Providence Salumu
Table of Contents
Often, we have to deal with data that is unordered but is indexed by a key. For instance, a Unix administrator might have a list of numeric UIDs (user IDs) and the textual usernames that they correspond to. The value of this list lies in being able to look up a textual username for a given UID, not in the order of the data. In other words, the UID is a key into a database.
In Haskell, there are several ways to handle data that is structured in
this way. The two most common are association lists and the
Map type provided by
Data.Map
module. Association lists are handy
because they are simple. They are standard Haskell lists, so all the
familiar list functions work with association lists. However,
for large data sets, Map will have a
considerable performance advantage over association lists. We'll
use both in this chapter.
An association list is just a normal list containing (key, value)
tuples. The type of a list of mappings from UID to username might be
[(Integer, String)]
. We could use just about any
type[31]for both the key and the value.
We can build association lists just we do any other
list. Haskell comes with one built-in function called
Data.List.lookup
to look up data in an association
list. Its type is Eq a => a -> [(a, b)] -> Maybe b
.
Can you guess how it works from that type? Let's take a look in
ghci.
ghci>
let al = [(1, "one"), (2, "two"), (3, "three"), (4, "four")]
ghci>
lookup 1 al
Just "one"ghci>
lookup 5 al
Nothing
The lookup
function is really simple. Here's
one way we could write it:
-- file: ch13/lookup.hs myLookup :: Eq a => a -> [(a, b)] -> Maybe b myLookup _ [] = Nothing myLookup key ((thiskey,thisval):rest) = if key == thiskey then Just thisval else myLookup key rest
This function returns Nothing
if passed the empty list. Otherwise,
it compares the key with the key we're looking for. If a match is
found, the corresponding value is returned. Otherwise, it searches
the rest of the list.
Let's take a look at a more complex example of association
lists. On Unix/Linux machines, there is a file called
/etc/passwd
that stores usernames, UIDs,
home directories, and various other data. We will write a program
that parses such a file, creates an association list, and lets
the user look up a username by giving a UID.
-- file: ch13/passwd-al.hs import Data.List import System.IO import Control.Monad(when) import System.Exit import System.Environment(getArgs) main = do -- Load the command-line arguments args <- getArgs -- If we don't have the right amount of args, give an error and abort when (length args /= 2) $ do putStrLn "Syntax: passwd-al filename uid" exitFailure -- Read the file lazily content <- readFile (args !! 0) -- Compute the username in pure code let username = findByUID content (read (args !! 1)) -- Display the result case username of Just x -> putStrLn x Nothing -> putStrLn "Could not find that UID" -- Given the entire input and a UID, see if we can find a username. findByUID :: String -> Integer -> Maybe String findByUID content uid = let al = map parseline . lines $ content in lookup uid al -- Convert a colon-separated line into fields parseline :: String -> (Integer, String) parseline input = let fields = split ':' input in (read (fields !! 2), fields !! 0) {- | Takes a delimiter and a list. Break up the list based on the - delimiter. -} split :: Eq a => a -> [a] -> [[a]] -- If the input is empty, the result is a list of empty lists. split _ [] = [[]] split delim str = let -- Find the part of the list before delim and put it in "before". -- The rest of the list, including the leading delim, goes -- in "remainder". (before, remainder) = span (/= delim) str in before : case remainder of [] -> [] x -> -- If there is more data to process, -- call split recursively to process it split delim (tail x)
Let's look at this program. The heart of it is
findByUID
, which is a simple function that parses
the input one line at a time, then calls lookup
over
the result. The remaining program is concerned with parsing the input.
The input file looks like this:
root:x:0:0:root:/root:/bin/bash daemon:x:1:1:daemon:/usr/sbin:/bin/sh bin:x:2:2:bin:/bin:/bin/sh sys:x:3:3:sys:/dev:/bin/sh sync:x:4:65534:sync:/bin:/bin/sync games:x:5:60:games:/usr/games:/bin/sh man:x:6:12:man:/var/cache/man:/bin/sh lp:x:7:7:lp:/var/spool/lpd:/bin/sh mail:x:8:8:mail:/var/mail:/bin/sh news:x:9:9:news:/var/spool/news:/bin/sh jgoerzen:x:1000:1000:John Goerzen,,,:/home/jgoerzen:/bin/bash
Its fields are separated by colons, and include a username, numeric user ID, numeric group ID, full name, home directory, and shell. No field may contain an internal colon.
The Data.Map
module provides a
Map type with behavior that is similar to
association lists, but has much better performance.
Maps give us the same capabilities as hash tables do in other languages. Internally, a map is implemented as a balanced binary tree. Compared to a hash table, this is a much more efficient representation in a language with immutable data. This is the most visible example of how deeply pure functional programming affects how we write code: we choose data structures and algorithms that we can express cleanly and that perform efficiently, but our choices for specific tasks are often different their counterparts in imperative languages.
Some functions in the Data.Map
module have the
same names as those in the Prelude. Therefore, we will import it
with import qualified Data.Map as Map
and use
Map.
to refer
to names in that module. Let's start our tour of
name
Data.Map
by taking a look at some ways to
build a map.
