Multi Agent
Multi-agent systems research focuses on designing and analyzing systems composed of multiple interacting agents, aiming to achieve complex goals through collaboration or competition. Current research emphasizes leveraging large language models (LLMs) to enhance agent capabilities, particularly in reasoning, planning, and communication, often employing architectures like multi-agent reinforcement learning (MARL) and novel communication pipelines to improve efficiency and robustness. This field is significant for advancing AI capabilities in diverse applications, including robotics, autonomous driving, and scientific discovery, by enabling more sophisticated and adaptable intelligent systems.
Papers
Multi-Agent Reinforcement Learning for Microprocessor Design Space Exploration
Srivatsan Krishnan, Natasha Jaques, Shayegan Omidshafiei, Dan Zhang, Izzeddin Gur, Vijay Janapa Reddi, Aleksandra Faust
ACE: Cooperative Multi-agent Q-learning with Bidirectional Action-Dependency
Chuming Li, Jie Liu, Yinmin Zhang, Yuhong Wei, Yazhe Niu, Yaodong Yang, Yu Liu, Wanli Ouyang
Design, Field Evaluation, and Traffic Analysis of a Competitive Autonomous Driving Model in a Congested Environment
Daegyu Lee, Hyunki Seong, Seungil Han, Gyuree Kang, D. Hyunchul Shim, Yoonjin Yoon
Unrolled Graph Learning for Multi-Agent Collaboration
Enpei Zhang, Shuo Tang, Xiaowen Dong, Siheng Chen, Yanfeng Wang