forked from OSchip/llvm-project
1158 lines
44 KiB
C++
1158 lines
44 KiB
C++
//===- Simplex.cpp - MLIR Simplex Class -----------------------------------===//
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//
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// Part of the LLVM Project, under the Apache License v2.0 with LLVM Exceptions.
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// See https://llvm.org/LICENSE.txt for license information.
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// SPDX-License-Identifier: Apache-2.0 WITH LLVM-exception
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//
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//===----------------------------------------------------------------------===//
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#include "mlir/Analysis/Presburger/Simplex.h"
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#include "mlir/Analysis/Presburger/Matrix.h"
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#include "mlir/Support/MathExtras.h"
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namespace mlir {
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using Direction = Simplex::Direction;
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const int nullIndex = std::numeric_limits<int>::max();
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/// Construct a Simplex object with `nVar` variables.
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Simplex::Simplex(unsigned nVar)
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: nRow(0), nCol(2), nRedundant(0), tableau(0, 2 + nVar), empty(false) {
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colUnknown.push_back(nullIndex);
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colUnknown.push_back(nullIndex);
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for (unsigned i = 0; i < nVar; ++i) {
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var.emplace_back(Orientation::Column, /*restricted=*/false, /*pos=*/nCol);
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colUnknown.push_back(i);
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nCol++;
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}
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}
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Simplex::Simplex(const FlatAffineConstraints &constraints)
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: Simplex(constraints.getNumIds()) {
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for (unsigned i = 0, numIneqs = constraints.getNumInequalities();
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i < numIneqs; ++i)
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addInequality(constraints.getInequality(i));
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for (unsigned i = 0, numEqs = constraints.getNumEqualities(); i < numEqs; ++i)
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addEquality(constraints.getEquality(i));
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}
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const Simplex::Unknown &Simplex::unknownFromIndex(int index) const {
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assert(index != nullIndex && "nullIndex passed to unknownFromIndex");
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return index >= 0 ? var[index] : con[~index];
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}
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const Simplex::Unknown &Simplex::unknownFromColumn(unsigned col) const {
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assert(col < nCol && "Invalid column");
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return unknownFromIndex(colUnknown[col]);
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}
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const Simplex::Unknown &Simplex::unknownFromRow(unsigned row) const {
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assert(row < nRow && "Invalid row");
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return unknownFromIndex(rowUnknown[row]);
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}
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Simplex::Unknown &Simplex::unknownFromIndex(int index) {
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assert(index != nullIndex && "nullIndex passed to unknownFromIndex");
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return index >= 0 ? var[index] : con[~index];
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}
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Simplex::Unknown &Simplex::unknownFromColumn(unsigned col) {
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assert(col < nCol && "Invalid column");
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return unknownFromIndex(colUnknown[col]);
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}
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Simplex::Unknown &Simplex::unknownFromRow(unsigned row) {
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assert(row < nRow && "Invalid row");
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return unknownFromIndex(rowUnknown[row]);
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}
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/// Add a new row to the tableau corresponding to the given constant term and
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/// list of coefficients. The coefficients are specified as a vector of
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/// (variable index, coefficient) pairs.
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unsigned Simplex::addRow(ArrayRef<int64_t> coeffs) {
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assert(coeffs.size() == 1 + var.size() &&
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"Incorrect number of coefficients!");
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++nRow;
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// If the tableau is not big enough to accomodate the extra row, we extend it.
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if (nRow >= tableau.getNumRows())
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tableau.resizeVertically(nRow);
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rowUnknown.push_back(~con.size());
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con.emplace_back(Orientation::Row, false, nRow - 1);
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tableau(nRow - 1, 0) = 1;
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tableau(nRow - 1, 1) = coeffs.back();
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for (unsigned col = 2; col < nCol; ++col)
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tableau(nRow - 1, col) = 0;
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// Process each given variable coefficient.
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for (unsigned i = 0; i < var.size(); ++i) {
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unsigned pos = var[i].pos;
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if (coeffs[i] == 0)
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continue;
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if (var[i].orientation == Orientation::Column) {
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// If a variable is in column position at column col, then we just add the
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// coefficient for that variable (scaled by the common row denominator) to
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// the corresponding entry in the new row.
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tableau(nRow - 1, pos) += coeffs[i] * tableau(nRow - 1, 0);
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continue;
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}
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// If the variable is in row position, we need to add that row to the new
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// row, scaled by the coefficient for the variable, accounting for the two
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// rows potentially having different denominators. The new denominator is
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// the lcm of the two.
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int64_t lcm = mlir::lcm(tableau(nRow - 1, 0), tableau(pos, 0));
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int64_t nRowCoeff = lcm / tableau(nRow - 1, 0);
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int64_t idxRowCoeff = coeffs[i] * (lcm / tableau(pos, 0));
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tableau(nRow - 1, 0) = lcm;
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for (unsigned col = 1; col < nCol; ++col)
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tableau(nRow - 1, col) =
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nRowCoeff * tableau(nRow - 1, col) + idxRowCoeff * tableau(pos, col);
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}
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normalizeRow(nRow - 1);
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// Push to undo log along with the index of the new constraint.
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undoLog.push_back(UndoLogEntry::RemoveLastConstraint);
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return con.size() - 1;
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}
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/// Normalize the row by removing factors that are common between the
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/// denominator and all the numerator coefficients.
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void Simplex::normalizeRow(unsigned row) {
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int64_t gcd = 0;
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for (unsigned col = 0; col < nCol; ++col) {
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if (gcd == 1)
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break;
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gcd = llvm::greatestCommonDivisor(gcd, std::abs(tableau(row, col)));
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}
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for (unsigned col = 0; col < nCol; ++col)
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tableau(row, col) /= gcd;
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}
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namespace {
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bool signMatchesDirection(int64_t elem, Direction direction) {
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assert(elem != 0 && "elem should not be 0");
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return direction == Direction::Up ? elem > 0 : elem < 0;
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}
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Direction flippedDirection(Direction direction) {
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return direction == Direction::Up ? Direction::Down : Simplex::Direction::Up;
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}
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} // anonymous namespace
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/// Find a pivot to change the sample value of the row in the specified
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/// direction. The returned pivot row will involve `row` if and only if the
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/// unknown is unbounded in the specified direction.
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///
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/// To increase (resp. decrease) the value of a row, we need to find a live
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/// column with a non-zero coefficient. If the coefficient is positive, we need
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/// to increase (decrease) the value of the column, and if the coefficient is
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/// negative, we need to decrease (increase) the value of the column. Also,
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/// we cannot decrease the sample value of restricted columns.
