bert
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chooses 15% of token
From paper, it mentioned
Instead, the training data generator chooses 15% of tokens at random, e.g., in the sentence my
dog is hairy it chooses hairy.
It means that 15% of token will be choose for sure.
From https://github.com/codertimo/BERT-pytorch/blob/master/bert_pytorch/dataset/dataset.py#L68,
for every single token, it has 15% of chance that go though the followup procedure.
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In the current UI, there's an incomprehenisble error message when API requests fail during the API startup.
It would be nice to show a friendly API is starting up message.
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文档增加tokenizer类别及样例建议
欢迎您反馈PaddleNLP使用问题,非常感谢您对PaddleNLP的贡献!
在留下您的问题时,辛苦您同步提供如下信息:
- 版本、环境信息
1)PaddleNLP和PaddlePaddle版本:请提供您的PaddleNLP和PaddlePaddle版本号,例如PaddleNLP 2.0.4,PaddlePaddle2.1.1
2)系统环境:请您描述系统类型,例如Linux/Windows/MacOS/,python版本 - 复现信息:如为报错,请给出复现环境、复现步骤
paddle版本2.0.8 paddlenlp版本2.1.0
建议,能否在paddlenlp文档中,整理列出各个模型的tokenizer是基于什么类别的based,如bert tokenizer是word piece的,xlnet tokenizer是sentence piece的,以及对应的输入输出样例
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https://github.com/huggingface/transformers/blob/546dc24e0883e5e9f5eb06ec8060e3e6ccc5f6d7/src/transformers/models/gpt2/modeling_gpt2.py#L698
Assertions can't be relied upon for control flow because they can be disabled, as per the following: