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import torch
import einops
import hashlib
import numpy as np
import torch.nn as nn

from enum import Enum
from modules import devices, lowvram, shared, scripts

cond_cast_unet = getattr(devices, 'cond_cast_unet', lambda x: x)

from ldm.modules.diffusionmodules.util import timestep_embedding
from ldm.modules.diffusionmodules.openaimodel import UNetModel
from ldm.modules.attention import BasicTransformerBlock
from ldm.models.diffusion.ddpm import extract_into_tensor

from modules.prompt_parser import MulticondLearnedConditioning, ComposableScheduledPromptConditioning, ScheduledPromptConditioning


POSITIVE_MARK_TOKEN = 1024
NEGATIVE_MARK_TOKEN = - POSITIVE_MARK_TOKEN
MARK_EPS = 1e-3


def prompt_context_is_marked(x):
    t = x[..., 0, :]
    m = torch.abs(t) - POSITIVE_MARK_TOKEN
    m = torch.mean(torch.abs(m)).detach().cpu().float().numpy()
    return float(m) < MARK_EPS


def mark_prompt_context(x, positive):
    if isinstance(x, list):
        for i in range(len(x)):
            x[i] = mark_prompt_context(x[i], positive)
        return x
    if isinstance(x, MulticondLearnedConditioning):
        x.batch = mark_prompt_context(x.batch, positive)
        return x
    if isinstance(x, ComposableScheduledPromptConditioning):
        x.schedules = mark_prompt_context(x.schedules, positive)
        return x
    if isinstance(x, ScheduledPromptConditioning):
        cond = x.cond
        if prompt_context_is_marked(cond):
            return x
        mark = POSITIVE_MARK_TOKEN if positive else NEGATIVE_MARK_TOKEN
        cond = torch.cat([torch.zeros_like(cond)[:1] + mark, cond], dim=0)
        return ScheduledPromptConditioning(end_at_step=x.end_at_step, cond=cond)
    return x


disable_controlnet_prompt_warning = True
# You can disable this warning using disable_controlnet_prompt_warning.


def unmark_prompt_context(x):
    if not prompt_context_is_marked(x):
        # ControlNet must know whether a prompt is conditional prompt (positive prompt) or unconditional conditioning prompt (negative prompt).
        # You can use the hook.py's `mark_prompt_context` to mark the prompts that will be seen by ControlNet.
        # Let us say XXX is a MulticondLearnedConditioning or a ComposableScheduledPromptConditioning or a ScheduledPromptConditioning or a list of these components,
        # if XXX is a positive prompt, you should call mark_prompt_context(XXX, positive=True)
        # if XXX is a negative prompt, you should call mark_prompt_context(XXX, positive=False)
        # After you mark the prompts, the ControlNet will know which prompt is cond/uncond and works as expected.
        # After you mark the prompts, the mismatch errors will disappear.
        if not disable_controlnet_prompt_warning:
            print('ControlNet Error: Failed to detect whether an instance is cond or uncond!')
            print('ControlNet Error: This is mainly because other extension(s) blocked A1111\'s \"process.sample()\" and deleted ControlNet\'s sample function.')
            print('ControlNet Error: ControlNet will shift to a backup backend but the results will be worse than expectation.')
            print('Solution (For extension developers): Take a look at ControlNet\' hook.py '
                  'UnetHook.hook.process_sample and manually call mark_prompt_context to mark cond/uncond prompts.')
        mark_batch = torch.ones(size=(x.shape[0], 1, 1, 1), dtype=x.dtype, device=x.device)
        uc_indices = []
        context = x
        return mark_batch, uc_indices, context
    mark = x[:, 0, :]
    context = x[:, 1:, :]
    mark = torch.mean(torch.abs(mark - NEGATIVE_MARK_TOKEN), dim=1)
    mark = (mark > MARK_EPS).float()
    mark_batch = mark[:, None, None, None].to(x.dtype).to(x.device)
    uc_indices = mark.detach().cpu().numpy().tolist()
    uc_indices = [i for i, item in enumerate(uc_indices) if item < 0.5]
    return mark_batch, uc_indices, context


class ControlModelType(Enum):
    """
    The type of Control Models (supported or not).
    """

