Skylark (Sketching Library)  0.1
/var/lib/jenkins/jobs/Skylark/workspace/sketch/dense_transform_Elemental_mc_mr_circ_circ.hpp
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00001 #ifndef SKYLARK_DENSE_TRANSFORM_ELEMENTAL_MC_MR_CIRC_CIRC_HPP
00002 #define SKYLARK_DENSE_TRANSFORM_ELEMENTAL_MC_MR_CIRC_CIRC_HPP
00003 
00004 #include "../base/base.hpp"
00005 
00006 #include "transforms.hpp"
00007 #include "dense_transform_data.hpp"
00008 #include "../utility/comm.hpp"
00009 #include "../utility/get_communicator.hpp"
00010 
00011 #include "sketch_params.hpp"
00012 #include "dense_transform_Elemental_mc_mr.hpp"
00013 
00014 namespace skylark { namespace sketch {
00018 template <typename ValueType,
00019           template <typename> class ValueDistribution>
00020 struct dense_transform_t <
00021     elem::DistMatrix<ValueType>,
00022     elem::DistMatrix<ValueType, elem::CIRC, elem::CIRC>,
00023     ValueDistribution> :
00024         public dense_transform_data_t<ValueDistribution> {
00025 
00026     // Typedef matrix and distribution types so that we can use them regularly
00027     typedef ValueType value_type;
00028     typedef elem::DistMatrix<value_type> matrix_type;
00029     typedef elem::DistMatrix<value_type, elem::CIRC, elem::CIRC>
00030      output_matrix_type;
00031     typedef ValueDistribution<value_type> value_distribution_type;
00032     typedef dense_transform_data_t<ValueDistribution> data_type;
00033 
00037     dense_transform_t (int N, int S, double scale, base::context_t& context)
00038         : data_type (N, S, scale, context) {
00039 
00040     }
00041 
00045     dense_transform_t (dense_transform_t<matrix_type,
00046                                          output_matrix_type,
00047                                          ValueDistribution>& other)
00048         : data_type(other) {}
00049 
00050 
00054     dense_transform_t(const data_type& other_data)
00055         : data_type(other_data) {}
00056 
00057 
00061     template <typename Dimension>
00062     void apply (const matrix_type& A,
00063                 output_matrix_type& sketch_of_A,
00064                 Dimension dimension) const {
00065         try {
00066             apply_impl_dist(A, sketch_of_A, dimension);
00067         } catch (std::logic_error e) {
00068             SKYLARK_THROW_EXCEPTION (
00069                 base::elemental_exception()
00070                     << base::error_msg(e.what()) );
00071         } catch(boost::mpi::exception e) {
00072                 SKYLARK_THROW_EXCEPTION (
00073                     base::mpi_exception()
00074                         << base::error_msg(e.what()) );
00075         }
00076     }
00077 
00078     int get_N() const { return this->_N; } 
00079     int get_S() const { return this->_S; } 
00081     const sketch_transform_data_t* get_data() const { return this; }
00082 
00083 private:
00084 
00089     void apply_impl_dist(const matrix_type& A,
00090                          output_matrix_type& sketch_of_A,
00091                          skylark::sketch::rowwise_tag tag) const {
00092 
00093 
00094         matrix_type sketch_of_A_MC_MR(A.Height(),
00095                                   data_type::_S);
00096 
00097         dense_transform_t<matrix_type, matrix_type, ValueDistribution>
00098             transform(*this);
00099 
00100         transform.apply(A, sketch_of_A_MC_MR, tag);
00101 
00102         sketch_of_A = sketch_of_A_MC_MR;
00103     }
00104 
00105 
00106     void apply_impl_dist(const matrix_type& A,
00107                          output_matrix_type& sketch_of_A,
00108                          skylark::sketch::columnwise_tag tag) const {
00109 
00110 
00111         matrix_type sketch_of_A_MC_MR(data_type::_S,
00112                                       A.Width());
00113 
00114         dense_transform_t<matrix_type, matrix_type, ValueDistribution>
00115             transform(*this);
00116 
00117         transform.apply(A, sketch_of_A_MC_MR, tag);
00118 
00119         sketch_of_A = sketch_of_A_MC_MR;
00120     }
00121 };
00122 
00123 } } 
00125 #endif // SKYLARK_DENSE_TRANSFORM_ELEMENTAL_MC_MR_CIRC_CIRC_HPP