AI RESEARCH
Active Inference for Physical AI Agents -- An Engineering Perspective
arXiv CS.LG
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ArXi:2603.20927v1 Announce Type: cross Physical AI agents, such as robots and other embodied systems operating under tight and fluctuating resource constraints, remain far less capable than biological agents in open-ended real-world environments. This paper argues that Active Inference (AIF), grounded in the Free Energy Principle, offers a principled foundation for closing that gap. We develop this argument from first principles, following a chain from probability theory through Bayesian machine learning and variational inference to active inference and reactive message passing.