gpt4 book ai didi

java - 如何使用 Avro 二进制编码器对 Kafka 消息进行编码/解码?

转载 作者:IT老高 更新时间:2023-10-28 21:14:48 24 4
gpt4 key购买 nike

我正在尝试使用 Avro 来读取/写入 Kafka 的消息。有没有人有使用 Avro 二进制编码器对将放入消息队列的数据进行编码/解码的示例?

我需要 Avro 部分而不是 Kafka 部分。或者,也许我应该看一个不同的解决方案?基本上,我正在尝试为 JSON 找到一种更有效的空间解决方案。刚刚提到了 Avro,因为它可以比 JSON 更紧凑。

最佳答案

这是一个基本示例。我还没有尝试过多个分区/主题。

//示例生产者代码

import org.apache.avro.Schema;
import org.apache.avro.generic.GenericData;
import org.apache.avro.generic.GenericRecord;
import org.apache.avro.io.*;
import org.apache.avro.specific.SpecificDatumReader;
import org.apache.avro.specific.SpecificDatumWriter;
import org.apache.commons.codec.DecoderException;
import org.apache.commons.codec.binary.Hex;
import kafka.javaapi.producer.Producer;
import kafka.producer.KeyedMessage;
import kafka.producer.ProducerConfig;
import java.io.ByteArrayOutputStream;
import java.io.File;
import java.io.IOException;
import java.nio.charset.Charset;
import java.util.Properties;


public class ProducerTest {

void producer(Schema schema) throws IOException {

Properties props = new Properties();
props.put("metadata.broker.list", "0:9092");
props.put("serializer.class", "kafka.serializer.DefaultEncoder");
props.put("request.required.acks", "1");
ProducerConfig config = new ProducerConfig(props);
Producer<String, byte[]> producer = new Producer<String, byte[]>(config);
GenericRecord payload1 = new GenericData.Record(schema);
//Step2 : Put data in that genericrecord object
payload1.put("desc", "'testdata'");
//payload1.put("name", "अasa");
payload1.put("name", "dbevent1");
payload1.put("id", 111);
System.out.println("Original Message : "+ payload1);
//Step3 : Serialize the object to a bytearray
DatumWriter<GenericRecord>writer = new SpecificDatumWriter<GenericRecord>(schema);
ByteArrayOutputStream out = new ByteArrayOutputStream();
BinaryEncoder encoder = EncoderFactory.get().binaryEncoder(out, null);
writer.write(payload1, encoder);
encoder.flush();
out.close();

byte[] serializedBytes = out.toByteArray();
System.out.println("Sending message in bytes : " + serializedBytes);
//String serializedHex = Hex.encodeHexString(serializedBytes);
//System.out.println("Serialized Hex String : " + serializedHex);
KeyedMessage<String, byte[]> message = new KeyedMessage<String, byte[]>("page_views", serializedBytes);
producer.send(message);
producer.close();

}


public static void main(String[] args) throws IOException, DecoderException {
ProducerTest test = new ProducerTest();
Schema schema = new Schema.Parser().parse(new File("src/test_schema.avsc"));
test.producer(schema);
}
}

//示例消费者代码

第 1 部分:消费者组代码​​:因为您可以为多个分区/主题拥有多个消费者。

import kafka.consumer.ConsumerConfig;
import kafka.consumer.KafkaStream;
import kafka.javaapi.consumer.ConsumerConnector;

import java.util.HashMap;
import java.util.List;
import java.util.Map;
import java.util.Properties;
import java.util.concurrent.Executor;
import java.util.concurrent.ExecutorService;
import java.util.concurrent.Executors;
import java.util.concurrent.TimeUnit;

/**
* Created by on 9/1/15.
*/
public class ConsumerGroupExample {
private final ConsumerConnector consumer;
private final String topic;
private ExecutorService executor;

public ConsumerGroupExample(String a_zookeeper, String a_groupId, String a_topic){
consumer = kafka.consumer.Consumer.createJavaConsumerConnector(
createConsumerConfig(a_zookeeper, a_groupId));
this.topic = a_topic;
}

private static ConsumerConfig createConsumerConfig(String a_zookeeper, String a_groupId){
Properties props = new Properties();
props.put("zookeeper.connect", a_zookeeper);
props.put("group.id", a_groupId);
props.put("zookeeper.session.timeout.ms", "400");
props.put("zookeeper.sync.time.ms", "200");
props.put("auto.commit.interval.ms", "1000");

return new ConsumerConfig(props);
}

public void shutdown(){
if (consumer!=null) consumer.shutdown();
if (executor!=null) executor.shutdown();
System.out.println("Timed out waiting for consumer threads to shut down, exiting uncleanly");
try{
if(!executor.awaitTermination(5000, TimeUnit.MILLISECONDS)){

