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main.py
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main.py
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from utils import parse_args, create_experiment_dirs, calculate_flops, show_parameters
from model import ShuffleNet
from train import Train
from data_loader import DataLoader
from summarizer import Summarizer
import tensorflow as tf
def main():
# Parse the JSON arguments
config_args = parse_args()
# Create the experiment directories
_, config_args.summary_dir, config_args.checkpoint_dir = create_experiment_dirs(config_args.experiment_dir)
# Reset the default Tensorflow graph
tf.reset_default_graph()
# Tensorflow specific configuration
config = tf.ConfigProto(allow_soft_placement=True)
config.gpu_options.allow_growth = True
sess = tf.Session(config=config)
# Data loading
# The batch size is equal to 1 when testing to simulate the real experiment.
data_batch_size = config_args.batch_size if config_args.train_or_test == "train" else 1
data = DataLoader(data_batch_size, config_args.shuffle)
print("Loading Data...")
config_args.img_height, config_args.img_width, config_args.num_channels, \
config_args.train_data_size, config_args.test_data_size = data.load_data()
print("Data loaded\n\n")
# Model creation
print("Building the model...")
model = ShuffleNet(config_args)
print("Model is built successfully\n\n")
# Parameters visualization
show_parameters()
# Summarizer creation
summarizer = Summarizer(sess, config_args.summary_dir)
# Train class
trainer = Train(sess, model, data, summarizer)
if config_args.train_or_test == 'train':
try:
# print("FLOPs for batch size = " + str(config_args.batch_size) + "\n")
# calculate_flops()
print("Training...")
trainer.train()
print("Training Finished\n\n")
except KeyboardInterrupt:
trainer.save_model()
elif config_args.train_or_test == 'test':
# print("FLOPs for single inference \n")
# calculate_flops()
# This can be 'val' or 'test' or even 'train' according to the needs.
print("Testing...")
trainer.test('val')
print("Testing Finished\n\n")
else:
raise ValueError("Train or Test options only are allowed")
if __name__ == '__main__':
main()