• Flink 双流合并之connect Demo2


    1、主类

    package towStream
    
    /**
     * @program: demo
     * @description: ${description}
     * @author: yang
     * @create: 2020-12-31 11:39
     */
    import org.apache.flink.api.common.state.{ValueState, ValueStateDescriptor}
    import org.apache.flink.api.scala.typeutils.Types
    import org.apache.flink.streaming.api.TimeCharacteristic
    import org.apache.flink.streaming.api.functions.co.KeyedCoProcessFunction
    import org.apache.flink.streaming.api.functions.source.SourceFunction
    import org.apache.flink.streaming.api.scala._
    import org.apache.flink.util.Collector
    import scala.util.Random
    
    object TwoStreamJoinDemo {
    
      // 订单支付事件
      case class OrderEvent(orderId: String,
                            eventType: String,
                            eventTime: Long)
    
      // 第三方支付事件,例如微信,支付宝
      case class PayEvent(orderId: String,
                          eventType: String,
                          eventTime: Long)
    
      // 用来输出没有匹配到的订单支付事件
      val unmatchedOrders = new OutputTag[String]("unmatched-orders")
      // 用来输出没有匹配到的第三方支付事件
      val unmatchedPays = new OutputTag[String]("unmatched-pays")
    
      def main(args: Array[String]): Unit = {
        val env = StreamExecutionEnvironment.getExecutionEnvironment
        env.setParallelism(1)
        env.setStreamTimeCharacteristic(TimeCharacteristic.EventTime)
    
        //自定义数据源1
        val orders: KeyedStream[OrderEvent, String] = env.addSource(new SourceFunction[OrderEvent] {
    
          val flag = true
          private val random = new Random()
    
          override def run(sourceContext: SourceFunction.SourceContext[OrderEvent]): Unit = {
            while (flag) {
              val temTime: Long = System.currentTimeMillis()
              val orderId: String = random.nextInt(4).toString
              sourceContext.collect(OrderEvent("order_" + orderId, "pay", temTime))
              println("source1:"+"order_"+orderId+":pay",temTime)
              Thread.sleep(1000)
            }
          }
    
          override def cancel(): Unit = false
        }).assignAscendingTimestamps(_.eventTime).keyBy(_.orderId)
    
        //自定义数据源2
        val pays: KeyedStream[PayEvent, String] = env.addSource(new SourceFunction[PayEvent] {
    
          val flag = true
          private val random = new Random()
    
          override def run(sourceContext: SourceFunction.SourceContext[PayEvent]): Unit = {
            while (flag) {
              val temTime: Long = System.currentTimeMillis()
              val orderId: String = random.nextInt(4).toString
              sourceContext.collect(PayEvent("order_" +orderId , "weixin", temTime))
              println("source2:"+"order_"+orderId+":weixin",temTime)
              Thread.sleep(1000)
            }
          }
    
          override def cancel(): Unit = false
        }).assignAscendingTimestamps(_.eventTime).keyBy(_.orderId)
    
        val processed = orders.connect(pays).process(new MatchFunction)
    
        processed.print()
    
        processed.getSideOutput(unmatchedOrders).print()
    
        processed.getSideOutput(unmatchedPays).print()
    
        env.execute()
      }
    
      //进入同一条流中的数据肯定是同一个key,即OrderId
      class MatchFunction extends KeyedCoProcessFunction[String, OrderEvent, PayEvent, String] {
        lazy private val orderState: ValueState[OrderEvent] = getRuntimeContext.getState(new ValueStateDescriptor[OrderEvent]("orderState", Types.of[OrderEvent]))
        lazy private val payState: ValueState[PayEvent] = getRuntimeContext.getState(new ValueStateDescriptor[PayEvent]("payState", Types.of[PayEvent]))
    
        override def processElement1(value: OrderEvent, ctx: KeyedCoProcessFunction[String, OrderEvent, PayEvent, String]#Context, out: Collector[String]): Unit = {
          //从payState中查找数据,如果存在,说明匹配成功
          val pay = payState.value()
          if (pay != null) {
            payState.clear()
            out.collect("处理器1:订单ID为 " + pay+"=="+value+ " 的两条流对账成功!")
          } else {
            //如果不存在,则说明可能对应的pay数据没有来,需要存入状态等待
            //定义一个5min的定时器,到时候再匹配,如果还没匹配上,则说明匹配失败发出警告
            orderState.update(value)
            ctx.timerService().registerEventTimeTimer(value.eventTime + 60000)
          }
        }
    
