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from datasets import load_dataset |
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from transformers import TrainingArguments |
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from span_marker import SpanMarkerModel, Trainer |
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def main() -> None: |
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dataset = "Babelscape/multinerd" |
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train_dataset = load_dataset(dataset, split="train") |
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eval_dataset = load_dataset(dataset, split="validation").shuffle().select(range(3000)) |
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labels = [ |
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"O", |
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"B-PER", |
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"I-PER", |
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"B-ORG", |
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"I-ORG", |
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"B-LOC", |
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"I-LOC", |
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"B-ANIM", |
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"I-ANIM", |
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"B-BIO", |
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"I-BIO", |
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"B-CEL", |
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"I-CEL", |
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"B-DIS", |
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"I-DIS", |
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"B-EVE", |
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"I-EVE", |
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"B-FOOD", |
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"I-FOOD", |
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"B-INST", |
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"I-INST", |
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"B-MEDIA", |
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"I-MEDIA", |
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"B-MYTH", |
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"I-MYTH", |
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"B-PLANT", |
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"I-PLANT", |
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"B-TIME", |
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"I-TIME", |
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"B-VEHI", |
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"I-VEHI", |
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] |
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model_name = "xlm-roberta-base" |
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model = SpanMarkerModel.from_pretrained( |
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model_name, |
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labels=labels, |
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model_max_length=256, |
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marker_max_length=128, |
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entity_max_length=6, |
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) |
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args = TrainingArguments( |
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output_dir="models/span_marker_xlm_roberta_base_multinerd", |
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learning_rate=1e-5, |
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per_device_train_batch_size=32, |
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per_device_eval_batch_size=32, |
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num_train_epochs=1, |
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weight_decay=0.01, |
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warmup_ratio=0.1, |
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bf16=True, |
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logging_first_step=True, |
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logging_steps=50, |
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evaluation_strategy="steps", |
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save_strategy="steps", |
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eval_steps=1000, |
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save_total_limit=2, |
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dataloader_num_workers=2, |
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) |
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trainer = Trainer( |
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model=model, |
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args=args, |
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train_dataset=train_dataset, |
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eval_dataset=eval_dataset, |
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) |
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trainer.train() |
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trainer.save_model("models/span_marker_xlm_roberta_base_multinerd/checkpoint-final") |
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test_dataset = load_dataset(dataset, split="test") |
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metrics = trainer.evaluate(test_dataset, metric_key_prefix="test") |
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trainer.save_metrics("test", metrics) |
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if __name__ == "__main__": |
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main() |
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""" |
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This SpanMarker model will ignore 2.239322% of all annotated entities in the train dataset. This is caused by the SpanMarkerModel maximum entity length of 6 words and the maximum model input length of 256 tokens. |
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These are the frequencies of the missed entities due to maximum entity length out of 4111958 total entities: |
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- 35814 missed entities with 7 words (0.870972%) |
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- 21246 missed entities with 8 words (0.516688%) |
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- 12680 missed entities with 9 words (0.308369%) |
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- 7308 missed entities with 10 words (0.177726%) |
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- 4414 missed entities with 11 words (0.107345%) |
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- 2474 missed entities with 12 words (0.060166%) |
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- 1894 missed entities with 13 words (0.046061%) |
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- 1130 missed entities with 14 words (0.027481%) |
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- 744 missed entities with 15 words (0.018094%) |
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- 582 missed entities with 16 words (0.014154%) |
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- 344 missed entities with 17 words (0.008366%) |
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- 226 missed entities with 18 words (0.005496%) |
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- 84 missed entities with 19 words (0.002043%) |
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- 46 missed entities with 20 words (0.001119%) |
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- 20 missed entities with 21 words (0.000486%) |
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- 20 missed entities with 22 words (0.000486%) |
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- 12 missed entities with 23 words (0.000292%) |
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- 18 missed entities with 24 words (0.000438%) |
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- 2 missed entities with 25 words (0.000049%) |
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- 4 missed entities with 26 words (0.000097%) |
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- 4 missed entities with 27 words (0.000097%) |
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- 2 missed entities with 31 words (0.000049%) |
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- 8 missed entities with 32 words (0.000195%) |
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- 6 missed entities with 33 words (0.000146%) |
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- 2 missed entities with 34 words (0.000049%) |
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- 4 missed entities with 36 words (0.000097%) |
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- 8 missed entities with 37 words (0.000195%) |
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- 2 missed entities with 38 words (0.000049%) |
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- 2 missed entities with 41 words (0.000049%) |
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- 2 missed entities with 72 words (0.000049%) |
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Additionally, a total of 2978 (0.072423%) entities were missed due to the maximum input length. |
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This SpanMarker model won't be able to predict 2.501087% of all annotated entities in the evaluation dataset. This is caused by the SpanMarkerModel maximum entity length of 6 words. |
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These are the frequencies of the missed entities due to maximum entity length out of 4598 total entities: |
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- 45 missed entities with 7 words (0.978686%) |
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- 27 missed entities with 8 words (0.587212%) |
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- 21 missed entities with 9 words (0.456720%) |
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- 9 missed entities with 10 words (0.195737%) |
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- 3 missed entities with 12 words (0.065246%) |
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- 4 missed entities with 13 words (0.086994%) |
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- 3 missed entities with 14 words (0.065246%) |
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- 1 missed entities with 15 words (0.021749%) |
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- 1 missed entities with 16 words (0.021749%) |
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- 1 missed entities with 20 words (0.021749%) |
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""" |
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""" |
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wandb: Run summary: |
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wandb: eval/loss 0.00594 |
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wandb: eval/overall_accuracy 0.98181 |
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wandb: eval/overall_f1 0.90333 |
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wandb: eval/overall_precision 0.91259 |
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wandb: eval/overall_recall 0.89427 |
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wandb: eval/runtime 21.4308 |
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wandb: eval/samples_per_second 154.171 |
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wandb: eval/steps_per_second 4.853 |
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wandb: test/loss 0.00559 |
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wandb: test/overall_accuracy 0.98247 |
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wandb: test/overall_f1 0.91314 |
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wandb: test/overall_precision 0.91994 |
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wandb: test/overall_recall 0.90643 |
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wandb: test/runtime 2202.6894 |
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wandb: test/samples_per_second 169.652 |
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wandb: test/steps_per_second 5.302 |
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wandb: train/epoch 1.0 |
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wandb: train/global_step 93223 |
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wandb: train/learning_rate 0.0 |
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wandb: train/loss 0.0049 |
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wandb: train/total_flos 7.851073325660897e+17 |
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wandb: train/train_loss 0.01782 |
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wandb: train/train_runtime 41756.9748 |
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wandb: train/train_samples_per_second 71.44 |
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wandb: train/train_steps_per_second 2.233 |
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""" |