Apache Hadoop YARN: Moving beyond MapReduce and Batch Processing with Apache Hadoop 2 (Paperback)
  • Apache Hadoop YARN: Moving beyond MapReduce and Batch Processing with Apache Hadoop 2 (Paperback)
zoom

Apache Hadoop YARN: Moving beyond MapReduce and Batch Processing with Apache Hadoop 2 (Paperback)

(author), (author), (author), (author), (author)
£29.49
Paperback 400 Pages / Published: 03/04/2014
  • We can order this

Usually dispatched within 2 weeks

  • This item has been added to your basket

"This book is a critically needed resource for the newly released Apache Hadoop 2.0, highlighting YARN as the significant breakthrough that broadens Hadoop beyond the MapReduce paradigm."
-From the Foreword by Raymie Stata, CEO of Altiscale


The Insider's Guide to Building Distributed, Big Data Applications with Apache Hadoop ™ YARN

Apache Hadoop is helping drive the Big Data revolution. Now, its data processing has been completely overhauled: Apache Hadoop YARN provides resource management at data center scale and easier ways to create distributed applications that process petabytes of data. And now in Apache Hadoop ™ YARN, two Hadoop technical leaders show you how to develop new applications and adapt existing code to fully leverage these revolutionary advances.

YARN project founder Arun Murthy and project lead Vinod Kumar Vavilapalli demonstrate how YARN increases scalability and cluster utilization, enables new programming models and services, and opens new options beyond Java and batch processing. They walk you through the entire YARN project lifecycle, from installation through deployment.

You'll find many examples drawn from the authors' cutting-edge experience-first as Hadoop's earliest developers and implementers at Yahoo! and now as Hortonworks developers moving the platform forward and helping customers succeed with it.

Coverage includes

YARN's goals, design, architecture, and components-how it expands the Apache Hadoop ecosystem Exploring YARN on a single node Administering YARN clusters and Capacity Scheduler Running existing MapReduce applications Developing a large-scale clustered YARN application Discovering new open source frameworks that run under YARN

Publisher: Pearson Education (US)
ISBN: 9780321934505
Number of pages: 400
Weight: 524 g
Dimensions: 228 x 179 x 18 mm


MEDIA REVIEWS

" This book is a desperately needed resource for administrators, developers, and power-users of the Hadoop YARN framework. It does an excellent job of documenting the (often unknown) history that inevitably lead up to YARN from previous versions of Hadoop, which provides a valuable canvas against which to present the remaining pragmatically-oriented text. Moving from the history of YARN, it wisely jumps right into getting the reader up and running with their own YARN setup (on a single machine or on a larger cluster) such that the rest of the text is not merely conjecturing, but real guidance for a real instance of YARN. Chapters 7 and 8 were the ones I was most looking forward to in the text from the start, as those "core" components of YARN are some of the ones which are least understood and yet concurrently most impacting on performance. They did not disappoint."

- Ellis H. Wilson III, Storage Scientist

You may also be interested in...

The Data Warehouse Toolkit
Added to basket
Designing Data-Intensive Applications
Added to basket
Access 2013 All-in-One For Dummies
Added to basket
Step by Step Databases
Added to basket
Big Data For Dummies
Added to basket
Bioinformatics for Biologists
Added to basket
PHP and MySQL Web Development
Added to basket
Data Analysis Using SQL and Excel
Added to basket
Developing High Quality Data Models
Added to basket
Doing Data Science
Added to basket
£35.99
Paperback
Think Stats 2e
Added to basket
£27.99
Paperback
Principles of Data Management
Added to basket
Data Wrangling with Python
Added to basket
VBA For Dummies
Added to basket
Coding For Kids For Dummies
Added to basket
The Elements of Statistical Learning
Added to basket

Reviews

Please sign in to write a review

Your review has been submitted successfully.