In my humble opinion the answers to the famous question "What is a monad?", especially the most voted ones, try to explain what is a monad without clearly explaining why monads are really necessary. Can they be explained as the solution to a problem?

7cs.coloradocollege.edu/~bylvisaker/MonadMotivation – antoyo Jan 25 '15 at 18:05

2blog.sigfpe.com/2006/08/youcouldhaveinventedmonadsand.html – user3237465 Jan 26 '15 at 0:29

4What research have you already done? Where have you looked? What resources have you found? We expect you to do a significant amount of research before asking, and show us in the question what research you've done. There are many resources that try to explain the motivation for resources  if you haven't found any at all, you might need to do a little more research. If you've found some but they didn't help you, it would make this a better question if you explained what you'd found and why specifically they didn't work for you. – D.W. Jan 26 '15 at 22:42

8This is definitely a better fit for Programmers.StackExchange and not a good fit for StackOverflow. I'd vote to migrate if I could, but I can't. =( – jpmc26 Jan 26 '15 at 22:42

3@jpmc26 Most likely it would get closed there as "primarily opinionbased"; here it at least stands a chance (as shown by the huge number of upvotes, rapid reopen yesterday, and no more close votes yet) – Izkata Jan 28 '15 at 14:31
Why do we need monads?
 We want to program only using functions. ("functional programming (FP)" after all).
Then, we have a first big problem. This is a program:
f(x) = 2 * x
g(x,y) = x / y
How can we say what is to be executed first? How can we form an ordered sequence of functions (i.e. a program) using no more than functions?
Solution: compose functions. If you want first
g
and thenf
, just writef(g(x,y))
. This way, "the program" is a function as well:main = f(g(x,y))
. OK, but ...More problems: some functions might fail (i.e.
g(2,0)
, divide by 0). We have no "exceptions" in FP (an exception is not a function). How do we solve it?Solution: Let's allow functions to return two kind of things: instead of having
g : Real,Real > Real
(function from two reals into a real), let's allowg : Real,Real > Real  Nothing
(function from two reals into (real or nothing)).But functions should (to be simpler) return only one thing.
Solution: let's create a new type of data to be returned, a "boxing type" that encloses maybe a real or be simply nothing. Hence, we can have
g : Real,Real > Maybe Real
. OK, but ...What happens now to
f(g(x,y))
?f
is not ready to consume aMaybe Real
. And, we don't want to change every function we could connect withg
to consume aMaybe Real
.Solution: let's have a special function to "connect"/"compose"/"link" functions. That way, we can, behind the scenes, adapt the output of one function to feed the following one.
In our case:
g >>= f
(connect/composeg
tof
). We want>>=
to getg
's output, inspect it and, in case it isNothing
just don't callf
and returnNothing
; or on the contrary, extract the boxedReal
and feedf
with it. (This algorithm is just the implementation of>>=
for theMaybe
type). Also note that>>=
must be written only once per "boxing type" (different box, different adapting algorithm).Many other problems arise which can be solved using this same pattern: 1. Use a "box" to codify/store different meanings/values, and have functions like
g
that return those "boxed values". 2. Have a composer/linkerg >>= f
to help connectingg
's output tof
's input, so we don't have to change anyf
at all.Remarkable problems that can be solved using this technique are:
having a global state that every function in the sequence of functions ("the program") can share: solution
StateMonad
.We don't like "impure functions": functions that yield different output for same input. Therefore, let's mark those functions, making them to return a tagged/boxed value:
IO
monad.
Total happiness!

