<P style="MARGIN: 0px"> <I>βThis 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.β</I> <BR>βFrom the Foreword by <B>Raymie Stata, CEO of Altiscale</B> </P> <P style="M
Apache Hadoop YARN: Moving beyond MapReduce and Batch Processing with Apache Hadoop 2
β Scribed by Arun C. Murthy, Vinod Kumar Vavilapalli, Doug Eadline, Joseph Niemiec, Jeff Markham
- Publisher
- Addison-Wesley
- Year
- 2014
- Tongue
- English
- Leaves
- 337
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
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.
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