    ControlNet = "ControlNet, Lvmin Zhang"
    T2I_Adapter = "T2I_Adapter, Chong Mou"
    T2I_StyleAdapter = "T2I_StyleAdapter, Chong Mou"
    T2I_CoAdapter = "T2I_CoAdapter, Chong Mou"
    MasaCtrl = "MasaCtrl, Mingdeng Cao"
    GLIGEN = "GLIGEN, Yuheng Li"
    AttentionInjection = "AttentionInjection, Lvmin Zhang"  # A simple attention injection written by Lvmin
    StableSR = "StableSR, Jianyi Wang"
    PromptDiffusion = "PromptDiffusion, Zhendong Wang"
    ControlLoRA = "ControlLoRA, Wu Hecong"


# Written by Lvmin
class AutoMachine(Enum):
    """
    Lvmin's algorithm for Attention/AdaIn AutoMachine States.
    """

    Read = "Read"
    Write = "Write"


class TorchHijackForUnet:
    """
    This is torch, but with cat that resizes tensors to appropriate dimensions if they do not match;
    this makes it possible to create pictures with dimensions that are multiples of 8 rather than 64
    """

    def __getattr__(self, item):
        if item == 'cat':
            return self.cat

        if hasattr(torch, item):
            return getattr(torch, item)

        raise AttributeError("'{}' object has no attribute '{}'".format(type(self).__name__, item))

    def cat(self, tensors, *args, **kwargs):
        if len(tensors) == 2:
            a, b = tensors
            if a.shape[-2:] != b.shape[-2:]:
                a = torch.nn.functional.interpolate(a, b.shape[-2:], mode="nearest")

            tensors = (a, b)

        return torch.cat(tensors, *args, **kwargs)


th = TorchHijackForUnet()


class ControlParams:
    def __init__(
            self,
            control_model,
            preprocessor,
            hint_cond,
            weight,
            guidance_stopped,
            start_guidance_percent,
            stop_guidance_percent,
            advanced_weighting,
            control_model_type,
            hr_hint_cond,
            global_average_pooling,
            soft_injection,
            cfg_injection,
            **kwargs  # To avoid errors
    ):
        self.control_model = control_model
        self.preprocessor = preprocessor
        self._hint_cond = hint_cond
        self.weight = weight
        self.guidance_stopped = guidance_stopped
        self.start_guidance_percent = start_guidance_percent
        self.stop_guidance_percent = stop_guidance_percent
        self.advanced_weighting = advanced_weighting
        self.control_model_type = control_model_type
        self.global_average_pooling = global_average_pooling
        self.hr_hint_cond = hr_hint_cond
        self.used_hint_cond = None
        self.used_hint_cond_latent = None
        self.used_hint_inpaint_hijack = None
        self.soft_injection = soft_injection
        self.cfg_injection = cfg_injection

    @property
    def hint_cond(self):
        return self._hint_cond

    # fix for all the extensions that modify hint_cond,
    # by forcing used_hint_cond to update on the next timestep
    # hr_hint_cond can stay the same, since most extensions dont modify the hires pass
    # but if they do, it will cause problems
    @hint_cond.setter
    def hint_cond(self, new_hint_cond):
        self._hint_cond = new_hint_cond
        self.used_hint_cond = None
        self.used_hint_cond_latent = None
        self.used_hint_inpaint_hijack = None


def aligned_adding(base, x, require_channel_alignment):
    if isinstance(x, float):
        if x == 0.0:
            return base
        return base + x

    if require_channel_alignment:
        zeros = torch.zeros_like(base)
        zeros[:, :x.shape[1], ...] = x
        x = zeros

    # resize to sample resolution
    base_h, base_w = base.shape[-2:]
    xh, xw = x.shape[-2:]
    if base_h != xh or base_w != xw:
        print('[Warning] ControlNet finds unexpected mis-alignment in tensor shape.')
        x = th.nn.functional.interpolate(x, size=(base_h, base_w), mode="nearest")

    return base + x


# DFS Search for Torch.nn.Module, Written by Lvmin
def torch_dfs(model: torch.nn.Module):
    result = [model]
    for child in model.children():
        result += torch_dfs(child)
    return result


def predict_start_from_noise(ldm, x_t, t, noise):
    return extract_into_tensor(ldm.sqrt_recip_alphas_cumprod, t, x_t.shape) * x_t - extract_into_tensor(ldm.sqrt_recipm1_alphas_cumprod, t, x_t.shape) * noise


def predict_noise_from_start(ldm, x_t, t, x0):
    return (extract_into_tensor(ldm.sqrt_recip_alphas_cumprod, t, x_t.shape) * x_t - x0) / extract_into_tensor(ldm.sqrt_recipm1_alphas_cumprod, t, x_t.shape)


