Open Source Computer Vision Library
https://opencv.org/
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433 lines
16 KiB
433 lines
16 KiB
/*M/////////////////////////////////////////////////////////////////////////////////////// |
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// |
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// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING. |
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// |
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// By downloading, copying, installing or using the software you agree to this license. |
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// If you do not agree to this license, do not download, install, |
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// copy or use the software. |
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// |
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// |
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// License Agreement |
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// For Open Source Computer Vision Library |
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// |
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// Copyright (C) 2000-2008, Intel Corporation, all rights reserved. |
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// Copyright (C) 2009, Willow Garage Inc., all rights reserved. |
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// Third party copyrights are property of their respective owners. |
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// |
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// Redistribution and use in source and binary forms, with or without modification, |
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// are permitted provided that the following conditions are met: |
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// |
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// * Redistribution's of source code must retain the above copyright notice, |
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// this list of conditions and the following disclaimer. |
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// |
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// * Redistribution's in binary form must reproduce the above copyright notice, |
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// this list of conditions and the following disclaimer in the documentation |
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// and/or other materials provided with the distribution. |
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// |
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// * The name of the copyright holders may not be used to endorse or promote products |
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// derived from this software without specific prior written permission. |
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// |
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// This software is provided by the copyright holders and contributors "as is" and |
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// any express or implied warranties, including, but not limited to, the implied |
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// warranties of merchantability and fitness for a particular purpose are disclaimed. |
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// In no event shall the Intel Corporation or contributors be liable for any direct, |
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// indirect, incidental, special, exemplary, or consequential damages |
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// (including, but not limited to, procurement of substitute goods or services; |
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// loss of use, data, or profits; or business interruption) however caused |
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// and on any theory of liability, whether in contract, strict liability, |
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// or tort (including negligence or otherwise) arising in any way out of |
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// the use of this software, even if advised of the possibility of such damage. |
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// |
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//M*/ |
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#include "precomp.hpp" |
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using namespace cv; |
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using namespace cv::gpu; |
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namespace |
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{ |
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// Compares value to set using the given comparator. Returns true if |
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// there is at least one element x in the set satisfying to: x cmp value |
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// predicate. |
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template <typename Comparer> |
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bool compareToSet(const std::string& set_as_str, int value, Comparer cmp) |
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{ |
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if (set_as_str.find_first_not_of(" ") == string::npos) |
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return false; |
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std::stringstream stream(set_as_str); |
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int cur_value; |
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while (!stream.eof()) |
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{ |
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stream >> cur_value; |
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if (cmp(cur_value, value)) |
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return true; |
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} |
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return false; |
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} |
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} |
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bool cv::gpu::TargetArchs::builtWith(cv::gpu::FeatureSet feature_set) |
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{ |
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#if defined (HAVE_CUDA) |
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return ::compareToSet(CUDA_ARCH_FEATURES, feature_set, std::greater_equal<int>()); |
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#else |
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(void)feature_set; |
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return false; |
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#endif |
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} |
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bool cv::gpu::TargetArchs::has(int major, int minor) |
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{ |
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return hasPtx(major, minor) || hasBin(major, minor); |
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} |
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bool cv::gpu::TargetArchs::hasPtx(int major, int minor) |
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{ |
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#if defined (HAVE_CUDA) |
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return ::compareToSet(CUDA_ARCH_PTX, major * 10 + minor, std::equal_to<int>()); |
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#else |
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(void)major; |
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(void)minor; |
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return false; |
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#endif |
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} |
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bool cv::gpu::TargetArchs::hasBin(int major, int minor) |
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{ |
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#if defined (HAVE_CUDA) |