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///
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/// If multiple columns are valid, we break ties by considering a lexicographic
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/// ordering where we prefer unknowns with lower index.
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Optional<Simplex::Pivot> Simplex::findPivot(int row,
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Direction direction) const {
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Optional<unsigned> col;
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for (unsigned j = 2; j < nCol; ++j) {
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int64_t elem = tableau(row, j);
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if (elem == 0)
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continue;
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if (unknownFromColumn(j).restricted &&
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!signMatchesDirection(elem, direction))
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continue;
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if (!col || colUnknown[j] < colUnknown[*col])
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col = j;
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}
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if (!col)
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return {};
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Direction newDirection =
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tableau(row, *col) < 0 ? flippedDirection(direction) : direction;
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Optional<unsigned> maybePivotRow = findPivotRow(row, newDirection, *col);
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return Pivot{maybePivotRow.getValueOr(row), *col};
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}
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/// Swap the associated unknowns for the row and the column.
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///
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/// First we swap the index associated with the row and column. Then we update
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/// the unknowns to reflect their new position and orientation.
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void Simplex::swapRowWithCol(unsigned row, unsigned col) {
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std::swap(rowUnknown[row], colUnknown[col]);
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Unknown &uCol = unknownFromColumn(col);
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Unknown &uRow = unknownFromRow(row);
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uCol.orientation = Orientation::Column;
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uRow.orientation = Orientation::Row;
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uCol.pos = col;
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uRow.pos = row;
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}
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void Simplex::pivot(Pivot pair) { pivot(pair.row, pair.column); }
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/// Pivot pivotRow and pivotCol.
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///
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/// Let R be the pivot row unknown and let C be the pivot col unknown.
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/// Since initially R = a*C + sum b_i * X_i
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/// (where the sum is over the other column's unknowns, x_i)
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/// C = (R - (sum b_i * X_i))/a
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///
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/// Let u be some other row unknown.
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/// u = c*C + sum d_i * X_i
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/// So u = c*(R - sum b_i * X_i)/a + sum d_i * X_i
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///
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/// This results in the following transform:
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/// pivot col other col pivot col other col
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/// pivot row a b -> pivot row 1/a -b/a
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/// other row c d other row c/a d - bc/a
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///
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/// Taking into account the common denominators p and q:
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///
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/// pivot col other col pivot col other col
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/// pivot row a/p b/p -> pivot row p/a -b/a
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/// other row c/q d/q other row cp/aq (da - bc)/aq
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///
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/// The pivot row transform is accomplished be swapping a with the pivot row's
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/// common denominator and negating the pivot row except for the pivot column
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/// element.
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void Simplex::pivot(unsigned pivotRow, unsigned pivotCol) {
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assert(pivotCol >= 2 && "Refusing to pivot invalid column");
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swapRowWithCol(pivotRow, pivotCol);
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std::swap(tableau(pivotRow, 0), tableau(pivotRow, pivotCol));
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// We need to negate the whole pivot row except for the pivot column.
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if (tableau(pivotRow, 0) < 0) {
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// If the denominator is negative, we negate the row by simply negating the
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// denominator.
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tableau(pivotRow, 0) = -tableau(pivotRow, 0);
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tableau(pivotRow, pivotCol) = -tableau(pivotRow, pivotCol);
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} else {
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for (unsigned col = 1; col < nCol; ++col) {
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if (col == pivotCol)
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continue;
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tableau(pivotRow, col) = -tableau(pivotRow, col);
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}
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}
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normalizeRow(pivotRow);
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for (unsigned row = nRedundant; row < nRow; ++row) {
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if (row == pivotRow)
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continue;
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if (tableau(row, pivotCol) == 0) // Nothing to do.
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continue;
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tableau(row, 0) *= tableau(pivotRow, 0);
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for (unsigned j = 1; j < nCol; ++j) {
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if (j == pivotCol)
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continue;
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// Add rather than subtract because the pivot row has been negated.
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tableau(row, j) = tableau(row, j) * tableau(pivotRow, 0) +
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tableau(row, pivotCol) * tableau(pivotRow, j);
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}
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tableau(row, pivotCol) *= tableau(pivotRow, pivotCol);
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normalizeRow(row);
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}
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}
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/// Perform pivots until the unknown has a non-negative sample value or until
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/// no more upward pivots can be performed. Return the sign of the final sample
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/// value.
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LogicalResult Simplex::restoreRow(Unknown &u) {
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assert(u.orientation == Orientation::Row &&
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"unknown should be in row position");
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while (tableau(u.pos, 1) < 0) {
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Optional<Pivot> maybePivot = findPivot(u.pos, Direction::Up);
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if (!maybePivot)
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break;
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pivot(*maybePivot);
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if (u.orientation == Orientation::Column)
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return LogicalResult::Success; // the unknown is unbounded above.
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}
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return success(tableau(u.pos, 1) >= 0);
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}
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/// Find a row that can be used to pivot the column in the specified direction.
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/// This returns an empty optional if and only if the column is unbounded in the
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/// specified direction (ignoring skipRow, if skipRow is set).
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///
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/// If skipRow is set, this row is not considered, and (if it is restricted) its
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/// restriction may be violated by the returned pivot. Usually, skipRow is set
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/// because we don't want to move it to column position unless it is unbounded,
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/// and we are either trying to increase the value of skipRow or explicitly
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/// trying to make skipRow negative, so we are not concerned about this.
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///
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/// If the direction is up (resp. down) and a restricted row has a negative
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/// (positive) coefficient for the column, then this row imposes a bound on how
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/// much the sample value of the column can change. Such a row with constant
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/// term c and coefficient f for the column imposes a bound of c/|f| on the
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/// change in sample value (in the specified direction). (note that c is
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/// non-negative here since the row is restricted and the tableau is consistent)
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///
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/// We iterate through the rows and pick the row which imposes the most
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/// stringent bound, since pivoting with a row changes the row's sample value to
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/// 0 and hence saturates the bound it imposes. We break ties between rows that
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/// impose the same bound by considering a lexicographic ordering where we
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/// prefer unknowns with lower index value.
