符合含义
> (重新生成或清空后添加)
$ ls -l >test22.log
>>(追加)
$ ls -l >>test22.log
 
实例1
$ find . -name python -print   ##其中.表示当前目录
 $ find . -name python -print > python.log  #将查找到的内容追加到文件中
 实例2
#!/bin/bash
echo "请输入一个关键字:"
read v1 export v1 echo -e "\n"
echo "你输入的关键字是$v1" find /home/ -name "$v1" -print >baidu.log >errs.log echo "你的查询结果如下:"
cat baidu.log v2=`cat baidu.log|wc -l` #特别注意这里统计行数时是反引号不是单引号。或者 v2=$(cat baidu.log|wc -l)
echo -e "\n"
echo -e "\t""共$v2条数据"

运行结果如下

aaarticlea/png;base64,iVBORw0KGgoAAAANSUhEUgAABLIAAAGaCAIAAACUuf1SAAAgAElEQVR4nO29/+8tx3nfd/6n8y8EAQq0aF0gRYOsbbh2ZEuWRIkiKVL6IQc1EMBA8kNTBGgLB2mxbpoUTVw7sipathwlPpZl2aYsyYqsL6RI6pCX5P3Oe8l7ecmd/rDny86X55ln9ss5e855vXBwcT+7OzPPPDOzO+99ZncXbkfTNF/84hcXElW92dSVuDvDcrUeknw2VPVms14te+0dieVqPX0hM+Ga6goAAAAAMBqPHj16/fXX33zzzVu3bt3pcPfu3fbfPffu3bt///6iRBa2FKq73gnnyAxk4dGKOTmXci8BAAAAAODITCYLYbGYiSwEAAAAAABQQBYCAAAAAABcNchCAAAAAACAqwZZCAAAAAAAcNUgCwEAAAAAAK6aYln4kXMfOfehcx81zQvIQgAAAAAAgDOnWBZ+4Fz7e9I0z+uysKpHfc3mWb63c7labwI6ddD3DuAsfQUAAAAAACehWBY+dO6hcw+ce9w0z52bLJxOLUk569/Sm+xLe8hCAAAAAACwUiwLbzvX/t5vms9JstCLgo0le5CFw80BAAAAAAAIKZaFbzjX/t5tms8kZeFe62yjhWVBw6reCIpyK3UOBxRk6+Uq6FVNy+pWKTlPKgun8RUAAAAAAFwXxbLwFefa392m+VRKFh6kTvki0jDI5eWw1Thb+bNcrcvFjhxEq+qusor/Eq3K5Bw+PehrQH1vWV3G9hUAAAAAAFwJxbLwbz9y7e/2R82vfyEVLdzrlWJZqC999LVar0ibVEC8vbPFtCBTkYUdG6t6E75yRtnbq8BOVsN8BQAAAAAAV0KxLPzeI/fdR+67j9w7T5pfez75bOEhBlYoC7cJBf0Sh8eKCxCSLFfraHNV7wzRrSo0ZrRFpZP7CgAAAAAAroRiWfhXD9xfvev+8l1343HzsWeVN5F2FkgWCBJ/WWXqeTnxbwNCkuTzgd3iFatKjRnxYcNpfQUAAAAAAFdCsSz8s1vuGzfdN266N95rfvlzhg9U9H2wrdVqwRrL40ULrVaVGjPJO2im8BUAAAAAAFwJxbLw6xv3xz9zX3vdvXa/+cWnLN8tLBBdYXpPy0wnCzsrRvvmcfRFpHr5yEIAAAAAALBSLAu/8iP3+z9wX/rP7uVbzT/4RPpNpPt3taxXyxJFUtUlEa8eUkeOXAbvaFksqrrzyhnFKj1nP214lL7Xty3xyYxpfQUAAAAAAFdCsSz8dy89+L+/dfff/Pmdv33z/f/uV55NZuo/9FYkR7qP+QUJR5E6XdO07xb6OStW5XIOvkGhlikECrWFq1P6CgAAAAAAroJiWVj/xzf+5dde/Rd/+Mr3Xr33c7/4aS3v8u8WAgAAAAAAwJEploX/2//3g3/+u9/5Z7/z7Zd+/PZ/9fd/TcsbWQgAAAAAADB7imXh//Rv/+Kf/F/r3/zt//St/7z5L/7e/3Bq+wEAAAAAAGAQxbLwn/yrP/nH//sf/cZv/cE3v/fq3/25Xzi1/QAAAAAAADCIYln4m/V/+B9/68V/9L/8/je+88rf+a/7fEsBAAAAAAAA5kO5LPztr//Gb734j/7XL3/jO6/8nf8GWQgAAAAAAHDeFMvCf/qv//Qf/x9f+41/8dVvfu/Vv/vfsogUAAAAAADgvCmWhf/z//vSP/033/jN//NPtFfOVCvxFaTtl/rSH+jrHpM6wpJ2LlR1+ScbhU/ZaxVertZKKcvV2u6vooMBAAAAAOBiKP9AxYt/+89/7zv/7HdeeulHb/2Xf/9XhWxliRFIvuVqHR22XK03dV2lNq9Xq9qiXA6fiT+Nzlmu1pvNel2XfaCjTdVNU9WbTV3LVV6u1qr0LPxGCMoQAAAAAOAKKZaFv/0nb/7Lr736W199+buv3v25X/iUmPE+zHVQaCnWq2UoXTpSp6r3IuUgJzsbDZQdPQ5VvVV3KdFrTLpY5EXf/oDlar2u67Xn1MjVkSVKTFc0CQAAAAAALo5iWfj//NW7//qbt//VN975wRsP/94vP11cYCdaGC6A3AvIvcSpq0VV11Uk7gqUytEDYEGBVd1XUy1XdRQ49OtR1etVtY0wLqtquUg4qi28qjf1arXqJtfleiAol35aAAAAAAC4IIpl4Ze+/9Hvfvfx7/z1+z96+8l//6vP20pJxK7aoNYi0hutrumG2do1pXWYttqLSE11bcXP0XThQbxVVbcCopFp1wRV3FWhqr31t/Ea1VYGSu7uLMCt6qxXqnpTV1W0lhcAAAAAAC6MYln4lR+7L//Q/f4P3Mu3mn/wiS+G+fkxqITuiJ8t7Aq7/bLJrbwSw4LLpTlWWFfZxZiFCFrJj+f5wqtValYrDCHGKNi3Xi3jNavdaKH0pKcKDxoCAAAAAFw8xbLwD15xL/7EfeXH7pXbTfXJSBbu2QmRMHIVRLPaR+PaBZBdidiGqupW6wQ6ZScJc2/pPMgr6dWmWwrWUwqCKbFUNZZ2nWKyjwzm9NjWZd3HD/VaFOi7sVU0AAAAAADMmnJZ+LJ78WX34k/cK3eanzfIwhZZsoRypXtkXS1Xq9VepHResLJJPHAY0VVX/R/xy9Dam/60RN8S07IwGXDc+mSnErebOkHKvcy2GCNWJnkg2hEAAAAA4CIoloUv/sS9+BP3lZ+4V+6YooUtSaGjRaUOyT1F6b3fU5eFYZH52GIvxNWsFlkoP1gYPUy5M34nAP2k7Ut6dm9qXa9WYeq6Sj2KGFUm1UyxHN03CUtMAQAAAAAugPJnC3/ivtIuIjXLwuVSeguK+iaW9s0z67pORAuzsjAlyo77pYXe0cJ9QqOQ63zPom5X6HYfcDzsPQQUZTWaVKhVkBwAAAAAAC6Kcln4svvKy/Zo4S5Gl5JwYbQwXmnavqt07W/Iy0JRkbV5HSfG1U8W+m8tzT/l5x9R1XVdpyKN24BiruaGhxoBAAAAAODS6CsLXzbIwu4yw37RwsWiK3xM0cKcsjnaFyt6yMLElyxyn11sfbKvdPguUtsjhV5pFs8c+7MfAAAAAAAwIeXPFv7UvfhT9+Ir7pW7zc9/SpSFgZwZ9mxhIAvjYzpbLDLooFEnXFNaKAuVjxtqH7fo7mtL9D6M4X3o0GaEJcHWgbxzBgAAAADgEih/E+mrrv399F7z85+Wo4U+nt4wfKihc/xytT582P3wUcPuc2+L4y4PtWF+xY3p9Z8dn/mZtq+8CYOK0tOD4qLbfPwWAAAAAAAulGJZ+NXX3Fdfc3/wWqEstH19/nD8arUXfPuk/lfkS7M8Ngb7zN+DyOYyipjrOB0AAAAAAK6Hcln4umt/r95rfuEpqywEAAAAAACAeVIsC//wZ679vXofWQgAAAAAAHD2IAsBAAAAAACuGmQhAAAAAADAVYMsBAAAAAAAuGqQhQAAAAAAAFfNGcnCquaregAAAAAAAGMzR1ko6D9kIQAAAAAAwPgM+G4hshAAAAAAAOD8Gf1z9q14q1brzZa66uxdrtahtuuovarexOzTbw88HBRrxOWhWH+3IS0AAAAAAMBVUi4LX3Pt79V7zS98Oi0LO2IuCvGFGxIxQCVaeMg5FpjBlqoOzNDSAgAAAAAAXCvlzxa+5tqfJgs7kmu5WvsRQ1/0pSSgJgsPOYUZx6nCOKScFgAAAAAA4GoploV/9Jprf6/da35RXEQaBPGkeGE6bGd8ttD/OyrGE3+GGCUAAAAAAMBVUiwLv/4z1/5ev9/8Ui9ZeNgiBO16yUIp7IgsBAAAAAAA0CiWhX96w7W/zYPmlz/bSxbu5KC0lJNoIQAAAAAAwNEoloUv3XUv3XUv3XFvvd987JkezxbuN67XwgN+vWRh/tlCZCEAAAAAAEBMsSz828eu/d1+0vz68+VvIm3ZfkkircyEF4XmpF3uTaTIQgAAAAAAgJhiWfi6c+3vftM89UVpEenq8AVC4YWfqjDrfn8w/G6hlkPuu4W20gEAAAAAAK6IYll4y7n2917TfE6UhVnBhS4DAAAAAACYBcWy8KFz7e9x0zzXVxby3UAAAAAAAICZUCwLP3Cu/X3YNC/0kIXbZw8RhQAAAAAAALOgWBY2zrW/j5rmCwlZCAAAAAAAAOdEsSx0O5qm+SKyEAAAAAAA4MxBFgIAAAAAAFw1yEIAAAAAAICrBlkIAAAAAABw1SALAQAAAAAArhpkIQAAAAAAwFWDLAQAAAAAALhqkIUAAAAAAABXDbIQAAAAAADgqkEWAgAAAAAAXDXIQgAAAAAAgKsGWQgAAAAAAHDVIAsBAAAAAACuGmQhAAAAAADAVYMsBAAAAAAAuGqQhQAAAAAAAFcNshAAAAAAAOCqQRYCAAAAAABcNchCAAAAAACAqwZZCAAAAAAAcNUgCwEAAAAAAK6aYlnYONf+PmqaLyALAQAAAAAAzpxiWfjEufb3YdO8gCwEAAAAAAA4c4pl4SPnHjn3vnNPmubzyEIAAAAAAIAzp1gWPnDugXPvOve4aZ5FFgIAAAAAAJw5xbLwjnPt7/2meQZZCAAAAAAAcOYUy8J3nGt/D5vmaWQhAAAAAADAmVMsC99yrv09aJrPIgsBAAAAAADOnGJZ+KZz7e9B03wGWQgAAAAAAHDm9JeF7yILAQAAAAAAzh9kIQAAAAAAwFVTLAtvOHeDRaQAAAAAAACXQk9ZeINXzgAAAAAAAFwEyEIAAAAAAICrhg9UAAAAAAAAXDXIQgAAAAAAgKsGWQgAAAAAAHDVIAsBAAAAAACuGmQhAAAAAADAVYMsBAAAAAAAuGqQhQAAAAAAAFcNshAAAAAAAOCqQRYCAAAAAABcNT1l4Q2jLKzqzWZTV4e/1qtl3qjlan1IFGzfJPeMx3K1ThhptbyqE4dVtW50usjuXnOdiw7eJamTZS9Xa1OVAQAAAADgzJlUFm5FynLZqouq3mzW67QICZPVdRWKm1Y9rWqL6mkF5KaHiKzqTb2qqmW40ZrVcrXe+CKvqjebupbNzumvpNTMGFBQ64OrEkwrwX2qemPT3gAAAAAAMCpTykI/6CeFAFPJduqgqvdJDsk7Gw2UHb2oEvLNbPmhyIO+yQbddgcsV+t1Xe8l2nq1bMWoLtOqlUlIKZJLCc1OJNIEY5CFAAAAAACnYbpnCwO5kdA4e7ZiYB+32sujutrqtEDcFSgIa/AsGTSrK9Fym04MVmgmlpNW9XpVbSOMyzZKGVW2rWpVb+rVatVNrkb6QnuXflpDHshCAAAAAIBroL8sfKjLwqre+DGzfdhv6eukulosO4s2t1sOx2/XlNahYqn2IlKTElvRkxdxQXBsL2rjoFkcXpMlb8fMnRlePDL1YF8rA9N5eoto/Qc3k1T1pq6qaD2uXp2kQ7p19WpVRzrVT9ZRe8k6edXxYqRx8Z6E7e42pAUAAAAAAIFiWfiOc+8497ZzD5vmaUkWLlfr9WpVb9b1NvzVmaV3lEO8YnOvRbZxNTGC5IlLmVbzWNZDpmVhSrYZ15Qa3lITBerWq2VXEO8yOkQLC8N9CeFWlDyRcqu8dnuiBgo3JFpQiRYeco4FZrDFE8W5tAAAAAAAIFMsC2861/7eE2XhVtlsZUykc8Sn/bqz+TbMVbc6KVAq3VfYZINlu+f2ckouJQvrbdzOT2qThZYit0HSTtG6xCt7kYx1lW1WYHsO8KPAiUW6vuhLSUBNFvrPooarkPU4pJwWAAAAAAAUimXhHefa3/tN80xKFu5Dg778O8gJSS62dIVRXS1Xq9Ve4HRezrJJPHCYzKoTTrK9+SWRNkg8RBa2Ua14Vep6tfSW0nad03GoRem1DsxWVg8wxnTeAhQH8aR4YTpsZ3y20P878RWPjvgzxCgBAAAAAECgWBbed679PWqaZxOy8PAgm6faOsrqsF0J9x0Oip8n22kmXRaGuiwTW0woJT/61H1O0vYuneiByF2WOwHoJ21ftLOTOevVKkxdV9I3BrV6d4xMCSU/sJZ/b2teFh62CEG7XrJQCjsiCwEAAAAAhlIsC99z7j3nHjr3QdM8p36gwv+6hDfB9+RiUojs3zyzrutEtDArC1PRQVUraNHCxaL7Fk/Lp+33xxiFXEdz1u37ZrouOuw9BBS1N7smFGoVJPctXe20fOhSdeXm3nohjCct5SRaCAAAAAAwK4pl4SPn2t+TpnneJguD5aK+9OjM7eOA3Xq17BMtFIVbm5f04hZFFppy76b19ExGoPhHVHVd16lI4zagmFu/WvSVxXCVZyg229W+dSC41GcLD9mu06qwnyzMP1uILAQAAAAA6EexLPzAufZnlYVRvCwRkUouNDwsIi2JFuZUkfTFirFkoR7VkpJsX62z+yRG4J8igVMgC/evW1135JVhEWnHf4L+2npZEefxrpy0y72JFFkIAAAAANCPYln4xLknzn3g3IcmWZjQNHnpsdBloZyRZX3nohsT8xcpJldephIL9ickoV9kemd3X1uDQPIUvVPTLAs9dx6qb3q2sPPcoyye1RW7cXqDtMt9t9BWOgAAAAAAeEwnC0ON1FmfmJ+wd7TNcrU+fD59r51CTaEsD7WRe7awo0cSpVhe/9nNJPjkxXK5iIOK0tODslo1+zdcCSpl1EVYrqmUgC4DAAAAADgLJlxEOoTOK14O39U7vOTU335STILQlMsoKqr7bpxJMOk9vhsIAAAAAHBGFMvCx861v0llIcyVnCzcBRsRhQAAAAAA50KxLHzfufaHLAQAAAAAALgAimXhA+ce7r5b+HlkIQAAAAAAwJlTLAvvOnfPufvOPWqaZ5GFAAAAAAAAZ06xLHzHuZvO3XLu/aZ5BlkIAAAAAABw5hTLwted2zj3hnMPmuazWVnofYDP+lnBxWIhvZuzJIdORqZEy1Wd/cS6ivTdeeVLh/uiM+8P1b9dyNcgAAAAAACgP8Wy8IcfuJ986F5u3N2m+XRGFm6/U7D7lERVbzbrday9klT1pl5V1TLcWPySy/Tn3ZMSLlSQrTStjF/CED8GWNWbuq5Uo6WPBea/V7gzs15V0+jC1jRUJwAAAADAxVIsC7991333vvubB+7mB80nnldloS/I0vJMIhUey+TgfXI+r7GC79fv8zhslMpLRv+S2e2Pz1U8OCQsWcl80SeEWuKq1o5lqNABAAAAAOBSKJaFf7pxf3bD/fnb7sbD5mOfU2RhIG20eFhX1CQVS12JOeR0Yr1q7Viu1n2ijILZ9WoZxjH3laiqKhf9iyzJRwtl4edpxp0dyQxz4rHHEl0AAAAAADh7imXhH/3E/fEr7uuvup/da37pKVkW+ksqO6Js2RVUbZSsG4oKAmN7cRkHzPTg4T6kdzis5BG8uLiq6jwiGZTbiW0m1rlOEy3sCr/1eh2IzlDh6fHGQ5bIQgAAAACAq6NYFn75++4rP3Av/tC9erv5hU8KsnC5Wq9Xq3qzrqs2dBU8sLfZhbSSK0UTsjD1OhhRFm4faUwetg1Geun8AOV6tdwWF0fc9vKym777Z1JYTbuI1Eu6/6OvLEzGMgEAAAAA4JIploX//rvuS99zv/9998rNpvpEUhZuQ4NbiRKt3tRVUkoW1vV6tYxEZEoWtjHKutae89usV9VWCIZHtaZ1FmJ6enJ3tF+BarWu98G6bnhUWg6aqLzlWT/BZ4KRQ6KFBzmMQAQAAAAAuAKKZeHvfcf9+++5L/2Ne/lmU308IQv3ocFAPe0XlUpysUVaRLrNIwg7hmHA7ftRVJW1DWGmiEw2yMKo3jmW+Teb2t+eKr0jZ4RFpFsvJpOZv/oBAAAAAACzp1gWful77vf/xn1ZjBYKj+B1FMdhe+qVnglJ52s/LyCXDmcpTx3qj88llGxXT8qyMFxXulotU+teI2Vn+TBFqGpltdexYqRnC9Pu2rcR0UQAAAAAgAugWBa++LfuD37ovqo/W7hYLDyRErws05eL0YN+YrTQ/+67rPAy0UKLLKxWq6UxWigIWdEIVUttP5W4Wm/qVUpXRkenVSGvnAEAAAAAACvFsvA/vOK+/tPdm0g/bZKFwXJRX1X574fJycIgf0UWDogW7qSqIAuNH2BMCbGMONu/KnX/op11Vqd56jMZnbWUnE4EAAAAAADXQLEs/LM33TffdN+84d580PzKZw2yMFpMGa7BjGTiKLKwb7SwI66ERaT5D2NsNuvVslAWSutju89MKlT1/k06uwc4J5SFqfe5AgAAAADAmVIsC7992/31bffXd9zb7ze/+kxWFiZek5J9E6lt1WXqwcROHpKWrBQpE0TnBEMD8RSIx+6HMYyyMH5/S1iBfRniBznCb1SkHlq0aUuLLNzmTmgRAAAAAOASKJaF//mBa3+3HjefeE6RheEKyI5Q0eRE7tnC5JLJeJ+JgmiXl7n4oXuDOZH8S7kjKXmXq3q1CpSq+EbQ1Cchs7CIFAAAAADgGimWhT9+7NrfnSfNJ5/XooWQRfpWhfEbFiPH6wylAgAAAADA5VEsC19zrv3da5qnvogsBAAAAAAAOG+KZeEN59rfg6b5LLIQAAAAAADgzCmWhbeda3/vNc3nkIUAAAAAAABnTrEsfODcA+fede5x0zyLLAQAAAAAADhzimXhI+fa35OmeR5ZCAAAAAAAcOYUy8IPndv+muYFZCEAAAAAAMCZUywLG+e2v6b5gkkWVvXhQwrd/58WwZLO1xULP/y3XK2L00zGAD93PJCoj753XEsKmE+/AgAAAAA4P4plodvRNM0XDbLQV0tzmb4LGm6IeZciC3fo9THWdnSnKGp+Dv0KAAAAAOAcmVoWBvP1mUzfBTNmpewGMRNZOH5zIwsBAAAAAEZnWlkYiYft9P2wFDGeyy9X68Myxe7uqt5s1uv1bv3iLg9Pm3iJJdUSSxovWTq5knNu4Wm3tlW37FDMlIobeUWnwc85Xw2XhULrV4dy40bw7ew4xKtrlH5wv8r4CgAAAADgkplUFsYyZzv33k7nYyEQbKnqjS+iNnW1m+CvV8t2m6cNpL9Uq7zSpSS5nIXEy1AHbkaShXHiICqr+dlQo8GyMNf68QEGf+iPhPbvV5qvAAAAAAAunAllYUo5BPojPCStJDrxova/h/8tV+t4t5ybYFVmny3ndOLgyFbRjiEL9WOH+Fmtj22vcEBVb2JvJILJShU1WTigXylpAQAAAAAunulkYXICrwuhjshbdDZtJ+kpMZj6n19aQpmIaiqtCIw5JxNHaaPgYV9ZuF0TKeiXYj/HNRomC02tHxvSOSIdtjM+W9ivX6lFAAAAAABcLJPJwoRwWuSm4FJ4SJeF7e7ks2eRbkpbtUMO+OVzTidOCqGxni30n4hMPVso/G2q0SBZaGv9hF7bbyl7V+w4/UotAgAAAADgYplIFqbiUYvFNNHCdrdUosWqRGEFqbTE00ULPVqdp6yazEcLbfWx7bW2vtLgUv5ECwEAAAAARmcaWSgG5TJTcOOzhSlZmAkEmo5QIlR9P9GnPlsYyJUhbzvJODKx2/R1idJ4oL4r+2zhfuN6LajOXrLQ2q/UIgAAAAAALpaesrDRZKESjMpNwXNvjFRkYeJ9mlVdFiIzvok0zFlNrL2J1Mt3uyS04JUz5uig8NLPTI16hgszrZ9s0DhnyRGCdB6nX6lmAQAAAABcLMWy8EPntr+meSEpC7Uok2EKnvu+3EKUhWHiKHUuQJZ9S2kq5+SDerEE226uAtHU3bcsFCTdkoNkFqkj+ypxhCzfEu7QW391MNv4whzR7PC7hVoOhn5lKB0AAAAA4AIploWPnGt/T5rm+YQsnOekejZWzcaQadCrZ6z8hfsIAAAAAGBuFMvCB861v8dN81zmc/awWCy6n5m/8m+lm/Qe3w0EAAAAADgyxbLwjnPt7/2meQZZaKG7fPF6NeEiLwt3q2IRhQAAAAAAx6RYFr7jXPt72DRPIwunQvq0ILIJAAAAAABGplgW3nCu/T1oms8iCwEAAAAAAM4cZCEAAAAAAMBVUywL33au/bGIFAAAAAAA4AIoloW3nGt/7zXN55CFAAAAAAAAZ84R3kTaff/kfD5JJ1hSZb+1LjGrDysM8LP3spuoPvrecS2ZJ4Xt7L87SE/XY6SM0uuO00YX1xMAAAAALohiWXjXufb3qGmeNchCf946l6mhMJseYt6lyMIden2MtZ2VU8ahpEpV7X2TRP9sZa+RMoKDR28j5Y7LHMY+AAAAAMRMHS0M5oIzmRoKZlyOiJmJLJxJc49KkSxcBZVXEp9qpIxfELIQAAAA4Ozo893Cm+ZnC6NZ8HZqeFhZF88Tux9/93ZX9WazXq93q/GS3z73Ektz93hu7iVLJ1dyzi087da26pYdTpRLJ87yik6Dn3O+Gi4L08eIRhtszixh7dYoSqz3K2u5QQtarIpySh0ijJTqYHSYSul1ltbvV24i3tnptMmPbYbxz/5j31YjAAAAAOhBsSx807kbzr1lehNpLHO287rtVDGeZAZbqnrji6hNXe0mj+vVMphle0cHf6lWeaVLSXI5C4mXoQ7cjCQL48RBrEnzs6FGg2VhqjZV3U2UMEKxWUsbb1iu6k7ibL/K9UmhBbNWGXyS3p7pKknj0mm1pavl5Rr6rP7Ybv+xb6oRAAAAAPShWBb+1LnXnHvduftN85QqC1Mz1mju7h+SnqV2YhHtfw//W67W8W45N8GqzD5bznJsrHNkq2jHkIX6sUP8rNbHttdyQHRQxma9gLw79BiX2Vd+C2asSpiR2imOlLBcY0zX6sle5fr+ELS/KAsHjP2CvgEAAAAAhRTLwh8490PnfuTc7ab5pCYLk5NDXQh1RN6is2k7AUyJwdT//NISs17jSz+6Ww05JxNHaSMh1FcWbtfbCXPjYj/HNRomC8WqxOt17d6Q06Zq5Kez9KtUuXoL6lYlKm4OX0cb01UUZaGhX/Ust3NEOmxnLK7f2FeLAAAAAICeFMvC7zTue879jXPvNM2vKbIw/RCVPr2TQg+6LGx3J59riubh0qNdLYaH4eTJv2mCPp4sXIR6JHfwU34AACAASURBVPVsofC3qUaDZKHg51BGlHijKG1sjaVfpY7WW1C3KihO8JdtpIwvC3uXu99S9j7fcca+WgQAAAAA9KRYFv7lE/ftD923P3Rvfdj8w+clWShFb6aIFra79XiRblWisIJUWuLpooUerc5TVuTlo4W2+tj2SvkP8Yae9lTRwnwscZejtnDZMlLGloVDyt0WqklgooUAAAAAZ0WxLPzzx+4vP3B/8YF780nzy59/IZ2rGJTLTO+MzxamZGEmEGg6Qol+5B9k6vFsYTAVHvImjYwjE7uzNdIPUvaaW7/kSUs97dBnC+19Urc5sVI0fFgvtkz0lSEM2VcWDiu37alr4c5AL1k4qI0AAAAAYCDFsvCb7zffeuz+/FGz+eDDX3ru86k8ldBNbnqXexuhIgsTQZmqLguRiSEwPWc1cWxhIGa81yvaJ7tV9AZMza/RNNpQo57hQs3PXqm7NbDG2KmaNq5R2ZtIs33S0oIJq6IwrtlXQUGSDuonCweXq3ZW4fbGOGNfNQsAAAAAelIuCx/tZeGTtCzUokyG6Z33xFz6WEEWhomj1LkAmSaExJyr1IN6sQTbbq6CCXl337JwststOREMsiwjFDMIj5ClQcIdip+7hQbLEE1iRkgbHxAZbOhXoq/CFpS6XGBV/DIav/D8SBG/W6j2OstNAr3c1SF740uNPHyfKFaUj31D6QAAAABQTLEs/NZj9xcfuG89dm+ko4XznLDNxqrZGDINF169UTmVr0rX2w45DAAAAADOg2JZ+NIT9+0P3UtP3A3l2UI40P3M/JCnBwGOgEnvZd5DCwAAAADnRrEsbL9O8T3n3v6o+dgL2ufsYYu6thFgTuRk4W71KqIQAAAA4JIoloU/cu7Hzv3YudtN83Htc/YwhOSzY5nHvQAAAAAAAHpQLAtfde51515z7l7TfApZCAAAAAAAcOYUy8Ibzr3l3FvOPWiazyALAQAAAAAAzpxiWXjLudvO3XbuvaZ5GlkIAAAAAABw5hTLwnvO3XfuvnOPmuYZZCEAAAAAAMCZUywL33XugXMPnHvcNM+aZGH33Ybz+dyZYEmV/Y63xKxe2j/Az97LbqL66HvHtWSeFLaz/+4gPV2Rr7Rv0o/KcVrwlP2kpI26dF8x3KGgGvscEoX2tSpKnUna4/w8yrnu8vsVAADAeVEsCx8499C5h849bprnDLLQn0HM5SItzGuGmHcpsnCHXh9jbWfllHEoqVJVeypB/2xlD715BM+O3oLK/ZiTnBmK2siSWamwT3p4mFVdMzIN2Ov8PEKnuPh+BQAAcHb0kYX7aKFBFgZX5ZlcpAUzLkfEzEQWzqS5R6VIFq6CyiuJS311HFk4fgvObfpe0kYZ+knKtCwcYFV4qObaU52fL79fAQAAnB19FpG2P8si0mgus71IH1Y4xVdsb2VWd3dVbzbr9X7RVfK72l5iaRIVz7CSq8H85ErOufVa3dpW3bLDKUsfZZAu2uDnnK+Gy8L0MaLRBpszS1i7NYoS6/3KWm7QgharopxShwgjpToYnYonBXP/aIYv2mw0udCqhCzqdOnkpzjDOFX/M0OmtxfQV3D31JPGZHaroiPFpP16nbLL2ArX2a8AAABmTrEsvN955UxOFsYyZ3uF3V6048t9sKWqN76I2tTV7jK+Xi2DCY93dPCXapVXupQkl7OQeBnqwKBGvWVhnDjWBKKfDTUaLAtTtanqSMr4Rig2a2njDctV3Umc7Ve5Pim0YNYqg0/S2zNdxev67YDoFqvarPacYVYZerQS1Rl0ZtB6exF940t9o4xjB96Xq3VwZLxFyjPb6xST7a1wnf0KAABg7vR5E+k95+4a3kSamjtEc3f/kPR8oXNXuP3v4X+dCY+aVrcqs8+Wsxwb6xzpT+CHyEL92CF+Vutj22s5IDooY7NeQN4derTB7KtYgilWJcxI7RRHSlhuKIP3N0n0KbLe6yR6W+VPshN3BsTp+4AzQ0HPUckJ+/ETWswtyXzvmP1/0iX0al9ls7UVrrNfAQAAzJ9iWXjXubvO3XHu/YwsTF6mdSGUuKvduRSnxGDqf35pifmHOCeWp0+GnJOJo7SREOorC7crn4RZSrGf4xoNk4ViVeL1unZvyGmleIi4N9mvUuXqLahblai4OXwdbQwNqerNpq7rVHm6zXrPGWhV94h0eEWZvg8/M6hF5Mlofo3eqtB4h8Wet1EW9mxf2WRjK1xjvwIAADgLimXhHefuWGRhQjgtchda6SawLgvb3dsFPxG+DWmrdhgehpMn/7a512iycBHqEa/ovJ+zNRokCwU/hxO6Em8UpY2tsfSr1NF6C+pWBcUJ/rKNlKQs3Gw29Up98CptldJzBlrV2WKOvSc39zsziEd3ayx1lP7KbpBiMAwlcSylamRbRNq7fUWTbWezC+tXAAAAF8RE0ULr0yxjRAvb3Xq8SLcqUVhBKi3xdNFCjyoMGpVHC231se2V8h/ijXwE7BTRwnwscZejtnDZMlLS0cJqX2ao+vJWHUyz93mLbNgWpgnkGUZ1hmhCIX5VkliJ+hdbFSmvWIoNaV/JZEsrXF+/AgAAOB+mkYViUC5zoY2vu50tuizMBAJNRyj3ofNTMznUGAaTJFExZHKZcWRid7ZG+kHKXnPr+94ou68faKHScGGyXyUPVlswY9XuENk01VdqGNJLGcgH1eZEQbZQksWq/cb1WhA7vabvg1owj95GWQapQlkW9rUqzDDtu/7t218WXlu/AgAAOCumkIVK6CZ3oQ0mWN5sNyMLE7fWq7osRKZP0MSc1cSxhcJsfrsozDrtqKI3YGp+jSY0hhr1DBdqfvZK3a2CM8ZO1bRxjcreRJrtk5YWTFglBOMMvgoKyk7t/Ym1ZrPecwZadShd6sqChhrnzKCaJZBpo/xBuZCeoRNIS9dHWNIaZz+4fXvKwivrVwAAAOfGBLJQizIZLrTec0/pYwVZGCYW1tzJaEJIzHk7o/GJJdh2c5V+QqxNUjjt6JacuC1vWdAlZhAeIU/SEu5Q/NwtNFgQZppWCmnjAyKDDf1K9FXYglKXC6zyPRwXnh8pq7qTd3xANNsPMs/3uoSjBlkl+zA0NEg/zpnBULpiTKqNOllqkS7t1CKlTRTtabm8VQqV2Eb59hW/W6ie6yy3pq6nXwEAAJwfPV85c9u595rmcwlZOM9L52ysmo0h03Dh1RsV3VejerIgs1GsohvMllM1Df0KAABg7hTLwtvO3XLupnMPm+bpzOfsYbFYdD8WPuwhJLgiBs6AJ+p1Jqv01ccAEfQrAACA01MsC285945zbzv3oGk+iyy0oK5tBEgxODAySa/LWbVbZcjkHUqgXwEAAJyeYln4jnNvOfemc+82zVPIwqlIPsWTefAGAAAAAACgB8WysNWEP3PuXtN8+gvIQgAAAAAAgPOmWBa2mvA15+5+2HzyeWQhAAAAAADAeVMsCzfOvebcKx+5O0+aX/88shAAAAAAAOC8KZaFP3Pu1ca9/MTdftJ84jlkIQAAAAAAwHlTLAtfd+6nH7mffOBuf9B84lmLLOy+ZW4+H54SLJG/Ap1jVq9PH+Bn72U3UX30veNaMk8K29l/d5CershX2tfBR2UOLTipDaN4cvvi1z4njZ5vkep/qhqC3J+9r8IfKGg2uzc6/cF6RkqO29J+dZyxMG0pJWekLqXt26MWs7qGDuRo5+chcG4/miWljDIWZlWjs2YyT45/zhshx56y8McfuNsfNB83yELfxrl0U8FzQ8yb1SVtBD/r9THWdlZOGYeSKlW1N2/SPyDYQ28ewbOjt2CvrjmfqUOa5Wq9Wa8LPbUtt5eHuw453iAr6s/9bnNYKpM8JpdwBFl4rLEwYW8vbMF8ZlLiXr7SEs1l6mDlDGQh5/YuPbwxxPRc2hEa5wJnX+WM0r0m9OQlycJttDC/iDRolJmc2wUzLmcYzUQWzqS5R6VIFq6CyiuJ+wQupu+r47fgWU8d5BzWq6rn2aPHWSdMcqxxVtKfe0oOgzfStR2srsc9eEiOU8rCkhbUUdt3JueNEzJ/WTiTNprJub2PGVPKwuGc24iZhjG8MKUnZyk6+j5b+IG7/aT59ZwsjKq89e9hHYtweU/trupNe0e+XfuS/MKxl1jyddwQyfUxfnIl59xqrm5tvblj