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import os.path
import copy
import torch
import torch.nn as nn
import lightning.pytorch as pl
from lightning.pytorch.core.optimizer import LightningOptimizer
from lightning.pytorch.utilities.types import OptimizerLRScheduler, STEP_OUTPUT
from torch.optim.lr_scheduler import LRScheduler
from torch.optim import Optimizer
from lightning.pytorch.callbacks import Callback
from src.models.autoencoder.base import BaseAE, fp2uint8
from src.models.conditioner.base import BaseConditioner
from src.utils.model_loader import ModelLoader
from src.callbacks.simple_ema import SimpleEMA
from src.diffusion.base.sampling import BaseSampler
from src.diffusion.base.training import BaseTrainer
from src.utils.no_grad import no_grad, filter_nograd_tensors
from src.utils.copy import copy_params
torch._functorch.config.donated_buffer = False
EMACallable = Callable[[nn.Module, nn.Module], SimpleEMA]
OptimizerCallable = Callable[[Iterable], Optimizer]
LRSchedulerCallable = Callable[[Optimizer], LRScheduler]
def set_requires_grad(module: nn.Module, requires_grad: bool):
for param in module.parameters():
param.requires_grad_(requires_grad)
def set_discriminator_trainable(module: nn.Module, requires_grad: bool):
if hasattr(module, "set_trainable"):
module.set_trainable(requires_grad)
else:
set_requires_grad(module, requires_grad)
def set_optimizer_initial_lrs(optimizer: Optimizer):
for group in optimizer.param_groups:
if "lr_scale" in group and not group.get("_lr_scale_applied", False):
group["lr"] *= group["lr_scale"]
group["_lr_scale_applied"] = True
group.setdefault("initial_lr", group["lr"])
class LightningModel(pl.LightningModule):
def __init__(self,
vae: BaseAE,
conditioner: BaseConditioner,
denoiser: nn.Module,
diffusion_trainer: BaseTrainer,
diffusion_sampler: BaseSampler,
ema_tracker: SimpleEMA=None,
optimizer: OptimizerCallable = None,
lr_scheduler: LRSchedulerCallable = None,
eval_original_model: bool = False,
# ---- optional adversarial fine-tuning ----
discriminator: nn.Module = None,
d_optimizer: OptimizerCallable = None,
d_steps_per_g: int = 1,
g_grad_clip: float = 1.0,
d_grad_clip: float = 1.0,
):
super().__init__()
self.vae = vae
self.conditioner = conditioner
self.denoiser = denoiser
self.ema_denoiser = copy.deepcopy(self.denoiser)
self.diffusion_sampler = diffusion_sampler
self.diffusion_trainer = diffusion_trainer
self.ema_tracker = ema_tracker
self.optimizer = optimizer
self.lr_scheduler = lr_scheduler
self.eval_original_model = eval_original_model
# discriminator / GAN fine-tuning
self.discriminator = discriminator
self.d_optimizer = d_optimizer
self.d_steps_per_g = d_steps_per_g
self.g_grad_clip = g_grad_clip
self.d_grad_clip = d_grad_clip
self._d_step_counter = 0
if self.discriminator is not None:
# manual optimization is required for two-optimizer GAN training
self.automatic_optimization = False
self._strict_loading = False
def configure_model(self) -> None:
self.trainer.strategy.barrier()
copy_params(src_model=self.denoiser, dst_model=self.ema_denoiser)
# disable grad for conditioner and vae
no_grad(self.conditioner)
no_grad(self.vae)
# no_grad(self.diffusion_sampler)
no_grad(self.ema_denoiser)
