Example #1
0
    def from_params(
            cls,  # type: ignore
            model: Model,
            serialization_dir: str,
            iterator: DataIterator,
            train_data: Iterable[Instance],
            validation_data: Optional[Iterable[Instance]],
            params: Params,
            validation_iterator: DataIterator = None) -> 'Trainer':
        # pylint: disable=arguments-differ
        patience = params.pop_int("patience", None)
        validation_metric = params.pop("validation_metric", "-loss")
        shuffle = params.pop_bool("shuffle", True)
        num_epochs = params.pop_int("num_epochs", 20)
        cuda_device = parse_cuda_device(params.pop("cuda_device", -1))
        grad_norm = params.pop_float("grad_norm", None)
        grad_clipping = params.pop_float("grad_clipping", None)
        lr_scheduler_params = params.pop("learning_rate_scheduler", None)
        momentum_scheduler_params = params.pop("momentum_scheduler", None)

        if isinstance(cuda_device, list):
            model_device = cuda_device[0]
        else:
            model_device = cuda_device
        if model_device >= 0:
            # Moving model to GPU here so that the optimizer state gets constructed on
            # the right device.
            model = model.cuda(model_device)

        parameters = [[n, p] for n, p in model.named_parameters()
                      if p.requires_grad]
        optimizer = Optimizer.from_params(parameters, params.pop("optimizer"))
        if "moving_average" in params:
            moving_average = MovingAverage.from_params(
                params.pop("moving_average"), parameters=parameters)
        else:
            moving_average = None

        if lr_scheduler_params:
            lr_scheduler = LearningRateScheduler.from_params(
                optimizer, lr_scheduler_params)
        else:
            lr_scheduler = None
        if momentum_scheduler_params:
            momentum_scheduler = MomentumScheduler.from_params(
                optimizer, momentum_scheduler_params)
        else:
            momentum_scheduler = None

        if 'checkpointer' in params:
            if 'keep_serialized_model_every_num_seconds' in params or \
                    'num_serialized_models_to_keep' in params:
                raise ConfigurationError(
                    "Checkpointer may be initialized either from the 'checkpointer' key or from the "
                    "keys 'num_serialized_models_to_keep' and 'keep_serialized_model_every_num_seconds'"
                    " but the passed config uses both methods.")
            checkpointer = Checkpointer.from_params(params.pop("checkpointer"))
        else:
            num_serialized_models_to_keep = params.pop_int(
                "num_serialized_models_to_keep", 20)
            keep_serialized_model_every_num_seconds = params.pop_int(
                "keep_serialized_model_every_num_seconds", None)
            checkpointer = Checkpointer(
                serialization_dir=serialization_dir,
                num_serialized_models_to_keep=num_serialized_models_to_keep,
                keep_serialized_model_every_num_seconds=
                keep_serialized_model_every_num_seconds)
        model_save_interval = params.pop_float("model_save_interval", None)
        summary_interval = params.pop_int("summary_interval", 100)
        histogram_interval = params.pop_int("histogram_interval", None)
        should_log_parameter_statistics = params.pop_bool(
            "should_log_parameter_statistics", True)
        should_log_learning_rate = params.pop_bool("should_log_learning_rate",
                                                   False)
        log_batch_size_period = params.pop_int("log_batch_size_period", None)

        params.assert_empty(cls.__name__)
        return cls(
            model,
            optimizer,
            iterator,
            train_data,
            validation_data,
            patience=patience,
            validation_metric=validation_metric,
            validation_iterator=validation_iterator,
            shuffle=shuffle,
            num_epochs=num_epochs,
            serialization_dir=serialization_dir,
            cuda_device=cuda_device,
            grad_norm=grad_norm,
            grad_clipping=grad_clipping,
            learning_rate_scheduler=lr_scheduler,
            momentum_scheduler=momentum_scheduler,
            checkpointer=checkpointer,
            model_save_interval=model_save_interval,
            summary_interval=summary_interval,
            histogram_interval=histogram_interval,
            should_log_parameter_statistics=should_log_parameter_statistics,
            should_log_learning_rate=should_log_learning_rate,
            log_batch_size_period=log_batch_size_period,
            moving_average=moving_average)
Example #2
0
    def from_params(
            cls,  # type: ignore
            params: Params,
            serialization_dir: str,
            recover: bool = False) -> 'Trainer':

