spark提交任务的两种的方法

  在学习Spark过程中,资料中介绍的提交Spark Job的方式主要有两种(我所知道的):

第一种:

   通过命令行的方式提交Job,使用spark 自带的spark-submit工具提交,官网和大多数参考资料都是已这种方式提交的,提交命令示例如下:
./spark-submit --class com.learn.spark.SimpleApp --master yarn --deploy-mode client --driver-memory 2g --executor-memory 2g --executor-cores 3 ../spark-demo.jar
参数含义就不解释了,请参考官网资料。
 第二种:

   提交方式是已JAVA API编程的方式提交,这种方式不需要使用命令行,直接可以在IDEA中点击Run 运行包含Job的Main类就行,Spark 提供了以SparkLanuncher 作为唯一入口的API来实现。这种方式很方便(试想如果某个任务需要重复执行,但是又不会写linux 脚本怎么搞?我想到的是以JAV API的方式提交Job, 还可以和Spring整合,让应用在tomcat中运行),官网的示例:http://spark.apache.org/docs/latest/api/java/index.html?org/apache/spark/launcher/package-summary.html

根据官网的示例,通过JAVA API编程的方式提交有两种方式:

        第一种是调用SparkLanuncher实例的startApplication方法,但是这种方式在所有配置都正确的情况下使用运行都会失败的,原因是startApplication方法会调用LauncherServer启动一个进程与集群交互,这个操作貌似是异步的,所以可能结果是main主线程结束了这个进程都没有起起来,导致运行失败。解决办法是调用new SparkLanuncher().startApplication后需要让主线程休眠一定的时间后者是使用下面的例子:

 1 package com.learn.spark; 
 2 
 3 import org.apache.spark.launcher.SparkAppHandle; 
 4 import org.apache.spark.launcher.SparkLauncher; 
 5 
 6 import java.io.IOException; 
 7 import java.util.HashMap; 
 8 import java.util.concurrent.CountDownLatch; 
 9 
10 public class LanuncherAppV { 
11     public static void main(String[] args) throws IOException, InterruptedException { 
12 
13 
14         HashMap env = new HashMap(); 
15         //这两个属性必须设置 
16         env.put("HADOOP_CONF_DIR", "/usr/local/hadoop/etc/overriterHaoopConf"); 
17         env.put("JAVA_HOME", "/usr/local/java/jdk1.8.0_151"); 
18         //可以不设置 
19         //env.put("YARN_CONF_DIR",""); 
20         CountDownLatch countDownLatch = new CountDownLatch(1); 
21         //这里调用setJavaHome()方法后,JAVA_HOME is not set 错误依然存在 
22         SparkAppHandle handle = new SparkLauncher(env) 
23         .setSparkHome("/usr/local/spark") 
24         .setAppResource("/usr/local/spark/spark-demo.jar") 
25         .setMainClass("com.learn.spark.SimpleApp") 
26         .setMaster("yarn") 
27         .setDeployMode("cluster") 
28         .setConf("spark.app.id", "11222") 
29         .setConf("spark.driver.memory", "2g") 
30         .setConf("spark.akka.frameSize", "200") 
31         .setConf("spark.executor.memory", "1g") 
32         .setConf("spark.executor.instances", "32") 
33         .setConf("spark.executor.cores", "3") 
34         .setConf("spark.default.parallelism", "10") 
35         .setConf("spark.driver.allowMultipleContexts", "true") 
36         .setVerbose(true).startApplication(new SparkAppHandle.Listener() { 
37         //这里监听任务状态,当任务结束时(不管是什么原因结束),isFinal()方法会返回true,否则返回false 
38          @Override 
39         public void stateChanged(SparkAppHandle sparkAppHandle) { 
40             if (sparkAppHandle.getState().isFinal()) { 
41                 countDownLatch.countDown(); 
42             } 
43             System.out.println("state:" + sparkAppHandle.getState().toString()); 
44         } 
45 
46 
47         @Override 
48         public void infoChanged(SparkAppHandle sparkAppHandle) { 
49             System.out.println("Info:" + sparkAppHandle.getState().toString()); 
50         } 
51     }); 
52     System.out.println("The task is executing, please wait ...."); 
53     //线程等待任务结束 
54     countDownLatch.await(); 
55     System.out.println("The task is finished!"); 
56 
57 
58     } 
59 } 

