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# coding: utf-8
__author__ = "Roman Solovyev (ZFTurbo): https://github.com/ZFTurbo/"
__version__ = "1.0.5"

import argparse
import sys
import warnings
from typing import Callable, List, Union

import numpy as np
import torch
import torch.distributed as dist
import torch.nn as nn
import wandb
from ml_collections import ConfigDict
from tqdm.auto import tqdm
from utils.model_utils import (
    initialize_model_and_device,
    normalize_batch,
    save_last_weights,
    save_weights,
)
from utils.settings import (
    get_model_from_config,
    get_scheduler,
    initialize_environment,
    initialize_environment_ddp,
    parse_args_train,
    wandb_init,
)
from valid import valid, valid_multi_gpu

warnings.filterwarnings("ignore")


def forward_step(
    x, y, active_stem_ids, get_internal_loss, model, multi_loss, device_ids
):
    if get_internal_loss:
        loss = model(x, y, active_stem_ids=active_stem_ids)
        if isinstance(device_ids, (list, tuple)):
            loss = loss.mean()
        return loss
    else:
        y_ = model(x)
        return multi_loss(y_, y, x)


def train_one_epoch(
    model: torch.nn.Module,
    config: ConfigDict,
    args: argparse.Namespace,
    optimizer: torch.optim.Optimizer,
    device: torch.device,
    device_ids: List[int],
    epoch: int,
    use_amp: bool,
    scaler: torch.cuda.amp.GradScaler,
    scheduler,
    gradient_accumulation_steps: int,
    train_loader: torch.utils.data.DataLoader,
    multi_loss: Callable[
        [
            torch.Tensor,
            torch.Tensor,
            torch.Tensor,
        ],
        torch.Tensor,
    ],
    all_losses=None,
    world_size=None,
    ema_model=None,
    safe_mode=None,
) -> None:
    """
    Train the model for one epoch.

    Args:
        world_size:
        scheduler:
        model: The model to train.
        config: Configuration object containing training parameters.
        args: Command-line arguments with specific settings (e.g., model type).
        optimizer: Optimizer used for training.
        device: Device to run the model on (CPU or GPU).
        device_ids: List of GPU device IDs if using multiple GPUs.
        epoch: The current epoch number.
        use_amp: Whether to use automatic mixed precision (AMP) for training.
        scaler: Scaler for AMP to manage gradient scaling.
        gradient_accumulation_steps: Number of gradient accumulation steps before updating the optimizer.
        train_loader: DataLoader for the training dataset.
        multi_loss: The loss function to use during training.

    Returns:
        None
    """
    ddp = True if world_size else False
    should_print = not dist.is_initialized() or dist.get_rank() == 0
    model.train()
    if not ddp:
        model.to(device)
    if should_print:
        print(f"Train epoch: {epoch} Learning rate: {optimizer.param_groups[0]['lr']}")
        sys.stdout.flush()
    loss_val = 0.0
    total = 0
    all_losses[f"epoch_{epoch}"] = []

    normalize = getattr(config.training, "normalize", False)

    get_internal_loss = (
        args.model_type
        in (
            "mel_band_roformer",
            "bs_roformer",
            "bs_mamba2",
            "mel_band_conformer",
            "bs_conformer",
        )
        and not args.use_standard_loss
    )

    if ddp:
        pbar = (
            tqdm(train_loader, dynamic_ncols=True)
            if dist.get_rank() == 0
            else train_loader
        )
    else:
        pbar = tqdm(train_loader)

    for i, data in enumerate(pbar):
        if len(data) == 3:
            batch, mixes, active_stem_ids = data
        elif len(data) == 2:
            batch, mixes = data
            active_stem_ids = None
        else:
            raise ValueError(f"len data is {len(data)}")
        x = mixes.to(device)
        y = batch.to(device)

        if normalize:
            x, y = normalize_batch(x, y)
        if safe_mode:
            try:
                with torch.cuda.amp.autocast(enabled=use_amp):
                    loss = forward_step(
                        x,
                        y,
                        active_stem_ids,
                        get_internal_loss,
                        model,
                        multi_loss,
                        device_ids,
                    )
            except Exception as e:
                print(f"Error: {e}")
                continue
        else:
            with torch.cuda.amp.autocast(enabled=use_amp):
                loss = forward_step(
                    x,
                    y,
                    active_stem_ids,
                    get_internal_loss,
                    model,
                    multi_loss,
                    device_ids,
                )
        loss /= gradient_accumulation_steps
        scaler.scale(loss).backward()