64

15@Carl I think that it is clear in the answer that there are many many problems that benefit from this pattern (point 6) and that
IO
monad is just one more problem in the listIO
(point 7). On the other handIO
only appears once and at the end, so, don't understand your "most of its time talking ... about IO". – cibercitizen1 Jan 25 '15 at 18:02 
4The great misconceptions about monads: monads about state; monads about exception handling; there is no way to implement IO in pure FPL without monads;monads are unambiguous (contrargument is
Either
). The most of answer is about "Why do we need functors?". – vlastachu Jan 27 '15 at 11:52 
4"6. 2. Have a composer/linker
g >>= f
to help connectingg
's output tof
's input, so we don't have to change anyf
at all." this is not right at all. Before, inf(g(x,y))
,f
could produce anything. It could bef:: Real > String
. With "monadic composition" it must be changed to produceMaybe String
, or else the types won't fit. Moreover,>>=
itself doesn't fit!! It's>=>
that does this composition, not>>=
. See the discussion with dfeuer under Carl's answer. – Will Ness Jan 29 '15 at 10:02 
3Your answer is right in the sense that monads IMO indeed are best described as being about the composition/ality of "functions" (Kleisli arrows really), but the precise details of what type goes where are what makes them "monads". you could wire the boxes in all kinds of manners (like Functor, etc.). This specific way of wiring them together is what defines "the monad". – Will Ness Jan 29 '15 at 10:09
The answer is, of course, "We don't". As with all abstractions, it isn't necessary.
Haskell does not need a monad abstraction. It isn't necessary for performing IO in a pure language. The IO
type takes care of that just fine by itself. The existing monadic desugaring of do
blocks could be replaced with desugaring to bindIO
, returnIO
, and failIO
as defined in the GHC.Base
module. (It's not a documented module on hackage, so I'll have to point at its source for documentation.) So no, there's no need for the monad abstraction.
So if it's not needed, why does it exist? Because it was found that many patterns of computation form monadic structures. Abstraction of a structure allows for writing code that works across all instances of that structure. To put it more concisely  code reuse.
In functional languages, the most powerful tool found for code reuse has been composition of functions. The good old (.) :: (b > c) > (a > b) > (a > c)
operator is exceedingly powerful. It makes it easy to write tiny functions and glue them together with minimal syntactic or semantic overhead.
But there are cases when the types don't work out quite right. What do you do when you have foo :: (b > Maybe c)
and bar :: (a > Maybe b)
? foo . bar
doesn't typecheck, because b
and Maybe b
aren't the same type.
But... it's almost right. You just want a bit of leeway. You want to be able to treat Maybe b
as if it were basically b
. It's a poor idea to just flatout treat them as the same type, though. That's more or less the same thing as null pointers, which Tony Hoare famously called the billiondollar mistake. So if you can't treat them as the same type, maybe you can find a way to extend the composition mechanism (.)
provides.
In that case, it's important to really examine the theory underlying (.)
. Fortunately, someone has already done this for us. It turns out that the combination of (.)
and id
form a mathematical construct known as a category. But there are other ways to form categories. A Kleisli category, for instance, allows the objects being composed to be augmented a bit. A Kleisli category for Maybe
would consist of (.) :: (b > Maybe c) > (a > Maybe b) > (a > Maybe c)
and id :: a > Maybe a
. That is, the objects in the category augment the (>)
with a Maybe
, so (a > b)
becomes (a > Maybe b)
.
And suddenly, we've extended the power of composition to things that the traditional (.)
operation doesn't work on. This is a source of new abstraction power. Kleisli categories work with more types than just Maybe
. They work with every type that can assemble a proper category, obeying the category laws.
 Left identity:
id . f
=f
 Right identity:
f . id
=f
 Associativity:
f . (g . h)
=(f . g) . h
As long as you can prove that your type obeys those three laws, you can turn it into a Kleisli category. And what's the big deal about that? Well, it turns out that monads are exactly the same thing as Kleisli categories. Monad
's return
is the same as Kleisli id
. Monad
's (>>=)
isn't identical to Kleisli (.)
, but it turns out to be very easy to write each in terms of the other. And the category laws are the same as the monad laws, when you translate them across the difference between (>>=)
and (.)
.
So why go through all this bother? Why have a Monad
abstraction in the language? As I alluded to above, it enables code reuse. It even enables code reuse along two different dimensions.
The first dimension of code reuse comes directly from the presence of the abstraction. You can write code that works across all instances of the abstraction. There's the entire monadloops package consisting of loops that work with any instance of Monad
.
The second dimension is indirect, but it follows from the existence of composition. When composition is easy, it's natural to write code in small, reusable chunks. This is the same way having the (.)
operator for functions encourages writing small, reusable functions.
So why does the abstraction exist? Because it's proven to be a tool that enables more composition in code, resulting in creating reusable code and encouraging the creation of more reusable code. Code reuse is one of the holy grails of programming. The monad abstraction exists because it moves us a little bit towards that holy grail.

2Can you explain the relationship between categories generally and Kleisli categories? The three laws you describe hold in any category. – dfeuer Jan 25 '15 at 20:58

1@dfeuer Oh. To put it in code,
newtype Kleisli m a b = Kleisli (a > m b)
. Kleisli categories are functions where the categorical return type (b
in this case) is the argument to a type constructorm
. IffKleisli m
forms a category,m
is a Monad. – Carl Jan 25 '15 at 23:43 
1What is a categorical return type exactly?
Kleisli m
seems to form a category whose objects are Haskell types and such that the arrows froma
tob
are the functions froma
tom b
, withid = return
and(.) = (<=<)
. Is that about right, or am I mixing up different levels of things or something? – dfeuer Jan 26 '15 at 2:32 
1@dfeuer That's correct. The objects are all types, and the morphisms are between types
a
andb
, but they're not simple functions. They're decorated with an extram
in the return value of the function. – Carl Jan 26 '15 at 4:34 
1Is the Category Theory terminology really needed? Maybe, Haskell would be easier if you turned the types into pictures where the type would be the DNA for how the pictures are drawn (dependent types though*), and then you use the picture to write your program with the names being small ruby characters above the icon. – aoeu256 Oct 19 '19 at 0:39
Benjamin Pierce said in TAPL
A type system can be regarded as calculating a kind of static approximation to the runtime behaviours of the terms in a program.
That's why a language equipped with a powerful type system is strictly more expressive, than a poorly typed language. You can think about monads in the same way.
As @Carl and sigfpe point, you can equip a datatype with all operations you want without resorting to monads, typeclasses or whatever other abstract stuff. However monads allow you not only to write reusable code, but also to abstract away all redundant detailes.
As an example, let's say we want to filter a list. The simplest way is to use the filter
function: filter (> 3) [1..10]
, which equals [4,5,6,7,8,9,10]
.
A slightly more complicated version of filter
, that also passes an accumulator from left to right, is
swap (x, y) = (y, x)
(.*) = (.) . (.)
filterAccum :: (a > b > (Bool, a)) > a > [b] > [b]
filterAccum f a xs = [x  (x, True) < zip xs $ snd $ mapAccumL (swap .* f) a xs]
To get all i
, such that i <= 10, sum [1..i] > 4, sum [1..i] < 25
, we can write
filterAccum (\a x > let a' = a + x in (a' > 4 && a' < 25, a')) 0 [1..10]
which equals [3,4,5,6]
.
Or we can redefine the nub
function, that removes duplicate elements from a list, in terms of filterAccum
:
nub' = filterAccum (\a x > (x `notElem` a, x:a)) []
nub' [1,2,4,5,4,3,1,8,9,4]
equals [1,2,4,5,3,8,9]
. A list is passed as an accumulator here. The code works, because it's possible to leave the list monad, so the whole computation stays pure (notElem
doesn't use >>=
actually, but it could). However it's not possible to safely leave the IO monad (i.e. you cannot execute an IO action and return a pure value — the value always will be wrapped in the IO monad). Another example is mutable arrays: after you have leaved the ST monad, where a mutable array live, you cannot update the array in constant time anymore. So we need a monadic filtering from the Control.Monad
module:
filterM :: (Monad m) => (a > m Bool) > [a] > m [a]
filterM _ [] = return []
filterM p (x:xs) = do
flg < p x
ys < filterM p xs
return (if flg then x:ys else ys)
filterM
executes a monadic action for all elements from a list, yielding elements, for which the monadic action returns True
.
A filtering example with an array:
nub' xs = runST $ do
arr < newArray (1, 9) True :: ST s (STUArray s Int Bool)
let p i = readArray arr i <* writeArray arr i False
filterM p xs
main = print $ nub' [1,2,4,5,4,3,1,8,9,4]
prints [1,2,4,5,3,8,9]
as expected.
And a version with the IO monad, which asks what elements to return:
main = filterM p [1,2,4,5] >>= print where
p i = putStrLn ("return " ++ show i ++ "?") *> readLn
E.g.
return 1?  output
True  input
return 2?
False
return 4?
False
return 5?
True
[1,5]  output
And as a final illustration, filterAccum
can be defined in terms of filterM
:
filterAccum f a xs = evalState (filterM (state . flip f) xs) a
with the StateT
monad, that is used under the hood, being just an ordinary datatype.
This example illustrates, that monads not only allow you to abstract computational context and write clean reusable code (due to the composability of monads, as @Carl explains), but also to treat userdefined datatypes and builtin primitives uniformly.

