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MapReduce :通过数据具有爷孙关系的结果

发表于:2024-11-26 作者:千家信息网编辑
千家信息网最后更新 2024年11月26日,1)启动环境start-all.sh2)产看状态jps0613 NameNode10733 DataNode3455 NodeManager15423 Jps11082 ResourceManager
千家信息网最后更新 2024年11月26日MapReduce :通过数据具有爷孙关系的结果

1)启动环境

start-all.sh


2)产看状态

jps

0613 NameNode

10733 DataNode

3455 NodeManager

15423 Jps

11082 ResourceManager

10913 SecondaryNameNode


3)利用Eclipse编写jar


1.编写 MapCal类


package com.mp;


import java.io.IOException;


import org.apache.hadoop.io.LongWritable;

import org.apache.hadoop.io.Text;


import org.apache.hadoop.mapreduce.Mapper;


public class MapCal extends Mapper {


@Override

protected void map(LongWritable lon, Text value, Context context)

throws IOException, InterruptedException {


String line = value.toString();

String[] peps = line.split("-");

// 键值对

context.write(new Text(peps[0]), new Text("s" + peps[1]));

context.write(new Text(peps[1]), new Text("g" + peps[0]));


}


}

2.编写ReduceCal类


public class ReduceCal extends Reducer {


@Override

protected void reduce(Text arg0, Iterable arg1, Context context)

throws IOException, InterruptedException {

ArrayList grands = new ArrayList();

ArrayList sons = new ArrayList();

// 把这些值写入集合

for (Text text : arg1) {

String str = text.toString();

if (str.startsWith("g")) {

grands.add(text);

} else {

sons.add(text);

}

}

// 输出


for (int i = 0; i < sons.size(); i++) {

for (int j = 0; j < grands.size(); j++) {

context.write(grands.get(i), sons.get(j));

}

}


}


}

3. 编写Jobrun类





public class RunJob {


// 全限定名

public static void main(String[] args) {

Configuration conf = new Configuration();

// 本地多线程模拟执行。

// conf.set("fs.defaultFS", "hdfs://node3:8020");

// conf.set("mapred.jar", "C:\\Users\\Administrator\\Desktop\\wc.jar");

try {

FileSystem fs = FileSystem.get(conf);


Job job = Job.getInstance(conf);

job.setJobName("wc");

job.setJarByClass(RunJob.class);


job.setMapperClass(WordCountMapper.class);

job.setReducerClass(WordCountReduce.class);


job.setMapOutputKeyClass(Text.class);

job.setMapOutputValueClass(IntWritable.class);


// job 输入数据和输出数据的目录

FileInputFormat.addInputPath(job, new Path("/word.txt"));


Path outPath = new Path("/output/wc2");// job执行结果存放的目录。该目录在执行前不能存在。


if (fs.exists(outPath)) {

fs.delete(outPath, true);

}

FileOutputFormat.setOutputPath(job, outPath);


boolean f = job.waitForCompletion(true);

if (f) {

System.out.println("任务执行成功!");

}

} catch (Exception e) {

e.printStackTrace();

}


}

}




4)导出jar包.


5)通过ftp上传jar到linux目录


6)运行jar包

hadoop jar shuju.jar com.mc.RunJob / /outg


7)如果map和reduce都100%



Shuffle Errors

BAD_ID=0

CONNECTION=0

IO_ERROR=0

WRONG_LENGTH=0

WRONG_MAP=0

WRONG_REDUCE=0

File Input Format Counters

Bytes Read=45

File Output Format Counters

Bytes Written=18



表示运行成功!!

8)产看结果

hadoop fs -tail /outg/part-r-00000


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