Edit model card

German GPT-2 model

In this repository we release (yet another) GPT-2 model, that was trained on ~90 GB from the "German colossal, clean Common Crawl corpus" (GC4).

The model is meant to be an entry point for fine-tuning on other texts, and it is definitely not as good or "dangerous" as the English GPT-3 model. We do not plan extensive PR or staged releases for this model 😉


Disclaimer: the presented and trained language models in this repository are for research only purposes. The GC4 corpus - that was used for training - contains crawled texts from the internet. Thus, this GPT-2 model can be considered as highly biased, resulting in a model that encodes stereotypical associations along gender, race, ethnicity and disability status. Before using and working with the released checkpoints, it is highly recommended to read:

On the Dangers of Stochastic Parrots: Can Language Models Be Too Big?

from Emily M. Bender, Timnit Gebru, Angelina McMillan-Major and Shmargaret Shmitchell.

The aim of this released GPT-2 model for German is to boost research on (large) pre-trained language models for German, especially for identifying biases and how to prevent them, as most research is currently done for English only.


Changelog

  • 17.10.2021: We highly recommend to try the Text Generation Pipeline in Transformers. The quality of the generated text from the Inference Widget here can be lower.
  • 06.09.2021: Initial release. Detailed information about training parameters coming soon.

Text Generation

The following code snippet can be used to generate text with this German GPT-2 model:

from transformers import pipeline

model_name = "stefan-it/german-gpt2-larger"

pipe = pipeline('text-generation', model=model_name, tokenizer=model_name)

text = pipe("Der Sinn des Lebens ist es", max_length=200)[0]["generated_text"]

print(text)

Training Data

The following archives are used for training the (first version) of this GPT-2 model:

  • de_head_0000_2015-48.tar.gz
  • de_head_0000_2016-18.tar.gz
  • de_head_0000_2016-44.tar.gz
  • de_head_0000_2017-13.tar.gz
  • de_head_0000_2017-30.tar.gz
  • de_head_0000_2017-39.tar.gz
  • de_head_0000_2017-51.tar.gz
  • de_head_0000_2018-09.tar.gz
  • de_head_0000_2018-17.tar.gz
  • de_head_0000_2018-30.tar.gz
  • de_head_0000_2018-39.tar.gz
  • de_head_0000_2018-51.tar.gz
  • de_head_0000_2019-18.tar.gz
  • de_head_0000_2019-30.tar.gz
  • de_head_0006_2019-09.tar.gz
  • de_head_0006_2019-18.tar.gz
  • de_head_0006_2019-30.tar.gz
  • de_head_0006_2019-47.tar.gz
  • de_head_0006_2020-10.tar.gz
  • de_head_0007_2018-30.tar.gz
  • de_head_0007_2018-51.tar.gz
  • de_head_0007_2019-09.tar.gz
  • de_head_0007_2019-18.tar.gz
  • de_head_0007_2019-47.tar.gz
  • de_head_0007_2020-10.tar.gz

Details and URLs can be found on the GC4 page.

Archives are then extracted and NLTK (german model) is used to sentence split the corpus. This results in a total training corpus size of 90GB.

Training Details

We use the recently re-trained dbmdz/german-gpt2 (version 2!) model as back-bone model. Thus, the tokenizer and vocab is the same as used in the dbmdz/german-gpt2 model.

The model was trained on a v3-8 TPU, with the following parameters:

python ./run_clm_flax.py --output_dir=/mnt/datasets/german-gpt2-larger/ --name_or_path dbmdz/german-gpt2 --do_train --do_eval --block_size=512 --per_device_train_batch_size=16 --per_device_eval_batch_size=16 --learning_rate=5e-3 --warmup_steps=1000 --adam_beta1=0.9 --adam_beta2=0.98 --weight_decay=0.01 --overwrite_output_dir --num_train_epochs=20 --logging_steps=500 --save_steps=2500 --eval_steps=2500 --train_file /mnt/datasets/gc4/train.txt --validation_file /mnt/datasets/gc4/validation.txt --preprocessing_num_workers 16

Training took around 17 days for 20 epochs.

Acknowledgments

Research supported with Cloud TPUs from Google's TensorFlow Research Cloud (TFRC). Thanks for providing access to the TFRC ❤️

Thanks to the generous support from the Hugging Face team, it is possible to download this model from their S3 storage 🤗

This project heavily profited from the amazing Hugging Face Community Week. Many thanks for the great organization and discussions during and after the week!

Downloads last month
720
Safetensors
Model size
137M params
Tensor type
F32
·
U8
·
Inference Examples
This model does not have enough activity to be deployed to Inference API (serverless) yet. Increase its social visibility and check back later, or deploy to Inference Endpoints (dedicated) instead.

Model tree for stefan-it/german-gpt2-larger

Finetunes
1 model