I'd like to generate unique random numbers between 0 and 1000 that never repeat (i.e. 6 doesn't show up twice), but that doesn't resort to something like an O(N) search of previous values to do it. Is this possible?
23 Answers
Initialize an array of 1001 integers with the values 01000 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 FisherYates known as DurstenfeldFisherYates or KnuthFisherYates. 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 8 910
++++++++++++
^
max
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 1 210 4 5 6 7 8 9 3
++++++++++++
max = 9, r = 7
++
v v
++++++++++++
 0 1 210 4 5 6 9 8 7: 3
++++++++++++
max = 8, r = 1
++
v v
++++++++++++
 0 8 210 4 5 6 9 1: 7 3
++++++++++++
max = 7, r = 5
++
v v
++++++++++++
 0 8 210 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:
++++++++++++
 410 8 6 2 0 9 5 1 7 3
++++++++++++
At this point, max can be reset to 10 and the process can continue.

6Jeff's post on shuffling suggests this will not return good random numbers.. codinghorror.com/blog/archives/001015.html– proJan 3, 2009 at 9:55

16@Peter Rounce: I think not; this looks to me like the Fisher Yates algorithm, also quoted in Jeff's post (as the good guy). Jan 3, 2009 at 10:35

3@robert: I just wanted to point out that it doesn't produce, as in the name of the question, "unique random numbers in O(1)".– CharlesSep 26, 2010 at 16:23

3@mikera: Agreed, although technically if you're using fixedsize 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).– CharlesSep 27, 2010 at 14:25

4I'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'sO(n)
? As you need to to doN
iterations to getN!
combinations from the same initial state, otherwise your output will only be one of N states.– SephDec 4, 2011 at 8:13
You can do this:
 Create a list, 0..1000.
 Shuffle the list. (See FisherYates shuffle for a good way to do this.)
 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).

5@Just Some Guy N = 1000, so you are saying that it is O(N/N) which is O(1)– GuvanteOct 22, 2008 at 8:40

1If 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– KibbeeJan 3, 2009 at 18:45

3Think 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.– KibbeeJan 3, 2009 at 18:47

1This actually takes amortized time O(log n), since you need to generate n lg n random bits.– CharlesSep 24, 2010 at 20:03

2And now, I have all the justification to do it! meta.stackoverflow.com/q/252503/13 May 8, 2014 at 12:59
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.

13"It's not random, but it fools most people". That applies to all pseudorandom 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...– f3lixMar 18, 2009 at 14:43

4

3

2Using that method, how do you generate numbers let's say between 0 and 800000 ? Some might use a LFSR which period is 1048575 (2^20  1) and get next one if number is out of range but this won't be efficient.– tigrouJul 4, 2016 at 9:35

1As an LFSR, this doesn't produce uniformly distributed sequences: the entire sequence that would be generated is defined by the first element. Sep 7, 2016 at 22:19
You could use FormatPreserving 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. 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 FormatPreserving Encryption allows you to take a standard cipher like AES and make a smallerwidth cipher, of whatever radix and width you want, with an algorithm which is still cryptographically robust.
It is guaranteed to never have collisions (because cryptographic algorithms create a 1:1 mapping). It is also reversible (a 2way mapping), so you can take the resulting number and get back to the counter value you started with.
This technique doesn't need memory to store a shuffled array etc, which can be an advantage on systems with limited memory.
AESFFX is one proposed standard method to achieve this. I've experimented with some basic Python code which is based on the AESFFX idea, although not fully conformantsee Python code here. It can e.g. encrypt a counter to a randomlooking 7digit decimal number, or a 16bit number. Here is an example of radix 10, width 3 (to give a number between 0 and 999 inclusive) as the question stated:
000 733
001 374
002 882
003 684
004 593
005 578
006 233
007 811
008 072
009 337
010 119
011 103
012 797
013 257
014 932
015 433
... ...
To get different nonrepeating pseudorandom sequences, change the encryption key. Each encryption key produces a different nonrepeating pseudorandom sequence.

