ltx2 / Wan2GP /shared /convert /convert_diffusers_to_flux.py
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#!/usr/bin/env python3
"""
Convert a Flux model from Diffusers (folder or single-file) into the original
single-file Flux transformer checkpoint used by Black Forest Labs / ComfyUI.
Input : /path/to/diffusers (root or .../transformer) OR /path/to/*.safetensors (single file)
Output : /path/to/flux1-your-model.safetensors (transformer only)
Usage:
python diffusers_to_flux_transformer.py /path/to/diffusers /out/flux1-dev.safetensors
python diffusers_to_flux_transformer.py /path/to/diffusion_pytorch_model.safetensors /out/flux1-dev.safetensors
# optional quantization:
# --fp8 (float8_e4m3fn, simple)
# --fp8-scaled (scaled float8 for 2D weights; adds .scale_weight tensors)
"""
import argparse
import json
from pathlib import Path
from collections import OrderedDict
import torch
from safetensors import safe_open
import safetensors.torch
from tqdm import tqdm
def parse_args():
ap = argparse.ArgumentParser()
ap.add_argument("diffusers_path", type=str,
help="Path to Diffusers checkpoint folder OR a single .safetensors file.")
ap.add_argument("output_path", type=str,
help="Output .safetensors path for the Flux transformer.")
ap.add_argument("--fp8", action="store_true",
help="Experimental: write weights as float8_e4m3fn via stochastic rounding (transformer only).")
ap.add_argument("--fp8-scaled", action="store_true",
help="Experimental: scaled float8_e4m3fn for 2D weight tensors; adds .scale_weight tensors.")
return ap.parse_args()
# Mapping from original Flux keys -> list of Diffusers keys (per block where applicable).
DIFFUSERS_MAP = {
# global embeds
"time_in.in_layer.weight": ["time_text_embed.timestep_embedder.linear_1.weight"],
"time_in.in_layer.bias": ["time_text_embed.timestep_embedder.linear_1.bias"],
"time_in.out_layer.weight": ["time_text_embed.timestep_embedder.linear_2.weight"],
"time_in.out_layer.bias": ["time_text_embed.timestep_embedder.linear_2.bias"],
"vector_in.in_layer.weight": ["time_text_embed.text_embedder.linear_1.weight"],
"vector_in.in_layer.bias": ["time_text_embed.text_embedder.linear_1.bias"],
"vector_in.out_layer.weight": ["time_text_embed.text_embedder.linear_2.weight"],
"vector_in.out_layer.bias": ["time_text_embed.text_embedder.linear_2.bias"],
"guidance_in.in_layer.weight": ["time_text_embed.guidance_embedder.linear_1.weight"],
"guidance_in.in_layer.bias": ["time_text_embed.guidance_embedder.linear_1.bias"],
"guidance_in.out_layer.weight": ["time_text_embed.guidance_embedder.linear_2.weight"],
"guidance_in.out_layer.bias": ["time_text_embed.guidance_embedder.linear_2.bias"],
"txt_in.weight": ["context_embedder.weight"],
"txt_in.bias": ["context_embedder.bias"],
"img_in.weight": ["x_embedder.weight"],
"img_in.bias": ["x_embedder.bias"],
# dual-stream (image/text) blocks
"double_blocks.().img_mod.lin.weight": ["norm1.linear.weight"],
"double_blocks.().img_mod.lin.bias": ["norm1.linear.bias"],
"double_blocks.().txt_mod.lin.weight": ["norm1_context.linear.weight"],
"double_blocks.().txt_mod.lin.bias": ["norm1_context.linear.bias"],
"double_blocks.().img_attn.qkv.weight": [
["attn.to_q.weight", "attn.to_k.weight", "attn.to_v.weight"],
["qkv_proj.weight"],
],
"double_blocks.().img_attn.qkv.bias": [
["attn.to_q.bias", "attn.to_k.bias", "attn.to_v.bias"],