-- file: ch13/buildmap.hs import qualified Data.Map as Map -- Functions to generate a Map that represents an association list -- as a map al = [(1, "one"), (2, "two"), (3, "three"), (4, "four")] {- | Create a map representation of 'al' by converting the association - list using Map.fromList -} mapFromAL = Map.fromList al {- | Create a map representation of 'al' by doing a fold -} mapFold = foldl (\map (k, v) -> Map.insert k v map) Map.empty al {- | Manually create a map with the elements of 'al' in it -} mapManual = Map.insert 2 "two" . Map.insert 4 "four" . Map.insert 1 "one" . Map.insert 3 "three" $ Map.empty
Functions like Map.insert
work in the usual
Haskell way: they return a copy of the input data, with the
requested change applied. This is quite handy with maps. It
means that you can use foldl
to build up a
map as in the mapFold
example. Or, you can
chain together calls to Map.insert
as in the
mapManual
example. Let's use ghci to
verify that all of these maps are as expected:
ghci>
:l buildmap.hs
[1 of 1] Compiling Main ( buildmap.hs, interpreted ) Ok, modules loaded: Main.ghci>
al
Loading package array-0.1.0.0 ... linking ... done. Loading package containers-0.1.0.1 ... linking ... done. [(1,"one"),(2,"two"),(3,"three"),(4,"four")]ghci>
mapFromAL
fromList [(1,"one"),(2,"two"),(3,"three"),(4,"four")]ghci>
mapFold
fromList [(1,"one"),(2,"two"),(3,"three"),(4,"four")]ghci>
mapManual
fromList [(1,"one"),(2,"two"),(3,"three"),(4,"four")]
Notice that the output from mapManual
differs
from the order of the list we used to construct the map. Maps do
not guarantee that they will preserve the original ordering.
Maps operate similarly in concept to association lists. The
Data.Map
module provides functions for adding
and removing data from maps. It also lets us filter them,
modify them, fold over them, and convert to and from association
lists. The library documentation for this module is good, so
instead of going into detail on each function, we will present
an example that ties together many of the concepts we've
discussed in this chapter.
Part of Haskell's power is the ease with which it lets us create and manipulate functions. Let's take a look at a record that stores a function as one of its fields:
-- file: ch13/funcrecs.hs {- | Our usual CustomColor type to play with -} data CustomColor = CustomColor {red :: Int, green :: Int, blue :: Int} deriving (Eq, Show, Read) {- | A new type that stores a name and a function. The function takes an Int, applies some computation to it, and returns an Int along with a CustomColor -} data FuncRec = FuncRec {name :: String, colorCalc :: Int -> (CustomColor, Int)} plus5func color x = (color, x + 5) purple = CustomColor 255 0 255 plus5 = FuncRec {name = "plus5", colorCalc = plus5func purple} always0 = FuncRec {name = "always0", colorCalc = \_ -> (purple, 0)}
Notice the type of the colorCalc
field: it's a
function. It takes an Int
and returns a tuple of
(CustomColor, Int)
. We create two
FuncRec
records: plus5
and
always0
. Notice that the
colorCalc
for both of them will always return the
color purple. FuncRec
itself has no field to store
the color in, yet that value somehow becomes part of the function
itself. This is called a closure. Let's play
with this a bit:
ghci>
:l funcrecs.hs
[1 of 1] Compiling Main ( funcrecs.hs, interpreted ) Ok, modules loaded: Main.ghci>
:t plus5
plus5 :: FuncRecghci>
name plus5
"plus5"ghci>
:t colorCalc plus5
colorCalc plus5 :: Int -> (CustomColor, Int)ghci>
(colorCalc plus5) 7
(CustomColor {red = 255, green = 0, blue = 255},12)ghci>
:t colorCalc always0
colorCalc always0 :: Int -> (CustomColor, Int)ghci>
(colorCalc always0) 7
(CustomColor {red = 255, green = 0, blue = 255},0)
That worked well enough, but you might wonder how to do something more advanced, such as making a piece of data available in multiple places. A type construction function can be helpful. Here's an example:
-- file: ch13/funcrecs2.hs data FuncRec = FuncRec {name :: String, calc :: Int -> Int, namedCalc :: Int -> (String, Int)} mkFuncRec :: String -> (Int -> Int) -> FuncRec mkFuncRec name calcfunc = FuncRec {name = name, calc = calcfunc, namedCalc = \x -> (name, calcfunc x)} plus5 = mkFuncRec "plus5" (+ 5) always0 = mkFuncRec "always0" (\_ -> 0)
Here we have a function called mkFuncRec
that
takes a String
and another function as parameters, and returns
a new FuncRec
record. Notice how both parameters to
mkFuncRec
are used in multiple places. Let's try it
out:
ghci>
:l funcrecs2.hs
[1 of 1] Compiling Main ( funcrecs2.hs, interpreted ) Ok, modules loaded: Main.ghci>
:t plus5
plus5 :: FuncRecghci>
name plus5
"plus5"ghci>
(calc plus5) 5
10ghci>
(namedCalc plus5) 5
("plus5",10)ghci>
let plus5a = plus5 {name = "PLUS5A"}
ghci>
name plus5a
"PLUS5A"ghci>
(namedCalc plus5a) 5
("plus5",10)
Notice the creation of plus5a
. We changed the
name
field, but not the namedCalc
field. That's why name
has the new name, but
namedCalc
still returns the name that was passed to
mkFuncRec
; it doesn't change unless we explicitly
change it.
In order to illustrate the usage of a number of different data
structures together, we've prepared an extended example. This example
parses and stores entries from files in the format of
a typical /etc/passwd
file.
