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import torch
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import contextlib
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import copy
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import inspect
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from . import sd1_clip
from . import sd2_clip
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from comfy import model_management
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from . ldm . util import instantiate_from_config
from . ldm . models . autoencoder import AutoencoderKL
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import yaml
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from . cldm import cldm
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from . t2i_adapter import adapter
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from . import utils
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from . import clip_vision
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from . import gligen
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from . import diffusers_convert
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from . import model_base
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def load_model_weights ( model , sd , verbose = False , load_state_dict_to = [ ] ) :
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replace_prefix = { " model.diffusion_model. " : " diffusion_model. " }
for rp in replace_prefix :
replace = list ( map ( lambda a : ( a , " {} {} " . format ( replace_prefix [ rp ] , a [ len ( rp ) : ] ) ) , filter ( lambda a : a . startswith ( rp ) , sd . keys ( ) ) ) )
for x in replace :
sd [ x [ 1 ] ] = sd . pop ( x [ 0 ] )
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m , u = model . load_state_dict ( sd , strict = False )
k = list ( sd . keys ( ) )
for x in k :
# print(x)
if x . startswith ( " cond_stage_model.transformer. " ) and not x . startswith ( " cond_stage_model.transformer.text_model. " ) :
y = x . replace ( " cond_stage_model.transformer. " , " cond_stage_model.transformer.text_model. " )
sd [ y ] = sd . pop ( x )
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if ' cond_stage_model.transformer.text_model.embeddings.position_ids ' in sd :
ids = sd [ ' cond_stage_model.transformer.text_model.embeddings.position_ids ' ]
if ids . dtype == torch . float32 :
sd [ ' cond_stage_model.transformer.text_model.embeddings.position_ids ' ] = ids . round ( )
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sd = utils . transformers_convert ( sd , " cond_stage_model.model " , " cond_stage_model.transformer.text_model " , 24 )
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for x in load_state_dict_to :
x . load_state_dict ( sd , strict = False )
if len ( m ) > 0 and verbose :
print ( " missing keys: " )
print ( m )
if len ( u ) > 0 and verbose :
print ( " unexpected keys: " )
print ( u )
model . eval ( )
return model
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LORA_CLIP_MAP = {
" mlp.fc1 " : " mlp_fc1 " ,
" mlp.fc2 " : " mlp_fc2 " ,
" self_attn.k_proj " : " self_attn_k_proj " ,
" self_attn.q_proj " : " self_attn_q_proj " ,
" self_attn.v_proj " : " self_attn_v_proj " ,
" self_attn.out_proj " : " self_attn_out_proj " ,
}
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LORA_UNET_MAP_ATTENTIONS = {
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" proj_in " : " proj_in " ,
" proj_out " : " proj_out " ,
" transformer_blocks.0.attn1.to_q " : " transformer_blocks_0_attn1_to_q " ,
" transformer_blocks.0.attn1.to_k " : " transformer_blocks_0_attn1_to_k " ,
" transformer_blocks.0.attn1.to_v " : " transformer_blocks_0_attn1_to_v " ,
" transformer_blocks.0.attn1.to_out.0 " : " transformer_blocks_0_attn1_to_out_0 " ,
" transformer_blocks.0.attn2.to_q " : " transformer_blocks_0_attn2_to_q " ,
" transformer_blocks.0.attn2.to_k " : " transformer_blocks_0_attn2_to_k " ,
" transformer_blocks.0.attn2.to_v " : " transformer_blocks_0_attn2_to_v " ,
" transformer_blocks.0.attn2.to_out.0 " : " transformer_blocks_0_attn2_to_out_0 " ,
" transformer_blocks.0.ff.net.0.proj " : " transformer_blocks_0_ff_net_0_proj " ,
" transformer_blocks.0.ff.net.2 " : " transformer_blocks_0_ff_net_2 " ,
}
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LORA_UNET_MAP_RESNET = {
" in_layers.2 " : " resnets_ {} _conv1 " ,
" emb_layers.1 " : " resnets_ {} _time_emb_proj " ,
" out_layers.3 " : " resnets_ {} _conv2 " ,
" skip_connection " : " resnets_ {} _conv_shortcut "
}
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def load_lora ( path , to_load ) :
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lora = utils . load_torch_file ( path , safe_load = True )
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patch_dict = { }
loaded_keys = set ( )
for x in to_load :
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alpha_name = " {} .alpha " . format ( x )
alpha = None
if alpha_name in lora . keys ( ) :
alpha = lora [ alpha_name ] . item ( )
loaded_keys . add ( alpha_name )
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A_name = " {} .lora_up.weight " . format ( x )
B_name = " {} .lora_down.weight " . format ( x )
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mid_name = " {} .lora_mid.weight " . format ( x )
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if A_name in lora . keys ( ) :
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mid = None
if mid_name in lora . keys ( ) :
mid = lora [ mid_name ]
loaded_keys . add ( mid_name )
patch_dict [ to_load [ x ] ] = ( lora [ A_name ] , lora [ B_name ] , alpha , mid )
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loaded_keys . add ( A_name )
loaded_keys . add ( B_name )
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######## loha
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hada_w1_a_name = " {} .hada_w1_a " . format ( x )
hada_w1_b_name = " {} .hada_w1_b " . format ( x )
hada_w2_a_name = " {} .hada_w2_a " . format ( x )
hada_w2_b_name = " {} .hada_w2_b " . format ( x )
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hada_t1_name = " {} .hada_t1 " . format ( x )
hada_t2_name = " {} .hada_t2 " . format ( x )
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if hada_w1_a_name in lora . keys ( ) :
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hada_t1 = None
hada_t2 = None
if hada_t1_name in lora . keys ( ) :
hada_t1 = lora [ hada_t1_name ]
hada_t2 = lora [ hada_t2_name ]
loaded_keys . add ( hada_t1_name )
loaded_keys . add ( hada_t2_name )
patch_dict [ to_load [ x ] ] = ( lora [ hada_w1_a_name ] , lora [ hada_w1_b_name ] , alpha , lora [ hada_w2_a_name ] , lora [ hada_w2_b_name ] , hada_t1 , hada_t2 )
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loaded_keys . add ( hada_w1_a_name )
loaded_keys . add ( hada_w1_b_name )
loaded_keys . add ( hada_w2_a_name )
loaded_keys . add ( hada_w2_b_name )
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######## lokr
lokr_w1_name = " {} .lokr_w1 " . format ( x )
lokr_w2_name = " {} .lokr_w2 " . format ( x )
lokr_w1_a_name = " {} .lokr_w1_a " . format ( x )
lokr_w1_b_name = " {} .lokr_w1_b " . format ( x )
lokr_t2_name = " {} .lokr_t2 " . format ( x )
lokr_w2_a_name = " {} .lokr_w2_a " . format ( x )
lokr_w2_b_name = " {} .lokr_w2_b " . format ( x )
lokr_w1 = None
if lokr_w1_name in lora . keys ( ) :
lokr_w1 = lora [ lokr_w1_name ]
loaded_keys . add ( lokr_w1_name )
lokr_w2 = None
if lokr_w2_name in lora . keys ( ) :
lokr_w2 = lora [ lokr_w2_name ]
loaded_keys . add ( lokr_w2_name )
lokr_w1_a = None
if lokr_w1_a_name in lora . keys ( ) :
lokr_w1_a = lora [ lokr_w1_a_name ]
