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from collections import deque
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import torch
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import inspect
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import k_diffusion . sampling
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from modules import prompt_parser , devices , sd_samplers_common
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from modules . shared import opts , state
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import modules . shared as shared
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from modules . script_callbacks import CFGDenoiserParams , cfg_denoiser_callback
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from modules . script_callbacks import CFGDenoisedParams , cfg_denoised_callback
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from modules . script_callbacks import AfterCFGCallbackParams , cfg_after_cfg_callback
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samplers_k_diffusion = [
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( ' Euler a ' , ' sample_euler_ancestral ' , [ ' k_euler_a ' , ' k_euler_ancestral ' ] , { " uses_ensd " : True } ) ,
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( ' Euler ' , ' sample_euler ' , [ ' k_euler ' ] , { } ) ,
( ' LMS ' , ' sample_lms ' , [ ' k_lms ' ] , { } ) ,
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( ' Heun ' , ' sample_heun ' , [ ' k_heun ' ] , { " second_order " : True } ) ,
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( ' DPM2 ' , ' sample_dpm_2 ' , [ ' k_dpm_2 ' ] , { ' discard_next_to_last_sigma ' : True } ) ,
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( ' DPM2 a ' , ' sample_dpm_2_ancestral ' , [ ' k_dpm_2_a ' ] , { ' discard_next_to_last_sigma ' : True , " uses_ensd " : True } ) ,
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( ' DPM++ 2S a ' , ' sample_dpmpp_2s_ancestral ' , [ ' k_dpmpp_2s_a ' ] , { " uses_ensd " : True , " second_order " : True } ) ,
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( ' DPM++ 2M ' , ' sample_dpmpp_2m ' , [ ' k_dpmpp_2m ' ] , { } ) ,
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( ' DPM++ SDE ' , ' sample_dpmpp_sde ' , [ ' k_dpmpp_sde ' ] , { " second_order " : True , " brownian_noise " : True } ) ,
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( ' DPM++ 2M SDE ' , ' sample_dpmpp_2m_sde ' , [ ' k_dpmpp_2m_sde_ka ' ] , { " brownian_noise " : True } ) ,
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( ' DPM fast ' , ' sample_dpm_fast ' , [ ' k_dpm_fast ' ] , { " uses_ensd " : True } ) ,
( ' DPM adaptive ' , ' sample_dpm_adaptive ' , [ ' k_dpm_ad ' ] , { " uses_ensd " : True } ) ,
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( ' LMS Karras ' , ' sample_lms ' , [ ' k_lms_ka ' ] , { ' scheduler ' : ' karras ' } ) ,
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( ' DPM2 Karras ' , ' sample_dpm_2 ' , [ ' k_dpm_2_ka ' ] , { ' scheduler ' : ' karras ' , ' discard_next_to_last_sigma ' : True , " uses_ensd " : True , " second_order " : True } ) ,
( ' DPM2 a Karras ' , ' sample_dpm_2_ancestral ' , [ ' k_dpm_2_a_ka ' ] , { ' scheduler ' : ' karras ' , ' discard_next_to_last_sigma ' : True , " uses_ensd " : True , " second_order " : True } ) ,
( ' DPM++ 2S a Karras ' , ' sample_dpmpp_2s_ancestral ' , [ ' k_dpmpp_2s_a_ka ' ] , { ' scheduler ' : ' karras ' , " uses_ensd " : True , " second_order " : True } ) ,
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( ' DPM++ 2M Karras ' , ' sample_dpmpp_2m ' , [ ' k_dpmpp_2m_ka ' ] , { ' scheduler ' : ' karras ' } ) ,
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( ' DPM++ SDE Karras ' , ' sample_dpmpp_sde ' , [ ' k_dpmpp_sde_ka ' ] , { ' scheduler ' : ' karras ' , " second_order " : True , " brownian_noise " : True } ) ,
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( ' DPM++ 2M SDE Karras ' , ' sample_dpmpp_2m_sde ' , [ ' k_dpmpp_2m_sde_ka ' ] , { ' scheduler ' : ' karras ' , " brownian_noise " : True } ) ,
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]
samplers_data_k_diffusion = [
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sd_samplers_common . SamplerData ( label , lambda model , funcname = funcname : KDiffusionSampler ( funcname , model ) , aliases , options )
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for label , funcname , aliases , options in samplers_k_diffusion
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if hasattr ( k_diffusion . sampling , funcname )
]
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sampler_extra_params = {
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' sample_euler ' : [ ' s_churn ' , ' s_tmin ' , ' s_tmax ' , ' s_noise ' ] ,
' sample_heun ' : [ ' s_churn ' , ' s_tmin ' , ' s_tmax ' , ' s_noise ' ] ,
' sample_dpm_2 ' : [ ' s_churn ' , ' s_tmin ' , ' s_tmax ' , ' s_noise ' ] ,
