Given an array of numbers, return array of products of all other numbers (no division)

I was asked this question in a job interview, and I'd like to know how others would solve it. I'm most comfortable with Java, but solutions in other languages are welcome.

Given an array of numbers, `nums`, return an array of numbers `products`, where `products[i]` is the product of all `nums[j], j != i`.

``````Input : [1, 2, 3, 4, 5]
Output: [(2*3*4*5), (1*3*4*5), (1*2*4*5), (1*2*3*5), (1*2*3*4)]
= [120, 60, 40, 30, 24]
``````

You must do this in `O(N)` without using division.

-
This question has come up a few times in the last week or so; are you all interviewing with the same company? :) –  Michael Mrozek Apr 21 '10 at 5:31
I'm currently browsing `[interview-questions]` tag looking for it. Do you have a link if you've found it? –  polygenelubricants Apr 21 '10 at 5:34
@Michael: That question allows division. Mine explicitly forbids it. I'd say they're two different questions. –  polygenelubricants Apr 21 '10 at 5:47
Ether, you are referencing the current thread! ;-) –  NLV May 3 '10 at 10:12
Substitute division with log(a/b)=log(a)-log(b) and voila! –  ldog Jul 19 '13 at 2:06

An explanation of polygenelubricants method is: The trick is to construct the arrays (in the case for 4 elements)

``````{              1,         a[0],    a[0]*a[1],    a[0]*a[1]*a[2],  }
{ a[1]*a[2]*a[3],    a[2]*a[3],         a[3],                 1,  }
``````

Both of which can be done in O(n) by starting at the left and right edges respectively.

Then multiplying the two arrays element by element gives the required result

My code would look something like this:

``````int a[N] // This is the input
int products_below[N];
p=1;
for(int i=0;i<N;++i) {
products_below[i]=p;
p*=a[i];
}

int products_above[N];
p=1;
for(int i=N-1;i>=0;--i) {
products_above[i]=p;
p*=a[i];
}

int products[N]; // This is the result
for(int i=0;i<N;++i) {
products[i]=products_below[i]*products_above[i];
}
``````

If you need to be O(1) in space too you can do this (which is less clear IMHO)

``````int a[N] // This is the input
int products[N];

// Get the products below the current index
p=1;
for(int i=0;i<N;++i) {
products[i]=p;
p*=a[i];
}

// Get the products above the curent index
p=1;
for(int i=N-1;i>=0;--i) {
products[i]*=p;
p*=a[i];
}
``````
-
Yes, this is the prefix/suffix combo that I did; I'm just wondering if there's a simpler solution that I've missed. –  polygenelubricants Apr 21 '10 at 6:12
This is O(n) runtime but it's also O(n) in space complexity. You can do it in O(1) space. I mean, other than the size of the input and output containers of course. –  wilhelmtell Apr 21 '10 at 6:36
@wilhelmtell Agreed. Have added a simple modification of the algorithm to be O(1) in space. –  Michael Anderson Apr 21 '10 at 6:52
Very clever! Is there a name for this algorithm? –  fastcodejava May 30 '10 at 23:36
I don't know of a name for the algorithm, sorry. –  Michael Anderson May 31 '10 at 10:31

Here is a small recursive function (in C++) to do the modofication in place. It requires O(n) extra space (on stack) though. Assuming the array is in a and N holds the array length, we have

``````int multiply(int *a, int fwdProduct, int indx) {
int revProduct = 1;
if (indx < N) {
revProduct = multiply(a, fwdProduct*a[indx], indx+1);
int cur = a[indx];
a[indx] = fwdProduct * revProduct;
revProduct *= cur;
}
return revProduct;
}
``````
-
OMG! I've never seen such a beautiful recursive technique! +1! –  polygenelubricants Apr 23 '10 at 3:49
@polygenelubricants, Thanks –  Jasmeet Apr 23 '10 at 19:45
btilliant! @Jasmeet –  ashishsony Mar 18 '12 at 4:16
Could anyone explain this recursion? –  nikhil Jul 8 '12 at 12:35
@nikhil It does recursion first, remembering the intermediate products , eventually forming the number product for `num[N-1]`; then on the way back it calculates the second part of the multiplication which is then used to modify the number array in place. –  Ja͢ck Aug 28 '12 at 5:19

Translating Michael Anderson's solution into Haskell:

``````otherProducts xs = zipWith (*) below above

where below = scanl (*) 1 \$ init xs

above = tail \$ scanr (*) 1 xs
``````
-

