Java Code Examples for org.apache.spark.streaming.api.java.JavaStreamingContext#socketTextStream()

The following examples show how to use org.apache.spark.streaming.api.java.JavaStreamingContext#socketTextStream() . You can vote up the ones you like or vote down the ones you don't like, and go to the original project or source file by following the links above each example. You may check out the related API usage on the sidebar.
Example 1
Source File: Window.java    From sparkResearch with Apache License 2.0 6 votes vote down vote up
public static void main(String[] args) {
    SparkConf sparkConf = new SparkConf().setAppName("window").setMaster("local[2]");
    JavaStreamingContext streamingContext = new JavaStreamingContext(sparkConf, Durations.seconds(10));
    //检查点设置
    streamingContext.checkpoint("hdfs://localhost:9300");

    JavaDStream<String> dStream = streamingContext.socketTextStream("localhost", 8080);

    JavaDStream<String> winDstream = dStream.window(Durations.seconds(30), Durations.seconds(20));

    JavaDStream<Long> result = winDstream.count();

    try {
        streamingContext.start();
        streamingContext.awaitTermination();
    } catch (InterruptedException e) {
        e.printStackTrace();
    }
}
 
Example 2
Source File: ReduceByKeyAndWindow.java    From sparkResearch with Apache License 2.0 6 votes vote down vote up
public static void main(String[] args) {
    SparkConf sparkConf = new SparkConf().setAppName("reduceByKeyAndWindow").setMaster("local[2]");
    JavaStreamingContext streamingContext = new JavaStreamingContext(sparkConf, Durations.seconds(10));
    //检查点设置
    streamingContext.checkpoint("hdfs://localhost:9300");
    //数据源
    JavaDStream<String> dStream = streamingContext.socketTextStream("localhost", 8080);

    JavaPairDStream<String, Long> ipPairDstream = dStream.mapToPair(new GetIp());

    JavaPairDStream<String, Long> result = ipPairDstream.reduceByKeyAndWindow(new AddLongs(),
            new SubtractLongs(), Durations.seconds(30), Durations.seconds(10));

    try {
        streamingContext.start();
        streamingContext.awaitTermination();
    } catch (InterruptedException e) {
        e.printStackTrace();
    }
}
 
Example 3
Source File: SparkStreamDemo.java    From sparkResearch with Apache License 2.0 6 votes vote down vote up
public static void main(String[] args) {
    //创建两个核心的本地线程,批处理的间隔为1秒
    SparkConf conf = new SparkConf().setMaster("local[2]").setAppName("sparkStreamIng");
    JavaStreamingContext javaStreamingContext = new JavaStreamingContext(conf, Durations.seconds(1));
    //创建一个连接到IP:localhost,PORT:8080的DStream
    JavaReceiverInputDStream<String> dStream = javaStreamingContext.socketTextStream("localhost", 8080);
    JavaDStream<String> errorLine = dStream.filter(new Function<String, Boolean>() {
        @Override
        public Boolean call(String v1) throws Exception {
            return v1.contains("error");
        }
    });
    //打印包含error的行
    errorLine.print();
    try {
        //开始计算
        javaStreamingContext.start();
        //等待计算完成
        javaStreamingContext.awaitTermination();
    } catch (InterruptedException e) {
        e.printStackTrace();
    }
}
 
Example 4
Source File: WordCountSocketJava8Ex.java    From Apache-Spark-2x-for-Java-Developers with MIT License 5 votes vote down vote up
public static void main(String[] args) throws Exception {
 
     System.setProperty("hadoop.home.dir", "E:\\hadoop");
	
  SparkConf sparkConf = new SparkConf().setAppName("WordCountSocketEx").setMaster("local[*]");
  JavaStreamingContext streamingContext = new JavaStreamingContext(sparkConf, Durations.seconds(1));
  
  List<Tuple2<String, Integer>> tuples = Arrays.asList(new Tuple2<>("hello", 10), new Tuple2<>("world", 10));
  JavaPairRDD<String, Integer> initialRDD = streamingContext.sparkContext().parallelizePairs(tuples);
    

  JavaReceiverInputDStream<String> StreamingLines = streamingContext.socketTextStream( "10.0.75.1", Integer.parseInt("9000"), StorageLevels.MEMORY_AND_DISK_SER);
  
  JavaDStream<String> words = StreamingLines.flatMap( str -> Arrays.asList(str.split(" ")).iterator() );
 
  JavaPairDStream<String, Integer> wordCounts = words.mapToPair(str-> new Tuple2<>(str, 1)).reduceByKey((count1,count2) ->count1+count2 );
 
  wordCounts.print();
  
