eigen/bench/sparse_cholesky.cpp

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#define EIGEN_TAUCS_SUPPORT
#define EIGEN_CHOLMOD_SUPPORT
#include <Eigen/Sparse>
// g++ -DSIZE=10000 -DDENSITY=0.001 sparse_cholesky.cpp -I.. -DDENSEMATRI -O3 -g0 -DNDEBUG -DNBTRIES=1 -I /home/gael/Coding/LinearAlgebra/taucs_full/src/ -I/home/gael/Coding/LinearAlgebra/taucs_full/build/linux/ -L/home/gael/Coding/LinearAlgebra/taucs_full/lib/linux/ -ltaucs /home/gael/Coding/LinearAlgebra/GotoBLAS/libgoto.a -lpthread -I /home/gael/Coding/LinearAlgebra/SuiteSparse/CHOLMOD/Include/ $CHOLLIB -I /home/gael/Coding/LinearAlgebra/SuiteSparse/UFconfig/ /home/gael/Coding/LinearAlgebra/SuiteSparse/CCOLAMD/Lib/libccolamd.a /home/gael/Coding/LinearAlgebra/SuiteSparse/CHOLMOD/Lib/libcholmod.a -lmetis /home/gael/Coding/LinearAlgebra/SuiteSparse/AMD/Lib/libamd.a /home/gael/Coding/LinearAlgebra/SuiteSparse/CAMD/Lib/libcamd.a /home/gael/Coding/LinearAlgebra/SuiteSparse/CCOLAMD/Lib/libccolamd.a /home/gael/Coding/LinearAlgebra/SuiteSparse/COLAMD/Lib/libcolamd.a -llapack && ./a.out
#define NOGMM
#define NOMTL
#ifndef SIZE
#define SIZE 10
#endif
#ifndef DENSITY
#define DENSITY 0.01
#endif
#ifndef REPEAT
#define REPEAT 1
#endif
#include "BenchSparseUtil.h"
#ifndef MINDENSITY
#define MINDENSITY 0.0004
#endif
#ifndef NBTRIES
#define NBTRIES 10
#endif
#define BENCH(X) \
timer.reset(); \
for (int _j=0; _j<NBTRIES; ++_j) { \
timer.start(); \
for (int _k=0; _k<REPEAT; ++_k) { \
X \
} timer.stop(); }
// typedef SparseMatrix<Scalar,Upper> EigenSparseTriMatrix;
typedef SparseMatrix<Scalar,SelfAdjoint|Lower> EigenSparseSelfAdjointMatrix;
void fillSpdMatrix(float density, int rows, int cols, EigenSparseSelfAdjointMatrix& dst)
{
dst.startFill(rows*cols*density);
for(int j = 0; j < cols; j++)
{
dst.fill(j,j) = ei_random<Scalar>(10,20);
for(int i = j+1; i < rows; i++)
{
Scalar v = (ei_random<float>(0,1) < density) ? ei_random<Scalar>() : 0;
if (v!=0)
dst.fill(i,j) = v;
}
}
dst.endFill();
}
#include <Eigen/Cholesky>
template<int Backend>
void doEigen(const char* name, const EigenSparseSelfAdjointMatrix& sm1, int flags = 0)
{
std::cout << name << "..." << std::flush;
BenchTimer timer;
timer.start();
SparseLLT<EigenSparseSelfAdjointMatrix,Backend> chol(sm1, flags);
timer.stop();
std::cout << ":\t" << timer.value() << endl;
std::cout << " nnz: " << sm1.nonZeros() << " => " << chol.matrixL().nonZeros() << "\n";
//std::cout << "sparse\n" << chol.matrixL() << "%\n";
}
int main(int argc, char *argv[])
{
int rows = SIZE;
int cols = SIZE;
float density = DENSITY;
BenchTimer timer;
VectorXf b = VectorXf::Random(cols);
VectorXf x = VectorXf::Random(cols);
bool densedone = false;
//for (float density = DENSITY; density>=MINDENSITY; density*=0.5)
// float density = 0.5;
{
