easydiffusion/ui/sd_internal/runtime.py

692 lines
24 KiB
Python

import json
import os, re
import traceback
import torch
import numpy as np
from omegaconf import OmegaConf
from PIL import Image, ImageOps
from tqdm import tqdm, trange
from itertools import islice
from einops import rearrange
import time
from pytorch_lightning import seed_everything
from torch import autocast
from contextlib import nullcontext
from einops import rearrange, repeat
from ldm.util import instantiate_from_config
from optimizedSD.optimUtils import split_weighted_subprompts
from transformers import logging
from gfpgan import GFPGANer
from basicsr.archs.rrdbnet_arch import RRDBNet
from realesrgan import RealESRGANer
import uuid
logging.set_verbosity_error()
# consts
config_yaml = "optimizedSD/v1-inference.yaml"
filename_regex = re.compile('[^a-zA-Z0-9]')
# api stuff
from . import Request, Response, Image as ResponseImage
import base64
from io import BytesIO
#from colorama import Fore
# local
stop_processing = False
temp_images = {}
ckpt_file = None
gfpgan_file = None
real_esrgan_file = None
model = None
modelCS = None
modelFS = None
model_gfpgan = None
model_real_esrgan = None
model_is_half = False
model_fs_is_half = False
device = None
unet_bs = 1
precision = 'autocast'
sampler_plms = None
sampler_ddim = None
has_valid_gpu = False
force_full_precision = False
try:
gpu = torch.cuda.current_device()
gpu_name = torch.cuda.get_device_name(gpu)
print('GPU detected: ', gpu_name)
force_full_precision = ('nvidia' in gpu_name.lower() or 'geforce' in gpu_name.lower()) and (' 1660' in gpu_name or ' 1650' in gpu_name) # otherwise these NVIDIA cards create green images
if force_full_precision:
print('forcing full precision on NVIDIA 16xx cards, to avoid green images. GPU detected: ', gpu_name)
mem_free, mem_total = torch.cuda.mem_get_info(gpu)
mem_total /= float(10**9)
if mem_total < 3.0:
print("GPUs with less than 3 GB of VRAM are not compatible with Stable Diffusion")
raise Exception()
has_valid_gpu = True
except:
print('WARNING: No compatible GPU found. Using the CPU, but this will be very slow!')
pass
def load_model_ckpt(ckpt_to_use, device_to_use='cuda', turbo=False, unet_bs_to_use=1, precision_to_use='autocast'):
global ckpt_file, model, modelCS, modelFS, model_is_half, device, unet_bs, precision, model_fs_is_half
device = device_to_use if has_valid_gpu else 'cpu'
precision = precision_to_use if not force_full_precision else 'full'
unet_bs = unet_bs_to_use
unload_model()
if device == 'cpu':
precision = 'full'
sd = load_model_from_config(f"{ckpt_to_use}.ckpt")
li, lo = [], []
for key, value in sd.items():
sp = key.split(".")
if (sp[0]) == "model":
if "input_blocks" in sp:
li.append(key)
elif "middle_block" in sp:
li.append(key)
elif "time_embed" in sp:
li.append(key)
else:
lo.append(key)
for key in li:
sd["model1." + key[6:]] = sd.pop(key)
for key in lo:
sd["model2." + key[6:]] = sd.pop(key)
config = OmegaConf.load(f"{config_yaml}")
model = instantiate_from_config(config.modelUNet)
_, _ = model.load_state_dict(sd, strict=False)
model.eval()
model.cdevice = device
model.unet_bs = unet_bs
model.turbo = turbo
modelCS = instantiate_from_config(config.modelCondStage)
_, _ = modelCS.load_state_dict(sd, strict=False)
modelCS.eval()
modelCS.cond_stage_model.device = device
modelFS = instantiate_from_config(config.modelFirstStage)
_, _ = modelFS.load_state_dict(sd, strict=False)
modelFS.eval()
del sd
if device != "cpu" and precision == "autocast":
model.half()
modelCS.half()
modelFS.half()
model_is_half = True
model_fs_is_half = True
else:
model_is_half = False
model_fs_is_half = False
ckpt_file = ckpt_to_use
print('loaded ', ckpt_file, 'to', device, 'precision', precision)
def unload_model():
global model, modelCS, modelFS
if model is not None:
del model
del modelCS
del modelFS
model = None
modelCS = None
modelFS = None
def load_model_gfpgan(gfpgan_to_use):
global gfpgan_file, model_gfpgan
if gfpgan_to_use is None:
return
gfpgan_file = gfpgan_to_use
model_path = gfpgan_to_use + ".pth"
if device == 'cpu':
model_gfpgan = GFPGANer(model_path=model_path, upscale=1, arch='clean', channel_multiplier=2, bg_upsampler=None, device=torch.device('cpu'))
else:
model_gfpgan = GFPGANer(model_path=model_path, upscale=1, arch='clean', channel_multiplier=2, bg_upsampler=None, device=torch.device('cuda'))
print('loaded ', gfpgan_to_use, 'to', device, 'precision', precision)
def load_model_real_esrgan(real_esrgan_to_use):
global real_esrgan_file, model_real_esrgan
if real_esrgan_to_use is None:
return
real_esrgan_file = real_esrgan_to_use
model_path = real_esrgan_to_use + ".pth"
RealESRGAN_models = {
'RealESRGAN_x4plus': RRDBNet(num_in_ch=3, num_out_ch=3, num_feat=64, num_block=23, num_grow_ch=32, scale=4),
'RealESRGAN_x4plus_anime_6B': RRDBNet(num_in_ch=3, num_out_ch=3, num_feat=64, num_block=6, num_grow_ch=32, scale=4)
}
model_to_use = RealESRGAN_models[real_esrgan_to_use]
if device == 'cpu':
model_real_esrgan = RealESRGANer(scale=2, model_path=model_path, model=model_to_use, pre_pad=0, half=False) # cpu does not support half
model_real_esrgan.device = torch.device('cpu')
model_real_esrgan.model.to('cpu')
else:
model_real_esrgan = RealESRGANer(scale=2, model_path=model_path, model=model_to_use, pre_pad=0, half=model_is_half)
model_real_esrgan.model.name = real_esrgan_to_use
print('loaded ', real_esrgan_to_use, 'to', device, 'precision', precision)
def get_base_path(disk_path, session_id, prompt, img_id, ext, suffix=None):
if disk_path is None: return None
if session_id is None: return None
if ext is None: raise Exception('Missing ext')
session_out_path = os.path.join(disk_path, session_id)
os.makedirs(session_out_path, exist_ok=True)
prompt_flattened = filename_regex.sub('_', prompt)[:50]
if suffix is not None:
return os.path.join(session_out_path, f"{prompt_flattened}_{img_id}_{suffix}.{ext}")
return os.path.join(session_out_path, f"{prompt_flattened}_{img_id}.{ext}")
def apply_filters(filter_name, image_data):
print(f'Applying filter {filter_name}...')
gc()
if filter_name == 'gfpgan':
_, _, output = model_gfpgan.enhance(image_data[:,:,::-1], has_aligned=False, only_center_face=False, paste_back=True)
image_data = output[:,:,::-1]
if filter_name == 'real_esrgan':
output, _ = model_real_esrgan.enhance(image_data[:,:,::-1])
image_data = output[:,:,::-1]
return image_data
def mk_img(req: Request):
try:
yield from do_mk_img(req)
except Exception as e:
print(traceback.format_exc())
gc()
if device != "cpu":
modelFS.to("cpu")
modelCS.to("cpu")
model.model1.to("cpu")
model.model2.to("cpu")
gc()
yield json.dumps({
"status": 'failed',
"detail": str(e)
})
def do_mk_img(req: Request):
global ckpt_file
global model, modelCS, modelFS, device
global model_gfpgan, model_real_esrgan
global stop_processing
stop_processing = False
res = Response()
res.request = req
res.images = []
temp_images.clear()
# custom model support:
# the req.use_stable_diffusion_model needs to be a valid path
# to the ckpt file (without the extension).
needs_model_reload = False
ckpt_to_use = ckpt_file
if ckpt_to_use != req.use_stable_diffusion_model:
ckpt_to_use = req.use_stable_diffusion_model
needs_model_reload = True
model.turbo = req.turbo
if req.use_cpu:
if device != 'cpu':
device = 'cpu'
if model_is_half:
load_model_ckpt(ckpt_to_use, device)
needs_model_reload = False
load_model_gfpgan(gfpgan_file)
load_model_real_esrgan(real_esrgan_file)
else:
if has_valid_gpu:
prev_device = device
device = 'cuda'
if (precision == 'autocast' and (req.use_full_precision or not model_is_half)) or \
(precision == 'full' and not req.use_full_precision and not force_full_precision):
load_model_ckpt(ckpt_to_use, device, req.turbo, unet_bs, ('full' if req.use_full_precision else 'autocast'))
needs_model_reload = False
if prev_device != device:
load_model_gfpgan(gfpgan_file)
load_model_real_esrgan(real_esrgan_file)
if needs_model_reload:
load_model_ckpt(ckpt_to_use, device, req.turbo, unet_bs, precision)
if req.use_face_correction != gfpgan_file:
load_model_gfpgan(req.use_face_correction)
if req.use_upscale != real_esrgan_file:
load_model_real_esrgan(req.use_upscale)
model.cdevice = device
modelCS.cond_stage_model.device = device
opt_prompt = req.prompt
opt_seed = req.seed
opt_n_iter = 1
opt_C = 4
opt_f = 8
opt_ddim_eta = 0.0
opt_init_img = req.init_image
img_id = base64.b64encode(int(time.time()).to_bytes(8, 'big')).decode() # Generate unique ID based on time.
