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# This file is part of stable-diffusion-webui (https://github.com/sd-webui/stable-diffusion-webui/).
# Copyright 2022 sd-webui team.
# This program is free software: you can redistribute it and/or modify
# it under the terms of the GNU Affero General Public License as published by
# the Free Software Foundation, either version 3 of the License, or
# (at your option) any later version.
# This program is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
# GNU Affero General Public License for more details.
# You should have received a copy of the GNU Affero General Public License
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# along with this program. If not, see <http://www.gnu.org/licenses/>.
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# base webui import and utils.
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from sd_utils import *
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# streamlit imports
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from streamlit import StopException
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#from streamlit.elements import image as STImage
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#other imports
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import os
from typing import Union
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from io import BytesIO
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from ldm . models . diffusion . ddim import DDIMSampler
from ldm . models . diffusion . plms import PLMSSampler
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import streamlit . components . v1 as components
from streamlit . runtime . media_file_manager import media_file_manager
from streamlit . elements . image import image_to_url
# uuid
import uuid
# Temp imports
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# end of imports
#---------------------------------------------------------------------------------------------------------------
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try :
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# this silences the annoying "Some weights of the model checkpoint were not used when initializing..." message at start.
from transformers import logging
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logging . set_verbosity_error ( )
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except :
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pass
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# Dev mode (server)
# _component_func = components.declare_component(
# "sd-gallery",
# url="http://localhost:3001",
# )
# Init Vuejs component
_component_func = components . declare_component (
" sd-gallery " , " ./frontend/dists/sd-gallery/dist " )
def sdGallery ( images = [ ] , key = None ) :
component_value = _component_func ( images = imgsToGallery ( images ) , key = key , default = " " )
return component_value
def imgsToGallery ( images ) :
urls = [ ]
for i in images :
# random string for id
random_id = str ( uuid . uuid4 ( ) )
url = image_to_url (
image = i ,
image_id = random_id ,
width = i . width ,
clamp = False ,
channels = " RGB " ,
output_format = " PNG "
)
# image_io = BytesIO()
# i.save(image_io, 'PNG')
# width, height = i.size
# image_id = "%s" % (str(images.index(i)))
# (data, mimetype) = STImage._normalize_to_bytes(image_io.getvalue(), width, 'auto')
# this_file = media_file_manager.add(data, mimetype, image_id)
# img_str = this_file.url
urls . append ( url )
return urls
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class plugin_info ( ) :
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plugname = " txt2img "
description = " Text to Image "
isTab = True
displayPriority = 1
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if os . path . exists ( os . path . join ( st . session_state [ ' defaults ' ] . general . GFPGAN_dir , " experiments " , " pretrained_models " , " GFPGANv1.3.pth " ) ) :
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server_state [ " GFPGAN_available " ] = True
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else :
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server_state [ " GFPGAN_available " ] = False
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if os . path . exists ( os . path . join ( st . session_state [ ' defaults ' ] . general . RealESRGAN_dir , " experiments " , " pretrained_models " , f " { st . session_state [ ' defaults ' ] . general . RealESRGAN_model } .pth " ) ) :
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server_state [ " RealESRGAN_available " ] = True
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else :
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server_state [ " RealESRGAN_available " ] = False
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#
