导读 | Over 聚合定义(支持 Batch\Streaming):可以理解为是一种特殊的滑动窗口聚合函数。那这里我们拿 Over 聚合 与 窗口聚合 做一个对比,其之间的最大不同之处在于:窗口聚合:不在 group by 中的字段,不能直接在 select 中拿到;Over 聚合:能够保留原始字段.在生产环境中,Over 聚合的使用场景还是比较少的。在 Hive 中也有相同的聚合,但是小伙伴萌可以想想你在离线数仓经常使用嘛? |
应用场景:计算最近一段滑动窗口的聚合结果数据。
实际案例:查询每个产品最近一小时订单的金额总和:
SELECT order_id, order_time, amount, SUM(amount) OVER ( PARTITION BY product ORDER BY order_time RANGE BETWEEN INTERVAL '1' HOUR PRECEDING AND CURRENT ROW ) AS one_hour_prod_amount_sum FROM Orders
Over 聚合的语法总结如下:
SELECT agg_func(agg_col) OVER ( [PARTITION BY col1[, col2, ...]] ORDER BY time_col range_definition), ... FROM ...
其中:
如下案例所示:
时间区间聚合
按照时间区间聚合就是时间区间的一个滑动窗口,比如下面案例 1 小时的区间,最新输出的一条数据的 sum 聚合结果就是最近一小时数据的 amount 之和。
CREATE TABLE source_table ( order_id BIGINT, product BIGINT, amount BIGINT, order_time as cast(CURRENT_TIMESTAMP as TIMESTAMP(3)), WATERMARK FOR order_time AS order_time - INTERVAL '0.001' SECOND ) WITH ( 'connector' = 'datagen', 'rows-per-second' = '1', 'fields.order_id.min' = '1', 'fields.order_id.max' = '2', 'fields.amount.min' = '1', 'fields.amount.max' = '10', 'fields.product.min' = '1', 'fields.product.max' = '2' ); CREATE TABLE sink_table ( product BIGINT, order_time TIMESTAMP(3), amount BIGINT, one_hour_prod_amount_sum BIGINT ) WITH ( 'connector' = 'print' ); INSERT INTO sink_table SELECT product, order_time, amount, SUM(amount) OVER ( PARTITION BY product ORDER BY order_time -- 标识统计范围是一个 product 的最近 1 小时的数据 RANGE BETWEEN INTERVAL '1' HOUR PRECEDING AND CURRENT ROW ) AS one_hour_prod_amount_sum FROM source_table
结果如下:
+I[2, 2021-12-24T22:08:26.583, 7, 73] +I[2, 2021-12-24T22:08:27.583, 7, 80] +I[2, 2021-12-24T22:08:28.583, 4, 84] +I[2, 2021-12-24T22:08:29.584, 7, 91] +I[2, 2021-12-24T22:08:30.583, 8, 99] +I[1, 2021-12-24T22:08:31.583, 9, 138] +I[2, 2021-12-24T22:08:32.584, 6, 105] +I[1, 2021-12-24T22:08:33.584, 7, 145]
行数聚合
按照行数聚合就是数据行数的一个滑动窗口,比如下面案例,最新输出的一条数据的 sum 聚合结果就是最近 5 行数据的 amount 之和。
CREATE TABLE source_table ( order_id BIGINT, product BIGINT, amount BIGINT, order_time as cast(CURRENT_TIMESTAMP as TIMESTAMP(3)), WATERMARK FOR order_time AS order_time - INTERVAL '0.001' SECOND ) WITH ( 'connector' = 'datagen', 'rows-per-second' = '1', 'fields.order_id.min' = '1', 'fields.order_id.max' = '2', 'fields.amount.min' = '1', 'fields.amount.max' = '2', 'fields.product.min' = '1', 'fields.product.max' = '2' ); CREATE TABLE sink_table ( product BIGINT, order_time TIMESTAMP(3), amount BIGINT, one_hour_prod_amount_sum BIGINT ) WITH ( 'connector' = 'print' ); INSERT INTO sink_table SELECT product, order_time, amount, SUM(amount) OVER ( PARTITION BY product ORDER BY order_time -- 标识统计范围是一个 product 的最近 5 行数据 ROWS BETWEEN 5 PRECEDING AND CURRENT ROW ) AS one_hour_prod_amount_sum FROM source_table
预跑结果如下:
+I[2, 2021-12-24T22:18:19.147, 1, 9] +I[1, 2021-12-24T22:18:20.147, 2, 11] +I[1, 2021-12-24T22:18:21.147, 2, 12] +I[1, 2021-12-24T22:18:22.147, 2, 12] +I[1, 2021-12-24T22:18:23.148, 2, 12] +I[1, 2021-12-24T22:18:24.147, 1, 11] +I[1, 2021-12-24T22:18:25.146, 1, 10] +I[1, 2021-12-24T22:18:26.147, 1, 9] +I[2, 2021-12-24T22:18:27.145, 2, 11] +I[2, 2021-12-24T22:18:28.148, 1, 10] +I[2, 2021-12-24T22:18:29.145, 2, 10]
当然,如果你在一个 SELECT 中有多个聚合窗口的聚合方式,Flink SQL 支持了一种简化写法,如下案例:
SELECT order_id, order_time, amount, SUM(amount) OVER w AS sum_amount, AVG(amount) OVER w AS avg_amount FROM Orders -- 使用下面子句,定义 Over Window WINDOW w AS ( PARTITION BY product ORDER BY order_time RANGE BETWEEN INTERVAL '1' HOUR PRECEDING AND CURRENT ROW)
原文来自:
本文地址://gulass.cn/flink-sql-over.html编辑:王婷,审核员:清蒸github
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