kt3lq/HMJfl9e0/a0Qmrf3EhTzdHsd4f Nw0rqvYX nCkxu8Yu8mDcPw3CdkBFcbv46Bob0VOWfj/L580v/ATD5rX//T4nYc0wH3Ri4y5/5//gXlV8/6hHRE20 6q8e/R/hHv ibTxvZ0ziL 4H 4/qvGYoOHwB8SUk5vS7L0f2j/Mf6P2v9NN3j0mhgaY730pcZ8/vPT15WekqP9g5CYmxUXC4nKcMqnVwMgJLJoRtt2YC5ESpp1J8QzvkbOSsw2I5F eXKfIqz941/NBjwjfKaxM amhETtG4k7JCTyfaPyHH 2vKRrxjYrzkY6DDakHv/ 6k /up/lwxN4t76lDzHw32tf/qR5yau 0x/TeZrWTx0r/b31nveZe946HD/66PPm/le8z9z3P7N4Omx1B zywDeIHYREpkPLLz7qZmOcVCfae4LxF9ludRf4Aw9SnvrvcnTMihEfuxnJipLjGy11ZTvo8v 7z/xv5jXNh8xbH23rG7 XR7Y9NKi9/55nTPOjXzI0M5H/hWwOxr8g/O0PTonrP/CfOL5gptFkeC1shn5IGu6jPZenLv8Rf/qRODH/3fBs8ijY/m0SsQsqiB/tH9o/NXBx22iXS3S0qfZ/DM eoZUdWxARCUyw/k/gv/Y0hMRrPXjt/acIifLJQs5OlEubVeNAg7RBHXFnI5LJOcjmd9UgiLFQtfS2bQiHcvQsPCqPzklBLZeQ6M7gaj1G 58ai3IBH4yM8eumtFBWdpc1KUDXd7ExeEs2zEWVMdHmuP0M2 xmw9NkQt33 feaD95l/9KN/5ghpLLLRloS2l792EN7uu 875lUvedI0zfAn09/wqt8Z0l7 vJvvG75uXtLf92XzWiHocZm6PJufyofOafGP77/33r 0ZZIIIZuOLPvf 9cO/gd//CvmFc37TGP/Pm1 8TOtCKlFEtmc WLmrxMtk0LxX5prJeYH/NNC4rlcovhODaS5jaTtiK/dKzPkj0L04u7PfORT5oeaD5imecpbN9/4RmMe/G8fM29 tzFf/GLLrnNtDsX/3LyWxG/R2FnY/GqNsYjiK 9cm4G/TP4j/rxaIx//bQw2/l o/m8cuoUXwn9uW0oZLtX/WePQ/tvVb 3YAf2flDO4bmq ncvZEP 5DN7SxAd6v/RWRETCdQ5 9sO1WwiJ13rw2vuDQqLK3L73cCwK2qtIVNRLnWk5MwuK8kknE9kUmu5wEMSkWLXkflj4asvfmpD o K9776FPFLQioF7q3DTmyIKiFho9MzzXLiRSRzUWage26o5tSOn26Fdez8wCSrWdoF7qS9fygErV S7pHl7dkR6rzIgGPll /5pFvGLmsm/c/8xnfjEQ5O9GYh/ 73zRNM4iir3/9dQLmD3z/c71wS 8seef9HzHNPbeGbCG7SJAJxSxHRzriRMYTwB9bSFHB9dR/4ihx9ecf LBpfvDL5kdePa4T39M8Z5p/8k3z2GNmNNtQNgu6zlLpl/L/3LyoLN0eKfR0wWrbvzlfAj/ivyX j ruBk g/8vf/zGtbH9T8PiX7Az1pZS pfpfe/9P8Xz2WWPHXPI55dWvHr9rmjm8tm2O9g9CYm6WnCMk0tvU5LsPHdtFGgmOUlSkN5bRR1uE/J DbI65/UEZQiJ1FqXOSGxt0y8EHvzWdnTDsSMidu83dJYsq3dR9mkkOApRkfLxvWtRl cTEv0290GPuhPitq8jnbO1xRsyWS3Zci4VafTALQZV/NEWKRrQrbq8c20uDf9DzU YRz5qzJN3P2Sa13zS/MqnWIh83rzpHz/Wi4b0guNTZ01 73/2XTsjk76wRsuvH3 8FW6eey7PL3JOyDMfhOKf2bQkxYfwn1uXyGBdH8cgjoY4/j8 ZgwJ33KAKvn8 h/5mmn 0RfMv3mcB63 JaK6vHNtzoHfea v4yC0f71vKm3/gb97B2sB8Xeq5kYPQu3fRiE7sEL4z 1LKGPdHzmF2QPRxo8SRVoB/Af 3QJLu3WQRYx1Er0znd/xnzn H//4MPuQx2UkIH74w 3khJHpKz0Rqv xIEFIjOXZU/M9R0iUMxJpXyoQOs0REklkhJDYC2z64yr6OOfHVuxMNfHyf33c82oQDtuOfjjucbJgKGckOu8zJ E60y2zsbEWPkEgio1wWTXmPynP8x8t3BIbe5jQ7wYZU 1Mfe0ycHUhRB8kzEmlf1UsnzRESqZN1l0VS8aPytI36WNm8BfwP/lIrDNIsxEff bR5RfMR86M/1S4vf9k//I zgiMNEGip90MPtUIjDRZ4lqXekvi4pX/B G8J6ASWIH5dd/SxJ89Rfeyuodm8JGK/8dW/N IjieIkcrdfW/5Q xveaCCN o/2D 2/7C6pao3qm66j ljV2VT1vy92Tf1/b/R2d4Lx3y7sHlkQv647 rjPZdgZ1cchqd1bE/81Xn2ssfnaI30N8Bf7/ENfXqYVH3KSAr2L l3vWvcHVTQF5XGw/ssLF9yHkLigM8/KigRElsXtlr yLEW/br /Ti5r7mYZetNM zXoPk1 iKW1MgfZ/P4JCGAshF24pQ5QvseK9vsvNXcCGqdrsSzXOxKtj2zHNNg DLTlg2f31WZ F1e3ZXz0gMbYaCuXNev3J8o07TM5S1Onhf3pj3aKs7PcPsm/7QON9GHDv6zZX9mkf W7TtpZRsN9Mm2cp1xSPfavEGMnbR57tBb89H4TEgU/8IFW0OF3RH7f9/2d27TqpjbBMb3rju1hMZNEJ7KVhcxx5JY5Mxv/ZYopNpdZ/JN1Sbav47pK9Z9m1j788FfN99OyZMGjH3hZK1o//vgfm//13peJthf1XyyEsCLR0DbKD9H4/T18P45 rBna3KFPHNMwZvxbe1qeDPbIGKP9d8cX0jfjGKP/G1aaJOv/x1VmU2dm6/ m0I7BzOK/ov9D 0f RvvvPl/KNj5///fUU180n/pU 0Pui140yCw0HqdZiVv/N1v/IzgAQmIEp64hyxxk8/slnpA4mpl3hiCZVUj0O0qdLdNvyshkhywqkUjz OPP9mINiza0pU6ExBz9R fldfR szX/K6du5/Ei42dO0GxEijkJeizuXbqlmY5SQLp2n34dJVvoF1KykXjIH9m41HuM/9L7137f0vgpJrRkWX9VmeJGwjDxrKR/S MvCdsptgD/9DvSTvHf2q9B/BH/tXP4GvvBf/D/Gv6Uei tAOHnNJplyM9xNHbm8bwen9MHJ2nsdu2YulSf OzKUf8hJPoiUcG5HGRb3q3xxDQIiZf6dvkoz VIy1 vFXT0/TQVnr7mRZ0VC41rWQK7jbo9F/Xp9BLw88c2fAMfFjS1MKU5SO/aYw6yyEj5zfGwBPzT0Ymfcg1 GnBSfafBKc0q1TF58MH2nTpzMYiPcrqEa/BP57qeFODHg/R62Lq8peA/ L88q9aTY638pzEJjQ nJlLwWLTELa8qonHue94zCINySbIei00dv/KVf2VfK0PvTV/7pJBLal0O/kNIvCRSG7gnB9nW5Lby/XOp0Bf7vvRRpg6UxRn6Zeree//S/kJFHRL/anXqlvLxCQiy0 JZZFLkkV8UTu8Bt8Tyuevau/TR2vDTL632XZCPtr eEofnREbiI/3ayr/EMtdp8MQDScq3xn9z8WeRl5a/ULtA7zKcqvMUBxIPya/0vp01/JvDvwYM19gI/BBSruHP2u8F/8H/tXP4Gvu3wH8aa7Dgx88uUmCb qCbfE7Z0r4c69IzGvuEtuwnHu9uIf5r439DTqe/m5sbu VjbFu/wA/wQ5kcaAzNmizvbzt8 eQnv2Le//5vmLe//U/Mj/3YX1iB8gd/8P8bzVLyddgkZtI9dO 73vVHVtz57Ge/jDa262/KrFPlcfdjH/s9yx3iEf395E/ B8tD tXVx7u5c6973Xfs/cRP vvpn37e5sv5v/e937TlkRgp/z796duiufsbv/Elx16y/d3vfs5i 7mf 3aPOfT TKrb5BPyxS//8lcN5QmellcnEBPEBByojwO//dtfGLXxso/y7dP70sCV riyppjT2IqeM3ic8uIX/83ZYzsez61tS NZHnvy9oMf/Hpfz9cUx5ptxYzEa6TfFd9LpMe/aQ U75/YMwsvzX/ap6lSUsSOlxHwTDL6ZYxnh4XEHHr5L11HSyf5S8JLT79PgT9VLC8ppzb8/IssvzfmwQdf6LlIXNPvjQnx85I0 nWcuX/qVv qLH9hlvs061fnecpszRAOWi5DeVId5I/frGW24Sn1oTb a58Af91jO8Q/T/x5pjf3R3NbOXbiNl 290v3W7yShNp em8alUkzzcnOLb1DDfzPw3/dD/mO6bmBeU88lB8DkWMW4j6ly3ESraDgOhV6ZkD8y42/jxNLn8sRfwiJS0dxJfnlINtKXGPNhH/WFC3X1lJix50 