Instructions to use Tanor/sr_ner_tesla_bbmc with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- spaCy
How to use Tanor/sr_ner_tesla_bbmc with spaCy:
!pip install https://huggingface.co/Tanor/sr_ner_tesla_bbmc/resolve/main/sr_ner_tesla_bbmc-any-py3-none-any.whl # Using spacy.load(). import spacy nlp = spacy.load("sr_ner_tesla_bbmc") # Importing as module. import sr_ner_tesla_bbmc nlp = sr_ner_tesla_bbmc.load() - Notebooks
- Google Colab
- Kaggle
sr_ner_tesla_bbmc is a spaCy model meticulously fine-tuned for Named Entity Recognition in Serbian language texts. This advanced model incorporates a transformer layer based on bert-base-multilingual-cased, enhancing its analytical capabilities. It is proficient in identifying 7 distinct categories of entities: PERS (persons), ROLE (professions), DEMO (demonyms), ORG (organizations), LOC (locations), WORK (artworks), and EVENT (events). Detailed information about these categories is available in the accompanying table. The development of this model has been made possible through the support of the Science Fund of the Republic of Serbia, under grant #7276, for the project 'Text Embeddings - Serbian Language Applications - TESLA'.
| Feature | Description |
|---|---|
| Name | sr_ner_tesla_bbmc |
| Version | 1.0.0 |
| spaCy | >=3.7.2,<3.8.0 |
| Default Pipeline | transformer, ner |
| Components | transformer, ner |
| Vectors | 0 keys, 0 unique vectors (0 dimensions) |
| Sources | n/a |
| License | CC BY-SA 3.0 |
| Author | Milica Ikonić Nešić, Saša Petalinkar, Mihailo Škorić, Ranka Stanković |
Label Scheme
View label scheme (7 labels for 1 components)
| Component | Labels |
|---|---|
ner |
DEMO, EVENT, LOC, ORG, PERS, ROLE, WORK |
Accuracy
| Type | Score |
|---|---|
ENTS_F |
94.56 |
ENTS_P |
94.63 |
ENTS_R |
94.48 |
TRANSFORMER_LOSS |
140356.48 |
NER_LOSS |
318152.41 |
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Evaluation results
- NER Precisionself-reported0.946
- NER Recallself-reported0.945
- NER F Scoreself-reported0.946