pypi i auto-tagify2


Auto tags a selection of text by removing basic stop words using NLTK

by theoperator.eth

1.4.3 (see all)License:BSD
pypi i auto-tagify2

Auto Tagify2 is a simple auto tagging module that uses NLTK to generate tags out of a selection of text. Any text that is less than 3 characters long or matches a particular POS (part-of-speech) will be ignored.

There are two operations Auto Tagify performs - one returns the selection of text with links embedded in the string and the other returns a list of all the taggable words as the stem word (using lemmatization).

For the first operation, everything is optional, but it is most effective to enter some text. Optional parameters you can set are the paths for tag links and the css classes for link. For instance, if you set your tag routing to a relative path such as /tags/<tagged_word> and want to use the css class named "tagged":

from auto_tagify2 import AutoTagify

t = AutoTagify()

t.text = "This is the text to display!" = "/tags"

t.css = "tagged"


The result will be: This is the text to display!

If no link is set, the default path is "/", such as "/text".

For the second operation, you will only receive a list of all your taggable words from the text. You can call it like so:

t.text = "This text is tagged kittens"


The result will be a list: ['text', 'tag', 'kitten']

By default, generate() and tag_list() will be in strict mode, which means all special characters will be stripped and lemmatization will be enforced. If generate(strict=False) or tag_list(strict=False) is set, then special characters will be url encoded and lemmatization will be ignored.

These two operations are sufficient for you to maintain tag counts and tag references to text in your application.

3yrs ago
3yrs ago
No alternatives found
No tutorials found
Add a tutorial
No dependencies found

Rate & Review

No reviews found
Be the first to rate