def txt2img ( prompt : str , ddim_steps : int , sampler_name : str , realesrgan_model_name : str ,
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n_iter : int , batch_size : int , cfg_scale : float , seed : Union [ int , str , None ] ,
height : int , width : int , separate_prompts : bool = False , normalize_prompt_weights : bool = True ,
save_individual_images : bool = True , save_grid : bool = True , group_by_prompt : bool = True ,
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save_as_jpg : bool = True , use_GFPGAN : bool = True , use_RealESRGAN : bool = True ,
RealESRGAN_model : str = " RealESRGAN_x4plus_anime_6B " , fp = None , variant_amount : float = None ,
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variant_seed : int = None , ddim_eta : float = 0.0 , write_info_files : bool = True ) :
outpath = st . session_state [ ' defaults ' ] . general . outdir_txt2img or st . session_state [ ' defaults ' ] . general . outdir or " outputs/txt2img-samples "
seed = seed_to_int ( seed )
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if sampler_name == ' PLMS ' :
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sampler = PLMSSampler ( server_state [ " model " ] )
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elif sampler_name == ' DDIM ' :
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sampler = DDIMSampler ( server_state [ " model " ] )
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elif sampler_name == ' k_dpm_2_a ' :
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sampler = KDiffusionSampler ( server_state [ " model " ] , ' dpm_2_ancestral ' )
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elif sampler_name == ' k_dpm_2 ' :
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sampler = KDiffusionSampler ( server_state [ " model " ] , ' dpm_2 ' )
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elif sampler_name == ' k_euler_a ' :
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sampler = KDiffusionSampler ( server_state [ " model " ] , ' euler_ancestral ' )
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elif sampler_name == ' k_euler ' :
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sampler = KDiffusionSampler ( server_state [ " model " ] , ' euler ' )
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elif sampler_name == ' k_heun ' :
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sampler = KDiffusionSampler ( server_state [ " model " ] , ' heun ' )
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elif sampler_name == ' k_lms ' :
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sampler = KDiffusionSampler ( server_state [ " model " ] , ' lms ' )
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else :
raise Exception ( " Unknown sampler: " + sampler_name )
def init ( ) :
pass
def sample ( init_data , x , conditioning , unconditional_conditioning , sampler_name ) :
samples_ddim , _ = sampler . sample ( S = ddim_steps , conditioning = conditioning , batch_size = int ( x . shape [ 0 ] ) , shape = x [ 0 ] . shape , verbose = False , unconditional_guidance_scale = cfg_scale ,
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unconditional_conditioning = unconditional_conditioning , eta = ddim_eta , x_T = x , img_callback = generation_callback ,
log_every_t = int ( st . session_state . update_preview_frequency ) )
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return samples_ddim
#try:
output_images , seed , info , stats = process_images (
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outpath = outpath ,
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func_init = init ,
func_sample = sample ,
prompt = prompt ,
seed = seed ,
sampler_name = sampler_name ,
save_grid = save_grid ,
batch_size = batch_size ,
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n_iter = n_iter ,
steps = ddim_steps ,
cfg_scale = cfg_scale ,
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width = width ,
height = height ,
prompt_matrix = separate_prompts ,
use_GFPGAN = st . session_state [ " use_GFPGAN " ] ,
use_RealESRGAN = st . session_state [ " use_RealESRGAN " ] ,
realesrgan_model_name = realesrgan_model_name ,
ddim_eta = ddim_eta ,
normalize_prompt_weights = normalize_prompt_weights ,
save_individual_images = save_individual_images ,
sort_samples = group_by_prompt ,
write_info_files = write_info_files ,
jpg_sample = save_as_jpg ,
variant_amount = variant_amount ,
variant_seed = variant_seed ,
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)
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del sampler
return output_images , seed , info , stats
#except RuntimeError as e:
#err = e
#err_msg = f'CRASHED:<br><textarea rows="5" style="color:white;background: black;width: -webkit-fill-available;font-family: monospace;font-size: small;font-weight: bold;">{str(e)}</textarea><br><br>Please wait while the program restarts.'