        if ((i + 1) % gradient_accumulation_steps == 0) or (i == len(train_loader) - 1):
            scaler.unscale_(optimizer)

            if config.training.grad_clip:
                nn.utils.clip_grad_norm_(model.parameters(), config.training.grad_clip)

            scaler.step(optimizer)
            scaler.update()

            if ema_model is not None:
                if ddp:
                    ema_model.update_parameters(model.module)
                else:
                    ema_model.update_parameters(model)

            if scheduler.name in ["linear_scheduler"]:
                scheduler.step()
            optimizer.zero_grad(set_to_none=True)
        if ddp:
            with torch.no_grad():
                loss_copy = loss.detach().clone()
                dist.all_reduce(loss_copy, op=dist.ReduceOp.SUM)
                loss_copy /= dist.get_world_size()
            if dist.get_rank() == 0:
                li = loss_copy.item() * gradient_accumulation_steps
                all_losses[f"epoch_{epoch}"].append(li)
                loss_val += li
                total += 1
                pbar.set_postfix(
                    {"loss": 100 * li, "avg_loss": 100 * loss_val / (i + 1)}
                )
                sys.stdout.flush()
                wandb.log(
                    {"loss": 100 * li, "avg_loss": 100 * loss_val / (i + 1), "i": i}
                )
        else:
            li = loss.item() * gradient_accumulation_steps
            all_losses[f"epoch_{epoch}"].append(li)
            loss_val += li
            total += 1
            pbar.set_postfix({"loss": 100 * li, "avg_loss": 100 * loss_val / (i + 1)})
            wandb.log({"loss": 100 * li, "avg_loss": 100 * loss_val / (i + 1), "i": i})
            loss.detach()

    if should_print:
        print(f"Training loss: {loss_val / total}")
        wandb.log(
            {
                "train_loss": loss_val / total,
                "epoch": epoch,
                "learning_rate": optimizer.param_groups[0]["lr"],
            }
        )


def compute_epoch_metrics(
    model: torch.nn.Module,
    args: argparse.Namespace,
    config: ConfigDict,
    device: torch.device,
    device_ids: List[int],
    best_metric: float,
    epoch: int,
    scheduler: torch.optim.lr_scheduler,
    optimizer,
    all_time_all_metrics,
    all_losses,
    world_size=None,
    metrics_avg=None,
    all_metrics=None,
) -> float:
    """
    Compute and log the metrics for the current epoch, and save model weights if the metric improves.

    Args:
        all_losses:
        all_metrics:
        metrics_avg:
        world_size:
        model: The model to evaluate.
        args: Command-line arguments containing configuration paths and other settings.
        config: Configuration dictionary containing training settings.
        device: The device (CPU or GPU) used for evaluation.
        device_ids: List of GPU device IDs when using multiple GPUs.
        best_metric: The best metric value seen so far.
        epoch: The current epoch number.
        scheduler: The learning rate scheduler to adjust the learning rate.
        optimizer:
        all_time_all_metrics:
    Returns:
        The updated best_metric.
    """

    ddp = True if world_size else False
    should_print = not dist.is_initialized() or dist.get_rank() == 0
    if not ddp:
        if torch.cuda.is_available() and len(device_ids) > 1:
            metrics_avg, all_metrics = valid_multi_gpu(
                model, args, config, args.device_ids, verbose=False
            )
        else:
            metrics_avg, all_metrics = valid(model, args, config, device, verbose=False)
        all_time_all_metrics[f"epoch_{epoch}"] = all_metrics

    metric_avg = metrics_avg[args.metric_for_scheduler]
    if metric_avg > best_metric:
        if args.each_metrics_in_name:
            stem_parts = []
            for stem_name, values in all_metrics[args.metric_for_scheduler].items():
                stem_values = np.array(values)
                mean_val = stem_values.mean()
                std_val = stem_values.std()
                stem_parts.append(
                    f"{stem_name}_{args.metric_for_scheduler}_{mean_val:.4f}_std_{std_val:.4f}"
                )
            stem_info = "__".join(stem_parts)
            store_path = f"{args.results_path}/model_{args.model_type}_ep_{epoch}_{stem_info}.ckpt"
        else:
            store_path = f"{args.results_path}/model_{args.model_type}_ep_{epoch}_{args.metric_for_scheduler}_{metric_avg:.4f}.ckpt"
        if should_print:
            print(f"Store weights: {store_path}")
            save_weights(
                store_path=store_path,
                model=model,
                device_ids=device_ids,
                optimizer=optimizer,
                epoch=epoch,
                all_time_all_metrics=all_time_all_metrics,
                all_losses=all_losses,
                best_metric=best_metric,
                args=args,
                scheduler=scheduler,
            )
        best_metric = metric_avg

