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A10G
import torch | |
import logging | |
from comfy.ldm.modules.diffusionmodules.openaimodel import UNetModel, Timestep | |
from comfy.ldm.cascade.stage_c import StageC | |
from comfy.ldm.cascade.stage_b import StageB | |
from comfy.ldm.modules.encoders.noise_aug_modules import CLIPEmbeddingNoiseAugmentation | |
from comfy.ldm.modules.diffusionmodules.upscaling import ImageConcatWithNoiseAugmentation | |
import comfy.model_management | |
import comfy.conds | |
import comfy.ops | |
from enum import Enum | |
from . import utils | |
class ModelType(Enum): | |
EPS = 1 | |
V_PREDICTION = 2 | |
V_PREDICTION_EDM = 3 | |
STABLE_CASCADE = 4 | |
EDM = 5 | |
from comfy.model_sampling import EPS, V_PREDICTION, EDM, ModelSamplingDiscrete, ModelSamplingContinuousEDM, StableCascadeSampling | |
def model_sampling(model_config, model_type): | |
s = ModelSamplingDiscrete | |
if model_type == ModelType.EPS: | |
c = EPS | |
elif model_type == ModelType.V_PREDICTION: | |
c = V_PREDICTION | |
elif model_type == ModelType.V_PREDICTION_EDM: | |
c = V_PREDICTION | |
s = ModelSamplingContinuousEDM | |
elif model_type == ModelType.STABLE_CASCADE: | |
c = EPS | |
s = StableCascadeSampling | |
elif model_type == ModelType.EDM: | |
c = EDM | |
s = ModelSamplingContinuousEDM | |
class ModelSampling(s, c): | |
pass | |
return ModelSampling(model_config) | |
class BaseModel(torch.nn.Module): | |
def __init__(self, model_config, model_type=ModelType.EPS, device=None, unet_model=UNetModel): | |
super().__init__() | |
unet_config = model_config.unet_config | |
self.latent_format = model_config.latent_format | |
self.model_config = model_config | |
self.manual_cast_dtype = model_config.manual_cast_dtype | |
if not unet_config.get("disable_unet_model_creation", False): | |
if self.manual_cast_dtype is not None: | |
operations = comfy.ops.manual_cast | |
else: | |
operations = comfy.ops.disable_weight_init | |
self.diffusion_model = unet_model(**unet_config, device=device, operations=operations) | |
self.model_type = model_type | |
self.model_sampling = model_sampling(model_config, model_type) | |
self.adm_channels = unet_config.get("adm_in_channels", None) | |
if self.adm_channels is None: | |
self.adm_channels = 0 | |
self.inpaint_model = False | |
logging.info("model_type {}".format(model_type.name)) | |
logging.debug("adm {}".format(self.adm_channels)) | |
def apply_model(self, x, t, c_concat=None, c_crossattn=None, control=None, transformer_options={}, **kwargs): | |
sigma = t | |
xc = self.model_sampling.calculate_input(sigma, x) | |
if c_concat is not None: | |
xc = torch.cat([xc] + [c_concat], dim=1) | |
context = c_crossattn | |
dtype = self.get_dtype() | |
if self.manual_cast_dtype is not None: | |
dtype = self.manual_cast_dtype | |
xc = xc.to(dtype) | |
t = self.model_sampling.timestep(t).float() | |
context = context.to(dtype) | |
extra_conds = {} | |
for o in kwargs: | |
extra = kwargs[o] | |
if hasattr(extra, "dtype"): | |
if extra.dtype != torch.int and extra.dtype != torch.long: | |
extra = extra.to(dtype) | |
extra_conds[o] = extra | |
model_output = self.diffusion_model(xc, t, context=context, control=control, transformer_options=transformer_options, **extra_conds).float() | |
return self.model_sampling.calculate_denoised(sigma, model_output, x) | |
def get_dtype(self): | |
return self.diffusion_model.dtype | |
def is_adm(self): | |
return self.adm_channels > 0 | |
def encode_adm(self, **kwargs): | |
return None | |
def extra_conds(self, **kwargs): | |
out = {} | |
if self.inpaint_model: | |
concat_keys = ("mask", "masked_image") | |
cond_concat = [] | |
denoise_mask = kwargs.get("concat_mask", kwargs.get("denoise_mask", None)) | |
concat_latent_image = kwargs.get("concat_latent_image", None) | |
if concat_latent_image is None: | |
concat_latent_image = kwargs.get("latent_image", None) | |
