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#include <iostream> |
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#include <Eigen/Core> |
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#include <bench/BenchTimer.h> |
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using namespace std; |
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using namespace Eigen; |
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#ifndef SCALAR |
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#define SCALAR float |
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#endif |
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#ifndef SCALARA |
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#define SCALARA SCALAR |
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#endif |
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#ifndef SCALARB |
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#define SCALARB SCALAR |
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#endif |
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typedef SCALAR Scalar; |
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typedef NumTraits<Scalar>::Real RealScalar; |
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typedef Matrix<SCALARA,Dynamic,Dynamic> A; |
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typedef Matrix<SCALARB,Dynamic,Dynamic> B; |
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typedef Matrix<Scalar,Dynamic,Dynamic> C; |
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typedef Matrix<RealScalar,Dynamic,Dynamic> M; |
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#ifdef HAVE_BLAS |
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extern "C" { |
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#include <Eigen/src/misc/blas.h> |
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} |
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static float fone = 1; |
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static float fzero = 0; |
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static double done = 1; |
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static double szero = 0; |
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static std::complex<float> cfone = 1; |
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static std::complex<float> cfzero = 0; |
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static std::complex<double> cdone = 1; |
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static std::complex<double> cdzero = 0; |
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static char notrans = 'N'; |
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static char trans = 'T'; |
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static char nonunit = 'N'; |
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static char lower = 'L'; |
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static char right = 'R'; |
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static int intone = 1; |
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void blas_gemm(const MatrixXf& a, const MatrixXf& b, MatrixXf& c) |
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{ |
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int M = c.rows(); int N = c.cols(); int K = a.cols(); |
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int lda = a.rows(); int ldb = b.rows(); int ldc = c.rows(); |
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sgemm_(¬rans,¬rans,&M,&N,&K,&fone, |
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const_cast<float*>(a.data()),&lda, |
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const_cast<float*>(b.data()),&ldb,&fone, |
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c.data(),&ldc); |
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} |
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EIGEN_DONT_INLINE void blas_gemm(const MatrixXd& a, const MatrixXd& b, MatrixXd& c) |
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{ |
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int M = c.rows(); int N = c.cols(); int K = a.cols(); |
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int lda = a.rows(); int ldb = b.rows(); int ldc = c.rows(); |
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dgemm_(¬rans,¬rans,&M,&N,&K,&done, |
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const_cast<double*>(a.data()),&lda, |
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const_cast<double*>(b.data()),&ldb,&done, |
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c.data(),&ldc); |
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} |
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void blas_gemm(const MatrixXcf& a, const MatrixXcf& b, MatrixXcf& c) |
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{ |
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int M = c.rows(); int N = c.cols(); int K = a.cols(); |
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int lda = a.rows(); int ldb = b.rows(); int ldc = c.rows(); |
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cgemm_(¬rans,¬rans,&M,&N,&K,(float*)&cfone, |
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const_cast<float*>((const float*)a.data()),&lda, |
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const_cast<float*>((const float*)b.data()),&ldb,(float*)&cfone, |
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(float*)c.data(),&ldc); |
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} |
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void blas_gemm(const MatrixXcd& a, const MatrixXcd& b, MatrixXcd& c) |
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{ |
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int M = c.rows(); int N = c.cols(); int K = a.cols(); |
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int lda = a.rows(); int ldb = b.rows(); int ldc = c.rows(); |
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zgemm_(¬rans,¬rans,&M,&N,&K,(double*)&cdone, |
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const_cast<double*>((const double*)a.data()),&lda, |
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const_cast<double*>((const double*)b.data()),&ldb,(double*)&cdone, |
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(double*)c.data(),&ldc); |
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} |
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#endif |
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void matlab_cplx_cplx(const M& ar, const M& ai, const M& br, const M& bi, M& cr, M& ci) |
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{ |
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cr.noalias() += ar * br; |
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cr.noalias() -= ai * bi; |
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ci.noalias() += ar * bi; |
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ci.noalias() += ai * br; |
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} |
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void matlab_real_cplx(const M& a, const M& br, const M& bi, M& cr, M& ci) |
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{ |
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cr.noalias() += a * br; |
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ci.noalias() += a * bi; |
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} |
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void matlab_cplx_real(const M& ar, const M& ai, const M& b, M& cr, M& ci) |
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{ |
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cr.noalias() += ar * b; |
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ci.noalias() += ai * b; |
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} |
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template<typename A, typename B, typename C> |
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EIGEN_DONT_INLINE void gemm(const A& a, const B& b, C& c) |
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{ |
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c.noalias() += a * b; |
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} |
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int main(int argc, char ** argv) |
