3DFauna_demo / video3d /trainer_ddp.py
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import os
import os.path as osp
import glob
from datetime import datetime
import random
import torch
import video3d.utils.meters as meters
import video3d.utils.misc as misc
from video3d.dataloaders_ddp import get_sequence_loader_quadrupeds
def sample_frames(batch, num_sample_frames, iteration, stride=1):
## window slicing sampling
images, masks, flows, bboxs, bg_image, seq_idx, frame_idx = batch
num_seqs, total_num_frames = images.shape[:2]
# start_frame_idx = iteration % (total_num_frames - num_sample_frames +1)
## forward and backward
num_windows = total_num_frames - num_sample_frames +1
start_frame_idx = (iteration * stride) % (2*num_windows)
## x' = (2n-1)/2 - |(2n-1)/2 - x| : 0,1,2,3,4,5 -> 0,1,2,2,1,0
mid_val = (2*num_windows -1) /2
start_frame_idx = int(mid_val - abs(mid_val -start_frame_idx))
new_batch = images[:, start_frame_idx:start_frame_idx+num_sample_frames], \
masks[:, start_frame_idx:start_frame_idx+num_sample_frames], \
flows[:, start_frame_idx:start_frame_idx+num_sample_frames-1], \
bboxs[:, start_frame_idx:start_frame_idx+num_sample_frames], \
bg_image, \
seq_idx, \
frame_idx[:, start_frame_idx:start_frame_idx+num_sample_frames]
return new_batch
def indefinite_generator(loader):
while True:
for x in loader:
yield x
def indefinite_generator_from_list(loaders):
while True:
random_idx = random.randint(0, len(loaders)-1)
for x in loaders[random_idx]:
yield x
break
def definite_generator(loader):
for x in loader:
yield x
while True:
yield None
class TrainerDDP:
def __init__(self, cfgs, model):
self.cfgs = cfgs
self.is_dry_run = cfgs.get('is_dry_run', False)
self.rank = cfgs.get('rank', 0)
self.world_size = cfgs.get('world_size', 1)
self.use_ddp = cfgs.get('use_ddp', True)
self.device = cfgs.get('device', 'cpu')
self.num_epochs = cfgs.get('num_epochs', 1)
# The logic is, if the num_iterations is set in the cfg
# for any 'epoch' in cfg, I rescale it to (epoch / 120) * epoch_now, as in horse exp
# for any 'iter' in cfg, I just keep them the same
self.num_iterations = cfgs.get('num_iterations', 0)
if self.num_iterations != 0:
self.use_total_iterations = True
else:
self.use_total_iterations = False
self.num_sample_frames = cfgs.get('num_sample_frames', 100)
self.sample_frame_stride = cfgs.get('sample_frame_stride', 1)
self.checkpoint_dir = cfgs.get('checkpoint_dir', 'results')
self.save_checkpoint_freq = cfgs.get('save_checkpoint_freq', 1)
self.keep_num_checkpoint = cfgs.get('keep_num_checkpoint', 2) # -1 for keeping all checkpoints
self.resume = cfgs.get('resume', True)
self.reset_epoch = cfgs.get('reset_epoch', False)
self.finetune_ckpt = cfgs.get('finetune_ckpt', None)
# print('!!!!!!!!!!!!!!!!!!!!!!!!!!')
print(f'reset epoch: {self.reset_epoch}')
