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Practical Data Analysis Using Jupyter Notebook

You're reading from   Practical Data Analysis Using Jupyter Notebook Learn how to speak the language of data by extracting useful and actionable insights using Python

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Product type Paperback
Published in Jun 2020
Publisher Packt
ISBN-13 9781838826031
Length 322 pages
Edition 1st Edition
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Author (1):
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Marc Wintjen Marc Wintjen
Author Profile Icon Marc Wintjen
Marc Wintjen
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Table of Contents (18) Chapters Close

Preface 1. Section 1: Data Analysis Essentials
2. Fundamentals of Data Analysis FREE CHAPTER 3. Overview of Python and Installing Jupyter Notebook 4. Getting Started with NumPy 5. Creating Your First pandas DataFrame 6. Gathering and Loading Data in Python 7. Section 2: Solutions for Data Discovery
8. Visualizing and Working with Time Series Data 9. Exploring, Cleaning, Refining, and Blending Datasets 10. Understanding Joins, Relationships, and Aggregates 11. Plotting, Visualization, and Storytelling 12. Section 3: Working with Unstructured Big Data
13. Exploring Text Data and Unstructured Data 14. Practical Sentiment Analysis 15. Bringing It All Together 16. Works Cited
17. Other Books You May Enjoy

Understanding outliers and trends

Finding outliers begins by looking at the distribution curve but requires additional techniques that we will walk through together. Additionally, don't underestimate the need for soft skills where you must reach out to others to better understand why an outlier exists in your data. An outlier is commonly known as one or more data values that are significantly different than the rest of the data. Spotting outliers in data is easy depending on the data visualization used, but in many cases, especially when data volumes are very large, they can be obscured when data is aggregated. If you recall from Chapter 7, Exploring Cleaning, Refining, and Blending Datasets, we worked with hits created by a user for a website. A good example of obscuring outliers is when those user hits are aggregated by date. If a specific user has 1,000 hits per day when the average is 2, it would be difficult to identify that outlier user after the data was aggregated...

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