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Here's a simple problem: I have this array of length N, and a function that given 2 bounds (a,b) returns the sum of all the elements in the array between a and b.

Now, this is clearly O(N) time complexity... but if I wanted to make it more efficient (like log(N)), with a second data structure that stores partial sums, how could I accomplish it?

I was thinking of a binary tree but can't find an algorithm. Of course I could just create a NxN matrix but it's too much. I'd like something that doesn't require too much space and lets me have a logarithmic time complexity; any idea?

UPDATE: I didn't specify it clearly.. but:

  1. the bounds are on the indexes of the array, not the values
  2. the array is dynamic, values can change, and I don't want to have linear complexity to change a value! Therefore the simple algorithm of partial sums doesn't work, I think..
  3. no concurrent programming (1 CPU)
share|improve this question
You would actually only need half of an NxN matrix because a,b will work, b,a is either the same thing or invalid (or something different if it's circular and then you would need all NxN slots) – Chris Thompson Feb 24 '11 at 16:57
Are the bounds on the index? i.e return A[a] + A[a+1] + .. + A[b]? Or on the values? i.e return the sum of all A[i] such that a <= A[i] <= b? I know you talk about partial sums which seems to indicate the former, but you should clarify. -1 till you do. – Aryabhatta Feb 24 '11 at 17:35
on the index, yes – marco signati Feb 24 '11 at 17:57
Ok I see the answers, but the problem is that everytime I change a value all the partial sums must be updated, and that's O(n), while the sum function is O(1). This way you create another problem to solve the previous one! – marco signati Feb 24 '11 at 18:03
@marco: Please edit the question with the clarification about index and that you would need to allow updates to the array values. I cannot remove my downvote unless the question is edited. And please don't accept answers which don't really answer your question (like the part about updating values). – Aryabhatta Feb 24 '11 at 18:04

Create a balanced binary tree sorting the numbers according to their value. This can be done so that each operation takes linear time. In each node store the sum of all values below that node. To calculate the sum of values in the range [a, b] you have to go down that tree both for a and b and add the appropriate values. O (ln n) every time you calculate a sum or change a value.

share|improve this answer

I must be missing something about the question. Given an array of partial sums, you should be able to get constant complexity -- the sum of elements from a to b is partial_sums[b] - partial_sums[a] (or if you can't assume a<b, partial_sums[max(a,b)] - partial_sums[min(a,b)]).

Perhaps you're talking about a and b as bounds on the values rather than the location? If so, then assuming your array is sorted, you can get O(log N) complexity by using a binary search for the locations of a and b, then subtracting as above. If the array isn't (and can't be) sorted, you can accomplish the same by creating an array of references to the original objects, sorting the references, and generating partial sums for those references. That adds work to the preprocessing, but keeps O(log N) for the queries.

Edit: Making the array(s) dynamic should have no effect, at least in terms of computational complexity. If you only ever insert/delete at the end of the main array, you can insert/delete in constant time in the partial sums array as well. For an insertion, you do something like:

N = N + 1
main_array[N] = new_value
partial_sum[N] = partial_sum[N-1] + new_value

To delete from the end, you just use N = N - 1, and ignore the values previously at the ends of both arrays.

If you need to support insertion/deletion in the middle of the main array, that takes linear time. Updating the partial sums array can be done in linear time as well. For example, to insert new_value at index i, you'd do something like:

N = N + 1
for location = N downto i + 1 
    main_array[location] = main_array[location-1]
    partial_sums[location] = partial_sums[location-1] + new_value

Deleting is similar, except that you work your way up from the deletion point to the end, and subtract the value being deleted.

I did say "should" for a reason though -- there is a possible caveat. If your array is extremely dynamic and the contents are floating point, you can/will run into a problem: repeatedly adding and subtracting values as you insert/delete elements may (and eventually will) lead to rounding errors. Under these circumstances, you have a couple of choices: one is to abandon the idea altogether. Another uses even more storage -- as you add/delete items, keep a running sum of the absolute values of the elements that have been added/subtracted. When/if this exceeds a chosen percentage of the partial sum for that point, you re-compute your partial sums (and zero the running sum).

