An Outlook on the Opportunities and Challenges of Multi-Agent AI Systems
An Outlook on the Opportunities and Challenges of Multi-Agent AI Systems
Multi-agent AI systems (MAS) offer a promising framework for distributed intelligence, enabling collaborative reasoning, planning, and decision-making across autonomous agents. This paper provides a systematic outlook on the current opportunities and challenges of MAS, drawing insights from recent advances in large language models (LLMs), federated optimization, and human-AI interaction. We formalize key concepts including agent topology, coordination protocols, and shared objectives, and identify major risks such as dependency, misalignment, and vulnerabilities arising from training data overlap. Through a biologically inspired simulation and comprehensive theoretical framing, we highlight critical pathways for developing robust, scalable, and secure MAS in real-world settings.
Fangqiao Tian、An Luo、Jin Du、Xun Xian、Robert Specht、Ganghua Wang、Xuan Bi、Jiawei Zhou、Jayanth Srinivasa、Ashish Kundu、Charles Fleming、Rui Zhang、Zirui Liu、Mingyi Hong、Jie Ding
计算技术、计算机技术
Fangqiao Tian,An Luo,Jin Du,Xun Xian,Robert Specht,Ganghua Wang,Xuan Bi,Jiawei Zhou,Jayanth Srinivasa,Ashish Kundu,Charles Fleming,Rui Zhang,Zirui Liu,Mingyi Hong,Jie Ding.An Outlook on the Opportunities and Challenges of Multi-Agent AI Systems[EB/OL].(2025-05-23)[2025-06-21].https://arxiv.org/abs/2505.18397.点此复制
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