# print('!!!!!!!!!!!!!!!!!!!!!!!!!!')
self.use_logger = cfgs.get('use_logger', True)
self.log_freq_images = cfgs.get('log_freq_images', 1000)
self.log_train_images = cfgs.get('log_train_images', False)
self.log_freq_losses = cfgs.get('log_freq_losses', 100)
self.visualize_validation = cfgs.get('visualize_validation', False)
self.fix_viz_batch = cfgs.get('fix_viz_batch', False)
self.archive_code = cfgs.get('archive_code', True)
self.checkpoint_name = cfgs.get('checkpoint_name', None)
self.test_result_dir = cfgs.get('test_result_dir', None)
self.validate = cfgs.get('validate', False)
self.current_epoch = 0
self.logger = None
self.viz_input = None
self.dataset = cfgs.get('dataset', 'video')
self.train_with_cub = cfgs.get('train_with_cub', False)
self.train_with_kaggle = cfgs.get('train_with_kaggle', False)
self.cub_start_epoch = cfgs.get('cub_start_epoch', 0)
self.metrics_trace = meters.MetricsTrace()
self.make_metrics = lambda m=None: meters.StandardMetrics(m)
self.batch_size = cfgs.get('batch_size', 64)
self.in_image_size = cfgs.get('in_image_size', 256)
self.out_image_size = cfgs.get('out_image_size', 256)
self.num_workers = cfgs.get('num_workers', 4)
self.run_train = cfgs.get('run_train', False)
self.train_data_dir = cfgs.get('train_data_dir', None)
self.val_data_dir = cfgs.get('val_data_dir', None)
self.run_test = cfgs.get('run_test', False)
self.test_data_dir = cfgs.get('test_data_dir', None)
self.flow_bool = cfgs.get('flow_bool', 0)
if len(self.train_data_dir) <= 10 and len(self.val_data_dir) <= 10:
self.train_loader, self.val_loader, self.test_loader = model.get_data_loaders_ddp(cfgs, self.dataset, self.rank, self.world_size, in_image_size=self.in_image_size, out_image_size=self.out_image_size, batch_size=self.batch_size, num_workers=self.num_workers, run_train=self.run_train, run_test=self.run_test, train_data_dir=self.train_data_dir, val_data_dir=self.val_data_dir, test_data_dir=self.test_data_dir, flow_bool=self.flow_bool)
else:
# for 128 categories specific training
self.train_loader, self.val_loader, self.test_loader = self.get_efficient_data_loaders_ddp(
cfgs,
self.batch_size,
self.num_workers,
self.in_image_size,
self.out_image_size
)
print(self.train_loader, self.val_loader, self.test_loader)
if self.train_with_cub:
self.batch_size_cub = cfgs.get('batch_size_cub', 64)
self.data_dir_cub = cfgs.get('data_dir_cub', None)
self.train_loader_cub, self.val_loader_cub, self.test_loader_cub = model.get_data_loaders_ddp(cfgs, 'cub', self.rank, self.world_size, in_image_size=self.in_image_size, batch_size=self.batch_size_cub, num_workers=self.num_workers, run_train=self.run_train, run_test=self.run_test, train_data_dir=self.data_dir_cub, val_data_dir=self.data_dir_cub, test_data_dir=self.data_dir_cub)
if self.train_with_kaggle:
self.batch_size_kaggle = cfgs.get('batch_size_kaggle', 64)
self.data_dir_kaggle = cfgs.get('data_dir_kaggle', None)
self.train_loader_kaggle, self.val_loader_kaggle, self.test_loader_kaggle = model.get_data_loaders_ddp(cfgs, 'kaggle', self.rank, self.world_size, in_image_size=self.in_image_size, batch_size=self.batch_size_kaggle, num_workers=self.num_workers, run_train=self.run_train, run_test=self.run_test, train_data_dir=self.data_dir_kaggle, val_data_dir=self.data_dir_kaggle, test_data_dir=self.data_dir_kaggle)
if self.use_total_iterations:
# reset the epoch related cfgs
dataloader_length = max([len(loader) for loader in self.train_loader]) * len(self.train_loader)
print("Total length of data loader is: ", dataloader_length)
total_epoch = int(self.num_iterations / dataloader_length) + 1
print(f'run for {total_epoch} epochs')
print('is_main_process()?', misc.is_main_process())
for k, v in cfgs.items():
if 'epoch' in k:
if isinstance(v, list):
new_v = [int(total_epoch * x / 120) + 1 for x in v]
cfgs[k] = new_v
elif isinstance(v, int):
new_v = int(total_epoch * v / 120) + 1
cfgs[k] = new_v
else:
continue
self.num_epochs = total_epoch
self.cub_start_epoch = cfgs.get('cub_start_epoch', 0)
