import json import os from typing import Iterator, List, Optional, Union, Tuple from tokenizers import AddedToken, Regex, Tokenizer, decoders, normalizers, pre_tokenizers, trainers from tokenizers.models import Unigram from .base_tokenizer import BaseTokenizer class SentencePieceUnigramTokenizer(BaseTokenizer): """SentencePiece Unigram Tokenizer Represents the Unigram algorithm, with the pretokenization used by SentencePiece """ def __init__( self, vocab: Optional[List[Tuple[str, float]]] = None, replacement: str = "▁", add_prefix_space: bool = True, ): if vocab is not None: # Let Unigram(..) fail if only one of them is None tokenizer = Tokenizer(Unigram(vocab)) else: tokenizer = Tokenizer(Unigram()) tokenizer.normalizer = normalizers.Sequence( [normalizers.Nmt(), normalizers.NFKC(), normalizers.Replace(Regex(" {2,}"), " ")] ) prepend_scheme = "always" if add_prefix_space else "never" tokenizer.pre_tokenizer = pre_tokenizers.Metaspace(replacement=replacement, prepend_scheme=prepend_scheme) tokenizer.decoder = decoders.Metaspace(replacement=replacement, prepend_scheme=prepend_scheme) parameters = { "model": "SentencePieceUnigram", "replacement": replacement, "add_prefix_space": add_prefix_space, } super().__init__(tokenizer, parameters) def train( self, files: Union[str, List[str]], vocab_size: int = 8000, show_progress: bool = True, special_tokens: Optional[List[Union[str, AddedToken]]] = None, initial_alphabet: Optional[List[str]] = None, unk_token: Optional[str] = None, ): """ Train the model using the given files Args: files (:obj:`List[str]`): A list of path to the files that we should use for training vocab_size (:obj:`int`): The size of the final vocabulary, including all tokens and alphabet. show_progress (:obj:`bool`): Whether to show progress bars while training. special_tokens (:obj:`List[Union[str, AddedToken]]`, `optional`): A list of special tokens the model should know of. initial_alphabet (:obj:`List[str]`, `optional`): A list of characters to include in the initial alphabet, even if not seen in the training dataset. If the strings contain more than one character, only the first one is kept. unk_token (:obj:`str`, `optional`): The unknown token to be used by the model. """ if special_tokens is None: special_tokens = [] if initial_alphabet is None: initial_alphabet = [] trainer = trainers.UnigramTrainer( vocab_size=vocab_size, special_tokens=special_tokens, show_progress=show_progress, initial_alphabet=initial_alphabet, unk_token=unk_token, ) if isinstance(files, str): files = [files] self._tokenizer.train(files, trainer=trainer) def train_from_iterator( self, iterator: Union[Iterator[str], Iterator[Iterator[str]]], vocab_size: int = 8000, show_progress: bool = True, special_tokens: Optional[List[Union[str, AddedToken]]] = None, initial_alphabet: Optional[List[str]] = None, unk_token: Optional[str] = None, length: Optional[int] = None, ): """ Train the model using the given iterator Args: iterator (:obj:`Union[Iterator[str], Iterator[Iterator[str]]]`): Any iterator over strings or list of strings vocab_size (:obj:`int`): The size of the final vocabulary, including all tokens and alphabet. show_progress (:obj:`bool`): Whether to show progress bars while training. special_tokens (:obj:`List[Union[str, AddedToken]]`, `optional`): A list of special tokens the model should know of. initial_alphabet (:obj:`List[str]`, `optional`): A list of characters to include in the initial alphabet, even if not seen in the training dataset. If the strings contain more than one character, only the first one is kept. unk_token (:obj:`str`, `optional`): The unknown token to be used by the model. length (:obj:`int`, `optional`): The total number of sequences in the iterator. This is used to provide meaningful progress tracking """ if special_tokens is None: special_tokens = [] if initial_alphabet is None: initial_alphabet = [] trainer = trainers.UnigramTrainer( vocab_size=vocab_size, special_tokens=special_tokens, show_progress=show_progress, initial_alphabet=initial_alphabet, unk_token=unk_token, ) self._tokenizer.train_from_iterator( iterator, trainer=trainer, length=length, ) @staticmethod def from_spm(filename: str): try: import sys sys.path.append(".") import sentencepiece_model_pb2 as model except Exception: raise Exception( "You don't seem to have the required protobuf file, in order to use this function you need to run `pip install protobuf` and `wget https://raw.githubusercontent.com/google/sentencepiece/master/python/src/sentencepiece/sentencepiece_model_pb2.py` for us to be able to read the intrinsics of your spm_file. `pip install sentencepiece` is not required." ) m = model.ModelProto() m.ParseFromString(open(filename, "rb").read()) precompiled_charsmap = m.normalizer_spec.precompiled_charsmap vocab = [(piece.piece, piece.score) for piece in m.pieces] unk_id = m.trainer_spec.unk_id model_type = m.trainer_spec.model_type byte_fallback = m.trainer_spec.byte_fallback if model_type != 1: raise Exception( "You're trying to run a `Unigram` model but you're file was trained with a different algorithm" ) replacement = "▁" add_prefix_space = True tokenizer = Tokenizer(Unigram(vocab, unk_id, byte_fallback)) if precompiled_charsmap: tokenizer.normalizer = normalizers.Sequence( [ normalizers.Precompiled(precompiled_charsmap), normalizers.Replace(Regex(" {2,}"), " "), ] ) else: tokenizer.normalizer = normalizers.Sequence([normalizers.Replace(Regex(" {2,}"), " ")]) prepend_scheme = "always" if add_prefix_space else "never" tokenizer.pre_tokenizer = pre_tokenizers.Metaspace(replacement=replacement, prepend_scheme=prepend_scheme) tokenizer.decoder = decoders.Metaspace(replacement=replacement, prepend_scheme=prepend_scheme) parameters = { "model": "SentencePieceUnigram", } obj = BaseTokenizer.__new__(SentencePieceUnigramTokenizer, tokenizer, parameters) BaseTokenizer.__init__(obj, tokenizer, parameters) return obj