Cluster Sharding
You are viewing the documentation for the new actor APIs, to view the Pekko Classic documentation, see Classic Cluster Sharding
Module info
To use Pekko Cluster Sharding, you must add the following dependency in your project:
- sbt
val PekkoVersion = "1.0.0" libraryDependencies += "org.apache.pekko" %% "pekko-cluster-sharding-typed" % PekkoVersion
- Maven
<properties> <scala.binary.version>2.13</scala.binary.version> </properties> <dependencyManagement> <dependencies> <dependency> <groupId>org.apache.pekko</groupId> <artifactId>pekko-bom_${scala.binary.version}</artifactId> <version>1.0.0</version> <type>pom</type> <scope>import</scope> </dependency> </dependencies> </dependencyManagement> <dependencies> <dependency> <groupId>org.apache.pekko</groupId> <artifactId>pekko-cluster-sharding-typed_${scala.binary.version}</artifactId> </dependency> </dependencies>
- Gradle
def versions = [ ScalaBinary: "2.13" ] dependencies { implementation platform("org.apache.pekko:pekko-bom_${versions.ScalaBinary}:1.0.0") implementation "org.apache.pekko:pekko-cluster-sharding-typed_${versions.ScalaBinary}" }
Project Info: Pekko Cluster Sharding (typed) | |
---|---|
Artifact | org.apache.pekko
pekko-cluster-sharding-typed
1.0.0
|
JDK versions | OpenJDK 8 OpenJDK 11 OpenJDK 17 |
Scala versions | 2.13.11, 2.12.18, 3.3.0 |
JPMS module name | pekko.cluster.sharding.typed |
License | |
Home page | https://pekko.apache.org/ |
API documentation | |
Forums | |
Release notes | GitHub releases |
Issues | Github issues |
Sources | https://github.com/apache/incubator-pekko |
Introduction
Cluster sharding is useful when you need to distribute actors across several nodes in the cluster and want to be able to interact with them using their logical identifier, but without having to care about their physical location in the cluster, which might also change over time.
It could for example be actors representing Aggregate Roots in Domain-Driven Design terminology. Here we call these actors “entities”. These actors typically have persistent (durable) state, but this feature is not limited to actors with persistent state.
Cluster sharding is typically used when you have many stateful actors that together consume more resources (e.g. memory) than fit on one machine. If you only have a few stateful actors it might be easier to run them on a Cluster Singleton node.
In this context sharding means that actors with an identifier, so called entities, can be automatically distributed across multiple nodes in the cluster. Each entity actor runs only at one place, and messages can be sent to the entity without requiring the sender to know the location of the destination actor. This is achieved by sending the messages via a ShardRegion
actor provided by this extension, which knows how to route the message with the entity id to the final destination.
Cluster sharding will not be active on members with status WeaklyUp if that feature is enabled.
Make sure to not use a Cluster downing strategy that may split the cluster into several separate clusters in case of network problems or system overload (long GC pauses), since that will result in multiple shards and entities being started, one in each separate cluster! See Downing.
Basic example
Sharding is accessed via the ClusterSharding
ClusterSharding
extension
- Scala
-
source
import org.apache.pekko import pekko.cluster.sharding.typed.ShardingEnvelope import pekko.cluster.sharding.typed.scaladsl.ClusterSharding import pekko.cluster.sharding.typed.scaladsl.EntityTypeKey import pekko.cluster.sharding.typed.scaladsl.EntityRef val sharding = ClusterSharding(system)
- Java
-
source
import org.apache.pekko.cluster.sharding.typed.ShardingEnvelope; import org.apache.pekko.cluster.sharding.typed.javadsl.ClusterSharding; import org.apache.pekko.cluster.sharding.typed.javadsl.EntityTypeKey; import org.apache.pekko.cluster.sharding.typed.javadsl.EntityRef; import org.apache.pekko.cluster.sharding.typed.javadsl.Entity; import org.apache.pekko.persistence.typed.PersistenceId; ClusterSharding sharding = ClusterSharding.get(system);
It is common for sharding to be used with persistence however any Behavior
Behavior
can be used with sharding e.g. a basic counter:
- Scala
-
source
object Counter { sealed trait Command case object Increment extends Command final case class GetValue(replyTo: ActorRef[Int]) extends Command def apply(entityId: String): Behavior[Command] = { def updated(value: Int): Behavior[Command] = { Behaviors.receiveMessage[Command] { case Increment => updated(value + 1) case GetValue(replyTo) => replyTo ! value Behaviors.same } } updated(0) } }
- Java
-
source
public class Counter extends AbstractBehavior<Counter.Command> { public interface Command {} public enum Increment implements Command { INSTANCE } public static class GetValue implements Command { private final ActorRef<Integer> replyTo; public GetValue(ActorRef<Integer> replyTo) { this.replyTo = replyTo; } } public static Behavior<Command> create(String entityId) { return Behaviors.setup(context -> new Counter(context, entityId)); } private final String entityId; private int value = 0; private Counter(ActorContext<Command> context, String entityId) { super(context); this.entityId = entityId; } @Override public Receive<Command> createReceive() { return newReceiveBuilder() .onMessage(Increment.class, msg -> onIncrement()) .onMessage(GetValue.class, this::onGetValue) .build(); } private Behavior<Command> onIncrement() { value++; return this; } private Behavior<Command> onGetValue(GetValue msg) { msg.replyTo.tell(value); return this; } }
Each Entity type has a key that is then used to retrieve an EntityRef for a given entity identifier. Note in the sample’s Counter.apply
Counter.create
function that the entityId
parameter is not called, it is included to demonstrate how one can pass it to an entity. Another way to do this is by sending the entityId
as part of the message if needed.
- Scala
-
source
val TypeKey = EntityTypeKey[Counter.Command]("Counter") val shardRegion: ActorRef[ShardingEnvelope[Counter.Command]] = sharding.init(Entity(TypeKey)(createBehavior = entityContext => Counter(entityContext.entityId)))
- Java
-
source
EntityTypeKey<Counter.Command> typeKey = EntityTypeKey.create(Counter.Command.class, "Counter"); ActorRef<ShardingEnvelope<Counter.Command>> shardRegion = sharding.init(Entity.of(typeKey, ctx -> Counter.create(ctx.getEntityId())));
Messages to a specific entity are then sent via an EntityRef
EntityRef
. The entityId
and the name of the Entity’s key can be retrieved from the EntityRef
. It is also possible to wrap methods in a ShardingEnvelope
ShardingEnvelope
or define extractor functions and send messages directly to the shard region.
- Scala
-
source
// With an EntityRef val counterOne: EntityRef[Counter.Command] = sharding.entityRefFor(TypeKey, "counter-1") counterOne ! Counter.Increment // Entity id is specified via an `ShardingEnvelope` shardRegion ! ShardingEnvelope("counter-1", Counter.Increment)
- Java
-
source
EntityRef<Counter.Command> counterOne = sharding.entityRefFor(typeKey, "counter-1"); counterOne.tell(Counter.Increment.INSTANCE); shardRegion.tell(new ShardingEnvelope<>("counter-1", Counter.Increment.INSTANCE));
Cluster sharding init
init
should be called on every node for each entity type. Which nodes entity actors are created on can be controlled with roles. init
will create a ShardRegion
or a proxy depending on whether the node’s role matches the entity’s role.
The behavior factory lambda passed to the init method is defined on each node and only used locally, this means it is safe to use it for injecting for example a node local ActorRef
ActorRef
that each sharded actor should have access to or some object that is not possible to serialize.
Specifying the role:
- Scala
-
source
sharding.init( Entity(TypeKey)(createBehavior = entityContext => Counter(entityContext.entityId)).withRole("backend"))
- Java
-
source
EntityTypeKey<Counter.Command> typeKey = EntityTypeKey.create(Counter.Command.class, "Counter"); ActorRef<ShardingEnvelope<Counter.Command>> shardRegionOrProxy = sharding.init( Entity.of(typeKey, ctx -> Counter.create(ctx.getEntityId())).withRole("backend"));
A note about EntityRef and serialization
If including EntityRef
EntityRef
’s in messages or the State
/Event
s of an EventSourcedBehavior
EventSourcedBehavior
, those EntityRef
s will need to be serialized. The entityId
, typeKey
, and (in multi-DC use-cases) dataCenter
of an EntityRef
getEntityId
, getTypeKey
, and (in multi-DC use-cases) getDataCenter
methods of an EntityRef
provide exactly the information needed upon deserialization to regenerate an EntityRef
equivalent to the one serialized, given an expected type of messages to send to the entity.