loaded_keys . add ( lokr_w1_a_name )
lokr_w1_b = None
if lokr_w1_b_name in lora . keys ( ) :
lokr_w1_b = lora [ lokr_w1_b_name ]
loaded_keys . add ( lokr_w1_b_name )
lokr_w2_a = None
if lokr_w2_a_name in lora . keys ( ) :
lokr_w2_a = lora [ lokr_w2_a_name ]
loaded_keys . add ( lokr_w2_a_name )
lokr_w2_b = None
if lokr_w2_b_name in lora . keys ( ) :
lokr_w2_b = lora [ lokr_w2_b_name ]
loaded_keys . add ( lokr_w2_b_name )
lokr_t2 = None
if lokr_t2_name in lora . keys ( ) :
lokr_t2 = lora [ lokr_t2_name ]
loaded_keys . add ( lokr_t2_name )
if ( lokr_w1 is not None ) or ( lokr_w2 is not None ) or ( lokr_w1_a is not None ) or ( lokr_w2_a is not None ) :
patch_dict [ to_load [ x ] ] = ( lokr_w1 , lokr_w2 , alpha , lokr_w1_a , lokr_w1_b , lokr_w2_a , lokr_w2_b , lokr_t2 )
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for x in lora . keys ( ) :
if x not in loaded_keys :
print ( " lora key not loaded " , x )
return patch_dict
def model_lora_keys ( model , key_map = { } ) :
sdk = model . state_dict ( ) . keys ( )
counter = 0
for b in range ( 12 ) :
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tk = " diffusion_model.input_blocks. {} .1 " . format ( b )
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up_counter = 0
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for c in LORA_UNET_MAP_ATTENTIONS :
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k = " {} . {} .weight " . format ( tk , c )
if k in sdk :
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lora_key = " lora_unet_down_blocks_ {} _attentions_ {} _ {} " . format ( counter / / 2 , counter % 2 , LORA_UNET_MAP_ATTENTIONS [ c ] )
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key_map [ lora_key ] = k
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up_counter + = 1
if up_counter > = 4 :
counter + = 1
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for c in LORA_UNET_MAP_ATTENTIONS :
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k = " diffusion_model.middle_block.1. {} .weight " . format ( c )
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if k in sdk :
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lora_key = " lora_unet_mid_block_attentions_0_ {} " . format ( LORA_UNET_MAP_ATTENTIONS [ c ] )
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key_map [ lora_key ] = k
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counter = 3
for b in range ( 12 ) :
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tk = " diffusion_model.output_blocks. {} .1 " . format ( b )
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up_counter = 0
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for c in LORA_UNET_MAP_ATTENTIONS :
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k = " {} . {} .weight " . format ( tk , c )
if k in sdk :
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lora_key = " lora_unet_up_blocks_ {} _attentions_ {} _ {} " . format ( counter / / 3 , counter % 3 , LORA_UNET_MAP_ATTENTIONS [ c ] )
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key_map [ lora_key ] = k
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up_counter + = 1
if up_counter > = 4 :
counter + = 1
counter = 0
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text_model_lora_key = " lora_te_text_model_encoder_layers_ {} _ {} "
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for b in range ( 24 ) :
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for c in LORA_CLIP_MAP :
k = " transformer.text_model.encoder.layers. {} . {} .weight " . format ( b , c )
if k in sdk :
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lora_key = text_model_lora_key . format ( b , LORA_CLIP_MAP [ c ] )
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key_map [ lora_key ] = k
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#Locon stuff
ds_counter = 0
counter = 0
for b in range ( 12 ) :
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tk = " diffusion_model.input_blocks. {} .0 " . format ( b )
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key_in = False
for c in LORA_UNET_MAP_RESNET :
k = " {} . {} .weight " . format ( tk , c )
if k in sdk :
lora_key = " lora_unet_down_blocks_ {} _ {} " . format ( counter / / 2 , LORA_UNET_MAP_RESNET [ c ] . format ( counter % 2 ) )
key_map [ lora_key ] = k
key_in = True
for bb in range ( 3 ) :
k = " {} . {} .op.weight " . format ( tk [ : - 2 ] , bb )
if k in sdk :
lora_key = " lora_unet_down_blocks_ {} _downsamplers_0_conv " . format ( ds_counter )
key_map [ lora_key ] = k
ds_counter + = 1
if key_in :
counter + = 1
counter = 0
for b in range ( 3 ) :
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tk = " diffusion_model.middle_block. {} " . format ( b )
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key_in = False
for c in LORA_UNET_MAP_RESNET :
k = " {} . {} .weight " . format ( tk , c )
if k in sdk :
lora_key = " lora_unet_mid_block_ {} " . format ( LORA_UNET_MAP_RESNET [ c ] . format ( counter ) )
key_map [ lora_key ] = k
key_in = True
if key_in :
counter + = 1
counter = 0
us_counter = 0
for b in range ( 12 ) :
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tk = " diffusion_model.output_blocks. {} .0 " . format ( b )
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key_in = False
for c in LORA_UNET_MAP_RESNET :
k = " {} . {} .weight " . format ( tk , c )
if k in sdk :
lora_key = " lora_unet_up_blocks_ {} _ {} " . format ( counter / / 3 , LORA_UNET_MAP_RESNET [ c ] . format ( counter % 3 ) )
key_map [ lora_key ] = k
key_in = True
for bb in range ( 3 ) :
k = " {} . {} .conv.weight " . format ( tk [ : - 2 ] , bb )
if k in sdk :
lora_key = " lora_unet_up_blocks_ {} _upsamplers_0_conv " . format ( us_counter )
key_map [ lora_key ] = k
us_counter + = 1
if key_in :
counter + = 1
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return key_map
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class ModelPatcher :
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def __init__ ( self , model , size = 0 ) :
self . size = size
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self . model = model
self . patches = [ ]
self . backup = { }
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self . model_options = { " transformer_options " : { } }
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self . model_size ( )
def model_size ( self ) :
if self . size > 0 :
return self . size
model_sd = self . model . state_dict ( )
size = 0
for k in model_sd :
t = model_sd [ k ]
size + = t . nelement ( ) * t . element_size ( )
self . size = size
return size
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def clone ( self ) :
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n = ModelPatcher ( self . model , self . size )
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n . patches = self . patches [ : ]
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n . model_options = copy . deepcopy ( self . model_options )
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return n
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def set_model_tomesd ( self , ratio ) :
self . model_options [ " transformer_options " ] [ " tomesd " ] = { " ratio " : ratio }
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def set_model_sampler_cfg_function ( self , sampler_cfg_function ) :
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if len ( inspect . signature ( sampler_cfg_function ) . parameters ) == 3 :
self . model_options [ " sampler_cfg_function " ] = lambda args : sampler_cfg_function ( args [ " cond " ] , args [ " uncond " ] , args [ " cond_scale " ] ) #Old way
else :
self . model_options [ " sampler_cfg_function " ] = sampler_cfg_function
