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MatchingDataLoader.py 18 kB

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  1. import os
  2. from typing import Union, Dict
  3. from fastNLP.core.const import Const
  4. from fastNLP.core.vocabulary import Vocabulary
  5. from fastNLP.io.base_loader import DataInfo, DataSetLoader
  6. from fastNLP.io.dataset_loader import JsonLoader, CSVLoader
  7. from fastNLP.io.file_utils import _get_base_url, cached_path, PRETRAINED_BERT_MODEL_DIR
  8. from fastNLP.modules.encoder._bert import BertTokenizer
  9. class MatchingLoader(DataSetLoader):
  10. """
  11. 别名::class:`fastNLP.io.MatchingLoader` :class:`fastNLP.io.dataset_loader.MatchingLoader`
  12. 读取Matching任务的数据集
  13. """
  14. def __init__(self, paths: dict=None):
  15. """
  16. :param dict paths: key是数据集名称(如train、dev、test),value是对应的文件名
  17. """
  18. self.paths = paths
  19. def _load(self, path):
  20. """
  21. :param str path: 待读取数据集的路径名
  22. :return: fastNLP.DataSet ds: 返回一个DataSet对象,里面必须包含3个field:其中两个分别为两个句子
  23. 的原始字符串文本,第三个为标签
  24. """
  25. raise NotImplementedError
  26. def process(self, paths: Union[str, Dict[str, str]], dataset_name: str=None,
  27. to_lower=False, seq_len_type: str=None, bert_tokenizer: str=None,
  28. cut_text: int = None, get_index=True, set_input: Union[list, str, bool]=True,
  29. set_target: Union[list, str, bool] = True, concat: Union[str, list, bool]=None, ) -> DataInfo:
  30. """
  31. :param paths: str或者Dict[str, str]。如果是str,则为数据集所在的文件夹或者是全路径文件名:如果是文件夹,
  32. 则会从self.paths里面找对应的数据集名称与文件名。如果是Dict,则为数据集名称(如train、dev、test)和
  33. 对应的全路径文件名。
  34. :param str dataset_name: 如果在paths里传入的是一个数据集的全路径文件名,那么可以用dataset_name来定义
  35. 这个数据集的名字,如果不定义则默认为train。
  36. :param bool to_lower: 是否将文本自动转为小写。默认值为False。
  37. :param str seq_len_type: 提供的seq_len类型,支持 ``seq_len`` :提供一个数字作为句子长度; ``mask`` :
  38. 提供一个0/1的mask矩阵作为句子长度; ``bert`` :提供segment_type_id(第一个句子为0,第二个句子为1)和
  39. attention mask矩阵(0/1的mask矩阵)。默认值为None,即不提供seq_len
  40. :param str bert_tokenizer: bert tokenizer所使用的词表所在的文件夹路径
  41. :param int cut_text: 将长于cut_text的内容截掉。默认为None,即不截。
  42. :param bool get_index: 是否需要根据词表将文本转为index
  43. :param set_input: 如果为True,则会自动将相关的field(名字里含有Const.INPUT的)设置为input,如果为False
  44. 则不会将任何field设置为input。如果传入str或者List[str],则会根据传入的内容将相对应的field设置为input,
  45. 于此同时其他field不会被设置为input。默认值为True。
  46. :param set_target: set_target将控制哪些field可以被设置为target,用法与set_input一致。默认值为True。
  47. :param concat: 是否需要将两个句子拼接起来。如果为False则不会拼接。如果为True则会在两个句子之间插入一个<sep>。
  48. 如果传入一个长度为4的list,则分别表示插在第一句开始前、第一句结束后、第二句开始前、第二句结束后的标识符。如果
  49. 传入字符串 ``bert`` ,则会采用bert的拼接方式,等价于['[CLS]', '[SEP]', '', '[SEP]'].
