Date of Publication :9th March 2017
Abstract: Online Exam Management System is an online examination system aimed to help the academicians to conduct and evaluate the exam in Quick and effective manner. The key objective of this system is to offer user friendly environment to students and mainly to the faculty by reducing the time for evaluation. The main concept of this work is to develop a software that provides a framework to conduct online exam for students on any theme. This software affords 3 levels of user the role and purpose of the user are given as follows: 1. Admin, who is the super admin of the project who accomplish all the components and has full accurse of the project. 2. Teacher, who is responsible for accretion the questions and answer, evaluation, generating report about the specific exam. 3. Student will be attending the exam 4. Full security will be provided regarding exam and about details of examination. Exam can be accompanied for huge number of students. Evaluation can be carried out in less time publishing results in accurate and easy manner. We puton all arithmetic metrics to engender report based on the pre- request of the user.
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