# Algorithm to find two repeated numbers in an array, without sorting

There is an array of size n (numbers are between 0 and n - 3) and only 2 numbers are repeated. Elements are placed randomly in the array.

E.g. in {2, 3, 6, 1, 5, 4, 0, 3, 5} n=9, and repeated numbers are 3 and 5.

What is the best way to find the repeated numbers?

P.S. [You should not use sorting]

• What do you mean by "best"? Complexity? Storage? Feb 17, 2009 at 7:03
• integer or float? continuous numbers?
– mafu
Feb 17, 2009 at 11:59
• In-place bucket sort requires no additional memory and it is O(n). See stackoverflow.com/questions/177118/…
– jfs
Feb 17, 2009 at 19:05
• You said "find", does that mean you want their positions in the array? Or is it enough to identify the repeated values (as you have in the example)? Aug 25, 2012 at 17:34

There is a O(n) solution if you know what the possible domain of input is. For example if your input array contains numbers between 0 to 100, consider the following code.

``````bool flags;
for(int i = 0; i < 100; i++)
flags[i] = false;

for(int i = 0; i < input_size; i++)
if(flags[input_array[i]])
return input_array[i];
else
flags[input_array[i]] = true;
``````

Of course there is the additional memory but this is the fastest.

• If the elements are integers or strings, which would be pretty common, then this approach is not going to work. Feb 17, 2009 at 7:11
• The question already specified the domain of the input, so this is perfectly acceptable. Feb 17, 2009 at 7:13
• A hash table can replace the array and it would work for any input then. As I mentioned, the downside is the additional memory requirement but speed wise it works.
– Sesh
Feb 17, 2009 at 7:16
• @sesh This is the best technique but it can be done even better - if the numbers range from 0-n then all you need are n BITS, not bytes or bools. It sounds pedantic, but often these type of questions will be phrased where n is in the billions. Feb 17, 2009 at 8:17
• Andrew - you are right. Only I was too lazy to type the bit operations - its crazy typing code in a text editor :)
– Sesh
Feb 17, 2009 at 9:54

OK, seems I just can't give it a rest :)

## Simplest solution

``````int A[N] = {...};

int signed_1(n) { return n%2<1 ? +n : -n;  } // 0,-1,+2,-3,+4,-5,+6,-7,...
int signed_2(n) { return n%4<2 ? +n : -n;  } // 0,+1,-2,-3,+4,+5,-6,-7,...

long S1 = 0;  // or int64, or long long, or some user-defined class
long S2 = 0;  // so that it has enough bits to contain sum without overflow

for (int i=0; i<N-2; ++i)
{
S1 += signed_1(A[i]) - signed_1(i);
S2 += signed_2(A[i]) - signed_2(i);
}

for (int i=N-2; i<N; ++i)
{
S1 += signed_1(A[i]);
S2 += signed_2(A[i]);
}

S1 = abs(S1);
S2 = abs(S2);

assert(S1 != S2);  // this algorithm fails in this case

p = (S1+S2)/2;
q = abs(S1-S2)/2;
``````

One sum (S1 or S2) contains p and q with the same sign, the other sum - with opposite signs, all other members are eliminated.
S1 and S2 must have enough bits to accommodate sums, the algorithm does not stand for overflow because of abs().

if abs(S1)==abs(S2) then the algorithm fails, though this value will still be the difference between p and q (i.e. abs(p - q) == abs(S1)).

## Previous solution

I doubt somebody will ever encounter such a problem in the field ;)
and I guess, I know the teacher's expectation:

Lets take array {0,1,2,...,n-2,n-1},
The given one can be produced by replacing last two elements n-2 and n-1 with unknown p and q (less order)

so, the sum of elements will be (n-1)n/2 + p + q - (n-2) - (n-1)
the sum of squares (n-1)n(2n-1)/6 + p^2 + q^2 - (n-2)^2 - (n-1)^2

Simple math remains:

``````  (1)  p+q = S1
(2)  p^2+q^2 = S2
``````

Surely you won't solve it as math classes teach to solve square equations.

First, calculate everything modulo 2^32, that is, allow for overflow.
Then check pairs {p,q}: {0, S1}, {1, S1-1} ... against expression (2) to find candidates (there might be more than 2 due to modulo and squaring)
And finally check found candidates if they really are present in array twice.

