I am writing a function to combine and organize data then run MCMC chains in parallel using the parallel function in base R. My function is below.

```
dm100zip <- function(y, n.burn = 1, n.it = 3000, n.thin = 1) {
y <- array(c(as.matrix(y[,2:9]), as.matrix(y[ ,10:17])), c(length(y$Plot), 8, 2))
nplots <- nrow(y)
ncap1 <- apply(y[,1:8, 1],1,sum)
ncap2 <- apply(y[,1:8, 2],1,sum)
ncap <- as.matrix(cbind(ncap1, ncap2))
ymax1 <- apply(y[,1:8, 1],1,sum)
ymax2 <- apply(y[,1:8, 2],1,sum)
# Bundle data for JAGS/BUGS
jdata100 <- list(y=y, nplots=nplots, ncap=ncap)
# Set initial values for Gibbs sampler
inits100 <- function(){
list(p0=runif(1, 1.1, 2),
p.precip=runif(1, 0, 0.1),
p.day = runif(1, -.5, 0.1))
}
# Set parameters of interest to monitor and save
params100 <- c("N", "p0")
# Run JAGS in parallel for improved speed
CL <- makeCluster(3) # set number of clusters = to number of desired chains
clusterExport(cl=CL, list("jdata100", "params100", "inits100", "ymax1", "ymax2", "n.burn", "jag", "n.thin")) # make data available to jags in diff cores
clusterSetRNGStream(cl = CL, iseed = 5312)
out <- clusterEvalQ(CL, {
library(rjags)
load.module('glm')
jm <- jags.model("dm100zip.txt", jdata100, inits100, n.adapt = n.burn, n.chains = 1)
fm <- coda.samples(jm, params100, n.iter = n.it, thin = n.thin)
return(as.mcmc(fm))
})
out.list <- mcmc.list(out) # group output from each core into one list
stopCluster(CL)
return(out.list)
}
```

When I run the function I get an error that n.burn, n.it, and n.thin are not found for use in the `clusterExport`

function. For example,

```
dm100zip.list.nain <- dm100zip(NAIN, n.burn = 1, n.it = 3000, n.thin = 1) # returns error
```

If I set values for each of them before running the function, then it uses those values and runs fine. For example,

```
n.burn = 1
n.it = 1000
n.thin = 1
dm100zip.list.nain <- dm100zip(NAIN, n.burn = 1, n.it = 3000, n.thin = 1)
```

This runs fine but uses n.it = 1000 not 3000

Can someone help with why the objects in the global environment are used by the `ClusterExport`

function but not the values assigned by the function that `ClusterExport`

is run within? Is there a way around this?