PhoBERT
NLP libraries
Pre-trained language models for Vietnamese NLP tasks
PhoBERT: Pre-trained language models for Vietnamese (EMNLP-2020 Findings)
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bertbert-embeddingsdeep-learningfairseqlanguage-modelsnamed-entity-recognitionnatural-language-inferencenernlipart-of-speech-taggingphobertpos-taggingpython3rdrsegmenterrobertatransformerstransformers-libraryvietnamesevietnamese-nlpvncorenlp
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