2024-01-04 13:43:15 +01:00
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// Copyright 2010-2024 Google LLC
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2011-11-03 10:27:53 +00:00
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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2014-07-09 15:18:27 +00:00
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2011-11-03 10:27:53 +00:00
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// Linear programming example that shows how to use the API.
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2021-01-14 10:48:19 +01:00
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#include <cstdlib>
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2022-09-09 16:49:24 +02:00
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#include <string>
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#include <vector>
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2021-01-14 10:48:19 +01:00
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#include "absl/flags/flag.h"
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#include "absl/strings/match.h"
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#include "absl/strings/string_view.h"
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2020-06-25 10:33:13 +02:00
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#include "ortools/base/commandlineflags.h"
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2022-02-25 09:47:52 +01:00
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#include "ortools/base/init_google.h"
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2017-04-26 17:30:25 +02:00
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#include "ortools/base/logging.h"
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#include "ortools/linear_solver/linear_solver.h"
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#include "ortools/linear_solver/linear_solver.pb.h"
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2011-11-03 10:27:53 +00:00
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namespace operations_research {
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2021-01-14 10:48:19 +01:00
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void RunLinearProgrammingExample(absl::string_view solver_id) {
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2020-08-18 17:16:10 +02:00
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LOG(INFO) << "---- Linear programming example with " << solver_id << " ----";
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MPSolver::OptimizationProblemType problem_type;
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if (!MPSolver::ParseSolverType(solver_id, &problem_type)) {
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LOG(INFO) << "Solver id " << solver_id << " not recognized";
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2020-06-25 10:33:13 +02:00
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return;
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}
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2020-08-18 17:16:10 +02:00
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if (!MPSolver::SupportsProblemType(problem_type)) {
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LOG(INFO) << "Supports for solver " << solver_id << " not linked in.";
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return;
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}
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MPSolver solver("IntegerProgrammingExample", problem_type);
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2020-06-25 10:33:13 +02:00
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2018-11-22 13:15:13 +01:00
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const double infinity = solver.infinity();
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2020-06-25 10:33:13 +02:00
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// x1, x2 and x3 are continuous non-negative variables.
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2020-10-29 14:25:39 +01:00
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MPVariable* const x1 = solver.MakeNumVar(0.0, infinity, "x1");
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MPVariable* const x2 = solver.MakeNumVar(0.0, infinity, "x2");
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MPVariable* const x3 = solver.MakeNumVar(0.0, infinity, "x3");
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2018-09-26 11:02:04 +02:00
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2020-06-25 10:33:13 +02:00
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// Maximize 10 * x1 + 6 * x2 + 4 * x3.
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2020-10-29 14:25:39 +01:00
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MPObjective* const objective = solver.MutableObjective();
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2020-06-25 10:33:13 +02:00
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objective->SetCoefficient(x1, 10);
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objective->SetCoefficient(x2, 6);
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objective->SetCoefficient(x3, 4);
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2018-11-22 13:15:13 +01:00
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objective->SetMaximization();
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2018-09-26 11:02:04 +02:00
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2020-06-25 10:33:13 +02:00
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// x1 + x2 + x3 <= 100.
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2020-10-29 14:25:39 +01:00
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MPConstraint* const c0 = solver.MakeRowConstraint(-infinity, 100.0);
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2020-06-25 10:33:13 +02:00
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c0->SetCoefficient(x1, 1);
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c0->SetCoefficient(x2, 1);
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c0->SetCoefficient(x3, 1);
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// 10 * x1 + 4 * x2 + 5 * x3 <= 600.
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2020-10-29 14:25:39 +01:00
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MPConstraint* const c1 = solver.MakeRowConstraint(-infinity, 600.0);
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2020-06-25 10:33:13 +02:00
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c1->SetCoefficient(x1, 10);
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c1->SetCoefficient(x2, 4);
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c1->SetCoefficient(x3, 5);
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2018-09-26 11:02:04 +02:00
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2020-06-25 10:33:13 +02:00
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// 2 * x1 + 2 * x2 + 6 * x3 <= 300.
