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I have a program that outputs lines of CSV data that I want to load into a data frame. I currently load the data like so:

tmpFilename <- "tmp_file"
system(paste(procName, ">", tmpFilename), wait=TRUE)
myData <- read.csv(tmpFilename) # (I also pass in colClasses and nrows for efficiency)

However, I thought redirecting the output to a file just to read from it was inefficient (the program spits out about 30MB, so I want to handle it with optimal performance). I thought textConnection would solve this, so I tried:

con <- textConnection(system(procName, intern=TRUE))
myData <- read.csv(con)

This runs a lot slower, though, and whereas the first solution degrades linearly with input size, the textConnection solution's performance degrades exponentially it seems. The slowest part is creating the textConnection. read.csv here actually completes quicker than in the first solution since it's reading from memory.

My question is then, is creating a file just to run read.csv on it my best option with respect to speed? Is there a way to speed up the creation of a textConnection? bonus: why is creating a textConnection so slow?

share|improve this question
It appears that you're creating an extra vector containing the entire output, with intern=TRUE. That vector will continue to grow as output is produced, which will continually allocate memory. If you split that line into two commands, output <- system(procname, intern=TRUE); con <- textConnection(output), I highly suspect that the system command will be taking most of the time. – Matthew Lundberg May 17 '13 at 3:15
right, so if I split it up, the longest statement is the textConnection(output) call. By "longest", I mean system takes a couple seconds, read.csv takes another couple seconds, textConnection() takes 4 minutes. – Hudon May 17 '13 at 3:24
Wow. What OS is this? If it's Linux, I would create the file under /dev/shm which will use nothing but RAM. – Matthew Lundberg May 17 '13 at 3:26
yes, Linux. However, some users will be Windows users. Ideally, I'd get a solution for both, but that's still a handy tip – Hudon May 17 '13 at 3:28
Possibly helpful:… – Ricardo Saporta May 17 '13 at 3:36
up vote 3 down vote accepted

The "fastest way" will probably involve using something other than read.csv. However, sticking with read.csv, using pipe may be the way to go:

myData <- read.csv(pipe(procName))

It avoids reading the full text output into an intermediate buffer (at least before read.csv gets ahold of it).

Some timing comparisons:

> write.csv(data.frame(x=rnorm(1e5)), row.names=FALSE, file="norm.csv")
> system.time(d <- read.csv("norm.csv"))
   user  system elapsed 
  0.398   0.004   0.402 
> system.time(d <- read.csv(textConnection(system("cat norm.csv", intern=TRUE))))
   user  system elapsed 
 56.159   0.106  56.095 
> system.time(d <- read.csv(pipe("cat norm.csv")))
   user  system elapsed 
  0.475   0.012   0.531 
share|improve this answer
Just tried this and it seems to be precisely what I was looking for (shaved off some seconds). I had no idea about pipe. Thank you! – Hudon Jul 1 '13 at 12:29

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