import tiktoken from tiktoken import Encoding from utils.log_util import logger tokenizer = tiktoken.encoding_for_model('gpt-3.5-turbo') tokenizer.vocab_size = tokenizer.n_vocab def decode(self, tokens, errors="replace"): # def decode(self, tokens: list[int], errors: str = "replace") -> str: try: decode_str = self._core_bpe.decode_bytes(tokens).decode("utf-8", errors=errors) except: decode_str = "null" return decode_str def convert_ids_to_tokens(self, tokens): return tokenizer.decode_tokens_bytes(tokens) def get_vocab(self): """Returns vocab as a dict""" vocab = {} key_error_list = [] unicode_decode_error_list = [] for i in range(self.vocab_size): try: token_byte = self.convert_ids_to_tokens([i])[0] token_str = token_byte.decode("utf-8") vocab[token_str] = i except KeyError: # 100256 100261-100275 key_error_list.append(i) except UnicodeDecodeError: # 特别多 unicode_decode_error_list.append((i, str(token_byte))) # vocab.update(self.added_tokens_encoder) logger.info(f"gpt_35_turbo {len(key_error_list)} KeyError: {key_error_list}") logger.info(f"gpt_35_turbo {len(unicode_decode_error_list)} UnicodeDecodeError: {unicode_decode_error_list[:5]}") return vocab Encoding.decode = decode Encoding.convert_ids_to_tokens = convert_ids_to_tokens Encoding.get_vocab = get_vocab