Multi Agent System
Multi-agent systems (MAS) research focuses on designing and analyzing systems composed of multiple interacting agents, aiming to achieve collective goals exceeding individual capabilities. Current research emphasizes efficient communication strategies within MAS, particularly leveraging large language models (LLMs) and incorporating techniques like Retrieval-Augmented Generation (RAG) to improve decision-making and reduce computational costs. This field is significant for advancing AI capabilities in complex problem-solving, with applications ranging from robotics and urban planning to financial modeling and software development. The development of robust and scalable frameworks, along with methods for handling malicious agents and model uncertainty, are key areas of ongoing investigation.
Papers
Dynamic Graph Communication for Decentralised Multi-Agent Reinforcement Learning
Ben McClusky
Modelling and Control of Spatial Behaviours in Multi-Agent Systems with Applications to Biology and Robotics
Andrea Giusti
Advances in Multi-agent Reinforcement Learning: Persistent Autonomy and Robot Learning Lab Report 2024
Reza Azadeh
AI Agent for Education: von Neumann Multi-Agent System Framework
Yuan-Hao Jiang, Ruijia Li, Yizhou Zhou, Changyong Qi, Hanglei Hu, Yuang Wei, Bo Jiang, Yonghe Wu