DVh5WQJN0ZcDBt4ncYOWUNK1dN81wkYp N2opDsC/vBAikVw5qf CBE9ZNEg1vc3xV/mcY6tFjLpV3larswPpzwAL 2jKLFqBPgf5n8sv5eSL KP M9xUYp JKZxW0lb3e5f8p6ypfsBKQKyfVJkkfbrH9LO6bN4CSWPxejHOeon19R3xKz/zz47iFk8fihtSzNTz7VpSSHZ91EQ4qyvHvHEAuIvCYxL2BEz/nPtSgnpwJ/4OQWALzM9hQe2Wbczn8M ehctNLjx0LOTR4IMFj6n0nWlwM/Qopo1E6fmlrjH3gTz QkA m5w7iz7n FL4g/unjf0pcUl2D CP qbhWYjnEfxYzaNUDjTNIdCMxY2qscYnwx4LeJVsW6qQAyLMDqT/g951d4t 5 s/9Dc/gpzHYlNCj/cLCD10vf6ziD/Jx3ry95gfhOewkbnI5cktCGs96k/6lff5BW8ds6h3BGj O/RMBTvUL1T/6oZa4voRo6OPIHP9992zpHPCn7/8hJG6pBp2BpfbKNucq GfOQ WmrzV2NBikwS0N qcG/HSelmTSwJUESd /teL3YbnkHPCnH0hcEqdY9yD iH8sbq0hX/B/vfznHxmlMCT3WRgkUUjOHD9XCOKlk1rQ49nbVOaaZuHJenkt/3nWHfuafETC29Qy1FNFpKnrOBZS3Ju6Nsd5KZ5KG337UlzVImaqY3rXnq8sFtN9dvO5c uRjAeNzTkf SHG1HXpWv7LurTGfeBP3/9BSFxjTVnA5tor25wL4Z85D5WbvqXY0SCExEUaoPmWRtAga85gMwAAIABJREFUlB4oSFjkX7 3hP8SlgF/ oHEJXGKdQ/ij/jH4tYa8gX/r N/aHY1vVPVJ1LwrDYWEnxbX/8thYgl9mlpLr3agcrnpb 8PJfGEqeualgDz6dsjM1/mklGvqQ/5sPUTD/mwZKx5zyntrS028dROeOT7actCadb hc7/qX7Cviva/9LjcfTniDyFxLiox04/7dp70caaQfSPmUHi/l OwLZGXM7JBmZtjuIhHY3B9lGRqQ4cdybpmnM3ufjQFpW/3R2kd30tzvIwCqneTHcmsOuvZfzaIQDbg87m2 btjNO9nNle8szhvjWlzVns4Kw9OFs7M6x1Ys3p39fZprmZ8w/ftML3lmL9Kvo2972LUMzC1hYHPl31fjn68Rs/EcO2dYJ4J8ZSNbOf A/va8qrv1foP2rJP5S8CHBhJeyPvrWT5umecw0zZP27yWv o659gNO14qAJDRZYei1X7Y2vfy1w ym4fzHTdO8z/698r//Vi9m6ZmDaP9n2v9tdfcjNLPxr6T jxzDJ4Af/V/3bL3F5 vZ s/1YMEthMQFnXlWViQOkrhDW5/IxZnxdXzM29uDMY0WFfn4aEwvHt4as2uMqxYZk4NsbHqq7XHfGBLQaCt0NFt8KI0uyOefo9k3Qt y7PZidPBbOm8bQCl0ac3vr0ex3h15ztqJif6Gv7H1Pz nyfPcJDMLmFLvh2J1u6zTecvxLYiHNRqRZib5fvXkpNAmL7S/P28Lv41M4/r47tnUO EMPkrXzH/i33r G638Z8bci30c/aV7TfMjc7WZ33X3gPtM88LSh7U/8gpz5d2vuaT5i7n9nd 6dT5tXNB8x//U/d8W2cz6qERL eKbXa1/ pGle/ryh7T95k7TneXP/K95n7nnr8NX3YYbX0 aB13zSfLTD9NFH3mGan/2/ug7G5/vlx1fh G rr/OhAX70fz5etOd8ddD/rLKG8b8PZ5j/wF93/ 9jzPXnICRe78PrcggKiUdXLJQlHXatENmfo2vVrEROo2udaWc5hTI2Kt2WOoReK1PFTqWFG2OVy ZKH9GuZMpZsDM1KHGMICV2usW7evk5mGOjynaPyLrCZ84qxDcbuAltHeE25/iWx8P3v/4Zd1kTLnvUD00v/3n80zSvad8jQC7lpNoPLgXFE1oSfrA/Gfwxvc2eAP/AgtfH6P8t/4N98/xqs/wvF/wM/ lLzwN12eSe/S46WU olnj/w/c N iDdJ8U47mf4dV f52W djbiPbf9bD4SAB//lz 8qfFVMP6b6 3GgIAf/d YFd2Zhdo/WvGlHtO8Rbpj6zTPV0H A3/d/b XpdefhJB4vQ vyyEkJNKsw93OVQO49bJLl3kGIpnQzTwczW70nw82NtchKu7usRAymDiVlss/7gzB1k46d4mQKJcaM20oR2dps0xoE82un/Y9FhHpEu2zS2xukcX5PxS7S2zVeKmu6aXj0o25/Svx08vbacYifaAl9CLp//y/ Fu7tEq fJ0eEOlBi2aI/PSvylitB7 0upZ9Gf9aMEucIfy11X/pF9oH/t3oQYJ8sqX dUn 0w9Nv/ATD9rZd/wewBe96O8uFgdf/SN/al7SLSlumi b13ZCH88CpP7nrfe0s/34PW/vvP8jprnntn/vG/0ARjP9XvPIN3pBUH54bEn8VGfW3P/r l/DcSj teNH 4/2X09UQf9XT/8fq/2DkBjLs6fmOyckyuXLtMiUfr5lsZDudX7O9cxIHM1cbA2rqbMdDwSH4Eyl5fLPMh39gM/u0a9QjV8UtOXppc50rV1S3S4NV7mNBtaX2KzzXPI4FLtLbJ3iSG9zYf6dxf/gbxkSCfkrdv/w73/bbUZ0s6KO5Vf8aEl1 86pj9olavp9TTn4FcLfx2zDO8A/PSMD9X JBylVedbW/slffTpx9TwhcXv4f/QDv2dFOfp4BPULoR daMjJX5q1X2m17xz8tHnro8aQyMfLfGn5cmntf 31XzF3k4fo/9D/TRG79voP/HWPf6bqxbXnISRe68Fr7z9LSDSBdyp6lkGTiNi/K9E1tKbONiQETaXl8o voScbr3rQMWpKvUMFkUYPhEJU5Jl36rnrJCFxzmbHhIUPQrGrwb X4icRkB4C 5fSP2rM/fcb 44oevm77x2Mzu8YQnDkpWUPP/xV 36rOx8x5qlfupuEXyH8C1OtyOyA/7wHqbm2aqqPGIIv2tDhZLcn0hK1r6H4o/0bP0jUFP9nPti h5B SOJlyH/ve1/w/pBEbTi1/zRD8MceafsG/xdeBcfBf UB4ZsC6r8ybpOHofZvk4AVqBB tP91t/ If93xV03FYocQEhdz5YUZhYREvVzZfmDFM uQiqZ8pOKjj5V5oc5GXbr6w9CD4FRaNv/oj6voY080pjD0l8oZI7QveaLTHCGRBsHjd4GMytM26uPekDQ7wdhp2/Sxx8QRXn2N9mFm/6bCzzNPHtt/wjTNp82PP2TMffTVye/9aDKYuOf/ l7UvyH3roG ae5n3mze9uH1K/ 93WsSN/6xjpYxWPIH517RYPgX9aSDSaO/rYQ4gRH/U1nvpPH0Gy9ePuh0zDH5SgffEhhieffNo80NzXv2uO6xO9SoDfP2fP2Y9SvMM88tE2zy9 9v Y/AAXmRaMv8arjzU279JOdZEHf3 FTkvQv9SKn/nz OPP2tdZ8NJgXjYc hjJq97QfrCLfkSifLgtpjhewn/Ev/NAafzvA7PdnWD93y7sHlkQv27v9XGfy7CD j9 Bhq8YxvIYcUX1fdKxv 9D3QbB/y9a4z2Te7xz2DZonsQEhd15xmZkdDHT9Z2ywKhWr5sxUNxLS9r1udl5dVpNn/5PsWZh40zYJR8KXWA8j2Bjfj6cSiNMAU749igbeMz2D6E1hX2pjG01w3Y5bJm/X47mdY NAz3uTMhp8vjztRnc2xnjfOfjd3G/VsO/jeapvllu SN3tFID7T/5YufdZs90bS1zeF3TWPfofUp0zQfMf/Dv2kfbJ/72M87dXmoExfEf3zLps7Mxn9TaMdgZvHb v960zT32T8W7T7zmf/HCtv0NVYSYWgmVtPQ32MdJ3/HkOBy333Pm5f373nzz ZyuvYRx1XXnzj9ZT/wZx2eJ 2WZhu3YlOLi4/tV2t7nHTt79gv5T76KH1Fl31D23ZZaytctV 0bf02pLHIZb/M2/md/C/fc6fTZH/dDshP619Oi78vrzj9669 sROVu/fNMu80/ne/ Wc6vrFvP2LeRD/O0HsE6QeaPhZPzbSh0/yiJcs/86Z/35VD/P9h8ftzHPw8ZKWaqscQcqWFTttK/IvDP24yN3Vmtv5vCu0YzCx jH8nxpJo/ TEken2uOznS/A/8EP6uLlY5AyExEXcuL5MZivb iAtajH8s6g7k2ZWe zWgJ/en0XiAr2TiwQIelh /eunH4BZmHnZy9prackdz7jh93LRLDD6twb8MSvElvDTUkoWoXgrvxLLHGAOEY/uvfcvO2GsfZcbcyfVlnjcCnNptue8ciCVD1DOfFu2hI/k 2qZcz/5k//Bto3UtnKdidnelJb3ltq/S3wL/OkfpC