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I have (html-)texts and I want to change the ö things to real characters like ä, ü, ö, and so on because otherwise the xml-package does not accept it.

So I wrote a little function which cycles through a replacement table (link1, link2) and does replace special character by special character by sp... the function looks like this (only looonger):

html.charconv <- function(text){
    replacer <- matrix(c(
    "Á",    "&Aacute;",
    "á",    "&aacute;",
    "Â",    "&Acirc;",
    "â",    "&acirc;",
    "´",    "&acute;"

    for(i in 1:length(replacer[,1])){
        text <- str_replace_all(text,replacer[i,2],replacer[i,1])

How might I speed this up? I thought about vectorization but did not come with any helping solution because for each cycle the result of the last cycle is its starting point.

share|improve this question
why do you need performance? your loop (5 steps) is really slow or it is called in another process? – agstudy Nov 27 '12 at 9:56
This is an minimal example; I would not ask if it were not important; The actual loop entails 105 replacements and is applied to more than 36'000 html-files all of considerably length. So things can take a while. – petermeissner Nov 27 '12 at 10:03
I asked to have more info about the process. did you try parallel ? i.e <- llply(input.files, html.charconv, .parallel=TRUE) – agstudy Nov 27 '12 at 10:29
The expensive operation in this algorithm is going to be <-. I would start by modifying the loop to first do a grep to establish if the search string exists, then run gsub and assign the results only when necessary. Also, since speed is important to you, I suggest getting to grips with gsub - str_replace_all is simply a wrapper around gsub and will slow things down. – Andrie Nov 27 '12 at 10:33
PS. My first instinct was to use chartr but I couldn't get it to work in this case. – Andrie Nov 27 '12 at 10:34
up vote 8 down vote accepted

You can get a significant speedup by constructing your function a bit different, and forget about the text tools. Basically you :

  1. split the character string
  2. match the characters you want and replace them by the new characters
  3. paste everything together again

You can do that with following function :

html.fastconv <- function(x,old,new){
    xs <- strsplit(x,"&|;")
    old <- gsub("&|;","",old)
    xs <- lapply(xs,function(i){
        id <- match(i,old,0L)
        i[id!=0] <- new[id]

This works as :

> sometext <- c("&Aacute;dd som&aacute; le&Acirc;tter&acirc; acute problems et&acute; cetera",
+  "&Aacute;dd som&aacute; le&Acirc;tter&acirc; acute p ..." ... [TRUNCATED] 

> newchar <- c("Á","á","Â","â","´")

> oldchar <- c("&Aacute;","&aacute;","&Acirc;","&acirc;","&acute;")
> html.fastconv(sometext,oldchar,newchar)
[1] "Ádd somá leÂtterâ acute problems et´ cetera" "Ádd somá leÂtterâ acute problems et´ cetera"

For the record, some benchmarking :

                                       test elapsed relative
2                   html.charconv(sometext)    0.79    5.643
1 html.fastconv(sometext, oldchar, newchar)    0.14    1.000
share|improve this answer
ah ow, I need more coffee apparently – Joris Meys Nov 27 '12 at 12:45
Fixed. And regarding the matrix: By getting that one out of the function, you don't have to re-assign it every time you call the function. There's no need for that. I guess OP is smart enough to figure out how to adapt the code in such a way that he can pass a matrix. Or to just do fastconv(sometext,mat[,1],mat[,2]) or something to that extent. – Joris Meys Nov 27 '12 at 12:49
Similar technique did indeed – Joris Meys Nov 27 '12 at 13:04
I do not totally understand what you did, but it looks much much faster than my code applying it to my html-files, about 40 times faster. – petermeissner Nov 27 '12 at 14:18
@PeterM Actually the solution by John should be faster than mine. Did you try that one as well? And the Rcpp solution is definitely way faster, but then you need to understand a bit of C++ as well. – Joris Meys Nov 27 '12 at 14:24

Just for fun, here is a version based on Rcpp.

