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train.py
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train.py
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import os
import shutil
import argparse
from tqdm.auto import tqdm
import torch
from torch.nn.utils import clip_grad_norm_
import torch.utils.tensorboard
from torch_geometric.loader import DataLoader
from models.maskfill import MaskFillModel
from utils.datasets import *
from utils.transforms import *
from utils.misc import *
from utils.train import *
import torch_geometric.data.collate
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument('config', type=str)
parser.add_argument('--device', type=str, default='cuda')
parser.add_argument('--logdir', type=str, default='./logs')
args = parser.parse_args()
# Load configs
config = load_config(args.config)
config_name = os.path.basename(args.config)[:os.path.basename(args.config).rfind('.')]
seed_all(config.train.seed)
# Logging
log_dir = get_new_log_dir(args.logdir, prefix=config_name)
ckpt_dir = os.path.join(log_dir, 'checkpoints')
os.makedirs(ckpt_dir, exist_ok=True)
logger = get_logger('train', log_dir)
writer = torch.utils.tensorboard.SummaryWriter(log_dir)
logger.info(args)
logger.info(config)
shutil.copyfile(args.config, os.path.join(log_dir, os.path.basename(args.config)))
shutil.copytree('./models', os.path.join(log_dir, 'models'))
# Transforms
protein_featurizer = FeaturizeProteinAtom()
ligand_featurizer = FeaturizeLigandAtom()
masking = get_mask(config.train.transform.mask)
contrastive_sampler = get_contrastive_sampler(config.train.transform.contrastive)
transform = Compose([
LigandCountNeighbors(),
protein_featurizer,
ligand_featurizer,
FeaturizeLigandBond(),
masking,
contrastive_sampler,
])
# Datasets and loaders
logger.info('Loading dataset...')
dataset, subsets = get_dataset(
config = config.dataset,
transform = transform,
)
train_set, val_set = subsets['train'], subsets['test']
follow_batch = ['protein_element', 'ligand_context_element', 'pos_real', 'pos_fake']
collate_exclude_keys = ['ligand_nbh_list']
train_iterator = inf_iterator(DataLoader(
train_set,
batch_size = config.train.batch_size,
shuffle = True,
num_workers = config.train.num_workers,
follow_batch = follow_batch,
exclude_keys = collate_exclude_keys,
))
val_loader = DataLoader(
val_set,
config.train.batch_size,
shuffle=False,
follow_batch=follow_batch,
exclude_keys = collate_exclude_keys,
)
# Model
logger.info('Building model...')
model = MaskFillModel(
config.model,
num_classes = contrastive_sampler.num_elements,
num_indicators = ligand_featurizer.num_properties,
protein_atom_feature_dim = protein_featurizer.feature_dim,
ligand_atom_feature_dim = ligand_featurizer.feature_dim,
).to(args.device)
# Optimizer and scheduler
optimizer = get_optimizer(config.train.optimizer, model)
scheduler = get_scheduler(config.train.scheduler, optimizer)
def train(it):
model.train()
optimizer.zero_grad()
batch = next(train_iterator).to(args.device)
protein_noise = torch.randn_like(batch.protein_pos) * config.train.pos_noise_std
ligand_noise = torch.randn_like(batch.ligand_context_pos) * config.train.pos_noise_std
loss, loss_cls, loss_nce_real, loss_nce_fake, loss_ind = model.get_loss(
pos_real = batch.pos_real,
y_real = batch.cls_real.long(),
p_real = batch.ind_real.float(), # Binary indicators: float
pos_fake = batch.pos_fake,
protein_pos = batch.protein_pos + protein_noise,
protein_atom_feature = batch.protein_atom_feature.float(),
ligand_pos = batch.ligand_context_pos + ligand_noise,
ligand_atom_feature = batch.ligand_context_feature_full.float(),
batch_real = batch.pos_real_batch,
batch_fake = batch.pos_fake_batch,
batch_protein = batch.protein_element_batch,
batch_ligand = batch.ligand_context_element_batch,
)
loss.backward()
orig_grad_norm = clip_grad_norm_(model.parameters(), config.train.max_grad_norm)
optimizer.step()
logger.info('[Train] Iter %d | Loss %.6f | Loss(Cls) %.6f | Loss(Ind) %.6f | Loss(Real) %.6f | Loss(Fake) %.6f' % (
it, loss.item(), loss_cls.item(), loss_ind.item(), loss_nce_real.item(), loss_nce_fake.item()
))
writer.add_scalar('train/loss', loss, it)
writer.add_scalar('train/loss_cls', loss_cls, it)
writer.add_scalar('train/loss_ind', loss_ind, it)
writer.add_scalar('train/loss_real', loss_nce_real, it)
writer.add_scalar('train/loss_fake', loss_nce_fake, it)
writer.add_scalar('train/lr', optimizer.param_groups[0]['lr'], it)
writer.add_scalar('train/grad', orig_grad_norm, it)
writer.flush()
def validate(it):
sum_loss, sum_n = 0, 0
with torch.no_grad():
model.eval()
for batch in tqdm(val_loader, desc='Validate'):
batch = batch.to(args.device)
loss, loss_cls, loss_nce_real, loss_nce_fake, loss_ind = model.get_loss(
pos_real = batch.pos_real,
y_real = batch.cls_real.long(),
p_real = batch.ind_real.float(), # Binary indicators: float
pos_fake = batch.pos_fake,
protein_pos = batch.protein_pos,
protein_atom_feature = batch.protein_atom_feature.float(),
ligand_pos = batch.ligand_context_pos,
ligand_atom_feature = batch.ligand_context_feature_full.float(),
batch_real = batch.pos_real_batch,
batch_fake = batch.pos_fake_batch,
batch_protein = batch.protein_element_batch,
batch_ligand = batch.ligand_context_element_batch,
)
sum_loss += loss.item()
sum_n += 1
avg_loss = sum_loss / sum_n
if config.train.scheduler.type == 'plateau':
scheduler.step(avg_loss)
elif config.train.scheduler.type == 'warmup_plateau':
scheduler.step_ReduceLROnPlateau(avg_loss)
else:
scheduler.step()
logger.info('[Validate] Iter %05d | Loss %.6f' % (
it, avg_loss,
))
writer.add_scalar('val/loss', avg_loss, it)
writer.flush()
return avg_loss
try:
for it in range(1, config.train.max_iters+1):
# with torch.autograd.detect_anomaly():
train(it)
if it % config.train.val_freq == 0 or it == config.train.max_iters:
validate(it)
ckpt_path = os.path.join(ckpt_dir, '%d.pt' % it)
torch.save({
'config': config,
'model': model.state_dict(),
'optimizer': optimizer.state_dict(),
'scheduler': scheduler.state_dict(),
'iteration': it,
}, ckpt_path)
except KeyboardInterrupt:
logger.info('Terminating...')