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main.py
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main.py
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import sys
import numpy as np
from tqdm import tqdm
import mxnet as mx
from mxnet import gluon, nd
from mxnet.gluon import nn
from dgl.data.gindt import GINDataset
from dataloader import GraphDataLoader, collate
from parser import Parser
from gin import GIN
def train(args, net, trainloader, trainer, criterion, epoch):
running_loss = 0
total_iters = len(trainloader)
# setup the offset to avoid the overlap with mouse cursor
bar = tqdm(range(total_iters), unit='batch', position=2, file=sys.stdout)
for pos, (graphs, labels) in zip(bar, trainloader):
# batch graphs will be shipped to device in forward part of model
labels = labels.as_in_context(args.device)
feat = graphs.ndata['attr'].as_in_context(args.device)
with mx.autograd.record():
graphs = graphs.to(args.device)
outputs = net(graphs, feat)
loss = criterion(outputs, labels)
loss = loss.sum() / len(labels)
running_loss += loss.asscalar()
# backprop
loss.backward()
trainer.step(batch_size=1)
# report
bar.set_description('epoch-{}'.format(epoch))
bar.close()
# the final batch will be aligned
running_loss = running_loss / total_iters
return running_loss
def eval_net(args, net, dataloader, criterion):
total = 0
total_loss = 0
total_correct = 0
for data in dataloader:
graphs, labels = data
labels = labels.as_in_context(args.device)
feat = graphs.ndata['attr'].as_in_context(args.device)
total += len(labels)
graphs = graphs.to(args.device)
outputs = net(graphs, feat)
predicted = nd.argmax(outputs, axis=1)
predicted = predicted.astype('int64')
total_correct += (predicted == labels).sum().asscalar()
loss = criterion(outputs, labels)
# crossentropy(reduce=True) for default
total_loss += loss.sum().asscalar()
loss, acc = 1.0 * total_loss / total, 1.0*total_correct / total
return loss, acc
def main(args):
# set up seeds, args.seed supported
mx.random.seed(0)
np.random.seed(seed=0)
if args.device >= 0:
args.device = mx.gpu(args.device)
else:
args.device = mx.cpu()
dataset = GINDataset(args.dataset, not args.learn_eps)
trainloader, validloader = GraphDataLoader(
dataset, batch_size=args.batch_size,
collate_fn=collate, seed=args.seed, shuffle=True,
split_name='fold10', fold_idx=args.fold_idx).train_valid_loader()
# or split_name='rand', split_ratio=0.7
model = GIN(
args.num_layers, args.num_mlp_layers,
dataset.dim_nfeats, args.hidden_dim, dataset.gclasses,
args.final_dropout, args.learn_eps,
args.graph_pooling_type, args.neighbor_pooling_type)
model.initialize(ctx=args.device)
criterion = gluon.loss.SoftmaxCELoss()
print(model.collect_params())
lr_scheduler = mx.lr_scheduler.FactorScheduler(50, 0.5)
trainer = gluon.Trainer(model.collect_params(), 'adam',
{'lr_scheduler': lr_scheduler})
# it's not cost-effective to hanle the cursor and init 0
# https://stackoverflow.com/a/23121189
tbar = tqdm(range(args.epochs), unit="epoch", position=3, ncols=0, file=sys.stdout)
vbar = tqdm(range(args.epochs), unit="epoch", position=4, ncols=0, file=sys.stdout)
lrbar = tqdm(range(args.epochs), unit="epoch", position=5, ncols=0, file=sys.stdout)
for epoch, _, _ in zip(tbar, vbar, lrbar):
train(args, model, trainloader, trainer, criterion, epoch)
train_loss, train_acc = eval_net(
args, model, trainloader, criterion)
tbar.set_description(
'train set - average loss: {:.4f}, accuracy: {:.0f}%'
.format(train_loss, 100. * train_acc))
valid_loss, valid_acc = eval_net(
args, model, validloader, criterion)
vbar.set_description(
'valid set - average loss: {:.4f}, accuracy: {:.0f}%'
.format(valid_loss, 100. * valid_acc))
if not args.filename == "":
with open(args.filename, 'a') as f:
f.write('%s %s %s %s' % (
args.dataset,
args.learn_eps,
args.neighbor_pooling_type,
args.graph_pooling_type
))
f.write("\n")
f.write("%f %f %f %f" % (
train_loss,
train_acc,
valid_loss,
valid_acc
))
f.write("\n")
lrbar.set_description(
"Learning eps with learn_eps={}: {}".format(
args.learn_eps, [layer.eps.data(args.device).asscalar() for layer in model.ginlayers]))
tbar.close()
vbar.close()
lrbar.close()
if __name__ == '__main__':
args = Parser(description='GIN').args
print('show all arguments configuration...')
print(args)
main(args)