MapReduce-序列化(Writable)

时间:2023-03-09 15:29:50
MapReduce-序列化(Writable)

Hadoop 序列化特点

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)

Hadoop 序列化特点:
紧凑:高效使用存储空间
快速:读写数据的额外开销小
可扩展:随着通信协议的升级而可升级
互操作:支持多语言的交互

常用数据类型对应的 Hadoop 数据序列化类型

Java类型

Hadoop Writable类型

boolean

BooleanWritable

byte

ByteWritable

int

IntWritable

float

FloatWritable

long

LongWritable

double

DoubleWritable

String

Text

map

MapWritable

array

ArrayWritable

自定义序列化数据类型

(1)必须实现Writable接口
(2)反序列化时,需要反射调用空参构造函数,所以必须有空参构造
(3)重写序列化方法
(4)重写反序列化方法
(5)注意反序列化的顺序和序列化的顺序完全一致
(6)要想把结果显示在文件中,需要重写 toString(),可用 \t 分开,方便后续用
(7)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 过程要求对 key 必须能排序

测试:完成手机号的总上行流量,总下行流量,总流量的统计

测试数据 phone.txt

1	13736230513	192.196.100.1	www.atguigu.com	2481	24681	200
2 13846544121 192.196.100.2 264 0 200
3 13956435636 192.196.100.3 132 1512 200
4 13966251146 192.168.100.1 240 0 404
5 18271575951 192.168.100.2 www.atguigu.com 1527 2106 200
6 13470253144 192.168.100.3 www.atguigu.com 4116 1432 200
7 13590439668 192.168.100.4 1116 954 200
8 15910133277 192.168.100.5 www.hao123.com 3156 2936 200
9 13729199489 192.168.100.6 240 0 200
10 13630577991 192.168.100.7 www.shouhu.com 6960 690 200
11 15043685818 192.168.100.8 www.baidu.com 3659 3538 200
12 15959002129 192.168.100.9 www.atguigu.com 1938 180 500
13 13560439638 192.168.100.10 918 4938 200
14 13470253144 192.168.100.11 180 180 200
15 13682846555 192.168.100.12 www.qq.com 1938 2910 200
16 13992314666 192.168.100.13 www.gaga.com 3008 3720 200
17 13509468723 192.168.100.14 www.qinghua.com 7335 110349 404
18 18390173782 192.168.100.15 www.sogou.com 9531 2412 200
19 13975057813 192.168.100.16 www.baidu.com 11058 48243 200
20 13768778790 192.168.100.17 120 120 200
21 13568436656 192.168.100.18 www.alibaba.com 2481 24681 200
22 13568436656 192.168.100.19 1116 954 200

定义序列化对象

import java.io.DataInput;
import java.io.DataOutput;
import java.io.IOException; import org.apache.hadoop.io.Writable; public class FlowBean implements Writable { // 上行流量
private long upFlow;
// 下行流量
private long downFlow;
// 总流量
private long sumFlow; public FlowBean() {
// 空参构造, 后续反射用
super();
} public FlowBean(long upFlow, long downFlow) {
super();
this.upFlow = upFlow;
this.downFlow = downFlow;
this.sumFlow = upFlow + downFlow;
} @Override
public void write(DataOutput out) throws IOException {
// 序列化方法
out.writeLong(upFlow);
out.writeLong(downFlow);
out.writeLong(sumFlow);
} @Override
public void readFields(DataInput in) throws IOException {
// 反序列化方法
// 必须要求和序列化方法顺序一致
upFlow = in.readLong();
downFlow = in.readLong();
sumFlow = in.readLong();
} @Override
public String toString() {
return upFlow + "\t" + downFlow + "\t" + sumFlow;
} public long getSumFlow() {
return sumFlow;
} public void setSumFlow(long sumFlow) {
this.sumFlow = sumFlow;
}
}

MapReduce程序

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;
import org.apache.log4j.BasicConfigurator; import java.io.IOException; public class FlowsumDriver { static {
try {
// 设置 HADOOP_HOME 环境变量
System.setProperty("hadoop.home.dir", "D://DevelopTools/hadoop-2.9.2/");
// 日志初始化
BasicConfigurator.configure();
// 加载库文件
System.load("D://DevelopTools/hadoop-2.9.2/bin/hadoop.dll");
} catch (UnsatisfiedLinkError e) {
System.err.println("Native code library failed to load.\n" + e);
System.exit(1);
}
} public static void main(String[] args) throws IOException, ClassNotFoundException, InterruptedException {
Configuration conf = new Configuration();
// 获取job对象
Job job = Job.getInstance(conf); // 设置jar的路径
job.setJarByClass(FlowsumDriver.class); // 关联mapper和reducer
job.setMapperClass(FlowCountMapper.class);
job.setReducerClass(FlowCountReducer.class); // 设置mapper输出的key和value类型
job.setMapOutputKeyClass(Text.class);
job.setMapOutputValueClass(FlowBean.class); // 设置最终输出的key和value类型
job.setOutputKeyClass(Text.class);
job.setOutputValueClass(FlowBean.class); // 设置输入输出路径
args = new String[]{"D://tmp/phone.txt", "D://tmp/456"};
FileInputFormat.setInputPaths(job, new Path(args[0]));
FileOutputFormat.setOutputPath(job, new Path(args[1]));
// 提交job
boolean result = job.waitForCompletion(true);
System.exit(result ? 0 : 1);
}
} class FlowCountMapper extends Mapper<LongWritable, Text, Text, FlowBean> { private Text k = new Text();
private FlowBean v; @Override
protected void map(LongWritable key, Text value, Context context) throws IOException, InterruptedException {
// 获取一行
String line = value.toString();
// 切割 \t
String[] fields = line.split("\t");
// 手机号
k.set(fields[1]);
long upFlow = Long.parseLong(fields[fields.length - 3]);
long downFlow = Long.parseLong(fields[fields.length - 2]);
v = new FlowBean(upFlow, downFlow);
// 写出
context.write(k, v);
}
} class FlowCountReducer extends Reducer<Text, FlowBean, Text, FlowBean> { private FlowBean v; @Override
protected void reduce(Text key, Iterable<FlowBean> values, Context context) throws IOException, InterruptedException {
long sumUpFlow = 0L;
long sumDownFlow = 0L;
// 累加求和
for (FlowBean flowBean : values) {
sumUpFlow += flowBean.getUpFlow();
sumDownFlow += flowBean.getDownFlow();
}
v = new FlowBean(sumUpFlow, sumDownFlow);
// 写出
context.write(key, v);
}
}

结果 part-r-00000

13470253144	4296	1612	5908
13509468723 7335 110349 117684
13560439638 918 4938 5856
13568436656 3597 25635 29232
13590439668 1116 954 2070
13630577991 6960 690 7650
13682846555 1938 2910 4848
13729199489 240 0 240
13736230513 2481 24681 27162
13768778790 120 120 240
13846544121 264 0 264
13956435636 132 1512 1644
13966251146 240 0 240
13975057813 11058 48243 59301
13992314666 3008 3720 6728
15043685818 3659 3538 7197
15910133277 3156 2936 6092
15959002129 1938 180 2118
18271575951 1527 2106 3633
18390173782 9531 2412 11943

http://hadoop.apache.org/docs/current/api/org/apache/hadoop/io/Writable.html