Futures interop

Dependency

The Akka dependencies are available from Akka’s library repository. To access them there, you need to configure the URL for this repository.

sbt
resolvers += "Akka library repository".at("https://repo.akka.io/maven")
Maven
<project>
  ...
  <repositories>
    <repository>
      <id>akka-repository</id>
      <name>Akka library repository</name>
      <url>https://repo.akka.io/maven</url>
    </repository>
  </repositories>
</project>
Gradle
repositories {
    mavenCentral()
    maven {
        url "https://repo.akka.io/maven"
    }
}

To use Akka Streams, add the module to your project:

sbt
val AkkaVersion = "2.10.0"
libraryDependencies += "com.typesafe.akka" %% "akka-stream" % AkkaVersion
Maven
<properties>
  <scala.binary.version>2.13</scala.binary.version>
</properties>
<dependencyManagement>
  <dependencies>
    <dependency>
      <groupId>com.typesafe.akka</groupId>
      <artifactId>akka-bom_${scala.binary.version}</artifactId>
      <version>2.10.0</version>
      <type>pom</type>
      <scope>import</scope>
    </dependency>
  </dependencies>
</dependencyManagement>
<dependencies>
  <dependency>
    <groupId>com.typesafe.akka</groupId>
    <artifactId>akka-stream_${scala.binary.version}</artifactId>
  </dependency>
</dependencies>
Gradle
def versions = [
  ScalaBinary: "2.13"
]
dependencies {
  implementation platform("com.typesafe.akka:akka-bom_${versions.ScalaBinary}:2.10.0")

  implementation "com.typesafe.akka:akka-stream_${versions.ScalaBinary}"
}

Overview

Stream transformations and side effects involving external non-stream based services can be performed with mapAsync or mapAsyncUnordered.

For example, sending emails to the authors of selected tweets using an external email service:

Scala
sourcedef send(email: Email): Future[Unit] = {
  // ...
}
Java
sourcepublic CompletionStage<Email> send(Email email) {
  // ...
}

We start with the tweet stream of authors:

Scala
sourceval authors: Source[Author, NotUsed] =
  tweets.filter(_.hashtags.contains(akkaTag)).map(_.author)
Java
sourcefinal Source<Author, NotUsed> authors =
    tweets.filter(t -> t.hashtags().contains(AKKA)).map(t -> t.author);

Assume that we can look up their email address using:

Scala
sourcedef lookupEmail(handle: String): Future[Option[String]] =
Java
sourcepublic CompletionStage<Optional<String>> lookupEmail(String handle)

Transforming the stream of authors to a stream of email addresses by using the lookupEmail service can be done with mapAsync:

Scala
sourceval emailAddresses: Source[String, NotUsed] =
  authors.mapAsync(4)(author => addressSystem.lookupEmail(author.handle)).collect {
    case Some(emailAddress) => emailAddress
  }
Java
sourcefinal Source<String, NotUsed> emailAddresses =
    authors
        .mapAsync(4, author -> addressSystem.lookupEmail(author.handle))
        .filter(o -> o.isPresent())
        .map(o -> o.get());

Finally, sending the emails:

Scala
sourceval sendEmails: RunnableGraph[NotUsed] =
  emailAddresses
    .mapAsync(4)(address => {
      emailServer.send(Email(to = address, title = "Akka", body = "I like your tweet"))
    })
    .to(Sink.ignore)

sendEmails.run()
Java
sourcefinal RunnableGraph<NotUsed> sendEmails =
    emailAddresses
        .mapAsync(
            4, address -> emailServer.send(new Email(address, "Akka", "I like your tweet")))
        .to(Sink.ignore());

sendEmails.run(system);

mapAsync is applying the given function that is calling out to the external service to each of the elements as they pass through this processing step. The function returns a FutureCompletionStage and the value of that future will be emitted downstream. The number of Futures that shall run in parallel is given as the first argument to mapAsync. These Futures may complete in any order, but the elements that are emitted downstream are in the same order as received from upstream.

That means that back-pressure works as expected. For example if the emailServer.send is the bottleneck it will limit the rate at which incoming tweets are retrieved and email addresses looked up.

The final piece of this pipeline is to generate the demand that pulls the tweet authors information through the emailing pipeline: we attach a Sink.ignore which makes it all run. If our email process would return some interesting data for further transformation then we would not ignore it but send that result stream onwards for further processing or storage.

