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Good afternoon, We are currently using STL multimap and STL set to cache memory mapped file regions. We would like our cache to have only unique entries. We wondering if there is a way for STL set and STL map to be faster than STL multiset and STL multimap for preventing duplicate entries. We are using the following code excerpt to prevent STL multimap and STL set duplicate entries. Is it possible to make this faster? Thank you.

int distance(char* x, char* y,int error){ 
    if (x >= y && (x - y) <= error){ 
        return 0;
    return (x - y);

class MinDist {

    MinDist(char* & p, const int & error){}

    bool operator() (char *  p1, char *  p2 )
      return distance( p1, myPoint, myError) < distance( p2,  myPoint, myError); 

    static char* myPoint;
    static int myError;

std::multiset<Range> ranges_type; 
std::multimap<char *,Range, MinDist> mmultimap;

MinDist::myPoint = TmpPrevMapPtr;
MinDist::myError = MEM_BLOCK_SIZE;

std::pair<I,I> b = mmultimap.equal_range(TmpPrevMapPtr); 
for (I i=b.first; i != b.second; ++i){ 

typedef std::multimap<char*,Range,MinDist>::iterator J;
std::pair<J,J> pr = mmultimap.equal_range(TmpPrevMapPtr); 

erasecount = 0;
J iter = pr.first;
J enditer = pr.second;
for(  ; iter != enditer ; ){ 
    if ((*iter).first == TmpPrevMapPtr){

MinDist::myPoint = 0; 

ranges_type.insert(RangeMultiSet::value_type(n, n + mappedlength,

                   Range(n,n + mappedlength,
share|improve this question
Ugh, soo much to read... in general, a) don't use distance on associative containers, and b) the implementation of set/multiset/map/multimap is virtually identical, so there's very little difference. To check if an entry already exists, just use find or count. –  Kerrek SB Jun 27 '11 at 17:52
Performance aside, if you don't want duplicate entries, using a type that allows duplicate entries seems pretty silly. –  Dennis Zickefoose Jun 27 '11 at 17:53
@Kerrek SB, Thank you for your reply. We believe count() takes O(N) time and find() takes O(log N), If we use a find() or count() before every multiset and multimap insert, would that increase the cost of every insert? Thank you. –  Frank Jun 27 '11 at 18:04
@Dennis Zickefoose, Thank you for your answer. How does one create a type that does not allow duplicate entries? Thank you. –  Frank Jun 27 '11 at 18:06
@Frank: Belief is good, but what is N? N is the number of equal elements (not total number of elements), so that's a trivial difference. Set and multiset are really essentially the same. You're right of course that find is preferable to count in multisets. Beyond that, I really don't understand what you're trying to achieve; if you don't want duplicates, you can use find/count to see if the entry already exists and then act accordingly. –  Kerrek SB Jun 27 '11 at 18:08

3 Answers 3

up vote 1 down vote accepted

There's a lot of stuff to read here, and optimization of the complex container types is a tricky problem. I've spent a fair bit of time working on similar problems, so I'll try to point out some things that have helped me.

Firstly, the usual way to make your code faster is don't use binary trees when vectors will do. The Microsoft STL implementation is going to spend about 14 bytes (3 pointers + short int for red/black flag last I checked) of overhead for each node in your map/set, plus malloc overhead of at least 4 more bytes before it gets around to storing your node data. While I don't know the specifics of your domain too well, memory mapped I/O strikes me as an area where there likely exists a complex but faster vector-based solution. It would require that the number of blocks you map simultaneously is small--if your lookup-table is up to or less than 6,000 bytes, a sorted-array implementation with memmove for insert/erase, and binary_search for lookup will likely be faster in Release mode (and in Debug mode, it'll be faster up to several megabytes, sadly). If the elements are 4-byte pointers, then 6,000 bytes allows for up to 1,500 mapped blocks.

There are times that you simply need to use trees, however. One case is complex nodes (so that construction/destruction is essential) or fairly high element count (so that the O(N) array insertion becomes slower than the malloc cost of O(log n) tree insertion). What can you do here? Note that map/multimap and set/multiset or pretty nearly the same speed; the multi* versions do tend to be a little slower, but only because the code to handle them is a few lines longer.

