Acta Scientific Computer Sciences

Research Article Volume 7 Issue 6

Thrive-Connect: Academic and Social Hub for Universities

Pavitra Guru R*, Jakka Pragna Sai, Kaki Rithvik and Sai Saran Pabineedi

Department of Computing Technologies, SRM Institute of Science and Technology, Kattankulathur, Chengalpattu, Chennai, 603203, TN, India

*Corresponding Author: Pavitra Guru R, Department of Computing Technologies, SRM Institute of Science and Technology, Kattankulathur, Chengalpattu, Chennai, 603203, TN, India.

Received: July 04, 2025; Published: August 04, 2025

Abstract

Contemporary universities must fulfil increasing requirements for digital platforms which enable smooth academic as well as social and collaborative activities between students and faculty members. Educational platforms fail to integrate their systems and maintain user-friendly accessibility features and coping abilities because of their current design. The proposed solution Thrive-Connect represents a web-based full stack community platform that operates specifically for SRM University. The platform implements role-based authorization to present individualized experiences for students and faculty and researchers through one adaptable interface which combines academic and social capabilities. Thrive-Connect implements Supabase-based safe authentication with user profile management tools and academic functions including event scheduling and notification boards together with assignment tracking alongside social network capabilities for posts and likes and message systems and department-based communities. The application contains a built-from-scratch module titled Txt2YT for YouTube video search which assists users in discovering educational material and marking favorites. The combination of React with TypeScript forms the frontend framework along with Tailwind CSS and shadcn/ui together with Supabase handling authentication and database operations and edge functions. Edge functions with secure API key management enable the operation of the YouTube module. Through Thrive-connect the university achieves a scalable modular system which boosts academic productivity while developing an active university community.

Keywords: University Community Platform; Supabase; React; TypeScript; Educational Social Network; Role-Based Access Control; Edge Functions; YouTube API Integration; Academic Collaboration implemented for SRM University and Full-Stack Web Development

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Citation

Citation: Pavitra Guru R., et al. “Thrive-Connect: Academic and Social Hub for Universities ".Acta Scientific Computer Sciences 7.6 (2025): 03-10.

Copyright

Copyright: © 2025 Pavitra Guru R., et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.




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