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Book Description

Summary

Machine Learning with TensorFlow gives readers a solid foundation in machine-learning concepts plus hands-on experience coding TensorFlow with Python.

About the Technology

TensorFlow, Google's library for large-scale machine learning, simplifies often-complex computations by representing them as graphs and efficiently mapping parts of the graphs to machines in a cluster or to the processors of a single machine.

About the Book

Machine Learning with TensorFlow gives readers a solid foundation in machine-learning concepts plus hands-on experience coding TensorFlow with Python. You'll learn the basics by working with classic prediction, classification, and clustering algorithms. Then, you'll move on to the money chapters: exploration of deep-learning concepts like autoencoders, recurrent neural networks, and reinforcement learning. Digest this book and you will be ready to use TensorFlow for machine-learning and deep-learning applications of your own.

What's Inside

  • Matching your tasks to the right machine-learning and deep-learning approaches

  • Visualizing algorithms with TensorBoard

  • Understanding and using neural networks

  • About the Reader

    Written for developers experienced with Python and algebraic concepts like vectors and matrices.

    About the Author

    Author Nishant Shukla is a computer vision researcher focused on applying machine-learning techniques in robotics.

    Senior technical editor, Kenneth Fricklas, is a seasoned developer, author, and machine-learning practitioner.

    Table of Contents

    1. Copyright
    2. Brief Table of Contents
    3. Table of Contents
    4. Preface
    5. Acknowledgments
    6. About This Book
    7. About the Author
    8. About the Cover
    9. Part 1. Your machine-learning rig
      1. Chapter 1. A machine-learning odyssey
      2. Chapter 2. TensorFlow essentials
    10. Part 2. Core learning algorithms
      1. Chapter 3. Linear regression and beyond
      2. Chapter 4. A gentle introduction to classification
      3. Chapter 5. Automatically clustering data
      4. Chapter 6. Hidden Markov models
    11. Part 3. The neural network paradigm
      1. Chapter 7. A peek into autoencoders
      2. Chapter 8. Reinforcement learning
      3. Chapter 9. Convolutional neural networks
      4. Chapter 10. Recurrent neural networks
      5. Chapter 11. Sequence-to-sequence models for chatbots
      6. Chapter 12. Utility landscape
    12. Appendix. Installation
    13. Index
    14. List of Figures
    15. List of Tables
    16. List of Listings
    3.144.30.178