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I have become rather interested in how computation is modeled in Haskell. Several resources have described monads as "composable computation" and arrows as "abstract views of computation". I've never seen monoids, functors or applicative functors described in this way. It seems that they lack the necessary structure.

I find that idea interesting and wonder if there are any other constructs that do something similar. If so, what are some resources that I can use to acquaint myself with them? Are there any packages on Hackage that might come in handy?

Note: This question is similar to Monads vs. Arrows and Resources for learning Monads, Functors, Monoids, Arrows etc, but I am looking for constructs beyond funtors, applicative functors, monads, and arrows.

Edit: I concede that applicative functors should be considered "computational constructs", but I'm really looking for something I haven't come across yet. This includes applicative functors, monads and arrows.

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The Monad vs. Arrows page links to a paper that also compares applicative functors (aka idioms). –  Sjoerd Visscher Mar 9 '12 at 15:49
    
Applicative functors most certainly are good at composable computation! In fact, they compose better than monads (the composition of two applicative functors is an applicative functor, which doesn't hold for monads). –  ehird Mar 9 '12 at 17:49
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3 Answers

up vote 19 down vote accepted

Arrows are generalized by Categories, and so by the Category typeclass.

 class Category f where
     (.) :: f a b -> f b c -> f a c
     id :: f a a

The Arrow typeclass definition has Category as a superclass. Categories (in the haskell sense) generalize functions (you can compose them but not apply them) and so are definitely a "model of computation". Arrow provides a Category with additional structure for working with tuples. So, while Category mirrors something about Haskell's function space, Arrow extends that to something about product types.

Every Monad gives rise to something called a "Kleisli Category" and this construction gives you instances of ArrowApply. You can build a Monad out of any ArrowApply such that going full circle doesn't change your behavior, so in some deep sense Monad and ArrowApply are the same thing.

 newtype Kleisli m a b = Kleisli { runKleisli :: a -> m b }

 instance Monad m => Category (Kleisli m) where
     id = Kleisli return
     (Kleisli f) . (Kleisli g) = Kleisli (\b -> g b >>= f)

 instance Monad m => Arrow (Kleisli m) where
     arr f = Kleisli (return . f)
     first (Kleisli f) = Kleisli (\ ~(b,d) -> f b >>= \c -> return (c,d))
     second (Kleisli f) = Kleisli (\ ~(d,b) -> f b >>= \c -> return (d,c))

Actually every Arrow gives rise to an Applicative (universally quantified to get the kinds right) in addition to the Category superclass, and I believe the combination of the appropriate Category and Applicative is enough to reconstruct your Arrow.

So, these structures are deeply connected.

Warning: wishy-washy commentary ahead. One central difference between the Functor/Applicative/Monad way of thinking and the Category/Arrow way of thinking is that while Functor and its ilk are generalizations at the level of object (types in Haskell), Category/Arrow are generelazation of the notion of morphism (functions in Haskell). My belief is that thinking at the level of generalized morphism involves a higher level of abstraction than thinking at the level of generalized objects. Sometimes that is a good thing, other times it is not. On the other-hand, despite the fact that Arrows have a categorical basis, and no one in math thinks Applicative is interesting, it is my understanding that Applicative is generally better understood than Arrow.

Basically you can think of "Category < Arrow < ArrowApply" and "Functor < Applicative < Monad" such that "Category ~ Functor", "Arrow ~ Applicative" and "ArrowApply ~ Monad".

More Concrete Below: As for other structures to model computation: one can often reverse the direction of the "arrows" (just meaning morphisms here) in categorical constructions to get the "dual" or "co-construction". So, if a monad is defined as

class Functor m => Monad m where
   return :: a -> m a
   join :: m (m a) -> m a

(okay, I know that isn't how Haskell defines things, but ma >>= f = join $ fmap f ma and join x = x >>= id so it just as well could be) then the comonad is

class Functor m => Comonad m where
   extract :: m a -> a -- this is co-return
   duplicate :: m a -> m (m a) -- this is co-join

This thing turns out to be pretty common also. It turns out that Comonad is the basic underlying structure of cellular automata. For completness, I should point out that Edward Kmett's Control.Comonad puts duplicate in a class between functor and Comonad for "Extendable Functors" because you can also define

   extend :: (m a -> b) -> m a -> m b -- Looks familiar? this is just the dual of >>=
   extend f = fmap f . duplicate
   --this is enough
   duplicate = extend id

It turns out that all Monads are also "Extendable"

   monadDuplicate :: Monad m => m a -> m (m a)
   monadDuplicate = return

while all Comonads are "Joinable"

   comonadJoin :: Comonad m => m (m a) -> m a
   comonadJoin = extract

so these structures are very close together.

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Great, categories and comonads are my next two topics. Thanks. –  Doug Moore Mar 11 '12 at 0:05
    
Ah I love you cellular automata example. Edward Kmett has a really cool post about making every comonad into a monad in Haskell, but not the other way around. link. It is very high level stuff, but if you take the time it will make you understand the connection between the two. –  Edgar Klerks Mar 11 '12 at 12:07
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@EdgarKlerks one of the consequences of that post I think is most interesting is that the Store comonad might be rather fundamental: since Lenses are just the "co-algebra of the store comonad" (aka Lens a b = a -> Store b a) and State is what you get by taking the end of the store comonad. Between lenses and state you have something a lot like imperative programming. I still feel aways from understanding the significance of this though. –  Philip JF Mar 11 '12 at 22:13
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All Monads are Arrows (Monad is isomorphic to ArrowApply). In a different way, all Monads are instances of Applicative, where <*> is Control.Monad.ap and *> is >>. Applicative is weaker because it does not guarantee the >>= operation. Thus Applicative captures computations that do not examine previous results and branch on values. In retrospect much monadic code is actually applicative, and with a clean rewrite this would happen.

Extending monads, with recent Constraint kinds in GHC 7.4.1 there can now be nicer designs for restricted monads. And there are also people looking at parameterized monads, and of course I include a link to something by Oleg.

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Yes, monads are (roughly) a specialization of arrows and a generalization of applicatives. Are there any generalizations of monads that aren't arrows? Maybe something that generalizes the arrow? –  Doug Moore Mar 9 '12 at 18:24
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In libraries these structures give rise to different type of computations.

For example Applicatives can be used to implement static effects. With that I mean effects, which are defined at forehand. For example when implementing a state machine, rejecting or accepting an input state. They can't be used to manipulate their internal structure in terms of their input.

The type says it all:

 <*> :: f (a -> b) -> f a -> f b

It is easy to reason, the structure of f cannot be depend om the input of a. Because a cannot reach f on the type level.

Monads can be used for dynamic effects. This also can be reasoned from the type signature:

 >>= :: m a -> (a -> m b) -> m b

How can you see this? Because a is on the same "level" as m. Mathematically it is a two stage process. Bind is a composition of two function: fmap and join. First we use fmap together with the monadic action to create a new structure embedded in the old one:

fmap :: (a -> b) -> m a -> m b
f :: (a -> m b)
m :: m a
fmap f :: m a -> m (m b)
fmap f m :: m (m b)

Fmap can create a new structure, based on the input value. Then we collapse the structure with join, thus we are able to manipulate the structure from within the monadic computation in a way that depends on the input:

join :: m (m a) -> m a
join (fmap f m) :: m b

Many monads are easier to implement with join:

(>>=) = join . fmap 

This is possible with monads:

addCounter :: Int -> m Int () 

But not with applicatives, but applicatives (and any monad) can do things like:

addOne :: m Int ()

Arrows give more control over the input and the output types, but for me they really feel similar to applicatives. Maybe I am wrong about that.

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