Deep_reinforcement_learning_Course - Implementations from the free course Deep Reinforcement Learning with Tensorflow

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Deep Reinforcement Learning Course is a free series of blog posts and videos πŸ†• about Deep Reinforcement Learning, where we'll learn the main algorithms, and how to implement them with Tensorflow. πŸ“œThe articles explain the concept from the big picture to the mathematical details behind it.

https://simoninithomas.github.io/Deep_reinforcement_learning_Course/
https://github.com/simoninithomas/Deep_reinforcement_learning_Course

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