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It's clear that a search performance of the generic HashSet<T> class is higher than of the generic List<T> class. Just compare the hash-based key with the linear approach in the List<T> class.

However calculating a hash key may itself take some CPU cycles, so for a small amount of items the linear search can be a real alternative to the HashSet<T>.

My question: where is the break-even?

To simplify the scenario (and to be fair) let's assume that the List<T> class uses the element's Equals() method to identify an item.

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2  
If you really want to minimize lookup time, also consider arrays and sorted arrays. To answer properly this question, a benchmark is needed, but you need to tell us more about T. Also, HashSet performance can be affected by the running time of T.GetHashCode(). –  Eldritch Conundrum Apr 14 '12 at 8:36
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11 Answers

up vote 210 down vote accepted

A lot of people are saying that once you get to the size where speed is actually a concern that HashSet will always beat List, but that depends on what you are doing.

Lets say you have a List that will only ever have on average 5 items in it. Over a large number of cycles, a single item is added or removed each cycle, you may well be better off using a List.

I did a test for this on my machine, and, well, you have to be very very small to get an advantage from list. For a list of short strings, the advantage went away after size 5, for objects after size 20.

1 item LIST strs time: 617ms
1 item HASHSET strs time: 1332ms

2 item LIST strs time: 781ms
2 item HASHSET strs time: 1354ms

3 item LIST strs time: 950ms
3 item HASHSET strs time: 1405ms

4 item LIST strs time: 1126ms
4 item HASHSET strs time: 1441ms

5 item LIST strs time: 1370ms
5 item HASHSET strs time: 1452ms

6 item LIST strs time: 1481ms
6 item HASHSET strs time: 1418ms

7 item LIST strs time: 1581ms
7 item HASHSET strs time: 1464ms

8 item LIST strs time: 1726ms
8 item HASHSET strs time: 1398ms

9 item LIST strs time: 1901ms
9 item HASHSET strs time: 1433ms

1 item LIST objs time: 614ms
1 item HASHSET objs time: 1993ms

4 item LIST objs time: 837ms
4 item HASHSET objs time: 1914ms

7 item LIST objs time: 1070ms
7 item HASHSET objs time: 1900ms

10 item LIST objs time: 1267ms
10 item HASHSET objs time: 1904ms

13 item LIST objs time: 1494ms
13 item HASHSET objs time: 1893ms

16 item LIST objs time: 1695ms
16 item HASHSET objs time: 1879ms

19 item LIST objs time: 1902ms
19 item HASHSET objs time: 1950ms

22 item LIST objs time: 2136ms
22 item HASHSET objs time: 1893ms

25 item LIST objs time: 2357ms
25 item HASHSET objs time: 1826ms

28 item LIST objs time: 2555ms
28 item HASHSET objs time: 1865ms

31 item LIST objs time: 2755ms
31 item HASHSET objs time: 1963ms

34 item LIST objs time: 3025ms
34 item HASHSET objs time: 1874ms

37 item LIST objs time: 3195ms
37 item HASHSET objs time: 1958ms

40 item LIST objs time: 3401ms
40 item HASHSET objs time: 1855ms

43 item LIST objs time: 3618ms
43 item HASHSET objs time: 1869ms

46 item LIST objs time: 3883ms
46 item HASHSET objs time: 2046ms

49 item LIST objs time: 4218ms
49 item HASHSET objs time: 1873ms

Here is that data displayed as a graph:

enter image description here

Heres the code:

        static void Main(string[] args)
        {

            int times = 10000000;


            for (int listSize = 1; listSize < 10; listSize++)
            {
                List<string> list = new List<string>();
                HashSet<string> hashset = new HashSet<string>();

                for (int i = 0; i < listSize; i++)
                {
                    list.Add("string" + i.ToString());
                    hashset.Add("string" + i.ToString());
                }

                Stopwatch timer = new Stopwatch();
                timer.Start();
                for (int i = 0; i < times; i++)
                {
                    list.Remove("string0");
                    list.Add("string0");
                }
                timer.Stop();
                Console.WriteLine(listSize.ToString() + " item LIST strs time: " + timer.ElapsedMilliseconds.ToString() + "ms");


                timer = new Stopwatch();
                timer.Start();
                for (int i = 0; i < times; i++)
                {
                    hashset.Remove("string0");
                    hashset.Add("string0");
                }
                timer.Stop();
                Console.WriteLine(listSize.ToString() + " item HASHSET strs time: " + timer.ElapsedMilliseconds.ToString() + "ms");
                Console.WriteLine();
            }


            for (int listSize = 1; listSize < 50; listSize+=3)
            {
                List<object> list = new List<object>();
                HashSet<object> hashset = new HashSet<object>();

                for (int i = 0; i < listSize; i++)
                {
                    list.Add(new object());
                    hashset.Add(new object());
                }

                object objToAddRem = list[0];

