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---
tags:
- generated_from_trainer
datasets:
- xsum
metrics:
- rouge
model-index:
- name: t5-small_adafactor
  results:
  - task:
      name: Sequence-to-sequence Language Modeling
      type: text2text-generation
    dataset:
      name: xsum
      type: xsum
      args: default
    metrics:
    - name: Rouge1
      type: rouge
      value: 32.3784
---

<!-- 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. -->

# t5-small_adafactor

This model was trained from scratch on the xsum dataset.
It achieves the following results on the evaluation set:
- Loss: 2.1513
- Rouge1: 32.3784
- Rouge2: 11.2335
- Rougel: 26.1197
- Rougelsum: 26.1212
- Gen Len: 18.8066

## 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: 0.001
- train_batch_size: 24
- eval_batch_size: 24
- seed: 42
- optimizer: Adafactor
- lr_scheduler_type: linear
- num_epochs: 1
- mixed_precision_training: Native AMP

### Training results

| Training Loss | Epoch | Step | Validation Loss | Rouge1  | Rouge2  | Rougel  | Rougelsum | Gen Len |
|:-------------:|:-----:|:----:|:---------------:|:-------:|:-------:|:-------:|:---------:|:-------:|
| 2.4206        | 0.02  | 200  | 2.2951          | 30.6414 | 9.9248  | 24.5953 | 24.6021   | 18.7814 |
| 2.4363        | 0.05  | 400  | 2.3041          | 30.969  | 9.9594  | 24.9531 | 24.9484   | 18.7812 |
| 2.4442        | 0.07  | 600  | 2.3042          | 30.9605 | 9.8821  | 24.9273 | 24.9343   | 18.787  |
| 2.4402        | 0.09  | 800  | 2.2985          | 31.1667 | 9.9976  | 25.034  | 25.0346   | 18.7505 |
| 2.4394        | 0.12  | 1000 | 2.2951          | 30.8935 | 9.8125  | 24.8084 | 24.8066   | 18.878  |
| 2.4148        | 0.14  | 1200 | 2.2965          | 31.4419 | 10.1935 | 25.1234 | 25.1165   | 18.8134 |
| 2.4329        | 0.16  | 1400 | 2.2891          | 30.735  | 9.7912  | 24.6127 | 24.6084   | 18.7797 |
| 2.4308        | 0.19  | 1600 | 2.2950          | 31.0388 | 10.13   | 24.9166 | 24.9086   | 18.8409 |
| 2.4302        | 0.21  | 1800 | 2.2808          | 30.978  | 10.0544 | 24.9191 | 24.9158   | 18.8147 |
| 2.4165        | 0.24  | 2000 | 2.2785          | 31.2423 | 10.2329 | 25.2027 | 25.192    | 18.7531 |
| 2.4227        | 0.26  | 2200 | 2.2705          | 30.8977 | 10.0552 | 24.8875 | 24.8869   | 18.8472 |
| 2.4117        | 0.28  | 2400 | 2.2691          | 30.9478 | 10.1551 | 24.8565 | 24.8527   | 18.8049 |
| 2.4229        | 0.31  | 2600 | 2.2635          | 31.1634 | 10.2055 | 25.0868 | 25.084    | 18.8424 |
| 2.4163        | 0.33  | 2800 | 2.2554          | 31.2877 | 10.4018 | 25.2972 | 25.2924   | 18.8127 |
| 2.4109        | 0.35  | 3000 | 2.2498          | 31.5192 | 10.3888 | 25.3461 | 25.3489   | 18.8066 |
| 2.3883        | 0.38  | 3200 | 2.2473          | 31.4033 | 10.3393 | 25.2324 | 25.2297   | 18.8657 |