1This is essentially a simple mapping, thus not any different from LCG and LFSR, with all the relevant kinks (e.g. values more than
k
apart in the sequence can never occur together). Sep 7, 2016 at 21:54 
@ivan_pozdeev: I'm having difficulty understanding the meaning of your comment. Can you explain what is wrong with this mapping, what are "all the relevant kinks", and what is
k
? Sep 7, 2016 at 23:31 
All the "encryption" effectively does here is replace the sequence
1,2,...,N
with a sequence of the same numbers in some other, but still constant, order. The numbers are then pulled from this sequence one by one.k
is the number of values picked (the OP didn't specify a letter for it so I had to introduce one). Sep 8, 2016 at 18:21 
3@ivan_pozdeev It's not the case that FPE must implement a specific static mapping, or that "the combination returned is fully defined by the first number". Since the configuration parameter is much larger than the size of the first number (which has only a thousand states), there should be multiple sequences that start with the same initial value and then proceed to different subsequent values. Any realistic generator is going to fail to cover the entire possible space of permutations; it's not worth raising that failure mode when the OP didn't ask for it.– sh1Sep 11, 2016 at 19:40

6+1. When implemented correctly, using a secure block cipher with a key chosen uniformly at random, the sequences generated using this method will be computationally indistinguishable from a true random shuffle. That is to say, there is no way to distinguish the output of this method from a true random shuffle significantly faster than by testing all possible block cipher keys and seeing if any of them generates the same output. For a cipher with a 128bit keyspace, this is probably beyond the computing power currently available to mankind; with 256bit keys, it will probably forever remain so. Sep 12, 2016 at 8:04
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).

1

An LCG has high correlation between consecutive numbers, thus combinations will not be quite random at large (e.g. numbers farther than
k
apart in the sequence can never occur together). Sep 7, 2016 at 21:42 
m should be the number of elements 1001 (1000 + 1 for zero) and you may use Next = (1002 * Current + 757) mod 1001; Dec 17, 2016 at 4:03
I think that Linear congruential generator would be the simplest solution.
and there are only 3 restrictions on the a, c and m values
 m and c are relatively prime,
 a1 is divisible by all prime factors of m
 a1 is divisible by 4 if m is divisible by 4
PS the method was mentioned already but the post has a wrong assumptions about the constant values. The constants below should work fine for your case
In your case you may use a = 1002
, c = 757
, m = 1001
X = (1002 * X + 757) mod 1001

At the top of the linked article, it says a must be less than m ("0 < a < m"), but in your example (which works, I've checked), it's greater than m. Is the definition in the article incorrect or incomplete, or does that part not apply when c != 0? Or...? I mean, we mod by m, so... Jan 30 at 9:41
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.

Same as stackoverflow.com/a/16097246/648265, fails randomness for sequences just the same. Sep 11, 2016 at 11:37

2@ivan_pozdeev: In theory, assuming infinite computing power, yes. However, assuming that
hash()
, as used in the code above, is a secure pseudorandom function, this construction will provably (Luby & Rackoff, 1988) yield a pseudorandom permutation, which cannot be distinguished from a true random shuffle using significantly less effort than an exhaustive search of the entire key space, which is exponential in the key length. Even for reasonably sized keys (say, 128 bits), this is beyond the total computing power available on Earth. Sep 12, 2016 at 8:22 
(BTW, just to make this argument a bit more rigorous, I'd prefer to replace the ad hoc
hash( key + "/" + int2str(temp) )
construction above with HMAC, whose security in turn can be provably reduced to that of the underlying hash compression function. Also, using HMAC might make it less likely for someone to mistakenly try to use this construction with an insecure noncrypto hash function.) Sep 12, 2016 at 8:26
You may use my Xincrol algorithm described here:
http://openpatent.blogspot.co.il/2013/04/xincroluniqueandrandomnumber.html
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 01073741821.
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...

Could that method work for a decimal value, e.g. scrambling a 3digit decimal counter to always have a 3digit decimal result? Aug 14, 2016 at 3:21

As an example of Xorshift algorithm, it's an LFSR, with all related kinks (e.g. values more than
k
apart in the sequence can never occur together). Sep 7, 2016 at 21:56
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.

