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Table of Contents
Basic syntax:
Example 1: Basic usage - Remove vowel letters from strings and convert them to collections
Example 2: Square the number list and de-repeat it
Example 3: Conditional filtering – only even squares are retained
Example 4: Extract lowercase letters from strings
Tips:
Home Backend Development Python Tutorial python set comprehension example

python set comprehension example

Aug 02, 2025 am 12:17 AM

The set derivation formula in Python is used to create a deduplication set. The syntax is {expression for item in iterable if condition}, 1. Extracting vowel letters from "hello world" in Example 1 results in {'o','e'}; 2. Example 2 squared [1,2,2,3,4,4,5] and achieved deduplication; 3. Example 3 filtered even squares to get {16,4,36}; 4. Example 4 extracting the lowercase letters in "Hello World!" results in {'d','l','r','o','e','h','w'}; the set derivation formula is more efficient than loops and is suitable for deduplication operations. If you need to maintain order and repetition, you should use list derivation formula.

python set comprehension example

Set Comprehension in Python is a concise way to create sets. It is similar to list comprehension, but uses curly braces {} and automatically deduplicates.

python set comprehension example

Basic syntax:

 {expression for item in iterable if condition}

Example 1: Basic usage - Remove vowel letters from strings and convert them to collections

 text = "hello world"
vowels = {char for char in text if char in 'aeiou'}
print(vowels)
# Output: {'o', 'e'}

Note: Because it is a collection, only unique characters are retained and the order is not guaranteed.


Example 2: Square the number list and de-repeat it

 numbers = [1, 2, 2, 3, 4, 4, 5]
squares = {x**2 for x in numbers}
print(squares)
# Output: {1, 4, 9, 16, 25}

Even if the original list has duplicate elements, only one will be retained after squared.

python set comprehension example

Example 3: Conditional filtering – only even squares are retained

 numbers = [1, 2, 3, 4, 5, 6]
even_squares = {x**2 for x in numbers if x % 2 == 0}
print(even_squares)
# Output: {16, 4, 36}

Example 4: Extract lowercase letters from strings

 sentence = "Hello World!"
lowercase = {char for char in sentence if char.islower()}
print(lowercase)
# Output: {'d', 'l', 'r', 'o', 'e', 'h', 'w'}

Tips:

  • Using set comprehension is more concise and efficient than adding add() with a for loop.
  • If you need to keep order and allow duplication, you should use list comprehension.
  • Collections do not support duplicate elements and are naturally suitable for deduplication operations.

Basically all that is, it is not complicated to write but very practical.

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