SPECIAL TOPIC: Embracing the Challenges Presented by ChatGPT in Information Resource Management

Research on the Optimization Strategies for Library Information Resources Construction Oriented to the Development of AIGC

  • Ding Qiujing ,
  • Su Jing
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  • 1 Renmin University of China Libraries, Beijing 100872;
    2 School of Journalism and Communication, Shaanxi Normal University, Xi'an 710069

Received date: 2023-11-02

  Revised date: 2024-02-02

  Online published: 2024-10-08

Supported by

This work is supported by the youth program of the National Social Science Fund of China titled “Research on the Optimization Mechanism of Library Knowledge Service Based on Media Convergence” (Grant No. 19CTQ008).

Abstract

[Purpose/Significance] The rise of generative AI, represented by ChatGPT, has significantly transformed the model of knowledge production and knowledge service. Libraries are also affected by the transformation and face significant challenges. It is urgent to examine the limitations of the information resource construction and to support the realization of smart services in libraries. [Method/Process] From the typical applications of AIGC, this article analyzed its impact on library services. It then explored strategies for optimizing information resource construction in libraries, based on the current situation and existing problems of information resource construction.[Result/Conclusion] To adapt to the development of AIGC and promote service change, libraries urgently need to strengthen the construction of open-source information resources, manage the rights and interests of digital collections, explore the path of embedding the knowledge base into LLM, reshape the library data governance system, and strengthen cooperation with technology companies.

Cite this article

Ding Qiujing , Su Jing . Research on the Optimization Strategies for Library Information Resources Construction Oriented to the Development of AIGC[J]. Library and Information Service, 2024 , 68(18) : 23 -31 . DOI: 10.13266/j.issn.0252-3116.2024.18.003

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