217 lines
8.6 KiB
Python
217 lines
8.6 KiB
Python
# Licensed to the Apache Software Foundation (ASF) under one
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# or more contributor license agreements. See the NOTICE file
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# distributed with this work for additional information
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# regarding copyright ownership. The ASF licenses this file
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# to you under the Apache License, Version 2.0 (the
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# "License"); you may not use this file except in compliance
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# with the License. You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing,
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# software distributed under the License is distributed on an
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# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
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# KIND, either express or implied. See the License for the
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# specific language governing permissions and limitations
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# under the License.
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# pylint: disable=import-outside-toplevel, invalid-name
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# ruff: noqa: E501
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"""Instantiate a C++ source for profiling CUTLASS kernels."""
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from .library import DataTypeTag
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class Conv2dProfilerEmitter:
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"""Emit a C++ source for profiling CUTLASS kernels."""
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def __init__(self):
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from jinja2 import Template
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self.reduction = """
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ReductionDevice reduction_op;
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static cutlass::conv::Operator const kConvolutionalOperator = ImplicitGemm::kConvolutionalOperator;
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typename ReductionDevice::Arguments reduction_args(
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cutlass::conv::implicit_gemm_problem_size(kConvolutionalOperator, problem_size).mn(),
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problem_size.split_k_slices,
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cutlass::conv::implicit_gemm_tensor_c_size(kConvolutionalOperator, problem_size),
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{
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reinterpret_cast<ImplicitGemm::ElementC*> (workspace.get()),
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ReductionStrideIndex(tensor_c.stride()[ImplicitGemm::UnderlyingKernel::kTensorCStrideIdx])
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},
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{
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tensor_d.device_data(),
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ReductionStrideIndex(tensor_d.stride()[ImplicitGemm::UnderlyingKernel::kTensorCStrideIdx])
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},
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{
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tensor_c.device_data(),
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ReductionStrideIndex(tensor_c.stride()[ImplicitGemm::UnderlyingKernel::kTensorCStrideIdx])
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},
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{ElementComputeEpilogue(1), ElementComputeEpilogue(0)}
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);
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reduction_op.initialize(reduction_args, nullptr);
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reduction_op();
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"""
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self.template = Template(
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"""
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#include <iostream>
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#include "cutlass/cutlass.h"
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#include "cutlass/conv/kernel/default_conv2d_fprop.h"
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#include "cutlass/conv/kernel/default_conv2d_wgrad.h"
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#include "cutlass/conv/kernel/default_conv2d_dgrad.h"
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#include "cutlass/conv/device/implicit_gemm_convolution.h"
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#include "cutlass/util/command_line.h"
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#include "cutlass/util/host_tensor.h"
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#include "cutlass/util/reference/host/tensor_fill.h"
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#include "cutlass/reduction/device/reduce_split_k.h"
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#include "cutlass/reduction/thread/reduction_operators.h"
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#define CUTLASS_CHECK(status) \
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{ \
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cutlass::Status error = status; \
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if (error != cutlass::Status::kSuccess) { \
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std::cerr << "Got cutlass error: " << cutlassGetStatusString(error) << " at: " << __LINE__ \
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<< std::endl; \
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exit(EXIT_FAILURE); \
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} \
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}
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{{OperatorDef}}
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using ImplicitGemm = cutlass::conv::device::ImplicitGemmConvolution<{{OperatorName}}>;
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struct Options {
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cutlass::Tensor4DCoord input_size;
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cutlass::Tensor4DCoord filter_size;
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cutlass::Tensor4DCoord padding;
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cutlass::MatrixCoord conv_stride;
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cutlass::MatrixCoord dilation;
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void parse(int argc, char const **args) {
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cutlass::CommandLine cmd(argc, args);
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cmd.get_cmd_line_argument("n", input_size.n());
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cmd.get_cmd_line_argument("h", input_size.h());
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cmd.get_cmd_line_argument("w", input_size.w());
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cmd.get_cmd_line_argument("c", input_size.c());
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cmd.get_cmd_line_argument("k", filter_size.n());
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cmd.get_cmd_line_argument("r", filter_size.h());
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cmd.get_cmd_line_argument("s", filter_size.w());
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int pad_h, pad_w, stride_h, stride_w, dilation_h, dilation_w;
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cmd.get_cmd_line_argument("pad_h", pad_h);
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cmd.get_cmd_line_argument("pad_w", pad_w);
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cmd.get_cmd_line_argument("stride_h", stride_h);
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cmd.get_cmd_line_argument("stride_w", stride_w);
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cmd.get_cmd_line_argument("dilation_h", dilation_h);
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cmd.get_cmd_line_argument("dilation_w", dilation_w);
