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import glob |
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import logging |
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import os |
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import re |
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import subprocess |
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import sys |
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import random |
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from datetime import datetime |
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import numpy as np |
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import torch |
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from torch import optim |
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from torch.cuda.amp import GradScaler |
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try: |
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import wandb |
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except ImportError: |
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wandb = None |
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try: |
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import torch.utils.tensorboard as tensorboard |
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except ImportError: |
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tensorboard = None |
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try: |
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import horovod.torch as hvd |
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except ImportError: |
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hvd = None |
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from open_clip import create_model_and_transforms, trace_model, get_tokenizer |
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from training.data import get_data |
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from training.distributed import is_master, init_distributed_device, broadcast_object |
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from training.logger import setup_logging |
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from training.params import parse_args |
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from training.scheduler import cosine_lr, const_lr, const_lr_cooldown |
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from training.train import train_one_epoch, evaluate |
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from training.file_utils import pt_load, check_exists, start_sync_process, remote_sync |
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LATEST_CHECKPOINT_NAME = "epoch_latest.pt" |
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def random_seed(seed=42, rank=0): |
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torch.manual_seed(seed + rank) |
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np.random.seed(seed + rank) |
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random.seed(seed + rank) |
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def natural_key(string_): |
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"""See http://www.codinghorror.com/blog/archives/001018.html""" |
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return [int(s) if s.isdigit() else s for s in re.split(r'(\d+)', string_.lower())] |
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def get_latest_checkpoint(path: str, remote : bool): |
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if remote: |
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result = subprocess.run(["aws", "s3", "ls", path + "/"], stdout=subprocess.PIPE, stderr=subprocess.PIPE) |
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print(result) |
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if result.returncode == 1: |
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return None |
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checkpoints = [os.path.join(path, x.split(' ')[-1]) for x in result.stdout.decode().split('\n')[:-1]] |
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else: |
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checkpoints = glob.glob(path + '**/*.pt', recursive=True) |
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if checkpoints: |
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checkpoints = sorted(checkpoints, key=natural_key) |
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return checkpoints[-1] |
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return None |
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def main(args): |
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args = parse_args(args) |
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if torch.cuda.is_available(): |
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torch.backends.cuda.matmul.allow_tf32 = True |
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torch.backends.cudnn.benchmark = True |
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torch.backends.cudnn.deterministic = False |
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device = init_distributed_device(args) |
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if args.name is None: |
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model_name_safe = args.model.replace('/', '-') |
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date_str = datetime.now().strftime("%Y_%m_%d`-%H_%M_%S") |
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if args.distributed: |
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date_str = broadcast_object(args, date_str) |
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args.name = '-'.join([ |
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date_str, |
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f"model_{model_name_safe}", |
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f"lr_{args.lr}", |
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f"b_{args.batch_size}", |
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f"j_{args.workers}", |
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f"p_{args.precision}", |
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]) |
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resume_latest = args.resume == 'latest' |
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log_base_path = os.path.join(args.logs, args.name) |
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args.log_path = None |
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if is_master(args, local=args.log_local): |
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os.makedirs(log_base_path, exist_ok=True) |
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log_filename = f'out-{args.rank}' if args.log_local else 'out.log' |
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args.log_path = os.path.join(log_base_path, log_filename) |
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if os.path.exists(args.log_path) and not resume_latest: |
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print( |
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"Error. Experiment already exists. Use --name {} to specify a new experiment." |
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) |
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return -1 |
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args.log_level = logging.DEBUG if args.debug else logging.INFO |
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setup_logging(args.log_path, args.log_level) |
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args.wandb = 'wandb' in args.report_to or 'all' in args.report_to |
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args.tensorboard = 'tensorboard' in args.report_to or 'all' in args.report_to |
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args.checkpoint_path = os.path.join(log_base_path, "checkpoints") |
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if is_master(args): |
