# -------------------------------------------------------- # Modified by $@#Anonymous#@$ # -------------------------------------------------------- # Swin Transformer # Copyright (c) 2021 Microsoft # Licensed under The MIT License [see LICENSE for details] # Written by Ze Liu # --------------------------------------------------------' import os import yaml from yacs.config import CfgNode as CN _C = CN() # Base config files _C.BASE = [''] # ----------------------------------------------------------------------------- # Data settings # ----------------------------------------------------------------------------- _C.DATA = CN() # Batch size for a single GPU, could be overwritten by command line argument _C.DATA.BATCH_SIZE = 128 # Path to dataset, could be overwritten by command line argument _C.DATA.DATA_PATH = '' # Dataset name _C.DATA.DATASET = 'imagenet' # Input image size _C.DATA.IMG_SIZE = 224 # Interpolation to resize image (random, bilinear, bicubic) _C.DATA.INTERPOLATION = 'bicubic' # Use zipped dataset instead of folder dataset # could be overwritten by command line argument _C.DATA.ZIP_MODE = False # Cache Data in Memory, could be overwritten by command line argument _C.DATA.CACHE_MODE = 'part' # Pin CPU memory in DataLoader for more efficient (sometimes) transfer to GPU. _C.DATA.PIN_MEMORY = True # Number of data loading threads _C.DATA.NUM_WORKERS = 8 # [SimMIM] Mask patch size for MaskGenerator _C.DATA.MASK_PATCH_SIZE = 32 # [SimMIM] Mask ratio for MaskGenerator _C.DATA.MASK_RATIO = 0.6 # ----------------------------------------------------------------------------- # Model settings # ----------------------------------------------------------------------------- _C.MODEL = CN() # Model type _C.MODEL.TYPE = 'vssm' # Model name _C.MODEL.NAME = 'vssm_tiny_224' # Pretrained weight from checkpoint, could be imagenet22k pretrained weight # could be overwritten by command line argument _C.MODEL.PRETRAINED = '' # Checkpoint to resume, could be overwritten by command line argument _C.MODEL.RESUME = '' # Number of classes, overwritten in data preparation _C.MODEL.NUM_CLASSES = 1000 # Dropout rate _C.MODEL.DROP_RATE = 0.0 # Drop path rate _C.MODEL.DROP_PATH_RATE = 0.1 # Label Smoothing _C.MODEL.LABEL_SMOOTHING = 0.1 # MMpretrain models for test _C.MODEL.MMCKPT = False # VSSM parameters _C.MODEL.VSSM = CN() _C.MODEL.VSSM.PATCH_SIZE = 4 _C.MODEL.VSSM.IN_CHANS = 3 _C.MODEL.VSSM.DEPTHS = [2, 2, 9, 2] _C.MODEL.VSSM.EMBED_DIM = 96 _C.MODEL.VSSM.SSM_D_STATE = 16 _C.MODEL.VSSM.SSM_RATIO = 2.0 _C.MODEL.VSSM.SSM_RANK_RATIO = 2.0 _C.MODEL.VSSM.SSM_DT_RANK = "auto" _C.MODEL.VSSM.SSM_ACT_LAYER = "silu" _C.MODEL.VSSM.SSM_CONV = 3 _C.MODEL.VSSM.SSM_CONV_BIAS = True _C.MODEL.VSSM.SSM_DROP_RATE = 0.0 _C.MODEL.VSSM.SSM_INIT = "v0" _C.MODEL.VSSM.SSM_FORWARDTYPE = "v2" _C.MODEL.VSSM.MLP_RATIO = 4.0 _C.MODEL.VSSM.MLP_ACT_LAYER = "gelu" _C.MODEL.VSSM.MLP_DROP_RATE = 0.0 _C.MODEL.VSSM.PATCH_NORM = True _C.MODEL.VSSM.NORM_LAYER = "ln" _C.MODEL.VSSM.DOWNSAMPLE = "v2" _C.MODEL.VSSM.PATCHEMBED = "v2" _C.MODEL.VSSM.POSEMBED = False _C.MODEL.VSSM.GMLP = False # ----------------------------------------------------------------------------- # Training settings # ----------------------------------------------------------------------------- _C.TRAIN = CN() _C.TRAIN.START_EPOCH = 0 _C.TRAIN.EPOCHS = 300 _C.TRAIN.WARMUP_EPOCHS = 20 _C.TRAIN.WEIGHT_DECAY = 0.05 _C.TRAIN.BASE_LR = 5e-4 _C.TRAIN.WARMUP_LR = 5e-7 _C.TRAIN.MIN_LR = 5e-6 # Clip gradient norm _C.TRAIN.CLIP_GRAD = 5.0 # Auto resume from latest checkpoint _C.TRAIN.AUTO_RESUME = True # Gradient accumulation steps # could be overwritten by command line argument _C.TRAIN.ACCUMULATION_STEPS = 1 # Whether to use gradient checkpointing to save memory # could be overwritten by command line argument _C.TRAIN.USE_CHECKPOINT = False # LR scheduler _C.TRAIN.LR_SCHEDULER = CN() _C.TRAIN.LR_SCHEDULER.NAME = 'cosine' # Epoch interval to decay LR, used in StepLRScheduler _C.TRAIN.LR_SCHEDULER.DECAY_EPOCHS = 30 # LR decay rate, used in StepLRScheduler _C.TRAIN.LR_SCHEDULER.DECAY_RATE = 0.1 # warmup_prefix used in CosineLRScheduler _C.TRAIN.LR_SCHEDULER.WARMUP_PREFIX = True # [SimMIM] Gamma / Multi steps value, used in MultiStepLRScheduler _C.TRAIN.LR_SCHEDULER.GAMMA = 0.1 _C.TRAIN.LR_SCHEDULER.MULTISTEPS = [] # Optimizer _C.TRAIN.OPTIMIZER = CN() _C.TRAIN.OPTIMIZER.NAME = 'adamw' # Optimizer Epsilon _C.TRAIN.OPTIMIZER.EPS = 1e-8 # Optimizer Betas _C.TRAIN.OPTIMIZER.BETAS = (0.9, 0.999) # SGD momentum _C.TRAIN.OPTIMIZER.MOMENTUM = 0.9 # [SimMIM] Layer decay for fine-tuning _C.TRAIN.LAYER_DECAY = 1.0 # MoE _C.TRAIN.MOE = CN() # Only save