From these questions - Random sample of rows from subset of an R dataframe & Sample random rows in dataframe I can easily see how to randomly sample (select) 'n' rows from a df, or 'n' rows that originate from a specific level of a factor within a df.

Here are some sample data:

```
df <- data.frame(matrix(rnorm(80), nrow=40))
df$color <- rep(c("blue", "red", "yellow", "pink"), each=10)
df[sample(nrow(df), 3), ] #samples 3 random rows from df, without replacement.
```

To e.g. just sample 3 random rows from 'pink' color - using `library(kimisc)`

:

```
library(kimisc)
sample.rows(subset(df, color == "pink"), 3)
```

or writing custom function:

```
sample.df <- function(df, n) df[sample(nrow(df), n), , drop = FALSE]
sample.df(subset(df, color == "pink"), 3)
```

However, I want to sample 3 (or n) random rows from *each level* of the factor. I.e. the new df would have 12 rows (3 from blue, 3 from red, 3 from yellow, 3 from pink). It's obviously possible to run this several times, create newdfs for each color, and then bind them together, but I am looking for a simpler solution.

`data.table`

? – Henrik Aug 29 '17 at 10:45