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Optional<unsigned> Simplex::findPivotRow(Optional<unsigned> skipRow,
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Direction direction,
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unsigned col) const {
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Optional<unsigned> retRow;
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int64_t retElem, retConst;
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for (unsigned row = nRedundant; row < nRow; ++row) {
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if (skipRow && row == *skipRow)
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continue;
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int64_t elem = tableau(row, col);
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if (elem == 0)
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continue;
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if (!unknownFromRow(row).restricted)
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continue;
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if (signMatchesDirection(elem, direction))
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continue;
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int64_t constTerm = tableau(row, 1);
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if (!retRow) {
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retRow = row;
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retElem = elem;
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retConst = constTerm;
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continue;
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}
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int64_t diff = retConst * elem - constTerm * retElem;
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if ((diff == 0 && rowUnknown[row] < rowUnknown[*retRow]) ||
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(diff != 0 && !signMatchesDirection(diff, direction))) {
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retRow = row;
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retElem = elem;
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retConst = constTerm;
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}
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}
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return retRow;
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}
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bool Simplex::isEmpty() const { return empty; }
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void Simplex::swapRows(unsigned i, unsigned j) {
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if (i == j)
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return;
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tableau.swapRows(i, j);
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std::swap(rowUnknown[i], rowUnknown[j]);
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unknownFromRow(i).pos = i;
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unknownFromRow(j).pos = j;
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}
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/// Mark this tableau empty and push an entry to the undo stack.
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void Simplex::markEmpty() {
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undoLog.push_back(UndoLogEntry::UnmarkEmpty);
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empty = true;
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}
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/// Add an inequality to the tableau. If coeffs is c_0, c_1, ... c_n, where n
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/// is the curent number of variables, then the corresponding inequality is
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/// c_n + c_0*x_0 + c_1*x_1 + ... + c_{n-1}*x_{n-1} >= 0.
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///
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/// We add the inequality and mark it as restricted. We then try to make its
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/// sample value non-negative. If this is not possible, the tableau has become
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/// empty and we mark it as such.
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void Simplex::addInequality(ArrayRef<int64_t> coeffs) {
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unsigned conIndex = addRow(coeffs);
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Unknown &u = con[conIndex];
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u.restricted = true;
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LogicalResult result = restoreRow(u);
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if (failed(result))
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markEmpty();
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}
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/// Add an equality to the tableau. If coeffs is c_0, c_1, ... c_n, where n
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/// is the curent number of variables, then the corresponding equality is
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/// c_n + c_0*x_0 + c_1*x_1 + ... + c_{n-1}*x_{n-1} == 0.
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///
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/// We simply add two opposing inequalities, which force the expression to
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/// be zero.
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void Simplex::addEquality(ArrayRef<int64_t> coeffs) {
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addInequality(coeffs);
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SmallVector<int64_t, 8> negatedCoeffs;
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for (int64_t coeff : coeffs)
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negatedCoeffs.emplace_back(-coeff);
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addInequality(negatedCoeffs);
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}
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unsigned Simplex::numVariables() const { return var.size(); }
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unsigned Simplex::numConstraints() const { return con.size(); }
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/// Return a snapshot of the curent state. This is just the current size of the
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/// undo log.
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unsigned Simplex::getSnapshot() const { return undoLog.size(); }
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void Simplex::undo(UndoLogEntry entry) {
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if (entry == UndoLogEntry::RemoveLastConstraint) {
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Unknown &constraint = con.back();
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if (constraint.orientation == Orientation::Column) {
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unsigned column = constraint.pos;
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Optional<unsigned> row;
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// Try to find any pivot row for this column that preserves tableau
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// consistency (except possibly the column itself, which is going to be
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// deallocated anyway).
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//
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// If no pivot row is found in either direction, then the unknown is
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// unbounded in both directions and we are free to
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// perform any pivot at all. To do this, we just need to find any row with
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// a non-zero coefficient for the column.
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if (Optional<unsigned> maybeRow =
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findPivotRow({}, Direction::Up, column)) {
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row = *maybeRow;
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} else if (Optional<unsigned> maybeRow =
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findPivotRow({}, Direction::Down, column)) {
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row = *maybeRow;
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} else {
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// The loop doesn't find a pivot row only if the column has zero
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// coefficients for every row. But the unknown is a constraint,
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// so it was added initially as a row. Such a row could never have been
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// pivoted to a column. So a pivot row will always be found.
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for (unsigned i = nRedundant; i < nRow; ++i) {
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if (tableau(i, column) != 0) {
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row = i;
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break;
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}
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}
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}
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assert(row.hasValue() && "No pivot row found!");
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pivot(*row, column);
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}
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// Move this unknown to the last row and remove the last row from the
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// tableau.
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swapRows(constraint.pos, nRow - 1);
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// It is not strictly necessary to shrink the tableau, but for now we
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// maintain the invariant that the tableau has exactly nRow rows.
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tableau.resizeVertically(nRow - 1);
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nRow--;
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rowUnknown.pop_back();
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con.pop_back();
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} else if (entry == UndoLogEntry::UnmarkEmpty) {
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empty = false;
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} else if (entry == UndoLogEntry::UnmarkLastRedundant) {
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nRedundant--;
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}
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}
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/// Rollback to the specified snapshot.
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///
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/// We undo all the log entries until the log size when the snapshot was taken
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/// is reached.
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void Simplex::rollback(unsigned snapshot) {
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while (undoLog.size() > snapshot) {
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undo(undoLog.back());
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undoLog.pop_back();
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}
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}
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/// Add all the constraints from the given FlatAffineConstraints.
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void Simplex::intersectFlatAffineConstraints(const FlatAffineConstraints &fac) {
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assert(fac.getNumIds() == numVariables() &&
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"FlatAffineConstraints must have same dimensionality as simplex");
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for (unsigned i = 0, e = fac.getNumInequalities(); i < e; ++i)
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addInequality(fac.getInequality(i));
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for (unsigned i = 0, e = fac.getNumEqualities(); i < e; ++i)
|
|
addEquality(fac.getEquality(i));
|
|
}
|
|
|
|
Optional<Fraction> Simplex::computeRowOptimum(Direction direction,
|
|
unsigned row) {
|
|
// Keep trying to find a pivot for the row in the specified direction.
|
|
while (Optional<Pivot> maybePivot = findPivot(row, direction)) {
|
|
// If findPivot returns a pivot involving the row itself, then the optimum
|
|
// is unbounded, so we return None.
|
|
if (maybePivot->row == row)
|
|
return {};
|
|
pivot(*maybePivot);
|
|
}
|
|
|
|
// The row has reached its optimal sample value, which we return.
|
|
// The sample value is the entry in the constant column divided by the common
|
|
// denominator for this row.
|
|
return Fraction(tableau(row, 1), tableau(row, 0));
|
|
}
|
|
|
|
/// Compute the optimum of the specified expression in the specified direction,
|
|
/// or None if it is unbounded.
