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Stacks dynamic partitions of a Tensor or RaggedTensor.
Aliases:
tf.ragged.stack_dynamic_partitions(
data,
partitions,
num_partitions,
name=None
)
Returns a RaggedTensor output
with num_partitions
rows, where the row
output[i]
is formed by stacking all slices data[j1...jN]
such that
partitions[j1...jN] = i
. Slices of data
are stacked in row-major
order.
If num_partitions
is an int
(not a Tensor
), then this is equivalent to
tf.ragged.stack(tf.dynamic_partition(data, partitions, num_partitions))
.
Example:
>>> data = ['a', 'b', 'c', 'd', 'e'] >>> partitions = [ 3, 0, 2, 2, 3] >>> num_partitions = 5 >>> tf.ragged.stack_dynamic_partitions(data, partitions, num_partitions) <RaggedTensor [['b'], [], ['c', 'd'], ['a', 'e'], []]>
Args:
data
: ATensor
orRaggedTensor
containing the values to stack.partitions
: Anint32
orint64
Tensor
orRaggedTensor
specifying the partition that each slice ofdata
should be added to.partitions.shape
must be a prefix ofdata.shape
. Values must be greater than or equal to zero, and less thannum_partitions
.partitions
is not required to be sorted.num_partitions
: Anint32
orint64
scalar specifying the number of partitions to output. This determines the number of rows inoutput
.name
: A name prefix for the returned tensor (optional).
Returns:
A RaggedTensor
containing the stacked partitions. The returned tensor
has the same dtype as data
, and its shape is
[num_partitions, (D)] + data.shape[partitions.rank:]
, where (D)
is a
ragged dimension whose length is the number of data slices stacked for
each partition
.