Authors

  • Oussama Mounajjim
  • Imad Zaoug
  • Mehdi Soufiane

AdabTranslate-Darija

This model is a fine-tuned version of moussaKam/arabart on an unknown dataset. It achieves the following results on the evaluation set:

  • Loss: 1.0892
  • Bleu: 46.4939
  • Gen Len: 9.6377

Model description

The Darija to MSA Translator is a state-of-the-art translation model meticulously trained on a diverse dataset comprising 26,000 text pairs meticulously annotated by human annotators and augmented using GPT-4 techniques. Leveraging the datasets available on Hugging Face and employing advanced training techniques, this model achieves exceptional accuracy and fluency in translating between Darija (Moroccan Arabic) and Modern Standard Arabic (MSA). Powered by the Hugging Face Transformers library, it represents a significant advancement in natural language processing technology, making it a valuable tool for bridging language barriers and promoting linguistic diversity.

Intended uses & limitations

The Darija to MSA Translator is designed to cater to a wide range of users, including language enthusiasts, researchers, and developers working on multilingual projects. Its robust training on a diverse dataset ensures accuracy and effectiveness in various contexts. However, users should be aware of its limitations, particularly in highly specialized or domain-specific translations where additional fine-tuning may be necessary.

Training and evaluation data

The training data for the Darija to MSA Translator consists of 26,000 text pairs generated via human annotation and augmented using GPT-4 techniques. These datasets were sourced from Hugging Face, ensuring a comprehensive and diverse set of examples for training. The evaluation data was carefully selected to validate the model's performance and accuracy in real-world scenarios, ensuring its reliability and effectiveness in practical applications.

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 5e-05
  • train_batch_size: 16
  • eval_batch_size: 16
  • seed: 42
  • optimizer: Adam with betas=(0.9,0.999) and epsilon=1e-08
  • lr_scheduler_type: linear
  • num_epochs: 5.0

Training results

Training Loss Epoch Step Validation Loss Bleu Gen Len
2.7196 0.14 200 1.9204 28.0708 9.7786
2.212 0.27 400 1.7376 31.2914 9.7633
1.9878 0.41 600 1.6152 33.3474 9.4964
1.8387 0.54 800 1.5276 35.4738 9.6621
1.7844 0.68 1000 1.4492 37.1222 9.5365
1.7389 0.81 1200 1.4085 37.6104 9.5614
1.6553 0.95 1400 1.3584 38.8845 9.7191
1.4817 1.08 1600 1.3305 39.4105 9.5849
1.3841 1.22 1800 1.2946 40.0041 9.5134
1.329 1.36 2000 1.2702 40.4855 9.5927
1.2938 1.49 2200 1.2410 41.433 9.6166
1.2812 1.63 2400 1.2333 42.0317 9.7487
1.234 1.76 2600 1.2066 42.0791 9.5668
1.2652 1.9 2800 1.1808 42.9113 9.6416
1.1726 2.03 3000 1.1849 42.8411 9.6397
1.0367 2.17 3200 1.1817 43.2576 9.6385
1.052 2.31 3400 1.1714 43.4972 9.6456
1.0222 2.44 3600 1.1486 43.7071 9.637
0.9921 2.58 3800 1.1437 44.278 9.6048
1.053 2.71 4000 1.1305 44.8293 9.6804
1.0093 2.85 4200 1.1247 44.8092 9.6187
1.0177 2.98 4400 1.1108 45.2717 9.6331
0.8833 3.12 4600 1.1225 45.2862 9.6317
0.8604 3.25 4800 1.1161 45.2156 9.625
0.8712 3.39 5000 1.1139 45.2736 9.5955
0.865 3.53 5200 1.1137 45.7609 9.6828
0.8821 3.66 5400 1.0981 45.742 9.6779
0.8532 3.8 5600 1.0934 45.6965 9.5956
0.8515 3.93 5800 1.0954 46.0175 9.6165
0.7878 4.07 6000 1.0941 45.96 9.6382
0.7652 4.2 6200 1.0988 45.8692 9.6138
0.7841 4.34 6400 1.0991 46.1438 9.6514
0.7432 4.47 6600 1.0961 46.1105 9.6212
0.7918 4.61 6800 1.0910 46.305 9.6477
0.7638 4.75 7000 1.0901 46.4753 9.6439
0.7448 4.88 7200 1.0892 46.4939 9.6377

How to use it ?

Just copy and paste this code after installing the necessary libraries

from transformers import AutoModelForSeq2SeqLM, AutoTokenizer

model_path = 'itsmeussa/AdabTranslate-Darija'

model = AutoModelForSeq2SeqLM.from_pretrained(model_path)

tokenizer = AutoTokenizer.from_pretrained('moussaKam/arabart')

seq = "مرحبا بيكم" tok = tokenizer.encode(seq, return_tensors='pt')

res = model.generate(tok) tokenizer.decode(res[0])

Framework versions

  • Transformers 4.40.0.dev0
  • Pytorch 2.2.1+cu121
  • Datasets 2.18.0
  • Tokenizers 0.15.2
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