|
|
Optional<Fraction> Simplex::computeOptimum(Direction direction,
|
|
ArrayRef<int64_t> coeffs) {
|
|
assert(!empty && "Tableau should not be empty");
|
|
|
|
unsigned snapshot = getSnapshot();
|
|
unsigned conIndex = addRow(coeffs);
|
|
unsigned row = con[conIndex].pos;
|
|
Optional<Fraction> optimum = computeRowOptimum(direction, row);
|
|
rollback(snapshot);
|
|
return optimum;
|
|
}
|
|
|
|
/// Redundant constraints are those that are in row orientation and lie in
|
|
/// rows 0 to nRedundant - 1.
|
|
bool Simplex::isMarkedRedundant(unsigned constraintIndex) const {
|
|
const Unknown &u = con[constraintIndex];
|
|
return u.orientation == Orientation::Row && u.pos < nRedundant;
|
|
}
|
|
|
|
/// Mark the specified row redundant.
|
|
///
|
|
/// This is done by moving the unknown to the end of the block of redundant
|
|
/// rows (namely, to row nRedundant) and incrementing nRedundant to
|
|
/// accomodate the new redundant row.
|
|
void Simplex::markRowRedundant(Unknown &u) {
|
|
assert(u.orientation == Orientation::Row &&
|
|
"Unknown should be in row position!");
|
|
swapRows(u.pos, nRedundant);
|
|
++nRedundant;
|
|
undoLog.emplace_back(UndoLogEntry::UnmarkLastRedundant);
|
|
}
|
|
|
|
/// Find a subset of constraints that is redundant and mark them redundant.
|
|
void Simplex::detectRedundant() {
|
|
// It is not meaningful to talk about redundancy for empty sets.
|
|
if (empty)
|
|
return;
|
|
|
|
// Iterate through the constraints and check for each one if it can attain
|
|
// negative sample values. If it can, it's not redundant. Otherwise, it is.
|
|
// We mark redundant constraints redundant.
|
|
//
|
|
// Constraints that get marked redundant in one iteration are not respected
|
|
// when checking constraints in later iterations. This prevents, for example,
|
|
// two identical constraints both being marked redundant since each is
|
|
// redundant given the other one. In this example, only the first of the
|
|
// constraints that is processed will get marked redundant, as it should be.
|
|
for (Unknown &u : con) {
|
|
if (u.orientation == Orientation::Column) {
|
|
unsigned column = u.pos;
|
|
Optional<unsigned> pivotRow = findPivotRow({}, Direction::Down, column);
|
|
// If no downward pivot is returned, the constraint is unbounded below
|
|
// and hence not redundant.
|
|
if (!pivotRow)
|
|
continue;
|
|
pivot(*pivotRow, column);
|
|
}
|
|
|
|
unsigned row = u.pos;
|
|
Optional<Fraction> minimum = computeRowOptimum(Direction::Down, row);
|
|
if (!minimum || *minimum < Fraction(0, 1)) {
|
|
// Constraint is unbounded below or can attain negative sample values and
|
|
// hence is not redundant.
|
|
restoreRow(u);
|
|
continue;
|
|
}
|
|
|
|
markRowRedundant(u);
|
|
}
|
|
}
|
|
|
|
bool Simplex::isUnbounded() {
|
|
if (empty)
|
|
return false;
|
|
|
|
SmallVector<int64_t, 8> dir(var.size() + 1);
|
|
for (unsigned i = 0; i < var.size(); ++i) {
|
|
dir[i] = 1;
|
|
|
|
Optional<Fraction> maybeMax = computeOptimum(Direction::Up, dir);
|
|
if (!maybeMax)
|
|
return true;
|
|
|
|
Optional<Fraction> maybeMin = computeOptimum(Direction::Down, dir);
|
|
if (!maybeMin)
|
|
return true;
|
|
|
|
dir[i] = 0;
|
|
}
|
|
return false;
|
|
}
|
|
|
|
/// Make a tableau to represent a pair of points in the original tableau.
|
|
///
|
|
/// The product constraints and variables are stored as: first A's, then B's.
|
|
///
|
|
/// The product tableau has row layout:
|
|
/// A's redundant rows, B's redundant rows, A's other rows, B's other rows.
|
|
///
|
|
/// It has column layout:
|
|
/// denominator, constant, A's columns, B's columns.
|
|
Simplex Simplex::makeProduct(const Simplex &a, const Simplex &b) {
|
|
unsigned numVar = a.numVariables() + b.numVariables();
|
|
unsigned numCon = a.numConstraints() + b.numConstraints();
|
|
Simplex result(numVar);
|
|
|
|
result.tableau.resizeVertically(numCon);
|
|
result.empty = a.empty || b.empty;
|
|
|
|
auto concat = [](ArrayRef<Unknown> v, ArrayRef<Unknown> w) {
|
|
SmallVector<Unknown, 8> result;
|
|
result.reserve(v.size() + w.size());
|
|
result.insert(result.end(), v.begin(), v.end());
|
|
result.insert(result.end(), w.begin(), w.end());
|
|
return result;
|
|
};
|
|
result.con = concat(a.con, b.con);
|
|
result.var = concat(a.var, b.var);
|
|
|
|
auto indexFromBIndex = [&](int index) {
|
|
return index >= 0 ? a.numVariables() + index
|
|
: ~(a.numConstraints() + ~index);
|
|
};
|
|
|
|
result.colUnknown.assign(2, nullIndex);
|
|
for (unsigned i = 2; i < a.nCol; ++i) {
|
|
result.colUnknown.push_back(a.colUnknown[i]);
|
|
result.unknownFromIndex(result.colUnknown.back()).pos =
|
|
result.colUnknown.size() - 1;
|
|
}
|
|
for (unsigned i = 2; i < b.nCol; ++i) {
|
|
result.colUnknown.push_back(indexFromBIndex(b.colUnknown[i]));
|
|
result.unknownFromIndex(result.colUnknown.back()).pos =
|
|
result.colUnknown.size() - 1;
|
|
}
|
|
|
|
auto appendRowFromA = [&](unsigned row) {
|
|
for (unsigned col = 0; col < a.nCol; ++col)
|
|
result.tableau(result.nRow, col) = a.tableau(row, col);
|
|
result.rowUnknown.push_back(a.rowUnknown[row]);
|
|
result.unknownFromIndex(result.rowUnknown.back()).pos =
|
|
result.rowUnknown.size() - 1;
|
|
result.nRow++;
|
|
};
|
|
|
|
// Also fixes the corresponding entry in rowUnknown and var/con (as the case
|
|
// may be).
