
This paper presents the monitoring of student attendance is a critical component in ensuring the academic success of students and maintaining the quality of education within universities. Regular class attendance is closely associated with improved academic performance and student engagement. However, traditional attendance monitoring methods, such as manual roll calls and paper-based registers, are often time-consuming, prone to errors, and susceptible to fraudulent practices. These challenges underscore the necessity for an efficient and accurate attendance tracking system that leverages modern technological advancements. This thesis aims to design and implement a comprehensive system for monitoring student attendance using advanced technological solutions. The proposed system seeks to replace traditional manual attendance methods with a more efficient, accurate, and automated approach. By integrating biometric authentication, Radio Frequency Identification (RFID) technology, and mobile application interfaces, this system offers a reliable and user-friendly solution for tracking student attendance.
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