MultiHeadAttention layer.
Inherits From: Layer
, Module
View aliases
Compat aliases for migration
See
Migration guide for
more details.
`tf.compat.v1.keras.layers.MultiHeadAttention`
tf.keras.layers.MultiHeadAttention(
num_heads,
key_dim,
value_dim=None,
dropout=0.0,
use_bias=True,
output_shape=None,
attention_axes=None,
kernel_initializer='glorot_uniform',
bias_initializer='zeros',
kernel_regularizer=None,
bias_regularizer=None,
activity_regularizer=None,
kernel_constraint=None,
bias_constraint=None,
**kwargs
)
This is an implementation of multi-headed attention as described in the
paper "Attention is all you Need" (Vaswani et al., 2017).
If query
, key,
value
are the same, then
this is self-attention. Each timestep in query
attends to the
corresponding sequence in key
, and returns a fixed-width vector.
This layer first projects query
, key
and value
. These are
(effectively) a list of tensors of length num_attention_heads
, where the
corresponding shapes are (batch_size, <query dimensions>, key_dim)
,
(batch_size, <key/value dimensions>, key_dim)
,
(batch_size, <key/value dimensions>, value_dim)
.
Then, the query and key tensors are dot-producted and scaled. These are
softmaxed to obtain attention probabilities. The value tensors are then
interpolated by these probabilities, then concatenated back to a single
tensor.
Finally, the result tensor with the last dimension as value_dim can take an
linear projection and return.
When using MultiHeadAttention
inside a custom layer, the custom layer must
implement its own build()
method and call MultiHeadAttention
's
_build_from_signature()
there.
This enables weights to be restored correctly when the model is loaded.
Examples:
Performs 1D cross-attention over two sequence inputs with an attention mask.
Returns the additional attention weights over heads.
layer = MultiHeadAttention(num_heads=2, key_dim=2)
target = tf.keras.Input(shape=[8, 16])
source = tf.keras.Input(shape=[4, 16])
output_tensor, weights = layer(target, source,
return_attention_scores=True)
print(output_tensor.shape)
(None, 8, 16)
print(weights.shape)
(None, 2, 8, 4)
Performs 2D self-attention over a 5D input tensor on axes 2 and 3.
layer = MultiHeadAttention(
num_heads=2, key_dim=2, attention_axes=(2, 3))
input_tensor = tf.keras.Input(shape=[5, 3, 4, 16])
output_tensor = layer(input_tensor, input_tensor)
print(output_tensor.shape)
(None, 5, 3, 4, 16)
Args |
num_heads
|
Number of attention heads.
|
key_dim
|
Size of each attention head for query and key.
|
value_dim
|
Size of each attention head for value.
|
dropout
|
Dropout probability.
|
use_bias
|
Boolean, whether the dense layers use bias vectors/matrices.
|
output_shape
|
The expected shape of an output tensor, besides the batch
and sequence dims. If not specified, projects back to the query
feature dim (the query input's last dimension).
|
attention_axes
|
axes over which the attention is applied. None means
attention over all axes, but batch, heads, and features.
|
kernel_initializer
|
Initializer for dense layer kernels.
|
bias_initializer
|
Initializer for dense layer biases.
|
kernel_regularizer
|
Regularizer for dense layer kernels.
|
bias_regularizer
|
Regularizer for dense layer biases.
|
activity_regularizer
|
Regularizer for dense layer activity.
|
kernel_constraint
|
Constraint for dense layer kernels.
|
bias_constraint
|
Constraint for dense layer kernels.
|
Call arguments |
query
|
Query Tensor of shape (B, T, dim) .
|
value
|
Value Tensor of shape (B, S, dim) .
|
key
|
Optional key Tensor of shape (B, S, dim) . If not given, will
use value for both key and value , which is the most common
case.
|
attention_mask
|
a boolean mask of shape (B, T, S) , that prevents
attention to certain positions. The boolean mask specifies which
query elements can attend to which key elements, 1 indicates
attention and 0 indicates no attention. Broadcasting can happen for
the missing batch dimensions and the head dimension.
|
return_attention_scores
|
A boolean to indicate whether the output should
be (attention_output, attention_scores) if True , or
attention_output if False . Defaults to False .
|
training
|
Python boolean indicating whether the layer should behave in
training mode (adding dropout) or in inference mode (no dropout).
Will go with either using the training mode of the parent
layer/model, or False (inference) if there is no parent layer.
|
use_causal_mask
|
A boolean to indicate whether to apply a causal mask to
prevent tokens from attending to future tokens (e.g., used in a
decoder Transformer).
|
Returns |
attention_output
|
The result of the computation, of shape (B, T, E) ,
where T is for target sequence shapes and E is the query input
last dimension if output_shape is None . Otherwise, the
multi-head outputs are projected to the shape specified by
output_shape .
|
attention_scores
|
[Optional] multi-head attention coefficients over
attention axes.
|