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			401 lines
		
	
	
		
			15 KiB
		
	
	
	
		
			Python
		
	
	
		
			Executable File
		
	
	
	
	
			
		
		
	
	
			401 lines
		
	
	
		
			15 KiB
		
	
	
	
		
			Python
		
	
	
		
			Executable File
		
	
	
	
	
#!/usr/bin/env python3
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# -*- coding: utf-8 -*-
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from __future__ import annotations
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from dataclasses import dataclass
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import logging
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import argparse
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import os
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import sys
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import json
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from math import prod
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from pathlib import Path
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from typing import TYPE_CHECKING, Any, Callable, Iterable, Iterator, Sequence, SupportsIndex, cast
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import torch
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if TYPE_CHECKING:
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    from torch import Tensor
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if 'NO_LOCAL_GGUF' not in os.environ:
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    sys.path.insert(1, str(Path(__file__).parent / 'gguf-py'))
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import gguf
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# reuse model definitions from convert_hf_to_gguf.py
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from convert_hf_to_gguf import LazyTorchTensor, Model
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logger = logging.getLogger("lora-to-gguf")
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@dataclass
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class PartialLoraTensor:
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    A: Tensor | None = None
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    B: Tensor | None = None
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# magic to support tensor shape modifications and splitting
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class LoraTorchTensor:
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    _lora_A: Tensor  # (n_rank, row_size)
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    _lora_B: Tensor  # (col_size, n_rank)
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    _rank: int
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    def __init__(self, A: Tensor, B: Tensor):
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        assert len(A.shape) == len(B.shape)
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        assert A.shape[-2] == B.shape[-1]
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        if A.dtype != B.dtype:
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            A = A.to(torch.float32)
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            B = B.to(torch.float32)
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        self._lora_A = A
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        self._lora_B = B
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        self._rank = B.shape[-1]
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    def get_lora_A_B(self) -> tuple[Tensor, Tensor]:
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        return (self._lora_A, self._lora_B)
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    def __getitem__(
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        self,
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        indices: (
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            SupportsIndex
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            | slice
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            | tuple[SupportsIndex | slice | Tensor, ...]  # TODO: add ellipsis in the type signature
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        ),
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    ) -> LoraTorchTensor:
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        shape = self.shape
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        if isinstance(indices, SupportsIndex):
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            if len(shape) > 2:
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                return LoraTorchTensor(self._lora_A[indices], self._lora_B[indices])
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            else:
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                raise NotImplementedError  # can't return a vector
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        elif isinstance(indices, slice):
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            if len(shape) > 2:
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                return LoraTorchTensor(self._lora_A[indices], self._lora_B[indices])
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            else:
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                return LoraTorchTensor(self._lora_A, self._lora_B[indices])
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        elif isinstance(indices, tuple):
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            assert len(indices) > 0
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            if indices[-1] is Ellipsis:
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                return self[indices[:-1]]
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            # expand ellipsis
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            indices = tuple(
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                u
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                for v in (
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                    (
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                        (slice(None, None) for _ in range(len(indices) - 1))
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                        if i is Ellipsis
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                        else (i,)
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                    )
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                    for i in indices
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                )
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                for u in v
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            )
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            if len(indices) < len(shape):
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                indices = (*indices, *(slice(None, None) for _ in range(len(indices), len(shape))))
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            # TODO: make sure this is correct
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            indices_A = (
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                *(
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                    (
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                        j.__index__() % self._lora_A.shape[i]
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                        if isinstance(j, SupportsIndex)
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                        else slice(None, None)
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                    )
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                    for i, j in enumerate(indices[:-2])
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                ),
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                slice(None, None),
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                indices[-1],
