Learning Tensorflow: A Guide to Building Deep Learning Systems

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

Roughly inspired by the human brain, deep neural networks trained with large amounts of data can solve complex tasks with unprecedented accuracy. This practical book provides an end-to-end guide to TensorFlow, the leading open source software library that helps you build and train neural networks for computer vision, natural language processing (NLP), speech recognition, and general predictive analytics. Authors Tom Hope, Yehezkel Resheff, and Itay Lieder provide a hands-on approach to TensorFlow fundamentals for a broad technical audience—from data scientists and engineers to students and researchers. You’ll begin by working through some basic examples in TensorFlow before diving deeper into topics such as neural network architectures, TensorBoard visualization, TensorFlow abstraction libraries, and multithreaded input pipelines. Once you finish this book, you’ll know how to build and deploy production-ready deep learning systems in TensorFlow. • Get up and running with TensorFlow, rapidly and painlessly • Learn how to use TensorFlow to build deep learning models from the ground up • Train popular deep learning models for computer vision and NLP • Use extensive abstraction libraries to make development easier and faster • Learn how to scale TensorFlow, and use clusters to distribute model training • Deploy TensorFlow in a production setting

Author(s): Tom Hope, Yehezkel S. Resheff, Itay Lieder
Edition: 1
Publisher: O’Reilly Media
Year: 2017

Language: English
Commentary: True PDF
Pages: 242
City: Sebastopol, CA
Tags: Deep Learning; Multithreading; Supervised Learning; Python; Convolutional Neural Networks; Recurrent Neural Networks; Parallel Programming; TensorFlow; Clusters; Computational Graphs; Linear Regression; Long Short-Term Memory; Distributed Processing Queues; word2vec