mirror of
https://github.com/comfyanonymous/ComfyUI.git
synced 2025-01-11 10:25:16 +00:00
761 lines
30 KiB
Python
761 lines
30 KiB
Python
from __future__ import annotations
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from typing import TYPE_CHECKING, Callable
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import enum
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import math
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import torch
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import numpy as np
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import itertools
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import logging
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if TYPE_CHECKING:
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from comfy.model_patcher import ModelPatcher, PatcherInjection
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from comfy.model_base import BaseModel
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from comfy.sd import CLIP
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import comfy.lora
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import comfy.model_management
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import comfy.patcher_extension
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from node_helpers import conditioning_set_values
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# #######################################################################################################
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# Hooks explanation
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# -------------------
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# The purpose of hooks is to allow conds to influence sampling without the need for ComfyUI core code to
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# make explicit special cases like it does for ControlNet and GLIGEN.
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#
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# This is necessary for nodes/features that are intended for use with masked or scheduled conds, or those
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# that should run special code when a 'marked' cond is used in sampling.
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# #######################################################################################################
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class EnumHookMode(enum.Enum):
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'''
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Priority of hook memory optimization vs. speed, mostly related to WeightHooks.
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MinVram: No caching will occur for any operations related to hooks.
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MaxSpeed: Excess VRAM (and RAM, once VRAM is sufficiently depleted) will be used to cache hook weights when switching hook groups.
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'''
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MinVram = "minvram"
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MaxSpeed = "maxspeed"
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class EnumHookType(enum.Enum):
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'''
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Hook types, each of which has different expected behavior.
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'''
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Weight = "weight"
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ObjectPatch = "object_patch"
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AddModels = "add_models"
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TransformerOptions = "transformer_options"
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Injections = "add_injections"
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class EnumWeightTarget(enum.Enum):
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Model = "model"
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Clip = "clip"
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class EnumHookScope(enum.Enum):
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'''
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Determines if hook should be limited in its influence over sampling.
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AllConditioning: hook will affect all conds used in sampling.
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HookedOnly: hook will only affect the conds it was attached to.
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'''
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AllConditioning = "all_conditioning"
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HookedOnly = "hooked_only"
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class _HookRef:
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pass
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def default_should_register(hook: Hook, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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'''Example for how should_register function should look like.'''
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return True
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def create_target_dict(target: EnumWeightTarget=None, **kwargs) -> dict[str]:
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'''Creates base dictionary for use with Hooks' target param.'''
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d = {}
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if target is not None:
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d['target'] = target
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d.update(kwargs)
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return d
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class Hook:
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def __init__(self, hook_type: EnumHookType=None, hook_ref: _HookRef=None, hook_id: str=None,
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hook_keyframe: HookKeyframeGroup=None, hook_scope=EnumHookScope.AllConditioning):
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self.hook_type = hook_type
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self.hook_ref = hook_ref if hook_ref else _HookRef()
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self.hook_id = hook_id
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self.hook_keyframe = hook_keyframe if hook_keyframe else HookKeyframeGroup()
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self.custom_should_register = default_should_register
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self.auto_apply_to_nonpositive = False
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self.hook_scope = hook_scope
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@property
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def strength(self):
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return self.hook_keyframe.strength
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def initialize_timesteps(self, model: BaseModel):
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self.reset()
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self.hook_keyframe.initialize_timesteps(model)
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def reset(self):
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self.hook_keyframe.reset()
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def clone(self):
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c: Hook = self.__class__()
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c.hook_type = self.hook_type
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c.hook_ref = self.hook_ref
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c.hook_id = self.hook_id
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c.hook_keyframe = self.hook_keyframe
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c.custom_should_register = self.custom_should_register
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# TODO: make this do something
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c.auto_apply_to_nonpositive = self.auto_apply_to_nonpositive
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return c
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def should_register(self, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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return self.custom_should_register(self, model, model_options, target_dict, registered)
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def add_hook_patches(self, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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raise NotImplementedError("add_hook_patches should be defined for Hook subclasses")
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def on_apply(self, model: ModelPatcher, transformer_options: dict[str]):
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pass
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def on_unapply(self, model: ModelPatcher, transformer_options: dict[str]):
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pass
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def __eq__(self, other: Hook):
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return self.__class__ == other.__class__ and self.hook_ref == other.hook_ref
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def __hash__(self):
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return hash(self.hook_ref)
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class WeightHook(Hook):
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'''
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Hook responsible for tracking weights to be applied to some model/clip.
