mirror of
https://github.com/finegrain-ai/refiners.git
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234 lines
8.3 KiB
Python
234 lines
8.3 KiB
Python
# pyright: reportPrivateUsage=false
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import argparse
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from pathlib import Path
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import torch
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from diffusers import ControlNetModel # type: ignore
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from torch import nn
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from refiners.fluxion.model_converter import ModelConverter
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from refiners.fluxion.utils import no_grad, save_to_safetensors
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from refiners.foundationals.latent_diffusion import (
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DPMSolver,
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SD1ControlnetAdapter,
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SD1UNet,
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)
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class Args(argparse.Namespace):
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source_path: str
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output_path: str | None
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@no_grad()
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def convert(args: Args) -> dict[str, torch.Tensor]:
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# low_cpu_mem_usage=False stops some annoying console messages us to `pip install accelerate`
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controlnet_src: nn.Module = ControlNetModel.from_pretrained( # type: ignore
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pretrained_model_name_or_path=args.source_path,
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low_cpu_mem_usage=False,
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)
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unet = SD1UNet(in_channels=4)
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adapter = SD1ControlnetAdapter(unet, name="mycn").inject()
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controlnet = unet.Controlnet
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condition = torch.randn(1, 3, 512, 512)
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adapter.set_controlnet_condition(condition=condition)
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clip_text_embedding = torch.rand(1, 77, 768)
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unet.set_clip_text_embedding(clip_text_embedding=clip_text_embedding)
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scheduler = DPMSolver(num_inference_steps=10)
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timestep = scheduler.timesteps[0].unsqueeze(dim=0)
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unet.set_timestep(timestep=timestep.unsqueeze(dim=0))
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x = torch.randn(1, 4, 64, 64)
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# We need the hack below because our implementation is not strictly equivalent
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# to diffusers in order, since we compute the residuals inline instead of
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# in a separate step.
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converter = ModelConverter(
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source_model=controlnet_src, target_model=controlnet, skip_output_check=True, verbose=False
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)
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source_order = converter._trace_module_execution_order(
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module=controlnet_src, args=(x, timestep, clip_text_embedding, condition), keys_to_skip=[]
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)
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target_order = converter._trace_module_execution_order(module=controlnet, args=(x,), keys_to_skip=[])
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broken_k = (nn.Conv2d, (torch.Size([320, 320, 1, 1]), torch.Size([320])))
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expected_source_order = [
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"down_blocks.0.attentions.0.proj_in",
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"down_blocks.0.attentions.0.proj_out",
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"down_blocks.0.attentions.1.proj_in",
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"down_blocks.0.attentions.1.proj_out",
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"controlnet_down_blocks.0",
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"controlnet_down_blocks.1",
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"controlnet_down_blocks.2",
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"controlnet_down_blocks.3",
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]
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expected_target_order = [
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"DownBlocks.Chain_1.Passthrough.Conv2d",
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"DownBlocks.Chain_2.CLIPLCrossAttention.Chain_1.Conv2d",
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"DownBlocks.Chain_2.CLIPLCrossAttention.Chain_3.Conv2d",
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"DownBlocks.Chain_2.Passthrough.Conv2d",
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"DownBlocks.Chain_3.CLIPLCrossAttention.Chain_1.Conv2d",
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"DownBlocks.Chain_3.CLIPLCrossAttention.Chain_3.Conv2d",
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"DownBlocks.Chain_3.Passthrough.Conv2d",
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"DownBlocks.Chain_4.Passthrough.Conv2d",
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]
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fixed_source_order = [
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"controlnet_down_blocks.0",
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"down_blocks.0.attentions.0.proj_in",
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"down_blocks.0.attentions.0.proj_out",
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"controlnet_down_blocks.1",
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"down_blocks.0.attentions.1.proj_in",
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"down_blocks.0.attentions.1.proj_out",
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"controlnet_down_blocks.2",
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"controlnet_down_blocks.3",
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]
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assert source_order[broken_k] == expected_source_order
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assert target_order[broken_k] == expected_target_order
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source_order[broken_k] = fixed_source_order
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broken_k = (nn.Conv2d, (torch.Size([640, 640, 1, 1]), torch.Size([640])))
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expected_source_order = [
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"down_blocks.1.attentions.0.proj_in",
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"down_blocks.1.attentions.0.proj_out",
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"down_blocks.1.attentions.1.proj_in",
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"down_blocks.1.attentions.1.proj_out",
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"controlnet_down_blocks.4",
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"controlnet_down_blocks.5",
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"controlnet_down_blocks.6",
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]
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expected_target_order = [
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"DownBlocks.Chain_5.CLIPLCrossAttention.Chain_1.Conv2d",
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"DownBlocks.Chain_5.CLIPLCrossAttention.Chain_3.Conv2d",
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"DownBlocks.Chain_5.Passthrough.Conv2d",
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"DownBlocks.Chain_6.CLIPLCrossAttention.Chain_1.Conv2d",
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"DownBlocks.Chain_6.CLIPLCrossAttention.Chain_3.Conv2d",
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"DownBlocks.Chain_6.Passthrough.Conv2d",
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"DownBlocks.Chain_7.Passthrough.Conv2d",
