/* Copyright (c) 2020, NVIDIA CORPORATION. All rights reserved. * * Redistribution and use in source and binary forms, with or without * modification, are permitted provided that the following conditions * are met: * * Redistributions of source code must retain the above copyright * notice, this list of conditions and the following disclaimer. * * Redistributions in binary form must reproduce the above copyright * notice, this list of conditions and the following disclaimer in the * documentation and/or other materials provided with the distribution. * * Neither the name of NVIDIA CORPORATION nor the names of its * contributors may be used to endorse or promote products derived * from this software without specific prior written permission. * * THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS ``AS IS'' AND ANY * EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE * IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR * PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT OWNER OR * CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, * EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, * PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR * PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY * OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT * (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE * OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. */ /* * This sample demonstrates peer-to-peer access of stream ordered memory * allocated with cudaMallocAsync and cudaMemPool family of APIs through simple * kernel which does peer-to-peer to access & scales vector elements. */ // System includes #include #include #include #include #include #include // CUDA runtime #include // helper functions and utilities to work with CUDA #include #include // Simple kernel to demonstrate copying cudaMallocAsync memory via P2P to peer // device __global__ void copyP2PAndScale(const int *src, int *dst, int N) { int idx = blockIdx.x * blockDim.x + threadIdx.x; if (idx < N) { // scale & store src vector. dst[idx] = 2 * src[idx]; } } // Map of device version to device number std::multimap, int> getIdenticalGPUs() { int numGpus = 0; checkCudaErrors(cudaGetDeviceCount(&numGpus)); std::multimap, int> identicalGpus; for (int i = 0; i < numGpus; i++) { int isMemPoolSupported = 0; checkCudaErrors(cudaDeviceGetAttribute(&isMemPoolSupported, cudaDevAttrMemoryPoolsSupported, i)); // Filter unsupported devices if (isMemPoolSupported) { int major = 0, minor = 0; checkCudaErrors( cudaDeviceGetAttribute(&major, cudaDevAttrComputeCapabilityMajor, i)); checkCudaErrors( cudaDeviceGetAttribute(&minor, cudaDevAttrComputeCapabilityMinor, i)); identicalGpus.emplace(std::make_pair(major, minor), i); } } return identicalGpus; } std::pair getP2PCapableGpuPair() { constexpr size_t kNumGpusRequired = 2; auto gpusByArch = getIdenticalGPUs(); auto it = gpusByArch.begin(); auto end = gpusByArch.end(); auto bestFit = std::make_pair(it, it); // use std::distance to find the largest number of GPUs amongst architectures auto distance = [](decltype(bestFit) p) { return std::distance(p.first, p.second); }; // Read each unique key/pair element in order for (; it != end; it = gpusByArch.upper_bound(it->first)) { // first and second are iterators bounded within the architecture group auto testFit = gpusByArch.equal_range(it->first); // Always use devices with highest architecture version or whichever has the // most devices available if (distance(bestFit) <= distance(testFit)) bestFit = testFit; } if (distance(bestFit) < kNumGpusRequired) { printf( "No Two or more GPUs with same architecture capable of cuda Memory " "Pools found." "\nWaiving the sample\n"); exit(EXIT_WAIVED); } std::set bestFitDeviceIds; // check & select peer-to-peer access capable GPU devices. int devIds[2]; for (auto itr = bestFit.first; itr != bestFit.second; itr++) { int