Exemplo n.º 1
0
 def test_load_data_integration(self):
     """Test partition function."""
     # Execute
     for num_partitions in [10, 100]:
         for fraction in [
                 0.0, 0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 1.0
         ]:
             (_, _), _ = load_data(fraction, num_partitions)
Exemplo n.º 2
0
def main() -> None:
    """Load data, create and start CIFAR-10/100 client."""
    args = parse_args()

    client_setting = get_client_setting(args.setting, args.cid)

    # Configure logger
    configure(identifier=f"client:{client_setting.cid}", host=args.log_host)
    log(INFO, "Starting client, settings: %s", client_setting)

    # Load model
    model = resnet50v2(input_shape=(32, 32, 3),
                       num_classes=NUM_CLASSES,
                       seed=SEED)

    # Load local data partition
    (xy_train_partitions,
     xy_test_partitions), _ = tf_cifar_partitioned.load_data(
         iid_fraction=client_setting.iid_fraction,
         num_partitions=client_setting.num_clients,
         cifar100=False,
     )
    x_train, y_train = xy_train_partitions[client_setting.partition]
    x_test, y_test = xy_test_partitions[client_setting.partition]
    if client_setting.dry_run:
        x_train = x_train[0:100]
        y_train = y_train[0:100]
        x_test = x_test[0:50]
        y_test = y_test[0:50]

    # Start client
    client = VisionClassificationClient(
        client_setting.cid,
        model,
        (x_train, y_train),
        (x_test, y_test),
        client_setting.delay_factor,
        NUM_CLASSES,
        augment=True,
        augment_horizontal_flip=True,
        augment_offset=2,
    )
    fl.client.start_client(args.server_address, client)
Exemplo n.º 3
0
def main() -> None:
    """Start server and train a number of rounds."""
    args = parse_args()

    # Configure logger
    configure(identifier="server", host=args.log_host)

    server_setting = get_setting(args.setting).server
    log(INFO, "server_setting: %s", server_setting)

    # Load evaluation data
    (_,
     _), (x_test,
          y_test) = tf_cifar_partitioned.load_data(iid_fraction=0.0,
                                                   num_partitions=1,
                                                   cifar100=NUM_CLASSES == 100)
    if server_setting.dry_run:
        x_test = x_test[0:50]
        y_test = y_test[0:50]

    # Load model (for centralized evaluation)
    model = resnet50v2(input_shape=(32, 32, 3),
                       num_classes=NUM_CLASSES,
                       seed=SEED)

    # Strategy
    eval_fn = get_eval_fn(model=model,
                          num_classes=NUM_CLASSES,
                          xy_test=(x_test, y_test))
    fit_config_fn = get_on_fit_config_fn(
        lr_initial=server_setting.lr_initial,
        timeout=server_setting.training_round_timeout,
        partial_updates=server_setting.partial_updates,
    )

    if server_setting.strategy == "fedavg":
        strategy = fl.server.strategy.FedAvg(
            fraction_fit=server_setting.sample_fraction,
            min_fit_clients=server_setting.min_sample_size,
            min_available_clients=server_setting.min_num_clients,
            eval_fn=eval_fn,
            on_fit_config_fn=fit_config_fn,
        )

    if server_setting.strategy == "fast-and-slow":
        if server_setting.training_round_timeout is None:
            raise ValueError(
                "No `training_round_timeout` set for `fast-and-slow` strategy")
        strategy = fl.server.strategy.FastAndSlow(
            fraction_fit=server_setting.sample_fraction,
            min_fit_clients=server_setting.min_sample_size,
            min_available_clients=server_setting.min_num_clients,
            eval_fn=eval_fn,
            on_fit_config_fn=fit_config_fn,
            importance_sampling=server_setting.importance_sampling,
            dynamic_timeout=server_setting.dynamic_timeout,
            dynamic_timeout_percentile=0.8,
            alternating_timeout=server_setting.alternating_timeout,
            r_fast=1,
            r_slow=1,
            t_fast=math.ceil(0.5 * server_setting.training_round_timeout),
            t_slow=server_setting.training_round_timeout,
        )

    # Run server
    fl.server.start_server(
        DEFAULT_SERVER_ADDRESS,
        config={"num_rounds": server_setting.rounds},
        strategy=strategy,
    )