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使用flink编写WordCount

  1. env-准备环境

  2. source-加载数据

  3. transformation-数据处理转换

  4. sink-数据输出

  5. execute-执行

流程图:

*DataStream API开发*

//nightlies.apache.org/flink/flink-docs-release-1.13/docs/dev/datastream/overview/

添加依赖

<properties>
  <flink.version>1.13.6</flink.version>
</properties>
 
<dependencies>
  <dependency>
    <groupId>org.apache.flink</groupId>
    <artifactId>flink-streaming-java_2.11</artifactId>
    <version>${flink.version}</version>
  </dependency>
 
  <dependency>
    <groupId>org.apache.flink</groupId>
    <artifactId>flink-java</artifactId>
    <version>${flink.version}</version>
  </dependency>
 
  <dependency>
    <groupId>org.apache.flink</groupId>
    <artifactId>flink-clients_2.11</artifactId>
    <version>${flink.version}</version>
  </dependency>
 
  <dependency>
    <groupId>org.apache.flink</groupId>
    <artifactId>flink-table-api-java-bridge_2.11</artifactId>
    <version>${flink.version}</version>
  </dependency>
 
  <dependency>
    <groupId>org.apache.flink</groupId>
    <artifactId>flink-table-planner-blink_2.11</artifactId>
    <version>${flink.version}</version>
  </dependency>
 
  <dependency>
    <groupId>org.apache.flink</groupId>
    <artifactId>flink-shaded-hadoop-2-uber</artifactId>
    <version>2.7.5-10.0</version>
  </dependency>
 
  <dependency>
    <groupId>log4j</groupId>
    <artifactId>log4j</artifactId>
    <version>1.2.17</version>
  </dependency>
 
  <dependency>
    <groupId>org.projectlombok</groupId>
    <artifactId>lombok</artifactId>
    <version>1.18.24</version>
  </dependency>
 
</dependencies>
 
<build>
  <extensions>
    <extension>
      <groupId>org.apache.maven.wagon</groupId>
      <artifactId>wagon-ssh</artifactId>
      <version>2.8</version>
    </extension>
  </extensions>
 
  <plugins>
    <plugin>
      <groupId>org.codehaus.mojo</groupId>
      <artifactId>wagon-maven-plugin</artifactId>
      <version>1.0</version>
      <configuration>
        <!--上传的本地jar的位置-->
        <fromFile>target/${project.build.finalName}.jar</fromFile>
        <!--远程拷贝的地址-->
        <url>scp://root:root@bigdata01:/opt/app</url>
      </configuration>
    </plugin>
  </plugins>
 
</build>

编写代码

package com.bigdata.day01;
 
 
import org.apache.flink.api.common.RuntimeExecutionMode;
import org.apache.flink.api.common.functions.FlatMapFunction;
import org.apache.flink.api.common.functions.MapFunction;
import org.apache.flink.api.java.functions.KeySelector;
import org.apache.flink.api.java.tuple.Tuple2;
import org.apache.flink.streaming.api.datastream.DataStream;
import org.apache.flink.streaming.api.datastream.DataStreamSource;
import org.apache.flink.streaming.api.datastream.SingleOutputStreamOperator;
import org.apache.flink.streaming.api.environment.StreamExecutionEnvironment;
import org.apache.flink.util.Collector;
 
 
public class WordCount01 {
 
    /**
     * 1. env-准备环境
     * 2. source-加载数据
     * 3. transformation-数据处理转换
     * 4. sink-数据输出
     * 5. execute-执行
     */
 
    public static void main(String[] args) throws Exception {
        // 导入常用类时要注意   不管是在本地开发运行还是在集群上运行,都这么写,非常方便
        StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();
        // 这个是 自动 ,根据流的性质,决定是批处理还是流处理
        //env.setRuntimeMode(RuntimeExecutionMode.AUTOMATIC);
        // 批处理流, 一口气把数据算出来
        // env.setRuntimeMode(RuntimeExecutionMode.BATCH);
        // 流处理,默认是这个  可以通过打印批和流的处理结果,体会流和批的含义
        env.setRuntimeMode(RuntimeExecutionMode.STREAMING);
 
        // 获取数据  多态的写法 DataStreamSource 它是 DataStream 的子类
        DataStream<String> dataStream01 = env.fromElements("spark flink kafka", "spark sqoop flink", "kakfa hadoop flink");
 
        DataStream<String> flatMapStream = dataStream01.flatMap(new FlatMapFunction<String, String>() {
 
            @Override
            public void flatMap(String line, Collector<String> collector) throws Exception {
                String[] arr = line.split(" ");
                for (String word : arr) {
                    // 循环遍历每一个切割完的数据,放入到收集器中,就可以形成一个新的DataStream
                    collector.collect(word);
                }
            }
        });
        //flatMapStream.print();
        // Tuple2 指的是2元组
        DataStream<Tuple2<String, Integer>> mapStream = flatMapStream.map(new MapFunction<String, Tuple2<String, Integer>>() {
 
