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96864fb
add alpha
linoytsaban Aug 5, 2025
0847255
load into 2nd transformer
linoytsaban Aug 5, 2025
dcce164
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 5, 2025
d083f86
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 7, 2025
5284a9c
Update src/diffusers/loaders/lora_conversion_utils.py
linoytsaban Aug 7, 2025
0a7be77
Update src/diffusers/loaders/lora_conversion_utils.py
linoytsaban Aug 7, 2025
b7e24d9
pr comments
linoytsaban Aug 7, 2025
bcb0924
pr comments
linoytsaban Aug 7, 2025
cabcf3d
pr comments
linoytsaban Aug 7, 2025
eda4d4b
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 7, 2025
4fdf400
fix
linoytsaban Aug 7, 2025
0ed988c
Merge remote-tracking branch 'origin/wan22-lightx2v' into wan22-lightx2v
linoytsaban Aug 8, 2025
f3afbf1
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 8, 2025
724b9a2
fix
linoytsaban Aug 8, 2025
daaa598
Merge remote-tracking branch 'origin/wan22-lightx2v' into wan22-lightx2v
linoytsaban Aug 8, 2025
6e8d333
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 11, 2025
b09fc48
Apply style fixes
github-actions[bot] Aug 11, 2025
af03f73
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 11, 2025
729252e
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 13, 2025
ea451d1
fix copies
Aug 13, 2025
18382f4
fix
linoytsaban Aug 13, 2025
4c425e2
fix copies
Aug 13, 2025
a57aa54
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 14, 2025
52ede6f
Merge branch 'main' into wan22-lightx2v
sayakpaul Aug 18, 2025
386cf1c
Update src/diffusers/loaders/lora_pipeline.py
linoytsaban Aug 18, 2025
64d9b04
Merge branch 'main' into wan22-lightx2v
linoytsaban Aug 18, 2025
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revert change
linoytsaban Aug 18, 2025
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Merge remote-tracking branch 'origin/wan22-lightx2v' into wan22-lightx2v
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revert change
linoytsaban Aug 18, 2025
d83a592
fix copies
Aug 18, 2025
c3cb4a6
Merge branch 'main' into wan22-lightx2v
sayakpaul Aug 19, 2025
ce5be55
up
sayakpaul Aug 19, 2025
5e21c4d
Merge branch 'main' into wan22-lightx2v
sayakpaul Aug 19, 2025
0559eac
fix
sayakpaul Aug 19, 2025
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119 changes: 84 additions & 35 deletions src/diffusers/loaders/lora_conversion_utils.py
Original file line number Diff line number Diff line change
Expand Up @@ -1833,6 +1833,17 @@ def _convert_non_diffusers_wan_lora_to_diffusers(state_dict):
k.startswith("time_projection") and k.endswith(".weight") for k in original_state_dict
)

def get_alpha_scales(down_weight, alpha_key):
rank = down_weight.shape[0]
alpha = original_state_dict.pop(alpha_key).item()
scale = alpha / rank # LoRA is scaled by 'alpha / rank' in forward pass, so we need to scale it back here
scale_down = scale
scale_up = 1.0
while scale_down * 2 < scale_up:
scale_down *= 2
scale_up /= 2
return scale_down, scale_up

for key in list(original_state_dict.keys()):
if key.endswith((".diff", ".diff_b")) and "norm" in key:
# NOTE: we don't support this because norm layer diff keys are just zeroed values. We can support it
Expand All @@ -1852,15 +1863,26 @@ def _convert_non_diffusers_wan_lora_to_diffusers(state_dict):
for i in range(min_block, max_block + 1):
# Self-attention
for o, c in zip(["q", "k", "v", "o"], ["to_q", "to_k", "to_v", "to_out.0"]):
original_key = f"blocks.{i}.self_attn.{o}.{lora_down_key}.weight"
converted_key = f"blocks.{i}.attn1.{c}.lora_A.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)
alpha_key = f"blocks.{i}.self_attn.{o}.alpha"
has_alpha = alpha_key in original_state_dict
original_key_A = f"blocks.{i}.self_attn.{o}.{lora_down_key}.weight"
converted_key_A = f"blocks.{i}.attn1.{c}.lora_A.weight"

original_key = f"blocks.{i}.self_attn.{o}.{lora_up_key}.weight"
converted_key = f"blocks.{i}.attn1.{c}.lora_B.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)
original_key_B = f"blocks.{i}.self_attn.{o}.{lora_up_key}.weight"
converted_key_B = f"blocks.{i}.attn1.{c}.lora_B.weight"

if has_alpha:
down_weight = original_state_dict.pop(original_key_A)
up_weight = original_state_dict.pop(original_key_B)
scale_down, scale_up = get_alpha_scales(down_weight, alpha_key)
converted_state_dict[converted_key_A] = down_weight * scale_down
converted_state_dict[converted_key_B] = up_weight * scale_up

else:
if original_key_A in original_state_dict:
converted_state_dict[converted_key_A] = original_state_dict.pop(original_key_A)
if original_key_B in original_state_dict:
converted_state_dict[converted_key_B] = original_state_dict.pop(original_key_B)

original_key = f"blocks.{i}.self_attn.{o}.diff_b"
converted_key = f"blocks.{i}.attn1.{c}.lora_B.bias"
Expand All @@ -1869,15 +1891,24 @@ def _convert_non_diffusers_wan_lora_to_diffusers(state_dict):

