Ejemplo n.º 1
0
    void copy(toeplitz_matrix<SCALARTYPE, ALIGNMENT> const & tep_src, MATRIXTYPE & com_dst)
    {
        std::size_t size = tep_src.size1();
        assert(size == com_dst.size1() && bool("Size mismatch"));
        assert(size == com_dst.size2() && bool("Size mismatch"));
        std::vector<SCALARTYPE> tmp(tep_src.size1() * 2 - 1);
        copy(tep_src, tmp);

        for(std::size_t i = 0; i < size; i++)
            for(std::size_t j = 0; j < size; j++)
                com_dst(i, j) = tmp[static_cast<int>(j) - static_cast<int>(i) + static_cast<int>(size) - 1];
    }
Ejemplo n.º 2
0
np::ndarray vcl_structured_matrix_to_ndarray(MATRIXTYPE& m)
{

  // TODO: THIS IS VERY CRUDE!

  typedef typename MATRIXTYPE::value_type::value_type SCALARTYPE;

  ublas::matrix<SCALARTYPE> cpu_dense_m(m.size1(), m.size2());
  vcl::matrix<SCALARTYPE> vcl_dense_m(m.size1(), m.size2());
  vcl::copy(m, cpu_dense_m);
  vcl::copy(cpu_dense_m, vcl_dense_m);
  return vcl_matrix_to_ndarray<vcl::matrix<SCALARTYPE>, SCALARTYPE>
    (vcl_dense_m);
}
Ejemplo n.º 3
0
    void copy(MATRIXTYPE const & com_src, toeplitz_matrix<SCALARTYPE, ALIGNMENT>& tep_dst)
    {
        std::size_t size = tep_dst.size1();
        assert(size == com_src.size1() && bool("Size mismatch"));
        assert(size == com_src.size2() && bool("Size mismatch"));

        std::vector<SCALARTYPE> tmp(2*size - 1);

        for(int i = size - 1; i >= 0; i--)
            tmp[size - i - 1] = com_src(i, 0);

        for(std::size_t i = 1; i < size; i++)
            tmp[size + i - 1] = com_src(0, i);

        copy(tmp, tep_dst);
    }
Ejemplo n.º 4
0
np::ndarray vcl_matrix_to_ndarray(const MATRIXTYPE& m)
{

    std::size_t size = m.internal_size1() * m.internal_size2() * sizeof(SCALARTYPE);

    // TODO!!! : How to have Python keep track of this memory, to avoid a leak?
    SCALARTYPE* data = (SCALARTYPE*)malloc(size);

    // Read the whole matrix
    vcl::backend::memory_read(m.handle(), 0, size, data);

    np::dtype dt = np::dtype::get_builtin<SCALARTYPE>();
    bp::tuple shape = bp::make_tuple(m.size1(), m.size2());

    // Delegate determination of strides and start offset to function templates
    bp::tuple strides = get_strides<SCALARTYPE>(m);
    np::ndarray array = np::from_data(data + get_offset<SCALARTYPE>(m),
                                      dt, shape, strides, bp::object(m));

    return array;
}