I am running a multithreaded tcp server that uses a fixed thread pool with an unbounded Runnable queue. The clients dispatch the runnables to the pool.
In my stress test scenario, 600 clients attempt to login to the server and immediately broadcast messages to every other client simultaneously and repeatedly to no end and without sleeping (Right now the clients just discard the incoming messages). Using a quad-core with 1GB reserved for heap memory - and a parallel GC for both the young and old generations - the server crashes with a OOM exception after 20 minutes. Monitoring the garbage collector reveals that the tenured generation is slowly increasing, and a full GC only frees up a small fraction of memory. A snapshot of a full heap shows that the old generation is almost completely occupied by Runnables (and their outgoing references).
It seems the worker threads are not able to finish executing the Runnables faster than the clients are able to queue them for execution (For each incoming "event" to the server, the server will create 599 runnables as there are 600 - 1 clients - assuming they are all logged in at the time).
Can someone please help me conceive a strategy on how to handle the overwhelmed thread pool workers?
- If I bound the queue, what policy should I implement to handle rejected execution?
- If I increase the size of the heap, wouldn't that only prolong the OOM exception?
- A calculation can be made to measure the amount of work done in the aggregation of Runnables. Perhaps this measurement be used as a basis for a locking mechanism to coordinate clients' dispatching work?
- What reaction should the client experience when the server is overwhelmed with work?