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 have 4GB of RAM, and am having trouble pulling 147.6MB into memory in R in Linux, according to the error message I'm getting: Error: cannot allocate vector of size 147.6 Mb.

How can I diagnose this?

Here is my code:

IDs <- read.csv('Set1.csv')  #   2 MB
Set2 <- read.csv('Set2.csv') # 240 MB 
data <- merge(IDs, Set2, by='MemberID')
rm(IDs)                      # Remove junk! 
rm(Set2)                     # Remove junk!
gc()
print('First merge complete')

Set3 <- read.csv('Set3.csv') # 25 MB
data <- merge(data, Set3, by='MemberID')
rm(Set3)                     # Remove junk!
gc()
print('Second merge complete')

The execution halts after the first print statement. I can't understand where the extra memory usage is coming from. Looking around at documentation on memory() in R, it seems to be a contiguous memory issue? Is there a way to address this in R on Ubuntu?

Also looked at other people asking similar questions here, but the solutions proposed were Windows-specific.

EDIT 1

Some comments to address the comments below:

> print(object.size(IDs), units="Mb")
1.3 Mb
> print(object.size(Set2), units="Mb")
142.6 Mb
> print(object.size(Set3), units="Mb")
12.5 Mb

So, it doesn't look like the objects are changing size too much from being read in from CSV. I'll check up on data.table() and the rest...

EDIT 2

I have updated my code to use data.table() and have the same error. This makes me concerned that perhaps it is somehow particular to my machine? This just seems very strange for the size of the files involved. Error: cannot allocate vector of size 147.6 Mb

IDs <- as.data.table(read.csv('Set1.csv'))  #   2 MB
Set2 <- as.data.table(read.csv('Set2.csv')) # 240 MB 
data <- merge(IDs, Set2, by='MemberID')
rm(IDs)                      # Remove junk! 
rm(Set2)                     # Remove junk!
gc()
print('First merge complete')

Set3 <- as.data.table(read.csv('Set3.csv')) # 25 MB
data <- merge(data, Set3, by='MemberID')
rm(Set3)                     # Remove junk!
gc()
print('Second merge complete')

EDIT 3

Checked through my data, I suspect the problem may be here. There were some common field-names in Set3.csv, so I think it was doing nasty n x n joins or something.

share|improve this question
3  
You're somewhere in what is I think the 2nd circle of The R Inferno. Merge is very memory intensive, I assume that if you look at object.size the csv files are significantly larger than that once you've read the into R. –  Justin Apr 10 '12 at 23:18
    
I've had better luck using data.table() for merging large data objects, both in terms of memory management but also performance of operation. –  Chase Apr 10 '12 at 23:22
    
Just a quick check, you are in a fresh R session correct? –  jimmyb Apr 10 '12 at 23:38
    
Correct, jimmyb. –  Mittenchops Apr 11 '12 at 0:28
1  
Yep, I was checking with top. With more print statements, I learned that reading in is fine, but memory usage is blowing up in the merge step. Shoots up to about 3Gb for some reason. –  Mittenchops Apr 11 '12 at 1:11
show 6 more comments

1 Answer

up vote 0 down vote accepted

Switching to data.table() as @Chase suggested in the comments above, and deleting used objects liberally allowed me to process the first merge. It turned out, a later merge that was causing trouble was actually doing a Cartesian join somewhere I didn't expect due to the second dataset having non-unique keys, so I had to drop that entirely.

I temporarily got around this by subsetting data, but I had a similar error later when trying to apply a model fit to a forecast.

The moral of the story is that R functions use a lot more memory than the size of the incoming vector itself, as suggested by @Justin above, measured with object.size. Similarly for functions running out of RAM during processing operations.

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.