 注意:如果部署模式是cluster,但是代码中有标准输出的话将看不到,需要把结果写到HDFS中,如果是client模式则可以看到输出。

第二种方式是:通过SparkLanuncher.lanunch()方法获取一个进程,然后调用进程的process.waitFor()方法等待线程返回结果,但是使用这种方式需要自己管理运行过程中的输出信息,比较麻烦,好处是一切都在掌握之中,即获取的输出信息和通过命令提交的方式一样,很详细,实现如下:


 1 package com.learn.spark; 
 2 
 3 import org.apache.spark.launcher.SparkAppHandle; 
 4 import org.apache.spark.launcher.SparkLauncher; 
 5 
 6 import java.io.IOException; 
 7 import java.util.HashMap; 
 8 
 9 public class LauncherApp { 
10 
11 public static void main(String[] args) throws IOException, InterruptedException { 
12 
13     HashMap env = new HashMap(); 
14     //这两个属性必须设置 
15     env.put("HADOOP_CONF_DIR","/usr/local/hadoop/etc/overriterHaoopConf"); 
16     env.put("JAVA_HOME","/usr/local/java/jdk1.8.0_151"); 
17     //env.put("YARN_CONF_DIR",""); 
18 
19     SparkLauncher handle = new SparkLauncher(env) 
20         .setSparkHome("/usr/local/spark") 
21         .setAppResource("/usr/local/spark/spark-demo.jar") 
22         .setMainClass("com.learn.spark.SimpleApp") 
23         .setMaster("yarn") 
24         .setDeployMode("cluster") 
25         .setConf("spark.app.id", "11222") 
26         .setConf("spark.driver.memory", "2g") 
27         .setConf("spark.akka.frameSize", "200") 
28         .setConf("spark.executor.memory", "1g") 
29         .setConf("spark.executor.instances", "32") 
30         .setConf("spark.executor.cores", "3") 
31         .setConf("spark.default.parallelism", "10") 
32         .setConf("spark.driver.allowMultipleContexts","true") 
33         .setVerbose(true); 
34 
35 
36     Process process =handle.launch(); 
37     InputStreamReaderRunnable inputStreamReaderRunnable = new InputStreamReaderRunnable(process.getInputStream(), "input"); 
38     Thread inputThread = new Thread(inputStreamReaderRunnable, "LogStreamReader input"); 
39     inputThread.start(); 
40 
41     InputStreamReaderRunnable errorStreamReaderRunnable = new InputStreamReaderRunnable(process.getErrorStream(), "error"); 
42     Thread errorThread = new Thread(errorStreamReaderRunnable, "LogStreamReader error"); 
43     errorThread.start(); 
44 
45     System.out.println("Waiting for finish..."); 
46     int exitCode = process.waitFor(); 
47     System.out.println("Finished! Exit code:" + exitCode); 
48 
49     } 
50 }

使用的自定义InputStreamReaderRunnable类实现如下:
 1 package com.learn.spark; 
 2 
 3 import java.io.BufferedReader; 
 4 import java.io.IOException; 
 5 import java.io.InputStream; 
 6 import java.io.InputStreamReader; 
 7 
 8 public class InputStreamReaderRunnable implements Runnable { 
 9 
10   private BufferedReader reader; 
11 
12   private String name; 
13 
14   public InputStreamReaderRunnable(InputStream is, String name) { 
15     this.reader = new BufferedReader(new InputStreamReader(is)); 
16     this.name = name; 
17   } 
18 
19   public void run() {
20  
21     System.out.println("InputStream " + name + ":"); 
22     try { 
23         String line = reader.readLine(); 
24         while (line != null) { 
25            System.out.println(line); 
26            line = reader.readLine(); 
27         } 
28         reader.close(); 
29       } catch (IOException e) { 
30         e.printStackTrace(); 
31       } 
32    } 
33 } 



原文地址:https://www.cnblogs.com/lyy-blog/p/8522616.html