I have a cpu-consuming code, where some function with a loop is executed many times. Every optimization in this loop brings noticeable performance gain. Question: How would you optimize this loop (there is not much more to optimize though...)?

void theloop(int64_t in[], int64_t out[], size_t N)
    for(uint32_t i = 0; i < N; i++) {
        int64_t v = in[i];
        max += v;
        if (v > max) max = v;
        out[i] = max;

I tried a few things, e.g. I replaced arrays with pointers that were incremented in every loop, but (surprisingly) i lost some performance instead of gaining...


  • changed name of one variable (itsMaximums, error)
  • the function is an a method of a class
  • in and put are int64_t , so are negative and positive
  • `(v > max) can evaluate to true: consider the situation when actual max is negative
  • the code runs on 32-bit pc (development) and 64-bit (production)
  • N is unknown at compile time
  • I tried some SIMD, but I failed to increase performance... (the overhead of moving the variables to _m128i, executing and storing back was higher than than SSE speed gain. Yet I am not an expert on SSE, so maybe I had a poor code)


I added some loop unfolding, and a nice hack from Alex'es post. Below I paste some results:

  1. original: 14.0s
  2. unfolded loop (4 iterations): 10.44s
  3. Alex'es trick: 10.89s
  4. 2) and 3) at once: 11.71s

strage, that 4) is not faster than 3) and 4). Below code for 4):

for(size_t i = 1; i < N; i+=CHUNK) {
    int64_t t_in0 = in[i+0];
    int64_t t_in1 = in[i+1];
    int64_t t_in2 = in[i+2];
    int64_t t_in3 = in[i+3];

    max &= -max >> 63;
    max += t_in0;
    out[i+0] = max;

    max &= -max >> 63;
    max += t_in1;
    out[i+1] = max;

    max &= -max >> 63;
    max += t_in2;
    out[i+2] = max;

    max &= -max >> 63;
    max += t_in3;
    out[i+3] = max;

  • 2
    Is this your actual code? Is itsMaximums a global? Are the numbers in the in array both positive and negative? – Retired Ninja Nov 15 '11 at 8:35
  • where is itsMaximums defined? – Geoffroy Nov 15 '11 at 8:36
  • 1
    Not performance related but why is N a size_t and i an uint32_t? – Francesco Nov 15 '11 at 8:52
  • 3
    @JakubM.: get a 64-bit machine to test on. It's meaningless to perform low-level optimizations like these if you're testing on a completely different instruction set than it's going to use in production. The generated code is going to be quite different when targeting a 64-bit machine, and that's what you should try to optimize – jalf Nov 15 '11 at 9:38
  • 1
    @JakubM. 6502 just mentioned in chat, that with CUDA there is a pattern (known as scan) that efficiently does an operation similar to yours. See developer.nvidia.com/cuda-cc-sdk-code-samples#scan - I think it might interest you if you still have the goal of optimizing this further (more background) – sehe Mar 7 '12 at 22:04
> #**Announcement** see [chat](https://chat.stackoverflow.com/rooms/5056/discussion-between-sehe-and-jakub-m) > > _Hi Jakub, what would you say if I have found a version that uses a heuristic optimization that, for random data distributed uniformly will result in ~3.2x speed increase for `int64_t` (10.56x effective using `float`s)?_ > I have yet to find the time to update the post, but the explanation and code can be found through the chat.
> I used the same test-bed code (below) to verify that the results are correct and exactly match the original implementation from your OP
   **Edit**: ironically... that testbed had a fatal flaw, which rendered the results invalid: the heuristic version was in fact skipping parts of the input, but because existing output wasn't being cleared, it appeared to have the correct output... (still editing...)

Ok, I have published a benchmark based on your code versions, and also my proposed use of partial_sum.

Find all the code here https://gist.github.com/1368992#file_test.cpp


For a default config of

#define MAGNITUDE     20
#define ITERATIONS    1024
#define VERBOSE       0

#define LIMITED_RANGE 0    // hide difference in output due to absense of overflows
#define USE_FLOATS    0

It will (see output fragment here):

  • run 100 x 1024 iterations (i.e. 100 different random seeds)
  • for data length 1048576 (2^20).
  • The random input data is uniformly distributed over the full range of the element data type (int64_t)
  • Verify output by generating a hash digest of the output array and comparing it to the reference implementation from the OP.