JavaPairDStream<String, Integer> joinedDstream = wordCounts.transformToPair(
   new Function<JavaPairRDD<String, Integer>, JavaPairRDD<String, Integer>>() {
	    @Override public JavaPairRDD<String, Integer> call(JavaPairRDD<String, Integer> rdd) throws Exception {
	    	rdd.join(initialRDD).mapToPair(new PairFunction<Tuple2<String,Tuple2<Integer,Integer>>, String, Integer>() {
				@Override
				public Tuple2<String, Integer> call(Tuple2<String, Tuple2<Integer, Integer>> joinedTuple)
						throws Exception {
					// TODO Auto-generated method stub
					return new Tuple2<>( joinedTuple._1(), (joinedTuple._2()._1()+joinedTuple._2()._2()) );
				}
			});
		
		return rdd; 				     
	    }
	  });
 
joinedDstream.print();
  streamingContext.start();
  streamingContext.awaitTermination();
}
 
Example 5
Source File: ReaderWriterExample.java    From spliceengine with GNU Affero General Public License v3.0 5 votes vote down vote up
public static void main(String[] args) throws Exception {

        final String dbUrl = args[0];
        final String hostname = args[1];
        final String port = args[2];
        final String inTargetSchema = args[3];
        final String inTargetTable = args[4];

        SparkConf conf = new SparkConf();

        JavaStreamingContext ssc = new JavaStreamingContext(conf, new Duration(500));

        JavaReceiverInputDStream<String> stream = ssc.socketTextStream(hostname, Integer.parseInt(port));

        SparkSession spark = SparkSession.builder().getOrCreate();

        // Create a SplicemachineContext based on the provided DB connection
        SplicemachineContext splicemachineContext = new SplicemachineContext(dbUrl);

        // Set target tablename and schemaname
        final String table = inTargetSchema + "." + inTargetTable;

        stream.foreachRDD((VoidFunction<JavaRDD<String>>) rdd -> {
            JavaRDD<Row> rowRDD = rdd.map((Function<String, Row>) s -> RowFactory.create(s));
            Dataset<Row> df = spark.createDataFrame(rowRDD, splicemachineContext.getSchema(table));

            splicemachineContext.insert(df, table);
        });

        ssc.start();
        ssc.awaitTermination();
    }
 
Example 6
Source File: SparkStreamingFromNetworkExample.java    From SparkOnALog with Apache License 2.0 5 votes vote down vote up
public static void main(String[] args) {
  if (args.length < 3) {
    System.err.println("Usage: NetworkWordCount <master> <hostname> <port>\n" +
        "In local mode, <master> should be 'local[n]' with n > 1");
    System.exit(1);
  }

  // Create the context with a 1 second batch size
  JavaStreamingContext ssc = new JavaStreamingContext(args[0], "NetworkWordCount",
          new Duration(5000), System.getenv("SPARK_HOME"), System.getenv("SPARK_EXAMPLES_JAR"));

  // Create a NetworkInputDStream on target ip:port and count the
  // words in input stream of \n delimited test (eg. generated by 'nc')
  JavaDStream<String> lines = ssc.socketTextStream(args[1], Integer.parseInt(args[2]));
  
  lines.map(new Function<String, String> () {

@Override
public String call(String arg0) throws Exception {
	System.out.println("arg0" + arg0);
	return arg0;
}}).print();
  
  lines.print();
  ssc.start();


}
 
Example 7
Source File: JavaHBaseStreamingBulkPutExample.java    From learning-hadoop with Apache License 2.0 5 votes vote down vote up
public static void main(String args[]) {
  if (args.length == 0) {
    System.out
        .println("JavaHBaseBulkPutExample  {master} {host} {post} {tableName} {columnFamily}");
  }

  String master = args[0];
  String host = args[1];
  String port = args[2];
  String tableName = args[3];
  String columnFamily = args[4];

  System.out.println("master:" + master);
  System.out.println("host:" + host);
  System.out.println("port:" + Integer.parseInt(port));
  System.out.println("tableName:" + tableName);
  System.out.println("columnFamily:" + columnFamily);
  
  SparkConf sparkConf = new SparkConf();
  sparkConf.set("spark.cleaner.ttl", "120000");
  
  JavaSparkContext jsc = new JavaSparkContext(master,
      "JavaHBaseBulkPutExample");
  jsc.addJar("SparkHBase.jar");
  
  JavaStreamingContext jssc = new JavaStreamingContext(jsc, new Duration(1000));

  JavaReceiverInputDStream<String> javaDstream = jssc.socketTextStream(host, Integer.parseInt(port));
  
  Configuration conf = HBaseConfiguration.create();
  conf.addResource(new Path("/etc/hbase/conf/core-site.xml"));
  conf.addResource(new Path("/etc/hbase/conf/hbase-site.xml"));

