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.

i have a list of lists like this:

list = [[year1-month1,int1,float1],[year1-month1,int2,float2],[year1-month2,int3,float3]....

I need to define a function that goes through it returns a result like so:

newList = [[((int1*float1)+(int2*float2))/(float1+float2),year-month1],...

My problem is that the first item of over 2000 sublists is a date which is in a year-month format and the rest are values for days, and I need to get the monthly average. I tried few things but couldn't get it to work. I would be grateful for some suggestions.

what I've tried is something like:

    def avPrice(mylist):
        month=[]
        i = 0
        for i in mylist:
            if mylist[i][0] not in month:
                month = mylist[i][0],mylist[i][1]*mylist[i][2],mylist[i][2]
            else:
                month = month[0],month[1]+(mylist[i][1]*mylist[line][2]),month[2]+mylist[i][2]
                i = i + 1
            return month
        monthAvPrice.append(month)
share|improve this question
2  
Can you edit your answer to include some of the things you've tried? Perhaps we can help you find a problem in your code. –  Michael0x2a Dec 17 '12 at 1:15
add comment

3 Answers 3

Use itertools.groupby() to group together the entries for a month, and reduce() to add up the numbers. For example:

import itertools
ddat= [['2012-01', 1, 5.4], ['2012-01', 2, 8.1], ['2012-01', 3, 10.8],
['2012-01', 4, 13.5], ['2012-02', 1, 8.1], ['2012-02', 2,10.8],
['2012-02', 3, 13.5], ['2012-02', 4, 16.2], ['2012-03', 1, 10.8],
['2012-03', 2, 13.5], ['2012-03', 3, 16.2], ['2012-03', 4, 18.9],
['2012-04', 1, 13.5], ['2012-04', 2, 16.2], ['2012-04', 3,18.9]]

[[w[0], reduce(lambda x, y: x+y[1]*y[2], list(w[1]), 0)] for w in itertools.groupby(ddat, key=lambda x:x[0])]

produces

[['2012-01', 108.0],
 ['2012-02', 135.0],
 ['2012-03', 162.0],
 ['2012-04', 102.6]]

Edit: The above only gets the numerator of the desired value. The code shown below computes both the numerator and the denominator. As demo code, it produces a list containing both the values and their ratio.

Note the apparently-extra for in the following code. (That is, the portion
... for w,v in [[w, list(v)] for w,v in itertools ...
in the third line of code.) The extra layer of for is used to make a copy of iterable v as a list. That is, because the v returned by itertools.groupby() is an iterable rather than an actual list, numer_sum(v) would exhaust v, so denom_sum(v) would get a value of 0. Another approach would be to use itertools.tee; but an answer to another question says the list approach may be faster. A third possibility is to combine numer_sum and denom_sum into a single function that returns a tuple, and add an outer for to compute the ratio.

def numer_sum(w): return reduce(lambda x,y: x+y[1]*y[2], w, 0)
def denom_sum(w): return reduce(lambda x,y: x+y[2], w, 0)
[[w, round(denom_sum(v),3), numer_sum(v), numer_sum(v)/denom_sum(v)] for w,v in [[w, list(v)] for w,v in itertools.groupby(ddat, key=lambda x:x[0])]]

produces

[['2012-01', 37.8, 108.0, 2.857142857142857],
 ['2012-02', 48.6, 135.0, 2.777777777777778],
 ['2012-03', 59.4, 162.0, 2.7272727272727275],
 ['2012-04', 48.6, 102.6, 2.111111111111111]]
share|improve this answer
    
I hadn't thought to use groupby. Good call. –  Ishpeck Dec 17 '12 at 1:47
add comment

Here's what I've come up with.

def appendDateNumbers(d, item):
    def sumItem(date, integer, floating, *junk):
        if date in d:
            d[date]+=integer*floating
        else:
            d[date]=integer*floating
        return d
    return sumItem(*item)

def _averageListWith(dn, datesList):
    def averageItem(i):
        return (i, dn[i]/datesList.count(i))
    return dict(map(averageItem, dn.keys()))

def averageLst(lst):
    return _averageListWith(reduce(appendDateNumbers, lst, {}), 
                            map(lambda x: x[0], lst))

print averageLst([["12-12", 1, 1.0],["12-12", 2, 2.2],["13-1", 3, 3.3]])

The averageLst() function should serve you plus or minus rounding errors.

share|improve this answer
add comment

I know there are probably better ways, but have you tried using a for loop?

def monthly_average(list):
    newList=[]
    for i in range(len(list)/2):
        avg=((list[i][1]*list[i][2])+(list[i+1][1]+list[i+1][2]))
        avg=avg/(list[i][2]+list[i+1][2])
        newList.append(avg)
        newList.append(list[i][0])
    return newList

That should work assuming you have two sublists for every month. If you have more, then you might have to add a function to check for all the sublists whose 'zeroth' index is equal to a certain string. For example:

newList=[]
tempList=[]
for i in list:
    if i[0]=='year1-month1':
        tempList.append(i)
while len(tempList)>1:
    tempList=monthly_average(tempList)

Then just iterate that for every month, changing the string value.

Again, it's probably not the most efficient method, but it works.

share|improve this answer
add comment

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.