There are a number of (surprising or unsurprising) results:

  1. there is no significant performance difference between any of the algorithms whatsoever (for integer data), provided you are compiling with optimizations enabled. (See Makefile; my arch is 64bit, Intel Core Q9550 with gcc-4.6.1)

  2. The algorithms are not equivalent (you'll see hash sums differ): notably the bit fiddle proposed by Alex doesn't handle integer overflow in quite the same way (this can be hidden defining

    #define LIMITED_RANGE 1

    which limits the input data so overflows won't occur; Note that the partial_sum_incorrect version shows equivalent C++ non-bitwise _arithmetic operations that yield the same different results:

    return max<0 ? v :  max + v; 

    Perhaps, it is ok for your purpose?)

  3. Surprisingly It is not more expensive to calculate both definitions of the max algorithm at once. You can see this being done inside partial_sum_correct: it calculates both 'formulations' of max in the same loop; This is really not more than a triva here, because none of the two methods is significantly faster...

  4. Even more surprisingly a big performance boost can be had when you are able to use float instead of int64_t. A quick and dirty hack can be applied to the benchmark

    #define USE_FLOATS    0

    showing that the STL based algorithm (partial_sum_incorrect) runs aproximately 2.5x faster when using float instead of int64_t (!!!).

    • that the naming of partial_sum_incorrect only relates to integer overflow, which doesn't apply to floats; this can be seen from the fact that the hashes match up, so in fact it is partial_sum_float_correct :)
    • that the current implementation of partial_sum_correct is doing double work that causes it to perform badly in floating point mode. See bullet 3.
  5. (And there was that off-by-1 bug in the loop-unrolled version from the OP I mentioned before)

Partial sum

For your interest, the partial sum application looks like this in C++11:

std::partial_sum(data.begin(), data.end(), output.begin(), 
        [](int64_t max, int64_t v) -> int64_t
            max += v;
            if (v > max) max = v;
            return max;
  • the algorithm does not calculate sums and max(sums). the condition if (v > max) max = v is important, it is a part of a larger algorithm. – Jakub M. Nov 15 '11 at 14:13
  • Great answer! I noticed that using the single-line form of the function (2) is not really correct. Although, I noticed that using it increased the performance by ~40% (and I still got proper results) – Jakub M. Nov 16 '11 at 9:32
  • Wow, congratulations on going the extra mile and actually implementing things! Regarding int64_t vs float, it might be a cache effect: float is only 32 bits wide (double is 64 bits wide). – Matthieu M. Nov 16 '11 at 15:02
  • @MatthieuM.: yeah that's what I suspect. I'll probably update my post only tonight (wait wait better yet, let me just hold onto that until a bonus appears - wink wink :)). I'd love to get some real life test data first, actually. The heuristic can certainly be improved, this was just my first stab at one. – sehe Nov 16 '11 at 15:17
  • Since overflow of signed numbers results in undefined behavior your second point is only circumstantial. As soon as the result overflows all bets are off. – Voo Nov 16 '11 at 15:42

First, you need to look at the generated assembly. Otherwise you have no way of knowing what actually happens when this loop is executed.

Now: is this code running on a 64-bit machine? If not, those 64-bit additions might hurt a bit.

This loop seems an obvious candidate for using SIMD instructions. SSE2 supports a number of SIMD instructions for integer arithmetics, including some that work on two 64-bit values.

Other than that, see if the compiler properly unrolls the loop, and if not, do so yourself. Unroll a couple of iterations of the loop, and then reorder the hell out of it. Put all the memory loads at the top of the loop, so they can be started as early as possible.

For the if line, check that the compiler is generating a conditional move, rather than a branch.

Finally, see if your compiler supports something like the restrict/__restrict keyword. It's not standard in C++, but it is very useful for indicating to the compiler that in and out do not point to the same addresses.

Is the size (N) known at compile-time? If so, make it a template parameter (and then try passing in and out as references to properly-sized arrays, as this may also help the compiler with aliasing analysis)

Just some thoughts off the top of my head. But again, study the disassembly. You need to know what the compiler does for you, and especially, what it doesn't do for you.


with your edit:

max &= -max >> 63;
max += t_in0;
out[i+0] = max;

what strikes me is that you added a huge dependency chain. Before the result can be computed, max must be negated, the result must be shifted, the result of that must be and'ed together with its original value, and the result of that must be added to another variable.

