I am having some troubles with leading and trailing whitespace in a data.frame. Eg I like to take a look at a specific row in a data.frame based on a certain condition:

> myDummy[myDummy$country == c("Austria"),c(1,2,3:7,19)] 

[1] codeHelper     country        dummyLI    dummyLMI       dummyUMI       
[6] dummyHInonOECD dummyHIOECD    dummyOECD      
<0 rows> (or 0-length row.names)

I was wondering why I didn't get the expected output since the country Austria obviously existed in my data.frame. After looking through my code history and trying to figure out what went wrong I tried:

> myDummy[myDummy$country == c("Austria "),c(1,2,3:7,19)]
   codeHelper  country dummyLI dummyLMI dummyUMI dummyHInonOECD dummyHIOECD
18        AUT Austria        0        0        0              0           1
   dummyOECD
18         1

All I have changed in the command is an additional whitespace after Austria.

Further annoying problems obviously arise. Eg when I like to merge two frames based on the country column. One data.frame uses "Austria " while the other frame has "Austria". The matching doesn't work.

  1. Is there a nice way to 'show' the whitespace on my screen so that i am aware of the problem?
  2. And can I remove the leading and trailing whitespace in R?

So far I used to write a simple Perl script which removes the whitespace but it would be nice if I can somehow do it inside R.

  • 1
    I just saw that sub() uses the Perl notation as well. Sorry about that. I am going to try to use the function. But for my first question i don't have a solution yet. – mropa Feb 14 '10 at 12:50
  • 4
    As hadley pointed it this regex "^\\s+|\\s+$" will identify leading and trailing whitespace. so x <- gsub("^\\s+|\\s+$", "", x) many of R's read functions as have this option: strip.white = FALSE – Jay Feb 14 '10 at 15:11

12 Answers 12

up vote 402 down vote accepted

Probably the best way is to handle the trailing whitespaces when you read your data file. If you use read.csv or read.table you can set the parameterstrip.white=TRUE.

If you want to clean strings afterwards you could use one of these functions:

# returns string w/o leading whitespace
trim.leading <- function (x)  sub("^\\s+", "", x)

# returns string w/o trailing whitespace
trim.trailing <- function (x) sub("\\s+$", "", x)

# returns string w/o leading or trailing whitespace
trim <- function (x) gsub("^\\s+|\\s+$", "", x)

To use one of these functions on myDummy$country:

 myDummy$country <- trim(myDummy$country)

To 'show' the whitespace you could use:

 paste(myDummy$country)

which will show you the strings surrounded by quotation marks (") making whitespaces easier to spot.

  • 7
    As hadley pointed it this regex "^\\s+|\\s+$" will identify leading and trailing whitespace. so x <- gsub("^\\s+|\\s+$", "", x) many of R's read functions as have this option: strip.white = FALSE – Jay Feb 14 '10 at 15:10
  • 35
    See also str_trim in the stringr package. – Richie Cotton Feb 16 '10 at 15:35
  • 1
    Plus one for "Trim function now stored for future use"- thanks! – Chris Beeley Jan 17 '12 at 9:56
  • 1
    FYI: I trimmed all trailing spaces of the entire dataframe using apply: df_trimmed <- as.data.frame(apply(df,2,function (x) sub("\\s+$", "", x))) – Thieme Hennis Sep 19 '14 at 9:35
  • 3
    Unfortunately, strip.white=TRUE only works on non-quoted strings. – Rodrigo Aug 10 '15 at 15:08

As of R 3.2.0 a new function was introduced for removing leading/trailing whitespaces:

trimws()

See: http://stat.ethz.ch/R-manual/R-patched/library/base/html/trimws.html

  • 2
    It depends on the definition of a best answer. This answer is nice to know of (+1) but in a quick test, it wasnt as fast as some of the alternatives out there. – A5C1D2H2I1M1N2O1R2T1 May 24 '15 at 8:05
  • doesn't seem to work for multi-line strings, despite \n being in the covered character class. trimws("SELECT\n blah\n FROM foo;") still contains newlines. – Jubbles Dec 31 '15 at 1:10
  • 4
    @Jubbles That is the expected behaviour. In the string you pass to trimws there are no leading or trailing white spaces. If you want to remove leading and trailing white spaces from each of the lines in the string, you will first have to split it up. Like this: trimws(strsplit("SELECT\n blah\n FROM foo;", "\n")[[1]]) – wligtenberg Dec 31 '15 at 8:20
  • 1
    Although a built-in function for recent versions of R, it does 'just' do a PERL style regex under the hood. I might have expected some fast custom C code to do this. Maybe the trimws regex is fast enough. stringr::str_trim (based on stringi) is also interesting in that it uses a completely independent internationalized string library. You'd think whitespace would be immune from problems with internationalization, but I wonder. I've never seen a comparison of results of native vs stringr/stringi or any benchmarks. – Jack Wasey Jan 30 '16 at 17:31
  • For some reason I could not figure out, trimws() did not remove my leading white spaces, while Bryan's trim.strings() below (only 1 vote, mine!) did... – PatrickT Mar 3 at 22:16

To manipulate the white space, use str_trim() in the stringr package. The package has manual dated Feb 15,2013 and is in CRAN. The function can also handle string vectors.

install.packages("stringr", dependencies=TRUE)
require(stringr)
example(str_trim)
d4$clean2<-str_trim(d4$V2)

(credit goes to commenter: R. Cotton)

