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CQRS with event sourcing looks like a perfect fit as an architecture for one of our systems, there is only one little thing we are current worried about: Handling a large amount of events and dealing with huge event stores as a consequence.

Our current system receives about a million events a day (which currently have nothing to do with event sourcing though), if we were to store them all over a longer period of time, our event stores might get pretty big but if we dump/purge to a rolling snapshot frequently, we might loose one of the big advantages of event sourcing: information about the history of the system and replay.

What are common ways to deal with this problem in a CQRS architecture? Is it a problem at all? Do we just throw more hardware at the event store or is there something we can do at the architecture design level?

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up vote 4 down vote accepted

I think the most common approach is to use snapshots and persistent read models. That is, you don't actually replay your events very often, except when you need to build a new read model or change the way an existing one works. By storing snapshots of your domain objects, you avoid having to replay long streams of events.

One could argue that storing snapshots and persistent read models isn't a whole lot different than just doing CQRS without event-sourcing. But the old events are there in the event that you made a mistake in your read model, or need to derive new information, or have other strict auditing requirements.

In our application, where we have many events that have low business value, we plan to scrub events heavily during execution so that our event logs stay smaller. But I imagine for some objects we will still fall back to snapshots and persistent models.

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We probably won't actually replay our events very often, except when we need to build a new read model or change the way an existing one works or when we made a mistake or need to derive new information. If we scrub our events more frequently we can't do any of this. You say the old events are there but when we scrub too fast, they aren't or do not go far enough back in history. – bitbonk Mar 20 '13 at 14:37
    
Indeed, that's why I noted that many of our events have low business value. We made the decision that they can be scrubbed, realizing there are certain questions we won't be able to answer in the future. Otherwise I'm not sure there's a magic answer. You need to re-read events as fast as you can, which probably means finding a way to do it in parallel, i.e. by holding event stores per bounded-context, or even being able to re-build different read models in parallel – Sebastian Good Mar 20 '13 at 14:59
    
Makes sense! Thanks! – bitbonk Mar 20 '13 at 15:03

Look at your "active streamset". Are there streams that have a lifecycle where they tend to come into existence, mutate over a relatively short period of time, and then die as they reach their final state? If so, these streams could be moved to cheaper storage (backup). The only reason you'd need them is for replaying purposes, so you may want to either make them still accessible (albeit at a slower response rate) or keep a compressed copy for replay purposes around. In any case, do question if there are streams you can move out of the event store or at least out the active streamset.

Another option is to partition your streams across multiple physical event stores. Maybe there is a geographical boundary that can be used, or maybe there's something that naturally partitions them (the domain you are in usually provides hints). It's the kind of thing where you need to reflect about advantages and disadvantages.

This technique is not restricted to event sourcing. It can equally be applied to state-based models (it's just data afterall).

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