Apache Mahout Essentials

Nonfiction, Computers, Internet, Web Development, Java, Programming
Cover of the book Apache Mahout Essentials by Jayani Withanawasam, Packt Publishing
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Jayani Withanawasam ISBN: 9781783555000
Publisher: Packt Publishing Publication: June 19, 2015
Imprint: Packt Publishing Language: English
Author: Jayani Withanawasam
ISBN: 9781783555000
Publisher: Packt Publishing
Publication: June 19, 2015
Imprint: Packt Publishing
Language: English

Apache Mahout is a scalable machine learning library with algorithms for clustering, classification, and recommendations. It empowers users to analyze patterns in large, diverse, and complex datasets faster and more scalably.

This book is an all-inclusive guide to analyzing large and complex datasets using Apache Mahout. It explains complicated but very effective machine learning algorithms simply, in relation to real-world practical examples.

Starting from the fundamental concepts of machine learning and Apache Mahout, this book guides you through Apache Mahout's implementations of machine learning techniques including classification, clustering, and recommendations. During this exciting walkthrough, real-world applications, a diverse range of popular algorithms and their implementations, code examples, evaluation strategies, and best practices are given for each technique. Finally, you will learn vdata visualization techniques for Apache Mahout to bring your data to life.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

Apache Mahout is a scalable machine learning library with algorithms for clustering, classification, and recommendations. It empowers users to analyze patterns in large, diverse, and complex datasets faster and more scalably.

This book is an all-inclusive guide to analyzing large and complex datasets using Apache Mahout. It explains complicated but very effective machine learning algorithms simply, in relation to real-world practical examples.

Starting from the fundamental concepts of machine learning and Apache Mahout, this book guides you through Apache Mahout's implementations of machine learning techniques including classification, clustering, and recommendations. During this exciting walkthrough, real-world applications, a diverse range of popular algorithms and their implementations, code examples, evaluation strategies, and best practices are given for each technique. Finally, you will learn vdata visualization techniques for Apache Mahout to bring your data to life.

More books from Packt Publishing

Cover of the book R for Data Science Cookbook by Jayani Withanawasam
Cover of the book PHP 7 Programming Cookbook by Jayani Withanawasam
Cover of the book Management in India: Grow from an Accidental to a Successful Manager in the IT & Knowledge Industry by Jayani Withanawasam
Cover of the book Sass Essentials by Jayani Withanawasam
Cover of the book Mastering TypeScript - Second Edition by Jayani Withanawasam
Cover of the book Sony Vegas Pro 11 Beginners Guide by Jayani Withanawasam
Cover of the book Building Microservices with .NET Core 2.0 by Jayani Withanawasam
Cover of the book jQuery 1.4 Animation Techniques: Beginners Guide by Jayani Withanawasam
Cover of the book Ruby on Rails Enterprise Application Development by Jayani Withanawasam
Cover of the book Kali Linux Network Scanning Cookbook by Jayani Withanawasam
Cover of the book Mastering VMware Horizon 7 - Second Edition by Jayani Withanawasam
Cover of the book Learning C++ Functional Programming by Jayani Withanawasam
Cover of the book Network Programming with Rust by Jayani Withanawasam
Cover of the book Mastering Android Wear Application Development by Jayani Withanawasam
Cover of the book Implementing Splunk: Big Data Reporting and Development for Operational Intelligence by Jayani Withanawasam
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy