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  • MapReduce的本地运行模式(debug调试)

    (1)mapreduce程序是被提交给LocalJobRunner在本地以单进程的形式运行。在本地运行mapreduce程序可以更快地运行,并且可以使用debug进行跟踪代码,方便查错,在本地运行主要是看mapreduce的业务逻辑是不是正确,如果在本地运行错误的话,那么在集群上肯定也是错的
    (2)处理的数据及输出结果可以在本地文件系统,也可以在hdfs上
    (3)本地模式非常便于进行业务逻辑的debug,只要在eclipse中打断点即可
    (4)怎样实现本地运行?写一个程序,不要带集群的配置文件(本质是你的mr程序的conf中是否有mapreduce.framework.name=local以及yarn.resourcemanager.hostname参数)

    如果在windows下想运行本地模式来测试程序逻辑,需要在windows中配置环境变量:
    %HADOOP_HOME% = d:/hadoop-2.6.1
    %PATH% = %HADOOP_HOME%in
    并且要将d:/hadoop-2.6.1的lib和bin目录替换成windows平台编译的版本

    无jar版windows平台hadoop-2.6.1.zip
    https://pan.baidu.com/s/1uu8tKq3FvoemccoUiBob0Q

    在linux下编译的hadoop:
    https://pan.baidu.com/s/1qtXrWnKjk_klRdPj8DaSYA

    只需要替换一下就可以正常使用了

    Configuration conf = new Configuration();

    //是否运行为本地模式,就是看这个参数值是否为local,默认就是local
    conf.set("mapreduce.framework.name", "local");

    //本地模式运行mr程序时,输入输出的数据可以在本地,也可以在hdfs上
    //到底在哪里,就看以下两行配置你用哪行,默认就是file:///
    /*conf.set("fs.defaultFS", "hdfs://mini1:9000/");*/
    conf.set("fs.defaultFS", "file:///");
     
    conf什么都不写,就是使用默认的配置,默认的配置就是在本地。
    可以看一下默认的配置

    默认的配置文件:
    https://pan.baidu.com/s/1xKT7_SPv8qsSQmbze8O6wQ
    可以自己在源码中分别找到这些配置文件:

     

    打开mapred-default.xml这个配置文件:


    打开core-default.xml这个配置文件:


    所以可以直接在本地运行

    在本地运行的效果:


    在本地跟集群运行的效果是一样的。


    input: 里面的文件都是随便输入的


    output:


    最终输出的结果:


    代码地址:
    https://gitee.com/tanghongping/hadoopMapReduce/tree/master/src/com/thp/bigdata/wcdemo

    我们可以打几个断电调试一下:

     

     

    看这map方法的参数:

    Name Value
    key 0
    value we are family
    context org.apache.hadoop.mapreduce.lib.map.WrappedMapper$Context@1b7d8bfa
    然后就是接下的一行的数据
    map里面的参数:

    Name Value
    key 15
    value hello sa
    context org.apache.hadoop.mapreduce.lib.map.WrappedMapper$Context@1b7d8bfa
    之后的input文件的每一行的数据都会经历这个过程

    看debug模式下下面控制面板的变化:


    现在还是处在map阶段

    此时output会生成这么一个临时性的文件


    当input文件夹里面的第一个文件处理完毕,接下来就会处理第二个文件:

     

     


    我们的input文件夹里面总共是有7个文件的,这7个文件都是同一个文件:

