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Can anyone recommend a way to do a reverse cumulative sum on a numpy array?

Where 'reverse cumulative sum' is defined as below (I welcome any corrections on the name for this procedure):

if

x = np.array([0,1,2,3,4])

then

np.cumsum(x)

gives

array([0,1,3,6,10])

However, I would like to get

array([10,10,9,7,4]

Can anyone suggest a way to do this?


Note. I just realised that I can do it with:

np.cumsum(x[::-1])[::-1]

Posted anyway for reference/in case anyone has a better idea.

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3 Answers 3

up vote 10 down vote accepted

This does it:

np.cumsum(x[::-1])[::-1] 
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Just for the record: np.sum(x) - np.cumsum(x) is also an option, but it is half as fast on large arrays (where speed matters):

In [8]: x = np.ones(1e8)

In [9]: %timeit np.cumsum(x[::-1])[::-1]
1 loops, best of 3: 547 ms per loop

In [10]: %timeit np.sum(x) - np.cumsum(x)
1 loops, best of 3: 974 ms per loop

and less elegant when wanting to do a cumsum along some dimension other than the first:

x = np.ones((1e3,1e3))
np.sum(x,axis=-1)[:,np.newaxis] - np.cumsum(x,axis=-1)
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For the fun of it, using anonymous function :

array = [0,1,2,3,4]

reverse = lambda a: a[::-1]
cumsum = lambda a: [ sum(a[:i+1]) for i,x in enumerate(a) ] # there is also an accumulate function present in the itertools module

print reverse(array)
print cumsum(array)

# sadly, no compose function in Python
reverse_cumsum = lambda a: reverse(  cumsum ( reverse(a) ) )

print reverse_cumsum(array)

Result :

[4, 3, 2, 1, 0]
[0, 1, 3, 6, 10]
[10, 10, 9, 7, 4]
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FYI: a = np.random.randint(100, size=(1000)), %timeit reverse_cumsum(a): 1 loops, best of 3: 315 ms per loop, %timeit np.cumsum(a[::-1])[::-1]: 100000 loops, best of 3: 8.89 µs per loop. (If I switch from your cumsum to numpy's, it's then 9.75 µs per loop, so the function calls don't add that much overhead, it's just the implementing-in-python-and-repeatedly-summing-for-no-real-reason that gets a 35000x slowdown.) –  Dougal Aug 28 '13 at 15:54

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