Ejemplo n.º 1
0
def train(config='configs/cifar10_regression.json',
          save_root_path='/cluster/work/math/fanyang-broglil/CoreRepo',
          experiment_json_fname='experiments.json',
          local_json_dir_name='local_json_files',
          worstofk=None,
          attack_style=None,
          attack_limits=None,
          fo_epsilon=None,
          fo_step_size=None,
          fo_num_steps=None,
          lambda_core=None,
          num_ids = None,
          group_size=None,
          use_core=None,
          seed=None,
          save_in_local_json=True,
          this_repo=None):

    # reset default graph (needed for running locally with run_jobs_ray.py)
    tf.reset_default_graph()

    # get configs
    config_dict = utilities.get_config(config)
    config_dict_copy = copy.deepcopy(config_dict)
    config = utilities.config_to_namedtuple(config_dict)

    # seeding randomness
    if seed == None:
        seed = config.training.tf_random_seed
    else:
        config_dict_copy['training']['tf_random_seed'] = seed
    tf.set_random_seed(seed)
    np.random.seed(seed)

    # Setting up training parameters
    max_num_training_steps = config.training.max_num_training_steps
    step_size_schedule = config.training.step_size_schedule
    weight_decay = config.training.weight_decay
    momentum = config.training.momentum

    if group_size == None:
        group_size = config.training.group_size
    else:
        config_dict_copy['training']['group_size'] = int(group_size)
    if num_ids == None:
        num_ids = config.training.num_ids
    else:
        config_dict_copy['training']['num_ids'] = int(num_ids)
    if lambda_core == None:
        lambda_core = config.training.lambda_
    else:
        config_dict_copy['training']['lambda_'] = float(lambda_core)
    if use_core == None:
        use_core = config.training.use_core
    else:
        config_dict_copy['training']['use_core'] = use_core

    batch_size = config.training.batch_size
    # number of groups with group size > 1
    num_grouped_ids = batch_size - num_ids
    # number of unique ids needs to be larger than half the desired batch size
    # so that full batch can be filled up
    assert num_ids >= batch_size/2
    # currently, code is designed for groups of size 2
    assert config.training.group_size == 2

    adversarial_training = config.training.adversarial_training
    eval_during_training = config.training.eval_during_training
    if eval_during_training:
        num_eval_steps = config.training.num_eval_steps

    # Setting up output parameters
    num_output_steps = config.training.num_output_steps
    num_summary_steps = config.training.num_summary_steps
    num_checkpoint_steps = config.training.num_checkpoint_steps
    num_easyeval_steps = config.training.num_easyeval_steps

    # Setting up the data and the model
    data_path = config.data.data_path

    if config.data.dataset_name == "cifar-10":
        raw_iterator = cifar10_input.CIFAR10Data(data_path)
    elif config.data.dataset_name == "cifar-100":
        raw_iterator = cifar100_input.CIFAR100Data(data_path)
    elif config.data.dataset_name == "svhn":
        raw_iterator = svhn_input.SVHNData(data_path)
    else:
        raise ValueError("Unknown dataset name.")

    global_step = tf.train.get_or_create_global_step()

    model_family = config.model.model_family
    if model_family == "resnet":
        if config.attack.use_spatial and config.attack.spatial_method == 'fo':
            diffable = True
        else:
            diffable = False
        model = resnet_reg.Model(config.model, num_ids, diffable,
            config.training.adversarial_ce)
    elif model_family == "vgg":
        if config.attack.use_spatial and config.attack.spatial_method == 'fo':
            diffable = True
        else:
            diffable = False
        if config.training.adversarial_ce:
            raise NotImplementedError
        model = vgg.Model(config.model, num_ids, diffable)

    # uncomment to get a list of trainable variables
    # model_vars = tf.trainable_variables()

    # Setting up the optimizer
    boundaries = [int(sss[0]) for sss in step_size_schedule]
    boundaries = boundaries[1:]
    values = [sss[1] for sss in step_size_schedule]
    learning_rate = tf.train.piecewise_constant(
        tf.cast(global_step, tf.int32),
        boundaries,
        values)

    if use_core and lambda_core > 0:
        print("WARNING: in regression task, should not enter this section!\n")
        total_loss = (model.reg_loss + weight_decay * model.weight_decay_loss +
                      lambda_core * model.core_loss2)
    else:
        total_loss = model.reg_loss + weight_decay * model.weight_decay_loss

    optimizer = tf.train.MomentumOptimizer(learning_rate, momentum)
    train_step = optimizer.minimize(total_loss, global_step=global_step)

    # Set up adversary
    if worstofk == None:
        worstofk = config.attack.random_tries
    else:
        config_dict_copy['attack']['random_tries'] = worstofk
    if fo_epsilon == None:
        fo_epsilon = config.attack.epsilon
    else:
        config_dict_copy['attack']['epsilon'] = fo_epsilon
    if fo_step_size == None:
        fo_step_size = config.attack.step_size
    else:
        config_dict_copy['attack']['step_size'] = fo_step_size
    if fo_num_steps == None:
        fo_num_steps = config.attack.num_steps
    else:
        config_dict_copy['attack']['num_steps'] = fo_num_steps
    # @ Luzius: incorporate being able to choose multiple transformations
    if attack_style == None:
        attack_style = 'rotate'

    simple_train = config.attack.simple_train

    if simple_train == False:

        # Training attack == denfense
        # L-inf attack if use_spatial is False and use_linf is True
        # spatial attack if use_spatial is True and use_linf is False
        # spatial random attack if spatial_method is 'random'
        # spatial PGD attack if spatial_method is 'fo'
        attack = SpatialAttack(model, config.attack, config.attack.spatial_method,
                               worstofk, attack_limits, fo_epsilon,
                               fo_step_size, fo_num_steps)
        # Different eval attacks
        # Random attack
        # L-inf attack if use_spatial is False and use_linf is True
        # random (worst-of-1) spatial attack if use_spatial is True
        # and use_linf is False
        attack_eval_random = SpatialAttack(model, config.attack, 'random', 1,
                                           attack_limits, fo_epsilon,
                                           fo_step_size, fo_num_steps)
        # First order attack
        # L-inf attack if use_spatial is False and use_linf is True
        # first-order spatial attack if use_spatial is True and use_linf is False
        attack_eval_fo = SpatialAttack(model, config.attack, 'fo', 1,
                                       attack_limits, fo_epsilon,
                                       fo_step_size, fo_num_steps)

        # Grid attack
        # spatial attack if use_spatial is True and use_linf is False
        # not executed for L-inf attacks
        attack_eval_grid = SpatialAttack(model, config.attack, 'grid', None,
                                         attack_limits)
    else:
        attack = SpatialAttack(model, config.attack, config.attack.spatial_method,
                               worstofk, attack_limits, fo_epsilon,
                               fo_step_size, fo_num_steps)

    # TODO(christina): add L-inf attack with random restarts

    # ------------------START EXPERIMENT -------------------------
    # Initialize the Repo
    print("==> Creating repo..")
    # Create repo object if it wasn't passed, comment out if repo has issues
    if this_repo == None:
        this_repo = exprepo.ExperimentRepo(
            save_in_local_json=save_in_local_json,
            json_filename=experiment_json_fname,
            local_dir_name=local_json_dir_name,
            root_dir=save_root_path)

    # Create new experiment
    if this_repo != None:
        exp_id = this_repo.create_new_experiment(config.data.dataset_name,
                                                 model_family,
                                                 worstofk,
                                                 attack_style,
                                                 attack_limits,
                                                 lambda_core,
                                                 num_grouped_ids,
                                                 group_size,
                                                 config_dict_copy)

