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WestWorld: A Knowledge-Encoded Scalable Trajectory World Model for Diverse Robotic Systems

About

Trajectory world models play a crucial role in robotic dynamics learning, planning, and control. While recent works have explored trajectory world models for diverse robotic systems, they struggle to scale to a large number of distinct system dynamics and overlook domain knowledge of physical structures. To address these limitations, we introduce WestWorld, a knoWledge-Encoded Scalable Trajectory World model for diverse robotic systems. To tackle the scalability challenge, we propose a novel system-aware Mixture-of-Experts (Sys-MoE) that dynamically combines and routes specialized experts for different robotic systems via a learnable system embedding. To further enhance zero-shot generalization, we incorporate domain knowledge of robot physical structures by introducing a structural embedding that aligns trajectory representations with morphological information. After pretraining on 89 complex environments spanning diverse morphologies across both simulation and real-world settings, WestWorld achieves significant improvements over competitive baselines in zero- and few-shot trajectory prediction. Additionally, it shows strong scalability across a wide range of robotic environments and significantly improves performance on downstream model-based control for different robots. Finally, we deploy our model on a real-world Unitree Go1, where it demonstrates stable locomotion performance (see our demo on the website: https://westworldrobot.github.io/). The code will be available upon publication.

Yuchen Wang, Jiangtao Kong, Sizhe Wei, Xiaochang Li, Haohong Lin, Hongjue Zhao, Tianyi Zhou, Lu Gan, Huajie Shao• 2026

Related benchmarks

TaskDatasetResultRank
Downstream model-based controlWalker2d OpenAI Gym (test)
Accumulated Reward2.13e+3
8
Downstream model-based controlHopper OpenAI Gym (test)
Accumulated Reward2.25e+3
8
Downstream model-based controlGo1 Unitree (test)
Accumulated Reward2.2
8
Dynamics PredictionWalker2D
MAE16.35
4
Dynamics PredictionHopper
MAE13.731
4
Dynamics PredictionFranka
MAE7.737
4
Trajectory PredictionCassie bipedal jumping (test)
MAE5.316
4
Trajectory PredictionUnitree A1 quadruped locomotion (test)
MAE4.227
4
Trajectory PredictionUR5 tabletop manipulation (test)
MAE4.925
4
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