share|improve this answer
+1 for not overcomplicating it like I did. :-) – Aasmund Eldhuset Feb 24 '11 at 17:02
Perhaps he wants a dynamic array, he can update values at will. In which case a binary tree gives O(logn) insert/access/query times. +1 for addressing the other interpretation, though. – Aryabhatta Feb 24 '11 at 17:37
@Moron: Yup -- good point. – Jerry Coffin Feb 24 '11 at 17:41
Yes that's right, as I said in the comments above, the array is dynamic. With your solution I get constant complexity on sum() but linear on change_value()... – marco signati Feb 24 '11 at 18:03
@marco signati: see edited answer. A dynamic array doesn't really change anything. – Jerry Coffin Feb 24 '11 at 19:21

There are two cases: static data or dynamic (varying) data

1. Static data

For static data this is a well known problem. First compute the "sum table" (an array of n+1 elements):

st[0] = 0;
for (int i=0,n=x.size(); x<n; x++)
    st[i] = st[i-1] + x[i];

then to compute the sum of the elements between a and b you just need to do

sum = st[b] - st[a];

The algorithm can also be used in higher dimensions. For example if you need to compute the sum of all the values between (x0, y0) and (x1, y1) you can just do

sum = st[y0][x0] + st[y1][x1] - st[y0][x1] - st[y1][x0];

where st[y][x] is the sum of all elements above and to the left of (x, y).

The computing of the sum table is a O(n) operation (where n is the number of elements, for example rows*columns for a 2d matrix), but for very large data sets (e.g. images) it's possible to write an optimal parallel version that can run in O(n/m) where m is the number of available CPUs. This is something I found quite surprising...

To do a simple (single-threaded) sum table computation in the 2d case:

for (int y=0; y<h; y++)
  for (int x=0; x<w; x++)
    st[y+1][x+1] = st[y+1][x] + st[y][x+1] - st[y][x] + value[y][x];

2.Dynamic data

For dynamic data instead you can use what could be called a "multiresolution" approach:

void addDelta(std::vector< std::vector< int > >& data,
              int index, int delta)
    for (int level=0,n=data.size(); level<n; level++)
        data[level][index] += delta;
        index >>= 1;

int sumToIndex(std::vector< std::vector< int > >& data,
               int index)
    int result = 0;
    for (int level=0,n=data.size(); level<n; level++)
        if (index & 1) result += data[level][index-1];
        index >>= 1;
    return result;

int sumRange(std::vector< std::vector< int > >& data,
             int a, int b)
    return sumToIndex(data, b) - sumToIndex(data, a);

Basically at each "level" a cell holds the sums of two cells of the next finer levels. When you add a data to the lowest (higher-resolution) level you also have to add it to the higher levels (this is what addDelta does). To compute the sum of all values from 0 to x you can use higher levels to save up computation... see the following picture:

enter image description here

Finally to get the sum from a to b you simply compute the difference between those two sums starting from 0.

share|improve this answer exactly you compute N^2 values in only O(N) operations? – Jerry Coffin Feb 24 '11 at 17:31
@Jerry Coffin: It's o(n) where n is the size of the input (that for a 2d matrix is rows*columns). I added an explanation of how to build the 2d sum table with a single pass and a link to an article explaining how to use massively parallel hw (CUDA) to speedup this computation. – 6502 Feb 24 '11 at 18:32
For a simpler way of stating this, please see my answer below (or above). (: – dave Feb 24 '11 at 19:28
Actually the optimum complexity of the parallel computation for case 1 (the case stated by the question's author), is O(n/m + m + 1). – dave Feb 24 '11 at 19:30
Yes, good answer, it's the same idea I used in my algorithm with the binary tree! Maybe this version is easier to implement/explain.. – marco signati Feb 24 '11 at 22:18

According to the problem statement, you are given an array of numbers, and a pair of indices representing the bounds of an interval which contents are to be summed. Since there is no search involved in this problem, representing the data as a binary tree structure offers no advantage in terms of time or space complexity.

Since you are not allowed to execute your solution in a multi-processor environment, you are "stuck" with O(N).

If your solution were allowed to execute in a multi-processor environment, the optimal complexity would be O(N/p + p + 1), where p is the number of processors available. This is due to the fact that, in this case, you would have been able to divide the interval into p sub-intervals (+1), sum the intervals in parallel (N/p), and then sum the result of each individual sub-interval (+p), to complete the calculation.

share|improve this answer
Not stuck with O (N) if you consider that the same task will be performed multiple times. For example, given a million different intervals [a, b], surely you don't need a million times N operations. – gnasher729 Mar 18 '14 at 9:42

Ok maybe I found a solution to have log(n) on both change value and sum, and with a linear space overhead.

