You have to firstly define `mymean`

as a vector variable having `n`

elements. Then, store your each mean value at each iteration into `mymean`

's appropriate index. Do not forget to add the index of `mymean`

when printing the result to the console.

```
set.seed(89235)
values <- c(10, 5, 10, 25, 50, 100, 500, 1000)
n <- length(values)
mymean <- vector(length = n)
for (i in 1:n){
mymean[i]<- mean(rnorm(values[i], mean=0, sd=1))
cat("sample size:",values[i],"mean:", mymean[i], fill=TRUE)
}
(mymean)
```

A simpler approach is to use `sapply`

function.

```
set.seed(89235)
values <- c(10, 5, 10, 25, 50, 100, 500, 1000)
mymean <- sapply(values, function(input) {
mean.value <- mean(rnorm(input, mean=0, sd=1))
cat("sample size:",input,"mean:", mean.value, fill=TRUE)
return(mean.value)
})
(mymean)
```