yolo_finetuned_fruits

This model is a fine-tuned version of hustvl/yolos-tiny on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 0.8209
  • Map: 0.5813
  • Map 50: 0.8161
  • Map 75: 0.6682
  • Map Small: -1.0
  • Map Medium: 0.6283
  • Map Large: 0.5888
  • Mar 1: 0.4242
  • Mar 10: 0.7055
  • Mar 100: 0.7704
  • Mar Small: -1.0
  • Mar Medium: 0.6886
  • Mar Large: 0.7816
  • Map Banana: 0.4339
  • Mar 100 Banana: 0.7225
  • Map Orange: 0.6177
  • Mar 100 Orange: 0.7857
  • Map Apple: 0.6923
  • Mar 100 Apple: 0.8029

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: 4
  • eval_batch_size: 8
  • seed: 42
  • optimizer: Use OptimizerNames.ADAMW_TORCH with betas=(0.9,0.999) and epsilon=1e-08 and optimizer_args=No additional optimizer arguments
  • lr_scheduler_type: cosine
  • num_epochs: 30

Training results

Training Loss Epoch Step Validation Loss Map Map 50 Map 75 Map Small Map Medium Map Large Mar 1 Mar 10 Mar 100 Mar Small Mar Medium Mar Large Map Banana Mar 100 Banana Map Orange Mar 100 Orange Map Apple Mar 100 Apple
No log 1.0 60 2.1499 0.0136 0.0448 0.0056 -1.0 0.0109 0.0158 0.075 0.1852 0.3357 -1.0 0.1843 0.3553 0.013 0.37 0.0078 0.3143 0.0201 0.3229
No log 2.0 120 1.7782 0.0292 0.0773 0.0143 -1.0 0.0276 0.0386 0.1073 0.2172 0.3738 -1.0 0.1543 0.3976 0.0311 0.5425 0.0182 0.1476 0.0383 0.4314
No log 3.0 180 1.5906 0.0594 0.1414 0.0417 -1.0 0.1115 0.0605 0.152 0.3742 0.5341 -1.0 0.4 0.5537 0.0778 0.56 0.0529 0.5167 0.0476 0.5257
No log 4.0 240 1.5383 0.0861 0.202 0.0501 -1.0 0.2612 0.0865 0.151 0.3671 0.5304 -1.0 0.45 0.5377 0.1303 0.6025 0.0745 0.5 0.0535 0.4886
No log 5.0 300 1.1837 0.1558 0.2537 0.1816 -1.0 0.2695 0.1583 0.2698 0.4915 0.6304 -1.0 0.6171 0.6306 0.1721 0.665 0.1067 0.4976 0.1887 0.7286
No log 6.0 360 1.0734 0.157 0.2964 0.1582 -1.0 0.3468 0.187 0.2915 0.5425 0.6648 -1.0 0.6343 0.6689 0.2002 0.655 0.1633 0.6881 0.1074 0.6514
No log 7.0 420 1.0573 0.2775 0.4635 0.3247 -1.0 0.4621 0.2992 0.3344 0.5898 0.6521 -1.0 0.6143 0.6591 0.2421 0.6525 0.3061 0.581 0.2844 0.7229
No log 8.0 480 1.0384 0.2976 0.4884 0.3472 -1.0 0.3785 0.3332 0.349 0.5867 0.6615 -1.0 0.5629 0.6758 0.2774 0.655 0.2988 0.6095 0.3166 0.72
1.3795 9.0 540 1.0118 0.3836 0.6136 0.4243 -1.0 0.5103 0.4155 0.3625 0.6428 0.7234 -1.0 0.6757 0.7321 0.3059 0.7025 0.418 0.7048 0.4267 0.7629
1.3795 10.0 600 0.9245 0.435 0.6491 0.5092 -1.0 0.5728 0.4373 0.3755 0.6479 0.7627 -1.0 0.67 0.7771 0.3134 0.7225 0.4386 0.7571 0.5529 0.8086
1.3795 11.0 660 0.9402 0.4402 0.6789 0.4961 -1.0 0.5685 0.4575 0.3954 0.6632 0.7531 -1.0 0.6486 0.769 0.2956 0.7225 0.4795 0.7452 0.5453 0.7914
1.3795 12.0 720 0.9860 0.4799 0.732 0.5485 -1.0 0.5748 0.4896 0.3923 0.6661 0.7248 -1.0 0.64 0.7374 0.3637 0.6825 0.4651 0.7119 0.611 0.78