["qkv_proj.bias"],
],
"double_blocks.().txt_attn.qkv.weight": [
["attn.add_q_proj.weight", "attn.add_k_proj.weight", "attn.add_v_proj.weight"],
["qkv_proj_context.weight"],
],
"double_blocks.().txt_attn.qkv.bias": [
["attn.add_q_proj.bias", "attn.add_k_proj.bias", "attn.add_v_proj.bias"],
["qkv_proj_context.bias"],
],
"double_blocks.().img_attn.norm.query_norm.scale": [
["attn.norm_q.weight"],
["norm_q.weight"],
],
"double_blocks.().img_attn.norm.key_norm.scale": [
["attn.norm_k.weight"],
["norm_k.weight"],
],
"double_blocks.().txt_attn.norm.query_norm.scale": [
["attn.norm_added_q.weight"],
["norm_added_q.weight"],
],
"double_blocks.().txt_attn.norm.key_norm.scale": [
["attn.norm_added_k.weight"],
["norm_added_k.weight"],
],
"double_blocks.().img_mlp.0.weight": [
["ff.net.0.proj.weight"],
["mlp_fc1.weight"],
],
"double_blocks.().img_mlp.0.bias": [
["ff.net.0.proj.bias"],
["mlp_fc1.bias"],
],
"double_blocks.().img_mlp.2.weight": [
["ff.net.2.weight"],
["mlp_fc2.weight"],
],
"double_blocks.().img_mlp.2.bias": [
["ff.net.2.bias"],
["mlp_fc2.bias"],
],
"double_blocks.().txt_mlp.0.weight": [
["ff_context.net.0.proj.weight"],
["mlp_context_fc1.weight"],
],
"double_blocks.().txt_mlp.0.bias": [
["ff_context.net.0.proj.bias"],
["mlp_context_fc1.bias"],
],
"double_blocks.().txt_mlp.2.weight": [
["ff_context.net.2.weight"],
["mlp_context_fc2.weight"],
],
"double_blocks.().txt_mlp.2.bias": [
["ff_context.net.2.bias"],
["mlp_context_fc2.bias"],
],
"double_blocks.().img_attn.proj.weight": [
["attn.to_out.0.weight"],
["out_proj.weight"],
],
"double_blocks.().img_attn.proj.bias": [
["attn.to_out.0.bias"],
["out_proj.bias"],
],
"double_blocks.().txt_attn.proj.weight": [
["attn.to_add_out.weight"],
["out_proj_context.weight"],
],
"double_blocks.().txt_attn.proj.bias": [
["attn.to_add_out.bias"],
["out_proj_context.bias"],
],
# single-stream blocks
"single_blocks.().modulation.lin.weight": ["norm.linear.weight"],
"single_blocks.().modulation.lin.bias": ["norm.linear.bias"],
"single_blocks.().linear1.weight": [
["attn.to_q.weight", "attn.to_k.weight", "attn.to_v.weight", "proj_mlp.weight"],
["qkv_proj.weight", "mlp_fc1.weight"],
],
"single_blocks.().linear1.bias": [
["attn.to_q.bias", "attn.to_k.bias", "attn.to_v.bias", "proj_mlp.bias"],
["qkv_proj.bias", "mlp_fc1.bias"],
],
"single_blocks.().norm.query_norm.scale": [
["attn.norm_q.weight"],
["norm_q.weight"],
],
"single_blocks.().norm.key_norm.scale": [
["attn.norm_k.weight"],
["norm_k.weight"],
],
"single_blocks.().linear2.weight": [
["proj_out.weight"],
["out_proj.weight", "mlp_fc2.weight"],
],
"single_blocks.().linear2.bias": [
["proj_out.bias"],
["out_proj.bias", "mlp_fc2.bias"],
],
# final
"final_layer.linear.weight": ["proj_out.weight"],
"final_layer.linear.bias": ["proj_out.bias"],
# these two are built from norm_out.linear.{weight,bias} by swapping [shift,scale] -> [scale,shift]
"final_layer.adaLN_modulation.1.weight": ["norm_out.linear.weight"],
"final_layer.adaLN_modulation.1.bias": ["norm_out.linear.bias"],
}
_TARGET_SUFFIXES = {}
for _tgt_key in DIFFUSERS_MAP:
_base, _suffix = _tgt_key.rsplit(".", 1)
_TARGET_SUFFIXES.setdefault(_base, set()).add("." + _suffix)
def _strip_prefix(key: str) -> str:
return key[6:] if key.startswith("model.") else key
class StateDictSource:
"""
Provide DiffusersSource-like access over an in-memory state dict.