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args.tensorboard_path = os.path.join(log_base_path, "tensorboard") if args.tensorboard else '' |
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for dirname in [args.tensorboard_path, args.checkpoint_path]: |
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if dirname: |
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os.makedirs(dirname, exist_ok=True) |
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else: |
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args.tensorboard_path = '' |
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if resume_latest: |
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resume_from = None |
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checkpoint_path = args.checkpoint_path |
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if args.remote_sync is not None: |
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checkpoint_path = os.path.join(args.remote_sync, args.name, "checkpoints") |
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if args.save_most_recent: |
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print('Error. Cannot use save-most-recent with remote_sync and resume latest.') |
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return -1 |
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if args.remote_sync_protocol != 's3': |
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print('Error. Sync protocol not supported when using resume latest.') |
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return -1 |
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if is_master(args): |
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if args.save_most_recent: |
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resume_from = os.path.join(checkpoint_path, LATEST_CHECKPOINT_NAME) |
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if not os.path.exists(resume_from): |
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resume_from = None |
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else: |
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resume_from = get_latest_checkpoint(checkpoint_path, remote=args.remote_sync is not None) |
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if resume_from: |
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logging.info(f'Found latest resume checkpoint at {resume_from}.') |
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else: |
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logging.info(f'No latest resume checkpoint found in {checkpoint_path}.') |
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if args.distributed: |
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resume_from = broadcast_object(args, resume_from) |
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args.resume = resume_from |
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if args.copy_codebase: |
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copy_codebase(args) |
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remote_sync_process = None |
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if is_master(args) and args.remote_sync is not None: |
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result = remote_sync( |
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os.path.join(args.logs, args.name), |
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os.path.join(args.remote_sync, args.name), |
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args.remote_sync_protocol |
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) |
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if result: |
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logging.info('remote sync successful.') |
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else: |
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logging.info('Error: remote sync failed. Exiting.') |
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return -1 |
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remote_sync_process = start_sync_process( |
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args.remote_sync_frequency, |
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os.path.join(args.logs, args.name), |
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os.path.join(args.remote_sync, args.name), |
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args.remote_sync_protocol |
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) |
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remote_sync_process.start() |
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if args.precision == 'fp16': |
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logging.warning( |
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'It is recommended to use AMP mixed-precision instead of FP16. ' |
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'FP16 support needs further verification and tuning, especially for train.') |
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if args.horovod: |
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logging.info( |
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f'Running in horovod mode with multiple processes / nodes. Device: {args.device}.' |
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f'Process (global: {args.rank}, local {args.local_rank}), total {args.world_size}.') |
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elif args.distributed: |
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logging.info( |
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f'Running in distributed mode with multiple processes. Device: {args.device}.' |
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f'Process (global: {args.rank}, local {args.local_rank}), total {args.world_size}.') |
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else: |
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logging.info(f'Running with a single process. Device {args.device}.') |
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if isinstance(args.force_image_size, (tuple, list)) and len(args.force_image_size) == 1: |
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args.force_image_size = args.force_image_size[0] |
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random_seed(args.seed, 0) |
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model, preprocess_train, preprocess_val = create_model_and_transforms( |
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args.model, |
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args.pretrained, |
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precision=args.precision, |
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device=device, |
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jit=args.torchscript, |
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force_quick_gelu=args.force_quick_gelu, |
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force_custom_text=args.force_custom_text, |
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force_patch_dropout=args.force_patch_dropout, |
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force_image_size=args.force_image_size, |
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pretrained_image=args.pretrained_image, |
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image_mean=args.image_mean, |
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image_std=args.image_std, |
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aug_cfg=args.aug_cfg, |
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) |
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random_seed(args.seed, args.rank) |
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if args.trace: |
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model = trace_model(model, batch_size=args.batch_size, device=device) |
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if args.lock_image: |
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model.lock_image_tower( |
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unlocked_groups=args.lock_image_unlocked_groups, |