# GAN: keep DINOv2 backbone of the discriminator frozen, only the
# trainable heads + text projection get updated.
if self.discriminator is not None:
self.discriminator.train()
set_discriminator_trainable(self.discriminator, True)
# torch.compile
self.denoiser.compile()
self.ema_denoiser.compile()
def configure_callbacks(self) -> Union[Sequence[Callback], Callback]:
return [self.ema_tracker]
def configure_optimizers(self) -> OptimizerLRScheduler:
params_denoiser = filter_nograd_tensors(self.denoiser.parameters())
params_trainer = filter_nograd_tensors(self.diffusion_trainer.parameters())
params_sampler = filter_nograd_tensors(self.diffusion_sampler.parameters())
param_groups = [
{"params": params_denoiser, },
{"params": params_trainer,},
{"params": params_sampler, "lr": 1e-3},
]
# optimizer: torch.optim.Optimizer = self.optimizer([*params_trainer, *params_denoiser])
optimizer: torch.optim.Optimizer = self.optimizer(param_groups)
set_optimizer_initial_lrs(optimizer)
# ---- GAN: also build a discriminator optimizer ----
d_optimizer = None
if self.discriminator is not None:
if hasattr(self.discriminator, "optimizer_param_groups"):
d_params = self.discriminator.optimizer_param_groups()
else:
d_params = filter_nograd_tensors(self.discriminator.parameters())
if self.d_optimizer is None:
d_optimizer = torch.optim.AdamW(d_params, lr=2e-4, betas=(0.0, 0.99))
else:
d_optimizer = self.d_optimizer(d_params)
set_optimizer_initial_lrs(d_optimizer)
if self.lr_scheduler is None:
if d_optimizer is None:
return dict(optimizer=optimizer)
return [optimizer, d_optimizer]
else:
lr_scheduler = self.lr_scheduler(optimizer)
g_cfg = dict(
optimizer=optimizer,
lr_scheduler={
"scheduler": lr_scheduler,
"interval": "step",
"frequency": 1,
"name": "learning_rate"
}
)
if d_optimizer is None:
return g_cfg
return [g_cfg, dict(optimizer=d_optimizer)]
def on_validation_start(self) -> None:
self.ema_denoiser.to(torch.float32)
def on_predict_start(self) -> None:
self.ema_denoiser.to(torch.float32)
# sanity check before training start
def on_train_start(self) -> None:
self.ema_denoiser.to(torch.float32)
self.ema_tracker.setup_models(net=self.denoiser, ema_net=self.ema_denoiser)
if (self.discriminator is not None
and hasattr(self.discriminator, "initialize_from_denoiser")):
self.discriminator.initialize_from_denoiser(self.denoiser)
set_discriminator_trainable(self.discriminator, True)
def _optimizer_param_groups(self, optimizer):
if isinstance(optimizer, LightningOptimizer):
return optimizer.optimizer.param_groups
return optimizer.param_groups
def _apply_dynamic_lr_schedule(self, *optimizers):
if not hasattr(self.diffusion_trainer, "get_lr_multiplier"):
return
lr_multiplier = self.diffusion_trainer.get_lr_multiplier(self.global_step)
for optimizer in optimizers:
for group in self._optimizer_param_groups(optimizer):
group["lr"] = group["initial_lr"] * lr_multiplier
self.log("lr_multiplier", lr_multiplier, prog_bar=True, on_step=True, sync_dist=False)
def on_load_checkpoint(self, checkpoint):
keys_to_check = [
"denoiser.pos_embed",
"ema_denoiser.pos_embed"
]
ckpt_state_dict = checkpoint["state_dict"]
current_state_dict = self.state_dict()
for key in keys_to_check:
if key in ckpt_state_dict and key in current_state_dict:
ckpt_shape = ckpt_state_dict[key].shape
curr_shape = current_state_dict[key].shape
if ckpt_shape != curr_shape:
print(f"[Warning] Shape mismatch for '{key}': "
f"Checkpoint {ckpt_shape} vs Current {curr_shape}. "
f"Dropping from checkpoint to avoid RuntimeError.")
