# R Package with Large Size External Assets

This is a followup to a question I posted earlier. To summarize, I am writing an R Package called Slidify, which makes use of several external non-R based libraries. My earlier question was about how to manage dependencies.

Several solutions were proposed, of which the most attractive solution was to package the external libraries as a different R package, and make it a dependency for Slidify. This is the strategy followed by the package xlsx, which packages the java dependencies as a different package xlsxjars.

An alterative is for me to provide the external libraries as a download and package a install_libraries function within Slidify, which would automatically fetch the required files and download it into the package directory. I can also add an update_libraries function which would update if things change.

My question is, are there any specific advantages to doing the CRAN dance for external libraries which are not R based. Am I missing something here?

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Don't do the install_libraries hack. Using CRAN as a central repo and distribution mechanism is preferable: install.packages() already exists, as do the updating variants etc. By reinventing a new mechanism you will simply go down a slippery slope of new and untested errors. You are essentially trying to reinvent what a distro or a system like fink does. Too much complexity. –  Dirk Eddelbuettel Nov 6 '12 at 16:45
Thanks for your comemnt @Dirk. The external libraries are 10MB in size and when I read CRAN documentation, it said something to the effect of keeping things below 5MB. I see your point that CRAN provides a simple mechanism and it makes sense to use it wherever possible. –  Ramnath Nov 6 '12 at 16:53
Is it Java as for xlxs and weka? Then a jars package makes sense. Else you have the issue of binary compatibility and may have to resort on relying on the user. –  Dirk Eddelbuettel Nov 6 '12 at 17:14
It is javascripts and css. It also includes a stripped down version of mathjax which comes to around 3.6MB. –  Ramnath Nov 6 '12 at 17:31
@Dirk Perfect. I just created slidifyLibraries and set it up. This way I can separate development for the core R functions and the supporting libraries. Can you post your response as an answer so that I can accept it? Or I can synthesize your response and post an answer. Let me know –  Ramnath Nov 6 '12 at 18:49

As discussed in the comment-thread, for a package like slidify with a number of large, (mostly) fixed, and portable files, a "resource" package makes more sense:

• you will know the path where it installed (as the package itself will tell you)
• users can't accidentally put it somewhere else
• you get CRAN tests
• you get CRAN distribution, mirrors, ...
• users already know install.packages() etc
• the more nimble development of your package using these fixed parts is not held back by the large support files
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Thanks for posting a comprehensive answer @Dirk. The advantages that you describe in detail make a strong case for distributing even non-R resources via CRAN. –  Ramnath Nov 6 '12 at 19:39
You also get CRAN attitude... –  hadley Nov 7 '12 at 1:54
Maybe I take CRAN attitude over github smugness? ;-) –  Dirk Eddelbuettel Nov 8 '12 at 22:47
Well we can have both :-), since users can install slidifyLibraries from github using install_github by @hadley . –  Ramnath Nov 9 '12 at 17:40