I am using Gurobi (via C++) as part of my MSc thesis to solve Quadratic Knapsack Problem instances. So far, I was able to generate a model with binary decision variables, quadratic objective function and the capacity constraint and Gurobi solved it just fine. Then I wanted to solve the continuous relaxation of the QKP. I built the model as before but with continuous variables instead of binary ones and Gurobi threw me an exception when I tried to optimize it:

```
10020 - Objective Q not PSD (negative diagonal entry)
```

Which confounded me for a bit since all values form the problem instance are ≥0. In preparing to post this question, I wrote both models out to file and discovered the reason:

```
NAME (null)
* Max problem is converted into Min one
```

Which of course means that all previously positive values are now negative. Now I know why Q is not PSD but how do I fix this? Can I prevent the conversion from a Max problem into a Min one? Do I need to configure the model for the continuous relaxation differently?

From my (unexperienced) point of view it just looks like Gurobi shot itself in the foot.