single_file_utils.py 143 KB
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# coding=utf-8
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# Copyright 2025 The HuggingFace Inc. team.
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#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
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"""Conversion script for the Stable Diffusion checkpoints."""
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import copy
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import os
import re
from contextlib import nullcontext
from io import BytesIO
from urllib.parse import urlparse

import requests
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import torch
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import yaml

from ..models.modeling_utils import load_state_dict
from ..schedulers import (
    DDIMScheduler,
    DPMSolverMultistepScheduler,
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    EDMDPMSolverMultistepScheduler,
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    EulerAncestralDiscreteScheduler,
    EulerDiscreteScheduler,
    HeunDiscreteScheduler,
    LMSDiscreteScheduler,
    PNDMScheduler,
)
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from ..utils import (
    SAFETENSORS_WEIGHTS_NAME,
    WEIGHTS_NAME,
    deprecate,
    is_accelerate_available,
    is_transformers_available,
    logging,
)
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from ..utils.constants import DIFFUSERS_REQUEST_TIMEOUT
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from ..utils.hub_utils import _get_model_file


if is_transformers_available():
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    from transformers import AutoImageProcessor
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if is_accelerate_available():
    from accelerate import init_empty_weights

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    from ..models.modeling_utils import load_model_dict_into_meta

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logger = logging.get_logger(__name__)  # pylint: disable=invalid-name

CHECKPOINT_KEY_NAMES = {
    "v2": "model.diffusion_model.input_blocks.2.1.transformer_blocks.0.attn2.to_k.weight",
    "xl_base": "conditioner.embedders.1.model.transformer.resblocks.9.mlp.c_proj.bias",
    "xl_refiner": "conditioner.embedders.0.model.transformer.resblocks.9.mlp.c_proj.bias",
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    "upscale": "model.diffusion_model.input_blocks.10.0.skip_connection.bias",
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    "controlnet": [
        "control_model.time_embed.0.weight",
        "controlnet_cond_embedding.conv_in.weight",
    ],
    # TODO: find non-Diffusers keys for controlnet_xl
    "controlnet_xl": "add_embedding.linear_1.weight",
    "controlnet_xl_large": "down_blocks.1.attentions.0.transformer_blocks.0.attn1.to_k.weight",
    "controlnet_xl_mid": "down_blocks.1.attentions.0.norm.weight",
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    "playground-v2-5": "edm_mean",
    "inpainting": "model.diffusion_model.input_blocks.0.0.weight",
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    "clip": "cond_stage_model.transformer.text_model.embeddings.position_embedding.weight",
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    "clip_sdxl": "conditioner.embedders.0.transformer.text_model.embeddings.position_embedding.weight",
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    "clip_sd3": "text_encoders.clip_l.transformer.text_model.embeddings.position_embedding.weight",
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    "open_clip": "cond_stage_model.model.token_embedding.weight",
    "open_clip_sdxl": "conditioner.embedders.1.model.positional_embedding",
    "open_clip_sdxl_refiner": "conditioner.embedders.0.model.text_projection",
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    "open_clip_sd3": "text_encoders.clip_g.transformer.text_model.embeddings.position_embedding.weight",
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    "stable_cascade_stage_b": "down_blocks.1.0.channelwise.0.weight",
    "stable_cascade_stage_c": "clip_txt_mapper.weight",
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    "sd3": [
        "joint_blocks.0.context_block.adaLN_modulation.1.bias",
        "model.diffusion_model.joint_blocks.0.context_block.adaLN_modulation.1.bias",
    ],
    "sd35_large": [
        "joint_blocks.37.x_block.mlp.fc1.weight",
        "model.diffusion_model.joint_blocks.37.x_block.mlp.fc1.weight",
    ],
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    "animatediff": "down_blocks.0.motion_modules.0.temporal_transformer.transformer_blocks.0.attention_blocks.0.pos_encoder.pe",
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    "animatediff_v2": "mid_block.motion_modules.0.temporal_transformer.norm.bias",
    "animatediff_sdxl_beta": "up_blocks.2.motion_modules.0.temporal_transformer.norm.weight",
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    "animatediff_scribble": "controlnet_cond_embedding.conv_in.weight",
    "animatediff_rgb": "controlnet_cond_embedding.weight",
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    "auraflow": [
        "double_layers.0.attn.w2q.weight",
        "double_layers.0.attn.w1q.weight",
        "cond_seq_linear.weight",
        "t_embedder.mlp.0.weight",
    ],
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    "flux": [
        "double_blocks.0.img_attn.norm.key_norm.scale",
        "model.diffusion_model.double_blocks.0.img_attn.norm.key_norm.scale",
    ],
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    "ltx-video": [
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        "model.diffusion_model.patchify_proj.weight",
        "model.diffusion_model.transformer_blocks.27.scale_shift_table",
        "patchify_proj.weight",
        "transformer_blocks.27.scale_shift_table",
        "vae.per_channel_statistics.mean-of-means",
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    ],
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    "autoencoder-dc": "decoder.stages.1.op_list.0.main.conv.conv.bias",
    "autoencoder-dc-sana": "encoder.project_in.conv.bias",
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    "mochi-1-preview": ["model.diffusion_model.blocks.0.attn.qkv_x.weight", "blocks.0.attn.qkv_x.weight"],
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    "hunyuan-video": "txt_in.individual_token_refiner.blocks.0.adaLN_modulation.1.bias",
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    "instruct-pix2pix": "model.diffusion_model.input_blocks.0.0.weight",
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    "lumina2": ["model.diffusion_model.cap_embedder.0.weight", "cap_embedder.0.weight"],
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    "sana": [
        "blocks.0.cross_attn.q_linear.weight",
        "blocks.0.cross_attn.q_linear.bias",
        "blocks.0.cross_attn.kv_linear.weight",
        "blocks.0.cross_attn.kv_linear.bias",
    ],
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    "wan": ["model.diffusion_model.head.modulation", "head.modulation"],
    "wan_vae": "decoder.middle.0.residual.0.gamma",
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    "hidream": "double_stream_blocks.0.block.adaLN_modulation.1.bias",
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}

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DIFFUSERS_DEFAULT_PIPELINE_PATHS = {
    "xl_base": {"pretrained_model_name_or_path": "stabilityai/stable-diffusion-xl-base-1.0"},
    "xl_refiner": {"pretrained_model_name_or_path": "stabilityai/stable-diffusion-xl-refiner-1.0"},
    "xl_inpaint": {"pretrained_model_name_or_path": "diffusers/stable-diffusion-xl-1.0-inpainting-0.1"},
    "playground-v2-5": {"pretrained_model_name_or_path": "playgroundai/playground-v2.5-1024px-aesthetic"},
    "upscale": {"pretrained_model_name_or_path": "stabilityai/stable-diffusion-x4-upscaler"},
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    "inpainting": {"pretrained_model_name_or_path": "stable-diffusion-v1-5/stable-diffusion-inpainting"},
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    "inpainting_v2": {"pretrained_model_name_or_path": "stabilityai/stable-diffusion-2-inpainting"},
    "controlnet": {"pretrained_model_name_or_path": "lllyasviel/control_v11p_sd15_canny"},
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    "controlnet_xl_large": {"pretrained_model_name_or_path": "diffusers/controlnet-canny-sdxl-1.0"},
    "controlnet_xl_mid": {"pretrained_model_name_or_path": "diffusers/controlnet-canny-sdxl-1.0-mid"},
    "controlnet_xl_small": {"pretrained_model_name_or_path": "diffusers/controlnet-canny-sdxl-1.0-small"},
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    "v2": {"pretrained_model_name_or_path": "stabilityai/stable-diffusion-2-1"},
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    "v1": {"pretrained_model_name_or_path": "stable-diffusion-v1-5/stable-diffusion-v1-5"},
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    "stable_cascade_stage_b": {"pretrained_model_name_or_path": "stabilityai/stable-cascade", "subfolder": "decoder"},
    "stable_cascade_stage_b_lite": {
        "pretrained_model_name_or_path": "stabilityai/stable-cascade",
        "subfolder": "decoder_lite",
    },
    "stable_cascade_stage_c": {
        "pretrained_model_name_or_path": "stabilityai/stable-cascade-prior",
        "subfolder": "prior",
    },
    "stable_cascade_stage_c_lite": {
        "pretrained_model_name_or_path": "stabilityai/stable-cascade-prior",
        "subfolder": "prior_lite",
    },
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    "sd3": {
        "pretrained_model_name_or_path": "stabilityai/stable-diffusion-3-medium-diffusers",
    },
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    "sd35_large": {
        "pretrained_model_name_or_path": "stabilityai/stable-diffusion-3.5-large",
    },
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    "sd35_medium": {
        "pretrained_model_name_or_path": "stabilityai/stable-diffusion-3.5-medium",
    },
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    "animatediff_v1": {"pretrained_model_name_or_path": "guoyww/animatediff-motion-adapter-v1-5"},
    "animatediff_v2": {"pretrained_model_name_or_path": "guoyww/animatediff-motion-adapter-v1-5-2"},
    "animatediff_v3": {"pretrained_model_name_or_path": "guoyww/animatediff-motion-adapter-v1-5-3"},
    "animatediff_sdxl_beta": {"pretrained_model_name_or_path": "guoyww/animatediff-motion-adapter-sdxl-beta"},
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    "animatediff_scribble": {"pretrained_model_name_or_path": "guoyww/animatediff-sparsectrl-scribble"},
    "animatediff_rgb": {"pretrained_model_name_or_path": "guoyww/animatediff-sparsectrl-rgb"},
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    "auraflow": {"pretrained_model_name_or_path": "fal/AuraFlow-v0.3"},
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    "flux-dev": {"pretrained_model_name_or_path": "black-forest-labs/FLUX.1-dev"},
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    "flux-fill": {"pretrained_model_name_or_path": "black-forest-labs/FLUX.1-Fill-dev"},
    "flux-depth": {"pretrained_model_name_or_path": "black-forest-labs/FLUX.1-Depth-dev"},
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    "flux-schnell": {"pretrained_model_name_or_path": "black-forest-labs/FLUX.1-schnell"},
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    "ltx-video": {"pretrained_model_name_or_path": "diffusers/LTX-Video-0.9.0"},
    "ltx-video-0.9.1": {"pretrained_model_name_or_path": "diffusers/LTX-Video-0.9.1"},
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    "ltx-video-0.9.5": {"pretrained_model_name_or_path": "Lightricks/LTX-Video-0.9.5"},
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    "autoencoder-dc-f128c512": {"pretrained_model_name_or_path": "mit-han-lab/dc-ae-f128c512-mix-1.0-diffusers"},
    "autoencoder-dc-f64c128": {"pretrained_model_name_or_path": "mit-han-lab/dc-ae-f64c128-mix-1.0-diffusers"},
    "autoencoder-dc-f32c32": {"pretrained_model_name_or_path": "mit-han-lab/dc-ae-f32c32-mix-1.0-diffusers"},
    "autoencoder-dc-f32c32-sana": {"pretrained_model_name_or_path": "mit-han-lab/dc-ae-f32c32-sana-1.0-diffusers"},
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    "mochi-1-preview": {"pretrained_model_name_or_path": "genmo/mochi-1-preview"},
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    "hunyuan-video": {"pretrained_model_name_or_path": "hunyuanvideo-community/HunyuanVideo"},
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    "instruct-pix2pix": {"pretrained_model_name_or_path": "timbrooks/instruct-pix2pix"},
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    "lumina2": {"pretrained_model_name_or_path": "Alpha-VLLM/Lumina-Image-2.0"},
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    "sana": {"pretrained_model_name_or_path": "Efficient-Large-Model/Sana_1600M_1024px_diffusers"},
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    "wan-t2v-1.3B": {"pretrained_model_name_or_path": "Wan-AI/Wan2.1-T2V-1.3B-Diffusers"},
    "wan-t2v-14B": {"pretrained_model_name_or_path": "Wan-AI/Wan2.1-T2V-14B-Diffusers"},
    "wan-i2v-14B": {"pretrained_model_name_or_path": "Wan-AI/Wan2.1-I2V-14B-480P-Diffusers"},
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    "hidream": {"pretrained_model_name_or_path": "HiDream-ai/HiDream-I1-Dev"},
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}

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# Use to configure model sample size when original config is provided
DIFFUSERS_TO_LDM_DEFAULT_IMAGE_SIZE_MAP = {
    "xl_base": 1024,
    "xl_refiner": 1024,
    "xl_inpaint": 1024,
    "playground-v2-5": 1024,
    "upscale": 512,
    "inpainting": 512,
    "inpainting_v2": 512,
    "controlnet": 512,
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    "instruct-pix2pix": 512,
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    "v2": 768,
    "v1": 512,
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}


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DIFFUSERS_TO_LDM_MAPPING = {
    "unet": {
        "layers": {
            "time_embedding.linear_1.weight": "time_embed.0.weight",
            "time_embedding.linear_1.bias": "time_embed.0.bias",
            "time_embedding.linear_2.weight": "time_embed.2.weight",
            "time_embedding.linear_2.bias": "time_embed.2.bias",
            "conv_in.weight": "input_blocks.0.0.weight",
            "conv_in.bias": "input_blocks.0.0.bias",
            "conv_norm_out.weight": "out.0.weight",
            "conv_norm_out.bias": "out.0.bias",
            "conv_out.weight": "out.2.weight",
            "conv_out.bias": "out.2.bias",
        },
        "class_embed_type": {
            "class_embedding.linear_1.weight": "label_emb.0.0.weight",
            "class_embedding.linear_1.bias": "label_emb.0.0.bias",
            "class_embedding.linear_2.weight": "label_emb.0.2.weight",
            "class_embedding.linear_2.bias": "label_emb.0.2.bias",
        },
        "addition_embed_type": {
            "add_embedding.linear_1.weight": "label_emb.0.0.weight",
            "add_embedding.linear_1.bias": "label_emb.0.0.bias",
            "add_embedding.linear_2.weight": "label_emb.0.2.weight",
            "add_embedding.linear_2.bias": "label_emb.0.2.bias",
        },
    },
    "controlnet": {
        "layers": {
            "time_embedding.linear_1.weight": "time_embed.0.weight",
            "time_embedding.linear_1.bias": "time_embed.0.bias",
            "time_embedding.linear_2.weight": "time_embed.2.weight",
            "time_embedding.linear_2.bias": "time_embed.2.bias",
            "conv_in.weight": "input_blocks.0.0.weight",
            "conv_in.bias": "input_blocks.0.0.bias",
            "controlnet_cond_embedding.conv_in.weight": "input_hint_block.0.weight",
            "controlnet_cond_embedding.conv_in.bias": "input_hint_block.0.bias",
            "controlnet_cond_embedding.conv_out.weight": "input_hint_block.14.weight",
            "controlnet_cond_embedding.conv_out.bias": "input_hint_block.14.bias",
        },
        "class_embed_type": {
            "class_embedding.linear_1.weight": "label_emb.0.0.weight",
            "class_embedding.linear_1.bias": "label_emb.0.0.bias",
            "class_embedding.linear_2.weight": "label_emb.0.2.weight",
            "class_embedding.linear_2.bias": "label_emb.0.2.bias",
        },
        "addition_embed_type": {
            "add_embedding.linear_1.weight": "label_emb.0.0.weight",
            "add_embedding.linear_1.bias": "label_emb.0.0.bias",
            "add_embedding.linear_2.weight": "label_emb.0.2.weight",
            "add_embedding.linear_2.bias": "label_emb.0.2.bias",
        },
    },
    "vae": {
        "encoder.conv_in.weight": "encoder.conv_in.weight",
        "encoder.conv_in.bias": "encoder.conv_in.bias",
        "encoder.conv_out.weight": "encoder.conv_out.weight",
        "encoder.conv_out.bias": "encoder.conv_out.bias",
        "encoder.conv_norm_out.weight": "encoder.norm_out.weight",
        "encoder.conv_norm_out.bias": "encoder.norm_out.bias",
        "decoder.conv_in.weight": "decoder.conv_in.weight",
        "decoder.conv_in.bias": "decoder.conv_in.bias",
        "decoder.conv_out.weight": "decoder.conv_out.weight",
        "decoder.conv_out.bias": "decoder.conv_out.bias",
        "decoder.conv_norm_out.weight": "decoder.norm_out.weight",
        "decoder.conv_norm_out.bias": "decoder.norm_out.bias",
        "quant_conv.weight": "quant_conv.weight",
        "quant_conv.bias": "quant_conv.bias",
        "post_quant_conv.weight": "post_quant_conv.weight",
        "post_quant_conv.bias": "post_quant_conv.bias",
    },
    "openclip": {
        "layers": {
            "text_model.embeddings.position_embedding.weight": "positional_embedding",
            "text_model.embeddings.token_embedding.weight": "token_embedding.weight",
            "text_model.final_layer_norm.weight": "ln_final.weight",
            "text_model.final_layer_norm.bias": "ln_final.bias",
            "text_projection.weight": "text_projection",
        },
        "transformer": {
            "text_model.encoder.layers.": "resblocks.",
            "layer_norm1": "ln_1",
            "layer_norm2": "ln_2",
            ".fc1.": ".c_fc.",
            ".fc2.": ".c_proj.",
            ".self_attn": ".attn",
            "transformer.text_model.final_layer_norm.": "ln_final.",
            "transformer.text_model.embeddings.token_embedding.weight": "token_embedding.weight",
            "transformer.text_model.embeddings.position_embedding.weight": "positional_embedding",
        },
    },
}

SD_2_TEXT_ENCODER_KEYS_TO_IGNORE = [
    "cond_stage_model.model.transformer.resblocks.23.attn.in_proj_bias",
    "cond_stage_model.model.transformer.resblocks.23.attn.in_proj_weight",
    "cond_stage_model.model.transformer.resblocks.23.attn.out_proj.bias",
    "cond_stage_model.model.transformer.resblocks.23.attn.out_proj.weight",
    "cond_stage_model.model.transformer.resblocks.23.ln_1.bias",
    "cond_stage_model.model.transformer.resblocks.23.ln_1.weight",
    "cond_stage_model.model.transformer.resblocks.23.ln_2.bias",
    "cond_stage_model.model.transformer.resblocks.23.ln_2.weight",
    "cond_stage_model.model.transformer.resblocks.23.mlp.c_fc.bias",
    "cond_stage_model.model.transformer.resblocks.23.mlp.c_fc.weight",
    "cond_stage_model.model.transformer.resblocks.23.mlp.c_proj.bias",
    "cond_stage_model.model.transformer.resblocks.23.mlp.c_proj.weight",
    "cond_stage_model.model.text_projection",
]

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# To support legacy scheduler_type argument
SCHEDULER_DEFAULT_CONFIG = {
    "beta_schedule": "scaled_linear",
    "beta_start": 0.00085,
    "beta_end": 0.012,
    "interpolation_type": "linear",
    "num_train_timesteps": 1000,
    "prediction_type": "epsilon",
    "sample_max_value": 1.0,
    "set_alpha_to_one": False,
    "skip_prk_steps": True,
    "steps_offset": 1,
    "timestep_spacing": "leading",
}

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LDM_VAE_KEYS = ["first_stage_model.", "vae."]
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LDM_VAE_DEFAULT_SCALING_FACTOR = 0.18215
PLAYGROUND_VAE_SCALING_FACTOR = 0.5
LDM_UNET_KEY = "model.diffusion_model."
LDM_CONTROLNET_KEY = "control_model."
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LDM_CLIP_PREFIX_TO_REMOVE = [
    "cond_stage_model.transformer.",
    "conditioner.embedders.0.transformer.",
]
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LDM_OPEN_CLIP_TEXT_PROJECTION_DIM = 1024
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SCHEDULER_LEGACY_KWARGS = ["prediction_type", "scheduler_type"]
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VALID_URL_PREFIXES = ["https://huggingface.co/", "huggingface.co/", "hf.co/", "https://hf.co/"]


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class SingleFileComponentError(Exception):
    def __init__(self, message=None):
        self.message = message
        super().__init__(self.message)


def is_valid_url(url):
    result = urlparse(url)
    if result.scheme and result.netloc:
        return True

    return False


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def _extract_repo_id_and_weights_name(pretrained_model_name_or_path):
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    if not is_valid_url(pretrained_model_name_or_path):
        raise ValueError("Invalid `pretrained_model_name_or_path` provided. Please set it to a valid URL.")

