Book Image

Deep Learning with TensorFlow

By : Giancarlo Zaccone, Md. Rezaul Karim, Ahmed Menshawy
Book Image

Deep Learning with TensorFlow

By: Giancarlo Zaccone, Md. Rezaul Karim, Ahmed Menshawy

Overview of this book

Deep learning is the step that comes after machine learning, and has more advanced implementations. Machine learning is not just for academics anymore, but is becoming a mainstream practice through wide adoption, and deep learning has taken the front seat. As a data scientist, if you want to explore data abstraction layers, this book will be your guide. This book shows how this can be exploited in the real world with complex raw data using TensorFlow 1.x. Throughout the book, you’ll learn how to implement deep learning algorithms for machine learning systems and integrate them into your product offerings, including search, image recognition, and language processing. Additionally, you’ll learn how to analyze and improve the performance of deep learning models. This can be done by comparing algorithms against benchmarks, along with machine intelligence, to learn from the information and determine ideal behaviors within a specific context. After finishing the book, you will be familiar with machine learning techniques, in particular the use of TensorFlow for deep learning, and will be ready to apply your knowledge to research or commercial projects.
Table of Contents (11 chapters)

TensorFlow on a Convolutional Neural Network

Convolutional Neural Networks (CNNs) are deep learning networks, which have achieved excellent results in many practical applications, and primarily in object recognition of images. CNN architecture is organized into a series of blocks. The first blocks are composed of two types of layers, convolutional layers and pooling layers; while the last blocks are fully-connected layers with softmax layers.

We'll develop two examples of CNN networks, for image classification problems. The first problem is the classic MNIST digit classification system. We'll see how to build a CNN that reaches 99 percent accuracy. The training set for the second example is taken from the Kaggle platform. The purpose here is to train a network on a series of facial images to classify their emotional stretch.

We'll evaluate the accuracy of the model and then we'll test it on a...