def main(): setup_default_logging() args, args_text = _parse_args() args.prefetcher = not args.no_prefetcher args.distributed = False if 'WORLD_SIZE' in os.environ: args.distributed = int(os.environ['WORLD_SIZE']) > 1 if args.distributed and args.num_gpu > 1: _logger.warning( 'Using more than one GPU per process in distributed mode is not allowed.Setting num_gpu to 1.') args.num_gpu = 1 args.device = 'cuda:0' args.world_size = 1 args.rank = 0 # global rank if args.distributed: args.num_gpu = 1 args.device = 'cuda:%d' % args.local_rank torch.cuda.set_device(args.local_rank) torch.distributed.init_process_group(backend='nccl', init_method='env://') args.world_size = torch.distributed.get_world_size() args.rank = torch.distributed.get_rank() assert args.rank >= 0 if args.distributed: _logger.info('Training in distributed mode with multiple processes, 1 GPU per process. Process %d, total %d.' % (args.rank, args.world_size)) else: _logger.info('Training with a single process on %d GPUs.' % args.num_gpu) 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) if args.local_rank == 0: _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) 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 if args.amp: # for backwards compat, `--amp` arg tries apex before native amp if has_apex: args.apex_amp = True elif has_native_amp: args.native_amp = True if args.apex_amp and has_apex: use_amp = 'apex' elif args.native_amp and has_native_amp: use_amp = 'native' elif args.apex_amp or args.native_amp: _logger.warning("Neither APEX or native Torch AMP is available, using float32. " "Install NVIDA apex or upgrade to PyTorch 1.6") if args.num_gpu > 1: if use_amp == 'apex': _logger.warning( 'Apex AMP does not work well with nn.DataParallel, disabling. Use DDP or Torch AMP.') use_amp = None model = nn.DataParallel(model, device_ids=list(range(args.num_gpu))).cuda() assert not args.channels_last, "Channels last not supported with DP, use DDP." else: model.cuda() if args.channels_last: model = model.to(memory_format=torch.channels_last) optimizer = create_optimizer(args, model) amp_autocast = suppress # do nothing loss_scaler = None if use_amp == 'apex': model, optimizer = amp.initialize(model, optimizer, opt_level='O1') loss_scaler = ApexScaler() if args.local_rank == 0: _logger.info('Using NVIDIA APEX AMP. Training in mixed precision.') elif use_amp == 'native': amp_autocast = torch.cuda.amp.autocast loss_scaler = NativeScaler() if args.local_rank == 0: _logger.info('Using native Torch AMP. Training in mixed precision.') else: if args.local_rank == 0: _logger.info('AMP not enabled. Training in float32.') # 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: # Important to create EMA model after cuda(), DP wrapper, and AMP but before SyncBN and DDP wrapper 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') if has_apex and use_amp != 'native': # Apex DDP preferred unless native amp is activated if args.local_rank == 0: _logger.info("Using NVIDIA APEX DistributedDataParallel.") model = ApexDDP(model, delay_allreduce=True) else: if args.local_rank == 0: _logger.info("Using native Torch DistributedDataParallel.") model = NativeDDP(model, device_ids=[args.local_rank]) # can use device str in Torch >= 1.1 # NOTE: EMA model does not need to be wrapped by DDP lr_scheduler, num_epochs = create_scheduler(args, optimizer) 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 = Dataset(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 ) 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 = Dataset(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).cuda() elif mixup_active: # smoothing is handled with mixup target transform train_loss_fn = SoftTargetCrossEntropy().cuda() elif args.smoothing: train_loss_fn = LabelSmoothingCrossEntropy(smoothing=args.smoothing).cuda() else: train_loss_fn = nn.CrossEntropyLoss().cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() 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: _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) # if saver.cmp(best_metric, save_metric): # _logger.info(f"Metric is no longer improving [BEST: {best_metric}, CURRENT: {save_metric}]" # f"\nFinishing training process") # if epoch > 15: # break except KeyboardInterrupt: pass if best_metric is not None: message = '*** Best metric: <{0:.2f}>, epoch: <{1}>, path: <{2}> ***'\ .format(best_metric, best_epoch, output_dir) _logger.info(message) print(message)
def main(): setup_default_logging() args, args_text = _parse_args() args.prefetcher = not args.no_prefetcher args.distributed = False if 'WORLD_SIZE' in os.environ: args.distributed = int(os.environ['WORLD_SIZE']) > 1 if args.distributed and args.num_gpu > 1: logging.warning( 'Using more than one GPU per process in distributed mode is not allowed. Setting num_gpu to 1.' ) args.num_gpu = 1 args.device = 'cuda:0' args.world_size = 1 args.rank = 0 # global rank if args.distributed: args.num_gpu = 1 args.device = 'cuda:%d' % args.local_rank torch.cuda.set_device(args.local_rank) torch.distributed.init_process_group(backend='nccl', init_method='env://') args.world_size = torch.distributed.get_world_size() args.rank = torch.distributed.get_rank() assert args.rank >= 0 if args.distributed: logging.info( 'Training in distributed mode with multiple processes, 1 GPU per process. Process %d, total %d.' % (args.rank, args.world_size)) else: logging.info('Training with a single process on %d GPUs.' % args.num_gpu) 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, global_pool=args.gp, bn_tf=args.bn_tf, bn_momentum=args.bn_momentum, bn_eps=args.bn_eps, checkpoint_path=args.initial_checkpoint) if args.local_rank == 0: logging.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) 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)) if args.num_gpu > 1: if args.amp: logging.warning( 'AMP does not work well with nn.DataParallel, disabling. Use distributed mode for multi-GPU AMP.' ) args.amp = False model = nn.DataParallel(model, device_ids=list(range(args.num_gpu))).cuda() else: model.cuda() optimizer = create_optimizer(args, model) use_amp = False if has_apex and args.amp: model, optimizer = amp.initialize(model, optimizer, opt_level='O1') use_amp = True if args.local_rank == 0: logging.info('NVIDIA APEX {}. AMP {}.'.format( 'installed' if has_apex else 'not installed', 'on' if use_amp else 'off')) # optionally resume from a checkpoint resume_state = {} resume_epoch = None if args.resume: resume_state, resume_epoch = resume_checkpoint(model, args.resume) if resume_state and not args.no_resume_opt: if 'optimizer' in resume_state: if args.local_rank == 0: logging.info('Restoring Optimizer state from checkpoint') optimizer.load_state_dict(resume_state['optimizer']) if use_amp and 'amp' in resume_state and 'load_state_dict' in amp.__dict__: if args.local_rank == 0: logging.info('Restoring NVIDIA AMP state from checkpoint') amp.load_state_dict(resume_state['amp']) del resume_state model_ema = None if args.model_ema: # Important to create EMA model after cuda(), DP wrapper, and AMP but before SyncBN and DDP wrapper 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: model = convert_syncbn_model(model) else: model = torch.nn.SyncBatchNorm.convert_sync_batchnorm( model) if args.local_rank == 0: logging.