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Autores principales: Liu, Changyu, Liu, Yiyang, Wang, Taowen, Zhuang, Qiao, Liang, James Chenhao, Yang, Wenhao, Xu, Renjing, Wang, Qifan, Liu, Dongfang, Han, Cheng
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2601.06748
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author Liu, Changyu
Liu, Yiyang
Wang, Taowen
Zhuang, Qiao
Liang, James Chenhao
Yang, Wenhao
Xu, Renjing
Wang, Qifan
Liu, Dongfang
Han, Cheng
author_facet Liu, Changyu
Liu, Yiyang
Wang, Taowen
Zhuang, Qiao
Liang, James Chenhao
Yang, Wenhao
Xu, Renjing
Wang, Qifan
Liu, Dongfang
Han, Cheng
contents Vision-Language-Action models have recently emerged as a powerful paradigm for general-purpose robot learning, enabling agents to map visual observations and natural-language instructions into executable robotic actions. Though popular, they are primarily trained via supervised fine-tuning or training-time reinforcement learning, requiring explicit fine-tuning phases, human interventions, or controlled data collection. Consequently, existing methods remain unsuitable for challenging simulated- or physical-world deployments, where robots must respond autonomously and flexibly to evolving environments. To address this limitation, we introduce a Test-Time Reinforcement Learning for VLAs (TT-VLA), a framework that enables on-the-fly policy adaptation during inference. TT-VLA formulates a dense reward mechanism that leverages step-by-step task-progress signals to refine action policies during test time while preserving the SFT/RL-trained priors, making it an effective supplement to current VLA models. Empirical results show that our approach enhances overall adaptability, stability, and task success in dynamic, previously unseen scenarios under simulated and real-world settings. We believe TT-VLA offers a principled step toward self-improving, deployment-ready VLAs.
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spellingShingle On-the-Fly VLA Adaptation via Test-Time Reinforcement Learning
Liu, Changyu
Liu, Yiyang
Wang, Taowen
Zhuang, Qiao
Liang, James Chenhao
Yang, Wenhao
Xu, Renjing
Wang, Qifan
Liu, Dongfang
Han, Cheng
Robotics
Vision-Language-Action models have recently emerged as a powerful paradigm for general-purpose robot learning, enabling agents to map visual observations and natural-language instructions into executable robotic actions. Though popular, they are primarily trained via supervised fine-tuning or training-time reinforcement learning, requiring explicit fine-tuning phases, human interventions, or controlled data collection. Consequently, existing methods remain unsuitable for challenging simulated- or physical-world deployments, where robots must respond autonomously and flexibly to evolving environments. To address this limitation, we introduce a Test-Time Reinforcement Learning for VLAs (TT-VLA), a framework that enables on-the-fly policy adaptation during inference. TT-VLA formulates a dense reward mechanism that leverages step-by-step task-progress signals to refine action policies during test time while preserving the SFT/RL-trained priors, making it an effective supplement to current VLA models. Empirical results show that our approach enhances overall adaptability, stability, and task success in dynamic, previously unseen scenarios under simulated and real-world settings. We believe TT-VLA offers a principled step toward self-improving, deployment-ready VLAs.
title On-the-Fly VLA Adaptation via Test-Time Reinforcement Learning
topic Robotics
url https://arxiv.org/abs/2601.06748