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import torch
import os
import sys
import json
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import hashlib
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import traceback
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import math
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import time
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import random
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import logging
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from PIL import Image , ImageOps , ImageSequence , ImageFile
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from PIL . PngImagePlugin import PngInfo
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import numpy as np
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import safetensors . torch
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sys . path . insert ( 0 , os . path . join ( os . path . dirname ( os . path . realpath ( __file__ ) ) , " comfy " ) )
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import comfy . diffusers_load
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import comfy . samplers
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import comfy . sample
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import comfy . sd
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import comfy . utils
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import comfy . controlnet
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import comfy . clip_vision
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import comfy . model_management
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from comfy . cli_args import args
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import importlib
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import folder_paths
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import latent_preview
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import node_helpers
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def before_node_execution ( ) :
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comfy . model_management . throw_exception_if_processing_interrupted ( )
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def interrupt_processing ( value = True ) :
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comfy . model_management . interrupt_current_processing ( value )
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MAX_RESOLUTION = 16384
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class CLIPTextEncode :
@classmethod
def INPUT_TYPES ( s ) :
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return {
" required " : {
" text " : ( " STRING " , { " multiline " : True , " dynamicPrompts " : True , " tooltip " : " The text to be encoded. " } ) ,
" clip " : ( " CLIP " , { " tooltip " : " The CLIP model used for encoding the text. " } )
}
}
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RETURN_TYPES = ( " CONDITIONING " , )
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OUTPUT_TOOLTIPS = ( " A conditioning containing the embedded text used to guide the diffusion model. " , )
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FUNCTION = " encode "
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CATEGORY = " conditioning "
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DESCRIPTION = " Encodes a text prompt using a CLIP model into an embedding that can be used to guide the diffusion model towards generating specific images. "
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def encode ( self , clip , text ) :
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tokens = clip . tokenize ( text )
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output = clip . encode_from_tokens ( tokens , return_pooled = True , return_dict = True )
cond = output . pop ( " cond " )
return ( [ [ cond , output ] ] , )
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class ConditioningCombine :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning_1 " : ( " CONDITIONING " , ) , " conditioning_2 " : ( " CONDITIONING " , ) } }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " combine "
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CATEGORY = " conditioning "
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def combine ( self , conditioning_1 , conditioning_2 ) :
return ( conditioning_1 + conditioning_2 , )
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class ConditioningAverage :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " conditioning_to " : ( " CONDITIONING " , ) , " conditioning_from " : ( " CONDITIONING " , ) ,
" conditioning_to_strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 1.0 , " step " : 0.01 } )
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} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " addWeighted "
CATEGORY = " conditioning "
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def addWeighted ( self , conditioning_to , conditioning_from , conditioning_to_strength ) :
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out = [ ]
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if len ( conditioning_from ) > 1 :
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logging . warning ( " Warning: ConditioningAverage conditioning_from contains more than 1 cond, only the first one will actually be applied to conditioning_to. " )
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cond_from = conditioning_from [ 0 ] [ 0 ]
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pooled_output_from = conditioning_from [ 0 ] [ 1 ] . get ( " pooled_output " , None )
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for i in range ( len ( conditioning_to ) ) :
t1 = conditioning_to [ i ] [ 0 ]
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pooled_output_to = conditioning_to [ i ] [ 1 ] . get ( " pooled_output " , pooled_output_from )
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t0 = cond_from [ : , : t1 . shape [ 1 ] ]
if t0 . shape [ 1 ] < t1 . shape [ 1 ] :
t0 = torch . cat ( [ t0 ] + [ torch . zeros ( ( 1 , ( t1 . shape [ 1 ] - t0 . shape [ 1 ] ) , t1 . shape [ 2 ] ) ) ] , dim = 1 )
tw = torch . mul ( t1 , conditioning_to_strength ) + torch . mul ( t0 , ( 1.0 - conditioning_to_strength ) )
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t_to = conditioning_to [ i ] [ 1 ] . copy ( )
if pooled_output_from is not None and pooled_output_to is not None :
t_to [ " pooled_output " ] = torch . mul ( pooled_output_to , conditioning_to_strength ) + torch . mul ( pooled_output_from , ( 1.0 - conditioning_to_strength ) )
elif pooled_output_from is not None :
t_to [ " pooled_output " ] = pooled_output_from
n = [ tw , t_to ]
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out . append ( n )
return ( out , )
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class ConditioningConcat :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : {
" conditioning_to " : ( " CONDITIONING " , ) ,
" conditioning_from " : ( " CONDITIONING " , ) ,
} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " concat "
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CATEGORY = " conditioning "
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def concat ( self , conditioning_to , conditioning_from ) :
out = [ ]
if len ( conditioning_from ) > 1 :
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logging . warning ( " Warning: ConditioningConcat conditioning_from contains more than 1 cond, only the first one will actually be applied to conditioning_to. " )
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cond_from = conditioning_from [ 0 ] [ 0 ]
for i in range ( len ( conditioning_to ) ) :
t1 = conditioning_to [ i ] [ 0 ]
tw = torch . cat ( ( t1 , cond_from ) , 1 )
n = [ tw , conditioning_to [ i ] [ 1 ] . copy ( ) ]
out . append ( n )
return ( out , )
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class ConditioningSetArea :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
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" width " : ( " INT " , { " default " : 64 , " min " : 64 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" height " : ( " INT " , { " default " : 64 , " min " : 64 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" x " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" y " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
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" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 10.0 , " step " : 0.01 } ) ,
} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " append "
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CATEGORY = " conditioning "
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def append ( self , conditioning , width , height , x , y , strength ) :
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c = node_helpers . conditioning_set_values ( conditioning , { " area " : ( height / / 8 , width / / 8 , y / / 8 , x / / 8 ) ,
" strength " : strength ,
" set_area_to_bounds " : False } )
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return ( c , )
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class ConditioningSetAreaPercentage :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
" width " : ( " FLOAT " , { " default " : 1.0 , " min " : 0 , " max " : 1.0 , " step " : 0.01 } ) ,
" height " : ( " FLOAT " , { " default " : 1.0 , " min " : 0 , " max " : 1.0 , " step " : 0.01 } ) ,
" x " : ( " FLOAT " , { " default " : 0 , " min " : 0 , " max " : 1.0 , " step " : 0.01 } ) ,
" y " : ( " FLOAT " , { " default " : 0 , " min " : 0 , " max " : 1.0 , " step " : 0.01 } ) ,
" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 10.0 , " step " : 0.01 } ) ,
} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " append "
CATEGORY = " conditioning "
def append ( self , conditioning , width , height , x , y , strength ) :
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c = node_helpers . conditioning_set_values ( conditioning , { " area " : ( " percentage " , height , width , y , x ) ,
" strength " : strength ,
" set_area_to_bounds " : False } )
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return ( c , )
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class ConditioningSetAreaStrength :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 10.0 , " step " : 0.01 } ) ,
} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " append "
CATEGORY = " conditioning "
def append ( self , conditioning , strength ) :
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c = node_helpers . conditioning_set_values ( conditioning , { " strength " : strength } )
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return ( c , )
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class ConditioningSetMask :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
" mask " : ( " MASK " , ) ,
" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 10.0 , " step " : 0.01 } ) ,
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" set_cond_area " : ( [ " default " , " mask bounds " ] , ) ,
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} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " append "
CATEGORY = " conditioning "
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def append ( self , conditioning , mask , set_cond_area , strength ) :
set_area_to_bounds = False
if set_cond_area != " default " :
set_area_to_bounds = True
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if len ( mask . shape ) < 3 :
mask = mask . unsqueeze ( 0 )
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c = node_helpers . conditioning_set_values ( conditioning , { " mask " : mask ,
" set_area_to_bounds " : set_area_to_bounds ,
" mask_strength " : strength } )
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return ( c , )
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class ConditioningZeroOut :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning " : ( " CONDITIONING " , ) } }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " zero_out "
CATEGORY = " advanced/conditioning "
def zero_out ( self , conditioning ) :
c = [ ]
for t in conditioning :
d = t [ 1 ] . copy ( )
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pooled_output = d . get ( " pooled_output " , None )
if pooled_output is not None :
d [ " pooled_output " ] = torch . zeros_like ( pooled_output )
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n = [ torch . zeros_like ( t [ 0 ] ) , d ]
c . append ( n )
return ( c , )
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class ConditioningSetTimestepRange :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
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" start " : ( " FLOAT " , { " default " : 0.0 , " min " : 0.0 , " max " : 1.0 , " step " : 0.001 } ) ,
" end " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 1.0 , " step " : 0.001 } )
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} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " set_range "
CATEGORY = " advanced/conditioning "
def set_range ( self , conditioning , start , end ) :
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c = node_helpers . conditioning_set_values ( conditioning , { " start_percent " : start ,
" end_percent " : end } )
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return ( c , )
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class VAEDecode :
@classmethod
def INPUT_TYPES ( s ) :
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return {
" required " : {
" samples " : ( " LATENT " , { " tooltip " : " The latent to be decoded. " } ) ,
" vae " : ( " VAE " , { " tooltip " : " The VAE model used for decoding the latent. " } )
}
}
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RETURN_TYPES = ( " IMAGE " , )
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OUTPUT_TOOLTIPS = ( " The decoded image. " , )
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FUNCTION = " decode "
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CATEGORY = " latent "
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DESCRIPTION = " Decodes latent images back into pixel space images. "
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def decode ( self , vae , samples ) :
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images = vae . decode ( samples [ " samples " ] )
if len ( images . shape ) == 5 : #Combine batches
images = images . reshape ( - 1 , images . shape [ - 3 ] , images . shape [ - 2 ] , images . shape [ - 1 ] )
return ( images , )
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class VAEDecodeTiled :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " samples " : ( " LATENT " , ) , " vae " : ( " VAE " , ) ,
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" tile_size " : ( " INT " , { " default " : 512 , " min " : 128 , " max " : 4096 , " step " : 32 } ) ,
" overlap " : ( " INT " , { " default " : 64 , " min " : 0 , " max " : 4096 , " step " : 32 } ) ,
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} }
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RETURN_TYPES = ( " IMAGE " , )
FUNCTION = " decode "
CATEGORY = " _for_testing "
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def decode ( self , vae , samples , tile_size , overlap = 64 ) :
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if tile_size < overlap * 4 :
