Abstract
The cognitive content of this research article is to create a library management system that will eliminate the need for registers and other time-consuming manual methods of tracking inventory and processing payments. Students often fail to make use of the library's seating resources because they are unaware of their availability. Students may use this system to inquire about book availability, locate a seat in the library, and see detailed information about any book in the library's collection. Library management systems that use barcodes or radio frequency identification have been used before with some success, but they have drawbacks. In order to ensure the smooth, efficient, and theft-free functioning of libraries, the suggested technique makes use of cloud-based IoT technology. With this setup, the user may read a full book's worth of content without having to carry around their laptop or desktop computer; they only need their smartphone and a portable reader. Using IoT, library data may be accessed from the comfort of home. This "Smart Library System" is designed to streamline the process of locating and checking out books through the Internet.
Publisher
Inventive Research Organization
Subject
General Arts and Humanities
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