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* convnd_fwd fp16 example * update example * update example * update instance * updating refernce conv * update reference conv * update conv fwd profiler * update conv 1d and 3d instance * update include path * clean * update profiler for conv bwd data and weight * update conv bwd weight * clean * update conv example * update profiler for conv bwd weight * update ckprofiler for conv bwd data * fix reference conv bwd data bug; update conv bwd data test * update examples * fix initialization issue * update test for conv fwd * clean * clean * remove test case too sensitive to error threshhold * fix test * clean * fix build * adding conv multiple d * adding conv multiple D * add matrix padder * add gemm padding to convnd * adding group conv * update gemm multi-d * refactor * refactor * refactor * clean * clean * refactor * refactor * reorg * add ds * add bias * clean * add G * adding group * adding group * adding group * update Tensor * clean * update example * update DeviceGemmMultipleD_Xdl_CShuffle * update conv bwd-data and bwd-weight * upate contraction example * update gemm and batch gemm with e permute * fix example build * instance for grouped conv1d * update example * adding group conv instance * update gemm bilinear instance * update gemm+add+add+fastgelu instance * update profiler * update profiler * update test * update test and client example * clean * add grouped conv into profiler * update profiler * clean * add test grouped conv, update all conv test to gtest * update test
506 lines
20 KiB
C++
506 lines
20 KiB
C++
// SPDX-License-Identifier: MIT
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// Copyright (c) 2018-2022, Advanced Micro Devices, Inc. All rights reserved.
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#pragma once
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#include "ck/utility/reduction_enums.hpp"
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#include "ck/tensor_operation/gpu/device/device_reduce.hpp"
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#include "ck/library/utility/check_err.hpp"
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#include "ck/library/tensor_operation_instance/gpu/reduce/device_reduce_instance.hpp"
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#include "ck/library/utility/device_memory.hpp"
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#include "ck/library/utility/host_reduction.hpp"
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#include "ck/library/utility/host_common_util.hpp"
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#include "ck/library/utility/host_tensor_generator.hpp"
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namespace ck {
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namespace tensor_operation {
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namespace device {
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namespace instance {
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template <int Rank, int NumReduceDim, int ReduceOpId, bool PropagateNan, bool UseIndex>
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struct ReduceDescription
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{
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static constexpr int Rank_ = Rank;
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static constexpr int NumReduceDim_ = NumReduceDim;
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static constexpr int ReduceOpId_ = ReduceOpId;
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static constexpr int PropagateNan_ = PropagateNan;
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static constexpr int UseIndex_ = UseIndex;
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};
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using reduce_description_instances =
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std::tuple<ReduceDescription<4, 3, 0, false, false>, // for ADD
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ReduceDescription<4, 4, 0, false, false>,
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ReduceDescription<4, 1, 0, false, false>,
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ReduceDescription<2, 1, 0, false, false>,
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ReduceDescription<4, 3, 5, false, false>, // for AVG
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ReduceDescription<4, 4, 5, false, false>,
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ReduceDescription<4, 1, 5, false, false>,
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ReduceDescription<2, 1, 5, false, false>,
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ReduceDescription<4, 3, 7, false, false>, // for NORM2
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ReduceDescription<4, 4, 7, false, false>,
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ReduceDescription<4, 1, 7, false, false>,
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ReduceDescription<2, 1, 7, false, false>,
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ReduceDescription<4, 3, 2, false, false>, // for MIN
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ReduceDescription<4, 4, 2, false, false>,
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ReduceDescription<4, 1, 2, false, false>,
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ReduceDescription<2, 1, 2, false, false>,
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ReduceDescription<4, 3, 3, false, false>, // for MAX
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ReduceDescription<4, 4, 3, false, false>,
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ReduceDescription<4, 1, 3, false, false>,
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ReduceDescription<2, 1, 3, false, false>,
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ReduceDescription<4, 3, 4, false, false>, // for AMAX
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ReduceDescription<4, 4, 4, false, false>,
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ReduceDescription<4, 1, 4, false, false>,
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ReduceDescription<2, 1, 4, false, false>,
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ReduceDescription<4, 3, 2, false, true>, // for MIN
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ReduceDescription<4, 4, 2, false, true>,
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ReduceDescription<4, 1, 2, false, true>,
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ReduceDescription<2, 1, 2, false, true>,
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ReduceDescription<4, 3, 3, false, true>, // for MAX
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ReduceDescription<4, 4, 3, false, true>,
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ReduceDescription<4, 1, 3, false, true>,
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ReduceDescription<2, 1, 3, false, true>,
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ReduceDescription<4, 3, 4, false, true>, // for AMAX
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ReduceDescription<4, 4, 4, false, true>,
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ReduceDescription<4, 1, 4, false, true>,
