I'm wondering if there's a way to set up RabbitMQ or Redis to work with Celery so that when I send a task to the queue, it doesn't go into a list of tasks, but rather into a Set of tasks keyed based on the payload of my task, in order to avoid duplicates.
Here's my setup for more context: Python + Celery. I've tried RabbitMQ as a backend, now I'm using Redis as a backend because I don't need the 100% reliability, easier to use, small memory footprint, etc.
I have roughly 1000 ids that need work done repeatedly. Stage 1 of my data pipeline is triggered by a scheduler and it outputs tasks for stage 2. The tasks contain just the id for which work needs to be done and the actual data is stored in the database. I can run any combination or sequence of stage 1 and stage 2 tasks without harm.
If stage 2 doesn't have enough processing power to deal with the volume of tasks output by stage 1, my task queue grows and grows. This wouldn't have to be the case if the task queue used sets as the underlying data structure instead of lists.
Is there an off-the-shelf solution for switching from lists to sets as distributed task queues? Is Celery capable of this? I recently saw that Redis has just released an alpha version of a queue system, so that's not ready for production use just yet.
Should I architect my pipeline differently?
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) of 1 . There's the extra housekeeping of publishing & subscribing to 1000 different queues, but duplicates would be dropped as you require.