Linuxtiny-cuda-nn直接安装

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根据配套的文章命令,就可以轻松的在自己电脑上(服务器linux上)安装成功tiny-cuda-nn啦!!git不下来?没关系,我下载好啦!安装总是报错?没关系,我下载的这个是全套完整的!!跟着安装命令步骤来,准没错!芜湖~~

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