                Stopwatch timer = new Stopwatch();
                timer.Start();
                for (int i = 0; i < times; i++)
                {
                    list.Remove(objToAddRem);
                    list.Add(objToAddRem);
                }
                timer.Stop();
                Console.WriteLine(listSize.ToString() + " item LIST objs time: " + timer.ElapsedMilliseconds.ToString() + "ms");



                timer = new Stopwatch();
                timer.Start();
                for (int i = 0; i < times; i++)
                {
                    hashset.Remove(objToAddRem);
                    hashset.Add(objToAddRem);
                }
                timer.Stop();
                Console.WriteLine(listSize.ToString() + " item HASHSET objs time: " + timer.ElapsedMilliseconds.ToString() + "ms");
                Console.WriteLine();
            }

            Console.ReadLine();
        }
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17  
Wish I could give you more upvotes! Wow, talk about a thorough answer, graph and all. Nicely done. –  Andrew Steitz Mar 27 '13 at 15:48
    
Thank you so much! This is a great explanation, I was looking for something that could add and remove faster than a List<T> for a game engine, and since I will usually have a high volume of objects, this kind of a collection would be perfect. –  redcodefinal Jun 4 '13 at 19:08
1  
What an answer, we all wish Microsoft has this level of informaton! –  Andy Jul 1 '13 at 19:37
1  
There is actually a collection in the .NET framework that switches between a list and hastable implementation depending on the number of items it contains: HybridDictionary. –  MgSam Nov 1 '13 at 2:12
    
MS seems to have abandoned it thought, as it has only a non-generic version available. –  MgSam Nov 1 '13 at 2:14
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You're looking at this wrong. Yes a linear search of a List will beat a HashSet for a small number of items. But the performance difference usually doesn't matter for collections that small. It's generally the large collections you have to worry about, and that's where you think in terms of Big-O. However, if you've measured a real bottleneck on HashSet performance, then you can try to create a hybrid List/HashSet, but you'll do that by conducting lots of empirical performance tests - not asking questions on SO.

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large collections you have to worry about. We can redefine that question in terms when small collection becomes large enough to worry about HashSet vs List? tens, tens of thousands, billions of elements? –  om-nom-nom Jan 24 '12 at 18:45
5  
No, you'll see considerable performance difference above a few hundred elements. The point is always use a HashSet if you're doing the types of accesses that HashSet is good at (e.g. is element X in the set.) If your collection is so small that a List is faster then it is very rare that those lookups are actually a bottleneck in your application. If you can measure it to be one, fine you can try to optimize it - but otherwise you're wasting your time. –  Eloff Jan 24 '12 at 20:31
    
so which means, hashset is the one stop solution :) works in both scenarios :) –  nawfal Jul 29 '12 at 8:58
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Whether to use a HashSet<> or List<> comes down to how you need to access your collection. If you need to guarantee the order of items, use a List. If you don't, use a HashSet. Let Microsoft worry about the implementation of their hashing algorithms and objects.

A HashSet will access items without having to enumerate the collection (complexity of O(1) or near it), and because a List guarantees order, unlike a HashSet, some items will have to be enumerated (complexity of O(n)).

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The breakeven will depend on the cost of computing the hash. Hash computations can be trivial, or not... :-) There is always the System.Collections.Specialized.HybridDictionary class to help you not have to worry about the breakeven point.

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You also need to take into account the cost of doing a comparison. In the case of Contains(T) the HashSet will do a comparison to check it doesn't have a Hash collision versis the List doing a Comparison on every item it looks at before it finds the correct one. You also have to take into account the distribution of the Hashes generated by T.GetHashCode() as if this always returns the same value you are basically making HashSet do the same thing as List. –  Martin Brown Jul 9 '12 at 9:26
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The answer, as always, is "It depends". I assume from the tags you're talking about C#.

Your best bet is to determine

1) A Set of data 2) Usage requirements

and write some test cases.

It also depends on how you sort the list (if it's sorted at all), what kind of comparisons need to be made, how long the "Compare" operation takes for the particular object in the list, or even how you intend to use the collection.

Generally, the best one to choose isn't so much based on the size of data you're working with, but rather how you intend to access it. Do you have each piece of data associated with a particular string, or other data? A hash based collection would probably be best. Is the order of the data you're storing important, or are you going to need to access all of the data at the same time? A regular list may be better then.

