You are viewing a plain text version of this content. The canonical link for it is here.
Posted to commits@beam.apache.org by da...@apache.org on 2016/06/20 22:16:36 UTC
[43/50] [abbrv] incubator-beam git commit: Rename
DataflowPipelineRunner to DataflowRunner
http://git-wip-us.apache.org/repos/asf/incubator-beam/blob/6d028ac6/runners/google-cloud-dataflow-java/src/main/java/org/apache/beam/runners/dataflow/DataflowPipelineRunner.java
----------------------------------------------------------------------
diff --git a/runners/google-cloud-dataflow-java/src/main/java/org/apache/beam/runners/dataflow/DataflowPipelineRunner.java b/runners/google-cloud-dataflow-java/src/main/java/org/apache/beam/runners/dataflow/DataflowPipelineRunner.java
deleted file mode 100644
index 1eb39ad..0000000
--- a/runners/google-cloud-dataflow-java/src/main/java/org/apache/beam/runners/dataflow/DataflowPipelineRunner.java
+++ /dev/null
@@ -1,3229 +0,0 @@
-/*
- * Licensed to the Apache Software Foundation (ASF) under one
- * or more contributor license agreements. See the NOTICE file
- * distributed with this work for additional information
- * regarding copyright ownership. The ASF licenses this file
- * to you under the Apache License, Version 2.0 (the
- * "License"); you may not use this file except in compliance
- * with the License. You may obtain a copy of the License at
- *
- * http://www.apache.org/licenses/LICENSE-2.0
- *
- * Unless required by applicable law or agreed to in writing, software
- * distributed under the License is distributed on an "AS IS" BASIS,
- * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
- * See the License for the specific language governing permissions and
- * limitations under the License.
- */
-package org.apache.beam.runners.dataflow;
-
-import static org.apache.beam.sdk.util.StringUtils.approximatePTransformName;
-import static org.apache.beam.sdk.util.StringUtils.approximateSimpleName;
-import static org.apache.beam.sdk.util.WindowedValue.valueInEmptyWindows;
-
-import static com.google.common.base.Preconditions.checkArgument;
-import static com.google.common.base.Preconditions.checkState;
-
-import org.apache.beam.runners.dataflow.DataflowPipelineTranslator.JobSpecification;
-import org.apache.beam.runners.dataflow.DataflowPipelineTranslator.TransformTranslator;
-import org.apache.beam.runners.dataflow.DataflowPipelineTranslator.TranslationContext;
-import org.apache.beam.runners.dataflow.internal.AssignWindows;
-import org.apache.beam.runners.dataflow.internal.DataflowAggregatorTransforms;
-import org.apache.beam.runners.dataflow.internal.IsmFormat;
-import org.apache.beam.runners.dataflow.internal.IsmFormat.IsmRecord;
-import org.apache.beam.runners.dataflow.internal.IsmFormat.IsmRecordCoder;
-import org.apache.beam.runners.dataflow.internal.IsmFormat.MetadataKeyCoder;
-import org.apache.beam.runners.dataflow.internal.ReadTranslator;
-import org.apache.beam.runners.dataflow.options.DataflowPipelineDebugOptions;
-import org.apache.beam.runners.dataflow.options.DataflowPipelineOptions;
-import org.apache.beam.runners.dataflow.options.DataflowPipelineWorkerPoolOptions;
-import org.apache.beam.runners.dataflow.util.DataflowTransport;
-import org.apache.beam.runners.dataflow.util.MonitoringUtil;
-import org.apache.beam.sdk.Pipeline;
-import org.apache.beam.sdk.Pipeline.PipelineVisitor;
-import org.apache.beam.sdk.PipelineResult.State;
-import org.apache.beam.sdk.annotations.Experimental;
-import org.apache.beam.sdk.coders.AvroCoder;
-import org.apache.beam.sdk.coders.BigEndianLongCoder;
-import org.apache.beam.sdk.coders.CannotProvideCoderException;
-import org.apache.beam.sdk.coders.Coder;
-import org.apache.beam.sdk.coders.Coder.NonDeterministicException;
-import org.apache.beam.sdk.coders.CoderException;
-import org.apache.beam.sdk.coders.CoderRegistry;
-import org.apache.beam.sdk.coders.IterableCoder;
-import org.apache.beam.sdk.coders.KvCoder;
-import org.apache.beam.sdk.coders.ListCoder;
-import org.apache.beam.sdk.coders.MapCoder;
-import org.apache.beam.sdk.coders.SerializableCoder;
-import org.apache.beam.sdk.coders.StandardCoder;
-import org.apache.beam.sdk.coders.VarIntCoder;
-import org.apache.beam.sdk.coders.VarLongCoder;
-import org.apache.beam.sdk.io.AvroIO;
-import org.apache.beam.sdk.io.BigQueryIO;
-import org.apache.beam.sdk.io.FileBasedSink;
-import org.apache.beam.sdk.io.PubsubIO;
-import org.apache.beam.sdk.io.PubsubUnboundedSink;
-import org.apache.beam.sdk.io.PubsubUnboundedSource;
-import org.apache.beam.sdk.io.Read;
-import org.apache.beam.sdk.io.ShardNameTemplate;
-import org.apache.beam.sdk.io.TextIO;
-import org.apache.beam.sdk.io.UnboundedSource;
-import org.apache.beam.sdk.io.Write;
-import org.apache.beam.sdk.options.PipelineOptions;
-import org.apache.beam.sdk.options.PipelineOptionsValidator;
-import org.apache.beam.sdk.options.StreamingOptions;
-import org.apache.beam.sdk.runners.AggregatorPipelineExtractor;
-import org.apache.beam.sdk.runners.PipelineRunner;
-import org.apache.beam.sdk.runners.TransformTreeNode;
-import org.apache.beam.sdk.transforms.Aggregator;
-import org.apache.beam.sdk.transforms.Combine;
-import org.apache.beam.sdk.transforms.Combine.CombineFn;
-import org.apache.beam.sdk.transforms.Create;
-import org.apache.beam.sdk.transforms.DoFn;
-import org.apache.beam.sdk.transforms.Flatten;
-import org.apache.beam.sdk.transforms.GroupByKey;
-import org.apache.beam.sdk.transforms.PTransform;
-import org.apache.beam.sdk.transforms.ParDo;
-import org.apache.beam.sdk.transforms.SerializableFunction;
-import org.apache.beam.sdk.transforms.View;
-import org.apache.beam.sdk.transforms.View.CreatePCollectionView;
-import org.apache.beam.sdk.transforms.WithKeys;
-import org.apache.beam.sdk.transforms.windowing.AfterPane;
-import org.apache.beam.sdk.transforms.windowing.BoundedWindow;
-import org.apache.beam.sdk.transforms.windowing.DefaultTrigger;
-import org.apache.beam.sdk.transforms.windowing.GlobalWindow;
-import org.apache.beam.sdk.transforms.windowing.GlobalWindows;
-import org.apache.beam.sdk.transforms.windowing.Window;
-import org.apache.beam.sdk.util.CoderUtils;
-import org.apache.beam.sdk.util.IOChannelUtils;
-import org.apache.beam.sdk.util.InstanceBuilder;
-import org.apache.beam.sdk.util.PCollectionViews;
-import org.apache.beam.sdk.util.PathValidator;
-import org.apache.beam.sdk.util.PropertyNames;
-import org.apache.beam.sdk.util.ReleaseInfo;
-import org.apache.beam.sdk.util.Reshuffle;
-import org.apache.beam.sdk.util.SystemDoFnInternal;
-import org.apache.beam.sdk.util.ValueWithRecordId;
-import org.apache.beam.sdk.util.WindowedValue;
-import org.apache.beam.sdk.util.WindowedValue.FullWindowedValueCoder;
-import org.apache.beam.sdk.util.WindowingStrategy;
-import org.apache.beam.sdk.values.KV;
-import org.apache.beam.sdk.values.PBegin;
-import org.apache.beam.sdk.values.PCollection;
-import org.apache.beam.sdk.values.PCollection.IsBounded;
-import org.apache.beam.sdk.values.PCollectionList;
-import org.apache.beam.sdk.values.PCollectionTuple;
-import org.apache.beam.sdk.values.PCollectionView;
-import org.apache.beam.sdk.values.PDone;
-import org.apache.beam.sdk.values.PInput;
-import org.apache.beam.sdk.values.POutput;
-import org.apache.beam.sdk.values.PValue;
-import org.apache.beam.sdk.values.TupleTag;
-import org.apache.beam.sdk.values.TupleTagList;
-
-import com.google.api.client.googleapis.json.GoogleJsonResponseException;
-import com.google.api.services.clouddebugger.v2.Clouddebugger;
-import com.google.api.services.clouddebugger.v2.model.Debuggee;
-import com.google.api.services.clouddebugger.v2.model.RegisterDebuggeeRequest;
-import com.google.api.services.clouddebugger.v2.model.RegisterDebuggeeResponse;
-import com.google.api.services.dataflow.Dataflow;
-import com.google.api.services.dataflow.model.DataflowPackage;
-import com.google.api.services.dataflow.model.Job;
-import com.google.api.services.dataflow.model.ListJobsResponse;
-import com.google.api.services.dataflow.model.WorkerPool;
-import com.google.common.annotations.VisibleForTesting;
-import com.google.common.base.Function;
-import com.google.common.base.Joiner;
-import com.google.common.base.Optional;
-import com.google.common.base.Preconditions;
-import com.google.common.base.Strings;
-import com.google.common.base.Utf8;
-import com.google.common.collect.ForwardingMap;
-import com.google.common.collect.HashMultimap;
-import com.google.common.collect.ImmutableList;
-import com.google.common.collect.ImmutableMap;
-import com.google.common.collect.Iterables;
-import com.google.common.collect.Maps;
-import com.google.common.collect.Multimap;
-
-import com.fasterxml.jackson.annotation.JsonCreator;
-import com.fasterxml.jackson.annotation.JsonProperty;
-
-import org.joda.time.DateTimeUtils;
-import org.joda.time.DateTimeZone;
-import org.joda.time.Duration;
-import org.joda.time.format.DateTimeFormat;
-import org.slf4j.Logger;
-import org.slf4j.LoggerFactory;
-
-import java.io.File;
-import java.io.FileNotFoundException;
-import java.io.IOException;
-import java.io.InputStream;
-import java.io.OutputStream;
-import java.io.PrintWriter;
-import java.io.Serializable;
-import java.net.URISyntaxException;
-import java.net.URL;
-import java.net.URLClassLoader;
-import java.util.ArrayList;
-import java.util.Arrays;
-import java.util.Collection;
-import java.util.Collections;
-import java.util.HashMap;
-import java.util.HashSet;
-import java.util.Iterator;
-import java.util.List;
-import java.util.Map;
-import java.util.Random;
-import java.util.Set;
-import java.util.SortedSet;
-import java.util.TreeSet;
-import javax.annotation.Nullable;
-
-/**
- * A {@link PipelineRunner} that executes the operations in the
- * pipeline by first translating them to the Dataflow representation
- * using the {@link DataflowPipelineTranslator} and then submitting
- * them to a Dataflow service for execution.
