description: Produces a slice of each Tensor in tensor_list. (deprecated)
![]() |
Produces a slice of each Tensor
in tensor_list
. (deprecated)
tf.compat.v1.train.slice_input_producer(
tensor_list, num_epochs=None, shuffle=True, seed=None, capacity=32,
shared_name=None, name=None
)
Warning: THIS FUNCTION IS DEPRECATED. It will be removed in a future version.
Instructions for updating:
Queue-based input pipelines have been replaced by tf.data
. Use tf.data.Dataset.from_tensor_slices(tuple(tensor_list)).shuffle(tf.shape(input_tensor, out_type=tf.int64)[0]).repeat(num_epochs)
. If shuffle=False
, omit the .shuffle(...)
.
Implemented using a Queue -- a QueueRunner
for the Queue
is added to the current Graph
's QUEUE_RUNNER
collection.
Args | |
---|---|
tensor_list
|
A list of Tensor objects. Every Tensor in
tensor_list must have the same size in the first dimension.
|
num_epochs
|
An integer (optional). If specified, slice_input_producer
produces each slice num_epochs times before generating
an OutOfRange error. If not specified, slice_input_producer can cycle
through the slices an unlimited number of times.
|
shuffle
|
Boolean. If true, the integers are randomly shuffled within each epoch. |
seed
|
An integer (optional). Seed used if shuffle == True. |
capacity
|
An integer. Sets the queue capacity. |
shared_name
|
(optional). If set, this queue will be shared under the given name across multiple sessions. |
name
|
A name for the operations (optional). |
Returns | |
---|---|
A list of tensors, one for each element of tensor_list . If the tensor
in tensor_list has shape [N, a, b, .., z] , then the corresponding output
tensor will have shape [a, b, ..., z] .
|
Raises | |
---|---|
ValueError
|
if slice_input_producer produces nothing from tensor_list .
|
Input pipelines based on Queues are not supported when eager execution is
enabled. Please use the tf.data
API to ingest data under eager execution.