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Reinforcement Learning Methods download for Windows

Free download Reinforcement Learning Methods Windows app to run online win Wine in Ubuntu online, Fedora online or Debian online

This is the Windows app named Reinforcement Learning Methods whose latest release can be downloaded as Reinforcement-learning-with-tensorflowsourcecode.tar.gz. It can be run online in the free hosting provider OnWorks for workstations.

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Reinforcement Learning Methods


DESCRIPTION

Reinforcement-Learning-with-TensorFlow is an educational repository that walks through key reinforcement learning algorithms implemented in TensorFlow. It provides clear code examples for foundational techniques like Q-learning, policy gradients, deep Q-networks, actor-critic methods, and value function approximation within familiar simulation environments. Each algorithm is structured with readable code, explanatory comments, and corresponding environment interaction loops so learners can easily trace how actions, rewards, and model updates connect. The project also includes demo scripts that visualize learning curves and allow students to observe policy improvement over training iterations. By using TensorFlow as the backbone, it highlights practical considerations such as tensor shapes, loss computation, optimization steps, and batching in an RL context.



Features

  • Educational RL implementations using TensorFlow
  • Q-learning and Deep Q-Network examples
  • Policy gradient and actor-critic algorithm scripts
  • Simulation environment integrations for interactive learning
  • Visualizations of learning curves and policy behavior
  • Readable, beginner-friendly code with explanations


Programming Language

Python


Categories

Education

This is an application that can also be fetched from https://sourceforge.net/projects/reinforcement-learn.mirror/. It has been hosted in OnWorks in order to be run online in an easiest way from one of our free Operative Systems.


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