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Example 1 with TimerInternals

use of org.apache.beam.runners.core.TimerInternals in project beam by apache.

the class SparkGroupAlsoByWindowViaWindowSet method groupAlsoByWindow.

public static <K, InputT, W extends BoundedWindow> JavaDStream<WindowedValue<KV<K, Iterable<InputT>>>> groupAlsoByWindow(JavaDStream<WindowedValue<KV<K, Iterable<WindowedValue<InputT>>>>> inputDStream, final Coder<K> keyCoder, final Coder<WindowedValue<InputT>> wvCoder, final WindowingStrategy<?, W> windowingStrategy, final SparkRuntimeContext runtimeContext, final List<Integer> sourceIds) {
    final IterableCoder<WindowedValue<InputT>> itrWvCoder = IterableCoder.of(wvCoder);
    final Coder<InputT> iCoder = ((FullWindowedValueCoder<InputT>) wvCoder).getValueCoder();
    final Coder<? extends BoundedWindow> wCoder = ((FullWindowedValueCoder<InputT>) wvCoder).getWindowCoder();
    final Coder<WindowedValue<KV<K, Iterable<InputT>>>> wvKvIterCoder = FullWindowedValueCoder.of(KvCoder.of(keyCoder, IterableCoder.of(iCoder)), wCoder);
    final TimerInternals.TimerDataCoder timerDataCoder = TimerInternals.TimerDataCoder.of(windowingStrategy.getWindowFn().windowCoder());
    long checkpointDurationMillis = runtimeContext.getPipelineOptions().as(SparkPipelineOptions.class).getCheckpointDurationMillis();
    // we have to switch to Scala API to avoid Optional in the Java API, see: SPARK-4819.
    // we also have a broader API for Scala (access to the actual key and entire iterator).
    // we use coders to convert objects in the PCollection to byte arrays, so they
    // can be transferred over the network for the shuffle and be in serialized form
    // for checkpointing.
    // for readability, we add comments with actual type next to byte[].
    // to shorten line length, we use:
    //---- WV: WindowedValue
    //---- Iterable: Itr
    //---- AccumT: A
    //---- InputT: I
    DStream<Tuple2<ByteArray, byte[]>> /*Itr<WV<I>>*/
    pairDStream = inputDStream.transformToPair(new Function<JavaRDD<WindowedValue<KV<K, Iterable<WindowedValue<InputT>>>>>, JavaPairRDD<ByteArray, byte[]>>() {

        // we use mapPartitions with the RDD API because its the only available API
        // that allows to preserve partitioning.
        @Override
        public JavaPairRDD<ByteArray, byte[]> call(JavaRDD<WindowedValue<KV<K, Iterable<WindowedValue<InputT>>>>> rdd) throws Exception {
            return rdd.mapPartitions(TranslationUtils.functionToFlatMapFunction(WindowingHelpers.<KV<K, Iterable<WindowedValue<InputT>>>>unwindowFunction()), true).mapPartitionsToPair(TranslationUtils.<K, Iterable<WindowedValue<InputT>>>toPairFlatMapFunction(), true).mapPartitionsToPair(TranslationUtils.pairFunctionToPairFlatMapFunction(CoderHelpers.toByteFunction(keyCoder, itrWvCoder)), true);
        }
    }).dstream();
    PairDStreamFunctions<ByteArray, byte[]> pairDStreamFunctions = DStream.toPairDStreamFunctions(pairDStream, JavaSparkContext$.MODULE$.<ByteArray>fakeClassTag(), JavaSparkContext$.MODULE$.<byte[]>fakeClassTag(), null);
    int defaultNumPartitions = pairDStreamFunctions.defaultPartitioner$default$1();
    Partitioner partitioner = pairDStreamFunctions.defaultPartitioner(defaultNumPartitions);
    // use updateStateByKey to scan through the state and update elements and timers.
    DStream<Tuple2<ByteArray, Tuple2<StateAndTimers, List<byte[]>>>> /*WV<KV<K, Itr<I>>>*/
    firedStream = pairDStreamFunctions.updateStateByKey(new SerializableFunction1<scala.collection.Iterator<Tuple3</*K*/
    ByteArray, Seq<byte[]>, Option<Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
    List<byte[]>>>>>, scala.collection.Iterator<Tuple2</*K*/
    ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
    List<byte[]>>>>>() {