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    pattern = r"([^/]+)/([^/]+)/(?:blob/main/)?(.+)"
    weights_name = None
    repo_id = (None,)
    for prefix in VALID_URL_PREFIXES:
        pretrained_model_name_or_path = pretrained_model_name_or_path.replace(prefix, "")
    match = re.match(pattern, pretrained_model_name_or_path)
    if not match:
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        logger.warning("Unable to identify the repo_id and weights_name from the provided URL.")
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        return repo_id, weights_name

    repo_id = f"{match.group(1)}/{match.group(2)}"
    weights_name = match.group(3)

    return repo_id, weights_name


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def _is_model_weights_in_cached_folder(cached_folder, name):
    pretrained_model_name_or_path = os.path.join(cached_folder, name)
    weights_exist = False

    for weights_name in [WEIGHTS_NAME, SAFETENSORS_WEIGHTS_NAME]:
        if os.path.isfile(os.path.join(pretrained_model_name_or_path, weights_name)):
            weights_exist = True
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    return weights_exist
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def _is_legacy_scheduler_kwargs(kwargs):
    return any(k in SCHEDULER_LEGACY_KWARGS for k in kwargs.keys())


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def load_single_file_checkpoint(
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    pretrained_model_link_or_path,
    force_download=False,
    proxies=None,
    token=None,
    cache_dir=None,
    local_files_only=None,
    revision=None,
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    disable_mmap=False,
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    user_agent=None,
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):
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    if user_agent is None:
        user_agent = {"file_type": "single_file", "framework": "pytorch"}

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    if os.path.isfile(pretrained_model_link_or_path):
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        pretrained_model_link_or_path = pretrained_model_link_or_path

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    else:
        repo_id, weights_name = _extract_repo_id_and_weights_name(pretrained_model_link_or_path)
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        pretrained_model_link_or_path = _get_model_file(
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            repo_id,
            weights_name=weights_name,
            force_download=force_download,
            cache_dir=cache_dir,
            proxies=proxies,
            local_files_only=local_files_only,
            token=token,
            revision=revision,
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            user_agent=user_agent,
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        )
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    checkpoint = load_state_dict(pretrained_model_link_or_path, disable_mmap=disable_mmap)
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    # some checkpoints contain the model state dict under a "state_dict" key
    while "state_dict" in checkpoint:
        checkpoint = checkpoint["state_dict"]

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    return checkpoint
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def fetch_original_config(original_config_file, local_files_only=False):
    if os.path.isfile(original_config_file):
        with open(original_config_file, "r") as fp:
            original_config_file = fp.read()
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    elif is_valid_url(original_config_file):
        if local_files_only:
            raise ValueError(
                "`local_files_only` is set to True, but a URL was provided as `original_config_file`. "
                "Please provide a valid local file path."
            )
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        original_config_file = BytesIO(requests.get(original_config_file, timeout=DIFFUSERS_REQUEST_TIMEOUT).content)
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    else:
        raise ValueError("Invalid `original_config_file` provided. Please set it to a valid file path or URL.")
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    original_config = yaml.safe_load(original_config_file)
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    return original_config
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def is_clip_model(checkpoint):
    if CHECKPOINT_KEY_NAMES["clip"] in checkpoint:
        return True
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    return False
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def is_clip_sdxl_model(checkpoint):
    if CHECKPOINT_KEY_NAMES["clip_sdxl"] in checkpoint:
        return True
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    return False
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def is_clip_sd3_model(checkpoint):
    if CHECKPOINT_KEY_NAMES["clip_sd3"] in checkpoint:
        return True

    return False


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def is_open_clip_model(checkpoint):
    if CHECKPOINT_KEY_NAMES["open_clip"] in checkpoint:
        return True
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    return False
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def is_open_clip_sdxl_model(checkpoint):
    if CHECKPOINT_KEY_NAMES["open_clip_sdxl"] in checkpoint:
        return True
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    return False
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def is_open_clip_sd3_model(checkpoint):
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    if CHECKPOINT_KEY_NAMES["open_clip_sd3"] in checkpoint:
        return True

    return False
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def is_open_clip_sdxl_refiner_model(checkpoint):
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    if CHECKPOINT_KEY_NAMES["open_clip_sdxl_refiner"] in checkpoint:
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        return True

    return False


def is_clip_model_in_single_file(class_obj, checkpoint):
    is_clip_in_checkpoint = any(
        [
            is_clip_model(checkpoint),
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            is_clip_sd3_model(checkpoint),
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            is_open_clip_model(checkpoint),
            is_open_clip_sdxl_model(checkpoint),
            is_open_clip_sdxl_refiner_model(checkpoint),
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            is_open_clip_sd3_model(checkpoint),
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        ]
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    )
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    if (
        class_obj.__name__ == "CLIPTextModel" or class_obj.__name__ == "CLIPTextModelWithProjection"
    ) and is_clip_in_checkpoint:
        return True

    return False
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def infer_diffusers_model_type(checkpoint):
    if (
        CHECKPOINT_KEY_NAMES["inpainting"] in checkpoint
        and checkpoint[CHECKPOINT_KEY_NAMES["inpainting"]].shape[1] == 9
    ):
        if CHECKPOINT_KEY_NAMES["v2"] in checkpoint and checkpoint[CHECKPOINT_KEY_NAMES["v2"]].shape[-1] == 1024:
            model_type = "inpainting_v2"
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        elif CHECKPOINT_KEY_NAMES["xl_base"] in checkpoint:
            model_type = "xl_inpaint"
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        else:
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            model_type = "inpainting"
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    elif CHECKPOINT_KEY_NAMES["v2"] in checkpoint and checkpoint[CHECKPOINT_KEY_NAMES["v2"]].shape[-1] == 1024:
        model_type = "v2"
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    elif CHECKPOINT_KEY_NAMES["playground-v2-5"] in checkpoint:
        model_type = "playground-v2-5"
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    elif CHECKPOINT_KEY_NAMES["xl_base"] in checkpoint:
        model_type = "xl_base"
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    elif CHECKPOINT_KEY_NAMES["xl_refiner"] in checkpoint:
        model_type = "xl_refiner"
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    elif CHECKPOINT_KEY_NAMES["upscale"] in checkpoint:
        model_type = "upscale"
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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["controlnet"]):
        if CHECKPOINT_KEY_NAMES["controlnet_xl"] in checkpoint:
            if CHECKPOINT_KEY_NAMES["controlnet_xl_large"] in checkpoint:
                model_type = "controlnet_xl_large"
            elif CHECKPOINT_KEY_NAMES["controlnet_xl_mid"] in checkpoint:
                model_type = "controlnet_xl_mid"
            else:
                model_type = "controlnet_xl_small"
        else:
            model_type = "controlnet"
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    elif (
        CHECKPOINT_KEY_NAMES["stable_cascade_stage_c"] in checkpoint
        and checkpoint[CHECKPOINT_KEY_NAMES["stable_cascade_stage_c"]].shape[0] == 1536
    ):
        model_type = "stable_cascade_stage_c_lite"
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    elif (
        CHECKPOINT_KEY_NAMES["stable_cascade_stage_c"] in checkpoint
        and checkpoint[CHECKPOINT_KEY_NAMES["stable_cascade_stage_c"]].shape[0] == 2048
    ):
        model_type = "stable_cascade_stage_c"
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    elif (
        CHECKPOINT_KEY_NAMES["stable_cascade_stage_b"] in checkpoint
        and checkpoint[CHECKPOINT_KEY_NAMES["stable_cascade_stage_b"]].shape[-1] == 576
    ):
        model_type = "stable_cascade_stage_b_lite"
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    elif (
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        CHECKPOINT_KEY_NAMES["stable_cascade_stage_b"] in checkpoint
        and checkpoint[CHECKPOINT_KEY_NAMES["stable_cascade_stage_b"]].shape[-1] == 640
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    ):
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        model_type = "stable_cascade_stage_b"
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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["sd3"]) and any(
        checkpoint[key].shape[-1] == 9216 if key in checkpoint else False for key in CHECKPOINT_KEY_NAMES["sd3"]
    ):
        if "model.diffusion_model.pos_embed" in checkpoint:
            key = "model.diffusion_model.pos_embed"
        else:
            key = "pos_embed"

        if checkpoint[key].shape[1] == 36864:
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            model_type = "sd3"
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        elif checkpoint[key].shape[1] == 147456:
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            model_type = "sd35_medium"
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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["sd35_large"]):
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        model_type = "sd35_large"

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    elif CHECKPOINT_KEY_NAMES["animatediff"] in checkpoint:
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        if CHECKPOINT_KEY_NAMES["animatediff_scribble"] in checkpoint:
            model_type = "animatediff_scribble"

        elif CHECKPOINT_KEY_NAMES["animatediff_rgb"] in checkpoint:
            model_type = "animatediff_rgb"

        elif CHECKPOINT_KEY_NAMES["animatediff_v2"] in checkpoint:
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            model_type = "animatediff_v2"

        elif checkpoint[CHECKPOINT_KEY_NAMES["animatediff_sdxl_beta"]].shape[-1] == 320:
            model_type = "animatediff_sdxl_beta"

        elif checkpoint[CHECKPOINT_KEY_NAMES["animatediff"]].shape[1] == 24:
            model_type = "animatediff_v1"

        else:
            model_type = "animatediff_v3"

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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["flux"]):
        if any(
            g in checkpoint for g in ["guidance_in.in_layer.bias", "model.diffusion_model.guidance_in.in_layer.bias"]
        ):
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            if "model.diffusion_model.img_in.weight" in checkpoint:
                key = "model.diffusion_model.img_in.weight"
            else:
                key = "img_in.weight"
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            if checkpoint[key].shape[1] == 384:
                model_type = "flux-fill"
            elif checkpoint[key].shape[1] == 128:
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                model_type = "flux-depth"
            else:
                model_type = "flux-dev"
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        else:
            model_type = "flux-schnell"
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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["ltx-video"]):
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        if checkpoint["vae.encoder.conv_out.conv.weight"].shape[1] == 2048:
            model_type = "ltx-video-0.9.5"
        elif "vae.decoder.last_time_embedder.timestep_embedder.linear_1.weight" in checkpoint:
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            model_type = "ltx-video-0.9.1"
        else:
            model_type = "ltx-video"
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    elif CHECKPOINT_KEY_NAMES["autoencoder-dc"] in checkpoint:
        encoder_key = "encoder.project_in.conv.conv.bias"
        decoder_key = "decoder.project_in.main.conv.weight"

        if CHECKPOINT_KEY_NAMES["autoencoder-dc-sana"] in checkpoint:
            model_type = "autoencoder-dc-f32c32-sana"

        elif checkpoint[encoder_key].shape[-1] == 64 and checkpoint[decoder_key].shape[1] == 32:
            model_type = "autoencoder-dc-f32c32"

        elif checkpoint[encoder_key].shape[-1] == 64 and checkpoint[decoder_key].shape[1] == 128:
            model_type = "autoencoder-dc-f64c128"

        else:
            model_type = "autoencoder-dc-f128c512"

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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["mochi-1-preview"]):
        model_type = "mochi-1-preview"

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    elif CHECKPOINT_KEY_NAMES["hunyuan-video"] in checkpoint:
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        model_type = "hunyuan-video"

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    elif all(key in checkpoint for key in CHECKPOINT_KEY_NAMES["auraflow"]):
        model_type = "auraflow"

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    elif (
        CHECKPOINT_KEY_NAMES["instruct-pix2pix"] in checkpoint
        and checkpoint[CHECKPOINT_KEY_NAMES["instruct-pix2pix"]].shape[1] == 8
    ):
        model_type = "instruct-pix2pix"

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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["lumina2"]):
        model_type = "lumina2"

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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["sana"]):
        model_type = "sana"

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    elif any(key in checkpoint for key in CHECKPOINT_KEY_NAMES["wan"]):
        if "model.diffusion_model.patch_embedding.weight" in checkpoint:
            target_key = "model.diffusion_model.patch_embedding.weight"
        else:
            target_key = "patch_embedding.weight"

        if checkpoint[target_key].shape[0] == 1536:
            model_type = "wan-t2v-1.3B"
        elif checkpoint[target_key].shape[0] == 5120 and checkpoint[target_key].shape[1] == 16:
            model_type = "wan-t2v-14B"
        else:
            model_type = "wan-i2v-14B"
    elif CHECKPOINT_KEY_NAMES["wan_vae"] in checkpoint:
        # All Wan models use the same VAE so we can use the same default model repo to fetch the config
        model_type = "wan-t2v-14B"
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    elif CHECKPOINT_KEY_NAMES["hidream"] in checkpoint:
        model_type = "hidream"
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    else:
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        model_type = "v1"

    return model_type


def fetch_diffusers_config(checkpoint):
    model_type = infer_diffusers_model_type(checkpoint)
    model_path = DIFFUSERS_DEFAULT_PIPELINE_PATHS[model_type]
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    model_path = copy.deepcopy(model_path)
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    return model_path


def set_image_size(checkpoint, image_size=None):
    if image_size:
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        return image_size

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    model_type = infer_diffusers_model_type(checkpoint)
    image_size = DIFFUSERS_TO_LDM_DEFAULT_IMAGE_SIZE_MAP[model_type]

    return image_size

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# Copied from diffusers.pipelines.stable_diffusion.convert_from_ckpt.conv_attn_to_linear
def conv_attn_to_linear(checkpoint):
    keys = list(checkpoint.keys())
    attn_keys = ["query.weight", "key.weight", "value.weight"]
    for key in keys:
        if ".".join(key.split(".")[-2:]) in attn_keys:
            if checkpoint[key].ndim > 2:
                checkpoint[key] = checkpoint[key][:, :, 0, 0]
        elif "proj_attn.weight" in key:
            if checkpoint[key].ndim > 2:
                checkpoint[key] = checkpoint[key][:, :, 0]


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def create_unet_diffusers_config_from_ldm(
    original_config, checkpoint, image_size=None, upcast_attention=None, num_in_channels=None
):
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    """
    Creates a config for the diffusers based on the config of the LDM model.
    """
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    if image_size is not None:
        deprecation_message = (
            "Configuring UNet2DConditionModel with the `image_size` argument to `from_single_file`"
            "is deprecated and will be ignored in future versions."
        )
        deprecate("image_size", "1.0.0", deprecation_message)

    image_size = set_image_size(checkpoint, image_size=image_size)

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    if (
        "unet_config" in original_config["model"]["params"]
        and original_config["model"]["params"]["unet_config"] is not None
    ):
        unet_params = original_config["model"]["params"]["unet_config"]["params"]
    else:
        unet_params = original_config["model"]["params"]["network_config"]["params"]

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    if num_in_channels is not None:
        deprecation_message = (
            "Configuring UNet2DConditionModel with the `num_in_channels` argument to `from_single_file`"
            "is deprecated and will be ignored in future versions."
        )
        deprecate("image_size", "1.0.0", deprecation_message)
        in_channels = num_in_channels
    else:
        in_channels = unet_params["in_channels"]

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    vae_params = original_config["model"]["params"]["first_stage_config"]["params"]["ddconfig"]
    block_out_channels = [unet_params["model_channels"] * mult for mult in unet_params["channel_mult"]]

    down_block_types = []
    resolution = 1
    for i in range(len(block_out_channels)):
        block_type = "CrossAttnDownBlock2D" if resolution in unet_params["attention_resolutions"] else "DownBlock2D"
        down_block_types.append(block_type)
        if i != len(block_out_channels) - 1:
            resolution *= 2

    up_block_types = []
    for i in range(len(block_out_channels)):
        block_type = "CrossAttnUpBlock2D" if resolution in unet_params["attention_resolutions"] else "UpBlock2D"
        up_block_types.append(block_type)
        resolution //= 2

    if unet_params["transformer_depth"] is not None:
        transformer_layers_per_block = (
            unet_params["transformer_depth"]
            if isinstance(unet_params["transformer_depth"], int)
            else list(unet_params["transformer_depth"])
        )
    else:
        transformer_layers_per_block = 1

    vae_scale_factor = 2 ** (len(vae_params["ch_mult"]) - 1)

    head_dim = unet_params["num_heads"] if "num_heads" in unet_params else None
    use_linear_projection = (
        unet_params["use_linear_in_transformer"] if "use_linear_in_transformer" in unet_params else False
    )
    if use_linear_projection:
        # stable diffusion 2-base-512 and 2-768
        if head_dim is None:
            head_dim_mult = unet_params["model_channels"] // unet_params["num_head_channels"]
            head_dim = [head_dim_mult * c for c in list(unet_params["channel_mult"])]

    class_embed_type = None
    addition_embed_type = None
    addition_time_embed_dim = None
    projection_class_embeddings_input_dim = None
    context_dim = None

    if unet_params["context_dim"] is not None:
        context_dim = (
            unet_params["context_dim"]
            if isinstance(unet_params["context_dim"], int)
            else unet_params["context_dim"][0]
        )

    if "num_classes" in unet_params:
        if unet_params["num_classes"] == "sequential":
            if context_dim in [2048, 1280]:
                # SDXL
                addition_embed_type = "text_time"
                addition_time_embed_dim = 256
            else:
                class_embed_type = "projection"
            assert "adm_in_channels" in unet_params
            projection_class_embeddings_input_dim = unet_params["adm_in_channels"]

    config = {
        "sample_size": image_size // vae_scale_factor,
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        "in_channels": in_channels,
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        "down_block_types": down_block_types,
        "block_out_channels": block_out_channels,
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        "layers_per_block": unet_params["num_res_blocks"],
        "cross_attention_dim": context_dim,
        "attention_head_dim": head_dim,
        "use_linear_projection": use_linear_projection,
        "class_embed_type": class_embed_type,
        "addition_embed_type": addition_embed_type,
        "addition_time_embed_dim": addition_time_embed_dim,
        "projection_class_embeddings_input_dim": projection_class_embeddings_input_dim,
        "transformer_layers_per_block": transformer_layers_per_block,
    }

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    if upcast_attention is not None:
        deprecation_message = (
            "Configuring UNet2DConditionModel with the `upcast_attention` argument to `from_single_file`"
            "is deprecated and will be ignored in future versions."
        )
        deprecate("image_size", "1.0.0", deprecation_message)
        config["upcast_attention"] = upcast_attention

