org.apache.spark.Accumulator Java Examples
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org.apache.spark.Accumulator.
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Example #1
Source File: EntitySalienceFeatureExtractorSpark.java From ambiverse-nlu with Apache License 2.0 | 5 votes |
/** * Extract a DataFrame ready for training or testing. * @param jsc * @param documents * @param sqlContext * @return * @throws ResourceInitializationException */ public DataFrame extract(JavaSparkContext jsc, JavaRDD<SCAS> documents, SQLContext sqlContext) throws ResourceInitializationException { Accumulator<Integer> TOTAL_DOCS = jsc.accumulator(0, "TOTAL_DOCS"); Accumulator<Integer> SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "SALIENT_ENTITY_INSTANCES"); Accumulator<Integer> NON_SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "NON_SALIENT_ENTITY_INSTANCES"); TrainingSettings trainingSettings = getTrainingSettings(); FeatureExtractor fe = new NYTEntitySalienceFeatureExtractor(); final int featureVectorSize = FeatureSetFactory.createFeatureSet(TrainingSettings.FeatureExtractor.ENTITY_SALIENCE).getFeatureVectorSize(); JavaRDD<TrainingInstance> trainingInstances = documents.flatMap(s -> { TOTAL_DOCS.add(1); return fe.getTrainingInstances(s.getJCas(), trainingSettings.getFeatureExtractor(), trainingSettings.getPositiveInstanceScalingFactor()); }); StructType schema = new StructType(new StructField[]{ new StructField("docId", DataTypes.StringType, false, Metadata.empty() ), new StructField("entityId", DataTypes.StringType, false, Metadata.empty() ), new StructField("label", DataTypes.DoubleType, false, Metadata.empty() ), new StructField("features", new VectorUDT(), false, Metadata.empty()) }); JavaRDD<Row> withFeatures = trainingInstances.map(ti -> { if (ti.getLabel() == 1.0) { SALIENT_ENTITY_INSTANCES.add(1); } else { NON_SALIENT_ENTITY_INSTANCES.add(1); } Vector vei = FeatureValueInstanceUtils.convertToSparkMLVector(ti, featureVectorSize); return RowFactory.create(ti.getDocId(), ti.getEntityId(), ti.getLabel(), vei); }); return sqlContext.createDataFrame(withFeatures, schema); }
Example #2
Source File: AccumulatorValue.java From SparkDemo with MIT License | 5 votes |
public static void main(String[] args) { JavaSparkContext sc = SparkUtils.getLocalSparkContext(AccumulatorValue.class); // 创建累加器 final Accumulator<Integer> accumulator = sc.accumulator(0, "My Accumulator"); List<Integer> list = Arrays.asList(1, 2, 3, 4, 5, 6, 7, 8, 9, 10); JavaRDD<Integer> listRDD = sc.parallelize(list); listRDD.foreach(new VoidFunction<Integer>() { @Override public void call(Integer n) throws Exception { accumulator.add(n); // 不能读取,会报异常 cannot read, you will report an exception // System.out.println(accumulator.value()); } }); // 只能在Driver读取 System.out.println(accumulator.value()); try { Thread.sleep(5000*5000*5000); // http://192.168.68.1:4040 } catch (Exception e) { // TODO Auto-generated catch block e.printStackTrace(); } sc.close(); }
Example #3
Source File: RddChannel.java From rheem with Apache License 2.0 | 5 votes |
public void accept(JavaRDD<?> rdd, SparkExecutor sparkExecutor) throws RheemException { if (this.isMarkedForInstrumentation() && !this.isRddCached()) { final Accumulator<Integer> accumulator = sparkExecutor.sc.accumulator(0); this.rdd = rdd.filter(dataQuantum -> { accumulator.add(1); return true; }); this.accumulator = accumulator; } else { this.rdd = rdd; } }
Example #4
Source File: UtilHelpers.java From hudi with Apache License 2.0 | 5 votes |
public static int handleErrors(JavaSparkContext jsc, String instantTime, JavaRDD<WriteStatus> writeResponse) { Accumulator<Integer> errors = jsc.accumulator(0); writeResponse.foreach(writeStatus -> { if (writeStatus.hasErrors()) { errors.add(1); LOG.error(String.format("Error processing records :writeStatus:%s", writeStatus.getStat().toString())); } }); if (errors.value() == 0) { LOG.info(String.format("Table imported into hoodie with %s instant time.", instantTime)); return 0; } LOG.error(String.format("Import failed with %d errors.", errors.value())); return -1; }
