# Efficient way to add numbers to alphanumeric strings in R

I have a `data.frame` with ids composed of sequences of alphanumeric characters (e.g., `id = c(A001, A002, B013)`). I was looking for an easy function under `stringr` or `stirngi` that would easily do math with this strings (id + 1 should return `c(A002, A003, B014)`).

I made a custom function that does the trick, however I have a feeling that there must be a better/more efficient/within package way to achieve this.

``````str_add_n <- function(df, string, n, width=3){

string <- enquo(string)

## split the string using pattern
df <-  df %>%
separate(!!string,
into = c("text", "num"),
sep = "(?<=[A-Za-z])(?=[0-9])",
remove=FALSE
) %>%
mutate(num = as.numeric(num),
num = num + n,
width = width,
side = "left",
)
) %>%
unite(next_string, text:num, sep = "")

return(df)
}
``````

Let's make a toy `df`

``````df <- data.frame(id = c("A001", "A002", "B013"))
id next_string
1 A001        A002
2 A002        A003
3 B013        B014
``````

Again, this works, I'm wondering if there's a better way to do this, all tweaks welcome!

## UPDATE

Based on the suggested answers I ran some benchmarking and it appears that both come very close, I would be inclined for the `str_add_n_2` (I changed the name to be able to run both, and took the suggestion of `x<-as.character(x)`)

``````microbenchmark::microbenchmark(question = str_add_n(df, id, 1),
``````

Which yields

``````Unit: milliseconds
expr      min       lq     mean   median       uq
question 4.312094 4.448391 4.695276 4.570860 4.755748
answer 2.932146 3.017874 3.191262 3.117627 3.240688
string_add 3.388442 3.466466 3.699363 3.534416 3.682762
max neval cld
10.29253   100   c
8.24967   100 a
9.05441   100  b
``````

More tweaks are welcome!

I'd suggest it's easier to define the function based on a vector of strings and not hard-code it to looking for columns in the frame; for the latter, you can always use something like `mutate_at(vars(id,...), funs(str_add_n))`.

``````str_add_n <- function(x, n = 1L) {
gr <- gregexpr("\\d+", x)
reg <- regmatches(x, gr)
widths <- nchar(reg)
regmatches(x, gr) <- sprintf(paste0("%0", widths, "d"), as.integer(reg) + n)
x
}

vec <- c("A001", "A002", "B013")
# [1] "A002" "A003" "B014"
``````

If in a frame:

``````df <- data.frame(id = c("A001", "A002", "B013"), x = 1:3,
stringsAsFactors = FALSE)
library(dplyr)
df %>%
#     id x
# 1 A004 1
# 2 A005 2
# 3 B016 3
``````

Caveat: this silently requires true `character`, not `factor` ... a possible defensive tactic might be to add `x <- as.character(x)` in the function definition.

Here is a way with `gsubfn`

``````id <- c("A001", "A002", "B013")

library(gsubfn)
gsubfn("([0-9]+)", function(x) sprintf("%03.0f", as.numeric(x) + 1), id)
#[1] "A002" "A003" "B014"
``````

You could make it a function

``````string_add <- function(string, add = 1, width = 3) {
gsubfn::gsubfn("([0-9]+)", function(x) sprintf(paste0("%0", width, ".0f"), as.numeric(x) + add), string)
}