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ReinforcementLearningProject

The aim of this project is to train agents using Reinforcement Learning algorithms for solving the Acrobot-v1 task. For this, we implement 3 different RL algorithms that are capable of solving environments with continuous states and discrete actions.

  • Q-Learning with a neural network as the function approximator (Deep Q-Learning)
  • DQN (+ double DQN)
  • A2C

Each method is implemented in its corresponding folder. See ReadMe files in the folder for information about running the code.

Contributors