# GLPK Integer Optimizer prints “PROBLEX HAS NO INTEGER FEASIBLE SOLUTION” but still returns optimal status

Help needed with the output of GLPK. Some constraints cannot be met (intentionally) GLPK prints "PROBLEM HAS NO INTEGER FEASIBLE SOLUTION" but still returns 'optimal' as the status of the solution.

I've set all tolerance levels to 0

``````glpk.options['feastol']=0
solvers.options['feastol']=0
glpk.options['abstol']=0
solvers.options['abstol']=0
glpk.options['reltol']=0
solvers.options['reltol']=0
``````

This is the output

``````   GLPK Integer Optimizer, v4.43
10 rows, 5 columns, 19 non-zeros
5 integer variables, none of which are binary
Preprocessing...
1 hidden covering inequaliti(es) were detected
5 rows, 5 columns, 14 non-zeros
5 integer variables, all of which are binary
Scaling...
A: min|aij| =  1.000e+00  max|aij| =  1.000e+00  ratio =  1.000e+00
Problem data seem to be well scaled
Constructing initial basis...
Size of triangular part = 4
Solving LP relaxation...
GLPK Simplex Optimizer, v4.43
5 rows, 5 columns, 14 non-zeros
0: obj =   2.000000000e+00  infeas =  1.000e+00 (1)
*     2: obj =  -2.500000000e+00  infeas =  0.000e+00 (0)
*     3: obj =  -4.000000000e+00  infeas =  0.000e+00 (0)
OPTIMAL SOLUTION FOUND
Integer optimization begins...
+     3: mip =     not found yet >=     tree is empty        (0; 1)
PROBLEM HAS NO INTEGER FEASIBLE SOLUTION
``````

The wanted behavior is to indicate failure when "PROBLEM HAS NO INTEGER FEASIBLE SOLUTION"

Thanks.

-
So, what's the verdict? –  Ali Oct 29 '12 at 9:01

In the C API you use `glp_mip_status()` and you would get `GLP_NOFEAS` in your case, meaning that the "problem has no integer feasible solution". See under determine status of MIP solution in the doc.
I would be really really surprised if this function wasn't available. I would look into `ilp` which, I guess, refers to integer programming. I don't know Python and in particular the API you are using so unfortunately I cannot help you with that. –  Ali Oct 1 '12 at 12:34