In the e2e Flink SQL tutorial the source table is defined as a Kafka-sourced table with timestamp column upon which watermarking is enabled
CREATE TABLE user_behavior (
user_id BIGINT,
item_id BIGINT,
category_id BIGINT,
behavior STRING,
ts TIMESTAMP(3),
proctime AS PROCTIME(), -- generates processing-time attribute using computed column
WATERMARK FOR ts AS ts - INTERVAL '5' SECOND -- defines watermark on ts column, marks ts as event-time attribute
) WITH (
'connector' = 'kafka', -- using kafka connector
'topic' = 'user_behavior', -- kafka topic
'scan.startup.mode' = 'earliest-offset', -- reading from the beginning
'properties.bootstrap.servers' = 'kafka:9094', -- kafka broker address
'format' = 'json' -- the data format is json
);
As long as GROUP BY is made by a TUMBLE upon ts
field, it seems natural (since Flink knows when to trigger / eject the windows) but in the middle of the tutorial we see the following expression
INSERT INTO cumulative_uv
SELECT date_str, MAX(time_str), COUNT(DISTINCT user_id) as uv
FROM (
SELECT
DATE_FORMAT(ts, 'yyyy-MM-dd') as date_str,
SUBSTR(DATE_FORMAT(ts, 'HH:mm'),1,4) || '0' as time_str,
user_id
FROM user_behavior)
GROUP BY date_str;
Here we see that GROUP BY is made on derivative date_str
field, but how does watermarking works here? How does Flink decides when to "close" date_str bucket? Since date_str
is some function over ts
, it must somehow understand how the watermark update for ts
would translate into waterlevel for date_str
field which seems unfeasable to me. How does it work internally, does Flink stores all encountered records in it's state?