Github user fhueske commented on a diff in the pull request:

    https://github.com/apache/flink/pull/3423#discussion_r103433985
  
    --- Diff: 
flink-libraries/flink-table/src/main/scala/org/apache/flink/table/plan/nodes/datastream/DataStreamAggregate.scala
 ---
    @@ -119,110 +119,54 @@ class DataStreamAggregate(
           s"select: ($aggString)"
         val nonKeyedAggOpName = s"window: ($window), select: ($aggString)"
     
    -    val mapFunction = AggregateUtil.createPrepareMapFunction(
    -      namedAggregates,
    -      grouping,
    -      inputType)
    -
    -    val mappedInput = inputDS.map(mapFunction).name(prepareOpName)
    -
    -
    -    // check whether all aggregates support partial aggregate
    -    if (AggregateUtil.doAllSupportPartialAggregation(
    -          namedAggregates.map(_.getKey),
    -          inputType,
    -          grouping.length)) {
    -      // do Incremental Aggregation
    -      val reduceFunction = 
AggregateUtil.createIncrementalAggregateReduceFunction(
    -        namedAggregates,
    -        inputType,
    -        getRowType,
    -        grouping)
    -      // grouped / keyed aggregation
    -      if (groupingKeys.length > 0) {
    -        val windowFunction = 
AggregateUtil.createWindowIncrementalAggregationFunction(
    -          window,
    -          namedAggregates,
    -          inputType,
    -          rowRelDataType,
    -          grouping,
    -          namedProperties)
    +    // grouped / keyed aggregation
    +    if (groupingKeys.length > 0) {
    +      val windowFunction = 
AggregateUtil.createWindowIncrementalAggregationFunction(
    --- End diff --
    
    AggregationFunction -> WindowFunction?


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