mirror of
https://github.com/NVIDIA/cuda-samples.git
synced 2024-11-25 02:59:15 +08:00
338 lines
12 KiB
C++
338 lines
12 KiB
C++
/* Copyright (c) 2022, NVIDIA CORPORATION. All rights reserved.
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*
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* Redistribution and use in source and binary forms, with or without
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* modification, are permitted provided that the following conditions
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* are met:
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* * Redistributions of source code must retain the above copyright
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* notice, this list of conditions and the following disclaimer.
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* * Redistributions in binary form must reproduce the above copyright
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* notice, this list of conditions and the following disclaimer in the
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* documentation and/or other materials provided with the distribution.
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* * Neither the name of NVIDIA CORPORATION nor the names of its
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* contributors may be used to endorse or promote products derived
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* from this software without specific prior written permission.
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*
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* THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS ``AS IS'' AND ANY
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* EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
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* IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR
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* PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR
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* CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL,
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* EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO,
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* PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR
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* PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY
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* OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT
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* (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
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* OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
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*/
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/*
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* This sample demonstrates how use texture fetches in CUDA
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*
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* This sample takes an input PGM image (image_filename) and generates
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* an output PGM image (image_filename_out). This CUDA kernel performs
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* a simple 2D transform (rotation) on the texture coordinates (u,v).
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* The results between simpleTexture and simpleTextureDrv are identical.
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* The main difference is the implementation. simpleTextureDrv makes calls
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* to the CUDA driver API and demonstrates how to use cuModuleLoad to load
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* the CUDA ptx (*.ptx) kernel just prior to kernel launch.
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*
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*/
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// includes, system
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#include <stdlib.h>
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#include <stdio.h>
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#include <string.h>
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#include <math.h>
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#include <iostream>
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#include <cstring>
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// includes, CUDA
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#include <cuda.h>
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#include <builtin_types.h>
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// includes, project
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#include <helper_cuda_drvapi.h>
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#include <helper_functions.h>
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using namespace std;
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const char *image_filename = "teapot512.pgm";
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const char *ref_filename = "ref_rotated.pgm";
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float angle = 0.5f; // angle to rotate image by (in radians)
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#define MIN_EPSILON_ERROR 5e-3f
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////////////////////////////////////////////////////////////////////////////////
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// declaration, forward
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void runTest(int argc, char **argv);
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extern "C" void computeGold(float *reference, float *idata,
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const unsigned int len);
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static CUresult initCUDA(int argc, char **argv, CUfunction *);
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const char *sSDKsample = "simpleTextureDrv (Driver API)";
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// define input fatbin file
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#ifndef FATBIN_FILE
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#define FATBIN_FILE "simpleTexture_kernel64.fatbin"
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#endif
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////////////////////////////////////////////////////////////////////////////////
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// Globals
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////////////////////////////////////////////////////////////////////////////////
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CUdevice cuDevice;
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CUcontext cuContext;
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CUmodule cuModule;
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void showHelp() {
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printf("\n> [%s] Command line options\n", sSDKsample);
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printf("\t-device=n (where n=0,1,2.... for the GPU device)\n\n");
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}
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////////////////////////////////////////////////////////////////////////////////
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// Program main
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////////////////////////////////////////////////////////////////////////////////
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int main(int argc, char **argv) {
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if (checkCmdLineFlag(argc, (const char **)argv, "help")) {
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showHelp();
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return 0;
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}
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runTest(argc, argv);
