# selective: Selective applicative functors

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Selective applicative functors: declare your effects statically, select which to execute dynamically.

This is a library for selective applicative functors, or just selective functors for short, an abstraction between applicative functors and monads, introduced in this paper.

Versions [faq] 0.1.0, 0.2, 0.3 CHANGES.md base (>=4.7 && <5), containers (>=0.5.5.1 && <0.7), transformers (>=0.4.2.0 && <0.6) [details] MIT Andrey Mokhov, 2018-2019 Andrey Mokhov , github: @snowleopard Andrey Mokhov , github: @snowleopard Control https://github.com/snowleopard/selective head: git clone https://github.com/snowleopard/selective.git by snowleopard at Mon Jul 8 23:09:00 UTC 2019 Arch:0.3, NixOS:0.3, Stackage:0.2 562 total (81 in the last 30 days) 2.25 (votes: 2) [estimated by Bayesian average] λ λ λ Docs available Last success reported on 2019-07-08

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# Selective applicative functors

This is a library for selective applicative functors, or just selective functors for short, an abstraction between applicative functors and monads, introduced in this paper.

Abstract of the paper:

Applicative functors and monads have conquered the world of functional programming by providing general and powerful ways of describing effectful computations using pure functions. Applicative functors provide a way to compose independent effects that cannot depend on values produced by earlier computations, and all of which are declared statically. Monads extend the applicative interface by making it possible to compose dependent effects, where the value computed by one effect determines all subsequent effects, dynamically.

This paper introduces an intermediate abstraction called selective applicative functors that requires all effects to be declared statically, but provides a way to select which of the effects to execute dynamically. We demonstrate applications of the new abstraction on several examples, including two real-life case studies.

## What are selective functors?

While you're encouraged to read the paper, here is a brief description of the main idea. Consider the following new type class introduced between Applicative and Monad:

class Applicative f => Selective f where
select :: f (Either a b) -> f (a -> b) -> f b

-- | An operator alias for 'select'.
(<*?) :: Selective f => f (Either a b) -> f (a -> b) -> f b
(<*?) = select

infixl 4 <*?


Think of select as a selective function application: you must apply the function of type a -> b when given a value of type Left a, but you may skip the function and associated effects, and simply return b when given Right b.

Note that you can write a function with this type signature using Applicative functors, but it will always execute the effects associated with the second argument, hence being potentially less efficient:

selectA :: Applicative f => f (Either a b) -> f (a -> b) -> f b
selectA x f = (\e f -> either f id e) <$> x <*> f  Any Applicative instance can thus be given a corresponding Selective instance simply by defining select = selectA. The opposite is also true in the sense that one can recover the operator <*> from select as follows (I'll use the suffix S to denote Selective equivalents of commonly known functions). apS :: Selective f => f (a -> b) -> f a -> f b apS f x = select (Left <$> f) ((&) <$> x)  Here we wrap a given function a -> b into Left and turn the value a into a function ($a), which simply feeds itself to the function a -> b yielding b as desired. Note: apS is a perfectly legal application operator <*>, i.e. it satisfies the laws dictated by the Applicative type class as long as the laws of the Selective type class hold.

The branch function is a natural generalisation of select: instead of skipping an unnecessary effect, it chooses which of the two given effectful functions to apply to a given argument; the other effect is unnecessary. It is possible to implement branch in terms of select, which is a good puzzle (give it a try!).

branch :: Selective f => f (Either a b) -> f (a -> c) -> f (b -> c) -> f c
branch = ... -- Try to figure out the implementation!


Finally, any Monad is Selective:

selectM :: Monad f => f (Either a b) -> f (a -> b) -> f b
selectM mx mf = do
x <- mx
case x of
Left  a -> fmap ($a) mf Right b -> pure b  Selective functors are sufficient for implementing many conditional constructs, which traditionally require the (more powerful) Monad type class. For example: -- | Branch on a Boolean value, skipping unnecessary effects. ifS :: Selective f => f Bool -> f a -> f a -> f a ifS i t e = branch (bool (Right ()) (Left ()) <$> i) (const <$> t) (const <$> e)

-- | Conditionally perform an effect.
whenS :: Selective f => f Bool -> f () -> f ()
whenS x act = ifS x act (pure ())

-- | Keep checking an effectful condition while it holds.
whileS :: Selective f => f Bool -> f ()
whileS act = whenS act (whileS act)

-- | A lifted version of lazy Boolean OR.
(<||>) :: Selective f => f Bool -> f Bool -> f Bool
(<||>) a b = ifS a (pure True) b

-- | A lifted version of 'any'. Retains the short-circuiting behaviour.
anyS :: Selective f => (a -> f Bool) -> [a] -> f Bool
anyS p = foldr ((<||>) . p) (pure False)

-- | Return the first @Right@ value. If both are @Left@'s, accumulate errors.
orElse :: (Selective f, Semigroup e) => f (Either e a) -> f (Either e a) -> f (Either e a)
orElse x = select (Right <$> x) . fmap (\y e -> first (e <>) y)  See more examples in src/Control/Selective.hs. Code written using selective combinators can be both statically analysed (by reporting all possible effects of a computation) and efficiently executed (by skipping unnecessary effects). ## Laws Instances of the Selective type class must satisfy a few laws to make it possible to refactor selective computations. These laws also allow us to establish a formal relation with the Applicative and Monad type classes. • Identity: x <*? pure id = either id id <$> x

