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 data.table package inside my own package and I import data.table namespace in NAMESPACE and DESCRIPTION files. In one of my functions I use data.table function to convert data.frame into data.table

dt <- data.table(df)

But when I call my function, at the point of calling data.table() memory usage jumps instantly and R just stops responding. The code within the function works fine when I run it line by line and with low memory consumption. Also, if I put library(data.table) within my function everything is fine. I was trying to avoid putting library(data.table) in my function and declare dependency instead. However, it seems something is going wrong that way. I am running R-2.14.0 on Mac OS X 10.6.8

Can anybody explain what could be a reason, and how can I fix that (without using library(data.table) within my function)?

share|improve this question
2  
How do you do the import in the namespace and description files? –  Dason May 17 '12 at 1:39
2  
It is hard to diagnose the problem without a reproducible example. Can you provide the source for your package? –  jthetzel May 17 '12 at 2:12

1 Answer 1

Some random guesses in no particular order :

Try use the Imports or Depends field in DESCRIPTION only. I don't think you need to import in NAMESPACE as well, but I might be wrong. Why that would explain the memory use though, don't know.

What is df? Is it big or somehow recursive or strange in some way? Please provide str(df) to tell us something about it, if possible.

Try as.data.table(df) which is faster than data.table(df). But it sounds like your problem is different to that.

Is your function call being called repeatedly? I can see why repeatedly converting df to dt would use up memory, but not why just calling library(data.table) would make that fast.

Try starting R with R --vanilla to ensure no .Rdata (which may include functions masking data.table's) is being loaded on startup, amongst other things. If you have developed your own package then some kind of function name conflict, or the order of packages on the search() path sounds plausible.

Otherwise we'll need more information please. I don't recall anything similar to this happening to me, or being reported before.

And, which version of data.table are you using? There is this bug fix in v1.8.1 on R-Forge (not yet on CRAN) :

  • Moved data.table setup code from .onAttach to .onLoad so that it is also run when data.table is simply imported from within a package, fixing #1916 related to missing data.table options.

But if you are using 1.8.0 from CRAN, and are Importing (only) rather than Depending then I'd expect you to get an error about missing options rather than a jump in memory consumption.

share|improve this answer
    
I am using data.table v1.8.0. So if I import only, I should get an error message, but I don't. It seems that in this case some other data.table function is found in the search path and that one causes a big memory consumption. I have tried putting data.table under Depends and than everything works fine. df is a data.frame with ~500000 rows and 4 columns, and when I run the code with data.table under Depends memory consumption is ~2 GB. However, when data.table is under Imports, memory consumption for the same code is ~40 GB (I have tried to run it on the server instead on my Mac) –  Vanja May 17 '12 at 14:01
    
Can you upgrade to 1.8.1? At least just to see if that bug fix fixes it. You say another data.table function is found in the search path, can you find it? –  Matt Dowle May 17 '12 at 14:11
    
Upgrading to 1.8.1 fixed everything. Now it works normally for both Importing and Depending. I don't know what was the issue with the old version when put under Import. It seems data.table was being created somehow although I could not find the data.table function in the search path?!: cat(class(df)) > data.frame find("data.table") > character(0) dt <- data.table(df) *jump in memory cat(class(dt)) > data.table data.frame So data.table has been created, but when trying to use "[" function on the created dt, an error about missing options occurs. –  Vanja May 17 '12 at 15:27
    
If I provide missing options by: options(datatable.nomatch=0) options(datatable.verbose=F) the code runs all the way through, does the job, but the memory consumption is 20X higher than normally. –  Vanja May 17 '12 at 15:28
    
Great. I assume in last comment you're talking about 1.8.0 not 1.8.1. Thanks for extra info. I can now reproduce this and have filed bug#2014 explaining what is going on. If you need to stay with 1.8.0 and Import only, then set options(datatable.alloccol=100L) too and the memory consumption problem should go away. Or, Depend instead or upgrade to 1.8.1. In your import field you could specify data.table version 1.8.1 or later. Thanks! –  Matt Dowle May 17 '12 at 16:54

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.