- *
- * <p><h3>Permissions</h3>
- * When reading from a Dataflow source or writing to a Dataflow sink using
- * {@code DataflowPipelineRunner}, the Google cloudservices account and the Google compute engine
- * service account of the GCP project running the Dataflow Job will need access to the corresponding
- * source/sink.
- *
- * <p>Please see <a href="https://cloud.google.com/dataflow/security-and-permissions">Google Cloud
- * Dataflow Security and Permissions</a> for more details.
- */
-public class DataflowPipelineRunner extends PipelineRunner<DataflowPipelineJob> {
- private static final Logger LOG = LoggerFactory.getLogger(DataflowPipelineRunner.class);
-
- /** Provided configuration options. */
- private final DataflowPipelineOptions options;
-
- /** Client for the Dataflow service. This is used to actually submit jobs. */
- private final Dataflow dataflowClient;
-
- /** Translator for this DataflowPipelineRunner, based on options. */
- private final DataflowPipelineTranslator translator;
-
- /** Custom transforms implementations. */
- private final Map<Class<?>, Class<?>> overrides;
-
- /** A set of user defined functions to invoke at different points in execution. */
- private DataflowPipelineRunnerHooks hooks;
-
- // Environment version information.
- private static final String ENVIRONMENT_MAJOR_VERSION = "5";
-
- // Default Docker container images that execute Dataflow worker harness, residing in Google
- // Container Registry, separately for Batch and Streaming.
- public static final String BATCH_WORKER_HARNESS_CONTAINER_IMAGE
- = "dataflow.gcr.io/v1beta3/beam-java-batch:beam-master-20160613";
- public static final String STREAMING_WORKER_HARNESS_CONTAINER_IMAGE
- = "dataflow.gcr.io/v1beta3/beam-java-streaming:beam-master-20160613";
-
- // The limit of CreateJob request size.
- private static final int CREATE_JOB_REQUEST_LIMIT_BYTES = 10 * 1024 * 1024;
-
- private final Set<PCollection<?>> pcollectionsRequiringIndexedFormat;
-
- /**
- * Project IDs must contain lowercase letters, digits, or dashes.
- * IDs must start with a letter and may not end with a dash.
- * This regex isn't exact - this allows for patterns that would be rejected by
- * the service, but this is sufficient for basic validation of project IDs.
- */
- public static final String PROJECT_ID_REGEXP = "[a-z][-a-z0-9:.]+[a-z0-9]";
-
- /**
- * Construct a runner from the provided options.
- *
- * @param options Properties that configure the runner.
- * @return The newly created runner.
- */
- public static DataflowPipelineRunner fromOptions(PipelineOptions options) {
- // (Re-)register standard IO factories. Clobbers any prior credentials.
- IOChannelUtils.registerStandardIOFactories(options);
-
- DataflowPipelineOptions dataflowOptions =
- PipelineOptionsValidator.validate(DataflowPipelineOptions.class, options);
- ArrayList<String> missing = new ArrayList<>();
-
- if (dataflowOptions.getAppName() == null) {
- missing.add("appName");
- }
- if (missing.size() > 0) {
- throw new IllegalArgumentException(
- "Missing required values: " + Joiner.on(',').join(missing));
- }
-
- PathValidator validator = dataflowOptions.getPathValidator();
- Preconditions.checkArgument(!(Strings.isNullOrEmpty(dataflowOptions.getTempLocation())
- && Strings.isNullOrEmpty(dataflowOptions.getStagingLocation())),
- "Missing required value: at least one of tempLocation or stagingLocation must be set.");
-
- if (dataflowOptions.getStagingLocation() != null) {
- validator.validateOutputFilePrefixSupported(dataflowOptions.getStagingLocation());
- }
- if (dataflowOptions.getTempLocation() != null) {
- validator.validateOutputFilePrefixSupported(dataflowOptions.getTempLocation());
- }
- if (Strings.isNullOrEmpty(dataflowOptions.getTempLocation())) {
- dataflowOptions.setTempLocation(dataflowOptions.getStagingLocation());
- } else if (Strings.isNullOrEmpty(dataflowOptions.getStagingLocation())) {
- try {
- dataflowOptions.setStagingLocation(
- IOChannelUtils.resolve(dataflowOptions.getTempLocation(), "staging"));
- } catch (IOException e) {
- throw new IllegalArgumentException("Unable to resolve PipelineOptions.stagingLocation "
- + "from PipelineOptions.tempLocation. Please set the staging location explicitly.", e);
- }
- }
-
- if (dataflowOptions.getFilesToStage() == null) {
- dataflowOptions.setFilesToStage(detectClassPathResourcesToStage(
- DataflowPipelineRunner.class.getClassLoader()));
- LOG.info("PipelineOptions.filesToStage was not specified. "
- + "Defaulting to files from the classpath: will stage {} files. "
- + "Enable logging at DEBUG level to see which files will be staged.",
- dataflowOptions.getFilesToStage().size());
- LOG.debug("Classpath elements: {}", dataflowOptions.getFilesToStage());
- }
-
- // Verify jobName according to service requirements, truncating converting to lowercase if
- // necessary.
- String jobName =
- dataflowOptions
- .getJobName()
- .toLowerCase();
- checkArgument(
- jobName.matches("[a-z]([-a-z0-9]*[a-z0-9])?"),
- "JobName invalid; the name must consist of only the characters "
- + "[-a-z0-9], starting with a letter and ending with a letter "
- + "or number");
- if (!jobName.equals(dataflowOptions.getJobName())) {
- LOG.info(
- "PipelineOptions.jobName did not match the service requirements. "
- + "Using {} instead of {}.",
- jobName,
- dataflowOptions.getJobName());
- }
- dataflowOptions.setJobName(jobName);
-
- // Verify project
- String project = dataflowOptions.getProject();
- if (project.matches("[0-9]*")) {
- throw new IllegalArgumentException("Project ID '" + project
- + "' invalid. Please make sure you specified the Project ID, not project number.");
- } else if (!project.matches(PROJECT_ID_REGEXP)) {
- throw new IllegalArgumentException("Project ID '" + project
- + "' invalid. Please make sure you specified the Project ID, not project description.");
- }
-
- DataflowPipelineDebugOptions debugOptions =
- dataflowOptions.as(DataflowPipelineDebugOptions.class);
- // Verify the number of worker threads is a valid value
- if (debugOptions.getNumberOfWorkerHarnessThreads() < 0) {
- throw new IllegalArgumentException("Number of worker harness threads '"
- + debugOptions.getNumberOfWorkerHarnessThreads()
- + "' invalid. Please make sure the value is non-negative.");
- }
-
- return new DataflowPipelineRunner(dataflowOptions);
- }
-
- @VisibleForTesting protected DataflowPipelineRunner(DataflowPipelineOptions options) {
- this.options = options;
- this.dataflowClient = options.getDataflowClient();
- this.translator = DataflowPipelineTranslator.fromOptions(options);
- this.pcollectionsRequiringIndexedFormat = new HashSet<>();
- this.ptransformViewsWithNonDeterministicKeyCoders = new HashSet<>();
-
- ImmutableMap.Builder<Class<?>, Class<?>> builder = ImmutableMap.<Class<?>, Class<?>>builder();
- if (options.isStreaming()) {
- builder.put(Combine.GloballyAsSingletonView.class,
- StreamingCombineGloballyAsSingletonView.class);
- builder.put(Create.Values.class, StreamingCreate.class);
- builder.put(View.AsMap.class, StreamingViewAsMap.class);
- builder.put(View.AsMultimap.class, StreamingViewAsMultimap.class);
- builder.put(View.AsSingleton.class, StreamingViewAsSingleton.class);
- builder.put(View.AsList.class, StreamingViewAsList.class);
- builder.put(View.AsIterable.class, StreamingViewAsIterable.class);
- builder.put(Write.Bound.class, StreamingWrite.class);
- builder.put(Read.Unbounded.class, StreamingUnboundedRead.class);
- builder.put(Read.Bounded.class, UnsupportedIO.class);
- builder.put(AvroIO.Read.Bound.class, UnsupportedIO.class);
- builder.put(AvroIO.Write.Bound.class, UnsupportedIO.class);
- builder.put(BigQueryIO.Read.Bound.class, UnsupportedIO.class);
- builder.put(TextIO.Read.Bound.class, UnsupportedIO.class);
- builder.put(TextIO.Write.Bound.class, UnsupportedIO.class);
- builder.put(Window.Bound.class, AssignWindows.class);
- // In streaming mode must use either the custom Pubsub unbounded source/sink or
- // defer to Windmill's built-in implementation.
- builder.put(PubsubIO.Read.Bound.PubsubBoundedReader.class, UnsupportedIO.class);
- builder.put(PubsubIO.Write.Bound.PubsubBoundedWriter.class, UnsupportedIO.class);
- if (options.getExperiments() == null
- || !options.getExperiments().contains("enable_custom_pubsub_source")) {
- builder.put(PubsubUnboundedSource.class, StreamingPubsubIORead.class);
- }
- if (options.getExperiments() == null
- || !options.getExperiments().contains("enable_custom_pubsub_sink")) {
- builder.put(PubsubUnboundedSink.class, StreamingPubsubIOWrite.class);
- }
- } else {
- builder.put(Read.Unbounded.class, UnsupportedIO.class);
- builder.put(Window.Bound.class, AssignWindows.class);
- builder.put(Write.Bound.class, BatchWrite.class);
- builder.put(AvroIO.Write.Bound.class, BatchAvroIOWrite.class);
- builder.put(TextIO.Write.Bound.class, BatchTextIOWrite.class);
- // In batch mode must use the custom Pubsub bounded source/sink.
- builder.put(PubsubUnboundedSource.class, UnsupportedIO.class);
- builder.put(PubsubUnboundedSink.class, UnsupportedIO.class);
- if (options.getExperiments() == null
- || !options.getExperiments().contains("disable_ism_side_input")) {
- builder.put(View.AsMap.class, BatchViewAsMap.class);
- builder.put(View.AsMultimap.class, BatchViewAsMultimap.class);
- builder.put(View.AsSingleton.class, BatchViewAsSingleton.class);
- builder.put(View.AsList.class, BatchViewAsList.class);
- builder.put(View.AsIterable.class, BatchViewAsIterable.class);
- }
- }
- overrides = builder.build();
- }
-
- /**
- * Applies the given transform to the input. For transforms with customized definitions
- * for the Dataflow pipeline runner, the application is intercepted and modified here.
- */
- @Override
- public <OutputT extends POutput, InputT extends PInput> OutputT apply(
- PTransform<InputT, OutputT> transform, InputT input) {
-
- if (Combine.GroupedValues.class.equals(transform.getClass())
- || GroupByKey.class.equals(transform.getClass())) {
-
- // For both Dataflow runners (streaming and batch), GroupByKey and GroupedValues are
- // primitives. Returning a primitive output instead of the expanded definition
- // signals to the translator that translation is necessary.