def blur(x, k):
    y = torch.nn.functional.pad(x, (k, k, k, k), mode='replicate')
    y = torch.nn.functional.avg_pool2d(y, (k*2+1, k*2+1), stride=(1, 1))
    return y


class TorchCache:
    def __init__(self):
        self.cache = {}

    def hash(self, key):
        v = key.detach().cpu().numpy().astype(np.float32)
        v = (v * 1000.0).astype(np.int32)
        v = np.ascontiguousarray(v.copy())
        sha = hashlib.sha1(v).hexdigest()
        return sha

    def get(self, key):
        key = self.hash(key)
        return self.cache.get(key, None)

    def set(self, key, value):
        self.cache[self.hash(key)] = value


class UnetHook(nn.Module):
    def __init__(self, lowvram=False) -> None:
        super().__init__()
        self.lowvram = lowvram
        self.model = None
        self.sd_ldm = None
        self.control_params = None
        self.attention_auto_machine = AutoMachine.Read
        self.attention_auto_machine_weight = 1.0
        self.gn_auto_machine = AutoMachine.Read
        self.gn_auto_machine_weight = 1.0
        self.current_style_fidelity = 0.0
        self.current_uc_indices = None

    def guidance_schedule_handler(self, x):
        for param in self.control_params:
            current_sampling_percent = (x.sampling_step / x.total_sampling_steps)
            param.guidance_stopped = current_sampling_percent < param.start_guidance_percent or current_sampling_percent > param.stop_guidance_percent

    def hook(self, model, sd_ldm, control_params, process):
        self.model = model
        self.sd_ldm = sd_ldm
        self.control_params = control_params

        outer = self

        def process_sample(*args, **kwargs):
            # ControlNet must know whether a prompt is conditional prompt (positive prompt) or unconditional conditioning prompt (negative prompt).
            # You can use the hook.py's `mark_prompt_context` to mark the prompts that will be seen by ControlNet.
            # Let us say XXX is a MulticondLearnedConditioning or a ComposableScheduledPromptConditioning or a ScheduledPromptConditioning or a list of these components,
            # if XXX is a positive prompt, you should call mark_prompt_context(XXX, positive=True)
            # if XXX is a negative prompt, you should call mark_prompt_context(XXX, positive=False)
            # After you mark the prompts, the ControlNet will know which prompt is cond/uncond and works as expected.
            # After you mark the prompts, the mismatch errors will disappear.
            mark_prompt_context(kwargs.get('conditioning', []), positive=True)
            mark_prompt_context(kwargs.get('unconditional_conditioning', []), positive=False)
            mark_prompt_context(getattr(process, 'hr_c', []), positive=True)
            mark_prompt_context(getattr(process, 'hr_uc', []), positive=False)
            return process.sample_before_CN_hack(*args, **kwargs)

        def vae_forward(x, batch_size, mask=None):
            try:
                if x.shape[1] > 3:
                    x = x[:, 0:3, :, :]
                x = x * 2.0 - 1.0
                if mask is not None:
                    x = x * (1.0 - mask)
                x = x.type(devices.dtype_vae)
                vae_output = outer.vae_cache.get(x)
                if vae_output is None:
                    with devices.autocast():
                        vae_output = outer.sd_ldm.encode_first_stage(x)
                        vae_output = outer.sd_ldm.get_first_stage_encoding(vae_output)
                    outer.vae_cache.set(x, vae_output)
                    print(f'ControlNet used {str(devices.dtype_vae)} VAE to encode {vae_output.shape}.')
                latent = vae_output
                if latent.shape[0] != batch_size:
                    latent = torch.cat([latent.clone() for _ in range(batch_size)], dim=0)
                latent = latent.type(devices.dtype_unet)
                return latent
            except Exception as e:
                print(e)
                raise ValueError('ControlNet failed to use VAE. Please try to add `--no-half-vae`, `--no-half` and remove `--precision full` in launch cmd.')

        def forward(self, x, timesteps=None, context=None, **kwargs):
            total_controlnet_embedding = [0.0] * 13
            total_t2i_adapter_embedding = [0.0] * 4
            require_inpaint_hijack = False
            is_in_high_res_fix = False
            batch_size = int(x.shape[0])

