In Python, if else statements are used in combination with for loops to achieve conditional judgment and processing of iterable objects. 1. The basic structure is to add if else judgment logic inside the loop, such as outputting different information according to parity; 2. List deduction can be used to simplify the operation of generating a new list and improve the simplicity of the code; 3. Note that else belongs to for and will only be executed if the loop ends normally; 4. Practical application scenarios include filtering data, data conversion, batch processing of files, etc. Mastering its logical branching and indentation rules is the key.
In Python programming, if else
statements and for
loops are often used together to make conditional judgments on a set of data. This combination is common, especially when dealing with lists, strings, or other iterable objects.

The following situations are typical scenarios where you may use if else
in for
loop.
How to use if else in a for loop
The basic structure is to add if else
judgment logic inside the loop. For example, you want to iterate through a list of numbers and do different processing according to the parity of each number:

numbers = [1, 2, 3, 4, 5] for number in numbers: if num % 2 == 0: print(f"{num} is an even number") else: print(f"{num} is an odd number")
This is very intuitive and easy to expand. For example, you can also add elif
to handle more situations, or nest multiple judgments.
Note: Indentation is important! Python relies on indentation to distinguish code blocks, so make sure that if
and else
contents are in the for
loop.

Simplify if else for loop using list comprehension
If you just want to generate a new list, you can consider using a list comprehension instead of the standard for
loop plus if else
, which is more concise:
numbers = [1, 2, 3, 4, 5] result = [f"{n} is an even number" if n % 2 == 0 else f"{n} is an odd number" for n in numbers] print(result)
This method is suitable for making some simple judgments and transformations. But be aware that if the logic is too complicated, it is recommended to write it into a normal loop, otherwise the code readability will be reduced.
Common misunderstandings: Does else correspond to if or for?
There is a confusing point here: in the for...else
structure, else
belongs to for
, not if
. else
block will only be entered when the entire loop is executed normally (not interrupted by break
).
For example:
for i in range(3): if i == 5: break else: print("Loop ends, no i=5 found")
This code will output a prompt, because i
does not equal 5 and ends the loop. Understanding this is helpful for debugging or controlling the process.
Examples of practical application scenarios
- Filter data that meets the criteria : for example, find active accounts or people of a specific age group from a bunch of users.
- Data conversion : For example, convert grade scores to grades A/B/C.
- Batch processing of files or logs : traverse files in directories and perform different operations according to different types.
for example:
files = ["data.txt", "image.png", "notes.docx", "photo.jpg"] for file in files: if file.endswith(".txt"): print(f"Text file: {file}") elif file.endswith(".jpg") or file.endswith(".png"): print(f"Image file: {file}") else: print(f"Other types: {file}")
Basically that's it. The usage of if else
in a for
loop is actually not difficult. The key is to understand logical branches and indentation rules. Once you are proficient, you will find that it is almost one of the most commonly used combinations in daily programming.
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