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main_train.py
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main_train.py
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import warnings
warnings.filterwarnings('ignore')
import multiprocessing
import torch
from utils import logger
from options.opts import get_training_arguments
from utils.common_utils import device_setup, create_directories
from utils.ddp_utils import is_master, distributed_init
from cvnets import get_model, EMA
from loss_fn import build_loss_fn
from optim import build_optimizer
from optim.scheduler import build_scheduler
from data import create_train_val_loader
from utils.checkpoint_utils import load_checkpoint, load_model_state
from engine import Trainer
import math
from torch.cuda.amp import GradScaler
from common import DEFAULT_EPOCHS, DEFAULT_ITERATIONS, DEFAULT_MAX_ITERATIONS, DEFAULT_MAX_EPOCHS
def count_parameters(model):
return sum(p.numel() for p in model.parameters() if p.requires_grad)
def main(opts, **kwargs):
num_gpus = getattr(opts, "dev.num_gpus", 0) # defaults are for CPU
dev_id = getattr(opts, "dev.device_id", torch.device('cpu'))
device = getattr(opts, "dev.device", torch.device('cpu'))
is_distributed = getattr(opts, "ddp.use_distributed", False)
is_master_node = is_master(opts)
# set-up data loaders
train_loader, val_loader, train_sampler = create_train_val_loader(opts)
# compute max iterations based on max epochs
# Useful in doing polynomial decay
is_iteration_based = getattr(opts, "scheduler.is_iteration_based", False)
if is_iteration_based:
max_iter = getattr(opts, "scheduler.max_iterations", DEFAULT_ITERATIONS)
if max_iter is None or max_iter <= 0:
logger.log('Setting max. iterations to {}'.format(DEFAULT_ITERATIONS))
setattr(opts, "scheduler.max_iterations", DEFAULT_ITERATIONS)
max_iter = DEFAULT_ITERATIONS
setattr(opts, "scheduler.max_epochs", DEFAULT_MAX_EPOCHS)
if is_master_node:
logger.log('Max. iteration for training: {}'.format(max_iter))
else:
max_epochs = getattr(opts, "scheduler.max_epochs", DEFAULT_EPOCHS)
if max_epochs is None or max_epochs <= 0:
logger.log('Setting max. epochs to {}'.format(DEFAULT_EPOCHS))
setattr(opts, "scheduler.max_epochs", DEFAULT_EPOCHS)
setattr(opts, "scheduler.max_iterations", DEFAULT_MAX_ITERATIONS)
max_epochs = getattr(opts, "scheduler.max_epochs", DEFAULT_EPOCHS)
if is_master_node:
logger.log('Max. epochs for training: {}'.format(max_epochs))
# set-up the model
model = get_model(opts)
if num_gpus == 0:
logger.error('Need atleast 1 GPU for training. Got {} GPUs'.format(num_gpus))
elif num_gpus == 1:
model = model.to(device=device)
elif is_distributed:
model = model.to(device=device)
model = torch.nn.parallel.DistributedDataParallel(model, device_ids=[dev_id], output_device=dev_id)
if is_master_node:
logger.log('Using DistributedDataParallel for training')
else:
model = torch.nn.DataParallel(model)
model = model.to(device=device)
if is_master_node:
logger.log('Using DataParallel for training')
# setup criteria
criteria = build_loss_fn(opts)
criteria = criteria.to(device=device)
# create the optimizer
optimizer = build_optimizer(model, opts=opts)
# create the gradient scalar
gradient_scalar = GradScaler(
enabled=getattr(opts, "common.mixed_precision", False)
)
# LR scheduler
scheduler = build_scheduler(opts=opts)
model_ema = None
use_ema = getattr(opts, "ema.enable", False)
if use_ema:
ema_momentum = getattr(opts, "ema.momentum", 0.0001)
model_ema = EMA(
model=model,
ema_momentum=ema_momentum,
device=device
)
if is_master_node:
logger.log('Using EMA')
best_metric = 0.0 if getattr(opts, "stats.checkpoint_metric_max", False) else math.inf
start_epoch = 0
start_iteration = 0
