# Copyright 2021 Huawei Technologies Co., Ltd
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# 2021.06.15-Changed for main script for TNT model
#            Huawei Technologies Co., Ltd.
#!/usr/bin/env python
""" ImageNet Training Script
This is intended to be a lean and easily modifiable ImageNet training script that reproduces ImageNet
training results with some of the latest networks and training techniques. It favours canonical PyTorch
and standard Python style over trying to be able to 'do it all.' That said, it offers quite a few speed
and training result improvements over the usual PyTorch example scripts. Repurpose as you see fit.
This script was started from an early version of the PyTorch ImageNet example
(https://github.com/pytorch/examples/tree/master/imagenet)
NVIDIA CUDA specific speedups adopted from NVIDIA Apex examples
(https://github.com/NVIDIA/apex/tree/master/examples/imagenet)
Hacked together by / Copyright 2020 Ross Wightman (https://github.com/rwightman)
"""
import warnings

from torch.nn import parameter
warnings.filterwarnings('ignore')
import argparse
import time
import yaml
import os
import logging
import sys
from collections import OrderedDict, defaultdict
from contextlib import suppress
from datetime import datetime
from typing import Optional

import torch
import torch.nn as nn
import torchvision.utils
from torch.optim.optimizer import Optimizer
from torch.nn.parallel import DistributedDataParallel as NativeDDP

from timm.data import ImageDataset, resolve_data_config, Mixup, FastCollateMixup, AugMixDataset #, create_loader
from timm.models import create_model, resume_checkpoint, convert_splitbn_model
from timm.utils import *
from timm.loss import LabelSmoothingCrossEntropy, SoftTargetCrossEntropy, JsdCrossEntropy
from timm.optim import create_optimizer
from timm.scheduler import create_scheduler
from timm.utils import ApexScaler, NativeScaler

from data.myloader import create_loader
from npu_fused_adamw import NpuFusedAdamW
import tnt

has_apex = True

import apex
from apex import amp
from apex.parallel import DistributedDataParallel as ApexDDP
from apex.parallel import convert_syncbn_model

torch.backends.cudnn.benchmark = True
_logger = logging.getLogger('train')

# The first arg parser parses out only the --config argument, this argument is used to
# load a yaml file containing key-values that override the defaults for the main parser below
config_parser = parser = argparse.ArgumentParser(description='Training Config', add_help=False)
parser.add_argument('-c', '--config', default='', type=str, metavar='FILE',
                    help='YAML config file specifying default arguments')


parser = argparse.ArgumentParser(description='PyTorch ImageNet Training')

# Dataset / Model parameters
parser.add_argument('data', metavar='DIR',
                    help='path to dataset')
parser.add_argument('--model', default='resnet101', type=str, metavar='MODEL',
                    help='Name of model to train (default: "countception"')
parser.add_argument('--pretrained', action='store_true', default=False,
                    help='Start with pretrained version of specified network (if avail)')
parser.add_argument('--initial-checkpoint', default='', type=str, metavar='PATH',
                    help='Initialize model from this checkpoint (default: none)')
parser.add_argument('--resume', default='', type=str, metavar='PATH',
                    help='Resume full model and optimizer state from checkpoint (default: none)')
parser.add_argument('--no-resume-opt', action='store_true', default=False,
                    help='prevent resume of optimizer state when resuming model')
parser.add_argument('--num-classes', type=int, default=1000, metavar='N',
                    help='number of label classes (default: 1000)')
parser.add_argument('--gp', default=None, type=str, metavar='POOL',
                    help='Global pool type, one of (fast, avg, max, avgmax, avgmaxc). Model default if None.')
parser.add_argument('--img-size', type=int, default=None, metavar='N',
                    help='Image patch size (default: None => model default)')
parser.add_argument('--crop-pct', default=None, type=float,
                    metavar='N', help='Input image center crop percent (for validation only)')
parser.add_argument('--mean', type=float, nargs='+', default=None, metavar='MEAN',
                    help='Override mean pixel value of dataset')
parser.add_argument('--std', type=float, nargs='+', default=None, metavar='STD',
                    help='Override std deviation of of dataset')
parser.add_argument('--interpolation', default='', type=str, metavar='NAME',
                    help='Image resize interpolation type (overrides model)')
parser.add_argument('-b', '--batch-size', type=int, default=32, metavar='N',
                    help='input batch size for training (default: 32)')
parser.add_argument('-vb', '--validation-batch-size-multiplier', type=int, default=1, metavar='N',
                    help='ratio of validation batch size to training batch size (default: 1)')

# Optimizer parameters
parser.add_argument('--opt', default='sgd', type=str, metavar='OPTIMIZER',
                    help='Optimizer (default: "sgd"')
parser.add_argument('--opt-eps', default=None, type=float, metavar='EPSILON',
                    help='Optimizer Epsilon (default: None, use opt default)')
parser.add_argument('--opt-betas', default=None, type=float, nargs='+', metavar='BETA',
                    help='Optimizer Betas (default: None, use opt default)')
parser.add_argument('--momentum', type=float, default=0.9, metavar='M',
                    help='Optimizer momentum (default: 0.9)')
parser.add_argument('--weight-decay', type=float, default=0.0001,
                    help='weight decay (default: 0.0001)')
parser.add_argument('--clip-grad', type=float, default=None, metavar='NORM',
                    help='Clip gradient norm (default: None, no clipping)')



