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I am writing an application that is primarily performance intensive. After writing a quick benchmark today I have found that dictionary access time is significantly slower than array access time (up to a 100 times), though both are O(1). I tried finding similar results on the internet, but to no avail. Does this seem right? It makes sense to me as there is hashing involved for the dictionary, and not for the array.

I am now weighing up the pros and cons of the dictionary, and considering if I should attempt a faster implementation. In at least 3 instances of my application I loop through all my dictionaries (there are quite a few) with a foreach loop. So now to get to my question, does the foreach loop have to go through the "slow" (I speak relatively here) hashing process, or does it simply maintain an internal list that it can quickly iterate over? If this is the case, I'd be more likely to stick with the dictionary.

For some extra info, the application is a simple 2D game, and the dictionary is to store in game entities. There really are very many though. And yes, I already have a working solution. This is post-optimization, not pre.

Here is the benchmark I wrote. It may be very wrong, as I'm no expert in the field:

        public static int dict(Dictionary<key,int> dict, key k)
            int i;
            //dict.TryGetValue(k,out i);
            i = dict[k];  //both these version yield the same results

            return i;

        public static int arr(int[,] arr, key k)
            int i;
            i = arr[k.x, k.y];

            return i;

        public struct key
            public int x, y;

            public key (int x, int y){
                this.x = x;
                this.y = y;

        public static void Main()
            int dim = 256;
            Dictionary<key,int> dictVar = new Dictionary<key,int>(dim*dim*10);

            int[,] arrVar = new int[dim,dim];

            for (int i = 0; i < dim; ++i)
                for (int j = 0; j < dim; ++j)
                    arrVar[i, j] = i + j * i;
                    dictVar.Add(new key(i, j), i + i * j);

            const int iterations = 1000000;
            key k = new key(200, 200);
            TestTime(dict, dictVar, k, iterations);
            TestTime(arr, arrVar, k, iterations);

        public static void TestTime<T1, T2, TR>(Func<T1, T2, TR> action, T1 obj1,
                                                T2 obj2, int iterations)
            Stopwatch stopwatch = Stopwatch.StartNew();
            for (int i = 0; i < iterations; ++i)
                action(obj1, obj2);
            Console.WriteLine(action.Method.Name + " took " + stopwatch.Elapsed);
share|improve this question
How are you iterating over the dictionary? foreach (var key in dict.Keys) { var value = dict[key]; } is much slower than foreach (var item in dict) { var key = item.Key; var value = item.Value; }. –  Kirk Woll May 17 '12 at 22:24
Post the code you used to run the benchmarks. –  Mark Byers May 17 '12 at 22:25
I'm doing the foreach (var item in dict). In this case I actually don't even need the key at all. Just the values are important. –  Denzil May 17 '12 at 22:26
Use GetEnumerator which should be faster than using foreach. A Dictionary is not designed for enumeration but for accessing single items by key. –  Tim Schmelter May 17 '12 at 22:26
@TheEvilPenguin: It omits exception handling. –  Tim Schmelter May 17 '12 at 22:28

1 Answer 1

up vote 1 down vote accepted

It maintains an internal list it loops over, but the list is of type Entry<TKey, TValue>[], so it has to construct a KeyValuePair each time. I would guess this is what is causing the slowdown.

share|improve this answer
I guess this answers my question then, thanks. Can accept in 2 minutes :) –  Denzil May 17 '12 at 22:35

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