Transformative Technologies in the Evaluation of a Vocational Education System

Authors

  • Yanjun Zhang ZhongShan Polytechnic, Zhongshan 528404, China
  • Xiaoyu Sun ZhongShan Polytechnic, Zhongshan 528404, China
  • Jiangde Yu ZhongShan Polytechnic, Zhongshan 528404, China

DOI:

https://doi.org/10.13052/jwe1540-9589.2324

Keywords:

Intelligent management framework, vocational college teachers, deep learning, generative language model

Abstract

The increasing demand for vocational education has necessitated the presence of highly skilled teachers. This study presents a novel framework for the effective management of vocational college instructors’ professional development through the utilization of advanced technologies. The system utilizes deep learning technology to analyze many data points, including academic achievements, teaching experience, student comments, and professional activities, in order to assess the performance and potential of teachers. The system evaluates both the positive and negative aspects, offers customized training programs, and enhances the delivery of instruction through the utilization of a generative language model. The effectiveness of the system is supported by a case study, which demonstrates enhancements in talent management, professional development, teaching quality, and student happiness. This proposed solution aims to improve vocational education by empowering educators and transforming the processes of evaluation, support, and guidance throughout their professional trajectories.

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Author Biographies

Yanjun Zhang, ZhongShan Polytechnic, Zhongshan 528404, China

Yanjun Zhang obtained her Doctor of Engineering from Harbin Institute of Technology. Currently, she is working as the Director of Big Data Technology for Zhongshan Vocational and Technical College. Her research interests include big data technology, artificial intelligence, and vocational education.

Xiaoyu Sun, ZhongShan Polytechnic, Zhongshan 528404, China

Xiaoyu Sun obtained his Doctor of Science from Harbin Institute of Technology. Currently, he is working as the Deputy Director of Modern Education Technology Center, Zhongshan Vocational and Technical College. His research interests include computer systems engineering, big data, network security, and performance management.

Jiangde Yu, ZhongShan Polytechnic, Zhongshan 528404, China

Jiangde Yu obtained his Master of Engineering from China University of Geosciences (Wuhan). Currently, he is working for Zhongshan Vocational and Technical College. His research interests include big data technology and information security.

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Published

2024-04-08

How to Cite

Zhang, Y., Sun, X., & Yu, J. (2024). Transformative Technologies in the Evaluation of a Vocational Education System. Journal of Web Engineering, 23(02), 275–298. https://doi.org/10.13052/jwe1540-9589.2324

Issue

Section

Advances, Risks, Solutions, and Ethics in Generative AI for Web Engineering