# Learning rate schedule parameters
parser.add_argument('--sched', default='step', type=str, metavar='SCHEDULER',
                    help='LR scheduler (default: "step"')
parser.add_argument('--lr', type=float, default=0.01, metavar='LR',
                    help='learning rate (default: 0.01)')
parser.add_argument('--lr-noise', type=float, nargs='+', default=None, metavar='pct, pct',
                    help='learning rate noise on/off epoch percentages')
parser.add_argument('--lr-noise-pct', type=float, default=0.67, metavar='PERCENT',
                    help='learning rate noise limit percent (default: 0.67)')
parser.add_argument('--lr-noise-std', type=float, default=1.0, metavar='STDDEV',
                    help='learning rate noise std-dev (default: 1.0)')
parser.add_argument('--lr-cycle-mul', type=float, default=1.0, metavar='MULT',
                    help='learning rate cycle len multiplier (default: 1.0)')
parser.add_argument('--lr-cycle-limit', type=int, default=1, metavar='N',
                    help='learning rate cycle limit')
parser.add_argument('--warmup-lr', type=float, default=0.0001, metavar='LR',
                    help='warmup learning rate (default: 0.0001)')
parser.add_argument('--min-lr', type=float, default=1e-5, metavar='LR',
                    help='lower lr bound for cyclic schedulers that hit 0 (1e-5)')
parser.add_argument('--epochs', type=int, default=200, metavar='N',
                    help='number of epochs to train (default: 2)')
parser.add_argument('--performance_step', type=int, default=None, metavar='N',
                    help='number of step to train for performance training')
parser.add_argument('--start-epoch', default=None, type=int, metavar='N',
                    help='manual epoch number (useful on restarts)')
parser.add_argument('--decay-epochs', type=float, default=30, metavar='N',
                    help='epoch interval to decay LR')
parser.add_argument('--warmup-epochs', type=int, default=3, metavar='N',
                    help='epochs to warmup LR, if scheduler supports')
parser.add_argument('--cooldown-epochs', type=int, default=10, metavar='N',
                    help='epochs to cooldown LR at min_lr, after cyclic schedule ends')
parser.add_argument('--patience-epochs', type=int, default=10, metavar='N',
                    help='patience epochs for Plateau LR scheduler (default: 10')
parser.add_argument('--decay-rate', '--dr', type=float, default=0.1, metavar='RATE',
                    help='LR decay rate (default: 0.1)')

# Augmentation & regularization parameters
parser.add_argument('--no-aug', action='store_true', default=False,
                    help='Disable all training augmentation, override other train aug args')
parser.add_argument('--repeated-aug', action='store_true')
parser.add_argument('--scale', type=float, nargs='+', default=[0.08, 1.0], metavar='PCT',
                    help='Random resize scale (default: 0.08 1.0)')
parser.add_argument('--ratio', type=float, nargs='+', default=[3./4., 4./3.], metavar='RATIO',
                    help='Random resize aspect ratio (default: 0.75 1.33)')
parser.add_argument('--hflip', type=float, default=0.5,
                    help='Horizontal flip training aug probability')
parser.add_argument('--vflip', type=float, default=0.,
                    help='Vertical flip training aug probability')
parser.add_argument('--color-jitter', type=float, default=0.4, metavar='PCT',
                    help='Color jitter factor (default: 0.4)')
parser.add_argument('--aa', type=str, default=None, metavar='NAME',
                    help='Use AutoAugment policy. "v0" or "original". (default: None)'),
parser.add_argument('--aug-splits', type=int, default=0,
                    help='Number of augmentation splits (default: 0, valid: 0 or >=2)')
parser.add_argument('--jsd', action='store_true', default=False,
                    help='Enable Jensen-Shannon Divergence + CE loss. Use with `--aug-splits`.')
parser.add_argument('--reprob', type=float, default=0., metavar='PCT',
                    help='Random erase prob (default: 0.)')
parser.add_argument('--remode', type=str, default='const',
                    help='Random erase mode (default: "const")')
parser.add_argument('--recount', type=int, default=1,
                    help='Random erase count (default: 1)')
parser.add_argument('--resplit', action='store_true', default=False,
                    help='Do not random erase first (clean) augmentation split')
parser.add_argument('--mixup', type=float, default=0.0,
                    help='mixup alpha, mixup enabled if > 0. (default: 0.)')
parser.add_argument('--cutmix', type=float, default=0.0,
                    help='cutmix alpha, cutmix enabled if > 0. (default: 0.)')
parser.add_argument('--cutmix-minmax', type=float, nargs='+', default=None,
                    help='cutmix min/max ratio, overrides alpha and enables cutmix if set (default: None)')
parser.add_argument('--mixup-prob', type=float, default=1.0,
                    help='Probability of performing mixup or cutmix when either/both is enabled')
parser.add_argument('--mixup-switch-prob', type=float, default=0.5,
                    help='Probability of switching to cutmix when both mixup and cutmix enabled')
parser.add_argument('--mixup-mode', type=str, default='batch',
                    help='How to apply mixup/cutmix params. Per "batch", "pair", or "elem"')
parser.add_argument('--mixup-off-epoch', default=0, type=int, metavar='N',
                    help='Turn off mixup after this epoch, disabled if 0 (default: 0)')
parser.add_argument('--smoothing', type=float, default=0.1,
                    help='Label smoothing (default: 0.1)')
parser.add_argument('--train-interpolation', type=str, default='random',
                    help='Training interpolation (random, bilinear, bicubic default: "random")')
parser.add_argument('--drop', type=float, default=0.0, metavar='PCT',
                    help='Dropout rate (default: 0.)')
parser.add_argument('--drop-connect', type=float, default=None, metavar='PCT',
                    help='Drop connect rate, DEPRECATED, use drop-path (default: None)')
parser.add_argument('--drop-path', type=float, default=None, metavar='PCT',
                    help='Drop path rate (default: None)')
parser.add_argument('--drop-block', type=float, default=None, metavar='PCT',
                    help='Drop block rate (default: None)')

