Tulika Awalgaonkar
2025
ActionStudio: A Lightweight Framework for Data and Training of Large Action Models
Jianguo Zhang
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Thai Hoang
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Ming Zhu
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Zuxin Liu
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Shiyu Wang
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Tulika Awalgaonkar
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Akshara Prabhakar
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Haolin Chen
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Weiran Yao
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Zhiwei Liu
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Juntao Tan
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Juan Carlos Niebles
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Shelby Heinecke
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Huan Wang
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Silvio Savarese
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Caiming Xiong
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Large Action models are essential for enabling autonomous agents to perform complex tasks. However, training such models remains challenging due to the diversity of agent environments and the complexity of noisy agentic data. Existing infrastructure offers limited support for scalable, agent-specific fine-tuning and standardized agent data processing. We introduce ActionStudio, a lightweight and extensible data and training framework designed for large action models. ActionStudio unifies diverse agent trajectories using our proposed Unified Format 2.0, supports a range of training workflows with optimized multi-node distributed setup, and integrates robust preprocessing and real-time verification tools. ActionStudio demonstrates up to 9× higher throughput compared to existing agentic training frameworks, and our trained models yield top performances across public and realistic agent benchmarks. To support the broader research community, we open-source the ActionStudio framework and release actionstudio-98k, a curated dataset of 98k high-quality trajectories.
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- Haolin Chen 1
- Shelby Heinecke 1
- Thai Hoang 1
- Zuxin Liu 1
- Zhiwei Liu 1
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