Sentimental Onix
March 15, 2023 ยท View on GitHub
Sentimental Onix
Sentiment Analysis using onnx for python with a focus on being spacy compatible and EEEEEASY to use.
Features
- English sentiment analysis
- Spacy pipeline component
- Sentiment model downloading from github
Install
$ pip install sentimental_onix
# download english sentiment model
$ python -m sentimental_onix download en
Usage
import spacy
from sentimental_onix import pipeline
nlp = spacy.load("en_core_web_sm")
nlp.add_pipe("sentencizer")
nlp.add_pipe("sentimental_onix", after="sentencizer")
sentences = [
(sent.text, sent._.sentiment)
for doc in nlp.pipe(
[
"i hate pasta on tuesdays",
"i like movies on wednesdays",
"i find your argument ridiculous",
"soda with straws are my favorite",
]
)
for sent in doc.sents
]
assert sentences == [
("i hate pasta on tuesdays", "Negative"),
("i like movies on wednesdays", "Positive"),
("i find your argument ridiculous", "Negative"),
("soda with straws are my favorite", "Positive"),
]
Benchmark
| library | result |
|---|---|
| spacytextblob | 58.9% |
| sentimental_onix | 69% |
See ./benchmark/ for info
Dev setup / testing
expand
Install
install the dev package and pyenv versions
$ pip install -e ".[dev]"
$ python -m spacy download en_core_web_sm
$ python -m sentimental_onix download en
Run tests
$ black .
$ pytest -vvl
Packaging and publishing
python3 -m pip install --upgrade build twine
python3 -m build
python3 -m twine upload dist/*
