# how to achieve 4 FLOPs per cycle

How can the theoretical peak performance of 4 floating point operations (double precision) per cycle be achieved on a modern x86-64 Intel cpu?

As far as I understand it take 3 cycles for an sse `add` and 5 cycles for a `mul` to complete on most of the modern Intel cpu's (see e.g. Agner Fog's 'Instruction Tables' ). Due to pipelining one can get a throughput of 1 `add` per cycle if the algorithm has at least 3 independent summations. Since that is true for packed `addpd` as well as the scalar `addsd` versions and sse registers can contain 2 `double`'s the throughput can be as much as 2 flops per cycle. Furthermore it seems (although I've not seen any proper doc on this) `add`'s and `mul`'s can be executed in parallel giving a theoretical max throughput of 4 flops per cycle.

However, I've not been able to replicate that performance with a simple c/c++ programme. My best attempt resulted in about 2.7 flops/cycle. If anyone can contribute a simple c/c++ or assembler programme which demonstrates peak performance that'd be greatly appreciated.

My attempt:

``````#include <stdio.h>
#include <stdlib.h>
#include <math.h>
#include <sys/time.h>

double stoptime(void) {
struct timeval t;
gettimeofday(&t,NULL);
return (double) t.tv_sec + t.tv_usec/1000000.0;
}

// need to initialise differently otherwise compiler might optimise away
double sum1=0.1, sum2=-0.1, sum3=0.2, sum4=-0.2, sum5=0.0;
double mul1=1.0, mul2= 1.1, mul3=1.2, mul4= 1.3, mul5=1.4;
int loops=ops/10;          // we have 10 floating point ops inside the loop
double expected = 5.0*add*loops + (sum1+sum2+sum3+sum4+sum5)
+ pow(mul,loops)*(mul1+mul2+mul3+mul4+mul5);

for(int i=0; i<loops; i++) {
mul1*=mul; mul2*=mul; mul3*=mul; mul4*=mul; mul5*=mul;
}
return  sum1+sum2+sum3+sum4+sum5+mul1+mul2+mul3+mul4+mul5 - expected;
}

int main(int argc, char** argv) {
if(argc!=2) {
printf("usage: %s <num>\n", argv[0]);
printf("number of operations: <num> millions\n");
exit(EXIT_FAILURE);
}
int n=atoi(argv[1])*1000000;
if(n<=0) n=1000;

double x=M_PI;
double y=1.0+1e-8;
double t=stoptime();
t=stoptime()-t;
printf("addmul:\t %.3f s, %.3f Gflops, res=%f\n",t,(double)n/t/1e9,x);

return EXIT_SUCCESS;
}
``````

Compiled with

``````g++ -O2 -march=native addmul.cpp ; ./a.out 1000
``````

produces the following output on an Intel Core i5-750, 2.66 GHz

``````addmul:  0.270 s, 3.707 Gflops, res=1.326463
``````

i.e. just about 1.4 flops per cycle. Looking at the assembler code with `g++ -S -O2 -march=native -masm=intel addmul.cpp` the main loop seems kind of optimal to me:

``````.L4:
inc eax
mulsd   xmm8, xmm3
mulsd   xmm7, xmm3
mulsd   xmm6, xmm3
mulsd   xmm5, xmm3
mulsd   xmm1, xmm3
cmp eax, ebx
jne .L4
``````

Changing the scalar versions with packed versions (`addpd` and `mulpd`) would double the flop count without changing the execution time and so I'd get just short of 2.8 flops per cycle. Any simple example which achieves 4 flops per cycle?

Edit:

Nice little programme by Mysticial, here are my results (run just for a few seconds though):

• `gcc -O2 -march=nocona`: 5.6 Gflops out of 10.66 Gflops (2.1 flops/cycle)
• `cl /O2`, openmp removed: 10.1 Gflops out of 10.66 Gflops (3.8 flops/cycle)

It all seems a bit complex but my conclusions so far:

• `gcc -O2` changes the order of independent floating point operations with the aim of alternating `addpd` and `mulpd`'s if possible. Same applies to `gcc-4.6.2 -O2 -march=core2`.

