Since the question originally had a tag 'bioinformatics' I'll mention the Bioconductor package *IRanges* (and it's companion for ranges on genomes *GenomicRanges*)

```
> library(IRanges)
> xx <- c(1,1,1,1,1,1,0,0,0,0,1,1,1,1)
> sl = slice(Rle(xx), 1)
> sl
Views on a 14-length Rle subject
views:
start end width
[1] 1 6 6 [1 1 1 1 1 1]
[2] 11 14 4 [1 1 1 1]
```

which could be coerced to a matrix, but that would often not be convenient for whatever the next step is

```
> matrix(c(start(sl), end(sl)), ncol=2)
[,1] [,2]
[1,] 1 6
[2,] 11 14
```

Other operations might start on the `Rle`

, e.g.,

```
> xx = c(2,2,2,3,3,3,0,0,0,0,4,4,1,1)
> r = Rle(xx)
> m = cbind(start(r), end(r))[runValue(r) != 0,,drop=FALSE]
> m
[,1] [,2]
[1,] 1 3
[2,] 4 6
[3,] 11 12
[4,] 13 14
```

**See the help page **`?Rle`

for the full flexibility of the `Rle`

class; to go from a matrix like that above to a new Rle as asked in the comment below, one might create a new Rle of appropriate length and then subset-assign using an IRanges as index

```
> r = Rle(0L, max(m))
> r[IRanges(m[,1], m[,2])] = 1L
> r
integer-Rle of length 14 with 3 runs
Lengths: 6 4 4
Values : 1 0 1
```

One could expand this to a full vector

```
> as(r, "integer")
[1] 1 1 1 1 1 1 0 0 0 0 1 1 1 1
```

but often it's better to continue the analysis on the Rle. The class is very flexible, so one way of going from `xx`

to an integer vector of 1's and 0's is

```
> as(Rle(xx) > 0, "integer")
[1] 1 1 1 1 1 1 0 0 0 0 1 1 1 1
```

Again, though, it often makes sense to stay in Rle space. And Arun's answer to your separate question is probably best of all.

**Performance** (speed) is important, although in this case I think the Rle class provides a lot of flexibility that would weigh against poor performance, and ending up at a matrix is an unlikely end-point for a typical analysis. Nonetheles the IRanges infrastructure *is* performant

```
eddi <- function(xx)
matrix(which(diff(c(0,xx,0)) != 0) - c(0,1),
ncol = 2, byrow = TRUE)
iranges = function(xx) {
sl = slice(Rle(xx), 1)
matrix(c(start(sl), end(sl)), ncol=2)
}
iranges.1 = function(xx) {
r = Rle(xx)
cbind(start(r), end(r))[runValue(r) != 0, , drop=FALSE]
}
```

with

```
> xx = sample(c(0, 1), 1e5, TRUE)
> microbenchmark(eddi(xx), iranges(xx), iranges.1(xx), times=10)
Unit: milliseconds
expr min lq median uq max neval
eddi(xx) 45.88009 46.69360 47.67374 226.15084 234.8138 10
iranges(xx) 112.09530 114.36889 229.90911 292.84153 294.7348 10
iranges.1(xx) 31.64954 31.72658 33.26242 35.52092 226.7817 10
```