Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I use R for most of my statistical analysis. However, cleaning/processing data, especially when dealing with sizes of 1Gb+, is quite cumbersome. So I use common UNIX tools for that. But my question is, is it possible to, say, run them interactively in the middle of an R session? An example: Let's say file1 is the output dataset from an R processes, with 100 rows. From this, for my next R process, I need a specific subset of columns 1 and 2, file2, which can be easily extracted through cut and awk. So the workflow is something like:

Some R process => file1
cut --fields=1,2 <file1 | awk something something >file2
Next R process using file2

Apologies in advance if this is a foolish question.

share|improve this question
1  
See ?system for how to run shell commands from within R. –  Joshua Ulrich Oct 25 '11 at 16:15
    
@Joshua: In my opinion posting this as an answer would be better practice. It would cause the display of [r] questions to have a non-zero answer and allow it to be accepted. –  BondedDust Oct 25 '11 at 16:18
    
Maybe. I always feel a little guilty posting a super-short answer or one that I haven't explained in detail, so I leave it as a comment and let someone else (or the OP) re-post with more details as an answer ... –  Ben Bolker Oct 25 '11 at 18:18
add comment

5 Answers

up vote 8 down vote accepted

Try this (adding other read.table arguments if needed):

# 1
DF <- read.table(pipe("cut -fields=1,2 < data.txt| awk something_else"))

or in pure R:

# 2
DF <- read.table("data.txt")[1:2]

or to not even read the unwanted fields assuming there are 4 fields:

# 3
DF <- read.table("data.txt", colClasses = c(NA, NA, "NULL", "NULL"))

The last line could be modified for the case where we know we want the first two fields but don't know how many other fields there are:

# 3a
n <- count.fields("data.txt")[1]
read.table("data.txt", header = TRUE, colClasses = c(NA, NA, rep("NULL", n-2)))

The sqldf package can be used. In this example we assume a csv file, data.csv and that the desired fields are called a and b . If its not a csv file then use appropriate arguments to read.csv.sql to specify other separator, etc. :

# 4
library(sqldf)
DF <- read.csv.sql("data.csv", sql = "select a, b from file")
share|improve this answer
    
Great answers, all. I wish I could check both Grothendieck's and Dirk's responses as accepted. Many thanks. –  user702432 Oct 25 '11 at 16:36
add comment

I think you may be looking for littler which integrates R into the Unix command-line pipelines.

Here is a simple example computing the file size distribution of of /bin:

edd@max:~/svn/littler/examples$ ls -l /bin/ | awk '{print $5}' | ./fsizes.r 
   Min. 1st Qu.  Median    Mean 3rd Qu.    Max.    NA's 
      4    5736   23580   61180   55820 1965000       1 

  The decimal point is 5 digit(s) to the right of the |

   0 | 00000000000000000000000000000000111111111111111111111111111122222222+36
   1 | 01111112233459
   2 | 3
   3 | 15
   4 | 
   5 | 
   6 | 
   7 | 
   8 | 
   9 | 5
  10 | 
  11 | 
  12 | 
  13 | 
  14 | 
  15 | 
  16 | 
  17 | 
  18 | 
  19 | 6

edd@max:~/svn/littler/examples$ 

and it takes for that is three lines:

edd@max:~/svn/littler/examples$ cat fsizes.r 
#!/usr/bin/r -i

fsizes <- as.integer(readLines())
print(summary(fsizes))
stem(fsizes)
share|improve this answer
3  
I think litter is a different package. :) That one tends to clog the pipes. –  Iterator Oct 25 '11 at 16:20
    
Hah! Good catch. –  Dirk Eddelbuettel Oct 25 '11 at 16:21
add comment

See ?system for how to run shell commands from within R.

share|improve this answer
add comment

Staying in the tradition of literate programming, using e.g. org-mode and org-babel will do the job perfectly:

You can combine several different programming languages in one script and execute then separate, in sequence, export the results or the code, ...

It is a little bit like sweave, only that the code blocks can by python, bash, R, sql, and numerous other. Check t out: org-mode and bable and an example using different programming languages

Apart from that, I think org-mode and babel is the perfect way of writing even pure R scripts.

share|improve this answer
add comment

Preparing data before working with it in R is quite common, and I have a lot of scripts for Unix and Perl pre-processing, and have, at various times, maintained scripts/programs for MySQL, MongoDB, Hadoop, C, etc. for pre-processing.

However, you may get better mileage for portability if you do some kinds of pre-processing in R. You might try asking new questions focused on some of these particulars. For instance, to load large amounts of data into memory mapped files, I seem to evangelize bigmemory. Another example is found in the answers (especially JD Long's) to this question.

share|improve this answer
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.