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reinforcement-learning's Introduction

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

reinforcement-learning's People

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reinforcement-learning's Issues

Wrong max of next state action?

In QAgent train(), there is

self.Q[s,a] = self.Q[s,a] + self.lr * (r + self.gamma*np.max(self.Q[s_next,a]) - self.Q[s,a])

but should be imho

self.Q[s,a] = self.Q[s,a] + self.lr * (r + self.gamma*np.max(self.Q[s_next,:]) - self.Q[s,a])

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