I am trying to sample a data frame from a given data frame such that there are enough samples from each of the levels of a variable.
This can be achieved by separating the data frame by the levels and sample from each of those .
I thought `ddply`

(data-frame to data-frame) would do it for me.
Taking a minimal example:

```
set.seed(1)
data1 <-data.frame(a=sample(c('B0','B1','B2'),100,replace=TRUE),b=rnorm(100),c=runif(100))
> summary(data1$a)
B0 B1 B2
30 32 38
```

The following commands perform the sampling...

When I enter...

```
data2 <- ddply(data1,c('a'),function(x) sample(x,20,replace=FALSE))
```

I get the following error

```
Error in `[.data.frame`(x, .Internal(sample(length(x), size, replace, :
cannot take a sample larger than the population when 'replace = FALSE'
```

This error is because `x`

inside the `ddply`

function is not a vector but a dataframe.

Does anyone have any idea on how to achieve this sampling?
I know one way is to not use ddply and just do (1) segregation, (2) sampling, and (3) collation in three steps. But I was wondering there must by some way ...with base or `plyr`

functions...

Thank you for your help...

`sample(nrow(x))`

– Andrie Mar 28 '12 at 17:56