- @SuppressWarnings("unchecked")
- PCollection<?> pc = (PCollection<?>) input;
- @SuppressWarnings("unchecked")
- OutputT outputT = (OutputT) PCollection.createPrimitiveOutputInternal(
- pc.getPipeline(),
- transform instanceof GroupByKey
- ? ((GroupByKey<?, ?>) transform).updateWindowingStrategy(pc.getWindowingStrategy())
- : pc.getWindowingStrategy(),
- pc.isBounded());
- return outputT;
- } else if (Window.Bound.class.equals(transform.getClass())) {
- /*
- * TODO: make this the generic way overrides are applied (using super.apply() rather than
- * Pipeline.applyTransform(); this allows the apply method to be replaced without inserting
- * additional nodes into the graph.
- */
- // casting to wildcard
- @SuppressWarnings("unchecked")
- OutputT windowed = (OutputT) applyWindow((Window.Bound<?>) transform, (PCollection<?>) input);
- return windowed;
- } else if (Flatten.FlattenPCollectionList.class.equals(transform.getClass())
- && ((PCollectionList<?>) input).size() == 0) {
- return (OutputT) Pipeline.applyTransform(input, Create.of());
- } else if (overrides.containsKey(transform.getClass())) {
- // It is the responsibility of whoever constructs overrides to ensure this is type safe.
- @SuppressWarnings("unchecked")
- Class<PTransform<InputT, OutputT>> transformClass =
- (Class<PTransform<InputT, OutputT>>) transform.getClass();
-
- @SuppressWarnings("unchecked")
- Class<PTransform<InputT, OutputT>> customTransformClass =
- (Class<PTransform<InputT, OutputT>>) overrides.get(transform.getClass());
-
- PTransform<InputT, OutputT> customTransform =
- InstanceBuilder.ofType(customTransformClass)
- .withArg(DataflowPipelineRunner.class, this)
- .withArg(transformClass, transform)
- .build();
-
- return Pipeline.applyTransform(input, customTransform);
- } else {
- return super.apply(transform, input);
- }
- }
-
- private <T> PCollection<T> applyWindow(
- Window.Bound<?> intitialTransform, PCollection<?> initialInput) {
- // types are matched at compile time
- @SuppressWarnings("unchecked")
- Window.Bound<T> transform = (Window.Bound<T>) intitialTransform;
- @SuppressWarnings("unchecked")
- PCollection<T> input = (PCollection<T>) initialInput;
- return super.apply(new AssignWindows<>(transform), input);
- }
-
- private String debuggerMessage(String projectId, String uniquifier) {
- return String.format("To debug your job, visit Google Cloud Debugger at: "
- + "https://console.developers.google.com/debug?project=%s&dbgee=%s",
- projectId, uniquifier);
- }
-
- private void maybeRegisterDebuggee(DataflowPipelineOptions options, String uniquifier) {
- if (!options.getEnableCloudDebugger()) {
- return;
- }
-
- if (options.getDebuggee() != null) {
- throw new RuntimeException("Should not specify the debuggee");
- }
-
- Clouddebugger debuggerClient = DataflowTransport.newClouddebuggerClient(options).build();
- Debuggee debuggee = registerDebuggee(debuggerClient, uniquifier);
- options.setDebuggee(debuggee);
-
- System.out.println(debuggerMessage(options.getProject(), debuggee.getUniquifier()));
- }
-
- private Debuggee registerDebuggee(Clouddebugger debuggerClient, String uniquifier) {
- RegisterDebuggeeRequest registerReq = new RegisterDebuggeeRequest();
- registerReq.setDebuggee(new Debuggee()
- .setProject(options.getProject())
- .setUniquifier(uniquifier)
- .setDescription(uniquifier)
- .setAgentVersion("google.com/cloud-dataflow-java/v1"));
-
- try {
- RegisterDebuggeeResponse registerResponse =
- debuggerClient.controller().debuggees().register(registerReq).execute();
- Debuggee debuggee = registerResponse.getDebuggee();
- if (debuggee.getStatus() != null && debuggee.getStatus().getIsError()) {
- throw new RuntimeException("Unable to register with the debugger: "
- + debuggee.getStatus().getDescription().getFormat());
- }
-
- return debuggee;
- } catch (IOException e) {
- throw new RuntimeException("Unable to register with the debugger: ", e);
- }
- }
-
- @Override
- public DataflowPipelineJob run(Pipeline pipeline) {
- logWarningIfPCollectionViewHasNonDeterministicKeyCoder(pipeline);
-
- LOG.info("Executing pipeline on the Dataflow Service, which will have billing implications "
- + "related to Google Compute Engine usage and other Google Cloud Services.");
-
- List<DataflowPackage> packages = options.getStager().stageFiles();
-
-
- // Set a unique client_request_id in the CreateJob request.
- // This is used to ensure idempotence of job creation across retried
- // attempts to create a job. Specifically, if the service returns a job with
- // a different client_request_id, it means the returned one is a different
- // job previously created with the same job name, and that the job creation
- // has been effectively rejected. The SDK should return
- // Error::Already_Exists to user in that case.
- int randomNum = new Random().nextInt(9000) + 1000;
- String requestId = DateTimeFormat.forPattern("YYYYMMddHHmmssmmm").withZone(DateTimeZone.UTC)
- .print(DateTimeUtils.currentTimeMillis()) + "_" + randomNum;
-
- // Try to create a debuggee ID. This must happen before the job is translated since it may
- // update the options.
- DataflowPipelineOptions dataflowOptions = options.as(DataflowPipelineOptions.class);
- maybeRegisterDebuggee(dataflowOptions, requestId);
-
- JobSpecification jobSpecification =
- translator.translate(pipeline, this, packages);
- Job newJob = jobSpecification.getJob();
- newJob.setClientRequestId(requestId);
-
- String version = ReleaseInfo.getReleaseInfo().getVersion();
- System.out.println("Dataflow SDK version: " + version);
-
- newJob.getEnvironment().setUserAgent(ReleaseInfo.getReleaseInfo());
- // The Dataflow Service may write to the temporary directory directly, so
- // must be verified.
- if (!Strings.isNullOrEmpty(options.getTempLocation())) {
- newJob.getEnvironment().setTempStoragePrefix(
- dataflowOptions.getPathValidator().verifyPath(options.getTempLocation()));
- }
- newJob.getEnvironment().setDataset(options.getTempDatasetId());
- newJob.getEnvironment().setExperiments(options.getExperiments());
-
- // Set the Docker container image that executes Dataflow worker harness, residing in Google
- // Container Registry. Translator is guaranteed to create a worker pool prior to this point.
- String workerHarnessContainerImage =
- options.as(DataflowPipelineWorkerPoolOptions.class)
- .getWorkerHarnessContainerImage();
- for (WorkerPool workerPool : newJob.getEnvironment().getWorkerPools()) {
- workerPool.setWorkerHarnessContainerImage(workerHarnessContainerImage);
- }
-
- // Requirements about the service.
- Map<String, Object> environmentVersion = new HashMap<>();
- environmentVersion.put(PropertyNames.ENVIRONMENT_VERSION_MAJOR_KEY, ENVIRONMENT_MAJOR_VERSION);
- newJob.getEnvironment().setVersion(environmentVersion);
- // Default jobType is JAVA_BATCH_AUTOSCALING: A Java job with workers that the job can
- // autoscale if specified.
- String jobType = "JAVA_BATCH_AUTOSCALING";
-
- if (options.isStreaming()) {
- jobType = "STREAMING";
- }
- environmentVersion.put(PropertyNames.ENVIRONMENT_VERSION_JOB_TYPE_KEY, jobType);
-
- if (hooks != null) {
- hooks.modifyEnvironmentBeforeSubmission(newJob.getEnvironment());
- }
-
- if (!Strings.isNullOrEmpty(options.getDataflowJobFile())) {
- try (PrintWriter printWriter = new PrintWriter(
- new File(options.getDataflowJobFile()))) {
- String workSpecJson = DataflowPipelineTranslator.jobToString(newJob);
- printWriter.print(workSpecJson);
- LOG.info("Printed workflow specification to {}", options.getDataflowJobFile());
- } catch (IllegalStateException ex) {
- LOG.warn("Cannot translate workflow spec to json for debug.");
- } catch (FileNotFoundException ex) {
- LOG.warn("Cannot create workflow spec output file.");
- }
- }
-
- String jobIdToUpdate = null;
- if (options.isUpdate()) {
- jobIdToUpdate = getJobIdFromName(options.getJobName());
- newJob.setTransformNameMapping(options.getTransformNameMapping());
- newJob.setReplaceJobId(jobIdToUpdate);
- }
- Job jobResult;
- try {
- jobResult = dataflowClient
- .projects()
- .jobs()
- .create(options.getProject(), newJob)
- .execute();
- } catch (GoogleJsonResponseException e) {
- String errorMessages = "Unexpected errors";
- if (e.getDetails() != null) {
- if (Utf8.encodedLength(newJob.toString()) >= CREATE_JOB_REQUEST_LIMIT_BYTES) {
- errorMessages = "The size of the serialized JSON representation of the pipeline "
- + "exceeds the allowable limit. "
- + "For more information, please check the FAQ link below:\n"
- + "https://cloud.google.com/dataflow/faq";
- } else {
- errorMessages = e.getDetails().getMessage();
- }
- }
- throw new RuntimeException("Failed to create a workflow job: " + errorMessages, e);
- } catch (IOException e) {
- throw new RuntimeException("Failed to create a workflow job", e);
- }
-
- // Obtain all of the extractors from the PTransforms used in the pipeline so the
- // DataflowPipelineJob has access to them.
- AggregatorPipelineExtractor aggregatorExtractor = new AggregatorPipelineExtractor(pipeline);
- Map<Aggregator<?, ?>, Collection<PTransform<?, ?>>> aggregatorSteps =
- aggregatorExtractor.getAggregatorSteps();
-
- DataflowAggregatorTransforms aggregatorTransforms =
- new DataflowAggregatorTransforms(aggregatorSteps, jobSpecification.getStepNames());
-
- // Use a raw client for post-launch monitoring, as status calls may fail
- // regularly and need not be retried automatically.
- DataflowPipelineJob dataflowPipelineJob =
- new DataflowPipelineJob(options.getProject(), jobResult.getId(),
- DataflowTransport.newRawDataflowClient(options).build(), aggregatorTransforms);
-
- // If the service returned client request id, the SDK needs to compare it
- // with the original id generated in the request, if they are not the same
- // (i.e., the returned job is not created by this request), throw
- // DataflowJobAlreadyExistsException or DataflowJobAlreadyUpdatedExcetpion
- // depending on whether this is a reload or not.
- if (jobResult.getClientRequestId() != null && !jobResult.getClientRequestId().isEmpty()
- && !jobResult.getClientRequestId().equals(requestId)) {
- // If updating a job.
