OR-Tools  9.2
revised_simplex.h
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1// Copyright 2010-2021 Google LLC
2// Licensed under the Apache License, Version 2.0 (the "License");
3// you may not use this file except in compliance with the License.
4// You may obtain a copy of the License at
5//
6// http://www.apache.org/licenses/LICENSE-2.0
7//
8// Unless required by applicable law or agreed to in writing, software
9// distributed under the License is distributed on an "AS IS" BASIS,
10// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
11// See the License for the specific language governing permissions and
12// limitations under the License.
13
14// Solves a Linear Programming problem using the Revised Simplex algorithm
15// as described by G.B. Dantzig.
16// The general form is:
17// min c.x where c and x are n-vectors,
18// subject to Ax = b where A is an mxn-matrix, b an m-vector,
19// with l <= x <= u, i.e.
20// l_i <= x_i <= u_i for all i in {1 .. m}.
21//
22// c.x is called the objective function.
23// Each row a_i of A is an n-vector, and a_i.x = b_i is a linear constraint.
24// A is called the constraint matrix.
25// b is called the right hand side (rhs) of the problem.
26// The constraints l_i <= x_i <= u_i are called the generalized bounds
27// of the problem (most introductory textbooks only deal with x_i >= 0, as
28// did the first version of the Simplex algorithm). Note that l_i and u_i
29// can be -infinity and +infinity, respectively.
30//
31// To simplify the entry of data, this code actually handles problems in the
32// form:
33// min c.x where c and x are n-vectors,
34// subject to:
35// A1 x <= b1
36// A2 x >= b2
37// A3 x = b3
38// l <= x <= u
39//
40// It transforms the above problem into
41// min c.x where c and x are n-vectors,
42// subject to:
43// A1 x + s1 = b1
44// A2 x - s2 = b2
45// A3 x = b3
46// l <= x <= u
47// s1 >= 0, s2 >= 0
48// where xT = (x1, x2, x3),
49// s1 is an m1-vector (m1 being the height of A1),
50// s2 is an m2-vector (m2 being the height of A2).
51//
52// The following are very good references for terminology, data structures,
53// and algorithms. They all contain a wealth of references.
54//
55// Vasek Chvátal, "Linear Programming," W.H. Freeman, 1983. ISBN 978-0716715870.
56// http://www.amazon.com/dp/0716715872
57//
58// Robert J. Vanderbei, "Linear Programming: Foundations and Extensions,"
59// Springer, 2010, ISBN-13: 978-1441944979
60// http://www.amazon.com/dp/1441944974
61//
62// Istvan Maros, "Computational Techniques of the Simplex Method.", Springer,
63// 2002, ISBN 978-1402073328
64// http://www.amazon.com/dp/1402073321
65//
66// ===============================================
67// Short description of the dual simplex algorithm.
68//
69// The dual simplex algorithm uses the same data structure as the primal, but
70// progresses towards the optimal solution in a different way:
71// * It tries to keep the dual values dual-feasible at all time which means that
72// the reduced costs are of the correct sign depending on the bounds of the
73// non-basic variables. As a consequence the values of the basic variable are
74// out of bound until the optimal is reached.
75// * A basic leaving variable is selected first (dual pricing) and then a
76// corresponding entering variable is selected. This is done in such a way
77// that the dual objective value increases (lower bound on the optimal
78// solution).
79// * Once the basis pivot is chosen, the variable values and the reduced costs
80// are updated the same way as in the primal algorithm.
81//
82// Good references on the Dual simplex algorithm are:
83//
84// Robert Fourer, "Notes on the Dual simplex Method", March 14, 1994.
85// http://users.iems.northwestern.edu/~4er/WRITINGS/dual.pdf
86//
87// Achim Koberstein, "The dual simplex method, techniques for a fast and stable
88// implementation", PhD, Paderborn, Univ., 2005.
89// http://digital.ub.uni-paderborn.de/hs/download/pdf/3885?originalFilename=true
90
91#ifndef OR_TOOLS_GLOP_REVISED_SIMPLEX_H_
92#define OR_TOOLS_GLOP_REVISED_SIMPLEX_H_
93
94#include <cstdint>
95#include <string>
96#include <vector>
97
98#include "absl/random/bit_gen_ref.h"
100#include "ortools/base/macros.h"
105#include "ortools/glop/pricing.h"
108#include "ortools/glop/status.h"
117#include "ortools/util/logging.h"
120
121namespace operations_research {
122namespace glop {
123
124// Entry point of the revised simplex algorithm implementation.
126 public:
128
129 // Sets or gets the algorithm parameters to be used on the next Solve().
131 const GlopParameters& GetParameters() const { return parameters_; }
132
133 // Solves the given linear program.
