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XNNPACK Teamb455b122019-09-27 18:10:33 -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#include <algorithm>
7#include <cfloat>
8#include <cmath>
9#include <functional>
10#include <random>
11#include <vector>
12
13#include <cpuinfo.h>
14
15#include <benchmark/benchmark.h>
16#include "bench/conv.h"
17#include "bench/utils.h"
18#include <xnnpack/AlignedAllocator.h>
Marat Dukhan1dadbf72019-10-01 10:46:20 -070019#include <xnnpack/common.h>
XNNPACK Teamb455b122019-09-27 18:10:33 -070020#include <xnnpack/gemm.h>
21#include <xnnpack/im2col.h>
22#include <xnnpack/pack.h>
Marat Dukhaneeaa7bd2019-10-25 17:31:25 -070023#include <xnnpack/params-init.h>
XNNPACK Teamb455b122019-09-27 18:10:33 -070024#include <xnnpack/params.h>
XNNPACK Teamb455b122019-09-27 18:10:33 -070025
26
27static void Im2ColGEMMBenchmark(benchmark::State& state,
Frank Barchard95bebc92019-11-15 18:18:28 -080028 xnn_f32_gemm_ukernel_function f32_gemm,
XNNPACK Teamb455b122019-09-27 18:10:33 -070029 uint32_t mr, uint32_t nr, uint32_t kr, uint32_t sr)
30{
31 if (!cpuinfo_initialize()) {
32 state.SkipWithError("cpuinfo initialization failed");
33 return;
34 }
35
36 const size_t input_height = state.range(0);
37 const size_t input_width = state.range(1);
38 const size_t kernel_height = state.range(2);
39 const size_t kernel_width = state.range(3);
40 const size_t kernel_size = kernel_height * kernel_width;
41 const size_t padding_height = state.range(4);
42 const size_t padding_width = state.range(5);
43 const size_t subsampling = state.range(6);
44 const size_t dilation = state.range(7);
45 const size_t group_input_channels = state.range(8);
46 const size_t group_output_channels = state.range(9);
47
48 std::random_device random_device;
49 auto rng = std::mt19937(random_device());
50 auto f32rng = std::bind(std::uniform_real_distribution<float>(0.0f, 1.0f), rng);
51
52 const size_t effective_kernel_height = (kernel_height - 1) * dilation + 1;
53 const size_t effective_kernel_width = (kernel_width - 1) * dilation + 1;
54 const size_t padding_left = padding_width / 2;
55 const size_t padding_top = padding_height / 2;
56 const size_t output_height = (input_height + padding_height - effective_kernel_height) / subsampling + 1;
57 const size_t output_width = (input_width + padding_width - effective_kernel_width) / subsampling + 1;
58 const size_t output_size = output_height * output_width;
59
Marat Dukhan42323232019-10-23 02:09:02 -070060 const size_t nc_stride = benchmark::utils::RoundUp<size_t>(group_output_channels, nr);
61 const size_t kc_stride = benchmark::utils::RoundUp<size_t>(group_input_channels, kr);
XNNPACK Teamb455b122019-09-27 18:10:33 -070062
63 std::vector<float> a(input_height * input_width * group_input_channels);
64 std::generate(a.begin(), a.end(), std::ref(f32rng));
65 std::vector<float> k(group_output_channels * kernel_height * kernel_width * group_input_channels);
66 std::generate(k.begin(), k.end(), std::ref(f32rng));
67 std::vector<float> b(group_output_channels);
68 std::generate(b.begin(), b.end(), std::ref(f32rng));
69
70 const size_t w_elements = (kernel_size * kc_stride + 1) * nc_stride;
71 const size_t c_elements = output_size * group_output_channels;
72 const size_t num_buffers = 1 +
Marat Dukhan42323232019-10-23 02:09:02 -070073 benchmark::utils::DivideRoundUp<size_t>(benchmark::utils::GetMaxCacheSize(),
XNNPACK Teamb455b122019-09-27 18:10:33 -070074 sizeof(float) * (w_elements + c_elements));
75
76 std::vector<float, AlignedAllocator<float, 32>> w(w_elements * num_buffers);
77 std::fill(w.begin(), w.end(), 0.0f);
78 xnn_pack_f32_gemm_goi_w(1 /* groups */, group_output_channels, group_input_channels * kernel_size,
79 nr, kr, sr, k.data(), b.data(), w.data());
80 for (size_t n = 1; n < num_buffers; n++) {
81 std::copy(w.cbegin(), w.cbegin() + w_elements, w.begin() + n * w_elements);
82 }
83
84 std::vector<float> im2col_buffer(output_size * group_input_channels * kernel_size * group_output_channels);
85
86 std::vector<float> c(c_elements * num_buffers);
87 std::fill(c.begin(), c.end(), std::nanf(""));
