# how to vectorize an operation on a 1 dimensionsal array to produce 2 dimensional matrix in numpy

I have a 1d array of values

``````i = np.arange(0,7,1)
``````

and a function

``````# Returns a column matrix
def fn(i):
return np.matrix([[i*2,i*3]]).T

fnv = np.vectorize(fn)
``````

then writing

``````fnv(i)
``````

gives me an error

``````  File "<stdin>", line 1, in <module>
File "c:\Python33\lib\site-packages\numpy\lib\function_base.py",
line 1872, in __call__
return self._vectorize_call(func=func, args=vargs)
File "c:\Python33\lib\site-packages\numpy\lib\function_base.py",
line 1942, in _vectorize_call
copy=False, subok=True, dtype=otypes[0])
ValueError: setting an array element with a sequence.
``````

The result I am looking for is a matrix with two rows and as many columns as in the input array. What is the best notation in numpy to achieve this?

For example i would equal

``````[1,2,3,4,5,6]
``````

and the output would equal

``````[[2,4,6,8,10,12],
[3,6,9,12,15,18]]
``````
-
you shouldn't use 'input' as a variable name, also could you show an example of the expected output? –  elyase Jan 8 at 14:37
Added an example output just to show the structure. The values are irrelevant and could be replaced by any values calculated within fn –  bradgonesurfing Jan 8 at 14:44
Your function and your output do not match... –  Jaime Jan 8 at 14:56
Yes it does. f(1) -> [2,3]' f(2) -> [4,6]' etc –  bradgonesurfing Jan 8 at 14:59
IS this so complex? Generate a sequence of columns and concat them together in the fastest way possible to make a matrix –  bradgonesurfing Jan 8 at 15:01

EDIT You should try to avoid using `vectorize`, because it gives the illusion of numpy efficiency, but inside it's all python loops.

If you really have to deal with user supplied functions that take `int`s and return a `matrix` of shape `(2, 1)` then there probably isn't much you can do. But that seems like a really weird use case. If you can replace that with a list of functions that take an `int` and return an `int`, and that use `ufuncs` when needed, i.e. `np.sin` instead of `math.sin`, you can do the following

``````def vectorize2(funcs) :
def fnv(arr) :
return np.vstack([f(arr) for f in funcs])
return fnv

f2 = vectorize2((lambda x : 2 * x, lambda x : 3 * x))

>>> f2(np.arange(10))
array([[ 0,  2,  4,  6,  8, 10, 12, 14, 16, 18],
[ 0,  3,  6,  9, 12, 15, 18, 21, 24, 27]])
``````

Just for your reference, I have timed this vectorization against your proposed one:

``````f = vectorize(fn)

>>> timeit.timeit('f(np.arange(10))', 'from __main__ import np, f', number=1000)
0.28073329263679625
>>> timeit.timeit('f2(np.arange(10))', 'from __main__ import np, f2', number=1000)
0.023139129945661807

>>> timeit.timeit('f(np.arange(10000))', 'from __main__ import np, f', number=10)
2.3620706288432984
>>> timeit.timeit('f2(np.arange(10000))', 'from __main__ import np, f2', number=10)
0.002757072593169596
``````

So there is an order of magnitude in speed even for small arrays, that grows to a x1000 speed up, available almost for free, for larger arrays.

Don't use `vectorize` unless there is no way around it, it's slow. See the following examples

``````>>> a = np.array(range(7))
>>> a
array([0, 1, 2, 3, 4, 5, 6])
>>> np.vstack((a, a+1))
array([[0, 1, 2, 3, 4, 5, 6],
[1, 2, 3, 4, 5, 6, 7]])
>>> np.vstack((a, a**2))
array([[ 0,  1,  2,  3,  4,  5,  6],
[ 0,  1,  4,  9, 16, 25, 36]])
``````

Whatever your function is, if it can be constructed with numpy's ufuncs, you can do something like `np.vstack((a, f(a)))` and get what you want

-
No that is just a degenerate example to show the principle. The tranformation within fn could be anything but output as a (2,1) column matrix –  bradgonesurfing Jan 8 at 14:44
@bradgonesurfing Redid it completely, the basic idea still holds –  Jaime Jan 8 at 14:52
Still no good. f(a) returns a column each of which should be concatenated to form an (2,N) matrix. fn could be anything –  bradgonesurfing Jan 8 at 14:55
@bradgonesurfing I've edited it again –  Jaime Jan 8 at 17:10
Thanks for the clarification of ufuncs. As an old Matlab hack I should know to look for this kind of stuff. –  bradgonesurfing Jan 8 at 17:33
``````def vectorize( fn):