I am currently trying to use `plyr`

+ `reshape2`

to proccess my data, but it is taking a lot of time.
I have a dataframe (*df*) with 3 columns: **network**, **user_id** and **date**.
My goal is:

- To split
*df*in 2 levels (**network**and**user_id**); - apply a function (
`get_interval`

) in each split; - bind the results in another dataframe (
*df2*).

`get_interval`

returns a vector of the same length as the number of rows of the input.
Thus, *df2* has the same size of *df*, but with the results computed by `get_interval`

.

The problem is that I cannot use `ddply`

directly, since it only handles vectors of equal length and the results of the function have varied length.

I came up with this solution:

```
aux <- melt(dlply(df,.(network,user_id), get_interval))
df2 <- cbind(interval=aux$value,colsplit(aux$L1,"\\.",names=c("network","user_id")))
```

But it is very inefficient, and since *df* is quite big I waste hours every time I have to run it.
Is there a way of doing this more efficiently?

**EDIT**

The basic operation of `get_interval`

is as follows:

```
get_interval <- function(df){
if(nrow(df) < 2)
return (NA)
x <- c(NA,df$date[-1] - df$date[-nrow(df)])
return(x) ## ceiling wont work because some intervals are 0.
}
```

It is possible to generate this data artificially with:

```
n <- 1000000
ref_time <- as.POSIXct("2013-12-17 00:00:00")
interval_range <- 86400*10 # 10 days
df <- data.frame(user_id=floor(runif(n,1,n/10)),
network=gl(2,n,labels=c("anet","unet")),
value=as.POSIXct(ref_time - runif(n,0,interval_range)))
```

networkanduser_id. Give us some idea about your function`foo`

so that it's easy to tell if your bottleneck is your function. – Arun Dec 17 '13 at 0:59