Python Pandas overview
1. What is Pandas?
Pandas is a Python library used to work with data in table form.
In simple words:
👉 Pandas works like Excel in Python
👉 It helps you read, clean, and analyze data
👉 Very useful in Data Science and Data Analysis
2. Why Use Pandas?
We use Pandas because:
✔ Easy to understand
✔ Handles large data
✔ Works with CSV & Excel files
✔ Very powerful for analysis
3. Install Pandas
If Pandas is not installed, run:
4. Import Pandas
Example
👉 pd is a short name (standard practice).
5. What is a DataFrame?
A DataFrame is a table of data with:
-
Rows
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Columns
Just like an Excel sheet.
6. Create a DataFrame (Basic)
Example
7. View Data from DataFrame
First Few Rows
Last Few Rows
8. Read Data from CSV File
Example
👉 Very common in real-world projects.
9. Basic Data Information
Example
10. Select Columns from DataFrame
Example
11. Select Rows from DataFrame
Example
12. Simple Data Analysis
Example
13. Filter Data (Very Useful)
Example
14. Add a New Column
Example
15. Real-World Example (Student Marks)
Example
16. Save Data to CSV File
Example
17. Common Beginner Mistakes
❌ Forgetting to install Pandas
❌ Using wrong column name
❌ Not checking data with head()
❌ Confusing rows and columns
18. Where Pandas is Used?
✔ Data Analysis
✔ Business Reports
✔ Data Cleaning
✔ Machine Learning
✔ CSV & Excel work
19. Pandas vs NumPy (Simple)
| Pandas | NumPy |
|---|---|
| Table data | Numerical data |
| Columns & rows | Arrays |
| Easy data analysis | Fast math operations |
20. Summary (Python Pandas Overview)
✔ Pandas works with table data
✔ Uses DataFrame and Series
✔ Reads CSV & Excel easily
✔ Powerful and easy
✔ Very important for Data Science
📘 Perfect for Beginner Data Science eBook
This chapter is ideal for:
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Python learners
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Data Science beginners
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Students & professionals
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Career-focused readers
If you want next, I can write:
-
Pandas Series Explained
-
Pandas DataFrame Operations
-
Pandas Filtering & Sorting
-
Pandas Mini Projects
Just tell me 😊
