Kafka-序列化器

Kafka-序列化器

自定义序列化器

不建议使用自定义序列化器,因为如果序列化器需要新增字段,则会出现新旧消息不兼容问题。推荐使用已知的序列化器和反序列化器,如JSONAvroThriftProtobuf.

/**
 * @Author FengZhen
 * @Date 2020-03-30 22:49
 * @Description 自定义序列化器的实体类
 */
public class Customer {
    private int customerID;
    private String customerName;

    public Customer(int customerID, String customerName) {
        this.customerID = customerID;
        this.customerName = customerName;
    }

    public int getCustomerID() {
        return customerID;
    }

    public void setCustomerID(int customerID) {
        this.customerID = customerID;
    }

    public String getCustomerName() {
        return customerName;
    }

    public void setCustomerName(String customerName) {
        this.customerName = customerName;
    }
}
import org.apache.kafka.common.errors.SerializationException;
import org.apache.kafka.common.serialization.Serializer;

import java.nio.ByteBuffer;
import java.util.Map;

/**
 * @Author FengZhen
 * @Date 2020-03-30 22:49
 * @Description 自定义序列化器:不建议使用,因为如果修改序列化器,就会出现新旧消息不兼容。
 * 建议使用已有的序列化器和反序列化器,如JSON、Avro、Thrift或Protobuf
 */
public class CustomerSerializer implements Serializer<Customer> {

    @Override
    public void configure(Map<String, ?> configs, boolean isKey) {
        //不做任何配置
    }

    /**
     * Customer对象被序列化成:
     * 表示customerID的4字节整数
     * 表示customerName长度的4字节整数(如果customerName为空,则长度为0)
     * 表示customerName的N个字节
     * @param topic
     * @param data
     * @return
     */
    @Override
    public byte[] serialize(String topic, Customer data) {
        try {
            byte[] serializedName;
            int stringSize;
            if (null == data){
                return null;
            }else{
                if (data.getCustomerName() != ""){
                    serializedName = data.getCustomerName().getBytes("UTF-8");
                    stringSize = serializedName.length;
                }else{
                    serializedName = new byte[0];
                    stringSize = 0;
                }
            }
            ByteBuffer buffer = ByteBuffer.allocate(4 + 4 + stringSize);
            buffer.putInt(data.getCustomerID());
            buffer.putInt(stringSize);
            buffer.put(serializedName);
            return buffer.array();
        } catch (Exception e){
            throw new SerializationException("Error when serializing Customer to byte[] " + e);
        }
    }

    @Override
    public void close() {
        //不需要关闭任何东西
    }
}

使用Avro序列化

Avro的数据文件里包含了整个schema,不过这样的开销是可接受的。但是如果在每条kafka记录里都嵌入schema,会让记录的大小成倍的增加。在读取记录时仍然需要用到整个schema。使用schema注册表实现。

schema注册表并不属于kafka,现在有一些开源的schema注册表实现,如Confluent Schema Registry

我们把所有写入数据需要用到的schema保存在注册表里,然后在记录里引用schema的标识符。负责读取数据的应用程序使用标识符从注册表里拉取schema来反序列化记录。序列化器和反序列化器分别负责处理schema的注册和拉取。

import org.apache.avro.Schema;
import org.apache.avro.generic.GenericData;
import org.apache.avro.generic.GenericRecord;
import org.apache.kafka.clients.producer.KafkaProducer;
import org.apache.kafka.clients.producer.Producer;
import org.apache.kafka.clients.producer.ProducerRecord;

import java.util.Properties;

/**
 * @Author FengZhen
 * @Date 2020-03-30 23:06
 * @Description Avro序列化器
 *
 */
public class AvroSerializerTest {
    public static void main(String[] args) {

    }

    /**
     * 一般的Avro对象
     * {
     *     " namespace": " customerManagement . avro",
     *     "type": "record",
     *     "name": "Customer",
     *     "fields": [{
     *             "name": "id",
     *             "type": "int"
     *                },
     *        {
     *             "name": "name",
     *             "type": "string"
     *        },
     *        {
     *             "name": "email",
     *             "type": ["null", "string"],
     *             "default": "null"
     *        }
     *     ]
     * }
     */
    public static void genericValue(){
        String schemaUrl = "";

        Properties properties = new Properties();
        properties.put("bootstrap.servers", "localhost:9092");
        properties.put("key.serializer", "io.confluent.kafka.serializer.KafkaAvroSerializer");
        properties.put("value.serializer", "io.confluent.kafka.serializer.KafkaAvroSerializer");
        //schema注册表URI
        properties.put("schema.registry.url", schemaUrl);

        String schemaString = "{\n" +
                "\t\" namespace\": \" customerManagement . avro\",\n" +
                "\t\"type\": \"record\",\n" +
                "\t\"name\": \"Customer\",\n" +
                "\t\"fields\": [{\n" +
                "\t\t\t\"name\": \"id\",\n" +
                "\t\t\t\"type\": \"int\"\n" +
                "\t\t},\n" +
                "\t\t{\n" +
                "\t\t\t\"name\": \"name\",\n" +
                "\t\t\t\"type\": \"string\"\n" +
                "\t\t},\n" +
                "\t\t{\n" +
                "\t\t\t\"name\": \"email\",\n" +
                "\t\t\t\"type\": [\"null\", \"string\"],\n" +
                "\t\t\t\"default\": \"null\"\n" +
                "\t\t}\n" +
                "\t]\n" +
                "}";

        String topic = "customerContacts";

        Producer<String, GenericRecord> producer = new KafkaProducer<String, GenericRecord>(properties);
        Schema.Parser parser = new Schema.Parser();
        Schema schema = parser.parse(schemaString);

        int i = 0;
        while (true){
            i++;
            String name = "example:" + i;
            String email = "email:" + i;
            GenericRecord genericRecord = new GenericData.Record(schema);
            genericRecord.put("id", i);
            genericRecord.put("name", name);
            genericRecord.put("email", email);

            ProducerRecord<String, GenericRecord> record = new ProducerRecord<String, GenericRecord>(topic, name, genericRecord);
            producer.send(record);
        }
    }

    /**
     * 用户自定义的Avro对象
     */
    public static void udfValue(){
        String schemaUrl = "";

        Properties properties = new Properties();
        properties.put("bootstrap.servers", "localhost:9092");
        properties.put("key.serializer", "io.confluent.kafka.serializer.KafkaAvroSerializer");
        properties.put("value.serializer", "io.confluent.kafka.serializer.KafkaAvroSerializer");
        //schema注册表URI
        properties.put("schema.registry.url", schemaUrl);

        String topic = "customerContacts";

        Producer<String, Customer> producer = new KafkaProducer<String, Customer>(properties);
        int i = 0;
        while (true){
            Customer customer = new Customer(++i, "name:" + i);
            ProducerRecord<String, Customer> record = new ProducerRecord<String, Customer>(topic, String.valueOf(customer.getCustomerID()), customer);
            producer.send(record);
        }
    }
}

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转载自www.cnblogs.com/EnzoDin/p/12602265.html