mirror of
https://github.com/ROCm/composable_kernel.git
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* Add host API * manually rebase on develop * clean * manually rebase on develop * exclude tests from all target * address review comments * update client app name * fix missing lib name * clang-format update * refactor * refactor * refactor * refactor * refactor * fix test issue * refactor * refactor * refactor * upate cmake and readme Co-authored-by: Chao Liu <chao.liu2@amd.com>
229 lines
8.5 KiB
C++
229 lines
8.5 KiB
C++
#include <iostream>
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#include <numeric>
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#include <initializer_list>
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#include <cstdlib>
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#include <stdlib.h>
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#include <half.hpp>
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#include "profile_convnd_bwd_data_impl.hpp"
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namespace {
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enum struct ConvDataType
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{
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F32_F32_F32, // 0
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F16_F16_F16, // 1
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BF16_BF16_BF16, // 2
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INT8_INT8_INT8, // 3
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};
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enum struct ConvInputLayout
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{
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NCHW, // 0
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NHWC, // 1
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};
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enum struct ConvWeightLayout
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{
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KCYX, // 0
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KYXC, // 1
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};
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enum struct ConvOutputLayout
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{
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NKHW, // 0
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NHWK, // 1
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};
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ck::utils::conv::ConvParams parse_conv_params(int num_dim_spatial, char* argv[], int arg_idx)
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{
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// (N, K, C) + num_dim_spatial * 6 (filter, input, strides, dilations, pad left, pad right)
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ck::utils::conv::ConvParams params;
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params.num_dim_spatial_ = num_dim_spatial;
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params.N_ = std::stoi(argv[arg_idx++]);
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params.K_ = std::stoi(argv[arg_idx++]);
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params.C_ = std::stoi(argv[arg_idx++]);
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params.filter_spatial_lengths_.resize(num_dim_spatial);
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for(int i = 0; i < num_dim_spatial; ++i)
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{
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params.filter_spatial_lengths_[i] = std::stoi(argv[arg_idx++]);
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}
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params.input_spatial_lengths_.resize(num_dim_spatial);
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for(int i = 0; i < num_dim_spatial; ++i)
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{
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params.input_spatial_lengths_[i] = std::stoi(argv[arg_idx++]);
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}
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params.conv_filter_strides_.resize(num_dim_spatial);
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for(int i = 0; i < num_dim_spatial; ++i)
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{
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params.conv_filter_strides_[i] = std::stoi(argv[arg_idx++]);
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}
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params.conv_filter_dilations_.resize(num_dim_spatial);
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for(int i = 0; i < num_dim_spatial; ++i)
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{
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params.conv_filter_dilations_[i] = std::stoi(argv[arg_idx++]);
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}
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params.input_left_pads_.resize(num_dim_spatial);
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for(int i = 0; i < num_dim_spatial; ++i)
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{
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params.input_left_pads_[i] = std::stoi(argv[arg_idx++]);
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}
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params.input_right_pads_.resize(num_dim_spatial);
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for(int i = 0; i < num_dim_spatial; ++i)
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{
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params.input_right_pads_[i] = std::stoi(argv[arg_idx++]);
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}
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return params;
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}
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} // namespace
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int profile_convnd_bwd_data(int argc, char* argv[], int num_dim_spatial)
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{
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const int preParams = 10;
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int conv_args = 3 + num_dim_spatial * 6;
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int cmdline_nargs = conv_args + preParams;
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if(cmdline_nargs != argc)
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{
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printf("arg1: tensor operation (conv[1|2|3]d_bwd_data: BackwardConvolution)\n");
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printf("arg2: data type (0: fp32; 1: fp16)\n");
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printf("arg3: input tensor layout (0: NCHW; 1: NHWC)\n");
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printf("arg4: weight tensor layout (0: KCYX; 1: KYXC)\n");
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printf("arg5: output tensor layout (0: NKHW; 1: NHWK)\n");
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printf("arg6: verification (0: no; 1: yes)\n");
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printf("arg7: initialization (0: no init; 1: integer value; 2: decimal value)\n");
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printf("arg8: print tensor value (0: no; 1: yes)\n");
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printf("arg9: time kernel (0=n0, 1=yes)\n");
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printf("arg10 to 24: N, K, C, Y, X, Hi, Wi, Sy, Sx, Dy, Dx, LeftPy, LeftPx, RightPy, "
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"RightPx\n");
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return 1;
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}
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const auto data_type = static_cast<ConvDataType>(std::stoi(argv[2]));
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const auto in_layout = static_cast<ConvInputLayout>(std::stoi(argv[3]));
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const auto wei_layout = static_cast<ConvWeightLayout>(std::stoi(argv[4]));
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const auto out_layout = static_cast<ConvOutputLayout>(std::stoi(argv[5]));
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const bool do_verification = std::stoi(argv[6]);
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const int init_method = std::stoi(argv[7]);
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const bool do_log = std::stoi(argv[8]);
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const bool time_kernel = std::stoi(argv[9]);