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    if "disable_self_attentions" in unet_params:
        config["only_cross_attention"] = unet_params["disable_self_attentions"]

    if "num_classes" in unet_params and isinstance(unet_params["num_classes"], int):
        config["num_class_embeds"] = unet_params["num_classes"]

    config["out_channels"] = unet_params["out_channels"]
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    config["up_block_types"] = up_block_types
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    return config


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def create_controlnet_diffusers_config_from_ldm(original_config, checkpoint, image_size=None, **kwargs):
    if image_size is not None:
        deprecation_message = (
            "Configuring ControlNetModel with the `image_size` argument"
            "is deprecated and will be ignored in future versions."
        )
        deprecate("image_size", "1.0.0", deprecation_message)

    image_size = set_image_size(checkpoint, image_size=image_size)

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    unet_params = original_config["model"]["params"]["control_stage_config"]["params"]
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    diffusers_unet_config = create_unet_diffusers_config_from_ldm(original_config, image_size=image_size)
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    controlnet_config = {
        "conditioning_channels": unet_params["hint_channels"],
        "in_channels": diffusers_unet_config["in_channels"],
        "down_block_types": diffusers_unet_config["down_block_types"],
        "block_out_channels": diffusers_unet_config["block_out_channels"],
        "layers_per_block": diffusers_unet_config["layers_per_block"],
        "cross_attention_dim": diffusers_unet_config["cross_attention_dim"],
        "attention_head_dim": diffusers_unet_config["attention_head_dim"],
        "use_linear_projection": diffusers_unet_config["use_linear_projection"],
        "class_embed_type": diffusers_unet_config["class_embed_type"],
        "addition_embed_type": diffusers_unet_config["addition_embed_type"],
        "addition_time_embed_dim": diffusers_unet_config["addition_time_embed_dim"],
        "projection_class_embeddings_input_dim": diffusers_unet_config["projection_class_embeddings_input_dim"],
        "transformer_layers_per_block": diffusers_unet_config["transformer_layers_per_block"],
    }

    return controlnet_config


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def create_vae_diffusers_config_from_ldm(original_config, checkpoint, image_size=None, scaling_factor=None):
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    """
    Creates a config for the diffusers based on the config of the LDM model.
    """
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    if image_size is not None:
        deprecation_message = (
            "Configuring AutoencoderKL with the `image_size` argument"
            "is deprecated and will be ignored in future versions."
        )
        deprecate("image_size", "1.0.0", deprecation_message)

    image_size = set_image_size(checkpoint, image_size=image_size)

    if "edm_mean" in checkpoint and "edm_std" in checkpoint:
        latents_mean = checkpoint["edm_mean"]
        latents_std = checkpoint["edm_std"]
    else:
        latents_mean = None
        latents_std = None

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    vae_params = original_config["model"]["params"]["first_stage_config"]["params"]["ddconfig"]
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    if (scaling_factor is None) and (latents_mean is not None) and (latents_std is not None):
        scaling_factor = PLAYGROUND_VAE_SCALING_FACTOR
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    elif (scaling_factor is None) and ("scale_factor" in original_config["model"]["params"]):
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        scaling_factor = original_config["model"]["params"]["scale_factor"]
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    elif scaling_factor is None:
        scaling_factor = LDM_VAE_DEFAULT_SCALING_FACTOR
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    block_out_channels = [vae_params["ch"] * mult for mult in vae_params["ch_mult"]]
    down_block_types = ["DownEncoderBlock2D"] * len(block_out_channels)
    up_block_types = ["UpDecoderBlock2D"] * len(block_out_channels)

    config = {
        "sample_size": image_size,
        "in_channels": vae_params["in_channels"],
        "out_channels": vae_params["out_ch"],
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        "down_block_types": down_block_types,
        "up_block_types": up_block_types,
        "block_out_channels": block_out_channels,
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        "latent_channels": vae_params["z_channels"],
        "layers_per_block": vae_params["num_res_blocks"],
        "scaling_factor": scaling_factor,
    }
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    if latents_mean is not None and latents_std is not None:
        config.update({"latents_mean": latents_mean, "latents_std": latents_std})
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    return config


def update_unet_resnet_ldm_to_diffusers(ldm_keys, new_checkpoint, checkpoint, mapping=None):
    for ldm_key in ldm_keys:
        diffusers_key = (
            ldm_key.replace("in_layers.0", "norm1")
            .replace("in_layers.2", "conv1")
            .replace("out_layers.0", "norm2")
            .replace("out_layers.3", "conv2")
            .replace("emb_layers.1", "time_emb_proj")
            .replace("skip_connection", "conv_shortcut")
        )
        if mapping:
            diffusers_key = diffusers_key.replace(mapping["old"], mapping["new"])
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        new_checkpoint[diffusers_key] = checkpoint.get(ldm_key)
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def update_unet_attention_ldm_to_diffusers(ldm_keys, new_checkpoint, checkpoint, mapping):
    for ldm_key in ldm_keys:
        diffusers_key = ldm_key.replace(mapping["old"], mapping["new"])
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        new_checkpoint[diffusers_key] = checkpoint.get(ldm_key)


def update_vae_resnet_ldm_to_diffusers(keys, new_checkpoint, checkpoint, mapping):
    for ldm_key in keys:
        diffusers_key = ldm_key.replace(mapping["old"], mapping["new"]).replace("nin_shortcut", "conv_shortcut")
        new_checkpoint[diffusers_key] = checkpoint.get(ldm_key)


def update_vae_attentions_ldm_to_diffusers(keys, new_checkpoint, checkpoint, mapping):
    for ldm_key in keys:
        diffusers_key = (
            ldm_key.replace(mapping["old"], mapping["new"])
            .replace("norm.weight", "group_norm.weight")
            .replace("norm.bias", "group_norm.bias")
            .replace("q.weight", "to_q.weight")
            .replace("q.bias", "to_q.bias")
            .replace("k.weight", "to_k.weight")
            .replace("k.bias", "to_k.bias")
            .replace("v.weight", "to_v.weight")
            .replace("v.bias", "to_v.bias")
            .replace("proj_out.weight", "to_out.0.weight")
            .replace("proj_out.bias", "to_out.0.bias")
        )
        new_checkpoint[diffusers_key] = checkpoint.get(ldm_key)

        # proj_attn.weight has to be converted from conv 1D to linear
        shape = new_checkpoint[diffusers_key].shape

        if len(shape) == 3:
            new_checkpoint[diffusers_key] = new_checkpoint[diffusers_key][:, :, 0]
        elif len(shape) == 4:
            new_checkpoint[diffusers_key] = new_checkpoint[diffusers_key][:, :, 0, 0]


def convert_stable_cascade_unet_single_file_to_diffusers(checkpoint, **kwargs):
    is_stage_c = "clip_txt_mapper.weight" in checkpoint

    if is_stage_c:
        state_dict = {}
        for key in checkpoint.keys():
            if key.endswith("in_proj_weight"):
                weights = checkpoint[key].chunk(3, 0)
                state_dict[key.replace("attn.in_proj_weight", "to_q.weight")] = weights[0]
                state_dict[key.replace("attn.in_proj_weight", "to_k.weight")] = weights[1]
                state_dict[key.replace("attn.in_proj_weight", "to_v.weight")] = weights[2]
            elif key.endswith("in_proj_bias"):
                weights = checkpoint[key].chunk(3, 0)
                state_dict[key.replace("attn.in_proj_bias", "to_q.bias")] = weights[0]
                state_dict[key.replace("attn.in_proj_bias", "to_k.bias")] = weights[1]
                state_dict[key.replace("attn.in_proj_bias", "to_v.bias")] = weights[2]
            elif key.endswith("out_proj.weight"):
                weights = checkpoint[key]
                state_dict[key.replace("attn.out_proj.weight", "to_out.0.weight")] = weights
            elif key.endswith("out_proj.bias"):
                weights = checkpoint[key]
                state_dict[key.replace("attn.out_proj.bias", "to_out.0.bias")] = weights
            else:
                state_dict[key] = checkpoint[key]
    else:
        state_dict = {}
        for key in checkpoint.keys():
            if key.endswith("in_proj_weight"):
                weights = checkpoint[key].chunk(3, 0)
                state_dict[key.replace("attn.in_proj_weight", "to_q.weight")] = weights[0]
                state_dict[key.replace("attn.in_proj_weight", "to_k.weight")] = weights[1]
                state_dict[key.replace("attn.in_proj_weight", "to_v.weight")] = weights[2]
            elif key.endswith("in_proj_bias"):
                weights = checkpoint[key].chunk(3, 0)
                state_dict[key.replace("attn.in_proj_bias", "to_q.bias")] = weights[0]
                state_dict[key.replace("attn.in_proj_bias", "to_k.bias")] = weights[1]
                state_dict[key.replace("attn.in_proj_bias", "to_v.bias")] = weights[2]
            elif key.endswith("out_proj.weight"):
                weights = checkpoint[key]
                state_dict[key.replace("attn.out_proj.weight", "to_out.0.weight")] = weights
            elif key.endswith("out_proj.bias"):
                weights = checkpoint[key]
                state_dict[key.replace("attn.out_proj.bias", "to_out.0.bias")] = weights
            # rename clip_mapper to clip_txt_pooled_mapper
            elif key.endswith("clip_mapper.weight"):
                weights = checkpoint[key]
                state_dict[key.replace("clip_mapper.weight", "clip_txt_pooled_mapper.weight")] = weights
            elif key.endswith("clip_mapper.bias"):
                weights = checkpoint[key]
                state_dict[key.replace("clip_mapper.bias", "clip_txt_pooled_mapper.bias")] = weights
            else:
                state_dict[key] = checkpoint[key]

    return state_dict
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def convert_ldm_unet_checkpoint(checkpoint, config, extract_ema=False, **kwargs):
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    """
    Takes a state dict and a config, and returns a converted checkpoint.
    """
    # extract state_dict for UNet
    unet_state_dict = {}
    keys = list(checkpoint.keys())
    unet_key = LDM_UNET_KEY

    # at least a 100 parameters have to start with `model_ema` in order for the checkpoint to be EMA
    if sum(k.startswith("model_ema") for k in keys) > 100 and extract_ema:
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        logger.warning("Checkpoint has both EMA and non-EMA weights.")
        logger.warning(
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            "In this conversion only the EMA weights are extracted. If you want to instead extract the non-EMA"
            " weights (useful to continue fine-tuning), please make sure to remove the `--extract_ema` flag."
        )
        for key in keys:
            if key.startswith("model.diffusion_model"):
                flat_ema_key = "model_ema." + "".join(key.split(".")[1:])
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                unet_state_dict[key.replace(unet_key, "")] = checkpoint.get(flat_ema_key)
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    else:
        if sum(k.startswith("model_ema") for k in keys) > 100:
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            logger.warning(
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                "In this conversion only the non-EMA weights are extracted. If you want to instead extract the EMA"
                " weights (usually better for inference), please make sure to add the `--extract_ema` flag."
            )
        for key in keys:
            if key.startswith(unet_key):
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                unet_state_dict[key.replace(unet_key, "")] = checkpoint.get(key)
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    new_checkpoint = {}
    ldm_unet_keys = DIFFUSERS_TO_LDM_MAPPING["unet"]["layers"]
    for diffusers_key, ldm_key in ldm_unet_keys.items():
        if ldm_key not in unet_state_dict:
            continue
        new_checkpoint[diffusers_key] = unet_state_dict[ldm_key]

    if ("class_embed_type" in config) and (config["class_embed_type"] in ["timestep", "projection"]):
        class_embed_keys = DIFFUSERS_TO_LDM_MAPPING["unet"]["class_embed_type"]
        for diffusers_key, ldm_key in class_embed_keys.items():
            new_checkpoint[diffusers_key] = unet_state_dict[ldm_key]

    if ("addition_embed_type" in config) and (config["addition_embed_type"] == "text_time"):
        addition_embed_keys = DIFFUSERS_TO_LDM_MAPPING["unet"]["addition_embed_type"]
        for diffusers_key, ldm_key in addition_embed_keys.items():
            new_checkpoint[diffusers_key] = unet_state_dict[ldm_key]

    # Relevant to StableDiffusionUpscalePipeline
    if "num_class_embeds" in config:
        if (config["num_class_embeds"] is not None) and ("label_emb.weight" in unet_state_dict):
            new_checkpoint["class_embedding.weight"] = unet_state_dict["label_emb.weight"]

    # Retrieves the keys for the input blocks only
    num_input_blocks = len({".".join(layer.split(".")[:2]) for layer in unet_state_dict if "input_blocks" in layer})
    input_blocks = {
        layer_id: [key for key in unet_state_dict if f"input_blocks.{layer_id}" in key]
        for layer_id in range(num_input_blocks)
    }

    # Retrieves the keys for the middle blocks only
    num_middle_blocks = len({".".join(layer.split(".")[:2]) for layer in unet_state_dict if "middle_block" in layer})
    middle_blocks = {
        layer_id: [key for key in unet_state_dict if f"middle_block.{layer_id}" in key]
        for layer_id in range(num_middle_blocks)
    }

    # Retrieves the keys for the output blocks only
    num_output_blocks = len({".".join(layer.split(".")[:2]) for layer in unet_state_dict if "output_blocks" in layer})
    output_blocks = {
        layer_id: [key for key in unet_state_dict if f"output_blocks.{layer_id}" in key]
        for layer_id in range(num_output_blocks)
    }

    # Down blocks
    for i in range(1, num_input_blocks):
        block_id = (i - 1) // (config["layers_per_block"] + 1)
        layer_in_block_id = (i - 1) % (config["layers_per_block"] + 1)

        resnets = [
            key for key in input_blocks[i] if f"input_blocks.{i}.0" in key and f"input_blocks.{i}.0.op" not in key
        ]
        update_unet_resnet_ldm_to_diffusers(
            resnets,
            new_checkpoint,
            unet_state_dict,
            {"old": f"input_blocks.{i}.0", "new": f"down_blocks.{block_id}.resnets.{layer_in_block_id}"},
        )

        if f"input_blocks.{i}.0.op.weight" in unet_state_dict:
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            new_checkpoint[f"down_blocks.{block_id}.downsamplers.0.conv.weight"] = unet_state_dict.get(
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                f"input_blocks.{i}.0.op.weight"
            )
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            new_checkpoint[f"down_blocks.{block_id}.downsamplers.0.conv.bias"] = unet_state_dict.get(
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                f"input_blocks.{i}.0.op.bias"
            )

        attentions = [key for key in input_blocks[i] if f"input_blocks.{i}.1" in key]
        if attentions:
            update_unet_attention_ldm_to_diffusers(
                attentions,
                new_checkpoint,
                unet_state_dict,
                {"old": f"input_blocks.{i}.1", "new": f"down_blocks.{block_id}.attentions.{layer_in_block_id}"},
            )

    # Mid blocks
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    for key in middle_blocks.keys():
        diffusers_key = max(key - 1, 0)
        if key % 2 == 0:
            update_unet_resnet_ldm_to_diffusers(
                middle_blocks[key],
                new_checkpoint,
                unet_state_dict,
                mapping={"old": f"middle_block.{key}", "new": f"mid_block.resnets.{diffusers_key}"},
            )
        else:
            update_unet_attention_ldm_to_diffusers(
                middle_blocks[key],
                new_checkpoint,
                unet_state_dict,
                mapping={"old": f"middle_block.{key}", "new": f"mid_block.attentions.{diffusers_key}"},
            )
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    # Up Blocks
    for i in range(num_output_blocks):
        block_id = i // (config["layers_per_block"] + 1)
        layer_in_block_id = i % (config["layers_per_block"] + 1)

        resnets = [
            key for key in output_blocks[i] if f"output_blocks.{i}.0" in key and f"output_blocks.{i}.0.op" not in key
        ]
        update_unet_resnet_ldm_to_diffusers(
            resnets,
            new_checkpoint,
            unet_state_dict,
            {"old": f"output_blocks.{i}.0", "new": f"up_blocks.{block_id}.resnets.{layer_in_block_id}"},
        )

        attentions = [
            key for key in output_blocks[i] if f"output_blocks.{i}.1" in key and f"output_blocks.{i}.1.conv" not in key
        ]
        if attentions:
            update_unet_attention_ldm_to_diffusers(
                attentions,
                new_checkpoint,
                unet_state_dict,
                {"old": f"output_blocks.{i}.1", "new": f"up_blocks.{block_id}.attentions.{layer_in_block_id}"},
            )

        if f"output_blocks.{i}.1.conv.weight" in unet_state_dict:
            new_checkpoint[f"up_blocks.{block_id}.upsamplers.0.conv.weight"] = unet_state_dict[
                f"output_blocks.{i}.1.conv.weight"
            ]
            new_checkpoint[f"up_blocks.{block_id}.upsamplers.0.conv.bias"] = unet_state_dict[
                f"output_blocks.{i}.1.conv.bias"
            ]
        if f"output_blocks.{i}.2.conv.weight" in unet_state_dict:
            new_checkpoint[f"up_blocks.{block_id}.upsamplers.0.conv.weight"] = unet_state_dict[
                f"output_blocks.{i}.2.conv.weight"
            ]
            new_checkpoint[f"up_blocks.{block_id}.upsamplers.0.conv.bias"] = unet_state_dict[
                f"output_blocks.{i}.2.conv.bias"
            ]

    return new_checkpoint


def convert_controlnet_checkpoint(
    checkpoint,
    config,
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    **kwargs,
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):
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    # Return checkpoint if it's already been converted
    if "time_embedding.linear_1.weight" in checkpoint:
        return checkpoint
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    # Some controlnet ckpt files are distributed independently from the rest of the
    # model components i.e. https://huggingface.co/thibaud/controlnet-sd21/
    if "time_embed.0.weight" in checkpoint:
        controlnet_state_dict = checkpoint

    else:
        controlnet_state_dict = {}
        keys = list(checkpoint.keys())
        controlnet_key = LDM_CONTROLNET_KEY
        for key in keys:
            if key.startswith(controlnet_key):
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                controlnet_state_dict[key.replace(controlnet_key, "")] = checkpoint.get(key)
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    new_checkpoint = {}
    ldm_controlnet_keys = DIFFUSERS_TO_LDM_MAPPING["controlnet"]["layers"]
    for diffusers_key, ldm_key in ldm_controlnet_keys.items():
        if ldm_key not in controlnet_state_dict:
            continue
        new_checkpoint[diffusers_key] = controlnet_state_dict[ldm_key]

    # Retrieves the keys for the input blocks only
    num_input_blocks = len(
        {".".join(layer.split(".")[:2]) for layer in controlnet_state_dict if "input_blocks" in layer}
    )
    input_blocks = {
        layer_id: [key for key in controlnet_state_dict if f"input_blocks.{layer_id}" in key]
        for layer_id in range(num_input_blocks)
    }

