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A recent talk about unordered_map in C++ made me realize, that I should use unordered_map for most cases where I used map before, because of the efficiency of lookup ( amortized O(1) vs. O(log n) ). Most times I use a map I use either int's or std::strings as keys, hence I've got no problems with the definition of the hash function. The more I thought about it, the more I came to realize that I can't find any reason of using a std::map in case of simple types over a unordered_map -- I took a look at the interfaces, and didn't find any significant differences that would impact my code.

Hence the question - is there any real reason to use std::map over unordered map in case of simple types like int and std::string?

I'm asking from a strictly programming point of view -- I know that it's not fully considered standard, and that it may pose problems with porting.

Also I expect that one of the correct answers might be "it's more efficient for smaller sets of data" because of a smaller overhead (is that true?) -- hence I'd like to restrict the question to cases where the amount of keys is non-trivial (>1 024).

Edit: duh, I forgot the obvious (thanks GMan!) -- yes, map's are ordered of course -- I know that, and am looking for other reasons.

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I like asking this question in interviews: "When is quick-sort better than bubble-sort?" The answer to the question provides insight into the practical application of complexity theory and not just plain black and white statements such as O(1) is better than O(n) or O(k) is equivalent to O(logn) etc.... – Matthieu N. Feb 4 '10 at 6:30
@Beh, I think you meant "when is bubble-sort better than quick-sort" :P – Kornel Kisielewicz Feb 4 '10 at 16:17
Would a smart pointer be a trivial key? – thomthom Dec 9 '13 at 10:42
up vote 188 down vote accepted

Don't forget the map's keep their elements ordered. If you can't give up that, obviously you can't use an unordered_map.

Something else to keep in mind is that unordered_map's generally use more memory. A map just has a few house-keeping pointers then memory for each object. Contrarily, unordered_map's have a big array (these can get quite big in some implementations) and then additional memory for each object. If you need to be memory-aware, a map should prove better, because it lacks the large array.

So, if you need pure lookup-retrieval, I'd say an unordered_map is the way to go. But there are always trade-offs, and if you can't afford them, then you can't use it.

Just from personal experience, I found an enormous improvement in performance (measured, of course) when using an unordered_map instead of a map in a main entity look-up table.

On the other hand, I found it was much slower at repeatedly inserting and removing elements. It's great for a relatively static collection of elements, but if you're doing tons of insertions and deletions the hashing + bucketing seems to add up. (Note, this was over many iterations.)

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+1: yes, forgot the obvious ordered property :), and the memory tip is something I wasn't aware of -- thanks – Kornel Kisielewicz Feb 4 '10 at 2:45
One more thing about the large(r) memory block property of unordered_map vs. map (or vector vs list) , the default process heap (talking Windows here) is serialized. Allocating (small) blocks in large quantities in a multithreaded application is very expensive. – ROAR Feb 4 '10 at 3:06
RA: You can somewhat control that with your own allocator type combined with any container, if you think it matters for any particular program. – Roger Pate Feb 4 '10 at 3:51
If you know the size of the unordered_map and reserve that at the start - do you still pay a penalty of many insertions? Say, you're only inserting once when you built the lookup table - and then later only read from it. – thomthom Dec 9 '13 at 10:37
@thomthom As far as I can tell, there should be no penalty in terms of performance. The reason performance takes a hit is due to the fact that if the array grows too large, it will do a rehash of all the elements. If you call reserve, it will potentially rehash the existing elements but if you call it at the start, then there should be no penalty, at least according to – Richard Fung Mar 3 '14 at 21:50

If you want to compare the speed of your std::map and std::unordered_map implementations, you could use Google's sparsehash project which has a time_hash_map program to time them. For example, with gcc 4.4.2 on an x86_64 Linux system

$ ./time_hash_map
TR1 UNORDERED_MAP (4 byte objects, 10000000 iterations):
map_grow              126.1 ns  (27427396 hashes, 40000000 copies)  290.9 MB
map_predict/grow       67.4 ns  (10000000 hashes, 40000000 copies)  232.8 MB
map_replace            22.3 ns  (37427396 hashes, 40000000 copies)
map_fetch              16.3 ns  (37427396 hashes, 40000000 copies)
map_fetch_empty         9.8 ns  (10000000 hashes,        0 copies)
map_remove             49.1 ns  (37427396 hashes, 40000000 copies)
map_toggle             86.1 ns  (20000000 hashes, 40000000 copies)

STANDARD MAP (4 byte objects, 10000000 iterations):
map_grow              225.3 ns  (       0 hashes, 20000000 copies)  462.4 MB
map_predict/grow      225.1 ns  (       0 hashes, 20000000 copies)  462.6 MB
map_replace           151.2 ns  (       0 hashes, 20000000 copies)
map_fetch             156.0 ns  (       0 hashes, 20000000 copies)
map_fetch_empty         1.4 ns  (       0 hashes,        0 copies)
map_remove            141.0 ns  (       0 hashes, 20000000 copies)
map_toggle             67.3 ns  (       0 hashes, 20000000 copies)
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I'd echo roughly the same point GMan made: depending on the type of use, std::map can be (and often is) faster than std::tr1::unordered_map (using the implementation included in VS 2008 SP1).

There are a few complicating factors to keep in mind. For example, in std::map, you're comparing keys, which means you only ever look at enough of the beginning of a key to distinguish between the right and left sub-branches of the tree. In my experience, nearly the only time you look at an entire key is if you're using something like int that you can compare in a single instruction. With a more typical key type like std::string, you often compare only a few characters or so.

A decent hash function, by contrast, always looks at the entire key. IOW, even if the table lookup is constant complexity, the hash itself has roughly linear complexity (though on the length of the key, not the number of items). With long strings as keys, an std::map might finish a search before an unordered_map would even start its search.

