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Is it possible to iterative over a single text file on a single multi-core machine in parallel with R? For context, the text file is somewhere between 250-400MB of JSON output.

EDIT:

Here are some code samples I have been playing around with. To my surprise, parallel processing did not win - just basic lapply - but this could be due to user error on my part. In addition, when trying to read a number of large files, my machine choked.

## test on first 100 rows of 1 twitter file
library(rjson)
library(parallel)
library(foreach)
library(plyr)
N = 100
library(rbenchmark)
mc.cores <- detectCores()
benchmark(lapply(readLines(FILE, n=N, warn=FALSE), fromJSON),
          llply(readLines(FILE, n=N, warn=FALSE), fromJSON),
          mclapply(readLines(FILE, n=N, warn=FALSE), fromJSON),
          mclapply(readLines(FILE, n=N, warn=FALSE), fromJSON, 
                   mc.cores=mc.cores),
          foreach(x=readLines(FILE, n=N, warn=FALSE)) %do% fromJSON(x),
          replications=100)

Here is a second code sample

parseData <- function(x) {
  x <- tryCatch(fromJSON(x), 
                error=function(e) return(list())
                )
  ## need to do a test to see if valid data, if so ,save out the files
  if (!is.null(x$id_str)) {
    x$created_at <- strptime(x$created_at,"%a %b %e %H:%M:%S %z %Y")
    fname <- paste("rdata/",
                   format(x$created_at, "%m"),
                   format(x$created_at, "%d"),
                   format(x$created_at, "%Y"),
                   "_",
                   x$id_str,
                   sep="")
    saveRDS(x, fname)
    rm(x, fname)
    gc(verbose=FALSE)
  }
}

t3 <- system.time(lapply(readLines(FILES[1], n=-1, warn=FALSE), parseData))
share|improve this question
    
Is the problem in reading the JSON file or in parsing the JSON file? –  Paul Hiemstra Nov 26 '12 at 19:12
    
Neither. My machine eventually freezes when I try to use a simple for loop. I have attempted to run a function against each JSON entry, save out seperate rds files to read back in, etc, etc. With every option, I am also conscious of the memory usage and attempt to optimize and clean when possible. Some ideas were awful, but in the end, I want to figure out ways to "analyze" larger datasets just with Base R, ignoring the fact that better solutions exist for the moment. –  Btibert3 Nov 27 '12 at 2:43
    
A reproducible example would make it much easier for us to provide feedback. –  Paul Hiemstra Nov 27 '12 at 8:03

2 Answers 2

up vote 5 down vote accepted

The answer depends on what the problem actually is: reading the file in parallel, or processing the file in parallel.

Reading in parallel

You could split the JSON file into multiple input files and read them in parallel, e.g. using the plyr functions combined with a parallel backend:

result = ldply(list.files(pattern = ".json"), readJSON, .parallel = TRUE)

Registering a backend can probably be done using the parallel package which is now integrated in base R. Or you can use the doSNOW package, see this post on my blog for details.

Processing in parallel

In this scenario your best bet is to read the entire dataset into a vector of characters, split the data and then use a parallel backend combined with e.g. the plyr functions.

share|improve this answer
1  
Not a bad idea. And if you're looking for a way to chop up the file, take a look at the UNIX split command. –  Jeff Allen Nov 26 '12 at 19:30
    
Linux commands are always a good solution ;) –  Paul Hiemstra Nov 26 '12 at 19:31
    
@JeffAllen Interesting. Didn't really think of pre-processing the data ahead of time with commands. Not an expert at the command line by any stretch, but the more I poke around, I see how powerful a few commands can be. –  Btibert3 Nov 27 '12 at 2:48

probably not with readLines() due to the nature of non-parallel file-system IO. Of course, if you're using a parallel NFS or something like HDFS, then this restriction won't apply. But assuming you're on a "standard" architecture, it won't be feasible to parallelize your readLine() calls.

Your best bet would probably be to read in the entire file seeing as <500MB will probably fit in memory, then parallelize the processing once you're object is already read in.

share|improve this answer
    
+1, but with a bit of work you could probably get parallel readLines by assigning line numbers to each worker that they need to read from a given file connection. –  Paul Hiemstra Nov 26 '12 at 19:21
    
@PaulHiemstra can you give an example of how that might be done in the simplest possible case? :) –  Anthony Damico Nov 26 '12 at 19:23
    
@AnthonyDamico I don't have time right now, but I think it is not trivial, and it very well might not work. –  Paul Hiemstra Nov 26 '12 at 19:26

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