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Exam.AI : Ensuring Fairness and Integrity in Online Assessment
1
Zitationen
5
Autoren
2025
Jahr
Abstract
From the past 5-year, online examinations have gained immense popularity across educational fields due to COVID-19.However, institutions face significant challenges in terms of proctoring methods.If the current way of life becomes the new normal, there is a pressing need for innovative solutions.This paper introduces Exam.ai:The Proctoring System and Study Resources Manager, an AI-based integrated system designed to prevent cheating in remote examinations.By integrating reinforcement learning, gaze detection, and role-based access control, the system ensures academic integrity while enhancing user experience.Additionally, our AI-based model detects unfair practices in examinations, reducing the need for continuous human proctoring.The platform also includes a study resources management system tailored for students and professors, improving access to learning materials.
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