FLARE: Robot Learning with Implicit World Modeling
Abstract
We introduce uture tent presentation Alignment (), a novel framework that integrates predictive latent world modeling into robot policy learning. By aligning features from a diffusion transformer with latent embeddings of future observations, enables a diffusion transformer policy to anticipate latent representations of future observations, allowing it to reason about long-term consequences while generating actions. Remarkably lightweight, requires only minimal architectural modifications -- adding a few tokens to standard vision-language-action (VLA) models -- yet delivers substantial performance gains. Across two challenging multitask simulation imitation learning benchmarks spanning single-arm and humanoid tabletop manipulation, achieves state-of-the-art performance, outperforming prior policy learning baselines by up to 26%. Moreover, unlocks the ability to co-train with human egocentric video demonstrations without action labels, significantly boosting policy generalization to a novel object with unseen geometry with as few as a single robot demonstration. Our results establish as a general and scalable approach for combining implicit world modeling with high-frequency robotic control.
Keywords
Cite
@article{arxiv.2505.15659,
title = {FLARE: Robot Learning with Implicit World Modeling},
author = {Ruijie Zheng and Jing Wang and Scott Reed and Johan Bjorck and Yu Fang and Fengyuan Hu and Joel Jang and Kaushil Kundalia and Zongyu Lin and Loic Magne and Avnish Narayan and You Liang Tan and Guanzhi Wang and Qi Wang and Jiannan Xiang and Yinzhen Xu and Seonghyeon Ye and Jan Kautz and Furong Huang and Yuke Zhu and Linxi Fan},
journal= {arXiv preprint arXiv:2505.15659},
year = {2025}
}
Comments
Project Webpage / Blogpost: https://research.nvidia.com/labs/gear/flare