overlap = tile_size / / 4
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compression = vae . spacial_compression_decode ( )
images = vae . decode_tiled ( samples [ " samples " ] , tile_x = tile_size / / compression , tile_y = tile_size / / compression , overlap = overlap / / compression )
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if len ( images . shape ) == 5 : #Combine batches
images = images . reshape ( - 1 , images . shape [ - 3 ] , images . shape [ - 2 ] , images . shape [ - 1 ] )
return ( images , )
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class VAEEncode :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " pixels " : ( " IMAGE " , ) , " vae " : ( " VAE " , ) } }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " encode "
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CATEGORY = " latent "
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def encode ( self , vae , pixels ) :
t = vae . encode ( pixels [ : , : , : , : 3 ] )
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return ( { " samples " : t } , )
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class VAEEncodeTiled :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " pixels " : ( " IMAGE " , ) , " vae " : ( " VAE " , ) ,
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" tile_size " : ( " INT " , { " default " : 512 , " min " : 320 , " max " : 4096 , " step " : 64 } )
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} }
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RETURN_TYPES = ( " LATENT " , )
FUNCTION = " encode "
CATEGORY = " _for_testing "
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def encode ( self , vae , pixels , tile_size ) :
t = vae . encode_tiled ( pixels [ : , : , : , : 3 ] , tile_x = tile_size , tile_y = tile_size , )
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return ( { " samples " : t } , )
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class VAEEncodeForInpaint :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " pixels " : ( " IMAGE " , ) , " vae " : ( " VAE " , ) , " mask " : ( " MASK " , ) , " grow_mask_by " : ( " INT " , { " default " : 6 , " min " : 0 , " max " : 64 , " step " : 1 } ) , } }
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RETURN_TYPES = ( " LATENT " , )
FUNCTION = " encode "
CATEGORY = " latent/inpaint "
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def encode ( self , vae , pixels , mask , grow_mask_by = 6 ) :
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x = ( pixels . shape [ 1 ] / / vae . downscale_ratio ) * vae . downscale_ratio
y = ( pixels . shape [ 2 ] / / vae . downscale_ratio ) * vae . downscale_ratio
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mask = torch . nn . functional . interpolate ( mask . reshape ( ( - 1 , 1 , mask . shape [ - 2 ] , mask . shape [ - 1 ] ) ) , size = ( pixels . shape [ 1 ] , pixels . shape [ 2 ] ) , mode = " bilinear " )
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pixels = pixels . clone ( )
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if pixels . shape [ 1 ] != x or pixels . shape [ 2 ] != y :
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x_offset = ( pixels . shape [ 1 ] % vae . downscale_ratio ) / / 2
y_offset = ( pixels . shape [ 2 ] % vae . downscale_ratio ) / / 2
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pixels = pixels [ : , x_offset : x + x_offset , y_offset : y + y_offset , : ]
mask = mask [ : , : , x_offset : x + x_offset , y_offset : y + y_offset ]
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#grow mask by a few pixels to keep things seamless in latent space
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if grow_mask_by == 0 :
mask_erosion = mask
else :
kernel_tensor = torch . ones ( ( 1 , 1 , grow_mask_by , grow_mask_by ) )
padding = math . ceil ( ( grow_mask_by - 1 ) / 2 )
mask_erosion = torch . clamp ( torch . nn . functional . conv2d ( mask . round ( ) , kernel_tensor , padding = padding ) , 0 , 1 )
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m = ( 1.0 - mask . round ( ) ) . squeeze ( 1 )
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for i in range ( 3 ) :
pixels [ : , : , : , i ] - = 0.5
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pixels [ : , : , : , i ] * = m
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pixels [ : , : , : , i ] + = 0.5
t = vae . encode ( pixels )
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return ( { " samples " : t , " noise_mask " : ( mask_erosion [ : , : , : x , : y ] . round ( ) ) } , )
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class InpaintModelConditioning :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " positive " : ( " CONDITIONING " , ) ,
" negative " : ( " CONDITIONING " , ) ,
" vae " : ( " VAE " , ) ,
" pixels " : ( " IMAGE " , ) ,
" mask " : ( " MASK " , ) ,
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" noise_mask " : ( " BOOLEAN " , { " default " : True , " tooltip " : " Add a noise mask to the latent so sampling will only happen within the mask. Might improve results or completely break things depending on the model. " } ) ,
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} }
RETURN_TYPES = ( " CONDITIONING " , " CONDITIONING " , " LATENT " )
RETURN_NAMES = ( " positive " , " negative " , " latent " )
FUNCTION = " encode "
CATEGORY = " conditioning/inpaint "
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def encode ( self , positive , negative , pixels , vae , mask , noise_mask = True ) :
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x = ( pixels . shape [ 1 ] / / 8 ) * 8
y = ( pixels . shape [ 2 ] / / 8 ) * 8
mask = torch . nn . functional . interpolate ( mask . reshape ( ( - 1 , 1 , mask . shape [ - 2 ] , mask . shape [ - 1 ] ) ) , size = ( pixels . shape [ 1 ] , pixels . shape [ 2 ] ) , mode = " bilinear " )
orig_pixels = pixels
pixels = orig_pixels . clone ( )
if pixels . shape [ 1 ] != x or pixels . shape [ 2 ] != y :
x_offset = ( pixels . shape [ 1 ] % 8 ) / / 2
y_offset = ( pixels . shape [ 2 ] % 8 ) / / 2
pixels = pixels [ : , x_offset : x + x_offset , y_offset : y + y_offset , : ]
mask = mask [ : , : , x_offset : x + x_offset , y_offset : y + y_offset ]
m = ( 1.0 - mask . round ( ) ) . squeeze ( 1 )
for i in range ( 3 ) :
pixels [ : , : , : , i ] - = 0.5
pixels [ : , : , : , i ] * = m
pixels [ : , : , : , i ] + = 0.5
concat_latent = vae . encode ( pixels )
orig_latent = vae . encode ( orig_pixels )
out_latent = { }
out_latent [ " samples " ] = orig_latent
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if noise_mask :
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out_latent [ " noise_mask " ] = mask
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out = [ ]
for conditioning in [ positive , negative ] :
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c = node_helpers . conditioning_set_values ( conditioning , { " concat_latent_image " : concat_latent ,
" concat_mask " : mask } )
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out . append ( c )
return ( out [ 0 ] , out [ 1 ] , out_latent )
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class SaveLatent :
def __init__ ( self ) :
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self . output_dir = folder_paths . get_output_directory ( )
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@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) ,
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" filename_prefix " : ( " STRING " , { " default " : " latents/ComfyUI " } ) } ,
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" hidden " : { " prompt " : " PROMPT " , " extra_pnginfo " : " EXTRA_PNGINFO " } ,
}
RETURN_TYPES = ( )
FUNCTION = " save "
OUTPUT_NODE = True
CATEGORY = " _for_testing "
def save ( self , samples , filename_prefix = " ComfyUI " , prompt = None , extra_pnginfo = None ) :
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full_output_folder , filename , counter , subfolder , filename_prefix = folder_paths . get_save_image_path ( filename_prefix , self . output_dir )
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# support save metadata for latent sharing
prompt_info = " "
if prompt is not None :
prompt_info = json . dumps ( prompt )
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metadata = None
if not args . disable_metadata :
metadata = { " prompt " : prompt_info }
if extra_pnginfo is not None :
for x in extra_pnginfo :
metadata [ x ] = json . dumps ( extra_pnginfo [ x ] )
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file = f " { filename } _ { counter : 05 } _.latent "
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results = list ( )
results . append ( {
" filename " : file ,
" subfolder " : subfolder ,
" type " : " output "
} )
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file = os . path . join ( full_output_folder , file )
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output = { }
output [ " latent_tensor " ] = samples [ " samples " ]
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output [ " latent_format_version_0 " ] = torch . tensor ( [ ] )
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comfy . utils . save_torch_file ( output , file , metadata = metadata )
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return { " ui " : { " latents " : results } }
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class LoadLatent :
@classmethod
def INPUT_TYPES ( s ) :
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input_dir = folder_paths . get_input_directory ( )
files = [ f for f in os . listdir ( input_dir ) if os . path . isfile ( os . path . join ( input_dir , f ) ) and f . endswith ( " .latent " ) ]
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return { " required " : { " latent " : [ sorted ( files ) , ] } , }
CATEGORY = " _for_testing "
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " load "
def load ( self , latent ) :
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latent_path = folder_paths . get_annotated_filepath ( latent )
latent = safetensors . torch . load_file ( latent_path , device = " cpu " )
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multiplier = 1.0
if " latent_format_version_0 " not in latent :
multiplier = 1.0 / 0.18215
samples = { " samples " : latent [ " latent_tensor " ] . float ( ) * multiplier }
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return ( samples , )
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@classmethod
def IS_CHANGED ( s , latent ) :
image_path = folder_paths . get_annotated_filepath ( latent )
m = hashlib . sha256 ( )
with open ( image_path , ' rb ' ) as f :
m . update ( f . read ( ) )
return m . digest ( ) . hex ( )
@classmethod
def VALIDATE_INPUTS ( s , latent ) :
if not folder_paths . exists_annotated_filepath ( latent ) :
return " Invalid latent file: {} " . format ( latent )
return True
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class CheckpointLoader :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " config_name " : ( folder_paths . get_filename_list ( " configs " ) , ) ,
" ckpt_name " : ( folder_paths . get_filename_list ( " checkpoints " ) , ) } }
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RETURN_TYPES = ( " MODEL " , " CLIP " , " VAE " )
FUNCTION = " load_checkpoint "
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CATEGORY = " advanced/loaders "
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DEPRECATED = True
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def load_checkpoint ( self , config_name , ckpt_name ) :
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config_path = folder_paths . get_full_path ( " configs " , config_name )
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ckpt_path = folder_paths . get_full_path_or_raise ( " checkpoints " , ckpt_name )
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return comfy . sd . load_checkpoint ( config_path , ckpt_path , output_vae = True , output_clip = True , embedding_directory = folder_paths . get_folder_paths ( " embeddings " ) )
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class CheckpointLoaderSimple :
@classmethod
def INPUT_TYPES ( s ) :
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return {
" required " : {
" ckpt_name " : ( folder_paths . get_filename_list ( " checkpoints " ) , { " tooltip " : " The name of the checkpoint (model) to load. " } ) ,
}
}
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RETURN_TYPES = ( " MODEL " , " CLIP " , " VAE " )
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OUTPUT_TOOLTIPS = ( " The model used for denoising latents. " ,
" The CLIP model used for encoding text prompts. " ,
" The VAE model used for encoding and decoding images to and from latent space. " )
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FUNCTION = " load_checkpoint "
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CATEGORY = " loaders "
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DESCRIPTION = " Loads a diffusion model checkpoint, diffusion models are used to denoise latents. "
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def load_checkpoint ( self , ckpt_name ) :
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ckpt_path = folder_paths . get_full_path_or_raise ( " checkpoints " , ckpt_name )
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out = comfy . sd . load_checkpoint_guess_config ( ckpt_path , output_vae = True , output_clip = True , embedding_directory = folder_paths . get_folder_paths ( " embeddings " ) )
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return out [ : 3 ]
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class DiffusersLoader :
@classmethod
def INPUT_TYPES ( cls ) :
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paths = [ ]
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for search_path in folder_paths . get_folder_paths ( " diffusers " ) :
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if os . path . exists ( search_path ) :
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for root , subdir , files in os . walk ( search_path , followlinks = True ) :
if " model_index.json " in files :
paths . append ( os . path . relpath ( root , start = search_path ) )
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return { " required " : { " model_path " : ( paths , ) , } }
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RETURN_TYPES = ( " MODEL " , " CLIP " , " VAE " )
FUNCTION = " load_checkpoint "
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CATEGORY = " advanced/loaders/deprecated "
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def load_checkpoint ( self , model_path , output_vae = True , output_clip = True ) :
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for search_path in folder_paths . get_folder_paths ( " diffusers " ) :
if os . path . exists ( search_path ) :
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path = os . path . join ( search_path , model_path )
if os . path . exists ( path ) :
model_path = path
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break
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return comfy . diffusers_load . load_diffusers ( model_path , output_vae = output_vae , output_clip = output_clip , embedding_directory = folder_paths . get_folder_paths ( " embeddings " ) )