        # modified for second training_data
        all_datasets = datasets_from_params(params)

        # copied from allennlp.training.trainer.TrainingPieces
        # modified for second training_data
        datasets_for_vocab_creation = set(
            params.pop("datasets_for_vocab_creation", all_datasets))

        if recover and os.path.exists(
                os.path.join(serialization_dir, "vocabulary")):
            vocab = Vocabulary.from_files(
                os.path.join(serialization_dir, "vocabulary"))
            params.pop("vocabulary", {})
        else:
            vocab = Vocabulary.from_params(params.pop(
                "vocabulary", {}), (instance
                                    for key, dataset in all_datasets.items()
                                    for instance in dataset
                                    if key in datasets_for_vocab_creation))
        model = Model.from_params(vocab=vocab, params=params.pop('model'))
        model.extend_embedder_vocab()
        vocab.save_to_files(os.path.join(serialization_dir, "vocabulary"))

        iterator = DataIterator.from_params(params.pop("iterator"))
        iterator.index_with(model.vocab)
        validation_iterator_params = params.pop("validation_iterator", None)
        if validation_iterator_params:
            validation_iterator = DataIterator.from_params(
                validation_iterator_params)
            validation_iterator.index_with(model.vocab)
        else:
            validation_iterator = None

        train_data = all_datasets['train']
        validation_data = all_datasets.get('validation')
        test_data = all_datasets.get('test')
        train_low_data = all_datasets.get('train_low')

        trainer_params = params.pop("trainer")
        no_grad_regexes = trainer_params.pop("no_grad", ())
        for name, parameter in model.named_parameters():
            if any(re.search(regex, name) for regex in no_grad_regexes):
                parameter.requires_grad_(False)

        frozen_parameter_names, tunable_parameter_names = \
                    get_frozen_and_tunable_parameter_names(model)
        logger.info("Following parameters are Frozen  (without gradient):")
        for name in frozen_parameter_names:
            logger.info(name)
        logger.info("Following parameters are Tunable (with gradient):")
        for name in tunable_parameter_names:
            logger.info(name)

        # END OF TrainerPieces code
        params = trainer_params

        # pylint: disable=arguments-differ
        patience = params.pop_int("patience", None)
        validation_metric = params.pop("validation_metric", "-loss")
        shuffle = params.pop_bool("shuffle", True)
        num_epochs = params.pop_int("num_epochs", 20)
        cuda_device = parse_cuda_device(params.pop("cuda_device", -1))
        grad_norm = params.pop_float("grad_norm", None)
        grad_clipping = params.pop_float("grad_clipping", None)
        lr_scheduler_params = params.pop("learning_rate_scheduler", None)
        momentum_scheduler_params = params.pop("momentum_scheduler", None)

        if isinstance(cuda_device, list):
            model_device = cuda_device[0]
        else:
            model_device = cuda_device
        if model_device >= 0:
            # Moving model to GPU here so that the optimizer state gets constructed on
            # the right device.
            model = model.cuda(model_device)

        parameters = [[n, p] for n, p in model.named_parameters()
                      if p.requires_grad]
        optimizer = Optimizer.from_params(parameters, params.pop("optimizer"))
        if "moving_average" in params:
            moving_average = MovingAverage.from_params(
                params.pop("moving_average"), parameters=parameters)
        else:
            moving_average = None

        if lr_scheduler_params:
            lr_scheduler = LearningRateScheduler.from_params(
                optimizer, lr_scheduler_params)
        else:
            lr_scheduler = None
        if momentum_scheduler_params:
            momentum_scheduler = MomentumScheduler.from_params(
                optimizer, momentum_scheduler_params)
        else:
            momentum_scheduler = None

        if 'checkpointer' in params:
            if 'keep_serialized_model_every_num_seconds' in params or \
                    'num_serialized_models_to_keep' in params:
                raise ConfigurationError(
                    "Checkpointer may be initialized either from the 'checkpointer' key or from the "
                    "keys 'num_serialized_models_to_keep' and 'keep_serialized_model_every_num_seconds'"
                    " but the passed config uses both methods.")
            checkpointer = Checkpointer.from_params(params.pop("checkpointer"))
        else:
            num_serialized_models_to_keep = params.pop_int(
                "num_serialized_models_to_keep", 20)
            keep_serialized_model_every_num_seconds = params.pop_int(
                "keep_serialized_model_every_num_seconds", None)
            checkpointer = Checkpointer(
                serialization_dir=serialization_dir,
                num_serialized_models_to_keep=num_serialized_models_to_keep,
                keep_serialized_model_every_num_seconds=
                keep_serialized_model_every_num_seconds)
        model_save_interval = params.pop_float("model_save_interval", None)
        summary_interval = params.pop_int("summary_interval", 100)
        histogram_interval = params.pop_int("histogram_interval", None)
        should_log_parameter_statistics = params.pop_bool(
            "should_log_parameter_statistics", True)
        should_log_learning_rate = params.pop_bool("should_log_learning_rate",
                                                   False)
        log_batch_size_period = params.pop_int("log_batch_size_period", None)