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            )
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            indices_B = indices[:-1]
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            return LoraTorchTensor(self._lora_A[indices_A], self._lora_B[indices_B])
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        else:
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            raise NotImplementedError  # unknown indice type
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    @property
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    def dtype(self) -> torch.dtype:
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        assert self._lora_A.dtype == self._lora_B.dtype
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        return self._lora_A.dtype
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    @property
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    def shape(self) -> tuple[int, ...]:
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        assert len(self._lora_A.shape) == len(self._lora_B.shape)
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        return (*self._lora_B.shape[:-1], self._lora_A.shape[-1])
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    def size(self, dim=None):
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        assert dim is None
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        return self.shape
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    def reshape(self, *shape: int | tuple[int, ...]) -> LoraTorchTensor:
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        if isinstance(shape[0], tuple):
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            new_shape: tuple[int, ...] = shape[0]
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        else:
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            new_shape = cast(tuple[int, ...], shape)
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        orig_shape = self.shape
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        if len(new_shape) < 2:
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            raise NotImplementedError  # can't become a vector
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        # expand -1 in the shape
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        if any(dim == -1 for dim in new_shape):
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            n_elems = prod(orig_shape)
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            n_new_elems = prod(dim if dim != -1 else 1 for dim in new_shape)
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            assert n_elems % n_new_elems == 0
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            new_shape = (*(dim if dim != -1 else n_elems // n_new_elems for dim in new_shape),)
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        if new_shape[-1] != orig_shape[-1]:
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            raise NotImplementedError  # can't reshape the row size trivially
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        shape_A = (*(1 for _ in new_shape[:-2]), self._rank, orig_shape[-1])
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        shape_B = (*new_shape[:-1], self._rank)
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        return LoraTorchTensor(
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            self._lora_A.reshape(shape_A),
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            self._lora_B.reshape(shape_B),
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        )
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    def reshape_as(self, other: Tensor) -> LoraTorchTensor:
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        return self.reshape(*other.shape)
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    def view(self, *size: int) -> LoraTorchTensor:
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        return self.reshape(*size)
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    def permute(self, *dims: int) -> LoraTorchTensor:
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        shape = self.shape
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        dims = tuple(dim - len(shape) if dim >= 0 else dim for dim in dims)
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        if dims[-1] == -1:
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            # TODO: support higher dimensional A shapes bigger than 1
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            assert all(dim == 1 for dim in self._lora_A.shape[:-2])
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            return LoraTorchTensor(self._lora_A, self._lora_B.permute(*dims))
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        if len(shape) == 2 and dims[-1] == -2 and dims[-2] == -1:
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            return LoraTorchTensor(self._lora_B.permute(*dims), self._lora_A.permute(*dims))
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        else:
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            # TODO: compose the above two
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            raise NotImplementedError
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    def transpose(self, dim0: int, dim1: int) -> LoraTorchTensor:
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        shape = self.shape
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        dims = [i for i in range(len(shape))]
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        dims[dim0], dims[dim1] = dims[dim1], dims[dim0]
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        return self.permute(*dims)
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    def swapaxes(self, axis0: int, axis1: int) -> LoraTorchTensor:
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        return self.transpose(axis0, axis1)
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    def to(self, *args, **kwargs):
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        return LoraTorchTensor(self._lora_A.to(*args, **kwargs), self._lora_B.to(*args, **kwargs))
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    @classmethod
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    def __torch_function__(cls, func: Callable, types, args=(), kwargs=None):
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        del types  # unused
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        if kwargs is None:
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            kwargs = {}
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        if func is torch.permute:
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            return type(args[0]).permute(*args, **kwargs)
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        elif func is torch.reshape:
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            return type(args[0]).reshape(*args, **kwargs)
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        elif func is torch.stack:
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            assert isinstance(args[0], Sequence)
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            dim = kwargs.get("dim", 0)
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            assert dim == 0
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            return LoraTorchTensor(
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                torch.stack([a._lora_A for a in args[0]], dim),
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                torch.stack([b._lora_B for b in args[0]], dim),
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            )
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        elif func is torch.cat:
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            assert isinstance(args[0], Sequence)
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            dim = kwargs.get("dim", 0)