    # Setting up the Tensorboard and checkpoint outputs
    model_dir = '%s/logdir/%s' % (save_root_path, exp_id)

    # We add accuracy and xent twice so we can easily make three types of
    # comparisons in Tensorboard:
    # - train vs eval (for a single run)
    # - train of different runs
    # - eval of different runs

    saver = tf.train.Saver(max_to_keep=3)

    tf.summary.scalar('regression loss function value', model.reg_loss, collections= ['err'])
    tf.summary.scalar('avg_abs_err_x', model.avg_abs_err_transX, collections=['err'])
    tf.summary.scalar('avg_abs_err_y', model.avg_abs_err_transY, collections=['err'])
    tf.summary.scalar('avg_abs_err_rot', model.avg_abs_err_rot, collections=['err'])
    tf.summary.scalar('avg_rel_err_x', model.avg_rel_err_transX, collections=['err'])
    tf.summary.scalar('avg_rel_err_y', model.avg_rel_err_transY, collections=['err'])
    tf.summary.scalar('avg_rel_err_rot', model.avg_rel_err_rot, collections=['err'])
    tf.summary.scalar('learning_rate', learning_rate, collections=['err'])
    tf.summary.image('before_reflect_padding', model.before_reflect_x, collections=['err'])
    tf.summary.image('after_reflect_padding', model.reflect_x, collections=['err'])

    err_summaries = tf.summary.merge_all('err')

    tf.summary.scalar('full_batch_avg_abs_err_x', model.avg_abs_err_transX, collections=['eval'])
    tf.summary.scalar('full_batch_avg_abs_err_y', model.avg_abs_err_transY, collections=['eval'])
    tf.summary.scalar('full_batch_avg_abs_err_rot', model.avg_abs_err_rot, collections=['eval'])
    tf.summary.scalar('full_batch_avg_rel_err_x', model.avg_rel_err_transX, collections=['eval'])
    tf.summary.scalar('full_batch_avg_rel_err_y', model.avg_rel_err_transY, collections=['eval'])
    tf.summary.scalar('full_batch_avg_rel_err_rot', model.avg_rel_err_rot, collections=['eval'])
    tf.summary.scalar('full_batch_avg_worst', model.avg_worst_err, collections=['eval'])

    # tf.summary.scalar('learning_rate', learning_rate, collections=['eval'])
    eval_summaries = tf.summary.merge_all('eval')


    # data augmentation used if config.training.data_augmentation_core is True
    x_input_placeholder = tf.placeholder(tf.float32, shape=[None, 32, 32, 3])
    flipped = tf.map_fn(lambda img: tf.image.random_flip_left_right(img),
                        x_input_placeholder)

    with tf.Session() as sess:
        # initialize standard data augmentation
        if config.training.data_augmentation:
            if config.data.dataset_name == "cifar-10":
                data_iterator = cifar10_input.AugmentedCIFAR10Data(raw_iterator, sess)
            elif config.data.dataset_name == "cifar-100":
                data_iterator = cifar100_input.AugmentedCIFAR100Data(raw_iterator, sess)
            elif config.data.dataset_name == "svhn":
                data_iterator = svhn_input.AugmentedSVHNData(raw_iterator, sess)
            else:
                raise ValueError("Unknown dataset name.")
        else:
            data_iterator = raw_iterator

        if simple_train:
            # attack = SpatialAttack(model, config.attack, config.attack.spatial_method,
            #                        worstofk, attack_limits, fo_epsilon,
            #                        fo_step_size, fo_num_steps)
            # attack.simple_train_perturb should return a list of parameters (len(x_batch),3)
            x_eval_batch = data_iterator.eval_data.xs
            x_batch_eval = x_eval_batch
            # the evaluation batch labels are 3 dim transformations now
            y_batch_eval = data_iterator.eval_data.ys
            # we pass the label values to the model. as the transformation
            trans_eval = y_batch_eval
            eval_dict = {model.x_input: x_batch_eval,
                         model.y_input: y_batch_eval,
                         # group is not used in simple train
                         model.group:  np.arange(0, batch_size, 1, dtype="int32"),
                         model.transform: trans_eval,
                         model.is_training: False}

        else:
            eval_dict = {model.x_input: data_iterator.eval_data.xs,
                         model.y_input: data_iterator.eval_data.ys,
                         model.group:  np.arange(0, batch_size, 1, dtype="int32"),
                         model.transform: np.zeros([data_iterator.eval_data.n, 3]),
                         model.is_training: False}

        # Initialize the summary writer, global variables, and our time counter.
        summary_writer = tf.summary.FileWriter(model_dir, sess.graph)
        # if eval_during_training:
        eval_dir = os.path.join(model_dir, 'eval')
        os.makedirs(eval_dir, exist_ok=True)
        # eval_summary_writer = tf.summary.FileWriter(eval_dir)

        sess.run(tf.global_variables_initializer())
        training_time = 0.0
        run_time_without_eval = 0.0
        run_time_adv_ex_creation = 0.0
        run_time_train_step = 0.0
        ####################################
        # Main training loop
        ####################################
        start_time = time.time()
        no_epochs_done = 0 # the same as epoch_count, need to merge
        start_epoch = timer()
        it_count = 0
        epoch_count = 0
        acc_sum = 0

        printFlag = 0

        for ii in range(max_num_training_steps+1):
            # original batch
            x_batch, y_batch, epoch_done = data_iterator.train_data.get_next_batch(
                num_ids, multiple_passes=True)
            no_epochs_done += epoch_done
            # noop trans
            noop_trans = np.zeros([len(x_batch), 3])
            # id_batch starts with IDs of original examples
            id_batch = np.arange(0, num_ids, 1, dtype="int32")

            if use_core:
                print("*********Warning: should not be using core in train_reg.py!*********\n")
            else:
                if adversarial_training:
                    start = timer()

                    if simple_train:

                        # only generating 1 tilted image per original image, which is equivalent to wo-1
                        x_batch_inp = x_batch
                        # using the labels as the transformation, hope the model will learn it
                        trans_inp = y_batch

                    else:
                        print("shouldn't be entering here in regression task!\n")
                        quit()
                        x_batch_inp, trans_inp = attack.perturb(x_batch, y_batch,
                                                            sess)
                    end = timer()
                    training_time += end - start
                    run_time_without_eval += end - start
                    run_time_adv_ex_creation += end - start
                else:
                    x_batch_inp, trans_inp = x_batch, noop_trans

                # if simple_train:
                #     y_batch_inp = y_batch
                #     y_batch_adv = transform_parameters
                #     trans_adv = transform_parameters
                #     x_batch_adv = x_batch_inp
                #     id_batch_inp = id_batch
                #     id_batch_adv = id_batch
                # for adversarial training and plain training, the following
                # variables coincide
                # else:
                y_batch_inp = y_batch
                y_batch_adv = y_batch
                trans_adv = trans_inp
                x_batch_adv = x_batch_inp
                id_batch_inp = id_batch
                id_batch_adv = id_batch

            # feed_dict for training step
            inp_dict = {model.x_input: x_batch_inp,
                        model.y_input: y_batch_inp,
                        model.group: id_batch_inp,
                        model.transform: trans_inp,
                        model.is_training: False}

            # separate natural and adversarially transformed examples for eval
            # nat_dict = {model.x_input: x_batch,
            #             model.y_input: y_batch,
            #             model.group: id_batch,
            #             model.transform: noop_trans,
            #             model.is_training: False}
            #
            # adv_dict = {model.x_input: x_batch_adv,
            #             model.y_input: y_batch_adv,
            #             model.group: id_batch_adv,
            #             model.transform: trans_adv,
            #             model.is_training: False}

            loss = sess.run(model.reg_loss, feed_dict=inp_dict)
            if ii % num_easyeval_steps == 0 or ii == max_num_training_steps:
                print("\nin resnet_reg")
                print("y_input")
                y_input = sess.run(model.y_input, feed_dict=inp_dict)
                print(y_input[0:5])
                print("\nprediction")
                prediction = sess.run(model.prediction, feed_dict=inp_dict)
                print(prediction[0:5])
                print(' Easy Evalutaion Step training time error  Training Set   ')
                print('avg_abs_err_transX : {}'.format(sess.run(model.avg_abs_err_transX, feed_dict=inp_dict)))
                print('avg_abs_err_transY : {}'.format(sess.run(model.avg_abs_err_transY, feed_dict=inp_dict)))
                print('avg_abs_err_rot : {}'.format(sess.run(model.avg_abs_err_rot, feed_dict=inp_dict)))
                print('avg_rel_err_transX : {}'.format(sess.run(model.avg_rel_err_transX, feed_dict=inp_dict)))
                print('avg_rel_err_transY : {}'.format(sess.run(model.avg_rel_err_transY, feed_dict=inp_dict)))
                print('avg_rel_err_rot : {}'.format(sess.run(model.avg_rel_err_rot, feed_dict=inp_dict)))