  50. :return:
  51. """
  52. if isinstance(set_input, str):
  53. set_input = [set_input]
  54. if isinstance(set_target, str):
  55. set_target = [set_target]
  56. if isinstance(set_input, bool):
  57. auto_set_input = set_input
  58. else:
  59. auto_set_input = False
  60. if isinstance(set_target, bool):
  61. auto_set_target = set_target
  62. else:
  63. auto_set_target = False
  64. if isinstance(paths, str):
  65. if os.path.isdir(paths):
  66. path = {n: os.path.join(paths, self.paths[n]) for n in self.paths.keys()}
  67. else:
  68. path = {dataset_name if dataset_name is not None else 'train': paths}
  69. else:
  70. path = paths
  71. data_info = DataInfo()
  72. for data_name in path.keys():
  73. data_info.datasets[data_name] = self._load(path[data_name])
  74. for data_name, data_set in data_info.datasets.items():
  75. if auto_set_input:
  76. data_set.set_input(Const.INPUTS(0), Const.INPUTS(1))
  77. if auto_set_target:
  78. if Const.TARGET in data_set.get_field_names():
  79. data_set.set_target(Const.TARGET)
  80. if to_lower:
  81. for data_name, data_set in data_info.datasets.items():
  82. data_set.apply(lambda x: [w.lower() for w in x[Const.INPUTS(0)]], new_field_name=Const.INPUTS(0),
  83. is_input=auto_set_input)
  84. data_set.apply(lambda x: [w.lower() for w in x[Const.INPUTS(1)]], new_field_name=Const.INPUTS(1),
  85. is_input=auto_set_input)
  86. if bert_tokenizer is not None:
  87. if bert_tokenizer.lower() in PRETRAINED_BERT_MODEL_DIR:
  88. PRETRAIN_URL = _get_base_url('bert')
  89. model_name = PRETRAINED_BERT_MODEL_DIR[bert_tokenizer]
  90. model_url = PRETRAIN_URL + model_name
  91. model_dir = cached_path(model_url)
  92. # 检查是否存在
  93. elif os.path.isdir(bert_tokenizer):
  94. model_dir = bert_tokenizer
  95. else:
  96. raise ValueError(f"Cannot recognize BERT tokenizer from {bert_tokenizer}.")
  97. words_vocab = Vocabulary(padding='[PAD]', unknown='[UNK]')
  98. with open(os.path.join(model_dir, 'vocab.txt'), 'r') as f:
  99. lines = f.readlines()
  100. lines = [line.strip() for line in lines]
  101. words_vocab.add_word_lst(lines)
  102. words_vocab.build_vocab()
  103. tokenizer = BertTokenizer.from_pretrained(model_dir)
  104. for data_name, data_set in data_info.datasets.items():
  105. for fields in data_set.get_field_names():
  106. if Const.INPUT in fields:
  107. data_set.apply(lambda x: tokenizer.tokenize(' '.join(x[fields])), new_field_name=fields,
  108. is_input=auto_set_input)
  109. if isinstance(concat, bool):
  110. concat = 'default' if concat else None
  111. if concat is not None:
  112. if isinstance(concat, str):
  113. CONCAT_MAP = {'bert': ['[CLS]', '[SEP]', '', '[SEP]'],
  114. 'default': ['', '<sep>', '', '']}
  115. if concat.lower() in CONCAT_MAP:
  116. concat = CONCAT_MAP[concat]
  117. else:
  118. concat = 4 * [concat]
  119. assert len(concat) == 4, \
  120. f'Please choose a list with 4 symbols which at the beginning of first sentence ' \
  121. f'the end of first sentence, the begin of second sentence, and the end of second' \
  122. f'sentence. Your input is {concat}'
  123. for data_name, data_set in data_info.datasets.items():
  124. data_set.apply(lambda x: [concat[0]] + x[Const.INPUTS(0)] + [concat[1]] + [concat[2]] +
  125. x[Const.INPUTS(1)] + [concat[3]], new_field_name=Const.INPUT)
  126. data_set.apply(lambda x: [w for w in x[Const.INPUT] if len(w) > 0], new_field_name=Const.INPUT,
  127. is_input=auto_set_input)
  128. if seq_len_type is not None:
  129. if seq_len_type == 'seq_len': #
  130. for data_name, data_set in data_info.datasets.items():
  131. for fields in data_set.get_field_names():
  132. if Const.INPUT in fields:
  133. data_set.apply(lambda x: len(x[fields]),
  134. new_field_name=fields.replace(Const.INPUT, Const.INPUT_LEN),
  135. is_input=auto_set_input)
  136. elif seq_len_type == 'mask':
  137. for data_name, data_set in data_info.datasets.items():
  138. for fields in data_set.get_field_names():
  139. if Const.INPUT in fields:
  140. data_set.apply(lambda x: [1] * len(x[fields]),
  141. new_field_name=fields.replace(Const.INPUT, Const.INPUT_LEN),
  142. is_input=auto_set_input)
  143. elif seq_len_type == 'bert':
  144. for data_name, data_set in data_info.datasets.items():
  145. if Const.INPUT not in data_set.get_field_names():
  146. raise KeyError(f'Field ``{Const.INPUT}`` not in {data_name} data set: '
  147. f'got {data_set.get_field_names()}')
  148. data_set.apply(lambda x: [0] * (len(x[Const.INPUTS(0)]) + 2) + [1] * (len(x[Const.INPUTS(1)]) + 1),
  149. new_field_name=Const.INPUT_LENS(0), is_input=auto_set_input)
  150. data_set.apply(lambda x: [1] * len(x[Const.INPUT_LENS(0)]),
  151. new_field_name=Const.INPUT_LENS(1), is_input=auto_set_input)
  152. if cut_text is not None:
  153. for data_name, data_set in data_info.datasets.items():
  154. for fields in data_set.get_field_names():
  155. if (Const.INPUT in fields) or ((Const.INPUT_LEN in fields) and (seq_len_type != 'seq_len')):
  156. data_set.apply(lambda x: x[fields][: cut_text], new_field_name=fields,
  157. is_input=auto_set_input)
  158. data_set_list = [d for n, d in data_info.datasets.items()]
  159. assert len(data_set_list) > 0, f'There are NO data sets in data info!'
