Research on the AI Talent Granary Model Based on "Optimal Design of Mechanical Engineering" Module in the Age of Digital Intelligence for Mechanical Majors
DOI: https://doi.org/10.62381/H251A01
Author(s)
Fang Liu1, Yawen Fan2, Jingfeng Shen1,*
Affiliation(s)
1School of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai, China
2School of Engineering and Computing, The Sino-British College, University of Shanghai for Science and Technology, Shanghai, China
*Corresponding Author
Abstract
To address the challenges and opportunities of the Digital Intelligence Age in smart manufacturing and intelligent design, this paper proposes and optimizes a framework for constructing the "AI Talent Granary Model" in mechanical engineering. The paper proposed the construction and optimization of the AI Talent Granary Model for mechanical professionals in the age of digital intelligence. Based on analyzing the background of digital intelligence age, the current situation of the application of AI technology in the field of mechanical engineering, and the demand for talent in mechanical engineering majors, the structure of talents, and the mode of cultivation, the paper studied the AI Talent Granary Model for mechanical engineering majors, the innovation of teaching methods and the methods of improving teaching effects. In addition, it explored the optimal way of combining AI technology and mechanical engineering education for cultivating AI application talents with innovation ability and practical ability.
Keywords
Digital Intelligence Age; Mechanical Engineering; Artificial Intelligence; Talent Cultivation; Granary Model; Optimal Design
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