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return ::compareToSet(CUDA_ARCH_BIN, major * 10 + minor, std::equal_to<int>()); |
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#else |
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(void)major; |
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(void)minor; |
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return false; |
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#endif |
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} |
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bool cv::gpu::TargetArchs::hasEqualOrLessPtx(int major, int minor) |
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{ |
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#if defined (HAVE_CUDA) |
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return ::compareToSet(CUDA_ARCH_PTX, major * 10 + minor, |
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std::less_equal<int>()); |
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#else |
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(void)major; |
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(void)minor; |
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return false; |
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#endif |
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} |
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bool cv::gpu::TargetArchs::hasEqualOrGreater(int major, int minor) |
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{ |
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return hasEqualOrGreaterPtx(major, minor) || |
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hasEqualOrGreaterBin(major, minor); |
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} |
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bool cv::gpu::TargetArchs::hasEqualOrGreaterPtx(int major, int minor) |
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{ |
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#if defined (HAVE_CUDA) |
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return ::compareToSet(CUDA_ARCH_PTX, major * 10 + minor, |
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std::greater_equal<int>()); |
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#else |
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(void)major; |
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(void)minor; |
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return false; |
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#endif |
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} |
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bool cv::gpu::TargetArchs::hasEqualOrGreaterBin(int major, int minor) |
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{ |
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#if defined (HAVE_CUDA) |
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return ::compareToSet(CUDA_ARCH_BIN, major * 10 + minor, |
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std::greater_equal<int>()); |
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#else |
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(void)major; |
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(void)minor; |
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return false; |
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#endif |
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} |
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#if !defined (HAVE_CUDA) |
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int cv::gpu::getCudaEnabledDeviceCount() { return 0; } |
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void cv::gpu::setDevice(int) { throw_nogpu(); } |
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int cv::gpu::getDevice() { throw_nogpu(); return 0; } |
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void cv::gpu::resetDevice() { throw_nogpu(); } |
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size_t cv::gpu::DeviceInfo::freeMemory() const { throw_nogpu(); return 0; } |
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size_t cv::gpu::DeviceInfo::totalMemory() const { throw_nogpu(); return 0; } |
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bool cv::gpu::DeviceInfo::supports(cv::gpu::FeatureSet) const { throw_nogpu(); return false; } |
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bool cv::gpu::DeviceInfo::isCompatible() const { throw_nogpu(); return false; } |
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void cv::gpu::DeviceInfo::query() { throw_nogpu(); } |
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void cv::gpu::DeviceInfo::queryMemory(size_t&, size_t&) const { throw_nogpu(); } |
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void cv::gpu::printCudaDeviceInfo(int device) { throw_nogpu(); } |
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void cv::gpu::printShortCudaDeviceInfo(int device) { throw_nogpu(); } |
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#else /* !defined (HAVE_CUDA) */ |
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int cv::gpu::getCudaEnabledDeviceCount() |
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{ |
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int count; |
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cudaError_t error = cudaGetDeviceCount( &count ); |
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if (error == cudaErrorInsufficientDriver) |
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return -1; |
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if (error == cudaErrorNoDevice) |
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return 0; |
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cudaSafeCall(error); |
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return count; |
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} |
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void cv::gpu::setDevice(int device) |
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{ |
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cudaSafeCall( cudaSetDevice( device ) ); |
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} |
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int cv::gpu::getDevice() |
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{ |
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int device; |
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cudaSafeCall( cudaGetDevice( &device ) ); |
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return device; |
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} |
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void cv::gpu::resetDevice() |
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{ |
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cudaSafeCall( cudaDeviceReset() ); |
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} |
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size_t cv::gpu::DeviceInfo::freeMemory() const |
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{ |
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size_t free_memory, total_memory; |
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queryMemory(free_memory, total_memory); |
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return free_memory; |
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} |
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size_t cv::gpu::DeviceInfo::totalMemory() const |
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{ |
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size_t free_memory, total_memory; |
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queryMemory(free_memory, total_memory); |
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return total_memory; |
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} |
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bool cv::gpu::DeviceInfo::supports(cv::gpu::FeatureSet feature_set) const |
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{ |
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int version = majorVersion() * 10 + minorVersion(); |
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return version >= feature_set; |
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} |
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bool cv::gpu::DeviceInfo::isCompatible() const |
