About the Book
In Apache Hadoop YARN, key YARN developer Arun Murthy shows how to get existing code to run on Apache Hadoop 2, and develop new applications that take absolutely full advantage of Hadoop clusters. Drawing on insights from the entire Apache Hadoop 2 team, Murthy and Dr. Douglas Eadline review Apache Hadoop YARN's goals, design, architecture, and components, guide the reader thrugh migrating existing MapReduce applications, identify the functional requirements for each element of an Apache Hadoop 2 application, walk the reader through a sample appliation project, and offer multiple examples and case studies drawn from their cutting-edge experience.
Table of Contents:
Chapter 1: Apache Hadoop YARN: A Brief History and Rationale
Chapter 2: Apache Hadoop YARN Install Quick Start
Chapter 3: Apache Hadoop YARN Core Concepts
Chapter 4: Functional Overview of YARN Components
Chapter 5: Installing Apache Hadoop YARN
Chapter 6: Apache Hadoop YARN Administration
Chapter 7: Apache Hadoop YARN Architecture Guide
Chapter 8: Capacity Scheduler in YARN
Chapter 9: MapReduce with Apache Hadoop YARN
Chapter 10: Apache Hadoop YARN Application Example
Chapter 11: Using Apache Hadoop YARN Distributed-Shell
Chapter 12: Apache Hadoop YARN Frameworks
Appendix A: Supplemental Content and Code Downloads
Appendix B: YARN Installation Scripts
Appendix C: YARN Administration Scripts
Appendix D: Nagios Modules
Appendix E: Resources and Additional Information
Appendix F: HDFS Quick Reference
Index
About the Author :
Arun Murthy has contributed to Apache Hadoop full-time since the inception of the project in early 2006. He is a long-term Hadoop committer and a member of the Apache Hadoop Project Management Committee. Previously, he was the architect and lead of the Yahoo Hadoop MapReduce development team and was ultimately responsible, technically, for providing Hadoop MapReduce as a service for all of Yahoo--currently running on nearly 50,000 machines. Arun is the founder and architect of the Hortonworks Inc., a software company that is helping to accelerate the development and adoption of Apache Hadoop. Hortonworks was formed by the key architects and core Hadoop committers from the Yahoo! Hadoop software engineering team in June 2011. Funded by Yahoo! and Benchmark Capital, one of the preeminent technology investors, their goal is to ensure that Apache Hadoop becomes the standard platform for storing, processing, managing, and analyzing big data.
Vinod Kumar Vavilapalli has been contributing to Apache Hadoop project full-time since mid-2007. At Apache Software Foundation, he is a long-term Hadoop contributor, Hadoop committer, member of the Apache Hadoop Project Management Committee, and a foundation member. Vinod is a MapReduce and YARN go-to guy at Hortonworks Inc. For more than five years, he has been working on Hadoop. He was involved in HadoopOnDemand, Hadoop-0.20, CapacityScheduler, Hadoop security, and MapReduce, and is now a lead developer and the project lead for Apache Hadoop YARN. Before Hortonworks, he was at Yahoo!, working in the Grid team that made Hadoop what it is today, running at large scale--up to tens of thousands of nodes. Vinod loves reading books of all kinds and is passionate about using computers to change the world for better, bit by bit. He has a bachelor’s degree in computer science and engineering from the Indian Institute of Technology Roorkee. He can be reached at twitter handle @tshooter.
Douglas Eadline, Ph.D., began his career as a practitioner and a chronicler of the Linux Cluster HPC revolution and now documents big data analytics. Starting with the first Beowulf How To document, Doug has written hundreds of articles, white papers, and instructional documents covering virtually all aspects of HPC computing. Prior to starting and editing the popular ClusterMonkey.net website in 2005, he served as editor-in-chief for ClusterWorld magazine, and was senior HPC editor for Linux Magazine. Currently, he is a consultant to the HPC industry and writes a monthly column in HPC Admin magazine. Both clients and readers have recognized Doug’s ability to present a “technological value proposition” in a clear and accurate style. He has practical, hands-on experience in many aspects of HPC, including hardware and software design, benchmarking, storage, GPU, cloud, and parallel computing. He is the author of Hadoop Fundamentals LiveLessons (video) from Addison-Wesley.
Joseph Niemiec is a big data solutions engineer whose focus is on designing Hadoop solutions for many Fortune 1000 companies. In this position, Joseph has worked with customers to build multiple YARN applications providing a unique perspective on moving customers beyond batch processing, and has worked on YARN development directly. An avid technologist, Joseph has been focused on technology innovations since 2001. His interest in data analytics originally started in game score optimization as a teenager, and has shifted to helping customers uptake new technology innovations such as Hadoop and, most recently, building new data applications using YARN.
Jeff Markham is a solution engineer at Hortonworks Inc., the company promoting open source Hadoop. Previously, he was with VMware, Red Hat, and IBM, helping companies build distributed applications with distributed data. He has written articles on Java application development and has spoken at several conferences and to Hadoop User Groups. Jeff is a contributor to Apache Pig and Apache HDFS.
Review :
" 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