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# SPDX-FileCopyrightText: Copyright 2024, Arm Limited and/or its affiliates.
# SPDX-License-Identifier: Apache-2.0
"""Tests for module mlia.nn.rewrite.library.helper_functions."""
from __future__ import annotations
from contextlib import ExitStack as does_not_raise
from typing import Any
import numpy as np
import pytest
from keras.api._v2 import keras # Temporary workaround for now: MLIA-1107
from mlia.nn.rewrite.library.helper_functions import ACTIVATION_FUNCTION_LIST
from mlia.nn.rewrite.library.helper_functions import compute_conv2d_parameters
from mlia.nn.rewrite.library.helper_functions import get_activation_function
def compute_conv_output(
input_data: np.ndarray, input_shape: np.ndarray, conv_parameters: dict[str, Any]
) -> np.ndarray:
"""Compute the output of a conv layer for testing."""
test_model = keras.Sequential(
[
keras.layers.InputLayer(input_shape=input_shape),
keras.layers.Conv2D(**conv_parameters),
]
)
output = test_model(input_data)
return np.array(output.shape[1:])
@pytest.mark.parametrize(
"input_shape, output_shape, kernel_size",
[
(np.array([32, 32, 3]), np.array([16, 16, 3]), [3, 3]),
(np.array([32, 32, 3]), np.array([8, 8, 3]), [3, 3]),
(np.array([32, 32, 3]), np.array([8, 16, 3]), [3, 3]),
(np.array([25, 10, 3]), np.array([13, 5, 3]), [3, 3]),
(np.array([25, 10, 3]), np.array([7, 5, 3]), [3, 3]),
(np.array([25, 10, 3]), np.array([6, 4, 3]), [3, 3]),
(np.array([25, 10, 3]), np.array([5, 5, 3]), [3, 3]),
(np.array([32, 32, 3]), np.array([16, 16, 3]), [1, 3]),
(np.array([32, 32, 3]), np.array([16, 16, 3]), [1, 1]),
(np.array([32, 32, 3]), np.array([16, 16, 3]), [5, 5]),
],
)
def test_compute_conv2d_parameters(
input_shape: np.ndarray, output_shape: np.ndarray, kernel_size: list[int]
) -> None:
"""Test to check compute_conv2d_parameters works as expected."""
conv_parameters = compute_conv2d_parameters(
input_shape=input_shape,
output_shape=output_shape,
kernel_size_input=kernel_size,
)
computed_output_shape = compute_conv_output(
np.random.rand(1, *input_shape), input_shape, conv_parameters
)
assert np.equal(computed_output_shape, output_shape).all()
@pytest.mark.parametrize(
"activation, expected_function_type, expected_extra_args, expected_error",
[
("relu", keras.layers.ReLU, {}, does_not_raise()),
("relu6", keras.layers.ReLU, {"max_value": 6}, does_not_raise()),
("none", None, {}, does_not_raise()),
(
"wrong_key",
keras.layers.Identity,
{},
pytest.raises(
KeyError,
match=(
"Expected activation function to be "
rf"in \{ACTIVATION_FUNCTION_LIST}\, found wrong_key"
),
),
),
],
)
def test_get_activation_functions(
activation: str,
expected_function_type: type,
expected_extra_args: dict,
expected_error: Any,
) -> None:
"""
Check the get_activation_function returns
the expected layer and extra arguments.
"""
with expected_error:
activation_function, activation_function_extra_args = get_activation_function(
activation
)
if activation_function:
assert isinstance(
activation_function(**activation_function_extra_args),
expected_function_type,
)
else:
assert activation_function is None
assert expected_extra_args == activation_function_extra_args
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