zoukankan      html  css  js  c++  java
  • Gora官方文档之二:Gora对Map-Reduce的支持 分类: C_OHTERS 2015-01-31 11:27 232人阅读 评论(0) 收藏

    参考官方文档:http://gora.apache.org/current/tutorial.html

    项目代码见:https://code.csdn.net/jediael_lu/mygorademo

    另环境准备见: http://blog.csdn.net/jediael_lu/article/details/43272521


    当着数据已通过之前的示例存储在hbase中,数据如下:

    x00x00x00x00x00x00x00D              column=common:ip, timestamp=1422529645469, value=85.100.75.104                                                              
     x00x00x00x00x00x00x00D              column=common:timestamp, timestamp=1422529645469, value=x00x00x01x1FxF1xB5x88xA0                                    
     x00x00x00x00x00x00x00D              column=common:url, timestamp=1422529645469, value=/index.php?i=2&a=1__z_nccylulyu&k=238241                                  
     x00x00x00x00x00x00x00D              column=http:httpMethod, timestamp=1422529645469, value=GET                                                                  
     x00x00x00x00x00x00x00D              column=http:httpStatusCode, timestamp=1422529645469, value=x00x00x00xC8                                                 
     x00x00x00x00x00x00x00D              column=http:responseSize, timestamp=1422529645469, value=x00x00x00+                                                      
     x00x00x00x00x00x00x00D              column=misc:referrer, timestamp=1422529645469, value=http://www.buldinle.com/index.php?i=2&a=1__Z_nccYlULyU&k=238241        
     x00x00x00x00x00x00x00D              column=misc:userAgent, timestamp=1422529645469, value=Mozilla/5.0 (Windows; U; Windows NT 5.1; tr; rv:1.9.0.7) Gecko/2009021
                                                910 Firefox/3.0.7                                                                                                           
     x00x00x00x00x00x00x00E              column=common:ip, timestamp=1422529645469, value=85.100.75.104                                                              
     x00x00x00x00x00x00x00E              column=common:timestamp, timestamp=1422529645469, value=x00x00x01x1FxF1xB5xBFP                                       
     x00x00x00x00x00x00x00E              column=common:url, timestamp=1422529645469, value=/index.php?i=7&a=1__yxs0vome9p8&k=4924961                                 
     x00x00x00x00x00x00x00E              column=http:httpMethod, timestamp=1422529645469, value=GET                                                                  
     x00x00x00x00x00x00x00E              column=http:httpStatusCode, timestamp=1422529645469, value=x00x00x00xC8                                                 
     x00x00x00x00x00x00x00E              column=http:responseSize, timestamp=1422529645469, value=x00x00x00+                                                      
     x00x00x00x00x00x00x00E              column=misc:referrer, timestamp=1422529645469, value=http://www.buldinle.com/index.php?i=7&a=1__YxS0VoME9P8&k=4924961       
     x00x00x00x00x00x00x00E              column=misc:userAgent, timestamp=1422529645469, value=Mozilla/5.0 (Windows; U; Windows NT 5.1; tr; rv:1.9.0.7) Gecko/2009021
                                                910 Firefox/3.0.7      

    本例将使用MR读取hbase中的数据,并进行分析,分析每个url,一天时间内有多少人在访问,输出结果保存在hbase中,表中的key为“url+时间”格式的String,value包括三列,分别是url,时间,访问次数。

    0、创建java project及gora.properties,内容如下:

    ##gora.datastore.default is the default detastore implementation to use 
    ##if it is not passed to the DataStoreFactory#createDataStore() method.
    gora.datastore.default=org.apache.gora.hbase.store.HBaseStore
    
    ##whether to create schema automatically if not exists.
    gora.datastore.autocreateschema=true
    

    1、创建用于对应输入数据的json文件,并生成相应的类。
    上个示例已经完成,见passview.json与PageView.java

    {
      "type": "record",
      "name": "Pageview", "default":null,
      "namespace": "org.apache.gora.tutorial.log.generated",
      "fields" : [
        {"name": "url", "type": ["null","string"], "default":null},
        {"name": "timestamp", "type": "long", "default":0},
        {"name": "ip", "type": ["null","string"], "default":null},
        {"name": "httpMethod", "type": ["null","string"], "default":null},
        {"name": "httpStatusCode", "type": "int", "default":0},
        {"name": "responseSize", "type": "int", "default":0},
        {"name": "referrer", "type": ["null","string"], "default":null},
        {"name": "userAgent", "type": ["null","string"], "default":null}
      ]
    }
    