    if args.save_weights_every_epoch:
        metric_string = ""
        for m in metrics_avg:
            metric_string += "_{}_{:.4f}".format(m, metrics_avg[m])
        store_path = f"{args.results_path}/model_{args.model_type}_ep_{epoch}{metric_string}.ckpt"
        save_weights(
            store_path=store_path,
            model=model,
            device_ids=device_ids,
            optimizer=optimizer,
            epoch=epoch,
            all_time_all_metrics=all_time_all_metrics,
            all_losses=all_losses,
            best_metric=best_metric,
            args=args,
            scheduler=scheduler,
        )

    if scheduler.name in ["ReduceLROnPlateau"]:
        scheduler.step(metric_avg)

    if should_print:
        wandb.log({"metric_main": metric_avg, "best_metric": best_metric})
        for metric_name in metrics_avg:
            wandb.log({f"metric_{metric_name}": metrics_avg[metric_name]})

    return best_metric


def train_model(
    args: Union[argparse.Namespace, None], rank=None, world_size=None
) -> None:
    """
    Trains the model based on the provided arguments, including data preparation, optimizer setup,
    and loss calculation. The model is trained for multiple epochs with logging via wandb.

    Args:
        world_size:
        rank:
        args: Command-line arguments containing configuration paths, hyperparameters, and other settings.

    Returns:
        None
    """

    from torch.cuda.amp.grad_scaler import GradScaler
    from utils.dataset import prepare_data
    from utils.losses import choice_loss
    from utils.model_utils import (
        get_lora,
        get_optimizer,
        load_start_checkpoint,
        log_model_info,
    )

    args = parse_args_train(args)
    ddp = True if world_size else False
    if ddp:
        initialize_environment_ddp(rank, world_size, args.seed, args.results_path)
    else:
        initialize_environment(args.seed, args.results_path)
    model, config = get_model_from_config(args.model_type, args.config_path)
    if "model_type" in config.training:
        args.model_type = config.training.model_type
    use_amp = getattr(config.training, "use_amp", True)
    device_ids = args.device_ids
    if ddp:
        batch_size = config.training.batch_size
    else:
        batch_size = config.training.batch_size * len(device_ids)

    if not dist.is_initialized() or dist.get_rank() == 0:
        wandb_init(args, config, batch_size)

    train_loader = prepare_data(config, args, batch_size)

    if args.start_check_point:
        checkpoint = torch.load(
            args.start_check_point, weights_only=False, map_location="cpu"
        )
        load_start_checkpoint(args, model, checkpoint, type_="train")
    model = get_lora(args, config, model)

    if args.freeze_layers is not None:
        freeze_layers = []
        train_layers = []
        for name, param in model.named_parameters():
            if any(name.startswith(prefix) for prefix in args.freeze_layers):
                freeze_layers.append(name)
                print("Freezing layer:", name)
                param.requires_grad = False
            else:
                train_layers.append(name)
        print("Trainable layers: {}".format(len(train_layers)))
        print("Frozen layers: {}".format(len(freeze_layers)))

    if ddp:
        device = torch.device(f"cuda:{rank}")
        model.to(device)
        model = torch.nn.parallel.DistributedDataParallel(
            model, device_ids=[rank], find_unused_parameters=True
        )
        model_module = model.module
    else:
        device, model = initialize_model_and_device(model, args.device_ids)
        # If model is DataParallel, get underlying module
        model_module = model.module if hasattr(model, "module") else model

    ema_model = None
    if hasattr(config.training, "ema_momentum") and config.training.ema_momentum > 0:
        from torch.optim.swa_utils import AveragedModel, get_ema_multi_avg_fn

        if not dist.is_initialized() or dist.get_rank() == 0:
            print(f"Initializing EMA with decay: {config.training.ema_momentum}")
        ema_model = AveragedModel(
            model_module,
            multi_avg_fn=get_ema_multi_avg_fn(config.training.ema_momentum),
        )

    if args.pre_valid:
        model_to_valid = ema_model if ema_model is not None else model
        if ddp:
            valid_multi_gpu(
                model_to_valid, args, config, args.device_ids, verbose=False
            )
        else:
            if torch.cuda.is_available() and len(args.device_ids) > 1:
                valid_multi_gpu(
                    model_to_valid, args, config, args.device_ids, verbose=True
                )
            else:
                valid(model_to_valid, args, config, device, verbose=True)

    gradient_accumulation_steps = int(
        getattr(config.training, "gradient_accumulation_steps", 1)
    )

