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---
tags:
- generated_from_trainer
model-index:
- name: pixel-tiny-bigrams
  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. -->

# pixel-tiny-bigrams

This model is a fine-tuned version of [](https://huggingface.co/) on the None dataset.
It achieves the following results on the evaluation set:
- Loss: 0.3380

## 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: 0.0006
- train_batch_size: 128
- eval_batch_size: 8
- seed: 42
- distributed_type: multi-GPU
- num_devices: 8
- total_train_batch_size: 1024
- total_eval_batch_size: 64
- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
- lr_scheduler_type: cosine
- lr_scheduler_warmup_ratio: 0.05
- training_steps: 250000

### Training results

| Training Loss | Epoch | Step   | Validation Loss |
|:-------------:|:-----:|:------:|:---------------:|
| 0.689         | 0.04  | 1000   | 0.6793          |
| 0.6802        | 0.09  | 2000   | 0.6787          |
| 0.6795        | 0.13  | 3000   | 0.6788          |
| 0.679         | 0.18  | 4000   | 0.6782          |
| 0.6787        | 0.22  | 5000   | 0.6782          |
| 0.6786        | 0.27  | 6000   | 0.6781          |
| 0.6784        | 0.31  | 7000   | 0.6781          |
| 0.6783        | 0.36  | 8000   | 0.6781          |
| 0.6781        | 0.4   | 9000   | 0.6773          |
| 0.6775        | 0.45  | 10000  | 0.6778          |
| 0.6775        | 0.49  | 11000  | 0.6769          |
| 0.6773        | 0.54  | 12000  | 0.6773          |
| 0.6774        | 0.58  | 13000  | 0.6771          |
| 0.6773        | 0.62  | 14000  | 0.6772          |
| 0.6773        | 0.67  | 15000  | 0.6772          |
| 0.6772        | 0.71  | 16000  | 0.6776          |
| 0.6773        | 0.76  | 17000  | 0.6770          |
| 0.6772        | 0.8   | 18000  | 0.6775          |
| 0.6772        | 0.85  | 19000  | 0.6770          |
| 0.6774        | 0.89  | 20000  | 0.6770          |
| 0.6772        | 0.94  | 21000  | 0.6762          |
| 0.6773        | 0.98  | 22000  | 0.6775          |
| 0.6773        | 1.03  | 23000  | 0.6764          |
| 0.6772        | 1.07  | 24000  | 0.6768          |
| 0.6772        | 1.12  | 25000  | 0.6769          |
| 0.6772        | 1.16  | 26000  | 0.6775          |
| 0.6772        | 1.2   | 27000  | 0.6776          |
| 0.6772        | 1.25  | 28000  | 0.6772          |
| 0.6772        | 1.29  | 29000  | 0.6769          |
| 0.6773        | 1.34  | 30000  | 0.6772          |
| 0.6772        | 1.38  | 31000  | 0.6777          |
| 0.6772        | 1.43  | 32000  | 0.6769          |
| 0.6773        | 1.47  | 33000  | 0.6767          |
| 0.677         | 1.52  | 34000  | 0.6766          |
| 0.6765        | 1.56  | 35000  | 0.6766          |
| 0.6763        | 1.61  | 36000  | 0.6766          |
| 0.6764        | 1.65  | 37000  | 0.6758          |
| 0.6764        | 1.7   | 38000  | 0.6762          |
| 0.6758        | 1.74  | 39000  | 0.6771          |
| 0.6772        | 1.78  | 40000  | 0.6770          |
| 0.6575        | 1.83  | 41000  | 0.6465          |
| 0.6373        | 1.87  | 42000  | 0.6318          |
| 0.6257        | 1.92  | 43000  | 0.6184          |
| 0.621         | 1.96  | 44000  | 0.6136          |
| 0.6183        | 2.01  | 45000  | 0.6127          |
| 0.6165        | 2.05  | 46000  | 0.6103          |
| 0.612         | 2.1   | 47000  | 0.6013          |
| 0.6037        | 2.14  | 48000  | 0.5943          |
| 0.6           | 2.19  | 49000  | 0.5915          |
| 0.5973        | 2.23  | 50000  | 0.5881          |
| 0.5924        | 2.28  | 51000  | 0.5799          |
