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The problem is this: I'd like to generate unique random numbers between 0 and 1000 that never repeat (I.E. 6 doesn't come out twice), but that doesn't resort to something like an O(N) search of previous values to do it. Is this possible?

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Nice example btw, I thought WTF wat has IE6 to do with this ;-). –  Toon Krijthe Oct 12 '08 at 20:39
Isn't this the same question as stackoverflow.com/questions/158716/… –  jk. Oct 12 '08 at 21:03
“I.E. 6 doesn't come out twice” – right, but there are the service packs. scnr –  Konrad Rudolph Oct 14 '08 at 18:14
You know, I didn't do that on purpose... Thank GOD IE 6 didn't come out twice! Once is definitely enough... –  dicroce Jan 3 '09 at 19:32
Is 0 between 0 and 1000? –  Pete Kirkham Jan 19 '09 at 20:49

14 Answers 14

up vote 159 down vote accepted

Initialize an array of 1001 integers with the values 0-1000 and set a variable, max, to the current max index of the array (starting with 1000). Pick a random number, r, between 0 and max, swap the number at the position r with the number at position max and return the number now at position max. Decrement max by 1 and continue. When max is 0, set max back to the size of the array - 1 and start again without the need to reinitialize the array.

Update: Although I came up with this method on my own when I answered the question, after some research I realize this is a modified version of Fisher-Yates known as Durstenfeld-Fisher-Yates or Knuth-Fisher-Yates. Since the description may be a little difficult to follow, I have provided an example below (using 11 elements instead of 1001):

Array starts off with 11 elements initialized to array[n] = n, max starts off at 10:

| 0| 1| 2| 3| 4| 5| 6| 7| 8| 9|10|

At each iteration, a random number r is selected between 0 and max, array[r] and array[max] are swapped, the new array[max] is returned, and max is decremented:

max = 10, r = 3
           v                    v
| 0| 1| 2|10| 4| 5| 6| 7| 8| 9| 3|

max = 9, r = 7
                       v     v
| 0| 1| 2|10| 4| 5| 6| 9| 8| 7: 3|

max = 8, r = 1
     v                    v
| 0| 8| 2|10| 4| 5| 6| 9| 1: 7| 3|

max = 7, r = 5
                 v     v
| 0| 8| 2|10| 4| 9| 6| 5: 1| 7| 3|


After 11 iterations, all numbers in the array have been selected, max == 0, and the array elements are shuffled:

| 4|10| 8| 6| 2| 0| 9| 5| 1| 7| 3|

At this point, max can be reset to 10 and the process can continue.

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Jeff's post on shuffling suggests this will not return good random numbers.. codinghorror.com/blog/archives/001015.html –  pro Jan 3 '09 at 9:55
@Peter Rounce: I think not; this looks to me like the Fisher Yates algorithm, also quoted in Jeff's post (as the good guy). –  Brent.Longborough Jan 3 '09 at 10:35
"I came up with this method on my own when I answered the question, after some research I realize this is a modified version of Fisher-Yates known as Durstenfeld-Fisher-Yates or Knuth-Fisher-Yates" Oh SNAP –  OverMachoGrande May 30 '10 at 12:21
@mikera: Agreed, although technically if you're using fixed-size integers the whole list can be generated in O(1) (with a large constant, viz. 2^32). Also, for practical purposes, the definition of "random" is important -- if you really want to use your system's entropy pool, the limit is the computation of the random bits rather than calculations themselves, and in that case n log n is relevant again. But in the likely case that you'll use (the equivalent of) /dev/urandom rather than /dev/random, you're back to 'practically' O(n). –  Charles Sep 27 '10 at 14:25
I'm a little confused, wouldn't the fact that you have to perform N iterations (11 in this example) to get the desired result each time mean it's O(n)? As you need to to do N iterations to get N! combinations from the same initial state, otherwise your output will only be one of N states. –  Seph Dec 4 '11 at 8:13

You can do this:

  1. Create a list, 0..1000.
  2. Shuffle the list. (See Fisher-Yates shuffle for a good way to do this.)
  3. Return numbers in order from the shuffled list.

So this doesn't require a search of old values each time, but it still requires O(N) for the initial shuffle. But as Nils pointed out in comments, this is amortised O(1).

