| import sys, os
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| import random
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| import uuid
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| import re
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| from datetime import datetime
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| import time
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| sys.path.append(os.path.abspath(".."))
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|
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| from call_txt2img import *
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| from call_img2img import *
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| from build_dynamic_prompt import *
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| from call_extras import *
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| from model_lists import *
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| def generateimages(amount = 1, size = "all",model = "currently selected model",samplingsteps = "40",cfg= "7",hiresfix = True,hiressteps ="0",denoisestrength="0.6",samplingmethod="DPM++ SDE Karras", upscaler="R-ESRGAN 4x+", hiresscale="2",apiurl="http://127.0.0.1:7860",qualitygate=False,quality="7.6",runs="5",insanitylevel="5",subject="all", artist="all", imagetype="all",silentmode=False, workprompt="", antistring="",prefixprompt="", suffixprompt="", negativeprompt="",promptcompounderlevel = "1", seperator="comma", img2imgbatch = "1", img2imgsamplingsteps = "20", img2imgcfg = "7", img2imgsamplingmethod = "DPM++ SDE Karras", img2imgupscaler = "R-ESRGAN 4x+", img2imgmodel = "currently selected model", img2imgactivate = False, img2imgscale = "2", img2imgpadding = "64",img2imgdenoisestrength="0.3",ultimatesdupscale=False,usdutilewidth = "512", usdutileheight = "0", usdumaskblur = "8", usduredraw ="Linear", usduSeamsfix = "None", usdusdenoise = "0.35", usduswidth = "64", usduspadding ="32", usdusmaskblur = "8",controlnetenabled=False, controlnetmodel="",img2imgdenoisestrengthmod="-0.05",enableextraupscale = False,controlnetblockymode = False,extrasupscaler1 = "all",extrasupscaler2 ="all",extrasupscaler2visiblity="0.5",extrasupscaler2gfpgan="0",extrasupscaler2codeformer="0.15",extrasupscaler2codeformerweight="0.1",extrasresize="2",onlyupscale="false",givensubject="",smartsubject=True,giventypeofimage="",imagemodechance=20, gender="all", chosensubjectsubtypeobject="all", chosensubjectsubtypehumanoid="all", chosensubjectsubtypeconcept="all", increasestability = False, qualityhiresfix = False, qualitymode = "highest", qualitykeep="keep used", basesize = "512", promptvariantinsanitylevel = 0, givenoutfit = "", autonegativeprompt = True, autonegativepromptstrength = 0, autonegativepromptenhance = False, base_model = "SD1.5", OBP_preset = "", amountoffluff = "none", promptenhancer = "none", presetprefix = "", presetsuffix = ""):
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| loops = int(amount)
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| steps = 0
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| upscalefilelist=[]
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| originalimage = ""
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| originalpnginfo =""
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| randomprompt = ""
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| filename=""
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| continuewithnextpart = True
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| randomsubject = ""
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|
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| originalmodel = model
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| originalsamplingmethod = samplingmethod
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|
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| originalnegativeprompt = negativeprompt
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| originalimg2imgmodel = img2imgmodel
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| originalimg2imgsamplingmethod = img2imgsamplingmethod
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| originalimg2imgupscaler = img2imgupscaler
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| originalupscaler = upscaler
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| insanitylevel = int(insanitylevel)
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| originalimg2imgdenoisestrength = img2imgdenoisestrength
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| originalimg2imgpadding = img2imgpadding
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| currentlyselectedmodel = ""
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|
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| modellist=get_models()
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| samplerlist=get_samplers()
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| upscalerlist=get_upscalers()
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| img2imgupscalerlist=get_upscalers_for_img2img()
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| img2imgsamplerlist=get_samplers_for_img2img()
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|
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| tempmodel = "v1-5-pruned-emaonly.safetensors [6ce0161689]"
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|
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| optionsresponse = requests.get(url=f'{apiurl}/sdapi/v1/options')
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| optionsresponsejson = optionsresponse.json()
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|
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| currentlyselectedmodelhash = optionsresponsejson["sd_checkpoint_hash"]
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|
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| sdmodelsrespone = requests.get(url=f'{apiurl}/sdapi/v1/sd-models')
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| sdmodelsresponsejson = sdmodelsrespone.json()
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|
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| for item in sdmodelsresponsejson:
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| if(item['sha256'] == currentlyselectedmodelhash):
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| currentlyselectedmodel = item['title']
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| break
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| if currentlyselectedmodel != "":
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| print("current selected model is:")
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| print(currentlyselectedmodel)
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| else:
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| print("Cannot find current model.")