- if (options.isUpdate()) {
- throw new DataflowJobAlreadyUpdatedException(dataflowPipelineJob,
- String.format("The job named %s with id: %s has already been updated into job id: %s "
- + "and cannot be updated again.",
- newJob.getName(), jobIdToUpdate, jobResult.getId()));
- } else {
- throw new DataflowJobAlreadyExistsException(dataflowPipelineJob,
- String.format("There is already an active job named %s with id: %s. If you want "
- + "to submit a second job, try again by setting a different name using --jobName.",
- newJob.getName(), jobResult.getId()));
- }
- }
-
- LOG.info("To access the Dataflow monitoring console, please navigate to {}",
- MonitoringUtil.getJobMonitoringPageURL(options.getProject(), jobResult.getId()));
- System.out.println("Submitted job: " + jobResult.getId());
-
- LOG.info("To cancel the job using the 'gcloud' tool, run:\n> {}",
- MonitoringUtil.getGcloudCancelCommand(options, jobResult.getId()));
-
- return dataflowPipelineJob;
- }
-
- /**
- * Returns the DataflowPipelineTranslator associated with this object.
- */
- public DataflowPipelineTranslator getTranslator() {
- return translator;
- }
-
- /**
- * Sets callbacks to invoke during execution see {@code DataflowPipelineRunnerHooks}.
- */
- @Experimental
- public void setHooks(DataflowPipelineRunnerHooks hooks) {
- this.hooks = hooks;
- }
-
- /////////////////////////////////////////////////////////////////////////////
-
- /** Outputs a warning about PCollection views without deterministic key coders. */
- private void logWarningIfPCollectionViewHasNonDeterministicKeyCoder(Pipeline pipeline) {
- // We need to wait till this point to determine the names of the transforms since only
- // at this time do we know the hierarchy of the transforms otherwise we could
- // have just recorded the full names during apply time.
- if (!ptransformViewsWithNonDeterministicKeyCoders.isEmpty()) {
- final SortedSet<String> ptransformViewNamesWithNonDeterministicKeyCoders = new TreeSet<>();
- pipeline.traverseTopologically(new PipelineVisitor() {
- @Override
- public void visitValue(PValue value, TransformTreeNode producer) {
- }
-
- @Override
- public void visitPrimitiveTransform(TransformTreeNode node) {
- if (ptransformViewsWithNonDeterministicKeyCoders.contains(node.getTransform())) {
- ptransformViewNamesWithNonDeterministicKeyCoders.add(node.getFullName());
- }
- }
-
- @Override
- public CompositeBehavior enterCompositeTransform(TransformTreeNode node) {
- if (ptransformViewsWithNonDeterministicKeyCoders.contains(node.getTransform())) {
- ptransformViewNamesWithNonDeterministicKeyCoders.add(node.getFullName());
- }
- return CompositeBehavior.ENTER_TRANSFORM;
- }
-
- @Override
- public void leaveCompositeTransform(TransformTreeNode node) {
- }
- });
-
- LOG.warn("Unable to use indexed implementation for View.AsMap and View.AsMultimap for {} "
- + "because the key coder is not deterministic. Falling back to singleton implementation "
- + "which may cause memory and/or performance problems. Future major versions of "
- + "Dataflow will require deterministic key coders.",
- ptransformViewNamesWithNonDeterministicKeyCoders);
- }
- }
-
- /**
- * Returns true if the passed in {@link PCollection} needs to be materialiazed using
- * an indexed format.
- */
- boolean doesPCollectionRequireIndexedFormat(PCollection<?> pcol) {
- return pcollectionsRequiringIndexedFormat.contains(pcol);
- }
-
- /**
- * Marks the passed in {@link PCollection} as requiring to be materialized using
- * an indexed format.
- */
- private void addPCollectionRequiringIndexedFormat(PCollection<?> pcol) {
- pcollectionsRequiringIndexedFormat.add(pcol);
- }
-
- /** A set of {@link View}s with non-deterministic key coders. */
- Set<PTransform<?, ?>> ptransformViewsWithNonDeterministicKeyCoders;
-
- /**
- * Records that the {@link PTransform} requires a deterministic key coder.
- */
- private void recordViewUsesNonDeterministicKeyCoder(PTransform<?, ?> ptransform) {
- ptransformViewsWithNonDeterministicKeyCoders.add(ptransform);
- }
-
- /**
- * A {@link GroupByKey} transform for the {@link DataflowPipelineRunner} which sorts
- * values using the secondary key {@code K2}.
- *
- * <p>The {@link PCollection} created created by this {@link PTransform} will have values in
- * the empty window. Care must be taken *afterwards* to either re-window
- * (using {@link Window#into}) or only use {@link PTransform}s that do not depend on the
- * values being within a window.
- */
- static class GroupByKeyAndSortValuesOnly<K1, K2, V>
- extends PTransform<PCollection<KV<K1, KV<K2, V>>>, PCollection<KV<K1, Iterable<KV<K2, V>>>>> {
- private GroupByKeyAndSortValuesOnly() {
- }
-
- @Override
- public PCollection<KV<K1, Iterable<KV<K2, V>>>> apply(PCollection<KV<K1, KV<K2, V>>> input) {
- PCollection<KV<K1, Iterable<KV<K2, V>>>> rval =
- PCollection.<KV<K1, Iterable<KV<K2, V>>>>createPrimitiveOutputInternal(
- input.getPipeline(),
- WindowingStrategy.globalDefault(),
- IsBounded.BOUNDED);
-
- @SuppressWarnings({"unchecked", "rawtypes"})
- KvCoder<K1, KV<K2, V>> inputCoder = (KvCoder) input.getCoder();
- rval.setCoder(
- KvCoder.of(inputCoder.getKeyCoder(),
- IterableCoder.of(inputCoder.getValueCoder())));
- return rval;
- }
- }
-
- /**
- * A {@link PTransform} that groups the values by a hash of the window's byte representation
- * and sorts the values using the windows byte representation.
- */
- private static class GroupByWindowHashAsKeyAndWindowAsSortKey<T, W extends BoundedWindow> extends
- PTransform<PCollection<T>, PCollection<KV<Integer, Iterable<KV<W, WindowedValue<T>>>>>> {
-
- /**
- * A {@link DoFn} that for each element outputs a {@code KV} structure suitable for
- * grouping by the hash of the window's byte representation and sorting the grouped values
- * using the window's byte representation.
- */
- @SystemDoFnInternal
- private static class UseWindowHashAsKeyAndWindowAsSortKeyDoFn<T, W extends BoundedWindow>
- extends DoFn<T, KV<Integer, KV<W, WindowedValue<T>>>> implements DoFn.RequiresWindowAccess {
-
- private final IsmRecordCoder<?> ismCoderForHash;
- private UseWindowHashAsKeyAndWindowAsSortKeyDoFn(IsmRecordCoder<?> ismCoderForHash) {
- this.ismCoderForHash = ismCoderForHash;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- @SuppressWarnings("unchecked")
- W window = (W) c.window();
- c.output(
- KV.of(ismCoderForHash.hash(ImmutableList.of(window)),
- KV.of(window,
- WindowedValue.of(
- c.element(),
- c.timestamp(),
- c.window(),
- c.pane()))));
- }
- }
-
- private final IsmRecordCoder<?> ismCoderForHash;
- private GroupByWindowHashAsKeyAndWindowAsSortKey(IsmRecordCoder<?> ismCoderForHash) {
- this.ismCoderForHash = ismCoderForHash;
- }
-
- @Override
- public PCollection<KV<Integer, Iterable<KV<W, WindowedValue<T>>>>> apply(PCollection<T> input) {
- @SuppressWarnings("unchecked")
- Coder<W> windowCoder = (Coder<W>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
- PCollection<KV<Integer, KV<W, WindowedValue<T>>>> rval =
- input.apply(ParDo.of(
- new UseWindowHashAsKeyAndWindowAsSortKeyDoFn<T, W>(ismCoderForHash)));
- rval.setCoder(
- KvCoder.of(
- VarIntCoder.of(),
- KvCoder.of(windowCoder,
- FullWindowedValueCoder.of(input.getCoder(), windowCoder))));
- return rval.apply(new GroupByKeyAndSortValuesOnly<Integer, W, WindowedValue<T>>());
- }
- }
-
- /**
- * Specialized implementation for
- * {@link org.apache.beam.sdk.transforms.View.AsSingleton View.AsSingleton} for the
- * Dataflow runner in batch mode.
- *
- * <p>Creates a set of files in the {@link IsmFormat} sharded by the hash of the windows
- * byte representation and with records having:
- * <ul>
- * <li>Key 1: Window</li>
- * <li>Value: Windowed value</li>
- * </ul>
- */
- static class BatchViewAsSingleton<T>
- extends PTransform<PCollection<T>, PCollectionView<T>> {
-
- /**
- * A {@link DoFn} that outputs {@link IsmRecord}s. These records are structured as follows:
- * <ul>
- * <li>Key 1: Window
- * <li>Value: Windowed value
- * </ul>
- */
- static class IsmRecordForSingularValuePerWindowDoFn<T, W extends BoundedWindow>
- extends DoFn<KV<Integer, Iterable<KV<W, WindowedValue<T>>>>,
- IsmRecord<WindowedValue<T>>> {
-
- private final Coder<W> windowCoder;
- IsmRecordForSingularValuePerWindowDoFn(Coder<W> windowCoder) {
- this.windowCoder = windowCoder;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- Optional<Object> previousWindowStructuralValue = Optional.absent();
- T previousValue = null;
-
- Iterator<KV<W, WindowedValue<T>>> iterator = c.element().getValue().iterator();
- while (iterator.hasNext()) {
- KV<W, WindowedValue<T>> next = iterator.next();
- Object currentWindowStructuralValue = windowCoder.structuralValue(next.getKey());
-
- // Verify that the user isn't trying to have more than one element per window as
- // a singleton.
- checkState(!previousWindowStructuralValue.isPresent()
- || !previousWindowStructuralValue.get().equals(currentWindowStructuralValue),
- "Multiple values [%s, %s] found for singleton within window [%s].",
- previousValue,
- next.getValue().getValue(),
- next.getKey());
-
- c.output(
- IsmRecord.of(
- ImmutableList.of(next.getKey()), next.getValue()));
-
- previousWindowStructuralValue = Optional.of(currentWindowStructuralValue);
- previousValue = next.getValue().getValue();
- }
- }
- }
-
- private final DataflowPipelineRunner runner;
- private final View.AsSingleton<T> transform;
- /**
- * Builds an instance of this class from the overridden transform.
