Flink实战(七十二):监控(四)自定义metrics相关指标(二)

项目实现代码举例:
添加自定义监控指标,以flink1.5的Kafka读取以及写入为例,添加rps、dirtyData等相关指标信息。�kafka读取和写入重点是先拿到RuntimeContex初始化指标,并传递给要使用的序列类,通过重写序列化和反序列化方法,来更新指标信息。
不加指标的kafka数据读取、写入Demo。
public class FlinkEtlTest {
    private static final Logger logger = LoggerFactory.getLogger(FlinkEtlTest.class);

    public static void main(String[] args) throws Exception {
        final ParameterTool params = ParameterTool.fromArgs(args);
        String jobName = params.get("jobName");

        StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();

        /** 设置kafka数据 */
        String topic = "myTest01";
        Properties props = new Properties();
        props.setProperty("bootstrap.servers", "localhost:9092");
        props.setProperty("zookeeper.quorum", "localhost:2181/kafka");

        // 使用FlinkKafkaConsumer09以及SimpleStringSchema序列化类,读取kafka数据
        FlinkKafkaConsumer09<String> consumer09 = new FlinkKafkaConsumer09(topic, new SimpleStringSchema(), props);
        consumer09.setStartFromEarliest();

        // 使用FlinkKafkaProducer09和SimpleStringSchema反序列化类,将数据写入kafka
        String sinkBrokers = "localhost:9092";
        FlinkKafkaProducer09<String> myProducer = new FlinkKafkaProducer09<>(sinkBrokers, "myTest01", new SimpleStringSchema());


        DataStream<String> kafkaDataStream = env.addSource(consumer09);
        kafkaDataStream = kafkaDataStream.map(str -> {
            logger.info("map receive {}",str);
            return str.toUpperCase();
        });

        kafkaDataStream.addSink(myProducer);

        env.execute(jobName);
    }

    
}

下面重新复写flink的

FlinkKafkaConsumer09
FlinkKafkaProducer09

方法,加入metrics的监控。

为kafka读取添加相关指标
  • 继承FlinkKafkaConsumer09,获取它的RuntimeContext,使用当前MetricGroup初始化指标参数。
public class CustomerFlinkKafkaConsumer09<T> extends FlinkKafkaConsumer09<T> {

    CustomerSimpleStringSchema customerSimpleStringSchema;
    // 构造方法有多个
    public CustomerFlinkKafkaConsumer09(String topic, DeserializationSchema valueDeserializer, Properties props) {
        super(topic, valueDeserializer, props);
        this.customerSimpleStringSchema = (CustomerSimpleStringSchema) valueDeserializer;
    }

    @Override
    public void run(SourceContext sourceContext) throws Exception {
        //将RuntimeContext传递给customerSimpleStringSchema
        customerSimpleStringSchema.setRuntimeContext(getRuntimeContext());
       // 初始化指标
        customerSimpleStringSchema.initMetric();
        super.run(sourceContext);
    }
}

重写SimpleStringSchema类的反序列化方法,当数据流入时变更指标。

public class CustomerSimpleStringSchema extends SimpleStringSchema {

    private static final Logger logger = LoggerFactory.getLogger(CustomerSimpleStringSchema.class);

    public static final String DT_NUM_RECORDS_RESOVED_IN_COUNTER = "dtNumRecordsInResolve";
    public static final String DT_NUM_RECORDS_RESOVED_IN_RATE = "dtNumRecordsInResolveRate";
    public static final String DT_DIRTY_DATA_COUNTER = "dtDirtyData";
    public static final String DT_NUM_BYTES_IN_COUNTER = "dtNumBytesIn";
    public static final String DT_NUM_RECORDS_IN_RATE = "dtNumRecordsInRate";

    public static final String DT_NUM_BYTES_IN_RATE = "dtNumBytesInRate";
    public static final String DT_NUM_RECORDS_IN_COUNTER = "dtNumRecordsIn";



    protected transient Counter numInResolveRecord;
    //source RPS
    protected transient Meter numInResolveRate;
    //source dirty data
    protected transient Counter dirtyDataCounter;

    // tps
    protected transient Meter numInRate;
    protected transient Counter numInRecord;

