Spark Streaming源码解读之流数据不断接收和全生命周期彻底研究和思考

本节的主要内容:

一、数据接受架构和设计模式

二、接受数据的源码解读

Spark Streaming不断持续的接收数据,具有Receiver的Spark 应用程序的考虑。

Receiver和Driver在不同进程,Receiver接收数据后要不断给Deriver汇报。

因为Driver负责调度,Receiver接收的数据如果不汇报给Deriver,Deriver调度时不会把接收的数据计算入调度系统中(如:数据ID,Block分片)。

思考Spark Streaming接收数据:

不断有循环器接收数据,接收数据要存储数据,将存储数据后需要汇报给Deriver,接收数据和存储数据不应该给同一个对象进行处理。

Spark Streaming接收数据从设计模式来讲是MVC的架构:

V:就是Driver

M:就是Receiver

C:就是ReceiverSupervisor

因为:

Receiver就是接收数据器,例如:可以从socketTextStream中获取数据。

ReceiverSupervisor就是存储数据的控制器,因为Receiver是通过ReceiverSupervisor来启动的,反过来讲Receiver在接收到数据后是通过ReceiverSupervisor来存储数据的。

然后将存储后的元数据汇报给Driver端。

V:就是Driver,操作元数据通过元数据指针,根据指针地址操作其他机器上具体数据内容,并将处理结果展示出来。

所以说:

Spark Streaming数据接收全生命周期可以看成是一个MVC模式,ReceiverSupervisor相当于是控制器(C),Receiver(M)、Driver(V)

源码分析:

1、Receiver类:

/**
* :: DeveloperApi ::
* Abstract class of a receiver that can be run on worker nodes to receive external data. A
* custom receiver can be defined by defining the functions `onStart()` and `onStop()`. `onStart()`
* should define the setup steps necessary to start receiving data,
* and `onStop()` should define the cleanup steps necessary to stop receiving data.
* Exceptions while receiving can be handled either by restarting the receiver with `restart(...)`
* or stopped completely by `stop(...)` or
*
* A custom receiver in Scala would look like this.
*
* {{{
* class MyReceiver(storageLevel: StorageLevel) extends NetworkReceiver[String](storageLevel) {
* def onStart() {
* // Setup stuff (start threads, open sockets, etc.) to start receiving data.
* // Must start new thread to receive data, as onStart() must be non-blocking.
*
* // Call store(...) in those threads to store received data into Spark's memory.
*
* // Call stop(...), restart(...) or reportError(...) on any thread based on how
* // different errors needs to be handled.
*
* // See corresponding method documentation for more details
* }
*
* def onStop() {
* // Cleanup stuff (stop threads, close sockets, etc.) to stop receiving data.
* }
* }
* }}}
*
* A custom receiver in Java would look like this.
*
* {{{
* class MyReceiver extends Receiver<String> {
* public MyReceiver(StorageLevel storageLevel) {
* super(storageLevel);
* }
*
* public void onStart() {
* // Setup stuff (start threads, open sockets, etc.) to start receiving data.
* // Must start new thread to receive data, as onStart() must be non-blocking.
*
* // Call store(...) in those threads to store received data into Spark's memory.
*
* // Call stop(...), restart(...) or reportError(...) on any thread based on how
* // different errors needs to be handled.
*
* // See corresponding method documentation for more details
* }
*
* public void onStop() {
* // Cleanup stuff (stop threads, close sockets, etc.) to stop receiving data.
* }
* }
* }}}
*/
@DeveloperApi
abstract class Receiver[T](val storageLevel: StorageLevel) extends Serializable {

2、ReceiverSupervisor类:
/**
* Abstract class that is responsible for supervising a Receiver in the worker.
* It provides all the necessary interfaces for handling the data received by the receiver.
*/
private[streaming] abstract class ReceiverSupervisor(
receiver: Receiver[_],
conf: SparkConf
) extends Logging {

ReceiverTracker发送一个个Job,每个Job有一个task,每个task中有一个ReceiverSupervisor,用于启动每个Receiver的,看ReceiverTracker的start方法:

/**
* 管理receiver的:启动、执行、重新启动
* 确定所有的输入流记录,有成员记录所有输入来源
* 需要输入流,为每个输入流启动一个receiver
* This class manages the execution of the receivers of ReceiverInputDStreams. Instance of
* this class must be created after all input streams have been added and StreamingContext.start()
* has been called because it needs the final set of input streams at the time of instantiation.
*dirver端
* @param skipReceiverLaunch Do not launch the receiver. This is useful for testing.
*/
private[streaming]
class ReceiverTracker(ssc: StreamingContext, skipReceiverLaunch: Boolean = false) extends Logging {

private val receiverInputStreams = ssc.graph.getReceiverInputStreams()
private val receiverInputStreamIds = receiverInputStreams.map { _.id }
private val receivedBlockTracker = new ReceivedBlockTracker(
ssc.sparkContext.conf,
ssc.sparkContext.hadoopConfiguration,
receiverInputStreamIds,
ssc.scheduler.clock,
ssc.isCheckpointPresent,
Option(ssc.checkpointDir)
)
private val listenerBus = ssc.scheduler.listenerBus