self.cfgs = cfgs
self.model = model(cfgs)
self.model.trainer = self
self.save_result_freq = cfgs.get('save_result_freq', None)
self.train_result_dir = osp.join(self.checkpoint_dir, 'results')
self.use_wandb = cfgs.get('use_wandb', False)
def get_efficient_data_loaders_ddp(self, cfgs, batch_size, num_workers, in_image_size, out_image_size):
train_loader = val_loader = test_loader = None
color_jitter_train = cfgs.get('color_jitter_train', None)
color_jitter_val = cfgs.get('color_jitter_val', None)
random_flip_train = cfgs.get('random_flip_train', False)
data_loader_mode = cfgs.get('data_loader_mode', 'n_frame')
skip_beginning = cfgs.get('skip_beginning', 4)
skip_end = cfgs.get('skip_end', 4)
num_sample_frames = cfgs.get('num_sample_frames', 2)
min_seq_len = cfgs.get('min_seq_len', 10)
max_seq_len = cfgs.get('max_seq_len', 10)
debug_seq = cfgs.get('debug_seq', False)
random_sample_train_frames = cfgs.get('random_sample_train_frames', False)
shuffle_train_seqs = cfgs.get('shuffle_train_seqs', False)
random_sample_val_frames = cfgs.get('random_sample_val_frames', False)
load_background = cfgs.get('background_mode', 'none') == 'background'
rgb_suffix = cfgs.get('rgb_suffix', '.png')
load_dino_feature = cfgs.get('load_dino_feature', False)
load_dino_cluster = cfgs.get('load_dino_cluster', False)
dino_feature_dim = cfgs.get('dino_feature_dim', 64)
enhance_back_view = cfgs.get('enhance_back_view', False)
enhance_back_view_path = cfgs.get('enhance_back_view_path', None)
override_categories = None
get_loader_ddp = lambda **kwargs: get_sequence_loader_quadrupeds(
mode=data_loader_mode,
num_workers=num_workers,
in_image_size=in_image_size,
out_image_size=out_image_size,
debug_seq=debug_seq,
skip_beginning=skip_beginning,
skip_end=skip_end,
num_sample_frames=num_sample_frames,
min_seq_len=min_seq_len,
max_seq_len=max_seq_len,
load_background=load_background,
rgb_suffix=rgb_suffix,
load_dino_feature=load_dino_feature,
load_dino_cluster=load_dino_cluster,
dino_feature_dim=dino_feature_dim,
flow_bool=0,
enhance_back_view=enhance_back_view,
enhance_back_view_path=enhance_back_view_path,
override_categories=override_categories,
**kwargs)
# just the train now
print(f"Loading training data...")
val_image_num = cfgs.get('few_shot_val_image_num', 5)
# the train_data_dir is a dict and will go into the original dataset type
#TODO: very hack here, directly assign first 7 as original categories
o_class = ["horse", "elephant", "zebra", "cow", "giraffe", "sheep", "bear"]
self.original_categories_paths = {}
self.few_shot_categories_paths = {}
self.original_val_data_path = {}
for k,v in self.train_data_dir.items():
if k in o_class:
self.original_categories_paths.update({k: v})
self.original_val_data_path.update({k: self.val_data_dir[k]})
else:
self.few_shot_categories_paths.update({k:v})
self.new_classes_num = len(self.few_shot_categories_paths)
self.original_classes_num = len(self.original_categories_paths)
train_loader = get_loader_ddp(
original_data_dirs=self.original_categories_paths,
few_shot_data_dirs=self.few_shot_categories_paths,
original_num=self.original_classes_num,
few_shot_num=self.new_classes_num,
rank=self.rank,
world_size=self.world_size,
batch_size=batch_size,
is_validation=False,
val_image_num=val_image_num,
shuffle=shuffle_train_seqs,
dense_sample=True,
color_jitter=color_jitter_train,
random_flip=random_flip_train
)
val_loader = get_loader_ddp(
original_data_dirs=self.original_val_data_path,
few_shot_data_dirs=self.few_shot_categories_paths,
original_num=self.original_classes_num,
few_shot_num=self.new_classes_num,
rank=self.rank,
world_size=self.world_size,
batch_size=1,
is_validation=True,
val_image_num=val_image_num,
shuffle=False,
dense_sample=True,
color_jitter=color_jitter_val,
random_flip=False
)
test_loader = None
return train_loader, val_loader, test_loader
def load_checkpoint(self, optim=True, ckpt_path=None):
"""Search the specified/latest checkpoint in checkpoint_dir and load the model and optimizer."""