            # Handle cond-uncond marker
            cond_mark, outer.current_uc_indices, context = unmark_prompt_context(context)
            # print(str(cond_mark[:, 0, 0, 0].detach().cpu().numpy().tolist()) + ' - ' + str(outer.current_uc_indices))

            # High-res fix
            for param in outer.control_params:
                # select which hint_cond to use
                if param.used_hint_cond is None:
                    param.used_hint_cond = param.hint_cond
                    param.used_hint_cond_latent = None
                    param.used_hint_inpaint_hijack = None

                # has high-res fix
                if param.hr_hint_cond is not None and x.ndim == 4 and param.hint_cond.ndim == 4 and param.hr_hint_cond.ndim == 4:
                    _, _, h_lr, w_lr = param.hint_cond.shape
                    _, _, h_hr, w_hr = param.hr_hint_cond.shape
                    _, _, h, w = x.shape
                    h, w = h * 8, w * 8
                    if abs(h - h_lr) < abs(h - h_hr):
                        is_in_high_res_fix = False
                        if param.used_hint_cond is not param.hint_cond:
                            param.used_hint_cond = param.hint_cond
                            param.used_hint_cond_latent = None
                            param.used_hint_inpaint_hijack = None
                    else:
                        is_in_high_res_fix = True
                        if param.used_hint_cond is not param.hr_hint_cond:
                            param.used_hint_cond = param.hr_hint_cond
                            param.used_hint_cond_latent = None
                            param.used_hint_inpaint_hijack = None

            # Convert control image to latent
            for param in outer.control_params:
                if param.used_hint_cond_latent is not None:
                    continue
                if param.control_model_type not in [ControlModelType.AttentionInjection] \
                        and 'colorfix' not in param.preprocessor['name'] \
                        and 'inpaint_only' not in param.preprocessor['name']:
                    continue
                param.used_hint_cond_latent = vae_forward(param.used_hint_cond, batch_size=batch_size)

            # handle prompt token control
            for param in outer.control_params:
                if param.guidance_stopped:
                    continue

                if param.control_model_type not in [ControlModelType.T2I_StyleAdapter]:
                    continue

                param.control_model.to(devices.get_device_for("controlnet"))
                control = param.control_model(x=x, hint=param.used_hint_cond, timesteps=timesteps, context=context)
                control = torch.cat([control.clone() for _ in range(batch_size)], dim=0)
                control *= param.weight
                control *= cond_mark[:, :, :, 0]
                context = torch.cat([context, control.clone()], dim=1)

            # handle ControlNet / T2I_Adapter
            for param in outer.control_params:
                if param.guidance_stopped:
                    continue

                if param.control_model_type not in [ControlModelType.ControlNet, ControlModelType.T2I_Adapter]:
                    continue

                param.control_model.to(devices.get_device_for("controlnet"))
                # inpaint model workaround
                x_in = x
                control_model = param.control_model.control_model

                if param.control_model_type == ControlModelType.ControlNet:
                    if x.shape[1] != control_model.input_blocks[0][0].in_channels and x.shape[1] == 9:
                        # inpaint_model: 4 data + 4 downscaled image + 1 mask
                        x_in = x[:, :4, ...]
                        require_inpaint_hijack = True

                assert param.used_hint_cond is not None, f"Controlnet is enabled but no input image is given"

                hint = param.used_hint_cond

                # ControlNet inpaint protocol
                if hint.shape[1] == 4:
                    c = hint[:, 0:3, :, :]
                    m = hint[:, 3:4, :, :]
                    m = (m > 0.5).float()
                    hint = c * (1 - m) - m

                control = param.control_model(x=x_in, hint=hint, timesteps=timesteps, context=context)
                control_scales = ([param.weight] * 13)

                if outer.lowvram:
                    param.control_model.to("cpu")

                if param.cfg_injection or param.global_average_pooling:
                    if param.control_model_type == ControlModelType.T2I_Adapter:
                        control = [torch.cat([c.clone() for _ in range(batch_size)], dim=0) for c in control]
                    control = [c * cond_mark for c in control]

                if param.soft_injection or is_in_high_res_fix:
                    # important! use the soft weights with high-res fix can significantly reduce artifacts.
                    if param.control_model_type == ControlModelType.T2I_Adapter:
                        control_scales = [param.weight * x for x in (0.25, 0.62, 0.825, 1.0)]
                    elif param.control_model_type == ControlModelType.ControlNet:
                        control_scales = [param.weight * (0.825 ** float(12 - i)) for i in range(13)]

                if param.advanced_weighting is not None:
                    control_scales = param.advanced_weighting

                control = [c * scale for c, scale in zip(control, control_scales)]
                if param.global_average_pooling:
                    control = [torch.mean(c, dim=(2, 3), keepdim=True) for c in control]

                for idx, item in enumerate(control):
                    target = None
                    if param.control_model_type == ControlModelType.ControlNet:
                        target = total_controlnet_embedding
                    if param.control_model_type == ControlModelType.T2I_Adapter:
                        target = total_t2i_adapter_embedding
                    if target is not None:
                        target[idx] = item + target[idx]