"""
POSSIBLE_PREFIXES = ["", "model."]
def __init__(self, state_dict: dict):
self._state_dict = state_dict
self._all_keys = list(state_dict.keys())
def _resolve(self, want: str):
for pref in self.POSSIBLE_PREFIXES:
key = pref + want
if key in self._state_dict:
return key
return None
def has(self, want: str) -> bool:
return self._resolve(want) is not None
def get(self, want: str) -> torch.Tensor:
real_key = self._resolve(want)
if real_key is None:
raise KeyError(f"Missing key: {want}")
return self._state_dict[real_key]
@property
def base_keys(self):
return [_strip_prefix(k) for k in self._all_keys]
def detect_diffusers_state_dict(state_dict: dict) -> bool:
base_keys = [_strip_prefix(k) for k in state_dict.keys()]
if any(k.startswith(("double_blocks.", "single_blocks.")) for k in base_keys):
return False
return any(k.startswith(("transformer_blocks.", "single_transformer_blocks.")) for k in base_keys)
def convert_state_dict(state_dict: dict, *, verbose: bool = False) -> dict:
if not detect_diffusers_state_dict(state_dict):
return state_dict
converted = _convert_from_source(StateDictSource(state_dict), verbose=verbose)
return converted if converted else state_dict
def _count_blocks(base_keys):
num_dual = 0
num_single = 0
for key in base_keys:
if key.startswith("transformer_blocks."):
try:
idx = int(key.split(".")[1])
num_dual = max(num_dual, idx + 1)
except Exception:
pass
elif key.startswith("single_transformer_blocks."):
try:
idx = int(key.split(".")[1])
num_single = max(num_single, idx + 1)
except Exception:
pass
return num_dual, num_single
def _swap_scale_shift(vec: torch.Tensor) -> torch.Tensor:
if vec is None or vec.ndim != 1 or vec.numel() % 2 != 0:
return vec
shift, scale = vec.chunk(2, dim=0)
return torch.cat([scale, shift], dim=0)
def _swap_scale_shift_matrix(mat: torch.Tensor) -> torch.Tensor:
if mat is None or mat.ndim != 2 or mat.size(0) % 2 != 0:
return mat
shift, scale = mat.chunk(2, dim=0)
return torch.cat([scale, shift], dim=0)
def _collect_suffixes(base_keys, base):
prefix = base + "."
