Fairseq
Italian
Catalan
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license: apache-2.0

Projecte Aina’s Italian-Catalan machine translation model

Table of Contents

Model description

This model was trained from scratch using the Fairseq toolkit on a combination of Catalan-Italian datasets, which after filtering and cleaning comprised 9.482.927 sentence pairs. The model was evaluated on the Flores and NTREX evaluation datasets.

Intended uses and limitations

You can use this model for machine translation from Italian to Catalan.

How to use

Usage

Required libraries:

pip install ctranslate2 pyonmttok

Translate a sentence using python

import ctranslate2
import pyonmttok
from huggingface_hub import snapshot_download
model_dir = snapshot_download(repo_id="projecte-aina/mt-aina-it-ca", revision="main")
tokenizer=pyonmttok.Tokenizer(mode="none", sp_model_path = model_dir + "/spm.model")
tokenized=tokenizer.tokenize("Benvenuto al progetto Aina!")
translator = ctranslate2.Translator(model_dir)
translated = translator.translate_batch([tokenized[0]])
print(tokenizer.detokenize(translated[0][0]['tokens']))

Training

Training data

The model was trained on a combination of the following datasets:

Dataset Sentences Sentences after Cleaning
CCMatrix v1 11.444.720 7.757.357
MultiCCAligned v1 1.379.251 1.010.921
WikiMatrix 316.208 271.587
GNOME 8.571 1.198
KDE4 163.907 115.027
QED 64.630 52.616
TED2020 v1 50.897 43.280
OpenSubtitles 391.293 225.732
GlobalVoices 6.318 5.209
Total 13.825.795 9.482.927

Training procedure

Data preparation

All datasets are deduplicated and filtered to remove any sentence pairs with a cosine similarity of less than 0.75. This is done using sentence embeddings calculated using LaBSE. The filtered datasets are then concatenated to form a final corpus of 9.482.927 and before training the punctuation is normalized using a modified version of the join-single-file.py script from SoftCatalà

Tokenization

All data is tokenized using sentencepiece, with a 50 thousand token sentencepiece model learned from the combination of all filtered training data. This model is included.

Hyperparameters

The model is based on the Transformer-XLarge proposed by Subramanian et al. The following hyperparameters were set on the Fairseq toolkit:

Hyperparameter Value
Architecture transformer_vaswani_wmt_en_de_big
Embedding size 1024
Feedforward size 4096
Number of heads 16
Encoder layers 24
Decoder layers 6
Normalize before attention True
--share-decoder-input-output-embed True
--share-all-embeddings True
Effective batch size 48.000
Optimizer adam
Adam betas (0.9, 0.980)
Clip norm 0.0
Learning rate 5e-4
Lr. schedurer inverse sqrt
Warmup updates 8000
Dropout 0.1
Label smoothing 0.1

The model was trained for a total of 19.000 updates. Weights were saved every 1000 updates and reported results are the average of the last 4 checkpoints.

Evaluation

Variable and metrics

We use the BLEU score for evaluation on the Flores-101, and NTREX evaluation datasets.

Evaluation results

Below are the evaluation results on the machine translation from Italian to Catalan compared to Softcatalà and Google Translate:

Test set SoftCatalà Google Translate mt-aina-it-ca
Flores 101 dev 25,4 30,4 27,5
Flores 101 devtest 26,6 31,2 27,7
NTREX 29,3 33,5 30,7
Average 27,1 31,7 28,6

Additional information

Author

Language Technologies Unit (LangTech) at the Barcelona Supercomputing Center.

Contact information

For further information, send an email to langtech@bsc.es

Copyright

Copyright Language Technologies Unit at Barcelona Supercomputing Center (2023)

Licensing information

This work is licensed under a Apache License, Version 2.0

Funding

This work was funded by the Departament de la Vicepresidència i de Polítiques Digitals i Territori de la Generalitat de Catalunya within the framework of Projecte AINA.

Disclaimer

Click to expand The models published in this repository are intended for a generalist purpose and are available to third parties. These models may have bias and/or any other undesirable distortions. When third parties, deploy or provide systems and/or services to other parties using any of these models (or using systems based on these models) or become users of the models, they should note that it is their responsibility to mitigate the risks arising from their use and, in any event, to comply with applicable regulations, including regulations regarding the use of Artificial Intelligence. In no event shall the owner and creator of the models (BSC – Barcelona Supercomputing Center) be liable for any results arising from the use made by third parties of these models.