def test_build_to_ids_fn_truncates(self):
   vocab = ['A', 'B', 'C']
   max_seq_len = 1
   bos = stackoverflow_dataset.get_special_tokens(len(vocab)).bos
   to_ids_fn = stackoverflow_dataset.build_to_ids_fn(vocab, max_seq_len)
   data = {'tokens': 'A B C'}
   processed = to_ids_fn(data)
   self.assertAllEqual(self.evaluate(processed), [bos, 1])
 def test_build_to_ids_fn_embeds_all_vocab(self):
   vocab = ['A', 'B', 'C']
   max_seq_len = 5
   special_tokens = stackoverflow_dataset.get_special_tokens(len(vocab))
   bos = special_tokens.bos
   eos = special_tokens.eos
   to_ids_fn = stackoverflow_dataset.build_to_ids_fn(vocab, max_seq_len)
   data = {'tokens': 'A B C'}
   processed = to_ids_fn(data)
   self.assertAllEqual(self.evaluate(processed), [bos, 1, 2, 3, eos])
 def test_oov_token_correct(self):
   vocab = ['A', 'B', 'C']
   max_seq_len = 5
   num_oov_buckets = 2
   to_ids_fn = stackoverflow_dataset.build_to_ids_fn(
       vocab, max_seq_len, num_oov_buckets=num_oov_buckets)
   oov_tokens = stackoverflow_dataset.get_special_tokens(
       len(vocab), num_oov_buckets=num_oov_buckets).oov
   data = {'tokens': 'A B D'}
   processed = to_ids_fn(data)
   self.assertLen(oov_tokens, num_oov_buckets)
   self.assertIn(self.evaluate(processed)[3], oov_tokens)
 def test_pad_token_correct(self):
   vocab = ['A', 'B', 'C']
   max_seq_len = 5
   to_ids_fn = stackoverflow_dataset.build_to_ids_fn(vocab, max_seq_len)
   special_tokens = stackoverflow_dataset.get_special_tokens(len(vocab))
   pad, bos, eos = special_tokens.pad, special_tokens.bos, special_tokens.eos
   data = {'tokens': 'A B C'}
   processed = to_ids_fn(data)
   batched_ds = tf.data.Dataset.from_tensor_slices([processed]).padded_batch(
       1, padded_shapes=[6])
   sample_elem = next(iter(batched_ds))
   self.assertAllEqual(self.evaluate(sample_elem), [[bos, 1, 2, 3, eos, pad]])
def main(argv):
    if len(argv) > 1:
        raise app.UsageError('Expected no command-line arguments, '
                             'got: {}'.format(argv))
    tff.backends.native.set_local_execution_context(max_fanout=10)

    model_builder = functools.partial(
        stackoverflow_models.create_recurrent_model,
        vocab_size=FLAGS.vocab_size,
        embedding_size=FLAGS.embedding_size,
        latent_size=FLAGS.latent_size,
        num_layers=FLAGS.num_layers,
        shared_embedding=FLAGS.shared_embedding)

    loss_builder = functools.partial(
        tf.keras.losses.SparseCategoricalCrossentropy, from_logits=True)

    special_tokens = stackoverflow_dataset.get_special_tokens(FLAGS.vocab_size)
    pad_token = special_tokens.pad
    oov_tokens = special_tokens.oov
    eos_token = special_tokens.eos

    def metrics_builder():
        return [
            keras_metrics.MaskedCategoricalAccuracy(name='accuracy_with_oov',
                                                    masked_tokens=[pad_token]),
            keras_metrics.MaskedCategoricalAccuracy(name='accuracy_no_oov',
                                                    masked_tokens=[pad_token] +
                                                    oov_tokens),
            # Notice BOS never appears in ground truth.
            keras_metrics.MaskedCategoricalAccuracy(
                name='accuracy_no_oov_or_eos',
                masked_tokens=[pad_token, eos_token] + oov_tokens),
            keras_metrics.NumBatchesCounter(),
            keras_metrics.NumTokensCounter(masked_tokens=[pad_token]),
        ]

