在python怎么安装numpy scipy pandas 如何系统地学习Python 中 matplotlib,num...

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pandas可以直接用pip包管理器安装,在命令行中输入:
pip install pandas

对于windows操作系统,安装numpy和scipy需要下载与编译的安装包:
1.在网页中 http://www.lfd.uci.edu/~gohlke/pythonlibs/#scipy 下载对应操作系统的预编译安装包,需要根据python版本是2.x还是3.x,系统是32位还是64位进行选择
2.使用pip包管理器进行安装,在命令行中输入
pip install 下载scipy安装包的路径

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