134 //
135 // We accept two forms of LinearProgram:
136 // - The lp can be in the equations form Ax = 0 created by
137 // LinearProgram::AddSlackVariablesForAllRows(), i.e. the rightmost square
138 // submatrix of A is an identity matrix, all its columns have been marked as
139 // slack variables, and the bounds of all constraints have been set to 0.
140 // - If not, we will convert it internally while copying it to the internal
141 // structure used.
142 //
143 // By default, the algorithm tries to exploit the computation done during the
144 // last Solve() call. It will analyze the difference of the new linear program
145 // and try to use the previously computed solution as a warm-start. To disable
146 // this behavior or give explicit warm-start data, use one of the State*()
147 // functions below.
148 ABSL_MUST_USE_RESULT Status Solve(const LinearProgram& lp,
150
151 // Do not use the current solution as a warm-start for the next Solve(). The
152 // next Solve() will behave as if the class just got created.
154
155 // Uses the given state as a warm-start for the next Solve() call.
156 void LoadStateForNextSolve(const BasisState& state);
157
158 // Advanced usage. While constructing the initial basis, if this is called
159 // then we will use these values as the initial starting value for the FREE
160 // variables.
162
163 // Advanced usage. Tells the next Solve() that the matrix inside the linear
164 // program will not change compared to the one used the last time Solve() was
165 // called. This allows to bypass the somewhat costly check of comparing both
166 // matrices. Note that this call will be ignored if Solve() was never called
167 // or if ClearStateForNextSolve() was called.
169
170 // Getters to retrieve all the information computed by the last Solve().
171 RowIndex GetProblemNumRows() const;
172 ColIndex GetProblemNumCols() const;
175 int64_t GetNumberOfIterations() const;
176 Fractional GetVariableValue(ColIndex col) const;
177 Fractional GetReducedCost(ColIndex col) const;
178 const DenseRow& GetReducedCosts() const;
179 Fractional GetDualValue(RowIndex row) const;
180 Fractional GetConstraintActivity(RowIndex row) const;
181 VariableStatus GetVariableStatus(ColIndex col) const;
183 const BasisState& GetState() const;
184 double DeterministicTime() const;
185 bool objective_limit_reached() const { return objective_limit_reached_; }
186
187 // If the problem status is PRIMAL_UNBOUNDED (respectively DUAL_UNBOUNDED),
188 // then the solver has a corresponding primal (respectively dual) ray to show
189 // the unboundness. From a primal (respectively dual) feasible solution any
190 // positive multiple of this ray can be added to the solution and keep it
191 // feasible. Moreover, by doing so, the objective of the problem will improve
192 // and its magnitude will go to infinity.
193 //
194 // Note that when the problem is DUAL_UNBOUNDED, the dual ray is also known as
195 // the Farkas proof of infeasibility of the problem.
196 const DenseRow& GetPrimalRay() const;
197 const DenseColumn& GetDualRay() const;
198
199 // This is the "dual ray" linear combination of the matrix rows.
200 const DenseRow& GetDualRayRowCombination() const;
201
202 // Returns the index of the column in the basis and the basis factorization.
203 // Note that the order of the column in the basis is important since it is the
204 // one used by the various solve functions provided by the BasisFactorization
205 // class.
206 ColIndex GetBasis(RowIndex row) const;
207
209 return update_row_.ComputeAndGetUnitRowLeftInverse(row);
210 }
211
212 // Returns a copy of basis_ vector for outside applications (like cuts) to
213 // have the correspondence between rows and columns of the dictionary.
214 RowToColMapping GetBasisVector() const { return basis_; }
215
217
218 // Returns statistics about this class as a string.
219 std::string StatString();
220
221 // Computes the dictionary B^-1*N on-the-fly row by row. Returns the resulting
222 // matrix as a vector of sparse rows so that it is easy to use it on the left
223 // side in the matrix multiplication. Runs in O(num_non_zeros_in_matrix).
224 // TODO(user): Use row scales as well.
225 RowMajorSparseMatrix ComputeDictionary(const DenseRow* column_scales);
226
227 // Initializes the matrix for the given 'linear_program' and 'state' and
228 // computes the variable values for basic variables using non-basic variables.
229 void ComputeBasicVariablesForState(const LinearProgram& linear_program,
230 const BasisState& state);
231
232 // This is used in a MIP context to polish the final basis. We assume that the
233 // columns for which SetIntegralityScale() has been called correspond to
234 // integral variable once multiplied by the given factor.
