Full Documentation: https://pycantonese.org
PyCantonese is a Python library for Cantonese linguistics and natural language processing (NLP). Currently implemented features (more to come!):
- Accessing and searching corpus data
- Parsing and conversion tools for Jyutping romanization
- Stop words
- Word segmentation
- Part-of-speech tagging
With PyCantonese imported:
>>> import pycantonese as pc
- Word segmentation
>>> pc.segment("廣東話好難學?") # Is Cantonese difficult to learn?
['廣東話', '好', '難', '學', '?']
- Conversion from Cantonese characters to Jyutping
>>> pc.characters_to_jyutping('香港人講廣東話') # Hongkongers speak Cantonese
[("香港人", "hoeng1gong2jan4"), ("講", "gong2"), ("廣東話", "gwong2dung1waa2")]
Finding all verbs in the HKCanCor corpus
In this example, we search for the regular expression
'^V'
for all words whose part-of-speech tag begins with "V" in the original HKCanCor annotations:
>>> corpus = pc.hkcancor() # get HKCanCor
>>> all_verbs = corpus.search(pos='^V')
>>> len(all_verbs) # number of all verbs
29012
>>> from pprint import pprint
>>> pprint(all_verbs[:10]) # print 10 results
[('去', 'V', 'heoi3', ''),
('去', 'V', 'heoi3', ''),
('旅行', 'VN', 'leoi5hang4', ''),
('有冇', 'V1', 'jau5mou5', ''),
('要', 'VU', 'jiu3', ''),
('有得', 'VU', 'jau5dak1', ''),
('冇得', 'VU', 'mou5dak1', ''),
('去', 'V', 'heoi3', ''),
('係', 'V', 'hai6', ''),
('係', 'V', 'hai6', '')]
- Parsing Jyutping for (onset, nucleus, coda, tone)
>>> pc.parse_jyutping('gwong2dung1waa2') # 廣東話
[('gw', 'o', 'ng', '2'), ('d', 'u', 'ng', '1'), ('w', 'aa', '', '2')]
PyCantonese requires Python 3.6 or above. To download and install the stable, most recent version:
$ pip install --upgrade pycantonese
To test your installation in the Python interpreter:
>>> import pycantonese as pc
>>> pc.__version__ # show version number
- Source code: https://github.com/jacksonllee/pycantonese
- Bug tracker, feature requests: https://github.com/jacksonllee/pycantonese/issues
- Email: Please contact Jackson Lee.
- Social media: Updates, tips, and more are posted on the Facebook page below.
PyCantonese is authored and mainteined by Jackson L. Lee.
A talk introducing PyCantonese:
Lee, Jackson L. 2015. PyCantonese: Cantonese linguistic research in the age of big data. Talk at the Childhood Bilingualism Research Centre, Chinese University of Hong Kong. September 15. 2015. Notes+slides
MIT License. Please see LICENSE.txt
in the GitHub source code for details.
The HKCanCor dataset included in PyCantonese is substantially modified from
its source in terms of format. The original dataset has a CC BY license.
Please see pycantonese/data/hkcancor/README.md
in the GitHub source code for details.
The rime-cantonese data (release 2020.09.09) is
incorporated into PyCantonese for word segmentation and
characters-to-Jyutping conversion.
This data has a CC BY 4.0 license.
Please see pycantonese/data/rime_cantonese/README.md
in the GitHub source code for details.
Individuals who have contributed feedback, bug reports, etc. (in alphabetical order of last names if known):
- @cathug
- Litong Chen
- @g-traveller
- Rachel Han
- Ryan Lai
- Charles Lam
- Hill Ma
- @richielo
- @rylanchiu
- Stephan Stiller
- Tsz-Him Tsui
Logo design by albino.snowman (Instagram handle).
Please see CHANGELOG.md
.
The latest code under development is available on Github at jacksonllee/pycantonese. You need to have Git LFS installed on your system. To obtain this version for experimental features or for development:
$ git clone https://github.com/jacksonllee/pycantonese.git
$ cd pycantonese
$ git lfs pull
$ pip install -r dev-requirements.txt
$ pip install -e .
To run tests and styling checks:
$ pytest -vv --doctest-modules --cov=pycantonese pycantonese docs
$ flake8 pycantonese
$ black --check --line-length=79 pycantonese
To build the documentation website files:
$ python build_docs.py