        @Override
        public scala.collection.Iterator<Tuple2</*K*/
        ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
        List<byte[]>>>> apply(final scala.collection.Iterator<Tuple3</*K*/
        ByteArray, Seq<byte[]>, Option<Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
        List<byte[]>>>>> iter) {
            //--- ACTUAL STATEFUL OPERATION:
            //
            // Input Iterator: the partition (~bundle) of a cogrouping of the input
            // and the previous state (if exists).
            //
            // Output Iterator: the output key, and the updated state.
            //
            // possible input scenarios for (K, Seq, Option<S>):
            // (1) Option<S>.isEmpty: new data with no previous state.
            // (2) Seq.isEmpty: no new data, but evaluating previous state (timer-like behaviour).
            // (3) Seq.nonEmpty && Option<S>.isDefined: new data with previous state.
            final SystemReduceFn<K, InputT, Iterable<InputT>, Iterable<InputT>, W> reduceFn = SystemReduceFn.buffering(((FullWindowedValueCoder<InputT>) wvCoder).getValueCoder());
            final OutputWindowedValueHolder<K, InputT> outputHolder = new OutputWindowedValueHolder<>();
            // use in memory Aggregators since Spark Accumulators are not resilient
            // in stateful operators, once done with this partition.
            final MetricsContainerImpl cellProvider = new MetricsContainerImpl("cellProvider");
            final CounterCell droppedDueToClosedWindow = cellProvider.getCounter(MetricName.named(SparkGroupAlsoByWindowViaWindowSet.class, GroupAlsoByWindowsAggregators.DROPPED_DUE_TO_CLOSED_WINDOW_COUNTER));
            final CounterCell droppedDueToLateness = cellProvider.getCounter(MetricName.named(SparkGroupAlsoByWindowViaWindowSet.class, GroupAlsoByWindowsAggregators.DROPPED_DUE_TO_LATENESS_COUNTER));
            AbstractIterator<Tuple2<ByteArray, Tuple2<StateAndTimers, List<byte[]>>>> /*WV<KV<K, Itr<I>>>*/
            outIter = new AbstractIterator<Tuple2</*K*/
            ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
            List<byte[]>>>>() {