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: logging.error( 'Failed to enable Synchronized BatchNorm. Install Apex or Torch >= 1.1' ) if has_apex: model = DDP(model, delay_allreduce=True) else: if args.local_rank == 0: logging.info( "Using torch DistributedDataParallel. Install NVIDIA Apex for Apex DDP." ) model = DDP(model, device_ids=[args.local_rank ]) # can use device str in Torch >= 1.1 # NOTE: EMA model does not need to be wrapped by DDP lr_scheduler, num_epochs = create_scheduler(args, optimizer) 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: logging.info('Scheduled epochs: {}'.format(num_epochs)) train_dir = os.path.join(args.data, 'train') if not os.path.exists(train_dir): logging.error( 'Training folder does not exist at: {}'.format(train_dir)) exit(1) dataset_train = Dataset(train_dir) collate_fn = None if args.prefetcher and args.mixup > 0: assert not num_aug_splits # collate conflict (need to support deinterleaving in collate mixup) collate_fn = FastCollateMixup(args.mixup, args.smoothing, args.num_classes) if num_aug_splits > 1: dataset_train = AugMixDataset(dataset_train, num_splits=num_aug_splits) loader_train = create_loader( dataset_train, input_size=data_config['input_size'], batch_size=args.batch_size, is_training=True, use_prefetcher=args.prefetcher, re_prob=args.reprob, re_mode=args.remode, re_count=args.recount, re_split=args.resplit, color_jitter=args.color_jitter, auto_augment=args.aa, num_aug_splits=num_aug_splits, interpolation=args.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, ) 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): logging.error( 'Validation folder does not exist at: {}'.format(eval_dir)) exit(1) dataset_eval = Dataset(eval_dir) loader_eval = create_loader( dataset_eval, input_size=data_config['input_size'], batch_size=4 * 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).cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() elif args.mixup > 0.: # smoothing is handled with mixup label transform train_loss_fn = SoftTargetCrossEntropy().cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() elif args.smoothing: train_loss_fn = LabelSmoothingCrossEntropy( smoothing=args.smoothing).cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() else: train_loss_fn = nn.CrossEntropyLoss().cuda() validate_loss_fn = train_loss_fn 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(checkpoint_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, use_amp=use_amp, model_ema=model_ema) if args.distributed and args.dist_bn in ('broadcast', 'reduce'): if args.local_rank == 0: logging.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) 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, 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( model, optimizer, args, epoch=epoch, model_ema=model_ema, metric=save_metric, use_amp=use_amp) except KeyboardInterrupt: pass if best_metric is not None: logging.info('*** Best metric: {0} (epoch {1})'.format( best_metric, best_epoch))
def main(): setup_default_logging() args, args_text = _parse_args() if args.log_wandb: if has_wandb: wandb.init(project=args.experiment, config=args) else: _logger.warning( "You've requested to log metrics to wandb but package not found. " "Metrics not being logged to wandb, try `pip install wandb`") args.prefetcher = not args.no_prefetcher args.distributed = False if 'WORLD_SIZE' in os.environ: args.distributed = int(os.environ['WORLD_SIZE']) > 1 args.device = 'cuda:0' args.world_size = 1 args.rank = 0 # global rank if args.distributed: args.device = 'cuda:%d' % args.local_rank torch.cuda.set_device(args.local_rank) torch.distributed.init_process_group(backend='nccl', init_method='env://') args.world_size = torch.distributed.get_world_size() args.rank = torch.distributed.get_rank() _logger.info( 'Training in distributed mode with multiple processes, 1 GPU per process. Process %d, total %d.' % (args.rank, args.world_size)) else: _logger.info('Training with a single process on 1 GPUs.') assert args.rank >= 0 # resolve AMP arguments based on PyTorch / Apex availability use_amp = None if args.amp: # `--amp` chooses native amp before apex (APEX ver not actively maintained) if has_native_amp: args.native_amp = True elif has_apex: args.apex_amp = True if args.apex_amp and has_apex: use_amp = 'apex' elif args.native_amp and has_native_amp: use_amp = 'native' elif args.apex_amp or args.native_amp: _logger.warning( "Neither APEX or native Torch AMP is available, using float32. " "Install NVIDA apex or upgrade to PyTorch 1.6") random_seed(args.seed, args.rank) model_KD = None if args.kd_model_path is not None: model_KD = build_kd_model(args) 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_momentum=args.bn_momentum, bn_eps=args.bn_eps, scriptable=args.torchscript, checkpoint_path=args.initial_checkpoint) if args.num_classes is None: assert hasattr( model, 'num_classes' ), 'Model must have `num_classes` attr if not set on cmd line/config.' args.num_classes = model.num_classes # FIXME handle model default vs config num_classes more elegantly if args.local_rank == 0: _logger.info( f'Model {safe_model_name(args.model)} created, param count:{sum([m.numel() for m in model.parameters()])}' ) data_config = resolve_data_config(vars(args), model=model, verbose=args.local_rank == 0) # setup augmentation batch splits for contrastive loss or split bn 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 # enable split bn (separate bn stats per batch-portion) if args.split_bn: assert num_aug_splits > 1 or args.resplit model = convert_splitbn_model(model, max(num_aug_splits, 2)) # move model to GPU, enable channels last layout if set model.cuda() if args.channels_last: model = model.to(memory_format=torch.channels_last) # setup synchronized BatchNorm for distributed training if args.distributed and args.sync_bn: assert not args.split_bn if has_apex and use_amp == 'apex': # 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.' ) if args.torchscript: assert not use_amp == 'apex', 'Cannot use APEX AMP with torchscripted model' assert not args.sync_bn, 'Cannot use SyncBatchNorm with torchscripted model' model = torch.jit.script(model) optimizer = create_optimizer_v2(model, **optimizer_kwargs(cfg=args)) # setup automatic mixed-precision (AMP) loss scaling and op casting amp_autocast = suppress # do nothing loss_scaler = None if use_amp == 'apex': model, optimizer = amp.initialize(model, optimizer, opt_level='O1') loss_scaler = ApexScaler() if args.local_rank == 0: _logger.info('Using NVIDIA APEX AMP. Training in mixed precision.') elif use_amp == 'native': amp_autocast = torch.cuda.amp.autocast loss_scaler = NativeScaler() if args.local_rank == 0: _logger.info( 'Using native Torch AMP. Training in mixed precision.') else: if args.local_rank == 0: _logger.info('AMP not enabled. Training in float32.') # 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) # setup exponential moving average of model weights, SWA could be used here too model_ema = None if args.model_ema: # Important to create EMA model after cuda(), DP wrapper, and AMP but before SyncBN and DDP wrapper model_ema = ModelEmaV2( model, decay=args.model_ema_decay, device='cpu' if args.model_ema_force_cpu else None) if args.resume: load_checkpoint(model_ema.module, args.resume, use_ema=True) # setup distributed training if args.distributed: if has_apex and use_amp == 'apex': # Apex DDP preferred unless native amp is activated if args.local_rank == 0: _logger.info("Using NVIDIA APEX DistributedDataParallel.") model = ApexDDP(model, delay_allreduce=True) else: if args.local_rank == 0: _logger.info("Using native Torch DistributedDataParallel.") model = NativeDDP(model, device_ids=[args.local_rank], broadcast_buffers=not args.no_ddp_bb) # NOTE: EMA model does not need to be wrapped by DDP # setup learning rate schedule and starting epoch lr_scheduler, num_epochs = create_scheduler(args, optimizer) 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)) # create the train and eval datasets dataset_train = create_dataset(args.dataset, root=args.data_dir, split=args.train_split, is_training=True, class_map=args.class_map, download=args.dataset_download, batch_size=args.batch_size, repeats=args.epoch_repeats) dataset_eval = create_dataset(args.dataset, root=args.data_dir, split=args.val_split, is_training=False, class_map=args.class_map, download=args.dataset_download, batch_size=args.batch_size) # setup mixup / cutmix 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) # wrap dataset in AugMix helper if num_aug_splits > 1: dataset_train = AugMixDataset(dataset_train, num_splits=num_aug_splits) # create data loaders w/ augmentation pipeiine 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_repeats=args.aug_repeats, 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, worker_seeding=args.worker_seeding, ) loader_eval = create_loader( dataset_eval, input_size=data_config['input_size'], batch_size=args.validation_batch_size or 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, ) # setup loss function if args.jsd_loss: assert num_aug_splits > 1 # JSD only valid with aug splits set train_loss_fn = JsdCrossEntropy(num_splits=num_aug_splits, smoothing=args.smoothing) elif mixup_active: # smoothing is handled with mixup target transform which outputs sparse, soft targets if args.bce_loss: train_loss_fn = BinaryCrossEntropy( target_threshold=args.bce_target_thresh) else: train_loss_fn = SoftTargetCrossEntropy() elif args.smoothing: if args.bce_loss: train_loss_fn = BinaryCrossEntropy( smoothing=args.smoothing, target_threshold=args.bce_target_thresh) else: train_loss_fn = LabelSmoothingCrossEntropy( smoothing=args.smoothing) else: train_loss_fn = nn.CrossEntropyLoss() train_loss_fn = train_loss_fn.cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() # setup checkpoint saver and eval metric tracking eval_metric = args.eval_metric best_metric = None best_epoch = None saver = None output_dir = None if args.rank == 0: if args.experiment: exp_name = args.experiment else: exp_name = '-'.join([ datetime.now().strftime("%Y%m%d-%H%M%S"), safe_model_name(args.model), str(data_config['input_size'][-1]) ]) output_dir = get_outdir( args.output if args.output else './output/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, max_history=args.checkpoint_hist) 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 and hasattr(loader_train.sampler, 'set_epoch'): loader_train.sampler.set_epoch(epoch) train_metrics = train_one_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, model_KD=model_KD) if args.distributed and args.dist_bn in ('broadcast', 'reduce'): if args.local_rank == 0: _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.module, 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]) if output_dir is not None: update_summary(epoch, train_metrics, eval_metrics, os.path.join(output_dir, 'summary.csv'), write_header=best_metric is None, log_wandb=args.log_wandb and has_wandb) 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 main(): setup_default_logging() args, args_text = _parse_args() args.prefetcher = not args.no_prefetcher args.distributed = False if 'WORLD_SIZE' in os.environ: args.distributed = int(os.environ['WORLD_SIZE']) > 1 args.device = 'cuda:0' args.world_size = 1 args.rank = 0 # global rank if args.distributed: args.device = 'cuda:%d' % args.local_rank torch.cuda.set_device(args.local_rank) torch.distributed.init_process_group(backend='nccl', init_method='env://') args.world_size = torch.distributed.get_world_size() args.rank = torch.distributed.get_rank() _logger.info('Training in distributed mode with multiple processes, 1 GPU per process. Process %d, total %d.' % (args.rank, args.world_size)) else: _logger.info('Training with a single process on 1 GPUs.') assert args.rank >= 0 # resolve AMP arguments based on PyTorch / Apex availability use_amp = None if args.amp: # for backwards compat, `--amp` arg tries apex before native amp if has_apex: args.apex_amp = True elif has_native_amp: args.native_amp = True if args.apex_amp and has_apex: use_amp = 'apex' elif args.native_amp and has_native_amp: use_amp = 'native' elif args.apex_amp or args.native_amp: _logger.warning("Neither APEX or native Torch AMP is available, using float32. " "Install NVIDA apex or upgrade to PyTorch 1.6") torch.manual_seed(args.seed + args.rank) #################################################################################### # Start - SparseML optional load weights from SparseZoo #################################################################################### if args.initial_checkpoint == "zoo": # Load checkpoint from base weights associated with given SparseZoo recipe if args.sparseml_recipe.startswith("zoo:"): args.initial_checkpoint = Zoo.download_recipe_base_framework_files( args.sparseml_recipe, extensions=[".pth.tar", ".pth"] )[0] else: raise ValueError( "Attempting to load weights from SparseZoo recipe, but not given a " "SparseZoo recipe stub. When initial-checkpoint is set to 'zoo'. " "sparseml-recipe must start with 'zoo:' and be a SparseZoo model " f"stub. sparseml-recipe was set to {args.sparseml_recipe}" ) elif args.initial_checkpoint.startswith("zoo:"): # Load weights from a SparseZoo model stub zoo_model = Zoo.load_model_from_stub(args.initial_checkpoint) args.initial_checkpoint = zoo_model.download_framework_files(extensions=[".pth"]) #################################################################################### # End - SparseML optional load weights from SparseZoo #################################################################################### 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, scriptable=args.torchscript, checkpoint_path=args.initial_checkpoint) if args.num_classes is None: assert hasattr(model, 'num_classes'), 'Model must have `num_classes` attr if not set on cmd line/config.' args.num_classes = model.num_classes # FIXME handle model default vs config num_classes more elegantly if args.local_rank == 0: _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) # setup augmentation batch splits for contrastive loss or split bn 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 # enable split bn (separate bn stats per batch-portion) if args.split_bn: assert num_aug_splits > 1 or args.resplit model = convert_splitbn_model(model, max(num_aug_splits, 2)) # move model to GPU, enable channels last layout if set model.cuda() if args.channels_last: model = model.to(memory_format=torch.channels_last) # setup synchronized BatchNorm for distributed training if args.distributed and args.sync_bn: assert not args.split_bn 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.') if args.torchscript: assert not use_amp == 'apex', 'Cannot use APEX AMP with torchscripted model' assert not args.sync_bn, 'Cannot use SyncBatchNorm with torchscripted model' model = torch.jit.script(model) optimizer = create_optimizer(args, model) # setup automatic mixed-precision (AMP) loss scaling and op casting amp_autocast = suppress # do nothing loss_scaler = None if use_amp == 'apex': model, optimizer = amp.initialize(model, optimizer, opt_level='O1') loss_scaler = ApexScaler() if args.local_rank == 0: _logger.info('Using NVIDIA APEX AMP. Training in mixed precision.') elif use_amp == 'native': amp_autocast = torch.cuda.amp.autocast loss_scaler = NativeScaler() if args.local_rank == 0: _logger.info('Using native Torch AMP. Training in mixed precision.') else: if args.local_rank == 0: _logger.info('AMP not enabled. Training in float32.') # 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) # setup exponential moving average of model weights, SWA could be used here too model_ema = None if args.model_ema: # Important to create EMA model after cuda(), DP wrapper, and AMP but before SyncBN and DDP wrapper model_ema = ModelEmaV2( model, decay=args.model_ema_decay, device='cpu' if args.model_ema_force_cpu else None) if args.resume: load_checkpoint(model_ema.module, args.resume, use_ema=True) # setup distributed training if args.distributed: if has_apex and use_amp != 'native': # Apex DDP preferred unless native amp is activated if args.local_rank == 0: _logger.info("Using NVIDIA APEX DistributedDataParallel.") model = ApexDDP(model, delay_allreduce=True) else: if args.local_rank == 0: _logger.info("Using native Torch DistributedDataParallel.") model = NativeDDP(model, device_ids=[args.local_rank]) # can use device str in Torch >= 1.1 # NOTE: EMA model does not need to be wrapped by DDP # setup learning rate schedule and starting epoch lr_scheduler, num_epochs = create_scheduler(args, optimizer) 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) # create the train and eval datasets dataset_train = create_dataset( args.dataset, root=args.data_dir, split=args.train_split, is_training=True, batch_size=args.batch_size) dataset_eval = create_dataset( args.dataset, root=args.data_dir, split=args.val_split, is_training=False, batch_size=args.batch_size) # setup mixup / cutmix 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) # wrap dataset in AugMix helper if num_aug_splits > 1: dataset_train = AugMixDataset(dataset_train, num_splits=num_aug_splits) # create data loaders w/ augmentation pipeiine 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 ) 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, ) # setup loss function 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).cuda() elif mixup_active: # smoothing is handled with mixup target transform train_loss_fn = SoftTargetCrossEntropy().cuda() elif args.smoothing: train_loss_fn = LabelSmoothingCrossEntropy(smoothing=args.smoothing).cuda() else: train_loss_fn = nn.CrossEntropyLoss().cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() # setup checkpoint saver and eval metric tracking 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, max_history=args.checkpoint_hist) with open(os.path.join(output_dir, 'args.yaml'), 'w') as f: f.write(args_text) #################################################################################### # Start SparseML Integration #################################################################################### sparseml_loggers = ( [PythonLogger(), TensorBoardLogger(log_path=output_dir)] if output_dir else None ) manager = ScheduledModifierManager.from_yaml(args.sparseml_recipe) optimizer = ScheduledOptimizer( optimizer, model, manager, steps_per_epoch=len(loader_train), loggers=sparseml_loggers ) # override lr scheduler if recipe makes any LR updates if any("LearningRate" in str(modifier) for modifier in manager.modifiers): _logger.info("Disabling timm LR scheduler, managing LR using SparseML recipe") lr_scheduler = None if manager.max_epochs: _logger.info( f"Overriding max_epochs to {manager.max_epochs} from SparseML recipe" ) num_epochs = manager.max_epochs or num_epochs #################################################################################### # End SparseML Integration #################################################################################### if args.local_rank == 0: _logger.info('Scheduled epochs: {}'.format(num_epochs)) try: for epoch in range(start_epoch, num_epochs): if args.distributed and hasattr(loader_train.sampler, 'set_epoch'): loader_train.sampler.set_epoch(epoch) train_metrics = train_one_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: _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.module, 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) ################################################################################# # Start SparseML ONNX Export ################################################################################# if output_dir: _logger.info( f"training complete, exporting ONNX to {output_dir}/model.onnx" ) exporter = ModuleExporter(model, output_dir) exporter.export_onnx(torch.randn((1, *data_config["input_size"]))) ################################################################################# # End SparseML ONNX Export ################################################################################# except KeyboardInterrupt: pass if best_metric is not None: _logger.info('*** Best metric: {0} (epoch {1})'.format(best_metric, best_epoch))
def main(): import os args, args_text = _parse_args() 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 = 'train' if args.gate_train: exp_name += '-dynamic' if args.slim_train: exp_name += '-slimmable' exp_name += '-{}'.format(args.model) exp_info = '-'.join( [datetime.now().strftime("%Y%m%d-%H%M%S"), args.model]) output_dir = get_outdir(output_base, exp_name, exp_info) decreasing = True if eval_metric == 'loss' else False saver = CheckpointSaver(checkpoint_dir=output_dir, decreasing=decreasing) with open(os.path.join(output_dir, 'args.yaml'), 'w') as f: f.write(args_text) setup_default_logging(outdir=output_dir, local_rank=args.local_rank) torch.backends.cudnn.benchmark = True args.prefetcher = not args.no_prefetcher args.distributed = False if 'WORLD_SIZE' in os.environ: args.distributed = int(os.environ['WORLD_SIZE']) > 1 if args.distributed and args.num_gpu > 1: logging.warning( 'Using more than one GPU per process in distributed mode is not allowed. Setting num_gpu to 1.' ) args.num_gpu = 1 args.device = 'cuda:0' args.world_size = 1 args.rank = 0 # global rank if args.distributed: args.num_gpu = 1 