- */
- @SuppressWarnings("unused") // used via reflection in DataflowPipelineRunner#apply()
- public BatchViewAsSingleton(DataflowPipelineRunner runner, View.AsSingleton<T> transform) {
- this.runner = runner;
- this.transform = transform;
- }
-
- @Override
- public PCollectionView<T> apply(PCollection<T> input) {
- @SuppressWarnings("unchecked")
- Coder<BoundedWindow> windowCoder = (Coder<BoundedWindow>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
-
- return BatchViewAsSingleton.<T, T, T, BoundedWindow>applyForSingleton(
- runner,
- input,
- new IsmRecordForSingularValuePerWindowDoFn<T, BoundedWindow>(windowCoder),
- transform.hasDefaultValue(),
- transform.defaultValue(),
- input.getCoder());
- }
-
- static <T, FinalT, ViewT, W extends BoundedWindow> PCollectionView<ViewT>
- applyForSingleton(
- DataflowPipelineRunner runner,
- PCollection<T> input,
- DoFn<KV<Integer, Iterable<KV<W, WindowedValue<T>>>>,
- IsmRecord<WindowedValue<FinalT>>> doFn,
- boolean hasDefault,
- FinalT defaultValue,
- Coder<FinalT> defaultValueCoder) {
-
- @SuppressWarnings("unchecked")
- Coder<W> windowCoder = (Coder<W>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
-
- @SuppressWarnings({"rawtypes", "unchecked"})
- PCollectionView<ViewT> view =
- (PCollectionView<ViewT>) PCollectionViews.<FinalT, W>singletonView(
- input.getPipeline(),
- (WindowingStrategy) input.getWindowingStrategy(),
- hasDefault,
- defaultValue,
- defaultValueCoder);
-
- IsmRecordCoder<WindowedValue<FinalT>> ismCoder =
- coderForSingleton(windowCoder, defaultValueCoder);
-
- PCollection<IsmRecord<WindowedValue<FinalT>>> reifiedPerWindowAndSorted = input
- .apply(new GroupByWindowHashAsKeyAndWindowAsSortKey<T, W>(ismCoder))
- .apply(ParDo.of(doFn));
- reifiedPerWindowAndSorted.setCoder(ismCoder);
-
- runner.addPCollectionRequiringIndexedFormat(reifiedPerWindowAndSorted);
- return reifiedPerWindowAndSorted.apply(
- CreatePCollectionView.<IsmRecord<WindowedValue<FinalT>>, ViewT>of(view));
- }
-
- @Override
- protected String getKindString() {
- return "BatchViewAsSingleton";
- }
-
- static <T> IsmRecordCoder<WindowedValue<T>> coderForSingleton(
- Coder<? extends BoundedWindow> windowCoder, Coder<T> valueCoder) {
- return IsmRecordCoder.of(
- 1, // We hash using only the window
- 0, // There are no metadata records
- ImmutableList.<Coder<?>>of(windowCoder),
- FullWindowedValueCoder.of(valueCoder, windowCoder));
- }
- }
-
- /**
- * Specialized implementation for
- * {@link org.apache.beam.sdk.transforms.View.AsIterable View.AsIterable} for the
- * Dataflow runner in batch mode.
- *
- * <p>Creates a set of {@code Ism} files sharded by the hash of the windows byte representation
- * and with records having:
- * <ul>
- * <li>Key 1: Window</li>
- * <li>Key 2: Index offset within window</li>
- * <li>Value: Windowed value</li>
- * </ul>
- */
- static class BatchViewAsIterable<T>
- extends PTransform<PCollection<T>, PCollectionView<Iterable<T>>> {
-
- private final DataflowPipelineRunner runner;
- /**
- * Builds an instance of this class from the overridden transform.
- */
- @SuppressWarnings("unused") // used via reflection in DataflowPipelineRunner#apply()
- public BatchViewAsIterable(DataflowPipelineRunner runner, View.AsIterable<T> transform) {
- this.runner = runner;
- }
-
- @Override
- public PCollectionView<Iterable<T>> apply(PCollection<T> input) {
- PCollectionView<Iterable<T>> view = PCollectionViews.iterableView(
- input.getPipeline(), input.getWindowingStrategy(), input.getCoder());
- return BatchViewAsList.applyForIterableLike(runner, input, view);
- }
- }
-
- /**
- * Specialized implementation for
- * {@link org.apache.beam.sdk.transforms.View.AsList View.AsList} for the
- * Dataflow runner in batch mode.
- *
- * <p>Creates a set of {@code Ism} files sharded by the hash of the window's byte representation
- * and with records having:
- * <ul>
- * <li>Key 1: Window</li>
- * <li>Key 2: Index offset within window</li>
- * <li>Value: Windowed value</li>
- * </ul>
- */
- static class BatchViewAsList<T>
- extends PTransform<PCollection<T>, PCollectionView<List<T>>> {
- /**
- * A {@link DoFn} which creates {@link IsmRecord}s assuming that each element is within the
- * global window. Each {@link IsmRecord} has
- * <ul>
- * <li>Key 1: Global window</li>
- * <li>Key 2: Index offset within window</li>
- * <li>Value: Windowed value</li>
- * </ul>
- */
- @SystemDoFnInternal
- static class ToIsmRecordForGlobalWindowDoFn<T>
- extends DoFn<T, IsmRecord<WindowedValue<T>>> {
-
- long indexInBundle;
- @Override
- public void startBundle(Context c) throws Exception {
- indexInBundle = 0;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- c.output(IsmRecord.of(
- ImmutableList.of(GlobalWindow.INSTANCE, indexInBundle),
- WindowedValue.of(
- c.element(),
- c.timestamp(),
- GlobalWindow.INSTANCE,
- c.pane())));
- indexInBundle += 1;
- }
- }
-
- /**
- * A {@link DoFn} which creates {@link IsmRecord}s comparing successive elements windows
- * to locate the window boundaries. The {@link IsmRecord} has:
- * <ul>
- * <li>Key 1: Window</li>
- * <li>Key 2: Index offset within window</li>
- * <li>Value: Windowed value</li>
- * </ul>
- */
- @SystemDoFnInternal
- static class ToIsmRecordForNonGlobalWindowDoFn<T, W extends BoundedWindow>
- extends DoFn<KV<Integer, Iterable<KV<W, WindowedValue<T>>>>,
- IsmRecord<WindowedValue<T>>> {
-
- private final Coder<W> windowCoder;
- ToIsmRecordForNonGlobalWindowDoFn(Coder<W> windowCoder) {
- this.windowCoder = windowCoder;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- long elementsInWindow = 0;
- Optional<Object> previousWindowStructuralValue = Optional.absent();
- for (KV<W, WindowedValue<T>> value : c.element().getValue()) {
- Object currentWindowStructuralValue = windowCoder.structuralValue(value.getKey());
- // Compare to see if this is a new window so we can reset the index counter i
- if (previousWindowStructuralValue.isPresent()
- && !previousWindowStructuralValue.get().equals(currentWindowStructuralValue)) {
- // Reset i since we have a new window.
- elementsInWindow = 0;
- }
- c.output(IsmRecord.of(
- ImmutableList.of(value.getKey(), elementsInWindow),
- value.getValue()));
- previousWindowStructuralValue = Optional.of(currentWindowStructuralValue);
- elementsInWindow += 1;
- }
- }
- }
-
- private final DataflowPipelineRunner runner;
- /**
- * Builds an instance of this class from the overridden transform.
- */
- @SuppressWarnings("unused") // used via reflection in DataflowPipelineRunner#apply()
- public BatchViewAsList(DataflowPipelineRunner runner, View.AsList<T> transform) {
- this.runner = runner;
- }
-
- @Override
- public PCollectionView<List<T>> apply(PCollection<T> input) {
- PCollectionView<List<T>> view = PCollectionViews.listView(
- input.getPipeline(), input.getWindowingStrategy(), input.getCoder());
- return applyForIterableLike(runner, input, view);
- }
-
- static <T, W extends BoundedWindow, ViewT> PCollectionView<ViewT> applyForIterableLike(
- DataflowPipelineRunner runner,
- PCollection<T> input,
- PCollectionView<ViewT> view) {
-
- @SuppressWarnings("unchecked")
- Coder<W> windowCoder = (Coder<W>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
-
- IsmRecordCoder<WindowedValue<T>> ismCoder = coderForListLike(windowCoder, input.getCoder());
-
- // If we are working in the global window, we do not need to do a GBK using the window
- // as the key since all the elements of the input PCollection are already such.
- // We just reify the windowed value while converting them to IsmRecords and generating
- // an index based upon where we are within the bundle. Each bundle
- // maps to one file exactly.
- if (input.getWindowingStrategy().getWindowFn() instanceof GlobalWindows) {
- PCollection<IsmRecord<WindowedValue<T>>> reifiedPerWindowAndSorted =
- input.apply(ParDo.of(new ToIsmRecordForGlobalWindowDoFn<T>()));
- reifiedPerWindowAndSorted.setCoder(ismCoder);
-
- runner.addPCollectionRequiringIndexedFormat(reifiedPerWindowAndSorted);
- return reifiedPerWindowAndSorted.apply(
- CreatePCollectionView.<IsmRecord<WindowedValue<T>>, ViewT>of(view));
- }
-
- PCollection<IsmRecord<WindowedValue<T>>> reifiedPerWindowAndSorted = input
- .apply(new GroupByWindowHashAsKeyAndWindowAsSortKey<T, W>(ismCoder))
- .apply(ParDo.of(new ToIsmRecordForNonGlobalWindowDoFn<T, W>(windowCoder)));
- reifiedPerWindowAndSorted.setCoder(ismCoder);
-
- runner.addPCollectionRequiringIndexedFormat(reifiedPerWindowAndSorted);
- return reifiedPerWindowAndSorted.apply(
- CreatePCollectionView.<IsmRecord<WindowedValue<T>>, ViewT>of(view));
- }
-
- @Override
- protected String getKindString() {
- return "BatchViewAsList";
- }
-
- static <T> IsmRecordCoder<WindowedValue<T>> coderForListLike(
- Coder<? extends BoundedWindow> windowCoder, Coder<T> valueCoder) {
- // TODO: swap to use a variable length long coder which has values which compare
- // the same as their byte representation compare lexicographically within the key coder
- return IsmRecordCoder.of(
- 1, // We hash using only the window
- 0, // There are no metadata records
- ImmutableList.of(windowCoder, BigEndianLongCoder.of()),
- FullWindowedValueCoder.of(valueCoder, windowCoder));
- }
- }
-
- /**
- * Specialized implementation for
- * {@link org.apache.beam.sdk.transforms.View.AsMap View.AsMap} for the
- * Dataflow runner in batch mode.
- *
- * <p>Creates a set of {@code Ism} files sharded by the hash of the key's byte
- * representation. Each record is structured as follows:
- * <ul>
- * <li>Key 1: User key K</li>
- * <li>Key 2: Window</li>
- * <li>Key 3: 0L (constant)</li>
- * <li>Value: Windowed value</li>
- * </ul>
- *
- * <p>Alongside the data records, there are the following metadata records:
- * <ul>
- * <li>Key 1: Metadata Key</li>
- * <li>Key 2: Window</li>
- * <li>Key 3: Index [0, size of map]</li>
- * <li>Value: variable length long byte representation of size of map if index is 0,
- * otherwise the byte representation of a key</li>
- * </ul>
- * The {@code [META, Window, 0]} record stores the number of unique keys per window, while
- * {@code [META, Window, i]} for {@code i} in {@code [1, size of map]} stores a the users key.
- * This allows for one to access the size of the map by looking at {@code [META, Window, 0]}
- * and iterate over all the keys by accessing {@code [META, Window, i]} for {@code i} in
- * {@code [1, size of map]}.
- *
- * <p>Note that in the case of a non-deterministic key coder, we fallback to using
- * {@link org.apache.beam.sdk.transforms.View.AsSingleton View.AsSingleton} printing
- * a warning to users to specify a deterministic key coder.
- */
- static class BatchViewAsMap<K, V>
- extends PTransform<PCollection<KV<K, V>>, PCollectionView<Map<K, V>>> {
-
- /**
- * A {@link DoFn} which groups elements by window boundaries. For each group,
- * the group of elements is transformed into a {@link TransformedMap}.