235 void ClearIntegralityScales() { integrality_scale_.clear(); }
236 void SetIntegralityScale(ColIndex col, Fractional scale);
237
238 void SetLogger(SolverLogger* logger) { logger_ = logger; }
239
240 private:
241 struct IterationStats : public StatsGroup {
242 IterationStats()
243 : StatsGroup("IterationStats"),
244 total("total", this),
245 normal("normal", this),
246 bound_flip("bound_flip", this),
247 refactorize("refactorize", this),
248 degenerate("degenerate", this),
249 num_dual_flips("num_dual_flips", this),
250 degenerate_run_size("degenerate_run_size", this) {}
251 TimeDistribution total;
252 TimeDistribution normal;
253 TimeDistribution bound_flip;
254 TimeDistribution refactorize;
255 TimeDistribution degenerate;
256 IntegerDistribution num_dual_flips;
257 IntegerDistribution degenerate_run_size;
258 };
259
260 struct RatioTestStats : public StatsGroup {
261 RatioTestStats()
262 : StatsGroup("RatioTestStats"),
263 bound_shift("bound_shift", this),
264 abs_used_pivot("abs_used_pivot", this),
265 abs_tested_pivot("abs_tested_pivot", this),
266 abs_skipped_pivot("abs_skipped_pivot", this),
267 direction_density("direction_density", this),
268 leaving_choices("leaving_choices", this),
269 num_perfect_ties("num_perfect_ties", this) {}
270 DoubleDistribution bound_shift;
271 DoubleDistribution abs_used_pivot;
272 DoubleDistribution abs_tested_pivot;
273 DoubleDistribution abs_skipped_pivot;
274 RatioDistribution direction_density;
275 IntegerDistribution leaving_choices;
276 IntegerDistribution num_perfect_ties;
277 };
278
279 enum class Phase { FEASIBILITY, OPTIMIZATION, PUSH };
280
281 // Propagates parameters_ to all the other classes that need it.
282 //
283 // TODO(user): Maybe a better design is for them to have a reference to a
284 // unique parameters object? It will clutter a bit more these classes'
285 // constructor though.
286 void PropagateParameters();
287
288 // Returns a string containing the same information as with GetSolverStats,
289 // but in a much more human-readable format. For example:
290 // Problem status : Optimal
291 // Solving time : 1.843
292 // Number of iterations : 12345
293 // Time for solvability (first phase) : 1.343
294 // Number of iterations for solvability : 10000
295 // Time for optimization : 0.5
296 // Number of iterations for optimization : 2345
297 // Maximum time allowed in seconds : 6000
298 // Maximum number of iterations : 1000000
299 // Stop after first basis : 0
300 std::string GetPrettySolverStats() const;
301
302 // Returns a string containing formatted information about the variable
303 // corresponding to column col.
304 std::string SimpleVariableInfo(ColIndex col) const;
305
306 // Displays a short string with the current iteration and objective value.
307 void DisplayIterationInfo(bool primal);
308
309 // Displays the error bounds of the current solution.
310 void DisplayErrors();
311
312 // Displays the status of the variables.
313 void DisplayInfoOnVariables() const;
314
315 // Displays the bounds of the variables.
316 void DisplayVariableBounds();
317
318 // Displays the following information:
319 // * Linear Programming problem as a dictionary, taking into
320 // account the iterations that have been made;
321 // * Variable info;
322 // * Reduced costs;
323 // * Variable bounds.
324 // A dictionary is in the form:
325 // xB = value + sum_{j in N} pa_ij x_j
326 // z = objective_value + sum_{i in N} rc_i x_i
327 // where the pa's are the coefficients of the matrix after the pivotings
328 // and the rc's are the reduced costs, i.e. the coefficients of the objective
329 // after the pivotings.
330 // Dictionaries are the modern way of presenting the result of an iteration
331 // of the Simplex algorithm in the literature.
332 void DisplayRevisedSimplexDebugInfo();
333
334 // Displays the Linear Programming problem as it was input.
335 void DisplayProblem() const;
336
337 // Returns the current objective value. This is just the sum of the current
338 // variable values times their current cost.
339 Fractional ComputeObjectiveValue() const;
340
341 // Returns the current objective of the linear program given to Solve() using
342 // the initial costs, maximization direction, objective offset and objective
343 // scaling factor.
344 Fractional ComputeInitialProblemObjectiveValue() const;
345
346 // Assigns names to variables. Variables in the input will be named
347 // x1..., slack variables will be s1... .
348 void SetVariableNames();
349
350 // Sets the variable status and derives the variable value according to the
351 // exact status definition. This can only be called for non-basic variables
352 // because the value of a basic variable is computed from the values of the
353 // non-basic variables.
354 void SetNonBasicVariableStatusAndDeriveValue(ColIndex col,
356
357 // Checks if the basis_ and is_basic_ arrays are well formed. Also checks that
358 // the variable statuses are consistent with this basis. Returns true if this
359 // is the case. This is meant to be used in debug mode only.
360 bool BasisIsConsistent() const;
361
362 // Moves the column entering_col into the basis at position basis_row. Removes
363 // the current basis column at position basis_row from the basis and sets its
364 // status to leaving_variable_status.
