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Is there anyway to speed up the following process in R?

theFiles <- list.files(path="./lca_rs75_summary_logs", full.names=TRUE, pattern="*.summarylog")

listOfDataFrames <- NULL
masterDataFrame <- NULL

for (i in 1:length(theFiles)) {
    tempDataFrame <- read.csv(theFiles[i], sep="\t", header=TRUE)
    #Dropping some unnecessary row
    toBeRemoved <- which(tempDataFrame$Name == "")
    tempDataFrame <- tempDataFrame[-toBeRemoved,]
    #Now stack the data frame on the master data frame
    masterDataFrame <- rbind(masterDataFrame, tempDataFrame)

Basically, I am reading multiple csv files in a directory. I want to combine all the csv files to one giant data frame by stacking the rows. The loop seems to longer to run as the masterDataFrame is growing in size. I am doing this on a linux cluster.

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1 Answer 1

up vote 8 down vote accepted
out <- do.call(rbind, lapply(theFiles, function(x) {
    tt <- read.table(x, header=TRUE, sep="\t")
    # filter whatever you want

Alternatively, if you could also use rbindlist from the data.table package instead of rbind which is a little faster. Just make sure that your columns aren't factor with the argument stringsAsFactors=FALSE in that case (as rbindlist doesn't handle factors yet):

out <- rbindlist(lapply(theFiles, function(x) {
    ## note that parameter stringsAsFactors set to FALSE
    tt <- read.table(x, header=TRUE, sep="\t", stringsAsFactors=FALSE)
    # filter whatever you want
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Thank you. rbindlist really speed things up! –  WonderSteve Apr 11 '13 at 23:16
Use fread instead of read.csv if you are going down the data.table path.... –  mnel Apr 11 '13 at 23:43

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