Fllink实时计算运用(八)Flink 大数据实战案例一

1. Flink大数据实时处理设计方案

Fllink实时计算运用(八)Flink 大数据实战案例一_第1张图片

整套方案通过Canal + Kafka 连接器 + Protobuf,实现数据的同步接入, 由Flink服务负责对各类业务数据的实时统计处理。

2. 热销商品的统计处理

  • 功能

    实现对热销商品的统计, 统计周期为一天, 每3秒刷新一次数据。

  • 核心代码

    主逻辑实现:

        /**
         * 执行Flink任务处理
         * @throws Exception
         */
        private void executeFlinkTask() throws Exception {
    
            // 1. 创建运行环境
            StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();
    
            // 2. 设置kafka服务连接信息
            Properties properties = new Properties();
            properties.setProperty("bootstrap.servers", "10.10.20.132:9092");
            properties.setProperty("group.id", "fink_group");
    
            // 3. 创建Kafka消费端
            FlinkKafkaConsumer kafkaProducer = new FlinkKafkaConsumer(
                    "order_binlog",                  // 目标 topic
                    new SimpleStringSchema(),   // 序列化 配置
                    properties);
    
            // 调试,重新从最早记录消费
            kafkaProducer.setStartFromEarliest();     // 尽可能从最早的记录开始
            env.setStreamTimeCharacteristic(TimeCharacteristic.EventTime);
            env.setParallelism(1);
    
            // 4. 读取Kafka数据源
            DataStreamSource socketStr = env.addSource(kafkaProducer);
    
            // 5. 数据过滤转换处理
            socketStr.filter(new FilterFunction() {
                @Override
                public boolean filter(String value) throws Exception {
                    JsonObject jsonObject = GsonConvertUtil.getSingleton().getJsonObject(value);
                    String isDDL = jsonObject.get("isDdl").getAsString();
                    String type = jsonObject.get("type").getAsString();
                    // 过滤条件: 非DDL操作, 并且是新增的数据
                    return isDDL.equalsIgnoreCase("false") && "INSERT".equalsIgnoreCase(type);
              }
            }).flatMap(new FlatMapFunction() {
              @Override
                public void flatMap(String value, Collector out) throws Exception {
                    // 获取JSON中的data数据
                    JsonArray dataArray = GsonConvertUtil.getSingleton().getJsonObject(value).getAsJsonArray("data");
                    // 将data数据转换为java对象
                    for(int i =0; i< dataArray.size(); i++) {
                        JsonObject jsonObject = dataArray.get(i).getAsJsonObject();
                        Order order = GsonConvertUtil.getSingleton().cvtJson2Obj(jsonObject, Order.class);
                        System.out.println("order => " + order);
                        out.collect(order);
                    }
                }
            })
            .assignTimestampsAndWatermarks(new BoundedOutOfOrdernessTimestampExtractor(Time.seconds(0)) {
                @Override
                public long extractTimestamp(Order element) {
                    return element.getExecTime();
                }
            })
            .keyBy(Order::getGoodsId)
            .timeWindow(Time.hours(24), Time.seconds(3))
            .aggregate(new TotalAmount(), new AmountWindow())
            .keyBy(HotOrder::getTimeWindow)
            .process(new TopNHotOrder());
    
            // 6. 执行任务
            env.execute("job");
        }

热销商品的金额累加处理:

   /**
     * 商品金额累加器
     */
    private static class TotalAmount implements AggregateFunction {
        @Override
        public Order createAccumulator() {
            Order order = new Order();
            order.setTotalAmount(0l);
            return order;
        }

        /**
         * 累加统计商品销售总金额
         * @param value
         * @param accumulator
         * @return
         */
        @Override
        public Order add(Order value, Order accumulator) {
            accumulator.setGoodsId(value.getGoodsId());
            accumulator.setGoodsName((value.getGoodsName()));
            accumulator.setTotalAmount(accumulator.getTotalAmount() + (value.getExecPrice() * value.getExecVolume()));
            return accumulator;
        }

