AI RESEARCH

Synthesizing Interpretable Control Policies through Large Language Model Guided Search

arXiv CS.AI

ArXi:2410.05406v3 Announce Type: replace The combination of Large Language Models (LLMs), systematic evaluation, and evolutionary algorithms has enabled breakthroughs in combinatorial optimization and scientific discovery. We propose to extend this powerful combination to the control of dynamical systems, generating interpretable control policies capable of complex behaviors. With our novel method, we represent control policies as programs in standard languages like Python. We evaluate candidate controllers in simulation and evolve them using a pre-trained.