# Passing additional arguments using scipy.optimize.curve_fit?

I am writing a program in Python that will fit Gaussian and Lorentzian shapes to some given resonance data. I originally began using `scipy.optimize.leastsq` but changed to using `optimize.curve_fit` after having difficulties in retrieving the errors in the optimized parameters from the covariance matrix.

I have defined a function to fit a sum of Gaussian and Lorentzian:

``````def mix(x,*p):
ng = numg
p1 = p[:3*ng]
p2 = p[3*ng:]
a = sumarray(gaussian(x,p1),lorentzian(x,p2))
return a
``````

where `p` is an array of the initial guesses at the fit parameters. Here is the instance where it is called using `curve_fit`:

``````leastsq,covar = opt.curve_fit(mix,energy,intensity,inputtot)
``````

At the moment `numg` (the number of Gaussian shapes) is a global variable. Is there's any way that it can be incorporated into `curve_fit` as an extra argument instead, as can be done with `leastsq`?

-

The great thing about python is that you can define functions that return other functions, try currying:

``````def make_mix(numg):
def mix(x, *p):
ng = numg
p1 = p[:3*ng]
p2 = p[3*ng:]
a = sumarray(gaussian(x,p1),lorentzian(x,p2))
return a
return mix
``````

and then

``````leastsq, covar = opt.curve_fit(make_mix(numg),energy,intensity,inputtot)
``````
-
Thanks so much! Worked perfectly – Matt Durkin Apr 20 '12 at 17:26