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.

Is there a numpy function to sum an array along (not over) a given axis? By along an axis, I mean something equivalent to:

[x.sum() for x in arr.swapaxes(0,i)].

to sum along axis i.

For example, a case where numpy.sum will not work directly:

>>> a = np.arange(12).reshape((3,2,2))
>>> a
array([[[ 0,  1],
        [ 2,  3]],

       [[ 4,  5],
        [ 6,  7]],

       [[ 8,  9],
        [10, 11]]])
>>> [x.sum() for x in a] # sum along axis 0
[6, 22, 38]
>>> a.sum(axis=0)
array([[12, 15],
       [18, 21]])
>>> a.sum(axis=1)
array([[ 2,  4],
       [10, 12],
       [18, 20]])
>>> a.sum(axis=2)
array([[ 1,  5],
       [ 9, 13],
       [17, 21]])
share|improve this question

4 Answers 4

Call sum twice?

In [1]: a.sum(axis=1).sum(axis=1)
Out[1]: array([ 6, 22, 38])

Of course, this would be a little awkward to generalize because axes "disappear". Do you need it to be general?

def sum_along(a, axis=0):
    js = [axis] + [i for i in range(len(a.shape)) if i != axis]
    a = a.transpose(js)

    while len(a.shape) > 1: a = a.sum(axis=1)

    return a
share|improve this answer
up vote 2 down vote accepted
def sum_along_axis(a, axis=None):
    """Equivalent to [x.sum() for x in a.swapaxes(0,axis)]"""
    if axis is None:
        return a.sum()
    return np.fromiter((x.sum() for x in a.swapaxes(0,axis)), dtype=a.dtype)
share|improve this answer
np.apply_over_axes(sum, a, [1,2]).ravel()
share|improve this answer

As of numpy 1.7.1 there is an easier answer here - you can pass a tuple to the "axis" argument of the sum method to sum over multiple axes. So to sum over all except the given one:

x.sum(tuple(j for j in xrange(x.ndim) if j!=i))
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.