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            assert dim == 0
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            if len(args[0][0].shape) > 2:
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                return LoraTorchTensor(
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                    torch.cat([a._lora_A for a in args[0]], dim),
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                    torch.cat([b._lora_B for b in args[0]], dim),
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                )
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            elif all(torch.equal(args[0][0]._lora_A, t._lora_A) for t in args[0][1:]):
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                return LoraTorchTensor(
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                    args[0][0]._lora_A,
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                    torch.cat([b._lora_B for b in args[0]], dim),
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                )
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            else:
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                raise NotImplementedError
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        else:
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            raise NotImplementedError
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def get_base_tensor_name(lora_tensor_name: str) -> str:
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    base_name = lora_tensor_name.replace("base_model.model.", "")
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    base_name = base_name.replace(".lora_A.weight", ".weight")
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    base_name = base_name.replace(".lora_B.weight", ".weight")
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    return base_name
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def parse_args() -> argparse.Namespace:
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    parser = argparse.ArgumentParser(
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        description="Convert a huggingface PEFT LoRA adapter to a GGML compatible file")
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    parser.add_argument(
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        "--outfile", type=Path,
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        help="path to write to; default: based on input. {ftype} will be replaced by the outtype.",
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    )
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    parser.add_argument(
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        "--outtype", type=str, choices=["f32", "f16", "bf16", "q8_0", "auto"], default="f16",
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        help="output format - use f32 for float32, f16 for float16, bf16 for bfloat16, q8_0 for Q8_0, auto for the highest-fidelity 16-bit float type depending on the first loaded tensor type",
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    )
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    parser.add_argument(
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        "--bigendian", action="store_true",
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        help="model is executed on big endian machine",
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    )
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    parser.add_argument(
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        "--no-lazy", action="store_true",
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        help="use more RAM by computing all outputs before writing (use in case lazy evaluation is broken)",
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    )
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    parser.add_argument(
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        "--verbose", action="store_true",
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        help="increase output verbosity",
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    )
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    parser.add_argument(
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        "--dry-run", action="store_true",
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        help="only print out what will be done, without writing any new files",
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    )
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    parser.add_argument(
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        "--base", type=Path, required=True,
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        help="directory containing base model file",
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    )
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    parser.add_argument(
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        "lora_path", type=Path,
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        help="directory containing LoRA adapter file",
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    )
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    return parser.parse_args()
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if __name__ == '__main__':
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    args = parse_args()
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    logging.basicConfig(level=logging.DEBUG if args.verbose else logging.INFO)
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    ftype_map: dict[str, gguf.LlamaFileType] = {
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        "f32": gguf.LlamaFileType.ALL_F32,
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        "f16": gguf.LlamaFileType.MOSTLY_F16,
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        "bf16": gguf.LlamaFileType.MOSTLY_BF16,
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        "q8_0": gguf.LlamaFileType.MOSTLY_Q8_0,
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        "auto": gguf.LlamaFileType.GUESSED,
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    }
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    ftype = ftype_map[args.outtype]
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    dir_base_model: Path = args.base
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    dir_lora: Path = args.lora_path
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    lora_config = dir_lora / "adapter_config.json"
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    input_model = dir_lora / "adapter_model.safetensors"
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    if args.outfile is not None:
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        fname_out = args.outfile
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    else:
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        # output in the same directory as the model by default
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        fname_out = dir_lora
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    if os.path.exists(input_model):
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        # lazy import load_file only if lora is in safetensors format.
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        from safetensors.torch import load_file
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        lora_model = load_file(input_model, device="cpu")
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    else:
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        input_model = os.path.join(dir_lora, "adapter_model.bin")
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        lora_model = torch.load(input_model, map_location="cpu", weights_only=True)
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    # load base model
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    logger.info(f"Loading base model: {dir_base_model.name}")
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    hparams = Model.load_hparams(dir_base_model)
