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Posted to issues@flink.apache.org by "Alexis Sarda-Espinosa (Jira)" <ji...@apache.org> on 2022/05/05 15:02:00 UTC
[jira] [Created] (FLINK-27504) State compaction not happening with sliding window and incremental RocksDB backend
Alexis Sarda-Espinosa created FLINK-27504:
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Summary: State compaction not happening with sliding window and incremental RocksDB backend
Key: FLINK-27504
URL: https://issues.apache.org/jira/browse/FLINK-27504
Project: Flink
Issue Type: Bug
Components: Runtime / State Backends
Affects Versions: 1.14.4
Environment: Local Flink cluster on Arch Linux.
Reporter: Alexis Sarda-Espinosa
Attachments: duration_trend_52ca77c.png, size_growth_52ca77c.png
Hello,
I'm trying to estimate an upper bound for RocksDB's state size in my application. For that purpose, I have created a small job with faster timings whose code you can find on GitHub: [https://github.com/asardaes/flink-rocksdb-ttl-test]. You can see some of the results there, but I summarize here as well:
* Approximately 20 events per second, 10 unique keys for partitioning are pre-specified.
* Sliding window of 11 seconds with a 1-second slide.
* Allowed lateness of 11 seconds.
* State TTL configured to 1 minute and compaction after 1000 entries.
* Both window-specific and window-global state used.
The goal is to let the job run and analyze state compaction behavior with RocksDB.
I have been running the job on a local cluster (outside IDE), the configuration YAML is also available in the repository. After running for approximately 1.6 days, state size is currently 2.3 GiB (see attachments). I understand state can retain expired data for a while, but since TTL is 1 minute, this seems excessive to me.
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