mirror of
https://github.com/ggerganov/llama.cpp.git
synced 2024-12-30 16:07:17 +01:00
672a6f1018
Main thing is that the default output filename will take this form {name}{parameters}{finetune}{version}{encoding}{kind} In addition this add and remove some entries in the KV store and adds a metadata class with automatic heuristics capability to derive some values based on model card content * No Change: - Internal GGUF Spec - `general.architecture` - `general.quantization_version` - `general.alignment` - `general.file_type` - General Model Details - `general.name` - `general.author` - `general.version` - `general.description` - Licensing details - `general.license` - Typically represents the converted GGUF repo (Unless made from scratch) - `general.url` - Model Source during conversion - `general.source.url` * Removed: - Model Source during conversion - `general.source.huggingface.repository` * Added: - General Model Details - `general.organization` - `general.finetune` - `general.basename` - `general.quantized_by` - `general.size_label` - Licensing details - `general.license.name` - `general.license.link` - Typically represents the converted GGUF repo (Unless made from scratch) - `general.doi` - `general.uuid` - `general.repo_url` - Model Source during conversion - `general.source.doi` - `general.source.uuid` - `general.source.repo_url` - Base Model Source - `general.base_model.count` - `general.base_model.{id}.name` - `general.base_model.{id}.author` - `general.base_model.{id}.version` - `general.base_model.{id}.organization` - `general.base_model.{id}.url` (Model Website/Paper) - `general.base_model.{id}.doi` - `general.base_model.{id}.uuid` - `general.base_model.{id}.repo_url` (Model Source Repository (git/svn/etc...)) - Array based KV stores - `general.tags` - `general.languages` - `general.datasets` --------- Co-authored-by: compilade <git@compilade.net> Co-authored-by: Xuan Son Nguyen <thichthat@gmail.com>
1441 lines
58 KiB
Python
Executable File
1441 lines
58 KiB
Python
Executable File
#!/usr/bin/env python3
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from __future__ import annotations
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import logging
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import argparse
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import concurrent.futures
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import enum
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import faulthandler
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import functools
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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 os
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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 textwrap
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import time
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import zipfile
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from abc import ABC, abstractmethod
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from concurrent.futures import ProcessPoolExecutor, ThreadPoolExecutor
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from dataclasses import dataclass
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from pathlib import Path
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from typing import TYPE_CHECKING, Any, Callable, IO, Iterable, Literal, TypeVar
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import numpy as np
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if 'NO_LOCAL_GGUF' not in os.environ:
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# use .parent.parent since we are in "examples" directory
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sys.path.insert(1, str(Path(__file__).parent.parent / 'gguf-py'))
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import gguf
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from gguf import BaseVocab, Vocab, NoVocab, BpeVocab, SentencePieceVocab, LlamaHfVocab
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if TYPE_CHECKING:
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from typing_extensions import Self, TypeAlias
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logger = logging.getLogger("convert")
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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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ARCH = gguf.MODEL_ARCH.LLAMA
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DEFAULT_CONCURRENCY = 8
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ADDED_TOKENS_FILE = 'added_tokens.json'
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FAST_TOKENIZER_FILE = 'tokenizer.json'
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#
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# data types
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#
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@dataclass(frozen=True)
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class DataType:
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name: str
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dtype: np.dtype[Any]
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valid_conversions: list[str]
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def elements_to_bytes(self, n_elements: int) -> int:
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return n_elements * self.dtype.itemsize
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@dataclass(frozen=True)
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class UnquantizedDataType(DataType):
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pass
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DT_F16 = UnquantizedDataType('F16', dtype = np.dtype(np.float16), valid_conversions = ['F32', 'Q8_0'])
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DT_F32 = UnquantizedDataType('F32', dtype = np.dtype(np.float32), valid_conversions = ['F16', 'Q8_0'])
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DT_I32 = UnquantizedDataType('I32', dtype = np.dtype(np.int16), valid_conversions = [])
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DT_BF16 = UnquantizedDataType('BF16', dtype = np.dtype(np.uint16), valid_conversions = ['F32', 'F16', 'Q8_0'])
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@dataclass(frozen=True)
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class QuantizedDataType(DataType):
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block_size: int
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quantized_dtype: np.dtype[Any]
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ggml_type: gguf.GGMLQuantizationType
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def quantize(self, arr: NDArray) -> NDArray:
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raise NotImplementedError(f'Quantization for {self.name} not implemented')
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def elements_to_bytes(self, n_elements: int) -> int:
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assert n_elements % self.block_size == 0, f'Invalid number of elements {n_elements} for {self.name} with block size {self.block_size}'
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return self.quantized_dtype.itemsize * (n_elements // self.block_size)
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@dataclass(frozen=True)
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class Q8_0QuantizedDataType(QuantizedDataType):
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# Mini Q8_0 quantization in Python!
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def quantize(self, arr: NDArray) -> NDArray:
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assert arr.size % self.block_size == 0 and arr.size != 0, f'Bad array size {arr.size}'
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assert arr.dtype == np.float32, f'Bad array type {arr.dtype}'
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n_blocks = arr.size // self.block_size
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blocks = arr.reshape((n_blocks, self.block_size))
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# Much faster implementation of block quantization contributed by @Cebtenzzre
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def quantize_blocks_q8_0(blocks: NDArray) -> Iterable[tuple[Any, Any]]:
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d = abs(blocks).max(axis = 1) / np.float32(127)
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with np.errstate(divide = 'ignore'):
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qs = (blocks / d[:, None]).round()
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qs[d == 0] = 0
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yield from zip(d, qs)
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return np.fromiter(quantize_blocks_q8_0(blocks), count = n_blocks, dtype = self.quantized_dtype)
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DT_Q8_0 = Q8_0QuantizedDataType('Q8_0',
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dtype = np.dtype(np.float32), valid_conversions = [],
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ggml_type = gguf.GGMLQuantizationType.Q8_0, block_size = 32,
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quantized_dtype = np.dtype([('d', '<f2'), ('qs', 'i1', (32,))]))
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# Quantized types skipped here because they may also map to np.float32
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NUMPY_TYPE_TO_DATA_TYPE: dict[np.dtype[Any], DataType] = {}
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for dt in (DT_BF16, DT_F16, DT_F32, DT_I32):
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if dt.dtype in NUMPY_TYPE_TO_DATA_TYPE:
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raise ValueError(f'Invalid duplicate data type {dt}')
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NUMPY_TYPE_TO_DATA_TYPE[dt.dtype] = dt
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SAFETENSORS_DATA_TYPES: dict[str, DataType] = {
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'BF16': DT_BF16,
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'F16': DT_F16,
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'F32': DT_F32,
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'I32': DT_I32,
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}
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# TODO: match this with `llama_ftype`
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# TODO: rename to LLAMAFileType
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# TODO: move to `gguf.py`
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class GGMLFileType(enum.IntEnum):
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AllF32 = 0
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MostlyF16 = 1 # except 1d tensors
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MostlyQ8_0 = 7 # except 1d tensors
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def type_for_tensor(self, name: str, tensor: LazyTensor) -> DataType:
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dt = GGML_FILE_TYPE_TO_DATA_TYPE.get(self)
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if dt is None:
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raise ValueError(self)
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# Convert all 1D tensors to F32. Most of the codebase that takes in 1D tensors only handles F32 tensors, and most of the outputs tensors are F32.