-- file: ch13/passwdmap.hs import Data.List import qualified Data.Map as Map import System.IO import Text.Printf(printf) import System.Environment(getArgs) import System.Exit import Control.Monad(when) {- | The primary piece of data this program will store. It represents the fields in a POSIX /etc/passwd file -} data PasswdEntry = PasswdEntry { userName :: String, password :: String, uid :: Integer, gid :: Integer, gecos :: String, homeDir :: String, shell :: String} deriving (Eq, Ord) {- | Define how we get data to a 'PasswdEntry'. -} instance Show PasswdEntry where show pe = printf "%s:%s:%d:%d:%s:%s:%s" (userName pe) (password pe) (uid pe) (gid pe) (gecos pe) (homeDir pe) (shell pe) {- | Converting data back out of a 'PasswdEntry'. -} instance Read PasswdEntry where readsPrec _ value = case split ':' value of [f1, f2, f3, f4, f5, f6, f7] -> -- Generate a 'PasswdEntry' the shorthand way: -- using the positional fields. We use 'read' to convert -- the numeric fields to Integers. [(PasswdEntry f1 f2 (read f3) (read f4) f5 f6 f7, [])] x -> error $ "Invalid number of fields in input: " ++ show x where {- | Takes a delimiter and a list. Break up the list based on the - delimiter. -} split :: Eq a => a -> [a] -> [[a]] -- If the input is empty, the result is a list of empty lists. split _ [] = [[]] split delim str = let -- Find the part of the list before delim and put it in -- "before". The rest of the list, including the leading -- delim, goes in "remainder". (before, remainder) = span (/= delim) str in before : case remainder of [] -> [] x -> -- If there is more data to process, -- call split recursively to process it split delim (tail x) -- Convenience aliases; we'll have two maps: one from UID to entries -- and the other from username to entries type UIDMap = Map.Map Integer PasswdEntry type UserMap = Map.Map String PasswdEntry {- | Converts input data to maps. Returns UID and User maps. -} inputToMaps :: String -> (UIDMap, UserMap) inputToMaps inp = (uidmap, usermap) where -- fromList converts a [(key, value)] list into a Map uidmap = Map.fromList . map (\pe -> (uid pe, pe)) $ entries usermap = Map.fromList . map (\pe -> (userName pe, pe)) $ entries -- Convert the input String to [PasswdEntry] entries = map read (lines inp) main = do -- Load the command-line arguments args <- getArgs -- If we don't have the right number of args, -- give an error and abort when (length args /= 1) $ do putStrLn "Syntax: passwdmap filename" exitFailure -- Read the file lazily content <- readFile (head args) let maps = inputToMaps content mainMenu maps mainMenu maps@(uidmap, usermap) = do putStr optionText hFlush stdout sel <- getLine -- See what they want to do. For every option except 4, -- return them to the main menu afterwards by calling -- mainMenu recursively case sel of "1" -> lookupUserName >> mainMenu maps "2" -> lookupUID >> mainMenu maps "3" -> displayFile >> mainMenu maps "4" -> return () _ -> putStrLn "Invalid selection" >> mainMenu maps where lookupUserName = do putStrLn "Username: " username <- getLine case Map.lookup username usermap of Nothing -> putStrLn "Not found." Just x -> print x lookupUID = do putStrLn "UID: " uidstring <- getLine case Map.lookup (read uidstring) uidmap of Nothing -> putStrLn "Not found." Just x -> print x displayFile = putStr . unlines . map (show . snd) . Map.toList $ uidmap optionText = "\npasswdmap options:\n\ \\n\ \1 Look up a user name\n\ \2 Look up a UID\n\ \3 Display entire file\n\ \4 Quit\n\n\ \Your selection: "
This example maintains two maps: one from username to
PasswdEntry
and another one from UID to
PasswdEntry
. Database developers may find it
convenient to think of this as having two different indices into the
data to speed searching on different fields.
Take a look at the Show
and Read
instances for
PasswdEntry
. There is already a standard format for
rendering data of this type as a string: the colon-separated version
already used by the system. So our Show
function displays a
PasswdEntry
in the format, and Read
parses that
format.
We've told you how powerful and expressive Haskell's type system is. We've shown you a lot of ways to use that power. Here's a chance to really see that in action.
Back in the section called “Numeric Types”, we showed the numeric typeclasses that come with Haskell. Let's see what we can do by defining new types and utilizing the numeric typeclasses to integrate them with basic mathematics in Haskell.
Let's start by thinking through what we'd like to see out of ghci
when we interact with our new types. To start with, it might be nice
to render numeric expressions as strings, making sure to indicate
proper precedence. Perhaps we could create a function called
prettyShow
to do that. We'll show you how to
write it in a bit, but first we'll look at how we might use it.
ghci>
:l num.hs
[1 of 1] Compiling Main ( num.hs, interpreted ) Ok, modules loaded: Main.ghci>
5 + 1 * 3
8ghci>
prettyShow $ 5 + 1 * 3
"5+(1*3)"ghci>
prettyShow $ 5 * 1 + 3
"(5*1)+3"
That looks nice, but it wasn't all that smart. We could easily
simplify out the 1 *
part of the expression. How
about a function to do some very basic simplification?
ghci>
prettyShow $ simplify $ 5 + 1 * 3
"5+3"
How about converting a numeric expression to Reverse Polish Notation (RPN)? RPN is a postfix notation that never requires parentheses, and is commonly found on HP calculators. RPN is a stack-based notation. We push numbers onto the stack, and when we enter operations, they pop the most recent numbers off the stack and place the result on the stack.
ghci>
rpnShow $ 5 + 1 * 3
"5 1 3 * +"ghci>
rpnShow $ simplify $ 5 + 1 * 3
"5 3 +"
Maybe it would be nice to be able to represent simple expressions with symbols for the unknowns.
ghci>
prettyShow $ 5 + (Symbol "x") * 3
"5+(x*3)"
It's often important to track units of measure when working with numbers. For instance, when you see the number 5, does it mean 5 meters, 5 feet, or 5 bytes? Of course, if you divide 5 meters by 2 seconds, the system ought to be able to figure out the appropriate units. Moreover, it should stop you from adding 2 seconds to 5 meters.
ghci>
5 / 2
2.5ghci>
(units 5 "m") / (units 2 "s")
2.5_m/sghci>
(units 5 "m") + (units 2 "s")
*** Exception: Mis-matched units in addghci>
(units 5 "m") + (units 2 "m")
7_mghci>
(units 5 "m") / 2
2.5_mghci>
10 * (units 5 "m") / (units 2 "s")
25.0_m/s
If we define an expression or a function that is valid for all numbers,
we should be able to calculate the result, or render the expression.
