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# Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2019.01 #
#####################################################
import sys, time, torch, random, argparse
from PIL import ImageFile
from os import path as osp

ImageFile.LOAD_TRUNCATED_IMAGES = True
import numpy as np
from copy import deepcopy
from pathlib import Path

lib_dir = (Path(__file__).parent / ".." / "lib").resolve()
print("lib_dir : {:}".format(lib_dir))
if str(lib_dir) not in sys.path:
    sys.path.insert(0, str(lib_dir))
from config_utils import load_config, configure2str, obtain_search_single_args as obtain_args
from procedures import prepare_seed, prepare_logger, save_checkpoint, copy_checkpoint
from procedures import get_optim_scheduler, get_procedures
from datasets import get_datasets, SearchDataset
from models import obtain_search_model, obtain_model, change_key
from utils import get_model_infos
from log_utils import AverageMeter, time_string, convert_secs2time


def main(args):
    assert torch.cuda.is_available(), "CUDA is not available."
    torch.backends.cudnn.enabled = True
    torch.backends.cudnn.benchmark = True
    # torch.backends.cudnn.deterministic = True
    torch.set_num_threads(args.workers)

    prepare_seed(args.rand_seed)
    logger = prepare_logger(args)

    # prepare dataset
    train_data, valid_data, xshape, class_num = get_datasets(args.dataset, args.data_path, args.cutout_length)
    # train_loader = torch.utils.data.DataLoader(train_data, batch_size=args.batch_size, shuffle=True , num_workers=args.workers, pin_memory=True)
    valid_loader = torch.utils.data.DataLoader(
        valid_data, batch_size=args.batch_size, shuffle=False, num_workers=args.workers, pin_memory=True
    )

    split_file_path = Path(args.split_path)
    assert split_file_path.exists(), "{:} does not exist".format(split_file_path)
    split_info = torch.load(split_file_path)

    train_split, valid_split = split_info["train"], split_info["valid"]
    assert (
        len(set(train_split).intersection(set(valid_split))) == 0
    ), "There should be 0 element that belongs to both train and valid"
    assert len(train_split) + len(valid_split) == len(train_data), "{:} + {:} vs {:}".format(
        len(train_split), len(valid_split), len(train_data)
    )
    search_dataset = SearchDataset(args.dataset, train_data, train_split, valid_split)

    search_train_loader = torch.utils.data.DataLoader(
        train_data,
        batch_size=args.batch_size,
        sampler=torch.utils.data.sampler.SubsetRandomSampler(train_split),
        pin_memory=True,
        num_workers=args.workers,
    )
    search_valid_loader = torch.utils.data.DataLoader(
        train_data,
        batch_size=args.batch_size,
        sampler=torch.utils.data.sampler.SubsetRandomSampler(valid_split),
        pin_memory=True,
        num_workers=args.workers,
    )
    search_loader = torch.utils.data.DataLoader(
        search_dataset,
        batch_size=args.batch_size,
        shuffle=True,
        num_workers=args.workers,
        pin_memory=True,
        sampler=None,
    )
    # get configures
    model_config = load_config(args.model_config, {"class_num": class_num, "search_mode": args.search_shape}, logger)

    # obtain the model
    search_model = obtain_search_model(model_config)
    MAX_FLOP, param = get_model_infos(search_model, xshape)
    optim_config = load_config(args.optim_config, {"class_num": class_num, "FLOP": MAX_FLOP}, logger)
    logger.log("Model Information : {:}".format(search_model.get_message()))
    logger.log("MAX_FLOP = {:} M".format(MAX_FLOP))
    logger.log("Params   = {:} M".format(param))
    logger.log("train_data : {:}".format(train_data))
    logger.log("search-data: {:}".format(search_dataset))
    logger.log("search_train_loader : {:} samples".format(len(train_split)))
    logger.log("search_valid_loader : {:} samples".format(len(valid_split)))
    base_optimizer, scheduler, criterion = get_optim_scheduler(search_model.base_parameters(), optim_config)
    arch_optimizer = torch.optim.Adam(
        search_model.arch_parameters(),
        lr=optim_config.arch_LR,
        betas=(0.5, 0.999),
        weight_decay=optim_config.arch_decay,
    )
    logger.log("base-optimizer : {:}".format(base_optimizer))
    logger.log("arch-optimizer : {:}".format(arch_optimizer))
    logger.log("scheduler      : {:}".format(scheduler))
    logger.log("criterion      : {:}".format(criterion))

    last_info, model_base_path, model_best_path = logger.path("info"), logger.path("model"), logger.path("best")
    network, criterion = torch.nn.DataParallel(search_model).cuda(), criterion.cuda()

