“PERFORMANCE ANALYSIS AND OPTIMIZATION OF ACADEMIC DATA-BASED LEARNING SYSTEMS USING AN INDUSTRIAL ENGINEERING APPROACH”

Authors

  • Mahira Nazhifa Faiha SMAS Unggulan Al Azhar Medan ID
  • Irsyah Fairuz Lintang SMAS Unggulan Al Azhar Medan ID
  • Syahdan Alfadhil SMAS Unggulan Al Azhar Medan ID
  • Aldi Rasmana Tarigan SMAS Unggulan Al Azhar Medan ID

DOI:

https://doi.org/10.59733/besti.v3i4.159

Keywords:

academic data, learning system performance, learning analytics, industrial engineering, high school

Abstract

Advances in information technology have encouraged educational institutions to generate large amounts of student academic data, such as grades, attendance, and learning activities. However, in practice, this data is still mostly used for administrative purposes and has not been optimally utilized to improve the performance of the learning system. This study aims to analyze student academic performance patterns and optimize the performance of the academic data-based learning system at the senior high school (SMA) level from an industrial engineering perspective. This study uses a descriptive quantitative approach with a case study method at SMAS Al Azhar Medan. The research data consists of student academic data as secondary data and student perception data as primary data obtained through questionnaires. Data analysis techniques include descriptive statistical analysis, simple correlation analysis, and analysis of the gap between actual conditions and learning performance standards. The results show that attendance and assignment scores have a positive relationship with student learning outcomes. In addition, there is still a gap between actual learning performance and the ideal conditions set by the school. Based on these analysis results, this study produces recommendations for optimizing the learning system oriented towards process improvement and data-based learning decision making. This study is expected to be an initial reference in the development of an academic data-based learning system at the high school level.

Downloads

Download data is not yet available.

References

Afandi, A., Nugroho, L. E., & Widyawan. (2021). Learning analytics for evaluating student academic performance based on academic data. RESTI Journal (Engineering Systems and Information Technology), 5(6), 1121–1130.

https://doi.org/10.29207/resti.v5i6.3521

Aisyah, S., & Huda, M. (2020). Analysis of student academic data for improving the quality of data-based learning. Indonesian Education Journal, 9(3), 412–421.

https://doi.org/10.23887/jpi-undiksha.v9i3.28765

Anggraeni, D., & Wibowo, A. (2019). Evaluation of the learning system using the input–process–output approach. Journal of Industrial Systems and Management, 3(2), 85–94.

Handayani, T., & Safitri, R. (2021). Utilization of academic data as a basis for learning decision-making in secondary schools. Journal of Education: Theory, Research, and Development, 6(8), 1245–1253.

Laksitowening, K. A., Nugroho, L. E., & Widyawan. (2016). Academic performance prediction model using data mining techniques. IJCCS (Indonesian Journal of Computing and Cybernetics Systems), 10(2), 157–168.

https://doi.org/10.22146/ijccs.16595

Mahendra, I. P., & Sari, R. N. (2022). Implementation of learning analytics to improve the effectiveness of data-based learning. Journal of Information Technology and Computer Science, 9(5), 1011–1020.

Nugraha, F., & Prasetyo, E. (2020). Clustering student academic data using K-Means for learning evaluation. RESTI Journal, 4(4), 673–681.

Pramesti, D., & Susanto, A. (2019). Correlation analysis of student attendance and learning outcomes based on academic data. Journal of Mathematics and Science Education, 10(2), 145–153.

Putri, R. A., Widodo, J., & Pramono, S. E. (2023). Analysis of student learning achievement factors using a descriptive statistical approach. Journal of Education, 8(3), 401–410.

Safitri, R., Handayani, T., & Prasetyo, E. (2023). Educational data mining for student grouping based on academic performance. RESTI Journal, 7(4), 812–820.

https://doi.org/10.29207/resti.v7i4.5123

Sari, M., & Wahyudi, A. (2021). Performance evaluation of academic data-based learning systems using gap analysis. Journal of Information Systems, 17(1), 55–64.

Setiawan, A., & Kurniawan, D. (2018). Continuous improvement approach in improving the quality of the learning process. Journal of Education Management, 13(2), 98–107.

Susanto, H., & Riyadi, S. (2020). Data-driven decision making in improving education quality. Journal of Technology and Vocational Education, 26(2), 210–219.

Wibowo, A., & Nugroho, Y. (2019). Performance analysis of the learning system as an integrated system. Journal of Industrial Systems and Management, 3(1), 21–30.

Yulianto, A., & Suryani, N. (2022). Utilization of academic data to support evidence-based learning decisions. Indonesian Journal of Education, 11(1), 45–55.

Downloads

Published

2026-01-18

How to Cite

Mahira Nazhifa Faiha, Irsyah Fairuz Lintang, Syahdan Alfadhil, & Aldi Rasmana Tarigan. (2026). “PERFORMANCE ANALYSIS AND OPTIMIZATION OF ACADEMIC DATA-BASED LEARNING SYSTEMS USING AN INDUSTRIAL ENGINEERING APPROACH”. Bulletin of Engineering Science, Technology and Industry, 3(4), 627–621. https://doi.org/10.59733/besti.v3i4.159

Issue

Section

Articles

Similar Articles

<< < 5 6 7 8 9 10 11 > >> 

You may also start an advanced similarity search for this article.