Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

If it exists in numpy a function which calculates a maximum length of consecutive numbers in 3d array along a chosen axis?

I created such function for 1d array (the function's prototype is max_repeated_number(array_1d, number)):

>>> import numpy
>>> a = numpy.array([0, 1, 1, 0, 0, 0, 1, 1, 1, 1, 0, 0])
>>> b = max_repeated_number(a, 1)
>>> b
4

And I want to applicate it for 3d array along axis=0.

I do for a 3d array of following dimentions (A,B,C):

result_array = numpy.array([])
for i in range(B):    
     for j in range(C):
          result_array[i,j] = max_repeated_number(my_3d_array[:,i,j],1)

But the time of calculation is very long because of the loops. I know that one need to avoid the loops in python.

If it exists a way to do it without loops?

Thanks.

PS: Here is the code of max_repeated_number(1d_array, number):

def max_repeated_number(array_1d,number):
    previous=-1
    nb_max=0
    nb=0
    for i in range(len(array_1d)):
        if array_1d[i]==number:
            if array_1d[i]!=previous:
                nb=1
            else:
                nb+=1
        else:
            nb=0

        if nb>nb_max:
            nb_max=nb

        previous=array_1d[i]
    return nb_max
share|improve this question
3  
Why don't you show us the code for max_repeated_number and we might be able to show you how to extend it –  Mr E Nov 5 '13 at 13:17
1  
    
@MrE, I have just added the code of max_repeated_number. –  natalia Nov 5 '13 at 16:29
1  
@askewchan, thanks! But i need for 3d array... –  natalia Nov 5 '13 at 16:34
    
I understand, but you could probably improve your speed a lot by using one of those solutions for your 1d function. –  askewchan Nov 5 '13 at 17:30

2 Answers 2

You can adapt the solution explained here for any ndarray case using something like:

def max_consec_elem_ndarray(a, axis=-1):
    def f(a):
        return max(sum(1 for i in g) for k,g in groupby(a))
    new_shape = list(a.shape)
    new_shape.pop(axis)
    a = a.swapaxes(axis, -1).reshape(-1, a.shape[axis])
    ans = np.zeros(np.prod(a.shape[:-1]))
    for i, v in enumerate(a):
        ans[i] = f(v)
    return ans.reshape(new_shape)

Example:

a = np.array([[[[1,2,3,4],
                [1,3,5,4],
                [4,5,6,4]],
               [[1,2,4,4],
                [4,5,3,4],
                [4,4,6,4]]],

              [[[1,2,3,4],
                [1,3,5,4],
                [0,5,6,4]],
               [[1,2,4,4],
                [4,0,3,4],
                [4,4,0,4]]]])

print(max_consec_elem_ndarray(a, axis=2))
#[[[ 2.  1.  1.  3.]
#  [ 2.  1.  1.  3.]]
# 
# [[ 2.  1.  1.  3.]
#  [ 2.  1.  1.  3.]]]
share|improve this answer
1  
Saullo, thanks. I will try. Though it seems a bit complicated for me... –  natalia Nov 7 '13 at 9:38

Finnaly, i created a function in C (with loops) and then i called it from Python. It works very fast!

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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