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  1. Home
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Browsing by Author "Abrio, Jhon Poul Y."

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    Automatic evaluation system for academic achievers
    (Don Mariano Marcos Memorial State University – Mid La Union Campus, 2025-05) Esperanza, Rodolfo V. Jr.; Abrio, Jhon Poul Y.; Bacani, John Richmond Z.; Dumo, Roma Lindxy E.; Paguirigan, Charles C.; Fernandez, Mark Edison; Sabado, Gina C.; Bacani, Lorenzo L; Dugenia, Joel Rodello B.; Rivera, Ryan John E.
    This study developed and evaluated the Automatic Evaluation System for Academic Achievers (AESFAA) for Don Mariano Marcos Memorial State University using the MERN stack. Utilizing a descriptive developmental approach, the system aimed to automate the identification of the top 10% of students per year level through a cluster-based analysis of academic performance, with GPA as the primary metric. The system was evaluated using the ISO/IEC 25010:2011 software quality standard, focusing on functional suitability, performance efficiency, reliability, security, and maintainability. Results showed that the AESFAA was successfully designed and developed, exhibiting strong functionality, user-friendliness, and scalability. It received consistently high mean scores across all quality attributes, confirming its effectiveness, reliability, and readiness for academic application. The study concludes that AESFAA is a viable and efficient tool for automating the academic achiever evaluation process and is recommended for institutional implementation.

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