$\texttt{WEAVER}$, Better, Faster, Longer: An Effective World Model for Robotic Manipulation
Abstract
The potential impacts of world models (WMs, i.e., learned simulators) on robotics are far-reaching -- policy evaluation, policy improvement, and test-time planning -- all with limited real-world interaction. To unlock these downstream capabilities, a WM needs to jointly satisfy three desiderata: $\textit{(i)}$ fidelity (i.e., producing simulated trajectories that correlate with reality), $\textit{(ii)}$ consistency (i.e., producing simulated trajectories that are coherent over long horizons), an...
Description / Details
The potential impacts of world models (WMs, i.e., learned simulators) on robotics are far-reaching -- policy evaluation, policy improvement, and test-time planning -- all with limited real-world interaction. To unlock these downstream capabilities, a WM needs to jointly satisfy three desiderata: fidelity (i.e., producing simulated trajectories that correlate with reality), consistency (i.e., producing simulated trajectories that are coherent over long horizons), and efficiency (i.e., producing simulated trajectories quickly). We propose (World Estimation Across Views for Embodied Reasoning): a WM architecture that simultaneously achieves all three desiderata, providing state-of-the-art results on robotic manipulation tasks. is a multi-view WM trained to predict future latents and reward values via a flow-matching loss. We distill the key design decisions across model architecture, memory, and prediction objectives required to unlock the kinds of long-horizon dynamic manipulation tasks that have confounded prior world modeling approaches. We apply in robotic hardware, demonstrating its effectiveness at policy evaluation (=0.870 correlation with real-world success rate), policy improvement (real-world success rate improvement of on top of the robot foundation model), and test-time planning (real-world success rate improvement of with a speedup over prior WMs). also demonstrates better performance than prior WMs when evaluated on out-of-distribution scenarios. Code, models, and videos at: https://arnavkj1995.github.io/WEAVER/ .
Source: arXiv:2606.13672v1 - http://arxiv.org/abs/2606.13672v1 PDF: https://arxiv.org/pdf/2606.13672v1 Original Link: http://arxiv.org/abs/2606.13672v1
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Jun 12, 2026
Robotics
Robotics
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