


In the face of competition, the United States 'well-intentioned' reminds: Artificial intelligence is comparable to nuclear bombs and may exterminate all mankind
文/黑木
With the emergence of AI tools such as ChatGPT, people have seen the unlimited potential of AI in text creation, image rendering, etc. Many people exclaimed that the power of AI is "invincible", and the United States has a deep foundation in the field of artificial intelligence. And the huge layout also attracted attention. There is no doubt that the United States is leading in artificial intelligence technology at this stage, but in order to maintain this lead, the United States has begun to use more and more unscrupulous means.
(Key part of the open letter)
According to Observer.com, on May 30, local time, the non-profit organization "Artificial Intelligence Security Center" issued an open letter calling on the international community to take the risks and threats of artificial intelligence seriously. To sum it up in one sentence, artificial intelligence may cause human extinction. The risk is as high as that of pandemics and nuclear wars, and all countries must pay attention to it.
According to reports, this open letter has been signed by many big names, including the CEOs of the three top artificial intelligence companies in the United States, as well as Jeffrey Hinton and Joshua Bengio, two "AI Godfather's signature.
(OpenAI founder and CEO Altmann)
It can be said that this open letter brings together the opinions of the most authoritative artificial intelligence experts, nuclear scientists, epidemiologists and other experts and scholars in the world today, and has clearly sorted out the risks brought by artificial intelligence.
Indeed, with the breakthrough progress of artificial intelligence, its negative effects cannot be ignored. For example, more and more students use artificial intelligence to write homework and papers, making plagiarism difficult to define; at the same time, criminals are still Use it to develop new hacking methods to steal sensitive data for blackmail.
The most important thing is the impact on future work methods. After the popularization of artificial intelligence tools, many jobs will be replaced. Some experts predict that by 2030, 75 million to 375 million people may change jobs and learn new skills.
(The most criticized thing is that AI may cause unemployment)
The impact on the economy may be unprecedented. According to US media, 61% of American respondents now believe that artificial intelligence is threatening the future of mankind.
In fact, like other new things, the rapid popularization of artificial intelligence is also accompanied by huge controversy. People take advantage of its good sides, but they must also be wary of the possible risks. As long as you make good use of it and guard against risks, you can "use it for me."
The joint signature by experts is not inconsistent with this concept. After all, experts mainly draw people's attention from a professional perspective, and it is their job to tell everyone the worst-case scenario.
(The White House holds an AI meeting)
However, in recent times, the United States has significantly exaggerated the destructive side of artificial intelligence, and at the same time repeatedly downplayed its advantages, which makes people doubt its intentions.
Many media believe that this is a plan by the United States to monopolize artificial intelligence technology in the face of technological competition from other countries. After all, major American technology companies are following up on AI technology, and their leading advantages are very obvious.
Not long ago, Vice President Harris convened a meeting with American technology giants. This shows that the United States is very eager to monopolize artificial intelligence. In this way, the United States uses intimidation to discourage other countries from investing in artificial intelligence. It’s not surprising that they are enthusiastic.
However, these remarks from the United States will not discourage our research and pursuit of artificial intelligence. At present, China’s technical reserves in the field of artificial intelligence are not bad, and it is a good time for China to lead the world.
(Whether AI is a scourge depends on the management method)
Artificial intelligence will replace many industries and create many new jobs. As long as you are prepared to continuously learn new skills, you can minimize losses. As for the hype in the United States, we should firmly study the concept of artificial intelligence overtaking in corners, and must not be disturbed by sudden noises.
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