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Hadoop Beginner's Guide

Hadoop Beginner's Guide

3.7 (13)
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Hadoop Beginner's Guide

Hadoop Beginner's Guide

3.7 (13)

Overview of this book

Data is arriving faster than you can process it and the overall volumes keep growing at a rate that keeps you awake at night. Hadoop can help you tame the data beast. Effective use of Hadoop however requires a mixture of programming, design, and system administration skills."Hadoop Beginner's Guide" removes the mystery from Hadoop, presenting Hadoop and related technologies with a focus on building working systems and getting the job done, using cloud services to do so when it makes sense. From basic concepts and initial setup through developing applications and keeping the system running as the data grows, the book gives the understanding needed to effectively use Hadoop to solve real world problems.Starting with the basics of installing and configuring Hadoop, the book explains how to develop applications, maintain the system, and how to use additional products to integrate with other systems.While learning different ways to develop applications to run on Hadoop the book also covers tools such as Hive, Sqoop, and Flume that show how Hadoop can be integrated with relational databases and log collection.In addition to examples on Hadoop clusters on Ubuntu uses of cloud services such as Amazon, EC2 and Elastic MapReduce are covered.
Table of Contents (19 chapters)
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Hadoop Beginner's Guide
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
Index

Input/output


There is one aspect of our driver classes that we have mentioned several times without getting into a detailed explanation: the format and structure of the data input into and output from MapReduce jobs.

Files, splits, and records

We have talked about files being broken into splits as part of the job startup and the data in a split being sent to the mapper implementation. However, this overlooks two aspects: how the data is stored in the file and how the individual keys and values are passed to the mapper structure.

InputFormat and RecordReader

Hadoop has the concept of an InputFormat for the first of these responsibilities. The InputFormat abstract class in the org.apache.hadoop.mapreduce package provides two methods as shown in the following code:

public abstract class InputFormat<K, V>
{
public abstract List<InputSplit> getSplits( JobContext context) ;
RecordReader<K, V> createRecordReader(InputSplit split, TaskAttemptContext context) ;
}

These methods display...

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