  JavaHBaseContext hbaseContext = new JavaHBaseContext(jsc, conf);

  hbaseContext.streamBulkPut(javaDstream, tableName, new PutFunction(), true);
}
 
Example 8
Source File: ReaderWriterExample.java    From spliceengine with GNU Affero General Public License v3.0 5 votes vote down vote up
public static void main(String[] args) throws Exception {

        final String dbUrl = args[0];
        final String hostname = args[1];
        final String port = args[2];
        final String inTargetSchema = args[3];
        final String inTargetTable = args[4];

        SparkConf conf = new SparkConf();

        JavaStreamingContext ssc = new JavaStreamingContext(conf, new Duration(500));
        SpliceSpark.setContext(ssc.sparkContext());

        SparkSession spark = SpliceSpark.getSessionUnsafe();

        JavaReceiverInputDStream<String> stream = ssc.socketTextStream(hostname, Integer.parseInt(port));

        // Create a SplicemachineContext based on the provided DB connection
        SplicemachineContext splicemachineContext = new SplicemachineContext(dbUrl);

        // Set target tablename and schemaname
        final String table = inTargetSchema + "." + inTargetTable;

        stream.foreachRDD((VoidFunction<JavaRDD<String>>) rdd -> {
            JavaRDD<Row> rowRDD = rdd.map((Function<String, Row>) s -> RowFactory.create(s));
            Dataset<Row> df = spark.createDataFrame(rowRDD, splicemachineContext.getSchema(table));

            splicemachineContext.insert(df, table);
        });

        ssc.start();
        ssc.awaitTermination();
    }
 
Example 9
Source File: WordCountSocketStateful.java    From Apache-Spark-2x-for-Java-Developers with MIT License 5 votes vote down vote up
public static void main(String[] args) throws Exception {
 System.setProperty("hadoop.home.dir", "E:\\hadoop");

   SparkConf sparkConf = new SparkConf().setAppName("WordCountSocketEx").setMaster("local[*]");
   JavaStreamingContext streamingContext = new JavaStreamingContext(sparkConf, Durations.seconds(1));
   streamingContext.checkpoint("E:\\hadoop\\checkpoint");
// Initial state RDD input to mapWithState
   @SuppressWarnings("unchecked")
   List<Tuple2<String, Integer>> tuples =Arrays.asList(new Tuple2<>("hello", 1), new Tuple2<>("world", 1));
   JavaPairRDD<String, Integer> initialRDD = streamingContext.sparkContext().parallelizePairs(tuples);
   
   JavaReceiverInputDStream<String> StreamingLines = streamingContext.socketTextStream( "10.0.75.1", Integer.parseInt("9000"), StorageLevels.MEMORY_AND_DISK_SER);
   
   JavaDStream<String> words = StreamingLines.flatMap( str -> Arrays.asList(str.split(" ")).iterator() );
  
   JavaPairDStream<String, Integer> wordCounts = words.mapToPair(str-> new Tuple2<>(str, 1)).reduceByKey((count1,count2) ->count1+count2 );
  


  // Update the cumulative count function
  Function3<String, Optional<Integer>, State<Integer>, Tuple2<String, Integer>> mappingFunc =
      new Function3<String, Optional<Integer>, State<Integer>, Tuple2<String, Integer>>() {
        @Override
        public Tuple2<String, Integer> call(String word, Optional<Integer> one,
            State<Integer> state) {
          int sum = one.orElse(0) + (state.exists() ? state.get() : 0);
          Tuple2<String, Integer> output = new Tuple2<>(word, sum);
          state.update(sum);
          return output;
        }
      };

  // DStream made of get cumulative counts that get updated in every batch
  JavaMapWithStateDStream<String, Integer, Integer, Tuple2<String, Integer>> stateDstream = wordCounts.mapWithState(StateSpec.function(mappingFunc).initialState(initialRDD));

  stateDstream.print();
  streamingContext.start();
  streamingContext.awaitTermination();
}
 
Example 10
Source File: WordCountTransformOpEx.java    From Apache-Spark-2x-for-Java-Developers with MIT License 5 votes vote down vote up
public static void main(String[] args) throws Exception {
  
      System.setProperty("hadoop.home.dir", "E:\\hadoop");
	
   SparkConf sparkConf = new SparkConf().setAppName("WordCountSocketEx").setMaster("local[*]");
   JavaStreamingContext streamingContext = new JavaStreamingContext(sparkConf, Durations.seconds(1));
   Logger rootLogger = LogManager.getRootLogger();
 		rootLogger.setLevel(Level.WARN); 
   List<Tuple2<String, Integer>> tuples = Arrays.asList(new Tuple2<>("hello", 10), new Tuple2<>("world", 10));
   JavaPairRDD<String, Integer> initialRDD = streamingContext.sparkContext().parallelizePairs(tuples);
	    

