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train_dec.py
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train_dec.py
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from __future__ import division
from __future__ import print_function
import time
import argparse
import pickle
import os
import datetime
import torch.optim as optim
from torch.optim import lr_scheduler
from utils import *
from modules import *
parser = argparse.ArgumentParser()
parser.add_argument('--no-cuda', action='store_true', default=False,
help='Disables CUDA training.')
parser.add_argument('--seed', type=int, default=42, help='Random seed.')
parser.add_argument('--epochs', type=int, default=500,
help='Number of epochs to train.')
parser.add_argument('--batch-size', type=int, default=128,
help='Number of samples per batch.')
parser.add_argument('--timesteps', type=int, default=49,
help='The number of time steps per sample.')
parser.add_argument('--lr', type=float, default=0.0005,
help='Initial learning rate.')
parser.add_argument('--hidden', type=int, default=256,
help='Number of hidden units.')
parser.add_argument('--num-atoms', type=int, default=5,
help='Number of atoms in simulation.')
parser.add_argument('--num-classes', type=int, default=2,
help='Number of edge types.')
parser.add_argument('--suffix', type=str, default='_springs',
help='Suffix for training data (e.g. "_charged".')
parser.add_argument('--dropout', type=float, default=0.0,
help='Dropout rate (1 - keep probability).')
parser.add_argument('--decoder', type=str, default='mlp',
help='Type of decoder model (mlp or rnn).')
parser.add_argument('--log-interval', type=int, default=10, metavar='N',
help='How many batches to wait before logging.')
parser.add_argument('--prediction-steps', type=int, default=1, metavar='N',
help='Num steps to predict before using teacher forcing.')
parser.add_argument('--load-folder', type=str, default='',
help='Where to load the trained model if finetunning. ' +
'Leave empty to train from scratch')
parser.add_argument('--save-folder', type=str, default='logs',
help='Where to save the trained model.')
parser.add_argument('--edge-types', type=int, default=2,
help='The number of edge types to infer.')
parser.add_argument('--lr-decay', type=int, default=200,
help='After how epochs to decay LR by a factor of gamma')
parser.add_argument('--gamma', type=float, default=0.5,
help='LR decay factor')
parser.add_argument('--motion', action='store_true', default=False,
help='Use motion capture data loader.')
parser.add_argument('--dims', type=int, default=4,
help='The number of dimensions (position + velocity).')
parser.add_argument('--skip-first', action='store_true', default=False,
help='Skip first edge type in decoder.')
parser.add_argument('--var', type=float, default=5e-5,
help='Output variance.')
parser.add_argument('--fully-connected', action='store_true', default=False,
help='Use fully-connected graph.')
args = parser.parse_args()
args.cuda = not args.no_cuda and torch.cuda.is_available()
print(args)
np.random.seed(args.seed)
torch.manual_seed(args.seed)
if args.cuda:
torch.cuda.manual_seed(args.seed)
log = None
# Save model and meta-data. Always saves in a new folder.
if args.save_folder:
now = datetime.datetime.now()
timestamp = now.isoformat()
save_folder = '{}/exp{}/'.format(args.save_folder, timestamp)
os.mkdir(save_folder)
meta_file = os.path.join(save_folder, 'metadata.pkl')
model_file = os.path.join(save_folder, 'decoder.pt')
log_file = os.path.join(save_folder, 'log.txt')
log = open(log_file, 'w')
pickle.dump({'args': args}, open(meta_file, "wb"))
else:
print("WARNING: No save_folder provided!" +
"Testing (within this script) will throw an error.")