                print(' Easy Evalutaion Step training time error  Evaluation Set   ')
                print('avg_abs_err_transX : {}'.format(sess.run(model.avg_abs_err_transX, feed_dict=eval_dict)))
                print('avg_abs_err_transY : {}'.format(sess.run(model.avg_abs_err_transY, feed_dict=eval_dict)))
                print('avg_abs_err_rot : {}'.format(sess.run(model.avg_abs_err_rot, feed_dict=eval_dict)))
                print('avg_rel_err_transX : {}'.format(sess.run(model.avg_rel_err_transX, feed_dict=eval_dict)))
                print('avg_rel_err_transY : {}'.format(sess.run(model.avg_rel_err_transY, feed_dict=eval_dict)))
                print('avg_rel_err_rot : {}'.format(sess.run(model.avg_rel_err_rot, feed_dict=eval_dict)))
            # Output to stdout
            if epoch_done:
                epoch_time = timer() - start_epoch

                # ToDo: Log this to file as well

                # Training accuracy over epoch
                print('Epoch {}:    ({})'.format(epoch_count, datetime.now()))
                print('    training loss {:.4}'.format(loss))
                print('    {:.4} seconds per epoch'.format(epoch_time))

                print('    training time error  Training Set   ')
                print('avg_abs_err_transX : {}'.format(sess.run(model.avg_abs_err_transX, feed_dict=inp_dict)))
                print('avg_abs_err_transY : {}'.format(sess.run(model.avg_abs_err_transY, feed_dict=inp_dict)))
                print('avg_abs_err_rot : {}'.format(sess.run(model.avg_abs_err_rot, feed_dict=inp_dict)))
                print('avg_rel_err_transX : {}'.format(sess.run(model.avg_rel_err_transX, feed_dict=inp_dict)))
                print('avg_rel_err_transY : {}'.format(sess.run(model.avg_rel_err_transY, feed_dict=inp_dict)))
                print('avg_rel_err_rot : {}'.format(sess.run(model.avg_rel_err_rot, feed_dict=inp_dict)))

                # if ii % config.eval.full_batch_eval_steps == 0:
                #     print_eval_fullbatch(ii, sess, y_batch_eval, batch_size, trans_eval, model, attack, model_dir, global_step, summary_writer)

                epoch_done = 0
                epoch_count += 1
                start_epoch = timer()
                it_count = 1
            else:
                it_count += 1
                # acc_sum += nat_acc_tr


            # Output to stdout
            if ii % num_output_steps == 0:
                if ii != 0:
                     training_time = 0.0

            # Tensorboard summaries and heavy checkpoints
            if ii % num_summary_steps == 0:
                summary = sess.run(err_summaries, feed_dict=inp_dict)
                summary_writer.add_summary(summary, global_step.eval(sess))


            # Write a checkpoint and eval if it's time
            if ii % num_checkpoint_steps == 0 or ii == max_num_training_steps:
                # Save checkpoint data (weights)
                saver.save(sess,
                           os.path.join(model_dir, 'checkpoint'),
                           global_step=global_step)

                full_eval_dict = fetch_full_eval_dict(model, batch_size)

                print_eval_fullbatch(ii,sess, model, model_dir, full_eval_dict)
                summary_eval = sess.run(eval_summaries, feed_dict=full_eval_dict)
                summary_writer.add_summary(summary_eval, global_step.eval(sess))

                # Evaluation on full evaluation batch
                # if ((eval_during_training and ii % num_eval_steps == 0
                #     and ii > 0 and config.attack.use_spatial) or
                #     (eval_during_training and ii == max_num_training_steps and
                #     config.attack.use_spatial)):
                #     print_eval_fullbatch(ii,sess, y_batch_eval, batch_size, trans_eval, model, attack, model_dir, global_step, summary_writer)

            # Actual training step
            start = timer()
            inp_dict[model.is_training] = True
            sess.run(train_step, feed_dict=inp_dict)
            end = timer()
            training_time += end - start
            run_time_without_eval += end - start
            run_time_train_step += end - start

        runtime = time.time() - start_time

        # this_repo.mark_experiment_as_completed(
        #     runtime=runtime, runtime_wo_eval=run_time_without_eval,
        #     runtime_train_step=run_time_train_step,
        #     runtime_adv_ex_creation=run_time_adv_ex_creation)

    return 0
Ejemplo n.º 2
0
if __name__ == "__main__":
    parser = argparse.ArgumentParser(
        description='Train script options',
        formatter_class=argparse.ArgumentDefaultsHelpFormatter)
    parser.add_argument('-c',
                        '--config',
                        type=str,
                        help='path to config file',
                        default='config.json',
                        required=False)
    args = parser.parse_args()

    config_dict = utilities.get_config(args.config)

    model_dir = config_dict['model']['output_dir']
    if not os.path.exists(model_dir):
        os.makedirs(model_dir)

    # keep the configuration file with the model for reproducibility
    with open(os.path.join(model_dir, 'config.json'), 'w') as f:
        json.dump(config_dict, f, sort_keys=True, indent=4)

    config = utilities.config_to_namedtuple(config_dict)
    train(config)

    os.mkdir(model_dir + '/spec')
    shutil.copytree('.',
                    model_dir + '/spec',
                    ignore=utilities.include_patterns('*.py', '*.json'))
Ejemplo n.º 3
0
def train(tf_seed, np_seed, train_steps, out_steps, summary_steps,
          checkpoint_steps, step_size_schedule, weight_decay, momentum,
          train_batch_size, epsilon, replay_m, model_dir, dataset,
          poison_alpha, poison_config, **kwargs):
    tf.compat.v1.set_random_seed(tf_seed)
    np.random.seed(np_seed)

    print('poison alpha = %f' % poison_alpha)

    model_dir = model_dir + '%s_m%d_eps%.1f_b%d' % (
        dataset, replay_m, epsilon, train_batch_size
    )  # TODO Replace with not defaults

    # Setting up the data and the model

    poison_config_dict = utilities.config_to_namedtuple(
        utilities.get_config(poison_config))

    print(poison_config_dict)

    data_path = get_path_dir(dataset=dataset, **kwargs)
    if dataset == 'cifar10':
        raw_data = cifar10_input.CIFAR10Data(data_path)
    elif dataset == 'cifar10_poisoned':
        raw_data = dataset_input.CIFAR10Data(poison_config_dict, seed=np_seed)
    else:
        raw_data = cifar100_input.CIFAR100Data(data_path)
    global_step = tf.compat.v1.train.get_or_create_global_step()
    with tpu_strategy.scope():
        model = Model(mode='train',
                      dataset=dataset,
                      train_batch_size=train_batch_size)

    # Setting up the optimizer
    boundaries = [int(sss[0]) for sss in step_size_schedule][1:]
    values = [sss[1] for sss in step_size_schedule]
    learning_rate = tf.compat.v1.train.piecewise_constant(
        tf.cast(global_step, tf.int32), boundaries, values)
    optimizer = tf.compat.v1.train.MomentumOptimizer(learning_rate, momentum)

    # Optimizing computation
    total_loss = model.mean_xent + weight_decay * model.weight_decay_loss
    grads = optimizer.compute_gradients(total_loss)

    # Compute new image
    pert_grad = [g for g, v in grads if 'perturbation' in v.name]
    sign_pert_grad = tf.sign(pert_grad[0])
    new_pert = model.pert + epsilon * sign_pert_grad
    clip_new_pert = tf.clip_by_value(new_pert, -epsilon, epsilon)
    assigned = tf.compat.v1.assign(model.pert, clip_new_pert)

