Pandas Example – Write a Pandas program to filter words from a given series that contain atleast two vowels

(Python Example for Beginners)

 

Write a Pandas program to filter words from a given series that contain atleast two vowels.

 

Sample Solution :

Python Code :


import pandas as pd
from collections import Counter

color_series = pd.Series(['Red', 'Green', 'Orange', 'Pink', 'Yellow', 'White'])

print("Original Series:")
print(color_series)
print("nFiltered words:")

result = mask = color_series.map(lambda c: sum([Counter(c.lower()).get(i, 0) for i in list('aeiou')]) >= 2)
print(color_series[result])

Sample Output:

Original Series:
0       Red
1     Green
2    Orange
3      Pink
4    Yellow
5     White
dtype: object

Filtered words:
1     Green
2    Orange
4    Yellow
5     White
dtype: object

 

 

Pandas Example – Write a Pandas program to filter words from a given series that contain atleast two vowels

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