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freeze_bn_stats=args.lock_image_freeze_bn_stats) |
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if args.lock_text: |
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model.lock_text_tower( |
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unlocked_layers=args.lock_text_unlocked_layers, |
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freeze_layer_norm=args.lock_text_freeze_layer_norm) |
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if args.grad_checkpointing: |
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model.set_grad_checkpointing() |
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if is_master(args): |
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logging.info("Model:") |
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logging.info(f"{str(model)}") |
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logging.info("Params:") |
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params_file = os.path.join(args.logs, args.name, "params.txt") |
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with open(params_file, "w") as f: |
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for name in sorted(vars(args)): |
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val = getattr(args, name) |
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logging.info(f" {name}: {val}") |
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f.write(f"{name}: {val}\n") |
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if args.distributed and not args.horovod: |
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if args.use_bn_sync: |
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model = torch.nn.SyncBatchNorm.convert_sync_batchnorm(model) |
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ddp_args = {} |
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if args.ddp_static_graph: |
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ddp_args['static_graph'] = True |
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model = torch.nn.parallel.DistributedDataParallel(model, device_ids=[device], **ddp_args) |
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optimizer = None |
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scaler = None |
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if args.train_data or args.dataset_type == "synthetic": |
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assert not args.trace, 'Cannot train with traced model' |
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exclude = lambda n, p: p.ndim < 2 or "bn" in n or "ln" in n or "bias" in n or 'logit_scale' in n |
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include = lambda n, p: not exclude(n, p) |
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named_parameters = list(model.named_parameters()) |
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gain_or_bias_params = [p for n, p in named_parameters if exclude(n, p) and p.requires_grad] |
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rest_params = [p for n, p in named_parameters if include(n, p) and p.requires_grad] |
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optimizer = optim.AdamW( |
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[ |
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{"params": gain_or_bias_params, "weight_decay": 0.}, |
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{"params": rest_params, "weight_decay": args.wd}, |
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], |
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lr=args.lr, |
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betas=(args.beta1, args.beta2), |
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eps=args.eps, |
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) |
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if args.horovod: |
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optimizer = hvd.DistributedOptimizer(optimizer, named_parameters=model.named_parameters()) |
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hvd.broadcast_parameters(model.state_dict(), root_rank=0) |
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hvd.broadcast_optimizer_state(optimizer, root_rank=0) |
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scaler = GradScaler() if args.precision == "amp" else None |
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start_epoch = 0 |
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if args.resume is not None: |
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checkpoint = pt_load(args.resume, map_location='cpu') |
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if 'epoch' in checkpoint: |
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start_epoch = checkpoint["epoch"] |
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sd = checkpoint["state_dict"] |
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if not args.distributed and next(iter(sd.items()))[0].startswith('module'): |
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sd = {k[len('module.'):]: v for k, v in sd.items()} |
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model.load_state_dict(sd) |
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if optimizer is not None: |
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optimizer.load_state_dict(checkpoint["optimizer"]) |
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if scaler is not None and 'scaler' in checkpoint: |
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scaler.load_state_dict(checkpoint['scaler']) |
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logging.info(f"=> resuming checkpoint '{args.resume}' (epoch {start_epoch})") |
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else: |
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model.load_state_dict(checkpoint) |
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logging.info(f"=> loaded checkpoint '{args.resume}' (epoch {start_epoch})") |
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data = get_data(args, (preprocess_train, preprocess_val), epoch=start_epoch, tokenizer=get_tokenizer(args.model)) |
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assert len(data), 'At least one train or eval dataset must be specified.' |
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scheduler = None |
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if 'train' in data and optimizer is not None: |
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total_steps = (data["train"].dataloader.num_batches // args.accum_freq) * args.epochs |
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if args.lr_scheduler == "cosine": |
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scheduler = cosine_lr(optimizer, args.lr, args.warmup, total_steps) |
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elif args.lr_scheduler == "const": |
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scheduler = const_lr(optimizer, args.lr, args.warmup, total_steps) |
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elif args.lr_scheduler == "const-cooldown": |
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assert args.epochs_cooldown is not None,\ |
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"Please specify the number of cooldown epochs for this lr schedule." |
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cooldown_steps = (data["train"].dataloader.num_batches // args.accum_freq) * args.epochs_cooldown |
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scheduler = const_lr_cooldown( |
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optimizer, args.lr, args.warmup, total_steps, |
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cooldown_steps, args.lr_cooldown_power, args.lr_cooldown_end) |
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else: |
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logging.error( |
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f'Unknown scheduler, {args.lr_scheduler}. Available options are: cosine, const, const-cooldown.') |