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| currentlyselectedmodel = tempmodel
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|
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| while(currentlyselectedmodel == tempmodel or tempmodel not in modellist):
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| tempmodel = random.choice(modellist)
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| if(onlyupscale==True):
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| script_dir = os.path.dirname(os.path.abspath(__file__))
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| inputupscalemefolder = os.path.join(script_dir, "./automated_outputs/upscale_me/" )
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|
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| for upscalefilename in os.listdir(inputupscalemefolder):
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| f = os.path.join(inputupscalemefolder, upscalefilename)
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|
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| if os.path.isfile(f):
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| if(f[-3:]!="txt"):
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| upscalefilelist.append(f)
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|
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| loops = len(upscalefilelist)
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|
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| if(loops==0):
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| print('No files to upscale found! Please place images in //upscale_me// folder')
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| else:
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| print("")
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| print("Found and upscaling files")
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| print("")
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| if(ultimatesdupscale==False):
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| upscalescript="SD upscale"
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| else:
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| upscalescript="Ultimate SD upscale"
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| while steps < loops:
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| if(steps > 0 and increasestability == True):
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| print("")
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| print("Increase Stability has been turned on.")
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| print("To prevent a memory issue, we are going to unload and then load the checkpoint back in.")
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| print("This helps with a memory leak issue. However A1111 is bad with memory management.")
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| print("")
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| response = requests.post(url=f'{apiurl}/sdapi/v1/unload-checkpoint')
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| print("model unloaded")
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| response = requests.post(url=f'{apiurl}/sdapi/v1/reload-checkpoint')
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| print("model reloaded")
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| if(silentmode==True and workprompt == ""):
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| print("Trying to use provided workflow prompt, but is empty. Generating a random prompt instead.")
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|
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| if(onlyupscale==False):
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| if(silentmode==True and workprompt != ""):
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| randomprompt = createpromptvariant(workprompt, promptvariantinsanitylevel)
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| print("Using provided workflow prompt")
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| print(randomprompt)
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| else:
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| randompromptlist = build_dynamic_prompt(insanitylevel,subject,artist,imagetype, False,antistring,prefixprompt,suffixprompt,promptcompounderlevel, seperator,givensubject,smartsubject,giventypeofimage,imagemodechance, gender, chosensubjectsubtypeobject, chosensubjectsubtypehumanoid, chosensubjectsubtypeconcept,True,False,-1,givenoutfit, prompt_g_and_l=True, base_model=base_model, OBP_preset=OBP_preset, prompt_enhancer=promptenhancer, preset_prefix=presetprefix, preset_suffix=presetsuffix)
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| randomprompt = randompromptlist[0]
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| randomsubject = randompromptlist[1]
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|
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| if(autonegativeprompt):
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| negativeprompt = build_dynamic_negative(positive_prompt=randomprompt, insanitylevel=autonegativepromptstrength,enhance=autonegativepromptenhance, existing_negative_prompt=originalnegativeprompt, base_model=base_model)
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| randomprompt = flufferizer(prompt=randomprompt, amountoffluff=amountoffluff)
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|
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| if(randomsubject == ""):
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|
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| if(randomprompt.find("of a ") != -1):
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| start_index = randomprompt.find("of a ") + len("of a ")
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| end_index = randomprompt.find(",", start_index)
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| if(end_index == -1):
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| end_index=len(randomprompt)
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| else:
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| start_index = 0
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| end_index = 128
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| filename = randomprompt[start_index:end_index]
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| else:
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| filename = randomsubject[0:128]
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|
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| filename = filename.replace("\"", "")
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| filename = filename.replace("[", "")
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| filename = filename.replace("|", "")
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| filename = filename.replace("]", "")
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| filename = filename.replace("<", "")
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| filename = filename.replace(">", "")
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| filename = filename.replace(":", "_")
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| filename = filename.replace(".", "")
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| filename = re.sub(r'[0-9]+', '', filename)
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|
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| safe_characters = set("abcdefghijklmnopqrstuvwxyzABCDEFGHIJKLMNOPQRSTUVWXYZ0123456789-_.")
