spark处理数据写入kafka

  1. 首先,我们需要将KafkaProducer利用lazy val的方式进行包装如下:

package com.eitcloud.util

import java.util.concurrent.Future
import org.apache.kafka.clients.producer.{KafkaProducer, ProducerRecord, RecordMetadata}
import scala.collection.JavaConversions._

class KafkaSink[K, V](createProducer: () => KafkaProducer[K, V]) extends Serializable {
  /* This is the key idea that allows us to work around running into
     NotSerializableExceptions. */
  lazy val producer = createProducer()

  def send(topic: String, key: K, value: V): Future[RecordMetadata] =
    producer.send(new ProducerRecord[K, V](topic, key, value))

  def send(topic: String, value: V): Future[RecordMetadata] =
    producer.send(new ProducerRecord[K, V](topic, value))
}

object KafkaSink {

  def apply[K, V](config: Map[String, Object]): KafkaSink[K, V] = {
    val createProducerFunc = () => {
      val producer = new KafkaProducer[K, V](config)
      sys.addShutdownHook {
        // Ensure that, on executor JVM shutdown, the Kafka producer sends
        // any buffered messages to Kafka before shutting down.
        producer.close()
      }
      producer
    }
    new KafkaSink(createProducerFunc)
  }

  def apply[K, V](config: java.util.Properties): KafkaSink[K, V] = apply(config.toMap)
}

  1. 2、之后我们利用广播变量的形式,将KafkaProducer广播到每一个executor,在每个executor中愉快的将数据输入到kafka当中:


package com.eitcloud.Entrance

import java.util.Properties

import breeze.numerics.log
import com.eitcloud.util.{KafkaOut, KafkaSink}
import org.apache.kafka.common.serialization.StringSerializer
import org.apache.log4j.{Level, Logger}
import org.apache.spark.broadcast.Broadcast
import org.apache.spark.rdd.RDD
import org.apache.spark.{SparkConf, SparkContext}

object Test2 {

  def main(args: Array[String]): Unit = {
    //取消打印多余日志
    Logger.getLogger("org.apache.spark").setLevel(Level.WARN)
    Logger.getLogger("org.eclipse.jetty.server").setLevel(Level.OFF)
    val conf = new SparkConf()
    conf.setExecutorEnv("SPARK_JAVA_OPTS", " -Xms8024m -Xmx12040m -XX:MaxPermSize=30840m")
    conf.setMaster("local[4]")
    conf.setAppName(s"${this.getClass.getSimpleName}")
    val sc: SparkContext = new SparkContext(conf)
    val rdd: RDD[String] = sc.parallelize(Array("1","2","4","5","6"))
//KafkaOut.outPut(rdd,sc)
//    rdd.collect()
     //广播KafkaSink
    val kafkaProducer: Broadcast[KafkaSink[String, String]] = {
      val kafkaProducerConfig = {
        val p = new Properties()
        p.setProperty("bootstrap.servers", "192.168.2.116:9092")
        p.setProperty("key.serializer", classOf[StringSerializer].getName)
        p.setProperty("value.serializer", classOf[StringSerializer].getName)
        p
      }
      sc.broadcast(KafkaSink[String, String](kafkaProducerConfig))
    }

    //输出到kafka
    rdd.foreach(record=>{
      kafkaProducer.value.send("lili", record)
    })

  }

}

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转载自blog.csdn.net/qq_32253371/article/details/79308786