/** Enumeration to identify current state of the ReceiverTracker */
object TrackerState extends Enumeration {
type TrackerState = Value
val Initialized, Started, Stopping, Stopped = Value
}
import TrackerState._

/** State of the tracker. Protected by "trackerStateLock" */
@volatile private var trackerState = Initialized

// endpoint is created when generator starts.
// This not being null means the tracker has been started and not stopped
private var endpoint: RpcEndpointRef = null

private val schedulingPolicy = new ReceiverSchedulingPolicy()

// Track the active receiver job number. When a receiver job exits ultimately, countDown will
// be called.
private val receiverJobExitLatch = new CountDownLatch(receiverInputStreams.size)

/**
* Track all receivers' information. The key is the receiver id, the value is the receiver info.
* It's only accessed in ReceiverTrackerEndpoint.
*/
private val receiverTrackingInfos = new HashMap[Int, ReceiverTrackingInfo]

/**
* Store all preferred locations for all receivers. We need this information to schedule
* receivers. It's only accessed in ReceiverTrackerEndpoint.
*/
private val receiverPreferredLocations = new HashMap[Int, Option[String]]

/** Start the endpoint and receiver execution thread. */
def start(): Unit = synchronized {
if (isTrackerStarted) {
throw new SparkException("ReceiverTracker already started")
}

if (!receiverInputStreams.isEmpty) {
endpoint = ssc.env.rpcEnv.setupEndpoint(
"ReceiverTracker", new ReceiverTrackerEndpoint(ssc.env.rpcEnv))
if (!skipReceiverLaunch) launchReceivers()
logInfo("ReceiverTracker started")
trackerState = Started
}
}
RDD中的元素必须要实现序列化,才能将RDD序列化传输给Executor端,Receiver就实现了Serializable接口,自定义的Receiver也必须实现Serializable接口。
@DeveloperApi
abstract class Receiver[T](val storageLevel: StorageLevel) extends Serializable {
处理Receiver接收到的数据,存储数据并汇报给Driver,Receiver是一条一条的接收数据的。

作用于rdd的function,内部就是一个个Receiver,代码里面需要启动的Receiver是谁,根据你输入的数据来源inputDStreams receiver,socketTextStream

相当于一个引用句柄socketReceiver,我们获得的Receiver是引用的描述,接收的数据其是下面的getReceiver产生的:

/**
* Get the receivers from the ReceiverInputDStreams, distributes them to the
* worker nodes as a parallel collection, and runs them.
*/
private def launchReceivers(): Unit = {
val receivers = receiverInputStreams.map(nis => {
val rcvr = nis.getReceiver()
rcvr.setReceiverId(nis.id)
rcvr
})

runDummySparkJob()

logInfo("Starting " + receivers.length + " receivers")
endpoint.send(StartAllReceivers(receivers))
}
private[streaming]
class ReceiverTracker(ssc: StreamingContext, skipReceiverLaunch: Boolean = false) extends Logging {
private val receiverInputStreams = ssc.graph.getReceiverInputStreams()
private val receiverInputStreamIds = receiverInputStreams.map { _.id }
private val receivedBlockTracker = new ReceivedBlockTracker(
ssc.sparkContext.conf,
ssc.sparkContext.hadoopConfiguration,
receiverInputStreamIds,
ssc.scheduler.clock,
ssc.isCheckpointPresent,
Option(ssc.checkpointDir)
)
private[streaming]
class SocketInputDStream[T: ClassTag](
ssc_ : StreamingContext,
host: String,
port: Int,
bytesToObjects: InputStream => Iterator[T],
storageLevel: StorageLevel
) extends ReceiverInputDStream[T](ssc_) {

def getReceiver(): Receiver[T] = {
new SocketReceiver(host, port, bytesToObjects, storageLevel)
}
}

private[streaming]
class SocketReceiver[T: ClassTag](
host: String,
port: Int,
bytesToObjects: InputStream => Iterator[T],
storageLevel: StorageLevel
) extends Receiver[T](storageLevel) with Logging {

def onStart() {
// Start the thread that receives data over a connection
new Thread("Socket Receiver") {
setDaemon(true)
override def run() { receive() }
}.start()
}

