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American Scientific Publishing Group

verified Journal

Fusion: Practice and Applications

ISSN
Online: 2692-4048 Print: 2770-0070
Frequency

Continuous publication

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Open access · Articles freely available online · APC applies after acceptance

Fusion: Practice and Applications
Full Length Article

Volume 21Issue 2PP: 413-432 • 2026

A MLOps Framework for Early Detection and Adjustment of Learner Behaviors in Fashion Manufacturing Technology Education

Ramy Samir Mohammed ALSeragy 1* ,
Shadia Salah Salem 2 ,
Reham Mohamed Al-Ghoul 3
1Lecturer, Educational Technology Center, Faculty of Education, Mansoura University, Egypt
2Professor of Fashion Manufacturing Technology, Faculty of Human Sciences and Design, King Abdulaziz University, Saudi Arabia
3Professor of Educational Technology, Faculty of Education, Mansoura University, Egypt
* Corresponding Author.
Received: April 19, 2025 Revised: June 29, 2025 Accepted: August 28, 2025

Abstract

MLOps, short for Machine Learning Operations, is a practice that aims to streamline and automate the process of deploying, monitoring, and managing machine learning models in production. In the context of educational technology, MLOps can help optimize the performance of learning algorithms, ensure scalability and reliability. By implementing MLOps, educators can utilize real-time data to identify patterns of behavior that may indicate a student is struggling. This proactive approach allows timely interventions to be put in place, addressing issues before they escalate and potentially lead to academic failure. Additionally, MLOps can also help educators personalize learning experiences for students, catering to their individual needs and preferences. The participants were 60 learners enrolled in the Ready-Made Garment Manufacturing Technologies course, part of the Fashion Manufacturing Technology specialization in the Faculty of Human Sciences and Design at King Abdulaziz University. The findings of research found that integration of MLOps in educational technology has the potential to support and guide students in their learning through detecting undesirable student behaviors and adjusting early.

Keywords

MLOps Learner behaviors Adjusting early Fashion Manufacturing Technology

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format_quote
ALSeragy, Ramy Samir Mohammed, Salem, Shadia Salah, Al-Ghoul, Reham Mohamed. "A MLOps Framework for Early Detection and Adjustment of Learner Behaviors in Fashion Manufacturing Technology Education." Fusion: Practice and Applications, vol. Volume 21, no. Issue 2, 2026, pp. 413-432. DOI: https://doi.org/10.54216/FPA.210226
ALSeragy, R., Salem, S., Al-Ghoul, R. (2026). A MLOps Framework for Early Detection and Adjustment of Learner Behaviors in Fashion Manufacturing Technology Education. Fusion: Practice and Applications, Volume 21(Issue 2), 413-432. DOI: https://doi.org/10.54216/FPA.210226
ALSeragy, Ramy Samir Mohammed, Salem, Shadia Salah, Al-Ghoul, Reham Mohamed. "A MLOps Framework for Early Detection and Adjustment of Learner Behaviors in Fashion Manufacturing Technology Education." Fusion: Practice and Applications Volume 21, no. Issue 2 (2026): 413-432. DOI: https://doi.org/10.54216/FPA.210226
ALSeragy, R., Salem, S., Al-Ghoul, R. (2026) 'A MLOps Framework for Early Detection and Adjustment of Learner Behaviors in Fashion Manufacturing Technology Education', Fusion: Practice and Applications, Volume 21(Issue 2), pp. 413-432. DOI: https://doi.org/10.54216/FPA.210226
ALSeragy R, Salem S, Al-Ghoul R. A MLOps Framework for Early Detection and Adjustment of Learner Behaviors in Fashion Manufacturing Technology Education. Fusion: Practice and Applications. 2026;Volume 21(Issue 2):413-432. DOI: https://doi.org/10.54216/FPA.210226
R. ALSeragy, S. Salem, R. Al-Ghoul, "A MLOps Framework for Early Detection and Adjustment of Learner Behaviors in Fashion Manufacturing Technology Education," Fusion: Practice and Applications, vol. Volume 21, no. Issue 2, pp. 413-432, 2026. DOI: https://doi.org/10.54216/FPA.210226
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