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albert
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A LITE BERT FOR SELF-SUPERVISED LEARNING OF LANGUAGE REPRESENTATIONS, 海量中文预训练ALBERT模型
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Sep 21, 2022 - Python
State of the Art Natural Language Processing
nlp
natural-language-processing
spark
sentiment-analysis
text-classification
tensorflow
machine-translation
transformers
language-detection
pyspark
named-entity-recognition
seq2seq
lemmatizer
spell-checker
albert
bert
part-of-speech-tagger
entity-extraction
spark-ml
xlnet
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Sep 21, 2022 - Scala
中文语言理解测评基准 Chinese Language Understanding Evaluation Benchmark: datasets, baselines, pre-trained models, corpus and leaderboard
benchmark
tensorflow
nlu
glue
corpus
transformers
pytorch
dataset
chinese
pretrained-models
language-model
albert
bert
roberta
chineseglue
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Sep 21, 2022 - Python
Open Source Pre-training Model Framework in PyTorch & Pre-trained Model Zoo
natural-language-processing
model-zoo
pytorch
classification
bart
chinese
gpt
pegasus
ner
clue
albert
bert
fine-tuning
roberta
elmo
pre-training
gpt-2
t5
unilm
xlm-roberta
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Jul 4, 2022 - Python
Language Understanding Evaluation benchmark for Chinese: datasets, baselines, pre-trained models,corpus and leaderboard
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Dec 1, 2021 - Python
Chinese NER(Named Entity Recognition) using BERT(Softmax, CRF, Span)
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Jul 18, 2022 - Python
中文长文本分类、短句子分类、多标签分类、两句子相似度(Chinese Text Classification of Keras NLP, multi-label classify, or sentence classify, long or short),字词句向量嵌入层(embeddings)和网络层(graph)构建基类,FastText,TextCNN,CharCNN,TextRNN, RCNN, DCNN, DPCNN, VDCNN, CRNN, Bert, Xlnet, Albert, Attention, DeepMoji, HAN, 胶囊网络-CapsuleNet, Transformer-encode, Seq2seq, SWEM, LEAM, TextGCN
nlp
text-classification
keras
embeddings
transformer
fasttext
albert
bert
capsule
han
rcnn
dcnn
textcnn
crnn
dpcnn
vdcnn
charcnn
xlnet
keras-textclassification
leam
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Jun 22, 2022 - Python
a fast and user-friendly runtime for transformer inference (Bert, Albert, GPT2, Decoders, etc) on CPU and GPU.
nlp
gpu
decoder
machine-translation
inference
pytorch
transformer
albert
bert
roberta
gpt2
huggingface-transformers
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May 9, 2022 - C++
CLUENER2020 中文细粒度命名实体识别 Fine Grained Named Entity Recognition
dataset
named-entity-recognition
chinese
seq2seq
sequence-to-sequence
ner
albert
bert
sequence-labeling
chinese-ner
roberta
fine-grained-ner
chinesener
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Sep 21, 2022 - Python
machine-learning
deep-learning
clustering
tensorflow
scikit-learn
keras
transformers
pytorch
gan
neural-networks
convolutional-neural-networks
gpt
gans
albert
dbscan
bert
keras-tensorflow
pytorch-tutorial
pytorch-implementation
huggingface-transformers
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Jun 15, 2022
This repo contains a PyTorch implementation of a pretrained BERT model for multi-label text classification.
nlp
text-classification
transformers
pytorch
multi-label-classification
albert
bert
fine-tuning
pytorch-implmention
xlnet
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Jun 2, 2021 - Python
高质量中文预训练模型集合:最先进大模型、最快小模型、相似度专门模型
text-classification
corpus
dataset
chinese
semantic-similarity
pretrained-models
sentence-classification
albert
bert
sentence-analysis
distillation
sentence-pairs
roberta
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Jul 8, 2020 - Python
自然语言处理工具Macropodus,基于Albert+BiLSTM+CRF深度学习网络架构,中文分词,词性标注,命名实体识别,新词发现,关键词,文本摘要,文本相似度,科学计算器,中文数字阿拉伯数字(罗马数字)转换,中文繁简转换,拼音转换。tookit(tool) of NLP,CWS(chinese word segnment),POS(Part-Of-Speech Tagging),NER(name entity recognition),Find(new words discovery),Keyword(keyword extraction),Summarize(text summarization),Sim(text similarity),Calculate(scientific calculator),Chi2num(chinese number to arabic number)
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Jun 22, 2022 - Python
multi-label,classifier,text classification,多标签文本分类,文本分类,BERT,ALBERT,multi-label-classification
text-classification
tensorflow
cnn
multi-label-classification
albert
bert
multi-label
textcnn
text-classifier
classifier-multi-label
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Oct 19, 2021 - Python
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