        epoch_low_start = params.pop_int("epoch_low_start", None)
        epoch_without_improvement_low_start = params.pop_int(
            "epoch_without_improvement_low_start", None)

        params.assert_empty(cls.__name__)
        return cls(
            model,
            optimizer,
            iterator,
            train_data,
            validation_data,
            train_low_dataset=train_low_data,
            patience=patience,
            validation_metric=validation_metric,
            validation_iterator=validation_iterator,
            shuffle=shuffle,
            num_epochs=num_epochs,
            serialization_dir=serialization_dir,
            cuda_device=cuda_device,
            grad_norm=grad_norm,
            grad_clipping=grad_clipping,
            learning_rate_scheduler=lr_scheduler,
            momentum_scheduler=momentum_scheduler,
            checkpointer=checkpointer,
            model_save_interval=model_save_interval,
            summary_interval=summary_interval,
            histogram_interval=histogram_interval,
            should_log_parameter_statistics=should_log_parameter_statistics,
            should_log_learning_rate=should_log_learning_rate,
            log_batch_size_period=log_batch_size_period,
            moving_average=moving_average,
            epoch_low_start=epoch_low_start,
            epoch_without_improvement_low_start=
            epoch_without_improvement_low_start,
        )
Example #3
0
    def from_params(cls,
                    params: Params,
                    serialization_dir: str,
                    recover: bool = False) -> 'LmTrainer':
        pieces = TrainerPieces.from_params(params, serialization_dir, recover)

        # THIS SUCKS
        model = pieces.model
        iterator = pieces.iterator
        train_data = pieces.train_dataset
        validation_data = pieces.validation_dataset
        params = pieces.params
        validation_iterator = pieces.validation_iterator

        # pylint: disable=arguments-differ
        patience = params.pop_int("patience", None)
        validation_metric = params.pop("validation_metric", "-loss")
        shuffle = params.pop_bool("shuffle", True)
        num_epochs = params.pop_int("num_epochs", 20)
        cuda_device = parse_cuda_device(params.pop("cuda_device", -1))
        grad_norm = params.pop_float("grad_norm", None)
        grad_clipping = params.pop_float("grad_clipping", None)
        lr_scheduler_params = params.pop("learning_rate_scheduler", None)

        if isinstance(cuda_device, list):
            model_device = cuda_device[0]
        else:
            model_device = cuda_device
        if model_device >= 0:
            # Moving model to GPU here so that the optimizer state gets constructed on
            # the right device.
            model = model.cuda(model_device)

        parameters = [[n, p] for n, p in model.named_parameters()
                      if p.requires_grad]
        optimizer = Optimizer.from_params(parameters, params.pop("optimizer"))
        if "moving_average" in params:
            moving_average = MovingAverage.from_params(
                params.pop("moving_average"), parameters=parameters)
        else:
            moving_average = None

        if lr_scheduler_params:
            scheduler = LearningRateScheduler.from_params(
                optimizer, lr_scheduler_params)
        else:
            scheduler = None

        num_serialized_models_to_keep = params.pop_int(
            "num_serialized_models_to_keep", 20)
        keep_serialized_model_every_num_seconds = params.pop_int(
            "keep_serialized_model_every_num_seconds", None)
        model_save_interval = params.pop_float("model_save_interval", None)
        summary_interval = params.pop_int("summary_interval", 100)
        histogram_interval = params.pop_int("histogram_interval", None)
        should_log_parameter_statistics = params.pop_bool(
            "should_log_parameter_statistics", True)
        should_log_learning_rate = params.pop_bool("should_log_learning_rate",
                                                   False)
        log_batch_size_period = params.pop_int("log_batch_size_period", None)