        @Override
        public Order getResult(Order accumulator) {
            return accumulator;
        }

        @Override
        public Order merge(Order a, Order b) {
            return null;
        }
    }

热销商品的数据转换处理, 用于统计:

    /**
     * 热销商品, 在时间窗口内, 对象数据的转换处理
     */
    private static class AmountWindow implements WindowFunction {

        @Override
        public void apply(Long goodsId, TimeWindow window, Iterable input, Collector out) throws Exception {
            Order order = input.iterator().next();
            out.collect(new HotOrder(goodsId, order.getGoodsName(), order.getTotalAmount(), window.getEnd()));
        }
    }

热销商品的统计排行处理逻辑:

    /**
     * 热销商品的统计排行实现
     */
    private class TopNHotOrder extends KeyedProcessFunction {

        private ListState orderState;

        @Override
        public void processElement(HotOrder value, Context ctx, Collector out) throws Exception {
            // 将数据加入到状态列表里面
            orderState.add(value);
            // 注册定时器
            ctx.timerService().registerEventTimeTimer(value.getTimeWindow());
        }

        @Override
        public void onTimer(long timestamp, OnTimerContext ctx, Collector out) throws Exception {
            List orderList = new ArrayList<>();
            for(HotOrder order : orderState.get()){
                orderList.add(order);
            }
            // 按照成交总金额, 倒序排列
            orderList.sort(Comparator.comparing(HotOrder::getTotalAmount).reversed());
            orderState.clear();
            // 将数据写入至ES
            HotOrderRepository hotOrderRepository = (HotOrderRepository) ApplicationContextUtil.getBean("hotOrderRepository");
            StringBuffer strBuf = new StringBuffer();
            for(HotOrder order: orderList) {
                order.setId(order.getGoodsId());
                order.setCreateDate(new Date(order.getTimeWindow()));
                hotOrderRepository.save(order);
                strBuf.append(order).append("\n");
                System.out.println("result => " + order);
            }
            out.collect(strBuf.toString());
        }

        @Override
        public void open(Configuration parameters) throws Exception {
            super.open(parameters);
            orderState = getRuntimeContext().getListState(new ListStateDescriptor("hot-order", HotOrder.class));

        }
    }

3. 区域热销商品统计处理 (多维度条件)

  • 功能

    功能: 根据不同区域(比如省份、城市), 实现对热销商品的统计, 统计周期为一天, 每3秒刷新一次数据。

  • 核心代码

    主逻辑代码:

        /**
         * 执行Flink任务处理
         * @throws Exception
         */
        private void executeFlinkTask() throws Exception {
    
            // 1. 创建运行环境
            StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();
    
            // 2. 设置kafka服务连接信息
            Properties properties = new Properties();
            properties.setProperty("bootstrap.servers", "10.10.20.132:9092");
            properties.setProperty("group.id", "fink_group");
    
            // 3. 创建订单的Kafka消费端
            FlinkKafkaConsumer orderKafkaProducer = new FlinkKafkaConsumer(
                    "order_binlog",                  // 目标 topic
                    new SimpleStringSchema(),   // 序列化 配置
                    properties);
    
            // 调试,重新从最早记录消费
            orderKafkaProducer.setStartFromEarliest();     // 尽可能从最早的记录开始
            env.setStreamTimeCharacteristic(TimeCharacteristic.EventTime);
            env.setParallelism(1);
    
            // 4. 创建地址信息的kafka消费端
            FlinkKafkaConsumer addressKafkaProducer = new FlinkKafkaConsumer(
                    "orderAddress_binlog",                  // 目标 topic
                    new SimpleStringSchema(),   // 序列化 配置
                    properties);
    
            // 调试,重新从最早记录消费
            addressKafkaProducer.setStartFromEarliest();     // 尽可能从最早的记录开始
    
            // 5. 读取Kafka数据源(订单数据源和地址数据源)
            DataStreamSource orderStream = env.addSource(orderKafkaProducer);
            DataStreamSource addressStream = env.addSource(addressKafkaProducer);
    