365 void UpdateBasis(ColIndex entering_col, RowIndex basis_row,
366 VariableStatus leaving_variable_status);
367
368 // Initializes matrix-related internal data. Returns true if this data was
369 // unchanged. If not, also sets only_change_is_new_rows to true if compared
370 // to the current matrix, the only difference is that new rows have been
371 // added (with their corresponding extra slack variables). Similarly, sets
372 // only_change_is_new_cols to true if the only difference is that new columns
373 // have been added, in which case also sets num_new_cols to the number of
374 // new columns.
375 bool InitializeMatrixAndTestIfUnchanged(const LinearProgram& lp,
376 bool lp_is_in_equation_form,
377 bool* only_change_is_new_rows,
378 bool* only_change_is_new_cols,
379 ColIndex* num_new_cols);
380
381 // Checks if the only change to the bounds is the addition of new columns,
382 // and that the new columns have at least one bound equal to zero.
383 bool OldBoundsAreUnchangedAndNewVariablesHaveOneBoundAtZero(
384 const LinearProgram& lp, bool lp_is_in_equation_form,
385 ColIndex num_new_cols);
386
387 // Initializes objective-related internal data. Returns true if unchanged.
388 bool InitializeObjectiveAndTestIfUnchanged(const LinearProgram& lp);
389
390 // Computes the stopping criterion on the problem objective value.
391 void InitializeObjectiveLimit(const LinearProgram& lp);
392
393 // Initializes the starting basis. In most cases it starts by the all slack
394 // basis and tries to apply some heuristics to replace fixed variables.
395 ABSL_MUST_USE_RESULT Status CreateInitialBasis();
396
397 // Sets the initial basis to the given columns, try to factorize it and
398 // recompute the basic variable values.
399 ABSL_MUST_USE_RESULT Status
400 InitializeFirstBasis(const RowToColMapping& initial_basis);
401
402 // Entry point for the solver initialization.
403 ABSL_MUST_USE_RESULT Status Initialize(const LinearProgram& lp);
404
405 // Saves the current variable statuses in solution_state_.
406 void SaveState();
407
408 // Displays statistics on what kinds of variables are in the current basis.
409 void DisplayBasicVariableStatistics();
410
411 // Tries to reduce the initial infeasibility (stored in error_) by using the
412 // singleton columns present in the problem. A singleton column is a column
413 // with only one non-zero. This is used by CreateInitialBasis().
414 void UseSingletonColumnInInitialBasis(RowToColMapping* basis);
415
416 // Returns the number of empty rows in the matrix, i.e. rows where all
417 // the coefficients are zero.
418 RowIndex ComputeNumberOfEmptyRows();
419
420 // Returns the number of empty columns in the matrix, i.e. columns where all
421 // the coefficients are zero.
422 ColIndex ComputeNumberOfEmptyColumns();
423
424 // Returns the number of super-basic variables. These are non-basic variables
425 // that are not at their bounds (if they have bounds), or non-basic free
426 // variables that are not at zero.
427 int ComputeNumberOfSuperBasicVariables() const;
428
429 // This method transforms a basis for the first phase, with the optimal
430 // value at zero, into a feasible basis for the initial problem, thus
431 // preparing the execution of phase-II of the algorithm.
432 void CleanUpBasis();
433
434 // If the primal maximum residual is too large, recomputes the basic variable
435 // value from the non-basic ones. This function also perturbs the bounds
436 // during the primal simplex if too many iterations are degenerate.
437 //
438 // Only call this on a refactorized basis to have the best precision.
439 void CorrectErrorsOnVariableValues();
440
441 // Computes b - A.x in error_
442 void ComputeVariableValuesError();
443
444 // Solves the system B.d = a where a is the entering column (given by col).
445 // Known as FTRAN (Forward transformation) in FORTRAN codes.
446 // See Chvatal's book for more detail (Chapter 7).
447 void ComputeDirection(ColIndex col);
448
449 // Computes a - B.d in error_ and return the maximum std::abs() of its coeffs.
450 Fractional ComputeDirectionError(ColIndex col);
451
452 // Computes the ratio of the basic variable corresponding to 'row'. A target
453 // bound (upper or lower) is chosen depending on the sign of the entering
454 // reduced cost and the sign of the direction 'd_[row]'. The ratio is such
455 // that adding 'ratio * d_[row]' to the variable value changes it to its
456 // target bound.
457 template <bool is_entering_reduced_cost_positive>
458 Fractional GetRatio(const DenseRow& lower_bounds,
459 const DenseRow& upper_bounds, RowIndex row) const;
460
461 // First pass of the Harris ratio test. Returns the harris ratio value which
462 // is an upper bound on the ratio value that the leaving variable can take.
463 // Fills leaving_candidates with the ratio and row index of a super-set of the
464 // columns with a ratio <= harris_ratio.
