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ucOS-II源码阅读笔记-底层代码详细注解

于 2021-05-06 发布
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下载积分: 1 下载次数: 3

代码说明:

该笔记并非源代码的详细讲解,亦非μC/OS-II的使用说明,而是汇总了阅读源码过程中产生的疑问及解答,进而从中归纳总结出μC/OS-II系统的内在机理,对于想从本质和源头探索操作系统的程序猿或许有点参考帮助,或许能够启发更优质的使用μC/OS-II的方法,甚者若能就实际情况来优化μC/OS-II的内核以提高软件的质量则更当令此文欣慰了。所谓学然后知不足,教然后知困。本文并非教学总结,无能面面俱到,假如看官正为类似问题而纠结,那么若能知遇此文,就算是缘分了。

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