--- license: mit library_name: transformers tags: - robotics - reward-model - video-language-model - reasoning - reinforcement-learning - qwen3-vl - bf16 pipeline_tag: image-text-to-text datasets: - Philip-MIT/sole_training_data --- # SOLE-R1-8B SOLE-R1-8B is a video-language reward reasoning model for robotics. It is designed to estimate task progress from robot video frames and a natural-language task description, producing both per-timestep reasoning traces and scalar progress predictions that can be used as rewards for online robot reinforcement learning. This model accompanies the paper **“SOLE-R1: Video-Language Reasoning as the Sole Reward for On-Robot RL”** by Philip Schroeder, Thomas Weng, Karl Schmeckpeper, Eric Rosen, Stephen Hart, and Ondrej Biza. - Paper: https://arxiv.org/abs/2603.28730 - Project page: https://philip-mit.github.io/sole-r1/ - Code: https://github.com/Philip-MIT/sole-r1-model - Training data: https://huggingface.co/datasets/Philip-MIT/sole_training_data ## Model Description SOLE-R1 predicts robot task progress from visual observations. Given a video and a task description, the model outputs a reasoning trace and a scalar progress estimate. Expected output format: reasoning about task progressprogress% The progress estimate is intended to serve as a dense reward signal for robotic reinforcement learning, especially when manually engineered rewards are unavailable. ## Quick Start The recommended interface for inference is [RoboReason](https://github.com/Philip-MIT/roboreason): # pip install -U roboreason import roboreason as rr video_paths = [ "test_videos/robosuite/lift/unsuccessful/robosuite_lift_episode_12_unsuccessful_max_reward_38.mp4" ] task_description = "Pick up the cube from the table." rewards, reasoning_traces = rr.generate( model="SOLE-R1", task_description=task_description, video_paths=video_paths, view_type_per_video=["external and wrist"], verbose=False, ) print(rewards) print(reasoning_traces) # Plotting with show_reasoning_traces=True output_sole = {"model": "SOLE-R1", "rewards": rewards[0], "reasoning_traces": reasoning_traces[0]} rr.video_plot( outputs=[output_sole], plot_save_path='model_outputs/sole-r1/robosuite/lift/unsuccessful/robosuite_lift_episode_12_unsuccessful_max_reward_38.mp4', video_path=video_paths[0], show_reasoning_traces=True, task_description=task_description, verbose=False ) Optional pre-download: from roboreason.utils.model_utils import get_model_dir get_model_dir("sole-r1") ## Input Format The model is trained to reason over robot task progress using prompts that include: - A robot task description - The first timestep progress, typically `0%` - The previous timestep progress - Visual observations from the first, previous, and current timesteps - Multiple camera views when available, such as external and wrist cameras Example task description: Pick up the cube from the table. ## Output Format The expected output format is: [reasoning about visual task progress][current task progress]% Example: The gripper has moved closer to the cube but has not yet grasped or lifted it. This indicates incremental progress from the previous timestep.22% Downstream systems should parse the numeric value inside `...` as the reward/progress estimate. ## Training Data The model was trained on the [SOLE-R1-8B](https://huggingface.co/Philip-MIT/SOLE-R1-8B) training dataset. The dataset contains robot task progress examples with images, prompts, reasoning completions, and progress labels. The full dataset is approximately 2TB. Streaming example: from datasets import load_dataset ds = load_dataset( "Philip-MIT/sole_training_data", split="train", streaming=True, ) for row in ds: print(row) break ## Citation BibTeX: @misc{schroeder2026soler1, title={SOLE-R1: Video-Language Reasoning as the Sole Reward for On-Robot RL}, author={Philip Schroeder and Thomas Weng and Karl Schmeckpeper and Eric Rosen and Stephen Hart and Ondrej Biza}, year={2026}, eprint={2603.28730}, archivePrefix={arXiv}, primaryClass={cs.RO} } ## License This repository is released under the MIT License.