I am looking at messing around with creating a functional reactive framework at some point. I have read quite a lot about it and seen a few examples but I wanted to get a clear idea of what this framework would HAVE to do to be considered an FRP extension/dsl. I'm not really concerned with implementation problems or specifics etc but more as to what would be desired in a perfect world situation.

What would be the key operations and qualities of an ideal functional reactive programming language?

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    Out of curiosity, did you end up creating the framework? – bman Dec 11 '16 at 4:53

I'm glad you're starting by asking about a specification rather than implementation first. There are a lot of ideas floating around about what FRP is. For me it's always been two things: (a) denotative and (b) temporally continuous. Many folks drop both of these properties and identify FRP with various implementation notions, all of which are beside the point in my perspective. To reduce confusion, I would like to see the term "functional reactive programming" replaced by the more accurate & descriptive "denotative, continuous-time programming" (DCTP), as suggested by Jake McArthur in a conversation last year.

By "denotative", I mean founded on a precise, simple, implementation-independent, compositional semantics that exactly specifies the meaning of each type and building block. The compositional nature of the semantics then determines the meaning of all type-correct combinations of the building blocks. For me, denotative is the heart & essence of functional programming, and is what enables precise & tractable reasoning and thus a foundation for correctness, derivation, and optimization. Peter Landin recommended "denotative" as a substantive replacement to the fuzzier term "functional" and a way to distinguish deeply/genuinely functional programming from merely functional-looking notations. See this comment for some Landin quotes and a paper reference.

About continuous time, see the post Why program with continuous time? and my quote in AshleyF's answer on this page. I'm surprised over & over by hearing the claim that the idea of continuous time is somehow unnatural or impossible to implement, considering the discrete nature of computers. This line of thinking strikes me as bizarre, especially when coming from Haskellers, for a few reasons:

  • Using lazy functional languages, we casually program with infinite data on finite machines. We get lovely modularity as a result, as illustrated in John Hughes's classic paper Why Functional Programming Matters.
  • There are many examples of programming in continuous space, for instance, vector graphics, but also things like Pan.
  • I like my programs to reflect how I think about the problem space rather than the machine that executes the programs, and I tend to expect other high-level language programmers to share that preference. ("A programming language is low level when its programs require attention to the irrelevant." - Alan Perlis)

I've been making libraries for programming with continuous time since TBAG and ActiveVRML (the first DCTP/FRP system) and later Fran. It's easy to implement correctly. A few different approaches are described in the paper Functional Implementations of Continuous Modeled Animation. Implementing continuous time efficiently (and still correctly!) is another matter, especially avoidance of recomputing unchanging values. (See the paper Push-pull functional reactive programming.)

For related remarks, please see my answer to The difference between Reactive and Functional-Reactive programming and to What is (functional) reactive programming? Update: For more on why continuous time matters, see these notes. Update: See also, my 2015 talk The essence and origins of FRP (and the related talks linked there).

Good luck with your exploration, and please let me know if you have any questions. My contact info is on my home page.

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    What's interesting to me is that the notion of a continuous function is all about finite limitations. The definition of continuity for a function is: for any finite amount of information you want out, there exists a finite amount of information you have to put in. So if you are working with continuous time, all you need is continuous functions to go with it and it is perfectly natural. – luqui May 4 '11 at 12:18
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    @Conal Are RxJS or Bacon.js FRP? If not, why? How are they different than what you describe above? Should they be called something else instead? – Bradford May 19 '14 at 23:38
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    @Bradford Got it. As far as I can tell, Rx and Bacon.js lack both of the two fundamental properties on which I based the original FRP. In that sense, they're not what FRP set out to be. Which is fine with me, as I love to see a multitude of abstractions explored. Using a single term to describe them all, however, creates more confusion about what each means and how they differ. I think an accurate description of Rx and Bacon.js is "compositional event systems inspired by FRP". – Conal May 20 '14 at 22:06
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    These systems are discrete, being based on streams, i.e., possibly-infinite sequences of sample separated by temporal gaps. Continuous systems, in contrast, define values for all times, without any temporal gaps. In other words discrete systems have finite resolution, while continuous systems have infinite resolution. – Conal May 20 '14 at 23:42
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    @CMCDragonkai And I share your perspective that temporal discreteness in digital computers is just an abstraction, not the nature of the machine. And we can easily and correctly implement continuous time abstractions atop the digital abstraction, as well as infinite atop finite. After all, continuous & uncountable mathematics is expressed atop finite alphabets, inference systems, and inferences. – Conal Oct 3 '14 at 1:06

I assume you've probably seen Matthias Felleisen’s talk on Functional I/O and read his paper. I think his is a very pragmatic and beautiful approach. Hopefully you've also stumbled onto some of Conal Elliott's excellent work.

My personal requirements would be that the system is completely pure. That is, all behavior is defined by pure world->world functions and all realization or visualization is defined by world->visual functions; where visual is some static description of the output from the system.

My other primary feature would be a historical debugger. It should be relatively trivial to maintain a history of world states and be able to replay from any point in time.

One area of extremely interesting research (I believe an unsolved problem) would be to use continuous time rather than iterating the world->world functions upon some discrete clock ticks. I once did a few blog posts on FRP and Conal Elliott left the following thought provoking comment:

I like denotative/functional approaches, for composability & semantic clarity. For the same reasons, I prefer continuous time & space over discrete time & space. In all of these cases, the less machine-like formulation nicely separates the what from the how of its machine-based presentation.

Solve that and you'll be a hero!

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    I have two main problems with the world -> world model. First, unless I'm confused, that model supports only sequential composition, and is unfriendly to parallel composition. Imagine how you might combine two world->world values in parallel. Second, I haven't been able to see how it could possibly support continuous time. Both of these problems thwart composability, which is a key goal for me in library design. – Conal May 4 '11 at 4:31

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