# Is using Random and OrderBy a good shuffle algorithm?

I have read an article about various shuffle algorithms over at Coding Horror. I have seen that somewhere people have done this to shuffle a list:

``````var r = new Random();
var shuffled = ordered.OrderBy(x => r.Next());
``````

Is this a good shuffle algorithm? How does it work exactly? Is it an acceptable way of doing this?

-

It's not a way of shuffling that I like, mostly on the grounds that it's O(n log n) for no good reason when it's easy to implement an O(n) shuffle. The code in the question "works" by basically giving a random (hopefully unique!) number to each element, then ordering the elements according to that number.

I prefer Durstenfield's variant of the Fisher-Yates shuffle which swaps elements.

Implementing a simple `Shuffle` extension method would basically consist of calling `ToList` or `ToArray` on the input then using an existing implementation of Fisher-Yates. (Pass in the `Random` as a parameter to make life generally nicer.) There are plenty of implementations around... I've probably got one in an answer somewhere.

The nice thing about such an extension method is that it would then be very clear to the reader what you're actually trying to do.

EDIT: Here's a simple implementation (no error checking!):

``````public static IEnumerable<T> Shuffle<T>(this IEnumerable<T> source, Random rng)
{
T[] elements = source.ToArray();
// Note i > 0 to avoid final pointless iteration
for (int i = elements.Length-1; i > 0; i--)
{
// Swap element "i" with a random earlier element it (or itself)
int swapIndex = rng.Next(i + 1);
T tmp = elements[i];
elements[i] = elements[swapIndex];
elements[swapIndex] = tmp;
}
// Lazily yield (avoiding aliasing issues etc)
foreach (T element in elements)
{
yield return element;
}
}
``````

EDIT: Comments on performance below reminded me that we can actually return the elements as we shuffle them:

``````public static IEnumerable<T> Shuffle<T>(this IEnumerable<T> source, Random rng)
{
T[] elements = source.ToArray();
for (int i = elements.Length - 1; i >= 0; i--)
{
// Swap element "i" with a random earlier element it (or itself)
// ... except we don't really need to swap it fully, as we can
// return it immediately, and afterwards it's irrelevant.
int swapIndex = rng.Next(i + 1);
yield return elements[swapIndex];
elements[swapIndex] = elements[i];
}
}
``````

This will now only do as much work as it needs to.

Note that in both cases, you need to be careful about the instance of `Random` you use as:

• Creating two instances of `Random` at roughly the same time will yield the same sequence of random numbers (when used in the same way)
• `Random` isn't thread-safe.

I have an article on `Random` which goes into more detail on these issues and provides solutions.

-
Well, implementations for small, but important, things like this I would say is always nice to find here on StackOverflow. So yes please, if you want to =) –  Svish Aug 17 '09 at 12:18
Jon -- your explanation of Fisher-Yates is equivalent to the implementation given in the question (the naive version). Durstenfeld/Knuth achieve O(n) not by assignment, but by selection from a decreasing set and swapping. This way the random number selected may repeat and the algorithm only takes O(n). –  tvanfosson Aug 17 '09 at 12:18
You're probably getting sick of hearing from me on this, but I ran into a slight problem in my unit tests that you might want to be aware of. There's a quirk with ElementAt that makes it invoke the extension each time, giving unreliable results. In my tests I'm materializing the result before checking to avoid this. –  tvanfosson Aug 17 '09 at 16:44
@tvanfosson: Not sick at all :) But yes, callers should be aware that it's lazily evaluated. –  Jon Skeet Aug 17 '09 at 17:04
A bit late, but please note `source.ToArray();` requires you to have `using System.Linq;` in the same file. If you don't, you get this error: `'System.Collections.Generic.IEnumerable<T>' does not contain a definition for 'ToArray' and no extension method 'ToArray' accepting a first argument of type 'System.Collections.Generic.IEnumerable<T>' could be found (are you missing a using directive or an assembly reference?)` –  Powerlord Oct 22 '09 at 20:41

This is based on Jon Skeet's answer.

In that answer, the array is shuffled, then returned using `yield`. The net result is that the array is kept in memory for the duration of foreach, as well as objects necessary for iteration, and yet the cost is all at the beginning - the yield is basically an empty loop.