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def set_model_patch ( self , patch , name ) :
to = self . model_options [ " transformer_options " ]
if " patches " not in to :
to [ " patches " ] = { }
to [ " patches " ] [ name ] = to [ " patches " ] . get ( name , [ ] ) + [ patch ]
def set_model_attn1_patch ( self , patch ) :
self . set_model_patch ( patch , " attn1_patch " )
def set_model_attn2_patch ( self , patch ) :
self . set_model_patch ( patch , " attn2_patch " )
def model_patches_to ( self , device ) :
to = self . model_options [ " transformer_options " ]
if " patches " in to :
patches = to [ " patches " ]
for name in patches :
patch_list = patches [ name ]
for i in range ( len ( patch_list ) ) :
if hasattr ( patch_list [ i ] , " to " ) :
patch_list [ i ] = patch_list [ i ] . to ( device )
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def model_dtype ( self ) :
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return self . model . get_dtype ( )
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def add_patches ( self , patches , strength = 1.0 ) :
p = { }
model_sd = self . model . state_dict ( )
for k in patches :
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if k in model_sd :
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p [ k ] = patches [ k ]
self . patches + = [ ( strength , p ) ]
return p . keys ( )
def patch_model ( self ) :
model_sd = self . model . state_dict ( )
for p in self . patches :
for k in p [ 1 ] :
v = p [ 1 ] [ k ]
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key = k
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if key not in model_sd :
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print ( " could not patch. key doesn ' t exist in model: " , k )
continue
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weight = model_sd [ key ]
if key not in self . backup :
self . backup [ key ] = weight . clone ( )
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alpha = p [ 0 ]
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if len ( v ) == 4 : #lora/locon
mat1 = v [ 0 ]
mat2 = v [ 1 ]
if v [ 2 ] is not None :
alpha * = v [ 2 ] / mat2 . shape [ 0 ]
if v [ 3 ] is not None :
#locon mid weights, hopefully the math is fine because I didn't properly test it
final_shape = [ mat2 . shape [ 1 ] , mat2 . shape [ 0 ] , v [ 3 ] . shape [ 2 ] , v [ 3 ] . shape [ 3 ] ]
mat2 = torch . mm ( mat2 . transpose ( 0 , 1 ) . flatten ( start_dim = 1 ) . float ( ) , v [ 3 ] . transpose ( 0 , 1 ) . flatten ( start_dim = 1 ) . float ( ) ) . reshape ( final_shape ) . transpose ( 0 , 1 )
weight + = ( alpha * torch . mm ( mat1 . flatten ( start_dim = 1 ) . float ( ) , mat2 . flatten ( start_dim = 1 ) . float ( ) ) ) . reshape ( weight . shape ) . type ( weight . dtype ) . to ( weight . device )
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elif len ( v ) == 8 : #lokr
w1 = v [ 0 ]
w2 = v [ 1 ]
w1_a = v [ 3 ]
w1_b = v [ 4 ]
w2_a = v [ 5 ]
w2_b = v [ 6 ]
t2 = v [ 7 ]
dim = None
if w1 is None :
dim = w1_b . shape [ 0 ]
w1 = torch . mm ( w1_a . float ( ) , w1_b . float ( ) )
if w2 is None :
dim = w2_b . shape [ 0 ]
if t2 is None :
w2 = torch . mm ( w2_a . float ( ) , w2_b . float ( ) )
else :
w2 = torch . einsum ( ' i j k l, j r, i p -> p r k l ' , t2 . float ( ) , w2_b . float ( ) , w2_a . float ( ) )
if len ( w2 . shape ) == 4 :
w1 = w1 . unsqueeze ( 2 ) . unsqueeze ( 2 )
if v [ 2 ] is not None and dim is not None :
alpha * = v [ 2 ] / dim
weight + = alpha * torch . kron ( w1 . float ( ) , w2 . float ( ) ) . reshape ( weight . shape ) . type ( weight . dtype ) . to ( weight . device )
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else : #loha
w1a = v [ 0 ]
w1b = v [ 1 ]
if v [ 2 ] is not None :
alpha * = v [ 2 ] / w1b . shape [ 0 ]
w2a = v [ 3 ]
w2b = v [ 4 ]
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if v [ 5 ] is not None : #cp decomposition
t1 = v [ 5 ]
t2 = v [ 6 ]
m1 = torch . einsum ( ' i j k l, j r, i p -> p r k l ' , t1 . float ( ) , w1b . float ( ) , w1a . float ( ) )
m2 = torch . einsum ( ' i j k l, j r, i p -> p r k l ' , t2 . float ( ) , w2b . float ( ) , w2a . float ( ) )
else :
m1 = torch . mm ( w1a . float ( ) , w1b . float ( ) )
m2 = torch . mm ( w2a . float ( ) , w2b . float ( ) )
weight + = ( alpha * m1 * m2 ) . reshape ( weight . shape ) . type ( weight . dtype ) . to ( weight . device )
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return self . model
def unpatch_model ( self ) :
model_sd = self . model . state_dict ( )
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keys = list ( self . backup . keys ( ) )
for k in keys :
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model_sd [ k ] [ : ] = self . backup [ k ]
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del self . backup [ k ]
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self . backup = { }
def load_lora_for_models ( model , clip , lora_path , strength_model , strength_clip ) :
key_map = model_lora_keys ( model . model )
key_map = model_lora_keys ( clip . cond_stage_model , key_map )
loaded = load_lora ( lora_path , key_map )
new_modelpatcher = model . clone ( )
k = new_modelpatcher . add_patches ( loaded , strength_model )
new_clip = clip . clone ( )
k1 = new_clip . add_patches ( loaded , strength_clip )
k = set ( k )
k1 = set ( k1 )
for x in loaded :
if ( x not in k ) and ( x not in k1 ) :
print ( " NOT LOADED " , x )
return ( new_modelpatcher , new_clip )
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class CLIP :
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def __init__ ( self , config = { } , embedding_directory = None , no_init = False ) :
if no_init :
return
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self . target_clip = config [ " target " ]
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if " params " in config :
params = config [ " params " ]
else :
params = { }
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if self . target_clip . endswith ( " FrozenOpenCLIPEmbedder " ) :
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clip = sd2_clip . SD2ClipModel
tokenizer = sd2_clip . SD2Tokenizer
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elif self . target_clip . endswith ( " FrozenCLIPEmbedder " ) :
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clip = sd1_clip . SD1ClipModel
tokenizer = sd1_clip . SD1Tokenizer
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self . device = model_management . text_encoder_device ( )
params [ " device " ] = self . device
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self . cond_stage_model = clip ( * * ( params ) )
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self . cond_stage_model = self . cond_stage_model . to ( self . device )
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self . tokenizer = tokenizer ( embedding_directory = embedding_directory )
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self . patcher = ModelPatcher ( self . cond_stage_model )
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self . layer_idx = None
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def clone ( self ) :
n = CLIP ( no_init = True )
n . target_clip = self . target_clip
n . patcher = self . patcher . clone ( )
n . cond_stage_model = self . cond_stage_model
n . tokenizer = self . tokenizer
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n . layer_idx = self . layer_idx
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return n
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def load_from_state_dict ( self , sd ) :
self . cond_stage_model . transformer . load_state_dict ( sd , strict = False )