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}
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k_diffusion_samplers_map = { x . name : x for x in samplers_data_k_diffusion }
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k_diffusion_scheduler = {
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' Automatic ' : None ,
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' karras ' : k_diffusion . sampling . get_sigmas_karras ,
' exponential ' : k_diffusion . sampling . get_sigmas_exponential ,
' polyexponential ' : k_diffusion . sampling . get_sigmas_polyexponential
}
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class CFGDenoiser ( torch . nn . Module ) :
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"""
Classifier free guidance denoiser . A wrapper for stable diffusion model ( specifically for unet )
that can take a noisy picture and produce a noise - free picture using two guidances ( prompts )
instead of one . Originally , the second prompt is just an empty string , but we use non - empty
negative prompt .
"""
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def __init__ ( self , model ) :
super ( ) . __init__ ( )
self . inner_model = model
self . mask = None
self . nmask = None
self . init_latent = None
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self . step = 0
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self . image_cfg_scale = None
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self . padded_cond_uncond = False
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def combine_denoised ( self , x_out , conds_list , uncond , cond_scale ) :
denoised_uncond = x_out [ - uncond . shape [ 0 ] : ]
denoised = torch . clone ( denoised_uncond )
for i , conds in enumerate ( conds_list ) :
for cond_index , weight in conds :
denoised [ i ] + = ( x_out [ cond_index ] - denoised_uncond [ i ] ) * ( weight * cond_scale )
return denoised
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def combine_denoised_for_edit_model ( self , x_out , cond_scale ) :
out_cond , out_img_cond , out_uncond = x_out . chunk ( 3 )
denoised = out_uncond + cond_scale * ( out_cond - out_img_cond ) + self . image_cfg_scale * ( out_img_cond - out_uncond )
return denoised
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def forward ( self , x , sigma , uncond , cond , cond_scale , s_min_uncond , image_cond ) :
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if state . interrupted or state . skipped :
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raise sd_samplers_common . InterruptedException
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# at self.image_cfg_scale == 1.0 produced results for edit model are the same as with normal sampling,
# so is_edit_model is set to False to support AND composition.
is_edit_model = shared . sd_model . cond_stage_key == " edit " and self . image_cfg_scale is not None and self . image_cfg_scale != 1.0
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conds_list , tensor = prompt_parser . reconstruct_multicond_batch ( cond , self . step )
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uncond = prompt_parser . reconstruct_cond_batch ( uncond , self . step )
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assert not is_edit_model or all ( len ( conds ) == 1 for conds in conds_list ) , " AND is not supported for InstructPix2Pix checkpoint (unless using Image CFG scale = 1.0) "
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batch_size = len ( conds_list )
repeats = [ len ( conds_list [ i ] ) for i in range ( batch_size ) ]
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if shared . sd_model . model . conditioning_key == " crossattn-adm " :
image_uncond = torch . zeros_like ( image_cond )
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make_condition_dict = lambda c_crossattn , c_adm : { " c_crossattn " : c_crossattn , " c_adm " : c_adm }
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else :
image_uncond = image_cond
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make_condition_dict = lambda c_crossattn , c_concat : { " c_crossattn " : c_crossattn , " c_concat " : [ c_concat ] }
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if not is_edit_model :
x_in = torch . cat ( [ torch . stack ( [ x [ i ] for _ in range ( n ) ] ) for i , n in enumerate ( repeats ) ] + [ x ] )
sigma_in = torch . cat ( [ torch . stack ( [ sigma [ i ] for _ in range ( n ) ] ) for i , n in enumerate ( repeats ) ] + [ sigma ] )
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image_cond_in = torch . cat ( [ torch . stack ( [ image_cond [ i ] for _ in range ( n ) ] ) for i , n in enumerate ( repeats ) ] + [ image_uncond ] )
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else :
x_in = torch . cat ( [ torch . stack ( [ x [ i ] for _ in range ( n ) ] ) for i , n in enumerate ( repeats ) ] + [ x ] + [ x ] )