                @Override
                protected Tuple2</*K*/
                ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
                List<byte[]>>> computeNext() {
                    // (possibly) previous-state and (possibly) new data.
                    while (iter.hasNext()) {
                        // for each element in the partition:
                        Tuple3<ByteArray, Seq<byte[]>, Option<Tuple2<StateAndTimers, List<byte[]>>>> next = iter.next();
                        ByteArray encodedKey = next._1();
                        K key = CoderHelpers.fromByteArray(encodedKey.getValue(), keyCoder);
                        Seq<byte[]> seq = next._2();
                        Option<Tuple2<StateAndTimers, List<byte[]>>> prevStateAndTimersOpt = next._3();
                        SparkStateInternals<K> stateInternals;
                        SparkTimerInternals timerInternals = SparkTimerInternals.forStreamFromSources(sourceIds, GlobalWatermarkHolder.get());
                        // get state(internals) per key.
                        if (prevStateAndTimersOpt.isEmpty()) {
                            // no previous state.
                            stateInternals = SparkStateInternals.forKey(key);
                        } else {
                            // with pre-existing state.
                            StateAndTimers prevStateAndTimers = prevStateAndTimersOpt.get()._1();
                            stateInternals = SparkStateInternals.forKeyAndState(key, prevStateAndTimers.getState());
                            Collection<byte[]> serTimers = prevStateAndTimers.getTimers();
                            timerInternals.addTimers(SparkTimerInternals.deserializeTimers(serTimers, timerDataCoder));
                        }
                        ReduceFnRunner<K, InputT, Iterable<InputT>, W> reduceFnRunner = new ReduceFnRunner<>(key, windowingStrategy, ExecutableTriggerStateMachine.create(TriggerStateMachines.stateMachineForTrigger(TriggerTranslation.toProto(windowingStrategy.getTrigger()))), stateInternals, timerInternals, outputHolder, new UnsupportedSideInputReader("GroupAlsoByWindow"), reduceFn, runtimeContext.getPipelineOptions());
                        // clear before potential use.
                        outputHolder.clear();
                        if (!seq.isEmpty()) {
                            // new input for key.
                            try {
                                Iterable<WindowedValue<InputT>> elementsIterable = CoderHelpers.fromByteArray(seq.head(), itrWvCoder);
                                Iterable<WindowedValue<InputT>> validElements = LateDataUtils.dropExpiredWindows(key, elementsIterable, timerInternals, windowingStrategy, droppedDueToLateness);
                                reduceFnRunner.processElements(validElements);
                            } catch (Exception e) {
                                throw new RuntimeException("Failed to process element with ReduceFnRunner", e);
                            }
                        } else if (stateInternals.getState().isEmpty()) {
                            // no input and no state -> GC evict now.
                            continue;
                        }
                        try {
                            // advance the watermark to HWM to fire by timers.
                            timerInternals.advanceWatermark();
                            // call on timers that are ready.
                            reduceFnRunner.onTimers(timerInternals.getTimersReadyToProcess());
                        } catch (Exception e) {
                            throw new RuntimeException("Failed to process ReduceFnRunner onTimer.", e);
                        }
                        // this is mostly symbolic since actual persist is done by emitting output.
                        reduceFnRunner.persist();
                        // obtain output, if fired.
                        List<WindowedValue<KV<K, Iterable<InputT>>>> outputs = outputHolder.get();
                        if (!outputs.isEmpty() || !stateInternals.getState().isEmpty()) {
                            StateAndTimers updated = new StateAndTimers(stateInternals.getState(), SparkTimerInternals.serializeTimers(timerInternals.getTimers(), timerDataCoder));
                            // persist Spark's state by outputting.
                            List<byte[]> serOutput = CoderHelpers.toByteArrays(outputs, wvKvIterCoder);
                            return new Tuple2<>(encodedKey, new Tuple2<>(updated, serOutput));
                        }
                    // an empty state with no output, can be evicted completely - do nothing.
                    }
                    return endOfData();
                }
            };
            // log if there's something to log.
            long lateDropped = droppedDueToLateness.getCumulative();
            if (lateDropped > 0) {
                LOG.info(String.format("Dropped %d elements due to lateness.", lateDropped));
                droppedDueToLateness.inc(-droppedDueToLateness.getCumulative());
            }
            long closedWindowDropped = droppedDueToClosedWindow.getCumulative();
            if (closedWindowDropped > 0) {
                LOG.info(String.format("Dropped %d elements due to closed window.", closedWindowDropped));
                droppedDueToClosedWindow.inc(-droppedDueToClosedWindow.getCumulative());
            }
            return scala.collection.JavaConversions.asScalaIterator(outIter);
        }
    }, partitioner, true, JavaSparkContext$.MODULE$.<Tuple2<StateAndTimers, List<byte[]>>>fakeClassTag());
    if (checkpointDurationMillis > 0) {
        firedStream.checkpoint(new Duration(checkpointDurationMillis));
    }
    // go back to Java now.
    JavaPairDStream<ByteArray, Tuple2<StateAndTimers, List<byte[]>>> /*WV<KV<K, Itr<I>>>*/
    javaFiredStream = JavaPairDStream.fromPairDStream(firedStream, JavaSparkContext$.MODULE$.<ByteArray>fakeClassTag(), JavaSparkContext$.MODULE$.<Tuple2<StateAndTimers, List<byte[]>>>fakeClassTag());
    // filter state-only output (nothing to fire) and remove the state from the output.
    return javaFiredStream.filter(new Function<Tuple2</*K*/
    ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
    List<byte[]>>>, Boolean>() {

