metadata
language:
- en
- hi
- de
- ar
- bn
- fi
- ja
- zh
- id
- sw
- ta
- gr
- ru
- es
- th
- tr
- vi
- multilingual
datasets:
- squad_v2
- tydiqa
- mlqa
- xquad
- germanquad
widget:
- text: >-
Hugging Face has seen rapid growth in its popularity since the get-go. It
is definitely doing the right things to attract more and more people to
its platform, some of which are on the following lines: Community driven
approach through large open source repositories along with paid services.
Helps to build a network of like-minded people passionate about open
source. Attractive price point. The subscription-based features, e.g.:
Inference based API, starts at a price of $9/month.
example_title: English
- text: >-
A un a�o y tres d�as de que el bal�n ruede en el Al Bayt Stadium
inaugurando el Mundial 2022, ya se han dibujado los primeros bocetos de la
pr�xima Copa del Mundo.13 selecciones est�n colocadas en el mapa con la
etiqueta de clasificadas y tienen asegurado pisar los verdes de Qatar en
la primera fase final oto�al. Serbia, Dinamarca, Espa�a, Pa�ses Bajos,
Suiza, Croacia, Francia, Inglaterra, B�lgica, Alemania, Brasil, Argentina
y Qatar, como anfitriona, entrar�n en el sorteo del 1 de abril de 2022
en Doha en el que 32 pa�ses ser�n repartidos en sus respectivos grupos.
example_title: Spanish
Multi-lingual Question Generating Model (mt5-base)
Give the model a passage and it will generate a question about the passage.
Trained on the following datasets:
- SQuAD (English)
- TyDiQA-GoldP (Arabic, Bengali, Finnish, Japanese, Indonesian, Kiswahili, Korean, Russian, Telugu, Thai)
- MLQA (Arabic, Chinese, English, German, Hindi, Spanish, Vietnames)
- XQuAD (Arabic, Chinese, German, Greek, Hindi, Russian, Spanish, Thai, Turkish Vietnamese)
- GermanQuAD (German)
- Persian QA (Persian)
- Bengali QA (Bengali)
- chaii (Hindi, Tamil)
Training details
I used flax summarization script and a TPU v3-8. Summarization expects a text column and a summary column. For question generation training, use the context column instead of text column and question instead of summary column.
There is no guarantee that it will produce a question in the language of the passage, but it usually does. Lower resource languages will likely have lower quality questions.
Using the model
PyTorch version
from transformers import AutoTokenizer, AutoModelForSeq2SeqLM
tokenizer = AutoTokenizer.from_pretrained("nbroad/mt5-base-qgen")
model = AutoModelForSeq2SeqLM.from_pretrained("nbroad/mt5-base-qgen")
text = "Hugging Face has seen rapid growth in its \
popularity since the get-go. It is definitely doing\
the right things to attract more and more people to \
its platform, some of which are on the following lines:\
Community driven approach through large open source repositories \
along with paid services. Helps to build a network of like-minded\
people passionate about open source. \
Attractive price point. The subscription-based features, e.g.: \
Inference based API, starts at a price of $9/month.\
"
inputs = tokenizer(text, return_tensors="pt")
output = model.generate(**inputs, max_length=40)
tokenizer.decode(output[0], skip_special_tokens=True)
# What is Hugging Face's price point?
Model trained on Cloud TPUs from Google's TPU Research Cloud (TRC)