• LB中使用到的一致性Hash算法的简单实现


    关于一致性hash算法,可以参考这篇文章: https://zhuanlan.zhihu.com/p/34985026

    1、类的Diagram

     2、代码实现

    2.1、Node类,每个Node代表集群里面的一个节点或者具体说是某一台物理机器;

    package consistencyhash;
    
    import lombok.Getter;
    import lombok.RequiredArgsConstructor;
    
    import java.util.Map;
    import java.util.concurrent.ConcurrentHashMap;
    import lombok.ToString;
    
    /**
     * @author xfyou
     * @date 2019/9/2
     */
    @Getter
    @RequiredArgsConstructor
    @ToString(exclude = "data")
    public class Node {
    
      private final String domain;
    
      private final String ip;
    
      private final Map<String, Object> data = new ConcurrentHashMap<>();
    
      public <T> void put(String key, T value) {
        data.put(key, value);
      }
    
      public void remove(String key) {
        data.remove(key);
      }
    
      public <T> T get(String key) {
        return (T) data.get(key);
      }
    
    }

    2.2、 AbstractCluster,cluster抽象类,集群抽象类;

    package consistencyhash;
    
    import java.util.ArrayList;
    import java.util.List;
    
    /**
     * @author xfyou
     * @date 2019/9/2
     */
    public abstract class AbstractCluster {
    
      protected final List<Node> nodes;
    
      public AbstractCluster() {
        this.nodes = new ArrayList<>();
      }
    
      public abstract void addNode(Node node);
    
      public abstract void removeNode(Node node);
    
      public abstract Node get(String key);
    
    }

     2.3、Cluster类,集群类,一致性hash算法的具体实现类

    package consistencyhash;
    
    import com.google.common.hash.Hashing;
    import java.nio.charset.StandardCharsets;
    import java.util.SortedMap;
    import java.util.TreeMap;
    import java.util.stream.IntStream;
    
    /**
     * @author xfyou
     * @date 2019/9/2
     */
    public class ConsistencyHashCluster extends AbstractCluster {
    
      private final SortedMap<Long, Node> virNodes = new TreeMap<>();
    
      private static final int VIR_NODE_COUNT = 160;
    
      @Override
      public void addNode(Node node) {
        this.nodes.add(node);
        IntStream.range(0, VIR_NODE_COUNT / 4).forEach(i -> {
          byte[] digest = Hashing.md5().hashBytes((node.toString() + i).getBytes(StandardCharsets.UTF_8)).asBytes();
          for (int h = 0; h < 4; h++) {
            virNodes.put(hash(digest, h), node);
          }
        });
      }
    
      /**
       * 物理节点被删除的话,这个物理节点所对应的所有的虚拟节点也同时被删
       */
      @Override
      public void removeNode(Node node) {
        nodes.removeIf(o -> node.getIp().equals(o.getIp()));
        IntStream.range(0, VIR_NODE_COUNT / 4).forEach(i -> {
          byte[] digest = Hashing.md5().hashBytes((node.toString() + i).getBytes(StandardCharsets.UTF_8)).asBytes();
          for (int h = 0; h < 4; h++) {
            virNodes.remove(hash(digest, h));
          }
        });
      }
    
      @Override
      public Node get(String key) {
        long hash = calHash(key);
        SortedMap<Long, Node> subMap = hash >= virNodes.lastKey() ? virNodes.tailMap(0L) : virNodes.tailMap(hash);
        if (subMap.isEmpty()) {
          return virNodes.get(virNodes.firstKey());
        }
        System.out.println("hash=" + hash + ",subMap.firstKey=" + subMap.firstKey());
        return subMap.get(subMap.firstKey());
      }
    
      private long calHash(String key) {
        byte[] keyBytes = Hashing.md5().hashBytes(key.getBytes(StandardCharsets.UTF_8)).asBytes();
        return hash(keyBytes, 0);
      }
    
      /**
       * 取MD5后16个字节中的连续的4个字节并通过移位操作来转换为 long 类型的 hash 值
       */
      private long hash(byte[] digest, int number) {
        return (((long) (digest[3 + number * 4] & 0xFF) << 24)
                | ((long) (digest[2 + number * 4] & 0xFF) << 16)
                | ((long) (digest[1 + number * 4] & 0xFF) << 8)
                | (digest[number * 4] & 0xFF))
                & 0xFFFFFFFFL;
      }
    
    }

     2.4、Test类,测试类

    package consistencyhash;
    
    import java.util.stream.IntStream;
    
    /**
     * @author xfyou
     * @date 2019/9/2
     */
    public class Test {
    
      private static final int DATA_CONT = 20;
    
      private static final String PRE_KEY = "PRE_KEY";
    
      public static void main(String[] args) {
    
        AbstractCluster cluster = new ConsistencyHashCluster();
        cluster.addNode(new Node("c1.yywang.info", "192.168.0.1"));
        cluster.addNode(new Node("c2.yywang.info", "192.168.0.2"));
        cluster.addNode(new Node("c3.yywang.info", "192.168.0.3"));
    
        IntStream.range(0, DATA_CONT).forEach(index -> {
          Node node = cluster.get(PRE_KEY + index);
          node.put(PRE_KEY + index, "cached_data");
        });
    
        System.out.println("数据分布情况:");
        cluster.nodes.forEach(node -> {
          System.out.println("IP:" + node.getIp() + ",数据量:" + node.getData().size());
        });
    
        cluster.removeNode(new Node("c1.yywang.info", "192.168.0.1"));
    
        // 查询命中率,如果没有命中则需要从后端 DB 中查询
        long hitCount = IntStream.range(0, DATA_CONT).filter(index -> cluster.get(PRE_KEY + index).get(PRE_KEY + index) != null).count();
        System.out.println("hitCount=" + hitCount);
        System.out.println("缓存命中率:" + hitCount * 1f / DATA_CONT);
      }
    
    }
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  • 原文地址:https://www.cnblogs.com/frankyou/p/11447801.html
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