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Fabian Hueske commented on FLINK-6228: -------------------------------------- I think that use case is not supported yet (but should be at some point). I think in SQL the query would look as follows: {code} SELECT timestamp, orderId, amount, rank() OVER (PARTITION BY CEIL(timestamp TO MILLISECOND) ORDER BY amount) FROM stream {code} So, we would partition on {{timestamp}} and order by {{amount}} and compute the {{RANK()}} function on each partition. I'm not sure if the current OVER window implementations are able to execute your use case. > Integrating the OVER windows in the Table API > --------------------------------------------- > > Key: FLINK-6228 > URL: https://issues.apache.org/jira/browse/FLINK-6228 > Project: Flink > Issue Type: Sub-task > Components: Table API & SQL > Reporter: sunjincheng > Assignee: sunjincheng > > Syntax: > {code} > table > .overWindows( > (Rows|Range [ partitionBy value_expression , ... [ n ]] [ orderBy > order_by_expression] > (preceding > UNBOUNDED|value_specification.(rows|milli|second|minute|hour|day|month|year)|CURRENTROW) > [following > UNBOUNDED|value_specification.(rows|milli|second|minute|hour|day|month|year)|CURRENTROW] > as alias,...[n]) > ) > .select( [col1,...[n]], (agg(col1) OVER overWindowAlias, … [n]) > {code} > Implement restrictions: > * All OVER clauses in the same SELECT clause must be exactly the same. > * The PARTITION BY clause is optional (no partitioning results in single > threaded execution). > * The ORDER BY Before the > [FLINK-5884|https://issues.apache.org/jira/browse/FLINK-5884] implementation > orderBy may only have ‘rowtime/’proctime(for stream)/‘specific-time-field(for > batch). > * FOLLOWING is not supported. > I will soon add a user interface design document. -- This message was sent by Atlassian JIRA (v6.3.15#6346)