Research on Empowering the Construction of Ideological and Political Courses in Universities with Artificial Intelligence

Authors

  • Meiling Wang Liaoning University of International Business and Economics School of Marxism, Dalian 116052, Liaoning, China

DOI:

https://doi.org/10.53469/jrve.2024.06(08).12

Keywords:

Artificial Intelligence, College ideological and political courses, Build

Abstract

With the development of the times, artificial intelligence technology is also constantly evolving and maturing. Artificial intelligence technology is of great significance to the construction of ideological and political courses in universities. This article will discuss and study from three aspects: the background of AI empowering the construction of ideological and political courses in universities, the significance of AI empowering the construction of ideological and political courses in universities, and the challenges and countermeasures of AI empowering the construction of ideological and political courses in universities.

References

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Published

2024-08-28

How to Cite

Wang, M. (2024). Research on Empowering the Construction of Ideological and Political Courses in Universities with Artificial Intelligence. Journal of Research in Vocational Education, 6(8), 54–57. https://doi.org/10.53469/jrve.2024.06(08).12