JU6x7EH/EPxa31pAv J e/xAS11AzIthYe2Wbcyn8M ehctNrj93a8dMXOOkBmAUj pInPSSHlubJh/If qG/ttfzF6jlA7Vcslcug6 zLGf8 yW9Tw4iBsXyU58ahF8W/3iWKgsg58RYxvvcfVke79uPRjw6tpFFahZkeKs/KnRdxJa9 9z4 8Raxjm35R8COKanbLk s 9P2Z5a98/lQqzrfQLfFE56V6HPb1RntP9Pab/Ojf y7MufG/Cnf5DMH/XBAsQf8R/YUN8e A/ p2Y9hMTUHi kvNobm7kwwD9zHio3vfbYbR0/Cx8f/3j7AC4FqVOFAf7qKIuN9CAvBUd6gD/lob3EWhCKv0/o84l85A/pVy2CpBB2 IM9smyf6MLvdWPRhd4RR/skSNf4LxT/GvwB/HiQqoHnUxjBf/B/ihs1nAf/wf8aeD6FMQf/GyqU/m5ubuyWj7Ft/QI/wA/gADgADqyLAx/72O8ZEpTe/e7nzNvf/ieGlvvRktdXvvKvLnq/2Ktf/V17P VBf29 85/bfClv/qOyqMy5v09/ nayr2W7Q3n823/7B32ZXPbb3vYtxz6ykWw VVhd4rrXve47IxvIDvI928nb97//GyM/PfXUFyf9gvq3rvqHeCFe4AA4AA6AA AAOAAObJsDmJE4Jetu/DxVbPyb9gD8M 2b0lNqjx3wz7dtcmYeL6GmWXgPPzy81 6UdzYuIcClysM3whh05fVkmz/Epe0svtEvg/z3/21Ra3iD/iv0Ven4oJ/Af/T XKFq8D/8H/LfL6VEw5 A8h8dTobOy6HGRbkwvhnzVFy7W19tgB//IDKVrmzEtneUvvz9PvNqOlt3Ip7tL7vnf5kRDKNtGWZjPSx2xq/Qf L8//NXEJ8Uf818TXpW0F/8H/pTm1pvzAf/B/TXxd2tYc/IeQuHQUV5JfDrKtxDXWTPhnTdFyba09dsCPgZRbI o6Av/B/7oY76IF/8F/lxF1HYH/4H9djHfRgv/gv8uI EcQEuP7uMgSam9s5oIC/8x5qNz02mMH/BhIlFs741sG/oP/8VlWbgngP/hfLjvjWwb g//xWVZuCeA/ J anRASU3u8kPJqb2zmwgD/zHmo3PTaYwf8GEiUWzvjWwb g//xWVZuCeA/ F8uO NbBv6D//FZVm4J4D/4n5qdEBJTe1yWd9wb 1nNozyp9vkafiP/4VZdYIw57Pz57Jv2vL1379xXe2PDzrg97EzTNGavYpDVP8e9tYnsor dL YMwBgzheG4b 9v89kbB2JXhsbNebX37IxTdMiuUJqwNcXubOzOtJV9on1Vqn BHwOJFPWs1DLA/xn 197 lUrcheya5f9C5ZSaDfDP1P9SA7eQXYg/4r8QlVaZDfgP/qcmLoTE1B7n8kjkI2WCto7CwxfQ9mhMszOGtcPbgzGNKwgaOrc7jPPh/GV2Yr/2xsa64vZgdruDOexLEhKPZt8IAY9slMcihiEMVuTSyld3L6fR1r3kaPa7g6DbzjT9BT67WJz0pQ kM2ubIx2Fun2nrBEfYhz4onJbLv8CPgYSPl7WcA/9D/K 9/dt LQjzH/i37gHEP9T bT36xiD iP/2WT6NEPxPz38IidN8TJNylZB4a8yuExqdfEiAVIKjQlN7ZSN19rBrxa6x4JOxM6bZIr141waN7P PPSpzCQA LLPKpwItDH26RbNxyfQ gXRln2SxLiLMf5PZZtq7Tv8CfviONw TLcg3G/7IsV3VXED/q/ b7l2D8V8Xky4wFfrT/lzFnG3eB/ D/Nph8GQrwH/y/jDmX3wUh8XLfLXOnIwB6srSzEHmJshIHaUkzrz2V dhZit1yZ14SrcSp2hsbWq7K4pxPUMvlH7uMVsVK2ioZIs87GOwsup3ZdUuj7TJllSfl49zTZWzL 5/v0PXZ2JC XHoTKc2yW9sfaD8XuHFvX6l/gx0AiVt1aQ77g/zT/a2//1sDfa20M8f/avNdwP/BP1/81xO9aGxF/xP9aDq35fvAf/E/NXwiJqT2uy5MCoE6jY/v wz29CK993yGLO/ZYCIsyH51ml0i7S6irbmysIDYIYT5BLZd/Tn7QC2FQabREfu95D6QPt6SgtUUvdaaZjiwodlw82WaZecT9UOxOtlX50PGVSivNv8CPgUTE6lV 81uD/NP9rb/ KJ 8CBob4v0D2xWcB/NP1v/jgLWAg4o/4L0Cj1WYB/oP/qckLITG1x3V5UgDUafShFXr/Yf PljJ3gqD CAvPPKQZiiMh0YzeoVh1Y0PL23jWndjyDEVydy7/ B70SMSStlk6hDCMhC7/7ENHHOs5JnfEcmYqT4iK7dLw9h2LJ9sss464H4rdybau2L/Aj4FExOpVfNbg/zT/a2//iifvAgaG L9A9sVnAfzT9b/44C1gIOKP C9Ao9VmAf6D/6nJCyExtcd1eWcJifTuQ3dmYZ dk48QHOkCKyyKj7ZkFMp6ewva8Qlq2RpjKwKKD5Xo4wm/uRjo3X7iQyoTebj32LXO7vuzrJgm3oPoCIlilqPOXx9P2BzrdDB22jZ9PGGU66uy/Qv8GEhM0LiK0 B/gP 6vdPHEwzZTPs3gW9Lp4P83xLQCSzAH6j/Ez7b0mnEH/HfEp/PxQL g//ncuba6yEkXuvBS 8n4Y9nEdotC31KLNTX8TsRdbmOkMjioShDfRm69sZGus99SGpTsvpHzYbj1exTS2jJ4hEG 4DI7zMUomJ3rTsjk4XLViAb0obl31zGkKZmSU7aLD2dZn82dpO2CnFUmbom/wI/BhKKvlUdgv8z/K 9/dt4bZjlP/Bv2gOI/0z7t no51tNVYpbwX/wvxQu5rAjB/8hJOaIdAFl5iBbAbBPNgH OdlVxV1Ye yAHwOp4iplQoPAf/A/Id2KKwr8B/ LI2VCg8B/8D8h3YorCvwH/1OTEkJiao8XUl7tjc1cGOCfOQ Vm1577IAfA4lya2d8y8B/8D8 y8otAfwH/8tlZ3zLwH/wPz7Lyi0B/Af/U7MTQmJqjxdSXu2NzVwY4J85D5WbXnvsgB8DiXJrZ3zLwH/wPz7Lyi0B/Af/y2VnfMvAf/A/PsvKLQH8B/9Ts7Mh0tHfzc2N3fIxtq1f4Af4ARwAB8ABcAAcAAfAAXAAHAAHwAFwABwAB8ABcAAceMZgRmJq6 baQ8oj8 DftAfhn2jelp9QeO Cvu21D/BH/0tvomPaB/ B/TH6Vnjf4D/6XztGY9oH/4H9MfpWedw7 Q0gsnRWR7MtBtkhQomQL/0Rxa5JMa48d8GMglaSiFVoI A/ F0rNJGaB/ B/EqIVWgj4D/4XSs0kZoH/4H8SoolCICQKZ9S0W3tjMxdr GfOQ Wm1x474MdAotzaGd8y8B/8j8 ycksA/8H/ctkZ3zLwH/yPz7JySwD/wf/U7ISQmNrjhZRXe2MzFwb4Z85D5abXHjvgx0Ci3NoZ3zLwH/yPz7JySwD/wf9y2RnfMvAf/I/PsnJLAP/B/9TshJCY2uOFlFd7YzMXBvhnzkPlptceO DHQKLc2hnfMvAf/I/PsnJLAP/B/3LZGd8y8B/8j8 ycksA/8H/1OyEkJja47K8496YpjHmKE qfb6GrqO/w626wBhz2Pnz2Xf32Hv3zn21NzbsjNvDzjRNY/YqBln9c9xbm8gu tv5Ys4AjDFTGI779v42n71Ls64MjZvzau/ZuXQL2RVKE7am2J2N3Zm2sk 0r0r1L/BjIJGinpVaBvg/w//a279SibuQXbP8X6icUrMB/pn6X2rgFrIL8Uf8F6LSKrMB/8H/1MSFkJja41weiXykTNBWiVh8iU1odsawdnh7MKZxBUFD53aHcT6c/5CZs1d7Y2OdcXswu93BHPYlCYlHs2 EgEc2ymMnilZF9GKwIpdWvrp7OY227iVHs98dBN12pukv8NnF4qQvTWDQNkc DnP7TFsnOMI 9EHhtFz BX4MJHy8rOUc B/if 3t3/ZrQZj/wL91DyD ofZv69E3BvFH/LfP8mmE4H96/kNInOZjmpSrhMRbY3ad0OjkcxwLjgpN7ZWN1NnDrhW7xoJPxs6YZov04l0bNLLPPytxCgM9LLLI pwIvDn24RbJxy/U9gHZlnGWzLCHOfpDbZ9m6Tv8Cf/qONA6TL8s1GP/LslzVXUH8qP b71 C8V8Vky8zFvjR/l/GnG3cBf6D/9tg8mUowH/w/zLmXH4XhMTLfbfMnY4A6MnSzkLkJcpqNiItaeZlrzIfO0uxW 7MS6KVOFV7Y0PLVVmc8wlqufxjl9GqWElbJUPkeQeDnUW3M7tuabRdpqzypHyce7qMbfl8n77Hz o7k5dKDUHmOzdL WPuh2J1j61r9C/wYSMSqW2vIF/yf5n/t7d8a HutjSH