args.device = 'cuda:%d' % args.local_rank torch.cuda.set_device(args.local_rank) # torch.distributed.init_process_group(backend='nccl', # init_method='tcp://127.0.0.1:23334', # rank=args.local_rank, # world_size=int(os.environ['WORLD_SIZE'])) torch.distributed.init_process_group(backend='nccl', init_method='env://') args.world_size = torch.distributed.get_world_size() args.rank = torch.distributed.get_rank() assert args.rank >= 0 if args.distributed: logging.info( 'Training in distributed mode with multiple processes, 1 GPU per process. Process %d, total %d.' % (args.rank, args.world_size)) else: logging.info('Training with a single process on %d GPUs.' % args.num_gpu) # --------- random seed ----------- random.seed(args.seed) # TODO: do we need same seed on all GPU? np.random.seed(args.seed) torch.manual_seed(args.seed) # 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_path_rate=args.drop_path, global_pool=args.gp, bn_tf=args.bn_tf, bn_momentum=args.bn_momentum, bn_eps=args.bn_eps, checkpoint_path=args.initial_checkpoint) # optionally resume from a checkpoint resume_state = {} resume_epoch = None if args.resume: resume_state, resume_epoch = resume_checkpoint(model, args.resume) if args.local_rank == 0: logging.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) 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)) if args.num_gpu > 1: if args.amp: logging.warning( 'AMP does not work well with nn.DataParallel, disabling. Use distributed mode for multi-GPU AMP.' ) args.amp = False model = nn.DataParallel(model, device_ids=list(range(args.num_gpu))).cuda() else: model.cuda() if args.train_mode == 'se': optimizer = create_optimizer(args, model.get_se()) elif args.train_mode == 'bn': optimizer = create_optimizer(args, model.get_bn()) elif args.train_mode == 'all': optimizer = create_optimizer(args, model) elif args.train_mode == 'gate': optimizer = create_optimizer(args, model.get_gate()) use_amp = False if has_apex and args.amp: model, optimizer = amp.initialize(model, optimizer, opt_level='O1') use_amp = True if args.local_rank == 0: logging.info('NVIDIA APEX {}. AMP {}.'.format( 'installed' if has_apex else 'not installed', 'on' if use_amp else 'off')) if resume_state and not args.no_resume_opt: # ----------- Load Optimizer --------- if 'optimizer' in resume_state: if args.local_rank == 0: logging.info('Restoring Optimizer state from checkpoint') optimizer.load_state_dict(resume_state['optimizer']) if use_amp and 'amp' in resume_state and 'load_state_dict' in amp.__dict__: if args.local_rank == 0: logging.info('Restoring NVIDIA AMP state from checkpoint') amp.load_state_dict(resume_state['amp']) del resume_state model_ema = None if args.model_ema: # Important to create EMA model after cuda(), DP wrapper, and AMP but before SyncBN and DDP wrapper 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: model = convert_syncbn_model(model) else: model = torch.nn.SyncBatchNorm.convert_sync_batchnorm( model) if args.local_rank == 0: logging.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: logging.error( 'Failed to enable Synchronized BatchNorm. Install Apex or Torch >= 1.1' ) if has_apex: model = DDP(model, delay_allreduce=True) else: if args.local_rank == 0: logging.info( "Using torch DistributedDataParallel. Install NVIDIA Apex for Apex DDP." ) model = DDP(model, device_ids=[args.local_rank], find_unused_parameters=True ) # can use device str in Torch >= 1.1 # NOTE: EMA model does not need to be wrapped by DDP lr_scheduler, num_epochs = create_scheduler(args, optimizer) 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: logging.info('Scheduled epochs: {}'.format(num_epochs)) # ------------- data -------------- train_dir = os.path.join(args.data, 'train') if not os.path.exists(train_dir): logging.error( 'Training folder does not exist at: {}'.format(train_dir)) exit(1) dataset_train = Dataset(train_dir) collate_fn = None if num_aug_splits > 1: dataset_train = AugMixDataset(dataset_train, num_splits=num_aug_splits) loader_train = create_loader( dataset_train, input_size=data_config['input_size'], batch_size=args.batch_size, is_training=True, use_prefetcher=args.prefetcher, re_prob=args.reprob, re_mode=args.remode, re_count=args.recount, re_split=args.resplit, color_jitter=args.color_jitter, auto_augment=args.aa, num_aug_splits=num_aug_splits, interpolation=args.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, ) loader_bn = create_loader( dataset_train, input_size=data_config['input_size'], batch_size=args.validation_batch_size_multiplier * args.batch_size, is_training=True, use_prefetcher=args.prefetcher, re_prob=args.reprob, re_mode=args.remode, re_count=args.recount, re_split=args.resplit, color_jitter=args.color_jitter, auto_augment=args.aa, num_aug_splits=num_aug_splits, interpolation=args.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, ) 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): logging.error( 'Validation folder does not exist at: {}'.format(eval_dir)) exit(1) dataset_eval = Dataset(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, ) # ------------- loss_fn -------------- 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).cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() elif args.smoothing: train_loss_fn = LabelSmoothingCrossEntropy( smoothing=args.smoothing).cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() else: train_loss_fn = nn.CrossEntropyLoss().cuda() validate_loss_fn = train_loss_fn if args.ieb: distill_loss_fn = SoftTargetCrossEntropy().cuda() else: distill_loss_fn = None if args.local_rank == 0: model_profiling(model, 224, 224, 1, 3, use_cuda=True, verbose=True) else: model_profiling(model, 224, 224, 1, 3, use_cuda=True, verbose=False) if not args.test_mode: # start training for epoch in range(start_epoch, num_epochs): if args.distributed: loader_train.sampler.set_epoch(epoch) train_metrics = OrderedDict([('loss', 0.)]) # train if args.gate_train: train_metrics = train_epoch_slim_gate( epoch, model, loader_train, optimizer, train_loss_fn, args, lr_scheduler=lr_scheduler, saver=saver, output_dir=output_dir, use_amp=use_amp, model_ema=model_ema, optimizer_step=args.optimizer_step) else: train_metrics = train_epoch_slim( epoch, model, loader_train, optimizer, loss_fn=train_loss_fn, distill_loss_fn=distill_loss_fn, args=args, lr_scheduler=lr_scheduler, saver=saver, output_dir=output_dir, use_amp=use_amp, model_ema=model_ema, optimizer_step=args.optimizer_step, ) if args.distributed and args.dist_bn in ('broadcast', 'reduce'): if args.local_rank == 0: logging.info( "Distributing BatchNorm running means and vars") distribute_bn(model, args.world_size, args.dist_bn == 'reduce') # eval if args.gate_train: eval_sample_list = ['dynamic'] else: if epoch % 10 == 0 and epoch != 0: eval_sample_list = ['smallest', 'largest', 'uniform'] else: eval_sample_list = ['smallest', 'largest'] eval_metrics = [ validate_slim(model, loader_eval, validate_loss_fn, args, model_mode=model_mode) for model_mode in eval_sample_list ] if model_ema is not None and not args.model_ema_force_cpu: ema_eval_metrics = [ validate_slim(model_ema.ema, loader_eval, validate_loss_fn, args, model_mode=model_mode) for