Add simple baseline for LFNA
This commit is contained in:
@@ -11,270 +11,109 @@ lib_dir = (Path(__file__).parent / ".." / ".." / "lib").resolve()
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if str(lib_dir) not in sys.path:
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sys.path.insert(0, str(lib_dir))
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from procedures import prepare_seed, prepare_logger, save_checkpoint, copy_checkpoint
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from log_utils import AverageMeter, time_string, convert_secs2time
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from log_utils import time_string
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from procedures.advanced_main import basic_train_fn, basic_eval_fn
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from procedures.metric_utils import SaveMetric, MSEMetric, ComposeMetric
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from datasets.synthetic_core import get_synthetic_env
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from models.xcore import get_model
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def main(args):
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torch.set_num_threads(args.workers)
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prepare_seed(args.rand_seed)
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logger = prepare_logger(args)
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dynamic_env = get_synthetic_env()
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historical_x, historical_y = None, None
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for idx, (timestamp, (allx, ally)) in enumerate(dynamic_env):
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import pdb
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pdb.set_trace()
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train_data, valid_data, xshape, class_num = get_datasets(
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args.dataset, args.data_path, args.cutout_length
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)
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train_loader = torch.utils.data.DataLoader(
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train_data,
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batch_size=args.batch_size,
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shuffle=True,
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num_workers=args.workers,
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pin_memory=True,
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)
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valid_loader = torch.utils.data.DataLoader(
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valid_data,
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batch_size=args.batch_size,
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shuffle=False,
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num_workers=args.workers,
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pin_memory=True,
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)
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# get configures
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model_config = load_config(args.model_config, {"class_num": class_num}, logger)
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optim_config = load_config(args.optim_config, {"class_num": class_num}, logger)
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if historical_x is not None:
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mean, std = historical_x.mean().item(), historical_x.std().item()
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else:
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mean, std = 0, 1
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model_kwargs = dict(input_dim=1, output_dim=1, mean=mean, std=std)
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model = get_model(dict(model_type="simple_mlp"), **model_kwargs)
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if args.model_source == "normal":
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base_model = obtain_model(model_config)
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elif args.model_source == "nas":
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base_model = obtain_nas_infer_model(model_config, args.extra_model_path)
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elif args.model_source == "autodl-searched":
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base_model = obtain_model(model_config, args.extra_model_path)
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else:
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raise ValueError("invalid model-source : {:}".format(args.model_source))
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flop, param = get_model_infos(base_model, xshape)
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logger.log("model ====>>>>:\n{:}".format(base_model))
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logger.log("model information : {:}".format(base_model.get_message()))
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logger.log("-" * 50)
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logger.log(
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"Params={:.2f} MB, FLOPs={:.2f} M ... = {:.2f} G".format(
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param, flop, flop / 1e3
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)
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)
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logger.log("-" * 50)
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logger.log("train_data : {:}".format(train_data))
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logger.log("valid_data : {:}".format(valid_data))
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optimizer, scheduler, criterion = get_optim_scheduler(
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base_model.parameters(), optim_config
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)
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logger.log("optimizer : {:}".format(optimizer))
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logger.log("scheduler : {:}".format(scheduler))
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logger.log("criterion : {:}".format(criterion))
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last_info, model_base_path, model_best_path = (
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logger.path("info"),
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logger.path("model"),
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logger.path("best"),
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)
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network, criterion = torch.nn.DataParallel(base_model).cuda(), criterion.cuda()
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if last_info.exists(): # automatically resume from previous checkpoint
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logger.log(
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"=> loading checkpoint of the last-info '{:}' start".format(last_info)
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)
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last_infox = torch.load(last_info)
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start_epoch = last_infox["epoch"] + 1
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last_checkpoint_path = last_infox["last_checkpoint"]
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if not last_checkpoint_path.exists():
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logger.log(
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"Does not find {:}, try another path".format(last_checkpoint_path)
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# create the current data loader
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if historical_x is not None:
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train_dataset = torch.utils.data.TensorDataset(historical_x, historical_y)
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train_loader = torch.utils.data.DataLoader(
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train_dataset,
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batch_size=args.batch_size,
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shuffle=True,
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num_workers=args.workers,
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)
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last_checkpoint_path = (
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last_info.parent
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/ last_checkpoint_path.parent.name
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/ last_checkpoint_path.name
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optimizer = torch.optim.Adam(
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model.parameters(), lr=args.init_lr, amsgrad=True
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)
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checkpoint = torch.load(last_checkpoint_path)
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base_model.load_state_dict(checkpoint["base-model"])
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scheduler.load_state_dict(checkpoint["scheduler"])
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optimizer.load_state_dict(checkpoint["optimizer"])
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valid_accuracies = checkpoint["valid_accuracies"]
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max_bytes = checkpoint["max_bytes"]
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logger.log(
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"=> loading checkpoint of the last-info '{:}' start with {:}-th epoch.".format(
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last_info, start_epoch
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criterion = torch.nn.MSELoss()
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lr_scheduler = torch.optim.lr_scheduler.MultiStepLR(