   JavaReceiverInputDStream<String> StreamingLines = streamingContext.socketTextStream( "10.0.75.1", Integer.parseInt("9000"), StorageLevels.MEMORY_AND_DISK_SER);
   
   JavaDStream<String> words = StreamingLines.flatMap( str -> Arrays.asList(str.split(" ")).iterator() );
  
   JavaPairDStream<String, Integer> wordCounts = words.mapToPair(str-> new Tuple2<>(str, 1)).reduceByKey((count1,count2) ->count1+count2 );
  
   wordCounts.print();
   
JavaPairDStream<String, Integer> joinedDstream = wordCounts
		.transformToPair(new Function<JavaPairRDD<String, Integer>, JavaPairRDD<String, Integer>>() {
			@Override
			public JavaPairRDD<String, Integer> call(JavaPairRDD<String, Integer> rdd) throws Exception {
				JavaPairRDD<String, Integer> modRDD = rdd.join(initialRDD).mapToPair(
						new PairFunction<Tuple2<String, Tuple2<Integer, Integer>>, String, Integer>() {
							@Override
							public Tuple2<String, Integer> call(
									Tuple2<String, Tuple2<Integer, Integer>> joinedTuple) throws Exception {
								return new Tuple2<>(joinedTuple._1(),(joinedTuple._2()._1() + joinedTuple._2()._2()));
							}
						});
				return modRDD;
			}
		});

   joinedDstream.print();
   streamingContext.start();
   streamingContext.awaitTermination();
 }
 
Example 11
Source File: StateFulProcessingExample.java    From Apache-Spark-2x-for-Java-Developers with MIT License 4 votes vote down vote up
public static void main(String[] args) throws InterruptedException {

		System.setProperty("hadoop.home.dir", "C:\\softwares\\Winutils");

		SparkSession sparkSession = SparkSession.builder().master("local[*]").appName("Stateful Streaming Example")
				.config("spark.sql.warehouse.dir", "file:////C:/Users/sgulati/spark-warehouse").getOrCreate();

		JavaStreamingContext jssc= new JavaStreamingContext(new JavaSparkContext(sparkSession.sparkContext()),
				Durations.milliseconds(1000));
		JavaReceiverInputDStream<String> inStream = jssc.socketTextStream("10.204.136.223", 9999);
		jssc.checkpoint("C:\\Users\\sgulati\\spark-checkpoint");

		JavaDStream<FlightDetails> flightDetailsStream = inStream.map(x -> {
			ObjectMapper mapper = new ObjectMapper();
			return mapper.readValue(x, FlightDetails.class);
		});
		
		

		JavaPairDStream<String, FlightDetails> flightDetailsPairStream = flightDetailsStream
				.mapToPair(f -> new Tuple2<String, FlightDetails>(f.getFlightId(), f));

		Function3<String, Optional<FlightDetails>, State<List<FlightDetails>>, Tuple2<String, Double>> mappingFunc = (
				flightId, curFlightDetail, state) -> {
			List<FlightDetails> details = state.exists() ? state.get() : new ArrayList<>();

			boolean isLanded = false;

			if (curFlightDetail.isPresent()) {
				details.add(curFlightDetail.get());
				if (curFlightDetail.get().isLanded()) {
					isLanded = true;
				}
			}
			Double avgSpeed = details.stream().mapToDouble(f -> f.getTemperature()).average().orElse(0.0);

			if (isLanded) {
				state.remove();
			} else {
				state.update(details);
			}
			return new Tuple2<String, Double>(flightId, avgSpeed);
		};

		JavaMapWithStateDStream<String, FlightDetails, List<FlightDetails>, Tuple2<String, Double>> streamWithState = flightDetailsPairStream
				.mapWithState(StateSpec.function(mappingFunc).timeout(Durations.minutes(5)));
		
		streamWithState.print();
		jssc.start();
		jssc.awaitTermination();
	}
 
Example 12
Source File: JavaRecoverableNetworkWordCount.java    From SparkDemo with MIT License 4 votes vote down vote up
private static JavaStreamingContext createContext(String ip,
                                                  int port,
                                                  String checkpointDirectory,
                                                  String outputPath) {

  // If you do not see this printed, that means the StreamingContext has been loaded
  // from the new checkpoint
  System.out.println("Creating new context");
  final File outputFile = new File(outputPath);
  if (outputFile.exists()) {
    outputFile.delete();
  }
  SparkConf sparkConf = new SparkConf().setAppName("JavaRecoverableNetworkWordCount");
  // Create the context with a 1 second batch size
  JavaStreamingContext ssc = new JavaStreamingContext(sparkConf, Durations.seconds(1));
  ssc.checkpoint(checkpointDirectory);

