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Hadoop Beginner's Guide

You're reading from   Hadoop Beginner's Guide Get your mountain of data under control with Hadoop. This guide requires no prior knowledge of the software or cloud services ‚Äì just a willingness to learn the basics from this practical step-by-step tutorial.

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Product type Paperback
Published in Feb 2013
Publisher Packt
ISBN-13 9781849517300
Length 398 pages
Edition 1st Edition
Tools
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Toc

Table of Contents (19) Chapters Close

Hadoop Beginner's Guide
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
1. What It's All About 2. Getting Hadoop Up and Running FREE CHAPTER 3. Understanding MapReduce 4. Developing MapReduce Programs 5. Advanced MapReduce Techniques 6. When Things Break 7. Keeping Things Running 8. A Relational View on Data with Hive 9. Working with Relational Databases 10. Data Collection with Flume 11. Where to Go Next Pop Quiz Answers Index

Chapter 9. Working with Relational Databases

As we saw in the previous chapter, Hive is a great tool that provides a relational database-like view of the data stored in Hadoop. However, at the end of the day, it is not truly a relational database. It does not fully implement the SQL standard, and its performance and scale characteristics are vastly different (not better or worse, just different) from a traditional relational database.

In many cases, you will find a Hadoop cluster sitting alongside and used with (not instead of) relational databases. Often the business flows will require data to be moved from one store to the other; we will now explore such integration.

In this chapter, we will:

  • Identify some common Hadoop/RDBMS use cases

  • Explore how we can move data from RDBMS into HDFS and Hive

  • Use Sqoop as a better solution for such problems

  • Move data with exports from Hadoop into an RDBMS

  • Wrap up with a discussion of how this can be applied to AWS

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