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The Data Wrangling Workshop

You're reading from   The Data Wrangling Workshop Create your own actionable insights using data from multiple raw sources

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Product type Paperback
Published in Jul 2020
Publisher Packt
ISBN-13 9781839215001
Length 576 pages
Edition 2nd Edition
Languages
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Authors (3):
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Dr. Tirthajyoti Sarkar Dr. Tirthajyoti Sarkar
Author Profile Icon Dr. Tirthajyoti Sarkar
Dr. Tirthajyoti Sarkar
Shubhadeep Roychowdhury Shubhadeep Roychowdhury
Author Profile Icon Shubhadeep Roychowdhury
Shubhadeep Roychowdhury
Brian Lipp Brian Lipp
Author Profile Icon Brian Lipp
Brian Lipp
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Toc

Table of Contents (11) Chapters Close

Preface
1. Introduction to Data Wrangling with Python 2. Advanced Operations on Built-In Data Structures FREE CHAPTER 3. Introduction to NumPy, Pandas, and Matplotlib 4. A Deep Dive into Data Wrangling with Python 5. Getting Comfortable with Different Kinds of Data Sources 6. Learning the Hidden Secrets of Data Wrangling 7. Advanced Web Scraping and Data Gathering 8. RDBMS and SQL 9. Applications in Business Use Cases and Conclusion of the Course Appendix

Detecting Outliers and Handling Missing Values

Outlier detection and handling missing values fall under the subtle art of data quality checking. A modeling or data mining process is fundamentally a complex series of computations whose output quality largely depends on the quality and consistency of the input data being fed. The responsibility of maintaining and gatekeeping that quality often falls on the shoulders of a data wrangling team.

Apart from the obvious issue of poor-quality data, missing data can sometimes wreak havoc with the Machine Learning (ML) model downstream. A few ML models, such as Bayesian learning, are inherently robust to outliers and missing data, but common techniques such as Decision Trees and Random Forest have an issue with missing data because the fundamental splitting strategy employed by these techniques depends on an individual piece of data and not a cluster. Therefore, it is almost always imperative to impute missing data before handing it over to...

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