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Create 3D attention mask from a 2D tensor mask.
tfm.nlp.layers.SelfAttentionMask(
trainable=True, name=None, dtype=None, dynamic=False, **kwargs
)
inputs[0]: from_tensor: 2D or 3D Tensor of shape [batch_size, from_seq_length, ...]. inputs[1]: to_mask: int32 Tensor of shape [batch_size, to_seq_length].
Returns | |
---|---|
float Tensor of shape [batch_size, from_seq_length, to_seq_length]. |
Methods
call
call(
inputs, to_mask=None
)
This is where the layer's logic lives.
The call()
method may not create state (except in its first
invocation, wrapping the creation of variables or other resources in
tf.init_scope()
). It is recommended to create state, including
tf.Variable
instances and nested Layer
instances,
in __init__()
, or in the build()
method that is
called automatically before call()
executes for the first time.
Args | |
---|---|
inputs
|
Input tensor, or dict/list/tuple of input tensors.
The first positional inputs argument is subject to special rules:
|
*args
|
Additional positional arguments. May contain tensors, although this is not recommended, for the reasons above. |
**kwargs
|
Additional keyword arguments. May contain tensors, although
this is not recommended, for the reasons above.
The following optional keyword arguments are reserved:
training : Boolean scalar tensor of Python boolean indicating
whether the call is meant for training or inference.mask : Boolean input mask. If the layer's call() method takes a
mask argument, its default value will be set to the mask
generated for inputs by the previous layer (if input did come
from a layer that generated a corresponding mask, i.e. if it came
from a Keras layer with masking support).
|
Returns | |
---|---|
A tensor or list/tuple of tensors. |