This algorithm is used a lot in games, where the first three items are picked, and the others will only be needed later if at all. My suggestion is to `yield` the numbers as soon as they are swapped. This will reduce the start-up cost, while keeping the iteration cost at O(1) (basically 5 operations per iteration). The total cost would remain the same, but the shuffling itself would be quicker. In cases where this is called as `collection.Shuffle().ToArray()` it will theoretically make no difference, but in the aforementioned use cases it will speed start-up. Also, this would make the algorithm useful for cases where you only need a few unique items. For example, if you need to pull out three cards from a deck of 52, you can call `deck.Shuffle().Take(3)` and only three swaps will take place (although the entire array would have to be copied first).

``````public static IEnumerable<T> Shuffle<T>(this IEnumerable<T> source, Random rng)
{
T[] elements = source.ToArray();
// Note i > 0 to avoid final pointless iteration
for (int i = elements.Length - 1; i > 0; i--)
{
// Swap element "i" with a random earlier element it (or itself)
int swapIndex = rng.Next(i + 1);
yield return elements[swapIndex];
elements[swapIndex] = elements[i];
// we don't actually perform the swap, we can forget about the
// swapped element because we already returned it.
}

// there is one item remaining that was not returned - we return it now
yield return elements[0];
}
``````
-
Ouch! This will likely not return all the items in the source. You can't rely on a random number being unique for N iterations. –  P Daddy Nov 3 '09 at 13:52
Clever! (And I hate this 15 character stuff...) –  Svish Nov 3 '09 at 13:55
@P Daddy: Huh? Care to elaborate? –  Svish Nov 3 '09 at 13:56
Or you could replace the > 0 with >= 0 and not have to (although, an extra RNG hit plus a redundant assignment) –  FryGuy Nov 29 '09 at 20:40
The startup cost is O(N) as the cost of source.ToArray(); –  Dave Hillier Nov 8 '11 at 10:50

It's probablly ok for most purposes, and almost always it generates a truly random distribution (except when Random.Next() produces two identical random integers).

It works by assigning each element of the series a random integer, then ordering the sequence by these integers.

It's totally acceptable for 99.9% of the applications (unless you absolutely need to handle the edge case above). Also, skeet's objection to its runtime is valid, so if you're shuffling a long list you might not want to use it.

-

Seems like a good shuffling algorithm, if you're not too worried on the performance. The only problem I'd point out is that its behavior is not controllable, so you may have a hard time testing it.

One possible option is having a seed to be passed as a parameter to the random number generator (or the random generator as a parameter), so you can have more control and test it more easily.

-
good point about the testing ... you need it to be seeded –  John Nicholas Aug 17 '09 at 12:13

This has come up many times before. Search for Fisher-Yates on StackOverflow.

Here is a C# code sample I wrote for this algorithm. You can parameterize it on some other type, if you prefer.

``````static public class FisherYates
{
//      Based on Java code from wikipedia:
//      http://en.wikipedia.org/wiki/Fisher-Yates_shuffle
static public void Shuffle(int[] deck)
{
Random r = new Random();
for (int n = deck.Length - 1; n > 0; --n)
{
int k = r.Next(n+1);
int temp = deck[n];
deck[n] = deck[k];
deck[k] = temp;
}
}
}
``````
-
You shouldn't use `Random` as a static variable like this - `Random` isn't thread-safe. See csharpindepth.com/Articles/Chapter12/Random.aspx –  Jon Skeet Dec 30 '12 at 22:11
@Jon Skeet: sure, that's a legitimate argument. OTOH, the OP was asking about an algorithm that was flat-out wrong whereas this is correct (other than the multithreaded card-shuffling use-case). –  hughdbrown Jan 2 '13 at 17:41
That just means this is "less wrong" than the OP's approach. It doesn't mean it's code which should be used without understanding that it can't be used safely in a multi-threaded context... which is something you didn't mention. There's a reasonable expectation that static members can be used safely from multiple threads. –  Jon Skeet Jan 2 '13 at 17:46
@Jon Skeet: Sure, I can change it. Done. I tend to think that coming back to a question answered three and a half years ago and saying, "It's incorrect because it doesn't handle the multithreaded use-case" when the OP never asked about anything more than the algorithm is excessive. Review my answers over the years. Often I've given OPs replies that went beyond the stated requirements. I've been criticized for that. I wouldn't expect OPs to get answers that fit all possible uses, though. –  hughdbrown Jan 2 '13 at 19:43
I only visited this answer at all because someone else pointed me at it on chat. While the OP didn't specifically mention threading, I think it's definitely worth mentioning when a static method isn't thread-safe, as it's unusual and makes the code unsuitable for many situations without modification. Your new code is thread-safe - but still not ideal as if you call it from multiple threads at "roughly" the same time to shuffle two collections of the same size, the shuffles will be equivalent. Basically, `Random` is a pain to use, as noted in my article. –  Jon Skeet Jan 2 '13 at 19:48

Slightly unrelated, but here is an interesting method (that even though it is really excessibe, has REALLY been implemented) for truly random generation of dice rolls!

Dice-O-Matic

The reason I'm posting this here, is that he makes some interesting points about how his users reacted to the idea of using algorithms to shuffle, over actual dice. Of course, in the real world, such a solution is only for the really extreme ends of the spectrum where randomness has such an big impact and perhaps the impact affects money ;).

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I would say that many answers here like "This algorithm shuffles by generating a new random value for each value in a list, then ordering the list by those random values" might be very wrong!

I'd think that this DOES NOT assign a random value to each element of the source collection. Instead there might be a sort algorithm running like Quicksort which would call a compare-function approximately n log n times. Some sort algortihm really expect this compare-function to be stable and always return the same result!

