前面分享了使用mapreduce做wordcount单词统计的实现与原理。本篇博主将继续分享一个移动流量分析的经典案例,来帮助在实际工作中理解和使用hadoop平台。
一、需求
以下是一个移动流量的日志,我们需要根据日志分析出每个手机号对应的上行流量、下行流量、总流量。
1363157985066 13726230503 00-FD-07-A4-72-B8:CMCC 120.196.100.82 i02.c.aliimg.com 24 27 2481 24681 200
1363157995052 13826544101 5C-0E-8B-C7-F1-E0:CMCC 120.197.40.4 4 0 264 0 200
1363157991076 13926435656 20-10-7A-28-CC-0A:CMCC 120.196.100.99 2 4 132 1512 200
1363154400022 13926251106 5C-0E-8B-8B-B1-50:CMCC 120.197.40.4 4 0 240 0 200
1363157993044 18211575961 94-71-AC-CD-E6-18:CMCC-EASY 120.196.100.99 iface.qiyi.com 视频网站 15 12 1527 2106 200
1363157995074 84138413 5C-0E-8B-8C-E8-20:7DaysInn 120.197.40.4 122.72.52.12 20 16 4116 1432 200
1363157993055 13560439658 C4-17-FE-BA-DE-D9:CMCC 120.196.100.99 18 15 1116 954 200
1363157995033 15920133257 5C-0E-8B-C7-BA-20:CMCC 120.197.40.4 sug.so.360.cn 信息安全 20 20 3156 2936 200
1363157983019 13719199419 68-A1-B7-03-07-B1:CMCC-EASY 120.196.100.82 4 0 240 0 200
1363157984041 13660577991 5C-0E-8B-92-5C-20:CMCC-EASY 120.197.40.4 s19.cnzz.com 站点统计 24 9 6960 690 200
1363157973098 15013685858 5C-0E-8B-C7-F7-90:CMCC 120.197.40.4 rank.ie.sogou.com 搜索引擎 28 27 3659 3538 200
1363157986029 15989002119 E8-99-C4-4E-93-E0:CMCC-EASY 120.196.100.99 www.umeng.com 站点统计 3 3 1938 180 200
1363157992093 13560439658 C4-17-FE-BA-DE-D9:CMCC 120.196.100.99 15 9 918 4938 200
1363157986041 13480253104 5C-0E-8B-C7-FC-80:CMCC-EASY 120.197.40.4 3 3 180 180 200
1363157984040 13602846565 5C-0E-8B-8B-B6-00:CMCC 120.197.40.4 2052.flash2-http.qq.com 综合门户 15 12 1938 2910 200
1363157995093 13922314466 00-FD-07-A2-EC-BA:CMCC 120.196.100.82 img.qfc.cn 12 12 3008 3720 200
1363157982040 13502468823 5C-0A-5B-6A-0B-D4:CMCC-EASY 120.196.100.99 y0.ifengimg.com 综合门户 57 102 7335 110349 200
1363157986072 18320173382 84-25-DB-4F-10-1A:CMCC-EASY 120.196.100.99 input.shouji.sogou.com 搜索引擎 21 18 9531 2412 200
1363157990043 13925057413 00-1F-64-E1-E6-9A:CMCC 120.196.100.55 t3.baidu.com 搜索引擎 69 63 11058 48243 200
1363157988072 13760778710 00-FD-07-A4-7B-08:CMCC 120.196.100.82 2 2 120 120 200
1363157985066 13726238888 00-FD-07-A4-72-B8:CMCC 120.196.100.82 i02.c.aliimg.com 24 27 2481 24681 200
1363157993055 13560436666 C4-17-FE-BA-DE-D9:CMCC 120.196.100.99 18 15 1116 954 200
二、实现
字段说明:上面日志中,第二列为手机号;倒数第二三分别是下行流量和上行流量
hdfs dfs -mkdir -p /user/hadoop/flowcount
FlowBean(分析输出结果bean)
package com.empire.hadoop.mr.flowcount;
import java.io.DataInput;
import java.io.DataOutput;
import java.io.IOException;
import org.apache.hadoop.io.Writable;
/**
* 类 FlowBean.java的实现描述:流量bean实现,由于mapreduce需要在计算中将结果序列化进行传输,
* 所以需要实现writable接口;如果需要进行排序需要实现WritableComparable接口
*
* @author arron 2018年11月24日 下午9:40:40
*/
public class FlowBean implements Writable {
private long upFlow;
private long dFlow;
private long sumFlow;
//反序列化时,需要反射调用空参构造函数,所以要显示定义一个
public FlowBean() {
}
public FlowBean(long upFlow, long dFlow) {
this.upFlow = upFlow;
this.dFlow = dFlow;
this.sumFlow = upFlow + dFlow;
}
public long getUpFlow() {
return upFlow;
}
public void setUpFlow(long upFlow) {
this.upFlow = upFlow;
}
public long getdFlow() {
return dFlow;
}
public void setdFlow(long dFlow) {