model_mode in eval_sample_list ] eval_metrics = ema_eval_metrics if isinstance(eval_metrics, list): eval_metrics = eval_metrics[0] if lr_scheduler is not None: # step LR for next epoch lr_scheduler.step(epoch + 1, eval_metrics[eval_metric]) # save 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( model, optimizer, args, epoch=epoch, model_ema=model_ema, metric=save_metric, use_amp=use_amp) # end training if best_metric is not None: logging.info('*** Best metric: {0} (epoch {1})'.format( best_metric, best_epoch)) # test eval_metrics = [] for choice in range(args.num_choice): # reset bn if not smallest or largest if choice != 0 and choice != args.num_choice - 1: for layer in model.modules(): if isinstance(layer, nn.BatchNorm2d) or \ isinstance(layer, nn.SyncBatchNorm) or \ (has_apex and isinstance(layer, apex.parallel.SyncBatchNorm)): layer.reset_running_stats() model.train() with torch.no_grad(): for batch_idx, (input, target) in enumerate(loader_bn): if args.slim_train: if hasattr(model, 'module'): model.module.set_mode('uniform', choice=choice) else: model.set_mode('uniform', choice=choice) model(input) if batch_idx % 1000 == 0 and batch_idx != 0: print('Subnet {} : reset bn for {} steps'.format( choice, batch_idx)) break if args.distributed and args.dist_bn in ('broadcast', 'reduce'): if args.local_rank == 0: logging.info( "Distributing BatchNorm running means and vars") distribute_bn(model, args.world_size, args.dist_bn == 'reduce') eval_metrics.append( validate_slim(model, loader_eval, validate_loss_fn, args, model_mode=choice)) if args.local_rank == 0: print('Test results of the last epoch:\n', eval_metrics)
def main(): setup_default_logging() args, args_text = _parse_args() args.prefetcher = not args.no_prefetcher args.distributed = False if 'WORLD_SIZE' in os.environ: args.distributed = int(os.environ['WORLD_SIZE']) > 1 args.device = 'cuda:0' args.world_size = 1 args.rank = 0 # global rank if args.distributed: args.device = 'cuda:%d' % args.local_rank torch.cuda.set_device(args.local_rank) torch.distributed.init_process_group(backend='nccl', init_method='env://') args.world_size = torch.distributed.get_world_size() args.rank = torch.distributed.get_rank() _logger.info('Training in distributed mode with multiple processes, 1 GPU per process. Process %d, total %d.' % (args.rank, args.world_size)) else: _logger.info('Training with a single process on 1 GPUs.') assert args.rank >= 0 if args.control_amp == 'amp': args.amp = True elif args.control_amp == 'apex': args.apex_amp = True elif args.control_amp == 'native': args.native_amp = True # resolve AMP arguments based on PyTorch / Apex availability use_amp = None if args.amp: # for backwards compat, `--amp` arg tries apex before native amp if has_apex: args.apex_amp = True elif has_native_amp: args.native_amp = True if args.apex_amp and has_apex: use_amp = 'apex' elif args.native_amp and has_native_amp: use_amp = 'native' elif args.apex_amp or args.native_amp: _logger.warning("Neither APEX or native Torch AMP is available, using float32. " "Install NVIDA apex or upgrade to PyTorch 1.6") _logger.info( '====================\n\n' 'Actfun: {}\n' 'LR: {}\n' 'Epochs: {}\n' 'p: {}\n' 'k: {}\n' 'g: {}\n' 'Extra channel multiplier: {}\n' 'AMP: {}\n' 'Weight Init: {}\n' '\n===================='.format(args.actfun, args.lr, args.epochs, args.p, args.k, args.g, args.extra_channel_mult, use_amp, args.weight_init)) torch.manual_seed(args.seed + args.rank) model = create_model( args.model, pretrained=args.pretrained, actfun=args.actfun, 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, scriptable=args.torchscript, checkpoint_path=args.initial_checkpoint, p=args.p, k=args.k, g=args.g, extra_channel_mult=args.extra_channel_mult, weight_init_name=args.weight_init, partial_ho_actfun=args.partial_ho_actfun ) if args.tl: if args.data == 'caltech101' and not os.path.exists('caltech101'): dir_root = r'101_ObjectCategories' dir_new = r'caltech101' dir_new_train = os.path.join(dir_new, 'train') dir_new_val = os.path.join(dir_new, 'val') dir_new_test = os.path.join(dir_new, 'test') if not os.path.exists(dir_new): os.mkdir(dir_new) os.mkdir(dir_new_train) os.mkdir(dir_new_val) os.mkdir(dir_new_test) for dir2 in os.listdir(dir_root): if dir2 != 'BACKGROUND_Google': curr_path = os.path.join(dir_root, dir2) new_path_train = os.path.join(dir_new_train, dir2) new_path_val = os.path.join(dir_new_val, dir2) new_path_test = os.path.join(dir_new_test, dir2) if not os.path.exists(new_path_train): os.mkdir(new_path_train) if not os.path.exists(new_path_val): os.mkdir(new_path_val) if not os.path.exists(new_path_test): os.mkdir(new_path_test) train_upper = int(0.8 * len(os.listdir(curr_path))) val_upper = int(0.9 * len(os.listdir(curr_path))) curr_files_all = os.listdir(curr_path) curr_files_train = curr_files_all[:train_upper] curr_files_val = curr_files_all[train_upper:val_upper] curr_files_test = curr_files_all[val_upper:] for file in curr_files_train: copyfile(os.path.join(curr_path, file), os.path.join(new_path_train, file)) for file in curr_files_val: copyfile(os.path.join(curr_path, file), os.path.join(new_path_val, file)) for file in curr_files_test: copyfile(os.path.join(curr_path, file), os.path.join(new_path_test, file)) time.sleep(5) if args.tl: pre_model = create_model( args.model, pretrained=True, actfun='swish', 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, scriptable=args.torchscript, checkpoint_path=args.initial_checkpoint, p=args.p, k=args.k, g=args.g, extra_channel_mult=args.extra_channel_mult, weight_init_name=args.weight_init, partial_ho_actfun=args.partial_ho_actfun ) model = MLP.MLP(actfun=args.actfun, input_dim=1280, output_dim=args.num_classes, k=args.k, p=args.p, g=args.g, num_params=400_000, permute_type='shuffle') pre_model_layers = list(pre_model.children()) pre_model = torch.nn.Sequential(*pre_model_layers[:-1]) else: pre_model = None if args.local_rank == 0: _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) # setup augmentation batch splits for contrastive loss or split bn 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 # enable split bn (separate bn stats per batch-portion) if args.split_bn: assert num_aug_splits > 1 or args.resplit model = convert_splitbn_model(model, max(num_aug_splits, 2)) # move model to GPU, enable channels last layout if set model.cuda() if args.tl: pre_model.cuda() if args.channels_last: model = model.to(memory_format=torch.channels_last) # setup synchronized BatchNorm for distributed training if args.distributed and args.sync_bn: assert not args.split_bn 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.') if args.torchscript: assert not use_amp == 'apex', 'Cannot use APEX AMP with torchscripted model' assert not args.sync_bn, 'Cannot use SyncBatchNorm with torchscripted model' model = torch.jit.script(model) if args.tl: optimizer = torch.optim.Adam(model.parameters(), weight_decay=1e-5) else: optimizer = create_optimizer(args, model) # setup automatic mixed-precision (AMP) loss scaling and op casting amp_autocast = suppress # do nothing loss_scaler = None if use_amp == 