Example #1
0
def compute_time_train(model, loss_fun):
    """Computes precise model forward + backward time using dummy data."""
    # Use train mode
    model.train()
    # Generate a dummy mini-batch and copy data to GPU
    im_size, batch_size = cfg.TRAIN.IM_SIZE, int(cfg.TRAIN.BATCH_SIZE / cfg.NUM_GPUS)
    inputs = torch.rand(batch_size, 3, im_size, im_size).cuda(non_blocking=False)
    labels = torch.zeros(batch_size, dtype=torch.int64).cuda(non_blocking=False)
    # Cache BatchNorm2D running stats
    bns = [m for m in model.modules() if isinstance(m, torch.nn.BatchNorm2d)]
    bn_stats = [[bn.running_mean.clone(), bn.running_var.clone()] for bn in bns]
    # Compute precise forward backward pass time
    fw_timer, bw_timer = Timer(), Timer()
    total_iter = cfg.PREC_TIME.NUM_ITER + cfg.PREC_TIME.WARMUP_ITER
    for cur_iter in range(total_iter):
        # Reset the timers after the warmup phase
        if cur_iter == cfg.PREC_TIME.WARMUP_ITER:
            fw_timer.reset()
            bw_timer.reset()
        # Forward
        fw_timer.tic()
        _, preds, _ = model(inputs)
        loss = loss_fun(preds, labels)
        torch.cuda.synchronize()
        fw_timer.toc()
        # Backward
        bw_timer.tic()
        loss.backward()
        torch.cuda.synchronize()
        bw_timer.toc()
    # Restore BatchNorm2D running stats
    for bn, (mean, var) in zip(bns, bn_stats):
        bn.running_mean, bn.running_var = mean, var
    return fw_timer.average_time, bw_timer.average_time
Example #2
0
def compute_time_loader(data_loader):
    """Computes loader time."""
    timer = Timer()
    loader.shuffle(data_loader, 0)
    data_loader_iterator = iter(data_loader)
    total_iter = cfg.PREC_TIME.NUM_ITER + cfg.PREC_TIME.WARMUP_ITER
    total_iter = min(total_iter, len(data_loader))
    for cur_iter in range(total_iter):
        if cur_iter == cfg.PREC_TIME.WARMUP_ITER:
            timer.reset()
        timer.tic()
        next(data_loader_iterator)
        timer.toc()
    return timer.average_time
Example #3
0
def compute_time_eval(model):
    """Computes precise model forward test time using dummy data."""
    # Use eval mode
    model.eval()
    # Generate a dummy mini-batch and copy data to GPU
    im_size, batch_size = cfg.TRAIN.IM_SIZE, int(cfg.TEST.BATCH_SIZE / cfg.NUM_GPUS)
    inputs = torch.zeros(batch_size, 3, im_size, im_size).cuda(non_blocking=False)
    # Compute precise forward pass time
    timer = Timer()
    total_iter = cfg.PREC_TIME.NUM_ITER + cfg.PREC_TIME.WARMUP_ITER
    for cur_iter in range(total_iter):
        # Reset the timers after the warmup phase
        if cur_iter == cfg.PREC_TIME.WARMUP_ITER:
            timer.reset()
        # Forward
        timer.tic()
        model(inputs)
        torch.cuda.synchronize()
        timer.toc()
    return timer.average_time
Example #4
0
class TrainMeter(object):
    """Measures training stats."""
    def __init__(self, epoch_iters):
        self.epoch_iters = epoch_iters
        self.max_iter = cfg.OPTIM.MAX_EPOCH * epoch_iters
        self.iter_timer = Timer()
        self.desc_loss = ScalarMeter(cfg.LOG_PERIOD)
        self.desc_loss_total = 0.0
        self.att_loss = ScalarMeter(cfg.LOG_PERIOD)
        self.att_loss_total = 0.0
        self.lr = None
        # Current minibatch errors (smoothed over a window)
        self.mb_top1_err = ScalarMeter(cfg.LOG_PERIOD)
        self.mb_top5_err = ScalarMeter(cfg.LOG_PERIOD)
        self.mb_att_top1_err = ScalarMeter(cfg.LOG_PERIOD)
        self.mb_att_top5_err = ScalarMeter(cfg.LOG_PERIOD)
        # Number of misclassified examples
        self.num_top1_mis = 0
        self.num_top5_mis = 0
        self.num_att_top1_mis = 0
        self.num_att_top5_mis = 0
        self.num_samples = 0

