Musk: I Work 90 Hours a Week; Beware of Crayfish 'Going Crazy'...

比推Publicado a 2026-03-12Actualizado a 2026-03-12

Resumen

In a roundup of discussions from the crypto community on X, Elon Musk claimed he works 90 hours per week, sparking mixed reactions. Some users questioned whether he was subtly criticizing public figures like Biden or Gates, while others sarcastically commented on his wealth accumulation. Separately, there were observations about increased solidarity among Silicon Valley’s Chinese community. Another topic involved unusual use cases for crayfish, described as "crazy." The post also featured a discussion on ideal work environments. The article includes multiple embedded images and ends with links to related social channels and news sources.

Dear readers, hello~

What have the KOLs in the crypto circle been talking about in the past 24 hours?

Note: The following content is compiled from the X platform and represents personal opinions, not the stance of this platform, and does not constitute investment advice.

Musk: I Work 90 Hours a Week

Popular Replies:

Who is he subtly criticizing? Old Biden or Gates?

Musk: You 8 billion people, put all your money in my pocket;

Work hard, everyone, to help Musk reach 1 trillion as soon as possible.

Silicon Valley Chinese Have Become Very United

Crayfish Application Scenarios

Ideal Work Environment Discussion


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Original link:https://www.bitpush.news/articles/7618943

Preguntas relacionadas

QHow many hours per week does Elon Musk claim to work?

AElon Musk claims to work 90 hours per week.

QWhat is the main topic of the section 'Silicon Valley Chinese have become very united'?

AThe section discusses the increased unity among Chinese professionals in Silicon Valley.

QWhat is the warning given about crayfish in the article?

AThe article warns that crayfish are 'too crazy', though the exact context is not detailed in the provided text.

QWhich social media platform is the source for the discussions mentioned in the article?

AThe discussions are sourced from the X platform (formerly known as Twitter).

QWhat is the disclaimer provided about the opinions expressed in the article?

AThe disclaimer states that the content consists of personal opinions from the X platform, does not represent the platform's stance, and is not investment advice.

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