    datasets = stackoverflow_dataset.construct_word_level_datasets(
        FLAGS.vocab_size, FLAGS.client_batch_size,
        FLAGS.client_epochs_per_round, FLAGS.sequence_length,
        FLAGS.max_elements_per_user, FLAGS.num_validation_examples)
    train_dataset, validation_dataset, test_dataset = datasets

    if FLAGS.uniform_weighting:

        def client_weight_fn(local_outputs):
            del local_outputs
            return 1.0
    else:

        def client_weight_fn(local_outputs):
            return tf.cast(tf.squeeze(local_outputs['num_tokens']), tf.float32)

    def model_fn():
        return tff.learning.from_keras_model(
            model_builder(),
            loss_builder(),
            input_spec=validation_dataset.element_spec,
            metrics=metrics_builder())

    if FLAGS.noise_multiplier is not None:
        if not FLAGS.uniform_weighting:
            raise ValueError(
                'Differential privacy is only implemented for uniform weighting.'
            )

        dp_query = tff.utils.build_dp_query(
            clip=FLAGS.clip,
            noise_multiplier=FLAGS.noise_multiplier,
            expected_total_weight=FLAGS.clients_per_round,
            adaptive_clip_learning_rate=FLAGS.adaptive_clip_learning_rate,
            target_unclipped_quantile=FLAGS.target_unclipped_quantile,
            clipped_count_budget_allocation=FLAGS.
            clipped_count_budget_allocation,
            expected_clients_per_round=FLAGS.clients_per_round)

        weights_type = tff.learning.framework.weights_type_from_model(model_fn)
        aggregation_process = tff.utils.build_dp_aggregate_process(
            weights_type.trainable, dp_query)
    else:
        aggregation_process = None

    server_optimizer_fn = optimizer_utils.create_optimizer_fn_from_flags(
        'server')
    client_optimizer_fn = optimizer_utils.create_optimizer_fn_from_flags(
        'client')

    iterative_process = tff.learning.build_federated_averaging_process(
        model_fn=model_fn,
        server_optimizer_fn=server_optimizer_fn,
        client_weight_fn=client_weight_fn,
        client_optimizer_fn=client_optimizer_fn,
        aggregation_process=aggregation_process)

    client_datasets_fn = training_utils.build_client_datasets_fn(
        train_dataset, FLAGS.clients_per_round)

    evaluate_fn = training_utils.build_centralized_evaluate_fn(
        model_builder=model_builder,
        eval_dataset=validation_dataset,
        loss_builder=loss_builder,
        metrics_builder=metrics_builder)

    test_fn = training_utils.build_centralized_evaluate_fn(
        model_builder=model_builder,
        # Use both val and test for symmetry with other experiments, which
        # evaluate on the entire test set.
        eval_dataset=validation_dataset.concatenate(test_dataset),
        loss_builder=loss_builder,
        metrics_builder=metrics_builder)

    logging.info('Training model:')
    logging.info(model_builder().summary())

    hparam_dict = utils_impl.lookup_flag_values(utils_impl.get_hparam_flags())
    training_loop_dict = utils_impl.lookup_flag_values(training_loop_flags)

    training_loop.run(iterative_process=iterative_process,
                      client_datasets_fn=client_datasets_fn,
                      validation_fn=evaluate_fn,
                      test_fn=test_fn,
                      hparam_dict=hparam_dict,
                      **training_loop_dict)
Example #6
0
def run_federated(
        iterative_process_builder: Callable[...,
                                            tff.templates.IterativeProcess],
        client_epochs_per_round: int,
        client_batch_size: int,
        clients_per_round: int,
        max_batches_per_client: Optional[int] = -1,
        client_datasets_random_seed: Optional[int] = None,
        vocab_size: Optional[int] = 10000,
        num_oov_buckets: Optional[int] = 1,
        sequence_length: Optional[int] = 20,
        max_elements_per_user: Optional[int] = 1000,
        num_validation_examples: Optional[int] = 10000,
        embedding_size: Optional[int] = 96,
        latent_size: Optional[int] = 670,
        num_layers: Optional[int] = 1,
        shared_embedding: Optional[bool] = False,
        total_rounds: Optional[int] = 1500,
        experiment_name: Optional[str] = 'federated_so_nwp',
        root_output_dir: Optional[str] = '/tmp/fed_opt',
        max_eval_batches: Optional[int] = None,
        **kwargs):
    """Runs an iterative process on the Stack Overflow next word prediction task.

