Sergey Anokhovskiy created FLINK-34552: ------------------------------------------
Summary: Support message deduplication for input data sources Key: FLINK-34552 URL: https://issues.apache.org/jira/browse/FLINK-34552 Project: Flink Issue Type: New Feature Components: Table SQL / API, Table SQL / Runtime Reporter: Sergey Anokhovskiy My main proposal is: To have duplicate message suppression logic as a part of flink table api to be able to suppress duplicates from the input sources. It might be a parameter provided by user if they want to suppress duplicates from the input source or not. Below I provided more details about my use case and available approaches. I have a flink job which reads from two keyed kafka topics and emits messages to the keyed kafka topic. The flink job executes the join query: SELECT a.id, adata, bdata FROM a JOIN b ON a.id = b.id One of the input kafka topics produces messages with duplicate payload within PK in additional to meaningful data. That causes duplicates in the output topic and creates extra load to the downstream services. I was looking for a way to suppress duplicates and I found two strategies which doesn't seem to work for my use case: 1. Based on deduplication window as kafka sink buffer for example https://github.com/apache/flink-connector-kafka/blob/main/flink-connector-kafka/src/main/java/org/apache/flink/streaming/connectors/kafka/table/ReducingUpsertSink.java#L46 Deduplication window doesn't work well for my case because the interval between duplicates is one day and I don't want my data to be delayed if use such a big window. 2. Using ROW_NUMBER https://nightlies.apache.org/flink/flink-docs-release-1.18/docs/dev/table/sql/queries/deduplication/ . Unfortunately, this approach doesn't suit my use case too. Kafka topics a and b are CDC data streams and contain DELETE and REFRESH messages. If DELETE and REFRESH messages are comming with the same payload the job will suppress the last message which will lead to the incorrect output result. If I add message_type to the PARTITION key then the job will not be able to process messages sequences like this: DELETE->REFRESH->DELETE (with the same payload and PK), because the last message will be suppressed which will lead to the incorrect output result. Finally, I had to create a separate custom flink service which reads the output topic of the initial job and suppresses duplicates keeping message hashes in the state. The initial join job, described above, still has to process duplicates. Would it better to be able to suppress duplicates from the input sources? -- This message was sent by Atlassian Jira (v8.20.10#820010)