  // Create a socket stream on target ip:port and count the
  // words in input stream of \n delimited text (eg. generated by 'nc')
  JavaReceiverInputDStream<String> lines = ssc.socketTextStream(ip, port);
  JavaDStream<String> words = lines.flatMap(new FlatMapFunction<String, String>() {
    @Override
    public Iterator<String> call(String x) {
      return Arrays.asList(SPACE.split(x)).iterator();
    }
  });
  JavaPairDStream<String, Integer> wordCounts = words.mapToPair(
    new PairFunction<String, String, Integer>() {
      @Override
      public Tuple2<String, Integer> call(String s) {
        return new Tuple2<>(s, 1);
      }
    }).reduceByKey(new Function2<Integer, Integer, Integer>() {
      @Override
      public Integer call(Integer i1, Integer i2) {
        return i1 + i2;
      }
    });

  wordCounts.foreachRDD(new VoidFunction2<JavaPairRDD<String, Integer>, Time>() {
    @Override
    public void call(JavaPairRDD<String, Integer> rdd, Time time) throws IOException {
      // Get or register the blacklist Broadcast
      final Broadcast<List<String>> blacklist =
          JavaWordBlacklist.getInstance(new JavaSparkContext(rdd.context()));
      // Get or register the droppedWordsCounter Accumulator
      final LongAccumulator droppedWordsCounter =
          JavaDroppedWordsCounter.getInstance(new JavaSparkContext(rdd.context()));
      // Use blacklist to drop words and use droppedWordsCounter to count them
      String counts = rdd.filter(new Function<Tuple2<String, Integer>, Boolean>() {
        @Override
        public Boolean call(Tuple2<String, Integer> wordCount) {
          if (blacklist.value().contains(wordCount._1())) {
            droppedWordsCounter.add(wordCount._2());
            return false;
          } else {
            return true;
          }
        }
      }).collect().toString();
      String output = "Counts at time " + time + " " + counts;
      System.out.println(output);
      System.out.println("Dropped " + droppedWordsCounter.value() + " word(s) totally");
      System.out.println("Appending to " + outputFile.getAbsolutePath());
      Files.append(output + "\n", outputFile, Charset.defaultCharset());
    }
  });

  return ssc;
}
 
Example 13
Source File: JavaNetworkWordCount.java    From SparkDemo with MIT License 4 votes vote down vote up
public static void main(String[] args) throws Exception {
  if (args.length < 2) {
    System.err.println("Usage: JavaNetworkWordCount <hostname> <port>");
    System.exit(1);
  }

  StreamingExamples.setStreamingLogLevels();

  // Create the context with a 1 second batch size
  SparkConf sparkConf = new SparkConf().setAppName("JavaNetworkWordCount");
  JavaStreamingContext ssc = new JavaStreamingContext(sparkConf, Durations.seconds(1));

  // Create a JavaReceiverInputDStream on target ip:port and count the
  // words in input stream of \n delimited text (eg. generated by 'nc')
  // Note that no duplication in storage level only for running locally.
  // Replication necessary in distributed scenario for fault tolerance.
  JavaReceiverInputDStream<String> lines = ssc.socketTextStream(
          args[0], Integer.parseInt(args[1]), StorageLevels.MEMORY_AND_DISK_SER);
  JavaDStream<String> words = lines.flatMap(new FlatMapFunction<String, String>() {
    @Override
    public Iterator<String> call(String x) {
      return Arrays.asList(SPACE.split(x)).iterator();
    }
  });
  JavaPairDStream<String, Integer> wordCounts = words.mapToPair(
    new PairFunction<String, String, Integer>() {
      @Override
      public Tuple2<String, Integer> call(String s) {
        return new Tuple2<>(s, 1);
      }
    }).reduceByKey(new Function2<Integer, Integer, Integer>() {
      @Override
      public Integer call(Integer i1, Integer i2) {
        return i1 + i2;
      }
    });

  wordCounts.print();
  ssc.start();
  ssc.awaitTermination();
}
 
Example 14
Source File: JavaSqlNetworkWordCount.java    From SparkDemo with MIT License 4 votes vote down vote up
public static void main(String[] args) throws Exception {
  if (args.length < 2) {
    System.err.println("Usage: JavaNetworkWordCount <hostname> <port>");
    System.exit(1);
  }

  StreamingExamples.setStreamingLogLevels();

  // Create the context with a 1 second batch size
  SparkConf sparkConf = new SparkConf().setAppName("JavaSqlNetworkWordCount");
  JavaStreamingContext ssc = new JavaStreamingContext(sparkConf, Durations.seconds(1));