• O(N) and only requires two integer variables to store the sums. Lovely.
– Sol
Feb 17, 2009 at 9:54
• Lovely, but maybe confusing. p+q != p^2+p^2.
– user61465
Feb 17, 2009 at 10:39
• I don't think this solution works perfectly. Take a look at this array: int A[] = {2, 0, 6, 1, 1, 4, 2, 3, 5}; where n = 9. the result I get is {1, 0} -- although it did work for the array example the OP gave...
– Sev
Jun 26, 2009 at 23:07
• This solution does not work if both p and q are multiples of 4 and many other cases. May 27, 2012 at 5:09

You know that your Array contains every number from 0 to n-3 and the two repeating ones (p & q). For simplicity, lets ignore the 0-case for now.

You can calculate the sum and the product over the array, resulting in:

``````1 + 2 + ... + n-3 + p + q = p + q + (n-3)(n-2)/2
``````

So if you substract (n-3)(n-2)/2 from the sum of the whole array, you get

``````sum(Array) - (n-3)(n-2)/2 = x = p + q
``````

Now do the same for the product:

``````1 * 2 * ... * n - 3 * p * q = (n - 3)! * p * q

prod(Array) / (n - 3)! = y = p * q
``````

``````x = p + q

y = p * q

=> y(p + q) = x(p * q)
``````

If you transform this term, you should be able to calculate p and q

• From Viète's theorem it follows that `p` and `q` are roots of the equation: z2 - (p + q)*z + p*q = 0 therefore p,q = [k/2 + 1/2*(-4*m + k2)**(1/2), k/2 - 1/2*(-4*m + k**2)**(1/2)], where k=x, m=y.
– jfs
Feb 17, 2009 at 13:58

Insert each element into a set/hashtable, first checking if its are already in it.

• If the total number of distinct values are small (less than 100) it really doesn't matter if it's a set or not. Searching through a list linearly will be many times faster. Feb 17, 2009 at 7:29
• @John If the number is small it doesn't matter, because both approaches are fast. For large n a hashtable or tree implementation of a set is much better. Plus it is not good to choose a list for what conceptually is a set. Feb 17, 2009 at 8:17
• @starblue I would argue against that. My opinion is that linearity is always favorable over trees, hash tables and what not. Feb 17, 2009 at 14:03
• Hashing as pointless, as you already know the exact domain, which is conveniently integers starting at 0. Feb 18, 2009 at 18:04
• I think hashtable are better than arrays, as you need not specify the size while creating them, which is not the case with arrays Jul 7, 2009 at 8:06

You might be able to take advantage of the fact that sum(array) = (n-2)*(n-3)/2 + two missing numbers.

Edit: As others have noted, combined with the sum-of-squares, you can use this, I was just a little slow in figuring it out.

• The question specified that the numbers are between 0 and n-3, plus the two repeated numbers, so every number between 0 and n-3 must be in the array. Feb 17, 2009 at 7:14
• even if i know the sum, then what?? Feb 17, 2009 at 7:18
• The sum of the array elements includes one occurrence, so the formula would be: x = (n-2) * (n-3) / 2 - Sum of array elements. Feb 17, 2009 at 8:24
• If you combine the sum with the product, the result will be unique: stackoverflow.com/questions/555744/…
– sdfx
Feb 17, 2009 at 17:09
• Yup - it was sitting there in the back of my mind, but I wasn't getting that last bit of information (I was stuck trying to figure out a solution using XOR - which I still think might be potentially faster than the sum-of-squares) Feb 17, 2009 at 17:58

Check this old but good paper on the topic:

• This solution is O(n*log(n)) in this case (due to there are only 2 duplicates in the array). Therefore it is not better than sorting in this case. The best solution should take into account that the number of duplicates is 2 and all values are in [0, n-3] range.
– jfs
Feb 17, 2009 at 15:12

Some answers to the question: Algorithm to determine if array contains n…n+m? contain as a subproblem solutions which you can adopt for your purpose.

For example, here's a relevant part from my answer:

``````bool has_duplicates(int* a, int m, int n)
{
/** O(m) in time, O(1) in space (for 'typeof(m) == typeof(*a) == int')

Whether a[] array has duplicates.

precondition: all values are in [n, n+m) range.

feature: It marks visited items using a sign bit.
*/
assert((INT_MIN - (INT_MIN - 1)) == 1); // check n == INT_MIN
for (int *p = a; p != &a[m]; ++p) {
*p -= (n - 1); // [n, n+m) -> [1, m+1)
assert(*p > 0);
}

// determine: are there duplicates
bool has_dups = false;
for (int i = 0; i < m; ++i) {
const int j = abs(a[i]) - 1;
assert(j >= 0);
assert(j < m);
if (a[j] > 0)
a[j] *= -1; // mark
has_dups = true;
break;
}
}

// restore the array
for (int *p = a; p != &a[m]; ++p) {
if (*p < 0)
*p *= -1; // unmark
// [1, m+1) -> [n, n+m)
*p += (n - 1);
}

return has_dups;
}
``````

The program leaves the array unchanged (the array should be writeable but its values are restored on exit).