            // 6. 数据过滤转换处理(订单数据)
            DataStream orderDataStream = orderStream.filter(new FilterFunction() {
                @Override
                public boolean filter(String value) throws Exception {
                    JsonObject jsonObject = GsonConvertUtil.getSingleton().getJsonObject(value);
                    String isDDL = jsonObject.get("isDdl").getAsString();
                    String type = jsonObject.get("type").getAsString();
                    // 过滤条件: 非DDL操作, 并且是新增的数据
                    return isDDL.equalsIgnoreCase("false") && "INSERT".equalsIgnoreCase(type);
                }
            }).flatMap(new FlatMapFunction() {
                @Override
                public void flatMap(String value, Collector out) throws Exception {
                    // 获取JSON中的data数据
                    JsonArray dataArray = GsonConvertUtil.getSingleton().getJsonObject(value).getAsJsonArray("data");
                    // 将data数据转换为java对象
                    for(int i =0; i< dataArray.size(); i++) {
                        JsonObject jsonObject = dataArray.get(i).getAsJsonObject();
                        Order order = GsonConvertUtil.getSingleton().cvtJson2Obj(jsonObject, Order.class);
                        System.out.println("order => " + order);
                        out.collect(order);
                    }
                }
            })
            .assignTimestampsAndWatermarks(new BoundedOutOfOrdernessTimestampExtractor(Time.seconds(0)) {
                @Override
                public long extractTimestamp(Order element) {
                    return element.getExecTime();
                }
            });
    
            // 7. 过滤转换地址数据源
            DataStream orderAddressDataStream = addressStream.filter(new FilterFunction() {
                @Override
                public boolean filter(String value) throws Exception {
                    JsonObject jsonObject = GsonConvertUtil.getSingleton().getJsonObject(value);
                    String isDDL = jsonObject.get("isDdl").getAsString();
                    String type = jsonObject.get("type").getAsString();
                    // 过滤条件: 非DDL操作, 并且是新增的数据
                    return isDDL.equalsIgnoreCase("false") && "INSERT".equalsIgnoreCase(type);
                }
            }).flatMap(new FlatMapFunction() {
                @Override
                public void flatMap(String value, Collector out) throws Exception {
                    // 获取JSON中的data数据
                    JsonArray dataArray = GsonConvertUtil.getSingleton().getJsonObject(value).getAsJsonArray("data");
                    // 将data数据转换为java对象
                    for(int i =0; i< dataArray.size(); i++) {
                        JsonObject jsonObject = dataArray.get(i).getAsJsonObject();
                        OrderAddress orderAddress = GsonConvertUtil.getSingleton().cvtJson2Obj(jsonObject, OrderAddress.class);
                        System.out.println("orderAddress => " + orderAddress);
                        out.collect(orderAddress);
                    }
                }
            })
            .assignTimestampsAndWatermarks(new BoundedOutOfOrdernessTimestampExtractor(Time.seconds(0)) {
                @Override
                public long extractTimestamp(OrderAddress element) {
                    return element.getExecTime();
                }
            });
    
            // 8. 订单数据流和地址数据流的join处理
            orderDataStream.join(orderAddressDataStream).where(new KeySelector() {
                @Override
                public Object getKey(Order value) throws Exception {
                    return value.getId();
                }
            }).equalTo(new KeySelector() {
                @Override
                public Object getKey(OrderAddress value) throws Exception {
                    return value.getOrderId();
                }
            })
            // 这里的时间, 相比下面的时间窗滑动值slide快一些
            .window(TumblingEventTimeWindows.of(Time.seconds(2)))
            .apply(new JoinFunction() {
    
