refiners/scripts/conversion/convert_diffusers_ip_adapter.py
2024-02-21 15:03:48 +01:00

155 lines
6.5 KiB
Python

import argparse
from pathlib import Path
import torch
from refiners.fluxion.utils import save_to_safetensors
from refiners.foundationals.latent_diffusion import SD1IPAdapter, SD1UNet, SDXLIPAdapter, SDXLUNet
# Running:
#
# from diffusers import UNet2DConditionModel
# unet = UNet2DConditionModel.from_pretrained("runwayml/stable-diffusion-v1-5", subfolder="unet")
# for k in unet.attn_processors.keys():
# print(k)
#
# Gives:
#
# down_blocks.0.attentions.0.transformer_blocks.0.attn1.processor
# down_blocks.0.attentions.0.transformer_blocks.0.attn2.processor
# ...
# down_blocks.2.attentions.1.transformer_blocks.0.attn2.processor
# up_blocks.1.attentions.0.transformer_blocks.0.attn1.processor
# up_blocks.1.attentions.0.transformer_blocks.0.attn2.processor
# ...
# up_blocks.3.attentions.2.transformer_blocks.0.attn2.processor
# mid_block.attentions.0.transformer_blocks.0.attn1.processor
# mid_block.attentions.0.transformer_blocks.0.attn2.processor
#
# With attn1=self-attention and attn2=cross-attention, and middle block in last position. So in terms of increasing
# indices:
#
# DownBlocks -> [1, 3, 5, 7, 9, 11]
# MiddleBlock -> [31]
# UpBlocks -> [13, 15, 17, 19, 21, 23, 25, 27, 29]
#
# Same for SDXL with more layers (70 cross-attentions vs. 16)
CROSS_ATTN_MAPPING: dict[str, list[int]] = {
"sd15": list(range(1, 12, 2)) + [31] + list(range(13, 30, 2)),
"sdxl": list(range(1, 48, 2)) + list(range(121, 140, 2)) + list(range(49, 120, 2)),
}
def main() -> None:
parser = argparse.ArgumentParser(description="Converts a IP-Adapter diffusers model to refiners.")
parser.add_argument(
"--from",
type=str,
required=True,
dest="source_path",
help="Path to the source model. (e.g.: 'ip-adapter_sd15.bin').",
)
parser.add_argument(
"--to",
type=str,
dest="output_path",
default=None,
help=(
"Path to save the converted model. If not specified, the output path will be the source path with the"
" extension changed to .safetensors."
),
)
parser.add_argument("--verbose", action="store_true", dest="verbose")
parser.add_argument("--half", action="store_true", dest="half")
args = parser.parse_args()
if args.output_path is None:
args.output_path = f"{Path(args.source_path).stem}.safetensors"
# Do not use `load_tensors`: first-level values are not tensors.
weights: dict[str, dict[str, torch.Tensor]] = torch.load(args.source_path, "cpu") # type: ignore
assert isinstance(weights, dict)
assert sorted(weights.keys()) == ["image_proj", "ip_adapter"]
image_proj_weights = weights["image_proj"]
ip_adapter_weights = weights["ip_adapter"]
fine_grained = "latents" in image_proj_weights # aka IP-Adapter plus
match len(ip_adapter_weights):
case 32:
ip_adapter = SD1IPAdapter(target=SD1UNet(in_channels=4), fine_grained=fine_grained)
cross_attn_mapping = CROSS_ATTN_MAPPING["sd15"]
case 140:
ip_adapter = SDXLIPAdapter(target=SDXLUNet(in_channels=4), fine_grained=fine_grained)
cross_attn_mapping = CROSS_ATTN_MAPPING["sdxl"]
case _:
raise ValueError("Unexpected number of keys in input checkpoint")
# Manual conversion to avoid any runtime dependency on IP-Adapter[1] custom classes
# [1]: https://github.com/tencent-ailab/IP-Adapter
state_dict: dict[str, torch.Tensor] = {}
image_proj_state_dict: dict[str, torch.Tensor]
if fine_grained:
w = image_proj_weights
image_proj_state_dict = {
"LatentsToken.Parameter.weight": w["latents"].squeeze(0), # drop batch dim = 1
"Linear_1.weight": w["proj_in.weight"],
"Linear_1.bias": w["proj_in.bias"],
"Linear_2.weight": w["proj_out.weight"],
"Linear_2.bias": w["proj_out.bias"],
"LayerNorm.weight": w["norm_out.weight"],
"LayerNorm.bias": w["norm_out.bias"],
}
for i in range(4):
t_pfx, s_pfx = f"Transformer.TransformerLayer_{i+1}.Residual_", f"layers.{i}."
image_proj_state_dict.update(
{
f"{t_pfx}1.PerceiverAttention.Distribute.LayerNorm_1.weight": w[f"{s_pfx}0.norm1.weight"],
f"{t_pfx}1.PerceiverAttention.Distribute.LayerNorm_1.bias": w[f"{s_pfx}0.norm1.bias"],
f"{t_pfx}1.PerceiverAttention.Distribute.LayerNorm_2.weight": w[f"{s_pfx}0.norm2.weight"],
f"{t_pfx}1.PerceiverAttention.Distribute.LayerNorm_2.bias": w[f"{s_pfx}0.norm2.bias"],
f"{t_pfx}1.PerceiverAttention.Parallel.Chain_2.Linear.weight": w[f"{s_pfx}0.to_q.weight"],
f"{t_pfx}1.PerceiverAttention.Parallel.Chain_1.Linear.weight": w[f"{s_pfx}0.to_kv.weight"],
f"{t_pfx}1.PerceiverAttention.Linear.weight": w[f"{s_pfx}0.to_out.weight"],
f"{t_pfx}2.LayerNorm.weight": w[f"{s_pfx}1.0.weight"],
f"{t_pfx}2.LayerNorm.bias": w[f"{s_pfx}1.0.bias"],
f"{t_pfx}2.FeedForward.Linear_1.weight": w[f"{s_pfx}1.1.weight"],
f"{t_pfx}2.FeedForward.Linear_2.weight": w[f"{s_pfx}1.3.weight"],
}
)
else:
image_proj_state_dict = {
"Linear.weight": image_proj_weights["proj.weight"],
"Linear.bias": image_proj_weights["proj.bias"],
"LayerNorm.weight": image_proj_weights["norm.weight"],
"LayerNorm.bias": image_proj_weights["norm.bias"],
}
ip_adapter.image_proj.load_state_dict(state_dict=image_proj_state_dict)
for k, v in image_proj_state_dict.items():
state_dict[f"image_proj.{k}"] = v
assert len(ip_adapter.sub_adapters) == len(ip_adapter_weights.keys()) // 2
for i, _ in enumerate(ip_adapter.sub_adapters):
cross_attn_index = cross_attn_mapping[i]
k_ip = f"{cross_attn_index}.to_k_ip.weight"
v_ip = f"{cross_attn_index}.to_v_ip.weight"
# the name of the key is not checked at runtime, so we keep the original name
state_dict[f"ip_adapter.{i:03d}.to_k_ip.weight"] = ip_adapter_weights[k_ip]
state_dict[f"ip_adapter.{i:03d}.to_v_ip.weight"] = ip_adapter_weights[v_ip]
if args.half:
state_dict = {key: value.half() for key, value in state_dict.items()}
if args.output_path is None:
args.output_path = f"{Path(args.source_path).stem}.safetensors"
save_to_safetensors(path=args.output_path, tensors=state_dict)
if __name__ == "__main__":
main()