#stats = err_msg
#return [], seed, 'err', stats
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def layout ( ) :
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with st . form ( " txt2img-inputs " ) :
st . session_state [ " generation_mode " ] = " txt2img "
input_col1 , generate_col1 = st . columns ( [ 10 , 1 ] )
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with input_col1 :
#prompt = st.text_area("Input Text","")
prompt = st . text_input ( " Input Text " , " " , placeholder = " A corgi wearing a top hat as an oil painting. " )
# creating the page layout using columns
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col1 , col2 , col3 = st . columns ( [ 1 , 2 , 1 ] , gap = " large " )
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with col1 :
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width = st . slider ( " Width: " , min_value = st . session_state [ ' defaults ' ] . txt2img . width . min_value , max_value = st . session_state [ ' defaults ' ] . txt2img . width . max_value ,
value = st . session_state [ ' defaults ' ] . txt2img . width . value , step = st . session_state [ ' defaults ' ] . txt2img . width . step )
height = st . slider ( " Height: " , min_value = st . session_state [ ' defaults ' ] . txt2img . height . min_value , max_value = st . session_state [ ' defaults ' ] . txt2img . height . max_value ,
value = st . session_state [ ' defaults ' ] . txt2img . height . value , step = st . session_state [ ' defaults ' ] . txt2img . height . step )
cfg_scale = st . slider ( " CFG (Classifier Free Guidance Scale): " , min_value = st . session_state [ ' defaults ' ] . txt2img . cfg_scale . min_value ,
max_value = st . session_state [ ' defaults ' ] . txt2img . cfg_scale . max_value ,
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value = st . session_state [ ' defaults ' ] . txt2img . cfg_scale . value , step = st . session_state [ ' defaults ' ] . txt2img . cfg_scale . step ,
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help = " How strongly the image should follow the prompt. " )
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seed = st . text_input ( " Seed: " , value = st . session_state [ ' defaults ' ] . txt2img . seed , help = " The seed to use, if left blank a random seed will be generated. " )
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with st . expander ( " Batch Options " ) :
batch_count = st . slider ( " Batch count. " , min_value = st . session_state [ ' defaults ' ] . txt2img . batch_count . min_value , max_value = st . session_state [ ' defaults ' ] . txt2img . batch_count . max_value ,
value = st . session_state [ ' defaults ' ] . txt2img . batch_count . value , step = st . session_state [ ' defaults ' ] . txt2img . batch_count . step ,
help = " How many iterations or batches of images to generate in total. " )
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batch_size = st . slider ( " Batch size " , min_value = st . session_state [ ' defaults ' ] . txt2img . batch_size . min_value , max_value = st . session_state [ ' defaults ' ] . txt2img . batch_size . max_value ,
value = st . session_state . defaults . txt2img . batch_size . value , step = st . session_state . defaults . txt2img . batch_size . step ,
help = " How many images are at once in a batch. \
It increases the VRAM usage a lot but if you have enough VRAM it can reduce the time it takes to finish generation as more images are generated at once . \
Default : 1 " )
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with st . expander ( " Preview Settings " ) :
st . session_state [ " update_preview " ] = st . checkbox ( " Update Image Preview " , value = st . session_state [ ' defaults ' ] . txt2img . update_preview ,
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help = " If enabled the image preview will be updated during the generation instead of at the end. \
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You can use the Update Preview \Frequency option bellow to customize how frequent it ' s updated. \
By default this is enabled and the frequency is set to 1 step . " )
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st . session_state [ " update_preview_frequency " ] = st . text_input ( " Update Image Preview Frequency " , value = st . session_state [ ' defaults ' ] . txt2img . update_preview_frequency ,
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help = " Frequency in steps at which the the preview image is updated. By default the frequency \
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is set to 1 step . " )
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with col2 :
preview_tab , gallery_tab = st . tabs ( [ " Preview " , " Gallery " ] )
with preview_tab :
#st.write("Image")
#Image for testing
#image = Image.open(requests.get("https://icon-library.com/images/image-placeholder-icon/image-placeholder-icon-13.jpg", stream=True).raw).convert('RGB')
#new_image = image.resize((175, 240))
#preview_image = st.image(image)
# create an empty container for the image, progress bar, etc so we can update it later and use session_state to hold them globally.
