support flux lora inference

This commit is contained in:
Artiprocher
2024-09-04 09:39:39 +08:00
parent d154bee18a
commit a488810693
3 changed files with 58 additions and 6 deletions

View File

@@ -464,9 +464,9 @@ class FluxDiTStateDictConverter:
name_ = ".".join(names[:2] + [rename_dict_single[middle]] + [suffix[1:]])
state_dict_[name_] = param
else:
print(name)
pass
else:
print(name)
pass
for name in list(state_dict_.keys()):
if ".proj_in_besides_attn." in name:
name_ = name.replace(".proj_in_besides_attn.", ".linear.")
@@ -570,6 +570,6 @@ class FluxDiTStateDictConverter:
rename = f"single_blocks.{names[1]}." + suffix_rename_dict[".".join(names[2:])]
state_dict_[rename] = param
else:
print(name)
pass
return state_dict_

View File

@@ -4,6 +4,7 @@ from .sdxl_unet import SDXLUNet
from .sd_text_encoder import SDTextEncoder
from .sdxl_text_encoder import SDXLTextEncoder, SDXLTextEncoder2
from .sd3_dit import SD3DiT
from .flux_dit import FluxDiT
from .hunyuan_dit import HunyuanDiT
@@ -17,6 +18,13 @@ class LoRAFromCivitai:
def convert_state_dict(self, state_dict, lora_prefix="lora_unet_", alpha=1.0):
for key in state_dict:
if ".lora_up" in key:
return self.convert_state_dict_up_down(state_dict, lora_prefix, alpha)
return self.convert_state_dict_AB(state_dict, lora_prefix, alpha)
def convert_state_dict_up_down(self, state_dict, lora_prefix="lora_unet_", alpha=1.0):
renamed_lora_prefix = self.renamed_lora_prefix.get(lora_prefix, "")
state_dict_ = {}
for key in state_dict:
@@ -39,6 +47,29 @@ class LoRAFromCivitai:
return state_dict_
def convert_state_dict_AB(self, state_dict, lora_prefix="", alpha=1.0, device="cuda", torch_dtype=torch.float16):
state_dict_ = {}
for key in state_dict:
if ".lora_B." not in key:
continue
if not key.startswith(lora_prefix):
continue
weight_up = state_dict[key].to(device=device, dtype=torch_dtype)
weight_down = state_dict[key.replace(".lora_B.", ".lora_A.")].to(device=device, dtype=torch_dtype)
if len(weight_up.shape) == 4:
weight_up = weight_up.squeeze(3).squeeze(2)
weight_down = weight_down.squeeze(3).squeeze(2)
lora_weight = alpha * torch.mm(weight_up, weight_down).unsqueeze(2).unsqueeze(3)
else:
lora_weight = alpha * torch.mm(weight_up, weight_down)
keys = key.split(".")
keys.pop(keys.index("lora_B"))
target_name = ".".join(keys)
target_name = target_name[len(lora_prefix):]
state_dict_[target_name] = lora_weight.cpu()
return state_dict_
def load(self, model, state_dict_lora, lora_prefix, alpha=1.0, model_resource=None):
state_dict_model = model.state_dict()
state_dict_lora = self.convert_state_dict(state_dict_lora, lora_prefix=lora_prefix, alpha=alpha)
@@ -134,6 +165,23 @@ class SDXLLoRAFromCivitai(LoRAFromCivitai):
}
class FluxLoRAFromCivitai(LoRAFromCivitai):
def __init__(self):
super().__init__()
self.supported_model_classes = [FluxDiT, FluxDiT]
self.lora_prefix = ["lora_unet_", "transformer."]
self.renamed_lora_prefix = {}
self.special_keys = {
"single.blocks": "single_blocks",
"double.blocks": "double_blocks",
"img.attn": "img_attn",
"img.mlp": "img_mlp",
"img.mod": "img_mod",
"txt.attn": "txt_attn",
"txt.mlp": "txt_mlp",
"txt.mod": "txt_mod",
}
class GeneralLoRAFromPeft:
def __init__(self):
@@ -192,4 +240,8 @@ class GeneralLoRAFromPeft:
return "", ""
except:
pass
return None
return None
def get_lora_loaders():
return [SDLoRAFromCivitai(), SDXLLoRAFromCivitai(), GeneralLoRAFromPeft(), FluxLoRAFromCivitai()]

View File

@@ -10,7 +10,7 @@ from .sd_text_encoder import SDTextEncoder
from .sd_unet import SDUNet
from .sd_vae_encoder import SDVAEEncoder
from .sd_vae_decoder import SDVAEDecoder
from .lora import SDLoRAFromCivitai, SDXLLoRAFromCivitai, GeneralLoRAFromPeft
from .lora import get_lora_loaders
from .sdxl_text_encoder import SDXLTextEncoder, SDXLTextEncoder2
from .sdxl_unet import SDXLUNet
@@ -403,7 +403,7 @@ class ModelManager:
if len(state_dict) == 0:
state_dict = load_state_dict(file_path)
for model_name, model, model_path in zip(self.model_name, self.model, self.model_path):
for lora in [SDLoRAFromCivitai(), SDXLLoRAFromCivitai(), GeneralLoRAFromPeft()]:
for lora in get_lora_loaders():
match_results = lora.match(model, state_dict)
if match_results is not None:
print(f" Adding LoRA to {model_name} ({model_path}).")