--- annotations_creators: - machine-generated language: - en language_creators: - expert-generated license: - cc-by-4.0 multilinguality: [] pretty_name: AssettoCorsaGym Dataset size_categories: - 10M laps ``` ### Data Instances Each data instance includes telemetry data at 50Hz from a racing simulator, such as speed, position, acceleration, and control inputs (steering, throttle, brake). ### Data Fields See: https://github.com/dasGringuen/assetto_corsa_gym/blob/main/assetto_corsa_gym/assetto-corsa-autonomous-racing-plugin/plugins/sensors_par/structures.py ### Data Splits We split the data in cars and tracks ## Dataset Creation ### Curation Rationale The Assetto Corsa Gym dataset was curated to advance research in autonomous driving, reinforcement learning, and imitation learning. By providing a diverse dataset that includes both human driving data and data generated by Soft Actor-Critic (SAC) policies ### Source Data #### Initial Data Collection and Normalization Data was collected from a racing simulator set up. Human drivers completed at least five laps per track and car, while SAC policies were trained from scratch and their replay buffers were recorded. #### Who are the source language producers? Human drivers of varying skill levels, including a professional e-sports driver, experts, casual drivers, and beginners. ### Annotations #### Annotation process Data was automatically labeled during collection to differentiate between human and SAC policy data. #### Who are the annotators? The data was annotated by the research team at UC San Diego and Graz University of Technology. ### Personal and Sensitive Information The dataset does not contain any personally identifiable information. Drivers were anonymized and identified only by driver_id. ## Considerations for Using the Data ### Social Impact of Dataset The dataset aims to contribute to the development of safer and more efficient autonomous driving systems by providing diverse driving data for training machine learning models. ### Discussion of Biases The dataset includes a wide range of driving skills, but there may still be biases based on the limited number of human participants and their specific driving styles. Additionally, the number of laps per track and car is unbalanced, which might affect the generalizability of models trained on this dataset. The selection of tracks and cars, as well as the specific conditions under which the data was collected, could also introduce biases that researchers should be aware of when using this dataset. ### Other Known Limitations - Limited number of tracks and cars - Simulated driving environment may not fully capture real-world driving conditions ## Additional Information ### Dataset Curators The dataset was curated by researchers at UC San Diego and Graz University of Technology. ### Licensing Information CC BY 4.0 ### Citation Information ``` @misc{remonda2024simulation, title={A Simulation Benchmark for Autonomous Racing with Large-Scale Human Data}, author={Adrian Remonda and Nicklas Hansen and Ayoub Raji and Nicola Musiu and Marko Bertogna and Eduardo E. Veas and Xiaolong Wang}, booktitle={38th Annual Conference on Neural Information Processing Systems (Submission)}, year={2024} } ``` ### Contributions Thanks to [@dasGringuen](https://github.com/dasGringuen) for adding this dataset.