| 2.3946        | 0.4   | 3400 | 2.2443          | 31.9869 | 10.7348 | 25.7509 | 25.7521   | 18.7703 |
| 2.3726        | 0.42  | 3600 | 2.2398          | 31.6649 | 10.4532 | 25.4268 | 25.4221   | 18.8244 |
| 2.3949        | 0.45  | 3800 | 2.2335          | 31.7186 | 10.6587 | 25.5281 | 25.5234   | 18.7766 |
| 2.387         | 0.47  | 4000 | 2.2267          | 32.015  | 10.7906 | 25.7612 | 25.7634   | 18.7552 |
| 2.3737        | 0.49  | 4200 | 2.2262          | 31.7823 | 10.7758 | 25.6306 | 25.6343   | 18.7436 |
| 2.37          | 0.52  | 4400 | 2.2238          | 31.5111 | 10.6443 | 25.3768 | 25.3782   | 18.7801 |
| 2.3748        | 0.54  | 4600 | 2.2166          | 31.6585 | 10.5958 | 25.4283 | 25.4321   | 18.7989 |
| 2.3789        | 0.56  | 4800 | 2.2100          | 31.829  | 10.7779 | 25.6561 | 25.648    | 18.7688 |
| 2.3659        | 0.59  | 5000 | 2.2064          | 32.0499 | 10.9069 | 25.8784 | 25.8725   | 18.8464 |
| 2.3656        | 0.61  | 5200 | 2.2032          | 31.8874 | 10.7972 | 25.6996 | 25.6948   | 18.75   |
| 2.3593        | 0.64  | 5400 | 2.1987          | 31.9182 | 10.7176 | 25.672  | 25.6662   | 18.8595 |
| 2.3445        | 0.66  | 5600 | 2.1935          | 31.9871 | 10.803  | 25.7289 | 25.7247   | 18.7972 |
| 2.3439        | 0.68  | 5800 | 2.1870          | 32.1788 | 10.9332 | 25.9597 | 25.9605   | 18.8062 |
| 2.3489        | 0.71  | 6000 | 2.1845          | 32.0946 | 10.9864 | 25.9296 | 25.9342   | 18.8307 |
| 2.3759        | 0.73  | 6200 | 2.1796          | 32.3321 | 11.0971 | 26.084  | 26.0843   | 18.7956 |
| 2.3611        | 0.75  | 6400 | 2.1759          | 32.0703 | 10.8886 | 25.8437 | 25.8369   | 18.7629 |
| 2.3319        | 0.78  | 6600 | 2.1722          | 31.8674 | 10.8993 | 25.6791 | 25.686    | 18.8292 |
| 2.3445        | 0.8   | 6800 | 2.1686          | 32.1679 | 11.0594 | 25.8591 | 25.8604   | 18.817  |
| 2.3523        | 0.82  | 7000 | 2.1667          | 32.2232 | 11.1537 | 25.9326 | 25.9359   | 18.8073 |
| 2.3439        | 0.85  | 7200 | 2.1641          | 32.246  | 11.1854 | 26.015  | 26.0097   | 18.7954 |
| 2.3496        | 0.87  | 7400 | 2.1603          | 32.1141 | 11.0758 | 25.9561 | 25.9623   | 18.7639 |
| 2.3368        | 0.89  | 7600 | 2.1580          | 32.3447 | 11.1661 | 26.0906 | 26.0888   | 18.7936 |
| 2.3634        | 0.92  | 7800 | 2.1553          | 32.3039 | 11.2246 | 26.0819 | 26.0828   | 18.7922 |
| 2.3396        | 0.94  | 8000 | 2.1534          | 32.2979 | 11.262  | 26.0726 | 26.071    | 18.8069 |
| 2.3645        | 0.96  | 8200 | 2.1520          | 32.4169 | 11.292  | 26.1811 | 26.187    | 18.7921 |
| 2.341         | 0.99  | 8400 | 2.1513          | 32.3784 | 11.2335 | 26.1197 | 26.1212   | 18.8066 |


### Framework versions

- Transformers 4.20.1
- Pytorch 1.12.0+cu113
- Datasets 2.3.2
- Tokenizers 0.12.1