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Hyperparameters

learning_rate=2e-5
per_device_train_batch_size=14
per_device_eval_batch_size=14
weight_decay=0.01
save_total_limit=3
num_train_epochs=3
predict_with_generate=True
fp16=True

Training Output

global_step=7710,
training_loss=2.436398018566087,
metrics={'train_runtime': 30287.1254,
'train_samples_per_second': 3.564,
'train_steps_per_second': 0.255,
'total_flos': 3.1186278368988365e+17,
'train_loss': 2.436398018566087,
'epoch': 3.0}

Training Results

Epoch Training Loss Validation Loss Rouge1 Rouge2 Rougel Rougelsum Bleu Gen Len
1 2.451200 2.291708 0.322800 0.110100 0.194600 0.194700 0.368400 150.224300
2 2.527300 nan 0.296400 0.100100 0.181800 0.181900 0.317300 137.569200
3 2.523800 nan 0.296600 0.100000 0.181800 0.181900 0.317200 137.254000
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F32
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Dataset used to train usakha/Pegasus_multiNews_model