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from typing import Callable, Iterable, Any, Optional, Union, Sequence, Mapping, Dict
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