    # Train
    no_pert_grad = [(tf.zeros_like(v), v) if 'perturbation' in v.name else
                    (g, v) for g, v in grads]
    with tf.control_dependencies([assigned]):
        min_step = optimizer.apply_gradients(no_pert_grad,
                                             global_step=global_step)
    tf.compat.v1.initialize_variables([model.pert])  # TODO: Removed from TF

    # Setting up the Tensorboard and checkpoint outputs
    if not os.path.exists(model_dir):
        os.makedirs(model_dir)

    saver = tf.compat.v1.train.Saver(max_to_keep=1)
    tf.compat.v1.summary.scalar('accuracy', model.accuracy)
    tf.compat.v1.summary.scalar('xent', model.xent / train_batch_size)
    tf.compat.v1.summary.scalar('total loss', total_loss / train_batch_size)
    merged_summaries = tf.compat.v1.summary.merge_all()

    gpu_options = tf.compat.v1.GPUOptions(per_process_gpu_memory_fraction=1.0)
    with tf.compat.v1.Session(config=tf.compat.v1.ConfigProto(
            gpu_options=gpu_options)) as sess:
        print(
            '\n\n********** free training for epsilon=%.1f using m_replay=%d **********\n\n'
            % (epsilon, replay_m))
        print(
            'important params >>> \n model dir: %s \n dataset: %s \n training batch size: %d \n'
            % (model_dir, dataset, train_batch_size))
        if dataset == 'cifar100':
            print(
                'the ride for CIFAR100 is bumpy -- fasten your seatbelts! \n \
          you will probably see the training and validation accuracy fluctuating a lot early in trainnig \n \
                this is natural especially for large replay_m values because we see that mini-batch so many times.'
            )
        # initialize data augmentation
        if dataset == 'cifar10':
            data = cifar10_input.AugmentedCIFAR10Data(raw_data, sess, model)
        elif dataset == 'cifar10_poisoned':
            data = raw_data
        else:
            data = cifar100_input.AugmentedCIFAR100Data(raw_data, sess, model)

        # Initialize the summary writer, global variables, and our time counter.
        summary_writer = tf.compat.v1.summary.FileWriter(
            model_dir + '/train', sess.graph)
        eval_summary_writer = tf.compat.v1.summary.FileWriter(model_dir +
                                                              '/eval')
        sess.run(tf.compat.v1.global_variables_initializer())

        # Main training loop
        for ii in range(train_steps):
            if ii % replay_m == 0:
                x_batch, y_batch = data.train_data.get_next_batch(
                    train_batch_size, multiple_passes=True)
                nat_dict = {model.x_input: x_batch, model.y_input: y_batch}

            x_eval_batch, y_eval_batch = data.eval_data.get_next_batch(
                train_batch_size, multiple_passes=True)
            eval_dict = {
                model.x_input: x_eval_batch,
                model.y_input: y_eval_batch
            }

            # Output to stdout
            if ii % summary_steps == 0:
                train_acc, summary = sess.run(
                    [model.accuracy, merged_summaries], feed_dict=nat_dict)
                summary_writer.add_summary(summary, global_step.eval(sess))
                val_acc, summary = sess.run([model.accuracy, merged_summaries],
                                            feed_dict=eval_dict)
                eval_summary_writer.add_summary(summary,
                                                global_step.eval(sess))
                print('Step {}:    ({})'.format(ii, datetime.now()))
                print(
                    '    training nat accuracy {:.4}% -- validation nat accuracy {:.4}%'
                    .format(train_acc * 100, val_acc * 100))
                sys.stdout.flush()
            # Tensorboard summaries
            elif ii % out_steps == 0:
                nat_acc = sess.run(model.accuracy, feed_dict=nat_dict)
                print('Step {}:    ({})'.format(ii, datetime.now()))
                print('    training nat accuracy {:.4}%'.format(nat_acc * 100))

            # Write a checkpoint
            if (ii + 1) % checkpoint_steps == 0:
                saver.save(sess,
                           os.path.join(model_dir, 'checkpoint'),
                           global_step=global_step)

            # Actual training step
            sess.run(min_step, feed_dict=nat_dict)
Ejemplo n.º 4
0
def train(config='configs/fannyconfig.json',
          save_root_path='/cluster/work/math/fanyang-broglil/CoreRepo',
          experiment_json_fname='experiments.json',
          local_json_dir_name='local_json_files',
          worstofk=None,
          attack_style=None,
          attack_limits=None,
          fo_epsilon=None,
          fo_step_size=None,
          fo_num_steps=None,
          lambda_core=None,
          num_ids=None,
          group_size=None,
          use_core=None,
          seed=None,
          save_in_local_json=True,
          this_repo=None):

    # reset default graph (needed for running locally with run_jobs_ray.py)
    tf.reset_default_graph()

    # get configs
    config_dict = utilities.get_config(config)
    config_dict_copy = copy.deepcopy(config_dict)
    config = utilities.config_to_namedtuple(config_dict)

    # seeding randomness
    if seed == None:
        seed = config.training.tf_random_seed
    else:
        config_dict_copy['training']['tf_random_seed'] = seed
    tf.set_random_seed(seed)
    np.random.seed(seed)

    # Setting up training parameters
    max_num_training_steps = config.training.max_num_training_steps
    step_size_schedule = config.training.step_size_schedule
    weight_decay = config.training.weight_decay
    momentum = config.training.momentum

    if group_size == None:
        group_size = config.training.group_size
    else:
        config_dict_copy['training']['group_size'] = int(group_size)
    if num_ids == None:
        num_ids = config.training.num_ids
    else:
        config_dict_copy['training']['num_ids'] = int(num_ids)
    if lambda_core == None:
        lambda_core = config.training.lambda_
    else:
        config_dict_copy['training']['lambda_'] = float(lambda_core)
    if use_core == None:
        use_core = config.training.use_core
    else:
        config_dict_copy['training']['use_core'] = use_core

    batch_size = config.training.batch_size
    # number of groups with group size > 1
    num_grouped_ids = batch_size - num_ids
    # number of unique ids needs to be larger than half the desired batch size
    # so that full batch can be filled up
    assert num_ids >= batch_size / group_size
    # currently, code is designed for groups of size 2
    # assert batch_size % group_size == 0

    adversarial_training = config.training.adversarial_training
    eval_during_training = config.training.eval_during_training
    if eval_during_training:
        num_eval_steps = config.training.num_eval_steps

    # Setting up output parameters
    num_output_steps = config.training.num_output_steps
    num_summary_steps = config.training.num_summary_steps
    num_checkpoint_steps = config.training.num_checkpoint_steps
    num_easyeval_steps = config.training.num_easyeval_steps

    # Setting up the data and the model
    data_path = config.data.data_path

    if config.data.dataset_name == "cifar-10":
        raw_iterator = cifar10_input.CIFAR10Data(data_path)
    elif config.data.dataset_name == "cifar-100":
        raw_iterator = cifar100_input.CIFAR100Data(data_path)
    elif config.data.dataset_name == "svhn":
        raw_iterator = svhn_input.SVHNData(data_path)
    else:
        raise ValueError("Unknown dataset name.")

    global_step = tf.train.get_or_create_global_step()

    model_family = config.model.model_family
    if model_family == "resnet":
        if config.attack.use_spatial and config.attack.spatial_method == 'fo':
            diffable = True
        else:
            diffable = False
        model = resnet.Model(config.model, num_ids, diffable)
    elif model_family == "vgg":
        if config.attack.use_spatial and config.attack.spatial_method == 'fo':
            # TODO: add differentiable transformer to vgg.py
            raise NotImplementedError
        model = vgg.Model(config.model, num_ids)

    # uncomment to get a list of trainable variables
    # model_vars = tf.trainable_variables()

    # Setting up the optimizer
    boundaries = [int(sss[0]) for sss in step_size_schedule]
    boundaries = boundaries[1:]
    values = [sss[1] for sss in step_size_schedule]
    learning_rate = tf.train.piecewise_constant(tf.cast(global_step, tf.int32),
                                                boundaries, values)

    if use_core and lambda_core > 0:
        total_loss = (model.mean_xent +
                      weight_decay * model.weight_decay_loss +
                      lambda_core * model.core_loss)
    else:
        total_loss = model.mean_xent + weight_decay * model.weight_decay_loss

    optimizer = tf.train.MomentumOptimizer(learning_rate, momentum)
    train_step = optimizer.minimize(total_loss, global_step=global_step)

