mirror of
https://github.com/modelscope/DiffSynth-Studio.git
synced 2026-03-18 22:08:13 +00:00
205 lines
15 KiB
Python
205 lines
15 KiB
Python
from .general import GeneralLoRALoader
|
|
import torch, math
|
|
|
|
|
|
class FluxLoRALoader(GeneralLoRALoader):
|
|
def __init__(self, device="cpu", torch_dtype=torch.float32):
|
|
super().__init__(device=device, torch_dtype=torch_dtype)
|
|
|
|
self.diffusers_rename_dict = {
|
|
"transformer.single_transformer_blocks.blockid.attn.to_k.lora_A.weight":"single_blocks.blockid.a_to_k.lora_A.weight",
|
|
"transformer.single_transformer_blocks.blockid.attn.to_k.lora_B.weight":"single_blocks.blockid.a_to_k.lora_B.weight",
|
|
"transformer.single_transformer_blocks.blockid.attn.to_q.lora_A.weight":"single_blocks.blockid.a_to_q.lora_A.weight",
|
|
"transformer.single_transformer_blocks.blockid.attn.to_q.lora_B.weight":"single_blocks.blockid.a_to_q.lora_B.weight",
|
|
"transformer.single_transformer_blocks.blockid.attn.to_v.lora_A.weight":"single_blocks.blockid.a_to_v.lora_A.weight",
|
|
"transformer.single_transformer_blocks.blockid.attn.to_v.lora_B.weight":"single_blocks.blockid.a_to_v.lora_B.weight",
|
|
"transformer.single_transformer_blocks.blockid.norm.linear.lora_A.weight":"single_blocks.blockid.norm.linear.lora_A.weight",
|
|
"transformer.single_transformer_blocks.blockid.norm.linear.lora_B.weight":"single_blocks.blockid.norm.linear.lora_B.weight",
|
|
"transformer.single_transformer_blocks.blockid.proj_mlp.lora_A.weight":"single_blocks.blockid.proj_in_besides_attn.lora_A.weight",
|
|
"transformer.single_transformer_blocks.blockid.proj_mlp.lora_B.weight":"single_blocks.blockid.proj_in_besides_attn.lora_B.weight",
|
|
"transformer.single_transformer_blocks.blockid.proj_out.lora_A.weight":"single_blocks.blockid.proj_out.lora_A.weight",
|
|
"transformer.single_transformer_blocks.blockid.proj_out.lora_B.weight":"single_blocks.blockid.proj_out.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.add_k_proj.lora_A.weight":"blocks.blockid.attn.b_to_k.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.add_k_proj.lora_B.weight":"blocks.blockid.attn.b_to_k.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.add_q_proj.lora_A.weight":"blocks.blockid.attn.b_to_q.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.add_q_proj.lora_B.weight":"blocks.blockid.attn.b_to_q.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.add_v_proj.lora_A.weight":"blocks.blockid.attn.b_to_v.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.add_v_proj.lora_B.weight":"blocks.blockid.attn.b_to_v.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_add_out.lora_A.weight":"blocks.blockid.attn.b_to_out.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_add_out.lora_B.weight":"blocks.blockid.attn.b_to_out.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_k.lora_A.weight":"blocks.blockid.attn.a_to_k.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_k.lora_B.weight":"blocks.blockid.attn.a_to_k.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_out.0.lora_A.weight":"blocks.blockid.attn.a_to_out.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_out.0.lora_B.weight":"blocks.blockid.attn.a_to_out.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_q.lora_A.weight":"blocks.blockid.attn.a_to_q.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_q.lora_B.weight":"blocks.blockid.attn.a_to_q.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_v.lora_A.weight":"blocks.blockid.attn.a_to_v.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.attn.to_v.lora_B.weight":"blocks.blockid.attn.a_to_v.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.ff.net.0.proj.lora_A.weight":"blocks.blockid.ff_a.0.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.ff.net.0.proj.lora_B.weight":"blocks.blockid.ff_a.0.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.ff.net.2.lora_A.weight":"blocks.blockid.ff_a.2.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.ff.net.2.lora_B.weight":"blocks.blockid.ff_a.2.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.ff_context.net.0.proj.lora_A.weight":"blocks.blockid.ff_b.0.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.ff_context.net.0.proj.lora_B.weight":"blocks.blockid.ff_b.0.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.ff_context.net.2.lora_A.weight":"blocks.blockid.ff_b.2.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.ff_context.net.2.lora_B.weight":"blocks.blockid.ff_b.2.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.norm1.linear.lora_A.weight":"blocks.blockid.norm1_a.linear.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.norm1.linear.lora_B.weight":"blocks.blockid.norm1_a.linear.lora_B.weight",