    # load checkpoint
    if last_info.exists() or (
        args.resume is not None and osp.isfile(args.resume)
    ):  # automatically resume from previous checkpoint
        if args.resume is not None and osp.isfile(args.resume):
            resume_path = Path(args.resume)
        elif last_info.exists():
            resume_path = last_info
        else:
            raise ValueError("Something is wrong.")
        logger.log("=> loading checkpoint of the last-info '{:}' start".format(resume_path))
        checkpoint = torch.load(resume_path)
        if "last_checkpoint" in checkpoint:
            last_checkpoint_path = checkpoint["last_checkpoint"]
            if not last_checkpoint_path.exists():
                logger.log("Does not find {:}, try another path".format(last_checkpoint_path))
                last_checkpoint_path = resume_path.parent / last_checkpoint_path.parent.name / last_checkpoint_path.name
            assert last_checkpoint_path.exists(), "can not find the checkpoint from {:}".format(last_checkpoint_path)
            checkpoint = torch.load(last_checkpoint_path)
        start_epoch = checkpoint["epoch"] + 1
        search_model.load_state_dict(checkpoint["search_model"])
        scheduler.load_state_dict(checkpoint["scheduler"])
        base_optimizer.load_state_dict(checkpoint["base_optimizer"])
        arch_optimizer.load_state_dict(checkpoint["arch_optimizer"])
        valid_accuracies = checkpoint["valid_accuracies"]
        arch_genotypes = checkpoint["arch_genotypes"]
        discrepancies = checkpoint["discrepancies"]
        logger.log(
            "=> loading checkpoint of the last-info '{:}' start with {:}-th epoch.".format(resume_path, start_epoch)
        )
    else:
        logger.log("=> do not find the last-info file : {:} or resume : {:}".format(last_info, args.resume))
        start_epoch, valid_accuracies, arch_genotypes, discrepancies = 0, {"best": -1}, {}, {}

    # main procedure
    train_func, valid_func = get_procedures(args.procedure)
    total_epoch = optim_config.epochs + optim_config.warmup
    start_time, epoch_time = time.time(), AverageMeter()
    for epoch in range(start_epoch, total_epoch):
        scheduler.update(epoch, 0.0)
        search_model.set_tau(args.gumbel_tau_max, args.gumbel_tau_min, epoch * 1.0 / total_epoch)
        need_time = "Time Left: {:}".format(convert_secs2time(epoch_time.avg * (total_epoch - epoch), True))
        epoch_str = "epoch={:03d}/{:03d}".format(epoch, total_epoch)
        LRs = scheduler.get_lr()
        find_best = False

        logger.log(
            "\n***{:s}*** start {:s} {:s}, LR=[{:.6f} ~ {:.6f}], scheduler={:}, tau={:}, FLOP={:.2f}".format(
                time_string(), epoch_str, need_time, min(LRs), max(LRs), scheduler, search_model.tau, MAX_FLOP
            )
        )

        # train for one epoch
        train_base_loss, train_arch_loss, train_acc1, train_acc5 = train_func(
            search_loader,
            network,
            criterion,
            scheduler,
            base_optimizer,
            arch_optimizer,
            optim_config,
            {
                "epoch-str": epoch_str,
                "FLOP-exp": MAX_FLOP * args.FLOP_ratio,
                "FLOP-weight": args.FLOP_weight,
                "FLOP-tolerant": MAX_FLOP * args.FLOP_tolerant,
            },
            args.print_freq,
            logger,
        )
        # log the results
        logger.log(
            "***{:s}*** TRAIN [{:}] base-loss = {:.6f}, arch-loss = {:.6f}, accuracy-1 = {:.2f}, accuracy-5 = {:.2f}".format(
                time_string(), epoch_str, train_base_loss, train_arch_loss, train_acc1, train_acc5
            )
        )
        cur_FLOP, genotype = search_model.get_flop("genotype", model_config._asdict(), None)
        arch_genotypes[epoch] = genotype
        arch_genotypes["last"] = genotype
        logger.log("[{:}] genotype : {:}".format(epoch_str, genotype))
        arch_info, discrepancy = search_model.get_arch_info()
        logger.log(arch_info)
        discrepancies[epoch] = discrepancy
        logger.log(
            "[{:}] FLOP : {:.2f} MB, ratio : {:.4f}, Expected-ratio : {:.4f}, Discrepancy : {:.3f}".format(
                epoch_str, cur_FLOP, cur_FLOP / MAX_FLOP, args.FLOP_ratio, np.mean(discrepancy)
            )
        )

