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Main Authors: Meneguzzi, Felipe, Buchweitz, Alexandre, Corrêa, Augusto B., Putrich, Victor Scherer, Pereira, André Grahl
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.07707
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author Meneguzzi, Felipe
Buchweitz, Alexandre
Corrêa, Augusto B.
Putrich, Victor Scherer
Pereira, André Grahl
author_facet Meneguzzi, Felipe
Buchweitz, Alexandre
Corrêa, Augusto B.
Putrich, Victor Scherer
Pereira, André Grahl
contents HTN planning is a variation of classical planning where, instead of searching for a linear sequence of actions, an algorithm decomposes higher-level tasks using a method library until only executable actions remain. On one hand, this allows one to introduce domain knowledge that can speed up the search for a solution through the method library. On the other hand, it creates challenges that go beyond those of classical state-space search. While recent research produced a number of heuristics and novel algorithms that speed up HTN planning, these heuristics are not yet as informative as those available in classical planning algorithms. We investigate whether large language models (LLMs) can generate effective search heuristics for HTN planning, extending the methodology of Corrêa, Pereira, and Seipp (2025) from classical to hierarchical planning. Using the Pytrich planner on six standard total-order HTN benchmark domains, we evaluate heuristics generated by nine LLMs under domain-specific prompting and compare them against the TDG and LMCount domain-independent baselines and the PANDA planner. Our results show that LLM-generated heuristics nearly match the coverage of the best available HTN planner, while substantially reducing search effort on 83% of shared problems.
format Preprint
id arxiv_https___arxiv_org_abs_2605_07707
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Hierarchical Task Network Planning with LLM-Generated Heuristics
Meneguzzi, Felipe
Buchweitz, Alexandre
Corrêa, Augusto B.
Putrich, Victor Scherer
Pereira, André Grahl
Artificial Intelligence
HTN planning is a variation of classical planning where, instead of searching for a linear sequence of actions, an algorithm decomposes higher-level tasks using a method library until only executable actions remain. On one hand, this allows one to introduce domain knowledge that can speed up the search for a solution through the method library. On the other hand, it creates challenges that go beyond those of classical state-space search. While recent research produced a number of heuristics and novel algorithms that speed up HTN planning, these heuristics are not yet as informative as those available in classical planning algorithms. We investigate whether large language models (LLMs) can generate effective search heuristics for HTN planning, extending the methodology of Corrêa, Pereira, and Seipp (2025) from classical to hierarchical planning. Using the Pytrich planner on six standard total-order HTN benchmark domains, we evaluate heuristics generated by nine LLMs under domain-specific prompting and compare them against the TDG and LMCount domain-independent baselines and the PANDA planner. Our results show that LLM-generated heuristics nearly match the coverage of the best available HTN planner, while substantially reducing search effort on 83% of shared problems.
title Hierarchical Task Network Planning with LLM-Generated Heuristics
topic Artificial Intelligence
url https://arxiv.org/abs/2605.07707