I've read this article, but didn't understand last section.

The author says that Monad gives us context sensitivity, but it's possible to achieve the same result using only an Applicative instance:

let maybeAge = (\futureYear birthYear -> if futureYear < birthYear
    then yearDiff birthYear futureYear
    else yearDiff futureYear birthYear) <$> (readMay futureYearString) <*> (readMay birthYearString)

It's uglier for sure without do-syntax, but beside that I don't see why we need Monad. Can anyone clear this up for me?

  • 2
    Monads do indeed give us context sensitivity, but the article doesn't actually use it - it always performs two parses but then (potentially) swaps them depending on their values. A example showing context sensitivity might decide not to parse the second value depending on the value of the first. – stephen tetley Jul 1 '13 at 16:38
  • 1
    In such case wouldn't second value not be parsed due to laziness? – arrowd Jul 1 '13 at 16:41
  • 1
    good question, my assumption would be that laziness doesn't matter and both actions are performed (justification - see iffy in original Applicative paper soi.city.ac.uk/~ross/papers/Applicative.pdf), but I could be wrong. – stephen tetley Jul 1 '13 at 17:04

Here's a couple of functions that use the Monad interface.

ifM :: Monad m => m Bool -> m a -> m a -> m a
ifM c x y = c >>= \z -> if z then x else y

whileM :: Monad m => (a -> m Bool) -> (a -> m a) -> a -> m a
whileM p step x = ifM (p x) (step x >>= whileM p step) (return x)

You can't implement them with the Applicative interface. But for the sake of enlightenment, let's try and see where things go wrong. How about..

import Control.Applicative

ifA :: Applicative f => f Bool -> f a -> f a -> f a
ifA c x y = (\c' x' y' -> if c' then x' else y') <$> c <*> x <*> y

Looks good! It has the right type, it must be the same thing! Let's just check to make sure..

*Main> ifM (Just True) (Just 1) (Just 2)
Just 1
*Main> ifM (Just True) (Just 1) (Nothing)
Just 1
*Main> ifA (Just True) (Just 1) (Just 2)
Just 1
*Main> ifA (Just True) (Just 1) (Nothing)

And there's your first hint at the difference. You can't write a function using just the Applicative interface that replicates ifM.

If you divide this up into thinking about values of the form f a as being about "effects" and "results" (both of which are very fuzzy approximate terms that are the best terms available, but not very good), you can improve your understanding here. In the case of values of type Maybe a, the "effect" is success or failure, as a computation. The "result" is a value of type a that might be present when the computation completes. (The meanings of these terms depends heavily on the concrete type, so don't think this is a valid description of anything other than Maybe as a type.)

Given that setting, we can look at the difference in a bit more depth. The Applicative interface allows the "result" control flow to be dynamic, but it requires the "effect" control flow to be static. If your expression involves 3 computations that can fail, the failure of any one of them causes the failure of the whole computation. The Monad interface is more flexible. It allows the "effect" control flow to depend on the "result" values. ifM chooses which argument's "effects" to include in its own "effects" based on its first argument. This is the huge fundamental difference between ifA and ifM.

There's something even more serious going on with whileM. Let's try to make whileA and see what happens.

whileA :: Applicative f => (a -> f Bool) -> (a -> f a) -> a -> f a
whileA p step x = ifA (p x) (whileA p step <*> step x) (pure x)

Well.. What happens is a compile error. (<*>) doesn't have the right type there. whileA p step has the type a -> f a and step x has the type f a. (<*>) isn't the right shape to fit them together. For it to work, the function type would need to be f (a -> a).

You can try lots more things - but you'll eventually find that whileA has no implementation that works anything even close to the way whileM does. I mean, you can implement the type, but there's just no way to make it both loop and terminate.

Making it work requires either join or (>>=). (Well, or one of the many equivalents of one of those) And those the extra things you get out of the Monad interface.

  • 1
    Distinction between "results" and "effects" was the key. Thanks a lot for such lengthy post. – arrowd Jul 2 '13 at 10:56
  • 1
    Indeed. Great explanation: The Applicative interface allows the "result" control flow to be dynamic, but it requires the "effect" control flow to be static. This is one of the great sentences on SO. – AndrewC Jun 15 '14 at 21:25
  • I have read that between Monads and Applicatives there is one that is super set of (or more powerful than) the other but I have always been confused. This post made things very clear. Thanks. – Patrick Francis Omogbeme Sep 11 at 8:37

With monads, subsequent effects can depend on previous values. For example, you can have:

main = do
    b <- readLn :: IO Bool
    if b
      then fireMissiles
      else return ()

You can't do that with Applicatives - the result value of one effectfull computation can't determine what effect will follow.