| 0.5817        | 2.32  | 52000  | 0.5670          |
| 0.5719        | 2.36  | 53000  | 0.5557          |
| 0.5651        | 2.41  | 54000  | 0.5477          |
| 0.5592        | 2.45  | 55000  | 0.5408          |
| 0.5534        | 2.5   | 56000  | 0.5362          |
| 0.5446        | 2.54  | 57000  | 0.5251          |
| 0.5342        | 2.59  | 58000  | 0.5130          |
| 0.5239        | 2.63  | 59000  | 0.5024          |
| 0.5147        | 2.68  | 60000  | 0.4947          |
| 0.5061        | 2.72  | 61000  | 0.4848          |
| 0.4981        | 2.77  | 62000  | 0.4746          |
| 0.4912        | 2.81  | 63000  | 0.4681          |
| 0.4847        | 2.86  | 64000  | 0.4599          |
| 0.4792        | 2.9   | 65000  | 0.4537          |
| 0.474         | 2.94  | 66000  | 0.4491          |
| 0.4688        | 2.99  | 67000  | 0.4437          |
| 0.464         | 3.03  | 68000  | 0.4392          |
| 0.4592        | 3.08  | 69000  | 0.4324          |
| 0.4547        | 3.12  | 70000  | 0.4284          |
| 0.4507        | 3.17  | 71000  | 0.4260          |
| 0.4468        | 3.21  | 72000  | 0.4192          |
| 0.4432        | 3.26  | 73000  | 0.4161          |
| 0.44          | 3.3   | 74000  | 0.4153          |
| 0.4367        | 3.35  | 75000  | 0.4102          |
| 0.4337        | 3.39  | 76000  | 0.4062          |
| 0.4311        | 3.44  | 77000  | 0.4019          |
| 0.4286        | 3.48  | 78000  | 0.4007          |
| 0.4259        | 3.52  | 79000  | 0.3997          |
| 0.4239        | 3.57  | 80000  | 0.3968          |
| 0.4218        | 3.61  | 81000  | 0.3949          |
| 0.4201        | 3.66  | 82000  | 0.3935          |
| 0.4182        | 3.7   | 83000  | 0.3926          |
| 0.4168        | 3.75  | 84000  | 0.3879          |
| 0.4155        | 3.79  | 85000  | 0.3885          |
| 0.4136        | 3.84  | 86000  | 0.3844          |
| 0.4124        | 3.88  | 87000  | 0.3855          |
| 0.4116        | 3.93  | 88000  | 0.3830          |
| 0.4098        | 3.97  | 89000  | 0.3837          |
| 0.4087        | 4.01  | 90000  | 0.3802          |
| 0.4078        | 4.06  | 91000  | 0.3799          |
| 0.4068        | 4.1   | 92000  | 0.3794          |
| 0.4057        | 4.15  | 93000  | 0.3784          |
| 0.4047        | 4.19  | 94000  | 0.3788          |
| 0.4047        | 4.24  | 95000  | 0.3770          |
| 0.4029        | 4.28  | 96000  | 0.3750          |
| 0.4022        | 4.33  | 97000  | 0.3747          |
| 0.4015        | 4.37  | 98000  | 0.3736          |
| 0.4007        | 4.42  | 99000  | 0.3752          |
| 0.4           | 4.46  | 100000 | 0.3743          |
| 0.3995        | 4.51  | 101000 | 0.3741          |
| 0.3985        | 4.55  | 102000 | 0.3702          |
| 0.3981        | 4.59  | 103000 | 0.3800          |
| 0.3986        | 4.64  | 104000 | 0.3734          |
| 0.3966        | 4.68  | 105000 | 0.3705          |
| 0.3957        | 4.73  | 106000 | 0.3680          |
| 0.3957        | 4.77  | 107000 | 0.3663          |
| 0.3948        | 4.82  | 108000 | 0.3683          |
| 0.3943        | 4.86  | 109000 | 0.3697          |
| 0.3936        | 4.91  | 110000 | 0.3672          |
| 0.3932        | 4.95  | 111000 | 0.3649          |
| 0.3925        | 5.0   | 112000 | 0.3651          |
| 0.3919        | 5.04  | 113000 | 0.3650          |
| 0.3915        | 5.09  | 114000 | 0.3636          |
| 0.3911        | 5.13  | 115000 | 0.3655          |
| 0.3905        | 5.17  | 116000 | 0.3650          |
| 0.3905        | 5.22  | 117000 | 0.4054          |
| 0.3894        | 5.26  | 118000 | 0.3609          |