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optimizer,
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milestones=[
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int(args.epochs * 0.25),
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int(args.epochs * 0.5),
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int(args.epochs * 0.75),
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],
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gamma=0.3,
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)
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)
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elif args.resume is not None:
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assert Path(args.resume).exists(), "Can not find the resume file : {:}".format(
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args.resume
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)
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checkpoint = torch.load(args.resume)
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start_epoch = checkpoint["epoch"] + 1
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base_model.load_state_dict(checkpoint["base-model"])
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scheduler.load_state_dict(checkpoint["scheduler"])
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optimizer.load_state_dict(checkpoint["optimizer"])
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valid_accuracies = checkpoint["valid_accuracies"]
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max_bytes = checkpoint["max_bytes"]
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logger.log(
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"=> loading checkpoint from '{:}' start with {:}-th epoch.".format(
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args.resume, start_epoch
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)
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)
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elif args.init_model is not None:
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assert Path(
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args.init_model
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).exists(), "Can not find the initialization file : {:}".format(args.init_model)
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checkpoint = torch.load(args.init_model)
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base_model.load_state_dict(checkpoint["base-model"])
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start_epoch, valid_accuracies, max_bytes = 0, {"best": -1}, {}
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logger.log("=> initialize the model from {:}".format(args.init_model))
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else:
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logger.log("=> do not find the last-info file : {:}".format(last_info))
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start_epoch, valid_accuracies, max_bytes = 0, {"best": -1}, {}
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train_func, valid_func = get_procedures(args.procedure)
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total_epoch = optim_config.epochs + optim_config.warmup
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# Main Training and Evaluation Loop
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start_time = time.time()
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epoch_time = AverageMeter()
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for epoch in range(start_epoch, total_epoch):
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scheduler.update(epoch, 0.0)
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need_time = "Time Left: {:}".format(
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convert_secs2time(epoch_time.avg * (total_epoch - epoch), True)
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)
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epoch_str = "epoch={:03d}/{:03d}".format(epoch, total_epoch)
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LRs = scheduler.get_lr()
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find_best = False
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# set-up drop-out ratio
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if hasattr(base_model, "update_drop_path"):
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base_model.update_drop_path(
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model_config.drop_path_prob * epoch / total_epoch
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)
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logger.log(
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"\n***{:s}*** start {:s} {:s}, LR=[{:.6f} ~ {:.6f}], scheduler={:}".format(
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time_string(), epoch_str, need_time, min(LRs), max(LRs), scheduler
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)
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)
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# train for one epoch
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train_loss, train_acc1, train_acc5 = train_func(
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train_loader,
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network,
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criterion,
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scheduler,
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optimizer,
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optim_config,
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epoch_str,
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args.print_freq,
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logger,
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)
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# log the results
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logger.log(
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"***{:s}*** TRAIN [{:}] loss = {:.6f}, accuracy-1 = {:.2f}, accuracy-5 = {:.2f}".format(
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time_string(), epoch_str, train_loss, train_acc1, train_acc5
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)
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)
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# evaluate the performance
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if (epoch % args.eval_frequency == 0) or (epoch + 1 == total_epoch):
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logger.log("-" * 150)
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valid_loss, valid_acc1, valid_acc5 = valid_func(
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valid_loader,
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network,
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criterion,
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optim_config,
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epoch_str,
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args.print_freq_eval,
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logger,
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)
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valid_accuracies[epoch] = valid_acc1
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logger.log(
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"***{:s}*** VALID [{:}] loss = {:.6f}, accuracy@1 = {:.2f}, accuracy@5 = {:.2f} | Best-Valid-Acc@1={:.2f}, Error@1={:.2f}".format(
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time_string(),
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epoch_str,
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valid_loss,
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valid_acc1,
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valid_acc5,
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valid_accuracies["best"],
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100 - valid_accuracies["best"],
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for _iepoch in range(args.epochs):
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results = basic_train_fn(
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train_loader, model, criterion, optimizer, MSEMetric(), logger
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)
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)
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if valid_acc1 > valid_accuracies["best"]:
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valid_accuracies["best"] = valid_acc1
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find_best = True
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logger.log(
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"Currently, the best validation accuracy found at {:03d}-epoch :: acc@1={:.2f}, acc@5={:.2f}, error@1={:.2f}, error@5={:.2f}, save into {:}.".format(
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epoch,
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valid_acc1,
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valid_acc5,
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100 - valid_acc1,
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100 - valid_acc5,
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model_best_path,
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lr_scheduler.step()
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if _iepoch % args.log_per_epoch == 0:
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log_str = (
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"[{:}]".format(time_string())
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+ " [{:04d}/{:04d}][{:04d}/{:04d}]".format(
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idx, len(dynamic_env), _iepoch, args.epochs
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)
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+ " mse: {:.5f}, lr: {:.4f}".format(
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results["mse"], min(lr_scheduler.get_last_lr())
