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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

Reporting results

How to present your analysis results will vary by the audience, the time available, and the level of detail required to tell a story about the data. Your data may have an inherent bias, be incomplete, or require more attributes in order to create a complete picture, so don't be afraid to include this information in your analysis. For example, if you have done some research on climate change, which is a very broad topic, presenting the consumers of your analysis with a narrow scope of assumptions specific to your dataset is important. How and where you include this information is not as important as ensuring it is available for peer review.

Storytelling

Storytelling with data requires some practice and you need time to sell your message to the audience. Like any good story, presenting the data results in a cadence with a beginning, middle, and end will help with the flow of the analysis being consumed. I also find using analogies to compare...

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