AI RESEARCH

Analysis of Optimality of Large Language Models on Planning Problems

arXiv CS.AI

ArXi:2604.02910v1 Announce Type: new Classic AI planning problems have been revisited in the Large Language Model (LLM) era, with a focus of recent benchmarks on success rates rather than plan efficiency. We examine the degree to which frontier models reason optimally versus relying on simple, heuristic, and possibly inefficient strategies. We focus on the Blocksworld domain involving towers of labeled blocks which have to be moved from an initial to a goal configuration via a set of primitive actions.