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ReduceDescription<2, 1, 4, false, true>>;
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template <typename DescriptionType>
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bool description_match(const DescriptionType& description,
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int Rank,
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const std::vector<int>& reduceDims,
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ReduceTensorOp ReduceOpId,
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bool PropagateNan,
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bool UseIndex)
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{
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if(description.Rank_ != Rank || description.ReduceOpId_ != static_cast<int>(ReduceOpId) ||
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description.PropagateNan_ != static_cast<int>(PropagateNan) ||
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description.UseIndex_ != static_cast<int>(UseIndex))
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return (false);
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if(DescriptionType::NumReduceDim_ != reduceDims.size())
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return (false);
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bool result = true;
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return (result);
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};
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} // namespace instance
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} // namespace device
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} // namespace tensor_operation
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} // namespace ck
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namespace ck {
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namespace profiler {
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template <index_t Rank, index_t NumReduceDim>
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static inline std::vector<int> get_invariant_dims(const std::vector<int>& reduceDims)
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{
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assert(NumReduceDim == reduceDims.size());
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int reduceFlag = 0;
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// flag the bits for the reduceDims
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for(int i = 0; i < NumReduceDim; i++)
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{
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reduceFlag |= 1 << reduceDims[i];
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};
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std::vector<int> invariantDims;
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// collect invariant dimensions
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for(int i = 0; i < Rank; i++)
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if((reduceFlag & (1 << i)) == 0)
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{
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invariantDims.push_back(i);
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};
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return invariantDims;
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};
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template <typename InDataType,
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typename AccDataType,
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typename OutDataType,
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int Rank,
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int NumReduceDim,
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ReduceTensorOp ReduceOpId,
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bool PropagateNan,
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bool UseIndex>
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bool profile_reduce_impl_impl(bool do_verification,
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int init_method,
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bool do_dumpout,
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bool time_kernel,
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const std::vector<size_t>& inLengths,
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const std::vector<int>& reduceDims,
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float alpha,
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float beta)
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{
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using namespace ck::tensor_operation::device;
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using namespace ck::tensor_operation::device::instance;
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using ck::host_common::dumpBufferToFile;
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constexpr bool op_support_indices =
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(ReduceOpId == ReduceTensorOp::MIN || ReduceOpId == ReduceTensorOp::MAX ||
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ReduceOpId == ReduceTensorOp::AMAX);
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constexpr bool OutputIndex = (op_support_indices && UseIndex);
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constexpr bool out_support_atomic_add = std::is_same<OutDataType, float>::value;
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constexpr bool op_support_atomic_add =
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!op_support_indices && ReduceOpId != ReduceTensorOp::NORM2;
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constexpr bool use_atomic_add = (out_support_atomic_add && op_support_atomic_add);
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// 1) If InDataType is half_t, must use half_t as AccDataType for indexable reduction operations
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// 2) If InDataType is half_t, must use float as AccDataType for non-indexable reduction
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// operations
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constexpr bool invalid_reduce_1 =
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std::is_same<InDataType, half_t>::value &&
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((!op_support_indices && !std::is_same<AccDataType, float>::value) ||
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(op_support_indices && !std::is_same<AccDataType, half_t>::value));
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// 1) If InDataType is float, must use float as AccDataType for indexable reduction operations
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constexpr bool invalid_reduce_2 =
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std::is_same<InDataType, float>::value &&
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(op_support_indices && !std::is_same<AccDataType, float>::value);
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// 1) The indices can only be used when the reduction operation is indexable
