mirror of
https://git.adityakumar.xyz/llama.cpp.git
synced 2024-11-09 23:29:44 +00:00
5ddf7ea1fb
Small, non-functional changes were made to non-compliant files. These include breaking up long lines, whitespace sanitation and unused import removal. Maximum line length in python files was set to a generous 125 chars, in order to minimize number of changes needed in scripts and general annoyance. The "txt" prompts directory is excluded from the checks as it may contain oddly formatted files and strings for a good reason. Signed-off-by: Jiri Podivin <jpodivin@gmail.com>
1178 lines
47 KiB
Python
1178 lines
47 KiB
Python
import argparse
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import concurrent.futures
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import copy
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import enum
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import faulthandler
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import functools
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import io
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import itertools
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import json
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import math
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import mmap
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import pickle
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import re
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import signal
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import struct
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import sys
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import zipfile
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from abc import ABCMeta, abstractmethod
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from dataclasses import dataclass
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from pathlib import Path
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from typing import (IO, TYPE_CHECKING, Any, Callable, Dict, Iterable, List,
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Literal, Optional, Sequence, Tuple, TypeVar, Union)
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import numpy as np
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from sentencepiece import SentencePieceProcessor # type: ignore
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if TYPE_CHECKING:
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from typing_extensions import TypeAlias
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if hasattr(faulthandler, 'register') and hasattr(signal, 'SIGUSR1'):
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faulthandler.register(signal.SIGUSR1)
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NDArray: 'TypeAlias' = 'np.ndarray[Any, Any]'
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@dataclass(frozen=True)
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class UnquantizedDataType:
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name: str
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DT_F16 = UnquantizedDataType('F16')
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DT_F32 = UnquantizedDataType('F32')
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DT_I32 = UnquantizedDataType('I32')
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DT_BF16 = UnquantizedDataType('BF16')
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@dataclass(frozen=True)
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class QuantizedDataType:
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groupsize: int
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have_addends: bool
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have_g_idx: bool
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DT_Q4_0 = QuantizedDataType(groupsize=32, have_addends=False, have_g_idx=False)
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DT_Q4_1 = QuantizedDataType(groupsize=32, have_addends=True, have_g_idx=False)
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DataType = Union[UnquantizedDataType, QuantizedDataType]
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DATA_TYPE_TO_FTYPE: Dict[DataType, int] = {
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DT_F32: 0,
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DT_F16: 1,
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DT_Q4_0: 2,
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DT_Q4_1: 3,
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}
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FTYPE_TO_DATA_TYPE: Dict[int, DataType] = \
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{ftype: dtype for (dtype, ftype) in DATA_TYPE_TO_FTYPE.items()}
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DATA_TYPE_TO_NUMPY: Dict[DataType, 'np.dtype[Any]'] = {
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DT_BF16: np.dtype(np.uint16),
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DT_F16: np.dtype(np.float16),
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DT_F32: np.dtype(np.float32),
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DT_I32: np.dtype(np.int32),
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}
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NUMPY_TYPE_TO_DATA_TYPE: Dict['np.dtype[Any]', DataType] = \
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{dtype: data_type for (data_type, dtype) in DATA_TYPE_TO_NUMPY.items()}
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class GGMLFileType(enum.Enum):
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AllF32 = 0
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MostlyF16 = 1 # except 1d tensors
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MostlyQ4_0 = 2 # except 1d tensors
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MostlyQ4_1 = 3 # except 1d tensors
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PerLayerIsQ4_1 = 4 # but tok_embeddings.weight and output.weight are F16
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def type_for_tensor(self, name: str, tensor: 'LazyTensor') -> DataType:
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if len(tensor.shape) == 1:
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# 1D tensors are always F32.
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return DT_F32
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elif self == GGMLFileType.AllF32:
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return DT_F32
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elif self == GGMLFileType.MostlyF16:
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return DT_F16
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elif self == GGMLFileType.MostlyQ4_0:
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return DT_Q4_0
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elif self == GGMLFileType.MostlyQ4_1:
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return DT_Q4_1
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elif self == GGMLFileType.PerLayerIsQ4_1:
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if name in ('output.weight', 'tok_embeddings.weight'):
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return DT_F16
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else:
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return DT_Q4_1
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else:
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raise ValueError(self)
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def make_tensors_list() -> List[str]:
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ret = [
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'tok_embeddings.weight',
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'norm.weight',
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'output.weight',
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]
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for i in range(80): # maximum number of layer
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ret += [
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f'layers.{i}.attention.wq.weight',
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f'layers.{i}.attention.wk.weight',
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f'layers.{i}.attention.wv.weight',
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f'layers.{i}.attention.wo.weight',
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f'layers.{i}.attention_norm.weight',
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f'layers.{i}.feed_forward.w1.weight',
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f'layers.{i}.feed_forward.w2.weight',
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f'layers.{i}.feed_forward.w3.weight',
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f'layers.{i}.ffn_norm.weight',
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]
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return ret
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TENSORS_LIST = make_tensors_list()
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TENSORS_SET = set(TENSORS_LIST)
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@dataclass
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class Params:
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n_vocab: int
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n_embd: int
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n_mult: int
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n_head: int
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n_layer: int
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file_type: GGMLFileType
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@staticmethod
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def guessed(model: 'LazyModel', file_type: GGMLFileType) -> 'Params':
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n_vocab, n_embd = model["tok_embeddings.weight"].shape
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return Params(
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n_vocab=n_vocab,
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n_embd=n_embd,
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n_mult=256,
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n_head=n_embd // 128,
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n_layer=next(i for i in itertools.count() if f"layers.{i}.attention.wq.weight" not in model),
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file_type=file_type,
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)
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class SentencePieceVocab:
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def __init__(self, fname_tokenizer: Path, fname_added_tokens: Optional[Path]) -> None:
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self.sentencepiece_tokenizer = SentencePieceProcessor(str(fname_tokenizer))
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added_tokens: Dict[str, int]
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if fname_added_tokens is not None:
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added_tokens = json.load(open(fname_added_tokens))
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else:
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added_tokens = {}
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vocab_size: int = self.sentencepiece_tokenizer.vocab_size()
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expected_ids = list(range(vocab_size, vocab_size + len(added_tokens)))
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actual_ids = sorted(added_tokens.values())
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if expected_ids != actual_ids:
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raise Exception(f"Expected added token IDs to be sequential and start at {len(added_tokens)}; got {actual_ids}")
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items = sorted(added_tokens.items(), key=lambda text_idx: text_idx[1])
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self.added_tokens_list = [text for (text, idx) in items]
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self.vocab_size_base: int = vocab_size
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self.vocab_size: int = self.vocab_size_base + len(self.added_tokens_list)
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self.fname_tokenizer = fname_tokenizer
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self.fname_added_tokens = fname_added_tokens
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def sentencepiece_tokens(self) -> Iterable[Tuple[bytes, float]]:
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tokenizer = self.sentencepiece_tokenizer
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for i in range(tokenizer.vocab_size()):
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text: bytes
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if tokenizer.is_unknown(i):
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text = " \u2047 ".encode("utf-8")
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elif tokenizer.is_control(i):
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text = b""
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elif tokenizer.is_byte(i):
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piece = tokenizer.id_to_piece(i)
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if len(piece) != 6:
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raise Exception(f"Invalid token: {piece}")
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byte_value = int(piece[3:-1], 16)
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text = struct.pack("B", byte_value)
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else:
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text = tokenizer.id_to_piece(i).replace("\u2581", " ").encode("utf-8")
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score: float = tokenizer.get_score(i)
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yield text, score
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def added_tokens(self) -> Iterable[Tuple[bytes, float]]:
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for text in self.added_tokens_list:
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score = -1000.0
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yield text.encode("utf-8"), score
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def all_tokens(self) -> Iterable[Tuple[bytes, float]]:
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yield from self.sentencepiece_tokens()
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yield from self.added_tokens()
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def __repr__(self) -> str:
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return f"<SentencePieceVocab with {self.vocab_size_base} base tokens and {len(self.added_tokens_list)} added tokens>"
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class GGMLVocab:
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def __init__(self, tokens: List[Tuple[bytes, float]]):
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self.tokens = tokens
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self.vocab_size = len(tokens)
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def all_tokens(self) -> Iterable[Tuple[bytes, float]]:
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return self.tokens
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def __repr__(self) -> str:
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return f"<GGMLVocab with {self.vocab_size} tokens>"
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Vocab = Union[SentencePieceVocab, GGMLVocab]
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def permute(weights: NDArray, n_head: int) -> NDArray:
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return (weights.reshape(n_head, 2, weights.shape[0] // n_head // 2, *weights.shape[1:])
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.swapaxes(1, 2)
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.reshape(weights.shape))
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def dequantize_q4(qvalues_pack32: NDArray, scales: NDArray, addends: Optional[NDArray], g_idx: Optional[NDArray]) -> NDArray:
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# First reinterpret each row from a list of int32s containing 8 values each
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# to a list of uint8s containing 2 values each.