# Batch norm parameters (only works with gen_efficientnet based models currently)
parser.add_argument('--bn-tf', action='store_true', default=False,
                    help='Use Tensorflow BatchNorm defaults for models that support it (default: False)')
parser.add_argument('--bn-momentum', type=float, default=None,
                    help='BatchNorm momentum override (if not None)')
parser.add_argument('--bn-eps', type=float, default=None,
                    help='BatchNorm epsilon override (if not None)')
parser.add_argument('--sync-bn', action='store_true',
                    help='Enable NVIDIA Apex or Torch synchronized BatchNorm.')
parser.add_argument('--dist-bn', type=str, default='',
                    help='Distribute BatchNorm stats between nodes after each epoch ("broadcast", "reduce", or "")')
parser.add_argument('--split-bn', action='store_true',
                    help='Enable separate BN layers per augmentation split.')

# Model Exponential Moving Average
parser.add_argument('--model-ema', action='store_true', default=False,
                    help='Enable tracking moving average of model weights')
parser.add_argument('--model-ema-force-cpu', action='store_true', default=False,
                    help='Force ema to be tracked on CPU, rank=0 node only. Disables EMA validation.')
parser.add_argument('--model-ema-decay', type=float, default=0.9998,
                    help='decay factor for model weights moving average (default: 0.9998)')

# Misc
parser.add_argument('--seed', type=int, default=42, metavar='S',
                    help='random seed (default: 42)')
parser.add_argument('--log-interval', type=int, default=50, metavar='N',
                    help='how many batches to wait before logging training status')
parser.add_argument('--recovery-interval', type=int, default=0, metavar='N',
                    help='how many batches to wait before writing recovery checkpoint')
parser.add_argument('-j', '--workers', type=int, default=4, metavar='N',
                    help='how many training processes to use (default: 1)')
# parser.add_argument('--num-npu', type=int, default=1,
#                     help='Number of NPUS to use')
parser.add_argument('--save-images', action='store_true', default=False,
                    help='save images of input bathes every log interval for debugging')
parser.add_argument('--amp', action='store_true', default=False,
                    help='use NVIDIA Apex AMP or Native AMP for mixed precision training')
parser.add_argument('--apex-amp', action='store_true', default=False,
                    help='Use NVIDIA Apex AMP mixed precision')
parser.add_argument('--native-amp', action='store_true', default=False,
                    help='Use Native Torch AMP mixed precision')
parser.add_argument('--channels-last', action='store_true', default=False,
                    help='Use channels_last memory layout')
parser.add_argument('--pin-mem', action='store_true', default=False,
                    help='Pin CPU memory in DataLoader for more efficient (sometimes) transfer to NPU.')
parser.add_argument('--no-prefetcher', action='store_true', default=False,
                    help='disable fast prefetcher')
parser.add_argument('--output', default='', type=str, metavar='PATH',
                    help='path to output folder (default: none, current dir)')
parser.add_argument('--eval-metric', default='top1', type=str, metavar='EVAL_METRIC',
                    help='Best metric (default: "top1"')
parser.add_argument('--tta', type=int, default=0, metavar='N',
                    help='Test/inference time augmentation (oversampling) factor. 0=None (default: 0)')
parser.add_argument("--local_rank", default=0, type=int)
parser.add_argument('--use-multi-epochs-loader', action='store_true', default=False,
                    help='use the multi-epochs-loader to save time at the beginning of every epoch')
# for huawei cloud
parser.add_argument("--init_method", default='env://', type=str)
parser.add_argument("--train_url", type=str)
# newly added
parser.add_argument('--attn_ratio', type=float, default=1.,
                    help='attention ratio')
parser.add_argument("--pretrain_path", default=None, type=str)
parser.add_argument("--evaluate", action='store_true', default=False,
                    help='whether evaluate the model')

parser.add_argument("--addr", default="127.0.0.1", type=str)
parser.add_argument("--performance", action='store_true', default=False,
                    help='whether get the model performance')