For instance, if we define test
to have type
Num a => a
, and say test = 2 * 5 +
3
, then we ought to be able to do this:
ghci>
test
13ghci>
rpnShow test
"2 5 * 3 +"ghci>
prettyShow test
"(2*5)+3"ghci>
test + 5
18ghci>
prettyShow (test + 5)
"((2*5)+3)+5"ghci>
rpnShow (test + 5)
"2 5 * 3 + 5 +"
Since we have units, we should be able to handle some basic trigonometry as well. Many of these operations operate on angles. Let's make sure that we can handle both degrees and radians.
ghci>
sin (pi / 2)
1.0ghci>
sin (units (pi / 2) "rad")
1.0_1.0ghci>
sin (units 90 "deg")
1.0_1.0ghci>
(units 50 "m") * sin (units 90 "deg")
50.0_m
Finally, we ought to be able to put all this together and combine different kinds of expressions together.
ghci>
((units 50 "m") * sin (units 90 "deg")) :: Units (SymbolicManip Double)
50.0*sin(((2.0*pi)*90.0)/360.0)_mghci>
prettyShow $ dropUnits $ (units 50 "m") * sin (units 90 "deg")
"50.0*sin(((2.0*pi)*90.0)/360.0)"ghci>
rpnShow $ dropUnits $ (units 50 "m") * sin (units 90 "deg")
"50.0 2.0 pi * 90.0 * 360.0 / sin *"ghci>
(units (Symbol "x") "m") * sin (units 90 "deg")
x*sin(((2.0*pi)*90.0)/360.0)_m
Everything you've just seen is possible with Haskell types and classes.
In fact, you've been reading a real ghci session demonstrating
num.hs
, which you'll see shortly.
Let's think about how we would accomplish everything shown above. To
start with, we might use ghci to check the type of
(+)
, which is Num a => a -> a ->
a
. If we want to make possible some custom behavior for
the plus operator, then we will have to define a new type and make it
an instance of Num
. This type will need to store an expression
symbolically. We can start by thinking of operations such as addition.
To store that, we will need to store the operation itself, its left
side, and its right side. The left and right sides could themselves be
expressions.
We can therefore think of an expression as a sort of tree. Let's start with some simple types.
-- file: ch13/numsimple.hs -- The "operators" that we're going to support data Op = Plus | Minus | Mul | Div | Pow deriving (Eq, Show) {- The core symbolic manipulation type -} data SymbolicManip a = Number a -- Simple number, such as 5 | Arith Op (SymbolicManip a) (SymbolicManip a) deriving (Eq, Show) {- SymbolicManip will be an instance of Num. Define how the Num operations are handled over a SymbolicManip. This will implement things like (+) for SymbolicManip. -} instance Num a => Num (SymbolicManip a) where a + b = Arith Plus a b a - b = Arith Minus a b a * b = Arith Mul a b negate a = Arith Mul (Number (-1)) a abs a = error "abs is unimplemented" signum _ = error "signum is unimplemented" fromInteger i = Number (fromInteger i)
First, we define a type called Op
. This type
simply represents some of the operations we will support.
Next, there is a definition for SymbolicManip a
.
Because of the Num a
constraint, any
Num
can be used for the a
. So
a full type may be something like SymbolicManip
Int
.
A SymbolicManip
type can be a plain number, or it
can be some arithmetic operation. The type for the
Arith
constructor is recursive, which is perfectly
legal in Haskell. Arith
creates a
SymbolicManip
out of an Op
and
two other SymbolicManip
items. Let's look at an
example:
ghci>
:l numsimple.hs
[1 of 1] Compiling Main ( numsimple.hs, interpreted ) Ok, modules loaded: Main.ghci>
Number 5
Number 5ghci>
:t Number 5
Number 5 :: (Num t) => SymbolicManip tghci>
:t Number (5::Int)
Number (5::Int) :: SymbolicManip Intghci>
Number 5 * Number 10
Arith Mul (Number 5) (Number 10)ghci>
(5 * 10)::SymbolicManip Int
Arith Mul (Number 5) (Number 10)ghci>
(5 * 10 + 2)::SymbolicManip Int
Arith Plus (Arith Mul (Number 5) (Number 10)) (Number 2)
You can see that we already have a very basic representation of
expressions working. Notice how Haskell "converted" 5 * 10
+ 2
into a SymbolicManip
, and even
handled order of evaluation properly. This wasn't really a true
conversion; SymbolicManip
is a first-class number
now. Integer numeric literals are internally treated as being wrapped
in fromInteger
anyway, so 5
is just as valid as
a SymbolicManip Int
as it as an
Int
.
From here, then, our task is simple: extend the
SymbolicManip
type to be able to represent all the
operations we will want to perform, implement instances of it for the
other numeric typeclasses, and implement our own instance of Show
for SymbolicManip
that renders this tree in a more
accessible fashion.
Here is the completed num.hs
, which was used with
the ghci examples at the beginning of this chapter. Let's
look at this code one piece at a time.
