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---
base_model: Helsinki-NLP/opus-mt-en-ar
license: apache-2.0
metrics:
- bleu
tags:
- generated_from_trainer
model-index:
- name: Tounsify-v0.9-shuffle
  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. -->

# Tounsify-v0.9-shuffle

This model is a fine-tuned version of [Helsinki-NLP/opus-mt-en-ar](https://huggingface.co/Helsinki-NLP/opus-mt-en-ar) on the None dataset.
It achieves the following results on the evaluation set:
- Loss: 1.2171
- Bleu: 47.287
- Gen Len: 9.1774

## 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: 2e-05
- train_batch_size: 4
- eval_batch_size: 4
- seed: 42
- optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
- lr_scheduler_type: linear
- num_epochs: 100
- mixed_precision_training: Native AMP

### Training results

| Training Loss | Epoch | Step | Validation Loss | Bleu    | Gen Len |
|:-------------:|:-----:|:----:|:---------------:|:-------:|:-------:|
| No log        | 1.0   | 62   | 2.2319          | 11.5922 | 8.3226  |
| No log        | 2.0   | 124  | 1.4979          | 22.8539 | 8.3871  |
| No log        | 3.0   | 186  | 1.1749          | 31.2278 | 8.5323  |
| No log        | 4.0   | 248  | 1.0500          | 39.4966 | 8.7097  |
| No log        | 5.0   | 310  | 0.9562          | 42.3858 | 8.7742  |
| No log        | 6.0   | 372  | 0.9306          | 43.1436 | 8.6935  |
| No log        | 7.0   | 434  | 0.8928          | 42.3849 | 8.8387  |
| No log        | 8.0   | 496  | 0.9243          | 42.8107 | 8.8548  |
| 0.9876        | 9.0   | 558  | 0.9293          | 44.3329 | 8.8548  |
| 0.9876        | 10.0  | 620  | 0.9398          | 42.859  | 8.871   |
| 0.9876        | 11.0  | 682  | 0.9637          | 44.6861 | 8.8548  |
| 0.9876        | 12.0  | 744  | 0.9514          | 45.1661 | 8.8387  |
| 0.9876        | 13.0  | 806  | 0.9780          | 45.5317 | 8.8226  |
| 0.9876        | 14.0  | 868  | 0.9832          | 48.3237 | 8.8548  |
| 0.9876        | 15.0  | 930  | 0.9618          | 49.9886 | 9.0484  |
| 0.9876        | 16.0  | 992  | 0.9980          | 47.1846 | 8.9516  |
| 0.0522        | 17.0  | 1054 | 0.9758          | 45.6558 | 8.9839  |
| 0.0522        | 18.0  | 1116 | 0.9907          | 45.325  | 9.0     |
| 0.0522        | 19.0  | 1178 | 1.0234          | 48.1955 | 8.9194  |
| 0.0522        | 20.0  | 1240 | 1.0339          | 47.0583 | 8.9839  |
| 0.0522        | 21.0  | 1302 | 1.0129          | 49.2604 | 8.8871  |
| 0.0522        | 22.0  | 1364 | 1.0407          | 49.847  | 8.8871  |
| 0.0522        | 23.0  | 1426 | 1.0656          | 48.4962 | 8.9839  |
| 0.0522        | 24.0  | 1488 | 1.0504          | 48.3458 | 8.9839  |
| 0.0153        | 25.0  | 1550 | 1.0556          | 49.455  | 9.0161  |
| 0.0153        | 26.0  | 1612 | 1.0522          | 48.9644 | 9.0323  |
| 0.0153        | 27.0  | 1674 | 1.0793          | 48.7056 | 8.9839  |
| 0.0153        | 28.0  | 1736 | 1.0859          | 48.8805 | 8.9839  |
| 0.0153        | 29.0  | 1798 | 1.1362          | 48.306  | 9.0806  |
| 0.0153        | 30.0  | 1860 | 1.0573          | 51.8905 | 9.2097  |
| 0.0153        | 31.0  | 1922 | 1.1220          | 48.3591 | 9.0806  |
| 0.0153        | 32.0  | 1984 | 1.0879          | 49.0288 | 9.129   |
| 0.0097        | 33.0  | 2046 | 1.1219          | 50.593  | 9.1129  |
| 0.0097        | 34.0  | 2108 | 1.1439          | 49.1391 | 9.0     |
| 0.0097        | 35.0  | 2170 | 1.1265          | 50.5195 | 9.0323  |
| 0.0097        | 36.0  | 2232 | 1.1031          | 50.2673 | 9.0806  |
| 0.0097        | 37.0  | 2294 | 1.1418          | 51.3256 | 8.9839  |
| 0.0097        | 38.0  | 2356 | 1.1419          | 50.8617 | 9.0968  |
| 0.0097        | 39.0  | 2418 | 1.1166          | 51.2853 | 9.1452  |
| 0.0097        | 40.0  | 2480 | 1.1309          | 50.6103 | 9.0806  |
| 0.0082        | 41.0  | 2542 | 1.1501          | 50.7017 | 9.0     |
| 0.0082        | 42.0  | 2604 | 1.1108          | 51.6167 | 9.0806  |
| 0.0082        | 43.0  | 2666 | 1.1176          | 51.1365 | 9.0968  |
| 0.0082        | 44.0  | 2728 | 1.1544          | 49.703  | 9.0645  |
