pekko/akka-stream/src/main/scala/akka/stream/javadsl/Flow.scala

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/**
* Copyright (C) 2014 Typesafe Inc. <http://www.typesafe.com>
*/
package akka.stream.javadsl
import akka.stream._
import akka.japi.{ Util, Pair }
import akka.stream.scaladsl
import scala.annotation.unchecked.uncheckedVariance
import scala.concurrent.Future
import scala.concurrent.duration.FiniteDuration
import akka.stream.stage.Stage
import akka.stream.impl.StreamLayout
object Flow {
import akka.stream.scaladsl.JavaConverters._
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val factory: FlowCreate = new FlowCreate {}
/** Adapt [[scaladsl.Flow]] for use within Java DSL */
def adapt[I, O, M](flow: scaladsl.Flow[I, O, M]): javadsl.Flow[I, O, M] =
new Flow(flow)
/** Create a `Flow` which can process elements of type `T`. */
def empty[T](): javadsl.Flow[T, T, Unit] =
Flow.create()
/** Create a `Flow` which can process elements of type `T`. */
def create[T](): javadsl.Flow[T, T, Unit] =
adapt(scaladsl.Flow[T])
/** Create a `Flow` which can process elements of type `T`. */
def of[T](clazz: Class[T]): javadsl.Flow[T, T, Unit] =
create[T]()
}
/** Create a `Flow` which can process elements of type `T`. */
class Flow[-In, +Out, +Mat](delegate: scaladsl.Flow[In, Out, Mat]) extends Graph[FlowShape[In, Out], Mat] {
import scala.collection.JavaConverters._
import akka.stream.scaladsl.JavaConverters._
override def shape: FlowShape[In, Out] = delegate.shape
private[stream] def module: StreamLayout.Module = delegate.module
/** Converts this Flow to it's Scala DSL counterpart */
def asScala: scaladsl.Flow[In, Out, Mat] = delegate
/**
* Transform only the materialized value of this Flow, leaving all other properties as they were.
*/
def mapMaterialized[Mat2](f: japi.Function[Mat, Mat2]): Flow[In, Out, Mat2] =
new Flow(delegate.mapMaterialized(f.apply _))
/**
* Transform this [[Flow]] by appending the given processing steps.
*/
def via[T, M](flow: javadsl.Flow[Out, T, M]): javadsl.Flow[In, T, Mat] =
new Flow(delegate.via(flow.asScala))
/**
* Transform this [[Flow]] by appending the given processing steps.
*/
def via[T, M, M2](flow: javadsl.Flow[Out, T, M], combine: japi.Function2[Mat, M, M2]): javadsl.Flow[In, T, M2] =
new Flow(delegate.viaMat(flow.asScala)(combinerToScala(combine)))
/**
* Connect this [[Flow]] to a [[Sink]], concatenating the processing steps of both.
*/
def to(sink: javadsl.Sink[Out, _]): javadsl.Sink[In, Mat] =
new Sink(delegate.to(sink.asScala))
/**
* Connect this [[Flow]] to a [[Sink]], concatenating the processing steps of both.
*/
def to[M, M2](sink: javadsl.Sink[Out, M], combine: japi.Function2[Mat, M, M2]): javadsl.Sink[In, M2] =
new Sink(delegate.toMat(sink.asScala)(combinerToScala(combine)))
/**
* Join this [[Flow]] to another [[Flow]], by cross connecting the inputs and outputs, creating a [[RunnableFlow]]
*/
def join[M](flow: javadsl.Flow[Out, In, M]): javadsl.RunnableFlow[Mat @uncheckedVariance Pair M] =
new RunnableFlowAdapter(delegate.join(flow.asScala).mapMaterialized(p new Pair(p._1, p._2)))
/**
* Join this [[Flow]] to another [[Flow]], by cross connecting the inputs and outputs, creating a [[RunnableFlow]]
*/
def join[M, M2](flow: javadsl.Flow[Out, In, M], combine: japi.Function2[Mat, M, M2]): javadsl.RunnableFlow[M2] =
new RunnableFlowAdapter(delegate.joinMat(flow.asScala)(combinerToScala(combine)))
/**
* Connect the `KeyedSource` to this `Flow` and then connect it to the `KeyedSink` and run it.
*
* The returned tuple contains the materialized values of the `KeyedSource` and `KeyedSink`,
* e.g. the `Subscriber` of a `Source.subscriber()` and `Publisher` of a `Sink.publisher()`.
