ros2learn - ROS 2 enabled Machine Learning algorithms

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This repository contains a number of ROS and ROS 2 enabled Artificial Intelligence (AI) and Reinforcement Learning (RL) algorithms that run in selected environments. Please refer to Install.md to install from sources.

https://acutronicrobotics.com
https://github.com/AcutronicRobotics/ros2learn

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