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# Also The 1d tensors aren't much of a performance/size issue. So instead of having to have separate F32 and F16 implementations of both, just convert everything to F32 for now.
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return dt if len(tensor.shape) > 1 else DT_F32
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GGML_FILE_TYPE_TO_DATA_TYPE: dict[GGMLFileType, DataType] = {
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GGMLFileType.AllF32 : DT_F32,
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GGMLFileType.MostlyF16 : DT_F16,
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GGMLFileType.MostlyQ8_0: DT_Q8_0,
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}
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#
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# hparams loading
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#
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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_layer: int
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n_ctx: int
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n_ff: int
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n_head: int
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n_head_kv: int
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n_experts: int | None = None
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n_experts_used: int | None = None
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f_norm_eps: float | None = None
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rope_scaling_type: gguf.RopeScalingType | None = None
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f_rope_freq_base: float | None = None
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f_rope_scale: float | None = None
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n_ctx_orig: int | None = None
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rope_finetuned: bool | None = None
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ftype: GGMLFileType | None = None
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# path to the directory containing the model files
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path_model: Path | None = None
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@staticmethod
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def guessed(model: LazyModel) -> Params:
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# try transformer naming first
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n_vocab, n_embd = model["model.embed_tokens.weight"].shape if "model.embed_tokens.weight" in model else model["tok_embeddings.weight"].shape
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# try transformer naming first
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if "model.layers.0.self_attn.q_proj.weight" in model:
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n_layer = next(i for i in itertools.count() if f"model.layers.{i}.self_attn.q_proj.weight" not in model)
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elif "model.layers.0.self_attn.W_pack.weight" in model: # next: try baichuan naming
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n_layer = next(i for i in itertools.count() if f"model.layers.{i}.self_attn.W_pack.weight" not in model)
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else:
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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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if n_layer < 1:
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msg = """\
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failed to guess 'n_layer'. This model is unknown or unsupported.
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Suggestion: provide 'config.json' of the model in the same directory containing model files."""
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raise KeyError(textwrap.dedent(msg))
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n_head = n_embd // 128 # guessed
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n_mult = 256 # guessed
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# TODO: verify this
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n_ff = int(2 * (4 * n_embd) / 3)
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n_ff = n_mult * ((n_ff + n_mult - 1) // n_mult)
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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_layer = n_layer,
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n_ctx = -1,
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n_ff = n_ff,
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n_head = n_head,
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n_head_kv = n_head,
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f_norm_eps = 1e-5,
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)
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@staticmethod
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def loadHFTransformerJson(model: LazyModel, config_path: Path) -> Params:
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with open(config_path) as f:
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config = json.load(f)
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rope_scaling_type = f_rope_scale = n_ctx_orig = rope_finetuned = None
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rope_scaling = config.get("rope_scaling")
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if rope_scaling is not None and (typ := rope_scaling.get("type")):
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rope_factor = rope_scaling.get("factor")
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f_rope_scale = rope_factor
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if typ == "linear":
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rope_scaling_type = gguf.RopeScalingType.LINEAR
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elif typ == "yarn":
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rope_scaling_type = gguf.RopeScalingType.YARN
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n_ctx_orig = rope_scaling['original_max_position_embeddings']
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rope_finetuned = rope_scaling['finetuned']
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else:
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raise NotImplementedError(f'Unknown rope scaling type: {typ}')
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if "max_sequence_length" in config:
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n_ctx = config["max_sequence_length"]
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elif "max_position_embeddings" in config:
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n_ctx = config["max_position_embeddings"]
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else:
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msg = """\
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failed to guess 'n_ctx'. This model is unknown or unsupported.
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Suggestion: provide 'config.json' of the model in the same directory containing model files."""
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raise KeyError(textwrap.dedent(msg))
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n_experts = None
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n_experts_used = None
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if "num_local_experts" in config:
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n_experts = config["num_local_experts"]
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n_experts_used = config["num_experts_per_tok"]
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return Params(
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n_vocab = config["vocab_size"],
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n_embd = config["hidden_size"],
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n_layer = config["num_hidden_layers"],
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n_ctx = n_ctx,
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n_ff = config["intermediate_size"],
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n_head = (n_head := config["num_attention_heads"]),
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n_head_kv = config.get("num_key_value_heads", n_head),
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n_experts = n_experts,
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n_experts_used = n_experts_used,
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f_norm_eps = config["rms_norm_eps"],
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f_rope_freq_base = config.get("rope_theta"),
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rope_scaling_type = rope_scaling_type,
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f_rope_scale = f_rope_scale,
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n_ctx_orig = n_ctx_orig,
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rope_finetuned = rope_finetuned,
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)
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# LLaMA v2 70B params.json
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# {"dim": 8192, "multiple_of": 4096, "ffn_dim_multiplier": 1.3, "n_heads": 64, "n_kv_heads": 8, "n_layers": 80, "norm_eps": 1e-05, "vocab_size": -1}
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@staticmethod
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def loadOriginalParamsJson(model: LazyModel, config_path: Path) -> Params:
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with open(config_path) as f:
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config = json.load(f)
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n_experts = None
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n_experts_used = None
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f_rope_freq_base = None
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n_ff = None
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# hack to determine LLaMA v1 vs v2 vs CodeLlama
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if config.get("moe"):
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# Mixtral
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n_ctx = 32768
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elif config.get("rope_theta") == 1000000:
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# CodeLlama
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n_ctx = 16384
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elif config["norm_eps"] == 1e-05:
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# LLaMA v2
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n_ctx = 4096
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else:
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# LLaMA v1
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n_ctx = 2048
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if "layers.0.feed_forward.w1.weight" in model:
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n_ff = model["layers.0.feed_forward.w1.weight"].shape[0]
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if config.get("moe"):
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n_ff = model["layers.0.feed_forward.experts.0.w1.weight"].shape[0]
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n_experts = config["moe"]["num_experts"]
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n_experts_used = config["moe"]["num_experts_per_tok"]
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f_rope_freq_base = 1e6
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assert n_ff is not None
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return Params(
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n_vocab = model["tok_embeddings.weight"].shape[0],
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n_embd = config["dim"],
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n_layer = config["n_layers"],
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n_ctx = n_ctx,
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n_ff = n_ff,
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n_head = (n_head := config["n_heads"]),
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n_head_kv = config.get("n_kv_heads", n_head),
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n_experts = n_experts,
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n_experts_used = n_experts_used,
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f_norm_eps = config["norm_eps"],
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f_rope_freq_base = config.get("rope_theta", f_rope_freq_base),
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)
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@staticmethod
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def load(model_plus: ModelPlus) -> Params:
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hf_config_path = model_plus.paths[0].parent / "config.json"
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orig_config_path = model_plus.paths[0].parent / "params.json"
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if hf_config_path.exists():
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params = Params.loadHFTransformerJson(model_plus.model, hf_config_path)
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elif orig_config_path.exists():
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params = Params.loadOriginalParamsJson(model_plus.model, orig_config_path)
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elif model_plus.format != 'none':
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params = Params.guessed(model_plus.model)
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else:
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raise ValueError('Cannot guess params when model format is none')
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params.path_model = model_plus.paths[0].parent
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return params
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#
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# data loading
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# TODO: reuse (probably move to gguf.py?)
