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Class NASCell
Neural Architecture Search (NAS) recurrent network cell.
Inherits From: LayerRNNCell
This implements the recurrent cell from the paper:
https://arxiv.org/abs/1611.01578
Barret Zoph and Quoc V. Le. "Neural Architecture Search with Reinforcement Learning" Proc. ICLR 2017.
The class uses an optional projection layer.
__init__
__init__(
num_units,
num_proj=None,
use_bias=False,
reuse=None,
**kwargs
)
Initialize the parameters for a NAS cell.
Args:
num_units
: int, The number of units in the NAS cell.num_proj
: (optional) int, The output dimensionality for the projection matrices. If None, no projection is performed.use_bias
: (optional) bool, If True then use biases within the cell. This is False by default.reuse
: (optional) Python boolean describing whether to reuse variables in an existing scope. If notTrue
, and the existing scope already has the given variables, an error is raised.**kwargs
: Additional keyword arguments.
Properties
graph
DEPRECATED FUNCTION
output_size
Integer or TensorShape: size of outputs produced by this cell.
scope_name
state_size
size(s) of state(s) used by this cell.
It can be represented by an Integer, a TensorShape or a tuple of Integers or TensorShapes.
Methods
tf.contrib.rnn.NASCell.get_initial_state
get_initial_state(
inputs=None,
batch_size=None,
dtype=None
)
tf.contrib.rnn.NASCell.zero_state
zero_state(
batch_size,
dtype
)
Return zero-filled state tensor(s).
Args:
batch_size
: int, float, or unit Tensor representing the batch size.dtype
: the data type to use for the state.
Returns:
If state_size
is an int or TensorShape, then the return value is a
N-D
tensor of shape [batch_size, state_size]
filled with zeros.
If state_size
is a nested list or tuple, then the return value is
a nested list or tuple (of the same structure) of 2-D
tensors with
the shapes [batch_size, s]
for each s in state_size
.