Here's my attempt to solve it in Java. Apologies for the non-standard formatting, but the code has a lot of duplication, and this is the best I can do to make it readable.

``````import java.util.Arrays;

public class Products {
static int[] products(int... nums) {
final int N = nums.length;
int[] prods = new int[N];
Arrays.fill(prods, 1);
for (int
i = 0, pi = 1    ,  j = N-1, pj = 1  ;
(i < N)         && (j >= 0)          ;
pi *= nums[i++]  ,  pj *= nums[j--]  )
{
prods[i] *= pi   ;  prods[j] *= pj   ;
}
return prods;
}
public static void main(String[] args) {
System.out.println(
Arrays.toString(products(1, 2, 3, 4, 5))
); // prints "[120, 60, 40, 30, 24]"
}
}
``````

The loop invariants are `pi = nums[0] * nums[1] *.. nums[i-1]` and `pj = nums[N-1] * nums[N-2] *.. nums[j+1]`. The `i` part on the left is the "prefix" logic, and the `j` part on the right is the "suffix" logic.

Recursive one-liner

Jasmeet gave a (beautiful!) recursive solution; I've turned it into this (hideous!) Java one-liner. It does in-place modification, with `O(N)` temporary space in the stack.

``````static int multiply(int[] nums, int p, int n) {
return (n == nums.length) ? 1
: nums[n] * (p = multiply(nums, nums[n] * (nums[n] = p), n + 1))
+ 0*(nums[n] *= p);
}

int[] arr = {1,2,3,4,5};
multiply(arr, 1, 0);
System.out.println(Arrays.toString(arr));
// prints "[120, 60, 40, 30, 24]"
``````
-
I think the 2-variables loop makes it harder to understand than necessary (at least for my poor brain!), two separate loops would do the job as well. –  Guillaume Apr 21 '10 at 6:17
That's why I separated the code into left/right, in an effort to show that the two are independent of each other. I'm not sure if that actually works, though =) –  polygenelubricants Apr 21 '10 at 6:22

Sneakily circumventing the "no divisions" rule:

``````sum = 0.0
for i in range(a):
sum += log(a[i])

for i in range(a):
output[i] = exp(sum - log(a[i]))
``````
-
Nitpick: as far as I'm aware, computers implement logarithms using their binomial expansion - which does require division... –  Mark Bannister Jun 25 '10 at 15:44
That would result in floating point output though... –  Alderath Jul 27 '10 at 11:39
That's just brilliant! –  Cong Hui Oct 12 '13 at 19:09

C++, O(n):

``````long long prod = accumulate(in.begin(), in.end(), 1LL, multiplies<int>());
transform(in.begin(), in.end(), back_inserter(res),
bind1st(divides<long long>(), prod));
``````
-
division is not allowed –  Michael Anderson Apr 21 '10 at 6:49
That's still an awesome looking code, though. With disclaimer that it uses division, I'd still upvote if given explanation. –  polygenelubricants Apr 21 '10 at 7:05
Damn, I didn't read the question through. :s @polygenelubricants explanation: the idea is to do it in two steps. First take the factorial of the first sequence of numbers. That's what the accumulate algorithm does (by default adds numbers, but can take any other binary operation to replace the addition, in this case a multiplication). Next I iterated over the input sequence a second time, transforming it such that the corresponding element in the output sequence the factorial I calculated in the previous step divided by the corresponding element in the input sequence. –  wilhelmtell Apr 21 '10 at 7:10
"factorial of the first sequence"? wtf? i meant the product of the sequence elements. –  wilhelmtell Apr 21 '10 at 8:25

This is O(n^2) but f# is soooo beautiful:

``````List.fold (fun seed i -> List.mapi (fun j x -> if i=j+1 then x else x*i) seed)
[1;1;1;1;1]
[1..5]
``````
-

Tricky:

Use the following:

``````public int[] calc(int[] params) {

int[] left = new int[n-1]
in[] right = new int[n-1]

int fac1 = 1;
int fac2 = 1;
for( int i=0; i<n; i++ ) {
fac1 = fac1 * params[i];
fac2 = fac2 * params[n-i];
left[i] = fac1;
right[i] = fac2;
}
fac = 1;

int[] results = new int[n];
for( int i=0; i<n; i++ ) {
results[i] = left[i] * right[i];
}
``````

Yes, I am sure i missed some i-1 instead of i, but thats the way to solve it.

-

There also is a O(N^(3/2)) non-optimal solution. It is quite interesting, though.

First preprocess each partial multiplications of size N^0.5(this is done in O(N) time complexity). Then, calculation for each number's other-values'-multiple can be done in 2*O(N^0.5) time(why? because you only need to multiple the last elements of other ((N^0.5) - 1) numbers, and multiply the result with ((N^0.5) - 1) numbers that belong to the group of the current number). Doing this for each number, one can get O(N^(3/2)) time.