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class unCLIPCheckpointLoader :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " ckpt_name " : ( folder_paths . get_filename_list ( " checkpoints " ) , ) ,
} }
RETURN_TYPES = ( " MODEL " , " CLIP " , " VAE " , " CLIP_VISION " )
FUNCTION = " load_checkpoint "
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CATEGORY = " loaders "
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def load_checkpoint ( self , ckpt_name , output_vae = True , output_clip = True ) :
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ckpt_path = folder_paths . get_full_path_or_raise ( " checkpoints " , ckpt_name )
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out = comfy . sd . load_checkpoint_guess_config ( ckpt_path , output_vae = True , output_clip = True , output_clipvision = True , embedding_directory = folder_paths . get_folder_paths ( " embeddings " ) )
return out
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class CLIPSetLastLayer :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " clip " : ( " CLIP " , ) ,
" stop_at_clip_layer " : ( " INT " , { " default " : - 1 , " min " : - 24 , " max " : - 1 , " step " : 1 } ) ,
} }
RETURN_TYPES = ( " CLIP " , )
FUNCTION = " set_last_layer "
CATEGORY = " conditioning "
def set_last_layer ( self , clip , stop_at_clip_layer ) :
clip = clip . clone ( )
clip . clip_layer ( stop_at_clip_layer )
return ( clip , )
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class LoraLoader :
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def __init__ ( self ) :
self . loaded_lora = None
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@classmethod
def INPUT_TYPES ( s ) :
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return {
" required " : {
" model " : ( " MODEL " , { " tooltip " : " The diffusion model the LoRA will be applied to. " } ) ,
" clip " : ( " CLIP " , { " tooltip " : " The CLIP model the LoRA will be applied to. " } ) ,
" lora_name " : ( folder_paths . get_filename_list ( " loras " ) , { " tooltip " : " The name of the LoRA. " } ) ,
" strength_model " : ( " FLOAT " , { " default " : 1.0 , " min " : - 100.0 , " max " : 100.0 , " step " : 0.01 , " tooltip " : " How strongly to modify the diffusion model. This value can be negative. " } ) ,
" strength_clip " : ( " FLOAT " , { " default " : 1.0 , " min " : - 100.0 , " max " : 100.0 , " step " : 0.01 , " tooltip " : " How strongly to modify the CLIP model. This value can be negative. " } ) ,
}
}
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RETURN_TYPES = ( " MODEL " , " CLIP " )
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OUTPUT_TOOLTIPS = ( " The modified diffusion model. " , " The modified CLIP model. " )
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FUNCTION = " load_lora "
CATEGORY = " loaders "
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DESCRIPTION = " LoRAs are used to modify diffusion and CLIP models, altering the way in which latents are denoised such as applying styles. Multiple LoRA nodes can be linked together. "
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def load_lora ( self , model , clip , lora_name , strength_model , strength_clip ) :
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if strength_model == 0 and strength_clip == 0 :
return ( model , clip )
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lora_path = folder_paths . get_full_path_or_raise ( " loras " , lora_name )
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lora = None
if self . loaded_lora is not None :
if self . loaded_lora [ 0 ] == lora_path :
lora = self . loaded_lora [ 1 ]
else :
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temp = self . loaded_lora
self . loaded_lora = None
del temp
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if lora is None :
lora = comfy . utils . load_torch_file ( lora_path , safe_load = True )
self . loaded_lora = ( lora_path , lora )
model_lora , clip_lora = comfy . sd . load_lora_for_models ( model , clip , lora , strength_model , strength_clip )
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return ( model_lora , clip_lora )
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class LoraLoaderModelOnly ( LoraLoader ) :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " model " : ( " MODEL " , ) ,
" lora_name " : ( folder_paths . get_filename_list ( " loras " ) , ) ,
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" strength_model " : ( " FLOAT " , { " default " : 1.0 , " min " : - 100.0 , " max " : 100.0 , " step " : 0.01 } ) ,
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} }
RETURN_TYPES = ( " MODEL " , )
FUNCTION = " load_lora_model_only "
def load_lora_model_only ( self , model , lora_name , strength_model ) :
return ( self . load_lora ( model , None , lora_name , strength_model , 0 ) [ 0 ] , )
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class VAELoader :
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@staticmethod
def vae_list ( ) :
vaes = folder_paths . get_filename_list ( " vae " )
approx_vaes = folder_paths . get_filename_list ( " vae_approx " )
sdxl_taesd_enc = False
sdxl_taesd_dec = False
sd1_taesd_enc = False
sd1_taesd_dec = False
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sd3_taesd_enc = False
sd3_taesd_dec = False
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f1_taesd_enc = False
f1_taesd_dec = False
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for v in approx_vaes :
if v . startswith ( " taesd_decoder. " ) :
sd1_taesd_dec = True
elif v . startswith ( " taesd_encoder. " ) :
sd1_taesd_enc = True
elif v . startswith ( " taesdxl_decoder. " ) :
sdxl_taesd_dec = True
elif v . startswith ( " taesdxl_encoder. " ) :
sdxl_taesd_enc = True
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elif v . startswith ( " taesd3_decoder. " ) :
sd3_taesd_dec = True
elif v . startswith ( " taesd3_encoder. " ) :
sd3_taesd_enc = True
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elif v . startswith ( " taef1_encoder. " ) :
f1_taesd_dec = True
elif v . startswith ( " taef1_decoder. " ) :
f1_taesd_enc = True
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if sd1_taesd_dec and sd1_taesd_enc :
vaes . append ( " taesd " )
if sdxl_taesd_dec and sdxl_taesd_enc :
vaes . append ( " taesdxl " )
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if sd3_taesd_dec and sd3_taesd_enc :
vaes . append ( " taesd3 " )
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if f1_taesd_dec and f1_taesd_enc :
vaes . append ( " taef1 " )
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return vaes
@staticmethod
def load_taesd ( name ) :
sd = { }
approx_vaes = folder_paths . get_filename_list ( " vae_approx " )
encoder = next ( filter ( lambda a : a . startswith ( " {} _encoder. " . format ( name ) ) , approx_vaes ) )
decoder = next ( filter ( lambda a : a . startswith ( " {} _decoder. " . format ( name ) ) , approx_vaes ) )
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enc = comfy . utils . load_torch_file ( folder_paths . get_full_path_or_raise ( " vae_approx " , encoder ) )
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for k in enc :
sd [ " taesd_encoder. {} " . format ( k ) ] = enc [ k ]
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dec = comfy . utils . load_torch_file ( folder_paths . get_full_path_or_raise ( " vae_approx " , decoder ) )
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for k in dec :
sd [ " taesd_decoder. {} " . format ( k ) ] = dec [ k ]
if name == " taesd " :
sd [ " vae_scale " ] = torch . tensor ( 0.18215 )
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sd [ " vae_shift " ] = torch . tensor ( 0.0 )
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elif name == " taesdxl " :
sd [ " vae_scale " ] = torch . tensor ( 0.13025 )
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sd [ " vae_shift " ] = torch . tensor ( 0.0 )
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elif name == " taesd3 " :
sd [ " vae_scale " ] = torch . tensor ( 1.5305 )
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sd [ " vae_shift " ] = torch . tensor ( 0.0609 )
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elif name == " taef1 " :
sd [ " vae_scale " ] = torch . tensor ( 0.3611 )
sd [ " vae_shift " ] = torch . tensor ( 0.1159 )
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return sd
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@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " vae_name " : ( s . vae_list ( ) , ) } }
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RETURN_TYPES = ( " VAE " , )
FUNCTION = " load_vae "
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CATEGORY = " loaders "
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#TODO: scale factor?
def load_vae ( self , vae_name ) :
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if vae_name in [ " taesd " , " taesdxl " , " taesd3 " , " taef1 " ] :
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sd = self . load_taesd ( vae_name )
else :
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vae_path = folder_paths . get_full_path_or_raise ( " vae " , vae_name )
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sd = comfy . utils . load_torch_file ( vae_path )
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vae = comfy . sd . VAE ( sd = sd )
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return ( vae , )
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class ControlNetLoader :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " control_net_name " : ( folder_paths . get_filename_list ( " controlnet " ) , ) } }
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RETURN_TYPES = ( " CONTROL_NET " , )
FUNCTION = " load_controlnet "
CATEGORY = " loaders "
def load_controlnet ( self , control_net_name ) :
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controlnet_path = folder_paths . get_full_path_or_raise ( " controlnet " , control_net_name )
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controlnet = comfy . controlnet . load_controlnet ( controlnet_path )
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return ( controlnet , )
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class DiffControlNetLoader :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " model " : ( " MODEL " , ) ,
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" control_net_name " : ( folder_paths . get_filename_list ( " controlnet " ) , ) } }
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RETURN_TYPES = ( " CONTROL_NET " , )
FUNCTION = " load_controlnet "
CATEGORY = " loaders "
def load_controlnet ( self , model , control_net_name ) :
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controlnet_path = folder_paths . get_full_path_or_raise ( " controlnet " , control_net_name )
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controlnet = comfy . controlnet . load_controlnet ( controlnet_path , model )
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return ( controlnet , )
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class ControlNetApply :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
" control_net " : ( " CONTROL_NET " , ) ,
" image " : ( " IMAGE " , ) ,
" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 10.0 , " step " : 0.01 } )
} }
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RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " apply_controlnet "
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DEPRECATED = True
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CATEGORY = " conditioning/controlnet "
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def apply_controlnet ( self , conditioning , control_net , image , strength ) :
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if strength == 0 :
return ( conditioning , )
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c = [ ]
control_hint = image . movedim ( - 1 , 1 )
for t in conditioning :
n = [ t [ 0 ] , t [ 1 ] . copy ( ) ]
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c_net = control_net . copy ( ) . set_cond_hint ( control_hint , strength )
if ' control ' in t [ 1 ] :
c_net . set_previous_controlnet ( t [ 1 ] [ ' control ' ] )
n [ 1 ] [ ' control ' ] = c_net
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n [ 1 ] [ ' control_apply_to_uncond ' ] = True
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c . append ( n )
return ( c , )
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class ControlNetApplyAdvanced :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " positive " : ( " CONDITIONING " , ) ,
" negative " : ( " CONDITIONING " , ) ,
" control_net " : ( " CONTROL_NET " , ) ,
" image " : ( " IMAGE " , ) ,
" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 10.0 , " step " : 0.01 } ) ,
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" start_percent " : ( " FLOAT " , { " default " : 0.0 , " min " : 0.0 , " max " : 1.0 , " step " : 0.001 } ) ,
" end_percent " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 1.0 , " step " : 0.001 } )
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} ,
" optional " : { " vae " : ( " VAE " , ) ,
}
}
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RETURN_TYPES = ( " CONDITIONING " , " CONDITIONING " )
RETURN_NAMES = ( " positive " , " negative " )
FUNCTION = " apply_controlnet "
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CATEGORY = " conditioning/controlnet "
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def apply_controlnet ( self , positive , negative , control_net , image , strength , start_percent , end_percent , vae = None , extra_concat = [ ] ) :
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if strength == 0 :
return ( positive , negative )
control_hint = image . movedim ( - 1 , 1 )
cnets = { }
out = [ ]
for conditioning in [ positive , negative ] :
c = [ ]
for t in conditioning :
d = t [ 1 ] . copy ( )
prev_cnet = d . get ( ' control ' , None )
if prev_cnet in cnets :
c_net = cnets [ prev_cnet ]
else :
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c_net = control_net . copy ( ) . set_cond_hint ( control_hint , strength , ( start_percent , end_percent ) , vae = vae , extra_concat = extra_concat )
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c_net . set_previous_controlnet ( prev_cnet )
cnets [ prev_cnet ] = c_net
d [ ' control ' ] = c_net
d [ ' control_apply_to_uncond ' ] = False
n = [ t [ 0 ] , d ]
c . append ( n )
out . append ( c )
return ( out [ 0 ] , out [ 1 ] )
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class UNETLoader :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " unet_name " : ( folder_paths . get_filename_list ( " diffusion_models " ) , ) ,
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" weight_dtype " : ( [ " default " , " fp8_e4m3fn " , " fp8_e4m3fn_fast " , " fp8_e5m2 " ] , )
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} }
RETURN_TYPES = ( " MODEL " , )
FUNCTION = " load_unet "
CATEGORY = " advanced/loaders "
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def load_unet ( self , unet_name , weight_dtype ) :
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model_options = { }
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if weight_dtype == " fp8_e4m3fn " :
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model_options [ " dtype " ] = torch . float8_e4m3fn
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elif weight_dtype == " fp8_e4m3fn_fast " :
model_options [ " dtype " ] = torch . float8_e4m3fn
