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Posted to dev@flink.apache.org by "Anis Nasir (JIRA)" <ji...@apache.org> on 2015/03/18 13:19:38 UTC

[jira] [Created] (FLINK-1725) New Partitioner for better load balancing for skewed data

Anis Nasir created FLINK-1725:
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             Summary: New Partitioner for better load balancing for skewed data
                 Key: FLINK-1725
                 URL: https://issues.apache.org/jira/browse/FLINK-1725
             Project: Flink
          Issue Type: Improvement
          Components: New Components
    Affects Versions: 0.8.1
            Reporter: Anis Nasir


Hi,

We have recently studied the problem of load balancing in Storm [1].
In particular, we focused on key distribution of the stream for skewed skewede data.
We developed a new stream partitioning scheme (which we call Partial Key Grouping). It achieves better load balancing than key grouping while being more scalable than shuffle grouping in terms of memory.

In the paper we show a number of mining algorithms that are easy to implement with partial key grouping, and whose performance can benefit from it. We think that it might also be useful for a larger class of algorithms.

Partial key grouping is very easy to implement: it requires just a few lines of code in Java when implemented as a custom grouping in Storm [2].

For all these reasons, we believe it will be a nice addition to the standard Partitioners available in Flink. If the community thinks it's a good idea, we will be happy to offer support in the porting.

References:
[1]. https://melmeric.files.wordpress.com/2014/11/the-power-of-both-choices-practical-load-balancing-for-distributed-stream-processing-engines.pdf
[2]. https://github.com/gdfm/partial-key-grouping



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