// Copyright 2010-2018 Google LLC // Licensed under the Apache License, Version 2.0 (the "License"); // you may not use this file except in compliance with the License. // You may obtain a copy of the License at // // http://www.apache.org/licenses/LICENSE-2.0 // // Unless required by applicable law or agreed to in writing, software // distributed under the License is distributed on an "AS IS" BASIS, // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. // See the License for the specific language governing permissions and // limitations under the License. package com.google.ortools.examples; import com.google.ortools.linearsolver.MPConstraint; import com.google.ortools.linearsolver.MPObjective; import com.google.ortools.linearsolver.MPSolver; import com.google.ortools.linearsolver.MPVariable; /** * Linear programming example that shows how to use the API. * */ public class LinearProgramming { static { System.loadLibrary("jniortools"); } private static void runLinearProgrammingExample(String solverType, boolean printModel) { MPSolver solver = MPSolver.createSolver("IntegerProgramming", solverType); if (solver == null) { System.out.println("Could not create solver " + solverType); return; } double infinity = java.lang.Double.POSITIVE_INFINITY; // x1, x2 and x3 are continuous non-negative variables. MPVariable x1 = solver.makeNumVar(0.0, infinity, "x1"); MPVariable x2 = solver.makeNumVar(0.0, infinity, "x2"); MPVariable x3 = solver.makeNumVar(0.0, infinity, "x3"); // Maximize 10 * x1 + 6 * x2 + 4 * x3. MPObjective objective = solver.objective(); objective.setCoefficient(x1, 10); objective.setCoefficient(x2, 6); objective.setCoefficient(x3, 4); objective.setMaximization(); // x1 + x2 + x3 <= 100. MPConstraint c0 = solver.makeConstraint(-infinity, 100.0); c0.setCoefficient(x1, 1); c0.setCoefficient(x2, 1); c0.setCoefficient(x3, 1); // 10 * x1 + 4 * x2 + 5 * x3 <= 600. MPConstraint c1 = solver.makeConstraint(-infinity, 600.0); c1.setCoefficient(x1, 10); c1.setCoefficient(x2, 4); c1.setCoefficient(x3, 5); // 2 * x1 + 2 * x2 + 6 * x3 <= 300. MPConstraint c2 = solver.makeConstraint(-infinity, 300.0); c2.setCoefficient(x1, 2); c2.setCoefficient(x2, 2); c2.setCoefficient(x3, 6); System.out.println("Number of variables = " + solver.numVariables()); System.out.println("Number of constraints = " + solver.numConstraints()); if (printModel) { String model = solver.exportModelAsLpFormat(); System.out.println(model); } final MPSolver.ResultStatus resultStatus = solver.solve(); // Check that the problem has an optimal solution. if (resultStatus != MPSolver.ResultStatus.OPTIMAL) { System.err.println("The problem does not have an optimal solution!"); return; } // Verify that the solution satisfies all constraints (when using solvers // others than GLOP_LINEAR_PROGRAMMING, this is highly recommended!). if (!solver.verifySolution(/*tolerance=*/1e-7, /* log_errors= */ true)) { System.err.println("The solution returned by the solver violated the" + " problem constraints by at least 1e-7"); return; } System.out.println("Problem solved in " + solver.wallTime() + " milliseconds"); // The objective value of the solution. System.out.println("Optimal objective value = " + solver.objective().value()); // The value of each variable in the solution. System.out.println("x1 = " + x1.solutionValue()); System.out.println("x2 = " + x2.solutionValue()); System.out.println("x3 = " + x3.solutionValue()); final double[] activities = solver.computeConstraintActivities(); System.out.println("Advanced usage:"); System.out.println("Problem solved in " + solver.iterations() + " iterations"); System.out.println("x1: reduced cost = " + x1.reducedCost()); System.out.println("x2: reduced cost = " + x2.reducedCost()); System.out.println("x3: reduced cost = " + x3.reducedCost()); System.out.println("c0: dual value = " + c0.dualValue()); System.out.println(" activity = " + activities[c0.index()]); System.out.println("c1: dual value = " + c1.dualValue()); System.out.println(" activity = " + activities[c1.index()]); System.out.println("c2: dual value = " + c2.dualValue()); System.out.println(" activity = " + activities[c2.index()]); } public static void main(String[] args) throws Exception { System.out.println("---- Linear programming example with GLOP (recommended) ----"); runLinearProgrammingExample("GLOP", true); System.out.println("---- Linear programming example with CLP ----"); runLinearProgrammingExample("CLP", false); } }