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I have a question on removing leading a trailing blanks in a data.frame or data.table.

I have working solutions but I'm trying to speed up my code.

Here is some sample data:

number_strings <- paste("  ",seq(from=1, to=100000, by=1),"  ",sep="")

data <-,nrow=length(number_strings),ncol=10),stringsAsFactors=FALSE)
colnames(data) <- paste("Col",seq(from=1, to=ncol(data), by=1),sep="")

Here are some columns I would like to trim:

odd_columns <- paste("Col",seq(from=1, to=ncol(data), by=2),sep="")

Here are the three options I have so far:

f_trim_for <- function(x,cols){
  for(i in 1:length(cols))
    x[,cols[i]] = trim(x[,cols[i]])
system.time(data1 <- f_trim_for(data,odd_columns)) 

f_gsub_for <- function(x,cols){
  for(i in 1:length(cols))
    x[,cols[i]] <- gsub("^\\s+|\\s+$", "", x[,cols[i]], perl = TRUE)
system.time(data2 <- f_gsub_for(data,odd_columns)) 

f_trim_dt <- function(x,cols){
  data.table(x)[, (cols) := trim(.SD), .SDcols = cols]
system.time(data3 <- f_trim_dt(data,odd_columns)) 

Here are the times:

              user  system elapsed 
f_trim_for    1.50    0.08    1.92 
f_gsub_for    0.75    0.00    0.74 
f_trim_dt     0.81    0.00    1.17 

My question: Are there other ways I'm not thinking about that could be faster?

The reason is that my actual data is 1.5 million rows and 110 columns. Hence, speed is a major issue.

I tried some other options but they aren't working:

f_gsub_dt <- function(x,cols){
  data.table(x)[, (cols) := gsub("^\\s+|\\s+$", "", .SD, perl = TRUE), .SDcols = cols]

f_set_dt <- function(x,cols){
 for (j in cols)
   set(x,x[[j]],j,gsub("^\\s+|\\s+$", "", j, perl = TRUE))
share|improve this question
is this useful to you?… –  rawr Jan 11 '14 at 18:22
I've seen that post and used the gsub method from it. I was trying to do something similar in data.tables. –  Brad Jan 11 '14 at 18:31
Look at the answers to this recent question: You should use set. –  Roland Jan 11 '14 at 18:31
Roland, At the end of my question, I have a set example but couldn't get it to work. Could you tell what was wrong? –  Brad Jan 11 '14 at 18:41
@Brad, seems like Roland's tip lead you to the answer you're looking for? Why not post it as an answer yourself? –  Arun Jan 11 '14 at 21:03

1 Answer 1

Use colwise from plyr and str_trim from stringr.

data[, odd_columns] <- colwise(str_trim)(data[, odd_columns]) 
share|improve this answer
And is this fast? (main thing OP is looking for) –  eddi Jan 13 '14 at 14:13
Didn't time it but trim should be much faster than a regex search. And avoiding multiple subsets of data.frames with [ ] should speed things up. –  Jared Jan 13 '14 at 20:01

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