        @Override
        public Boolean call(Tuple2</*K*/
        ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
        List<byte[]>>> t2) throws Exception {
            // filter output if defined.
            return !t2._2()._2().isEmpty();
        }
    }).flatMap(new FlatMapFunction<Tuple2</*K*/
    ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
    List<byte[]>>>, WindowedValue<KV<K, Iterable<InputT>>>>() {

        @Override
        public Iterable<WindowedValue<KV<K, Iterable<InputT>>>> call(Tuple2</*K*/
        ByteArray, Tuple2<StateAndTimers, /*WV<KV<K, Itr<I>>>*/
        List<byte[]>>> t2) throws Exception {
            // return in serialized form.
            return CoderHelpers.fromByteArrays(t2._2()._2(), wvKvIterCoder);
        }
    });
}
Also used : MetricsContainerImpl(org.apache.beam.runners.core.metrics.MetricsContainerImpl) CounterCell(org.apache.beam.runners.core.metrics.CounterCell) WindowedValue(org.apache.beam.sdk.util.WindowedValue) OutputWindowedValue(org.apache.beam.runners.core.OutputWindowedValue) ByteArray(org.apache.beam.runners.spark.util.ByteArray) List(java.util.List) ArrayList(java.util.ArrayList) ReduceFnRunner(org.apache.beam.runners.core.ReduceFnRunner) SystemReduceFn(org.apache.beam.runners.core.SystemReduceFn) Duration(org.apache.spark.streaming.Duration) TimerInternals(org.apache.beam.runners.core.TimerInternals) Collection(java.util.Collection) Option(scala.Option) Seq(scala.collection.Seq) FlatMapFunction(org.apache.spark.api.java.function.FlatMapFunction) Function(org.apache.spark.api.java.function.Function) UnsupportedSideInputReader(org.apache.beam.runners.core.UnsupportedSideInputReader) AbstractIterator(com.google.common.collect.AbstractIterator) AbstractIterator(com.google.common.collect.AbstractIterator) Partitioner(org.apache.spark.Partitioner) FullWindowedValueCoder(org.apache.beam.sdk.util.WindowedValue.FullWindowedValueCoder) KV(org.apache.beam.sdk.values.KV) SparkPipelineOptions(org.apache.beam.runners.spark.SparkPipelineOptions) JavaRDD(org.apache.spark.api.java.JavaRDD) Tuple2(scala.Tuple2) Tuple3(scala.Tuple3)

Example 2 with TimerInternals

use of org.apache.beam.runners.core.TimerInternals in project beam by apache.

the class FlinkStatefulDoFnFunction method reduce.

@Override
public void reduce(Iterable<WindowedValue<KV<K, V>>> values, Collector<WindowedValue<OutputT>> out) throws Exception {
    RuntimeContext runtimeContext = getRuntimeContext();
    DoFnRunners.OutputManager outputManager;
    if (outputMap.size() == 1) {
        outputManager = new FlinkDoFnFunction.DoFnOutputManager(out);
    } else {
        // it has some additional Outputs
        outputManager = new FlinkDoFnFunction.MultiDoFnOutputManager((Collector) out, outputMap);
    }
    final Iterator<WindowedValue<KV<K, V>>> iterator = values.iterator();
    // get the first value, we need this for initializing the state internals with the key.
    // we are guaranteed to have a first value, otherwise reduce() would not have been called.
    WindowedValue<KV<K, V>> currentValue = iterator.next();
    final K key = currentValue.getValue().getKey();
    final InMemoryStateInternals<K> stateInternals = InMemoryStateInternals.forKey(key);
    // Used with Batch, we know that all the data is available for this key. We can't use the
    // timer manager from the context because it doesn't exist. So we create one and advance
    // time to the end after processing all elements.
    final InMemoryTimerInternals timerInternals = new InMemoryTimerInternals();
    timerInternals.advanceProcessingTime(Instant.now());
    timerInternals.advanceSynchronizedProcessingTime(Instant.now());
    List<TupleTag<?>> additionalOutputTags = Lists.newArrayList(outputMap.keySet());
    DoFnRunner<KV<K, V>, OutputT> doFnRunner = DoFnRunners.simpleRunner(serializedOptions.getPipelineOptions(), dofn, new FlinkSideInputReader(sideInputs, runtimeContext), outputManager, mainOutputTag, additionalOutputTags, new FlinkNoOpStepContext() {

