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- // Copyright 2024 Tencent
- // SPDX-License-Identifier: BSD-3-Clause
-
- #include "testutil.h"
-
- static int test_requantize_pack1_oom(const ncnn::Mat& a, int scale_in_data_size, int scale_out_data_size, int bias_data_size, int activation_type, float alpha, float beta)
- {
- ncnn::ParamDict pd;
- pd.set(0, scale_in_data_size);
- pd.set(1, scale_out_data_size);
- pd.set(2, bias_data_size);
-
- ncnn::Mat activation_params(2);
- activation_params[0] = alpha;
- activation_params[1] = beta;
- pd.set(3, activation_type);
- pd.set(4, activation_params);
-
- std::vector<ncnn::Mat> weights(bias_data_size ? 3 : 2);
- weights[0] = RandomMat(scale_in_data_size);
- weights[1] = RandomMat(scale_out_data_size);
- if (bias_data_size)
- weights[2] = RandomMat(bias_data_size);
-
- Randomize(weights[0], 0.0001, 0.001);
- Randomize(weights[1], 10, 100);
-
- int flag = TEST_LAYER_DISABLE_AUTO_INPUT_CASTING | TEST_LAYER_DISABLE_AUTO_INPUT_PACKING;
- int ret = test_layer_oom("Requantize", pd, weights, a, flag);
- if (ret != 0)
- {
- fprintf(stderr, "test_requantize_pack1_oom failed a.dims=%d a=(%d %d %d) scale_in_data_size=%d scale_out_data_size=%d bias_data_size=%d act=%d actparams=[%f,%f]\n", a.dims, a.w, a.h, a.c, scale_in_data_size, scale_out_data_size, bias_data_size, activation_type, activation_params[0], activation_params[1]);
- }
-
- return ret;
- }
-
- static int test_requantize_pack1_oom(const ncnn::Mat& a, int scale_in_data_size, int scale_out_data_size, int bias_data_size)
- {
- return 0
- || test_requantize_pack1_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 0, 0.f, 0.f)
- || test_requantize_pack1_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 1, 0.f, 0.f)
- || test_requantize_pack1_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 2, RandomFloat(0, 1), 0.f)
- || test_requantize_pack1_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 3, RandomFloat(-1, 0), RandomFloat(0, 1))
- || test_requantize_pack1_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 4, 0.f, 0.f)
- || test_requantize_pack1_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 5, 0.f, 0.f);
- }
-
- static int test_requantize_pack8_oom(const ncnn::Mat& a, int scale_in_data_size, int scale_out_data_size, int bias_data_size, int activation_type, float alpha, float beta)
- {
- ncnn::ParamDict pd;
- pd.set(0, scale_in_data_size);
- pd.set(1, scale_out_data_size);
- pd.set(2, bias_data_size);
-
- ncnn::Mat activation_params(2);
- activation_params[0] = alpha;
- activation_params[1] = beta;
- pd.set(3, activation_type);
- pd.set(4, activation_params);
-
- std::vector<ncnn::Mat> weights(bias_data_size ? 3 : 2);
- weights[0] = RandomMat(scale_in_data_size);
- weights[1] = RandomMat(scale_out_data_size);
- if (bias_data_size)
- weights[2] = RandomMat(bias_data_size);
-
- Randomize(weights[0], 0.0001, 0.001);
- Randomize(weights[1], 10, 100);
-
- int flag = TEST_LAYER_DISABLE_AUTO_INPUT_CASTING | TEST_LAYER_ENABLE_FORCE_INPUT_PACK8;
- int ret = test_layer_oom("Requantize", pd, weights, a, flag);
- if (ret != 0)
- {
- fprintf(stderr, "test_requantize_pack8_oom failed a.dims=%d a=(%d %d %d) scale_in_data_size=%d scale_out_data_size=%d bias_data_size=%d act=%d actparams=[%f,%f]\n", a.dims, a.w, a.h, a.c, scale_in_data_size, scale_out_data_size, bias_data_size, activation_type, activation_params[0], activation_params[1]);
- }
-
- return ret;
- }
-
- static int test_requantize_pack8_oom(const ncnn::Mat& a, int scale_in_data_size, int scale_out_data_size, int bias_data_size)
- {
- return 0
- || test_requantize_pack8_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 0, 0.f, 0.f)
- || test_requantize_pack8_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 1, 0.f, 0.f)
- || test_requantize_pack8_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 2, RandomFloat(0, 1), 0.f)
- || test_requantize_pack8_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 3, RandomFloat(-1, 0), RandomFloat(0, 1))
- || test_requantize_pack8_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 4, 0.f, 0.f)
- || test_requantize_pack8_oom(a, scale_in_data_size, scale_out_data_size, bias_data_size, 5, 0.f, 0.f);
- }
-
- static int test_requantize_0()
- {
- return 0
- || test_requantize_pack1_oom(RandomIntMat(7, 9, 12), 12, 12, 12)
- || test_requantize_pack1_oom(RandomIntMat(3, 5, 13), 13, 13, 13);
- }
-
- static int test_requantize_1()
- {
- return 0
- || test_requantize_pack1_oom(RandomIntMat(17, 12), 12, 12, 12)
- || test_requantize_pack1_oom(RandomIntMat(19, 15), 15, 15, 15);
- }
-
- static int test_requantize_2()
- {
- return test_requantize_pack1_oom(RandomIntMat(124), 1, 1, 1);
- }
-
- static int test_requantize_3()
- {
- return 0
- || test_requantize_pack8_oom(RandomIntMat(5, 7, 24), 24, 24, 24)
- || test_requantize_pack8_oom(RandomIntMat(15, 24), 24, 24, 24)
- || test_requantize_pack8_oom(RandomIntMat(128), 1, 1, 1);
- }
-
- int main()
- {
- SRAND(7767517);
-
- return 0
- || test_requantize_0()
- || test_requantize_1()
- || test_requantize_2()
- || test_requantize_3();
- }
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