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I would like to read-in a number of CSV files (~50), run a number of operations, and then use write.csv() to output a master file. Since the CSV files are on the larger side (~80 Mb), I was wondering if it might be more efficient to open two instances of R, reading-in half the CSVs on one instance, and half on the other. Then I would write each to a large CSV, read-in both CSVs, and combine them into a master CSV. Does anyone know if running two instances of R will improve the time it takes to read-in all the csv's?

I'm using a Macbook Pro OSX 10.6 with 4Gb RAM.

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I can tell you by experience writing a 80Mb csv is not very slow. But this on the other hand depends on what do you mean by "slow" in your context. These questions might be helpful: stackoverflow.com/questions/12013953/… and stackoverflow.com/questions/9703068/… –  JEquihua Jul 18 '13 at 17:34
    
Those are helpful, but the problem that I'm referring to is the lag in loading the csv files. –  Jacob Rosenberg-Wohl Jul 18 '13 at 17:46
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Have you looked at fread in the data.table package? –  Dirk Eddelbuettel Jul 18 '13 at 19:53

2 Answers 2

up vote 1 down vote accepted

read.table() and related can be quite slow. The best way to tell if you can benefit from parallelization is to time your R script, and the basic reading of your files. For instance, in a terminal:

time cat *.csv > /dev/null

If the "cat" time is significantly lower, your problem is not I/O bound and you may parallelize. In which case you should probably use the parallel package, e.g

library(parallel)
csv_files <- c(.....)
my_tables <- mclapply(csv_files, read.csv)
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I'm not sure this works, it looks like read.csv blocks concurrent reads, but I'm not sure. –  reptilicus Aug 28 '13 at 18:42

If the majority of your code execution time is spent reading the files, then it will likely be slower because the two R processes will be competing for disk I/O. But it would be faster if the majority of the time is spent "running a number of operations".

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Also number of cores matters. R is not educated in terms of multicore processing and each instance given the "operations" will stuff one core. –  user702846 Jul 18 '13 at 18:28

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