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ck::utils::conv::ConvParams params = parse_conv_params(num_dim_spatial, argv, preParams);
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auto Run = [&](auto input_type, auto wei_type, auto out_type, auto acc_type) {
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using InDataType = decltype(input_type);
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using WeiDataType = decltype(wei_type);
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using OutDataType = decltype(out_type);
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using AccDataType = decltype(acc_type);
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switch(num_dim_spatial)
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{
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case 1:
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ck::profiler::profile_convnd_bwd_data_impl<1,
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InDataType,
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WeiDataType,
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OutDataType,
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AccDataType,
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ck::tensor_layout::convolution::NWC,
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ck::tensor_layout::convolution::KXC,
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ck::tensor_layout::convolution::NWK>(
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do_verification,
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init_method,
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do_log,
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time_kernel,
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params.N_,
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params.K_,
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params.C_,
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params.input_spatial_lengths_,
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params.filter_spatial_lengths_,
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params.GetOutputSpatialLengths(),
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params.conv_filter_strides_,
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params.conv_filter_dilations_,
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params.input_left_pads_,
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params.input_right_pads_);
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break;
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case 2:
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ck::profiler::profile_convnd_bwd_data_impl<2,
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InDataType,
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WeiDataType,
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OutDataType,
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AccDataType,
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ck::tensor_layout::convolution::NHWC,
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ck::tensor_layout::convolution::KYXC,
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ck::tensor_layout::convolution::NHWK>(
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do_verification,
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init_method,
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do_log,
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time_kernel,
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params.N_,
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params.K_,
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params.C_,
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params.input_spatial_lengths_,
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params.filter_spatial_lengths_,
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params.GetOutputSpatialLengths(),
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params.conv_filter_strides_,
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params.conv_filter_dilations_,
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params.input_left_pads_,
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params.input_right_pads_);
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break;
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case 3:
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ck::profiler::profile_convnd_bwd_data_impl<3,
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InDataType,
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WeiDataType,
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OutDataType,
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AccDataType,
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ck::tensor_layout::convolution::NDHWC,
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ck::tensor_layout::convolution::KZYXC,
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ck::tensor_layout::convolution::NDHWK>(
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do_verification,
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init_method,
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do_log,
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time_kernel,
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params.N_,
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params.K_,
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params.C_,
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params.input_spatial_lengths_,
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params.filter_spatial_lengths_,
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params.GetOutputSpatialLengths(),
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params.conv_filter_strides_,
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params.conv_filter_dilations_,
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params.input_left_pads_,
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params.input_right_pads_);
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break;
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default: break;
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}
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};
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if(data_type == ConvDataType::F32_F32_F32 && in_layout == ConvInputLayout::NHWC &&
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wei_layout == ConvWeightLayout::KYXC && out_layout == ConvOutputLayout::NHWK)
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{
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Run(float{}, float{}, float{}, float{});
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}
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else if(data_type == ConvDataType::F16_F16_F16 && in_layout == ConvInputLayout::NHWC &&
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wei_layout == ConvWeightLayout::KYXC && out_layout == ConvOutputLayout::NHWK)
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{
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Run(ck::half_t{}, ck::half_t{}, ck::half_t{}, float{});
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}
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else if(data_type == ConvDataType::BF16_BF16_BF16 && in_layout == ConvInputLayout::NHWC &&
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wei_layout == ConvWeightLayout::KYXC && out_layout == ConvOutputLayout::NHWK)
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{
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Run(ck::bhalf_t{}, ck::bhalf_t{}, ck::bhalf_t{}, float{});
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}
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else if(data_type == ConvDataType::INT8_INT8_INT8 && in_layout == ConvInputLayout::NHWC &&
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wei_layout == ConvWeightLayout::KYXC && out_layout == ConvOutputLayout::NHWK)
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{
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Run(int8_t{}, int8_t{}, int8_t{}, int32_t{});
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}
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else
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{
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std::cout << "wrong! this Conv data_type & layout is not implemented" << std::endl;
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return 1;
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}
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return 0;
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}
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