2

"bitmask" within 512...1023 is OK, too. For a little more fake randomness see my answer. :) Jun 22, 2010 at 15:35

Essentially equivalent to stackoverflow.com/a/16097246/648265, also fails randomness for sequences. Sep 7, 2016 at 22:08
The question How do you efficiently generate a list of K nonrepeating integers between 0 and an upper bound N is linked as a duplicate  and if you want something that is O(1) per generated random number (with no O(n) startup cost)) there is a simple tweak of the accepted answer.
Create an empty unordered map (an empty ordered map will take O(log k) per element) from integer to integer  instead of using an initialized array. Set max to 1000 if that is the maximum,
 Pick a random number, r, between 0 and max.
 Ensure that both map elements r and max exist in the unordered map. If they don't exist create them with a value equal to their index.
 Swap elements r and max
 Return element max and decrement max by 1 (if max goes negative you are done).
 Back to step 1.
The only difference compared with using an initialized array is that the initialization of elements is postponed/skipped  but it will generate the exact same numbers from the same PRNG.

I think this is the only solution that actually satisfies all requirements that the OP stated. I hacked this up here for C++20: godbolt.org/z/d43fz9x9K– igelMay 3 at 8:33
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;
listBox1.Items.Add(OrderedArray[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++)
{
listBox2.Items.Add(ShuffledArray[i]);
}
This method results appropiate when the limit is high and you only want to generate a few random numbers.
#!/usr/bin/perl
($top, $n) = @ARGV; # generate $n integer numbers in [0, $top)
$last = 1;
for $i (0 .. $n1) {
$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.

Since this generates combinations rather than permutations, it's more appropriate for stackoverflow.com/questions/2394246/… Sep 11, 2016 at 12:04

1Testing shows this has a bias towards lower numbers: the measured probabilities for 2M samples with
(top,n)=(100,10)
are :(0.01047705, 0.01044825, 0.01041225, ..., 0.0088324, 0.008723, 0.00863635)
. I tested in Python, so slight differences in math might play a role here (I did make sure all operations for calculatingr
are floatingpoint). Sep 11, 2016 at 12:24 
Yes, in order for this method to work correctly, the upper limit must be much bigger than the number of values to be extracted.– salvaSep 12, 2016 at 12:52

It won't work "correctly" even if "the upper limit [is] much bigger than the number of values". The probabilities will still be uneven, just by a lesser margin. Dec 16, 2017 at 2:56
You could use a good pseudorandom 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

@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.– NuojiMar 22, 2013 at 23:38

1@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.– NuojiApr 19, 2013 at 13:00

1The only problem is that a given LFSR has only one sequence, thus giving strong correlation between the picked numbers  in particular, not generating every possible combination. Sep 8, 2016 at 18:32
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))
set.Add(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.

O(n^2), as the number of retries is proportional on average to the number of elements selected so far. Sep 7, 2016 at 22:35

Think about it, if you select min=0 max=10000000 and N=5, retries ~=0 no matter how many selected. But yes you have a point that if maxmin is small, o(N) breaks up. Sep 9, 2016 at 10:15

If N<<(maxmin) then it's still proportional, it's just the coefficient is very small. And coefficients don't matter for an asymptotic estimate. Sep 9, 2016 at 22:04