            # Clear attention and AdaIn cache
            for module in outer.attn_module_list:
                module.bank = []
                module.style_cfgs = []
            for module in outer.gn_module_list:
                module.mean_bank = []
                module.var_bank = []
                module.style_cfgs = []

            # Handle attention and AdaIn control
            for param in outer.control_params:
                if param.guidance_stopped:
                    continue

                if param.used_hint_cond_latent is None:
                    continue

                if param.control_model_type not in [ControlModelType.AttentionInjection]:
                    continue

                ref_xt = outer.sd_ldm.q_sample(param.used_hint_cond_latent, torch.round(timesteps.float()).long())

                # Inpaint Hijack
                if x.shape[1] == 9:
                    ref_xt = torch.cat([
                        ref_xt,
                        torch.zeros_like(ref_xt)[:, 0:1, :, :],
                        param.used_hint_cond_latent
                    ], dim=1)

                outer.current_style_fidelity = float(param.preprocessor['threshold_a'])
                outer.current_style_fidelity = max(0.0, min(1.0, outer.current_style_fidelity))

                if param.cfg_injection:
                    outer.current_style_fidelity = 1.0
                elif param.soft_injection or is_in_high_res_fix:
                    outer.current_style_fidelity = 0.0

                control_name = param.preprocessor['name']

                if control_name in ['reference_only', 'reference_adain+attn']:
                    outer.attention_auto_machine = AutoMachine.Write
                    outer.attention_auto_machine_weight = param.weight

                if control_name in ['reference_adain', 'reference_adain+attn']:
                    outer.gn_auto_machine = AutoMachine.Write
                    outer.gn_auto_machine_weight = param.weight

                outer.original_forward(
                    x=ref_xt.to(devices.dtype_unet),
                    timesteps=timesteps.to(devices.dtype_unet),
                    context=context.to(devices.dtype_unet)
                )

                outer.attention_auto_machine = AutoMachine.Read
                outer.gn_auto_machine = AutoMachine.Read

            # Replace x_t to support inpaint models
            for param in outer.control_params:
                if param.used_hint_cond.shape[1] != 4:
                    continue
                if x.shape[1] != 9:
                    continue
                if param.used_hint_inpaint_hijack is None:
                    mask_pixel = param.used_hint_cond[:, 3:4, :, :]
                    image_pixel = param.used_hint_cond[:, 0:3, :, :]
                    mask_pixel = (mask_pixel > 0.5).to(mask_pixel.dtype)
                    masked_latent = vae_forward(image_pixel, batch_size, mask=mask_pixel)
                    mask_latent = torch.nn.functional.max_pool2d(mask_pixel, (8, 8))
                    if mask_latent.shape[0] != batch_size:
                        mask_latent = torch.cat([mask_latent.clone() for _ in range(batch_size)], dim=0)
                    param.used_hint_inpaint_hijack = torch.cat([mask_latent, masked_latent], dim=1)
                    param.used_hint_inpaint_hijack.to(x.dtype).to(x.device)
                x = torch.cat([x[:, :4, :, :], param.used_hint_inpaint_hijack], dim=1)

            # A1111 fix for medvram.
            if shared.cmd_opts.medvram:
                try:
                    # Trigger the register_forward_pre_hook
                    outer.sd_ldm.model()
                except:
                    pass

            # U-Net Encoder
            hs = []
            with th.no_grad():
                t_emb = cond_cast_unet(timestep_embedding(timesteps, self.model_channels, repeat_only=False))
                emb = self.time_embed(t_emb)
                h = x.type(self.dtype)
                for i, module in enumerate(self.input_blocks):
                    h = module(h, emb, context)

                    if (i + 1) % 3 == 0:
                        h = aligned_adding(h, total_t2i_adapter_embedding.pop(0), require_inpaint_hijack)

                    hs.append(h)
                h = self.middle_block(h, emb, context)

