# Difference between frompyfunc and vectorize in numpy

What is the difference between vectorize and frompyfunc in numpy?

Both seem very similar. What is a typical use case for each of them?

Edit: As JoshAdel indicates, the class `vectorize` seems to be built upon `frompyfunc`. (see the source). It is still unclear to me whether `frompyfunc` may have any use case that is not covered by `vectorize`...

-
Any numpy developers out there who can clear this up? Numpy has many of these situations where there were higher and lower level implementations without a pointer between them in the docs. –  dtlussier Nov 24 '11 at 18:07

As JoshAdel points out, `vectorize` wraps `frompyfunc`. Vectorize adds extra features:

• Copies the docstring from the original function
• Allows you to exclude an argument from broadcasting rules.
• Returns an array of the correct dtype instead of dtype=object

Edit: After some brief benchmarking, I find that `vectorize` is significantly slower (~50%) than `frompyfunc` for large arrays. If performance is critical in your application, benchmark your use-case first.

`

``````>>> a = numpy.indices((3,3)).sum(0)

>>> print a, a.dtype
[[0 1 2]
[1 2 3]
[2 3 4]] int32

>>> def f(x,y):
"""Returns 2 times x plus y"""
return 2*x+y

>>> f_vectorize = numpy.vectorize(f)

>>> f_frompyfunc = numpy.frompyfunc(f, 2, 1)
>>> f_vectorize.__doc__
'Returns 2 times x plus y'

>>> f_frompyfunc.__doc__
'f (vectorized)(x1, x2[, out])\n\ndynamic ufunc based on a python function'

>>> f_vectorize(a,2)
array([[ 2,  4,  6],
[ 4,  6,  8],
[ 6,  8, 10]])

>>> f_frompyfunc(a,2)
array([[2, 4, 6],
[4, 6, 8],
[6, 8, 10]], dtype=object)
``````

`

-
Intersting... but the differences and use cases are still pretty much unclear to me... –  Olivier Verdier Jul 2 '12 at 18:39

I'm not sure what the different use cases for each is, but if you look at the source code (/numpy/lib/function_base.py), you'll see that `vectorize` wraps `frompyfunc`. My reading of the code is mostly that `vectorize` is doing proper handling of the input arguments. There might be particular instances where you would prefer one vs the other, but it would seem that `frompyfunc` is just a lower level instance of `vectorize`.

-
I agree with you that `frompyfunc` seems to be lower level than `vectorize`. The question remains, though, of whether there are cases where you would prefer to use `frompyfunc` instead of `vectorize`? –  Olivier Verdier Jul 21 '11 at 5:37