AI RESEARCH

Thermodynamics of Reinforcement Learning Curricula

arXiv CS.AI

ArXi:2603.12324v1 Announce Type: cross Connections between statistical mechanics and machine learning have repeatedly proven fruitful, providing insight into optimization, generalization, and representation learning. In this work, we follow this tradition by leveraging results from non-equilibrium thermodynamics to formalize curriculum learning in reinforcement learning (RL). In particular, we propose a geometric framework for RL by interpreting reward parameters as coordinates on a task manifold.