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Learning Pentaho Data Integration 8 CE

You're reading from   Learning Pentaho Data Integration 8 CE An end-to-end guide to exploring, transforming, and integrating your data across multiple sources

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Product type Paperback
Published in Dec 2017
Publisher Packt
ISBN-13 9781788292436
Length 500 pages
Edition 3rd Edition
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Author (1):
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María Carina Roldán María Carina Roldán
Author Profile Icon María Carina Roldán
María Carina Roldán
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Table of Contents (17) Chapters Close

Preface 1. Getting Started with Pentaho Data Integration FREE CHAPTER 2. Getting Started with Transformations 3. Creating Basic Task Flows 4. Reading and Writing Files 5. Manipulating PDI Data and Metadata 6. Controlling the Flow of Data 7. Cleansing, Validating, and Fixing Data 8. Manipulating Data by Coding 9. Transforming the Dataset 10. Performing Basic Operations with Databases 11. Loading Data Marts with PDI 12. Creating Portable and Reusable Transformations 13. Implementing Metadata Injection 14. Creating Advanced Jobs 15. Launching Transformations and Jobs from the Command Line 16. Best Practices for Designing and Deploying a PDI Project

Normalizing data


Some datasets are nice to view but complicated for further processing. Take a look at the following information about product sales, aggregated by year and product line:

Product sales

Suppose that you want to answer the following questions:

  • Which product line was the best sold?
  • How many cars did you sell (including Classic and Vintage)?
  • Which is the average price per product sold?

The dataset is not prepared to answer these questions, at least in an easy way. In order to simplify the task, you will have to normalize the data first, that is, convert it to a suitable format before proceeding. The next subsection explains how to do that.

Modifying the dataset with a Row Normaliser step

The Row Normaliser step takes a pivoted dataset and normalizes the data. In simple words, it converts columns to rows. In order to explain how to use and configure the step, we will normalize the data shown earlier. Our purpose, in this case, will be to have something like this:

Product sales normalized...

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