Python Generator Expressions

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Python Generator Expressions

Summary: in this tutorial, you’ll learn about the Python generator expression to create a generator object.

Introduction to generator expressions

A generator expression is an expression that returns a generator object.

Basically, a generator function is a function that contains a yield statement and returns a generator object.

For example, the following defines a generator function:

def squares(length):
for n in range(length):
yield n ** 2

Code language: JavaScript (javascript)

The squares generator function returns a generator object that produces square numbers of integers from 0 to length - 1.

Because a generator object is an iterator, you can use a for loop to iterate over its elements:

for square in squares(5):

Code language: PHP (php)




A generator expression provides you with a more simple way to return a generator object.

The following example defines a generator expression that returns square numbers of integers from 0 to 4:

squares = (n** 2 for n in range(5))


Since the squares is a generator object, you can iterate over its elements like this:

for square in squares:

Code language: PHP (php)

As you can see, instead of using a function to define a generator function, you can use a generator expression.

A generator expression is like a list comprehension in terms of syntax. For example, a generator expression also supports complex syntaxes including:

  • if statements
  • Multiple nested loops
  • Nested comprehensions

However, a generator expression uses the parentheses () instead of square brackets [].

Generator expressions vs list comprehensions

The following shows how to use the list comprehension to generate square numbers from 0 to 4:

square_list = [n** 2 for n in range(5)]


And this defines a square number generator:

square_generator = (n** 2 for n in range(5))


1) Syntax

In terms of syntax, a generator expression uses square brackets [] while a list comprehension uses parentheses ().

2) Memory utilization

A list comprehension returns a list while a generator expression returns a generator object.

It means that a list comprehension returns a complete list of elements upfront. However, a generator expression returns a list of elements, one at a time, based on request.

A list comprehension is eager while a generator expression is lazy.

In other words, a list comprehension creates all elements right away and loads all of them into the memory.

Conversely, a generator expression creates a single element based on request. It loads only one single element to the memory.

3) Iterable vs iterator

A list comprehension returns an iterable. It means that you can iterate over the result of a list comprehension again and again.

However, a generator expression returns an iterator, specifically a lazy iterator. It becomes exhausted when you complete iterating over it.


  • Use a Python generator expression to return a generator.

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