Reservation System for Football Matches Using Machine Learning
Keywords:
Reservation system, concept, football matches, management of football matches, web application, Recommendations, choose team members.Abstract
The goal of this assumption is to find a solution to the football match scheduling issue. To create the most effective solution and then implement and test the concept of the reservation system, the work will assess the existing solutions to this problem, suggest improvements, examine user needs, and analyze existing solutions. Spring is the Java framework used to construct this reservation system. The key outcome of this premise is that the application concept will provide user authentication, the formation of new matches, the search for existing ones, and continued involvement in them.
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