It works for array sizes upto `INT_MAX` (on 64-bit systems it is `9223372036854775807`).

```suppose array is

a, a, a ..... a[n-1]

sumA = a + a +....+a[n-1]
sumASquare = a*a + a*a + a*a + .... + a[n]*a[n]

sumFirstN = (N*(N+1))/2 where N=n-3 so
sumFirstN = (n-3)(n-2)/2

similarly

sumFirstNSquare = N*(N+1)*(2*N+1)/6 = (n-3)(n-2)(2n-5)/6

Suppose repeated elements are = X and Y

so X + Y = sumA - sumFirstN;
X*X + Y*Y = sumASquare - sumFirstNSquare;

So on solving this quadratic we can get value of X and Y.
Time Complexity = O(n)
space complexity = O(1)
```

I know the question is very old but I suddenly hit it and I think I have an interesting answer to it. We know this is a brainteaser and a trivial solution (i.e. HashMap, Sort, etc) no matter how good they are would be boring.

As the numbers are integers, they have constant bit size (i.e. 32). Let us assume we are working with 4 bit integers right now. We look for A and B which are the duplicate numbers.

We need 4 buckets, each for one bit. Each bucket contains numbers which its specific bit is 1. For example bucket 1 gets 2, 3, 4, 7, ...:

``````Bucket 0 : Sum ( x where: x & 2 power 0 == 0 )
...
Bucket i : Sum ( x where: x & 2 power i == 0 )
``````

We know what would be the sum of each bucket if there was no duplicate. I consider this as prior knowledge.

Once above buckets are generated, a bunch of them would have values more than expected. By constructing the number from buckets we will have (A OR B for your information).

We can calculate (A XOR B) as follows:

``````A XOR B = Array[i] XOR Array[i-1] XOR ... 0, XOR n-3 XOR n-2  ... XOR 0
``````

Now going back to buckets, we know exactly which buckets have both our numbers and which ones have only one (from the XOR bit).

For the buckets that have only one number we can extract the number num = (sum - expected sum of bucket). However, we should be good only if we can find one of the duplicate numbers so if we have at least one bit in A XOR B, we've got the answer.

But what if A XOR B is zero? Well this case is only possible if both duplicate numbers are the same number, which then our number is the answer of A OR B.

Sorting the array would seem to be the best solution. A simple sort would then make the search trivial and would take a whole lot less time/space.

Otherwise, if you know the domain of the numbers, create an array with that many buckets in it and increment each as you go through the array. something like this:

``````int count ;

for (int i = 0; i < arraylen; i++) {
count[array[i]]++;
}
``````

Then just search your array for any numbers greater than 1. Those are the items with duplicates. Only requires one pass across the original array and one pass across the count array.

• I agree it's probably just a homework question ... however, this can be a real problem if the elements are not comparable. Feb 17, 2009 at 7:06
• How would you have incomparable elements? You just need to force some ordering on them. Use whatever the criteria is for sameness to derive that ordering system. Feb 17, 2009 at 7:08
• given the requirement that there are only ever two repeated numbers it would be better to just return the value once a duplicate is found. Feb 17, 2009 at 7:10
• Of course you can force an ordering on anything ... but how would you do that for elements that are not already pre-defined as comparable? That should be part of the solution. Also, it can be tough in practice to have small enough ranges to make counting occurrences feasible. Feb 17, 2009 at 7:16
• @tj the problem specifies they are numbers and that they are in the range of 0 to n-3. That would be comparable and small enough. Feb 17, 2009 at 7:20

