STEMM Institute Press
Science, Technology, Engineering, Management and Medicine
Research on the Construction of English Translation Teaching Mode based on Deep Learning Model and Artificial Intelligence
DOI: https://doi.org/10.62517/jbdc.202401117
Author(s)
Li Zhang*
Affiliation(s)
School of Foreign Languages, Sias University, Zhengzhou, China *Corresponding Author.
Abstract
As globalization continuously deepens, the importance of English translation in various fields has become increasingly prominent. Therefore, how to improve the level of English translation teaching and cultivate more excellent translation talents has become an important task for English translation teaching in the new era. The rise of artificial intelligence technologyprovides new ideas and methods for college English translation teaching. The application of artificial intelligence has endowed college English translation teachingwith the ability to change traditional teaching methods and improve students’ learning efficiency. Based on this, this paper will discuss how artificial intelligence can empower college English translation teaching and how to improve students’ English translation ability through artificial intelligence technology support, expecting to provide some reference value for college English translation teaching and promote the development of English teaching.
Keywords
Deep Learning; Artificial Intelligence; English Translation; Teaching Mode
References
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