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【运筹OR帷幄|数据科学】pandas教程系列电子书

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【运筹OR帷幄|数据科学】pandas实战教程系列电子书

本书是由【运筹OR帷幄】公众号旗下的数据科学社区共同创作和整理的开源电子书。

本书的特点是简单易上手,每一章节都有相应的jupyter文件,可以直接放在带有jupyter notebook的python环境中运行。

书籍目录

预备章:Jupyter简介

第一章:数据分析入门 (code)

第二章:数据导入与导出 (code)

第三章:数据分组与聚合 (code)

第四章:数据的索引、汇总和缺失处理 (code)

第五章:从 Pandas 小白到 Pandas 能手(code)


分析实例一:豆瓣电影分析--华语篇(code)

分析实例二:豆瓣电影分析--全球篇(code)

分析实例三:NBA 投篮数据分析(code)

分析实例四:运筹学薪资分析(code)

注:本电子书中的预备章为转载文章,其余均为【运筹OR帷幄】原创文章。转载文章已经表明出处,且所有文章均在公众号中发布并获得授权

特别感谢参与本书编辑的同学: yeungsk, tiny-boat, xingyu321, qiu-pinggaizi, shanshanxu33

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].