


US media: Artificial intelligence is as dangerous as epidemics and nuclear war
Reference News Network reported on May 31The US Fortune magazine website published on May 30 the title "Sam Altman and other technical experts warn that artificial intelligence poses an "extinction risk" "The level of danger is comparable to that of epidemics and nuclear war", the full text is excerpted as follows:
Technologists and computer science experts warn that artificial intelligence poses an existential threat on par with nuclear war and a global pandemic, and even the business leaders who have spearheaded its campaign are expressing concern that the technology threatens humanity. survival warning.
The Center for Artificial Intelligence Security, a non-profit research organization, issued a "Statement on the Risks of Artificial Intelligence" on the 30th. More than 300 people signed the statement. Sam Orr, CEO of the Open Artificial Intelligence Research Center Terman is one of them. The letter is brief, but it outlines the risks of artificial intelligence. "Reducing the risk of artificial intelligence exterminating the human race and reducing other risks affecting society as a whole, such as epidemics and nuclear war, should be a global priority," the letter said.
The beginning of the letter indicates that the purpose of the statement is to start discussions to prepare for the potential apocalyptic capabilities of artificial intelligence technology. Joshua Benjo and former Google engineer Jeffrey Hinton were among the other signers to join the effort. Due to their contributions to modern computer science, these two men are known as the Godfathers of Artificial Intelligence. Benjo and Hinton have repeatedly warned in recent weeks about the dangerous capabilities that artificial intelligence technology may develop in the near future. Hinton recently left Google to be able to discuss the risks of artificial intelligence more openly.
This is not the first letter calling for further attention to the disastrous consequences that advanced artificial intelligence research could have without tighter government regulation. In March, Elon Musk was among more than 1,000 technology experts who called for a six-month moratorium on research into advanced artificial intelligence, citing the technology’s disruptive potential.
Altman warned Congress this month that as technology advances so rapidly, regulation can no longer keep up.
Altman’s latest statement, unlike his previous letter, did not spell out any specific goals and only called for discussion. Hinton told CNN earlier this month that he did not sign the March letter.
While executives from top AI research institutions, including the Open Artificial Intelligence Research Center and even Google, have called on governments to act quickly on regulating AI, some experts warn that some of the current problems — including false It is counterproductive to discuss the future risks of this technology to human survival when information and possible biases are already wreaking havoc. Some even believe that by publicly discussing the risks of artificial intelligence, CEOs such as Altman have actually been trying to divert attention from existing problems with the technology.
But those who predict that artificial intelligence will bring about the end of the world also warn that the technology is developing so fast that the risks may quickly become a problem that is beyond the reach of humans. The growing ability of super artificial intelligence to think and reason for itself is worrying more and more people, faster than many people expect. Some experts warn that this technology is currently not in the interest and well-being of humanity.
In an interview with The Washington Post this month, Hinton said that super-artificial intelligence is developing rapidly and may only be 20 years away, and now is the time to have a conversation about the risks of advanced artificial intelligence.
He said: "This is not science fiction." (Compiler/Tu Qi)
The above is the detailed content of US media: Artificial intelligence is as dangerous as epidemics and nuclear war. For more information, please follow other related articles on the PHP Chinese website!

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