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Python Automation Cookbook

You're reading from   Python Automation Cookbook 75 Python automation recipes for web scraping; data wrangling; and Excel, report, and email processing

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Product type Paperback
Published in May 2020
Publisher Packt
ISBN-13 9781800207080
Length 526 pages
Edition 2nd Edition
Languages
Tools
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Author (1):
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Jaime Buelta Jaime Buelta
Author Profile Icon Jaime Buelta
Jaime Buelta
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Toc

Table of Contents (16) Chapters Close

Preface 1. Let's Begin Our Automation Journey 2. Automating Tasks Made Easy FREE CHAPTER 3. Building Your First Web Scraping Application 4. Searching and Reading Local Files 5. Generating Fantastic Reports 6. Fun with Spreadsheets 7. Cleaning and Processing Data 8. Developing Stunning Graphs 9. Dealing with Communication Channels 10. Why Not Automate Your Marketing Campaign? 11. Machine Learning for Automation 12. Automatic Testing Routines 13. Debugging Techniques 14. Other Books You May Enjoy
15. Index

Cleaning and Processing Data

Some automated tasks will require dealing with large amounts of data. As data grows, two new and distinct problems appear. Processing the task takes too long and input data quality issues cause more problems.

Both problems are well known in the realm of data science dealing with big quantities of data, but the problems can appear even at a smaller scale.

The quality of input data is highly related to the number of sources of the data. In general, data from a single source will be more consistent, but using a single source is limiting. Even if the data comes from the same source, it could still contain inconsistencies or errors.

Some examples of differences could be regional, such as date formats or currencies, extra information, different names for the same concept (including spelling differences), typos, general bad quality of data with errors… The list is huge!

To compare apples with apples, the input data...

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