I have seen a lot of questions asking for a faster way to iterate over each element of a 2d array, but I haven't found a good method to iterate over a 3d array in order to apply a function on each 2d array. For example:

from scipy.fftpack import dct
X = np.arange(10000, dtype=np.float32).reshape(-1,4,4)
np.array(map(dct, X))

Here I'm going through each 2d array contained in a 3d array of dimensions (625,4,4) and applying a DCT (discrete cosine transform) to each 4X4 array. I was wondering if there is a more suitable method to accomplish this.



Numpy Functions:

Well in this case, since dct is a numpy function, it has the functionality built-in to apply it over a particular axis. Nearly all numpy functions operate on complete arrays or can be told to operate on a particular axis (row or column).

So just by leveraging the axis parameter for dct function:

dct( X, axis=2)

you will get an equivalent result:

>>> ( dct(X, axis=2) == np.array(map(dct, X)) ).all()

which is also >35 times faster than using the map function in our case of (625,4,4) matrix:

%timeit dct(X, axis=2)
1000 loops, best of 3: 157 µs per loop

%timeit np.array(map(dct, X))
100 loops, best of 3: 5.76 ms per loop    

General Python Functions:

In other cases, you can vectorize a python function using either np.vectorize or np.frompyfunc functions. For instance if you have a demo function that performs a scalar operation:

def foo(x): # gives an error if passed in an array
    return x**2

>>> X = np.arange(8, dtype=np.float32).reshape(-1,2,2)
>>> foo_arr = np.vectorize( foo)
>>> foo_arr(X)
array([[[  0.,   1.],
        [  4.,   9.]],

       [[ 16.,  25.],
        [ 36.,  49.]]])

Discussion here might also be helpful for you. As they say, vectorizing your non-numpy function doesn't actually make it any faster though.

  • 2
    Thank you. I didn't notice that dct's axis parameter could be used in this situation. Regarding your general solution,what you described in last part of your answer is precisely why I was wondering about an alternative to np.vectorize. – Robert Smith Dec 24 '14 at 5:23
  • glad it helped out – Pacific Stickler Dec 24 '14 at 6:04

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.