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{ |
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// Check PTX compatibility |
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if (TargetArchs::hasEqualOrLessPtx(majorVersion(), minorVersion())) |
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return true; |
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// Check BIN compatibility |
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for (int i = minorVersion(); i >= 0; --i) |
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if (TargetArchs::hasBin(majorVersion(), i)) |
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return true; |
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return false; |
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} |
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void cv::gpu::DeviceInfo::query() |
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{ |
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cudaDeviceProp prop; |
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cudaSafeCall(cudaGetDeviceProperties(&prop, device_id_)); |
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name_ = prop.name; |
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multi_processor_count_ = prop.multiProcessorCount; |
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majorVersion_ = prop.major; |
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minorVersion_ = prop.minor; |
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} |
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void cv::gpu::DeviceInfo::queryMemory(size_t& free_memory, size_t& total_memory) const |
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{ |
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int prev_device_id = getDevice(); |
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if (prev_device_id != device_id_) |
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setDevice(device_id_); |
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cudaSafeCall(cudaMemGetInfo(&free_memory, &total_memory)); |
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if (prev_device_id != device_id_) |
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setDevice(prev_device_id); |
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} |
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namespace |
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{ |
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template <class T> void getCudaAttribute(T *attribute, CUdevice_attribute device_attribute, int device) |
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{ |
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*attribute = T(); |
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CUresult error = CUDA_SUCCESS;// = cuDeviceGetAttribute( attribute, device_attribute, device ); why link erros under ubuntu?? |
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if( CUDA_SUCCESS == error ) |
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return; |
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printf("Driver API error = %04d\n", error); |
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cv::gpu::error("driver API error", __FILE__, __LINE__); |
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} |
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int convertSMVer2Cores(int major, int minor) |
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{ |
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// Defines for GPU Architecture types (using the SM version to determine the # of cores per SM |
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typedef struct { |
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int SM; // 0xMm (hexidecimal notation), M = SM Major version, and m = SM minor version |
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int Cores; |
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} SMtoCores; |
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SMtoCores gpuArchCoresPerSM[] = { { 0x10, 8 }, { 0x11, 8 }, { 0x12, 8 }, { 0x13, 8 }, { 0x20, 32 }, { 0x21, 48 }, { -1, -1 } }; |
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int index = 0; |
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while (gpuArchCoresPerSM[index].SM != -1) |
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{ |
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if (gpuArchCoresPerSM[index].SM == ((major << 4) + minor) ) |
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return gpuArchCoresPerSM[index].Cores; |
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index++; |
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} |
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printf("MapSMtoCores undefined SMversion %d.%d!\n", major, minor); |
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return -1; |
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} |
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} |
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void cv::gpu::printCudaDeviceInfo(int device) |
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{ |
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int count = getCudaEnabledDeviceCount(); |
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bool valid = (device >= 0) && (device < count); |
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int beg = valid ? device : 0; |
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int end = valid ? device+1 : count; |
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printf("*** CUDA Device Query (Runtime API) version (CUDART static linking) *** \n\n"); |
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printf("Device count: %d\n", count); |
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int driverVersion = 0, runtimeVersion = 0; |
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cudaSafeCall( cudaDriverGetVersion(&driverVersion) ); |
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cudaSafeCall( cudaRuntimeGetVersion(&runtimeVersion) ); |
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const char *computeMode[] = { |
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"Default (multiple host threads can use ::cudaSetDevice() with device simultaneously)", |
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"Exclusive (only one host thread in one process is able to use ::cudaSetDevice() with this device)", |
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"Prohibited (no host thread can use ::cudaSetDevice() with this device)", |
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"Exclusive Process (many threads in one process is able to use ::cudaSetDevice() with this device)", |
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"Unknown", |
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NULL |
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}; |
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for(int dev = beg; dev < end; ++dev) |
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{ |
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cudaDeviceProp prop; |
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cudaSafeCall( cudaGetDeviceProperties(&prop, dev) ); |
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printf("\nDevice %d: \"%s\"\n", dev, prop.name); |
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printf(" CUDA Driver Version / Runtime Version %d.%d / %d.%d\n", driverVersion/1000, driverVersion%100, runtimeVersion/1000, runtimeVersion%100); |
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printf(" CUDA Capability Major/Minor version number: %d.%d\n", prop.major, prop.minor); |
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printf(" Total amount of global memory: %.0f MBytes (%llu bytes)\n", (float)prop.totalGlobalMem/1048576.0f, (unsigned long long) prop.totalGlobalMem); |
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printf(" (%2d) Multiprocessors x (%2d) CUDA Cores/MP: %d CUDA Cores\n", |
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prop.multiProcessorCount, convertSMVer2Cores(prop.major, prop.minor), |
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convertSMVer2Cores(prop.major, prop.minor) * prop.multiProcessorCount); |
