


Heze Vocational College Jiang Zhen Intelligent Manufacturing College launched the 'Artificial Intelligence Knowledge into Campus' science popularization activity
Jiang Zhen Intelligent Manufacturing College of Heze Vocational College launched the "Artificial Intelligence Knowledge into Campus" science popularization activity
China Shandong Net - Perception Shandong News on May 25 (Reporter Zhao Xiaolu, Correspondent Zhang Huaxin) In order to further promote the scientific spirit and popularize scientific knowledge, we will continue to vigorously promote science and technology education, improve the scientific quality of young people, and inspire young people. With the enthusiasm of using technology to change the future, on the afternoon of May 23, the General Party Branch of Jiang Zhen Intelligent Manufacturing College of Heze Vocational College organized some party members and faculty members to go to Li Yao Primary School of Wanfu Office in Mudan District, Heze City to carry out student assistance and teaching "Artificial Intelligence Knowledge Advancement" Campus” science popularization activities.
Yan Panpan, a teacher at Jiang Zhen Intelligent Manufacturing College, explained to the children what artificial intelligence is, what applications of artificial intelligence are in life, what are the core technologies of artificial intelligence, and the future development of artificial intelligence. The students actively participated and showed great interest.
After class, the student aid and teaching team members presented school supplies to the students, and hoped that the students would embrace their scientific and technological dreams, study hard, and grow up healthily!
Chasing the dream of intelligence and exploring the sea of stars. In the future, Jiang Zhen Intelligent Manufacturing College will continue to give full play to its professional advantages, serve the society, use the knowledge it has learned to carry out more student assistance and teaching activities, provide more young people with rich science practice and inquiry education, and build a platform for exploring the scientific world and realizing science. The bridge of dreams.
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