#include <Rcpp.h>
using namespace Rcpp ;

// [[Rcpp::export]]
CharacterVector rcpp_conv( 
    CharacterVector text, CharacterVector old , CharacterVector new_){

    int n  = text.size() ;
    int nr = old.size() ;

    std::string buffer, current_old, current_new ;
    size_t pos, current_size ; 
    CharacterVector res(n) ;

    for( int i=0; i<n; i++){
        buffer = text[i] ;
        for( int j=0; j<nr; j++){
             current_old = old[j] ;
             current_size = current_old.size() ;
             current_new = new_[j] ;
             pos = 0 ;   
             pos = buffer.find( current_old ) ;
             while( pos != std::string::npos ){
                     pos, current_size, 
                 ) ;
                 pos = buffer.find( current_old ) ;
        res[i] = buffer ;
    return res ;

For which I get quite a further performance gain:

> microbenchmark(
+     html.fastconv( sometext,oldchar,newchar),
+     html.fastconvJC(sometext, oldchar, newchar),
+     rcpp_conv( sometext, oldchar, newchar)
+ )
Unit: microseconds
                                         expr    min      lq   median      uq
1   html.fastconv(sometext, oldchar, newchar) 97.588 99.9845 101.4195 103.072
2 html.fastconvJC(sometext, oldchar, newchar) 19.945 23.3060  25.8110  28.134
3       rcpp_conv(sometext, oldchar, newchar)  4.047  5.1555   6.2340   9.275
1 256.061
2  40.647
3  25.763

Here is an implementation based on the Rcpp::String feature, available from Rcpp >= 0.10.2:

class StringConv{
    typedef String result_type ;
    StringConv( CharacterVector old_, CharacterVector new__): 
        nr(old_.size()), old(old_), new_(new__){}

    String operator()(String text) const {
        for( int i=0; i<nr; i++){
            text.replace_all( old[i], new_[i] ) ;
        return text ;

    int nr ;
    CharacterVector old ;
    CharacterVector new_ ;
} ;

// [[Rcpp::export]]
CharacterVector test_sapply_string( 
   CharacterVector text, CharacterVector old , CharacterVector new_
   CharacterVector res = sapply( text, StringConv( old, new_ ) ) ;
   return res ;
share|improve this answer

I'm guessing that 36,000 file read and writes is your bottleneck and the way you code in R can't help much with that. Some things just take a while. Your function looks like it will work right, just let it run. There are a few small improvements you could make.

replacer <- matrix(c(
    "Á",    "&Aacute;",
    "á",    "&aacute;",
    "Â",    "&Acirc;",
    "â",    "&acirc;",
    "´",    "&acute;"
    ,ncol=2, byrow=T)

html.fastconvJC <- function(x,old,new){
    n <- length(new)
    s <- x #make a copy cause I'm scared of scoping in R :)
    for (i in 1:n) s <- gsub(old[i], new[i], s, fixed = TRUE)

# borrowing the strings from Joris Meys
benchmark(html.fastconvJC(sometext, replacer[,2], replacer[,1]),
      html.charconv(sometext), columns = c("test", "elapsed", "relative"),

                                                     test elapsed relative
2                                 html.charconv(sometext)   0.727    17.31
1 html.fastconvJC(sometext, replacer[, 2], replacer[, 1])   0.042     1.00

And they increased speed more than I expected. Note that a huge part of that speedup is making fixed = TRUE, otherwise Joris Meys answer comes in about the same speed.

If this doesn't get your far in overall speed you know your bottleneck is elsewhere, likely file reads and writes. Unless you have solid state or RAID drives, running this in parallel isn't going to speed anything up and might just slow it down.

share|improve this answer
I'm quite amazed by the speedup as well. Nice thinking – Joris Meys Nov 27 '12 at 13:33
I think it's good to have both answers because the general technique of strsplit does sometimes work phenomenally well (like if the replace was reversed :) ). I really didn't expect this one to be much faster than yours, maybe about the same. – John Nov 27 '12 at 13:35
You avoid a split and a paste, so there's the gain. – Joris Meys Nov 27 '12 at 13:36
I tried fixed = TRUE in yours and it's a bit faster than this. There might be scaling differences with longer passages of text though. – John Nov 27 '12 at 13:38
Doing a benchmark with 100 of my html-files my function takes about 50s; John's takes about 4s; and Joris' about 1.5s. Congratulation guys, thats impressive :-) although I do not know why my benchmarking and Joris benchmarking differ that much. – petermeissner Nov 27 '12 at 14:16

I will try with plyr : <- llply(input.files, html.charconv, .parallel=TRUE) 
share|improve this answer
I will consider that for reading the file, though no input of files is involved in this example. It is only about the replacement of 'characters'. – petermeissner Nov 27 '12 at 14:26
Hope it can help:-) – agstudy Nov 27 '12 at 15:55
Using Joris function the whole process of reading in data and preparing takes now 5 instead of 59 seconds - for 100 files. So, reading files might be an issue, but the faster string replacements helped a lot. – petermeissner Nov 27 '12 at 15:55

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