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constexpr bool invalid_reduce_3 = (!op_support_indices && UseIndex);
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// 1) If InDataType is int8_t, must use int8_t as AccDataType for indexable reduction operations
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// 2) If InDataType is int8_t, must use int32_t as AccDataType for non-indexable reduction
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// operations
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constexpr bool invalid_reduce_4 =
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std::is_same<InDataType, int8_t>::value &&
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((!op_support_indices && !std::is_same<AccDataType, int32_t>::value) ||
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(op_support_indices && !std::is_same<AccDataType, int8_t>::value));
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// 1) If InDataType is int8_t, the supported operation must be either indexable operations or
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// ADD/AVG
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constexpr bool invalid_reduce_5 = std::is_same<InDataType, int8_t>::value &&
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(!op_support_indices && ReduceOpId != ReduceTensorOp::ADD &&
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ReduceOpId != ReduceTensorOp::AVG);
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// 1) If InDataType is bhalf_t, must use float as AccDataType for all reduction operations
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constexpr bool invalid_reduce_6 =
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std::is_same<InDataType, bhalf_t>::value && !std::is_same<AccDataType, float>::value;
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constexpr bool invalid_reduce = (invalid_reduce_1 || invalid_reduce_2 || invalid_reduce_3 ||
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invalid_reduce_4 || invalid_reduce_5 || invalid_reduce_6);
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bool pass = true;
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if constexpr(!invalid_reduce)
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{
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Tensor<InDataType> in(inLengths);
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std::vector<size_t> outLengths;
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const auto invariantDims = get_invariant_dims<Rank, NumReduceDim>(reduceDims);
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if(reduceDims.size() == Rank)
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outLengths.push_back(1);
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else
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for(auto dim : invariantDims)
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outLengths.push_back(inLengths[dim]);
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Tensor<OutDataType> out_ref(outLengths);
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Tensor<OutDataType> out(outLengths);
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Tensor<int32_t> out_indices_ref(outLengths);
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Tensor<int32_t> out_indices(outLengths);
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auto inStrides = in.mDesc.GetStrides();
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auto outStrides = out.mDesc.GetStrides();
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size_t invariant_total_length = out.mDesc.GetElementSize();
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size_t reduce_total_length = in.mDesc.GetElementSize() / invariant_total_length;
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std::size_t num_thread = 1;
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if(do_verification)
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{
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switch(init_method)
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{
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case 0: break;
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case 1:
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in.GenerateTensorValue(GeneratorTensor_1<InDataType>{1}, num_thread);
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if(beta != 0.0f)
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out_ref.GenerateTensorValue(GeneratorTensor_1<InDataType>{1}, num_thread);
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break;
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case 2:
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in.GenerateTensorValue(GeneratorTensor_2<InDataType>{-5, 5}, num_thread);
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if(beta != 0.0f)
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out_ref.GenerateTensorValue(GeneratorTensor_2<InDataType>{-5, 5}, num_thread);
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break;
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default:
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in.GenerateTensorValue(GeneratorTensor_3<InDataType>{-5.0, 5.0}, num_thread);
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if(beta != 0.0f)
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out_ref.GenerateTensorValue(GeneratorTensor_3<InDataType>{-5.0, 5.0},
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num_thread);
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}
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if(beta != 0.0f)
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for(size_t i = 0; i < out_ref.mDesc.GetElementSpaceSize(); i++)
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out.mData[i] = out_ref.mData[i];
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};
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// these buffers are usually provided by the user application
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DeviceMem in_dev(sizeof(InDataType) * in.mDesc.GetElementSpaceSize());
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DeviceMem out_dev(sizeof(OutDataType) * out.mDesc.GetElementSpaceSize());
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in_dev.ToDevice(in.mData.data());
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if(beta != 0.0f)
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out_dev.ToDevice(out.mData.data());
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size_t indicesSizeInBytes = OutputIndex ? out.mDesc.GetElementSize() * sizeof(int) : 0;
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DeviceMem out_indices_dev(indicesSizeInBytes);
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float best_avg_time = 0;
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float best_gb_per_sec = 0;
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using InElementwiseOperation =
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typename reduce_unary_operator<ReduceOpId, true, true>::InElementwiseOperation;
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using AccElementwiseOperation =
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typename reduce_unary_operator<ReduceOpId, true, true>::AccElementwiseOperation;
