Skip to content

vivekar96/reinforcement-learning

 
 

Repository files navigation

Reinforcement Learning

Realizations
  • Old experiments on RL (2016)
  • Solving OpenAI Gym environments (2017-2018)
  • Developing an multi agent Tic Tac Toe environment and solving it with Policy Gradients (May 2017)
  • Using RL to automatically adapt the cooling in a Data Center (August 2017)
  • Controlling Robots via Reinforcement Learning (November 2017)
  • Playing and solving the Chrome Dinosaur Game with Evolution Strategies and PyTorch (January 2018)
  • Delivery optimization using Reinforcement Learning (January 2019)
  • Rubik's Cube optimization (February 2019)
  • Multi-Agents simulations (November 2019)
Libraries
  • rl is a simple library to do Reinforcement Learning with Keras, it uses old Keras versions and should be updated
  • hyperion is a simple multi agent simulation library

References and inspiration

RL references
Q Learning references
Deep Q Learning
Policy Gradient
Evolution strategies
Actor Critic, A2C, ACKTR
PPO, TRPO
AlphaGo
Monte Carlo Tree Search
Misc
Environment

Papers

About

Personal experiments on Reinforcement Learning

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 96.7%
  • Python 3.3%