I am using PySCIPOpt and have a MIP with some quadratic constraints (works). Now, I want to implement a Primal Heuristic (should run once before presolving), that fixes certain Variables and optimizes afterwards.
Ìn pseudo-code something like:
For x in ToFIX:
model.fixVar(x, my_guess(x))
model.optimize()
*Any found solution is used as solution of the original problem*
For x in ToFIX:
model.unFixVar(x)
I worked around that problem by creating a second model, solving that, identifying the variables by their name and using model.trySol(). This mostly works but is slow and certainly not the way it is meant to be implemented.
Any hint, which functionalities to use is appreciated.