View source on GitHub
|
Gated Recurrent Unit - Cho et al. 2014.
Inherits From: RNN, Layer, Operation
tf.keras.layers.GRU(
units,
activation='tanh',
recurrent_activation='sigmoid',
use_bias=True,
kernel_initializer='glorot_uniform',
recurrent_initializer='orthogonal',
bias_initializer='zeros',
kernel_regularizer=None,
recurrent_regularizer=None,
bias_regularizer=None,
activity_regularizer=None,
kernel_constraint=None,
recurrent_constraint=None,
bias_constraint=None,
dropout=0.0,
recurrent_dropout=0.0,
seed=None,
return_sequences=False,
return_state=False,
go_backwards=False,
stateful=False,
unroll=False,
reset_after=True,
use_cudnn='auto',
**kwargs
)
Used in the notebooks
| Used in the guide | Used in the tutorials |
|---|---|
Based on available runtime hardware and constraints, this layer will choose different implementations (cuDNN-based or backend-native) to maximize the performance. If a GPU is available and all the arguments to the layer meet the requirement of the cuDNN kernel (see below for details), the layer will use a fast cuDNN implementation when using the TensorFlow backend.
The requirements to use the cuDNN implementation are:
activation==tanhrecurrent_activation==sigmoiddropout== 0 andrecurrent_dropout== 0unrollisFalseuse_biasisTruereset_afterisTrue- Inputs, if use masking, are strictly right-padded.
- Eager execution is enabled in the outermost context.
There are two variants of the GRU implementation. The default one is based on v3 and has reset gate applied to hidden state before matrix multiplication. The other one is based on original and has the order reversed.
The second variant is compatible with CuDNNGRU (GPU-only) and allows
inference on CPU. Thus it has separate biases for kernel and
recurrent_kernel. To use this variant, set reset_after=True and
recurrent_activation='sigmoid'.
For example:
inputs = np.random.random((32, 10, 8))gru = keras.layers.GRU(4)output = gru(inputs)output.shape(32, 4)gru = keras.layers.GRU(4, return_sequences=True, return_state=True)whole_sequence_output, final_state = gru(inputs)whole_sequence_output.shape(32, 10, 4)final_state.shape(32, 4)
Args |
|---|
units
activation
tanh).
If you pass None, no activation is applied
(ie. "linear" activation: a(x) = x).
recurrent_activation
sigmoid).
If you pass None, no activation is applied
(ie. "linear" activation: a(x) = x).
use_bias
True), whether the layer
should use a bias vector.
kernel_initializer
kernel weights matrix,
used for the linear transformation of the inputs. Default:
"glorot_uniform".
recurrent_initializer
recurrent_kernel
weights matrix, used for the linear transformation of the recurrent
state. Default: "orthogonal".
bias_initializer
"zeros".
kernel_regularizer
kernel weights
matrix. Default: None.
recurrent_regularizer
recurrent_kernel weights matrix. Default: None.
bias_regularizer
None.
activity_regularizer
None.
kernel_constraint
kernel weights
matrix. Default: None.
recurrent_constraint
recurrent_kernel weights matrix. Default: None.
bias_constraint
None.
dropout
recurrent_dropout
seed
return_sequences
False.
return_state
False.
go_backwards
False).
If True, process the input sequence backwards and return the
reversed sequence.
stateful
False). If True, the last state
for each sample at index i in a batch will be used as initial
state for the sample of index i in the following batch.
unroll
False).
If True, the network will be unrolled,
else a symbolic loop will be used.
Unrolling can speed-up a RNN,
although it tends to be more memory-intensive.
Unrolling is only suitable for short sequences.
reset_after
False is "before",
True is "after" (default and cuDNN compatible).
use_cudnn
"auto" will
attempt to use cuDNN when feasible, and will fallback to the
default implementation if not.
Call arguments |
|---|
inputs
(batch, timesteps, feature).
mask
(samples, timesteps) indicating whether
a given timestep should be masked (optional).
An individual True entry indicates that the corresponding timestep
should be utilized, while a False entry indicates that the
corresponding timestep should be ignored. Defaults to None.
training
dropout or
recurrent_dropout is used (optional). Defaults to None.
initial_state
None causes creation
of zero-filled initial state tensors). Defaults to None.
Attributes |
|---|
activation
bias_constraint
bias_initializer
bias_regularizer
dropout
input
Only returns the tensor(s) corresponding to the first time the operation was called.
kernel_constraint
kernel_initializer
kernel_regularizer
output
Only returns the tensor(s) corresponding to the first time the operation was called.
recurrent_activation
recurrent_constraint
recurrent_dropout
recurrent_initializer
recurrent_regularizer
reset_after
units
use_bias
Methods
from_config
@classmethodfrom_config( config )
Creates a layer from its config.
This method is the reverse of get_config,
capable of instantiating the same layer from the config
dictionary. It does not handle layer connectivity
(handled by Network), nor weights (handled by set_weights).
| Args |
|---|
config
| Returns | |
|---|---|
| A layer instance. |
get_initial_state
get_initial_state(
batch_size
)
inner_loop
inner_loop(
sequences, initial_state, mask, training=False
)
reset_state
reset_state()
reset_states
reset_states()
symbolic_call
symbolic_call(
*args, **kwargs
)
View source on GitHub