农业图书情报学报

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面向生成式智能体的图书馆系统架构与转型研究

郭利敏1, 刘悦如2, 付雅明3   

  1. 1. 上海图书馆/上海科学技术情报研究所,上海 200031
    2. 同济大学 图书馆,上海 200092
    3. 上海大学 文化遗产与信息管理学院,上海 200444
  • 收稿日期:2025-10-20 出版日期:2025-12-02
  • 作者简介:

    郭利敏,硕士,副研究馆员,上海图书馆(上海科学技术情报研究所),研究方向为人工智能、新技术在图书馆的应用

    刘悦如,硕士,副研究馆员,同济大学图书馆,研究方向为新技术在图书馆应用、开放科学

    付雅明,博士,助理研究员,上海大学文化遗产与信息管理学院,研究方向为数字人文、知识组织

  • 基金资助:
    上海市白玉兰人才计划浦江项目“基于生成式人工智能的文化遗产知识服务研究”(24PJC036); 上海图书馆(上海科学技术情报研究所)“2151”人力资源能力建设工程骨干英才项目“多模态系统在图书馆的应用研究”

Design and Transformation Pathways of Library Systems Driven by Generative Agents

GUO Limin1, LIU Yueru2, FU Yaming3   

  1. 1. Shanghai Library / Institute of Scientific and Technical Information of Shanghai, Shanghai 200031
    2. Tongji University Library, Shanghai 200092
    3. School of Cultural Heritage and Information Management Shanghai University, Shanghai 200444
  • Received:2025-10-20 Online:2025-12-02

摘要:

【目的/意义】 探讨图书馆信息系统从平台化向智能体化的转型路径,分析现有ILS与LSP在智能服务与协同能力方面的局限,提出以ILS/LSP能力为底座的面向生成式智能体的图书馆系统架构。 【方法/过程】 首先梳理ILS与LSP服务方面的局限,在此基础上构建涵盖语义感知、上下文建模、目标驱动、偏好适配与反思进化的生成式智能体能力分级模型,并将其映射至编目、流通、参考咨询与学科服务等典型业务场景。进一步提出由基础服务层、智能体协同层与语义交互层构成的3层架构:底层开放原子能力,中层通过协议实现多智能体编排,上层以自然语言驱动交互并保持语义一致。最后,借助“图书馆助手”原型,在书目追问与推荐场景中开展实验验证。 【结果/结论】 实验表明,该架构在智能化与用户体验方面优于传统模式,但在长期记忆与反馈闭环上仍待完善。

关键词: 生成式人工智能, 图书馆系统, 智能体, MCP, A2A

Abstract:

[Purpose/Significance] This paper examines the ongoing transformation of library information systems, shifting from platform-oriented architectures to agent-based ones, in the context of generative artificial intelligence. It argues that, although Integrated Library Systems (ILS) and Library Services Platforms (LSP) have improved workflow automation and resource management, they remain constrained by poor semantic understanding, restricted cross-system orchestration, and insufficient support for proactive, personalized services. Building on these observations, the paper proposes a transformation path in which existing ILS/LSP infrastructures are not discarded, but rather re-positioned as providers of capabilities within a broader ecosystem of generative intelligent agents. This provides libraries facing both legacy constraints and pressures for service innovation with a feasible evolution strategy. [Method/Process] The study first reviews service-level limitations of ILS and LSP through the lenses of interaction patterns, data openness, and intelligent service support, and distills typical pain points encountered in cataloging, circulation, reference services, and subject liaison work. On this basis, it constructs a graded capability model for generative intelligent agents that encompasses semantic perception, context modeling, goal-driven behavior, preference adaptation, and reflective evolution. It also discusses how different types of agents can be aligned with specific library roles and task granularities. The study then proposes a three-layer architecture consisting of a basic service layer, an agent coordination layer, and a semantic interaction layer. The bottom layer exposes atomic capabilities such as search, metadata editing, authentication, and logging; the middle layer orchestrates multiple agents via lightweight protocols and shared task states; and the top layer supports natural-language-driven interaction while maintaining semantic consistency and traceable reasoning paths. Finally, leveraging a "Library Assistant" prototype that integrates these components, the study designs and conducts experimental evaluations in bibliographic follow-up and recommendation scenarios, combining task-based user tests with qualitative feedback from librarians and domain experts. [Results/Conclusions] Experimental results indicate that the proposed architecture outperforms traditional models in terms of answer relevance, interaction fluency, and perceived service intelligence, particularly in multi-step information-seeking and follow-up recommendation tasks. At the same time, the study found that the mechanisms for long-term memory, cross-session user modeling, and explicit feedback loops were underdeveloped. This can lead to inconsistencies in sustained interactions and complex task chains. The paper concludes with a discussion of the design implications for the evolution of library systems, suggesting that future work should focus on trustworthy memory management, transparent agent coordination, and robust evaluation metrics. It also recommends the development of governance frameworks that jointly consider system performance, user experience, professional ethics, and institutional policy requirements together. In this way, the study provides both a conceptual blueprint and empirical evidence to guide the transition from platform-oriented systems to agent-based, generative AI-enabled library architectures.

Key words: generative AI, library information systems, AI agents, MCP, A2A

中图分类号:  G250

引用本文

郭利敏, 刘悦如, 付雅明. 面向生成式智能体的图书馆系统架构与转型研究[J/OL]. 农业图书情报学报. https://doi.org/10.13998/j.cnki.issn1002-1248.25-0562.

GUO Limin, LIU Yueru, FU Yaming. Design and Transformation Pathways of Library Systems Driven by Generative Agents[J/OL]. Journal of library and information science in agriculture. https://doi.org/10.13998/j.cnki.issn1002-1248.25-0562.