Scala Example Code
Function
In Spark applications, use Streaming to invoke Kafka interface to obtain word records. Collect the statistics of records for each word, and write the data to Kafka 0-10.
Code Sample (Streaming Read Data from Kafka 0-10)
The following code is an example. For details, see com.huawei.bigdata.spark.examples.KafkaWordCount.
/**
* Consumes messages from one or more topics in Kafka.
* <checkPointDir> is the Spark Streaming checkpoint directory.
* <brokers> is for bootstrapping and the producer will only use it for getting metadata
* <topics> is a list of one or more kafka topics to consume from
* <batchTime> is the Spark Streaming batch duration in seconds.
*/
public class KafkaWordCount
{
public static void main(String[] args) {
JavaStreamingContext ssc = createContext(args);
//The Streaming system starts.
ssc.start();
try {
ssc.awaitTermination();
} catch (InterruptedException e) {
}
}
private static JavaStreamingContext createContext(String[] args) {
String checkPointDir = args[0];
String brokers = args[1];
String topics = args[2];
String batchSize = args[3];
// Create a Streaming startup environment.
SparkConf sparkConf = new SparkConf().setAppName("KafkaWordCount");
JavaStreamingContext ssc = new JavaStreamingContext(sparkConf, new Duration(Long.parseLong(batchSize) * 1000));
//Configure the CheckPoint directory for the Streaming.
//This parameter is mandatory because of existence of the window concept.
? ssc.checkpoint(checkPointDir);
// Get the list of topic used by kafka
String[] topicArr = topics.split(",");
Set<String> topicSet = new HashSet<String>(Arrays.asList(topicArr));
Map<String, Object> kafkaParams = new HashMap();
kafkaParams.put("bootstrap.servers", brokers);
kafkaParams.put("value.deserializer", "org.apache.kafka.common.serialization.StringDeserializer");
kafkaParams.put("key.deserializer", "org.apache.kafka.common.serialization.StringDeserializer");
kafkaParams.put("group.id", "DemoConsumer");
LocationStrategy locationStrategy = LocationStrategies.PreferConsistent();
ConsumerStrategy consumerStrategy = ConsumerStrategies.Subscribe(topicSet, kafkaParams);
// Create direct kafka stream with brokers and topics
// Receive data from the Kafka and generate the corresponding DStream
JavaInputDStream<ConsumerRecord<String, String>> messages = KafkaUtils.createDirectStream(ssc, locationStrategy, consumerStrategy);
// Obtain field properties in each row.
JavaDStream<String> lines = messages.map(new Function<ConsumerRecord<String, String>, String>() {
@Override
public String call(ConsumerRecord<String, String> tuple2) throws Exception {
return tuple2.value();
}
});
// Aggregate the total time that calculate word count
JavaPairDStream<String, Integer> wordCounts = lines.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;
}
}).updateStateByKey(
new Function2<List<Integer>, Optional<Integer>, Optional<Integer>>() {
@Override
public Optional<Integer> call(List<Integer> values, Optional<Integer> state) {
int out = 0;
if (state.isPresent()) {
out += state.get();
}
for (Integer v : values) {
out += v;
}
return Optional.of(out);
}
});
// print the results
wordCounts.print();
return ssc;
}
}
Example Code (Streaming Write To Kafka 0-10)
The following code segment is only an example. For details, see com.huawei.bigdata.spark.examples.DstreamKafkaWriter.
After updates to Spark, it is advisable to use the new API createDirectStream instead of the old API createStream for application development. The old API continues to exist, but its performance and stability are worse than the new API.
package com.huawei.bigdata.spark.examples
import scala.collection.mutable
import scala.language.postfixOps
import com.huawei.spark.streaming.kafka010.KafkaWriter._
import org.apache.kafka.clients.producer.ProducerRecord
import org.apache.spark.SparkConf
import org.apache.spark.rdd.RDD
import org.apache.spark.streaming.{Milliseconds, StreamingContext}
/**
* Exaple code to demonstrate the usage of dstream.writeToKafka API
*
* Parameter description:
* <groupId> is the group ID for the consumer.
* <brokers> is for bootstrapping and the producer will only use
* <topic> is a kafka topic to consume from.
*/
object DstreamKafkaWriter {
def main(args: Array[String]) {
if (args.length != 3) {
System.err.println("Usage: DstreamKafkaWriter <groupId> <brokers> <topic>")
System.exit(1)
}
val Array(groupId, brokers, topic) = args
val sparkConf = new SparkConf().setAppName("KafkaWriter")
// Populate Kafka properties
val kafkaParams = Map[String, String](
"bootstrap.servers" -> brokers,
"value.deserializer" -> "org.apache.kafka.common.serialization.StringDeserializer",
"key.deserializer" -> "org.apache.kafka.common.serialization.StringDeserializer",
"value.serializer" -> "org.apache.kafka.common.serialization.ByteArraySerializer",
"key.serializer" -> "org.apache.kafka.common.serialization.StringSerializer",
"group.id" -> groupId,
"auto.offset.reset" -> "latest"
)
// Create Spark streaming context
val ssc = new StreamingContext(sparkConf, Milliseconds(500));
// Populate data to write to kafka
val sentData = Seq("kafka_writer_test_msg_01", "kafka_writer_test_msg_02",
"kafka_writer_test_msg_03")
// Create RDD queue
val sent = new mutable.Queue[RDD[String]]()
sent.enqueue(ssc.sparkContext.makeRDD(sentData))
// Create Dstream with the data to be written
val wStream = ssc.queueStream(sent)
// Write to kafka
wStream.writeToKafka(kafkaParams,
(x: String) => new ProducerRecord[String, Array[Byte]](topic, x.getBytes))
ssc.start()
ssc.awaitTermination()
}
}
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