# Digit sum function in R

I was looking for the quite basic numeric function digit sum in R.

• I did not find a preinstalled function.
• Even in Stackoverflow's extensive R library I did not find a record.

Therefore tried myself ending with following function:

``````# Function to calculate a digit sum
digitsum = function (x) {sum(as.numeric(unlist(strsplit(as.character(x), split="")))) }
``````

I works, but I still struggle with following two questions:

1. Is there really in plain R no function for digit sum?
2. Is there a smarter way to code this function?
• Like DWin said, there's next to no use for this function other than in dusty corners of number theory. You won't find a digit-product function either. Commented Sep 7, 2013 at 20:47

This should be better:

``````digitsum <- function(x) sum(floor(x / 10^(0:(nchar(x) - 1))) %% 10)
``````
• Thanks, even I do not really understand how it works - it works just fine after few tests. Commented Sep 7, 2013 at 16:44
• @user2030503, this typical algorithm would be written using `while` in other programming languages, whereas here we can take advantage of vectorization. I get every digit separately by dividing of some power of 10 and getting a remainder. Look at `x / 10^(0:(nchar(x) - 1))`, then add `floor`, `%% 10` to understand it better. Commented Sep 7, 2013 at 16:55
• Nice solution. I agree with Simon, very clever. Commented Sep 3, 2019 at 14:45

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

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

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

3. Using function digitsBase from package GLDEX:

``````library(GLDEX, quietly = TRUE)
digitsum3 <-  function(x) sum(digitsBase(x, base = 10))
``````
4. 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.

I'm not sure why you would think there would be an inbuilt function to do that. It not really a statistical operation. More of a number theory sort of procedure. (There are many examples that can be found with a search of the Rhelp Archives. I [formerly used] Markmail for that purpose but there are other search engines like RSeek, GMane, and the Newcastle webpage. Now you could search the mail repository by doing a Google search at the canonical R-help repository: https://www.google.com/search?q=site%3Ahttps%3A%2F%2Fstat.ethz.ch%2Fpipermail%2Fr-help%2F Your function would take a series of numbers and return a single number that was the digit sum of all of them. If that were the goal then it looks reasonably designed. I would have guessed that one would want the digit sums from each number:

``````sapply( c(1,2,123),
function(x) sum( as.numeric(unlist(strsplit(as.character(x), split=""))) ))
[1] 1 2 6
``````

There is a "digitizing" funciton digitsBase in pkg:GLDEX, and you could replace your as.numeric(unlist(split(as.character(x),""))) with that function:

``````digitsBase(x, 10)
``````
• Thanks, your hint for Markmail is very helpful. Was not aware of it. Commented Sep 7, 2013 at 16:42
• Sadly MarkMail is no more. Commented Dec 28, 2023 at 22:46

You can get the last digit with `x %% 10L` and remove the last digit with `x %% 10L`. Doing this and summing up the last digit in a loop with `floor(log10(max(x)))` repetitions will give the result.

``````digitsum <- function(x) {
r <- x %% 10L
for(i in seq_len(floor(log10(max(x))))) {
x <- x %/% 10L
r <- r + x %% 10L
}
r
}
digitsum(c(1,2,123))
#[1] 1 2 6
``````

The same in C++ using RCPP.

``````Rcpp::cppFunction("
Rcpp::IntegerVector sod(const Rcpp::IntegerVector& x) { //sum of digits
IntegerVector r(no_init(x.size()));
for(int i=0; i<x.size(); ++i) {
int s = x[i];
r[i] = s % 10;
while(s > 9) {
s /= 10;
r[i] += s % 10;
}
}
return r;
}")
sod(c(1,2,123))
#[1] 1 2 6
``````

Benchmark (taken from @Uwe)

``````x <- 1001L:2000L
digitsum2 <- function(x) sum(floor(x / 10^(0:(nchar(x) - 1))) %% 10)
bench::mark(sapply(x, digitsum2), digitsum(x), sod(x))
#  expression                min   median `itr/sec` mem_alloc gc/se…¹ n_itr  n_gc
#  <bch:expr>           <bch:tm> <bch:tm>     <dbl> <bch:byt>   <dbl> <int> <dbl>
#1 sapply(x, digitsum2)   1.83ms   2.12ms      468.   31.67KB    18.1   207     8
#2 digitsum(x)           18.71µs  19.59µs    50810.   31.62KB    30.5  9994     6
#3 sod(x)                 6.12µs   6.37µs   155482.    6.45KB    15.5  9999     1
``````

What I do for finding the sum of digits in R :

``````x = readline("Enter the number")
a = as.integer(c(strsplit(x,split="")[[1]]))
print((sum(a)))
``````