language: ar
datasets:
- wikipedia
- OSIAN
- 1.5B Arabic Corpus
- OSCAR Arabic Unshuffled
inference: false
widget:
- text: >-
يحكى أن مزارعا مخادعا قام ببيع بئر الماء الموجود في أرضه لجاره مقابل مبلغ
كبير من المال
- text: القدس مدينة تاريخية، بناها الكنعانيون في
- text: كان يا ما كان في قديم الزمان
Arabic GPT2
You can find more information in our paper AraGPT2
The code in this repository was used to train all GPT2 variants. The code support training and fine-tuning GPT2 on GPUs and TPUs via the TPUEstimator API.
GPT2-base and medium uses the code from the gpt2
folder and can trains models from the minimaxir/gpt-2-simple repository.
These models were trained using the lamb
optimizer and follow the same architecture as gpt2
and are fully compatible with the transformers
library.
GPT2-large and GPT2-mega were trained using the imcaspar/gpt2-ml library, and follow the grover
architecture. You can use the pytorch classes found in grover/modeling_gpt2.py
as a direct replacement for classes in the transformers
library (it should support version v4.x
from transformers
).
Both models are trained using the adafactor
optimizer, since the adam
and lamb
optimizer use too much memory causing the model to not even fit 1 batch on a TPU core.
AraGPT2 is trained on the same large Arabic Dataset as AraBERTv2.
Usage
Testing the model using transformers
:
from transformers import GPT2TokenizerFast, pipeline
#for base and medium
from transformers import GPT2LMHeadModel
#for large and mega
from arabert.aragpt2.grover.modeling_gpt2 import GPT2LMHeadModel
from arabert.preprocess import ArabertPreprocessor
MODEL_NAME='aragpt2-large'
arabert_prep = ArabertPreprocessor(model_name=MODEL_NAME)
text=""
text_clean = arabert_prep.preprocess(text)
model = GPT2LMHeadModel.from_pretrained(MODEL_NAME)
tokenizer = GPT2TokenizerFast.from_pretrained(MODEL_NAME)
generation_pipeline = pipeline("text-generation",model=model,tokenizer=tokenizer)
#feel free to try different decodinn settings
generation_pipeline(text,
pad_token_id=tokenizer.eos_token_id,
num_beams=10,
max_length=200,
top_p=0.9,
repetition_penalty = 3.0,
no_repeat_ngram_size = 3)[0]['generated_text']
>>>
Finetunning using transformers
:
Follow the guide linked here
Finetuning using our code with TF 1.15.4:
Create the Training TFRecords:
python create_pretraining_data.py
--input_file=<RAW TEXT FILE with documents/article sperated by an empty line>
--output_file=<OUTPUT TFRecord>
--tokenizer_dir=<Directory with the GPT2 Tokenizer files>
Finetuning:
python3 run_pretraining.py \\
--input_file="gs://<GS_BUCKET>/pretraining_data/*" \\
--output_dir="gs://<GS_BUCKET>/pretraining_model/" \\
--config_file="config/small_hparams.json" \\
--batch_size=128 \\
--eval_batch_size=8 \\
--num_train_steps= \\
--num_warmup_steps= \\
--learning_rate= \\
--save_checkpoints_steps= \\
--max_seq_length=1024 \\
--max_eval_steps= \\
--optimizer="lamb" \\
--iterations_per_loop=5000 \\
--keep_checkpoint_max=10 \\
--use_tpu=True \\
--tpu_name=<TPU NAME> \\
--do_train=True \\
--do_eval=False
Model Sizes
Model | Optimizer | Context size | Embedding Size | Num of heads | Num of layers | Model Size / Num of Params |
---|---|---|---|---|---|---|
AraGPT2-base | lamb |
1024 | 768 | 12 | 12 | 527MB/135M |
AraGPT2-medium | lamb |
1024 | 1024 | 16 | 24 | 1.38G/370M |
AraGPT2-large | adafactor |
1024 | 1280 | 20 | 36 | 2.98GB/792M |
AraGPT2-mega | adafactor |
1024 | 1536 | 25 | 48 | 5.5GB/1.46B |
All models are available in the HuggingFace
model page under the aubmindlab name. Checkpoints are available in PyTorch, TF2 and TF1 formats.
Compute
For Dataset Source see the Dataset Section
Model | Hardware | num of examples (seq len = 1024) | Batch Size | Num of Steps | Time (in days) |
---|---|---|---|---|---|
AraGPT2-base | TPUv3-128 | 9.7M | 1792 | 125K | 1.5 |
AraGPT2-medium | TPUv3-8 | 9.7M | 1152 | 85K | 1.5 |
AraGPT2-large | TPUv3-128 | 9.7M | 256 | 220k | 3 |
AraGPT2-mega | TPUv3-128 | 9.7M | 256 | 780K | 9 |
Dataset
The pretraining data used for the new AraBERT model is also used for GPT2 and ELECTRA.
The dataset consists of 77GB or 200,095,961 lines or 8,655,948,860 words or 82,232,988,358 chars (before applying Farasa Segmentation)
For the new dataset we added the unshuffled OSCAR corpus, after we thoroughly filter it, to the previous dataset used in AraBERTv1 but with out the websites that we previously crawled:
- OSCAR unshuffled and filtered.
- Arabic Wikipedia dump from 2020/09/01
- The 1.5B words Arabic Corpus
- The OSIAN Corpus
- Assafir news articles. Huge thank you for Assafir for giving us the data
Disclaimer
The text generated by GPT2 Arabic is automatically generated by a neural network model trained on a large amount of texts, which does not represent the authors' or their institutes' official attitudes and preferences. The text generated by GPT2 Arabic should only be used for research and scientific purposes. If it infringes on your rights and interests or violates social morality, please do not propagate it.
If you used this model please cite us as :
@inproceedings{antoun-etal-2021-aragpt2,
title = "{A}ra{GPT}2: Pre-Trained Transformer for {A}rabic Language Generation",
author = "Antoun, Wissam and
Baly, Fady and
Hajj, Hazem",
booktitle = "Proceedings of the Sixth Arabic Natural Language Processing Workshop",
month = apr,
year = "2021",
address = "Kyiv, Ukraine (Virtual)",
publisher = "Association for Computational Linguistics",
url = "https://www.aclweb.org/anthology/2021.wanlp-1.21",
pages = "196--207",
}
Acknowledgments
Thanks to TensorFlow Research Cloud (TFRC) for the free access to Cloud TPUs, couldn't have done it without this program, and to the AUB MIND Lab Members for the continuous support. Also thanks to Yakshof and Assafir for data and storage access. Another thanks for Habib Rahal (https://www.behance.net/rahalhabib), for putting a face to AraBERT.
Contacts
Wissam Antoun: Linkedin | Twitter | Github | wfa07@mail.aub.edu | wissam.antoun@gmail.com
Fady Baly: Linkedin | Twitter | Github | fgb06@mail.aub.edu | baly.fady@gmail.com