'apex': model, optimizer = amp.initialize(model, optimizer, opt_level='O1') loss_scaler = ApexScaler() if args.local_rank == 0: _logger.info('Using NVIDIA APEX AMP. Training in mixed precision.') elif use_amp == 'native': amp_autocast = torch.cuda.amp.autocast loss_scaler = NativeScaler() if args.local_rank == 0: _logger.info('Using native Torch AMP. Training in mixed precision.') else: if args.local_rank == 0: _logger.info('AMP not enabled. Training in float32.') if args.local_rank == 0: _logger.info('\n--------------------\nModel:\n' + repr(model) + '--------------------') # optionally resume from a checkpoint resume_epoch = None resume_path = os.path.join(args.resume, 'recover.pth.tar') if args.resume and os.path.exists(resume_path): resume_epoch = resume_checkpoint( model, resume_path, 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) cp_loaded = None resume_epoch = None checkname = 'recover' if args.actfun != 'swish': checkname = '{}_'.format(args.actfun) + checkname check_path = os.path.join(args.check_path, checkname) + '.pth' loader = None if os.path.isfile(check_path): loader = check_path elif args.load_path != '' and os.path.isfile(args.load_path): loader = args.load_path if loader is not None: cp_loaded = torch.load(loader) model.load_state_dict(cp_loaded['model']) optimizer.load_state_dict(cp_loaded['optimizer']) resume_epoch = cp_loaded['epoch'] model.cuda() loss_scaler.load_state_dict(cp_loaded['amp']) if args.channels_last: model = model.to(memory_format=torch.channels_last) _logger.info('============ LOADED CHECKPOINT: Epoch {}'.format(resume_epoch)) model_raw = model # setup exponential moving average of model weights, SWA could be used here too model_ema = None if args.model_ema: # Important to create EMA model after cuda(), DP wrapper, and AMP but before SyncBN and DDP wrapper model_ema = ModelEmaV2( model, decay=args.model_ema_decay, device='cpu' if args.model_ema_force_cpu else None) if args.resume and os.path.exists(resume_path): load_checkpoint(model_ema.module, args.resume, use_ema=True) if cp_loaded is not None: model_ema.load_state_dict(cp_loaded['model_ema']) # setup distributed training if args.distributed: if has_apex and use_amp != 'native': # Apex DDP preferred unless native amp is activated if args.local_rank == 0: _logger.info("Using NVIDIA APEX DistributedDataParallel.") model = ApexDDP(model, delay_allreduce=True) else: if args.local_rank == 0: _logger.info("Using native Torch DistributedDataParallel.") model = NativeDDP(model, device_ids=[args.local_rank]) # can use device str in Torch >= 1.1 # NOTE: EMA model does not need to be wrapped by DDP # setup mixup / cutmix 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) # create the train and eval datasets 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 = Dataset(train_dir) 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 = Dataset(eval_dir) # wrap dataset in AugMix helper if num_aug_splits > 1: dataset_train = AugMixDataset(dataset_train, num_splits=num_aug_splits) # create data loaders w/ augmentation pipeline 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 ) 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, ) # setup learning rate schedule and starting epoch lr_scheduler, num_epochs = create_scheduler(args, optimizer, dataset_train) 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 cp_loaded is not None: lr_scheduler.load_state_dict(cp_loaded['scheduler']) if args.local_rank == 0: _logger.info('Scheduled epochs: {}'.format(num_epochs)) # setup loss function 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).cuda() elif mixup_active: # smoothing is handled with mixup target transform train_loss_fn = SoftTargetCrossEntropy().cuda() elif args.smoothing: train_loss_fn = LabelSmoothingCrossEntropy(smoothing=args.smoothing).cuda() else: train_loss_fn = nn.CrossEntropyLoss().cuda() validate_loss_fn = nn.CrossEntropyLoss().cuda() # setup checkpoint saver and eval metric tracking 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=args.resume, decreasing=decreasing) with open(os.path.join(output_dir, 'args.yaml'), 'w') as f: f.write(args_text) fieldnames = ['seed', 'weight_init', 'actfun', 'epoch', 'max_lr', 'lr', 'train_loss', 'eval_loss', 'eval_acc1', 'eval_acc5', 'ema'] filename = 'output' if args.actfun != 'swish': filename = '{}_'.format(args.actfun) + filename outfile_path = os.path.join(args.output, filename) + '.csv' if not os.path.exists(outfile_path): with open(outfile_path, mode='w') as out_file: writer = csv.DictWriter(out_file, fieldnames=fieldnames, lineterminator='\n') writer.writeheader() try: for epoch in range(start_epoch, num_epochs): if os.path.exists(args.check_path): amp_loss = None if use_amp == 'native': amp_loss = loss_scaler.state_dict() elif use_amp == 'apex': amp_loss = amp.state_dict() if model_ema is not None: ema_save = model_ema.state_dict() else: ema_save = None torch.save({'model': model_raw.state_dict(), 'model_ema': ema_save, 'optimizer': optimizer.state_dict(), 'scheduler': lr_scheduler.state_dict(), 'epoch': epoch, 'amp': amp_loss }, check_path) _logger.info('============ SAVED CHECKPOINT: Epoch {}'.format(epoch)) 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, pre_model=pre_model) if args.distributed and args.dist_bn in ('broadcast', 'reduce'): if args.local_rank == 0: _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, pre_model=pre_model) with open(outfile_path, mode='a') as out_file: writer = csv.DictWriter(out_file, fieldnames=fieldnames, lineterminator='\n') writer.writerow({'seed': args.seed, 'actfun': args.actfun, 'epoch': epoch, 'lr': train_metrics['lr'], 'train_loss': train_metrics['loss'], 'eval_loss': eval_metrics['loss'], 'eval_acc1': eval_metrics['top1'], 'eval_acc5': eval_metrics['top5'], 'ema': False }) 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.module, loader_eval, validate_loss_fn, args, amp_autocast=amp_autocast, log_suffix=' (EMA)', pre_model=pre_model) eval_metrics = ema_eval_metrics with open(outfile_path, mode='a') as out_file: writer = csv.DictWriter(out_file, fieldnames=fieldnames, lineterminator='\n') writer.writerow({'seed': args.seed, 'weight_init': args.weight_init, 'actfun': args.actfun, 'epoch': epoch, 'max_lr': args.lr, 'lr': train_metrics['lr'], 'train_loss': train_metrics['loss'], 'eval_loss': eval_metrics['loss'], 'eval_acc1': eval_metrics['top1'], 'eval_acc5': eval_metrics['top5'], 'ema': True }) if lr_scheduler is not None and args.sched != 'onecycle': # step LR for next epoch lr_scheduler.step(epoch + 1, eval_metrics[eval_metric]) update_summary( args.seed, epoch, args.lr, args.epochs, args.batch_size, args.actfun, 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 main(fold_i=0, data_=None, train_index=None, val_index=None): setup_default_logging() args, args_text = _parse_args() args.prefetcher = not args.no_prefetcher args.distributed = False if 'WORLD_SIZE' in os.environ: args.distributed = int(os.environ['WORLD_SIZE']) > 1 args.device = 'cuda:0' args.world_size = 1 args.rank = 0 # global rank best_score = 0.0 args.output = args.output + 'fold_' + str(fold_i) if args.distributed: args.device = 