license: cc-by-4.0
pretty_name: TexasPokerRobot
size_categories:
- 1K<n<10K
tags:
- robotics
- robot-learning
- imitation-learning
- manipulation
- tabular
configs:
- config_name: default
data_files:
- split: train
path: data/train.csv
TexasPokerRobot
TexasPokerRobot is a robot manipulation dataset collected in a Texas poker tabletop environment. The raw episodes are stored as compressed NumPy .npz files, organized by action folder. This release adds a Hugging Face-compatible manifest at data/train.csv so the dataset has a standard loadable split and a working Dataset Viewer while preserving the original raw episode files.
Dataset Summary
- 1,470 raw episode files
- 14 action folders, with 105 episodes per action
- 377.94 GB of raw
.npzepisode data - RGB observations from three cameras, depth observations from three cameras, and robot joint state streams
- License: CC BY 4.0
Actions
| Action | Episodes | Raw size |
|---|---|---|
pick_up_left |
105 | 40.19 GB |
pick_up_right |
105 | 29.63 GB |
pull_5 |
105 | 29.69 GB |
pull_10 |
105 | 29.00 GB |
pull_50 |
105 | 31.83 GB |
pull_100 |
105 | 31.17 GB |
push_5 |
105 | 28.44 GB |
push_10 |
105 | 33.60 GB |
push_50 |
105 | 35.04 GB |
push_100 |
105 | 31.10 GB |
put_down_left |
105 | 18.23 GB |
put_down_right |
105 | 14.59 GB |
show_left |
105 | 13.23 GB |
show_right |
105 | 12.19 GB |
Manifest Fields
The train split is a manifest. Each row points to one raw episode file.
| Column | Description |
|---|---|
action |
Action folder name. |
episode_index |
Episode number within the action folder. |
file_path |
Path to the raw .npz file in this dataset repository. |
file_name |
Raw episode filename. |
format |
Raw file format, currently npz. |
size_bytes |
Size of the raw episode file. |
sha256 |
LFS SHA-256 checksum for the raw episode file. |
download_url |
Direct Hub URL for the raw episode file. |
modalities |
Modalities present in the raw episode. |
num_rgb_cameras |
Number of RGB camera streams. |
num_depth_cameras |
Number of depth camera streams. |
Loading
Load the manifest with the datasets library:
from datasets import load_dataset
ds = load_dataset("Winniechen2002/TexasPokerRobot")
row = ds["train"][0]
print(row["action"], row["file_path"])
Download and inspect a raw episode:
import numpy as np
from huggingface_hub import hf_hub_download
path = hf_hub_download(
repo_id="Winniechen2002/TexasPokerRobot",
filename=row["file_path"],
repo_type="dataset",
)
episode = np.load(path, allow_pickle=True)
print(episode.files)
Some robot state arrays are stored as NumPy object arrays, so loading a raw episode requires allow_pickle=True. Only use this option with dataset files you trust.
Intended Uses
This dataset is intended for robot learning research, imitation learning, action-conditioned perception, manipulation policy development, and analysis of tabletop robot trajectories.
Limitations
The Dataset Viewer previews the manifest rows, not the full RGB, depth, and joint-state tensors. The raw episode files are large, and no official train/validation/test benchmark split is provided beyond the manifest split.