Somewhat related:

  • Uhm. I can do (\b -> if b then fire else ()) <$> readLn, no? – arrowd Jul 1 '13 at 16:49
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    @arrowdodger No, if fireMissilies is of type IO () then you can't.. You can use <$> only with pure functions, not with effectful ones. – Petr Pudlák Jul 1 '13 at 16:51
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    @arrowdodger To add to what Petr said: if you do use (\b -> if b then fireMissiles else return ()) <$> readLn, you'll get something of type IO (IO ())—and to get back to an IO (), you need join :: Monad m => m (m a) -> m a. – Antal Spector-Zabusky Jul 1 '13 at 19:12

As Stephen Tetley said in a comment, that example doesn't actually use context-sensitivity. One way to think about context-sensitivity is that it lets use choose which actions to take depending on monadic values. Applicative computations must always have the same "shape", in a certain sense, regardless of the values involved; monadic computations need not. I personally think this is easier to understand with a concrete example, so let's look at one. Here's two versions of a simple program which ask you to enter a password, check that you entered the right one, and print out a response depending on whether or not you did.

import Control.Applicative

checkPasswordM :: IO ()
checkPasswordM = do putStrLn "What's the password?"
                    pass <- getLine
                    if pass == "swordfish"
                      then putStrLn "Correct.  The secret answer is 42."
                      else putStrLn "INTRUDER ALERT!  INTRUDER ALERT!"

checkPasswordA :: IO ()
checkPasswordA =   if' . (== "swordfish")
               <$> (putStrLn "What's the password?" *> getLine)
               <*> putStrLn "Correct.  The secret answer is 42."
               <*> putStrLn "INTRUDER ALERT!  INTRUDER ALERT!"

if' :: Bool -> a -> a -> a
if' True  t _ = t
if' False _ f = f

Let's load this into GHCi and check what happens with the monadic version:

*Main> checkPasswordM
What's the password?
Correct.  The secret answer is 42.
*Main> checkPasswordM
What's the password?

So far, so good. But if we use the applicative version:

*Main> checkPasswordA
What's the password?
Correct.  The secret answer is 42.

We entered the wrong password, but we still got the secret! And an intruder alert! This is because <$> and <*>, or equivalently liftAn/liftMn, always execute the effects of all their arguments. The applicative version translates, in do notation, to

do pass  <- putStrLn "What's the password?" *> getLine)
   unit1 <- putStrLn "Correct.  The secret answer is 42."
   pure $ if' (pass == "swordfish") unit1 unit2

And it should be clear why this has the wrong behavior. In fact, every use of applicative functors is equivalent to monadic code of the form

do val1 <- app1
   val2 <- app2
   valN <- appN
   pure $ f val1 val2 ... valN

(where some of the appI are allowed to be of the form pure xI). And equivalently, any monadic code in that form can be rewritten as

f <$> app1 <*> app2 <*> ... <*> appN

or equivalently as

liftAN f app1 app2 ... appN

To think about this, consider Applicative's methods:

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

And then consider what Monad adds:

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

(Remember that you only need one of those.)

Handwaving a lot, if you think about it, the only way we can put together the applicative functions is to construct chains of the form f <$> app1 <*> ... <*> appN, and possibly nest those chains (e.g., f <$> (g <$> x <*> y) <*> z). However, (=<<) (or (>>=)) allows us to take a value and produce different monadic computations depending on that value, that could be constructed on the fly. This is what we use to decide whether to compute "print out the secret", or compute "print out an intruder alert", and why we can't make that decision with applicative functors alone; none of the types for applicative functions allow you to consume a plain value.

You can think about join in concert with fmap in a similar way: as I mentioned in a comment, you can do something like

checkPasswordFn :: String -> IO ()
checkPasswordFn pass = if pass == "swordfish"
                         then putStrLn "Correct.  The secret answer is 42."
                         else putStrLn "INTRUDER ALERT!  INTRUDER ALERT!"

checkPasswordA' :: IO (IO ())
checkPasswordA' = checkPasswordFn <$> (putStrLn "What's the password?" *> getLine)

This is what happens when we want to pick a different computation depending on the value, but only have applicative functionality available us. We can pick two different computations to return, but they're wrapped inside the outer layer of the applicative functor. To actually use the computation we've picked, we need join:

checkPasswordM' :: IO ()
checkPasswordM' = join checkPasswordA'

And this does the same thing as the previous monadic version (as long as we import Control.Monad first, to get join):

*Main> checkPasswordM'
What's the password?
  • 1
    What a pity that i can't accept more than one answer! – arrowd Jul 2 '13 at 10:56

On the other hand, here's a a practical example of the Applicative/Monad divide where Applicatives have an advantage: error handling! We clearly have a Monad implementation of Either that carries along errors, but it always terminates early.

