Analysis of Vocational High School Students' Skills Through Deep Learning
Abstract
This study explores the application of deep learning techniques in assessing and enhancing the skills of vocational high school (VHS) students. Vocational education plays a critical role in preparing students for the workforce, and the integration of artificial intelligence, particularly deep learning, has the potential to transform how students’ practical and theoretical skills are evaluated. Through a comprehensive review of existing literature, this research investigates the effectiveness of deep learning models, such as deep neural networks (DNNs) and convolutional neural networks (CNNs), in predicting and assessing vocational students' competencies. The findings reveal that deep learning offers promising accuracy in skill prediction and personalized feedback, with applications ranging from automated grading systems to skill-specific assessments in technical fields. However, challenges such as data quality, model interpretability, and integration with traditional education systems remain significant obstacles. The study concludes with recommendations for further research, including expanding deep learning applications to real-time assessments and hybrid evaluation methods. Overall, this research highlights the potential of deep learning to enhance vocational education but underscores the need for addressing existing challenges to ensure its effective implementation.
Keywords
Full Text:
PDFReferences
Andriyani, D. A., Prayitno, H. J., Minsih, M., Jamali, A., Damayanti, V. S., Dipsatara, T., & Pradana, F. G. (2025). Opportunities and Challenges for the Development of Deep Learning in Vocational Schools: Drivers of Learning Innovation in the Industrial Era 4.0. Journal of Deep Learning, 95–108.
Apoko, T. W., Setyawati, H., Assaadah, A., Kusumawaty, D., & Parameswari, L. A. (2025). Exploring Indonesian Vocational Studentsâ€TM Perspectives on Deep Learning in English Language Education. Jo-ELT (Journal of English Language Teaching) Fakultas Pendidikan Bahasa & Seni Prodi Pendidikan Bahasa Inggris IKIP, 12(1), 49–61.
Li, S. (2024). The Transformation of Vocational Education in the Context of Deep Learning Theory: Actual Dilemma and Practical Path. 4th International Conference on New Media Development and Modernized Education (NMDME 2024), 193–201.
Putra, R. A., Rahmawati, Y., & Halim, A. (2025). PROJECT-BASED LEARNING IN THE PROGRESS OF DEEP LEARNING IN A VOCATIONAL HIGH SCHOOL. SOSIOEDUKASI: JURNAL ILMIAH ILMU PENDIDIKAN DAN SOSIAL, 14(1), 474–484.
Tsai, C.-C., Chung, C.-C., Cheng, Y.-M., & Lou, S.-J. (2022). Deep learning course development and evaluation of artificial intelligence in vocational senior high schools. Frontiers in Psychology, 13, 965926.
Utomo, J. B., Prayitno, H. J., & Indri, I. (2025). Strategies and Development of the Deep Learning Approach in Vocational High Schools in the Era of Global Computing. Journal of Deep Learning, 1–10.
Wang, Y. (2025). Research on Optimizing Vocational Education Curriculum System through Machine Learning to Enhance Students’ Employability. J. COMBIN. MATH. COMBIN. COMPUT, 125, 3213–3227.
DOI: https://doi.org/10.24815/jr.v8i4.49499
Article Metrics
Abstract view : 76 timesPDF - 47 times
Refbacks
- There are currently no refbacks.

This work is licensed under a Creative Commons Attribution 4.0 International License.
__________________________________________________________
Riwayat: Educatioanl Journal of History and Humanities
Published: Departemen of History Education, Faculty of Teacher Training and Education, Universitas Syiah Kuala, Provinsi Aceh. Indonesia
Situs web: https://jurnal.usk.ac.id/riwayat
Email: riwayat@usk.ac.id

Karya ini dilisensikan di bawah Lisensi Internasional Creative Commons Atribusi-BerbagiSerupa 4.0.
Riwayat: Educational Journal of History and Humanities