GaussianAnything-AIGC3D / nsr /lsgm /sgm_DiffusionEngine.py
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"""
https://github.com/CompVis/stable-diffusion/blob/21f890f9da3cfbeaba8e2ac3c425ee9e998d5229/ldm/models/diffusion/ddpm.py#L30
"""
import copy
import functools
import json
import os
from pathlib import Path
from pdb import set_trace as st
from typing import Any
from click import prompt
import einops
import blobfile as bf
import imageio
import numpy as np
import torch as th
import torch.distributed as dist
import torchvision
from PIL import Image
from torch.nn.parallel.distributed import DistributedDataParallel as DDP
from torch.optim import AdamW
from torch.utils.tensorboard.writer import SummaryWriter
from tqdm import tqdm
from guided_diffusion import dist_util, logger
from guided_diffusion.fp16_util import MixedPrecisionTrainer
from guided_diffusion.nn import update_ema
from guided_diffusion.resample import LossAwareSampler, UniformSampler
# from .train_util import TrainLoop3DRec
from guided_diffusion.train_util import (TrainLoop, calc_average_loss,
find_ema_checkpoint,
find_resume_checkpoint,
get_blob_logdir, log_loss_dict,
log_rec3d_loss_dict,
parse_resume_step_from_filename)
from guided_diffusion.gaussian_diffusion import ModelMeanType
from ldm.modules.encoders.modules import FrozenClipImageEmbedder, TextEmbedder, FrozenCLIPTextEmbedder, FrozenOpenCLIPImagePredictionEmbedder, FrozenOpenCLIPImageEmbedder
import dnnlib
from dnnlib.util import requires_grad
from dnnlib.util import calculate_adaptive_weight
from ..train_util_diffusion import TrainLoop3DDiffusion
from ..cvD.nvsD_canoD import TrainLoop3DcvD_nvsD_canoD
from guided_diffusion.continuous_diffusion_utils import get_mixed_prediction, different_p_q_objectives, kl_per_group_vada, kl_balancer
# from .train_util_diffusion_lsgm_noD_joint import TrainLoop3DDiffusionLSGMJointnoD # joint diffusion and rec class
# from .controlLDM import TrainLoop3DDiffusionLSGM_Control # joint diffusion and rec class
from .train_util_diffusion_lsgm_noD_joint import TrainLoop3DDiffusionLSGMJointnoD # joint diffusion and rec class
# ! add new schedulers from https://github.com/Stability-AI/generative-models
from .crossattn_cldm import TrainLoop3DDiffusionLSGM_crossattn
# import SD stuffs
from typing import Any, Dict, List, Optional, Tuple, Union
from contextlib import contextmanager
from omegaconf import ListConfig, OmegaConf
from sgm.modules import UNCONDITIONAL_CONFIG
from sgm.util import (default, disabled_train, get_obj_from_str,
instantiate_from_config, log_txt_as_img)
# from sgm.sampling_utils.demo.streamlit_helpers import init_sampling
class DiffusionEngineLSGM(TrainLoop3DDiffusionLSGM_crossattn):
def __init__(
self,
*,
rec_model,
denoise_model,
diffusion,
sde_diffusion,
control_model,
control_key,
only_mid_control,
loss_class,
data,
eval_data,
batch_size,
microbatch,
lr,
ema_rate,
log_interval,
eval_interval,
save_interval,
resume_checkpoint,
resume_cldm_checkpoint=None,
use_fp16=False,
fp16_scale_growth=0.001,
schedule_sampler=None,
weight_decay=0,
lr_anneal_steps=0,
iterations=10001,
ignore_resume_opt=False,
freeze_ae=False,
