# Copyright 2017 The TensorFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # ============================================================================== """Batching dataset transformations.""" from tensorflow.python.data.ops import dataset_ops from tensorflow.python.data.ops import structured_function from tensorflow.python.data.util import convert from tensorflow.python.data.util import nest from tensorflow.python.framework import dtypes from tensorflow.python.framework import ops from tensorflow.python.framework import sparse_tensor from tensorflow.python.framework import tensor_shape from tensorflow.python.framework import tensor_util from tensorflow.python.ops import gen_experimental_dataset_ops as ged_ops from tensorflow.python.util import deprecation from tensorflow.python.util.tf_export import tf_export @tf_export("data.experimental.dense_to_ragged_batch") @deprecation.deprecated(None, "Use `tf.data.Dataset.ragged_batch` instead.") def dense_to_ragged_batch(batch_size, drop_remainder=False, row_splits_dtype=dtypes.int64): """A transformation that batches ragged elements into `tf.RaggedTensor`s. This transformation combines multiple consecutive elements of the input dataset into a single element. Like `tf.data.Dataset.batch`, the components of the resulting element will have an additional outer dimension, which will be `batch_size` (or `N % batch_size` for the last element if `batch_size` does not divide the number of input elements `N` evenly and `drop_remainder` is `False`). If your program depends on the batches having the same outer dimension, you should set the `drop_remainder` argument to `True` to prevent the smaller batch from being produced. Unlike `tf.data.Dataset.batch`, the input elements to be batched may have different shapes: * If an input element is a `tf.Tensor` whose static `tf.TensorShape` is fully defined, then it is batched as normal. * If an input element is a `tf.Tensor` whose static `tf.TensorShape` contains one or more axes with unknown size (i.e., `shape[i]=None`), then the output will contain a `tf.RaggedTensor` that is ragged up to any of such dimensions. * If an input element is a `tf.RaggedTensor` or any other type, then it is batched as normal. Example: >>> dataset = tf.data.Dataset.from_tensor_slices(np.arange(6)) >>> dataset = dataset.map(lambda x: tf.range(x)) >>> dataset.element_spec.shape TensorShape([None]) >>> dataset = dataset.apply( ... tf.data.experimental.dense_to_ragged_batch(batch_size=2)) >>> for batch in dataset: ... print(batch) Args: batch_size: A `tf.int64` scalar `tf.Tensor`, representing the number of consecutive elements of this dataset to combine in a single batch. drop_remainder: (Optional.) A `tf.bool` scalar `tf.Tensor`, representing whether the last batch should be dropped in the case it has fewer than `batch_size` elements; the default behavior is not to drop the smaller batch. row_splits_dtype: The dtype that should be used for the `row_splits` of any new ragged tensors. Existing `tf.RaggedTensor` elements do not have their row_splits dtype changed. Returns: Dataset: A `Dataset`. """ def _apply_fn(dataset): return dataset.ragged_batch(batch_size, drop_remainder, row_splits_dtype) return _apply_fn @tf_export("data.experimental.dense_to_sparse_batch") @deprecation.deprecated(None, "Use `tf.data.Dataset.sparse_batch` instead.") def dense_to_sparse_batch(batch_size, row_shape): """A transformation that batches ragged elements into `tf.sparse.SparseTensor`s. Like `Dataset.padded_batch()`, this transformation combines multiple consecutive elements of the dataset, which might have different shapes, into a single element. The resulting element has three components (`indices`, `values`, and `dense_shape`), which comprise a `tf.sparse.SparseTensor` that represents the same data. The `row_shape` represents the dense shape of each row in the resulting `tf.sparse.SparseTensor`, to which the effective batch size is prepended. For example: ```python # NOTE: The following examples use `{ ... }` to represent the # contents of a dataset. a = { ['a', 'b', 'c'], ['a', 'b'], ['a', 'b', 'c', 'd'] } a.apply(tf.data.experimental.dense_to_sparse_batch( batch_size=2, row_shape=[6])) == { ([[0, 0], [0, 1], [0, 2], [1, 0], [1, 1]], # indices ['a', 'b', 'c', 'a', 'b'], # values [2, 6]), # dense_shape ([[0, 0], [0, 1], [0, 2], [0, 3]], ['a', 'b', 'c', 'd'], [1, 6]) } ``` Args: batch_size: A `tf.int64` scalar `tf.Tensor`, representing the number of consecutive elements of this dataset to combine in a single batch. row_shape: A `tf.TensorShape` or `tf.int64` vector tensor-like object representing the equivalent dense shape of a row in the resulting `tf.sparse.SparseTensor`. Each element of this dataset must have