Book Image

The Deep Learning Workshop

By : Mirza Rahim Baig, Thomas V. Joseph, Nipun Sadvilkar, Mohan Kumar Silaparasetty, Anthony So
Book Image

The Deep Learning Workshop

By: Mirza Rahim Baig, Thomas V. Joseph, Nipun Sadvilkar, Mohan Kumar Silaparasetty, Anthony So

Overview of this book

Are you fascinated by how deep learning powers intelligent applications such as self-driving cars, virtual assistants, facial recognition devices, and chatbots to process data and solve complex problems? Whether you are familiar with machine learning or are new to this domain, The Deep Learning Workshop will make it easy for you to understand deep learning with the help of interesting examples and exercises throughout. The book starts by highlighting the relationship between deep learning, machine learning, and artificial intelligence and helps you get comfortable with the TensorFlow 2.0 programming structure using hands-on exercises. You’ll understand neural networks, the structure of a perceptron, and how to use TensorFlow to create and train models. The book will then let you explore the fundamentals of computer vision by performing image recognition exercises with convolutional neural networks (CNNs) using Keras. As you advance, you’ll be able to make your model more powerful by implementing text embedding and sequencing the data using popular deep learning solutions. Finally, you’ll get to grips with bidirectional recurrent neural networks (RNNs) and build generative adversarial networks (GANs) for image synthesis. By the end of this deep learning book, you’ll have learned the skills essential for building deep learning models with TensorFlow and Keras.
Table of Contents (9 chapters)
Preface

Introduction

Let's say you're working with product reviews for a mobile phone and your task is to classify the sentiment in the reviews as being positive or negative. You encounter a review that says: "The phone does not have a great camera, or an amazingly vivid display, or an excellent battery life, or great connectivity, or other great features that make it the best." Now, when you read this, you can easily identify that the sentiment in the review is negative, despite the presence of many positive phrases such as "excellent battery life" and "makes it the best". You understand that the presence of the term "not" right toward the beginning of the text negates everything else that comes after.

Will the models we've created so far be able to identify the sentiment in such a case? Probably not, because if your models don't realize that the term "not" toward the beginning of the sentences is important and needs...