        override def processElement2(value: _root_.towStream.TwoStreamJoinDemo.PayEvent, ctx: _root_.org.apache.flink.streaming.api.functions.co.KeyedCoProcessFunction[_root_.scala.Predef.String, _root_.towStream.TwoStreamJoinDemo.OrderEvent, _root_.towStream.TwoStreamJoinDemo.PayEvent, _root_.scala.Predef.String]#Context, out: _root_.org.apache.flink.util.Collector[_root_.scala.Predef.String]): Unit = {
          val order = orderState.value()
          if (order != null) {
            orderState.clear()
            out.collect("处理器2:订单ID为 " + order+"=="+value + " 的两条流对账成功!")
          } else {
            payState.update(value)
            ctx.timerService().registerEventTimeTimer(value.eventTime + 60000)
          }
        }
    
        override def onTimer(timestamp: Long, ctx: KeyedCoProcessFunction[String, OrderEvent, PayEvent, String]#OnTimerContext, out: Collector[String]): Unit = {
          if (orderState.value() != null) {
            //将警告信息发送到侧输出流中
            ctx.output(unmatchedOrders,s"订单ID为 ${orderState.value().orderId } 的两条流没有对账成功!")
            orderState.clear()
          }
          if (payState.value() != null){
            ctx.output(unmatchedPays,s"订单ID为 ${payState.value().orderId } 的两条流没有对账成功!")
            payState.clear()
          }
    
        }
      }
    
    }

    2、结果

    (source1:order_3:pay,1609753528069)
    (source2:order_3:weixin,1609753528069)
    处理器2:订单ID为 OrderEvent(order_3,pay,1609753528069)==PayEvent(order_3,weixin,1609753528069) 的两条流对账成功!
    (source2:order_1:weixin,1609753529085)
    (source1:order_0:pay,1609753529085)
    (source1:order_3:pay,1609753530086)
    (source2:order_2:weixin,1609753530086)
    (source1:order_1:pay,1609753531087)
    (source2:order_0:weixin,1609753531087)
    处理器1:订单ID为 PayEvent(order_1,weixin,1609753529085)==OrderEvent(order_1,pay,1609753531087) 的两条流对账成功!
    处理器2:订单ID为 OrderEvent(order_0,pay,1609753529085)==PayEvent(order_0,weixin,1609753531087) 的两条流对账成功!
    (source2:order_0:weixin,1609753532087)
    (source1:order_1:pay,1609753532087)
    (source2:order_1:weixin,1609753533088)
    (source1:order_1:pay,1609753533088)
    处理器2:订单ID为 OrderEvent(order_1,pay,1609753533088)==PayEvent(order_1,weixin,1609753533088) 的两条流对账成功!
    订单ID为 order_3 的两条流没有对账成功!
    (source1:order_0:pay,1609753534088)
    (source2:order_3:weixin,1609753534088)
    处理器1:订单ID为 PayEvent(order_0,weixin,1609753532087)==OrderEvent(order_0,pay,1609753534088) 的两条流对账成功!
    (source2:order_3:weixin,1609753535089)
    (source1:order_0:pay,1609753535089)
    订单ID为 order_3 的两条流没有对账成功!
    订单ID为 order_2 的两条流没有对账成功!
    (source2:order_2:weixin,1609753536089)
    (source1:order_2:pay,1609753536089)
    处理器2:订单ID为 OrderEvent(order_2,pay,1609753536089)==PayEvent(order_2,weixin,1609753536089) 的两条流对账成功!
    (source2:order_0:weixin,1609753537090)
    (source1:order_1:pay,1609753537090)
    处理器2:订单ID为 OrderEvent(order_0,pay,1609753535089)==PayEvent(order_0,weixin,1609753537090) 的两条流对账成功!
    订单ID为 order_1 的两条流没有对账成功!
    (source1:order_2:pay,1609753538091)
    (source2:order_1:weixin,1609753538091)
    订单ID为 order_1 的两条流没有对账成功!
    (source1:order_2:pay,1609753539091)
    (source2:order_3:weixin,1609753539091)
    订单ID为 order_3 的两条流没有对账成功!
  • 相关阅读:
    poj 3040 Allowance
    poj 2393 Yogurt factory
    【BZOJ1833】数字计数(ZJOI2010)-数位DP
    【BZOJ4820】硬币游戏(SDOI2017)-概率+高斯消元+KMP
    【BZOJ3626】LCA(LNOI2014)-树链剖分+离线处理
    【BZOJ4817】树点涂色(SDOI2017)-LCT+LCA+线段树
    【BZOJ1135】LYZ(POI2009)-线段树+Hall定理
    【CF392D】Three Arrays-set+multiset
    【51Nod1688】LYKMUL-线段树+乘法原理
    【BZOJ2956】模积和-数论分块
  • 原文地址:https://www.cnblogs.com/ywjfx/p/14231586.html
Copyright © 2020-2023  润新知