        @Override
        public StateInternals stateInternals() {
            return stateInternals;
        }

        @Override
        public TimerInternals timerInternals() {
            return timerInternals;
        }
    }, windowingStrategy);
    if ((serializedOptions.getPipelineOptions().as(FlinkPipelineOptions.class)).getEnableMetrics()) {
        doFnRunner = new DoFnRunnerWithMetricsUpdate<>(stepName, doFnRunner, getRuntimeContext());
    }
    doFnRunner.startBundle();
    doFnRunner.processElement(currentValue);
    while (iterator.hasNext()) {
        currentValue = iterator.next();
        doFnRunner.processElement(currentValue);
    }
    // Finish any pending windows by advancing the input watermark to infinity.
    timerInternals.advanceInputWatermark(BoundedWindow.TIMESTAMP_MAX_VALUE);
    // Finally, advance the processing time to infinity to fire any timers.
    timerInternals.advanceProcessingTime(BoundedWindow.TIMESTAMP_MAX_VALUE);
    timerInternals.advanceSynchronizedProcessingTime(BoundedWindow.TIMESTAMP_MAX_VALUE);
    fireEligibleTimers(timerInternals, doFnRunner);
    doFnRunner.finishBundle();
}
Also used : DoFnRunners(org.apache.beam.runners.core.DoFnRunners) TupleTag(org.apache.beam.sdk.values.TupleTag) WindowedValue(org.apache.beam.sdk.util.WindowedValue) KV(org.apache.beam.sdk.values.KV) Collector(org.apache.flink.util.Collector) InMemoryTimerInternals(org.apache.beam.runners.core.InMemoryTimerInternals) KV(org.apache.beam.sdk.values.KV) TimerInternals(org.apache.beam.runners.core.TimerInternals) InMemoryTimerInternals(org.apache.beam.runners.core.InMemoryTimerInternals) InMemoryStateInternals(org.apache.beam.runners.core.InMemoryStateInternals) StateInternals(org.apache.beam.runners.core.StateInternals) RuntimeContext(org.apache.flink.api.common.functions.RuntimeContext)

Example 3 with TimerInternals

use of org.apache.beam.runners.core.TimerInternals in project beam by apache.

the class MultiDoFnFunction method call.

@Override
public Iterable<Tuple2<TupleTag<?>, WindowedValue<?>>> call(Iterator<WindowedValue<InputT>> iter) throws Exception {
    DoFnOutputManager outputManager = new DoFnOutputManager();
    final InMemoryTimerInternals timerInternals;
    final StepContext context;
    // Now only implements the StatefulParDo in Batch mode.
    if (stateful) {
        Object key = null;
        if (iter.hasNext()) {
            WindowedValue<InputT> currentValue = iter.next();
            key = ((KV) currentValue.getValue()).getKey();
            iter = Iterators.concat(Iterators.singletonIterator(currentValue), iter);
        }
        final InMemoryStateInternals<?> stateInternals = InMemoryStateInternals.forKey(key);
        timerInternals = new InMemoryTimerInternals();
        context = new StepContext() {

            @Override
            public StateInternals stateInternals() {
                return stateInternals;
            }

