tf.contrib.rnn.best_effort_input_batch_size
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Get static input batch size if available, with fallback to the dynamic one.
tf.contrib.rnn.best_effort_input_batch_size(
flat_input
)
Args |
flat_input
|
An iterable of time major input Tensors of shape [max_time,
batch_size, ...] . All inputs should have compatible batch sizes.
|
Returns |
The batch size in Python integer if available, or a scalar Tensor otherwise.
|
Raises |
ValueError
|
if there is any input with an invalid shape.
|
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Last updated 2020-10-01 UTC.
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