# Generate unique alphanumeric IDs

I have a data frame and I want to add to it a column that contains not duplicated alphanumeric values.

Firstly, I adapted a function that I found on a blog. (https://ryouready.wordpress.com/2008/12/18/generate-random-string-name/)

``````idGenerator <- function(n, lengthId) {

alphaNum <- c(0:9, letters, LETTERS)

if (n > length(alphaNum)^lengthId) {
return("Error! n > perms : Infinite loop")
}

idList <- rep(NULL, n)

for (i in 1:n) {
idList[i] <- paste(sample(alphaNum,
lengthId, replace = TRUE), collapse = "")
while(idList[i] %in% idList[-i]) {
idList[i] <- paste(sample(alphaNum,
lengthId, replace = TRUE), collapse = "")
}
}

return(idList)
}
``````

My problem is that my dataframe has about 250k rows so with n = 250k this function is just running for ever. I know that with n = 250k, if I increase the length of the id string (`lengthId`) the odds to get the same string are unrealistic so the `while` loop is such a waste of ressources but I really need to be sure that will not happen, I mean "sure" with control structures.

So I found a more efficient way to do it, instead of calling a `while` and checking all the vector for each `i` in the loop, I check if there is duplicated in the final vector :

``````idGenerator <- function(n, lengthId) {

alphaNum <- c(0:9, letters, LETTERS)

if (n > length(alphaNum)^lengthId) {
return("Error! n > perms : Infinite loop")
}

idList <- 1:n

for (i in 1:n) {
idList[i] <- paste(sample(alphaNum,
lengthId, replace = TRUE), collapse = "")
}

while(any(duplicated(idList))) {
idList[which(duplicated(idList))] <- paste(sample(alphaNum, lengthId,
replace = TRUE), collapse = "")
}

return(idList)
}
``````

It's very slow if the `while` must run a lot of times => When n is very close to the number of permutations.

``````> system.time(idGenerator(62^2, 2))
utilisateur     système     écoulé
8.00            0.00        8.02

> system.time(idGenerator(62^3, 3))

Timing stopped at: 584.35 16.66 602.46
``````

But it's quite acceptable for a long id string :

``````> system.time(idGenerator(250000, 12))
utilisateur     système     écoulé
3.2             0.0         3.2
``````

However it's still 3sec+ to create a column so I'm looking for a faster way. I know that the loop isn't so good and I should prefer vectorization but I'm not realy a master of code optimization. So if you have any ideas, thank you in advance.

• Have you tried `stri_rand_strings` from the "stringi" package? – A5C1D2H2I1M1N2O1R2T1 Apr 15 '15 at 14:03

I would suggest looking at the `stri_rand_strings` function from the "stringi" package:

``````library(stringi)
stri_rand_strings(10, 3)
#  "wsm" "FvH" "UXm" "14t" "rvv" "Pfo" "mzK" "20b" "O9P" "ZOr"
system.time(X <- stri_rand_strings(250000, 12))
#    user  system elapsed
#   0.327   0.003   0.333
length(unique(X))
#  250000
• Great function, I didn't know about it. Thank you. I just added the duplicated control : `idGenerator <- function(n, lengthId) { idList <- stringi::stri_rand_strings(n, lengthId, pattern = "[A-Za-z0-9]") while(any(duplicated(idList))) { idList[which(duplicated(idList))] <- stringi::stri_rand_strings(sum(duplicated(idList), na.rm = TRUE), lengthId, pattern = "[A-Za-z0-9]") } return(idList) }` – Julien Navarre Apr 15 '15 at 14:24