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Fabian Paul updated FLINK-29437: -------------------------------- Affects Version/s: 1.15.3 (was: 1.15.2) > The partition of data before and after the Kafka Shuffle are not aligned > ------------------------------------------------------------------------ > > Key: FLINK-29437 > URL: https://issues.apache.org/jira/browse/FLINK-29437 > Project: Flink > Issue Type: Bug > Components: API / DataStream, Connectors / Kafka > Affects Versions: 1.15.3 > Reporter: Zakelly Lan > Assignee: Zakelly Lan > Priority: Major > Labels: pull-request-available > Attachments: image-2022-09-28-14-32-28-116.png, > image-2022-09-28-14-35-47-954.png > > > I notice that the key group range in consumer side of Kafka Shuffle is not > aligned with the producer side, there are two problems: > # The data partitioning of the sink(producer) is exactly the same way as a > keyed stream that as the same maximum parallelism as the number of kafka > partitions does, but in consumer side the number of partitions and key groups > are not the same. > # There is a distribution of assigning kafka partitions to consumer subtasks > (See KafkaTopicPartitionAssigner#assign), but the producer of Kafka Shuffle > simply assume the partition index equals the subtask index. e.g. > !image-2022-09-28-14-32-28-116.png|width=1133,height=274! > My proposed change: > # Set the max parallelism of the key stream in consumer side as the number > of kafka partitions. > # Use the same method when assigning kafka partitions to consumer subtasks > to maintain a map from subtasks to kafka partitions, which is used by the > producer to insert into the right partition for data for a subtask. i.e. > !image-2022-09-28-14-35-47-954.png|width=1030,height=283! -- This message was sent by Atlassian Jira (v8.20.10#820010)