train_loader, valid_loader, test_loader, loc_max, loc_min, vel_max, vel_min = load_data(
args.batch_size, args.suffix)
# Generate fully-connected interaction graph (sparse graphs would also work)
off_diag = np.ones([args.num_atoms, args.num_atoms]) - np.eye(args.num_atoms)
rel_rec = np.array(encode_onehot(np.where(off_diag)[0]), dtype=np.float32)
rel_send = np.array(encode_onehot(np.where(off_diag)[1]), dtype=np.float32)
rel_rec = torch.FloatTensor(rel_rec)
rel_send = torch.FloatTensor(rel_send)
if args.decoder == 'mlp':
model = MLPDecoder(n_in_node=args.dims,
edge_types=args.edge_types,
msg_hid=args.hidden,
msg_out=args.hidden,
n_hid=args.hidden,
do_prob=args.dropout,
skip_first=args.skip_first)
elif args.decoder == 'rnn':
model = RNNDecoder(n_in_node=args.dims,
edge_types=args.edge_types,
n_hid=args.hidden,
do_prob=args.dropout,
skip_first=args.skip_first)
if args.load_folder:
load_file = os.path.join(args.load_folder, 'model.pt')
model.load_state_dict(torch.load(load_file))
optimizer = optim.Adam(model.parameters(), lr=args.lr)
scheduler = lr_scheduler.StepLR(optimizer, step_size=args.lr_decay,
gamma=args.gamma)
if args.cuda:
model.cuda()
rel_rec = rel_rec.cuda()
rel_send = rel_send.cuda()
rel_rec = Variable(rel_rec)
rel_send = Variable(rel_send)
def nll_gaussian(preds, target, variance, add_const=False):
neg_log_p = ((preds - target) ** 2 / (2 * variance))
if add_const:
const = 0.5 * np.log(2 * np.pi * variance)
neg_log_p += const
return neg_log_p.sum() / (target.size(0) * target.size(1))
def train(epoch, best_val_loss):
t = time.time()
loss_train = []
loss_val = []
mse_baseline_train = []
mse_baseline_val = []
mse_train = []
mse_val = []
model.train()
scheduler.step()
for batch_idx, (inputs, relations) in enumerate(train_loader):
rel_type_onehot = torch.FloatTensor(inputs.size(0), rel_rec.size(0),
args.edge_types)
rel_type_onehot.zero_()
rel_type_onehot.scatter_(2, relations.view(inputs.size(0), -1, 1), 1)
if args.fully_connected:
zeros = torch.zeros(
[rel_type_onehot.size(0), rel_type_onehot.size(1)])
ones = torch.ones(
[rel_type_onehot.size(0), rel_type_onehot.size(1)])
rel_type_onehot = torch.stack([zeros, ones], -1)
if args.cuda:
inputs = inputs.cuda()
rel_type_onehot = rel_type_onehot.cuda()
else:
inputs = inputs.contiguous()
inputs, rel_type_onehot = Variable(inputs), Variable(rel_type_onehot)
optimizer.zero_grad()
if args.decoder == 'rnn':
output = model(inputs, rel_type_onehot, rel_rec, rel_send, 100,
burn_in=True,
burn_in_steps=args.timesteps - args.prediction_steps)
else:
output = model(inputs, rel_type_onehot, rel_rec, rel_send,
args.prediction_steps)
target = inputs[:, :, 1:, :]
loss = nll_gaussian(output, target, args.var)
mse = F.mse_loss(output, target)
mse_baseline = F.mse_loss(inputs[:, :, :-1, :], inputs[:, :, 1:, :])
loss.backward()
optimizer.step()
loss_train.append(loss.data[0])
mse_train.append(mse.data[0])
mse_baseline_train.append(mse_baseline.data[0])
model.eval()
for batch_idx, (inputs, relations) in enumerate(valid_loader):
rel_type_onehot = torch.FloatTensor(inputs.size(0), rel_rec.size(0),
args.edge_types)
rel_type_onehot.zero_()
rel_type_onehot.scatter_(2, relations.view(inputs.size(0), -1, 1), 1)
if args.fully_connected:
zeros = torch.zeros(
[rel_type_onehot.size(0), rel_type_onehot.size(1)])
ones = torch.ones(
[rel_type_onehot.size(0), rel_type_onehot.size(1)])
rel_type_onehot = torch.stack([zeros, ones], -1)
if args.cuda:
inputs = inputs.cuda()
rel_type_onehot = rel_type_onehot.cuda()
else:
inputs = inputs.contiguous()
inputs, rel_type_onehot = Variable(inputs, volatile=True), Variable(
rel_type_onehot, volatile=True)
output = model(inputs, rel_type_onehot, rel_rec, rel_send, 1)
target = inputs[:, :, 1:, :]
loss = nll_gaussian(output, target, args.var)
mse = F.mse_loss(output, target)
mse_baseline = F.mse_loss(inputs[:, :, :-1, :], inputs[:, :, 1:, :])
loss_val.append(loss.data[0])
mse_val.append(mse.data[0])
mse_baseline_val.append(mse_baseline.data[0])
print('Epoch: {:04d}'.format(epoch),
'nll_train: {:.10f}'.format(np.mean(loss_train)),
'mse_train: {:.12f}'.format(np.mean(mse_train)),
'mse_baseline_train: {:.10f}'.format(np.mean(mse_baseline_train)),
'nll_val: {:.10f}'.format(np.mean(loss_val)),
'mse_val: {:.12f}'.format(np.mean(mse_val)),
'mse_baseline_val: {:.10f}'.format(np.mean(mse_baseline_val)),
'time: {:.4f}s'.format(time.time() - t))
if args.save_folder and np.mean(loss_val) < best_val_loss:
torch.save(model.state_dict(), model_file)
print('Best model so far, saving...')