model_options [ " fp8_optimizations " ] = True
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elif weight_dtype == " fp8_e5m2 " :
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model_options [ " dtype " ] = torch . float8_e5m2
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unet_path = folder_paths . get_full_path_or_raise ( " diffusion_models " , unet_name )
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model = comfy . sd . load_diffusion_model ( unet_path , model_options = model_options )
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return ( model , )
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class CLIPLoader :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " clip_name " : ( folder_paths . get_filename_list ( " text_encoders " ) , ) ,
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" type " : ( [ " stable_diffusion " , " stable_cascade " , " sd3 " , " stable_audio " , " mochi " , " ltxv " ] , ) ,
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} }
RETURN_TYPES = ( " CLIP " , )
FUNCTION = " load_clip "
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CATEGORY = " advanced/loaders "
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DESCRIPTION = " [Recipes] \n \n stable_diffusion: clip-l \n stable_cascade: clip-g \n sd3: t5 / clip-g / clip-l \n stable_audio: t5 \n mochi: t5 "
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def load_clip ( self , clip_name , type = " stable_diffusion " ) :
if type == " stable_cascade " :
clip_type = comfy . sd . CLIPType . STABLE_CASCADE
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elif type == " sd3 " :
clip_type = comfy . sd . CLIPType . SD3
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elif type == " stable_audio " :
clip_type = comfy . sd . CLIPType . STABLE_AUDIO
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elif type == " mochi " :
clip_type = comfy . sd . CLIPType . MOCHI
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elif type == " ltxv " :
clip_type = comfy . sd . CLIPType . LTXV
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else :
clip_type = comfy . sd . CLIPType . STABLE_DIFFUSION
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clip_path = folder_paths . get_full_path_or_raise ( " text_encoders " , clip_name )
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clip = comfy . sd . load_clip ( ckpt_paths = [ clip_path ] , embedding_directory = folder_paths . get_folder_paths ( " embeddings " ) , clip_type = clip_type )
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return ( clip , )
class DualCLIPLoader :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " clip_name1 " : ( folder_paths . get_filename_list ( " text_encoders " ) , ) ,
" clip_name2 " : ( folder_paths . get_filename_list ( " text_encoders " ) , ) ,
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" type " : ( [ " sdxl " , " sd3 " , " flux " ] , ) ,
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} }
RETURN_TYPES = ( " CLIP " , )
FUNCTION = " load_clip "
CATEGORY = " advanced/loaders "
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DESCRIPTION = " [Recipes] \n \n sdxl: clip-l, clip-g \n sd3: clip-l, clip-g / clip-l, t5 / clip-g, t5 \n flux: clip-l, t5 "
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def load_clip ( self , clip_name1 , clip_name2 , type ) :
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clip_path1 = folder_paths . get_full_path_or_raise ( " text_encoders " , clip_name1 )
clip_path2 = folder_paths . get_full_path_or_raise ( " text_encoders " , clip_name2 )
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if type == " sdxl " :
clip_type = comfy . sd . CLIPType . STABLE_DIFFUSION
elif type == " sd3 " :
clip_type = comfy . sd . CLIPType . SD3
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elif type == " flux " :
clip_type = comfy . sd . CLIPType . FLUX
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clip = comfy . sd . load_clip ( ckpt_paths = [ clip_path1 , clip_path2 ] , embedding_directory = folder_paths . get_folder_paths ( " embeddings " ) , clip_type = clip_type )
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return ( clip , )
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class CLIPVisionLoader :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " clip_name " : ( folder_paths . get_filename_list ( " clip_vision " ) , ) ,
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} }
RETURN_TYPES = ( " CLIP_VISION " , )
FUNCTION = " load_clip "
CATEGORY = " loaders "
def load_clip ( self , clip_name ) :
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clip_path = folder_paths . get_full_path_or_raise ( " clip_vision " , clip_name )
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clip_vision = comfy . clip_vision . load ( clip_path )
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return ( clip_vision , )
class CLIPVisionEncode :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " clip_vision " : ( " CLIP_VISION " , ) ,
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" image " : ( " IMAGE " , ) ,
" crop " : ( [ " center " , " none " ] , )
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} }
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RETURN_TYPES = ( " CLIP_VISION_OUTPUT " , )
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FUNCTION = " encode "
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CATEGORY = " conditioning "
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def encode ( self , clip_vision , image , crop ) :
crop_image = True
if crop != " center " :
crop_image = False
output = clip_vision . encode_image ( image , crop = crop_image )
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return ( output , )
class StyleModelLoader :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " style_model_name " : ( folder_paths . get_filename_list ( " style_models " ) , ) } }
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RETURN_TYPES = ( " STYLE_MODEL " , )
FUNCTION = " load_style_model "
CATEGORY = " loaders "
def load_style_model ( self , style_model_name ) :
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style_model_path = folder_paths . get_full_path_or_raise ( " style_models " , style_model_name )
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style_model = comfy . sd . load_style_model ( style_model_path )
return ( style_model , )
class StyleModelApply :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
" style_model " : ( " STYLE_MODEL " , ) ,
" clip_vision_output " : ( " CLIP_VISION_OUTPUT " , ) ,
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" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 10.0 , " step " : 0.001 } ) ,
" strength_type " : ( [ " multiply " ] , ) ,
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} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " apply_stylemodel "
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CATEGORY = " conditioning/style_model "
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def apply_stylemodel ( self , clip_vision_output , style_model , conditioning , strength , strength_type ) :
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cond = style_model . get_cond ( clip_vision_output ) . flatten ( start_dim = 0 , end_dim = 1 ) . unsqueeze ( dim = 0 )
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if strength_type == " multiply " :
cond * = strength
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c = [ ]
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for t in conditioning :
n = [ torch . cat ( ( t [ 0 ] , cond ) , dim = 1 ) , t [ 1 ] . copy ( ) ]
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c . append ( n )
return ( c , )
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class unCLIPConditioning :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning " : ( " CONDITIONING " , ) ,
" clip_vision_output " : ( " CLIP_VISION_OUTPUT " , ) ,
" strength " : ( " FLOAT " , { " default " : 1.0 , " min " : - 10.0 , " max " : 10.0 , " step " : 0.01 } ) ,
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" noise_augmentation " : ( " FLOAT " , { " default " : 0.0 , " min " : 0.0 , " max " : 1.0 , " step " : 0.01 } ) ,
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} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " apply_adm "
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CATEGORY = " conditioning "
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def apply_adm ( self , conditioning , clip_vision_output , strength , noise_augmentation ) :
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if strength == 0 :
return ( conditioning , )
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c = [ ]
for t in conditioning :
o = t [ 1 ] . copy ( )
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x = { " clip_vision_output " : clip_vision_output , " strength " : strength , " noise_augmentation " : noise_augmentation }
if " unclip_conditioning " in o :
o [ " unclip_conditioning " ] = o [ " unclip_conditioning " ] [ : ] + [ x ]
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else :
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o [ " unclip_conditioning " ] = [ x ]
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n = [ t [ 0 ] , o ]
c . append ( n )
return ( c , )
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class GLIGENLoader :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " gligen_name " : ( folder_paths . get_filename_list ( " gligen " ) , ) } }
RETURN_TYPES = ( " GLIGEN " , )
FUNCTION = " load_gligen "
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CATEGORY = " loaders "
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def load_gligen ( self , gligen_name ) :
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gligen_path = folder_paths . get_full_path_or_raise ( " gligen " , gligen_name )
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gligen = comfy . sd . load_gligen ( gligen_path )
return ( gligen , )
class GLIGENTextBoxApply :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " conditioning_to " : ( " CONDITIONING " , ) ,
" clip " : ( " CLIP " , ) ,
" gligen_textbox_model " : ( " GLIGEN " , ) ,
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" text " : ( " STRING " , { " multiline " : True , " dynamicPrompts " : True } ) ,
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" width " : ( " INT " , { " default " : 64 , " min " : 8 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" height " : ( " INT " , { " default " : 64 , " min " : 8 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" x " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" y " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
} }
RETURN_TYPES = ( " CONDITIONING " , )
FUNCTION = " append "
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CATEGORY = " conditioning/gligen "
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def append ( self , conditioning_to , clip , gligen_textbox_model , text , width , height , x , y ) :
c = [ ]
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cond , cond_pooled = clip . encode_from_tokens ( clip . tokenize ( text ) , return_pooled = " unprojected " )
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for t in conditioning_to :
n = [ t [ 0 ] , t [ 1 ] . copy ( ) ]
position_params = [ ( cond_pooled , height / / 8 , width / / 8 , y / / 8 , x / / 8 ) ]
prev = [ ]
if " gligen " in n [ 1 ] :
prev = n [ 1 ] [ ' gligen ' ] [ 2 ]
n [ 1 ] [ ' gligen ' ] = ( " position " , gligen_textbox_model , prev + position_params )
c . append ( n )
return ( c , )
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class EmptyLatentImage :
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def __init__ ( self ) :
self . device = comfy . model_management . intermediate_device ( )
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@classmethod
def INPUT_TYPES ( s ) :
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return {
" required " : {
" width " : ( " INT " , { " default " : 512 , " min " : 16 , " max " : MAX_RESOLUTION , " step " : 8 , " tooltip " : " The width of the latent images in pixels. " } ) ,
" height " : ( " INT " , { " default " : 512 , " min " : 16 , " max " : MAX_RESOLUTION , " step " : 8 , " tooltip " : " The height of the latent images in pixels. " } ) ,
" batch_size " : ( " INT " , { " default " : 1 , " min " : 1 , " max " : 4096 , " tooltip " : " The number of latent images in the batch. " } )
}
}
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RETURN_TYPES = ( " LATENT " , )
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OUTPUT_TOOLTIPS = ( " The empty latent image batch. " , )
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FUNCTION = " generate "
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CATEGORY = " latent "
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DESCRIPTION = " Create a new batch of empty latent images to be denoised via sampling. "
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def generate ( self , width , height , batch_size = 1 ) :
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latent = torch . zeros ( [ batch_size , 4 , height / / 8 , width / / 8 ] , device = self . device )
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return ( { " samples " : latent } , )
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class LatentFromBatch :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) ,
" batch_index " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : 63 } ) ,
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" length " : ( " INT " , { " default " : 1 , " min " : 1 , " max " : 64 } ) ,
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} }
RETURN_TYPES = ( " LATENT " , )
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FUNCTION = " frombatch "
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CATEGORY = " latent/batch "
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def frombatch ( self , samples , batch_index , length ) :
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s = samples . copy ( )
s_in = samples [ " samples " ]
batch_index = min ( s_in . shape [ 0 ] - 1 , batch_index )
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length = min ( s_in . shape [ 0 ] - batch_index , length )
s [ " samples " ] = s_in [ batch_index : batch_index + length ] . clone ( )
if " noise_mask " in samples :
masks = samples [ " noise_mask " ]
if masks . shape [ 0 ] == 1 :
s [ " noise_mask " ] = masks . clone ( )
else :
if masks . shape [ 0 ] < s_in . shape [ 0 ] :
masks = masks . repeat ( math . ceil ( s_in . shape [ 0 ] / masks . shape [ 0 ] ) , 1 , 1 , 1 ) [ : s_in . shape [ 0 ] ]
s [ " noise_mask " ] = masks [ batch_index : batch_index + length ] . clone ( )
if " batch_index " not in s :
s [ " batch_index " ] = [ x for x in range ( batch_index , batch_index + length ) ]
else :
s [ " batch_index " ] = samples [ " batch_index " ] [ batch_index : batch_index + length ]
return ( s , )
class RepeatLatentBatch :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) ,
" amount " : ( " INT " , { " default " : 1 , " min " : 1 , " max " : 64 } ) ,
} }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " repeat "
CATEGORY = " latent/batch "
def repeat ( self , samples , amount ) :
s = samples . copy ( )
s_in = samples [ " samples " ]
s [ " samples " ] = s_in . repeat ( ( amount , 1 , 1 , 1 ) )