            @Override
            public TimerInternals timerInternals() {
                return timerInternals;
            }
        };
    } else {
        timerInternals = null;
        context = new SparkProcessContext.NoOpStepContext();
    }
    final DoFnRunner<InputT, OutputT> doFnRunner = DoFnRunners.simpleRunner(runtimeContext.getPipelineOptions(), doFn, new SparkSideInputReader(sideInputs), outputManager, mainOutputTag, additionalOutputTags, context, windowingStrategy);
    DoFnRunnerWithMetrics<InputT, OutputT> doFnRunnerWithMetrics = new DoFnRunnerWithMetrics<>(stepName, doFnRunner, metricsAccum);
    return new SparkProcessContext<>(doFn, doFnRunnerWithMetrics, outputManager, stateful ? new TimerDataIterator(timerInternals) : Collections.<TimerInternals.TimerData>emptyIterator()).processPartition(iter);
}
Also used : StepContext(org.apache.beam.runners.core.StepContext) InMemoryTimerInternals(org.apache.beam.runners.core.InMemoryTimerInternals) TimerInternals(org.apache.beam.runners.core.TimerInternals) InMemoryTimerInternals(org.apache.beam.runners.core.InMemoryTimerInternals) InMemoryStateInternals(org.apache.beam.runners.core.InMemoryStateInternals) StateInternals(org.apache.beam.runners.core.StateInternals) SparkSideInputReader(org.apache.beam.runners.spark.util.SparkSideInputReader)

Example 4 with TimerInternals

use of org.apache.beam.runners.core.TimerInternals in project beam by apache.

the class SplittableProcessElementsEvaluatorFactory method createEvaluator.

@SuppressWarnings({ "unchecked", "rawtypes" })
private TransformEvaluator<KeyedWorkItem<String, ElementAndRestriction<InputT, RestrictionT>>> createEvaluator(AppliedPTransform<PCollection<KeyedWorkItem<String, ElementAndRestriction<InputT, RestrictionT>>>, PCollectionTuple, ProcessElements<InputT, OutputT, RestrictionT, TrackerT>> application, CommittedBundle<InputT> inputBundle) throws Exception {
    final ProcessElements<InputT, OutputT, RestrictionT, TrackerT> transform = application.getTransform();
    ProcessFn<InputT, OutputT, RestrictionT, TrackerT> processFn = transform.newProcessFn(transform.getFn());
    DoFnLifecycleManager fnManager = DoFnLifecycleManager.of(processFn);
    processFn = ((ProcessFn<InputT, OutputT, RestrictionT, TrackerT>) fnManager.<KeyedWorkItem<String, ElementAndRestriction<InputT, RestrictionT>>, OutputT>get());
    String stepName = evaluationContext.getStepName(application);
    final DirectExecutionContext.DirectStepContext stepContext = evaluationContext.getExecutionContext(application, inputBundle.getKey()).getStepContext(stepName);
    final ParDoEvaluator<KeyedWorkItem<String, ElementAndRestriction<InputT, RestrictionT>>> parDoEvaluator = delegateFactory.createParDoEvaluator(application, inputBundle.getKey(), transform.getSideInputs(), transform.getMainOutputTag(), transform.getAdditionalOutputTags().getAll(), stepContext, processFn, fnManager);
    processFn.setStateInternalsFactory(new StateInternalsFactory<String>() {

        @SuppressWarnings({ "unchecked", "rawtypes" })
        @Override
        public StateInternals stateInternalsForKey(String key) {
            return (StateInternals) stepContext.stateInternals();
        }
    });
    processFn.setTimerInternalsFactory(new TimerInternalsFactory<String>() {

        @Override
        public TimerInternals timerInternalsForKey(String key) {
            return stepContext.timerInternals();
        }
    });
    OutputWindowedValue<OutputT> outputWindowedValue = new OutputWindowedValue<OutputT>() {

        private final OutputManager outputManager = parDoEvaluator.getOutputManager();

