This answer is an expanded version of my earlier comments which I have now deleted.

zoo's `rollapply`

already supports plain vectors and matrices. Furthermore its `rollapply`

routine extracts the plain vectors or matrices from a zoo object before operating on it so there is no reason for a zoo object to take materially longer than a non-zoo object. The slowness you observed was a bug in `rollapply`

(the extraction was not taking place properly) that was fixed in early November in the development version. This version is on R-Forge and installed like this:

```
install.packages("zoo", repo = "http://r-forge.r-project.org")
```

On the other hand, the generality of `rollapply`

means its going to be much slower than special purpose routines or vectorized operations.

zoo does have some specialized versions of `rollapply`

(`rollmean`

, `rollmedian`

, `rollmax`

) that are optimized for particular operations and will be much faster. If you can manufacture something out of those, e.g. a rolling sum of k terms is the same as `k`

times a rolling mean, then you can get substantial speedups. Faster still will be manufacturing the rolling result from plain operations such as `+`

.

The post indicated that the function in question was just an example but the particular function could make a big difference in terms of speed since it will affect whether the sorts of speedups discussed are available.

For example, running 3 replications of each of `rollapply`

, `2 * rollmean`

and a simple vectorized addition shows this:

```
> library(zoo)
> library(rbenchmark)
> n <- 10^4
> set.seed(123)
> a <- rnorm(n)
> library(rbenchmark)
> benchmark(rollapply = a1 <- rollapplyr(a, 2, sum, fill = 0),
+ rollmean = a2 <- 2 * rollmeanr(a, 2, fill = 0),
+ add = a3 <- c(0, a[-1] + a[-n]), replications = 3, order = "relative")
test replications elapsed relative user.self sys.self user.child sys.child
3 add 3 0.00 0.00000 0.00 0 NA NA
2 rollmean 3 0.07 1.00000 0.08 0 NA NA
1 rollapply 3 1.85 26.42857 1.84 0 NA NA
>
> all.equal(a1, a2)
[1] TRUE
> all.equal(a1, a3)
[1] TRUE
```

`rollapply(zoo(SPYTS[, "Close"]), 2, function(x) x[1] + x[2], fill=0, align="right")`

on 1 million data points. This takes never seams to stop calculating. Something like`SPYTS$LnReturns <- (rbind(0, as.data.frame(log(SPYTS[1:(nrow(SPYTS) - 1), "Close"] / SPYTS[2:nrow(SPYTS), "Close"]))))`

just takes a few seconds. – Suminda Sirinath Salpitikorala Nov 25 '11 at 21:35`function(x) x[1] + x[2]`

is just a place holder for testing the line of code. The actual function I have in mind is slightly different. – Suminda Sirinath Salpitikorala Nov 25 '11 at 21:37