AICLDec 9, 2024

Query-Efficient Planning with Language Models

arXiv:2412.06162v11 citationsh-index: 9Has Code
Originality Incremental advance
AI Analysis

This addresses planning efficiency for agents in domains like robotics and AI, though it is incremental as it builds on existing LLM-based planning methods.

The paper tackles the problem of query-efficient planning in complex environments by comparing two frameworks using Large Language Models (LLMs), finding that using LLMs as a generative planner results in significantly fewer interactions than using them as a heuristic.

Planning in complex environments requires an agent to efficiently query a world model to find a feasible sequence of actions from start to goal. Recent work has shown that Large Language Models (LLMs), with their rich prior knowledge and reasoning capabilities, can potentially help with planning by searching over promising states and adapting to feedback from the world. In this paper, we propose and study two fundamentally competing frameworks that leverage LLMs for query-efficient planning. The first uses LLMs as a heuristic within a search-based planner to select promising nodes to expand and propose promising actions. The second uses LLMs as a generative planner to propose an entire sequence of actions from start to goal, query a world model, and adapt based on feedback. We show that while both approaches improve upon comparable baselines, using an LLM as a generative planner results in significantly fewer interactions. Our key finding is that the LLM as a planner can more rapidly adapt its planning strategies based on immediate feedback than LLM as a heuristic. We present evaluations and ablations on Robotouille and PDDL planning benchmarks and discuss connections to existing theory on query-efficient planning algorithms. Code is available at https://github.com/portal-cornell/llms-for-planning

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