In other words, all these operations have to be serialized. You can't start one of them before the previous has finished. That's not necessarily a speedup. Modern pipelined out-of-order CPUs like to execute lots of things in parallel. Tying it up with a single long chain of dependant instructions is one of the most crippling things you can do. (Of course, it if can be interleaved with other iterations, it might work out better. But my gut feeling is that a simple conditional move instruction would be preferable)

  • 4
    +1 for studying the generated code. Doing optimizations at this small scale without knowing what optimizations the compiler is doing behind your back is like driving blind. – R. Martinho Fernandes Nov 15 '11 at 9:37
  • unrolling gave some improvement, from 2.0 sec to 1.8 sec (unrolled 10 iterations) – Jakub M. Nov 15 '11 at 10:20
  • IME, unrolling is only the first step. Once you've unrolled the code, that gives you much more room to reorder the code. So play around and see how much further you can push it – jalf Nov 15 '11 at 10:52
  • @jalf: after unrolling, do I have much "field of maneuver" here? What I can do is to load it at the beginning, but I cannot reorder too much those three lines starting from max += v, because each iteration here depends on the previous one – Jakub M. Nov 15 '11 at 11:34
  • no, you're right, that limits your options quite a bit. But even so, play around, experiment. Sometimes, fiddling with the code can give pretty surprising results. Something that looks wasteful (say, recomputing expressions several times, or doing multiple computations based on estimated data, and then at the end selecting the correct one) might actually turn out faster, if it breaks up dependency chains and gives the CPU more breathing room – jalf Nov 16 '11 at 9:47

Sometimes, you need to step backward and look over it again. The first question is obviously, do you need this ? Could there be an alternative algorithm that would perform better ?

That being said, and supposing for the sake of this question that you already settled on this algorithm, we can try and reason about what we actually have.

Disclaimer: the method I am describing is inspired by the successful method Tim Peters used to improve the traditional introsort implementation, leading to TimSort. So please bear with me ;)

1. Extracting Properties

The main issue I can see is the dependency between iterations, which will prevent much of the possible optimizations and thwart many attempts at parallelizing.

int64_t v = in[i];
max += v;
if (v > max) max = v;
out[i] = max;

Let us rework this code in a functional fashion:

max = calc(in[i], max);
out[i] = max;


int64_t calc(int64_t const in, int64_t const max) {
  int64_t const bumped = max + in;
  return in > bumped ? in : bumped;

Or rather, a simplified version (baring overflow since it's undefined):

int64_t calc(int64_t const in, int64_t const max) {
  return 0 > max ? in : max + in;

Do you notice the tip point ? The behavior changes depending on whether the ill-named(*) max is positive or negative.

This tipping point makes it interesting to watch the values in in more closely, especially according to the effect they might have on max:

  • max < 0 and in[i] < 0 then out[i] = in[i] < 0
  • max < 0 and in[i] > 0 then out[i] = in[i] > 0
  • max > 0 and in[i] < 0 then out[i] = (max + in[i]) ?? 0
  • max > 0 and in[i] > 0 then out[i] = (max + in[i]) > 0

(*) ill-named because it is also an accumulator, which the name hides. I have no better suggestion though.

2. Optimizing operations

This leads us to discover interesting cases:

  • if we have a slice [i, j) of the array containing only negative values (which we call negative slice), then we could do a std::copy(in + i, in + j, out + i) and max = out[j-1]
  • if we have a slice [i, j) of the array containing only positive values, then it's a pure accumulation code (which can easily be unrolled)
  • max gets positive as soon as in[i] is positive

Therefore, it could be interesting (but maybe not, I make no promise) to establish a profile of the input before actually working with it. Note that the profile could be made chunk by chunk for large inputs, for example tuning the chunk size based on the cache line size.

