Haskell features
This article describes the features in the programming language Haskell .
Examples
[edit ]Factorial
[edit ]A simple example that is often used to demonstrate the syntax of functional languages is the factorial function for non-negative integers, shown in Haskell:
factorial::Integer->Integer factorial0=1 factorialn=n*factorial(n-1)
Or in one line:
factorialn=ifn>1thenn*factorial(n-1)else1
This describes the factorial as a recursive function, with one terminating base case. It is similar to the descriptions of factorials found in mathematics textbooks. Much of Haskell code is similar to standard mathematical notation in facility and syntax.
The first line of the factorial function describes the type of this function; while it is optional, it is considered to be good style[1] to include it. It can be read as the function factorial (factorial
) has type (::
) from integer to integer (Integer -> Integer
). That is, it takes an integer as an argument, and returns another integer. The type of a definition is inferred automatically if no type annotation is given.
The second line relies on pattern matching, an important feature of Haskell. Note that parameters of a function are not in parentheses but separated by spaces. When the function's argument is 0 (zero) it will return the integer 1 (one). For all other cases the third line is tried. This is the recursion, and executes the function again until the base case is reached.
Using the product
function from the Prelude, a number of small functions analogous to C's standard library, and using the Haskell syntax for arithmetic sequences, the factorial function can be expressed in Haskell as follows:
factorialn=product[1..n]
Here [1..n]
denotes the arithmetic sequence 1, 2, ..., n in list form. Using the Prelude function enumFromTo
, the expression [1..n]
can be written as enumFromTo 1 n
, allowing the factorial function to be expressed as
factorialn=product(enumFromTo1n)
which, using the function composition operator (expressed as a dot in Haskell) to compose the product function with the curried enumeration function can be rewritten in point-free style:[2]
factorial=product.enumFromTo1
In the Hugs interpreter, one often needs to define the function and use it on the same line separated by a where
or let
..in
. For example, to test the above examples and see the output 120
:
let{factorialn|n>0=n*factorial(n-1);factorial_=1}infactorial5
or
factorial5wherefactorial=product.enumFromTo1
The GHCi interpreter doesn't have this restriction and function definitions can be entered on one line (with the let
syntax without the in
part), and referenced later.
More complex examples
[edit ]Calculator
[edit ]In the Haskell source immediately below, ::
can be read as "has type"; a -> b
can be read as "is a function from a to b". (Thus the Haskell calc :: String -> [Float]
can be read as "calc
has type of a function from Strings to lists of Floats".)
In the second line calc = ...
the equals sign can be read as "can be"; thus multiple lines with calc = ...
can be read as multiple possible values for calc
, depending on the circumstance detailed in each line.
A simple Reverse Polish notation calculator expressed with the higher-order function foldl
whose argument f is defined in a where clause using pattern matching and the type class Read:
calc::String->[Float] calc=foldlf[].words where f(x:y:zs)"+"=(y+x):zs f(x:y:zs)"-"=(y-x):zs f(x:y:zs)"*"=(y*x):zs f(x:y:zs)"/"=(y/x):zs f(x:y:zs)"FLIP"=y:x:zs fzsw=readw:zs
The empty list is the initial state, and f interprets one word at a time, either as a function name, taking two numbers from the head of the list and pushing the result back in, or parsing the word as a floating-point number and prepending it to the list.
Fibonacci sequence
[edit ]The following definition produces the list of Fibonacci numbers in linear time:
fibs=0:1:zipWith(+)fibs(tailfibs)
The infinite list is produced by corecursion — the latter values of the list are computed on demand starting from the initial two items 0 and 1. This kind of a definition relies on lazy evaluation, an important feature of Haskell programming. For an example of how the evaluation evolves, the following illustrates the values of fibs and tail fibs after the computation of six items and shows how zipWith (+) has produced four items and proceeds to produce the next item:
fibs = 0 : 1 : 1 : 2 : 3 : 5 : ... + + + + + + tail fibs = 1 : 1 : 2 : 3 : 5 : ... = = = = = = zipWith ... = 1 : 2 : 3 : 5 : 8 : ... fibs = 0 : 1 : 1 : 2 : 3 : 5 : 8 : ...
