第11课:SparkStreaming源码解读之Driver中的ReceiverTracker架构设计以及具体实现彻底研究
上节课将到了Receiver是如何不断的接收数据的,并且接收到的数据的元数据会汇报给ReceiverTracker,下面我们看看ReceiverTracker具体的功能及实现。
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一、 ReceiverTracker主要的功能:
在Executor上启动Receivers。
停止Receivers 。
更新Receiver接收数据的速率(也就是限流)
不断的等待Receivers的运行状态,只要Receivers停止运行,就重新启动Receiver。也就是Receiver的容错功能。
接受Receiver的注册。
借助ReceivedBlockTracker来管理Receiver接收数据的元数据。
汇报Receiver发送过来的错误信息
ReceiverTracker 管理了一个消息通讯体ReceiverTrackerEndpoint,用来与Receiver或者ReceiverTracker 进行消息通信。
在ReceiverTracker的start方法中,实例化了ReceiverTrackerEndpoint,并且在Executor上启动Receivers:
/** 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 } }
启动Receivr,其实是ReceiverTracker给ReceiverTrackerEndpoint发送了一个本地消息,ReceiverTrackerEndpoint将Receiver封装成RDD以job的方式提交给集群运行。
endpoint.send(StartAllReceivers(receivers))
这里的endpoint就是ReceiverTrackerEndpoint的引用。
Receiver启动后,会向ReceiverTracker注册,注册成功才算正式启动了。
override protected def onReceiverStart(): Boolean = { val msg = RegisterReceiver( streamId, receiver.getClass.getSimpleName, host, executorId, endpoint) trackerEndpoint.askWithRetry[Boolean](msg) }
当Receiver端接收到数据,达到一定的条件需要将数据写入BlockManager,并且将数据的元数据汇报给ReceiverTracker:
/** Store block and report it to driver */ def pushAndReportBlock( receivedBlock: ReceivedBlock, metadataOption: Option[Any], blockIdOption: Option[StreamBlockId] ) { val blockId = blockIdOption.getOrElse(nextBlockId) val time = System.currentTimeMillis val blockStoreResult = receivedBlockHandler.storeBlock(blockId, receivedBlock) logDebug(s"Pushed block $blockId in ${(System.currentTimeMillis - time)} ms") val numRecords = blockStoreResult.numRecords val blockInfo = ReceivedBlockInfo(streamId, numRecords, metadataOption, blockStoreResult) trackerEndpoint.askWithRetry[Boolean](AddBlock(blockInfo)) logDebug(s"Reported block $blockId") }
当ReceiverTracker收到元数据后,会在线程池中启动一个线程来写数据:
case AddBlock(receivedBlockInfo) => if (WriteAheadLogUtils.isBatchingEnabled(ssc.conf, isDriver = true)) { walBatchingThreadPool.execute(new Runnable { override def run(): Unit = Utils.tryLogNonFatalError { if (active) { context.reply(addBlock(receivedBlockInfo)) } else { throw new IllegalStateException("ReceiverTracker RpcEndpoint shut down.") } } }) } else { context.reply(addBlock(receivedBlockInfo)) }
数据的元数据是交由ReceivedBlockTracker管理的。
数据最终被写入到streamIdToUnallocatedBlockQueues中:一个流对应一个数据块信息的队列。
private type ReceivedBlockQueue = mutable.Queue[ReceivedBlockInfo] private val streamIdToUnallocatedBlockQueues = new mutable.HashMap[Int, ReceivedBlockQueue]
每当Streaming 触发job时,会将队列中的数据分配成一个batch,并将数据写入timeToAllocatedBlocks数据结构。
private val timeToAllocatedBlocks = new mutable.HashMap[Time, AllocatedBlocks] .... def allocateBlocksToBatch(batchTime: Time): Unit = synchronized { if (lastAllocatedBatchTime == null || batchTime > lastAllocatedBatchTime) { val streamIdToBlocks = streamIds.map { streamId => (streamId, getReceivedBlockQueue(streamId).dequeueAll(x => true)) }.toMap val allocatedBlocks = AllocatedBlocks(streamIdToBlocks) if (writeToLog(BatchAllocationEvent(batchTime, allocatedBlocks))) { timeToAllocatedBlocks.put(batchTime, allocatedBlocks) lastAllocatedBatchTime = batchTime } else { logInfo(s"Possibly