}
}catch(InterruptedException e){
System.out.println("Interrupted");
}

}


public void run(int a_numThreads){
//Make a map of topic as key and no. of threads for that topic
Map<String, Integer> topicCountMap = new HashMap<String, Integer>();
topicCountMap.put(topic, new Integer(a_numThreads));
//Create message streams for each topic
Map<String, List<KafkaStream<byte[], byte[]>>> consumerMap = consumer.createMessageStreams(topicCountMap);
List<KafkaStream<byte[], byte[]>> streams = consumerMap.get(topic);

//initialize thread pool
executor = Executors.newFixedThreadPool(a_numThreads);
//start consuming from thread
int threadNumber = 0;
for (final KafkaStream stream : streams) {
executor.submit(new ConsumerTest(stream, threadNumber));
threadNumber++;
}
}
public static void main(String[] args) {
String zooKeeper = args[0];
String groupId = args[1];
String topic = args[2];
int threads = Integer.parseInt(args[3]);

ConsumerGroupExample example = new ConsumerGroupExample(zooKeeper, groupId, topic);
example.run(threads);

try {
Thread.sleep(10000);
} catch (InterruptedException ie) {

}
example.shutdown();
}


}

第 2 部分:实际消费消息的个人消费者。

import kafka.consumer.ConsumerIterator;
import kafka.consumer.KafkaStream;
import kafka.message.MessageAndMetadata;
import org.apache.avro.Schema;
import org.apache.avro.generic.GenericRecord;
import org.apache.avro.generic.IndexedRecord;
import org.apache.avro.io.DatumReader;
import org.apache.avro.io.Decoder;
import org.apache.avro.io.DecoderFactory;
import org.apache.avro.specific.SpecificDatumReader;
import org.apache.commons.codec.binary.Hex;

import java.io.File;
import java.io.IOException;

public class ConsumerTest implements Runnable{

private KafkaStream m_stream;
private int m_threadNumber;

public ConsumerTest(KafkaStream a_stream, int a_threadNumber) {
m_threadNumber = a_threadNumber;
m_stream = a_stream;
}

public void run(){
ConsumerIterator<byte[], byte[]>it = m_stream.iterator();
while(it.hasNext())
{
try {
//System.out.println("Encoded Message received : " + message_received);
//byte[] input = Hex.decodeHex(it.next().message().toString().toCharArray());
//System.out.println("Deserializied Byte array : " + input);
byte[] received_message = it.next().message();
System.out.println(received_message);
Schema schema = null;
schema = new Schema.Parser().parse(new File("src/test_schema.avsc"));
DatumReader<GenericRecord> reader = new SpecificDatumReader<GenericRecord>(schema);
Decoder decoder = DecoderFactory.get().binaryDecoder(received_message, null);
GenericRecord payload2 = null;
payload2 = reader.read(null, decoder);
System.out.println("Message received : " + payload2);
}catch (Exception e) {
e.printStackTrace();
System.out.println(e);
}
}

}


}

测试 AVRO 架构:

{
"namespace": "xyz.test",
"type": "record",
"name": "payload",
"fields":[
{
"name": "name", "type": "string"
},
{
"name": "id", "type": ["int", "null"]
},
{
"name": "desc", "type": ["string", "null"]
}
]
}

需要注意的重要事项是:

  1. 您需要标准的 kafka 和 avro jar 来开箱即用地运行此代码。

  2. 很重要 props.put("serializer.class", "kafka.serializer.DefaultEncoder");不要不要使用 stringEncoder,因为如果您将字节数组作为消息发送,那将无法使用

  3. 您可以将 byte[] 转换为十六进制字符串并发送,然后在消费者上将十六进制字符串重新转换为 byte[],然后再转换为原始消息。

  4. 运行 Zookeeper 和代理,如下所述:- http://kafka.apache.org/documentation.html#quickstart并创建一个名为“page_views”的主题或任何您想要的主题。

  5. 运行 ProducerTest.java,然后运行 ​​ConsumerGroupExample.java,查看正在生成和使用的 avro 数据。

关于java - 如何使用 Avro 二进制编码器对 Kafka 消息进行编码/解码?,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/8298308/

24 4 0
Copyright 2021 - 2024 cfsdn All Rights Reserved 蜀ICP备2022000587号
广告合作:1813099741@qq.com 6ren.com