Source code for mindnlp.dataset.text_classification.mnli

# Copyright 2022 Huawei Technologies Co., Ltd
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"""
MNLI load function
"""
# pylint: disable=C0103

import os
from typing import Union, Tuple
from mindspore.dataset import GeneratorDataset, text
from mindnlp.utils.download import cache_file
from mindnlp.dataset.process import common_process
from mindnlp.dataset.register import load_dataset, process
from mindnlp.transforms import BasicTokenizer
from mindnlp.configs import DEFAULT_ROOT
from mindnlp.utils import unzip

URL = "https://cims.nyu.edu/~sbowman/multinli/multinli_1.0.zip"

MD5 = "0f70aaf66293b3c088a864891db51353"


[docs]class Mnli: """ MNLI dataset source """ label_map = { "entailment": 0, "neutral": 1, "contradiction": 2, } def __init__(self, path) -> None: self.path: str = path self._label, self._sentence1, self._sentence2 = [], [], [] self._load() def _load(self): with open(self.path, "r", encoding="utf-8") as f: dataset = f.read() lines = dataset.split("\n") lines.pop(0) lines.pop(len(lines) - 1) for line in lines: l = line.split("\t") if l[0] in self.label_map: self._label.append(self.label_map[l[0]]) self._sentence1.append(l[5]) self._sentence2.append(l[6]) def __getitem__(self, index): return self._label[index], self._sentence1[index], self._sentence2[index] def __len__(self): return len(self._label)
[docs]@load_dataset.register def MNLI( root: str = DEFAULT_ROOT, split: Union[Tuple[str], str] = ("train", "dev_matched", "dev_mismatched"), proxies=None ): r""" Load the MNLI dataset Args: root (str): Directory where the datasets are saved. Default:~/.mindnlp split (str|Tuple[str]): Split or splits to be returned. Default:("train", "dev_matched", "dev_mismatched"). proxies (dict): a dict to identify proxies,for example: {"https": "https://127.0.0.1:7890"}. Returns: - **datasets_list** (list) -A list of loaded datasets. If only one type of dataset is specified,such as 'trian', this dataset is returned instead of a list of datasets. Examples: >>> root = "~/.mindnlp" >>> split = ("train", "dev_matched", "dev_mismatched") >>> dataset_train, dataset_dev_matched, dataset_dev_mismatched = MNLI(root, split) >>> train_iter = dataset_train.create_tuple_iterator() >>> print(next(train_iter)) """ if root == DEFAULT_ROOT: cache_dir = os.path.join(root, "datasets", "MNLI") else: cache_dir = root path_dict = { "train": "multinli_1.0_train.txt", "dev_matched": "multinli_1.0_dev_matched.txt", "dev_mismatched": "multinli_1.0_dev_mismatched.txt", } column_names = ["label", "sentence1", "sentence2"] path_list = [] datasets_list = [] path, _ = cache_file(None, url=URL, cache_dir=cache_dir, md5sum=MD5, proxies=proxies) unzip(path, cache_dir) if isinstance(split, str): path_list.append( os.path.join(cache_dir, "multinli_1.0", path_dict[split]) ) else: for s in split: path_list.append( os.path.join(cache_dir, "multinli_1.0", path_dict[s]) ) for path in path_list: datasets_list.append( GeneratorDataset( source=Mnli(path), column_names=column_names, shuffle=False ) ) if len(path_list) == 1: return datasets_list[0] return datasets_list
[docs]@process.register def MNLI_Process(dataset, column: Union[Tuple[str], str] = ("sentence1", "sentence2"), tokenizer=BasicTokenizer(), vocab=None ): """ the process of the MNLI dataset Args: dataset (GeneratorDataset): MNLI dataset. column (Tuple[str]|str): the column or columns needed to be transpormed of the MNLI dataset tokenizer (TextTensorOperation): tokenizer you choose to tokenize the text dataset vocab (Vocab): vocabulary object, used to store the mapping of token and index Returns: - **dataset** (MapDataset) - dataset after transforms - **Vocab** (Vocab) - vocab created from dataset Raises: TypeError: If `column` is not a string or Tuple[str] Examples: >>> from mindnlp.dataset import MNLI, MNLI_Process >>> dataset_train, dataset_dev_matched, dataset_dev_mismatched = MNLI() >>> dataset_train, vocab = MNLI_Process(dataset_train) >>> dataset_train = dataset_train.create_tuple_iterator() >>> print(next(dataset_train)) [Tensor(shape=[], dtype=Int64, value= 1), Tensor(shape=[12], dtype=Int32, value= [44002, 3578, 10420, 40, 117, 1363, 9631, 14, 790, 5, 10026, 0]), Tensor(shape=[10], dtype=Int32, value= [ 9387, 5, 10026, 20, 63, 133, 3578, 10420, 113, 0])] """ if isinstance(column, str): return common_process(dataset, column, tokenizer, vocab) if vocab is None: for col in column: dataset = dataset.map(tokenizer, input_columns=col) column = list(column) vocab = text.Vocab.from_dataset(dataset, columns=column, special_tokens=["<pad>", "<unk>"]) for col in column: dataset = dataset.map(text.Lookup(vocab, unknown_token='<unk>'), input_columns=col) return dataset, vocab for col in column: dataset = dataset.map(tokenizer, input_columns=col) for col in column: dataset = dataset.map(text.Lookup(vocab, unknown_token='<unk>'), input_columns=col) return dataset, vocab