Python's re module can be used to handle regular expressions and supports finding, matching, and replacing specific patterns in text. 1. Common symbols include:. Match any character, \d match numbers, \w match letters, numbers or underscores, *, , ? respectively represent 0 or more, at least 1, 0 or 1 occurrence; 2. re.match() matches from the beginning of the string, re.search() searches the entire string; 3. Use() to perform group extraction, such as obtaining timestamps and message content from the log; 4. re.sub() replaces text, re.split() splits strings by pattern; after mastering these basic operations, you can meet most text processing needs.
Python's re
module is very practical when dealing with regular expressions. It can help you find, match, or even replace specific patterns in text, and is especially suitable for tasks such as logging, form verification, or crawling web content.

Basic syntax and common symbols
Regular expressions represent different matching rules through some special characters. For example:

-
.
any character (except line breaks) -
\d
dMatch any number -
\w
Match letters, numbers or underscores -
*
means the previous character appears 0 or more times -
-
?
means optional, appearing 0 times or 1 times -
[]
means that you can choose any one of a set of characters -
()
is used for grouping or capturing
For example, \d{3}-\d{3}-\d{4}
can be used to match phone number formats similar to 123-456-7890
.
The difference between using re.match and re.search
In Python, re.match()
and re.search()
are both used to make matching functions, but they behave differently.

-
re.match()
starts from the beginning of the string, and if the beginning does not match, it returns None. -
re.search()
will find matches throughout the string.
For example:
import re text = "abc123xyz" re.match(r'\d ', text) # Return None because the beginning is not the number re.search(r'\d ', text) # Found '123'
So if you are not sure where the target appears, it is recommended to use search()
.
Grouping and extracting data
Sometimes you not only want to know if there is a match, but also want to extract some of it. At this time, you can use brackets ()
to define the grouping.
For example, want to extract timestamps and message content from a piece of log:
log_line = "[2025-04-05 10:20:30] User logged in" match = re.search(r'$$(. ?)$$$ (. )', log_line) If match: timestamp = match.group(1) message = match.group(2)
Here .group(1)
is the time part and .group(2)
is the message content. Note (.*?)
greedy matches, and match content as little as possible.
Replace and split text
In addition to searching, re.sub()
and re.split()
are also very commonly used:
-
re.sub(pattern, repl, string)
: replace the matching content -
re.split(pattern, string)
: Split string by matching result
For example, clearing spaces:
cleaned = re.sub(r'\s ', ' ', "hello world") # output "hello world"
For example, segment sentences by punctuation:
parts = re.split(r'[,.!?]', "Hello, world! How are you?") # Get ['Hello', ' world', ' How are you', '']
Basically that's it. Although regular expressions may seem a bit complicated, they can handle most scenarios after mastering the basic structure. Practice a few more times, check the grammar when encountering specific problems, and you will be able to get started soon.
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