X5v3Gu4H/un6v4b4XWsj4o/4X8uhNd8P/oP/qfkLITG1x3V5UgDUaXRs33 4pxfhte9BZHHHHgthUeaj02jtNAmKYgl11Y2NFcQGIcwnqOXyz8kPeiEMKo0Cv/e8B9KHW1LQ2qKXOtNMRxYUOy6ebLPMPOJ KHYn26p86PhKpZXmX DHQCJi9So a/B/mv 1t3/Fk3cBA0P8XyD74rMA/un6X3zwFjAQ8Uf8F6DRarMA/8H/1OSFkJja47o8KQDqNPrQCr3/sP9HS5k7QVB/hIVnHtIMxZGQaEbvUKy6saHlbTzrTmx5hiK5O5d/fA96JGJJ2ywdQhhGQpd/9qEjjvUckztiOTOVJ0TFdml4 47Fk22WWUfcD8XuZFtX7F/gx0AiYvUqPmvwf5r/tbd/xZN3AQND/F8gKzAP7p l988BYwEPFH/Beg0WqzAP/B/9TkhZCY2uO6vLOExPHMwj47Jx8hONIFVlgUH23JKJT19ha04xPUsjXGVgQUHyrRxxN czHQu/3Eh1Qm8nDvsWud3fdnWTFNvAfRERLFLEedvz6esDnW6WDstG36eMIo11dl xf4MZCYoHEVp8H/AP91e6ePJxiymfZvAt WTgf5vyWgE1iAP1D/J3y2pdOIP K/JT6fiwX8B//P5cy110NIvNaDl95Pwh/PIrRbFvqUWKiv43ci6nIdIZHFQ1GGWNZMt9be2Ej3uQ9JbUpW/6jZcLyafWoJLVk8wmAfEPl9hkJU7K51Z2SycNkKZEPasPybyxjS1CzJSZulp9Psz8Zu0lYhjipT 1 Rf4MdAQtG3qkPwf4b/tbd/G68Ns/wH/k17APGfaf82HX0824H/4P/Gq3gQXg7 Q0gMhmS7iTnItiZvwj9ripZra 2xA34MpNwaUdcR A/ 18V4Fy34D/67jKjrCPwH/ tivIsW/Af/XUbEP4KQGN/HRZZQe2MzFxT4Z85D5abXHjvgx0Ci3NoZ3zLwH/yPz7JySwD/wf9y2RnfMvAf/I/PsnJLAP/B/9TshJCY2uOFlFd7YzMXBvhnzkPlptceO DHQKLc2hnfMvAf/I/PsnJLAP/B/3LZGd8y8B/8j8 ycksA/8H/1OxsiHT0d3NzY7d8jG3rF/gBfgAHwAFwABwAB8ABcAAcAAfAAXAAHAAHwAFwABwAB54xmJGYWrotpDwiP/5NewD mfZN6Sm1xw74627bEH/Ev/Q2OqZ94D/4H5NfpecN/oP/pXM0pn3gP/gfk1 l552D/xASS2dFJPtykC0SlCjZwj9R3Jok09pjB/wYSCWpaIUWAv6D/4VSM4lZ4D/4n4RohRYC/oP/hVIziVngP/ifhGiiEAiJwhk17dbe2MzFGv6Z81C56bXHDvgxkCi3dsa3DPwH/ OzrNwSwH/wv1x2xrcM/Af/47Os3BLAf/A/NTshJKb2eCHl1d7YzIUB/pnzULnptccO DGQKLd2xrcM/Af/47Os3BLAf/C/XHbGtwz8B//js6zcEsB/8D81OyEkpvZ4IeXV3tjMhQH mfNQuem1xw74MZAot3bGtwz8B//js6zcEsB/8L9cdsa3DPwH/ OzrNwSwH/wPzU7ISSm9rgs77g3pmmMOcqTap voevo73CrLjDGHHb fPbdPfbevXNf7Y0NO P2sDNN05i9ikFW/xz31iayi/52vpgzAGPMFIbjvr2/zWfv0qwrQ PmvNp7di7dQnaF0oStKXZnY3emrewT7atS/Qv8GEikqGellgH z/C/9vavVOIuZNcs/xcqp9RsgH m/pcauIXsQvwR/4WotMpswH/wPzVxISSm9jiXRyIfKRO0VSIWX2ITmp0xrB3eHoxpXEHQ0LndYZwP5z9k5uzV3thYZ9wezG53MI d9SULi0ewbIeCRjfLYiaJVEb0YrMilla/uXk6jrXvJ0ex3B0G3nWn6C3x2sTjpSxMYtM2Rj8PcPtPWCY6wD31QOC2Xf4EfAwkfL2s5B/6H F97 7f9WhDmP/Bv3QOIf6j923r0jUH8Ef/ts3waIfifnv8QEqf5mCblKiHx1phdJzQ6 RzHgqNCU3tlI3X2sGvFrrHgk7EzptkivXjXBo3s889KnMJAD4ss8qnAi0MfbpFs3HJ9D6BdGWfZ LEuIsx/k9lm2rtO/wJI43D5MtyDcb/sixXdVcQP r/5vuXYPxXxeTLjAV tP XMWcbd4H/4P82mHwZCvAf/L MOZffBSHxct8tc6cjAHqytLMQeYmymo1IS5p52avMx85S7JY785JoJU7V3tjQclUW53yCWi7/2GW0KlbSVskQed7BYGfR7cyuWxptlymrPCkf554uY1s 36fvsbMjebn0IFSeY7O0P9Z KHbn2LpW/wI/BhKx6tYa8gX/p/lfe/u3Bv5ea2OI/9fmvYb7gX 6/q8hftfaiPgj/tdyaM33g//gf2r QkhM7XFdnhQAdRod2/cf7ulFeO17EFncscdCWJT56DRaO02ColhCXXVjYwWxQQjzCWq5/HPyg14Ig0qjwO8974H04ZYUtLbopc4005EFxY6LJ9ssM4 4H4rdybYqHzq Umml Rf4MZCIWL2Kzxr8n Z/7e1f8eRdwMAQ/xfIvvgsgH 6/hcfvAUMRPwR/wVotNoswH/wPzV5ISSm9rguTwqAOo0 tELvP z/0VLmThDUH2HhmYc0Q3EkJJrROxSrbmxoeRvPuhNbnqFI7s7lH9 DHolY0jZLhxCGkdDln33oiGM9x SOWM5M5QlRsV0a3r5j8WSbZdYR90OxO9nWFfsX DGQiFi9is8a/J/mf 3tX/HkXcDAEP8XyL74LIB/uv4XH7wFDET8Ef8FaLTaLMB/8D81eSEkpva4Lu8sIXE8s7DPzslHCI50gRUWxUdbMgplvb0F7fgEtWyNsRUBxYdK9PGE31wM9G4/8SGViTzce wcSFp5AAAgAElEQVRaZ/f9WVZME 9BdIREMctR56 PJ2yOdToYO22bPp4wyvVV2f4FfgwkJmhcxWnwP8B/3d7p4wmGbKb9m8C3pdNB/m8J6AQW4A/U/wmfbek04o/4b4nP52IB/8H/czlz7fUQEq/14KX3k/DHswjtloU JRbq6/idiLpcR0hk8VCUIZY10621NzbSfe5DUpuS1T9qNhyvZp9aQksWjzDYB0R n6EQFbtr3RmZLFy2AtmQNiz/5jKGNDVLctJm6ek0 7Oxm7RViKPK1DX5F/gxkFD0reoQ/J/hf 3t38Zrwyz/gX/THkD8Z9q/TUcfz3bgP/i/8SoehJeD/xASgyHZbmIOsq3Jm/DPmqLl2lp77IAfAym3RtR1BP6D/3Ux3kUL/oP/LiPqOgL/wf 6GO iBf/Bf5cR8Y8gJMb3cZEl1N7YzAUF/pnzULnptccO DGQKLd2xrcM/Af/47Os3BLAf/C/XHbGtwz8B//js6zcEsB/8D81OyEkpvZ4IeXV3tjMhQH mfNQuem1xw74MZAot3bGtwz8B//js6zcEsB/8L9cdsa3DPwH/ OzrNwSwH/wPzU7GyId/d3c3NgtH2Pb gV gB/AAXAAHAAHwAFwABwAB8ABcAAcAAfAAXAAHAAHwIFnDGYkppZuCymPyI9/0x6Af6Z9U3pK7bED/rrbNsQf8S 9jY5pH/gP/sfkV l5g//gf kcjWkf A/ x RX6Xnn4D ExNJZEcm HGSLBCVKtvBPFLcmybT22AE/BlJJKlqhhYD/4H h1ExiFvgP/ichWqGFgP/gf6HUTGIW A/ JyGaKARConBGTbu1NzZzsYZ/5jxUbnrtsQN DCTKrZ3xLQP/wf/4LCu3BPAf/C XnfEtA//B//gsK7cE8B/8T81OCImpPV5IebU3NnNhgH/mPFRueu2xA34MJMqtnfEtA//B//gsK7cE8B/8L5ed8S0D/8H/ CwrtwTwH/xPzU4Iiak9Xkh5tTc2c2GAf Y8VG567bEDfgwkyq2d8S0D/8H/ CwrtwTwH/wvl53xLQP/wf/4LCu3BPAf/E/NTgiJqT0uyzvujWkaY47ypNrna g6 jvcqguMMYedP599d4 9d /cV3tjw864PexM0zRmr2KQ1T/HvbWJ7KK/nS/mDMAYM4XhuG/vb/PZuzTrytC4Oa/2np1Lt5BdoTRha4rd2didaSv7RPuqVP8CPwYSKepZqWWA/zP8r739K5W4C9k1y/ Fyik1G Cfqf lBm4huxB/xH8hKq0yG/Af/E9NXAiJqT3O5ZHIR8oEbZWIxZfYhGZnDGuHtwdjGlcQNHRudxjnw/kPmTl7tTc21hm3B7PbHcxhX5KQeDT7Rgh4ZKM8dqJoVUQvBityaeWru5fTaOtecjT73UHQbWea/gKfXSxO tIEBm1z5OMwt8 0dYIj7EMfFE7L5V/gx0DCx8tazoH/If7X3v5tvxaE