Edge General Intelligence Through World Models and Agentic AI: Fundamentals, Solutions, and Challenges
Changyuan Zhao, Guangyuan Liu, Ruichen Zhang, Yinqiu Liu, Jiacheng Wang, Jiawen Kang, Dusit Niyato, Zan Li, Xuemin (Sherman) Shen, Zhu Han, Sumei Sun, Chau Yuen, Dong In Kim

TL;DR
This paper surveys how world models can enable autonomous, intelligent agents at the edge, enhancing decision-making and planning in dynamic environments while addressing key challenges and future directions.
Contribution
It provides a comprehensive analysis of integrating world models into edge AI systems, highlighting architectural foundations, applications, and open challenges for EGI.
Findings
World models enable proactive decision-making at the edge.
Applications include vehicular, UAV, IoT, and network systems.
Identifies challenges like safety, training efficiency, and deployment constraints.
Abstract
Edge General Intelligence (EGI) represents a transformative evolution of edge computing, where distributed agents possess the capability to perceive, reason, and act autonomously across diverse, dynamic environments. Central to this vision are world models, which act as proactive internal simulators that not only predict but also actively imagine future trajectories, reason under uncertainty, and plan multi-step actions with foresight. This proactive nature allows agents to anticipate potential outcomes and optimize decisions ahead of real-world interactions. While prior works in robotics and gaming have showcased the potential of world models, their integration into the wireless edge for EGI remains underexplored. This survey bridges this gap by offering a comprehensive analysis of how world models can empower agentic artificial intelligence (AI) systems at the edge. We first examine…
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