ARLO: A Framework For Automated Reinforcement Learning
2022 Β· Marco Mussi, Davide Lombarda, Alberto Maria Metelli, et al.
Abstract
Automated Reinforcement Learning (AutoRL) is a relatively new area of research that is gaining increasing attention. The objective of AutoRL consists in easing the employment of Reinforcement Learning (RL) techniques for the broader public by alleviating some of its main challenges, including data collection, algorithm selection, and hyper-parameter tuning. In this work, we propose a general and flexible framework, namely ARLO: Automated Reinforcement Learning Optimizer, to construct automated pipelines for AutoRL. Based on this, we propose a pipeline for offline and one for online RL, discussing the components, interaction, and highlighting the difference between the two settings. Furthermore, we provide a Python implementation of such pipelines, released as an open-source library. Our implementation has been tested on an illustrative LQG domain and on classic MuJoCo environments, showing the ability to reach competitive performances requiring limited human intervention. We also showc
Authors
(none)
Tags
Stats
Related papers
- Sample-efficient Automated Deep Reinforcement Learning (2020)0.00
- The AI Arena: A Framework For Distributed Multi-agent Reinforcement Learning (2021)0.00
- Arlbench: Flexible And Efficient Benchmarking For Hyperparameter Optimization In Reinforcement Learning (2024)0.00
- AWAC: Accelerating Online Reinforcement Learning With Offline Datasets (2020)0.00
- Automated Reinforcement Learning: An Overview (2022)0.00
- Acme: A Research Framework For Distributed Reinforcement Learning (2020)0.00
- Scilab-rl: A Software Framework For Efficient Reinforcement Learning And Cognitive Modeling Research (2024)0.00
- CORL: Research-oriented Deep Offline Reinforcement Learning Library (2022)0.00