Example #1
0
    # check to see if stuff has run already
    if not args.ignore_previous:
        with open(args.save_file, 'r') as f:
            for line in f.readlines():
                if args.meta_data == line.split(',')[0]:
                    print(f"Metadata {args.meta_data} already ran. Exiting.")
                    exit()

    # training setup
    train_loader, test_loader_eval, train_loader_eval, num_classes = get_data(
        args)

    if args.model == 'fc':
        if args.dataset == 'mnist':
            net = fc(width=args.width,
                     depth=args.depth,
                     num_classes=num_classes).to(args.device)
        elif args.dataset == 'cifar10':
            net = fc(width=args.width,
                     depth=args.depth,
                     num_classes=num_classes,
                     input_dim=3 * 32 * 32).to(args.device)
    elif args.model == 'alexnet':
        if args.dataset == 'mnist':
            net = alexnet(input_height=28,
                          input_width=28,
                          input_channels=1,
                          num_classes=num_classes)
        else:
            net = alexnet(ch=args.scale,
                          num_classes=num_classes).to(args.device)
Example #2
0
    if torch.cuda.is_available():
        device = torch.device('cuda')
    else:
        device = torch.device('cpu')

    print(args)

    # training setup
    train_loader, test_loader_eval, train_loader_eval, input_dim, num_classes = get_data(
        args)

    if args.model == 'fc':
        bias = not args.no_bias  # if no_bias is True then bias must be False
        net = fc(bias=bias,
                 width=args.width,
                 depth=args.depth,
                 input_dim=input_dim,
                 num_classes=num_classes).to(device)
    else:
        raise NotImplementedError

    print(net)

    torch.manual_seed(args.seed)

    if args.zero_init_method == 'centered':
        with torch.no_grad():
            out0_list = []
            for x, y, idx in train_loader_eval:
                out0_list.append(net(x))
            out0 = torch.cat(out0_list)
Example #3
0
        evaluation_history_TEST = torch.load(args.load_dir +
                                             '/evaluation_history_TEST.hist')
        evaluation_history_TRAIN = torch.load(args.load_dir +
                                              '/evaluation_history_TRAIN.hist')
        noise_norm_history_TEST = torch.load(args.load_dir +
                                             '/noise_norm_history_TEST.hist')
        noise_norm_history_TRAIN = torch.load(args.load_dir +
                                              '/noise_norm_history_TRAIN.hist')

    else:
        if args.model == 'fc':
            if args.dataset == 'mnist' or args.dataset == 'gauss':
                if args.dataset == 'gauss':
                    net = fc(width=args.width,
                             depth=args.depth,
                             num_classes=num_classes,
                             input_dim=args.gauss_dimension,
                             activation=args.activation,
                             use_batch_norm=args.batch_norm).to(args.device)
                else:
                    net = fc(width=args.width,
                             depth=args.depth,
                             num_classes=num_classes,
                             activation=args.activation,
                             use_batch_norm=args.batch_norm).to(args.device)
            elif args.dataset == 'cifar10':
                net = fc(width=args.width,
                         depth=args.depth,
                         num_classes=num_classes,
                         input_dim=3 * 32 * 32,
                         activation=args.activation,
                         use_batch_norm=args.batch_norm).to(args.device)