八、MapReduce--job提交源码分析
一、源码分析
1、提交job的入口
通过 job.waitForCompletion(true)完成job的提交以及运行,下面从这个方法入手分析源码。
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//-----------------job.java
public boolean waitForCompletion(boolean verbose) throws IOException, InterruptedException, ClassNotFoundException {
//如果job的状态为未运行,则提交任务
if (this.state == Job.JobState.DEFINE) {
this.submit();
}
if (verbose) {
//监控并打印运行信息
this.monitorAndPrintJob();
} else {
int completionPollIntervalMillis = getCompletionPollInterval(this.cluster.getConf());
while(!this.isComplete()) {
try {
Thread.sleep((long)completionPollIntervalMillis);
} catch (InterruptedException var4) {
}
}
}
return this.isSuccessful();
}
2、this.submit() 提交job
//-----------------job.java
public void submit() throws IOException, InterruptedException, ClassNotFoundException {
//确定job状态为未运行
this.ensureState(Job.JobState.DEFINE);
//使用新api
this.setUseNewAPI();
//主要就是初始化cluster对象中的client,用于和集群连接通信。分为yarn client和local client
this.connect();
//通过cluster对象获取job提交器,将存储job信息的文件系统以及client作为参数
final JobSubmitter submitter = this.getJobSubmitter(this.cluster.getFileSystem(), this.cluster.getClient());
//提交job,并运行
this.status = (JobStatus)this.ugi.doAs(new PrivilegedExceptionAction() {
public JobStatus run() throws IOException, InterruptedException, ClassNotFoundException {
//这里是提交job,运行,返回状态
return submitter.submitJobInternal(Job.this, Job.this.cluster);
}
});
this.state = Job.JobState.RUNNING;
LOG.info("The url to track the job: " + this.getTrackingURL());
}
上面这里涉及到三个重要过程方法:
this.connect() 主要初始化了提交job的client
this.getJobSubmitter() 给job封装了很多api
submitter.submitJobInternal(Job.this, Job.this.cluster) 提交job,并运行
下面详细看看这三个方法具体做了啥
3、this.connect()初始化client
//-----------------job.java
private synchronized void connect() throws IOException, InterruptedException, ClassNotFoundException {
//创建cluster连接对象,用于连接集群,提供了很多api
if (this.cluster == null) {
this.cluster = (Cluster)this.ugi.doAs(new PrivilegedExceptionAction() {
public Cluster run() throws IOException, InterruptedException, ClassNotFoundException {
return new Cluster(Job.this.getConfiguration());
}
});
}
}
这代码最重要的就是创建了一个 Cluster对象,下面看看这个类的构造方法。
//----------------------------Cluster.java
public Cluster(Configuration conf) throws IOException {
this((InetSocketAddress)null, conf);
}
public Cluster(InetSocketAddress jobTrackAddr, Configuration conf) throws IOException {
this.fs = null;
this.sysDir = null;
//job工作目录
this.stagingAreaDir = null;
this.jobHistoryDir = null;
//客户端和server通信协议提供者
this.providerList = null;
//将job的配置conf保存
this.conf = conf;
//获取当前用户
this.ugi = UserGroupInformation.getCurrentUser();
//对job提交器client进行初始化
this.initialize(jobTrackAddr, conf);
}
//这里就是初始化client的方法了,主要就是获得 this.client
private void initialize(InetSocketAddress jobTrackAddr, Configuration conf) throws IOException {
this.initProviderList();
Iterator i$ = this.providerList.iterator();
while(i$.hasNext()) {
/*
provider这里也有分 YarnClientProtocolProvider 以及LocalClientProtocolProvider
即本地和yarn两种provider
*/
ClientProtocolProvider provider = (ClientProtocolProvider)i$.next();
LOG.debug("Trying ClientProtocolProvider : " + provider.getClass().getName());
ClientProtocol clientProtocol = null;
try {
/*判断jobTrackAddr是否为空,也就是以远程集群还是本地的方式运行job.