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{ |
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std::ptrdiff_t l1 = internal::queryL1CacheSize(); |
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std::ptrdiff_t l2 = internal::queryTopLevelCacheSize(); |
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std::cout << "L1 cache size = " << (l1>0 ? l1/1024 : -1) << " KB\n"; |
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std::cout << "L2/L3 cache size = " << (l2>0 ? l2/1024 : -1) << " KB\n"; |
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typedef internal::gebp_traits<Scalar,Scalar> Traits; |
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std::cout << "Register blocking = " << Traits::mr << " x " << Traits::nr << "\n"; |
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int rep = 1; |
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int tries = 2; |
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int s = 2048; |
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int m = s; |
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int n = s; |
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int p = s; |
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int cache_size1=-1, cache_size2=l2, cache_size3 = 0; |
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bool need_help = false; |
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for (int i=1; i<argc;) |
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{ |
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if(argv[i][0]=='-') |
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{ |
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if(argv[i][1]=='s') |
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{ |
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++i; |
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s = atoi(argv[i++]); |
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m = n = p = s; |
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if(argv[i][0]!='-') |
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{ |
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n = atoi(argv[i++]); |
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p = atoi(argv[i++]); |
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} |
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} |
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else if(argv[i][1]=='c') |
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{ |
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++i; |
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cache_size1 = atoi(argv[i++]); |
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if(argv[i][0]!='-') |
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{ |
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cache_size2 = atoi(argv[i++]); |
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if(argv[i][0]!='-') |
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cache_size3 = atoi(argv[i++]); |
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} |
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} |
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else if(argv[i][1]=='t') |
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{ |
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++i; |
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tries = atoi(argv[i++]); |
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} |
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else if(argv[i][1]=='p') |
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{ |
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++i; |
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rep = atoi(argv[i++]); |
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} |
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} |
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else |
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{ |
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need_help = true; |
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break; |
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} |
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} |
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if(need_help) |
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{ |
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std::cout << argv[0] << " -s <matrix sizes> -c <cache sizes> -t <nb tries> -p <nb repeats>\n"; |
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std::cout << " <matrix sizes> : size\n"; |
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std::cout << " <matrix sizes> : rows columns depth\n"; |
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return 1; |
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} |
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#if EIGEN_VERSION_AT_LEAST(3,2,90) |
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if(cache_size1>0) |
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setCpuCacheSizes(cache_size1,cache_size2,cache_size3); |
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#endif |
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A a(m,p); a.setRandom(); |
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B b(p,n); b.setRandom(); |
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C c(m,n); c.setOnes(); |
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C rc = c; |
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std::cout << "Matrix sizes = " << m << "x" << p << " * " << p << "x" << n << "\n"; |
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std::ptrdiff_t mc(m), nc(n), kc(p); |
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internal::computeProductBlockingSizes<Scalar,Scalar>(kc, mc, nc); |
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std::cout << "blocking size (mc x kc) = " << mc << " x " << kc << "\n"; |
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C r = c; |
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#if defined EIGEN_HAS_OPENMP |
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Eigen::initParallel(); |
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int procs = omp_get_max_threads(); |
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if(procs>1) |
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{ |
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#ifdef HAVE_BLAS |
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blas_gemm(a,b,r); |
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#else |
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omp_set_num_threads(1); |
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r.noalias() += a * b; |
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omp_set_num_threads(procs); |
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#endif |
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c.noalias() += a * b; |
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if(!r.isApprox(c)) std::cerr << "Warning, your parallel product is crap!\n\n"; |
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} |
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#elif defined HAVE_BLAS |
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blas_gemm(a,b,r); |
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c.noalias() += a * b; |
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if(!r.isApprox(c)) { |
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std::cout << r - c << "\n"; |
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std::cerr << "Warning, your product is crap!\n\n"; |
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} |
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#else |
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if(1.*m*n*p<2000.*2000*2000) |
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{ |
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gemm(a,b,c); |
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r.noalias() += a.cast<Scalar>() .lazyProduct( b.cast<Scalar>() ); |
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if(!r.isApprox(c)) { |
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std::cout << r - c << "\n"; |
