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Introductiontomachinelearningwithpython(内附code)

上传者: weixin_44366059 | 上传时间:2016/2/4 6:39:47 | 文件大小:86.53MB | 文件类型:rar
Introductiontomachinelearningwithpython(内附code)
作者:AndreasC.Müller&SarahGuido内附电子书PDF版本以及全套code

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评论信息

  • lordcat:
    完美图文带书签,392页。附了一本旧的草稿版,没特殊需要的可以直接删了。2020-03-09

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