远程集群的话,就创建yarn 提交器,:YARNRunner,通过YarnClientProtocolProvider创建
本地的话,就创建本地local 提交器:LocalRunner,通过 LocalClientProtocolProvider创建
主要是根据 mapreduce.framework.name 在conf中的值是local还是yarn来创建对应的runner
*/
if (jobTrackAddr == null) {
clientProtocol = provider.create(conf);
} else {
clientProtocol = provider.create(jobTrackAddr, conf);
}
if (clientProtocol != null) {
this.clientProtocolProvider = provider;
//可以看到这里client就是上面通过provider创建的
this.client = clientProtocol;
LOG.debug("Picked " + provider.getClass().getName() + " as the ClientProtocolProvider");
//只要成功创建了client 和 provider就退出
break;
}
LOG.debug("Cannot pick " + provider.getClass().getName() + " as the ClientProtocolProvider - returned null protocol");
} catch (Exception var7) {
LOG.info("Failed to use " + provider.getClass().getName() + " due to error: ", var7);
}
}
if (null == this.clientProtocolProvider || null == this.client) {
throw new IOException("Cannot initialize Cluster. Please check your configuration for mapreduce.framework.name and the correspond server addresses.");
}
}
可以看到Cluster对象主要就是初始化了 clientProtocolProvider 以及 client 两个对象。
也就是provider和client,client是通过provider.create创建的。
下面可以看看ClientProtocolProvider和 ClientProtocol这两个类。这两个类都是抽象类,那么看他们对应有哪些实现子类。
ClientProtocolProvider:
YarnClientProtocolProvider
LocalClientProtocolProvider
ClientProtocol:
YARNRunner
LocalJobRunner
可以看看YarnClientProtocolProvider 以及LocalClientProtocolProvider的create方法
public class LocalClientProtocolProvider extends ClientProtocolProvider {
.........
public ClientProtocol create(Configuration conf) throws IOException {
String framework = conf.get("mapreduce.framework.name", "local");
if (!"local".equals(framework)) {
return null;
} else {
conf.setInt("mapreduce.job.maps", 1);
//创建LocalJobRunner
return new LocalJobRunner(conf);
}
}
.....................
}
//===============================================================
public class YarnClientProtocolProvider extends ClientProtocolProvider {
...................................
public ClientProtocol create(Configuration conf) throws IOException {
//创建 YARNRunner
return "yarn".equals(conf.get("mapreduce.framework.name")) ? new YARNRunner(conf) : null;
}
...........................
}
总的来说,就是provider分为YarnClientProtocolProvider 以及LocalClientProtocolProvider,分别用于创建client中的 YARNRunner 和 LocalJobRunner。表示job运行方式有本地和yarn两种。
至此,this.client以及this.provider这两个在Cluster对象中的对象初始化完成。
4、this.getJobSubmitter()封装submitter
//-------------------job.java
public JobSubmitter getJobSubmitter(FileSystem fs, ClientProtocol submitClient) throws IOException {
return new JobSubmitter(fs, submitClient);
}
创建个 JobSubmitter对象,看看构造方法
//------------------JobSubmitter.java
JobSubmitter(FileSystem submitFs, ClientProtocol submitClient) throws IOException {
this.submitClient = submitClient;
this.jtFs = submitFs;
}
看起来,没啥特别, 就是把文件系统fs以及 上面cluster中初始化的client保存起来。但是其实这个类中有很多方法后面会调用。后面讲
5、submitter.submitJobInternal()提交job
这个方法是整个job提交过程中的核心,要注意看
//------------------JobSubmitter.java
JobStatus submitJobInternal(Job job, Cluster cluster) throws ClassNotFoundException, InterruptedException, IOException {
//检查配置的输出是否已存在,已存在会抛出异常
this.checkSpecs(job);
Configuration conf = job.getConfiguration();
addMRFrameworkToDistributedCache(conf);
//获取所有job工作总目录
Path jobStagingArea = JobSubmissionFiles.getStagingDir(cluster, conf);
//获取ip地址对象