    2、创建输入数据的类与表映射文件

    <?xml version="1.0" encoding="UTF-8"?>
    
    <!--
      Gora Mapping file for HBase Backend
    -->
    <gora-otd>
      <table name="Pageview"> <!-- optional descriptors for tables -->
        <family name="common"/> <!-- This can also have params like compression, bloom filters -->
        <family name="http"/>
        <family name="misc"/>
      </table>
    
      <class name="org.apache.gora.tutorial.log.generated.Pageview" keyClass="java.lang.Long" table="AccessLog">
        <field name="url" family="common" qualifier="url"/>
        <field name="timestamp" family="common" qualifier="timestamp"/>
        <field name="ip" family="common" qualifier="ip" />
        <field name="httpMethod" family="http" qualifier="httpMethod"/>
        <field name="httpStatusCode" family="http" qualifier="httpStatusCode"/>
        <field name="responseSize" family="http" qualifier="responseSize"/>
        <field name="referrer" family="misc" qualifier="referrer"/>
        <field name="userAgent" family="misc" qualifier="userAgent"/>
      </class>
    
    </gora-otd>
    

    3、创建用于对于输出数据的json文件,并生成相应的类。

    {
      "type": "record",
      "name": "MetricDatum",
      "namespace": "org.apache.gora.tutorial.log.generated",
      "fields" : [
        {"name": "metricDimension", "type": "string"},
        {"name": "timestamp", "type": "long"},
        {"name": "metric", "type" : "long"}
      ]
    }

    liaoliuqingdeMacBook-Air:MyGoraDemo liaoliuqing$ gora goracompiler avro/metricdatum.json src/
    Compiling: /Users/liaoliuqing/99_Project/git/MyGoraDemo/avro/metricdatum.json
    Compiled into: /Users/liaoliuqing/99_Project/git/MyGoraDemo/src
    Compiler executed SUCCESSFULL.


    4、创建输出数据的类与表映射内容,并将之加入第2步创建的文件中。
      <class name="org.apache.gora.tutorial.log.generated.MetricDatum" keyClass="java.lang.String" table="Metrics">
        <field name="metricDimension" family="common"  qualifier="metricDimension"/>
        <field name="timestamp" family="common" qualifier="ts"/>
        <field name="metric" family="common" qualifier="metric"/>
      </class>

    5、写主类文件

    程序处理的关键步骤:

    (1)获取输入、输出DataStore

        if(args.length > 0) {
          String dataStoreClass = args[0];
          inStore = DataStoreFactory.
              getDataStore(dataStoreClass, Long.class, Pageview.class, conf);
          if(args.length > 1) {
            dataStoreClass = args[1];
          }
          outStore = DataStoreFactory.
              getDataStore(dataStoreClass, String.class, MetricDatum.class, conf);
        } else {
    	    inStore = DataStoreFactory.getDataStore(Long.class, Pageview.class, conf);
    	    outStore = DataStoreFactory.getDataStore(String.class, MetricDatum.class, conf);
        }

    (2)设置job的一些基本属性
        Job job = new Job(getConf());
        job.setJobName("Log Analytics");
        log.info("Creating Hadoop Job: " + job.getJobName());
        job.setNumReduceTasks(numReducer);
        job.setJarByClass(getClass());

    (3)定义job相关的Map类及mapr的输入输出信息。

    GoraMapper.initMapperJob(job, inStore, TextLong.class, LongWritable.class,
            LogAnalyticsMapper.class, true);

    (4)定义job相关的Reduce类及reduce的输入输出信息。

        GoraReducer.initReducerJob(job, outStore, LogAnalyticsReducer.class);
    

    (5)定义map类

    public static class LogAnalyticsMapper extends GoraMapper<Long, Pageview, TextLong,
          LongWritable> {
        
        private LongWritable one = new LongWritable(1L);
      
        private TextLong tuple;
        
        @Override
        protected void setup(Context context) throws IOException ,InterruptedException {
          tuple = new TextLong();
          tuple.setKey(new Text());
          tuple.setValue(new LongWritable());
        };
        
        @Override
        protected void map(Long key, Pageview pageview, Context context)
            throws IOException ,InterruptedException {
          
          CharSequence url = pageview.getUrl();
          long day = getDay(pageview.getTimestamp());
          
          tuple.getKey().set(url.toString());
          tuple.getValue().set(day);
          
          context.write(tuple, one);
        };
        