At this time, serialization of EntityRef
s requires a custom serializer, as the specific EntityTypeKey
EntityTypeKey
(including the type of message which the desired entity type accepts) should not simply be encoded in the serialized representation but looked up on the deserializing side.
Persistence example
When using sharding, entities can be moved to different nodes in the cluster. Persistence can be used to recover the state of an actor after it has moved.
Pekko Persistence is based on the single-writer principle, for a particular PersistenceId
PersistenceId
only one persistent actor instance should be active. If multiple instances were to persist events at the same time, the events would be interleaved and might not be interpreted correctly on replay. Cluster Sharding is typically used together with persistence to ensure that there is only one active entity for each PersistenceId
(entityId
).
Here is an example of a persistent actor that is used as a sharded entity:
- Scala
-
source
import org.apache.pekko import pekko.actor.typed.Behavior import pekko.cluster.sharding.typed.scaladsl.EntityTypeKey import pekko.persistence.typed.scaladsl.Effect object HelloWorld { // Command sealed trait Command extends CborSerializable final case class Greet(whom: String)(val replyTo: ActorRef[Greeting]) extends Command // Response final case class Greeting(whom: String, numberOfPeople: Int) extends CborSerializable // Event final case class Greeted(whom: String) extends CborSerializable // State final case class KnownPeople(names: Set[String]) extends CborSerializable { def add(name: String): KnownPeople = copy(names = names + name) def numberOfPeople: Int = names.size } private val commandHandler: (KnownPeople, Command) => Effect[Greeted, KnownPeople] = { (_, cmd) => cmd match { case cmd: Greet => greet(cmd) } } private def greet(cmd: Greet): Effect[Greeted, KnownPeople] = Effect.persist(Greeted(cmd.whom)).thenRun(state => cmd.replyTo ! Greeting(cmd.whom, state.numberOfPeople)) private val eventHandler: (KnownPeople, Greeted) => KnownPeople = { (state, evt) => state.add(evt.whom) } val TypeKey: EntityTypeKey[Command] = EntityTypeKey[Command]("HelloWorld") def apply(entityId: String, persistenceId: PersistenceId): Behavior[Command] = { Behaviors.setup { context => context.log.info("Starting HelloWorld {}", entityId) EventSourcedBehavior(persistenceId, emptyState = KnownPeople(Set.empty), commandHandler, eventHandler) } } }
- Java
-
source
import org.apache.pekko.actor.typed.javadsl.Behaviors; import org.apache.pekko.cluster.sharding.typed.javadsl.EntityTypeKey; import org.apache.pekko.persistence.typed.PersistenceId; import org.apache.pekko.persistence.typed.javadsl.CommandHandler; import org.apache.pekko.persistence.typed.javadsl.Effect; import org.apache.pekko.persistence.typed.javadsl.EventHandler; public static class HelloWorld extends EventSourcedBehavior<HelloWorld.Command, HelloWorld.Greeted, HelloWorld.KnownPeople> { // Command public interface Command extends CborSerializable {} public static final class Greet implements Command { public final String whom; public final ActorRef<Greeting> replyTo; public Greet(String whom, ActorRef<Greeting> replyTo) { this.whom = whom; this.replyTo = replyTo; } } // Response public static final class Greeting implements CborSerializable { public final String whom; public final int numberOfPeople; public Greeting(String whom, int numberOfPeople) { this.whom = whom; this.numberOfPeople = numberOfPeople; } } // Event public static final class Greeted implements CborSerializable { public final String whom; @JsonCreator public Greeted(String whom) { this.whom = whom; } } // State static final class KnownPeople implements CborSerializable { private Set<String> names = Collections.emptySet(); KnownPeople() {} private KnownPeople(Set<String> names) { this.names = names; } KnownPeople add(String name) { Set<String> newNames = new HashSet<>(names); newNames.add(name); return new KnownPeople(newNames); } int numberOfPeople() { return names.size(); } } public static final EntityTypeKey<Command> ENTITY_TYPE_KEY = EntityTypeKey.create(Command.class, "HelloWorld"); public static Behavior<Command> create(String entityId, PersistenceId persistenceId) { return Behaviors.setup(context -> new HelloWorld(context, entityId, persistenceId)); } private HelloWorld( ActorContext<Command> context, String entityId, PersistenceId persistenceId) { super(persistenceId); context.getLog().info("Starting HelloWorld {}", entityId); } @Override public KnownPeople emptyState() { return new KnownPeople(); } @Override public CommandHandler<Command, Greeted, KnownPeople> commandHandler() { return newCommandHandlerBuilder().forAnyState().onCommand(Greet.class, this::greet).build(); } private Effect<Greeted, KnownPeople> greet(KnownPeople state, Greet cmd) { return Effect() .persist(new Greeted(cmd.whom)) .thenRun(newState -> cmd.replyTo.tell(new Greeting(cmd.whom, newState.numberOfPeople()))); } @Override public EventHandler<KnownPeople, Greeted> eventHandler() { return (state, evt) -> state.add(evt.whom); } }
To initialize and use the entity:
- Scala
-
source
import org.apache.pekko import pekko.cluster.sharding.typed.scaladsl.ClusterSharding import pekko.cluster.sharding.typed.scaladsl.Entity import pekko.util.Timeout class HelloWorldService(system: ActorSystem[_]) { import system.executionContext private val sharding = ClusterSharding(system) // registration at startup sharding.init(Entity(typeKey = HelloWorld.TypeKey) { entityContext => HelloWorld(entityContext.entityId, PersistenceId(entityContext.entityTypeKey.name, entityContext.entityId)) }) private implicit val askTimeout: Timeout = Timeout(5.seconds) def greet(worldId: String, whom: String): Future[Int] = { val entityRef = sharding.entityRefFor(HelloWorld.TypeKey, worldId) val greeting = entityRef ? HelloWorld.Greet(whom) greeting.map(_.numberOfPeople) } }
- Java
-
source
import org.apache.pekko.cluster.sharding.typed.javadsl.ClusterSharding; import org.apache.pekko.cluster.sharding.typed.javadsl.EntityRef; import org.apache.pekko.cluster.sharding.typed.javadsl.Entity; import org.apache.pekko.persistence.typed.javadsl.EventSourcedBehavior; import org.apache.pekko.serialization.jackson.CborSerializable; import org.apache.pekko.util.Timeout; import com.fasterxml.jackson.annotation.JsonCreator; public static class HelloWorldService { private final ActorSystem<?> system; private final ClusterSharding sharding; private final Duration askTimeout = Duration.ofSeconds(5); // registration at startup public HelloWorldService(ActorSystem<?> system) { this.system = system; sharding = ClusterSharding.get(system); // registration at startup sharding.init( Entity.of( HelloWorld.ENTITY_TYPE_KEY, entityContext -> HelloWorld.create( entityContext.getEntityId(), PersistenceId.of( entityContext.getEntityTypeKey().name(), entityContext.getEntityId())))); } // usage example public CompletionStage<Integer> sayHello(String worldId, String whom) { EntityRef<HelloWorld.Command> entityRef = sharding.entityRefFor(HelloWorld.ENTITY_TYPE_KEY, worldId); CompletionStage<HelloWorld.Greeting> result = entityRef.ask(replyTo -> new HelloWorld.Greet(whom, replyTo), askTimeout); return result.thenApply(greeting -> greeting.numberOfPeople); } }
Note how an unique PersistenceId
PersistenceId
can be constructed from the EntityTypeKey
EntityTypeKey
and the entityId
provided by the EntityContext
EntityContext
in the factory function for the Behavior
Behavior
. This is a typical way of defining the PersistenceId
but other formats are possible, as described in the PersistenceId section.
Sending messages to persistent entities is the same as if the entity wasn’t persistent. The only difference is when an entity is moved the state will be restored. In the above example ask is used but tell
or any of the other Interaction Patterns can be used.
See persistence for more details.
Shard allocation
A shard is a group of entities that will be managed together. The grouping is typically defined by a hashing function of the entityId
. For a specific entity identifier the shard identifier must always be the same. Otherwise the entity actor might accidentally be started in several places at the same time.
