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solving GPU error for previous version
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"""
Glove Tokenizer
---------------------------------------------------------------------
"""
import json
import tempfile
import tokenizers as hf_tokenizers
class WordLevelTokenizer(hf_tokenizers.implementations.BaseTokenizer):
"""WordLevelTokenizer.
Represents a simple word level tokenization using the internals of BERT's
tokenizer.
Based off the `tokenizers` BertWordPieceTokenizer (https://github.com/huggingface/tokenizers/blob/704cf3fdd2f607ead58a561b892b510b49c301db/bindings/python/tokenizers/implementations/bert_wordpiece.py).
"""
def __init__(
self,
word_id_map={},
pad_token_id=None,
unk_token_id=None,
unk_token="[UNK]",
sep_token="[SEP]",
cls_token="[CLS]",
pad_token="[PAD]",
lowercase: bool = False,
unicode_normalizer=None,
):
if pad_token_id:
word_id_map[pad_token] = pad_token_id
if unk_token_id:
word_id_map[unk_token] = unk_token_id
max_id = max(word_id_map.values())
for idx, token in enumerate((unk_token, sep_token, cls_token, pad_token)):
if token not in word_id_map:
word_id_map[token] = max_id + idx
# HuggingFace tokenizer expects a path to a `*.json` file to read the
# vocab from. I think this is kind of a silly constraint, but for now
# we write the vocab to a temporary file before initialization.
word_list_file = tempfile.NamedTemporaryFile()
word_list_file.write(json.dumps(word_id_map).encode())
word_level = hf_tokenizers.models.WordLevel.from_file(
word_list_file.name, unk_token=str(unk_token)
)
tokenizer = hf_tokenizers.Tokenizer(word_level)
# Let the tokenizer know about special tokens if they are part of the vocab
if tokenizer.token_to_id(str(unk_token)) is not None:
tokenizer.add_special_tokens([str(unk_token)])
if tokenizer.token_to_id(str(sep_token)) is not None:
tokenizer.add_special_tokens([str(sep_token)])
if tokenizer.token_to_id(str(cls_token)) is not None:
tokenizer.add_special_tokens([str(cls_token)])
if tokenizer.token_to_id(str(pad_token)) is not None:
tokenizer.add_special_tokens([str(pad_token)])
# Check for Unicode normalization first (before everything else)
normalizers = []
if unicode_normalizer:
normalizers += [
hf_tokenizers.normalizers.unicode_normalizer_from_str(
unicode_normalizer
)
]
if lowercase:
normalizers += [hf_tokenizers.normalizers.Lowercase()]
# Create the normalizer structure
if len(normalizers) > 0:
if len(normalizers) > 1:
tokenizer.normalizer = hf_tokenizers.normalizers.Sequence(normalizers)
else:
tokenizer.normalizer = normalizers[0]
tokenizer.pre_tokenizer = hf_tokenizers.pre_tokenizers.WhitespaceSplit()
sep_token_id = tokenizer.token_to_id(str(sep_token))
if sep_token_id is None:
raise TypeError("sep_token not found in the vocabulary")
cls_token_id = tokenizer.token_to_id(str(cls_token))
if cls_token_id is None:
raise TypeError("cls_token not found in the vocabulary")
tokenizer.post_processor = hf_tokenizers.processors.BertProcessing(
(str(sep_token), sep_token_id), (str(cls_token), cls_token_id)
)
parameters = {
"model": "WordLevel",
"unk_token": unk_token,
"sep_token": sep_token,
"cls_token": cls_token,
"pad_token": pad_token,
"lowercase": lowercase,
"unicode_normalizer": unicode_normalizer,
}
self.unk_token = unk_token
self.pad_token = pad_token
super().__init__(tokenizer, parameters)
class GloveTokenizer(WordLevelTokenizer):
"""A word-level tokenizer with GloVe 200-dimensional vectors.
Lowercased, since GloVe vectors are lowercased.
"""
def __init__(
self, word_id_map={}, pad_token_id=None, unk_token_id=None, max_length=256
):
super().__init__(
word_id_map=word_id_map,
unk_token_id=unk_token_id,
pad_token_id=pad_token_id,
lowercase=True,
)
self.pad_token_id = pad_token_id
self.oov_token_id = unk_token_id
self.convert_id_to_word = self.id_to_token
self.model_max_length = max_length
# Set defaults.
self.enable_padding(length=max_length, pad_id=pad_token_id)
self.enable_truncation(max_length=max_length)
def _process_text(self, text_input):
"""A text input may be a single-input tuple (text,) or multi-input
tuple (text, text, ...).
In the single-input case, unroll the tuple. In the multi-input
case, raise an error.
"""
if isinstance(text_input, tuple):
if len(text_input) > 1:
raise ValueError(
"Cannot use `GloveTokenizer` to encode multiple inputs"
)
text_input = text_input[0]
return text_input
def encode(self, text):
text = self._process_text(text)
return super().encode(text, add_special_tokens=False).ids
def batch_encode(self, input_text_list):
"""The batch equivalent of ``encode``."""
input_text_list = list(map(self._process_text, input_text_list))
encodings = self.encode_batch(
input_text_list,
add_special_tokens=False,
)
return [x.ids for x in encodings]
def __call__(self, input_texts):
if isinstance(input_texts, list):
return self.batch_encode(input_texts)
else:
return self.encode(input_texts)
def convert_ids_to_tokens(self, ids):
return [self.convert_id_to_word(_id) for _id in ids]