main.py 4.87 KB
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import sys
import numpy as np
from tqdm import tqdm

import torch
import torch.nn as nn
import torch.optim as optim

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from dgl.data import GINDataset
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from dataloader import GINDataLoader
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from ginparser import Parser
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from gin import GIN


def train(args, net, trainloader, optimizer, criterion, epoch):
    net.train()

    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.to(args.device)
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        graphs = graphs.to(args.device)
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        feat = graphs.ndata.pop('attr')
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        outputs = net(graphs, feat)
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        loss = criterion(outputs, labels)
        running_loss += loss.item()

        # backprop
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        optimizer.zero_grad()
        loss.backward()
        optimizer.step()
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        # 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):
    net.eval()

    total = 0
    total_loss = 0
    total_correct = 0

    for data in dataloader:
        graphs, labels = data
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        graphs = graphs.to(args.device)
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        labels = labels.to(args.device)
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        feat = graphs.ndata.pop('attr')
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        total += len(labels)
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        outputs = net(graphs, feat)
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        _, predicted = torch.max(outputs.data, 1)

        total_correct += (predicted == labels.data).sum().item()
        loss = criterion(outputs, labels)
        # crossentropy(reduce=True) for default
        total_loss += loss.item() * len(labels)

    loss, acc = 1.0*total_loss / total, 1.0*total_correct / total

    net.train()

    return loss, acc


def main(args):

    # set up seeds, args.seed supported
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    torch.manual_seed(seed=args.seed)
    np.random.seed(seed=args.seed)
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    is_cuda = not args.disable_cuda and torch.cuda.is_available()

    if is_cuda:
        args.device = torch.device("cuda:" + str(args.device))
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        torch.cuda.manual_seed_all(seed=args.seed)
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    else:
        args.device = torch.device("cpu")

    dataset = GINDataset(args.dataset, not args.learn_eps)

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    trainloader, validloader = GINDataLoader(
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        dataset, batch_size=args.batch_size, device=args.device,
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        seed=args.seed, shuffle=True,
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        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,
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        args.graph_pooling_type, args.neighbor_pooling_type).to(args.device)
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    criterion = nn.CrossEntropyLoss()  # defaul reduce is true
    optimizer = optim.Adam(model.parameters(), lr=args.lr)
    scheduler = optim.lr_scheduler.StepLR(optimizer, step_size=50, gamma=0.5)

    # 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, optimizer, criterion, epoch)
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        scheduler.step()
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        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(
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            "Learning eps with learn_eps={}: {}".format(
                args.learn_eps, [layer.eps.data.item() for layer in model.ginlayers]))
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    tbar.close()
    vbar.close()
    lrbar.close()


if __name__ == '__main__':
    args = Parser(description='GIN').args
    print('show all arguments configuration...')
    print(args)

    main(args)