denoised_ae=True,
triplane_scaling_divider=10,
use_amp=False,
diffusion_input_size=224,
normalize_clip_encoding=False,
scale_clip_encoding=1,
cfg_dropout_prob=0,
cond_key='img_sr',
use_eos_feature=False,
compile=False,
# denoiser_config,
# conditioner_config: Union[None, Dict, ListConfig,
# OmegaConf] = None,
# sampler_config: Union[None, Dict, ListConfig, OmegaConf] = None,
# loss_fn_config: Union[None, Dict, ListConfig, OmegaConf] = None,
**kwargs):
super().__init__(rec_model=rec_model,
denoise_model=denoise_model,
diffusion=diffusion,
sde_diffusion=sde_diffusion,
control_model=control_model,
control_key=control_key,
only_mid_control=only_mid_control,
loss_class=loss_class,
data=data,
eval_data=eval_data,
batch_size=batch_size,
microbatch=microbatch,
lr=lr,
ema_rate=ema_rate,
log_interval=log_interval,
eval_interval=eval_interval,
save_interval=save_interval,
resume_checkpoint=resume_checkpoint,
resume_cldm_checkpoint=resume_cldm_checkpoint,
use_fp16=use_fp16,
fp16_scale_growth=fp16_scale_growth,
schedule_sampler=schedule_sampler,
weight_decay=weight_decay,
lr_anneal_steps=lr_anneal_steps,
iterations=iterations,
ignore_resume_opt=ignore_resume_opt,
freeze_ae=freeze_ae,
denoised_ae=denoised_ae,
triplane_scaling_divider=triplane_scaling_divider,
use_amp=use_amp,
diffusion_input_size=diffusion_input_size,
normalize_clip_encoding=normalize_clip_encoding,
scale_clip_encoding=scale_clip_encoding,
cfg_dropout_prob=cfg_dropout_prob,
cond_key=cond_key,
use_eos_feature=use_eos_feature,
compile=compile,
**kwargs)
# ! sgm diffusion pipeline
if self.cond_key == 'caption':
ldm_configs = OmegaConf.load(
'sgm/configs/txt2img-clipl-compat.yaml')['ldm_configs']
else:
ldm_configs = OmegaConf.load(
'sgm/configs/img23d-clipl-compat.yaml')['ldm_configs']
self.loss_fn = (
instantiate_from_config(ldm_configs.loss_fn_config)
# if loss_fn_config is not None
# else None
)
self.denoiser = instantiate_from_config(
ldm_configs.denoiser_config).to(dist_util.dev())
self.sampler = (instantiate_from_config(ldm_configs.sampler_config))
self.conditioner = instantiate_from_config(
default(ldm_configs.conditioner_config,
UNCONDITIONAL_CONFIG)).to(dist_util.dev())
# ! already merged
def prepare_ddpm(self, eps, mode='p'):
raise NotImplementedError('already implemented in self.denoiser')
# merged from noD.py
# use sota denoiser, loss_fn etc.
def ldm_train_step(self, batch, behaviour='cano', *args, **kwargs):
"""
add sds grad to all ae predicted x_0
"""
# ! enable the gradient of both models
requires_grad(self.ddpm_model, True)
self.mp_trainer.zero_grad() # !!!!
if 'img' in batch:
batch_size = batch['img'].shape[0]
else:
batch_size = len(batch['caption'])
for i in range(0, batch_size, self.microbatch):
micro = {
k:
v[i:i + self.microbatch].to(dist_util.dev()) if isinstance(
v, th.Tensor) else v
for k, v in batch.items()
}
# =================================== ae part ===================================
with th.cuda.amp.autocast(dtype=self.dtype,
enabled=self.mp_trainer.use_amp):
loss = th.tensor(0.).to(dist_util.dev())
assert 'latent' in micro
vae_out = {self.latent_name: micro['latent'].to(self.dtype)}
