Model Card for Model ID
wandb: Run history:
wandb: eval/loss ββ
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wandb: eval/runtime βββββββ
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wandb: eval/samples_per_second β
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wandb: eval/steps_per_second β
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wandb: train/epoch ββββββββββββββ
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wandb: train/global_step ββββββββββββββ
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wandb: train/grad_norm βββββββ
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wandb: train/learning_rate βββββββ
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wandb: train/loss ββββββββββββββββ
wandb:
wandb: Run summary:
wandb: eval/loss 0.51836
wandb: eval/runtime 24.4996
wandb: eval/samples_per_second 13.714
wandb: eval/steps_per_second 4.571
wandb: total_flos 1.1922809488797696e+16
wandb: train/epoch 4.04908
wandb: train/global_step 330
wandb: train/grad_norm 0.55083
wandb: train/learning_rate 1e-05
wandb: train/loss 0.4739
wandb: train_loss 0.68432
wandb: train_runtime 680.5617
wandb: train_samples_per_second 4.775
wandb: train_steps_per_second 0.595
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This is the model card of a π€ transformers model that has been pushed on the Hub. This model card has been automatically generated.
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