# custom Distribution in PymC3 specific example

I am confused about custom distributions, basically because I am not able to wrap my head around how it works. Perhaps a post on it would be super useful.

I am trying to create a distribution that is a combination of

-15% to -5% with 25% probability

0 to 5% with 75 % probability

Essentially trying to solve the problem given in Crystal Ball Tutorial.pdf page 3-11.

What about doing something like this:

``````with pm.Model() as model:
idx = pm.Uniform('idx', 0, 1)
a = pm.Uniform('a', np.array([-15, 0]), np.array([-5, 5]), shape=2)
b = pm.Deterministic('b', pm.math.switch(idx < 0.25, a[0], a[1]))
step = pm.Metropolis()
trace = pm.sample(1000, step)
``````

You can do this with `pymc3`'s `Mixture` distribution as follows:

``````import numpy as np
import pymc3 as pm

with pm.Model() as model:
dist = pm.Mixture('dist', np.array([0.25, 0.75]),
[pm.Uniform.dist(-0.15, -0.05), pm.Uniform.dist(0., 0.05)])

N = 10000
samples = dist.random(size=10000)
``````

Which produces the following distribution, which I think is what you are looking for

distribution histogram