• `gcc -O2 -march=nocona` seems to keep the order of fp operations as defined in the C++ source.

• `cl /O2`, the 64-bit compiler from the SDK for Windows 7 does loop-unrolling automatically and seems to try and arrange operations so that groups of 3 `addpd`'s alternate with 3 `mulpd`'s (well at least on my system and for my simple programme).

• My Core i5 750 (Nahelem architecture) doesn't like alternating add's and mul's and seems unable to run both ops in parallel. However, if grouped in 3's it suddenly works like magic.

• Other architectures (possibly Sandy Bridge and others) appear to be able to execute add/mul in parallel without problems if they alternate in the assembly code.

• Although difficult to admit, but on my system `cl /O2` does a much better job at low level optimising operations for my system and achieves close to peak performance for the little c++ example above. I measured between 1.85-2.01 flops/cycle (have used clock() in Windows which is not that precise I guess, need to use a better timer - thanks Mackie Messer).

• The best I managed with `gcc` was to manually loop unroll and arrange additions and multiplications in groups of three. With `g++ -O2 -march=nocona addmul_unroll.cpp` I get at best `0.207s, 4.825 Gflops` which corresponds to 1.8 flops/cycle which I'm quite happy with now.

In the c++ code I've replaced the `for` loop with

``````   for(int i=0; i<loops/3; i++) {
mul1*=mul; mul2*=mul; mul3*=mul;
mul4*=mul; mul5*=mul; mul1*=mul;

mul2*=mul; mul3*=mul; mul4*=mul;
mul5*=mul; mul1*=mul; mul2*=mul;

mul3*=mul; mul4*=mul; mul5*=mul;
}
``````

and the assembly now looks like

``````.L4:
mulsd   xmm8, xmm3
mulsd   xmm7, xmm3
mulsd   xmm6, xmm3
mulsd   xmm5, xmm3
mulsd   xmm1, xmm3
mulsd   xmm8, xmm3
...
``````
-
mmmmmm. Low-level processor optimization complete with metrics and native assembly language... I get excited by the strangest things. –  e.James Dec 5 '11 at 18:01
Relying on wallclock time is probably part of the cause. Assuming you're running this inside of an OS like Linux, it is free to deschedule your process at any time. That sort of external event can impact your performance measurements. –  proc-self-maps Dec 5 '11 at 18:54
I think you just became my favorite unnamed user. –  Skyler Saleh Dec 6 '11 at 0:21
Btw, this is the most upvoted question in the past 14 days. Nice Job! :) –  Mysticial Dec 6 '11 at 20:09
@Grizzly `-funroll-loops` is probably something to try. But I think `-ftree-vectorize` is besides the point. The OP is trying just to sustain 1 mul + 1 add instruction/cycle. The instructions can be scalar or vector - it doesn't matter since the latency and throughput are the same. So if you can sustain 2/cycle with scalar SSE, then you can replace them with vector SSE and you'll achieve 4 flops/cycle. In my answer I did just that going from SSE -> AVX. I replaced all the SSE with AVX - same latencies, same throughputs, 2x the flops. –  Mysticial Jan 20 '12 at 9:26

I've done this exact task before. But it was mainly to measure power consumption and CPU temperatures. The following code (which is fairly long) achieves close to optimal on my Core i7 2600K.

The key thing to note here is the massive amount of manual loop-unrolling as well as interleaving of multiplies and adds...

The full project can be found on my GitHub: https://github.com/Mysticial/Flops

# Warning:

If you decide to compile and run this, pay attention to your CPU temperatures!!!
Make sure you don't overheat it. And make sure CPU-throttling doesn't affect your results!

Furthermore, I take no responsibility for whatever damage that may result from running this code.

