


NetEase Fuxi and Hangzhou AICC join forces to promote large model innovation cooperation
On July 6 in Shanghai, the Shengteng Artificial Intelligence Industry Summit Forum was held at WAIC. Huawei Rotating Chairman Hu Houkun said in his speech that with the breakthroughs in generative AI brought by large models, artificial intelligence is entering a new era. Huawei will accelerate the prosperity and development of the Shengteng artificial intelligence industry ecosystem through system-level innovation, insisting on open source and openness, and deeply exploring the industry. Huawei and its partners jointly innovate to support the high-quality development of artificial intelligence with powerful computing power and promote the in-depth development of artificial intelligence into practice and application. He emphasized Huawei's determination and commitment in the field of artificial intelligence, and will continue to increase investment and work hand in hand with global partners to jointly promote breakthroughs and innovations in artificial intelligence technology and bring more convenience and intelligent life to people.
At the forum, 26 industry leading companies, scientific research institutes, Huawei and other partners jointly launched a large-scale model joint innovation project. Among them, NetEase Fuxi, as one of the participants, will work with other partners to innovate basic large models and industry large model applications based on Shengteng AI. This ceremony marks that NetEase Fuxi will further promote the construction and development of Yuyan large models and Danqing models in the future with the support of the Hangzhou Artificial Intelligence Computing Center based on the Shengteng AI basic software and hardware platform, and in multiple business scenarios such as games and music. Promote the application of large models in . This cooperation will bring more opportunities and potential for innovation in the field of artificial intelligence.

Under the guidance of the Ministry of Industry and Information Technology and the China Electronics Industry Standardization Technology Association, the China Academy of Information and Communications Technology, the Fifth Institute of Electronics of the Ministry of Industry and Information Technology, Huawei and other units jointly established the "Big Model Industry Working Group" jointly promotes the implementation of large model applications and industry incubation in China. Last year, Huawei released a full-process enabling system for large-scale artificial intelligence models. This system includes the entire process from planning, development to industrialization, enabling the development of large-scale models and creating a new model for large-scale model industrialization. In Zhejiang, Hangzhou Artificial Intelligence Computing Center and Ningbo Artificial Intelligence Supercomputing Center will also shoulder the mission to build Zhejiang's large model ecosystem with the industry and actively promote the industrialization of large models.
About NetEase Fuxi
NetEase Fuxi was founded in 2017 and is a top domestic institution specializing in the research and application of AI in games and pan-entertainment. NetEase Fuxi has published more than 200 AI conference papers, holds more than 500 invention patents, and has leading technologies in multiple fields such as digital humans, intelligent face pinching, AI creation, AI anti-cheating, AI recommendation matching, and AI competitive robots. At present, NetEase Fuxi is opening up AI technology and products to industries such as games, cultural tourism, and entertainment. It has served more than 200 customers, and the average daily application calls exceed hundreds of millions of times.
The above is the detailed content of NetEase Fuxi and Hangzhou AICC join forces to promote large model innovation cooperation. For more information, please follow other related articles on the PHP Chinese website!

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