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def add_patches ( self , patches , strength = 1.0 ) :
return self . patcher . add_patches ( patches , strength )
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def clip_layer ( self , layer_idx ) :
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self . layer_idx = layer_idx
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def tokenize ( self , text , return_word_ids = False ) :
return self . tokenizer . tokenize_with_weights ( text , return_word_ids )
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def encode_from_tokens ( self , tokens , return_pooled = False ) :
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if self . layer_idx is not None :
self . cond_stage_model . clip_layer ( self . layer_idx )
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try :
self . patcher . patch_model ( )
cond = self . cond_stage_model . encode_token_weights ( tokens )
self . patcher . unpatch_model ( )
except Exception as e :
self . patcher . unpatch_model ( )
raise e
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if return_pooled :
eos_token_index = max ( range ( len ( tokens [ 0 ] ) ) , key = tokens [ 0 ] . __getitem__ )
pooled = cond [ : , eos_token_index ]
return cond , pooled
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return cond
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def encode ( self , text ) :
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tokens = self . tokenize ( text )
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return self . encode_from_tokens ( tokens )
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class VAE :
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def __init__ ( self , ckpt_path = None , scale_factor = 0.18215 , device = None , config = None ) :
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if config is None :
#default SD1.x/SD2.x VAE parameters
ddconfig = { ' double_z ' : True , ' z_channels ' : 4 , ' resolution ' : 256 , ' in_channels ' : 3 , ' out_ch ' : 3 , ' ch ' : 128 , ' ch_mult ' : [ 1 , 2 , 4 , 4 ] , ' num_res_blocks ' : 2 , ' attn_resolutions ' : [ ] , ' dropout ' : 0.0 }
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self . first_stage_model = AutoencoderKL ( ddconfig , { ' target ' : ' torch.nn.Identity ' } , 4 , monitor = " val/rec_loss " )
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else :
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self . first_stage_model = AutoencoderKL ( * * ( config [ ' params ' ] ) )
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self . first_stage_model = self . first_stage_model . eval ( )
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if ckpt_path is not None :
sd = utils . load_torch_file ( ckpt_path )
if ' decoder.up_blocks.0.resnets.0.norm1.weight ' in sd . keys ( ) : #diffusers format
sd = diffusers_convert . convert_vae_state_dict ( sd )
self . first_stage_model . load_state_dict ( sd , strict = False )
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self . scale_factor = scale_factor
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if device is None :
device = model_management . get_torch_device ( )
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self . device = device
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def decode_tiled_ ( self , samples , tile_x = 64 , tile_y = 64 , overlap = 16 ) :
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steps = samples . shape [ 0 ] * utils . get_tiled_scale_steps ( samples . shape [ 3 ] , samples . shape [ 2 ] , tile_x , tile_y , overlap )
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steps + = samples . shape [ 0 ] * utils . get_tiled_scale_steps ( samples . shape [ 3 ] , samples . shape [ 2 ] , tile_x / / 2 , tile_y * 2 , overlap )
steps + = samples . shape [ 0 ] * utils . get_tiled_scale_steps ( samples . shape [ 3 ] , samples . shape [ 2 ] , tile_x * 2 , tile_y / / 2 , overlap )
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pbar = utils . ProgressBar ( steps )
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decode_fn = lambda a : ( self . first_stage_model . decode ( 1. / self . scale_factor * a . to ( self . device ) ) + 1.0 )
output = torch . clamp ( (
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( utils . tiled_scale ( samples , decode_fn , tile_x / / 2 , tile_y * 2 , overlap , upscale_amount = 8 , pbar = pbar ) +
utils . tiled_scale ( samples , decode_fn , tile_x * 2 , tile_y / / 2 , overlap , upscale_amount = 8 , pbar = pbar ) +
utils . tiled_scale ( samples , decode_fn , tile_x , tile_y , overlap , upscale_amount = 8 , pbar = pbar ) )
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/ 3.0 ) / 2.0 , min = 0.0 , max = 1.0 )
return output
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def encode_tiled_ ( self , pixel_samples , tile_x = 512 , tile_y = 512 , overlap = 64 ) :
steps = pixel_samples . shape [ 0 ] * utils . get_tiled_scale_steps ( pixel_samples . shape [ 3 ] , pixel_samples . shape [ 2 ] , tile_x , tile_y , overlap )
steps + = pixel_samples . shape [ 0 ] * utils . get_tiled_scale_steps ( pixel_samples . shape [ 3 ] , pixel_samples . shape [ 2 ] , tile_x / / 2 , tile_y * 2 , overlap )
steps + = pixel_samples . shape [ 0 ] * utils . get_tiled_scale_steps ( pixel_samples . shape [ 3 ] , pixel_samples . shape [ 2 ] , tile_x * 2 , tile_y / / 2 , overlap )
pbar = utils . ProgressBar ( steps )
encode_fn = lambda a : self . first_stage_model . encode ( 2. * a . to ( self . device ) - 1. ) . sample ( ) * self . scale_factor
samples = utils . tiled_scale ( pixel_samples , encode_fn , tile_x , tile_y , overlap , upscale_amount = ( 1 / 8 ) , out_channels = 4 , pbar = pbar )
samples + = utils . tiled_scale ( pixel_samples , encode_fn , tile_x * 2 , tile_y / / 2 , overlap , upscale_amount = ( 1 / 8 ) , out_channels = 4 , pbar = pbar )
samples + = utils . tiled_scale ( pixel_samples , encode_fn , tile_x / / 2 , tile_y * 2 , overlap , upscale_amount = ( 1 / 8 ) , out_channels = 4 , pbar = pbar )
samples / = 3.0
return samples
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def decode ( self , samples_in ) :
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model_management . unload_model ( )
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self . first_stage_model = self . first_stage_model . to ( self . device )
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try :
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free_memory = model_management . get_free_memory ( self . device )
batch_number = int ( ( free_memory * 0.7 ) / ( 2562 * samples_in . shape [ 2 ] * samples_in . shape [ 3 ] * 64 ) )
batch_number = max ( 1 , batch_number )
pixel_samples = torch . empty ( ( samples_in . shape [ 0 ] , 3 , round ( samples_in . shape [ 2 ] * 8 ) , round ( samples_in . shape [ 3 ] * 8 ) ) , device = " cpu " )
for x in range ( 0 , samples_in . shape [ 0 ] , batch_number ) :
samples = samples_in [ x : x + batch_number ] . to ( self . device )
pixel_samples [ x : x + batch_number ] = torch . clamp ( ( self . first_stage_model . decode ( 1. / self . scale_factor * samples ) + 1.0 ) / 2.0 , min = 0.0 , max = 1.0 ) . cpu ( )
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except model_management . OOM_EXCEPTION as e :
print ( " Warning: Ran out of memory when regular VAE decoding, retrying with tiled VAE decoding. " )
pixel_samples = self . decode_tiled_ ( samples_in )
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self . first_stage_model = self . first_stage_model . cpu ( )
pixel_samples = pixel_samples . cpu ( ) . movedim ( 1 , - 1 )
return pixel_samples
