PACKT MSTRNG MACH LRNG ALGRTHMS PDF

PACKT MSTRNG MACH LRNG ALGRTHMS PDF

Name:
PACKT MSTRNG MACH LRNG ALGRTHMS PDF

Published Date:
05/25/2018

Status:
[ Revised ]

Description:

Mastering Machine Learning Algorithms

Publisher:
PACKT - Packt Publishing, Inc.

Document status:
Active

Format:
Electronic (PDF)

Delivery time:
10 minutes

Delivery time (for Russian version):
200 business days

SKU:

Choose Document Language:
Need Help?
ISBN: 9781788621113

Preface

In the last few years, machine learning has become a more and more important field in the majority of industries. Many tasks once considered impossible to automate are now completely managed by computers, allowing human beings to focus on more creative tasks. This revolution has been made possible by the dramatic improvement of standard algorithms, together with a continuous reduction in hardware prices. The complexity that was a huge obstacle only a decade ago is now a problem than even a personal computer can solve. The general availability of high-level open source frameworks has allowed everybody to design and train extremely powerful models.

The main goal of this book is to introduce the reader to complex techniques (such as semisupervised and manifold learning, probabilistic models, and neural networks), balancing mathematical theory with practical examples written in Python. I wanted to keep a pragmatic approach, focusing on the applications but not neglecting the necessary theoretical foundation. In my opinion, a good knowledge of this field can be acquired only by understanding the underlying logic, which is always expressed using mathematical concepts. This extra effort is rewarded with a more solid awareness of every specific choice and helps the reader understand how to apply, modify, and improve all the algorithms in specific business contexts.

Machine learning is an extremely wide field and it's impossible to cover all the topics in a book. In this case, I've done my best to cover a selection of algorithms belonging to supervised, semi-supervised, unsupervised, and Reinforcement Learning, providing all the references necessary to further explore each of them. The examples have been designed to be easy to understand without any deep insight into the code; in fact, I believe it's more important to show the general cases and let the reader improve and adapt them to cope with particular scenarios. I apologize for mistakes: even if many revisions have been made, it's possible that some details (both in the formulas and in the code) got away. I hope this book will be the starting point for many professionals struggling to enter this fascinating world with a pragmatic and business-oriented viewpoint!


Edition : 18
Number of Pages : 567
Published : 05/25/2018
isbn : 9781788621113

History

Mastering Machine Learning Algorithms
Published Date: 01/31/2020
$12
PACKT MSTRNG MACH LRNG ALGRTHMS
Published Date: 05/25/2018
Mastering Machine Learning Algorithms

Related products

Tcl 8.5 Network Programming
Published Date: 07/01/2010
$9.9
Mastering SVG
Published Date: 09/21/2018
$12
Building Serverless Microservices in Python
Published Date: 03/29/2019
$6.9

Best-Selling Products

NSF 1-Jul
Published Date: 04/01/2001
Commercial Refrigerators and Freezers
$75.9
NSF 1-Mar
Published Date: 07/01/2001
Commercial Warewashing Equipment
$64.5
NSF 10-Aug
Published Date: 10/21/2010
Commercial Powered Food Preparation Equipment
$75.9
NSF 10-Feb
Published Date: 05/01/2010
Food Equipment
$87.6
NSF 10-Mar
Published Date: 11/02/2010
Commercial Warewashing Equipment
$64.5
NSF 100-1995
Published Date: 01/01/1995
Environmental Auditing - Principals and General Practices - OBSOLETE
$52.8