def optimizer_kwargs(cfg):
    """ cfg/argparse to kwargs helper
    Convert optimizer args in argparse args or cfg like object to keyword args for updated create fn.
    """
    kwargs = dict(
        opt=cfg.opt,
        lr=cfg.lr,
        weight_decay=cfg.weight_decay,
        momentum=cfg.momentum)
    if getattr(cfg, 'opt_eps', None) is not None:
        kwargs['eps'] = cfg.opt_eps
    if getattr(cfg, 'opt_betas', None) is not None:
        kwargs['betas'] = cfg.opt_betas
    if getattr(cfg, 'opt_args', None) is not None:
        kwargs.update(cfg.opt_args)
    return kwargs

def add_weight_decay(model, weight_decay=1e-5, skip_list=()):
    """Add weight decay
    """
    decay = []
    no_decay = []
    for name, param in model.named_parameters():
        if not param.requires_grad:
            continue  # frozen weights
        if len(param.shape) == 1 or name.endswith(".bias") or name in skip_list:
            no_decay.append(param)
        else:
            decay.append(param)
    return [
        {'params': no_decay, 'weight_decay': 0.},
        {'params': decay, 'weight_decay': weight_decay}]

class Lookahead(Optimizer):
    def __init__(self, base_optimizer, alpha=0.5, k=6):
        # NOTE super().__init__() not called on purpose
        if not 0.0 <= alpha <= 1.0:
            raise ValueError(f'Invalid slow update rate: {alpha}')
        if not 1 <= k:
            raise ValueError(f'Invalid lookahead steps: {k}')
        defaults = dict(lookahead_alpha=alpha, lookahead_k=k, lookahead_step=0)
        self._base_optimizer = base_optimizer
        self.param_groups = base_optimizer.param_groups
        self.defaults = base_optimizer.defaults
        self.defaults.update(defaults)
        self.state = defaultdict(dict)
        # manually add our defaults to the param groups
        for name, default in defaults.items():
            for group in self._base_optimizer.param_groups:
                group.setdefault(name, default)

    @torch.no_grad()
    def update_slow(self, group):
        for fast_p in group["params"]:
            if fast_p.grad is None:
                continue
            param_state = self._base_optimizer.state[fast_p]
            if 'lookahead_slow_buff' not in param_state:
                param_state['lookahead_slow_buff'] = torch.empty_like(fast_p)
                param_state['lookahead_slow_buff'].copy_(fast_p)
            slow = param_state['lookahead_slow_buff']
            slow.add_(fast_p - slow, alpha=group['lookahead_alpha'])
            fast_p.copy_(slow)

    def sync_lookahead(self):
        for group in self._base_optimizer.param_groups:
            self.update_slow(group)

    @torch.no_grad()
    def step(self, closure=None):
        loss = self._base_optimizer.step(closure)
        for group in self._base_optimizer.param_groups:
            group['lookahead_step'] += 1
            if group['lookahead_step'] % group['lookahead_k'] == 0:
                self.update_slow(group)
        return loss

    def state_dict(self):
        return self._base_optimizer.state_dict()

    def load_state_dict(self, state_dict):
        self._base_optimizer.load_state_dict(state_dict)
        self.param_groups = self._base_optimizer.param_groups

def create_optimizer_v2(
        model_or_params,
        opt: str = 'sgd',
        lr: Optional[float] = None,
        weight_decay: float = 0.,
        momentum: float = 0.9,
        filter_bias_and_bn: bool = True,
        **kwargs):
    """ Create an optimizer.
    Only support npu fused AdamW and npu fused SGD
    """
    if isinstance(model_or_params, nn.Module):
        # a model was passed in, extract parameters and add weight decays to appropriate layers
        if weight_decay and filter_bias_and_bn:
            skip = {}
            if hasattr(model_or_params, 'no_weight_decay'):
                skip = model_or_params.no_weight_decay()
            parameters = add_weight_decay(model_or_params, weight_decay, skip)
            weight_decay = 0.
        else:
            parameters = model_or_params.parameters()
    else:
        # iterable of parameters or param groups passed in
        parameters = model_or_params

    opt_lower = opt.lower()
    opt_split = opt_lower.split('_')
    opt_lower = opt_split[-1]
    # if 'fused' in opt_lower:
    #     assert has_apex and torch.cuda.is_available(), 'APEX and CUDA required for fused optimizers'

    opt_args = dict(weight_decay=weight_decay, **kwargs)
    if lr is not None:
        opt_args.setdefault('lr', lr)

    # basic SGD & related
    if opt_lower == 'sgd' or opt_lower == 'nesterov':
        # NOTE 'sgd' refers to SGD + nesterov momentum for legacy / backwards compat reasons
        opt_args.pop('eps', None)
        # optimizer = optim.SGD(parameters, momentum=momentum, nesterov=True, **opt_args)
        optimizer = apex.optimizers.NpuFusedSGD(parameters, momentum=momentum, nesterov=True, **opt_args)
    elif opt_lower == 'momentum':
        opt_args.pop('eps', None)
        # optimizer = optim.SGD(parameters, momentum=momentum, nesterov=False, **opt_args)
        optimizer = apex.optimizers.NpuFusedSGD(parameters, momentum=momentum, nesterov=False, **opt_args)
    elif opt_lower == 'adamw':
    #     optimizer = optim.AdamW(parameters, **opt_args)
        optimizer = NpuFusedAdamW(parameters, **opt_args)
    else:
        print(opt_lower, flush=True)
        assert False and "Invalid optimizer"
        raise ValueError

    if len(opt_split) > 1:
        if opt_split[0] == 'lookahead':
            optimizer = Lookahead(optimizer)

    return optimizer


def _parse_args():
    # Do we have a config file to parse?
    args_config, remaining = config_parser.parse_known_args()
    if args_config.config:
        with open(args_config.config, 'r') as f:
            cfg = yaml.safe_load(f)
            parser.set_defaults(**cfg)

