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import logging
from os import environ
import modules.scripts as scripts
import gradio as gr
import numpy as np
from collections import OrderedDict
from typing import Union
from modules import script_callbacks
from modules.script_callbacks import CFGDenoiserParams
try:
from modules.rng import randn_like
except ImportError:
from torch import randn_like
import torch
logger = logging.getLogger(__name__)
logger.setLevel(environ.get("SD_WEBUI_LOG_LEVEL", logging.INFO))
"""
An implementation of CADS: Unleashing the Diversity of Diffusion Models through Condition-Annealed Sampling for Automatic1111 Webui
@inproceedings{
sadat2024cads,
title={{CADS}: Unleashing the Diversity of Diffusion Models through Condition-Annealed Sampling},
author={Seyedmorteza Sadat and Jakob Buhmann and Derek Bradley and Otmar Hilliges and Romann M. Weber},
booktitle={The Twelfth International Conference on Learning Representations},
year={2024},
url={https://openreview.net/forum?id=zMoNrajk2X}
}
Author: v0xie
GitHub URL: https://github.com/v0xie/sd-webui-cads
"""
class CADSExtensionScript(scripts.Script):
# Extension title in menu UI
def title(self):
return "CADS"
# Decide to show menu in txt2img or img2img
def show(self, is_img2img):
return scripts.AlwaysVisible
# Setup menu ui detail
def ui(self, is_img2img):
with gr.Accordion('CADS', open=False):
active = gr.Checkbox(value=False, default=False, label="Active", elem_id='cads_active')
rescale = gr.Checkbox(value=True, default=True, label="Rescale CFG", elem_id = 'cads_rescale')
with gr.Row():
step_start = gr.Slider(value = 0, minimum = 0, maximum = 50, step = 1, label="Tau 1 Step", elem_id = 'cads_tau1_step', info="Step to start. (0=disable)")
step_stop = gr.Slider(value = 0, minimum = 0, maximum = 50, step = 1, label="Tau 2 Step", elem_id = 'cads_tau1_step', info="Step to start. (0=disable)")
with gr.Row():
t1 = gr.Slider(value = 0.6, minimum = 0.0, maximum = 1.0, step = 0.05, label="Tau 1", elem_id = 'cads_tau1', info="Step to start interpolating from full strength. Default 0.6")
t2 = gr.Slider(value = 0.9, minimum = 0.0, maximum = 1.0, step = 0.05, label="Tau 2", elem_id = 'cads_tau2', info="Step to stop affecting image. Default 0.9")
with gr.Row():
noise_scale = gr.Slider(value = 0.25, minimum = 0.0, maximum = 1.0, step = 0.01, label="Noise Scale", elem_id = 'cads_noise_scale', info='Scale of noise injected at every time step, default 0.25, recommended <= 0.3')
mixing_factor= gr.Slider(value = 1.0, minimum = 0.0, maximum = 1.0, step = 0.01, label="Mixing Factor", elem_id = 'cads_mixing_factor', info='Regularization factor, lowering this will increase the diversity of the images with more chance of divergence, default 1.0')
with gr.Accordion('Experimental', open=False):
apply_to_hr_pass = gr.Checkbox(value=False, default=False, label="Apply to Hires. Fix", elem_id='cads_hr_fix_active', info='Requires a very high denoising value to work. Default False')
active.do_not_save_to_config = True
rescale.do_not_save_to_config = True
t1.do_not_save_to_config = True
t2.do_not_save_to_config = True
noise_scale.do_not_save_to_config = True
mixing_factor.do_not_save_to_config = True
apply_to_hr_pass.do_not_save_to_config = True
self.infotext_fields = [
(active, lambda d: gr.Checkbox.update(value='CADS Active' in d)),
(rescale, 'CADS Rescale'),
(step_start, 'CADS Tau 1 Step'),
(step_stop, 'CADS Tau 2 Step'),
(t1, 'CADS Tau 1'),
(t2, 'CADS Tau 2'),
(noise_scale, 'CADS Noise Scale'),
(mixing_factor, 'CADS Mixing Factor'),
(apply_to_hr_pass, 'CADS Apply To Hires. Fix'),
]
self.paste_field_names = [
'cads_active',
'cads_rescale',
'cads_tau1',
'cads_tau2',
'cads_noise_scale',
'cads_mixing_factor',
'cads_hr_fix_active',
]
