Let me attempt an answer. Let us assume that at the beginning my deployment only has a single gunicorn worker. This allows me to handle only one request at a time. My worker's work is just to make a call to google.com and get the search results for a query. Now I want to increase my throughput. I have the below options
Keep one worker only and increase number of threads in that worker
This is the easiest. Since threads are more lightweight (less memory consumption) than processes, I keep only one worker and add several threads to that. Gunicorn will ensure that the master can then send more than one requests to the worker. Since the worker is multithreaded, it is able to handle 4 requests. Fantastic. Now why would I need more workers ever?
To answer that, assume that I need to do some work on the search results that google returned. For instance I might also want to calculate a prime number for each result query. Now I am making my workload compute bound and I hit the problem with python's global interpreter lock. Even though I have 4 threads, only one thread can actually process the results at a time. This means to get true parallel performance I need more than one workers.
Increase Number of workers but all workers are single threaded
So why I need this would be when I need to get true parallel processing. Each worker can parallely make a call to google.com, get results and do any processing. All in parallel. Fantastic. But the downside is that processes are more heavier, and my system might not keep up with the demands of increasing workers to accomplish parallelism. So the best solution is to increase workers and also add more threads to each worker.
Increase Number of workers and each worker is multithreaded
I guess this needs no further explanation.
Change worker type to Async
Now why would I ever want to do this? To answer, remember that even threads consume memory. There are coroutines (a radical construct that you can look up) implemented by gevent library that allow you to get threads without having to create threads. SO if you craft your gunicorn to use worker-type of gevent, you get the benefit of NOT having to create threads in your workers. Assume that you are getting threads w/o having to explicitly create them.
So, to answer your question, if you are using worker_type of anything other than Sync, you do not need to increase the number of threads in your gunicorn configuration. You can do it, by all means, but it kinda defeats the purpose.
Hope this helped.
I will also attempt to answer the specific questions.
No, the threaded option is not present for the Async worker class.
This actually needs to be made clearer through the documentation.
Wondering why that has not happened.
This is a question that needs more knowledge of your specific
application. If the processing of these 100s of parallel requests
just involves I/O kind of operations, like fetching from DB, saving,
collecting data from some other application, then you can make use of
the threaded worker. But if that is not the case and you want to
execute on a n core CPU because the tasks are extremely compute
bound, maybe like calculating primes, you need to make use of the
Sync worker. The reasoning for Async is slightly different. To use
Async, you need to be sure that your processing is not compute bound,
this means you will not be able to make use of multiple cores.
Advantage you get is that the memory that multiple threads would take
would not be there. But you have other issues like non monkey patched
libraries. Move to Async only if the threaded worker does not meet
Sync, non threaded workers are the best option if you want absolute
thread safety amongst your libraries.