AI Assisted Question Paper Generator
Abstract
The Question Paper Generator is an automated system designed to simplify and improve the process of creating examination papers. In many educational institutions, preparing question papers manually is time-consuming and may lead to errors, repetition of questions, or an unbalanced distribution of difficulty levels. The proposed system addresses these issues by generating question papers automatically using a structured question bank and predefined blueprint patterns. The system allows faculty members to input details such as subject, exam type (CAE, ESE, or custom), units to be included, marks distribution, and difficulty levels. Based on these inputs, the system applies filtering and randomization algorithms to select appropriate questions from the database while ensuring that the total marks and blueprint requirements are satisfied. The selected questions are then arranged into a proper format to generate a complete question paper.
The system also maintains a database that stores questions categorized by subject, unit, marks, and difficulty level. This structured storage enables efficient retrieval and prevents duplication of questions. Additionally, the system provides options to preview, download, or print the generated question paper. Overall, the Question Paper Generator improves efficiency, reduces manual effort for educators, ensures fair distribution of questions, and maintains consistency in
exam paper preparation.
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