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ZenO Sim-Teleop — Franka Panda Manipulation (Sample)
Teleoperated Franka Emika Panda manipulation trajectories collected in a MuJoCo simulation, packaged in the LeRobot v2.1 format with synchronized front and wrist camera video.
This repository is a curated public sample. It contains 50 episodes drawn from 5 expert (long-horizon, contact-rich) tasks — 10 episodes per task — selected by quality score from our production collection. The full corpus is far larger (see Full corpus below) and is available on demand.
Contact: support@zen-o.xyz — for the full dataset, additional tasks, custom object sets, or targeted on-demand collection.
What's inside this sample
| Robot | Franka Emika Panda (7-DoF arm + parallel gripper) |
| Format | LeRobot v2.1 (per-episode video files) |
| Episodes | 50 (5 tasks × 10) |
| Cameras | observation.images.front, observation.images.wrist — 640×480, H.264 mp4 (yuv420p) |
| Control rate | 30 fps |
| Simulator | MuJoCo |
Tasks in this sample (expert set)
| Task | Episodes |
|---|---|
| Bricklayer Palletizing | 10 |
| Open Shelf Loading | 10 |
| Precision Peg Insertion | 10 |
| Sort Parts to Tray | 10 |
| Test Tube Rack Loading | 10 |
Data schema
Each frame provides:
| Key | Dtype | Shape | Description |
|---|---|---|---|
observation.state |
float32 | (15,) | 7 arm joint positions (rad), gripper width (m), end-effector position (xyz, m), end-effector orientation (quaternion, wxyz) |
action |
float32 | (8,) | 7 arm joint targets, gripper command (0–1) |
observation.images.front |
video | (480, 640, 3) | Fixed front-facing workspace camera |
observation.images.wrist |
video | (480, 640, 3) | Gripper-mounted wrist camera |
timestamp |
float32 | (1,) | Seconds from episode start |
frame_index, episode_index, index, task_index |
int64 | (1,) | LeRobot indexing |
observation.state layout (15): [j1..j7, gripper, ee_x, ee_y, ee_z, ee_qw, ee_qx, ee_qy, ee_qz].
Preview / Visualize
Open any episode in the LeRobot dataset visualizer (synchronized front + wrist video with the state/action timeseries):
| Task | Episode | Open in visualizer |
|---|---|---|
| Bricklayer Palletizing | 0 | https://huggingface.co/spaces/lerobot/visualize_dataset?dataset=zeno-labs%2Fsim-teleop&episode=0 |
| Open Shelf Loading | 10 | https://huggingface.co/spaces/lerobot/visualize_dataset?dataset=zeno-labs%2Fsim-teleop&episode=10 |
| Precision Peg Insertion | 20 | https://huggingface.co/spaces/lerobot/visualize_dataset?dataset=zeno-labs%2Fsim-teleop&episode=20 |
| Sort Parts to Tray | 30 | https://huggingface.co/spaces/lerobot/visualize_dataset?dataset=zeno-labs%2Fsim-teleop&episode=30 |
| Test Tube Rack Loading | 40 | https://huggingface.co/spaces/lerobot/visualize_dataset?dataset=zeno-labs%2Fsim-teleop&episode=40 |
Episodes are grouped 10-per-task in the order above (0–9, 10–19, …, 40–49).
Loading
from lerobot.datasets.lerobot_dataset import LeRobotDataset
ds = LeRobotDataset("zeno-labs/sim-teleop")
print(ds.meta.total_episodes, ds.meta.total_frames)
sample = ds[0]
# sample["observation.images.front"], sample["observation.state"], sample["action"], ...
Full corpus & on-demand collection
The public sample above is a small slice. Our full collection currently holds ~26,500 quality-scored trajectories across 12 tasks (bot/sybil-flagged accounts excluded), and grows continuously:
Expert tasks (long-horizon / contact-rich)
| Task | Available |
|---|---|
| Bricklayer Palletizing | 2,806 |
| Precision Peg Insertion | 2,435 |
| Sort Parts to Tray | 2,257 |
| Open Shelf Loading | 1,873 |
| Test Tube Rack Loading | 1,668 |
| Bin Picking: Extract the Red Part | 627 |
| Expert subtotal | 11,666 |
Basic tasks (single-skill pick / place / push / stack)
| Task | Available |
|---|---|
| Lift & Hold | 2,855 |
| Pick & Place to Bin | 2,681 |
| Stack Two | 2,502 |
| Sort to Two Zones | 2,387 |
| Push to Zone | 2,263 |
| Stand the Peg Upright | 2,161 |
| Basic subtotal | 14,849 |
Total: ~26,500 trajectories across 12 tasks.
We can also run on-demand collection for new tasks, custom object sets, alternative camera configurations, or specific success criteria, and deliver in LeRobot v2.1 (or v3.0 on request).
Get in touch: support@zen-o.xyz
Notes
- Each episode is a complete, scored task attempt. The public sample is filtered to high-quality successful demonstrations.
- Trajectories from accounts flagged as automated/multi-account are excluded from all released data.
- States/actions are recorded from the live simulation; camera video in this release is rendered offline from the recorded simulation state (same physics, deterministic replay).
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