Pretrained model on Bulgarian language using a masked language modeling (MLM) objective. It was introduced in this paper and first released in this repository . This model is cased: it does make a difference between bulgarian and Bulgarian.
The model was trained similarly to RuBert wherein the Multilingual Bert was adapted for the Russian language.
The training data was Bulgarian text from OSCAR , Chitanka and Wikipedia .
Here is how to use this model in PyTorch:
>>> from transformers import pipeline
>>>
>>> model = pipeline(
>>> 'fill-mask',
>>> model='rmihaylov/bert-base-bg',
>>> tokenizer='rmihaylov/bert-base-bg',
>>> device=0,
>>> revision=None)
>>> output = model("София е [MASK] на България.")
>>> print(output)
[{'score': 0.12665307521820068,
'sequence': 'София е столица на България.',
'token': 2659,
'token_str': 'столица'},
{'score': 0.07470757514238358,
'sequence': 'София е Перлата на България.',
'token': 102146,
'token_str': 'Перлата'},
{'score': 0.06786204129457474,
'sequence': 'София е Столицата на България.',
'token': 45495,
'token_str': 'Столицата'},
{'score': 0.05533991754055023,
'sequence': 'София е Столица на България.',
'token': 100524,
'token_str': 'Столица'},
{'score': 0.05485989898443222,
'sequence': 'София е столицата на България.',
'token': 2294,
'token_str': 'столицата'}]