    # Down blocks
    for i in range(1, num_input_blocks):
        block_id = (i - 1) // (config["layers_per_block"] + 1)
        layer_in_block_id = (i - 1) % (config["layers_per_block"] + 1)

        resnets = [
            key for key in input_blocks[i] if f"input_blocks.{i}.0" in key and f"input_blocks.{i}.0.op" not in key
        ]
        update_unet_resnet_ldm_to_diffusers(
            resnets,
            new_checkpoint,
            controlnet_state_dict,
            {"old": f"input_blocks.{i}.0", "new": f"down_blocks.{block_id}.resnets.{layer_in_block_id}"},
        )

        if f"input_blocks.{i}.0.op.weight" in controlnet_state_dict:
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            new_checkpoint[f"down_blocks.{block_id}.downsamplers.0.conv.weight"] = controlnet_state_dict.get(
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                f"input_blocks.{i}.0.op.weight"
            )
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            new_checkpoint[f"down_blocks.{block_id}.downsamplers.0.conv.bias"] = controlnet_state_dict.get(
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                f"input_blocks.{i}.0.op.bias"
            )

        attentions = [key for key in input_blocks[i] if f"input_blocks.{i}.1" in key]
        if attentions:
            update_unet_attention_ldm_to_diffusers(
                attentions,
                new_checkpoint,
                controlnet_state_dict,
                {"old": f"input_blocks.{i}.1", "new": f"down_blocks.{block_id}.attentions.{layer_in_block_id}"},
            )

    # controlnet down blocks
    for i in range(num_input_blocks):
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        new_checkpoint[f"controlnet_down_blocks.{i}.weight"] = controlnet_state_dict.get(f"zero_convs.{i}.0.weight")
        new_checkpoint[f"controlnet_down_blocks.{i}.bias"] = controlnet_state_dict.get(f"zero_convs.{i}.0.bias")
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    # Retrieves the keys for the middle blocks only
    num_middle_blocks = len(
        {".".join(layer.split(".")[:2]) for layer in controlnet_state_dict if "middle_block" in layer}
    )
    middle_blocks = {
        layer_id: [key for key in controlnet_state_dict if f"middle_block.{layer_id}" in key]
        for layer_id in range(num_middle_blocks)
    }

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    # Mid blocks
    for key in middle_blocks.keys():
        diffusers_key = max(key - 1, 0)
        if key % 2 == 0:
            update_unet_resnet_ldm_to_diffusers(
                middle_blocks[key],
                new_checkpoint,
                controlnet_state_dict,
                mapping={"old": f"middle_block.{key}", "new": f"mid_block.resnets.{diffusers_key}"},
            )
        else:
            update_unet_attention_ldm_to_diffusers(
                middle_blocks[key],
                new_checkpoint,
                controlnet_state_dict,
                mapping={"old": f"middle_block.{key}", "new": f"mid_block.attentions.{diffusers_key}"},
            )
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    # mid block
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    new_checkpoint["controlnet_mid_block.weight"] = controlnet_state_dict.get("middle_block_out.0.weight")
    new_checkpoint["controlnet_mid_block.bias"] = controlnet_state_dict.get("middle_block_out.0.bias")
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    # controlnet cond embedding blocks
    cond_embedding_blocks = {
        ".".join(layer.split(".")[:2])
        for layer in controlnet_state_dict
        if "input_hint_block" in layer and ("input_hint_block.0" not in layer) and ("input_hint_block.14" not in layer)
    }
    num_cond_embedding_blocks = len(cond_embedding_blocks)

    for idx in range(1, num_cond_embedding_blocks + 1):
        diffusers_idx = idx - 1
        cond_block_id = 2 * idx

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        new_checkpoint[f"controlnet_cond_embedding.blocks.{diffusers_idx}.weight"] = controlnet_state_dict.get(
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            f"input_hint_block.{cond_block_id}.weight"
        )
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        new_checkpoint[f"controlnet_cond_embedding.blocks.{diffusers_idx}.bias"] = controlnet_state_dict.get(
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            f"input_hint_block.{cond_block_id}.bias"
        )

    return new_checkpoint


def convert_ldm_vae_checkpoint(checkpoint, config):
    # extract state dict for VAE
    # remove the LDM_VAE_KEY prefix from the ldm checkpoint keys so that it is easier to map them to diffusers keys
    vae_state_dict = {}
    keys = list(checkpoint.keys())
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    vae_key = ""
    for ldm_vae_key in LDM_VAE_KEYS:
        if any(k.startswith(ldm_vae_key) for k in keys):
            vae_key = ldm_vae_key

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    for key in keys:
        if key.startswith(vae_key):
            vae_state_dict[key.replace(vae_key, "")] = checkpoint.get(key)

    new_checkpoint = {}
    vae_diffusers_ldm_map = DIFFUSERS_TO_LDM_MAPPING["vae"]
    for diffusers_key, ldm_key in vae_diffusers_ldm_map.items():
        if ldm_key not in vae_state_dict:
            continue
        new_checkpoint[diffusers_key] = vae_state_dict[ldm_key]

    # Retrieves the keys for the encoder down blocks only
    num_down_blocks = len(config["down_block_types"])
    down_blocks = {
        layer_id: [key for key in vae_state_dict if f"down.{layer_id}" in key] for layer_id in range(num_down_blocks)
    }

    for i in range(num_down_blocks):
        resnets = [key for key in down_blocks[i] if f"down.{i}" in key and f"down.{i}.downsample" not in key]
        update_vae_resnet_ldm_to_diffusers(
            resnets,
            new_checkpoint,
            vae_state_dict,
            mapping={"old": f"down.{i}.block", "new": f"down_blocks.{i}.resnets"},
        )
        if f"encoder.down.{i}.downsample.conv.weight" in vae_state_dict:
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            new_checkpoint[f"encoder.down_blocks.{i}.downsamplers.0.conv.weight"] = vae_state_dict.get(
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                f"encoder.down.{i}.downsample.conv.weight"
            )
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            new_checkpoint[f"encoder.down_blocks.{i}.downsamplers.0.conv.bias"] = vae_state_dict.get(
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                f"encoder.down.{i}.downsample.conv.bias"
            )

    mid_resnets = [key for key in vae_state_dict if "encoder.mid.block" in key]
    num_mid_res_blocks = 2
    for i in range(1, num_mid_res_blocks + 1):
        resnets = [key for key in mid_resnets if f"encoder.mid.block_{i}" in key]
        update_vae_resnet_ldm_to_diffusers(
            resnets,
            new_checkpoint,
            vae_state_dict,
            mapping={"old": f"mid.block_{i}", "new": f"mid_block.resnets.{i - 1}"},
        )

    mid_attentions = [key for key in vae_state_dict if "encoder.mid.attn" in key]
    update_vae_attentions_ldm_to_diffusers(
        mid_attentions, new_checkpoint, vae_state_dict, mapping={"old": "mid.attn_1", "new": "mid_block.attentions.0"}
    )

    # Retrieves the keys for the decoder up blocks only
    num_up_blocks = len(config["up_block_types"])
    up_blocks = {
        layer_id: [key for key in vae_state_dict if f"up.{layer_id}" in key] for layer_id in range(num_up_blocks)
    }

    for i in range(num_up_blocks):
        block_id = num_up_blocks - 1 - i
        resnets = [
            key for key in up_blocks[block_id] if f"up.{block_id}" in key and f"up.{block_id}.upsample" not in key
        ]
        update_vae_resnet_ldm_to_diffusers(
            resnets,
            new_checkpoint,
            vae_state_dict,
            mapping={"old": f"up.{block_id}.block", "new": f"up_blocks.{i}.resnets"},
        )
        if f"decoder.up.{block_id}.upsample.conv.weight" in vae_state_dict:
            new_checkpoint[f"decoder.up_blocks.{i}.upsamplers.0.conv.weight"] = vae_state_dict[
                f"decoder.up.{block_id}.upsample.conv.weight"
            ]
            new_checkpoint[f"decoder.up_blocks.{i}.upsamplers.0.conv.bias"] = vae_state_dict[
                f"decoder.up.{block_id}.upsample.conv.bias"
            ]

    mid_resnets = [key for key in vae_state_dict if "decoder.mid.block" in key]
    num_mid_res_blocks = 2
    for i in range(1, num_mid_res_blocks + 1):
        resnets = [key for key in mid_resnets if f"decoder.mid.block_{i}" in key]
        update_vae_resnet_ldm_to_diffusers(
            resnets,
            new_checkpoint,
            vae_state_dict,
            mapping={"old": f"mid.block_{i}", "new": f"mid_block.resnets.{i - 1}"},
        )

    mid_attentions = [key for key in vae_state_dict if "decoder.mid.attn" in key]
    update_vae_attentions_ldm_to_diffusers(
        mid_attentions, new_checkpoint, vae_state_dict, mapping={"old": "mid.attn_1", "new": "mid_block.attentions.0"}
    )
    conv_attn_to_linear(new_checkpoint)

    return new_checkpoint


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def convert_ldm_clip_checkpoint(checkpoint, remove_prefix=None):
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    keys = list(checkpoint.keys())
    text_model_dict = {}

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    remove_prefixes = []
    remove_prefixes.extend(LDM_CLIP_PREFIX_TO_REMOVE)
    if remove_prefix:
        remove_prefixes.append(remove_prefix)
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    for key in keys:
        for prefix in remove_prefixes:
            if key.startswith(prefix):
                diffusers_key = key.replace(prefix, "")
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                text_model_dict[diffusers_key] = checkpoint.get(key)
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    return text_model_dict
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def convert_open_clip_checkpoint(
    text_model,
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    checkpoint,
    prefix="cond_stage_model.model.",
):
    text_model_dict = {}
    text_proj_key = prefix + "text_projection"
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    if text_proj_key in checkpoint:
        text_proj_dim = int(checkpoint[text_proj_key].shape[0])
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    elif hasattr(text_model.config, "hidden_size"):
        text_proj_dim = text_model.config.hidden_size
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    else:
        text_proj_dim = LDM_OPEN_CLIP_TEXT_PROJECTION_DIM

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    keys = list(checkpoint.keys())
    keys_to_ignore = SD_2_TEXT_ENCODER_KEYS_TO_IGNORE

    openclip_diffusers_ldm_map = DIFFUSERS_TO_LDM_MAPPING["openclip"]["layers"]
    for diffusers_key, ldm_key in openclip_diffusers_ldm_map.items():
        ldm_key = prefix + ldm_key
        if ldm_key not in checkpoint:
            continue
        if ldm_key in keys_to_ignore:
            continue
        if ldm_key.endswith("text_projection"):
            text_model_dict[diffusers_key] = checkpoint[ldm_key].T.contiguous()
        else:
            text_model_dict[diffusers_key] = checkpoint[ldm_key]

    for key in keys:
        if key in keys_to_ignore:
            continue

        if not key.startswith(prefix + "transformer."):
            continue

        diffusers_key = key.replace(prefix + "transformer.", "")
        transformer_diffusers_to_ldm_map = DIFFUSERS_TO_LDM_MAPPING["openclip"]["transformer"]
        for new_key, old_key in transformer_diffusers_to_ldm_map.items():
            diffusers_key = (
                diffusers_key.replace(old_key, new_key).replace(".in_proj_weight", "").replace(".in_proj_bias", "")
            )

        if key.endswith(".in_proj_weight"):
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            weight_value = checkpoint.get(key)
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            text_model_dict[diffusers_key + ".q_proj.weight"] = weight_value[:text_proj_dim, :].clone().detach()
            text_model_dict[diffusers_key + ".k_proj.weight"] = (
                weight_value[text_proj_dim : text_proj_dim * 2, :].clone().detach()
            )
            text_model_dict[diffusers_key + ".v_proj.weight"] = weight_value[text_proj_dim * 2 :, :].clone().detach()
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        elif key.endswith(".in_proj_bias"):
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            weight_value = checkpoint.get(key)
            text_model_dict[diffusers_key + ".q_proj.bias"] = weight_value[:text_proj_dim].clone().detach()
            text_model_dict[diffusers_key + ".k_proj.bias"] = (
                weight_value[text_proj_dim : text_proj_dim * 2].clone().detach()
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            )
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            text_model_dict[diffusers_key + ".v_proj.bias"] = weight_value[text_proj_dim * 2 :].clone().detach()
        else:
            text_model_dict[diffusers_key] = checkpoint.get(key)
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    return text_model_dict
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def create_diffusers_clip_model_from_ldm(
    cls,
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    checkpoint,
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    subfolder="",
    config=None,
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    torch_dtype=None,
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    local_files_only=None,
    is_legacy_loading=False,
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):
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    if config:
        config = {"pretrained_model_name_or_path": config}
    else:
        config = fetch_diffusers_config(checkpoint)
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    # For backwards compatibility
    # Older versions of `from_single_file` expected CLIP configs to be placed in their original transformers model repo
    # in the cache_dir, rather than in a subfolder of the Diffusers model
    if is_legacy_loading:
        logger.warning(
            (
                "Detected legacy CLIP loading behavior. Please run `from_single_file` with `local_files_only=False once to update "
                "the local cache directory with the necessary CLIP model config files. "
                "Attempting to load CLIP model from legacy cache directory."
            )
        )
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        if is_clip_model(checkpoint) or is_clip_sdxl_model(checkpoint):
            clip_config = "openai/clip-vit-large-patch14"
            config["pretrained_model_name_or_path"] = clip_config
            subfolder = ""
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        elif is_open_clip_model(checkpoint):
            clip_config = "stabilityai/stable-diffusion-2"
            config["pretrained_model_name_or_path"] = clip_config
            subfolder = "text_encoder"
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        else:
            clip_config = "laion/CLIP-ViT-bigG-14-laion2B-39B-b160k"
            config["pretrained_model_name_or_path"] = clip_config
            subfolder = ""
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    model_config = cls.config_class.from_pretrained(**config, subfolder=subfolder, local_files_only=local_files_only)
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    ctx = init_empty_weights if is_accelerate_available() else nullcontext
    with ctx():
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        model = cls(model_config)
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    position_embedding_dim = model.text_model.embeddings.position_embedding.weight.shape[-1]
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    if is_clip_model(checkpoint):
        diffusers_format_checkpoint = convert_ldm_clip_checkpoint(checkpoint)
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    elif (
        is_clip_sdxl_model(checkpoint)
        and checkpoint[CHECKPOINT_KEY_NAMES["clip_sdxl"]].shape[-1] == position_embedding_dim
    ):
        diffusers_format_checkpoint = convert_ldm_clip_checkpoint(checkpoint)
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    elif (
        is_clip_sd3_model(checkpoint)
        and checkpoint[CHECKPOINT_KEY_NAMES["clip_sd3"]].shape[-1] == position_embedding_dim
    ):
        diffusers_format_checkpoint = convert_ldm_clip_checkpoint(checkpoint, "text_encoders.clip_l.transformer.")
        diffusers_format_checkpoint["text_projection.weight"] = torch.eye(position_embedding_dim)

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    elif is_open_clip_model(checkpoint):
        prefix = "cond_stage_model.model."
        diffusers_format_checkpoint = convert_open_clip_checkpoint(model, checkpoint, prefix=prefix)
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    elif (
        is_open_clip_sdxl_model(checkpoint)
        and checkpoint[CHECKPOINT_KEY_NAMES["open_clip_sdxl"]].shape[-1] == position_embedding_dim
    ):
        prefix = "conditioner.embedders.1.model."
        diffusers_format_checkpoint = convert_open_clip_checkpoint(model, checkpoint, prefix=prefix)
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    elif is_open_clip_sdxl_refiner_model(checkpoint):
        prefix = "conditioner.embedders.0.model."
        diffusers_format_checkpoint = convert_open_clip_checkpoint(model, checkpoint, prefix=prefix)
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    elif (
        is_open_clip_sd3_model(checkpoint)
        and checkpoint[CHECKPOINT_KEY_NAMES["open_clip_sd3"]].shape[-1] == position_embedding_dim
    ):
        diffusers_format_checkpoint = convert_ldm_clip_checkpoint(checkpoint, "text_encoders.clip_g.transformer.")
Dhruv Nair's avatar
Dhruv Nair committed
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    else:
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        raise ValueError("The provided checkpoint does not seem to contain a valid CLIP model.")
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    if is_accelerate_available():
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        load_model_dict_into_meta(model, diffusers_format_checkpoint, dtype=torch_dtype)
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    else:
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        model.load_state_dict(diffusers_format_checkpoint, strict=False)
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    if torch_dtype is not None:
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        model.to(torch_dtype)
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    model.eval()
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    return model
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def _legacy_load_scheduler(
    cls,
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    checkpoint,
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    component_name,
    original_config=None,
    **kwargs,
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):
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    scheduler_type = kwargs.get("scheduler_type", None)
    prediction_type = kwargs.get("prediction_type", None)
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    if scheduler_type is not None:
        deprecation_message = (
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            "Please pass an instance of a Scheduler object directly to the `scheduler` argument in `from_single_file`\n\n"
            "Example:\n\n"
            "from diffusers import StableDiffusionPipeline, DDIMScheduler\n\n"
            "scheduler = DDIMScheduler()\n"
            "pipe = StableDiffusionPipeline.from_single_file(<checkpoint path>, scheduler=scheduler)\n"
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        )
        deprecate("scheduler_type", "1.0.0", deprecation_message)
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    if prediction_type is not None:
        deprecation_message = (
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            "Please configure an instance of a Scheduler with the appropriate `prediction_type` and "
            "pass the object directly to the `scheduler` argument in `from_single_file`.\n\n"
            "Example:\n\n"
            "from diffusers import StableDiffusionPipeline, DDIMScheduler\n\n"
            'scheduler = DDIMScheduler(prediction_type="v_prediction")\n'
            "pipe = StableDiffusionPipeline.from_single_file(<checkpoint path>, scheduler=scheduler)\n"
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        )
        deprecate("prediction_type", "1.0.0", deprecation_message)
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    scheduler_config = SCHEDULER_DEFAULT_CONFIG
    model_type = infer_diffusers_model_type(checkpoint=checkpoint)
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    global_step = checkpoint["global_step"] if "global_step" in checkpoint else None

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    if original_config:
        num_train_timesteps = getattr(original_config["model"]["params"], "timesteps", 1000)
    else:
        num_train_timesteps = 1000

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    scheduler_config["num_train_timesteps"] = num_train_timesteps

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    if model_type == "v2":
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        if prediction_type is None:
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            # NOTE: For stable diffusion 2 base it is recommended to pass `prediction_type=="epsilon"` # as it relies on a brittle global step parameter here
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            prediction_type = "epsilon" if global_step == 875000 else "v_prediction"

    else:
        prediction_type = prediction_type or "epsilon"

    scheduler_config["prediction_type"] = prediction_type

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    if model_type in ["xl_base", "xl_refiner"]:
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        scheduler_type = "euler"
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    elif model_type == "playground":
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        scheduler_type = "edm_dpm_solver_multistep"
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    else:
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        if original_config:
            beta_start = original_config["model"]["params"].get("linear_start")
            beta_end = original_config["model"]["params"].get("linear_end")

        else:
            beta_start = 0.02
            beta_end = 0.085

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        scheduler_config["beta_start"] = beta_start
        scheduler_config["beta_end"] = beta_end
        scheduler_config["beta_schedule"] = "scaled_linear"
        scheduler_config["clip_sample"] = False
        scheduler_config["set_alpha_to_one"] = False

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    # to deal with an edge case StableDiffusionUpscale pipeline has two schedulers
    if component_name == "low_res_scheduler":
        return cls.from_config(
            {
                "beta_end": 0.02,
                "beta_schedule": "scaled_linear",
                "beta_start": 0.0001,
                "clip_sample": True,
                "num_train_timesteps": 1000,
                "prediction_type": "epsilon",
                "trained_betas": None,
                "variance_type": "fixed_small",
            }
        )

    if scheduler_type is None:
        return cls.from_config(scheduler_config)

    elif scheduler_type == "pndm":
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        scheduler_config["skip_prk_steps"] = True
        scheduler = PNDMScheduler.from_config(scheduler_config)

    elif scheduler_type == "lms":
        scheduler = LMSDiscreteScheduler.from_config(scheduler_config)

    elif scheduler_type == "heun":
        scheduler = HeunDiscreteScheduler.from_config(scheduler_config)

    elif scheduler_type == "euler":
        scheduler = EulerDiscreteScheduler.from_config(scheduler_config)

    elif scheduler_type == "euler-ancestral":
        scheduler = EulerAncestralDiscreteScheduler.from_config(scheduler_config)

    elif scheduler_type == "dpm":
        scheduler = DPMSolverMultistepScheduler.from_config(scheduler_config)

    elif scheduler_type == "ddim":
        scheduler = DDIMScheduler.from_config(scheduler_config)

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    elif scheduler_type == "edm_dpm_solver_multistep":
        scheduler_config = {
            "algorithm_type": "dpmsolver++",
            "dynamic_thresholding_ratio": 0.995,
            "euler_at_final": False,
            "final_sigmas_type": "zero",
            "lower_order_final": True,
            "num_train_timesteps": 1000,
            "prediction_type": "epsilon",
            "rho": 7.0,
            "sample_max_value": 1.0,
            "sigma_data": 0.5,
            "sigma_max": 80.0,
            "sigma_min": 0.002,
            "solver_order": 2,
            "solver_type": "midpoint",
            "thresholding": False,
        }
        scheduler = EDMDPMSolverMultistepScheduler(**scheduler_config)

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    else:
        raise ValueError(f"Scheduler of type {scheduler_type} doesn't exist!")