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qvalues_pack8 = qvalues_pack32.view(np.uint8)
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# Then split out the two values per int8 (which requires an actual
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# conversion because numpy doesn't natively support int4s).
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qvalues = np.zeros([qvalues_pack8.shape[0], qvalues_pack8.shape[1] * 2], dtype=np.uint8)
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qvalues[:, 0::2] = qvalues_pack8 & 0xf
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qvalues[:, 1::2] = qvalues_pack8 >> 4
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assert addends is None or addends.shape == scales.shape
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assert qvalues.shape[0] == scales.shape[0]
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assert qvalues.shape[1] % scales.shape[1] == 0
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if g_idx is None:
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repeat_count = qvalues.shape[1] // scales.shape[1]
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scales = scales[:, :, np.newaxis]
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if addends is not None:
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addends = addends[:, :, np.newaxis]
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# Reshape so that the below computation broadcasts over scales and addends:
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qvalues.shape = (qvalues.shape[0], scales.shape[1], int(repeat_count))
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else:
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# In this case the scale and addend is selected for each column by g_idx:
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assert addends is not None
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scales = scales[:, g_idx]
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addends = addends[:, g_idx]
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if addends is None:
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# Q4_0
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qvalues = qvalues.view(np.int8)
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qvalues -= 8
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# And do the actual 'value = scale * qvalue + addend' computation.
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values = scales * qvalues
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if addends is not None:
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values += addends
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if g_idx is None:
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values.shape = (values.shape[0], values.shape[1] * values.shape[2])
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return values
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class Tensor(metaclass=ABCMeta):
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data_type: DataType
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@abstractmethod
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def astype(self, data_type: DataType) -> 'Tensor': ...
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@abstractmethod
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def permute(self, n_head: int) -> 'Tensor': ...
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@abstractmethod
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def to_ggml(self) -> 'GGMLCompatibleTensor': ...
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def bf16_to_fp32(bf16_arr: np.ndarray) -> np.ndarray:
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assert bf16_arr.dtype == np.uint16, f"Input array should be of dtype uint16, but got {bf16_arr.dtype}"
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fp32_arr = bf16_arr.astype(np.uint32) << 16
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return fp32_arr.view(np.float32)
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class UnquantizedTensor(Tensor):
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def __init__(self, ndarray: NDArray) -> None:
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assert isinstance(ndarray, np.ndarray)
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self.ndarray = ndarray
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self.data_type = NUMPY_TYPE_TO_DATA_TYPE[ndarray.dtype]
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def astype(self, data_type: DataType) -> Tensor:
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dtype = DATA_TYPE_TO_NUMPY[data_type]
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if self.data_type == DT_BF16:
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self.ndarray = bf16_to_fp32(self.ndarray)
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return UnquantizedTensor(self.ndarray.astype(dtype))
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def to_ggml(self) -> 'UnquantizedTensor':
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return self
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def permute(self, n_head: int) -> 'UnquantizedTensor':
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return UnquantizedTensor(permute(self.ndarray, n_head))
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def load_unquantized(lazy_tensor: 'LazyTensor', expected_dtype: Any = None, convert: bool = False) -> NDArray:
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tensor = lazy_tensor.load()
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assert isinstance(tensor, UnquantizedTensor)
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# double-check:
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actual_shape = list(tensor.ndarray.shape)
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assert actual_shape == lazy_tensor.shape, (actual_shape, lazy_tensor.shape)
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if expected_dtype is not None and expected_dtype != tensor.ndarray.dtype:
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if convert:
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tensor.ndarray = tensor.ndarray.astype(expected_dtype)
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else:
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raise ValueError(f'expected this tensor to have dtype {expected_dtype}, got {tensor.ndarray.dtype}')
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return tensor.ndarray
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class GGMLQuantizedTensor(Tensor):
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data_type: QuantizedDataType
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def __init__(self, ndarray: NDArray, shape: List[int], data_type: DataType) -> None:
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rows, columns = shape
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assert data_type in (DT_Q4_1, DT_Q4_0) # for now
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assert isinstance(data_type, QuantizedDataType) # redundant, but mypy complains without this
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assert columns % data_type.groupsize == 0
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words_in_block = 6 if data_type == DT_Q4_1 else 5
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self.ndarray = ndarray.view(dtype=np.uint32).reshape((rows, columns // data_type.groupsize, words_in_block))
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self.shape = shape[:]
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self.data_type = data_type
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def astype(self, data_type: DataType) -> Tensor:
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if data_type == self.data_type:
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return self
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scales = self.ndarray[:, :, 0].view(np.float32)
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if self.data_type.have_addends:
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addends = self.ndarray[:, :, 1].view(np.float32)
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else:
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addends = None
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qweights = self.ndarray[:, :, -4:].reshape([self.shape[0], self.shape[1] // 8])
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dq = dequantize_q4(qweights, scales, addends, g_idx=None)
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return UnquantizedTensor(dq).astype(data_type)
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def to_ggml(self) -> 'GGMLQuantizedTensor':
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return self
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def permute(self, n_head: int) -> 'GGMLQuantizedTensor':
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return GGMLQuantizedTensor(permute(self.ndarray, n_head), self.shape, self.data_type)
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GGMLCompatibleTensor = Union[UnquantizedTensor, GGMLQuantizedTensor]
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class DeferredPermutedTensor(Tensor):
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def __init__(self, base: Tensor, n_head: int) -> None:
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self.base = base
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self.n_head = n_head
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self.data_type = self.base.data_type
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def astype(self, data_type: DataType) -> Tensor:
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return self.base.astype(data_type).permute(self.n_head)
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def to_ggml(self) -> GGMLCompatibleTensor:
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return self.base.to_ggml().permute(self.n_head)
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def permute(self, n_head: int) -> Tensor:
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raise Exception("shouldn't permute twice")
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class GPTQForLLaMaQuantizedTensor(Tensor):
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def __init__(self, model: 'LazyModel', namebase: str) -> None:
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qweight = load_unquantized(model[f"{namebase}.qweight"], np.int32)
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scales = load_unquantized(model[f"{namebase}.scales"], np.float32, convert=True)
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bias = model.get(f"{namebase}.bias")
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if bias is not None:
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# Q4_1 does not support bias; good thing the bias is always all zeros.