This is not O(n). Each time the set contains the value this is and extra loop. Mar 1, 2017 at 20:23
Here is some sample COBOL code you can play around with.
I can send you RANDGEN.exe file so you can play with it to see if it does want you want.
IDENTIFICATION DIVISION.
PROGRAMID. RANDGEN as "ConsoleApplication2.RANDGEN".
AUTHOR. Myron D Denson.
DATECOMPILED.
* **************************************************************
* SUBROUTINE TO GENERATE RANDOM NUMBERS THAT ARE GREATER THAN
* ZERO AND LESS OR EQUAL TO THE RANDOM NUMBERS NEEDED WITH NO
* DUPLICATIONS. (CALL "RANDGEN" USING RANDGENAREA.)
*
* CALLING PROGRAM MUST HAVE A COMPARABLE LINKAGE SECTION
* AND SET 3 VARIABLES PRIOR TO THE FIRST CALL IN RANDGENAREA
*
* FORMULA CYCLES THROUGH EVERY NUMBER OF 2X2 ONLY ONCE.
* RANDOMNUMBERS FROM 1 TO RANDOMNUMBERSNEEDED ARE CREATED
* AND PASSED BACK TO YOU.
*
* RULES TO USE RANDGEN:
*
* RANDOMNUMBERSNEEDED > ZERO
*
* COUNTOFACCESSES MUST = ZERO FIRST TIME CALLED.
*
* RANDOMNUMBER = ZERO, WILL BUILD A SEED FOR YOU
* WHEN COUNTOFACCESSES IS ALSO = 0
*
* RANDOMNUMBER NOT = ZERO, WILL BE NEXT SEED FOR RANDGEN
* (RANDOMNUMBER MUST BE <= RANDOMNUMBERSNEEDED)
*
* YOU CAN PASS RANDGEN YOUR OWN RANDOMNUMBER SEED
* THE FIRST TIME YOU USE RANDGEN.
*
* BY PLACING A NUMBER IN RANDOMNUMBER FIELD
* THAT FOLLOWES THESE SIMPLE RULES:
* IF COUNTOFACCESSES = ZERO AND
* RANDOMNUMBER > ZERO AND
* RANDOMNUMBER <= RANDOMNUMBERSNEEDED
*
* YOU CAN LET RANDGEN BUILD A SEED FOR YOU
*
* THAT FOLLOWES THESE SIMPLE RULES:
* IF COUNTOFACCESSES = ZERO AND
* RANDOMNUMBER = ZERO AND
* RANDOMNUMBERNEEDED > ZERO
*
* TO INSURING A DIFFERENT PATTERN OF RANDOM NUMBERS
* A LOWRANGE AND HIGHRANGE IS USED TO BUILD
* RANDOM NUMBERS.
* COMPUTE LOWRANGE =
* ((SECONDS * HOURS * MINUTES * MS) / 3).
* A HIGHRANGE = RANDOMNUMBERSNEEDED + LOWRANGE
* AFTER RANDOMNUMBERBUILT IS CREATED
* AND IS BETWEEN LOW AND HIGH RANGE
* RANDUMNUMBER = RANDOMNUMBERBUILT  LOWRANGE
*
* **************************************************************
ENVIRONMENT DIVISION.
INPUTOUTPUT SECTION.
FILECONTROL.
DATA DIVISION.
FILE SECTION.
WORKINGSTORAGE SECTION.
01 WORKAREA.
05 X2POWER PIC 9 VALUE 2.
05 2X2 PIC 9(12) VALUE 2 COMP3.
05 RANDOMNUMBERBUILT PIC 9(12) COMP.
05 FIRSTPART PIC 9(12) COMP.
05 WORKINGNUMBER PIC 9(12) COMP.
05 LOWRANGE PIC 9(12) VALUE ZERO.
05 HIGHRANGE PIC 9(12) VALUE ZERO.
05 YOUPROVIDESEED PIC X VALUE SPACE.
05 RUNAGAIN PIC X VALUE SPACE.
05 PAUSEFORASECOND PIC X VALUE SPACE.
01 SEEDTIME.
05 HOURS PIC 99.
05 MINUTES PIC 99.
05 SECONDS PIC 99.
05 MS PIC 99.
*
* LINKAGE SECTION.
* Not used during testing
01 RANDGENAREA.
05 COUNTOFACCESSES PIC 9(12) VALUE ZERO.
05 RANDOMNUMBERSNEEDED PIC 9(12) VALUE ZERO.
05 RANDOMNUMBER PIC 9(12) VALUE ZERO.
05 RANDOMMSG PIC X(60) VALUE SPACE.
*
* PROCEDURE DIVISION USING RANDGENAREA.
* Not used during testing
*
PROCEDURE DIVISION.
100RANDGENEDITHOUSEKEEPING.
MOVE SPACE TO RANDOMMSG.
IF RANDOMNUMBERSNEEDED = ZERO
DISPLAY 'RANDOMNUMBERSNEEDED ' NO ADVANCING
