Interface AsyncWriteJournal
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- All Superinterfaces:
Actor
,AsyncRecovery
,WriteJournalBase
- All Known Subinterfaces:
AsyncWriteProxy
- All Known Implementing Classes:
AsyncWriteJournal
,PersistenceTestKitPlugin
public interface AsyncWriteJournal extends Actor, WriteJournalBase, AsyncRecovery
Abstract journal, optimized for asynchronous, non-blocking writes.
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Nested Class Summary
Nested Classes Modifier and Type Interface Description static class
AsyncWriteJournal.Desequenced
static class
AsyncWriteJournal.Desequenced$
static class
AsyncWriteJournal.Resequencer
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Nested classes/interfaces inherited from interface akka.actor.Actor
Actor.emptyBehavior$, Actor.ignoringBehavior$
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Method Summary
All Methods Instance Methods Abstract Methods Modifier and Type Method Description void
akka$persistence$journal$AsyncWriteJournal$_setter_$receiveWriteJournal_$eq(scala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit> x$1)
scala.concurrent.Future<scala.runtime.BoxedUnit>
asyncDeleteMessagesTo(java.lang.String persistenceId, long toSequenceNr)
Plugin API: asynchronously deletes all persistent messages up totoSequenceNr
(inclusive).scala.concurrent.Future<scala.collection.immutable.Seq<scala.util.Try<scala.runtime.BoxedUnit>>>
asyncWriteMessages(scala.collection.immutable.Seq<AtomicWrite> messages)
Plugin API: asynchronously writes a batch (Seq
) of persistent messages to the journal.boolean
isReplayFilterEnabled()
scala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit>
receive()
Scala API: This defines the initial actor behavior, it must return a partial function with the actor logic.scala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit>
receivePluginInternal()
Plugin APIscala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit>
receiveWriteJournal()
void
resequencerCounter_$eq(long x$1)
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Methods inherited from interface akka.actor.Actor
akka$actor$Actor$_setter_$context_$eq, akka$actor$Actor$_setter_$self_$eq, aroundPostRestart, aroundPostStop, aroundPreRestart, aroundPreStart, aroundReceive, context, postRestart, postStop, preRestart, preStart, self, sender, supervisorStrategy, unhandled
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Methods inherited from interface akka.persistence.journal.AsyncRecovery
asyncReadHighestSequenceNr, asyncReplayMessages
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Methods inherited from interface akka.persistence.journal.WriteJournalBase
adaptFromJournal, adaptToJournal, akka$persistence$journal$WriteJournalBase$_setter_$persistence_$eq, persistence, preparePersistentBatch
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Method Detail
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akka$persistence$journal$AsyncWriteJournal$_setter_$receiveWriteJournal_$eq
void akka$persistence$journal$AsyncWriteJournal$_setter_$receiveWriteJournal_$eq(scala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit> x$1)
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isReplayFilterEnabled
boolean isReplayFilterEnabled()
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resequencerCounter_$eq
void resequencerCounter_$eq(long x$1)
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receive
scala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit> receive()
Description copied from interface:Actor
Scala API: This defines the initial actor behavior, it must return a partial function with the actor logic.
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receiveWriteJournal
scala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit> receiveWriteJournal()
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asyncWriteMessages
scala.concurrent.Future<scala.collection.immutable.Seq<scala.util.Try<scala.runtime.BoxedUnit>>> asyncWriteMessages(scala.collection.immutable.Seq<AtomicWrite> messages)
Plugin API: asynchronously writes a batch (Seq
) of persistent messages to the journal.The batch is only for performance reasons, i.e. all messages don't have to be written atomically. Higher throughput can typically be achieved by using batch inserts of many records compared to inserting records one-by-one, but this aspect depends on the underlying data store and a journal implementation can implement it as efficient as possible. Journals should aim to persist events in-order for a given
persistenceId
as otherwise in case of a failure, the persistent state may be end up being inconsistent.Each
AtomicWrite
message contains the singlePersistentRepr
that corresponds to the event that was passed to thepersist
method of thePersistentActor
, or it contains severalPersistentRepr
that corresponds to the events that were passed to thepersistAll
method of thePersistentActor
. AllPersistentRepr
of theAtomicWrite
must be written to the data store atomically, i.e. all or none must be stored. If the journal (data store) cannot support atomic writes of multiple events it should reject such writes with aTry
Failure
with anUnsupportedOperationException
describing the issue. This limitation should also be documented by the journal plugin.If there are failures when storing any of the messages in the batch the returned
Future
must be completed with failure. TheFuture
must only be completed with success when all messages in the batch have been confirmed to be stored successfully, i.e. they will be readable, and visible, in a subsequent replay. If there is uncertainty about if the messages were stored or not theFuture
must be completed with failure.Data store connection problems must be signaled by completing the
Future
with failure.The journal can also signal that it rejects individual messages (
AtomicWrite
) by the returnedimmutable.Seq[Try[Unit}
. It is possible but not mandatory to reduce number of allocations by returningFuture.successful(Nil)
for the happy path, i.e. when no messages are rejected. Otherwise the returnedSeq
must have as many elements as the inputmessages
Seq
. EachTry
element signals if the correspondingAtomicWrite
is rejected or not, with an exception describing the problem. Rejecting a message means it was not stored, i.e. it must not be included in a later replay. Rejecting a message is typically done before attempting to store it, e.g. because of serialization error.Data store connection problems must not be signaled as rejections.
It is possible but not mandatory to reduce number of allocations by returning
Future.successful(Nil)
for the happy path, i.e. when no messages are rejected.Calls to this method are serialized by the enclosing journal actor. If you spawn work in asynchronous tasks it is alright that they complete the futures in any order, but the actual writes for a specific persistenceId should be serialized to avoid issues such as events of a later write are visible to consumers (query side, or replay) before the events of an earlier write are visible. A PersistentActor will not send a new WriteMessages request before the previous one has been completed.
Please note that the
sender
field of the contained PersistentRepr objects has been nulled out (i.e. set toActorRef.noSender
) in order to not use space in the journal for a sender reference that will likely be obsolete during replay.Please also note that requests for the highest sequence number may be made concurrently to this call executing for the same
persistenceId
, in particular it is possible that a restarting actor tries to recover before its outstanding writes have completed. In the latter case it is highly desirable to defer reading the highest sequence number until all outstanding writes have completed, otherwise the PersistentActor may reuse sequence numbers.This call is protected with a circuit-breaker.
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asyncDeleteMessagesTo
scala.concurrent.Future<scala.runtime.BoxedUnit> asyncDeleteMessagesTo(java.lang.String persistenceId, long toSequenceNr)
Plugin API: asynchronously deletes all persistent messages up totoSequenceNr
(inclusive).This call is protected with a circuit-breaker. Message deletion doesn't affect the highest sequence number of messages, journal must maintain the highest sequence number and never decrease it.
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receivePluginInternal
scala.PartialFunction<java.lang.Object,scala.runtime.BoxedUnit> receivePluginInternal()
Plugin APIAllows plugin implementers to use
f pipeTo self
and handle additional messages for implementing advanced features
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