Memory limit for Windows 64bit build of R
On 06/08/2012 09:42, Uwe Ligges wrote:
On 06.08.2012 09:34, David Winsemius wrote:
On Aug 5, 2012, at 3:52 PM, Alan.X.Simpson at nab.com.au wrote:
Dear all I have a Windows Server 2008 R2 Enterprise machine, with 64bit R installed running on 2 x Quad-core Intel Xeon 5500 processor with 24GB DDR3 1066 Mhz RAM. I am seeking to analyse very large data sets (perhaps as much as 10GB), without the addtional coding overhead of a package such as bigmemory().
It may depend in part on how that number is arrived at. And what you plan on doing with it. (Don't consider creating a dist-object.)
My question is this - if we were to increase the RAM on the machine to (say) 128GB, would this become a possibility? I have read the documentation on memory limits and it seems so, but would like some additional confirmation before investing in any extra RAM.
The trypical advices is you will need memory that is 3 times as large as a large dataset, and I find that even more headroom is needed. I have
The advice is 'at least 3 times'. It all depends what you are doing (and how slow your swap is -- on Windows it is likely to be slow; on a Linux box with a fast SSD it can be viable to use swap).
32GB and my larger datasets occupy 5-6 GB and I generally have few problems. I had quite a few problems with 18 GB, so I think the ratio should be 4-5 x your 10GB object. I predict you could get by with 64GB.
But 3 x 18GB > 32GB!
(please send check for half the difference in cost between 64GB abd 128 GB.)
10Gb objects should be fine, but note that a vector/array/matrix cannot exceed 2^31-1 elements, hence a 17Gb vector/matrix/array of doubles / reals.
That's true for R 2.15.1, but not the development version. Further, R-devel makes substantially fewer copies of objects, most of which improvements have been ported to R-patched. dist() is one example of substantial improvements.
Brian D. Ripley, ripley at stats.ox.ac.uk Professor of Applied Statistics, http://www.stats.ox.ac.uk/~ripley/ University of Oxford, Tel: +44 1865 272861 (self) 1 South Parks Road, +44 1865 272866 (PA) Oxford OX1 3TG, UK Fax: +44 1865 272595