resume_loc = getattr(opts, "common.resume", None)
finetune_loc = getattr(opts, "common.finetune", None)
auto_resume = getattr(opts, "common.auto_resume", False)
if resume_loc is not None or auto_resume:
model, optimizer, gradient_scalar, start_epoch, start_iteration, best_metric, model_ema = load_checkpoint(
opts=opts,
model=model,
optimizer=optimizer,
model_ema=model_ema,
gradient_scalar=gradient_scalar
)
elif finetune_loc is not None:
model, model_ema = load_model_state(opts=opts, model=model, model_ema=model_ema)
if is_master_node:
logger.log('Finetuning model from checkpoint {}'.format(finetune_loc))
training_engine = Trainer(opts=opts,
model=model,
validation_loader=val_loader,
training_loader=train_loader,
optimizer=optimizer,
criterion=criteria,
scheduler=scheduler,
start_epoch=start_epoch,
start_iteration=start_iteration,
best_metric=best_metric,
model_ema=model_ema,
gradient_scalar=gradient_scalar
)
training_engine.run(train_sampler=train_sampler)
def distributed_worker(i, main, opts, kwargs):
setattr(opts, "dev.device_id", i)
if torch.cuda.is_available():
torch.cuda.set_device(i)
ddp_rank = getattr(opts, "ddp.rank", None)
if ddp_rank is None: # torch.multiprocessing.spawn
ddp_rank = kwargs.get('start_rank', 0) + i
setattr(opts, "ddp.rank", ddp_rank)
node_rank = distributed_init(opts)
setattr(opts, "ddp.rank", node_rank)
main(opts, **kwargs)
def main_worker(**kwargs):
opts = get_training_arguments()
print(opts)
# device set-up
opts = device_setup(opts)
node_rank = getattr(opts, "ddp.rank", 0)
if node_rank < 0:
logger.error('--rank should be >=0. Got {}'.format(node_rank))
is_master_node = is_master(opts)
# create the directory for saving results
save_dir = getattr(opts, "common.results_loc", "results")
run_label = getattr(opts, "common.run_label", "run_1")
exp_dir = '{}/{}'.format(save_dir, run_label)
setattr(opts, "common.exp_loc", exp_dir)
create_directories(dir_path=exp_dir, is_master_node=is_master_node)
num_gpus = getattr(opts, "dev.num_gpus", 1)
world_size = getattr(opts, "ddp.world_size", -1)
use_distributed = getattr(opts, "ddp.enable", False)
if num_gpus <= 1:
use_distributed = False
setattr(opts, "ddp.use_distributed", use_distributed)
# No of data workers = no of CPUs (if not specified or -1)
n_cpus = multiprocessing.cpu_count()
dataset_workers = getattr(opts, "dataset.workers", -1)
norm_name = getattr(opts, "model.normalization.name", "batch_norm")
if use_distributed:
if world_size == -1:
logger.log("Setting --ddp.world-size the same as the number of available gpus")
world_size = num_gpus
setattr(opts, "ddp.world_size", world_size)
elif world_size != num_gpus:
logger.log("--ddp.world-size does not match num. available GPUs. Got {} !={}".format(world_size, num_gpus))
logger.log("Setting --ddp.world-size=num_gpus")
world_size = num_gpus
setattr(opts, "ddp.world_size", world_size)
if dataset_workers == -1 or dataset_workers is None:
setattr(opts, "dataset.workers", n_cpus // world_size)
start_rank = getattr(opts, "ddp.rank", 0)
setattr(opts, "ddp.rank", None)
kwargs['start_rank'] = start_rank
torch.multiprocessing.spawn(
fn=distributed_worker,
args=(main, opts, kwargs),
nprocs=num_gpus,
)
else:
if dataset_workers == -1:
setattr(opts, "dataset.workers", n_cpus)
if norm_name in ["sync_batch_norm", "sbn"]:
setattr(opts, "model.normalization.name", "batch_norm")
# adjust the batch size
train_bsize = getattr(opts, "dataset.train_batch_size0", 32) * max(1, num_gpus)
val_bsize = getattr(opts, "dataset.val_batch_size0", 32) * max(1, num_gpus)
setattr(opts, "dataset.train_batch_size0", train_bsize)
setattr(opts, "dataset.val_batch_size0", val_bsize)
setattr(opts, "dev.device_id", None)
main(opts=opts, **kwargs)
if __name__ == "__main__":
main_worker()