Say I have a file which contains a few entries like this:

```
02/10/11 10:26:35 AM UTC, 0
02/10/11 10:26:38 AM UTC, 1
02/10/11 10:26:42 AM UTC, 0
```

Is there any straightforward way, in `R`

, to turn this information into a full-length binary timeseries (assuming a one second sampling interval), imputed with zeros and ones?

In this example the series would be: *0 0 0 1 1 1 1 0*

EDIT: Because Dirk and Josh gave unique solutions I wanted to see how they compare in terms of processing time:

```
library(xts)
library(data.table)
library(rbenchmark)
doseq <- function(N,Nby){
base.t <<- Sys.time()
t.seq <<- base.t + seq.int(from=0, to=N, by=Nby)
n.t <<- length(t.seq)
val.seq <<- (1:n.t - 1) %% 2
}
josh <- function(N,Nby=10){
doseq(N,Nby)
dt1 <- data.table(time = t.seq, val=val.seq, key="time")
dt2 <- data.table(time = with(dt1, seq(min(time), max(time), by=1)), key = "time")
dtf <- dt1[dt2, rolltolast = TRUE]
return(dtf)
}
dirk <- function(N,Nby=10){
doseq(N,Nby)
xt1 <- xts(val.seq, t.seq)
secs <- seq(start(xt1), end(xt1), by="1 sec")
xtf <- zoo::na.locf(merge(xt1, xts(, secs)))
return(xtf)
}
bm <- benchmark(josh(1e2,10), josh(1e3,10), josh(1e4,10), josh(1e5,10), josh(1e6,10),
dirk(1e2,10), dirk(1e3,10), dirk(1e4,10), dirk(1e5,10), dirk(1e6,10),
columns=c("test", "replications","elapsed", "relative"),
replications=10)
print(bm)
```

giving:

```
test replications elapsed relative
6 dirk(100, 10) 10 0.024 1.000
7 dirk(1000, 10) 10 0.026 1.083
8 dirk(10000, 10) 10 0.044 1.833
9 dirk(1e+05, 10) 10 0.321 13.375
10 dirk(1e+06, 10) 10 3.342 139.250
1 josh(100, 10) 10 0.034 1.417
2 josh(1000, 10) 10 0.036 1.500
3 josh(10000, 10) 10 0.070 2.917
4 josh(1e+05, 10) 10 0.453 18.875
5 josh(1e+06, 10) 10 5.381 224.208
```

So it seems they aren't too different, but the `xts`

method is somewhat faster than the `data.table`

method.