Analysis of the Current Situation, Achievements, and Prospects of AI Applications in China
Keywords:
Artificial intelligence, Large models, Application achievementsAbstract
Artificial intelligence and large models have become buzzwords in modern technology in recent years, representing new productive forces and the advance of high technology. Consequently, the public is keenly interested in their application and development, making this a critical issue. In the field of AI large models, China first keeps pace with international progress; second, it leverages its rich AI application scenarios to develop technologies with Chinese characteristics. During this process, what achievements China has made, what stage it occupies internationally, and what its future prospects are have all attracted widespread attention. This paper focuses on the following questions: (1) the current state of AI applications in China; (2) the main achievements in these applications; (3) the problems encountered; (4) the prospects for AI development in China; and (5) relevant policy recommendations.
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