    2018-11-14 09:12:17,123 INFO [localfetcher#1] reduce.LocalFetcher (LocalFetcher.java:copyMapOutput(141)) - localfetcher#1 about to shuffle output of map attempt_local1550344450_0001_m_000005_0 decomp: 211 len: 215 to MEMORY
    2018-11-14 09:12:17,128 INFO [localfetcher#1] reduce.InMemoryMapOutput (InMemoryMapOutput.java:shuffle(100)) - Read 211 bytes from map-output for attempt_local1550344450_0001_m_000005_0
    2018-11-14 09:12:17,131 INFO [localfetcher#1] reduce.MergeManagerImpl (MergeManagerImpl.java:closeInMemoryFile(315)) - closeInMemoryFile -> map-output of size: 211, inMemoryMapOutputs.size() -> 1, commitMemory -> 0, usedMemory ->211
    2018-11-14 09:12:17,138 INFO [localfetcher#1] reduce.LocalFetcher (LocalFetcher.java:copyMapOutput(141)) - localfetcher#1 about to shuffle output of map attempt_local1550344450_0001_m_000002_0 decomp: 211 len: 215 to MEMORY
    2018-11-14 09:12:17,140 INFO [localfetcher#1] reduce.InMemoryMapOutput (InMemoryMapOutput.java:shuffle(100)) - Read 211 bytes from map-output for attempt_local1550344450_0001_m_000002_0
    2018-11-14 09:12:17,141 INFO [localfetcher#1] reduce.MergeManagerImpl (MergeManagerImpl.java:closeInMemoryFile(315)) - closeInMemoryFile -> map-output of size: 211, inMemoryMapOutputs.size() -> 2, commitMemory -> 211, usedMemory ->422
    2018-11-14 09:12:17,159 INFO [localfetcher#1] reduce.LocalFetcher (LocalFetcher.java:copyMapOutput(141)) - localfetcher#1 about to shuffle output of map attempt_local1550344450_0001_m_000006_0 decomp: 211 len: 215 to MEMORY
    2018-11-14 09:12:17,160 INFO [localfetcher#1] reduce.InMemoryMapOutput (InMemoryMapOutput.java:shuffle(100)) - Read 211 bytes from map-output for attempt_local1550344450_0001_m_000006_0
    2018-11-14 09:12:17,161 INFO [localfetcher#1] reduce.MergeManagerImpl (MergeManagerImpl.java:closeInMemoryFile(315)) - closeInMemoryFile -> map-output of size: 211, inMemoryMapOutputs.size() -> 3, commitMemory -> 422, usedMemory ->633
    2018-11-14 09:12:17,170 INFO [localfetcher#1] reduce.LocalFetcher (LocalFetcher.java:copyMapOutput(141)) - localfetcher#1 about to shuffle output of map attempt_local1550344450_0001_m_000003_0 decomp: 211 len: 215 to MEMORY
    2018-11-14 09:12:17,172 INFO [localfetcher#1] reduce.InMemoryMapOutput (InMemoryMapOutput.java:shuffle(100)) - Read 211 bytes from map-output for attempt_local1550344450_0001_m_000003_0
    2018-11-14 09:12:17,173 INFO [localfetcher#1] reduce.MergeManagerImpl (MergeManagerImpl.java:closeInMemoryFile(315)) - closeInMemoryFile -> map-output of size: 211, inMemoryMapOutputs.size() -> 4, commitMemory -> 633, usedMemory ->844
    2018-11-14 09:12:17,180 INFO [localfetcher#1] reduce.LocalFetcher (LocalFetcher.java:copyMapOutput(141)) - localfetcher#1 about to shuffle output of map attempt_local1550344450_0001_m_000000_0 decomp: 211 len: 215 to MEMORY
    2018-11-14 09:12:17,181 INFO [localfetcher#1] reduce.InMemoryMapOutput (InMemoryMapOutput.java:shuffle(100)) - Read 211 bytes from map-output for attempt_local1550344450_0001_m_000000_0
    2018-11-14 09:12:17,182 INFO [localfetcher#1] reduce.MergeManagerImpl (MergeManagerImpl.java:closeInMemoryFile(315)) - closeInMemoryFile -> map-output of size: 211, inMemoryMapOutputs.size() -> 5, commitMemory -> 844, usedMemory ->1055
    2018-11-14 09:12:17,189 INFO [localfetcher#1] reduce.LocalFetcher (LocalFetcher.java:copyMapOutput(141)) - localfetcher#1 about to shuffle output of map attempt_local1550344450_0001_m_000001_0 decomp: 211 len: 215 to MEMORY
    2018-11-14 09:12:17,190 INFO [localfetcher#1] reduce.InMemoryMapOutput (InMemoryMapOutput.java:shuffle(100)) - Read 211 bytes from map-output for attempt_local1550344450_0001_m_000001_0
    2018-11-14 09:12:17,190 INFO [localfetcher#1] reduce.MergeManagerImpl (MergeManagerImpl.java:closeInMemoryFile(315)) - closeInMemoryFile -> map-output of size: 211, inMemoryMapOutputs.size() -> 6, commitMemory -> 1055, usedMemory ->1266
    2018-11-14 09:12:17,196 INFO [localfetcher#1] reduce.LocalFetcher (LocalFetcher.java:copyMapOutput(141)) - localfetcher#1 about to shuffle output of map attempt_local1550344450_0001_m_000004_0 decomp: 211 len: 215 to MEMORY
    2018-11-14 09:12:17,197 INFO [localfetcher#1] reduce.InMemoryMapOutput (InMemoryMapOutput.java:shuffle(100)) - Read 211 bytes from map-output for attempt_local1550344450_0001_m_000004_0
    2018-11-14 09:12:17,197 INFO [localfetcher#1] reduce.MergeManagerImpl (MergeManagerImpl.java:closeInMemoryFile(315)) - closeInMemoryFile -> map-output of size: 211, inMemoryMapOutputs.size() -> 7, commitMemory -> 1266, usedMemory ->1477
    2018-11-14 09:12:17,198 INFO [EventFetcher for fetching Map Completion Events] reduce.EventFetcher (EventFetcher.java:run(76)) - EventFetcher is interrupted.. Returning
     


    当所有的map都运行完成,那么就要走到reduce阶段,

    protected void reduce(Text key, Iterable<IntWritable> values, Context context) throws IOException, InterruptedException {
    int count = 0;
    for(IntWritable value : values) {
    count += value.get(); // 这个count 最后就是某一个单词的汇总的值
    }
    context.write(key, new IntWritable(count));
    }
     
    reduce的参数:

    Name Value
    key are
    values org.apache.hadoop.mapreduce.task.ReduceContextImpl$ValueIterable@6e4a6525
    context org.apache.hadoop.mapreduce.lib.reduce.WrappedReducer$Context@79cda784
    count 0
    接下来的阶段就是不断地重复这个过程,但是需要注意的一点是这个reduce的过程是已经排序了的过程,按照字典排序好的。


    ————————————————
    版权声明:本文为CSDN博主「汤愈韬」的原创文章,遵循CC 4.0 BY-SA版权协议,转载请附上原文出处链接及本声明。
    原文链接:https://blog.csdn.net/qq_38200548/article/details/84057611

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  • 原文地址:https://www.cnblogs.com/javalinux/p/15002533.html
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