Increasing that number is of course "possible"... but it also costs a bit
(adding to the fixed memory footprint of R).
I did not set that limit, but I'm pretty sure it was also meant as reminder for the useR to "clean up" a bit in her / his R session, i.e., not load package namespaces unnecessarily. I cannot yet imagine that you need > 100 packages | namespaces loaded in your R session.
OTOH, some packages nowadays have a host of dependencies, so I agree that this at least may happen accidentally more frequently than in the past.
The real solution of course would be a code improvement that starts with a relatively small number of "DLLinfo" structures (say 32), and then allocates more batches (of size say 32) if needed.
Patches to the R sources (development trunk in subversion at https://svn.r-project.org/R/trunk/ ) are very welcome!
---- added Jan.26, 2017: In the mean time, we've had a public bug report about this, a proposed patch (which was not good enough: There is always an OS dependent limit on the number of open files), and today that bug report has been closed by R core member @TomasKalibera who implemented new code where the maximal number of loaded DLLs is set at
pmax(100, pmin(1000, 0.6* OS_dependent_getrlimit_or_equivalent()))
and so on Windows and Linux (and not yet tested, but "almost surely" macOS), the limit should be considerably higher than previously.
----- Update #2 (written Jan.5, 2018):
In Oct'17, the above change was made more automatic with the following commit to the sources (of the development version of R - only!)
r73545 | kalibera | 2017-10-12 14:41:20
Increase the number of DLLs that can be loaded by default. If needed,
increase the soft limit on open files.
and on the help page
?dyn.load (https://stat.ethz.ch/R-manual/R-devel/library/base/html/dynload.html) the
ulimit -n <num_open_files> is now mentioned (section Note close to bottom).
So you might consider using R's development version till that becomes "main stream" in April.
Alternatively, you do (in a terminal / shell)
ulimit -n 2048
and then start R from that terminal. Tomas Kalibera mentioned this to work on macOS.