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#
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def permute(weights: NDArray, n_head: int, n_head_kv: int) -> NDArray:
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if n_head_kv is not None and n_head != n_head_kv:
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n_head = n_head_kv
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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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class Tensor(ABC):
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ndarray: NDArray
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data_type: DataType
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@abstractmethod
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def astype(self, data_type: DataType) -> Self: ...
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@abstractmethod
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def permute(self, n_head: int, n_head_kv: int) -> Self: ...
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@abstractmethod
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def permute_part(self, n_part: int, n_head: int, n_head_kv: int) -> Self: ...
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@abstractmethod
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def part(self, n_part: int) -> Self: ...
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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[Any, np.dtype[np.uint16]]) -> 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):
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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) -> UnquantizedTensor:
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dtype = data_type.dtype
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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) -> Self:
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return self
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def permute_part(self, n_part: int, n_head: int, n_head_kv: int) -> UnquantizedTensor:
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r = self.ndarray.shape[0] // 3
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return UnquantizedTensor(permute(self.ndarray[r * n_part : r * n_part + r, ...], n_head, n_head_kv))
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def part(self, n_part: int) -> UnquantizedTensor:
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r = self.ndarray.shape[0] // 3
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return UnquantizedTensor(self.ndarray[r * n_part : r * n_part + r, ...])
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def permute(self, n_head: int, n_head_kv: int) -> UnquantizedTensor:
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return UnquantizedTensor(permute(self.ndarray, n_head, n_head_kv))
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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)
|
|
if expected_dtype is not None and expected_dtype != tensor.ndarray.dtype:
|
|
if convert:
|
|
tensor.ndarray = tensor.ndarray.astype(expected_dtype)
|
|
else:
|
|
raise ValueError(f'expected this tensor to have dtype {expected_dtype}, got {tensor.ndarray.dtype}')
|
|
|
|
return tensor.ndarray
|
|
|
|
|
|
GGMLCompatibleTensor = UnquantizedTensor
|
|
|
|
|
|
@dataclass
|
|
class LazyTensor:
|
|
_load: Callable[[], Tensor]
|
|
shape: list[int]
|
|
data_type: DataType
|
|
description: str
|
|
|
|
def load(self) -> Tensor:
|
|
ret = self._load()
|
|
# Should be okay if it maps to the same numpy type?
|
|
assert ret.data_type == self.data_type or (self.data_type.dtype == ret.data_type.dtype), \
|
|
(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 and data_type.name not in self.data_type.valid_conversions:
|
|
raise ValueError(f'Cannot validate conversion from {self.data_type} to {data_type}.')
|
|
|
|
|
|
LazyModel: TypeAlias = 'dict[str, LazyTensor]'
|
|
|
|
ModelFormat: TypeAlias = Literal['ggml', 'torch', 'safetensors', 'none']
|
|
|
|
@dataclass
|
|
class ModelPlus:
|
|
model: LazyModel
|
|
paths: list[Path] # Where this was read from.
|
|
format: ModelFormat
|
|
vocab: BaseVocab | None # 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 = [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 = 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[ModelFormat] = 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 individual 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, n_head_kv: int) -> LazyTensor:
|
|
def load() -> Tensor:
|
|
return lazy_tensor.load().permute(n_head, n_head_kv)
|
|
return LazyTensor(load, lazy_tensor.shape, lazy_tensor.data_type, f'permute({n_head}, {n_head_kv}) ' + lazy_tensor.description)
|
|
|
|
|
|
def permute_part_lazy(lazy_tensor: LazyTensor, n_part: int, n_head: int, n_head_kv: int) -> LazyTensor:
|
|
def load() -> Tensor:
|
|
return lazy_tensor.load().permute_part(n_part, n_head, n_head_kv)
|
|
s = lazy_tensor.shape.copy()
|
|
s[0] = s[0] // 3
|
|
return LazyTensor(load, s, lazy_tensor.data_type, f'permute({n_head}, {n_head_kv}) ' + lazy_tensor.description)
|
|
|
|
|
|
def part_lazy(lazy_tensor: LazyTensor, n_part: int) -> LazyTensor:
|
|
def load() -> Tensor:
|
|
return lazy_tensor.load().part(n_part)
|
|
s = lazy_tensor.shape.copy()
|
|
s[0] = s[0] // 3
|
|
return LazyTensor(load, s, lazy_tensor.data_type, 'part ' + lazy_tensor.description)
|
|
|
|
|
|
def pack_experts_lazy(lazy_tensors: list[LazyTensor]) -> LazyTensor:
|
|
def load() -> Tensor:
|
|
tensors = [lazy_tensor.load() for lazy_tensor in lazy_tensors]
|
|
return UnquantizedTensor(np.array([tensor.ndarray for tensor in tensors]))
|
|
s = lazy_tensors[0].shape.copy()
|
|
s.insert(0, len(lazy_tensors))
|
|
return LazyTensor(load, s, lazy_tensors[0].data_type, 'pack_experts ' + ' | '.join(lt.description for lt in lazy_tensors))
|
|
|
|
|
|
# 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 = f'{self.data_base_path}/{filename_stem}'
|
|
info = self.zip_file.getinfo(filename)
|
|
|
|
def load(offset: int, elm_count: int) -> NDArray:
|
|
dtype = data_type.dtype
|
|
with self.zip_file.open(info) as fp:
|
|
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,
|
|
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[tuple[str, str], type[LazyTensor] | LazyStorageKind] = {
|
|
# getattr used here as a workaround for mypy not being smart enough to determine
|
|
# the staticmethods have a __func__ attribute.
|
|
('torch._tensor', '_rebuild_from_type_v2'): getattr(rebuild_from_type_v2, '__func__'),
|
|
('torch._utils', '_rebuild_tensor_v2'): getattr(lazy_rebuild_tensor_v2, '__func__'),
|
|
('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()
|
|
if 'model' in model: model = model['model']
|
|
as_dict = dict(model.items())
|
|
return ModelPlus(model=as_dict, paths=[path], format='torch', vocab=None)
|
|
|
|
|
|
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.dtype
|
|
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 EOFError("unexpectedly reached end of file")
|
|
return ret
|
|
|
|
|
|
@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 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, max_workers: int | None = None, use_processpool_executor: bool = False) -> 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.'''