del ckpt_state_dict[key]
else:
pass
def training_step(self, batch, batch_idx):
x, y, metadata = batch
if metadata is None:
metadata = {}
metadata['global_step'] = self.global_step
with torch.no_grad():
x = self.vae.encode(x)
condition, uncondition = self.conditioner(y, metadata)
# --------- non-GAN path: identical to the original implementation ----
if self.discriminator is None:
loss = self.diffusion_trainer(
self.denoiser, self.ema_denoiser, self.diffusion_sampler,
x, condition, uncondition, metadata,
)
self.log_dict(loss, prog_bar=True, on_step=True, sync_dist=False)
return loss["loss"]
# ----------------- GAN path: manual two-optimizer step ---------------
opt_g, opt_d = self.optimizers()
self._apply_dynamic_lr_schedule(opt_g, opt_d)
# Sample / drop conditioning the same way BaseTrainer does.
# NOTE: preproprocess returns (x, condition, metadata) -- ordering
# matters; do NOT swap to (condition, _, metadata).
x, condition_used, metadata = self.diffusion_trainer.preproprocess(
x, condition, uncondition, metadata,
)
# ===== Generator step =====
set_discriminator_trainable(self.discriminator, False)
g_losses, cache = self.diffusion_trainer.generator_step(
self.denoiser, self.ema_denoiser, self.diffusion_sampler,
x, condition_used, metadata,
discriminator=self.discriminator,
)
opt_g.zero_grad(set_to_none=True)
self.manual_backward(g_losses["loss"])
if self.g_grad_clip is not None and self.g_grad_clip > 0:
self.clip_gradients(opt_g, gradient_clip_val=self.g_grad_clip,
gradient_clip_algorithm="norm")
opt_g.step()
# ===== Discriminator step =====
set_discriminator_trainable(self.discriminator, True)
d_losses = self.diffusion_trainer.discriminator_step(
self.discriminator,
cache["pred_img"].detach(),
cache["real_img"],
cache["cond"],
valid_length_y=cache.get("valid_length_y"),
gan_mask=cache.get("gan_mask"),
gan_active=cache.get("gan_active", True),
)
opt_d.zero_grad(set_to_none=True)
self.manual_backward(d_losses["d_loss"])
if self.d_grad_clip is not None and self.d_grad_clip > 0:
self.clip_gradients(opt_d, gradient_clip_val=self.d_grad_clip,
gradient_clip_algorithm="norm")
opt_d.step()
log_dict = dict(g_losses)
log_dict.update(d_losses)
self.log_dict(log_dict, prog_bar=True, on_step=True, sync_dist=False)
return g_losses["loss"]
def predict_step(self, batch, batch_idx):
xT, y, metadata = batch
with torch.no_grad():
condition, uncondition = self.conditioner(y)
# sample images
if self.eval_original_model:
samples = self.diffusion_sampler(self.denoiser, xT, condition, uncondition)
else:
samples = self.diffusion_sampler(self.ema_denoiser, xT, condition, uncondition)
samples = self.vae.decode(samples)
# fp32 -1,1 -> uint8 0,255
samples = fp2uint8(samples)
return samples
def validation_step(self, batch, batch_idx):
samples = self.predict_step(batch, batch_idx)
return samples
def state_dict(self, *args, destination=None, prefix="", keep_vars=False):
if destination is None:
destination = {}
self._save_to_state_dict(destination, prefix, keep_vars)
self.denoiser.state_dict(
destination=destination,
prefix=prefix+"denoiser.",
keep_vars=keep_vars)
self.ema_denoiser.state_dict(
destination=destination,
prefix=prefix+"ema_denoiser.",
keep_vars=keep_vars)
self.diffusion_trainer.state_dict(
destination=destination,
prefix=prefix+"diffusion_trainer.",
keep_vars=keep_vars)
if self.discriminator is not None:
# only checkpoint the trainable heads + text projection (the DINO
# backbone is frozen and easily reconstructible from torch.hub).
d_full = self.discriminator.state_dict(
destination=None, prefix="", keep_vars=keep_vars,
)
for k, v in d_full.items():
if k.startswith("dino."):
continue
destination[prefix + "discriminator." + k] = v
return destination |