# How to analyze the length of time a specific function runs in R

I just got a gig to help speed up a program in R by improving the efficiency of the algorithms used to calculate data. There are many loops that do different calculations, and I'm wondering which loops end up using the most resources. I want to know how can I count the amount of time it takes for a loop to completely finish. I can use that information to figure out which algorithms to optimize, or even to write a C extension that will handle the calculations.

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You can use:

• `Sys.time()` or `system.time()`
• The `rbenchmark` package
• The `microbenchmark` package
• Or a profiler (e.g. `?RProf`)
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Do you list them in order ? –  agstudy Dec 4 '12 at 18:46
For the first bullet point, you can use `beg <- Sys.time(); { MyCode() }; Sys.time() - beg` or `system.time({ MyCode() })` which is probably preferable. –  GSee Dec 4 '12 at 18:59
Thank you, that helps a lot! –  user1876508 Dec 4 '12 at 20:51

here is an example of using benchmark from another SO questions which compared using `tapply` vs `by` vs `data.table`: Edited as per on comments

``````library(rbenchmark)

# Different tests being compared
benchmark( using.tapply = tapply(x[, 1], x[, "f"], mean),
using.by = by(x[, 1], x[, "f"], mean),
using.dtable = dt[,mean(col1),by=key(dt)]),

# Number of reps. How results are.
replications = 250, order = "relative"
)

#------------------------#
#         RESULTS        #
#------------------------#

#   COMPARING data.table VS tapply VS by   #
#------------------------------------------#
#             test elapsed relative
#   2  using.dtable   0.168    1.000
#   1  using.tapply   2.396   14.262
#   3      using.by   8.566   50.988
``````
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what's with all the `expression`s? –  GSee Dec 4 '12 at 18:44
@ GSee. I like to save them as expressions so that I can easily change the input once across all my tests. (Also, I find it gives a nicer output in the `test` column) –  Ricardo Saporta Dec 4 '12 at 18:47
`benchmark(using.tapply=tappyl(x[, 1], x[, "f"], mean), using.by=by(x[, 1], x[, "f"], mean), using.dtable=dt[, mean(col1),by=key(dt)], replications=10, order='relative')` ... whatever `x` and `dt` are –  GSee Dec 4 '12 at 18:49
Just name the `...` arguments: `benchmark(using.tapply=tapply(x[, 1], x[, "f"], mean))`. –  Joshua Ulrich Dec 4 '12 at 18:50
Put each test on its own line. Then you can easily add/remove them. The biggest problem I see with using `expression` is that you're probably going to confuse others who look at your code. –  Joshua Ulrich Dec 4 '12 at 18:59

I use `Rprof` to tell where to look. It generates a file of stack samples, and I just look at a small number of those, like 10, chosen randomly. Or I just make the time between samples large enough so I don't get too many samples to begin with.

There are 2 reasons this works.

1) By actually examining individual stack samples, with your own eyes, you can see problems that simple statistics don't expose, because by looking at the stack, you can see the reasons why things are being done. That tells you if you could get rid of it, and that's the essential information.

2) If you see such a pattern of activity that you could improve, you only have to see it on more than one sample to know it's worth fixing. All the extra samples, if they mean you cannot do (1), are actually detrimental.

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