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using ReduceOperation = typename reduce_binary_operator<ReduceOpId>::opType;
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InElementwiseOperation in_elementwise_op;
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AccElementwiseOperation acc_elementwise_op;
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std::tie(in_elementwise_op, acc_elementwise_op) =
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reduce_unary_operator<ReduceOpId, true, true>::GetElementwiseOperator(
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static_cast<int32_t>(reduce_total_length));
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using DeviceReduceInstPtr0 =
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DeviceReducePtr<InElementwiseOperation, AccElementwiseOperation>;
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std::vector<DeviceReduceInstPtr0> reduce0_ptrs;
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add_device_reduce_instance_threadwise<InDataType,
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AccDataType,
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OutDataType,
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Rank,
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NumReduceDim,
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ReduceOpId,
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PropagateNan,
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UseIndex>(reduce0_ptrs);
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add_device_reduce_instance_blockwise<InDataType,
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AccDataType,
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OutDataType,
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Rank,
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NumReduceDim,
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ReduceOpId,
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PropagateNan,
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UseIndex>(reduce0_ptrs);
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if constexpr(use_atomic_add)
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{
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add_device_reduce_instance_multiblock_atomic_add<InDataType,
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AccDataType,
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OutDataType,
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Rank,
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NumReduceDim,
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ReduceOpId,
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PropagateNan,
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UseIndex>(reduce0_ptrs);
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}
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if(reduce0_ptrs.empty())
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{
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throw std::runtime_error("Wrong! No device REDUCE instance found");
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};
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if(do_verification)
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{
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ReductionHost<InDataType,
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AccDataType,
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OutDataType,
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ReduceOperation,
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InElementwiseOperation,
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AccElementwiseOperation,
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Rank,
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NumReduceDim,
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PropagateNan,
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OutputIndex>
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hostReduce(in.mDesc, out_ref.mDesc, invariantDims, reduceDims);
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hostReduce.Run(alpha,
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in.mData.data(),
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beta,
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out_ref.mData.data(),
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out_indices_ref.mData.data(),
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in_elementwise_op,
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acc_elementwise_op);
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};
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std::vector<ck::index_t> i_inLengths;
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std::vector<ck::index_t> i_inStrides;
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std::vector<ck::index_t> i_outLengths;
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std::vector<ck::index_t> i_outStrides;
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i_inLengths.assign(inLengths.begin(), inLengths.end());
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i_inStrides.assign(inStrides.begin(), inStrides.end());
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i_outLengths.assign(outLengths.begin(), outLengths.end());
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i_outStrides.assign(outStrides.begin(), outStrides.end());
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for(auto& reduce_ptr : reduce0_ptrs)
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{
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auto argument_ptr = reduce_ptr->MakeArgumentPointer(i_inLengths,
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i_inStrides,
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i_outLengths,
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i_outStrides,
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reduceDims,
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alpha,
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beta,
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in_dev.GetDeviceBuffer(),
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nullptr,
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out_dev.GetDeviceBuffer(),
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out_indices_dev.GetDeviceBuffer(),
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in_elementwise_op,
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acc_elementwise_op);
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if(!reduce_ptr->IsSupportedArgument(argument_ptr.get()))
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continue;
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std::string reduce_name = reduce_ptr->GetTypeString();
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auto invoker_ptr = reduce_ptr->MakeInvokerPointer();
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float avg_time =
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invoker_ptr->Run(argument_ptr.get(), StreamConfig{nullptr, time_kernel});
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std::size_t num_bytes =