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| filename = re.sub(r"[^{}]+".format(re.escape(''.join(safe_characters))), '', filename)
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|
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| if(filename==""):
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| filename = str(uuid.uuid4())
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| now = datetime.now()
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| filenamecomplete = now.strftime("%Y%m%d%H%M%S") + "_" + filename.replace(" ", "_").strip()
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| if(originalmodel=="all"):
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| model = random.choice(modellist)
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|
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| while "inpaint" in model:
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| model = random.choice(modellist)
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| print("Going to run with model " + model)
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| if(originalmodel=="currently selected model"):
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| model = currentlyselectedmodel
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|
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| option_payload = {
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| "sd_model_checkpoint": model
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| }
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| response = requests.post(url=f'{apiurl}/sdapi/v1/options', json=option_payload)
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|
|
| if(originalsamplingmethod=="all"):
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| samplingmethod = random.choice(samplerlist)
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| print ("Going to run with sampling method " + samplingmethod)
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|
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| if(originalupscaler=="all" and hiresfix == True):
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| upscaler = random.choice(upscalerlist)
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| print ("Going to run with upscaler " + upscaler)
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|
|
| if(samplingmethod in ['PLMS', 'UniPC']):
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| samplingmethod = 'DDIM'
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| txt2img = call_txt2img(randomprompt, size ,hiresfix, 0, filenamecomplete,model ,samplingsteps,cfg, hiressteps, denoisestrength,samplingmethod, upscaler,hiresscale,apiurl,qualitygate,quality,runs,negativeprompt, qualityhiresfix, qualitymode, qualitykeep, basesize)
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| originalimage = txt2img[0]
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| originalpnginfo = txt2img[1]
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| continuewithnextpart = txt2img[2]
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|
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| image = txt2img[0]
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| else:
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| if(filename==""):
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| filename = str(uuid.uuid4())
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|
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| now = datetime.now()
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| filenamecomplete = now.strftime("%Y%m%d%H%M%S") + "_" + filename.replace(" ", "_").strip()
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| image = upscalefilelist[steps]
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| originalimage = image
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| img2imgloops = int(img2imgbatch)
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| if(img2imgactivate == False or continuewithnextpart == False):
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| img2imgloops = 0
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| else:
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|
|
| if(originalimg2imgmodel=="all"):
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| img2imgmodel = random.choice(modellist)
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|
|
| while "inpaint" in model:
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| img2imgmodel = random.choice(modellist)
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| print("Going to upscale with model " + img2imgmodel)
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| if(originalimg2imgmodel=="currently selected model"):
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| img2imgmodel = currentlyselectedmodel
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|
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|
|
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| option_payload = {
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| "sd_model_checkpoint": img2imgmodel
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| }
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| response = requests.post(url=f'{apiurl}/sdapi/v1/options', json=option_payload)
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|
|
| if(originalimg2imgsamplingmethod=="all"):
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| img2imgsamplingmethod = random.choice(img2imgsamplerlist)
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| print ("Going to upscale with sampling method " + img2imgsamplingmethod)
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|
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| if(originalimg2imgupscaler=="all"):
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| img2imgupscaler = random.choice(img2imgupscalerlist)
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| print ("Going to run with upscaler " + img2imgupscaler)
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|
|
|
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| if(img2imgsamplingmethod in ['PLMS', 'UniPC']):
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| img2imgsamplingmethod = 'DDIM'
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|
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| img2imgsteps = 0
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|
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| img2imgdenoisestrength = originalimg2imgdenoisestrength
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| img2imgpadding = originalimg2imgpadding
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|
|
| while img2imgsteps < img2imgloops:
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| img2img = call_img2img(image, originalimage, originalpnginfo, apiurl, filenamecomplete, randomprompt,negativeprompt,img2imgsamplingsteps, img2imgcfg, img2imgsamplingmethod, img2imgupscaler, img2imgmodel, img2imgdenoisestrength, img2imgscale, img2imgpadding,upscalescript,usdutilewidth, usdutileheight, usdumaskblur, usduredraw, usduSeamsfix, usdusdenoise, usduswidth, usduspadding, usdusmaskblur,controlnetenabled, controlnetmodel,controlnetblockymode)
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|
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| image = img2img[0]
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| if(originalpnginfo==""):
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| originalpnginfo = img2img[1]
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|
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| img2imgdenoisestrength = str(round(float(img2imgdenoisestrength) + float(img2imgdenoisestrengthmod),2))
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| img2imgpadding = str(int(int(img2imgpadding) * float(img2imgscale)))
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|
|
| if(int(img2imgpadding)>256):
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| img2imgpadding="256"
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|
|
|
|
|
|
| time.sleep(5)
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|
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| img2imgsteps += 1
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|
|
|
|
|
|
| if(enableextraupscale==True and continuewithnextpart == True):
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| if(extrasupscaler1=="all"):
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| extrasupscaler1 = random.choice(img2imgupscalerlist)
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| print ("Going to upscale with upscaler 1 " + extrasupscaler1)
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|
|
| if(extrasupscaler2=="all"):
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| extrasupscaler2 = random.choice(img2imgupscalerlist)
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| print ("Going to upscale with upscaler 2 " + extrasupscaler2)
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|
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| image = call_extras(image, originalimage, originalpnginfo, apiurl, filenamecomplete,extrasupscaler1,extrasupscaler2 ,extrasupscaler2visiblity,extrasupscaler2gfpgan,extrasupscaler2codeformer,extrasupscaler2codeformerweight,extrasresize)
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|
|
| if(continuewithnextpart == True):
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|
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| steps += 1
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|
|
|
| print("")
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| print("All done!")
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|
|
| def tryinterrupt(apiurl="http://127.0.0.1:7860"):
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| response = requests.post(url=f'{apiurl}/sdapi/v1/interrupt')
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| |