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def decode_tiled ( self , samples , tile_x = 64 , tile_y = 64 , overlap = 16 ) :
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model_management . unload_model ( )
self . first_stage_model = self . first_stage_model . to ( self . device )
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output = self . decode_tiled_ ( samples , tile_x , tile_y , overlap )
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self . first_stage_model = self . first_stage_model . cpu ( )
return output . movedim ( 1 , - 1 )
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def encode ( self , pixel_samples ) :
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model_management . unload_model ( )
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self . first_stage_model = self . first_stage_model . to ( self . device )
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pixel_samples = pixel_samples . movedim ( - 1 , 1 )
try :
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free_memory = model_management . get_free_memory ( self . device )
batch_number = int ( ( free_memory * 0.7 ) / ( 2078 * pixel_samples . shape [ 2 ] * pixel_samples . shape [ 3 ] ) ) #NOTE: this constant along with the one in the decode above are estimated from the mem usage for the VAE and could change.
batch_number = max ( 1 , batch_number )
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samples = torch . empty ( ( pixel_samples . shape [ 0 ] , 4 , round ( pixel_samples . shape [ 2 ] / / 8 ) , round ( pixel_samples . shape [ 3 ] / / 8 ) ) , device = " cpu " )
for x in range ( 0 , pixel_samples . shape [ 0 ] , batch_number ) :
pixels_in = ( 2. * pixel_samples [ x : x + batch_number ] - 1. ) . to ( self . device )
samples [ x : x + batch_number ] = self . first_stage_model . encode ( pixels_in ) . sample ( ) . cpu ( ) * self . scale_factor
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except model_management . OOM_EXCEPTION as e :
print ( " Warning: Ran out of memory when regular VAE encoding, retrying with tiled VAE encoding. " )
samples = self . encode_tiled_ ( pixel_samples )
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self . first_stage_model = self . first_stage_model . cpu ( )
return samples
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def encode_tiled ( self , pixel_samples , tile_x = 512 , tile_y = 512 , overlap = 64 ) :
model_management . unload_model ( )
self . first_stage_model = self . first_stage_model . to ( self . device )
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pixel_samples = pixel_samples . movedim ( - 1 , 1 )
samples = self . encode_tiled_ ( pixel_samples , tile_x = tile_x , tile_y = tile_y , overlap = overlap )
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self . first_stage_model = self . first_stage_model . cpu ( )
return samples
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def broadcast_image_to ( tensor , target_batch_size , batched_number ) :
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current_batch_size = tensor . shape [ 0 ]
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#print(current_batch_size, target_batch_size)
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if current_batch_size == 1 :
return tensor
per_batch = target_batch_size / / batched_number
tensor = tensor [ : per_batch ]
if per_batch > tensor . shape [ 0 ] :
tensor = torch . cat ( [ tensor ] * ( per_batch / / tensor . shape [ 0 ] ) + [ tensor [ : ( per_batch % tensor . shape [ 0 ] ) ] ] , dim = 0 )
current_batch_size = tensor . shape [ 0 ]
if current_batch_size == target_batch_size :
return tensor
else :
return torch . cat ( [ tensor ] * batched_number , dim = 0 )
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class ControlNet :
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def __init__ ( self , control_model , global_average_pooling = False , device = None ) :
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self . control_model = control_model
self . cond_hint_original = None
self . cond_hint = None
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self . strength = 1.0
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if device is None :
device = model_management . get_torch_device ( )
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self . device = device
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self . previous_controlnet = None
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self . global_average_pooling = global_average_pooling
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def get_control ( self , x_noisy , t , cond_txt , batched_number ) :
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control_prev = None
if self . previous_controlnet is not None :
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control_prev = self . previous_controlnet . get_control ( x_noisy , t , cond_txt , batched_number )
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output_dtype = x_noisy . dtype
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if self . cond_hint is None or x_noisy . shape [ 2 ] * 8 != self . cond_hint . shape [ 2 ] or x_noisy . shape [ 3 ] * 8 != self . cond_hint . shape [ 3 ] :
if self . cond_hint is not None :
del self . cond_hint
self . cond_hint = None
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self . cond_hint = utils . common_upscale ( self . cond_hint_original , x_noisy . shape [ 3 ] * 8 , x_noisy . shape [ 2 ] * 8 , ' nearest-exact ' , " center " ) . to ( self . control_model . dtype ) . to ( self . device )
if x_noisy . shape [ 0 ] != self . cond_hint . shape [ 0 ] :
self . cond_hint = broadcast_image_to ( self . cond_hint , x_noisy . shape [ 0 ] , batched_number )
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if self . control_model . dtype == torch . float16 :
precision_scope = torch . autocast
else :
precision_scope = contextlib . nullcontext
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with precision_scope ( model_management . get_autocast_device ( self . device ) ) :
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self . control_model = model_management . load_if_low_vram ( self . control_model )
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control = self . control_model ( x = x_noisy , hint = self . cond_hint , timesteps = t , context = cond_txt )
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self . control_model = model_management . unload_if_low_vram ( self . control_model )
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out = { ' middle ' : [ ] , ' output ' : [ ] }
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autocast_enabled = torch . is_autocast_enabled ( )
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for i in range ( len ( control ) ) :
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if i == ( len ( control ) - 1 ) :
key = ' middle '
index = 0
else :
key = ' output '
index = i
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x = control [ i ]
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if self . global_average_pooling :
x = torch . mean ( x , dim = ( 2 , 3 ) , keepdim = True ) . repeat ( 1 , 1 , x . shape [ 2 ] , x . shape [ 3 ] )
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x * = self . strength
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if x . dtype != output_dtype and not autocast_enabled :
x = x . to ( output_dtype )
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if control_prev is not None and key in control_prev :
prev = control_prev [ key ] [ index ]
if prev is not None :
x + = prev
out [ key ] . append ( x )
