深度学习源码与MNIST图片标签数据集.7z

上传者: 41896770 | 上传时间: 2021-08-10 13:07:30 | 文件大小: 15.43MB | 文件类型: 7Z
深度学习的章节源码以及杨立昆的手写数字识别数据集(图片与标签的数据集)

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