# How to vectorize `__call__` method

I am following, quant-econ tutorial. I am trying the exercise where I am supposed to implement a Empirical Cumulative Probability Funcion using vectorized numpy methods.

Here is the correct solution to problem:

``````class ecdf:

def __init__(self, observations):
self.observations = np.asarray(observations)

def __call__(self, x):
return np.mean(self.observations <= x)

def plot(self, a=None, b=None):

# === choose reasonable interval if [a, b] not specified === #
if not a:
a = self.observations.min() - self.observations.std()
if not b:
b = self.observations.max() + self.observations.std()

# === generate plot === #
x_vals = np.linspace(a, b, num=100)
f = np.vectorize(self.__call__)
plt.plot(x_vals, f(x_vals))
plt.show()
``````

But I am trying to do it this way:

``````class ecdf(object):

def __init__(self, observations):
self.observations = np.asarray(observations)
self.__call__ = np.vectorize(self.__call__)

def __call__(self, x):
return np.mean(self.observations <= x)
``````

So that, `__call__` method is vectorized and instance can be called with an array and it returns an array of cumulative probabilities for that array. However, when I try it like this:

``````p = ecdf(uniform(0,1,500))
p([0.2, 0.3])
``````

I am getting this error:

``````Traceback (most recent call last):

File "<ipython-input-34-6a77f18aa54e>", line 1, in <module>
p([0.2, 0.3])

File "D:/Users/y_arabaci-ug/Desktop/quant-econ/programs/numpy_exercises.py", line 50, in __call__
return np.mean(self.observations <= x)

ValueError: operands could not be broadcast together with shapes (500) (2)
``````

My question is, how come author could vectorize `self.__call__` and it works, while my method gives an error?

-
I don't know if your solution can work somehow, but I wouldn't let `__init__` (on the object side) modify the definition of the function it obtained from its own class (on the type side). IMHO, this should be done through a metaclass. –  Cilyan Nov 15 '13 at 0:08
add comment

## 1 Answer

You can't do that way, because `__call__` must be an attribute of the class `ecdf`, not the instance. Here is my solution:

``````class ecdf(object):

def __init__(self, observations):
self.observations = np.asarray(observations)
self._v_calc = np.vectorize(self._calc)

def _calc(self, x):
return np.mean(self.observations <= x)

def __call__(self, x):
return self._v_calc(x)
``````
-
add comment