In a distributed caching scenario, is it generally advised to use or avoid monolithic objects stored in cache?
I'm working with a service backed by an EAV schema, so we're putting caching in place to minimize the perceived performance deficit imposed by EAV when retrieving all primary records and respective attribute collections from the database. We will prime the cache on service startup.
We don't have particularly frequent calls for all products -- clients call for differentials after they first populate their local cache with the object map. In order to perform that differential, the distributed cache will will need to reflect changes to individual records in the database that are performed on an arbitrary basis, and be processed for changes as differentials are called for by clients.
First thought was to use a List or Dictionary to store the records in the distributed cache -- get the whole collection, manipulate or search it in-memory locally, put the whole collection back into the cache. Later thinking however led to the idea of populating the cache with individual records, each keyed in a way to make them individually retrievable from/updatable to the cache. This led to wondering which method would be more performant when it comes to updating all data.
We're using Windows Server AppFabric, so we have a BulkGet operation available to us. I don't believe there's any notion of a bulk update however.
Is there prevailing thinking as to distributed cache object size? If we had more requests for all items, I would have concerns about network bandwidth, but, for now at least, demand for all items should be fairly minimal.
And yes, we're going to test and profile each method, but I'm wondering if there's anything outside the current scope of thinking to consider here.