# How to use np.vectorize?

I have this function to vectorize:

``````if x >= y, then x*y
else x/y
``````

My code is:

``````def vector_function(x, y):

if y >= x:
return x*y
else:
return x/y

vfunc = np.vectorize(vector_function)
return vfunc

raise NotImplementedError
``````

But I am getting the error:

``````'>=' not supported between instances of 'int' and 'list'
``````

• Please check the indentation of your code, because for now it seem no code can be executed after the `if/else`
– azro
Feb 13 at 11:34
• Isn't the answer to `How to use np.vectorize?` usually "Don't. It just pretends to be a vectorized function but is just a loop with a different name"? Feb 13 at 12:09
• From numpy.vectorize: The vectorize function is provided primarily for convenience, not for performance. The implementation is essentially a for loop. Feb 13 at 12:20
• If you are aware of this, why don't you include this information in your answer? SO is a database to provide the best possible answer, not the code a customer requests. Feb 13 at 13:06

A pure "vectorized" version is:

``````def foo(x,y):
return np.where(y>=x, x*y, x/y)

In : foo(np.array([1,2,3,4]), 2.5)
Out: array([2.5, 5. , 1.2, 1.6])
``````

Depending on the size of the arrays, this times 2 to 10x faster than Stefans answer

I chose this `where` approach because it was the easiest and most compact way of broadcasting `x` with `y`. It might not be fastest, depending on the 'cost' of the `/` and `*`.

The problem is the `vectorize`-call inside the function.

``````import numpy as np

# first define the function
def vector_function(x, y):
if y >= x:
return x * y
else:
return x / y

# vectorize it
vfunc = np.vectorize(vector_function)

# validation
print(vfunc([1, 2, 3, 4], 2.5)) # [2.5 5.  1.2 1.6]
``````

Note, however, from numpy.vectorize: The `vectorize` function is provided primarily for convenience, not for performance. The implementation is essentially a for loop.