    # The main arg parser parses the rest of the args, the usual
    # defaults will have been overridden if config file specified.
    args = parser.parse_args(remaining)

    # Cache the args as a text string to save them in the output dir later
    args_text = yaml.safe_dump(args.__dict__, default_flow_style=False)
    return args, args_text


def main():
    setup_default_logging()
    args, args_text = _parse_args()
    os.environ['MASTER_ADDR'] = args.addr # ip or '127.0.0.1'
    os.environ['MASTER_PORT'] = '29688' # Any available port

    args.prefetcher = not args.no_prefetcher
    args.distributed = (args.workers > 1)

    torch.npu.set_device(args.local_rank)
    args.world_size = 1
    args.rank = args.local_rank  # global rank
    if args.distributed:
        torch.npu.set_device(args.local_rank)
        args.world_size = args.workers
        torch.distributed.init_process_group(backend='hccl', rank=args.rank, world_size=args.world_size)
        args.world_size = torch.distributed.get_world_size()
    assert args.rank >= 0

    if args.distributed:
        _logger.info('Training in distributed mode with multiple NPUs. No.%d, total %d.'
                     % (args.rank, args.world_size))
    else:
        _logger.info('Training with a single process on 1 NPU.')

    torch.manual_seed(args.seed + args.rank)

    model = create_model(
        args.model,
        pretrained=args.pretrained,
        num_classes=args.num_classes,
        drop_rate=args.drop,
        drop_connect_rate=args.drop_connect,  # DEPRECATED, use drop_path
        drop_path_rate=args.drop_path,
        drop_block_rate=args.drop_block,
        global_pool=args.gp,
        bn_tf=args.bn_tf,
        bn_momentum=args.bn_momentum,
        bn_eps=args.bn_eps,
        checkpoint_path=args.initial_checkpoint)
        
    ################## pretrain ############
    if args.pretrain_path is not None:
        print('Loading:', args.pretrain_path)
        state_dict = torch.load(args.pretrain_path, map_location="cpu")
        if 'state_dict_ema' in state_dict:
            state_dict = state_dict['state_dict_ema']
        elif 'state_dict' in state_dict:
            state_dict = state_dict['state_dict']
        model.load_state_dict(state_dict, strict=True)
        print('Pretrain weights loaded.')
    ################### flops #################
    print(model)
    if hasattr(model, 'default_cfg'):
        default_cfg = model.default_cfg
        input_size = [1] + list(default_cfg['input_size'])
    else:
        input_size = [1, 3, 224, 224]
    input = torch.randn(input_size)#.cuda()
    
    # from torchprofile import profile_macs
    # macs = profile_macs(model, input)
    # print('model flops:', macs, 'input_size:', input_size)
    ##########################################
    
    if args.local_rank == 0 or args.workers == 1:
        _logger.info('Model %s created, param count: %d' %
                     (args.model, sum([m.numel() for m in model.parameters()])))

    data_config = resolve_data_config(vars(args), model=model, verbose=(args.local_rank == 0 or args.workers==1))

    num_aug_splits = 0
    if args.aug_splits > 0:
        assert args.aug_splits > 1, 'A split of 1 makes no sense'
        num_aug_splits = args.aug_splits

    if args.split_bn:
        assert num_aug_splits > 1 or args.resplit
        model = convert_splitbn_model(model, max(num_aug_splits, 2))

    use_amp = None
    args.apex_amp = True
    use_amp = 'apex'
    
    model.npu()
    if args.channels_last:
        model = model.to(memory_format=torch.channels_last)

    optimizer = create_optimizer_v2(
        model,
        **optimizer_kwargs(cfg=args),
        filter_bias_and_bn=True,
    )
    # optimizer = create_optimizer(args, model)

    amp_autocast = suppress  # do nothing
    loss_scaler = None
    model, optimizer = amp.initialize(model, optimizer, opt_level='O1', loss_scale=128.0, combine_grad=True)
    loss_scaler = ApexScaler()
    if args.local_rank == 0:
        _logger.info('Using NVIDIA APEX AMP. Training in mixed precision.')