processed batch $batchTime need to be processed again in WAL recovery") } } else { // This situation occurs when: // 1. WAL is ended with BatchAllocationEvent, but without BatchCleanupEvent, // possibly processed batch job or half-processed batch job need to be processed again, // so the batchTime will be equal to lastAllocatedBatchTime. // 2. Slow checkpointing makes recovered batch time older than WAL recovered // lastAllocatedBatchTime. // This situation will only occurs in recovery time. logInfo(s"Possibly processed batch $batchTime need to be processed again in WAL recovery") } }
可见一个batch会包含多个流的数据。
每当Streaming 的一个job运行完毕后:
private def handleJobCompletion(job: Job, completedTime: Long) { val jobSet = jobSets.get(job.time) jobSet.handleJobCompletion(job) job.setEndTime(completedTime) listenerBus.post(StreamingListenerOutputOperationCompleted(job.toOutputOperationInfo)) logInfo("Finished job " + job.id + " from job set of time " + jobSet.time) if (jobSet.hasCompleted) { jobSets.remove(jobSet.time) jobGenerator.onBatchCompletion(jobSet.time) logInfo("Total delay: %.3f s for time %s (execution: %.3f s)".format( jobSet.totalDelay / 1000.0, jobSet.time.toString, jobSet.processingDelay / 1000.0 )) listenerBus.post(StreamingListenerBatchCompleted(jobSet.toBatchInfo)) } ...
JobScheduler会调用handleJobCompletion方法,最终会触发
jobScheduler.receiverTracker.cleanupOldBlocksAndBatches(time - maxRememberDuration)
这里的maxRememberDuration是DStream中每个时刻生成的RDD保留的最长时间。
def cleanupOldBatches(cleanupThreshTime: Time, waitForCompletion: Boolean): Unit = synchronized { require(cleanupThreshTime.milliseconds < clock.getTimeMillis()) val timesToCleanup = timeToAllocatedBlocks.keys.filter { _ < cleanupThreshTime }.toSeq logInfo("Deleting batches " + timesToCleanup) if (writeToLog(BatchCleanupEvent(timesToCleanup))) { timeToAllocatedBlocks --= timesToCleanup writeAheadLogOption.foreach(_.clean(cleanupThreshTime.milliseconds, waitForCompletion)) } else { logWarning("Failed to acknowledge batch clean up in the Write Ahead Log.") } }
而最后
listenerBus.post(StreamingListenerBatchCompleted(jobSet.toBatchInfo))
这个代码会调用
case batchCompleted: StreamingListenerBatchCompleted => listener.onBatchCompleted(batchCompleted) ... 一路跟着下去... /** * A RateController that sends the new rate to receivers, via the receiver tracker. */ private[streaming] class ReceiverRateController(id: Int, estimator: RateEstimator) extends RateController(id, estimator) { override def publish(rate: Long): Unit = ssc.scheduler.receiverTracker.sendRateUpdate(id, rate) }
/** Update a receiver's maximum ingestion rate */ def sendRateUpdate(streamUID: Int, newRate: Long): Unit = synchronized { if (isTrackerStarted) { endpoint.send(UpdateReceiverRateLimit(streamUID, newRate)) } }
case UpdateReceiverRateLimit(streamUID, newRate) => for (info <- receiverTrackingInfos.get(streamUID); eP <- info.endpoint) { eP.send(UpdateRateLimit(newRate)) }
发送调整速率的消息给Receiver,Receiver接到消息后,最终通过BlockGenerator来调整数据的写入的时间,而控制数据流的速率。
case UpdateRateLimit(eps) => logInfo(s"Received a new rate limit: $eps.") registeredBlockGenerators.foreach { bg => bg.updateRate(eps) }
备注:
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