1This answer explains, why we need the Monad typeclass. The best way to understand, why we need monads and not something else, is to read about difference between monads and applicative functors: one, two. – user3237465 Feb 3 '15 at 5:51
I don't think IO
should be seen as a particularly outstanding monad, but it's certainly one of the more astounding ones for beginners, so I'll use it for my explanation.
Naïvely building an IO system for Haskell
The simplest conceivable IO system for a purelyfunctional language (and in fact the one Haskell started out with) is this:
main₀ :: String > String
main₀ _ = "Hello World"
With lazyness, that simple signature is enough to actually build interactive terminal programs – very limited, though. Most frustrating is that we can only output text. What if we added some more exciting output possibilities?
data Output = TxtOutput String
 Beep Frequency
main₁ :: String > [Output]
main₁ _ = [ TxtOutput "Hello World"
 , Beep 440  for debugging
]
cute, but of course a much more realistic “alterative output” would be writing to a file. But then you'd also want some way to read from files. Any chance?
Well, when we take our main₁
program and simply pipe a file to the process (using operating system facilities), we have essentially implemented filereading. If we could trigger that filereading from within the Haskell language...
readFile :: Filepath > (String > [Output]) > [Output]
This would use an “interactive program” String>[Output]
, feed it a string obtained from a file, and yield a noninteractive program that simply executes the given one.
There's one problem here: we don't really have a notion of when the file is read. The [Output]
list sure gives a nice order to the outputs, but we don't get an order for when the inputs will be done.
Solution: make inputevents also items in the list of things to do.
data IO₀ = TxtOut String
 TxtIn (String > [Output])
 FileWrite FilePath String
 FileRead FilePath (String > [Output])
 Beep Double
main₂ :: String > [IO₀]
main₂ _ = [ FileRead "/dev/null" $ \_ >
[TxtOutput "Hello World"]
]
Ok, now you may spot an imbalance: you can read a file and make output dependent on it, but you can't use the file contents to decide to e.g. also read another file. Obvious solution: make the result of the inputevents also something of type IO
, not just Output
. That sure includes simple text output, but also allows reading additional files etc..
data IO₁ = TxtOut String
 TxtIn (String > [IO₁])
 FileWrite FilePath String
 FileRead FilePath (String > [IO₁])
 Beep Double
main₃ :: String > [IO₁]
main₃ _ = [ TxtIn $ \_ >
[TxtOut "Hello World"]
]
That would now actually allow you to express any file operation you might want in a program (though perhaps not with good performance), but it's somewhat overcomplicated:
main₃
yields a whole list of actions. Why don't we simply use the signature:: IO₁
, which has this as a special case?The lists don't really give a reliable overview of program flow anymore: most subsequent computations will only be “announced” as the result of some input operation. So we might as well ditch the list structure, and simply cons a “and then do” to each output operation.
data IO₂ = TxtOut String IO₂
 TxtIn (String > IO₂)
 Terminate
main₄ :: IO₂
main₄ = TxtIn $ \_ >
TxtOut "Hello World"
Terminate
Not too bad!
So what has all of this to do with monads?
In practice, you wouldn't want to use plain constructors to define all your programs. There would need to be a good couple of such fundamental constructors, yet for most higherlevel stuff we would like to write a function with some nice highlevel signature. It turns out most of these would look quite similar: accept some kind of meaningfullytyped value, and yield an IO action as the result.
getTime :: (UTCTime > IO₂) > IO₂
randomRIO :: Random r => (r,r) > (r > IO₂) > IO₂
findFile :: RegEx > (Maybe FilePath > IO₂) > IO₂
There's evidently a pattern here, and we'd better write it as
type IO₃ a = (a > IO₂) > IO₂  If this reminds you of continuationpassing
 style, you're right.
getTime :: IO₃ UTCTime
randomRIO :: Random r => (r,r) > IO₃ r
findFile :: RegEx > IO₃ (Maybe FilePath)
Now that starts to look familiar, but we're still only dealing with thinlydisguised plain functions under the hood, and that's risky: each “valueaction” has the responsibility of actually passing on the resulting action of any contained function (else the control flow of the entire program is easily disrupted by one illbehaved action in the middle). We'd better make that requirement explicit. Well, it turns out those are the monad laws, though I'm not sure we can really formulate them without the standard bind/join operators.
At any rate, we've now reached a formulation of IO that has a proper monad instance:
data IO₄ a = TxtOut String (IO₄ a)
 TxtIn (String > IO₄ a)
 TerminateWith a
txtOut :: String > IO₄ ()
txtOut s = TxtOut s $ TerminateWith ()
txtIn :: IO₄ String
txtIn = TxtIn $ TerminateWith
instance Functor IO₄ where
fmap f (TerminateWith a) = TerminateWith $ f a
fmap f (TxtIn g) = TxtIn $ fmap f . g
fmap f (TxtOut s c) = TxtOut s $ fmap f c
instance Applicative IO₄ where
pure = TerminateWith
(<*>) = ap
instance Monad IO₄ where
TerminateWith x >>= f = f x
TxtOut s c >>= f = TxtOut s $ c >>= f
TxtIn g >>= f = TxtIn $ (>>=f) . g
Obviously this is not an efficient implementation of IO, but it's in principle usable.