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    return scheduler
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def _legacy_load_clip_tokenizer(cls, checkpoint, config=None, local_files_only=False):
    if config:
        config = {"pretrained_model_name_or_path": config}
    else:
        config = fetch_diffusers_config(checkpoint)

    if is_clip_model(checkpoint) or is_clip_sdxl_model(checkpoint):
        clip_config = "openai/clip-vit-large-patch14"
        config["pretrained_model_name_or_path"] = clip_config
        subfolder = ""

    elif is_open_clip_model(checkpoint):
        clip_config = "stabilityai/stable-diffusion-2"
        config["pretrained_model_name_or_path"] = clip_config
        subfolder = "tokenizer"

    else:
        clip_config = "laion/CLIP-ViT-bigG-14-laion2B-39B-b160k"
        config["pretrained_model_name_or_path"] = clip_config
        subfolder = ""

    tokenizer = cls.from_pretrained(**config, subfolder=subfolder, local_files_only=local_files_only)

    return tokenizer


def _legacy_load_safety_checker(local_files_only, torch_dtype):
    # Support for loading safety checker components using the deprecated
    # `load_safety_checker` argument.

    from ..pipelines.stable_diffusion.safety_checker import StableDiffusionSafetyChecker

    feature_extractor = AutoImageProcessor.from_pretrained(
        "CompVis/stable-diffusion-safety-checker", local_files_only=local_files_only, torch_dtype=torch_dtype
    )
    safety_checker = StableDiffusionSafetyChecker.from_pretrained(
        "CompVis/stable-diffusion-safety-checker", local_files_only=local_files_only, torch_dtype=torch_dtype
    )

    return {"safety_checker": safety_checker, "feature_extractor": feature_extractor}
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# in SD3 original implementation of AdaLayerNormContinuous, it split linear projection output into shift, scale;
# while in diffusers it split into scale, shift. Here we swap the linear projection weights in order to be able to use diffusers implementation
def swap_scale_shift(weight, dim):
    shift, scale = weight.chunk(2, dim=0)
    new_weight = torch.cat([scale, shift], dim=0)
    return new_weight


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def swap_proj_gate(weight):
    proj, gate = weight.chunk(2, dim=0)
    new_weight = torch.cat([gate, proj], dim=0)
    return new_weight


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def get_attn2_layers(state_dict):
    attn2_layers = []
    for key in state_dict.keys():
        if "attn2." in key:
            # Extract the layer number from the key
            layer_num = int(key.split(".")[1])
            attn2_layers.append(layer_num)

    return tuple(sorted(set(attn2_layers)))


def get_caption_projection_dim(state_dict):
    caption_projection_dim = state_dict["context_embedder.weight"].shape[0]
    return caption_projection_dim


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def convert_sd3_transformer_checkpoint_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}
    keys = list(checkpoint.keys())
    for k in keys:
        if "model.diffusion_model." in k:
            checkpoint[k.replace("model.diffusion_model.", "")] = checkpoint.pop(k)

    num_layers = list(set(int(k.split(".", 2)[1]) for k in checkpoint if "joint_blocks" in k))[-1] + 1  # noqa: C401
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    dual_attention_layers = get_attn2_layers(checkpoint)

    caption_projection_dim = get_caption_projection_dim(checkpoint)
    has_qk_norm = any("ln_q" in key for key in checkpoint.keys())
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    # Positional and patch embeddings.
    converted_state_dict["pos_embed.pos_embed"] = checkpoint.pop("pos_embed")
    converted_state_dict["pos_embed.proj.weight"] = checkpoint.pop("x_embedder.proj.weight")
    converted_state_dict["pos_embed.proj.bias"] = checkpoint.pop("x_embedder.proj.bias")

    # Timestep embeddings.
    converted_state_dict["time_text_embed.timestep_embedder.linear_1.weight"] = checkpoint.pop(
        "t_embedder.mlp.0.weight"
    )
    converted_state_dict["time_text_embed.timestep_embedder.linear_1.bias"] = checkpoint.pop("t_embedder.mlp.0.bias")
    converted_state_dict["time_text_embed.timestep_embedder.linear_2.weight"] = checkpoint.pop(
        "t_embedder.mlp.2.weight"
    )
    converted_state_dict["time_text_embed.timestep_embedder.linear_2.bias"] = checkpoint.pop("t_embedder.mlp.2.bias")

    # Context projections.
    converted_state_dict["context_embedder.weight"] = checkpoint.pop("context_embedder.weight")
    converted_state_dict["context_embedder.bias"] = checkpoint.pop("context_embedder.bias")

    # Pooled context projection.
    converted_state_dict["time_text_embed.text_embedder.linear_1.weight"] = checkpoint.pop("y_embedder.mlp.0.weight")
    converted_state_dict["time_text_embed.text_embedder.linear_1.bias"] = checkpoint.pop("y_embedder.mlp.0.bias")
    converted_state_dict["time_text_embed.text_embedder.linear_2.weight"] = checkpoint.pop("y_embedder.mlp.2.weight")
    converted_state_dict["time_text_embed.text_embedder.linear_2.bias"] = checkpoint.pop("y_embedder.mlp.2.bias")

    # Transformer blocks 🎸.
    for i in range(num_layers):
        # Q, K, V
        sample_q, sample_k, sample_v = torch.chunk(
            checkpoint.pop(f"joint_blocks.{i}.x_block.attn.qkv.weight"), 3, dim=0
        )
        context_q, context_k, context_v = torch.chunk(
            checkpoint.pop(f"joint_blocks.{i}.context_block.attn.qkv.weight"), 3, dim=0
        )
        sample_q_bias, sample_k_bias, sample_v_bias = torch.chunk(
            checkpoint.pop(f"joint_blocks.{i}.x_block.attn.qkv.bias"), 3, dim=0
        )
        context_q_bias, context_k_bias, context_v_bias = torch.chunk(
            checkpoint.pop(f"joint_blocks.{i}.context_block.attn.qkv.bias"), 3, dim=0
        )

        converted_state_dict[f"transformer_blocks.{i}.attn.to_q.weight"] = torch.cat([sample_q])
        converted_state_dict[f"transformer_blocks.{i}.attn.to_q.bias"] = torch.cat([sample_q_bias])
        converted_state_dict[f"transformer_blocks.{i}.attn.to_k.weight"] = torch.cat([sample_k])
        converted_state_dict[f"transformer_blocks.{i}.attn.to_k.bias"] = torch.cat([sample_k_bias])
        converted_state_dict[f"transformer_blocks.{i}.attn.to_v.weight"] = torch.cat([sample_v])
        converted_state_dict[f"transformer_blocks.{i}.attn.to_v.bias"] = torch.cat([sample_v_bias])

        converted_state_dict[f"transformer_blocks.{i}.attn.add_q_proj.weight"] = torch.cat([context_q])
        converted_state_dict[f"transformer_blocks.{i}.attn.add_q_proj.bias"] = torch.cat([context_q_bias])
        converted_state_dict[f"transformer_blocks.{i}.attn.add_k_proj.weight"] = torch.cat([context_k])
        converted_state_dict[f"transformer_blocks.{i}.attn.add_k_proj.bias"] = torch.cat([context_k_bias])
        converted_state_dict[f"transformer_blocks.{i}.attn.add_v_proj.weight"] = torch.cat([context_v])
        converted_state_dict[f"transformer_blocks.{i}.attn.add_v_proj.bias"] = torch.cat([context_v_bias])

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        # qk norm
        if has_qk_norm:
            converted_state_dict[f"transformer_blocks.{i}.attn.norm_q.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.x_block.attn.ln_q.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.attn.norm_k.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.x_block.attn.ln_k.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.attn.norm_added_q.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.attn.ln_q.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.attn.norm_added_k.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.attn.ln_k.weight"
            )

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        # output projections.
        converted_state_dict[f"transformer_blocks.{i}.attn.to_out.0.weight"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.attn.proj.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.attn.to_out.0.bias"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.attn.proj.bias"
        )
        if not (i == num_layers - 1):
            converted_state_dict[f"transformer_blocks.{i}.attn.to_add_out.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.attn.proj.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.attn.to_add_out.bias"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.attn.proj.bias"
            )

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        if i in dual_attention_layers:
            # Q, K, V
            sample_q2, sample_k2, sample_v2 = torch.chunk(
                checkpoint.pop(f"joint_blocks.{i}.x_block.attn2.qkv.weight"), 3, dim=0
            )
            sample_q2_bias, sample_k2_bias, sample_v2_bias = torch.chunk(
                checkpoint.pop(f"joint_blocks.{i}.x_block.attn2.qkv.bias"), 3, dim=0
            )
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_q.weight"] = torch.cat([sample_q2])
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_q.bias"] = torch.cat([sample_q2_bias])
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_k.weight"] = torch.cat([sample_k2])
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_k.bias"] = torch.cat([sample_k2_bias])
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_v.weight"] = torch.cat([sample_v2])
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_v.bias"] = torch.cat([sample_v2_bias])

            # qk norm
            if has_qk_norm:
                converted_state_dict[f"transformer_blocks.{i}.attn2.norm_q.weight"] = checkpoint.pop(
                    f"joint_blocks.{i}.x_block.attn2.ln_q.weight"
                )
                converted_state_dict[f"transformer_blocks.{i}.attn2.norm_k.weight"] = checkpoint.pop(
                    f"joint_blocks.{i}.x_block.attn2.ln_k.weight"
                )

            # output projections.
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_out.0.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.x_block.attn2.proj.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.attn2.to_out.0.bias"] = checkpoint.pop(
                f"joint_blocks.{i}.x_block.attn2.proj.bias"
            )

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        # norms.
        converted_state_dict[f"transformer_blocks.{i}.norm1.linear.weight"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.adaLN_modulation.1.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.norm1.linear.bias"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.adaLN_modulation.1.bias"
        )
        if not (i == num_layers - 1):
            converted_state_dict[f"transformer_blocks.{i}.norm1_context.linear.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.adaLN_modulation.1.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.norm1_context.linear.bias"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.adaLN_modulation.1.bias"
            )
        else:
            converted_state_dict[f"transformer_blocks.{i}.norm1_context.linear.weight"] = swap_scale_shift(
                checkpoint.pop(f"joint_blocks.{i}.context_block.adaLN_modulation.1.weight"),
                dim=caption_projection_dim,
            )
            converted_state_dict[f"transformer_blocks.{i}.norm1_context.linear.bias"] = swap_scale_shift(
                checkpoint.pop(f"joint_blocks.{i}.context_block.adaLN_modulation.1.bias"),
                dim=caption_projection_dim,
            )

        # ffs.
        converted_state_dict[f"transformer_blocks.{i}.ff.net.0.proj.weight"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.mlp.fc1.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.ff.net.0.proj.bias"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.mlp.fc1.bias"
        )
        converted_state_dict[f"transformer_blocks.{i}.ff.net.2.weight"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.mlp.fc2.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.ff.net.2.bias"] = checkpoint.pop(
            f"joint_blocks.{i}.x_block.mlp.fc2.bias"
        )
        if not (i == num_layers - 1):
            converted_state_dict[f"transformer_blocks.{i}.ff_context.net.0.proj.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.mlp.fc1.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.ff_context.net.0.proj.bias"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.mlp.fc1.bias"
            )
            converted_state_dict[f"transformer_blocks.{i}.ff_context.net.2.weight"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.mlp.fc2.weight"
            )
            converted_state_dict[f"transformer_blocks.{i}.ff_context.net.2.bias"] = checkpoint.pop(
                f"joint_blocks.{i}.context_block.mlp.fc2.bias"
            )

    # Final blocks.
    converted_state_dict["proj_out.weight"] = checkpoint.pop("final_layer.linear.weight")
    converted_state_dict["proj_out.bias"] = checkpoint.pop("final_layer.linear.bias")
    converted_state_dict["norm_out.linear.weight"] = swap_scale_shift(
        checkpoint.pop("final_layer.adaLN_modulation.1.weight"), dim=caption_projection_dim
    )
    converted_state_dict["norm_out.linear.bias"] = swap_scale_shift(
        checkpoint.pop("final_layer.adaLN_modulation.1.bias"), dim=caption_projection_dim
    )

    return converted_state_dict


def is_t5_in_single_file(checkpoint):
    if "text_encoders.t5xxl.transformer.shared.weight" in checkpoint:
        return True

    return False


def convert_sd3_t5_checkpoint_to_diffusers(checkpoint):
    keys = list(checkpoint.keys())
    text_model_dict = {}

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    remove_prefixes = ["text_encoders.t5xxl.transformer."]
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    for key in keys:
        for prefix in remove_prefixes:
            if key.startswith(prefix):
                diffusers_key = key.replace(prefix, "")
                text_model_dict[diffusers_key] = checkpoint.get(key)

    return text_model_dict


def create_diffusers_t5_model_from_checkpoint(
    cls,
    checkpoint,
    subfolder="",
    config=None,
    torch_dtype=None,
    local_files_only=None,
):
    if config:
        config = {"pretrained_model_name_or_path": config}
    else:
        config = fetch_diffusers_config(checkpoint)

    model_config = cls.config_class.from_pretrained(**config, subfolder=subfolder, local_files_only=local_files_only)
    ctx = init_empty_weights if is_accelerate_available() else nullcontext
    with ctx():
        model = cls(model_config)

    diffusers_format_checkpoint = convert_sd3_t5_checkpoint_to_diffusers(checkpoint)

    if is_accelerate_available():
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        load_model_dict_into_meta(model, diffusers_format_checkpoint, dtype=torch_dtype)
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    else:
        model.load_state_dict(diffusers_format_checkpoint)
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    use_keep_in_fp32_modules = (cls._keep_in_fp32_modules is not None) and (torch_dtype == torch.float16)
    if use_keep_in_fp32_modules:
        keep_in_fp32_modules = model._keep_in_fp32_modules
    else:
        keep_in_fp32_modules = []

    if keep_in_fp32_modules is not None:
        for name, param in model.named_parameters():
            if any(module_to_keep_in_fp32 in name.split(".") for module_to_keep_in_fp32 in keep_in_fp32_modules):
                # param = param.to(torch.float32) does not work here as only in the local scope.
                param.data = param.data.to(torch.float32)

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    return model
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def convert_animatediff_checkpoint_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}
    for k, v in checkpoint.items():
        if "pos_encoder" in k:
            continue

        else:
            converted_state_dict[
                k.replace(".norms.0", ".norm1")
                .replace(".norms.1", ".norm2")
                .replace(".ff_norm", ".norm3")
                .replace(".attention_blocks.0", ".attn1")
                .replace(".attention_blocks.1", ".attn2")
                .replace(".temporal_transformer", "")
            ] = v

    return converted_state_dict
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def convert_flux_transformer_checkpoint_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}
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    keys = list(checkpoint.keys())
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    for k in keys:
        if "model.diffusion_model." in k:
            checkpoint[k.replace("model.diffusion_model.", "")] = checkpoint.pop(k)
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    num_layers = list(set(int(k.split(".", 2)[1]) for k in checkpoint if "double_blocks." in k))[-1] + 1  # noqa: C401
    num_single_layers = list(set(int(k.split(".", 2)[1]) for k in checkpoint if "single_blocks." in k))[-1] + 1  # noqa: C401
    mlp_ratio = 4.0
    inner_dim = 3072

    # in SD3 original implementation of AdaLayerNormContinuous, it split linear projection output into shift, scale;
    # while in diffusers it split into scale, shift. Here we swap the linear projection weights in order to be able to use diffusers implementation
    def swap_scale_shift(weight):
        shift, scale = weight.chunk(2, dim=0)
        new_weight = torch.cat([scale, shift], dim=0)
        return new_weight

    ## time_text_embed.timestep_embedder <-  time_in
    converted_state_dict["time_text_embed.timestep_embedder.linear_1.weight"] = checkpoint.pop(
        "time_in.in_layer.weight"
    )
    converted_state_dict["time_text_embed.timestep_embedder.linear_1.bias"] = checkpoint.pop("time_in.in_layer.bias")
    converted_state_dict["time_text_embed.timestep_embedder.linear_2.weight"] = checkpoint.pop(
        "time_in.out_layer.weight"
    )
    converted_state_dict["time_text_embed.timestep_embedder.linear_2.bias"] = checkpoint.pop("time_in.out_layer.bias")

    ## time_text_embed.text_embedder <- vector_in
    converted_state_dict["time_text_embed.text_embedder.linear_1.weight"] = checkpoint.pop("vector_in.in_layer.weight")
    converted_state_dict["time_text_embed.text_embedder.linear_1.bias"] = checkpoint.pop("vector_in.in_layer.bias")
    converted_state_dict["time_text_embed.text_embedder.linear_2.weight"] = checkpoint.pop(
        "vector_in.out_layer.weight"
    )
    converted_state_dict["time_text_embed.text_embedder.linear_2.bias"] = checkpoint.pop("vector_in.out_layer.bias")

    # guidance
    has_guidance = any("guidance" in k for k in checkpoint)
    if has_guidance:
        converted_state_dict["time_text_embed.guidance_embedder.linear_1.weight"] = checkpoint.pop(
            "guidance_in.in_layer.weight"
        )
        converted_state_dict["time_text_embed.guidance_embedder.linear_1.bias"] = checkpoint.pop(
            "guidance_in.in_layer.bias"
        )
        converted_state_dict["time_text_embed.guidance_embedder.linear_2.weight"] = checkpoint.pop(
            "guidance_in.out_layer.weight"
        )
        converted_state_dict["time_text_embed.guidance_embedder.linear_2.bias"] = checkpoint.pop(
            "guidance_in.out_layer.bias"
        )