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printf(" GPU Clock Speed: %.2f GHz\n", prop.clockRate * 1e-6f); |
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#if (CUDART_VERSION >= 4000) |
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// This is not available in the CUDA Runtime API, so we make the necessary calls the driver API to support this for output |
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int memoryClock, memBusWidth, L2CacheSize; |
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getCudaAttribute<int>( &memoryClock, CU_DEVICE_ATTRIBUTE_MEMORY_CLOCK_RATE, dev ); |
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getCudaAttribute<int>( &memBusWidth, CU_DEVICE_ATTRIBUTE_GLOBAL_MEMORY_BUS_WIDTH, dev ); |
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getCudaAttribute<int>( &L2CacheSize, CU_DEVICE_ATTRIBUTE_L2_CACHE_SIZE, dev ); |
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printf(" Memory Clock rate: %.2f Mhz\n", memoryClock * 1e-3f); |
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printf(" Memory Bus Width: %d-bit\n", memBusWidth); |
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if (L2CacheSize) |
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printf(" L2 Cache Size: %d bytes\n", L2CacheSize); |
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printf(" Max Texture Dimension Size (x,y,z) 1D=(%d), 2D=(%d,%d), 3D=(%d,%d,%d)\n", |
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prop.maxTexture1D, prop.maxTexture2D[0], prop.maxTexture2D[1], |
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prop.maxTexture3D[0], prop.maxTexture3D[1], prop.maxTexture3D[2]); |
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printf(" Max Layered Texture Size (dim) x layers 1D=(%d) x %d, 2D=(%d,%d) x %d\n", |
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prop.maxTexture1DLayered[0], prop.maxTexture1DLayered[1], |
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prop.maxTexture2DLayered[0], prop.maxTexture2DLayered[1], prop.maxTexture2DLayered[2]); |
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#endif |
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printf(" Total amount of constant memory: %u bytes\n", (int)prop.totalConstMem); |
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printf(" Total amount of shared memory per block: %u bytes\n", (int)prop.sharedMemPerBlock); |
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printf(" Total number of registers available per block: %d\n", prop.regsPerBlock); |
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printf(" Warp size: %d\n", prop.warpSize); |
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printf(" Maximum number of threads per block: %d\n", prop.maxThreadsPerBlock); |
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printf(" Maximum sizes of each dimension of a block: %d x %d x %d\n", prop.maxThreadsDim[0], prop.maxThreadsDim[1], prop.maxThreadsDim[2]); |
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printf(" Maximum sizes of each dimension of a grid: %d x %d x %d\n", prop.maxGridSize[0], prop.maxGridSize[1], prop.maxGridSize[2]); |
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printf(" Maximum memory pitch: %u bytes\n", (int)prop.memPitch); |
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printf(" Texture alignment: %u bytes\n", (int)prop.textureAlignment); |
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#if CUDART_VERSION >= 4000 |
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printf(" Concurrent copy and execution: %s with %d copy engine(s)\n", (prop.deviceOverlap ? "Yes" : "No"), prop.asyncEngineCount); |
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#else |
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printf(" Concurrent copy and execution: %s\n", prop.deviceOverlap ? "Yes" : "No"); |
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#endif |
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printf(" Run time limit on kernels: %s\n", prop.kernelExecTimeoutEnabled ? "Yes" : "No"); |
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printf(" Integrated GPU sharing Host Memory: %s\n", prop.integrated ? "Yes" : "No"); |
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printf(" Support host page-locked memory mapping: %s\n", prop.canMapHostMemory ? "Yes" : "No"); |
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printf(" Concurrent kernel execution: %s\n", prop.concurrentKernels ? "Yes" : "No"); |
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printf(" Alignment requirement for Surfaces: %s\n", prop.surfaceAlignment ? "Yes" : "No"); |
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printf(" Device has ECC support enabled: %s\n", prop.ECCEnabled ? "Yes" : "No"); |
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printf(" Device is using TCC driver mode: %s\n", prop.tccDriver ? "Yes" : "No"); |
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#if CUDART_VERSION >= 4000 |
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printf(" Device supports Unified Addressing (UVA): %s\n", prop.unifiedAddressing ? "Yes" : "No"); |
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printf(" Device PCI Bus ID / PCI location ID: %d / %d\n", prop.pciBusID, prop.pciDeviceID ); |
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#endif |
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printf(" Compute Mode:\n"); |
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printf(" %s \n", computeMode[prop.computeMode]); |
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} |
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printf("\n"); |
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printf("deviceQuery, CUDA Driver = CUDART"); |
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printf(", CUDA Driver Version = %d.%d", driverVersion / 1000, driverVersion % 100); |
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printf(", CUDA Runtime Version = %d.%d", runtimeVersion/1000, runtimeVersion%100); |
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printf(", NumDevs = %d\n\n", count); |
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fflush(stdout); |
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} |
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void cv::gpu::printShortCudaDeviceInfo(int device) |
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{ |
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int count = getCudaEnabledDeviceCount(); |
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bool valid = (device >= 0) && (device < count); |
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int beg = valid ? device : 0; |
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int end = valid ? device+1 : count; |
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int driverVersion = 0, runtimeVersion = 0; |
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cudaSafeCall( cudaDriverGetVersion(&driverVersion) ); |
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cudaSafeCall( cudaRuntimeGetVersion(&runtimeVersion) ); |
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for(int dev = beg; dev < end; ++dev) |
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{ |
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cudaDeviceProp prop; |
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cudaSafeCall( cudaGetDeviceProperties(&prop, dev) ); |
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const char *arch_str = prop.major < 2 ? " (not Fermi)" : ""; |
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printf("Device %d: \"%s\" %.0fMb", dev, prop.name, (float)prop.totalGlobalMem/1048576.0f); |
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printf(", sm_%d%d%s, %d cores", prop.major, prop.minor, arch_str, convertSMVer2Cores(prop.major, prop.minor) * prop.multiProcessorCount); |
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printf(", Driver/Runtime ver.%d.%d/%d.%d\n", driverVersion/1000, driverVersion%100, runtimeVersion/1000, runtimeVersion%100); |
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} |
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fflush(stdout); |
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} |
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#endif |
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