农业图书情报学报

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开源智能体的技术演化与应用场景——以“龙虾”OpenClaw为例

李白杨, 任尚升   

  1. 南京大学 数据管理创新研究中心,苏州 215163
  • 收稿日期:2026-03-21 出版日期:2026-04-02
  • 作者简介:

    李白杨,博士,准聘副教授,研究员,研究方向为数据智能、开源情报等

    任尚升,硕士研究生,南京大学数据管理创新研究中心,研究方向为数据智能

  • 基金资助:
    江苏省社会科学基金青年项目“公众感知视角下人工智能训练数据质量评价研究”(25XZC001)

Technical Evolution and Application Scenarios of Open-Source Agents:A Case Study of "OpenClaw"

LI Baiyang, REN Shangsheng   

  1. Research Center for Data Management Innovation, Nanjing University, Suzhou 215163
  • Received:2026-03-21 Online:2026-04-02

摘要:

[目的/意义] 基于技术演进视角,围绕开源智能体的技术演化、应用场景与安全治理三大核心问题展开系统性分析。 [方法/过程] 在演化维度,提出开源智能体经历了技术前史、单点智能、系统智能、生态智能四阶段,演进的底层逻辑是从单纯依赖基座模型能力,逐渐形成具备自主运行能力、多主体协同机制与跨平台互操作的智能体生态。OpenClaw作为生态智能阶段的代表性实践,标志着人工智能从“模型即服务”(MaaS)向“智能体即服务”(AaaS)的范式转换。在应用维度,构建知识密集型辅助、工具密集型执行、协同密集型流程3层递进场景框架,强调其价值在于以可验证、可审计、可持续的方式完成整个任务。在治理维度,提出协议层、平台层、执行层与生态层4重嵌入式治理框架。 [结果/结论] 研究表明,开源智能体的竞争重心已由模型性能转向生态可控性与治理可信度,其能否成为支撑科研、公共治理等的多元应用场景,根本取决于能否实现技术能力与制度信任的深度融合。

关键词: 开源智能体, OpenClaw, 演化发展, 应用场景, 安全治理, 生成式人工智能, skill

Abstract:

[Purpose/Significance] With the rapid advancement of generative artificial intelligence, open-source agents have emerged as a key driving force in reshaping the development paradigm of artificial intelligence. These agents integrate foundation models, tool chains, and collaborative mechanisms to enable autonomous task execution. From the perspective of technological evolution, this paper conducts a systematic analysis of three core issues concerning open-source agents: technological evolution, application scenarios, and security governance, aiming to clarify the evolutionary laws of open-source agents, expand their application boundaries, and provide theoretical and practical references for their standardized development and rational application. [Method/Process] In terms of evolutionary stages, this study proposed that open-source agents have undergone four distinct phases: pre-history of technology (primitive tool integration stage), single-point intelligence (independent task execution stage), systemic intelligence (multi-tool collaborative stage), and ecological intelligence (multi-agent symbiotic stage). This evolution was driven by a shift in focus from relying solely on the capabilities of foundation models to gradually forming a mature agent ecosystem featuring autonomous operation, multi-agent collaboration mechanisms, and cross-platform interoperability. As a prime example of a practice in the ecological intelligence stage, OpenClaw, with its open-source architecture, modular design, and multi-agent collaborative capabilities, marked a paradigm shift in artificial intelligence, moving from "Model as a Service" (MaaS) to "Agent as a Service" (AaaS) and enabling end-to-end task closed-loop management. Regarding application dimensions, a three-tier progressive scenario framework was constructed, encompassing knowledge-intensive assistance (such as academic research and intelligent consulting), tool-intensive execution (such as automated office and industrial control), and collaboration-intensive processes (such as public governance and team collaboration), emphasizing that its core value lies in accomplishing complex end-to-end tasks in a verifiable, auditable, and sustainable manner. In the governance dimension, a four-layer embedded governance framework was proposed to address the security risks and regulatory challenges posed by open-source agents. This framework covers the protocol layer (standard formulation), the platform layer (technical supervision), the execution layer (behavioral constraints), and the ecological layer (industry self-discipline). [Results/Conclusions] This study found that the competitive focus of open-source agents has gradually shifted from the performance of individual models to ecological controllability and governance credibility. As a new type of intelligent entity, whether open-source agents can effectively support diverse application scenarios, such as scientific research, public governance, and industrial production, fundamentally depends on their ability to realize the deep integration of advanced technological capabilities and sound institutional trust. This also provides a core direction for the future development and governance of open-source agents.

Key words: open-source agents, OpenClaw, evolutionary development, application scenarios, security governance, generative artificial intelligence, skill

中图分类号:  TP18,G252

引用本文

李白杨, 任尚升. 开源智能体的技术演化与应用场景——以“龙虾”OpenClaw为例[J/OL]. 农业图书情报学报. https://doi.org/10.13998/j.cnki.issn1002-1248.26-0147.

LI Baiyang, REN Shangsheng. Technical Evolution and Application Scenarios of Open-Source Agents:A Case Study of "OpenClaw"[J/OL]. Journal of library and information science in agriculture. https://doi.org/10.13998/j.cnki.issn1002-1248.26-0147.