Storm整合Redis

实现功能:

将之前的词频统计案例改编,将一个数组中的数据每隔1秒取出一个,通过Storm的Topology处理之后写入到Redis中

首先要记得导入pom依赖

<dependency>
      <groupId>org.apache.storm</groupId>
      <artifactId>storm-redis</artifactId>
      <version>1.1.1</version>
</dependency>

代码实现:

package cn.ysjh.drpc;


import org.apache.storm.Config;
import org.apache.storm.LocalCluster;
import org.apache.storm.redis.bolt.RedisStoreBolt;
import org.apache.storm.redis.common.config.JedisPoolConfig;
import org.apache.storm.redis.common.mapper.RedisDataTypeDescription;
import org.apache.storm.redis.common.mapper.RedisStoreMapper;
import org.apache.storm.spout.SpoutOutputCollector;
import org.apache.storm.task.OutputCollector;
import org.apache.storm.task.TopologyContext;
import org.apache.storm.topology.OutputFieldsDeclarer;
import org.apache.storm.topology.TopologyBuilder;
import org.apache.storm.topology.base.BaseRichBolt;
import org.apache.storm.topology.base.BaseRichSpout;
import org.apache.storm.tuple.Fields;
import org.apache.storm.tuple.ITuple;
import org.apache.storm.tuple.Tuple;
import org.apache.storm.tuple.Values;
import org.apache.storm.utils.Utils;


import java.util.*;

public class StormRedis {

    private static class DataSourceSpout extends BaseRichSpout {

        private SpoutOutputCollector spoutOutputCollector;

        @Override
        public void open(Map map, TopologyContext topologyContext, SpoutOutputCollector spoutOutputCollector) {
            this.spoutOutputCollector = spoutOutputCollector;
        }

        public static final String[] words = new String[]{"apple", "ysjh", "shjkl", "ueyowir", "tiuyh"};

        @Override
        public void nextTuple() {

            Random random = new Random();
            String word = words[random.nextInt(words.length)];
            this.spoutOutputCollector.emit(new Values(word));

            System.out.println("数据" + word);

            Utils.sleep(1000);

        }

        @Override
        public void declareOutputFields(OutputFieldsDeclarer outputFieldsDeclarer) {
            outputFieldsDeclarer.declare(new Fields("lines"));
        }
    }


    /*
    词频分割Bolt
     */
    private static class SplitBolt extends BaseRichBolt {

        private OutputCollector outputCollector;

        @Override
        public void prepare(Map map, TopologyContext topologyContext, OutputCollector outputCollector) {
            this.outputCollector = outputCollector;
        }


        /*
        对lines按照逗号进行切分
         */
        @Override
        public void execute(Tuple tuple) {

            String lines = tuple.getStringByField("lines");


            this.outputCollector.emit(new Values(lines));

        }

        @Override
        public void declareOutputFields(OutputFieldsDeclarer outputFieldsDeclarer) {
            outputFieldsDeclarer.declare(new Fields("words"));
        }
    }


    /*
    词频统计Bolt
     */
    private static class CountBolt extends BaseRichBolt {

        private OutputCollector outputCollector;

        @Override
        public void prepare(Map map, TopologyContext topologyContext, OutputCollector outputCollector) {
        this.outputCollector=outputCollector;
        }

        Map<String, Integer> map = new HashMap<>();

        @Override
        public void execute(Tuple tuple) {

            String words = tuple.getStringByField("words");
            Integer count = map.get(words);

            if (count == null) {
                count = 0;
            }
            count++;


            map.put(words, count);

          //输出
            this.outputCollector.emit(new Values(words,map.get(words)));

        }

        @Override
        public void declareOutputFields(OutputFieldsDeclarer outputFieldsDeclarer) {
           outputFieldsDeclarer.declare(new Fields("word","count"));
        }
    }

    public static class WordCountStoreMapper implements RedisStoreMapper {
        private RedisDataTypeDescription description;
        private final String hashKey = "wc";

        public WordCountStoreMapper() {
            description = new RedisDataTypeDescription(
                    RedisDataTypeDescription.RedisDataType.HASH, hashKey);
        }

        @Override
        public RedisDataTypeDescription getDataTypeDescription() {
            return description;
        }

        @Override
        public String getKeyFromTuple(ITuple tuple) {
            return tuple.getStringByField("word");
        }

        @Override
        public String getValueFromTuple(ITuple tuple) {
            return tuple.getIntegerByField("count")+"";
        }
    }

    public static void main(String[] args) {

        TopologyBuilder builder = new TopologyBuilder();
        builder.setSpout("DataSourceSpout", new DataSourceSpout());
        builder.setBolt("SplitBolt", new SplitBolt()).shuffleGrouping("DataSourceSpout");
        builder.setBolt("CountBolt", new CountBolt()).shuffleGrouping("SplitBolt");


        JedisPoolConfig poolConfig = new JedisPoolConfig.Builder()
                .setHost("118.89.108.116").setPort(6379).build();
        RedisStoreMapper storeMapper = new WordCountStoreMapper();
        RedisStoreBolt storeBolt = new RedisStoreBolt(poolConfig, storeMapper);
         builder.setBolt("RedisStoreBolt",storeBolt).shuffleGrouping("CountBolt");

        LocalCluster cluster = new LocalCluster();
        cluster.submitTopology("StormRedis", new Config(), builder.createTopology());

    }
}

运行截图:

然后在Redis的图形连接软件中不断刷线来查看db0数据库中的键值对的变化

猜你喜欢

转载自blog.csdn.net/ys_230014/article/details/84110312
今日推荐