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I disagree that it's amortized. The total algorithm is O(N) because of the shuffling. I guess you could say it's O(.001N) because each value only consumes 1/1000th of a O(N) shuffle, but that's still O(N) (albeit with a tiny coefficient). –  Kirk Strauser Oct 14 '08 at 18:29
@Just Some Guy N = 1000, so you are saying that it is O(N/N) which is O(1) –  Guvante Oct 22 '08 at 8:40
If each insert into the shuffled array is an operation, then after inserting 1 value, you can get 1 random value. 2 for 2 values, and so on, n for n values. It takes n operations to generate the list, so the entire algorithm is O(n). If you need 1,000,000 random values, it will take 1,000,000 ops –  Kibbee Jan 3 '09 at 18:45
Think about it this way, if it was constant time, it would take the same amount of time for 10 random numbers as it would for 10 billion. But due to the shuffling taking O(n), we know this is not true. –  Kibbee Jan 3 '09 at 18:47
Any method which requires you to initialise an array of size N with values is going to have an O(N) initialisation cost; moving the shuffle to the initialise or doing one iteration of the shuffle per request doesn't make any difference. –  Pete Kirkham Jan 19 '09 at 20:48

Use a Maximal Linear Feedback Shift Register.

It's implementable in a few lines of C and at runtime does little more than a couple test/branches, a little addition and bit shifting. It's not random, but it fools most people.

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"It's not random, but it fools most people". That applies to all pseudo-random number generators and all feasible answers to this question. But most people won't think about it. So omitting this note would maybe result in more upvotes... –  f3lix Mar 18 '09 at 14:43
+1 LFSRs are a very simple and effective solution for many applications. –  Steve Melnikoff Mar 29 '09 at 12:31
+1 for using only O(1) memory. –  starblue Oct 22 '09 at 16:30
Why fake it when you can do it correctly? –  bobobobo Apr 18 '13 at 16:42
@bobobobo: O(1) memory is why. –  Ash Apr 20 '13 at 16:14

You could use A Linear Congruential Generator. Where m (the modulus) would be the nearest prime bigger than 1000. When you get a number out of the range, just get the next one. The sequence will only repeat once all elements have occurred, and you don't have to use a table. Be aware of the disadvantages of this generator though (including lack of randomness).

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1009 is the first prime after 1000. –  Teepeemm May 8 at 19:15

You don't even need an array to solve this one.

You need a bitmask and a counter.

Initialize the counter to zero and increment it on successive calls. XOR the counter with the bitmask (randomly selected at startup, or fixed) to generate a psuedorandom number. If you can't have numbers that exceed 1000, don't use a bitmask wider than 9 bits. (In other words, the bitmask is an integer not above 511.)

Make sure that when the counter passes 1000, you reset it to zero. At this time you can select another random bitmask — if you like — to produce the same set of numbers in a different order.

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That would fool fewer people than an LFSR. –  starblue Oct 22 '09 at 16:27
"bitmask" within 512...1023 is OK, too. For a little more fake randomness see my answer. :-) –  sellibitze Jun 22 '10 at 15:35

For low numbers like 0...1000, creating a list that contains all the numbers and shuffling it is straight forward. But if the set of numbers to draw from is very large there's another elegant way: You can build a pseudorandom permutation using a key and a cryptographic hash function. See the following C++-ish example pseudo code:

unsigned randperm(string key, unsigned bits, unsigned index) {
  unsigned half1 =  bits    / 2;
  unsigned half2 = (bits+1) / 2;
  unsigned mask1 = (1 << half1) - 1;
  unsigned mask2 = (1 << half2) - 1;
  for (int round=0; round<5; ++round) {
    unsigned temp = (index >> half1);
    temp = (temp << 4) + round;
    index ^= hash( key + "/" + int2str(temp) ) & mask1;
    index = ((index & mask2) << half1) | ((index >> half2) & mask1);
  return index;

Here, hash is just some arbitrary pseudo random function that maps a character string to a possibly huge unsigned integer. The function randperm is a permutation of all numbers within 0...pow(2,bits)-1 assuming a fixed key. This follows from the construction because every step that changes the variable index is reversible. This is inspired by a Feistel cipher.

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Another posibility:

You can use an array of flags. And take the next one when it;s already chosen.

But, beware after 1000 calls, the function will never end so you must make a safeguard.

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Here's some code I typed up that uses the logic of the first solution. I know this is "language agnostic" but just wanted to present this as an example in C# in case anyone is looking for a quick practical solution.

