[ https://issues.apache.org/jira/browse/FLINK-6026?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel ]
Luke Hutchison closed FLINK-6026. --------------------------------- Resolution: Not A Bug > Return type of flatMap with lambda function not correctly resolved > ------------------------------------------------------------------ > > Key: FLINK-6026 > URL: https://issues.apache.org/jira/browse/FLINK-6026 > Project: Flink > Issue Type: Bug > Components: Core, DataSet API, DataStream API > Affects Versions: 1.2.0 > Reporter: Luke Hutchison > Priority: Minor > > I get an error if I try naming a flatMap operation: > {code} > DataSet<Tuple2<String, Integer>> y = x.flatMap((t, out) -> > out.collect(t)).name("op"); > {code} > Type mismatch: cannot convert from > FlatMapOperator<Tuple2<String,Integer>,Object> to > DataSet<Tuple2<String,Integer>> > If I try to do it as two steps, I get the error that DataSet does not have a > .name(String) method: > {code} > DataSet<Tuple2<String, Integer>> y = x.flatMap((t, out) -> out.collect(t)); > y.name("op"); > {code} > If I use Eclipse type inference on x, it shows me that the output type is not > correctly inferred: > {code} > FlatMapOperator<Tuple2<String, Integer>, Object> y = x.flatMap((t, out) -> > out.collect(t)); > y.name("op"); // This now works, but "Object" is not the output type > {code} > However, these steps still cannot be chained -- the following still gives an > error: > {code} > FlatMapOperator<Tuple2<String, Integer>, Object> y = x.flatMap((t, out) -> > out.collect(t)).name("op"); > {code} > i.e. first you have to assign the result to a field, so that the type is > fully specified; then you can name the operation. > And the weird thing is that you can give the correct, more specific type for > the local variable, without a type narrowing error: > {code} > FlatMapOperator<Tuple2<String, Integer>, Tuple2<String, Integer>> y = > x.flatMap((t, out) -> out.collect(t)); > y.name("op"); // This works, although chaining these two lines still does > not work > {code} > If the types of the lambda args are specified, then everything works: > {code} > DataSet<Tuple2<String, Integer>> y = x.flatMap((Tuple2<String, Integer> t, > Collector<Tuple2<String, Integer>> out) -> out.collect(t)).name("op"); > {code} > So, at least two things are going on here: > (1) type inference is not working correctly for the lambda parameters > (2) this breaks type inference for intermediate expressions, unless the type > can be resolved using a local variable definition > Is this a bug in the type signature of flatMap? (Or a compiler bug or > limitation, or a fundamental limitation of Java 8 type inference?) > It seems odd that the type of a local variable definition can make the result > of the flatMap operator *more* specific, taking the type from > {code} > FlatMapOperator<Tuple2<String, Integer>, Object> > {code} > to > {code} > FlatMapOperator<Tuple2<String, Integer>, Tuple2<String, Integer>> > {code} > i.e. if the output type is provided in the local variable definition, it is > properly unified with the type of the parameter t of collect(t), however that > type is not propagated out of that call. > Can anything be done about this in Flink? I have hit this problem a few times. -- This message was sent by Atlassian JIRA (v6.3.15#6346)