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gprof says that my high computing app spends 53% of its time inside std::vector <...> operator [] (unsigned long), 32% of which goes to one heavily used vector. Worse, I suspect that my parallel code failing to scale beyond 3-6 cores is due to a related memory bottleneck. While my app does spend a lot of time accessing and writing memory, it seems like I should be able (or at least try) to do better than 52%. Should I try using dynamic arrays instead (size remains constant in most cases)? Would that be likely to help with possible bottlenecks?

Actually, my preferred solution would be to solve the bottleneck and leave the vectors as is for convenience. Based on the above, are there any likely culprits or solutions (tcmalloc is out)?

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Well, is it taking 53% of one millionth of a nanosecond? If so, it's doing really well. I don't think taking 53% of the time is a bad thing in itself, unless that time is very big. How long is the program taking overall, and related to what? – Seth Carnegie Nov 26 '11 at 7:51
Well, std::vector basically is a dynamic array, so changing that won't do any good. Did you actually compile with optimizations / release mode enabled? – Xeo Nov 26 '11 at 7:52
AFAIK, gprof can't profile inlined code. [] should be inlined, if it's showing up my guess is that it's not. – Pubby Nov 26 '11 at 7:54
@Matt: Optimization is enabled with the -O flag. Default is -O0 (no optimization). Try -O2 (or higher). – Xeo Nov 26 '11 at 8:00
Two things: First: compile with maximum optimizations; asking about performance is utterly meaningless otherwise. Second: make sure your concurrency actually makes sense. Is there a lot of locking going on? – GManNickG Nov 26 '11 at 8:58
up vote 3 down vote accepted

Did you examine your memory access pattern itself? It might be inefficient - cache unfriendly.

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How can I do that? – Matt Munson Nov 26 '11 at 8:06
@Matt Munson: Good question, actually. I don't know of any tools that can help you in doing that, so I can only suggest analyzing the algorithm. – Violet Giraffe Nov 26 '11 at 8:07
What would I look for? what are the characteristics of a cache unfriendly algorithm? – Matt Munson Nov 26 '11 at 8:18
@Matt Munson: memory loves sequential forward access. When you read memory address A, some further addresses are pre-cached. Also, memory is accessed in burst mode in this case, transferring not single elements, but blocks. This all changes if you try reading memory bacwards, even is sequential manner. And there's nothing worse than completely random access of a big memory block. What's the number of elements of your vector, BTW? – Violet Giraffe Nov 26 '11 at 8:24
@MattMunson the obvious things to ask would be how are the iterations performed (to avoid jumping around too much) and how you divided the workload among the different processes (avoid false sharing) The next thing is whether you can cache some of the intermediate results. None of those can be seen in the bit of information that you produced. – David Rodríguez - dribeas Nov 26 '11 at 13:08

Did you try to use raw pointer while array accessing?

// regular place

for (int i = 0; i < arr.size(); ++i)
    wcout << arr[i];

// In bottleneck

int *pArr = &arr.front();

for (int i = 0; i < arr.size(); ++i)
    wcout << pArr[i];
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That will behave exactly the same, as vector<T>::operator[] just forwards to its internal dynamic array. – Xeo Nov 26 '11 at 7:53
@Xeo yeah, but maybe the forwarding is taking a relatively lot of time. Also trying this might rule out the optimisation of just using a dynamic array which the OP was thinking about doing. – Seth Carnegie Nov 26 '11 at 7:53
@SethCarnegie: seconded. I've seen order-of-magnitude speedups between -O0 and -O2, simply because iterator forwarding got inlined. – moshbear Nov 26 '11 at 7:55
@mosh: It doesn't use an iterator internally, just its raw pointer. It's basically return *(ptr + pos);. – Xeo Nov 26 '11 at 7:56
@Xeo: there are still massive speedups when optimization in place. Fast pointer increment and better inlining are two good reasons. Profiling debug builds is somewhat pointless compared to profiling release builds. – moshbear Nov 26 '11 at 7:58

I suspect that gprof prevents functions to be inlined. Try to use another profiling method. std::vector operator [] cannot be bottleneck because it doesn't differ much from raw array access. SGI implementaion is shown below:

reference operator[](size_type __n) { return *(begin() + __n); }
iterator begin() { return _M_start; }
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gprof doesn't prevent anything - compiling with debug symbols and no optimizations is what's preventing the inlining. – Pubby Nov 26 '11 at 8:13
@Pubby: to get things like call graph and exact call counts you need to also instrument functions. This is going to make a HUGE difference on fast executing code (basically making any number you can get out of gprof completely meaningless). – 6502 Nov 26 '11 at 8:18

You cannot trust gprof for high-speed code profiling, you should instead use a passive profiling method like oprofile to get the real picture.