- * The transformed {@code Map<K, V>} is backed by a {@code Map<K, WindowedValue<V>>}
- * and contains a function {@code WindowedValue<V> -> V}.
- *
- * <p>Outputs {@link IsmRecord}s having:
- * <ul>
- * <li>Key 1: Window</li>
- * <li>Value: Transformed map containing a transform that removes the encapsulation
- * of the window around each value,
- * {@code Map<K, WindowedValue<V>> -> Map<K, V>}.</li>
- * </ul>
- */
- static class ToMapDoFn<K, V, W extends BoundedWindow>
- extends DoFn<KV<Integer, Iterable<KV<W, WindowedValue<KV<K, V>>>>>,
- IsmRecord<WindowedValue<TransformedMap<K,
- WindowedValue<V>,
- V>>>> {
-
- private final Coder<W> windowCoder;
- ToMapDoFn(Coder<W> windowCoder) {
- this.windowCoder = windowCoder;
- }
-
- @Override
- public void processElement(ProcessContext c)
- throws Exception {
- Optional<Object> previousWindowStructuralValue = Optional.absent();
- Optional<W> previousWindow = Optional.absent();
- Map<K, WindowedValue<V>> map = new HashMap<>();
- for (KV<W, WindowedValue<KV<K, V>>> kv : c.element().getValue()) {
- Object currentWindowStructuralValue = windowCoder.structuralValue(kv.getKey());
- if (previousWindowStructuralValue.isPresent()
- && !previousWindowStructuralValue.get().equals(currentWindowStructuralValue)) {
- // Construct the transformed map containing all the elements since we
- // are at a window boundary.
- c.output(IsmRecord.of(
- ImmutableList.of(previousWindow.get()),
- valueInEmptyWindows(new TransformedMap<>(WindowedValueToValue.<V>of(), map))));
- map = new HashMap<>();
- }
-
- // Verify that the user isn't trying to insert the same key multiple times.
- checkState(!map.containsKey(kv.getValue().getValue().getKey()),
- "Multiple values [%s, %s] found for single key [%s] within window [%s].",
- map.get(kv.getValue().getValue().getKey()),
- kv.getValue().getValue().getValue(),
- kv.getKey());
- map.put(kv.getValue().getValue().getKey(),
- kv.getValue().withValue(kv.getValue().getValue().getValue()));
- previousWindowStructuralValue = Optional.of(currentWindowStructuralValue);
- previousWindow = Optional.of(kv.getKey());
- }
-
- // The last value for this hash is guaranteed to be at a window boundary
- // so we output a transformed map containing all the elements since the last
- // window boundary.
- c.output(IsmRecord.of(
- ImmutableList.of(previousWindow.get()),
- valueInEmptyWindows(new TransformedMap<>(WindowedValueToValue.<V>of(), map))));
- }
- }
-
- private final DataflowPipelineRunner runner;
- /**
- * Builds an instance of this class from the overridden transform.
- */
- @SuppressWarnings("unused") // used via reflection in DataflowPipelineRunner#apply()
- public BatchViewAsMap(DataflowPipelineRunner runner, View.AsMap<K, V> transform) {
- this.runner = runner;
- }
-
- @Override
- public PCollectionView<Map<K, V>> apply(PCollection<KV<K, V>> input) {
- return this.<BoundedWindow>applyInternal(input);
- }
-
- private <W extends BoundedWindow> PCollectionView<Map<K, V>>
- applyInternal(PCollection<KV<K, V>> input) {
-
- @SuppressWarnings({"rawtypes", "unchecked"})
- KvCoder<K, V> inputCoder = (KvCoder) input.getCoder();
- try {
- PCollectionView<Map<K, V>> view = PCollectionViews.mapView(
- input.getPipeline(), input.getWindowingStrategy(), inputCoder);
- return BatchViewAsMultimap.applyForMapLike(runner, input, view, true /* unique keys */);
- } catch (NonDeterministicException e) {
- runner.recordViewUsesNonDeterministicKeyCoder(this);
-
- // Since the key coder is not deterministic, we convert the map into a singleton
- // and return a singleton view equivalent.
- return applyForSingletonFallback(input);
- }
- }
-
- @Override
- protected String getKindString() {
- return "BatchViewAsMap";
- }
-
- /** Transforms the input {@link PCollection} into a singleton {@link Map} per window. */
- private <W extends BoundedWindow> PCollectionView<Map<K, V>>
- applyForSingletonFallback(PCollection<KV<K, V>> input) {
- @SuppressWarnings("unchecked")
- Coder<W> windowCoder = (Coder<W>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
-
- @SuppressWarnings({"rawtypes", "unchecked"})
- KvCoder<K, V> inputCoder = (KvCoder) input.getCoder();
-
- @SuppressWarnings({"unchecked", "rawtypes"})
- Coder<Function<WindowedValue<V>, V>> transformCoder =
- (Coder) SerializableCoder.of(WindowedValueToValue.class);
-
- Coder<TransformedMap<K, WindowedValue<V>, V>> finalValueCoder =
- TransformedMapCoder.of(
- transformCoder,
- MapCoder.of(
- inputCoder.getKeyCoder(),
- FullWindowedValueCoder.of(inputCoder.getValueCoder(), windowCoder)));
-
- TransformedMap<K, WindowedValue<V>, V> defaultValue = new TransformedMap<>(
- WindowedValueToValue.<V>of(),
- ImmutableMap.<K, WindowedValue<V>>of());
-
- return BatchViewAsSingleton.<KV<K, V>,
- TransformedMap<K, WindowedValue<V>, V>,
- Map<K, V>,
- W> applyForSingleton(
- runner,
- input,
- new ToMapDoFn<K, V, W>(windowCoder),
- true,
- defaultValue,
- finalValueCoder);
- }
- }
-
- /**
- * Specialized implementation for
- * {@link org.apache.beam.sdk.transforms.View.AsMultimap View.AsMultimap} for the
- * Dataflow runner in batch mode.
- *
- * <p>Creates a set of {@code Ism} files sharded by the hash of the key's byte
- * representation. Each record is structured as follows:
- * <ul>
- * <li>Key 1: User key K</li>
- * <li>Key 2: Window</li>
- * <li>Key 3: Index offset for a given key and window.</li>
- * <li>Value: Windowed value</li>
- * </ul>
- *
- * <p>Alongside the data records, there are the following metadata records:
- * <ul>
- * <li>Key 1: Metadata Key</li>
- * <li>Key 2: Window</li>
- * <li>Key 3: Index [0, size of map]</li>
- * <li>Value: variable length long byte representation of size of map if index is 0,
- * otherwise the byte representation of a key</li>
- * </ul>
- * The {@code [META, Window, 0]} record stores the number of unique keys per window, while
- * {@code [META, Window, i]} for {@code i} in {@code [1, size of map]} stores a the users key.
- * This allows for one to access the size of the map by looking at {@code [META, Window, 0]}
- * and iterate over all the keys by accessing {@code [META, Window, i]} for {@code i} in
- * {@code [1, size of map]}.
- *
- * <p>Note that in the case of a non-deterministic key coder, we fallback to using
- * {@link org.apache.beam.sdk.transforms.View.AsSingleton View.AsSingleton} printing
- * a warning to users to specify a deterministic key coder.
- */
- static class BatchViewAsMultimap<K, V>
- extends PTransform<PCollection<KV<K, V>>, PCollectionView<Map<K, Iterable<V>>>> {
- /**
- * A {@link PTransform} that groups elements by the hash of window's byte representation
- * if the input {@link PCollection} is not within the global window. Otherwise by the hash
- * of the window and key's byte representation. This {@link PTransform} also sorts
- * the values by the combination of the window and key's byte representations.
- */
- private static class GroupByKeyHashAndSortByKeyAndWindow<K, V, W extends BoundedWindow>
- extends PTransform<PCollection<KV<K, V>>,
- PCollection<KV<Integer, Iterable<KV<KV<K, W>, WindowedValue<V>>>>>> {
-
- @SystemDoFnInternal
- private static class GroupByKeyHashAndSortByKeyAndWindowDoFn<K, V, W>
- extends DoFn<KV<K, V>, KV<Integer, KV<KV<K, W>, WindowedValue<V>>>>
- implements DoFn.RequiresWindowAccess {
-
- private final IsmRecordCoder<?> coder;
- private GroupByKeyHashAndSortByKeyAndWindowDoFn(IsmRecordCoder<?> coder) {
- this.coder = coder;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- @SuppressWarnings("unchecked")
- W window = (W) c.window();
-
- c.output(
- KV.of(coder.hash(ImmutableList.of(c.element().getKey())),
- KV.of(KV.of(c.element().getKey(), window),
- WindowedValue.of(
- c.element().getValue(),
- c.timestamp(),
- (BoundedWindow) window,
- c.pane()))));
- }
- }
-
- private final IsmRecordCoder<?> coder;
- public GroupByKeyHashAndSortByKeyAndWindow(IsmRecordCoder<?> coder) {
- this.coder = coder;
- }
-
- @Override
- public PCollection<KV<Integer, Iterable<KV<KV<K, W>, WindowedValue<V>>>>>
- apply(PCollection<KV<K, V>> input) {
-
- @SuppressWarnings("unchecked")
- Coder<W> windowCoder = (Coder<W>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
- @SuppressWarnings("unchecked")
- KvCoder<K, V> inputCoder = (KvCoder<K, V>) input.getCoder();
-
- PCollection<KV<Integer, KV<KV<K, W>, WindowedValue<V>>>> keyedByHash;
- keyedByHash = input.apply(
- ParDo.of(new GroupByKeyHashAndSortByKeyAndWindowDoFn<K, V, W>(coder)));
- keyedByHash.setCoder(
- KvCoder.of(
- VarIntCoder.of(),
- KvCoder.of(KvCoder.of(inputCoder.getKeyCoder(), windowCoder),
- FullWindowedValueCoder.of(inputCoder.getValueCoder(), windowCoder))));
-
- return keyedByHash.apply(
- new GroupByKeyAndSortValuesOnly<Integer, KV<K, W>, WindowedValue<V>>());
- }
- }
-
- /**
- * A {@link DoFn} which creates {@link IsmRecord}s comparing successive elements windows
- * and keys to locate window and key boundaries. The main output {@link IsmRecord}s have:
- * <ul>
- * <li>Key 1: Window</li>
- * <li>Key 2: User key K</li>
- * <li>Key 3: Index offset for a given key and window.</li>
- * <li>Value: Windowed value</li>
- * </ul>
- *
- * <p>Additionally, we output all the unique keys per window seen to {@code outputForEntrySet}
- * and the unique key count per window to {@code outputForSize}.
- *
- * <p>Finally, if this DoFn has been requested to perform unique key checking, it will
- * throw an {@link IllegalStateException} if more than one key per window is found.
