1. Target
  2. Movies, Music & Books
  3. Books
  4. All Book Genres
  5. Computers & Technology Books

Deep Learning with JavaScript - by Shanqing Cai & Stan Bileschi & Eric Nielsen (Paperback)

Deep Learning with JavaScript - by  Shanqing Cai & Stan Bileschi & Eric Nielsen (Paperback)
Store: Target
Last Price: 43.49 USD

Similar Products

Products of same category from the store

All

Product info

<p/><br></br><p><b> Book Synopsis </b></p></br></br>Summary <p/> Deep learning has transformed the fields of computer vision, image processing, and natural language applications. Thanks to TensorFlow.js, now JavaScript developers can build deep learning apps without relying on Python or R. <i>Deep Learning with JavaScript</i> shows developers how they can bring DL technology to the web. Written by the main authors of the TensorFlow library, this new book provides fascinating use cases and in-depth instruction for deep learning apps in JavaScript in your browser or on Node. <p/>Foreword by Nikhil Thorat and Daniel Smilkov. <p/> About the technology <p/> Running deep learning applications in the browser or on Node-based backends opens up exciting possibilities for smart web applications. With the TensorFlow.js library, you build and train deep learning models with JavaScript. Offering uncompromising production-quality scalability, modularity, and responsiveness, TensorFlow.js really shines for its portability. Its models run anywhere JavaScript runs, pushing ML farther up the application stack. <p/> About the book <p/> In <i>Deep Learning with JavaScript</i>, you'll learn to use TensorFlow.js to build deep learning models that run directly in the browser. This fast-paced book, written by Google engineers, is practical, engaging, and easy to follow. Through diverse examples featuring text analysis, speech processing, image recognition, and self-learning game AI, you'll master all the basics of deep learning and explore advanced concepts, like retraining existing models for transfer learning and image generation. <p/> What's inside <p/> - Image and language processing in the browser<br> - Tuning ML models with client-side data<br> - Text and image creation with generative deep learning<br> - Source code samples to test and modify <p/> About the reader <p/> For JavaScript programmers interested in deep learning. <p/> About the author <p/> <b>Shanging Cai</b>, <b>Stanley Bileschi</b> and <b>Eric D. Nielsen</b> are software engineers with experience on the Google Brain team, and were crucial to the development of the high-level API of TensorFlow.js. This book is based in part on the classic, <i>Deep Learning with Python</i> by <b>François Chollet</b>. <p/> TOC: <p/> PART 1 - MOTIVATION AND BASIC CONCEPTS <p/> 1 - Deep learning and JavaScript <p/> PART 2 - A GENTLE INTRODUCTION TO TENSORFLOW.JS <p/> 2 - Getting started: Simple linear regression in TensorFlow.js <p/> 3 - Adding nonlinearity: Beyond weighted sums <p/> 4 - Recognizing images and sounds using convnets <p/> 5 - Transfer learning: Reusing pretrained neural networks <p/> PART 3 - ADVANCED DEEP LEARNING WITH TENSORFLOW.JS <p/> 6 - Working with data <p/> 7 - Visualizing data and models <p/> 8 - Underfitting, overfitting, and the universal workflow of machine learning <p/> 9 - Deep learning for sequences and text <p/> 10 - Generative deep learning <p/> 11 - Basics of deep reinforcement learning <p/> PART 4 - SUMMARY AND CLOSING WORDS <p/> 12 - Testing, optimizing, and deploying models <p/> 13 - Summary, conclusions, and beyond<br><p/><br></br><p><b> About the Author </b></p></br></br><b>Shanqing Cai</b> is one of the developers of TensorFlow, a popular open-source framework for deep learning and artificial intelligence. <p/><b>Stan Bileschi</b> is the technical lead for Google's TensorFlow Usability team, which built the TensorFlow Layers API. <p/><b>Eric Nielsen</b> is a senior software engineer on the Google Brain team.

Price History