


How Can I Split Strings into Words Using Multiple Word Boundary Delimiters in Python?
Splitting Strings into Words with Multiple Word Boundary Delimiters
When dealing with textual data, a common task involves splitting strings into individual words. Python's str.split() method offers a straightforward solution, but it only supports a single delimiter as its argument. This limitation can become an obstacle when dealing with text that contains multiple types of word boundaries, such as punctuation marks.
The Python re module provides a powerful alternative: re.split(). This function allows you to specify a pattern to use as the word boundary delimiter. The pattern can include regular expressions to match multiple types of boundaries simultaneously.
For example, to split the following string into words, handling both whitespace and punctuation marks as word boundaries:
"Hey, you - what are you doing here!?"
You can use the following regular expression pattern:
'\W+'
This pattern matches any sequence of non-word characters (alphabetic, numeric, or underscore). When used with re.split(), it will split the string at all occurrences of these characters, effectively creating a list of words.
Here's how you can use it in Python:
import re text = "Hey, you - what are you doing here!?" words = re.split('\W+', text) print(words)
Output:
['Hey', 'you', 'what', 'are', 'you', 'doing', 'here']
As you can see, re.split() effectively splits the string into individual words, preserving the correct word boundaries despite the presence of multiple delimiters. This flexibility makes it a valuable tool for handling complex text parsing scenarios, where multiple word boundary delimiters are encountered.
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