I'll try to explain: we build a binary tree, where the leaves are the array values, in the order they are in the array (not sorted, not a sorted tree).

Then we create the tree bottom-up merging 2 leaves at a time, and putting their sum in the parent. For example if the array has length 4 and values [1,5,3,2], we'll have a tree with 3 levels, the root will be the total sum (11) and the others will be 1+5->6 and 3+2->5

now, to change a value we have to update this tree (log n), and to compute the sum I worked out this algorithm (log n):

acc = 0 // accumulator

starting from the lower bound, we go up the tree. I we go up left (current node is the right child) then acc += current_node - parent_node. If we go up right (current node is the left child) we don't do anything.

we then do the same from the upper bound, of course in this case it's the opposite (we do the sum if we go up right)

we do this alternating, once on the lower bound, once on the upper bound. If we have that the 2 node we reach are actually the same node, we then sum the value of that node to the accumulator, and return the accumulator.

I know I didn't explain it well.. I'm having some difficulty in explaining.. Anyone understood?

share|improve this answer
+1; I was just scetching out this algorithm myself, but you beat me to it... – Aasmund Eldhuset Feb 24 '11 at 18:25
(In other words: I am very certain that this algorithm works, and that your time and space bounds are correct.) – Aasmund Eldhuset Feb 24 '11 at 18:34
@marco The total complexity for this algorithm is O(N + log N): O(N) for the sum + O(log N) for the update. This is still higher than O(N). Please see my answer below (or above). (: – dave Feb 24 '11 at 18:37
@RPR: This is a data structure problem. You are to create an 'array' structure which supports querying for range sums. So calling it Omega(N) is not really correct. – Aryabhatta Feb 24 '11 at 18:57
@Moron You are assuming the content of the array is static (in which case it would be appropriate to precompute some or all sum ranges), as opposed to what the author of the question has stated as the problem: "the array is dynamic, values can change, and I don't want to have linear complexity to change a value!", therefore, the optimal solution to this problem is O(N). – dave Feb 24 '11 at 19:05

I seem to recall that prefix sums can be used to answer such queries in O(lg n) time.

EDIT: I was a little too quick there - it can be done even faster. If you spend O(n) time (and O(n) extra memory) precomputing the prefix sum array (on a single-core computer), the answer to each query can be found in O(1) time by subtracting the appropriate elements of that array. If you happen to have n processors available, the precomputation can be done in O(lg n) time.

share|improve this answer
+1: No. I don't think you are overcomplicating! This works with dynamic arrays, and instead of SUM, it works with any associative (we can probably drop the requirement of commutative) operation. FOr instance MIN, MAX, GreatestCommonDivisor, LeastCommonMultiple etc etc. – Aryabhatta Feb 24 '11 at 17:44

Well, you can have another array of the same size where you store the partial sums. Then, whenever you are given the bounds you can just subtract the partial sums and you get the sum of elements in that interval. For example:

Elements:    1 2 3 4  5  6
Partial_Sum: 1 3 6 10 15 21

Lets, say that the array starts at index=0, and you want the sum of elements in the interval [1, 3] inclusive:

// subtract 1 from the index of the second sum, because we
// want the starting element of the interval to be included.
Partial_Sum[3] - Partial_Sum[1-1] = 10 - 1 = 9
share|improve this answer
Good answer. If the items are sorted (i.e. the range is specified as values rather than indexes), the algorithm is O(log n). Actually 2 * log n, because it'll take two lookups with a binary search. – Jim Mischel Feb 24 '11 at 17:03
+1 for not overcomplicating it like I did. :-) – Aasmund Eldhuset Feb 24 '11 at 17:03
@Jim Mischel Surely computing Partial_Sum is O(N) (you have to visit every element at least once - there's just no way around that) and computing the sum between a and b is O(1) (constant time), provided indexing into your array is also constant time. If you expect to compute sums for lots of different values of a and b on the same array then this will be significantly faster otherwise not so much. Also, with the implementation above - watch out for a=0 since it will try to index Partial_Sum[-1]. – Adam Bowen Feb 24 '11 at 18:04
@Adam Bowen: As I said in my comment, if the range is specified as values rather than indexes into the array, then you'll have to do a binary search to find the indexes of the values. And, yes, there is pre-processing time--that was assumed. There's no point in computing the partial sums if you're only going to do this once for a particular array. – Jim Mischel Feb 24 '11 at 18:18

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