I am trying to speed up a function minimization routine that uses the 'leastsq' function from scipy.optimize. That is, I am doing the following:

```
def errfn(pars):
return myfn(ts,pars)-data
pfit,success = scipy.optimize.leastsq(errfn,p0,Dfun=Dfun,col_deriv=1)
```

errfn is the function that returns the residuals; Dfun returns the Jacobian matrix; p0 is the initial parameter guess. In pure numpy, this works. Now, if I, for example, change myfn (or Dfun) to incorporate C code using weave.inline, the weave.inline compiler breaks. When I call the function on its own it returns the correct value; it is only in the context of being called by the leastsq function that the compiler breaks. Any ideas what is happening here? Below is how I am using weave.inline:

```
def myfn(t,p):
eta = p[0]
theta = p[1]
c = p[2]
tau = p[3]
nt = len(t)
fs = zeros(nt)
code = """
double T = 10000;
for (int i=0; i<nt; i++){
double tprime = T*sin(pi*(t(i)-tau)/T)/pi/eta;
fs(i) = 1-theta + 0.5*theta*(2 - tanh(c*(tprime + 0.5)) + tanh(c*(tprime - 0.5)));
}
"""
weave.inline(code,['fs','nt','eta','theta','c','tau','t','pi'],type_converters=converters.blitz)
return fs
```