|
|
if concurrency < 2:
|
|
yield from map(func, iterable)
|
|
# Not reached.
|
|
iterable = iter(iterable)
|
|
executor_class: type[ThreadPoolExecutor] | type[ProcessPoolExecutor]
|
|
if use_processpool_executor:
|
|
executor_class = ProcessPoolExecutor
|
|
else:
|
|
executor_class = ThreadPoolExecutor
|
|
with executor_class(max_workers=max_workers) as executor:
|
|
futures: list[concurrent.futures.Future[Out]] = []
|
|
done = False
|
|
for _ in range(concurrency):
|
|
try:
|
|
futures.append(executor.submit(func, next(iterable)))
|
|
except StopIteration:
|
|
done = True
|
|
break
|
|
|
|
while futures:
|
|
result = futures.pop(0).result()
|
|
while not done and len(futures) < concurrency:
|
|
try:
|
|
futures.append(executor.submit(func, next(iterable)))
|
|
except StopIteration:
|
|
done = True
|
|
break
|
|
yield result
|
|
|
|
|
|
def check_vocab_size(params: Params, vocab: BaseVocab, pad_vocab: bool = False) -> None:
|
|
# Handle special case where the model's vocab size is not set
|
|
if params.n_vocab == -1:
|
|
raise ValueError(
|
|
"The model's vocab size is set to -1 in params.json. Please update it manually."
|
|
+ (f" Maybe {vocab.vocab_size}?" if isinstance(vocab, Vocab) else ""),
|
|
)
|
|
if not isinstance(vocab, Vocab):
|
|
return # model has no vocab
|
|
|
|
# Check for a vocab size mismatch
|
|
if params.n_vocab == vocab.vocab_size:
|
|
logger.warning("Ignoring added_tokens.json since model matches vocab size without it.")
|
|
return
|
|
|
|
if pad_vocab and params.n_vocab > vocab.vocab_size:
|
|
pad_count = params.n_vocab - vocab.vocab_size
|
|
logger.debug(
|
|
f"Padding vocab with {pad_count} token(s) - <dummy00001> through <dummy{pad_count:05}>"
|
|
)
|
|
for i in range(1, pad_count + 1):
|
|
vocab.added_tokens_dict[f"<dummy{i:05}>"] = -1
|
|
vocab.added_tokens_list.append(f"<dummy{i:05}>")
|
|
vocab.vocab_size = params.n_vocab
|
|
return
|
|
|
|
msg = f"Vocab size mismatch (model has {params.n_vocab}, but {vocab.fname_tokenizer} has {vocab.vocab_size})."
|
|
if vocab.vocab_size < params.n_vocab < vocab.vocab_size + 20:
|
|
msg += f" Most likely you are missing added_tokens.json (should be in {vocab.fname_tokenizer.parent})."
|
|
if vocab.vocab_size < params.n_vocab:
|
|
msg += " Add the --pad-vocab option and try again."
|
|
|
|
raise ValueError(msg)
|
|
|
|
|
|
class OutputFile:
|
|
def __init__(self, fname_out: Path, endianess:gguf.GGUFEndian = gguf.GGUFEndian.LITTLE):
|
|
self.gguf = gguf.GGUFWriter(fname_out, gguf.MODEL_ARCH_NAMES[ARCH], endianess=endianess)
|
|
|
|
def add_meta_model(self, params: Params, metadata: gguf.Metadata | None) -> None:
|
|
# Metadata About The Model And Its Provenence
|
|
name = "LLaMA"
|
|
if metadata is not None and metadata.name is not None:
|
|
name = metadata.name
|
|
elif params.path_model is not None:
|
|
name = params.path_model.name
|
|
elif params.n_ctx == 4096:
|
|
# Heuristic detection of LLaMA v2 model
|
|
name = "LLaMA v2"
|
|
|
|
self.gguf.add_name(name)
|
|
|
|
if metadata is not None:
|
|
if metadata.author is not None:
|
|
self.gguf.add_author(metadata.author)
|
|
if metadata.version is not None:
|
|
self.gguf.add_version(metadata.version)
|
|
if metadata.organization is not None:
|
|
self.gguf.add_organization(metadata.organization)
|
|
|
|
if metadata.finetune is not None:
|
|
self.gguf.add_finetune(metadata.finetune)
|
|
if metadata.basename is not None:
|
|
self.gguf.add_basename(metadata.basename)
|
|
|
|
if metadata.description is not None:
|
|
self.gguf.add_description(metadata.description)
|
|
if metadata.quantized_by is not None:
|
|
self.gguf.add_quantized_by(metadata.quantized_by)
|
|
|
|
if metadata.size_label is not None:
|
|
self.gguf.add_size_label(metadata.size_label)
|
|
|
|
if metadata.license is not None:
|
|
self.gguf.add_license(metadata.license)
|
|
if metadata.license_name is not None:
|
|
self.gguf.add_license_name(metadata.license_name)
|
|
if metadata.license_link is not None:
|
|
self.gguf.add_license_link(metadata.license_link)
|
|
|
|
if metadata.url is not None:
|
|
self.gguf.add_url(metadata.url)
|
|
if metadata.doi is not None:
|
|
self.gguf.add_doi(metadata.doi)
|
|
if metadata.uuid is not None:
|
|
self.gguf.add_uuid(metadata.uuid)
|
|
if metadata.repo_url is not None:
|
|
self.gguf.add_repo_url(metadata.repo_url)
|
|
|
|
if metadata.source_url is not None:
|
|
self.gguf.add_source_url(metadata.source_url)
|
|
if metadata.source_doi is not None:
|
|
self.gguf.add_source_doi(metadata.source_doi)
|
|
if metadata.source_uuid is not None:
|
|
self.gguf.add_source_uuid(metadata.source_uuid)
|
|
if metadata.source_repo_url is not None:
|
|
self.gguf.add_source_repo_url(metadata.source_repo_url)
|
|
|
|
if metadata.base_models is not None:
|
|
self.gguf.add_base_model_count(len(metadata.base_models))
|
|
for key, base_model_entry in enumerate(metadata.base_models):
|
|
if "name" in base_model_entry:
|
|
self.gguf.add_base_model_name(key, base_model_entry["name"])
|
|
if "author" in base_model_entry:
|
|
self.gguf.add_base_model_author(key, base_model_entry["author"])
|
|
if "version" in base_model_entry:
|
|
self.gguf.add_base_model_version(key, base_model_entry["version"])
|
|
if "organization" in base_model_entry:
|
|
self.gguf.add_base_model_organization(key, base_model_entry["organization"])
|
|
if "url" in base_model_entry:
|
|
self.gguf.add_base_model_url(key, base_model_entry["url"])
|
|
if "doi" in base_model_entry:
|
|
self.gguf.add_base_model_doi(key, base_model_entry["doi"])
|
|
if "uuid" in base_model_entry:
|
|
self.gguf.add_base_model_uuid(key, base_model_entry["uuid"])
|
|
if "repo_url" in base_model_entry:
|
|
self.gguf.add_base_model_repo_url(key, base_model_entry["repo_url"])
|
|
|
|
if metadata.tags is not None:
|
|
self.gguf.add_tags(metadata.tags)
|
|
if metadata.languages is not None:
|
|
self.gguf.add_languages(metadata.languages)
|
|
if metadata.datasets is not None:
|
|
self.gguf.add_datasets(metadata.datasets)
|
|
|
|
def add_meta_arch(self, params: Params) -> None:
|
|
# Metadata About The Neural Architecture Itself
|
|
self.gguf.add_vocab_size(params.n_vocab)
|
|
self.gguf.add_context_length(params.n_ctx)
|
|
self.gguf.add_embedding_length(params.n_embd)
|
|
self.gguf.add_block_count(params.n_layer)
|
|
self.gguf.add_feed_forward_length(params.n_ff)
|
|
self.gguf.add_rope_dimension_count(params.n_embd // params.n_head)
|
|
self.gguf.add_head_count (params.n_head)
|
|
self.gguf.add_head_count_kv (params.n_head_kv)
|
|
|
|
if params.n_experts:
|
|
self.gguf.add_expert_count(params.n_experts)
|
|
|
|
if params.n_experts_used:
|
|
self.gguf.add_expert_used_count(params.n_experts_used)
|
|
|
|
if params.f_norm_eps:
|
|
self.gguf.add_layer_norm_rms_eps(params.f_norm_eps)
|
|
else:
|
|
raise ValueError('f_norm_eps is None')
|
|
|
|
if params.f_rope_freq_base is not None:
|
|
self.gguf.add_rope_freq_base(params.f_rope_freq_base)
|
|
|
|
if params.rope_scaling_type:
|
|
assert params.f_rope_scale is not None
|
|
self.gguf.add_rope_scaling_type(params.rope_scaling_type)
|
|
self.gguf.add_rope_scaling_factor(params.f_rope_scale)
|
|
|
|
if params.n_ctx_orig is not None:
|
|
self.gguf.add_rope_scaling_orig_ctx_len(params.n_ctx_orig)
|
|
|
|
if params.rope_finetuned is not None:
|
|
self.gguf.add_rope_scaling_finetuned(params.rope_finetuned)
|
|
|
|
if params.ftype is not None:
|
|
self.gguf.add_file_type(params.ftype)
|
|
|
|
def extract_vocabulary_from_model(self, vocab: Vocab) -> tuple[list[bytes], list[float], list[gguf.TokenType]]:
|
|
tokens = []
|
|
scores = []
|
|
toktypes = []
|
|
|
|
# NOTE: `all_tokens` returns the base vocabulary and added tokens
|
|
for text, score, toktype in vocab.all_tokens():
|
|
tokens.append(text)
|
|
scores.append(score)
|
|
toktypes.append(toktype)
|
|
|
|
assert len(tokens) == vocab.vocab_size
|
|
|
|
return tokens, scores, toktypes
|
|
|
|
def add_meta_vocab(self, vocab: Vocab) -> None:
|
|
# Ensure that tokenizer_model is added to the GGUF model
|
|
self.gguf.add_tokenizer_model(vocab.tokenizer_model)
|
|
|
|
# Extract model vocabulary for model conversion
|
|
tokens, scores, toktypes = self.extract_vocabulary_from_model(vocab)
|
|
|
|
# Add extracted token information for model conversion
|
|
self.gguf.add_token_list(tokens)
|
|
self.gguf.add_token_scores(scores)
|
|
self.gguf.add_token_types(toktypes)
|
|
|
|
def add_meta_special_vocab(self, svocab: gguf.SpecialVocab) -> None:
|
|
svocab.add_to_gguf(self.gguf)
|
|
|
|
def add_tensor_info(self, name: str, tensor: LazyTensor) -> None:
|
|
n_elements = int(np.prod(tensor.shape))
|
|
raw_dtype = getattr(tensor.data_type, 'ggml_type', None)
|
|
data_type = getattr(tensor.data_type, 'quantized_type', None) or tensor.data_type.dtype
|
|
data_nbytes = tensor.data_type.elements_to_bytes(n_elements)
|
|
self.gguf.add_tensor_info(name, tensor.shape, data_type, data_nbytes, raw_dtype=raw_dtype)
|
|
|
|
def write_meta(self) -> None:
|
|
self.gguf.write_header_to_file()
|
|
self.gguf.write_kv_data_to_file()
|
|
|
|
def write_tensor_info(self) -> None:
|
|
self.gguf.write_ti_data_to_file()
|
|
|
|
def write_tensor_data(self, ftype: GGMLFileType, model: LazyModel, concurrency: int) -> None:
|
|
ndarrays_inner = bounded_parallel_map(OutputFile.do_item, model.items(), concurrency=concurrency)
|
|
if ftype == GGMLFileType.MostlyQ8_0:
|
|
ndarrays = bounded_parallel_map(
|
|
OutputFile.maybe_do_quantize, ndarrays_inner, concurrency=concurrency, max_workers=concurrency,
|
|
use_processpool_executor=True,
|
|
)
|
|
else:
|
|
ndarrays = map(OutputFile.maybe_do_quantize, ndarrays_inner)
|
|
|
|
start = time.time()
|
|
for i, ((name, lazy_tensor), ndarray) in enumerate(zip(model.items(), ndarrays)):
|
|
elapsed = time.time() - start
|
|
size = ' x '.join(f"{dim:6d}" for dim in lazy_tensor.shape)
|
|
padi = len(str(len(model)))
|
|
logger.info(
|
|
f"[{i + 1:{padi}d}/{len(model)}] Writing tensor {name:38s} | size {size:16} | type {lazy_tensor.data_type.name:4} | T+{int(elapsed):4}"
|
|
)
|
|
self.gguf.write_tensor_data(ndarray)
|
|
|
|
def close(self) -> None:
|
|
self.gguf.close()
|
|
|
|
@staticmethod
|
|
def write_vocab_only(
|
|
fname_out: Path, params: Params, vocab: Vocab, svocab: gguf.SpecialVocab,
|
|
endianess: gguf.GGUFEndian = gguf.GGUFEndian.LITTLE, pad_vocab: bool = False, metadata: gguf.Metadata | None = None,
|
|
) -> None:
|
|
check_vocab_size(params, vocab, pad_vocab=pad_vocab)
|
|
|
|
of = OutputFile(fname_out, endianess=endianess)