ACCEPT RANDOMNUMBERSNEEDED.
IF RANDOMNUMBERSNEEDED NOT NUMERIC
MOVE 'RANDOMNUMBERSNEEDED NOT NUMERIC' TO RANDOMMSG
GO TO 900EXITRANDGEN.
IF RANDOMNUMBERSNEEDED = ZERO
MOVE 'RANDOMNUMBERSNEEDED = ZERO' TO RANDOMMSG
GO TO 900EXITRANDGEN.
IF COUNTOFACCESSES NOT NUMERIC
MOVE 'COUNTOFACCESSES NOT NUMERIC' TO RANDOMMSG
GO TO 900EXITRANDGEN.
IF COUNTOFACCESSES GREATER THAN RANDOMNUMBERSNEEDED
MOVE 'COUNTOFACCESSES > THAT RANDOMNUMBERSNEEDED'
TO RANDOMMSG
GO TO 900EXITRANDGEN.
IF YOUPROVIDESEED = SPACE AND RANDOMNUMBER = ZERO
DISPLAY 'DO YOU WANT TO PROVIDE SEED Y OR N: '
NO ADVANCING
ACCEPT YOUPROVIDESEED.
IF RANDOMNUMBER = ZERO AND
(YOUPROVIDESEED = 'Y' OR 'y')
DISPLAY 'ENTER SEED ' NO ADVANCING
ACCEPT RANDOMNUMBER.
IF RANDOMNUMBER NOT NUMERIC
MOVE 'RANDOMNUMBER NOT NUMERIC' TO RANDOMMSG
GO TO 900EXITRANDGEN.
200RANDGENDATAHOUSEKEEPING.
MOVE FUNCTION CURRENTDATE (9:8) TO SEEDTIME.
IF COUNTOFACCESSES = ZERO
COMPUTE LOWRANGE =
((SECONDS * HOURS * MINUTES * MS) / 3).
COMPUTE RANDOMNUMBERBUILT = RANDOMNUMBER + LOWRANGE.
COMPUTE HIGHRANGE = RANDOMNUMBERSNEEDED + LOWRANGE.
MOVE X2POWER TO 2X2.
300SET2X2DIVISOR.
IF 2X2 < (HIGHRANGE + 1)
COMPUTE 2X2 = 2X2 * X2POWER
GO TO 300SET2X2DIVISOR.
* *********************************************************
* IF FIRST TIME THROUGH AND YOU WANT TO BUILD A SEED. *
* *********************************************************
IF COUNTOFACCESSES = ZERO AND RANDOMNUMBER = ZERO
COMPUTE RANDOMNUMBERBUILT =
((SECONDS * HOURS * MINUTES * MS) + HIGHRANGE).
IF COUNTOFACCESSES = ZERO
DISPLAY 'SEED TIME ' SEEDTIME
' RANDOMNUMBERBUILT ' RANDOMNUMBERBUILT
' LOWRANGE ' LOWRANGE.
* *********************************************
* END OF BUILDING A SEED IF YOU WANTED TO *
* *********************************************
* ***************************************************
* THIS PROCESS IS WHERE THE RANDOMNUMBER IS BUILT *
* ***************************************************
400RANDGENFORMULA.
COMPUTE FIRSTPART = (5 * RANDOMNUMBERBUILT) + 7.
DIVIDE FIRSTPART BY 2X2 GIVING WORKINGNUMBER
REMAINDER RANDOMNUMBERBUILT.
IF RANDOMNUMBERBUILT > LOWRANGE AND
RANDOMNUMBERBUILT < (HIGHRANGE + 1)
GO TO 600RANDGENCLEANUP.
GO TO 400RANDGENFORMULA.
* *********************************************
* GOOD RANDOM NUMBER HAS BEEN BUILT *
* *********************************************
600RANDGENCLEANUP.
ADD 1 TO COUNTOFACCESSES.
COMPUTE RANDOMNUMBER =
RANDOMNUMBERBUILT  LOWRANGE.
* *******************************************************
* THE NEXT 3 LINE OF CODE ARE FOR TESTING ON CONSOLE *
* *******************************************************
DISPLAY RANDOMNUMBER.
IF COUNTOFACCESSES < RANDOMNUMBERSNEEDED
GO TO 100RANDGENEDITHOUSEKEEPING.
900EXITRANDGEN.
IF RANDOMMSG NOT = SPACE
DISPLAY 'RANDOMMSG: ' RANDOMMSG.
MOVE ZERO TO COUNTOFACCESSES RANDOMNUMBERSNEEDED RANDOMNUMBER.
MOVE SPACE TO YOUPROVIDESEED RUNAGAIN.
DISPLAY 'RUN AGAIN Y OR N '
NO ADVANCING.
ACCEPT RUNAGAIN.
IF (RUNAGAIN = 'Y' OR 'y')
GO TO 100RANDGENEDITHOUSEKEEPING.
ACCEPT PAUSEFORASECOND.
GOBACK.