Example:

4 6 7 2 3 1 9 5 8

partial results: 4*6*7 = 168 2*3*1 = 6 9*5*8 = 360

To calculate the value of 3, one needs to multiply the other groups' values 168*360, and then with 2*1.

-
``````def productify(arr, prod, i):
if i < len(arr):
prod.append(arr[i - 1] * prod[i - 1]) if i > 0 else prod.append(1)
retval = productify(arr, prod, i + 1)
prod[i] *= retval
return retval * arr[i]
return 1
``````

arr = [1, 2, 3, 4, 5] prod = [] productify(arr, prod, 0) print prod

-

Here you go, simple and clean solution with O(N) complexity:

``````int[] a = {1,2,3,4,5};
int[] r = new int[a.length];
int x = 1;
r[0] = 1;
for (int i=1;i<a.length;i++){
r[i]=r[i-1]*a[i-1];
}
for (int i=a.length-1;i>0;i--){
x=x*a[i];
r[i-1]=x*r[i-1];
}
for (int i=0;i<r.length;i++){
System.out.println(r[i]);
}
``````
-

Well,this solution can be considered that of C/C++. Lets say we have an array "a" containing n elements like a[n],then the pseudo code would be as below.

``````for(j=0;j<n;j++)
{
prod[j]=1;

for (i=0;i<n;i++)
{
if(i==j)
continue;
else
prod[j]=prod[j]*a[i];
}
``````
-
This is `O(N^2)` (but I didn't downvote). –  polygenelubricants Apr 21 '10 at 5:55
``````    int[] arr1 = { 1, 2, 3, 4, 5 };
int[] product = new int[arr1.Length];

for (int i = 0; i < arr1.Length; i++)
{
for (int j = 0; j < product.Length; j++)
{
if (i != j)
{
product[j] = product[j] == 0 ? arr1[i] : product[j] * arr1[i];
}
}
}
``````
-
This is O(n^2). –  KennyTM Apr 21 '10 at 5:59
ok, was not sure of O(N) part, soes that mean using just a single loop ? thanks –  Rasshme Chawla Apr 21 '10 at 6:01
you can use multiple loops, but not NESTED loops. –  mtrw Apr 21 '10 at 6:19
@isthatcode see this link: rob-bell.net/2009/06/a-beginners-guide-to-big-o-notation –  Miguel Sevilla Apr 23 '10 at 4:33

One more solution, Using division. with twice traversal. Multiply all the elements and then start dividing it by each element.

-
```{-
Recursive solution using sqrt(n) subsets. Runs in O(n).

Recursively computes the solution on sqrt(n) subsets of size sqrt(n).
Then recurses on the product sum of each subset.
Then for each element in each subset, it computes the product with
the product sum of all other products.
Then flattens all subsets.

Recurrence on the run time is T(n) = sqrt(n)*T(sqrt(n)) + T(sqrt(n)) + n

Suppose that T(n) ≤ cn in O(n).

T(n) = sqrt(n)*T(sqrt(n)) + T(sqrt(n)) + n
≤ sqrt(n)*c*sqrt(n) + c*sqrt(n) + n
≤ c*n + c*sqrt(n) + n
≤ (2c+1)*n
∈ O(n)

Note that ceiling(sqrt(n)) can be computed using a binary search
and O(logn) iterations, if the sqrt instruction is not permitted.
-}

otherProducts [] = []
otherProducts [x] = [1]
otherProducts [x,y] = [y,x]
otherProducts a = foldl' (++) [] \$ zipWith (\s p -> map (*p) s) solvedSubsets subsetOtherProducts
where
n = length a

-- Subset size. Require that 1 < s < n.
s = ceiling \$ sqrt \$ fromIntegral n

solvedSubsets = map otherProducts subsets
subsetOtherProducts = otherProducts \$ map product subsets

subsets = reverse \$ loop a []
where loop [] acc = acc
loop a acc = loop (drop s a) ((take s a):acc)
```
-

Here is my code:

``````int multiply(int a[],int n,int nextproduct,int i)
{
int prevproduct=1;
if(i>=n)
return prevproduct;
prevproduct=multiply(a,n,nextproduct*a[i],i+1);
printf(" i=%d > %d\n",i,prevproduct*nextproduct);
return prevproduct*a[i];
}

int main()
{
int a[]={2,4,1,3,5};
multiply(a,5,1,0);
return 0;
}
``````
-
``````int a[N];
int products[N];
long long product_total = 1;

for(int ii=0; ii < N; ii++)
{
if (0 != a[ii])
{
product_total *= p[ii];
}
}

for(int ii=0; ii < N; ii++)
{
if (0 != a[ii])
{
products[ii] = product_total / a[ii];
}
else
{
products[ii] = product_total;
}

}
``````
-
This uses division, which is not allowed. –  Ian Newson Apr 29 '12 at 11:56

