Book Image

Clean Data

By : Megan Squire
Book Image

Clean Data

By: Megan Squire

Overview of this book

<p>Is much of your time spent doing tedious tasks such as cleaning dirty data, accounting for lost data, and preparing data to be used by others? If so, then having the right tools makes a critical difference, and will be a great investment as you grow your data science expertise.</p> <p>The book starts by highlighting the importance of data cleaning in data science, and will show you how to reap rewards from reforming your cleaning process. Next, you will cement your knowledge of the basic concepts that the rest of the book relies on: file formats, data types, and character encodings. You will also learn how to extract and clean data stored in RDBMS, web files, and PDF documents, through practical examples.</p> <p>At the end of the book, you will be given a chance to tackle a couple of real-world projects.</p>
Table of Contents (17 chapters)
Clean Data
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
Index

Step six – problem resolution


Since data visualization is not the main purpose of this book, we are not overly concerned with how sophisticated the diagram from the section is, and suffice it to say that there are many, many more interesting patterns to be uncovered in the Ferguson data set than just which URLs were pointed to the most. Now that you know how to easily download and clean this massive data set, perhaps you can let your imagination work to uncover some of these patterns. Remember that when you release your findings to your adoring public, you must not release the tweets themselves or their metadata. But you can release the tweet IDs, or a subset of them, if that is what your question required.