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    with torch.inference_mode():
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        try:
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            model_class = Model.from_model_architecture(hparams["architectures"][0])
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        except NotImplementedError:
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            logger.error(f"Model {hparams['architectures'][0]} is not supported")
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            sys.exit(1)
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        class LoraModel(model_class):
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            model_arch = model_class.model_arch
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            lora_alpha: float
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            def __init__(self, *args, dir_lora_model: Path, lora_alpha: float, **kwargs):
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                super().__init__(*args, **kwargs)
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                self.dir_model_card = dir_lora_model
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                self.lora_alpha = float(lora_alpha)
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            def set_type(self):
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                self.gguf_writer.add_type(gguf.GGUFType.ADAPTER)
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                self.gguf_writer.add_string(gguf.Keys.Adapter.TYPE, "lora")
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            def set_gguf_parameters(self):
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                self.gguf_writer.add_float32(gguf.Keys.Adapter.LORA_ALPHA, self.lora_alpha)
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                super().set_gguf_parameters()
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            def get_tensors(self) -> Iterator[tuple[str, Tensor]]:
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                tensor_map: dict[str, PartialLoraTensor] = {}
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                for name, tensor in lora_model.items():
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                    if self.lazy:
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                        tensor = LazyTorchTensor.from_eager(tensor)
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                    base_name = get_base_tensor_name(name)
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                    is_lora_a = ".lora_A.weight" in name
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                    is_lora_b = ".lora_B.weight" in name
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                    if not is_lora_a and not is_lora_b:
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                        if ".base_layer.weight" in name:
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                            continue
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                        logger.error(f"Unexpected name '{name}': Not a lora_A or lora_B tensor")
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                        sys.exit(1)
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                    if base_name in tensor_map:
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                        if is_lora_a:
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                            tensor_map[base_name].A = tensor
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                        else:
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                            tensor_map[base_name].B = tensor
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                    else:
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                        if is_lora_a:
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                            tensor_map[base_name] = PartialLoraTensor(A=tensor)
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                        else:
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                            tensor_map[base_name] = PartialLoraTensor(B=tensor)
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                for name, tensor in tensor_map.items():
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                    assert tensor.A is not None
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                    assert tensor.B is not None
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                    yield (name, cast(torch.Tensor, LoraTorchTensor(tensor.A, tensor.B)))
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            def modify_tensors(self, data_torch: Tensor, name: str, bid: int | None) -> Iterable[tuple[str, Tensor]]:
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                dest = list(super().modify_tensors(data_torch, name, bid))
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                # some archs may have the same tensor for lm_head and output (tie word embeddings)
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                # in this case, adapters targeting lm_head will fail when using llama-export-lora
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                # therefore, we ignore them for now
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                # see: https://github.com/ggerganov/llama.cpp/issues/9065
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                if name == "lm_head.weight" and len(dest) == 0:
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                    raise ValueError("lm_head is present in adapter, but is ignored in base model")
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                for dest_name, dest_data in dest:
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                    assert isinstance(dest_data, LoraTorchTensor)
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                    lora_a, lora_b = dest_data.get_lora_A_B()
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                    yield (dest_name + ".lora_a", lora_a)
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                    yield (dest_name + ".lora_b", lora_b)
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        with open(lora_config, "r") as f:
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            lparams: dict[str, Any] = json.load(f)
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        alpha: float = lparams["lora_alpha"]
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        model_instance = LoraModel(
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            dir_base_model,
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            ftype,
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            fname_out,
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            is_big_endian=args.bigendian,
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            use_temp_file=False,
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            eager=args.no_lazy,
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            dry_run=args.dry_run,
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            dir_lora_model=dir_lora,
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            lora_alpha=alpha,
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            is_lora=True,
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        )
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        logger.info("Exporting model...")
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        model_instance.write()
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        logger.info(f"Model successfully exported to {model_instance.fname_out}")
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