I have a 1.3 million row data frame which I need to aggregate into regional and temporal summaries. `Plyr`

's syntax is straightforward, but it's just much too slow to be practical (I've left `ddply`

to run for an hour, and it's completed less than 25%). I'm looking for help translating the `ddply`

syntax into `data.table`

to exploit its vaunted speed.

My data are of the following type

```
library(plyr)
library(lubridate)
dat <- expand.grid(area = letters[1:2],
day = as.Date("2012-10-01") + c(0:10) * days(1),
type = paste("t", 1:2, sep=""))
dat$val <- runif(44)
```

I need row counts (which will be equal here, given my toy data) and sums of the `val`

variable for different periods.

This `ddply`

call gives me what I'm looking for

```
count.and.sum <- function(i){
if(i$day >= as.Date("2012-10-02")){
k <- data.frame(c_1d = nrow(dat[dat$type == i$type &
dat$area == i$area &
dat$day %in% i$day - days(1),]),
c_2d = nrow(dat[dat$type == i$type &
dat$area == i$area &
dat$day %in% (i$day - c(1:2) * days(1)),]),
s_1d = sum(dat$val[dat$type == i$type &
dat$area == i$area &
dat$day %in% i$day - days(1)]),
s_2d = sum(dat$val[dat$type == i$type &
dat$area == i$area &
dat$day %in% (i$day - c(1:2) * days(1))]))
return(k)
}
}
ddply(dat, .(area, day, type), count.and.sum)[1:10,]
```

Would really appreciate any `data.table`

syntax you could provide.