R, and thus fiery, is single threaded, meaning that every request must be handled one at a time. Because of this it is of utmost importance to keep the computation time for each request handling as low as possible so that the server does not become unresponsive. Still, sometimes you may need to perform long running computations as part of the server functionality. fiery comes with three different facilities for this, each with its own use case. All of them are build on top of the future package.
All three methods have the same general API. They can recieve an
expression to evaluate, as well as a then
function to call
once the evaluation eventually completes. The then
function
will recieve the result of the provided expression as well as the server
itself. In general, any code that works on the server should be handled
by the then
function as the expression will not necessarily
have access to the current environment. Thus, the expression should be
as minimal as possible while still containing the heavy part of the
calculations, while the then
function should be used to act
upon the result of the expression.
The general format is thus (using delay()
as an
example):
app$delay({
# Heavy calculation
}, then = function(res, server) {
# Do something with 'res' (the result of the expression) and 'server' the
# server object itself
})
If it is important to achieve a fast response time, but server
congestion is of lesser concern (the server might be used for a local
app with only one user at a time), the delay()
method can
be used to push the evaluation of long running computation to the end of
the current cycle. It will of course not be possible to return the
result of the computation as part of the response, but e.g. a
202
response can be returned instead indicating that the
request is being processed. In that way the client can act accordingly
without appearing frozen. An alternative if a lengthy POST request is
recieved is to return 303
with a reference to the URL where
the result can be recieved.
If long running computations are needed and congestion is an issue it
does not help to simply push back execution to the end of the cycle as
this will block requests while the code is evaluating. Instead it is
possible to use the async()
method to evaluate the
expression in another thread. This method uses
future::multiprocess()
to evaluate the expression and may
thus fork the current R process if supported (Unix systems) or start
another R session (Windows). At the end of each cycle all async
evaluations are checked for completion, and if completed the
then
function will be called with the result. If the async
evaluation is not completed it will continue to churn.
If code is meant to be evaluated after a certain amount of time has
passed, use the time()
method. In addition to
expr
and then
, time()
takes two
additional arguments: after
(the time in seconds to wait
before evaluation) and loop
(whether to repeat the timed
evaluation after completion). Using loop = TRUE
it is
e.g. possible to continually check for state changes on the server and
e.g. run some specific code if new files appear in a directory. In the
end of each cycle all timed expressions will be checked for whether they
should be evaluated and run if their specific time interval has
passed.