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filter_size.c() = input_size.c();
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padding = {pad_h, pad_h, pad_w, pad_w};
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conv_stride = {stride_h, stride_w};
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dilation = {dilation_h, dilation_w};
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}
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cutlass::Tensor4DCoord output_size() const {
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auto dilated_h = (filter_size.h() - 1) * dilation.row() + 1;
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auto dilated_w = (filter_size.w() - 1) * dilation.column() + 1;
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auto h = (input_size.h() + padding.n() + padding.h() - dilated_h) / conv_stride.row() + 1;
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auto w = (input_size.w() + padding.w() + padding.c() - dilated_w) / conv_stride.column() + 1;
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return cutlass::Tensor4DCoord(input_size.n(), h, w, filter_size.n());
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}
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};
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double profile_convolution(Options const &options) {
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using ElementOutput = {{ElementOutput}};
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using ElementInputA = typename ImplicitGemm::ElementA;
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using ElementInputB = typename ImplicitGemm::ElementB;
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int split_k_slices = {{SplitK}};
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cutlass::conv::Conv2dProblemSize problem_size(
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options.input_size,
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options.filter_size,
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options.padding,
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options.conv_stride,
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options.dilation,
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options.output_size(),
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cutlass::conv::Mode::kCrossCorrelation,
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split_k_slices
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);
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auto conv_kind = ImplicitGemm::kConvolutionalOperator;
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auto a_extent = implicit_gemm_tensor_a_extent(conv_kind, problem_size);
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auto b_extent = implicit_gemm_tensor_b_extent(conv_kind, problem_size);
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auto c_extent = implicit_gemm_tensor_c_extent(conv_kind, problem_size);
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using LayoutC = typename ImplicitGemm::LayoutC;
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cutlass::HostTensor<ElementInputA, typename ImplicitGemm::LayoutA> tensor_a(a_extent);
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cutlass::HostTensor<ElementInputB, typename ImplicitGemm::LayoutB> tensor_b(b_extent);
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cutlass::HostTensor<ElementOutput, typename ImplicitGemm::LayoutC> tensor_c(c_extent);
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cutlass::HostTensor<ElementOutput, LayoutC> tensor_d(c_extent);
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cutlass::HostTensor<ImplicitGemm::ElementC, LayoutC> tensor_c_gemm(c_extent);
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using ElementComputeEpilogue = typename ImplicitGemm::ElementCompute;
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cutlass::conv::SplitKMode const split_k_mode = split_k_slices > 1 ?
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cutlass::conv::SplitKMode::kParallel : cutlass::conv::SplitKMode::kSerial;
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typename ImplicitGemm::Arguments arguments{
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problem_size,
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tensor_a.device_ref(),
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tensor_b.device_ref(),
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tensor_c_gemm.device_ref(),
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tensor_c_gemm.device_ref(),
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{ElementComputeEpilogue(1), ElementComputeEpilogue(0)},
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split_k_mode,
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};
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ImplicitGemm implicit_gemm_op;
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size_t workspace_size = implicit_gemm_op.get_workspace_size(arguments);
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cutlass::device_memory::allocation<uint8_t> workspace(workspace_size);
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auto status = implicit_gemm_op.can_implement(arguments);
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CUTLASS_CHECK(status);
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status = implicit_gemm_op.initialize(arguments, workspace.get());
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CUTLASS_CHECK(status);
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status = implicit_gemm_op();
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CUTLASS_CHECK(status);
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cudaEvent_t events[2];
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for (auto & event : events) {
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cudaEventCreate(&event);
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}
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cudaEventRecord(events[0]);
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for (int iteration = 0; iteration < 100; ++iteration) {
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auto status = implicit_gemm_op();
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CUTLASS_CHECK(status);
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{{Reduction}}
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}
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cudaEventRecord(events[1]);
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cudaEventSynchronize(events[1]);
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float runtime_ms = 0;
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cudaEventElapsedTime(&runtime_ms, events[0], events[1]);
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for (auto event : events) {
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(void)cudaEventDestroy(event);
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}
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return double(runtime_ms) / 100.0;
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}
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int main(int argc, char const **args) {
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Options options;
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options.parse(argc, args);
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std::cout << profile_convolution(options) << std::endl;
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return 0;
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}
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"""
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)
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def emit(self, op_def, op_name, element_output, split_k_slices=1):
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src = self.template.render(
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OperatorDef=op_def,
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OperatorName=op_name,
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ElementOutput=DataTypeTag[element_output],
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SplitK=split_k_slices,
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Reduction=self.reduction if split_k_slices > 1 else "",
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)
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return src
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