OpenAI Gym cartpole solved by a Neural Network (DQN) in Tensorflow 2
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Updated
Sep 23, 2022 - Python
OpenAI Gym cartpole solved by a Neural Network (DQN) in Tensorflow 2
A pole is attached by an un-actuated joint to a cart, which moves along a frictionless track. The system is controlled by applying a force of +1 or -1 to the cart. The pendulum starts upright, and the goal is to prevent it from falling over. A reward of +1 is provided for every timestep that the pole remains upright. The episode ends when the po…
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