    # context_embedder
    converted_state_dict["context_embedder.weight"] = checkpoint.pop("txt_in.weight")
    converted_state_dict["context_embedder.bias"] = checkpoint.pop("txt_in.bias")

    # x_embedder
    converted_state_dict["x_embedder.weight"] = checkpoint.pop("img_in.weight")
    converted_state_dict["x_embedder.bias"] = checkpoint.pop("img_in.bias")

    # double transformer blocks
    for i in range(num_layers):
        block_prefix = f"transformer_blocks.{i}."
        # norms.
        ## norm1
        converted_state_dict[f"{block_prefix}norm1.linear.weight"] = checkpoint.pop(
            f"double_blocks.{i}.img_mod.lin.weight"
        )
        converted_state_dict[f"{block_prefix}norm1.linear.bias"] = checkpoint.pop(
            f"double_blocks.{i}.img_mod.lin.bias"
        )
        ## norm1_context
        converted_state_dict[f"{block_prefix}norm1_context.linear.weight"] = checkpoint.pop(
            f"double_blocks.{i}.txt_mod.lin.weight"
        )
        converted_state_dict[f"{block_prefix}norm1_context.linear.bias"] = checkpoint.pop(
            f"double_blocks.{i}.txt_mod.lin.bias"
        )
        # Q, K, V
        sample_q, sample_k, sample_v = torch.chunk(checkpoint.pop(f"double_blocks.{i}.img_attn.qkv.weight"), 3, dim=0)
        context_q, context_k, context_v = torch.chunk(
            checkpoint.pop(f"double_blocks.{i}.txt_attn.qkv.weight"), 3, dim=0
        )
        sample_q_bias, sample_k_bias, sample_v_bias = torch.chunk(
            checkpoint.pop(f"double_blocks.{i}.img_attn.qkv.bias"), 3, dim=0
        )
        context_q_bias, context_k_bias, context_v_bias = torch.chunk(
            checkpoint.pop(f"double_blocks.{i}.txt_attn.qkv.bias"), 3, dim=0
        )
        converted_state_dict[f"{block_prefix}attn.to_q.weight"] = torch.cat([sample_q])
        converted_state_dict[f"{block_prefix}attn.to_q.bias"] = torch.cat([sample_q_bias])
        converted_state_dict[f"{block_prefix}attn.to_k.weight"] = torch.cat([sample_k])
        converted_state_dict[f"{block_prefix}attn.to_k.bias"] = torch.cat([sample_k_bias])
        converted_state_dict[f"{block_prefix}attn.to_v.weight"] = torch.cat([sample_v])
        converted_state_dict[f"{block_prefix}attn.to_v.bias"] = torch.cat([sample_v_bias])
        converted_state_dict[f"{block_prefix}attn.add_q_proj.weight"] = torch.cat([context_q])
        converted_state_dict[f"{block_prefix}attn.add_q_proj.bias"] = torch.cat([context_q_bias])
        converted_state_dict[f"{block_prefix}attn.add_k_proj.weight"] = torch.cat([context_k])
        converted_state_dict[f"{block_prefix}attn.add_k_proj.bias"] = torch.cat([context_k_bias])
        converted_state_dict[f"{block_prefix}attn.add_v_proj.weight"] = torch.cat([context_v])
        converted_state_dict[f"{block_prefix}attn.add_v_proj.bias"] = torch.cat([context_v_bias])
        # qk_norm
        converted_state_dict[f"{block_prefix}attn.norm_q.weight"] = checkpoint.pop(
            f"double_blocks.{i}.img_attn.norm.query_norm.scale"
        )
        converted_state_dict[f"{block_prefix}attn.norm_k.weight"] = checkpoint.pop(
            f"double_blocks.{i}.img_attn.norm.key_norm.scale"
        )
        converted_state_dict[f"{block_prefix}attn.norm_added_q.weight"] = checkpoint.pop(
            f"double_blocks.{i}.txt_attn.norm.query_norm.scale"
        )
        converted_state_dict[f"{block_prefix}attn.norm_added_k.weight"] = checkpoint.pop(
            f"double_blocks.{i}.txt_attn.norm.key_norm.scale"
        )
        # ff img_mlp
        converted_state_dict[f"{block_prefix}ff.net.0.proj.weight"] = checkpoint.pop(
            f"double_blocks.{i}.img_mlp.0.weight"
        )
        converted_state_dict[f"{block_prefix}ff.net.0.proj.bias"] = checkpoint.pop(f"double_blocks.{i}.img_mlp.0.bias")
        converted_state_dict[f"{block_prefix}ff.net.2.weight"] = checkpoint.pop(f"double_blocks.{i}.img_mlp.2.weight")
        converted_state_dict[f"{block_prefix}ff.net.2.bias"] = checkpoint.pop(f"double_blocks.{i}.img_mlp.2.bias")
        converted_state_dict[f"{block_prefix}ff_context.net.0.proj.weight"] = checkpoint.pop(
            f"double_blocks.{i}.txt_mlp.0.weight"
        )
        converted_state_dict[f"{block_prefix}ff_context.net.0.proj.bias"] = checkpoint.pop(
            f"double_blocks.{i}.txt_mlp.0.bias"
        )
        converted_state_dict[f"{block_prefix}ff_context.net.2.weight"] = checkpoint.pop(
            f"double_blocks.{i}.txt_mlp.2.weight"
        )
        converted_state_dict[f"{block_prefix}ff_context.net.2.bias"] = checkpoint.pop(
            f"double_blocks.{i}.txt_mlp.2.bias"
        )
        # output projections.
        converted_state_dict[f"{block_prefix}attn.to_out.0.weight"] = checkpoint.pop(
            f"double_blocks.{i}.img_attn.proj.weight"
        )
        converted_state_dict[f"{block_prefix}attn.to_out.0.bias"] = checkpoint.pop(
            f"double_blocks.{i}.img_attn.proj.bias"
        )
        converted_state_dict[f"{block_prefix}attn.to_add_out.weight"] = checkpoint.pop(
            f"double_blocks.{i}.txt_attn.proj.weight"
        )
        converted_state_dict[f"{block_prefix}attn.to_add_out.bias"] = checkpoint.pop(
            f"double_blocks.{i}.txt_attn.proj.bias"
        )

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    # single transformer blocks
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    for i in range(num_single_layers):
        block_prefix = f"single_transformer_blocks.{i}."
        # norm.linear  <- single_blocks.0.modulation.lin
        converted_state_dict[f"{block_prefix}norm.linear.weight"] = checkpoint.pop(
            f"single_blocks.{i}.modulation.lin.weight"
        )
        converted_state_dict[f"{block_prefix}norm.linear.bias"] = checkpoint.pop(
            f"single_blocks.{i}.modulation.lin.bias"
        )
        # Q, K, V, mlp
        mlp_hidden_dim = int(inner_dim * mlp_ratio)
        split_size = (inner_dim, inner_dim, inner_dim, mlp_hidden_dim)
        q, k, v, mlp = torch.split(checkpoint.pop(f"single_blocks.{i}.linear1.weight"), split_size, dim=0)
        q_bias, k_bias, v_bias, mlp_bias = torch.split(
            checkpoint.pop(f"single_blocks.{i}.linear1.bias"), split_size, dim=0
        )
        converted_state_dict[f"{block_prefix}attn.to_q.weight"] = torch.cat([q])
        converted_state_dict[f"{block_prefix}attn.to_q.bias"] = torch.cat([q_bias])
        converted_state_dict[f"{block_prefix}attn.to_k.weight"] = torch.cat([k])
        converted_state_dict[f"{block_prefix}attn.to_k.bias"] = torch.cat([k_bias])
        converted_state_dict[f"{block_prefix}attn.to_v.weight"] = torch.cat([v])
        converted_state_dict[f"{block_prefix}attn.to_v.bias"] = torch.cat([v_bias])
        converted_state_dict[f"{block_prefix}proj_mlp.weight"] = torch.cat([mlp])
        converted_state_dict[f"{block_prefix}proj_mlp.bias"] = torch.cat([mlp_bias])
        # qk norm
        converted_state_dict[f"{block_prefix}attn.norm_q.weight"] = checkpoint.pop(
            f"single_blocks.{i}.norm.query_norm.scale"
        )
        converted_state_dict[f"{block_prefix}attn.norm_k.weight"] = checkpoint.pop(
            f"single_blocks.{i}.norm.key_norm.scale"
        )
        # output projections.
        converted_state_dict[f"{block_prefix}proj_out.weight"] = checkpoint.pop(f"single_blocks.{i}.linear2.weight")
        converted_state_dict[f"{block_prefix}proj_out.bias"] = checkpoint.pop(f"single_blocks.{i}.linear2.bias")

    converted_state_dict["proj_out.weight"] = checkpoint.pop("final_layer.linear.weight")
    converted_state_dict["proj_out.bias"] = checkpoint.pop("final_layer.linear.bias")
    converted_state_dict["norm_out.linear.weight"] = swap_scale_shift(
        checkpoint.pop("final_layer.adaLN_modulation.1.weight")
    )
    converted_state_dict["norm_out.linear.bias"] = swap_scale_shift(
        checkpoint.pop("final_layer.adaLN_modulation.1.bias")
    )

    return converted_state_dict
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def convert_ltx_transformer_checkpoint_to_diffusers(checkpoint, **kwargs):
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    converted_state_dict = {key: checkpoint.pop(key) for key in list(checkpoint.keys()) if "vae" not in key}
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    TRANSFORMER_KEYS_RENAME_DICT = {
        "model.diffusion_model.": "",
        "patchify_proj": "proj_in",
        "adaln_single": "time_embed",
        "q_norm": "norm_q",
        "k_norm": "norm_k",
    }

    TRANSFORMER_SPECIAL_KEYS_REMAP = {}

    for key in list(converted_state_dict.keys()):
        new_key = key
        for replace_key, rename_key in TRANSFORMER_KEYS_RENAME_DICT.items():
            new_key = new_key.replace(replace_key, rename_key)
        converted_state_dict[new_key] = converted_state_dict.pop(key)

    for key in list(converted_state_dict.keys()):
        for special_key, handler_fn_inplace in TRANSFORMER_SPECIAL_KEYS_REMAP.items():
            if special_key not in key:
                continue
            handler_fn_inplace(key, converted_state_dict)

    return converted_state_dict


def convert_ltx_vae_checkpoint_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {key: checkpoint.pop(key) for key in list(checkpoint.keys()) if "vae." in key}

    def remove_keys_(key: str, state_dict):
        state_dict.pop(key)

    VAE_KEYS_RENAME_DICT = {
        # common
        "vae.": "",
        # decoder
        "up_blocks.0": "mid_block",
        "up_blocks.1": "up_blocks.0",
        "up_blocks.2": "up_blocks.1.upsamplers.0",
        "up_blocks.3": "up_blocks.1",
        "up_blocks.4": "up_blocks.2.conv_in",
        "up_blocks.5": "up_blocks.2.upsamplers.0",
        "up_blocks.6": "up_blocks.2",
        "up_blocks.7": "up_blocks.3.conv_in",
        "up_blocks.8": "up_blocks.3.upsamplers.0",
        "up_blocks.9": "up_blocks.3",
        # encoder
        "down_blocks.0": "down_blocks.0",
        "down_blocks.1": "down_blocks.0.downsamplers.0",
        "down_blocks.2": "down_blocks.0.conv_out",
        "down_blocks.3": "down_blocks.1",
        "down_blocks.4": "down_blocks.1.downsamplers.0",
        "down_blocks.5": "down_blocks.1.conv_out",
        "down_blocks.6": "down_blocks.2",
        "down_blocks.7": "down_blocks.2.downsamplers.0",
        "down_blocks.8": "down_blocks.3",
        "down_blocks.9": "mid_block",
        # common
        "conv_shortcut": "conv_shortcut.conv",
        "res_blocks": "resnets",
        "norm3.norm": "norm3",
        "per_channel_statistics.mean-of-means": "latents_mean",
        "per_channel_statistics.std-of-means": "latents_std",
    }

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    VAE_091_RENAME_DICT = {
        # decoder
        "up_blocks.0": "mid_block",
        "up_blocks.1": "up_blocks.0.upsamplers.0",
        "up_blocks.2": "up_blocks.0",
        "up_blocks.3": "up_blocks.1.upsamplers.0",
        "up_blocks.4": "up_blocks.1",
        "up_blocks.5": "up_blocks.2.upsamplers.0",
        "up_blocks.6": "up_blocks.2",
        "up_blocks.7": "up_blocks.3.upsamplers.0",
        "up_blocks.8": "up_blocks.3",
        # common
        "last_time_embedder": "time_embedder",
        "last_scale_shift_table": "scale_shift_table",
    }

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    VAE_095_RENAME_DICT = {
        # decoder
        "up_blocks.0": "mid_block",
        "up_blocks.1": "up_blocks.0.upsamplers.0",
        "up_blocks.2": "up_blocks.0",
        "up_blocks.3": "up_blocks.1.upsamplers.0",
        "up_blocks.4": "up_blocks.1",
        "up_blocks.5": "up_blocks.2.upsamplers.0",
        "up_blocks.6": "up_blocks.2",
        "up_blocks.7": "up_blocks.3.upsamplers.0",
        "up_blocks.8": "up_blocks.3",
        # encoder
        "down_blocks.0": "down_blocks.0",
        "down_blocks.1": "down_blocks.0.downsamplers.0",
        "down_blocks.2": "down_blocks.1",
        "down_blocks.3": "down_blocks.1.downsamplers.0",
        "down_blocks.4": "down_blocks.2",
        "down_blocks.5": "down_blocks.2.downsamplers.0",
        "down_blocks.6": "down_blocks.3",
        "down_blocks.7": "down_blocks.3.downsamplers.0",
        "down_blocks.8": "mid_block",
        # common
        "last_time_embedder": "time_embedder",
        "last_scale_shift_table": "scale_shift_table",
    }

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    VAE_SPECIAL_KEYS_REMAP = {
        "per_channel_statistics.channel": remove_keys_,
        "per_channel_statistics.mean-of-means": remove_keys_,
        "per_channel_statistics.mean-of-stds": remove_keys_,
    }

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    if converted_state_dict["vae.encoder.conv_out.conv.weight"].shape[1] == 2048:
        VAE_KEYS_RENAME_DICT.update(VAE_095_RENAME_DICT)
    elif "vae.decoder.last_time_embedder.timestep_embedder.linear_1.weight" in converted_state_dict:
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        VAE_KEYS_RENAME_DICT.update(VAE_091_RENAME_DICT)

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    for key in list(converted_state_dict.keys()):
        new_key = key
        for replace_key, rename_key in VAE_KEYS_RENAME_DICT.items():
            new_key = new_key.replace(replace_key, rename_key)
        converted_state_dict[new_key] = converted_state_dict.pop(key)

    for key in list(converted_state_dict.keys()):
        for special_key, handler_fn_inplace in VAE_SPECIAL_KEYS_REMAP.items():
            if special_key not in key:
                continue
            handler_fn_inplace(key, converted_state_dict)

    return converted_state_dict


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def convert_autoencoder_dc_checkpoint_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {key: checkpoint.pop(key) for key in list(checkpoint.keys())}

    def remap_qkv_(key: str, state_dict):
        qkv = state_dict.pop(key)
        q, k, v = torch.chunk(qkv, 3, dim=0)
        parent_module, _, _ = key.rpartition(".qkv.conv.weight")
        state_dict[f"{parent_module}.to_q.weight"] = q.squeeze()
        state_dict[f"{parent_module}.to_k.weight"] = k.squeeze()
        state_dict[f"{parent_module}.to_v.weight"] = v.squeeze()

    def remap_proj_conv_(key: str, state_dict):
        parent_module, _, _ = key.rpartition(".proj.conv.weight")
        state_dict[f"{parent_module}.to_out.weight"] = state_dict.pop(key).squeeze()

    AE_KEYS_RENAME_DICT = {
        # common
        "main.": "",
        "op_list.": "",
        "context_module": "attn",
        "local_module": "conv_out",
        # NOTE: The below two lines work because scales in the available configs only have a tuple length of 1
        # If there were more scales, there would be more layers, so a loop would be better to handle this
        "aggreg.0.0": "to_qkv_multiscale.0.proj_in",
        "aggreg.0.1": "to_qkv_multiscale.0.proj_out",
        "depth_conv.conv": "conv_depth",
        "inverted_conv.conv": "conv_inverted",
        "point_conv.conv": "conv_point",
        "point_conv.norm": "norm",
        "conv.conv.": "conv.",
        "conv1.conv": "conv1",
        "conv2.conv": "conv2",
        "conv2.norm": "norm",
        "proj.norm": "norm_out",
        # encoder
        "encoder.project_in.conv": "encoder.conv_in",
        "encoder.project_out.0.conv": "encoder.conv_out",
        "encoder.stages": "encoder.down_blocks",
        # decoder
        "decoder.project_in.conv": "decoder.conv_in",
        "decoder.project_out.0": "decoder.norm_out",
        "decoder.project_out.2.conv": "decoder.conv_out",
        "decoder.stages": "decoder.up_blocks",
    }

    AE_F32C32_F64C128_F128C512_KEYS = {
        "encoder.project_in.conv": "encoder.conv_in.conv",
        "decoder.project_out.2.conv": "decoder.conv_out.conv",
    }

    AE_SPECIAL_KEYS_REMAP = {
        "qkv.conv.weight": remap_qkv_,
        "proj.conv.weight": remap_proj_conv_,
    }
    if "encoder.project_in.conv.bias" not in converted_state_dict:
        AE_KEYS_RENAME_DICT.update(AE_F32C32_F64C128_F128C512_KEYS)

    for key in list(converted_state_dict.keys()):
        new_key = key[:]
        for replace_key, rename_key in AE_KEYS_RENAME_DICT.items():
            new_key = new_key.replace(replace_key, rename_key)
        converted_state_dict[new_key] = converted_state_dict.pop(key)

    for key in list(converted_state_dict.keys()):
        for special_key, handler_fn_inplace in AE_SPECIAL_KEYS_REMAP.items():
            if special_key not in key:
                continue
            handler_fn_inplace(key, converted_state_dict)

    return converted_state_dict
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def convert_mochi_transformer_checkpoint_to_diffusers(checkpoint, **kwargs):
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    converted_state_dict = {}
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    # Comfy checkpoints add this prefix
    keys = list(checkpoint.keys())
    for k in keys:
        if "model.diffusion_model." in k:
            checkpoint[k.replace("model.diffusion_model.", "")] = checkpoint.pop(k)

    # Convert patch_embed
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    converted_state_dict["patch_embed.proj.weight"] = checkpoint.pop("x_embedder.proj.weight")
    converted_state_dict["patch_embed.proj.bias"] = checkpoint.pop("x_embedder.proj.bias")
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    # Convert time_embed
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    converted_state_dict["time_embed.timestep_embedder.linear_1.weight"] = checkpoint.pop("t_embedder.mlp.0.weight")
    converted_state_dict["time_embed.timestep_embedder.linear_1.bias"] = checkpoint.pop("t_embedder.mlp.0.bias")
    converted_state_dict["time_embed.timestep_embedder.linear_2.weight"] = checkpoint.pop("t_embedder.mlp.2.weight")
    converted_state_dict["time_embed.timestep_embedder.linear_2.bias"] = checkpoint.pop("t_embedder.mlp.2.bias")
    converted_state_dict["time_embed.pooler.to_kv.weight"] = checkpoint.pop("t5_y_embedder.to_kv.weight")
    converted_state_dict["time_embed.pooler.to_kv.bias"] = checkpoint.pop("t5_y_embedder.to_kv.bias")
    converted_state_dict["time_embed.pooler.to_q.weight"] = checkpoint.pop("t5_y_embedder.to_q.weight")
    converted_state_dict["time_embed.pooler.to_q.bias"] = checkpoint.pop("t5_y_embedder.to_q.bias")
    converted_state_dict["time_embed.pooler.to_out.weight"] = checkpoint.pop("t5_y_embedder.to_out.weight")
    converted_state_dict["time_embed.pooler.to_out.bias"] = checkpoint.pop("t5_y_embedder.to_out.bias")
    converted_state_dict["time_embed.caption_proj.weight"] = checkpoint.pop("t5_yproj.weight")
    converted_state_dict["time_embed.caption_proj.bias"] = checkpoint.pop("t5_yproj.bias")
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    # Convert transformer blocks
    num_layers = 48
    for i in range(num_layers):
        block_prefix = f"transformer_blocks.{i}."
        old_prefix = f"blocks.{i}."

