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/* Copyright 2013 IST Austria
Contributed by: Ulrich Bauer, Michael Kerber, Jan Reininghaus
This file is part of PHAT.
PHAT is free software: you can redistribute it and/or modify
it under the terms of the GNU Lesser General Public License as published by
the Free Software Foundation, either version 3 of the License, or
(at your option) any later version.
PHAT is distributed in the hope that it will be useful,
but WITHOUT ANY WARRANTY; without even the implied warranty of
MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
GNU Lesser General Public License for more details.
You should have received a copy of the GNU Lesser General Public License
along with PHAT. If not, see <http://www.gnu.org/licenses/>. */
#pragma once
#include <phat/helpers/misc.h>
#include <phat/representations/vector_vector.h>
namespace phat {
// Note: We could even make the rep generic in the underlying Const representation
// But I cannot imagine that anything else than vector<vector<index>> would
// make sense
template< typename PivotColumn >
class abstract_pivot_column : public vector_vector {
public:
protected:
typedef vector_vector Base;
typedef PivotColumn pivot_column;
// For parallization purposes, it could be more than one full column
mutable thread_local_storage< pivot_column > _pivot_columns;
mutable thread_local_storage< index > pos_of_pivot_columns;
pivot_column& get_pivot_column() const {
return _pivot_columns();
}
bool is_represented_by_pivot_column( index idx ) const {
return pos_of_pivot_columns() == idx;
}
void unset_pos_of_pivot_column() {
index idx = pos_of_pivot_columns();
if( idx != -1 ) {
_pivot_columns().get_column_and_clear( this->matrix[ idx ] );
}
pos_of_pivot_columns() = -1;
}
void represent_by_pivot_column( index idx ) {
pos_of_pivot_columns() = idx;
get_pivot_column().add_column( matrix[ idx ] );
}
public:
void _set_num_cols( index nr_of_columns ) {
#pragma omp parallel for
for( int tid = 0; tid < omp_get_num_threads(); tid++ ) {
_pivot_columns[ tid ].init( nr_of_columns );
pos_of_pivot_columns[ tid ] = -1;
}
Base::_set_num_cols( nr_of_columns );
}
// replaces(!) content of 'col' with boundary of given index
void _get_col( index idx, column& col ) const {
is_represented_by_pivot_column( idx ) ? get_pivot_column().get_col( col ) : Base::_get_col( idx, col );
}
// true iff boundary of given idx is empty
bool _is_empty( index idx ) const {
return is_represented_by_pivot_column( idx ) ? get_pivot_column().empty() : Base::_is_empty( idx );
}
// largest row index of given column idx (new name for lowestOne())
index _get_max_index( index idx ) const {
return is_represented_by_pivot_column( idx ) ? get_pivot_column().max_index() : Base::_get_max_index( idx );
}
// adds column 'source' to column 'target'
void _add_to( index source, index target ) {
if( !is_represented_by_pivot_column( target ) ) {
unset_pos_of_pivot_column();
represent_by_pivot_column( target );
}
get_pivot_column().add_column( matrix[source] );
}
// clears given column
void _clear( index idx ) {
is_represented_by_pivot_column( idx ) ? get_pivot_column().clear() : Base::_clear( idx );
}
void _set_col( index idx, const column& col ) {
is_represented_by_pivot_column( idx ) ? get_pivot_column().set_col( col ) : Base::_set_col( idx, col );
}
// removes the maximal index of a column
void _remove_max( index idx ) {
is_represented_by_pivot_column( idx ) ? get_pivot_column().remove_max() : Base::_remove_max( idx );
}
// syncronizes all data structures (essential for openmp stuff)
// has to be called before and after any multithreaded access!
void _sync() {
#pragma omp parallel for
for( int tid = 0; tid < omp_get_num_threads(); tid++ )
unset_pos_of_pivot_column();
}
};
}
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