- */
- static class ToIsmRecordForMapLikeDoFn<K, V, W extends BoundedWindow>
- extends DoFn<KV<Integer, Iterable<KV<KV<K, W>, WindowedValue<V>>>>,
- IsmRecord<WindowedValue<V>>> {
-
- private final TupleTag<KV<Integer, KV<W, Long>>> outputForSize;
- private final TupleTag<KV<Integer, KV<W, K>>> outputForEntrySet;
- private final Coder<W> windowCoder;
- private final Coder<K> keyCoder;
- private final IsmRecordCoder<WindowedValue<V>> ismCoder;
- private final boolean uniqueKeysExpected;
- ToIsmRecordForMapLikeDoFn(
- TupleTag<KV<Integer, KV<W, Long>>> outputForSize,
- TupleTag<KV<Integer, KV<W, K>>> outputForEntrySet,
- Coder<W> windowCoder,
- Coder<K> keyCoder,
- IsmRecordCoder<WindowedValue<V>> ismCoder,
- boolean uniqueKeysExpected) {
- this.outputForSize = outputForSize;
- this.outputForEntrySet = outputForEntrySet;
- this.windowCoder = windowCoder;
- this.keyCoder = keyCoder;
- this.ismCoder = ismCoder;
- this.uniqueKeysExpected = uniqueKeysExpected;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- long currentKeyIndex = 0;
- // We use one based indexing while counting
- long currentUniqueKeyCounter = 1;
- Iterator<KV<KV<K, W>, WindowedValue<V>>> iterator = c.element().getValue().iterator();
-
- KV<KV<K, W>, WindowedValue<V>> currentValue = iterator.next();
- Object currentKeyStructuralValue =
- keyCoder.structuralValue(currentValue.getKey().getKey());
- Object currentWindowStructuralValue =
- windowCoder.structuralValue(currentValue.getKey().getValue());
-
- while (iterator.hasNext()) {
- KV<KV<K, W>, WindowedValue<V>> nextValue = iterator.next();
- Object nextKeyStructuralValue =
- keyCoder.structuralValue(nextValue.getKey().getKey());
- Object nextWindowStructuralValue =
- windowCoder.structuralValue(nextValue.getKey().getValue());
-
- outputDataRecord(c, currentValue, currentKeyIndex);
-
- final long nextKeyIndex;
- final long nextUniqueKeyCounter;
-
- // Check to see if its a new window
- if (!currentWindowStructuralValue.equals(nextWindowStructuralValue)) {
- // The next value is a new window, so we output for size the number of unique keys
- // seen and the last key of the window. We also reset the next key index the unique
- // key counter.
- outputMetadataRecordForSize(c, currentValue, currentUniqueKeyCounter);
- outputMetadataRecordForEntrySet(c, currentValue);
-
- nextKeyIndex = 0;
- nextUniqueKeyCounter = 1;
- } else if (!currentKeyStructuralValue.equals(nextKeyStructuralValue)){
- // It is a new key within the same window so output the key for the entry set,
- // reset the key index and increase the count of unique keys seen within this window.
- outputMetadataRecordForEntrySet(c, currentValue);
-
- nextKeyIndex = 0;
- nextUniqueKeyCounter = currentUniqueKeyCounter + 1;
- } else if (!uniqueKeysExpected) {
- // It is not a new key so we don't have to output the number of elements in this
- // window or increase the unique key counter. All we do is increase the key index.
-
- nextKeyIndex = currentKeyIndex + 1;
- nextUniqueKeyCounter = currentUniqueKeyCounter;
- } else {
- throw new IllegalStateException(String.format(
- "Unique keys are expected but found key %s with values %s and %s in window %s.",
- currentValue.getKey().getKey(),
- currentValue.getValue().getValue(),
- nextValue.getValue().getValue(),
- currentValue.getKey().getValue()));
- }
-
- currentValue = nextValue;
- currentWindowStructuralValue = nextWindowStructuralValue;
- currentKeyStructuralValue = nextKeyStructuralValue;
- currentKeyIndex = nextKeyIndex;
- currentUniqueKeyCounter = nextUniqueKeyCounter;
- }
-
- outputDataRecord(c, currentValue, currentKeyIndex);
- outputMetadataRecordForSize(c, currentValue, currentUniqueKeyCounter);
- // The last value for this hash is guaranteed to be at a window boundary
- // so we output a record with the number of unique keys seen.
- outputMetadataRecordForEntrySet(c, currentValue);
- }
-
- /** This outputs the data record. */
- private void outputDataRecord(
- ProcessContext c, KV<KV<K, W>, WindowedValue<V>> value, long keyIndex) {
- IsmRecord<WindowedValue<V>> ismRecord = IsmRecord.of(
- ImmutableList.of(
- value.getKey().getKey(),
- value.getKey().getValue(),
- keyIndex),
- value.getValue());
- c.output(ismRecord);
- }
-
- /**
- * This outputs records which will be used to compute the number of keys for a given window.
- */
- private void outputMetadataRecordForSize(
- ProcessContext c, KV<KV<K, W>, WindowedValue<V>> value, long uniqueKeyCount) {
- c.sideOutput(outputForSize,
- KV.of(ismCoder.hash(ImmutableList.of(IsmFormat.getMetadataKey(),
- value.getKey().getValue())),
- KV.of(value.getKey().getValue(), uniqueKeyCount)));
- }
-
- /** This outputs records which will be used to construct the entry set. */
- private void outputMetadataRecordForEntrySet(
- ProcessContext c, KV<KV<K, W>, WindowedValue<V>> value) {
- c.sideOutput(outputForEntrySet,
- KV.of(ismCoder.hash(ImmutableList.of(IsmFormat.getMetadataKey(),
- value.getKey().getValue())),
- KV.of(value.getKey().getValue(), value.getKey().getKey())));
- }
- }
-
- /**
- * A {@link DoFn} which outputs a metadata {@link IsmRecord} per window of:
- * <ul>
- * <li>Key 1: META key</li>
- * <li>Key 2: window</li>
- * <li>Key 3: 0L (constant)</li>
- * <li>Value: sum of values for window</li>
- * </ul>
- *
- * <p>This {@link DoFn} is meant to be used to compute the number of unique keys
- * per window for map and multimap side inputs.
- */
- static class ToIsmMetadataRecordForSizeDoFn<K, V, W extends BoundedWindow>
- extends DoFn<KV<Integer, Iterable<KV<W, Long>>>, IsmRecord<WindowedValue<V>>> {
- private final Coder<W> windowCoder;
- ToIsmMetadataRecordForSizeDoFn(Coder<W> windowCoder) {
- this.windowCoder = windowCoder;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- Iterator<KV<W, Long>> iterator = c.element().getValue().iterator();
- KV<W, Long> currentValue = iterator.next();
- Object currentWindowStructuralValue = windowCoder.structuralValue(currentValue.getKey());
- long size = 0;
- while (iterator.hasNext()) {
- KV<W, Long> nextValue = iterator.next();
- Object nextWindowStructuralValue = windowCoder.structuralValue(nextValue.getKey());
-
- size += currentValue.getValue();
- if (!currentWindowStructuralValue.equals(nextWindowStructuralValue)) {
- c.output(IsmRecord.<WindowedValue<V>>meta(
- ImmutableList.of(IsmFormat.getMetadataKey(), currentValue.getKey(), 0L),
- CoderUtils.encodeToByteArray(VarLongCoder.of(), size)));
- size = 0;
- }
-
- currentValue = nextValue;
- currentWindowStructuralValue = nextWindowStructuralValue;
- }
-
- size += currentValue.getValue();
- // Output the final value since it is guaranteed to be on a window boundary.
- c.output(IsmRecord.<WindowedValue<V>>meta(
- ImmutableList.of(IsmFormat.getMetadataKey(), currentValue.getKey(), 0L),
- CoderUtils.encodeToByteArray(VarLongCoder.of(), size)));
- }
- }
-
- /**
- * A {@link DoFn} which outputs a metadata {@link IsmRecord} per window and key pair of:
- * <ul>
- * <li>Key 1: META key</li>
- * <li>Key 2: window</li>
- * <li>Key 3: index offset (1-based index)</li>
- * <li>Value: key</li>
- * </ul>
- *
- * <p>This {@link DoFn} is meant to be used to output index to key records
- * per window for map and multimap side inputs.
- */
- static class ToIsmMetadataRecordForKeyDoFn<K, V, W extends BoundedWindow>
- extends DoFn<KV<Integer, Iterable<KV<W, K>>>, IsmRecord<WindowedValue<V>>> {
-
- private final Coder<K> keyCoder;
- private final Coder<W> windowCoder;
- ToIsmMetadataRecordForKeyDoFn(Coder<K> keyCoder, Coder<W> windowCoder) {
- this.keyCoder = keyCoder;
- this.windowCoder = windowCoder;
- }
-
- @Override
- public void processElement(ProcessContext c) throws Exception {
- Iterator<KV<W, K>> iterator = c.element().getValue().iterator();
- KV<W, K> currentValue = iterator.next();
- Object currentWindowStructuralValue = windowCoder.structuralValue(currentValue.getKey());
- long elementsInWindow = 1;
- while (iterator.hasNext()) {
- KV<W, K> nextValue = iterator.next();
- Object nextWindowStructuralValue = windowCoder.structuralValue(nextValue.getKey());
-
- c.output(IsmRecord.<WindowedValue<V>>meta(
- ImmutableList.of(IsmFormat.getMetadataKey(), currentValue.getKey(), elementsInWindow),
- CoderUtils.encodeToByteArray(keyCoder, currentValue.getValue())));
- elementsInWindow += 1;
-
- if (!currentWindowStructuralValue.equals(nextWindowStructuralValue)) {
- elementsInWindow = 1;
- }
-
- currentValue = nextValue;
- currentWindowStructuralValue = nextWindowStructuralValue;
- }
-
- // Output the final value since it is guaranteed to be on a window boundary.
- c.output(IsmRecord.<WindowedValue<V>>meta(
- ImmutableList.of(IsmFormat.getMetadataKey(), currentValue.getKey(), elementsInWindow),
- CoderUtils.encodeToByteArray(keyCoder, currentValue.getValue())));
- }
- }
-
- /**
- * A {@link DoFn} which partitions sets of elements by window boundaries. Within each
- * partition, the set of elements is transformed into a {@link TransformedMap}.
- * The transformed {@code Map<K, Iterable<V>>} is backed by a
- * {@code Map<K, Iterable<WindowedValue<V>>>} and contains a function
- * {@code Iterable<WindowedValue<V>> -> Iterable<V>}.
- *
- * <p>Outputs {@link IsmRecord}s having:
- * <ul>
- * <li>Key 1: Window</li>
- * <li>Value: Transformed map containing a transform that removes the encapsulation
- * of the window around each value,
- * {@code Map<K, Iterable<WindowedValue<V>>> -> Map<K, Iterable<V>>}.</li>
- * </ul>
- */
- static class ToMultimapDoFn<K, V, W extends BoundedWindow>
- extends DoFn<KV<Integer, Iterable<KV<W, WindowedValue<KV<K, V>>>>>,
- IsmRecord<WindowedValue<TransformedMap<K,
- Iterable<WindowedValue<V>>,
- Iterable<V>>>>> {
-
- private final Coder<W> windowCoder;
- ToMultimapDoFn(Coder<W> windowCoder) {
- this.windowCoder = windowCoder;
- }
-
- @Override
- public void processElement(ProcessContext c)
- throws Exception {
- Optional<Object> previousWindowStructuralValue = Optional.absent();
- Optional<W> previousWindow = Optional.absent();
- Multimap<K, WindowedValue<V>> multimap = HashMultimap.create();
- for (KV<W, WindowedValue<KV<K, V>>> kv : c.element().getValue()) {
- Object currentWindowStructuralValue = windowCoder.structuralValue(kv.getKey());
- if (previousWindowStructuralValue.isPresent()
- && !previousWindowStructuralValue.get().equals(currentWindowStructuralValue)) {
- // Construct the transformed map containing all the elements since we
- // are at a window boundary.
