Update README with installable gliner; add library_name
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by
tomaarsen
HF staff
- opened
README.md
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language:
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- it
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pipeline_tag: token-classification
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---
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# Universal NER for Italian (Zero-Shot)
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It's important to note that **this model is universal and operates across all domains**. However, if you are seeking performance metrics close to a 90/99% F1 score for a specific domain, you are encouraged to reach out via email to Michele Montebovi at [email protected]. This direct contact allows for the possibility of customizing the model to achieve enhanced performance tailored to your unique entity recognition requirements in the Italian language.
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# Installation
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To use this model, you must download the GLiNER
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```
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!
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%cd GLiNER
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!pip install -r requirements.txt
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```
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# Usage
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```python
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from
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model = GLiNER.from_pretrained("DeepMount00/universal_ner_ita")
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language:
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- it
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pipeline_tag: token-classification
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library_name: gliner
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---
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# Universal NER for Italian (Zero-Shot)
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It's important to note that **this model is universal and operates across all domains**. However, if you are seeking performance metrics close to a 90/99% F1 score for a specific domain, you are encouraged to reach out via email to Michele Montebovi at [email protected]. This direct contact allows for the possibility of customizing the model to achieve enhanced performance tailored to your unique entity recognition requirements in the Italian language.
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# Installation
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To use this model, you must download the GLiNER project:
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```
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!pip install gliner
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```
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# Usage
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```python
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from gliner import GLiNER
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model = GLiNER.from_pretrained("DeepMount00/universal_ner_ita")
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