I have encountered this problem a few times, and am not able to figure out any solution but the trivial one (see below).
Suppose a computer is running 2+ instances of R, due to either 2+ users or 1 user running multiple processes, and one instance executes
update.packages(). I've had several times where the other instance can get fouled up big time. The packages being updated don't change functionality in any way that affects computation, but somehow a big problem arises.
The trivial solution (Solution 0) is to terminate all instances of R while
update.packages() executes. This has 2+ problems. First, one has to terminate R instances. Second, one may not even be able to identify where those instances are running (see update 1).
Assuming that the behavior of the code being executed won't change (e.g. package updates are all beneficial - they only fix bugs, improve speed, reduce RAM, and grant unicorns), is there some way to hot-swap a new version of package with less impact on other processes?
I have two more candidate solutions, outside of R:
Solution 1 is to use a temporary library path and then delete the old old library and move the new one into its place. The drawback of this is that deletes + moves can incur some time during which nothing is available.
Solution 2 is to use symlinks to point to a library (or library hierarchy) and just overwrite a symlink with a pointer to a new library where the updated package resides. That seems to incur even less package downtime - the time it takes for the OS to overwrite a symlink. The downside of this is that it requires a lot more care in managing symlinks, and is platform-specific.
I suspect that solution #1 could be modified to be like #2, by clever use of
.libPaths(), but this seems like one needs to not call
update.packages() and instead write a new updater that finds the outdated packages, installs them to a temporary library, and then updates the library paths. The upside of this is that one could constrain an existing process to the
.libPaths() it had when it started (i.e. changing the library paths R knows about might not be propagated to those instances that are already running, without some explicit intervention within that instance).
Update 1. In the example scenario, the two competing R instances are on the same machine. This is not a requirement: as far as I understand the updates, if the two share the same libraries, i.e. the same directories on a shared drive, then the update can still cause problems, even if the other instance of R is on another machine. So, one could accidentally kill an R process and not even see it.