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mapreduce 函数入门 二

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apreduce三大组件:Combiner\Sort\Partitioner

 默认组件:排序,分区(不设置,系统有默认值)

一、mapreduce中的Combiner

    1、什么是combiner

Combiner 是 MapReduce 程序中 Mapper 和 Reducer 之外的一种组件,它的作用是在 maptask 之后给 maptask 的结果进行局部汇总,以减轻 reducetask 的计算负载,减少网络传输
    2、如何使用combiner

  Combiner 和 Reducer 一样,编写一个类,然后继承 Reducer, reduce 方法中写具体的 Combiner 逻辑,然后在 job 中设置 Combiner 类: job.setCombinerClass(FlowSumCombine.class)

(如果combiner和reduce逻辑一样,就不用写combiner类了,直接在job设置信息)

   3、使用combiner注意事项  

(1) Combiner 和 Reducer 的区别在于运行的位置:

      Combiner 是在每一个 maptask 所在的节点运行
      Reducer 是接收全局所有 Mapper 的输出结果
(2) Combiner 的输出 kv 应该跟 reducer 的输入 kv 类型要对应起来
(3) Combiner 的使用要非常谨慎,因为 Combiner 在 MapReduce 过程中可能调用也可能不调 用,可能调一次也可能调多次,所以: Combiner 使用的原则是:有或没有都不能影响业务 逻辑,都不能影响最终结果(求平均值时,combiner和reduce逻辑不一样)
二、mapreduce中的序列化

     1、概述

Java 的序列化是一个重量级序列化框架( Serializable),一个对象被序列化后,会附带很多额 外的信息(各种校验信息, header,继承体系等),不便于在网络中高效传输;所以, hadoop 自己开发了一套序列化机制( Writable),精简,高效
Hadoop 中的序列化框架已经对基本类型和 null 提供了序列化的实现了。分别是:

    2、Java序列化

以案例说明为例:

     3、自定义对象实现mapreduce框架的序列化

如果需要将自定义的 bean 放在 key 中传输,则还需要实现 Comparable 接口,因为 mapreduce框中的 shuffle 过程一定会对 key 进行排序,此时,自定义的 bean 实现的接口应该是:
public class FlowBean implements WritableComparable<FlowBean>
以案例为例说明
下面是进行了序列化的 FlowBean 类:

案例:

 

 

代码:

1、

package com.ghgj.mr.exerciseflow;
 
import java.io.DataInput;
import java.io.DataOutput;
import java.io.IOException;
 
import org.apache.hadoop.io.WritableComparable;
 
public class Flow implements WritableComparable<Flow>{
 
    private String phone;
    private long upflow;    // 上行流量
    private long downflow;  // 下行流量
    private long sumflow;   // 上行和下行流量之和
    public long getUpflow() {
        return upflow;
    }
    public void setUpflow(long upflow) {
        this.upflow = upflow;
    }
    public long getDownflow() {
        return downflow;
    }
    public void setDownflow(long downflow) {
        this.downflow = downflow;
    }
    public long getSumflow() {
        return sumflow;
    }
    public void setSumflow(long sumflow) {
        this.sumflow = sumflow;
    }
    public String getPhone() {
        return phone;
    }
    public void setPhone(String phone) {
        this.phone = phone;
    }
    public Flow() {
    }
    public Flow(long upflow, long downflow, String phone) {
        super();
        this.upflow = upflow;
        this.downflow = downflow;
        this.sumflow = upflow + downflow;
        this.phone = phone;
    }
    @Override
    public String toString() {
        return phone +"\t" + upflow +"\t" + downflow +"\t" + sumflow;
    }
    @Override
    public void write(DataOutput out) throws IOException {
        // TODO Auto-generated method stub
        out.writeLong(upflow);
        out.writeLong(downflow);
        out.writeLong(sumflow);
        out.writeUTF(phone);
    }
    @Override
    public void readFields(DataInput in) throws IOException {
        // TODO Auto-generated method stub
        this.upflow = in.readLong();
        this.downflow = in.readLong();
        this.sumflow = in.readLong();
        this.phone = in.readUTF();
    }
    @Override
    public int compareTo(Flow flow) {
        if((flow.getSumflow() - this.sumflow) == 0){
            return this.phone.compareTo(flow.getPhone());
        }else{
            return (int)(flow.getSumflow() - this.sumflow);
        }
    }
}

 

 2、

package com.ghgj.mr.exerciseflow;
 
import java.io.IOException;
 
import org.apache.hadoop.conf.Configuration;
import org.apache.hadoop.fs.Path;
import org.apache.hadoop.io.LongWritable;
import org.apache.hadoop.io.Text;
import org.apache.hadoop.mapreduce.Job;
import org.apache.hadoop.mapreduce.Mapper;
import org.apache.hadoop.mapreduce.Reducer;
import org.apache.hadoop.mapreduce.lib.input.FileInputFormat;
import org.apache.hadoop.mapreduce.lib.output.FileOutputFormat;
 
/**
 * 手机号  上行流量    下行流量    总流量
 * @author Administrator
 *
 */
public class FlowExercise1 {
 
    public static void main(String[] args) throws Exception {
         
        Configuration conf = new Configuration();
        Job job = Job.getInstance(conf);
         
        job.setJarByClass(FlowExercise1.class);
         
        job.setMapperClass(FlowExercise1Mapper.class);
        job.setReducerClass(FlowExercise1Reducer.class);
         
        job.setMapOutputKeyClass(Text.class);
        job.setMapOutputValueClass(Flow.class);
         
        job.setOutputKeyClass(Text.class);
        job.setOutputValueClass(Text.class);
         
