Book Image

Machine Learning with Swift

By : Jojo Moolayil, Alexander Sosnovshchenko, Oleksandr Baiev
Book Image

Machine Learning with Swift

By: Jojo Moolayil, Alexander Sosnovshchenko, Oleksandr Baiev

Overview of this book

Machine learning as a field promises to bring increased intelligence to the software by helping us learn and analyse information efficiently and discover certain patterns that humans cannot. This book will be your guide as you embark on an exciting journey in machine learning using the popular Swift language. We’ll start with machine learning basics in the first part of the book to develop a lasting intuition about fundamental machine learning concepts. We explore various supervised and unsupervised statistical learning techniques and how to implement them in Swift, while the third section walks you through deep learning techniques with the help of typical real-world cases. In the last section, we will dive into some hard core topics such as model compression, GPU acceleration and provide some recommendations to avoid common mistakes during machine learning application development. By the end of the book, you'll be able to develop intelligent applications written in Swift that can learn for themselves.
Table of Contents (18 chapters)
Title Page
Packt Upsell
Contributors
Preface
Index

Chapter 9. Convolutional Neural Networks

In this chapter, we are discussing the convolutional neural networks (CNNs). At first we are going to discuss all components with examples in Swift just to develop an intuition about the algorithm and what is going on under the hood. However, in the real life you most likely will not develop CNN from scratch, because you will use some ready available and battle-tested deep learning framework.

So, in the second part of the chapter we will show a full development cycle of deep learning mobile application. We are going to take the photos of people's faces labeled with their emotions, train a CNN on a GPU workstation, and then integrate it into an iOS application using Keras, Vision, and Core ML frameworks.

To the end of this chapter you will have learned about:

  • Affective computing
  • Computer vision, its tasks, and its methods
  • CNNs, their anatomy, and core concepts behind them
  • Applications of CNNs in computer vision
  • How to train CNNs using a GPU workstation and...