        /** Rolls up the given timestamp to the day cardinality, so that 
         * data can be aggregated daily */
        private long getDay(long timeStamp) {
          return (timeStamp / DAY_MILIS) * DAY_MILIS; 
        }
      }

    (6)定义reduce类

    public static class LogAnalyticsReducer extends GoraReducer<TextLong, LongWritable,
          String, MetricDatum> {
        
        private MetricDatum metricDatum = new MetricDatum();
        
        @Override
        protected void reduce(TextLong tuple, Iterable<LongWritable> values, Context context)
          throws IOException ,InterruptedException {
          
          long sum = 0L; //sum up the values
          for(LongWritable value: values) {
            sum+= value.get();
          }
          
          String dimension = tuple.getKey().toString();
          long timestamp = tuple.getValue().get();
          
          metricDatum.setMetricDimension(new Utf8(dimension));
          metricDatum.setTimestamp(timestamp);
          
          String key = metricDatum.getMetricDimension().toString();
          key += "_" + Long.toString(timestamp);
          metricDatum.setMetric(sum);
          
          context.write(key, metricDatum);
        };
      }

    (8)使用输入输出DataStore来创建一个job,并执行
        Job job = createJob(inStore, outStore, 3);
        boolean success = job.waitForCompletion(true);

    其实使用Gora与一般的MR程序的主要区别在于:

    (1)继承于GoraMapper/GoraReducer,而不是Mapper/Reducer。

    (2)使用GoraMapper.initMapperJob(), GoraReducer.initReducerJob()设置输入输出类型,而且可以使用一个DataSource类对象表示输入/输出的KEY-VALUE。

    如本例中的mapper,使用instroe来代替指定了输入KV类型为Long,Pageview,本例中的reducer,使用outstore来代替指定了输出类型为String, MetricDatum。

    对比http://blog.csdn.net/jediael_lu/article/details/43416751中所描述的运行一个job所需的基本属性:

    GoraMapper.initMapperJob(job, inStore, TextLong.class, LongWritable.class,  LogAnalyticsMapper.class, true);
    GoraReducer.initReducerJob(job, outStore, LogAnalyticsReducer.class);
    以上语句同时完成了2、3、4、5步,即
    指定了2、Map/Reduce的类:LogAnalyticsMapper.class与LogAnalyticsReducer.class
    指定了3、4、输入格式及内容及5、reduce的输出类型:即输入输出均为DataSource格式,内容为inStore与outStore中的内容。
    指定了5、指定了map的输出类型,这也是reduce的输入类型。


    附详细代码:

    (1)KeyValueWritable.java

    package org.apache.gora.tutorial.log;
    
    import java.io.DataInput;
    import java.io.DataOutput;
    import java.io.IOException;
    
    import org.apache.hadoop.io.WritableComparable;
    
    /**
     * A WritableComparable containing a key-value WritableComparable pair.
     * @param <K> the class of key 
     * @param <V> the class of value
     */
    public class KeyValueWritable<K extends WritableComparable, V extends WritableComparable> 
      implements WritableComparable<KeyValueWritable<K,V>> {
    
      protected K key = null;
      protected V value =  null;
      
      public KeyValueWritable() {
      }
      
      public KeyValueWritable(K key, V value) {
        this.key = key;
        this.value = value;
      }
    
      public K getKey() {
        return key;
      }
      
      public void setKey(K key) {
        this.key = key;
      }
      
      public V getValue() {
        return value;
      }
      
      public void setValue(V value) {
        this.value = value;
      }
    
      @Override
      public void readFields(DataInput in) throws IOException {
        if(key == null) {
          
        }
        key.readFields(in);
        value.readFields(in);
      }
      
      @Override
      public void write(DataOutput out) throws IOException {
        key.write(out);
        value.write(out);
      }
    
      @Override
      public int hashCode() {
        final int prime = 31;
        int result = 1;
        result = prime * result + ((key == null) ? 0 : key.hashCode());
        result = prime * result + ((value == null) ? 0 : value.hashCode());
        return result;
      }
    
      @Override
      public boolean equals(Object obj) {
        if (this == obj)
          return true;
        if (obj == null)
          return false;
        if (getClass() != obj.getClass())
          return false;
        KeyValueWritable other = (KeyValueWritable) obj;
        if (key == null) {
          if (other.key != null)
            return false;
        } else if (!key.equals(other.key))
          return false;
        if (value == null) {
          if (other.value != null)
            return false;
        } else if (!value.equals(other.value))
          return false;
        return true;
      }
    