465 template <bool is_entering_reduced_cost_positive>
466 Fractional ComputeHarrisRatioAndLeavingCandidates(
467 Fractional bound_flip_ratio, SparseColumn* leaving_candidates) const;
468
469 // Chooses the leaving variable, considering the entering column and its
470 // associated reduced cost. If there was a precision issue and the basis is
471 // not refactorized, set refactorize to true. Otherwise, the row number of the
472 // leaving variable is written in *leaving_row, and the step length
473 // is written in *step_length.
474 Status ChooseLeavingVariableRow(ColIndex entering_col,
475 Fractional reduced_cost, bool* refactorize,
476 RowIndex* leaving_row,
477 Fractional* step_length,
479
480 // Chooses the leaving variable for the primal phase-I algorithm. The
481 // algorithm follows more or less what is described in Istvan Maros's book in
482 // chapter 9.6 and what is done for the dual phase-I algorithm which was
483 // derived from Koberstein's PhD. Both references can be found at the top of
484 // this file.
485 void PrimalPhaseIChooseLeavingVariableRow(ColIndex entering_col,
486 Fractional reduced_cost,
487 bool* refactorize,
488 RowIndex* leaving_row,
489 Fractional* step_length,
490 Fractional* target_bound) const;
491
492 // Chooses an infeasible basic variable. The returned values are:
493 // - leaving_row: the basic index of the infeasible leaving variable
494 // or kNoLeavingVariable if no such row exists: the dual simplex algorithm
495 // has terminated and the optimal has been reached.
496 // - cost_variation: how much do we improve the objective by moving one unit
497 // along this dual edge.
498 // - target_bound: the bound at which the leaving variable should go when
499 // leaving the basis.
500 ABSL_MUST_USE_RESULT Status DualChooseLeavingVariableRow(
501 RowIndex* leaving_row, Fractional* cost_variation,
503
504 // Updates the prices used by DualChooseLeavingVariableRow() after a simplex
505 // iteration by using direction_. The prices are stored in
506 // dual_pricing_vector_. Note that this function only takes care of the
507 // entering and leaving column dual feasibility status change and that other
508 // changes will be dealt with by DualPhaseIUpdatePriceOnReducedCostsChange().
509 void DualPhaseIUpdatePrice(RowIndex leaving_row, ColIndex entering_col);
510
511 // This must be called each time the dual_pricing_vector_ is changed at
512 // position row.
513 template <bool use_dense_update = false>
514 void OnDualPriceChange(const DenseColumn& squared_norms, RowIndex row,
515 VariableType type, Fractional threshold);
516
517 // Updates the prices used by DualChooseLeavingVariableRow() when the reduced
518 // costs of the given columns have changed.
519 template <typename Cols>
520 void DualPhaseIUpdatePriceOnReducedCostChange(const Cols& cols);
521
522 // Same as DualChooseLeavingVariableRow() but for the phase I of the dual
523 // simplex. Here the objective is not to minimize the primal infeasibility,
524 // but the dual one, so the variable is not chosen in the same way. See
525 // "Notes on the Dual simplex Method" or Istvan Maros, "A Piecewise Linear
526 // Dual Phase-1 Algorithm for the Simplex Method", Computational Optimization
527 // and Applications, October 2003, Volume 26, Issue 1, pp 63-81.
528 // http://rd.springer.com/article/10.1023%2FA%3A1025102305440
529 ABSL_MUST_USE_RESULT Status DualPhaseIChooseLeavingVariableRow(
530 RowIndex* leaving_row, Fractional* cost_variation,
532
533 // Makes sure the boxed variable are dual-feasible by setting them to the
534 // correct bound according to their reduced costs. This is called
535 // Dual feasibility correction in the literature.
536 //
537 // Note that this function is also used as a part of the bound flipping ratio
538 // test by flipping the boxed dual-infeasible variables at each iteration.
539 //
540 // If update_basic_values is true, the basic variable values are updated.
541 template <typename BoxedVariableCols>
542 void MakeBoxedVariableDualFeasible(const BoxedVariableCols& cols,
543 bool update_basic_values);
544
545 // Computes the step needed to move the leaving_row basic variable to the
546 // given target bound.
547 Fractional ComputeStepToMoveBasicVariableToBound(RowIndex leaving_row,
549
550 // Returns true if the basis obtained after the given pivot can be factorized.
551 bool TestPivot(ColIndex entering_col, RowIndex leaving_row);
552
553 // Gets the current LU column permutation from basis_representation,
554 // applies it to basis_ and then sets it to the identity permutation since
555 // it will no longer be needed during solves. This function also updates all
556 // the data that depends on the column order in basis_.
557 void PermuteBasis();
558
559 // Updates the system state according to the given basis pivot.
560 // Returns an error if the update could not be done because of some precision
561 // issue.
562 ABSL_MUST_USE_RESULT Status UpdateAndPivot(ColIndex entering_col,
563 RowIndex leaving_row,
565
566 // Displays all the timing stats related to the calling object.