# else:
# vae_out = self.ddp_rec_model(
# img=micro['img_to_encoder'],
# c=micro['c'],
# behaviour='encoder_vae',
# ) # pred: (B, 3, 64, 64)
eps = vae_out[self.latent_name] / self.triplane_scaling_divider
# eps = vae_out.pop(self.latent_name)
# if 'bg_plane' in vae_out:
# eps = th.cat((eps, vae_out['bg_plane']),
# dim=1) # include background, B 12+4 32 32
# ! SD loss
# cond = self.get_c_input(micro, bs=eps.shape[0])
loss, loss_other_info = self.loss_fn(self.ddp_ddpm_model,
self.denoiser,
self.conditioner, eps,
micro) # type: ignore
loss = loss.mean()
log_rec3d_loss_dict({})
log_rec3d_loss_dict({
'eps_mean':
eps.mean(),
'eps_std':
eps.std([1, 2, 3]).mean(0),
'pred_x0_std':
loss_other_info['model_output'].std([1, 2, 3]).mean(0),
"p_loss":
loss,
})
self.mp_trainer.backward(loss) # joint gradient descent
# update ddpm accordingly
self.mp_trainer.optimize(self.opt)
if dist_util.get_rank() == 0 and self.step % 500 == 0:
self.log_control_images(vae_out, micro, loss_other_info)
@th.inference_mode()
def log_control_images(self, vae_out, micro, ddpm_ret):
# eps_t_p, t_p, logsnr_p = (p_sample_batch[k] for k in (
# 'eps_t_p',
# 't_p',
# 'logsnr_p',
# ))
# pred_eps_p = ddpm_ret['pred_eps_p']
if 'posterior' in vae_out:
vae_out.pop('posterior') # for calculating kl loss
# vae_out_for_pred = {
# k: v[0:1].to(dist_util.dev()) if isinstance(v, th.Tensor) else v
# for k, v in vae_out.items()
# }
vae_out_for_pred = {self.latent_name: vae_out[self.latent_name][0:1].to(self.dtype)}
with th.cuda.amp.autocast(dtype=self.dtype,
enabled=self.mp_trainer.use_amp):
pred = self.ddp_rec_model(latent=vae_out_for_pred,
c=micro['c'][0:1],
behaviour=self.render_latent_behaviour)
assert isinstance(pred, dict)
pred_img = pred['image_raw']
if 'img' in micro:
gt_img = micro['img']
else:
gt_img = th.zeros_like(pred['image_raw'])
if 'depth' in micro:
gt_depth = micro['depth']
if gt_depth.ndim == 3:
gt_depth = gt_depth.unsqueeze(1)
gt_depth = (gt_depth - gt_depth.min()) / (gt_depth.max() -
gt_depth.min())
else:
gt_depth = th.zeros_like(gt_img[:, 0:1, ...])
if 'image_depth' in pred:
pred_depth = pred['image_depth']
pred_depth = (pred_depth - pred_depth.min()) / (pred_depth.max() -
pred_depth.min())
else:
pred_depth = th.zeros_like(gt_depth)
gt_img = self.pool_128(gt_img)
gt_depth = self.pool_128(gt_depth)
# cond = self.get_c_input(micro)
# hint = th.cat(cond['c_concat'], 1)
gt_vis = th.cat(
[
gt_img,
gt_img,
gt_img,
# self.pool_128(hint),
# gt_img,
gt_depth.repeat_interleave(3, dim=1)
],
dim=-1)[0:1] # TODO, fail to load depth. range [0, 1]
# eps_t_p_3D = eps_t_p.reshape(batch_size, eps_t_p.shape[1]//3, 3, -1) # B C 3 L
noised_latent, sigmas, x_start = [
ddpm_ret[k] for k in ['noised_input', 'sigmas', 'model_output']
]
noised_latent = {
'latent_normalized_2Ddiffusion':
noised_latent[0:1].to(self.dtype) * self.triplane_scaling_divider,
}
denoised_latent = {
'latent_normalized_2Ddiffusion':
x_start[0:1].to(self.dtype) * self.triplane_scaling_divider,
}
with th.cuda.amp.autocast(dtype=self.dtype,
enabled=self.mp_trainer.use_amp):
noised_ae_pred = self.ddp_rec_model(
img=None,
c=micro['c'][0:1],
latent=noised_latent,
behaviour=self.render_latent_behaviour)