suffixes = set()
for key in base_keys:
if key.startswith(prefix):
suffixes.add("." + key[len(prefix):])
return suffixes
def _normalize_suffix(suffix: str) -> str:
if suffix == ".smooth":
return ".smooth_factor"
if suffix == ".smooth_orig":
return ".smooth_factor_orig"
if suffix == ".lora_down":
return ".proj_down"
if suffix == ".lora_up":
return ".proj_up"
return suffix
def _match_dtype_device(ref: torch.Tensor, other: torch.Tensor) -> torch.Tensor:
if ref.dtype != other.dtype or ref.device != other.device:
return other.to(device=ref.device, dtype=ref.dtype)
return other
def _concat(values, dim=0):
if any(v is None for v in values):
return None
ref = values[0]
if ref.ndim == 0:
return ref
merged = [ref] + [_match_dtype_device(ref, v) for v in values[1:]]
return torch.cat(merged, dim=dim)
def _maybe_load_nunchaku():
try:
from shared.qtypes import nunchaku_int4 as _nunchaku_int4 # pylint: disable=import-outside-toplevel
except Exception:
return None
return _nunchaku_int4
def _get_qweight_dims(qweight: torch.Tensor | None) -> tuple[int | None, int | None]:
if not torch.is_tensor(qweight):
return None, None
if qweight.dtype == torch.int8:
out_features = qweight.size(0)
else:
out_features = qweight.size(0) * 4
in_features = qweight.size(1) * 2
return out_features, in_features
def _merge_packed_scales_out(values, qweights, group_size: int = 64):
if any(v is None for v in values):
return None
nunchaku = _maybe_load_nunchaku()
if nunchaku is None or any(q is None for q in qweights):
return _concat(values, dim=1)
unpacked = []
out_total = 0
in_features = None
for value, qweight in zip(values, qweights):
out_i, in_i = _get_qweight_dims(qweight)
if out_i is None or in_i is None:
return _concat(values, dim=1)
if in_features is None:
in_features = in_i
if in_i != in_features:
return _concat(values, dim=1)
unpacked_i = nunchaku._unpack_nunchaku_wscales(value, out_i, in_i, group_size)
if not torch.is_tensor(unpacked_i):
return _concat(values, dim=1)
unpacked.append(unpacked_i)
out_total += out_i
merged = [unpacked[0]] + [_match_dtype_device(unpacked[0], u) for u in unpacked[1:]]
merged = torch.cat(merged, dim=1)
return nunchaku._pack_nunchaku_wscales(merged, out_total, in_features, group_size)
def _merge_packed_scales_in(values, qweights, group_size: int = 64):
if any(v is None for v in values):
return None
nunchaku = _maybe_load_nunchaku()
if nunchaku is None or any(q is None for q in qweights):
return _concat(values, dim=0)
out_a, in_a = _get_qweight_dims(qweights[0])
out_b, in_b = _get_qweight_dims(qweights[1])
if out_a is None or in_a is None or out_b is None or in_b is None:
return _concat(values, dim=0)
if out_a != out_b:
return _concat(values, dim=0)
unpack_a = nunchaku._unpack_nunchaku_wscales(values[0], out_a, in_a, group_size)
unpack_b = nunchaku._unpack_nunchaku_wscales(values[1], out_b, in_b, group_size)
if not torch.is_tensor(unpack_a) or not torch.is_tensor(unpack_b):
return _concat(values, dim=0)
if unpack_a.dtype != unpack_b.dtype or unpack_a.device != unpack_b.device:
unpack_b = unpack_b.to(device=unpack_a.device, dtype=unpack_a.dtype)
merged = torch.cat([unpack_a, unpack_b], dim=0)
return nunchaku._pack_nunchaku_wscales(merged, out_a, in_a + in_b, group_size)
def _pad_to_multiple(tensor: torch.Tensor | None, divisor: int | tuple[int, int]):
if tensor is None:
return None
if isinstance(divisor, int):
div0 = div1 = divisor
else:
div0, div1 = divisor
height, width = tensor.shape
