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Programmers can only be 35? The 74 year old programmer in the United States has been programming for 57 years and has not retired
2022-07-02 07:55:00 【Python crispy corner】
Most people say that programmers are the representatives of low-key and rich , But once the age breakthrough 30 year , It is easy to fall into all kinds of dislike , Can't escape The law of thirty-five .
This makes many middle-aged programmers feel that they suddenly have several swords hanging over their heads .
a 74 Year old data scientist Gene D’Angelo On the contrary . He once raised a topic in the community :74 year , Programming 57 year , Am I the longest working programmer ?
Cause a heated discussion , Actually 35 Age is not an obstacle . Weak learning ability , Failing to keep up with technological changes and development is the root cause of the problem , Programmers who escape the 35 year old rule are constantly learning .
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