--- license: cc-by-nc-4.0 task_categories: - image-text-to-video language: - en size_categories: - 10K Can a video model generate a full visual trajectory that is not only realistic, but also rule-consistent, executable, and automatically verifiable? The dataset contains procedurally generated visual reasoning tasks from three domains: Maze, FlowFree, and Sokoban. Each sample pairs an initial visual state and task prompt with a ground-truth solution video. These domains are designed for reinforcement learning with verifiable rewards, where generated videos can be parsed and checked by symbolic rule-based evaluators. ## What's in this repo | Path | Description | |---|---| | `train/` | Training split for VideoRLVR supervised fine-tuning and RL initialization | | `test/` | Held-out evaluation split generated with disjoint random seeds | | `train/maze/` | Maze training videos and metadata | | `train/flowfree/` | FlowFree training videos and metadata | | `train/sokoban/` | Sokoban training videos and metadata | | `test/maze/` | Maze test videos and metadata | | `test/flowfree/` | FlowFree test videos and metadata | | `test/sokoban/` | Sokoban test videos and metadata | | `train/metadata_all.csv` | Combined training metadata | | `test/metadata_all.csv` | Combined test metadata | | `*/metadata_maze.csv` | Maze-only metadata | | `*/metadata_flowfree.csv` | FlowFree-only metadata | | `*/metadata_sokoban.csv` | Sokoban-only metadata | ## Dataset composition | Domain | Train | Test | Description | |---|---:|---:|---| | `maze` | 10,000 | 1,000 | Grid navigation from start to goal while avoiding walls | | `flowfree` | 10,000 | 1,000 | Connect colored endpoints with non-overlapping paths that fill the grid | | `sokoban` | 10,000 | 1,000 | Push boxes to target locations under Sokoban transition rules | | **Total** | **30,000** | **3,000** | Multi-task verifiable video reasoning suite | Each example contains an input state, a natural-language instruction, and a ground-truth solution video. Videos are rendered at **480×832** resolution with **81 frames**. ## How to use ```bash # Download the dataset hf download DarthZhu/VideoRLVR-Data \ --repo-type dataset \ --local-dir VideoRLVR-Data cd VideoRLVR-Data ``` You can load the metadata files directly: ```python import pandas as pd from pathlib import Path root = Path("VideoRLVR-Data") maze_train = pd.read_csv(root / "train" / "metadata_maze.csv") flowfree_train = pd.read_csv(root / "train" / "metadata_flowfree.csv") sokoban_train = pd.read_csv(root / "train" / "metadata_sokoban.csv") ``` # Schema The metadata files use a simple video-generation format. ```json { "video": "relative/path/to/solution_video.mp4", "input_image": "relative/path/to/input_image.png", "prompt": "Natural-language task instruction" } ``` # 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} } ```