        # norm1
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        converted_state_dict[block_prefix + "norm1.linear.weight"] = checkpoint.pop(old_prefix + "mod_x.weight")
        converted_state_dict[block_prefix + "norm1.linear.bias"] = checkpoint.pop(old_prefix + "mod_x.bias")
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        if i < num_layers - 1:
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            converted_state_dict[block_prefix + "norm1_context.linear.weight"] = checkpoint.pop(
                old_prefix + "mod_y.weight"
            )
            converted_state_dict[block_prefix + "norm1_context.linear.bias"] = checkpoint.pop(
                old_prefix + "mod_y.bias"
            )
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        else:
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            converted_state_dict[block_prefix + "norm1_context.linear_1.weight"] = checkpoint.pop(
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                old_prefix + "mod_y.weight"
            )
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            converted_state_dict[block_prefix + "norm1_context.linear_1.bias"] = checkpoint.pop(
                old_prefix + "mod_y.bias"
            )
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        # Visual attention
        qkv_weight = checkpoint.pop(old_prefix + "attn.qkv_x.weight")
        q, k, v = qkv_weight.chunk(3, dim=0)

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        converted_state_dict[block_prefix + "attn1.to_q.weight"] = q
        converted_state_dict[block_prefix + "attn1.to_k.weight"] = k
        converted_state_dict[block_prefix + "attn1.to_v.weight"] = v
        converted_state_dict[block_prefix + "attn1.norm_q.weight"] = checkpoint.pop(
            old_prefix + "attn.q_norm_x.weight"
        )
        converted_state_dict[block_prefix + "attn1.norm_k.weight"] = checkpoint.pop(
            old_prefix + "attn.k_norm_x.weight"
        )
        converted_state_dict[block_prefix + "attn1.to_out.0.weight"] = checkpoint.pop(
            old_prefix + "attn.proj_x.weight"
        )
        converted_state_dict[block_prefix + "attn1.to_out.0.bias"] = checkpoint.pop(old_prefix + "attn.proj_x.bias")
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        # Context attention
        qkv_weight = checkpoint.pop(old_prefix + "attn.qkv_y.weight")
        q, k, v = qkv_weight.chunk(3, dim=0)

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        converted_state_dict[block_prefix + "attn1.add_q_proj.weight"] = q
        converted_state_dict[block_prefix + "attn1.add_k_proj.weight"] = k
        converted_state_dict[block_prefix + "attn1.add_v_proj.weight"] = v
        converted_state_dict[block_prefix + "attn1.norm_added_q.weight"] = checkpoint.pop(
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            old_prefix + "attn.q_norm_y.weight"
        )
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        converted_state_dict[block_prefix + "attn1.norm_added_k.weight"] = checkpoint.pop(
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            old_prefix + "attn.k_norm_y.weight"
        )
        if i < num_layers - 1:
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            converted_state_dict[block_prefix + "attn1.to_add_out.weight"] = checkpoint.pop(
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                old_prefix + "attn.proj_y.weight"
            )
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            converted_state_dict[block_prefix + "attn1.to_add_out.bias"] = checkpoint.pop(
                old_prefix + "attn.proj_y.bias"
            )
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        # MLP
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        converted_state_dict[block_prefix + "ff.net.0.proj.weight"] = swap_proj_gate(
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            checkpoint.pop(old_prefix + "mlp_x.w1.weight")
        )
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        converted_state_dict[block_prefix + "ff.net.2.weight"] = checkpoint.pop(old_prefix + "mlp_x.w2.weight")
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        if i < num_layers - 1:
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            converted_state_dict[block_prefix + "ff_context.net.0.proj.weight"] = swap_proj_gate(
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                checkpoint.pop(old_prefix + "mlp_y.w1.weight")
            )
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            converted_state_dict[block_prefix + "ff_context.net.2.weight"] = checkpoint.pop(
                old_prefix + "mlp_y.w2.weight"
            )
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    # Output layers
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    converted_state_dict["norm_out.linear.weight"] = swap_scale_shift(checkpoint.pop("final_layer.mod.weight"), dim=0)
    converted_state_dict["norm_out.linear.bias"] = swap_scale_shift(checkpoint.pop("final_layer.mod.bias"), dim=0)
    converted_state_dict["proj_out.weight"] = checkpoint.pop("final_layer.linear.weight")
    converted_state_dict["proj_out.bias"] = checkpoint.pop("final_layer.linear.bias")
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    converted_state_dict["pos_frequencies"] = checkpoint.pop("pos_frequencies")
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    return converted_state_dict
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def convert_hunyuan_video_transformer_to_diffusers(checkpoint, **kwargs):
    def remap_norm_scale_shift_(key, state_dict):
        weight = state_dict.pop(key)
        shift, scale = weight.chunk(2, dim=0)
        new_weight = torch.cat([scale, shift], dim=0)
        state_dict[key.replace("final_layer.adaLN_modulation.1", "norm_out.linear")] = new_weight

    def remap_txt_in_(key, state_dict):
        def rename_key(key):
            new_key = key.replace("individual_token_refiner.blocks", "token_refiner.refiner_blocks")
            new_key = new_key.replace("adaLN_modulation.1", "norm_out.linear")
            new_key = new_key.replace("txt_in", "context_embedder")
            new_key = new_key.replace("t_embedder.mlp.0", "time_text_embed.timestep_embedder.linear_1")
            new_key = new_key.replace("t_embedder.mlp.2", "time_text_embed.timestep_embedder.linear_2")
            new_key = new_key.replace("c_embedder", "time_text_embed.text_embedder")
            new_key = new_key.replace("mlp", "ff")
            return new_key

        if "self_attn_qkv" in key:
            weight = state_dict.pop(key)
            to_q, to_k, to_v = weight.chunk(3, dim=0)
            state_dict[rename_key(key.replace("self_attn_qkv", "attn.to_q"))] = to_q
            state_dict[rename_key(key.replace("self_attn_qkv", "attn.to_k"))] = to_k
            state_dict[rename_key(key.replace("self_attn_qkv", "attn.to_v"))] = to_v
        else:
            state_dict[rename_key(key)] = state_dict.pop(key)

    def remap_img_attn_qkv_(key, state_dict):
        weight = state_dict.pop(key)
        to_q, to_k, to_v = weight.chunk(3, dim=0)
        state_dict[key.replace("img_attn_qkv", "attn.to_q")] = to_q
        state_dict[key.replace("img_attn_qkv", "attn.to_k")] = to_k
        state_dict[key.replace("img_attn_qkv", "attn.to_v")] = to_v

    def remap_txt_attn_qkv_(key, state_dict):
        weight = state_dict.pop(key)
        to_q, to_k, to_v = weight.chunk(3, dim=0)
        state_dict[key.replace("txt_attn_qkv", "attn.add_q_proj")] = to_q
        state_dict[key.replace("txt_attn_qkv", "attn.add_k_proj")] = to_k
        state_dict[key.replace("txt_attn_qkv", "attn.add_v_proj")] = to_v

    def remap_single_transformer_blocks_(key, state_dict):
        hidden_size = 3072

        if "linear1.weight" in key:
            linear1_weight = state_dict.pop(key)
            split_size = (hidden_size, hidden_size, hidden_size, linear1_weight.size(0) - 3 * hidden_size)
            q, k, v, mlp = torch.split(linear1_weight, split_size, dim=0)
            new_key = key.replace("single_blocks", "single_transformer_blocks").removesuffix(".linear1.weight")
            state_dict[f"{new_key}.attn.to_q.weight"] = q
            state_dict[f"{new_key}.attn.to_k.weight"] = k
            state_dict[f"{new_key}.attn.to_v.weight"] = v
            state_dict[f"{new_key}.proj_mlp.weight"] = mlp

        elif "linear1.bias" in key:
            linear1_bias = state_dict.pop(key)
            split_size = (hidden_size, hidden_size, hidden_size, linear1_bias.size(0) - 3 * hidden_size)
            q_bias, k_bias, v_bias, mlp_bias = torch.split(linear1_bias, split_size, dim=0)
            new_key = key.replace("single_blocks", "single_transformer_blocks").removesuffix(".linear1.bias")
            state_dict[f"{new_key}.attn.to_q.bias"] = q_bias
            state_dict[f"{new_key}.attn.to_k.bias"] = k_bias
            state_dict[f"{new_key}.attn.to_v.bias"] = v_bias
            state_dict[f"{new_key}.proj_mlp.bias"] = mlp_bias

        else:
            new_key = key.replace("single_blocks", "single_transformer_blocks")
            new_key = new_key.replace("linear2", "proj_out")
            new_key = new_key.replace("q_norm", "attn.norm_q")
            new_key = new_key.replace("k_norm", "attn.norm_k")
            state_dict[new_key] = state_dict.pop(key)

    TRANSFORMER_KEYS_RENAME_DICT = {
        "img_in": "x_embedder",
        "time_in.mlp.0": "time_text_embed.timestep_embedder.linear_1",
        "time_in.mlp.2": "time_text_embed.timestep_embedder.linear_2",
        "guidance_in.mlp.0": "time_text_embed.guidance_embedder.linear_1",
        "guidance_in.mlp.2": "time_text_embed.guidance_embedder.linear_2",
        "vector_in.in_layer": "time_text_embed.text_embedder.linear_1",
        "vector_in.out_layer": "time_text_embed.text_embedder.linear_2",
        "double_blocks": "transformer_blocks",
        "img_attn_q_norm": "attn.norm_q",
        "img_attn_k_norm": "attn.norm_k",
        "img_attn_proj": "attn.to_out.0",
        "txt_attn_q_norm": "attn.norm_added_q",
        "txt_attn_k_norm": "attn.norm_added_k",
        "txt_attn_proj": "attn.to_add_out",
        "img_mod.linear": "norm1.linear",
        "img_norm1": "norm1.norm",
        "img_norm2": "norm2",
        "img_mlp": "ff",
        "txt_mod.linear": "norm1_context.linear",
        "txt_norm1": "norm1.norm",
        "txt_norm2": "norm2_context",
        "txt_mlp": "ff_context",
        "self_attn_proj": "attn.to_out.0",
        "modulation.linear": "norm.linear",
        "pre_norm": "norm.norm",
        "final_layer.norm_final": "norm_out.norm",
        "final_layer.linear": "proj_out",
        "fc1": "net.0.proj",
        "fc2": "net.2",
        "input_embedder": "proj_in",
    }

    TRANSFORMER_SPECIAL_KEYS_REMAP = {
        "txt_in": remap_txt_in_,
        "img_attn_qkv": remap_img_attn_qkv_,
        "txt_attn_qkv": remap_txt_attn_qkv_,
        "single_blocks": remap_single_transformer_blocks_,
        "final_layer.adaLN_modulation.1": remap_norm_scale_shift_,
    }

    def update_state_dict_(state_dict, old_key, new_key):
        state_dict[new_key] = state_dict.pop(old_key)

    for key in list(checkpoint.keys()):
        new_key = key[:]
        for replace_key, rename_key in TRANSFORMER_KEYS_RENAME_DICT.items():
            new_key = new_key.replace(replace_key, rename_key)
        update_state_dict_(checkpoint, key, new_key)

    for key in list(checkpoint.keys()):
        for special_key, handler_fn_inplace in TRANSFORMER_SPECIAL_KEYS_REMAP.items():
            if special_key not in key:
                continue
            handler_fn_inplace(key, checkpoint)

    return checkpoint
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def convert_auraflow_transformer_checkpoint_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}
    state_dict_keys = list(checkpoint.keys())

    # Handle register tokens and positional embeddings
    converted_state_dict["register_tokens"] = checkpoint.pop("register_tokens", None)

    # Handle time step projection
    converted_state_dict["time_step_proj.linear_1.weight"] = checkpoint.pop("t_embedder.mlp.0.weight", None)
    converted_state_dict["time_step_proj.linear_1.bias"] = checkpoint.pop("t_embedder.mlp.0.bias", None)
    converted_state_dict["time_step_proj.linear_2.weight"] = checkpoint.pop("t_embedder.mlp.2.weight", None)
    converted_state_dict["time_step_proj.linear_2.bias"] = checkpoint.pop("t_embedder.mlp.2.bias", None)

    # Handle context embedder
    converted_state_dict["context_embedder.weight"] = checkpoint.pop("cond_seq_linear.weight", None)

    # Calculate the number of layers
    def calculate_layers(keys, key_prefix):
        layers = set()
        for k in keys:
            if key_prefix in k:
                layer_num = int(k.split(".")[1])  # get the layer number
                layers.add(layer_num)
        return len(layers)

    mmdit_layers = calculate_layers(state_dict_keys, key_prefix="double_layers")
    single_dit_layers = calculate_layers(state_dict_keys, key_prefix="single_layers")

    # MMDiT blocks
    for i in range(mmdit_layers):
        # Feed-forward
        path_mapping = {"mlpX": "ff", "mlpC": "ff_context"}
        weight_mapping = {"c_fc1": "linear_1", "c_fc2": "linear_2", "c_proj": "out_projection"}
        for orig_k, diffuser_k in path_mapping.items():
            for k, v in weight_mapping.items():
                converted_state_dict[f"joint_transformer_blocks.{i}.{diffuser_k}.{v}.weight"] = checkpoint.pop(
                    f"double_layers.{i}.{orig_k}.{k}.weight", None
                )

        # Norms
        path_mapping = {"modX": "norm1", "modC": "norm1_context"}
        for orig_k, diffuser_k in path_mapping.items():
            converted_state_dict[f"joint_transformer_blocks.{i}.{diffuser_k}.linear.weight"] = checkpoint.pop(
                f"double_layers.{i}.{orig_k}.1.weight", None
            )

        # Attentions
        x_attn_mapping = {"w2q": "to_q", "w2k": "to_k", "w2v": "to_v", "w2o": "to_out.0"}
        context_attn_mapping = {"w1q": "add_q_proj", "w1k": "add_k_proj", "w1v": "add_v_proj", "w1o": "to_add_out"}
        for attn_mapping in [x_attn_mapping, context_attn_mapping]:
            for k, v in attn_mapping.items():
                converted_state_dict[f"joint_transformer_blocks.{i}.attn.{v}.weight"] = checkpoint.pop(
                    f"double_layers.{i}.attn.{k}.weight", None
                )

    # Single-DiT blocks
    for i in range(single_dit_layers):
        # Feed-forward
        mapping = {"c_fc1": "linear_1", "c_fc2": "linear_2", "c_proj": "out_projection"}
        for k, v in mapping.items():
            converted_state_dict[f"single_transformer_blocks.{i}.ff.{v}.weight"] = checkpoint.pop(
                f"single_layers.{i}.mlp.{k}.weight", None
            )

        # Norms
        converted_state_dict[f"single_transformer_blocks.{i}.norm1.linear.weight"] = checkpoint.pop(
            f"single_layers.{i}.modCX.1.weight", None
        )

        # Attentions
        x_attn_mapping = {"w1q": "to_q", "w1k": "to_k", "w1v": "to_v", "w1o": "to_out.0"}
        for k, v in x_attn_mapping.items():
            converted_state_dict[f"single_transformer_blocks.{i}.attn.{v}.weight"] = checkpoint.pop(
                f"single_layers.{i}.attn.{k}.weight", None
            )
    # Final blocks
    converted_state_dict["proj_out.weight"] = checkpoint.pop("final_linear.weight", None)

    # Handle the final norm layer
    norm_weight = checkpoint.pop("modF.1.weight", None)
    if norm_weight is not None:
        converted_state_dict["norm_out.linear.weight"] = swap_scale_shift(norm_weight, dim=None)
    else:
        converted_state_dict["norm_out.linear.weight"] = None

    converted_state_dict["pos_embed.pos_embed"] = checkpoint.pop("positional_encoding")
    converted_state_dict["pos_embed.proj.weight"] = checkpoint.pop("init_x_linear.weight")
    converted_state_dict["pos_embed.proj.bias"] = checkpoint.pop("init_x_linear.bias")

    return converted_state_dict
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def convert_lumina2_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}

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    # Original Lumina-Image-2 has an extra norm parameter that is unused
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    # We just remove it here
    checkpoint.pop("norm_final.weight", None)

    # Comfy checkpoints add this prefix
    keys = list(checkpoint.keys())
    for k in keys:
        if "model.diffusion_model." in k:
            checkpoint[k.replace("model.diffusion_model.", "")] = checkpoint.pop(k)

    LUMINA_KEY_MAP = {
        "cap_embedder": "time_caption_embed.caption_embedder",
        "t_embedder.mlp.0": "time_caption_embed.timestep_embedder.linear_1",
        "t_embedder.mlp.2": "time_caption_embed.timestep_embedder.linear_2",
        "attention": "attn",
        ".out.": ".to_out.0.",
        "k_norm": "norm_k",
        "q_norm": "norm_q",
        "w1": "linear_1",
        "w2": "linear_2",
        "w3": "linear_3",
        "adaLN_modulation.1": "norm1.linear",
    }
    ATTENTION_NORM_MAP = {
        "attention_norm1": "norm1.norm",
        "attention_norm2": "norm2",
    }
    CONTEXT_REFINER_MAP = {
        "context_refiner.0.attention_norm1": "context_refiner.0.norm1",
        "context_refiner.0.attention_norm2": "context_refiner.0.norm2",
        "context_refiner.1.attention_norm1": "context_refiner.1.norm1",
        "context_refiner.1.attention_norm2": "context_refiner.1.norm2",
    }
    FINAL_LAYER_MAP = {
        "final_layer.adaLN_modulation.1": "norm_out.linear_1",
        "final_layer.linear": "norm_out.linear_2",
    }

    def convert_lumina_attn_to_diffusers(tensor, diffusers_key):
        q_dim = 2304
        k_dim = v_dim = 768

        to_q, to_k, to_v = torch.split(tensor, [q_dim, k_dim, v_dim], dim=0)

        return {
            diffusers_key.replace("qkv", "to_q"): to_q,
            diffusers_key.replace("qkv", "to_k"): to_k,
            diffusers_key.replace("qkv", "to_v"): to_v,
        }

    for key in keys:
        diffusers_key = key
        for k, v in CONTEXT_REFINER_MAP.items():
            diffusers_key = diffusers_key.replace(k, v)
        for k, v in FINAL_LAYER_MAP.items():
            diffusers_key = diffusers_key.replace(k, v)
        for k, v in ATTENTION_NORM_MAP.items():
            diffusers_key = diffusers_key.replace(k, v)
        for k, v in LUMINA_KEY_MAP.items():
            diffusers_key = diffusers_key.replace(k, v)

        if "qkv" in diffusers_key:
            converted_state_dict.update(convert_lumina_attn_to_diffusers(checkpoint.pop(key), diffusers_key))
        else:
            converted_state_dict[diffusers_key] = checkpoint.pop(key)

    return converted_state_dict
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def convert_sana_transformer_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}
    keys = list(checkpoint.keys())
    for k in keys:
        if "model.diffusion_model." in k:
            checkpoint[k.replace("model.diffusion_model.", "")] = checkpoint.pop(k)

    num_layers = list(set(int(k.split(".", 2)[1]) for k in checkpoint if "blocks" in k))[-1] + 1  # noqa: C401