Notes:

• This code is optimized for x64. x86 doesn't have enough registers for this to compile well.
• This code has been tested to work well on Visual Studio 2010/2012 and GCC 4.6.
ICC 11 (Intel Compiler 11) surprisingly has trouble compiling it well.
• These are for pre-FMA processors. In order to achieve peak FLOPS on Intel Haswell and AMD Bulldozer processors (and later), FMA (Fused Multiply Add) instructions will be needed. These are beyond the scope of this benchmark.

``````#include <emmintrin.h>
#include <omp.h>
#include <iostream>
using namespace std;

typedef unsigned long long uint64;

double test_dp_mac_SSE(double x,double y,uint64 iterations){
register __m128d r0,r1,r2,r3,r4,r5,r6,r7,r8,r9,rA,rB,rC,rD,rE,rF;

//  Generate starting data.
r0 = _mm_set1_pd(x);
r1 = _mm_set1_pd(y);

r8 = _mm_set1_pd(-0.0);

r2 = _mm_xor_pd(r0,r8);
r3 = _mm_or_pd(r0,r8);
r4 = _mm_andnot_pd(r8,r0);
r5 = _mm_mul_pd(r1,_mm_set1_pd(0.37796447300922722721));
r6 = _mm_mul_pd(r1,_mm_set1_pd(0.24253562503633297352));
r7 = _mm_mul_pd(r1,_mm_set1_pd(4.1231056256176605498));
rA = _mm_sub_pd(r0,_mm_set1_pd(4.1231056256176605498));
rB = _mm_sub_pd(r1,_mm_set1_pd(4.1231056256176605498));

rC = _mm_set1_pd(1.4142135623730950488);
rD = _mm_set1_pd(1.7320508075688772935);
rE = _mm_set1_pd(0.57735026918962576451);
rF = _mm_set1_pd(0.70710678118654752440);

__m128d vONE = _mm_set1_pd(1.0);

uint64 c = 0;
while (c < iterations){
size_t i = 0;
while (i < 1000){
//  Here's the meat - the part that really matters.

r0 = _mm_mul_pd(r0,rC);
r2 = _mm_mul_pd(r2,rE);
r3 = _mm_sub_pd(r3,rF);
r4 = _mm_mul_pd(r4,rC);
r6 = _mm_mul_pd(r6,rE);
r7 = _mm_sub_pd(r7,rF);
r8 = _mm_mul_pd(r8,rC);
rA = _mm_mul_pd(rA,rE);
rB = _mm_sub_pd(rB,rF);

r1 = _mm_mul_pd(r1,rE);
r2 = _mm_sub_pd(r2,rD);
r3 = _mm_mul_pd(r3,rC);
r5 = _mm_mul_pd(r5,rE);
r6 = _mm_sub_pd(r6,rD);
r7 = _mm_mul_pd(r7,rC);
r9 = _mm_mul_pd(r9,rE);
rA = _mm_sub_pd(rA,rD);
rB = _mm_mul_pd(rB,rC);

r0 = _mm_mul_pd(r0,rC);
r2 = _mm_mul_pd(r2,rE);
r3 = _mm_sub_pd(r3,rF);
r4 = _mm_mul_pd(r4,rC);
r6 = _mm_mul_pd(r6,rE);
r7 = _mm_sub_pd(r7,rF);
r8 = _mm_mul_pd(r8,rC);
rA = _mm_mul_pd(rA,rE);
rB = _mm_sub_pd(rB,rF);

r1 = _mm_mul_pd(r1,rE);
r2 = _mm_sub_pd(r2,rD);
r3 = _mm_mul_pd(r3,rC);
r5 = _mm_mul_pd(r5,rE);
r6 = _mm_sub_pd(r6,rD);
r7 = _mm_mul_pd(r7,rC);
r9 = _mm_mul_pd(r9,rE);
rA = _mm_sub_pd(rA,rD);
rB = _mm_mul_pd(rB,rC);

i++;
}

//  Need to renormalize to prevent denormal/overflow.
r0 = _mm_or_pd(r0,vONE);
r1 = _mm_or_pd(r1,vONE);
r2 = _mm_or_pd(r2,vONE);
r3 = _mm_or_pd(r3,vONE);
r4 = _mm_or_pd(r4,vONE);
r5 = _mm_or_pd(r5,vONE);
r6 = _mm_or_pd(r6,vONE);
r7 = _mm_or_pd(r7,vONE);
r8 = _mm_or_pd(r8,vONE);
r9 = _mm_or_pd(r9,vONE);
rA = _mm_or_pd(rA,vONE);
rB = _mm_or_pd(rB,vONE);

c++;
}

double out = 0;
__m128d temp = r0;
out += ((double*)&temp)[0];
out += ((double*)&temp)[1];

return out;
}

void test_dp_mac_SSE(int tds,uint64 iterations){

double *sum = (double*)malloc(tds * sizeof(double));
double start = omp_get_wtime();

{
double ret = test_dp_mac_SSE(1.1,2.1,iterations);
}

double secs = omp_get_wtime() - start;
uint64 ops = 48 * 1000 * iterations * tds * 2;
cout << "Seconds = " << secs << endl;
cout << "FP Ops  = " << ops << endl;
cout << "FLOPs   = " << ops / secs << endl;

double out = 0;
int c = 0;
while (c < tds){
out += sum[c++];
}

cout << "sum = " << out << endl;
cout << endl;

free(sum);
}

int main(){
test_dp_mac_SSE(8,10000000);

system("pause");
}
``````