Here's implementation in Python of @eugensk00's answer (one of its revisions) that doesn't use modular arithmetic. It is a single-pass algorithm, O(log(n)) in space. If fixed-width (e.g. 32-bit) integers are used then it is requires only two fixed-width numbers (e.g. for 32-bit: one 64-bit number and one 128-bit number). It can handle arbitrary large integer sequences (it reads one integer at a time therefore a whole sequence doesn't require to be in memory).

``````def two_repeated(iterable):
s1, s2 = 0, 0
for i, j in enumerate(iterable):
s1 += j - i     # number_of_digits(s1) ~ 2 * number_of_digits(i)
s2 += j*j - i*i # number_of_digits(s2) ~ 4 * number_of_digits(i)
s1 += (i - 1) + i
s2 += (i - 1)**2 + i**2

p = (s1 - int((2*s2 - s1**2)**.5)) // 2
# `Decimal().sqrt()` could replace `int()**.5` for really large integers
# or any function to compute integer square root
return p, s1 - p
``````

Example:

``````>>> two_repeated([2, 3, 6, 1, 5, 4, 0, 3, 5])
(3, 5)
``````

A more verbose version of the above code follows with explanation:

``````def two_repeated_seq(arr):
"""Return the only two duplicates from `arr`.

>>> two_repeated_seq([2, 3, 6, 1, 5, 4, 0, 3, 5])
(3, 5)
"""
n = len(arr)
assert all(0 <= i < n - 2 for i in arr) # all in range [0, n-2)
assert len(set(arr)) == (n - 2) # number of unique items

s1 = (n-2) + (n-1)       # s1 and s2 have ~ 2*(k+1) and 4*(k+1) digits
s2 = (n-2)**2 + (n-1)**2 # where k is a number of digits in `max(arr)`
for i, j in enumerate(arr):
s1 += j - i
s2 += j*j - i*i

"""
s1 = (n-2) + (n-1) + sum(arr) - sum(range(n))
= sum(arr) - sum(range(n-2))
= sum(range(n-2)) + p + q - sum(range(n-2))
= p + q
"""
assert s1 == (sum(arr) - sum(range(n-2)))

"""
s2 = (n-2)**2 + (n-1)**2 + sum(i*i for i in arr) - sum(i*i for i in range(n))
= sum(i*i for i in arr) - sum(i*i for i in range(n-2))
= p*p + q*q
"""
assert s2 == (sum(i*i for i in arr) - sum(i*i for i in range(n-2)))

"""
s1 = p+q
-> s1**2 = (p+q)**2
-> s1**2 = p*p + 2*p*q + q*q
-> s1**2 - (p*p + q*q) = 2*p*q
s2 = p*p + q*q
-> p*q = (s1**2 - s2)/2

Let C = p*q = (s1**2 - s2)/2 and B = p+q = s1 then from Viete theorem follows
that p and q are roots of x**2 - B*x + C = 0
-> p = (B + sqrtD) / 2
-> q = (B - sqrtD) / 2
where sqrtD = sqrt(B**2 - 4*C)

-> p = (s1 + sqrt(2*s2 - s1**2))/2
"""
sqrtD = (2*s2 - s1**2)**.5
assert int(sqrtD)**2 == (2*s2 - s1**2) # perfect square
sqrtD = int(sqrtD)
assert (s1 - sqrtD) % 2 == 0 # even
p = (s1 - sqrtD) // 2
q = s1 - p
assert q == ((s1 + sqrtD) // 2)
assert sqrtD == (q - p)
return p, q
``````

NOTE: calculating integer square root of a number (~ N**4) makes the above algorithm non-linear.

Since a range is specified, you can perform radix sort. This would sort your array in O(n). Searching for duplicates in a sorted array is then O(n)

You can use simple nested for loop

`````` int[] numArray = new int[] { 1, 2, 3, 4, 5, 7, 8, 3, 7 };

for (int i = 0; i < numArray.Length; i++)
{
for (int j = i + 1; j < numArray.Length; j++)
{
if (numArray[i] == numArray[j])
{
//DO SOMETHING
}
}
``````

*OR you can filter the array and use recursive function if you want to get the count of occurrences*

``````int[] array = { 1, 2, 3, 4, 5, 4, 4, 1, 8, 9, 23, 4, 6, 8, 9, 1,4 };
int[] myNewArray = null;
int a = 1;

void GetDuplicates(int[] array)
for (int i = 0; i < array.Length; i++)
{
for (int j = i + 1; j < array.Length; j++)
{
if (array[i] == array[j])
{
a += 1;
}
}
Console.WriteLine(" {0} occurred {1} time/s", array[i], a);

IEnumerable<int> num = from n in array where n != array[i] select n;
myNewArray = null;
a = 1;
myNewArray = num.ToArray() ;

break;

}
GetDuplicates(myNewArray);
``````

answer to 18.. you are taking an array of 9 and elements are starting from 0..so max ele will be 6 in your array. Take sum of elements from 0 to 6 and take sum of array elements. compute their difference (say d). This is p + q. Now take XOR of elements from 0 to 6 (say x1). Now take XOR of array elements (say x2). x2 is XOR of all elements from 0 to 6 except two repeated elements since they cancel out each other. now for i = 0 to 6, for each ele of array, say p is that ele a[i] so you can compute q by subtracting this ele from the d. do XOR of p and q and XOR them with x2 and check if x1==x2. likewise doing for all elements you will get the elements for which this condition will be true and you are done in O(n). Keep coding!

