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R has some tools for memory profiling, like Rprofmem(), Rprof() with option "memory.profiling=TRUE" and tracemem(). The last one can only be used on objects, and hence is useful to follow how many times an object is copied, but doesn't give an overview on a function basis. Rprofmem should be able to do that, but the output of even the simplest function call like lm() gives over 500 lines of log. I tried to figure out what Rprof("somefile.log",memory.profile=T) actually does, but I don't think I really get it.

The last I could find was this message of Thomas Lumley, saying that, and I quote :

I do not yet have tools to summarize the output.

This was in 2006. Any chance there are options for some nice summaries now, based on either Rprofmem(), the mysterious output of Rprof() with memory.profile set TRUE or any other tool?

share|improve this question
Already looking forward to your RprofmemSummary package :) – Dirk Eddelbuettel Mar 3 '11 at 18:38
@Dirk I reckon that's a "Good luck, poor lad..." :) – Joris Meys Mar 3 '11 at 18:43
I'd to add this capability to profr. Hoping to find an interested student one day. It could be a good google summer of code project if you wanted to write it up. I'd be happy to co-mentor. – hadley Mar 5 '11 at 16:16
@hadley : I currently have no time to start with this, but if you didn't find an interested student by the summer, you can take me up on the challenge. Thx for the offer. – Joris Meys Mar 6 '11 at 22:48
Hi everyone, I just read there any advance since Mar 2011 ? – cafe876 Aug 17 '12 at 12:43
up vote 5 down vote accepted

profvis looks like the the solution to this question.

It generates an interactive .html file (using htmlwidgets) showing the profiling of your code.

The introduction vignette is a good guide on its capability.

Taking directly from the introduction, you would use it like this:


# Generate data
times <- 4e5
cols <- 150
data <- = matrix(rnorm(times * cols, mean = 5), ncol = cols))
data <- cbind(id = paste0("g", seq_len(times)), data)
    data1 <- data   # Store in another variable for this run

    # Get column means
    means <- apply(data1[, names(data1) != "id"], 2, mean)

    # Subtract mean from each column
    for (i in seq_along(means)) {
        data1[, names(data1) != "id"][, i] <- data1[, names(data1) != "id"][, i] - means[i]
}, height = "400px")

Which gives

enter image description here

share|improve this answer
thx pal, didn't know about this one yet. Valuable tool for sure. – Joris Meys May 10 at 8:12
@JorisMeys - no worries, only just found it myself. Worth noting it's still in development so it's a relatively new package. – Symbolix May 10 at 8:17

Check out profr -- it seems like exactly what you're looking for.

share|improve this answer
Oops, nm -- just saw the comment by the profr author above ... – J. Taylor Mar 7 '11 at 3:14

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