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I have an SQL database with 7 million+ records, each record containing some text. Within each record I want to perform text analysis, say count the occurences of specific words. I've tried R's tokenize function within the openNLP package which works great for small files, but 7 million records * between 1-100 words per record gets too large for R to hold in a data.frame. I thought about using R's bigmemory or ff packages, or even the mapReduce package. Do you guys have a preferred approach or package for this type of analysis?

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count the number of spaces + 1? You could probably use some vectorised operations like gsub to replace the entire character vector with "" except for spaces and then count with nchar? Of course this is just a method. I wonder if your problem is method or loading it into R... –  Arun Feb 19 '13 at 17:00
Do you have to read in the whole dataset at once? Why not using strsplit(...," ") on each single entry? –  Daniel Fischer Feb 19 '13 at 17:02
@Arun - I actually want to count the occurence of certain words, not just count the number of words. Updated my question. –  ilan man Feb 19 '13 at 17:18
But if you want to count the occurrence of a certain word, I think you could do that on the SQL side still using the likeoperator, or does it require there too much CPU power? And once you have the subset of rows, you could send this one to R (Or finish the whole job on the SQL side). –  Daniel Fischer Feb 19 '13 at 17:30
Why not do the searches in the database? –  Jack Maney Feb 19 '13 at 17:49

2 Answers 2

Maybe approach it in parallel. I used parLapply b/c I believe it works on all three OS.

wc <- function(x) length(unlist(strsplit(x, "\\s+")))

wordcols <- rep("I like icecream alot.", 100000)

cl <- makeCluster(mc <- getOption("cl.cores", detectCores()))
clusterExport(cl=cl, varlist=c("wc", "wordcols"), envir=environment())
output <- parLapply(cl, wordcols, function(x) {
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Why parallel? It is extremely fast without parallelism. system.time(o <- sapply(strsplit(wordcols, "[ ]+"), length)) takes 0.45 seconds on my laptop. –  Arun Feb 19 '13 at 17:24
I actually want to count the occurence of specific words (updated my question). So wouldn't I need wordcols to hold my entire dataset before applying your method (which is very interesting by the way)? I can store the data in SQL easily enough, but reading it into R via RODBC (what I currently do) breaks down. –  ilan man Feb 19 '13 at 17:24

On the SQL side you could extract also for each entry the len, then apply a replace(" yourWord ","") (with flanking spaces...) to it, calculate again the total string length and then take the differences between those two, that should do the trick. My SQL skills are not so well that I could present here easily an running example, sorry for that...

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