# Elegant way of reducing list by averaging?

Is there a more elegant way of writing this function?

``````def reduce(li):
result=[0 for i in xrange((len(li)/2)+(len(li)%2))]
for i,e in enumerate(li):
result[int(i/2)] += e
for i in range(len(result)):
result[i] /= 2
if (len(li)%2 == 1):
result[len(result)-1] *= 2
return result
``````

Here, what it does:

``````a = [0,2,10,12]
b = [0,2,10,12,20]
reduce(a)
>>> [1,11]
reduce(b)
>>> [1,11,20]
``````

It is taking average of even and odd indexes, and leaves last one as is if list has odd number of elements

-
what if nobody answered the question or there are no good answers? –  gok Mar 2 '11 at 10:58

what you actually want to do is to apply a moving average of 2 samples trough your list, mathematically you convolve a window of [.5,.5], then take just the even samples. To avoid dividing by two the last element of odd arrays, you should duplicate it, this does not affect even arrays.

Using numpy it gets pretty elegant:

``````import numpy as np

np.convolve(a + [a[-1]], [.5,.5], mode='valid')[::2]
array([  1.,  11.])

np.convolve(b + [b[-1]], [.5,.5], mode='valid')[::2]
array([  1.,  11.,  20.])
``````

you can convert back to list using list(outputarray).

using numpy is very useful if performance matters, optimized C math code is doing the work:

``````In [10]: %time a=reduce(list(np.arange(1000000))) #chosen answer
CPU times: user 6.38 s, sys: 0.08 s, total: 6.46 s
Wall time: 6.39 s

In [11]: %time c=np.convolve(list(np.arange(1000000)), [.5,.5], mode='valid')[::2]
CPU times: user 0.59 s, sys: 0.01 s, total: 0.60 s
Wall time: 0.61 s
``````
-
+1 Once you involve the awesome power that is numpy, there are a lot of amazing things you can do. –  JoshAdel Mar 2 '11 at 3:32
not to talk about performance, –  Andrea Zonca Mar 2 '11 at 3:50
ah, even greater, thanks. Gotta learn numpy more... –  gok Mar 2 '11 at 10:55
``````def reduce(li):
result = [(x+y)/2.0 for x, y in zip(li[::2], li[1::2])]
if len(li) % 2:
result.append(li[-1])
return result
``````

Note that your original code had two bugs: [0,1] would give 0 rather than 0.5, and [5] would give [4] instead of [5].

-
Great!, thanks a lot for also pointing out the bugs. –  gok Mar 2 '11 at 0:52
+1 Similar in spirit to my solution, making nice use of list comprehension. –  JoshAdel Mar 2 '11 at 0:54

Here's a one-liner:

``````[(0.5*(x+y) if y != None else x)  for x,y in map(None, *(iter(b),) * 2)]
``````

where `b` is your original list that you want to reduce.

Edit: Here's a variant on the code I have above that maybe is a bit clearer and relies on `itertools`:

``````from itertools import izip_longest
[(0.5*(x+y) if y != None else x)  for x,y in izip_longest(*[iter(b)]* 2)]
``````
-

Here's another attempt at it that seems more straightforward to me because it's all one pass:

``````def reduce(li):

result = []
it = iter(li)

try:
for i in it:
result.append((i + next(it)) / 2)
except StopIteration:
result.append(li[-1])

return result
``````
-

Here's my try, using itertools:

``````import itertools

def reduce(somelist):
odds = itertools.islice(somelist, 0, None, 2)
eves = itertools.islice(somelist, 1, None, 2)
for (x,y) in itertools.izip(odds,evens):
yield( (x + y) / 2.0)
if len(somelist) % 2 != 0 : yield(somelist[-1])

>>> [x for x in reduce([0, 2, 10, 12, 20]) ]
[1, 11, 20]
``````