st . session_state [ " preview_image " ] = st . empty ( )
st . session_state [ " loading " ] = st . empty ( )
st . session_state [ " progress_bar_text " ] = st . empty ( )
st . session_state [ " progress_bar " ] = st . empty ( )
message = st . empty ( )
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with gallery_tab :
st . session_state [ " gallery " ] = st . empty ( )
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with col3 :
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# If we have custom models available on the "models/custom"
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#folder then we show a menu to select which model we want to use, otherwise we use the main model for SD
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custom_models_available ( )
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if server_state [ " CustomModel_available " ] :
st . session_state [ " custom_model " ] = st . selectbox ( " Custom Model: " , server_state [ " custom_models " ] ,
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index = server_state [ " custom_models " ] . index ( st . session_state [ ' defaults ' ] . general . default_model ) ,
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help = " Select the model you want to use. This option is only available if you have custom models \
on your ' models/custom ' folder . The model name that will be shown here is the same as the name \
the file for the model has on said folder , it is recommended to give the . ckpt file a name that \
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will make it easier for you to distinguish it from other models . Default : Stable Diffusion v1 .4 " )
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st . session_state . sampling_steps = st . slider ( " Sampling Steps " , value = st . session_state . defaults . txt2img . sampling_steps . value ,
min_value = st . session_state . defaults . txt2img . sampling_steps . min_value ,
max_value = st . session_state [ ' defaults ' ] . txt2img . sampling_steps . max_value ,
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step = st . session_state [ ' defaults ' ] . txt2img . sampling_steps . step )
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sampler_name_list = [ " k_lms " , " k_euler " , " k_euler_a " , " k_dpm_2 " , " k_dpm_2_a " , " k_heun " , " PLMS " , " DDIM " ]
sampler_name = st . selectbox ( " Sampling method " , sampler_name_list ,
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index = sampler_name_list . index ( st . session_state [ ' defaults ' ] . txt2img . default_sampler ) , help = " Sampling method to use. Default: k_euler " )
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with st . expander ( " Advanced " ) :
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separate_prompts = st . checkbox ( " Create Prompt Matrix. " , value = st . session_state [ ' defaults ' ] . txt2img . separate_prompts , help = " Separate multiple prompts using the `|` character, and get all combinations of them. " )
normalize_prompt_weights = st . checkbox ( " Normalize Prompt Weights. " , value = st . session_state [ ' defaults ' ] . txt2img . normalize_prompt_weights , help = " Ensure the sum of all weights add up to 1.0 " )
save_individual_images = st . checkbox ( " Save individual images. " , value = st . session_state [ ' defaults ' ] . txt2img . save_individual_images , help = " Save each image generated before any filter or enhancement is applied. " )
save_grid = st . checkbox ( " Save grid " , value = st . session_state [ ' defaults ' ] . txt2img . save_grid , help = " Save a grid with all the images generated into a single image. " )
group_by_prompt = st . checkbox ( " Group results by prompt " , value = st . session_state [ ' defaults ' ] . txt2img . group_by_prompt ,
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help = " Saves all the images with the same prompt into the same folder. When using a prompt matrix each prompt combination will have its own folder. " )
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write_info_files = st . checkbox ( " Write Info file " , value = st . session_state [ ' defaults ' ] . txt2img . write_info_files , help = " Save a file next to the image with informartion about the generation. " )
save_as_jpg = st . checkbox ( " Save samples as jpg " , value = st . session_state [ ' defaults ' ] . txt2img . save_as_jpg , help = " Saves the images as jpg instead of png. " )
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if server_state [ " GFPGAN_available " ] :
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st . session_state [ " use_GFPGAN " ] = st . checkbox ( " Use GFPGAN " , value = st . session_state [ ' defaults ' ] . txt2img . use_GFPGAN , help = " Uses the GFPGAN model to improve faces after the generation. \
This greatly improve the quality and consistency of faces but uses extra VRAM . Disable if you need the extra VRAM . " )
else :
st . session_state [ " use_GFPGAN " ] = False
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if server_state [ " RealESRGAN_available " ] :
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st . session_state [ " use_RealESRGAN " ] = st . checkbox ( " Use RealESRGAN " , value = st . session_state [ ' defaults ' ] . txt2img . use_RealESRGAN ,
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help = " Uses the RealESRGAN model to upscale the images after the generation. \
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This greatly improve the quality and lets you have high resolution images but uses extra VRAM . Disable if you need the extra VRAM . " )
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st . session_state [ " RealESRGAN_model " ] = st . selectbox ( " RealESRGAN model " , [ " RealESRGAN_x4plus " , " RealESRGAN_x4plus_anime_6B " ] , index = 0 )
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else :
st . session_state [ " use_RealESRGAN " ] = False
st . session_state [ " RealESRGAN_model " ] = " RealESRGAN_x4plus "
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with st . expander ( " Variant " ) :
variant_amount = st . slider ( " Variant Amount: " , value = st . session_state [ ' defaults ' ] . txt2img . variant_amount . value ,
min_value = st . session_state [ ' defaults ' ] . txt2img . variant_amount . min_value , max_value = st . session_state [ ' defaults ' ] . txt2img . variant_amount . max_value ,
step = st . session_state [ ' defaults ' ] . txt2img . variant_amount . step )
variant_seed = st . text_input ( " Variant Seed: " , value = st . session_state [ ' defaults ' ] . txt2img . seed , help = " The seed to use when generating a variant, if left blank a random seed will be generated. " )
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#galleryCont = st.empty()
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# Every form must have a submit button, the extra blank spaces is a temp way to align it with the input field. Needs to be done in CSS or some other way.