new_h = ((height + div0 - 1) // div0) * div0
new_w = ((width + div1 - 1) // div1) * div1
if new_h == height and new_w == width:
return tensor
padded = torch.zeros((new_h, new_w), dtype=tensor.dtype, device=tensor.device)
padded[:height, :width] = tensor
return padded
def _pack_lowrank_weight(weight: torch.Tensor | None, down: bool):
if weight is None or weight.ndim != 2:
return weight
lane_n, lane_k = 1, 2
n_pack_size, k_pack_size = 2, 2
num_n_lanes, num_k_lanes = 8, 4
frag_n = n_pack_size * num_n_lanes * lane_n
frag_k = k_pack_size * num_k_lanes * lane_k
weight = _pad_to_multiple(weight, (frag_n, frag_k))
if weight is None:
return None
if down:
rows, cols = weight.shape
r_frags, c_frags = rows // frag_n, cols // frag_k
weight = weight.view(r_frags, frag_n, c_frags, frag_k).permute(2, 0, 1, 3)
else:
cols, rows = weight.shape
c_frags, r_frags = cols // frag_n, rows // frag_k
weight = weight.view(c_frags, frag_n, r_frags, frag_k).permute(0, 2, 1, 3)
weight = weight.reshape(c_frags, r_frags, n_pack_size, num_n_lanes, k_pack_size, num_k_lanes, lane_k)
weight = weight.permute(0, 1, 3, 5, 2, 4, 6).contiguous()
return weight.view(cols, rows)
def _pack_nunchaku_w4a4_weight(qvals, out_features, in_features):
if qvals is None or qvals.ndim != 2:
return qvals
if qvals.dtype not in (torch.int8, torch.int16, torch.int32):
qvals = qvals.to(torch.int32)
if qvals.dtype != torch.int32:
qvals = qvals.to(torch.int32)
if qvals.shape != (out_features, in_features):
return None
mem_n = 128
mem_k = 64
num_k_unrolls = 2
if out_features % mem_n != 0 or in_features % (mem_k * num_k_unrolls) != 0:
return None
n_pack_size = 2
k_pack_size = 2
num_n_lanes = 8
num_k_lanes = 4
reg_n = 1
reg_k = 8
num_n_packs = mem_n // (n_pack_size * num_n_lanes * reg_n)
num_k_packs = mem_k // (k_pack_size * num_k_lanes * reg_k)
n_tiles = out_features // mem_n
k_tiles = in_features // mem_k
weight = qvals.reshape(
n_tiles,
num_n_packs,
n_pack_size,
num_n_lanes,
reg_n,
k_tiles,
num_k_packs,
k_pack_size,
num_k_lanes,
reg_k,
)
weight = weight.permute(0, 5, 6, 1, 3, 8, 2, 7, 4, 9).contiguous()
weight = weight.bitwise_and_(0xF)
shifts = torch.arange(0, 32, 4, dtype=torch.int32, device=weight.device)
weight = weight.bitwise_left_shift_(shifts)
weight = weight.sum(dim=-1, dtype=torch.int32)
return weight.view(dtype=torch.int8).view(out_features, -1)
def _unpack_lowrank_weight(weight: torch.Tensor | None, down: bool):
if weight is None:
return None
nunchaku = _maybe_load_nunchaku()
if nunchaku is None:
return weight
return nunchaku._unpack_lowrank_weight(weight, down)
def _block_diag_out(mats):
if not mats:
return None
ref = mats[0]
total_rows = sum(m.size(0) for m in mats)
total_cols = sum(m.size(1) for m in mats)
out = torch.zeros((total_rows, total_cols), dtype=ref.dtype, device=ref.device)
row = 0
col = 0
for mat in mats:
mat = _match_dtype_device(ref, mat)
out[row : row + mat.size(0), col : col + mat.size(1)] = mat
row += mat.size(0)
col += mat.size(1)
return out
def _merge_lowrank_down(values):
if any(v is None for v in values):
return None
unpacked = [_unpack_lowrank_weight(v, down=True) for v in values]
ref = unpacked[0]
merged = [ref] + [_match_dtype_device(ref, v) for v in unpacked[1:]]
merged = torch.cat(merged, dim=0)
return _pack_lowrank_weight(merged, down=True)
def _merge_lowrank_up(values):
if any(v is None for v in values):
return None
unpacked = [_unpack_lowrank_weight(v, down=False) for v in values]
merged = _block_diag_out(unpacked)