sigma_in = torch . cat ( [ torch . stack ( [ sigma [ i ] for _ in range ( n ) ] ) for i , n in enumerate ( repeats ) ] + [ sigma ] + [ sigma ] )
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image_cond_in = torch . cat ( [ torch . stack ( [ image_cond [ i ] for _ in range ( n ) ] ) for i , n in enumerate ( repeats ) ] + [ image_uncond ] + [ torch . zeros_like ( self . init_latent ) ] )
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denoiser_params = CFGDenoiserParams ( x_in , image_cond_in , sigma_in , state . sampling_step , state . sampling_steps , tensor , uncond )
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cfg_denoiser_callback ( denoiser_params )
x_in = denoiser_params . x
image_cond_in = denoiser_params . image_cond
sigma_in = denoiser_params . sigma
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tensor = denoiser_params . text_cond
uncond = denoiser_params . text_uncond
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skip_uncond = False
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# alternating uncond allows for higher thresholds without the quality loss normally expected from raising it
if self . step % 2 and s_min_uncond > 0 and sigma [ 0 ] < s_min_uncond and not is_edit_model :
skip_uncond = True
x_in = x_in [ : - batch_size ]
sigma_in = sigma_in [ : - batch_size ]
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self . padded_cond_uncond = False
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if shared . opts . pad_cond_uncond and tensor . shape [ 1 ] != uncond . shape [ 1 ] :
empty = shared . sd_model . cond_stage_model_empty_prompt
num_repeats = ( tensor . shape [ 1 ] - uncond . shape [ 1 ] ) / / empty . shape [ 1 ]
if num_repeats < 0 :
tensor = torch . cat ( [ tensor , empty . repeat ( ( tensor . shape [ 0 ] , - num_repeats , 1 ) ) ] , axis = 1 )
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self . padded_cond_uncond = True
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elif num_repeats > 0 :
uncond = torch . cat ( [ uncond , empty . repeat ( ( uncond . shape [ 0 ] , num_repeats , 1 ) ) ] , axis = 1 )
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self . padded_cond_uncond = True
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if tensor . shape [ 1 ] == uncond . shape [ 1 ] or skip_uncond :
if is_edit_model :
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cond_in = torch . cat ( [ tensor , uncond , uncond ] )
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elif skip_uncond :
cond_in = tensor
else :
cond_in = torch . cat ( [ tensor , uncond ] )
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if shared . batch_cond_uncond :
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x_out = self . inner_model ( x_in , sigma_in , cond = make_condition_dict ( [ cond_in ] , image_cond_in ) )
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else :
x_out = torch . zeros_like ( x_in )
for batch_offset in range ( 0 , x_out . shape [ 0 ] , batch_size ) :
a = batch_offset
b = a + batch_size
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x_out [ a : b ] = self . inner_model ( x_in [ a : b ] , sigma_in [ a : b ] , cond = make_condition_dict ( [ cond_in [ a : b ] ] , image_cond_in [ a : b ] ) )
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else :
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x_out = torch . zeros_like ( x_in )
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batch_size = batch_size * 2 if shared . batch_cond_uncond else batch_size
for batch_offset in range ( 0 , tensor . shape [ 0 ] , batch_size ) :
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a = batch_offset
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b = min ( a + batch_size , tensor . shape [ 0 ] )
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if not is_edit_model :
c_crossattn = [ tensor [ a : b ] ]
else :
c_crossattn = torch . cat ( [ tensor [ a : b ] ] , uncond )
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x_out [ a : b ] = self . inner_model ( x_in [ a : b ] , sigma_in [ a : b ] , cond = make_condition_dict ( c_crossattn , image_cond_in [ a : b ] ) )
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if not skip_uncond :
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x_out [ - uncond . shape [ 0 ] : ] = self . inner_model ( x_in [ - uncond . shape [ 0 ] : ] , sigma_in [ - uncond . shape [ 0 ] : ] , cond = make_condition_dict ( [ uncond ] , image_cond_in [ - uncond . shape [ 0 ] : ] ) )
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denoised_image_indexes = [ x [ 0 ] [ 0 ] for x in conds_list ]
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if skip_uncond :
fake_uncond = torch . cat ( [ x_out [ i : i + 1 ] for i in denoised_image_indexes ] )
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x_out = torch . cat ( [ x_out , fake_uncond ] ) # we skipped uncond denoising, so we put cond-denoised image to where the uncond-denoised image should be
