16、job触发流程原理剖析与源码分析

一、以Wordcount为例来分析

1、Wordcount

val lines = sc.textFile()
val words = lines.flatMap(line => line.split(" "))
val pairs = words.map(word => (word, 1))
val counts = pairs.reduceByKey(_ + _)
counts.foreach(count => println(count._1 + ": " + count._2))


2、源码分析

###org.apache.spark/SparkContext.scala
###textFile()

    /**
    * 首先,hadoopFile()方法的调用,会创建一个HadoopRDD,其中的元素,其实是(key,value)pais
    * key是hdfs或文本文件的每一行的offset,value是文本行
    * 然后对HadoopRDD调用map()方法,会剔除key,只保留value,然后会获得一个MapPartitionRDD
    * MapPartitionRDD内部的元素,其实就是一行一行的文本行
    * @param path
    * @param minPartitions
    * @return
    */
  def textFile(path: String, minPartitions: Int = defaultMinPartitions): RDD[String] = {
    assertNotStopped()
    hadoopFile(path, classOf[TextInputFormat], classOf[LongWritable], classOf[Text],
      minPartitions).map( pair => pair._2.toString).setName(path)
  }




###org.apache.spark.rdd/RDD.scala

  def flatMap[U: ClassTag](f: T => TraversableOnce[U]): RDD[U] = {
    val cleanF = sc.clean(f)
    new MapPartitionsRDD[U, T](this, (context, pid, iter) => iter.flatMap(cleanF))
  }

  
  def map[U: ClassTag](f: T => U): RDD[U] = {
    val cleanF = sc.clean(f)
    new MapPartitionsRDD[U, T](this, (context, pid, iter) => iter.map(cleanF))
  }




其实RDD里是没有reduceByKey的,因此对RDD调用reduceByKey()方法的时候,会触发scala的隐式转换;此时就会在作用域内,寻找隐式转换,
会在RDD中找到rddToPairRDDFunctions()隐式转换,然后将RDD转换为PairRDDFunctions。

  implicit def rddToPairRDDFunctions[K, V](rdd: RDD[(K, V)])
    (implicit kt: ClassTag[K], vt: ClassTag[V], ord: Ordering[K] = null): PairRDDFunctions[K, V] = {
    new PairRDDFunctions(rdd)
  }





接着会调用PairRDDFunctions中的reduceByKey()方法;

  def reduceByKey(partitioner: Partitioner, func: (V, V) => V): RDD[(K, V)] = {
    combineByKey[V]((v: V) => v, func, func, partitioner)
  }






###org.apache.spark.rdd/RDD.scala

  def foreach(f: T => Unit) {
    val cleanF = sc.clean(f)
    sc.runJob(this, (iter: Iterator[T]) => iter.foreach(cleanF))
  }


foreach调用了runJob方法,一步步追踪runJob方法,首先调用SparkContext的runJob:

  def runJob[T, U: ClassTag](rdd: RDD[T], func: Iterator[T] => U): Array[U] = {
    runJob(rdd, func, 0 until rdd.partitions.size, false)
  }

…

最后:
  def runJob[T, U: ClassTag](
      rdd: RDD[T],
      func: (TaskContext, Iterator[T]) => U,
      partitions: Seq[Int],
      allowLocal: Boolean,
      resultHandler: (Int, U) => Unit) {
    if (stopped) {
      throw new IllegalStateException("SparkContext has been shutdown")
    }
    val callSite = getCallSite
    val cleanedFunc = clean(func)
    logInfo("Starting job: " + callSite.shortForm)
    if (conf.getBoolean("spark.logLineage", false)) {
      logInfo("RDD's recursive dependencies:\n" + rdd.toDebugString)
    }
    // 调用SparkContext,之前初始化时创建的dagScheduler的runJob()方法
    dagScheduler.runJob(rdd, cleanedFunc, partitions, callSite, allowLocal,
      resultHandler, localProperties.get)
    progressBar.foreach(_.finishAll())
    rdd.doCheckpoint()
  }
posted @ 2019-07-19 14:15  米兰的小铁將  阅读(303)  评论(0编辑  收藏  举报