I have a simple Fortran program in which the main component is a 4-core OpenMP portion that calculates a dot product

```
OMP_NUM_THREADS=4
...
Do 30 k=1,lines
co(k)=0
si(k)=0
co_temp=0
si_temp=0
!$OMP PARALLEL DO PRIVATE(dotprod,Qcur) REDUCTION(+:co_temp,si_temp)
Do 40 i=1,ION_COUNT
dotprod=(rx(k)*x(i)+ry(k)*y(i)+rz(k)*z(i))*((2*3.1415926535)/l)
co_temp=co_temp+COS(dotprod)*26 !Qcur/Qavg
si_temp=si_temp+SIN(dotprod)*26 !Qcur/Qavg
40 continue
!$OMP END PARALLEL DO
co(k)=co_temp
si(k)=si_temp
q(k)= ( co(k),-si(k) )
s(k)= s(k) +( q(k) * conjg(q(k)) )
r(k)=r(k)+q(k)
30 continue
```

I'm not very experienced with Fortran or its optimization. I'm using xlf90_r file -qsmp=omp to compile. I only get about a 1/2 speedup when using 4 cores, someone else using C has gotten an almost perfect 1/4 speedup doing the same computation. I get about the same amount of time whether the OMP loop is on 30 or 40. Also I time around loop 30 as well as the program as a whole and this loop takes 99.x% of the time, so I'm pretty sure this bit is the bottleneck. Any egregious slow mistakes I've made in this portion that anyone sees?

`1/2`

speed-up is a`2x`

slow-down :-) – Massimiliano May 8 '13 at 19:28