|
|
"transformer.transformer_blocks.blockid.norm1_context.linear.lora_A.weight":"blocks.blockid.norm1_b.linear.lora_A.weight",
|
|
"transformer.transformer_blocks.blockid.norm1_context.linear.lora_B.weight":"blocks.blockid.norm1_b.linear.lora_B.weight",
|
|
}
|
|
|
|
self.civitai_rename_dict = {
|
|
"lora_unet_double_blocks_blockid_img_mod_lin.lora_down.weight": "blocks.blockid.norm1_a.linear.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_img_mod_lin.lora_up.weight": "blocks.blockid.norm1_a.linear.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_txt_mod_lin.lora_down.weight": "blocks.blockid.norm1_b.linear.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_txt_mod_lin.lora_up.weight": "blocks.blockid.norm1_b.linear.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_img_attn_qkv.lora_down.weight": "blocks.blockid.attn.a_to_qkv.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_img_attn_qkv.lora_up.weight": "blocks.blockid.attn.a_to_qkv.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_txt_attn_qkv.lora_down.weight": "blocks.blockid.attn.b_to_qkv.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_txt_attn_qkv.lora_up.weight": "blocks.blockid.attn.b_to_qkv.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_img_attn_proj.lora_down.weight": "blocks.blockid.attn.a_to_out.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_img_attn_proj.lora_up.weight": "blocks.blockid.attn.a_to_out.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_txt_attn_proj.lora_down.weight": "blocks.blockid.attn.b_to_out.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_txt_attn_proj.lora_up.weight": "blocks.blockid.attn.b_to_out.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_img_mlp_0.lora_down.weight": "blocks.blockid.ff_a.0.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_img_mlp_0.lora_up.weight": "blocks.blockid.ff_a.0.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_img_mlp_2.lora_down.weight": "blocks.blockid.ff_a.2.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_img_mlp_2.lora_up.weight": "blocks.blockid.ff_a.2.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_txt_mlp_0.lora_down.weight": "blocks.blockid.ff_b.0.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_txt_mlp_0.lora_up.weight": "blocks.blockid.ff_b.0.lora_B.weight",
|
|
"lora_unet_double_blocks_blockid_txt_mlp_2.lora_down.weight": "blocks.blockid.ff_b.2.lora_A.weight",
|
|
"lora_unet_double_blocks_blockid_txt_mlp_2.lora_up.weight": "blocks.blockid.ff_b.2.lora_B.weight",
|
|
"lora_unet_single_blocks_blockid_modulation_lin.lora_down.weight": "single_blocks.blockid.norm.linear.lora_A.weight",
|
|
"lora_unet_single_blocks_blockid_modulation_lin.lora_up.weight": "single_blocks.blockid.norm.linear.lora_B.weight",
|
|
"lora_unet_single_blocks_blockid_linear1.lora_down.weight": "single_blocks.blockid.to_qkv_mlp.lora_A.weight",
|
|
"lora_unet_single_blocks_blockid_linear1.lora_up.weight": "single_blocks.blockid.to_qkv_mlp.lora_B.weight",
|
|
"lora_unet_single_blocks_blockid_linear2.lora_down.weight": "single_blocks.blockid.proj_out.lora_A.weight",
|
|
"lora_unet_single_blocks_blockid_linear2.lora_up.weight": "single_blocks.blockid.proj_out.lora_B.weight",
|
|
}
|
|
|
|
def fuse_lora_to_base_model(self, model: torch.nn.Module, state_dict_lora, alpha=1.0):
|
|
super().fuse_lora_to_base_model(model, state_dict_lora, alpha)
|
|
|
|
def convert_state_dict(self, state_dict):
|
|
|
|
def guess_block_id(name,model_resource):
|
|
if model_resource == 'civitai':
|
|
names = name.split("_")
|
|
for i in names:
|
|
if i.isdigit():
|
|
return i, name.replace(f"_{i}_", "_blockid_")
|
|
if model_resource == 'diffusers':
|
|
names = name.split(".")
|
|
for i in names:
|
|
if i.isdigit():
|
|
return i, name.replace(f"transformer_blocks.{i}.", "transformer_blocks.blockid.")