For references, the 3 routines:

void copy(int64_t const in[], int64_t out[],
          size_t const begin, size_t const end)
  std::copy(in + begin, in + end, out + begin);
} // copy

void accumulate(int64_t const in[], int64_t out[],
                size_t const begin, size_t const end)
  assert(begin != 0);

  int64_t max = out[begin-1];

  for (size_t i = begin; i != end; ++i) {
    max += in[i];
    out[i] = max;
} // accumulate

void regular(int64_t const in[], int64_t out[],
             size_t const begin, size_t const end)
  assert(begin != 0);

  int64_t max = out[begin - 1];

  for (size_t i = begin; i != end; ++i)
    max = 0 > max ? in[i] : max + in[i];
    out[i] = max;

Now, supposing that we can somehow characterize the input using a simple structure:

struct Slice {
  enum class Type { Negative, Neutral, Positive };
  Type type;
  size_t begin;
  size_t end;

typedef void (*Func)(int64_t const[], int64_t[], size_t, size_t);

Func select(Type t) {
  switch(t) {
  case Type::Negative: return &copy;
  case Type::Neutral: return &regular;
  case Type::Positive: return &accumulate;

void theLoop(std::vector<Slice> const& slices, int64_t const in[], int64_t out[]) {
  for (Slice const& slice: slices) {
    Func const f = select(slice.type);
    (*f)(in, out, slice.begin, slice.end);

Now, unless introsort the work in the loop is minimal, so computing the characteristics might be too costly as is... however it leads itself well to parallelization.

3. Simple parallelization

Note that the characterization is a pure function of the input. Therefore, supposing that you work in a chunk per chunk fashion, it could be possible to have, in parallel:

  • Slice Producer: a characterizer thread, which computes the Slice::Type value
  • Slice Consumer: a worker thread, which actually executes the code

Even if the input is essentially random, providing the chunk is small enough (for example, a CPU L1 cache line) there might be chunks for which it does work. Synchronization between the two threads can be done with a simple thread-safe queue of Slice (producer/consumer) and adding a bool last attribute to stop consumption or by creating the Slice in a vector with a Unknown type, and having the consumer block until it's known (using atomics).

Note: because characterization is pure, it's embarrassingly parallel.

4. More Parallelization: Speculative work

Remember this innocent remark: max gets positive as soon as in[i] is positive.

Suppose that we can guess (reliably) that the Slice[j-1] will produce a max value that is negative, then the computation on Slice[j] are independent of what preceded them, and we can start the work right now!

Of course, it's a guess, so we might be wrong... but once we have fully characterized all the Slices, we have idle cores, so we might as well use them for speculative work! And if we're wrong ? Well, the Consumer thread will simply gently erase our mistake and replace it with the correct value.

The heuristic to speculatively compute a Slice should be simple, and it will have to be tuned. It may be adaptative as well... but that may be more difficult!


Analyze your dataset and try to find if it's possible to break dependencies. If it is you can probably take advantage of it, even without going multi-thread.

  • Great answer. Unfortunately a bit too much hinges on slicing / source profile. Still I really like the way you worded what I have been pondering myself. I'm not sure I could have done such good job - clearly not in the same timespan. – sehe Nov 15 '11 at 15:56
  • @Matthieu: I like the analysis! Precious hints, even for further algorithms – Jakub M. Nov 15 '11 at 23:13
  • Just using calc in this short, single line form, reduced execution times by ~40% – Jakub M. Nov 16 '11 at 9:27
  • @JakubM.: out of curiosity, what compiler and options are you using? My benchmark compares those options and they come out as perfectly equivalent in performance (see benchmarks). Using calc should, IMO, not make any difference on an optimizing compiler (it does clarify the code, though) – sehe Nov 16 '11 at 12:26
  • 1
    @JakubM.: I am surprised that it did have an influence! I only rewrote it for clarity. I would have thought the branchless version faster... but then it's hard to predict what optimizers do :) – Matthieu M. Nov 16 '11 at 12:36

If values of max and in[] are far away from 64-bit min/max (say, they are always between -261 and +261), you may try a loop without the conditional branch, which may be causing some perf degradation:

for(uint32_t i = 1; i < N; i++) {
    max &= -max >> 63; // assuming >> would do arithmetic shift with sign extension
    max += in[i];
    out[i] = max;

In theory the compiler may do a similar trick as well, but without seeing the disassembly, it's hard to tell if it does it.