Note that mapAsync preserves the order of the stream elements. In this example the order is not important and then we can use the more efficient mapAsyncUnordered:

Scala
sourceval authors: Source[Author, NotUsed] =
  tweets.filter(_.hashtags.contains(akkaTag)).map(_.author)

val emailAddresses: Source[String, NotUsed] =
  authors.mapAsyncUnordered(4)(author => addressSystem.lookupEmail(author.handle)).collect {
    case Some(emailAddress) => emailAddress
  }

val sendEmails: RunnableGraph[NotUsed] =
  emailAddresses
    .mapAsyncUnordered(4)(address => {
      emailServer.send(Email(to = address, title = "Akka", body = "I like your tweet"))
    })
    .to(Sink.ignore)

sendEmails.run()
Java
sourcefinal Source<Author, NotUsed> authors =
    tweets.filter(t -> t.hashtags().contains(AKKA)).map(t -> t.author);

final Source<String, NotUsed> emailAddresses =
    authors
        .mapAsyncUnordered(4, author -> addressSystem.lookupEmail(author.handle))
        .filter(o -> o.isPresent())
        .map(o -> o.get());

final RunnableGraph<NotUsed> sendEmails =
    emailAddresses
        .mapAsyncUnordered(
            4, address -> emailServer.send(new Email(address, "Akka", "I like your tweet")))
        .to(Sink.ignore());

sendEmails.run(system);

In the above example the services conveniently returned a FutureCompletionStage of the result. If that is not the case you need to wrap the call in a FutureCompletionStage. If the service call involves blocking you must also make sure that you run it on a dedicated execution context, to avoid starvation and disturbance of other tasks in the system.

Scala
sourceval blockingExecutionContext = system.dispatchers.lookup("blocking-dispatcher")

val sendTextMessages: RunnableGraph[NotUsed] =
  phoneNumbers
    .mapAsync(4)(phoneNo => {
      Future {
        smsServer.send(TextMessage(to = phoneNo, body = "I like your tweet"))
      }(blockingExecutionContext)
    })
    .to(Sink.ignore)

sendTextMessages.run()
Java
sourcefinal Executor blockingEc = system.dispatchers().lookup("blocking-dispatcher");

final RunnableGraph<NotUsed> sendTextMessages =
    phoneNumbers
        .mapAsync(
            4,
            phoneNo ->
                CompletableFuture.supplyAsync(
                    () -> smsServer.send(new TextMessage(phoneNo, "I like your tweet")),
                    blockingEc))
        .to(Sink.ignore());

sendTextMessages.run(system);

The configuration of the "blocking-dispatcher" may look something like:

sourceblocking-dispatcher {
  executor = "thread-pool-executor"
  thread-pool-executor {
    core-pool-size-min    = 10
    core-pool-size-max    = 10
  }
}

An alternative for blocking calls is to perform them in a map operation, still using a dedicated dispatcher for that operation.

Scala
sourceval send = Flow[String]
  .map { phoneNo =>
    smsServer.send(TextMessage(to = phoneNo, body = "I like your tweet"))
  }
  .withAttributes(ActorAttributes.dispatcher("blocking-dispatcher"))
val sendTextMessages: RunnableGraph[NotUsed] =
  phoneNumbers.via(send).to(Sink.ignore)

sendTextMessages.run()
Java
sourcefinal Flow<String, Boolean, NotUsed> send =
    Flow.of(String.class)
        .map(phoneNo -> smsServer.send(new TextMessage(phoneNo, "I like your tweet")))
        .withAttributes(ActorAttributes.dispatcher("blocking-dispatcher"));
final RunnableGraph<?> sendTextMessages = phoneNumbers.via(send).to(Sink.ignore());

sendTextMessages.run(system);

However, that is not exactly the same as mapAsync, since the mapAsync may run several calls concurrently, but map performs them one at a time.

For a service that is exposed as an actor, or if an actor is used as a gateway in front of an external service, you can use ask:

Scala
sourceimport akka.pattern.ask

val akkaTweets: Source[Tweet, NotUsed] = tweets.filter(_.hashtags.contains(akkaTag))

implicit val timeout: Timeout = 3.seconds
val saveTweets: RunnableGraph[NotUsed] =
  akkaTweets.mapAsync(4)(tweet => database ? Save(tweet)).to(Sink.ignore)
Java
sourcefinal Source<Tweet, NotUsed> akkaTweets = tweets.filter(t -> t.hashtags().contains(AKKA));

final RunnableGraph<NotUsed> saveTweets =
    akkaTweets
        .mapAsync(4, tweet -> ask(database, new Save(tweet), Duration.ofMillis(300L)))
        .to(Sink.ignore());

Note that if the ask is not completed within the given timeout the stream is completed with failure. If that is not desired outcome you can use recover on the ask FutureCompletionStage.

Illustrating ordering and parallelism

Let us look at another example to get a better understanding of the ordering and parallelism characteristics of mapAsync and mapAsyncUnordered.

Several mapAsync and mapAsyncUnordered futures may run concurrently. The number of concurrent futures are limited by the downstream demand. For example, if 5 elements have been requested by downstream there will be at most 5 futures in progress.

mapAsync emits the future results in the same order as the input elements were received. That means that completed results are only emitted downstream when earlier results have been completed and emitted. One slow call will thereby delay the results of all successive calls, even though they are completed before the slow call.

mapAsyncUnordered emits the future results as soon as they are completed, i.e. it is possible that the elements are not emitted downstream in the same order as received from upstream. One slow call will thereby not delay the results of faster successive calls as long as there is downstream demand of several elements.

Here is a fictive service that we can use to illustrate these aspects.