|
|
auto appendRowFromB = [&](unsigned row) {
|
|
result.tableau(result.nRow, 0) = b.tableau(row, 0);
|
|
result.tableau(result.nRow, 1) = b.tableau(row, 1);
|
|
|
|
unsigned offset = a.nCol - 2;
|
|
for (unsigned col = 2; col < b.nCol; ++col)
|
|
result.tableau(result.nRow, offset + col) = b.tableau(row, col);
|
|
result.rowUnknown.push_back(indexFromBIndex(b.rowUnknown[row]));
|
|
result.unknownFromIndex(result.rowUnknown.back()).pos =
|
|
result.rowUnknown.size() - 1;
|
|
result.nRow++;
|
|
};
|
|
|
|
result.nRedundant = a.nRedundant + b.nRedundant;
|
|
for (unsigned row = 0; row < a.nRedundant; ++row)
|
|
appendRowFromA(row);
|
|
for (unsigned row = 0; row < b.nRedundant; ++row)
|
|
appendRowFromB(row);
|
|
for (unsigned row = a.nRedundant; row < a.nRow; ++row)
|
|
appendRowFromA(row);
|
|
for (unsigned row = b.nRedundant; row < b.nRow; ++row)
|
|
appendRowFromB(row);
|
|
|
|
return result;
|
|
}
|
|
|
|
Optional<SmallVector<int64_t, 8>> Simplex::getSamplePointIfIntegral() const {
|
|
// The tableau is empty, so no sample point exists.
|
|
if (empty)
|
|
return {};
|
|
|
|
SmallVector<int64_t, 8> sample;
|
|
// Push the sample value for each variable into the vector.
|
|
for (const Unknown &u : var) {
|
|
if (u.orientation == Orientation::Column) {
|
|
// If the variable is in column position, its sample value is zero.
|
|
sample.push_back(0);
|
|
} else {
|
|
// If the variable is in row position, its sample value is the entry in
|
|
// the constant column divided by the entry in the common denominator
|
|
// column. If this is not an integer, then the sample point is not
|
|
// integral so we return None.
|
|
if (tableau(u.pos, 1) % tableau(u.pos, 0) != 0)
|
|
return {};
|
|
sample.push_back(tableau(u.pos, 1) / tableau(u.pos, 0));
|
|
}
|
|
}
|
|
return sample;
|
|
}
|
|
|
|
/// Given a simplex for a polytope, construct a new simplex whose variables are
|
|
/// identified with a pair of points (x, y) in the original polytope. Supports
|
|
/// some operations needed for generalized basis reduction. In what follows,
|
|
/// dotProduct(x, y) = x_1 * y_1 + x_2 * y_2 + ... x_n * y_n where n is the
|
|
/// dimension of the original polytope.
|
|
///
|
|
/// This supports adding equality constraints dotProduct(dir, x - y) == 0. It
|
|
/// also supports rolling back this addition, by maintaining a snapshot stack
|
|
/// that contains a snapshot of the Simplex's state for each equality, just
|
|
/// before that equality was added.
|
|
class GBRSimplex {
|
|
using Orientation = Simplex::Orientation;
|
|
|
|
public:
|
|
GBRSimplex(const Simplex &originalSimplex)
|
|
: simplex(Simplex::makeProduct(originalSimplex, originalSimplex)),
|
|
simplexConstraintOffset(simplex.numConstraints()) {}
|
|
|
|
/// Add an equality dotProduct(dir, x - y) == 0.
|
|
/// First pushes a snapshot for the current simplex state to the stack so
|
|
/// that this can be rolled back later.
|
|
void addEqualityForDirection(ArrayRef<int64_t> dir) {
|
|
assert(
|
|
std::any_of(dir.begin(), dir.end(), [](int64_t x) { return x != 0; }) &&
|
|
"Direction passed is the zero vector!");
|
|
snapshotStack.push_back(simplex.getSnapshot());
|
|
simplex.addEquality(getCoeffsForDirection(dir));
|
|
}
|
|
|
|
/// Compute max(dotProduct(dir, x - y)) and save the dual variables for only
|
|
/// the direction equalities to `dual`.
|
|
Fraction computeWidthAndDuals(ArrayRef<int64_t> dir,
|
|
SmallVectorImpl<int64_t> &dual,
|
|
int64_t &dualDenom) {
|
|
unsigned snap = simplex.getSnapshot();
|
|
unsigned conIndex = simplex.addRow(getCoeffsForDirection(dir));
|
|
unsigned row = simplex.con[conIndex].pos;
|
|
Optional<Fraction> maybeWidth =
|
|
simplex.computeRowOptimum(Simplex::Direction::Up, row);
|
|
assert(maybeWidth.hasValue() && "Width should not be unbounded!");
|
|
dualDenom = simplex.tableau(row, 0);
|
|
dual.clear();
|
|
// The increment is i += 2 because equalities are added as two inequalities,
|
|
// one positive and one negative. Each iteration processes one equality.
|
|
for (unsigned i = simplexConstraintOffset; i < conIndex; i += 2) {
|
|
// The dual variable is the negative of the coefficient of the new row
|
|
// in the column of the constraint, if the constraint is in a column.
|
|
// Note that the second inequality for the equality is negated.
|
|
//
|
|
// We want the dual for the original equality. If the positive inequality
|
|
// is in column position, the negative of its row coefficient is the
|
|
// desired dual. If the negative inequality is in column position, its row
|
|
// coefficient is the desired dual. (its coefficients are already the
|
|
// negated coefficients of the original equality, so we don't need to
|
|
// negate it now.)
|
|
//
|
|
// If neither are in column position, we move the negated inequality to
|
|
// column position. Since the inequality must have sample value zero
|
|
// (since it corresponds to an equality), we are free to pivot with
|
|
// any column. Since both the unknowns have sample value before and after
|
|
// pivoting, no other sample values will change and the tableau will
|
|
// remain consistent. To pivot, we just need to find a column that has a
|
|
// non-zero coefficient in this row. There must be one since otherwise the
|
|
// equality would be 0 == 0, which should never be passed to
|
|
// addEqualityForDirection.
|
|
//
|
|
// After finding a column, we pivot with the column, after which we can
|
|
// get the dual from the inequality in column position as explained above.
|
|
if (simplex.con[i].orientation == Orientation::Column) {
|
|
dual.push_back(-simplex.tableau(row, simplex.con[i].pos));
|
|
} else {
|
|
if (simplex.con[i + 1].orientation == Orientation::Row) {
|
|
unsigned ineqRow = simplex.con[i + 1].pos;
|
|
// Since it is an equality, the sample value must be zero.