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denoised_params = CFGDenoisedParams ( x_out , state . sampling_step , state . sampling_steps , self . inner_model )
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cfg_denoised_callback ( denoised_params )
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devices . test_for_nans ( x_out , " unet " )
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if opts . live_preview_content == " Prompt " :
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sd_samplers_common . store_latent ( torch . cat ( [ x_out [ i : i + 1 ] for i in denoised_image_indexes ] ) )
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elif opts . live_preview_content == " Negative prompt " :
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sd_samplers_common . store_latent ( x_out [ - uncond . shape [ 0 ] : ] )
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if is_edit_model :
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denoised = self . combine_denoised_for_edit_model ( x_out , cond_scale )
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elif skip_uncond :
denoised = self . combine_denoised ( x_out , conds_list , uncond , 1.0 )
else :
denoised = self . combine_denoised ( x_out , conds_list , uncond , cond_scale )
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if self . mask is not None :
denoised = self . init_latent * self . mask + self . nmask * denoised
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after_cfg_callback_params = AfterCFGCallbackParams ( denoised , state . sampling_step , state . sampling_steps )
cfg_after_cfg_callback ( after_cfg_callback_params )
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denoised = after_cfg_callback_params . x
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self . step + = 1
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return denoised
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class TorchHijack :
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def __init__ ( self , sampler_noises ) :
# Using a deque to efficiently receive the sampler_noises in the same order as the previous index-based
# implementation.
self . sampler_noises = deque ( sampler_noises )
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def __getattr__ ( self , item ) :
if item == ' randn_like ' :
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return self . randn_like
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if hasattr ( torch , item ) :
return getattr ( torch , item )
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raise AttributeError ( f " ' { type ( self ) . __name__ } ' object has no attribute ' { item } ' " )
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def randn_like ( self , x ) :
if self . sampler_noises :
noise = self . sampler_noises . popleft ( )
if noise . shape == x . shape :
return noise
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if opts . randn_source == " CPU " or x . device . type == ' mps ' :
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return torch . randn_like ( x , device = devices . cpu ) . to ( x . device )
else :
return torch . randn_like ( x )
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class KDiffusionSampler :
def __init__ ( self , funcname , sd_model ) :
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denoiser = k_diffusion . external . CompVisVDenoiser if sd_model . parameterization == " v " else k_diffusion . external . CompVisDenoiser
self . model_wrap = denoiser ( sd_model , quantize = shared . opts . enable_quantization )
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self . funcname = funcname
self . func = getattr ( k_diffusion . sampling , self . funcname )
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self . extra_params = sampler_extra_params . get ( funcname , [ ] )
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self . model_wrap_cfg = CFGDenoiser ( self . model_wrap )
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self . sampler_noises = None
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self . stop_at = None
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self . eta = None
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self . config = None # set by the function calling the constructor
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self . last_latent = None
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self . s_min_uncond = None
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self . conditioning_key = sd_model . model . conditioning_key
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def callback_state ( self , d ) :
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step = d [ ' i ' ]
latent = d [ " denoised " ]
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if opts . live_preview_content == " Combined " :
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sd_samplers_common . store_latent ( latent )
