Today I'll show you how to beat Pong with a Deep Q Learning Agent in the Keras Framework. No prior experience needed, I'll cover everything you need to know as we go along.
As a bonus, we'll learn how to use the OpenAI Gym Environment wrappers to stack frames and preprocess our frames to get faster processing time and to give our agent a sense of motion.
#DeepQLearning #Keras #ReinforcementLearning
Learn how to turn deep reinforcement learning papers into code:
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Deep Q Learning:
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Actor Critic Methods:
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Curiosity Driven Deep Reinforcement Learning
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Natural Language Processing from First Principles:
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Reinforcement Learning Fundamentals
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Here are some books / courses I recommend (affiliate links):
Grokking Deep Learning in Motion: [ Ссылка ]
Grokking Deep Learning: [ Ссылка ]
Grokking Deep Reinforcement Learning: [ Ссылка ]
Come hang out on Discord here:
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AI Learns to Beat Pong With Deep Q Learning | Keras Tutorial
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