#!/usr/bin/env python3 import json from typing import Iterator, List, Union from tokenizers import AddedToken, Regex, Tokenizer, decoders, normalizers, pre_tokenizers, trainers from tokenizers.implementations.base_tokenizer import BaseTokenizer from tokenizers.models import Unigram from tokenizers.processors import TemplateProcessing class SentencePieceUnigramTokenizer(BaseTokenizer): """ This class is a copy of `DeDLOC's tokenizer implementation `__ . Custom SentencePiece Unigram Tokenizer with NMT, NKFC, spaces and lower-casing characters normalization Represents the Unigram algorithm, with the pretokenization used by SentencePiece """ def __init__( self, replacement: str = "▁", add_prefix_space: bool = True, unk_token: Union[str, AddedToken] = "", eos_token: Union[str, AddedToken] = "", pad_token: Union[str, AddedToken] = "", ): self.special_tokens = { "pad": {"id": 0, "token": pad_token}, "eos": {"id": 1, "token": eos_token}, "unk": {"id": 2, "token": unk_token}, } self.special_tokens_list = [None] * len(self.special_tokens) for token_dict in self.special_tokens.values(): self.special_tokens_list[token_dict["id"]] = token_dict["token"] tokenizer = Tokenizer(Unigram()) tokenizer.normalizer = normalizers.Sequence( [ normalizers.Nmt(), normalizers.NFKC(), normalizers.Replace(Regex(" {2,}"), " "), #normalizers.Lowercase(), ] ) tokenizer.pre_tokenizer = pre_tokenizers.Sequence( [ pre_tokenizers.Metaspace(replacement=replacement, add_prefix_space=add_prefix_space), pre_tokenizers.Digits(individual_digits=True), pre_tokenizers.Punctuation(), ] ) tokenizer.decoder = decoders.Metaspace(replacement=replacement, add_prefix_space=add_prefix_space) tokenizer.post_processor = TemplateProcessing( single=f"$A {self.special_tokens['eos']['token']}", special_tokens=[(self.special_tokens["eos"]["token"], self.special_tokens["eos"]["id"])], ) 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, ): """Train the model using the given files""" trainer = trainers.UnigramTrainer( vocab_size=vocab_size, special_tokens=self.special_tokens_list, show_progress=show_progress, ) if isinstance(files, str): files = [files] self._tokenizer.train(files, trainer=trainer) self.add_unk_id() def train_from_iterator( self, iterator: Union[Iterator[str], Iterator[Iterator[str]]], vocab_size: int = 8000, show_progress: bool = True, ): """Train the model using the given iterator""" trainer = trainers.UnigramTrainer( vocab_size=vocab_size, special_tokens=self.special_tokens_list, show_progress=show_progress, ) self._tokenizer.train_from_iterator(iterator, trainer=trainer) self.add_unk_id() def add_unk_id(self): tokenizer_json = json.loads(self._tokenizer.to_str()) tokenizer_json["model"]["unk_id"] = self.special_tokens["unk"]["id"] self._tokenizer = Tokenizer.from_str(json.dumps(tokenizer_json))