MBRL-Lib: A Modular Library for Model-based Reinforcement Learning

04/20/2021
by   Luis Pineda, et al.
0

Model-based reinforcement learning is a compelling framework for data-efficient learning of agents that interact with the world. This family of algorithms has many subcomponents that need to be carefully selected and tuned. As a result the entry-bar for researchers to approach the field and to deploy it in real-world tasks can be daunting. In this paper, we present MBRL-Lib – a machine learning library for model-based reinforcement learning in continuous state-action spaces based on PyTorch. MBRL-Lib is designed as a platform for both researchers, to easily develop, debug and compare new algorithms, and non-expert user, to lower the entry-bar of deploying state-of-the-art algorithms. MBRL-Lib is open-source at https://github.com/facebookresearch/mbrl-lib.

READ FULL TEXT
research
02/08/2022

skrl: Modular and Flexible Library for Reinforcement Learning

skrl is an open-source modular library for reinforcement learning writte...
research
10/09/2020

Torch-Points3D: A Modular Multi-Task Frameworkfor Reproducible Deep Learning on 3D Point Clouds

We introduce Torch-Points3D, an open-source framework designed to facili...
research
09/01/2022

Transformers are Sample Efficient World Models

Deep reinforcement learning agents are notoriously sample inefficient, w...
research
01/24/2022

Pearl: Parallel Evolutionary and Reinforcement Learning Library

Reinforcement learning is increasingly finding success across domains wh...
research
03/17/2023

Towards AI-controlled FES-restoration of movements: Learning cycling stimulation pattern with reinforcement learning

Functional electrical stimulation (FES) has been increasingly integrated...
research
05/26/2021

PyTouch: A Machine Learning Library for Touch Processing

With the increased availability of rich tactile sensors, there is an equ...
research
09/18/2020

A Contraction Approach to Model-based Reinforcement Learning

Model-based Reinforcement Learning has shown considerable experimental s...

Please sign up or login with your details

Forgot password? Click here to reset