--- license: cc-by-4.0 task_categories: - robotics language: - en tags: - robot-learning - manipulation - safety - lerobot - biochemical-lab size_categories: - 1K **NeuroMPC-VLA: Embedding MPC-Structured Safety Mechanisms into Vision-Language-Action Models for Safe Manipulation in Biochemical Laboratories** --- ## 📦 Dataset Overview | Property | Value | |---|---| | Total trajectories | 1,700 (17 tasks × ~100 episodes each) | | Task configurations | 17 (10 simple + 7 obstacle avoidance) | | Robot platform | SO-100 6-DOF robotic arm | | Camera views | 3× RGB cameras (OBS_IMAGE_1/2/3), 480×640, 30 fps | | Annotation | Task labels per episode | | Scene | Biochemical laboratory tabletop manipulation | | Format | LeRobot v3.0 native (parquet + AV1 video) | ### Task Configurations | Type | Tasks | Description | |---|---|---| | Simple (obstacle-free) | T01–T10 | Grasping and placing lab instruments (test tubes, beakers, funnels, etc.) without obstacles | | Obstacle avoidance | T11–T17 | Same manipulation goals with one or two obstacles placed randomly on the path | --- ## 🗂️ Repository Structure LeRobot records data in the following structure: ``` LabSafe-1700/ ├── data/ │ └── chunk-000/ │ ├── file-000.parquet # frame-level data (actions, states, timestamps) │ └── ... ├── videos/ │ ├── observation.images.OBS_IMAGE_1/ │ │ └── chunk-000/ │ │ ├── file-000.mp4 # AV1, 480×640, 30fps │ │ └── ... │ ├── observation.images.OBS_IMAGE_2/ │ └── observation.images.OBS_IMAGE_3/ ├── meta/ │ ├── info.json # dataset-level metadata (LeRobot v3.0) │ ├── episodes.jsonl # per-episode metadata (task index, length) │ ├── tasks.jsonl # task descriptions │ └── stats.json # feature statistics ├── LICENSE └── README.md ``` --- ## 🚀 Quick Start ### Install LeRobot ```bash pip install lerobot ``` ### Load the dataset ```python from lerobot.common.datasets.lerobot_dataset import LeRobotDataset dataset = LeRobotDataset("Merlyn-L/LabSafe-1700") # Iterate over episodes for i in range(dataset.num_episodes): episode = dataset.get_episode(i) frames_cam1 = episode["observation.images.OBS_IMAGE_1"] # (T, 480, 640, 3) frames_cam2 = episode["observation.images.OBS_IMAGE_2"] # (T, 480, 640, 3) frames_cam3 = episode["observation.images.OBS_IMAGE_3"] # (T, 480, 640, 3) actions = episode["action"] # (T, 6) joint positions print(f"Episode {i}: {len(actions)} steps") ``` --- ## 📊 Dataset Statistics | Split | Episodes | Avg. steps | Description | |---|---|---|---| | Simple tasks (T01–T10) | ~1,000 | ~120 | Obstacle-free | | Obstacle avoidance (T11–T17) | ~700 | ~180 | With obstacles | | **Total** | **1,700** | — | — | --- ## 🤖 Hardware Setup - **Robot**: SO-100 follower arm (so100_follower) - **Teleoperation**: Leader-follower SO-100 arm via [LeRobot](https://github.com/huggingface/lerobot) - **Cameras**: 3× RGB cameras (OBS_IMAGE_1/2/3), 480×640 @ 30 fps, AV1 codec - **Lab instruments**: Test tubes, beakers, funnels, micro-well plates, centrifuge tubes --- ## 📄 Citation If you use LabSafe-1700 in your research, please cite: ```bibtex @misc{neurompc_vla_2025, title = {NeuroMPC-VLA: Embedding MPC-Structured Safety Mechanisms into Vision-Language-Action Models for Safe Manipulation in Biochemical Laboratories}, author = {NEU-ECAL}, year = {2025} } ``` --- ## 📜 License This dataset is released under the [Creative Commons Attribution 4.0 International (CC BY 4.0)](LICENSE) license. You are free to share and adapt the data for any purpose, provided appropriate credit is given. --- ## 🙏 Acknowledgements Data collection was conducted using the [LeRobot](https://github.com/huggingface/lerobot) teleoperation framework on a SO-100 robotic arm. We thank the Hugging Face Robotics team for the open-source tools that made this dataset possible.