By default the shard identifier is the absolute value of the hashCode
of the entity identifier modulo the total number of shards. The number of shards is configured by:
sourcepekko.cluster.sharding {
# Number of shards used by the default HashCodeMessageExtractor
# when no other message extractor is defined. This value must be
# the same for all nodes in the cluster and that is verified by
# configuration check when joining. Changing the value requires
# stopping all nodes in the cluster.
number-of-shards = 1000
}
As a rule of thumb, the number of shards should be a factor ten greater than the planned maximum number of cluster nodes. It doesn’t have to be exact. Fewer shards than number of nodes will result in that some nodes will not host any shards. Too many shards will result in less efficient management of the shards, e.g. rebalancing overhead, and increased latency because the coordinator is involved in the routing of the first message for each shard.
The number-of-shards
configuration value must be the same for all nodes in the cluster and that is verified by configuration check when joining. Changing the value requires stopping all nodes in the cluster.
The shards are allocated to the nodes in the cluster. The decision of where to allocate a shard is done by a shard allocation strategy.
The default implementation LeastShardAllocationStrategy
allocates new shards to the ShardRegion
(node) with least number of previously allocated shards. This strategy can be replaced by an application specific implementation.
When a node is added to the cluster the shards on the existing nodes will be rebalanced to the new node. The LeastShardAllocationStrategy
picks shards for rebalancing from the ShardRegion
s with most number of previously allocated shards. They will then be allocated to the ShardRegion
with least number of previously allocated shards, i.e. new members in the cluster. The amount of shards to rebalance in each round can be limited to make it progress slower since rebalancing too many shards at the same time could result in additional load on the system. For example, causing many Event Sourced entites to be started at the same time.
A new rebalance algorithm is included in Pekko. It can reach optimal balance in a few rebalance rounds (typically 1 or 2 rounds). For backwards compatibility the new algorithm is not enabled by default. The new algorithm is recommended and will become the default in future versions of Pekko. You enable the new algorithm by setting rebalance-absolute-limit
> 0, for example:
pekko.cluster.sharding.least-shard-allocation-strategy.rebalance-absolute-limit = 20
The rebalance-absolute-limit
is the maximum number of shards that will be rebalanced in one rebalance round.
You may also want to tune the pekko.cluster.sharding.least-shard-allocation-strategy.rebalance-relative-limit
. The rebalance-relative-limit
is a fraction (< 1.0) of total number of (known) shards that will be rebalanced in one rebalance round. The lower result of rebalance-relative-limit
and rebalance-absolute-limit
will be used.
External shard allocation
An alternative allocation strategy is the ExternalShardAllocationStrategy
ExternalShardAllocationStrategy
which allows explicit control over where shards are allocated via the ExternalShardAllocation
ExternalShardAllocation
extension.
This can be used, for example, to match up Kafka Partition consumption with shard locations. Pekko Connector Kafka provides an extension for Pekko Cluster Sharding.
To use it set it as the allocation strategy on your Entity
Entity
:
- Scala
-
source
val TypeKey = EntityTypeKey[Counter.Command]("Counter") val entity = Entity(TypeKey)(createBehavior = entityContext => Counter(entityContext.entityId)) .withAllocationStrategy(new ExternalShardAllocationStrategy(system, TypeKey.name))
- Java
-
source
EntityTypeKey<Counter.Command> typeKey = EntityTypeKey.create(Counter.Command.class, "Counter"); ActorRef<ShardingEnvelope<Counter.Command>> shardRegion = sharding.init(Entity.of(typeKey, ctx -> Counter.create(ctx.getEntityId())));
For any shardId that has not been allocated it will be allocated to the requesting node. To make explicit allocations:
- Scala
-
source
val client: ExternalShardAllocationClient = ExternalShardAllocation(system).clientFor(TypeKey.name) val done: Future[Done] = client.updateShardLocation("shard-id-1", Address("pekko", "system", "127.0.0.1", 7355))
- Java
-
source
ExternalShardAllocationClient client = ExternalShardAllocation.get(system).getClient(typeKey.name()); CompletionStage<Done> done = client.setShardLocation("shard-id-1", new Address("pekko", "system", "127.0.0.1", 7355));
Any new or moved shard allocations will be moved on the next rebalance.
The communication from the client to the shard allocation strategy is via Distributed Data. It uses a single LWWMap
LWWMap
that can support 10s of thousands of shards. Later versions could use multiple keys to support a greater number of shards.
Example project for external allocation strategy
Kafka to Cluster Sharding is an example project that can be downloaded, and with instructions of how to run, that demonstrates how to use external sharding to co-locate Kafka partition consumption with shards.
Custom shard allocation
An optional custom shard allocation strategy can be passed into the optional parameter when initializing an entity type or explicitly using the withAllocationStrategy
withAllocationStrategy
function. See the API documentation of ShardAllocationStrategy
AbstractShardAllocationStrategy
for details of how to implement a custom ShardAllocationStrategy
.
How it works
See Cluster Sharding concepts.
Passivation
If the state of the entities are persistent you may stop entities that are not used to reduce memory consumption. This is done by the application specific implementation of the entity actors for example by defining receive timeout (context.setReceiveTimeout
context.setReceiveTimeout
). If a message is already enqueued to the entity when it stops itself the enqueued message in the mailbox will be dropped. To support graceful passivation without losing such messages the entity actor can send ClusterSharding.Passivate
ClusterSharding.Passivate
to the ActorRef
ActorRef
[ShardCommand
]<ShardCommand
> that was passed in to the factory method when creating the entity. The optional stopMessage
message will be sent back to the entity, which is then supposed to stop itself, otherwise it will be stopped automatically. Incoming messages will be buffered by the Shard
between reception of Passivate
and termination of the entity. Such buffered messages are thereafter delivered to a new incarnation of the entity.
- Scala
-
source
object Counter { sealed trait Command case object Increment extends Command final case class GetValue(replyTo: ActorRef[Int]) extends Command private case object Idle extends Command case object GoodByeCounter extends Command def apply(shard: ActorRef[ClusterSharding.ShardCommand], entityId: String): Behavior[Command] = { Behaviors.setup { ctx => def updated(value: Int): Behavior[Command] = Behaviors.receiveMessage[Command] { case Increment => updated(value + 1) case GetValue(replyTo) => replyTo ! value Behaviors.same case Idle => // after receive timeout shard ! ClusterSharding.Passivate(ctx.self) Behaviors.same case GoodByeCounter => // the stopMessage, used for rebalance and passivate Behaviors.stopped } ctx.setReceiveTimeout(30.seconds, Idle) updated(0) } } }
- Java
-
source
public class Counter2 extends AbstractBehavior<Counter2.Command> { public interface Command {} private enum Idle implements Command { INSTANCE } public enum GoodByeCounter implements Command { INSTANCE } public enum Increment implements Command { INSTANCE } public static class GetValue implements Command { private final ActorRef<Integer> replyTo; public GetValue(ActorRef<Integer> replyTo) { this.replyTo = replyTo; } } public static Behavior<Command> create( ActorRef<ClusterSharding.ShardCommand> shard, String entityId) { return Behaviors.setup( ctx -> { ctx.setReceiveTimeout(Duration.ofSeconds(30), Idle.INSTANCE); return new Counter2(ctx, shard, entityId); }); } private final ActorRef<ClusterSharding.ShardCommand> shard; private final String entityId; private int value = 0; private Counter2( ActorContext<Command> context, ActorRef<ClusterSharding.ShardCommand> shard, String entityId) { super(context); this.shard = shard; this.entityId = entityId; } @Override public Receive<Command> createReceive() { return newReceiveBuilder() .onMessage(Increment.class, msg -> onIncrement()) .onMessage(GetValue.class, this::onGetValue) .onMessage(Idle.class, msg -> onIdle()) .onMessage(GoodByeCounter.class, msg -> onGoodByeCounter()) .build(); } private Behavior<Command> onIncrement() { value++; return this; } private Behavior<Command> onGetValue(GetValue msg) { msg.replyTo.tell(value); return this; } private Behavior<Command> onIdle() { // after receive timeout shard.tell(new ClusterSharding.Passivate<>(getContext().getSelf())); return this; } private Behavior<Command> onGoodByeCounter() { // the stopMessage, used for rebalance and passivate return Behaviors.stopped(); } }
and then initialized with:
- Scala
-
source
val TypeKey = EntityTypeKey[Counter.Command]("Counter") ClusterSharding(system).init(Entity(TypeKey)(createBehavior = entityContext => Counter(entityContext.shard, entityContext.entityId)).withStopMessage(Counter.GoodByeCounter))
- Java
-
source
EntityTypeKey<Counter2.Command> typeKey = EntityTypeKey.create(Counter2.Command.class, "Counter"); sharding.init( Entity.of(typeKey, ctx -> Counter2.create(ctx.getShard(), ctx.getEntityId())) .withStopMessage(Counter2.GoodByeCounter.INSTANCE));
Note that in the above example the stopMessage
is specified as GoodByeCounter
. That message will be sent to the entity when it’s supposed to stop itself due to rebalance or passivation. If the stopMessage
is not defined it will be stopped automatically without receiving a specific message. It can be useful to define a custom stop message if the entity needs to perform some asynchronous cleanup or interactions before stopping.
