TeleopWM-Dataset / README.md
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---
license: mit
language:
- en
tags:
- autonomous-driving
- teleoperation
- robotics
- carla
- world-model
- video-prediction
- predictive-display
- future-action-prediction
- imitation-learning
- mile
---
# TeleopWM-Dataset
TeleopWM-Dataset is a large-scale collection of CARLA driving rollouts used for training and evaluating **TeleopWM**, a predictive latent world model for latency-resilient vision-based teleoperation.
The dataset contains synchronized RGB observations, vehicle controls, speed measurements, and metadata used to construct short-horizon future prediction tasks for both visual rollout prediction and future-action forecasting.
## Related Resources
* Project page: https://bimilab.github.io/paper-TeleopWM/
* Model checkpoint: https://huggingface.co/bimilab/TeleopWM
* GitHub repository: https://github.com/bimilab/paper-TeleopWM
* YouTube demo: https://youtu.be/WeKqqZuwBl0
## Overview
TeleopWM-Dataset was designed for research on:
* latency-resilient teleoperation
* predictive display
* future observation prediction
* future action prediction
* world models for driving
* autonomous and teleoperated vehicle systems
The dataset follows a CARLA/MILE-style rollout format and contains driving data collected across multiple CARLA towns and driving scenarios.
## Dataset Structure
```text
mile_action_diverse/
├── train/
│ ├── Town01/
│ ├── Town03/
│ └── Town04/
├── val/
│ └── Town02/
└── test/
└── Town05/
```
The official TeleopWM experiments use:
| Split | Towns |
| ---------- | ---------------------- |
| Train | Town01, Town03, Town04 |
| Validation | Town02 |
| Test | Town05 |
This split was selected to evaluate generalization to previously unseen environments.
## Data Contents
Each rollout contains:
* RGB camera images
* vehicle controls:
* throttle
* steering
* brake
* vehicle speed
* route metadata
* rollout metadata stored in:
```text
pd_dataframe.pkl
```
The TeleopWM pipeline constructs:
* 9 past frames
* 8 future frames
for predictive world-model training.
## Control Representation
Raw controls are stored as:
```text
[throttle, steer, brake]
```
TeleopWM internally converts them into:
```text
[longitudinal, scaled_steer, speed]
```
where:
```text
longitudinal = throttle - brake
```
This representation is used by the released TeleopWM model.
## Dataset Statistics
Approximate release size:
| Split | Size |
| ---------- | ------ |
| Train | 71 GB |
| Validation | 11 GB |
| Test | 9 GB |
| Total | ~90 GB |
## MILE Acknowledgement
This dataset uses a CARLA rollout format derived from the MILE ecosystem.
We acknowledge the contributions of the MILE project and the associated CARLA data-collection framework. The rollout structure, metadata conventions, and driving-data organization are based on the MILE pipeline and were extended for TeleopWM research on predictive display and future-action forecasting.
If you use this dataset, please also consider citing the original MILE work.
## Intended Use
This dataset is intended for:
* predictive world-model research
* future frame prediction
* future action prediction
* teleoperation research
* latency mitigation research
* autonomous driving research
* imitation learning research
## Out-of-Scope Use
This dataset is not intended to:
* certify safety-critical driving systems
* validate real-world autonomous vehicles without additional testing
* represent all driving environments or traffic conditions
* serve as a benchmark for real-world safety evaluation
## Citation
If you use TeleopWM-Dataset, please cite:
```bibtex
@misc{teleopwm_dataset2026,
title={TeleopWM-Dataset: A CARLA Dataset for Latency-Resilient Vision-Based Teleoperation},
author={Khalil, Aws and Kwon, Jaerock},
year={2026}
}
```
## License
This dataset is released under the MIT License.