I'm trying to use pymc3 to fit a model involving the voigt function (coming from scipy.special). The inputs to the voigt function are supposed to be arrays, whereas a,b are pymc3 classes. How do I get scipy.special functions to take pymc3 RV's as input? Running the code attached below produces an error:

import pymc3 as pm
from scipy.special import voigt_profile
import numpy as np

with pm.Model() as linear_model:
    a = pm.Lognormal('a',mu=0, sigma=2.)
    b = pm.Lognormal('b',mu=0, sigma=2.)
    x = np.linspace(-1,1)
    c = voigt_profile(x,a,b)

TypeError: ufunc 'voigt_profile' not supported for the input types, and the inputs could not be safely coerced to any supported types according to the casting rule ''safe''

For better or for worse, you'll need to (re)implement the function using theano. Here is one naive version that works: notice that you can not use erfc, because theano errors out.

import theano.tensor as tt

def faddeeva(z):
    m = tt.exp(-tt.square(z))
    return (m - m * tt.erf(1.j * z))

def voigt_profile(x, sigma, gamma):
    z = (x + 1.j * gamma) / (tt.sqrt(2.) * sigma)
    return faddeeva(z).real / (sigma * tt.sqrt(2 * np.pi))
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