The same function, written using Glasgow Haskell Compiler's parallel list comprehension syntax (GHC extensions must be enabled using a special command-line flag, here -XParallelListComp, or by starting the source file with {-# LANGUAGE ParallelListComp #-}
):
fibs=0:1:[a+b|a<-fibs|b<-tailfibs]
or with regular list comprehensions:
fibs=0:1:[a+b|(a,b)<-zipfibs(tailfibs)]
or directly self-referencing:
fibs=0:1:nextfibswherenext(a:t@(b:_))=(a+b):nextt
With stateful generating function:
fibs=next(0,1)wherenext(a,b)=a:next(b,a+b)
or with unfoldr
:
fibs=unfoldr(\(a,b)->Just(a,(b,a+b)))(0,1)
or scanl
:
fibs=0:scanl(+)1fibs
Using data recursion with Haskell's predefined fixpoint combinator:
fibs=fix(\xs->0:1:zipWith(+)xs(tailxs))-- zipWith version =fix((0:).(1:).(zipWith(+)<*>tail))-- same as above, pointfree =fix((0:).scanl(+)1)-- scanl version
Factorial
[edit ]The factorial we saw previously can be written as a sequence of functions:
factorialn=foldr((.).(*))id[1..n]$1 -- factorial 5 == ((1*) .) ( ((2*) .) ( ((3*) .) ( ((4*) .) ( ((5*) .) id )))) 1 -- == (1*) . (2*) . (3*) . (4*) . (5*) . id $ 1 -- == 1* ( 2* ( 3* ( 4* ( 5* ( id 1 ))))) factorialn=foldr((.).(*))(const1)[1..n]$() -- factorial 5 == ((1*) .) ( ((2*) .) ( ((3*) .) ( ((4*) .) ( ((5*) .) (const 1) )))) () -- == (1*) . (2*) . (3*) . (4*) . (5*) . const 1 $ () -- == 1* ( 2* ( 3* ( 4* ( 5* ( const 1 () ))))) factorialn=foldr(($).(*))1[1..n]=foldr($)1$map(*)[1..n] -- factorial 5 == ((1*) $) ( ((2*) $) ( ((3*) $) ( ((4*) $) ( ((5*) $) 1 )))) -- == (1*) $ (2*) $ (3*) $ (4*) $ (5*) $ 1 -- == 1* ( 2* ( 3* ( 4* ( 5* 1 ))))
More examples
[edit ]Hamming numbers
[edit ]A remarkably concise function that returns the list of Hamming numbers in order:
hamming=1:map(2*)hamming`union`map(3*)hamming `union`map(5*)hamming
Like the various fibs
solutions displayed above, this uses corecursion to produce a list of numbers on demand, starting from the base case of 1 and building new items based on the preceding part of the list.
Here the function union
is used as an operator by enclosing it in back-quotes. Its case
clauses define how it merges two ascending lists into one ascending list without duplicate items, representing sets as ordered lists. Its companion function minus
implements set difference:
union(x:xs)(y:ys)=casecomparexyof LT->x:unionxs(y:ys) EQ->x:unionxsys GT->y:union(x:xs)ys unionxs[]=xs union[]ys=ys
minus(x:xs)(y:ys)=casecomparexyof LT->x:minusxs(y:ys) EQ->minusxsys GT->minus(x:xs)ys minusxs_=xs --
It is possible to generate only the unique multiples, for more efficient operation. Since there are no duplicates, there's no need to remove them:
smooth235=1:foldr(\ps->fix$mergeBy(<)s.map(p*).(1:))[][2,3,5] where fixf=xwherex=fx-- fixpoint combinator, with sharing
This uses the more efficient function merge
which doesn't concern itself with the duplicates (also used in the following next function, mergesort
):
mergeBylessxsys=mergexsyswhere mergexs[]=xs merge[]ys=ys merge(x:xs)(y:ys)|lessyx=y:merge(x:xs)ys |otherwise=x:mergexs(y:ys)
Each vertical bar ( |
) starts a guard clause with a guard expression before the =
sign and the corresponding definition after it, that is evaluated if the guard is true.
