


Fudan University unveils Mushroom Autonomous Driving Artificial Intelligence Research Center
On December 20, according to DoNews, at the 2023 annual summary meeting of Shanghai’s “Basic Transformation and Application Research of Brain and Brain-like Intelligence” Science and Technology Major Project held in Shanghai on December 19, Fudan University-Moguchi Automobile Network “Automatic The "School-Enterprise Joint Research Center for Driving Artificial Intelligence" was officially unveiled. At the unveiling ceremony, Jin Li, president of Fudan University and academician of the Chinese Academy of Sciences, and Zhu Lei, founder and CEO of Mushroom Automobile Alliance, attended and witnessed this important moment
Zhao Jian, Chief Engineer of Shanghai Science and Technology Commission, former Vice Minister of the Ministry of Science and Technology, Chairman of the International Semiconductor Lighting Alliance, Chairman and Director of Jihua Laboratory Cao Jianlin, Academician of the Chinese Academy of Sciences, Former President of Fudan University Xu Ningsheng, Academician of the Chinese Academy of Sciences , Zhang Renhe, Vice President of Fudan University, Feng Jianfeng, Dean of the Institute of Brain-inspired Intelligence Science and Technology of Fudan University, Chief Professor of Shanghai Mathematics Center and Dean of the School of Big Data of Fudan University, Guo Xingrong, Chief Technology Officer of Momogu Auto Network, etc. attended the unveiling ceremony
Fudan University has unique advantages in the basic subject system and talent training in the field of artificial intelligence. In recent years, the school has been strengthening the layout of the cutting-edge disciplines of artificial intelligence, introducing and training many of the world's top talents, and achieving a series of major national science and technology and industry-university-research cooperation results
Fudan University and Momouche jointly established the "Autonomous Driving Artificial Intelligence School-Enterprise Joint Research Center." The center relies on Fudan University’s outstanding scientific research results and talent advantages, as well as Moguolian’s leading technical product capabilities, rich implementation scenarios and commercial practice experience. Through the strong alliance between the two parties, the center aims to become the world's top joint school-enterprise research institution in the field of "vehicle-road-cloud integration"
Since 2022, Mushroom Automobile Association and Fudan University have begun to carry out a number of industry-university-research cooperation. Both parties have given full play to their respective advantages and established a number of industry-university-research joint research teams composed of scientists, algorithm engineers and technical personnel. They jointly developed multiple algorithm models for "vehicle-road-cloud integration" and achieved nearly ten results, which have been recognized by top international academic institutions and conferences
As one of the important results of Shanghai's major science and technology special projects, Fudan University and Moguche jointly released the world's first "vehicle-road-cloud integration" system 3.0 based on an AI large model. The system uses massive traffic big data from vehicles, roads and the cloud to build a large AI model, realizing the entire process of autonomous driving from perception to cognition and collaborative decision-making, and uses roadside data to support simulation and model training, thereby achieving The smarter and safer large-scale application of L0-L4 autonomous driving has greatly improved the safety and efficiency of global traffic operations
In the future, both parties will give full play to their respective advantages, establish a long-term and efficient industry-university-research cooperation relationship, continue to strengthen independent innovation capabilities in the field of "vehicle-road-cloud integration" autonomous driving and related research, and continue to be committed to the field of artificial intelligence Cutting-edge research, improve the transformation and application capabilities of scientific research results, and provide support for the construction of a transportation power, an automobile power and a digital China
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