2Nv6KIN00QY/53w1XBamjxGNNticWTCmfsFd71fWclOz/5KFtdJlShgp1cHoVKAjUAbRHRjRZqPJo4/fiKBsqU9mvaGUm92b82SOqt6sV8ve5/eed6mjLlgy+5E8mZjq6yclueCe7sgmkw6QEyrnZ0O/EvMf4kl9LAy+SmbO/JEL+sxKsncEUr5WGyK/S0xvuu5HGFq//xXHfn5O5axfcdT6cm4PnGE5txf2WEN91XmOmjY3n9TnOWqNBs2RxLn3kBYcMlPV0+bbqO9IGeLJoOCi0Z1VQLmes6vJ/jip9/R8E+lPP3R3nmQ/UBHPKLb2bG2OL53BlqruVHD/R+u19WoZjHrv6OAv1arQa8kkuZy1zuNVYSRZGCeOrzminw01GiwLU7Wp6ugk7Ruh2KyljTcsV3UncbZf5fqk0IJZqww+SW/PdBWv67cDolusarPac0qsKhu/GReofTLnDb3cjFWqJ7PsUx9PFi5X68CF8RaJnCfLzkk9zqUZcunEEnsvIlVHmVLuCJ4Uyht8ldTO/Nl62Shc72k75/RbRGq87gsJ9RbsfcXRzyp6zvoVR60v5/Ze5/aePVasr2FWkBt40ljQe52e/bA5kjj3HtKCQ2aqpnOddcpVMFIiqwo8OWR0ZxVQooB4z3q93u9crlbJ8VAsC99ov1vYuHsfNZ96QZOFKes0Dy2kc1XnDmv738P/OtMhNa3FZ+I+W85ybKxzpH9qGiIL89O1vn5W62PbazkgOihjs15A6ew16Fd2X2WEg2q1NGMRR0pYbjgp2Z8i9Eua3uskxh6/4hbDkRlv6KXkbNA8mSOcdhxFFu7N3//HnoepX/m+EV2izMALJuc+vU87/WWh5g1l+wie1GThgKuk/Szau5mUhJKvDCOrjyy0n2GSSS2tn9ydK6XkrKLmHFxxjHMkHc7tFm9kPTnU3eWycMhAGjhHkufeQ1pw8nOdco7t23RDPDnO6E4qINXkVGEyxbLwhnOtMrzfNJ/+giILRZEtCyG9iilXpP7nl1YyGNP+NOacTByljYRQX1m4DTQbr6FZP8c1GiYLxaps7e5g94acVo+WWPtVqly9BXWrEhVP7TKNlMiQqt5s6rpOlafbrPecMqtKxq+Wb65P6t7Qy81apXgyQ2TFechCtV91j9AmU+olprfcyN9XKZnbZffnvSGXO4InjVOWfldJtYh9qn6tlLkhEBVoPOf0kIXGq7Mty/SJs8cVZ5E9qxTkHJ295fpybu9xbu/fY7ODS5kV9JKF2V6n5D3OHCk14x7SgkNmqqZzndIn+46UIZ4cMrr1VkjnGFfacmYsloVvO3fDuTede7dpPvNFWRamT816Q6baIO+UdndVb5L4NugXDPl2Qz7ngmnHKLJwEZ551PNz7OdsjQbJQsHP4eSoxBtFaWNr+p5c9BbUrQqKU+ZR+ZGSlIWbzaZexRPOjM1qzymzqmT8Kgctcn1S90ZZ+0ZWKZ7cl7WjuztokePJwvhSoM5nJamSzUyxTNd9hSeyLjll0PtG1QBZ2HOE5j3ZSxYOOZsFSfppQrV9xTYynHP6yELDtazvWBhwxVnoZ5WynKO9an05t5ec20VvLCyelDqBZVbQSxbaTqzG81V2b8nce6wWLJmpDpGFixFHSn5v5iaIcXTrrZDOMa7xJLLwpnPvOPe2cw+b5rOiLJT09JA7UrpTLPdRcsekvWa8Q2O7uzOmLDxQhbfDyu/B2Opj2yvlP8Qb5XdZVHv636/SyxVP5pKzrCMlKQu7t4iDeVDeqoNp9j4/ZPxKFdNLFBKNfkc57UmV+IZwS+EQ7iEnk/MxWxYWIbS1SDQsoyjCSVER+jVNyXUyWdh7hC6ynuwlC4eczbpb+2pCrX1NVxbhnLPQ27DXeSNvSMFZpeCKsxhwfh5Yrm8B5/bMuX1Qj7XWdzRZOGSWO84cqVwWjjr78hgoC/1jCvrGEE8OGd0zloW3nbvl3E3n3muapyVZKM5SMg0ZN2FnS8Yp+ZlR9gjBa7Y5VzpxUCP/3BR0giHTqYwjE7uzNdIPUvaaW9/3RtndyuAsX3oDJ9mvkgerLZixaneIbJrqq6jc7pHxTdHDXtXmREGheZOMX6U8tcx9/WRv6KXkbNA8WUAPedc3XZik4H5Stl/tNwrfYdT782LYaUzxRvaclTlAvmGje6P/CN1vFL9o2UsWDjqbpQwvRGlf690Jqb/2kIUFd0SSSeUWHHTFUc8qZTkn9lrry7k9d24f1mON4zd5/e0lCw1nerlGo8yRJFnYtwWHzFRHk4WFI2WIJ4eM7hnLwrvO3XHujnPvN80zaVmoSN5cQwaXHG8cZ50SjfqqNt94OJRuuj3u5awmji0UzlPb2IP1cl1F77rS/Br1VEON9D4k7tX87JW6C7bYZKGeNq5R2Vu2sn3S0oIJq9rDVScqI0UxMjqB+KdmzWa95+St6jt+04eEVU73yZw39HIzVqmetKOfPXqMJC1t1wNFujLbrw5ZCtdYgzrrO09fqKfRvmdvZXfWG0NG6KFYqT8JY2Gcq6T8d7Z9tIPk9tV9ZbmLoTVhr/OGTqYFB11x1LNKJmf1ipM7T3Jut5/bh/ZYqb65nqOl9fYnxoLe6/LhpoFzJFEW9mzBITNVkyyUz7G9R0ps1WRvIhXqOztZeM+5u87dde6RJAs1wWtoyN0o2oRXU4tTvMRR6pxDslelVM7bhvWJO/Z2cxV0tu6+pXi5TNMtOUhmGTCyrxJHyBOehDsUP3cLDRZXZW1W0sYHpE8Per8SfRW2oNTlAqt8D8eF50fKqu7kHR/gbWtL8zLP9zph6j/F+BU8Ju4Kz6zH+rZV5EkjxbIw0T1KdFgl9w2FbL/yjtPOGGmje6tC1RuWs7dwRlLPz7l+NWiEescJfSk5Fsa5Sqb+trTgIt/rxD1KG2nnnPw1NDTeeN7QybbgkCuOflbJ5aydvfX6cm5XK9xthQE9NlffbM8R0xrGgtzr8ufJoXMkSRZmzoRDZl+ZnpORhXIb9R4pcbZFfVKfT5rqm1RA+Z4zqSxsf4+a5tmELCyUNkdiNlbNxpBpuPDqjYruq1E9WZAZLXjZGNt3Vt3gVMaMMkJn5cnpOMdqnonNo5l5JvU9EpfnjXmeJ8+Ry6tRGX0Wke6jhSlZCAHdz2TmFg4AbBl4YqLXQRJTvypalnqt4MlzZ7aTP87ecEbMdhxBT/q8cmb/bCGy0IQabQZIMfhUS6+DBLl+tVuJgpTJgSfPnRlPZzl7w9kw43EEvSiWhe84d9O5W869J75yBoaTXCecWiANADBrOJsBAACcAcWy8E3nbjj3lnMPm+ZzyEIAAAAAAIAzp1gWvubc685tnHugfLcQAAAAAAAAzoRiWfhj537i3CvO3WuazyALAQAAAAAAzpxiWfj9D90PPnI/dO5u0zyFLAQAAAAAADhzimXhXz923/3Aff9Dd7tpPnViWTjZG5AGvVb8OO9l4u1PAAAAAAAwDsWy8C/fcy+9777z2N38qPnkSWXhhJ+EGpD16FYJ+g9ZCAAAAAAA41AsC7/5wH3roXvpkXvnw+YTXzihLJxSF/XXduNbhSwEAAAAAIBJKZaFf3rfffOB+4v33NtPmo9LsnAnq/bfq/IETPdTrbG00dOGR+2p6s1mvV7vPoWV+pawXu7h21rrVRXLQi+xpBjTVrXZJVIuV+vQkI7aS37sa59+e2DX6tBNYn0NaQEAAAAA4GooloX/8a770/vuzx+4t540H39Bk4Xr9XovYparVdXdtZchVZ3WSsm0B+JY2T6jVgytV8t2W20q19NzW7nUsco/OrZZt8rP2Tsg3JCIASrRwkPOscDU6ptLCwAAAAAA10SxLPzabfef7rpvvOtufND82vOaLCxQTt0tclr/kOCIQzaH/y1X627oTS432BuYkLdZtSrKOQ4nLpN/KWXpujZncyYtAAAAAABcFcWy8A9uuj++49b33Y0Pml9VZWFKaHSEmnRsXqQkhVJKDKb+lyon2uvZkEjrxSFtVkkO6ByRDtsZny30/9bra4hRAgAAAADA1VAsC7/8tvvqTff1u+6Nx83HimWhFA4rkYUJSbaQZWF7qF5uUryFSy7lx/xMVnVy9g3ZbxEq3ksWltUXWQgAAAAAcM0Uy8Lfe9N95R33tdtu86j52OePHy1Mxe4Wi5wsHDtaWG6VfOC2MKneRAsBAAAAAGBSimXhv3vDfekt99Wb7mePmn9YLAutzxaKsjAdlFvkZOHgZwv1R+9Uq9RnC/cb1+uCAGtic/B39tlCZCEAAAAAALQUy8J/u3G/d8O9+I772aPmV54rloXGN5EKKkwJ3GVk4ZhvIm03qKE5L6HyJtJO6ZIyE14UmpN2uTeRIgsBAAAAAKDl6LJwsVdBwifzlLRa2C4nC7Pllny3MBJVulWrw9OJwoGqMOsWLb4eNZFD7ruFttIBAAAAAODCKZaFv/um+/Jb7g9vuY2yiHQS5iledKuMNs+zagAAAAAAcBUUy8KvvO3+8Kb7+h335mP5AxWwxaT3+G4gAAAAAACckGJZ+PU77k/uum++69560nz8BWShTk4W7lauIgoBAAAAAOBUFMvCbz10f/We+85jd+uj5pNfRBYCAAAAAACcN8Wy8Psfuh985H7UuLtN8xSyEAAAAAAA4MwploWvOPdT515z7n7TfBZZCAAAAAAAcOYUy8I3nbvh3FvOPWyap5GFAAAAAAAAZ06xLLzp3C3nbjn3XtM8gywEAAAAAAA4c4pl4R3n7jp317lHTfOsSRZ238Y5nw/0CZZU2S/PS8zqMxMD/NzxQKI++t5xLZknhe3sOSyTrshXVX2k7nacFjxlPylpoy7L1XqToKAa+xyShep7dewnsh7n51HOdZffrwAAAM6LYll4z7n2Z5SF/gxiLhdpYV4zxLxLkYU79PoYazsrp4xDSZWq2lMJy9VaaZYeevMInh29BZX7MSc5MxS1kSWzUmGvnIvkvXYzMhn0Oj+P0Ckuvl8BAACcHcWy8L5z7c8mC4Or8kwu0oIZlyNiZiILZ9Lco1IkC1dB5ZXEpb46jiwcvwXnNn0vaaMM/STlKPdftCSaa091fr78fgUAAHB2TBstjOY024v0YYVTfMX2VmZ1d1f1ZrNe75dVJb8E7yWWJlPxTCu5GsxPruScW6/VrW3VLTucsvRRBumiDX7O+Wr4bDV9jGi0webMEtZujaLEer+ylhu0oMWqKKfUIcJIqQ5Gh6mCnFojghm+aLPR5EKrErKo06X9pZph+sFnhkxvL6Cv4O6pJ0eXhZH9YoX69Tpll7EVrrNfAQAAzJxiWXi34NnCWOZsr7Dbi3Z8uQ+2VPXGF1GbutpdxterZTDh8Y4O/lKt8kqXkuRyFhIvQx0Y1Ki3LIwTx5pA9LOhRoNnq6naVHUkZXwjFJu1tPGG5aruJM72q1yfFFowa5XBJ+ntma7idf12QHSLVW1We84wqww9WonqDDozaL29iL7xpb5RxrFl4XK1DuyPt7T06HWKUfZWuM5+BQAAMHf6vHKm/b2fexNpau4Qzd39Q9Lzhc5d4fa/h/91JjxqWt2qzD5bznJsrHOkP4EfIgv1Y4f4Wa2Pba/lgOigjM16AXl36NEGs69iCaZYlTAjtVMcKWG5oQze3yTRp8h6r5PobZU/yU7cGRCn7wPODAU9RyUn7MdPOLYs3Dtm/590Hr3aV9lsbYXr7FcAAADzp1gWtl+nuJ2XhcnLtC6EEne1O5filBhM/c8vLTH/EOfE8vTJkHMycZQ2EkJ9ZeF25ZMwSyn2c1yjYbNVsSrxel27N+S0UjxE3JvsV6ly9RbUrUpU3By+jjaGhlT1ZlPXdao83Wa95wy0qntEOryiTN+HnxnUIvJkNL9Gb1V4KlnYs31lo4ytcI39CgAA4Czo893Cm5bvFiaE0yJ3oZVuAuuysN29XfAT4duQtmqH4WE4efJvm3uNJgsXoR7xis77OVujQbNVwc/hhK7EG0VpY2ss/Sp1tN6CulVBcYK/bCMlKQs3m029Uh+8Slul9JyBVnW2mGPvyc39zgzi0d0aSx2lv7IbpBh6DjSxRrZFpL3bVzTKdja7sH4FAABwQRTLwrede8e5mxlZaH2aZYxoYbtbjxfpViUKK0ilJZ4uWuhRhUGj8mihrT62vVL+Q7yRj4CdIlqYjyXuctQWLltGSjpaWO3LDFVf3qqDafY+b5EN28I0gTzDqM4QTSjEr0oSjxgtjJVXLMWGtK9klKUVrq9fAQAAnA/FsvAt51pl+F7TfE6ShWJQLnOhja+7nS26LMwEAk1HKPeh8xMzOdQYBpMkUTFkcplxZGJ3tkb6Qcpec+v73ii7rx9oodJwYbJfJQ9WWzBj1e4Q2TTVV2oY0ksZiBrV5kRBtlCSxar9xvVakDO9pu+DWjCP3kZZBqnC8WVhmCTtu/7t218WXlu/AgAAOCumkIVK6CZ3oQ0mWN5sNyMLEzf8q7osRCZOwfSc1cSxhcJsfrsozDrtqKI3YGp+jSY0hhoNWNwmVcIrdbcKzhg7VdPGNSp7E2m2T1paMGGVEIwz+CooKDu19yfWms16zxlo1aF0qSsLGmqcM4NqlkCmjfIH5QKNhk4wqiz0HRBnMLh9e8rCK+tXAAAA58YgWZheRKpFmQwXWu+5p/SxgiwMEwtr7mS0KZiY83ZG4xNLsO3mKrEUcJ+kcNrRLTlxW96yoEvMIDxCnqQl3KH4uVtosCDMNK0U0sYHRAYb+pXoq7AFpS4XWOV7OC48P1JWdSfv+IBoth9knu91CUcNskr2YWhokH6cM4OhdMWY53HM3wAAIABJREFUVBt1stQiXdqpRUqbKDoK8apGaVRiG+XbV/xuoXqus9yaup5+BQAAcH70kYXqs4XzvHTOxqrZGDINF169UdF9NaonCzIbxSq6wWw5VdPQrwAAAOZOn1fOtG8izX63EBaLxWLR/Vj4sIeQ4IoYOAOeqNeZrOq17hGuGfoVAADA6ekjC23fLYQd6tpGgBSDAyOT9LqcVbtVhkzeoQT6FQAAwOkploXvOHfLuTvOvd80zyILpyL5FE/mwRsAAAAAAIAe9Pmc/W3n7jj3CFkIAAAAAABw/hTLwjZUeBdZCAAAAAAAcBEgCwEAAAAAAK6aYll427m7yEIAAAAAAIBLoacsvFcgC7tvmZvPh6cES+SvQOeY1evTB/jZe9lNVB9977iWzJPCdvbfHaSn6/jK6uekNaU+P04bTVtKiZ+7GD9n75VTWItZnRkGon2TfjbM4ZwzqQ1FrTAHb+wZZSzMqkZnzWSeHP+cN/Oz6Dw9eQlXdjg+xbLwTmG00O/Vc+lAwlgbYt6sTlsj+Fmvj7G2s3LKOJRUqao9haF/QDCZca60EWTh6G2k3HGZaOwX+dmSmZS4l6+0RHM5IVo5A1l4rP48QaKSzI017OGNIabn0o7QOBd4TSlnlO41oSevTBbO05MXcGWHkzBIFhq+Wxj0mJl0IMGMWZ95ipiJLJxJc49KkSxcBZVXEqd91atLFrl9/DY6gSws8HMGVVIezVezZf6ycCZtNBNZ2MeMKWXhcM5txEzDGF6Y0pOXM5WyME9PXsKVHU5CH1l4Z/fdwqwsjLr0tgMdVnwJE+HU7qrebNbr9W6VWPILx15iaSzFAy25ksxPruScW3jarW3VLTscTn0W/6WLNvg556vhsjB9jGi0webM0kr1C+56v7KWG7Sgxaoop9Qhkj9lPyu9rq1RdaiwbJQwQqW0CdEkrXyN0g8e+5n+HLmgz7VU69diZFZtiPwuMb3pbBZhaP3+4yjwa5tRcN9PzlkfR2p9jYNs9CtO3zYytIJYbnZvrhVEb0S1kk9kabvVs7eaNvt4hnr2Vms06MwvziiGtOCQ66+eNt9GfUfKEE8GBReN7uy8LtdzdjXZH+dZZtir11dMK3rSMFOdxJMGq87/yg5HYFJZGMucbetvO1TcFYMtVd3pffs/2i62Xi2D66N3dPCXapVXupQkl7N2mvWqMJIsjBPHszPRz4YaDZaFqdpUdTSd8Y1QbNbSxhuWq7qTONuvcn1SaMGsVQafaNv7LyJVuplabi6toc8q9xQHjX2tP2frZaNwvac6Bvtm2tljOJsJCfUW7D2Ouifc9jQcJFVy1seRWl+bn1OVHdTrxEwNNudaQS83Y5XaCqrhFk+K9TWc63IDTxoLeq/Tsx925hdnFENacMj113Sus15ICkZKZFWBJ4eM7uy8LlFAvGe9Xu93LleryrI3O/b1nDvJhMYVajSVJw1Wnf2VHY7BhLIwNY61EbCQ+nLnjkX738P/lqt1vFvOTbAqs8+Wsxwb6xzpX8SHyEL92CF+Vutj22s5IDooY7NeQN4d+p0ws6+0aVjOaukcriTqLwtDm43lZtP6/hC0v3jxGDD27X2jQEOZE0q+MozXPrLQeDaTsrS0fnJ3rpTd7MZy/VZzDsaR8cyvM/YVR9xitFlpBb2UnA2mVujdY4e6u1wWDhlIA8/88oxiSAtOfq5TzrF9m26IJ8cZ3cl5nWpyqjDz3vxIz1zsJbMGzVQHeDJv1blf2eE4FMvC9sFCgywUb0fJQkg/GaSGWOp/fmkll610nzTmnEwcpY2EUF9ZuI3KG2ebWT/HNRomC8WqeKsJ1NtXglJNpk3VyE9n6VepcvUW1K1KVNx2eVJKs+yPMky7xzRC47SdI9LTUuOUpd/YV4vYp+p3ZVFUoXzxLbz5YcnXfM6xZZnuwj3G0c6IupaqXZCz5xW9vkY/j37F0fLN2ay3gl5u1qpMK8hWmzyZHVzKua6XLMz2OiXvcc78qXnEkBYccv01neuUPtl3pAzx5JDRrbdCOse40uUzFUMZeZGSaRzjTHUkT1qtkhww8ys7HI1iWXjPuXuWN5GmJzF6J5BuUOinj3Z3VW+S+DboUyv5xlw+54IJ+iiycLG/BqTMyfs5W6NBslDwc3iyKfFGUdrYmr6XYb0FdauC4hTF0Vt+D5CFthGaSLvfIhjX6+IxpI2CJH3vNiqdSGwjZQz6x5TJQsMI7ZYsXdwPR/pX6Z7j6GBYvUpMG8pyjvaq9TX4efwrjnJQ1ma9Fcp6e2SV1gqqNxYWT0qdwHKu6yULbdc94/kqu7dkRjFWC5Zcf4fIwsWIIyW/N3MTxDi69VZI5xjXuPwKahj7WVmY86SpXy3G8qTVqk7O53NlhyNSLAvvO9f+VFko3Xka575CarBZ7jjmjkkPBuO9TNt90DFl4YH2bNEpvPxupa0+tr1S/kO8UX4XTbWn/51dvVxx2iM5K9MWk8lC6whVnKdJ4JPcUxyiCYX7o5JtMdEY9HMeHi20orfgkHG06F7P2+lnMIfqO1IK6iv4eYorjpBFpkQhkd4KesQgtEppBYttnVwKJn+mc10vWTjk2j3Omb9cFo56TfEYKAv9Ywr6xhBPDhndp5KFhrGfufrmzznGmepInrRaJR841ys7HJdiWfiuc+3vcdM8J8lC8VZlphPEfaKzJXP6EMvMW7VDuUeSn2ymEwc18q/iwYBRJqZZMo5M7M7WSD9I2Wtufd8bZfecgvlQ6a3OZL9KHqy2YMaq3SGyadmWyBwgy9DQZssNRVvaXU9dF9yGTWzuN/bFInQ/Z1EGn238y32whyw0lylkKbfgoHEU2OXL8LKcE3ut9TXc5pcPLul1SnlZmzPjSC8lZ4PSCnnLsjUzjt+kIu0lCw1zQblGo5z5JVnYtwWHXH9Hk4WFI2WIJ4eM7lPJQsNI13M2nHPEmeoknsxbdZZXdjg6xbLwgXPtT5aFyi2NXCcIJmfeFS97+oiuj1VtvkV3KF0aDnLOauLYQuGK3o5/85CoorfCaX6NBpuhRuPdhEuXuq2wNXaqpo1rVPY+umyftLRgwqr2cNWJffuksjswMj7TZkaomvZQrNRZBYU1ztiX/87OhLWDEnPrjlmyr5Qx6FdMsE1Wo5ZzTpJMCw4aR+Gkw5tqZHJWx5Fa36yfJ7ripA8JMpdtVseRXm7GKq0VhvdYqb65nqOl9fYLcQi51+XDTQPP/KIs7NmCQ66/pomyfI7tPVJiqyZ7E6lQ3yPLwvzYz525s+ecdI2m8mTeqvO7ssMpKJaFD517qMtC7YaGoRPsrjebsHdaTh9e4ih17gZqdv6Wynk72nziS8B2cxUM2+6+ZeGQ6JYcJLMMNtlXiSPkE0jCHYqfu4UGixWyNitp4wPSF1K9X4m+CltQ6nKBVb6H48ItfVLws9rr2hrIX9zKj9DVIXvhQLWv+j4RUvQb+6m/c372fCbfSRX3KG2kjEHDmSE0PjXHllMqJqktOGQcRe5oj90elctZOxPq9dX8PNkVR/CYuCscoMf6bqHfCgN6bK6+2Z4jpjWMBbnX5c+TQ8/8kizMnAmHXFMyPSc7UZbaqPdIibMt6pP6VdJUXzG2pvec3rIwWyMlre2cI85UJ/Hk5V3Z4TT0jBbKi0jn2ayzsWo2hkzDhVdvVE7lK71co1VX0tDnWM0zsXk0M8+kvkfi8rwxz/PkOXJ5NToV8/QkV3YYhz7PFt537l72TaSwpftB2dwSG4ATY7oqZFa2wimZ7XWdMyGcEbMdRwA94MoOVvp8oOKOc7ede69pPocstKCuywCYE7mLx259C5eOuTLj6SxnQjgbZjyOAIrhyg5WimXhbefeadzbT9zDD5unX0AWTkRyRX1mUTgAAAAAAEAPimXhOx+6G++5N9517z5qnnoWWQgAAAAAAHDeFMvCG++7zV33+k13773m008jCwEAAAAAAM6bYln45kP3+i336lvu3sPmU59FFgIAAAAAAJw35dHC99zPbrvX3nH3HhItBAAAAAAAOHuKZeFbj90b77qf3XH332+eesYiC7tvQJrP270ms+pkr/jtUaMxbJ1FfU+I7Zv0nYOnt3kmngEAAACAs6FYFt507q0P3I333YMPms98Pi8LfdUwlwnrhFadSCb1qtFpZOEo7p7NB3YKZOHoNguenMsoAwAAAIBzoVgW3nHulnM3nXvYNE/nv1sYzFBnMmGd0qrT6JXT+fk0snAmHWlRIgvHtxlZCAAAAACj0Odz9nedu+vc+03zTE4WRpJhO2E9fJUvnr12P3ns7a7qzWa9Xu8+3Zf8+qaXWJqs97HK+45glHE3ZRXJJLFGhvq22eU+VyjUSEnbqU8yW71G1r2b2KoIv3jdz2J99aQGT+rl7srbHxUo8E6C9pCEKCtso+VqHWbTUXu6JwePMj0tAAAAAFwcxbLwgXPvOveuc4+a5tmMLIyjFtvZ5nYCG099gy1V3Znt7v9op7Tr1TKYk3tHB38Nsqqqo4l/529vvu9nlamRob7+n8IUPVcjMa0Q6TPUSNyr+0qviSGtlEG4qaoD5aZ5I1tu20zr9X7rcrXq9rNuzxHEbHkbxVXK1jqZc49RpqQFAAAAgEukWBY+dK79PW6a51RZmNIcKVUUzMjVCEn738P/lqt1vFvOrZ9VesWCUgJpoFuVrW+Uc8IssUb5tOnNRTXSpJBinEVqFBitZ2n1pLg7p/f2NyskG3q1kV+pVBU1WThglBWMBQAAAAC4CIpl4XvOtb8PmubzmixMTln1CEhH5C06m7bT0pQYTP3PL82iH/JxGW/NnRfkicr1JtJ6jaz1ld1jrZGQNjnpL6xRlIfsK81iY1pN7Iv6Je+NTLmaOKrqzaaua6X43m3UOSItOo3PFvYbZWoRAAAAAHBRFMvC951rfxlZmH4Thz7plAIiuixsdyeftoqm6n2siqbk0SpKWSZZa2Tam5R2thqVyMLCGvl5qL6SCihIK9R3ESq7xLOFojfy5eZk4WazqVdytLB3G+23CAb0koVlvQ5ZCAAAAHAN9JeFTzRZmFYh00QL291SiRNYVRA9mzpaaK3RsaKF+Vhiyjh7Wksrb4WatmrSy8ZQbjZauG9O4X01fdtoW7BUPtFCAAAAABiFaWShGNLJTDqNzxamZKFc5lCrwr1Fz9pN+2yhWqNs4G2CZwszvpJ8Yk2bb+NkVro3DOXaZOGupDHbqI1kroXie8lC6yhTiwAAAACAi2KQLHw+LQuVkE5u0hms5/Nm2RlZmJiTV7UeJDFa5eW7W6tofTOnVqN8fRXFla2RmjZhurA5XSNpb8ZXqUr7Ritp9foq0cGMN/I2m2VhJPYGt9HWnnQegifHGWWqWQAAAABwUUwgC7WQjmHS6T0jlj5WkIVh4ih1b6u62aaW9B0ebBz9u4WrwzOTiaCbXiPxS33JBzE9y8IaxdElqb45X8XHGP2cCRV26xQ4OefJrM0FsnCXWWtCvo0Uq7zjBGGW9OQ4o8xQOgAAAABcCKPLwnlOI+dplY5u8xFrNAvnDTHiVBUYpQVn4X0AAAAAuGwmeuUMDOeEeqD7MXhpyecZMU9lZbJKi1MCAAAAAIwEsnC2nFTMdBcZzk9RFXKesnC3KhZRCAAAAABTgywEAAAAAAC4apCFAAAAAAAAVw2yEAAAAAAA4KpBFgIAAAAAAFw1yEIAAAAAAICr5giysPvGxfm8E3Iyq072SYEeNRrD1lnU94RoX6xPHjwDm2V2rz89yjtQ5/k9yR6MMgaO443Z90AAAAA4EZPLQn/GNJdJyYRWnUgm9arRaWThKO6ezQf9CmThbGzOcwRTT+WNCcodIcvRrRJG2VzOwAAAADA3ppaFwSxkJpOSKa06zWz3dH4+jSycSUdalMjC+dicZ/pefDGhwlEY3ypkIQAAABQxrSyMJpfbSclhqVo8Q+l+SN3bXdWbzXq93q1vS37t20sszWr7WKUvruumrKIJtVgjQ33b7HJr+oQaKWk79Ulmq9fIuncTWxXhF29bxJgULXJSgyf1cnfl7Y8KFHgnQXtIYuItCC2xx7Y7DlvCvzN+lkeKqV+pslAbZcZVqIUt6KVJtUJglSh80iNFP6toZinjyHBW0a0S22i5Woe5ddSePsoGn4FtNQIAAICzY1JZGN+Z3s4otpOUeHoTbKnqzoxm/0c7bVmvlsGc3Ds6+GuQVVUdTfw7f3tzOj+rTI0M9fX/FKZhuRqJaTWpotdI3Kv7Sq+JIa2UQbipqgPlpnkjW27bTOv1futyter2s27PEbRQstKZHtvZkBIOos36SDH1DVkWajarrZDxRj5trhW8PlonCxZGinJWMfVJTeSKZ5WsVXqPTQk2PVOTVfYzklYjAAAAOD8mlIWpuVJKFQWzLvUuePvfw/+Wq3W8W86tn1V6xYJSAmmgW5Wtb5RzwiyxRvm06c1FNdKkkGKcZTpZYLSepdWT4u6c3tvLCskGUTdkeuw2XX5JZ6TV5ZFi8oZUonGE6vTsFHIrGAvWy02eVSxZaLLQcFbpNX79Gqfqr8nCAWfggvMkAAAAnBXTyUIxPCLf5U5MxzpTj9S0LfU/vzTL7DN/791bV+XdyI/K9SZLeo2s9ZXdY62RkFZUBAU1ivKQfaVZbEyriX1xjpr3RqZcbQJc1ZtNXddK8YrN+R67s0yQx0mb9ZFi6huKJJdt1lsh741MWlVYGVRhZqRI5xJDnzSpfkWn9Ri/nSPSNySMxfU7A6tFAAAAwFkymSxMSLJFbmIh3fTWZWG7e7vAKcK3oY9V0bRLiMyY9go1Mu1Nzn5tNSqRhYU18vNQfSUVUJBWqO8inL17h2S8kS83Jws3m029kqOFchvle6wQIzP2SWmk9JWFWZuVVtC9YUgrtoJNnuRGSspXtj45RBb2Hr/7LUpTFcvCsjMSshAAAOCSmEgWSvfvp4gWtrstEYORrCqInk0dLbTW6FjRwnwsMWWcPa0pLlSFoTvdG4Zys9HCTrAsqRkkFZytSytL1imDLNJ9bFlojMvtjCjwhiHtoGhhfqSYziojy8Ih43dbqOQVooUAAABQxDSyUAwIZCYWxieXkvf1xTKHWhXuDWb/qdCiuDfYkn+SRw9UqDXKBzmEzUU18vdmfCX5xJo238bJrHRvGMq1ycJdScY2MtRmX25ogG6zIa6e7RuCcdYWSBlZkl7SULYBnD4ik9QioRXl30cWDhu/wi0DuTiDVcYzsFoEAAAAnCWDZOHzaVmo3LzPTSyCNVveLDsjCxNz8qrWb4QbrfLy3a10O5QT2xDtFWqUr6+iuLI1UtMmTBc2p2sk7c34KlVp32glrV5fRTRlvJG32SwLowm9HsjK91ipc6s2G2Rhtm+oKzYFm/VW0L2RTZtvBa+Pem8iNY198WZTrj/3lYWDx+/WnnQewigb5wysmgUAAABnyQSyUAsIGCYWu7nXJpzxZGVhmDhK3duqbrapZVvbWdxmsxn9u4WrfdapoJteI/HbdAd7BW9FNYojCFJ9c76KjzH6ORNo6tYpEZTRPJm1uUAW7jJrTTAGBBOGx3GphOAUbLZEwBRvxAVoQ1TqN4mu3r8FD8XK6btWxd01P/aFs4rWN9RxlDur5K3Kt5EqzJKjbJwzsKF0AAAAODNGl4XznCrM0yod3eYj1mgWzhtixKkqMAvHRVybN86xFYw2z7NqAAAAcJZM+jl7GMIJ53zdT4lLSz7PCGbPXfDG/DG1USZ6CgAAAFACsnC2nHT6Lq/IO0MQQl3wxvzJtdFu9SqiEAAAAMYCWQgAAAAAAHDVIAsBAAAAAACuGmQhAAAAAADAVYMsBAAAAAAAuGqQhQAAAAAAAFfNEWRh961683kL4mRWney18T1qNIats6iv6WCzkfPppVmS3i+1fzpPjsUxW+Syv694Rn0bAAAAjsrkstCft85lUjKhVSeSSb1qdBpZOIq7C4stEDNHbsBh3hhBFk7nyR4Iph/vvHGquxyjl3tyTwIAAMB5MbUsDGYhM5mUTGnVaeaVp/PzaWRhn4CYzchjd9EJyiuO/k3jyT6cWsxcTqjw1J4EAACAM2NaWRhJhu2kZPc15tQMpfshdW93VW826/V69x3n5BedvcTS5LWPVYd9qYy7KatIJok1MtS3zS737WqhRkraTn2S2eo1su7dxFZF+MXrfhbr6zkxlToQM20xiemxIHK7+Ze2oNSvDN7YWbM/NFD+gp+G9JwhntTLXa7WofM6GkX3xuDzhp5W9EZkmdA1hDZaZHqOWO7ZexIAAADOjkllYXxnejuj2E5S4ulNsKWqOzOa/R/ttGW9WgZzVO/o4K9BVlV1NBHu/O3N6fysMjUy1Nf/U5iG5WokptVEkF4jca/uK70mhrR6Bl0LY4d021dQSsmcozarO0fYWzBhVa4ybZL1el/4crWq4iMEIdOr56QMsHoyV264IVG6EuMadN7ItYLVnqoO02ptpPYcrdxz9yQAAACcHxPKwtSMNaWKAiWg3gXvRiWW2wyi3XJu/azSKxaUEkyVdauy9Y1yTpgl1iifNr25qEaayFKMs0wni4zO7N+JGXUu2+NBvXwL5vpVVhaqSzZlWdiz55gyFzyZLdeva6rmmpgZcN6wjO6eXVVuI2M/7zV+Z+1JAAAAOEemk4Vi4EW+y90ReYvOpu3UIyUGU//zS7PM8/L33uOldbt8o3K9yZJeI2t9ZfdYaySkTU7sCmtkWIZon2tn02Yn20KMsao3m7qukzmqOacdp+xVWtDWVOm8FAPySrag5/i7yzyZL7dzRFqgK2Jm+HmjqIhDNj2EuWBVip7jd8aeBAAAgLNkMlmYkGSL3MRCuumty8J293aBU4RvQx+romlXtIpSlknWGpn2JueZthqVyMLCGvl5qL6SCihIK9RXyMFPttls6pUcLTR6MrtXbsF5ycLxPWkod79FqFovMTNCK8je8O9UFASvbaKp9/idrScBAADgPJlIFkp3yqeIFra7LffmR7KqIHo2dbTQWqNjRQvzscSUcfa0aisL4a39voPTE4dJOV9qtHAKT1rL3dSVVLMTxbhMkb0qGSIdFC0cMn7n6UkAAAA4V6aRheKt98zEIvtkiywL9eDHEKvCvcFsOBVaPNazhWqNsoE3aXNRjfy9GV9JPrGm1dpYkzJBysShcs6l4cJkj1WymkgW9u05iwGeNPW6Ng65LguxjXPeEIvInztk6+Q2yqumYeN3jp4EAACAs2WQLHw+LQuV2+S5iUWwds2bdWZkYWI6W9X6jXCjVV6+uzVlwpsXdkvs/L1CjfL1VRRXtkZq2oTpwuZ0jaS9GV+lKu0braRV6iuveezkHcS1bH0jtGuxKHsTaXYarZk+RBb27DlDPGnrdduWTZchFD/OeUMwSx9HWjR0X7QSWRV7zvDxOztPAgAAwBkzgSzMBSIyEwvvWZ70sYIsDBNHqXtb1c02tWxrO4vbbDajf7dwtc86FXTTayR+ue5gr+CtqEZxBEGqb85X8TFGP2cDXAF6nLEtqq1WPljUNay0BbPTaMkbuUiU2IKZ1p/Mk7kem/GD4o1xzhvy30rrdx1ScGslZVY8iPTxe26eBAAAgHNmdFk4z6nCPK3SKV29eCJDjsR0Rsyiekfk5J6clcNPZcwoo3tWngQAAIDzZtLP2cMQTjjn6360O7uqEKDF1GPzC2MBTwIAAMDRQRbOlpOGAtRVkwApcj12tx4TKZMDTwIAAMCxQRYCAAAAAABcNchCAAAAAACAqwZZCAAAAAAAcNUgCwEAAAAAAK4aZCEAAAAAAMBVcwRZ2H2r3nw+tDWZVSd7bXyPGo1h6yzqazrYbOQ8v2U3K5KtXmr/POt72a0/T58DAADA6ZlcFvrzx7lMSia06kQyqVeNTiMLR3F3YbEFsvBUOvfI5Q5rhRFk4TzrezGtL9R3LmdgAAAAmBtTy8JgFjKTScmUVp1mXnk6P59GFvYJTNmMvOxg0aTlFcdv51ffy2l9ZCEAAAAUMa0sjCTDdlKy+xpzaobS/ZC6t7uqN5v1er37jnPyi85eYkkG9LHqsC+VcTdlFckksUaG+rbZ5b5dLdRISdupTzJbvUbWvZvYqgi/eN3PYn09J6ZSB7KwLSYxPRajYIpRuzT7w/x8u7aJE3JBXKtpMz1H6s+GVtBqpPScIT02W25Y4SCx3EaG+qpWnaL1dU8uV+sws47a0+s7+AyspwUAAICzZVJZGN+Z3s4otpOUeHoTbKnqzoxm/0c7bVmvlsFs3zs6+GuQVVUdSYrO396czs8qUyNDff0/hWlYrkZiWk2M6DUS9+q+0mtiSKtn0LUwdki3fQVdkMg53FTVYdFtcev1PsvlaiX0wuWqTtqdrJGa1t5zEt4QizTUqHOEIKB69dhsudrozreRKUw2n9bPeTI2K2t5MuceZ+BcvwIAAIAzZUJZmJo5plRRoATUu+Dtfw//W67W8W45t35W6RULSglEh25Vtr5RzgmzxBrl06Y3F9VIE1mKcZbpZJHRmf07WajOZXsaK7vAWNMeD+rle06uP2dlobroVpaFPXtsplzjmUEhe9CcWj/rST/vVEmaLBxwBi44TwIAAMBZMZ0sFAMg8l3ujshbdDZtpx4pMZj6n1+aZZ6Xv/ceL1Lc5RuV602W9BpZ6yu7x1ojIW1yYldYI8OCTvtcO5s2O9kWYoxVvdnUdZ3MUc15a1GxRNrtMOgCsVw5bVnPsXWRdF6KAXklW9Bj9XL10W1oo7xIm1Xr5z3ZOSJ9q0ORhcPPwGoRAAAAcJZMJgsTkmyRm1hIN711Wdju3i5wivBt6GNVNO2KVlHKMslaI9Pe5DzTVqMSWVhYIz8P1VdSAQVphfoKOfjJNptNvZKjhWLOvlYtCF/aps3GFszulXvOvGSh0oKqJ9XRnWsj0+2EGbd+7Mn9FsGAXrJwhH4FAAAAZ8pEslC6Uz5FtLDdbbk3P5JVBdGzqaOF1hodK1qYjyWmjLNql0qTAAAI9klEQVSnVVtZCBTu93VDS9FhpthOlQw3DooXScdcarRQrdfQyNvOiGKdPbfWt3pyU1dS+UQLAQAAoIhpZKF46z0zsTA+QZSShXoYaYhV4d5AV6RCi8d6tlCtUTbwJm0uqpG/N+MrySfWtFoba6IwSJk4NN97ZNtlEZWfN8vlloYLkyNFyWoiWdi3x2bKtbbP7ti4Zlp9Z9f6pvHbxsbXZcHKcc7A1goCAADA+TBIFj6floXKbfLcxCJYBejN3zOyMDHbr2r9RrjRKi/f3Zoy4c0Lu8WK/l6hRvn6KoorWyM1bcJ0YXO6RtLejK9SlfaNVtIq9ZVXj3by7mQVTLt1TwbpogM1ERW1t/cuSj2gpKa1jZSc1Zo7e8rCnj02W64yug1tpNV3hq1vG7/bMZLOQ6jvOGdg1SwAAAA4SyaQhbmQTmZi4T3Lkz5WkIVh4ih1b6u62aaWbW1ncZvNZvTvFq72WaeCbnqNxC/IHewVvBXVKI4gSPXN+So+xujnbKgwQI8ztkW11coEi7qZF4jrVKViN+pBKjntwjRS0n8n0sdrdZUwltRzMr0uX98CT4r9NRMDjS2bY+vnxr5/nLYkN0w/zhnYUDoAAACcGaPLwnlOFeZplU7pKsITGXIkpjPiVNWbhVuPyDzrO8/WN1o1T5cCAADAWTLp5+xhCCec83U/2p1dnwkA42Ia+/mlvgAAAABmkIWz5aShAHX1IgBMSW7s71a2IgoBAABgLJCFAAAAAAAAVw2yEAAAAAAA4KpBFgIAAAAAAFw1yEIAAAAAAICrBlkIAAAAAABw1RxBFnbfqjefD21NZtXJXhvfo0Zj2DqL+poONhs5z2/ZzYpkq5faP10LjsUxW+Sye90Z9W0AAIArZXJZ6M8f5zI5mNCqE8mkXjU6jSwcxd2FxRaIilPp3COXO6wVRpCF07VgDwTTj3e+uphed3JPAgAAQD+mloXBbGAmk4MprTrN/O50fj6NLOwTmLIZedlBm0nLK47+TdOCfTi1mLmcXndqTwIAAEBPppWFkWTYTg52X2NOzRS6H1L3dlf1ZrNer3ffcU5+0dlLLE0i+1h12JfKuJuyimSSWCNDfdvsct+uFmqkpO3UJ5mtXiPr3k1sVYRfvO5nsb6eE1OpA1HRFpOYpopRMMWoXZr9YX6+XdvEibEgrtW0mZ4j9WdDK2g1UnrOkB47pAX1cperdei8jkbRvTH4fKWnFb0RWXakXnf2ngQAAIDeTCoL4zvE2yv7drIQTzOCLVXdmVns/2inD+vVMpgrekcHfw2yqqqjCWnnb29u5WeVqZGhvv6fwnQoVyMxrSZG9BqJe3Vf6TUxpNUz6FoYO6TbvoJiSeQcbqrqsOi2uPV6n+VytRJ64XJVJ+1O1khNa+85CW+IRRpq1DlCEDK9emzKAGsL5sqNmzDbysmce5yvcq1gtedIve7cPQkAAAD9mVAWpmaOKVUUKAH1bnQ3OrDcZhDtlnPrZ5VesaCUYMqqW5Wtb5RzwiyxRvm06c1FNdJElmKcZVpXZHRm/05UqHPKnsbKLjDWtMeDevmek+vPWVmoLtmUZWHPHmvKXGjBbLl+XVM118TMgPOV5awyp1533p4EAACAIUwnC8UAiHy3uSPyFp1N2ylASgym/ueXZplv5e+Bx0vcdvlG5XqTFr1G1vrK7rHWSEibnGAV1siwHNA+582mzU56hRhjVW82dV0nc1Rz3lpULJF2Owzzc7FcfdWhvefYukg6L8WAvJIt6LH+7rIWzJfbOSJ9Y0ARM8PPV0VFHLI5Qa87a08CAADAICaThQlJtshd4KWbz7osbHdvFxpF+Db0sSqa/kSrKGWZZK2RaW9yvmerUYksLKyRn4fqK6mAgrRCfYUc/GSbzaZeydFCMWdfqxaEL23TV2MLZvfKPWdesnD8FjSUu98iVK2XmBmhFebe687IkwAAADCMiWShdMd6imhhu9tyj3wkqwqiZ1NHC601Ola0MB9LTBlnT6u2shBm2u87OD1xmCnGUiWDVYPiNtIxlxotnKIFreVu6kqq2YliXHPrdefrSQAAABjKNLJQvAWeucDH1/vOFl0W6kGIIVaFe4NZaSq0eKxnC9UaZQNv0uaiGvl7M76SfGJNq7WxJimClIlD871Htl0WUfn5q1xuabgwOVKUrCaShX177GJAC5p6exuHXJeF2MY5X4lFzK7Xna0nAQAAYDCDZOHzaVmo3K7OXeCDNWTe7C8jCxPTyqrWb0gbrfLy3a3tEt6AsFvq5u8VapSvr6K4sjVS0yZMFzanayTtzfgqVWnfaCWtUl957WEn7yC+ZO4bWlxqX7gS4/J8570TUg/sqGltIyVntebOnrKwZ48d0oK23r7tUekyhOLHOV8JZs2w152pJwEAAGAEJpCFuYBA5gLvPVOTPlaQhWHiKHVvq7rZppZPbWdTm81m9O8WrvZZp4Jueo3EL8gd7BW8FdUovpMv1Tfnq/gYo5+zgaYAPc7YFtVWKxO06WZeIK5TlYrdqAeL5LQL00hJ/51IH6/VVcJJUs/J9LrJWjA3UjJ+ULwxzvlK/ntuve48PQkAAABjMLosnOcle55W6ZSuIjyRIUdiOiNOVb1ZuPWInLwFZ+Xwefa6c/QkAAAAjMOkn7OHIZxw7tX9eHZ2dR/AaTGNlPzCWMCTAAAAVwyycLac9Ja8unoRYE7kRspuPSZSJgeeBAAAuF6QhQAAAAAAAFcNshAAAAAAAOCqQRYCAAAAAABcNchCAAAAAACAqwZZCAAAAAAAcNUgCwEAAAAAAK4aZCEAAAAAAMBVgywEAAAAAAC4apCFAAAAAAAAVw2yEAAAAAAA4KpBFgIAAAAAAFw1yEIAAAAAAICrBlkIAAAAAABw1SALAQAAAAAArhpkIQAAAAAAwFWDLAQAAAAAALhqkIUAAAAAAABXDbIQAAAAAADgqkEWAgAAAAAAXDXIQgAAAAAAgKsGWQgAAAAAAHDVIAsBAAAAAACuGmQhAAAAAADAVYMsBAAAAAAAuGqQhQAAAAAAAFcNshAAAAAAAOCqQRYCAAAAAABcNaWy8P8HyXYHDW4Qp+UAAAAASUVORK5CYII=" alt="" />