if " noise_mask " in samples and samples [ " noise_mask " ] . shape [ 0 ] > 1 :
masks = samples [ " noise_mask " ]
if masks . shape [ 0 ] < s_in . shape [ 0 ] :
masks = masks . repeat ( math . ceil ( s_in . shape [ 0 ] / masks . shape [ 0 ] ) , 1 , 1 , 1 ) [ : s_in . shape [ 0 ] ]
s [ " noise_mask " ] = samples [ " noise_mask " ] . repeat ( ( amount , 1 , 1 , 1 ) )
if " batch_index " in s :
offset = max ( s [ " batch_index " ] ) - min ( s [ " batch_index " ] ) + 1
s [ " batch_index " ] = s [ " batch_index " ] + [ x + ( i * offset ) for i in range ( 1 , amount ) for x in s [ " batch_index " ] ]
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return ( s , )
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class LatentUpscale :
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upscale_methods = [ " nearest-exact " , " bilinear " , " area " , " bicubic " , " bislerp " ]
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crop_methods = [ " disabled " , " center " ]
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@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) , " upscale_method " : ( s . upscale_methods , ) ,
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" width " : ( " INT " , { " default " : 512 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" height " : ( " INT " , { " default " : 512 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
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" crop " : ( s . crop_methods , ) } }
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RETURN_TYPES = ( " LATENT " , )
FUNCTION = " upscale "
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CATEGORY = " latent "
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def upscale ( self , samples , upscale_method , width , height , crop ) :
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if width == 0 and height == 0 :
s = samples
else :
s = samples . copy ( )
if width == 0 :
height = max ( 64 , height )
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width = max ( 64 , round ( samples [ " samples " ] . shape [ - 1 ] * height / samples [ " samples " ] . shape [ - 2 ] ) )
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elif height == 0 :
width = max ( 64 , width )
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height = max ( 64 , round ( samples [ " samples " ] . shape [ - 2 ] * width / samples [ " samples " ] . shape [ - 1 ] ) )
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else :
width = max ( 64 , width )
height = max ( 64 , height )
s [ " samples " ] = comfy . utils . common_upscale ( samples [ " samples " ] , width / / 8 , height / / 8 , upscale_method , crop )
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return ( s , )
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class LatentUpscaleBy :
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upscale_methods = [ " nearest-exact " , " bilinear " , " area " , " bicubic " , " bislerp " ]
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@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) , " upscale_method " : ( s . upscale_methods , ) ,
" scale_by " : ( " FLOAT " , { " default " : 1.5 , " min " : 0.01 , " max " : 8.0 , " step " : 0.01 } ) , } }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " upscale "
CATEGORY = " latent "
def upscale ( self , samples , upscale_method , scale_by ) :
s = samples . copy ( )
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width = round ( samples [ " samples " ] . shape [ - 1 ] * scale_by )
height = round ( samples [ " samples " ] . shape [ - 2 ] * scale_by )
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s [ " samples " ] = comfy . utils . common_upscale ( samples [ " samples " ] , width , height , upscale_method , " disabled " )
return ( s , )
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class LatentRotate :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) ,
" rotation " : ( [ " none " , " 90 degrees " , " 180 degrees " , " 270 degrees " ] , ) ,
} }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " rotate "
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CATEGORY = " latent/transform "
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def rotate ( self , samples , rotation ) :
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s = samples . copy ( )
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rotate_by = 0
if rotation . startswith ( " 90 " ) :
rotate_by = 1
elif rotation . startswith ( " 180 " ) :
rotate_by = 2
elif rotation . startswith ( " 270 " ) :
rotate_by = 3
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s [ " samples " ] = torch . rot90 ( samples [ " samples " ] , k = rotate_by , dims = [ 3 , 2 ] )
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return ( s , )
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class LatentFlip :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) ,
" flip_method " : ( [ " x-axis: vertically " , " y-axis: horizontally " ] , ) ,
} }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " flip "
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CATEGORY = " latent/transform "
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def flip ( self , samples , flip_method ) :
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s = samples . copy ( )
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if flip_method . startswith ( " x " ) :
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s [ " samples " ] = torch . flip ( samples [ " samples " ] , dims = [ 2 ] )
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elif flip_method . startswith ( " y " ) :
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s [ " samples " ] = torch . flip ( samples [ " samples " ] , dims = [ 3 ] )
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return ( s , )
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class LatentComposite :
@classmethod
def INPUT_TYPES ( s ) :
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return { " required " : { " samples_to " : ( " LATENT " , ) ,
" samples_from " : ( " LATENT " , ) ,
" x " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" y " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" feather " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
} }
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RETURN_TYPES = ( " LATENT " , )
FUNCTION = " composite "
CATEGORY = " latent "
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def composite ( self , samples_to , samples_from , x , y , composite_method = " normal " , feather = 0 ) :
x = x / / 8
y = y / / 8
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feather = feather / / 8
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samples_out = samples_to . copy ( )
s = samples_to [ " samples " ] . clone ( )
samples_to = samples_to [ " samples " ]
samples_from = samples_from [ " samples " ]
if feather == 0 :
s [ : , : , y : y + samples_from . shape [ 2 ] , x : x + samples_from . shape [ 3 ] ] = samples_from [ : , : , : samples_to . shape [ 2 ] - y , : samples_to . shape [ 3 ] - x ]
else :
samples_from = samples_from [ : , : , : samples_to . shape [ 2 ] - y , : samples_to . shape [ 3 ] - x ]
mask = torch . ones_like ( samples_from )
for t in range ( feather ) :
if y != 0 :
mask [ : , : , t : 1 + t , : ] * = ( ( 1.0 / feather ) * ( t + 1 ) )
if y + samples_from . shape [ 2 ] < samples_to . shape [ 2 ] :
mask [ : , : , mask . shape [ 2 ] - 1 - t : mask . shape [ 2 ] - t , : ] * = ( ( 1.0 / feather ) * ( t + 1 ) )
if x != 0 :
mask [ : , : , : , t : 1 + t ] * = ( ( 1.0 / feather ) * ( t + 1 ) )
if x + samples_from . shape [ 3 ] < samples_to . shape [ 3 ] :
mask [ : , : , : , mask . shape [ 3 ] - 1 - t : mask . shape [ 3 ] - t ] * = ( ( 1.0 / feather ) * ( t + 1 ) )
rev_mask = torch . ones_like ( mask ) - mask
s [ : , : , y : y + samples_from . shape [ 2 ] , x : x + samples_from . shape [ 3 ] ] = samples_from [ : , : , : samples_to . shape [ 2 ] - y , : samples_to . shape [ 3 ] - x ] * mask + s [ : , : , y : y + samples_from . shape [ 2 ] , x : x + samples_from . shape [ 3 ] ] * rev_mask
samples_out [ " samples " ] = s
return ( samples_out , )
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class LatentBlend :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : {
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" samples1 " : ( " LATENT " , ) ,
" samples2 " : ( " LATENT " , ) ,
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" blend_factor " : ( " FLOAT " , {
" default " : 0.5 ,
" min " : 0 ,
" max " : 1 ,
" step " : 0.01
} ) ,
} }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " blend "
CATEGORY = " _for_testing "
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def blend ( self , samples1 , samples2 , blend_factor : float , blend_mode : str = " normal " ) :
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samples_out = samples1 . copy ( )
samples1 = samples1 [ " samples " ]
samples2 = samples2 [ " samples " ]
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if samples1 . shape != samples2 . shape :
samples2 . permute ( 0 , 3 , 1 , 2 )
samples2 = comfy . utils . common_upscale ( samples2 , samples1 . shape [ 3 ] , samples1 . shape [ 2 ] , ' bicubic ' , crop = ' center ' )
samples2 . permute ( 0 , 2 , 3 , 1 )
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samples_blended = self . blend_mode ( samples1 , samples2 , blend_mode )
samples_blended = samples1 * blend_factor + samples_blended * ( 1 - blend_factor )
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samples_out [ " samples " ] = samples_blended
return ( samples_out , )
def blend_mode ( self , img1 , img2 , mode ) :
if mode == " normal " :
return img2
else :
raise ValueError ( f " Unsupported blend mode: { mode } " )
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class LatentCrop :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) ,
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" width " : ( " INT " , { " default " : 512 , " min " : 64 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" height " : ( " INT " , { " default " : 512 , " min " : 64 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
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" x " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" y " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
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} }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " crop "
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CATEGORY = " latent/transform "
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def crop ( self , samples , width , height , x , y ) :
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s = samples . copy ( )
samples = samples [ ' samples ' ]
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x = x / / 8
y = y / / 8
#enfonce minimum size of 64
if x > ( samples . shape [ 3 ] - 8 ) :
x = samples . shape [ 3 ] - 8
if y > ( samples . shape [ 2 ] - 8 ) :
y = samples . shape [ 2 ] - 8
new_height = height / / 8
new_width = width / / 8
to_x = new_width + x
to_y = new_height + y
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s [ ' samples ' ] = samples [ : , : , y : to_y , x : to_x ]
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return ( s , )
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class SetLatentNoiseMask :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " samples " : ( " LATENT " , ) ,
" mask " : ( " MASK " , ) ,
} }
RETURN_TYPES = ( " LATENT " , )
FUNCTION = " set_mask "
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CATEGORY = " latent/inpaint "
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def set_mask ( self , samples , mask ) :
s = samples . copy ( )
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s [ " noise_mask " ] = mask . reshape ( ( - 1 , 1 , mask . shape [ - 2 ] , mask . shape [ - 1 ] ) )
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return ( s , )
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def common_ksampler ( model , seed , steps , cfg , sampler_name , scheduler , positive , negative , latent , denoise = 1.0 , disable_noise = False , start_step = None , last_step = None , force_full_denoise = False ) :
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latent_image = latent [ " samples " ]
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latent_image = comfy . sample . fix_empty_latent_channels ( model , latent_image )
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if disable_noise :
noise = torch . zeros ( latent_image . size ( ) , dtype = latent_image . dtype , layout = latent_image . layout , device = " cpu " )
else :
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batch_inds = latent [ " batch_index " ] if " batch_index " in latent else None
noise = comfy . sample . prepare_noise ( latent_image , seed , batch_inds )
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noise_mask = None
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if " noise_mask " in latent :
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noise_mask = latent [ " noise_mask " ]
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callback = latent_preview . prepare_callback ( model , steps )
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disable_pbar = not comfy . utils . PROGRESS_BAR_ENABLED
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samples = comfy . sample . sample ( model , noise , steps , cfg , sampler_name , scheduler , positive , negative , latent_image ,
denoise = denoise , disable_noise = disable_noise , start_step = start_step , last_step = last_step ,
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force_full_denoise = force_full_denoise , noise_mask = noise_mask , callback = callback , disable_pbar = disable_pbar , seed = seed )
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out = latent . copy ( )
out [ " samples " ] = samples
return ( out , )
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class KSampler :
@classmethod
def INPUT_TYPES ( s ) :
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return {
" required " : {
" model " : ( " MODEL " , { " tooltip " : " The model used for denoising the input latent. " } ) ,
" seed " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : 0xffffffffffffffff , " tooltip " : " The random seed used for creating the noise. " } ) ,
" steps " : ( " INT " , { " default " : 20 , " min " : 1 , " max " : 10000 , " tooltip " : " The number of steps used in the denoising process. " } ) ,
" cfg " : ( " FLOAT " , { " default " : 8.0 , " min " : 0.0 , " max " : 100.0 , " step " : 0.1 , " round " : 0.01 , " tooltip " : " The Classifier-Free Guidance scale balances creativity and adherence to the prompt. Higher values result in images more closely matching the prompt however too high values will negatively impact quality. " } ) ,
" sampler_name " : ( comfy . samplers . KSampler . SAMPLERS , { " tooltip " : " The algorithm used when sampling, this can affect the quality, speed, and style of the generated output. " } ) ,
" scheduler " : ( comfy . samplers . KSampler . SCHEDULERS , { " tooltip " : " The scheduler controls how noise is gradually removed to form the image. " } ) ,
" positive " : ( " CONDITIONING " , { " tooltip " : " The conditioning describing the attributes you want to include in the image. " } ) ,
" negative " : ( " CONDITIONING " , { " tooltip " : " The conditioning describing the attributes you want to exclude from the image. " } ) ,
