Running stuff in separate threads does not necessarily make them go faster.
The throughput of a system running on a single machine is limited by the processing bandwidth of the machine; i.e. number and speed of cores, the memory system, disc and network I/O and so on. In a multi-threaded application, the threads all effectively share the resources. So for instance, if you have more runnable threads than cores at a given instant, some of the threads will be waiting to be scheduled to a code.
The second issue is that threads typically need to communicate with each other and / or update shared data structures. Both of these entail some kind of synchronization. If you have a lot of this going on, there is a potential for the synchronization to become a bottleneck that reduces throughput.
So how does this apply to your system? Well, the potential problem is that the extra threads that are doing the background processing are going to use resources, and if there is too much work for the threads:
- they may not be able to keep up, and the queue lengths could get out of control, resulting in long delays and worse, and
- this could interfere with the listeners' ability to accept new messages.
From a performance perspective, one thing you want to avoid is having too many threads. Beyond a certain point (which depends on the application), adding more threads can actually reduce throughput for a variety of reasons. As a rule of thumb, try to limit the number threads to 1 to 2 times the number of cores.
If you think that it is likely that your system will be swamped with more messages that it can handle, it needs to be designed so that it can shed load; e.g. by stopping accepting new requests, or dumping existing ones. You do not want unbounded queues or an unbounded numbers of worker threads, and these can lead to catastrophic feedback and systems collapsing / crashing under heavy load. (And also be aware that heavy load is going to lead to more contention and increase the chance of failures due to undetected concurrency bugs.)
- It seems that AMQP has a built-in flow control mechanism using "flow frames". You should probably be trying to leverage that rather do your own flow control / load management internally.
- Message persistence per se won't help. While you can buffer a huge amount message traffic, it won't help you deal with a mismatch between the message production and processing rates. (The persistence mechanism will also result in slower message transfer rates, though that probably isn't a concern for you.)
- Doing separate phases of processing on different services can increase throughput, though the flip-side is that you have more messaging overheads. Bottom line is that this kind of partitioning can reduce throughput instead of increasing it.
- If you want your solution to scale up, you need to design it so that you can replicate your servers; e.g. instead of having new requests go to one server, split them across N servers with independent persistence back-ends.