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Extending Excel with Python and R

You're reading from  Extending Excel with Python and R

Product type Book
Published in Apr 2024
Publisher Packt
ISBN-13 9781804610695
Pages 344 pages
Edition 1st Edition
Languages
Authors (2):
Steven Sanderson Steven Sanderson
Profile icon Steven Sanderson
David Kun David Kun
Profile icon David Kun
View More author details

Table of Contents (20) Chapters

Preface 1. Part 1:The Basics – Reading and Writing Excel Files from R and Python
2. Chapter 1: Reading Excel Spreadsheets 3. Chapter 2: Writing Excel Spreadsheets 4. Chapter 3: Executing VBA Code from R and Python 5. Chapter 4: Automating Further – Task Scheduling and Email 6. Part 2: Making It Pretty – Formatting, Graphs, and More
7. Chapter 5: Formatting Your Excel Sheet 8. Chapter 6: Inserting ggplot2/matplotlib Graphs 9. Chapter 7: Pivot Tables and Summary Tables 10. Part 3: EDA, Statistical Analysis, and Time Series Analysis
11. Chapter 8: Exploratory Data Analysis with R and Python 12. Chapter 9: Statistical Analysis: Linear and Logistic Regression 13. Chapter 10: Time Series Analysis: Statistics, Plots, and Forecasting 14. Part 4: The Other Way Around – Calling R and Python from Excel
15. Chapter 11: Calling R/Python Locally from Excel Directly or via an API 16. Part 5: Data Analysis and Visualization with R and Python for Excel Data – A Case Study
17. Chapter 12: Data Analysis and Visualization with R and Python in Excel – A Case Study 18. Index 19. Other Books You May Enjoy

Performing a simple ML model with Python

In this section, we create a simple ML model in Python. Python has grown to be the primary go-to language for ML work (with R as the obvious alternative) and the number of packages implementing ML algorithms is difficult to overestimate. Having said that, sklearn remains the most widely used so we will also choose it for this section. Similarly to the R part of the chapter, we will use the xgboost model because it has a great balance between performance and explainability.

We will use the data loaded in the previous section.

Data preprocessing

The first thing to do for the modeling phase is to prepare the data. Fortunately, sklearn comes with a preprocessing functionality built-in!

Let’s review the steps involved in data preprocessing:

  • Handling missing values: Before training a model, it’s essential to address missing values in the dataset. sklearn provides methods for imputing missing values or removing rows...
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