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SQL for Data Analytics

You're reading from   SQL for Data Analytics Harness the power of SQL to extract insights from data

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Product type Paperback
Published in Aug 2022
Publisher Packt
ISBN-13 9781801812870
Length 540 pages
Edition 3rd Edition
Languages
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Authors (4):
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Benjamin Johnston Benjamin Johnston
Author Profile Icon Benjamin Johnston
Benjamin Johnston
Matt Goldwasser Matt Goldwasser
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Matt Goldwasser
Jun Shan Jun Shan
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Jun Shan
Upom Malik Upom Malik
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Upom Malik
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Table of Contents (11) Chapters Close

Preface 1. Understanding and Describing Data 2. The Basics of SQL for Analytics FREE CHAPTER 3. SQL for Data Preparation 4. Aggregate Functions for Data Analysis 5. Window Functions for Data Analysis 6. Importing and Exporting Data 7. Analytics Using Complex Data Types 8. Performant SQL 9. Using SQL to Uncover the Truth: A Case Study Appendix

Working with Missing Data

In all the examples so far, you have been dealing with datasets that are clean and easy to decipher. However, datasets in real world are more complicated than these. One of the many problems you may have to deal with when working with datasets is missing values.

You will further learn the specifics of preparing data in Chapter 3, SQL for Data Preparation. However, in this section, you will learn several strategies that you can use to handle missing data. Some of your strategies include the following:

  • Deleting rows: If a very small number of rows (that is, less than 5% of your dataset) is missing data, then the simplest solution may be to just delete the data points from your set. This would not impact your results too much.
  • Mean/median/mode imputation: If 5% to 25% of your data for a variable is missing, another option is to take the mean, median, or mode of that column and fill in the blanks with that value. It may provide a...
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