return _pack_lowrank_weight(merged, down=False)
def _merge_lowrank_down_block_diag(values):
if any(v is None for v in values):
return None
unpacked = [_unpack_lowrank_weight(v, down=True) for v in values]
merged = _block_diag_out(unpacked)
return _pack_lowrank_weight(merged, down=True)
def _merge_lowrank_up_concat(values):
if any(v is None for v in values):
return None
unpacked = [_unpack_lowrank_weight(v, down=False) for v in values]
ref = unpacked[0]
merged = [ref] + [_match_dtype_device(ref, v) for v in unpacked[1:]]
merged = torch.cat(merged, dim=1)
return _pack_lowrank_weight(merged, down=False)
def _merge_qweight_in(values):
if any(v is None for v in values):
return None
a, b = values
out_a, in_a = _get_qweight_dims(a)
out_b, in_b = _get_qweight_dims(b)
if out_a is None or in_a is None or out_b is None or in_b is None:
return _concat(values, dim=1)
if out_a != out_b:
return _concat(values, dim=1)
nunchaku = _maybe_load_nunchaku()
if nunchaku is None or a.dtype != torch.int8 or b.dtype != torch.int8:
return _concat(values, dim=1)
unpack_a = nunchaku._unpack_nunchaku_w4a4_weight(a, out_a, in_a)
unpack_b = nunchaku._unpack_nunchaku_w4a4_weight(b, out_b, in_b)
if not torch.is_tensor(unpack_a) or not torch.is_tensor(unpack_b):
return _concat(values, dim=1)
if unpack_a.dtype != torch.int32:
unpack_a = unpack_a.to(torch.int32)
if unpack_b.dtype != torch.int32:
unpack_b = unpack_b.to(torch.int32)
if unpack_a.dtype != unpack_b.dtype or unpack_a.device != unpack_b.device:
unpack_b = unpack_b.to(device=unpack_a.device, dtype=unpack_a.dtype)
merged = torch.cat([unpack_a, unpack_b], dim=1)
packed = _pack_nunchaku_w4a4_weight(merged, out_a, in_a + in_b)
if packed is None:
return _concat(values, dim=1)
return packed
def _merge_multi(values, suffix, qweights):
if any(v is None for v in values):
return None
if suffix in (".wscales", ".wzeros"):
return _merge_packed_scales_out(values, qweights)
if suffix == ".proj_down":
return _merge_lowrank_down(values)
if suffix == ".proj_up":
return _merge_lowrank_up(values)
if suffix in (".smooth_factor", ".smooth_factor_orig", ".input_scale", ".output_scale", ".scale_weight"):
return values[0]
return _concat(values, dim=0)
def _merge_multi_in(values, suffix, qweights):
if any(v is None for v in values):
return None
if suffix == ".qweight":
return _merge_qweight_in(values)
if suffix in (".wscales", ".wzeros"):
return _merge_packed_scales_in(values, qweights)
if suffix == ".proj_down":
return _merge_lowrank_down_block_diag(values)
if suffix == ".proj_up":
return _merge_lowrank_up_concat(values)
if suffix in (".smooth_factor", ".smooth_factor_orig"):
return _concat(values, dim=0)
if suffix == ".bias":
ref = values[0]
total = ref
for val in values[1:]:
total = total + _match_dtype_device(ref, val)
return total
if suffix in (".input_scale", ".output_scale", ".scale_weight"):
return values[0]
return _concat(values, dim=1)
def _convert_from_source(src, *, verbose: bool = False) -> dict:
base_keys = src.base_keys
num_dual, num_single = _count_blocks(base_keys)
if verbose:
print(f"Found {num_dual} dual-stream blocks, {num_single} single-stream blocks")
out = {}
quant_suffixes = {
".qweight",
".wscales",
".wzeros",
".smooth",
".smooth_orig",
".lora_down",
".lora_up",
".bias",
".input_scale",
".output_scale",
".scale_weight",
}
def _map_entry(src_prefix, tgt_template, dvals):
tgt_base_template, tgt_suffix = tgt_template.rsplit(".", 1)
tgt_suffix = "." + tgt_suffix