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assert not np.any(load_unquantized(bias))
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if f"{namebase}.zeros" in model:
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zeros = load_unquantized(model[f"{namebase}.zeros"], np.float32)
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else:
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qzeros = load_unquantized(model[f"{namebase}.qzeros"], np.int32)
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assert qzeros.dtype == np.int32
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zeros = dequantize_q4(qzeros, scales, scales, g_idx=None)
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assert zeros.dtype == np.float32
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assert zeros.shape == scales.shape
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# Output is transposed compared to the input, and addends have their sign flipped.
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# Scales and zeros similarly must be transposed but only for newer
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# versions of GPTQ-for-LLaMa; the older versions can be identified by
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# having shape (n_embd, 1).
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qweight = qweight.T
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if scales.shape[1] != 1:
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scales = scales.T
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zeros = zeros.T
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# Output also has signs flipped for the addends.
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self.qweight = qweight
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self.scales = scales
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self.addends = -zeros
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self.g_idx: Optional[NDArray]
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if f"{namebase}.g_idx" in model:
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self.g_idx = load_unquantized(model[f"{namebase}.g_idx"], np.int32)
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assert self.g_idx.shape == (qweight.shape[1] * 8,)
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else:
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self.g_idx = None
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self.shape = [self.qweight.shape[0], self.qweight.shape[1] * 8]
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self.data_type = QuantizedDataType(groupsize=self.groupsize(), have_addends=True,
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have_g_idx=(self.g_idx is not None))
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def inspect(self, row: int, col: int) -> None:
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'''For debugging.'''
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qweight = (self.qweight[row, col // 8] >> (4 * (col & 7))) & 0xf
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if self.g_idx is not None:
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group = self.g_idx[col]
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else:
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group = int(col // self.groupsize())
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scale = self.scales[row, group]
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addend = self.addends[row, group]
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with np.printoptions(precision=None, suppress=True):
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print(f'scale:{scale} addend:{addend} qweight:{qweight}')
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print('possible values:', np.arange(16) * scale + addend)
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print('actual value:', qweight * scale + addend)
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def astype(self, data_type: DataType) -> Tensor:
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if isinstance(data_type, QuantizedDataType):
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assert self.g_idx is None and data_type.have_addends is True and data_type.have_g_idx is False
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return self.regroup(data_type.groupsize)
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dequantized = dequantize_q4(np.ascontiguousarray(self.qweight), self.scales, self.addends, self.g_idx)
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return UnquantizedTensor(dequantized).astype(data_type)
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def groupsize(self) -> int:
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assert self.addends.shape == self.scales.shape
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assert self.shape[1] % self.scales.shape[1] == 0
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return self.shape[1] // self.scales.shape[1]
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def regroup(self, new_groupsize: int = 32) -> 'GPTQForLLaMaQuantizedTensor':
|
|
# Old versions of GPTQ-for-LLaMa shared scales and addends between all the
|
|
# columns in a row. Newer versions share them between every set of N
|
|
# columns in a row, where N is the `groupsize` parameter, usually 128. The
|
|
# output format shares them between every set of 32 columns. To handle
|
|
# this, duplicate scales and addends for every smaller group.
|
|
# (In the above, 'row' and 'column' are in the sense of the output.)
|
|
assert self.g_idx is None
|
|
old_groupsize = self.groupsize()
|
|
assert old_groupsize >= new_groupsize and old_groupsize % new_groupsize == 0, old_groupsize
|
|
ret = copy.copy(self)
|
|
ret.addends = self.addends.repeat(old_groupsize // new_groupsize, axis=1)
|
|
ret.scales = self.scales.repeat(old_groupsize // new_groupsize, axis=1)
|
|
ret.data_type = QuantizedDataType(groupsize=new_groupsize, have_addends=True, have_g_idx=False)
|
|
return ret
|
|
|
|
def permute(self, n_head: int) -> Tensor:
|
|
return DeferredPermutedTensor(self, n_head)
|
|
|
|
def to_ggml(self) -> GGMLQuantizedTensor:
|
|
# The output format looks like this:
|
|
# For each row:
|
|
# For each group of 32 columns:
|
|
# - addend (float32, 4 bytes)
|
|
# - scale (float32, 4 bytes)
|
|
# - weights (int4 * 32, 16 bytes)
|
|
|
|
if self.groupsize() != 32:
|
|
raise Exception("should have been regrouped before converting to ggml")
|
|
|
|
# Since the output format is mixed between integers and floats, we have
|
|
# to hackily view the floats as int32s just so numpy will let us
|
|
# concatenate them.
|
|
addends_view = self.addends.view(dtype=np.int32)[:, :, np.newaxis]
|
|
scales_view = self.scales.view(dtype=np.int32)[:, :, np.newaxis]
|
|
|
|
# Split into groups of 4 columns (i.e. 32 columns of quantized data):
|
|
grouped = self.qweight.reshape([self.qweight.shape[0], self.qweight.shape[1] // 4, 4])
|
|
|
|
# And concatenate:
|
|
grouped = np.concatenate([scales_view, addends_view, grouped], axis=2, casting='no')
|
|
|
|
return GGMLQuantizedTensor(grouped, self.shape, DT_Q4_1)
|
|
|
|
|
|
@dataclass
|
|
class LazyTensor:
|
|
_load: Callable[[], Tensor]
|
|
shape: List[int]
|
|
data_type: DataType
|
|
description: str
|
|
|
|
def load(self) -> Tensor:
|
|
ret = self._load()
|
|
assert ret.data_type == self.data_type, (self.data_type, ret.data_type, self.description)
|
|
return ret
|
|
|
|
def astype(self, data_type: DataType) -> 'LazyTensor':
|
|
self.validate_conversion_to(data_type)
|
|
|
|
def load() -> Tensor:
|
|
return self.load().astype(data_type)
|
|
return LazyTensor(load, self.shape, data_type, f'convert({data_type}) {self.description}')
|
|
|
|
def validate_conversion_to(self, data_type: DataType) -> None:
|
|
if data_type == self.data_type:
|
|
return
|
|
if isinstance(data_type, QuantizedDataType):
|
|
if not isinstance(self.data_type, QuantizedDataType):
|
|
raise Exception(f"Can't turn an unquantized tensor into a quantized type ({data_type})")
|
|
if self.data_type.have_g_idx:
|
|
sys.stderr.write(
|
|
"Error: Input uses the newer GPTQ-for-LLaMa format (using g_idx), "
|
|
"which is not yet natively supported by GGML. "
|
|
"For now you can still convert this model by passing `--outtype f16` to dequantize, "
|
|
"but that will result in a much larger output file for no quality benefit.\n")
|
|
sys.exit(1)
|
|
assert not data_type.have_g_idx and self.data_type.have_addends and data_type.have_addends
|
|
|
|
|
|
LazyModel = Dict[str, LazyTensor]
|
|
|
|
|
|
@dataclass
|
|
class ModelPlus:
|
|
model: LazyModel
|
|
paths: List[Path] # Where this was read from.
