I've hit a wall trying to merge a large file and a smaller one. I have read many other posts about memory management in R, and haven't been able to find a non-extreme (go 64bit, upload to a cluster, etc) method of resolving it. I've tried a bit with the bigmemory package, but not been able to find a solution. I thought I'd try here before I throw my hands up in frustration.
The code I'm running is like the below:
#rm(list=ls()) localtempdir<- "F:/Temp/" memory.limit(size=4095)  4095 memory.size(max=TRUE)  487.56 gc() used (Mb) gc trigger (Mb) max used (Mb) Ncells 170485 4.6 350000 9.4 350000 9.4 Vcells 102975 0.8 52633376 401.6 62529185 477.1 client_daily<-read.csv(paste(localtempdir,"client_daily.csv",sep=""),header=TRUE) object.size(client_daily) >130MB sbp_demos<-read.csv(paste(localtempdir,"sbp_demos",sep="")) object.size(demos) >0.16MB client_daily<-merge(client_daily,sbp_demos,by.x="OBID",by.y="OBID",all.x=TRUE) Error: cannot allocate vector of size 5.0 MB
I guess I'm asking are there any clever ways around this which don't involve buying new hardware?
- I need to be able to
mergeto create a bigger object.
- I'll then need to be doing regressions etc with that bigger object.
Should I give up? Should bigmemory be able to help solve this?
Any guidance greatly appreciated.
Details: R version 2.13.1 (2011-07-08) Platform: i386-pc-mingw32/i386 (32-bit) Intel 2 Duo Core @2.33GHz, 3.48GB RAM