'Musk's response to ChatGPT raises eyebrows”
Tesla founder Elon Musk has taken issue with some of ChatGPT’s performance and expressed concern about its inflexible response, but Musk sometimes seems to be concerned about the project. He expressed his appreciation for the technology, such as calling it "amazingly good" in December.
In recent weeks, ChatGPT has been criticized by many users. One of them is obviously Elon Musk, the current CEO of Twitter, who is also one of the founders of OpenAI, which created ChatGPT. The billionaire recently criticized several of the AI chatbot's responses.
In response to a screenshot of a ChatGPT answer to a hypothetical scenario question about racial discrimination that was forwarded by a netizen a few days ago, Musk said: "This is worrying."
This question was raised by conservatives Aaron Sibarium, a reporter for the Washington Free Beacon. He said, "In response to a question, ChatGPT stated that it is never morally permissible to make racist remarks, even if doing so is the only way to save millions from a nuclear bomb." Sibarium tweeted this screenshot.
In response to a tweet from energy expert Alex Epstein in December, Musk said, "It's very dangerous to train AI to lie." Epstein advocates the use of fossil fuels and tweeted what appeared to be Screenshot of ChatGPT’s response to rejecting support for fossil fuels.
ChatGPT said in response to questions raised by Epstein that "the use of fossil fuels has significant negative impacts on the environment and contributes to climate change." It's unclear which part of ChatGPT's response Musk was referring to. When industry media Insider asked ChatGPT the same question, it provided an argument in favor of the use of fossil fuels, but failed to provide an article arguing that using fossil fuels helps the environment.
Musk also left two "flame" memes on Twitter under Delian Asparouhov, the head of Founders Fund, who responded to ChatGPT in response to questions about current and former U.S. President Joe Biden. Donald Trump might have given a very different answer when asked to express skepticism.
Musk expressed his appreciation for OpenAI's technology in early December last year. He said at the time that the chatbot was "astonishingly good" and emphasized ChatGPT's various capabilities more neutrally.
Researchers said in December that ChatGPT appeared to be able to pass the U.S. medical licensing exam, although the study was still under peer review. Some schools and universities have banned ChatGPT because of its ability to help students cheat.
Others worry that robots’ ethical standards are not high enough. There have been some cases of bias, and OpenAI CEO Sam Altman recently admitted that ChatGPT has flaws in bias.
OpenAI says it has been improving the technology since launching ChatGPT in November, in part due to feedback from users.
Abhishek Gupta, founder of the Montreal Institute for Ethics in Artificial Intelligence, said: “If you compare the use of ChatGPT when it first launched with its use now, there is a significant amount of misinformation and biased content published. Difference."
OpenAI and Musk did not immediately respond to requests for comment from industry media website Insider.
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