The stop message is only sent locally, from the shard to the entity so does not require an entity id to end up in the right actor. When using a custom ShardingMessageExtractor
ShardingMessageExtractor
without envelopes, the extractor will still have to handle the stop message type to please the compiler, even though it will never actually be passed to the extractor.
Automatic Passivation
Entities are automatically passivated based on a passivation strategy. The default passivation strategy is to passivate idle entities when they haven’t received a message within a specified interval, and this is the current default strategy to maintain compatibility with earlier versions. It’s recommended to switch to a passivation strategy with an active entity limit and a pre-configured default strategy is provided. Active entity limits and idle entity timeouts can also be used together.
The automatic passivation strategies, except passivate idle entities are marked as may change in the sense of being the subject of final development. This means that the configuration or semantics can change without warning or deprecation period. The passivation strategies can be used in production, but we reserve the right to adjust the configuration after additional testing and feedback.
Automatic passivation can be disabled by setting pekko.cluster.sharding.passivation.strategy = none
. It is disabled automatically if Remembering Entities is enabled.
Only messages sent through Cluster Sharding are counted as entity activity for automatic passivation. Messages sent directly to the ActorRef
ActorRef
, including messages that the actor sends to itself, are not counted as entity activity.
Idle entity passivation
Idle entities can be automatically passivated when they have not received a message for a specified length of time. This is currently the default strategy, for compatibility, and is enabled automatically with a timeout of 2 minutes. Specify a different idle timeout with configuration:
sourcepekko.cluster.sharding.passivation {
default-idle-strategy.idle-entity.timeout = 3 minutes
}
Or specify the idle timeout as a duration using the withPassivationStrategy
withPassivationStrategy
method on ClusterShardingSettings
.
Idle entity timeouts can be enabled and configured for any passivation strategy.
Active entity limits
Automatic passivation strategies can limit the number of active entities. Limit-based passivation strategies use a replacement policy to determine which active entities should be passivated when the active entity limit is exceeded. The configurable limit is for a whole shard region and is divided evenly among the active shards in each region.
A recommended passivation strategy, which will become the new default passivation strategy in future versions of Pekko Cluster Sharding, can be enabled with configuration:
sourcepekko.cluster.sharding.passivation {
strategy = default-strategy
}
This default strategy uses a composite passivation strategy which combines recency-based and frequency-based tracking: the main area is configured with a segmented least recently used policy with a frequency-biased admission filter, fronted by a recency-biased admission window with adaptive sizing enabled.
The active entity limit for the default strategy can be configured:
sourcepekko.cluster.sharding.passivation {
strategy = default-strategy
default-strategy {
active-entity-limit = 1000000
}
}
Or using the withActiveEntityLimit
withActiveEntityLimit
method on ClusterShardingSettings.PassivationStrategySettings
.
An idle entity timeout can also be enabled and configured for this strategy:
sourcepekko.cluster.sharding.passivation {
strategy = default-strategy
default-strategy {
idle-entity.timeout = 30.minutes
}
}
Or using the withIdleEntityPassivation
withIdleEntityPassivation
method on ClusterShardingSettings.PassivationStrategySettings
.
If the default strategy is not appropriate for particular workloads and access patterns, a custom passivation strategy can be created with configurable replacement policies, active entity limits, and idle entity timeouts.
Custom passivation strategies
To configure a custom passivation strategy, create a configuration section for the strategy under pekko.cluster.sharding.passivation
and select this strategy using the strategy
setting. The strategy needs a replacement policy to be chosen, an active entity limit to be set, and can optionally passivate idle entities. For example, a custom strategy can be configured to use the least recently used policy:
sourcepekko.cluster.sharding.passivation {
strategy = custom-lru-strategy
custom-lru-strategy {
active-entity-limit = 1000000
replacement.policy = least-recently-used
}
}
The active entity limit and replacement policy can also be configured using the withPassivationStrategy
method on ClusterShardingSettings
, passing custom ClusterShardingSettings.PassivationStrategySettings
.
Least recently used policy
The least recently used policy passivates those entities that have the least recent activity when the number of active entities passes the specified limit.
When to use: the least recently used policy should be used when access patterns are recency biased, where entities that were recently accessed are likely to be accessed again. See the segmented least recently used policy for a variation that also distinguishes frequency of access.
Configure a passivation strategy to use the least recently used policy:
sourcepekko.cluster.sharding.passivation {
strategy = custom-lru-strategy
custom-lru-strategy {
active-entity-limit = 1000000
replacement.policy = least-recently-used
}
}
Or using the withLeastRecentlyUsedReplacement
withLeastRecentlyUsedReplacement
method on ClusterShardingSettings.PassivationStrategySettings
.
Segmented least recently used policy
A variation of the least recently used policy can be enabled that divides the active entity space into multiple segments to introduce frequency information into the passivation strategy. Higher-level segments contain entities that have been accessed more often. The first segment is for entities that have only been accessed once, the second segment for entities that have been accessed at least twice, and so on. When an entity is accessed again, it will be promoted to the most recent position of the next-level or highest-level segment. The higher-level segments are limited, where the total limit is either evenly divided among segments, or proportions of the segments can be configured. When a higher-level segment exceeds its limit, the least recently used active entity tracked in that segment will be demoted to the level below. Only the least recently used entities in the lowest level will be candidates for passivation. The higher levels are considered “protected”, where entities will have additional opportunities to be accessed before being considered for passivation.
When to use: the segmented least recently used policy can be used for workloads where some entities are more popular than others, to prioritize those entities that are accessed more frequently.
To configure a segmented least recently used (SLRU) policy, with two levels and a protected segment limited to 80% of the total limit:
sourcepekko.cluster.sharding.passivation {
strategy = custom-slru-strategy
custom-slru-strategy {
active-entity-limit = 1000000
replacement {
policy = least-recently-used
least-recently-used {
segmented {
levels = 2
proportions = [0.2, 0.8]
}
}
}
}
}
Or to configure a 4-level segmented least recently used (S4LRU) policy, with 4 evenly divided levels:
sourcepekko.cluster.sharding.passivation {
strategy = custom-s4lru-strategy
custom-s4lru-strategy {
active-entity-limit = 1000000
replacement {
policy = least-recently-used
least-recently-used {
segmented.levels = 4
}
}
}
}
Or using custom ClusterShardingSettings.PassivationStrategySettings.LeastRecentlyUsedSettings
.
Most recently used policy
The most recently used policy passivates those entities that have the most recent activity when the number of active entities passes the specified limit.
When to use: the most recently used policy is most useful when the older an entity is, the more likely that entity will be accessed again; as seen in cyclic access patterns.
Configure a passivation strategy to use the most recently used policy:
sourcepekko.cluster.sharding.passivation {
strategy = custom-mru-strategy
custom-mru-strategy {
active-entity-limit = 1000000
replacement.policy = most-recently-used
}
}
Or using the withMostRecentlyUsedReplacement
withMostRecentlyUsedReplacement
method on ClusterShardingSettings.PassivationStrategySettings
.
Least frequently used policy
The least frequently used policy passivates those entities that have the least frequent activity when the number of active entities passes the specified limit.
When to use: the least frequently used policy should be used when access patterns are frequency biased, where some entities are much more popular than others and should be prioritized. See the least frequently used with dynamic aging policy for a variation that also handles shifts in popularity.
Configure automatic passivation to use the least frequently used policy:
sourcepekko.cluster.sharding.passivation {
strategy = custom-lfu-strategy
custom-lfu-strategy {
active-entity-limit = 1000000
replacement.policy = least-frequently-used
}
}
Or using the withLeastFrequentlyUsedReplacement
withLeastFrequentlyUsedReplacement
method on ClusterShardingSettings.PassivationStrategySettings
.