    //bps
    protected transient Counter numInBytes;
    protected transient Meter numInBytesRate;



    private transient RuntimeContext runtimeContext;

    public void initMetric() {
        numInResolveRecord = runtimeContext.getMetricGroup().counter(DT_NUM_RECORDS_RESOVED_IN_COUNTER);
        numInResolveRate = runtimeContext.getMetricGroup().meter(DT_NUM_RECORDS_RESOVED_IN_RATE, new MeterView(numInResolveRecord, 20));
        dirtyDataCounter = runtimeContext.getMetricGroup().counter(DT_DIRTY_DATA_COUNTER);

        numInBytes = runtimeContext.getMetricGroup().counter(DT_NUM_BYTES_IN_COUNTER);
        numInRecord = runtimeContext.getMetricGroup().counter(DT_NUM_RECORDS_IN_COUNTER);

        numInRate = runtimeContext.getMetricGroup().meter(DT_NUM_RECORDS_IN_RATE, new MeterView(numInRecord, 20));
        numInBytesRate = runtimeContext.getMetricGroup().meter(DT_NUM_BYTES_IN_RATE , new MeterView(numInBytes, 20));



    }
    // 源表读取重写deserialize方法
    @Override
    public String deserialize(byte[] value) {
        // 指标进行变更
        numInBytes.inc(value.length);
        numInResolveRecord.inc();
        numInRecord.inc();
        try {
            return super.deserialize(value);
        } catch (Exception e) {
            dirtyDataCounter.inc();
        }
        return "";
    }


    public void setRuntimeContext(RuntimeContext runtimeContext) {
        this.runtimeContext = runtimeContext;
    }
}
代码中使用自定义的消费者进行调用:
CustomerFlinkKafkaConsumer09<String> consumer09 = new CustomerFlinkKafkaConsumer09(topic, new CustomerSimpleStringSchema(), props);
为kafka写入添加相关指标
  • 继承FlinkKafkaProducer09类,重写open方法,拿到RuntimeContext,初始化指标信息传递给CustomerSinkStringSchema。
public class  CustomerFlinkKafkaProducer09<T> extends FlinkKafkaProducer09<T> {

    public static final String DT_NUM_RECORDS_OUT = "dtNumRecordsOut";
    public static final String DT_NUM_RECORDS_OUT_RATE = "dtNumRecordsOutRate";

    CustomerSinkStringSchema schema;

    public CustomerFlinkKafkaProducer09(String brokerList, String topicId, SerializationSchema serializationSchema) {
        super(brokerList, topicId, serializationSchema);
        this.schema = (CustomerSinkStringSchema) serializationSchema;
    }



    @Override
    public void open(Configuration configuration) {
        producer = getKafkaProducer(this.producerConfig);

        RuntimeContext ctx = getRuntimeContext();
        Counter counter = ctx.getMetricGroup().counter(DT_NUM_RECORDS_OUT);
        //Sink的RPS计算
        MeterView meter = ctx.getMetricGroup().meter(DT_NUM_RECORDS_OUT_RATE, new MeterView(counter, 20));
        // 将counter传递给CustomerSinkStringSchema
        schema.setCounter(counter);

        super.open(configuration);
    }

}

重写SimpleStringSchema的序列化方法 

public class CustomerSinkStringSchema extends SimpleStringSchema {

    private static final Logger logger = LoggerFactory.getLogger(CustomerSinkStringSchema.class);

    private Counter sinkCounter;

    @Override
    public byte[] serialize(String element) {
        logger.info("sink data {}", element);
        sinkCounter.inc();
        return super.serialize(element);  //复写serialize方法,序列化继续使用父类提供的序列化方法
    }

    public void setCounter(Counter counter) {
        this.sinkCounter = counter;
    }
}
复制代码
新的kafkaSinkApi使用

获取 Metrics

这样就可以在监控框架里面看到采集的指标信息了,

比如flink_taskmanager_job_task_operator_dtDirtyData指标,dtDirtyData是自己添加的指标,前面的字符串是operator默认使用的metricGroup。

获取 Metrics 有三种方法,首先可以在 WebUI 上看到;其次可以通过 RESTful API 获取,RESTful API 对程序比较友好,比如写自动化脚本或程序,自动化运维和测试,通过 RESTful API 解析返回的 Json 格式对程序比较友好;最后,还可以通过 Metric Reporter 获取,监控主要使用 Metric Reporter 功能。

数据分析:

分析任务有时候为什么特别慢呢?

当定位到某一个 Task 处理特别慢时,需要对慢的因素做出分析。分析任务慢的因素是有优先级的,可以从上向下查,由业务方面向底层系统。因为大部分问题都出现在业务维度上,比如查看业务维度的影响可以有以下几个方面,并发度是否合理、数据波峰波谷、数据倾斜;其次依次从 Garbage Collection、Checkpoint Alignment、State Backend 性能角度进行分析;最后从系统性能角度进行分析,比如 CPU、内存、Swap、Disk IO、吞吐量、容量、Network IO、带宽等。

本文来自博客园,作者:秋华,转载请注明原文链接:https://www.cnblogs.com/qiu-hua/p/13910809.html

原文地址:https://www.cnblogs.com/qiu-hua/p/13910809.html