Scala
sourceclass SometimesSlowService(implicit ec: ExecutionContext) {

  private val runningCount = new AtomicInteger

  def convert(s: String): Future[String] = {
    println(s"running: $s (${runningCount.incrementAndGet()})")
    Future {
      if (s.nonEmpty && s.head.isLower)
        Thread.sleep(500)
      else
        Thread.sleep(20)
      println(s"completed: $s (${runningCount.decrementAndGet()})")
      s.toUpperCase
    }
  }
}
Java
sourcestatic class SometimesSlowService {
  private final Executor ec;

  public SometimesSlowService(Executor ec) {
    this.ec = ec;
  }

  private final AtomicInteger runningCount = new AtomicInteger();

  public CompletionStage<String> convert(String s) {
    System.out.println("running: " + s + "(" + runningCount.incrementAndGet() + ")");
    return CompletableFuture.supplyAsync(
        () -> {
          if (!s.isEmpty() && Character.isLowerCase(s.charAt(0)))
            try {
              Thread.sleep(500);
            } catch (InterruptedException e) {
            }
          else
            try {
              Thread.sleep(20);
            } catch (InterruptedException e) {
            }
          System.out.println("completed: " + s + "(" + runningCount.decrementAndGet() + ")");
          return s.toUpperCase();
        },
        ec);
  }
}

Elements starting with a lower case character are simulated to take longer time to process.

Here is how we can use it with mapAsync:

Scala
sourceimplicit val blockingExecutionContext = system.dispatchers.lookup("blocking-dispatcher")
val service = new SometimesSlowService

Source(List("a", "B", "C", "D", "e", "F", "g", "H", "i", "J"))
  .map(elem => { println(s"before: $elem"); elem })
  .mapAsync(4)(service.convert)
  .to(Sink.foreach(elem => println(s"after: $elem")))
  .withAttributes(Attributes.inputBuffer(initial = 4, max = 4))
  .run()
Java
sourcefinal Executor blockingEc = system.dispatchers().lookup("blocking-dispatcher");
final SometimesSlowService service = new SometimesSlowService(blockingEc);

Source.from(Arrays.asList("a", "B", "C", "D", "e", "F", "g", "H", "i", "J"))
    .map(
        elem -> {
          System.out.println("before: " + elem);
          return elem;
        })
    .mapAsync(4, service::convert)
    .to(Sink.foreach(elem -> System.out.println("after: " + elem)))
    .withAttributes(Attributes.inputBuffer(4, 4))
    .run(system);

The output may look like this:

before: a
before: B
before: C
before: D
running: a (1)
running: B (2)
before: e
running: C (3)
before: F
running: D (4)
before: g
before: H
completed: C (3)
completed: B (2)
completed: D (1)
completed: a (0)
after: A
after: B
running: e (1)
after: C
after: D
running: F (2)
before: i
before: J
running: g (3)
running: H (4)
completed: H (2)
completed: F (3)
completed: e (1)
completed: g (0)
after: E
after: F
running: i (1)
after: G
after: H
running: J (2)
completed: J (1)
completed: i (0)
after: I
after: J

Note that after lines are in the same order as the before lines even though elements are completed in a different order. For example H is completed before g, but still emitted afterwards.

The numbers in parentheses illustrate how many calls that are in progress at the same time. Here the downstream demand and thereby the number of concurrent calls are limited by the buffer size (4) set with an attribute.

Here is how we can use the same service with mapAsyncUnordered:

Scala
sourceimplicit val blockingExecutionContext = system.dispatchers.lookup("blocking-dispatcher")
val service = new SometimesSlowService

Source(List("a", "B", "C", "D", "e", "F", "g", "H", "i", "J"))
  .map(elem => { println(s"before: $elem"); elem })
  .mapAsyncUnordered(4)(service.convert)
  .to(Sink.foreach(elem => println(s"after: $elem")))
  .withAttributes(Attributes.inputBuffer(initial = 4, max = 4))
  .run()
Java
sourcefinal Executor blockingEc = system.dispatchers().lookup("blocking-dispatcher");
final SometimesSlowService service = new SometimesSlowService(blockingEc);

Source.from(Arrays.asList("a", "B", "C", "D", "e", "F", "g", "H", "i", "J"))
    .map(
        elem -> {
          System.out.println("before: " + elem);
          return elem;
        })
    .mapAsyncUnordered(4, service::convert)
    .to(Sink.foreach(elem -> System.out.println("after: " + elem)))
    .withAttributes(Attributes.inputBuffer(4, 4))
    .run(system);

The output may look like this:

before: a
before: B
before: C
before: D
running: a (1)
running: B (2)
before: e
running: C (3)
before: F
running: D (4)
before: g
before: H
completed: B (3)
completed: C (1)
completed: D (2)
after: B
after: D
running: e (2)
after: C
running: F (3)
before: i
before: J
completed: F (2)
after: F
running: g (3)
running: H (4)
completed: H (3)
after: H
completed: a (2)
after: A
running: i (3)
running: J (4)
completed: J (3)
after: J
completed: e (2)
after: E
completed: g (1)
after: G
completed: i (0)
after: I

Note that after lines are not in the same order as the before lines. For example H overtakes the slow G.

The numbers in parentheses illustrate how many calls that are in progress at the same time. Here the downstream demand and thereby the number of concurrent calls are limited by the buffer size (4) set with an attribute.

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