MegaAgent:大型 LLM 代理系统中自主合作的实用框架

Qian Wang, Tianyu Wang, Qinbin Li, Jingsheng Liang, Bingsheng He
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引用次数: 0

摘要

随着大型语言模型(LLM)的出现,人们提出了由 LLM 驱动的多代理系统(LLM-MA 系统)来解决现实世界中的任务。然而,这些系统中的代理大多遵循预定义的标准操作程序(SOP),在整个交互过程中保持不变,缺乏自主性和可扩展性。此外,当前的解决方案往往忽视了有效代理合作的必要性。为了解决上述局限性,我们提出了MegaAgent,这是一个专为大规模LLM Agent系统中的自主合作而设计的实用框架。MegaAgent 利用代理的自主性,根据任务需求动态生成代理,具有自动划分任务、系统规划和监控代理活动以及管理并发操作等功能。此外,MegaAgent 采用分层结构设计,并利用系统级并行性来提高性能和加强通信。我们通过Gobang游戏开发展示了MegaAgent的有效性,结果表明它优于流行的LLM-MA系统;通过国家政策模拟展示了它的高自主性和快速扩展到590个代理的潜力,同时确保了代理之间的有效合作。我们的研究结果表明,MegaAgent 是第一个没有预定义 SOP、具有高效性和可扩展性的自主大型 LLM-MA 系统,为该领域的进一步研究铺平了道路。我们的代码见 https://anonymous.4open.science/r/MegaAgent-81F3。
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MegaAgent: A Practical Framework for Autonomous Cooperation in Large-Scale LLM Agent Systems
With the emergence of large language models (LLMs), LLM-powered multi-agent systems (LLM-MA systems) have been proposed to tackle real-world tasks. However, their agents mostly follow predefined Standard Operating Procedures (SOPs) that remain unchanged across the whole interaction, lacking autonomy and scalability. Additionally, current solutions often overlook the necessity for effective agent cooperation. To address the above limitations, we propose MegaAgent, a practical framework designed for autonomous cooperation in large-scale LLM Agent systems. MegaAgent leverages the autonomy of agents to dynamically generate agents based on task requirements, incorporating features such as automatically dividing tasks, systematic planning and monitoring of agent activities, and managing concurrent operations. In addition, MegaAgent is designed with a hierarchical structure and employs system-level parallelism to enhance performance and boost communication. We demonstrate the effectiveness of MegaAgent through Gobang game development, showing that it outperforms popular LLM-MA systems; and national policy simulation, demonstrating its high autonomy and potential to rapidly scale up to 590 agents while ensuring effective cooperation among them. Our results indicate that MegaAgent is the first autonomous large-scale LLM-MA system with no pre-defined SOPs, high effectiveness and scalability, paving the way for further research in this field. Our code is at https://anonymous.4open.science/r/MegaAgent-81F3.
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