Beginning Machine Learning in iOS: CoreML Framework
Implement machine learning models in your iOS applications. This short work begins by reviewing the primary principals of machine learning and then moves on to discussing more advanced topics, such as CoreML, the framework used to enable machine learning tasks in Apple products.

Many applications on iPhone use machine learning: Siri to serve voice-based requests, the Photos app for facial recognition, and Facebook to suggest which people that might be in a photo. You'll review how these types of machine learning tasks are implemented and performed so that you can use them in your own apps.

Beginning Machine Learning in iOS is your guide to putting machine learning to work in your iOS applications.

What You'll Learn

• Understand the CoreML components

• Train custom models

• Implement GPU processing for better computation efficiency

• Enable machine learning in your application

Who This Book Is For

Novice developers and programmers who wish to implement machine learning in their iOS applications and those who want to learn the fundamentals about machine learning.

1129796663
Beginning Machine Learning in iOS: CoreML Framework
Implement machine learning models in your iOS applications. This short work begins by reviewing the primary principals of machine learning and then moves on to discussing more advanced topics, such as CoreML, the framework used to enable machine learning tasks in Apple products.

Many applications on iPhone use machine learning: Siri to serve voice-based requests, the Photos app for facial recognition, and Facebook to suggest which people that might be in a photo. You'll review how these types of machine learning tasks are implemented and performed so that you can use them in your own apps.

Beginning Machine Learning in iOS is your guide to putting machine learning to work in your iOS applications.

What You'll Learn

• Understand the CoreML components

• Train custom models

• Implement GPU processing for better computation efficiency

• Enable machine learning in your application

Who This Book Is For

Novice developers and programmers who wish to implement machine learning in their iOS applications and those who want to learn the fundamentals about machine learning.

27.99 In Stock
Beginning Machine Learning in iOS: CoreML Framework

Beginning Machine Learning in iOS: CoreML Framework

by Mohit Thakkar
Beginning Machine Learning in iOS: CoreML Framework

Beginning Machine Learning in iOS: CoreML Framework

by Mohit Thakkar

Paperback(1st ed.)

$27.99 
  • SHIP THIS ITEM
    Ships in 1-2 days
  • PICK UP IN STORE

    Your local store may have stock of this item.

Related collections and offers


Overview

Implement machine learning models in your iOS applications. This short work begins by reviewing the primary principals of machine learning and then moves on to discussing more advanced topics, such as CoreML, the framework used to enable machine learning tasks in Apple products.

Many applications on iPhone use machine learning: Siri to serve voice-based requests, the Photos app for facial recognition, and Facebook to suggest which people that might be in a photo. You'll review how these types of machine learning tasks are implemented and performed so that you can use them in your own apps.

Beginning Machine Learning in iOS is your guide to putting machine learning to work in your iOS applications.

What You'll Learn

• Understand the CoreML components

• Train custom models

• Implement GPU processing for better computation efficiency

• Enable machine learning in your application

Who This Book Is For

Novice developers and programmers who wish to implement machine learning in their iOS applications and those who want to learn the fundamentals about machine learning.


Product Details

ISBN-13: 9781484242964
Publisher: Apress
Publication date: 02/21/2019
Edition description: 1st ed.
Pages: 157
Product dimensions: 5.90(w) x 9.10(h) x 0.40(d)

About the Author

Mohit Thakkar is an Associate Software Engineer with MNC. He has a bachelor's degree in computer engineering and is the author of several independently published titles, including Artificial Intelligence, Data Mining & Business Intelligence, iOS Programming, and Mobile Computing & Wireless Communication. He also published a research paper titled “Remote Health Monitoring using Implantable Probes to Prevent Untimely Death of Animals” in the International Journal of Advanced Research in Management, Architecture, Technology and Engineering.

Table of Contents

Chapter 1. Introduction to Machine Learning.- Chapter 2. Introduction to Core ML Framework.- Chapter 3. Custom ML Models Using Turi Create.- Chapter 4. Custom Core ML Models using Create ML.- Chapter 5. Improving Computational Efficiency.
From the B&N Reads Blog

Customer Reviews