*
* @tparam T materialized type of given KeyedSource
* @tparam U materialized type of given KeyedSink
*/
def runWith[T, U](source: javadsl.Source[In, T], sink: javadsl.Sink[Out, U], materializer: ActorFlowMaterializer): akka.japi.Pair[T, U] = {
val p = delegate.runWith(source.asScala, sink.asScala)(materializer)
akka.japi.Pair(p._1.asInstanceOf[T], p._2.asInstanceOf[U])
}
/**
* Transform this stream by applying the given function to each of the elements
* as they pass through this processing step.
*/
def map[T](f: japi.Function[Out, T]): javadsl.Flow[In, T, Mat] =
new Flow(delegate.map(f.apply))
/**
* Transform each input element into a sequence of output elements that is
* then flattened into the output stream.
*/
def mapConcat[T](f: japi.Function[Out, java.util.List[T]]): javadsl.Flow[In, T, Mat] =
new Flow(delegate.mapConcat(elem Util.immutableSeq(f.apply(elem))))
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/**
* Transform this stream by applying the given function to each of the elements
* as they pass through this processing step. The function returns a `Future` and the
* value of that future will be emitted downstreams. As many futures as requested elements by
* downstream may run in parallel and may complete in any order, but the elements that
* are emitted downstream are in the same order as received from upstream.
*
* If the group by function `f` throws an exception or if the `Future` is completed
* with failure and the supervision decision is [[akka.stream.Supervision#stop]]
* the stream will be completed with failure.
*
* If the group by function `f` throws an exception or if the `Future` is completed
* with failure and the supervision decision is [[akka.stream.Supervision#resume]] or
* [[akka.stream.Supervision#restart]] the element is dropped and the stream continues.
*
* @see [[#mapAsyncUnordered]]
*/
def mapAsync[T](f: japi.Function[Out, Future[T]]): javadsl.Flow[In, T, Mat] =
new Flow(delegate.mapAsync(f.apply))
/**
* Transform this stream by applying the given function to each of the elements
* as they pass through this processing step. The function returns a `Future` and the
* value of that future will be emitted downstreams. As many futures as requested elements by
* downstream may run in parallel and each processed element will be emitted dowstream
* as soon as it is ready, i.e. it is possible that the elements are not emitted downstream
* in the same order as received from upstream.
*
* If the group by function `f` throws an exception or if the `Future` is completed
* with failure and the supervision decision is [[akka.stream.Supervision#stop]]
* the stream will be completed with failure.
*
* If the group by function `f` throws an exception or if the `Future` is completed
* with failure and the supervision decision is [[akka.stream.Supervision#resume]] or
* [[akka.stream.Supervision#restart]] the element is dropped and the stream continues.
*
* @see [[#mapAsync]]
*/
def mapAsyncUnordered[T](f: japi.Function[Out, Future[T]]): javadsl.Flow[In, T, Mat] =
new Flow(delegate.mapAsyncUnordered(f.apply))
/**
* Only pass on those elements that satisfy the given predicate.
*/
def filter(p: japi.Predicate[Out]): javadsl.Flow[In, Out, Mat] =
new Flow(delegate.filter(p.test))
/**
* Transform this stream by applying the given partial function to each of the elements
* on which the function is defined as they pass through this processing step.
* Non-matching elements are filtered out.
*/
def collect[T](pf: PartialFunction[Out, T]): javadsl.Flow[In, T, Mat] =
new Flow(delegate.collect(pf))
/**
* Chunk up this stream into groups of the given size, with the last group
* possibly smaller than requested due to end-of-stream.
*
* `n` must be positive, otherwise IllegalArgumentException is thrown.
*/
def grouped(n: Int): javadsl.Flow[In, java.util.List[Out @uncheckedVariance], Mat] =
new Flow(delegate.grouped(n).map(_.asJava)) // FIXME optimize to one step
/**
* Similar to `fold` but is not a terminal operation,
* emits its current value which starts at `zero` and then
* applies the current and next value to the given function `f`,
* emitting the next current value.
*
* If the function `f` throws an exception and the supervision decision is
* [[akka.stream.Supervision#restart]] current value starts at `zero` again
* the stream will continue.
*/
def scan[T](zero: T)(f: japi.Function2[T, Out, T]): javadsl.Flow[In, T, Mat] =
new Flow(delegate.scan(zero)(f.apply))
/**
* Chunk up this stream into groups of elements received within a time window,
* or limited by the given number of elements, whatever happens first.
* Empty groups will not be emitted if no elements are received from upstream.
* The last group before end-of-stream will contain the buffered elements
* since the previously emitted group.
*
* `n` must be positive, and `d` must be greater than 0 seconds, otherwise
* IllegalArgumentException is thrown.
