mon_latn_5mb
Goldfish is a suite of monolingual language models trained for 350 languages. This model is the Mongolian (Latin script) model trained on 5MB of data, after accounting for an estimated byte premium of 1.18; content-matched text in Mongolian takes on average 1.18x as many UTF-8 bytes to encode as English. The Goldfish models are trained primarily for comparability across languages and for low-resource languages; Goldfish performance for high-resource languages is not designed to be comparable with modern large language models (LLMs).
Note: This language is available in Goldfish with other scripts (writing systems). See: mon_cyrl.
Note: mon_latn is a macrolanguage code. None of its contained individual languages are included in Goldfish (for script latn).
All training and hyperparameter details are in our paper, Goldfish: Monolingual Language Models for 350 Languages (Chang et al., 2024).
Training code and sample usage: https://github.com/tylerachang/goldfish
Sample usage also in this Google Colab: link
Model details:
To access all Goldfish model details programmatically, see https://github.com/tylerachang/goldfish/blob/main/model_details.json. All models are trained with a [CLS] (same as [BOS]) token prepended, and a [SEP] (same as [EOS]) token separating sequences. For best results, make sure that [CLS] is prepended to your input sequence (see sample usage linked above)! Details for this model specifically:
- Architecture: gpt2
- Parameters: 39087104
- Maximum sequence length: 512 tokens
- Training text data (raw): 5.91MB
- Training text data (byte premium scaled): 5.005MB
- Training tokens: 1357312 (x10 epochs)
- Vocabulary size: 50000
- Compute cost: 1026561728839680.0 FLOPs or ~0.1 NVIDIA A6000 GPU hours
Training datasets (percentages prior to deduplication):
- 100.00000%: Glot500, including CCNet, Earthlings, W2C
Citation
If you use this model, please cite:
@article{chang-etal-2024-goldfish,
title={Goldfish: Monolingual Language Models for 350 Languages},
author={Chang, Tyler A. and Arnett, Catherine and Tu, Zhuowen and Bergen, Benjamin K.},
journal={Preprint},
year={2024},
url={https://www.arxiv.org/abs/2408.10441},
}
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