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Fabian Hueske commented on FLINK-6075: -------------------------------------- The missing {{RANK}} function is not the issue. You could do that with an UDAGG. The problem is that the {{OVER}} window should partition by time (rounded to hour) and sort by another (non-time) attribute. In principle that's possible, but would need a bit of inference about monotonicity properties in the optimizer. There are no short-term plans to add this, but it should be supported at some point, IMO. > ORDER BY *time ASC > ------------------ > > Key: FLINK-6075 > URL: https://issues.apache.org/jira/browse/FLINK-6075 > Project: Flink > Issue Type: New Feature > Components: Table API & SQL > Reporter: radu > Priority: Major > Labels: features > Attachments: sort.png > > > These will be split in 3 separated JIRA issues. However, the design is the > same only the processing function differs in terms of the output. Hence, the > design is the same for all of them. > Time target: Proc Time > **SQL targeted query examples:** > *Sort example* > Q1)` SELECT a FROM stream1 GROUP BY HOP(proctime, INTERVAL '1' HOUR, INTERVAL > '3' HOUR) ORDER BY b` > Comment: window is defined using GROUP BY > Comment: ASC or DESC keywords can be placed to mark the ordering type > *Limit example* > Q2) `SELECT a FROM stream1 WHERE rowtime BETWEEN current_timestamp - INTERVAL > '1' HOUR AND current_timestamp ORDER BY b LIMIT 10` > Comment: window is defined using time ranges in the WHERE clause > Comment: window is row triggered > *Top example* > Q3) `SELECT sum(a) OVER (ORDER BY proctime RANGE INTERVAL '1' HOUR PRECEDING > LIMIT 10) FROM stream1` > Comment: limit over the contents of the sliding window > General Comments: > -All these SQL clauses are supported only over windows (bounded collections > of data). > -Each of the 3 operators will be supported with each of the types of > expressing the windows. > **Description** > The 3 operations (limit, top and sort) are similar in behavior as they all > require a sorted collection of the data on which the logic will be applied > (i.e., select a subset of the items or the entire sorted set). These > functions would make sense in the streaming context only in the context of a > window. Without defining a window the functions could never emit as the sort > operation would never trigger. If an SQL query will be provided without > limits an error will be thrown (`SELECT a FROM stream1 TOP 10` -> ERROR). > Although not targeted by this JIRA, in the case of working based on event > time order, the retraction mechanisms of windows and the lateness mechanisms > can be used to deal with out of order events and retraction/updates of > results. > **Functionality example** > We exemplify with the query below for all the 3 types of operators (sorting, > limit and top). Rowtime indicates when the HOP window will trigger – which > can be observed in the fact that outputs are generated only at those moments. > The HOP windows will trigger at every hour (fixed hour) and each event will > contribute/ be duplicated for 2 consecutive hour intervals. Proctime > indicates the processing time when a new event arrives in the system. Events > are of the type (a,b) with the ordering being applied on the b field. > `SELECT a FROM stream1 HOP(proctime, INTERVAL '1' HOUR, INTERVAL '2' HOUR) > ORDER BY b (LIMIT 2/ TOP 2 / [ASC/DESC] `) > ||Rowtime|| Proctime|| Stream1|| Limit 2|| Top 2|| Sort > [ASC]|| > | |10:00:00 |(aaa, 11) | | | > | > | |10:05:00 |(aab, 7) | | | | > |10-11 |11:00:00 | | aab,aaa |aab,aaa | aab,aaa > | > | |11:03:00 |(aac,21) | | | | > > |11-12 |12:00:00 | | aab,aaa |aab,aaa | aab,aaa,aac| > | |12:10:00 |(abb,12) | | | | > > | |12:15:00 |(abb,12) | | | | > > |12-13 |13:00:00 | | abb,abb | abb,abb | > abb,abb,aac| > |...| > **Implementation option** > Considering that the SQL operators will be associated with window boundaries, > the functionality will be implemented within the logic of the window as > follows. > * Window assigner – selected based on the type of window used in SQL > (TUMBLING, SLIDING…) > * Evictor/ Trigger – time or count evictor based on the definition of the > window boundaries > * Apply – window function that sorts data and selects the output to trigger > (based on LIMIT/TOP parameters). All data will be sorted at once and result > outputted when the window is triggered > An alternative implementation can be to use a fold window function to sort > the elements as they arrive, one at a time followed by a flatMap to filter > the number of outputs. > !sort.png! > **General logic of Join** > ``` > inputDataStream.window(new [Slide/Tumble][Time/Count]Window()) > //.trigger(new [Time/Count]Trigger()) – use default > //.evictor(new [Time/Count]Evictor()) – use default > .apply(SortAndFilter()); > ``` > ------------ > JIRA will contain > ORDER BY *time ASC OFFSET FETCH > ORDER BY *time DESC OFFSET FETCH > ORDER BY * OFFSET FETCH -- This message was sent by Atlassian JIRA (v7.6.3#76005)