Edit model card

Deberta for Named Entity Recognition

I used a Pretrained Deberta-v3-base and finetuned it on Few-NERD, A NER dataset that contains over 180k examples and over 4.6 million tokens.

The Token labels are Person, Organisation, Location, Building, Event, Product, Art & Misc.

How to use the model

from transformers import pipeline

def print_ner(sentences):
    """Cleaning and printing NER results

    """
    for sentence in sentences:
        last_entity_type = sentence[0]['entity']
        last_index = sentence[0]['index']
        word = sentence[0]['word']
        for i, token in enumerate(sentence):
            if (i > 0):
                if (token['entity'] == last_entity_type) and (token['index'] == last_index + 1):
                    word = word + '' + token['word']

                else:
                    word = word.replace('▁', ' ')
                    print(f"{word[1:]} {last_entity_type}")
                    word = token['word']
                last_entity_type = token['entity']
                last_index = token['index']

                if i == len(sentence) - 1:
                    word = word.replace('▁', ' ')
                    print(f"{word[1:]} {last_entity_type}")


pipe = pipeline(model='RashidNLP/NER-Deberta')
sentence = pipe(["Elon Musk will be at SpaceX's Starbase facility in Boca Chica for the orbital launch of starship next month"])
print_ner(sentence)
Downloads last month
54
Safetensors
Model size
184M params
Tensor type
I64
·
F32
·
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Dataset used to train RashidNLP/NER-Deberta