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train.py
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train.py
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import argparse
import collections
import torch
import numpy as np
import data_loader.data_loaders as module_data
import model.loss as module_loss
import model.metric as module_metric
import model.model as module_arch
from parse_config import ConfigParser
from trainer import Trainer
import os
import random
import math
# For num_experts with same settings, we don't want this to set to True.
# This is strongly discouraged because it's misleading: setting it to true does not make it reproducible acorss machine/pytorch version. In addition, it also makes training slower. Use with caution.
deterministic = True
if deterministic:
# fix random seeds for reproducibility
SEED = 0
torch.backends.cudnn.deterministic = True
torch.backends.cudnn.benchmark = False
random.seed(SEED)
np.random.seed(SEED)
os.environ['PYTHONHASHSEED'] = str(SEED)
torch.manual_seed(SEED)
torch.cuda.manual_seed(SEED)
torch.cuda.manual_seed_all(SEED)
def main(config):
logger = config.get_logger('train')
# setup data_loader instances
data_loader = config.init_obj('data_loader', module_data)
valid_data_loader = data_loader.split_validation()
# build model architecture, then print to console
model = config.init_obj('arch', module_arch)
# logger.info(model)
# get function handles of loss and metrics
loss_class = getattr(module_loss, config["loss"]["type"])
if hasattr(loss_class, "require_num_experts") and loss_class.require_num_experts:
criterion = config.init_obj('loss', module_loss, cls_num_list=data_loader.cls_num_list, num_experts=config["arch"]["args"]["num_experts"])
else:
criterion = config.init_obj('loss', module_loss, cls_num_list=data_loader.cls_num_list)
metrics = [getattr(module_metric, met) for met in config['metrics']]
optimizer = config.init_obj('optimizer', torch.optim, model.parameters())
if "type" in config._config["lr_scheduler"]:
if config["lr_scheduler"]["type"] == "CustomLR":
lr_scheduler_args = config["lr_scheduler"]["args"]
gamma = lr_scheduler_args["gamma"] if "gamma" in lr_scheduler_args else 0.1
print("Scheduler step1, step2, warmup_epoch, gamma:", (lr_scheduler_args["step1"], lr_scheduler_args["step2"], lr_scheduler_args["warmup_epoch"], gamma))
def lr_lambda(epoch):
if epoch >= lr_scheduler_args["step2"]:
lr = gamma * gamma
elif epoch >= lr_scheduler_args["step1"]:
lr = gamma
else:
lr = 1
"""Warmup"""
warmup_epoch = lr_scheduler_args["warmup_epoch"]
if epoch < warmup_epoch:
lr = lr * float(1 + epoch) / warmup_epoch
return lr
lr_scheduler = torch.optim.lr_scheduler.LambdaLR(optimizer, lr_lambda)
else:
lr_scheduler = config.init_obj('lr_scheduler', torch.optim.lr_scheduler, optimizer)
else:
lr_scheduler = None
trainer = Trainer(model, criterion, metrics, optimizer,
num_classes=len(data_loader.cls_num_list),
config=config,
data_loader=data_loader,
valid_data_loader=valid_data_loader,
lr_scheduler=lr_scheduler)
trainer.train()
if __name__ == '__main__':
args = argparse.ArgumentParser(description='PyTorch Template')
args.add_argument('-c', '--config', default=None, type=str,
help='config file path (default: None)')
args.add_argument('-r', '--resume', default=None, type=str,
help='path to latest checkpoint (default: None)')
args.add_argument('-d', '--device', default=None, type=str,
help='indices of GPUs to enable (default: all)')
args.add_argument('-crt', '--load_crt', default=None, type=str,
help='path to model need to retrain classifier')
args.add_argument('-lws', '--load_lws', default=None, type=str,
help='path to model need to learnable weight scaling')
args.add_argument('-pretrain', '--load_pretrain', default=None, type=str,
help='path to pretrained model')
# custom cli options to modify configuration from default values given in json file.
CustomArgs = collections.namedtuple('CustomArgs', 'flags type target')
options = [
CustomArgs(['--lr', '--learning_rate'], type=float, target='optimizer;args;lr'),
CustomArgs(['--bs', '--batch_size'], type=int, target='data_loader;args;batch_size'),
CustomArgs(['--name'], type=str, target='name'),
CustomArgs(['--epochs'], type=int, target='trainer;epochs'),
CustomArgs(['--step1'], type=int, target='lr_scheduler;args;step1'),
CustomArgs(['--step2'], type=int, target='lr_scheduler;args;step2'),
CustomArgs(['--warmup'], type=int, target='lr_scheduler;args;warmup_epoch'),
CustomArgs(['--gamma'], type=float, target='lr_scheduler;args;gamma'),
CustomArgs(['--save_period'], type=int, target='trainer;save_period'),
CustomArgs(['--reduce_dimension'], type=int, target='arch;args;reduce_dimension'),
CustomArgs(['--layer2_dimension'], type=int, target='arch;args;layer2_output_dim'),
CustomArgs(['--layer3_dimension'], type=int, target='arch;args;layer3_output_dim'),
CustomArgs(['--layer4_dimension'], type=int, target='arch;args;layer4_output_dim'),
CustomArgs(['--num_experts'], type=int, target='arch;args;num_experts'),
CustomArgs(['--distribution_aware_diversity_factor'], type=float, target='loss;args;additional_diversity_factor'),
CustomArgs(['--pos_weight'], type=float, target='arch;args;pos_weight'),
CustomArgs(['--collaborative_loss'], type=int, target='loss;args;collaborative_loss'),
CustomArgs(['--distill_checkpoint'], type=str, target='distill_checkpoint')
]
config = ConfigParser.from_args(args, options)
main(config)