-- file: ch13/num.hs import Data.List -------------------------------------------------- -- Symbolic/units manipulation -------------------------------------------------- -- The "operators" that we're going to support data Op = Plus | Minus | Mul | Div | Pow deriving (Eq, Show) {- The core symbolic manipulation type. It can be a simple number, a symbol, a binary arithmetic operation (such as +), or a unary arithmetic operation (such as cos) Notice the types of BinaryArith and UnaryArith: it's a recursive type. So, we could represent a (+) over two SymbolicManips. -} data SymbolicManip a = Number a -- Simple number, such as 5 | Symbol String -- A symbol, such as x | BinaryArith Op (SymbolicManip a) (SymbolicManip a) | UnaryArith String (SymbolicManip a) deriving (Eq)
In this section of code, we define an Op
that is identical to the one we used before. We also define
SymbolicManip
, which is similar to what we
used before. In this version, we now support unary arithmetic
operations (those which take only one parameter) such as
abs
or cos
. Next we
define our instance of Num
.
-- file: ch13/num.hs {- SymbolicManip will be an instance of Num. Define how the Num operations are handled over a SymbolicManip. This will implement things like (+) for SymbolicManip. -} instance Num a => Num (SymbolicManip a) where a + b = BinaryArith Plus a b a - b = BinaryArith Minus a b a * b = BinaryArith Mul a b negate a = BinaryArith Mul (Number (-1)) a abs a = UnaryArith "abs" a signum _ = error "signum is unimplemented" fromInteger i = Number (fromInteger i)
This is pretty straightforward and also similar to our earlier
code. Note that earlier we weren't able to properly support
abs
, but now with the
UnaryArith
constructor, we can. Next we
define some more instances.
-- file: ch13/num.hs {- Make SymbolicManip an instance of Fractional -} instance (Fractional a) => Fractional (SymbolicManip a) where a / b = BinaryArith Div a b recip a = BinaryArith Div (Number 1) a fromRational r = Number (fromRational r) {- Make SymbolicManip an instance of Floating -} instance (Floating a) => Floating (SymbolicManip a) where pi = Symbol "pi" exp a = UnaryArith "exp" a log a = UnaryArith "log" a sqrt a = UnaryArith "sqrt" a a ** b = BinaryArith Pow a b sin a = UnaryArith "sin" a cos a = UnaryArith "cos" a tan a = UnaryArith "tan" a asin a = UnaryArith "asin" a acos a = UnaryArith "acos" a atan a = UnaryArith "atan" a sinh a = UnaryArith "sinh" a cosh a = UnaryArith "cosh" a tanh a = UnaryArith "tanh" a asinh a = UnaryArith "asinh" a acosh a = UnaryArith "acosh" a atanh a = UnaryArith "atanh" a
This section of code defines some fairly straightforward
instances of Fractional
and Floating
. Now let's work on
converting our expressions to strings for display.
-- file: ch13/num.hs {- Show a SymbolicManip as a String, using conventional algebraic notation -} prettyShow :: (Show a, Num a) => SymbolicManip a -> String -- Show a number or symbol as a bare number or serial prettyShow (Number x) = show x prettyShow (Symbol x) = x prettyShow (BinaryArith op a b) = let pa = simpleParen a pb = simpleParen b pop = op2str op in pa ++ pop ++ pb prettyShow (UnaryArith opstr a) = opstr ++ "(" ++ show a ++ ")" op2str :: Op -> String op2str Plus = "+" op2str Minus = "-" op2str Mul = "*" op2str Div = "/" op2str Pow = "**" {- Add parenthesis where needed. This function is fairly conservative and will add parenthesis when not needed in some cases. Haskell will have already figured out precedence for us while building up the SymbolicManip. -} simpleParen :: (Show a, Num a) => SymbolicManip a -> String simpleParen (Number x) = prettyShow (Number x) simpleParen (Symbol x) = prettyShow (Symbol x) simpleParen x@(BinaryArith _ _ _) = "(" ++ prettyShow x ++ ")" simpleParen x@(UnaryArith _ _) = prettyShow x {- Showing a SymbolicManip calls the prettyShow function on it -} instance (Show a, Num a) => Show (SymbolicManip a) where show a = prettyShow a
We start by defining a function
prettyShow
. It renders an expression using
conventional style. The algorithm is fairly simple: bare
numbers and symbols are rendered bare; binary arithmetic is
rendered with the two sides plus the operator in the middle,
and of course we handle the unary operators as well.
op2str
simply converts an
Op
to a String
. In
simpleParen
, we have a quite conservative
algorithm that adds parenthesis to keep precedence clear in
the result. Finally, we make SymbolicManip
an instance of Show
and use prettyShow
to
accomplish that. Now let's implement an algorithm that
converts an expression to s string in RPN format.
-- file: ch13/num.hs {- Show a SymbolicManip using RPN. HP calculator users may find this familiar. -} rpnShow :: (Show a, Num a) => SymbolicManip a -> String rpnShow i = let toList (Number x) = [show x] toList (Symbol x) = [x] toList (BinaryArith op a b) = toList a ++ toList b ++ [op2str op] toList (UnaryArith op a) = toList a ++ [op] join :: [a] -> [[a]] -> [a] join delim l = concat (intersperse delim l) in join " " (toList i)
Fans of RPN will note how much simpler this algorithm is compared to the algorithm to render with conventional notation. In particular, we didn't have to worry about where to add parenthesis, because RPN can, by definition, only be evaluated one way. Next, let's see how we might implement a function to do some rudimentary simplification on expressions.