88
89 xnn_f32_output_params output_params =
Marat Dukhaneeaa7bd2019-10-25 17:31:25 -070090 xnn_init_f32_output_params(-std::numeric_limits<float>::infinity(), +std::numeric_limits<float>::infinity());
XNNPACK Teamb455b122019-09-27 18:10:33 -070091
92 size_t buffer_index = 0;
93 for (auto _ : state) {
94 state.PauseTiming();
Marat Dukhan42323232019-10-23 02:09:02 -070095 benchmark::utils::PrefetchToL1(a.data(), a.size() * sizeof(float));
XNNPACK Teamb455b122019-09-27 18:10:33 -070096 buffer_index = (buffer_index + 1) % num_buffers;
97 state.ResumeTiming();
98
99 const float* inputData = a.data();
100 if (kernel_size != 1 || subsampling != 1) {
101 xnn_im2col_conv2d(
102 output_height, output_width,
103 kernel_height, kernel_width,
104 subsampling, subsampling,
105 dilation, dilation,
106 input_width, padding_top, padding_left,
107 group_input_channels * sizeof(float) /* input channels */,
108 group_input_channels * sizeof(float) /* input stride */,
109 a.data(), im2col_buffer.data());
110 inputData = im2col_buffer.data();
111 }
112
113 for (uint32_t m = 0; m < output_size; m += mr) {
114 const uint32_t mb = min(output_size - m, mr);
115 for (uint32_t n = 0; n < group_output_channels; n += nr) {
116 const uint32_t nb = min(group_output_channels - n, nr);
Frank Barchard95bebc92019-11-15 18:18:28 -0800117 f32_gemm(
XNNPACK Teamb455b122019-09-27 18:10:33 -0700118 mb, nb, kernel_size * group_input_channels * sizeof(float),
119 inputData + m * kernel_size * group_input_channels, kernel_size * group_input_channels * sizeof(float),
120 w.data() + (buffer_index * nc_stride + n) * (kernel_size * kc_stride + 1),
121 c.data() + (buffer_index * output_size + m) * group_output_channels + n, group_output_channels * sizeof(float), nr * sizeof(float),
122 &output_params);
123 }
124 }
125 }
126
127 state.counters["Freq"] = benchmark::utils::GetCurrentCpuFrequency();
128 state.counters["FLOPS"] = benchmark::Counter(
129 uint64_t(state.iterations()) * 2 *
130 output_height * output_width *
131 group_input_channels * group_output_channels *
132 kernel_height * kernel_width,
133 benchmark::Counter::kIsRate);
134}
135
136
Frank Barchard7e955972019-10-11 10:34:25 -0700137#if XNN_ARCH_ARM64 && XNN_ENABLE_ASSEMBLY
Frank Barchard95bebc92019-11-15 18:18:28 -0800138 static void f32_gemm_4x8__aarch64_neonfma_cortex_a75(benchmark::State& state, const char* net) {
XNNPACK Teamb455b122019-09-27 18:10:33 -0700139 Im2ColGEMMBenchmark(state, xnn_f32_gemm_ukernel_4x8__aarch64_neonfma_cortex_a75, 4, 8, 1, 1);
140 }
141
Frank Barchard95bebc92019-11-15 18:18:28 -0800142 BENCHMARK_CONV(f32_gemm_4x8__aarch64_neonfma_cortex_a75)
Marat Dukhan1dadbf72019-10-01 10:46:20 -0700143#endif // XNN_ARCH_ARM64
XNNPACK Teamb455b122019-09-27 18:10:33 -0700144
Marat Dukhan1dadbf72019-10-01 10:46:20 -0700145#if !XNN_ARCH_WASM && !XNN_ARCH_ASMJS
Frank Barchard95bebc92019-11-15 18:18:28 -0800146 static void f32_gemm_6x8__psimd_loadsplat(benchmark::State& state, const char* net) {
XNNPACK Teamb455b122019-09-27 18:10:33 -0700147 Im2ColGEMMBenchmark(state, xnn_f32_gemm_ukernel_6x8__psimd_loadsplat, 6, 8, 1, 1);
148 }
149
Frank Barchard95bebc92019-11-15 18:18:28 -0800150 BENCHMARK_CONV(f32_gemm_6x8__psimd_loadsplat)
Marat Dukhan1dadbf72019-10-01 10:46:20 -0700151#endif // !XNN_ARCH_WASM && !XNN_ARCH_ASMJS
XNNPACK Teamb455b122019-09-27 18:10:33 -0700152
Frank Barchard95bebc92019-11-15 18:18:28 -0800153static void f32_gemm_2x4__scalar(benchmark::State& state, const char* net) {
XNNPACK Teamb455b122019-09-27 18:10:33 -0700154 Im2ColGEMMBenchmark(state, xnn_f32_gemm_ukernel_2x4__scalar, 2, 4, 1, 1);
155}
156
Frank Barchard95bebc92019-11-15 18:18:28 -0800157static void f32_gemm_4x4__scalar(benchmark::State& state, const char* net) {
XNNPACK Teamb455b122019-09-27 18:10:33 -0700158 Im2ColGEMMBenchmark(state, xnn_f32_gemm_ukernel_4x4__scalar, 4, 4, 1, 1);
159}
160
Frank Barchard95bebc92019-11-15 18:18:28 -0800161BENCHMARK_CONV(f32_gemm_2x4__scalar)
162BENCHMARK_CONV(f32_gemm_4x4__scalar)
XNNPACK Teamb455b122019-09-27 18:10:33 -0700163
164
165#ifndef XNNPACK_BENCHMARK_NO_MAIN
166BENCHMARK_MAIN();
167#endif