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mip1_c.c


/* Copyright 2020, Gurobi Optimization, LLC */

/* This example formulates and solves the following simple MIP model:

     maximize    x +   y + 2 z
     subject to  x + 2 y + 3 z <= 4
                 x +   y       >= 1
                 x, y, z binary
*/

#include <stdlib.h>
#include <stdio.h>
#include "gurobi_c.h"

int
main(int   argc,
     char *argv[])
{
  GRBenv   *env   = NULL;
  GRBmodel *model = NULL;
  int       error = 0;
  double    sol[3];
  int       ind[3];
  double    val[3];
  double    obj[3];
  char      vtype[3];
  int       optimstatus;
  double    objval;

  /* Create environment */
  error = GRBemptyenv(&env);
  if (error) goto QUIT;

  error = GRBsetstrparam(env, "LogFile", "mip1.log");
  if (error) goto QUIT;

  error = GRBstartenv(env);
  if (error) goto QUIT;

  /* Create an empty model */
  error = GRBnewmodel(env, &model, "mip1", 0, NULL, NULL, NULL, NULL, NULL);
  if (error) goto QUIT;

  /* Add variables */
  obj[0] = 1; obj[1] = 1; obj[2] = 2;
  vtype[0] = GRB_BINARY; vtype[1] = GRB_BINARY; vtype[2] = GRB_BINARY;
  error = GRBaddvars(model, 3, 0, NULL, NULL, NULL, obj, NULL, NULL, vtype,
                     NULL);
  if (error) goto QUIT;

  /* Change objective sense to maximization */
  error = GRBsetintattr(model, GRB_INT_ATTR_MODELSENSE, GRB_MAXIMIZE);
  if (error) goto QUIT;

  /* First constraint: x + 2 y + 3 z <= 4 */
  ind[0] = 0; ind[1] = 1; ind[2] = 2;
  val[0] = 1; val[1] = 2; val[2] = 3;

  error = GRBaddconstr(model, 3, ind, val, GRB_LESS_EQUAL, 4.0, "c0");
  if (error) goto QUIT;

  /* Second constraint: x + y >= 1 */
  ind[0] = 0; ind[1] = 1;
  val[0] = 1; val[1] = 1;

  error = GRBaddconstr(model, 2, ind, val, GRB_GREATER_EQUAL, 1.0, "c1");
  if (error) goto QUIT;

  /* Optimize model */
  error = GRBoptimize(model);
  if (error) goto QUIT;

  /* Write model to 'mip1.lp' */
  error = GRBwrite(model, "mip1.lp");
  if (error) goto QUIT;

  /* Capture solution information */
  error = GRBgetintattr(model, GRB_INT_ATTR_STATUS, &optimstatus);
  if (error) goto QUIT;

  error = GRBgetdblattr(model, GRB_DBL_ATTR_OBJVAL, &objval);
  if (error) goto QUIT;

  error = GRBgetdblattrarray(model, GRB_DBL_ATTR_X, 0, 3, sol);
  if (error) goto QUIT;

  printf("\nOptimization complete\n");
  if (optimstatus == GRB_OPTIMAL) {
    printf("Optimal objective: %.4e\n", objval);

    printf("  x=%.0f, y=%.0f, z=%.0f\n", sol[0], sol[1], sol[2]);
  } else if (optimstatus == GRB_INF_OR_UNBD) {
    printf("Model is infeasible or unbounded\n");
  } else {
    printf("Optimization was stopped early\n");
  }

QUIT:

  /* Error reporting */
  if (error) {
    printf("ERROR: %s\n", GRBgeterrormsg(env));
    exit(1);
  }

  /* Free model */
  GRBfreemodel(model);

  /* Free environment */
  GRBfreeenv(env);

  return 0;
}

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