return [active, step_start, step_stop, t1, t2, noise_scale, mixing_factor, rescale, apply_to_hr_pass]
def before_process_batch(self, p, active, step_start, step_stop, t1, t2, noise_scale, mixing_factor, rescale, apply_to_hr_pass, *args, **kwargs):
self.unhook_callbacks()
active = getattr(p, "cads_active", active)
if active is False:
return
steps = getattr(p, "steps", -1)
if step_start != 0:
step_start = getattr(p, "cads_tau1_step", step_start)
t1 = max(min(step_start / steps, 1.0), 0.0)
else:
t1 = getattr(p, "cads_tau1", t1)
if step_stop != 0:
step_stop = getattr(p, "cads_tau2_step", step_stop)
t2 = max(min(step_stop / steps, 1.0), 0.0)
else:
t2 = getattr(p, "cads_tau2", t2)
noise_scale = getattr(p, "cads_noise_scale", noise_scale)
mixing_factor = getattr(p, "cads_mixing_factor", mixing_factor)
rescale = getattr(p, "cads_rescale", rescale)
apply_to_hr_pass = getattr(p, "cads_hr_fix_active", apply_to_hr_pass)
first_pass_steps = getattr(p, "steps", -1)
if first_pass_steps <= 0:
logger.error("Steps not set, disabling CADS")
return
p.extra_generation_params.update({
"CADS Active": active,
"CADS Tau 1 Step": step_start,
"CADS Tau 2 Step": step_stop,
"CADS Tau 1": t1,
"CADS Tau 2": t2,
"CADS Noise Scale": noise_scale,
"CADS Mixing Factor": mixing_factor,
"CADS Rescale": rescale,
"CADS Apply To Hires. Fix": apply_to_hr_pass,
})
self.create_hook(p, active, t1, t2, noise_scale, mixing_factor, rescale, first_pass_steps)
def create_hook(self, p, active, t1, t2, noise_scale, mixing_factor, rescale, total_sampling_steps, *args, **kwargs):
# Use lambda to call the callback function with the parameters to avoid global variables
y = lambda params: self.on_cfg_denoiser_callback(params, t1=t1, t2=t2, noise_scale=noise_scale, mixing_factor=mixing_factor, rescale=rescale, total_sampling_steps=total_sampling_steps)
logger.debug('Hooked callbacks')
script_callbacks.on_cfg_denoiser(y)
script_callbacks.on_script_unloaded(self.unhook_callbacks)
def postprocess_batch(self, p, active, t1, t2, noise_scale, mixing_factor, rescale, apply_to_hr_pass, *args, **kwargs):
self.unhook_callbacks()
def unhook_callbacks(self):
logger.debug('Unhooked callbacks')
script_callbacks.remove_current_script_callbacks()
def cads_linear_schedule(self, t, tau1, tau2):
""" CADS annealing schedule function """
if t <= tau1:
return 1.0
if t>= tau2:
return 0.0
gamma = (tau2-t)/(tau2-tau1)
return gamma
def add_noise(self, y, gamma, noise_scale, psi, rescale=False):
""" CADS adding noise to the condition
Arguments:
y: Input conditioning
gamma: Noise level w.r.t t
noise_scale (float): Noise scale
psi (float): Rescaling factor
rescale (bool): Rescale the condition
"""
y_mean, y_std = torch.mean(y), torch.std(y)
y = np.sqrt(gamma) * y + noise_scale * np.sqrt(1-gamma) * randn_like(y)
if rescale:
y_scaled = (y - torch.mean(y)) / torch.std(y) * y_std + y_mean
if not torch.isnan(y_scaled).any():
y = psi * y_scaled + (1 - psi) * y
else:
logger.debug("Warning: NaN encountered in rescaling")
return y
def on_cfg_denoiser_callback(self, params: CFGDenoiserParams, t1, t2, noise_scale, mixing_factor, rescale, total_sampling_steps):
sampling_step = params.sampling_step
total_sampling_step = total_sampling_steps
text_cond = params.text_cond
text_uncond = params.text_uncond
t = 1.0 - max(min(sampling_step / total_sampling_step, 1.0), 0.0) # Algorithms assumes we start at 1.0 and go to 0.0
gamma = self.cads_linear_schedule(t, t1, t2)
# SD 1.5
if isinstance(text_cond, torch.Tensor) and isinstance(text_uncond, torch.Tensor):
params.text_cond = self.add_noise(text_cond, gamma, noise_scale, mixing_factor, rescale)
params.text_uncond = self.add_noise(text_uncond, gamma, noise_scale, mixing_factor, rescale)