else: | |
concat_latent_image = self.process_latent_in(concat_latent_image) | |
noise = kwargs.get("noise", None) | |
device = kwargs["device"] | |
if concat_latent_image.shape[1:] != noise.shape[1:]: | |
concat_latent_image = utils.common_upscale(concat_latent_image, noise.shape[-1], noise.shape[-2], "bilinear", "center") | |
concat_latent_image = utils.resize_to_batch_size(concat_latent_image, noise.shape[0]) | |
if len(denoise_mask.shape) == len(noise.shape): | |
denoise_mask = denoise_mask[:,:1] | |
denoise_mask = denoise_mask.reshape((-1, 1, denoise_mask.shape[-2], denoise_mask.shape[-1])) | |
if denoise_mask.shape[-2:] != noise.shape[-2:]: | |
denoise_mask = utils.common_upscale(denoise_mask, noise.shape[-1], noise.shape[-2], "bilinear", "center") | |
denoise_mask = utils.resize_to_batch_size(denoise_mask.round(), noise.shape[0]) | |
def blank_inpaint_image_like(latent_image): | |
blank_image = torch.ones_like(latent_image) | |
# these are the values for "zero" in pixel space translated to latent space | |
blank_image[:,0] *= 0.8223 | |
blank_image[:,1] *= -0.6876 | |
blank_image[:,2] *= 0.6364 | |
blank_image[:,3] *= 0.1380 | |
return blank_image | |
for ck in concat_keys: | |
if denoise_mask is not None: | |
if ck == "mask": | |
cond_concat.append(denoise_mask.to(device)) | |
elif ck == "masked_image": | |
cond_concat.append(concat_latent_image.to(device)) #NOTE: the latent_image should be masked by the mask in pixel space | |
else: | |
if ck == "mask": | |
cond_concat.append(torch.ones_like(noise)[:,:1]) | |
elif ck == "masked_image": | |
cond_concat.append(blank_inpaint_image_like(noise)) | |
data = torch.cat(cond_concat, dim=1) | |
out['c_concat'] = comfy.conds.CONDNoiseShape(data) | |
adm = self.encode_adm(**kwargs) | |
if adm is not None: | |
out['y'] = comfy.conds.CONDRegular(adm) | |
cross_attn = kwargs.get("cross_attn", None) | |
if cross_attn is not None: | |
out['c_crossattn'] = comfy.conds.CONDCrossAttn(cross_attn) | |
cross_attn_cnet = kwargs.get("cross_attn_controlnet", None) | |
if cross_attn_cnet is not None: | |
out['crossattn_controlnet'] = comfy.conds.CONDCrossAttn(cross_attn_cnet) | |
c_concat = kwargs.get("noise_concat", None) | |
if c_concat is not None: | |
out['c_concat'] = comfy.conds.CONDNoiseShape(data) | |
return out | |
def load_model_weights(self, sd, unet_prefix=""): | |
to_load = {} | |
keys = list(sd.keys()) | |
for k in keys: | |
if k.startswith(unet_prefix): | |
to_load[k[len(unet_prefix):]] = sd.pop(k) | |
to_load = self.model_config.process_unet_state_dict(to_load) | |
m, u = self.diffusion_model.load_state_dict(to_load, strict=False) | |
if len(m) > 0: | |
logging.warning("unet missing: {}".format(m)) | |
if len(u) > 0: | |
logging.warning("unet unexpected: {}".format(u)) | |
del to_load | |
return self | |
def process_latent_in(self, latent): | |
return self.latent_format.process_in(latent) | |
def process_latent_out(self, latent): | |
return self.latent_format.process_out(latent) | |
def state_dict_for_saving(self, clip_state_dict=None, vae_state_dict=None, clip_vision_state_dict=None): | |
extra_sds = [] | |
if clip_state_dict is not None: | |
extra_sds.append(self.model_config.process_clip_state_dict_for_saving(clip_state_dict)) | |
if vae_state_dict is not None: | |
extra_sds.append(self.model_config.process_vae_state_dict_for_saving(vae_state_dict)) | |
if clip_vision_state_dict is not None: | |
extra_sds.append(self.model_config.process_clip_vision_state_dict_for_saving(clip_vision_state_dict)) | |
unet_state_dict = self.diffusion_model.state_dict() | |
unet_state_dict = self.model_config.process_unet_state_dict_for_saving(unet_state_dict) | |
if self.get_dtype() == torch.float16: | |
extra_sds = map(lambda sd: utils.convert_sd_to(sd, torch.float16), extra_sds) | |
if self.model_type == ModelType.V_PREDICTION: | |
