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If I have an 1D numpy.ndarray b and a Python function f that I want to vectorize, this is very easy using the numpy.vectorize function:

c = numpy.vectorize(f)(a).

But if f returns a 1D numpy.ndarray instead of a scalar, how can I build a 2D numpy.ndarray instead? (That is, I want every 1D numpy.ndarray returned from f to become a row in the new 2D numpy.ndarray.)


def f(x):
    return x * x

a = numpy.array([1,2,3])
c = numpy.vectorize(f)(a)

def f_1d(x):
    return numpy.array([x, x])

a = numpy.ndarray([1,2,3])
d = ???(f_1d)(a)

In the above example c would become array([1, 4, 9]). What should ??? be replaced with if d should become array([[1, 1], [2, 2], [3, 3]])?

share|improve this question
You could also use the Kronecker product to do this without using a user defined function at all: d=np.kron(np.ones((1,2),, a.reshape((-1,1)) – talonmies Nov 18 '12 at 7:49

2 Answers 2

up vote 1 down vote accepted

Could do this instead:

def f_1d(x):
    return (x,x)
d = numpy.column_stack(numpy.vectorize(f_1d)(a))

will output:

array([[1, 1],
       [2, 2],
       [3, 3]])
share|improve this answer
I tried that, but the numpy.vectorize(f_1d)(a) part throws ValueError: setting an array element with a sequence.. – c00kiemonster Nov 18 '12 at 6:21
Replace your definition of f_1d with mine. – diliop Nov 18 '12 at 6:23
Oh I see. That worked. Thanks much. – c00kiemonster Nov 18 '12 at 6:37

I think you're looking for reshape and repeat

def f(x):
    return x * x
a = numpy.array([1,2,3])
b= numpy.vectorize(f)(a)
c = numpy.repeat(b.reshape( (-1,1) ),2, axis=1)
print c


[[1 1]
 [4 4]
 [9 9]]

You can also just set the array.shape tuple directly. It may be worthwhile to know that you can accomplish the same as vectorize using map, if you ever need to write pure python. b= numpy.vectorize(f)(a) would become b=map(f,a)

Using this kind of approach, it becomes unnecessary to have your f_1d at all, since all it seems to do is duplicate information, which is done best by numpy.repeat.

Also, this version is a bit faster, but this only matters if you're dealing with large arrays.

share|improve this answer
Hmmm either my question wasn't clear enough, or there is something I don't understand. I just added an example to my question, please update your answer if possible. – c00kiemonster Nov 18 '12 at 5:48
@c00kiemonster Indeed, I misunderstood your question slighly, your example makes it clearer. I've edited my answer – goncalopp Nov 18 '12 at 19:45

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