State of the art POJO's in Action book talks about it
If a single-server application updates the database using the persistence framework, the framework updates the process-level cache.
Cached objects that are updateable should typically use optimistic locking because that will prevent the application from blindly overwriting changes in the database. AND if a transaction updates a cached object that had already been changed in the database, the optimistic locking failure will cause the transaction to be rolled back. The persistence framework will remove the stale data from the cache, and the application can retry transaction with the latest version of the data.
And choose one of the following strategies according to JPA with Hibernate book
- Transactional: available in a managed environment only, it guarantees full
transactional isolation up to repeatable read, if required. Use this strategy for
read-mostly data where it’s critical to prevent stale data in concurrent transactions,
in the rare case of an update.
- Read-write: This strategy maintains read committed isolation, using a timestamping
mechanism and is available only in nonclustered environments. Again, use this strategy for read-mostly data where it’s critical to prevent stale data in concurrent transactions, in the rare case of an update.
Added to original anwser: Hibernate DOES NOT GUARANTEE consistency between the cache and the database whether you use @Cache(usage = CacheConcurrencyStrategy.NONSTRICT_READ_WRITE). If you want to use it, so you SHOULD configure a sufficiently short expiry timeout which can affect perfomance.