Ray RLlib: A Framework for Distributed Reinforcement Learning
Article 2017 en
Authors
EL
Eric Liang
RL
Richard Liaw
PM
Philipp Moritz
Abstract
1 min read
Reinforcement learning (RL) algorithms involve the deep nesting of highly irregular computation patterns, each of which typically exhibits opportunities for distributed computation. We argue for distributing RL components in a composable way by adapting algorithms for top-down hierarchical control, thereby encapsulating parallelism and resource requirements within short-running compute tasks. We demonstrate the benefits of this principle through RLlib: a library that provides scalable software primitives for RL. These primitives enable a broad range of algorithms to be implemented with high performance, scalability, and substantial code reuse. RLlib is available at this https URL.
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