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Data

train data is similarity sentence data from E-commerce dialogue, about 50w sentence pairs.

Model

model created by sentence-tansformers,model struct is cross-encoder,pretrained model is hfl/chinese-electra-180g-large-discriminator.

Usage

>>> from sentence_transformers.cross_encoder import CrossEncoder
>>> model = CrossEncoder(model_save_path, device="cuda", max_length=64)
>>> sentences = ["今天天气不错", "今天心情不错"]
>>> score = model.predict([sentences])
>>> print(score[0])

Code

train code from https://github.com/TTurn/cross-encoder

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