        # if cur_FLOP/MAX_FLOP > args.FLOP_ratio:
        #  init_flop_weight = init_flop_weight * args.FLOP_decay
        # else:
        #  init_flop_weight = init_flop_weight / args.FLOP_decay

        # evaluate the performance
        if (epoch % args.eval_frequency == 0) or (epoch + 1 == total_epoch):
            logger.log("-" * 150)
            valid_loss, valid_acc1, valid_acc5 = valid_func(
                search_valid_loader, network, criterion, epoch_str, args.print_freq_eval, logger
            )
            valid_accuracies[epoch] = valid_acc1
            logger.log(
                "***{:s}*** VALID [{:}] loss = {:.6f}, accuracy@1 = {:.2f}, accuracy@5 = {:.2f} | Best-Valid-Acc@1={:.2f}, Error@1={:.2f}".format(
                    time_string(),
                    epoch_str,
                    valid_loss,
                    valid_acc1,
                    valid_acc5,
                    valid_accuracies["best"],
                    100 - valid_accuracies["best"],
                )
            )
            if valid_acc1 > valid_accuracies["best"]:
                valid_accuracies["best"] = valid_acc1
                arch_genotypes["best"] = genotype
                find_best = True
                logger.log(
                    "Currently, the best validation accuracy found at {:03d}-epoch :: acc@1={:.2f}, acc@5={:.2f}, error@1={:.2f}, error@5={:.2f}, save into {:}.".format(
                        epoch, valid_acc1, valid_acc5, 100 - valid_acc1, 100 - valid_acc5, model_best_path
                    )
                )

        # save checkpoint
        save_path = save_checkpoint(
            {
                "epoch": epoch,
                "args": deepcopy(args),
                "valid_accuracies": deepcopy(valid_accuracies),
                "model-config": model_config._asdict(),
                "optim-config": optim_config._asdict(),
                "search_model": search_model.state_dict(),
                "scheduler": scheduler.state_dict(),
                "base_optimizer": base_optimizer.state_dict(),
                "arch_optimizer": arch_optimizer.state_dict(),
                "arch_genotypes": arch_genotypes,
                "discrepancies": discrepancies,
            },
            model_base_path,
            logger,
        )
        if find_best:
            copy_checkpoint(model_base_path, model_best_path, logger)
        last_info = save_checkpoint(
            {
                "epoch": epoch,
                "args": deepcopy(args),
                "last_checkpoint": save_path,
            },
            logger.path("info"),
            logger,
        )

        # measure elapsed time
        epoch_time.update(time.time() - start_time)
        start_time = time.time()

    logger.log("")
    logger.log("-" * 100)
    last_config_path = logger.path("log") / "seed-{:}-last.config".format(args.rand_seed)
    configure2str(arch_genotypes["last"], str(last_config_path))
    logger.log("save the last config int {:} :\n{:}".format(last_config_path, arch_genotypes["last"]))

    best_arch, valid_acc = arch_genotypes["best"], valid_accuracies["best"]
    for key, config in arch_genotypes.items():
        if key == "last":
            continue
        FLOP_ratio = config["estimated_FLOP"] / MAX_FLOP
        if abs(FLOP_ratio - args.FLOP_ratio) <= args.FLOP_tolerant:
            if valid_acc < valid_accuracies[key]:
                best_arch, valid_acc = config, valid_accuracies[key]
    print(
        "Best-Arch : {:}\nRatio={:}, Valid-ACC={:}".format(best_arch, best_arch["estimated_FLOP"] / MAX_FLOP, valid_acc)
    )
    best_config_path = logger.path("log") / "seed-{:}-best.config".format(args.rand_seed)
    configure2str(best_arch, str(best_config_path))
    logger.log("save the last config int {:} :\n{:}".format(best_config_path, best_arch))
    logger.log("\n" + "-" * 200)
    logger.log(
        "Finish training/validation in {:}, and save final checkpoint into {:}".format(
            convert_secs2time(epoch_time.sum, True), logger.path("info")
        )
    )
    logger.close()


if __name__ == "__main__":
    args = obtain_args()
    main(args)