Output (1 thread, 10000000 iterations) - Compiled with Visual Studio 2010 SP1 - x64 Release:

``````Seconds = 55.5104
FP Ops  = 960000000000
FLOPs   = 1.7294e+010
sum = 2.22652
``````

The machine is a Core i7 2600K @ 4.4 GHz. Theoretical SSE peak is 4 flops * 4.4 GHz = 17.6 GFlops. This code achieves 17.3 GFlops - not bad.

Output (8 threads, 10000000 iterations) - Compiled with Visual Studio 2010 SP1 - x64 Release:

``````Seconds = 117.202
FP Ops  = 7680000000000
FLOPs   = 6.55279e+010
sum = 17.8122
``````

Theoretical SSE peak is 4 flops * 4 cores * 4.4 GHz = 70.4 GFlops. Actual is 65.5 GFlops.

## Let's take this one step further. AVX...

``````#include <immintrin.h>
#include <omp.h>
#include <iostream>
using namespace std;

typedef unsigned long long uint64;

double test_dp_mac_AVX(double x,double y,uint64 iterations){
register __m256d r0,r1,r2,r3,r4,r5,r6,r7,r8,r9,rA,rB,rC,rD,rE,rF;

//  Generate starting data.
r0 = _mm256_set1_pd(x);
r1 = _mm256_set1_pd(y);

r8 = _mm256_set1_pd(-0.0);

r2 = _mm256_xor_pd(r0,r8);
r3 = _mm256_or_pd(r0,r8);
r4 = _mm256_andnot_pd(r8,r0);
r5 = _mm256_mul_pd(r1,_mm256_set1_pd(0.37796447300922722721));
r6 = _mm256_mul_pd(r1,_mm256_set1_pd(0.24253562503633297352));
r7 = _mm256_mul_pd(r1,_mm256_set1_pd(4.1231056256176605498));
rA = _mm256_sub_pd(r0,_mm256_set1_pd(4.1231056256176605498));
rB = _mm256_sub_pd(r1,_mm256_set1_pd(4.1231056256176605498));

rC = _mm256_set1_pd(1.4142135623730950488);
rD = _mm256_set1_pd(1.7320508075688772935);
rE = _mm256_set1_pd(0.57735026918962576451);
rF = _mm256_set1_pd(0.70710678118654752440);

__m256d vONE = _mm256_set1_pd(1.0);

uint64 c = 0;
while (c < iterations){
size_t i = 0;
while (i < 1000){
//  Here's the meat - the part that really matters.

r0 = _mm256_mul_pd(r0,rC);
r2 = _mm256_mul_pd(r2,rE);
r3 = _mm256_sub_pd(r3,rF);
r4 = _mm256_mul_pd(r4,rC);
r6 = _mm256_mul_pd(r6,rE);
r7 = _mm256_sub_pd(r7,rF);
r8 = _mm256_mul_pd(r8,rC);
rA = _mm256_mul_pd(rA,rE);
rB = _mm256_sub_pd(rB,rF);

r1 = _mm256_mul_pd(r1,rE);
r2 = _mm256_sub_pd(r2,rD);
r3 = _mm256_mul_pd(r3,rC);
