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

Summary


In this chapter, we explored association rule learning, which is a branch of unsupervised learning. We implemented the Apriori algorithm, which can be used to find patterns in the form of rules in different transactional datasets. Apriori's classical use case is market basket analysis. However, it is also important conceptually, because rule learning algorithms bridge the gap between classical artificial intelligence approaches (logical programming, concept learning, searching graphs, and so on) and logic-based machine learning (decision trees).

In the following chapter, we're going to return to supervised learning, but this time we will switch our attention from non-parametric models, such as KNN and k-means, to parametric linear models. We will also discuss linear regression and the gradient descent optimization method.