--- license: apache-2.0 library_name: diffusers pipeline_tag: image-to-video base_model: - Wan-AI/Wan2.2-TI2V-5B datasets: - DarthZhu/VideoRLVR-Data --- # VideoRLVR VideoRLVR is a reinforcement learning (RL) recipe for training video reasoning models with verifiable rewards, introduced in the paper [Video Models Can Reason with Verifiable Rewards](https://huggingface.co/papers/2605.15458). This checkpoint is an RL-optimized version of [Wan2.2-TI2V-5B](https://huggingface.co/Wan-AI/Wan2.2-TI2V-5B) trained on procedurally generated reasoning tasks including Maze, FlowFree, and Sokoban. - **Paper:** [Video Models Can Reason with Verifiable Rewards](https://huggingface.co/papers/2605.15458) - **Project Page:** [https://darthzhu.github.io/VideoRLVR-page/](https://darthzhu.github.io/VideoRLVR-page/) - **Repository:** [https://github.com/luka-group/VideoRLVR](https://github.com/luka-group/VideoRLVR) ## Overview VideoRLVR formulates video reasoning as the generation of verifiable visual trajectories. It utilizes an SDE-GRPO optimization backbone, dense decomposed rewards, and an Early-Step Focus strategy for efficient training. This approach enables video diffusion models to satisfy explicit spatial, temporal, or logical constraints, moving beyond perceptual imitation toward reliable rule-consistent visual reasoning. Across tasks like Maze, FlowFree, and Sokoban, VideoRLVR consistently improves over supervised fine-tuning baselines, demonstrating that verifiable RL can effectively optimize models for objective success criteria. ## Citation ```bibtex @article{zhu2026video, title={Video Models Can Reason with Verifiable Rewards}, author={Tinghui Zhu and Sheng Zhang and James Y. Huang and Selena Song and Xiaofei Wen and Yuankai Li and Hoifung Poon and Muhao Chen}, journal={arXiv preprint arXiv:2605.15458}, year={2026} } ```