  • 1
    This solution removed some mutant whitespace that trimws() was unable to remove. – Richard Telford Nov 24 '16 at 20:52
  • 1
    @RichardTelford could you provide an example? Because that might be considered a bug in trimws. – wligtenberg Feb 21 '17 at 12:15

A simple function to remove leading and trailing whitespace:

trim <- function( x ) {
  gsub("(^[[:space:]]+|[[:space:]]+$)", "", x)
}

Usage:

> text = "   foo bar  baz 3 "
> trim(text)
[1] "foo bar  baz 3"

ad1) To see white spaces you could directly call print.data.frame with modified arguments:

print(head(iris), quote=TRUE)
#   Sepal.Length Sepal.Width Petal.Length Petal.Width  Species
# 1        "5.1"       "3.5"        "1.4"       "0.2" "setosa"
# 2        "4.9"       "3.0"        "1.4"       "0.2" "setosa"
# 3        "4.7"       "3.2"        "1.3"       "0.2" "setosa"
# 4        "4.6"       "3.1"        "1.5"       "0.2" "setosa"
# 5        "5.0"       "3.6"        "1.4"       "0.2" "setosa"
# 6        "5.4"       "3.9"        "1.7"       "0.4" "setosa"

See also ?print.data.frame for other options.

Use grep or grepl to find observations with whitespaces and sub to get rid of them.

names<-c("Ganga Din\t","Shyam Lal","Bulbul ")
grep("[[:space:]]+$",names)
[1] 1 3
grepl("[[:space:]]+$",names)
[1]  TRUE FALSE  TRUE
sub("[[:space:]]+$","",names)
[1] "Ganga Din" "Shyam Lal" "Bulbul"  
  • 7
    Or, a little more succinctly, "^\\s+|\\s+$" – hadley Feb 14 '10 at 14:45
  • 4
    Just wanted to point out, that one will have to use gsub instead of sub with hadley's regexp. With sub it will strip trailing whitespace only if there is no leading whitespace... – f3lix Feb 14 '10 at 15:50
  • Didn't know you could use \s etc. with perl=FALSE. The docs say that POSIX syntax is used in that case, but the syntax accepted is actually a superset defined by the TRE regex library laurikari.net/tre/documentation/regex-syntax – Jyotirmoy Bhattacharya Feb 14 '10 at 18:37

I'd prefer to add the answer as comment to user56 but yet unable so writing as an independent answer. Removing leading and trailing blanks might be achieved through trim() function from gdata package as well:

require(gdata)
example(trim)

Usage example:

> trim("   Remove leading and trailing blanks    ")
[1] "Remove leading and trailing blanks"
  • trim() also works via the "raster" package – Nathan Apr 22 '16 at 5:03

Another option is to use the stri_trim function from the stringi package which defaults to removing leading and trailing whitespace:

> x <- c("  leading space","trailing space   ")
> stri_trim(x)
[1] "leading space"  "trailing space"

For only removing leading whitespace, use stri_trim_left. For only removing trailing whitespace, use stri_trim_right. When you want to remove other leading or trailing characters, you have to specify that with pattern =.

See also ?stri_trim for more info.

Another related problem occurs if you have multiple spaces inbetween inputs:

> a <- "  a string         with lots   of starting, inter   mediate and trailing   whitespace     "

You can then easily split this string into "real" tokens using a regular expression to the split argument:

> strsplit(a, split=" +")
[[1]]
 [1] ""           "a"          "string"     "with"       "lots"      
 [6] "of"         "starting,"  "inter"      "mediate"    "and"       
[11] "trailing"   "whitespace"

Note that if there is a match at the beginning of a (non-empty) string, the first element of the output is ‘""’, but if there is a match at the end of the string, the output is the same as with the match removed.

I created a trim.strings () function to trim leading and/or trailing whitespace as:

# Arguments:    x - character vector
#            side - side(s) on which to remove whitespace 
#                   default : "both"
#                   possible values: c("both", "leading", "trailing")

trim.strings <- function(x, side = "both") { 
    if (is.na(match(side, c("both", "leading", "trailing")))) { 
      side <- "both" 
      } 
    if (side == "leading") { 
      sub("^\\s+", "", x)
      } else {
        if (side == "trailing") {
          sub("\\s+$", "", x)
    } else gsub("^\\s+|\\s+$", "", x)
    } 
} 

For illustration,

a <- c("   ABC123 456    ", " ABC123DEF          ")

# returns string without leading and trailing whitespace
trim.strings(a)
# [1] "ABC123 456" "ABC123DEF" 

# returns string without leading whitespace
trim.strings(a, side = "leading")
# [1] "ABC123 456    "      "ABC123DEF          "

# returns string without trailing whitespace
trim.strings(a, side = "trailing")
# [1] "   ABC123 456" " ABC123DEF"   

Best method is trimws()

Following code will apply this function to entire dataframe

mydataframe<- data.frame(lapply(mydataframe, trimws),stringsAsFactors = FALSE)

  • or df[] <- lapply(df, trimws) to be more compact. But it will in both cases coerce columns to character. df[sapply(df,is.character)] <- lapply(df[sapply(df,is.character)], trimws) to be safe. – Moody_Mudskipper Jul 13 at 20:07
myDummy[myDummy$country == "Austria "] <- "Austria"

After this, you'll need to force R not to recognize "Austria " as a level. Let's pretend you also have "USA" and "Spain" as levels:

myDummy$country = factor(myDummy$country, levels=c("Austria", "USA", "Spain"))

A little less intimidating than the highest voted response, but it should still work.

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.