|
|
|
|
# meta data
|
|
of.add_meta_model(params, metadata)
|
|
of.add_meta_arch(params)
|
|
of.add_meta_vocab(vocab)
|
|
of.add_meta_special_vocab(svocab)
|
|
|
|
of.write_meta()
|
|
|
|
of.close()
|
|
|
|
@staticmethod
|
|
def do_item(item: tuple[str, LazyTensor]) -> tuple[DataType, NDArray]:
|
|
name, lazy_tensor = item
|
|
tensor = lazy_tensor.load().to_ggml()
|
|
return (lazy_tensor.data_type, tensor.ndarray)
|
|
|
|
@staticmethod
|
|
def maybe_do_quantize(item: tuple[DataType, NDArray]) -> NDArray:
|
|
dt, arr = item
|
|
if not isinstance(dt, QuantizedDataType):
|
|
return arr
|
|
return dt.quantize(arr)
|
|
|
|
@staticmethod
|
|
def write_all(
|
|
fname_out: Path, ftype: GGMLFileType, params: Params, model: LazyModel, vocab: BaseVocab, svocab: gguf.SpecialVocab,
|
|
concurrency: int = DEFAULT_CONCURRENCY, endianess: gguf.GGUFEndian = gguf.GGUFEndian.LITTLE,
|
|
pad_vocab: bool = False,
|
|
metadata: gguf.Metadata | None = None,
|
|
) -> None:
|
|
check_vocab_size(params, vocab, pad_vocab=pad_vocab)
|
|
|
|
of = OutputFile(fname_out, endianess=endianess)
|
|
|
|
# meta data
|
|
of.add_meta_model(params, metadata)
|
|
of.add_meta_arch(params)
|
|
if isinstance(vocab, Vocab):
|
|
of.add_meta_vocab(vocab)
|
|
of.add_meta_special_vocab(svocab)
|
|
else: # NoVocab
|
|
of.gguf.add_tokenizer_model(vocab.tokenizer_model)
|
|
|
|
# tensor info
|
|
for name, lazy_tensor in model.items():
|
|
of.add_tensor_info(name, lazy_tensor)
|
|
|
|
of.write_meta()
|
|
of.write_tensor_info()
|
|
|
|
# tensor data
|
|
of.write_tensor_data(ftype, model, concurrency)
|
|
|
|
of.close()
|
|
|
|
|
|
def pick_output_type(model: LazyModel, output_type_str: str | None) -> GGMLFileType:
|
|
wq_type = model[gguf.TENSOR_NAMES[gguf.MODEL_TENSOR.ATTN_Q].format(bid=0) + ".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 == "q8_0":
|
|
return GGMLFileType.MostlyQ8_0
|
|
|
|
name_to_type = {name: lazy_tensor.data_type for (name, lazy_tensor) in model.items()}
|
|
|
|
raise ValueError(f"Unexpected combination of types: {name_to_type}")
|
|
|
|
|
|
def per_model_weight_count_estimation(tensors: Iterable[tuple[str, LazyTensor]]) -> tuple[int, int, int]:
|
|
total_params = 0
|
|
shared_params = 0
|
|
expert_params = 0
|
|
|
|
for name, lazy_tensor in tensors:
|
|
# We don't need these
|
|
if name.endswith((".attention.masked_bias", ".attention.bias", ".rotary_emb.inv_freq")):
|
|
continue
|
|
|
|
# Got A Tensor
|
|
sum_weights_in_tensor: int = 1
|
|
|
|
# Tensor Volume
|
|
for dim in lazy_tensor.shape:
|
|
sum_weights_in_tensor *= dim
|
|
|
|
if ".experts." in name:
|
|
if ".experts.0." in name:
|
|
expert_params += sum_weights_in_tensor
|
|
else:
|
|
shared_params += sum_weights_in_tensor
|
|
|
|
total_params += sum_weights_in_tensor
|
|
|
|
return total_params, shared_params, expert_params
|
|
|
|
|
|
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 convert_model_names(model: LazyModel, params: Params, skip_unknown: bool) -> LazyModel:
|
|
tmap = gguf.TensorNameMap(ARCH, params.n_layer)
|
|
should_skip = set(gguf.MODEL_TENSOR_SKIP.get(ARCH, []))
|
|
|
|
tmp = model
|
|
|
|
# merge experts into one tensor
|
|
if params.n_experts and params.n_experts > 0:
|
|
for i_l in range(params.n_layer):
|
|
for w in range(1, 4):
|
|
experts = []
|
|
for e in range(params.n_experts):
|
|
if f"layers.{i_l}.feed_forward.experts.{e}.w{w}.weight" in model:
|
|
experts.append(model[f"layers.{i_l}.feed_forward.experts.{e}.w{w}.weight"])
|
|
del tmp[f"layers.{i_l}.feed_forward.experts.{e}.w{w}.weight"]
|
|
elif f"model.layers.{i_l}.block_sparse_moe.experts.{e}.w{w}.weight" in model:
|
|
experts.append(model[f"model.layers.{i_l}.block_sparse_moe.experts.{e}.w{w}.weight"])
|
|
del tmp[f"model.layers.{i_l}.block_sparse_moe.experts.{e}.w{w}.weight"]
|
|
else:
|
|
raise ValueError(f"Expert tensor not found: layers.{i_l}.feed_forward.experts.{e}.w{w}.weight")
|
|
tmp[f"layers.{i_l}.feed_forward.experts.w{w}.weight"] = pack_experts_lazy(experts)
|
|
|
|
# HF models permut or pack some of the tensors, so we need to undo that
|
|
for i in itertools.count():
|
|
if f"model.layers.{i}.self_attn.q_proj.weight" in model:
|
|
logger.debug(f"Permuting layer {i}")
|
|
tmp[f"model.layers.{i}.self_attn.q_proj.weight"] = permute_lazy(model[f"model.layers.{i}.self_attn.q_proj.weight"], params.n_head, params.n_head)
|
|
tmp[f"model.layers.{i}.self_attn.k_proj.weight"] = permute_lazy(model[f"model.layers.{i}.self_attn.k_proj.weight"], params.n_head, params.n_head_kv)
|
|
# tmp[f"model.layers.{i}.self_attn.v_proj.weight"] = model[f"model.layers.{i}.self_attn.v_proj.weight"]
|
|
elif f"model.layers.{i}.self_attn.W_pack.weight" in model:
|
|
logger.debug(f"Unpacking and permuting layer {i}")
|
|
tmp[f"model.layers.{i}.self_attn.q_proj.weight"] = permute_part_lazy(model[f"model.layers.{i}.self_attn.W_pack.weight"], 0, params.n_head, params.n_head)
|
|
tmp[f"model.layers.{i}.self_attn.k_proj.weight"] = permute_part_lazy(model[f"model.layers.{i}.self_attn.W_pack.weight"], 1, params.n_head, params.n_head_kv)
|
|
tmp[f"model.layers.{i}.self_attn.v_proj.weight"] = part_lazy (model[f"model.layers.{i}.self_attn.W_pack.weight"], 2)
|
|
del tmp[f"model.layers.{i}.self_attn.W_pack.weight"]
