Neither of these show the source code of pnorm function,

stats:::pnorm
getAnywhere(pnorm)  

How can i see the source code of pnorm?

sum
 (..., na.rm = FALSE)  .Primitive("sum")
.Primitive("sum")
function (..., na.rm = FALSE)  .Primitive("sum")
methods(sum)
no methods were found

and, how can I see source code of the sum function?

up vote 81 down vote accepted

The R source code of pnorm is:

function (q, mean = 0, sd = 1, lower.tail = TRUE, log.p = FALSE) 
.Call(C_pnorm, q, mean, sd, lower.tail, log.p)

So, technically speaking, typing "pnorm" does show you the source code. However, more usefully: The guts of pnorm are coded in C, so the advice in the previous question view source code in R is only peripherally useful (most of it concentrates on functions hidden in namespaces etc.).

Uwe Ligges's article in R news (p. 43) is a good general reference. From that document:

When looking at R source code, sometimes calls to one of the following functions show up: .C(), .Call(), .Fortran(), .External(), or .Internal() and .Primitive(). These functions are calling entry points in compiled code such as shared objects, static libraries or dynamic link libraries. Therefore, it is necessary to look into the sources of the compiled code, if complete understanding of the code is required. ... The first step is to look up the entry point in file ‘$R HOME/src/main/names.c’, if the calling R function is either .Primitive() or .Internal(). This is done in the following example for the code implementing the ‘simple’ R function sum().

(Emphasis added because the precise function you asked about (sum) is covered in Ligges's article.)

Depending on how seriously you want to dig into the code, it may be worth downloading and unpacking the source code as Ligges suggests (for example, then you can use command-line tools such as grep to search through the source code). For more casual inspection, you can view the sources online via the R Subversion server or Winston Chang's github mirror (links here are specifically to src/nmath/pnorm.c). (Guessing the right place to look, src/nmath/pnorm.c, takes some familiarity with the structure of the R source code.)

mean and sum are both implemented in summary.c.

  • 1
    it's in a different category from pnorm. Try mean.default for the R code, and github.com/wch/r-source/blob/trunk/src/main/summary.c for the C code. And do read Uwe Ligges's article linked above! – Ben Bolker Dec 26 '12 at 3:36
  • 1
    Just to follow up on this answer: might need to be careful about the exact function name in C or Fortran too. Example: I was trying to look up the source for stl, which calls this line : z <- .Fortran(C_stl, x, n, as.integer(period), as.integer(s.window). So i searched the Github mirror linked above by the keyword C_stl to no avail. However when I search stl there is a file called stl.f which is what I want to find. The takeaway is the .c or .f file name might not be exactly the same as the function name that is being called. – yuqli Aug 14 at 17:08

I know this post is more that 2 years old, but I thought this might be useful to some users browsing through this question.

I'm basically just copying my answer to this other similar question so that it can maybe prove useful to some R users who want to explore the C source files.

  1. First, with pryr you can do use the show_c_source function which will search on GitHub the relevant piece of code in the C source files. Works for .Internal and .Primitive functions.

    body(match.call)
    
    # .Internal(match.call(definition, call, expand.dots))
    
    pryr::show_c_source(.Internal(match.call(definition, call, expand.dots)))
    

    Which takes you to this page, showing that unique.c contains the function do_matchcall.

  2. I've put together this tab delimited file, building on the names.c file and using find-in-files to determine the location of the source code. There are some functions that have platform-specific files, and a handful of others for which there is more than one file with relevant source code. But for the rest the mapping is pretty well established, at least for the current version (3.1.2).

> methods(mean)
[1] mean.data.frame mean.Date       mean.default    mean.difftime   mean.IDate*    
[6] mean.POSIXct    mean.POSIXlt    mean.yearmon*   mean.yearqtr*  

   Non-visible functions are asterisked
> mean.default
function (x, trim = 0, na.rm = FALSE, ...) 
{
    if (!is.numeric(x) && !is.complex(x) && !is.logical(x)) {
        warning("argument is not numeric or logical: returning NA")
        return(NA_real_)
    }
    if (na.rm) 
        x <- x[!is.na(x)]
    if (!is.numeric(trim) || length(trim) != 1L) 
        stop("'trim' must be numeric of length one")
    n <- length(x)
    if (trim > 0 && n) {
        if (is.complex(x)) 
            stop("trimmed means are not defined for complex data")
        if (any(is.na(x))) 
            return(NA_real_)
        if (trim >= 0.5) 
            return(stats::median(x, na.rm = FALSE))
        lo <- floor(n * trim) + 1
        hi <- n + 1 - lo
        x <- sort.int(x, partial = unique(c(lo, hi)))[lo:hi]
    }
    .Internal(mean(x))
}
<bytecode: 0x155ef58>
<environment: namespace:base>
  • This seems not to answer the OP's original question (about pnorm), but their comment below about mean -- and note that this falls through into C code as well, at the bottom (see my comment below). – Ben Bolker Dec 26 '12 at 3:37
  • 1
    Indeed. And the "correct answer "is the one you gave earlier ... read Uwe Ligges' article in RNews. – 42- Dec 26 '12 at 3:57

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