Example #5
Source File: CountCumSum.java From deeplearning4j with Apache License 2.0 | 5 votes |
public void cumSumWithinPartition() { // Accumulator to get the max of the cumulative sum in each partition final Accumulator<Counter<Integer>> maxPerPartitionAcc = sc.accumulator(new Counter<Integer>(), new MaxPerPartitionAccumulator()); // Partition mapping to fold within partition foldWithinPartitionRDD = sentenceCountRDD .mapPartitionsWithIndex(new FoldWithinPartitionFunction(maxPerPartitionAcc), true).cache(); actionForMapPartition(foldWithinPartitionRDD); // Broadcast the counter (partition index : sum of count) to all workers broadcastedMaxPerPartitionCounter = sc.broadcast(maxPerPartitionAcc.value()); }
Example #6
Source File: TextPipeline.java From deeplearning4j with Apache License 2.0 | 5 votes |
public Accumulator<Counter<String>> getWordFreqAcc() { if (wordFreqAcc != null) { return wordFreqAcc; } else { throw new IllegalStateException("IllegalStateException: wordFreqAcc not set at TextPipline."); } }
Example #7
Source File: CountFunction.java From deeplearning4j with Apache License 2.0 | 5 votes |
public CountFunction(@NonNull Broadcast<VectorsConfiguration> vectorsConfigurationBroadcast, @NonNull Broadcast<VoidConfiguration> voidConfigurationBroadcast, @NonNull Accumulator<Counter<Long>> accumulator, boolean fetchLabels) { this.accumulator = accumulator; this.fetchLabels = fetchLabels; this.voidConfigurationBroadcast = voidConfigurationBroadcast; this.vectorsConfigurationBroadcast = vectorsConfigurationBroadcast; }
Example #8
Source File: EntitySalienceFeatureExtractorSpark.java From ambiverse-nlu with Apache License 2.0 | 4 votes |
/** * Extract features from set of documents. The documents are already annotated with entities. * @param jsc * @param documents * @return * @throws ResourceInitializationException */ public JavaRDD<LabeledPoint> extract (JavaSparkContext jsc, JavaRDD<SCAS> documents) throws ResourceInitializationException { Accumulator<Integer> TOTAL_DOCS = jsc.accumulator(0, "TOTAL_DOCS"); Accumulator<Integer> SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "SALIENT_ENTITY_INSTANCES"); Accumulator<Integer> NON_SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "NON_SALIENT_ENTITY_INSTANCES"); TrainingSettings trainingSettings = getTrainingSettings(); FeatureExtractor fe = new NYTEntitySalienceFeatureExtractor(); final int featureVectorSize = FeatureSetFactory.createFeatureSet(trainingSettings.getFeatureExtractor()).getFeatureVectorSize(); JavaRDD<TrainingInstance> trainingInstances = documents.flatMap(s -> { TOTAL_DOCS.add(1); return fe.getTrainingInstances(s.getJCas(), trainingSettings.getFeatureExtractor(), trainingSettings.getPositiveInstanceScalingFactor()); }); // Create a LabelPoint JavaRDD<LabeledPoint> labeledPoints = trainingInstances .map(ti -> { if (ti.getLabel() == 1.0) { SALIENT_ENTITY_INSTANCES.add(1); } else { NON_SALIENT_ENTITY_INSTANCES.add(1); } return FeatureValueInstanceUtils.convertToSparkMLLabeledPoint(ti, featureVectorSize); }); return labeledPoints; }
Example #9
Source File: EntitySalienceAnnotatorAndFeatureExtractorSpark.java From ambiverse-nlu with Apache License 2.0 | 4 votes |
