Book: Hadoop in Practice
Publisher: Manning Publications
Hadoop in Practice collects 85 Hadoop examples and presents them in a problem/solution format. Each technique addresses a specific task you'll face, like querying big data using Pig or writing a log file loader. You'll explore each problem step by step, learning both how to build and deploy that specific solution along with the thinking that went into its design. As you work through the tasks, you'll find yourself growing more comfortable with Hadoop and at home in the world of big data.
About the Technology
Hadoop is an open source MapReduce platform designed to query and analyze data distributed across large clusters. Especially effective for big data systems, Hadoop powers mission-critical software at Apple, eBay, LinkedIn, Yahoo, and Facebook. It offers developers handy ways to store, manage, and analyze data.
About the Book
Hadoop in Practice collects 85 battle-tested examples and presents them in a problem/solution format. It balances conceptual foundations with practical recipes for key problem areas like data ingress and egress, serialization, and LZO compression. You'll explore each technique step by step, learning how to build a specific solution along with the thinking that went into it. As a bonus, the book's examples create a well-structured and understandable codebase you can tweak to meet your own needs.
This book assumes the reader knows the basics of Hadoop.
Purchase of the print book comes with an offer of a free PDF, ePub, and Kindle eBook from Manning. Also available is all code from the book.
Conceptual overview of Hadoop and MapReduce
85 practical, tested techniques
Real problems, real solutions
How to integrate MapReduce and R
Table of Contents
PART 1 BACKGROUND AND FUNDAMENTALS
PART 2 DATA LOGISTICS
PART 3 BIG DATA PATTERNS
PART 4 DATA SCIENCE
PART 5 TAMING THE ELEPHANT
Hadoop in a heartbeat
Moving data in and out of Hadoop
Data serialization?working with text and beyond
Applying MapReduce patterns to big data
Streamlining HDFS for big data
Diagnosing and tuning performance problems
Utilizing data structures and algorithms
Integrating R and Hadoop for statistics and more
Predictive analytics with Mahout
Hacking with Hive
Programming pipelines with Pig
Crunch and other technologies
Testing and debugging