Mergesort
[edit ]Here is a bottom-up merge sort, defined using the higher-order function until
:
mergesortByless[]=[] mergesortBylessxs=head$ until(null.tail)(pairwise$mergeByless)[[x]|x<-xs] pairwisef(a:b:t)=fab:pairwiseft pairwiseft=t
Prime numbers
[edit ]The mathematical definition of primes can be translated pretty much word for word into Haskell:
-- "Integers above 1 that cannot be divided by a smaller integer above 1" -- primes = { n ∈ [2..] | ~ ∃ d ∈ [2..n-1] ⇒ rem n d = 0 } -- = { n ∈ [2..] | ∀ d ∈ [2..n-1] ⇒ rem n d ≠ 0 } primes=[n|n<-[2..],all(\d->remnd/=0)[2..(n-1)]]
This finds primes by trial division. Note that it is not optimized for efficiency and has very poor performance. Slightly faster (but still very slow)[3] is this code by David Turner:
primes=sieve[2..]where sieve(p:xs)=p:sieve[x|x<-xs,remxp/=0]
Much faster is the optimal trial division algorithm
primes=2:[n|n<-[3..],all((>0).remn)$ takeWhile((<=n).(^2))primes]
or an unbounded sieve of Eratosthenes with postponed sieving in stages,[4]
primes=2:sieveprimes[3..]where sieve(p:ps)(span(<p*p)->(h,t))= h++sieveps(minust[p*p,p*p+p..])
or the combined sieve implementation by Richard Bird,[5]
-- "Integers above 1 without any composite numbers which -- are found by enumeration of each prime's multiples" primes=2:minus[3..] (foldr(\(m:ms)r->m:unionmsr)[] [[p*p,p*p+p..]|p<-primes])
or an even faster tree-like folding variant[6] with nearly optimal (for a list-based code) time complexity and very low space complexity achieved through telescoping multistage recursive production of primes:
primes=2:_Y((3:).minus[5,7..]._U .map(\p->[p*p,p*p+2*p..])) where -- non-sharing Y combinator: _Yg=g(_Yg)-- (g (g (g (g (...))))) -- big union ~= nub.sort.concat _U((x:xs):t)=x:(unionxs._U.pairwiseunion)t
Working on arrays by segments between consecutive squares of primes, it's
importData.Array importData.List(tails,inits) primes=2:[n| (r:q:_,px)<-zip(tails(2:[p*p|p<-primes])) (initsprimes), (n,True)<-assocs(accumArray(\__->False)True (r+1,q-1) [(m,())|p<-px ,s<-[div(r+p)p*p] ,m<-[s,s+p..q-1]])]
The shortest possible code is probably nubBy (((>1) .) . gcd) [2..]
. It is quite slow.
Syntax
[edit ]Layout
[edit ]Haskell allows indentation to be used to indicate the beginning of a new declaration. For example, in a where clause:
productxs=prodxs1 where prod[]a=a prod(x:xs)a=prodxs(a*x)
The two equations for the nested function prod
are aligned vertically, which allows the semi-colon separator to be omitted. In Haskell, indentation can be used in several syntactic constructs, including do
, let
, case
, class
, and instance
.
The use of indentation to indicate program structure originates in Peter J. Landin's ISWIM language, where it was called the off-side rule. This was later adopted by Miranda, and Haskell adopted a similar (but rather more complex) version of Miranda's off-side rule, which is called "layout". Other languages to adopt whitespace character-sensitive syntax include Python and F#.
The use of layout in Haskell is optional. For example, the function product
above can also be written:
productxs=prodxs1 where{prod[]a=a;prod(x:xs)a=prodxs(a*x)}
The explicit open brace after the where
keyword indicates that separate declarations will use explicit semi-colons, and the declaration-list will be terminated by an explicit closing brace. One reason for wanting support for explicit delimiters is that it makes automatic generation of Haskell source code easier.
Haskell's layout rule has been criticised for its complexity. In particular, the definition states that if the parser encounters a parse error during processing of a layout section, then it should try inserting a close brace (the "parse error" rule). Implementing this rule in a traditional parsing and lexical analysis combination requires two-way cooperation between the parser and lexical analyser, whereas in most languages, these two phases can be considered independently.
Function calls
[edit ]Applying a function f
to a value x
is expressed as simply f x
.
Haskell distinguishes function calls from infix operators syntactically, but not semantically. Function names which are composed of punctuation characters can be used as operators, as can other function names if surrounded with backticks; and operators can be used in prefix notation if surrounded with parentheses.
This example shows the ways that functions can be called:
addab=a+b ten1=5+5 ten2=(+)55 ten3=add55 ten4=5`add`5
Functions which are defined as taking several parameters can always be partially applied. Binary operators can be partially applied using section notation:
ten5=(+5)5 ten6=(5+)5 addfive=(5+) ten7=addfive5
List comprehensions
[edit ]See List comprehension#Overview for the Haskell example.
Pattern matching
[edit ]Pattern matching is used to match on the different constructors of algebraic data types. Here are some functions, each using pattern matching on each of the types below:
-- This type signature says that empty takes a list containing any type, and returns a Bool empty::[a]->Bool empty(x:xs)=False empty[]=True -- Will return a value from a Maybe a, given a default value in case a Nothing is encountered fromMaybe::a->Maybea->a fromMaybex(Justy)=y fromMaybexNothing=x isRight::Eitherab->Bool isRight(Right_)=True isRight(Left_)=False getName::Person->String getName(Personname__)=name getSex::Person->Sex getSex(Person_sex_)=sex getAge::Person->Int getAge(Person__age)=age
Using the above functions, along with the map
function, we can apply them to each element of a list, to see their results:
mapempty[[1,2,3],[],[2],[1..]] -- returns [False,True,False,False] map(fromMaybe0)[Just2,Nothing,Just109238,Nothing] -- returns [2,0,109238,0] mapisRight[Left"hello",Right6,Right23,Left"world"] -- returns [False, True, True, False] mapgetName[Person"Sarah"Female20,Person"Alex"Male20,tom] -- returns ["Sarah", "Alex", "Tom"], using the definition for tom above
- Abstract Types
- Lists
Tuples
[edit ]Tuples in haskell can be used to hold a fixed number of elements. They are used to group pieces of data of differing types:
account::(String,Integer,Double)-- The type of a three-tuple, representing -- a name, balance, and interest rate account=("John Smith",102894,5.25)
Tuples are commonly used in the zip* functions to place adjacent elements in separate lists together in tuples (zip4 to zip7 are provided in the Data.List module):
-- The definition of the zip function. Other zip* functions are defined similarly zip::[x]->[y]->[(x,y)] zip(x:xs)(y:ys)=(x,y):zipxsys zip__=[] zip[1..5]"hello" -- returns [(1,'h'),(2,'e'),(3,'l'),(4,'l'),(5,'o')] -- and has type [(Integer, Char)] zip3[1..5]"hello"[False,True,False,False,True] -- returns [(1,'h',False),(2,'e',True),(3,'l',False),(4,'l',False),(5,'o',True)] -- and has type [(Integer,Char,Bool)]
In the GHC compiler, tuples are defined with sizes from 2 elements up to 62 elements.
Namespaces
[edit ]In the § More complex examples section above, calc
is used in two senses, showing that there is a Haskell type class namespace and also a namespace for values:
- a Haskell type class for
calc
. The domain and range can be explicitly denoted in a Haskell type class. - a Haskell value, formula, or expression for
calc
.
Typeclasses and polymorphism
[edit ]Algebraic data types
[edit ]Algebraic data types are used extensively in Haskell. Some examples of these are the built in list, Maybe
and Either
types:
-- A list of a's ([a]) is either an a consed (:) onto another list of a's, or an empty list ([]) data[a]=a:[a]|[] -- Something of type Maybe a is either Just something, or Nothing dataMaybea=Justa|Nothing -- Something of type Either atype btype is either a Left atype, or a Right btype dataEitherab=Lefta|Rightb
Users of the language can also define their own abstract data types. An example of an ADT used to represent a person's name, sex and age might look like:
dataSex=Male|Female dataPerson=PersonStringSexInt-- Notice that Person is both a constructor and a type -- An example of creating something of type Person tom::Person tom=Person"Tom"Male27
Type system
[edit ]- Type classes
- Type defaulting
- Overloaded literals
- Higher kinded polymorphism
- Multi-parameter type classes
- Functional dependencies
Monads and input/output
[edit ]- Overview of the monad framework:
- Applications
- Monadic IO
- Do-notation
- References
- Exceptions
ST monad
[edit ]The ST monad allows writing imperative programming algorithms in Haskell, using mutable variables (STRefs) and mutable arrays (STArrays and STUArrays). The advantage of the ST monad is that it allows writing code that has internal side effects, such as destructively updating mutable variables and arrays, while containing these effects inside the monad. The result of this is that functions written using the ST monad appear pure to the rest of the program. This allows using imperative code where it may be impractical to write functional code, while still keeping all the safety that pure code provides.
Here is an example program (taken from the Haskell wiki page on the ST monad) that takes a list of numbers, and sums them, using a mutable variable:
importControl.Monad.ST importData.STRef importControl.Monad sumST::Numa=>[a]->a sumSTxs=runST$do-- runST takes stateful ST code and makes it pure. summed<-newSTRef0-- Create an STRef (a mutable variable) forM_xs$\x->do-- For each element of the argument list xs .. modifySTRefsummed(+x)-- add it to what we have in n. readSTRefsummed-- read the value of n, which will be returned by the runST above.