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Note, value of hook_scope is ignored and is treated as HookedOnly.
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'''
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def __init__(self, strength_model=1.0, strength_clip=1.0):
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super().__init__(hook_type=EnumHookType.Weight, hook_scope=EnumHookScope.HookedOnly)
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self.weights: dict = None
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self.weights_clip: dict = None
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self.need_weight_init = True
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self._strength_model = strength_model
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self._strength_clip = strength_clip
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@property
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def strength_model(self):
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return self._strength_model * self.strength
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@property
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def strength_clip(self):
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return self._strength_clip * self.strength
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def add_hook_patches(self, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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if not self.should_register(model, model_options, target_dict, registered):
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return False
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weights = None
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target = target_dict.get('target', None)
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if target == EnumWeightTarget.Clip:
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strength = self._strength_clip
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else:
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strength = self._strength_model
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if self.need_weight_init:
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key_map = {}
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if target == EnumWeightTarget.Clip:
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key_map = comfy.lora.model_lora_keys_clip(model.model, key_map)
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else:
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key_map = comfy.lora.model_lora_keys_unet(model.model, key_map)
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weights = comfy.lora.load_lora(self.weights, key_map, log_missing=False)
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else:
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if target == EnumWeightTarget.Clip:
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weights = self.weights_clip
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else:
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weights = self.weights
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model.add_hook_patches(hook=self, patches=weights, strength_patch=strength)
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registered.add(self)
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return True
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# TODO: add logs about any keys that were not applied
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def clone(self):
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c: WeightHook = super().clone()
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c.weights = self.weights
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c.weights_clip = self.weights_clip
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c.need_weight_init = self.need_weight_init
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c._strength_model = self._strength_model
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c._strength_clip = self._strength_clip
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return c
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class ObjectPatchHook(Hook):
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def __init__(self, object_patches: dict[str]=None):
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super().__init__(hook_type=EnumHookType.ObjectPatch)
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self.object_patches = object_patches
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def clone(self):
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c: ObjectPatchHook = super().clone()
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c.object_patches = self.object_patches
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return c
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def add_hook_patches(self, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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raise NotImplementedError("ObjectPatchHook is not supported yet in ComfyUI.")
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if not self.should_register(model, model_options, target_dict, registered):
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return False
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registered.add(self)
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return True
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class AddModelsHook(Hook):
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'''
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Hook responsible for telling model management any additional models that should be loaded.
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Note, value of hook_scope is ignored and is treated as AllConditioning.
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'''
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def __init__(self, models: list[ModelPatcher]=None, key: str=None):
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super().__init__(hook_type=EnumHookType.AddModels)
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self.models = models
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self.key = key
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self.append_when_same = True
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'''Curently does nothing.'''
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def clone(self):
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c: AddModelsHook = super().clone()
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c.models = self.models.copy() if self.models else self.models
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c.key = self.key
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c.append_when_same = self.append_when_same
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return c
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def add_hook_patches(self, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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if not self.should_register(model, model_options, target_dict, registered):
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return False
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registered.add(self)
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return True
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class TransformerOptionsHook(Hook):
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'''
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Hook responsible for adding wrappers, callbacks, patches, or anything else related to transformer_options.
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'''
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def __init__(self, wrappers_dict: dict[str, dict[str, dict[str, list[Callable]]]]=None):
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super().__init__(hook_type=EnumHookType.TransformerOptions)
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self.transformers_dict = wrappers_dict
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def clone(self):
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c: TransformerOptionsHook = super().clone()
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c.transformers_dict = self.transformers_dict
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return c
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def add_hook_patches(self, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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if not self.should_register(model, model_options, target_dict, registered):
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return False
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# NOTE: to_load_options will be used to manually load patches/wrappers/callbacks from hooks
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if self.hook_scope == EnumHookScope.AllConditioning:
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add_model_options = {"transformer_options": self.transformers_dict,
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"to_load_options": self.transformers_dict}
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else:
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add_model_options = {"to_load_options": self.transformers_dict}
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comfy.patcher_extension.merge_nested_dicts(model_options, add_model_options, copy_dict1=False)
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registered.add(self)
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return True
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def on_apply_hooks(self, model: ModelPatcher, transformer_options: dict[str]):
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comfy.patcher_extension.merge_nested_dicts(transformer_options, self.transformers_dict, copy_dict1=False)
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WrapperHook = TransformerOptionsHook
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'''Only here for backwards compatibility, WrapperHook is identical to TransformerOptionsHook.'''