        params.assert_empty(cls.__name__)
        return cls(
            model,
            optimizer,
            iterator,
            train_data,
            validation_data,
            patience=patience,
            validation_metric=validation_metric,
            validation_iterator=validation_iterator,
            shuffle=shuffle,
            num_epochs=num_epochs,
            serialization_dir=serialization_dir,
            cuda_device=cuda_device,
            grad_norm=grad_norm,
            grad_clipping=grad_clipping,
            learning_rate_scheduler=scheduler,
            num_serialized_models_to_keep=num_serialized_models_to_keep,
            keep_serialized_model_every_num_seconds=
            keep_serialized_model_every_num_seconds,
            model_save_interval=model_save_interval,
            summary_interval=summary_interval,
            histogram_interval=histogram_interval,
            should_log_parameter_statistics=should_log_parameter_statistics,
            should_log_learning_rate=should_log_learning_rate,
            log_batch_size_period=log_batch_size_period,
            moving_average=moving_average)
Example #4
0
    def from_params(
            cls,  # type: ignore
            model: Model,
            serialization_dir: str,
            iterator: DataIterator,
            train_data: Iterable[Instance],
            validation_data: Optional[Iterable[Instance]],
            params: Params,
            validation_iterator: DataIterator = None) -> 'Trainer':
        # pylint: disable=arguments-differ
        patience = params.pop_int("patience", None)
        validation_metric = params.pop("validation_metric", "-loss")
        shuffle = params.pop_bool("shuffle", True)
        num_epochs = params.pop_int("num_epochs", 20)
        cuda_device = parse_cuda_device(params.pop("cuda_device", -1))
        grad_norm = params.pop_float("grad_norm", None)
        grad_clipping = params.pop_float("grad_clipping", None)
        lr_scheduler_params = params.pop("learning_rate_scheduler", None)
        momentum_scheduler_params = params.pop("momentum_scheduler", None)

        if isinstance(cuda_device, list):
            model_device = cuda_device[0]
        else:
            model_device = cuda_device
        if model_device >= 0:
            # Moving model to GPU here so that the optimizer state gets constructed on
            # the right device.
            model = model.cuda(model_device)

        parameters = [[n, p] for n, p in model.named_parameters()
                      if p.requires_grad]
        optimizer_params = params.pop("optimizer")
        wd = params.pop("weight_decay", 0.0)

        no_decay = ['bias', 'LayerNorm.bias', 'LayerNorm.weight']

        if not isinstance(optimizer_params, str):
            parameter_groups = [[[
                n for n, p in parameters if not any(nd in n for nd in no_decay)
            ], {
                'weight_decay': wd
            }],
                                [[
                                    n for n, p in parameters
                                    if any(nd in n for nd in no_decay)
                                ], {
                                    'weight_decay': 0.0
                                }]]

            optimizer_params["parameter_groups"] = parameter_groups

        optimizer = Optimizer.from_params(parameters, optimizer_params)

        if "moving_average" in params:
            moving_average = MovingAverage.from_params(
                params.pop("moving_average"), parameters=parameters)
        else:
            moving_average = None

        if lr_scheduler_params:
            learning_rate_scheduler = LearningRateScheduler.from_params(
                optimizer, lr_scheduler_params)
        else:
            learning_rate_scheduler = None

        if momentum_scheduler_params:
            momentum_scheduler = MomentumScheduler.from_params(
                optimizer, momentum_scheduler_params)
        else:
            momentum_scheduler = None

        num_serialized_models_to_keep = params.pop_int(
            "num_serialized_models_to_keep", 20)
        keep_serialized_model_every_num_seconds = params.pop_int(
            "keep_serialized_model_every_num_seconds", None)
        model_save_interval = params.pop_float("model_save_interval", None)
        summary_interval = params.pop_int("summary_interval", 100)
        histogram_interval = params.pop_int("histogram_interval", None)
        should_log_parameter_statistics = params.pop_bool(
            "should_log_parameter_statistics", True)
        should_log_learning_rate = params.pop_bool("should_log_learning_rate",
                                                   False)
        should_log_momentum = params.pop_bool("should_log_momentum", False)
        log_batch_size_period = params.pop_int("log_batch_size_period", None)

        params.assert_empty(cls.__name__)
        return cls(
            model,
            optimizer,
            iterator,
            train_data,
            validation_data,
            patience=patience,
            validation_metric=validation_metric,
            validation_iterator=validation_iterator,
            shuffle=shuffle,
            num_epochs=num_epochs,
            serialization_dir=serialization_dir,
            cuda_device=cuda_device,
            grad_norm=grad_norm,
            grad_clipping=grad_clipping,
            learning_rate_scheduler=learning_rate_scheduler,
            momentum_scheduler=momentum_scheduler,
            num_serialized_models_to_keep=num_serialized_models_to_keep,
            keep_serialized_model_every_num_seconds=
            keep_serialized_model_every_num_seconds,
            model_save_interval=model_save_interval,
            summary_interval=summary_interval,
            histogram_interval=histogram_interval,
            should_log_parameter_statistics=should_log_parameter_statistics,
            should_log_learning_rate=should_log_learning_rate,
            should_log_momentum=should_log_momentum,
            log_batch_size_period=log_batch_size_period,
            moving_average=moving_average)