Q/8W/cA4h9q/7YefWMQf8R/ yyfRgj p c/hMRpPqZJuUpIvDVm1wmNTj7HseCo0NRe2UidPexasWss GTsjGm2SC/etUEj /yzEqcw0MMii3wq8OLQh1skG7dc3wNoV8ZZNssS4uwHuX2Wrev0L/Cn70jjMPmyXIPxvyzLVd0VxI/6v/n JRj/VTH5MmOBH 3/ZczZxl3gP/i/DSZfhgL8B/8vY87ld0FIvNx3y9zpCICeLO0sRF6irGYj0pJmXvYq87GzFLvlzrwkWolTtTc2tFyVxTmfoJbLP 3YZrYqVtFUyRJ53MNhZdDuz65ZG22XKKk/Kx7mny9iWz/fpe zsSF4uPQiV59gs7Y 1H4rdObau1b/Aj4FErLq1hnzB/2n 197 rYG/19oY4v 1ea/hfuCfrv9riN 1NiL iP 1HFrz/eA/ J avxASU3tclycFQJ1Gx/b9h3t6EV77HkQWd yxEBZlPjqN1k6ToCiWUFfd2FhBbBDCfIJaLv c/KAXwqDSKPB7z3sgfbglBa0teqkzzXRkQbHj4sk2y8wj7odid7KtyoeOr1Raaf4FfgwkIlav4rMG/6f5X3v7Vzx5FzAwxP8Fsi8 C Cfrv/FB28BAxF/xH8BGq02C/Af/E9NXgiJqT2uy5MCoE6jD63Q w/7f7SUuRME9UdYeOYhzVAcCYlm9A7FqhsbWt7Gs 7Elmcokrtz cf3oEcilrTN0iGEYSR0 WcfOuJYzzG5I5YzU3lCVGyXhrfvWDzZZpl1xP1Q7E62dcX BX4MJCJWr KzBv n V97 1c8eRcwMMT/BbIvPgvgn67/xQdvAQMRf8R/ARqtNgvwH/xPTV4Iiak9rss7S0gczyzss3PyEYIjXWCFRfHRloxCWW9vQTs QS1bY2xFQPGhEn084TcXA73bT3xIZSIP9x671tl9f5YV08R7EB0hUcxy1Pnr4wmbY50Oxk7bpo8 njHJ9VbZ/gR8DiQkaV3Ea/A/wX7d3 niCIZtp/ybwbel0kP9bAjqBBfgD9X/CZ1s6jfgj/lvi87lYwH/w/1zOXHs9hMRrPXjp/ST88SxCu2WhT4mF jp J6Iu1xESWTwUZYhlzXRr7Y2NdJ/7kNSmZPWPmg3Hq9mnltCSxSMM9gGR32coRMXuWndGJguXrUA2pA3Lv7mMIU3Nkpy0WXo6zf5s7C ZtFeKoMnVN/gV DCQUfas6BP9n F97 7fx2jDLf DftAcQ/5n2b9PRx7Md A/ b7yKB Hl4D ExGBItpuYg2xr8ib8s6ZoubbWHjvgx0DKrRF1HYH/4H9djHfRgv/gv8uIuo7Af/C/Lsa7aMF/8N9lRPwjCInxfVxkCbU3NnNBgX/mPFRueu2xA34MJMqtnfEtA//B//gsK7cE8B/8L5ed8S0D/8H/ CwrtwTwH/xPzU4Iiak9Xkh5tTc2c2GAf Y8VG567bEDfgwkyq2d8S0D/8H/ CwrtwTwH/wvl53xLQP/wf/4LCu3BPAf/E/NzoZIR383Nzd2y8fYtn6BH AHcAAcAAfAAXAAHAAHwAFwABwAB8ABcAAcAAfAAXDgGYMZiaml20LKI/Lj37QH4J9p35SeUnvsgL/utg3xR/xLb6Nj2gf g/8x VV63uA/ F86R2PaB/6D/zH5VXreOfgPIbF0VkSyLwfZIkGJki38E8WtSTKtPXbAj4FUkopWaCHgP/hfKDWTmAX g/9JiFZoIeA/ F8oNZOYBf6D/0mIJgqBkCicUdNu7Y3NXKzhnzkPlZtee yAHwOJcmtnfMvAf/A/PsvKLQH8B//LZWd8y8B/8D8 y8otAfwH/1OzE0Jiao8XUl7tjc1cGOCfOQ Vm1577IAfA4lya2d8y8B/8D8 y8otAfwH/8tlZ3zLwH/wPz7Lyi0B/Af/U7MTQmJqjxdSXu2NzVwY4J85D5WbXnvsgB8DiXJrZ3zLwH/wPz7Lyi0B/Af/y2VnfMvAf/A/PsvKLQH8B/9TsxNCYmqPc3nHvTFN0/7tDnx2vJXX0fWH2 GaS9OMsV/oHjLa8N5xb5qmMfujwtidpzT620m/5vbPjG09Ennd7mAEM4yRaRpf6rTe4DQ7RXekId9L98jrzoltbu5KDL59iUvzUl4vr9sSfokx0n7 R/I EWWZbNH7J6xr5D/x2vDE17uh5LP20pfZP4gL/R POzce/Bxhvp j2Px7sPuei8aP o/3vnrl9z909iSVPttT/9QDj7eSo/xAS48UzkPPRmF48vDVmpwTC/s6jMc3O9ArR7UEcX5rWZp6DbD2sRDvHfWOa/dHQ1hUSj2bf7AZN9vZgdvI4qxgzb1vrvqPZ9w3srTnspBgayiN1WqJgi2LK5XbI9wKAuTS2bR7A j18kJZtq2wf/S U/2r 5cUdbV9H Xza2Qf9HHii3/UvTEwE/2v80TDu3FPR/dfd/5/LlsutztH8QEi L1bJ3HXbuTEPOnWYcugqYMftOdLw0rcs7B9kYVurtSEikXzuUX kaOSsxm39OsM3nv9vDbrA/lEfqNJ xkc9li90crpDvA/eeHNsuD AvdSAdCPKCScXGf0GMoayKxY/6P9vv uKK9u/Evr1zHvhfaPtfe/33Ve4I54rlfwSsviyLxV87/4G/7v7fV1kjnMtR/yEkRgjkeVl2MxL10lvKhARGJXjZc7QM99K0zrgcZDvPL8tdrYVEejDRQqLzsJLxV91TbBt7pp2R yFQJ5ZE6bWxr/DOlcjvk 2mvnB5bzgP4C32Q5ABF3pYa/8iwxLxY/6P9/v9kHsd9D 0WqDU/p2dhn4X2b7X3v9Z37G3pbK/9i4Of9S8dfOf Cvu//n hl7m6P Q0iMHdW5/H2CIN/jS6NzEBLZQydtty4k6g5KH5OT6BzNuEyddlKAFr4oR0N6CoSQ76fu1/foY7qPzhUxm3YKRHf FNt1Fvoefbwm/BpbrONS R8Lr863VPyncFdj0ffoY7qezqH D28IRvy3I6Rpvutj8H899V 3bbGOS63/sfDqfEvFf0rd1Vj0PfqYrqdz6P/Q/zF3SuU/2xd7mwM/hMTYUQ3lT6Jg/65Ez4U IZGXNl a1hWTg2wehElOnSIklrK02ddRatuk0 z1/bsS25RQHqnTpK2p9kvldsj3Pt cG1vOA/jLfJDm MTelhr/2Lg5/1Lxo/6PZyQs2bch/q0HwP8y2//a6z/Xz9jbUvkfGzfnXyr 2vkP/HX3/1w/Y29z1H8IibGjOpU/CYK8XmXqGufjKvanl FjK5emdWXlINsUzNjntZBo9MdV9HHGpc2n2Mb Ilx6ibZN03jksdyni Wx3F8qjY1NuC2W2yH/Kv9cFNsuD Av80FShTjaYbHxj4bYzbhY/Kj/7kfNtD9EGNH XdC3d/4D/wtt/zXf9fHW S/wxdwtlv8xQYu8i8Wv a6PBQa0/2j/z3627fhTLP8Fv2Pu5sAPITFmRKfytiJgY0wj//bd1fQ15sYYfmcifVRFXsfn6epL03IKZVM iXDedkbiU/ON/DIzvfhWpGlNN0dl7F0waRt99at7X5LthBsHQ9Pse9oQNybxpU7rgaXZyRq7OYiTvl8otqXX7drx z/FjgfSi b8AvrksisZfO/ Bf6JfRvu/yNgG/R2vxMoULyXMe1UDr6v4Ljj/6v7v5voToeyiZH/YeQGIrIhtNykG1N7oR/1hQt19baYwf8BQ8kXapGOUL8Ef8oxFpJpuA/ L8SqkYxE/wH/6MQayWZgv/g/0qoGsXMHPyHkBgllOVnmoNs5XtlsBD GXyxtr3aYwf8GEitrc4uaS/4D/4vyae15QX g/9r4 yS9oL/4P SfFpbXuA/ J asxASU3u8kPJqb2zmwgD/zHmo3PTaYwf8GEiUWzvjWwb g//xWVZuCeA/ F8uO NbBv6D//FZVm4J4D/4n5qdDZGO/m5ubuyWj7Ft/QI/wA/gADgADoAD4AA4AA6AA AAOAAOgAPgADgADoAD4MAzBjMSU0u3hZRH5Me/aQ/AP9O KT2l9tgBf91tG KP JfeRse0D/wH/2Pyq/S8wX/wv3SOxrQP/Af/Y/Kr9Lxz8B9CYumsiGRfDrJFghIlW/gniluTZFp77IAfA6kkFa3QQsB/8L9QaiYxC/wH/5MQrdBCwH/wv1BqJjEL/Af/kxBNFAIhUTijpt3aG5u5WMM/cx4qN7322AE/BhLl1s74loH/4H98lpVbAvgP/pfLzviWgf/gf3yWlVsC A/ p2YnhMTUHi kvNobm7kwwD9zHio3vfbYAT8GEuXWzviWgf/gf3yWlVsC A/ l8vO JaB/ B/fJaVWwL4D/6nZieExNQeL6S82hubuTDAP3MeKje99tgBPwYS5dbO JaB/ B/fJaVWwL4D/6Xy874loH/4H98lpVbAvgP/qdmJ4TE1B7n8o57Y5qm/dsd Ox4G7pOplFeh9vh/lCaMfYL3cPFG9477k3TNGZ/9GAMpGVtjGdi1yOR12kOybRzuBHjvt7gNDtZYzcHseMccZL drLOynvldbuDETXbGJnmyQP4MZCQVKptH/wvmP8zbVfPVXkd2j 0/z0xDPo/WTfW1v/LOEbaL7r9j4RZZls0/hnu9jjkdWj/0f73xED7X LzH4RESdBk 0djeuHn1pidEgF7O0LXHY1pdqZvYW4P4jiU1mZedGfT479u57hvTLM/GtpqITGURqXm88987FqvxOBGqOxL066L4SV354vdnLVHs292g95/ezA7edzffjT7fvB0aw47KTjO5wH8BQspfYzj7ZQb/3iYZc7l4p vuy0O1H 0f/zjEdp/9H9b6f9lKx1vv9z2Px5mmXO5 NH/YfyP559 7siGnv8gJMoWONf YefOJpyyQ15HM8e0OrbvBMlQWpd3uZ3NFPjLz/uERM5tKi2bf06IHdvubJfgRqjsS9McI9McZIvdHDz6lVXVWeLf5KzELr/bw2645oQ8gB9C4hwVt5wO/hfK/xPaLh8v0f6h/e/7yBM4hPpfaP33Ve4I54qNfwSsviyLxX9C3fXhQfuP9h/tf7cm7YQ6lKP Q0j0tVxJz3UzEn1Lbx071HUkHClRwrCYFErr8sxBNgdOwoMpsZBMmErL5p8TYjd23ULcCJV9adr Y2OhnssVuBhkNiLSQ6AySvPe3M1K4qp SB/DjQcpLpUpOgv9l8v UtmtMUbR/NCMP7X/LjFM4hPpfZv0f1 04Z0qNfxy041xLxX9K3R2jQfuP9h/9X n9P4TEccuV9oxPoPFZoK/Tx3QPnaN5s6G0Lu9SOxsf9GvPTYmFlO9UWjb/nBC7kT/0PfqYbqBzc9yIcd/I2PgnssVuBtolAyl9jz6mIulc/4td1mX5YQecYrvOQd jj9eEX2OLdVwq/2Ph1fmWiv8U7mos h59TNfTOdT/4S2yiH ZQtIp3AX/XQ9on njNdV/F1m8o1LrfzzEbs6l4j Fuy6Stm TP76fkgfwo/3XPCrh BTuajv1PfqYrqdzucd/EBJ15FIek3DTvysxULDvOp/ow0ubQ2ldMaU2tgEvXJw0JRZShlNp2fxzQuwcRyzJjVDZl6Y5xqY5yBa7GXi ToD4JzsBmYW9vn9XYptySh7AX ZASsY25n6p8Y JWeZdKv5T6q7Egfq/Mw3av/412MSNUzgE/pfZ/p8Suy3Xf4kt5n6p/I JWeZdKv7a Q/84xVZeP7ZxvMfhETZAqfcJ9GP56uGyp26zvm4ih1hDh9bCaV1ZZXa2YRccWnalFhI U2lZfPPCbHr/bA0N0JlX5rWG5tuJ1vs5iDql vqY3E/8VL Etsn6Xv0ccEzEo22VR/3INt6uTn8Al/M3WL5HxO0yLtY/Jrv lhgQP1H 7e59k/zXR D/70HNln/e3Rxd4pt/ PC7nMvFr u7/q4R7DR8Z/Gq4 Bv/fAJts/HW993KNfH/8hJIrgJdu1okxjTCP/9l3x9HXcxhh6Z2LwOquCuXnI9yzSxzFk/jKtZLFhwSDYxqhpTNP/DV MCqWRCVk748nYJeDGZNnX8W3BsM5mlTV2c9bRy3J7Pg7v/qAKv2 6Y9vBSN7S/t42CTb7yTzawoG/zBkpc9RYKr3o C8FMpBP0fgn6y7qP9o/tP/2t3X0f2YnxgjteGEj/X g3V4qqej2fymQgXyKxo/ D N/0bYNc6kw/lnz AdCYqBB3nJS0Z1NAY6HfwoIwoUm1B474IeQeGHV2cRt4D/4vwkiXwgC/Af/L6TOJm4D/8H/TRD5QhDgP/h/IXUuvg1C4sWuW/eNtTc2c9GDf Y8VG567bEDfgwkyq2d8S0D/8H/ CwrtwTwH/wvl53xLQP/wf/4LCu3BPAf/E/NTgiJqT1eSHm1NzZzYYB/5jxUbnrtsQN DCTKrZ3xLQP/wf/4LCu3BPAf/C XnfEtA//B//gsK7cE8B/8T83OhkhHfzc3N3bLx9i2foEf4AdwABwAB8ABcAAcAAfAAXAAHAAHwAFwABwAB8ABcOAZgxmJqa XbQsoj8uPftAfgn2nflJ5Se yAv 62DfFH/Etvo2PaB/6D/zH5VXre4D/4XzpHY9oH/oP/MflVet45 A8hsXRWRLIvB9kiQYmSLfwTxa1JMq09dsCPgVSSilZoIeA/ F8oNZOYBf6D/0mIVmgh4D/4Xyg1k5gF/oP/SYgmCoGQKJxR027tjc1crOGfOQ Vm1577IAfA4lya2d8y8B/8D8 y8otAfwH/8tlZ3zLwH/wPz7Lyi0B/Af/U7MTQmJqjxdSXu2NzVwY4J85D5WbXnvsgB8DiXJrZ3zLwH/wPz7Lyi0B/Af/y2VnfMvAf/A/PsvKLQH8B/9TsxNCYmqPF1Je7Y3NXBjgnzkPlZtee yAHwOJcmtnfMvAf/A/PsvKLQH8B//LZWd8y8B/8D8 y8otAfwH/1OzE0Jiao9zeV9/zvzSJ27bv88 b57n82r7/Be Olz3ia ap/9MXCDz MSt Xdf E9tojrflvOcuRW3VtPYHPemaRqzPwrw5tYcdo09T2n2z73AfsFc3pF0v7OZbdsdZOSUJRfguz3s BPadcbKfK9tbnjFm7j5ldszDWW6fY6sXb5g/uf0L/BhIxKxfpecN/s/wH 2f6P8as7X FfwH/0tvo2PaN8v/mIUXkPcsfrT/aP/5ubdB/4f fwF9gdu9m5sb3sU2ugf wvx6Lx7 J/P0Z4UI6JQtrzPGiopP/UV3xV YX5fC4p89b/6dPJb5kLDY39cmzHY28v6V7h/3jWn2R0NbVydshSD3nAsyn3 OZt8Ice/2YHbyWJh5Gb6j2e8OvahsRa/eEb6y94Y12OnyfPcJDMLmFLvh2J1u6zTeEH/y xf4Zx4kU5AwYxnh Gc0LFHRYfyo/1vvXxD/UPsH/tfN/0SNcMZiwvU/o2GJig7jR/2vu/4j/oi/eDZfSF/AjMREjXuoGBII 9mEgQtvnxKCo0ccdNL7fFqh8te/3p wO HOxr127UerEhLp18Je2Gs9T/aHfjW5BB/H1M3b18kMQqK8xzHxAps5rxjbILcvsHVt/gX 0IN0DMaVlWcw/mWZGsWaIH7U/833L4h/oP0D/ vmf5QWt6xMg/W/LFOjWBPEj/pfd/1H/BF/5 GdFhNery9ASIzSlJ TqV/o4xycpc1iVqE7O7G92itIkuDYz37kXE3epbuDGUn2poQgXjpMW1W3svnHnSHYuofOXSIkTuFzlt 5q4PYXCl72PRYRySLtz0tsjhn40EDqEls1XuNZGi/dmNu/wB94kI5JvELyDsW/EBOjmhHCj/q/Gw2kySdb6l8Q/ n2D/yvm/9RG95CMg/V/0JMjGpGCD/qf931H/FH/PVEpSXGfxASozbp85n7BMGpu y1nSjou28sJE6LlKHOZqr8tZ4fC0EKCf1K07iiWS7/LNPQz PjK2x5eqkz YIFRamQdTdpf15iM5cfYxuK3SW2arwjmz384Wty Bf4px kOS5b3obiv2XcjC2EH/V/iYE0e7rbov0bjR/YQ2j/d6ZJPL5A/Uf/x/Wvxi34P81/9P/o/68X0lSrgvGPgZCoOJHyUAqDp5U7vBfRJySOljbbj664H1nhckKdDV zle2sEGTUkl6Tb8amr6Mj 8 bMaIjN8Y3XCHSqEEUg36eeae1RO3PS2weyl9 L8TtS2zVeMcWCx OEkVaIv8C//RAchSeDZ4IxX DcEeQQvhR/8cPElvrXxD/6fYP/K b/6PGcoMnQvV/g3BHkEL4Uf/rrv IP KvhdQlxn8QEkfNcJoTJPrpD6CMStbvQZTCoP64ij42xoyERVFAqLMRl21id1YI8vyikM0/ uWn tgTkbPwEVapDErsI6GLRLDxsu9RedpGfeyxOeapYOy0bfrYY9gIr75G zCzf4F/ kFah26Lx8H4bxGwwhTEr u7PlZ50SHq/7gPcNyE9m YkUi QPs/0ENzw/mhMs74AvUf/d9AwPr2wP8A/3V/r489dEH/j/5fdukjiug Tl6s07ba/7FT8NVm9kSCrRX9bs0vfUL 8cxBmnV4a9qPo7RLk4fr JrORissDnk4H1SxZajrBbRgZyOuW/MudQDyPYFN//XjdgA7pLnLmglzVv/YxmewfWiX3IH3ZfjaLw5PYdd5ypmQOm3wp33adnw92JyeQbOx27h/gT8wkExPx QlzsY/uUVpC5zFj/o/0VZvo39B/GfaP/C/bv6nbY6TlzZb/5NblLbAWfyo/3XXf8Qf8W W1RcwIzFtG19MabOdTTGW5jEE/snj9yVKrT12wD/zIL0EyQrOA/FH/AumZ3TTwH/wPzrJCi4A/Af/C6ZndNPAf/A/OskKLiAH/yEkFkyImKblIFtMPEvnDf8s7dF0 