InetAddress ip = InetAddress.getLocalHost();
//设置提交job的主机名和ip
if (ip != null) {
this.submitHostAddress = ip.getHostAddress();
this.submitHostName = ip.getHostName();
conf.set("mapreduce.job.submithostname", this.submitHostName);
conf.set("mapreduce.job.submithostaddress", this.submitHostAddress);
}
//通过client向集群申请运行job,获取到对应的jobid.这个submitclient是前面cluster初始化完成的
JobID jobId = this.submitClient.getNewJobID();
job.setJobID(jobId);
//创建存储job相关资源数据的目录对象.存储job配置文件、切片信息文件、程序jar包等
Path submitJobDir = new Path(jobStagingArea, jobId.toString());
JobStatus status = null;
JobStatus var24;
try {
conf.set("mapreduce.job.user.name", UserGroupInformation.getCurrentUser().getShortUserName());
conf.set("hadoop.http.filter.initializers", "org.apache.hadoop.yarn.server.webproxy.amfilter.AmFilterInitializer");
conf.set("mapreduce.job.dir", submitJobDir.toString());
LOG.debug("Configuring job " + jobId + " with " + submitJobDir + " as the submit dir");
//获取访问namenode中特定目录授权
TokenCache.obtainTokensForNamenodes(job.getCredentials(), new Path[]{submitJobDir}, conf);
this.populateTokenCache(conf, job.getCredentials());
//验证token相关
if (TokenCache.getShuffleSecretKey(job.getCredentials()) == null) {
KeyGenerator keyGen;
try {
keyGen = KeyGenerator.getInstance("HmacSHA1");
keyGen.init(64);
} catch (NoSuchAlgorithmException var19) {
throw new IOException("Error generating shuffle secret key", var19);
}
SecretKey shuffleKey = keyGen.generateKey();
TokenCache.setShuffleSecretKey(shuffleKey.getEncoded(), job.getCredentials());
}
if (CryptoUtils.isEncryptedSpillEnabled(conf)) {
conf.setInt("mapreduce.am.max-attempts", 1);
LOG.warn("Max job attempts set to 1 since encrypted intermediatedata spill is enabled");
}
//复制job的临时文件,以及运行的jar包到submitJobDir下
this.copyAndConfigureFiles(job, submitJobDir);
//获取存储job配置信息文件路径,一般命名为:submitJobDir/job.xml
Path submitJobFile = JobSubmissionFiles.getJobConfPath(submitJobDir);
LOG.debug("Creating splits at " + this.jtFs.makeQualified(submitJobDir));
//将切片信息存储到submitJobDir下,并返回切片数目。会调用 InputFormat.getSplits()来获取规划的切片信息
//切片信息会写入到 submitJobDir/job.split,切片信息条目的元信息写入到 submitJobDir/job.splitmetainfo
int maps = this.writeSplits(job, submitJobDir);
conf.setInt("mapreduce.job.maps", maps);
LOG.info("number of splits:" + maps);
//传输队列名称
String queue = conf.get("mapreduce.job.queuename", "default");
//submitClient其实就是cluster的client
AccessControlList acl = this.submitClient.getQueueAdmins(queue);
conf.set(QueueManager.toFullPropertyName(queue, QueueACL.ADMINISTER_JOBS.getAclName()), acl.getAclString());
TokenCache.cleanUpTokenReferral(conf);
if (conf.getBoolean("mapreduce.job.token.tracking.ids.enabled", false)) {
ArrayList trackingIds = new ArrayList();
Iterator i$ = job.getCredentials().getAllTokens().iterator();
while(i$.hasNext()) {
Token extends TokenIdentifier> t = (Token)i$.next();
trackingIds.add(t.decodeIdentifier().getTrackingId());
}
conf.setStrings("mapreduce.job.token.tracking.ids", (String[])trackingIds.toArray(new String[trackingIds.size()]));
}
ReservationId reservationId = job.getReservationId();
if (reservationId != null) {
conf.set("mapreduce.job.reservation.id", reservationId.toString());
}
//将job的configuration信息写入到 submitJobDir/job.xml
this.writeConf(conf, submitJobFile);
this.printTokens(jobId, job.getCredentials());
//通过client提交job,包括job资源目录,验证信息.