Couldn't it be that the IEnumerableSorter calls a compare function for each algorithm step of e.g. quicksort and each time calls the function `x => r.Next()` for both parameters without caching these!

In that case you might really mess up the sort algorithm and make it much worse than the expectations the algorithm is build up on. Of course, it eventually will become stable and return something.

I might check it later by putting debugging output inside a new "Next" function so see what happens. In Reflector I could not immediately find out how it works.

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It's not the case: internal override void ComputeKeys(TElement[] elements, int count); Declaring Type: System.Linq.EnumerableSorter<TElement,TKey> Assembly: System.Core, Version=3.5.0.0 This function creates an array first with all the keys which consumes memory, before quicksort sorts them –  Christian Apr 26 '12 at 17:46
That's good to know - still just an implementation detail though, which could conceivably change in future versions! –  Blorgbeard Sep 10 '12 at 22:37

This algorithm shuffles by generating a new random value for each value in a list, then ordering the list by those random values. Think of it as adding a new column to an in-memory table, then filling it with GUIDs, then sorting by that column. Looks like an efficient way to me (especially with the lambda sugar!)

-

Startup time to run on code with clear all threads and cache every new test,

First unsuccessful code. It runs on LINQPad. If you follow to test this code.

``````Stopwatch st = new Stopwatch();
st.Start();
var r = new Random();
List<string[]> list = new List<string[]>();

//list.OrderBy (l => r.Next()).Dump();
list.OrderBy (l => Guid.NewGuid()).Dump();
st.Stop();
Console.WriteLine(st.Elapsed.TotalMilliseconds);
``````

list.OrderBy(x => r.Next()) uses 38.6528 ms

list.OrderBy(x => Guid.NewGuid()) uses 36.7634 ms (It's recommended from MSDN.)

the after second time both of them use in the same time.

EDIT: TEST CODE on Intel Core i7 4@2.1GHz, Ram 8 GB DDR3 @1600, HDD SATA 5200 rpm with [Data: www.dropbox.com/s/pbtmh5s9lw285kp/data]

``` ```
``````using System;
using System.Runtime;
using System.Diagnostics;
using System.IO;
using System.Collections.Generic;
using System.Collections;
using System.Linq;

namespace Algorithm
{
class Program
{
public static void Main(string[] args)
{
try {
int i = 0;
int limit = 10;
var result = GetTestRandomSort(limit);
foreach (var element in result) {
Console.WriteLine();
Console.WriteLine("time {0}: {1} ms", ++i, element);
}
} catch (Exception e) {
Console.WriteLine(e.Message);
} finally {
Console.Write("Press any key to continue . . . ");
}
}

public static IEnumerable<double> GetTestRandomSort(int limit)
{
for (int i = 0; i < 5; i++) {
string path = null, temp = null;
Stopwatch st = null;
int? count = null;
List<string> list = null;
Random r = null;

GC.Collect();
GC.WaitForPendingFinalizers();

st = Stopwatch.StartNew();
#region Import Input Data
path = Environment.CurrentDirectory + "\\data";
list = new List<string>();
count = 0;
while (count < limit && (temp = sr.ReadLine()) != null) {
//                  Console.WriteLine(temp);
count++;
}
sr.Close();
#endregion

//              Console.WriteLine("--------------Random--------------");
//              #region Sort by Random with OrderBy(random.Next())
//              r = new Random();
//              list = list.OrderBy(l => r.Next()).ToList();
//              #endregion

//              #region Sort by Random with OrderBy(Guid)
//              list = list.OrderBy(l => Guid.NewGuid()).ToList();
//              #endregion

//              #region Sort by Random with Parallel and OrderBy(random.Next())
//              r = new Random();
//              list = list.AsParallel().OrderBy(l => r.Next()).ToList();
//              #endregion

//              #region Sort by Random with Parallel OrderBy(Guid)
//              list = list.AsParallel().OrderBy(l => Guid.NewGuid()).ToList();
//              #endregion

//              #region Sort by Random with User-Defined Shuffle Method
//              r = new Random();
//              list = list.Shuffle(r).ToList();
//              #endregion

//              #region Sort by Random with Parallel User-Defined Shuffle Method
//              r = new Random();
//              list = list.AsParallel().Shuffle(r).ToList();
//              #endregion

// Result
//
st.Stop();
yield return st.Elapsed.TotalMilliseconds;
foreach (var element in list) {
Console.WriteLine(element);
}
}

}
}
}
``````

Result Description: https://www.dropbox.com/s/9dw9wl259dfs04g/ResultDescription.PNG
Result Stat: https://www.dropbox.com/s/ewq5ybtsvesme4d/ResultStat.PNG

Conclusion:
Assume: LINQ OrderBy(r.Next()) and OrderBy(Guid.NewGuid()) are not worse than User-Defined Shuffle Method in First Solution.