|
|
format: Literal['ggml', 'torch', 'safetensors']
|
|
vocab: Optional[Vocab] # For GGML models (which have vocab built in), the vocab.
|
|
|
|
|
|
def merge_sharded(models: List[LazyModel]) -> LazyModel:
|
|
# Original LLaMA models have each file contain one part of each tensor.
|
|
# Use a dict instead of a set to preserve order.
|
|
names = {name: None for model in models for name in model}
|
|
|
|
def convert(name: str) -> LazyTensor:
|
|
lazy_tensors: List[LazyTensor] = [model[name] for model in models]
|
|
if len(lazy_tensors) == 1:
|
|
# only one file; don't go through this procedure since there might
|
|
# be quantized tensors
|
|
return lazy_tensors[0]
|
|
if len(lazy_tensors[0].shape) == 1:
|
|
# the tensor is just duplicated in every file
|
|
return lazy_tensors[0]
|
|
if name.startswith('tok_embeddings.') or \
|
|
name.endswith('.attention.wo.weight') or \
|
|
name.endswith('.feed_forward.w2.weight'):
|
|
# split by columns
|
|
axis = 1
|
|
else:
|
|
# split by rows
|
|
axis = 0
|
|
concatenated_shape = list(lazy_tensors[0].shape)
|
|
concatenated_shape[axis] = sum(tensor.shape[axis] for tensor in lazy_tensors)
|
|
|
|
def load() -> UnquantizedTensor:
|
|
ndarrays = [load_unquantized(tensor) for tensor in lazy_tensors]
|
|
concatenated: NDArray = np.concatenate(ndarrays, axis=axis)
|
|
return UnquantizedTensor(concatenated)
|
|
description = 'concatenated[[' + '] | ['.join(lt.description for lt in lazy_tensors) + ']]'
|
|
return LazyTensor(load, concatenated_shape, lazy_tensors[0].data_type, description)
|
|
return {name: convert(name) for name in names}
|
|
|
|
|
|
def merge_multifile_models(models_plus: List[ModelPlus]) -> ModelPlus:
|
|
formats = set(mp.format for mp in models_plus)
|
|
assert len(formats) == 1, "different formats?"
|
|
format = formats.pop()
|
|
paths = [path for mp in models_plus for path in mp.paths]
|
|
# Use the first non-None vocab, if any.
|
|
try:
|
|
vocab = next(mp.vocab for mp in models_plus if mp.vocab is not None)
|
|
except StopIteration:
|
|
vocab = None
|
|
|
|
if any("model.embed_tokens.weight" in mp.model for mp in models_plus):
|
|
# Transformers models put different tensors in different files, but
|
|
# don't split indivdual tensors between files.
|
|
model: LazyModel = {}
|
|
for mp in models_plus:
|
|
model.update(mp.model)
|
|
else:
|
|
model = merge_sharded([mp.model for mp in models_plus])
|
|
|
|
return ModelPlus(model, paths, format, vocab)
|
|
|
|
|
|
def permute_lazy(lazy_tensor: LazyTensor, n_head: int) -> LazyTensor:
|
|
def load() -> Tensor:
|
|
return lazy_tensor.load().permute(n_head)
|
|
return LazyTensor(load, lazy_tensor.shape, lazy_tensor.data_type, f'permute({n_head}) ' + lazy_tensor.description)
|
|
|
|
|
|
def convert_transformers_to_orig(model: LazyModel) -> LazyModel:
|
|
out: LazyModel = {}
|
|
out["tok_embeddings.weight"] = model["model.embed_tokens.weight"]
|
|
out["norm.weight"] = model["model.norm.weight"]
|
|
out["output.weight"] = model["lm_head.weight"]
|
|
|
|
n_head = model["model.layers.0.self_attn.q_proj.weight"].shape[1] // 128
|
|
for i in itertools.count():
|
|
if f"model.layers.{i}.self_attn.q_proj.weight" not in model:
|
|
break
|
|
out[f"layers.{i}.attention.wq.weight"] = permute_lazy(model[f"model.layers.{i}.self_attn.q_proj.weight"], n_head)
|
|
out[f"layers.{i}.attention.wk.weight"] = permute_lazy(model[f"model.layers.{i}.self_attn.k_proj.weight"], n_head)
|
|
out[f"layers.{i}.attention.wv.weight"] = model[f"model.layers.{i}.self_attn.v_proj.weight"]
|
|
out[f"layers.{i}.attention.wo.weight"] = model[f"model.layers.{i}.self_attn.o_proj.weight"]
|
|
|
|
out[f"layers.{i}.feed_forward.w1.weight"] = model[f"model.layers.{i}.mlp.gate_proj.weight"]
|
|
out[f"layers.{i}.feed_forward.w2.weight"] = model[f"model.layers.{i}.mlp.down_proj.weight"]
|
|
out[f"layers.{i}.feed_forward.w3.weight"] = model[f"model.layers.{i}.mlp.up_proj.weight"]
|
|
|
|
out[f"layers.{i}.attention_norm.weight"] = model[f"model.layers.{i}.input_layernorm.weight"]
|
|
out[f"layers.{i}.ffn_norm.weight"] = model[f"model.layers.{i}.post_attention_layernorm.weight"]
|
|
return out
|
|
|
|
|
|
def handle_quantization(model: LazyModel) -> LazyModel:
|
|
'''Convert a model with entries for 'foo.qweight', 'foo.scales', etc.
|
|
(which resolve to UnquantizedTensors with the raw data) to one with entries
|
|
for 'foo.weight' (which resolve to QuantizedTensors).
