system for automatic generation of question papers simplifying assessment and evaluation

Harish Prabu S ,Sundralingam B,Dhanushkumar K V

Published in International Journal of Advanced Research in Computer Networking,Wireless and Mobile Communications

ISSN: 2320-7248          Impact Factor:1.8         Volume:5         Issue:3         Year: 21 April,2025         Pages:242-249

International Journal of Advanced Research in Computer Networking,Wireless and Mobile Communications

Abstract

The generation of question papers through a question bank is an important activity in learning management systems and educational institutions. The quality of question paper is based on various design constraints such as whether a question paper assesses different problem solving skills, whether it covers all units from the syllabus of a course and whether it covers various difficulty levels. Preparing the exam questions is very challenging, tedious and time consuming for the instructors. Thus with the help of this paper we present the solution in form of Automatic Question Paper Generator System (QGS). The design process performs and composes the examination paper using an efficient algorithm with a high rate of success. From the entered input files, the examination paper will be generated automatically. The final paper may be stored as ‘PDF’ files. The system shows characteristics like simple operation, a great interface, good usability, immense security, and high stability along with reliability.

Kewords

System for Automatic Generation, Simplifying Assessment, Question Papers.

Reference

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