Least frequently used with dynamic aging policy
A variation of the least frequently used policy can be enabled that uses “dynamic aging” to adapt to shifts in the set of popular entities, which is useful for smaller active entity limits and when shifts in popularity are common. If entities were frequently accessed in the past but then become unpopular, they can still remain active for a long time given their high frequency counts. Dynamic aging effectively increases the frequencies for recently accessed entities so they can more easily become higher priority over entities that are no longer accessed.
When to use: the least frequently used with dynamic aging policy can be used when workloads are frequency biased (there are some entities that are much more popular), but which entities are most popular changes over time. Shifts in popularity can have more impact on a least frequently used policy if the active entity limit is small.
Configure dynamic aging with the least frequently used policy:
sourcepekko.cluster.sharding.passivation {
strategy = custom-lfu-with-dynamic-aging
custom-lfu-with-dynamic-aging {
active-entity-limit = 1000
replacement {
policy = least-frequently-used
least-frequently-used {
dynamic-aging = on
}
}
}
}
Or using custom ClusterShardingSettings.PassivationStrategySettings.LeastFrequentlyUsedSettings
.
Composite passivation strategies
Passivation strategies can be combined using an admission window and admission filter. The admission window tracks newly activated entities. Entities are replaced in the admission window using one of the replacement policies, such as the least recently used replacement policy. When an entity is replaced in the window area it has an opportunity to enter the main entity tracking area, based on the admission filter. The admission filter determines whether an entity that has left the window area should be admitted into the main area, or otherwise be passivated. A frequency sketch is the default admission filter and estimates the access frequency of entities over the lifespan of the cluster sharding node, selecting the entity that is estimated to be accessed more frequently. Composite passivation strategies with an admission window and admission filter are implementing the Window-TinyLFU caching algorithm.
Admission window policy
The admission window tracks newly activated entities. When an entity is replaced in the window area, it has an opportunity to enter the main entity tracking area, based on the admission filter. The admission window can be enabled by selecting a policy (while the regular replacement policy is for the main area):
sourcepekko.cluster.sharding.passivation {
strategy = custom-strategy-with-admission-window
custom-strategy-with-admission-window {
active-entity-limit = 1000000
admission.window.policy = least-recently-used
replacement.policy = least-frequently-used
}
}
The proportion of the active entity limit used for the admission window can be configured (the default is 1%):
sourcepekko.cluster.sharding.passivation {
strategy = custom-strategy-with-admission-window
custom-strategy-with-admission-window {
active-entity-limit = 1000000
admission.window {
policy = least-recently-used
proportion = 0.1 # 10%
}
replacement.policy = least-frequently-used
}
}
The proportion for the admission window can also be adapted and optimized dynamically, by enabling an admission window optimizer.
Admission window optimizer
The proportion of the active entity limit used for the admission window can be adapted dynamically using an optimizer. The window area will usually retain entities that are accessed again in a short time (recency-biased), while the main area can track entities that are accessed more frequently over longer times (frequency-biased). If access patterns for entities are changeable, then the adaptive sizing of the window allows the passivation strategy to adapt between recency-biased and frequency-biased workloads.
The optimizer currently available uses a simple hill-climbing algorithm, which searches for a window proportion that provides an optimal active rate (where entities are already active when accessed, the cache hit rate). Enable adaptive window sizing by configuring the hill-climbing
window optimizer:
sourcepekko.cluster.sharding.passivation {
strategy = custom-strategy-with-admission-window
custom-strategy-with-admission-window {
active-entity-limit = 1000000
admission.window {
policy = least-recently-used
optimizer = hill-climbing
}
replacement.policy = least-frequently-used
}
}
See the reference.conf
for parameters that can be tuned for the hill climbing admission window optimizer.
Admission filter
An admission filter can be enabled, which determines whether an entity that has left the window area (or a newly activated entity if there is no admission window) should be admitted into the main entity tracking area, or otherwise be passivated. If no admission filter is configured, then entities will always be admitted into the main area.
A frequency sketch is the default admission filter and estimates the access frequency of entities over the lifespan of the cluster sharding node, selecting the entity that is estimated to be accessed more frequently. The frequency sketch automatically ages entries, using the approach from the TinyLFU cache admission algorithm. Enable an admission filter by configuring the frequency-sketch
admission filter:
sourcepekko.cluster.sharding.passivation {
strategy = custom-strategy-with-admission
custom-strategy-with-admission {
active-entity-limit = 1000000
admission {
window {
policy = least-recently-used
optimizer = hill-climbing
}
filter = frequency-sketch
}
replacement {
policy = least-recently-used
least-recently-used {
segmented {
levels = 2
proportions = [0.2, 0.8]
}
}
}
}
}
See the reference.conf
for parameters that can be tuned for the frequency sketch admission filter.
Sharding State
There are two types of state managed:
- ShardCoordinator State - the
Shard
locations. This is stored in theState Store
. - Remembering Entities - the active shards and the entities in each
Shard
, which is optional, and disabled by default. This is stored in theRemember Entities Store
.
State Store
A state store is mandatory for sharding, it contains the location of shards. The ShardCoordinator
needs to load this state after it moves between nodes.
There are two options for the state store:
- Distributed Data Mode - uses Pekko Distributed Data (CRDTs) (the default)
- Persistence Mode - (deprecated) uses Pekko Persistence (Event Sourcing)
Persistence for state store mode is deprecated. It is recommended to migrate to ddata
for the coordinator state and if using replicated entities migrate to eventsourced
for the replicated entities state.
The data written by the deprecated persistence
state store mode for remembered entities can be read by the new remember entities eventsourced
mode.
Once you’ve migrated you can not go back to persistence
mode.
Distributed Data Mode
To enable distributed data store mode (the default):
pekko.cluster.sharding.state-store-mode = ddata
The state of the ShardCoordinator
is replicated across the cluster but is not stored to disk. Distributed Data handles the ShardCoordinator
’s state with WriteMajorityPlus
WriteMajorityPlus
/ ReadMajorityPlus
ReadMajorityPlus
consistency. When all nodes in the cluster have been stopped, the state is no longer needed and dropped.
Cluster Sharding uses its own Distributed Data Replicator
Replicator
per node. If using roles with sharding there is one Replicator
per role, which enables a subset of all nodes for some entity types and another subset for other entity types. Each replicator has a name that contains the node role and therefore the role configuration must be the same on all nodes in the cluster, for example you can’t change the roles when performing a rolling update. Changing roles requires a full cluster restart.
The pekko.cluster.sharding.distributed-data
config section configures the settings for Distributed Data. It’s not possible to have different distributed-data
settings for different sharding entity types.
Persistence mode
To enable persistence store mode:
pekko.cluster.sharding.state-store-mode = persistence
Since it is running in a cluster Persistence must be configured with a distributed journal.
Persistence mode for Remembering Entities has been replaced by a remember entities state mode. It should not be used for new projects and existing projects should migrate as soon as possible.
Remembering Entities
Remembering entities automatically restarts entities after a rebalance or entity crash. Without remembered entities restarts happen on the arrival of a message.
Enabling remembered entities disables Automatic Passivation.
The state of the entities themselves is not restored unless they have been made persistent, for example with Event Sourcing.
To enable remember entities set rememberEntities
flag to true in ClusterShardingSettings
ClusterShardingSettings
when starting a shard region (or its proxy) for a given entity
type or configure pekko.cluster.sharding.remember-entities = on
.
Starting and stopping entities has an overhead but this is limited by batching operations to the underlying remember entities store.
Behavior When Enabled
When rememberEntities
is enabled, whenever a Shard
is rebalanced onto another node or recovers after a crash, it will recreate all the entities which were previously running in that Shard
.
To permanently stop entities send a ClusterSharding.Passivate
ClusterSharding.Passivate
to the ActorRef
ActorRef
[ShardCommand
]<ShardCommand
> that was passed in to the factory method when creating the entity. Otherwise, the entity will be automatically restarted after the entity restart backoff specified in the configuration.
