【机器学习】菜菜的sklearn课堂(1-12全课).zip

上传者: lhwjgs123456789 | 上传时间: 2021-02-11 11:08:14 | 文件大小: 157.45MB | 文件类型: ZIP
机器学习sklearn课程,对应b站的菜菜课程

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评论信息

  • weixin_37682172 :
    谢谢,课件没有问题
    2021-05-11
  • qq_43523296 :
    谢谢,课件帮助非常大
    2021-03-17
  • 周周追寻 :
    谢谢,课件没有问题
    2021-03-09

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