  This method will load and pre-process dataset and construct a model used for
  the task. It then uses `iterative_process_builder` to create an iterative
  process that it applies to the task, using
  `federated_research.utils.training_loop`.

  We assume that the iterative process has the following functional type
  signatures:

    *   `initialize`: `( -> S@SERVER)` where `S` represents the server state.
    *   `next`: `<S@SERVER, {B*}@CLIENTS> -> <S@SERVER, T@SERVER>` where `S`
        represents the server state, `{B*}` represents the client datasets,
        and `T` represents a python `Mapping` object.

  Moreover, the server state must have an attribute `model` of type
  `tff.learning.ModelWeights`.

  Args:
    iterative_process_builder: A function that accepts a no-arg `model_fn`, a
      `client_weight_fn` and returns a `tff.templates.IterativeProcess`. The
      `model_fn` must return a `tff.learning.Model`.
    client_epochs_per_round: An integer representing the number of epochs of
      training performed per client in each training round.
    client_batch_size: An integer representing the batch size used on clients.
    clients_per_round: An integer representing the number of clients
      participating in each round.
    max_batches_per_client: An optional int specifying the number of batches
      taken by each client at each round. If `-1`, the entire client dataset is
      used.
    client_datasets_random_seed: An optional int used to seed which clients are
      sampled at each round. If `None`, no seed is used.
    vocab_size: Integer dictating the number of most frequent words to use in
      the vocabulary.
    num_oov_buckets: The number of out-of-vocabulary buckets to use.
    sequence_length: The maximum number of words to take for each sequence.
    max_elements_per_user: The maximum number of elements processed for each
      client's dataset.
    num_validation_examples: The number of test examples to use for validation.
    embedding_size: The dimension of the word embedding layer.
    latent_size: The dimension of the latent units in the recurrent layers.
    num_layers: The number of stacked recurrent layers to use.
    shared_embedding: Boolean indicating whether to tie input and output
      embeddings.
    total_rounds: The number of federated training rounds.
    experiment_name: The name of the experiment being run. This will be appended
      to the `root_output_dir` for purposes of writing outputs.
    root_output_dir: The name of the root output directory for writing
      experiment outputs.
    max_eval_batches: If set to a positive integer, evaluation datasets are
      capped to at most that many batches. If set to None or a nonpositive
      integer, the full evaluation datasets are used.
    **kwargs: Additional arguments configuring the training loop. For details
      on supported arguments, see
      `federated_research/utils/training_utils.py`.
  """

    model_builder = functools.partial(
        stackoverflow_models.create_recurrent_model,
        vocab_size=vocab_size,
        num_oov_buckets=num_oov_buckets,
        embedding_size=embedding_size,
        latent_size=latent_size,
        num_layers=num_layers,
        shared_embedding=shared_embedding)

    loss_builder = functools.partial(
        tf.keras.losses.SparseCategoricalCrossentropy, from_logits=True)

    special_tokens = stackoverflow_dataset.get_special_tokens(
        vocab_size, num_oov_buckets)
    pad_token = special_tokens.pad
    oov_tokens = special_tokens.oov
    eos_token = special_tokens.eos

