


Liu Qingfeng talks about AI in 'Focus Interview': It is recommended to formulate a national general artificial intelligence development plan
According to news from this website on March 7, during this year’s two sessions, artificial intelligence became a hot topic. According to CCTV's "Focus Interview" report, Liu Qingfeng, a representative of the National People's Congress and chairman of iFlytek, suggested that my country should formulate a national general artificial intelligence development plan to promote in-depth development in this field.
Liu Qingfeng put forward a proposal at the two sessions for China to formulate a national general artificial intelligence development plan. He emphasized the importance of leveraging the country's institutional advantages to integrate national strategic forces and social scientific and technological resources. Over the next five years, he called for continued support for algorithms, data and computing power in the field of artificial intelligence, and emphasized the importance of benchmarking against the latest results.

#In the report, Liu Qingfeng showed reporters the latest version of iFlytek's domestically produced independent technology - a large artificial intelligence model. Behind this model lies the research results and technology accumulation of iFlytek over the years.
In the demonstration session, Liu Qingfeng asked the big model to write a prose describing spring and read it aloud in the image of a fresh and refined girl. The large model then generates a vivid depiction of the scene. Liu Qingfeng further revealed that due to computing power issues, pictures are now generated one after another, and more of these pictures are generated and linked together to form videos.
Liu Qingfeng believes that in order for our country to truly catch up with the latest artificial intelligence technology in the world, it must make overall arrangements and make coordinated efforts.


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