Book Image

TensorFlow 1.x Deep Learning Cookbook

Book Image

TensorFlow 1.x Deep Learning Cookbook

Overview of this book

Deep neural networks (DNNs) have achieved a lot of success in the field of computer vision, speech recognition, and natural language processing. This exciting recipe-based guide will take you from the realm of DNN theory to implementing them practically to solve real-life problems in the artificial intelligence domain. In this book, you will learn how to efficiently use TensorFlow, Google’s open source framework for deep learning. You will implement different deep learning networks, such as Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Deep Q-learning Networks (DQNs), and Generative Adversarial Networks (GANs), with easy-to-follow standalone recipes. You will learn how to use TensorFlow with Keras as the backend. You will learn how different DNNs perform on some popularly used datasets, such as MNIST, CIFAR-10, and Youtube8m. You will not only learn about the different mobile and embedded platforms supported by TensorFlow, but also how to set up cloud platforms for deep learning applications. You will also get a sneak peek at TPU architecture and how it will affect the future of DNNs. By using crisp, no-nonsense recipes, you will become an expert in implementing deep learning techniques in growing real-world applications and research areas such as reinforcement learning, GANs, and autoencoders.
Table of Contents (15 chapters)
14
TensorFlow Processing Units

Learning to Learn with AutoML (Meta-Learning)

The success of deep learning has immensely facilitated the work of feature engineering. Indeed, traditional machine learning depended very much on the selection of the right set of features, and very frequently, this step was more important that the selection of a particular learning algorithm. Deep learning has changed this scenario; creating a right model is still very important but nowadays networks are less sensitive to the selection of a particular set of feature and are much more able to auto-select the features that really matter.

Instead, the introduction of deep learning has increased the focus on the selection of the right neural network architecture. This means that progressively the interest of researchers is shifting from feature engineering to network engineering. AutoML (Meta Learning) is an emerging research topic which...