r5 = _mm256_mul_pd(r5,rE);
r6 = _mm256_sub_pd(r6,rD);
r7 = _mm256_mul_pd(r7,rC);
r9 = _mm256_mul_pd(r9,rE);
rA = _mm256_sub_pd(rA,rD);
rB = _mm256_mul_pd(rB,rC);

r0 = _mm256_mul_pd(r0,rC);
r2 = _mm256_mul_pd(r2,rE);
r3 = _mm256_sub_pd(r3,rF);
r4 = _mm256_mul_pd(r4,rC);
r6 = _mm256_mul_pd(r6,rE);
r7 = _mm256_sub_pd(r7,rF);
r8 = _mm256_mul_pd(r8,rC);
rA = _mm256_mul_pd(rA,rE);
rB = _mm256_sub_pd(rB,rF);

r1 = _mm256_mul_pd(r1,rE);
r2 = _mm256_sub_pd(r2,rD);
r3 = _mm256_mul_pd(r3,rC);
r5 = _mm256_mul_pd(r5,rE);
r6 = _mm256_sub_pd(r6,rD);
r7 = _mm256_mul_pd(r7,rC);
r9 = _mm256_mul_pd(r9,rE);
rA = _mm256_sub_pd(rA,rD);
rB = _mm256_mul_pd(rB,rC);

i++;
}

//  Need to renormalize to prevent denormal/overflow.
r0 = _mm256_or_pd(r0,vONE);
r1 = _mm256_or_pd(r1,vONE);
r2 = _mm256_or_pd(r2,vONE);
r3 = _mm256_or_pd(r3,vONE);
r4 = _mm256_or_pd(r4,vONE);
r5 = _mm256_or_pd(r5,vONE);
r6 = _mm256_or_pd(r6,vONE);
r7 = _mm256_or_pd(r7,vONE);
r8 = _mm256_or_pd(r8,vONE);
r9 = _mm256_or_pd(r9,vONE);
rA = _mm256_or_pd(rA,vONE);
rB = _mm256_or_pd(rB,vONE);

c++;
}

double out = 0;
__m256d temp = r0;
out += ((double*)&temp)[0];
out += ((double*)&temp)[1];
out += ((double*)&temp)[2];
out += ((double*)&temp)[3];

return out;
}

void test_dp_mac_AVX(int tds,uint64 iterations){

double *sum = (double*)malloc(tds * sizeof(double));
double start = omp_get_wtime();

{
double ret = test_dp_mac_AVX(1.1,2.1,iterations);
}

double secs = omp_get_wtime() - start;
uint64 ops = 48 * 1000 * iterations * tds * 4;
cout << "Seconds = " << secs << endl;
cout << "FP Ops  = " << ops << endl;
cout << "FLOPs   = " << ops / secs << endl;

double out = 0;
int c = 0;
while (c < tds){
out += sum[c++];
}

cout << "sum = " << out << endl;
cout << endl;

free(sum);
}

int main(){
test_dp_mac_AVX(8,10000000);

system("pause");
}
``````

Output (1 thread, 10000000 iterations) - Compiled with Visual Studio 2010 SP1 - x64 Release:

``````Seconds = 57.4679
FP Ops  = 1920000000000
FLOPs   = 3.34099e+010
sum = 4.45305
``````

Theoretical AVX peak is 8 flops * 4.4 GHz = 35.2 GFlops. Actual is 33.4 GFlops.