if ckpt_path is not None:
checkpoint_path = ckpt_path
self.checkpoint_name = osp.basename(checkpoint_path)
elif self.checkpoint_name is not None:
checkpoint_path = osp.join(self.checkpoint_dir, self.checkpoint_name)
else:
checkpoints = sorted(glob.glob(osp.join(self.checkpoint_dir, '*.pth')))
if len(checkpoints) == 0:
return 0, 0
checkpoint_path = checkpoints[-1]
self.checkpoint_name = osp.basename(checkpoint_path)
print(f"Loading checkpoint from {checkpoint_path}")
cp = torch.load(checkpoint_path, map_location=self.device)
# print(cp)
self.model.load_model_state(cp)
if optim:
self.model.load_optimizer_state(cp)
self.metrics_trace = cp['metrics_trace']
epoch = cp['epoch']
total_iter = cp['total_iter']
if 'classes_vectors' in cp:
self.model.classes_vectors = cp['classes_vectors']
return epoch, total_iter
def save_checkpoint(self, epoch, total_iter=0, optim=True):
"""Save model, optimizer, and metrics state to a checkpoint in checkpoint_dir for the specified epoch."""
misc.xmkdir(self.checkpoint_dir)
checkpoint_path = osp.join(self.checkpoint_dir, f'checkpoint{epoch:03}.pth')
state_dict = self.model.get_model_state()
if optim:
optimizer_state = self.model.get_optimizer_state()
state_dict = {**state_dict, **optimizer_state}
state_dict['metrics_trace'] = self.metrics_trace
state_dict['epoch'] = epoch
state_dict['total_iter'] = total_iter
print(f"Saving checkpoint to {checkpoint_path}")
torch.save(state_dict, checkpoint_path)
if self.keep_num_checkpoint > 0:
misc.clean_checkpoint(self.checkpoint_dir, keep_num=self.keep_num_checkpoint)
def save_last_checkpoint(self, epoch, total_iter=0, optim=True):
"""Save model, optimizer, and metrics state to a checkpoint in checkpoint_dir for the specified epoch."""
misc.xmkdir(self.checkpoint_dir)
checkpoint_path = osp.join(self.checkpoint_dir, 'last.pth')
if os.path.exists(checkpoint_path):
os.remove(checkpoint_path)
state_dict = self.model.get_model_state()
if optim:
optimizer_state = self.model.get_optimizer_state()
state_dict = {**state_dict, **optimizer_state}
state_dict['metrics_trace'] = self.metrics_trace
state_dict['epoch'] = epoch
state_dict['total_iter'] = total_iter
print(f"Saving checkpoint to {checkpoint_path}")
torch.save(state_dict, checkpoint_path)
def save_clean_checkpoint(self, path):
"""Save model state only to specified path."""
torch.save(self.model.get_model_state(), path)
def test(self):
"""Perform testing."""
self.model.to(self.device)
epoch, self.total_iter = self.load_checkpoint(optim=False)
if self.use_ddp:
self.model.ddp(self.rank, self.world_size)
self.model.set_eval()
if self.test_result_dir is None:
self.test_result_dir = osp.join(self.checkpoint_dir, f'test_results_{self.checkpoint_name}'.replace('.pth', ''))
print(f"Saving testing results to {self.test_result_dir}")
with torch.no_grad():
for iteration, batch in enumerate(self.test_loader):
m = self.model.forward(batch, epoch=epoch, iter=iteration, total_iter=self.total_iter, save_results=True, save_dir=self.test_result_dir, which_data=self.dataset, is_training=False)
print(f"T{epoch:04}/{iteration:05}")
score_path = osp.join(self.test_result_dir, 'all_metrics.txt')
# self.model.save_scores(score_path)
def train(self):
"""Perform training."""