| 0.0082        | 45.0  | 2790 | 1.1655          | 51.432  | 9.1935  |
| 0.0082        | 46.0  | 2852 | 1.1460          | 50.1011 | 9.1774  |
| 0.0082        | 47.0  | 2914 | 1.1377          | 50.0643 | 9.129   |
| 0.0082        | 48.0  | 2976 | 1.1406          | 50.1912 | 9.1129  |
| 0.0081        | 49.0  | 3038 | 1.1452          | 47.2465 | 9.1774  |
| 0.0081        | 50.0  | 3100 | 1.1532          | 49.9986 | 9.0806  |
| 0.0081        | 51.0  | 3162 | 1.1596          | 47.8461 | 9.0806  |
| 0.0081        | 52.0  | 3224 | 1.1643          | 48.3596 | 9.0968  |
| 0.0081        | 53.0  | 3286 | 1.1577          | 47.1237 | 9.0806  |
| 0.0081        | 54.0  | 3348 | 1.1599          | 48.6692 | 9.0968  |
| 0.0081        | 55.0  | 3410 | 1.1613          | 48.1806 | 9.0806  |
| 0.0081        | 56.0  | 3472 | 1.1668          | 47.5471 | 9.1613  |
| 0.0069        | 57.0  | 3534 | 1.1749          | 50.0805 | 9.0806  |
| 0.0069        | 58.0  | 3596 | 1.1784          | 49.3841 | 9.1774  |
| 0.0069        | 59.0  | 3658 | 1.1666          | 49.4183 | 9.0645  |
| 0.0069        | 60.0  | 3720 | 1.1768          | 47.8488 | 9.1774  |
| 0.0069        | 61.0  | 3782 | 1.1908          | 48.7428 | 9.0968  |
| 0.0069        | 62.0  | 3844 | 1.1882          | 49.2957 | 8.9677  |
| 0.0069        | 63.0  | 3906 | 1.1869          | 49.5255 | 9.0323  |
| 0.0069        | 64.0  | 3968 | 1.1866          | 48.8917 | 9.0161  |
| 0.0068        | 65.0  | 4030 | 1.1858          | 48.5308 | 9.0968  |
| 0.0068        | 66.0  | 4092 | 1.1951          | 49.2041 | 9.0806  |
| 0.0068        | 67.0  | 4154 | 1.1828          | 49.1255 | 9.0806  |
| 0.0068        | 68.0  | 4216 | 1.1923          | 48.0252 | 9.0484  |
| 0.0068        | 69.0  | 4278 | 1.1947          | 48.0764 | 9.1129  |
| 0.0068        | 70.0  | 4340 | 1.1927          | 48.2729 | 9.0484  |
| 0.0068        | 71.0  | 4402 | 1.1907          | 47.9908 | 9.129   |
| 0.0068        | 72.0  | 4464 | 1.1920          | 48.8939 | 9.0968  |
| 0.0062        | 73.0  | 4526 | 1.1939          | 49.0374 | 9.0968  |
| 0.0062        | 74.0  | 4588 | 1.1952          | 49.0374 | 9.0968  |
| 0.0062        | 75.0  | 4650 | 1.1954          | 49.2333 | 9.0323  |
| 0.0062        | 76.0  | 4712 | 1.1951          | 48.3221 | 9.1129  |
| 0.0062        | 77.0  | 4774 | 1.1971          | 48.3221 | 9.1129  |
| 0.0062        | 78.0  | 4836 | 1.1978          | 49.5615 | 9.1129  |
| 0.0062        | 79.0  | 4898 | 1.1994          | 48.947  | 9.0484  |
| 0.0062        | 80.0  | 4960 | 1.2009          | 48.0436 | 9.0806  |
| 0.0045        | 81.0  | 5022 | 1.2021          | 47.9908 | 9.129   |
| 0.0045        | 82.0  | 5084 | 1.2048          | 47.9908 | 9.129   |
| 0.0045        | 83.0  | 5146 | 1.2045          | 49.5615 | 9.0968  |
| 0.0045        | 84.0  | 5208 | 1.2065          | 49.4183 | 9.0968  |
| 0.0045        | 85.0  | 5270 | 1.2081          | 48.9864 | 9.0968  |
| 0.0045        | 86.0  | 5332 | 1.2131          | 46.327  | 9.0968  |
| 0.0045        | 87.0  | 5394 | 1.2144          | 47.2291 | 9.1452  |
| 0.0045        | 88.0  | 5456 | 1.2135          | 47.2291 | 9.1452  |
| 0.0047        | 89.0  | 5518 | 1.2163          | 46.8533 | 9.1452  |
| 0.0047        | 90.0  | 5580 | 1.2207          | 47.3713 | 9.1452  |
| 0.0047        | 91.0  | 5642 | 1.2188          | 47.3713 | 9.1452  |
| 0.0047        | 92.0  | 5704 | 1.2193          | 47.3713 | 9.1452  |
| 0.0047        | 93.0  | 5766 | 1.2188          | 48.9917 | 9.1452  |
| 0.0047        | 94.0  | 5828 | 1.2175          | 47.2291 | 9.1452  |
| 0.0047        | 95.0  | 5890 | 1.2177          | 48.9917 | 9.1452  |
| 0.0047        | 96.0  | 5952 | 1.2177          | 47.3713 | 9.1452  |
| 0.0043        | 97.0  | 6014 | 1.2165          | 47.3713 | 9.1452  |
| 0.0043        | 98.0  | 6076 | 1.2167          | 47.287  | 9.1774  |
| 0.0043        | 99.0  | 6138 | 1.2169          | 47.287  | 9.1774  |
| 0.0043        | 100.0 | 6200 | 1.2171          | 47.287  | 9.1774  |


### Framework versions

- Transformers 4.41.2
- Pytorch 2.3.0+cu121
- Datasets 2.20.0
- Tokenizers 0.19.1