| 0.3889        | 5.31  | 119000 | 0.3599          |
| 0.3888        | 5.35  | 120000 | 0.3593          |
| 0.3887        | 5.4   | 121000 | 0.3601          |
| 0.3883        | 5.44  | 122000 | 0.3611          |
| 0.6776        | 5.49  | 123000 | 0.6769          |
| 0.3917        | 5.53  | 124000 | 0.3626          |
| 0.3897        | 5.58  | 125000 | 0.3617          |
| 0.3869        | 5.62  | 126000 | 0.3578          |
| 0.3864        | 5.67  | 127000 | 0.3578          |
| 0.3862        | 5.71  | 128000 | 0.3573          |
| 0.3855        | 5.75  | 129000 | 0.3578          |
| 0.3854        | 5.8   | 130000 | 0.3571          |
| 0.3849        | 5.84  | 131000 | 0.3566          |
| 0.3845        | 5.89  | 132000 | 0.3569          |
| 0.384         | 5.93  | 133000 | 0.3567          |
| 0.3921        | 5.98  | 134000 | 0.3628          |
| 0.3844        | 6.02  | 135000 | 0.3565          |
| 0.383         | 6.07  | 136000 | 0.3547          |
| 0.3828        | 6.11  | 137000 | 0.3586          |
| 0.3824        | 6.16  | 138000 | 0.3553          |
| 0.3825        | 6.2   | 139000 | 0.3549          |
| 0.3818        | 6.25  | 140000 | 0.3537          |
| 0.3815        | 6.29  | 141000 | 0.3550          |
| 0.3812        | 6.33  | 142000 | 0.3539          |
| 0.3806        | 6.38  | 143000 | 0.3535          |
| 0.3804        | 6.42  | 144000 | 0.3533          |
| 0.3799        | 6.47  | 145000 | 0.3539          |
| 0.3799        | 6.51  | 146000 | 0.3528          |
| 0.3794        | 6.56  | 147000 | 0.3519          |
| 0.3792        | 6.6   | 148000 | 0.3501          |
| 0.3791        | 6.65  | 149000 | 0.3513          |
| 0.3784        | 6.69  | 150000 | 0.3511          |
| 0.3833        | 6.74  | 151000 | 0.3518          |
| 0.3805        | 6.78  | 152000 | 0.3513          |
| 0.3785        | 6.83  | 153000 | 0.3522          |
| 0.3772        | 6.87  | 154000 | 0.3493          |
| 0.3772        | 6.91  | 155000 | 0.3503          |
| 0.3771        | 6.96  | 156000 | 0.3513          |
| 0.3769        | 7.0   | 157000 | 0.3505          |
| 0.3766        | 7.05  | 158000 | 0.3499          |
| 0.3762        | 7.09  | 159000 | 0.3490          |
| 0.376         | 7.14  | 160000 | 0.3465          |
| 0.3756        | 7.18  | 161000 | 0.3490          |
| 0.3753        | 7.23  | 162000 | 0.3483          |
| 0.3749        | 7.27  | 163000 | 0.3481          |
| 0.3747        | 7.32  | 164000 | 0.3470          |
| 0.375         | 7.36  | 165000 | 0.3476          |
| 0.3742        | 7.41  | 166000 | 0.3471          |
| 0.3741        | 7.45  | 167000 | 0.3462          |
| 0.3738        | 7.49  | 168000 | 0.3470          |
| 0.3735        | 7.54  | 169000 | 0.3462          |
| 0.3736        | 7.58  | 170000 | 0.3467          |
| 0.3731        | 7.63  | 171000 | 0.3457          |
| 0.3726        | 7.67  | 172000 | 0.3478          |
| 0.3725        | 7.72  | 173000 | 0.3447          |
| 0.3722        | 7.76  | 174000 | 0.3459          |
| 0.3723        | 7.81  | 175000 | 0.3462          |
| 0.3718        | 7.85  | 176000 | 0.3464          |
| 0.3716        | 7.9   | 177000 | 0.3453          |
| 0.3712        | 7.94  | 178000 | 0.3466          |
| 0.3712        | 7.99  | 179000 | 0.3456          |
| 0.3709        | 8.03  | 180000 | 0.3452          |
| 0.3709        | 8.07  | 181000 | 0.3427          |
| 0.3707        | 8.12  | 182000 | 0.3445          |
| 0.3703        | 8.16  | 183000 | 0.3452          |
| 0.3701        | 8.21  | 184000 | 0.3420          |
| 0.3699        | 8.25  | 185000 | 0.3429          |
