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# How to access the last value in a vector?

Suppose I have a vector that is nested in a dataframe one or two levels. Is there a quick and dirty way to access the last value, without using the `length()` function? Something ala PERL's `\$#` special var?

So I would like something like:

``````dat\$vec1\$vec2[\$#]
``````

``````dat\$vec1\$vec2[length(dat\$vec1\$vec2)]
``````
-
I am by no means an R expert, but a quick google turned up this: <stat.ucl.ac.be/ISdidactique/Rhelp/library/pastecs/html/…; There appears to be a "last" function. – benefactual Sep 16 '08 at 21:44
– krlmlr Feb 13 '13 at 11:55
MATLAB has the notation "myvariable(end-k)" where k is an integer less than the length of the vector that will return the (length(myvariable)-k)th element. That would be nice to have in R. – EngrStudent Jul 23 '14 at 15:48

I use the `tail()` function:

``````tail(vector, n=1)
``````

The nice thing with `tail()` is that it works on dataframes too, unlike the `x[length(x)]` idiom.

-
however x[length(x[,1]),] works on dataframes or x[dim(x)[1],] – kpierce8 Aug 12 '09 at 20:25
Note that for data frames, length(x) == ncol(x) so that's definitely wrong, and dim(x)[1] can more descriptively be written nrow(x). – hadley Aug 13 '09 at 13:33
@hadley - kpierce8's suggestion of `x[length(x[,1]),]` is not wrong (note the comma in the `x` subset), but it's certainly awkward. – jbaums Apr 28 '15 at 0:38

If you're looking for something as nice as Python's x[-1] notation, I think you're out of luck. The standard idiom is

``````x[length(x)]
``````

but it's easy enough to write a function to do this:

``````last <- function(x) { return( x[length(x)] ) }
``````

This missing feature in R annoys me too!

-
`x[-1]` does perform an arguably more sensible operation in R – James Feb 11 '14 at 15:36
both are sensible or neither are, it's just habit... – PatrickT Dec 13 '14 at 18:56

Combining lindelof's and Gregg Lind's ideas:

``````last <- function(x) { tail(x, n = 1) }
``````

Working at the prompt, I usually omit the "`n=`", i.e. `tail(x, 1)`.

Unlike `last` from the `pastecs` package, `head` and `tail` (from `utils`) work not only on vectors but also on data frames etc., and also can return data "without first/last n elements", e.g.

``````but.last <- function(x) { head(x, n = -1) }
``````

(Note that you have to use `head` for this, instead of `tail`.)

-

I just benchmarked these two approaches on data frame with 663,552 rows using the following code:

``````system.time(
resultsByLevel\$subject <- sapply(resultsByLevel\$variable, function(x) {
s <- strsplit(x, ".", fixed=TRUE)[[1]]
s[length(s)]
})
)

user  system elapsed
3.722   0.000   3.594
``````

and

``````system.time(
resultsByLevel\$subject <- sapply(resultsByLevel\$variable, function(x) {
s <- strsplit(x, ".", fixed=TRUE)[[1]]
tail(s, n=1)
})
)

user  system elapsed
28.174   0.000  27.662
``````

So, assuming you're working with vectors, accessing the length position is significantly faster.

-
Why not testing `tail(strsplit(x,".",fixed=T)[[1]],1)` for the 2nd case? To me the main advantage of the `tail` is that you can write it in one line. ;) – mschilli Jul 7 '14 at 16:05

Another way is to take the first element of the reversed vector:

``````rev(dat\$vect1\$vec2)[1]
``````
-

I have another method for finding the last element in a vector. Say the vector is `a`.

``````> a<-c(1:100,555)
> end(a)      #Gives indices of last and first positions
[1] 101   1
> a[end(a)[1]]   #Gives last element in a vector
[1] 555
``````

There you go!

