前往小程序,Get更优阅读体验!
立即前往
首页
学习
活动
专区
工具
TVP
发布
社区首页 >专栏 >Flink1.4 安装与启动

Flink1.4 安装与启动

作者头像
smartsi
发布2019-08-07 11:48:46
6930
发布2019-08-07 11:48:46
举报
文章被收录于专栏:SmartSiSmartSi

1. 下载

Flink 可以运行在 Linux, Mac OS X和Windows上。为了运行Flink, 唯一的要求是必须在Java 7.x (或者更高版本)上安装。Windows 用户, 请查看 Flink在Windows上的安装指南。

你可以使用以下命令检查Java当前运行的版本:

java -version

如果你安装的是Java 8,输出结果类似于如下:

java version "1.8.0_91"
Java(TM) SE Runtime Environment (build 1.8.0_91-b14)
Java HotSpot(TM) 64-Bit Server VM (build 25.91-b14, mixed mode)

从下载页下载一个二进制的包,你可以选择任何你喜欢的Hadoop/Scala组合方式。如果你只是打算使用本地文件系统,那么可以使用任何版本的Hadoop。进入下载目录,解压下载的压缩包:

xiaosi@yoona:~$ tar -zxvf flink-1.3.2-bin-hadoop27-scala_2.11.tgz -C opt/
flink-1.3.2/
flink-1.3.2/opt/
flink-1.3.2/opt/flink-cep_2.11-1.3.2.jar
flink-1.3.2/opt/flink-metrics-datadog-1.3.2.jar
flink-1.3.2/opt/flink-metrics-statsd-1.3.2.jar
flink-1.3.2/opt/flink-gelly_2.11-1.3.2.jar
flink-1.3.2/opt/flink-metrics-dropwizard-1.3.2.jar
flink-1.3.2/opt/flink-gelly-scala_2.11-1.3.2.jar
flink-1.3.2/opt/flink-metrics-ganglia-1.3.2.jar
flink-1.3.2/opt/flink-cep-scala_2.11-1.3.2.jar
flink-1.3.2/opt/flink-table_2.11-1.3.2.jar
flink-1.3.2/opt/flink-ml_2.11-1.3.2.jar
flink-1.3.2/opt/flink-metrics-graphite-1.3.2.jar
flink-1.3.2/lib/
...

2. 启动本地集群

使用如下命令启动Flink:

xiaosi@yoona:~/opt/flink-1.3.2$ ./bin/start-local.sh
Starting jobmanager daemon on host yoona.

通过访问 http://localhost:8081 检查JobManager网页,确保所有组件都启动并已运行。网页会显示一个有效的TaskManager实例。

img
img

你也可以通过检查日志目录里的日志文件来验证系统是否已经运行:

xiaosi@yoona:~/opt/flink-1.3.2/log$ cat flink-xiaosi-jobmanager-0-yoona.log | less
2017-10-16 14:42:10,972 INFO  org.apache.flink.runtime.jobmanager.JobManager                -  Starting JobManager (Version: 1.3.2, Rev:0399bee, Date:03.08.2017 @ 10:23:11 UTC)
...
2017-10-16 14:42:11,109 INFO  org.apache.flink.runtime.jobmanager.JobManager                - Starting JobManager without high-availability
2017-10-16 14:42:11,111 INFO  org.apache.flink.runtime.jobmanager.JobManager                - Starting JobManager on localhost:6123 with execution mode LOCAL
...
2017-10-16 14:42:11,915 INFO  org.apache.flink.runtime.jobmanager.JobManager                - Starting JobManager web frontend
...
2017-10-16 14:42:13,941 INFO  org.apache.flink.runtime.instance.InstanceManager             - Registered TaskManager at localhost (akka://flink/user/taskmanager) as 0df4d4ebd25ffec4878906726c29f88c. Current number of registered hosts is 1. Current number of alive task slots is 1.
...