# Cross-attention
for o, c in zip(["q", "k", "v", "o"], ["to_q", "to_k", "to_v", "to_out.0"]):
original_key = f"blocks.{i}.cross_attn.{o}.{lora_down_key}.weight"
converted_key = f"blocks.{i}.attn2.{c}.lora_A.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)

original_key = f"blocks.{i}.cross_attn.{o}.{lora_up_key}.weight"
converted_key = f"blocks.{i}.attn2.{c}.lora_B.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)
alpha_key = f"blocks.{i}.cross_attn.{o}.alpha"
has_alpha = alpha_key in original_state_dict
original_key_A = f"blocks.{i}.cross_attn.{o}.{lora_down_key}.weight"
converted_key_A = f"blocks.{i}.attn2.{c}.lora_A.weight"

original_key_B = f"blocks.{i}.cross_attn.{o}.{lora_up_key}.weight"
converted_key_B = f"blocks.{i}.attn2.{c}.lora_B.weight"

if original_key_A in original_state_dict:
down_weight = original_state_dict.pop(original_key_A)
converted_state_dict[converted_key_A] = down_weight
if original_key_B in original_state_dict:
up_weight = original_state_dict.pop(original_key_B)
converted_state_dict[converted_key_B] = up_weight
if has_alpha:
scale_down, scale_up = get_alpha_scales(down_weight, alpha_key)
converted_state_dict[converted_key_A] *= scale_down
converted_state_dict[converted_key_B] *= scale_up

original_key = f"blocks.{i}.cross_attn.{o}.diff_b"
converted_key = f"blocks.{i}.attn2.{c}.lora_B.bias"
Expand All @@ -1886,15 +1917,24 @@ def _convert_non_diffusers_wan_lora_to_diffusers(state_dict):

if is_i2v_lora:
for o, c in zip(["k_img", "v_img"], ["add_k_proj", "add_v_proj"]):
original_key = f"blocks.{i}.cross_attn.{o}.{lora_down_key}.weight"
converted_key = f"blocks.{i}.attn2.{c}.lora_A.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)

original_key = f"blocks.{i}.cross_attn.{o}.{lora_up_key}.weight"
converted_key = f"blocks.{i}.attn2.{c}.lora_B.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)
alpha_key = f"blocks.{i}.cross_attn.{o}.alpha"
has_alpha = alpha_key in original_state_dict
original_key_A = f"blocks.{i}.cross_attn.{o}.{lora_down_key}.weight"
converted_key_A = f"blocks.{i}.attn2.{c}.lora_A.weight"

original_key_B = f"blocks.{i}.cross_attn.{o}.{lora_up_key}.weight"
converted_key_B = f"blocks.{i}.attn2.{c}.lora_B.weight"

if original_key_A in original_state_dict:
down_weight = original_state_dict.pop(original_key_A)
converted_state_dict[converted_key_A] = down_weight
if original_key_B in original_state_dict:
up_weight = original_state_dict.pop(original_key_B)
converted_state_dict[converted_key_B] = up_weight
if has_alpha:
scale_down, scale_up = get_alpha_scales(down_weight, alpha_key)
converted_state_dict[converted_key_A] *= scale_down
converted_state_dict[converted_key_B] *= scale_up

original_key = f"blocks.{i}.cross_attn.{o}.diff_b"
converted_key = f"blocks.{i}.attn2.{c}.lora_B.bias"
Expand All @@ -1903,15 +1943,24 @@ def _convert_non_diffusers_wan_lora_to_diffusers(state_dict):