      @Override
      public int compareTo(KeyValueWritable<K, V> o) {
        int cmp = key.compareTo(o.key);
        if(cmp != 0)
          return cmp;
        
        return value.compareTo(o.value);
      }
    }
    

     (2) TextLong.java

    package org.apache.gora.tutorial.log;
    
    import org.apache.hadoop.io.LongWritable;
    import org.apache.hadoop.io.Text;
    
    /**
     * A {@link KeyValueWritable} of {@link Text} keys and 
     * {@link LongWritable} values. 
     */
    public class TextLong extends KeyValueWritable<Text, LongWritable> {
    
      public TextLong() {
        key = new Text();
        value = new LongWritable();
      }
      
    }

     (3) LogAnalytics.java

    package org.apache.gora.tutorial.log;
    
    import java.io.IOException;
    
    import org.apache.avro.util.Utf8;
    import org.slf4j.Logger;
    import org.slf4j.LoggerFactory;
    import org.apache.gora.mapreduce.GoraMapper;
    import org.apache.gora.mapreduce.GoraReducer;
    import org.apache.gora.store.DataStore;
    import org.apache.gora.store.DataStoreFactory;
    import org.apache.gora.tutorial.log.generated.MetricDatum;
    import org.apache.gora.tutorial.log.generated.Pageview;
    import org.apache.hadoop.conf.Configuration;
    import org.apache.hadoop.conf.Configured;
    import org.apache.hadoop.io.LongWritable;
    import org.apache.hadoop.io.Text;
    import org.apache.hadoop.mapreduce.Job;
    import org.apache.hadoop.util.Tool;
    import org.apache.hadoop.util.ToolRunner;
    
    /**
     * LogAnalytics is the tutorial class to illustrate Gora MapReduce API. 
     * The analytics mapreduce job reads the web access data stored earlier by the 
     * {@link LogManager}, and calculates the aggregate daily pageviews. The
     * output of the job is stored in a Gora compatible data store. 
     * 
     * <p>See the tutorial.html file in docs or go to the 
     * <a href="http://incubator.apache.org/gora/docs/current/tutorial.html"> 
     * web site</a>for more information.</p>
     */
    public class LogAnalytics extends Configured implements Tool {
    
      private static final Logger log = LoggerFactory.getLogger(LogAnalytics.class);
      
      /** The number of miliseconds in a day */
      private static final long DAY_MILIS = 1000 * 60 * 60 * 24;
        
      /**
       * The Mapper takes Long keys and Pageview objects, and emits 
       * tuples of <url, day> as keys and 1 as values. Input values are 
       * read from the input data store.
       * Note that all Hadoop serializable classes can be used as map output key and value.
       * 
       */
      //6、定义map类
      public static class LogAnalyticsMapper extends GoraMapper<Long, Pageview, TextLong,
          LongWritable> {
        
        private LongWritable one = new LongWritable(1L);
      
        private TextLong tuple;
        
        @Override
        protected void setup(Context context) throws IOException ,InterruptedException {
          tuple = new TextLong();
          tuple.setKey(new Text());
          tuple.setValue(new LongWritable());
        };
        
        @Override
        protected void map(Long key, Pageview pageview, Context context)
            throws IOException ,InterruptedException {
          
          CharSequence url = pageview.getUrl();
          long day = getDay(pageview.getTimestamp());
          
          tuple.getKey().set(url.toString());
          tuple.getValue().set(day);
          
          context.write(tuple, one);
        };
        
        /** Rolls up the given timestamp to the day cardinality, so that 
         * data can be aggregated daily */
        private long getDay(long timeStamp) {
          return (timeStamp / DAY_MILIS) * DAY_MILIS; 
        }
      }
      
      /**
       * The Reducer receives tuples of <url, day> as keys and a list of 
       * values corresponding to the keys, and emits a combined keys and
       * {@link MetricDatum} objects. The metric datum objects are stored 
       * as job outputs in the output data store.
       */
      //7、定义reduce类
      public static class LogAnalyticsReducer extends GoraReducer<TextLong, LongWritable,
          String, MetricDatum> {
        
        private MetricDatum metricDatum = new MetricDatum();
        
        @Override
        protected void reduce(TextLong tuple, Iterable<LongWritable> values, Context context)
          throws IOException ,InterruptedException {
          
          long sum = 0L; //sum up the values
          for(LongWritable value: values) {
            sum+= value.get();
          }
          
          String dimension = tuple.getKey().toString();
          long timestamp = tuple.getValue().get();
          
          metricDatum.setMetricDimension(new Utf8(dimension));
          metricDatum.setTimestamp(timestamp);
          