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}
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////////////////////////////////////////////////////////////////////////////////
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//! Run a simple test for CUDA
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////////////////////////////////////////////////////////////////////////////////
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void runTest(int argc, char **argv) {
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bool bTestResults = true;
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// initialize CUDA
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CUfunction transform = NULL;
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if (initCUDA(argc, argv, &transform) != CUDA_SUCCESS) {
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exit(EXIT_FAILURE);
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}
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// load image from disk
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float *h_data = NULL;
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unsigned int width, height;
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char *image_path = sdkFindFilePath(image_filename, argv[0]);
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if (image_path == NULL) {
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printf("Unable to find image file: '%s'\n", image_filename);
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exit(EXIT_FAILURE);
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}
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sdkLoadPGM(image_path, &h_data, &width, &height);
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size_t size = width * height * sizeof(float);
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printf("Loaded '%s', %d x %d pixels\n", image_filename, width, height);
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// load reference image from image (output)
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float *h_data_ref = (float *)malloc(size);
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char *ref_path = sdkFindFilePath(ref_filename, argv[0]);
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if (ref_path == NULL) {
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printf("Unable to find reference file %s\n", ref_filename);
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exit(EXIT_FAILURE);
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}
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sdkLoadPGM(ref_path, &h_data_ref, &width, &height);
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// allocate device memory for result
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CUdeviceptr d_data = (CUdeviceptr)NULL;
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checkCudaErrors(cuMemAlloc(&d_data, size));
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// allocate array and copy image data
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CUarray cu_array;
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CUDA_ARRAY_DESCRIPTOR desc;
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desc.Format = CU_AD_FORMAT_FLOAT;
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desc.NumChannels = 1;
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desc.Width = width;
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desc.Height = height;
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checkCudaErrors(cuArrayCreate(&cu_array, &desc));
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CUDA_MEMCPY2D copyParam;
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memset(©Param, 0, sizeof(copyParam));
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copyParam.dstMemoryType = CU_MEMORYTYPE_ARRAY;
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copyParam.dstArray = cu_array;
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copyParam.srcMemoryType = CU_MEMORYTYPE_HOST;
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copyParam.srcHost = h_data;
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copyParam.srcPitch = width * sizeof(float);
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copyParam.WidthInBytes = copyParam.srcPitch;
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copyParam.Height = height;
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checkCudaErrors(cuMemcpy2D(©Param));
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// set texture parameters
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CUtexObject TexObject;
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CUDA_RESOURCE_DESC ResDesc;
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memset(&ResDesc, 0, sizeof(CUDA_RESOURCE_DESC));
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ResDesc.resType = CU_RESOURCE_TYPE_ARRAY;
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ResDesc.res.array.hArray = cu_array;
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CUDA_TEXTURE_DESC TexDesc;
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memset(&TexDesc, 0, sizeof(CUDA_TEXTURE_DESC));
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TexDesc.addressMode[0] = CU_TR_ADDRESS_MODE_WRAP;
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TexDesc.addressMode[1] = CU_TR_ADDRESS_MODE_WRAP;
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TexDesc.addressMode[2] = CU_TR_ADDRESS_MODE_WRAP;
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TexDesc.filterMode = CU_TR_FILTER_MODE_LINEAR;
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TexDesc.flags = CU_TRSF_NORMALIZED_COORDINATES;
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checkCudaErrors(cuTexObjectCreate(&TexObject, &ResDesc, &TexDesc, NULL));
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// There are two ways to launch CUDA kernels via the Driver API.
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// In this CUDA Sample, we illustrate both ways to pass parameters
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// and specify parameters. By default we use the simpler method.
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int block_size = 8;
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StopWatchInterface *timer = NULL;
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if (1) {
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// This is the new CUDA 4.0 API for Kernel Parameter passing and Kernel
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// Launching (simpler method)
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void *args[5] = {&d_data, &width, &height, &angle, &TexObject};
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checkCudaErrors(cuLaunchKernel(transform, (width / block_size),
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(height / block_size), 1, block_size,
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block_size, 1, 0, NULL, args, NULL));
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checkCudaErrors(cuCtxSynchronize());
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sdkCreateTimer(&timer);
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sdkStartTimer(&timer);
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// launch kernel again for performance measurement
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checkCudaErrors(cuLaunchKernel(transform, (width / block_size),
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(height / block_size), 1, block_size,
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block_size, 1, 0, NULL, args, NULL));
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} else {
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// This is the new CUDA 4.0 API for Kernel Parameter passing and Kernel
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// Launching (advanced method)
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int offset = 0;
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char argBuffer[256];
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// pass in launch parameters (not actually de-referencing CUdeviceptr).
