Binning continuous data into categories using pd.cut() in Pandas
Pandas: Data Cleaning and Preprocessing Exercise-7 with Solution
Write a Pandas program to bin data into categories.
This exercise demonstrates how to bin continuous numerical data into discrete categories using pd.cut() method.
Sample Solution :
Code :
import pandas as pd
# Create a sample DataFrame with continuous values
df = pd.DataFrame({
'Age': [25, 30, 22, 45, 35, 28, 40]
})
# Bin ages into categories: 'Young', 'Middle-aged', 'Old'
bins = [0, 25, 35, 100]
labels = ['Young', 'Middle-aged', 'Old']
df['Age_Group'] = pd.cut(df['Age'], bins=bins, labels=labels)
# Output the result
print(df)
Output:
Age Age_Group 0 25 Young 1 30 Middle-aged 2 22 Young 3 45 Old 4 35 Middle-aged 5 28 Middle-aged 6 40 Old
Explanation:
- Created a DataFrame with continuous 'Age' values.
- Used pd.cut() to bin the ages into discrete categories ('Young', 'Middle-aged', 'Old').
- Added a new column 'Age_Group' with the corresponding category for each age.
Python-Pandas Code Editor:
Have another way to solve this solution? Contribute your code (and comments) through Disqus.
What is the difficulty level of this exercise?
Test your Programming skills with w3resource's quiz.
It will be nice if you may share this link in any developer community or anywhere else, from where other developers may find this content. Thanks.
https://198.211.115.131/python-exercises/pandas/pandas-bin-continuous-data-into-categories.php
- Weekly Trends and Language Statistics
- Weekly Trends and Language Statistics