Apress - Applied Reinforcement Learning With Python: With OpenAI Gym, Tensorflow, And Keras (2019 EN)

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  1. Kanka

    Kanka Well-Known Member Loyal User

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    Author: Taweh Beysolow
    Full Title: Applied Reinforcement Learning With Python: With OpenAI Gym, Tensorflow, And Keras
    Publisher: Apress; 1st ed. edition (August 24, 2019)
    Year: 2019
    ISBN-13: 9781484251270 (978-1-4842-5127-0), 9781484251263 (978-1-4842-5126-3)
    ISBN-10: 148425127X, 1484251261
    Pages: 168
    Language: English
    Genre: Educational: Artificial Intelligence
    File type: EPUB (True), PDF (True), Code Files
    Quality: 10/10
    Price: 26.74 €


    Delve into the world of reinforcement learning algorithms and apply them to different use-cases via Python. This book covers important topics such as policy gradients and Q learning, and utilizes frameworks such as Tensorflow, Keras, and OpenAI Gym.

    Applied Reinforcement Learning with Python
    introduces you to the theory behind reinforcement learning (RL) algorithms and the code that will be used to implement them. You will take a guided tour through features of OpenAI Gym, from utilizing standard libraries to creating your own environments, then discover how to frame reinforcement learning problems so you can research, develop, and deploy RL-based solutions.


    Learn:
    ✓ Implement reinforcement learning with Python
    ✓ Work with AI frameworks such as OpenAI Gym, Tensorflow, and Keras
    ✓ Deploy and train reinforcement learning–based solutions via cloud resources
    ✓ Apply practical applications of reinforcement learning

    Features:
    ✓ Understand how to package and deploy solutions in Python that utilize deep learning
    ✓ Includes specific topics such as Q learning and deep reinforcement-learning
    ✓ Covers the latest reinforcement learning packages

    Who This Book Is For:
    Data scientists, machine learning engineers and software engineers familiar with machine learning and deep learning concepts.

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