##################################################
# Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2019 #
##################################################
import os, sys, time, torch
from log_utils import AverageMeter, time_string
from utils import obtain_accuracy
from models import change_key


def get_flop_loss(expected_flop, flop_cur, flop_need, flop_tolerant):
    expected_flop = torch.mean(expected_flop)

    if flop_cur < flop_need - flop_tolerant:  # Too Small FLOP
        loss = -torch.log(expected_flop)
    # elif flop_cur > flop_need + flop_tolerant: # Too Large FLOP
    elif flop_cur > flop_need:  # Too Large FLOP
        loss = torch.log(expected_flop)
    else:  # Required FLOP
        loss = None
    if loss is None:
        return 0, 0
    else:
        return loss, loss.item()


def search_train_v2(
    search_loader,
    network,
    criterion,
    scheduler,
    base_optimizer,
    arch_optimizer,
    optim_config,
    extra_info,
    print_freq,
    logger,
):
    data_time, batch_time = AverageMeter(), AverageMeter()
    base_losses, arch_losses, top1, top5 = AverageMeter(), AverageMeter(), AverageMeter(), AverageMeter()
    arch_cls_losses, arch_flop_losses = AverageMeter(), AverageMeter()
    epoch_str, flop_need, flop_weight, flop_tolerant = (
        extra_info["epoch-str"],
        extra_info["FLOP-exp"],
        extra_info["FLOP-weight"],
        extra_info["FLOP-tolerant"],
    )

    network.train()
    logger.log("[Search] : {:}, FLOP-Require={:.2f} MB, FLOP-WEIGHT={:.2f}".format(epoch_str, flop_need, flop_weight))
    end = time.time()
    network.apply(change_key("search_mode", "search"))
    for step, (base_inputs, base_targets, arch_inputs, arch_targets) in enumerate(search_loader):
        scheduler.update(None, 1.0 * step / len(search_loader))
        # calculate prediction and loss
        base_targets = base_targets.cuda(non_blocking=True)
        arch_targets = arch_targets.cuda(non_blocking=True)
        # measure data loading time
        data_time.update(time.time() - end)

        # update the weights
        base_optimizer.zero_grad()
        logits, expected_flop = network(base_inputs)
        base_loss = criterion(logits, base_targets)
        base_loss.backward()
        base_optimizer.step()
        # record
        prec1, prec5 = obtain_accuracy(logits.data, base_targets.data, topk=(1, 5))
        base_losses.update(base_loss.item(), base_inputs.size(0))
        top1.update(prec1.item(), base_inputs.size(0))
        top5.update(prec5.item(), base_inputs.size(0))

        # update the architecture
        arch_optimizer.zero_grad()
        logits, expected_flop = network(arch_inputs)
        flop_cur = network.module.get_flop("genotype", None, None)
        flop_loss, flop_loss_scale = get_flop_loss(expected_flop, flop_cur, flop_need, flop_tolerant)
        acls_loss = criterion(logits, arch_targets)
        arch_loss = acls_loss + flop_loss * flop_weight
        arch_loss.backward()
        arch_optimizer.step()

        # record
        arch_losses.update(arch_loss.item(), arch_inputs.size(0))
        arch_flop_losses.update(flop_loss_scale, arch_inputs.size(0))
        arch_cls_losses.update(acls_loss.item(), arch_inputs.size(0))

        # measure elapsed time
        batch_time.update(time.time() - end)
        end = time.time()
        if step % print_freq == 0 or (step + 1) == len(search_loader):
            Sstr = "**TRAIN** " + time_string() + " [{:}][{:03d}/{:03d}]".format(epoch_str, step, len(search_loader))
            Tstr = "Time {batch_time.val:.2f} ({batch_time.avg:.2f}) Data {data_time.val:.2f} ({data_time.avg:.2f})".format(
                batch_time=batch_time, data_time=data_time
            )
            Lstr = "Base-Loss {loss.val:.3f} ({loss.avg:.3f})  Prec@1 {top1.val:.2f} ({top1.avg:.2f}) Prec@5 {top5.val:.2f} ({top5.avg:.2f})".format(
                loss=base_losses, top1=top1, top5=top5
            )
            Vstr = "Acls-loss {aloss.val:.3f} ({aloss.avg:.3f}) FLOP-Loss {floss.val:.3f} ({floss.avg:.3f}) Arch-Loss {loss.val:.3f} ({loss.avg:.3f})".format(
                aloss=arch_cls_losses, floss=arch_flop_losses, loss=arch_losses
            )
            logger.log(Sstr + " " + Tstr + " " + Lstr + " " + Vstr)
            # num_bytes = torch.cuda.max_memory_allocated( next(network.parameters()).device ) * 1.0
            # logger.log(Sstr + ' ' + Tstr + ' ' + Lstr + ' ' + Vstr + ' GPU={:.2f}MB'.format(num_bytes/1e6))
            # Istr = 'Bsz={:} Asz={:}'.format(list(base_inputs.size()), list(arch_inputs.size()))
            # logger.log(Sstr + ' ' + Tstr + ' ' + Lstr + ' ' + Vstr + ' ' + Istr)
            # print(network.module.get_arch_info())
            # print(network.module.width_attentions[0])
            # print(network.module.width_attentions[1])

    logger.log(
        " **TRAIN** Prec@1 {top1.avg:.2f} Prec@5 {top5.avg:.2f} Error@1 {error1:.2f} Error@5 {error5:.2f} Base-Loss:{baseloss:.3f}, Arch-Loss={archloss:.3f}".format(
            top1=top1,
            top5=top5,
            error1=100 - top1.avg,
            error5=100 - top5.avg,
            baseloss=base_losses.avg,
            archloss=arch_losses.avg,
        )
    )
    return base_losses.avg, arch_losses.avg, top1.avg, top5.avg