I have the following data.table:

dt <- data.table(col1 = rep("a",6), col2 = c(1,1,1,2,3,1))

Now I want to replace all the 1 in col2 with value "bigDog". I can do it using the data.frame spirit:

dt$col2[dt$col2==1,] <- "bigDog"

But I wonder if there is a different way, more "data.table oriented"?

2 Answers 2


Had you not wanted to change the type of the column, you'd do:

dt[col2 == 1, col2 := 123]

With the type change, you can do:

dt[, col2 := as.character(col2)][col2 == "1", col2 := "bigDog"]

If you don't change the type first, "bigDog" will get coerced to integer, i.e. NA. You'll also get a bunch of warnings about that of course.

Note that besides less cumbersome syntax, using := has the advantage of not making extra copies of data (as <- will) and instead modifies in place.

  • Assuming I don't want to change the column type, how can I apply the first usage to multiple (named) columns?
    – rimorob
    Jul 1, 2015 at 0:26
  • 2
    @rimorob sure - dt[condition,`:=`(col2 = 123, col3 = 234, ...)]
    – eddi
    Jul 1, 2015 at 4:21
  • 4
    How about doing multiple conditions at once on the same column? E.g. changing 1 to "bigDog" and 2 to "smallDog"?
    – bob
    Feb 5, 2020 at 20:10

Aditionally you could use the library plyr

dt <- data.table(col1 = rep("a",6), col2 = c(1,1,1,2,3,1))
dt <- mapvalues(dt[,col2], c(1), c("BigDog"))

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