Output (8 threads, 10000000 iterations) - Compiled with Visual Studio 2010 SP1 - x64 Release:

``````Seconds = 111.119
FP Ops  = 15360000000000
FLOPs   = 1.3823e+011
sum = 35.6244
``````

Theoretical AVX peak is 8 flops * 4 cores * 4.4 GHz = 140.8 GFlops. Actual is 138.2 GFlops.

Now for some explanations:

The performance critical part is obviously the 48 instructions inside the inner loop. You'll notice that it's broken into 4 blocks of 12 instructions each. Each of these 12 instructions blocks are completely independent from each other - and take on average 6 cycles to execute.

So there's 12 instructions and 6 cycles between issue-to-use. The latency of multiplication is 5 cycles, so it's just enough to avoid latency stalls.

The normalization step is needed to keep the data from over/underflowing. This is needed since the do-nothing code will slowly increase/decrease the magnitude of the data.

So it's actually possible to do better than this if you just use all zeros and get rid of the normalization step. However, since I wrote the benchmark to measure power consumption and temperature, I had to make sure the flops were on "real" data, rather than zeros - as the execution units may very well have special case-handling for zeros that use less power and produce less heat.

## More Results:

• Intel Core i7 920 @ 3.5 GHz
• Windows 7 Ultimate x64
• Visual Studio 2010 SP1 - x64 Release

``````Seconds = 72.1116
FP Ops  = 960000000000
FLOPs   = 1.33127e+010
sum = 2.22652
``````

Theoretical SSE Peak: 4 flops * 3.5 GHz = 14.0 GFlops. Actual is 13.3 GFlops.

``````Seconds = 149.576
FP Ops  = 7680000000000
FLOPs   = 5.13452e+010
sum = 17.8122
``````

Theoretical SSE Peak: 4 flops * 4 cores * 3.5 GHz = 56.0 GFlops. Actual is 51.3 GFlops.

My processor temps hit 76C on the multi-threaded run! If you runs these, be sure the results aren't affected by CPU throttling.

• 2 x Intel Xeon X5482 Harpertown @ 3.2 GHz
• Ubuntu Linux 10 x64
• GCC 4.5.2 x64 - (-O2 -msse3 -fopenmp)

``````Seconds = 78.3357
FP Ops  = 960000000000
FLOPs   = 1.22549e+10
sum = 2.22652
``````

Theoretical SSE Peak: 4 flops * 3.2 GHz = 12.8 GFlops. Actual is 12.3 GFlops.

``````Seconds = 78.4733
FP Ops  = 7680000000000
FLOPs   = 9.78676e+10
sum = 17.8122
``````

Theoretical SSE Peak: 4 flops * 8 cores * 3.2 GHz = 102.4 GFlops. Actual is 97.9 GFlops.

-
I know it's a model number, but I did a double-take when I saw "2600K" near "CPU temperatures". –  Simon Dec 5 '11 at 22:11
Your results are very impressive. I've compiled your code with g++ on my older system but don't get nearly as good results: 100k iterations, `1.814s, 5.292 Gflops, sum=0.448883` out of a peak 10.68 Gflops or just short of 2.0 flops per cycle. Seems `add`/`mul` are not executed in parallel. When I change your code and always add/multiply with the same register, say `rC`, it suddenly achieves almost peak: `0.953s, 10.068 Gflops, sum=0` or 3.8 flops/cycle. Very strange. –  user1059432 Dec 6 '11 at 0:26
Yes, since I'm not using inline assembly, the performance is indeed very sensitive to the compiler. The code I have here has been tuned for VC2010. And if I recall correctly, the Intel Compiler gives just as good results. As you have noticed, you may have to tweak it a bit to get it to compile well. –  Mysticial Dec 6 '11 at 0:30
I can confirm your results on Windows 7 using `cl /O2` (64-bit from windows sdk) and even my example runs close to peak for scalar operations (1.9 flops/cycle) there. The compiler loop-unrolls and reorders but that might not be the reason need to look into this a bit more. Throttling not a problem I'm nice to my cpu and keep iterations at 100k. :) –  user1059432 Dec 6 '11 at 18:03
@Mysticial: It showed up on the r/coding subreddit today. –  greyfade Feb 7 '13 at 6:04

