I am looking to split my dataframe into 2. It looks like this

```
Group Factor vars...
1 A
1 A
3 B
3 B
7 A
7 A
7 A
```

Factor level in the same group is the same. There are ~2000 factor levels. I want to get a random sample that contains every level with ~1/5 the observations of each level and keep whole group when splitting. Like

```
Group Factor vars
1 A
1 A
3 B
3 B
```

and

```
Group Factor vars
7 A
7 A
7 A
```

Edit on what I have searched so far,

sample() doesn't seem to fit my needs because it doesn't keep the observations of groups and I can't specify to guarantee the sample to contain enough of observation for each level.

createDataPartition from caret, and sample.split from ca.Tools, not sure if I am doing it wrong but the functions are asking for a vector instead of dataframe. I ran the examples in the help documentation but they are also returning a vector. The description of sample.split seems to fit exactly what I need though.

To answer my own question, sample.split indeed does what I needed. Instead of using the whole dataframe in the function, use the factor you want to split.

```
selected <- sample.split(df$factor, SplitRatio=1/5, group=df$group)
#returns a vector with the same amount of observations as the df, and true or false of whether each observation is selected by the sample
newdf <- df[selected, ]
```