Autonomous Large Language Model (LLM)-based multi-agent systems have emerged as a promising paradigm for facilitating cross-application and cross-organization collaborations. These autonomous agents often operate in trustless environments, where centralized coordination faces significant challenges, such as the inability to ensure transparent contribution measurement and equitable incentive distribution. While blockchain is frequently proposed as a decentralized coordination platform, it inherently introduces high on-chain computation costs and risks exposing sensitive execution information of the agents. Consequently, the core challenge lies in enabling auditable task execution and fair incentive distribution for autonomous LLM agents in trustless environments, while simultaneously preserving their strategic privacy and minimizing on-chain costs. To address this challenge, we propose DAO-Agent, a novel framework that integrates three key technical innovations: (1) an on-chain decentralized autonomous organization (DAO) governance mechanism for transparent coordination and immutable logging; (2) a ZKP mechanism approach that enables Shapley-based contribution measurement off-chain, and (3) a hybrid on-chain/off-chain architecture that verifies ZKP-validated contribution measurements on-chain with minimal computational overhead. We implement DAO-Agent and conduct end-to-end experiments using a crypto trading task as a case study. Experimental results demonstrate that DAO-Agent achieves up to 99.9% reduction in verification gas costs compared to naive on-chain alternatives, with constant-time verification complexity that remains stable as coalition size increases, thereby establishing a scalable foundation for agent coordination in decentralized environments.
翻译:基于大型语言模型(LLM)的自主多智能体系统已成为促进跨应用、跨组织协作的重要范式。这类自主智能体通常在无信任环境中运行,使得中心化协调面临显著挑战,例如难以确保透明的贡献度衡量与公平的激励分配。尽管区块链常被提议作为去中心化协调平台,但其本质上会带来高昂的链上计算成本,并可能暴露智能体的敏感执行信息。因此,核心挑战在于如何在无信任环境中为自主LLM智能体实现可审计的任务执行与公平的激励分配,同时保护其策略隐私并最小化链上成本。为解决这一挑战,我们提出DAO-Agent——一种融合三项关键技术创新框架:(1)基于链上去中心化自治组织(DAO)治理机制实现透明协调与不可篡改日志记录;(2)采用零知识证明(ZKP)机制支持链下基于Shapley值的贡献度度量;(3)设计混合链上/链下架构,以最小计算开销在链上验证经ZKP确认的贡献度量结果。我们实现了DAO-Agent框架,并以加密交易任务为案例开展端到端实验。实验结果表明:相较于原始链上方案,DAO-Agent可降低高达99.9%的验证燃气成本,其恒定时间验证复杂度在联盟规模扩大时保持稳定,从而为去中心化环境中的智能体协调建立了可扩展基础。