We need to set up a system where multiple processes are working on the same dataset. The idea is to have a set of elements (i.e. no repeated values) that can get pulled by our worker processes (asynchronously). The processes may be distributed on several servers, so we need a distributed solution.
Currently, the pattern we are thinking of is using Redis to hold a set, which holds the working data. Each process should connect to the set, and pop a value from it. The random functionality of
spop is actually a plus to us, since we need randomized access to the elements in the set. The data would have to be populated from our main PostgreSQL database.
Like I said, we also have a PostgreSQL database available to query, which the processes could access when requesting elements. However, we don't know if under heavy loads that could be a bottleneck. We do expect heavy - to very heavy concurrent access (think hundreds or even thousands of processes) on this subsystem.
In case it bears any relevance to this, we are using Python with
rQ to handle asynchronous tasks (jobs and workers).
Edit: in terms of size, elements can be expected to not be very large - top size should be around 500 - 1000 bytes. They are basically URLs, so unless something strange happens they should be well below that size. The number of elements will be dependent on the number of concurrent processes, so probably about 10 - 50 K elements would be a good ballpark. Bear in mind that this is more of a staging area of sorts, so focus should be more on speed than on size.
My questions, in summary, are:
Is a Redis set a good idea for shared access when using multiple processes? Is there any data that will let us know how that solution will scale? If so, can you provide any pointers or advice?
When populating the shared data, what would be a good update strategy?
Thank you very much!