This question is very similar to How do you sample random rows within each group in a data.table?.

The difference is in a minor subtlety that I did not have enough reputation to discuss for that question itself.

Let's change Christopher Manning's initial data a little bit:

```
> DT = data.table(a=c(1,1,1,1:15,1,1), b=sample(1:1000,20))
> DT
a b
1: 1 102
2: 1 5
3: 1 658
4: 1 499
5: 2 632
6: 3 186
7: 4 761
8: 5 150
9: 6 423
10: 7 832
11: 8 883
12: 9 247
13: 10 894
14: 11 141
15: 12 891
16: 13 488
17: 14 101
18: 15 677
19: 1 400
20: 1 467
```

If we tried the question's solution:

```
> DT[,.SD[sample(.N,3)],by = a]
Error in sample.int(x, size, replace, prob) :
cannot take a sample larger than the population when 'replace = FALSE'
```

This is because there are values in column a that only occur once. We cannot sample 3 times for values that occur less than three times without using replacement (which we do not want to do).

I am struggling to deal with this scenario. We want to sample 3 times when the number of occurrences is >= 3, but pull the number of occurrences if it is < 3. For example with our DT above we would want:

```
a b
1: 1 102
2: 1 5
3: 1 658
4: 2 632
5: 3 186
6: 4 761
7: 5 150
8: 6 423
9: 7 832
10: 8 883
11: 9 247
12: 10 894
13: 11 141
14: 12 891
15: 13 488
16: 14 101
17: 15 677
```

Maybe a solution could involve `sorting`

the data.table like this, then using `rle()`

`lengths`

to find out which `n`

to use in the sample function above:

```
> DT <- DT[order(DT$a),]
> DT
a b
1: 1 102
2: 1 5
3: 1 658
4: 1 499
5: 1 400
6: 1 467
7: 2 632
8: 3 186
9: 4 761
10: 5 150
11: 6 423
12: 7 832
13: 8 883
14: 9 247
15: 10 894
16: 11 141
17: 12 891
18: 13 488
19: 14 101
20: 15 677
> ifelse(rle(DT$a)$lengths >= 3, 3,rle(DT$a)$lengths)
> [1] 3 1 1 1 1 1 1 1 1 1 1 1 1 1 1
```

If we replace "3" with n, this will return how much we should sample from a=1, a=2, a=3... I have yet to find a way to incorporate this into a final solution. Any help would be appreciated!