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class SetInjectionsHook(Hook):
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def __init__(self, key: str=None, injections: list[PatcherInjection]=None):
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super().__init__(hook_type=EnumHookType.Injections)
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self.key = key
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self.injections = injections
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def clone(self):
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c: SetInjectionsHook = super().clone()
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c.key = self.key
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c.injections = self.injections.copy() if self.injections else self.injections
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return c
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def add_hook_patches(self, model: ModelPatcher, model_options: dict, target_dict: dict[str], registered: HookGroup):
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raise NotImplementedError("SetInjectionsHook is not supported yet in ComfyUI.")
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if not self.should_register(model, model_options, target_dict, registered):
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return False
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registered.add(self)
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return True
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def add_hook_injections(self, model: ModelPatcher):
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# TODO: add functionality
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pass
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class HookGroup:
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'''
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Stores groups of hooks, and allows them to be queried by type.
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To prevent breaking their functionality, never modify the underlying self.hooks or self._hook_dict vars directly;
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always use the provided functions on HookGroup.
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'''
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def __init__(self):
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self.hooks: list[Hook] = []
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self._hook_dict: dict[EnumHookType, list[Hook]] = {}
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def __len__(self):
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return len(self.hooks)
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def add(self, hook: Hook):
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if hook not in self.hooks:
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self.hooks.append(hook)
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self._hook_dict.setdefault(hook.hook_type, []).append(hook)
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def remove(self, hook: Hook):
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if hook in self.hooks:
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self.hooks.remove(hook)
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self._hook_dict[hook.hook_type].remove(hook)
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def get_type(self, hook_type: EnumHookType):
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return self._hook_dict.get(hook_type, [])
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def contains(self, hook: Hook):
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return hook in self.hooks
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def clone(self):
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c = HookGroup()
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for hook in self.hooks:
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c.add(hook.clone())
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return c
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def clone_and_combine(self, other: HookGroup):
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c = self.clone()
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if other is not None:
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for hook in other.hooks:
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c.add(hook.clone())
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return c
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def set_keyframes_on_hooks(self, hook_kf: HookKeyframeGroup):
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if hook_kf is None:
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hook_kf = HookKeyframeGroup()
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else:
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hook_kf = hook_kf.clone()
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for hook in self.hooks:
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hook.hook_keyframe = hook_kf
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def get_hooks_for_clip_schedule(self):
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scheduled_hooks: dict[WeightHook, list[tuple[tuple[float,float], HookKeyframe]]] = {}
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# only care about WeightHooks, for now
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for hook in self.get_type(EnumHookType.Weight):
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hook: WeightHook
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hook_schedule = []
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# if no hook keyframes, assign default value
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if len(hook.hook_keyframe.keyframes) == 0:
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hook_schedule.append(((0.0, 1.0), None))
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scheduled_hooks[hook] = hook_schedule
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continue
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# find ranges of values
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prev_keyframe = hook.hook_keyframe.keyframes[0]
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for keyframe in hook.hook_keyframe.keyframes:
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if keyframe.start_percent > prev_keyframe.start_percent and not math.isclose(keyframe.strength, prev_keyframe.strength):
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hook_schedule.append(((prev_keyframe.start_percent, keyframe.start_percent), prev_keyframe))
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prev_keyframe = keyframe
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elif keyframe.start_percent == prev_keyframe.start_percent:
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prev_keyframe = keyframe
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# create final range, assuming last start_percent was not 1.0
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if not math.isclose(prev_keyframe.start_percent, 1.0):
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hook_schedule.append(((prev_keyframe.start_percent, 1.0), prev_keyframe))
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scheduled_hooks[hook] = hook_schedule
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# hooks should not have their schedules in a list of tuples
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all_ranges: list[tuple[float, float]] = []
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for range_kfs in scheduled_hooks.values():
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for t_range, keyframe in range_kfs:
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all_ranges.append(t_range)
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# turn list of ranges into boundaries
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boundaries_set = set(itertools.chain.from_iterable(all_ranges))
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boundaries_set.add(0.0)
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boundaries = sorted(boundaries_set)
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real_ranges = [(boundaries[i], boundaries[i + 1]) for i in range(len(boundaries) - 1)]
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# with real ranges defined, give appropriate hooks w/ keyframes for each range
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scheduled_keyframes: list[tuple[tuple[float,float], list[tuple[WeightHook, HookKeyframe]]]] = []
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for t_range in real_ranges:
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hooks_schedule = []
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for hook, val in scheduled_hooks.items():
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keyframe = None
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# check if is a keyframe that works for the current t_range
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for stored_range, stored_kf in val:
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# if stored start is less than current end, then fits - give it assigned keyframe
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if stored_range[0] < t_range[1] and stored_range[1] > t_range[0]:
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keyframe = stored_kf
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break
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hooks_schedule.append((hook, keyframe))
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scheduled_keyframes.append((t_range, hooks_schedule))
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return scheduled_keyframes
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def reset(self):
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for hook in self.hooks:
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hook.reset()
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@staticmethod
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def combine_all_hooks(hooks_list: list[HookGroup], require_count=0) -> HookGroup:
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actual: list[HookGroup] = []
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for group in hooks_list:
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if group is not None:
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actual.append(group)
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if len(actual) < require_count:
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raise Exception(f"Need at least {require_count} hooks to combine, but only had {len(actual)}.")
