language:
- fr
model-index:
- name: asi/gpt-fr-cased-base
results:
- task:
type: text-generation
name: Wikitext-fr
dataset:
type: wikitext_fr
name: Wikitext-fr
metrics:
- type: perplexity
value: 109.2
name: Perplexity
- task:
type: text-classification
name: FLUE
dataset:
type: flue
name: CLS-Books
split: CLS
metrics:
- type: accuracy
value: 88.3
name: Accuracy
- task:
type: text-classification
name: FLUE
dataset:
type: flue
name: CLS-Dvd
split: CLS
metrics:
- type: accuracy
value: 86.9
name: Accuracy
- task:
type: text-classification
name: FLUE
dataset:
type: flue
name: CLS-Music
split: CLS
metrics:
- type: accuracy
value: 89.3
name: Accuracy
- task:
type: text-classification
name: FLUE
dataset:
type: flue
name: PAWS-X
split: PAWS-X
metrics:
- type: accuracy
value: 83.3
name: Accuracy
- task:
type: text-classification
name: FLUE
dataset:
type: flue
name: XNLI
split: XNLI
metrics:
- type: accuracy
value: 75.6
name: Accuracy
tags:
- tf
- pytorch
- gpt2
- text-generation
license: apache-2.0
thumbnail: https://raw.githubusercontent.com/AntoineSimoulin/gpt-fr/main/imgs/logo.png
Model description
GPT-fr 🇫🇷 is a GPT model for French developped by Quantmetry and the Laboratoire de Linguistique Formelle (LLF). We train the model on a very large and heterogeneous French corpus. We release the weights for the following configurations:
Model name | Number of layers | Attention Heads | Embedding Dimension | Total Parameters |
---|---|---|---|---|
gpt-fr-cased-small |
12 | 12 | 768 | 124 M |
gpt-fr-cased-base |
24 | 14 | 1,792 | 1,017 B |
Intended uses & limitations
The model can be leveraged for language generation tasks. Besides, many tasks may be formatted such that the output is directly generated in natural language. Such configuration may be used for tasks such as automatic summary or question answering. We do hope our model might be used for both academic and industrial applications.
How to use
The model might be used through the astonishing 🤗 Transformers
librairie:
from transformers import GPT2Tokenizer, GPT2LMHeadModel
# Load pretrained model and tokenizer
model = GPT2LMHeadModel.from_pretrained("asi/gpt-fr-cased-small")
tokenizer = GPT2Tokenizer.from_pretrained("asi/gpt-fr-cased-small")
# Generate a sample of text
model.eval()
input_sentence = "Longtemps je me suis couché de bonne heure."
input_ids = tokenizer.encode(input_sentence, return_tensors='pt')
beam_outputs = model.generate(
input_ids,
max_length=100,
do_sample=True,
top_k=50,
top_p=0.95,
num_return_sequences=1
)
print("Output:\n" + 100 * '-')
print(tokenizer.decode(beam_outputs[0], skip_special_tokens=True))
Limitations and bias
Large language models tend to replicate the biases found in pre-training datasets, such as gender discrimination or offensive content generation.
To limit exposition to too much explicit material, we carefully choose the sources beforehand. This process — detailed in our paper — aims to limit offensive content generation from the model without performing manual and arbitrary filtering.
However, some societal biases, contained in the data, might be reflected by the model. For example on gender equality, we generated the following sentence sequence "Ma femme/Mon mari vient d'obtenir un nouveau poste. A partir de demain elle/il sera _______" and observed the model generated distinct positions given the subject gender. We used top-k random sampling strategy with k=50 and stopped at the first punctuation element. The positions generated for the wife is 'femme de ménage de la maison' while the position for the husband is 'à la tête de la police'. We do appreciate your feedback to better qualitatively and quantitatively assess such effects.
Training data
We created a dedicated corpus to train our generative model. Indeed the model uses a fixed-length context size of 1,024 and require long documents to be trained. We aggregated existing corpora: Wikipedia, OpenSubtitle (Tiedemann, 2012), Gutenberg. Corpora are filtered and separated into sentences. Successive sentences are then concatenated within the limit of 1,024 tokens per document.
Training procedure
We pre-trained the model on a TPU v2-8 using the amazing Google Colab inter-server.
Eval results
We packaged GPT-fr with a dedicated language model evaluation benchmark. In line with the WikiText benchmark in English, we collected over 70 million tokens from the set of verified good and featured articles on French Wikipedia. The model reaches a zero-shot perplexity of 109.2 on the test set.
BibTeX entry and citation info
Along with the model hosted by HuggingFace transformers library, we maintain a git repository. If you use GPT-fr for your scientific publications or your industrial applications, please cite the following paper:
@inproceedings{simoulin:hal-03265900,
TITLE = {{Un mod{\`e}le Transformer G{\'e}n{\'e}ratif Pr{\'e}-entrain{\'e} pour le \_\_\_\_\_\_ fran{\c c}ais}},
AUTHOR = {Simoulin, Antoine and Crabb{\'e}, Benoit},
URL = {https://hal.archives-ouvertes.fr/hal-03265900},
BOOKTITLE = {{Traitement Automatique des Langues Naturelles}},
ADDRESS = {Lille, France},
EDITOR = {Denis, Pascal and Grabar, Natalia and Fraisse, Amel and Cardon, R{\'e}mi and Jacquemin, Bernard and Kergosien, Eric and Balvet, Antonio},
PUBLISHER = {{ATALA}},
PAGES = {246-255},
YEAR = {2021},
KEYWORDS = {fran{\c c}ais. ; GPT ; G{\'e}n{\'e}ratif ; Transformer ; Pr{\'e}-entra{\^i}n{\'e}},
PDF = {https://hal.archives-ouvertes.fr/hal-03265900/file/7.pdf},
HAL_ID = {hal-03265900},
HAL_VERSION = {v1},
}
References
Jörg Tiedemann: Parallel Data, Tools and Interfaces in OPUS. LREC 2012: 2214-2218