1I have no idea if this can actually meet the OPs needs, but props for a COBOL contribution!– MacMay 27, 2018 at 16:53
Let's say you want to go over shuffled lists over and over, without having the O(n)
delay each time you start over to shuffle it again, in that case we can do this:
Create 2 lists A and B, with 0 to 1000, takes
2n
space.Shuffle list A using FisherYates, takes
n
time.When drawing a number, do 1step FisherYates shuffle on the other list.
When cursor is at list end, switch to the other list.
Preprocess
cursor = 0
selector = A
other = B
shuffle(A)
Draw
temp = selector[cursor]
swap(other[cursor], other[random])
if cursor == N
then swap(selector, other); cursor = 0
else cursor = cursor + 1
return temp

It's not necessary to keep 2 lists  or exhaust a list before staring over. FisherYates gives uniformly random results from any initial state. See stackoverflow.com/a/158742/648265 for explanation. Sep 7, 2016 at 22:36

@ivan_pozdeev Yes, it's the same result, but my idea here is to make it amortized O(1) by making the shuffle part of the drawing action.– Khaled.KSep 8, 2016 at 7:15

You didn't understand. You don't need to reset the list at all before shuffling again. Shuffling
[1,3,4,5,2]
will produce the same result as shuffling[1,2,3,4,5]
. Sep 8, 2016 at 18:08
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.

This one is O(k^2), what with a number of additional steps proportional on average to the number of values selected so far. Sep 7, 2016 at 22:04
Most of the answers here fail to guarantee that they won't return the same number twice. Here's a correct solution:
int nrrand(void) {
static int s = 1;
static int start = 1;
do {
s = (s * 1103515245 + 12345) & 1023;
} while (s >= 1001);
if (start < 0) start = s;
else if (s == start) abort();
return s;
}
I'm not sure that the constraint is well specified. One assumes that after 1000 other outputs a value is allowed to repeat, but that naively allows 0 to follow immediately after 0 so long as they both appear at the end and start of sets of 1000. Conversely, while it's possible to keep a distance of 1000 other values between repetitions, doing so forces a situation where the sequence replays itself in exactly the same way every time because there's no other value that has occurred outside of that limit.
Here's a method that always guarantees at least 500 other values before a value can be repeated:
int nrrand(void) {
static int h[1001];
static int n = 1;
if (n < 0) {
int s = 1;
for (int i = 0; i < 1001; i++) {
do {
s = (s * 1103515245 + 12345) & 1023;
} while (s >= 1001);
/* If we used `i` rather than `s` then our early results would be poorly distributed. */
h[i] = s;
}
n = 0;
}
int i = rand(500);
if (i != 0) {
i = (n + i) % 1001;
int t = h[i];
h[i] = h[n];
h[n] = t;
}
i = h[n];
n = (n + 1) % 1001;
return i;
}

This is an LCG, like stackoverflow.com/a/196164/648265, nonrandom for sequences as well as other related kinks just the same. Sep 11, 2016 at 12:45

@ivan_pozdeev mine's better than an LCG because it ensures that it won't return a duplicate on the 1001st call.– sh1Sep 11, 2016 at 17:57
When N is greater than 1000 and you need to draw K random samples you could use a set that contains the samples so far. For each draw you use rejection sampling, which will be an "almost" O(1) operation, so the total running time is nearly O(K) with O(N) storage.
This algorithm runs into collisions when K is "near" N. This means that running time will be a lot worse than O(K). A simple fix is to reverse the logic so that, for K > N/2, you keep a record of all the samples that have not been drawn yet. Each draw removes a sample from the rejection set.
The other obvious problem with rejection sampling is that it is O(N) storage, which is bad news if N is in the billions or more. However, there is an algorithm that solves that problem. This algorithm is called Vitter's algorithm after it's inventor. The algorithm is described here. The gist of Vitter's algorithm is that after each draw, you compute a random skip using a certain distribution which guarantees uniform sampling.

