


Meta: Zuckerberg has committed to AI research and plans to commercialize AIGC technology this year
News on April 6, on Wednesday, Meta’s Chief Technology Officer Andrew Bosworth revealed that the company’s CEO Mark Zuckerberg now spends most of his time working on AI. He also said that the suggestion by Musk and others to suspend AI research and development is "unrealistic."
Meta plans to commercialize their own generative artificial intelligence (AIGC) technology by December this year and explore practical applications of this technology with Google. Meta has been committed to research in the field of artificial intelligence since 2013, and has published as many research results as Google.
"We have invested in artificial intelligence for more than ten years and have a world-leading research organization." Bosworth revealed in an interview in Tokyo on Wednesday: "We certainly have a huge research organization, There are hundreds of employees."
In February this year, Meta announced the establishment of a new team to develop AIGC technology. Now, they've revealed for the first time a timetable for commercializing the technology. OpenAI, the creator of ChatGPT, has commercialized the technology for creating sentences and graphics on the fly, but Bosworth, Meta's chief technology officer, is convinced his company is still at the forefront of the field.
We believe we are always at the forefront of technology, Bosworth said. Our team has pioneered many technologies in large-scale language model development. I expect to start to see some of these technologies commercialized this year. We launched the AIGC team a few months ago, and they have a lot of work to do. This is the area where Zuckerberg, I, and Chris Cox (Chief Product Officer) spend the most time."
Bosworth believes that, to some extent, Meta’s AI technology can improve advertising effectiveness by telling advertisers what tools to use to create ads. Instead of using the same image throughout an ad campaign, advertisers can command the AI to "create images for my company that fit different audiences," he said. This can help save a lot of time and money.
Advertising is Meta’s main source of income. The company hopes to eventually apply the technology to all of its products and services, including Facebook and Instagram.
In addition, this technology will also be used in the Metaverse, a realistic virtual world that Meta is actively developing. Bosworth said: “In the past, to create a 3D world, you needed to learn a lot of computer graphics and programming knowledge. But in the future, you may just describe the world you want to create, and let a large language model generate it for you. . This makes it easier for more people to access fields such as content creation."
In 2013, Meta invited Yann LeCun, a French scientist and top expert in the field of AI, to join and establish an AI research laboratory. According to data from the Dutch AI research and analysis platform Zeta Alpha, among the major AI research results published in 2022, Meta's research was cited second only to Google.
Although people’s expectations for AIGC to efficiently handle a large number of tasks are high, there are still concerns, especially concerns about its loss of control over human civilization. In March this year, the Future of Life Institute, a non-profit organization based in the United States, launched a petition calling for a moratorium on the development of AI technology for at least 6 months. The petition is supported by American entrepreneur Musk and others.
Bosworth said he disagreed. He said: "I think it is crucial to invest in projects that develop AI technology responsibly, and we always have. However, it is very difficult to stop the evolution of AI and make the right decisions about the changes you require. Often, You have to understand the development of technology before you can ensure its security. So I think this idea is not only unrealistic, but it will not be effective."
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