# archive code and configs
if self.archive_code:
misc.archive_code(osp.join(self.checkpoint_dir, 'archived_code.zip'), filetypes=['.py'])
misc.dump_yaml(osp.join(self.checkpoint_dir, 'configs.yml'), self.cfgs)
# initialize
start_epoch = 0
self.total_iter = 0
self.metrics_trace.reset()
self.model.to(self.device)
self.model.reset_optimizers()
# resume from checkpoint
# from IPython import embed; embed()
if self.resume:
start_epoch, self.total_iter = self.load_checkpoint(optim=True)
if self.reset_epoch:
start_epoch = 0
self.total_iter = 0
if start_epoch == 0 and self.total_iter ==0 and self.finetune_ckpt is not None:
_, _ = self.load_checkpoint(optim=True, ckpt_path=self.finetune_ckpt)
# distribute model
if self.use_ddp:
self.model.ddp(self.rank, self.world_size)
# train with cub
if self.train_with_cub:
self.cub_train_data_iterator = indefinite_generator(self.train_loader_cub)
# initialize tensorboard logger
if misc.is_main_process() and self.use_logger:
if self.use_wandb:
import wandb
wandb.tensorboard.patch(root_logdir=osp.join(self.checkpoint_dir, 'logs', datetime.now().strftime("%Y%m%d-%H%M%S")))
wandb.init(name=self.checkpoint_dir.split("/")[-1], project="APT36K")
from torch.utils.tensorboard import SummaryWriter
self.logger = SummaryWriter(osp.join(self.checkpoint_dir, 'logs', datetime.now().strftime("%Y%m%d-%H%M%S")), flush_secs=10)
self.viz_data_iterator = indefinite_generator_from_list(self.val_loader) if self.visualize_validation else indefinite_generator_from_list(self.train_loader)
# self.viz_data_iterator = iter(self.viz_data_iterator)
if self.fix_viz_batch:
self.viz_batch = next(self.viz_data_iterator)
# train with cub
if self.train_with_cub:
self.cub_viz_data_iterator = indefinite_generator(self.val_loader_cub) if self.visualize_validation else indefinite_generator(self.train_loader_cub)
if self.fix_viz_batch:
self.viz_batch_cub = next(self.cub_viz_data_iterator)
# run epochs
epoch = 0
for epoch in range(start_epoch, self.num_epochs):
torch.distributed.barrier()
metrics = self.run_epoch(epoch)
if self.rank == 0:
self.metrics_trace.append("train", metrics)
if (epoch+1) % self.save_checkpoint_freq == 0:
self.save_checkpoint(epoch+1, total_iter=self.total_iter, optim=True)
if self.cfgs.get('pyplot_metrics', True):
self.metrics_trace.plot(pdf_path=osp.join(self.checkpoint_dir, 'metrics.pdf'))
self.metrics_trace.save(osp.join(self.checkpoint_dir, 'metrics.json'))
if self.rank == 0:
print(f"Training completed for all {epoch+1} epochs.")
def dry_run(self):
print(f'rank: {self.rank}, dry_run!!!!!')
self.dry_run_iters = self.cfgs.get('dr_iters', 2)
self.resume = self.cfgs.get('dr_resume', True)
self.use_logger = self.cfgs.get('dr_use_logger', True)
self.log_freq_losses = self.cfgs.get('dr_log_freq_losses', 1)
self.save_result_freq = self.cfgs.get('dr_save_result_freq', 1)
self.log_freq_images = self.cfgs.get('dr_log_freq_images', 1)
self.log_train_images = self.cfgs.get('dr_log_train_images', True)
self.visualize_validation = self.cfgs.get('dr_visualize_validation', True)
self.num_epochs = self.cfgs.get('dr_num_epochs', 1)
self.train()
def run_epoch(self, epoch):
metrics = self.make_metrics()
self.model.set_train()
max_loader_len = max([len(loader) for loader in self.train_loader])
train_generators = [indefinite_generator(loader) for loader in self.train_loader]
iteration = 0
while iteration < max_loader_len * len(self.train_loader):
for generator in train_generators:
batch = next(generator)
self.total_iter += 1
if self.total_iter % 4000 == 0:
self.save_last_checkpoint(epoch+1, self.total_iter, optim=True)
num_seqs, num_frames = batch[0].shape[:2]
total_im_num = num_seqs * num_frames
m = self.model.forward(batch, epoch=epoch, iter=iteration, total_iter=self.total_iter, which_data=self.dataset, is_training=True)
if self.train_with_cub and epoch >= self.cub_start_epoch:
batch_cub = next(self.cub_train_data_iterator)
num_seqs, num_frames = batch_cub[0].shape[:2]
total_im_num += num_seqs * num_frames
m_cub = self.model.forward(batch_cub, epoch=epoch, iter=iteration, total_iter=self.total_iter, which_data='cub', is_training=True)
m.update({'cub_'+k: v for k,v in m_cub.items()})