                @Override
                public JoinOrderAddress join(Order first, OrderAddress second) throws Exception {
                    return JoinOrderAddress.build(first, second);
                }
            }).assignTimestampsAndWatermarks(new BoundedOutOfOrdernessTimestampExtractor(Time.seconds(0)) {
                @Override
                public long extractTimestamp(JoinOrderAddress element) {
                    return element.getExecTime();
                }
            })
            // 9. 根据省份和商品ID进行数据分组
            .keyBy(new KeySelector>() {
                @Override
                public Tuple2 getKey(JoinOrderAddress value) throws Exception {
                    return Tuple2.of(value.getProvince(), value.getGoodsId());
                }
            })
            .timeWindow(Time.hours(24), Time.seconds(3))
            .aggregate(new TotalAmount(), new AmountWindow())
            .keyBy(HotDimensionOrder::getTimeWindow)
            .process(new TopNDimensionOrder());
    
            // 10. 执行任务
            env.execute("job");
        }

商品金额累加器:

  /**
   * 商品金额累加器
   */
  private static class TotalAmount implements AggregateFunction {
      @Override
      public JoinOrderAddress createAccumulator() {
          JoinOrderAddress order = new JoinOrderAddress();
          order.setTotalAmount(0l);
          return order;
      }
  
      /**
       * 商品销售总金额累加处理
       * @param value
       * @param accumulator
       * @return
       */
      @Override
      public JoinOrderAddress add(JoinOrderAddress value, JoinOrderAddress accumulator) {
          accumulator.setGoodsId(value.getGoodsId());
          accumulator.setGoodsName((value.getGoodsName()));
          accumulator.setProvince(value.getProvince());
          accumulator.setCity(value.getCity());
          accumulator.setTotalAmount(accumulator.getTotalAmount() + (value.getExecPrice() * value.getExecVolume()));
          return accumulator;
      }
  
      @Override
      public JoinOrderAddress getResult(JoinOrderAddress accumulator) {
          return accumulator;
      }  
      @Override
      public JoinOrderAddress merge(JoinOrderAddress a, JoinOrderAddress b) {
          return null;
      }
  }

热销商品的数据转换处理:

  private static class AmountWindow implements WindowFunction, TimeWindow> {
  
      @Override
      public void apply(Tuple2 goodsId, TimeWindow window, Iterable input, Collector out) throws Exception {
          JoinOrderAddress order = input.iterator().next();
          out.collect(new HotDimensionOrder(order, window.getEnd()));
      }
  }

根据不同区域的热销商品, 实现统计排行:

  private class TopNDimensionOrder extends KeyedProcessFunction {
  
      private ListState orderState;
  
      @Override
      public void processElement(HotDimensionOrder value, Context ctx, Collector out) throws Exception {
          // 将数据加入到状态列表里面
          orderState.add(value);
          // 注册定时器
          ctx.timerService().registerEventTimeTimer(value.getTimeWindow());
      }
  
      @Override
      public void onTimer(long timestamp, OnTimerContext ctx, Collector out) throws Exception {
          List orderList = new ArrayList<>();
          for(HotDimensionOrder order : orderState.get()){
              orderList.add(order);
          }
          // 按照省份和商品的成交总金额, 倒序排列
          orderList.sort(Comparator.comparing(HotDimensionOrder::getProvince).thenComparing(HotDimensionOrder::getTotalAmount, Comparator.reverseOrder()));
          orderState.clear();
          // 将数据写入至ES
          HotDimensionRepository  hotDimensionRepository = (HotDimensionRepository) ApplicationContextUtil.getBean("hotDimensionRepository");
          StringBuffer strBuf = new StringBuffer();
          for(HotDimensionOrder order: orderList) {
              order.setId(order.getProvince() + order.getGoodsId());
              order.setCreateDate(new Date(order.getTimeWindow()));
              hotDimensionRepository.save(order);
              strBuf.append(order).append("\n");
              System.out.println("result => " + order);
          }
          out.collect(strBuf.toString());
      }  
      @Override
      public void open(Configuration parameters) throws Exception {
          super.open(parameters);
          orderState = getRuntimeContext().getListState(new ListStateDescriptor("hot-dimension", HotDimensionOrder.class));
  
      }
  }

本文由mirson创作分享,如需进一步交流,请加QQ群:19310171或访问www.softart.cn

你可能感兴趣的:(java)