|
|
'''
|
|
def convert(name: str) -> Tuple[str, LazyTensor]:
|
|
if name.endswith(".qweight"):
|
|
namebase = name.rsplit('.', 1)[0]
|
|
orig_name = namebase + ".weight"
|
|
|
|
lazy_tensor = model[name]
|
|
assert len(lazy_tensor.shape) == 2
|
|
real_shape = [lazy_tensor.shape[1], lazy_tensor.shape[0] * 8]
|
|
|
|
# Calculate type. This replicates the logic in
|
|
# GPTQForLLaMaQuantizedTensor (which is executed when the modelis
|
|
# actually loaded).
|
|
lazy_scales = model[f"{namebase}.scales"]
|
|
scales_width = 1 if lazy_scales.shape[1] == 1 else lazy_scales.shape[0]
|
|
assert real_shape[1] % scales_width == 0
|
|
groupsize = real_shape[1] // scales_width
|
|
have_g_idx = f"{namebase}.g_idx" in model
|
|
data_type = QuantizedDataType(groupsize=groupsize, have_addends=True, have_g_idx=have_g_idx)
|
|
|
|
def load() -> Tensor:
|
|
return GPTQForLLaMaQuantizedTensor(model, namebase)
|
|
|
|
return (orig_name, LazyTensor(load, real_shape, data_type, '[quantized]'))
|
|
else:
|
|
return (name, model[name])
|
|
return dict(convert(name) for name in model)
|
|
|
|
# Functionality that simulates `torch.load` but where individual tensors are
|
|
# only loaded into memory on demand, not all at once.
|
|
# PyTorch can't do this natively as of time of writing:
|
|
# - https://github.com/pytorch/pytorch/issues/64327
|
|
# This allows us to de-shard without multiplying RAM usage, and also
|
|
# conveniently drops the PyTorch dependency (though we still need numpy).
|
|
|
|
|
|
@dataclass
|
|
class LazyStorageKind:
|
|
data_type: DataType
|
|
|
|
|
|
@dataclass
|
|
class LazyStorage:
|
|
load: Callable[[int, int], NDArray]
|
|
kind: LazyStorageKind
|
|
description: str
|
|
|
|
|
|
class LazyUnpickler(pickle.Unpickler):
|
|
def __init__(self, fp: IO[bytes], data_base_path: str, zip_file: zipfile.ZipFile):
|
|
super().__init__(fp)
|
|
self.data_base_path = data_base_path
|
|
self.zip_file = zip_file
|
|
|
|
def persistent_load(self, pid: Any) -> Any:
|
|
assert pid[0] == 'storage'
|
|
assert isinstance(pid[1], LazyStorageKind)
|
|
data_type = pid[1].data_type
|
|
filename_stem = pid[2]
|
|
filename = self.data_base_path + '/' + filename_stem
|
|
info = self.zip_file.getinfo(filename)
|
|
|
|
def load(offset: int, elm_count: int) -> NDArray:
|
|
dtype = DATA_TYPE_TO_NUMPY.get(data_type)
|
|
if dtype is None:
|
|
raise Exception("tensor stored in unsupported format")
|
|
fp = self.zip_file.open(info)
|
|
fp.seek(offset * dtype.itemsize)
|
|
size = elm_count * dtype.itemsize
|
|
data = fp.read(size)
|
|
assert len(data) == size
|
|
return np.frombuffer(data, dtype)
|
|
description = f'storage data_type={data_type} path-in-zip={filename} path={self.zip_file.filename}'
|
|
return LazyStorage(load=load, kind=pid[1], description=description)
|
|
|
|
# @staticmethod
|
|
def lazy_rebuild_tensor_v2(storage: Any, storage_offset: Any, size: Any, stride: Any,
|
|
# pyright: ignore[reportSelfClsParameterName]
|
|
requires_grad: Any, backward_hooks: Any, metadata: Any = None) -> LazyTensor:
|
|
assert isinstance(storage, LazyStorage)
|
|
|
|
def load() -> UnquantizedTensor:
|
|
elm_count = stride[0] * size[0]
|
|
return UnquantizedTensor(storage.load(storage_offset, elm_count).reshape(size))
|
|
description = f'pickled storage_offset={storage_offset} in {storage.description}'
|
|
return LazyTensor(load, list(size), storage.kind.data_type, description)
|
|
|
|
# @staticmethod
|
|
def rebuild_from_type_v2(func, new_type, args, state):
|
|
return func(*args)
|
|
|
|
CLASSES: Dict[Any, Any] = {
|
|
('torch._tensor', '_rebuild_from_type_v2'): rebuild_from_type_v2,
|
|
('torch._utils', '_rebuild_tensor_v2'): lazy_rebuild_tensor_v2,
|
|
('torch', 'BFloat16Storage'): LazyStorageKind(DT_BF16),
|
|
('torch', 'HalfStorage'): LazyStorageKind(DT_F16),
|
|
('torch', 'FloatStorage'): LazyStorageKind(DT_F32),
|
|
('torch', 'IntStorage'): LazyStorageKind(DT_I32),
|
|
('torch', 'Tensor'): LazyTensor,
|
|
}
|
|
|
|
def find_class(self, module: str, name: str) -> Any:
|
|
if not module.startswith('torch'):
|
|
return super().find_class(module, name)
|
|
return self.CLASSES[(module, name)]
|
|
|
|
|
|
def lazy_load_torch_file(outer_fp: IO[bytes], path: Path) -> ModelPlus:
|
|
zf = zipfile.ZipFile(outer_fp)
|
|
pickle_paths = [name for name in zf.namelist() if name.endswith('.pkl')]
|
|
assert len(pickle_paths) == 1, pickle_paths
|
|
pickle_fp = zf.open(pickle_paths[0], 'r')
|
|
unpickler = LazyUnpickler(pickle_fp,
|
|
data_base_path=pickle_paths[0][:-4],
|
|
zip_file=zf)
|
|
model = unpickler.load()
|
|
as_dict = dict(model.items())
|
|
return ModelPlus(model=as_dict, paths=[path], format='torch', vocab=None)
|
|
|
|
|
|
SAFETENSORS_DATA_TYPES: Dict[str, DataType] = {
|
|
'F16': DT_F16,
|
|
'F32': DT_F32,
|
|
'I32': DT_I32,
|
|
}
|
|
|
|
|
|
def lazy_load_safetensors_file(fp: IO[bytes], path: Path) -> ModelPlus:
|
|
header_size, = struct.unpack('<Q', fp.read(8))
|
|
header: Dict[str, Dict[str, Any]] = json.loads(fp.read(header_size))
