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title abstract keywords layout series id month tex_title firstpage lastpage page order cycles bibtex_author author date address publisher container-title volume genre issued pdf extras
Benchmarking Reinforcement Learning Algorithms on Real-World Robots
Through many recent successes in simulation, model-free reinforcement learning has emerged as a promising approach to solving continuous control robotic tasks. The research community is now able to reproduce, analyze and build quickly on these results due to open source implementations of learning algorithms and simulated benchmark tasks. To carry forward these successes to real-world applications, it is crucial to withhold utilizing the unique advantages of simulations that do not transfer to the real world and experiment directly with physical robots. However, reinforcement learning research with physical robots faces substantial resistance due to the lack of benchmark tasks and supporting source code. In this work, we introduce several reinforcement learning tasks with multiple commercially available robots that present varying levels of learning difficulty, setup, and repeatability. On these tasks, we test the learning performance of off-the-shelf implementations of four reinforcement learning algorithms and analyze sensitivity to their hyper-parameters to determine their readiness for applications in various real-world tasks. Our results show that with a careful setup of the task interface and computations, some of these implementations can be readily applicable to physical robots. We find that state-of-the-art learning algorithms are highly sensitive to their hyper-parameters and their relative ordering does not transfer across tasks, indicating the necessity of re-tuning them for each task for best performance. On the other hand, the best hyper-parameter configuration from one task may often result in effective learning on held-out tasks even with different robots, providing a reasonable default. We make the benchmark tasks publicly available to enhance reproducibility in real-world reinforcement learning.
CORL, Robots, Reinforcement learning, Benchmarking
inproceedings
Proceedings of Machine Learning Research
mahmood18a
0
Benchmarking Reinforcement Learning Algorithms on Real-World Robots
561
591
561-591
561
false
Mahmood, A. Rupam and Korenkevych, Dmytro and Vasan, Gautham and Ma, William and Bergstra, James
given family
A. Rupam
Mahmood
given family
Dmytro
Korenkevych
given family
Gautham
Vasan
given family
William
Ma
given family
James
Bergstra
2018-10-23
PMLR
Proceedings of The 2nd Conference on Robot Learning
87
inproceedings
date-parts
2018
10
23