    def metrics_builder():
        return [
            keras_metrics.MaskedCategoricalAccuracy(name='accuracy_with_oov',
                                                    masked_tokens=[pad_token]),
            keras_metrics.MaskedCategoricalAccuracy(name='accuracy_no_oov',
                                                    masked_tokens=[pad_token] +
                                                    oov_tokens),
            # Notice BOS never appears in ground truth.
            keras_metrics.MaskedCategoricalAccuracy(
                name='accuracy_no_oov_or_eos',
                masked_tokens=[pad_token, eos_token] + oov_tokens),
            keras_metrics.NumBatchesCounter(),
            keras_metrics.NumTokensCounter(masked_tokens=[pad_token])
        ]

    train_clientdata, _, _ = tff.simulation.datasets.stackoverflow.load_data()

    # TODO(b/161914546): consider moving evaluation to use
    # `tff.learning.build_federated_evaluation` to get metrics over client
    # distributions, as well as the example weight means from this centralized
    # evaluation.
    _, validation_dataset, test_dataset = stackoverflow_dataset.get_centralized_datasets(
        vocab_size=vocab_size,
        max_seq_len=sequence_length,
        train_batch_size=client_batch_size,
        max_validation_batches=max_eval_batches,
        max_test_batches=max_eval_batches,
        num_validation_examples=num_validation_examples,
        num_oov_buckets=num_oov_buckets)

    train_dataset_preprocess_comp = stackoverflow_dataset.create_train_dataset_preprocess_fn(
        vocab=stackoverflow_dataset.create_vocab(vocab_size),
        num_oov_buckets=num_oov_buckets,
        client_batch_size=client_batch_size,
        client_epochs_per_round=client_epochs_per_round,
        max_seq_len=sequence_length,
        max_training_elements_per_user=max_elements_per_user,
        max_batches_per_user=max_batches_per_client)

    input_spec = train_dataset_preprocess_comp.type_signature.result.element

    def tff_model_fn() -> tff.learning.Model:
        return tff.learning.from_keras_model(keras_model=model_builder(),
                                             input_spec=input_spec,
                                             loss=loss_builder(),
                                             metrics=metrics_builder())

    def client_weight_fn(local_outputs):
        # Num_tokens is a tensor with type int64[1], to use as a weight need
        # a float32 scalar.
        return tf.cast(tf.squeeze(local_outputs['num_tokens']), tf.float32)

    training_process = iterative_process_builder(
        tff_model_fn, client_weight_fn=client_weight_fn)

    training_process = tff.simulation.compose_dataset_computation_with_iterative_process(
        train_dataset_preprocess_comp, training_process)

    client_datasets_fn = training_utils.build_client_datasets_fn(
        dataset=train_clientdata,
        clients_per_round=clients_per_round,
        random_seed=client_datasets_random_seed)

    evaluate_fn = training_utils.build_centralized_evaluate_fn(
        model_builder=model_builder,
        eval_dataset=validation_dataset,
        loss_builder=loss_builder,
        metrics_builder=metrics_builder)

    test_fn = training_utils.build_centralized_evaluate_fn(
        model_builder=model_builder,
        # Use both val and test for symmetry with other experiments, which
        # evaluate on the entire test set.
        eval_dataset=validation_dataset.concatenate(test_dataset),
        loss_builder=loss_builder,
        metrics_builder=metrics_builder)

    logging.info('Training model:')
    logging.info(model_builder().summary())

    training_loop.run(iterative_process=training_process,
                      client_datasets_fn=client_datasets_fn,
                      validation_fn=evaluate_fn,
                      test_fn=test_fn,
                      total_rounds=total_rounds,
                      experiment_name=experiment_name,
                      root_output_dir=root_output_dir,
                      **kwargs)
Example #7
0
def run_centralized(optimizer: tf.keras.optimizers.Optimizer,
                    experiment_name: str,
                    root_output_dir: str,
                    num_epochs: int,
                    batch_size: int,
                    decay_epochs: Optional[int] = None,
                    lr_decay: Optional[float] = None,
                    hparams_dict: Optional[Mapping[str, Any]] = None,
                    vocab_size: Optional[int] = 10000,
                    num_oov_buckets: Optional[int] = 1,
                    sequence_length: Optional[int] = 20,
                    num_validation_examples: Optional[int] = 10000,
                    embedding_size: Optional[int] = 96,
                    latent_size: Optional[int] = 670,
                    num_layers: Optional[int] = 1,
                    shared_embedding: Optional[bool] = False,
                    max_batches: Optional[int] = None):
  """Trains an RNN on the Stack Overflow next word prediction task.