dUeO DHQCpdbSuvJPAf/C PleksAv/B/3RsK68k8B/8L4 V6SwC/8H/dGxrS4KQmNrjhZRXe2MzFwb4Z85D5abXHjvgx0Ci3NoZ3zLwH/yPz7JySwD/wf9y2RnfMvAf/I/PsnJLAP/B/9TsbIh09EfvSOR9bFufwA/wAzgADoAD4AA4AA6AA AAOAAOgAPgADgADoAD4AA40HIAMxJTS7eFlEcVAP mPQD/TPum9JTaYwf8dbdtiD/iX3obHdM 8B/8j8mv0vMG/8H/0jka0z7wH/yPya/S887BfwiJpbMikn05yBYJSpRs4Z8obk2Sae2xA34MpJJUtEILAf/B/0KpmcQs8B/8T0K0QgsB/8H/QqmZxCzwH/xPQjRRCIRE4YyadmtvbOZiDf/Meajc9NpjB/wYSJRbO NbBv6D//FZVm4J4D/4Xy4741sG/oP/8VlWbgngP/ifmp0QElN7vJDyam9s5sIA/8x5qNz02mMH/BhIlFs741sG/oP/8VlWbgngP/hfLjvjWwb g//xWVZuCeA/ J anRASU3u8kPJqb2zmwgD/zHmo3PTaYwf8GEiUW7Xvji4AAArySURBVDvjWwb g//xWVZuCeA/ F8uO NbBv6D//FZVm4J4D/4n5qdEBJTe5zLO 6NaZr2b3fgs PtYTdc1 yMuRWXyDwor0OXqM/bcvbiRmO/0O2c2OrBcW apjH7owR4aw67xp6nNPvnXpDXP53NbNuO4yoh8P4F G4PO4F919PGZjlXtrc8Y8zcfWxvgu1sR3qOrV68Yf7k9i/wYyCRoJoVWwT4P8N/tH i/2vM1vpX8B/8L7ZxTmDYLP8T2JCziFn8aP/R/vNzb4P D/2/FJVUy3Xq8y/fdnNzw7vYRvfA0ZhePLw1ZidEQKdseZ0xhkTFXvA6GiOFxduDeyzzIWGxv69NmO1s5P0r3T/uG9Psj4a2LvxWCHLPuSDz edo9o0Q924PZiePhZmX4Tua/e7Q69FW9Ood4St7b1iDnS7Pd5/AIGxOsRuO3em2TuMN8Se/f4F/5kEyBQkzlhGOf0bDEhUdxo/6v/X BfEPtX/gf938T9QIZywmXP8zGpao6DB 1P 66z/ij/iLZ/OF9AXMSEzUuAeLIYEwNOuMb94LwdEjDhqZzveQZERCJatB3flwZ9PfvImdVQmJ9AtAL y17if7Q7 aXIKPA vm7etkBiFR3uOYeIHNnFeMbZDbF9i6Nv8Cf hBOgbjysozGP yTI1iTRA/6v/m xfEP9D gf918z9Ki1tWpsH6X5apUawJ4kf9r7v I/6Iv/PwTosJr9cXICRGacrPydQv9PU5yKXNkgDO7MTuap8gSYJjP/uxzzXv0t3BjCR7U0IQLx2mrXQtGRXsjCNa7c4QbAuic5cIiVP4nKW3Grj9hYKXfY9FRLJI /MSmyO6MBi7S2zVeOn9AnppvHRjbv GuFs7/pi8KyXvUPxLsTGmHSH8tfMf HejBwnyyZb6V/B/Wkitnf8x291S8g7xvxQbY9oRwl87/4Ef/Z eqIP //rxD4TEmC36KXn7BMGphaFgV9942ExGmRMtTZTBW/1vNjIUghoV9pGlc0y WfZTq6eXx8hS1PL3UmX7CgKBWy7ibtz0ts5vJjbEOxu8RWjXdks4c/fE0O/wL/9IMkx2XL21D8t4ybsYXwo/4v8SDBnu62aP9G4wf2ENr/nWkSjy9Q/9H/cf2rcQv T/Mf/T/6/ uFRNWqYPxjICQqTiQ9lMLgSQWL9yL6hES9tNl dMX9yAoXE ps JqtbGeFIKOW9BY2I5HsP2/GhI7cGN9whUijBlEM nnmndYStT99nfOczUP5yFuH2JrRrv2GLhw1GiSEvkX CfHkiOwrPBE6H4bxDuCFIIP r/ EFirq1G zdeseCSTrTxbgLN3x/eeYz2P8n4AvUf/d oGlZ0Avyf5j/6f/T/WkjE Od6fQFCYq4OhkQ/rdBoW/R7EKUwqD uoo8pLy0sivxDnY24bBO7sw9Cnl8UsvlHv/xUH3sichY wip5J7GPHnToIWj8EDUqT9uojz02xzwVjJ22TR97DBvh1ddoH2b2L/BPDyR16LZ4HIz/FgErTEH8ur7rY5UXHaL j/sAx01o/4YZieQLtP8DPTQ3nB8q44wvUP/R/w0ErG8P/A/wX/f3 thDF/T/6P9llz6iiO7j5MU6bav9HzsFX21mTyTYWtGvMaaRfzxzkGYd8sdRuqXJ/XV8TWejFRZFHvKDKrYMdb2AFuxsxHVr3qUOQL4nsOm/ftwOYIc0d1kzYc7qH9v4DLYP7ZI78L4Mn36/n4td5ylnQuq0wZ/2advx9WBzegbNxm7j/gX wEAyPR2Tlzgb/ QWpS1wFj/q/0RbvY3 5f9v72yQ44RhMMq5OBDn2dNwmT2MOw6LYwyLnRSJL vXmU4wBlk/TzKotCX lfoH/33z71uO3Ver5r 7Rr4LVu0n//vOf JP/Idr wt8kehb42VWq242Mpreowj ucfvV6zae ywv/IifQVkwjKIP/EXxtNcNfiHf3PIhBeAf/gXxtNcNfiHf3PIhBe4g38aicJAWKp2B2yW9lwtG/9c7VE/eb3HDvt5kPLLNr2V4B/ 9aj00wj 4d PNr2V4B/ 9aj00wj 4d PtmUlGoneHhdZr/diUwsD/ql5SHe 99hhPw8Sutlprxn8w789ZborwD/869Jprxn8w789ZborwD/8e9M5ROji7/hvJK7H/Fx8gh/wAwzAAAzAAAzAAAzAAAzAAAzAAAzAAAzAAAwsDPBFonfrVmS9mAD8eu8B/PPeN ozvccO /uubcSf KvXaEv94B/ LflSlw3/8K/OqKV 8A//lnypy76DfxqJ6lQY6XcHbEammIjFPyZudRHae ywnwcpl0QTXQT 4V8UTRe14B/ XUATXQT 4V8UTRe14B/ XUDLFqGRmDmjp8Pei00t1vin5iHd d5jh/08SOhmp71m8A//9pTprgD/8K9Lp71m8A//9pTprgD/8O9NJ41Eb4 LrNd7samFAf/UPKQ733vssJ8HCd3stNcM/uHfnjLdFeAf/nXptNcM/uHfnjLdFeAf/r3ppJHo7XGR9XovNrUw4J ah3Tne48d9vMgoZud9prBP/zbU6a7AvzDvy6d9prBP/zbU6a7AvzDvzedNBK9Pb6uN08hDMPye3ysZ9//fIzLtXN2SS4jyno8vyfP5kL4 h 6vy/ 4KN5CsMwhCn3WzT3dT7ODeMjZJ77csatxbgSuxSt/LqSoXzuJ2xY3JcU9jm4NXY1E3PuhiGMec7m9 bXlXzmcwcysJ8HiRyl3o7hX5j/Su1KrObXUf 2zye5b6j/uz2U/BfO/5TgdgfS8bczO0mWtr9Su5IR XXUf p/AqN4d2f/k9j/aCTmgLodzyGkxs8zhLFoApZ6PB/L9dMQQmqIzSEMY0gVJl6Txmdzi3Dpzaa0/5fjeRrCMM0h/tw2Eucwpc3pGR7jvqFzn3/qsVvcccbQmQzvuV8G7z9uuy92NaXnMA3jd7// QhjPk63n/FZl4H9vEgllDo8gH9V/uu1a8GV vfaTuQ/iH/w7LfjJZl/ koumBrv312rU4hvpP/V8/7infz sMwb///kcj0bSkNwqPXxuzIpdgrHV8MwbyTGL8e23bEQ4nyUczb3Ukk32Rp99oPL9o3E7c3PxyjR1f/SqiF2W 1fo5yhMxnec4fK2p6UZTv KWuRs5HNt18lvty04bNBBvb7b6S2RP9Mumz8f2bGr6 Wtb8hd4 MJv z/bnBh8RftP41xA7 9x74mPzfm2ZyRjb/TazdC5W1n/zn Z/3n03Cfsr7H43ETVjvGLy SExfGhY65A2ivJEYzxdJGdZrz Ze4mU3m8L8K4bnjcTlTzxKV97mn4bY7X1SMHQmw3tur6z5mdtiV7EsvhCUjcTNS8Lh/Vs W2Rgv iL9GF8rz pGv/rLT2WqGp/S 7uLSL/498YWPfnFh8Sf8361xI7 C898Dn5X1pmNVbNfyt7S7mq9pP/PP/z/rNt9MScOP Q5G/UfxqJZRX2Hh81dlYdvv668rSOli8OVw6P7ovn4heJZ3Mvaaqbzbex1x2dNRKPNre48m3 aYjdzjPlPeU43hDP1diwuG nrP2J22JXMe2ItdpGUt5TjuOSpQzs13yRruBx2bRq/C8zsCJI1f6W3C1NK 8px/F68n/7ME78NetfC7vwv/VA6bNy/Jfyf2uZ3Ug1/ 0s3kpWtb F3a0ly96WN59aZGA/9b/kSGHcwm6pZ3lPOY7Xx3N5M/IO/v8BAVDmdtl1K4QAAAAASUVORK5CYII=

