# Overview

**robomimic** is a framework for robot learning from demonstration. It offers a broad set of demonstration datasets collected on robot manipulation domains and offline learning algorithms to learn from these datasets. **robomimic** aims to make robot learning broadly *accessible* and *reproducible*, allowing researchers and practitioners to benchmark tasks and algorithms fairly and to develop the next generation of robot learning algorithms. ## Core Features

## Reproducing benchmarks The robomimic framework also makes reproducing the results from different benchmarks and datasets easy. See the [datasets page](../datasets/overview.html) for more information on downloading datasets and reproducing experiments. ## Troubleshooting Please see the [troubleshooting](../miscellaneous/troubleshooting.html) section for common fixes, or [submit an issue](https://github.com/ARISE-Initiative/robomimic/issues) on our github page. ## Contributing to robomimic This project is part of the broader [Advancing Robot Intelligence through Simulated Environments (ARISE) Initiative](https://github.com/ARISE-Initiative), with the aim of lowering the barriers of entry for cutting-edge research at the intersection of AI and Robotics. The project originally began development in late 2018 by researchers in the [Stanford Vision and Learning Lab](http://svl.stanford.edu/) (SVL). Now it is actively maintained and used for robotics research projects across multiple labs. We welcome community contributions to this project. For details please check our [contributing guidelines](../miscellaneous/contributing.html). ## Citation Please cite [this paper](https://arxiv.org/abs/2108.03298) if you use this framework in your work: ```bibtex @inproceedings{robomimic2021, title={What Matters in Learning from Offline Human Demonstrations for Robot Manipulation}, author={Ajay Mandlekar and Danfei Xu and Josiah Wong and Soroush Nasiriany and Chen Wang and Rohun Kulkarni and Li Fei-Fei and Silvio Savarese and Yuke Zhu and Roberto Mart\'{i}n-Mart\'{i}n}, booktitle={Conference on Robot Learning (CoRL)}, year={2021} } ```