Exemplo n.º 1
0
    def test_layer_creation(self):
        vocab_size = 31
        embedding_width = 27
        test_layer = on_device_embedding.OnDeviceEmbedding(
            vocab_size=vocab_size, embedding_width=embedding_width)
        # Create a 2-dimensional input (the first dimension is implicit).
        sequence_length = 23
        input_tensor = tf.keras.Input(shape=(sequence_length), dtype=tf.int32)
        output_tensor = test_layer(input_tensor)

        # The output should be the same as the input, save that it has an extra
        # embedding_width dimension on the end.
        expected_output_shape = [None, sequence_length, embedding_width]
        self.assertEqual(expected_output_shape, output_tensor.shape.as_list())
        self.assertEqual(output_tensor.dtype, tf.float32)
Exemplo n.º 2
0
    def test_layer_invocation(self):
        vocab_size = 31
        embedding_width = 27
        test_layer = on_device_embedding.OnDeviceEmbedding(
            vocab_size=vocab_size, embedding_width=embedding_width)
        # Create a 2-dimensional input (the first dimension is implicit).
        sequence_length = 23
        input_tensor = tf.keras.Input(shape=(sequence_length), dtype=tf.int32)
        output_tensor = test_layer(input_tensor)

        # Create a model from the test layer.
        model = tf.keras.Model(input_tensor, output_tensor)

        # Invoke the model on test data. We can't validate the output data itself
        # (the NN is too complex) but this will rule out structural runtime errors.
        batch_size = 3
        input_data = np.random.randint(vocab_size,
                                       size=(batch_size, sequence_length))
        output = model.predict(input_data)
        self.assertEqual(tf.float32, output.dtype)