567 void DisplayAllStats();
568
569 // Calls basis_factorization_.Refactorize() if refactorize is true, and
570 // returns its status. This also sets refactorize to false and invalidates any
571 // data structure that depends on the current factorization.
572 //
573 // The general idea is that if a refactorization is going to be needed during
574 // a simplex iteration, it is better to do it as soon as possible so that
575 // every component can take advantage of it.
576 Status RefactorizeBasisIfNeeded(bool* refactorize);
577
578 // Main iteration loop of the primal simplex.
579 ABSL_MUST_USE_RESULT Status PrimalMinimize(TimeLimit* time_limit);
580
581 // Main iteration loop of the dual simplex.
582 ABSL_MUST_USE_RESULT Status DualMinimize(bool feasibility_phase,
583 TimeLimit* time_limit);
584
585 // Pushes all super-basic variables to bounds (if applicable) or to zero (if
586 // unconstrained). This is part of a "crossover" procedure to find a vertex
587 // solution given a (near) optimal solution. Assumes that Minimize() or
588 // DualMinimize() has already run, i.e., that we are at an optimal solution
589 // within numerical tolerances.
590 ABSL_MUST_USE_RESULT Status PrimalPush(TimeLimit* time_limit);
591
592 // Experimental. This is useful in a MIP context. It performs a few degenerate
593 // pivot to try to mimize the fractionality of the optimal basis.
594 //
595 // We assume that the columns for which SetIntegralityScale() has been called
596 // correspond to integral variable once scaled by the given factor.
597 //
598 // I could only find slides for the reference of this "LP Solution Polishing
599 // to improve MIP Performance", Matthias Miltenberger, Zuse Institute Berlin.
600 ABSL_MUST_USE_RESULT Status Polish(TimeLimit* time_limit);
601
602 // Utility functions to return the current ColIndex of the slack column with
603 // given number. Note that currently, such columns are always present in the
604 // internal representation of a linear program.
605 ColIndex SlackColIndex(RowIndex row) const;
606
607 // Advances the deterministic time in time_limit with the difference between
608 // the current internal deterministic time and the internal deterministic time
609 // during the last call to this method.
610 // TODO(user): Update the internals of revised simplex so that the time
611 // limit is updated at the source and remove this method.
612 void AdvanceDeterministicTime(TimeLimit* time_limit);
613
614 // Problem status
615 ProblemStatus problem_status_;
616
617 // Current number of rows in the problem.
618 RowIndex num_rows_ = RowIndex(0);
619
620 // Current number of columns in the problem.
621 ColIndex num_cols_ = ColIndex(0);
622
623 // Index of the first slack variable in the input problem. We assume that all
624 // variables with index greater or equal to first_slack_col_ are slack
625 // variables.
626 ColIndex first_slack_col_ = ColIndex(0);
627
628 // We're using vectors after profiling and looking at the generated assembly
629 // it's as fast as std::unique_ptr as long as the size is properly reserved
630 // beforehand.
631
632 // Compact version of the matrix given to Solve().
633 CompactSparseMatrix compact_matrix_;
634
635 // The transpose of compact_matrix_, it may be empty if it is not needed.
636 CompactSparseMatrix transposed_matrix_;
637
638 // Stop the algorithm and report feasibility if:
639 // - The primal simplex is used, the problem is primal-feasible and the
640 // current objective value is strictly lower than primal_objective_limit_.
641 // - The dual simplex is used, the problem is dual-feasible and the current
642 // objective value is strictly greater than dual_objective_limit_.
643 Fractional primal_objective_limit_;
644 Fractional dual_objective_limit_;
645
646 // Current objective (feasibility for Phase-I, user-provided for Phase-II).
647 DenseRow current_objective_;
648
649 // Array of coefficients for the user-defined objective.
650 // Indexed by column number. Used in Phase-II.
651 DenseRow objective_;
652
653 // Objective offset and scaling factor of the linear program given to Solve().
654 // This is used to display the correct objective values in the logs with
655 // ComputeInitialProblemObjectiveValue().
656 Fractional objective_offset_;
657 Fractional objective_scaling_factor_;
658
659 // Used in dual phase I to keep track of the non-basic dual infeasible
660 // columns and their sign of infeasibility (+1 or -1).
661 DenseRow dual_infeasibility_improvement_direction_;
662 int num_dual_infeasible_positions_;
663
664 // A temporary scattered column that is always reset to all zero after use.
665 ScatteredColumn initially_all_zero_scratchpad_;
666
667 // Array of column index, giving the column number corresponding
668 // to a given basis row.
669 RowToColMapping basis_;
670
671 // Vector of strings containing the names of variables.
672 // Indexed by column number.
673 StrictITIVector<ColIndex, std::string> variable_name_;
674
675 // Information about the solution computed by the last Solve().