/** * Annotated documents for entities and extract features from set of documents * @param jsc * @param documents * @return * @throws ResourceInitializationException */ public JavaRDD<LabeledPoint> extract (JavaSparkContext jsc, JavaRDD<SCAS> documents) throws ResourceInitializationException { Accumulator<Integer> TOTAL_DOCS = jsc.accumulator(0, "TOTAL_DOCS"); Accumulator<Integer> SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "SALIENT_ENTITY_INSTANCES"); Accumulator<Integer> NON_SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "NON_SALIENT_ENTITY_INSTANCES"); TrainingSettings trainingSettings = getTrainingSettings(); final SparkSerializableAnalysisEngine ae = EntitySalienceFactory.createEntitySalienceEntityAnnotator(trainingSettings.getEntitySalienceEntityAnnotator()); FeatureExtractor fe = new NYTEntitySalienceFeatureExtractor(); final int featureVectorSize = FeatureSetFactory.createFeatureSet(trainingSettings.getFeatureExtractor()).getFeatureVectorSize(); JavaRDD<TrainingInstance> trainingInstances = documents .map(s -> { TOTAL_DOCS.add(1); Logger tmpLogger = LoggerFactory.getLogger(EntitySalienceFeatureExtractorSpark.class); String docId = JCasUtil.selectSingle(s.getJCas(), DocumentMetaData.class).getDocumentId(); tmpLogger.info("Processing document {}.", docId); //Before processing the document through the Disambiguation Pipeline, add the AIDA settings // in each document. SparkUimaUtils.addSettingsToJCas(s.getJCas(), trainingSettings.getDocumentCoherent(), trainingSettings.getDocumentConfidenceThreshold()); return ae.process(s); }) .flatMap(s -> fe.getTrainingInstances(s.getJCas(), trainingSettings.getFeatureExtractor(), trainingSettings.getPositiveInstanceScalingFactor())); // Create a LabelPoint JavaRDD<LabeledPoint> labeledPoints = trainingInstances .map(ti -> { if (ti.getLabel() == 1.0) { SALIENT_ENTITY_INSTANCES.add(1); } else { NON_SALIENT_ENTITY_INSTANCES.add(1); } return FeatureValueInstanceUtils.convertToSparkMLLabeledPoint(ti, featureVectorSize); }); return labeledPoints; }
Example #10
Source File: EntitySalienceAnnotatorAndFeatureExtractorSpark.java From ambiverse-nlu with Apache License 2.0 | 4 votes |
/** * Extract a DataFrame ready for training or testing. * @param jsc * @param documents * @param sqlContext * @return * @throws ResourceInitializationException */ public DataFrame extract(JavaSparkContext jsc, JavaRDD<SCAS> documents, SQLContext sqlContext) throws ResourceInitializationException { Accumulator<Integer> TOTAL_DOCS = jsc.accumulator(0, "TOTAL_DOCS"); Accumulator<Integer> SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "SALIENT_ENTITY_INSTANCES"); Accumulator<Integer> NON_SALIENT_ENTITY_INSTANCES = jsc.accumulator(0, "NON_SALIENT_ENTITY_INSTANCES"); TrainingSettings trainingSettings = getTrainingSettings(); final SparkSerializableAnalysisEngine ae = EntitySalienceFactory.createEntitySalienceEntityAnnotator(trainingSettings.getEntitySalienceEntityAnnotator()); FeatureExtractor fe = new NYTEntitySalienceFeatureExtractor(); final int featureVectorSize = FeatureSetFactory.createFeatureSet(TrainingSettings.FeatureExtractor.ENTITY_SALIENCE).getFeatureVectorSize(); JavaRDD<TrainingInstance> trainingInstances = documents .map(s -> { TOTAL_DOCS.add(1); Logger tmpLogger = LoggerFactory.getLogger(EntitySalienceFeatureExtractorSpark.class); String docId = JCasUtil.selectSingle(s.getJCas(), DocumentMetaData.class).getDocumentId(); tmpLogger.info("Processing document {}.", docId); //Before processing the document through the Disambiguation Pipeline, add the AIDA settings // in each document. SparkUimaUtils.addSettingsToJCas(s.getJCas(), trainingSettings.getDocumentCoherent(), trainingSettings.getDocumentConfidenceThreshold()); return ae.process(s); }) .flatMap(s -> fe.getTrainingInstances(s.getJCas(), trainingSettings.getFeatureExtractor(), trainingSettings.getPositiveInstanceScalingFactor())); StructType schema = new StructType(new StructField[]{ new StructField("docId", DataTypes.StringType, false, Metadata.empty() ), new StructField("entity", DataTypes.StringType, false, Metadata.empty() ), new StructField("label", DataTypes.DoubleType, false, Metadata.empty() ), new StructField("features", new VectorUDT(), false, Metadata.empty()) }); JavaRDD<Row> withFeatures = trainingInstances.map(ti -> { if (ti.getLabel() == 1.0) { SALIENT_ENTITY_INSTANCES.add(1); } else { NON_SALIENT_ENTITY_INSTANCES.add(1); } Vector vei = FeatureValueInstanceUtils.convertToSparkMLVector(ti, featureVectorSize); return RowFactory.create(ti.getDocId(), ti.getEntityId(), ti.getLabel(), vei); }); return sqlContext.createDataFrame(withFeatures, schema); }
