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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

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?


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

def max_repeated_number(array_1d,number):
    for i in range(len(array_1d)):
        if array_1d[i]==number:
            if array_1d[i]!=previous:

        if nb>nb_max:

    return nb_max
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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
@MrE, I have just added the code of max_repeated_number. –  natalia Nov 5 '13 at 16:29
@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)
    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)


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


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
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!

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