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|
MultiHeadAttention layer.
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 based on "Attention
is all you Need". 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,
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.
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)
Arguments | |
|---|---|
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 key feature dim. |
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: QueryTensorof shape[B, T, dim].value: ValueTensorof shape[B, S, dim].key: Optional keyTensorof shape[B, S, dim]. If not given, will usevaluefor bothkeyandvalue, which is the most common case.attention_mask: a boolean mask of shape[B, T, S], that prevents attention to certain positions.return_attention_scores: A boolean to indicate whether the output should be attention output if True, or (attention_output, attention_scores) 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). Defaults to either using the training mode of the parent layer/model, or False (inference) if there is no parent layer.
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 project to the shape specified by output_shape.
|
attention_scores
|
[Optional] multi-head attention coeffients over attention axes. |
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