|
|
assert(simplex.tableau(ineqRow, 1) == 0 &&
|
|
"Equality's sample value must be zero.");
|
|
for (unsigned col = 2; col < simplex.nCol; ++col) {
|
|
if (simplex.tableau(ineqRow, col) != 0) {
|
|
simplex.pivot(ineqRow, col);
|
|
break;
|
|
}
|
|
}
|
|
assert(simplex.con[i + 1].orientation == Orientation::Column &&
|
|
"No pivot found. Equality has all-zeros row in tableau!");
|
|
}
|
|
dual.push_back(simplex.tableau(row, simplex.con[i + 1].pos));
|
|
}
|
|
}
|
|
simplex.rollback(snap);
|
|
return *maybeWidth;
|
|
}
|
|
|
|
/// Remove the last equality that was added through addEqualityForDirection.
|
|
///
|
|
/// We do this by rolling back to the snapshot at the top of the stack, which
|
|
/// should be a snapshot taken just before the last equality was added.
|
|
void removeLastEquality() {
|
|
assert(!snapshotStack.empty() && "Snapshot stack is empty!");
|
|
simplex.rollback(snapshotStack.back());
|
|
snapshotStack.pop_back();
|
|
}
|
|
|
|
private:
|
|
/// Returns coefficients of the expression 'dot_product(dir, x - y)',
|
|
/// i.e., dir_1 * x_1 + dir_2 * x_2 + ... + dir_n * x_n
|
|
/// - dir_1 * y_1 - dir_2 * y_2 - ... - dir_n * y_n,
|
|
/// where n is the dimension of the original polytope.
|
|
SmallVector<int64_t, 8> getCoeffsForDirection(ArrayRef<int64_t> dir) {
|
|
assert(2 * dir.size() == simplex.numVariables() &&
|
|
"Direction vector has wrong dimensionality");
|
|
SmallVector<int64_t, 8> coeffs(dir.begin(), dir.end());
|
|
coeffs.reserve(2 * dir.size());
|
|
for (int64_t coeff : dir)
|
|
coeffs.push_back(-coeff);
|
|
coeffs.push_back(0); // constant term
|
|
return coeffs;
|
|
}
|
|
|
|
Simplex simplex;
|
|
/// The first index of the equality constraints, the index immediately after
|
|
/// the last constraint in the initial product simplex.
|
|
unsigned simplexConstraintOffset;
|
|
/// A stack of snapshots, used for rolling back.
|
|
SmallVector<unsigned, 8> snapshotStack;
|
|
};
|
|
|
|
/// Reduce the basis to try and find a direction in which the polytope is
|
|
/// "thin". This only works for bounded polytopes.
|
|
///
|
|
/// This is an implementation of the algorithm described in the paper
|
|
/// "An Implementation of Generalized Basis Reduction for Integer Programming"
|
|
/// by W. Cook, T. Rutherford, H. E. Scarf, D. Shallcross.
|
|
///
|
|
/// Let b_{level}, b_{level + 1}, ... b_n be the current basis.
|
|
/// Let width_i(v) = max <v, x - y> where x and y are points in the original
|
|
/// polytope such that <b_j, x - y> = 0 is satisfied for all level <= j < i.
|
|
///
|
|
/// In every iteration, we first replace b_{i+1} with b_{i+1} + u*b_i, where u
|
|
/// is the integer such that width_i(b_{i+1} + u*b_i) is minimized. Let dual_i
|
|
/// be the dual variable associated with the constraint <b_i, x - y> = 0 when
|
|
/// computing width_{i+1}(b_{i+1}). It can be shown that dual_i is the
|
|
/// minimizing value of u, if it were allowed to be fractional. Due to
|
|
/// convexity, the minimizing integer value is either floor(dual_i) or
|
|
/// ceil(dual_i), so we just need to check which of these gives a lower
|
|
/// width_{i+1} value. If dual_i turned out to be an integer, then u = dual_i.
|
|
///
|
|
/// Now if width_i(b_{i+1}) < 0.75 * width_i(b_i), we swap b_i and (the new)
|
|
/// b_{i + 1} and decrement i (unless i = level, in which case we stay at the
|
|
/// same i). Otherwise, we increment i.
|
|
///
|
|
/// We keep f values and duals cached and invalidate them when necessary.
|
|
/// Whenever possible, we use them instead of recomputing them. We implement the
|
|
/// algorithm as follows.
|
|
///
|
|
/// In an iteration at i we need to compute:
|
|
/// a) width_i(b_{i + 1})
|
|
/// b) width_i(b_i)
|
|
/// c) the integer u that minimizes width_i(b_{i + 1} + u*b_i)
|
|
///
|
|
/// If width_i(b_i) is not already cached, we compute it.
|
|
///
|
|
/// If the duals are not already cached, we compute width_{i+1}(b_{i+1}) and
|
|
/// store the duals from this computation.
|
|
///
|
|
/// We call updateBasisWithUAndGetFCandidate, which finds the minimizing value
|
|
/// of u as explained before, caches the duals from this computation, sets
|
|
/// b_{i+1} to b_{i+1} + u*b_i, and returns the new value of width_i(b_{i+1}).
|
|
///
|
|
/// Now if width_i(b_{i+1}) < 0.75 * width_i(b_i), we swap b_i and b_{i+1} and
|
|
/// decrement i, resulting in the basis
|
|
/// ... b_{i - 1}, b_{i + 1} + u*b_i, b_i, b_{i+2}, ...
|
|
/// with corresponding f values
|
|
/// ... width_{i-1}(b_{i-1}), width_i(b_{i+1} + u*b_i), width_{i+1}(b_i), ...
|
|
/// The values up to i - 1 remain unchanged. We have just gotten the middle
|
|
/// value from updateBasisWithUAndGetFCandidate, so we can update that in the
|
|
/// cache. The value at width_{i+1}(b_i) is unknown, so we evict this value from
|
|
/// the cache. The iteration after decrementing needs exactly the duals from the
|
|
/// computation of width_i(b_{i + 1} + u*b_i), so we keep these in the cache.
|
|
///
|
|
/// When incrementing i, no cached f values get invalidated. However, the cached
|
|
/// duals do get invalidated as the duals for the higher levels are different.
|
|
void Simplex::reduceBasis(Matrix &basis, unsigned level) {
|
|
const Fraction epsilon(3, 4);
|
|
|
|
if (level == basis.getNumRows() - 1)
|
|
return;
|
|
|
|
GBRSimplex gbrSimplex(*this);
|
|
SmallVector<Fraction, 8> width;
|
|
SmallVector<int64_t, 8> dual;
|
|
int64_t dualDenom;
|
|
|
|
// Finds the value of u that minimizes width_i(b_{i+1} + u*b_i), caches the
|
|
// duals from this computation, sets b_{i+1} to b_{i+1} + u*b_i, and returns
|
|
// the new value of width_i(b_{i+1}).