//这里要看使用的client是YARNRunner还是LocalRunner
//最后返回提交job的状态
status = this.submitClient.submitJob(jobId, submitJobDir.toString(), job.getCredentials());
if (status == null) {
throw new IOException("Could not launch job");
}
var24 = status;
} finally {
//如果提交任务失败,则删除jobdir
if (status == null) {
LOG.info("Cleaning up the staging area " + submitJobDir);
if (this.jtFs != null && submitJobDir != null) {
this.jtFs.delete(submitJobDir, true);
}
}
}
return var24;
}
总结一下上面的主要流程:
(1)Path jobStagingArea = JobSubmissionFiles.getStagingDir(cluster, conf);
获取job总的工作目录
(2)JobID jobId = this.submitClient.getNewJobID();
job.setJobID(jobId);
通过处理client向集群申请jobid,并保持到job的配置信息中。
(3)Path submitJobDir = new Path(jobStagingArea, jobId.toString());
获取当前job的工作目录,以及jobid命名
(4)this.copyAndConfigureFiles(job, submitJobDir);
复制job的临时文件,运行的jar包到submitJobDir下
(5)Path submitJobFile = JobSubmissionFiles.getJobConfPath(submitJobDir);
获取job配置信息文件的路径。命名为:submitJobDir/job.xml
(6)int maps = this.writeSplits(job, submitJobDir);
将切片信息存储到submitJobDir下,并返回切片数目。会调用 InputFormat.getSplits()来获取规划的切片信息。切片信息会写入到 submitJobDir/job.split,切片信息条目的元信息写入到 submitJobDir/job.splitmetainfo。
(7)this.writeConf(conf, submitJobFile);
将job配置信息写入到 submitJobDir/job.xml 中
(8)status = this.submitClient.submitJob(jobId, submitJobDir.toString(), job.getCredentials());
正式提交job,获取job的提交状态
下面挑比较复杂的看看这些的具体实现。
重点在于job任务的资源的生成,如切片文件的生成。
=================================================================
(1)this.copyAndConfigureFiles(job, submitJobDir);
复制job的临时文件,运行的jar包到submitJobDir下
//------------------JobSubmitter.java
private void copyAndConfigureFiles(Job job, Path jobSubmitDir) throws IOException {
JobResourceUploader rUploader = new JobResourceUploader(this.jtFs);
rUploader.uploadFiles(job, jobSubmitDir);
job.getWorkingDirectory();
}
//----------------------JobResourceUploader.java
public void uploadFiles(Job job, Path submitJobDir) throws IOException {
......................
String files = conf.get("tmpfiles");
String libjars = conf.get("tmpjars");
String archives = conf.get("tmparchives");
String jobJar = job.getJar();
..................代码长,就截取一点,这些就是要复制到job目录的文件类型
}
可以看到主要复制jar包以及相关的文件到job工作目录下。
(2)Path submitJobFile = JobSubmissionFiles.getJobConfPath(submitJobDir);
获取job配置信息文件的路径。命名为:submitJobDir/job.xml
//-----------------------------JobSubmissionFiles.java
public static Path getJobConfPath(Path jobSubmitDir) {
return new Path(jobSubmitDir, "job.xml");
}
(3)int maps = this.writeSplits(job, submitJobDir);
将切片信息存储到submitJobDir下,并返回切片数目。会调用 InputFormat.getSplits()来获取规划的切片信息。切片信息会写入到 submitJobDir/job.split,切片信息条目的元信息写入到 submitJobDir/job.splitmetainfo。返回的是切片数目
//------------------------JobSubmitter.java
private int writeSplits(JobContext job, Path jobSubmitDir) throws IOException, InterruptedException, ClassNotFoundException {
JobConf jConf = (JobConf)job.getConfiguration();
int maps;
if (jConf.getUseNewMapper()) {
maps = this.writeNewSplits(job, jobSubmitDir);
} else {
maps = this.writeOldSplits(jConf, jobSubmitDir);
}
