在本章中,我们将讨论Apache Storm的实时应用程序。我们将看到Storm如何在Twitter中使用。
Twitter是一种在线社交网络服务,提供发送和接收用户推文的平台。注册用户可以阅读和发布tweet,但未注册的用户只能阅读tweets。 Hashtag用于按关键字在相关关键字之前附加#来对tweet进行分类。现在让我们来看一个实时场景,找到每个主题使用最多的hashtag。
Spout创建
spout的目的是尽快收到人们提交的tweets。Twitter提供了“Twitter Streaming API”,一个基于Web服务的工具,用于实时检索人们提交的tweets。Twitter Streaming API可以使用任何编程语言访问。
twitter4j是一个开源的非官方Java库,它提供了一个基于Java的模块,可以轻松访问Twitter Streaming API。twitter4j提供了一个基于监听器的框架来访问tweet。要访问Twitter Streaming API,我们需要登录Twitter开发人员帐户,并获取以下OAuth身份验证详细信息。
- Customerkey
- CustomerSecret
- 的accessToken
- AccessTookenSecret
Storm在其入门套件中提供了一个twitter spout,TwitterSampleSpout。我们将使用它来检索tweet。该邮件需要OAuth身份验证详细信息和至少一个关键字。该spout将发出基于关键字的实时tweet。完整的程序代码如下。
编码:TwitterSampleSpout.java
import java.util.Map;
import java.util.concurrent.LinkedBlockingQueue;
import twitter4j.FilterQuery;
import twitter4j.StallWarning;
import twitter4j.Status;
import twitter4j.StatusDeletionNotice;
import twitter4j.StatusListener;
import twitter4j.TwitterStream;
import twitter4j.TwitterStreamFactory;
import twitter4j.auth.AccessToken;
import twitter4j.conf.ConfigurationBuilder;
import backtype.storm.Config;
import backtype.storm.spout.SpoutOutputCollector;
import backtype.storm.task.TopologyContext;
import backtype.storm.topology.OutputFieldsDeclarer;
import backtype.storm.topology.base.BaseRichSpout;
import backtype.storm.tuple.Fields;
import backtype.storm.tuple.Values;
import backtype.storm.utils.Utils;
@SuppressWarnings("serial")
public class TwitterSampleSpout extends BaseRichSpout {
SpoutOutputCollector _collector;
LinkedBlockingQueue<Status> queue = null;
TwitterStream _twitterStream;
String consumerKey;
String consumerSecret;
String accessToken;
String accessTokenSecret;
String[] keyWords;
public TwitterSampleSpout(String consumerKey, String consumerSecret,
String accessToken, String accessTokenSecret, String[] keyWords) {
this.consumerKey = consumerKey;
this.consumerSecret = consumerSecret;
this.accessToken = accessToken;
this.accessTokenSecret = accessTokenSecret;
this.keyWords = keyWords;
}
public TwitterSampleSpout() {
// TODO Auto-generated constructor stub
}
@Override
public void open(Map conf, TopologyContext context,
SpoutOutputCollector collector) {
queue = new LinkedBlockingQueue<Status>(1000);
_collector = collector;
StatusListener listener = new StatusListener() {
@Override
public void onStatus(Status status) {
queue.offer(status);
}
@Override
public void onDeletionNotice(StatusDeletionNotice sdn) {}
@Override
public void onTrackLimitationNotice(int i) {}
@Override
public void onScrubGeo(long l, long l1) {}
@Override
public void onException(Exception ex) {}
@Override
public void onStallWarning(StallWarning arg0) {
// TODO Auto-generated method stub
}
};
ConfigurationBuilder cb = new ConfigurationBuilder();
cb.setDebugEnabled(true)
.setOAuthConsumerKey(consumerKey)
.setOAuthConsumerSecret(consumerSecret)
.setOAuthAccessToken(accessToken)
.setOAuthAccessTokenSecret(accessTokenSecret);
_twitterStream = new TwitterStreamFactory(cb.build()).getInstance();
_twitterStream.addListener(listener);
if (keyWords.length == 0) {
_twitterStream.sample();
}else {
FilterQuery query = new FilterQuery().track(keyWords);
_twitterStream.filter(query);
}
}
@Override
public void nextTuple() {
Status ret = queue.poll();
if (ret == null) {
Utils.sleep(50);
} else {
_collector.emit(new Values(ret));
}
}
@Override
public void close() {
_twitterStream.shutdown();
}
@Override
public Map<String, Object> getComponentConfiguration() {
Config ret = new Config();
ret.setMaxTaskParallelism(1);
return ret;
}
@Override
public void ack(Object id) {}
@Override
public void fail(Object id) {}
@Override
public void declareOutputFields(OutputFieldsDeclarer declarer) {
declarer.declare(new Fields("tweet"));
}
}
Hashtag阅读器spout
由spout发出的tweet将被转发到HashtagReaderBolt,它将处理该tweet并发出所有可用的hashtag。HashtagReaderBolt使用twitter4j提供的getHashTagEntities方法。getHashTagEntities读取tweet并返回hashtag的列表。完整的程序代码如下 –
编码:HashtagReaderBolt.java
import java.util.HashMap;
import java.util.Map;
import twitter4j.*;
import twitter4j.conf.*;
import backtype.storm.tuple.Fields;
import backtype.storm.tuple.Values;
import backtype.storm.task.OutputCollector;
import backtype.storm.task.TopologyContext;
import backtype.storm.topology.IRichBolt;
import backtype.storm.topology.OutputFieldsDeclarer;
import backtype.storm.tuple.Tuple;