如果Receiver RDD为空,则默认创建一个RDD,主要处理Receiver 接收到的数据,将接收数据给ReceiverSupervisor存储数据,并将元数据汇报给ReceiverTracker,Receiver 接收数据是一条条的,从抽象讲,是while循环获取一条条数据。接收数据,合并成buffer,放入block队列,在ReceiverSupervisorImpl启动会调用BlockGenerator对象的start方法。

override protected def onStart() {
registeredBlockGenerators.foreach { _.start() }
}
/**
* Generates batches of objects received by a
* [[org.apache.spark.streaming.receiver.Receiver]] and puts them into appropriately
* named blocks at regular intervals. This class starts two threads,
* one to periodically start a new batch and prepare the previous batch of as a block,
* the other to push the blocks into the block manager.
*
* Note: Do not create BlockGenerator instances directly inside receivers. Use
* `ReceiverSupervisor.createBlockGenerator` to create a BlockGenerator and use it.
*/
private[streaming] class BlockGenerator(
listener: BlockGeneratorListener,
receiverId: Int,
conf: SparkConf,
clock: Clock = new SystemClock()
) extends RateLimiter(conf) with Logging {

private case class Block(id: StreamBlockId, buffer: ArrayBuffer[Any])

/**
* The BlockGenerator can be in 5 possible states, in the order as follows.
*
* - Initialized: Nothing has been started
* - Active: start() has been called, and it is generating blocks on added data.
* - StoppedAddingData: stop() has been called, the adding of data has been stopped,
* but blocks are still being generated and pushed.
* - StoppedGeneratingBlocks: Generating of blocks has been stopped, but
* they are still being pushed.
* - StoppedAll: Everything has stopped, and the BlockGenerator object can be GCed.
*/
private object GeneratorState extends Enumeration {
type GeneratorState = Value
val Initialized, Active, StoppedAddingData, StoppedGeneratingBlocks, StoppedAll = Value
}
import GeneratorState._

private val blockIntervalMs = conf.getTimeAsMs("spark.streaming.blockInterval", "200ms")
require(blockIntervalMs > 0, s"'spark.streaming.blockInterval' should be a positive value")

private val blockIntervalTimer =
new RecurringTimer(clock, blockIntervalMs, updateCurrentBuffer, "BlockGenerator")
private val blockQueueSize = conf.getInt("spark.streaming.blockQueueSize", 10)
private val blocksForPushing = new ArrayBlockingQueue[Block](blockQueueSize)
private val blockPushingThread = new Thread() { override def run() { keepPushingBlocks() } }

@volatile private var currentBuffer = new ArrayBuffer[Any]
@volatile private var state = Initialized

/** Start block generating and pushing threads. */
def start(): Unit = synchronized {
if (state == Initialized) {
state = Active
blockIntervalTimer.start()
blockPushingThread.start()
logInfo("Started BlockGenerator")
} else {
throw new SparkException(
s"Cannot start BlockGenerator as its not in the Initialized state [state = $state]")
}
}
BlockGenerator类是用来干什么的?从上述的源码注释可以说明该类来把一个Receiver接收到的数据合并到一个Block然后写入到BlockManager对象中。
该类内部有两个线程,一个是周期性把数据生成一批对象,然后把先前的一批数据封装成Block。另一个线程时把Block写入到BlockManager进行存储。
override def createBlockGenerator(
blockGeneratorListener: BlockGeneratorListener): BlockGenerator = {
// Cleanup BlockGenerators that have already been stopped
registeredBlockGenerators --= registeredBlockGenerators.filter{ _.isStopped() }

val newBlockGenerator = new BlockGenerator(blockGeneratorListener, streamId, env.conf)
registeredBlockGenerators += newBlockGenerator
newBlockGenerator
}

BlockGenerator类继承自ReateLimiter类,说明我们不能限定接收数据的速度,但是可以限定存储数据的速度,转过来就限定流动的速度。

BlockGenerator类有一个定时器(默认每200ms将接收到的数据合并成block)和一个线程(把block写入到BlockManager),200ms会产生一个Block,即1秒钟生成5个Partition。太小则生成的数据片中数据太小,导致一个Task处理的数据少,性能差。实际经验得到不要低于50msprivate val blockIntervalMs = conf.getTimeAsMs("spark.streaming.blockInterval", "200ms")

require(blockIntervalMs > 0, s"'spark.streaming.blockInterval' should be a positive value")
private val blockIntervalTimer =
new RecurringTimer(clock, blockIntervalMs, updateCurrentBuffer, "BlockGenerator")
private val blockQueueSize = conf.getInt("spark.streaming.blockQueueSize", 10)
private val blocksForPushing = new ArrayBlockingQueue[Block](blockQueueSize)
private val blockPushingThread = new Thread() { override def run() { keepPushingBlocks() } }

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Spark发行版笔记10 

原文地址:https://www.cnblogs.com/sparkbigdata/p/5515933.html