return maps;
}
没什么特别的,主要就是区分新旧api,我们看 this.writeNewSplits
//------------------------JobSubmitter.java
private int writeNewSplits(JobContext job, Path jobSubmitDir) throws IOException, InterruptedException, ClassNotFoundException {
Configuration conf = job.getConfiguration();
//反射获取指定的inputformat对象,默认TextInputFormat
InputFormat, ?> input = (InputFormat)ReflectionUtils.newInstance(job.getInputFormatClass(), conf);
//通过inputformat的getSplits() 生成获取规划切片信息
List splits = input.getSplits(job);
T[] array = (InputSplit[])((InputSplit[])splits.toArray(new InputSplit[splits.size()]));
Arrays.sort(array, new JobSubmitter.SplitComparator());
//创建切片文件原始数据文件,以及元数据文件
JobSplitWriter.createSplitFiles(jobSubmitDir, conf, jobSubmitDir.getFileSystem(conf), array);
return array.length;
}
获取 inputformat对象,通过inputformat的getSplits() 获取规划切片信息,然后JobSplitWriter.createSplitFiles()创建切片信息文件。下面最后这个方法
//------------------JobSplitWriter.createSplitFiles
public static void createSplitFiles(Path jobSubmitDir, Configuration conf, FileSystem fs, T[] splits) throws IOException, InterruptedException {
//创建切片输出流,文件命名为 jobSubmitDir/job.split
FSDataOutputStream out = createFile(fs, JobSubmissionFiles.getJobSplitFile(jobSubmitDir), conf);
//将数组中的每个切片元信息进行序列化,并将切片信息写入到jobSubmitDir/job.split中
//返回的是每个切片条目的元信息,比如每条切片信息在 job.split中的起始位置,长度等
SplitMetaInfo[] info = writeNewSplits(conf, splits, out);
out.close();
//将切片信息文件的元信息写入到文件 jobSubmitDir/job.splitmetainfo 中
writeJobSplitMetaInfo(fs, JobSubmissionFiles.getJobSplitMetaFile(jobSubmitDir), new FsPermission(JobSubmissionFiles.JOB_FILE_PERMISSION), 1, info);
}
这里主要生成两个主要文件
jobSubmitDir/job.split:切片信息文件,记录每个切片的信息,比如路径,block位置,偏移量等
jobSubmitDir/job.splitmetainfo:切片信息文件中每个信息条目的索引位置,如每条切片信息在 job.split中的起始位置,长度等
下面看看这两个文件的生成
首先是jobSubmitDir/job.split
private static SplitMetaInfo[] writeNewSplits(Configuration conf, T[] array, FSDataOutputStream out) throws IOException, InterruptedException {
SplitMetaInfo[] info = new SplitMetaInfo[array.length];
if (array.length != 0) {
SerializationFactory factory = new SerializationFactory(conf);
int i = 0;
int maxBlockLocations = conf.getInt("mapreduce.job.max.split.locations", 10);
long offset = out.getPos();
InputSplit[] arr$ = array;
int len$ = array.length;
//循环将切片信息中每一条切片信息写入到文件中,并生成每条切片信息的元信息
for(int i$ = 0; i$ < len$; ++i$) {
T split = arr$[i$];
long prevCount = out.getPos();
Text.writeString(out, split.getClass().getName());
Serializer serializer = factory.getSerializer(split.getClass());
serializer.open(out);
//将切片信息对象序列化存储到文件中
serializer.serialize(split);
long currCount = out.getPos();
String[] locations = split.getLocations();
if (locations.length > maxBlockLocations) {
LOG.warn("Max block location exceeded for split: " + split + " splitsize: " + locations.length + " maxsize: " + maxBlockLocations);
locations = (String[])Arrays.copyOf(locations, maxBlockLocations);
}
//生成每条切片信息的元信息
info[i++] = new SplitMetaInfo(locations, offset, split.getLength());
offset += currCount - prevCount;
}
}
return info;
}