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# if no hooks, then return None
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if len(actual) == 0:
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return None
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# if only 1 hook, just return itself without cloning
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elif len(actual) == 1:
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return actual[0]
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final_hook: HookGroup = None
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for hook in actual:
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if final_hook is None:
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final_hook = hook.clone()
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else:
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final_hook = final_hook.clone_and_combine(hook)
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return final_hook
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class HookKeyframe:
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def __init__(self, strength: float, start_percent=0.0, guarantee_steps=1):
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self.strength = strength
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# scheduling
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self.start_percent = float(start_percent)
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self.start_t = 999999999.9
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self.guarantee_steps = guarantee_steps
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def get_effective_guarantee_steps(self, max_sigma: torch.Tensor):
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'''If keyframe starts before current sampling range (max_sigma), treat as 0.'''
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if self.start_t > max_sigma:
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return 0
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return self.guarantee_steps
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def clone(self):
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c = HookKeyframe(strength=self.strength,
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start_percent=self.start_percent, guarantee_steps=self.guarantee_steps)
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c.start_t = self.start_t
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return c
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class HookKeyframeGroup:
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def __init__(self):
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self.keyframes: list[HookKeyframe] = []
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self._current_keyframe: HookKeyframe = None
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self._current_used_steps = 0
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self._current_index = 0
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self._current_strength = None
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self._curr_t = -1.
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# properties shadow those of HookWeightsKeyframe
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@property
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def strength(self):
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if self._current_keyframe is not None:
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return self._current_keyframe.strength
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return 1.0
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def reset(self):
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self._current_keyframe = None
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self._current_used_steps = 0
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self._current_index = 0
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self._current_strength = None
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self.curr_t = -1.
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self._set_first_as_current()
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def add(self, keyframe: HookKeyframe):
