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Vinay commented on FLINK-7289: ------------------------------ Hi Stephan, I am not saying that we should use the same approach of dropping the cache or introduce this in Flink, that is surely not the correct approach. It's just that I found it easy to clean the memory whenever I wanted to run the job second time after I canceled or killed it because the TM was getting killed every time I run the job second time because the memory usage was full (even though I was expecting YARN to clean the memory when the job is canceled or killed) I am running the job on EMR with which Flink is already installed and I have not done any extra configurations as well. May be it is a configuration issue which I am not aware of. I will surely share the logs whenever I run the pipeline again on EMR. > Memory allocation of RocksDB can be problematic in container environments > ------------------------------------------------------------------------- > > Key: FLINK-7289 > URL: https://issues.apache.org/jira/browse/FLINK-7289 > Project: Flink > Issue Type: Improvement > Components: State Backends, Checkpointing > Affects Versions: 1.2.0, 1.3.0, 1.4.0 > Reporter: Stefan Richter > > Flink's RocksDB based state backend allocates native memory. The amount of > allocated memory by RocksDB is not under the control of Flink or the JVM and > can (theoretically) grow without limits. > In container environments, this can be problematic because the process can > exceed the memory budget of the container, and the process will get killed. > Currently, there is no other option than trusting RocksDB to be well behaved > and to follow its memory configurations. However, limiting RocksDB's memory > usage is not as easy as setting a single limit parameter. The memory limit is > determined by an interplay of several configuration parameters, which is > almost impossible to get right for users. Even worse, multiple RocksDB > instances can run inside the same process and make reasoning about the > configuration also dependent on the Flink job. > Some information about the memory management in RocksDB can be found here: > https://github.com/facebook/rocksdb/wiki/Memory-usage-in-RocksDB > https://github.com/facebook/rocksdb/wiki/RocksDB-Tuning-Guide > We should try to figure out ways to help users in one or more of the > following ways: > - Some way to autotune or calculate the RocksDB configuration. > - Conservative default values. > - Additional documentation. -- This message was sent by Atlassian JIRA (v6.4.14#64029)