There is no one-size-fits-all answer to this
- Dividing a big task A into many small parts (A¹, A², A³, …) will increase potential concurrency.
So if you have 1 worker instance with 10 worker threads/processes,
A can now run in parallel using the 10 threads instead of sequentially
on one thread.
The number of parts is called the tasks granularity (fine or coarsely grained).
- If the task is too finely grained the overhead of messaging will drag performance down.
Each part must have enough computation/IO to offset the overhead of sending the task
message to the broker, possibly writing it to disk if there are no workers to take it, the worker to receive the message, and so on (do note that messaging overhead can be tweaked, e.g. you can have a queue that is transient (not persisting messages to disk), and send tasks that are not so important there).
- A busy cluster may make all of this moot
Maximum parallelism may already have been achieved if you have a busy cluster (e.g. 3 worker instances with 10 threads/processes each, all running tasks).
Then you many not get much benefit by dividing the task, but tasks doing I/O have a greater chance of improvement than CPU-bound tasks (split by I/O operations).
- Long running tasks are fine
The worker is not allergic to long running tasks, be that 10 minutes or an hour.
But it's not ideal either because any long running task will block that slot from
finishing any waiting tasks. To mitigate this people use routing, so that you have a dedicated queue, with dedicated workers for tasks that must run ASAP.