Programming Elastic MapReduce

Using AWS Services to Build an End-to-End Application

Nonfiction, Computers, Advanced Computing, Parallel Processing, Database Management, Data Processing
Cover of the book Programming Elastic MapReduce by Kevin Schmidt, Christopher Phillips, O'Reilly Media
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Kevin Schmidt, Christopher Phillips ISBN: 9781449364045
Publisher: O'Reilly Media Publication: December 10, 2013
Imprint: O'Reilly Media Language: English
Author: Kevin Schmidt, Christopher Phillips
ISBN: 9781449364045
Publisher: O'Reilly Media
Publication: December 10, 2013
Imprint: O'Reilly Media
Language: English

Although you don’t need a large computing infrastructure to process massive amounts of data with Apache Hadoop, it can still be difficult to get started. This practical guide shows you how to quickly launch data analysis projects in the cloud by using Amazon Elastic MapReduce (EMR), the hosted Hadoop framework in Amazon Web Services (AWS).

Authors Kevin Schmidt and Christopher Phillips demonstrate best practices for using EMR and various AWS and Apache technologies by walking you through the construction of a sample MapReduce log analysis application. Using code samples and example configurations, you’ll learn how to assemble the building blocks necessary to solve your biggest data analysis problems.

  • Get an overview of the AWS and Apache software tools used in large-scale data analysis
  • Go through the process of executing a Job Flow with a simple log analyzer
  • Discover useful MapReduce patterns for filtering and analyzing data sets
  • Use Apache Hive and Pig instead of Java to build a MapReduce Job Flow
  • Learn the basics for using Amazon EMR to run machine learning algorithms
  • Develop a project cost model for using Amazon EMR and other AWS tools
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

Although you don’t need a large computing infrastructure to process massive amounts of data with Apache Hadoop, it can still be difficult to get started. This practical guide shows you how to quickly launch data analysis projects in the cloud by using Amazon Elastic MapReduce (EMR), the hosted Hadoop framework in Amazon Web Services (AWS).

Authors Kevin Schmidt and Christopher Phillips demonstrate best practices for using EMR and various AWS and Apache technologies by walking you through the construction of a sample MapReduce log analysis application. Using code samples and example configurations, you’ll learn how to assemble the building blocks necessary to solve your biggest data analysis problems.

More books from O'Reilly Media

Cover of the book The Facebook Marketing Book by Kevin Schmidt, Christopher Phillips
Cover of the book IPv6 Essentials by Kevin Schmidt, Christopher Phillips
Cover of the book Einführung in SQL by Kevin Schmidt, Christopher Phillips
Cover of the book Tcl/Tk in a Nutshell by Kevin Schmidt, Christopher Phillips
Cover of the book The Productive Programmer by Kevin Schmidt, Christopher Phillips
Cover of the book The Architecture of Privacy by Kevin Schmidt, Christopher Phillips
Cover of the book Learning the Korn Shell by Kevin Schmidt, Christopher Phillips
Cover of the book Big Data Glossary by Kevin Schmidt, Christopher Phillips
Cover of the book OS X Mountain Lion Pocket Guide by Kevin Schmidt, Christopher Phillips
Cover of the book Access Hacks by Kevin Schmidt, Christopher Phillips
Cover of the book Graphics and Animation on iOS by Kevin Schmidt, Christopher Phillips
Cover of the book Network Warrior by Kevin Schmidt, Christopher Phillips
Cover of the book UX for Beginners by Kevin Schmidt, Christopher Phillips
Cover of the book Home Networking Annoyances by Kevin Schmidt, Christopher Phillips
Cover of the book Switching to the Mac: The Missing Manual, Leopard Edition by Kevin Schmidt, Christopher Phillips
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