" latent_image " : ( " LATENT " , { " tooltip " : " The latent image to denoise. " } ) ,
" denoise " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.0 , " max " : 1.0 , " step " : 0.01 , " tooltip " : " The amount of denoising applied, lower values will maintain the structure of the initial image allowing for image to image sampling. " } ) ,
}
}
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RETURN_TYPES = ( " LATENT " , )
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OUTPUT_TOOLTIPS = ( " The denoised latent. " , )
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FUNCTION = " sample "
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CATEGORY = " sampling "
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DESCRIPTION = " Uses the provided model, positive and negative conditioning to denoise the latent image. "
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def sample ( self , model , seed , steps , cfg , sampler_name , scheduler , positive , negative , latent_image , denoise = 1.0 ) :
return common_ksampler ( model , seed , steps , cfg , sampler_name , scheduler , positive , negative , latent_image , denoise = denoise )
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class KSamplerAdvanced :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " :
{ " model " : ( " MODEL " , ) ,
" add_noise " : ( [ " enable " , " disable " ] , ) ,
" noise_seed " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : 0xffffffffffffffff } ) ,
" steps " : ( " INT " , { " default " : 20 , " min " : 1 , " max " : 10000 } ) ,
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" cfg " : ( " FLOAT " , { " default " : 8.0 , " min " : 0.0 , " max " : 100.0 , " step " : 0.1 , " round " : 0.01 } ) ,
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" sampler_name " : ( comfy . samplers . KSampler . SAMPLERS , ) ,
" scheduler " : ( comfy . samplers . KSampler . SCHEDULERS , ) ,
" positive " : ( " CONDITIONING " , ) ,
" negative " : ( " CONDITIONING " , ) ,
" latent_image " : ( " LATENT " , ) ,
" start_at_step " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : 10000 } ) ,
" end_at_step " : ( " INT " , { " default " : 10000 , " min " : 0 , " max " : 10000 } ) ,
" return_with_leftover_noise " : ( [ " disable " , " enable " ] , ) ,
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}
}
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RETURN_TYPES = ( " LATENT " , )
FUNCTION = " sample "
CATEGORY = " sampling "
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def sample ( self , model , add_noise , noise_seed , steps , cfg , sampler_name , scheduler , positive , negative , latent_image , start_at_step , end_at_step , return_with_leftover_noise , denoise = 1.0 ) :
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force_full_denoise = True
if return_with_leftover_noise == " enable " :
force_full_denoise = False
disable_noise = False
if add_noise == " disable " :
disable_noise = True
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return common_ksampler ( model , noise_seed , steps , cfg , sampler_name , scheduler , positive , negative , latent_image , denoise = denoise , disable_noise = disable_noise , start_step = start_at_step , last_step = end_at_step , force_full_denoise = force_full_denoise )
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class SaveImage :
def __init__ ( self ) :
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self . output_dir = folder_paths . get_output_directory ( )
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self . type = " output "
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self . prefix_append = " "
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self . compress_level = 4
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@classmethod
def INPUT_TYPES ( s ) :
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return {
" required " : {
" images " : ( " IMAGE " , { " tooltip " : " The images to save. " } ) ,
" filename_prefix " : ( " STRING " , { " default " : " ComfyUI " , " tooltip " : " The prefix for the file to save. This may include formatting information such as %d ate:yyyy-MM-dd % o r %E mpty Latent Image.width % to include values from nodes. " } )
} ,
" hidden " : {
" prompt " : " PROMPT " , " extra_pnginfo " : " EXTRA_PNGINFO "
} ,
}
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RETURN_TYPES = ( )
FUNCTION = " save_images "
OUTPUT_NODE = True
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CATEGORY = " image "
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DESCRIPTION = " Saves the input images to your ComfyUI output directory. "
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def save_images ( self , images , filename_prefix = " ComfyUI " , prompt = None , extra_pnginfo = None ) :
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filename_prefix + = self . prefix_append
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full_output_folder , filename , counter , subfolder , filename_prefix = folder_paths . get_save_image_path ( filename_prefix , self . output_dir , images [ 0 ] . shape [ 1 ] , images [ 0 ] . shape [ 0 ] )
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results = list ( )
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for ( batch_number , image ) in enumerate ( images ) :
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i = 255. * image . cpu ( ) . numpy ( )
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img = Image . fromarray ( np . clip ( i , 0 , 255 ) . astype ( np . uint8 ) )
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metadata = None
if not args . disable_metadata :
metadata = PngInfo ( )
if prompt is not None :
metadata . add_text ( " prompt " , json . dumps ( prompt ) )
if extra_pnginfo is not None :
for x in extra_pnginfo :
metadata . add_text ( x , json . dumps ( extra_pnginfo [ x ] ) )
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filename_with_batch_num = filename . replace ( " % batch_num % " , str ( batch_number ) )
file = f " { filename_with_batch_num } _ { counter : 05 } _.png "
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img . save ( os . path . join ( full_output_folder , file ) , pnginfo = metadata , compress_level = self . compress_level )
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results . append ( {
" filename " : file ,
" subfolder " : subfolder ,
" type " : self . type
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} )
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counter + = 1
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return { " ui " : { " images " : results } }
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class PreviewImage ( SaveImage ) :
def __init__ ( self ) :
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self . output_dir = folder_paths . get_temp_directory ( )
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self . type = " temp "
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self . prefix_append = " _temp_ " + ' ' . join ( random . choice ( " abcdefghijklmnopqrstupvxyz " ) for x in range ( 5 ) )
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self . compress_level = 1
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@classmethod
def INPUT_TYPES ( s ) :
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return { " required " :
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{ " images " : ( " IMAGE " , ) , } ,
" hidden " : { " prompt " : " PROMPT " , " extra_pnginfo " : " EXTRA_PNGINFO " } ,
}
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class LoadImage :
@classmethod
def INPUT_TYPES ( s ) :
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input_dir = folder_paths . get_input_directory ( )
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files = [ f for f in os . listdir ( input_dir ) if os . path . isfile ( os . path . join ( input_dir , f ) ) ]
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return { " required " :
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{ " image " : ( sorted ( files ) , { " image_upload " : True } ) } ,
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}
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CATEGORY = " image "
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RETURN_TYPES = ( " IMAGE " , " MASK " )
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FUNCTION = " load_image "
def load_image ( self , image ) :
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image_path = folder_paths . get_annotated_filepath ( image )
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img = node_helpers . pillow ( Image . open , image_path )
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output_images = [ ]
output_masks = [ ]
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w , h = None , None
excluded_formats = [ ' MPO ' ]
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for i in ImageSequence . Iterator ( img ) :
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i = node_helpers . pillow ( ImageOps . exif_transpose , i )
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if i . mode == ' I ' :
i = i . point ( lambda i : i * ( 1 / 255 ) )
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image = i . convert ( " RGB " )
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if len ( output_images ) == 0 :
w = image . size [ 0 ]
h = image . size [ 1 ]
if image . size [ 0 ] != w or image . size [ 1 ] != h :
continue
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image = np . array ( image ) . astype ( np . float32 ) / 255.0
image = torch . from_numpy ( image ) [ None , ]
if ' A ' in i . getbands ( ) :
mask = np . array ( i . getchannel ( ' A ' ) ) . astype ( np . float32 ) / 255.0
mask = 1. - torch . from_numpy ( mask )
else :
mask = torch . zeros ( ( 64 , 64 ) , dtype = torch . float32 , device = " cpu " )
output_images . append ( image )
output_masks . append ( mask . unsqueeze ( 0 ) )
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if len ( output_images ) > 1 and img . format not in excluded_formats :
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output_image = torch . cat ( output_images , dim = 0 )
output_mask = torch . cat ( output_masks , dim = 0 )
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else :
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output_image = output_images [ 0 ]
output_mask = output_masks [ 0 ]
return ( output_image , output_mask )
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@classmethod
def IS_CHANGED ( s , image ) :
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image_path = folder_paths . get_annotated_filepath ( image )
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m = hashlib . sha256 ( )
with open ( image_path , ' rb ' ) as f :
m . update ( f . read ( ) )
return m . digest ( ) . hex ( )
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@classmethod
def VALIDATE_INPUTS ( s , image ) :
if not folder_paths . exists_annotated_filepath ( image ) :
return " Invalid image file: {} " . format ( image )
return True
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class LoadImageMask :
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_color_channels = [ " alpha " , " red " , " green " , " blue " ]
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@classmethod
def INPUT_TYPES ( s ) :
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input_dir = folder_paths . get_input_directory ( )
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files = [ f for f in os . listdir ( input_dir ) if os . path . isfile ( os . path . join ( input_dir , f ) ) ]
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return { " required " :
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{ " image " : ( sorted ( files ) , { " image_upload " : True } ) ,
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" channel " : ( s . _color_channels , ) , }
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}
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CATEGORY = " mask "
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RETURN_TYPES = ( " MASK " , )
FUNCTION = " load_image "
def load_image ( self , image , channel ) :
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image_path = folder_paths . get_annotated_filepath ( image )
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i = node_helpers . pillow ( Image . open , image_path )
i = node_helpers . pillow ( ImageOps . exif_transpose , i )
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if i . getbands ( ) != ( " R " , " G " , " B " , " A " ) :
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if i . mode == ' I ' :
i = i . point ( lambda i : i * ( 1 / 255 ) )
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i = i . convert ( " RGBA " )
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mask = None
c = channel [ 0 ] . upper ( )
if c in i . getbands ( ) :
mask = np . array ( i . getchannel ( c ) ) . astype ( np . float32 ) / 255.0
mask = torch . from_numpy ( mask )
if c == ' A ' :
mask = 1. - mask
else :
mask = torch . zeros ( ( 64 , 64 ) , dtype = torch . float32 , device = " cpu " )
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return ( mask . unsqueeze ( 0 ) , )
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@classmethod
def IS_CHANGED ( s , image , channel ) :
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image_path = folder_paths . get_annotated_filepath ( image )
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m = hashlib . sha256 ( )
with open ( image_path , ' rb ' ) as f :
m . update ( f . read ( ) )
return m . digest ( ) . hex ( )
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@classmethod
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def VALIDATE_INPUTS ( s , image ) :
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if not folder_paths . exists_annotated_filepath ( image ) :
return " Invalid image file: {} " . format ( image )
return True
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class ImageScale :
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upscale_methods = [ " nearest-exact " , " bilinear " , " area " , " bicubic " , " lanczos " ]
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crop_methods = [ " disabled " , " center " ]
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " image " : ( " IMAGE " , ) , " upscale_method " : ( s . upscale_methods , ) ,
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" width " : ( " INT " , { " default " : 512 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 1 } ) ,
" height " : ( " INT " , { " default " : 512 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 1 } ) ,
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" crop " : ( s . crop_methods , ) } }
RETURN_TYPES = ( " IMAGE " , )
FUNCTION = " upscale "
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CATEGORY = " image/upscaling "
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def upscale ( self , image , upscale_method , width , height , crop ) :
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if width == 0 and height == 0 :
s = image
else :
samples = image . movedim ( - 1 , 1 )
if width == 0 :
width = max ( 1 , round ( samples . shape [ 3 ] * height / samples . shape [ 2 ] ) )
elif height == 0 :
height = max ( 1 , round ( samples . shape [ 2 ] * width / samples . shape [ 3 ] ) )