    def reset(self, timer=False):
        if timer:
            self.iter_timer.reset()
        self.desc_loss.reset()
        self.att_loss.reset()
        self.desc_loss_total = 0.0
        self.att_loss_total = 0.0
        self.lr = None
        self.mb_top1_err.reset()
        self.mb_top5_err.reset()
        self.mb_att_top1_err = ScalarMeter(cfg.LOG_PERIOD)
        self.mb_att_top5_err = ScalarMeter(cfg.LOG_PERIOD)
        self.num_top1_mis = 0
        self.num_top5_mis = 0
        self.num_att_top1_mis = 0
        self.num_att_top5_mis = 0
        self.num_samples = 0

    def iter_tic(self):
        self.iter_timer.tic()

    def iter_toc(self):
        self.iter_timer.toc()

    def update_stats(self, desc_top1_err, desc_top5_err, att_top1_err,
                     att_top5_err, desc_loss, att_loss, lr, mb_size):
        # Current minibatch stats
        self.mb_top1_err.add_value(desc_top1_err)
        self.mb_top5_err.add_value(desc_top5_err)
        self.desc_loss.add_value(desc_loss)

        self.mb_att_top1_err.add_value(att_top1_err)
        self.mb_att_top5_err.add_value(att_top5_err)
        self.att_loss.add_value(att_loss)

        self.lr = lr
        # Aggregate stats
        self.num_top1_mis += desc_top1_err * mb_size
        self.num_top5_mis += desc_top5_err * mb_size
        self.num_att_top1_mis += att_top1_err * mb_size
        self.num_att_top5_mis += att_top5_err * mb_size
        self.desc_loss_total += desc_loss * mb_size
        self.att_loss_total += att_loss * mb_size
        self.num_samples += mb_size

    def get_iter_stats(self, cur_epoch, cur_iter):
        cur_iter_total = cur_epoch * self.epoch_iters + cur_iter + 1
        eta_sec = self.iter_timer.average_time * (self.max_iter -
                                                  cur_iter_total)
        mem_usage = gpu_mem_usage()
        stats = {
            "epoch": "{}/{}".format(cur_epoch + 1, cfg.OPTIM.MAX_EPOCH),
            "iter": "{}/{}".format(cur_iter + 1, self.epoch_iters),
            "time_avg": self.iter_timer.average_time,
            "time_diff": self.iter_timer.diff,
            "eta": time_string(eta_sec),
            "desc_top1_err": self.mb_top1_err.get_win_median(),
            "desc_top5_err": self.mb_top5_err.get_win_median(),
            "desc_loss": self.desc_loss.get_win_median(),
            "att_top1_err": self.mb_att_top1_err.get_win_median(),
            "att_top5_err": self.mb_att_top5_err.get_win_median(),
            "att_loss": self.att_loss.get_win_median(),
            "lr": self.lr,
            "mem": int(np.ceil(mem_usage)),
        }
        return stats

    def log_iter_stats(self, cur_epoch, cur_iter):
        if (cur_iter + 1) % cfg.LOG_PERIOD != 0:
            return
        stats = self.get_iter_stats(cur_epoch, cur_iter)
        logger.info(logging.dump_log_data(stats, "train_iter"))