|
|
//
|
|
// If dual_i is not an integer, the minimizing value must be either
|
|
// floor(dual_i) or ceil(dual_i). We compute the expression for both and
|
|
// choose the minimizing value.
|
|
//
|
|
// If dual_i is an integer, we don't need to perform these computations. We
|
|
// know that in this case,
|
|
// a) u = dual_i.
|
|
// b) one can show that dual_j for j < i are the same duals we would have
|
|
// gotten from computing width_i(b_{i + 1} + u*b_i), so the correct duals
|
|
// are the ones already in the cache.
|
|
// c) width_i(b_{i+1} + u*b_i) = min_{alpha} width_i(b_{i+1} + alpha * b_i),
|
|
// which
|
|
// one can show is equal to width_{i+1}(b_{i+1}). The latter value must
|
|
// be in the cache, so we get it from there and return it.
|
|
auto updateBasisWithUAndGetFCandidate = [&](unsigned i) -> Fraction {
|
|
assert(i < level + dual.size() && "dual_i is not known!");
|
|
|
|
int64_t u = floorDiv(dual[i - level], dualDenom);
|
|
basis.addToRow(i, i + 1, u);
|
|
if (dual[i - level] % dualDenom != 0) {
|
|
SmallVector<int64_t, 8> candidateDual[2];
|
|
int64_t candidateDualDenom[2];
|
|
Fraction widthI[2];
|
|
|
|
// Initially u is floor(dual) and basis reflects this.
|
|
widthI[0] = gbrSimplex.computeWidthAndDuals(
|
|
basis.getRow(i + 1), candidateDual[0], candidateDualDenom[0]);
|
|
|
|
// Now try ceil(dual), i.e. floor(dual) + 1.
|
|
++u;
|
|
basis.addToRow(i, i + 1, 1);
|
|
widthI[1] = gbrSimplex.computeWidthAndDuals(
|
|
basis.getRow(i + 1), candidateDual[1], candidateDualDenom[1]);
|
|
|
|
unsigned j = widthI[0] < widthI[1] ? 0 : 1;
|
|
if (j == 0)
|
|
// Subtract 1 to go from u = ceil(dual) back to floor(dual).
|
|
basis.addToRow(i, i + 1, -1);
|
|
dual = std::move(candidateDual[j]);
|
|
dualDenom = candidateDualDenom[j];
|
|
return widthI[j];
|
|
}
|
|
assert(i + 1 - level < width.size() && "width_{i+1} wasn't saved");
|
|
// When dual minimizes f_i(b_{i+1} + dual*b_i), this is equal to
|
|
// width_{i+1}(b_{i+1}).
|
|
return width[i + 1 - level];
|
|
};
|
|
|
|
// In the ith iteration of the loop, gbrSimplex has constraints for directions
|
|
// from `level` to i - 1.
|
|
unsigned i = level;
|
|
while (i < basis.getNumRows() - 1) {
|
|
if (i >= level + width.size()) {
|
|
// We don't even know the value of f_i(b_i), so let's find that first.
|
|
// We have to do this first since later we assume that width already
|
|
// contains values up to and including i.
|
|
|
|
assert((i == 0 || i - 1 < level + width.size()) &&
|
|
"We are at level i but we don't know the value of width_{i-1}");
|
|
|
|
// We don't actually use these duals at all, but it doesn't matter
|
|
// because this case should only occur when i is level, and there are no
|
|
// duals in that case anyway.
|
|
assert(i == level && "This case should only occur when i == level");
|
|
width.push_back(
|
|
gbrSimplex.computeWidthAndDuals(basis.getRow(i), dual, dualDenom));
|
|
}
|
|
|
|
if (i >= level + dual.size()) {
|
|
assert(i + 1 >= level + width.size() &&
|
|
"We don't know dual_i but we know width_{i+1}");
|
|
// We don't know dual for our level, so let's find it.
|
|
gbrSimplex.addEqualityForDirection(basis.getRow(i));
|
|
width.push_back(gbrSimplex.computeWidthAndDuals(basis.getRow(i + 1), dual,
|
|
dualDenom));
|
|
gbrSimplex.removeLastEquality();
|
|
}
|
|
|
|
// This variable stores width_i(b_{i+1} + u*b_i).
|
|
Fraction widthICandidate = updateBasisWithUAndGetFCandidate(i);
|
|
if (widthICandidate < epsilon * width[i - level]) {
|
|
basis.swapRows(i, i + 1);
|
|
width[i - level] = widthICandidate;
|
|
// The values of width_{i+1}(b_{i+1}) and higher may change after the
|
|
// swap, so we remove the cached values here.
|
|
width.resize(i - level + 1);
|
|
if (i == level) {
|
|
dual.clear();
|
|
continue;
|
|
}
|
|
|
|
gbrSimplex.removeLastEquality();
|
|
i--;
|
|
continue;
|
|
}
|
|
|
|
// Invalidate duals since the higher level needs to recompute its own duals.
|
|
dual.clear();
|
|
gbrSimplex.addEqualityForDirection(basis.getRow(i));
|
|
i++;
|
|
}
|
|
}
|
|
|
|
/// Search for an integer sample point using a branch and bound algorithm.
|
|
///
|
|
/// Each row in the basis matrix is a vector, and the set of basis vectors
|
|
/// should span the space. Initially this is the identity matrix,
|
|
/// i.e., the basis vectors are just the variables.
|
|
///
|
|
/// In every level, a value is assigned to the level-th basis vector, as
|
|
/// follows. Compute the minimum and maximum rational values of this direction.
|
|
/// If only one integer point lies in this range, constrain the variable to
|
|
/// have this value and recurse to the next variable.
|
|
///
|
|
/// If the range has multiple values, perform generalized basis reduction via
|
|
/// reduceBasis and then compute the bounds again. Now we try constraining
|
|
/// this direction in the first value in this range and "recurse" to the next
|
|
/// level. If we fail to find a sample, we try assigning the direction the next
|
|
/// value in this range, and so on.
|
|
///
|
|
/// If no integer sample is found from any of the assignments, or if the range
|
|
/// contains no integer value, then of course the polytope is empty for the
|
|
/// current assignment of the values in previous levels, so we return to
|
|
/// the previous level.
|
|
///
|
|
/// If we reach the last level where all the variables have been assigned values
|
|
/// already, then we simply return the current sample point if it is integral,
|
|
/// and go back to the previous level otherwise.
|
|
///
|
|
/// To avoid potentially arbitrarily large recursion depths leading to stack
|
|
/// overflows, this algorithm is implemented iteratively.