-- file: ch13/num.hs {- Perform some basic algebraic simplifications on a SymbolicManip. -} simplify :: (Num a) => SymbolicManip a -> SymbolicManip a simplify (BinaryArith op ia ib) = let sa = simplify ia sb = simplify ib in case (op, sa, sb) of (Mul, Number 1, b) -> b (Mul, a, Number 1) -> a (Mul, Number 0, b) -> Number 0 (Mul, a, Number 0) -> Number 0 (Div, a, Number 1) -> a (Plus, a, Number 0) -> a (Plus, Number 0, b) -> b (Minus, a, Number 0) -> a _ -> BinaryArith op sa sb simplify (UnaryArith op a) = UnaryArith op (simplify a) simplify x = x
This function is pretty simple. For certain binary arithmetic operations -- for instance, multiplying any value by 1 -- we are able to easily simplify the situation. We begin by obtaining simplified versions of both sides of the calculation (this is where recursion hits) and then simplify the result. We have little to do with unary operators, so we just simplify the expression they act upon.
From here on, we will add support for units of measure to our established library. This will let us represent quantities such as "5 meters". We start, as before, by defining a type.
-- file: ch13/num.hs {- New data type: Units. A Units type contains a number and a SymbolicManip, which represents the units of measure. A simple label would be something like (Symbol "m") -} data Num a => Units a = Units a (SymbolicManip a) deriving (Eq)
So, a Units
contains a number and a label.
The label is itself a SymbolicManip
. Next,
it will probably come as no surprise to see an instance of
Num
for Units
.
-- file: ch13/num.hs {- Implement Units for Num. We don't know how to convert between arbitrary units, so we generate an error if we try to add numbers with different units. For multiplication, generate the appropriate new units. -} instance (Num a) => Num (Units a) where (Units xa ua) + (Units xb ub) | ua == ub = Units (xa + xb) ua | otherwise = error "Mis-matched units in add or subtract" (Units xa ua) - (Units xb ub) = (Units xa ua) + (Units (xb * (-1)) ub) (Units xa ua) * (Units xb ub) = Units (xa * xb) (ua * ub) negate (Units xa ua) = Units (negate xa) ua abs (Units xa ua) = Units (abs xa) ua signum (Units xa _) = Units (signum xa) (Number 1) fromInteger i = Units (fromInteger i) (Number 1)
Now it may become clear why we use a
SymbolicManip
instead of a String
to
store the unit of measure. As calculations such as
multiplication occur, the unit of measure also changes. For
instance, if we multiply 5 meters by 2 meters, we obtain 10
square meters. We force the units for addition to match, and
implement subtraction in terms of addition. Let's look at
more typeclass instances for Units
.
-- file: ch13/num.hs {- Make Units an instance of Fractional -} instance (Fractional a) => Fractional (Units a) where (Units xa ua) / (Units xb ub) = Units (xa / xb) (ua / ub) recip a = 1 / a fromRational r = Units (fromRational r) (Number 1) {- Floating implementation for Units. Use some intelligence for angle calculations: support deg and rad -} instance (Floating a) => Floating (Units a) where pi = (Units pi (Number 1)) exp _ = error "exp not yet implemented in Units" log _ = error "log not yet implemented in Units" (Units xa ua) ** (Units xb ub) | ub == Number 1 = Units (xa ** xb) (ua ** Number xb) | otherwise = error "units for RHS of ** not supported" sqrt (Units xa ua) = Units (sqrt xa) (sqrt ua) sin (Units xa ua) | ua == Symbol "rad" = Units (sin xa) (Number 1) | ua == Symbol "deg" = Units (sin (deg2rad xa)) (Number 1) | otherwise = error "Units for sin must be deg or rad" cos (Units xa ua) | ua == Symbol "rad" = Units (cos xa) (Number 1) | ua == Symbol "deg" = Units (cos (deg2rad xa)) (Number 1) | otherwise = error "Units for cos must be deg or rad" tan (Units xa ua) | ua == Symbol "rad" = Units (tan xa) (Number 1) | ua == Symbol "deg" = Units (tan (deg2rad xa)) (Number 1) | otherwise = error "Units for tan must be deg or rad" asin (Units xa ua) | ua == Number 1 = Units (rad2deg $ asin xa) (Symbol "deg") | otherwise = error "Units for asin must be empty" acos (Units xa ua) | ua == Number 1 = Units (rad2deg $ acos xa) (Symbol "deg") | otherwise = error "Units for acos must be empty" atan (Units xa ua) | ua == Number 1 = Units (rad2deg $ atan xa) (Symbol "deg") | otherwise = error "Units for atan must be empty" sinh = error "sinh not yet implemented in Units" cosh = error "cosh not yet implemented in Units" tanh = error "tanh not yet implemented in Units" asinh = error "asinh not yet implemented in Units" acosh = error "acosh not yet implemented in Units" atanh = error "atanh not yet implemented in Units"
We didn't supply implementations for every function, but quite a few have been defined. Now let's define a few utility functions for working with units.
-- file: ch13/num.hs {- A simple function that takes a number and a String and returns an appropriate Units type to represent the number and its unit of measure -} units :: (Num z) => z -> String -> Units z units a b = Units a (Symbol b) {- Extract the number only out of a Units type -} dropUnits :: (Num z) => Units z -> z dropUnits (Units x _) = x {- Utilities for the Unit implementation -} deg2rad x = 2 * pi * x / 360 rad2deg x = 360 * x / (2 * pi)
First, we have units
, which makes it easy
to craft simple expressions. It's faster to say
units 5 "m"
than Units 5 (Symbol
"m")
. We also have a corresponding
dropUnits
, which discards the unit of
measure and returns the embedded bare Num
. Finally, we
define some functions for use by our earlier instances to
convert between degrees and radians. Next, we just define a
Show
instance for Units
.