    def get_epoch_stats(self, cur_epoch):
        cur_iter_total = (cur_epoch + 1) * self.epoch_iters
        eta_sec = self.iter_timer.average_time * (self.max_iter -
                                                  cur_iter_total)
        mem_usage = gpu_mem_usage()
        desc_top1_err = self.num_top1_mis / self.num_samples
        desc_top5_err = self.num_top5_mis / self.num_samples
        desc_avg_loss = self.desc_loss_total / self.num_samples
        att_top1_err = self.num_att_top1_mis / self.num_samples
        att_top5_err = self.num_att_top5_mis / self.num_samples
        att_avg_loss = self.att_loss_total / self.num_samples
        stats = {
            "epoch": "{}/{}".format(cur_epoch + 1, cfg.OPTIM.MAX_EPOCH),
            "time_avg": self.iter_timer.average_time,
            "eta": time_string(eta_sec),
            "desc_top1_err": desc_top1_err,
            "desc_top5_err": desc_top5_err,
            "desc_loss": desc_avg_loss,
            "att_top1_err": att_top1_err,
            "att_top5_err": att_top5_err,
            "att_loss": att_avg_loss,
            "lr": self.lr,
            "mem": int(np.ceil(mem_usage)),
        }
        return stats

    def log_epoch_stats(self, cur_epoch):
        stats = self.get_epoch_stats(cur_epoch)
        logger.info(logging.dump_log_data(stats, "train_epoch"))
Example #5
0
class TestMeter(object):
    """Measures testing stats (only desc)."""
    def __init__(self, max_iter):
        self.max_iter = max_iter
        self.iter_timer = Timer()
        # Current minibatch errors (smoothed over a window)
        self.mb_top1_err = ScalarMeter(cfg.LOG_PERIOD)
        self.mb_top5_err = ScalarMeter(cfg.LOG_PERIOD)
        # Min errors (over the full test set)
        self.min_top1_err = 100.0
        self.min_top5_err = 100.0
        # Number of misclassified examples
        self.num_top1_mis = 0
        self.num_top5_mis = 0
        self.num_samples = 0

    def reset(self, min_errs=False):
        if min_errs:
            self.min_top1_err = 100.0
            self.min_top5_err = 100.0
        self.iter_timer.reset()
        self.mb_top1_err.reset()
        self.mb_top5_err.reset()
        self.num_top1_mis = 0
        self.num_top5_mis = 0
        self.num_samples = 0

    def iter_tic(self):
        self.iter_timer.tic()

    def iter_toc(self):
        self.iter_timer.toc()

    def update_stats(self, top1_err, top5_err, mb_size):
        self.mb_top1_err.add_value(top1_err)
        self.mb_top5_err.add_value(top5_err)
        self.num_top1_mis += top1_err * mb_size
        self.num_top5_mis += top5_err * mb_size
        self.num_samples += mb_size

    def get_iter_stats(self, cur_epoch, cur_iter):
        mem_usage = gpu_mem_usage()
        iter_stats = {
            "epoch": "{}/{}".format(cur_epoch + 1, cfg.OPTIM.MAX_EPOCH),
            "iter": "{}/{}".format(cur_iter + 1, self.max_iter),
            "time_avg": self.iter_timer.average_time,
            "time_diff": self.iter_timer.diff,
            "top1_err": self.mb_top1_err.get_win_median(),
            "top5_err": self.mb_top5_err.get_win_median(),
            "mem": int(np.ceil(mem_usage)),
        }
        return iter_stats

    def log_iter_stats(self, cur_epoch, cur_iter):
        if (cur_iter + 1) % cfg.LOG_PERIOD != 0:
            return
        stats = self.get_iter_stats(cur_epoch, cur_iter)
        logger.info(logging.dump_log_data(stats, "test_iter"))

    def get_epoch_stats(self, cur_epoch):
        top1_err = self.num_top1_mis / self.num_samples
        top5_err = self.num_top5_mis / self.num_samples
        self.min_top1_err = min(self.min_top1_err, top1_err)
        self.min_top5_err = min(self.min_top5_err, top5_err)
        mem_usage = gpu_mem_usage()
        stats = {
            "epoch": "{}/{}".format(cur_epoch + 1, cfg.OPTIM.MAX_EPOCH),
            "time_avg": self.iter_timer.average_time,
            "top1_err": top1_err,
            "top5_err": top5_err,
            "min_top1_err": self.min_top1_err,
            "min_top5_err": self.min_top5_err,
            "mem": int(np.ceil(mem_usage)),
        }
        return stats

    def log_epoch_stats(self, cur_epoch):
        stats = self.get_epoch_stats(cur_epoch)
        logger.info(logging.dump_log_data(stats, "test_epoch"))