As an alternative you could profile by manual code alteration (e.g. calling a computation 10 times instead of one and checking how much the execution time increases). Note that this is however going to be influenced by cache issues so YMMV.

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I tried oprofile and perf and unfortunately they are not viable on the virtualized (EC2 HPC) machines that are my target platform. I don't suppose there's a convenient way around that? – Matt Munson Nov 26 '11 at 8:08

The vector class is heavily liked and provides a certain amount of convenience, at the expense of performance, which is fine when you don't particularly need performance.

If you really need performance, it won't hurt you too much to bypass the vector class and go directly to a simple old hand-made array, whether statically or dynamically allocated. Then 1) the time you currently spend indexing should essentially disappear, speeding up your app by that amount, and 2) you can move on to whatever the "next big thing" is that takes time in your app.

EDIT: Most programs have a lot more room for speedup than you might suppose. I made a walk-through project to illustrate this. If I can summarize it really quickly, it goes like this:

  • Original time is 2.7 msec per "job" (the number of "jobs" can be varied to get enough run-time to analyze it).

  • First cut showed roughly 60% of time was spent in vector operations, including indexing, appending, and removing. I replaced with a similar vector class from MFC, and time decreased to 1.8 msec/job. (That's a 1.5x or 50% speedup.)

  • Even with that array class, roughly 40% of time was spent in the [] indexing operator. I wanted it to index directly, so I forced it to index directly, not through the operator function. That reduced time to 1.5 msec/job, a 1.2x speedup.

  • Now roughly 60% of the time is adding/removing items in arrays. An additional fraction was spent in "new" and "delete". I decided to chuck the arrays and do two things. One was to use do-it-yourself linked lists, and to pool used objects. The first reduced time to 1.3 msec (1.15x). The second reduced it to 0.44 msec (2.95x).

  • Of that time, I found that about 60% of the time was in code I had written to do indexing into the list (as if it were an array). I decided that could be done instead just by having a pointer directly into the list. Result: 0.14 msec (3.14x).

  • Now I found that nearly all the time was being spent in a line of diagnostic I/O I was printing to the console. I decided to get rid of that: 0.0037 msec (38x).

I could have kept going, but I stopped. The overall time per job was reduced by a compounded factor of about 700x.

What I want you to take away is if you need performance bad enough to deviate from what might be considered the accepted ways of doing things, you don't have to stop after one "bottleneck". Just because you got a big speedup doesn't mean there are no more. In fact the next "bottleneck" might be bigger than the first, in terms of speedup factor. So raise your expectations of speedup you can get, and go for broke.

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What performance expense do you perceive when using std::vector<> with optimizations enabled? I'd warrant that there are none. Profiling code with optimizations disabled is just silly. – ildjarn Nov 29 '11 at 1:27
@ildjarn: You would hope that enabling optimizations would cause [] to be inlined. The problem with that is it's hard to do further sampling. On the other hand you can force it to index directly, without losing the ability to do further sampling. If you lose the ability to do the diagnostic sampling, the progression of speedups stalls. Also, notice that while direct indexing saved time, getting rid of the vectors altogether saved even more time, in this program. – Mike Dunlavey Nov 29 '11 at 1:50
It sounds like you're pointing out the downsides of various profiling approaches moreso than explaining any reason why std::vector<> would be any slower than a plain C-array with optimizations enabled. – ildjarn Nov 29 '11 at 2:50
@ildjarn: Yeah. Suppose there were a contest. Who can write a program to get a specific job done, on a specific machine, in the least time, nothing else being more important? The approach I prefer is to turn on optimization at the end. After I've squeezed out every cycle I can, then let the compiler do its thing. – Mike Dunlavey Nov 29 '11 at 12:57
@ildjarn: See, in the initial version of the program, I used vectors because, well, why not? They work. But it turns out, after some tuning, they were the "bottleneck" and a linked list would save time. That just confirms that different data structures are better under different circumstances. The important thing is how you find out what to fix, and that successive fixes generate compounded speedup factors. – Mike Dunlavey Nov 29 '11 at 13:10

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