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Main Authors: Wang, Yucen, Yu, Rui, Zhang, Fengming, Lu, Junjie, Qin, Xinyao, Zhang, Tianxiang, Wang, Kaixin, Zhao, Li
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.12334
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author Wang, Yucen
Yu, Rui
Zhang, Fengming
Lu, Junjie
Qin, Xinyao
Zhang, Tianxiang
Wang, Kaixin
Zhao, Li
author_facet Wang, Yucen
Yu, Rui
Zhang, Fengming
Lu, Junjie
Qin, Xinyao
Zhang, Tianxiang
Wang, Kaixin
Zhao, Li
contents Post-training Vision-Language-Action (VLA) models via reinforcement learning (RL) in learned world models has emerged as an effective strategy to adapt to new tasks without costly real-world interactions. However, while using imagined trajectories reduces the sample complexity of policy training, existing methods still heavily rely on task-specific data to fine-tune both the world and reward models, fundamentally limiting their scalability to unseen tasks. To overcome this, we argue that world and reward models should capture transferable physical priors that enable zero-shot inference. We propose RAW-Dream (Reinforcing VLAs in task-Agnostic World Dreams), a new paradigm that completely disentangles world model learning from downstream task dependencies. RAW-Dream utilizes a world model pre-trained on diverse task-free behaviors for predicting future rollouts, and an off-the-shelf Vision-Language Model (VLM) for reward generation. Because both components are task-agnostic, VLAs can be readily finetuned for any new task entirely within this zero-shot imagination. Furthermore, to mitigate world model hallucinations, we introduce a dual-noise verification mechanism to filter out unreliable rollouts. Extensive experiments across simulation and real-world settings demonstrate consistent performance gains, proving that generalized physical priors can effectively substitute for costly task-dependent data, offering a highly scalable roadmap for VLA adaptation.
format Preprint
id arxiv_https___arxiv_org_abs_2605_12334
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Reinforcing VLAs in Task-Agnostic World Models
Wang, Yucen
Yu, Rui
Zhang, Fengming
Lu, Junjie
Qin, Xinyao
Zhang, Tianxiang
Wang, Kaixin
Zhao, Li
Artificial Intelligence
Post-training Vision-Language-Action (VLA) models via reinforcement learning (RL) in learned world models has emerged as an effective strategy to adapt to new tasks without costly real-world interactions. However, while using imagined trajectories reduces the sample complexity of policy training, existing methods still heavily rely on task-specific data to fine-tune both the world and reward models, fundamentally limiting their scalability to unseen tasks. To overcome this, we argue that world and reward models should capture transferable physical priors that enable zero-shot inference. We propose RAW-Dream (Reinforcing VLAs in task-Agnostic World Dreams), a new paradigm that completely disentangles world model learning from downstream task dependencies. RAW-Dream utilizes a world model pre-trained on diverse task-free behaviors for predicting future rollouts, and an off-the-shelf Vision-Language Model (VLM) for reward generation. Because both components are task-agnostic, VLAs can be readily finetuned for any new task entirely within this zero-shot imagination. Furthermore, to mitigate world model hallucinations, we introduce a dual-noise verification mechanism to filter out unreliable rollouts. Extensive experiments across simulation and real-world settings demonstrate consistent performance gains, proving that generalized physical priors can effectively substitute for costly task-dependent data, offering a highly scalable roadmap for VLA adaptation.
title Reinforcing VLAs in Task-Agnostic World Models
topic Artificial Intelligence
url https://arxiv.org/abs/2605.12334