农业图书情报学报 ›› 2026, Vol. 38 ›› Issue (4): 4-12.doi: 10.13998/j.cnki.issn1002-1248.26-0179

• OpenClaw专题 •    下一篇

OpenClaw对科技文献情报工作的影响与启示

钱力1,2,3, 杨颜僖1,2, 张元哲1,2,3, 胡懋地1,2,3, 常志军1,2,3   

  1. 1.中国科学院文献情报中心,北京 100190
    2.中国科学院大学,北京 100049
    3.国家新闻出版署学术期刊新型出版与知识服务重点实验室,北京 100190
  • 收稿日期:2026-03-21 出版日期:2026-04-05 发布日期:2026-04-15
  • 作者简介:钱力,正高级工程师,博士生导师,研究方向为科技文献大数据与知识挖掘
    杨颜僖,硕士研究生,研究方向为科技文献挖掘
    张元哲,高级工程师,硕士生导师,研究方向为自然语言处理、知识工程、科技文献知识深度挖掘
    胡懋地,正高级工程师,硕士生导师,研究方向为知识图谱
    常志军,正高级工程师,硕士生导师,研究方向为大数据平台建设、智慧数据治理、数据挖掘
  • 基金资助:
    国家社会科学基金一般项目“AI4S科技文献知识底座的理论体系及建设方法研究”(24BTQ043)

The Impacts and Implications of OpenClaw for Scientific and Technical Literature Intelligence Work

QIAN Li1,2,3, YANG Yanxi1,2, ZHANG Yuanzhe1,2,3, HU Maodi1,2,3, CHANG Zhijun1,2,3   

  1. 1.National Science Library, Chinese Academy of Sciences, Beijing 100190
    2.University of Chinese Academy of Sciences, Beijing 100049
    3.Key Laboratory of New Publishing and Knowledge Services in Academic Journals, National Press and Publication Administration, Beijing 100190
  • Received:2026-03-21 Online:2026-04-05 Published:2026-04-15

摘要:

[目的/意义] 大语言模型驱动的智能体正从依赖预设流程的任务执行走向面向复杂任务的自主规划与动态执行,科技文献情报工作也随之由阶段式信息处理延伸至连续性情报分析。OpenClaw作为开放式智能体执行框架,具备强大的多消息渠道接入、闭环执行、工具调用、记忆维持与持续运行等智能化能力,其在科技文献情报工作中的应用及可能带来的影响,亟须研究思考。 [方法/过程] 全面梳理分析OpenClaw技术架构体系及核心技术要素,结合科技文献情报工作中的科技文献组织、情报分析流程与知识服务场景,提出未来可能面临的挑战及变化。 [结果/结论] 面向未来“智能科情体系”的快速构建,提出“建立高价值科技情报场景任务清单、通用与专用大模型及特色工具的混合基模模式、一键式自主科学发现与智能情报服务模式、适配智能科情体系场景的国家级文献情报资源语料库建设、垂直领域大模型与智能体协同模式、安全可控的渐进式部署实施路线及全流程闭环治理机制设计”7个方面协同推进建议,期望对行业学科发展有所启示借鉴。

关键词: OpenClaw, 智能体, 科技文献情报, 智能科情体系, 大语言模型

Abstract:

[Purpose/Significance] Agents driven by large language models (LLMs) are transitioning from executing tasks based on predefined workflows to autonomously planning and taking dynamic actions in complex environments. Thus, scientific and technical literature intelligence work is expanding its scope from stage-based information processing to continuous intelligence analysis. OpenClaw is an open agent execution framework that integrates capabilities such as multi-channel access, task orchestration, tool invocation, memory maintenance, and persistent operation. However, a systematic examination of its potential applications, impacts, and practical constraints in the field of scientific and technical literature intelligence remains lacking. This study aims to analyze OpenClaw's technical architecture and comprehensively evaluate how it transforms literature retrieval, knowledge organization, intelligence analysis, and knowledge service processes. [Method/Process] This study systematically reviewed the technical architecture and core components of OpenClaw, focusing on four interdependent layers: the access and communication layer, the agentic loop execution layer, the tool invocation and capability extension layer, and the memory maintenance layer with persistent operation. It related the OpenClaw's architectural logic to the organization of scientific literature, intelligence analysis workflows, and knowledge service scenarios. The study further discussed the changes that OpenClaw's architectural logic may bring to scientific and technical literature intelligence work, including shifts in retrieval patterns, knowledge processing methods, analytical workflows, and service outcomes, as well as the technical and ethical challenges that may emerge in practice. [Results/Conclusions] OpenClaw provides a new technical reference that transitions scientific and technical literature intelligence work from stage-based information processing to continuous knowledge work. Nevertheless, critical challenges persist. These include planning reliability, adaptability of domain knowledge, stability of tool integration, interpretability and traceability, and ethical risks related to data privacy, accountability, and open-ended extension mechanisms. To address these challenges and support the rapid development of an intelligent scientific and technical literature intelligence system, this study proposes the following seven interrelated development directions: 1) establishing task inventories for high-value scientific and technical intelligence scenarios, 2) developing a hybrid foundational model paradigm that combines general-purpose LLMs, task-specific large models, small models, and specialized tool sets, 3) advancing a one-click service model for autonomous scientific discovery and intelligent intelligence support, 4) constructing national-level corpora of literature and intelligence resources tailored to intelligent scientific and technical intelligence scenarios, 5) promoting in-depth collaboration between large, domain-specific models and agents, 6) designing a safe and controllable roadmap for progressive deployment, and 7) establishing a full-process, closed-loop governance mechanism. These proposals are expected to provide valuable references for both disciplinary development and professional practice. They will facilitate the gradual transformation of agents from auxiliary tools into a vital capability for the future of scientific and technical literature intelligence work.

Key words: OpenClaw, intelligent agents, scientific and technical literature intelligence work, intelligent scientific intelligence system, large language models

中图分类号:  G350

引用本文

钱力, 杨颜僖, 张元哲, 胡懋地, 常志军. OpenClaw对科技文献情报工作的影响与启示[J]. 农业图书情报学报, 2026, 38(4): 4-12.

QIAN Li, YANG Yanxi, ZHANG Yuanzhe, HU Maodi, CHANG Zhijun. The Impacts and Implications of OpenClaw for Scientific and Technical Literature Intelligence Work[J]. Journal of library and information science in agriculture, 2026, 38(4): 4-12.