A Preliminary Study on the Application of Artificial Intelligence Technology in Meteorological Education and Training*

This paper reviews the three stages of the application of artificial intelligence technology in meteorological field, and expounds the application status of AI technology in meteorological business and meteorological services. By analyzing the impact and influence of AI technology on training content and training method in meteorological education and training field, this paper explores the future application of AI technology in meteorological education and training field. In this paper, a three-level meteorological AI training framework is initially constructed, and the intelligent upgrade of the existing meteorological distance education training platform and the construction of the meteorological big data analysis and AI training experimental platform are considered and prospected.

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