if control_prev is not None and ' input ' in control_prev :
out [ ' input ' ] = control_prev [ ' input ' ]
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return out
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def set_cond_hint ( self , cond_hint , strength = 1.0 ) :
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self . cond_hint_original = cond_hint
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self . strength = strength
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return self
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def set_previous_controlnet ( self , controlnet ) :
self . previous_controlnet = controlnet
return self
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def cleanup ( self ) :
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if self . previous_controlnet is not None :
self . previous_controlnet . cleanup ( )
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if self . cond_hint is not None :
del self . cond_hint
self . cond_hint = None
def copy ( self ) :
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c = ControlNet ( self . control_model , global_average_pooling = self . global_average_pooling )
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c . cond_hint_original = self . cond_hint_original
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c . strength = self . strength
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return c
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def get_models ( self ) :
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out = [ ]
if self . previous_controlnet is not None :
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out + = self . previous_controlnet . get_models ( )
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out . append ( self . control_model )
return out
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def load_controlnet ( ckpt_path , model = None ) :
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controlnet_data = utils . load_torch_file ( ckpt_path , safe_load = True )
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pth_key = ' control_model.input_blocks.1.1.transformer_blocks.0.attn2.to_k.weight '
pth = False
sd2 = False
key = ' input_blocks.1.1.transformer_blocks.0.attn2.to_k.weight '
if pth_key in controlnet_data :
pth = True
key = pth_key
elif key in controlnet_data :
pass
else :
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net = load_t2i_adapter ( controlnet_data )
if net is None :
print ( " error checkpoint does not contain controlnet or t2i adapter data " , ckpt_path )
return net
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context_dim = controlnet_data [ key ] . shape [ 1 ]
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use_fp16 = False
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if model_management . should_use_fp16 ( ) and controlnet_data [ key ] . dtype == torch . float16 :
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use_fp16 = True
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if context_dim == 768 :
#SD1.x
control_model = cldm . ControlNet ( image_size = 32 ,
in_channels = 4 ,
hint_channels = 3 ,
model_channels = 320 ,
attention_resolutions = [ 4 , 2 , 1 ] ,
num_res_blocks = 2 ,
channel_mult = [ 1 , 2 , 4 , 4 ] ,
num_heads = 8 ,
use_spatial_transformer = True ,
transformer_depth = 1 ,
context_dim = context_dim ,
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use_checkpoint = False ,
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legacy = False ,
use_fp16 = use_fp16 )
else :
#SD2.x
control_model = cldm . ControlNet ( image_size = 32 ,
in_channels = 4 ,
hint_channels = 3 ,
model_channels = 320 ,
attention_resolutions = [ 4 , 2 , 1 ] ,
num_res_blocks = 2 ,
channel_mult = [ 1 , 2 , 4 , 4 ] ,
num_head_channels = 64 ,
use_spatial_transformer = True ,
use_linear_in_transformer = True ,
transformer_depth = 1 ,
context_dim = context_dim ,
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use_checkpoint = False ,
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legacy = False ,
use_fp16 = use_fp16 )
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if pth :
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if ' difference ' in controlnet_data :
if model is not None :
m = model . patch_model ( )
model_sd = m . state_dict ( )
for x in controlnet_data :
c_m = " control_model. "
if x . startswith ( c_m ) :
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sd_key = " diffusion_model. {} " . format ( x [ len ( c_m ) : ] )
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if sd_key in model_sd :
cd = controlnet_data [ x ]
cd + = model_sd [ sd_key ] . type ( cd . dtype ) . to ( cd . device )
model . unpatch_model ( )
else :
print ( " WARNING: Loaded a diff controlnet without a model. It will very likely not work. " )
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class WeightsLoader ( torch . nn . Module ) :
pass
w = WeightsLoader ( )
w . control_model = control_model
w . load_state_dict ( controlnet_data , strict = False )
else :
control_model . load_state_dict ( controlnet_data , strict = False )
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if use_fp16 :
control_model = control_model . half ( )
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global_average_pooling = False
if ckpt_path . endswith ( " _shuffle.pth " ) or ckpt_path . endswith ( " _shuffle.safetensors " ) or ckpt_path . endswith ( " _shuffle_fp16.safetensors " ) : #TODO: smarter way of enabling global_average_pooling
global_average_pooling = True
control = ControlNet ( control_model , global_average_pooling = global_average_pooling )
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return control
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class T2IAdapter :
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def __init__ ( self , t2i_model , channels_in , device = None ) :
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self . t2i_model = t2i_model
self . channels_in = channels_in
self . strength = 1.0
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if device is None :
device = model_management . get_torch_device ( )
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self . device = device
self . previous_controlnet = None
self . control_input = None
self . cond_hint_original = None
self . cond_hint = None
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def get_control ( self , x_noisy , t , cond_txt , batched_number ) :
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control_prev = None
if self . previous_controlnet is not None :
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control_prev = self . previous_controlnet . get_control ( x_noisy , t , cond_txt , batched_number )
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if self . cond_hint is None or x_noisy . shape [ 2 ] * 8 != self . cond_hint . shape [ 2 ] or x_noisy . shape [ 3 ] * 8 != self . cond_hint . shape [ 3 ] :
if self . cond_hint is not None :
del self . cond_hint
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self . control_input = None
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self . cond_hint = None
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self . cond_hint = utils . common_upscale ( self . cond_hint_original , x_noisy . shape [ 3 ] * 8 , x_noisy . shape [ 2 ] * 8 , ' nearest-exact ' , " center " ) . float ( ) . to ( self . device )
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if self . channels_in == 1 and self . cond_hint . shape [ 1 ] > 1 :
self . cond_hint = torch . mean ( self . cond_hint , 1 , keepdim = True )
