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Plan-and-Act: Improving Planning of Agents for Long-Horizon Tasks

12 March 2025
Lutfi Eren Erdogan
Nicholas Lee
Sehoon Kim
Suhong Moon
Hiroki Furuta
Gopala Anumanchipalli
K. K.
Amir Gholami
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Abstract

Large language models (LLMs) have shown remarkable advancements in enabling language agents to tackle simple tasks. However, applying them for complex, multi-step, long-horizon tasks remains a challenge. Recent work have found success by separating high-level planning from low-level execution, which enables the model to effectively balance high-level planning objectives and low-level execution details. However, generating accurate plans remains difficult since LLMs are not inherently trained for this task. To address this, we propose Plan-and-Act, a novel framework that incorporates explicit planning into LLM-based agents and introduces a scalable method to enhance plan generation through a novel synthetic data generation method. Plan-and-Act consists of a Planner model which generates structured, high-level plans to achieve user goals, and an Executor model that translates these plans into environment-specific actions. To train the Planner effectively, we introduce a synthetic data generation method that annotates ground-truth trajectories with feasible plans, augmented with diverse and extensive examples to enhance generalization. We evaluate Plan-and-Act using web navigation as a representative long-horizon planning environment, demonstrating a state-of-the-art 57.58% success rate on the WebArena-Lite benchmark as well as a text-only state-of-the-art 81.36% success rate on WebVoyager.

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@article{erdogan2025_2503.09572,
  title={ Plan-and-Act: Improving Planning of Agents for Long-Horizon Tasks },
  author={ Lutfi Eren Erdogan and Nicholas Lee and Sehoon Kim and Suhong Moon and Hiroki Furuta and Gopala Anumanchipalli and Kurt Keutzer and Amir Gholami },
  journal={arXiv preprint arXiv:2503.09572},
  year={ 2025 }
}
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