Guys, please! The FisherYates method is broken. You select the first one with probability 1/N and the second one with probability 1/(N1) != 1/N. This is a biased sampling method! You really need the Vittter's algorithm to resolve the bias. Mar 7, 2019 at 12:17

1I don't think this is how you define "biased". It's whether or not any outcome is more likely than any other outcome and you haven't shown that. Also, Wikipedia's article about FisherYates disagrees with you, stating that "The algorithm produces an unbiased permutation: every permutation is equally likely."– igelApr 22 at 18:47

I wrote this comment years ago. I can't recall why I had deemed FisherYates to be "broken". Honestly, it's probably fine. That said, WP is often good but sometimes errors slip through the cracks. Apr 24 at 3:10
for i from n−1 downto 1 do
j ← random integer such that 0 ≤ j ≤ i
exchange a[j] and a[i]
It is actually O(n1) as you only need one swap for the last two
This is C#
public static List<int> FisherYates(int n)
{
List<int> list = new List<int>(Enumerable.Range(0, n));
Random rand = new Random();
int swap;
int temp;
for (int i = n  1; i > 0; i)
{
swap = rand.Next(i + 1); //.net rand is not inclusive
if(swap != i) // it can stay in place  if you force a move it is not a uniform shuffle
{
temp = list[i];
list[i] = list[swap];
list[swap] = temp;
}
}
return list;
}