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// CUdeviceptr is
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// storing the value of the parameters
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*((CUdeviceptr *)&argBuffer[offset]) = d_data;
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offset += sizeof(d_data);
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*((unsigned int *)&argBuffer[offset]) = width;
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offset += sizeof(width);
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*((unsigned int *)&argBuffer[offset]) = height;
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offset += sizeof(height);
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*((float *)&argBuffer[offset]) = angle;
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offset += sizeof(angle);
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*((CUtexObject *)&argBuffer[offset]) = TexObject;
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offset += sizeof(TexObject);
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void *kernel_launch_config[5] = {CU_LAUNCH_PARAM_BUFFER_POINTER, argBuffer,
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CU_LAUNCH_PARAM_BUFFER_SIZE, &offset,
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CU_LAUNCH_PARAM_END};
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// new CUDA 4.0 Driver API Kernel launch call (warmup)
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checkCudaErrors(cuLaunchKernel(
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transform, (width / block_size), (height / block_size), 1, block_size,
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block_size, 1, 0, NULL, NULL, (void **)&kernel_launch_config));
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checkCudaErrors(cuCtxSynchronize());
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sdkCreateTimer(&timer);
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sdkStartTimer(&timer);
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// launch kernel again for performance measurement
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checkCudaErrors(cuLaunchKernel(
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transform, (width / block_size), (height / block_size), 1, block_size,
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block_size, 1, 0, 0, NULL, (void **)&kernel_launch_config));
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}
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checkCudaErrors(cuCtxSynchronize());
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sdkStopTimer(&timer);
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printf("Processing time: %f (ms)\n", sdkGetTimerValue(&timer));
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printf("%.2f Mpixels/sec\n",
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(width * height / (sdkGetTimerValue(&timer) / 1000.0f)) / 1e6);
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sdkDeleteTimer(&timer);
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// allocate mem for the result on host side
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float *h_odata = (float *)malloc(size);
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// copy result from device to host
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checkCudaErrors(cuMemcpyDtoH(h_odata, d_data, size));
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// write result to file
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char output_filename[1024];
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strcpy(output_filename, image_path);
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strcpy(output_filename + strlen(image_path) - 4, "_out.pgm");
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sdkSavePGM(output_filename, h_odata, width, height);
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printf("Wrote '%s'\n", output_filename);
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// write regression file if necessary
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if (checkCmdLineFlag(argc, (const char **)argv, "regression")) {
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// write file for regression test
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sdkWriteFile<float>("./data/regression.dat", h_odata, width * height, 0.0f,
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false);
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} else {
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// We need to reload the data from disk, because it is inverted upon output
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sdkLoadPGM(output_filename, &h_odata, &width, &height);
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printf("Comparing files\n");
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printf("\toutput: <%s>\n", output_filename);
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printf("\treference: <%s>\n", ref_path);
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bTestResults = compareData(h_odata, h_data_ref, width * height,
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MIN_EPSILON_ERROR, 0.15f);
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}
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// cleanup memory
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checkCudaErrors(cuTexObjectDestroy(TexObject));
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checkCudaErrors(cuMemFree(d_data));
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checkCudaErrors(cuArrayDestroy(cu_array));
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free(image_path);
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free(ref_path);
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checkCudaErrors(cuCtxDestroy(cuContext));
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exit(bTestResults ? EXIT_SUCCESS : EXIT_FAILURE);
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}
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////////////////////////////////////////////////////////////////////////////////
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//! This initializes CUDA, and loads the *.ptx CUDA module containing the
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//! kernel function. After the module is loaded, cuModuleGetFunction
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//! retrieves the CUDA function pointer "cuFunction"
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////////////////////////////////////////////////////////////////////////////////
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static CUresult initCUDA(int argc, char **argv, CUfunction *transform) {
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CUfunction cuFunction = 0;
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int major = 0, minor = 0, devID = 0;
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char deviceName[100];
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string module_path;
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cuDevice = findCudaDeviceDRV(argc, (const char **)argv);
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// get compute capabilities and the devicename
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checkCudaErrors(cuDeviceGetAttribute(
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&major, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MAJOR, cuDevice));
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checkCudaErrors(cuDeviceGetAttribute(
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&minor, CU_DEVICE_ATTRIBUTE_COMPUTE_CAPABILITY_MINOR, cuDevice));
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checkCudaErrors(cuDeviceGetName(deviceName, sizeof(deviceName), cuDevice));
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printf("> GPU Device has SM %d.%d compute capability\n", major, minor);
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checkCudaErrors(cuCtxCreate(&cuContext, 0, cuDevice));
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// first search for the module_path before we try to load the results
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std::ostringstream fatbin;
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if (!findFatbinPath(FATBIN_FILE, module_path, argv, fatbin)) {
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exit(EXIT_FAILURE);
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} else {
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printf("> initCUDA loading module: <%s>\n", module_path.c_str());
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}
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if (!fatbin.str().size()) {
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printf("fatbin file empty. exiting..\n");
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exit(EXIT_FAILURE);
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}
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// Create module from binary file (FATBIN)
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checkCudaErrors(cuModuleLoadData(&cuModule, fatbin.str().c_str()));
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checkCudaErrors(
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cuModuleGetFunction(&cuFunction, cuModule, "transformKernel"));
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*transform = cuFunction;
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return CUDA_SUCCESS;
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}
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