    # load optimizer
    optimizer = get_optimizer(config, model)
    scheduler = get_scheduler(config, optimizer)

    if (
        args.start_check_point
        and "optimizer_state_dict" in checkpoint
        and args.load_optimizer
    ):
        optimizer.load_state_dict(checkpoint["optimizer_state_dict"])

    if (
        args.start_check_point
        and "scheduler_state_dict" in checkpoint
        and args.load_scheduler
    ):
        scheduler.load_state_dict(checkpoint["scheduler_state_dict"])

    # load num epoch
    if args.start_check_point and "epoch" in checkpoint and args.load_epoch:
        start_epoch = checkpoint["epoch"] + 1
    else:
        start_epoch = 0

    if args.start_check_point and "best_metric" in checkpoint and args.load_best_metric:
        best_metric = checkpoint["best_metric"]
    else:
        best_metric = float("-inf")

    if args.start_check_point and "all_metrics" in checkpoint and args.load_all_metrics:
        all_time_all_metrics = checkpoint["all_metrics"]
    else:
        all_time_all_metrics = {}

    if args.start_check_point and "all_losses" in checkpoint and args.load_all_losses:
        all_losses = checkpoint["all_losses"]
    else:
        all_losses = {}

    multi_loss = choice_loss(args, config)
    scaler = GradScaler()

    if args.set_per_process_memory_fraction:
        torch.cuda.set_per_process_memory_fraction(1.0)
    torch.cuda.empty_cache()

    safe_mode = args.safe_mode

    should_print = not dist.is_initialized() or dist.get_rank() == 0

    if should_print:
        if world_size:
            batch_size = config.training.batch_size
            ef_batch_size = batch_size * gradient_accumulation_steps * world_size
            num_gpu = world_size
        else:
            device_ids = args.device_ids
            batch_size = config.training.batch_size * len(device_ids)
            ef_batch_size = batch_size * gradient_accumulation_steps
            num_gpu = len(device_ids)

        print(
            f"Instruments: {config.training.instruments}\n"
            f"Metrics for training: {args.metrics}. Metric for scheduler: {args.metric_for_scheduler}\n"
            f"Patience: {config.training.patience} "
            f"Reduce factor: {config.training.reduce_factor}\n"
            f"Batch size: {batch_size} "
            f"Grad accum steps: {gradient_accumulation_steps} "
            f"Num gpus: {num_gpu} "
            f"Effective batch size: {ef_batch_size}\n"
            f"Dataset type: {args.dataset_type}\n"
            f"Optimizer: {config.training.optimizer}"
        )

        print(f"Train for: {config.training.num_epochs} epochs")
        log_model_info(model, args.results_path)

    for epoch in range(start_epoch, config.training.num_epochs):
        if ddp:
            train_loader.sampler.set_epoch(epoch)

        train_one_epoch(
            model,
            config,
            args,
            optimizer,
            device,
            device_ids,
            epoch,
            use_amp,
            scaler,
            scheduler,
            gradient_accumulation_steps,
            train_loader,
            multi_loss,
            all_losses,
            world_size,
            ema_model=ema_model,
            safe_mode=safe_mode,
        )

        model_to_valid = ema_model if ema_model is not None else model

        if should_print:
            save_last_weights(
                args,
                model,
                device_ids,
                optimizer,
                epoch,
                all_time_all_metrics,
                best_metric,
                scheduler,
            )
        if ddp:
            metrics_avg, all_metrics = valid_multi_gpu(
                model, args, config, args.device_ids, verbose=False
            )
            if rank == 0:
                all_time_all_metrics[f"epoch_{epoch}"] = all_metrics
                best_metric = compute_epoch_metrics(
                    model=model,
                    args=args,
                    config=config,
                    device=device,
                    device_ids=device_ids,
                    best_metric=best_metric,
                    epoch=epoch,
                    scheduler=scheduler,
                    optimizer=optimizer,
                    all_time_all_metrics=all_time_all_metrics,
                    all_losses=all_losses,
                    world_size=world_size,
                    metrics_avg=metrics_avg,
                    all_metrics=all_metrics,
                )
        else:
            best_metric = compute_epoch_metrics(
                model=model,
                args=args,
                config=config,
                device=device,
                device_ids=device_ids,
                best_metric=best_metric,
                epoch=epoch,
                scheduler=scheduler,
                optimizer=optimizer,
                all_time_all_metrics=all_time_all_metrics,
                all_losses=all_losses,
            )


if __name__ == "__main__":
    train_model(None)