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---

license: apache-2.0
base_model: google/vit-base-patch16-224
tags:
- generated_from_trainer
datasets:
- imagefolder
metrics:
- accuracy
model-index:
- name: vit-base-patch16-224-ve-U13b-80RX1
  results:
  - task:
      name: Image Classification
      type: image-classification
    dataset:
      name: imagefolder
      type: imagefolder
      config: default
      split: validation
      args: default
    metrics:
    - name: Accuracy
      type: accuracy
      value: 0.10869565217391304
---


<!-- 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-base-patch16-224-ve-U13b-80RX1

This model is a fine-tuned version of [google/vit-base-patch16-224](https://huggingface.co/google/vit-base-patch16-224) on the imagefolder dataset.
It achieves the following results on the evaluation set:
- Loss: 25872499347325405328572416.0000
- Accuracy: 0.1087

## 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: 5.5e-05

- train_batch_size: 8

- eval_batch_size: 8

- seed: 42

- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08

- lr_scheduler_type: linear

- lr_scheduler_warmup_ratio: 0.05
- num_epochs: 40



### Training results



| Training Loss                   | Epoch | Step | Validation Loss                 | Accuracy |

|:-------------------------------:|:-----:|:----:|:-------------------------------:|:--------:|

| 21407918734188223332876288.0000 | 1.0   | 103  | 25872499347325405328572416.0000 | 0.1087   |

| 19230841377306649816989696.0000 | 2.0   | 206  | 25872499347325405328572416.0000 | 0.1087   |

| 22859301179210058793222144.0000 | 3.0   | 309  | 25872499347325405328572416.0000 | 0.1087   |

| 23584992401720978670878720.0000 | 4.0   | 412  | 25872499347325405328572416.0000 | 0.1087   |

| 24310687313580712431452160.0000 | 5.0   | 515  | 25872499347325405328572416.0000 | 0.1087   |

| 24310687313580712431452160.0000 | 6.0   | 618  | 25872499347325405328572416.0000 | 0.1087   |

| 22496457412629005795852288.0000 | 7.0   | 721  | 25872499347325405328572416.0000 | 0.1087   |

| 21045071278258356452589568.0000 | 8.0   | 824  | 25872499347325405328572416.0000 | 0.1087   |

| 21045071278258356452589568.0000 | 9.0   | 927  | 25872499347325405328572416.0000 | 0.1087   |

| 23343098402008016231596032.0000 | 10.0  | 1030 | 25872499347325405328572416.0000 | 0.1087   |

| 23222148635139925673508864.0000 | 11.0  | 1133 | 25872499347325405328572416.0000 | 0.1087   |

| 23222150479814334762450944.0000 | 12.0  | 1236 | 25872499347325405328572416.0000 | 0.1087   |

| 21407918734188223332876288.0000 | 13.0  | 1339 | 25872499347325405328572416.0000 | 0.1087   |

| 21407916889513814243934208.0000 | 14.0  | 1442 | 25872499347325405328572416.0000 | 0.1087   |

| 21770764345443681124220928.0000 | 15.0  | 1545 | 25872499347325405328572416.0000 | 0.1087   |

| 22496455567954601001877504.0000 | 16.0  | 1648 | 25872499347325405328572416.0000 | 0.1087   |

| 22859303023884467882164224.0000 | 17.0  | 1751 | 25872499347325405328572416.0000 | 0.1087   |

| 19593686988562107608334336.0000 | 18.0  | 1854 | 25872499347325405328572416.0000 | 0.1087   |

| 22859304868558872676139008.0000 | 19.0  | 1957 | 25872499347325405328572416.0000 | 0.1087   |

| 21528866656381904802021376.0000 | 20.0  | 2060 | 25872499347325405328572416.0000 | 0.1087   |

| 17053764020425078448586752.0000 | 21.0  | 2163 | 25872499347325405328572416.0000 | 0.1087   |

| 22133609956699138915565568.0000 | 22.0  | 2266 | 25872499347325405328572416.0000 | 0.1087   |

| 21045074967607170335506432.0000 | 23.0  | 2369 | 25872499347325405328572416.0000 | 0.1087   |

| 21407915044839405154992128.0000 | 24.0  | 2472 | 25872499347325405328572416.0000 | 0.1087   |

| 21770762500769272035278848.0000 | 25.0  | 2575 | 25872499347325405328572416.0000 | 0.1087   |

| 23947841702325254640107520.0000 | 26.0  | 2678 | 25872499347325405328572416.0000 | 0.1087   |

| 21045071278258356452589568.0000 | 27.0  | 2781 | 25872499347325405328572416.0000 | 0.1087   |

| 21770762500769272035278848.0000 | 28.0  | 2884 | 25872499347325405328572416.0000 | 0.1087   |

| 21407918734188223332876288.0000 | 29.0  | 2987 | 25872499347325405328572416.0000 | 0.1087   |

| 21528866656381904802021376.0000 | 30.0  | 3090 | 25872499347325405328572416.0000 | 0.1087   |

| 21045073122932761246564352.0000 | 31.0  | 3193 | 25872499347325405328572416.0000 | 0.1087   |

| 23584994246395387759820800.0000 | 32.0  | 3296 | 25872499347325405328572416.0000 | 0.1087   |

| 21045069433583947363647488.0000 | 33.0  | 3399 | 25872499347325405328572416.0000 | 0.1087   |

| 22859304868558872676139008.0000 | 34.0  | 3502 | 25872499347325405328572416.0000 | 0.1087   |

| 21407920578862628126851072.0000 | 35.0  | 3605 | 25872499347325405328572416.0000 | 0.1087   |

| 21045074967607170335506432.0000 | 36.0  | 3708 | 25872499347325405328572416.0000 | 0.1087   |

| 21770764345443681124220928.0000 | 37.0  | 3811 | 25872499347325405328572416.0000 | 0.1087   |

| 22496457412629005795852288.0000 | 38.0  | 3914 | 25872499347325405328572416.0000 | 0.1087   |

| 21407918734188223332876288.0000 | 39.0  | 4017 | 25872499347325405328572416.0000 | 0.1087   |

| 23222148635139925673508864.0000 | 40.0  | 4120 | 25872499347325405328572416.0000 | 0.1087   |





### Framework versions



- Transformers 4.36.2

- Pytorch 2.1.2+cu118

- Datasets 2.16.1

- Tokenizers 0.15.0