```
from numpy import *; from scipy.optimize import *; from math import *
def f(X):
x=X[0]; y=X[1]
return x**4-3.5*x**3-2*x**2+12*x+y**2-2*y
bnds = ((1,5), (0, 2))
min_test = minimize(f,[1,0.1], bounds = bnds);
print(min_test.x)
```

My function `f(X)`

has a local minima at `x=2.557, y=1`

which I should be able to find.

The code showed above will only give result where `x=1`

. I have tried with different tolerance and alle three method: L-BFGS-B, TNC and SLSQP.
This is the thread I have been looking at so far:
Scipy.optimize: how to restrict argument values

How can I fix this?

I am using Spyder(Python 3.6).

`print(f([2557, 1])) = 42690172880760.5`

, I would not call this a local minimum...`f([1, 1]) = 6.5`