Token Classification
GLiNER2
Safetensors
GLiNER
English
extractor
named-entity-recognition
ner
pii
anonymisation
privacy
Eval Results (legacy)
Instructions to use OvermindLab/nerpa with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- GLiNER2
How to use OvermindLab/nerpa with GLiNER2:
from gliner2 import GLiNER2 model = GLiNER2.from_pretrained("OvermindLab/nerpa") # Extract entities text = "Apple CEO Tim Cook announced iPhone 15 in Cupertino yesterday." result = extractor.extract_entities(text, ["company", "person", "product", "location"]) print(result) - GLiNER
How to use OvermindLab/nerpa with GLiNER:
from gliner import GLiNER model = GLiNER.from_pretrained("OvermindLab/nerpa") - Notebooks
- Google Colab
- Kaggle
Commit History
Update README.md bdc3bf7 verified
Added customer entity examples a4107bb verified
add reference to gliner2 zero shot capabilities 29ae185
akhatre commited on
readme fbc42ee
akhatre commited on
minor code changes and readme improvements dff5567
akhatre commited on
update readme ac320eb
akhatre commited on
Remove training checkpoint files (optimizer, scheduler, trainer state, training args, rng state) f4fe2f6
akhatre commited on