Additional:

Of course, my above comments assume 'performance' means data access. Something else to consider: what are you looking for when you say "performance"? Is performance individual value look up? Is it management of large (10000, 100000 or more) value sets? Is it the performance of filling the data structure with data? Removing data? Accessing individual bits of data? Replacing values? Iterating over the values? Memory usage? Data copying speed? For example, If you access data by a string value, but your main performance requirement is minimal memory usage, you might have conflicting design issues.

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Just thought I'd chime in with some benchmarks for different scenarios to illustrate the previous answers:

  1. A few (12 - 20) small strings (length between 5 and 10 characters)
  2. Many (~10K) small strings
  3. A few long strings (length between 200 and 1000 characters)
  4. Many (~5K) long strings
  5. A few integers
  6. Many (~10K) integers

And for each scenario, looking up values which appear:

  1. In the beginning of the list ("start", index 0)
  2. Near the beginning of the list ("early", index 1)
  3. In the middle of the list ("middle", index count/2)
  4. Near the end of the list ("late", index count-2)
  5. At the end of the list ("end", index count-1)

Before each scenario I generated randomly sized lists of random strings, and then fed each list to a hashset. Each scenario ran 10,000 times, essentially:

(test pseudocode)

stopwatch.start
for X times
    exists = list.Contains(lookup);
stopwatch.stop

stopwatch.start
for X times
    exists = hashset.Contains(lookup);
stopwatch.stop

Sample Output

Tested on Windows 7, 12GB Ram, 64 bit, Xeon 2.8GHz

---------- Testing few small strings ------------
Sample items: (16 total)
vgnwaloqf diwfpxbv tdcdc grfch icsjwk
...

Benchmarks:
1: hashset: late -- 100.00 % -- [Elapsed: 0.0018398 sec]
2: hashset: middle -- 104.19 % -- [Elapsed: 0.0019169 sec]
3: hashset: end -- 108.21 % -- [Elapsed: 0.0019908 sec]
4: list: early -- 144.62 % -- [Elapsed: 0.0026607 sec]
5: hashset: start -- 174.32 % -- [Elapsed: 0.0032071 sec]
6: list: middle -- 187.72 % -- [Elapsed: 0.0034536 sec]
7: list: late -- 192.66 % -- [Elapsed: 0.0035446 sec]
8: list: end -- 215.42 % -- [Elapsed: 0.0039633 sec]
9: hashset: early -- 217.95 % -- [Elapsed: 0.0040098 sec]
10: list: start -- 576.55 % -- [Elapsed: 0.0106073 sec]


---------- Testing many small strings ------------
Sample items: (10346 total)
dmnowa yshtrxorj vthjk okrxegip vwpoltck
...

Benchmarks:
1: hashset: end -- 100.00 % -- [Elapsed: 0.0017443 sec]
2: hashset: late -- 102.91 % -- [Elapsed: 0.0017951 sec]
3: hashset: middle -- 106.23 % -- [Elapsed: 0.0018529 sec]
4: list: early -- 107.49 % -- [Elapsed: 0.0018749 sec]
5: list: start -- 126.23 % -- [Elapsed: 0.0022018 sec]
6: hashset: early -- 134.11 % -- [Elapsed: 0.0023393 sec]
7: hashset: start -- 372.09 % -- [Elapsed: 0.0064903 sec]
8: list: middle -- 48,593.79 % -- [Elapsed: 0.8476214 sec]
9: list: end -- 99,020.73 % -- [Elapsed: 1.7272186 sec]
10: list: late -- 99,089.36 % -- [Elapsed: 1.7284155 sec]


---------- Testing few long strings ------------
Sample items: (19 total)
hidfymjyjtffcjmlcaoivbylakmqgoiowbgxpyhnrreodxyleehkhsofjqenyrrtlphbcnvdrbqdvji...
...

Benchmarks:
1: list: early -- 100.00 % -- [Elapsed: 0.0018266 sec]
2: list: start -- 115.76 % -- [Elapsed: 0.0021144 sec]
3: list: middle -- 143.44 % -- [Elapsed: 0.0026201 sec]
4: list: late -- 190.05 % -- [Elapsed: 0.0034715 sec]
5: list: end -- 193.78 % -- [Elapsed: 0.0035395 sec]
6: hashset: early -- 215.00 % -- [Elapsed: 0.0039271 sec]
7: hashset: end -- 248.47 % -- [Elapsed: 0.0045386 sec]
8: hashset: start -- 298.04 % -- [Elapsed: 0.005444 sec]
9: hashset: middle -- 325.63 % -- [Elapsed: 0.005948 sec]
10: hashset: late -- 431.62 % -- [Elapsed: 0.0078839 sec]


---------- Testing many long strings ------------
Sample items: (5000 total)
yrpjccgxjbketcpmnvyqvghhlnjblhgimybdygumtijtrwaromwrajlsjhxoselbucqualmhbmwnvnpnm
...

