Description
The National Library of Sweden / KBLab releases three pretrained language models based on BERT and ALBERT. The models are trained on aproximately 15-20GB of text (200M sentences, 3000M tokens) from various sources (books, news, government publications, swedish wikipedia and internet forums) aiming to provide a representative BERT model for Swedish text.
Predicted Entities
How to use
sent_embeddings = BertSentenceEmbeddings.pretrained("sent_bert_base_cased", "sv") \
.setInputCols("sentence") \
.setOutputCol("bert_sentence")
nlp_pipeline = Pipeline(stages=[document_assembler, sentence_detector, sent_embeddings ])
val sent_embeddings = BertSentenceEmbeddings.pretrained("sent_bert_base_cased", "sv")
.setInputCols("sentence")
.setOutputCol("bert_sentence")
val pipeline = new Pipeline().setStages(Array(document_assembler, sentence_detector, sent_embeddings ))
import nlu
nlu.load("sv.embed_sentence.bert.base_cased").predict("""Put your text here.""")
Model Information
Model Name: | sent_bert_base_cased |
Compatibility: | Spark NLP 3.2.2+ |
License: | Open Source |
Edition: | Official |
Input Labels: | [sentence] |
Output Labels: | [bert_sentence] |
Language: | sv |
Case sensitive: | true |
Data Source
The model is imported from: https://huggingface.co/KB/bert-base-swedish-cased