license: cc-by-4.0
task_categories:
- robotics
tags:
- LeRobot
configs:
- config_name: default
data_files: data/*/*.parquet
Gello Dataset - LeRobot v2.1 Format
This dataset contains robotic manipulation demonstrations converted to the LeRobot v2.1 data format, matching the structure of the berkeley_autolab_ur5 dataset.
Dataset Overview
- Task: Pick up the hard drive and place it in the grey box.
- Total Episodes: 10
- Total Frames: 2,560
- Total Videos: 20 (2 video types per episode)
- Format: LeRobot v2.1
- FPS: 10
- Video Resolution: 256x256
Directory Structure
gello_lerobot_v21/
├── data/
│ └── chunk-000/
│ ├── episode_000000.parquet
│ ├── episode_000001.parquet
│ └── ... (10 episodes total)
├── meta/
│ ├── episodes_stats.jsonl # Per-episode statistics
│ ├── episodes.jsonl # Episode metadata
│ ├── info.json # Dataset metadata
│ └── tasks.jsonl # Task descriptions
└── videos/
└── chunk-000/
├── observation.images.hand_image/
│ ├── episode_000000.mp4
│ └── ... (10 videos)
└── observation.images.image/
├── episode_000000.mp4
└── ... (10 videos)
Data Fields
Observation Fields
observation.state: Robot joint positions and gripper state (7D float32)observation.images.hand_image: Wrist camera view (256x256x3 video)observation.images.image: Base camera view (256x256x3 video)
Action Fields
action: Robot actions (7D float32)
Metadata Fields
timestamp: Time step in seconds (float32)episode_index: Episode identifier (int64)frame_index: Frame index within episode (int64)next.reward: Reward signal (float32)next.done: Episode termination flag (bool)index: Global frame index (int64)task_index: Task identifier (int64)
Usage with LeRobot
This dataset is compatible with LeRobot v2.1 tools and can be loaded using:
from lerobot.common.datasets.lerobot_dataset import LeRobotDataset
# Load the dataset
dataset = LeRobotDataset("/path/to/gello_lerobot_v21")
# Access episodes
for episode in dataset:
print(f"Episode {episode['episode_index']}: {episode['total_frames']} frames")
Video Format
- Codec: SVT-AV1
- Resolution: 256x256 pixels
- Channels: 3 (RGB)
- Pixel Format: YUV420p
- Frame Rate: 10 FPS
Task Description
All episodes in this dataset demonstrate the same task:
"Pick up the hard drive and place it in the grey box."
Dataset Statistics
- Average Episode Length: 256 frames
- Average Episode Duration: 25.6 seconds
- Success Rate: 100% (all episodes completed successfully)
- Total Reward: 10.0 (1.0 per episode)
File Formats
Parquet Files
Each episode is stored as a Parquet file containing all the data fields with proper data types.
JSONL Files
episodes_stats.jsonl: Detailed statistics for each episodeepisodes.jsonl: Episode metadata including task assignmentstasks.jsonl: Task definitions
JSON Files
info.json: Dataset metadata including feature specifications, splits, and paths
Conversion Notes
This dataset was converted from raw Gello pickle files using the gello_to_lerobot.py script. The conversion process:
- Loads raw demonstration data from pickle files
- Processes images (resize to 256x256, convert to videos)
- Creates LeRobot v2.1 directory structure
- Saves episodes as individual Parquet files
- Generates metadata files in the required format
Compatibility
This dataset follows the same structure as the berkeley_autolab_ur5 dataset and is fully compatible with:
- LeRobot v2.1 data loading utilities
- HuggingFace datasets library
- Standard machine learning frameworks (PyTorch, TensorFlow)
License
This dataset is provided for research and educational purposes. Please refer to the original Gello dataset license for usage terms.