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Marat Dukhan97579532019-10-18 16:40:39 -07001// Copyright 2019 Google LLC
2//
3// This source code is licensed under the BSD-style license found in the
4// LICENSE file in the root directory of this source tree.
5
6#pragma once
7
8#include <gtest/gtest.h>
9
10#include <algorithm>
11#include <cassert>
12#include <cstddef>
13#include <cstdlib>
14#include <functional>
15#include <random>
16#include <vector>
17
18#include <xnnpack.h>
19#include <xnnpack/params.h>
20
21
22class RAddStoreExpMinusMaxMicrokernelTester {
23 public:
Marat Dukhan4c4eb002019-12-08 21:27:49 -080024 inline RAddStoreExpMinusMaxMicrokernelTester& elements(size_t elements) {
25 assert(elements != 0);
26 this->elements_ = elements;
Marat Dukhan97579532019-10-18 16:40:39 -070027 return *this;
28 }
29
Marat Dukhan4c4eb002019-12-08 21:27:49 -080030 inline size_t elements() const {
31 return this->elements_;
Marat Dukhan97579532019-10-18 16:40:39 -070032 }
33
34 inline RAddStoreExpMinusMaxMicrokernelTester& iterations(size_t iterations) {
35 this->iterations_ = iterations;
36 return *this;
37 }
38
39 inline size_t iterations() const {
40 return this->iterations_;
41 }
42
Marat Dukhan4c4eb002019-12-08 21:27:49 -080043 void Test(xnn_f32_raddstoreexpminusmax_ukernel_function raddstoreexpminusmax) const {
Marat Dukhan97579532019-10-18 16:40:39 -070044 std::random_device random_device;
45 auto rng = std::mt19937(random_device());
46 // Choose such range that expf(x[i]) overflows, but expf(x[i] - x_max) doesn't.
47 // However, the range is still narrow enough that double-precision exp doesn't overflow.
48 auto f32rng = std::bind(std::uniform_real_distribution<float>(90.0f, 100.0f), rng);
49
Marat Dukhan4c4eb002019-12-08 21:27:49 -080050 std::vector<float> x(elements() + XNN_EXTRA_BYTES / sizeof(float));
51 std::vector<float> y(elements());
52 std::vector<double> y_ref(elements());
Marat Dukhan97579532019-10-18 16:40:39 -070053 for (size_t iteration = 0; iteration < iterations(); iteration++) {
54 std::generate(x.begin(), x.end(), std::ref(f32rng));
55 std::fill(y.begin(), y.end(), std::nanf(""));
56
57 // Compute reference results.
58 double sum_ref = 0.0f;
Marat Dukhan4c4eb002019-12-08 21:27:49 -080059 const float x_max = *std::max_element(x.begin(), x.begin() + elements());
60 for (size_t i = 0; i < elements(); i++) {
Marat Dukhan97579532019-10-18 16:40:39 -070061 const double y_ref_value = exp(double(x[i]) - double(x_max));
62 y_ref[i] = y_ref_value;
63 sum_ref += y_ref_value;
64 }
65
66 // Call optimized micro-kernel.
67 float sum = std::nanf("");
Marat Dukhan4c4eb002019-12-08 21:27:49 -080068 raddstoreexpminusmax(elements() * sizeof(float), x.data(), y.data(), &sum, x_max);
Marat Dukhan97579532019-10-18 16:40:39 -070069
70 // Verify results.
Marat Dukhan4c4eb002019-12-08 21:27:49 -080071 for (size_t i = 0; i < elements(); i++) {
Marat Dukhan97579532019-10-18 16:40:39 -070072 ASSERT_NEAR(y_ref[i], double(y[i]), std::abs(y_ref[i]) * 1.0e-6)
Marat Dukhan4c4eb002019-12-08 21:27:49 -080073 << "i = " << i << ", elements = " << elements() << ", x_max = " << x_max;
Marat Dukhan97579532019-10-18 16:40:39 -070074 }
75 ASSERT_NEAR(sum_ref, double(sum), std::abs(sum_ref) * 1.0e-6)
Marat Dukhan4c4eb002019-12-08 21:27:49 -080076 << "elements = " << elements() << ", x_max = " << x_max;
Marat Dukhan97579532019-10-18 16:40:39 -070077 }
78 }
79
80 private:
Marat Dukhan4c4eb002019-12-08 21:27:49 -080081 size_t elements_{1};
Marat Dukhan97579532019-10-18 16:40:39 -070082 size_t iterations_{15};
83};