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 | 
Create batches by randomly shuffling conditionally-enqueued tensors. (deprecated)
tf.compat.v1.train.maybe_shuffle_batch_join(
    tensors_list, batch_size, capacity, min_after_dequeue, keep_input, seed=None,
    enqueue_many=False, shapes=None, allow_smaller_final_batch=False,
    shared_name=None, name=None
)
See docstring in shuffle_batch_join for more details.
Args | |
|---|---|
tensors_list
 | 
A list of tuples or dictionaries of tensors to enqueue. | 
batch_size
 | 
An integer. The new batch size pulled from the queue. | 
capacity
 | 
An integer. The maximum number of elements in the queue. | 
min_after_dequeue
 | 
Minimum number elements in the queue after a dequeue, used to ensure a level of mixing of elements. | 
keep_input
 | 
A bool Tensor.  This tensor controls whether the input is
added to the queue or not.  If it is a scalar and evaluates True, then
tensors are all added to the queue. If it is a vector and enqueue_many
is True, then each example is added to the queue only if the
corresponding value in keep_input is True. This tensor essentially
acts as a filtering mechanism.
 | 
seed
 | 
Seed for the random shuffling within the queue. | 
enqueue_many
 | 
Whether each tensor in tensor_list_list is a single
example.
 | 
shapes
 | 
(Optional) The shapes for each example.  Defaults to the
inferred shapes for tensors_list[i].
 | 
allow_smaller_final_batch
 | 
(Optional) Boolean. If True, allow the final
batch to be smaller if there are insufficient items left in the queue.
 | 
shared_name
 | 
(optional). If set, this queue will be shared under the given name across multiple sessions. | 
name
 | 
(Optional) A name for the operations. | 
Returns | |
|---|---|
A list or dictionary of tensors with the same number and types as
tensors_list[i].
 | 
Raises | |
|---|---|
ValueError
 | 
If the shapes are not specified, and cannot be
inferred from the elements of tensors_list.
 | 
eager compatibility
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.
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