Token Classification
SpanMarker
PyTorch
TensorBoard
Safetensors
English
ner
named-entity-recognition
generated_from_span_marker_trainer
Eval Results (legacy)
Instructions to use tomaarsen/span-marker-bert-base-acronyms with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- SpanMarker
How to use tomaarsen/span-marker-bert-base-acronyms with SpanMarker:
from span_marker import SpanMarkerModel model = SpanMarkerModel.from_pretrained("tomaarsen/span-marker-bert-base-acronyms") - Notebooks
- Google Colab
- Kaggle
| from pathlib import Path | |
| import shutil | |
| from datasets import load_dataset | |
| from transformers import TrainingArguments | |
| from span_marker import SpanMarkerModel, Trainer, SpanMarkerModelCardData | |
| import os | |
| os.environ["CODECARBON_LOG_LEVEL"] = "error" | |
| def main() -> None: | |
| # Load the dataset, ensure "tokens" and "ner_tags" columns, and get a list of labels | |
| dataset_name = "Acronym Identification" | |
| dataset_id = "acronym_identification" | |
| dataset = load_dataset(dataset_id).rename_column("labels", "ner_tags") | |
| labels = dataset["train"].features["ner_tags"].feature.names | |
| # Initialize a SpanMarker model using a pretrained BERT-style encoder | |
| encoder_id = "bert-base-cased" | |
| model_id = "tomaarsen/span-marker-bert-base-acronyms" | |
| model = SpanMarkerModel.from_pretrained( | |
| encoder_id, | |
| labels=labels, | |
| # SpanMarker hyperparameters: | |
| model_max_length=256, | |
| marker_max_length=128, | |
| entity_max_length=8, | |
| # Model card variables | |
| model_card_data=SpanMarkerModelCardData( | |
| model_id=model_id, | |
| encoder_id=encoder_id, | |
| dataset_name=dataset_name, | |
| dataset_id=dataset_id, | |
| license="apache-2.0", | |
| language="en", | |
| ), | |
| ) | |
| # Prepare the 🤗 transformers training arguments | |
| output_dir = Path("models") / model_id | |
| args = TrainingArguments( | |
| output_dir=output_dir, | |
| run_name=model_id, | |
| # Training Hyperparameters: | |
| learning_rate=5e-5, | |
| per_device_train_batch_size=32, | |
| per_device_eval_batch_size=32, | |
| num_train_epochs=2, | |
| weight_decay=0.01, | |
| warmup_ratio=0.1, | |
| bf16=True, # Replace `bf16` with `fp16` if your hardware can't use bf16. | |
| # Other Training parameters | |
| logging_first_step=True, | |
| logging_steps=50, | |
| evaluation_strategy="steps", | |
| save_strategy="steps", | |
| eval_steps=200, | |
| save_total_limit=2, | |
| dataloader_num_workers=2, | |
| ) | |
| # Initialize the trainer using our model, training args & dataset, and train | |
| trainer = Trainer( | |
| model=model, | |
| args=args, | |
| train_dataset=dataset["train"], | |
| eval_dataset=dataset["validation"], | |
| ) | |
| trainer.train() | |
| # Compute & save the metrics on the test set | |
| metrics = trainer.evaluate(metric_key_prefix="validation") | |
| trainer.save_metrics("validation", metrics) | |
| trainer.save_model(output_dir / "checkpoint-final") | |
| shutil.copy2(__file__, output_dir / "checkpoint-final" / "train.py") | |
| if __name__ == "__main__": | |
| main() | |