    # Set up adversary
    if worstofk == None:
        worstofk = config.attack.random_tries
    else:
        config_dict_copy['attack']['random_tries'] = worstofk
    if fo_epsilon == None:
        fo_epsilon = config.attack.epsilon
    else:
        config_dict_copy['attack']['epsilon'] = fo_epsilon
    if fo_step_size == None:
        fo_step_size = config.attack.step_size
    else:
        config_dict_copy['attack']['step_size'] = fo_step_size
    if fo_num_steps == None:
        fo_num_steps = config.attack.num_steps
    else:
        config_dict_copy['attack']['num_steps'] = fo_num_steps
    # @ Luzius: incorporate being able to choose multiple transformations
    if attack_style == None:
        attack_style = 'rotate'

    # Training attack
    # L-inf attack if use_spatial is False and use_linf is True
    # spatial attack if use_spatial is True and use_linf is False
    # spatial random attack if spatial_method is 'random'
    # spatial PGD attack if spatial_method is 'fo'
    attack = SpatialAttack(model, config.attack, config.attack.spatial_method,
                           worstofk, attack_limits, fo_epsilon, fo_step_size,
                           fo_num_steps)
    # Different eval attacks
    # Random attack
    # L-inf attack if use_spatial is False and use_linf is True
    # random (worst-of-1) spatial attack if use_spatial is True
    # and use_linf is False
    attack_eval_random = SpatialAttack(model, config.attack, 'random', 1,
                                       attack_limits, fo_epsilon, fo_step_size,
                                       fo_num_steps)
    # First order attack
    # L-inf attack if use_spatial is False and use_linf is True
    # first-order spatial attack if use_spatial is True and use_linf is False
    attack_eval_fo = SpatialAttack(model, config.attack, 'fo', 1,
                                   attack_limits, fo_epsilon, fo_step_size,
                                   fo_num_steps)

    # Grid attack
    # spatial attack if use_spatial is True and use_linf is False
    # not executed for L-inf attacks
    attack_eval_grid = SpatialAttack(model, config.attack, 'grid', None,
                                     attack_limits)

    # TODO(christina): add L-inf attack with random restarts

    # ------------------START EXPERIMENT -------------------------
    # Initialize the Repo
    print("==> Creating repo..")
    # Create repo object if it wasn't passed, comment out if repo has issues
    if this_repo == None:
        this_repo = exprepo.ExperimentRepo(
            save_in_local_json=save_in_local_json,
            json_filename=experiment_json_fname,
            local_dir_name=local_json_dir_name,
            root_dir=save_root_path)

    # Create new experiment
    if this_repo != None:
        exp_id = this_repo.create_new_experiment(config.data.dataset_name,
                                                 model_family, worstofk,
                                                 attack_style, attack_limits,
                                                 lambda_core, num_grouped_ids,
                                                 group_size, config_dict_copy)

    # Setting up the Tensorboard and checkpoint outputs
    model_dir = '%s/logdir/%s' % (save_root_path, exp_id)

    # We add accuracy and xent twice so we can easily make three types of
    # comparisons in Tensorboard:
    # - train vs eval (for a single run)
    # - train of different runs
    # - eval of different runs

    saver = tf.train.Saver(max_to_keep=3)

    tf.summary.scalar('accuracy_nat_train',
                      model.accuracy,
                      collections=['nat'])
    tf.summary.scalar('accuracy_nat', model.accuracy, collections=['nat'])
    tf.summary.scalar('xent_nat_train',
                      model.xent / batch_size,
                      collections=['nat'])
    tf.summary.scalar('xent_nat', model.xent / batch_size, collections=['nat'])
    tf.summary.image('images_nat_train', model.x_image, collections=['nat'])
    tf.summary.scalar('learning_rate', learning_rate, collections=['nat'])
    nat_summaries = tf.summary.merge_all('nat')

    # data augmentation used if config.training.data_augmentation_core is True
    x_input_placeholder = tf.placeholder(tf.float32, shape=[None, 32, 32, 3])
    flipped = tf.map_fn(lambda img: tf.image.random_flip_left_right(img),
                        x_input_placeholder)

    with tf.Session() as sess:
        # initialize standard data augmentation
        if config.training.data_augmentation:
            if config.data.dataset_name == "cifar-10":
                data_iterator = cifar10_input.AugmentedCIFAR10Data(
                    raw_iterator, sess)
            elif config.data.dataset_name == "cifar-100":
                data_iterator = cifar100_input.AugmentedCIFAR100Data(
                    raw_iterator, sess)
            elif config.data.dataset_name == "svhn":
                data_iterator = svhn_input.AugmentedSVHNData(
                    raw_iterator, sess)
            else:
                raise ValueError("Unknown dataset name.")
        else:
            data_iterator = raw_iterator

        eval_dict = {
            model.x_input: data_iterator.eval_data.xs,
            model.y_input: data_iterator.eval_data.ys,
            model.group: np.arange(0, batch_size, 1, dtype="int32"),
            model.transform: np.zeros([data_iterator.eval_data.n, 3]),
            model.is_training: False
        }

        # Initialize the summary writer, global variables, and our time counter.
        summary_writer = tf.summary.FileWriter(model_dir, sess.graph)
        # if eval_during_training:
        eval_dir = os.path.join(model_dir, 'eval')
        os.makedirs(eval_dir, exist_ok=True)
        eval_summary_writer = tf.summary.FileWriter(eval_dir)

        sess.run(tf.global_variables_initializer())
        training_time = 0.0
        run_time_without_eval = 0.0
        run_time_adv_ex_creation = 0.0
        run_time_train_step = 0.0
        ####################################
        # Main training loop
        ####################################
        start_time = time.time()
        no_epochs_done = 0  # the same as epoch_count, need to merge
        start_epoch = timer()
        it_count = 0
        epoch_count = 0
        acc_sum = 0

        for ii in range(max_num_training_steps + 1):
            # original batch
            x_batch, y_batch, epoch_done = data_iterator.train_data.get_next_batch(
                num_ids, multiple_passes=True)
            no_epochs_done += epoch_done
            # noop trans
            noop_trans = np.zeros([len(x_batch), 3])
            # id_batch starts with IDs of original examples
            id_batch = np.arange(0, num_ids, 1, dtype="int32")

            if use_core:
                # first num_id examples of batch are natural
                x_batch_inp = x_batch
                y_batch_inp = y_batch
                trans_inp = noop_trans
                id_batch_inp = id_batch

                start = timer()
                for _ in range(group_size - 1):
                    if config.training.data_augmentation_core:
                        raise NotImplementedError

                    # create rotated examples
                    x_batch_adv_i, trans_adv_i = attack.perturb(
                        x_batch, y_batch, sess)

                    # construct new batches including rotated examples
                    x_batch_inp = np.concatenate((x_batch_inp, x_batch_adv_i),
                                                 axis=0)
                    y_batch_inp = np.concatenate((y_batch_inp, y_batch),
                                                 axis=0)
                    trans_inp = np.concatenate((trans_inp, trans_adv_i),
                                               axis=0)
                    id_batch_inp = np.concatenate((id_batch_inp, id_batch),
                                                  axis=0)
                end = timer()
                training_time += end - start
                run_time_without_eval += end - start
                run_time_adv_ex_creation += end - start

                trans_adv = trans_inp[num_ids:, ...]
                id_batch_adv = id_batch_inp[num_ids:]
                y_batch_adv = y_batch_inp[num_ids:]
                x_batch_adv = x_batch_inp[num_ids:, ...]
            else:
                if adversarial_training:
                    start = timer()
                    x_batch_inp, trans_inp = attack.perturb(
                        x_batch, y_batch, sess)
                    end = timer()
                    training_time += end - start
                    run_time_without_eval += end - start
                    run_time_adv_ex_creation += end - start
                else:
                    x_batch_inp, trans_inp = x_batch, noop_trans
                # for adversarial training and plain training, the following
                # variables coincide
                y_batch_inp = y_batch
                y_batch_adv = y_batch
                trans_adv = trans_inp
                x_batch_adv = x_batch_inp
                id_batch_inp = id_batch
                id_batch_adv = id_batch