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invariant_total_length * reduce_total_length * sizeof(InDataType) +
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invariant_total_length * sizeof(OutDataType);
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float gb_per_sec = num_bytes / 1.E6 / avg_time;
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if(time_kernel)
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std::cout << "Perf: " << avg_time << " ms, " << gb_per_sec << " GB/s, "
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<< reduce_name << std::endl;
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if(gb_per_sec > best_gb_per_sec)
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{
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best_avg_time = avg_time;
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best_gb_per_sec = gb_per_sec;
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}
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if(do_verification)
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{
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bool single_pass;
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out_dev.FromDevice(out.mData.data());
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single_pass = ck::utils::check_err(out.mData, out_ref.mData);
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if(OutputIndex)
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{
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out_indices_dev.FromDevice(out_indices.mData.data());
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single_pass = single_pass &&
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ck::utils::check_err(out_indices.mData, out_indices_ref.mData);
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};
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if(!single_pass)
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{
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std::cout << "Fail Info: " << reduce_ptr->GetTypeString() << std::endl;
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}
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pass = pass && single_pass;
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};
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if(do_dumpout)
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{
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dumpBufferToFile("dump_in.bin", in.mData.data(), in.mDesc.GetElementSize());
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dumpBufferToFile("dump_out.bin", out.mData.data(), out.mDesc.GetElementSize());
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dumpBufferToFile(
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"dump_out_host.bin", out_ref.mData.data(), out_ref.mDesc.GetElementSize());
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if(OutputIndex)
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{
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dumpBufferToFile("dump_indices.bin",
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out_indices.mData.data(),
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out_indices.mDesc.GetElementSize());
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dumpBufferToFile("dump_indices_host.bin",
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out_indices_ref.mData.data(),
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out_indices_ref.mDesc.GetElementSize());
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};
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};
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};
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if(time_kernel)
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std::cout << "Best Perf: " << best_avg_time << " ms, " << best_gb_per_sec << " GB/s"
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<< std::endl;
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}
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else
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{
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std::cout << "The requested reduction operation is not supported, please check !!!"
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<< std::endl;
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};
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return pass;
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};
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template <typename InDataType, typename AccDataType, typename OutDataType>
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bool profile_reduce_impl(bool do_verification,
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int init_method,
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bool do_dumpout,
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bool time_kernel,
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const std::vector<size_t>& inLengths,
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const std::vector<int>& reduceDims,
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ReduceTensorOp ReduceOpId,
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bool PropagateNan,
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bool UseIndex,
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float alpha,
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float beta)
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{
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bool matched = false;
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bool pass = true;
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using tuple_of_description_instances =
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tensor_operation::device::instance::reduce_description_instances;
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|
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const auto tuple_object = tuple_of_description_instances{};
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|
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static_for<0, std::tuple_size<tuple_of_description_instances>::value, 1>{}([&](auto i) {
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|
if(matched)
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|
return;
|
|
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using descType = remove_cvref_t<decltype(std::get<i>(tuple_object))>;
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|
|
|
if(!description_match(
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descType{}, inLengths.size(), reduceDims, ReduceOpId, PropagateNan, UseIndex))
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|
return;
|
|
|
|
pass = pass &&
|
|
profile_reduce_impl_impl<InDataType,
|
|
AccDataType,
|
|
OutDataType,
|
|
descType::Rank_,
|
|
descType::NumReduceDim_,
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|
static_cast<ReduceTensorOp>(descType::ReduceOpId_),
|
|
static_cast<bool>(descType::PropagateNan_),
|
|
static_cast<bool>(descType::UseIndex_)>(do_verification,
|
|
init_method,
|
|
do_dumpout,
|
|
time_kernel,
|
|
inLengths,
|
|
reduceDims,
|
|
alpha,
|
|
beta);
|
|
|
|
matched = true;
|
|
});
|
|
|
|
return pass;
|
|
};
|
|
|
|
} // namespace profiler
|
|
} // namespace ck
|