Advertisement

ETL with Hadoop

  • Michael Frampton
Chapter

Abstract

Given that Hadoop-based Map Reduce programming is a relatively new skill, there is likely to be a shortage of highly skilled staff for some time, and those skills will come at a premium price. ETL (extract, transform, and load ) tools, like Pentaho and Talend, offer a visual, component-based method to create Map Reduce jobs, allowing ETL chains to be created and manipulated as visual objects. Such tools are a simpler and quicker way for staff to approach Map Reduce programming. I’m not suggesting that they are a replacement for Java or Pig-based code, but as an entry point they offer a great deal of pre-defined functionality that can be merged so that complex ETL chains can be created and scheduled. This chapter will examine these two tools from installation to use, and along the way, I will offer some resolutions for common problems and errors you might encounter.

Keywords

Error Message Part File Hadoop Cluster Reducer Transformation Slave Server 
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.

Copyright information

© Michael Frampton 2015

Authors and Affiliations

  • Michael Frampton
    • 1
  1. 1.ParaparaumuNew Zealand

Personalised recommendations