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2017-04-13 01:56 232 查看


《Flink官方文档》Quick Start

原文链接  译者:清英

安装: 下载并开始使用Flink

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


如果你有安装Java 8,命令行有如下回显

java version "1.8.0_111"

Java(TM) SE Runtime Environment (build 1.8.0_111-b14)

Java HotSpot(TM) 64-Bit Server VM (build 25.111-b14, mixed mode)


** 下载和解压 **
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组合包。如果你计划使用文件系统,那么可以使用任何Hadoop版本。
进入下载目录
解压下载的压缩包

$ cd ~/Downloads        # Go to download directory
$ tar xzf flink-*.tgz   # Unpack the downloaded archive
$ cd flink-1.2.0
Start a Local Flink Cluster


MacOS X

对于 MacOS X 用户, Flink 可以通过Homebrew 进行安装。

~~~bash
$ brew install apache-flink …
$ flink –version
Version: 1.2.0, Commit ID: 1c659cf ~~~


启动一个本地的Flink集群

使用如下命令启动Flink:

$ ./bin/start-local.sh  # Start Flink


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



译注:本地需要有localhost 127.0.0.1的域名映射

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:

$ tail log/flink-*-jobmanager-*.log
INFO ... - Starting JobManager
INFO ... - Starting JobManager web frontend
INFO ... - Web frontend listening at 127.0.0.1:8081
INFO ... - Registered TaskManager at 127.0.0.1 (akka://flink/user/taskmanager)


阅读源码

你可以在GitHub中找到SocketWindowWordCount完整的代码,有JAVASCALA两个版本。

Scala

object SocketWindowWordCount {

def main(args: Array[String]) : Unit = {

// the port to connect to
val port: Int = try {
ParameterTool.fromArgs(args).getInt("port")
} catch {
case e: Exception => {
System.err.println("No port specified. Please run 'SocketWindowWordCount --port <port>'")
return
}
}

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

// get input data by connecting to the socket
val text = env.socketTextStream("localhost", 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), Time.seconds(1))
.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

public class SocketWin
4000
dowWordCount {

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

// the port to connect to
final int port;
try {
final ParameterTool params = ParameterTool.fromArgs(args);
port = params.getInt("port");
} catch (Exception e) {
System.err.println("No port specified. Please run 'SocketWindowWordCount --port <port>'");
return;
}

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

// get input data by connecting to the socket
DataStream<String> text = env.socketTextStream("localhost", 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), Time.seconds(1))
.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;
}
}
}


运行例子

现在, 我们可以运行Flink 应用程序。 这个例子将会从一个socket中读一段文本,并且每隔5秒打印每个单词出现的数量。 例如 a tumbling window of processing time, as long as words are floating in.
第一步, 我们可以通过
netcat
命令来启动本地服务。

$ nc -l 9000


提交Flink程序:

$ ./bin/flink run examples/streaming/SocketWindowWordCount.jar --port 9000

Cluster configuration: Standalone cluster with JobManager at /127.0.0.1:6123
Using address 127.0.0.1:6123 to connect to JobManager.
JobManager web interface address http://127.0.0.1:8081 Starting execution of program
Submitting job with JobID: 574a10c8debda3dccd0c78a3bde55e1b. Waiting for job completion.
Connected to JobManager at Actor[akka.tcp://flink@127.0.0.1:6123/user/jobmanager#297388688]
11/04/2016 14:04:50     Job execution switched to status RUNNING.
11/04/2016 14:04:50     Source: Socket Stream -> Flat Map(1/1) switched to SCHEDULED
11/04/2016 14:04:50     Source: Socket Stream -> Flat Map(1/1) switched to DEPLOYING
11/04/2016 14:04:50     Fast TumblingProcessingTimeWindows(5000) of WindowedStream.main(SocketWindowWordCount.java:79) -> Sink: Unnamed(1/1) switched to SCHEDULED
11/04/2016 14:04:51     Fast TumblingProcessingTimeWindows(5000) of WindowedStream.main(SocketWindowWordCount.java:79) -> Sink: Unnamed(1/1) switched to DEPLOYING
11/04/2016 14:04:51     Fast TumblingProcessingTimeWindows(5000) of WindowedStream.main(SocketWindowWordCount.java:79) -> Sink: Unnamed(1/1) switched to RUNNING
11/04/2016 14:04:51     Source: Socket Stream -> Flat Map(1/1) switched to RUNNING


译者注:你也可以提交一个简单的任务examples/batch/WordCount.jar任务,也可以界面提交任务,提交前需要选择一下Entry Class。

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) :

$ nc -l 9000
lorem ipsum
ipsum ipsum ipsum
bye


译者注:mac下使用命令
nc -l -p 9000
来启动监听端口,如果有问题可以
telnet localhost 9000
看下监听端口是否已经启动,如果启动有问题可以重装netcat ,使用命令
brew install netcat


.out文件将被打印每个时间窗口单词的总数:

$ 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


下一步

Check out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

原创文章,转载请注明: 转载自并发编程网 – ifeve.com本文链接地址: 《Flink官方文档》Quick
Start
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