# Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from __future__ import division from __future__ import absolute_import from __future__ import print_function from __future__ import unicode_literals import sys import os import six import re import logging import tempfile from pathlib import Path from functools import partial if six.PY2: from pathlib2 import Path else: from pathlib import Path from tqdm import tqdm import numpy as np from ernie.file_utils import _fetch_from_remote import io open = partial(io.open, encoding='utf8') log = logging.getLogger(__name__) _max_input_chars_per_word = 100 def _wordpiece(token, vocab, unk_token, prefix='##', sentencepiece_prefix=''): """ wordpiece: helloworld => [hello, ##world] """ chars = list(token) if len(chars) > _max_input_chars_per_word: return [unk_token], [(0, len(chars))] is_bad = False start = 0 sub_tokens = [] sub_pos = [] while start < len(chars): end = len(chars) cur_substr = None while start < end: substr = "".join(chars[start:end]) if start == 0: substr = sentencepiece_prefix + substr if start > 0: substr = prefix + substr if substr in vocab: cur_substr = substr break end -= 1 if cur_substr is None: is_bad = True break sub_tokens.append(cur_substr) sub_pos.append((start, end)) start = end if is_bad: return [unk_token], [(0, len(chars))] else: return sub_tokens, sub_pos class ErnieTokenizer(object): bce = 'https://ernie-github.cdn.bcebos.com/' resource_map = { 'ernie-1.0': bce + 'model-ernie1.0.1.tar.gz', 'ernie-2.0-en': bce + 'model-ernie2.0-en.1.tar.gz', 'ernie-2.0-large-en': bce + 'model-ernie2.0-large-en.1.tar.gz', 'ernie-tiny': bce + 'model-ernie_tiny.1.tar.gz', 'ernie-gen-base-en': bce + 'model-ernie-gen-base-en.1.tar.gz', 'ernie-gen-large-en': bce + 'model-ernie-gen-large-en.1.tar.gz', 'ernie-gram-zh': bce + 'model-ernie-gram-zh.1.tar.gz', 'ernie-gram-en': bce + 'model-ernie-gram-en.1.tar.gz', } @classmethod def from_pretrained(cls, pretrain_dir_or_url, force_download=False, **kwargs): if not Path(pretrain_dir_or_url).exists() and str( pretrain_dir_or_url) in cls.resource_map: url = cls.resource_map[str(pretrain_dir_or_url)] log.info('get pretrain dir from %s' % url) pretrain_dir = _fetch_from_remote( url, force_download=force_download) else: log.info('pretrain dir %s not in %s, read from local' % (pretrain_dir_or_url, repr(cls.resource_map))) pretrain_dir = Path(pretrain_dir_or_url) if not pretrain_dir.exists(): raise ValueError('pretrain dir not found: %s' % pretrain_dir) vocab_path = pretrain_dir / 'vocab.txt' if not vocab_path.exists(): raise ValueError('no vocab file in pretrain dir: %s' % pretrain_dir) vocab_dict = { j.strip().split('\t')[0]: i for i, j in enumerate( vocab_path.open(encoding='utf8').readlines()) } t = cls(vocab_dict, **kwargs) return t def __init__(self, vocab, unk_token='[UNK]', sep_token='[SEP]', cls_token='[CLS]', pad_token='[PAD]', mask_token='[MASK]', wordpiece_prefix='##', sentencepiece_prefix='', lower=True, encoding='utf8', special_token_list=[]): if not isinstance(vocab, dict): raise ValueError('expect `vocab` to be instance of dict, got %s' % type(vocab)) self.vocab = vocab self.lower = lower self.prefix = wordpiece_prefix self.sentencepiece_prefix = sentencepiece_prefix self.pad_id = self.vocab[pad_token] self.cls_id = cls_token and self.vocab[cls_token] self.sep_id = sep_token and self.vocab[sep_token] self.unk_id = unk_token and self.vocab[unk_token] self.mask_id = mask_token and self.vocab[mask_token] self.unk_token = unk_token special_tokens = { pad_token, cls_token, sep_token, unk_token, mask_token } | set(special_token_list) pat_str = '' for t in special_tokens: if t is None: continue pat_str += '(%s)|' % re.escape(t) pat_str += r'([a-zA-Z0-9]+|\S)' log.debug('regex: %s' % pat_str) self.pat = re.compile(pat_str) self.encoding = encoding def tokenize(self, text): if len(text) == 0: return [] if six.PY3 and not isinstance(text, six.string_types): text = text.decode(self.encoding) if six.PY2 and isinstance(text, str): text = text.decode(self.encoding) res = [] for match in self.pat.finditer(text): match_group = match.group(0) if match.groups()[-1]: if self.lower: match_group = match_group.lower() words, _ = _wordpiece( match_group, vocab=self.vocab, unk_token=self.unk_token, prefix=self.prefix, sentencepiece_prefix=self.sentencepiece_prefix) else: words = [match_group] res += words return res def convert_tokens_to_ids(self, tokens): return [self.vocab.get(t, self.unk_id) for t in tokens] def truncate(self, id1, id2, seqlen): len1 = len(id1) len2 = len(id2) half = seqlen // 2 if len1 > len2: len1_truncated, len2_truncated = max(half, seqlen - len2), min( half, len2) else: len1_truncated, len2_truncated = min(half, seqlen - len1), max( half, seqlen - len1) return id1[:len1_truncated], id2[:len2_truncated] def build_for_ernie(self, text_id, pair_id=[]): """build sentence type id, add [CLS] [SEP]""" text_id_type = np.zeros_like(text_id, dtype=np.int64) ret_id = np.concatenate([[self.cls_id], text_id, [self.sep_id]], 0) ret_id_type = np.concatenate([[0], text_id_type, [0]], 0) if len(pair_id): pair_id_type = np.ones_like(pair_id, dtype=np.int64) ret_id = np.concatenate([ret_id, pair_id, [self.sep_id]], 0) ret_id_type = np.concatenate([ret_id_type, pair_id_type, [1]], 0) return ret_id, ret_id_type def encode(self, text, pair=None, truncate_to=None): text_id = np.array( self.convert_tokens_to_ids(self.tokenize(text)), dtype=np.int64) text_id_type = np.zeros_like(text_id, dtype=np.int64) if pair is not None: pair_id = np.array( self.convert_tokens_to_ids(self.tokenize(pair)), dtype=np.int64) else: pair_id = [] if truncate_to is not None: text_id, pair_id = self.truncate(text_id, [] if pair_id is None else pair_id, truncate_to) ret_id, ret_id_type = self.build_for_ernie(text_id, pair_id) return ret_id, ret_id_type class ErnieTinyTokenizer(ErnieTokenizer): bce = 'https://ernie-github.cdn.bcebos.com/' resource_map = {'ernie-tiny': bce + 'model-ernie_tiny.1.tar.gz'} @classmethod def from_pretrained(cls, pretrain_dir_or_url, force_download=False, **kwargs): if not Path(pretrain_dir_or_url).exists() and str( pretrain_dir_or_url) in cls.resource_map: url = cls.resource_map[str(pretrain_dir_or_url)] log.info('get pretrain dir from %s' % url) pretrain_dir = _fetch_from_remote(url, force_download) else: log.info('pretrain dir %s not in %s, read from local' % (pretrain_dir_or_url, repr(cls.resource_map))) pretrain_dir = Path(pretrain_dir_or_url) if not pretrain_dir.exists(): raise ValueError('pretrain dir not found: %s' % pretrain_dir) vocab_path = pretrain_dir / 'vocab.txt' sp_model_path = pretrain_dir / 'subword/spm_cased_simp_sampled.model' if not vocab_path.exists(): raise ValueError('no vocab file in pretrain dir: %s' % pretrain_dir) vocab_dict = { j.strip().split('\t')[0]: i for i, j in enumerate( vocab_path.open(encoding='utf8').readlines()) } t = cls(vocab_dict, sp_model_path, **kwargs) return t def __init__(self, vocab, sp_model_path, **kwargs): super(ErnieTinyTokenizer, self).__init__(vocab, **kwargs) import sentencepiece as spm import jieba as jb self.sp_model = spm.SentencePieceProcessor() self.window_size = 5 self.sp_model.Load(sp_model_path) self.jb = jb def cut(self, sentence): return self.jb.cut(sentence) def tokenize(self, text): if len(text) == 0: return [] if not isinstance(text, six.string_types): text = text.decode(self.encoding) if self.lower: text = text.lower() res = [] for match in self.cut(text): res += self.sp_model.EncodeAsPieces(match) return res