        FileInputFormat.setInputPaths(job, "d:/flow/input");
        FileOutputFormat.setOutputPath(job, new Path("d:/flow/output13"));
         
        boolean status = job.waitForCompletion(true);
        System.exit(status? 0 : 1);
    }
     
    static class FlowExercise1Mapper extends Mapper<LongWritable, Text, Text, Flow>{
        @Override
        protected void map(LongWritable key, Text value,Context context)
                throws IOException, InterruptedException {
            String[] splits = value.toString().split("\t");
             
            String phone = splits[1];
            long upflow = Long.parseLong(splits[8]);
            long downflow = Long.parseLong(splits[9]);
             
            Flow flow = new Flow(upflow, downflow);
            context.write(new Text(phone), flow);
        }
    }
 
    static class FlowExercise1Reducer extends Reducer<Text, Flow, Text, Flow>{
        @Override
        protected void reduce(Text phone, Iterable<Flow> flows, Context context)
                throws IOException, InterruptedException {
             
            long sumUpflow = 0;    // 该phone用户的总上行流量
            long sumDownflow = 0; 
            for(Flow f : flows){
                sumUpflow += f.getUpflow();
                sumDownflow += f.getDownflow();
            }
            Flow sumFlow = new Flow(sumUpflow, sumDownflow);
            context.write(phone, sumFlow);
             
//          String v = sumUpflow +"\t" + sumDownflow +"\t" + (sumUpflow + sumDownflow);
//          context.write(phone, new Text(v));
        }
    }
}

 

3、

package com.ghgj.mr.exerciseflow;
 
import java.io.IOException;
 
import org.apache.hadoop.conf.Configuration;
import org.apache.hadoop.fs.Path;
import org.apache.hadoop.io.LongWritable;
import org.apache.hadoop.io.NullWritable;
import org.apache.hadoop.io.Text;
import org.apache.hadoop.mapreduce.Job;
import org.apache.hadoop.mapreduce.Mapper;
import org.apache.hadoop.mapreduce.Reducer;
import org.apache.hadoop.mapreduce.lib.input.FileInputFormat;
import org.apache.hadoop.mapreduce.lib.output.FileOutputFormat;
 
public class FlowExercise2Sort {
     
    public static void main(String[] args) throws Exception {
         
        Configuration conf = new Configuration();
        Job job = Job.getInstance(conf);
         
        job.setJarByClass(FlowExercise2Sort.class);
         
        job.setMapperClass(FlowExercise2SortMapper.class);
        job.setReducerClass(FlowExercise2SortReducer.class);
         
        job.setMapOutputKeyClass(Flow.class);
        job.setMapOutputValueClass(Text.class);
         
//      job.setCombinerClass(FlowExercise1Combiner.class);
//      job.setCombinerClass(FlowExercise1Reducer.class);
         
        job.setOutputKeyClass(NullWritable.class);
        job.setOutputValueClass(Flow.class);
         
        FileInputFormat.setInputPaths(job, "d:/flow/output1");
        FileOutputFormat.setOutputPath(job, new Path("d:/flow/sortoutput6"));
         
        boolean status = job.waitForCompletion(true);
        System.exit(status? 0 : 1);
    }
     
    static class FlowExercise2SortMapper extends Mapper<LongWritable, Text, Flow, Text>{
        @Override
        protected void map(LongWritable key, Text value,
                Mapper<LongWritable, Text, Flow, Text>.Context context)
                throws IOException, InterruptedException {
             
            String[] splits = value.toString().split("\t");
             
            String phone = splits[0];
            long upflow = Long.parseLong(splits[1]);
            long downflow = Long.parseLong(splits[2]);
//          long sumflow = Long.parseLong(splits[3]);
            Flow flow = new Flow(upflow, downflow, phone);
             
            context.write(flow, new Text(phone));
        }
    }
     
    static class FlowExercise2SortReducer extends Reducer<Flow, Text, NullWritable, Flow>{
        @Override
        protected void reduce(Flow flow, Iterable<Text> phones, Context context)
                throws IOException, InterruptedException {
             
            for(Text t : phones){
                context.write(NullWritable.get(), flow);
            }
        }
    }
}

 

 

 

 三、mapreduce中的sort

  需求: 把上例求得的流量综合从大到小倒序排
  基本思路:实现自定义的 bean 来封装流量信息,并将 bean 作为 map 输出的 key 来传输 MR 程序在处理数据的过程中会对数据排序(map 输出的 kv 对传输到 reduce 之前,会排序), 排序的依据是 map 输出的 key,

         所以,我们如果要实现自己需要的排序规则,则可以考虑将排序因素放到 key 中,让 key 实现接口: WritableComparable, 然后重写 key 的 compareTo 方法(上面第二题)

     四、mapreduce中的partitioner

  需求: 根据归属地输出流量统计数据结果到不同文件,以便于在查询统计结果时可以定位到 省级范围进行
  思路:MapReduce 中会将 map 输出的 kv 对,按照相同 key 分组,然后分发给不同的 reducetask
  默认的分发规则为:根据 key 的 hashcode%reducetask 数来分发, 所以:如果要按照我们自 己的需求进行分组,则需要改写数据分发(分组)组件 Partitioner
  自定义一个 CustomPartitioner 继承抽象类: Partitioner
  然后在 job 对象中,设置自定义 partitioner: job.setPartitionerClass(ProvincePartitioner.class)(上面第三题)

 

 参考:https://www.cnblogs.com/liuwei6/p/6709931.html

 

posted @ 2019-05-20 21:51  -涂涂-  阅读(221)  评论(0编辑  收藏  举报