Book Image

What's New in TensorFlow 2.0

By : Ajay Baranwal, Alizishaan Khatri, Tanish Baranwal
Book Image

What's New in TensorFlow 2.0

By: Ajay Baranwal, Alizishaan Khatri, Tanish Baranwal

Overview of this book

TensorFlow is an end-to-end machine learning platform for experts as well as beginners, and its new version, TensorFlow 2.0 (TF 2.0), improves its simplicity and ease of use. This book will help you understand and utilize the latest TensorFlow features. What's New in TensorFlow 2.0 starts by focusing on advanced concepts such as the new TensorFlow Keras APIs, eager execution, and efficient distribution strategies that help you to run your machine learning models on multiple GPUs and TPUs. The book then takes you through the process of building data ingestion and training pipelines, and it provides recommendations and best practices for feeding data to models created using the new tf.keras API. You'll explore the process of building an inference pipeline using TF Serving and other multi-platform deployments before moving on to explore the newly released AIY, which is essentially do-it-yourself AI. This book delves into the core APIs to help you build unified convolutional and recurrent layers and use TensorBoard to visualize deep learning models using what-if analysis. By the end of the book, you'll have learned about compatibility between TF 2.0 and TF 1.x and be able to migrate to TF 2.0 smoothly.
Table of Contents (13 chapters)
Title Page

Designing and constructing the data pipeline

One of the most important requirements when it comes to training machine learning (ML) models and deep neural networks (DNNs) is having large training datasets with distributions (mostly unknown, which we learn about during ML or DNN training) from a given sample space so that ML models and DNNs can learn from this given training data and generalize well to unseen future or separated out test data. Also, a validation dataset, which often comes from the same source as the training set distribution, is critical to fine-tuning model hyperparameters. In many cases, developers start with whatever data is available—either a little or a lot—to train machine learning models, including high capacity deep neural networks. Regardless of the data's size and format, it is important to feed training, validation, and test data...