'cuda:%d' % args.local_rank torch.cuda.set_device(args.local_rank) if fold_i == 0: torch.distributed.init_process_group(backend='nccl', init_method='env://') args.world_size = torch.distributed.get_world_size() args.rank = torch.distributed.get_rank() _logger.info( 'Training in distributed mode with multiple processes, 1 GPU per process. Process %d, total %d.' % (args.rank, args.world_size)) else: _logger.info('Training with a single process on 1 GPUs.') assert args.rank >= 0 # resolve AMP arguments based on PyTorch / Apex availability use_amp = None if args.amp: # for backwards compat, `--amp` arg tries apex before native amp if has_apex: args.apex_amp = True elif has_native_amp: args.native_amp = True if args.apex_amp and has_apex: use_amp = 'apex' elif args.native_amp and has_native_amp: use_amp = 'native' elif args.apex_amp or args.native_amp: _logger.warning( "Neither APEX or native Torch AMP is available, using float32. " "Install NVIDA apex or upgrade to PyTorch 1.6") 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, scriptable=args.torchscript, checkpoint_path=args.initial_checkpoint) if args.local_rank == 0: _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) # setup augmentation batch splits for contrastive loss or split bn 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 # enable split bn (separate bn stats per batch-portion) if args.split_bn: assert num_aug_splits > 1 or args.resplit model = convert_splitbn_model(model, max(num_aug_splits, 2)) # move model to GPU, enable channels last layout if set model = nn.DataParallel(model) model.cuda() if args.channels_last: model = model.to(memory_format=torch.channels_last) # setup synchronized BatchNorm for distributed training if args.distributed and args.sync_bn: assert not args.split_bn 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.' ) if args.torchscript: assert not use_amp == 'apex', 'Cannot use APEX AMP with torchscripted model' assert not args.sync_bn, 'Cannot use SyncBatchNorm with torchscripted model' model = torch.jit.script(model) optimizer = create_optimizer(args, model) #optimizer = torch.optim.SGD(model.parameters(), lr=0.1, weight_decay=1e-6) # setup automatic mixed-precision (AMP) loss scaling and op casting amp_autocast = suppress # do nothing loss_scaler = None if use_amp == 'apex': model, optimizer = amp.initialize(model, optimizer, opt_level='O1') loss_scaler = ApexScaler() if args.local_rank == 0: _logger.info('Using NVIDIA APEX AMP. Training in mixed precision.') elif use_amp == 'native': amp_autocast = torch.cuda.amp.autocast loss_scaler = NativeScaler() if args.local_rank == 0: _logger.info( 'Using native Torch AMP. Training in mixed precision.') else: if args.local_rank == 0: _logger.info('AMP not enabled. Training in float32.') # 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) # setup exponential moving average of model weights, SWA could be used here too model_ema = None if args.model_ema: # Important to create EMA model after cuda(), DP wrapper, and AMP but before SyncBN and DDP wrapper model_ema = ModelEmaV2( model, decay=args.model_ema_decay, device='cpu' if args.model_ema_force_cpu else None) if args.resume: load_checkpoint(model_ema.module, args.resume, use_ema=True) # setup distributed training if args.distributed: if has_apex and use_amp != 'native': # Apex DDP preferred unless native amp is activated if args.local_rank == 0: _logger.info("Using NVIDIA APEX DistributedDataParallel.") model = ApexDDP(model, delay_allreduce=True) else: if args.local_rank == 0: _logger.info("Using native Torch DistributedDataParallel.") model = NativeDDP(model, device_ids=[ args.local_rank ]) # can use device str in Torch >= 1.1 # NOTE: EMA model does not need to be wrapped by DDP lr_scheduler, num_epochs = create_scheduler(args, optimizer) # lr_scheduler = torch.optim.lr_scheduler.CosineAnnealingWarmRestarts(optimizer, T_0=10, T_mult=1, eta_min=1e-6, last_epoch=-1) if args.local_rank == 0: _logger.info('Scheduled epochs: {}'.format(20)) ##create DataLoader train_trans = get_riadd_train_transforms(args) valid_trans = get_riadd_valid_transforms(args) train_data = data_.iloc[train_index, :].reset_index(drop=True) dataset_train = RiaddDataSet(image_ids=train_data, baseImgPath=args.data) val_data = data_.iloc[val_index, :].reset_index(drop=True) dataset_eval = RiaddDataSet(image_ids=val_data, baseImgPath=args.data) # setup mixup / cutmix 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) # wrap dataset in AugMix helper if num_aug_splits > 1: dataset_train = AugMixDataset(dataset_train, num_splits=num_aug_splits) # create data loaders w/ augmentation pipeiine train_interpolation = args.train_interpolation if args.no_aug or not train_interpolation: train_interpolation = data_config['interpolation'] train_trans = get_riadd_train_transforms(args) 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, transform=train_trans) valid_trans = get_riadd_valid_transforms(args) 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, transform=valid_trans) # # setup loss function # 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).cuda() # elif mixup_active: # # smoothing is handled with mixup target transform # train_loss_fn = SoftTargetCrossEntropy().cuda() # elif args.smoothing: # train_loss_fn = LabelSmoothingCrossEntropy(smoothing=args.smoothing).cuda() # else: # train_loss_fn = nn.CrossEntropyLoss().cuda() validate_loss_fn = nn.BCEWithLogitsLoss().cuda() train_loss_fn = nn.BCEWithLogitsLoss().cuda() # setup checkpoint saver and eval metric tracking eval_metric = args.eval_metric best_metric = None best_epoch = None saver = None vis = 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) vis = Visualizer(env=args.output) try: for epoch in range(0, args.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: _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) score, scores = get_score(eval_metrics['valid_label'], eval_metrics['predictions']) ##visdom if vis is not None: vis.plot_curves({'None': epoch}, iters=epoch, title='None', xlabel='iters', ylabel='None') vis.plot_curves( {'learing rate': optimizer.param_groups[0]['lr']}, iters=epoch, title='lr', xlabel='iters', ylabel='learing rate') vis.plot_curves({'train loss': float(train_metrics['loss'])}, iters=epoch, title='train loss', xlabel='iters', ylabel='train loss') vis.plot_curves({'val loss': float(eval_metrics['loss'])}, iters=epoch, title='val loss', xlabel='iters', ylabel='val loss') vis.plot_curves({'val score': float(score)}, iters=epoch, title='val score', xlabel='iters', ylabel='val score') 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.module, 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]) lr_scheduler.step(epoch + 1, score) 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 and score > best_score: # save proper checkpoint with eval metric best_score = score save_metric = best_score best_metric, best_epoch = saver.save_checkpoint( epoch, metric=save_metric) del model del optimizer torch.cuda.empty_cache() except KeyboardInterrupt: pass if best_metric is not None: _logger.info('*** Best metric: {0} (epoch {1})'.format( best_metric, best_epoch))