Remember entities store
There are two options for the remember entities store:
ddata
eventsourced
Remember entities distributed data mode
Enable ddata mode with (enabled by default):
pekko.cluster.sharding.remember-entities-store = ddata
To support restarting entities after a full cluster restart (non-rolling) the remember entities store is persisted to disk by distributed data. This can be disabled if not needed:
pekko.cluster.sharding.distributed-data.durable.keys = []
Reasons for disabling:
- No requirement for remembering entities after a full cluster shutdown
- Running in an environment without access to disk between restarts e.g. Kubernetes without persistent volumes
For supporting remembered entities in an environment without disk storage use eventsourced
mode instead.
Event sourced mode
Enable eventsourced
mode with:
pekko.cluster.sharding.remember-entities-store = eventsourced
This mode uses Event Sourcing to store the active shards and active entities for each shard so a persistence and snapshot plugin must be configured.
pekko.cluster.sharding.journal-plugin-id = <plugin>
pekko.cluster.sharding.snapshot-plugin-id = <plugin>
Migrating from deprecated persistence mode
If not using remembered entities you can migrate to ddata with a full cluster restart.
If using remembered entities there are two migration options:
ddata
for the state store andddata
for remembering entities. All remembered entities will be lost after a full cluster restart.ddata
for the state store andeventsourced
for remembering entities. The neweventsourced
remembering entities store reads the data written by the oldpersistence
mode. Your remembered entities will be remembered after a full cluster restart.
For migrating existing remembered entities an event adapter needs to be configured in the config for the journal you use in your application.conf
. In this example cassandra
is the used journal:
pekko.persistence.cassandra.journal {
event-adapters {
coordinator-migration = "org.apache.pekko.cluster.sharding.OldCoordinatorStateMigrationEventAdapter"
}
event-adapter-bindings {
"org.apache.pekko.cluster.sharding.ShardCoordinator$Internal$DomainEvent" = coordinator-migration
}
}
Once you have migrated you cannot go back to the old persistence store, a rolling update is therefore not possible.
When Distributed Data mode is used the identifiers of the entities are stored in Durable Storage of Distributed Data. You may want to change the configuration of the pekko.cluster.sharding.distributed-data.durable.lmdb.dir
, since the default directory contains the remote port of the actor system. If using a dynamically assigned port (0) it will be different each time and the previously stored data will not be loaded.
The reason for storing the identifiers of the active entities in durable storage, i.e. stored to disk, is that the same entities should be started also after a complete cluster restart. If this is not needed you can disable durable storage and benefit from better performance by using the following configuration:
pekko.cluster.sharding.distributed-data.durable.keys = []
Startup after minimum number of members
It’s recommended to use Cluster Sharding with the Cluster setting pekko.cluster.min-nr-of-members
or pekko.cluster.role.<role-name>.min-nr-of-members
. min-nr-of-members
will defer the allocation of the shards until at least that number of regions have been started and registered to the coordinator. This avoids that many shards are allocated to the first region that registers and only later are rebalanced to other nodes.
See How To Startup when Cluster Size Reached for more information about min-nr-of-members
.
Health check
An Pekko Management compatible health check is included that returns healthy once the local shard region has registered with the coordinator. This health check should be used in cases where you don’t want to receive production traffic until the local shard region is ready to retrieve locations for shards. For shard regions that aren’t critical and therefore should not block this node becoming ready do not include them.
The health check does not fail after an initial successful check. Once a shard region is registered and is operational it stays available for incoming message.
Cluster sharding enables the health check automatically. To disable:
pekko.management.health-checks.readiness-checks {
sharding = ""
}
Monitoring of each shard region is off by default. Add them by defining the entity type names (EntityTypeKey.name
):
pekko.cluster.sharding.healthcheck.names = ["counter-1", "HelloWorld"]
See also additional information about how to make smooth rolling updates.
Inspecting cluster sharding state
Two requests to inspect the cluster state are available:
GetShardRegionState
GetShardRegionState
which will reply with a ShardRegion.CurrentShardRegionState
ShardRegion.CurrentShardRegionState
that contains the identifiers of the shards running in a Region and what entities are alive for each of them.
- Scala
-
source
import org.apache.pekko import pekko.cluster.sharding.typed.GetShardRegionState import pekko.cluster.sharding.ShardRegion.CurrentShardRegionState val replyTo: ActorRef[CurrentShardRegionState] = replyMessageAdapter ClusterSharding(system).shardState ! GetShardRegionState(Counter.TypeKey, replyTo)
- Java
-
source
import org.apache.pekko.cluster.sharding.typed.GetShardRegionState; import org.apache.pekko.cluster.sharding.ShardRegion.CurrentShardRegionState; ActorRef<CurrentShardRegionState> replyTo = replyMessageAdapter; ClusterSharding.get(system).shardState().tell(new GetShardRegionState(typeKey, replyTo));
GetClusterShardingStats
GetClusterShardingStats
which will query all the regions in the cluster and reply with a ShardRegion.ClusterShardingStats
ShardRegion.ClusterShardingStats
containing the identifiers of the shards running in each region and a count of entities that are alive in each shard.
- Scala
-
source
import org.apache.pekko import pekko.cluster.sharding.typed.GetClusterShardingStats import pekko.cluster.sharding.ShardRegion.ClusterShardingStats import scala.concurrent.duration._ val replyTo: ActorRef[ClusterShardingStats] = replyMessageAdapter val timeout: FiniteDuration = 5.seconds ClusterSharding(system).shardState ! GetClusterShardingStats(Counter.TypeKey, timeout, replyTo)
- Java
-
source
import org.apache.pekko.cluster.sharding.typed.GetClusterShardingStats; import org.apache.pekko.cluster.sharding.ShardRegion.ClusterShardingStats; ActorRef<ClusterShardingStats> replyTo = replyMessageAdapter; Duration timeout = Duration.ofSeconds(5); ClusterSharding.get(system) .shardState() .tell(new GetClusterShardingStats(typeKey, timeout, replyTo));
If any shard queries failed, for example due to timeout if a shard was too busy to reply within the configured pekko.cluster.sharding.shard-region-query-timeout
, ShardRegion.CurrentShardRegionState
and ShardRegion.ClusterShardingStats
will also include the set of shard identifiers by region that failed.
The purpose of these messages is testing and monitoring, they are not provided to give access to directly sending messages to the individual entities.
Lease
A lease can be used as an additional safety measure to ensure a shard does not run on two nodes.
Reasons for how this can happen:
- Network partitions without an appropriate downing provider
- Mistakes in the deployment process leading to two separate Pekko Clusters
- Timing issues between removing members from the Cluster on one side of a network partition and shutting them down on the other side
A lease can be a final backup that means that each shard won’t create child entity actors unless it has the lease.
To use a lease for sharding set pekko.cluster.sharding.use-lease
to the configuration location of the lease to use. Each shard will try and acquire a lease with with the name <actor system name>-shard-<type name>-<shard id>
and the owner is set to the Cluster(system).selfAddress.hostPort
.
If a shard can’t acquire a lease it will remain uninitialized so messages for entities it owns will be buffered in the ShardRegion
. If the lease is lost after initialization the Shard will be terminated.
Removal of internal Cluster Sharding data
Removal of internal Cluster Sharding data is only relevant for “Persistent Mode”. The Cluster Sharding ShardCoordinator
stores locations of the shards. This data is safely be removed when restarting the whole Pekko Cluster. Note that this does not include application data.
There is a utility program RemoveInternalClusterShardingData
RemoveInternalClusterShardingData
that removes this data.
Never use this program while there are running Pekko Cluster nodes that are using Cluster Sharding. Stop all Cluster nodes before using this program.
It can be needed to remove the data if the Cluster Sharding coordinator cannot startup because of corrupt data, which may happen if accidentally two clusters were running at the same time, e.g. caused by an invalid downing provider when there was a network partition.
Use this program as a standalone Java main program:
java -classpath <jar files, including pekko-cluster-sharding>
org.apache.pekko.cluster.sharding.RemoveInternalClusterShardingData
-2.3 entityType1 entityType2 entityType3
The program is included in the pekko-cluster-sharding
jar file. It is easiest to run it with same classpath and configuration as your ordinary application. It can be run from sbt or Maven in similar way.
Specify the entity type names (same as you use in the init
method of ClusterSharding
) as program arguments.
Configuration
The ClusterSharding
ClusterSharding
extension can be configured with the following properties. These configuration properties are read by the ClusterShardingSettings
ClusterShardingSettings
when created with an ActorSystem parameter. It is also possible to amend the ClusterShardingSettings
or create it from another config section with the same layout as below.
