TensorFlow 1 version
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Base class to enqueue inputs.
tf.keras.utils.SequenceEnqueuer(
    sequence, use_multiprocessing=False
)
The task of an Enqueuer is to use parallelism to speed up preprocessing. This is done with processes or threads.
Example:
    enqueuer = SequenceEnqueuer(...)
    enqueuer.start()
    datas = enqueuer.get()
    for data in datas:
        # Use the inputs; training, evaluating, predicting.
        # ... stop sometime.
    enqueuer.close()
The enqueuer.get() should be an infinite stream of datas.
Methods
get
get()
Creates a generator to extract data from the queue.
Skip the data if it is None.
Returns
Generator yielding tuples `(inputs, targets)`
    or `(inputs, targets, sample_weights)`.
is_running
is_running()
start
start(
    workers=1, max_queue_size=10
)
Starts the handler's workers.
| Arguments | |
|---|---|
workers
 | 
Number of workers. | 
max_queue_size
 | 
queue size
(when full, workers could block on put())
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stop
stop(
    timeout=None
)
Stops running threads and wait for them to exit, if necessary.
Should be called by the same thread which called start().
| Arguments | |
|---|---|
timeout
 | 
maximum time to wait on thread.join()
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  TensorFlow 1 version
    View source on GitHub