菜菜的sklearn课堂(完整版).rar

上传者: 35443700 | 上传时间: 2021-02-26 09:15:07 | 文件大小: 94.13MB | 文件类型: RAR
这是我目前看到的最好的机器学习算法学习资料。 可在B站找视频,找不到的给我留言。 讲的很清楚,有条理,课件内容丰富。

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评论信息

  • selene1205 :
    感谢感谢 我现在都买不到这个 他们都不卖 非让我买新课才给。。。尴尬
    2021-06-25
  • 有害诗篇 :
    很有用,谢谢大佬分享!
    2021-04-29
  • 情懷#妳懂嗎 :
    非常完整的
    2020-07-10
  • Smile_tong1 :
    完整版的,感谢博主
    2020-05-22
  • tl_ztj :
    没有第12课。
    2020-05-05

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