candidates = dvals if isinstance(dvals[0], (list, tuple)) else [dvals]
for candidate in candidates:
src_suffix = "." + candidate[0].rsplit(".", 1)[1]
if any(d.rsplit(".", 1)[1] != src_suffix.lstrip(".") for d in candidate):
continue
src_bases = [d.rsplit(".", 1)[0] for d in candidate]
suffix_sets = [_collect_suffixes(base_keys, src_prefix + base) for base in src_bases]
if any(not suffix_set for suffix_set in suffix_sets):
continue
common_suffixes = set.intersection(*suffix_sets)
if not common_suffixes:
continue
explicit_suffixes = _TARGET_SUFFIXES.get(tgt_base_template, set())
allow_extra = src_suffix == tgt_suffix
if src_suffix in common_suffixes:
suffixes = {src_suffix}
if allow_extra and tgt_suffix == ".weight":
suffixes |= (common_suffixes - explicit_suffixes)
else:
suffixes = common_suffixes & quant_suffixes
if not suffixes:
continue
tgt_base = (
tgt_base_template.replace("()", str(block_idx))
if "()" in tgt_base_template
else tgt_base_template
)
merge_in_features = tgt_base_template.endswith(".linear2") and len(src_bases) > 1
for suffix in suffixes:
values = [src.get(src_prefix + base + suffix) for base in src_bases]
if len(values) == 1:
merged = values[0]
else:
qweights = [
src.get(src_prefix + base + ".qweight") if src.has(src_prefix + base + ".qweight") else None
for base in src_bases
]
norm_suffix = _normalize_suffix(suffix)
if merge_in_features:
merged = _merge_multi_in(values, norm_suffix, qweights)
else:
merged = _merge_multi(values, norm_suffix, qweights)
if merged is None:
continue
out_suffix = tgt_suffix if suffix == src_suffix else _normalize_suffix(suffix)
out[tgt_base + out_suffix] = merged
break
for block_idx in range(num_dual):
prefix = f"transformer_blocks.{block_idx}."
for tgt_key, dvals in DIFFUSERS_MAP.items():
if not tgt_key.startswith("double_blocks."):
continue
_map_entry(prefix, tgt_key, dvals)
for block_idx in range(num_single):
prefix = f"single_transformer_blocks.{block_idx}."
for tgt_key, dvals in DIFFUSERS_MAP.items():
if not tgt_key.startswith("single_blocks."):
continue
_map_entry(prefix, tgt_key, dvals)
block_idx = None
for tgt_key, dvals in DIFFUSERS_MAP.items():
if tgt_key.startswith(("double_blocks.", "single_blocks.")):
continue
_map_entry("", tgt_key, dvals)
if "final_layer.adaLN_modulation.1.weight" in out:
out["final_layer.adaLN_modulation.1.weight"] = _swap_scale_shift_matrix(
out["final_layer.adaLN_modulation.1.weight"]
)
if "final_layer.adaLN_modulation.1.bias" in out:
out["final_layer.adaLN_modulation.1.bias"] = _swap_scale_shift(
out["final_layer.adaLN_modulation.1.bias"]
)
return out
class DiffusersSource:
"""
Uniform interface over:
1) Folder with index JSON + shards
2) Folder with exactly one .safetensors (no index)
3) Single .safetensors file
Provides .has(key), .get(key)->Tensor, .base_keys (keys with 'model.' stripped for scanning)
"""
POSSIBLE_PREFIXES = ["", "model."] # try in this order
def __init__(self, path: Path):
p = Path(path)
if p.is_dir():
# use 'transformer' subfolder if present
if (p / "transformer").is_dir():
p = p / "transformer"
self._init_from_dir(p)
elif p.is_file() and p.suffix == ".safetensors":
self._init_from_single_file(p)
else:
raise FileNotFoundError(f"Invalid path: {p}")
# ---------- common helpers ----------
@staticmethod
def _strip_prefix(k: str) -> str:
return k[6:] if k.startswith("model.") else k
def _resolve(self, want: str):
"""
Return the actual stored key matching `want` by trying known prefixes.