676 Fractional solution_objective_value_;
677 DenseColumn solution_dual_values_;
678 DenseRow solution_reduced_costs_;
679 DenseRow solution_primal_ray_;
680 DenseColumn solution_dual_ray_;
681 DenseRow solution_dual_ray_row_combination_;
682 BasisState solution_state_;
683 bool solution_state_has_been_set_externally_;
684
685 // If this is cleared, we assume they are none.
686 DenseRow variable_starting_values_;
687
688 // Flag used by NotifyThatMatrixIsUnchangedForNextSolve() and changing
689 // the behavior of Initialize().
690 bool notify_that_matrix_is_unchanged_ = false;
691
692 // This is known as 'd' in the literature and is set during each pivot to the
693 // right inverse of the basic entering column of A by ComputeDirection().
694 // ComputeDirection() also fills direction_.non_zeros with the position of the
695 // non-zero.
696 ScatteredColumn direction_;
697 Fractional direction_infinity_norm_;
698
699 // Used to compute the error 'b - A.x' or 'a - B.d'.
700 DenseColumn error_;
701
702 // A random number generator. In test we use absl_random_ to have a
703 // non-deterministic behavior and avoid client depending on a golden optimal
704 // solution which prevent us from easily changing the solver.
705 random_engine_t deterministic_random_;
706#ifndef NDEBUG
707 absl::BitGen absl_random_;
708#endif
709 absl::BitGenRef random_;
710
711 // Helpers for logging the solve progress.
712 SolverLogger default_logger_;
713 SolverLogger* logger_ = &default_logger_;
714
715 // Representation of matrix B using eta matrices and LU decomposition.
716 BasisFactorization basis_factorization_;
717
718 // Classes responsible for maintaining the data of the corresponding names.
719 VariablesInfo variables_info_;
720 PrimalEdgeNorms primal_edge_norms_;
721 DualEdgeNorms dual_edge_norms_;
722 DynamicMaximum<RowIndex> dual_prices_;
723 VariableValues variable_values_;
724 UpdateRow update_row_;
725 ReducedCosts reduced_costs_;
726 EnteringVariable entering_variable_;
727 PrimalPrices primal_prices_;
728
729 // Used in dual phase I to hold the price of each possible leaving choices.
730 DenseColumn dual_pricing_vector_;
731
732 // Temporary memory used by DualMinimize().
733 std::vector<ColIndex> bound_flip_candidates_;
734
735 // Total number of iterations performed.
736 uint64_t num_iterations_ = 0;
737
738 // Number of iterations performed during the first (feasibility) phase.
739 uint64_t num_feasibility_iterations_ = 0;
740
741 // Number of iterations performed during the second (optimization) phase.
742 uint64_t num_optimization_iterations_ = 0;
743
744 // Number of iterations performed during the push/crossover phase.
745 uint64_t num_push_iterations_ = 0;
746
747 // Deterministic time for DualPhaseIUpdatePriceOnReducedCostChange().
748 int64_t num_update_price_operations_ = 0;
749
750 // Total time spent in Solve().
751 double total_time_ = 0.0;
752
753 // Time spent in the first (feasibility) phase.
754 double feasibility_time_ = 0.0;
755
756 // Time spent in the second (optimization) phase.
757 double optimization_time_ = 0.0;
758
759 // Time spent in the push/crossover phase.
760 double push_time_ = 0.0;
761
762 // The internal deterministic time during the most recent call to
763 // RevisedSimplex::AdvanceDeterministicTime.
764 double last_deterministic_time_update_ = 0.0;
765
766 // Statistics about the iterations done by PrimalMinimize().
767 IterationStats iteration_stats_;
768
769 mutable RatioTestStats ratio_test_stats_;
770
771 // Placeholder for all the function timing stats.
772 // Mutable because we time const functions like ChooseLeavingVariableRow().
773 mutable StatsGroup function_stats_;
774
775 // Proto holding all the parameters of this algorithm.
776 //
777 // Note that parameters_ may actually change during a solve as the solver may
778 // dynamically adapt some values. It is why we store the argument of the last
779 // SetParameters() call in initial_parameters_ so the next Solve() can reset
780 // it correctly.
781 GlopParameters parameters_;
782 GlopParameters initial_parameters_;
783
784 // LuFactorization used to test if a pivot will cause the new basis to
785 // not be factorizable.
786 LuFactorization test_lu_;
787
788 // Number of degenerate iterations made just before the current iteration.
789 int num_consecutive_degenerate_iterations_;
790
791 // Indicate the current phase of the solve.
792 Phase phase_ = Phase::FEASIBILITY;
793
794 // Indicates whether simplex ended due to the objective limit being reached.
795 // Note that it's not enough to compare the final objective value with the
796 // limit due to numerical issues (i.e., the limit which is reached within
797 // given tolerance on the internal objective may no longer be reached when the
798 // objective scaling and offset are taken into account).