unet_state_dict["v_pred"] = torch.tensor([]) | |
for sd in extra_sds: | |
unet_state_dict.update(sd) | |
return unet_state_dict | |
def set_inpaint(self): | |
self.inpaint_model = True | |
def memory_required(self, input_shape): | |
if comfy.model_management.xformers_enabled() or comfy.model_management.pytorch_attention_flash_attention(): | |
dtype = self.get_dtype() | |
if self.manual_cast_dtype is not None: | |
dtype = self.manual_cast_dtype | |
#TODO: this needs to be tweaked | |
area = input_shape[0] * input_shape[2] * input_shape[3] | |
return (area * comfy.model_management.dtype_size(dtype) / 50) * (1024 * 1024) | |
else: | |
#TODO: this formula might be too aggressive since I tweaked the sub-quad and split algorithms to use less memory. | |
area = input_shape[0] * input_shape[2] * input_shape[3] | |
return (((area * 0.6) / 0.9) + 1024) * (1024 * 1024) | |
def unclip_adm(unclip_conditioning, device, noise_augmentor, noise_augment_merge=0.0, seed=None): | |
adm_inputs = [] | |
weights = [] | |
noise_aug = [] | |
for unclip_cond in unclip_conditioning: | |
for adm_cond in unclip_cond["clip_vision_output"].image_embeds: | |
weight = unclip_cond["strength"] | |
noise_augment = unclip_cond["noise_augmentation"] | |
noise_level = round((noise_augmentor.max_noise_level - 1) * noise_augment) | |
c_adm, noise_level_emb = noise_augmentor(adm_cond.to(device), noise_level=torch.tensor([noise_level], device=device), seed=seed) | |
adm_out = torch.cat((c_adm, noise_level_emb), 1) * weight | |
weights.append(weight) | |
noise_aug.append(noise_augment) | |
adm_inputs.append(adm_out) | |
if len(noise_aug) > 1: | |
adm_out = torch.stack(adm_inputs).sum(0) | |
noise_augment = noise_augment_merge | |
noise_level = round((noise_augmentor.max_noise_level - 1) * noise_augment) | |
c_adm, noise_level_emb = noise_augmentor(adm_out[:, :noise_augmentor.time_embed.dim], noise_level=torch.tensor([noise_level], device=device)) | |
adm_out = torch.cat((c_adm, noise_level_emb), 1) | |
return adm_out | |
class SD21UNCLIP(BaseModel): | |
def __init__(self, model_config, noise_aug_config, model_type=ModelType.V_PREDICTION, device=None): | |
super().__init__(model_config, model_type, device=device) | |
self.noise_augmentor = CLIPEmbeddingNoiseAugmentation(**noise_aug_config) | |
def encode_adm(self, **kwargs): | |
unclip_conditioning = kwargs.get("unclip_conditioning", None) | |
device = kwargs["device"] | |
if unclip_conditioning is None: | |
return torch.zeros((1, self.adm_channels)) | |
else: | |
return unclip_adm(unclip_conditioning, device, self.noise_augmentor, kwargs.get("unclip_noise_augment_merge", 0.05), kwargs.get("seed", 0) - 10) | |
def sdxl_pooled(args, noise_augmentor): | |
if "unclip_conditioning" in args: | |
return unclip_adm(args.get("unclip_conditioning", None), args["device"], noise_augmentor, seed=args.get("seed", 0) - 10)[:,:1280] | |
else: | |
return args["pooled_output"] | |
class SDXLRefiner(BaseModel): | |
def __init__(self, model_config, model_type=ModelType.EPS, device=None): | |
super().__init__(model_config, model_type, device=device) | |
self.embedder = Timestep(256) | |
self.noise_augmentor = CLIPEmbeddingNoiseAugmentation(**{"noise_schedule_config": {"timesteps": 1000, "beta_schedule": "squaredcos_cap_v2"}, "timestep_dim": 1280}) | |
def encode_adm(self, **kwargs): | |
clip_pooled = sdxl_pooled(kwargs, self.noise_augmentor) | |
width = kwargs.get("width", 768) | |
height = kwargs.get("height", 768) | |
crop_w = kwargs.get("crop_w", 0) | |
crop_h = kwargs.get("crop_h", 0) | |
if kwargs.get("prompt_type", "") == "negative": | |
aesthetic_score = kwargs.get("aesthetic_score", 2.5) | |
else: | |
aesthetic_score = kwargs.get("aesthetic_score", 6) | |
out = [] | |
out.append(self.embedder(torch.Tensor([height]))) | |
out.append(self.embedder(torch.Tensor([width]))) | |
out.append(self.embedder(torch.Tensor([crop_h]))) | |