  Args:
    optimizer: A `tf.keras.optimizers.Optimizer` used to perform training.
    experiment_name: The name of the experiment. Part of the output directory.
    root_output_dir: The top-level output directory for experiment runs. The
      `experiment_name` argument will be appended, and the directory will
      contain tensorboard logs, metrics written as CSVs, and a CSV of
      hyperparameter choices (if `hparams_dict` is used).
    num_epochs: The number of training epochs.
    batch_size: The batch size, used for train, validation, and test.
    decay_epochs: The number of epochs of training before decaying the learning
      rate. If None, no decay occurs.
    lr_decay: The amount to decay the learning rate by after `decay_epochs`
      training epochs have occurred.
    hparams_dict: A mapping with string keys representing the hyperparameters
      and their values. If not None, this is written to CSV.
    vocab_size: Integer dictating the number of most frequent words to use in
      the vocabulary.
    num_oov_buckets: The number of out-of-vocabulary buckets to use.
    sequence_length: The maximum number of words to take for each sequence.
    num_validation_examples: The number of test examples to use for validation.
    embedding_size: The dimension of the word embedding layer.
    latent_size: The dimension of the latent units in the recurrent layers.
    num_layers: The number of stacked recurrent layers to use.
    shared_embedding: Boolean indicating whether to tie input and output
      embeddings.
    max_batches: If set to a positive integer, datasets are capped to at most
      that many batches. If set to None or a nonpositive integer, the full
      datasets are used.
  """

  train_dataset, validation_dataset, test_dataset = stackoverflow_dataset.get_centralized_datasets(
      vocab_size=vocab_size,
      max_seq_len=sequence_length,
      train_batch_size=batch_size,
      max_train_batches=max_batches,
      max_validation_batches=max_batches,
      max_test_batches=max_batches,
      num_validation_examples=num_validation_examples,
      num_oov_buckets=num_oov_buckets,
  )

  model = stackoverflow_models.create_recurrent_model(
      vocab_size=vocab_size,
      num_oov_buckets=num_oov_buckets,
      name='stackoverflow-lstm',
      embedding_size=embedding_size,
      latent_size=latent_size,
      num_layers=num_layers,
      shared_embedding=shared_embedding)

  special_tokens = stackoverflow_dataset.get_special_tokens(
      vocab_size=vocab_size, num_oov_buckets=num_oov_buckets)
  pad_token = special_tokens.pad
  oov_tokens = special_tokens.oov
  eos_token = special_tokens.eos

  model.compile(
      loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
      optimizer=optimizer,
      metrics=[
          keras_metrics.MaskedCategoricalAccuracy(
              name='accuracy_with_oov', masked_tokens=[pad_token]),
          keras_metrics.MaskedCategoricalAccuracy(
              name='accuracy_no_oov', masked_tokens=[pad_token] + oov_tokens),
          keras_metrics.MaskedCategoricalAccuracy(
              name='accuracy_no_oov_or_eos',
              masked_tokens=[pad_token, eos_token] + oov_tokens),
      ])

  centralized_training_loop.run(
      keras_model=model,
      train_dataset=train_dataset,
      validation_dataset=validation_dataset,
      test_dataset=test_dataset,
      experiment_name=experiment_name,
      root_output_dir=root_output_dir,
      num_epochs=num_epochs,
      hparams_dict=hparams_dict,
      decay_epochs=decay_epochs,
      lr_decay=lr_decay)