"""
for pref in self.POSSIBLE_PREFIXES:
k = pref + want
if k in self._all_keys:
return k
return None
def has(self, want: str) -> bool:
return self._resolve(want) is not None
def get(self, want: str) -> torch.Tensor:
real_key = self._resolve(want)
if real_key is None:
raise KeyError(f"Missing key: {want}")
return self._get_by_real_key(real_key).to("cpu")
@property
def base_keys(self):
# keys without 'model.' prefix for scanning
return [self._strip_prefix(k) for k in self._all_keys]
# ---------- modes ----------
def _init_from_single_file(self, file_path: Path):
self._mode = "single"
self._file = file_path
self._handle = safe_open(file_path, framework="pt", device="cpu")
self._all_keys = list(self._handle.keys())
def _get_by_real_key(real_key: str):
return self._handle.get_tensor(real_key)
self._get_by_real_key = _get_by_real_key
def _init_from_dir(self, dpath: Path):
index_json = dpath / "diffusion_pytorch_model.safetensors.index.json"
if index_json.exists():
with open(index_json, "r", encoding="utf-8") as f:
index = json.load(f)
weight_map = index["weight_map"] # full mapping
self._mode = "sharded"
self._dpath = dpath
self._weight_map = {k: dpath / v for k, v in weight_map.items()}
self._all_keys = list(self._weight_map.keys())
self._open_handles = {}
def _get_by_real_key(real_key: str):
fpath = self._weight_map[real_key]
h = self._open_handles.get(fpath)
if h is None:
h = safe_open(fpath, framework="pt", device="cpu")
self._open_handles[fpath] = h
return h.get_tensor(real_key)
self._get_by_real_key = _get_by_real_key
return
# no index: try exactly one safetensors in folder
files = sorted(dpath.glob("*.safetensors"))
if len(files) != 1:
raise FileNotFoundError(
f"No index found and {dpath} does not contain exactly one .safetensors file."
)
self._init_from_single_file(files[0])
def main():
args = parse_args()
src = DiffusersSource(Path(args.diffusers_path))
orig = _convert_from_source(src, verbose=True)
# Optional FP8 variants (experimental; not required for ComfyUI/BFL)
if args.fp8 or args.fp8_scaled:
dtype = torch.float8_e4m3fn # noqa
minv, maxv = torch.finfo(dtype).min, torch.finfo(dtype).max
def stochastic_round_to(t):
t = t.float().clamp(minv, maxv)
lower = torch.floor(t * 256) / 256
upper = torch.ceil(t * 256) / 256
prob = torch.where(upper != lower, (t - lower) / (upper - lower), torch.zeros_like(t))
rnd = torch.rand_like(t)
out = torch.where(rnd < prob, upper, lower)
return out.to(dtype)
def scale_to_8bit(weight, target_max=416.0):
absmax = weight.abs().max()
scale = absmax / target_max if absmax > 0 else torch.tensor(1.0)
scaled = (weight / scale).clamp(minv, maxv).to(dtype)
return scaled, scale
scales = {}
for k in tqdm(list(orig.keys()), desc="Quantizing to fp8"):
t = orig[k]
if args.fp8:
orig[k] = stochastic_round_to(t)
else:
if k.endswith(".weight") and t.dim() == 2:
qt, s = scale_to_8bit(t)
orig[k] = qt
scales[k[:-len(".weight")] + ".scale_weight"] = s
else:
orig[k] = t.clamp(minv, maxv).to(dtype)
if args.fp8_scaled:
orig.update(scales)
orig["scaled_fp8"] = torch.tensor([], dtype=dtype)
else:
# Default: save in bfloat16
for k in list(orig.keys()):
orig[k] = orig[k].to(torch.bfloat16).cpu()
out_path = Path(args.output_path)
out_path.parent.mkdir(parents=True, exist_ok=True)
meta = OrderedDict()
meta["format"] = "pt"
meta["modelspec.date"] = __import__("datetime").date.today().strftime("%Y-%m-%d")
print(f"Saving transformer to: {out_path}")
safetensors.torch.save_file(orig, str(out_path), metadata=meta)
print("Done.")
if __name__ == "__main__":
main()