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算法、编程学习笔记

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Study-Notes

总结编程学习中的一些知识点,主要包含以下几个方面:

  • C++
  • 数据结构和算法
  • Git
  • 机器学习和深度学习
  • python
  • Opencv
  • 大数据

C++

C++有阅读《C++ primer plus》的读书笔记,完成前面13章的阅读笔记

数据结构和算法

阅读笔记包括《大话数据结构》和《数据结构算法与应用:C++描述》,前者只是看过前面几章,后者是目前正在看,暂时完成前6章的读书笔记。

机器学习

主要是Coursea上AndrewNg的机器学习课程,目前完成所有课程的学习笔记


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