  // Create a JavaReceiverInputDStream on target ip:port and count the
  // words in input stream of \n delimited text (eg. generated by 'nc')
  // Note that no duplication in storage level only for running locally.
  // Replication necessary in distributed scenario for fault tolerance.
  JavaReceiverInputDStream<String> lines = ssc.socketTextStream(
      args[0], Integer.parseInt(args[1]), StorageLevels.MEMORY_AND_DISK_SER);
  JavaDStream<String> words = lines.flatMap(new FlatMapFunction<String, String>() {
    @Override
    public Iterator<String> call(String x) {
      return Arrays.asList(SPACE.split(x)).iterator();
    }
  });

  // Convert RDDs of the words DStream to DataFrame and run SQL query
  words.foreachRDD(new VoidFunction2<JavaRDD<String>, Time>() {
    @Override
    public void call(JavaRDD<String> rdd, Time time) {
      SparkSession spark = JavaSparkSessionSingleton.getInstance(rdd.context().getConf());

      // Convert JavaRDD[String] to JavaRDD[bean class] to DataFrame
      JavaRDD<JavaRecord> rowRDD = rdd.map(new Function<String, JavaRecord>() {
        @Override
        public JavaRecord call(String word) {
          JavaRecord record = new JavaRecord();
          record.setWord(word);
          return record;
        }
      });
      Dataset<Row> wordsDataFrame = spark.createDataFrame(rowRDD, JavaRecord.class);

      // Creates a temporary view using the DataFrame
      wordsDataFrame.createOrReplaceTempView("words");

      // Do word count on table using SQL and print it
      Dataset<Row> wordCountsDataFrame =
          spark.sql("select word, count(*) as total from words group by word");
      System.out.println("========= " + time + "=========");
      wordCountsDataFrame.show();
    }
  });

  ssc.start();
  ssc.awaitTermination();
}
 
Example 15
Source File: JavaNetworkWordCount.java    From SparkDemo with MIT License 4 votes vote down vote up
public static void main(String[] args) {
        /**
         * 资源.setMaster("local[2]")必须大于1 一个负责取数据 其他负责计算
         */
//    if (args.length < 2) {
//      System.err.println("Usage: JavaNetworkWordCount <hostname> <port>");
//      System.exit(1);
//    }

        StreamingExamples.setStreamingLogLevels();

        // Create the context with a 1 second batch size
        SparkConf sparkConf = SparkUtils.getLocalSparkConf(JavaNetworkWordCount.class);
        /*
         * 创建该对象类似于spark core中的JavaSparkContext
         * 该对象除了接受SparkConf对象,还接收了一个BatchInterval参数,就算说,每收集多长时间去划分一个人Batch即RDD去执行
         */
        JavaStreamingContext ssc = new JavaStreamingContext(sparkConf, Durations.seconds(2));

        /*
         * 首先创建输入DStream,代表一个数据比如这里从socket或KafKa来持续不断的进入实时数据流
         * 创建一个监听Socket数据量,RDD里面的每一个元素就是一行行的文本
         */
        JavaReceiverInputDStream<String> lines = ssc.socketTextStream("192.168.2.1", 9999, StorageLevels.MEMORY_AND_DISK_SER);
        JavaDStream<String> words = lines.flatMap(new FlatMapFunction<String, String>() {
            @Override
            public Iterator<String> call(String x) {
                return Lists.newArrayList(SPACE.split(x)).iterator();
            }
        });
        JavaPairDStream<String, Integer> wordCounts = words.mapToPair(
                new PairFunction<String, String, Integer>() {
                    @Override
                    public Tuple2<String, Integer> call(String s) {
                        return new Tuple2<String, Integer>(s, 1);
                    }
                }).reduceByKey(new Function2<Integer, Integer, Integer>() {
            @Override
            public Integer call(Integer i1, Integer i2) {
                return i1 + i2;
            }
        });

        wordCounts.print();
        ssc.start();
        try {
            ssc.awaitTermination();
        } catch (Exception e) {
            e.printStackTrace();
        }
    }
 
Example 16
Source File: WindowBatchInterval.java    From Apache-Spark-2x-for-Java-Developers with MIT License 4 votes vote down vote up
public static void main(String[] args) {
   	//Window Specific property if Hadoop is not instaalled or HADOOP_HOME is not set
	 System.setProperty("hadoop.home.dir", "E:\\hadoop");
   	//Logger rootLogger = LogManager.getRootLogger();
  		//rootLogger.setLevel(Level.WARN); 
       SparkConf conf = new SparkConf().setAppName("KafkaExample").setMaster("local[*]");
       
    
       JavaSparkContext sc = new JavaSparkContext(conf);
       JavaStreamingContext streamingContext = new JavaStreamingContext(sc, Durations.minutes(2));
       streamingContext.checkpoint("E:\\hadoop\\checkpoint");
       Logger rootLogger = LogManager.getRootLogger();
  		rootLogger.setLevel(Level.WARN); 
  		