        @Override
        public void outputWindowedValue(OutputT output, Instant timestamp, Collection<? extends BoundedWindow> windows, PaneInfo pane) {
            outputManager.output(transform.getMainOutputTag(), WindowedValue.of(output, timestamp, windows, pane));
        }

        @Override
        public <AdditionalOutputT> void outputWindowedValue(TupleTag<AdditionalOutputT> tag, AdditionalOutputT output, Instant timestamp, Collection<? extends BoundedWindow> windows, PaneInfo pane) {
            outputManager.output(tag, WindowedValue.of(output, timestamp, windows, pane));
        }
    };
    processFn.setProcessElementInvoker(new OutputAndTimeBoundedSplittableProcessElementInvoker<InputT, OutputT, RestrictionT, TrackerT>(transform.getFn(), evaluationContext.getPipelineOptions(), outputWindowedValue, evaluationContext.createSideInputReader(transform.getSideInputs()), // DirectRunner.
    Executors.newSingleThreadScheduledExecutor(new ThreadFactoryBuilder().setThreadFactory(MoreExecutors.platformThreadFactory()).setDaemon(true).setNameFormat("direct-splittable-process-element-checkpoint-executor").build()), 10000, Duration.standardSeconds(10)));
    return DoFnLifecycleManagerRemovingTransformEvaluator.wrapping(parDoEvaluator, fnManager);
}
Also used : ProcessFn(org.apache.beam.runners.core.SplittableParDoViaKeyedWorkItems.ProcessFn) TupleTag(org.apache.beam.sdk.values.TupleTag) PaneInfo(org.apache.beam.sdk.transforms.windowing.PaneInfo) BoundedWindow(org.apache.beam.sdk.transforms.windowing.BoundedWindow) ThreadFactoryBuilder(com.google.common.util.concurrent.ThreadFactoryBuilder) ElementAndRestriction(org.apache.beam.runners.core.construction.ElementAndRestriction) OutputWindowedValue(org.apache.beam.runners.core.OutputWindowedValue) Instant(org.joda.time.Instant) KeyedWorkItem(org.apache.beam.runners.core.KeyedWorkItem) TimerInternals(org.apache.beam.runners.core.TimerInternals) StateInternals(org.apache.beam.runners.core.StateInternals) Collection(java.util.Collection) PCollection(org.apache.beam.sdk.values.PCollection) OutputManager(org.apache.beam.runners.core.DoFnRunners.OutputManager)

Aggregations

TimerInternals (org.apache.beam.runners.core.TimerInternals)4 StateInternals (org.apache.beam.runners.core.StateInternals)3 Collection (java.util.Collection)2 InMemoryStateInternals (org.apache.beam.runners.core.InMemoryStateInternals)2 InMemoryTimerInternals (org.apache.beam.runners.core.InMemoryTimerInternals)2 OutputWindowedValue (org.apache.beam.runners.core.OutputWindowedValue)2 WindowedValue (org.apache.beam.sdk.util.WindowedValue)2 KV (org.apache.beam.sdk.values.KV)2 TupleTag (org.apache.beam.sdk.values.TupleTag)2 AbstractIterator (com.google.common.collect.AbstractIterator)1 ThreadFactoryBuilder (com.google.common.util.concurrent.ThreadFactoryBuilder)1 ArrayList (java.util.ArrayList)1 List (java.util.List)1 DoFnRunners (org.apache.beam.runners.core.DoFnRunners)1 OutputManager (org.apache.beam.runners.core.DoFnRunners.OutputManager)1 KeyedWorkItem (org.apache.beam.runners.core.KeyedWorkItem)1 ReduceFnRunner (org.apache.beam.runners.core.ReduceFnRunner)1 ProcessFn (org.apache.beam.runners.core.SplittableParDoViaKeyedWorkItems.ProcessFn)1 StepContext (org.apache.beam.runners.core.StepContext)1 SystemReduceFn (org.apache.beam.runners.core.SystemReduceFn)1