主要就是将split中的切片信息条目对象序列化写入到文件中,并生成jobSubmitDir/job.splitmetainfo中要写入的信息,也就是切片文件的索引信息
接着看看 writeJobSplitMetaInfo()
private static void writeJobSplitMetaInfo(FileSystem fs, Path filename, FsPermission p, int splitMetaInfoVersion, SplitMetaInfo[] allSplitMetaInfo) throws IOException {
//写入切片信息条目的元信息,创建一个输出流
FSDataOutputStream out = FileSystem.create(fs, filename, p);
out.write(JobSplit.META_SPLIT_FILE_HEADER);
WritableUtils.writeVInt(out, splitMetaInfoVersion);
WritableUtils.writeVInt(out, allSplitMetaInfo.length);
SplitMetaInfo[] arr$ = allSplitMetaInfo;
int len$ = allSplitMetaInfo.length;
//逐条写入
for(int i$ = 0; i$ < len$; ++i$) {
SplitMetaInfo splitMetaInfo = arr$[i$];
splitMetaInfo.write(out);
}
out.close();
}
这里其实很明显了,就是将切片文件索引信息写入到 jobSubmitDir/job.splitmetainfo
(4)status = this.submitClient.submitJob(jobId, submitJobDir.toString(), job.getCredentials());
正式提交job,获取job的提交状态
public JobStatus submitJob(JobID jobId, String jobSubmitDir, Credentials ts) throws IOException, InterruptedException {
this.addHistoryToken(ts);
//这里就是将job配置,以及job资源的hdfs目录路径传入
ApplicationSubmissionContext appContext = this.createApplicationSubmissionContext(this.conf, jobSubmitDir, ts);
try {
//提交job,返回的appid
ApplicationId applicationId = this.resMgrDelegate.submitApplication(appContext);
//根据appid创建appMaster
ApplicationReport appMaster = this.resMgrDelegate.getApplicationReport(applicationId);
String diagnostics = appMaster == null ? "application report is null" : appMaster.getDiagnostics();
if (appMaster != null && appMaster.getYarnApplicationState() != YarnApplicationState.FAILED && appMaster.getYarnApplicationState() != YarnApplicationState.KILLED) {
return this.clientCache.getClient(jobId).getJobStatus(jobId);
} else {
throw new IOException("Failed to run job : " + diagnostics);
}
} catch (YarnException var8) {
throw new IOException(var8);
}
}
这里主要就是提交job,创建appMaster。最后获取job状态。
二、总结
一个job提交流程主要如下:
1、和MapReduce集群建立连接 this.connect()
这里面最重要就是创建了 client,有 YARNRunner和LocalJobRunner两种方式。后续用来和server端通信、提交job等。
2、正式提交job ,submitter.submitJobInternal(Job.this, cluster)
(1)Path jobStagingArea = JobSubmissionFiles.getStagingDir(cluster, conf);
获取job总的工作目录
(2)JobID jobId = this.submitClient.getNewJobID();
job.setJobID(jobId);
通过处理client向集群申请jobid,并保持到job的配置信息中。
(3)Path submitJobDir = new Path(jobStagingArea, jobId.toString());
获取当前job的工作目录,以及jobid命名
(4)this.copyAndConfigureFiles(job, submitJobDir);
复制job的临时文件,运行的jar包到submitJobDir下
(5)Path submitJobFile = JobSubmissionFiles.getJobConfPath(submitJobDir);
获取job配置信息文件的路径。命名为:submitJobDir/job.xml
(6)int maps = this.writeSplits(job, submitJobDir);
将切片信息存储到submitJobDir下,并返回切片数目。会调用 InputFormat.getSplits()来获取规划的切片信息。切片信息会写入到 submitJobDir/job.split,切片信息条目的元信息写入到 submitJobDir/job.splitmetainfo。
(7)this.writeConf(conf, submitJobFile);
将job配置信息写入到 submitJobDir/job.xml 中
(8)status = this.submitClient.submitJob(jobId, submitJobDir.toString(), job.getCredentials());
正式提交job,获取job的提交状态
本文标题:八、MapReduce--job提交源码分析
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