  	 List<Tuple2<String, Integer>> tuples = Arrays.asList(new Tuple2<>("hello", 10), new Tuple2<>("world", 10));
    JavaPairRDD<String, Integer> initialRDD = streamingContext.sparkContext().parallelizePairs(tuples);
		    

    JavaReceiverInputDStream<String> StreamingLines = streamingContext.socketTextStream( "10.0.75.1", Integer.parseInt("9000"), StorageLevels.MEMORY_AND_DISK_SER);
    
    JavaDStream<String> words = StreamingLines.flatMap( str -> Arrays.asList(str.split(" ")).iterator() );
   
    JavaPairDStream<String, Integer> wordCounts = words.mapToPair(str-> new Tuple2<>(str, 1)).reduceByKey((count1,count2) ->count1+count2 );
   
    wordCounts.print();
    wordCounts.window(Durations.minutes(8)).countByValue()
      .foreachRDD(tRDD -> tRDD.foreach(x->System.out.println(new Date()+" ::The window count tag is ::"+x._1() +" and the val is ::"+x._2())));
    wordCounts.window(Durations.minutes(8),Durations.minutes(2)).countByValue()
      .foreachRDD(tRDD -> tRDD.foreach(x->System.out.println(new Date()+" ::The window count tag is ::"+x._1() +" and the val is ::"+x._2())));
    wordCounts.window(Durations.minutes(12),Durations.minutes(8)).countByValue()
      .foreachRDD(tRDD -> tRDD.foreach(x->System.out.println(new Date()+" ::The window count tag is ::"+x._1() +" and the val is ::"+x._2())));
    wordCounts.window(Durations.minutes(2),Durations.minutes(2)).countByValue()
      .foreachRDD(tRDD -> tRDD.foreach(x->System.out.println(new Date()+" ::The window count tag is ::"+x._1() +" and the val is ::"+x._2())));
    wordCounts.window(Durations.minutes(12),Durations.minutes(12)).countByValue()
      .foreachRDD(tRDD -> tRDD.foreach(x->System.out.println(new Date()+" ::The window count tag is ::"+x._1() +" and the val is ::"+x._2())));
      
    //comment these two operation to make it run
    wordCounts.window(Durations.minutes(5),Durations.minutes(2)).countByValue()
      .foreachRDD(tRDD -> tRDD.foreach(x->System.out.println(new Date()+" ::The window count tag is ::"+x._1() +" and the val is ::"+x._2())));
    wordCounts.window(Durations.minutes(10),Durations.minutes(1)).countByValue()
      .foreachRDD(tRDD -> tRDD.foreach(x->System.out.println(new Date()+" ::The window count tag is ::"+x._1() +" and the val is ::"+x._2())));
      
       streamingContext.start();
       try {
		streamingContext.awaitTermination();
	} catch (InterruptedException e) {
		// TODO Auto-generated catch block
		e.printStackTrace();
	}
}
 
Example 17
Source File: Server.java    From cxf with Apache License 2.0 4 votes vote down vote up
protected Server(String[] args) throws Exception {

        ServerSocket sparkServerSocket = new ServerSocket(9999);
        ServerSocket jaxrsResponseServerSocket = new ServerSocket(10000);
        Socket jaxrsResponseClientSocket = new Socket("localhost", 10000);


        SparkConf sparkConf = new SparkConf().setMaster("local[*]")
            .setAppName("JAX-RS Spark Socket Connect");
        JavaStreamingContext jssc = new JavaStreamingContext(sparkConf, Durations.seconds(1));

        SparkStreamingOutput streamOut = new SparkStreamingOutput(jssc);
        SparkStreamingListener sparkListener = new SparkStreamingListener(streamOut);
        jssc.addStreamingListener(sparkListener);

        JavaDStream<String> receiverStream = jssc.socketTextStream(
            "localhost", 9999, StorageLevels.MEMORY_ONLY);

        JavaPairDStream<String, Integer> wordCounts = SparkUtils.createOutputDStream(receiverStream, true);
        PrintStream sparkResponseOutputStream = new PrintStream(jaxrsResponseClientSocket.getOutputStream(), true);
        wordCounts.foreachRDD(new SocketOutputFunction(sparkResponseOutputStream));

        jssc.start();

        Socket receiverClientSocket = sparkServerSocket.accept();
        PrintStream sparkOutputStream = new PrintStream(receiverClientSocket.getOutputStream(), true);
        BufferedReader sparkInputStream =
            new BufferedReader(new InputStreamReader(jaxrsResponseServerSocket.accept().getInputStream()));