img_id = img_id.translate({43:None, 47:None, 61:None})[-8:] # Remove + / = and keep last 8 chars.
print(req.to_string(), '\n device', device)
print('\n\n Using precision:', precision)
seed_everything(opt_seed)
batch_size = req.num_outputs
prompt = opt_prompt
assert prompt is not None
data = [batch_size * [prompt]]
if precision == "autocast" and device != "cpu":
precision_scope = autocast
else:
precision_scope = nullcontext
mask = None
if req.init_image is None:
handler = _txt2img
init_latent = None
t_enc = None
else:
handler = _img2img
init_image = load_img(req.init_image, req.width, req.height)
init_image = init_image.to(device)
if device != "cpu" and precision == "autocast":
init_image = init_image.half()
modelFS.to(device)
init_image = repeat(init_image, '1 ... -> b ...', b=batch_size)
init_latent = modelFS.get_first_stage_encoding(modelFS.encode_first_stage(init_image)) # move to latent space
if req.mask is not None:
mask = load_mask(req.mask, req.width, req.height, init_latent.shape[2], init_latent.shape[3], True).to(device)
mask = mask[0][0].unsqueeze(0).repeat(4, 1, 1).unsqueeze(0)
mask = repeat(mask, '1 ... -> b ...', b=batch_size)
if device != "cpu" and precision == "autocast":
mask = mask.half()
move_fs_to_cpu()
assert 0. <= req.prompt_strength <= 1., 'can only work with strength in [0.0, 1.0]'
t_enc = int(req.prompt_strength * req.num_inference_steps)
print(f"target t_enc is {t_enc} steps")
if req.save_to_disk_path is not None:
session_out_path = os.path.join(req.save_to_disk_path, req.session_id)
os.makedirs(session_out_path, exist_ok=True)
else:
session_out_path = None
seeds = ""
with torch.no_grad():
for n in trange(opt_n_iter, desc="Sampling"):
for prompts in tqdm(data, desc="data"):
with precision_scope("cuda"):
modelCS.to(device)
uc = None
if req.guidance_scale != 1.0:
uc = modelCS.get_learned_conditioning(batch_size * [req.negative_prompt])
if isinstance(prompts, tuple):
prompts = list(prompts)
subprompts, weights = split_weighted_subprompts(prompts[0])
if len(subprompts) > 1:
c = torch.zeros_like(uc)
totalWeight = sum(weights)
# normalize each "sub prompt" and add it
for i in range(len(subprompts)):
weight = weights[i]
# if not skip_normalize:
weight = weight / totalWeight
c = torch.add(c, modelCS.get_learned_conditioning(subprompts[i]), alpha=weight)
else:
c = modelCS.get_learned_conditioning(prompts)
modelFS.to(device)
partial_x_samples = None
def img_callback(x_samples, i):
nonlocal partial_x_samples
partial_x_samples = x_samples
if req.stream_progress_updates:
n_steps = req.num_inference_steps if req.init_image is None else t_enc
progress = {"step": i, "total_steps": n_steps}
if req.stream_image_progress and i % 5 == 0:
partial_images = []
for i in range(batch_size):
x_samples_ddim = modelFS.decode_first_stage(x_samples[i].unsqueeze(0))
x_sample = torch.clamp((x_samples_ddim + 1.0) / 2.0, min=0.0, max=1.0)
x_sample = 255.0 * rearrange(x_sample[0].cpu().numpy(), "c h w -> h w c")
x_sample = x_sample.astype(np.uint8)
img = Image.fromarray(x_sample)
buf = BytesIO()
img.save(buf, format='JPEG')
buf.seek(0)
del img, x_sample, x_samples_ddim
# don't delete x_samples, it is used in the code that called this callback
temp_images[str(req.session_id) + '/' + str(i)] = buf
partial_images.append({'path': f'/image/tmp/{req.session_id}/{i}'})
progress['output'] = partial_images
yield json.dumps(progress)
if stop_processing:
raise UserInitiatedStop("User requested that we stop processing")
# run the handler
try:
if handler == _txt2img:
