I have a mixed dataframe of character and numeric variables.


I want to convert all the lower-case characters in the dataframe to uppercase. Is there any way to do this in one shot without doing it repeatedly over each character-variable?


Starting with the following sample data :

df <- data.frame(v1=letters[1:5],v2=1:5,v3=letters[10:14],stringsAsFactors=FALSE)

  v1 v2 v3
1  a  1  j
2  b  2  k
3  c  3  l
4  d  4  m
5  e  5  n

You can use :

data.frame(lapply(df, function(v) {
  if (is.character(v)) return(toupper(v))
  else return(v)

Which gives :

  v1 v2 v3
1  A  1  J
2  B  2  K
3  C  3  L
4  D  4  M
5  E  5  N
  • 25
    I just found this works too: df = as.data.frame(sapply(df, toupper)) – user702432 May 14 '13 at 3:11

From the dplyr package you can also use the mutate_all() function in combination with toupper(). This will affect both character and factor classes.

df <- mutate_all(df, funs=toupper)
  • 3
    For anybody looking at this from today onward, note that mutate_each() is depreciated; instead (assuming you wish to convert your entire data.frame to upper/lower), use mutate_all(). – Mus Sep 11 '17 at 13:13
  • 7
    'mutate_at()' could be used to work with only one variable – Kevin Feb 6 '18 at 22:08
  • 1
    this worked for me: df <- mutate_all(df,, funs(touper)) – Tony Cronin Jan 17 '19 at 22:26
  • Make sure to use mutate_all(df, .funs = toupper) for proper syntax or you will receive an error. There should be a "." before the funs parameter. Also, if you want want to stick to the tidyverse you can use the stringr str_to_upper rather than the base toupper. – bradylange Oct 30 '20 at 13:33

It simple with apply function in R

f <- apply(f,2,toupper)

No need to check if the column is character or any other type.

  • Note that this converts numeric columns to characters and it also converts the data from data.frame to matrix. – Joachim Schork Jul 22 '20 at 13:34

A side comment here for those using any of these answers. Juba's answer is great, as it's very selective if your variables are either numberic or character strings. If however, you have a combination (e.g. a1, b1, a2, b2) etc. It will not convert the characters properly.

As @Trenton Hoffman notes,

df <- mutate_each(df, funs(toupper))

affects both character and factor classes and works for "mixed variables"; e.g. if your variable contains both a character and a numberic value (e.g. a1) both will be converted to a factor. Overall this isn't too much of a concern, but if you end up wanting match data.frames for example

df3 <- df1[df1$v1 %in% df2$v1,]

where df1 has been has been converted and df2 contains a non-converted data.frame or similar, this may cause some problems. The work around is that you briefly have to run

df2 <- df2 %>% mutate_each(funs(toupper), v1)
df2 <- df2 %>% mutate_each(df2, funs(toupper))
#and then
df3 <- df1[df1$v1 %in% df2$v1,]

If you work with genomic data, this is when knowing this can come in handy.


Another alternative is to use a combination of mutate_if() and str_to_upper() function, both from the tidyverse package:

df %>% mutate_if(is.character, str_to_upper) -> df

This will convert all string variables in the data frame to upper case. str_to_lower() do the opposite.


dplyr >= 1.0.0

Scoped verbs that end in _if, _at, _all have been superseded by the use of across() in packageVersion("dplyr") 1.0.0 or newer. To do this using across:

df %>% 
  dplyr::mutate(across(where(is.character), toupper))
  • The first argument to across is which columns to transform using tidyselect syntax. The above will apply the function across all columns that are character.
  • The second argument to across is the function to apply. This also supports lambda-style syntax: ~ toupper(.x) that make setting additional function arguments easy and clear.


df <- structure(list(city = c("Austin", "Austin", "Austin", "Austin", 
"Austin", "Austin", "Austin", "Austin", "Austin", "Austin"), 
    hs_cd = c(1L, 1L, 1L, 1L, 2L, 2L, 2L, 2L, 3L, 3L), sl_no = c(2L, 
    3L, 4L, 5L, 2L, 1L, 3L, 4L, 3L, 1L), col_01 = c(NA, NA, NA, 
    NA, NA, NA, NA, NA, NA, NA), col_02 = c(46L, 32L, 27L, 20L, 
    42L, 52L, 25L, 22L, 30L, 65L), col_03 = c("Female", "Male", 
    "Male", "Female", "Female", "Male", "Male", "Female", "Female", 
    "Female")), class = "data.frame", row.names = c(NA, -10L))

If you need to deal with data.frames that include factors you can use:

df = data.frame(v1=letters[1:5],v2=1:5,v3=letters[10:14],v4=as.factor(letters[1:5]),v5=runif(5),stringsAsFactors=FALSE)

    v1 v2 v3 v4        v5
    1  a  1  j  a 0.1774909
    2  b  2  k  b 0.4405019
    3  c  3  l  c 0.7042878
    4  d  4  m  d 0.8829965
    5  e  5  n  e 0.9702505

         v1          v2          v3          v4          v5
"character"   "integer" "character"    "factor"   "numeric"

Use mutate_each_ to convert factors to character then convert all to uppercase

   upper_it = function(X){X %>% mutate_each_( funs(as.character(.)), names( .[sapply(., is.factor)] )) %>%
   mutate_each_( funs(toupper), names( .[sapply(., is.character)] ))}   # convert factor to character then uppercase


      v1 v2 v3 v4
    1  A  1  J  A
    2  B  2  K  B
    3  C  3  L  C
    4  D  4  M  D
    5  E  5  N  E


sapply( upper_it(df),class)
         v1          v2          v3          v4          v5
"character"   "integer" "character" "character"   "numeric"

Alternatively, if you just want to convert one particular row to uppercase, use the code below:

df[[1]] <- toupper(df[[1]])

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