799 bool objective_limit_reached_;
800
801 // Temporary SparseColumn used by ChooseLeavingVariableRow().
802 SparseColumn leaving_candidates_;
803
804 // Temporary vector used to hold the best leaving column candidates that are
805 // tied using the current choosing criteria. We actually only store the tied
806 // candidate #2, #3, ...; because the first tied candidate is remembered
807 // anyway.
808 std::vector<RowIndex> equivalent_leaving_choices_;
809
810 // This is used by Polish().
811 DenseRow integrality_scale_;
812
813 DISALLOW_COPY_AND_ASSIGN(RevisedSimplex);
814};
815
816// Hides the details of the dictionary matrix implementation. In the future,
817// GLOP will support generating the dictionary one row at a time without having
818// to store the whole matrix in memory.
820 public:
822
823 // RevisedSimplex cannot be passed const because we have to call a non-const
824 // method ComputeDictionary.
825 // TODO(user): Overload this to take RevisedSimplex* alone when the
826 // caller would normally pass a nullptr for col_scales so this and
827 // ComputeDictionary can take a const& argument.
829 RevisedSimplex* revised_simplex)
830 : dictionary_(
831 ABSL_DIE_IF_NULL(revised_simplex)->ComputeDictionary(col_scales)),
832 basis_vars_(ABSL_DIE_IF_NULL(revised_simplex)->GetBasisVector()) {}
833
834 ConstIterator begin() const { return dictionary_.begin(); }
835 ConstIterator end() const { return dictionary_.end(); }
836
837 size_t NumRows() const { return dictionary_.size(); }
838
839 // TODO(user): This function is a better fit for the future custom iterator.
840 ColIndex GetBasicColumnForRow(RowIndex r) const { return basis_vars_[r]; }
841 SparseRow GetRow(RowIndex r) const { return dictionary_[r]; }
842
843 private:
844 const RowMajorSparseMatrix dictionary_;
845 const RowToColMapping basis_vars_;
846 DISALLOW_COPY_AND_ASSIGN(RevisedSimplexDictionary);
847};
848
849// TODO(user): When a row-by-row generation of the dictionary is supported,
850// implement DictionaryIterator class that would call it inside operator*().
851
852} // namespace glop
853} // namespace operations_research
854
855#endif // OR_TOOLS_GLOP_REVISED_SIMPLEX_H_
#define ABSL_DIE_IF_NULL
Definition: base/logging.h:43
size_type size() const
ParentType::const_iterator const_iterator
Definition: strong_vector.h:90
A simple class to enforce both an elapsed time limit and a deterministic time limit in the same threa...
Definition: time_limit.h:106
RevisedSimplexDictionary(const DenseRow *col_scales, RevisedSimplex *revised_simplex)
RowMajorSparseMatrix::const_iterator ConstIterator
const GlopParameters & GetParameters() const
const DenseRow & GetDualRayRowCombination() const
Fractional GetVariableValue(ColIndex col) const
void SetIntegralityScale(ColIndex col, Fractional scale)
Fractional GetConstraintActivity(RowIndex row) const
VariableStatus GetVariableStatus(ColIndex col) const
Fractional GetReducedCost(ColIndex col) const
const DenseColumn & GetDualRay() const
ABSL_MUST_USE_RESULT Status Solve(const LinearProgram &lp, TimeLimit *time_limit)
const ScatteredRow & GetUnitRowLeftInverse(RowIndex row)
RowMajorSparseMatrix ComputeDictionary(const DenseRow *column_scales)
Fractional GetDualValue(RowIndex row) const
void SetStartingVariableValuesForNextSolve(const DenseRow &values)
ConstraintStatus GetConstraintStatus(RowIndex row) const
void ComputeBasicVariablesForState(const LinearProgram &linear_program, const BasisState &state)
void LoadStateForNextSolve(const BasisState &state)
const BasisFactorization & GetBasisFactorization() const
ColIndex GetBasis(RowIndex row) const
void SetParameters(const GlopParameters &parameters)
const ScatteredRow & ComputeAndGetUnitRowLeftInverse(RowIndex leaving_row)
Definition: update_row.cc:49
SatParameters parameters
ModelSharedTimeLimit * time_limit
absl::Status status
Definition: g_gurobi.cc:35
ColIndex col
Definition: markowitz.cc:183
RowIndex row
Definition: markowitz.cc:182
StrictITIVector< ColIndex, Fractional > DenseRow
Definition: lp_types.h:303
StrictITIVector< RowIndex, ColIndex > RowToColMapping
Definition: lp_types.h:346
StrictITIVector< RowIndex, Fractional > DenseColumn
Definition: lp_types.h:332
Collection of objects used to extend the Constraint Solver library.
std::mt19937 random_engine_t
Definition: random_engine.h:23
Fractional target_bound
std::vector< double > lower_bounds
std::vector< double > upper_bounds