    # optionally resume from a checkpoint
    resume_epoch = None
    if args.resume:
        resume_epoch = resume_checkpoint(
            model, args.resume,
            optimizer=None if args.no_resume_opt else optimizer,
            loss_scaler=None if args.no_resume_opt else loss_scaler,
            log_info=args.local_rank == 0)

    model_ema = None
    if args.model_ema:
        # TODO: currently ema model cannot be correctly updated on npu
        model_ema = ModelEma(
            model,
            decay=args.model_ema_decay,
            device='cpu' if args.model_ema_force_cpu else '',
            resume=args.resume)

    if args.distributed:
        if args.sync_bn:
            assert not args.split_bn
            try:
                if has_apex and use_amp != 'native':
                    # Apex SyncBN preferred unless native amp is activated
                    model = convert_syncbn_model(model)
                else:
                    model = torch.nn.SyncBatchNorm.convert_sync_batchnorm(model)
                if args.local_rank == 0:
                    _logger.info(
                        'Converted model to use Synchronized BatchNorm. WARNING: You may have issues if using '
                        'zero initialized BN layers (enabled by default for ResNets) while sync-bn enabled.')
            except Exception as e:
                _logger.error('Failed to enable Synchronized BatchNorm. Install Apex or Torch >= 1.1')

        model = NativeDDP(model, device_ids=[args.local_rank], broadcast_buffers=False)  # can use device str in Torch >= 1.1


    lr_scheduler, num_epochs = create_scheduler(args, optimizer)
    if args.performance:
        num_epochs = 1
    start_epoch = 0
    if args.start_epoch is not None:
        # a specified start_epoch will always override the resume epoch
        start_epoch = args.start_epoch
    elif resume_epoch is not None:
        start_epoch = resume_epoch
    if lr_scheduler is not None and start_epoch > 0:
        lr_scheduler.step(start_epoch)

    if args.local_rank == 0:
        _logger.info('Scheduled epochs: {}'.format(num_epochs))

    train_dir = os.path.join(args.data, 'train')
    if not os.path.exists(train_dir):
        _logger.error('Training folder does not exist at: {}'.format(train_dir))
        exit(1)
    dataset_train = ImageDataset(train_dir)

    collate_fn = None
    mixup_fn = None
    mixup_active = args.mixup > 0 or args.cutmix > 0. or args.cutmix_minmax is not None
    if mixup_active:
        mixup_args = dict(
            mixup_alpha=args.mixup, cutmix_alpha=args.cutmix, cutmix_minmax=args.cutmix_minmax,
            prob=args.mixup_prob, switch_prob=args.mixup_switch_prob, mode=args.mixup_mode,
            label_smoothing=args.smoothing, num_classes=args.num_classes)
        if args.prefetcher:
            assert not num_aug_splits  # collate conflict (need to support deinterleaving in collate mixup)
            collate_fn = FastCollateMixup(**mixup_args)
        else:
            mixup_fn = Mixup(**mixup_args)

    if num_aug_splits > 1:
        dataset_train = AugMixDataset(dataset_train, num_splits=num_aug_splits)

    train_interpolation = args.train_interpolation
    if args.no_aug or not train_interpolation:
        train_interpolation = data_config['interpolation']
    loader_train = create_loader(
        dataset_train,
        input_size=data_config['input_size'],
        batch_size=args.batch_size,
        is_training=True,
        use_prefetcher=args.prefetcher,
        no_aug=args.no_aug,
        re_prob=args.reprob,
        # re_mode=args.remode,
        re_count=args.recount,
        re_split=args.resplit,
        scale=args.scale,
        ratio=args.ratio,
        hflip=args.hflip,
        vflip=args.vflip,
        color_jitter=args.color_jitter,
        auto_augment=args.aa,
        num_aug_splits=num_aug_splits,
        interpolation=train_interpolation,
        mean=data_config['mean'],
        std=data_config['std'],
        num_workers=args.workers,
        distributed=args.distributed,
        collate_fn=collate_fn,
        pin_memory=args.pin_mem,
        use_multi_epochs_loader=args.use_multi_epochs_loader,
        repeated_aug=args.repeated_aug
    )

    eval_dir = os.path.join(args.data, 'val')
    if not os.path.isdir(eval_dir):
        eval_dir = os.path.join(args.data, 'validation')
        if not os.path.isdir(eval_dir):
            _logger.error('Validation folder does not exist at: {}'.format(eval_dir))
            exit(1)
    dataset_eval = ImageDataset(eval_dir)

    loader_eval = create_loader(
        dataset_eval,
        input_size=data_config['input_size'],
        batch_size=args.validation_batch_size_multiplier * args.batch_size,
        is_training=False,
        use_prefetcher=args.prefetcher,
        interpolation=data_config['interpolation'],
        mean=data_config['mean'],
        std=data_config['std'],
        num_workers=args.workers,
        distributed=args.distributed,
        crop_pct=data_config['crop_pct'],
        pin_memory=args.pin_mem,
    )

    if args.jsd:
        assert num_aug_splits > 1  # JSD only valid with aug splits set
        train_loss_fn = JsdCrossEntropy(num_splits=num_aug_splits, smoothing=args.smoothing).npu()
    elif mixup_active:
        # smoothing is handled with mixup target transform
        train_loss_fn = SoftTargetCrossEntropy().npu()
    elif args.smoothing:
        train_loss_fn = LabelSmoothingCrossEntropy(smoothing=args.smoothing).npu()
    else:
        train_loss_fn = nn.CrossEntropyLoss().npu()
    validate_loss_fn = nn.CrossEntropyLoss().npu()
    
    if args.evaluate:
        eval_metrics = validate(model, loader_eval, validate_loss_fn, args, amp_autocast=amp_autocast)
        print(eval_metrics)
        return
    