          String key = metricDatum.getMetricDimension().toString();
          key += "_" + Long.toString(timestamp);
          metricDatum.setMetric(sum);
          
          context.write(key, metricDatum);
        };
      }
      
      /**
       * Creates and returns the {@link Job} for submitting to Hadoop mapreduce.
       * @param inStore
       * @param outStore
       * @param numReducer
       * @return
       * @throws IOException
       */
      public Job createJob(DataStore<Long, Pageview> inStore,
          DataStore<String, MetricDatum> outStore, int numReducer) throws IOException {
    	 //3、设置job的一些基本属性
        Job job = new Job(getConf());
        job.setJobName("Log Analytics");
        log.info("Creating Hadoop Job: " + job.getJobName());
        job.setNumReduceTasks(numReducer);
        job.setJarByClass(getClass());
    
        /* Mappers are initialized with GoraMapper.initMapper() or 
         * GoraInputFormat.setInput()*/
        //4、定义job相关的Map类及mapr的输入输出信息。
        GoraMapper.initMapperJob(job, inStore, TextLong.class, LongWritable.class,
            LogAnalyticsMapper.class, true);
        
        //4、定义job相关的Reduce类及reduce的输入输出信息。
        /* Reducers are initialized with GoraReducer#initReducer().
         * If the output is not to be persisted via Gora, any reducer 
         * can be used instead. */
        GoraReducer.initReducerJob(job, outStore, LogAnalyticsReducer.class);
        
        return job;
      }
      
      @Override
      public int run(String[] args) throws Exception {
        
        DataStore<Long, Pageview> inStore;
        DataStore<String, MetricDatum> outStore;
        Configuration conf = new Configuration();
    
        //1、获取输入、输出DataStore。
        if(args.length > 0) {
          String dataStoreClass = args[0];
          inStore = DataStoreFactory.
              getDataStore(dataStoreClass, Long.class, Pageview.class, conf);
          if(args.length > 1) {
            dataStoreClass = args[1];
          }
          outStore = DataStoreFactory.
              getDataStore(dataStoreClass, String.class, MetricDatum.class, conf);
        } else {
    	    inStore = DataStoreFactory.getDataStore(Long.class, Pageview.class, conf);
    	    outStore = DataStoreFactory.getDataStore(String.class, MetricDatum.class, conf);
        }
        
        //2、使用输入输出DataStore来创建一个job
        Job job = createJob(inStore, outStore, 3);
        boolean success = job.waitForCompletion(true);
        
        inStore.close();
        outStore.close();
        
        log.info("Log completed with " + (success ? "success" : "failure"));
        
        return success ? 0 : 1;
      }
      
      private static final String USAGE = "LogAnalytics <input_data_store> <output_data_store>";
      
      public static void main(String[] args) throws Exception {
        if(args.length < 2) {
          System.err.println(USAGE);
          System.exit(1);
        }
        //run as any other MR job
        int ret = ToolRunner.run(new LogAnalytics(), args);
        System.exit(ret);
      }
      
    }
    



    6、运行程序
    (1)导出程序—>runnable jar file,并将其上传到服务器



    (2)运行程序
    $ java -jar MyGoraDemo.jar org.apache.gora.hbase.store.HBaseStore org.apache.gora.hbase.store.HBaseStore

    (3)查看hbase中的结果

    hbase(main):001:0> list
    TABLE                                                                                                                                                                   
    AccessLog                                                                                                                                                               
    Jan2814_webpage                                                                                                                                                         
    Jan2819_webpage                                                                                                                                                         
    Jan2910_webpage                                                                                                                                                         
    Jan2920_webpage                                                                                                                                                         
    Metrics                                                                                                                                                                 
    Passwd                                                                                                                                                                  
    member                                                                                                                                                                  
    8 row(s) in 2.6450 seconds

    hbase(main):002:0> scan 'Metrics'



    版权声明:本文为博主原创文章,未经博主允许不得转载。

  • 相关阅读:
    spring cloud 搭建(服务)
    spring cloud 搭建(配置中心)
    spring cloud 搭建(注册中心)
    spring cloud 搭建
    skywalking 配置和使用(windows)
    jenkins 发布报错
    web 显示 pdf
    springmvc Cacheable 不设置key
    iRed邮箱使用情况
    关闭SSL服务[iRedMail]
  • 原文地址:https://www.cnblogs.com/lujinhong2/p/4637234.html
Copyright © 2011-2022 走看看