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exceptions_exp2_swap_take_to_drop_1032

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

  • Loss: 3.5587
  • Accuracy: 0.3695

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 Validation Loss Accuracy
4.8398 0.2911 1000 4.7670 0.2532
4.347 0.5822 2000 4.2822 0.2994
4.1504 0.8733 3000 4.0961 0.3155
3.9818 1.1642 4000 3.9912 0.3247
3.9237 1.4553 5000 3.9168 0.3310
3.8777 1.7464 6000 3.8561 0.3371
3.7473 2.0373 7000 3.8160 0.3410
3.7551 2.3284 8000 3.7835 0.3443
3.7385 2.6195 9000 3.7561 0.3470
3.7358 2.9106 10000 3.7275 0.3498
3.6371 3.2014 11000 3.7149 0.3515
3.6539 3.4925 12000 3.6970 0.3529
3.6469 3.7837 13000 3.6790 0.3549
3.536 4.0745 14000 3.6700 0.3564
3.5777 4.3656 15000 3.6630 0.3569
3.5722 4.6567 16000 3.6491 0.3581
3.5798 4.9478 17000 3.6352 0.3596
3.4922 5.2387 18000 3.6354 0.3601
3.5186 5.5298 19000 3.6263 0.3612
3.5291 5.8209 20000 3.6158 0.3618
3.4527 6.1118 21000 3.6182 0.3624
3.4793 6.4029 22000 3.6110 0.3631
3.4844 6.6940 23000 3.6040 0.3636
3.499 6.9851 24000 3.5929 0.3647
3.4161 7.2760 25000 3.5990 0.3644
3.4466 7.5671 26000 3.5905 0.3653
3.4735 7.8582 27000 3.5821 0.3660
3.3832 8.1490 28000 3.5891 0.3659
3.4061 8.4401 29000 3.5883 0.3664
3.4397 8.7313 30000 3.5752 0.3671
3.3148 9.0221 31000 3.5844 0.3673
3.3641 9.3132 32000 3.5798 0.3673
3.3934 9.6043 33000 3.5705 0.3678
3.4221 9.8954 34000 3.5625 0.3684
3.3354 10.1863 35000 3.5757 0.3681
3.3658 10.4774 36000 3.5685 0.3684
3.3732 10.7685 37000 3.5622 0.3690
3.2937 11.0594 38000 3.5691 0.3689
3.333 11.3505 39000 3.5679 0.3691
3.3593 11.6416 40000 3.5587 0.3695
3.356 11.9327 41000 3.5506 0.3703
3.3001 12.2236 42000 3.5672 0.3696
3.328 12.5147 43000 3.5593 0.3701
3.3444 12.8058 44000 3.5477 0.3707
3.2682 13.0966 45000 3.5654 0.3702
3.3046 13.3878 46000 3.5616 0.3704
3.3182 13.6789 47000 3.5505 0.3708
3.3466 13.9700 48000 3.5440 0.3714
3.2754 14.2608 49000 3.5598 0.3708
3.3009 14.5519 50000 3.5517 0.3713
3.3316 14.8430 51000 3.5435 0.3717
3.2446 15.1339 52000 3.5598 0.3710
3.2729 15.4250 53000 3.5509 0.3716
3.2847 15.7161 54000 3.5425 0.3721
3.2596 16.0070 55000 3.5511 0.3715
3.2495 16.2981 56000 3.5544 0.3715
3.2826 16.5892 57000 3.5468 0.3722
3.2957 16.8803 58000 3.5390 0.3725
3.2293 17.1712 59000 3.5530 0.3721
3.2615 17.4623 60000 3.5476 0.3723
3.2782 17.7534 61000 3.5391 0.3726
3.1838 18.0442 62000 3.5499 0.3726
3.2424 18.3354 63000 3.5464 0.3726
3.266 18.6265 64000 3.5405 0.3730
3.2648 18.9176 65000 3.5363 0.3731
3.2083 19.2084 66000 3.5509 0.3728
3.2486 19.4995 67000 3.5466 0.3731
3.2671 19.7906 68000 3.5360 0.3735
3.1702 20.0815 69000 3.5551 0.3725
3.2111 20.3726 70000 3.5486 0.3731
3.2429 20.6637 71000 3.5421 0.3732
3.247 20.9548 72000 3.5371 0.3735
3.2008 21.2457 73000 3.5525 0.3731
3.2202 21.5368 74000 3.5445 0.3733
3.2269 21.8279 75000 3.5366 0.3740
3.1636 22.1188 76000 3.5524 0.3732
3.2047 22.4099 77000 3.5466 0.3735
3.2191 22.7010 78000 3.5372 0.3740
3.227 22.9921 79000 3.5307 0.3743
3.1934 23.2830 80000 3.5497 0.3735
3.2029 23.5741 81000 3.5434 0.3741
3.2033 23.8652 82000 3.5348 0.3744
3.1478 24.1560 83000 3.5530 0.3734
3.1918 24.4471 84000 3.5493 0.3736
3.2035 24.7382 85000 3.5408 0.3744
3.1208 25.0291 86000 3.5477 0.3739
3.1662 25.3202 87000 3.5489 0.3740
3.1899 25.6113 88000 3.5432 0.3742
3.2043 25.9024 89000 3.5356 0.3746
3.1422 26.1933 90000 3.5528 0.3737
3.1717 26.4844 91000 3.5434 0.3743
3.1882 26.7755 92000 3.5393 0.3747
3.1051 27.0664 93000 3.5548 0.3739
3.1594 27.3575 94000 3.5457 0.3744
3.168 27.6486 95000 3.5441 0.3747
3.1803 27.9397 96000 3.5347 0.3747
3.1195 28.2306 97000 3.5525 0.3744
3.1487 28.5217 98000 3.5427 0.3745
3.1746 28.8128 99000 3.5362 0.3752

Framework versions

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