tf.TensorArray
View source on GitHub |
Class wrapping dynamic-sized, per-time-step, write-once Tensor arrays.
tf.TensorArray( dtype, size=None, dynamic_size=None, clear_after_read=None, tensor_array_name=None, handle=None, flow=None, infer_shape=True, element_shape=None, colocate_with_first_write_call=True, name=None )
This class is meant to be used with dynamic iteration primitives such as while_loop
and map_fn
. It supports gradient back-propagation via special "flow" control flow dependencies.
Args | |
---|---|
dtype | (required) data type of the TensorArray. |
size | (optional) int32 scalar Tensor : the size of the TensorArray. Required if handle is not provided. |
dynamic_size | (optional) Python bool: If true, writes to the TensorArray can grow the TensorArray past its initial size. Default: False. |
clear_after_read | Boolean (optional, default: True). If True, clear TensorArray values after reading them. This disables read-many semantics, but allows early release of memory. |
tensor_array_name | (optional) Python string: the name of the TensorArray. This is used when creating the TensorArray handle. If this value is set, handle should be None. |
handle | (optional) A Tensor handle to an existing TensorArray. If this is set, tensor_array_name should be None. Only supported in graph mode. |
flow | (optional) A float Tensor scalar coming from an existing TensorArray.flow . Only supported in graph mode. |
infer_shape | (optional, default: True) If True, shape inference is enabled. In this case, all elements must have the same shape. |
element_shape | (optional, default: None) A TensorShape object specifying the shape constraints of each of the elements of the TensorArray. Need not be fully defined. |
colocate_with_first_write_call | If True , the TensorArray will be colocated on the same device as the Tensor used on its first write (write operations include write , unstack , and split ). If False , the TensorArray will be placed on the device determined by the device context available during its initialization. |
name | A name for the operation (optional). |
Raises | |
---|---|
ValueError | if both handle and tensor_array_name are provided. |
TypeError | if handle is provided but is not a Tensor. |
Attributes | |
---|---|
dtype | The data type of this TensorArray. |
dynamic_size | Python bool; if True the TensorArray can grow dynamically. |
element_shape | The tf.TensorShape of elements in this TensorArray. |
flow | The flow Tensor forcing ops leading to this TensorArray state. |
handle | The reference to the TensorArray. |
Methods
close
close( name=None )
Close the current TensorArray.
Note: The output of this function should be used. If it is not, a warning will be logged. To mark the output as used, call its .mark_used() method.
concat
concat( name=None )
Return the values in the TensorArray as a concatenated Tensor
.
All of the values must have been written, their ranks must match, and and their shapes must all match for all dimensions except the first.
Args | |
---|---|
name | A name for the operation (optional). |
Returns | |
---|---|
All the tensors in the TensorArray concatenated into one tensor. |
gather
gather( indices, name=None )
Return selected values in the TensorArray as a packed Tensor
.
All of selected values must have been written and their shapes must all match.
Args | |
---|---|
indices | A 1-D Tensor taking values in [0, max_value) . If the TensorArray is not dynamic, max_value=size() . |
name | A name for the operation (optional). |
Returns | |
---|---|
The tensors in the TensorArray selected by indices , packed into one tensor. |
grad
grad( source, flow=None, name=None )
identity
identity()
Returns a TensorArray with the same content and properties.
Returns | |
---|---|
A new TensorArray object with flow that ensures the control dependencies from the contexts will become control dependencies for writes, reads, etc. Use this object all for subsequent operations. |
read
read( index, name=None )
Read the value at location index
in the TensorArray.
Args | |
---|---|
index | 0-D. int32 tensor with the index to read from. |
name | A name for the operation (optional). |
Returns | |
---|---|
The tensor at index index . |
scatter
scatter( indices, value, name=None )
Scatter the values of a Tensor
in specific indices of a TensorArray
.
Args: indices: A 1-D
Tensor
taking values in [0, max_value)
. If the TensorArray
is not dynamic, max_value=size()
. value: (N+1)-D. Tensor of type dtype
. The Tensor to unpack. name: A name for the operation (optional).
Returns: A new TensorArray object with flow that ensures the scatter occurs. Use this object all for subsequent operations.
Raises: ValueError: if the shape inference fails.
Note: The output of this function should be used. If it is not, a warning will be logged. To mark the output as used, call its .mark_used() method.
size
size( name=None )
Return the size of the TensorArray.
split
split( value, lengths, name=None )
Split the values of a Tensor
into the TensorArray.
Args: value: (N+1)-D. Tensor of type dtype
. The Tensor to split. lengths: 1-D. int32 vector with the lengths to use when splitting value
along its first dimension. name: A name for the operation (optional).
Returns: A new TensorArray object with flow that ensures the split occurs. Use this object all for subsequent operations.
Raises: ValueError: if the shape inference fails.
Note: The output of this function should be used. If it is not, a warning will be logged. To mark the output as used, call its .mark_used() method.
stack
stack( name=None )
Return the values in the TensorArray as a stacked Tensor
.
All of the values must have been written and their shapes must all match. If input shapes have rank-R
, then output shape will have rank-(R+1)
.
Args | |
---|---|
name | A name for the operation (optional). |
Returns | |
---|---|
All the tensors in the TensorArray stacked into one tensor. |
unstack
unstack( value, name=None )
Unstack the values of a Tensor
in the TensorArray.
If input value shapes have rank-R
, then the output TensorArray will contain elements whose shapes are rank-(R-1)
.
Args: value: (N+1)-D. Tensor of type dtype
. The Tensor to unstack. name: A name for the operation (optional).
Returns: A new TensorArray object with flow that ensures the unstack occurs. Use this object all for subsequent operations.
Raises: ValueError: if the shape inference fails.
Note: The output of this function should be used. If it is not, a warning will be logged. To mark the output as used, call its .mark_used() method.
write
write( index, value, name=None )
Write value
into index index
of the TensorArray.
Args | |
---|---|
index | 0-D. int32 scalar with the index to write to. |
value | N-D. Tensor of type dtype . The Tensor to write to this index. |
name | A name for the operation (optional). |
Returns | |
---|---|
A new TensorArray object with flow that ensures the write occurs. Use this object all for subsequent operations. |
Raises | |
---|---|
ValueError | if there are more writers than specified. |
© 2020 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r1.15/api_docs/python/tf/TensorArray