// Initialize variables
Random RandomClass = new Random();
int RandArrayNum;
int MaxNumber = 10;
int LastNumInArray;
int PickedNumInArray;
int[] OrderedArray = new int[MaxNumber];      // Ordered Array - set
int[] ShuffledArray = new int[MaxNumber];     // Shuffled Array - not set

// Populate the Ordered Array
for (int i = 0; i < MaxNumber; i++)                  
    OrderedArray[i] = i;

// Execute the Shuffle                
for (int i = MaxNumber - 1; i > 0; i--)
    RandArrayNum = RandomClass.Next(i + 1);         // Save random #
    ShuffledArray[i] = OrderedArray[RandArrayNum];  // Populting the array in reverse
    LastNumInArray = OrderedArray[i];               // Save Last Number in Test array
    PickedNumInArray = OrderedArray[RandArrayNum];  // Save Picked Random #
    OrderedArray[i] = PickedNumInArray;             // The number is now moved to the back end
    OrderedArray[RandArrayNum] = LastNumInArray;    // The picked number is moved into position

for (int i = 0; i < MaxNumber; i++)                  
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public static int[] randN(int n, int min, int max)
    if (max <= min)
        throw new ArgumentException("Max need to be greater than Min");
    if (max - min < n)
        throw new ArgumentException("Range needs to be longer than N");

    var r = new Random();

    HashSet<int> set = new HashSet<int>();

    while (set.Count < n)
        var i = r.Next(max - min) + min;
        if (!set.Contains(i))

    return set.ToArray();

N Non Repeating random numbers will be of O(n) complexity, as required.
Note: Random should be static with thread safety applied.

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You could use Format-Preserving Encryption to encrypt a counter. Your counter just goes from 0 upwards, and the encryption uses a key of your choice to turn it into a seemingly random value of whatever radix and width you want, that is guaranteed to never have collisions (because cryptographic algorithms create a 1:1 mapping). E.g. for the example in this question: radix 10, width 3.

Block ciphers normally have a fixed block size of e.g. 64 or 128 bits. But Format-Preserving Encryption allows you to take a standard cipher like AES and make a smaller-width cipher, of whatever radix and width you want.

AES-FFX is one proposed standard method to achieve this. I've experimented with some basic Python code which is based on the AES-FFX idea, although not fully conformant--see Python code here. It can e.g. encrypt a counter to a random-looking 7-digit decimal number, or a 16-bit number.

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You could use a good pseudo-random number generator with 10 bits and throw away 1001 to 1023 leaving 0 to 1000.

From here we get the design for a 10 bit PRNG..

  • 10 bits, feedback polynomial x^10 + x^7 + 1 (period 1023)

  • use a Galois LFSR to get fast code

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@Phob No that won't happen, because a 10 bit PRNG based on a Linear Feedback Shift Register is typically made from a construct that assumes all values (except one) once, before returning to the first value. In other words, it will only pick 1001 exactly once during a cycle. –  Nuoji Mar 22 '13 at 23:38
@Phob the whole point of this question is to select each number exactly once. And then you complain that 1001 won't occur twice in a row? A LFSR with an optimal spread will traverse all numbers in its space in a pseudo random fashion, then restart the cycle. In other words, it is not used as a usual random function. When used as a random, we typically only use a subset of the bits. Read a bit about it and it'll soon make sense. –  Nuoji Apr 19 '13 at 13:00

This method results appropiate when the limit is high and you only want to generate a few random numbers.


($top, $n) = @ARGV; # generate $n integer numbers in [0, $top)

$last = -1;
for $i (0 .. $n-1) {
    $range = $top - $n + $i - $last;
    $r = 1 - rand(1.0)**(1 / ($n - $i));
    $last += int($r * $range + 1);
    print "$last ($r)\n";

Note that the numbers are generated in ascending order, but you can shuffle then afterwards.

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This is useful link if predictable output is allowed. This don't require a lot of memory. http://preshing.com/20121224/how-to-generate-a-sequence-of-unique-random-integers/

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You may use my Xincrol algorithm described here:


This is a pure algorithmic method of generating random but unique numbers without arrays, lists, permutations or heavy CPU load.

Latest version allows also to set the range of numbers, For example, if I want unique random numbers in range of 0-1073741821.

I've practically used it for

  • MP3 player which plays every song randomly, but only once per album/directory
  • Pixel wise video frames dissolving effect (fast and smooth)
  • Creating a secret "noise" fog over image for signatures and markers (steganography)
  • Data Object IDs for serialization of huge amount of Java objects via Databases
  • Triple Majority memory bits protection
  • Address+value encryption (every byte is not just only encrypted but also moved to a new encrypted location in buffer). This really made cryptanalysis fellows mad on me :-)
  • Plain Text to Plain Like Crypt Text encryption for SMS, emails etc.
  • My Texas Hold`em Poker Calculator (THC)
  • Several of my games for simulations, "shuffling", ranking
  • more

It is open, free. Give it a try...

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