Correct me I'm wrong but std::map is an ordered map, thus each time I insert a value the map uses an algorithm to sort its items internally, which takes some time.

My application gets information regarding some items on a constant interval.

This app keeps a map which is defined like this:

::std::map<DWORD, myItem*>

At first all items are considered "new" to the app. An "Item" object is being allocated and added to this map, associating its id and a pointer to it.

When it's not a "new" item (just an update of this object) my app should find the object at the map, using the given id, and update.

Most of the times I get updates.

My question is:
Is there any faster map implementation or should I keep using this one?
Am I better use unordered_map?

  • 4
    My experience is that unordered_map is about twice as fast for map in the cases I've used it. This is easy to test as your map won't need a custom hash function - simply substitute unordered_map for map and time the resulting code.
    – anon
    Jul 7, 2010 at 19:35
  • 5
    Is your application too slow? Have you profiled it? Is map performance really the most important factor? How big is your usual dataset? Does it fit in memory or does your application use swap heavily? Jul 7, 2010 at 20:43
  • Just use the container that is most appropriate. I think most of the time, when you map from one thing to another, you don't actually care about the ordering of this mapping. That would make unordered_map much more appropriate. Only when ordering matters should map be used. Unfortunately, unordered_map was introduced far too late. But like @Neil says, I too have great performance increases with unordered_map over map, because I'm only doing look-ups and care not about the order. When doing lots of insertions and removals, though, map tends to win.
    – GManNickG
    Jul 7, 2010 at 21:47
  • Given that std::map and std::unordered map are easily interchangeable, it should be trivial to try both with real data and see if either of them is significantly faster than the others in real life. In theory, std::unordered map is usually amortized constant time for look up and insertion, but the constants may be relevant unless your tables are very large. Feb 25, 2013 at 20:44

3 Answers 3


Am I better use unordered_map?


std:map provides consistent performance at O(log n) because it needs to be implemented as a balanced tree. But std:unordered_map will be implemented as a hash table which might give you O(1) performance (good hash function and distribution of keys across hash buckets), but it could be O(n) (everything in one hash bucket and devolves to a list). One would normally expect something inbetween these extremes.

So you can have reasonable performance (O(log n)) all the time, or you need to ensure everything lines up to get good performance with a hash.

As with any such question: you need to measure before committing to one approach. Unless your datasets are large you might find there is no significant difference.

  • So you're saying there's no guiding line to tell uh? Well, the id's to be associated with the items in the map really vary yet if you take only one source that provides items information, the id's are in pretty close distribution.
    – Poni
    Jul 7, 2010 at 19:35
  • 16
    "Large" in this context means really, truly, astronomically large. When comparing algorithms of O(1) and O(logn) the constant factors tend to dominate the runtime on any dataset that you can store in memory all at once. If performance really matters, always make real measurements for representative cases.
    – Alan
    Jul 7, 2010 at 19:38
  • 1
    A (properly implemented) hash table has amortized constant time complexity guarantees, which is good enough 99% of the times.
    – Staffan
    Jul 7, 2010 at 21:10
  • Ok Staffan - now being specific? If my "map needs" are associating number with number (i.e a DWORD which is the id and a pointer which is eventually a number) - can you recommend a specific one?
    – Poni
    Jul 7, 2010 at 21:33
  • 1
    @Poni: Also, in practice, the key type (a DWORD in your case) used affects what's the best choice. Computing a hash for a string of length m takes Θ(m) (Big Theta) time, whereas the string comparison used for the regular map has complexity O(m) (Big O). I.e., when you calculate the hash of "Hello" you have to look at all the characters. But when you for example compare "Hello" and "World" you only need to look at one character!
    – Staffan
    Jul 7, 2010 at 22:13

Important warning: Unless you have measured (and your question suggests that you haven't) that map performance substantially influences your application performance (large percentage of time is spent on searching and updating the map) don't bother with making it faster. Stick to std::map (or std::unordered_map or any available hash_map implementation). Speeding up your application by 1% probably will not be worth the effort. Make it bug free instead.

Echoing Richard's answer: measure performance with different map implementation using your real classes and real data.

Some additional notes:

  • Understand the difference between expected cost (hash maps usually have it lower), worst case cost (O(logn) for balanced binary tree but much higher for hash map if insert triggers reallocation of hash array) and amortized cost (total cost divided by number of operations or elements; depends on things like ratio of new and existing elements). You need to find out which is more constraining in your case. For example reallocating of hash maps can be too much if you need to adhere to very low latency limit.

  • Find out where real bottleneck is. It might be that cost of searching in map is insignificant compared to e.g. IO cost.

  • Try more specialized map implementation. For example a lot can be gained if you know something more about map's key. Authors of generic map implementations do not have such knowledge.

In your example (32 bit unsigned integer keys which strongly cluster, e.g. are assigned sequentially) you can use radix based approach. Very simple example (threat it as an illustration, not ready to use recipe):

Item *sentinel[65536];  // sentinel page, initialized to NULLs.
Item (*pages[65536])[65536];  // list of pages,
                              // initialized so every element points to sentinel

Then search is as simple as:

Item *value = pages[index >> 16][index & 0xFFFF];

When you need to set new value:

if (pages[index >> 16] == sentinel) {
  pages[index >> 16] = allocate_new_null_filled_page();
pages[index >> 16][index & 0xFFFF] = value;
  • Tweak your map implementation.

    • E.g. every hash_map likes to know approximate number of elements in advance. It helps avoid unnecessary reallocation of hash table and (possibly) rehashing of all keys.

    • With my specialized example above you certainly would try different page sizes, or three level version.

    • Common optimization is providing specialized memory allocator to avoid multiple allocations of small objects.

  • Thought of having an array instead of the map yet this approach limits me to a certain number of items and their id's because the id's are not exactly assigned sequentially. Besides that, you did gave some news, I didn't really think of allocating them on-air, and this seems very correct. Thank you!
    – Poni
    Jul 7, 2010 at 22:13
  • @Poni: Seriously? Just new it and memset with zeroes. Maybe stay with std::map (or std::unordered_map) for now... Jul 8, 2010 at 12:40
  • Yup, cought me on that one. I'm talking about the "new" statement, as in "new .....". Confused me, unfortunately.
    – Poni
    Jul 9, 2010 at 0:02

Whenever you insert or delete item, the memory allocation/deallocation costs a lot. Instead you can use an allocator like this one: https://github.com/moya-lang/Allocator which speeds up std::map twice as author says, but I found it even faster especially for other STL containers.

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