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# add to end of list, then sort
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self.keyframes.append(keyframe)
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self.keyframes = get_sorted_list_via_attr(self.keyframes, "start_percent")
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self._set_first_as_current()
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def _set_first_as_current(self):
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if len(self.keyframes) > 0:
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self._current_keyframe = self.keyframes[0]
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else:
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self._current_keyframe = None
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def has_guarantee_steps(self):
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for kf in self.keyframes:
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if kf.guarantee_steps > 0:
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return True
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return False
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def has_index(self, index: int):
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return index >= 0 and index < len(self.keyframes)
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def is_empty(self):
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return len(self.keyframes) == 0
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def clone(self):
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|
c = HookKeyframeGroup()
|
|
for keyframe in self.keyframes:
|
|
c.keyframes.append(keyframe.clone())
|
|
c._set_first_as_current()
|
|
return c
|
|
|
|
def initialize_timesteps(self, model: BaseModel):
|
|
for keyframe in self.keyframes:
|
|
keyframe.start_t = model.model_sampling.percent_to_sigma(keyframe.start_percent)
|
|
|
|
def prepare_current_keyframe(self, curr_t: float, transformer_options: dict[str, torch.Tensor]) -> bool:
|
|
if self.is_empty():
|
|
return False
|
|
if curr_t == self._curr_t:
|
|
return False
|
|
max_sigma = torch.max(transformer_options["sample_sigmas"])
|
|
prev_index = self._current_index
|
|
prev_strength = self._current_strength
|
|
# if met guaranteed steps, look for next keyframe in case need to switch
|
|
if self._current_used_steps >= self._current_keyframe.get_effective_guarantee_steps(max_sigma):
|
|
# if has next index, loop through and see if need to switch
|
|
if self.has_index(self._current_index+1):
|
|
for i in range(self._current_index+1, len(self.keyframes)):
|
|
eval_c = self.keyframes[i]
|
|
# check if start_t is greater or equal to curr_t
|
|
# NOTE: t is in terms of sigmas, not percent, so bigger number = earlier step in sampling
|
|
if eval_c.start_t >= curr_t:
|
|
self._current_index = i
|
|
self._current_strength = eval_c.strength
|
|
self._current_keyframe = eval_c
|
|
self._current_used_steps = 0
|
|
# if guarantee_steps greater than zero, stop searching for other keyframes
|
|
if self._current_keyframe.get_effective_guarantee_steps(max_sigma) > 0:
|
|
break
|
|
# if eval_c is outside the percent range, stop looking further
|
|
else: break
|
|
# update steps current context is used
|
|
self._current_used_steps += 1
|
|
# update current timestep this was performed on
|
|
self._curr_t = curr_t
|
|
# return True if keyframe changed, False if no change
|
|
return prev_index != self._current_index and prev_strength != self._current_strength
|
|
|
|
|
|
class InterpolationMethod:
|
|
LINEAR = "linear"
|
|
EASE_IN = "ease_in"
|
|
EASE_OUT = "ease_out"
|
|
EASE_IN_OUT = "ease_in_out"
|
|
|
|
_LIST = [LINEAR, EASE_IN, EASE_OUT, EASE_IN_OUT]
|
|
|
|
@classmethod
|
|
def get_weights(cls, num_from: float, num_to: float, length: int, method: str, reverse=False):
|
|
diff = num_to - num_from
|
|
if method == cls.LINEAR:
|
|
weights = torch.linspace(num_from, num_to, length)
|
|
elif method == cls.EASE_IN:
|
|
index = torch.linspace(0, 1, length)
|
|
weights = diff * np.power(index, 2) + num_from
|
|
elif method == cls.EASE_OUT:
|
|
index = torch.linspace(0, 1, length)
|
|
weights = diff * (1 - np.power(1 - index, 2)) + num_from
|
|
elif method == cls.EASE_IN_OUT:
|
|
index = torch.linspace(0, 1, length)
|
|
weights = diff * ((1 - np.cos(index * np.pi)) / 2) + num_from
|
|
else:
|
|
raise ValueError(f"Unrecognized interpolation method '{method}'.")
|
|
if reverse:
|
|
weights = weights.flip(dims=(0,))
|
|
return weights
|
|
|
|
def get_sorted_list_via_attr(objects: list, attr: str) -> list:
|
|
if not objects:
|
|
return objects
|
|
elif len(objects) <= 1:
|
|
return [x for x in objects]
|
|
# now that we know we have to sort, do it following these rules:
|
|
# a) if objects have same value of attribute, maintain their relative order
|
|
# b) perform sorting of the groups of objects with same attributes
|
|
unique_attrs = {}
|
|
for o in objects:
|
|
val_attr = getattr(o, attr)
|
|
attr_list: list = unique_attrs.get(val_attr, list())
|
|
attr_list.append(o)
|
|
if val_attr not in unique_attrs:
|
|
unique_attrs[val_attr] = attr_list
|
|
# now that we have the unique attr values grouped together in relative order, sort them by key
|
|
sorted_attrs = dict(sorted(unique_attrs.items()))
|
|
# now flatten out the dict into a list to return
|
|
sorted_list = []
|
|
for object_list in sorted_attrs.values():
|
|
sorted_list.extend(object_list)
|
|
return sorted_list
|
|
|
|
def create_hook_lora(lora: dict[str, torch.Tensor], strength_model: float, strength_clip: float):
|
|
hook_group = HookGroup()
|
|
hook = WeightHook(strength_model=strength_model, strength_clip=strength_clip)
|
|
hook_group.add(hook)
|
|
hook.weights = lora
|
|
return hook_group
|
|
|
|
def create_hook_model_as_lora(weights_model, weights_clip, strength_model: float, strength_clip: float):
|
|
hook_group = HookGroup()
|
|
hook = WeightHook(strength_model=strength_model, strength_clip=strength_clip)
|
|
hook_group.add(hook)
|
|
patches_model = None
|
|
patches_clip = None
|
|
if weights_model is not None:
|
|
patches_model = {}
|
|
for key in weights_model:
|
|
patches_model[key] = ("model_as_lora", (weights_model[key],))
|
|
if weights_clip is not None:
|
|
patches_clip = {}
|
|
for key in weights_clip:
|
|
patches_clip[key] = ("model_as_lora", (weights_clip[key],))
|
|
hook.weights = patches_model
|
|
hook.weights_clip = patches_clip
|
|
hook.need_weight_init = False
|
|
return hook_group
|
|
|
|
def get_patch_weights_from_model(model: ModelPatcher, discard_model_sampling=True):
|
|
if model is None:
|
|
return None
|
|
patches_model: dict[str, torch.Tensor] = model.model.state_dict()
|
|
if discard_model_sampling:
|
|
# do not include ANY model_sampling components of the model that should act as a patch
|
|
for key in list(patches_model.keys()):
|
|
if key.startswith("model_sampling"):
|
|
patches_model.pop(key, None)
|
|
return patches_model
|
|
|
|
# NOTE: this function shows how to register weight hooks directly on the ModelPatchers
|
|
def load_hook_lora_for_models(model: ModelPatcher, clip: CLIP, lora: dict[str, torch.Tensor],
|
|
strength_model: float, strength_clip: float):
|
|
key_map = {}
|
|
if model is not None:
|
|
key_map = comfy.lora.model_lora_keys_unet(model.model, key_map)
|
|
if clip is not None:
|
|
key_map = comfy.lora.model_lora_keys_clip(clip.cond_stage_model, key_map)
|
|
|
|
hook_group = HookGroup()
|
|
hook = WeightHook()
|
|
hook_group.add(hook)
|
|
loaded: dict[str] = comfy.lora.load_lora(lora, key_map)
|
|
if model is not None:
|
|
new_modelpatcher = model.clone()
|
|
k = new_modelpatcher.add_hook_patches(hook=hook, patches=loaded, strength_patch=strength_model)
|
|
else:
|
|
k = ()
|
|
new_modelpatcher = None
|
|
|
|
if clip is not None:
|
|
new_clip = clip.clone()
|
|
k1 = new_clip.patcher.add_hook_patches(hook=hook, patches=loaded, strength_patch=strength_clip)
|
|
else:
|
|
k1 = ()
|
|
new_clip = None
|
|
k = set(k)
|
|
k1 = set(k1)
|
|
for x in loaded:
|
|
if (x not in k) and (x not in k1):
|
|
logging.warning(f"NOT LOADED {x}")
|
|
return (new_modelpatcher, new_clip, hook_group)
|
|
|
|
def _combine_hooks_from_values(c_dict: dict[str, HookGroup], values: dict[str, HookGroup], cache: dict[tuple[HookGroup, HookGroup], HookGroup]):
|
|
hooks_key = 'hooks'
|
|
# if hooks only exist in one dict, do what's needed so that it ends up in c_dict
|
|
if hooks_key not in values:
|
|
return
|
|
if hooks_key not in c_dict:
|
|
hooks_value = values.get(hooks_key, None)
|
|
if hooks_value is not None:
|
|
c_dict[hooks_key] = hooks_value
|
|
return
|
|
# otherwise, need to combine with minimum duplication via cache
|
|
hooks_tuple = (c_dict[hooks_key], values[hooks_key])
