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exceptions_exp2_swap_0.3_cost_to_carry_40817

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

  • Loss: 3.5623
  • Accuracy: 0.3687

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: 40817
  • 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
4.8207 0.2915 1000 4.7574 0.2547
4.3451 0.5831 2000 4.2903 0.2983
4.1495 0.8746 3000 4.1025 0.3143
3.9989 1.1662 4000 3.9949 0.3244
3.9424 1.4577 5000 3.9200 0.3308
3.8725 1.7493 6000 3.8628 0.3364
3.7476 2.0408 7000 3.8219 0.3403
3.7478 2.3324 8000 3.7887 0.3436
3.7409 2.6239 9000 3.7592 0.3462
3.7331 2.9155 10000 3.7298 0.3487
3.6431 3.2070 11000 3.7200 0.3508
3.6638 3.4985 12000 3.7006 0.3524
3.6418 3.7901 13000 3.6830 0.3538
3.5425 4.0816 14000 3.6745 0.3552
3.5595 4.3732 15000 3.6645 0.3563
3.5811 4.6647 16000 3.6506 0.3577
3.594 4.9563 17000 3.6390 0.3589
3.5063 5.2478 18000 3.6398 0.3594
3.5271 5.5394 19000 3.6279 0.3601
3.5358 5.8309 20000 3.6184 0.3616
3.4384 6.1224 21000 3.6224 0.3614
3.4768 6.4140 22000 3.6133 0.3622
3.4827 6.7055 23000 3.6066 0.3630
3.4929 6.9971 24000 3.5942 0.3639
3.4386 7.2886 25000 3.6034 0.3639
3.4617 7.5802 26000 3.5931 0.3646
3.4597 7.8717 27000 3.5864 0.3650
3.3856 8.1633 28000 3.5950 0.3651
3.4054 8.4548 29000 3.5914 0.3653
3.4332 8.7464 30000 3.5817 0.3660
3.3326 9.0379 31000 3.5859 0.3662
3.3795 9.3294 32000 3.5862 0.3664
3.4043 9.6210 33000 3.5746 0.3672
3.3991 9.9125 34000 3.5671 0.3675
3.3393 10.2041 35000 3.5805 0.3670
3.3645 10.4956 36000 3.5746 0.3677
3.3957 10.7872 37000 3.5632 0.3682
3.2941 11.0787 38000 3.5737 0.3679
3.3323 11.3703 39000 3.5693 0.3683
3.3532 11.6618 40000 3.5623 0.3687
3.3754 11.9534 41000 3.5556 0.3694
3.3108 12.2449 42000 3.5698 0.3689
3.3412 12.5364 43000 3.5616 0.3694
3.3549 12.8280 44000 3.5534 0.3699
3.2734 13.1195 45000 3.5696 0.3695
3.3063 13.4111 46000 3.5617 0.3699
3.3401 13.7026 47000 3.5530 0.3701
3.3436 13.9942 48000 3.5449 0.3706
3.2743 14.2857 49000 3.5615 0.3701
3.3206 14.5773 50000 3.5577 0.3703
3.3278 14.8688 51000 3.5456 0.3712
3.2309 15.1603 52000 3.5643 0.3702
3.2897 15.4519 53000 3.5571 0.3706
3.2996 15.7434 54000 3.5487 0.3713
3.2158 16.0350 55000 3.5621 0.3706
3.2644 16.3265 56000 3.5560 0.3709
3.2846 16.6181 57000 3.5488 0.3714
3.2937 16.9096 58000 3.5416 0.3719
3.2342 17.2012 59000 3.5624 0.3711
3.2691 17.4927 60000 3.5568 0.3710
3.2827 17.7843 61000 3.5472 0.3720
3.2063 18.0758 62000 3.5571 0.3714
3.2448 18.3673 63000 3.5569 0.3714
3.2645 18.6589 64000 3.5478 0.3718
3.276 18.9504 65000 3.5410 0.3724
3.2139 19.2420 66000 3.5596 0.3713
3.2376 19.5335 67000 3.5551 0.3718
3.2614 19.8251 68000 3.5422 0.3725
3.1921 20.1166 69000 3.5589 0.3717
3.2202 20.4082 70000 3.5529 0.3721
3.2414 20.6997 71000 3.5482 0.3724
3.2529 20.9913 72000 3.5393 0.3729
3.2049 21.2828 73000 3.5554 0.3721
3.2278 21.5743 74000 3.5486 0.3725
3.2369 21.8659 75000 3.5435 0.3729
3.1697 22.1574 76000 3.5585 0.3723
3.2095 22.4490 77000 3.5527 0.3726
3.2182 22.7405 78000 3.5457 0.3728
3.1288 23.0321 79000 3.5555 0.3726
3.1907 23.3236 80000 3.5537 0.3726
3.2015 23.6152 81000 3.5500 0.3731
3.232 23.9067 82000 3.5410 0.3731
3.1602 24.1983 83000 3.5612 0.3725
3.1816 24.4898 84000 3.5524 0.3731
3.2089 24.7813 85000 3.5466 0.3735
3.1308 25.0729 86000 3.5607 0.3725
3.1699 25.3644 87000 3.5574 0.3727
3.1927 25.6560 88000 3.5490 0.3734
3.2013 25.9475 89000 3.5408 0.3738
3.1423 26.2391 90000 3.5571 0.3732
3.1862 26.5306 91000 3.5517 0.3734
3.1896 26.8222 92000 3.5442 0.3735

Framework versions

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