# dplyr change many data types

I have a data.frame:

``````dat <- data.frame(fac1 = c(1, 2),
fac2 = c(4, 5),
fac3 = c(7, 8),
dbl1 = c('1', '2'),
dbl2 = c('4', '5'),
dbl3 = c('6', '7')
)
``````

To change data types I can use something like

``````l1 <- c("fac1", "fac2", "fac3")
l2 <- c("dbl1", "dbl2", "dbl3")
dat[, l1] <- lapply(dat[, l1], factor)
dat[, l2] <- lapply(dat[, l2], as.numeric)
``````

with `dplyr`

``````dat <- dat %>% mutate(
fac1 = factor(fac1), fac2 = factor(fac2), fac3 = factor(fac3),
dbl1 = as.numeric(dbl1), dbl2 = as.numeric(dbl2), dbl3 = as.numeric(dbl3)
)
``````

is there a more elegant (shorter) way in dplyr?

thx Christof

# Edit (as of 2021-03)

As also pointed out in Eric's answer, `mutate_[at|if|all]` has been superseded by a combination of `mutate()` and `across()`. For reference, I will add the respective pendants to the examples in the original answer (see below):

``````# convert all factor to character
dat %>% mutate(across(where(is.factor), as.character))

# apply function (change encoding) to all character columns
dat %>% mutate(across(where(is.character),
function(x){iconv(x, to = "ASCII//TRANSLIT")}))

# subsitute all NA in numeric columns
dat %>% mutate(across(where(is.numeric), function(x) tidyr::replace_na(x, 0)))
``````

Since Nick's answer is deprecated by now and Rafael's comment is really useful, I want to add this as an Answer. If you want to change all `factor` columns to `character` use `mutate_if`:

``````dat %>% mutate_if(is.factor, as.character)
``````

Also other functions are allowed. I for instance used `iconv` to change the encoding of all `character` columns:

``````dat %>% mutate_if(is.character, function(x){iconv(x, to = "ASCII//TRANSLIT")})
``````

or to substitute all `NA` by 0 in numeric columns:

``````dat %>% mutate_if(is.numeric, function(x){ifelse(is.na(x), 0, x)})
``````
• `dat %>% mutate_if(is.factor, as.character)` changes all factor columns to character and is by far the best general answer. Commented Nov 8, 2019 at 8:14
• `funs` is deprecated within dplyr now, so this is now the best answer Commented Mar 4, 2021 at 11:34
• also `dat %>% mutate_if(where(is.factor), as.character)` is even more correct right now Commented Mar 5, 2021 at 20:04
• `across` takes a tidyselect for columns so you can just provide it a vector of columns with `c()`. See `?tidyselect::language`
– qwr
Commented May 1 at 12:45

You can use the standard evaluation version of `mutate_each` (which is `mutate_each_`) to change the column classes:

``````dat %>% mutate_each_(funs(factor), l1) %>% mutate_each_(funs(as.numeric), l2)
``````
• In this case you could also use `starts_with()` Commented Dec 28, 2014 at 20:46
• Thanks for your suggestion, @hadley. So for the first case that would be `dat %>% mutate_each(funs(factor), starts_with("fac"))` to convert all columns starting with the string "fac" to factor. Commented Dec 28, 2014 at 20:55
• @hadley Is it possible to make the same operation, but in a way that would transform all columns coming after the one the user chooses to get transformed? Not sure my question was clear. Commented Feb 14, 2016 at 13:40
• `mutate_each` is deprecated in latest version, use `mutate_at` instead... Commented Sep 26, 2017 at 20:04

EDIT - The syntax of this answer has been deprecated, loki's updated answer is more appropriate.

ORIGINAL-

From the bottom of the `?mutate_each` (at least in dplyr 0.5) it looks like that function, as in @docendo discimus's answer, will be deprecated and replaced with more flexible alternatives `mutate_if`, `mutate_all`, and `mutate_at`. The one most similar to what @hadley mentions in his comment is probably using `mutate_at`. Note the order of the arguments is reversed, compared to `mutate_each`, and `vars()` uses `select()` like semantics, which I interpret to mean the `?select_helpers` functions.

``````dat %>% mutate_at(vars(starts_with("fac")),funs(factor)) %>%
mutate_at(vars(starts_with("dbl")),funs(as.numeric))
``````

But `mutate_at` can take column numbers instead of a `vars()` argument, and after reading through this page, and looking at the alternatives, I ended up using `mutate_at` but with `grep` to capture many different kinds of column names at once (unless you always have such obvious column names!)

``````dat %>% mutate_at(grep("^(fac|fctr|fckr)",colnames(.)),funs(factor)) %>%
mutate_at(grep("^(dbl|num|qty)",colnames(.)),funs(as.numeric))
``````

I was pretty excited about figuring out `mutate_at` + `grep`, because now one line can work on lots of columns.

EDIT - now I see `matches()` in among the select_helpers, which handles regex, so now I like this.

``````dat %>% mutate_at(vars(matches("fac|fctr|fckr")),funs(factor)) %>%
mutate_at(vars(matches("dbl|num|qty")),funs(as.numeric))
``````

Another generally-related comment - if you have all your date columns with matchable names, and consistent formats, this is powerful. In my case, this turns all my YYYYMMDD columns, which were read as numbers, into dates.

``````  mutate_at(vars(matches("_DT\$")),funs(as.Date(as.character(.),format="%Y%m%d")))
``````
• If you are changing from factor to number, keep in mind `as.numeric` on its own does not work. Factors are stored internally as integers with a table to give the factor level labels. Just using `as.numeric` will only give the internal integer codes. To change from factor to numeric the code should be slightly tweaked. `mutate_at(vars(matches("dbl|num|qty")),function(x) as.numeric(as.character(x)))` Commented Mar 12, 2019 at 15:35

Dplyr `across` function has superseded `_if`, `_at`, and `_all`. See `vignette("colwise")`.

``````dat %>%
mutate(across(all_of(l1), as.factor),
across(all_of(l2), as.numeric))
``````
• similarly, using column indices: `dat <- dat %>% mutate(across(all_of(names(dat)[1:3]), as.factor), across(all_of(names(dat)[4:6]), as.numeric))` Commented Oct 28, 2020 at 21:17

It's a one-liner with `mutate_at`:

``````dat %>% mutate_at("l1", factor) %>% mutate_at("l2", as.numeric)
``````

A more general way of achieving column type transformation is as follows:

If you want to transform all your factor columns to character columns, e.g., this can be done using one pipe:

``````df %>%  mutate_each_( funs(as.character(.)), names( .[,sapply(., is.factor)] ))
``````
• for this case, `df %>% mutate_if(is.factor,as.character)` works (for version of dplyr > 0.5) Commented Sep 6, 2016 at 4:23

For future readers, if you are ok with `dplyr` guessing the column types, you can convert the col types of an entire df as if you were originally reading it in with `readr` and `col_guess()` with

``````library(tidyverse)
df %>% type_convert()
``````

Or mayby even more simple with `convert` from `hablar`:

``````library(hablar)

dat %>%
convert(fct(fac1, fac2, fac3),
num(dbl1, dbl2, dbl3))
``````

or combines with `tidyselect`:

``````dat %>%
convert(fct(contains("fac")),
num(contains("dbl")))
``````

Try this

``````df[,1:11] <- sapply(df[,1:11], as.character)
``````