deviceId = itr->second; checkCudaErrors(cudaSetDevice(deviceId)); std::for_each(itr, bestFit.second, [&deviceId, &bestFitDeviceIds, &kNumGpusRequired]( decltype(*itr) mapPair) { if (deviceId != mapPair.second) { int access = 0; checkCudaErrors( cudaDeviceCanAccessPeer(&access, deviceId, mapPair.second)); printf("Device=%d %s Access Peer Device=%d\n", deviceId, access ? "CAN" : "CANNOT", mapPair.second); if (access && bestFitDeviceIds.size() < kNumGpusRequired) { bestFitDeviceIds.emplace(deviceId); bestFitDeviceIds.emplace(mapPair.second); } else { printf("Ignoring device %i (max devices exceeded)\n", mapPair.second); } } }); if (bestFitDeviceIds.size() >= kNumGpusRequired) { printf("Selected p2p capable devices - "); int i = 0; for (auto devicesItr = bestFitDeviceIds.begin(); devicesItr != bestFitDeviceIds.end(); devicesItr++) { devIds[i++] = *devicesItr; printf("deviceId = %d ", *devicesItr); } printf("\n"); break; } } // if bestFitDeviceIds.size() == 0 it means the GPUs in system are not p2p // capable, hence we add it without p2p capability check. if (!bestFitDeviceIds.size()) { printf("No Two or more Devices p2p capable found.. exiting..\n"); exit(EXIT_WAIVED); } auto p2pGpuPair = std::make_pair(devIds[0], devIds[1]); return p2pGpuPair; } int memPoolP2PCopy() { int *dev0_srcVec, *dev1_dstVec; // Device buffers cudaStream_t stream1, stream2; cudaMemPool_t memPool; cudaEvent_t waitOnStream1; // Allocate CPU memory. size_t nelem = 1048576; size_t bytes = nelem * sizeof(int); int *a = (int *)malloc(bytes); int *output = (int *)malloc(bytes); /* Initialize the vectors. */ for (int n = 0; n < nelem; n++) { a[n] = rand() / (int)RAND_MAX; } auto p2pDevices = getP2PCapableGpuPair(); printf("selected devices = %d & %d\n", p2pDevices.first, p2pDevices.second); checkCudaErrors(cudaSetDevice(p2pDevices.first)); checkCudaErrors(cudaEventCreate(&waitOnStream1)); checkCudaErrors(cudaStreamCreateWithFlags(&stream1, cudaStreamNonBlocking)); // Get the default mempool for device p2pDevices.first from the pair checkCudaErrors(cudaDeviceGetDefaultMemPool(&memPool, p2pDevices.first)); // Allocate memory in a stream from the pool set above. checkCudaErrors(cudaMallocAsync(&dev0_srcVec, bytes, stream1)); checkCudaErrors( cudaMemcpyAsync(dev0_srcVec, a, bytes, cudaMemcpyHostToDevice, stream1)); checkCudaErrors(cudaEventRecord(waitOnStream1, stream1)); checkCudaErrors(cudaSetDevice(p2pDevices.second)); checkCudaErrors(cudaStreamCreateWithFlags(&stream2, cudaStreamNonBlocking)); // Allocate memory in p2pDevices.second device checkCudaErrors(cudaMallocAsync(&dev1_dstVec, bytes, stream2)); // Setup peer mappings for p2pDevices.second device cudaMemAccessDesc desc; memset(&desc, 0, sizeof(cudaMemAccessDesc)); desc.location.type = cudaMemLocationTypeDevice; desc.location.id = p2pDevices.second; desc.flags = cudaMemAccessFlagsProtReadWrite; checkCudaErrors(cudaMemPoolSetAccess(memPool, &desc, 1)); printf("> copyP2PAndScale kernel running ...\n"); dim3 block(256); dim3 grid((unsigned int)ceil(nelem / (int)block.x)); checkCudaErrors(cudaStreamWaitEvent(stream2, waitOnStream1)); copyP2PAndScale<<>>(dev0_srcVec, dev1_dstVec, nelem); checkCudaErrors(cudaMemcpyAsync(output, dev1_dstVec, bytes, cudaMemcpyDeviceToHost, stream2)); checkCudaErrors(cudaFreeAsync(dev0_srcVec, stream2)); checkCudaErrors(cudaFreeAsync(dev1_dstVec, stream2)); checkCudaErrors(cudaStreamSynchronize(stream2)); /* Compare the results */ printf("> Checking the results from copyP2PAndScale() ...\n"); for (int n = 0; n < nelem; n++) { if ((2 * a[n]) != output[n]) { printf("mismatch i = %d expected = %d val = %d\n", n, 2 * a[n], output[n]); return EXIT_FAILURE; } } free(a); free(output); checkCudaErrors(cudaStreamDestroy(stream1)); checkCudaErrors(cudaStreamDestroy(stream2)); printf("PASSED\n"); return EXIT_SUCCESS; } int main(int argc, char **argv) { int ret = memPoolP2PCopy(); return ret; }