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Online Vote Polling System

Kirthiga R, Praveen kumar S, Sribalaji P, Kamalesh B, Sujith R

Abstract


The increasing need for efficient and transparent decision-making processes in modern organizations necessitates the adoption of secure and automated voting systems. This project presents the development of an Online Vote Polling System using web technologies to facilitate digital polling and voting. The system is designed to provide a secure, user-friendly, and scalable platform for conducting polls in real time. The application is developed using Django for backend processing, Tailwind CSS for responsive user interface design, and Chart.js for dynamic result visualization.

The system pipeline includes user authentication, poll creation, vote casting, and real-time result generation. It ensures one-vote-per-user enforcement, data integrity, and transparency through secure authentication and validation mechanisms. Additionally, the system supports responsive design, enabling access across multiple devices.

By integrating modern web development technologies and secure data handling techniques, the proposed system simplifies polling processes, reduces manual effort, and enhances user engagement. This implementation demonstrates the practical application of full-stack web development in improving efficiency, accessibility, and reliability in digital voting systems.


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