# 比较与torchtext.data.functional.sentencepiece_numericalizer的功能差异 [![查看源文件](https://mindspore-website.obs.cn-north-4.myhuaweicloud.com/website-images/r1.8/resource/_static/logo_source.png)](https://gitee.com/mindspore/docs/blob/r1.8/docs/mindspore/source_zh_cn/note/api_mapping/pytorch_diff/SentencePieceTokenizer_Out_INT.md) ## torchtext.data.functional.sentencepiece_numericalizer ```python torchtext.data.functional.sentencepiece_numericalizer( sp_model ) ``` 更多内容详见[torchtext.data.functional.sentencepiece_numericalizer](https://pytorch.org/text/0.10.0/data_functional.html#sentencepiece-numericalizer)。 ## mindspore.dataset.text.SentencePieceTokenizer ```python class mindspore.dataset.text.SentencePieceTokenizer( mode, out_type ) ``` 更多内容详见[mindspore.dataset.text.SentencePieceTokenizer](https://mindspore.cn/docs/zh-CN/r1.8/api_python/dataset_text/mindspore.dataset.text.SentencePieceTokenizer.html#mindspore.dataset.text.SentencePieceTokenizer)。 ## 使用方式 PyTorch:依据传入的分词模型,返回将文本转换为id的生成器。 MindSpore:依据传入的分词模型,对输入的文本进行分词及标记;输出类型是string或int类型。 ## 代码示例 ```python import mindspore.dataset as ds from mindspore.dataset import text from mindspore.dataset.text import SentencePieceModel, SPieceTokenizerOutType from torchtext.data.functional import sentencepiece_numericalizer from torchtext.data.functional import load_sp_model # In MindSpore, return tokenizer from vocab object. sentence_piece_vocab_file = "/path/to/datasets/1.txt" vocab = text.SentencePieceVocab.from_file( [sentence_piece_vocab_file], 27, 0.9995, SentencePieceModel.UNIGRAM, {}) tokenizer = text.SentencePieceTokenizer(vocab, out_type=SPieceTokenizerOutType.INT) text_file_dataset_dir = "/path/to/datasets/2.txt" text_file_dataset1 = ds.TextFileDataset(dataset_files=text_file_dataset_dir) text_file_dataset = text_file_dataset1.map(operations=tokenizer) for item in text_file_dataset: print(item[0]) break # Out: # [ 165 28 8 11 4746 1430 4] root = "/path/to/m_user.model" sp_model = load_sp_model(root) # In torch, return the sentencepiece model according to the input model path. sp_id_generator = sentencepiece_numericalizer(sp_model) list_a = ["sentencepiece encode as pieces", "examples to try!"] list(sp_id_generator(list_a)) ```