generate_col1 . write ( " " )
generate_col1 . write ( " " )
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generate_button = generate_col1 . form_submit_button ( " Generate " )
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if generate_button :
#print("Loading models")
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# load the models when we hit the generate button for the first time, it wont be loaded after that so dont worry.
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#print (server_state['CustomModel_available'])
#print (st.session_state['custom_model'])
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with col2 :
with hc . HyLoader ( ' Loading Models... ' , hc . Loaders . standard_loaders , index = [ 0 ] ) :
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load_models ( False , st . session_state [ " use_GFPGAN " ] , st . session_state [ " use_RealESRGAN " ] , st . session_state [ " RealESRGAN_model " ] , server_state [ " CustomModel_available " ] ,
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st . session_state [ " custom_model " ] )
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try :
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#
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output_images , seeds , info , stats = txt2img ( prompt , st . session_state . sampling_steps , sampler_name , st . session_state [ " RealESRGAN_model " ] , batch_count , batch_size ,
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cfg_scale , seed , height , width , separate_prompts , normalize_prompt_weights , save_individual_images ,
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save_grid , group_by_prompt , save_as_jpg , st . session_state [ " use_GFPGAN " ] , st . session_state [ " use_RealESRGAN " ] , st . session_state [ " RealESRGAN_model " ] ,
variant_amount = variant_amount , variant_seed = variant_seed , write_info_files = write_info_files )
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message . success ( ' Render Complete: ' + info + ' ; Stats: ' + stats , icon = " ✅ " )
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#history_tab,col1,col2,col3,PlaceHolder,col1_cont,col2_cont,col3_cont = st.session_state['historyTab']
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#if 'latestImages' in st.session_state:
#for i in output_images:
##push the new image to the list of latest images and remove the oldest one
##remove the last index from the list\
#st.session_state['latestImages'].pop()
##add the new image to the start of the list
#st.session_state['latestImages'].insert(0, i)
#PlaceHolder.empty()
#with PlaceHolder.container():
#col1, col2, col3 = st.columns(3)
#col1_cont = st.container()
#col2_cont = st.container()
#col3_cont = st.container()
#images = st.session_state['latestImages']
#with col1_cont:
#with col1:
#[st.image(images[index]) for index in [0, 3, 6] if index < len(images)]
#with col2_cont:
#with col2:
#[st.image(images[index]) for index in [1, 4, 7] if index < len(images)]
#with col3_cont:
#with col3:
#[st.image(images[index]) for index in [2, 5, 8] if index < len(images)]
#historyGallery = st.empty()
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## check if output_images length is the same as seeds length
#with gallery_tab:
#st.markdown(createHTMLGallery(output_images,seeds), unsafe_allow_html=True)
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#st.session_state['historyTab'] = [history_tab,col1,col2,col3,PlaceHolder,col1_cont,col2_cont,col3_cont]
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with gallery_tab :
print ( seeds )
sdGallery ( output_images )
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except ( StopException , KeyError ) :
print ( f " Received Streamlit StopException " )
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# this will render all the images at the end of the generation but its better if its moved to a second tab inside col2 and shown as a gallery.
# use the current col2 first tab to show the preview_img and update it as its generated.
#preview_image.image(output_images)
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