STM monad
[edit ]The STM monad is an implementation of Software Transactional Memory in Haskell. It is implemented in the GHC compiler, and allows for mutable variables to be modified in transactions.
Arrows
[edit ]- Applicative Functors
- Arrows
As Haskell is a pure functional language, functions cannot have side effects. Being non-strict, it also does not have a well-defined evaluation order. This is a challenge for real programs, which among other things need to interact with an environment. Haskell solves this with monadic types that leverage the type system to ensure the proper sequencing of imperative constructs. The typical example is input/output (I/O), but monads are useful for many other purposes, including mutable state, concurrency and transactional memory, exception handling, and error propagation.
Haskell provides a special syntax for monadic expressions, so that side-effecting programs can be written in a style similar to current imperative programming languages; no knowledge of the mathematics behind monadic I/O is required for this. The following program reads a name from the command line and outputs a greeting message:
main=doputStrLn"What's your name?" name<-getLine putStr("Hello, "++name++"!\n")
The do-notation eases working with monads. This do-expression is equivalent to, but (arguably) easier to write and understand than, the de-sugared version employing the monadic operators directly:
main=putStrLn"What's your name?">>getLine>>=\name->putStr("Hello, "++name++"!\n")
- See also wikibooks:Transwiki:List of hello world programs#Haskell for another example that prints text.
Concurrency
[edit ]The Haskell language definition includes neither concurrency nor parallelism, although GHC supports both.
Concurrent Haskell is an extension to Haskell that supports threads and synchronization.[7] GHC's implementation of Concurrent Haskell is based on multiplexing lightweight Haskell threads onto a few heavyweight operating system (OS) threads,[8] so that Concurrent Haskell programs run in parallel via symmetric multiprocessing. The runtime can support millions of simultaneous threads.[9]
The GHC implementation employs a dynamic pool of OS threads, allowing a Haskell thread to make a blocking system call without blocking other running Haskell threads.[10] Hence the lightweight Haskell threads have the characteristics of heavyweight OS threads, and a programmer can be unaware of the implementation details.
Recently,[when? ] Concurrent Haskell has been extended with support for software transactional memory (STM), which is a concurrency abstraction in which compound operations on shared data are performed atomically, as transactions.[11] GHC's STM implementation is the only STM implementation to date to provide a static compile-time guarantee preventing non-transactional operations from being performed within a transaction. The Haskell STM library also provides two operations not found in other STMs: retry
and orElse
, which together allow blocking operations to be defined in a modular and composable fashion.
References
[edit ]- ^ HaskellWiki: Type signatures as good style
- ^ HaskellWiki: Pointfree
- ^ "Prime numbers - HaskellWiki". www.haskell.org.
- ^ "Prime numbers - HaskellWiki". www.haskell.org.
- ^ O'Neill, Melissa E., "The Genuine Sieve of Eratosthenes", Journal of Functional Programming, Published online by Cambridge University Press 9 October 2008 doi:10.1017/S0956796808007004, pp. 10, 11.
- ^ "Prime numbers - HaskellWiki". www.haskell.org.
- ^ Simon Peyton Jones, Andrew Gordon, and Sigbjorn Finne. Concurrent Haskell. ACM SIGPLAN-SIGACT Symposium on Principles of Programming Languages (PoPL). 1996. (Some sections are out of date with respect to the current implementation.)
- ^ Runtime Support for Multicore Haskell Archived 2010年07月05日 at the Wayback Machine (Simon Marlow, Simon Peyton Jones, Satnam Singh) ICFP '09: Proceedings of the 14th ACM SIGPLAN international conference on Functional programming, Edinburgh, Scotland, August 2009
- ^ "DEFUN 2009: Multicore Programming in Haskell Now!". 5 September 2009.
- ^ Extending the Haskell Foreign Function Interface with Concurrency Archived 2010年07月03日 at the Wayback Machine (Simon Marlow, Simon Peyton Jones, Wolfgang Thaller) Proceedings of the ACM SIGPLAN workshop on Haskell, pages 57--68, Snowbird, Utah, USA, September 2004
- ^ Harris, Tim; Marlow, Simon; Peyton Jones, Simon; Herlihy, Maurice (2005). "Composable memory transactions". Proceedings of the tenth ACM SIGPLAN symposium on Principles and practice of parallel programming. CiteSeerX 10.1.1.67.3686 .