s = comfy . utils . common_upscale ( samples , width , height , upscale_method , crop )
s = s . movedim ( 1 , - 1 )
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return ( s , )
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class ImageScaleBy :
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upscale_methods = [ " nearest-exact " , " bilinear " , " area " , " bicubic " , " lanczos " ]
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@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " image " : ( " IMAGE " , ) , " upscale_method " : ( s . upscale_methods , ) ,
" scale_by " : ( " FLOAT " , { " default " : 1.0 , " min " : 0.01 , " max " : 8.0 , " step " : 0.01 } ) , } }
RETURN_TYPES = ( " IMAGE " , )
FUNCTION = " upscale "
CATEGORY = " image/upscaling "
def upscale ( self , image , upscale_method , scale_by ) :
samples = image . movedim ( - 1 , 1 )
width = round ( samples . shape [ 3 ] * scale_by )
height = round ( samples . shape [ 2 ] * scale_by )
s = comfy . utils . common_upscale ( samples , width , height , upscale_method , " disabled " )
s = s . movedim ( 1 , - 1 )
return ( s , )
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class ImageInvert :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " image " : ( " IMAGE " , ) } }
RETURN_TYPES = ( " IMAGE " , )
FUNCTION = " invert "
CATEGORY = " image "
def invert ( self , image ) :
s = 1.0 - image
return ( s , )
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class ImageBatch :
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " image1 " : ( " IMAGE " , ) , " image2 " : ( " IMAGE " , ) } }
RETURN_TYPES = ( " IMAGE " , )
FUNCTION = " batch "
CATEGORY = " image "
def batch ( self , image1 , image2 ) :
if image1 . shape [ 1 : ] != image2 . shape [ 1 : ] :
image2 = comfy . utils . common_upscale ( image2 . movedim ( - 1 , 1 ) , image1 . shape [ 2 ] , image1 . shape [ 1 ] , " bilinear " , " center " ) . movedim ( 1 , - 1 )
s = torch . cat ( ( image1 , image2 ) , dim = 0 )
return ( s , )
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class EmptyImage :
def __init__ ( self , device = " cpu " ) :
self . device = device
@classmethod
def INPUT_TYPES ( s ) :
return { " required " : { " width " : ( " INT " , { " default " : 512 , " min " : 1 , " max " : MAX_RESOLUTION , " step " : 1 } ) ,
" height " : ( " INT " , { " default " : 512 , " min " : 1 , " max " : MAX_RESOLUTION , " step " : 1 } ) ,
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" batch_size " : ( " INT " , { " default " : 1 , " min " : 1 , " max " : 4096 } ) ,
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" color " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : 0xFFFFFF , " step " : 1 , " display " : " color " } ) ,
} }
RETURN_TYPES = ( " IMAGE " , )
FUNCTION = " generate "
CATEGORY = " image "
def generate ( self , width , height , batch_size = 1 , color = 0 ) :
r = torch . full ( [ batch_size , height , width , 1 ] , ( ( color >> 16 ) & 0xFF ) / 0xFF )
g = torch . full ( [ batch_size , height , width , 1 ] , ( ( color >> 8 ) & 0xFF ) / 0xFF )
b = torch . full ( [ batch_size , height , width , 1 ] , ( ( color ) & 0xFF ) / 0xFF )
return ( torch . cat ( ( r , g , b ) , dim = - 1 ) , )
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class ImagePadForOutpaint :
@classmethod
def INPUT_TYPES ( s ) :
return {
" required " : {
" image " : ( " IMAGE " , ) ,
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" left " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" top " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" right " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
" bottom " : ( " INT " , { " default " : 0 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 8 } ) ,
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" feathering " : ( " INT " , { " default " : 40 , " min " : 0 , " max " : MAX_RESOLUTION , " step " : 1 } ) ,
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}
}
RETURN_TYPES = ( " IMAGE " , " MASK " )
FUNCTION = " expand_image "
CATEGORY = " image "
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def expand_image ( self , image , left , top , right , bottom , feathering ) :
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d1 , d2 , d3 , d4 = image . size ( )
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new_image = torch . ones (
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( d1 , d2 + top + bottom , d3 + left + right , d4 ) ,
dtype = torch . float32 ,
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) * 0.5
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new_image [ : , top : top + d2 , left : left + d3 , : ] = image
mask = torch . ones (
( d2 + top + bottom , d3 + left + right ) ,
dtype = torch . float32 ,
)
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t = torch . zeros (
( d2 , d3 ) ,
dtype = torch . float32
)
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if feathering > 0 and feathering * 2 < d2 and feathering * 2 < d3 :
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for i in range ( d2 ) :
for j in range ( d3 ) :
dt = i if top != 0 else d2
db = d2 - i if bottom != 0 else d2
dl = j if left != 0 else d3
dr = d3 - j if right != 0 else d3
d = min ( dt , db , dl , dr )
if d > = feathering :
continue
v = ( feathering - d ) / feathering
t [ i , j ] = v * v
mask [ top : top + d2 , left : left + d3 ] = t
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return ( new_image , mask )
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NODE_CLASS_MAPPINGS = {
" KSampler " : KSampler ,
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" CheckpointLoaderSimple " : CheckpointLoaderSimple ,
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" CLIPTextEncode " : CLIPTextEncode ,
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" CLIPSetLastLayer " : CLIPSetLastLayer ,
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" VAEDecode " : VAEDecode ,
" VAEEncode " : VAEEncode ,
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" VAEEncodeForInpaint " : VAEEncodeForInpaint ,
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" VAELoader " : VAELoader ,
" EmptyLatentImage " : EmptyLatentImage ,
" LatentUpscale " : LatentUpscale ,
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" LatentUpscaleBy " : LatentUpscaleBy ,
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" LatentFromBatch " : LatentFromBatch ,
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" RepeatLatentBatch " : RepeatLatentBatch ,
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" SaveImage " : SaveImage ,
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" PreviewImage " : PreviewImage ,
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" LoadImage " : LoadImage ,
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" LoadImageMask " : LoadImageMask ,
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" ImageScale " : ImageScale ,
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" ImageScaleBy " : ImageScaleBy ,
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" ImageInvert " : ImageInvert ,
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" ImageBatch " : ImageBatch ,
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" ImagePadForOutpaint " : ImagePadForOutpaint ,
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" EmptyImage " : EmptyImage ,
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" ConditioningAverage " : ConditioningAverage ,
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" ConditioningCombine " : ConditioningCombine ,
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" ConditioningConcat " : ConditioningConcat ,
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" ConditioningSetArea " : ConditioningSetArea ,
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" ConditioningSetAreaPercentage " : ConditioningSetAreaPercentage ,
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" ConditioningSetAreaStrength " : ConditioningSetAreaStrength ,
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" ConditioningSetMask " : ConditioningSetMask ,
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" KSamplerAdvanced " : KSamplerAdvanced ,
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" SetLatentNoiseMask " : SetLatentNoiseMask ,
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" LatentComposite " : LatentComposite ,
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" LatentBlend " : LatentBlend ,
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" LatentRotate " : LatentRotate ,
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" LatentFlip " : LatentFlip ,
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" LatentCrop " : LatentCrop ,
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" LoraLoader " : LoraLoader ,
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" CLIPLoader " : CLIPLoader ,
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" UNETLoader " : UNETLoader ,
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" DualCLIPLoader " : DualCLIPLoader ,
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" CLIPVisionEncode " : CLIPVisionEncode ,
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" StyleModelApply " : StyleModelApply ,
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" unCLIPConditioning " : unCLIPConditioning ,
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" ControlNetApply " : ControlNetApply ,
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" ControlNetApplyAdvanced " : ControlNetApplyAdvanced ,
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" ControlNetLoader " : ControlNetLoader ,
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" DiffControlNetLoader " : DiffControlNetLoader ,
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" StyleModelLoader " : StyleModelLoader ,
" CLIPVisionLoader " : CLIPVisionLoader ,
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" VAEDecodeTiled " : VAEDecodeTiled ,
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" VAEEncodeTiled " : VAEEncodeTiled ,
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" unCLIPCheckpointLoader " : unCLIPCheckpointLoader ,
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" GLIGENLoader " : GLIGENLoader ,
" GLIGENTextBoxApply " : GLIGENTextBoxApply ,
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" InpaintModelConditioning " : InpaintModelConditioning ,
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" CheckpointLoader " : CheckpointLoader ,
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" DiffusersLoader " : DiffusersLoader ,
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" LoadLatent " : LoadLatent ,
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" SaveLatent " : SaveLatent ,
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" ConditioningZeroOut " : ConditioningZeroOut ,
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" ConditioningSetTimestepRange " : ConditioningSetTimestepRange ,
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" LoraLoaderModelOnly " : LoraLoaderModelOnly ,
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}
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NODE_DISPLAY_NAME_MAPPINGS = {
# Sampling
" KSampler " : " KSampler " ,
" KSamplerAdvanced " : " KSampler (Advanced) " ,
# Loaders
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" CheckpointLoader " : " Load Checkpoint With Config (DEPRECATED) " ,
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" CheckpointLoaderSimple " : " Load Checkpoint " ,
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" VAELoader " : " Load VAE " ,
" LoraLoader " : " Load LoRA " ,
" CLIPLoader " : " Load CLIP " ,
" ControlNetLoader " : " Load ControlNet Model " ,
" DiffControlNetLoader " : " Load ControlNet Model (diff) " ,
" StyleModelLoader " : " Load Style Model " ,
" CLIPVisionLoader " : " Load CLIP Vision " ,
" UpscaleModelLoader " : " Load Upscale Model " ,
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" UNETLoader " : " Load Diffusion Model " ,
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# Conditioning
" CLIPVisionEncode " : " CLIP Vision Encode " ,
" StyleModelApply " : " Apply Style Model " ,
" CLIPTextEncode " : " CLIP Text Encode (Prompt) " ,
" CLIPSetLastLayer " : " CLIP Set Last Layer " ,
" ConditioningCombine " : " Conditioning (Combine) " ,
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" ConditioningAverage " : " Conditioning (Average) " ,
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" ConditioningConcat " : " Conditioning (Concat) " ,
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" ConditioningSetArea " : " Conditioning (Set Area) " ,
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" ConditioningSetAreaPercentage " : " Conditioning (Set Area with Percentage) " ,
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" ConditioningSetMask " : " Conditioning (Set Mask) " ,
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" ControlNetApply " : " Apply ControlNet (OLD) " ,
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" ControlNetApplyAdvanced " : " Apply ControlNet " ,
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# Latent
" VAEEncodeForInpaint " : " VAE Encode (for Inpainting) " ,
" SetLatentNoiseMask " : " Set Latent Noise Mask " ,
" VAEDecode " : " VAE Decode " ,
" VAEEncode " : " VAE Encode " ,
" LatentRotate " : " Rotate Latent " ,
" LatentFlip " : " Flip Latent " ,
" LatentCrop " : " Crop Latent " ,
" EmptyLatentImage " : " Empty Latent Image " ,
" LatentUpscale " : " Upscale Latent " ,
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" LatentUpscaleBy " : " Upscale Latent By " ,
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" LatentComposite " : " Latent Composite " ,
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" LatentBlend " : " Latent Blend " ,
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" LatentFromBatch " : " Latent From Batch " ,
" RepeatLatentBatch " : " Repeat Latent Batch " ,
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# Image
" SaveImage " : " Save Image " ,
" PreviewImage " : " Preview Image " ,
" LoadImage " : " Load Image " ,
" LoadImageMask " : " Load Image (as Mask) " ,
" ImageScale " : " Upscale Image " ,
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" ImageScaleBy " : " Upscale Image By " ,
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" ImageUpscaleWithModel " : " Upscale Image (using Model) " ,
" ImageInvert " : " Invert Image " ,
" ImagePadForOutpaint " : " Pad Image for Outpainting " ,
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" ImageBatch " : " Batch Images " ,
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" ImageCrop " : " Image Crop " ,
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" ImageBlend " : " Image Blend " ,
" ImageBlur " : " Image Blur " ,
" ImageQuantize " : " Image Quantize " ,
" ImageSharpen " : " Image Sharpen " ,
" ImageScaleToTotalPixels " : " Scale Image to Total Pixels " ,
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# _for_testing
" VAEDecodeTiled " : " VAE Decode (Tiled) " ,
" VAEEncodeTiled " : " VAE Encode (Tiled) " ,
}
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EXTENSION_WEB_DIRS = { }
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def get_module_name ( module_path : str ) - > str :
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"""
Returns the module name based on the given module path .
