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A transformation that buckets elements in a Dataset by length. (deprecated)
tf.data.experimental.bucket_by_sequence_length(
element_length_func,
bucket_boundaries,
bucket_batch_sizes,
padded_shapes=None,
padding_values=None,
pad_to_bucket_boundary=False,
no_padding=False,
drop_remainder=False
)
Elements of the Dataset are grouped together by length and then are padded
and batched.
This is useful for sequence tasks in which the elements have variable length. Grouping together elements that have similar lengths reduces the total fraction of padding in a batch which increases training step efficiency.
Below is an example to bucketize the input data to the 3 buckets "[0, 3), [3, 5), [5, inf)" based on sequence length, with batch size 2.
elements = [[0], [1, 2, 3, 4], [5, 6, 7],[7, 8, 9, 10, 11], [13, 14, 15, 16, 19, 20], [21, 22]]
dataset = tf.data.Dataset.from_generator(lambda: elements, tf.int64, output_shapes=[None])
dataset = dataset.apply(tf.data.experimental.bucket_by_sequence_length(element_length_func=lambda elem: tf.shape(elem)[0],bucket_boundaries=[3, 5],bucket_batch_sizes=[2, 2, 2]))
for elem in dataset.as_numpy_iterator():print(elem)[[1 2 3 4][5 6 7 0]][[ 7 8 9 10 11 0][13 14 15 16 19 20]][[ 0 0][21 22]]
There is also a possibility to pad the dataset till the bucket boundary.
You can also provide which value to be used while padding the data.
Below example uses -1 as padding and it also shows the input data
being bucketizied to two buckets "[0,3], [4,6]".
elements = [[0], [1, 2, 3, 4], [5, 6, 7],[7, 8, 9, 10, 11], [13, 14, 15, 16, 19, 20], [21, 22]]
dataset = tf.data.Dataset.from_generator(lambda: elements, tf.int32, output_shapes=[None])
dataset = dataset.apply(tf.data.experimental.bucket_by_sequence_length(element_length_func=lambda elem: tf.shape(elem)[0],bucket_boundaries=[4, 7],bucket_batch_sizes=[2, 2, 2],pad_to_bucket_boundary=True,padding_values=-1))
for elem in dataset.as_numpy_iterator():print(elem)[[ 0 -1 -1][ 5 6 7]][[ 1 2 3 4 -1 -1][ 7 8 9 10 11 -1]][[21 22 -1]][[13 14 15 16 19 20]]
When using pad_to_bucket_boundary option, it can be seen that it is
not always possible to maintain the bucket batch size.
You can drop the batches that do not maintain the bucket batch size by
using the option drop_remainder. Using the same input data as in the
above example you get the following result.
elements = [[0], [1, 2, 3, 4], [5, 6, 7],[7, 8, 9, 10, 11], [13, 14, 15, 16, 19, 20], [21, 22]]
dataset = tf.data.Dataset.from_generator(lambda: elements, tf.int32, output_shapes=[None])
dataset = dataset.apply(tf.data.experimental.bucket_by_sequence_length(element_length_func=lambda elem: tf.shape(elem)[0],bucket_boundaries=[4, 7],bucket_batch_sizes=[2, 2, 2],pad_to_bucket_boundary=True,padding_values=-1,drop_remainder=True))
for elem in dataset.as_numpy_iterator():print(elem)[[ 0 -1 -1][ 5 6 7]][[ 1 2 3 4 -1 -1][ 7 8 9 10 11 -1]]
Args |
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element_length_func
Dataset to tf.int32,
determines the length of the element, which will determine the bucket it
goes into.
bucket_boundaries
list<int>, upper length boundaries of the buckets.
bucket_batch_sizes
list<int>, batch size per bucket. Length should be
len(bucket_boundaries) + 1.
padded_shapes
tf.TensorShape to pass to
tf.data.Dataset.padded_batch. If not provided, will use
dataset.output_shapes, which will result in variable length dimensions
being padded out to the maximum length in each batch.
padding_values
tf.data.Dataset.padded_batch. Defaults to padding with 0.
pad_to_bucket_boundary
False, will pad dimensions with unknown
size to maximum length in batch. If True, will pad dimensions with
unknown size to bucket boundary minus 1 (i.e., the maximum length in each
bucket), and caller must ensure that the source Dataset does not contain
any elements with length longer than max(bucket_boundaries).
no_padding
bool, indicates whether to pad the batch features (features
need to be either of type tf.sparse.SparseTensor or of same shape).
drop_remainder
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.
Returns | |
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A Dataset transformation function, which can be passed to
tf.data.Dataset.apply.
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Raises |
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ValueError
len(bucket_batch_sizes) != len(bucket_boundaries) + 1.
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