|
|
# Use mmap for the actual data to avoid race conditions with the file offset.
|
|
mapped = memoryview(mmap.mmap(fp.fileno(), 0, access=mmap.ACCESS_READ))
|
|
byte_buf = mapped[8 + header_size:]
|
|
|
|
def convert(info: Dict[str, Any]) -> LazyTensor:
|
|
data_type = SAFETENSORS_DATA_TYPES[info['dtype']]
|
|
numpy_dtype = DATA_TYPE_TO_NUMPY[data_type]
|
|
shape: List[int] = info['shape']
|
|
begin, end = info['data_offsets']
|
|
assert 0 <= begin <= end <= len(byte_buf)
|
|
assert end - begin == math.prod(shape) * numpy_dtype.itemsize
|
|
buf = byte_buf[begin:end]
|
|
|
|
def load() -> UnquantizedTensor:
|
|
return UnquantizedTensor(np.frombuffer(buf, dtype=numpy_dtype).reshape(shape))
|
|
description = f'safetensors begin={begin} end={end} type={data_type} path={path}'
|
|
return LazyTensor(load, shape, data_type, description)
|
|
model = {name: convert(info) for (name, info) in header.items() if name != '__metadata__'}
|
|
return ModelPlus(model=model, paths=[path], format='safetensors', vocab=None)
|
|
|
|
|
|
def must_read(fp: IO[bytes], length: int) -> bytes:
|
|
ret = fp.read(length)
|
|
if len(ret) < length:
|
|
raise Exception("unexpectedly reached end of file")
|
|
return ret
|
|
|
|
|
|
def lazy_load_ggml_file(fp: io.BufferedReader, path: Path) -> ModelPlus:
|
|
magic = must_read(fp, 4)[::-1]
|
|
if magic in (b'ggmf', b'ggjt'):
|
|
version, = struct.unpack("i", must_read(fp, 4))
|
|
assert version == 1
|
|
else:
|
|
assert magic == b'ggml'
|
|
version = None
|
|
n_vocab, n_embd, n_mult, n_head, n_layer, rot, file_type = struct.unpack('<7i', must_read(fp, 28))
|
|
|
|
tokens: List[Tuple[bytes, float]] = []
|
|
for i in range(n_vocab):
|
|
if i == 32000:
|
|
# HACK: GPT4All messed with the format without changing the magic
|
|
# number. Specifically, they changed the vocab section to contain
|
|
# `n_vocab - 1` tokens instead of `n_vocab` (i.e. omitting the
|
|
# extra pad token). Try to detect if we're reading a file like
|
|
# this.
|
|
orig_pos = fp.tell()
|
|
fp.seek(20, io.SEEK_CUR)
|
|
is_gpt4all = fp.read(21) == b'tok_embeddings.weight'
|
|
fp.seek(orig_pos)
|
|
if is_gpt4all:
|
|
break
|
|
|
|
length, = struct.unpack("i", must_read(fp, 4))
|
|
text = must_read(fp, length)
|
|
if magic != b'ggml':
|
|
score, = struct.unpack("f", must_read(fp, 4))
|
|
tokens.append((text, score))
|
|
vocab = GGMLVocab(tokens) if magic != b'ggml' else None
|
|
|
|
model: LazyModel = {}
|
|
# Use mmap for the actual data to avoid race conditions with the file offset.
|
|
off = fp.raw.tell()
|
|
mapped = memoryview(mmap.mmap(fp.fileno(), 0, access=mmap.ACCESS_READ))
|
|
fp.raw.seek(off) # needed on Windows
|
|
|
|
def read_tensor() -> None: # this is a function so that variables captured in `load` don't change
|
|
shape_len, name_len, ftype = struct.unpack("iii", must_read(fp, 12))
|
|
assert 0 <= shape_len <= 3
|
|
shape: List[int] = list(struct.unpack(f"{shape_len}i", must_read(fp, 4 * shape_len)))
|
|
shape = shape[::-1]
|
|
name = must_read(fp, name_len).decode('utf-8')
|
|
data_type = FTYPE_TO_DATA_TYPE[ftype]
|
|
|
|
if magic == b'ggjt':
|
|
fp.seek((fp.tell() + 31) & -32)
|
|
|
|
if data_type == DT_Q4_1:
|
|
# See GPTQForLLaMaQuantizedTensor.ggml_ndarray()
|
|
size = 24 * (shape[1] // 32) * shape[0]
|
|
elif data_type == DT_Q4_0:
|
|
size = 20 * (shape[1] // 32) * shape[0]
|
|
else:
|
|
numpy_dtype = DATA_TYPE_TO_NUMPY[data_type]
|
|
elm_count = math.prod(shape)
|
|
size = elm_count * numpy_dtype.itemsize
|
|
offset = fp.tell()
|
|
buf = mapped[offset:offset+size]
|
|
fp.seek(size, io.SEEK_CUR)
|
|
|
|
def load() -> Tensor:
|
|
if isinstance(data_type, QuantizedDataType):
|
|
ndarray = np.frombuffer(buf, dtype=np.uint32)
|
|
return GGMLQuantizedTensor(ndarray, shape, data_type)
|
|
else:
|
|
return UnquantizedTensor(np.frombuffer(buf, dtype=numpy_dtype).reshape(shape))
|
|
description = f'ggml offset={offset} type={data_type} path={path}'
|
|
model[name] = LazyTensor(load, shape, data_type, description)
|
|
|
|
while fp.read(1) != b'':
|
|
fp.seek(-1, io.SEEK_CUR)
|
|
read_tensor()
|
|
|
|
return ModelPlus(model=model, paths=[path], format='ggml', vocab=vocab)
|
|
|
|
|
|
@functools.lru_cache(maxsize=None)
|
|
def lazy_load_file(path: Path) -> ModelPlus:
|
|
fp = open(path, 'rb')
|
|
first8 = fp.read(8)
|
|
fp.seek(0)
|
|
if first8[:2] == b'PK':
|
|
# A zip file, i.e. PyTorch format
|
|
return lazy_load_torch_file(fp, path)
|
|
elif first8[2:4] == b'gg':
|
|
# GGML format
|
|
return lazy_load_ggml_file(fp, path)
|
|
elif struct.unpack('<Q', first8)[0] < 16 * 1024 * 1024:
|
|
# Probably safetensors
|
|
return lazy_load_safetensors_file(fp, path)
|
|
else:
|
|
raise ValueError(f"unknown format: {path}")
|
|
|
|
|
|
In = TypeVar('In')
|
|
Out = TypeVar('Out')
|
|
|
|
|
|
def bounded_parallel_map(func: Callable[[In], Out], iterable: Iterable[In], concurrency: int) -> Iterable[Out]:
|
|
'''Parallel map, but with backpressure. If the caller doesn't call `next`
|
|
fast enough, this will stop calling `func` at some point rather than
|
|
letting results pile up in memory. Specifically, there is a max of one
|
|
output value buffered per thread.'''
|
|
with concurrent.futures.ThreadPoolExecutor() as executor:
|
|
futures: List[concurrent.futures.Future[Out]] = []
|
|
items_rev = list(iterable)[::-1]
|
|
for i in range(min(concurrency, len(items_rev))):
|
|
futures.append(executor.submit(func, items_rev.pop()))
|
|
while futures:
|
|
result = futures.pop(0).result()
|
|
if items_rev:
|
|
futures.append(executor.submit(func, items_rev.pop()))
|
|
yield result
|
|
|
|
|
|
def check_vocab_size(params: Params, vocab: Vocab) -> None:
|
|
if params.n_vocab != vocab.vocab_size:
|
|
# GGMLVocab comes from the same file as the model so shouldn't mismatch:
|
|
assert isinstance(vocab, SentencePieceVocab)
|
|
if params.n_vocab == vocab.vocab_size_base:
|
|
print("Ignoring added_tokens.json since model matches vocab size without it.")