  160. if bert_tokenizer is None:
  161. words_vocab = Vocabulary()
  162. words_vocab = words_vocab.from_dataset(*[d for n, d in data_info.datasets.items() if 'train' in n],
  163. field_name=[n for n in data_set_list[0].get_field_names()
  164. if (Const.INPUT in n)],
  165. no_create_entry_dataset=[d for n, d in data_info.datasets.items()
  166. if 'train' not in n])
  167. target_vocab = Vocabulary(padding=None, unknown=None)
  168. target_vocab = target_vocab.from_dataset(*[d for n, d in data_info.datasets.items() if 'train' in n],
  169. field_name=Const.TARGET)
  170. data_info.vocabs = {Const.INPUT: words_vocab, Const.TARGET: target_vocab}
  171. if get_index:
  172. for data_name, data_set in data_info.datasets.items():
  173. for fields in data_set.get_field_names():
  174. if Const.INPUT in fields:
  175. data_set.apply(lambda x: [words_vocab.to_index(w) for w in x[fields]], new_field_name=fields,
  176. is_input=auto_set_input)
  177. if Const.TARGET in data_set.get_field_names():
  178. data_set.apply(lambda x: target_vocab.to_index(x[Const.TARGET]), new_field_name=Const.TARGET,
  179. is_input=auto_set_input, is_target=auto_set_target)
  180. for data_name, data_set in data_info.datasets.items():
  181. if isinstance(set_input, list):
  182. data_set.set_input(*[inputs for inputs in set_input if inputs in data_set.get_field_names()])
  183. if isinstance(set_target, list):
  184. data_set.set_target(*[target for target in set_target if target in data_set.get_field_names()])
  185. return data_info
  186. class SNLILoader(MatchingLoader, JsonLoader):
  187. """
  188. 别名::class:`fastNLP.io.SNLILoader` :class:`fastNLP.io.dataset_loader.SNLILoader`
  189. 读取SNLI数据集,读取的DataSet包含fields::
  190. words1: list(str),第一句文本, premise
  191. words2: list(str), 第二句文本, hypothesis
  192. target: str, 真实标签
  193. 数据来源: https://nlp.stanford.edu/projects/snli/snli_1.0.zip
  194. """
  195. def __init__(self, paths: dict=None):
  196. fields = {
  197. 'sentence1_binary_parse': Const.INPUTS(0),
  198. 'sentence2_binary_parse': Const.INPUTS(1),
  199. 'gold_label': Const.TARGET,
  200. }
  201. paths = paths if paths is not None else {
  202. 'train': 'snli_1.0_train.jsonl',
  203. 'dev': 'snli_1.0_dev.jsonl',
  204. 'test': 'snli_1.0_test.jsonl'}
  205. MatchingLoader.__init__(self, paths=paths)
  206. JsonLoader.__init__(self, fields=fields)
  207. def _load(self, path):
  208. ds = JsonLoader._load(self, path)
  209. parentheses_table = str.maketrans({'(': None, ')': None})
  210. ds.apply(lambda ins: ins[Const.INPUTS(0)].translate(parentheses_table).strip().split(),
  211. new_field_name=Const.INPUTS(0))
  212. ds.apply(lambda ins: ins[Const.INPUTS(1)].translate(parentheses_table).strip().split(),
  213. new_field_name=Const.INPUTS(1))
  214. ds.drop(lambda x: x[Const.TARGET] == '-')
  215. return ds
  216. class RTELoader(MatchingLoader, CSVLoader):
  217. """
  218. 别名::class:`fastNLP.io.RTELoader` :class:`fastNLP.io.dataset_loader.RTELoader`
  219. 读取RTE数据集,读取的DataSet包含fields::
  220. words1: list(str),第一句文本, premise
  221. words2: list(str), 第二句文本, hypothesis
  222. target: str, 真实标签
  223. 数据来源:
  224. """
  225. def __init__(self, paths: dict=None):
  226. paths = paths if paths is not None else {
  227. 'train': 'train.tsv',
  228. 'dev': 'dev.tsv',
  229. # 'test': 'test.tsv' # test set has not label
  230. }
  231. MatchingLoader.__init__(self, paths=paths)
  232. self.fields = {
  233. 'sentence1': Const.INPUTS(0),
  234. 'sentence2': Const.INPUTS(1),
  235. 'label': Const.TARGET,
  236. }
  237. CSVLoader.__init__(self, sep='\t')
  238. def _load(self, path):
  239. ds = CSVLoader._load(self, path)
