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(Ebook) Deep Reinforcement Learning with Python: With PyTorch, TensorFlow and OpenAI Gym by Nimish Sanghi ISBN 9781484268087, 9781484268094, 1484268083, 1484268091

  • SKU: EBN-38388262
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Instant download (eBook) Deep Reinforcement Learning with Python: With PyTorch, TensorFlow and OpenAI Gym after payment.
Authors:Nimish Sanghi
Pages:0 pages.
Year:2021
Editon:1
Publisher:Apress
Language:english
File Size:11.51 MB
Format:epub
ISBNS:9781484268087, 9781484268094, 1484268083, 1484268091
Categories: Ebooks

Product desciption

(Ebook) Deep Reinforcement Learning with Python: With PyTorch, TensorFlow and OpenAI Gym by Nimish Sanghi ISBN 9781484268087, 9781484268094, 1484268083, 1484268091

Deep reinforcement learning is a fast-growing discipline that is making a significant impact in fields of autonomous vehicles, robotics, healthcare, finance, and many more. This book covers deep reinforcement learning using deep-q learning and policy gradient models with coding exercise. You'll begin by reviewing the Markov decision processes, Bellman equations, and dynamic programming that form the core concepts and foundation of deep reinforcement learning. Next, you'll study model-free learning followed by function approximation using neural networks and deep learning. This is followed by various deep reinforcement learning algorithms such as deep q-networks, various flavors of actor-critic methods, and other policy-based methods. You'll also look at exploration vs exploitation dilemma, a key consideration in reinforcement learning algorithms, along with Monte Carlo tree search (MCTS), which played a key role in the success of AlphaGo. The final chapters conclude...
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