There's a point in the Intel architecture that people often forget, the dispatch ports are shared between Int and FP/SIMD. This means that you will only get a certain amount of bursts of FP/SIMD before the loop logic will create bubbles in your floating point stream. Mystical got more flops out of his code, because he used longer strides in his unrolled loop.

If you look at the Nehalem/Sandy Bridge architecture here http://www.realworldtech.com/page.cfm?ArticleID=RWT091810191937&p=6 it's quite clear what happens.

In contrast, it should be easier to reach peak performance on AMD (Bulldozer) as the INT and FP/SIMD pipes have separate issue ports with their own scheduler.

This is only theoretical as I have neither of these processors to test.

-
There are only three instructions of loop overhead: `inc`, `cmp`, and `jl`. All of these can go to port #5 and don't interfere with either vectorized `fadd` or `fmul`. I would rather suspect that the decoder (sometimes) gets into the way. It needs to sustain between two and three instructions per cycle. I don't remember the exact limitations but instruction length, prefixes and alignment come all into play. –  Mackie Messer Dec 6 '11 at 16:30
`cmp` and `jl` certainly go to port 5, `inc` not so sure as it comes always in group with the 2 others. But you are right, it's hard to tell where the bottleneck is and the decoders can also be part of it. –  tristopia Dec 6 '11 at 17:07
I played around a bit with the basic loop: the ordering of the instructions does matter. Some arrangements take 13 cycles instead of the minimal 5 cycles. Time to look at the performance event counters I guess... –  Mackie Messer Dec 6 '11 at 18:01

Branches can definitely keep you from sustaining peak theoretical performance. Do you see a difference if you manually do some loop-unrolling? For example, if you put 5 or 10 times as many ops per loop iteration:

``````for(int i=0; i<loops/5; i++) {
mul1*=mul; mul2*=mul; mul3*=mul; mul4*=mul; mul5*=mul;
mul1*=mul; mul2*=mul; mul3*=mul; mul4*=mul; mul5*=mul;
mul1*=mul; mul2*=mul; mul3*=mul; mul4*=mul; mul5*=mul;
mul1*=mul; mul2*=mul; mul3*=mul; mul4*=mul; mul5*=mul;
mul1*=mul; mul2*=mul; mul3*=mul; mul4*=mul; mul5*=mul;
}
``````
-
I may be mistaken, but I believe g++ with -O2 will attempt to automatically unwind the loop (I think it uses Duff's Device). –  Weaver Dec 5 '11 at 18:13
Yes, thanks indeed it improves somewhat. I now get about 4.1-4.3 Gflops, or 1.55 flops per cycle. And no, in this example -O2 didn't loop unroll. –  user1059432 Dec 5 '11 at 18:37
Weaver is correct about loop unrolling, I believe. So manually unrolling is probably not necessary –  jim mcnamara Dec 5 '11 at 18:40
See assembly output above, there are no signs of loop unrolling. –  user1059432 Dec 5 '11 at 18:42
Automatic unrolling also improves to average of 4.2 Gflops, but requires `-funroll-loops` option which is not even included in `-O3`. See `g++ -c -Q -O2 --help=optimizers | grep unroll`. –  user1059432 Dec 5 '11 at 18:55

Using Intels icc Version 11.1 on a 2.4GHz Intel Core 2 Duo I get

``````Macintosh:~ mackie\$ icc -O3 -mssse3 -oaddmul addmul.cc && ./addmul 1000
addmul:  0.105 s, 9.525 Gflops, res=0.000000
Macintosh:~ mackie\$ icc -v
Version 11.1
``````

That is very close to the ideal 9.6 Gflops.

