REVA-QCAV/train.py
Gouvernathor 758f0f8070 Update train.py
Former-commit-id: dee78b12ca6810f5e02febfb244dce3885ed49ac
2022-04-06 13:35:02 +02:00

198 lines
8.4 KiB
Python

import argparse
import logging
import sys
from pathlib import Path
import torch
import torch.nn as nn
import torch.nn.functional as F
import wandb
from torch import optim
from torch.utils.data import DataLoader, random_split
from tqdm import tqdm
from utils.data_loading import BasicDataset, CarvanaDataset
from utils.dice_score import dice_loss
from evaluate import evaluate
from unet import UNet
dir_img = Path('./data/imgs/')
dir_mask = Path('./data/masks/')
dir_checkpoint = Path('./checkpoints/')
def train_net(net,
device,
epochs: int = 5,
batch_size: int = 1,
learning_rate: float = 1e-5,
val_percent: float = 0.1,
save_checkpoint: bool = True,
img_scale: float = 0.5,
amp: bool = False):
# 1. Create dataset
try:
dataset = CarvanaDataset(dir_img, dir_mask, img_scale)
except (AssertionError, RuntimeError):
dataset = BasicDataset(dir_img, dir_mask, img_scale)
# 2. Split into train / validation partitions
n_val = int(len(dataset) * val_percent)
n_train = len(dataset) - n_val
train_set, val_set = random_split(dataset, [n_train, n_val], generator=torch.Generator().manual_seed(0))
# 3. Create data loaders
loader_args = dict(batch_size=batch_size, num_workers=4, pin_memory=True)
train_loader = DataLoader(train_set, shuffle=True, **loader_args)
val_loader = DataLoader(val_set, shuffle=False, drop_last=True, **loader_args)
# (Initialize logging)
experiment = wandb.init(project='U-Net', resume='allow', anonymous='must')
experiment.config.update(dict(epochs=epochs, batch_size=batch_size, learning_rate=learning_rate,
val_percent=val_percent, save_checkpoint=save_checkpoint, img_scale=img_scale,
amp=amp))
logging.info(f'''Starting training:
Epochs: {epochs}
Batch size: {batch_size}
Learning rate: {learning_rate}
Training size: {n_train}
Validation size: {n_val}
Checkpoints: {save_checkpoint}
Device: {device.type}
Images scaling: {img_scale}
Mixed Precision: {amp}
''')
# 4. Set up the optimizer, the loss, the learning rate scheduler and the loss scaling for AMP
optimizer = optim.RMSprop(net.parameters(), lr=learning_rate, weight_decay=1e-8, momentum=0.9)
scheduler = optim.lr_scheduler.ReduceLROnPlateau(optimizer, 'max', patience=2) # goal: maximize Dice score
grad_scaler = torch.cuda.amp.GradScaler(enabled=amp)
criterion = nn.CrossEntropyLoss()
global_step = 0
# 5. Begin training
for epoch in range(1, epochs+1):
net.train()
epoch_loss = 0
with tqdm(total=n_train, desc=f'Epoch {epoch}/{epochs}', unit='img') as pbar:
for batch in train_loader:
images = batch['image']
true_masks = batch['mask']
assert images.shape[1] == net.n_channels, \
f'Network has been defined with {net.n_channels} input channels, ' \
f'but loaded images have {images.shape[1]} channels. Please check that ' \
'the images are loaded correctly.'
images = images.to(device=device, dtype=torch.float32)
true_masks = true_masks.to(device=device, dtype=torch.long)
with torch.cuda.amp.autocast(enabled=amp):
masks_pred = net(images)
loss = criterion(masks_pred, true_masks) \
+ dice_loss(F.softmax(masks_pred, dim=1).float(),
F.one_hot(true_masks, net.n_classes).permute(0, 3, 1, 2).float(),
multiclass=True)
optimizer.zero_grad(set_to_none=True)
grad_scaler.scale(loss).backward()
grad_scaler.step(optimizer)
grad_scaler.update()
pbar.update(images.shape[0])
global_step += 1
epoch_loss += loss.item()
experiment.log({
'train loss': loss.item(),
'step': global_step,
'epoch': epoch
})
pbar.set_postfix(**{'loss (batch)': loss.item()})
# Evaluation round
division_step = (n_train // (10 * batch_size))
if division_step > 0:
if global_step % division_step == 0:
histograms = {}
for tag, value in net.named_parameters():
tag = tag.replace('/', '.')
histograms['Weights/' + tag] = wandb.Histogram(value.data.cpu())
histograms['Gradients/' + tag] = wandb.Histogram(value.grad.data.cpu())
val_score = evaluate(net, val_loader, device)
scheduler.step(val_score)
logging.info('Validation Dice score: {}'.format(val_score))
experiment.log({
'learning rate': optimizer.param_groups[0]['lr'],
'validation Dice': val_score,
'images': wandb.Image(images[0].cpu()),
'masks': {
'true': wandb.Image(true_masks[0].float().cpu()),
'pred': wandb.Image(torch.softmax(masks_pred, dim=1).argmax(dim=1)[0].float().cpu()),
},
'step': global_step,
'epoch': epoch,
**histograms
})
if save_checkpoint:
Path(dir_checkpoint).mkdir(parents=True, exist_ok=True)
torch.save(net.state_dict(), str(dir_checkpoint / 'checkpoint_epoch{}.pth'.format(epoch)))
logging.info(f'Checkpoint {epoch} saved!')
def get_args():
parser = argparse.ArgumentParser(description='Train the UNet on images and target masks')
parser.add_argument('--epochs', '-e', metavar='E', type=int, default=5, help='Number of epochs')
parser.add_argument('--batch-size', '-b', dest='batch_size', metavar='B', type=int, default=1, help='Batch size')
parser.add_argument('--learning-rate', '-l', metavar='LR', type=float, default=1e-5,
help='Learning rate', dest='lr')
parser.add_argument('--load', '-f', type=str, default=False, help='Load model from a .pth file')
parser.add_argument('--scale', '-s', type=float, default=0.5, help='Downscaling factor of the images')
parser.add_argument('--validation', '-v', dest='val', type=float, default=10.0,
help='Percent of the data that is used as validation (0-100)')
parser.add_argument('--amp', action='store_true', default=False, help='Use mixed precision')
parser.add_argument('--bilinear', action='store_true', default=False, help='Use bilinear upsampling')
parser.add_argument('--classes', '-c', type=int, default=2, help='Number of classes')
return parser.parse_args()
if __name__ == '__main__':
args = get_args()
logging.basicConfig(level=logging.INFO, format='%(levelname)s: %(message)s')
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
logging.info(f'Using device {device}')
# Change here to adapt to your data
# n_channels=3 for RGB images
# n_classes is the number of probabilities you want to get per pixel
net = UNet(n_channels=3, n_classes=args.classes, bilinear=args.bilinear)
logging.info(f'Network:\n'
f'\t{net.n_channels} input channels\n'
f'\t{net.n_classes} output channels (classes)\n'
f'\t{"Bilinear" if net.bilinear else "Transposed conv"} upscaling')
if args.load:
net.load_state_dict(torch.load(args.load, map_location=device))
logging.info(f'Model loaded from {args.load}')
net.to(device=device)
try:
train_net(net=net,
epochs=args.epochs,
batch_size=args.batch_size,
learning_rate=args.lr,
device=device,
img_scale=args.scale,
val_percent=args.val / 100,
amp=args.amp)
except KeyboardInterrupt:
torch.save(net.state_dict(), 'INTERRUPTED.pth')
logging.info('Saved interrupt')
raise