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)
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)
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)
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num_bytes = (
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torch.cuda.max_memory_cached(next(network.parameters()).device) * 1.0
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)
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logger.log(log_str)
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results = basic_eval_fn(train_loader, model, MSEMetric(), logger)
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logger.log(
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"[GPU-Memory-Usage on {:} is {:} bytes, {:.2f} KB, {:.2f} MB, {:.2f} GB.]".format(
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next(network.parameters()).device,
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int(num_bytes),
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num_bytes / 1e3,
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num_bytes / 1e6,
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num_bytes / 1e9,
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"[{:}] [{:04d}/{:04d}] train-mse: {:.5f}".format(
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time_string(), idx, len(dynamic_env), results["mse"]
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)
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)
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max_bytes[epoch] = num_bytes
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if epoch % 10 == 0:
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torch.cuda.empty_cache()
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# save checkpoint
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save_path = save_checkpoint(
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{
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"epoch": epoch,
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"args": deepcopy(args),
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"max_bytes": deepcopy(max_bytes),
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"FLOP": flop,
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"PARAM": param,
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"valid_accuracies": deepcopy(valid_accuracies),
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"model-config": model_config._asdict(),
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"optim-config": optim_config._asdict(),
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"base-model": base_model.state_dict(),
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"scheduler": scheduler.state_dict(),
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"optimizer": optimizer.state_dict(),
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},
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model_base_path,
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logger,
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metric = ComposeMetric(MSEMetric(), SaveMetric())
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eval_dataset = torch.utils.data.TensorDataset(allx, ally)
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eval_loader = torch.utils.data.DataLoader(
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eval_dataset,
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batch_size=args.batch_size,
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shuffle=False,
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num_workers=args.workers,
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)
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if find_best:
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copy_checkpoint(model_base_path, model_best_path, logger)
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last_info = save_checkpoint(
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{
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"epoch": epoch,
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"args": deepcopy(args),
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"last_checkpoint": save_path,
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},
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logger.path("info"),
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results = basic_eval_fn(eval_loader, model, metric, logger)
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log_str = (
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"[{:}]".format(time_string())
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+ " [{:04d}/{:04d}]".format(idx, len(dynamic_env))
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+ " eval-mse: {:.5f}".format(results["mse"])
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)
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logger.log(log_str)
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save_path = logger.path(None) / "{:04d}-{:04d}.pth".format(
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idx, len(dynamic_env)
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)
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save_checkpoint(
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{"model": model.state_dict(), "index": idx, "timestamp": timestamp},
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save_path,
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logger,
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)
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# measure elapsed time
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epoch_time.update(time.time() - start_time)
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start_time = time.time()
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# Update historical data
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if historical_x is None:
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historical_x, historical_y = allx, ally
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else:
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historical_x, historical_y = torch.cat((historical_x, allx)), torch.cat(
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(historical_y, ally)
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)
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logger.log("")
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logger.log("\n" + "-" * 200)
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logger.log(
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"Finish training/validation in {:} with Max-GPU-Memory of {:.2f} MB, and save final checkpoint into {:}".format(
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convert_secs2time(epoch_time.sum, True),
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max(v for k, v in max_bytes.items()) / 1e6,
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logger.path("info"),
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)
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)
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logger.log("-" * 200 + "\n")
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logger.close()
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@@ -287,11 +126,35 @@ if __name__ == "__main__":
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default="./outputs/lfna-synthetic/use-all-past-data",
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help="The checkpoint directory.",
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)
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parser.add_argument(
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"--init_lr",
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type=float,
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default=0.1,
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help="The initial learning rate for the optimizer (default is Adam)",
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)
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parser.add_argument(
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"--batch_size",
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type=int,
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default=256,
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help="The batch size",
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)
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parser.add_argument(
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"--epochs",
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type=int,
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default=2000,
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help="The total number of epochs.",
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)
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parser.add_argument(
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"--log_per_epoch",
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type=int,
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default=200,
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help="Log the training information per __ epochs.",
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)
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parser.add_argument(
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"--workers",
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type=int,
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default=8,
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help="number of data loading workers (default: 8)",
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default=4,
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help="The number of data loading workers (default: 4)",
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)
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# Random Seed
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parser.add_argument("--rand_seed", type=int, default=-1, help="manual seed")
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Block a user