the same rank as `row_shape`, and must have size less than or equal to `row_shape` in each dimension. Returns: A `Dataset` transformation function, which can be passed to `tf.data.Dataset.apply`. """ def _apply_fn(dataset): return dataset.sparse_batch(batch_size, row_shape) return _apply_fn @deprecation.deprecated(None, "Use `tf.data.experimental.map_and_batch()") @tf_export(v1=["data.experimental.map_and_batch_with_legacy_function"]) def map_and_batch_with_legacy_function(map_func, batch_size, num_parallel_batches=None, drop_remainder=False, num_parallel_calls=None): """Fused implementation of `map` and `batch`. NOTE: This is an escape hatch for existing uses of `map_and_batch` that do not work with V2 functions. New uses are strongly discouraged and existing uses should migrate to `map_and_batch` as this method will not be removed in V2. Args: map_func: A function mapping a nested structure of tensors to another nested structure of tensors. batch_size: A `tf.int64` scalar `tf.Tensor`, representing the number of consecutive elements of this dataset to combine in a single batch. num_parallel_batches: (Optional.) A `tf.int64` scalar `tf.Tensor`, representing the number of batches to create in parallel. On one hand, higher values can help mitigate the effect of stragglers. On the other hand, higher values can increase contention if CPU is scarce. drop_remainder: (Optional.) A `tf.bool` scalar `tf.Tensor`, representing whether the last batch should be dropped in case its size is smaller than desired; the default behavior is not to drop the smaller batch. num_parallel_calls: (Optional.) A `tf.int32` scalar `tf.Tensor`, representing the number of elements to process in parallel. If not specified, `batch_size * num_parallel_batches` elements will be processed in parallel. If the value `tf.data.AUTOTUNE` is used, then the number of parallel calls is set dynamically based on available CPU. Returns: A `Dataset` transformation function, which can be passed to `tf.data.Dataset.apply`. Raises: ValueError: If both `num_parallel_batches` and `num_parallel_calls` are specified. """ if num_parallel_batches is None and num_parallel_calls is None: num_parallel_calls = batch_size elif num_parallel_batches is not None and num_parallel_calls is None: num_parallel_calls = batch_size * num_parallel_batches elif num_parallel_batches is not None and num_parallel_calls is not None: raise ValueError( "`map_and_batch_with_legacy_function` allows only one of " "`num_parallel_batches` and " "`num_parallel_calls` to be set, but " f"`num_parallel_batches` was set to {num_parallel_batches} " f"and `num_parallel_calls` as set to {num_parallel_calls}.") def _apply_fn(dataset): return _MapAndBatchDataset(dataset, map_func, batch_size, num_parallel_calls, drop_remainder, use_legacy_function=True) return _apply_fn @deprecation.deprecated( None, "Use `tf.data.Dataset.map(map_func, num_parallel_calls)` followed by " "`tf.data.Dataset.batch(batch_size, drop_remainder)`. Static tf.data " "optimizations will take care of using the fused implementation.") @tf_export("data.experimental.map_and_batch") def map_and_batch(map_func, batch_size, num_parallel_batches=None, drop_remainder=False, num_parallel_calls=None): """Fused implementation of `map` and `batch`. Maps `map_func` across `batch_size` consecutive elements of this dataset and then combines them into a batch. Functionally, it is equivalent to `map` followed by `batch`. This API is temporary and deprecated since input pipeline optimization now fuses consecutive `map` and `batch` operations automatically. Args: map_func: A function mapping a nested structure of tensors to another nested structure of tensors. batch_size: A `tf.int64` scalar `tf.Tensor`, representing the number of consecutive elements of this dataset to combine in a single batch. num_parallel_batches: (Optional.) A `tf.int64` scalar `tf.Tensor`, representing the number of batches to create in parallel. On one hand, higher values can help mitigate the effect of stragglers. On the other hand, higher values can increase contention if CPU is scarce. drop_remainder: (Optional.) A `tf.bool` scalar `tf.Tensor`, representing whether the last batch should be dropped in case its size is smaller than desired; the default behavior is not to drop the smaller batch. num_parallel_calls: (Optional.) A `tf.int32` scalar `tf.Tensor`, representing the number of elements to process in parallel. If not specified, `batch_size * num_parallel_batches` elements will be processed in parallel. If the value `tf.data.AUTOTUNE` is used, then the number of parallel calls is set dynamically based on available CPU. Returns: A `Dataset` transformation function, which can be passed to `tf.data.Dataset.apply`. Raises: ValueError: If both `num_parallel_batches` and `num_parallel_calls` are specified. """ if num_parallel_batches is None and num_parallel_calls is None: num_parallel_calls = batch_size elif num_parallel_batches is not None and num_parallel_calls is None: num_parallel_calls = batch_size * num_parallel_batches elif num_parallel_batches is not None and num_parallel_calls is not None: raise ValueError( "`map_and_batch` allows only one of `num_parallel_batches` and " "`num_parallel_calls` to be set, but " f"`num_parallel_batches` was set to {num_parallel_batches} " f"and `num_parallel_calls` as set to {num_parallel_calls}.") def _apply_fn(dataset): return _MapAndBatchDataset(dataset, map_func, batch_size, num_parallel_calls, drop_remainder) return _apply_fn @deprecation.deprecated(None, "Use `tf.data.Dataset.unbatch()`.") @tf_export("data.experimental.unbatch") def unbatch(): """Splits elements of a dataset into multiple elements on the batch dimension. For example, if elements of the dataset are shaped `[B, a0, a1, ...]`, where `B` may vary for each input element, then for each element in the dataset, the unbatched dataset will contain `B` consecutive elements of shape `[a0, a1, ...]`. ```python # NOTE: The following example uses `{ ... }` to represent the contents # of a dataset. a = { ['a', 'b', 'c'], ['a', 'b'], ['a', 'b', 'c', 'd'] } a.unbatch() == { 'a', 'b', 'c', 'a', 'b', 'a', 'b', 'c', 'd'} ``` Returns: A `Dataset` transformation function, which can be passed to `tf.data.Dataset.apply`. """ def _apply_fn(dataset): return dataset.unbatch() return _apply_fn class _DenseToSparseBatchDataset(dataset_ops.UnaryDataset): """A `Dataset` that batches ragged dense elements into `tf.sparse.SparseTensor`s.""" def __init__(self, input_dataset, batch_size, row_shape): """See `Dataset.dense_to_sparse_batch()` for more details.""" if not isinstance( dataset_ops.get_legacy_output_types(input_dataset), dtypes.DType): raise TypeError("`dense_to_sparse_batch` requires an input dataset whose " "elements have a single component, but the given dataset " "has the following component types: " f"{dataset_ops.get_legacy_output_types(input_dataset)}.") self._input_dataset = input_dataset self._batch_size = batch_size self._row_shape = row_shape self._element_spec = sparse_tensor.SparseTensorSpec( tensor_shape.TensorShape([None]).concatenate(self._row_shape), dataset_ops.get_legacy_output_types(input_dataset)) variant_tensor = ged_ops.dense_to_sparse_batch_dataset( self._input_dataset._variant_tensor, # pylint: disable=protected-access self._batch_size, row_shape=convert.partial_shape_to_tensor(self._row_shape), **self._flat_structure) super(_DenseToSparseBatchDataset, self).__init__(input_dataset, variant_tensor) @property def element_spec(self): return self._element_spec class _MapAndBatchDataset(dataset_ops.UnaryDataset): """A `Dataset` that maps a function over a batch of elements.""" def __init__(self, input_dataset, map_func, batch_size, num_parallel_calls, drop_remainder, use_legacy_function=False): self._input_dataset = input_dataset self._map_func = structured_function.StructuredFunctionWrapper( map_func, "tf.data.experimental.map_and_batch()", dataset=input_dataset, use_legacy_function=use_legacy_function) self._batch_size_t = ops.convert_to_tensor( batch_size, dtype=dtypes.int64, name="batch_size") self._num_parallel_calls_t = ops.convert_to_tensor( num_parallel_calls, dtype=dtypes.int64, name="num_parallel_calls") self._drop_remainder_t = ops.convert_to_tensor( drop_remainder, dtype=dtypes.bool, name="drop_remainder") constant_drop_remainder = tensor_util.constant_value(self._drop_remainder_t) # pylint: disable=protected-access if constant_drop_remainder: # NOTE(mrry): `constant_drop_remainder` may be `None` (unknown statically) # or `False` (explicitly retaining the remainder). # pylint: disable=g-long-lambda self._element_spec = nest.map_structure( lambda component_spec: component_spec._batch( tensor_util.constant_value(self._batch_size_t)), self._map_func.output_structure) else: self._element_spec = nest.map_structure( lambda component_spec: component_spec._batch(None), self._map_func.output_structure) # pylint: enable=protected-access variant_tensor = ged_ops.map_and_batch_dataset( self._input_dataset._variant_tensor, # pylint: disable=protected-access self._map_func.function.captured_inputs, f=self._map_func.function, batch_size=self._batch_size_t, num_parallel_calls=self._num_parallel_calls_t, drop_remainder=self._drop_remainder_t, preserve_cardinality=True, **self._flat_structure) super(_MapAndBatchDataset, self).__init__(input_dataset, variant_tensor) def _functions(self): return [self._map_func] @property def element_spec(self): return self._element_spec