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gym-environments
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The most simple, flexible, and comprehensive OpenAI Gym trading environment (Approved by OpenAI Gym)
Grid2Op a testbed platform to model sequential decision making in power systems.
Multi-Agent Connected Autonomous Driving (MACAD) Gym environments for Deep RL. Code for the paper presented in the Machine Learning for Autonomous Driving Workshop at NeurIPS 2019:
Multi-objective Gymnasium environments for reinforcement learning
PyTorch implementation of Hierarchical Actor Critic (HAC) for OpenAI gym environments
Collection of Reinforcement Learning / Meta Reinforcement Learning Environments.
Partially Observable Process Gym
A framework to design Reinforcement Learning environments that model Active Network Management (ANM) tasks in electricity distribution networks.
A power network simulator with a Reinforcement Learning-focused usage.
Gym environments and agents for autonomous driving.
A collection of Gymnasium compatible games for reinforcement learning.
A toolkit for auto-generation of OpenAI Gym environments from RDDL description files.
An open-source framework to benchmark and assess safety specifications of Reinforcement Learning problems.
Pytorch Implementation of Stochastic MuZero for gym environment. This algorithm is capable of supporting a wide range of action and observation spaces, including both discrete and continuous variations.
Set of reinforcement learning environments for optical networks
🎳 Environments for Reinforcement Learning
Reinforcement learning in haskell
Framework for integrating ROS and Gazebo with gymnasium, streamlining the development and training of RL algorithms in realistic robot simulations.
Cellular Automata Environments for Reinforcement Learning
A collection of RL gymnasium environments for learning to grasp 3D deformable objects.