|
|
else:
|
|
break
|
|
|
|
out: LazyModel = {}
|
|
for name, lazy_tensor in model.items():
|
|
tensor_type, name_new = tmap.get_type_and_name(name, try_suffixes = (".weight", ".bias")) or (None, None)
|
|
if name_new is None:
|
|
if skip_unknown:
|
|
logger.warning(f"Unexpected tensor name: {name} - skipping")
|
|
continue
|
|
raise ValueError(f"Unexpected tensor name: {name}. Use --skip-unknown to ignore it (e.g. LLaVA)")
|
|
|
|
if tensor_type in should_skip:
|
|
logger.debug(f"skipping tensor {name_new}")
|
|
continue
|
|
|
|
logger.debug(f"{name:48s} -> {name_new:40s} | {lazy_tensor.data_type.name:6s} | {lazy_tensor.shape}")
|
|
out[name_new] = lazy_tensor
|
|
|
|
return out
|
|
|
|
|
|
def nth_multifile_path(path: Path, n: int) -> Path | None:
|
|
'''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 = [
|
|
# - 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
|
|
globs = ["model-00001-of-*.safetensors", "model.safetensors", "consolidated.safetensors"]
|
|
files = [file for glob in globs for file in path.glob(glob)]
|
|
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:
|
|
raise FileNotFoundError(f"Can't find model in directory {path}")
|
|
if len(files) > 1:
|
|
raise ValueError(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:
|
|
logger.info(f"Loading model file {path}")
|
|
models_plus.append(lazy_load_file(path))
|
|
|
|
model_plus = merge_multifile_models(models_plus)
|
|
return model_plus
|
|
|
|
|
|
class VocabFactory:
|
|
_VOCAB_CLASSES: list[type[Vocab]] = [SentencePieceVocab, BpeVocab, LlamaHfVocab]
|
|
|
|
def __init__(self, path: Path):
|
|
self.path = path
|
|
|
|
def _create_special_vocab(self, vocab: BaseVocab, model_parent_path: Path) -> gguf.SpecialVocab:
|
|
load_merges = vocab.name == "bpe"
|
|
n_vocab = vocab.vocab_size if isinstance(vocab, Vocab) else None
|
|
return gguf.SpecialVocab(
|
|
model_parent_path,
|
|
load_merges=load_merges,
|
|
special_token_types=None, # Predetermined or passed as a parameter
|
|
n_vocab=n_vocab,
|
|
)
|
|
|
|
def _create_vocab_by_path(self, vocab_types: list[str]) -> Vocab:
|
|
vocab_classes: dict[str, type[Vocab]] = {cls.name: cls for cls in self._VOCAB_CLASSES}
|
|
selected_vocabs: dict[str, type[Vocab]] = {}
|
|
for vtype in vocab_types:
|
|
try:
|
|
selected_vocabs[vtype] = vocab_classes[vtype]
|
|
except KeyError:
|
|
raise ValueError(f"Unsupported vocabulary type {vtype}") from None
|
|
|
|
for vtype, cls in selected_vocabs.items():
|
|
try:
|
|
vocab = cls(self.path)
|
|
break
|
|
except FileNotFoundError:
|
|
pass # ignore unavailable tokenizers
|
|
else:
|
|
raise FileNotFoundError(f"Could not find a tokenizer matching any of {vocab_types}")
|
|
|
|
logger.info(f"Loaded vocab file {vocab.fname_tokenizer!r}, type {vocab.name!r}")
|
|
return vocab
|
|
|
|
def load_vocab(self, vocab_types: list[str] | None, model_parent_path: Path) -> tuple[BaseVocab, gguf.SpecialVocab]:
|
|
vocab: BaseVocab
|
|
if vocab_types is None:
|
|
vocab = NoVocab()
|
|
else:
|
|
vocab = self._create_vocab_by_path(vocab_types)
|
|
# FIXME: Respect --vocab-dir?
|
|
special_vocab = self._create_special_vocab(
|
|
vocab,
|
|
model_parent_path,
|
|
)
|
|
return vocab, special_vocab
|
|
|
|
|
|
def default_convention_outfile(file_type: GGMLFileType, expert_count: int | None, model_params_count: tuple[int, int, int], metadata: gguf.Metadata) -> str:
|
|
name = metadata.name if metadata.name is not None else None
|
|
basename = metadata.basename if metadata.basename is not None else None
|
|
finetune = metadata.finetune if metadata.finetune is not None else None
|
|
version = metadata.version if metadata.version is not None else None
|
|
size_label = metadata.size_label if metadata.size_label is not None else gguf.size_label(*model_params_count, expert_count=expert_count or 0)
|
|
|
|
output_type = {
|
|
GGMLFileType.AllF32: "F32",
|
|
GGMLFileType.MostlyF16: "F16",
|
|
GGMLFileType.MostlyQ8_0: "Q8_0",
|
|
}[file_type]
|
|
|
|
return gguf.naming_convention(name, basename, finetune, version, size_label, output_type)
|
|
|
|
|
|
def default_outfile(model_paths: list[Path], file_type: GGMLFileType, expert_count: int | None, model_params_count: tuple[int, int, int], metadata: gguf.Metadata) -> Path:
|
|
default_filename = default_convention_outfile(file_type, expert_count, model_params_count, metadata)
|
|
ret = model_paths[0].parent / f"{default_filename}.gguf"
|
|
if ret in model_paths:
|
|
logger.error(
|
|
f"Error: Default output path ({ret}) would overwrite the input. "
|
|
"Please explicitly specify a path using --outfile.")
|
|
sys.exit(1)
|
|
return ret
|
|
|
|
|
|
def do_dump_model(model_plus: ModelPlus) -> None:
|
|
print(f"model_plus.paths = {model_plus.paths!r}") # noqa: NP100
|
|
print(f"model_plus.format = {model_plus.format!r}") # noqa: NP100
|
|
print(f"model_plus.vocab = {model_plus.vocab!r}") # noqa: NP100
|
|
for name, lazy_tensor in model_plus.model.items():
|
|
print(f"{name}: shape={lazy_tensor.shape} type={lazy_tensor.data_type}; {lazy_tensor.description}") # noqa: NP100
|
|
|
|
|
|
def main(args_in: list[str] | None = None) -> None:
|
|
output_choices = ["f32", "f16"]
|
|
if np.uint32(1) == np.uint32(1).newbyteorder("<"):