EDIT:

Oops, looking at the assembly code it seems that icc not only vectorized the multiplication, but also pulled the additions out of the loop. Forcing a stricter fp semantics the code is no longer vectorized:

``````Macintosh:~ mackie\$ icc -O3 -mssse3 -oaddmul addmul.cc -fp-model precise && ./addmul 1000
addmul:  0.516 s, 1.938 Gflops, res=1.326463
``````

EDIT2:

As requested:

``````Macintosh:~ mackie\$ clang -O3 -mssse3 -oaddmul addmul.cc && ./addmul 1000
addmul:  0.209 s, 4.786 Gflops, res=1.326463
Macintosh:~ mackie\$ clang -v
Apple clang version 3.0 (tags/Apple/clang-211.10.1) (based on LLVM 3.0svn)
Target: x86_64-apple-darwin11.2.0
``````

The inner loop of clang's code looks like this:

``````        .align  4, 0x90
LBB2_4:                                 ## =>This Inner Loop Header: Depth=1
mulsd   %xmm2, %xmm0
mulsd   %xmm2, %xmm6
mulsd   %xmm2, %xmm7
mulsd   %xmm2, %xmm11
mulsd   %xmm2, %xmm13
incl    %eax
cmpl    %r14d, %eax
jl      LBB2_4
``````

EDIT3:

Finally, two suggestions: First, if you like this type of benchmarking, consider using the `rdtsc` instruction istead of `gettimeofday(2)`. It is much more accurate and delivers the time in cycles, which is usually what you are interested in anyway. For gcc and friends you can define it like this:

``````#include <stdint.h>

static __inline__ uint64_t rdtsc(void)
{
uint64_t rval;
__asm__ volatile ("rdtsc" : "=A" (rval));
return rval;
}
``````

Second, you should run your benchmark program several times and use the best performance only. In modern operating systems many things happen in parallel, the cpu may be in a low frequency power saving mode, etc. Running the program repeatedly gives you a result that is closer to the ideal case.

-
and what does the disassembly look like ? –  Bahbar Dec 5 '11 at 20:46
Interesting, that's less than 1 flop/cycle. Does the compiler mix the `addsd`'s and `mulsd`'s or are they in groups as in my assembly output? I also get just about 1 flop/cycle when the compiler mixes them (which I get without `-march=native`). How does the performance change if you add a line `add=mul;` at the beginning of the function `addmul(...)`? –  user1059432 Dec 6 '11 at 9:40
@user1059432: The `addsd` and `subsd` instructions are indeed mixed in the precise version. I tried clang 3.0 too, it doesn't mix instructions and it comes very close to 2 flops/cycle on the core 2 duo. When i run the same code on my laptops core i5, mixing the code makes no difference. I get about 3 flops/cycle in either case. –  Mackie Messer Dec 6 '11 at 13:16
@user1059432: In the end it is all about tricking the compiler into generating "meaningful" code for a synthetic benchmark. This is harder than it seems at first look. (i.e. icc outsmarts your benchmark) If all you want is to run some code at 4 flops/cycle the easiest thing is to write a small assembly loop. Much less headake. :-) –  Mackie Messer Dec 6 '11 at 13:30
Ok, so you get close to 2 flops/cycle with an assembly code similar to what I've quoted above? How close to 2? I only get 1.4 so that's significant. I don't think you get 3 flops/cycle on your laptop unless the compiler does optimisations as you've seen with `icc` before, can you double check the assembly? –  user1059432 Dec 6 '11 at 14:27