x_samples = _txt2img(req.width, req.height, req.num_outputs, req.num_inference_steps, req.guidance_scale, None, opt_C, opt_f, opt_ddim_eta, c, uc, opt_seed, img_callback, mask, req.sampler)
else:
x_samples = _img2img(init_latent, t_enc, batch_size, req.guidance_scale, c, uc, req.num_inference_steps, opt_ddim_eta, opt_seed, img_callback, mask)
yield from x_samples
x_samples = partial_x_samples
except UserInitiatedStop:
if partial_x_samples is None:
continue
x_samples = partial_x_samples
print("saving images")
for i in range(batch_size):
x_samples_ddim = modelFS.decode_first_stage(x_samples[i].unsqueeze(0))
x_sample = torch.clamp((x_samples_ddim + 1.0) / 2.0, min=0.0, max=1.0)
x_sample = 255.0 * rearrange(x_sample[0].cpu().numpy(), "c h w -> h w c")
x_sample = x_sample.astype(np.uint8)
img = Image.fromarray(x_sample)
has_filters = (req.use_face_correction is not None and req.use_face_correction.startswith('GFPGAN')) or \
(req.use_upscale is not None and req.use_upscale.startswith('RealESRGAN'))
return_orig_img = not has_filters or not req.show_only_filtered_image
if stop_processing:
return_orig_img = True
if req.save_to_disk_path is not None:
if return_orig_img:
img_out_path = get_base_path(req.save_to_disk_path, req.session_id, prompts[0], img_id, req.output_format)
save_image(img, img_out_path)
meta_out_path = get_base_path(req.save_to_disk_path, req.session_id, prompts[0], img_id, 'txt')
save_metadata(meta_out_path, req, prompts[0], opt_seed)
if return_orig_img:
img_data = img_to_base64_str(img, req.output_format)
res_image_orig = ResponseImage(data=img_data, seed=opt_seed)
res.images.append(res_image_orig)
if req.save_to_disk_path is not None:
res_image_orig.path_abs = img_out_path
del img
if has_filters and not stop_processing:
filters_applied = []
if req.use_face_correction:
x_sample = apply_filters('gfpgan', x_sample)
filters_applied.append(req.use_face_correction)
if req.use_upscale:
x_sample = apply_filters('real_esrgan', x_sample)
filters_applied.append(req.use_upscale)
if (len(filters_applied) > 0):
filtered_image = Image.fromarray(x_sample)
filtered_img_data = img_to_base64_str(filtered_image, req.output_format)
response_image = ResponseImage(data=filtered_img_data, seed=req.seed)
res.images.append(response_image)
if req.save_to_disk_path is not None:
filtered_img_out_path = get_base_path(req.save_to_disk_path, req.session_id, prompts[0], img_id, req.output_format, "_".join(filters_applied))
save_image(filtered_image, filtered_img_out_path)
response_image.path_abs = filtered_img_out_path
del filtered_image
seeds += str(opt_seed) + ","
opt_seed += 1
move_fs_to_cpu()
gc()
del x_samples, x_samples_ddim, x_sample
print("memory_final = ", torch.cuda.memory_allocated() / 1e6)
print('Task completed')
yield json.dumps(res.json())
def save_image(img, img_out_path):
try:
img.save(img_out_path)
except:
print('could not save the file', traceback.format_exc())
def save_metadata(meta_out_path, req, prompt, opt_seed):
metadata = f"""{prompt}
Width: {req.width}
Height: {req.height}
Seed: {opt_seed}
Steps: {req.num_inference_steps}
Guidance Scale: {req.guidance_scale}
Prompt Strength: {req.prompt_strength}
Use Face Correction: {req.use_face_correction}
Use Upscaling: {req.use_upscale}
Sampler: {req.sampler}
Negative Prompt: {req.negative_prompt}
Stable Diffusion Model: {req.use_stable_diffusion_model + '.ckpt'}
"""
try:
with open(meta_out_path, 'w') as f:
f.write(metadata)
except:
print('could not save the file', traceback.format_exc())
def _txt2img(opt_W, opt_H, opt_n_samples, opt_ddim_steps, opt_scale, start_code, opt_C, opt_f, opt_ddim_eta, c, uc, opt_seed, img_callback, mask, sampler_name):
