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---
library_name: transformers
license: apache-2.0
base_model: google/vit-large-patch16-224-in21k
tags:
- generated_from_trainer
metrics:
- accuracy
- f1
model-index:
- name: vit-transformer3
  results: []
---

<!-- This model card has been generated automatically according to the information the Trainer had access to. You
should probably proofread and complete it, then remove this comment. -->

# vit-transformer3

This model is a fine-tuned version of [google/vit-large-patch16-224-in21k](https://huggingface.co/google/vit-large-patch16-224-in21k) on the None dataset.
It achieves the following results on the evaluation set:
- Loss: 1.8890
- Accuracy: 0.6833
- F1: 0.6840

## 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: 8
- eval_batch_size: 8
- seed: 42
- gradient_accumulation_steps: 4
- total_train_batch_size: 32
- 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 | F1     |
|:-------------:|:-------:|:----:|:---------------:|:--------:|:------:|
| 1.8752        | 0.9552  | 16   | 0.9886          | 0.6667   | 0.6484 |
| 0.7728        | 1.9701  | 33   | 0.6862          | 0.5667   | 0.4099 |
| 0.7065        | 2.9851  | 50   | 0.6627          | 0.6333   | 0.6132 |
| 0.6845        | 4.0     | 67   | 0.7065          | 0.55     | 0.4922 |
| 0.6513        | 4.9552  | 83   | 0.7202          | 0.4667   | 0.3905 |
| 0.6567        | 5.9701  | 100  | 0.7677          | 0.5333   | 0.4667 |
| 0.6539        | 6.9851  | 117  | 0.6269          | 0.6167   | 0.6047 |
| 0.7025        | 8.0     | 134  | 0.6838          | 0.65     | 0.6107 |
| 0.6698        | 8.9552  | 150  | 0.6313          | 0.6667   | 0.6337 |
| 0.6986        | 9.9701  | 167  | 0.6200          | 0.6667   | 0.6484 |
| 0.6811        | 10.9851 | 184  | 0.5869          | 0.6833   | 0.6840 |
| 0.6132        | 12.0    | 201  | 0.5881          | 0.6833   | 0.6687 |
| 0.7235        | 12.9552 | 217  | 0.5732          | 0.65     | 0.6274 |
| 0.5768        | 13.9701 | 234  | 0.5802          | 0.6833   | 0.6825 |
| 0.5307        | 14.9851 | 251  | 0.6610          | 0.7      | 0.7010 |
| 0.552         | 16.0    | 268  | 0.6229          | 0.7333   | 0.7296 |
| 0.5548        | 16.9552 | 284  | 0.6186          | 0.7167   | 0.7036 |
| 0.4863        | 17.9701 | 301  | 0.8409          | 0.5667   | 0.5366 |
| 0.5048        | 18.9851 | 318  | 1.0019          | 0.4833   | 0.4015 |
| 0.4919        | 20.0    | 335  | 0.6475          | 0.7333   | 0.7333 |
| 0.4788        | 20.9552 | 351  | 0.6931          | 0.6333   | 0.6282 |
| 0.5076        | 21.9701 | 368  | 0.6798          | 0.7      | 0.6983 |
| 0.5047        | 22.9851 | 385  | 0.6784          | 0.7      | 0.7    |
| 0.3477        | 24.0    | 402  | 0.8261          | 0.7      | 0.6983 |
| 0.4508        | 24.9552 | 418  | 0.6846          | 0.6833   | 0.6825 |
| 0.4948        | 25.9701 | 435  | 0.7509          | 0.6833   | 0.6804 |
| 0.3661        | 26.9851 | 452  | 0.7321          | 0.6667   | 0.6678 |
| 0.3072        | 28.0    | 469  | 0.8338          | 0.6833   | 0.6839 |
| 0.3573        | 28.9552 | 485  | 0.9031          | 0.65     | 0.6434 |
| 0.3828        | 29.9701 | 502  | 0.8582          | 0.6667   | 0.6667 |
| 0.2931        | 30.9851 | 519  | 0.7648          | 0.65     | 0.6515 |
| 0.3193        | 32.0    | 536  | 0.9218          | 0.6333   | 0.6333 |
| 0.2783        | 32.9552 | 552  | 0.8452          | 0.7      | 0.7013 |
| 0.2816        | 33.9701 | 569  | 0.8310          | 0.6833   | 0.6735 |
| 0.3018        | 34.9851 | 586  | 0.8437          | 0.7      | 0.6960 |
| 0.2256        | 36.0    | 603  | 1.0684          | 0.65     | 0.6507 |
| 0.2609        | 36.9552 | 619  | 0.9117          | 0.65     | 0.6491 |
| 0.2198        | 37.9701 | 636  | 1.1688          | 0.5833   | 0.5652 |
| 0.306         | 38.9851 | 653  | 0.9001          | 0.6167   | 0.6130 |
| 0.2243        | 40.0    | 670  | 1.2253          | 0.6333   | 0.6313 |
| 0.3482        | 40.9552 | 686  | 1.0028          | 0.65     | 0.6491 |
| 0.196         | 41.9701 | 703  | 0.8747          | 0.6667   | 0.6682 |
