Jiayi Liao created FLINK-10348:
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Summary: Solve data skew when consuming data from kafka
Key: FLINK-10348
URL:
https://issues.apache.org/jira/browse/FLINK-10348 Project: Flink
Issue Type: New Feature
Components: Kafka Connector
Affects Versions: 1.6.0
Reporter: Jiayi Liao
Assignee: Jiayi Liao
By using KafkaConsumer, our strategy is to send fetch request to brokers with a fixed fetch size. Assume x topic has n partition and there exists data skew between partitions, now we need to consume data from x topic with earliest offset, and we can get max fetch size data in every fetch request. The problem is that when an task consumes data from both "big" partitions and "small" partitions, the data in "big" partitions may be late elements because "small" partitions are consumed faster.
*Solution: *
I think we can leverage two parameters to control this.
1. data.skew.check // whether to check data skew
2. data.skew.check.interval // the interval between checks
Every data.skew.check.interval, we will check the latest offset of every specific partition, and calculate (latest offset - current offset), then get partitions which need to slow down and redefine their fetch size.
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