d4f391010aec32c8d2e0ab6b6898b51e

This model is a fine-tuned version of google/long-t5-local-large on the Helsinki-NLP/opus_books [en-ru] dataset. It achieves the following results on the evaluation set:

  • Loss: 1.5131
  • Data Size: 1.0
  • Epoch Runtime: 188.7451
  • Bleu: 3.4104

Model description

More information needed

Intended uses & limitations

More information needed

Training and evaluation data

More information needed

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 5e-05
  • train_batch_size: 8
  • eval_batch_size: 8
  • seed: 42
  • distributed_type: multi-GPU
  • num_devices: 4
  • total_train_batch_size: 32
  • total_eval_batch_size: 32
  • optimizer: Use adamw_torch with betas=(0.9,0.999) and epsilon=1e-08 and optimizer_args=No additional optimizer arguments
  • lr_scheduler_type: constant
  • num_epochs: 50

Training results

Training Loss Epoch Step Validation Loss Data Size Epoch Runtime Bleu
No log 0 0 203.3179 0 13.8725 0.0048
No log 1 437 151.9397 0.0078 16.8310 0.0021
No log 2 874 91.9245 0.0156 17.5949 0.0049
No log 3 1311 41.3338 0.0312 21.7833 0.0037
No log 4 1748 14.5198 0.0625 28.3048 0.0124
20.006 5 2185 9.2048 0.125 40.2275 0.0077
15.1068 6 2622 7.0029 0.25 61.3442 0.0165
10.3681 7 3059 5.1010 0.5 104.5574 0.0282
7.4323 8.0 3496 3.9191 1.0 193.2738 0.1163
6.0454 9.0 3933 3.3345 1.0 192.0627 0.2352
5.1294 10.0 4370 3.0954 1.0 191.1681 0.4104
4.5298 11.0 4807 2.6860 1.0 191.6684 0.5311
4.0702 12.0 5244 2.5652 1.0 191.5956 0.5507
3.6954 13.0 5681 2.4747 1.0 191.6501 0.4395
3.3925 14.0 6118 2.3057 1.0 190.4953 1.0742
3.1576 15.0 6555 2.1997 1.0 190.1354 0.9730
2.9524 16.0 6992 2.0628 1.0 190.5867 1.0125
2.7976 17.0 7429 2.0462 1.0 190.6328 1.1332
2.659 18.0 7866 1.9582 1.0 189.9537 1.2786
2.5601 19.0 8303 1.9270 1.0 191.3812 1.1806
2.4688 20.0 8740 1.8754 1.0 191.0130 1.3126
2.3734 21.0 9177 1.8524 1.0 189.7151 1.7209
2.2997 22.0 9614 1.8289 1.0 189.3750 1.5993
2.2331 23.0 10051 1.8041 1.0 191.0508 1.6395
2.1879 24.0 10488 1.7909 1.0 190.0420 1.4962
2.1437 25.0 10925 1.7521 1.0 190.8916 1.6839
2.0761 26.0 11362 1.7351 1.0 191.1157 1.9509
2.0375 27.0 11799 1.7174 1.0 188.1737 1.7784
1.984 28.0 12236 1.7307 1.0 188.5870 2.0249
1.9444 29.0 12673 1.6861 1.0 189.2382 2.0246
1.9286 30.0 13110 1.6741 1.0 188.5746 2.0330
1.9027 31.0 13547 1.6614 1.0 189.0473 2.0770
1.8799 32.0 13984 1.6574 1.0 188.4332 2.1513
1.8246 33.0 14421 1.6412 1.0 188.1285 2.0970
1.8204 34.0 14858 1.6290 1.0 187.5204 2.4002
1.7772 35.0 15295 1.6164 1.0 187.6700 2.3430
1.7504 36.0 15732 1.6102 1.0 188.1867 2.3951
1.737 37.0 16169 1.5956 1.0 188.8280 2.5689
1.7137 38.0 16606 1.5900 1.0 189.6627 2.5392
1.6757 39.0 17043 1.5782 1.0 189.1879 2.5737
1.6486 40.0 17480 1.5642 1.0 189.7931 2.6443
1.6366 41.0 17917 1.5826 1.0 189.2834 2.8002
1.6132 42.0 18354 1.5468 1.0 191.9030 2.9299
1.5917 43.0 18791 1.5420 1.0 188.9345 2.7305
1.5572 44.0 19228 1.5362 1.0 190.2572 3.0314
1.5642 45.0 19665 1.5299 1.0 188.9003 3.0041
1.5197 46.0 20102 1.5411 1.0 190.9117 3.1187
1.5004 47.0 20539 1.5202 1.0 190.3094 3.1452
1.487 48.0 20976 1.5408 1.0 190.0726 3.2623
1.4657 49.0 21413 1.5182 1.0 188.5026 3.2668
1.4396 50.0 21850 1.5131 1.0 188.7451 3.4104

Framework versions

  • Transformers 4.57.0
  • Pytorch 2.8.0+cu128
  • Datasets 4.2.0
  • Tokenizers 0.22.1
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