  240. for k, v in self.fields.items():
  241. ds.rename_field(k, v)
  242. for fields in ds.get_all_fields():
  243. if Const.INPUT in fields:
  244. ds.apply(lambda x: x[fields].strip().split(), new_field_name=fields)
  245. return ds
  246. class QNLILoader(MatchingLoader, CSVLoader):
  247. """
  248. 别名::class:`fastNLP.io.QNLILoader` :class:`fastNLP.io.dataset_loader.QNLILoader`
  249. 读取QNLI数据集,读取的DataSet包含fields::
  250. words1: list(str),第一句文本, premise
  251. words2: list(str), 第二句文本, hypothesis
  252. target: str, 真实标签
  253. 数据来源:
  254. """
  255. def __init__(self, paths: dict=None):
  256. paths = paths if paths is not None else {
  257. 'train': 'train.tsv',
  258. 'dev': 'dev.tsv',
  259. # 'test': 'test.tsv' # test set has not label
  260. }
  261. MatchingLoader.__init__(self, paths=paths)
  262. self.fields = {
  263. 'question': Const.INPUTS(0),
  264. 'sentence': Const.INPUTS(1),
  265. 'label': Const.TARGET,
  266. }
  267. CSVLoader.__init__(self, sep='\t')
  268. def _load(self, path):
  269. ds = CSVLoader._load(self, path)
  270. for k, v in self.fields.items():
  271. ds.rename_field(k, v)
  272. for fields in ds.get_all_fields():
  273. if Const.INPUT in fields:
  274. ds.apply(lambda x: x[fields].strip().split(), new_field_name=fields)
  275. return ds
  276. class MNLILoader(MatchingLoader, CSVLoader):
  277. """
  278. 别名::class:`fastNLP.io.MNLILoader` :class:`fastNLP.io.dataset_loader.MNLILoader`
  279. 读取SNLI数据集,读取的DataSet包含fields::
  280. words1: list(str),第一句文本, premise
  281. words2: list(str), 第二句文本, hypothesis
  282. target: str, 真实标签
  283. 数据来源:
  284. """
  285. def __init__(self, paths: dict=None):
  286. paths = paths if paths is not None else {
  287. 'train': 'train.tsv',
  288. 'dev_matched': 'dev_matched.tsv',
  289. 'dev_mismatched': 'dev_mismatched.tsv',
  290. 'test_matched': 'test_matched.tsv',
  291. 'test_mismatched': 'test_mismatched.tsv',
  292. # 'test_0.9_matched': 'multinli_0.9_test_matched_unlabeled.txt',
  293. # 'test_0.9_mismatched': 'multinli_0.9_test_mismatched_unlabeled.txt',
  294. # test_0.9_mathed与mismatched是MNLI0.9版本的(数据来源:kaggle)
  295. }
  296. MatchingLoader.__init__(self, paths=paths)
  297. CSVLoader.__init__(self, sep='\t')
  298. self.fields = {
  299. 'sentence1_binary_parse': Const.INPUTS(0),
  300. 'sentence2_binary_parse': Const.INPUTS(1),
  301. 'gold_label': Const.TARGET,
  302. }
  303. def _load(self, path):
  304. ds = CSVLoader._load(self, path)
  305. for k, v in self.fields.items():
  306. if k in ds.get_field_names():
  307. ds.rename_field(k, v)
  308. if Const.TARGET in ds.get_field_names():
  309. if ds[0][Const.TARGET] == 'hidden':
  310. ds.delete_field(Const.TARGET)
  311. parentheses_table = str.maketrans({'(': None, ')': None})
  312. ds.apply(lambda ins: ins[Const.INPUTS(0)].translate(parentheses_table).strip().split(),
  313. new_field_name=Const.INPUTS(0))
  314. ds.apply(lambda ins: ins[Const.INPUTS(1)].translate(parentheses_table).strip().split(),
  315. new_field_name=Const.INPUTS(1))
  316. if Const.TARGET in ds.get_field_names():
  317. ds.drop(lambda x: x[Const.TARGET] == '-')
  318. return ds
  319. class QuoraLoader(MatchingLoader, CSVLoader):
  320. def __init__(self, paths: dict=None):
  321. paths = paths if paths is not None else {
  322. 'train': 'train.tsv',
  323. 'dev': 'dev.tsv',
  324. 'test': 'test.tsv',
  325. }
  326. MatchingLoader.__init__(self, paths=paths)
  327. CSVLoader.__init__(self, sep='\t', headers=(Const.TARGET, Const.INPUTS(0), Const.INPUTS(1), 'pairID'))
  328. def _load(self, path):
  329. ds = CSVLoader._load(self, path)
  330. return ds