You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.

156 lines
5.2 KiB

// Copyright 2019 Google LLC
//
// This source code is licensed under the BSD-style license found in the
// LICENSE file in the root directory of this source tree.
#include <algorithm>
#include <cfloat>
#include <cmath>
#include <functional>
#include <memory>
#include <numeric>
#include <random>
#include <vector>
#include <cpuinfo.h>
#include <pthreadpool.h>
#include <benchmark/benchmark.h>
#include <fp16/fp16.h>
#include "bench/utils.h"
#include <xnnpack/AlignedAllocator.h>
#include <xnnpack/common.h>
#include <xnnpack/math-stubs.h>
struct ComputeErrorContext {
const float* input;
const float* output_m;
const float* output_e;
float* error;
};
static void ComputeError(
struct ComputeErrorContext* context,
size_t start,
size_t range)
{
const float* input = context->input;
const float* output_m = context->output_m;
const float* output_e = context->output_e;
float* error = context->error;
const double inv_ulp = 0x1.0p+24;
for (size_t i = start; i < start + range; i++) {
const double output_ref = std::exp(double(input[i]));
int output_ref_e;
const double output_ref_m = std::frexp(output_ref, &output_ref_e);
const double ulp_error = std::abs(output_ref_m - std::ldexp(double(output_m[i]), int(output_e[i]) - output_ref_e)) * inv_ulp;
error[i] = float(ulp_error);
}
}
static void ExtExpError(benchmark::State& state,
xnn_f32_ext_unary_math_function extexp,
benchmark::utils::IsaCheckFunction isa_check = nullptr)
{
if (!cpuinfo_initialize()) {
state.SkipWithError("failed cpuinfo init");
return;
}
if (isa_check && !isa_check(state)) {
return;
}
// The smallest x for which exp(x) (double-precision) is normal (-0x1.6232BCp9f).
const uint32_t min_input = 0xC431195E;
// The largest x for which exp(x) (double-precision) is finite (0x1.62E42Ep9).
const uint32_t max_input = 0x44317217;
// Number of elements in one block of inputs/outputs.
// Combining multiple elements in a block reduce function call overhead.
const size_t block_size = 16384;
// Number of elements in one parallelization tile. Worker threads process this many elements in each task.
const size_t tile_size = 64;
uint32_t num_threads = cpuinfo_get_cores_count();
#if XNN_ARCH_ARM || XNN_ARCH_ARM64
// Use all cores except for the least performant cluster
if (cpuinfo_get_clusters_count() > 1) {
num_threads -= cpuinfo_get_cluster(cpuinfo_get_clusters_count() - 1)->core_count;
}
#endif // XNN_ARCH_ARM || XNN_ARCH_ARM64
std::unique_ptr<pthreadpool, decltype(&pthreadpool_destroy)> threadpool(
pthreadpool_create(num_threads), pthreadpool_destroy);
std::vector<float, AlignedAllocator<float, 64>> x(block_size);
std::vector<float, AlignedAllocator<float, 64>> m(block_size);
std::vector<float, AlignedAllocator<float, 64>> e(block_size);
std::vector<float> ulp_error(block_size);
float max_ulp_error = 0.0f;
ComputeErrorContext context;
context.input = x.data();
context.output_m = m.data();
context.output_e = e.data();
context.error = ulp_error.data();
for (auto _ : state) {
for (uint32_t n = min_input; int32_t(n) < 0; n -= block_size) {
for (uint32_t i = 0; i < block_size; i++) {
x[i] = fp32_from_bits(std::max<uint32_t>(n - i, 0x80000000));
}
std::fill(m.begin(), m.end(), std::nanf(""));
std::fill(e.begin(), e.end(), std::nanf(""));
extexp(block_size * sizeof(float), x.data(), m.data(), e.data());
pthreadpool_parallelize_1d_tile_1d(
threadpool.get(),
reinterpret_cast<pthreadpool_task_1d_tile_1d_t>(ComputeError),
static_cast<void*>(&context),
block_size, tile_size, 0 /* flags */);
max_ulp_error = std::accumulate(ulp_error.cbegin(), ulp_error.cend(), max_ulp_error,
static_cast<const float& (*)(const float&, const float&)>(std::max<float>));
}
for (uint32_t n = 0; n < max_input; n += block_size) {
for (uint32_t i = 0; i < block_size; i++) {
x[i] = fp32_from_bits(std::min<uint32_t>(n + i, max_input));
}
std::fill(m.begin(), m.end(), std::nanf(""));
std::fill(e.begin(), e.end(), std::nanf(""));
extexp(block_size * sizeof(float), x.data(), m.data(), e.data());
pthreadpool_parallelize_1d_tile_1d(
threadpool.get(),
reinterpret_cast<pthreadpool_task_1d_tile_1d_t>(ComputeError),
static_cast<void*>(&context),
block_size, tile_size, 0 /* flags */);
max_ulp_error = std::accumulate(ulp_error.cbegin(), ulp_error.cend(), max_ulp_error,
static_cast<const float& (*)(const float&, const float&)>(std::max<float>));
}
}
state.counters["ULPERROR"] = benchmark::Counter(max_ulp_error);
}
#if XNN_ARCH_X86 || XNN_ARCH_X86_64
BENCHMARK_CAPTURE(ExtExpError, avx512f_p5,
xnn_math_f32_extexp__avx512f_p5,
benchmark::utils::CheckAVX512F)
->Unit(benchmark::kMillisecond)
->Iterations(1);
BENCHMARK_CAPTURE(ExtExpError, avx2_p5,
xnn_math_f32_extexp__avx2_p5,
benchmark::utils::CheckAVX2)
->Unit(benchmark::kMillisecond)
->Iterations(1);
#endif // XNN_ARCH_X86 || XNN_ARCH_X86_64
#ifndef XNNPACK_BENCHMARK_NO_MAIN
BENCHMARK_MAIN();
#endif