m['total_loss'] = self.model.total_loss
self.model.backward()
if self.model.enable_disc and (self.model.mask_discriminator_iter[0] < self.total_iter) and (self.model.mask_discriminator_iter[1] > self.total_iter):
# the discriminator training
discriminator_loss_dict, grad_loss = self.model.discriminator_step()
m.update(
{
'mask_disc_loss_discriminator': discriminator_loss_dict['discriminator_loss'] - grad_loss,
'mask_disc_loss_discriminator_grad': grad_loss,
'mask_disc_loss_discriminator_rv': discriminator_loss_dict['discriminator_loss_rv'],
'mask_disc_loss_discriminator_iv': discriminator_loss_dict['discriminator_loss_iv'],
'mask_disc_loss_discriminator_gt': discriminator_loss_dict['discriminator_loss_gt']
}
)
self.logger.add_histogram('train_'+'discriminator_logits/random_view', discriminator_loss_dict['d_rv'], self.total_iter)
if discriminator_loss_dict['d_iv'] is not None:
self.logger.add_histogram('train_'+'discriminator_logits/input_view', discriminator_loss_dict['d_iv'], self.total_iter)
if discriminator_loss_dict['d_gt'] is not None:
self.logger.add_histogram('train_'+'discriminator_logits/gt_view', discriminator_loss_dict['d_gt'], self.total_iter)
metrics.update(m, total_im_num)
if self.rank == 0:
print(f"T{epoch:04}/{iteration:05}/{metrics}")
## reset optimizers
if self.cfgs.get('opt_reset_every_iter', 0) > 0 and self.total_iter < self.cfgs.get('opt_reset_end_iter', 0):
if self.total_iter % self.cfgs.get('opt_reset_every_iter', 0) == 0:
self.model.reset_optimizers()
if misc.is_main_process() and self.use_logger:
if self.rank == 0 and self.total_iter % self.log_freq_losses == 0:
for name, loss in m.items():
label = f'cub_loss_train/{name[4:]}' if 'cub' in name else f'loss_train/{name}'
self.logger.add_scalar(label, loss, self.total_iter)
if self.rank == 0 and self.save_result_freq is not None and self.total_iter % self.save_result_freq == 0:
with torch.no_grad():
m = self.model.forward(batch, epoch=epoch, iter=iteration, total_iter=self.total_iter, save_results=True, save_dir=self.train_result_dir, which_data=self.dataset, is_training=False)
torch.cuda.empty_cache()
if self.total_iter % self.log_freq_images == 0:
with torch.no_grad():
if self.rank == 0 and self.log_train_images:
m = self.model.forward(batch, epoch=epoch, iter=iteration, viz_logger=self.logger, total_iter=self.total_iter, which_data=self.dataset, logger_prefix='train_', is_training=False)
if self.fix_viz_batch:
print(f'fix_viz_batch:{self.fix_viz_batch}')
batch = self.viz_batch
else:
batch = next(self.viz_data_iterator)
if self.visualize_validation:
import time
vis_start = time.time()
batch = next(self.viz_data_iterator)
# try:
# batch = next(self.viz_data_iterator)
# except: # iterator exhausted
# self.reset_viz_data_iterator()
# batch = next(self.viz_data_iterator)
m = self.model.forward(batch, epoch=epoch, iter=iteration, viz_logger=self.logger, total_iter=self.total_iter, which_data=self.dataset, logger_prefix='val_', is_training=False)
vis_end = time.time()
print(f"vis time: {vis_end - vis_start}")
for name, loss in m.items():
if self.rank == 0:
self.logger.add_scalar(f'loss_val/{name}', loss, self.total_iter)
if self.train_with_cub and epoch >= self.cub_start_epoch:
if self.rank == 0 and self.log_train_images:
m = self.model.forward(batch_cub, epoch=epoch, iter=iteration, viz_logger=self.logger, total_iter=self.total_iter, which_data='cub', logger_prefix='cub_train_', is_training=True)
if self.fix_viz_batch:
batch_cub = self.viz_batch_cub
elif self.visualize_validation:
batch_cub = next(self.cub_viz_data_iterator)
# try:
# batch = next(self.viz_data_iterator)
# except: # iterator exhausted
# self.reset_viz_data_iterator()
# batch = next(self.viz_data_iterator)
if self.rank == 0:
m = self.model.forward(batch_cub, epoch=epoch, iter=iteration, viz_logger=self.logger, total_iter=self.total_iter, which_data='cub', logger_prefix='cub_val_', is_training=False)
for name, loss in m.items():
self.logger.add_scalar(f'cub_loss_val/{name}', loss, self.total_iter)
torch.cuda.empty_cache()
if self.is_dry_run and iteration >= self.dry_run_iters:
break
iteration += 1
self.model.scheduler_step()
return metrics