this.dFlow = dFlow;
}
public long getSumFlow() {
return sumFlow;
}
public void setSumFlow(long sumFlow) {
this.sumFlow = sumFlow;
}
/**
* 序列化方法
*/
public void write(DataOutput out) throws IOException {
out.writeLong(upFlow);
out.writeLong(dFlow);
out.writeLong(sumFlow);
}
/**
* 反序列化方法 注意:反序列化的顺序跟序列化的顺序完全一致
*/
public void readFields(DataInput in) throws IOException {
upFlow = in.readLong();
dFlow = in.readLong();
sumFlow = in.readLong();
}
@Override
public String toString() {
return upFlow + "\t" + dFlow + "\t" + sumFlow;
}
}
mapreduce主程序
package com.empire.hadoop.mr.flowcount;
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;
/**
* 类 FlowCount.java的实现描述:移动日志分析某个手机号对应的上行总流量、下行总流量、总流量等信息
*
* @author arron 2018年11月24日 下午9:43:23
*/
public class FlowCount {
static class FlowCountMapper extends Mapper<LongWritable, Text, Text, FlowBean> {
@Override
protected void map(LongWritable key, Text value, Context context) throws IOException, InterruptedException {
//将一行内容转成string
String line = value.toString();
//切分字段
String[] fields = line.split("\t");
//取出手机号
String phoneNbr = fields[1];
//取出上行流量下行流量
long upFlow = Long.parseLong(fields[fields.length - 3]);
long dFlow = Long.parseLong(fields[fields.length - 2]);
context.write(new Text(phoneNbr), new FlowBean(upFlow, dFlow));
}
}
static class FlowCountReducer extends Reducer<Text, FlowBean, Text, FlowBean> {
//<183323,bean1><183323,bean2><183323,bean3><183323,bean4>.......
@Override
protected void reduce(Text key, Iterable<FlowBean> values, Context context)
throws IOException, InterruptedException {
long sum_upFlow = 0;
long sum_dFlow = 0;
//遍历所有bean,将其中的上行流量,下行流量分别累加
for (FlowBean bean : values) {
sum_upFlow += bean.getUpFlow();
sum_dFlow += bean.getdFlow();
}
FlowBean resultBean = new FlowBean(sum_upFlow, sum_dFlow);
context.write(key, resultBean);
}
}
public static void main(String[] args) throws Exception {
Configuration conf = new Configuration();
/*
* conf.set("mapreduce.framework.name", "yarn");
* conf.set("yarn.resoucemanager.hostname", "mini1");
*/
Job job = Job.getInstance(conf);
/* job.setJar("/home/hadoop/wc.jar"); */
//指定本程序的jar包所在的本地路径
job.setJarByClass(FlowCount.class);
//指定本业务job要使用的mapper/Reducer业务类
job.setMapperClass(FlowCountMapper.class);
job.setReducerClass(FlowCountReducer.class);
//指定mapper输出数据的kv类型
job.setMapOutputKeyClass(Text.class);
job.setMapOutputValueClass(FlowBean.class);
//指定最终输出的数据的kv类型
job.setOutputKeyClass(Text.class);
job.setOutputValueClass(FlowBean.class);
//指定job的输入原始文件所在目录
FileInputFormat.setInputPaths(job, new Path(args[0]));
//指定job的输出结果所在目录
FileOutputFormat.setOutputPath(job, new Path(args[1]));
//将job中配置的相关参数,以及job所用的java类所在的jar包,提交给yarn去运行
/* job.submit(); */
boolean res = job.waitForCompletion(true);
System.exit(res ? 0 : 1);
}
}
三、打包运行
打包按照上一篇博客wordcount的方式进行打包运行。运行效果如下:
18/11/25 06:03:38 INFO client.RMProxy: Connecting to ResourceManager at centos-aaron-h1/192.168.29.144:8032
18/11/25 06:03:39 WARN mapreduce.JobResourceUploader: Hadoop command-line option parsing not performed. Implement the Tool interface and execute your application with ToolRunner to remedy this.