# SDXL
elif isinstance(text_cond, Union[dict, OrderedDict]) and isinstance(text_uncond, Union[dict, OrderedDict]):
params.text_cond['crossattn'] = self.add_noise(text_cond['crossattn'], gamma, noise_scale, mixing_factor, rescale)
params.text_uncond['crossattn'] = self.add_noise(text_uncond['crossattn'], gamma, noise_scale, mixing_factor, rescale)
params.text_cond['vector'] = self.add_noise(text_cond['vector'], gamma, noise_scale, mixing_factor, rescale)
params.text_uncond['vector'] = self.add_noise(text_uncond['vector'], gamma, noise_scale, mixing_factor, rescale)
else:
logger.error('Unknown text_cond type')
pass
def before_hr(self, p, *args):
self.unhook_callbacks()
params = getattr(p, "extra_generation_params", None)
if not params:
logger.error("Missing attribute extra_generation_params")
return
active = params.get("CADS Active", False)
if active is False:
return
apply_to_hr_pass = params.get("CADS Apply To Hires. Fix", False)
if apply_to_hr_pass is False:
logger.debug("Disabled for hires. fix")
return
t1 = params.get("CADS Tau 1", None)
t2 = params.get("CADS Tau 2", None)
noise_scale = params.get("CADS Noise Scale", None)
mixing_factor = params.get("CADS Mixing Factor", None)
rescale = params.get("CADS Rescale", None)
if t1 is None or t2 is None or noise_scale is None or mixing_factor is None or rescale is None:
logger.error("Missing needed parameters for Hires. fix")
return
hr_pass_steps = getattr(p, "hr_second_pass_steps", -1)
if hr_pass_steps < 0:
logger.error("Attribute hr_second_pass_steps not found")
return
if hr_pass_steps == 0:
logger.debug("Using first pass step count for hires. fix")
hr_pass_steps = getattr(p, "steps", -1)
logger.debug("Enabled for hi-res fix with %i steps, re-hooking CADS", hr_pass_steps)
self.create_hook(p, active, t1, t2, noise_scale, mixing_factor, rescale, hr_pass_steps)
# XYZ Plot
# Based on @mcmonkey4eva's XYZ Plot implementation here: https://github.com/mcmonkeyprojects/sd-dynamic-thresholding/blob/master/scripts/dynamic_thresholding.py
def cads_apply_override(field, boolean: bool = False):
def fun(p, x, xs):
if boolean:
x = True if x.lower() == "true" else False
setattr(p, field, x)
return fun
def cads_apply_field(field):
def fun(p, x, xs):
if not hasattr(p, "cads_active"):
setattr(p, "cads_active", True)
setattr(p, field, x)
return fun
def make_axis_options():
xyz_grid = [x for x in scripts.scripts_data if x.script_class.__module__ in ("xyz_grid.py", "scripts.xyz_grid")][0].module
# Add the boolean choice function to SD.Next XYZ Grid script
if not hasattr(xyz_grid, "boolean_choice"):
xyz_grid.boolean_choice = lambda reverse=False: ["True", "False"] if not reverse else ["False", "True"]
extra_axis_options = {
xyz_grid.AxisOption("[CADS] Active", str, cads_apply_override('cads_active', boolean=True), choices=xyz_grid.boolean_choice(reverse=True)),
xyz_grid.AxisOption("[CADS] Rescale CFG", str, cads_apply_override('cads_rescale', boolean=True), choices=xyz_grid.boolean_choice(reverse=True)),
xyz_grid.AxisOption("[CADS] Tau 1", float, cads_apply_field("cads_tau1")),
xyz_grid.AxisOption("[CADS] Tau 2", float, cads_apply_field("cads_tau2")),
xyz_grid.AxisOption("[CADS] Noise Scale", float, cads_apply_field("cads_noise_scale")),
xyz_grid.AxisOption("[CADS] Mixing Factor", float, cads_apply_field("cads_mixing_factor")),
xyz_grid.AxisOption("[CADS] Apply to Hires. Fix", str, cads_apply_override('cads_hr_fix_active', boolean=True), choices=xyz_grid.boolean_choice(reverse=True)),
}
if not any("[CADS]" in x.label for x in xyz_grid.axis_options):
xyz_grid.axis_options.extend(extra_axis_options)
def callback_before_ui():
try:
make_axis_options()
except:
logger.exception("CADS: Error while making axis options")
script_callbacks.on_before_ui(callback_before_ui)
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