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HomeBackend DevelopmentPython TutorialHow to Extract Text Enclosed in Parentheses Using Regular Expressions?

How to Extract Text Enclosed in Parentheses Using Regular Expressions?

Extracting Text Enclosed in Parentheses Using Regular Expressions

When working with text data, it's often necessary to isolate specific information. In the case of strings containing text enclosed in parentheses, regular expressions provide a powerful tool for this task.

Consider the following string:

abcde(date=\'2/xc2/xb2\',time=\'/case/test.png\')

The goal is to extract the contents within the parentheses. While simple string slicing may suffice in some cases, regular expressions offer a more robust and flexible approach.

The following regular expression can be used to match and capture the parenthetical content:

\(.*\)

This expression matches any string that begins with an opening parenthesis, followed by any sequence of characters (represented by .*), and ends with a closing parenthesis.

To use this expression in Python, you can employ the following code:

import re

text = "abcde(date=\'2/xc2/xb2\',time=\'/case/test.png\')"
match = re.search(r"\(.*\)", text)
contents = match.group(0)

The findall() method will return a list of all matches found in the text, while the group() method extracts the matched content.

In the case of the provided text, the contents variable will contain the following value:

(date=\'2/xc2/xb2\',time=\'/case/test.png\')

This method provides a convenient and reliable way to extract text within parentheses, even in more complex string structures.

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