check this out ... O(n) time and O(1) space complexity

`````` for(i=0;i< n;i++)
xor=xor^arr[i]
for(i=1;i<=n-3;i++)
xor=xor^i;
``````

So in the given example you will get the xor of 3 and 5

``````xor=xor & -xor  //Isolate the last digit

for(i = 0; i < n; i++)
{
if(arr[i] & xor)
x = x ^ arr[i];
else
y = y ^ arr[i];
}
for(i = 1; i <= n-3; i++)
{
if(i & xor)
x = x ^ i;
else
y = y ^ i;
``````

}

For each number: check if it exists in the rest of the array.

• The running time on that would be horrible though. O(N^2). Probably needs a better solution. Feb 17, 2009 at 7:05
• Indeed. This is less efficient than sorting. Feb 17, 2009 at 7:11
• And 'best way' may be different than what one might think :) Feb 17, 2009 at 7:31
• It's funny that so many people consider performance the only quality metric - what about one's ability to quickly understand the algorithm and not wasting your brain cycles grokking some local optimization to a simple problem? Feb 17, 2009 at 18:07
• How do we even know performance is the expected metric? This is by far the simplest code. If there are 1000 entries in the array, this is easily the best code in my book. Don't optimize until you've profiled. In short, I think this answer is the best starting point unless we know what we are optimizing for. May 12, 2011 at 17:00

Without sorting you're going to have a keep track of numbers you've already visited.

in psuedocode this would basically be (done this way so I'm not just giving you the answer):

``````for each number in the list
if number not already in unique numbers list
add it to the unique numbers list
else
return that number as it is a duplicate
end if
end for each
``````
• Isn't the running time of this still O(N^2)? The length of the unique numbers list will grow to nearly the length of the array and have to be searched each number. I suppose it could be a sorted list so O(N * LogN) might be possible. Feb 17, 2009 at 7:17
• If the list is replaced by a hash table or set, it's faster than O(n^2). Feb 17, 2009 at 7:20
• well, the best approach would be to sort the list first...but since that isn't an option we just want to find the first duplicate and return it. In the best case we will return very quickly...worse case we'll return after examining the entire list. I'm not sure how that can be avoided given no sort Feb 17, 2009 at 7:21
• If you use proper storage for "unique number list", like a tree, then this too is O(N log N). If you spend more memory and use e.g. a bool[] indicating seen status, it even becomes O(N) in time but O(MAX_NUMBER) in space. Feb 17, 2009 at 7:22
• @tjdonaldson Yes, if I were writing it in C# I'd definitely put it in a hash table. But since the language hasn't been specified I wrote it in psuedocode...that way if he's writing in Basic or Assembler etc he'll be able to figure something out... Feb 17, 2009 at 7:22

``````for (i=0; i<n-1; i++) {
for (j=i+1; j<n; j++) {
if (a[i] == a[j]) {
printf("%d appears more than once\n",a[i]);
break;
}
}
}
``````

Sure it's not the fastest, but it's simple and easy to understand, and requires no additional memory. If n is a small number like 9, or 100, then it may well be the "best". (i.e. "Best" could mean different things: fastest to execute, smallest memory footprint, most maintainable, least cost to develop etc..)

• This solution is O(n**2). Standard `sort` routine usually is O(n*log(n)) and it costs you nothing to develop and maintain.
– jfs
Feb 17, 2009 at 14:14

In c:

``````    int arr[] = {2, 3, 6, 1, 5, 4, 0, 3, 5};

int num = 0, i;

for (i=0; i < 8; i++)
num = num ^ arr[i] ^i;
``````

Since `x^x=0`, the numbers that are repeated odd number of times are neutralized. Let's call the unique numbers a and b.We are left with `a^b`. We know `a^b != 0`, since `a != b`. Choose any 1 bit of `a^b`, and use that as a mask ie.choose x as a power of 2 so that `x & (a^b)` is nonzero.