print('Epoch: {:04d}'.format(epoch),
'nll_train: {:.10f}'.format(np.mean(loss_train)),
'mse_train: {:.12f}'.format(np.mean(mse_train)),
'mse_baseline_train: {:.10f}'.format(np.mean(mse_baseline_train)),
'nll_val: {:.10f}'.format(np.mean(loss_val)),
'mse_val: {:.12f}'.format(np.mean(mse_val)),
'mse_baseline_val: {:.10f}'.format(np.mean(mse_baseline_val)),
'time: {:.4f}s'.format(time.time() - t), file=log)
log.flush()
return np.mean(loss_val)
def test():
loss_test = []
mse_baseline_test = []
mse_test = []
tot_mse = 0
tot_mse_baseline = 0
counter = 0
model.eval()
model.load_state_dict(torch.load(model_file))
for batch_idx, (inputs, relations) in enumerate(test_loader):
rel_type_onehot = torch.FloatTensor(inputs.size(0), rel_rec.size(0),
args.edge_types)
rel_type_onehot.zero_()
rel_type_onehot.scatter_(2, relations.view(inputs.size(0), -1, 1), 1)
if args.fully_connected:
zeros = torch.zeros(
[rel_type_onehot.size(0), rel_type_onehot.size(1)])
ones = torch.ones(
[rel_type_onehot.size(0), rel_type_onehot.size(1)])
rel_type_onehot = torch.stack([zeros, ones], -1)
assert (inputs.size(2) - args.timesteps) >= args.timesteps
if args.cuda:
inputs = inputs.cuda()
rel_type_onehot = rel_type_onehot.cuda()
else:
inputs = inputs.contiguous()
inputs, rel_type_onehot = Variable(inputs, volatile=True), Variable(
rel_type_onehot, volatile=True)
ins_cut = inputs[:, :, -args.timesteps:, :].contiguous()
output = model(ins_cut, rel_type_onehot, rel_rec, rel_send, 1)
target = ins_cut[:, :, 1:, :]
loss = nll_gaussian(output, target, args.var)
mse = F.mse_loss(output, target)
mse_baseline = F.mse_loss(ins_cut[:, :, :-1, :], ins_cut[:, :, 1:, :])
loss_test.append(loss.data[0])
mse_test.append(mse.data[0])
mse_baseline_test.append(mse_baseline.data[0])
# For plotting purposes
if args.decoder == 'rnn':
output = model(inputs, rel_type_onehot, rel_rec, rel_send, 100,
burn_in=True, burn_in_steps=args.timesteps)
output = output[:, :, args.timesteps:, :]
target = inputs[:, :, -args.timesteps:, :]
baseline = inputs[:, :, -(args.timesteps + 1):-args.timesteps,
:].expand_as(target)
else:
data_plot = inputs[:, :, args.timesteps:args.timesteps + 21,
:].contiguous()
output = model(data_plot, rel_type_onehot, rel_rec, rel_send, 20)
target = data_plot[:, :, 1:, :]
baseline = inputs[:, :, args.timesteps:args.timesteps + 1,
:].expand_as(target)
mse = ((target - output) ** 2).mean(dim=0).mean(dim=0).mean(dim=-1)
tot_mse += mse.data.cpu().numpy()
counter += 1
mse_baseline = ((target - baseline) ** 2).mean(dim=0).mean(dim=0).mean(
dim=-1)
tot_mse_baseline += mse_baseline.data.cpu().numpy()
mean_mse = tot_mse / counter
mse_str = '['
for mse_step in mean_mse[:-1]:
mse_str += " {:.12f} ,".format(mse_step)
mse_str += " {:.12f} ".format(mean_mse[-1])
mse_str += ']'
mean_mse_baseline = tot_mse_baseline / counter
mse_baseline_str = '['
for mse_step in mean_mse_baseline[:-1]:
mse_baseline_str += " {:.12f} ,".format(mse_step)
mse_baseline_str += " {:.12f} ".format(mean_mse_baseline[-1])
mse_baseline_str += ']'
print('--------------------------------')
print('--------Testing-----------------')
print('--------------------------------')
print('nll_test: {:.10f}'.format(np.mean(loss_test)),
'mse_test: {:.12f}'.format(np.mean(mse_test)),
'mse_baseline_test: {:.10f}'.format(np.mean(mse_baseline_test)))
print('MSE: {}'.format(mse_str))
print('MSE Baseline: {}'.format(mse_baseline_str))
if args.save_folder:
print('--------------------------------', file=log)
print('--------Testing-----------------', file=log)
print('--------------------------------', file=log)
print('nll_test: {:.10f}'.format(np.mean(loss_test)),
'mse_test: {:.12f}'.format(np.mean(mse_test)),
'mse_baseline_test: {:.10f}'.format(np.mean(mse_baseline_test)),
file=log)
print('MSE: {}'.format(mse_str), file=log)
print('MSE Baseline: {}'.format(mse_baseline_str), file=log)
log.flush()
# Train model
t_total = time.time()
best_val_loss = np.inf
best_epoch = 0
for epoch in range(args.epochs):
val_loss = train(epoch, best_val_loss)
if val_loss < best_val_loss:
best_val_loss = val_loss
best_epoch = epoch
print("Optimization Finished!")
print("Best Epoch: {:04d}".format(best_epoch))
if args.save_folder:
print("Best Epoch: {:04d}".format(best_epoch), file=log)
log.flush()
test()
if log is not None:
print(save_folder)
log.close()