Examples :
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get_module_name ( " C:/Users/username/ComfyUI/custom_nodes/my_custom_node.py " ) - > " my_custom_node "
get_module_name ( " C:/Users/username/ComfyUI/custom_nodes/my_custom_node " ) - > " my_custom_node "
get_module_name ( " C:/Users/username/ComfyUI/custom_nodes/my_custom_node/ " ) - > " my_custom_node "
get_module_name ( " C:/Users/username/ComfyUI/custom_nodes/my_custom_node/__init__.py " ) - > " my_custom_node "
get_module_name ( " C:/Users/username/ComfyUI/custom_nodes/my_custom_node/__init__ " ) - > " my_custom_node "
get_module_name ( " C:/Users/username/ComfyUI/custom_nodes/my_custom_node/__init__/ " ) - > " my_custom_node "
get_module_name ( " C:/Users/username/ComfyUI/custom_nodes/my_custom_node.disabled " ) - > " custom_nodes
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Args :
module_path ( str ) : The path of the module .
Returns :
str : The module name .
"""
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base_path = os . path . basename ( module_path )
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if os . path . isfile ( module_path ) :
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base_path = os . path . splitext ( base_path ) [ 0 ]
return base_path
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def load_custom_node ( module_path : str , ignore = set ( ) , module_parent = " custom_nodes " ) - > bool :
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module_name = os . path . basename ( module_path )
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if os . path . isfile ( module_path ) :
sp = os . path . splitext ( module_path )
module_name = sp [ 0 ]
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try :
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logging . debug ( " Trying to load custom node {} " . format ( module_path ) )
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if os . path . isfile ( module_path ) :
module_spec = importlib . util . spec_from_file_location ( module_name , module_path )
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module_dir = os . path . split ( module_path ) [ 0 ]
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else :
module_spec = importlib . util . spec_from_file_location ( module_name , os . path . join ( module_path , " __init__.py " ) )
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module_dir = module_path
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module = importlib . util . module_from_spec ( module_spec )
sys . modules [ module_name ] = module
module_spec . loader . exec_module ( module )
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if hasattr ( module , " WEB_DIRECTORY " ) and getattr ( module , " WEB_DIRECTORY " ) is not None :
web_dir = os . path . abspath ( os . path . join ( module_dir , getattr ( module , " WEB_DIRECTORY " ) ) )
if os . path . isdir ( web_dir ) :
EXTENSION_WEB_DIRS [ module_name ] = web_dir
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if hasattr ( module , " NODE_CLASS_MAPPINGS " ) and getattr ( module , " NODE_CLASS_MAPPINGS " ) is not None :
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for name , node_cls in module . NODE_CLASS_MAPPINGS . items ( ) :
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if name not in ignore :
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NODE_CLASS_MAPPINGS [ name ] = node_cls
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node_cls . RELATIVE_PYTHON_MODULE = " {} . {} " . format ( module_parent , get_module_name ( module_path ) )
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if hasattr ( module , " NODE_DISPLAY_NAME_MAPPINGS " ) and getattr ( module , " NODE_DISPLAY_NAME_MAPPINGS " ) is not None :
NODE_DISPLAY_NAME_MAPPINGS . update ( module . NODE_DISPLAY_NAME_MAPPINGS )
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return True
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else :
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logging . warning ( f " Skip { module_path } module for custom nodes due to the lack of NODE_CLASS_MAPPINGS. " )
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return False
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except Exception as e :
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logging . warning ( traceback . format_exc ( ) )
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logging . warning ( f " Cannot import { module_path } module for custom nodes: { e } " )
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return False
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def init_external_custom_nodes ( ) :
"""
Initializes the external custom nodes .
This function loads custom nodes from the specified folder paths and imports them into the application .
It measures the import times for each custom node and logs the results .
Returns :
None
"""
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base_node_names = set ( NODE_CLASS_MAPPINGS . keys ( ) )
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node_paths = folder_paths . get_folder_paths ( " custom_nodes " )
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node_import_times = [ ]
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for custom_node_path in node_paths :
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possible_modules = os . listdir ( os . path . realpath ( custom_node_path ) )
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if " __pycache__ " in possible_modules :
possible_modules . remove ( " __pycache__ " )
for possible_module in possible_modules :
module_path = os . path . join ( custom_node_path , possible_module )
if os . path . isfile ( module_path ) and os . path . splitext ( module_path ) [ 1 ] != " .py " : continue
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if module_path . endswith ( " .disabled " ) : continue
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time_before = time . perf_counter ( )
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success = load_custom_node ( module_path , base_node_names , module_parent = " custom_nodes " )
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node_import_times . append ( ( time . perf_counter ( ) - time_before , module_path , success ) )
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if len ( node_import_times ) > 0 :
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logging . info ( " \n Import times for custom nodes: " )
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for n in sorted ( node_import_times ) :
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if n [ 2 ] :
import_message = " "
else :
import_message = " (IMPORT FAILED) "
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logging . info ( " {:6.1f} seconds {} : {} " . format ( n [ 0 ] , import_message , n [ 1 ] ) )
logging . info ( " " )
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def init_builtin_extra_nodes ( ) :
"""
Initializes the built - in extra nodes in ComfyUI .
This function loads the extra node files located in the " comfy_extras " directory and imports them into ComfyUI .
If any of the extra node files fail to import , a warning message is logged .
Returns :
None
"""
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extras_dir = os . path . join ( os . path . dirname ( os . path . realpath ( __file__ ) ) , " comfy_extras " )
extras_files = [
" nodes_latent.py " ,
" nodes_hypernetwork.py " ,
" nodes_upscale_model.py " ,
" nodes_post_processing.py " ,
" nodes_mask.py " ,
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" nodes_compositing.py " ,
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" nodes_rebatch.py " ,
" nodes_model_merging.py " ,
" nodes_tomesd.py " ,
" nodes_clip_sdxl.py " ,
" nodes_canny.py " ,
" nodes_freelunch.py " ,
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" nodes_custom_sampler.py " ,
" nodes_hypertile.py " ,
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" nodes_model_advanced.py " ,
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" nodes_model_downscale.py " ,
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" nodes_images.py " ,
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" nodes_video_model.py " ,
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" nodes_sag.py " ,
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" nodes_perpneg.py " ,
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" nodes_stable3d.py " ,
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" nodes_sdupscale.py " ,
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" nodes_photomaker.py " ,
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" nodes_cond.py " ,
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" nodes_morphology.py " ,
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" nodes_stable_cascade.py " ,
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" nodes_differential_diffusion.py " ,
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" nodes_ip2p.py " ,
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" nodes_model_merging_model_specific.py " ,
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" nodes_pag.py " ,
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" nodes_align_your_steps.py " ,
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" nodes_attention_multiply.py " ,
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" nodes_advanced_samplers.py " ,
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" nodes_webcam.py " ,
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" nodes_audio.py " ,
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" nodes_sd3.py " ,
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" nodes_gits.py " ,
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" nodes_controlnet.py " ,
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" nodes_hunyuan.py " ,
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" nodes_flux.py " ,
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" nodes_lora_extract.py " ,
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" nodes_torch_compile.py " ,
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" nodes_mochi.py " ,
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" nodes_slg.py " ,
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" nodes_lt.py " ,
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]
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import_failed = [ ]
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for node_file in extras_files :
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if not load_custom_node ( os . path . join ( extras_dir , node_file ) , module_parent = " comfy_extras " ) :
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import_failed . append ( node_file )
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return import_failed
def init_extra_nodes ( init_custom_nodes = True ) :
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import_failed = init_builtin_extra_nodes ( )
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if init_custom_nodes :
init_external_custom_nodes ( )
else :
logging . info ( " Skipping loading of custom nodes " )
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if len ( import_failed ) > 0 :
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logging . warning ( " WARNING: some comfy_extras/ nodes did not import correctly. This may be because they are missing some dependencies. \n " )
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for node in import_failed :
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logging . warning ( " IMPORT FAILED: {} " . format ( node ) )
logging . warning ( " \n This issue might be caused by new missing dependencies added the last time you updated ComfyUI. " )
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if args . windows_standalone_build :
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logging . warning ( " Please run the update script: update/update_comfyui.bat " )
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else :
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logging . warning ( " Please do a: pip install -r requirements.txt " )
logging . warning ( " " )
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return import_failed