As noted by nico you probably just need to use the `unique`

function. A very simple sampling program is below which ensures that there won't be duplication across the groups (which isn't totally sensible, because you could just create one big sample instead...)

```
# Getting some random values to use here
set.seed(seed = 14412)
thevalues <- sample(x = 1:100,size = 1000,replace = TRUE)
# Obtaining the unique vector of those values
thevalues.unique <- unique(thevalues)
# Create a sample without replacement (i.e. take the ball out and don't put it back in)
sample1 <- sample(x = thevalues.unique,size = 10,replace = FALSE)
# Remove the sampled items from the vector of values
thevalues.unique <- thevalues.unique[!(thevalues.unique %in% sample1)]
# Another sample, and another removal
sample2 <- sample(x = thevalues.unique,size = 10,replace = FALSE)
thevalues.unique <- thevalues.unique[!(thevalues.unique %in% sample2)]
```

To do what eipi10 mentioned and get a weighted distribution, you just need to get the frequency of the distribution first. A way of doing this:

```
set.seed(seed = 14412)
thevalues <- sample(x = 1:100,size = 1000,replace = TRUE,prob = c(rep(0.01,100)))
thevalues.unique <- unique(thevalues)
thevalues.unique <- thevalues.unique[order(thevalues.unique)]
thevalues.probs <- table(thevalues)/length(thevalues)
sample1 <- sample(x = thevalues.unique,
size = 10,
replace = FALSE,
prob = thevalues.probs)
```

`unique`

function springs to mind... – nico May 7 '15 at 21:35`prob`

argument of the`sample`

function to set sampling probabilities that are proportional to the number of times each value appears in your original list. – eipi10 May 7 '15 at 21:42