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I need an algorithm to split a list of values into such chunks, that sum of values in every chunk is (approximately) equals (its some variation of Knapsack problem, I suppose)

So, for example [1, 2, 1, 4, 10, 3, 8] => [[8, 2], [10], [1, 3, 1, 4]]

Chunks of equal lengths are preferred, but it's not a constraint.

Python is preferred language, but others are welcome as well

Edit: number of chunks is defined

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I am afraid your problem is not well defined. Is there a requirement for the number of chunks versus the deviation from totally equal sums? As currently posed this problem has a trivial solution of having exactly one chunk. –  Petar Ivanov Jul 28 '11 at 7:29
It smells NP-Hard. you should define what is "approximately", since I believe there is no polynomial solution to find the best partition. –  amit Jul 28 '11 at 7:31
@Petar Ivanov: i've precised in edit - number of chunks is defined –  ts. Jul 28 '11 at 7:32
@amit: that's why I am searching for approximation –  ts. Jul 28 '11 at 7:32
This is the generalized partition problem: en.wikipedia.org/wiki/Partition_problem, which is NP-complete. –  carl Jul 28 '11 at 7:35

3 Answers 3

up vote 7 down vote accepted

1. Order the available items descending.
2. Create N empty groups
3. Start adding the items one at a time into the group that has the smallest sum in it.

I think in most real life situations this should be enough.

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It's O(N^2), isn't it? –  ts. Jul 28 '11 at 8:06
O(NlogN). sorting is the bottleneck, this solution will ensure the difference between two groups is at most max{S} –  amit Jul 28 '11 at 8:11
in a different thread, similar to this one, I have proved that max{S}-min{S} is the maximum difference for this algorithm. have a look: stackoverflow.com/questions/6455703/… –  amit Jul 28 '11 at 13:03

Based on @Alin Purcaru answer and @amit remarks, I wrote code (Python 3.1). It has, as far as I tested, linear performance (both for number of items and number of chunks, so finally it's O(N * M)). I avoid sorting the list every time, keeping current sum of values for every chunk in a dict (can be less practical with greater number of chunks)

import time, random

def split_chunks(l, n):
       Splits list l into n chunks with approximately equals sum of values
       see  http://stackoverflow.com/questions/6855394/splitting-list-in-chunks-of-balanced-weight
    result = [[] for i in range(n)]
    sums   = {i:0 for i in range(n)}
    c = 0
    for e in l:
        for i in sums:
            if c == sums[i]:
        sums[i] += e
        c = min(sums.values())    
    return result

if __name__ == '__main__':

    MIN_VALUE = 0
    MAX_VALUE = 20000000
    ITEMS     = 50000
    CHUNKS    = 256

    l =[random.randint(MIN_VALUE, MAX_VALUE ) for i in range(ITEMS)]

    t = time.time()

    r = split_chunks(l, CHUNKS)

    print(ITEMS, CHUNKS, time.time() - t)

Just because, you know, we can, the same code in PHP 5.3 (2 - 3 times slower than Python 3.1):

function split_chunks($l, $n){

    $result = array_fill(0, $n, array());
    $sums   = array_fill(0, $n, 0);
    $c = 0;
    foreach ($l as $e){
        foreach ($sums as $i=>$sum){
            if ($c == $sum){
                $result[$i][] = $e;
            } // if
        } // foreach
        $sums[$i] += $e;        
        $c = min($sums);
    } // foreach
    return $result;


$l = array();
for ($i=0; $i<ITEMS; $i++){
    $l[] = rand(MIN_VALUE, MAX_VALUE);  

$t = microtime(true);

$r = split_chunks($l, CHUNKS);

$t = microtime(true) - $t;

print(ITEMS. ' ' .  CHUNKS .' ' . $t . ' ');
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in a different thread, similar to this one, I have proved that max{S}-min{S} is the maximum difference for this algorithm. have a look: stackoverflow.com/questions/6455703/… –  amit Jul 28 '11 at 13:02

you may want to use Artificial Intelligence tools for the problem. first define your problem

States={(c1,c2,...,ck) | c1,...,ck are subgroups of your problem , and union(c1,..,ck)=S } 
successors((c1,...,ck)) = {switch one element from one sub list to another } 
utility(c1,...,ck) = max{sum(c1),sum(c2)...} - min{sum(c1),sum(c2),...}

now, you can use steepest ascent hill climbing with random-restarts.

this algorithm will be anytime, meaning you can start searching, and when time's up - stop it, and you will get the best result so far. the result will be better as run time increased.

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