Digital Transformation of Libraries Supported by AIGC Technology
Keywords:
Artificial Intelligence, Generated Content Technology, Digital Transformation, LibraryAbstract
This paper deeply explores the digital transformation strategies of libraries supported by artificial intelligence-generated content (AIGC) technology, aiming to provide theoretical guidance and practical reference for the digital transformation of libraries. The paper first introduces the AIGC technology and outlines its main technical principles and characteristics. Then, for the digital transformation of libraries, the application prospects of AIGC technology are analyzed in three aspects: knowledge management, service innovation, and management decision-making, and corresponding strategic suggestions are put forward. The research finds that AIGC technology can significantly improve the service efficiency and work efficiency of libraries, promote service model innovation and management optimization, and also brings challenges such as hardware adaptability and data validity. The research suggests that when libraries introduce AIGC technology, they need to formulate clear transformation strategies and countermeasures, enhance the corresponding management and technical capabilities of libraries according to the characteristics of AIGC, and ensure the security, effectiveness, and sustainability of technology applications. With the mature application of AIGC, information technology has entered another period of change and will continue to progress. The digital transformation of libraries will also be a continuous dynamic evolution process, which requires continuous exploration and practice to adapt to the rapid changes in technology development and user needs. Therefore, this paper aims to explore how to more effectively use AIGC technology to promote the development of library digitization.
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