Anyway, one thing that can help a lot is figuring out how to cut the malloc cost, since every node is going to call malloc/free at some point. Cutting that is difficult--the Release mode allocator is roughly the equivalent of about 50-200 arithmetic operations, so while it's beatable, it takes some effort. You do have some hope, though -- map/set allocations are all identically sized, so a memory pool can work very well. Google is probably a good way to get started; there are many good articles on this topic.

Finally, there's an open source sampling profiler that I have found very helpful -- it's called Very Sleepy, and usually Just Works on Visual Studio projects. If you want to definitely answer whether map/multimap or set/multiset is quicker in your case, that's the main thing I'd point you to. Good luck!

share|improve this answer
@AHelps, Thank you for your thoughtful reply. We tried converting STL trees to sorted vector. In Scott Meyers excellent book, Effective STL, Scott Meyers describes how to do this conversion. However, Scott Meyers solution is optimal for the case where you first sequentially insert into a vector. Then, Scott Meyers says to sort the vector. At this point, Scott Meyers says all accesses to the sorted vector should be read only without any insert. What we found is that if we want to do a insert into the vector again, we have to sort the vector: cost O(N Log N). This is costly. Thank you. –  Frank Jun 27 '11 at 19:43
@AHelps, We agree with you that a profiler is necessary. We converted our C++ Windows class into Linux and we used Callgrind and KCachegrind to profile our code. However, Callgrind runs only with gcc -g and takes 10 to 100 times longer. So when we have a large data set, it can take up to 2 days to profile the code. Thank you. –  Frank Jun 27 '11 at 19:58
@Frank Don't resort when you insert; insertion should be O(N). Shift the vector up one element with memmove or a loop and place the item directly. Secondly, Very Sleepy doesn't have those problems. It is fast (50% of original time, typically), works on Release code, is free, and runs on Windows. –  AHelps Jun 27 '11 at 20:43
@AHelps, Thank you for your suggestions. We may have to your Sorted Vector idea. What is your opinion of using a sorted STL deque doubly linked list to emulalate a STL instead of a sorted STL vector? I am not trying to ask a loaded question. I know there any many different opinions about this subject. Thank you. –  Frank Jun 27 '11 at 20:57
@Ahelps, We found a Fixed Size Block Allocator suite for STL set and map.warp.povusers.org/FSBAllocator. Have you heard about this one? Which memory pool allocator do you recommend for STL set and map? Thank you for your answer, –  Frank Jun 27 '11 at 21:54

Here is a generic situation:

#include <cstddef>   // for size_t
#include <set>       // for std::set
#include <algorithm> // for std::swap
#include <ostream>   // for std::ostream

struct Range
  int start, end; // interpret as [start, end), so Range(n,n) is empty!

  Range(int s, int e) : start(s), end(e)
    if (start > end) std::swap(start, end);

  inline bool operator<(const Range & r) const
    return (start < r.start) || (!(r.start > start) && end < r.end);

  inline size_t size() const { return end - start; }

std::ostream & operator<<(std::ostream & o, const Range & r)
  return o << "[" << r.start << ", " << r.end << ")";

typedef std::set<Range> cache_t;

cache_t::const_iterator findRange(int pos, const cache_t & cache)
  cache_t::const_iterator it = cache.lower_bound(Range(pos, pos)),
                         end = cache.end();

  for ( ; it != end && it->start <= pos ; ++it) // 1
    if (it->end > pos) return it;

  return end;

inline bool inRange(int pos, const cache_t & cache)
  return findRange(pos, cache) != cache.end();

Now you can use findRange(pos, cache) to discover whether a given position is already covered by a range in the cache.