| 0.2261        | 42.9851 | 720  | 1.3642          | 0.65     | 0.6468 |
| 0.2802        | 44.0    | 737  | 1.3271          | 0.5833   | 0.5704 |
| 0.1965        | 44.9552 | 753  | 1.3784          | 0.6      | 0.6018 |
| 0.2198        | 45.9701 | 770  | 1.3224          | 0.6667   | 0.6682 |
| 0.1852        | 46.9851 | 787  | 1.5364          | 0.6333   | 0.6243 |
| 0.197         | 48.0    | 804  | 1.5706          | 0.6167   | 0.6174 |
| 0.1932        | 48.9552 | 820  | 1.3610          | 0.6667   | 0.6648 |
| 0.1495        | 49.9701 | 837  | 1.4687          | 0.6167   | 0.6174 |
| 0.1404        | 50.9851 | 854  | 1.3438          | 0.7      | 0.6983 |
| 0.1275        | 52.0    | 871  | 1.4674          | 0.6      | 0.5978 |
| 0.1545        | 52.9552 | 887  | 1.3120          | 0.6167   | 0.6183 |
| 0.147         | 53.9701 | 904  | 1.5816          | 0.6167   | 0.6183 |
| 0.1541        | 54.9851 | 921  | 1.5117          | 0.6667   | 0.6678 |
| 0.1283        | 56.0    | 938  | 1.5965          | 0.6667   | 0.6678 |
| 0.1715        | 56.9552 | 954  | 1.6750          | 0.65     | 0.6491 |
| 0.1513        | 57.9701 | 971  | 1.9170          | 0.5333   | 0.5164 |
| 0.2349        | 58.9851 | 988  | 1.5358          | 0.6333   | 0.6346 |
| 0.1248        | 60.0    | 1005 | 1.6686          | 0.6833   | 0.6840 |
| 0.1076        | 60.9552 | 1021 | 1.7018          | 0.6333   | 0.6346 |
| 0.1431        | 61.9701 | 1038 | 1.9088          | 0.6333   | 0.6333 |
| 0.0838        | 62.9851 | 1055 | 1.8821          | 0.6333   | 0.6346 |
| 0.0989        | 64.0    | 1072 | 1.6053          | 0.65     | 0.6491 |
| 0.1323        | 64.9552 | 1088 | 1.7114          | 0.6333   | 0.6312 |
| 0.0908        | 65.9701 | 1105 | 1.7326          | 0.65     | 0.6491 |
| 0.2056        | 66.9851 | 1122 | 1.7166          | 0.6167   | 0.6130 |
| 0.0752        | 68.0    | 1139 | 1.8009          | 0.65     | 0.6467 |
| 0.1116        | 68.9552 | 1155 | 1.6964          | 0.6667   | 0.6678 |
| 0.0821        | 69.9701 | 1172 | 1.7557          | 0.6167   | 0.6094 |
| 0.1284        | 70.9851 | 1189 | 1.8039          | 0.65     | 0.6491 |
| 0.1905        | 72.0    | 1206 | 1.7951          | 0.6167   | 0.6094 |
| 0.1031        | 72.9552 | 1222 | 1.6888          | 0.6667   | 0.6648 |
| 0.0706        | 73.9701 | 1239 | 1.8992          | 0.65     | 0.6467 |
| 0.0944        | 74.9851 | 1256 | 1.6965          | 0.6833   | 0.6840 |
| 0.1042        | 76.0    | 1273 | 1.6756          | 0.6833   | 0.6825 |
| 0.1599        | 76.9552 | 1289 | 1.4360          | 0.7333   | 0.7342 |
| 0.0896        | 77.9701 | 1306 | 1.5759          | 0.65     | 0.6467 |
| 0.0674        | 78.9851 | 1323 | 1.7071          | 0.7      | 0.7010 |
| 0.1133        | 80.0    | 1340 | 1.6499          | 0.6833   | 0.6840 |
| 0.0506        | 80.9552 | 1356 | 1.6546          | 0.6833   | 0.6825 |
| 0.1015        | 81.9701 | 1373 | 1.6468          | 0.7      | 0.7013 |
| 0.0923        | 82.9851 | 1390 | 1.8567          | 0.6667   | 0.6622 |
| 0.0752        | 84.0    | 1407 | 1.8140          | 0.7      | 0.7010 |
| 0.0768        | 84.9552 | 1423 | 1.8225          | 0.6667   | 0.6678 |
| 0.0683        | 85.9701 | 1440 | 1.8094          | 0.6833   | 0.6840 |
| 0.0454        | 86.9851 | 1457 | 1.8892          | 0.65     | 0.6491 |
| 0.054         | 88.0    | 1474 | 1.8180          | 0.7      | 0.7010 |
| 0.0449        | 88.9552 | 1490 | 1.7891          | 0.7333   | 0.7345 |
| 0.0645        | 89.9701 | 1507 | 1.8262          | 0.7      | 0.7010 |
| 0.0632        | 90.9851 | 1524 | 1.8187          | 0.7167   | 0.7179 |
| 0.0795        | 92.0    | 1541 | 1.7941          | 0.7333   | 0.7345 |
| 0.0923        | 92.9552 | 1557 | 1.8340          | 0.6833   | 0.6840 |
| 0.0486        | 93.9701 | 1574 | 1.8843          | 0.6667   | 0.6667 |
| 0.0821        | 94.9851 | 1591 | 1.8907          | 0.6667   | 0.6667 |
| 0.0384        | 95.5224 | 1600 | 1.8890          | 0.6833   | 0.6840 |


### Framework versions

- Transformers 4.45.2
- Pytorch 2.4.0+cu121
- Datasets 3.1.0
- Tokenizers 0.20.1