EigenSparseSelfAdjointMatrix sm1(rows, cols);
std::cout << "Generate sparse matrix (might take a while)...\n";
fillSpdMatrix(density, rows, cols, sm1);
std::cout << "DONE\n\n";
// dense matrices
#ifdef DENSEMATRIX
if (!densedone)
{
densedone = true;
std::cout << "Eigen Dense\t" << density*100 << "%\n";
DenseMatrix m1(rows,cols);
eiToDense(sm1, m1);
m1 = (m1 + m1.transpose()).eval();
m1.diagonal() *= 0.5;
// BENCH(LLT<DenseMatrix> chol(m1);)
// std::cout << "dense:\t" << timer.value() << endl;
BenchTimer timer;
timer.start();
LLT<DenseMatrix> chol(m1);
timer.stop();
std::cout << "dense:\t" << timer.value() << endl;
int count = 0;
for (int j=0; j<cols; ++j)
for (int i=j; i<rows; ++i)
if (!ei_isMuchSmallerThan(ei_abs(chol.matrixL()(i,j)), 0.1))
count++;
std::cout << "dense: " << "nnz = " << count << "\n";
std::cout << "dense:\n" << m1 << "\n\n" << chol.matrixL() << endl;
}
#endif
// eigen sparse matrices
doEigen<Eigen::DefaultBackend>("Eigen/Sparse", sm1, Eigen::IncompleteFactorization);
#ifdef EIGEN_CHOLMOD_SUPPORT
doEigen<Eigen::Cholmod>("Eigen/Cholmod", sm1, Eigen::IncompleteFactorization);
#endif
#ifdef EIGEN_TAUCS_SUPPORT
doEigen<Eigen::Taucs>("Eigen/Taucs", sm1, Eigen::IncompleteFactorization);
#endif
#if 0
// TAUCS
{
taucs_ccs_matrix A = sm1.asTaucsMatrix();
//BENCH(taucs_ccs_matrix* chol = taucs_ccs_factor_llt(&A, 0, 0);)
// BENCH(taucs_supernodal_factor_to_ccs(taucs_ccs_factor_llt_ll(&A));)
// std::cout << "taucs:\t" << timer.value() << endl;
taucs_ccs_matrix* chol = taucs_ccs_factor_llt(&A, 0, 0);
for (int j=0; j<cols; ++j)
{
for (int i=chol->colptr[j]; i<chol->colptr[j+1]; ++i)
std::cout << chol->values.d[i] << " ";
}
}
// CHOLMOD
#ifdef EIGEN_CHOLMOD_SUPPORT
{
cholmod_common c;
cholmod_start (&c);
cholmod_sparse A;
cholmod_factor *L;
A = sm1.asCholmodMatrix();
BenchTimer timer;
// timer.reset();
timer.start();
std::vector<int> perm(cols);
// std::vector<int> set(ncols);
for (int i=0; i<cols; ++i)
perm[i] = i;
// c.nmethods = 1;
// c.method[0] = 1;
c.nmethods = 1;
c.method [0].ordering = CHOLMOD_NATURAL;
c.postorder = 0;
c.final_ll = 1;
L = cholmod_analyze_p(&A, &perm[0], &perm[0], cols, &c);
timer.stop();
std::cout << "cholmod/analyze:\t" << timer.value() << endl;
timer.reset();
timer.start();
cholmod_factorize(&A, L, &c);
timer.stop();
std::cout << "cholmod/factorize:\t" << timer.value() << endl;
cholmod_sparse* cholmat = cholmod_factor_to_sparse(L, &c);
cholmod_print_factor(L, "Factors", &c);
cholmod_print_sparse(cholmat, "Chol", &c);
cholmod_write_sparse(stdout, cholmat, 0, 0, &c);
//
// cholmod_print_sparse(&A, "A", &c);
// cholmod_write_sparse(stdout, &A, 0, 0, &c);
// for (int j=0; j<cols; ++j)
// {
// for (int i=chol->colptr[j]; i<chol->colptr[j+1]; ++i)
// std::cout << chol->values.s[i] << " ";
// }
}
#endif
#endif
}
return 0;
}