• Distributivity (note that y and z have the same type f (a -> b)):

pure x <*? (y *> z) = (pure x <*? y) *> (pure x <*? z)

• Associativity:

x <*? (y <*? z) = (f <$> x) <*? (g <$> y) <*? (h <$> z) where f x = Right <$> x
g y = \a -> bimap (,a) ($a) y h z = uncurry z  • Monadic select (for selective functors that are also monads): select = selectM  There are also a few useful theorems: • Apply a pure function to the result: f <$> select x y = select (fmap f <$> x) (fmap f <$> y)

• Apply a pure function to the Left case of the first argument:

select (first f <$> x) y = select x ((. f) <$> y)

• Apply a pure function to the second argument:

select x (f <$> y) = select (first (flip f) <$> x) ((&) <$> y)  • Generalised identity: x <*? pure y = either y id <$> x

• A selective functor is rigid if it satisfies <*> = apS. The following interchange law holds for rigid selective functors:

x *> (y <*? z) = (x *> y) <*? z


Note that there are no laws for selective application of a function to a pure Left or Right value, i.e. we do not require that the following laws hold:

select (pure (Left  x)) y = ($x) <$> y -- Pure-Left
select (pure (Right x)) y = pure x     -- Pure-Right


In particular, the following is allowed too:

select (pure (Left  x)) y = pure ()       -- when y :: f (a -> ())
select (pure (Right x)) y = const x <$> y  We therefore allow select to be selective about effects in these cases, which in practice allows to under- or over-approximate possible effects in static analysis using instances like Under and Over. If f is also a Monad, we require that select = selectM, from which one can prove apS = <*>, and furthermore the above Pure-Left and Pure-Right properties now hold. ## Static analysis of selective functors Like applicative functors, selective functors can be analysed statically. We can make the Const functor an instance of Selective as follows. instance Monoid m => Selective (Const m) where select = selectA  Although we don't need the function Const m (a -> b) (note that Const m (Either a b) holds no values of type a), we choose to accumulate the effects associated with it. This allows us to extract the static structure of any selective computation very similarly to how this is done with applicative computations. The Validation instance is perhaps a bit more interesting. data Validation e a = Failure e | Success a deriving (Functor, Show) instance Semigroup e => Applicative (Validation e) where pure = Success Failure e1 <*> Failure e2 = Failure (e1 <> e2) Failure e1 <*> Success _ = Failure e1 Success _ <*> Failure e2 = Failure e2 Success f <*> Success a = Success (f a) instance Semigroup e => Selective (Validation e) where select (Success (Right b)) _ = Success b select (Success (Left a)) f = Success ($a) <*> f
select (Failure e        ) _ = Failure e


Here, the last line is particularly interesting: unlike the Const instance, we choose to actually skip the function effect in case of Failure. This allows us not to report any validation errors which are hidden behind a failed conditional.

Let's clarify this with an example. Here we define a function to construct a Shape (a circle or a rectangle) given a choice of the shape s and the shape's parameters (r, w, h) in a selective context f.

type Radius = Int
type Width  = Int
type Height = Int

data Shape = Circle Radius | Rectangle Width Height deriving Show

shape :: Selective f => f Bool -> f Radius -> f Width -> f Height -> f Shape
shape s r w h = ifS s (Circle <$> r) (Rectangle <$> w <*> h)


We choose f = Validation [String] to report the errors that occurred when parsing a value. Let's see how it works.

> shape (Success True) (Success 10) (Failure ["no width"]) (Failure ["no height"])
Success (Circle 10)

> shape (Success False) (Failure ["no radius"]) (Success 20) (Success 30)
Success (Rectangle 20 30)

> shape (Success False) (Failure ["no radius"]) (Success 20) (Failure ["no height"])
Failure ["no height"]

> shape (Success False) (Failure ["no radius"]) (Failure ["no width"]) (Failure ["no height"])
Failure ["no width","no height"]

> shape (Failure ["no choice"]) (Failure ["no radius"]) (Success 20) (Failure ["no height"])
Failure ["no choice"]


In the last example, since we failed to parse which shape has been chosen, we do not report any subsequent errors. But it doesn't mean we are short-circuiting the validation. We will continue accumulating errors as soon as we get out of the opaque conditional, as demonstrated below.

twoShapes :: Selective f => f Shape -> f Shape -> f (Shape, Shape)
twoShapes s1 s2 = (,) <\$> s1 <*> s2

> s1 = shape (Failure ["no choice 1"]) (Failure ["no radius 1"]) (Success 20) (Failure ["no height 1"])
> s2 = shape (Success False) (Failure ["no radius 2"]) (Success 20) (Failure ["no height 2"])
> twoShapes s1 s2
Failure ["no choice 1","no height 2"]


## Do we still need monads?

Yes! Here is what selective functors cannot do: join :: Selective f => f (f a) -> f a.