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if x_noisy . shape [ 0 ] != self . cond_hint . shape [ 0 ] :
self . cond_hint = broadcast_image_to ( self . cond_hint , x_noisy . shape [ 0 ] , batched_number )
if self . control_input is None :
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self . t2i_model . to ( self . device )
self . control_input = self . t2i_model ( self . cond_hint )
self . t2i_model . cpu ( )
output_dtype = x_noisy . dtype
out = { ' input ' : [ ] }
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autocast_enabled = torch . is_autocast_enabled ( )
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for i in range ( len ( self . control_input ) ) :
key = ' input '
x = self . control_input [ i ] * self . strength
if x . dtype != output_dtype and not autocast_enabled :
x = x . to ( output_dtype )
if control_prev is not None and key in control_prev :
index = len ( control_prev [ key ] ) - i * 3 - 3
prev = control_prev [ key ] [ index ]
if prev is not None :
x + = prev
out [ key ] . insert ( 0 , None )
out [ key ] . insert ( 0 , None )
out [ key ] . insert ( 0 , x )
if control_prev is not None and ' input ' in control_prev :
for i in range ( len ( out [ ' input ' ] ) ) :
if out [ ' input ' ] [ i ] is None :
out [ ' input ' ] [ i ] = control_prev [ ' input ' ] [ i ]
if control_prev is not None and ' middle ' in control_prev :
out [ ' middle ' ] = control_prev [ ' middle ' ]
if control_prev is not None and ' output ' in control_prev :
out [ ' output ' ] = control_prev [ ' output ' ]
return out
def set_cond_hint ( self , cond_hint , strength = 1.0 ) :
self . cond_hint_original = cond_hint
self . strength = strength
return self
def set_previous_controlnet ( self , controlnet ) :
self . previous_controlnet = controlnet
return self
def copy ( self ) :
c = T2IAdapter ( self . t2i_model , self . channels_in )
c . cond_hint_original = self . cond_hint_original
c . strength = self . strength
return c
def cleanup ( self ) :
if self . previous_controlnet is not None :
self . previous_controlnet . cleanup ( )
if self . cond_hint is not None :
del self . cond_hint
self . cond_hint = None
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def get_models ( self ) :
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out = [ ]
if self . previous_controlnet is not None :
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out + = self . previous_controlnet . get_models ( )
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return out
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def load_t2i_adapter ( t2i_data ) :
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keys = t2i_data . keys ( )
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if " body.0.in_conv.weight " in keys :
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cin = t2i_data [ ' body.0.in_conv.weight ' ] . shape [ 1 ]
model_ad = adapter . Adapter_light ( cin = cin , channels = [ 320 , 640 , 1280 , 1280 ] , nums_rb = 4 )
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elif ' conv_in.weight ' in keys :
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cin = t2i_data [ ' conv_in.weight ' ] . shape [ 1 ]
model_ad = adapter . Adapter ( cin = cin , channels = [ 320 , 640 , 1280 , 1280 ] [ : 4 ] , nums_rb = 2 , ksize = 1 , sk = True , use_conv = False )
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else :
return None
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model_ad . load_state_dict ( t2i_data )
return T2IAdapter ( model_ad , cin / / 64 )
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class StyleModel :
def __init__ ( self , model , device = " cpu " ) :
self . model = model
def get_cond ( self , input ) :
return self . model ( input . last_hidden_state )
def load_style_model ( ckpt_path ) :
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model_data = utils . load_torch_file ( ckpt_path , safe_load = True )
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keys = model_data . keys ( )
if " style_embedding " in keys :
model = adapter . StyleAdapter ( width = 1024 , context_dim = 768 , num_head = 8 , n_layes = 3 , num_token = 8 )
else :
raise Exception ( " invalid style model {} " . format ( ckpt_path ) )
model . load_state_dict ( model_data )
return StyleModel ( model )
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def load_clip ( ckpt_path , embedding_directory = None ) :
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clip_data = utils . load_torch_file ( ckpt_path , safe_load = True )
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config = { }
if " text_model.encoder.layers.22.mlp.fc1.weight " in clip_data :
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config [ ' target ' ] = ' comfy.ldm.modules.encoders.modules.FrozenOpenCLIPEmbedder '
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else :
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config [ ' target ' ] = ' comfy.ldm.modules.encoders.modules.FrozenCLIPEmbedder '
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clip = CLIP ( config = config , embedding_directory = embedding_directory )
clip . load_from_state_dict ( clip_data )
return clip
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def load_gligen ( ckpt_path ) :
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data = utils . load_torch_file ( ckpt_path , safe_load = True )
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model = gligen . load_gligen ( data )
if model_management . should_use_fp16 ( ) :
model = model . half ( )
return model
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def load_checkpoint ( config_path = None , ckpt_path = None , output_vae = True , output_clip = True , embedding_directory = None , state_dict = None , config = None ) :
if config is None :
with open ( config_path , ' r ' ) as stream :
config = yaml . safe_load ( stream )
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model_config_params = config [ ' model ' ] [ ' params ' ]
clip_config = model_config_params [ ' cond_stage_config ' ]
scale_factor = model_config_params [ ' scale_factor ' ]
vae_config = model_config_params [ ' first_stage_config ' ]
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fp16 = False
if " unet_config " in model_config_params :
if " params " in model_config_params [ " unet_config " ] :
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unet_config = model_config_params [ " unet_config " ] [ " params " ]
if " use_fp16 " in unet_config :
fp16 = unet_config [ " use_fp16 " ]
noise_aug_config = None
if " noise_aug_config " in model_config_params :
noise_aug_config = model_config_params [ " noise_aug_config " ]
v_prediction = False
if " parameterization " in model_config_params :
if model_config_params [ " parameterization " ] == " v " :
v_prediction = True
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clip = None
vae = None
class WeightsLoader ( torch . nn . Module ) :
pass
w = WeightsLoader ( )
load_state_dict_to = [ ]
if output_vae :
vae = VAE ( scale_factor = scale_factor , config = vae_config )
w . first_stage_model = vae . first_stage_model
load_state_dict_to = [ w ]
if output_clip :
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clip = CLIP ( config = clip_config , embedding_directory = embedding_directory )
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w . cond_stage_model = clip . cond_stage_model
load_state_dict_to = [ w ]
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if config [ ' model ' ] [ " target " ] . endswith ( " LatentInpaintDiffusion " ) :
model = model_base . SDInpaint ( unet_config , v_prediction = v_prediction )
elif config [ ' model ' ] [ " target " ] . endswith ( " ImageEmbeddingConditionedLatentDiffusion " ) :