@jdlugosz:
IO3 a ≡ Cont IO2 a
. But I meant that comment more as a nod to those who already know the continuation monad, as it doesn't exactly have a reputation as being beginnerfriendly. – leftaroundabout Jan 26 '15 at 14:04
Monads are just a convenient framework for solving a class of recurring problems. First, monads must be functors (i.e. must support mapping without looking at the elements (or their type)), they must also bring a binding (or chaining) operation and a way to create a monadic value from an element type (return
). Finally, bind
and return
must satisfy two equations (left and right identities), also called the monad laws. (Alternatively one could define monads to have a flattening operation
instead of binding.)
The list monad is commonly used to deal with nondeterminism. The bind operation selects one element of the list (intuitively all of them in parallel worlds), lets the programmer to do some computation with them, and then combines the results in all worlds to single list (by concatenating, or flattening, a nested list). Here is how one would define a permutation function in the monadic framework of Haskell:
perm [e] = [[e]]
perm l = do (leader, index) < zip l [0 :: Int ..]
let shortened = take index l ++ drop (index + 1) l
trailer < perm shortened
return (leader : trailer)
Here is an example repl session:
*Main> perm "a"
["a"]
*Main> perm "ab"
["ab","ba"]
*Main> perm ""
[]
*Main> perm "abc"
["abc","acb","bac","bca","cab","cba"]
It should be noted that the list monad is in no way a side effecting computation. A mathematical structure being a monad (i.e. conforming to the above mentioned interfaces and laws) does not imply side effects, though sideeffecting phenomena often nicely fit into the monadic framework.
Monads serve basically to compose functions together in a chain. Period.
Now the way they compose differs across the existing monads, thus resulting in different behaviors (e.g., to simulate mutable state in the state monad).
The confusion about monads is that being so general, i.e., a mechanism to compose functions, they can be used for many things, thus leading people to believe that monads are about state, about IO, etc, when they are only about "composing functions".
Now, one interesting thing about monads, is that the result of the composition is always of type "M a", that is, a value inside an envelope tagged with "M". This feature happens to be really nice to implement, for example, a clear separation between pure from impure code: declare all impure actions as functions of type "IO a" and provide no function, when defining the IO monad, to take out the "a" value from inside the "IO a". The result is that no function can be pure and at the same time take out a value from an "IO a", because there is no way to take such value while staying pure (the function must be inside the "IO" monad to use such value). (NOTE: well, nothing is perfect, so the "IO straitjacket" can be broken using "unsafePerformIO : IO a > a" thus polluting what was supposed to be a pure function, but this should be used very sparingly and when you really know to be not introducing any impure code with sideeffects.
You need monads if you have a type constructor and functions that returns values of that type family. Eventually, you would like to combine these kind of functions together. These are the three key elements to answer why.
Let me elaborate. You have Int
, String
and Real
and functions of type Int > String
, String > Real
and so on. You can combine these functions easily, ending with Int > Real
. Life is good.
Then, one day, you need to create a new family of types. It could be because you need to consider the possibility of returning no value (Maybe
), returning an error (Either
), multiple results (List
) and so on.
Notice that Maybe
is a type constructor. It takes a type, like Int
and returns a new type Maybe Int
. First thing to remember, no type constructor, no monad.
Of course, you want to use your type constructor in your code, and soon you end with functions like Int > Maybe String
and String > Maybe Float
. Now, you can't easily combine your functions. Life is not good anymore.
And here's when monads come to the rescue. They allow you to combine that kind of functions again. You just need to change the composition . for >==.

