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Intro, my other deep learning projects
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Patreon
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Tensorboard walk-through
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Code walk-through - understand DQN arguments
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Main loop collecting experience and learning from it
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Main actor-learner class
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Visualizations matplolib, tensorboard
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Analyzing other people's projects
Description:
Dive into a 27-minute project update video on implementing DeepMind's DQN from scratch. Explore the workflow, project organization, and thought process behind building a Deep Q-Network. Follow along as the presenter walks through Tensorboard visualizations, explains DQN arguments, and breaks down the main loop for collecting experience and learning. Gain insights into the actor-learner class, visualization techniques using matplotlib and Tensorboard, and learn from analyzing other developers' projects. Perfect for reinforcement learning enthusiasts looking to understand the challenges and intricacies of implementing advanced AI algorithms.

Implementing DeepMind's DQN from Scratch - Project Update

Aleksa Gordić - The AI Epiphany
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