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: 29 April,2025 Pages:296-301
The Rental Vehicle Booking and Management System is a comprehensive web-based solution designed to revolutionize how vehicle rental services operate. This innovative platform provides customers with a convenient, user-friendly interface to effortlessly search for available vehicles, compare options, make reservations, and complete secure online payments—all in one seamless workflow. For administrators, the system delivers powerful tools to efficiently manage vehicle inventory, track bookings, process payments, and generate insightful reports, eliminating the inefficiencies of traditional paper-based methods.At its core, the project aims to fully automate the rental process, significantly reducing manual tasks, minimizing human errors, and optimizing operational efficiency. Built on robust technologies including J2EE for enterprise-grade functionality and MySQL for reliable data management, the system guarantees high performance, scalability, and easy maintenance to accommodate growing business needs. The architecture incorporates four essential modules: User Management (handling registrations, profiles, and access control), Vehicle Management (maintaining fleet details, availability, and pricing), Booking Management (processing reservations and scheduling), and Payment Processing (integrating secure transaction gateways).
BLOCKCHAIN ENABLED, MOBILITY SOLUTIONS, DECENTRALIZED BOOKING SYSTEM.
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