In Python's for loop, use the continue statement to skip certain operations in the current loop and enter the next loop. When the program executes to continue, the current loop will be immediately ended, the subsequent code will be skipped, and the next loop will be started. For example, scenarios such as excluding specific values ??when traversing the numeric range, skipping invalid entries when data cleaning, and skipping situations that do not meet the conditions in advance to make the main logic clearer. 1. Skip specific values: For example, exclude items that do not need to be processed when traversing the list; 2. Data cleaning: Skip exceptions or invalid data when reading external data; 3. Conditional judgment pre-set: filter non-target data in advance to improve code readability. Notes include: continue only affects the current loop layer and will not jump out of the outer loop; do not abuse it to avoid reducing code readability; unlike break, it does not terminate the entire loop.
In Python, if you want to "continue" a for
loop (that is, skip some operations in the current loop and go directly to the next loop), you should use the continue
statement. This statement is very useful when dealing with loops that need to filter out certain situations.

How to use continue in a for loop
The function of continue
is: when the program executes to continue
, the current cycle will be immediately ended, the subsequent code will be skipped, and the next cycle will be started.
Let's give a simple example:
for i in range(5): if i == 2: Continue continue print(i)
The output result is:

0 1 3 4
It can be seen that when i == 2
, continue
is triggered, so print(i)
is not executed and goes directly to the next round of loop.
In which scenarios are suitable for continued
- Skip specific values : For example, when you are traversing a list or range of numbers, you want to exclude certain items that do not need to be processed.
- Data Cleansing : When you read data from outside and want to skip invalid or exception entries.
- Pre-condition judgment : skip the situations that do not meet the conditions in advance to make the main logic clearer.
Take an example of a practical point, for example, you want to print all even numbers:

for num in range(10): if num % 2 != 0: Continue continue print(num)
This way you can print only 0, 2, 4, 6, and 8.
Notes and common mistakes
-
continue
only affects the current loop layer, and if you nest multiple loops, it won't jump out of the outer loop. - Don't abuse
continue
, especially in complex logic, which can make the code difficult to understand. - Unlike
break
,continue
does not terminate the entire cycle, it just skips this round.
If written like this:
for i in range(5): if i == 2: Continue continue print(i) print("Continue to execute")
You will find that when i == 2
, neither print
will execute, because continue
skips before the first print
.
Basically that's it. continue
is a simple but useful control statement. Use it reasonably can make your loop logic more concise and clear.
The above is the detailed content of How to continue a for loop in Python. For more information, please follow other related articles on the PHP Chinese website!

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