Now split the list into two sublists -- one sublist contains all numbers y with `y&x == 0`, and the rest go in the other sublist. By the way we chose x, we know that the pairs of a and b are in different buckets. So we can now apply the same method used above to each bucket independently, and discover what a and b are.

I have written a small programme which finds out the number of elements not repeated, just go through this let me know your opinion, at the moment I assume even number of elements are even but can easily extended for odd numbers also.

So my idea is to first sort the numbers and then apply my algorithm.quick sort can be use to sort this elements.

Lets take an input array as below

``````int arr[] = {1,1,2,10,3,3,4,5,5,6,6};
``````

the number 2,10 and 4 are not repeated ,but they are in sorted order, if not sorted use quick sort to first sort it out.

Lets apply my programme on this

``````using namespace std;

main()
{
//int arr[] = {2, 9, 6, 1, 1, 4, 2, 3, 5};
int arr[] = {1,1,2,10,3,3,4,5,5,6,6};

int i = 0;

vector<int> vec;

int var = arr;
for(i = 1 ; i < sizeof(arr)/sizeof(arr); i += 2)
{
var = var ^ arr[i];

if(var != 0 )
{
//put in vector
var = arr[i-1];
vec.push_back(var);
i = i-1;
}
var = arr[i+1];
}

for(int i = 0 ; i < vec.size() ; i++)
printf("value not repeated = %d\n",vec[i]);

}
``````

This gives the output:

``````value not repeated= 2

value not repeated= 10

value not repeated= 4
``````

Its simple and very straight forward, just use XOR man.

``````for(i=1;i<=n;i++) {
if(!(arr[i] ^ arr[i+1]))
printf("Found Repeated number %5d",arr[i]);
}
``````

Here is an algorithm that uses order statistics and runs in `O(n)`.

You can solve this by repeatedly calling `SELECT` with the median as parameter.

You also rely on the fact that After a call to `SELECT`, the elements that are less than or equal to the median are moved to the left of the median.

• Call `SELECT` on `A` with the median as the parameter.
• If the median value is `floor(n/2)` then the repeated values are right to the median. So you continue with the right half of the array.
• Else if it is not so then a repeated value is left to the median. So you continue with the left half of the array.
• You continue this way recursively.

For example:

• When `A={2, 3, 6, 1, 5, 4, 0, 3, 5}` `n=9`, then the median should be the value `4`.
• After the first call to `SELECT`
• `A={3, 2, 0, 1, <3>, 4, 5, 6, 5}` The median value is smaller than `4` so we continue with the left half.
• `A={3, 2, 0, 1, 3}`
• After the second call to `SELECT`
• `A={1, 0, <2>, 3, 3}` then the median should be `2` and it is so we continue with the right half.
• `A={3, 3}`, found.

This algorithm runs in `O(n+n/2+n/4+...)=O(n)`.

A HyperLogLog is a probabilistic data structure used in order to count unique things (technically this is referred to estimating the cardinality of a set). Usually counting unique items requires using an amount of memory proportional to the number of items you want to count, because you need to remember the elements you have already seen in the past in order to avoid counting them multiple times. However there is a set of algorithms that trade memory for precision: you end with an estimated measure with a standard error, in the case of the Redis implementation, which is less than 1%. The magic of this algorithm is that you no longer need to use an amount of memory proportional to the number of items counted, and instead can use a constant amount of memory! 12k bytes in the worst case, or a lot less if your HyperLogLog (We'll just call them HLL from now) has seen very few elements.

Well using the nested for loop and assuming the question is to find the number occurred only twice in an array.

``````def repeated(ar,n):
count=0
for i in range(n):
for j in range(i+1,n):
if ar[i] == ar[j]:
count+=1
if count == 1:
count=0
print("repeated:",ar[i])

arr= [2, 3, 6, 1, 5, 4, 0, 3, 5]
n = len(arr)
repeated(arr,n)
``````

Why should we try out doing maths ( specially solving quadratic equations ) these are costly op . Best way to solve this would be t construct a bitmap of size (n-3) bits , i.e, (n -3 ) +7 / 8 bytes . Better to do a calloc for this memory , so every single bit will be initialized to 0 . Then traverse the list & set the particular bit to 1 when encountered , if the bit is set to 1 already for that no then that is the repeated no . This can be extended to find out if there is any missing no in the array or not. This solution is O(n) in time complexity