I'm using `scipy.optimize.curve_fit`

, but I suspect it is converging to a local minimum and not the global minimum.

I tried using simulated annealing in the following way:

```
def fit(params):
return np.sum((ydata - specf(xdata,*params))**2)
p = scipy.optimize.anneal(fit,[1000,1E-10])
```

where `specf`

is the curve I am trying to fit. The results in `p`

though are clearly worse than the minimum returned by `curve_fit`

even when the return value indicates the global minimum was reached (see anneal).

How can I improve the results? Is there a global curve fitter in SciPy?