


How Does a Python List Comprehension with a Preceding Variable Work?
Python List Comprehension Preceded by a Variable
The Python code snippet below utilizes a list comprehension with a variable, foo:
foo = [x for x in bar if x.occupants > 1]
This code performs a sequence of operations, creating a new list, foo, based on the values in the existing list, bar. It iterates over the elements of bar, performing the following steps:
- Variable Assignment: For each element x in bar, it checks if its occupants attribute is greater than 1. If true, it assigns the value of x to a new variable, x.
- List Addition: It adds the assigned value of x to the new list, foo.
Therefore, the resultant list, foo, contains only those elements from bar where the occupants attribute is greater than 1. This is equivalent to the following verbose code:
result = [] for x in bar: if x.occupants > 1: result.append(x)
Understanding List Comprehensions
List comprehensions are a concise way of creating new lists based on existing ones while applying certain conditions or transformations. They have the following general syntax:
[<transformation> for <element> in <sequence> if <condition>]
In the context of the provided code fragment:
- Element: The loop variable, x, iterates over each element in the sequence, bar.
- Condition: The if condition x.occupants > 1 filters out elements that do not meet the specified criteria.
- Transformation: The variable x itself is the transformation, as it is added directly to the resulting list.
In essence, list comprehensions provide a compact and efficient way to manipulate and filter data in Python, making code more concise and readable.
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