-- file: ch13/num.hs {- Showing units: we show the numeric component, an underscore, then the prettyShow version of the simplified units -} instance (Show a, Num a) => Show (Units a) where show (Units xa ua) = show xa ++ "_" ++ prettyShow (simplify ua)
That was simple. For one last piece, we define a variable
test
to experiment with.
-- file: ch13/num.hs test :: (Num a) => a test = 2 * 5 + 3
So, looking back over all this code, we have done what we set out to accomplish: implemented more
instances for SymbolicManip
. We have also
introduced another type called Units
which stores
a number and a unit of measure. We implement several show-like
functions which render the SymbolicManip
or
Units
in different ways.
There is one other point that this example drives home. Every language -- even those with objects and overloading -- has some parts of the language that are special in some way. In Haskell, the "special" bits are extremely small. We have just developed a new representation for something as fundamental as a number, and it has been really quite easy. Our new type is a first-class type, and the compiler knows what functions to use with it at compile time. Haskell takes code reuse and interchangability to the extreme. It is easy to make code generic and work on things of many different types. It's also easy to make up new types and make them automatically be first-class features of the system.
Remember our ghci examples at the beginning of the chapter? All of them were made with the code in this example. You might want to try them out for yourself and see how they work.
In an imperative language, appending two lists is cheap and easy. Here's a simple C structure in which we maintain a pointer to the head and tail of a list.
struct list { struct node *head, *tail; };
When we have one list, and want to append another
list onto its end, we modify the last node of the existing list
to point to its head
node, then update its
tail
pointer to point to its tail
node.
Obviously, this approach is off limits to us in Haskell if
we want to stay pure. Since pure data is immutable, we can't go
around modifying lists in place. Haskell's
(++)
operator appends two lists by creating
a new one.
-- file: ch13/Append.hs (++) :: [a] -> [a] -> [a] (x:xs) ++ ys = x : xs ++ ys _ ++ ys = ys
From inspecting the code, we can see that the cost of creating a new list depends on the length of the initial list[32] .
We often need to append lists over and over, to construct one big list. For instance, we might be generating the contents of a web page as a String, emitting a chunk at a time as we traverse some data structure. Each time we have a chunk of markup to add to the page, we will naturally want to append it onto the end of our existing String.
If a single append has a cost proportional to the length of the initial list, and each repeated append makes the initial list longer, we end up in an unhappy situation: the cost of all of the repeated appends is proportional to the square of the length of the final list.
To understand this, let's dig in a little. The
(++)
operator is right associative.
ghci>
:info (++)
(++) :: [a] -> [a] -> [a] -- Defined in GHC.Base infixr 5 ++
This means that a Haskell implementation will evaluate the
expression "a" ++ "b" ++ "c"
as if we had put
parentheses around it as follows: "a" ++ ("b" ++
"c")
. This makes good performance sense, because it
keeps the left operand as short as possible.
When we repeatedly append onto the end of a list, we defeat
this associativity. Let's say we start with the list
"a"
and append "b"
, and save the
result as our new list. If we later append "c"
onto this new list, our left operand is now "ab"
.
In this scheme, every time we append, our left operand gets
longer.
Meanwhile, the imperative programmers are cackling with glee, because the cost of their repeated appends only depends on the number of them that they perform. They have linear performance; ours is quadratic.
When something as common as repeated appending of lists imposes such a performance penalty, it's time to look at the problem from another angle.
The expression ("a"++)
is a section, a
partially applied function. What is its type?
ghci>
:type ("a" ++)
("a" ++) :: [Char] -> [Char]
Since this is a function, we can use the
(.)
operator to compose it with another
section, let's say ("b"++)
.
ghci>
:type ("a" ++) . ("b" ++)
("a" ++) . ("b" ++) :: [Char] -> [Char]
Our new function has the same type. What happens if we stop composing functions, and instead provide a String to the function we've created?
ghci>
let f = ("a" ++) . ("b" ++)
ghci>
f []
"ab"
We've appended the strings! We're using these partially
applied functions to store data, which we can retrieve by
providing an empty list. Each partial application of
(++)
and (.)
represents an append, but it doesn't
actually perform the append.
There are two very interesting things about this approach.
The first is that the cost of a partial application is constant,
so the cost of many partial applications is linear. The second
is that when we finally provide a []
value to
unlock the final list from its chain of partial applications,
application proceeds from right to left. This keeps the left
operand of (++)
small, and so the overall
cost of all of these appends is linear, not quadratic.
By choosing an unfamiliar data representation, we've avoided a nasty performance quagmire, while gaining a new perspective on the usefulness of treating functions as data. By the way, this is an old trick, and it's usually called a difference list.
We're not yet finished, though. As appealing as difference
lists are in theory, ours won't be very pleasant in practice if
we leave all the plumbing of (++)
,
(.)
, and partial application exposed. We
need to turn this mess into something pleasant to work
with.
Our first step is to use a newtype
declaration to hide
the underlying type from our users. We'll create a new type,
and call it DList. Like a regular list, it will
be a parameterised type.
-- file: ch13/DList.hs newtype DList a = DL { unDL :: [a] -> [a] }
The unDL
function is our
deconstructor, which removes the DL
constructor.
When we go back and decide what we want to export from our
module, we will omit our data constructor and deconstruction
function, so the DList type will be completely
opaque to our users. They'll only be able to work with the
type using the other functions we export.