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std::cerr << "Warning, your product is crap!\n\n"; |
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} |
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} |
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#endif |
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#ifdef HAVE_BLAS |
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BenchTimer tblas; |
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c = rc; |
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BENCH(tblas, tries, rep, blas_gemm(a,b,c)); |
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std::cout << "blas cpu " << tblas.best(CPU_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tblas.best(CPU_TIMER))*1e-9 << " GFLOPS \t(" << tblas.total(CPU_TIMER) << "s)\n"; |
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std::cout << "blas real " << tblas.best(REAL_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tblas.best(REAL_TIMER))*1e-9 << " GFLOPS \t(" << tblas.total(REAL_TIMER) << "s)\n"; |
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#endif |
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BenchTimer tmt; |
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c = rc; |
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BENCH(tmt, tries, rep, gemm(a,b,c)); |
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std::cout << "eigen cpu " << tmt.best(CPU_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tmt.best(CPU_TIMER))*1e-9 << " GFLOPS \t(" << tmt.total(CPU_TIMER) << "s)\n"; |
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std::cout << "eigen real " << tmt.best(REAL_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tmt.best(REAL_TIMER))*1e-9 << " GFLOPS \t(" << tmt.total(REAL_TIMER) << "s)\n"; |
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#ifdef EIGEN_HAS_OPENMP |
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if(procs>1) |
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{ |
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BenchTimer tmono; |
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omp_set_num_threads(1); |
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Eigen::setNbThreads(1); |
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c = rc; |
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BENCH(tmono, tries, rep, gemm(a,b,c)); |
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std::cout << "eigen mono cpu " << tmono.best(CPU_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tmono.best(CPU_TIMER))*1e-9 << " GFLOPS \t(" << tmono.total(CPU_TIMER) << "s)\n"; |
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std::cout << "eigen mono real " << tmono.best(REAL_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tmono.best(REAL_TIMER))*1e-9 << " GFLOPS \t(" << tmono.total(REAL_TIMER) << "s)\n"; |
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std::cout << "mt speed up x" << tmono.best(CPU_TIMER) / tmt.best(REAL_TIMER) << " => " << (100.0*tmono.best(CPU_TIMER) / tmt.best(REAL_TIMER))/procs << "%\n"; |
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} |
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#endif |
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if(1.*m*n*p<30*30*30) |
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{ |
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BenchTimer tmt; |
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c = rc; |
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BENCH(tmt, tries, rep, c.noalias()+=a.lazyProduct(b)); |
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std::cout << "lazy cpu " << tmt.best(CPU_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tmt.best(CPU_TIMER))*1e-9 << " GFLOPS \t(" << tmt.total(CPU_TIMER) << "s)\n"; |
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std::cout << "lazy real " << tmt.best(REAL_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/tmt.best(REAL_TIMER))*1e-9 << " GFLOPS \t(" << tmt.total(REAL_TIMER) << "s)\n"; |
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} |
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#ifdef DECOUPLED |
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if((NumTraits<A::Scalar>::IsComplex) && (NumTraits<B::Scalar>::IsComplex)) |
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{ |
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M ar(m,p); ar.setRandom(); |
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M ai(m,p); ai.setRandom(); |
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M br(p,n); br.setRandom(); |
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M bi(p,n); bi.setRandom(); |
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M cr(m,n); cr.setRandom(); |
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M ci(m,n); ci.setRandom(); |
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BenchTimer t; |
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BENCH(t, tries, rep, matlab_cplx_cplx(ar,ai,br,bi,cr,ci)); |
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std::cout << "\"matlab\" cpu " << t.best(CPU_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/t.best(CPU_TIMER))*1e-9 << " GFLOPS \t(" << t.total(CPU_TIMER) << "s)\n"; |
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std::cout << "\"matlab\" real " << t.best(REAL_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/t.best(REAL_TIMER))*1e-9 << " GFLOPS \t(" << t.total(REAL_TIMER) << "s)\n"; |
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} |
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if((!NumTraits<A::Scalar>::IsComplex) && (NumTraits<B::Scalar>::IsComplex)) |
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{ |
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M a(m,p); a.setRandom(); |
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M br(p,n); br.setRandom(); |
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M bi(p,n); bi.setRandom(); |
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M cr(m,n); cr.setRandom(); |
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M ci(m,n); ci.setRandom(); |
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BenchTimer t; |
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BENCH(t, tries, rep, matlab_real_cplx(a,br,bi,cr,ci)); |
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std::cout << "\"matlab\" cpu " << t.best(CPU_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/t.best(CPU_TIMER))*1e-9 << " GFLOPS \t(" << t.total(CPU_TIMER) << "s)\n"; |
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std::cout << "\"matlab\" real " << t.best(REAL_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/t.best(REAL_TIMER))*1e-9 << " GFLOPS \t(" << t.total(REAL_TIMER) << "s)\n"; |
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} |
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if((NumTraits<A::Scalar>::IsComplex) && (!NumTraits<B::Scalar>::IsComplex)) |
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{ |
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M ar(m,p); ar.setRandom(); |
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M ai(m,p); ai.setRandom(); |
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M b(p,n); b.setRandom(); |
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M cr(m,n); cr.setRandom(); |
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M ci(m,n); ci.setRandom(); |
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BenchTimer t; |
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BENCH(t, tries, rep, matlab_cplx_real(ar,ai,b,cr,ci)); |
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std::cout << "\"matlab\" cpu " << t.best(CPU_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/t.best(CPU_TIMER))*1e-9 << " GFLOPS \t(" << t.total(CPU_TIMER) << "s)\n"; |
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std::cout << "\"matlab\" real " << t.best(REAL_TIMER)/rep << "s \t" << (double(m)*n*p*rep*2/t.best(REAL_TIMER))*1e-9 << " GFLOPS \t(" << t.total(REAL_TIMER) << "s)\n"; |
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} |
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#endif |
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return 0; |
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} |
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