Example #11
Source File: UserVisitAnalyze.java From UserActionAnalyzePlatform with Apache License 2.0 | 4 votes |
public static void main(String[] args) { args=new String[]{"1"}; /** * 构建spark上下文 */ SparkConf conf=new SparkConf().setAppName(Constants.APP_NAME_SESSION).setMaster("local[3]"); JavaSparkContext context=new JavaSparkContext(conf); SQLContext sc=getSQLContext(context.sc()); //生成模拟数据 mock(context,sc); //拿到相应的Dao组建 TaskDao dao= DaoFactory.getTaskDao(); //从外部传入的参数获取任务的id Long taskId=ParamUtils.getTaskIdFromArgs(args); //从数据库中查询出相应的task Task task=dao.findTaskById(taskId); JSONObject jsonObject=JSONObject.parseObject(task.getTaskParam()); //获取指定范围内的Sesssion JavaRDD<Row> sessionRangeDate=getActionRDD(sc,jsonObject); //这里增加一个新的方法,主要是映射 JavaPairRDD<String,Row> sessionInfoPairRDD=getSessonInfoPairRDD(sessionRangeDate); //重复用到的RDD进行持久化 sessionInfoPairRDD.persist(StorageLevel.DISK_ONLY()); //上面的两个RDD是 //按照Sesson进行聚合 JavaPairRDD<String,String> sesssionAggregateInfoRDD=aggregateBySessionId(sc,sessionInfoPairRDD); //通过条件对RDD进行筛选 // 重构,同时统计 Accumulator<String> sessionAggrStatAccumulator=context.accumulator("",new SessionAggrStatAccumulator()); //在进行accumulator之前,需要aciton动作,不然会为空 JavaPairRDD<String,String> filteredSessionRDD=filterSessionAndAggrStat(sesssionAggregateInfoRDD,jsonObject,sessionAggrStatAccumulator); //重复用到的RDD进行持久化 filteredSessionRDD.persist(StorageLevel.DISK_ONLY()); //获取符合过滤条件的全信息公共RDD JavaPairRDD<String, Row> commonFullClickInfoRDD=getFilterFullInfoRDD(filteredSessionRDD,sessionInfoPairRDD); //重复用到的RDD进行持久化 commonFullClickInfoRDD.persist(StorageLevel.DISK_ONLY()); //session聚合统计,统计出访问时长和访问步长的各个区间所占的比例 /** * 重构实现的思路: * 1。不要去生成任何的新RDD * 2。不要去单独遍历一遍sesion的数据 * 3。可以在聚合数据的时候可以直接计算session的访问时长和访问步长 * 4。在以前的聚合操作中,可以在以前的基础上进行计算加上自己实现的Accumulator来进行一次性解决 * 开发Spark的经验准则 * 1。尽量少生成RDD * 2。尽量少对RDD进行蒜子操作,如果可能,尽量在一个算子里面,实现多个需求功能 * 3。尽量少对RDD进行shuffle算子操作,比如groupBykey、reduceBykey、sortByKey * shuffle操作,会导致大量的磁盘读写,严重降低性能 * 有shuffle的算子,和没有shuffle的算子,甚至性能相差极大 * 有shuffle的算子,很容易造成性能倾斜,一旦数据倾斜,简直就是性能杀手 * 4。无论做什么功能,性能第一 * 在大数据项目中,性能最重要。主要是大数据以及大数据项目的特点,决定了大数据的程序和项目速度,都比较满 * 如果不考虑性能的话,就会导致一个大数据处理程序运行长达数个小时,甚至是数个小时,对用户的体验,简直是 * 一场灾难。 */ /** * 使用CountByKey算子实现随机抽取功能 */ randomExtractSession(taskId,filteredSessionRDD,sessionInfoPairRDD); //在使用Accumulutor之前,需要使用Action算子,否则获取的值为空,这里随机计算 //filteredSessionRDD.count(); //计算各个session占比,并写入MySQL calculateAndPersist(sessionAggrStatAccumulator.value(),taskId); //获取热门品类数据Top10 List<Tuple2<CategorySortKey,String>> top10CategoryIds=getTop10Category(taskId,commonFullClickInfoRDD); //获取热门每一个品类点击Top10session getTop10Session(context,taskId,sessionInfoPairRDD,top10CategoryIds); //关闭spark上下文 context.close(); }
Example #12
Source File: UpdateWordFreqAccumulatorFunction.java From deeplearning4j with Apache License 2.0 | 4 votes |
public UpdateWordFreqAccumulatorFunction(Broadcast<List<String>> stopWords, Accumulator<Counter<String>> wordFreqAcc) { this.wordFreqAcc = wordFreqAcc; this.stopWords = stopWords; }
Example #13
Source File: FoldWithinPartitionFunction.java From deeplearning4j with Apache License 2.0 | 4 votes |
public FoldWithinPartitionFunction(Accumulator<Counter<Integer>> maxPartitionAcc) { this.maxPerPartitionAcc = maxPartitionAcc; }
Example #14
Source File: ExtraCountFunction.java From deeplearning4j with Apache License 2.0 | 4 votes |
public ExtraCountFunction(@NonNull Accumulator<ExtraCounter<Long>> accumulator, boolean fetchLabels) { this.accumulator = accumulator; this.fetchLabels = fetchLabels; }