Left e1 >> Left e2    ===   Left e1

You can think of this as an effect of intermingling values and contexts. Since (>>=) will try to pass the result of the Either e a value to a function like a -> Either e b, it must fail immediately if the input Either is Left.

Applicatives only pass their values to the final pure computation after running all of the effects. This means they can delay accessing the values for longer and we can write this.

data AllErrors e a = Error e | Pure a deriving (Functor)

instance Monoid e => Applicative (AllErrors e) where
  pure = Pure
  (Pure f) <*> (Pure x) = Pure (f x)
  (Error e) <*> (Pure _) = Error e
  (Pure _) <*> (Error e) = Error e
  -- This is the non-Monadic case
  (Error e1) <*> (Error e2) = Error (e1 <> e2)

It's impossible to write a Monad instance for AllErrors such that ap matches (<*>) because (<*>) takes advantage of running both the first and second contexts before using any values in order to get both errors and (<>) them together. Monadic (>>=) and (join) can only access contexts interwoven with their values. That's why Either's Applicative instance is left-biased, so that it can also have a harmonious Monad instance.

> Left "a" <*> Left "b"
Left 'a'

> Error "a" <*> Error "b"
Error "ab"
  • Hey, thanks for this. It's not especially an answer to the question asked, but it is the answer to a question someone was asking in IRC last night about an Either applicative that can gather all errors. I wish I'd read this answer before then. But even if I can't answer that question, I learned something new. – Carl Jul 2 '13 at 16:16
  • I felt like posting it, despite being a little off-topic, because to me it's one of the clearest, simplest examples of the value/context timing distinctions between Monad and Applicative. It's my go-to mental model for whether or not I'm building a Monadic or Applicative interface. – J. Abrahamson Jul 2 '13 at 20:46
  • Also I love it because it's a great example of when parsers are able to collect multiple errors—if they're context sensitive they need a Monad and then the effects must be sequenced. Really it's two ways of saying the same thing. – J. Abrahamson Jul 2 '13 at 20:48

With Applicative, the sequence of effectful actions to be performed is fixed at compile-time. With Monad, it can be varied at run-time based on the results of effects.

For example, with an Applicative parser, the sequence of parsing actions is fixed for all time. That means that you can potentially perform "optimisations" on it. On the other hand, I can write a Monadic parser which parses some a BNF grammar description, dynamically constructs a parser for that grammar, and then runs that parser over the rest of the input. Every time you run this parser, it potentially constructs a brand new parser to parse the second portion of the input. Applicative has no hope of doing such a thing - and there is no chance of performing compile-time optimisations on a parser that doesn't exist yet...

As you can see, sometimes the "limitation" of Applicative is actually beneficial - and sometimes the extra power offered by Monad is required to get the job done. This is why we have both.

  • 2
    This answer and tel's offer a very valuable flip side to the Monad vs. Applicative question: Monads can express flow control that Applicatives cannot, but on the flipside, Applicative can support powerful static analysis that is generally impossible for Monad. Capriotti & Kaposi's recent paper is my favorite on this topic, though I'll also mention my operational Applicative library; there's a parser optimization example on the README in the page. – Luis Casillas Jul 2 '13 at 20:40

If you try to convert the type signature of Monad's bind and Applicative <*> to natural language, you will find that:

bind : I will give you the contained value and you will return me a new packaged value

<*>: You give me a packaged function that accepts a contained value and return a value and I will use it to create new packaged value based on my rules.

Now as you can see from the above description, bind gives you more control as compared to <*>


If you work with Applicatives, the "shape" of the result is already determined by the "shape" of the input, e.g. if you call [f,g,h] <*> [a,b,c,d,e], your result will be a list of 15 elements, regardless which values the variables have. You don't have this guarantee/limitation with monads. Consider [x,y,z] >>= join replicate: For [0,0,0] you'll get the result [], for [1,2,3] the result [1,2,2,3,3,3].


Now that ApplicativeDo extension become pretty common thing, the difference between Monad and Applicative can be illustrated using simple code snippet.

With Monad you can do

   r1 <- act1
   if r1
        then act2
        else act3

but having only Applicative do-block, you can't use if on things you've pulled out with <-.

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