            # U-Net Middle Block
            h = aligned_adding(h, total_controlnet_embedding.pop(), require_inpaint_hijack)

            # U-Net Decoder
            for i, module in enumerate(self.output_blocks):
                h = th.cat([h, aligned_adding(hs.pop(), total_controlnet_embedding.pop(), require_inpaint_hijack)], dim=1)
                h = module(h, emb, context)

            # U-Net Output
            h = h.type(x.dtype)
            h = self.out(h)

            # Post-processing for color fix
            for param in outer.control_params:
                if param.used_hint_cond_latent is None:
                    continue
                if 'colorfix' not in param.preprocessor['name']:
                    continue

                k = int(param.preprocessor['threshold_a'])
                if is_in_high_res_fix:
                    k *= 2

                # Inpaint hijack
                xt = x[:, :4, :, :]

                x0_origin = param.used_hint_cond_latent
                t = torch.round(timesteps.float()).long()
                x0_prd = predict_start_from_noise(outer.sd_ldm, xt, t, h)
                x0 = x0_prd - blur(x0_prd, k) + blur(x0_origin, k)

                if '+sharp' in param.preprocessor['name']:
                    detail_weight = float(param.preprocessor['threshold_b']) * 0.01
                    neg = detail_weight * blur(x0, k) + (1 - detail_weight) * x0
                    x0 = cond_mark * x0 + (1 - cond_mark) * neg

                eps_prd = predict_noise_from_start(outer.sd_ldm, xt, t, x0)

                w = max(0.0, min(1.0, float(param.weight)))
                h = eps_prd * w + h * (1 - w)

            # Post-processing for restore
            for param in outer.control_params:
                if param.used_hint_cond_latent is None:
                    continue
                if 'inpaint_only' not in param.preprocessor['name']:
                    continue
                if param.used_hint_cond.shape[1] != 4:
                    continue

                # Inpaint hijack
                xt = x[:, :4, :, :]

                mask = param.used_hint_cond[:, 3:4, :, :]
                mask = torch.nn.functional.max_pool2d(mask, (10, 10), stride=(8, 8), padding=1)

                x0_origin = param.used_hint_cond_latent
                t = torch.round(timesteps.float()).long()
                x0_prd = predict_start_from_noise(outer.sd_ldm, xt, t, h)
                x0 = x0_prd * mask + x0_origin * (1 - mask)
                eps_prd = predict_noise_from_start(outer.sd_ldm, xt, t, x0)

                w = max(0.0, min(1.0, float(param.weight)))
                h = eps_prd * w + h * (1 - w)

            return h

        def forward_webui(*args, **kwargs):
            # webui will handle other compoments 
            try:
                if shared.cmd_opts.lowvram:
                    lowvram.send_everything_to_cpu()

                return forward(*args, **kwargs)
            finally:
                if self.lowvram:
                    for param in self.control_params:
                        if isinstance(param.control_model, torch.nn.Module):
                            param.control_model.to("cpu")

        def hacked_basic_transformer_inner_forward(self, x, context=None):
            x_norm1 = self.norm1(x)
            self_attn1 = None
            if self.disable_self_attn:
                # Do not use self-attention
                self_attn1 = self.attn1(x_norm1, context=context)
            else:
                # Use self-attention
                self_attention_context = x_norm1
                if outer.attention_auto_machine == AutoMachine.Write:
                    if outer.attention_auto_machine_weight > self.attn_weight:
                        self.bank.append(self_attention_context.detach().clone())
                        self.style_cfgs.append(outer.current_style_fidelity)
                if outer.attention_auto_machine == AutoMachine.Read:
                    if len(self.bank) > 0:
                        style_cfg = sum(self.style_cfgs) / float(len(self.style_cfgs))
                        self_attn1_uc = self.attn1(x_norm1, context=torch.cat([self_attention_context] + self.bank, dim=1))
                        self_attn1_c = self_attn1_uc.clone()
                        if len(outer.current_uc_indices) > 0 and style_cfg > 1e-5:
                            self_attn1_c[outer.current_uc_indices] = self.attn1(
                                x_norm1[outer.current_uc_indices],
                                context=self_attention_context[outer.current_uc_indices])
                        self_attn1 = style_cfg * self_attn1_c + (1.0 - style_cfg) * self_attn1_uc
                    self.bank = []
                    self.style_cfgs = []
                if self_attn1 is None:
                    self_attn1 = self.attn1(x_norm1, context=self_attention_context)