3. Example Code

你可以在GitHub上找到SocketWindowWordCount例子的完整代码,有JavaScala两个版本。

Scala:

package org.apache.flink.streaming.scala.examples.socket

import org.apache.flink.api.java.utils.ParameterTool
import org.apache.flink.streaming.api.scala._
import org.apache.flink.streaming.api.windowing.time.Time

/**
 * Implements a streaming windowed version of the "WordCount" program.
 *
 * This program connects to a server socket and reads strings from the socket.
 * The easiest way to try this out is to open a text sever (at port 12345)
 * using the ''netcat'' tool via
 * {{{
 * nc -l 12345
 * }}}
 * and run this example with the hostname and the port as arguments..
 */
object SocketWindowWordCount {

  /** Main program method */
  def main(args: Array[String]) : Unit = {

    // the host and the port to connect to
    var hostname: String = "localhost"
    var port: Int = 0

    try {
      val params = ParameterTool.fromArgs(args)
      hostname = if (params.has("hostname")) params.get("hostname") else "localhost"
      port = params.getInt("port")
    } catch {
      case e: Exception => {
        System.err.println("No port specified. Please run 'SocketWindowWordCount " +
          "--hostname <hostname> --port <port>', where hostname (localhost by default) and port " +
          "is the address of the text server")
        System.err.println("To start a simple text server, run 'netcat -l <port>' " +
          "and type the input text into the command line")
        return
      }
    }

    // get the execution environment
    val env: StreamExecutionEnvironment = StreamExecutionEnvironment.getExecutionEnvironment

    // get input data by connecting to the socket
    val text: DataStream[String] = env.socketTextStream(hostname, port, '\n')

    // parse the data, group it, window it, and aggregate the counts
    val windowCounts = text
          .flatMap { w => w.split("\\s") }
          .map { w => WordWithCount(w, 1) }
          .keyBy("word")
          .timeWindow(Time.seconds(5))
          .sum("count")

    // print the results with a single thread, rather than in parallel
    windowCounts.print().setParallelism(1)

    env.execute("Socket Window WordCount")
  }

  /** Data type for words with count */
  case class WordWithCount(word: String, count: Long)
}

Java版本:

package org.apache.flink.streaming.examples.socket;

import org.apache.flink.api.common.functions.FlatMapFunction;
import org.apache.flink.api.common.functions.ReduceFunction;
import org.apache.flink.api.java.utils.ParameterTool;
import org.apache.flink.streaming.api.datastream.DataStream;
import org.apache.flink.streaming.api.environment.StreamExecutionEnvironment;
import org.apache.flink.streaming.api.windowing.time.Time;
import org.apache.flink.util.Collector;

/**
 * Implements a streaming windowed version of the "WordCount" program.
 *
 * <p>This program connects to a server socket and reads strings from the socket.
 * The easiest way to try this out is to open a text server (at port 12345)
 * using the <i>netcat</i> tool via
 * <pre>
 * nc -l 12345
 * </pre>
 * and run this example with the hostname and the port as arguments.
 */
@SuppressWarnings("serial")
public class SocketWindowWordCount {

	public static void main(String[] args) throws Exception {

		// the host and the port to connect to
		final String hostname;
		final int port;
		try {
			final ParameterTool params = ParameterTool.fromArgs(args);
			hostname = params.has("hostname") ? params.get("hostname") : "localhost";
			port = params.getInt("port");
		} catch (Exception e) {
			System.err.println("No port specified. Please run 'SocketWindowWordCount " +
				"--hostname <hostname> --port <port>', where hostname (localhost by default) " +
				"and port is the address of the text server");
			System.err.println("To start a simple text server, run 'netcat -l <port>' and " +
				"type the input text into the command line");
			return;
		}

		// get the execution environment
		final StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();

		// get input data by connecting to the socket
		DataStream<String> text = env.socketTextStream(hostname, port, "\n");

		// parse the data, group it, window it, and aggregate the counts
		DataStream<WordWithCount> windowCounts = text

				.flatMap(new FlatMapFunction<String, WordWithCount>() {
					@Override
					public void flatMap(String value, Collector<WordWithCount> out) {
						for (String word : value.split("\\s")) {
							out.collect(new WordWithCount(word, 1L));
						}
					}
				})

				.keyBy("word")
				.timeWindow(Time.seconds(5))

				.reduce(new ReduceFunction<WordWithCount>() {
					@Override
					public WordWithCount reduce(WordWithCount a, WordWithCount b) {
						return new WordWithCount(a.word, a.count + b.count);
					}
				});

		// print the results with a single thread, rather than in parallel
		windowCounts.print().setParallelism(1);

		env.execute("Socket Window WordCount");
	}

	// ------------------------------------------------------------------------

	/**
	 * Data type for words with count.
	 */
	public static class WordWithCount {

		public String word;
		public long count;

		public WordWithCount() {}

		public WordWithCount(String word, long count) {
			this.word = word;
			this.count = count;
		}

		@Override
		public String toString() {
			return word + " : " + count;
		}
	}
}

4. 运行Example

现在, 我们可以运行Flink 应用程序。 这个例子将会从一个socket中读取一段文本,并且每隔5秒打印之前5秒内每个单词出现的个数。例如:

a tumbling window of processing time, as long as words are floating in.