Benchmarks:
1: list: early -- 100.00 % -- [Elapsed: 0.0016211 sec]
2: list: start -- 132.73 % -- [Elapsed: 0.0021517 sec]
3: hashset: start -- 231.26 % -- [Elapsed: 0.003749 sec]
4: hashset: end -- 368.74 % -- [Elapsed: 0.0059776 sec]
5: hashset: middle -- 385.50 % -- [Elapsed: 0.0062493 sec]
6: hashset: late -- 406.23 % -- [Elapsed: 0.0065854 sec]
7: hashset: early -- 421.34 % -- [Elapsed: 0.0068304 sec]
8: list: middle -- 18,619.12 % -- [Elapsed: 0.3018345 sec]
9: list: end -- 40,942.82 % -- [Elapsed: 0.663724 sec]
10: list: late -- 41,188.19 % -- [Elapsed: 0.6677017 sec]


---------- Testing few ints ------------
Sample items: (16 total)
7266092 60668895 159021363 216428460 28007724
...

Benchmarks:
1: hashset: early -- 100.00 % -- [Elapsed: 0.0016211 sec]
2: hashset: end -- 100.45 % -- [Elapsed: 0.0016284 sec]
3: list: early -- 101.83 % -- [Elapsed: 0.0016507 sec]
4: hashset: late -- 108.95 % -- [Elapsed: 0.0017662 sec]
5: hashset: middle -- 112.29 % -- [Elapsed: 0.0018204 sec]
6: hashset: start -- 120.33 % -- [Elapsed: 0.0019506 sec]
7: list: late -- 134.45 % -- [Elapsed: 0.0021795 sec]
8: list: start -- 136.43 % -- [Elapsed: 0.0022117 sec]
9: list: end -- 169.77 % -- [Elapsed: 0.0027522 sec]
10: list: middle -- 237.94 % -- [Elapsed: 0.0038573 sec]


---------- Testing many ints ------------
Sample items: (10357 total)
370826556 569127161 101235820 792075135 270823009
...

Benchmarks:
1: list: early -- 100.00 % -- [Elapsed: 0.0015132 sec]
2: hashset: end -- 101.79 % -- [Elapsed: 0.0015403 sec]
3: hashset: early -- 102.08 % -- [Elapsed: 0.0015446 sec]
4: hashset: middle -- 103.21 % -- [Elapsed: 0.0015618 sec]
5: hashset: late -- 104.26 % -- [Elapsed: 0.0015776 sec]
6: list: start -- 126.78 % -- [Elapsed: 0.0019184 sec]
7: hashset: start -- 130.91 % -- [Elapsed: 0.0019809 sec]
8: list: middle -- 16,497.89 % -- [Elapsed: 0.2496461 sec]
9: list: end -- 32,715.52 % -- [Elapsed: 0.4950512 sec]
10: list: late -- 33,698.87 % -- [Elapsed: 0.5099313 sec]
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Interesting. Thanks for running this. Sadly, I suspect these discussions trigger needless refactorings. Hopefully the takeaway for most people is that in your absolute worst case scenario, List still takes only 0.17 milliseconds to perform a single lookup, and is not likely going to require a substitution for HashSet until the lookup frequency reaches absurd levels. By then, the use of List usually is the least of the problems. –  Paul Walls Dec 10 '12 at 5:12
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You can use a HybridDictionary which automaticly detects the breaking point, and accepts null-values, making it essentialy the same as a HashSet.

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It depends. If the exact answer really matters, do some profiling and find out. If you're sure you'll never have more than a certain number of elements in the set, go with a List. If the number is unbounded, use a HashSet.

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Depends on what you're hashing. If your keys are integers you probably don't need very many items before the HashSet is faster. If you're keying it on a string then it will be slower, and depends on the input string.

Surely you could whip up a benchmark pretty easily?

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One factor your not taking into account is the robustness of the GetHashcode() function. With a perfect hash function the HashSet will clearly have better searching performance. But as the hash function diminishes so will the HashSet search time.

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Depends on a lot of factors... List implementation, CPU architecture, JVM, loop semantics, complexity of equals method, etc... By the time the list gets big enough to effectively benchmark (1000+ elements), Hash-based binary lookups beat linear searches hands-down, and the difference only scales up from there.

Hope this helps!

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