# FFN
for o, c in zip(["ffn.0", "ffn.2"], ["net.0.proj", "net.2"]):
original_key = f"blocks.{i}.{o}.{lora_down_key}.weight"
converted_key = f"blocks.{i}.ffn.{c}.lora_A.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)

original_key = f"blocks.{i}.{o}.{lora_up_key}.weight"
converted_key = f"blocks.{i}.ffn.{c}.lora_B.weight"
if original_key in original_state_dict:
converted_state_dict[converted_key] = original_state_dict.pop(original_key)
alpha_key = f"blocks.{i}.{o}.alpha"
has_alpha = alpha_key in original_state_dict
original_key_A = f"blocks.{i}.{o}.{lora_down_key}.weight"
converted_key_A = f"blocks.{i}.ffn.{c}.lora_A.weight"

original_key_B = f"blocks.{i}.{o}.{lora_up_key}.weight"
converted_key_B = f"blocks.{i}.ffn.{c}.lora_B.weight"

if original_key_A in original_state_dict:
down_weight = original_state_dict.pop(original_key_A)
converted_state_dict[converted_key_A] = down_weight
if original_key_B in original_state_dict:
up_weight = original_state_dict.pop(original_key_B)
converted_state_dict[converted_key_B] = up_weight
if has_alpha:
scale_down, scale_up = get_alpha_scales(down_weight, alpha_key)
converted_state_dict[converted_key_A] *= scale_down
converted_state_dict[converted_key_B] *= scale_up

original_key = f"blocks.{i}.{o}.diff_b"
converted_key = f"blocks.{i}.ffn.{c}.lora_B.bias"
Expand Down
80 changes: 62 additions & 18 deletions src/diffusers/loaders/lora_pipeline.py
Original file line number Diff line number Diff line change
Expand Up @@ -5270,15 +5270,37 @@ def load_lora_weights(
if not is_correct_format:
raise ValueError("Invalid LoRA checkpoint.")

self.load_lora_into_transformer(
state_dict,
transformer=getattr(self, self.transformer_name) if not hasattr(self, "transformer") else self.transformer,
adapter_name=adapter_name,
metadata=metadata,
_pipeline=self,
low_cpu_mem_usage=low_cpu_mem_usage,
hotswap=hotswap,
)
load_into_transformer_2 = kwargs.pop("load_into_transformer_2", False)
if load_into_transformer_2:
if not hasattr(self, "transformer_2"):
raise AttributeError(
f"'{type(self).__name__}' object has no attribute transformer_2"
"Note that Wan2.1 models do not have a transformer_2 component."
"Ensure the model has a transformer_2 component before setting load_into_transformer_2=True."
)
if "transformer_2" not in self._lora_loadable_modules:
self._lora_loadable_modules.append("transformer_2")
self.load_lora_into_transformer(
state_dict,
transformer=self.transformer_2,
adapter_name=adapter_name,
metadata=metadata,
_pipeline=self,
low_cpu_mem_usage=low_cpu_mem_usage,
hotswap=hotswap,
)
else:
self.load_lora_into_transformer(
state_dict,
transformer=getattr(self, self.transformer_name)
if not hasattr(self, "transformer")
else self.transformer,
adapter_name=adapter_name,
metadata=metadata,
_pipeline=self,
low_cpu_mem_usage=low_cpu_mem_usage,
hotswap=hotswap,
)

@classmethod
# Copied from diffusers.loaders.lora_pipeline.SD3LoraLoaderMixin.load_lora_into_transformer with SD3Transformer2DModel->WanTransformer3DModel
Expand Down Expand Up @@ -5668,15 +5690,37 @@ def load_lora_weights(
if not is_correct_format:
raise ValueError("Invalid LoRA checkpoint.")

self.load_lora_into_transformer(
state_dict,
transformer=getattr(self, self.transformer_name) if not hasattr(self, "transformer") else self.transformer,
adapter_name=adapter_name,
metadata=metadata,
_pipeline=self,
low_cpu_mem_usage=low_cpu_mem_usage,
hotswap=hotswap,
)
load_into_transformer_2 = kwargs.pop("load_into_transformer_2", False)
if load_into_transformer_2:
if not hasattr(self, "transformer_2"):
raise AttributeError(
f"'{type(self).__name__}' object has no attribute transformer_2"
"Note that Wan2.1 models do not have a transformer_2 component."
"Ensure the model has a transformer_2 component before setting load_into_transformer_2=True."
)
if "transformer_2" not in self._lora_loadable_modules:
self._lora_loadable_modules.append("transformer_2")
self.load_lora_into_transformer(
state_dict,
transformer=self.transformer_2,
adapter_name=adapter_name,
metadata=metadata,
_pipeline=self,
low_cpu_mem_usage=low_cpu_mem_usage,
hotswap=hotswap,
)
else:
self.load_lora_into_transformer(
state_dict,
transformer=getattr(self, self.transformer_name)
if not hasattr(self, "transformer")
else self.transformer,
adapter_name=adapter_name,
metadata=metadata,
_pipeline=self,
low_cpu_mem_usage=low_cpu_mem_usage,
hotswap=hotswap,
)

@classmethod
# Copied from diffusers.loaders.lora_pipeline.SD3LoraLoaderMixin.load_lora_into_transformer with SD3Transformer2DModel->SkyReelsV2Transformer3DModel
Expand Down
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