Currently I'm experimenting with a little Haskell web-server written in Snap that loads and makes available to the client a lot of data. And I have a very, very hard time gaining control over the server process. At random moments the process uses a lot of CPU for seconds to minutes and becomes irresponsive to client requests. Sometimes memory usage spikes (and sometimes drops) hundreds of megabytes within seconds.
Hopefully someone has more experience with long running Haskell processes that use lots of memory and can give me some pointers to make the thing more stable. I've been debugging the thing for days now and I'm starting to get a bit desperate here.
A little overview of my setup:
On server startup I read about 5 gigabytes of data into a big (nested) Data.Map-alike structure in memory. The nested map is value strict and all values inside the map are of datatypes with all their field made strict as well. I've put a lot of time in ensuring no unevaluated thunks are left. The import (depending on my system load) takes around 5-30 minutes. The strange thing is the fluctuation in consecutive runs is way bigger than I would expect, but that's a different problem.
The big data structure lives inside a 'TVar' that is shared by all client threads spawned by the Snap server. Clients can request arbitrary parts of the data using a small query language. The amount of data request usually is small (upto 300kb or so) and only touches a small part of the data structure. All read-only request are done using a 'readTVarIO', so they don't require any STM transactions.
The server is started with the following flags: +RTS -N -I0 -qg -qb. This starts the server in multi-threaded mode, disable idle-time and parallel GC. This seems to speed up the process a lot.
The server mostly runs without any problem. However, every now and then a client request times out and the CPU spikes to 100% (or even over 100%) and keeps doing this for a long while. Meanwhile the server does not respond to request anymore.
There are few reasons I can think of that might cause the CPU usage:
The request just takes a lot of time because there is a lot of work to be done. This is somewhat unlikely because sometimes it happens for requests that have proven to be very fast in previous runs (with fast I mean 20-80ms or so).
There are still some unevaluated thunks that need to be computed before the data can be processed and sent to the client. This is also unlikely, with the same reason as the previous point.
Somehow garbage collection kicks in and start scanning my entire 5GB heap. I can imagine this can take up a lot of time.
The problem is that I have no clue how to figure out what is going on exactly and what to do about this. Because the import process takes such a long time profiling results don't show me anything useful. There seems to be no way to conditionally turn on and off the profiler from within code.
I personally suspect the GC is the problem here. I'm using GHC7 which seems to have a lot of options to tweak how GC works.
What GC settings do you recommend when using large heaps with generally very stable data?