rl unplugged
RL Unplugged: A Suite of Benchmarks for Offline Reinforcement Learning
Offline methods for reinforcement learning have a potential to help bridge the gap between reinforcement learning research and real-world applications. They make it possible to learn policies from offline datasets, thus overcoming concerns associated with online data collection in the real-world, including cost, safety, or ethical concerns. In this paper, we propose a benchmark called RL Unplugged to evaluate and compare offline RL methods. RL Unplugged includes data from a diverse range of domains including games e.g., Atari benchmark) and simulated motor control problems (e.g., DM Control Suite). The datasets include domains that are partially or fully observable, use continuous or discrete actions, and have stochastic vs. deterministic dynamics.
RL Unplugged: A Suite of Benchmarks for Offline Reinforcement Learning
Offline methods for reinforcement learning have a potential to help bridge the gap between reinforcement learning research and real-world applications. They make it possible to learn policies from offline datasets, thus overcoming concerns associated with online data collection in the real-world, including cost, safety, or ethical concerns. In this paper, we propose a benchmark called RL Unplugged to evaluate and compare offline RL methods. RL Unplugged includes data from a diverse range of domains including games e.g., Atari benchmark) and simulated motor control problems (e.g., DM Control Suite). The datasets include domains that are partially or fully observable, use continuous or discrete actions, and have stochastic vs. deterministic dynamics.
Review for NeurIPS paper: RL Unplugged: A Collection of Benchmarks for Offline Reinforcement Learning
Weaknesses: My biggest concern is that most of the datasets seem homogenous in terms of data collection sources. Most seem to consist of experience collected from a handful of RL algorithm runs. In real world settings, data collection could take place from heterogenous sources of data, such as humans. In that regard, it seems prudent to keep the task domains fixed and provide datasets that vary the quality of dataset sources along different dimensions (e.g. Data collection through humans could also be considered, as done in prior works like this one (https://arxiv.org/abs/1811.02790) or this one (https://arxiv.org/abs/1909.12200).
Review for NeurIPS paper: RL Unplugged: A Collection of Benchmarks for Offline Reinforcement Learning
This paper presents a benchmark suite for offline RL, along with baseline results on this suite. There is a clear need for such a benchmark suite and all reviewers agree that this submission is a good first step towards fulfilling this need. Only R3 considers that it is not ready yet for acceptance, due to lacking more realistic benchmarks (i.e. Although I agree that this is a valid concern (and I encourage the authors to follow R3's advice and look up potential simulators that may fill up this gap), I also agree with other reviewers that the current state of the proposed benchmark should already be very useful to the research community. As a result, I recommend to accept this paper.
RL Unplugged: A Suite of Benchmarks for Offline Reinforcement Learning
Offline methods for reinforcement learning have a potential to help bridge the gap between reinforcement learning research and real-world applications. They make it possible to learn policies from offline datasets, thus overcoming concerns associated with online data collection in the real-world, including cost, safety, or ethical concerns. In this paper, we propose a benchmark called RL Unplugged to evaluate and compare offline RL methods. RL Unplugged includes data from a diverse range of domains including games e.g., Atari benchmark) and simulated motor control problems (e.g., DM Control Suite). The datasets include domains that are partially or fully observable, use continuous or discrete actions, and have stochastic vs. deterministic dynamics.
Improving and Benchmarking Offline Reinforcement Learning Algorithms
Kang, Bingyi, Ma, Xiao, Wang, Yirui, Yue, Yang, Yan, Shuicheng
Recently, Offline Reinforcement Learning (RL) has achieved remarkable progress with the emergence of various algorithms and datasets. However, these methods usually focus on algorithmic advancements, ignoring that many low-level implementation choices considerably influence or even drive the final performance. As a result, it becomes hard to attribute the progress in Offline RL as these choices are not sufficiently discussed and aligned in the literature. In addition, papers focusing on a dataset (e.g., D4RL) often ignore algorithms proposed on another dataset (e.g., RL Unplugged), causing isolation among the algorithms, which might slow down the overall progress. Therefore, this work aims to bridge the gaps caused by low-level choices and datasets. To this end, we empirically investigate 20 implementation choices using three representative algorithms (i.e., CQL, CRR, and IQL) and present a guidebook for choosing implementations. Following the guidebook, we find two variants CRR+ and CQL+ , achieving new state-of-the-art on D4RL. Moreover, we benchmark eight popular offline RL algorithms across datasets under unified training and evaluation framework. The findings are inspiring: the success of a learning paradigm severely depends on the data distribution, and some previous conclusions are biased by the dataset used. Our code is available at https://github.com/sail-sg/offbench.
RL Unplugged: Benchmarks for Offline Reinforcement Learning
Gulcehre, Caglar, Wang, Ziyu, Novikov, Alexander, Paine, Tom Le, Colmenarejo, Sergio Gomez, Zolna, Konrad, Agarwal, Rishabh, Merel, Josh, Mankowitz, Daniel, Paduraru, Cosmin, Dulac-Arnold, Gabriel, Li, Jerry, Norouzi, Mohammad, Hoffman, Matt, Nachum, Ofir, Tucker, George, Heess, Nicolas, de Freitas, Nando
Offline methods for reinforcement learning have a potential to help bridge the gap between reinforcement learning research and real-world applications. They make it possible to learn policies from offline datasets, thus overcoming concerns associated with online data collection in the real-world, including cost, safety, or ethical concerns. In this paper, we propose a benchmark called RL Unplugged to evaluate and compare offline RL methods. RL Unplugged includes data from a diverse range of domains including games (e.g., Atari benchmark) and simulated motor control problems (e.g., DM Control Suite). The datasets include domains that are partially or fully observable, use continuous or discrete actions, and have stochastic vs. deterministic dynamics. We propose detailed evaluation protocols for each domain in RL Unplugged and provide an extensive analysis of supervised learning and offline RL methods using these protocols. We will release data for all our tasks and open-source all algorithms presented in this paper. We hope that our suite of benchmarks will increase the reproducibility of experiments and make it possible to study challenging tasks with a limited computational budget, thus making RL research both more systematic and more accessible across the community. Moving forward, we view RL Unplugged as a living benchmark suite that will evolve and grow with datasets contributed by the research community and ourselves. Our project page is available on https://git.io/JJUhd.