            x = self_attn1.to(x.dtype) + x
            x = self.attn2(self.norm2(x), context=context) + x
            x = self.ff(self.norm3(x)) + x
            return x

        def hacked_group_norm_forward(self, *args, **kwargs):
            eps = 1e-6
            x = self.original_forward(*args, **kwargs)
            y = None
            if outer.gn_auto_machine == AutoMachine.Write:
                if outer.gn_auto_machine_weight > self.gn_weight:
                    var, mean = torch.var_mean(x, dim=(2, 3), keepdim=True, correction=0)
                    self.mean_bank.append(mean)
                    self.var_bank.append(var)
                    self.style_cfgs.append(outer.current_style_fidelity)
            if outer.gn_auto_machine == AutoMachine.Read:
                if len(self.mean_bank) > 0 and len(self.var_bank) > 0:
                    style_cfg = sum(self.style_cfgs) / float(len(self.style_cfgs))
                    var, mean = torch.var_mean(x, dim=(2, 3), keepdim=True, correction=0)
                    std = torch.maximum(var, torch.zeros_like(var) + eps) ** 0.5
                    mean_acc = sum(self.mean_bank) / float(len(self.mean_bank))
                    var_acc = sum(self.var_bank) / float(len(self.var_bank))
                    std_acc = torch.maximum(var_acc, torch.zeros_like(var_acc) + eps) ** 0.5
                    y_uc = (((x - mean) / std) * std_acc) + mean_acc
                    y_c = y_uc.clone()
                    if len(outer.current_uc_indices) > 0 and style_cfg > 1e-5:
                        y_c[outer.current_uc_indices] = x.to(y_c.dtype)[outer.current_uc_indices]
                    y = style_cfg * y_c + (1.0 - style_cfg) * y_uc
                self.mean_bank = []
                self.var_bank = []
                self.style_cfgs = []
            if y is None:
                y = x
            return y.to(x.dtype)

        if getattr(process, 'sample_before_CN_hack', None) is None:
            process.sample_before_CN_hack = process.sample
        process.sample = process_sample

        model._original_forward = model.forward
        outer.original_forward = model.forward
        model.forward = forward_webui.__get__(model, UNetModel)

        outer.vae_cache = TorchCache()

        all_modules = torch_dfs(model)

        attn_modules = [module for module in all_modules if isinstance(module, BasicTransformerBlock)]
        attn_modules = sorted(attn_modules, key=lambda x: - x.norm1.normalized_shape[0])

        for i, module in enumerate(attn_modules):
            if getattr(module, '_original_inner_forward', None) is None:
                module._original_inner_forward = module._forward
            module._forward = hacked_basic_transformer_inner_forward.__get__(module, BasicTransformerBlock)
            module.bank = []
            module.style_cfgs = []
            module.attn_weight = float(i) / float(len(attn_modules))

        gn_modules = [model.middle_block]
        model.middle_block.gn_weight = 0

        input_block_indices = [4, 5, 7, 8, 10, 11]
        for w, i in enumerate(input_block_indices):
            module = model.input_blocks[i]
            module.gn_weight = 1.0 - float(w) / float(len(input_block_indices))
            gn_modules.append(module)

        output_block_indices = [0, 1, 2, 3, 4, 5, 6, 7]
        for w, i in enumerate(output_block_indices):
            module = model.output_blocks[i]
            module.gn_weight = float(w) / float(len(output_block_indices))
            gn_modules.append(module)

        for i, module in enumerate(gn_modules):
            if getattr(module, 'original_forward', None) is None:
                module.original_forward = module.forward
            module.forward = hacked_group_norm_forward.__get__(module, torch.nn.Module)
            module.mean_bank = []
            module.var_bank = []
            module.style_cfgs = []
            module.gn_weight *= 2

        outer.attn_module_list = attn_modules
        outer.gn_module_list = gn_modules

        scripts.script_callbacks.on_cfg_denoiser(self.guidance_schedule_handler)

    def restore(self, model):
        scripts.script_callbacks.remove_callbacks_for_function(self.guidance_schedule_handler)
        if hasattr(self, "control_params"):
            del self.control_params

        if not hasattr(model, "_original_forward"):
            # no such handle, ignore
            return

        model.forward = model._original_forward
        del model._original_forward