*/
def groupedWithin(n: Int, d: FiniteDuration): javadsl.Flow[In, java.util.List[Out @uncheckedVariance], Mat] =
new Flow(delegate.groupedWithin(n, d).map(_.asJava)) // FIXME optimize to one step
/**
* Discard the given number of elements at the beginning of the stream.
* No elements will be dropped if `n` is zero or negative.
*/
def drop(n: Int): javadsl.Flow[In, Out, Mat] =
new Flow(delegate.drop(n))
/**
* Discard the elements received within the given duration at beginning of the stream.
*/
def dropWithin(d: FiniteDuration): javadsl.Flow[In, Out, Mat] =
new Flow(delegate.dropWithin(d))
/**
* Terminate processing (and cancel the upstream publisher) after the given
* number of elements. Due to input buffering some elements may have been
* requested from upstream publishers that will then not be processed downstream
* of this step.
*
* The stream will be completed without producing any elements if `n` is zero
* or negative.
*/
def take(n: Int): javadsl.Flow[In, Out, Mat] =
new Flow(delegate.take(n))
/**
* Terminate processing (and cancel the upstream publisher) after the given
* duration. Due to input buffering some elements may have been
* requested from upstream publishers that will then not be processed downstream
* of this step.
*
* Note that this can be combined with [[#take]] to limit the number of elements
* within the duration.
*/
def takeWithin(d: FiniteDuration): javadsl.Flow[In, Out, Mat] =
new Flow(delegate.takeWithin(d))
/**
* Allows a faster upstream to progress independently of a slower subscriber by conflating elements into a summary
* until the subscriber is ready to accept them. For example a conflate step might average incoming numbers if the
* upstream publisher is faster.
*
* This element only rolls up elements if the upstream is faster, but if the downstream is faster it will not
* duplicate elements.
*
* @param seed Provides the first state for a conflated value using the first unconsumed element as a start
* @param aggregate Takes the currently aggregated value and the current pending element to produce a new aggregate
*/
def conflate[S](seed: japi.Function[Out, S], aggregate: japi.Function2[S, Out, S]): javadsl.Flow[In, S, Mat] =
new Flow(delegate.conflate(seed.apply)(aggregate.apply))
/**
* Allows a faster downstream to progress independently of a slower publisher by extrapolating elements from an older
* element until new element comes from the upstream. For example an expand step might repeat the last element for
* the subscriber until it receives an update from upstream.
*
* This element will never "drop" upstream elements as all elements go through at least one extrapolation step.
* This means that if the upstream is actually faster than the upstream it will be backpressured by the downstream
* subscriber.
*
* Expand does not support [[akka.stream.Supervision#restart]] and [[akka.stream.Supervision#resume]].
* Exceptions from the `seed` or `extrapolate` functions will complete the stream with failure.
*
* @param seed Provides the first state for extrapolation using the first unconsumed element
* @param extrapolate Takes the current extrapolation state to produce an output element and the next extrapolation
* state.
*/
def expand[S, U](seed: japi.Function[Out, S], extrapolate: japi.Function[S, akka.japi.Pair[U, S]]): javadsl.Flow[In, U, Mat] =
new Flow(delegate.expand(seed(_))(s {
val p = extrapolate(s)
(p.first, p.second)
}))
/**
* Adds a fixed size buffer in the flow that allows to store elements from a faster upstream until it becomes full.
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* Depending on the defined [[akka.stream.OverflowStrategy]] it might drop elements or backpressure the upstream if
* there is no space available
*
* @param size The size of the buffer in element count
* @param overflowStrategy Strategy that is used when incoming elements cannot fit inside the buffer
*/
def buffer(size: Int, overflowStrategy: OverflowStrategy): javadsl.Flow[In, Out, Mat] =
new Flow(delegate.buffer(size, overflowStrategy))
/**
* Generic transformation of a stream with a custom processing [[akka.stream.stage.Stage]].
* This operator makes it possible to extend the `Flow` API when there is no specialized
* operator that performs the transformation.
*/
def transform[U](mkStage: japi.Creator[Stage[Out, U]]): javadsl.Flow[In, U, Mat] =
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new Flow(delegate.transform(() mkStage.create()))
/**
* Takes up to `n` elements from the stream and returns a pair containing a strict sequence of the taken element
* and a stream representing the remaining elements. If ''n'' is zero or negative, then this will return a pair
* of an empty collection and a stream containing the whole upstream unchanged.