One important configuration property is number-of-shards
as described in Shard allocation.
You may also need to tune the configuration properties is rebalance-absolute-limit
and rebalance-relative-limit
as described in Shard allocation.
source# Settings for the ClusterShardingExtension
pekko.cluster.sharding {
# The extension creates a top level actor with this name in top level system scope,
# e.g. '/system/sharding'
guardian-name = sharding
# Specifies that entities run on cluster nodes with a specific role.
# If the role is not specified (or empty) all nodes in the cluster are used.
role = ""
# When this is set to 'on' the active entity actors will automatically be restarted
# upon Shard restart. i.e. if the Shard is started on a different ShardRegion
# due to rebalance or crash.
remember-entities = off
# When 'remember-entities' is enabled and the state store mode is ddata this controls
# how the remembered entities and shards are stored. Possible values are "eventsourced" and "ddata"
# Default is ddata for backwards compatibility.
remember-entities-store = "ddata"
# Deprecated: use the `passivation.default-idle-strategy.idle-entity.timeout` setting instead.
# Set this to a time duration to have sharding passivate entities when they have not
# received any message in this length of time. Set to 'off' to disable.
# It is always disabled if `remember-entities` is enabled.
passivate-idle-entity-after = null
# Automatic entity passivation settings.
passivation {
# Automatic passivation strategy to use.
# Set to "none" or "off" to disable automatic passivation.
# Set to "default-strategy" to switch to the recommended default strategy with an active entity limit.
# See the strategy-defaults section for possible passivation strategy settings and default values.
# Passivation strategies are always disabled if `remember-entities` is enabled.
#
# API MAY CHANGE: Configuration for passivation strategies, except default-idle-strategy,
# may change after additional testing and feedback.
strategy = "default-idle-strategy"
# Default passivation strategy without active entity limit; time out idle entities after 2 minutes.
default-idle-strategy {
idle-entity.timeout = 120s
}
# Recommended default strategy for automatic passivation with an active entity limit.
# Configured with an adaptive recency-based admission window, a frequency-based admission filter, and
# a segmented least recently used (SLRU) replacement policy for the main active entity tracking.
default-strategy {
# Default limit of 100k active entities in a shard region (in a cluster node).
active-entity-limit = 100000
# Admisson window with LRU policy and adaptive sizing, and a frequency sketch admission filter to the main area.
admission {
window {
policy = least-recently-used
optimizer = hill-climbing
}
filter = frequency-sketch
}
# Main area with segmented LRU replacement policy with an 80% "protected" level by default.
replacement {
policy = least-recently-used
least-recently-used {
segmented {
levels = 2
proportions = [0.2, 0.8]
}
}
}
}
strategy-defaults {
# Passivate entities when they have not received a message for a specified length of time.
idle-entity {
# Passivate idle entities after the timeout. Set to "none" or "off" to disable.
timeout = none
# Check idle entities every interval. Set to "default" to use half the timeout by default.
interval = default
}
# Limit of active entities in a shard region.
# Passivate entities when the number of active entities in a shard region reaches this limit.
# The per-region limit is divided evenly among the active shards in a region.
# Set to "none" or "off" to disable limit-based automatic passivation, to only use idle entity timeouts.
active-entity-limit = none
# Entity replacement settings, for when the active entity limit is reached.
replacement {
# Entity replacement policy to use when the active entity limit is reached. Possible values are:
# - "least-recently-used"
# - "most-recently-used"
# - "least-frequently-used"
# Set to "none" or "off" to disable the replacement policy and ignore the active entity limit.
policy = none
# Least recently used entity replacement policy.
least-recently-used {
# Optionally use a "segmented" least recently used strategy.
# Disabled when segmented.levels are set to "none" or "off".
segmented {
# Number of segmented levels.
levels = none
# Fractional proportions for the segmented levels.
# If empty then segments are divided evenly by the number of levels.
proportions = []
}
}
# Most recently used entity replacement policy.
most-recently-used {}
# Least frequently used entity replacement policy.
least-frequently-used {
# New frequency counts will be "dynamically aged" when enabled.
dynamic-aging = off
}
}
# An optional admission area, with a window for newly and recently activated entities, and an admission filter
# to determine whether a candidate should be admitted to the main area of the passivation strategy.
admission {
# An optional window area, where newly created entities will be admitted initially, and when evicted
# from the window area have an opportunity to move to the main area based on the admission filter.
window {
# The initial sizing for the window area (if enabled), as a fraction of the total active entity limit.
proportion = 0.01
# The minimum adaptive sizing for the window area, as a fraction of the total active entity limit.
# Only applies when an adaptive window optimizer is enabled.
minimum-proportion = 0.01
# The maximum adaptive sizing for the window area, as a fraction of the total active entity limit.
# Only applies when an adaptive window optimizer is enabled.
maximum-proportion = 1.0
# Adaptive optimizer to use for dynamically resizing the window area. Possible values are:
# - "hill-climbing"
# Set to "none" or "off" to disable adaptive sizing of the window area.
optimizer = off
# A window proportion optimizer using a simple hill-climbing algorithm.
hill-climbing {
# Multiplier of the active entity limit for how often (in accesses) to adjust the window proportion.
adjust-multiplier = 10.0
# The size of the initial step to take (also used when the climbing restarts).
initial-step = 0.0625
# A threshold for the change in active rate (hit rate) to restart climbing.
restart-threshold = 0.05
# The decay ratio applied on each climbing step.
step-decay = 0.98
}
# Replacement policy to use for the window area.
# Entities that are evicted from the window area may move to the main area, based on the admission filter.
# Possible values are the same as for the main replacement policy.
# Set to "none" or "off" to disable the window area.
policy = none
least-recently-used {
segmented {
levels = none
proportions = []
}
}
most-recently-used {}
least-frequently-used {
dynamic-aging = off
}
}
# The admission filter for the main area of the passivation strategy. Possible values are:
# - "frequency-sketch"
# Set to "none" or "off" to disable the admission filter and always admit to the main area.
filter = none
# An admission filter based on a frequency sketch (a variation of a count-min sketch).
frequency-sketch {
# The depth of the frequency sketch (the number of hash functions).
depth = 4
# The size of the frequency counters in bits: 2, 4, 8, 16, 32, or 64 bits.
counter-bits = 4
# Multiplier of the active entity limit for the width of the frequency sketch.
width-multiplier = 4
# Multiplier of the active entity limit for how often the reset operation of the frequency sketch is applied.
reset-multiplier = 10.0
}
}
}
}
# If the coordinator can't store state changes it will be stopped
# and started again after this duration, with an exponential back-off
# of up to 5 times this duration.
coordinator-failure-backoff = 5 s
# The ShardRegion retries registration and shard location requests to the
# ShardCoordinator with this interval if it does not reply.
retry-interval = 2 s
# Maximum number of messages that are buffered by a ShardRegion actor.
buffer-size = 100000
# Timeout of the shard rebalancing process.
# Additionally, if an entity doesn't handle the stopMessage
# after (handoff-timeout - 5.seconds).max(1.second) it will be stopped forcefully
handoff-timeout = 60 s
# Time given to a region to acknowledge it's hosting a shard.
shard-start-timeout = 10 s
# If the shard is remembering entities and can't store state changes, it
# will be stopped and then started again after this duration. Any messages
# sent to an affected entity may be lost in this process.
shard-failure-backoff = 10 s
# If the shard is remembering entities and an entity stops itself without
# using passivate, the entity will be restarted after this duration or when
# the next message for it is received, whichever occurs first.
entity-restart-backoff = 10 s
# Rebalance check is performed periodically with this interval.
rebalance-interval = 10 s
# Absolute path to the journal plugin configuration entity that is to be
# used for the internal persistence of ClusterSharding. If not defined,
# the default journal plugin is used. Note that this is not related to
# persistence used by the entity actors.
# Only used when state-store-mode=persistence
journal-plugin-id = ""
# Absolute path to the snapshot plugin configuration entity that is to be
# used for the internal persistence of ClusterSharding. If not defined,
# the default snapshot plugin is used. Note that this is not related to
# persistence used by the entity actors.
# Only used when state-store-mode=persistence
snapshot-plugin-id = ""
# Defines how the coordinator stores its state. Same is also used by the
# shards for rememberEntities.
# Valid values are "ddata" or "persistence".
# "persistence" mode is deprecated
state-store-mode = "ddata"
# The shard saves persistent snapshots after this number of persistent
# events. Snapshots are used to reduce recovery times. A snapshot trigger might be delayed if a batch of updates is processed.
