Kimahriman opened a new pull request, #38853:
URL: https://github.com/apache/spark/pull/38853

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   ### What changes were proposed in this pull request?
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   Instead of just calling `writeBatch.clear`, close the write batch and 
recreate it.
   
   ### Why are the changes needed?
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   A RocksDB `WriteBatch` (and by extension `WriteBatchWithIndex`) stores it's 
underlying data in a `std::string`. Why? I'm not sure. But after a partition is 
finished, `writeBatch.clear()` is called (somewhat indirectly through a call to 
`store.abort`), presumably clearing the data in the `WriteBatch`. This calls 
`std::string::clear` followed by `std::string::resize` underneath the hood. 
However, neither of these two things actual reclaims native memory. All the 
memory allocated for expanding the string when adding data to the `WriteBatch` 
will be there until the `std::string` is deallocated, which in this case means 
deleting the `WriteBatch`. This leads to native memory accumulation on an 
executor and it executes several partitions consecutively, which would happen 
when your total executor cores is less than your shuffle partitions for your 
stateful stream. So instead of just calling `writeBatch.clear()`, close the 
`WriteStream` and create a new one to free up the native memory.
   
   ### Does this PR introduce _any_ user-facing change?
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   Fix for excess native memory usage.
   
   ### How was this patch tested?
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   Existing UTs, not sure how to test for memory usage.


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