I am trying to use the doParallel and foreach package but I'm getting reduction in performance using the bootstrapping example in the guide found here CRANpage.

```
library(doParallel)
library(foreach)
registerDoParallel(3)
x <- iris[which(iris[,5] != "setosa"), c(1,5)]
trials <- 10000
ptime <- system.time({
r <- foreach(icount(trials), .combine=cbind) %dopar% {
ind <- sample(100, 100, replace=TRUE)
result1 <- glm(x[ind,2]~x[ind,1], family=binomial(logit))
coefficients(result1)
}
})[3]
ptime
```

This example returns `56.87`

.

When I change the `dopar`

to just `do`

to run it sequentially instead of in parallel, it returns `36.65`

.

If I do `registerDoParallel(6)`

it gets the parallel time down to `42.11`

but is still slower than sequentially. `registerDoParallel(8)`

gets `40.31`

still worse than sequential.

If I increase `trials`

to 100,000 then the sequential run takes `417.16`

and the parallel run with 3 workers takes `597.31`

. With 6 workers in parallel it takes `425.85`

.

My system is

Dell Optiplex 990

Windows 7 Professional 64-bit

16GB RAM

Intel i-7-2600 3.6GHz Quad-core with hyperthreading

Am I doing something wrong here? If I do the most contrived thing I can think of (replacing computational code with `Sys.sleep(1)`

) then I get an actual reduction closely proportionate to the number of workers. I'm left wondering why the example in the guide decreases performance for me while for them it sped things up?