• hadoop MapReduce在Linux上运行的一些命令


    看的16年的学习视频,却忽略了这些年的技术更新,有些命令也随之发生了变化,在这个上边吃了大亏,特此做记录。

    想要运行MapReduce程序,首先需要用javaApi先写一些脚本代码:

    首先需要的是Mapper类与Reducer类,在此我将两个类以及main函数都写在一个类里,需要读取的文件为手机流量例子。

    public class FlowCount {
    /*
     * Mapper
      * */
        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("	");
                //取出手机号
                String phoneNum = fields[1];
                //取出上行流量下行流量
                long upFlow = Long.parseLong(fields[fields.length-3]);
                long downFlow = Long.parseLong(fields[fields.length-2]);
    
                context.write(new Text(phoneNum),new FlowBean(upFlow,downFlow));
    
            }
    
    
        }
    
        /*
        Reducer
         */
        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;
    
                //遍历所有的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.getDownFlow();
                }
    
                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("fs.defaultFS","hdfs://min1:9000/");
            conf.set("mapreduce.framework.name", "yarn");
            conf.set("yarn.resourcemanager.hostname", "min1");
            conf.set("yarn.resourcemanager.address", "min1"+":"+8032);
            conf.set("yarn.resourcemanager.scheduler.address", "min1"+":"+8030);
            //运行集群模式,就是把程序提交到yarn中去运行
            //要想运行为集群模式,以下3个参数要指定为集群上的值
            /*conf.set("mapreduce.framework.name", "yarn");
            conf.set("yarn.resourcemanager.hostname", "mini1");
            conf.set("fs.defaultFS", "hdfs://mini1:9000/");*/
            Job job = Job.getInstance(conf,"wordcount");
    
    //        job.setJar("c:/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("/flowsum/input"));
            //指定job的输出结果所在目录
            FileOutputFormat.setOutputPath(job, new Path("/flowsum/output"));
    
            //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);
        }
    
    }

    我们将读取的数据进行封装,封装成一个FlowBean类

    package mrFlowSum;
    
    import org.apache.hadoop.io.Writable;
    
    import java.io.DataInput;
    import java.io.DataOutput;
    import java.io.IOException;
    
    
    public class FlowBean implements Writable {
    
        private long upFlow;
        private long downFlow;
        private long sumFlow;
    
        //反序列化时需要反射调用空参构造函数,所以要显式定义一个
        public FlowBean() {
        }
    
    
        public FlowBean(long upFlow, long downFlow) {
            this.upFlow = upFlow;
            this.downFlow = downFlow;
            this.sumFlow = downFlow+upFlow;
        }
    
        public long getSumFlow() {
            return sumFlow;
        }
    
        public void setSumFlow(long sumFlow) {
            this.sumFlow = sumFlow;
        }
    
        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;
        }
        /*
        序列化方法
         */
        @Override
        public void write(DataOutput dataOutput) throws IOException {
            dataOutput.writeLong(upFlow);
            dataOutput.writeLong(downFlow);
            dataOutput.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
         */
        @Override
        public void readFields(DataInput dataInput) throws IOException {
    
            long upFlow = dataInput.readLong();
            long downFlow = dataInput.readLong();
            long sumFlow = dataInput.readLong();
    
        }
    
        @Override
        public String toString() {
            return upFlow + "	" + downFlow + "	" + sumFlow;
        }
    }

    Flow.data例子:

    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

    在IDEA上进行jar包打包,上传至Linux服务器,将例子文件(flow.data)也上传至服务器,而后使用

    hadoop fs -put flow.data /flowsum/input      这条命令将文件放入HDFS的/flowsum/input  输入文件夹内

    使用命令hadoop jar mapreduce.jar  /flowsum/input  /flowsum/output2  运行jar包运行程序。    (在这里栽了很大的跟头,之前跟着学习视频使用命令 hadoop jar mapreduce.jar   mrFlowSum.FlowCount  /flowsum/input  /flowsum/output2,里边多了一个主类函数名称,而我的主类名称早就在pom中定义好了,所以无需加这个主类名称)

    运行成功后会在HDFS中生成一个output文件夹,文件夹中生成_SUCCESS文件以及part-r-0000xx文件,后者即为我们想要的最终结果,

    我们可以使用命令  

    hadoop fs -cat /flowsum/output/part-r-0000xx查看最终结果

  • 相关阅读:
    昂达 v891 连接上adb 调试
    在不进入Guest OS的情况下,取得Guest OS的IP地址
    在远程连接一个 Wndows 10的情况下,重启远程机器
    放弃 Tightvnc, 选择 Tigervnc
    Ubuntu 16.04 构建 Headless VNC 服务器
    网站日志流量分析系统之数据可视化展示
    网站日志流量分析系统之离线分析(自动化脚本)
    网站日志流量分析系统之数据清洗处理(离线分析)
    网站日志流量分析系统之(日志收集)
    网站日志流量分析系统之(日志埋点)
  • 原文地址:https://www.cnblogs.com/fjlcoding/p/10298856.html
Copyright © 2020-2023  润新知