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swin-tiny-patch4-window7-224-finetuned-eurosat_DATA7_20240411

This model was trained from scratch on the imagefolder dataset. It achieves the following results on the evaluation set:

  • Loss: 0.0669
  • Accuracy: 0.9784

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: 5e-05
  • train_batch_size: 32
  • eval_batch_size: 32
  • seed: 42
  • gradient_accumulation_steps: 4
  • total_train_batch_size: 128
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • lr_scheduler_warmup_ratio: 0.1
  • num_epochs: 100

Training results

Training Loss Epoch Step Validation Loss Accuracy
0.9517 1.0 365 0.9502 0.5231
0.7427 2.0 731 0.7194 0.6734
0.6384 3.0 1096 0.6085 0.7290
0.6007 4.0 1462 0.5564 0.7512
0.606 5.0 1827 0.5444 0.7606
0.5432 6.0 2193 0.4737 0.7991
0.5239 7.0 2558 0.4484 0.8048
0.4525 8.0 2924 0.3606 0.8487
0.4318 9.0 3289 0.3628 0.8514
0.4213 10.0 3655 0.2967 0.8759
0.3846 11.0 4020 0.2828 0.8880
0.3833 12.0 4386 0.2494 0.9011
0.3671 13.0 4751 0.2430 0.9028
0.3458 14.0 5117 0.2222 0.9107
0.3049 15.0 5482 0.2041 0.9190
0.3198 16.0 5848 0.1761 0.9338
0.2648 17.0 6213 0.1772 0.9348
0.2517 18.0 6579 0.1846 0.9303
0.251 19.0 6944 0.1848 0.9299
0.2351 20.0 7310 0.1448 0.9448
0.2604 21.0 7675 0.1467 0.9425
0.245 22.0 8041 0.1292 0.9503
0.2095 23.0 8406 0.1381 0.9490
0.2022 24.0 8772 0.1542 0.9469
0.2041 25.0 9137 0.1229 0.9563
0.1899 26.0 9503 0.1225 0.9557
0.167 27.0 9868 0.1137 0.9588
0.2101 28.0 10234 0.0978 0.9646
0.2187 29.0 10599 0.1138 0.9588
0.1875 30.0 10965 0.1256 0.9517
0.1807 31.0 11330 0.1043 0.9625
0.1874 32.0 11696 0.1147 0.9613
0.1863 33.0 12061 0.1035 0.9627
0.1607 34.0 12427 0.0920 0.9652
0.1597 35.0 12792 0.1021 0.9617
0.1643 36.0 13158 0.1007 0.9638
0.1858 37.0 13523 0.0987 0.9667
0.152 38.0 13889 0.1038 0.9652
0.1622 39.0 14254 0.0964 0.9665
0.1598 40.0 14620 0.0976 0.9679
0.1438 41.0 14985 0.0918 0.9675
0.1355 42.0 15351 0.0884 0.9694
0.1563 43.0 15716 0.0905 0.9679
0.1319 44.0 16082 0.1046 0.9675
0.1613 45.0 16447 0.0792 0.9711
0.1454 46.0 16813 0.0872 0.9690
0.1166 47.0 17178 0.0857 0.9700
0.1297 48.0 17544 0.0779 0.9734
0.1328 49.0 17909 0.0792 0.9738
0.1212 50.0 18275 0.0736 0.9731
0.1275 51.0 18640 0.0900 0.9684
0.0988 52.0 19006 0.0739 0.9732
0.126 53.0 19371 0.0854 0.9721
0.138 54.0 19737 0.0858 0.9715
0.1169 55.0 20102 0.0770 0.9740
0.1328 56.0 20468 0.0780 0.9759
0.1231 57.0 20833 0.0770 0.9734
0.128 58.0 21199 0.0692 0.9738
0.1233 59.0 21564 0.0763 0.9721
0.1131 60.0 21930 0.0695 0.9754
0.1032 61.0 22295 0.0795 0.9731
0.146 62.0 22661 0.0702 0.9752
0.1117 63.0 23026 0.0725 0.9754
0.1137 64.0 23392 0.0710 0.9767
0.1083 65.0 23757 0.0764 0.9738
0.1053 66.0 24123 0.0712 0.9732
0.1193 67.0 24488 0.0813 0.9729
0.0901 68.0 24854 0.0758 0.9752
0.1142 69.0 25219 0.0672 0.9758
0.1166 70.0 25585 0.0803 0.9754
0.0835 71.0 25950 0.0791 0.9727
0.0989 72.0 26316 0.0801 0.9731
0.0952 73.0 26681 0.0717 0.9754
0.0945 74.0 27047 0.0666 0.9761
0.0944 75.0 27412 0.0703 0.9752
0.1092 76.0 27778 0.0624 0.9773
0.0976 77.0 28143 0.0637 0.9773
0.1008 78.0 28509 0.0744 0.9744
0.0755 79.0 28874 0.0694 0.9767
0.1023 80.0 29240 0.0800 0.9752
0.0987 81.0 29605 0.0773 0.9744
0.0806 82.0 29971 0.0689 0.9773
0.1019 83.0 30336 0.0749 0.9767
0.0994 84.0 30702 0.0696 0.9765
0.0897 85.0 31067 0.0698 0.9781
0.0636 86.0 31433 0.0672 0.9775
0.098 87.0 31798 0.0756 0.9767
0.0955 88.0 32164 0.0719 0.9771
0.0786 89.0 32529 0.0726 0.9771
0.0821 90.0 32895 0.0696 0.9769
0.0844 91.0 33260 0.0691 0.9771
0.0926 92.0 33626 0.0676 0.9767
0.0826 93.0 33991 0.0705 0.9769
0.0923 94.0 34357 0.0686 0.9771
0.0637 95.0 34722 0.0672 0.9781
0.0953 96.0 35088 0.0661 0.9786
0.0922 97.0 35453 0.0701 0.9777
0.0766 98.0 35819 0.0676 0.9779
0.0782 99.0 36184 0.0656 0.9783
0.0845 99.86 36500 0.0669 0.9784

Framework versions

  • Transformers 4.38.1
  • Pytorch 2.1.2+cu121
  • Datasets 2.17.1
  • Tokenizers 0.15.2
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Evaluation results