7

I continue playing with Reactor, and now I see compose operator that behave exactly like flatMap and I´m wondering if there´s any difference that I don't understand.

    @Test
public void compose() throws InterruptedException {
    Scheduler mainThread = Schedulers.single();
    Flux.just(("old element"))
            .compose(element ->
                    Flux.just("new element in new thread")
                            .subscribeOn(mainThread)
                            .doOnNext(value -> System.out.println("Thread:" + Thread.currentThread().getName())))
            .doOnNext(value -> System.out.println("Thread:" + Thread.currentThread().getName()))
            .subscribe(System.out::println);
    Thread.sleep(1000);
}

@Test
public void flatMapVsCompose() throws InterruptedException {
    Scheduler mainThread = Schedulers.single();
    Flux.just(("old element"))
            .flatMap(element ->
                    Flux.just("new element in new thread")
                            .subscribeOn(mainThread)
                            .doOnNext(value -> System.out.println("Thread:" + Thread.currentThread().getName())))
            .doOnNext(value -> System.out.println("Thread:" + Thread.currentThread().getName()))
            .subscribe(System.out::println);
    Thread.sleep(1000);
}

This two examples behave and return the same result.

Regards.

10

Explanation from @Andrew is pretty good. Just wanted to add an example for better understanding.

Flux.just("1", "2")
        .compose( stringFlux -> {
            System.out.println("In compose"); // It takes whe whole Flux as input
           return stringFlux.collectList();
        }).subscribe(System.out::println);


Flux.just("1", "2").flatMap(s -> { //Input to the anonymous function is individual items in stream
            System.out.println("In flatMap");
            return Flux.just(Integer.parseInt(s));
        }).subscribe(System.out::println);

This produces the output

In compose
[1, 2]
In flatMap
1
In flatMap
2

Which indicates compose works on entire stream but flatMap works on individual items in the stream

0
8

An excellent explanation by Dan Lew:

The difference is that compose() is a higher level abstraction: it operates on the entire stream, not individually emitted items. In more specific terms:

  • compose() is the only way to get the original Observable<T> from the stream. Therefore, operators that affect the whole stream (like subscribeOn() and observeOn()) need to use compose().

    In contrast, if you put subscribeOn()/observeOn() in flatMap(), it would only affect the Observable you create in flatMap() but not the rest of the stream.

  • compose() executes immediately when you create the Observable stream, as if you had written the operators inline. flatMap() executes when its onNext() is called, each time it is called. In other words, flatMap() transforms each item, whereas compose() transforms the whole stream.

  • flatMap() is necessarily less efficient because it has to create a new Observable every time onNext() is called. compose() operates on the stream as it is. If you want to replace some operators with reusable code, use compose(). flatMap() has many uses but this is not one of them.

4
  • I update my question. I dont understand then why If I execute the two examples both are executed in the same threads. I understood that the sibscribeOn it should only affect the Flux inside the flatMap
    – paul
    Jan 28 '18 at 10:46
  • @paul, single() returns a default, shared, single-thread-backed Scheduler instance Jan 28 '18 at 10:55
  • With all types of Schedulers I receive the same result. I dont know if I´m doing something wrong here.
    – paul
    Jan 28 '18 at 10:59
  • To see run the thread out of the flatMap in another thread. And in the compose in the same one. No worries, with the second response is now 100%’clear. Thanks!
    – paul
    Jan 28 '18 at 12:01

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