|
|
cached_hooks = cache.get(hooks_tuple, None)
|
|
if cached_hooks is None:
|
|
new_hooks = hooks_tuple[0].clone_and_combine(hooks_tuple[1])
|
|
cache[hooks_tuple] = new_hooks
|
|
c_dict[hooks_key] = new_hooks
|
|
else:
|
|
c_dict[hooks_key] = cache[hooks_tuple]
|
|
|
|
def conditioning_set_values_with_hooks(conditioning, values={}, append_hooks=True):
|
|
c = []
|
|
hooks_combine_cache: dict[tuple[HookGroup, HookGroup], HookGroup] = {}
|
|
for t in conditioning:
|
|
n = [t[0], t[1].copy()]
|
|
for k in values:
|
|
if append_hooks and k == 'hooks':
|
|
_combine_hooks_from_values(n[1], values, hooks_combine_cache)
|
|
else:
|
|
n[1][k] = values[k]
|
|
c.append(n)
|
|
|
|
return c
|
|
|
|
def set_hooks_for_conditioning(cond, hooks: HookGroup, append_hooks=True):
|
|
if hooks is None:
|
|
return cond
|
|
return conditioning_set_values_with_hooks(cond, {'hooks': hooks}, append_hooks=append_hooks)
|
|
|
|
def set_timesteps_for_conditioning(cond, timestep_range: tuple[float,float]):
|
|
if timestep_range is None:
|
|
return cond
|
|
return conditioning_set_values(cond, {"start_percent": timestep_range[0],
|
|
"end_percent": timestep_range[1]})
|
|
|
|
def set_mask_for_conditioning(cond, mask: torch.Tensor, set_cond_area: str, strength: float):
|
|
if mask is None:
|
|
return cond
|
|
set_area_to_bounds = False
|
|
if set_cond_area != 'default':
|
|
set_area_to_bounds = True
|
|
if len(mask.shape) < 3:
|
|
mask = mask.unsqueeze(0)
|
|
return conditioning_set_values(cond, {'mask': mask,
|
|
'set_area_to_bounds': set_area_to_bounds,
|
|
'mask_strength': strength})
|
|
|
|
def combine_conditioning(conds: list):
|
|
combined_conds = []
|
|
for cond in conds:
|
|
combined_conds.extend(cond)
|
|
return combined_conds
|
|
|
|
def combine_with_new_conds(conds: list, new_conds: list):
|
|
combined_conds = []
|
|
for c, new_c in zip(conds, new_conds):
|
|
combined_conds.append(combine_conditioning([c, new_c]))
|
|
return combined_conds
|
|
|
|
def set_conds_props(conds: list, strength: float, set_cond_area: str,
|
|
mask: torch.Tensor=None, hooks: HookGroup=None, timesteps_range: tuple[float,float]=None, append_hooks=True):
|
|
final_conds = []
|
|
for c in conds:
|
|
# first, apply lora_hook to conditioning, if provided
|
|
c = set_hooks_for_conditioning(c, hooks, append_hooks=append_hooks)
|
|
# next, apply mask to conditioning
|
|
c = set_mask_for_conditioning(cond=c, mask=mask, strength=strength, set_cond_area=set_cond_area)
|
|
# apply timesteps, if present
|
|
c = set_timesteps_for_conditioning(cond=c, timestep_range=timesteps_range)
|
|
# finally, apply mask to conditioning and store
|
|
final_conds.append(c)
|
|
return final_conds
|
|
|
|
def set_conds_props_and_combine(conds: list, new_conds: list, strength: float=1.0, set_cond_area: str="default",
|
|
mask: torch.Tensor=None, hooks: HookGroup=None, timesteps_range: tuple[float,float]=None, append_hooks=True):
|
|
combined_conds = []
|
|
for c, masked_c in zip(conds, new_conds):
|
|
# first, apply lora_hook to new conditioning, if provided
|
|
masked_c = set_hooks_for_conditioning(masked_c, hooks, append_hooks=append_hooks)
|
|
# next, apply mask to new conditioning, if provided
|
|
masked_c = set_mask_for_conditioning(cond=masked_c, mask=mask, set_cond_area=set_cond_area, strength=strength)
|
|
# apply timesteps, if present
|
|
masked_c = set_timesteps_for_conditioning(cond=masked_c, timestep_range=timesteps_range)
|
|
# finally, combine with existing conditioning and store
|
|
combined_conds.append(combine_conditioning([c, masked_c]))
|
|
return combined_conds
|
|
|
|
def set_default_conds_and_combine(conds: list, new_conds: list,
|
|
hooks: HookGroup=None, timesteps_range: tuple[float,float]=None, append_hooks=True):
|
|
combined_conds = []
|
|
for c, new_c in zip(conds, new_conds):
|
|
# first, apply lora_hook to new conditioning, if provided
|
|
new_c = set_hooks_for_conditioning(new_c, hooks, append_hooks=append_hooks)
|
|
# next, add default_cond key to cond so that during sampling, it can be identified
|
|
new_c = conditioning_set_values(new_c, {'default': True})
|
|
# apply timesteps, if present
|
|
new_c = set_timesteps_for_conditioning(cond=new_c, timestep_range=timesteps_range)
|
|
# finally, combine with existing conditioning and store
|
|
combined_conds.append(combine_conditioning([c, new_c]))
|
|
return combined_conds
|