# R vs. Matlab: Explanation for speed difference for rnorm, qnorm and pnorm functions

I compared the performance of the inbuilt R functions `rnorm`, `qnorm` and `pnorm` to the equivalent Matlab functions.

It seems as if the `rnorm` and `pnorm` functions are 3-6 times slower in R than in Matlab, whereas the `qnorm` function is ca. 40% faster in R. I tried the Rcpp package to speed up the R functions by using the corresponding C libraries which resulted in a decrease in runtime by ~30% which is still significantly slower than Matlab for `rnorm` and `pnorm`.

Is there a package availabe which provides a faster way of simulating normally distributed random variables in R (other than using the standard `rnorm` function)?

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you've probably figured this out already, but the other thing to note is that picking big block of random numbers is much faster in R than picking them one-by-one ... i.e. `rnorm(1e6)` is much faster than `vapply(seq(1e6),function(i) rnorm(1),numeric(1))` – Ben Bolker Feb 14 '13 at 15:23

To promote my comment to an answer: yes, there is.

`library("sos"); findFn("Ziggurat")` finds the rziggurat function in the `SuppDists` package; it is implemented in C (or C++?), and its documentation says

This implementation running in R is approximately three times as fast as rnorm().

The other point to note, which may make as much or more difference in practice, is that picking big block of random numbers is much faster in R than picking them one-by-one ... i.e. `rnorm(1e6)` is much faster than `vapply(seq(1e6),function(i) rnorm(1),numeric(1))`

`````` library("SuppDists")
library("rbenchmark")
n <- 1e5
benchmark(rziggurat(n),
rnorm(n),
vapply(seq(n),function(x) rnorm(1),numeric(1)))

##           test   elapsed   relative user.self
## 2     rnorm(n)     1.138     13.233     1.140
## 1 rziggurat(n)     0.086      1.000     0.088
## 3  vapply(...)    29.043    337.709    29.046
``````
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Thanks Ben for this hint! It actually improves the runtime by a factor of 6 on my machine. Maybe there is another package which also improves the runtime for the pnorm function? – user1372987 Feb 15 '13 at 8:57
Note that that Ziggurat implementation works only on 32-bit OSs. I put something better onto CRAN earlier this year in RcppZiggurat. – Dirk Eddelbuettel Sep 3 '14 at 0:42

I see two distinct issues here, one in each paragraph:

• Yes, there are difference between languages / systems such as R and Matlab. Part of it has to do with the interpreter, speed of loops, speed of function calls etc pp. Rcpp can help there with respect to Matlab which has a genuine JIT compiler. We have a comparison between Matlab, R and R+Rcpp for a Kalman filter in the recent paper on RcppArmadillo.

• There also are difference in the underlying compiled code, and yes, R does not always have the faster implementation as R Core (IMHO rightly) goes for precision first. (And Rcpp does not help per se: We just call what R has internally.) This had come up eg with the Gibbs Sampler example for MCMC which Darren Wilkinson started. I noticed that R's `rgamma()` is much slower than other systems. So to get to your question regarding N(0,1) draws in a faster way: I think we need a contributed Ziggurat implementation. That is one of the faster N(0,1) generators out there, and a few other systems use it.

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Indeed: `library("sos"); findFn("Ziggurat")` finds finzi.psych.upenn.edu/R/library/SuppDists/html/ziggurat.html , which says " This implementation running in R is approximately three times as fast as rnorm(). " – Ben Bolker Feb 14 '13 at 15:03
Thanks, Ben. I think I once I knew that but filed it under "good, and now I need it from C++..." and forgot. – Dirk Eddelbuettel Feb 14 '13 at 15:04
you could probably just steal the code -- it's GPL ... – Ben Bolker Feb 14 '13 at 15:06
Yep -- Ziggurat goes back to a JSS paper and free implementation. Matter of available time and other projects... – Dirk Eddelbuettel Feb 14 '13 at 15:25
(Coming back to this months later:) I actually released a package RcppZiggurat earlier this year. – Dirk Eddelbuettel Sep 3 '14 at 0:40