Second, while there are several methods of resizing hash tables, most of them are pretty slow -- to the point that unless lookups are considerably more frequent than insertions and deletions, std::map will often be faster than std::unordered_map.

Of course, as I mentioned in the comment on your previous question, you can also use a table of trees. This has both advantages and disadvantages. On one hand, it limits the worst case to that of a tree. It also allows fast insertion and deletion, because (at least when I've done it) I've used a fixed-size of table. Eliminating all table resizing allows you to keep your hash table a lot simpler and typically faster.

Edit: Oops, I almost forgot to mention one other point: the requirements for hashing and tree-based maps are different. Hashing obviously requires a hash function, and an equality comparison, where ordered maps require a less-than comparison. Of course the hybrid I mentioned requires both. Of course, for the common case of using a string as the key, this isn't really a problem, but some types of keys suit ordering better than hashing (or vice versa).

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+1: the hash resizing and eager string comparison for longer strings is quite a valid point – Kornel Kisielewicz Feb 4 '10 at 16:23
Hash resizing can be dampen down by dynamic hashing technics, which consist in having a transition period where each time you insert an item, you also rehash k other items. Of course, it means that during the transition you have to search 2 different tables... – Matthieu M. Feb 5 '10 at 7:30
"With long strings as keys, an std::map might finish a search before an unordered_map would even start its search." -- if the key is not present in the collection. If it is present then of course the full length needs to be compared to confirm the match. But likewise unordered_map needs to confirm a hash match with a full comparison, so it all depends what parts of the lookup process you're contrasting. – Steve Jessop Mar 5 '14 at 14:04
you can usually replace the hash function based on knowledge of the data. for example if your long strings vary more in the last 20 bytes than in the first 100, just hash the last 20. – Erik Aronesty Apr 14 '15 at 14:08

I was intrigued by the answer from @Jerry Coffin, which suggested that the ordered map would exhibit performance increases on long strings, after some experimentation (which can be downloaded from pastebin), I've found that this only seems to hold true for collections of random strings, when the map is initialised with a sorted dictionary (which contain words with considerable amounts of prefix-overlap), this rule breaks down, presumably because of the increased tree depth necessary to retrieve value. The results are shown below, the 1st number column is insert time, 2nd is fetch time.

g++ -g -O3 --std=c++0x   -c -o stdtests.o stdtests.cpp
g++ -o stdtests stdtests.o
gmurphy@interloper:HashTests$ ./stdtests
# 1st number column is insert time, 2nd is fetch time
 ** Integer Keys ** 
 unordered:      137      15
   ordered:      168      81
 ** Random String Keys ** 
 unordered:       55      50
   ordered:       33      31
 ** Real Words Keys ** 
 unordered:      278      76
   ordered:      516     298
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I would just point out that... there are many kind of unordered_maps.

Look up the Wikipedia Article on hash map. Depending on which implementation was used, the characteristics in term of look-up, insertion and deletion might vary quite significantly.

And that's what worries me the most with the addition of unordered_map to the STL: they will have to choose a particular implementation as I doubt they'll go down the Policy road, and so we will be stuck with an implementation for the average use and nothing for the other cases...

For example some hash maps have linear rehashing, where instead of rehashing the whole hash map at once, a portion is rehash at each insertion, which helps amortizing the cost.

Another example: some hash maps use a simple list of nodes for a bucket, others use a map, others don't use nodes but find the nearest slot and lastly some will use a list of nodes but reorder it so that the last accessed element is at the front (like a caching thing).

So at the moment I tend to prefer the std::map or perhaps a loki::AssocVector (for frozen data sets).

Don't get me wrong, I'd like to use the std::unordered_map and I may in the future, but it's difficult to "trust" the portability of such a container when you think of all the ways of implementing it and the various performances that result of this.

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+1: valid point -- life was easier when I was using my own implementation -- at least I knew where it sucked :> – Kornel Kisielewicz Feb 4 '10 at 16:20

Hash tables have higher constants than common map implementations, which become significant for small containers. Max size is 10, 100, or maybe even 1,000 or more? Constants are the same as ever, but O(log n) is close to O(k). (Remember logarithmic complexity is still really good.)

What makes a good hash function depends on your data's characteristics; so if I don't plan on looking at a custom hash function (but can certainly change my mind later, and easily since I typedef damn near everything) and even though defaults are chosen to perform decently for many data sources, I find the ordered nature of map to be enough of a help initially that I still default to map rather than a hash table in that case.

Plus that way you don't have to even think about writing a hash function for other (usually UDT) types, and just write op< (which you want anyway).

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@Roger, do you know the approximate amount of elements at which unordered_map bests map? I'll probably write a test for it though, anyway... (+1) – Kornel Kisielewicz Feb 4 '10 at 2:54
@Kornel: It doesn't take very many; my tests were with about 10,000 elements. If we want a really accurate graph, you could look at an implementation of map and one of unordered_map, with certain platform and certain cache size, and do a complex analysis. :P – GManNickG Feb 4 '10 at 2:58
Depends on implementation details, compile-time tuning parameters (easy to support if you're writing your own implementation), and even the specific machine used for the tests. Just like for the other containers, the committee only sets the broad requirements. – Roger Pate Feb 4 '10 at 2:59

I've made a test recently which makes 50000 merge&sort. That means if the string keys are the same, merge the byte string. And the final output should be sorted. So this includes a look up for every insertion.

For the map implementation, it takes 200 ms to finish the job. For the unordered_map + map, it takes 70 ms for unordered_map insertion and 80 ms for map insertion. So the hybrid implementation is 50 ms faster.

We should think twice before we use the map. If you only need the data to be sorted in the final result of your program, a hybrid solution may be better.

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