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exit(1) |
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args.save_logs = args.logs and args.logs.lower() != 'none' and is_master(args) |
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writer = None |
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if args.save_logs and args.tensorboard: |
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assert tensorboard is not None, "Please install tensorboard." |
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writer = tensorboard.SummaryWriter(args.tensorboard_path) |
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if args.wandb and is_master(args): |
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assert wandb is not None, 'Please install wandb.' |
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logging.debug('Starting wandb.') |
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args.train_sz = data["train"].dataloader.num_samples |
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if args.val_data is not None: |
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args.val_sz = data["val"].dataloader.num_samples |
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wandb.init( |
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project=args.wandb_project_name, |
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name=args.name, |
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id=args.name, |
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notes=args.wandb_notes, |
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tags=[], |
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resume='auto' if args.resume == "latest" else None, |
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config=vars(args), |
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) |
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if args.debug: |
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wandb.watch(model, log='all') |
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wandb.save(params_file) |
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logging.debug('Finished loading wandb.') |
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if 'train' not in data: |
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evaluate(model, data, start_epoch, args, writer) |
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return |
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for epoch in range(start_epoch, args.epochs): |
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if is_master(args): |
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logging.info(f'Start epoch {epoch}') |
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train_one_epoch(model, data, epoch, optimizer, scaler, scheduler, args, writer) |
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completed_epoch = epoch + 1 |
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if any(v in data for v in ('val', 'imagenet-val', 'imagenet-v2')): |
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evaluate(model, data, completed_epoch, args, writer) |
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if args.save_logs: |
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checkpoint_dict = { |
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"epoch": completed_epoch, |
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"name": args.name, |
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"state_dict": model.state_dict(), |
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"optimizer": optimizer.state_dict(), |
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} |
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if scaler is not None: |
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checkpoint_dict["scaler"] = scaler.state_dict() |
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if completed_epoch == args.epochs or ( |
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args.save_frequency > 0 and (completed_epoch % args.save_frequency) == 0 |
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): |
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torch.save( |
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checkpoint_dict, |
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os.path.join(args.checkpoint_path, f"epoch_{completed_epoch}.pt"), |
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) |
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if args.delete_previous_checkpoint: |
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previous_checkpoint = os.path.join(args.checkpoint_path, f"epoch_{completed_epoch - 1}.pt") |
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if os.path.exists(previous_checkpoint): |
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os.remove(previous_checkpoint) |
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if args.save_most_recent: |
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tmp_save_path = os.path.join(args.checkpoint_path, "tmp.pt") |
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latest_save_path = os.path.join(args.checkpoint_path, LATEST_CHECKPOINT_NAME) |
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torch.save(checkpoint_dict, tmp_save_path) |
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os.replace(tmp_save_path, latest_save_path) |
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if args.wandb and is_master(args): |
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wandb.finish() |
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if remote_sync_process is not None: |
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logging.info('Final remote sync.') |
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remote_sync_process.terminate() |
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result = remote_sync( |
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os.path.join(args.logs, args.name), |
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os.path.join(args.remote_sync, args.name), |
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args.remote_sync_protocol |
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) |
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if result: |
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logging.info('Final remote sync successful.') |
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else: |
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logging.info('Final remote sync failed.') |
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def copy_codebase(args): |
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from shutil import copytree, ignore_patterns |
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new_code_path = os.path.join(args.logs, args.name, "code") |
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if os.path.exists(new_code_path): |
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print( |
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f"Error. Experiment already exists at {new_code_path}. Use --name to specify a new experiment." |
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) |
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return -1 |
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print(f"Copying codebase to {new_code_path}") |
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current_code_path = os.path.realpath(__file__) |
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for _ in range(3): |
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current_code_path = os.path.dirname(current_code_path) |
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copytree(current_code_path, new_code_path, ignore=ignore_patterns('log', 'logs', 'wandb')) |
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print("Done copying code.") |
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return 1 |
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if __name__ == "__main__": |
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main(sys.argv[1:]) |
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