Here's a slightly functional example, using C#:

``````            Func<long>[] backwards = new Func<long>[input.Length];
Func<long>[] forwards = new Func<long>[input.Length];

for (int i = 0; i < input.Length; ++i)
{
var localIndex = i;
backwards[i] = () => (localIndex > 0 ? backwards[localIndex - 1]() : 1) * input[localIndex];
forwards[i] = () => (localIndex < input.Length - 1 ? forwards[localIndex + 1]() : 1) * input[localIndex];
}

var output = new long[input.Length];
for (int i = 0; i < input.Length; ++i)
{
if (0 == i)
{
output[i] = forwards[i + 1]();
}
else if (input.Length - 1 == i)
{
output[i] = backwards[i - 1]();
}
else
{
output[i] = forwards[i + 1]() * backwards[i - 1]();
}
}
``````

I'm not entirely certain that this is O(n), due to the semi-recursion of the created Funcs, but my tests seem to indicate that it's O(n) in time.

-
``````public static void main(String[] args) {
int[] arr = { 1, 2, 3, 4, 5 };
int[] result = { 1, 1, 1, 1, 1 };
for (int i = 0; i < arr.length; i++) {
for (int j = 0; j < i; j++) {
result[i] *= arr[j];

}
for (int k = arr.length - 1; k > i; k--) {
result[i] *= arr[k];
}
}
for (int i : result) {
System.out.println(i);
}
}
``````

This solution i came up with and i found it so clear what do you think!?

-

Precalculate the product of the numbers to the left and to the right of each element. For every element the desired value is the product of it's neigbors's products.

``````#include <stdio.h>

unsigned array[5] = { 1,2,3,4,5};

int main(void)
{
unsigned idx;

unsigned left[5]
, right[5];
left[0] = 1;
right[4] = 1;

/* calculate products of numbers to the left of [idx] */
for (idx=1; idx < 5; idx++) {
left[idx] = left[idx-1] * array[idx-1];
}

/* calculate products of numbers to the right of [idx] */
for (idx=4; idx-- > 0; ) {
right[idx] = right[idx+1] * array[idx+1];
}

for (idx=0; idx <5 ; idx++) {
printf("[%u] Product(%u*%u) = %u\n"
, idx, left[idx] , right[idx]  , left[idx] * right[idx]  );
}

return 0;
}
``````

Result:

``````\$ ./a.out
[0] Product(1*120) = 120
[1] Product(1*60) = 60
[2] Product(2*20) = 40
[3] Product(6*5) = 30
[4] Product(24*1) = 24
``````

(UPDATE: now I look closer, this uses the same method as Michael Anderson, Daniel Migowski and polygenelubricants above)

-

To be complete here is the code in Scala:

``````val list1 = List(1, 2, 3, 4, 5)
for (elem <- list1) println(list1.filter(_ != elem) reduceLeft(_*_))
``````

This will print out the following:

``````120
60
40
30
24
``````

The program will filter out the current elem (_ != elem); and multiply the new list with reduceLeft method. I think this will be O(n) if you use scala view or Iterator for lazy eval.

-
Despite is very elegant, it doesn't work if there are more elements with the same value: val list1 = List(1, 7, 3, 3, 4, 4) –  Giordano Scalzo Nov 6 at 14:29
I tested the code again with repeating values. It produces the following 1008 144 112 112 63 63 I think that it is correct for the given element. –  Billz Nov 7 at 6:44

// This is the recursive solution in Java // Called as following from main product(a,1,0);

``````public static double product(double[] a, double fwdprod, int index){
double revprod = 1;
if (index < a.length){
revprod = product2(a, fwdprod*a[index], index+1);
double cur = a[index];
a[index] = fwdprod * revprod;
revprod *= cur;
}
return revprod;
}
``````
-

A neat solution with O(n) runtime:

1. For each element calculate the product of all the elements that occur before that and it store in an array "pre".
2. For each element calculate the product of all the elements that occur after that element and store it in an array "post"
3. Create a final array "result", for an element i,

``````result[i] = pre[i-1]*post[i+1];
``````
-
This is the same solution as the accepted one, right? –  Thomas Ahle Nov 11 at 22:53