


Musk: The possibility of artificial intelligence destroying mankind is small, but by no means impossible
According to news on May 24th, on Tuesday, local time in the United States, billionaire Elon Musk (Elon Musk) stated at the London Summit of the Wall Street Journal CEO Council that he believed there was The need to build AI companies that can compete with Google and Microsoft could involve different parts of their business empires, including Twitter.
At the opening ceremony of the London summit, Musk claimed that he invested US$44 billion to acquire Twitter last year and was seeing early results from the acquisition. According to him, although Twitter is not currently very profitable, it is very likely to achieve positive cash flow growth next month. Since Musk took Twitter private, the company stopped reporting financial results publicly and has not been profitable since 2019.
Musk said Twitter could be an important part of building his artificial intelligence business. Tesla has also been using artificial intelligence to improve its advanced driver assistance features. Musk said that Twitter and Tesla have the opportunity to become partners in an artificial intelligence company, just like Microsoft and OpenAI. Previously, Musk had created an artificial intelligence company called X.AI.
Musk said: "I think there should be a significant third horse in the artificial intelligence race."
For a long time, as the leader of Twitter and Tesla Boss, Musk has been working hard to guide the development direction of artificial intelligence. He expressed concern about rapid progress in artificial intelligence and called for government regulation. "The possibility of artificial intelligence destroying humanity is small, but by no means impossible," Musk said on Tuesday. (Xiao Xiao)
The above is the detailed content of Musk: The possibility of artificial intelligence destroying mankind is small, but by no means impossible. For more information, please follow other related articles on the PHP Chinese website!

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