    eval_metric = args.eval_metric
    best_metric = None
    best_epoch = None
    saver = None
    output_dir = ''
    if args.local_rank == 0:
        output_base = args.output if args.output else './output'
        exp_name = '-'.join([
            datetime.now().strftime("%Y%m%d-%H%M%S"),
            args.model,
            str(data_config['input_size'][-1])
        ])
        output_dir = get_outdir(output_base, 'train', exp_name)
        decreasing = True if eval_metric == 'loss' else False
        saver = CheckpointSaver(
            model=model, optimizer=optimizer, args=args, model_ema=model_ema, amp_scaler=loss_scaler,
            checkpoint_dir=output_dir, recovery_dir=output_dir, decreasing=decreasing)
        with open(os.path.join(output_dir, 'args.yaml'), 'w') as f:
            f.write(args_text)

    try:
        for epoch in range(start_epoch, num_epochs):
            if args.distributed:
                loader_train.sampler.set_epoch(epoch)

            train_metrics = train_epoch(
                epoch, model, loader_train, optimizer, train_loss_fn, args,
                lr_scheduler=lr_scheduler, saver=saver, output_dir=output_dir,
                amp_autocast=amp_autocast, loss_scaler=loss_scaler, model_ema=model_ema, mixup_fn=mixup_fn)

            if args.distributed and args.dist_bn in ('broadcast', 'reduce'):
                if args.local_rank == 0 or args.workers == 1:
                    _logger.info("Distributing BatchNorm running means and vars")
                distribute_bn(model, args.world_size, args.dist_bn == 'reduce')

            eval_metrics = validate(model, loader_eval, validate_loss_fn, args, amp_autocast=amp_autocast)

            if model_ema is not None and not args.model_ema_force_cpu:
                if args.distributed and args.dist_bn in ('broadcast', 'reduce'):
                    distribute_bn(model_ema, args.world_size, args.dist_bn == 'reduce')
                ema_eval_metrics = validate(
                    model_ema.ema, loader_eval, validate_loss_fn, args, amp_autocast=amp_autocast, log_suffix=' (EMA)')
                eval_metrics = ema_eval_metrics

            if lr_scheduler is not None:
                # step LR for next epoch
                lr_scheduler.step(epoch + 1, eval_metrics[eval_metric])

            update_summary(
                epoch, train_metrics, eval_metrics, os.path.join(output_dir, 'summary.csv'),
                write_header=best_metric is None)

            if saver is not None:
                # save proper checkpoint with eval metric
                save_metric = eval_metrics[eval_metric]
                best_metric, best_epoch = saver.save_checkpoint(epoch, metric=save_metric)

    except KeyboardInterrupt:
        pass
    if best_metric is not None:
        _logger.info('*** Best metric: {0} (epoch {1})'.format(best_metric, best_epoch))


def train_epoch(
        epoch, model, loader, optimizer, loss_fn, args,
        lr_scheduler=None, saver=None, output_dir='', amp_autocast=suppress,
        loss_scaler=None, model_ema=None, mixup_fn=None):

    if args.mixup_off_epoch and epoch >= args.mixup_off_epoch:
        if args.prefetcher and loader.mixup_enabled:
            loader.mixup_enabled = False
        elif mixup_fn is not None:
            mixup_fn.mixup_enabled = False

    second_order = hasattr(optimizer, 'is_second_order') and optimizer.is_second_order
    batch_time_m = AverageMeter()
    data_time_m = AverageMeter()
    losses_m = AverageMeter()

    model.train()

    end = time.time()
    last_idx = len(loader) - 1
    num_updates = epoch * len(loader)
    epoch_fps = []
    prof_list = []
    for batch_idx, (input, target) in enumerate(loader):
        if args.performance_step and batch_idx > args.performance_step:
            break
        last_batch = batch_idx == last_idx
        data_time_m.update(time.time() - end)
        if not args.prefetcher:
            # input, target = input.cuda(), target.cuda()
            input, target = input.npu(), target.npu()
            if mixup_fn is not None:
                input, target = mixup_fn(input, target)
        if args.channels_last:
            input = input.contiguous(memory_format=torch.channels_last)
        
        if batch_idx in prof_list:
            with torch.autograd.profiler.profile(use_npu=True) as prof:
                output = model(input)
                loss = loss_fn(output, target)
                if not args.distributed:
                    losses_m.update(loss.item(), input.size(0))

                optimizer.zero_grad()
                if loss_scaler is not None:
                    loss_scaler(
                        loss, optimizer, clip_grad=args.clip_grad, parameters=model.parameters(), create_graph=second_order)
                else:
                    loss.backward(create_graph=second_order)
                    if args.clip_grad is not None:
                        torch.nn.utils.clip_grad_norm_(model.parameters(), args.clip_grad)
                    optimizer.step()
            print(prof.key_averages().table(sort_by="self_cpu_time_total"))
            prof.export_chrome_trace("output_{}.prof".format(str(batch_idx).zfill(4)))
            sys.exit()

        else:
            with amp_autocast():
                output = model(input)
                loss = loss_fn(output, target)

            if not args.distributed:
                losses_m.update(loss.item(), input.size(0))

