Python in Excel: Working with pandas DataFrames Preview

Python in Excel: Working with pandas DataFrames

With Felix Zumstein Liked by 51 users
Duration: 1h 47m Skill level: Intermediate Released: 4/11/2024

Course details

Python and Excel are both some of the most popular “programming languages”, especially for data analytics/data science. Combined, they are even more powerful. In this course, author and Excel expert Felix Zumstein explains how to work with pandas DataFrames in Excel. pandas DataFrames are the backbone of every Python-based data analysis in Excel. Get a thorough introduction to DataFrames. Learn how to turn different sources—such as an Excel range, an Excel table, or a Power Query—into a DataFrame. Find out why and when it makes sense to use a DataFrame, as opposed to native Excel features like Power Query, Pivot Tables, or VLOOKUP formulas. Use a practical dataset to explore the basics of working with DataFrames, including an index, headers, filtering data, dropping duplicates, adding a new column, combining two DataFrames, and re-indexing. Plus, take a quick look at time series and visualizations.

Skills you’ll gain

Earn a sharable certificate

Share what you’ve learned, and be a standout professional in your desired industry with a certificate showcasing your knowledge gained from the course.

Sample certificate

Certificate of Completion

  • Showcase on your LinkedIn profile under “Licenses and Certificate” section

  • Download or print out as PDF to share with others

  • Share as image online to demonstrate your skill

Meet the instructor

Learner reviews

4.9 out of 5

36 ratings
  • 5 star
    Current value: 34 94%
  • 4 star
    Current value: 2 6%
  • 3 star
    Current value: 0 0%
  • 2 star
    Current value: 0 0%
  • 1 star
    Current value: 0 0%

Contents

What’s included

  • Practice while you learn 1 exercise file
  • Test your knowledge 3 quizzes
  • Learn on the go Access on tablet and phone

Similar courses

Download courses

Use your iOS or Android LinkedIn Learning app, and watch courses on your mobile device without an internet connection.