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2020-10-29 14:25:39 +01:00
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MPConstraint* const c2 = solver.MakeRowConstraint(-infinity, 300.0);
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2020-06-25 10:33:13 +02:00
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c2->SetCoefficient(x1, 2);
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c2->SetCoefficient(x2, 2);
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c2->SetCoefficient(x3, 6);
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2018-09-26 11:02:04 +02:00
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2020-06-25 10:33:13 +02:00
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// TODO(user): Change example to show = and >= constraints.
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2018-09-26 11:02:04 +02:00
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2018-11-22 13:15:13 +01:00
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LOG(INFO) << "Number of variables = " << solver.NumVariables();
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LOG(INFO) << "Number of constraints = " << solver.NumConstraints();
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2018-09-26 11:02:04 +02:00
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2018-11-22 13:15:13 +01:00
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const MPSolver::ResultStatus result_status = solver.Solve();
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2020-06-25 10:33:13 +02:00
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2018-11-22 13:15:13 +01:00
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// Check that the problem has an optimal solution.
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if (result_status != MPSolver::OPTIMAL) {
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LOG(FATAL) << "The problem does not have an optimal solution!";
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2011-11-03 10:27:53 +00:00
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}
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2020-06-25 10:33:13 +02:00
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LOG(INFO) << "Problem solved in " << solver.wall_time() << " milliseconds";
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// The objective value of the solution.
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2018-11-22 13:15:13 +01:00
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LOG(INFO) << "Optimal objective value = " << objective->Value();
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2020-06-25 10:33:13 +02:00
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// The value of each variable in the solution.
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LOG(INFO) << "x1 = " << x1->solution_value();
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LOG(INFO) << "x2 = " << x2->solution_value();
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LOG(INFO) << "x3 = " << x3->solution_value();
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2018-11-22 13:15:13 +01:00
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LOG(INFO) << "Advanced usage:";
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LOG(INFO) << "Problem solved in " << solver.iterations() << " iterations";
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2020-06-25 10:33:13 +02:00
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LOG(INFO) << "x1: reduced cost = " << x1->reduced_cost();
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LOG(INFO) << "x2: reduced cost = " << x2->reduced_cost();
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LOG(INFO) << "x3: reduced cost = " << x3->reduced_cost();
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2018-11-22 13:15:13 +01:00
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const std::vector<double> activities = solver.ComputeConstraintActivities();
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LOG(INFO) << "c0: dual value = " << c0->dual_value()
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<< " activity = " << activities[c0->index()];
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LOG(INFO) << "c1: dual value = " << c1->dual_value()
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<< " activity = " << activities[c1->index()];
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LOG(INFO) << "c2: dual value = " << c2->dual_value()
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<< " activity = " << activities[c2->index()];
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}
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2020-06-25 10:33:13 +02:00
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void RunAllExamples() {
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RunLinearProgrammingExample("GLOP");
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RunLinearProgrammingExample("CLP");
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RunLinearProgrammingExample("GUROBI_LP");
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RunLinearProgrammingExample("CPLEX_LP");
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RunLinearProgrammingExample("GLPK_LP");
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RunLinearProgrammingExample("XPRESS_LP");
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2022-02-25 19:30:02 +01:00
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RunLinearProgrammingExample("PDLP");
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2020-06-25 10:33:13 +02:00
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}
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2020-10-22 23:36:58 +02:00
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} // namespace operations_research
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2011-11-03 10:27:53 +00:00
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2020-10-29 14:25:39 +01:00
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int main(int argc, char** argv) {
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2023-03-09 14:40:16 +01:00
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absl::SetFlag(&FLAGS_stderrthreshold, 0);
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2023-06-21 17:31:06 +02:00
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InitGoogle(argv[0], &argc, &argv, true);
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2020-06-25 10:33:13 +02:00
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operations_research::RunAllExamples();
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2018-11-07 09:52:37 +01:00
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return EXIT_SUCCESS;
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2011-11-03 10:27:53 +00:00
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}
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