


Guido van Rossum 去 Google 应聘,只写了三个词「I wrote Python」的简历是真的吗?
回复内容:
这只是个段子,用来讽刺google冗长的面试流程的 可惜你的截屏没有截到我的评论. 内容如下可以断定是编的:
1. 根本没有英文出处.
2. Google请Guido就是冲着Python去的, 条件是允许他用一半的工作时间来维护python, 版权归他自己, 因此面试怎么可能不知道Guido
3.他的简历是公开的, 如vieplivee所列
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个人认为, Google能请到Guido这样的牛人, 基本也是Google的荣幸. 因为这一档的大牛, 基本都是大隐隐于市, 行踪飘忽不定,平时不知道在干啥, 一出手就是大手笔.
所以"面试"这个词, 根本谈不上, 谈谈理想, 聊聊股份, 你想啥时候来随便你. 差不多就是这样了. https://plus.google.com/115212051037621986145/posts/R8jEVrobbRj 确实在内部员工系统上,看到过一份简历,说:I created UNIX. 遂去看,他前一个季度都在忙什么,发现他在发明编程语言…
更新一下吧:
……回答的时候还不懂,为什么他在搞一个go的东西…… 只是个段子而已。这种大牛请都请不动,还面试啥啊,还简历呢。。。。。。。。人家不需要简历面试的好伐 据不负责任的考据,出处是这里:
https://twitter.com/hecaitou/statuses/8077570203
辟谣在这里:
http://www.v2ex.com/t/54384
Guido 1989年创造了Python语言,01年获得FSF的“Award for the Advancement of Free Software”大奖。我02年读大学那会Python虽然还不怎么流行,但是已经有很多关于这门语言的书籍和网站了。而Guido 05年加入Google时,那时他已经非常有名了! 这不都去了dropbox了吗。还在纠结上一轮儿啊。 ....... 当一乐看也不错呀 某一类人是不需要面试的,更别提什么简历了。

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