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exceptions_exp2_swap_0.7_last_to_hit_1032

This model is a fine-tuned version of on an unknown dataset. It achieves the following results on the evaluation set:

  • Loss: 3.5645
  • Accuracy: 0.3684

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: 0.0006
  • train_batch_size: 16
  • eval_batch_size: 16
  • seed: 1032
  • gradient_accumulation_steps: 5
  • total_train_batch_size: 80
  • optimizer: Use OptimizerNames.ADAMW_TORCH_FUSED with betas=(0.9,0.98) and epsilon=1e-08 and optimizer_args=No additional optimizer arguments
  • lr_scheduler_type: linear
  • lr_scheduler_warmup_steps: 100
  • num_epochs: 50.0
  • mixed_precision_training: Native AMP

Training results

Training Loss Epoch Step Accuracy Validation Loss
4.8264 0.2915 1000 0.2540 4.7631
4.3456 0.5830 2000 0.2982 4.2904
4.1536 0.8745 3000 0.3145 4.1023
3.9989 1.1659 4000 0.3233 3.9997
3.9556 1.4574 5000 0.3303 3.9253
3.8898 1.7489 6000 0.3357 3.8675
3.7598 2.0402 7000 0.3398 3.8239
3.7633 2.3317 8000 0.3427 3.7955
3.7479 2.6233 9000 0.3453 3.7658
3.7312 2.9148 10000 0.3482 3.7383
3.652 3.2061 11000 0.3499 3.7270
3.6516 3.4976 12000 0.3516 3.7079
3.655 3.7891 13000 0.3532 3.6881
3.5467 4.0805 14000 0.3547 3.6835
3.5772 4.3720 15000 0.3558 3.6701
3.5928 4.6635 16000 0.3569 3.6566
3.591 4.9550 17000 0.3585 3.6416
3.5226 5.2463 18000 0.3587 3.6458
3.531 5.5378 19000 0.3598 3.6327
3.5355 5.8293 20000 0.3606 3.6232
3.4393 6.1207 21000 0.3610 3.6265
3.4902 6.4122 22000 0.3618 3.6220
3.4981 6.7037 23000 0.3623 3.6088
3.5078 6.9952 24000 0.3633 3.6015
3.4379 7.2866 25000 0.3633 3.6110
3.4689 7.5781 26000 0.3640 3.6010
3.4649 7.8696 27000 0.3645 3.5894
3.3924 8.1609 28000 0.3644 3.5999
3.4298 8.4524 29000 0.3650 3.5923
3.4356 8.7439 30000 0.3657 3.5841
3.3413 9.0353 31000 0.3658 3.5889
3.3913 9.3268 32000 0.3658 3.5882
3.4026 9.6183 33000 0.3667 3.5803
3.4305 9.9098 34000 0.3675 3.5687
3.3488 10.2011 35000 0.3667 3.5826
3.3714 10.4927 36000 0.3672 3.5762
3.4075 10.7842 37000 0.3678 3.5671
3.2992 11.0755 38000 0.3677 3.5783
3.363 11.3670 39000 0.3678 3.5723
3.3685 11.6585 40000 0.3684 3.5645
3.3934 11.9500 41000 0.3689 3.5583
3.3171 12.2414 42000 0.3683 3.5734
3.3376 12.5329 43000 0.3688 3.5642
3.3564 12.8244 44000 0.3694 3.5563
3.2743 13.1157 45000 0.3691 3.5710
3.3177 13.4072 46000 0.3691 3.5664
3.3488 13.6988 47000 0.3698 3.5572
3.3578 13.9903 48000 0.3706 3.5490
3.2915 14.2816 49000 0.3697 3.5650
3.3163 14.5731 50000 0.3700 3.5551
3.3346 14.8646 51000 0.3706 3.5476
3.2686 15.1560 52000 0.3702 3.5659
3.2915 15.4475 53000 0.3702 3.5592
3.3269 15.7390 54000 0.3711 3.5483
3.223 16.0303 55000 0.3705 3.5625
3.2716 16.3218 56000 0.3709 3.5593
3.2915 16.6133 57000 0.3713 3.5524
3.3044 16.9049 58000 0.3714 3.5420
3.237 17.1962 59000 0.3707 3.5604
3.2744 17.4877 60000 0.3712 3.5546
3.2833 17.7792 61000 0.3718 3.5483
3.1982 18.0705 62000 0.3709 3.5628
3.243 18.3621 63000 0.3711 3.5550
3.2624 18.6536 64000 0.3717 3.5502
3.2745 18.9451 65000 0.3722 3.5414
3.214 19.2364 66000 0.3715 3.5596
3.2602 19.5279 67000 0.3718 3.5502
3.2724 19.8194 68000 0.3723 3.5425
3.1947 20.1108 69000 0.3716 3.5606
3.2187 20.4023 70000 0.3721 3.5550
3.2584 20.6938 71000 0.3725 3.5461
3.2653 20.9853 72000 0.3726 3.5400
3.2041 21.2766 73000 0.3721 3.5572
3.2204 21.5682 74000 0.3724 3.5469
3.2459 21.8597 75000 0.3728 3.5438
3.1756 22.1510 76000 0.3718 3.5618
3.2035 22.4425 77000 0.3725 3.5523
3.2424 22.7340 78000 0.3729 3.5444
3.1346 23.0254 79000 0.3724 3.5535
3.1904 23.3169 80000 0.3724 3.5584
3.2024 23.6084 81000 3.5618 0.3723
3.2233 23.8999 82000 3.5478 0.3729
3.1613 24.1915 83000 3.5616 0.3723
3.2017 24.4830 84000 3.5518 0.3727
3.2196 24.7745 85000 3.5434 0.3732
3.1465 25.0659 86000 3.5607 0.3724
3.185 25.3574 87000 3.5561 0.3727
3.2043 25.6489 88000 3.5475 0.3733
3.2088 25.9404 89000 3.5401 0.3738
3.1696 26.2318 90000 3.5576 0.3725
3.1896 26.5233 91000 3.5510 0.3731
3.1998 26.8148 92000 3.5430 0.3737
3.1361 27.1061 93000 3.5578 0.3729
3.1578 27.3976 94000 3.5541 0.3732
3.2005 27.6891 95000 3.5459 0.3736
3.2071 27.9806 96000 3.5379 0.3742
3.1321 28.2720 97000 3.5564 0.3730
3.1656 28.5635 98000 3.5456 0.3739
3.1883 28.8550 99000 3.5395 0.3742
3.1201 29.1463 100000 3.5608 0.3730
3.1421 29.4378 101000 3.5554 0.3733
3.1691 29.7294 102000 3.5465 0.3737
3.1002 30.0207 103000 3.5535 0.3736
3.1452 30.3122 104000 3.5560 0.3735
3.1515 30.6037 105000 3.5494 0.3741
3.174 30.8952 106000 3.5431 0.3743
3.1176 31.1866 107000 3.5574 0.3733
3.1255 31.4781 108000 3.5556 0.3738
3.1599 31.7696 109000 3.5442 0.3743
3.0861 32.0609 110000 3.5563 0.3739
3.1318 32.3524 111000 3.5581 0.3735
3.1483 32.6439 112000 3.5473 0.3743
3.1564 32.9355 113000 3.5440 0.3744
3.1023 33.2268 114000 3.5612 0.3738
3.1314 33.5183 115000 3.5516 0.3739
3.1402 33.8098 116000 3.5482 0.3746

Framework versions

  • Transformers 4.55.2
  • Pytorch 2.8.0+cu128
  • Datasets 4.0.0
  • Tokenizers 0.21.4
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