There is already an answer with this but it is fairly long winded and does not recognize you can stop at 1 (not 0) Mar 1, 2017 at 20:43
Please see my answer at https://stackoverflow.com/a/46807110/8794687
It is one of the simplest algorithms that have average time complexity O(s log s), s denoting the sample size. There are also some links there to hash table algorithms who's complexity is claimed to be O(s).
Using the article from here (linked from here), I wrote a simplified Kotlin solution for this:
class Xincrol(@IntRange(from = 1L, to = Int.MAX_VALUE / 2L) val range: Int) {
private var uniqueSeed = 0
private val key = IntArray(31)
private val base: Int
private val baseMask: Int
private val baseBitSize: Int
init {
if (range <= 0)
throw IllegalArgumentException("Range must be positive")
if (range > Int.MAX_VALUE / 2)
throw IllegalArgumentException("Range must not be more than Int.MAX_VALUE / 2")
var base = 1
var baseBitSize = 0
while (base < range) {
++baseBitSize
base = base shl 1
}
this.base = base
if (baseBitSize > 1)
baseBitSize
this.baseBitSize = baseBitSize
baseMask = base  1
if (uniqueSeed >= base)
reset()
reset()
}
private fun reset() {
uniqueSeed = 0
hashKey(System.getProperties().toString())
hashKey(System.currentTimeMillis().toString())
for (i in key.indices)
hashKey(System.nanoTime().toString())
}
private fun hashKey(inputKey: String) {
if (inputKey.isEmpty())
return
var glue = key[key.size  1]
var keyIndex = 0
for (i1 in key.indices) {
for (element in inputKey) {
key[keyIndex] = key[keyIndex] xor element.code
key[keyIndex] = ((key[keyIndex] shl 1)
or (key[keyIndex] ushr 31))
key[keyIndex] = key[keyIndex] xor glue
key[keyIndex] = ((key[keyIndex] shl 1)
or (key[keyIndex] ushr 31))
glue = key[keyIndex]
keyIndex = (++keyIndex) % key.size
}
}
}
private fun xor(a: Int, b: Int): Int {
return ((a xor b) and baseMask)
}
private fun add(a: Int, b: Int): Int {
return ((a + b) and baseMask)
}
private fun rol(a: Int, iPowerDistance: Int): Int {
var newA = a
var newIPowerDistance = iPowerDistance
if (baseBitSize <= 0) {
return newA
}
newIPowerDistance %= baseBitSize
val baseBit = ((baseMask ushr 1) + 1)
for (i in 0 until newIPowerDistance) {
newA = if ((newA and baseBit) != 0) {
(newA shl 1) and baseMask or 1
} else {
(newA shl 1) and baseMask
}
}
return newA
}
private fun reflect(a: Int): Int {
var newA = a
var b = 0
var baseBit = ((baseMask ushr 1) + 1)
while ((newA > 0) && (baseBit > 0)) {
if ((newA and 1) != 0) {
b = b or baseBit
}
baseBit = baseBit ushr 1
newA = newA ushr 1
}
return b
}
private fun generate(up: Boolean): Int {
var result = range
var i = 0
while ((i < base) && (result >= range)) {
uniqueSeed = if (up) {
++uniqueSeed % base
} else {
uniqueSeed % base
}
result = uniqueSeed
for (i1 in key.indices) {
result = rol(result, 1)
var command = key[i1]
for (i2 in 0 until baseBitSize) {
val iOperand = (command + i1 + i2)
when (command and 3) {
0 > result = reflect(result)
1 > result = rol(result, iOperand)
2 > result = add(result, iOperand)
3 > result = xor(result, iOperand)
}
command = command ushr 1
}
}
++i
}
return result
}
fun next(): Int = generate(true)
fun prev(): Int = generate(false)
}
My addition was improvement to code, removing unused stuff, and adding an iterator for it:
class RandomUniqueNumbersIterator(@IntRange(from = 1L, to = Int.MAX_VALUE / 2L) range: Int) : Iterator<Int> {
private var iteratorPos: Int = 0
private val generator: Xincrol = Xincrol(range)
override fun hasNext(): Boolean {
return iteratorPos < generator.range
}
override fun next(): Int {
if (hasNext()) {
++iteratorPos
return generator.next()
}
throw NoSuchElementException()
}
}
Usage as a unit test:
@Test
fun randomGenerator_isCorrect() {
val maxRange = 100000
val iterationsPerRange = 10
val threadPool = Executors.newWorkStealingPool()
for (range in 1..maxRange) {
threadPool.execute {
val hashSet = HashSet<Int>(maxRange)
println("range:$range")
for (i in 0 until iterationsPerRange) {
hashSet.clear()
val oXincrol = Xincrol(range)
for (x in 0 until range) {
val number = oXincrol.next()
val successAdding = hashSet.add(number)
if(!successAdding){
println("found case of no randomlyunique number generated:$number set:${hashSet}")
assert(false)
}
}
}
}
}
while (!threadPool.awaitTermination(Long.MAX_VALUE, TimeUnit.DAYS)) {
}
assert(true)
}
}
Someone posted "creating random numbers in excel". I am using this ideal. Create a structure with 2 parts, str.index and str.ran; For 10 random numbers create an array of 10 structures. Set the str.index from 0 to 9 and str.ran to different random number.
for(i=0;i<10; ++i) {
arr[i].index = i;
arr[i].ran = rand();
}
Sort the array on the values in arr[i].ran. The str.index is now in a random order. Below is c code:
#include <stdio.h>
#include <stdlib.h>
struct RanStr { int index; int ran;};
struct RanStr arr[10];
int sort_function(const void *a, const void *b);
int main(int argc, char *argv[])
{
int cnt, i;
//seed(125);
for(i=0;i<10; ++i)
{
arr[i].ran = rand();
arr[i].index = i;
printf("arr[%d] Initial Order=%2d, random=%d\n", i, arr[i].index, arr[i].ran);
}
qsort( (void *)arr, 10, sizeof(arr[0]), sort_function);
printf("\n===================\n");
for(i=0;i<10; ++i)
{
printf("arr[%d] Random Order=%2d, random=%d\n", i, arr[i].index, arr[i].ran);
}
return 0;
}
int sort_function(const void *a, const void *b)
{
struct RanStr *a1, *b1;
a1=(struct RanStr *) a;
b1=(struct RanStr *) b;
return( a1>ran  b1>ran );
}
O(n)
in time or memory), then many of the answer below are wrong, including the accepted answer.