


China Meteorological Administration predicts: By 2030, China's artificial intelligence meteorological applications will reach the international leading level
The China Meteorological Administration recently released the "Artificial Intelligence Meteorological Application Work Plan (2023-2030)", which aims to accelerate the construction of the domestic artificial intelligence meteorological application technology system, enhance the basic support capabilities of artificial intelligence technology, and establish a complete artificial intelligence The meteorological application policy environment promotes the in-depth integration of artificial intelligence technology in meteorological observation, forecasting and services, and provides new technical support for achieving accurate monitoring, accurate forecasting and refined services
According to the official Weibo of the China Meteorological Administration, the plan clarifies the goal by 2025, which is to determine the development roadmap for artificial intelligence meteorological applications and build a "542" overall framework layout, including the establishment of an artificial intelligence large database and computing environment , algorithm models, open platforms and "five foundations" support for inspection and evaluation; launch the research and development of emerging technologies such as large meteorological forecast models, and promote the integration of artificial intelligence with the "four major areas" of monitoring and early warning, forecasting and prediction, numerical forecasting and professional services; Optimize artificial intelligence innovation cooperation and talent training, and provide the "two major guarantees" environment for achievement transformation and intellectual property protection. By 2030, artificial intelligence meteorological applications will reach the world's leading level, and business capacity building will make significant progress
China Meteorological Administration stated that according to the development roadmap of artificial intelligence meteorological applications, the China Meteorological Administration will focus on strengthening artificial intelligence meteorology Application foundation supports capacity building, carries out cutting-edge scientific and technological research, coordinates the promotion of R&D and business applications, and optimizes the policy environment for meteorological artificial intelligence applications
The China Meteorological Administration will continue to improve organizational safeguards, strengthen top-level planning and leadership, and optimize tasks Distribution, strengthening support and protection. All relevant agencies and units will strengthen collaboration mechanisms, promote the rational allocation, efficient utilization and sharing of R&D resources, and form a cooperative force
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