|
|
vocab.added_tokens_list = []
|
|
vocab.vocab_size = vocab.vocab_size_base
|
|
return
|
|
msg = f"Vocab size mismatch (model has {params.n_vocab}, but {vocab.fname_tokenizer}"
|
|
if vocab.fname_added_tokens is not None:
|
|
msg += f" combined with {vocab.fname_added_tokens}"
|
|
msg += f" has {vocab.vocab_size})."
|
|
if vocab.vocab_size < params.n_vocab < vocab.vocab_size + 20 and vocab.fname_added_tokens is None:
|
|
msg += f" Most likely you are missing added_tokens.json (should be in {vocab.fname_tokenizer.parent})."
|
|
raise Exception(msg)
|
|
|
|
|
|
class OutputFile:
|
|
def __init__(self, fname_out: Path) -> None:
|
|
self.fout = open(fname_out, "wb")
|
|
|
|
def write_file_header(self, params: Params) -> None:
|
|
self.fout.write(b"ggjt"[::-1]) # magic
|
|
values = [
|
|
1, # file version
|
|
params.n_vocab,
|
|
params.n_embd,
|
|
params.n_mult,
|
|
params.n_head,
|
|
params.n_layer,
|
|
params.n_embd // params.n_head, # rot (obsolete)
|
|
params.file_type.value,
|
|
]
|
|
self.fout.write(struct.pack("i" * len(values), *values))
|
|
|
|
def write_tensor_header(self, name: str, shape: Sequence[int], data_type: DataType) -> None:
|
|
sname = name.encode('utf-8')
|
|
self.fout.write(struct.pack("iii", len(shape), len(sname), DATA_TYPE_TO_FTYPE[data_type]))
|
|
self.fout.write(struct.pack("i" * len(shape), *shape[::-1]))
|
|
self.fout.write(sname)
|
|
self.fout.seek((self.fout.tell() + 31) & -32)
|
|
|
|
def write_vocab(self, vocab: Vocab) -> None:
|
|
for text, score in vocab.all_tokens():
|
|
self.fout.write(struct.pack("i", len(text)))
|
|
self.fout.write(text)
|
|
self.fout.write(struct.pack("f", score))
|
|
|
|
@staticmethod
|
|
def write_vocab_only(fname_out: Path, vocab: Vocab) -> None:
|
|
of = OutputFile(fname_out)
|
|
params = Params(n_vocab=vocab.vocab_size, n_embd=0, n_mult=0,
|
|
n_head=1, n_layer=0, file_type=GGMLFileType.AllF32)
|
|
of = OutputFile(fname_out)
|
|
of.write_file_header(params)
|
|
of.write_vocab(vocab)
|
|
of.fout.close()
|
|
|
|
@staticmethod
|
|
def write_all(fname_out: Path, params: Params, model: LazyModel, vocab: Vocab) -> None:
|
|
check_vocab_size(params, vocab)
|
|
of = OutputFile(fname_out)
|
|
of.write_file_header(params)
|
|
print("Writing vocab...")
|
|
of.write_vocab(vocab)
|
|
|
|
def do_item(item: Tuple[str, LazyTensor]) -> NDArray:
|
|
name, lazy_tensor = item
|
|
return lazy_tensor.load().to_ggml().ndarray
|
|
|
|
ndarrays = bounded_parallel_map(do_item, model.items(), concurrency=8)
|
|
for i, ((name, lazy_tensor), ndarray) in enumerate(zip(model.items(), ndarrays)):
|
|
size = ' x '.join(f"{dim:6d}" for dim in lazy_tensor.shape)
|
|
padi = len(str(len(model)))
|
|
print(f"[{i+1:{padi}d}/{len(model)}] Writing tensor {name:38s} | size {size:16} | type {lazy_tensor.data_type}")
|
|
of.write_tensor_header(name, lazy_tensor.shape, lazy_tensor.data_type)
|
|
ndarray.tofile(of.fout)
|
|
of.fout.close()
|
|
|
|
|
|
def pick_output_type(model: LazyModel, output_type_str: Optional[str]) -> GGMLFileType:
|
|
wq_type = model["layers.0.attention.wq.weight"].data_type
|
|
if output_type_str == "f32" or (output_type_str is None and wq_type in (DT_F32, DT_BF16)):
|
|
return GGMLFileType.AllF32
|
|
if output_type_str == "f16" or (output_type_str is None and wq_type == DT_F16):
|
|
return GGMLFileType.MostlyF16
|
|
if output_type_str == "q4_1" or (output_type_str is None and isinstance(wq_type, QuantizedDataType) and
|
|
wq_type.have_addends):
|
|
if isinstance(model["output.weight"].data_type, QuantizedDataType):
|
|
return GGMLFileType.MostlyQ4_1
|
|
else:
|
|
return GGMLFileType.PerLayerIsQ4_1
|
|
if output_type_str == "q4_0" or (output_type_str is None and isinstance(wq_type, QuantizedDataType)):
|
|
return GGMLFileType.MostlyQ4_0
|
|
name_to_type = {name: lazy_tensor.data_type for (name, lazy_tensor) in model.items()}
|
|
raise Exception(f"Unexpected combination of types: {name_to_type}")
|
|
|
|
|
|
def do_necessary_conversions(model: LazyModel) -> LazyModel:
|
|
model = handle_quantization(model)
|
|
|
|
if "lm_head.weight" in model:
|
|
model = convert_transformers_to_orig(model)
|
|
model = filter_and_sort_tensors(model)
|
|
|
|
return model
|
|
|
|
|
|
def convert_to_output_type(model: LazyModel, output_type: GGMLFileType) -> LazyModel:
|
|
return {name: tensor.astype(output_type.type_for_tensor(name, tensor))
|
|
for (name, tensor) in model.items()}
|
|
|
|
|
|
def nth_multifile_path(path: Path, n: int) -> Optional[Path]:
|
|
'''Given any path belonging to a multi-file model (e.g. foo.bin.1), return
|
|
the nth path in the model.
|
|
'''
|
|
# Support the following patterns:
|
|
patterns: List[Tuple[str, str]] = [
|
|
# - x.00.pth, x.01.pth, etc.
|
|
(r'\.[0-9]{2}\.pth$', f'.{n:02}.pth'),
|
|
# - x-00001-of-00002.bin, x-00002-of-00002.bin, etc.
|
|
(r'-[0-9]{5}-of-(.*)$', fr'-{n:05}-of-\1'),
|
|
# x.bin, x.bin.1, etc.
|
|
(r'(\.[0-9]+)?$', r'\1' if n == 0 else fr'\1.{n}')
|
|
]
|
|
for regex, replacement in patterns:
|
|
if re.search(regex, path.name):
|
|
new_path = path.with_name(re.sub(regex, replacement, path.name))
|
|
if new_path.exists():
|
|
return new_path
|
|
return None
|
|
|
|
|
|
def find_multifile_paths(path: Path) -> List[Path]:
|
|
'''Given any path belonging to a multi-file model (e.g. foo.bin.1), return
|
|
the whole list of paths in the model.
