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Just wonder if there exists something like R.cache package but working not with hard drive but with RAM instead?

Or maybe there is some hack possible in R, to make R.cache package believe that it uses hard drive, but to store it's cache to virtual drive of some kind in RAM?

I've also found this great question and tried memoise package, but it turned out to be slower then R.cache for my problem, though it works on RAM.

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2 Answers 2

up vote 4 down vote accepted

Perhaps you could make a RAM disk and specify that drive as the storage destination for your cache, using R.cache.

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+1 -- OP didn't tell us what OS he uses, but that is likely to be the best bet by far. –  Dirk Eddelbuettel Sep 29 '12 at 23:59
    
Thanks Alex. I tried three different RAM disks programs. Managed to get performance improvement only on one of them. Still it's only 25% improvement, while I expected something more like 80%. Looks like best option for me is to write my own custom cache for the problem I am trying to solve. –  GrayR Sep 30 '12 at 0:33

You might give pander's evals function a try which has a custom cache engine.

See the above link for details but in short:

  • Enable caching: evalsOptions('cache', TRUE) (default value)
  • You can set a min. eval time in seconds where the results should be cached: evalsOptions('cache.time', 0.1) (default value)
  • Specify where you want to store the cached values and hashes (disk vs. R environment): evalsOptions('cache.mode', 'environment') (default value)

A short example:

> library(pander)

> # first time run
> system.time(evals('sapply(rep(mtcars$hp, 1e3), mean)'))
   user  system elapsed 
 12.269   0.020  12.414 

> # second call
> system.time(evals('sapply(rep(mtcars$hp, 1e3), mean)'))
   user  system elapsed 
  0.003   0.000   0.003 

> # check results any time without recomputing those
> str(evals('sapply(rep(mtcars$hp, 1e3), mean)')[[1]]$result)
 num [1:32000] 110 110 93 110 175 105 245 62 95 123 ...
> str(evals('sapply(rep(mtcars$hp, 1e3), mean)'))
List of 1
 $ :List of 6
  ..$ src   : chr "sapply(rep(mtcars$hp, 1000), mean)"
  ..$ result: num [1:32000] 110 110 93 110 175 105 245 62 95 123 ...
  ..$ output: chr [1:1778] "    [1] 110 110  93 110 175 105 245  62  95 123 123 180 180 180 205 215 230  66" "   [19]  52  65  97 150 150 245 175  66  91 113 264 175 335 109 110 110  93 110" "   [37] 175 105 245  62  95 123 123 180 180 180 205 215 230  66  52  65  97 150" "   [55] 150 245 175  66  91 113 264 175 335 109 110 110  93 110 175 105 245  62" ...
  ..$ type  : chr "numeric"
  ..$ msg   :List of 3
  .. ..$ messages: NULL
  .. ..$ warnings: NULL
  .. ..$ errors  : NULL
  ..$ stdout: NULL
  ..- attr(*, "class")= chr "evals"
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Thanks, definitely will try it too. –  GrayR Oct 1 '12 at 8:13

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