|
|
Optional<SmallVector<int64_t, 8>> Simplex::findIntegerSample() {
|
|
if (empty)
|
|
return {};
|
|
|
|
unsigned nDims = var.size();
|
|
Matrix basis = Matrix::identity(nDims);
|
|
|
|
unsigned level = 0;
|
|
// The snapshot just before constraining a direction to a value at each level.
|
|
SmallVector<unsigned, 8> snapshotStack;
|
|
// The maximum value in the range of the direction for each level.
|
|
SmallVector<int64_t, 8> upperBoundStack;
|
|
// The next value to try constraining the basis vector to at each level.
|
|
SmallVector<int64_t, 8> nextValueStack;
|
|
|
|
snapshotStack.reserve(basis.getNumRows());
|
|
upperBoundStack.reserve(basis.getNumRows());
|
|
nextValueStack.reserve(basis.getNumRows());
|
|
while (level != -1u) {
|
|
if (level == basis.getNumRows()) {
|
|
// We've assigned values to all variables. Return if we have a sample,
|
|
// or go back up to the previous level otherwise.
|
|
if (auto maybeSample = getSamplePointIfIntegral())
|
|
return maybeSample;
|
|
level--;
|
|
continue;
|
|
}
|
|
|
|
if (level >= upperBoundStack.size()) {
|
|
// We haven't populated the stack values for this level yet, so we have
|
|
// just come down a level ("recursed"). Find the lower and upper bounds.
|
|
// If there is more than one integer point in the range, perform
|
|
// generalized basis reduction.
|
|
SmallVector<int64_t, 8> basisCoeffs =
|
|
llvm::to_vector<8>(basis.getRow(level));
|
|
basisCoeffs.push_back(0);
|
|
|
|
int64_t minRoundedUp, maxRoundedDown;
|
|
std::tie(minRoundedUp, maxRoundedDown) =
|
|
computeIntegerBounds(basisCoeffs);
|
|
|
|
// Heuristic: if the sample point is integral at this point, just return
|
|
// it.
|
|
if (auto maybeSample = getSamplePointIfIntegral())
|
|
return *maybeSample;
|
|
|
|
if (minRoundedUp < maxRoundedDown) {
|
|
reduceBasis(basis, level);
|
|
basisCoeffs = llvm::to_vector<8>(basis.getRow(level));
|
|
basisCoeffs.push_back(0);
|
|
std::tie(minRoundedUp, maxRoundedDown) =
|
|
computeIntegerBounds(basisCoeffs);
|
|
}
|
|
|
|
snapshotStack.push_back(getSnapshot());
|
|
// The smallest value in the range is the next value to try.
|
|
nextValueStack.push_back(minRoundedUp);
|
|
upperBoundStack.push_back(maxRoundedDown);
|
|
}
|
|
|
|
assert((snapshotStack.size() - 1 == level &&
|
|
nextValueStack.size() - 1 == level &&
|
|
upperBoundStack.size() - 1 == level) &&
|
|
"Mismatched variable stack sizes!");
|
|
|
|
// Whether we "recursed" or "returned" from a lower level, we rollback
|
|
// to the snapshot of the starting state at this level. (in the "recursed"
|
|
// case this has no effect)
|
|
rollback(snapshotStack.back());
|
|
int64_t nextValue = nextValueStack.back();
|
|
nextValueStack.back()++;
|
|
if (nextValue > upperBoundStack.back()) {
|
|
// We have exhausted the range and found no solution. Pop the stack and
|
|
// return up a level.
|
|
snapshotStack.pop_back();
|
|
nextValueStack.pop_back();
|
|
upperBoundStack.pop_back();
|
|
level--;
|
|
continue;
|
|
}
|
|
|
|
// Try the next value in the range and "recurse" into the next level.
|
|
SmallVector<int64_t, 8> basisCoeffs(basis.getRow(level).begin(),
|
|
basis.getRow(level).end());
|
|
basisCoeffs.push_back(-nextValue);
|
|
addEquality(basisCoeffs);
|
|
level++;
|
|
}
|
|
|
|
return {};
|
|
}
|
|
|
|
/// Compute the minimum and maximum integer values the expression can take. We
|
|
/// compute each separately.
|
|
std::pair<int64_t, int64_t>
|
|
Simplex::computeIntegerBounds(ArrayRef<int64_t> coeffs) {
|
|
int64_t minRoundedUp;
|
|
if (Optional<Fraction> maybeMin =
|
|
computeOptimum(Simplex::Direction::Down, coeffs))
|
|
minRoundedUp = ceil(*maybeMin);
|
|
else
|
|
llvm_unreachable("Tableau should not be unbounded");
|
|
|
|
int64_t maxRoundedDown;
|
|
if (Optional<Fraction> maybeMax =
|
|
computeOptimum(Simplex::Direction::Up, coeffs))
|
|
maxRoundedDown = floor(*maybeMax);
|
|
else
|
|
llvm_unreachable("Tableau should not be unbounded");
|
|
|
|
return {minRoundedUp, maxRoundedDown};
|
|
}
|
|
|
|
void Simplex::print(raw_ostream &os) const {
|
|
os << "rows = " << nRow << ", columns = " << nCol << "\n";
|
|
if (empty)
|
|
os << "Simplex marked empty!\n";
|
|
os << "var: ";
|
|
for (unsigned i = 0; i < var.size(); ++i) {
|
|
if (i > 0)
|
|
os << ", ";
|
|
var[i].print(os);
|
|
}
|
|
os << "\ncon: ";
|
|
for (unsigned i = 0; i < con.size(); ++i) {
|
|
if (i > 0)
|
|
os << ", ";
|
|
con[i].print(os);
|
|
}
|
|
os << '\n';
|
|
for (unsigned row = 0; row < nRow; ++row) {
|
|
if (row > 0)
|
|
os << ", ";
|
|
os << "r" << row << ": " << rowUnknown[row];
|
|
}
|
|
os << '\n';
|
|
os << "c0: denom, c1: const";
|
|
for (unsigned col = 2; col < nCol; ++col)
|
|
os << ", c" << col << ": " << colUnknown[col];
|
|
os << '\n';
|
|
for (unsigned row = 0; row < nRow; ++row) {
|
|
for (unsigned col = 0; col < nCol; ++col)
|
|
os << tableau(row, col) << '\t';
|
|
os << '\n';
|
|
}
|
|
os << '\n';
|
|
}
|
|
|
|
void Simplex::dump() const { print(llvm::errs()); }
|
|
|
|
} // namespace mlir
|