model = model_base . SD21UNCLIP ( unet_config , noise_aug_config [ " params " ] , v_prediction = v_prediction )
else :
model = model_base . BaseModel ( unet_config , v_prediction = v_prediction )
if state_dict is None :
state_dict = utils . load_torch_file ( ckpt_path )
model = load_model_weights ( model , state_dict , verbose = False , load_state_dict_to = load_state_dict_to )
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if fp16 :
model = model . half ( )
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return ( ModelPatcher ( model ) , clip , vae )
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def load_checkpoint_guess_config ( ckpt_path , output_vae = True , output_clip = True , output_clipvision = False , embedding_directory = None ) :
sd = utils . load_torch_file ( ckpt_path )
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sd_keys = sd . keys ( )
clip = None
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clipvision = None
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vae = None
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fp16 = model_management . should_use_fp16 ( )
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class WeightsLoader ( torch . nn . Module ) :
pass
w = WeightsLoader ( )
load_state_dict_to = [ ]
if output_vae :
vae = VAE ( )
w . first_stage_model = vae . first_stage_model
load_state_dict_to = [ w ]
if output_clip :
clip_config = { }
if " cond_stage_model.model.transformer.resblocks.22.attn.out_proj.weight " in sd_keys :
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clip_config [ ' target ' ] = ' comfy.ldm.modules.encoders.modules.FrozenOpenCLIPEmbedder '
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else :
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clip_config [ ' target ' ] = ' comfy.ldm.modules.encoders.modules.FrozenCLIPEmbedder '
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clip = CLIP ( config = clip_config , embedding_directory = embedding_directory )
w . cond_stage_model = clip . cond_stage_model
load_state_dict_to = [ w ]
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clipvision_key = " embedder.model.visual.transformer.resblocks.0.attn.in_proj_weight "
noise_aug_config = None
if clipvision_key in sd_keys :
size = sd [ clipvision_key ] . shape [ 1 ]
if output_clipvision :
clipvision = clip_vision . load_clipvision_from_sd ( sd )
noise_aug_key = " noise_augmentor.betas "
if noise_aug_key in sd_keys :
noise_aug_config = { }
params = { }
noise_schedule_config = { }
noise_schedule_config [ " timesteps " ] = sd [ noise_aug_key ] . shape [ 0 ]
noise_schedule_config [ " beta_schedule " ] = " squaredcos_cap_v2 "
params [ " noise_schedule_config " ] = noise_schedule_config
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noise_aug_config [ ' target ' ] = " comfy.ldm.modules.encoders.noise_aug_modules.CLIPEmbeddingNoiseAugmentation "
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if size == 1280 : #h
params [ " timestep_dim " ] = 1024
elif size == 1024 : #l
params [ " timestep_dim " ] = 768
noise_aug_config [ ' params ' ] = params
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sd_config = {
" linear_start " : 0.00085 ,
" linear_end " : 0.012 ,
" num_timesteps_cond " : 1 ,
" log_every_t " : 200 ,
" timesteps " : 1000 ,
" first_stage_key " : " jpg " ,
" cond_stage_key " : " txt " ,
" image_size " : 64 ,
" channels " : 4 ,
" cond_stage_trainable " : False ,
" monitor " : " val/loss_simple_ema " ,
" scale_factor " : 0.18215 ,
" use_ema " : False ,
}
unet_config = {
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" use_checkpoint " : False ,
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" image_size " : 32 ,
" out_channels " : 4 ,
" attention_resolutions " : [
4 ,
2 ,
1
] ,
" num_res_blocks " : 2 ,
" channel_mult " : [
1 ,
2 ,
4 ,
4
] ,
" use_spatial_transformer " : True ,
" transformer_depth " : 1 ,
" legacy " : False
}
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if len ( sd [ ' model.diffusion_model.input_blocks.4.1.proj_in.weight ' ] . shape ) == 2 :
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unet_config [ ' use_linear_in_transformer ' ] = True
unet_config [ " use_fp16 " ] = fp16
unet_config [ " model_channels " ] = sd [ ' model.diffusion_model.input_blocks.0.0.weight ' ] . shape [ 0 ]
unet_config [ " in_channels " ] = sd [ ' model.diffusion_model.input_blocks.0.0.weight ' ] . shape [ 1 ]
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unet_config [ " context_dim " ] = sd [ ' model.diffusion_model.input_blocks.4.1.transformer_blocks.0.attn2.to_k.weight ' ] . shape [ 1 ]
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sd_config [ " unet_config " ] = { " target " : " comfy.ldm.modules.diffusionmodules.openaimodel.UNetModel " , " params " : unet_config }
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unclip_model = False
inpaint_model = False
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if noise_aug_config is not None : #SD2.x unclip model
sd_config [ " noise_aug_config " ] = noise_aug_config
sd_config [ " image_size " ] = 96
sd_config [ " embedding_dropout " ] = 0.25
sd_config [ " conditioning_key " ] = ' crossattn-adm '
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unclip_model = True
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elif unet_config [ " in_channels " ] > 4 : #inpainting model
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sd_config [ " conditioning_key " ] = " hybrid "
sd_config [ " finetune_keys " ] = None
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inpaint_model = True
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else :
sd_config [ " conditioning_key " ] = " crossattn "
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if unet_config [ " context_dim " ] == 768 :
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unet_config [ " num_heads " ] = 8 #SD1.x
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else :
unet_config [ " num_head_channels " ] = 64 #SD2.x
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unclip = ' model.diffusion_model.label_emb.0.0.weight '
if unclip in sd_keys :
unet_config [ " num_classes " ] = " sequential "
unet_config [ " adm_in_channels " ] = sd [ unclip ] . shape [ 1 ]
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v_prediction = False
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if unet_config [ " context_dim " ] == 1024 and unet_config [ " in_channels " ] == 4 : #only SD2.x non inpainting models are v prediction
k = " model.diffusion_model.output_blocks.11.1.transformer_blocks.0.norm1.bias "
out = sd [ k ]
if torch . std ( out , unbiased = False ) > 0.09 : # not sure how well this will actually work. I guess we will find out.
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v_prediction = True
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sd_config [ " parameterization " ] = ' v '
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if inpaint_model :
model = model_base . SDInpaint ( unet_config , v_prediction = v_prediction )
elif unclip_model :
model = model_base . SD21UNCLIP ( unet_config , noise_aug_config [ " params " ] , v_prediction = v_prediction )
else :
model = model_base . BaseModel ( unet_config , v_prediction = v_prediction )
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if fp16 :
model = model . half ( )
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model = load_model_weights ( model , sd , verbose = False , load_state_dict_to = load_state_dict_to )
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return ( ModelPatcher ( model ) , clip , vae , clipvision )