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self . last_latent = latent
if self . stop_at is not None and step > self . stop_at :
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raise sd_samplers_common . InterruptedException
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state . sampling_step = step
shared . total_tqdm . update ( )
def launch_sampling ( self , steps , func ) :
state . sampling_steps = steps
state . sampling_step = 0
try :
return func ( )
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except RecursionError :
print (
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' Encountered RecursionError during sampling, returning last latent. '
' rho >5 with a polyexponential scheduler may cause this error. '
' You should try to use a smaller rho value instead. '
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)
return self . last_latent
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except sd_samplers_common . InterruptedException :
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return self . last_latent
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def number_of_needed_noises ( self , p ) :
return p . steps
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def initialize ( self , p ) :
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self . model_wrap_cfg . mask = p . mask if hasattr ( p , ' mask ' ) else None
self . model_wrap_cfg . nmask = p . nmask if hasattr ( p , ' nmask ' ) else None
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self . model_wrap_cfg . step = 0
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self . model_wrap_cfg . image_cfg_scale = getattr ( p , ' image_cfg_scale ' , None )
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self . eta = p . eta if p . eta is not None else opts . eta_ancestral
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self . s_min_uncond = getattr ( p , ' s_min_uncond ' , 0.0 )
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k_diffusion . sampling . torch = TorchHijack ( self . sampler_noises if self . sampler_noises is not None else [ ] )
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extra_params_kwargs = { }
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for param_name in self . extra_params :
if hasattr ( p , param_name ) and param_name in inspect . signature ( self . func ) . parameters :
extra_params_kwargs [ param_name ] = getattr ( p , param_name )
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if ' eta ' in inspect . signature ( self . func ) . parameters :
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if self . eta != 1.0 :
p . extra_generation_params [ " Eta " ] = self . eta
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extra_params_kwargs [ ' eta ' ] = self . eta
return extra_params_kwargs
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def get_sigmas ( self , p , steps ) :
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discard_next_to_last_sigma = self . config is not None and self . config . options . get ( ' discard_next_to_last_sigma ' , False )
if opts . always_discard_next_to_last_sigma and not discard_next_to_last_sigma :
discard_next_to_last_sigma = True
p . extra_generation_params [ " Discard penultimate sigma " ] = True
steps + = 1 if discard_next_to_last_sigma else 0
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if p . sampler_noise_scheduler_override :
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sigmas = p . sampler_noise_scheduler_override ( steps )
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elif opts . k_sched_type != " Automatic " :
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m_sigma_min , m_sigma_max = ( self . model_wrap . sigmas [ 0 ] . item ( ) , self . model_wrap . sigmas [ - 1 ] . item ( ) )
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sigma_min , sigma_max = ( 0.1 , 10 ) if opts . use_old_karras_scheduler_sigmas else ( m_sigma_min , m_sigma_max )
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sigmas_kwargs = {
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' sigma_min ' : sigma_min ,
' sigma_max ' : sigma_max ,
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}
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sigmas_func = k_diffusion_scheduler [ opts . k_sched_type ]
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p . extra_generation_params [ " Schedule type " ] = opts . k_sched_type
if opts . sigma_min != m_sigma_min and opts . sigma_min != 0 :
sigmas_kwargs [ ' sigma_min ' ] = opts . sigma_min
p . extra_generation_params [ " Schedule min sigma " ] = opts . sigma_min
if opts . sigma_max != m_sigma_max and opts . sigma_max != 0 :
sigmas_kwargs [ ' sigma_max ' ] = opts . sigma_max
p . extra_generation_params [ " Schedule max sigma " ] = opts . sigma_max
default_rho = 1. if opts . k_sched_type == " polyexponential " else 7.