|
|
# We currently only support Q8_0 output on little endian systems.
|
|
output_choices.append("q8_0")
|
|
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("--no-vocab", action="store_true", help="store model without the vocab")
|
|
parser.add_argument("--outtype", choices=output_choices, help="output format - note: q8_0 may be very slow (default: f16 or f32 based on input)")
|
|
parser.add_argument("--vocab-dir", type=Path, help="directory containing tokenizer.model, if separate from model file")
|
|
parser.add_argument("--vocab-type", help="vocab types to try in order, choose from 'spm', 'bpe', 'hfft' (default: spm,hfft)", default="spm,hfft")
|
|
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)")
|
|
parser.add_argument("--ctx", type=int, help="model training context (default: based on input)")
|
|
parser.add_argument("--concurrency", type=int, help=f"concurrency used for conversion (default: {DEFAULT_CONCURRENCY})", default=DEFAULT_CONCURRENCY)
|
|
parser.add_argument("--big-endian", action="store_true", help="model is executed on big endian machine")
|
|
parser.add_argument("--pad-vocab", action="store_true", help="add pad tokens when model vocab expects more than tokenizer metadata provides")
|
|
parser.add_argument("--skip-unknown", action="store_true", help="skip unknown tensor names instead of failing")
|
|
parser.add_argument("--verbose", action="store_true", help="increase output verbosity")
|
|
parser.add_argument("--metadata", type=Path, help="Specify the path for an authorship metadata override file")
|
|
parser.add_argument("--get-outfile", action="store_true", help="get calculated default outfile name")
|
|
parser.add_argument("--model-name", type=str, default=None, help="name of the model")
|
|
|
|
args = parser.parse_args(args_in)
|
|
|
|
if args.verbose:
|
|
logging.basicConfig(level=logging.DEBUG)
|
|
elif args.dump_single or args.dump or args.get_outfile:
|
|
# Avoid printing anything besides the dump output
|
|
logging.basicConfig(level=logging.WARNING)
|
|
else:
|
|
logging.basicConfig(level=logging.INFO)
|
|
|
|
model_name = args.model_name
|
|
dir_model = args.model
|
|
|
|
metadata = gguf.Metadata.load(args.metadata, dir_model, model_name)
|
|
|
|
if args.get_outfile:
|
|
model_plus = load_some_model(dir_model)
|
|
params = Params.load(model_plus)
|
|
model = convert_model_names(model_plus.model, params, args.skip_unknown)
|
|
model_params_count = per_model_weight_count_estimation(model_plus.model.items())
|
|
ftype = pick_output_type(model, args.outtype)
|
|
|
|
if (metadata is None or metadata.name is None) and params.path_model is not None:
|
|
metadata.name = params.path_model.name
|
|
|
|
print(f"{default_convention_outfile(ftype, params.n_experts, model_params_count, metadata)}") # noqa: NP100
|
|
return
|
|
|
|
if args.no_vocab and args.vocab_only:
|
|
raise ValueError("--vocab-only does not make sense with --no-vocab")
|
|
|
|
if args.dump_single:
|
|
model_plus = lazy_load_file(dir_model)
|
|
do_dump_model(model_plus)
|
|
return
|
|
|
|
if not args.vocab_only:
|
|
model_plus = load_some_model(dir_model)
|
|
else:
|
|
model_plus = ModelPlus(model = {}, paths = [dir_model / 'dummy'], format = 'none', vocab = None)
|
|
|
|
if args.dump:
|
|
do_dump_model(model_plus)
|
|
return
|
|
|
|
endianess = gguf.GGUFEndian.LITTLE
|
|
if args.big_endian:
|
|
endianess = gguf.GGUFEndian.BIG
|
|
|
|
params = None
|
|
if args.pad_vocab or not args.vocab_only:
|
|
params = Params.load(model_plus)
|
|
if params.n_ctx == -1:
|
|
if args.ctx is None:
|
|
msg = """\
|
|
The model doesn't have a context size, and you didn't specify one with --ctx
|
|
Please specify one with --ctx:
|
|
- LLaMA v1: --ctx 2048
|
|
- LLaMA v2: --ctx 4096"""
|
|
parser.error(textwrap.dedent(msg))
|
|
params.n_ctx = args.ctx
|
|
|
|
if args.outtype:
|
|
params.ftype = {
|
|
"f32": GGMLFileType.AllF32,
|
|
"f16": GGMLFileType.MostlyF16,
|
|
"q8_0": GGMLFileType.MostlyQ8_0,
|
|
}[args.outtype]
|
|
|
|
logger.info(f"params = {params}")
|
|
|
|
model_parent_path = model_plus.paths[0].parent
|
|
vocab_path = Path(args.vocab_dir or dir_model or model_parent_path)
|
|
vocab_factory = VocabFactory(vocab_path)
|
|
vocab_types = None if args.no_vocab else args.vocab_type.split(",")
|
|
vocab, special_vocab = vocab_factory.load_vocab(vocab_types, model_parent_path)
|
|
|
|
if args.vocab_only:
|
|
assert isinstance(vocab, Vocab)
|
|
if not args.outfile:
|
|
raise ValueError("need --outfile if using --vocab-only")
|
|
outfile = args.outfile
|
|
if params is None:
|
|
params = Params(
|
|
n_vocab = vocab.vocab_size,
|
|
n_embd = 1,
|
|
n_layer = 1,
|
|
n_ctx = 1,
|
|
n_ff = 1,
|
|
n_head = 1,
|
|
n_head_kv = 1,
|
|
f_norm_eps = 1e-5,
|
|
)
|
|
OutputFile.write_vocab_only(outfile, params, vocab, special_vocab,
|
|
endianess=endianess, pad_vocab=args.pad_vocab, metadata=metadata)
|
|
logger.info(f"Wrote {outfile}")
|
|
return
|
|
|
|
if model_plus.vocab is not None and args.vocab_dir is None and not args.no_vocab:
|
|
vocab = model_plus.vocab
|
|
|
|
assert params is not None
|
|
|
|
if metadata.name is None and params.path_model is not None:
|
|
metadata.name = params.path_model.name
|
|
|
|
model_params_count = per_model_weight_count_estimation(model_plus.model.items())
|
|
logger.info(f"model parameters count : {model_params_count} ({gguf.model_weight_count_rounded_notation(model_params_count[0])})")
|
|
|
|
logger.info(f"Vocab info: {vocab}")
|
|
logger.info(f"Special vocab info: {special_vocab}")
|
|
model = model_plus.model
|
|
model = convert_model_names(model, params, args.skip_unknown)
|
|
ftype = pick_output_type(model, args.outtype)
|
|
model = convert_to_output_type(model, ftype)
|
|
outfile = args.outfile or default_outfile(model_plus.paths, ftype, params.n_experts, model_params_count, metadata=metadata)
|
|
|
|
metadata.size_label = gguf.size_label(*model_params_count, expert_count=params.n_experts or 0)
|
|
|
|
params.ftype = ftype
|
|
logger.info(f"Writing {outfile}, format {ftype}")
|
|
|
|
OutputFile.write_all(outfile, ftype, params, model, vocab, special_vocab,
|
|
concurrency=args.concurrency, endianess=endianess, pad_vocab=args.pad_vocab, metadata=metadata)
|
|
logger.info(f"Wrote {outfile}")
|
|
|
|
|
|
if __name__ == '__main__':
|
|
main()
|