 
 

linux基础(7)-IO重定向的更多相关文章

  1. (大数据工程师学习路径)第一步 Linux 基础入门----数据流重定向

    介绍 开始对重定向这个概念感到些许陌生,但通过前面的课程中多次见过>或>>操作了,并知道他们分别是将标准输出导向一个文件或追加到一个文件中.这其实就是重定向,将原本输出到标准输出的数 ...

  2. Linux基础(06)IO复用

    在Windows文件指的就是普通的肉眼可见的文件 , 而Linux一切皆文件 https://blog.csdn.net/nan_nan_nan_nan_nan/article/details/812 ...

  3. linux基础之IO模型

    一.IO模型 一次read操作: (1)等待数据准备好:从磁盘到内核内存 (2)从内核内存复制到进程内存 示意图如下: I/O类型: 同步和异步:synchronous,asynchronous 关注 ...

  4. linux基础编程:IO模型:阻塞/非阻塞/IO复用 同步/异步 Select/Epoll/AIO(转载)

      IO概念 Linux的内核将所有外部设备都可以看做一个文件来操作.那么我们对与外部设备的操作都可以看做对文件进行操作.我们对一个文件的读写,都通过调用内核提供的系统调用:内核给我们返回一个file ...

  5. linux学习14 Linux运维高级系统应用-glob通配及IO重定向

    一.回顾 1.bash基础特性:命令补全,路径补全,命令引用 2.文件或目录的复制,移动及删除操作 3.变量:变量类型 存储格式,数据表示范围,参与运算 二.bash的基础特性 1.globbing: ...

  6. OracleOCP认证 之 Linux基础

    Linux 基础 一.SHELL 1: Shell 简介 shell 是用户和Linux 操作系统之间的接口.Linux 中有多种shell, 其中缺省使用的是bash. Linux 系统的shell ...

  7. Linux 基础命令、文档树 和 bash

    最近发现了一个总结得更好的:bash cheatsheet 本文只是我对 linux 基础学习的一个总结,可能仅适用于复习用.算是我的 Linux 备忘录. 最基础 tab 补全 * 通配符 ctrl ...

  8. (转)Linux基础知识学习

    Linux基础知识学习 原文:http://blog.csdn.net/ye_wei_yang/article/details/52777499 一.Linux的磁盘分区及目录 Linux的配置是通过 ...

  9. Linux 基础入门一

    操作系统1.简介OS: Operating System,通用目的的软件程序操作系统的内核(kernel):  操作系统其实也是一组程序.这组程序的重点在于管理计算机的所有活动及驱动系统中的所有硬件: ...

  10. Linux 基础学习2

    目录 Linux 基础学习2 文件目录结构 文件命名规范 文件系统结构 linux应用程序的组成 绝对路径和相对路径 目录名和基名 切换目录 切换到家目录 切换到上一次的目录 显示当前的工作目录 列出 ...

随机推荐

  1. poll机制实例参考

    poll机制:为了减少CPU资源的占用率,在编写驱动函数中添加poll机制 select,poll,epoll都是IO多路复用的机制.I/O多路复用就通过一种机制,可以监视多个描述符,一旦某个描述符就 ...

  2. iOS学习笔记(十二)——iOS国际化

    开发的移动应用更希望获取更多用户,走向世界,这就需要应用国际化,国际化其实就是多语言.这篇文章介绍Xcode4.5以后的国际化,包括应用名国际化和应用内容国际化.如果是Xcode4.5之前版本请参考. ...

  3. eclipse远程debug Java程序

    使用Eclipse JPDA远程调试Java程序 本文将介绍使用Eclipse JPDA,在Eclipse的开发环境下对远程运行的Java程序进行调试操作. 请按以下步骤进行(本人已经在Eclipse ...

  4. LibSvm添加到Matlab

    1.下载libSVM工具包 http://pan.baidu.com/s/1bnGNTBT或者下载最新版的到http://www.csie.ntu.edu.tw/~cjlin/libsvm/ 2.解压 ...

  5. js,jquery和dojo操作dom

    最近想学习arcgis javascript api,拦路虎就是dojo,为了便于理解dojo,在学习dojo的同时参考原生js和jquery,下午学习了下dom操作,mark下! 一.获取元素 js ...

  6. speech sdk 文字转语音

    1.下载SDK包 https://www.microsoft.com/en-us/download/details.aspx?id=10121 2.直接上代码 // SpeechRecognition ...

  7. Django CSRF 原理分析

    原文链接: https://blog.csdn.net/u011715678/article/details/48752873 参考链接:https://blog.csdn.net/clark_fit ...

  8. hadoop学习第三天-MapReduce介绍&&WordCount示例&&倒排索引示例

    一.MapReduce介绍 (最好以下面的两个示例来理解原理) 1. MapReduce的基本思想 Map-reduce的思想就是“分而治之” Map Mapper负责“分”,即把复杂的任务分解为若干 ...

  9. Python操作——Memcached

    Memcached是一个高性能的分布式内存对象缓存系统,用于Web应用以减轻数据库的负载. 它通过在内存中缓存数据和对象来减少读取数据库的次数,从而提高动态.数据库驱动网站的速度. Memcached ...

  10. position:absolute width

    position:absolute; left:0px; right:0px; top:0px; bottom:0px; 设置布满整个父范围,设置了absolute的元素可以通过以上4个属性来展开面, ...