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smids_10x_deit_tiny_sgd_0001_fold5

This model is a fine-tuned version of facebook/deit-tiny-patch16-224 on the imagefolder dataset. It achieves the following results on the evaluation set:

  • Loss: 0.3767
  • Accuracy: 0.85

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: 0.0001
  • train_batch_size: 32
  • eval_batch_size: 32
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • lr_scheduler_warmup_ratio: 0.1
  • num_epochs: 50

Training results

Training Loss Epoch Step Validation Loss Accuracy
1.081 1.0 750 1.0837 0.4183
0.9664 2.0 1500 0.9960 0.4867
0.9109 3.0 2250 0.9172 0.5567
0.8062 4.0 3000 0.8454 0.6017
0.7721 5.0 3750 0.7755 0.6483
0.6595 6.0 4500 0.7101 0.6883
0.5526 7.0 5250 0.6552 0.715
0.6103 8.0 6000 0.6092 0.7533
0.6584 9.0 6750 0.5725 0.7633
0.5611 10.0 7500 0.5452 0.7983
0.5536 11.0 8250 0.5225 0.8067
0.522 12.0 9000 0.5053 0.8117
0.5314 13.0 9750 0.4913 0.8167
0.4936 14.0 10500 0.4799 0.8267
0.5195 15.0 11250 0.4692 0.8283
0.4075 16.0 12000 0.4606 0.8283
0.4566 17.0 12750 0.4529 0.8317
0.4172 18.0 13500 0.4445 0.8367
0.4556 19.0 14250 0.4390 0.83
0.4667 20.0 15000 0.4334 0.8333
0.3932 21.0 15750 0.4273 0.8333
0.4625 22.0 16500 0.4229 0.8367
0.418 23.0 17250 0.4180 0.8383
0.3957 24.0 18000 0.4143 0.8367
0.4114 25.0 18750 0.4106 0.8367
0.4039 26.0 19500 0.4070 0.8367
0.3652 27.0 20250 0.4039 0.84
0.3862 28.0 21000 0.4011 0.84
0.4364 29.0 21750 0.3984 0.84
0.3781 30.0 22500 0.3966 0.8417
0.3636 31.0 23250 0.3941 0.8383
0.3588 32.0 24000 0.3920 0.84
0.4007 33.0 24750 0.3903 0.8417
0.3328 34.0 25500 0.3888 0.84
0.3699 35.0 26250 0.3865 0.8417
0.3686 36.0 27000 0.3852 0.8433
0.315 37.0 27750 0.3840 0.8467
0.3799 38.0 28500 0.3828 0.8467
0.3659 39.0 29250 0.3817 0.8467
0.3715 40.0 30000 0.3806 0.8467
0.3582 41.0 30750 0.3798 0.8467
0.4093 42.0 31500 0.3792 0.8483
0.3651 43.0 32250 0.3786 0.8483
0.3713 44.0 33000 0.3782 0.85
0.3675 45.0 33750 0.3776 0.85
0.3336 46.0 34500 0.3773 0.85
0.4464 47.0 35250 0.3769 0.85
0.3703 48.0 36000 0.3768 0.85
0.366 49.0 36750 0.3767 0.85
0.311 50.0 37500 0.3767 0.85

Framework versions

  • Transformers 4.32.1
  • Pytorch 2.1.0+cu121
  • Datasets 2.12.0
  • Tokenizers 0.13.2
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Evaluation results