* Copyright (c) 2025 Huawei Technologies Co., Ltd.
* This program is free software, you can redistribute it and/or modify it under the terms and conditions of
* CANN Open Software License Agreement Version 2.0 (the "License").
* Please refer to the License for details. You may not use this file except in compliance with the License.
* THIS SOFTWARE IS PROVIDED ON AN "AS IS" BASIS, WITHOUT WARRANTIES OF ANY KIND, EITHER EXPRESS OR IMPLIED,
* INCLUDING BUT NOT LIMITED TO NON-INFRINGEMENT, MERCHANTABILITY, OR FITNESS FOR A PARTICULAR PURPOSE.
* See LICENSE in the root of the software repository for the full text of the License.
*/
#include "atan_aicpu.h"
#include <unsupported/Eigen/CXX11/Tensor>
#include "cpu_kernel_utils.h"
#include "cpu_types.h"
#include "log.h"
#include "status.h"
#include "utils/kernel_util.h"
namespace {
const std::uint32_t kAtanInputNum{1};
const std::uint32_t kAtanOutputNum{1};
const char *const kAtan{"Atan"};
}
namespace aicpu {
namespace detail {
template <typename T>
inline auto ScalarAtan(const T x) -> T {
return std::atan(x);
}
template <>
inline Eigen::half ScalarAtan(const Eigen::half x) {
const Eigen::half val{
static_cast<Eigen::half>(std::atan(static_cast<std::float_t>(x)))};
return Eigen::half_impl::isnan(val) ? Eigen::half{0.0f} : val;
}
inline std::uint32_t ParallelFor(
const CpuKernelContext &ctx, std::int64_t total, std::int64_t per_unit_size,
const std::function<void(std::int64_t, std::int64_t)> &work) {
constexpr std::int64_t KParallelNum = 64 * 1024;
if (total > KParallelNum) {
return aicpu::CpuKernelUtils::ParallelFor(ctx, total, per_unit_size, work);
} else {
work(0, total);
return KERNEL_STATUS_OK;
}
}
template <typename T>
inline std::uint32_t ComputeAtanKernel(const CpuKernelContext &ctx) {
T *input0{static_cast<T *>(ctx.Input(0)->GetData())};
T *output{static_cast<T *>(ctx.Output(0)->GetData())};
std::int64_t total{ctx.Input(0)->NumElements()};
std::uint32_t cores{aicpu::CpuKernelUtils::GetCPUNum(ctx)};
std::int64_t per_unit_size{total / std::min(std::max(1L, cores - 2L), total)};
return ParallelFor(ctx, total, per_unit_size,
[&](std::int64_t begin, std::int64_t end) {
std::transform(input0 + begin, input0 + end,
output + begin, ScalarAtan<T>);
});
}
template <typename T>
inline std::uint32_t ComputeAtan(const CpuKernelContext &ctx) {
std::uint32_t result{ComputeAtanKernel<T>(ctx)};
if (result != KERNEL_STATUS_OK) {
KERNEL_LOG_ERROR("Atan compute failed.");
}
return result;
}
inline std::uint32_t ExtraCheckAtan(const CpuKernelContext &ctx) {
if (ctx.Input(0)->GetData() == nullptr) {
KERNEL_LOG_ERROR("Get input data failed.");
return KERNEL_STATUS_PARAM_INVALID;
}
if (ctx.Output(0)->GetData() == nullptr) {
KERNEL_LOG_ERROR("Get output data failed.");
return KERNEL_STATUS_PARAM_INVALID;
}
if (ctx.Input(0)->GetDataType() != ctx.Output(0)->GetDataType()) {
KERNEL_LOG_ERROR(
"The data type of the input [%s] need be the same as the output [%s].",
DTypeStr(ctx.Input(0)->GetDataType()).c_str(),
DTypeStr(ctx.Output(0)->GetDataType()).c_str());
return KERNEL_STATUS_PARAM_INVALID;
}
if (ctx.Input(0)->GetDataSize() != ctx.Output(0)->GetDataSize()) {
KERNEL_LOG_ERROR(
"The data size of the input [%lu] need be the same as the output [%lu].",
ctx.Input(0)->GetDataSize(), ctx.Output(0)->GetDataSize());
return KERNEL_STATUS_PARAM_INVALID;
}
return KERNEL_STATUS_OK;
}
inline std::uint32_t CheckAtan(CpuKernelContext &ctx, std::uint32_t inputs_num,
std::uint32_t outputs_num) {
return NormalCheck(ctx, inputs_num, outputs_num)
? KERNEL_STATUS_PARAM_INVALID
: ExtraCheckAtan(ctx);
}
inline std::uint32_t ComputeAtan(const CpuKernelContext &ctx) {
DataType input_type{ctx.Input(0)->GetDataType()};
switch (input_type) {
case DT_FLOAT16:
return ComputeAtan<Eigen::half>(ctx);
case DT_FLOAT:
return ComputeAtan<std::float_t>(ctx);
case DT_DOUBLE:
return ComputeAtan<std::double_t>(ctx);
default:
KERNEL_LOG_ERROR("Unsupported input data type [%s].",
DTypeStr(input_type).c_str());
return KERNEL_STATUS_PARAM_INVALID;
}
}
}
std::uint32_t AtanCpuKernel::Compute(CpuKernelContext &ctx) {
return detail::CheckAtan(ctx, kAtanInputNum, kAtanOutputNum)
? KERNEL_STATUS_PARAM_INVALID
: detail::ComputeAtan(ctx);
}
REGISTER_CPU_KERNEL(kAtan, AtanCpuKernel);
}