Send or share

Convex Optimization for Machine Learning (Hardcover)

This book covers an introduction to convex optimization, one of the powerful and tractable optimization problems that can be efficiently solved on a computer. The goal of the book is tohelp develop a sense of what convex optimization is, and how it can be used in a widening array of practical contexts with a particular emphasis on machine learning.The first part of the book covers core concepts of convex sets, convex functions, and related basic definitions that serve understanding convex optimization and its corresponding models. The second part deals with one very useful theory, called duality, which enables us to: (1) gain algorithmic insights; and (2) obtain an approximate solution to non-convex optimization problems which are often difficult to solve. The last part focuses on modern applications in machine learning and deep learning.A defining feature of this book is that it succinctly relates the "story" of how convex optimization plays a role, via historical examples and trending machine learning applications. Another key feature is that it includes programming implementation of a variety of machine learning algorithms inspired by optimization fundamentals, together with a brief tutorial of the used programming tools. The implementation is based on Python, CVXPY, and TensorFlow. This book does not follow a traditional textbook-style organization, but is streamlined via a series of lecture notes that are intimately related, centered around coherent themes and concepts. It serves as a textbook mainly for a senior-level undergraduate course, yet is also suitable for a first-year graduate course. Readers benefit from having a good background in linear algebra, some exposure to probability, and basic familiarity with Python.
R3,442

Pay from as little as R860.5Learn more

payflex-widget-image
Discovery Miles34420
Mobicred@R323pm x 12* Mobicred Info

Non-Returnable

Free Delivery

Free Delivery

Delivery Advice

Ships in 18 - 22 working days

Toggle WishListAdd to wish list
Review this Item

Product Description

This book covers an introduction to convex optimization, one of the powerful and tractable optimization problems that can be efficiently solved on a computer. The goal of the book is tohelp develop a sense of what convex optimization is, and how it can be used in a widening array of practical contexts with a particular emphasis on machine learning.The first part of the book covers core concepts of convex sets, convex functions, and related basic definitions that serve understanding convex optimization and its corresponding models. The second part deals with one very useful theory, called duality, which enables us to: (1) gain algorithmic insights; and (2) obtain an approximate solution to non-convex optimization problems which are often difficult to solve. The last part focuses on modern applications in machine learning and deep learning.A defining feature of this book is that it succinctly relates the "story" of how convex optimization plays a role, via historical examples and trending machine learning applications. Another key feature is that it includes programming implementation of a variety of machine learning algorithms inspired by optimization fundamentals, together with a brief tutorial of the used programming tools. The implementation is based on Python, CVXPY, and TensorFlow. This book does not follow a traditional textbook-style organization, but is streamlined via a series of lecture notes that are intimately related, centered around coherent themes and concepts. It serves as a textbook mainly for a senior-level undergraduate course, yet is also suitable for a first-year graduate course. Readers benefit from having a good background in linear algebra, some exposure to probability, and basic familiarity with Python.

Customer Reviews

No reviews or ratings yet - be the first to create one!

Product Details

General

Imprint

Now Publishers Inc

Country of origin

United States

Series

NowOpen

Release date

September 2022

Availability

Expected to ship within 18 - 22 working days

First published

2022

Authors

Dimensions

234 x 156 x 31mm (L x W x T)

Format

Hardcover

Pages

350

ISBN-13

978-1-63828-052-1

Barcode

9781638280521

Languages

value

Subtitles

value

Categories

LSN

1-63828-052-5

COPYRIGHT © 2026 AFRICA ONLINE RETAIL (PTY)LTD. ALL RIGHTS RESERVED. Khutaza Park, 27 Bell Crescent, Westlake Business Park. PO Box 30836, Tokai, 7966, South Africa. info@loot.co.za

All prices displayed are subject to fluctuations and stock availability as outlined in our Terms & Conditions