|
|
return None, None
|
|
|
|
def guess_resource(state_dict):
|
|
for k in state_dict:
|
|
if "lora_unet_" in k:
|
|
return 'civitai'
|
|
elif k.startswith("transformer."):
|
|
return 'diffusers'
|
|
else:
|
|
None
|
|
|
|
model_resource = guess_resource(state_dict)
|
|
if model_resource is None:
|
|
return state_dict
|
|
|
|
rename_dict = self.diffusers_rename_dict if model_resource == 'diffusers' else self.civitai_rename_dict
|
|
def guess_alpha(state_dict):
|
|
for name, param in state_dict.items():
|
|
if ".alpha" in name:
|
|
for suffix in [".lora_down.weight", ".lora_A.weight"]:
|
|
name_ = name.replace(".alpha", suffix)
|
|
if name_ in state_dict:
|
|
lora_alpha = param.item() / state_dict[name_].shape[0]
|
|
lora_alpha = math.sqrt(lora_alpha)
|
|
return lora_alpha
|
|
|
|
return 1
|
|
|
|
alpha = guess_alpha(state_dict)
|
|
|
|
state_dict_ = {}
|
|
for name, param in state_dict.items():
|
|
block_id, source_name = guess_block_id(name,model_resource)
|
|
if alpha != 1:
|
|
param *= alpha
|
|
if source_name in rename_dict:
|
|
target_name = rename_dict[source_name]
|
|
target_name = target_name.replace(".blockid.", f".{block_id}.")
|
|
state_dict_[target_name] = param
|
|
else:
|
|
state_dict_[name] = param
|
|
|
|
if model_resource == 'diffusers':
|
|
for name in list(state_dict_.keys()):
|
|
if "single_blocks." in name and ".a_to_q." in name:
|
|
mlp = state_dict_.get(name.replace(".a_to_q.", ".proj_in_besides_attn."), None)
|
|
if mlp is None:
|
|
dim = 4
|
|
if 'lora_A' in name:
|
|
dim = 1
|
|
mlp = torch.zeros(dim * state_dict_[name].shape[0],
|
|
*state_dict_[name].shape[1:],
|
|
dtype=state_dict_[name].dtype)
|
|
else:
|
|
state_dict_.pop(name.replace(".a_to_q.", ".proj_in_besides_attn."))
|
|
if 'lora_A' in name:
|
|
param = torch.concat([
|
|
state_dict_.pop(name),
|
|
state_dict_.pop(name.replace(".a_to_q.", ".a_to_k.")),
|
|
state_dict_.pop(name.replace(".a_to_q.", ".a_to_v.")),
|
|
mlp,
|
|
], dim=0)
|
|
elif 'lora_B' in name:
|
|
d, r = state_dict_[name].shape
|
|
param = torch.zeros((3*d+mlp.shape[0], 3*r+mlp.shape[1]), dtype=state_dict_[name].dtype, device=state_dict_[name].device)
|
|
param[:d, :r] = state_dict_.pop(name)
|
|
param[d:2*d, r:2*r] = state_dict_.pop(name.replace(".a_to_q.", ".a_to_k."))
|
|
param[2*d:3*d, 2*r:3*r] = state_dict_.pop(name.replace(".a_to_q.", ".a_to_v."))
|
|
param[3*d:, 3*r:] = mlp
|
|
else:
|
|
param = torch.concat([
|
|
state_dict_.pop(name),
|
|
state_dict_.pop(name.replace(".a_to_q.", ".a_to_k.")),
|
|
state_dict_.pop(name.replace(".a_to_q.", ".a_to_v.")),
|
|
mlp,
|
|
], dim=0)
|
|
name_ = name.replace(".a_to_q.", ".to_qkv_mlp.")
|
|
state_dict_[name_] = param
|
|
for name in list(state_dict_.keys()):
|
|
for component in ["a", "b"]:
|
|
if f".{component}_to_q." in name:
|
|
name_ = name.replace(f".{component}_to_q.", f".{component}_to_qkv.")
|
|
concat_dim = 0
|
|
if 'lora_A' in name:
|
|
param = torch.concat([
|
|
state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_q.")],
|
|
state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_k.")],
|
|
state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_v.")],
|
|
], dim=0)
|
|
elif 'lora_B' in name:
|
|
origin = state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_q.")]
|
|
d, r = origin.shape
|
|
# print(d, r)
|
|
param = torch.zeros((3*d, 3*r), dtype=origin.dtype, device=origin.device)
|
|
param[:d, :r] = state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_q.")]
|
|
param[d:2*d, r:2*r] = state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_k.")]
|
|
param[2*d:3*d, 2*r:3*r] = state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_v.")]
|
|
else:
|
|
param = torch.concat([
|
|
state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_q.")],
|
|
state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_k.")],
|
|
state_dict_[name.replace(f".{component}_to_q.", f".{component}_to_v.")],
|
|
], dim=0)
|
|
state_dict_[name_] = param
|
|
state_dict_.pop(name.replace(f".{component}_to_q.", f".{component}_to_q."))
|
|
state_dict_.pop(name.replace(f".{component}_to_q.", f".{component}_to_k."))
|
|
state_dict_.pop(name.replace(f".{component}_to_q.", f".{component}_to_v."))
|
|
return state_dict_
|