tensorflow:: ops:: DynamicPartition
#include <data_flow_ops.h>
Partitions data
into num_partitions
tensors using indices from partitions
.
Summary
For each index tuple js
of size partitions.ndim
, the slice data[js, ...]
becomes part of outputs[partitions[js]]
. The slices with partitions[js] = i
are placed in outputs[i]
in lexicographic order of js
, and the first dimension of outputs[i]
is the number of entries in partitions
equal to i
. In detail,
outputs[i].shape = [sum(partitions == i)] + data.shape[partitions.ndim:]
outputs[i] = pack([data[js, ...] for js if partitions[js] == i])
data.shape
must start with partitions.shape
.
For example:
# Scalar partitions. partitions = 1 num_partitions = 2 data = [10, 20] outputs[0] = [] # Empty with shape [0, 2] outputs[1] = [[10, 20]]
# Vector partitions. partitions = [0, 0, 1, 1, 0] num_partitions = 2 data = [10, 20, 30, 40, 50] outputs[0] = [10, 20, 50] outputs[1] = [30, 40]
See dynamic_stitch
for an example on how to merge partitions back.
Raises:
InvalidArgumentError
in following cases:- If partitions is not in range
[0, num_partiions)
- If
partitions.shape
does not match prefix ofdata.shape
argument.
- If partitions is not in range
Args:
- scope: A Scope object
- partitions: Any shape. Indices in the range
[0, num_partitions)
. - num_partitions: The number of partitions to output.
Returns:
OutputList
: The outputs tensor.
Constructors and Destructors |
|
---|---|
DynamicPartition(const ::tensorflow::Scope & scope, ::tensorflow::Input data, ::tensorflow::Input partitions, int64 num_partitions)
|
Public attributes |
|
---|---|
operation
|
|
outputs
|
Public functions |
|
---|---|
operator[](size_t index) const
|
Public attributes
operation
Operation operation
outputs
::tensorflow::OutputList outputs
Public functions
DynamicPartition
DynamicPartition( const ::tensorflow::Scope & scope, ::tensorflow::Input data, ::tensorflow::Input partitions, int64 num_partitions )
operator[]
::tensorflow::Output operator[]( size_t index ) const