# pred_x0 = self.sde_diffusion._predict_x0_from_eps(
# eps_t_p, pred_eps_p, logsnr_p) # for VAE loss, denosied latent
# pred_xstart_3D
denoised_ae_pred = self.ddp_rec_model(
img=None,
c=micro['c'][0:1],
latent=denoised_latent,
# latent=pred_x0[0:1] * self.
# triplane_scaling_divider, # TODO, how to define the scale automatically?
behaviour=self.render_latent_behaviour)
pred_vis = th.cat(
[
self.pool_128(img) for img in (
pred_img[0:1],
noised_ae_pred['image_raw'][0:1],
denoised_ae_pred['image_raw'][0:1], # controlnet result
pred_depth[0:1].repeat_interleave(3, dim=1))
],
dim=-1) # B, 3, H, W
if 'img' in micro:
vis = th.cat([gt_vis, pred_vis],
dim=-2)[0].permute(1, 2,
0).cpu() # ! pred in range[-1, 1]
else:
vis = pred_vis[0].permute(1, 2, 0).cpu()
# vis_grid = torchvision.utils.make_grid(vis) # HWC
vis = vis.numpy() * 127.5 + 127.5
vis = vis.clip(0, 255).astype(np.uint8)
img_save_path = f'{logger.get_dir()}/{self.step+self.resume_step}denoised_{sigmas[0].item():3}.jpg'
Image.fromarray(vis).save(img_save_path)
# if self.cond_key == 'caption':
# with open(f'{logger.get_dir()}/{self.step+self.resume_step}caption_{t_p[0].item():3}.txt', 'w') as f:
# f.write(micro['caption'][0])
print('log denoised vis to: ', img_save_path)
th.cuda.empty_cache()
@th.no_grad()
def sample(
self,
cond: Dict,
uc: Union[Dict, None] = None,
batch_size: int = 16,
shape: Union[None, Tuple, List] = None,
**kwargs,
):
with th.cuda.amp.autocast(dtype=self.dtype,
enabled=self.mp_trainer.use_amp):
randn = th.randn(batch_size, *shape).to(dist_util.dev()).to(self.dtype)
denoiser = lambda input, sigma, c: self.denoiser(
self.model, input, sigma, c, **kwargs)
samples = self.sampler(denoiser, randn, cond, uc=uc)
return samples
@th.inference_mode()
def eval_cldm(
self,
prompt="",
use_ddim=False,
unconditional_guidance_scale=1.0,
save_img=False,
use_train_trajectory=False,
camera=None,
num_samples=1,
num_instances=1,
):
# ! slightly modified for new API. combined with
# /cpfs01/shared/V2V/V2V_hdd/yslan/Repo/generative-models/sgm/models/diffusion.py:249 log_images()
# TODO, support batch_size > 1
self.ddpm_model.eval()
args = dnnlib.EasyDict(
dict(
batch_size=1,
image_size=self.diffusion_input_size,
denoise_in_channels=self.rec_model.decoder.triplane_decoder.
out_chans, # type: ignore
clip_denoised=False,
class_cond=False,
use_ddim=use_ddim))
model_kwargs = {}
uc = None
log = dict()
ucg_keys = [self.cond_key]
batch_c = {self.cond_key: prompt}
c, uc = self.conditioner.get_unconditional_conditioning(
batch_c,
force_uc_zero_embeddings=ucg_keys
if len(self.conditioner.embedders) > 0 else [],
)
sampling_kwargs = {}
N = 1 # hard coded, to update
z_shape = (
N,
self.ddpm_model.in_channels if not self.ddpm_model.roll_out else
3 * self.ddpm_model.in_channels, # type: ignore
self.diffusion_input_size,
self.diffusion_input_size)
for k in c:
if isinstance(c[k], th.Tensor):
c[k], uc[k] = map(lambda y: y[k][:N].to(dist_util.dev()),
(c, uc))
samples = self.sample(c,
shape=z_shape[1:],
uc=uc,
batch_size=N,
**sampling_kwargs)
# st() # do rendering first
# ! get c
if self.cond_key == 'caption':
if camera is not None:
batch = {'c': camera.clone()}
else:
if use_train_trajectory:
batch = next(iter(self.data))
else:
try:
batch = next(self.eval_data)
except Exception as e:
self.eval_data = iter(self.eval_data)
batch = next(self.eval_data)
if camera is not None:
batch['c'] = camera.clone()
# rendering
for i in range(samples.shape[0]):
th.cuda.empty_cache()
# ! render sampled latent
with th.cuda.amp.autocast(dtype=self.dtype,
enabled=self.mp_trainer.use_amp):
self.render_video_given_triplane(
samples[i:i+1].to(self.dtype),
self.rec_model, # compatible with join_model
name_prefix=
f'{self.step + self.resume_step}_{i}_{prompt}',
save_img=save_img,
render_reference=batch,
export_mesh=False)
self.ddpm_model.train()