| 0.3697        | 8.3   | 186000 | 0.3432          |
| 0.3696        | 8.34  | 187000 | 0.3425          |
| 0.3696        | 8.39  | 188000 | 0.3437          |
| 0.3694        | 8.43  | 189000 | 0.3425          |
| 0.369         | 8.48  | 190000 | 0.3429          |
| 0.369         | 8.52  | 191000 | 0.3415          |
| 0.3685        | 8.57  | 192000 | 0.3431          |
| 0.3684        | 8.61  | 193000 | 0.3415          |
| 0.3683        | 8.65  | 194000 | 0.3421          |
| 0.368         | 8.7   | 195000 | 0.3422          |
| 0.3719        | 8.74  | 196000 | 0.3433          |
| 0.3678        | 8.79  | 197000 | 0.3400          |
| 0.3675        | 8.83  | 198000 | 0.3420          |
| 0.3676        | 8.88  | 199000 | 0.3426          |
| 0.3674        | 8.92  | 200000 | 0.3396          |
| 0.3673        | 8.97  | 201000 | 0.3404          |
| 0.3671        | 9.01  | 202000 | 0.3397          |
| 0.3669        | 9.06  | 203000 | 0.3417          |
| 0.3669        | 9.1   | 204000 | 0.3413          |
| 0.3666        | 9.15  | 205000 | 0.3386          |
| 0.3666        | 9.19  | 206000 | 0.3414          |
| 0.3664        | 9.23  | 207000 | 0.3407          |
| 0.3662        | 9.28  | 208000 | 0.3401          |
| 0.3661        | 9.32  | 209000 | 0.3412          |
| 0.366         | 9.37  | 210000 | 0.3374          |
| 0.3659        | 9.41  | 211000 | 0.3400          |
| 0.3658        | 9.46  | 212000 | 0.3406          |
| 0.3658        | 9.5   | 213000 | 0.3383          |
| 0.3656        | 9.55  | 214000 | 0.3399          |
| 0.3655        | 9.59  | 215000 | 0.3385          |
| 0.3653        | 9.64  | 216000 | 0.3406          |
| 0.3652        | 9.68  | 217000 | 0.3388          |
| 0.3674        | 9.73  | 218000 | 0.3381          |
| 0.365         | 9.77  | 219000 | 0.3387          |
| 0.3648        | 9.81  | 220000 | 0.3374          |
| 0.3649        | 9.86  | 221000 | 0.3378          |
| 0.3649        | 9.9   | 222000 | 0.3379          |
| 0.3646        | 9.95  | 223000 | 0.3382          |
| 0.3647        | 9.99  | 224000 | 0.3377          |
| 0.3644        | 10.04 | 225000 | 0.3351          |
| 0.3644        | 10.08 | 226000 | 0.3374          |
| 0.3644        | 10.13 | 227000 | 0.3379          |
| 0.3651        | 10.17 | 228000 | 0.3365          |
| 0.3643        | 10.22 | 229000 | 0.3360          |
| 0.3642        | 10.26 | 230000 | 0.3371          |
| 0.364         | 10.31 | 231000 | 0.3380          |
| 0.364         | 10.35 | 232000 | 0.3375          |
| 0.364         | 10.39 | 233000 | 0.3386          |
| 0.3639        | 10.44 | 234000 | 0.3373          |
| 0.364         | 10.48 | 235000 | 0.3377          |
| 0.3636        | 10.53 | 236000 | 0.3384          |
| 0.3636        | 10.57 | 237000 | 0.3367          |
| 0.3638        | 10.62 | 238000 | 0.3374          |
| 0.3637        | 10.66 | 239000 | 0.3368          |
| 0.3635        | 10.71 | 240000 | 0.3352          |
| 0.3635        | 10.75 | 241000 | 0.3393          |
| 0.3634        | 10.8  | 242000 | 0.3344          |
| 0.3635        | 10.84 | 243000 | 0.3383          |
| 0.3633        | 10.89 | 244000 | 0.3362          |
| 0.3635        | 10.93 | 245000 | 0.3353          |
| 0.3634        | 10.97 | 246000 | 0.3357          |
| 0.3632        | 11.02 | 247000 | 0.3375          |
| 0.3633        | 11.06 | 248000 | 0.3395          |
| 0.3635        | 11.11 | 249000 | 0.3382          |
| 0.3634        | 11.15 | 250000 | 0.3380          |


### Framework versions

- Transformers 4.17.0
- Pytorch 1.11.0
- Datasets 2.1.1.dev0
- Tokenizers 0.12.1