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Consider these two pieces of code. In the first one, things work normally, and the memory usage of R is stable:

for (i in 1:100) {
x <- rnorm(1000000)
write.table(x, file="test", col.names=F, append=T)

Now consider this related code, where I am scraping information from the World Bank about some economic indicator. Here, the memory usage goes up as the loop is iterated:

for (i in 1:26) {
x <- getURL(paste("", as.character(i), sep=""))
x <- xmlToDataFrame(x)
write.table(x, file="test", col.names=F, append=T)

What is the difference between these two snippets from the point of view of writing data, and how can I ensure that the second one releases memory properly?

share|improve this question
My R is version 2.15 and my XML is version 3.9-4.1, which seem to be the most recent updates. – qua Jun 21 '12 at 23:30
windows is what i'm running – qua Jun 21 '12 at 23:39
i've tried updating to XML version 3.93-0 via downloading the source code and using Rtools, but to no avail. also downloading via the repository at doesn't work – qua Jun 22 '12 at 0:31
Your code works perfectly for me. Are working on a 32bit or 64bit system? – Davy Kavanagh Jun 22 '12 at 9:20
i'm working on 64bit. the linked stackoverflow page above mentions an updated binary for xml at omegahat, but this isn't available from it – qua Jun 22 '12 at 12:53
up vote 0 down vote accepted

Ok, I did this to make it work. I downloaded the binary from, and installed using install.packages("XML", repos=NULL). It only worked in 32 bit R.

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