Hadoop学习之路(7)MapReduce自定义排序
本文测试文本:
tom 20 8000 nancy 22 8000 ketty 22 9000 stone 19 10000 green 19 11000 white 39 29000 socrates 30 40000
MapReduce中,根据key进行分区、排序、分组
MapReduce会按照基本类型对应的key进行排序,如int类型的IntWritable,long类型的LongWritable,Text类型,默认升序排序
为什么要自定义排序规则?现有需求,需要自定义key类型,并自定义key的排序规则,如按照人的salary降序排序,若相同,则再按age升序排序
以Text类型为例:
Text类实现了WritableComparable
接口,并且有write()
、readFields()
和compare()
方法readFields()
方法:用来反序列化操作write()
方法:用来序列化操作
所以要想自定义类型用来排序需要有以上的方法
自定义类代码:
import org.apache.hadoop.io.WritableComparable; import java.io.DataInput; import java.io.DataOutput; import java.io.IOException; public class Person implements WritableComparable<Person> { private String name; private int age; private int salary; public Person() { } public Person(String name, int age, int salary) { //super(); this.name = name; this.age = age; this.salary = salary; } public String getName() { return name; } public void setName(String name) { this.name = name; } public int getAge() { return age; } public void setAge(int age) { this.age = age; } public int getSalary() { return salary; } public void setSalary(int salary) { this.salary = salary; } @Override public String toString() { return this.salary + " " + this.age + " " + this.name; } //先比较salary,高的排序在前;若相同,age小的在前 public int compareTo(Person o) { int compareResult1= this.salary - o.salary; if(compareResult1 != 0) { return -compareResult1; } else { return this.age - o.age; } } //序列化,将NewKey转化成使用流传送的二进制 public void write(DataOutput dataOutput) throws IOException { dataOutput.writeUTF(name); dataOutput.writeInt(age); dataOutput.writeInt(salary); } //使用in读字段的顺序,要与write方法中写的顺序保持一致 public void readFields(DataInput dataInput) throws IOException { //read string this.name = dataInput.readUTF(); this.age = dataInput.readInt(); this.salary = dataInput.readInt(); } }
MapReuduce程序:
import org.apache.hadoop.conf.Configuration; import org.apache.hadoop.fs.FileSystem; 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; import java.io.IOException; import java.net.URI; public class SecondarySort { public static void main(String[] args) throws Exception { System.setProperty("HADOOP_USER_NAME","hadoop2.7"); Configuration configuration = new Configuration(); //设置本地运行的mapreduce程序 jar包 configuration.set("mapreduce.job.jar","C:\\Users\\tanglei1\\IdeaProjects\\Hadooptang\\target\\com.kaikeba.hadoop-1.0-SNAPSHOT.jar"); Job job = Job.getInstance(configuration, SecondarySort.class.getSimpleName()); FileSystem fileSystem = FileSystem.get(URI.create(args[1]), configuration); if (fileSystem.exists(new Path(args[1]))) { fileSystem.delete(new Path(args[1]), true); } FileInputFormat.setInputPaths(job, new Path(args[0])); job.setMapperClass(MyMap.class); job.setMapOutputKeyClass(Person.class); job.setMapOutputValueClass(NullWritable.class); //设置reduce的个数 job.setNumReduceTasks(1); job.setReducerClass(MyReduce.class); job.setOutputKeyClass(Person.class); job.setOutputValueClass(NullWritable.class); FileOutputFormat.setOutputPath(job, new Path(args[1])); job.waitForCompletion(true); } public static class MyMap extends Mapper<LongWritable, Text, Person, NullWritable> { //LongWritable:输入参数键类型,Text:输入参数值类型 //Persion:输出参数键类型,NullWritable:输出参数值类型 @Override //map的输出值是键值对<K,V>,NullWritable说关心V的值 protected void map(LongWritable key, Text value, Context context) throws IOException, InterruptedException { //LongWritable key:输入参数键值对的键,Text value:输入参数键值对的值 //获得一行数据,输入参数的键(距首行的位置),Hadoop读取数据的时候逐行读取文本 //fields:代表着文本一行的的数据 String[] fields = value.toString().split(" "); // 本列中文本一行数据:nancy 22 8000 String name = fields[0]; //字符串转换成int int age = Integer.parseInt(fields[1]); int salary = Integer.parseInt(fields[2]); //在自定义类中进行比较 Person person = new Person(name, age, salary); context.write(person, NullWritable.get()); } } public static class MyReduce extends Reducer<Person, NullWritable, Person, NullWritable> { @Override protected void reduce(Person key, Iterable<NullWritable> values, Context context) throws IOException, InterruptedException { context.write(key, NullWritable.get()); } } }
运行结果:
socrates white green stone ketty tom nancy
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