skrl: Modular and Flexible Library for Reinforcement Learning

02/08/2022
by   Antonio Serrano-Muñoz, et al.
0

skrl is an open-source modular library for reinforcement learning written in Python and designed with a focus on readability, simplicity, and transparency of algorithm implementations. Apart from supporting environments that use the traditional OpenAI Gym interface, it allows loading, configuring, and operating NVIDIA Isaac Gym environments, enabling the parallel training of several agents with adjustable scopes, which may or may not share resources, in the same execution. The library's documentation can be found at https://skrl.readthedocs.io and its source code is available on GitHub at urlhttps://github.com/Toni-SM/skrl.

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