18/11/25 06:03:39 INFO input.FileInputFormat: Total input files to process : 5
18/11/25 06:03:39 INFO mapreduce.JobSubmitter: number of splits:5
18/11/25 06:03:40 INFO Configuration.deprecation: yarn.resourcemanager.system-metrics-publisher.enabled is deprecated. Instead, use yarn.system-metrics-publisher.enabled
18/11/25 06:03:40 INFO mapreduce.JobSubmitter: Submitting tokens for job: job_1543096217465_0001
18/11/25 06:03:41 INFO impl.YarnClientImpl: Submitted application application_1543096217465_0001
18/11/25 06:03:41 INFO mapreduce.Job: The url to track the job: http://centos-aaron-h1:8088/proxy/application_1543096217465_0001/
18/11/25 06:03:41 INFO mapreduce.Job: Running job: job_1543096217465_0001
18/11/25 06:03:51 INFO mapreduce.Job: Job job_1543096217465_0001 running in uber mode : false
18/11/25 06:03:51 INFO mapreduce.Job: map 0% reduce 0%
18/11/25 06:04:00 INFO mapreduce.Job: map 20% reduce 0%
18/11/25 06:04:13 INFO mapreduce.Job: map 100% reduce 0%
18/11/25 06:04:14 INFO mapreduce.Job: map 100% reduce 100%
18/11/25 06:04:15 INFO mapreduce.Job: Job job_1543096217465_0001 completed successfully
18/11/25 06:04:15 INFO mapreduce.Job: Counters: 50
File System Counters
FILE: Number of bytes read=4171
FILE: Number of bytes written=1193767
FILE: Number of read operations=0
FILE: Number of large read operations=0
FILE: Number of write operations=0
HDFS: Number of bytes read=11574
HDFS: Number of bytes written=594
HDFS: Number of read operations=18
HDFS: Number of large read operations=0
HDFS: Number of write operations=2
Job Counters
Killed map tasks=1
Launched map tasks=5
Launched reduce tasks=1
Data-local map tasks=5
Total time spent by all maps in occupied slots (ms)=79442
Total time spent by all reduces in occupied slots (ms)=11115
Total time spent by all map tasks (ms)=79442
Total time spent by all reduce tasks (ms)=11115
Total vcore-milliseconds taken by all map tasks=79442
Total vcore-milliseconds taken by all reduce tasks=11115
Total megabyte-milliseconds taken by all map tasks=81348608
Total megabyte-milliseconds taken by all reduce tasks=11381760
Map-Reduce Framework
Map input records=110
Map output records=110
Map output bytes=3945
Map output materialized bytes=4195
Input split bytes=624
Combine input records=0
Combine output records=0
Reduce input groups=21
Reduce shuffle bytes=4195
Reduce input records=110
Reduce output records=21
Spilled Records=220
Shuffled Maps =5
Failed Shuffles=0
Merged Map outputs=5
GC time elapsed (ms)=1587
CPU time spent (ms)=4710
Physical memory (bytes) snapshot=878612480
Virtual memory (bytes) snapshot=5069615104
Total committed heap usage (bytes)=623616000
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=10950
File Output Format Counters
Bytes Written=594
分析结果:
[hadoop@centos-aaron-h1 ~]$ hadoop fs -ls /user/hadoop/flowcountount
Found 2 items
-rw-r--r-- 2 hadoop supergroup 0 2018-11-25 06:04 /user/hadoop/flowcountount/_SUCCESS
-rw-r--r-- 2 hadoop supergroup 594 2018-11-25 06:04 /user/hadoop/flowcountount/part-r-00000
[hadoop@centos-aaron-h1 ~]$ hadoop fs -cat /user/hadoop/flowcountount/part-r-00000
13480253104 900 900 1800
13502468823 36675 551745 588420
13560436666 5580 4770 10350
13560439658 10170 29460 39630
13602846565 9690 14550 24240
13660577991 34800 3450 38250
13719199419 1200 0 1200
13726230503 12405 123405 135810
13726238888 12405 123405 135810
13760778710 600 600 1200
13826544101 1320 0 1320
13922314466 15040 18600 33640
13925057413 55290 241215 296505
13926251106 1200 0 1200
13926435656 660 7560 8220
15013685858 18295 17690 35985
15920133257 15780 14680 30460
15989002119 9690 900 10590
18211575961 7635 10530 18165
18320173382 47655 12060 59715
84138413 20580 7160 27740
最后寄语,以上是博主本次文章的全部内容,如果大家觉得博主的文章还不错,请点赞;如果您对博主其它服务器大数据技术或者博主本人感兴趣,请关注博主博客,并且欢迎随时跟博主沟通交流。