Home Technology peripherals It Industry Ministry of Industry and Information Technology: my country's AI core industry scale reaches 500 billion yuan, and more than 2,500 digital workshops and smart factories have been built

Ministry of Industry and Information Technology: my country's AI core industry scale reaches 500 billion yuan, and more than 2,500 digital workshops and smart factories have been built

Oct 16, 2023 am 08:01 AM
AI smart factory

According to news from this site on October 15, the 2023 China (Taiyuan) Artificial Intelligence Conference opened today in Taiyuan, Shanxi.

Ren Aiguang, deputy director of the Science and Technology Department of the Ministry of Industry and Information Technology of China, introduced in his speech that my country’s artificial intelligence industry has been booming in recent years, with the scale of the core industry reaching 500 billion yuan and the number of companies exceeding 4,400.

He mentioned that our country has achieved deep integration of artificial intelligence and manufacturing, and has built more than 2,500 digital workshops and smart factories, thus effectively promoting the digital, intelligent, and green transformation of the real economy, significantly Improved R&D and production efficiency.

At the 2023 World Artificial Intelligence Conference in July this year, Xiaolan, Vice Minister of the Ministry of Industry and Information Technology, also said that China’s artificial intelligence infrastructure has accelerated its layout, and its computing power ranks second in the world. The project is accelerating and there are more than 2.8 million 5G base stations.

In addition, China's integrated applications have been deeply expanded. More than 2,500 digital workshops and smart factories have been built. After intelligent transformation, the research and development cycle has been shortened by about 20.7%, production efficiency has been increased by about 34.8%, and the defective product rate has been improved. It has been reduced by about 27.4%, and carbon emissions have been reduced by about 21.2%.

According to calculations by the China Academy of Information and Communications Technology, the scale of my country's core artificial intelligence industry will reach 508 billion yuan in 2022, a year-on-year increase of 18%.

In 2022, the scale of China's computing industry will reach 2.6 trillion yuan. In the past six years, a total of more than 20.91 million general-purpose servers and 820,000 AI servers have been shipped. The number of valid domestic invention patents for computing technology ranks first among all industry categories. one.

China Academy of Information and Communications Technology's "China Computing Power Development Index White Paper (2023)" shows that the diversified development of my country's computing power continues to advance. It is expected that by 2025, the global computing power will exceed 3ZFlops (Note from this site: ZFlops means ten trillion floating-point operations per second), and by 2030 it will exceed 20ZFlops.

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