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About This Fork

This is a fork of gpt2-ml, gpt2-ml is a wonderful project which is not maintained anymore. Hope @imcaspar is all good. This fork fixed some download link and made the pre-trained sustainable which means you don't need to download pre-trained file every time...

Credit

GPT2 for Multiple Languages

Open In Colab

中文说明 | English

  • Simplifed GPT2 train scripts(based on Grover, supporting TPUs)
  • Ported bert tokenizer, multilingual corpus compatible
  • 1.5B GPT2 pretrained Chinese model ( ~15G corpus, 10w steps )
  • Batteries-included Colab demo #
  • 1.5B GPT2 pretrained Chinese model ( ~30G corpus, 22w steps )

Pretrained Model

Size Language Corpus Vocab Link1 Link2 SHA256
1.5B Params Chinese ~30G CLUE ( 8021 tokens ) Google Drive Baidu Pan (ffz6) e698cc97a7f5f706f84f58bb469d614e
51d3c0ce5f9ab9bf77e01e3fcb41d482
1.5B Params Chinese ~15G Bert ( 21128 tokens ) Google Drive Baidu Pan (q9vr) 4a6e5124df8db7ac2bdd902e6191b807
a6983a7f5d09fb10ce011f9a073b183e

Corpus from THUCNews and nlp_chinese_corpus

Using Cloud TPU Pod v3-256 to train 22w steps

loss

Google Colab

With just 2 clicks (not including Colab auth process), the 1.5B pretrained Chinese model demo is ready to go:

[Colab Notebook]

Train

Disclaimer

The contents in this repository are for academic research purpose, and we do not provide any conclusive remarks.

Citation

@misc{GPT2-ML,
  author = {Zhibo Zhang},{zxkmm}
  title = {GPT2-ML: GPT-2 for Multiple Languages},
  year = {2019},{2022}
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {\url{https://github.com/imcaspar/gpt2-ml}},
}

Reference

https://github.com/google-research/bert

https://github.com/rowanz/grover

Research supported with Cloud TPUs from Google's TensorFlow Research Cloud (TFRC)

Press

[机器之心] 只需单击三次,让中文GPT-2为你生成定制故事

[科学空间] 现在可以用Keras玩中文GPT2了

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A bug fixed fork of gpt2-ml.

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  • Python 88.2%
  • Jupyter Notebook 6.4%
  • Perl 3.0%
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