I have a function call (to `jags.parallel`

) that works when given a numerical argument like `n.iter = 100`

but fails when the argument uses a variable value, `n.iter = n.iter`

. This looks like it might be a bug in `jags.parallel`

A minimal reproducible example of the error:

```
library(R2jags)
model.file <- system.file(package="R2jags", "model", "schools.txt")
J <- 8.0
y <- c(28.4,7.9,-2.8,6.8,-0.6,0.6,18.0,12.2)
sd <- c(14.9,10.2,16.3,11.0,9.4,11.4,10.4,17.6)
jags.data <- list("y","sd","J")
jags.params <- c("mu","sigma","theta")
jags.inits <- function(){
list("mu"=rnorm(1),"sigma"=runif(1),"theta"=rnorm(J))
}
```

Then this works:

```
jagsfit.p <- jags.parallel(data=jags.data, inits=jags.inits, jags.params,
n.iter=5000, model.file=model.file)
```

But this does not:

```
n.iter=5000
jagsfit.p <- jags.parallel(data=jags.data, inits=jags.inits, jags.params,
n.iter=n.iter, model.file=model.file)
```

Giving the error:

```
Error in checkForRemoteErrors(lapply(cl, recvResult)) :
3 nodes produced errors; first error: object 'n.iter' not found
```

I gather this has something to do with not exporting the variable `n.iter`

to the cluster, but it is not clear what parallel engine jags.parallel is using. Is there any way to trick R to evaluate `n.iter`

before passing it to the function?