Multiple Agent
Multiple agent systems research focuses on designing and analyzing systems where multiple autonomous agents interact and collaborate to achieve shared or individual goals. Current research emphasizes the use of large language models (LLMs) and reinforcement learning (RL), including multi-agent RL (MARL) and model-based RL, to enable agents to learn complex behaviors and coordinate effectively, often within simulated environments. These advancements are driving progress in diverse fields, such as supply chain management, power grid control, and software engineering, by improving efficiency, robustness, and decision-making in complex systems. Furthermore, significant effort is dedicated to addressing challenges like deadlock avoidance, efficient communication, and ensuring fairness and safety in multi-agent interactions.
Papers
OpenDevin: An Open Platform for AI Software Developers as Generalist Agents
Xingyao Wang, Boxuan Li, Yufan Song, Frank F. Xu, Xiangru Tang, Mingchen Zhuge, Jiayi Pan, Yueqi Song, Bowen Li, Jaskirat Singh, Hoang H. Tran, Fuqiang Li, Ren Ma, Mingzhang Zheng, Bill Qian, Yanjun Shao, Niklas Muennighoff, Yizhe Zhang, Binyuan Hui, Junyang Lin, Robert Brennan, Hao Peng, Heng Ji, Graham Neubig
AMONGAGENTS: Evaluating Large Language Models in the Interactive Text-Based Social Deduction Game
Yizhou Chi, Lingjun Mao, Zineng Tang