*/
def prefixAndTail(n: Int): javadsl.Flow[In, akka.japi.Pair[java.util.List[Out @uncheckedVariance], javadsl.Source[Out @uncheckedVariance, Unit]], Mat] =
new Flow(delegate.prefixAndTail(n).map { case (taken, tail) akka.japi.Pair(taken.asJava, tail.asJava) })
/**
* This operation demultiplexes the incoming stream into separate output
* streams, one for each element key. The key is computed for each element
* using the given function. When a new key is encountered for the first time
* it is emitted to the downstream subscriber together with a fresh
* flow that will eventually produce all the elements of the substream
* for that key. Not consuming the elements from the created streams will
* stop this processor from processing more elements, therefore you must take
* care to unblock (or cancel) all of the produced streams even if you want
* to consume only one of them.
*
* If the group by function `f` throws an exception and the supervision decision
* is [[akka.stream.Supervision#stop]] the stream and substreams will be completed
* with failure.
*
* If the group by function `f` throws an exception and the supervision decision
* is [[akka.stream.Supervision#resume]] or [[akka.stream.Supervision#restart]]
* the element is dropped and the stream and substreams continue.
*/
def groupBy[K](f: japi.Function[Out, K]): javadsl.Flow[In, akka.japi.Pair[K, javadsl.Source[Out @uncheckedVariance, Unit]], Mat] =
new Flow(delegate.groupBy(f.apply).map { case (k, p) akka.japi.Pair(k, p.asJava) }) // FIXME optimize to one step
/**
* This operation applies the given predicate to all incoming elements and
* emits them to a stream of output streams, always beginning a new one with
* the current element if the given predicate returns true for it. This means
* that for the following series of predicate values, three substreams will
* be produced with lengths 1, 2, and 3:
*
* {{{
* false, // element goes into first substream
* true, false, // elements go into second substream
* true, false, false // elements go into third substream
* }}}
*
* If the split predicate `p` throws an exception and the supervision decision
* is [[akka.stream.Supervision#stop]] the stream and substreams will be completed
* with failure.
*
* If the split predicate `p` throws an exception and the supervision decision
* is [[akka.stream.Supervision#resume]] or [[akka.stream.Supervision#restart]]
* the element is dropped and the stream and substreams continue.
*/
def splitWhen(p: japi.Predicate[Out]): javadsl.Flow[In, Source[Out, Unit], Mat] =
new Flow(delegate.splitWhen(p.test).map(_.asJava))
/**
* Transforms a stream of streams into a contiguous stream of elements using the provided flattening strategy.
* This operation can be used on a stream of element type [[Source]].
*/
def flatten[U](strategy: akka.stream.FlattenStrategy[Out, U]): javadsl.Flow[In, U, Mat] =
new Flow(delegate.flatten(strategy))
/**
* Returns a new `Flow` that concatenates a secondary `Source` to this flow so that,
* the first element emitted by the given ("second") source is emitted after the last element of this Flow.
*/
def concat[M](second: javadsl.Source[Out @uncheckedVariance, M]): javadsl.Flow[In, Out, Mat @uncheckedVariance Pair M] =
new Flow(delegate.concat(second.asScala).mapMaterialized(p Pair(p._1, p._2)))
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/**
* Applies given [[OperationAttributes]] to a given section.
*/
def section[O, M](attributes: OperationAttributes, section: japi.Function[javadsl.Flow[Out, Out, Unit], javadsl.Flow[Out, O, M]] @uncheckedVariance): javadsl.Flow[In, O, M] =
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new Flow(delegate.section(attributes.asScala) {
val scalaToJava = (flow: scaladsl.Flow[Out, Out, Unit]) new javadsl.Flow(flow)
val javaToScala = (flow: javadsl.Flow[Out, O, M]) flow.asScala
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scalaToJava andThen section.apply andThen javaToScala
})
}
/**
* Java API
*
* Flow with attached input and output, can be executed.
*/
trait RunnableFlow[+Mat] {
/**
* Run this flow and return the [[MaterializedMap]] containing the values for the [[KeyedMaterializable]] of the flow.
*/
def run(materializer: ActorFlowMaterializer): Mat
/**
* Transform only the materialized value of this RunnableFlow, leaving all other properties as they were.
*/
def mapMaterialized[Mat2](f: japi.Function[Mat, Mat2]): RunnableFlow[Mat2]
}
/** INTERNAL API */
private[akka] class RunnableFlowAdapter[Mat](runnable: scaladsl.RunnableFlow[Mat]) extends RunnableFlow[Mat] {
override def mapMaterialized[Mat2](f: japi.Function[Mat, Mat2]): RunnableFlow[Mat2] =
new RunnableFlowAdapter(runnable.mapMaterialized(f.apply _))
override def run(materializer: ActorFlowMaterializer): Mat = runnable.run()(materializer)
}