SamT
05-25-2021, 01:13 PM
Do the first three rows (Days 10,11,4) by hand and show us the result. Include all columns L to W. If you use the Go Advanced button, you can upload a workbook here.

rsrasc
05-25-2021, 03:11 PM
Hi Sam,

I jus did a quick edit to my initial post by including a sample copy.

SamT
05-25-2021, 08:36 PM
What a nightmare of a spreadsheet. Obviously, you have to rewrite the entire sheet every month. AND, the missing weekend columns makes it very difficult to code for an a monthly basis.

Are you required to use this format, or are you open for suggestions? I think a simpler Subscription Style spreadsheet would work for a full year at a time. It would basically only have columns for StartDate, EndDate, WeeklyRate and the 12 monthly charges columns. The errors you are tracking in column ("AR") are due to computer rounding issues of dealing with very tiny Real Numbers, which can be eliminated by using Currency Types where appropriate.

rsrasc
05-25-2021, 09:27 PM
Hi Sam,

I agreed with you, it's a nightmare. I'll be happy if we take the the weekend columns, and would consider using only the Mon thru Fri option. I'm not required to use this format but I'm open for suggestions.

Last night, after doing some search around, I found the following coding that somehow do part of what I need but I can't make it to work the way I want it. Maybe with some modification it may work.

Thank you for your time.




Sub Autofill_2()


Dim lr As Long


lr = ActiveSheet.UsedRange.Rows.Count


On Error Resume Next


Range("A5:F" & lr).SpecialCells(xlCellTypeBlanks).FormulaR1C1 = "=R[-1]C"


Range("A5:F" & lr).Value = Range("A5:A32" & lr).Value


End Sub

macropod
05-26-2021, 01:42 AM
rsrasc: It is about time you started giving your threads meaningful titles. Kindly read 'How do I post a question?' in: How to Use Our Site (vbaexpress.com) (http://www.vbaexpress.com/forum/faq.php?faq=new_faq_item#faq_posthelp_faq_item)

rsrasc
05-26-2021, 03:40 AM
Hello Macropod (Paul)--long time I don't see a post from you. Lately I have been out of the forums so my postings are not that many anymore.

Most of the time I come here when I need assistance.

Good point!

For sure I will read the guidance on "How do I post a question".

To be honest I have never read any guidance on posting (of course, I know the basics) but I will try to make it better next time.

Thank you and cheers from Germany!!!

macropod
05-26-2021, 03:52 AM
Hello Macropod (Paul)--long time I don't see a post from you.
You can't have been looking very hard, then...

SamT
05-28-2021, 09:58 PM
Here's what I had in mind. Note that the charges are screwy because the Dates are screwy, I just made up dates without a calendar in mind so weekends are only kinda sorta accounted for. If you enter proper Start and End Dates, the charges should be accurate. the code doesn't actually count or charge for weekends. Note the formula in the Monthly Charges cells on the sheet.

The code:
Option Explicit

Private Sub ReRun()
'For trouble shooting purposes only
Application.Calculate
End Sub

Function MonthlyCharge(DailyRate As Double, StartDate As Date, EndDate As Date, ThisMonth As Date) As Currency
'ThisMonth Date is first day of month
Dim StartDay As Date, EndDay As Date
Dim NumDays As Byte, DayNum As Byte, ChargebleDays As Byte
Dim WsF As Object
Set WsF = Application.WorksheetFunction

'Is Start to End in this month?
If EndDate < ThisMonth Or StartDate >= DateAdd("m", 1, ThisMonth) Then 'DateAdd() = First Day next month
MonthlyCharge = 0
Exit Function 'No Days in this month
End If

'Yes, some Time is in This month
StartDay = WsF.Max(StartDate, ThisMonth)
EndDay = WsF.Min(EndDate, DateAdd("m", 1, ThisMonth) - 1) 'DateAdd() = LastDay of this month
NumDays = DateDiff("d", StartDay, EndDay) 'Doesn't count first day

For DayNum = 0 To NumDays 'Count the first day
'Only count Weekdays. If no count Holidays, must use external Holiday Function
If Weekday(DateAdd("d", DayNum, StartDay)) < vbSaturday _
And Weekday(DateAdd("d", DayNum, StartDay)) > vbSunday Then _
ChargebleDays = ChargebleDays + 1
Next
MonthlyCharge = DailyRate * ChargebleDays
End Function


THe Example: Attached...

rsrasc
05-29-2021, 07:01 AM
Hi Sam,

I want to thank you for your assistance and cooperation. Also, I appreciate your taking the time to get it done.

It's working great!

Again, my thanks and appreciation.

Regards,
rsrasc