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Is there any method to compress data frame in R. I have an external file which I want to import into a data frame. But, since the data is large, it would result in a memory error. Although I am not sure if compression makes sense in R since it uses RAM memory for creating data structures, but it would really help me if anything synonymous to compression can be used.

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Look at this CRAN Task View. –  Roland Nov 15 '12 at 11:57
    
I think the short answer is "no", but the long answer is that the page @Roland's comment points to provides lots of strategies for dealing with large data in R. –  Ben Bolker Nov 15 '12 at 13:41
    
@Kunal Please could you state how large your data file is? It would help to know this basic fact before proceeding. And how much RAM do you have? –  Matt Dowle Nov 15 '12 at 16:40

1 Answer 1

The data.table package stores data similar to data frames but with some added efficiencies, this may compress your data sufficiently.

The more general solution would be to load your data into a database instead of directly into R, then pull just the pieces that you need from the database, the sqldf and RSQLite packages may be of help. There used to be a package called SQLiteDF that made this process transparent (the data was in a database, but you had an object in R that looked and acted like a data frame but pulled the data from the data base). There are archived copies of the package available through CRAN, but some work would probably be needed to get it working with recent versions of R (the latest version of the package was in 2009).

There are other tools on the CRAN Task View page mentioned in the comments (scroll down to the "Large Memory" section) that discuss some other possibilities and how to analyze data that is to large to work with in RAM.

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data.table doesn't compress data. Since Kunal is a new user we should probably check the basics first; e.g., how large is their large. –  Matt Dowle Nov 15 '12 at 16:44
    
The data frame is quite big around 18 GB. And I am sure R would not be able to allocate this big chunk of contiguous memory. Also, this data frame would keep on increasing in size as per my process. –  Kunal Batra Nov 19 '12 at 8:15
    
@MatthewDowle, you are correct that data.table does not compress, I believe that it makes fewer copies when editing which can be useful for datasets that fit in memory, but take up most of it. In this case the original poster will need to use the other suggestions. –  Greg Snow Nov 19 '12 at 15:49
    
@KunalBatra Thanks. Where did the 18GB figure come from? It can't be the result of object.size() because you haven't loaded the data yet. Is it the size of the text file on disk? If so that's usually not a good measure of what you need in RAM. Would be great if you could next tell us how many rows (wc -l) and how many columns are in the file. –  Matt Dowle Nov 19 '12 at 16:44
    
@Matthew Dowle: I have created a process in which there are some cross joins happening which result in such huge amount of data. Since, I canot load this amount of data into R, I am trying to find out if I can load that data in an incremental process from database into R and do the futher processing. But, for that I am not able to find out if there is a way where I can join a R dataframe and mysql table with each other. I dont think sqldf allows that. I have also created a separate thread asking this question but havent got an answer yet. –  Kunal Batra Nov 20 '12 at 5:40

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