2This has nothing to do with type families. What are you actually talking about? – dfeuer Jan 30 '15 at 18:24
Why do we need monads?
Actually, you can get by without monads  from How to Declare an Imperative by Philip Wadler:
(* page 25 *)
val echoML : unit > unit
fun echoML () = let val c = getcML () in
if c = #"\n" then
()
else
(putcML c; echoML ())
end
where:
(* pages 2526 *)
fun putcML c = TextIO.output1(TextIO.stdOut,c);
fun getcML () = valOf(TextIO.input1(TextIO.stdIn));
Yes, alright  you're probably trying to learn Haskell, and that's why you eventually ended up here. As it happens, it was the quandary of I/O in nonstrict languages like Haskell that brought monads to such prominence  that's why I've chosen I/O for the running example.
Now, you can write echo
in Haskell like this:
echoH :: IO ()
echoH = do c < getChar
if c == '\n' then
return ()
else
putChar c >> echoH
or this:
echoH' :: IO ()
echoH' = getChar >>= \c >
if c == '\n' then return () else
putChar c >> echoH'
but you cannot write this:
errcho :: () > ()
errcho () = let c = getc () in
if c == '\n' then
()
else
putc c ; errcho ()
 fake primitives!
(;) :: a > b > b
putc :: Char > ()
getc :: () > Char
That ain't legit Haskell...but this almost is:
echo :: OI > ()
echo u = let !u1:u2:u3:_ = parts u in
let !c = getchar u1 in
if c == '\n' then () else putchar c u2 `seq` echo u3
where:
data OI  abstract
parts :: OI > [OI]  primitive
 I'll leave these definitions to you ;)
putchar :: Char > OI > ()
getchar :: OI > Char
Bangpatterns are an extension of Haskell 2010;
Prelude.seq
isn't actually sequential  you would need an alternate definition ofseq
e.g: for GHC 8.6.5 {# LANGUAGE CPP #} #define during seq import qualified Prelude(during) {# NOINLINE seq #} infixr 0 `seq` seq :: a > b > b seq x y = Prelude.during x (case x of _ > y)
or:
 for GHC 8.6.5 {# LANGUAGE CPP #} #define during seq import qualified Prelude(during) import GHC.Base(lazy) infixr 0 `seq` seq :: a > b > b seq x y = Prelude.during x (lazy y)
(Yes  more extensions are being used, but they stay with each definition.)
It's clunkier, but this is regular Haskell:
echo :: OI > ()
echo u = case parts u of
u1:u2:u3:_ > case getchar u1 of
c > if c == '\n' then () else
case putchar c u2 of () > echo u3
Yes, it's a bit arcane, but together with a suitable definition of seq
, parts
, and those curious OI
values can allow you to do neat stuff like this:
runDialogue :: Dialogue > OI > ()
runDialogue d =
\u > foldr seq () (yet (\l > zipWith respond (d l) (parts u)))
respond :: Request > OI > Response
respond Getq = getchar `bind` (unit . Getp)
respond (Putq c) = putchar c `bind` \_ > unit Putp
where:
 types from page 14
type Dialogue = [Response] > [Request]
data Request = Getq  Putq Char
data Response = Getp Char  Putp
yet :: (a > a) > a
yet f = f (yet f)
unit :: a > (OI > a)
unit x = \u > part u `seq` x
bind :: (OI > a) > (a > (OI > b)) > (OI > b)
bind m k = \u > case part u of (u1, u2) > (\x > x `seq` k x u2) (m u1)
part :: OI > (OI, OI)
part u = case parts u of u1:u2:_ > (u1, u2)
It isn't working? Give this a try:
yet :: (a > a) > a
yet f = y where y = f y
Yes, continually typing out OI >
would be annoying, and if this approach to I/O is going to work, it has to work everywhere. The simplest solution is:
type IO a = OI > a
to avoid the hassle of wrapping and unwrapping involved with using constructors. The change of type also provides main
with an alternate type signature:
main :: OI > ()
To conclude  while monads can be very useful:
echo' :: OI > ()
echo' = getchar `bind` \c >
if c == '\n' then unit () else
putchar c `bind` \_ > echo'
they're not really needed in Haskell.

Interesting spin on it, but I would argue that this is not Haskell because the functions aren't referencially transparent. – leftaroundabout Aug 24 at 6:51

You might be interested in reading On generating unique names by Lennart Augustsson, Mikael Rittri and Dan Synek  the approach I've presented here is an abstraction based on the one described in that functional pearl. – atravers Aug 24 at 22:29

Uday S. Reddy's Imperative Functional Programming (no, not that one) is also worth reading. – atravers Oct 22 at 1:57

As for the definitions themselves not being pure, then they're no worse than GHC's I/O primitives: stackoverflow.com/a/64813587/13679816 . – atravers Nov 16 at 14:21

Then there's John Launchbury and Simon Peyton Jones's State in Haskell  see subsection 10.5 (page 45) and the Haskell declarations on page 39; the section itself starts on page 37. – atravers Nov 25 at 21:27