Multi-agent Embodied AI: Advances and Future Directions
Zhaohan Feng, Ruiqi Xue, Lei Yuan, Yang Yu, Ning Ding, Meiqin Liu, Bingzhao Gao, Jian Sun, Xinhu Zheng, and Gang Wang

TL;DR
This paper reviews recent advances in multi-agent embodied AI, highlighting challenges, key contributions, and future research directions to address real-world complexities in collaborative, physical-agent systems.
Contribution
It provides a comprehensive survey of multi-agent embodied AI, analyzing current research, identifying gaps, and proposing future directions for the field.
Findings
Multi-agent embodied AI is rapidly evolving with diverse applications.
Current research often simplifies complex real-world scenarios.
Identified key challenges include coordination, learning, and environment complexity.
Abstract
Embodied artificial intelligence (Embodied AI) plays a pivotal role in the application of advanced technologies in the intelligent era, where AI systems are integrated with physical bodies that enable them to perceive, reason, and interact with their environments. Through the use of sensors for input and actuators for action, these systems can learn and adapt based on real-world feedback, allowing them to perform tasks effectively in dynamic and unpredictable environments. As techniques such as deep learning (DL), reinforcement learning (RL), and large language models (LLMs) mature, embodied AI has become a leading field in both academia and industry, with applications spanning robotics, healthcare, transportation, and manufacturing. However, most research has focused on single-agent systems that often assume static, closed environments, whereas real-world embodied AI must navigate far…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Reinforcement Learning in Robotics · Social Robot Interaction and HRI
