Repo for the Deep Reinforcement Learning Nanodegree program
-
Updated
Nov 16, 2023 - Jupyter Notebook
Repo for the Deep Reinforcement Learning Nanodegree program
Obstacle Tower Environment
Reinforcement Learning Algorithms Based on PyTorch
Various examples of ml-agents while teaching concepts about it in YouTube
UAV Logistics Environment for Multi-Agent Reinforcement Learning / Unity ML-Agents / Unity 3D
A simple example of how to implement vector based DQN using PyTorch and a ML-Agents environment
Animal-AI supports interdisciplinary research to help better understand human, animal, and artificial cognition.
Showcase environment for ML-Agents
A Complete Open Source Agent AI Framework For Unity
Train reinforcement learning agent using ML-Agents with Google Colab.
An simple, reliable, and minimal implementation of the AI CoScientist Paper from Google "Towards an AI co-scientist" with Swarms Framework
Repository for slides & codes of RL Korea Bootcamp
Research into Assault Course for training Active Ragdolls (using MujocoUnity+ml_agents)
A Self Play reinforcement learning Agent learns to play TicTacToe using the ML-Agents Framework in Unity.
Official implementation of paper "CityLearn: Diverse Real-World Environments for Sample-Efficient Navigation Policy Learning" by M. Chancán (ICRA 2020) https://doi.org/10.1109/ICRA40945.2020.9197336
A simple example of how to implement vector based DDPG for MARL tasks using PyTorch and a ML-Agents environment.
The Mayan Adventure is an open-source reinforcement learning environment for Unity ML-Agents. In this environment, you train your agent (Indie) to find the golden statue in this dangerous environment full of traps.
Motorcycle Racing made with Unity Machine Learning Agents
Research into controllers for 2d and 3d Active Ragdolls (using MujocoUnity+ml_agents)
This repository documents my journey to become a Machine Learning Engineer. It contains the list of projects undertaken, books read, courses pursued and almost everything I did in the process. So follow along or diverge to you own path, each way, I believe this will add value to any data professional / enthusiast.
Add a description, image, and links to the ml-agents topic page so that developers can more easily learn about it.
To associate your repository with the ml-agents topic, visit your repo's landing page and select "manage topics."