shape = [opt_n_samples, opt_C, opt_H // opt_f, opt_W // opt_f]
if device != "cpu":
mem = torch.cuda.memory_allocated() / 1e6
modelCS.to("cpu")
while torch.cuda.memory_allocated() / 1e6 >= mem:
time.sleep(1)
if sampler_name == 'ddim':
model.make_schedule(ddim_num_steps=opt_ddim_steps, ddim_eta=opt_ddim_eta, verbose=False)
samples_ddim = model.sample(
S=opt_ddim_steps,
conditioning=c,
seed=opt_seed,
shape=shape,
verbose=False,
unconditional_guidance_scale=opt_scale,
unconditional_conditioning=uc,
eta=opt_ddim_eta,
x_T=start_code,
img_callback=img_callback,
mask=mask,
sampler = sampler_name,
)
yield from samples_ddim
def _img2img(init_latent, t_enc, batch_size, opt_scale, c, uc, opt_ddim_steps, opt_ddim_eta, opt_seed, img_callback, mask):
# encode (scaled latent)
z_enc = model.stochastic_encode(
init_latent,
torch.tensor([t_enc] * batch_size).to(device),
opt_seed,
opt_ddim_eta,
opt_ddim_steps,
)
x_T = None if mask is None else init_latent
# decode it
samples_ddim = model.sample(
t_enc,
c,
z_enc,
unconditional_guidance_scale=opt_scale,
unconditional_conditioning=uc,
img_callback=img_callback,
mask=mask,
x_T=x_T,
sampler = 'ddim'
)
yield from samples_ddim
def move_fs_to_cpu():
if device != "cpu":
mem = torch.cuda.memory_allocated() / 1e6
modelFS.to("cpu")
while torch.cuda.memory_allocated() / 1e6 >= mem:
time.sleep(1)
def gc():
if device == 'cpu':
return
torch.cuda.empty_cache()
torch.cuda.ipc_collect()
# internal
def chunk(it, size):
it = iter(it)
return iter(lambda: tuple(islice(it, size)), ())
def load_model_from_config(ckpt, verbose=False):
print(f"Loading model from {ckpt}")
pl_sd = torch.load(ckpt, map_location="cpu")
if "global_step" in pl_sd:
print(f"Global Step: {pl_sd['global_step']}")
sd = pl_sd["state_dict"]
return sd
# utils
class UserInitiatedStop(Exception):
pass
def load_img(img_str, w0, h0):
image = base64_str_to_img(img_str).convert("RGB")
w, h = image.size
print(f"loaded input image of size ({w}, {h}) from base64")
if h0 is not None and w0 is not None:
h, w = h0, w0
w, h = map(lambda x: x - x % 64, (w, h)) # resize to integer multiple of 64
image = image.resize((w, h), resample=Image.Resampling.LANCZOS)
image = np.array(image).astype(np.float32) / 255.0
image = image[None].transpose(0, 3, 1, 2)
image = torch.from_numpy(image)
return 2.*image - 1.
def load_mask(mask_str, h0, w0, newH, newW, invert=False):
image = base64_str_to_img(mask_str).convert("RGB")
w, h = image.size
print(f"loaded input mask of size ({w}, {h})")
if invert:
print("inverted")
image = ImageOps.invert(image)
# where_0, where_1 = np.where(image == 0), np.where(image == 255)
# image[where_0], image[where_1] = 255, 0
if h0 is not None and w0 is not None:
h, w = h0, w0
w, h = map(lambda x: x - x % 64, (w, h)) # resize to integer multiple of 64
print(f"New mask size ({w}, {h})")
image = image.resize((newW, newH), resample=Image.Resampling.LANCZOS)
image = np.array(image)
image = image.astype(np.float32) / 255.0
image = image[None].transpose(0, 3, 1, 2)
image = torch.from_numpy(image)
return image
# https://stackoverflow.com/a/61114178
def img_to_base64_str(img, output_format="PNG"):
buffered = BytesIO()
img.save(buffered, format=output_format)
buffered.seek(0)
img_byte = buffered.getvalue()
img_str = "data:image/png;base64," + base64.b64encode(img_byte).decode()
return img_str
def base64_str_to_img(img_str):
img_str = img_str[len("data:image/png;base64,"):]
data = base64.b64decode(img_str)
buffered = BytesIO(data)
img = Image.open(buffered)
return img