Book Image

Data Wrangling with Python

By : Dr. Tirthajyoti Sarkar, Shubhadeep Roychowdhury
Book Image

Data Wrangling with Python

By: Dr. Tirthajyoti Sarkar, Shubhadeep Roychowdhury

Overview of this book

For data to be useful and meaningful, it must be curated and refined. Data Wrangling with Python teaches you the core ideas behind these processes and equips you with knowledge of the most popular tools and techniques in the domain. The book starts with the absolute basics of Python, focusing mainly on data structures. It then delves into the fundamental tools of data wrangling like NumPy and Pandas libraries. You'll explore useful insights into why you should stay away from traditional ways of data cleaning, as done in other languages, and take advantage of the specialized pre-built routines in Python. This combination of Python tips and tricks will also demonstrate how to use the same Python backend and extract/transform data from an array of sources including the Internet, large database vaults, and Excel financial tables. To help you prepare for more challenging scenarios, you'll cover how to handle missing or wrong data, and reformat it based on the requirements from the downstream analytics tool. The book will further help you grasp concepts through real-world examples and datasets. By the end of this book, you will be confident in using a diverse array of sources to extract, clean, transform, and format your data efficiently.
Table of Contents (12 chapters)
Data Wrangling with Python
Preface
Appendix

Activity 8: Handling Outliers and Missing Data


In this activity, we will identify and get rid of outliers. Here, we have a CSV file. The goal here is to clean the data by using the knowledge that we have learned about so far and come up with a nicely formatted DataFrame. Identify the type of outliers and their effect on the data and clean the messy data.

The steps that will help you solve this activity are as follows:

  1. Read the visit_data.csv file.

  2. Check for duplicates.

  3. Check if any essential column contains NaN.

  4. Get rid of the outliers.

  5. Report the size difference.

  6. Create a box plot to check for outliers.

  7. Get rid of any outliers.

Note

The solution for this activity can be found on page 312.