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Intro to Pandas: Data Made Easy

SAT Score Range

3 sessions

This series ended on July 28, 2025. All 1:1 and group chats related to this series are disabled 7 days after the last session.

About

Unlock the power of data with Pandas, one of Python’s most essential libraries for data analysis. In this beginner-friendly session, we'll explore how to organize, manipulate, and make sense of data using Pandas Data Frames and Series.

Tutored by

Nathan J 🇺🇸

Senior Tutor

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Hello, I am Nathan J, and I'm a computer science tutor here at schoolhouse! I love the world of coding, and I think it has very strong potential. I genuinely do believe if you use coding to your advantage, you can create anything your creativity desires!

Schedule

✋ ATTENDANCE POLICY

Please make sure you do not miss any sessions as each one builds upon the previous one!

SESSION 1

24

Jul

SESSION 1

Python

Python

Thu 4:00 AM - 5:00 AM UTCJul 24, 4:00 AM - 5:00 AM UTC

In this first session, we’ll explore what Pandas is and why it’s such a powerful tool for working with data in Python. You’ll learn how Pandas fits into the data science ecosystem, what kinds of problems it helps solve, and what a typical workflow looks like. We’ll talk about key ideas like DataFrames, Series, rows vs. columns, and real-life examples of data Pandas can handle — like spreadsheets, CSVs, and more.
SESSION 2

25

Jul

SESSION 2

Computer Science

Computer Science

Fri 2:00 PM - 3:00 PM UTCJul 25, 2:00 PM - 3:00 PM UTC

TBD
SESSION 3

28

Jul

SESSION 3

Computer Science

Computer Science

Mon 3:00 AM - 4:00 AM UTCJul 28, 3:00 AM - 4:00 AM UTC

TBD

Public Discussion

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Jul 24 - Jul 28

1 week

60 mins

/ session

SCHEDULE

Thursday, Jul 24

4:00AM

Friday, Jul 25

2:00PM

Monday, Jul 28

3:00AM