- @SuppressWarnings({"unchecked", "rawtypes"})
- Map<K, Iterable<WindowedValue<V>>> resultMap = (Map) multimap.asMap();
- c.output(IsmRecord.<WindowedValue<TransformedMap<K,
- Iterable<WindowedValue<V>>,
- Iterable<V>>>>of(
- ImmutableList.of(previousWindow.get()),
- valueInEmptyWindows(
- new TransformedMap<>(
- IterableWithWindowedValuesToIterable.<V>of(), resultMap))));
- multimap = HashMultimap.create();
- }
-
- multimap.put(kv.getValue().getValue().getKey(),
- kv.getValue().withValue(kv.getValue().getValue().getValue()));
- previousWindowStructuralValue = Optional.of(currentWindowStructuralValue);
- previousWindow = Optional.of(kv.getKey());
- }
-
- // The last value for this hash is guaranteed to be at a window boundary
- // so we output a transformed map containing all the elements since the last
- // window boundary.
- @SuppressWarnings({"unchecked", "rawtypes"})
- Map<K, Iterable<WindowedValue<V>>> resultMap = (Map) multimap.asMap();
- c.output(IsmRecord.<WindowedValue<TransformedMap<K,
- Iterable<WindowedValue<V>>,
- Iterable<V>>>>of(
- ImmutableList.of(previousWindow.get()),
- valueInEmptyWindows(
- new TransformedMap<>(IterableWithWindowedValuesToIterable.<V>of(), resultMap))));
- }
- }
-
- private final DataflowPipelineRunner runner;
- /**
- * Builds an instance of this class from the overridden transform.
- */
- @SuppressWarnings("unused") // used via reflection in DataflowPipelineRunner#apply()
- public BatchViewAsMultimap(DataflowPipelineRunner runner, View.AsMultimap<K, V> transform) {
- this.runner = runner;
- }
-
- @Override
- public PCollectionView<Map<K, Iterable<V>>> apply(PCollection<KV<K, V>> input) {
- return this.<BoundedWindow>applyInternal(input);
- }
-
- private <W extends BoundedWindow> PCollectionView<Map<K, Iterable<V>>>
- applyInternal(PCollection<KV<K, V>> input) {
- @SuppressWarnings({"rawtypes", "unchecked"})
- KvCoder<K, V> inputCoder = (KvCoder) input.getCoder();
- try {
- PCollectionView<Map<K, Iterable<V>>> view = PCollectionViews.multimapView(
- input.getPipeline(), input.getWindowingStrategy(), inputCoder);
-
- return applyForMapLike(runner, input, view, false /* unique keys not expected */);
- } catch (NonDeterministicException e) {
- runner.recordViewUsesNonDeterministicKeyCoder(this);
-
- // Since the key coder is not deterministic, we convert the map into a singleton
- // and return a singleton view equivalent.
- return applyForSingletonFallback(input);
- }
- }
-
- /** Transforms the input {@link PCollection} into a singleton {@link Map} per window. */
- private <W extends BoundedWindow> PCollectionView<Map<K, Iterable<V>>>
- applyForSingletonFallback(PCollection<KV<K, V>> input) {
- @SuppressWarnings("unchecked")
- Coder<W> windowCoder = (Coder<W>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
-
- @SuppressWarnings({"rawtypes", "unchecked"})
- KvCoder<K, V> inputCoder = (KvCoder) input.getCoder();
-
- @SuppressWarnings({"unchecked", "rawtypes"})
- Coder<Function<Iterable<WindowedValue<V>>, Iterable<V>>> transformCoder =
- (Coder) SerializableCoder.of(IterableWithWindowedValuesToIterable.class);
-
- Coder<TransformedMap<K, Iterable<WindowedValue<V>>, Iterable<V>>> finalValueCoder =
- TransformedMapCoder.of(
- transformCoder,
- MapCoder.of(
- inputCoder.getKeyCoder(),
- IterableCoder.of(
- FullWindowedValueCoder.of(inputCoder.getValueCoder(), windowCoder))));
-
- TransformedMap<K, Iterable<WindowedValue<V>>, Iterable<V>> defaultValue =
- new TransformedMap<>(
- IterableWithWindowedValuesToIterable.<V>of(),
- ImmutableMap.<K, Iterable<WindowedValue<V>>>of());
-
- return BatchViewAsSingleton.<KV<K, V>,
- TransformedMap<K, Iterable<WindowedValue<V>>, Iterable<V>>,
- Map<K, Iterable<V>>,
- W> applyForSingleton(
- runner,
- input,
- new ToMultimapDoFn<K, V, W>(windowCoder),
- true,
- defaultValue,
- finalValueCoder);
- }
-
- private static <K, V, W extends BoundedWindow, ViewT> PCollectionView<ViewT> applyForMapLike(
- DataflowPipelineRunner runner,
- PCollection<KV<K, V>> input,
- PCollectionView<ViewT> view,
- boolean uniqueKeysExpected) throws NonDeterministicException {
-
- @SuppressWarnings("unchecked")
- Coder<W> windowCoder = (Coder<W>)
- input.getWindowingStrategy().getWindowFn().windowCoder();
-
- @SuppressWarnings({"rawtypes", "unchecked"})
- KvCoder<K, V> inputCoder = (KvCoder) input.getCoder();
-
- // If our key coder is deterministic, we can use the key portion of each KV
- // part of a composite key containing the window , key and index.
- inputCoder.getKeyCoder().verifyDeterministic();
-
- IsmRecordCoder<WindowedValue<V>> ismCoder =
- coderForMapLike(windowCoder, inputCoder.getKeyCoder(), inputCoder.getValueCoder());
-
- // Create the various output tags representing the main output containing the data stream
- // and the side outputs containing the metadata about the size and entry set.
- TupleTag<IsmRecord<WindowedValue<V>>> mainOutputTag = new TupleTag<>();
- TupleTag<KV<Integer, KV<W, Long>>> outputForSizeTag = new TupleTag<>();
- TupleTag<KV<Integer, KV<W, K>>> outputForEntrySetTag = new TupleTag<>();
-
- // Process all the elements grouped by key hash, and sorted by key and then window
- // outputting to all the outputs defined above.
- PCollectionTuple outputTuple = input
- .apply("GBKaSVForData", new GroupByKeyHashAndSortByKeyAndWindow<K, V, W>(ismCoder))
- .apply(ParDo.of(new ToIsmRecordForMapLikeDoFn<K, V, W>(
- outputForSizeTag, outputForEntrySetTag,
- windowCoder, inputCoder.getKeyCoder(), ismCoder, uniqueKeysExpected))
- .withOutputTags(mainOutputTag,
- TupleTagList.of(
- ImmutableList.<TupleTag<?>>of(outputForSizeTag,
- outputForEntrySetTag))));
-
- // Set the coder on the main data output.
- PCollection<IsmRecord<WindowedValue<V>>> perHashWithReifiedWindows =
- outputTuple.get(mainOutputTag);
- perHashWithReifiedWindows.setCoder(ismCoder);
-
- // Set the coder on the metadata output for size and process the entries
- // producing a [META, Window, 0L] record per window storing the number of unique keys
- // for each window.
- PCollection<KV<Integer, KV<W, Long>>> outputForSize = outputTuple.get(outputForSizeTag);
- outputForSize.setCoder(
- KvCoder.of(VarIntCoder.of(),
- KvCoder.of(windowCoder, VarLongCoder.of())));
- PCollection<IsmRecord<WindowedValue<V>>> windowMapSizeMetadata = outputForSize
- .apply("GBKaSVForSize", new GroupByKeyAndSortValuesOnly<Integer, W, Long>())
- .apply(ParDo.of(new ToIsmMetadataRecordForSizeDoFn<K, V, W>(windowCoder)));
- windowMapSizeMetadata.setCoder(ismCoder);
-
- // Set the coder on the metadata output destined to build the entry set and process the
- // entries producing a [META, Window, Index] record per window key pair storing the key.
- PCollection<KV<Integer, KV<W, K>>> outputForEntrySet =
- outputTuple.get(outputForEntrySetTag);
- outputForEntrySet.setCoder(
- KvCoder.of(VarIntCoder.of(),
- KvCoder.of(windowCoder, inputCoder.getKeyCoder())));
- PCollection<IsmRecord<WindowedValue<V>>> windowMapKeysMetadata = outputForEntrySet
- .apply("GBKaSVForKeys", new GroupByKeyAndSortValuesOnly<Integer, W, K>())
- .apply(ParDo.of(
- new ToIsmMetadataRecordForKeyDoFn<K, V, W>(inputCoder.getKeyCoder(), windowCoder)));
- windowMapKeysMetadata.setCoder(ismCoder);
-
- // Set that all these outputs should be materialized using an indexed format.
- runner.addPCollectionRequiringIndexedFormat(perHashWithReifiedWindows);
- runner.addPCollectionRequiringIndexedFormat(windowMapSizeMetadata);
- runner.addPCollectionRequiringIndexedFormat(windowMapKeysMetadata);
-
- PCollectionList<IsmRecord<WindowedValue<V>>> outputs =
- PCollectionList.of(ImmutableList.of(
- perHashWithReifiedWindows, windowMapSizeMetadata, windowMapKeysMetadata));
-
- return Pipeline.applyTransform(outputs,
- Flatten.<IsmRecord<WindowedValue<V>>>pCollections())
- .apply(CreatePCollectionView.<IsmRecord<WindowedValue<V>>,
- ViewT>of(view));
- }
-
- @Override
- protected String getKindString() {
- return "BatchViewAsMultimap";
- }
-
- static <V> IsmRecordCoder<WindowedValue<V>> coderForMapLike(
- Coder<? extends BoundedWindow> windowCoder, Coder<?> keyCoder, Coder<V> valueCoder) {
- // TODO: swap to use a variable length long coder which has values which compare
- // the same as their byte representation compare lexicographically within the key coder
- return IsmRecordCoder.of(
- 1, // We use only the key for hashing when producing value records
- 2, // Since the key is not present, we add the window to the hash when
- // producing metadata records
- ImmutableList.of(
- MetadataKeyCoder.of(keyCoder),
- windowCoder,
- BigEndianLongCoder.of()),
- FullWindowedValueCoder.of(valueCoder, windowCoder));
- }
- }
-
- /**
- * A {@code Map<K, V2>} backed by a {@code Map<K, V1>} and a function that transforms
- * {@code V1 -> V2}.
- */
- static class TransformedMap<K, V1, V2>
- extends ForwardingMap<K, V2> {
- private final Fu
<TRUNCATED>