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- import base64
- import json
- import logging
- from pathlib import Path
- import tiktoken
- logger = logging.getLogger(__name__)
- # This is a modified version of the default pattern from GPT-4o, that better handles punctuations.
- FISH_TIKTOKEN_PATTERN = "|".join(
- [
- r"(?i:'s|'t|'re|'ve|'m|'ll|'d)",
- r"\p{P}",
- r"[^\r\n\p{L}\p{N}]?\p{L}+",
- r"\p{N}",
- r" ?[^\s\p{L}\p{N}]+[\r\n]*",
- r"\s*[\r\n]+",
- r"\s+(\?!\S)",
- r"\s+",
- ]
- )
- TIKTOKEN_MAX_ENCODE_CHARS = 400_000
- BOS_TOKEN = "<|begin_of_text|>"
- EOS_TOKEN = "<|end_of_text|>"
- PAD_TOKEN = "<|pad|>"
- IM_START_TOKEN = "<|im_start|>"
- IM_END_TOKEN = "<|im_end|>"
- MODALITY_TEXT_TOKEN = "<|text|>"
- MODALITY_VOICE_TOKEN = "<|voice|>"
- MODALITY_INTERLEAVE_TOKEN = "<|interleave|>"
- MODALITY_TOKENS = {
- "text": MODALITY_TEXT_TOKEN,
- "voice": MODALITY_VOICE_TOKEN,
- "interleave": MODALITY_INTERLEAVE_TOKEN,
- }
- PLACEHOLDER_TOKEN = [""] * 4
- for i in range(4):
- PLACEHOLDER_TOKEN[i] = f"<|placeholder:{i}|>"
- SEMANTIC_TOKEN_TEMPLATE = "<|semantic:{i}|>"
- SEMANTIC_TOKENS = [SEMANTIC_TOKEN_TEMPLATE.format(i=i) for i in range(1024)]
- # Warning: when you add a new special token, you should only add it to the end of the list.
- ALL_SPECIAL_TOKENS = [
- BOS_TOKEN,
- EOS_TOKEN,
- PAD_TOKEN,
- IM_START_TOKEN,
- IM_END_TOKEN,
- PLACEHOLDER_TOKEN[0],
- PLACEHOLDER_TOKEN[1],
- PLACEHOLDER_TOKEN[2],
- PLACEHOLDER_TOKEN[3],
- MODALITY_TEXT_TOKEN,
- MODALITY_VOICE_TOKEN,
- MODALITY_INTERLEAVE_TOKEN,
- *SEMANTIC_TOKENS,
- ]
- class FishTokenizer:
- def __init__(self, model_path: str) -> None:
- mergeable_ranks = self.load_tiktoken_bpe(model_path)
- special_token_begin = len(mergeable_ranks)
- self.all_special_tokens_with_ids = {
- token: special_token_begin + i for i, token in enumerate(ALL_SPECIAL_TOKENS)
- }
- self.semantic_id_to_token_id = {
- i: self.all_special_tokens_with_ids[token]
- for i, token in enumerate(SEMANTIC_TOKENS)
- }
- self.semantic_begin_id = self.all_special_tokens_with_ids[SEMANTIC_TOKENS[0]]
- self.semantic_end_id = self.all_special_tokens_with_ids[SEMANTIC_TOKENS[-1]]
- self.tkt_model = tiktoken.core.Encoding(
- name=Path(model_path).stem,
- pat_str=FISH_TIKTOKEN_PATTERN,
- mergeable_ranks=mergeable_ranks,
- special_tokens=self.all_special_tokens_with_ids,
- )
- @staticmethod
- def load_tiktoken_bpe(tiktoken_bpe_file: str) -> dict[bytes, int]:
- data = {}
- for line in open(tiktoken_bpe_file).read().splitlines():
- if not line:
- continue
- token, rank = line.split()
- data[base64.b64decode(token)] = int(rank)
- return data
- def get_token_id(self, token: str) -> int:
- return self.all_special_tokens_with_ids[token]
- def encode(self, s: str, allowed_special: bool | set[str] = True) -> list[int]:
- assert isinstance(s, str)
- subs = []
- for i in range(0, len(s), TIKTOKEN_MAX_ENCODE_CHARS):
- subs.append(s[i : i + TIKTOKEN_MAX_ENCODE_CHARS])
- if allowed_special is True:
- allowed_special = self.tkt_model.special_tokens_set
- elif allowed_special is False:
- allowed_special = set()
- return sum(
- self.tkt_model.encode_batch(
- subs, allowed_special=allowed_special, disallowed_special=set()
- ),
- start=[],
- )
- def decode(self, tokens: list[int]) -> str:
- return self.tkt_model.decode(tokens)
- def save_pretrained(self, path: str):
- path = Path(path)
- path.mkdir(parents=True, exist_ok=True)
- with open(path / "tokenizer.tiktoken", "w") as f:
- for token, rank in self.tkt_model._mergeable_ranks.items():
- f.write(f"{base64.b64encode(token).decode()} {rank}\n")
- with open(path / "special_tokens.json", "w") as f:
- json.dump(
- self.all_special_tokens_with_ids,
- f,
- indent=2,
- ensure_ascii=False,
- )
- @staticmethod
- def from_pretrained(path: str):
- return FishTokenizer(Path(path) / "tokenizer.tiktoken")
- if __name__ == "__main__":
- tokenizer = FishTokenizer("data/mpacks/v1.4-pretrain/tokenizer.all.tiktoken")
- tokenizer.save_pretrained("checkpoints/fish-speech-0.5B")
- tokenizer = FishTokenizer.from_pretrained("checkpoints/fish-speech-0.5B")
- print(
- [
- tokenizer.decode([i])
- for i in tokenizer.encode(f"{BOS_TOKEN}你好,世界!{EOS_TOKEN}")
- ]
- )
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