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Posted to issues@flink.apache.org by "Stephan Ewen (JIRA)" <ji...@apache.org> on 2018/07/04 20:13:00 UTC
[jira] [Updated] (FLINK-9749) Rework Bucketing Sink
[ https://issues.apache.org/jira/browse/FLINK-9749?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel ]
Stephan Ewen updated FLINK-9749:
--------------------------------
Description:
The BucketingSink has a series of deficits at the moment.
Due to the long list of issues, I would suggest to add a new StreamingFileSink with a new and cleaner design
h3. Encoders, Parquet, ORC
- It only efficiently supports row-wise data formats (avro, jso, sequence files.
- Efforts to add (columnar) compression for blocks of data is inefficient, because blocks cannot span checkpoints due to persistence-on-checkpoint.
- The encoders are part of the \{{flink-connector-filesystem project}}, rather than in orthogonal formats projects. This blows up the dependencies of the \{{flink-connector-filesystem project}} project. As an example, the rolling file sink has dependencies on Hadoop and Avro, which messes up dependency management.
h3. Use of FileSystems
- The BucketingSink works only on Hadoop's FileSystem abstraction not support Flink's own FileSystem abstraction and cannot work with the packaged S3, maprfs, and swift file systems
- The sink hence needs Hadoop as a dependency
- The sink relies on "trying out" whether truncation works, which requires write access to the users working directory
- The sink relies on enumerating and counting files, rather than maintaining its own state, making less efficient
h3. Correctness and Efficiency on S3
- The BucketingSink relies on strong consistency in the file enumeration, hence may work incorrectly on S3.
- The BucketingSink relies on persisting streams at intermediate points. This is not working properly on S3, hence there may be data loss on S3.
h3. .valid-length companion file
- The valid length file makes it hard for consumers of the data and should be dropped
We track this design in a series of sub issues.
was:
The BucketingSink has a series of deficits at the moment.
Due to the long list of issues, I would suggest to add a new StreamingFileSink with a new and cleaner design
h3. Encoders, Parquet, ORC
- It only efficiently supports row-wise data formats (avro, jso, sequence files.
- Efforts to add (columnar) compression for blocks of data is inefficient, because blocks cannot span checkpoints due to persistence-on-checkpoint.
- The encoders are part of the \{{flink-connector-filesystem project}}, rather than in orthogonal formats projects. This blows up the dependencies of the \{{flink-connector-filesystem project}} project. As an example, the rolling file sink has dependencies on Hadoop and Avro, which messes up dependency management.
h3. Use of FileSystems
- The BucketingSink works only on Hadoop's FileSystem abstraction not support Flink's own FileSystem abstraction and cannot work with the packaged S3, maprfs, and swift file systems
- The sink hence needs Hadoop as a dependency
- The sink relies on "trying out" whether truncation works, which requires write access to the users working directory
- The sink relies on enumerating and counting files, rather than maintaining its own state, making less efficient
h3. Correctness and Efficiency on S3
- The BucketingSink relies on strong consistency in the file enumeration, hence may work incorrectly on S3.
- The BucketingSink relies on persisting streams at intermediate points. This is not working properly on S3, hence there may be data loss on S3.
h3. .valid-length companion file
- The valid length file makes it hard for consumers of the data and should be dropped
> Rework Bucketing Sink
> ---------------------
>
> Key: FLINK-9749
> URL: https://issues.apache.org/jira/browse/FLINK-9749
> Project: Flink
> Issue Type: New Feature
> Components: Streaming Connectors
> Reporter: Stephan Ewen
> Assignee: Kostas Kloudas
> Priority: Major
> Fix For: 1.6.0
>
>
> The BucketingSink has a series of deficits at the moment.
> Due to the long list of issues, I would suggest to add a new StreamingFileSink with a new and cleaner design
> h3. Encoders, Parquet, ORC
> - It only efficiently supports row-wise data formats (avro, jso, sequence files.
> - Efforts to add (columnar) compression for blocks of data is inefficient, because blocks cannot span checkpoints due to persistence-on-checkpoint.
> - The encoders are part of the \{{flink-connector-filesystem project}}, rather than in orthogonal formats projects. This blows up the dependencies of the \{{flink-connector-filesystem project}} project. As an example, the rolling file sink has dependencies on Hadoop and Avro, which messes up dependency management.
> h3. Use of FileSystems
> - The BucketingSink works only on Hadoop's FileSystem abstraction not support Flink's own FileSystem abstraction and cannot work with the packaged S3, maprfs, and swift file systems
> - The sink hence needs Hadoop as a dependency
> - The sink relies on "trying out" whether truncation works, which requires write access to the users working directory
> - The sink relies on enumerating and counting files, rather than maintaining its own state, making less efficient
> h3. Correctness and Efficiency on S3
> - The BucketingSink relies on strong consistency in the file enumeration, hence may work incorrectly on S3.
> - The BucketingSink relies on persisting streams at intermediate points. This is not working properly on S3, hence there may be data loss on S3.
> h3. .valid-length companion file
> - The valid length file makes it hard for consumers of the data and should be dropped
> We track this design in a series of sub issues.
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