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smids_5x_deit_small_rms_0001_fold5

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

  • Loss: 0.8725
  • Accuracy: 0.915

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
0.2465 1.0 375 0.3246 0.8817
0.1757 2.0 750 0.3108 0.8983
0.1416 3.0 1125 0.4018 0.8917
0.0805 4.0 1500 0.5614 0.8733
0.0831 5.0 1875 0.4489 0.8783
0.0313 6.0 2250 0.6222 0.8833
0.0541 7.0 2625 0.5461 0.9017
0.0151 8.0 3000 0.5573 0.9017
0.0125 9.0 3375 0.6886 0.8817
0.0415 10.0 3750 0.5097 0.8967
0.0264 11.0 4125 0.6554 0.89
0.0122 12.0 4500 0.5509 0.8983
0.004 13.0 4875 0.6519 0.895
0.0092 14.0 5250 0.8038 0.88
0.0491 15.0 5625 0.5627 0.9117
0.0096 16.0 6000 0.7380 0.885
0.003 17.0 6375 0.6721 0.8967
0.0153 18.0 6750 0.6251 0.9017
0.0001 19.0 7125 0.7496 0.8933
0.0067 20.0 7500 0.7015 0.895
0.0015 21.0 7875 0.7054 0.9017
0.0117 22.0 8250 0.7731 0.8933
0.0015 23.0 8625 0.6632 0.9033
0.0003 24.0 9000 0.7347 0.9
0.0 25.0 9375 0.8344 0.8917
0.0002 26.0 9750 0.7080 0.905
0.0026 27.0 10125 0.8121 0.8933
0.0001 28.0 10500 0.7303 0.915
0.0285 29.0 10875 0.7237 0.905
0.0021 30.0 11250 0.7546 0.9
0.0096 31.0 11625 0.8217 0.8933
0.0 32.0 12000 0.8254 0.9017
0.0 33.0 12375 0.7430 0.905
0.0 34.0 12750 0.7668 0.9083
0.0002 35.0 13125 0.7980 0.9117
0.0018 36.0 13500 0.8507 0.9017
0.0 37.0 13875 0.7364 0.9133
0.0038 38.0 14250 0.7573 0.9133
0.0 39.0 14625 0.7786 0.9083
0.0 40.0 15000 0.7610 0.915
0.0 41.0 15375 0.7902 0.9117
0.0 42.0 15750 0.7539 0.9133
0.0 43.0 16125 0.8516 0.9133
0.0 44.0 16500 0.8335 0.9183
0.0 45.0 16875 0.8847 0.905
0.0 46.0 17250 0.9773 0.8967
0.0028 47.0 17625 0.8669 0.915
0.0 48.0 18000 0.8681 0.9133
0.0 49.0 18375 0.8719 0.9133
0.0019 50.0 18750 0.8725 0.915

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