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https://issues.apache.org/jira/browse/FLINK-3477?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=15375658#comment-15375658
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ASF GitHub Bot commented on FLINK-3477:
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Github user greghogan commented on the issue:

    https://github.com/apache/flink/pull/1517
  
    CI tests are passing. I've been testing Gelly algorithms with this without 
error. I will merge this ...


> Add hash-based combine strategy for ReduceFunction
> --------------------------------------------------
>
>                 Key: FLINK-3477
>                 URL: https://issues.apache.org/jira/browse/FLINK-3477
>             Project: Flink
>          Issue Type: Sub-task
>          Components: Local Runtime
>            Reporter: Fabian Hueske
>            Assignee: Gabor Gevay
>
> This issue is about adding a hash-based combine strategy for ReduceFunctions.
> The interface of the {{reduce()}} method is as follows:
> {code}
> public T reduce(T v1, T v2)
> {code}
> Input type and output type are identical and the function returns only a 
> single value. A Reduce function is incrementally applied to compute a final 
> aggregated value. This allows to hold the preaggregated value in a hash-table 
> and update it with each function call. 
> The hash-based strategy requires special implementation of an in-memory hash 
> table. The hash table should support in place updates of elements (if the 
> updated value has the same size as the new value) but also appending updates 
> with invalidation of the old value (if the binary length of the new value 
> differs). The hash table needs to be able to evict and emit all elements if 
> it runs out-of-memory.
> We should also add {{HASH}} and {{SORT}} compiler hints to 
> {{DataSet.reduce()}} and {{Grouping.reduce()}} to allow users to pick the 
> execution strategy.



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