Implement some of the core deep RL algorithms with C++
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Updated
May 21, 2019 - C++
Implement some of the core deep RL algorithms with C++
PPO implementation by using Pytorch C++ API
PyTorch C++ Reinforcement Learning
A Study on Reinforcement Learning in Starcraft Game Platform as a Collaborative Researcher of Samsung Company.
Reinforcement Learning in Flashlight and Arrayfire
A parallel reinforcement learning framework written in C++
RL training for quadruped robot(mit minicheetah) various gaits in different velocity based on MPC controller.
TorchRL is a C++ reinforcement library using PyTorch C++ backend LibTorch
Reinforcement learning for flight simulation
C++ Deep Reinforcement Learning Agent library
Trains deep reinforcement learning agents in Atari environments via the DRLA library.
Trains a deep reinforcement learning agent in simulation testbed environments with the DRLA library.
RLOP: A Framework for Reinforcement Learning, Optimization and Planning Algorithms
A C++20 framework for training autonomous drone flight controllers using deep reinforcement learning. Combines PPO optimization with a high-performance gRPC bridge to Microsoft AirSim for real-time quadrotor simulation and monitoring.
testing MLP, DQN, PPO, SAC, policy-gradient by snakeAI
DDNet Neural Network
A C++ implementation of a neural network and Proximal Policy Optimization.
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