1.3795 13.0 780 0.9429 0.5169 0.7922 0.5961 -1.0 0.5773 0.5318 0.3917 0.6751 0.7439 -1.0 0.6871 0.7558 0.3606 0.6675 0.5592 0.7643 0.631 0.8
1.3795 14.0 840 0.8865 0.5173 0.758 0.5911 -1.0 0.6596 0.5182 0.4012 0.678 0.7499 -1.0 0.6986 0.7576 0.3531 0.705 0.5424 0.7619 0.6563 0.7829
1.3795 15.0 900 0.8419 0.5406 0.7763 0.6074 -1.0 0.5919 0.5512 0.4255 0.6973 0.7671 -1.0 0.7114 0.7778 0.4123 0.6975 0.5349 0.7952 0.6745 0.8086
1.3795 16.0 960 0.8329 0.5395 0.7552 0.6311 -1.0 0.5883 0.5466 0.4152 0.7104 0.757 -1.0 0.7 0.7684 0.4031 0.7 0.5438 0.7738 0.6716 0.7971
0.7998 17.0 1020 0.8817 0.534 0.7852 0.6453 -1.0 0.5942 0.5434 0.3962 0.6775 0.7507 -1.0 0.71 0.7613 0.4026 0.685 0.5503 0.7643 0.6492 0.8029
0.7998 18.0 1080 0.8657 0.5663 0.8226 0.6633 -1.0 0.6353 0.5746 0.4164 0.6948 0.7529 -1.0 0.7186 0.7613 0.415 0.685 0.5936 0.7595 0.6903 0.8143
0.7998 19.0 1140 0.8733 0.5511 0.8041 0.6633 -1.0 0.5608 0.5704 0.402 0.7012 0.7453 -1.0 0.6757 0.7573 0.4056 0.7025 0.5905 0.7619 0.6572 0.7714
0.7998 20.0 1200 0.8267 0.5838 0.8199 0.6795 -1.0 0.6184 0.5922 0.4153 0.7223 0.7688 -1.0 0.7086 0.779 0.4281 0.7075 0.6191 0.7905 0.7042 0.8086
0.7998 21.0 1260 0.8072 0.5746 0.8082 0.669 -1.0 0.6242 0.5837 0.424 0.7139 0.774 -1.0 0.7086 0.7843 0.417 0.7225 0.5945 0.7881 0.7124 0.8114
0.7998 22.0 1320 0.8209 0.5833 0.8172 0.6688 -1.0 0.6298 0.5924 0.4248 0.7034 0.7666 -1.0 0.7229 0.7737 0.4388 0.7175 0.6002 0.7738 0.7108 0.8086
0.7998 23.0 1380 0.8103 0.5882 0.8115 0.6759 -1.0 0.6302 0.5949 0.4237 0.7178 0.7796 -1.0 0.7571 0.7845 0.4453 0.725 0.6136 0.7881 0.7059 0.8257
0.7998 24.0 1440 0.8106 0.5867 0.8113 0.6811 -1.0 0.6585 0.5931 0.4273 0.7175 0.7777 -1.0 0.73 0.7851 0.4353 0.7275 0.6169 0.7857 0.7077 0.82
0.6151 25.0 1500 0.8246 0.5815 0.8161 0.6787 -1.0 0.6404 0.5954 0.424 0.7167 0.7696 -1.0 0.72 0.7772 0.4355 0.7175 0.615 0.7714 0.6941 0.82
0.6151 26.0 1560 0.8168 0.5812 0.8151 0.6754 -1.0 0.6353 0.5892 0.4254 0.7088 0.7707 -1.0 0.7229 0.778 0.4366 0.725 0.6096 0.7786 0.6972 0.8086
0.6151 27.0 1620 0.8339 0.5809 0.8164 0.6778 -1.0 0.6162 0.5896 0.4188 0.7077 0.7702 -1.0 0.7057 0.7798 0.4323 0.7225 0.6103 0.7738 0.7 0.8143
0.6151 28.0 1680 0.8239 0.5779 0.8163 0.6688 -1.0 0.617 0.5864 0.4218 0.7038 0.7647 -1.0 0.6786 0.7764 0.4304 0.715 0.6121 0.7762 0.6911 0.8029
0.6151 29.0 1740 0.8207 0.5819 0.8169 0.6689 -1.0 0.6283 0.5899 0.4235 0.7046 0.767 -1.0 0.6886 0.7778 0.4342 0.72 0.6167 0.781 0.6948 0.8
0.6151 30.0 1800 0.8209 0.5813 0.8161 0.6682 -1.0 0.6283 0.5888 0.4242 0.7055 0.7704 -1.0 0.6886 0.7816 0.4339 0.7225 0.6177 0.7857 0.6923 0.8029

Framework versions

  • Transformers 4.51.3
  • Pytorch 2.6.0+cu124
  • Datasets 3.5.0
  • Tokenizers 0.21.1
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