def main()

in ebm_sandbox.py [0:0]


def main():

    if FLAGS.dataset == "cifar10":
        dataset = Cifar10(train=True, noise=False)
        test_dataset = Cifar10(train=False, noise=False)
    else:
        dataset = Imagenet(train=True)
        test_dataset = Imagenet(train=False)

    if FLAGS.svhn:
        dataset = Svhn(train=True)
        test_dataset = Svhn(train=False)

    if FLAGS.task == 'latent':
        dataset = DSprites()
        test_dataset = dataset

    dataloader = DataLoader(dataset, batch_size=FLAGS.batch_size, num_workers=FLAGS.data_workers, shuffle=True, drop_last=True)
    test_dataloader = DataLoader(test_dataset, batch_size=FLAGS.batch_size, num_workers=FLAGS.data_workers, shuffle=True, drop_last=True)

    hidden_dim = 128

    if FLAGS.large_model:
        model = ResNet32Large(num_filters=hidden_dim)
    elif FLAGS.larger_model:
        model = ResNet32Larger(num_filters=hidden_dim)
    elif FLAGS.wider_model:
        if FLAGS.dataset == 'imagenet':
            model = ResNet32Wider(num_filters=196, train=False)
        else:
            model = ResNet32Wider(num_filters=256, train=False)
    else:
        model = ResNet32(num_filters=hidden_dim)

    if FLAGS.task  == 'latent':
        model = DspritesNet()

    weights = model.construct_weights('context_{}'.format(0))

    total_parameters = 0
    for variable in tf.trainable_variables():
        # shape is an array of tf.Dimension
        shape = variable.get_shape()
        variable_parameters = 1
        for dim in shape:
            variable_parameters *= dim.value
        total_parameters += variable_parameters
    print("Model has a total of {} parameters".format(total_parameters))

    config = tf.ConfigProto()
    sess = tf.InteractiveSession()

    if FLAGS.task == 'latent':
        X = tf.placeholder(shape=(None, 64, 64), dtype = tf.float32)
    else:
        X = tf.placeholder(shape=(None, 32, 32, 3), dtype = tf.float32)

    if FLAGS.dataset == "cifar10":
        Y = tf.placeholder(shape=(None, 10), dtype = tf.float32)
        Y_GT = tf.placeholder(shape=(None, 10), dtype = tf.float32)
    elif FLAGS.dataset == "imagenet":
        Y = tf.placeholder(shape=(None, 1000), dtype = tf.float32)
        Y_GT = tf.placeholder(shape=(None, 1000), dtype = tf.float32)

    target_vars = {'X': X, 'Y': Y, 'Y_GT': Y_GT}

    if FLAGS.task == 'label':
        construct_label(weights, X, Y, Y_GT, model, target_vars)
    elif FLAGS.task == 'labelfinetune':
        construct_finetune_label(weights, X, Y, Y_GT, model, target_vars, )
    elif FLAGS.task == 'energyeval' or FLAGS.task == 'mixenergy':
        construct_energy(weights, X, Y, Y_GT, model, target_vars)
    elif FLAGS.task == 'anticorrupt' or FLAGS.task == 'boxcorrupt' or FLAGS.task == 'crossclass' or FLAGS.task == 'cycleclass' or FLAGS.task == 'democlass' or FLAGS.task == 'nearestneighbor':
        construct_steps(weights, X, Y_GT, model, target_vars)
    elif FLAGS.task == 'latent':
        construct_latent(weights, X, Y_GT, model, target_vars)

    sess.run(tf.global_variables_initializer())
    saver = loader = tf.train.Saver(max_to_keep=10)
    savedir = osp.join('cachedir', FLAGS.exp)
    logdir = osp.join(FLAGS.logdir, FLAGS.exp)
    if not osp.exists(logdir):
        os.makedirs(logdir)

    initialize()
    if FLAGS.resume_iter != -1:
        model_file = osp.join(savedir, 'model_{}'.format(FLAGS.resume_iter))
        resume_itr = FLAGS.resume_iter

        if FLAGS.task == 'label' or FLAGS.task == 'boxcorrupt' or FLAGS.task == 'labelfinetune' or FLAGS.task == "energyeval" or FLAGS.task == "crossclass" or FLAGS.task == "mixenergy":
            optimistic_restore(sess, model_file)
            # saver.restore(sess, model_file)
        else:
            # optimistic_restore(sess, model_file)
            saver.restore(sess, model_file)

    if FLAGS.task == 'label':
        if FLAGS.labelgrid:
            vals = []
            if FLAGS.lnorm == -1:
                for i in range(31):
                    accuracies = label(dataloader, test_dataloader, target_vars, sess, l1val=i)
                    vals.append(accuracies)
            elif FLAGS.lnorm == 2:
                for i in range(0, 100, 5):
                    accuracies = label(dataloader, test_dataloader, target_vars, sess, l2val=i)
                    vals.append(accuracies)

            np.save("result_{}_{}.npy".format(FLAGS.lnorm, FLAGS.exp), vals)
        else:
            label(dataloader, test_dataloader, target_vars, sess)
    elif FLAGS.task == 'labelfinetune':
        labelfinetune(dataloader, test_dataloader, target_vars, sess, savedir, saver, l1val=FLAGS.lival, l2val=FLAGS.l2val)
    elif FLAGS.task == 'energyeval':
        energyeval(dataloader, test_dataloader, target_vars, sess)
    elif FLAGS.task == 'mixenergy':
        energyevalmix(dataloader, test_dataloader, target_vars, sess)
    elif FLAGS.task == 'anticorrupt':
        anticorrupt(test_dataloader, weights, model, target_vars, logdir, sess)
    elif FLAGS.task == 'boxcorrupt':
        # boxcorrupt(test_dataloader, weights, model, target_vars, logdir, sess)
        boxcorrupt(test_dataloader, dataloader, weights, model, target_vars, logdir, sess)
    elif FLAGS.task == 'crossclass':
        crossclass(test_dataloader, weights, model, target_vars, logdir, sess)
    elif FLAGS.task == 'cycleclass':
        cycleclass(test_dataloader, weights, model, target_vars, logdir, sess)
    elif FLAGS.task == 'democlass':
        democlass(test_dataloader, weights, model, target_vars, logdir, sess)
    elif FLAGS.task == 'nearestneighbor':
        # print(dir(dataset))
        # print(type(dataset))
        nearest_neighbor(dataset.data.train_data / 255, sess, target_vars, logdir)
    elif FLAGS.task == 'latent':
        latent(test_dataloader, weights, model, target_vars, sess)