out.append(self.embedder(torch.Tensor([crop_w]))) | |
out.append(self.embedder(torch.Tensor([aesthetic_score]))) | |
flat = torch.flatten(torch.cat(out)).unsqueeze(dim=0).repeat(clip_pooled.shape[0], 1) | |
return torch.cat((clip_pooled.to(flat.device), flat), dim=1) | |
class SDXL(BaseModel): | |
def __init__(self, model_config, model_type=ModelType.EPS, device=None): | |
super().__init__(model_config, model_type, device=device) | |
self.embedder = Timestep(256) | |
self.noise_augmentor = CLIPEmbeddingNoiseAugmentation(**{"noise_schedule_config": {"timesteps": 1000, "beta_schedule": "squaredcos_cap_v2"}, "timestep_dim": 1280}) | |
def encode_adm(self, **kwargs): | |
clip_pooled = sdxl_pooled(kwargs, self.noise_augmentor) | |
width = kwargs.get("width", 768) | |
height = kwargs.get("height", 768) | |
crop_w = kwargs.get("crop_w", 0) | |
crop_h = kwargs.get("crop_h", 0) | |
target_width = kwargs.get("target_width", width) | |
target_height = kwargs.get("target_height", height) | |
out = [] | |
out.append(self.embedder(torch.Tensor([height]))) | |
out.append(self.embedder(torch.Tensor([width]))) | |
out.append(self.embedder(torch.Tensor([crop_h]))) | |
out.append(self.embedder(torch.Tensor([crop_w]))) | |
out.append(self.embedder(torch.Tensor([target_height]))) | |
out.append(self.embedder(torch.Tensor([target_width]))) | |
flat = torch.flatten(torch.cat(out)).unsqueeze(dim=0).repeat(clip_pooled.shape[0], 1) | |
return torch.cat((clip_pooled.to(flat.device), flat), dim=1) | |
class SVD_img2vid(BaseModel): | |
def __init__(self, model_config, model_type=ModelType.V_PREDICTION_EDM, device=None): | |
super().__init__(model_config, model_type, device=device) | |
self.embedder = Timestep(256) | |
def encode_adm(self, **kwargs): | |
fps_id = kwargs.get("fps", 6) - 1 | |
motion_bucket_id = kwargs.get("motion_bucket_id", 127) | |
augmentation = kwargs.get("augmentation_level", 0) | |
out = [] | |
out.append(self.embedder(torch.Tensor([fps_id]))) | |
out.append(self.embedder(torch.Tensor([motion_bucket_id]))) | |
out.append(self.embedder(torch.Tensor([augmentation]))) | |
flat = torch.flatten(torch.cat(out)).unsqueeze(dim=0) | |
return flat | |
def extra_conds(self, **kwargs): | |
out = {} | |
adm = self.encode_adm(**kwargs) | |
if adm is not None: | |
out['y'] = comfy.conds.CONDRegular(adm) | |
latent_image = kwargs.get("concat_latent_image", None) | |
noise = kwargs.get("noise", None) | |
device = kwargs["device"] | |
if latent_image is None: | |
latent_image = torch.zeros_like(noise) | |
if latent_image.shape[1:] != noise.shape[1:]: | |
latent_image = utils.common_upscale(latent_image, noise.shape[-1], noise.shape[-2], "bilinear", "center") | |
latent_image = utils.resize_to_batch_size(latent_image, noise.shape[0]) | |
out['c_concat'] = comfy.conds.CONDNoiseShape(latent_image) | |
cross_attn = kwargs.get("cross_attn", None) | |
if cross_attn is not None: | |
out['c_crossattn'] = comfy.conds.CONDCrossAttn(cross_attn) | |
if "time_conditioning" in kwargs: | |
out["time_context"] = comfy.conds.CONDCrossAttn(kwargs["time_conditioning"]) | |
out['num_video_frames'] = comfy.conds.CONDConstant(noise.shape[0]) | |
return out | |
class Stable_Zero123(BaseModel): | |
def __init__(self, model_config, model_type=ModelType.EPS, device=None, cc_projection_weight=None, cc_projection_bias=None): | |
super().__init__(model_config, model_type, device=device) | |
self.cc_projection = comfy.ops.manual_cast.Linear(cc_projection_weight.shape[1], cc_projection_weight.shape[0], dtype=self.get_dtype(), device=device) | |
self.cc_projection.weight.copy_(cc_projection_weight) | |
self.cc_projection.bias.copy_(cc_projection_bias) | |
def extra_conds(self, **kwargs): | |
out = {} | |
latent_image = kwargs.get("concat_latent_image", None) | |
noise = kwargs.get("noise", None) | |
if latent_image is None: | |