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]
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fixed_source_order = [
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"down_blocks.1.attentions.0.proj_in",
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"down_blocks.1.attentions.0.proj_out",
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"controlnet_down_blocks.4",
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"down_blocks.1.attentions.1.proj_in",
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"down_blocks.1.attentions.1.proj_out",
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"controlnet_down_blocks.5",
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"controlnet_down_blocks.6",
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]
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assert source_order[broken_k] == expected_source_order
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assert target_order[broken_k] == expected_target_order
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source_order[broken_k] = fixed_source_order
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broken_k = (nn.Conv2d, (torch.Size([1280, 1280, 1, 1]), torch.Size([1280])))
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expected_source_order = [
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"down_blocks.2.attentions.0.proj_in",
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"down_blocks.2.attentions.0.proj_out",
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"down_blocks.2.attentions.1.proj_in",
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"down_blocks.2.attentions.1.proj_out",
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"mid_block.attentions.0.proj_in",
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"mid_block.attentions.0.proj_out",
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"controlnet_down_blocks.7",
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"controlnet_down_blocks.8",
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"controlnet_down_blocks.9",
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"controlnet_down_blocks.10",
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"controlnet_down_blocks.11",
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"controlnet_mid_block",
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]
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expected_target_order = [
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"DownBlocks.Chain_8.CLIPLCrossAttention.Chain_1.Conv2d",
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"DownBlocks.Chain_8.CLIPLCrossAttention.Chain_3.Conv2d",
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"DownBlocks.Chain_8.Passthrough.Conv2d",
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"DownBlocks.Chain_9.CLIPLCrossAttention.Chain_1.Conv2d",
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"DownBlocks.Chain_9.CLIPLCrossAttention.Chain_3.Conv2d",
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"DownBlocks.Chain_9.Passthrough.Conv2d",
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"DownBlocks.Chain_10.Passthrough.Conv2d",
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"DownBlocks.Chain_11.Passthrough.Conv2d",
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"DownBlocks.Chain_12.Passthrough.Conv2d",
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"MiddleBlock.CLIPLCrossAttention.Chain_1.Conv2d",
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"MiddleBlock.CLIPLCrossAttention.Chain_3.Conv2d",
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"MiddleBlock.Passthrough.Conv2d",
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]
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fixed_source_order = [
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"down_blocks.2.attentions.0.proj_in",
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"down_blocks.2.attentions.0.proj_out",
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"controlnet_down_blocks.7",
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"down_blocks.2.attentions.1.proj_in",
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"down_blocks.2.attentions.1.proj_out",
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"controlnet_down_blocks.8",
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"controlnet_down_blocks.9",
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"controlnet_down_blocks.10",
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"controlnet_down_blocks.11",
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"mid_block.attentions.0.proj_in",
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"mid_block.attentions.0.proj_out",
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"controlnet_mid_block",
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]
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assert source_order[broken_k] == expected_source_order
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assert target_order[broken_k] == expected_target_order
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source_order[broken_k] = fixed_source_order
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assert converter._assert_shapes_aligned(source_order=source_order, target_order=target_order), "Shapes not aligned"
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mapping: dict[str, str] = {}
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for model_type_shape in source_order:
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source_keys = source_order[model_type_shape]
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target_keys = target_order[model_type_shape]
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mapping.update(zip(target_keys, source_keys))
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state_dict = converter._convert_state_dict(
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source_state_dict=controlnet_src.state_dict(),
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target_state_dict=controlnet.state_dict(),
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state_dict_mapping=mapping,
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)
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return {k: v.half() for k, v in state_dict.items()}
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def main() -> None:
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parser = argparse.ArgumentParser(description="Convert a diffusers ControlNet model to a Refiners ControlNet model")
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parser.add_argument(
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"--from",
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type=str,
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dest="source_path",
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default="lllyasviel/sd-controlnet-depth",
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help=(
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"Can be a path to a .bin, a .safetensors file, or a model identifier from Hugging Face Hub. Defaults to"
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" lllyasviel/sd-controlnet-depth"
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),
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)
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parser.add_argument(
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"--to",
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type=str,
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dest="output_path",
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required=False,
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default=None,
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help=(
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"Output path (.safetensors) for converted model. If not provided, the output path will be the same as the"
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" source path."
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),
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)
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args = parser.parse_args(namespace=Args())
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if args.output_path is None:
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args.output_path = f"{Path(args.source_path).stem}-controlnet.safetensors"
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state_dict = convert(args=args)
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save_to_safetensors(path=args.output_path, tensors=state_dict)
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if __name__ == "__main__":
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main()
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