  • Interesting! It seems to work for tested (simple) cases. aren't the limits actually +- 2^60 , instead of 61? And it gave boost comparable to unfolding the loop. someones -1 is not deserved – Jakub M. Nov 15 '11 at 10:24
  • 2
    Why 60? That's 3 orders to min/max, which is 63. Overflows become possible when numbers get to half min/max, hence 62. And then I take off one more to be on a safe side, so 61. What if you have both, unrolling and this? – Alexey Frunze Nov 15 '11 at 10:30
  • my mistake with that 63 : ) I tried the times, strange that your hack and loop unfolding they work separately well, and used at once they do not accumulate the gain. I added some results to the main topic – Jakub M. Nov 15 '11 at 10:48
  • Alex, can you please explain how this has the same effect as the conditional branch? Because I don't get it :) – Ville Krumlinde Nov 15 '11 at 19:22
  • 1
    @VilleKrumlinde: The original loop is equivalent to if (max<0) max=0; max+=in[i]; out[i]=max;. If a signed integer is less than 0, then the result of shifting it right by its width-1 positions will (on most platforms) have all bits set to 1. Otherwise it'll have all bits set to 0. This gives us if (max<0) mask=0xFF...FF; else mask=0; and after this we can do max &= ~mask; to achieve the same result as in if (max<0) max = 0. I compensate ~ by inverting the condition, inserting - before max in if. – Alexey Frunze Nov 15 '11 at 20:48

The code appears already pretty fast. Depending on the nature of the in array, you could try special casing, for instance if you happen to know that in a particular invokation all the input numbers are positive, out[i] will be equal to the cumulative sum, with no need for an if branch.

  • 1
    fast is a very relative notion. You probably mean, it cannot be improved much. I have published some benchmarks, and it is quite depressing to see that the algorithm takes ~5000ms to complete, while using boost::hash_range to create a checksum over the same data takes roughly 3ms :) – sehe Nov 16 '11 at 10:01
  • sehe you are right that fast without qualification is not very meaningful. What I meant is "the code is correct and doesn't exhibit obvious inefficiencies". The various good answers (yours included obviously) show that improving on it probably is going to require a more or less drastic rewrite, taking advantage of sophisticated analysis and possibly becoming less portable. It will also probably become less understandable. My suggestion has the only value of being very simple but is clearly not good enough and if the OP really needs to optimize he will have to go the full way. – Francesco Nov 16 '11 at 13:04

ensuring the method isn't virtual, inline, _attribute_((always_inline)) and -funroll-loops seem like good options to explore.

Only by you benchmarking them can we determine if they were worthwhile optimizations in your bigger program.


The only thing that comes to mind that might help a small bit is to use pointers rather than array indices within your loop, something like

void theloop(int64_t in[], int64_t out[], size_t N)
    int64_t max = in[0];
    out[0] = max;
    int64_t *ip = in + 1,*op = out+1;

    for(uint32_t i = 1; i < N; i++) {
        int64_t v = *ip; 
        max += v;
        if (v > max) max = v;
        *op = max;

The thinking here is that an index into an array is liable to compile as taking the base address of the array, multiplying the size of element by the index, and adding the result to get the element address. Keeping running pointers avoids this. I'm guessing a good optimizing compiler will do this already, so you'd need to study the current assembler output.

  • @Autopopulated, hence the comment to look at the compiler output. IME, expecting the optimizer will do something for you and acting on that expectation often does not lead to the expected results. – SmacL Nov 15 '11 at 9:09
  • 3
    Neil Butterworth has recently written a blog on benchmarking using just that optimization as example. – Björn Pollex Nov 15 '11 at 9:19
  • Thanks Bjorn, entertaining article – SmacL Nov 15 '11 at 9:23
int64_t max = 0, i;

for(i=N-1; i > 0; --i) /* Comparing with 0 is faster */  
    max = in[i] > 0 ? max+in[i] : in[i];
    out[i] = max;

    --i;  /* Will reduce checking of i>=0 by N/2 times */  

    max = in[i] > 0 ? max+in[i] : in[i]; /* Reduce operations v=in[i], max+=v by N times */  
    out[i] = max;         

if(0 == i) /* When N is odd */
    max = in[i] > 0 ? max+in[i] : in[i]; 
    out[i] = max;
  • altering the behaviour/outcome is likely not acceptable for the OP :) – sehe Nov 15 '11 at 15:58
  • there is no alteration of the outcome in this logic – paper.plane Nov 17 '11 at 6:03
  • So now, -1: out of 100 randomized tests on arrays of length 8 containing values from [-3,+3], only 3 came out accidentally right – sehe Nov 17 '11 at 8:09
  • Performance: it is using 1.5% more time to produce profoundly wrong output. (full disclosure: code and data) – sehe Nov 17 '11 at 8:36

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.