Note that the loop at // 1 is rather efficient as it only starts at the first element where pos could possibly be and stops once pos can no longer be in range. For non-overlapping ranges this will cover at most one range!

share|improve this answer
@Kerrick SB, Thank you for your answer. We will try it now and try to let you know the results either tonight or tomorrow morning, Thank you for your help. –  Frank Jun 27 '11 at 20:06
@Frank: Cool, no worries. I added an output operator for convenient inspection and a check that the start is not larger than the end. –  Kerrek SB Jun 27 '11 at 20:14
@Kerrick SB, I have good news for you. I tried your STL Set code on a large data set and it is 6 percent faster than STL Multiset. Now I will try AHelps memory pool suggestion using the Fixed Size Block Allocator suite for STL set and map http.warp.povusers.org/FSBAllocator. Should we convert the STL multimap mmultimap to a STL Map? Do you have suggestions on how I can avoid suplicate keys with the STL Map similar to your fix for the STL Set? Thank you for your help. –  Frank Jun 28 '11 at 0:46
@Frank: I don't know your project, but the way I'd do it I would never have duplicates in the first place because I'd first check if there's already a mapped range in the cache, so I don't quite understand your need for duplicate detection. I've had good results with tmalloc, you could try that as well (no need to change the code, just modify the loader!). –  Kerrek SB Jun 28 '11 at 0:49
@Kerrek SB, Thank you for your reply, The multimap we are using uses a char * Pointer as the key,Th multimap key is the pointer to th new memory mapped file region returned by MapViewOfFile. We can't control the pointer address returned by MapViewOfFile, but once in a blue moon it returns the same pointer address twice. We want to avoid to checking for duplicates everytime we insert into the multimap because we don't know the time comlexity of multimap.find().That is why we want to use STL map instead. STL map insert should check to see that a duplicate key is not being inserted. Thank you. –  Frank Jun 28 '11 at 1:21
class Range { 
        explicit Range(int item = 0)
        : mLow(item), mHigh(item), mPtr(0), mMapPtr(0) { }

        Range(int low, int high, char* ptr = 0, char * mapptr = 0, int currMappedLength = 0)
        : mLow(low), mHigh(high), mPtr(ptr), mMapPtr(mapptr), mMappedLength(currMappedLength) { }

        Range(const Range& r)
        : mLow(r.mLow), mHigh(r.mHigh), mMapPtr(r.mMapPtr), mMappedLength(r.mMappedLength) { }

        bool operator<(const Range& rhs) const { return mHigh < rhs.mHigh; }

        int   low()       const { return mLow; }   
        int   high()      const { return mHigh; }
        char* getMapPtr() const { return mMapPtr; }
        int getMappedLength() const { return mMappedLength; }

         int mLow;          // beginning of memory mapped file region
         int mHigh;         // end of memory mapped file region 
         char* mMapPtr;     // return value from MapViewOfFile
         int mMappedLength; // length of memory mapped region
share|improve this answer
@Frank: I cleaned up the definition a bit to make it more compact and palatable. Hope that's OK. (We should probably also get rid of the trivial copy constructor, in the spirit of "don't write your own copy constructor".) –  Kerrek SB Jun 27 '11 at 19:18
So what does it mean to "cache a range"? Also, how do you prevent nested regions if you only compare by mHigh? –  Kerrek SB Jun 27 '11 at 19:19
@Kerrek SB, Thank you for cleaning up the definition of a Range. The meaning of "cache a range" is that we try to build a cache of 2000 memory mapped file regions, each with length 131,058 bytes. Each of those 2000 memory mapped file regions is stored in a Range object. When the user requests a pointer memory mapped file region, we look in the cache first. It is faster to retrieve from a STL cache rather than calling MapViewOfFile to obtain a pointer to a file region. Nested regions cannot occur because Range.High = Range.Low + Range.MappedLength. Duplicates are a problem. Thank you. –  Frank Jun 27 '11 at 19:32
@Frank: I could have Range r1(0, 100), r2(20, 30), r3(0,30);. Then r1 and r2 would be nested, though r2 would come before r1 in your ordering, and r3 and r2 would actually compare equal. Perhaps lexicographic comparison on both min and max would be more robust. –  Kerrek SB Jun 27 '11 at 19:45
Also, do you need to be able to look up a matching range object for any arbitrary pointer in the middle, or just for the ends? E.g. are your requests aligned already or could they be arbitrary? –  Kerrek SB Jun 27 '11 at 19:46

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