# Only used when state-store-mode=persistence
snapshot-after = 1000
# The shard deletes persistent events (messages and snapshots) after doing snapshot
# keeping this number of old persistent batches.
# Batch is of size `snapshot-after`.
# When set to 0, after snapshot is successfully done, all events with equal or lower sequence number will be deleted.
# Default value of 2 leaves last maximum 2*`snapshot-after` events and 3 snapshots (2 old ones + latest snapshot).
# If larger than 0, one additional batch of journal messages is kept when state-store-mode=persistence to include messages from delayed snapshots.
keep-nr-of-batches = 2
# Settings for LeastShardAllocationStrategy.
#
# A new rebalance algorithm was included in Pekko 2.6.10. It can reach optimal balance in
# less rebalance rounds (typically 1 or 2 rounds). The amount of shards to rebalance in each
# round can still be limited to make it progress slower. For backwards compatibility,
# the new algorithm is not enabled by default. Enable the new algorithm by setting
# `rebalance-absolute-limit` > 0, for example:
# pekko.cluster.sharding.least-shard-allocation-strategy.rebalance-absolute-limit=20
# The new algorithm is recommended and will become the default in future versions of Pekko.
least-shard-allocation-strategy {
# Maximum number of shards that will be rebalanced in one rebalance round.
# The lower of this and `rebalance-relative-limit` will be used.
rebalance-absolute-limit = 0
# Maximum number of shards that will be rebalanced in one rebalance round.
# Fraction of total number of (known) shards.
# The lower of this and `rebalance-absolute-limit` will be used.
rebalance-relative-limit = 0.1
# Deprecated: Use rebalance-absolute-limit and rebalance-relative-limit instead. This property is not used
# when rebalance-absolute-limit > 0.
#
# Threshold of how large the difference between most and least number of
# allocated shards must be to begin the rebalancing.
# The difference between number of shards in the region with most shards and
# the region with least shards must be greater than (>) the `rebalanceThreshold`
# for the rebalance to occur.
# It is also the maximum number of shards that will start rebalancing per rebalance-interval
# 1 gives the best distribution and therefore typically the best choice.
# Increasing the threshold can result in quicker rebalance but has the
# drawback of increased difference between number of shards (and therefore load)
# on different nodes before rebalance will occur.
rebalance-threshold = 1
# Deprecated: Use rebalance-absolute-limit and rebalance-relative-limit instead. This property is not used
# when rebalance-absolute-limit > 0.
#
# The number of ongoing rebalancing processes is limited to this number.
max-simultaneous-rebalance = 3
}
external-shard-allocation-strategy {
# How long to wait for the client to persist an allocation to ddata or get all shard locations
client-timeout = 5s
}
# Timeout of waiting the initial distributed state for the shard coordinator (an initial state will be queried again if the timeout happened)
# and for a shard to get its state when remembered entities is enabled
# The read from ddata is a ReadMajority, for small clusters (< majority-min-cap) every node needs to respond
# so is more likely to time out if there are nodes restarting e.g. when there is a rolling re-deploy happening
waiting-for-state-timeout = 2 s
# Timeout of waiting for update the distributed state (update will be retried if the timeout happened)
# Also used as timeout for writes of remember entities when that is enabled
updating-state-timeout = 5 s
# Timeout to wait for querying all shards for a given `ShardRegion`.
shard-region-query-timeout = 3 s
# The shard uses this strategy to determines how to recover the underlying entity actors. The strategy is only used
# by the persistent shard when rebalancing or restarting and is applied per remembered shard starting up (not for
# entire shard region). The value can either be "all" or "constant". The "all"
# strategy start all the underlying entity actors at the same time. The constant strategy will start the underlying
# entity actors at a fix rate. The default strategy "all".
entity-recovery-strategy = "all"
# Default settings for the constant rate entity recovery strategy
entity-recovery-constant-rate-strategy {
# Sets the frequency at which a batch of entity actors is started.
frequency = 100 ms
# Sets the number of entity actors to be restart at a particular interval
number-of-entities = 5
}
event-sourced-remember-entities-store {
# When using remember entities and the event sourced remember entities store the batches
# written to the store are limited by this number to avoid getting a too large event for
# the journal to handle. If using long persistence ids you may have to increase this.
max-updates-per-write = 100
}
# Settings for the coordinator singleton. Same layout as pekko.cluster.singleton.
# The "role" of the singleton configuration is not used. The singleton role will
# be the same as "pekko.cluster.sharding.role" if
# "pekko.cluster.sharding.coordinator-singleton-role-override" is enabled. Disabling it will allow to
# use separate nodes for the shard coordinator and the shards themselves.
# A lease can be configured in these settings for the coordinator singleton
coordinator-singleton = ${pekko.cluster.singleton}
# Copies the role for the coordinator singleton from the shards role instead of using the one provided in the
# "pekko.cluster.sharding.coordinator-singleton.role"
coordinator-singleton-role-override = on
coordinator-state {
# State updates are required to be written to a majority of nodes plus this
# number of additional nodes. Can also be set to "all" to require
# writes to all nodes. The reason for write/read to more than majority
# is to have more tolerance for membership changes between write and read.
# The tradeoff of increasing this is that updates will be slower.
# It is more important to increase the `read-majority-plus`.
write-majority-plus = 3
# State retrieval when ShardCoordinator is started is required to be read
# from a majority of nodes plus this number of additional nodes. Can also
# be set to "all" to require reads from all nodes. The reason for write/read
# to more than majority is to have more tolerance for membership changes between
# write and read.
# The tradeoff of increasing this is that coordinator startup will be slower.
read-majority-plus = 5
}
# Settings for the Distributed Data replicator.
# Same layout as pekko.cluster.distributed-data.
# The "role" of the distributed-data configuration is not used. The distributed-data
# role will be the same as "pekko.cluster.sharding.role".
# Note that there is one Replicator per role and it's not possible
# to have different distributed-data settings for different sharding entity types.
# Only used when state-store-mode=ddata
distributed-data = ${pekko.cluster.distributed-data}
distributed-data {
# minCap parameter to MajorityWrite and MajorityRead consistency level.
majority-min-cap = 5
durable.keys = ["shard-*"]
# When using many entities with "remember entities" the Gossip message
# can become too large if including too many in same message. Limit to
# the same number as the number of ORSet per shard.
max-delta-elements = 5
# ShardCoordinator is singleton running on oldest
prefer-oldest = on
}
# The id of the dispatcher to use for ClusterSharding actors.
# If specified, you need to define the settings of the actual dispatcher.
# This dispatcher for the entity actors is defined by the user provided
# Props, i.e. this dispatcher is not used for the entity actors.
use-dispatcher = "pekko.actor.internal-dispatcher"
# Config path of the lease that each shard must acquire before starting entity actors
# default is no lease
# A lease can also be used for the singleton coordinator by settings it in the coordinator-singleton properties
use-lease = ""
# The interval between retries for acquiring the lease
lease-retry-interval = 5s
# Provide a higher level of details in the debug logs, often per routed message. Be careful about enabling
# in production systems.
verbose-debug-logging = off
# Throw an exception if the internal state machine in the Shard actor does an invalid state transition.
# Mostly for the Pekko test suite. If off, the invalid transition is logged as a warning instead of throwing and
# crashing the shard.
fail-on-invalid-entity-state-transition = off
# Healthcheck that can be used with Pekko management health checks: https://pekko.apache.org/docs/pekko-management/current/healthchecks.html
healthcheck {
# sharding names to check have registered with the coordinator for the health check to pass
# once initial registration has taken place the health check always returns true to prevent the coordinator
# moving making the health check of all nodes fail
# by default no sharding instances are monitored
names = []
# Timeout for the local shard region to respond. This should be lower than your monitoring system's
# timeout for health checks
timeout = 5s
}
}
sourcepekko.cluster.sharding {
# Number of shards used by the default HashCodeMessageExtractor
# when no other message extractor is defined. This value must be
# the same for all nodes in the cluster and that is verified by
# configuration check when joining. Changing the value requires
# stopping all nodes in the cluster.
number-of-shards = 1000
}
Example project
Sharding example project Sharding example project is an example project that can be downloaded, and with instructions of how to run.
This project contains a KillrWeather sample illustrating how to use Cluster Sharding.