            # feed_dict for training step
            inp_dict = {
                model.x_input: x_batch_inp,
                model.y_input: y_batch_inp,
                model.group: id_batch_inp,
                model.transform: trans_inp,
                model.is_training: False
            }

            # separate natural and adversarially transformed examples for eval
            nat_dict = {
                model.x_input: x_batch,
                model.y_input: y_batch,
                model.group: id_batch,
                model.transform: noop_trans,
                model.is_training: False
            }

            adv_dict = {
                model.x_input: x_batch_adv,
                model.y_input: y_batch_adv,
                model.group: id_batch_adv,
                model.transform: trans_adv,
                model.is_training: False
            }

            ########### Outputting/saving weights and evaluations ###########
            acc_grid_te = -1.0
            avg_xent_grid_te = -1.0
            acc_fo_te = -1.0
            avg_xent_fo_te = -1.0
            saved_weights = 0

            # Compute training accuracy on this minibatch
            nat_acc_tr = 100 * sess.run(model.accuracy, feed_dict=nat_dict)

            # Output to stdout
            if epoch_done:
                epoch_time = timer() - start_epoch
                # Average
                av_acc = acc_sum / it_count

                # ToDo: Log this to file as well

                # Training accuracy over epoch
                print('Epoch {}:    ({})'.format(epoch_count, datetime.now()))
                print('    training natural accuracy {:.4}%'.format(av_acc))
                print('    {:.4} seconds per epoch'.format(epoch_time))

                # Accuracy on entire test set
                nat_acc_te = 100 * sess.run(model.accuracy,
                                            feed_dict=eval_dict)

                print(
                    '    test set natural accuracy {:.4}%'.format(nat_acc_te))

                # Set loss sum, it count back to zero
                acc_sum = nat_acc_tr
                epoch_done = 0
                epoch_count += 1
                start_epoch = timer()
                it_count = 1

            else:
                it_count += 1
                acc_sum += nat_acc_tr

            # Output to stdout
            if ii % num_output_steps == 0:
                # nat_acc_tr = 100 * sess.run(model.accuracy, feed_dict=nat_dict)
                adv_acc_tr = 100 * sess.run(model.accuracy, feed_dict=adv_dict)
                inp_acc_tr = 100 * sess.run(model.accuracy, feed_dict=inp_dict)
                # print('Step {}:    ({})'.format(ii, datetime.now()))
                # print('    training nat accuracy {:.4}%'.format(nat_acc_tr))
                # print('    training adv accuracy {:.4}%'.format(adv_acc_tr))
                # print('    training inp accuracy {:.4}%'.format(inp_acc_tr))
                if ii != 0:
                    #     print('    {} examples per second'.format(
                    #         num_output_steps * batch_size / training_time))
                    training_time = 0.0

            # Tensorboard summaries and heavy checkpoints
            if ii % num_summary_steps == 0:
                summary = sess.run(nat_summaries, feed_dict=nat_dict)
                summary_writer.add_summary(summary, global_step.eval(sess))

            # Write a checkpoint and eval if it's time
            if ii % num_checkpoint_steps == 0 or ii == max_num_training_steps:
                # Save checkpoint data (weights)
                saver.save(sess,
                           os.path.join(model_dir, 'checkpoint'),
                           global_step=global_step)
                saved_weights = 1

            # Write evaluation meta data for checkpoint
            if ii % num_easyeval_steps == 0 or ii == max_num_training_steps:
                # Get training accuracies
                nat_acc_tr = 100 * sess.run(model.accuracy, feed_dict=nat_dict)
                adv_acc_tr = 100 * sess.run(model.accuracy, feed_dict=adv_dict)
                inp_acc_tr = 100 * sess.run(model.accuracy, feed_dict=inp_dict)

                # Evaluation on random and natural
                [
                    acc_nat_te, acc_rand_adv_te, avg_xent_nat_te,
                    avg_xent_adv_te
                ] = evaluate(model, attack_eval_random, sess, config, 'random',
                             data_path, None)

                # Evaluation on grid (only for spatial attacks)
                if ((eval_during_training and ii % num_eval_steps == 0
                     and ii > 0 and config.attack.use_spatial) or
                    (eval_during_training and ii == max_num_training_steps
                     and config.attack.use_spatial)):
                    if config.attack.use_spatial and config.attack.spatial_method == 'fo':
                        # Evaluation on first-order PDG attack (too expensive to
                        # evaluate more frequently on whole dataset)
                        [_, acc_fo_te, _,
                         avg_xent_fo_te] = evaluate(model, attack_eval_fo,
                                                    sess, config, 'fo',
                                                    data_path, None)
                    # Evaluation on grid
                    [_, acc_grid_te, _, avg_xent_grid_te
                     ] = evaluate(model, attack_eval_grid, sess, config,
                                  "grid", data_path, eval_summary_writer)

                chkpt_id = this_repo.create_training_checkpoint(
                    exp_id,
                    training_step=ii,
                    epoch=no_epochs_done,
                    train_acc_nat=nat_acc_tr,
                    train_acc_adv=adv_acc_tr,
                    train_acc_inp=inp_acc_tr,
                    test_acc_nat=acc_nat_te,
                    test_acc_adv=acc_rand_adv_te,
                    test_acc_fo=acc_fo_te,
                    test_acc_grid=acc_grid_te,
                    test_loss_nat=avg_xent_nat_te,
                    test_loss_adv=avg_xent_adv_te,
                    test_loss_fo=avg_xent_fo_te,
                    test_loss_grid=avg_xent_grid_te)

                if saved_weights == 0:
                    # Save checkpoint data (weights)
                    saver.save(
                        sess,
                        os.path.join(model_dir,
                                     '{}_checkpoint'.format(chkpt_id)))

            # Actual training step
            start = timer()
            inp_dict[model.is_training] = True
            sess.run(train_step, feed_dict=inp_dict)
            end = timer()
            training_time += end - start
            run_time_without_eval += end - start
            run_time_train_step += end - start

        runtime = time.time() - start_time
        this_repo.mark_experiment_as_completed(
            exp_id,
            train_acc_nat=nat_acc_tr,
            train_acc_adv=adv_acc_tr,
            train_acc_inp=inp_acc_tr,
            test_acc_nat=acc_nat_te,
            test_acc_adv=acc_rand_adv_te,
            test_acc_fo=acc_fo_te,
            test_acc_grid=acc_grid_te,
            runtime=runtime,
            runtime_wo_eval=run_time_without_eval,
            runtime_train_step=run_time_train_step,
            runtime_adv_ex_creation=run_time_adv_ex_creation)

    return 0
Ejemplo n.º 5
0
    config_dict['dataparallel'] = args.dataparallel

    assert os.path.splitext(os.path.basename(
        args.config_robust))[0] == config_dict['model']['model_dir']

    torch.manual_seed(1)
    torch.cuda.manual_seed(1)

    output_dir = os.path.join(config_dict['output_dir'],
                              config_dict['model']['model_dir'], "eval")

    if not os.path.exists(output_dir):
        os.makedirs(output_dir)

    for s in ['images', 'checkpoints']:
        extra_dir = os.path.join(output_dir, s)
        if not os.path.exists(extra_dir):
            os.makedirs(extra_dir)

    # keep the configuration file with the model for reproducibility
    with open(os.path.join(output_dir, 'config.json'), 'w') as f:
        json.dump(config_dict, f, sort_keys=True, indent=4)

    config_dict['resume'] = args.resume
    config_dict['resume_certification'] = args.resume_certification
    config = utilities.config_to_namedtuple(config_dict)

    attack_config_dict = utilities.get_config(args.config_attack)
    attack_config = utilities.config_to_namedtuple(attack_config_dict)
    eval(config, attack_config, output_dir)
Ejemplo n.º 6
0
def train(config='configs/cifar10_config_stn.json',
          save_root_path='/cluster/work/math/fanyang-broglil/CoreRepo',
          worstofk=None,
          attack_style=None,
          attack_limits=None,
          lambda_core=None,
          num_grouped_ids=None,
          num_ids=None,
          group_size=None,
          use_core=None,
          seed=None,
          this_repo=None):

    config_dict = utilities.get_config(config)
    config_dict_copy = copy.deepcopy(config_dict)
    # model_dir = config_dict['model']['output_dir']
    # if not os.path.exists(model_dir):
    #   os.makedirs(model_dir)