|
|
'''
|
|
ret: List[Path] = []
|
|
for i in itertools.count():
|
|
nth_path = nth_multifile_path(path, i)
|
|
if nth_path is None:
|
|
break
|
|
ret.append(nth_path)
|
|
if not ret:
|
|
# No matches. This should only happen if the file was named, e.g.,
|
|
# foo.0, and there was no file named foo. Oh well, try to process it
|
|
# as a single file.
|
|
return [path]
|
|
return ret
|
|
|
|
|
|
def load_some_model(path: Path) -> ModelPlus:
|
|
'''Load a model of any supported format.'''
|
|
# Be extra-friendly and accept either a file or a directory:
|
|
if path.is_dir():
|
|
# Check if it's a set of safetensors files first
|
|
files = list(path.glob("model-00001-of-*.safetensors"))
|
|
if not files:
|
|
# Try the PyTorch patterns too, with lower priority
|
|
globs = ["consolidated.00.pth", "pytorch_model-00001-of-*.bin", "*.pt", "pytorch_model.bin"]
|
|
files = [file for glob in globs for file in path.glob(glob)]
|
|
if not files:
|
|
# Try GGML too, but with lower priority, since if both a non-GGML
|
|
# model and a GGML model exist in the same directory, we assume the
|
|
# latter was converted from the former.
|
|
files = list(path.glob("ggml-model*.bin*"))
|
|
if not files:
|
|
raise Exception(f"Can't find model in directory {path}")
|
|
if len(files) > 1:
|
|
raise Exception(f"Found multiple models in {path}, not sure which to pick: {files}")
|
|
path = files[0]
|
|
|
|
paths = find_multifile_paths(path)
|
|
models_plus: List[ModelPlus] = []
|
|
for path in paths:
|
|
print(f"Loading model file {path}")
|
|
models_plus.append(lazy_load_file(path))
|
|
|
|
model_plus = merge_multifile_models(models_plus)
|
|
return model_plus
|
|
|
|
|
|
def filter_and_sort_tensors(model: LazyModel) -> LazyModel:
|
|
return {name: model[name] for name in TENSORS_LIST if name in model}
|
|
|
|
|
|
def load_vocab(path: Path) -> SentencePieceVocab:
|
|
# Be extra-friendly and accept either a file or a directory. Also, if it's
|
|
# a directory, it might be the model directory, and tokenizer.model might
|
|
# be in the parent of that.
|
|
if path.is_dir():
|
|
path2 = path / "tokenizer.model"
|
|
# Use `.parent` instead of /.. to handle the symlink case better.
|
|
path3 = path.parent / "tokenizer.model"
|
|
if path2.exists():
|
|
path = path2
|
|
elif path3.exists():
|
|
path = path3
|
|
else:
|
|
raise FileNotFoundError(
|
|
f"Could not find tokenizer.model in {path} or its parent; "
|
|
"if it's in another directory, pass the directory as --vocab-dir")
|
|
added_tokens_path = path.parent / "added_tokens.json"
|
|
print(f"Loading vocab file {path}")
|
|
return SentencePieceVocab(path, added_tokens_path if added_tokens_path.exists() else None)
|
|
|
|
|
|
def default_outfile(model_paths: List[Path], params: Params) -> Path:
|
|
namestr = {
|
|
GGMLFileType.AllF32: "f32",
|
|
GGMLFileType.MostlyF16: "f16",
|
|
GGMLFileType.MostlyQ4_0: "q4_0",
|
|
GGMLFileType.MostlyQ4_1: "q4_1",
|
|
GGMLFileType.PerLayerIsQ4_1: "q4_1",
|
|
}[params.file_type]
|
|
ret = model_paths[0].parent / f"ggml-model-{namestr}.bin"
|
|
if ret in model_paths:
|
|
sys.stderr.write(
|
|
f"Error: Default output path ({ret}) would overwrite the input. "
|
|
"Please explicitly specify a path using --outfile.\n")
|
|
sys.exit(1)
|
|
return ret
|
|
|
|
|
|
def do_dump_model(model_plus: ModelPlus) -> None:
|
|
print(f"model_plus.paths = {model_plus.paths!r}")
|
|
print(f"model_plus.format = {model_plus.format!r}")
|
|
print(f"model_plus.vocab = {model_plus.vocab!r}")
|
|
for name, lazy_tensor in model_plus.model.items():
|
|
print(f"{name}: shape={lazy_tensor.shape} type={lazy_tensor.data_type}; {lazy_tensor.description}")
|
|
|
|
|
|
def main(args_in: Optional[List[str]] = None) -> None:
|
|
parser = argparse.ArgumentParser(description="Convert a LLaMa model to a GGML compatible file")
|
|
parser.add_argument("--dump", action="store_true", help="don't convert, just show what's in the model")
|
|
parser.add_argument("--dump-single", action="store_true", help="don't convert, just show what's in a single model file")
|
|
parser.add_argument("--vocab-only", action="store_true", help="extract only the vocab")
|
|
parser.add_argument("--outtype", choices=["f32", "f16", "q4_1", "q4_0"], help="output format (default: based on input)")
|
|
parser.add_argument("--vocab-dir", type=Path, help="directory containing tokenizer.model, if separate from model file")
|
|
parser.add_argument("--outfile", type=Path, help="path to write to; default: based on input")
|
|
parser.add_argument("model", type=Path,
|
|
help="directory containing model file, or model file itself (*.pth, *.pt, *.bin)")
|
|
args = parser.parse_args(args_in)
|
|
|
|
vocab: Vocab
|
|
if args.dump_single:
|
|
model_plus = lazy_load_file(args.model)
|
|
do_dump_model(model_plus)
|
|
elif args.vocab_only:
|
|
vocab = load_vocab(args.vocab_dir or args.model)
|
|
assert args.outfile, "need --outfile if using --vocab-only"
|
|
outfile = args.outfile
|
|
OutputFile.write_vocab_only(outfile, vocab)
|
|
print(f"Wrote {outfile}")
|
|
else:
|
|
model_plus = load_some_model(args.model)
|
|
if args.dump:
|
|
do_dump_model(model_plus)
|
|
return
|
|
if model_plus.vocab is not None and args.vocab_dir is None:
|
|
vocab = model_plus.vocab
|
|
else:
|
|
vocab_dir = args.vocab_dir if args.vocab_dir else model_plus.paths[0].parent
|
|
vocab = load_vocab(vocab_dir)
|
|
model = model_plus.model
|
|
model = do_necessary_conversions(model)
|
|
output_type = pick_output_type(model, args.outtype)
|
|
model = convert_to_output_type(model, output_type)
|
|
params = Params.guessed(model, output_type)
|
|
outfile = args.outfile or default_outfile(model_plus.paths, params)
|
|
OutputFile.write_all(outfile, params, model, vocab)
|
|
print(f"Wrote {outfile}")
|
|
|
|
|
|
if __name__ == '__main__':
|
|
main()
|