Make it "as large as is reasonable". For example, if you are OK with it consuming up to 1Gb of memory, then allocate its size to be 1Gb divided by the average number of bytes of the objects in the queue.
If I had to pick a "reasonable" number, I would start with
10000. The reason is, if it grows to larger than that, then making it larger isn't a good idea and isn't going to help much, because clearly the logging requirement is outpacing your ability to log, so it's time to back off the clients.
"Tuning" through experimentation is usually the best approach, as it depends on the profile of your application:
- If there are highs and lows in your application's activity, then a larger queue will help "smooth out" the load on your server
- If your application has a relatively steady load, then a smaller queue is appropriate as a larger queue only delays the inevitable point when clients are blocked - you would be better to make it smaller and dedicate more resources (a couple more logging threads) to consuming the work.
Note also that a very large queue may impact garbage collection responsiveness to freeing up memory, as it has to traverse a much larger heap (all the objects in the queue) each time it runs, increasing the load on both CPU and memory.
You want to make the size as small as you can without impacting throughput and responsiveness too much. To asses this you'll need to set up a test server and hit it with a typical load to see what happens. Note that you'll probably need to hit it from multiple machines to put a realistic load on the server, as hitting it from one machine can limit the load due to the number of CPU cores and other resources on the test client machine.
To be frank, I'd just make the size
10000 and tune the number of worker threads rather than the queue size.