    # # keep the configuration file with the model for reproducibility
    # with open(os.path.join(model_dir, 'config.json'), 'w') as f:
    #     json.dump(config_dict, f, sort_keys=True, indent=4)

    config = utilities.config_to_namedtuple(config_dict)

    # seeding randomness
    if seed == None:
        seed = config.training.tf_random_seed
    else:
        config_dict_copy['training']['tf_random_seed'] = seed
    tf.set_random_seed(seed)
    np.random.seed(seed)

    # Setting up training parameters
    max_num_epochs = config.training.max_num_epochs
    step_size_schedule = config.training.step_size_schedule
    weight_decay = config.training.weight_decay
    momentum = config.training.momentum
    num_ids = config.training.num_ids  # number of IDs per minibatch

    if group_size == None:
        group_size = config.training.group_size
    else:
        config_dict_copy['training']['group_size'] = group_size
    if num_grouped_ids == None:
        num_grouped_ids = config.training.num_grouped_ids
    else:
        config_dict_copy['training']['num_grouped_ids'] = num_grouped_ids
    if num_ids == None:
        num_ids = config.training.num_ids
    else:
        config_dict_copy['training']['num_ids'] = num_ids
    if lambda_core == None:
        lambda_core = config.training.lambda_
    else:
        config_dict_copy['training']['lambda_'] = lambda_core
    if use_core == None:
        use_core = config.training.use_core
    else:
        config_dict_copy['training']['use_core'] = use_core

    adversarial_training = config.training.adversarial_training
    eval_during_training = config.training.eval_during_training
    if eval_during_training:
        num_eval_steps = config.training.num_eval_steps

    # Setting up output parameters
    num_summary_steps = config.training.num_summary_steps
    num_checkpoint_steps = config.training.num_checkpoint_steps
    num_easyeval_steps = config.training.num_easyeval_steps

    # mini batch size per iteration
    # ToDo: need to make this support variable number of num_grouped_ids
    batch_size = num_ids + num_grouped_ids

    # Setting up model and loss
    model_family = config.model.model_family
    with_transformer = config.model.transformer
    translation_model = config.model.translation_model
    if model_family == "resnet":
        model = loc_net.Model(config.model)
    else:
        print("Model family does not exist")
        exit()
    if use_core:
        total_loss = model.y_loss  #model.mean_xent + weight_decay * model.weight_decay_loss + lambda_core * model.core_loss2
    else:
        total_loss = model.y_loss  #model.mean_xent + weight_decay * model.weight_decay_loss

    # Setting up the data and the model
    data_path = config.data.data_path

    if config.data.dataset_name == "cifar-10":
        raw_cifar = cifar10_input.CIFAR10Data(data_path)
    elif config.data.dataset_name == "cifar-100":
        raw_cifar = cifar100_input.CIFAR100Data(data_path)
    else:
        raise ValueError("Unknown dataset name.")

    # uncomment to get a list of trainable variables
    # model_vars = tf.trainable_variables()
    # slim.model_analyzer.analyze_vars(model_vars, print_info=True)

    # Setting up the optimizer
    boundaries = [int(sss[0]) for sss in step_size_schedule]
    boundaries = boundaries[1:]
    values = [sss[1] for sss in step_size_schedule]

    global_step = tf.train.get_or_create_global_step()
    learning_rate = tf.train.piecewise_constant(tf.cast(global_step, tf.int32),
                                                boundaries, values)

    optimizer = tf.train.MomentumOptimizer(learning_rate, momentum)
    #optimizer = tf.train.AdamOptimizer(learning_rate=learning_rate,
    #                                   name="Adam")
    train_step = optimizer.minimize(total_loss, global_step=global_step)

    # Set up adversary
    if worstofk == None:
        worstofk = config.attack.random_tries
    else:
        config_dict_copy['attack']['random_tries'] = worstofk
    # @ Luzius: incorporate being able to choose multiple transformations
    if attack_style == None:
        attack_style = 'rotate'

    # Training attack
    attack = SpatialAttack(model, config.attack, 'random', worstofk,
                           attack_limits)
    # Different eval attacks
    # Same attack as worstofk
    # @ Luzius: currently the names are not clear/consistent since I wasn't sure if we actually want random or not since you originally had your attack like that but I feel like it should rather be worstofk?
    # attack_eval_adv = SpatialAttack(model, config.attack, 'random', worstofk, attack_limits)
    attack_eval_random = SpatialAttack(model, config.attack, 'random', 1,
                                       attack_limits)
    # Grid attack
    attack_eval_grid = SpatialAttack(model, config.attack, 'grid', None,
                                     attack_limits)

    # ------------------START EXPERIMENT -------------------------
    # Initialize the Repo
    print("==> Creating repo..")
    # Create repo object if it wasn't passed, comment out if repo has issues
    if this_repo == None:
        this_repo = exprepo.ExperimentRepo(root_dir=save_root_path)

    # Create new experiment
    if this_repo != None:
        exp_id = this_repo.create_new_experiment('cifar-10', model_family,
                                                 worstofk, attack_style,
                                                 attack_limits, lambda_core,
                                                 num_grouped_ids, group_size,
                                                 config_dict_copy)

    # Setting up the Tensorboard and checkpoint outputs
    model_dir = '%s/logdir/%s' % (save_root_path, exp_id)
    os.makedirs(model_dir, exist_ok=True)
    # We add accuracy and xent twice so we can easily make three types of
    # comparisons in Tensorboard:
    # - train vs eval (for a single run)
    # - train of different runs
    # - eval of different runs

    saver = tf.train.Saver(max_to_keep=3)

    tf.summary.scalar('accuracy_nat_train',
                      model.accuracy,
                      collections=['nat'])
    tf.summary.scalar('accuracy_nat', model.accuracy, collections=['nat'])
    tf.summary.scalar('xent_nat_train',
                      model.xent / batch_size,
                      collections=['nat'])
    tf.summary.scalar('xent_nat', model.xent / batch_size, collections=['nat'])
    tf.summary.image('images_nat_train', model.x_image, collections=['nat'])
    tf.summary.scalar('learning_rate', learning_rate, collections=['nat'])
    nat_summaries = tf.summary.merge_all('nat')

    #dataAugmentation
    x_input_placeholder = tf.placeholder(tf.float32, shape=[None, 32, 32, 3])
    flipped = tf.map_fn(lambda img: tf.image.random_flip_left_right(img),
                        x_input_placeholder)

    tot_samp = raw_cifar.train_data.n
    max_num_iterations = int(np.floor((tot_samp / num_ids) * max_num_epochs))
    print("Total # of samples is: %d; This exp. will run %d iterations" %
          (tot_samp, max_num_iterations))

    # Compute the (epoch) gaps between summary, worstof1eval, checkpoints should happen
    summary_gap = int(np.floor(max_num_epochs / num_summary_steps))
    easyeval_gap = int(np.floor(max_num_epochs / num_easyeval_steps))
    checkpoint_gap = int(np.floor(max_num_epochs / num_checkpoint_steps))

    with tf.Session() as sess:

        # initialize data augmentation
        if config.training.data_augmentation:
            if config.data.dataset_name == "cifar-10":
                cifar = cifar10_input.AugmentedCIFAR10Data(raw_cifar, sess)
            elif config.data.dataset_name == "cifar-100":
                cifar = cifar100_input.AugmentedCIFAR100Data(raw_cifar, sess)
            else:
                raise ValueError("Unknown dataset name.")
        else:
            cifar = raw_cifar

        cifar_eval_dict = {
            model.x_input: cifar.eval_data.xs,
            model.y_input: cifar.eval_data.ys,
            model.group: np.arange(0, batch_size, 1, dtype="int32"),
            model.transform: np.zeros([cifar.eval_data.n, 3]),
            model.is_training: False
        }