-

I've put the above suggestions through a microbenchmark:

``````library(microbenchmark)
Rcpp::cppFunction('double last(NumericVector x) { int n = x.size(); return x[n-1]; }')
for (n in c(1e3,1e4,1e5,1e6)) {
x <- runif(n);
print(microbenchmark(tail(x,n=1),
last(x),
x[[end(x)[[1]]]],
x[length(x)],
rev(x)[[1]]))
}
``````

gives me

``````Unit: nanoseconds
expr   min      lq     mean  median      uq   max neval
tail(x, n = 1) 13412 14908.5 16515.84 16053.0 17145.5 37701   100
last(x)  2315  3150.0  3791.43  3710.5  4042.0 15603   100
x[[end(x)[[1]]]] 14850 15810.5 17823.94 17460.0 18485.0 53283   100
x[length(x)]   250   402.5   472.26   487.0   538.0   878   100
rev(x)[[1]] 13196 14148.5 15172.17 14680.0 15049.0 28153   100
Unit: nanoseconds
expr   min      lq     mean  median      uq   max neval
tail(x, n = 1) 10827 12428.5 14406.98 14902.5 15500.0 33981   100
last(x)  2024  2758.5  3251.12  3401.5  3627.0  7331   100
x[[end(x)[[1]]]] 22245 23501.5 24801.37 24683.5 25214.5 61019   100
x[length(x)]   200   423.0   448.80   469.0   505.5   822   100
rev(x)[[1]] 72252 74413.5 75059.54 74963.5 75366.5 96632   100
Unit: nanoseconds
expr    min       lq      mean   median       uq     max neval
tail(x, n = 1)   8459   9788.0  14901.49  14001.5  16989.0   38781   100
last(x)   1498   2260.0   3398.24   3062.0   3860.0    8834   100
x[[end(x)[[1]]]]  95884 103709.0 129822.63 106157.5 109951.5  863248   100
x[length(x)]    178    342.5    435.49    402.0    479.5     983   100
rev(x)[[1]] 508216 534723.5 563657.15 550468.5 581428.0 1343420   100
Unit: nanoseconds
expr     min      lq       mean    median        uq      max neval
tail(x, n = 1)    8712    9929   27796.53   36659.5   41815.0    51768   100
last(x)    1446    1979    7650.59    9709.5   10815.0    13343   100
x[[end(x)[[1]]]] 1222849 1347212 1855905.75 1365886.0 1917885.5 26816272   100
x[length(x)]     197     339    1246.54    1152.5    1982.5     3377   100
rev(x)[[1]] 5276699 5306810 7063420.69 5961484.0 5998397.0 30825281   100
``````

In other words: Since anything that isn't `O(1)` is unacceptable, two solutions are immediately out. In native R, that leaves us with `tail(x, n = 1)` and `x[length(x)]`. The former is slower than the latter by a factor of 30. Even the C++ function `last` (which is rather restrictive and does not handle an empty list properly) is slower than `x[length(x)]`! So I suggest going with that.

-

``````> a <- c(1:100,555)
> a[NROW(a)]
[1] 555
``````
-
I appreciate that `NROW` does what you would expect on a lot of different data types, but it's essentially the same as `a[length(a)]` that OP is hoping to avoid. Using OP's example of a nested vector, `dat\$vec1\$vec2[NROW(dat\$vec1\$vec2)]` is still pretty messy. – Gregor Nov 19 '15 at 19:57

Package `data.table` includes `last` function

``````> library(data.table)
> last(c(1:10))
[1] 10
``````
-
This basically boils down to `x[[length(x)]]` again. – Richard Scriven Jun 7 at 18:53

The dplyr package includes a function `last()`:

``````> last(mtcars\$mpg)
[1] 21.4
``````
-
This basically boils down to `x[[length(x)]]` again. – Richard Scriven Jun 7 at 18:53
Similar under the hood, but with this answer you don't have to write your own function `last()` and store that function somewhere, like several people have done above. You get the improved readability of a function, with the portability of it coming from CRAN so that someone else can run the code. – Sam Firke Jun 7 at 18:58
Can also write as `mtcars\$mpg %>% last`, depending on your preference. – Keith Hughitt Jul 4 at 13:23