model on master device _C.TRAIN.MOE.SAVE_MASTER = False # ----------------------------------------------------------------------------- # Augmentation settings # ----------------------------------------------------------------------------- _C.AUG = CN() # Color jitter factor _C.AUG.COLOR_JITTER = 0.4 # Use AutoAugment policy. "v0" or "original" _C.AUG.AUTO_AUGMENT = 'rand-m9-mstd0.5-inc1' # Random erase prob _C.AUG.REPROB = 0.25 # Random erase mode _C.AUG.REMODE = 'pixel' # Random erase count _C.AUG.RECOUNT = 1 # Mixup alpha, mixup enabled if > 0 _C.AUG.MIXUP = 0.8 # Cutmix alpha, cutmix enabled if > 0 _C.AUG.CUTMIX = 1.0 # Cutmix min/max ratio, overrides alpha and enables cutmix if set _C.AUG.CUTMIX_MINMAX = None # Probability of performing mixup or cutmix when either/both is enabled _C.AUG.MIXUP_PROB = 1.0 # Probability of switching to cutmix when both mixup and cutmix enabled _C.AUG.MIXUP_SWITCH_PROB = 0.5 # How to apply mixup/cutmix params. Per "batch", "pair", or "elem" _C.AUG.MIXUP_MODE = 'batch' # ----------------------------------------------------------------------------- # Testing settings # ----------------------------------------------------------------------------- _C.TEST = CN() # Whether to use center crop when testing _C.TEST.CROP = True # Whether to use SequentialSampler as validation sampler _C.TEST.SEQUENTIAL = False _C.TEST.SHUFFLE = False # ----------------------------------------------------------------------------- # Misc # ----------------------------------------------------------------------------- # [SimMIM] Whether to enable pytorch amp, overwritten by command line argument _C.ENABLE_AMP = False # Enable Pytorch automatic mixed precision (amp). _C.AMP_ENABLE = True # [Deprecated] Mixed precision opt level of apex, if O0, no apex amp is used ('O0', 'O1', 'O2') _C.AMP_OPT_LEVEL = '' # Path to output folder, overwritten by command line argument _C.OUTPUT = '' # Tag of experiment, overwritten by command line argument _C.TAG = 'default' # Frequency to save checkpoint _C.SAVE_FREQ = 1 # Frequency to logging info _C.PRINT_FREQ = 10 # Fixed random seed _C.SEED = 0 # Perform evaluation only, overwritten by command line argument _C.EVAL_MODE = False # Test throughput only, overwritten by command line argument _C.THROUGHPUT_MODE = False # Test traincost only, overwritten by command line argument _C.TRAINCOST_MODE = False # for acceleration _C.FUSED_LAYERNORM = False def _update_config_from_file(config, cfg_file): config.defrost() with open(cfg_file, 'r') as f: yaml_cfg = yaml.load(f, Loader=yaml.FullLoader) for cfg in yaml_cfg.setdefault('BASE', ['']): if cfg: _update_config_from_file( config, os.path.join(os.path.dirname(cfg_file), cfg) ) print('=> merge config from {}'.format(cfg_file)) config.merge_from_file(cfg_file) config.freeze() def update_config(config, args): if args.cfg != "": _update_config_from_file(config, args.cfg) config.defrost() if args.opts: config.merge_from_list(args.opts) def _check_args(name): if hasattr(args, name) and eval(f'args.{name}'): return True return False # merge from specific arguments if _check_args('batch_size'): config.DATA.BATCH_SIZE = args.batch_size if _check_args('data_path'): config.DATA.DATA_PATH = args.data_path if _check_args('zip'): config.DATA.ZIP_MODE = True if _check_args('cache_mode'): config.DATA.CACHE_MODE = args.cache_mode if _check_args('pretrained'): config.MODEL.PRETRAINED = args.pretrained if _check_args('resume'): config.MODEL.RESUME = args.resume if _check_args('accumulation_steps'): config.TRAIN.ACCUMULATION_STEPS = args.accumulation_steps if _check_args('use_checkpoint'): config.TRAIN.USE_CHECKPOINT = True if _check_args('disable_amp'): config.AMP_ENABLE = False if _check_args('output'): config.OUTPUT = args.output if _check_args('tag'): config.TAG = args.tag if _check_args('eval'): config.EVAL_MODE = True if _check_args('throughput'): config.THROUGHPUT_MODE = True if _check_args('traincost'): config.TRAINCOST_MODE = True # [SimMIM] if _check_args('enable_amp'): config.ENABLE_AMP = args.enable_amp # for acceleration if _check_args('fused_layernorm'): config.FUSED_LAYERNORM = True ## Overwrite optimizer if not None, currently we use it for [fused_adam, fused_lamb] if _check_args('optim'): config.TRAIN.OPTIMIZER.NAME = args.optim # output folder config.OUTPUT = os.path.join(config.OUTPUT, config.MODEL.NAME, config.TAG) config.freeze() def get_config(args): """Get a yacs CfgNode object with default values.""" # Return a clone so that the defaults will not be altered # This is for the "local variable" use pattern config = _C.clone() update_config(config, args) return config