latent_image = torch.zeros_like(noise) | |
if latent_image.shape[1:] != noise.shape[1:]: | |
latent_image = utils.common_upscale(latent_image, noise.shape[-1], noise.shape[-2], "bilinear", "center") | |
latent_image = utils.resize_to_batch_size(latent_image, noise.shape[0]) | |
out['c_concat'] = comfy.conds.CONDNoiseShape(latent_image) | |
cross_attn = kwargs.get("cross_attn", None) | |
if cross_attn is not None: | |
if cross_attn.shape[-1] != 768: | |
cross_attn = self.cc_projection(cross_attn) | |
out['c_crossattn'] = comfy.conds.CONDCrossAttn(cross_attn) | |
return out | |
class SD_X4Upscaler(BaseModel): | |
def __init__(self, model_config, model_type=ModelType.V_PREDICTION, device=None): | |
super().__init__(model_config, model_type, device=device) | |
self.noise_augmentor = ImageConcatWithNoiseAugmentation(noise_schedule_config={"linear_start": 0.0001, "linear_end": 0.02}, max_noise_level=350) | |
def extra_conds(self, **kwargs): | |
out = {} | |
image = kwargs.get("concat_image", None) | |
noise = kwargs.get("noise", None) | |
noise_augment = kwargs.get("noise_augmentation", 0.0) | |
device = kwargs["device"] | |
seed = kwargs["seed"] - 10 | |
noise_level = round((self.noise_augmentor.max_noise_level) * noise_augment) | |
if image is None: | |
image = torch.zeros_like(noise)[:,:3] | |
if image.shape[1:] != noise.shape[1:]: | |
image = utils.common_upscale(image.to(device), noise.shape[-1], noise.shape[-2], "bilinear", "center") | |
noise_level = torch.tensor([noise_level], device=device) | |
if noise_augment > 0: | |
image, noise_level = self.noise_augmentor(image.to(device), noise_level=noise_level, seed=seed) | |
image = utils.resize_to_batch_size(image, noise.shape[0]) | |
out['c_concat'] = comfy.conds.CONDNoiseShape(image) | |
out['y'] = comfy.conds.CONDRegular(noise_level) | |
return out | |
class StableCascade_C(BaseModel): | |
def __init__(self, model_config, model_type=ModelType.STABLE_CASCADE, device=None): | |
super().__init__(model_config, model_type, device=device, unet_model=StageC) | |
self.diffusion_model.eval().requires_grad_(False) | |
def extra_conds(self, **kwargs): | |
out = {} | |
clip_text_pooled = kwargs["pooled_output"] | |
if clip_text_pooled is not None: | |
out['clip_text_pooled'] = comfy.conds.CONDRegular(clip_text_pooled) | |
if "unclip_conditioning" in kwargs: | |
embeds = [] | |
for unclip_cond in kwargs["unclip_conditioning"]: | |
weight = unclip_cond["strength"] | |
embeds.append(unclip_cond["clip_vision_output"].image_embeds.unsqueeze(0) * weight) | |
clip_img = torch.cat(embeds, dim=1) | |
else: | |
clip_img = torch.zeros((1, 1, 768)) | |
out["clip_img"] = comfy.conds.CONDRegular(clip_img) | |
out["sca"] = comfy.conds.CONDRegular(torch.zeros((1,))) | |
out["crp"] = comfy.conds.CONDRegular(torch.zeros((1,))) | |
cross_attn = kwargs.get("cross_attn", None) | |
if cross_attn is not None: | |
out['clip_text'] = comfy.conds.CONDCrossAttn(cross_attn) | |
return out | |
class StableCascade_B(BaseModel): | |
def __init__(self, model_config, model_type=ModelType.STABLE_CASCADE, device=None): | |
super().__init__(model_config, model_type, device=device, unet_model=StageB) | |
self.diffusion_model.eval().requires_grad_(False) | |
def extra_conds(self, **kwargs): | |
out = {} | |
noise = kwargs.get("noise", None) | |
clip_text_pooled = kwargs["pooled_output"] | |
if clip_text_pooled is not None: | |
out['clip'] = comfy.conds.CONDRegular(clip_text_pooled) | |
#size of prior doesn't really matter if zeros because it gets resized but I still want it to get batched | |
prior = kwargs.get("stable_cascade_prior", torch.zeros((1, 16, (noise.shape[2] * 4) // 42, (noise.shape[3] * 4) // 42), dtype=noise.dtype, layout=noise.layout, device=noise.device)) | |
out["effnet"] = comfy.conds.CONDRegular(prior) | |
out["sca"] = comfy.conds.CONDRegular(torch.zeros((1,))) | |
return out | |