• 9.Mapreduce实例——ChainMapReduce


    Mapreduce实例——倒排索引

    实验步骤

    1.开启Hadoop

     

    2.新建mapreduce10目录

    在Linux本地新建/data/mapreduce10目录

     

    3. 上传文件到linux中

    (自行生成文本文件,放到个人指定文件夹下)

    goods_0

    袜子 189

    毛衣 600

    裤子 780

    鞋子 30

    呢子外套 90

    牛仔外套 130

    羽绒服 7

    帽子 21

    帽子 6

    羽绒服 12

    4.在HDFS中新建目录

    首先在HDFS上新建/mymapreduce10/in目录,然后将Linux本地/data/mapreduce10目录下的goods_0文件导入到HDFS的/mymapreduce10/in目录中。

    hadoop fs -mkdir -p /mymapreduce10/in

    hadoop fs -put /root/data/mapreduce10/goods_0 /mymapreduce10/in

     

    5.新建Java Project项目

    新建Java Project项目,项目名为mapreduce。

    在mapreduce项目下新建包,包名为mapreduce9。

    在mapreduce9包下新建类,类名为ChainMapReduce。

    6.添加项目所需依赖的jar包

    右键项目,新建一个文件夹,命名为:hadoop2lib,用于存放项目所需的jar包。

    将/data/mapreduce2目录下,hadoop2lib目录中的jar包,拷贝到eclipse中mapreduce2项目的hadoop2lib目录下。

    hadoop2lib为自己从网上下载的,并不是通过实验教程里的命令下载的

    选中所有项目hadoop2lib目录下所有jar包,并添加到Build Path中。

     

    7.编写程序代码

    ChainMapReduce.java

    package mapreduce9;
    import java.io.IOException;
    import java.net.URI;
    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.chain.ChainMapper;
    import org.apache.hadoop.mapreduce.lib.chain.ChainReducer;
    import org.apache.hadoop.mapreduce.lib.input.FileInputFormat;
    import org.apache.hadoop.mapreduce.lib.input.TextInputFormat;
    import org.apache.hadoop.mapreduce.lib.output.FileOutputFormat;
    import org.apache.hadoop.mapreduce.lib.output.TextOutputFormat;
    import org.apache.hadoop.mapreduce.lib.partition.HashPartitioner;
    import org.apache.hadoop.fs.FileSystem;
    import org.apache.hadoop.io.DoubleWritable;
    public class ChainMapReduce {
        private static final String INPUTPATH = "hdfs://192.168.109.10:9000/mymapreduce10/in/goods_0";
        private static final String OUTPUTPATH = "hdfs://192.168.109.10:9000/mymapreduce10/out";
        public static void main(String[] args) {
            try {
                Configuration conf = new Configuration();
                FileSystem fileSystem = FileSystem.get(new URI(OUTPUTPATH), conf);
                if (fileSystem.exists(new Path(OUTPUTPATH))) {
                    fileSystem.delete(new Path(OUTPUTPATH), true);
                }
                Job job = new Job(conf, ChainMapReduce.class.getSimpleName());
                FileInputFormat.addInputPath(job, new Path(INPUTPATH));
                job.setInputFormatClass(TextInputFormat.class);
                ChainMapper.addMapper(job, FilterMapper1.class, LongWritable.class, Text.class, Text.class, DoubleWritable.class, conf);
                ChainMapper.addMapper(job, FilterMapper2.class, Text.class, DoubleWritable.class, Text.class, DoubleWritable.class, conf);
                ChainReducer.setReducer(job, SumReducer.class, Text.class, DoubleWritable.class, Text.class, DoubleWritable.class, conf);
                ChainReducer.addMapper(job, FilterMapper3.class, Text.class, DoubleWritable.class, Text.class, DoubleWritable.class, conf);
                job.setMapOutputKeyClass(Text.class);
                job.setMapOutputValueClass(DoubleWritable.class);
                job.setPartitionerClass(HashPartitioner.class);
                job.setNumReduceTasks(1);
                job.setOutputKeyClass(Text.class);
                job.setOutputValueClass(DoubleWritable.class);
                FileOutputFormat.setOutputPath(job, new Path(OUTPUTPATH));
                job.setOutputFormatClass(TextOutputFormat.class);
                System.exit(job.waitForCompletion(true) ? 0 : 1);
            } catch (Exception e) {
                e.printStackTrace();
            }
        }
        public static class FilterMapper1 extends Mapper<LongWritable, Text, Text, DoubleWritable> {
            private Text outKey = new Text();
            private DoubleWritable outValue = new DoubleWritable();
            @Override
            protected void map(LongWritable key, Text value, Mapper<LongWritable, Text, Text, DoubleWritable>.Context context)
                    throws IOException,InterruptedException {
                String line = value.toString();
                if (line.length() > 0) {
                    String[] splits = line.split("\t");
                    double visit = Double.parseDouble(splits[1].trim());
                    if (visit <= 600) {
                        outKey.set(splits[0]);
                        outValue.set(visit);
                        context.write(outKey, outValue);
                    }
                }
            }
        }
        public static class FilterMapper2 extends Mapper<Text, DoubleWritable, Text, DoubleWritable> {
            @Override
            protected void map(Text key, DoubleWritable value, Mapper<Text, DoubleWritable, Text, DoubleWritable>.Context context)
                    throws IOException,InterruptedException {
                if (value.get() < 100) {
                    context.write(key, value);
                }
            }
        }
        public  static class SumReducer extends Reducer<Text, DoubleWritable, Text, DoubleWritable> {
            private DoubleWritable outValue = new DoubleWritable();
            @Override
            protected void reduce(Text key, Iterable<DoubleWritable> values, Reducer<Text, DoubleWritable, Text, DoubleWritable>.Context context)
                    throws IOException, InterruptedException {
                double sum = 0;
                for (DoubleWritable val : values) {
                    sum += val.get();
                }
                outValue.set(sum);
                context.write(key, outValue);
            }
        }
        public  static class FilterMapper3 extends Mapper<Text, DoubleWritable, Text, DoubleWritable> {
            @Override
            protected void map(Text key, DoubleWritable value, Mapper<Text, DoubleWritable, Text, DoubleWritable>.Context context)
                    throws IOException, InterruptedException {
                if (key.toString().length() < 3) {
                    System.out.println("写出去的内容为:" + key.toString() +"++++"+ value.toString());
                    context.write(key, value);
                }
            }
    
        }
    
    }

    8.运行代码

    在ChainMapReduce类文件中,右键并点击=>Run As=>Run on Hadoop选项,将MapReduce任务提交到Hadoop中。

     

    9.查看实验结果

    待执行完毕后,进入命令模式下,在HDFS中/mymapreduce10/out查看实验结果。

    hadoop fs -ls /mymapreduce10/out  

    hadoop fs -cat /mymapreduce10/out/part-r-00000  

    图一为我的运行结果,图二为实验结果

    经过对比,发现结果一样

     

     

    此处为浏览器截图

     

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  • 原文地址:https://www.cnblogs.com/wangdayang/p/15582156.html
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