I wondered which of the three suggested methods (plus a fourth one) is the fastest so I did some benchmarking.

`digitsum1 <- function(x) sum(as.numeric(unlist(strsplit(as.character(x), split = ""))))`

`digitsum2 <- function(x) sum(floor(x / 10^(0:(nchar(x) - 1))) %% 10)`

Using function digitsBase from package GLDEX:

```
library(GLDEX, quietly = TRUE)
digitsum3 <- function(x) sum(digitsBase(x, base = 10))
```

Based on a function by Greg Snow in the R-help mailing list:

`digitsum4 <- function(x) sum(x %/% 10^seq(0, length.out = nchar(x)) %% 10)`

Benchmark code:

```
library(microbenchmark, quietly = TRUE)
# define check function
my_check <- function(values) {
all(sapply(values[-1], function(x) identical(values[[1]], x)))
}
x <- 1001L:2000L
microbenchmark(
sapply(x, digitsum1),
sapply(x, digitsum2),
sapply(x, digitsum3),
sapply(x, digitsum4),
times = 100L, check = my_check
)
```

Benchmarks results:

```
#> Unit: milliseconds
#> expr min lq mean median uq max neval
#> sapply(x, digitsum1) 3.41 3.59 3.86 3.68 3.89 5.49 100
#> sapply(x, digitsum2) 3.00 3.19 3.41 3.25 3.34 4.83 100
#> sapply(x, digitsum3) 15.07 15.85 16.59 16.22 17.09 24.89 100
#> sapply(x, digitsum4) 9.76 10.29 11.18 10.56 11.48 45.20 100
```

Variant 2 is slightly faster than variant 1 while variants 4 and 3 are much slower. Although the code of variant 4 seems to be similar to variant 2, variant 4 is less efficient (but still better than variant 3).

Full benchmark results (including graphs) are on github.