if opts . k_sched_type != ' exponential ' and opts . rho != 0 and opts . rho != default_rho :
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sigmas_kwargs [ ' rho ' ] = opts . rho
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p . extra_generation_params [ " Schedule rho " ] = opts . rho
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sigmas = sigmas_func ( n = steps , * * sigmas_kwargs , device = shared . device )
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elif self . config is not None and self . config . options . get ( ' scheduler ' , None ) == ' karras ' :
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sigma_min , sigma_max = ( 0.1 , 10 ) if opts . use_old_karras_scheduler_sigmas else ( self . model_wrap . sigmas [ 0 ] . item ( ) , self . model_wrap . sigmas [ - 1 ] . item ( ) )
sigmas = k_diffusion . sampling . get_sigmas_karras ( n = steps , sigma_min = sigma_min , sigma_max = sigma_max , device = shared . device )
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else :
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sigmas = self . model_wrap . get_sigmas ( steps )
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if discard_next_to_last_sigma :
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sigmas = torch . cat ( [ sigmas [ : - 2 ] , sigmas [ - 1 : ] ] )
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return sigmas
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def create_noise_sampler ( self , x , sigmas , p ) :
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""" For DPM++ SDE: manually create noise sampler to enable deterministic results across different batch sizes """
if shared . opts . no_dpmpp_sde_batch_determinism :
return None
from k_diffusion . sampling import BrownianTreeNoiseSampler
sigma_min , sigma_max = sigmas [ sigmas > 0 ] . min ( ) , sigmas . max ( )
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current_iter_seeds = p . all_seeds [ p . iteration * p . batch_size : ( p . iteration + 1 ) * p . batch_size ]
return BrownianTreeNoiseSampler ( x , sigma_min , sigma_max , seed = current_iter_seeds )
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def sample_img2img ( self , p , x , noise , conditioning , unconditional_conditioning , steps = None , image_conditioning = None ) :
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steps , t_enc = sd_samplers_common . setup_img2img_steps ( p , steps )
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sigmas = self . get_sigmas ( p , steps )
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sigma_sched = sigmas [ steps - t_enc - 1 : ]
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xi = x + noise * sigma_sched [ 0 ]
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extra_params_kwargs = self . initialize ( p )
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parameters = inspect . signature ( self . func ) . parameters
if ' sigma_min ' in parameters :
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## last sigma is zero which isn't allowed by DPM Fast & Adaptive so taking value before last
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extra_params_kwargs [ ' sigma_min ' ] = sigma_sched [ - 2 ]
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if ' sigma_max ' in parameters :
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extra_params_kwargs [ ' sigma_max ' ] = sigma_sched [ 0 ]
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if ' n ' in parameters :
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extra_params_kwargs [ ' n ' ] = len ( sigma_sched ) - 1
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if ' sigma_sched ' in parameters :
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extra_params_kwargs [ ' sigma_sched ' ] = sigma_sched
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if ' sigmas ' in parameters :
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extra_params_kwargs [ ' sigmas ' ] = sigma_sched
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if self . config . options . get ( ' brownian_noise ' , False ) :
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noise_sampler = self . create_noise_sampler ( x , sigmas , p )
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extra_params_kwargs [ ' noise_sampler ' ] = noise_sampler
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self . model_wrap_cfg . init_latent = x
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self . last_latent = x
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extra_args = {
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' cond ' : conditioning ,
' image_cond ' : image_conditioning ,
' uncond ' : unconditional_conditioning ,
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' cond_scale ' : p . cfg_scale ,
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' s_min_uncond ' : self . s_min_uncond
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}
samples = self . launch_sampling ( t_enc + 1 , lambda : self . func ( self . model_wrap_cfg , xi , extra_args = extra_args , disable = False , callback = self . callback_state , * * extra_params_kwargs ) )
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if self . model_wrap_cfg . padded_cond_uncond :
p . extra_generation_params [ " Pad conds " ] = True
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return samples
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def sample ( self , p , x , conditioning , unconditional_conditioning , steps = None , image_conditioning = None ) :
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steps = steps or p . steps
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sigmas = self . get_sigmas ( p , steps )
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x = x * sigmas [ 0 ]
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extra_params_kwargs = self . initialize ( p )
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parameters = inspect . signature ( self . func ) . parameters
if ' sigma_min ' in parameters :
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extra_params_kwargs [ ' sigma_min ' ] = self . model_wrap . sigmas [ 0 ] . item ( )
extra_params_kwargs [ ' sigma_max ' ] = self . model_wrap . sigmas [ - 1 ] . item ( )
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if ' n ' in parameters :
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extra_params_kwargs [ ' n ' ] = steps
else :
extra_params_kwargs [ ' sigmas ' ] = sigmas
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if self . config . options . get ( ' brownian_noise ' , False ) :
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noise_sampler = self . create_noise_sampler ( x , sigmas , p )
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extra_params_kwargs [ ' noise_sampler ' ] = noise_sampler
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self . last_latent = x
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samples = self . launch_sampling ( steps , lambda : self . func ( self . model_wrap_cfg , x , extra_args = {
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' cond ' : conditioning ,
' image_cond ' : image_conditioning ,
' uncond ' : unconditional_conditioning ,
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' cond_scale ' : p . cfg_scale ,
' s_min_uncond ' : self . s_min_uncond
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} , disable = False , callback = self . callback_state , * * extra_params_kwargs ) )
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if self . model_wrap_cfg . padded_cond_uncond :
p . extra_generation_params [ " Pad conds " ] = True
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return samples
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