    # Positional and patch embeddings.
    checkpoint.pop("pos_embed")
    converted_state_dict["patch_embed.proj.weight"] = checkpoint.pop("x_embedder.proj.weight")
    converted_state_dict["patch_embed.proj.bias"] = checkpoint.pop("x_embedder.proj.bias")

    # Timestep embeddings.
    converted_state_dict["time_embed.emb.timestep_embedder.linear_1.weight"] = checkpoint.pop(
        "t_embedder.mlp.0.weight"
    )
    converted_state_dict["time_embed.emb.timestep_embedder.linear_1.bias"] = checkpoint.pop("t_embedder.mlp.0.bias")
    converted_state_dict["time_embed.emb.timestep_embedder.linear_2.weight"] = checkpoint.pop(
        "t_embedder.mlp.2.weight"
    )
    converted_state_dict["time_embed.emb.timestep_embedder.linear_2.bias"] = checkpoint.pop("t_embedder.mlp.2.bias")
    converted_state_dict["time_embed.linear.weight"] = checkpoint.pop("t_block.1.weight")
    converted_state_dict["time_embed.linear.bias"] = checkpoint.pop("t_block.1.bias")

    # Caption Projection.
    checkpoint.pop("y_embedder.y_embedding")
    converted_state_dict["caption_projection.linear_1.weight"] = checkpoint.pop("y_embedder.y_proj.fc1.weight")
    converted_state_dict["caption_projection.linear_1.bias"] = checkpoint.pop("y_embedder.y_proj.fc1.bias")
    converted_state_dict["caption_projection.linear_2.weight"] = checkpoint.pop("y_embedder.y_proj.fc2.weight")
    converted_state_dict["caption_projection.linear_2.bias"] = checkpoint.pop("y_embedder.y_proj.fc2.bias")
    converted_state_dict["caption_norm.weight"] = checkpoint.pop("attention_y_norm.weight")

    for i in range(num_layers):
        converted_state_dict[f"transformer_blocks.{i}.scale_shift_table"] = checkpoint.pop(
            f"blocks.{i}.scale_shift_table"
        )

        # Self-Attention
        sample_q, sample_k, sample_v = torch.chunk(checkpoint.pop(f"blocks.{i}.attn.qkv.weight"), 3, dim=0)
        converted_state_dict[f"transformer_blocks.{i}.attn1.to_q.weight"] = torch.cat([sample_q])
        converted_state_dict[f"transformer_blocks.{i}.attn1.to_k.weight"] = torch.cat([sample_k])
        converted_state_dict[f"transformer_blocks.{i}.attn1.to_v.weight"] = torch.cat([sample_v])

        # Output Projections
        converted_state_dict[f"transformer_blocks.{i}.attn1.to_out.0.weight"] = checkpoint.pop(
            f"blocks.{i}.attn.proj.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.attn1.to_out.0.bias"] = checkpoint.pop(
            f"blocks.{i}.attn.proj.bias"
        )

        # Cross-Attention
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_q.weight"] = checkpoint.pop(
            f"blocks.{i}.cross_attn.q_linear.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_q.bias"] = checkpoint.pop(
            f"blocks.{i}.cross_attn.q_linear.bias"
        )

        linear_sample_k, linear_sample_v = torch.chunk(
            checkpoint.pop(f"blocks.{i}.cross_attn.kv_linear.weight"), 2, dim=0
        )
        linear_sample_k_bias, linear_sample_v_bias = torch.chunk(
            checkpoint.pop(f"blocks.{i}.cross_attn.kv_linear.bias"), 2, dim=0
        )
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_k.weight"] = linear_sample_k
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_v.weight"] = linear_sample_v
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_k.bias"] = linear_sample_k_bias
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_v.bias"] = linear_sample_v_bias

        # Output Projections
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_out.0.weight"] = checkpoint.pop(
            f"blocks.{i}.cross_attn.proj.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.attn2.to_out.0.bias"] = checkpoint.pop(
            f"blocks.{i}.cross_attn.proj.bias"
        )

        # MLP
        converted_state_dict[f"transformer_blocks.{i}.ff.conv_inverted.weight"] = checkpoint.pop(
            f"blocks.{i}.mlp.inverted_conv.conv.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.ff.conv_inverted.bias"] = checkpoint.pop(
            f"blocks.{i}.mlp.inverted_conv.conv.bias"
        )
        converted_state_dict[f"transformer_blocks.{i}.ff.conv_depth.weight"] = checkpoint.pop(
            f"blocks.{i}.mlp.depth_conv.conv.weight"
        )
        converted_state_dict[f"transformer_blocks.{i}.ff.conv_depth.bias"] = checkpoint.pop(
            f"blocks.{i}.mlp.depth_conv.conv.bias"
        )
        converted_state_dict[f"transformer_blocks.{i}.ff.conv_point.weight"] = checkpoint.pop(
            f"blocks.{i}.mlp.point_conv.conv.weight"
        )

    # Final layer
    converted_state_dict["proj_out.weight"] = checkpoint.pop("final_layer.linear.weight")
    converted_state_dict["proj_out.bias"] = checkpoint.pop("final_layer.linear.bias")
    converted_state_dict["scale_shift_table"] = checkpoint.pop("final_layer.scale_shift_table")

    return converted_state_dict
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def convert_wan_transformer_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}

    keys = list(checkpoint.keys())
    for k in keys:
        if "model.diffusion_model." in k:
            checkpoint[k.replace("model.diffusion_model.", "")] = checkpoint.pop(k)

    TRANSFORMER_KEYS_RENAME_DICT = {
        "time_embedding.0": "condition_embedder.time_embedder.linear_1",
        "time_embedding.2": "condition_embedder.time_embedder.linear_2",
        "text_embedding.0": "condition_embedder.text_embedder.linear_1",
        "text_embedding.2": "condition_embedder.text_embedder.linear_2",
        "time_projection.1": "condition_embedder.time_proj",
        "cross_attn": "attn2",
        "self_attn": "attn1",
        ".o.": ".to_out.0.",
        ".q.": ".to_q.",
        ".k.": ".to_k.",
        ".v.": ".to_v.",
        ".k_img.": ".add_k_proj.",
        ".v_img.": ".add_v_proj.",
        ".norm_k_img.": ".norm_added_k.",
        "head.modulation": "scale_shift_table",
        "head.head": "proj_out",
        "modulation": "scale_shift_table",
        "ffn.0": "ffn.net.0.proj",
        "ffn.2": "ffn.net.2",
        # Hack to swap the layer names
        # The original model calls the norms in following order: norm1, norm3, norm2
        # We convert it to: norm1, norm2, norm3
        "norm2": "norm__placeholder",
        "norm3": "norm2",
        "norm__placeholder": "norm3",
        # For the I2V model
        "img_emb.proj.0": "condition_embedder.image_embedder.norm1",
        "img_emb.proj.1": "condition_embedder.image_embedder.ff.net.0.proj",
        "img_emb.proj.3": "condition_embedder.image_embedder.ff.net.2",
        "img_emb.proj.4": "condition_embedder.image_embedder.norm2",
    }

    for key in list(checkpoint.keys()):
        new_key = key[:]
        for replace_key, rename_key in TRANSFORMER_KEYS_RENAME_DICT.items():
            new_key = new_key.replace(replace_key, rename_key)

        converted_state_dict[new_key] = checkpoint.pop(key)

    return converted_state_dict


def convert_wan_vae_to_diffusers(checkpoint, **kwargs):
    converted_state_dict = {}

    # Create mappings for specific components
    middle_key_mapping = {
        # Encoder middle block
        "encoder.middle.0.residual.0.gamma": "encoder.mid_block.resnets.0.norm1.gamma",
        "encoder.middle.0.residual.2.bias": "encoder.mid_block.resnets.0.conv1.bias",
        "encoder.middle.0.residual.2.weight": "encoder.mid_block.resnets.0.conv1.weight",
        "encoder.middle.0.residual.3.gamma": "encoder.mid_block.resnets.0.norm2.gamma",
        "encoder.middle.0.residual.6.bias": "encoder.mid_block.resnets.0.conv2.bias",
        "encoder.middle.0.residual.6.weight": "encoder.mid_block.resnets.0.conv2.weight",
        "encoder.middle.2.residual.0.gamma": "encoder.mid_block.resnets.1.norm1.gamma",
        "encoder.middle.2.residual.2.bias": "encoder.mid_block.resnets.1.conv1.bias",
        "encoder.middle.2.residual.2.weight": "encoder.mid_block.resnets.1.conv1.weight",
        "encoder.middle.2.residual.3.gamma": "encoder.mid_block.resnets.1.norm2.gamma",
        "encoder.middle.2.residual.6.bias": "encoder.mid_block.resnets.1.conv2.bias",
        "encoder.middle.2.residual.6.weight": "encoder.mid_block.resnets.1.conv2.weight",
        # Decoder middle block
        "decoder.middle.0.residual.0.gamma": "decoder.mid_block.resnets.0.norm1.gamma",
        "decoder.middle.0.residual.2.bias": "decoder.mid_block.resnets.0.conv1.bias",
        "decoder.middle.0.residual.2.weight": "decoder.mid_block.resnets.0.conv1.weight",
        "decoder.middle.0.residual.3.gamma": "decoder.mid_block.resnets.0.norm2.gamma",
        "decoder.middle.0.residual.6.bias": "decoder.mid_block.resnets.0.conv2.bias",
        "decoder.middle.0.residual.6.weight": "decoder.mid_block.resnets.0.conv2.weight",
        "decoder.middle.2.residual.0.gamma": "decoder.mid_block.resnets.1.norm1.gamma",
        "decoder.middle.2.residual.2.bias": "decoder.mid_block.resnets.1.conv1.bias",
        "decoder.middle.2.residual.2.weight": "decoder.mid_block.resnets.1.conv1.weight",
        "decoder.middle.2.residual.3.gamma": "decoder.mid_block.resnets.1.norm2.gamma",
        "decoder.middle.2.residual.6.bias": "decoder.mid_block.resnets.1.conv2.bias",
        "decoder.middle.2.residual.6.weight": "decoder.mid_block.resnets.1.conv2.weight",
    }

    # Create a mapping for attention blocks
    attention_mapping = {
        # Encoder middle attention
        "encoder.middle.1.norm.gamma": "encoder.mid_block.attentions.0.norm.gamma",
        "encoder.middle.1.to_qkv.weight": "encoder.mid_block.attentions.0.to_qkv.weight",
        "encoder.middle.1.to_qkv.bias": "encoder.mid_block.attentions.0.to_qkv.bias",
        "encoder.middle.1.proj.weight": "encoder.mid_block.attentions.0.proj.weight",
        "encoder.middle.1.proj.bias": "encoder.mid_block.attentions.0.proj.bias",
        # Decoder middle attention
        "decoder.middle.1.norm.gamma": "decoder.mid_block.attentions.0.norm.gamma",
        "decoder.middle.1.to_qkv.weight": "decoder.mid_block.attentions.0.to_qkv.weight",
        "decoder.middle.1.to_qkv.bias": "decoder.mid_block.attentions.0.to_qkv.bias",
        "decoder.middle.1.proj.weight": "decoder.mid_block.attentions.0.proj.weight",
        "decoder.middle.1.proj.bias": "decoder.mid_block.attentions.0.proj.bias",
    }

    # Create a mapping for the head components
    head_mapping = {
        # Encoder head
        "encoder.head.0.gamma": "encoder.norm_out.gamma",
        "encoder.head.2.bias": "encoder.conv_out.bias",
        "encoder.head.2.weight": "encoder.conv_out.weight",
        # Decoder head
        "decoder.head.0.gamma": "decoder.norm_out.gamma",
        "decoder.head.2.bias": "decoder.conv_out.bias",
        "decoder.head.2.weight": "decoder.conv_out.weight",
    }

    # Create a mapping for the quant components
    quant_mapping = {
        "conv1.weight": "quant_conv.weight",
        "conv1.bias": "quant_conv.bias",
        "conv2.weight": "post_quant_conv.weight",
        "conv2.bias": "post_quant_conv.bias",
    }

    # Process each key in the state dict
    for key, value in checkpoint.items():
        # Handle middle block keys using the mapping
        if key in middle_key_mapping:
            new_key = middle_key_mapping[key]
            converted_state_dict[new_key] = value
        # Handle attention blocks using the mapping
        elif key in attention_mapping:
            new_key = attention_mapping[key]
            converted_state_dict[new_key] = value
        # Handle head keys using the mapping
        elif key in head_mapping:
            new_key = head_mapping[key]
            converted_state_dict[new_key] = value
        # Handle quant keys using the mapping
        elif key in quant_mapping:
            new_key = quant_mapping[key]
            converted_state_dict[new_key] = value
        # Handle encoder conv1
        elif key == "encoder.conv1.weight":
            converted_state_dict["encoder.conv_in.weight"] = value
        elif key == "encoder.conv1.bias":
            converted_state_dict["encoder.conv_in.bias"] = value
        # Handle decoder conv1
        elif key == "decoder.conv1.weight":
            converted_state_dict["decoder.conv_in.weight"] = value
        elif key == "decoder.conv1.bias":
            converted_state_dict["decoder.conv_in.bias"] = value
        # Handle encoder downsamples
        elif key.startswith("encoder.downsamples."):
            # Convert to down_blocks
            new_key = key.replace("encoder.downsamples.", "encoder.down_blocks.")

            # Convert residual block naming but keep the original structure
            if ".residual.0.gamma" in new_key:
                new_key = new_key.replace(".residual.0.gamma", ".norm1.gamma")
            elif ".residual.2.bias" in new_key:
                new_key = new_key.replace(".residual.2.bias", ".conv1.bias")
            elif ".residual.2.weight" in new_key:
                new_key = new_key.replace(".residual.2.weight", ".conv1.weight")
            elif ".residual.3.gamma" in new_key:
                new_key = new_key.replace(".residual.3.gamma", ".norm2.gamma")
            elif ".residual.6.bias" in new_key:
                new_key = new_key.replace(".residual.6.bias", ".conv2.bias")
            elif ".residual.6.weight" in new_key:
                new_key = new_key.replace(".residual.6.weight", ".conv2.weight")
            elif ".shortcut.bias" in new_key:
                new_key = new_key.replace(".shortcut.bias", ".conv_shortcut.bias")
            elif ".shortcut.weight" in new_key:
                new_key = new_key.replace(".shortcut.weight", ".conv_shortcut.weight")

            converted_state_dict[new_key] = value

        # Handle decoder upsamples
        elif key.startswith("decoder.upsamples."):
            # Convert to up_blocks
            parts = key.split(".")
            block_idx = int(parts[2])

            # Group residual blocks
            if "residual" in key:
                if block_idx in [0, 1, 2]:
                    new_block_idx = 0
                    resnet_idx = block_idx
                elif block_idx in [4, 5, 6]:
                    new_block_idx = 1
                    resnet_idx = block_idx - 4
                elif block_idx in [8, 9, 10]:
                    new_block_idx = 2
                    resnet_idx = block_idx - 8
                elif block_idx in [12, 13, 14]:
                    new_block_idx = 3
                    resnet_idx = block_idx - 12
                else:
                    # Keep as is for other blocks
                    converted_state_dict[key] = value
                    continue

                # Convert residual block naming
                if ".residual.0.gamma" in key:
                    new_key = f"decoder.up_blocks.{new_block_idx}.resnets.{resnet_idx}.norm1.gamma"
                elif ".residual.2.bias" in key:
                    new_key = f"decoder.up_blocks.{new_block_idx}.resnets.{resnet_idx}.conv1.bias"
                elif ".residual.2.weight" in key:
                    new_key = f"decoder.up_blocks.{new_block_idx}.resnets.{resnet_idx}.conv1.weight"
                elif ".residual.3.gamma" in key:
                    new_key = f"decoder.up_blocks.{new_block_idx}.resnets.{resnet_idx}.norm2.gamma"
                elif ".residual.6.bias" in key:
                    new_key = f"decoder.up_blocks.{new_block_idx}.resnets.{resnet_idx}.conv2.bias"
                elif ".residual.6.weight" in key:
                    new_key = f"decoder.up_blocks.{new_block_idx}.resnets.{resnet_idx}.conv2.weight"
                else:
                    new_key = key

                converted_state_dict[new_key] = value

            # Handle shortcut connections
            elif ".shortcut." in key:
                if block_idx == 4:
                    new_key = key.replace(".shortcut.", ".resnets.0.conv_shortcut.")
                    new_key = new_key.replace("decoder.upsamples.4", "decoder.up_blocks.1")
                else:
                    new_key = key.replace("decoder.upsamples.", "decoder.up_blocks.")
                    new_key = new_key.replace(".shortcut.", ".conv_shortcut.")

                converted_state_dict[new_key] = value

            # Handle upsamplers
            elif ".resample." in key or ".time_conv." in key:
                if block_idx == 3:
                    new_key = key.replace(f"decoder.upsamples.{block_idx}", "decoder.up_blocks.0.upsamplers.0")
                elif block_idx == 7:
                    new_key = key.replace(f"decoder.upsamples.{block_idx}", "decoder.up_blocks.1.upsamplers.0")
                elif block_idx == 11:
                    new_key = key.replace(f"decoder.upsamples.{block_idx}", "decoder.up_blocks.2.upsamplers.0")
                else:
                    new_key = key.replace("decoder.upsamples.", "decoder.up_blocks.")

                converted_state_dict[new_key] = value
            else:
                new_key = key.replace("decoder.upsamples.", "decoder.up_blocks.")
                converted_state_dict[new_key] = value
        else:
            # Keep other keys unchanged
            converted_state_dict[key] = value

    return converted_state_dict
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def convert_hidream_transformer_to_diffusers(checkpoint, **kwargs):
    keys = list(checkpoint.keys())
    for k in keys:
        if "model.diffusion_model." in k:
            checkpoint[k.replace("model.diffusion_model.", "")] = checkpoint.pop(k)

    return checkpoint