            @Override
            public Tuple2<String, Integer> map(String word) throws Exception {
                return Tuple2.of(word, 1); // ("hello",1)
            }
        });
        DataStream<Tuple2<String, Integer>> sumResult = mapStream.keyBy(new KeySelector<Tuple2<String, Integer>, String>() {
            @Override
            public String getKey(Tuple2<String, Integer> tuple2) throws Exception {
                return tuple2.f0;
            }
            // 此处的1 指的是元组的第二个元素,进行相加的意思
        }).sum(1);
        sumResult.print();
        // 执行
        env.execute();
    }
}

批处理结果:前面的序号代表分区

流处理结果:

也可以通过如下方式修改分区数量:

 env.setParallelism(2);

关于并行度的代码演示:

系统以及算子都可以设置并行度,或者获取并行度

package com.bigdata.day01;
 
 
import org.apache.flink.api.common.RuntimeExecutionMode;
import org.apache.flink.api.common.functions.FlatMapFunction;
import org.apache.flink.api.common.functions.MapFunction;
import org.apache.flink.api.java.functions.KeySelector;
import org.apache.flink.api.java.tuple.Tuple2;
import org.apache.flink.streaming.api.datastream.DataStream;
import org.apache.flink.streaming.api.datastream.DataStreamSource;
import org.apache.flink.streaming.api.datastream.SingleOutputStreamOperator;
import org.apache.flink.streaming.api.environment.StreamExecutionEnvironment;
import org.apache.flink.util.Collector;
 
 
public class WordCount01 {
 
    /**
     * 1. env-准备环境
     * 2. source-加载数据
     * 3. transformation-数据处理转换
     * 4. sink-数据输出
     * 5. execute-执行
     */
 
    public static void main(String[] args) throws Exception {
        // 导入常用类时要注意   不管是在本地开发运行还是在集群上运行,都这么写,非常方便
        StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();
        // 这个是 自动 ,根据流的性质,决定是批处理还是流处理
        //env.setRuntimeMode(RuntimeExecutionMode.AUTOMATIC);
        // 批处理流, 一口气把数据算出来
        // env.setRuntimeMode(RuntimeExecutionMode.BATCH);
        // 流处理,默认是这个  可以通过打印批和流的处理结果,体会流和批的含义
        env.setRuntimeMode(RuntimeExecutionMode.STREAMING);
        // 将任务的并行度设置为2
        // env.setParallelism(2);
        // 通过这个获取系统的并行度
        int parallelism = env.getParallelism();
        System.out.println(parallelism);
 
        // 获取数据  多态的写法 DataStreamSource 它是 DataStream 的子类
        DataStream<String> dataStream01 = env.fromElements("spark flink kafka", "spark sqoop flink", "kakfa hadoop flink");
 
        DataStream<String> flatMapStream = dataStream01.flatMap(new FlatMapFunction<String, String>() {
 
            @Override
            public void flatMap(String line, Collector<String> collector) throws Exception {
                String[] arr = line.split(" ");
                for (String word : arr) {
                    // 循环遍历每一个切割完的数据,放入到收集器中,就可以形成一个新的DataStream
                    collector.collect(word);
                }
            }
        });
        // 每一个算子也有自己的并行度,一般跟系统保持一致
        System.out.println("flatMap的并行度:"+flatMapStream.getParallelism());
        //flatMapStream.print();
        // Tuple2 指的是2元组
        DataStream<Tuple2<String, Integer>> mapStream = flatMapStream.map(new MapFunction<String, Tuple2<String, Integer>>() {
 
            @Override
            public Tuple2<String, Integer> map(String word) throws Exception {
                return Tuple2.of(word, 1); // ("hello",1)
            }
        });
        DataStream<Tuple2<String, Integer>> sumResult = mapStream.keyBy(new KeySelector<Tuple2<String, Integer>, String>() {
            @Override
            public String getKey(Tuple2<String, Integer> tuple2) throws Exception {
                return tuple2.f0;
            }
            // 此处的1 指的是元组的第二个元组,进行相加的意思
        }).sum(1);
        sumResult.print();
        // 执行
        env.execute();
    }
}
  1. 打包、上传

文件夹需要提前准备好

提交我们自己开发打包的任务

flink run -c com.bigdata.day01.WordCount01 /opt/app/FlinkDemo-1.0-SNAPSHOT.jar

去界面中查看运行结果:

因为你这个是集群运行的,所以标准输出流中查看,假如第一台没有,去第二台查看,一直点。


本文转载自: https://blog.csdn.net/weixin_63297999/article/details/143989534
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