            optimizer.zero_grad()
            if loss_scaler is not None:
                loss_scaler(
                    loss, optimizer, clip_grad=args.clip_grad, parameters=model.parameters(), create_graph=second_order)
            else:
                loss.backward(create_graph=second_order)
                if args.clip_grad is not None:
                    torch.nn.utils.clip_grad_norm_(model.parameters(), args.clip_grad)
                optimizer.step()

        torch.npu.synchronize()
        if model_ema is not None:
            model_ema.update(model)
        num_updates += 1

        batch_time_m.update(time.time() - end)
        if last_batch or batch_idx % args.log_interval == 0:
            lrl = [param_group['lr'] for param_group in optimizer.param_groups]
            lr = sum(lrl) / len(lrl)

            if args.distributed:
                reduced_loss = reduce_tensor(loss.data, args.world_size)
                losses_m.update(reduced_loss.item(), input.size(0))

            if args.local_rank == 0 or args.workers == 1:
                _logger.info(
                    'Train: {} [{:>4d}/{} ({:>3.0f}%)]  '
                    'Loss: {loss.val:>9.6f} ({loss.avg:>6.4f})  '
                    'Time: {batch_time.val:.3f}s, {rate:>7.2f}/s  '
                    '({batch_time.avg:.3f}s, {rate_avg:>7.2f}/s)  '
                    'LR: {lr:.3e}  '
                    'Data: {data_time.val:.3f} ({data_time.avg:.3f})'.format(
                        epoch,
                        batch_idx, len(loader),
                        100. * batch_idx / last_idx,
                        loss=losses_m,
                        batch_time=batch_time_m,
                        rate=input.size(0) * args.world_size / batch_time_m.val,
                        rate_avg=input.size(0) * args.world_size / batch_time_m.avg,
                        lr=lr,
                        data_time=data_time_m))

                if args.save_images and output_dir:
                    torchvision.utils.save_image(
                        input,
                        os.path.join(output_dir, 'train-batch-%d.jpg' % batch_idx),
                        padding=0,
                        normalize=True)

        if saver is not None and args.recovery_interval and (
                last_batch or (batch_idx + 1) % args.recovery_interval == 0):
            saver.save_recovery(epoch, batch_idx=batch_idx)

        if lr_scheduler is not None:
            lr_scheduler.step_update(num_updates=num_updates, metric=losses_m.avg)

        epoch_fps.append(input.shape[0] * args.workers / (time.time() - end))
        end = time.time()
        # end for

    if hasattr(optimizer, 'sync_lookahead'):
        optimizer.sync_lookahead()

    print('Epoch {}: {} fps'.format(epoch, sum(epoch_fps[5:]) / len(epoch_fps[5:])))
    return OrderedDict([('loss', losses_m.avg)])


def validate(model, loader, loss_fn, args, amp_autocast=suppress, log_suffix=''):
    batch_time_m = AverageMeter()
    losses_m = AverageMeter()
    top1_m = AverageMeter()
    top5_m = AverageMeter()

    model.eval()

    end = time.time()
    last_idx = len(loader) - 1
    with torch.no_grad():
        for batch_idx, (input, target) in enumerate(loader):
            last_batch = batch_idx == last_idx
            if not args.prefetcher:
                # input = input.cuda()
                input = input.npu()
                # target = target.cuda()
                target = target.npu()
            if args.channels_last:
                input = input.contiguous(memory_format=torch.channels_last)

            with amp_autocast():
                output = model(input)
            if isinstance(output, (tuple, list)):
                output = output[0]

            # augmentation reduction
            reduce_factor = args.tta
            if reduce_factor > 1:
                output = output.unfold(0, reduce_factor, reduce_factor).mean(dim=2)
                target = target[0:target.size(0):reduce_factor]

            loss = loss_fn(output, target)
            acc1, acc5 = accuracy(output, target, topk=(1, 5))

            if args.distributed:
                reduced_loss = reduce_tensor(loss.data, args.world_size)
                acc1 = reduce_tensor(acc1, args.world_size)
                acc5 = reduce_tensor(acc5, args.world_size)
            else:
                reduced_loss = loss.data

            # torch.cuda.synchronize()
            torch.npu.synchronize()

            losses_m.update(reduced_loss.item(), input.size(0))
            top1_m.update(acc1.item(), output.size(0))
            top5_m.update(acc5.item(), output.size(0))

            batch_time_m.update(time.time() - end)
            end = time.time()
            if (args.local_rank == 0 or args.workers == 1) and (last_batch or batch_idx % args.log_interval == 0):
                log_name = 'Test' + log_suffix
                _logger.info(
                    '{0}: [{1:>4d}/{2}]  '
                    'Time: {batch_time.val:.3f} ({batch_time.avg:.3f})  '
                    'Loss: {loss.val:>7.4f} ({loss.avg:>6.4f})  '
                    'Acc@1: {top1.val:>7.4f} ({top1.avg:>7.4f})  '
                    'Acc@5: {top5.val:>7.4f} ({top5.avg:>7.4f})'.format(
                        log_name, batch_idx, last_idx, batch_time=batch_time_m,
                        loss=losses_m, top1=top1_m, top5=top5_m))

    metrics = OrderedDict([('loss', losses_m.avg), ('top1', top1_m.avg), ('top5', top5_m.avg)])

    return metrics


if __name__ == '__main__':
    main()