public class HashtagReaderBolt implements IRichBolt {
private OutputCollector collector;
@Override
public void prepare(Map conf, TopologyContext context, OutputCollector collector) {
this.collector = collector;
}
@Override
public void execute(Tuple tuple) {
Status tweet = (Status) tuple.getValueByField("tweet");
for(HashtagEntity hashtage : tweet.getHashtagEntities()) {
System.out.println("Hashtag: " + hashtage.getText());
this.collector.emit(new Values(hashtage.getText()));
}
}
@Override
public void cleanup() {}
@Override
public void declareOutputFields(OutputFieldsDeclarer declarer) {
declarer.declare(new Fields("hashtag"));
}
@Override
public Map<String, Object> getComponentConfiguration() {
return null;
}
}
Hashtag计数器spout
发出的hashtag将被转发到HashtagCounterBolt。这个bolt将处理所有的hashtags,并使用Java Map对象将每个hashtags及其计数保存在内存中。完整的程序代码如下。
编码:HashtagCounterBolt.java
import java.util.HashMap;
import java.util.Map;
import backtype.storm.tuple.Fields;
import backtype.storm.tuple.Values;
import backtype.storm.task.OutputCollector;
import backtype.storm.task.TopologyContext;
import backtype.storm.topology.IRichBolt;
import backtype.storm.topology.OutputFieldsDeclarer;
import backtype.storm.tuple.Tuple;
public class HashtagCounterBolt implements IRichBolt {
Map<String, Integer> counterMap;
private OutputCollector collector;
@Override
public void prepare(Map conf, TopologyContext context, OutputCollector collector) {
this.counterMap = new HashMap<String, Integer>();
this.collector = collector;
}
@Override
public void execute(Tuple tuple) {
String key = tuple.getString(0);
if(!counterMap.containsKey(key)){
counterMap.put(key, 1);
}else{
Integer c = counterMap.get(key) + 1;
counterMap.put(key, c);
}
collector.ack(tuple);
}
@Override
public void cleanup() {
for(Map.Entry<String, Integer> entry:counterMap.entrySet()){
System.out.println("Result: " + entry.getKey()+" : " + entry.getValue());
}
}
@Override
public void declareOutputFields(OutputFieldsDeclarer declarer) {
declarer.declare(new Fields("hashtag"));
}
@Override
public Map<String, Object> getComponentConfiguration() {
return null;
}
}
提交拓扑
提交拓扑是主要应用程序。Twitter拓扑由TwitterSampleSpout,HashtagReaderBolt和HashtagCounterBolt组成。以下程序代码显示如何提交拓扑。
编码:TwitterHashtagStorm.java
import java.util.*;
import backtype.storm.tuple.Fields;
import backtype.storm.tuple.Values;
import backtype.storm.Config;
import backtype.storm.LocalCluster;
import backtype.storm.topology.TopologyBuilder;
public class TwitterHashtagStorm {
public static void main(String[] args) throws Exception{
String consumerKey = args[0];
String consumerSecret = args[1];
String accessToken = args[2];
String accessTokenSecret = args[3];
String[] arguments = args.clone();
String[] keyWords = Arrays.copyOfRange(arguments, 4, arguments.length);
Config config = new Config();
config.setDebug(true);
TopologyBuilder builder = new TopologyBuilder();
builder.setSpout("twitter-spout", new TwitterSampleSpout(consumerKey,
consumerSecret, accessToken, accessTokenSecret, keyWords));
builder.setBolt("twitter-hashtag-reader-bolt", new HashtagReaderBolt())
.shuffleGrouping("twitter-spout");
builder.setBolt("twitter-hashtag-counter-bolt", new HashtagCounterBolt())
.fieldsGrouping("twitter-hashtag-reader-bolt", new Fields("hashtag"));
LocalCluster cluster = new LocalCluster();
cluster.submitTopology("TwitterHashtagStorm", config,
builder.createTopology());
Thread.sleep(10000);
cluster.shutdown();
}
}
构建和运行应用程序
完整的应用程序有四个Java代码。他们如下 –
- TwitterSampleSpout.java
- HashtagReaderBolt.java
- HashtagCounterBolt.java
- TwitterHashtagStorm.java
您可以使用以下命令编译应用程序 –
javac -cp “/path/to/storm/apache-storm-0.9.5/lib/*”:”/path/to/twitter4j/lib/*” *.java
使用以下命令执行应用程序 –
javac -cp “/path/to/storm/apache-storm-0.9.5/lib/*”:”/path/to/twitter4j/lib/*”:.
TwitterHashtagStorm <customerkey> <customersecret> <accesstoken> <accesstokensecret>
<keyword1> <keyword2> … <keywordN>
输出
应用程序将打印当前可用的主题标签及其计数。输出应类似于以下内容 –
Result: jazztastic : 1
Result: foodie : 1
Result: Redskins : 1
Result: Recipe : 1
Result: cook : 1
Result: android : 1
Result: food : 2
Result: NoToxicHorseMeat : 1
Result: Purrs4Peace : 1
Result: livemusic : 1
Result: VIPremium : 1
Result: Frome : 1
Result: SundayRoast : 1
Result: Millennials : 1
Result: HealthWithKier : 1
Result: LPs30DaysofGratitude : 1
Result: cooking : 1
Result: gameinsight : 1
Result: Countryfile : 1
Result: androidgames : 1