        JAXRSServerFactoryBean sf = new JAXRSServerFactoryBean();

        sf.setResourceClasses(StreamingService.class);
        sf.setResourceProvider(StreamingService.class,
            new SingletonResourceProvider(new StreamingService(sparkInputStream,
                                                                     sparkOutputStream)));
        sf.setAddress("http://localhost:9000/spark");
        sf.create();

        jssc.awaitTermination();
        sparkServerSocket.close();
        jaxrsResponseServerSocket.close();
        jaxrsResponseClientSocket.close();

    }
 
Example 18
Source File: StateLess.java    From sparkResearch with Apache License 2.0 4 votes vote down vote up
public static void main(String[] args) {
    SparkConf sparkConf = new SparkConf().setMaster("local[2]").setAppName("StateLess");

    JavaStreamingContext streamingContext = new JavaStreamingContext(sparkConf, Durations.seconds(1));

    JavaReceiverInputDStream<String> inputDStream = streamingContext.socketTextStream("localhost", 8080);

    JavaDStream<String> dStream = inputDStream.flatMap((FlatMapFunction<String, String>) s -> Arrays.asList(SPACE.split(s)).iterator());

    JavaPairDStream<String, Integer> pairDStream = dStream.mapToPair(new LogTuple());

    JavaPairDStream<String, Integer> result = pairDStream.reduceByKey(new ReduceIsKey());

    //JOIN
    JavaPairDStream<String, Integer> pairDStream1 = dStream.mapToPair(new LogTuple());

    JavaPairDStream<String, Integer> result1 = pairDStream.reduceByKey(new ReduceIsKey());

    JavaPairDStream<String, Tuple2<Integer, Integer>> c = result.join(result);


    result.foreachRDD(rdd -> {
        rdd.foreachPartition(partitionOfRecords -> {
            Connection connection = ConnectionPool.getConnection();
            Tuple2<String, Integer> wordCount;
            while (partitionOfRecords.hasNext()) {
                wordCount = partitionOfRecords.next();
                String sql = "insert into wordcount(word,count) " + "values('" + wordCount._1 + "',"
                        + wordCount._2 + ")";
                Statement stmt = connection.createStatement();
                stmt.executeUpdate(sql);
            }
            ConnectionPool.returnConnection(connection);
        });
    });

    try {
        streamingContext.start();
        streamingContext.awaitTermination();
        streamingContext.close();
    } catch (InterruptedException e) {
        e.printStackTrace();
    }

}
 
Example 19
Source File: StateLessProcessingExample.java    From Apache-Spark-2x-for-Java-Developers with MIT License 3 votes vote down vote up
public static void main(String[] args) throws InterruptedException {

		System.setProperty("hadoop.home.dir", "C:\\softwares\\Winutils");

		SparkSession sparkSession = SparkSession.builder().master("local[*]").appName("stateless Streaming Example")
				.config("spark.sql.warehouse.dir", "file:////C:/Users/sgulati/spark-warehouse").getOrCreate();

		JavaStreamingContext jssc = new JavaStreamingContext(new JavaSparkContext(sparkSession.sparkContext()),
				Durations.milliseconds(1000));
		JavaReceiverInputDStream<String> inStream = jssc.socketTextStream("10.204.136.223", 9999);

		JavaDStream<FlightDetails> flightDetailsStream = inStream.map(x -> {
			ObjectMapper mapper = new ObjectMapper();
			return mapper.readValue(x, FlightDetails.class);
		});
		
		
		
		//flightDetailsStream.print();
		
		//flightDetailsStream.foreachRDD((VoidFunction<JavaRDD<FlightDetails>>) rdd -> rdd.saveAsTextFile("hdfs://namenode:port/path"));
		
	   JavaDStream<FlightDetails> window = flightDetailsStream.window(Durations.minutes(5),Durations.minutes(1));
		
	    JavaPairDStream<String, Double> transfomedWindow = window.mapToPair(f->new Tuple2<String,Double>(f.getFlightId(),f.getTemperature())).
	    mapValues(t->new Tuple2<Double,Integer>(t,1))
	    .reduceByKey((t1, t2) -> new Tuple2<Double, Integer>(t1._1()+t2._1(), t1._2()+t2._2())).mapValues(t -> t._1()/t._2());
	    transfomedWindow.cache();
	    transfomedWindow.print();
	    
		jssc.start();
		jssc.awaitTermination();
	}
 
Example 20
Source File: Join.java    From sparkResearch with Apache License 2.0 3 votes vote down vote up
public static void main(String[] args) {
    SparkConf sparkConf = new SparkConf().setMaster("local[2]").setAppName("StateLess");

    JavaStreamingContext streamingContext = new JavaStreamingContext(sparkConf, Durations.seconds(1));

    JavaReceiverInputDStream<String> inputDStream = streamingContext.socketTextStream("localhost", 8080);
    JavaReceiverInputDStream<String> inputDStream1 = streamingContext.socketTextStream("localhost", 8081);

}