BIBLIO is the largest independent book marketplace in the world, with over 100 million books.

Skip to content

MapReduce Design Patterns: Building Effective Algorithms and Analytics for Hadoop and Other Systems

MapReduce Design Patterns: Building Effective Algorithms and Analytics for Hadoop and Other Systems

MapReduce Design Patterns: Building Effective Algorithms and Analytics for
Stock photo: cover may vary

MapReduce Design Patterns: Building Effective Algorithms and Analytics for Hadoop and Other Systems Paperback - 0000

by Miner, Donald

Add to wish list
  • Used
  • Paperback
  • first
Used: Good

Description

O'Reilly Media, 0000-00-00. 1. Paperback. Used: Good. 7.00x0.57x9.00. Buy with confidence. Excellent Customer Service & Return policy.
Ask the seller a question Add to wish list
A$14.84
Free Delivery within USA
Standard delivery: 5 to 10 days
More delivery options
Dropship order
Ships from Ergodebooks (Texas, United States)

Details

  • Title MapReduce Design Patterns: Building Effective Algorithms and Analytics for Hadoop and Other Systems
  • Author Miner, Donald
  • Binding Paperback
  • Edition 1
  • Condition Used: Good
  • Pages 247
  • Volumes 1
  • Language ENG
  • Publisher O'Reilly Media, U.S.A.
  • Publication date 0000-00-00
  • Features Index, Price on Product - Canadian, Table of Contents
  • Bookseller's Inventory # SONG1449327176
  • ISBN 9781449327170 / 1449327176
  • Weight 0.88 lbs (0.40 kg)
  • Dimensions 9.08 x 7.05 x 0.57 in (23.06 x 17.91 x 1.45 cm)
  • Size 7.00x0.57x9.00
  • Category Computers - Data Base Management
  • Library of Congress subjects Computer algorithms, Electronic data processing - Distributed
  • Dewey Decimal Code 005.12
  • Quantity available 1

About Ergodebooks Texas, United States

Biblio member since 2005

Our goal is to provide best customer service and good condition books for the lowest possible price. We are always honest about condition of book. We list book only by ISBN # and hence exact book is guaranteed.

Terms of Sale:

We have 30 day return policy.

Browse books from Ergodebooks

Reader reviews for MapReduce Design Patterns: Building Effective Algorithms and Analytics for Hadoop and Other Systems

From the publisher

Until now, design patterns for the MapReduce framework have been scattered among various research papers, blogs, and books. This handy guide brings together a unique collection of valuable MapReduce patterns that will save you time and effort regardless of the domain, language, or development framework you're using.

Each pattern is explained in context, with pitfalls and caveats clearly identified to help you avoid common design mistakes when modeling your big data architecture. This book also provides a complete overview of MapReduce that explains its origins and implementations, and why design patterns are so important. All code examples are written for Hadoop.

  • Summarization patterns: get a top-level view by summarizing and grouping data
  • Filtering patterns: view data subsets such as records generated from one user
  • Data organization patterns: reorganize data to work with other systems, or to make MapReduce analysis easier
  • Join patterns: analyze different datasets together to discover interesting relationships
  • Metapatterns: piece together several patterns to solve multi-stage problems, or to perform several analytics in the same job
  • Input and output patterns: customize the way you use Hadoop to load or store data

"A clear exposition of MapReduce programs for common data processing patterns--this book is indespensible for anyone using Hadoop."

--Tom White, author of Hadoop: The Definitive Guide

About the author

Donald Miner serves as a Solutions Architect at EMC Greenplum, advising and helping customers implement and use Greenplum's big data systems. Prior to working with Greenplum, Dr. Miner architected several large-scale and mission-critical Hadoop deployments with the U.S. Government as a contractor. He is also involved in teaching, having previously instructed industry classes on Hadoop and a variety of artificial intelligence courses at the University of Maryland, BC. Dr. Miner received his PhD from the University of Maryland, BC in Computer Science, where he focused on Machine Learning and Multi-Agent Systems in his dissertation.

Adam Shook is a Software Engineer at ClearEdge IT Solutions, LLC, working with a number of big data technologies such as Hadoop, Accumulo, Pig, and ZooKeeper. Shook graduated with a B.S. in Computer Science from the University of Maryland Baltimore County (UMBC) and took a job building a new high-performance graphics engine for a game studio. Seeking new challenges, he enrolled in the graduate program at UMBC with a focus on distributed computing technologies. He quickly found development work as a U.S. government contractor on a large-scale Hadoop deployment. Shook is involved in developing and instructing training curriculum for both Hadoop and Pig. He spends what little free time he has working on side projects and playing video games.

tracking-