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I have some very big delimited data files and I want to process only certain columns in R without taking the time and memory to create a data.frame for the whole file.

The only options I know of are read.table which is very wasteful when I only want a couple of columns or scan which seems too low level for what I want.

Is there a better option, either with pure R or perhaps calling out to some other shell script to do the column extraction and then using scan or read.table on it's output? (Which leads to the question how to call a shell script and capture its output in R?).

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marked as duplicate by Blue Magister, joran, Brian Diggs, lpapp, Aniket Kulkarni May 13 at 4:28

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

    
A whole set of useful answers here. Any one of them would be helpful for a given context. The accepted one was simply the closest to my actual case and included a code snippet. (I could just have well have picked Dirk but it looks like he has plenty of reputation already ;-) ) –  Alex Stoddard Feb 3 '10 at 19:14
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Best answer is in new question stackoverflow.com/q/5788117/168747 –  Marek Apr 26 '11 at 10:20

5 Answers 5

up vote 25 down vote accepted

Sometimes I do something like this when I have the data in a tab-delimited file:

df <- read.table(pipe("cut -f1,5,28 myFile.txt"))

That lets cut do the data selection, which it can do without using much memory at all.

[Incorrect pure R version deleted] - see Only read limited number of columns in R for correct pure R version, using NULL in colClasses argument to read.table.

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Your first example is pretty much exactly what I have ended up using. (awk instead of cut in my case because of an irregular delimited file format). Your second example isn't truly equivalent as I understand it. Isn't it going to create the whole data.frame only to throw it away again? When I want 2 of 10 columns from a million row file that is a big different in performance. –  Alex Stoddard Feb 3 '10 at 18:14
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No, the pure R equivalant would be something like (assuming 28 colums) mycols <- rep(NULL, 28); mycols[c(1,5,28)] <- NA; df <- read.table(file, colClasses=mycols) –  Dirk Eddelbuettel Feb 3 '10 at 19:10
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@DirkEddelbuettel I just chanced upon this. It does appear that NULL needs to be in quotes. –  b70568b5 Oct 16 '13 at 7:55
    
I like the solution provided by @DirkEddelbuettel, however as for .@RJ I had to put NULL in quotes. 'mycols <- rep("NULL", 28)' –  Tom Evans Jan 7 at 11:44

One possibility is to use pipe() in lieu of the filename and have awk or similar filters extract only the columns you want.

See help(connection) for more on pipe and friends.

Edit: read.table() can also do this for you if you are very explicit about colClasses -- a value of NULL for a given column skips the column alltogether. See help(read.table). So there we have a solution in base R without additional packages or tools.

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There is a package, colbycol, designed to do exactly what you are looking for:

http://cran.r-project.org/web/packages/colbycol/index.html

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Actually this looks like it still processes all the columns but without the in memory restrictions. Might be very useful in a slightly different context. –  Alex Stoddard Feb 3 '10 at 17:44
    
This package is no longer avaliable on CRAN. –  Marciszka Oct 15 at 6:44

I think Dirk's approach is straight forward as well as fast. An alternative that I've used is to load the data into sqlite which loads MUCH faster than read.table() and then pull out only what you want. the package sqldf() makes this all quite easy. Here's a link to a previous stack overflow answer that gives code examples for sqldf().

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This is probably more than you need, but if you're operating on very large data sets then you might also have a look at the HadoopStreaming package which provides a map-reduce routine using Hadoop.

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