        # Initialize the summary writer, global variables, and our time counter.
        summary_writer = tf.summary.FileWriter(model_dir, sess.graph)
        #if eval_during_training:
        eval_dir = os.path.join(model_dir, 'eval')
        os.makedirs(eval_dir, exist_ok=True)
        eval_summary_writer = tf.summary.FileWriter(eval_dir)

        sess.run(tf.global_variables_initializer())

        training_time = 0.0

        ####################################
        # Main training loop
        ####################################
        # Initialize cache variables
        start_time = time.time()
        start_epoch = timer()
        it_count = 0
        epoch_count = 0
        acc_sum = 0
        it_summary = 0
        it_easyeval = 0
        it_ckpt = 0
        adv_time = 0
        train_time = 0

        for ii in range(max_num_iterations + 1):
            x_batch, y_batch, epoch_done = cifar.train_data.get_next_batch(
                num_ids, multiple_passes=True)

            noop_trans = np.zeros([len(x_batch), 3])
            x_batch_nat = x_batch
            y_batch_nat = y_batch
            id_batch = np.arange(0, num_ids, 1, dtype="int32")
            if use_core:
                # Create rotated examples
                start = timer()
                ids = np.arange(0, num_grouped_ids, 1, dtype="int32")

                for i in range(config.training.group_size):

                    if config.training.data_augmentation_core:
                        x_batch_core = sess.run(
                            flipped,
                            feed_dict={
                                x_input_placeholder:
                                x_batch[0:num_grouped_ids, :, :, :]
                            })
                    else:
                        x_batch_core = x_batch[0:num_grouped_ids, :, :, :]

                    x_batch_group, trans_group = attack.perturb(
                        x_batch_core, y_batch[0:num_grouped_ids], sess)

                    #construct new batches including rotated examples
                    x_batch_nat = np.concatenate((x_batch_nat, x_batch_group),
                                                 axis=0)
                    y_batch_nat = np.concatenate((y_batch_nat, y_batch),
                                                 axis=0)
                    noop_trans = np.concatenate((noop_trans, trans_group),
                                                axis=0)
                    id_batch = np.concatenate((id_batch, ids), axis=0)

                end = timer()
                training_time += end - start
                adv_time += end - start

            else:

                if adversarial_training:
                    start = timer()
                    x_batch_nat, noop_trans = attack.perturb(
                        x_batch, y_batch, sess)
                    end = timer()
                    adv_time += end - start

                else:
                    x_batch_nat, noop_trans = x_batch, noop_trans

            nat_dict = {
                model.x_input: x_batch_nat,
                model.y_input: y_batch_nat,
                model.group: id_batch,
                model.transform: noop_trans,
                model.is_training: False
            }

            ################# Outputting/saving weights and evaluations ###############

            nat_acc = -1.0
            acc_grid = -1.0
            avg_xent_grid = -1.0
            saved_weights = 0

            # Compute training accuracy on this minibatch
            train_nat_acc = sess.run(model.accuracy, feed_dict=nat_dict)
            # Output to stdout
            if epoch_done:
                epoch_time = timer() - start_epoch
                # Average
                av_acc = acc_sum / it_count

                # ToDo: Log this to file as well

                # Training accuracy over epoch
                print('Epoch {}:    ({})'.format(epoch_count, datetime.now()))
                print('    training natural accuracy {:.4}%'.format(av_acc *
                                                                    100))
                print('    {:.4} seconds per epoch'.format(epoch_time))

                # Accuracy on entire test set
                test_nat_acc = sess.run(model.accuracy,
                                        feed_dict=cifar_eval_dict)

                print('    test set natural accuracy {:.4}%'.format(
                    test_nat_acc * 100))
                # print('    {:.4} seconds for test evaluation'.format(test_time))
                print("example TIME")
                print(adv_time)
                print("train TIME")
                print(train_time)

                ########### Things to do every xxx epochs #############
                # Check if worstof1 eval should be run
                if it_summary == summary_gap - 1 or epoch_count == max_num_epochs - 1:
                    summary = sess.run(nat_summaries, feed_dict=nat_dict)
                    summary_writer.add_summary(summary, global_step.eval(sess))
                    it_summary = 0
                else:
                    it_summary += 1

                if it_easyeval == easyeval_gap - 1 or epoch_count == max_num_epochs - 1:
                    # Evaluation on adv and natural
                    [acc_nat, acc_adv, avg_xent_nat,
                     avg_xent_adv] = evaluate(model, attack_eval_random, sess,
                                              config, "random", data_path,
                                              None)
                    # Save in checkpoint
                    chkpt_id = this_repo.create_training_checkpoint(
                        exp_id,
                        training_step=ii,
                        epoch=epoch_count,
                        train_acc_nat=nat_acc,
                        test_acc_adv=acc_adv,
                        test_acc_nat=acc_nat,
                        test_loss_adv=avg_xent_adv,
                        test_loss_nat=avg_xent_nat)

                    it_easyeval = 0
                else:
                    it_easyeval += 1

                startt = timer()
                if it_ckpt == checkpoint_gap - 1 or epoch_count == max_num_epochs - 1:
                    # Create checkpoint id if non-existent
                    if not chkpt_id:
                        chkpt_id = this_repo.create_training_checkpoint(
                            exp_id,
                            training_step=ii,
                            epoch=epoch_count,
                            train_acc_nat=train_nat_acc,
                            test_acc_nat=test_nat_acc)

                    # Save checkpoint data (weights)
                    saver.save(
                        sess,
                        os.path.join(model_dir,
                                     '{}_checkpoint'.format(chkpt_id)))
                    print(' chkpt saving took {:.4}s '.format(timer() -
                                                              startt))
                    it_ckpt = 0
                else:
                    it_ckpt += 1

                # Set loss sum, it count back to zero
                acc_sum = train_nat_acc
                epoch_done = 0
                epoch_count += 1
                start_epoch = timer()
                it_count = 1

            else:
                it_count += 1
                acc_sum += train_nat_acc

            # Actual training step
            start = timer()
            nat_dict[model.is_training] = True
            sess.run(train_step, feed_dict=nat_dict)
            training_time += timer() - start
            train_time += timer() - start

        runtime = time.time() - start_time

        # Do all evaluations in the last step - on grid
        [_, acc_grid, _,
         avg_xent_grid] = evaluate(model, attack_eval_grid, sess, config,
                                   "grid", data_path, eval_summary_writer)

        this_repo.mark_experiment_as_completed(exp_id,
                                               train_acc_nat=nat_acc,
                                               test_acc_adv=acc_adv,
                                               test_acc_nat=acc_nat,
                                               test_acc_grid=acc_grid,
                                               runtime=runtime)

    return 0
Ejemplo n.º 7
0
# Constants
DATA = 'CIFAR' # Choices: ['CIFAR', 'ImageNet']
BATCH_SIZE = 10
NUM_WORKERS = 8
NOISE_SCALE = 20
NUM_ACTIVATIONS = 3
K = 5
VIS_CORRECT = False


DATA_SHAPE = 32 if DATA == 'CIFAR' else 224 # Image size (fixed for dataset)
REPRESENTATION_SIZE = 2048 # Size of representation vector (fixed for model)
#CLASSES = CLASS_DICT[DATA] # Class names for dataset


config = utilities.config_to_namedtuple(utilities.get_config('config_traincifar.json'))
model_dir = config.model.output_dir
if not os.path.exists(model_dir):
  os.makedirs(model_dir)
device = torch.device('cuda')

# Setting up training parameters
max_num_training_steps = config.training.max_num_training_steps
step_size_schedule = config.training.step_size_schedule
weight_decay = config.training.weight_decay
momentum = config.training.momentum
batch_size = config.training.batch_size
eval_during_training = config.training.eval_during_training
num_clean_examples = config.training.num_examples
if eval_during_training:
    num_eval_steps = config.training.num_eval_steps