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Detailed Explanation and Python Implementation of Q-Learning Algorithm in OpenAI Gym (Cart-Pole)



#machinelearning #reinforcementlearning #openaigym #controltheory #controlengineering #qlearning #deeplearning #deeplearningproject #robotics #openai #openaigym #datascience
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The webpage tutorial accompanying this video tutorial is given here:
https://aleksandarhaber.com/q-learning-in-python-with-tests-in-cart-pole-openai-gym-environment-reinforcement-learning-tutorial/

In this reinforcement learning tutorial, we provide a detailed explanation of the Q-learning algorithm. The Q-learning algorithm is one of the most fundamental algorithms in reinforcement learning. First, we explain the basics of the Q-learning algorithm. Then, we explain how to implement this algorithm in Python from scratch. We also explain how to test this algorithm in the OpenAI Gym environment. We use the Cart Pole OpenAI Gym environment to test the method.

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