(1) 首先,我们可以通过netcat命令来启动本地服务:

nc -l 9000

(2) 提交Flink程序:

xiaosi@yoona:~/opt/flink-1.3.2$ ./bin/flink run examples/streaming/SocketWindowWordCount.jar --port 9000
Cluster configuration: Standalone cluster with JobManager at localhost/127.0.0.1:6123
Using address localhost:6123 to connect to JobManager.
JobManager web interface address http://localhost:8081
Starting execution of program
Submitting job with JobID: a963626a1e09f7aeb0dc34412adfb801. Waiting for job completion.
Connected to JobManager at Actor[akka.tcp://flink@localhost:6123/user/jobmanager#941160871] with leader session id 00000000-0000-0000-0000-000000000000.
10/16/2017 15:12:26	Job execution switched to status RUNNING.
10/16/2017 15:12:26	Source: Socket Stream -> Flat Map(1/1) switched to SCHEDULED
10/16/2017 15:12:26	TriggerWindow(TumblingProcessingTimeWindows(5000), ReducingStateDescriptor{serializer=org.apache.flink.api.java.typeutils.runtime.PojoSerializer@37ff898e, reduceFunction=org.apache.flink.streaming.examples.socket.SocketWindowWordCount$1@4d15107f}, ProcessingTimeTrigger(), WindowedStream.reduce(WindowedStream.java:300)) -> Sink: Unnamed(1/1) switched to SCHEDULED
10/16/2017 15:12:26	Source: Socket Stream -> Flat Map(1/1) switched to DEPLOYING
10/16/2017 15:12:26	TriggerWindow(TumblingProcessingTimeWindows(5000), ReducingStateDescriptor{serializer=org.apache.flink.api.java.typeutils.runtime.PojoSerializer@37ff898e, reduceFunction=org.apache.flink.streaming.examples.socket.SocketWindowWordCount$1@4d15107f}, ProcessingTimeTrigger(), WindowedStream.reduce(WindowedStream.java:300)) -> Sink: Unnamed(1/1) switched to DEPLOYING
10/16/2017 15:12:26	Source: Socket Stream -> Flat Map(1/1) switched to RUNNING
10/16/2017 15:12:26	TriggerWindow(TumblingProcessingTimeWindows(5000), ReducingStateDescriptor{serializer=org.apache.flink.api.java.typeutils.runtime.PojoSerializer@37ff898e, reduceFunction=org.apache.flink.streaming.examples.socket.SocketWindowWordCount$1@4d15107f}, ProcessingTimeTrigger(), WindowedStream.reduce(WindowedStream.java:300)) -> Sink: Unnamed(1/1) switched to RUNNING

应用程序连接socket并等待输入,你可以通过web界面来验证任务期望的运行结果:

单词的数量在5秒的时间窗口中进行累加(使用处理时间和tumbling窗口),并打印在stdout。监控JobManager的输出文件,并在nc写一些文本(回车一行就发送一行输入给Flink) :

xiaosi@yoona:~/opt/flink-1.3.2$  nc -l 9000
lorem ipsum
ipsum ipsum ipsum
bye

.out文件将在每个时间窗口截止之际打印每个单词的个数:

xiaosi@yoona:~/opt/flink-1.3.2$  tail -f log/flink-*-jobmanager-*.out
lorem : 1
bye : 1
ipsum : 4

使用以下命令来停止Flink:

./bin/stop-local.sh

阅读更多的例子来熟悉Flink的编程API。 当你完成这些,可以继续阅读streaming指南

本文参与 腾讯云自媒体分享计划,分享自作者个人站点/博客。
原始发表:2018-01-04,如有侵权请联系 cloudcommunity@tencent.com 删除

本文分享自 作者个人站点/博客 前往查看

如有侵权,请联系 cloudcommunity@tencent.com 删除。

本文参与 腾讯云自媒体分享计划  ,欢迎热爱写作的你一起参与!

评论
登录后参与评论
0 条评论
热度
最新
推荐阅读
目录
  • 1. 下载
  • 2. 启动本地集群
  • 3. Example Code
  • 4. 运行Example
相关产品与服务
大数据
全栈大数据产品,面向海量数据场景,帮助您 “智理无数,心中有数”!
领券
问题归档专栏文章快讯文章归档关键词归档开发者手册归档开发者手册 Section 归档