-- file: ch13/DList.hs append :: DList a -> DList a -> DList a append xs ys = DL (unDL xs . unDL ys)
Our append
function may seem a little
complicated, but it's just performing some book-keeping
around the same use of the (.)
operator that
we demonstrated earlier. To compose our functions, we must
first unwrap them from their DL constructor,
hence the uses of unDL
. We then re-wrap
the resulting function with the DL constructor so
that it will have the right type.
Here's another way of writing the same function, in which
we perform the unwrapping of xs
and
ys
via pattern matching.
-- file: ch13/DList.hs append' :: DList a -> DList a -> DList a append' (DL xs) (DL ys) = DL (xs . ys)
Our DList type won't be much use if we can't convert back and forth between the DList representation and a regular list.
-- file: ch13/DList.hs fromList :: [a] -> DList a fromList xs = DL (xs ++) toList :: DList a -> [a] toList (DL xs) = xs []
Once again, compared to the original versions of these functions that we wrote, all we're doing is a little book-keeping to hide the plumbing.
If we want to make DList useful as a substitute for regular lists, we need to provide some more of the common list operations.
-- file: ch13/DList.hs empty :: DList a empty = DL id -- equivalent of the list type's (:) operator cons :: a -> DList a -> DList a cons x (DL xs) = DL ((x:) . xs) infixr `cons` dfoldr :: (a -> b -> b) -> b -> DList a -> b dfoldr f z xs = foldr f z (toList xs)
Although the DList approach makes
appends cheap, not all list-like operations are easily
available. The head
function has
constant cost for lists. Our DList equivalent
requires that we convert the entire DList to a
regular list, so it is much more expensive than its list
counterpart: its cost is linear in the number of appends we
have performed to construct the DList.
-- file: ch13/DList.hs safeHead :: DList a -> Maybe a safeHead xs = case toList xs of (y:_) -> Just y _ -> Nothing
To support an equivalent of map
, we
can make our DList type a functor.
-- file: ch13/DList.hs dmap :: (a -> b) -> DList a -> DList b dmap f = dfoldr go empty where go x xs = cons (f x) xs instance Functor DList where fmap = dmap
Once we decide that we have written enough equivalents of list functions, we go back to the top of our source file, and add a module header.
-- file: ch13/DList.hs module DList ( DList , fromList , toList , empty , append , cons , dfoldr ) where
In abstract algebra, there exists a simple abstract structure called a monoid. Many mathematical objects are monoids, because the “bar to entry” is very low. In order to be considered a monoid, an object must have two properties.
The rules for monoids don't say what the binary operator must do, merely that such an operator must exist. Because of this, lots of mathematical objects are monoids. If we take addition as the binary operator and zero as the identity value, integers form a monoid. With multiplication as the binary operator and one as the identity value, integers form a different monoid.
Monoids are ubiquitous in Haskell[33]. The Monoid typeclass is defined in
the Data.Monoid
module.
-- file: ch13/Monoid.hs class Monoid a where mempty :: a -- the identity mappend :: a -> a -> a -- associative binary operator
If we take (++)
as the binary
operator and []
as the identity, lists form a
monoid.
-- file: ch13/Monoid.hs instance Monoid [a] where mempty = [] mappend = (++)
Since lists and DLists are so closely related, it follows that our DList type must be a monoid, too.
-- file: ch13/DList.hs instance Monoid (DList a) where mempty = empty mappend = append
Let's try our the methods of the Monoid type class in ghci.
ghci>
"foo" `mappend` "bar"
"foobar"ghci>
toList (fromList [1,2] `mappend` fromList [3,4])
[1,2,3,4]ghci>
mempty `mappend` [1]
[1]
We will have more to say about difference lists and their monoidal nature in the section called “The writer monad and lists”.
Both Haskell's built-in list type and the DList
type that we defined above have poor performance characteristics
under some circumstances. The Data.Sequence
module
defines a Seq container type that gives good
performance for a wider variety of operations.
As with other modules, Data.Sequence
is
intended to be used via qualified import.
-- file: ch13/DataSequence.hs import qualified Data.Sequence as Seq
We can construct an empty Seq using
empty
, and a single-element container using
singleton
.
ghci>
Seq.empty
Loading package array-0.1.0.0 ... linking ... done. Loading package containers-0.1.0.1 ... linking ... done. fromList []ghci>
Seq.singleton 1
fromList [1]
We can create a Seq from a list using
fromList
.
ghci>
let a = Seq.fromList [1,2,3]
The Data.Sequence
module provides some
constructor functions in the form of operators. When we perform
a qualified import, we must qualify the name of an operator in
our code, which is ugly.
ghci>
1 Seq.<| Seq.singleton 2
fromList [1,2]
If we import the operators explicitly, we can avoid the need to qualify them.
-- file: ch13/DataSequence.hs import Data.Sequence ((><), (<|), (|>))
By removing the qualification from the operator, we improve the readability of our code.
ghci>
Seq.singleton 1 |> 2
fromList [1,2]
A useful way to remember the (<|)
and (|>)
functions is that the
“arrow” points to the element we're adding to the
Seq
. The element will be added on the side to which the
arrow points: (<|)
adds on the left,
(|>)
on the right.
Both adding on the left and adding on the right are
constant-time operations. Appending two Seq
s is
also cheap, occurring in time proportional to the logarithm of
whichever is shorter. To append, we use the
(><)
operator.
ghci>
let left = Seq.fromList [1,3,3]
ghci>
let right = Seq.fromList [7,1]
ghci>
left >< right
fromList [1,3,3,7,1]
If we want to create a list from a Seq, we must
use the Data.Foldable
module, which is best
imported qualified.
-- file: ch13/DataSequence.hs import qualified Data.Foldable as Foldable
This module defines a typeclass, Foldable, which Seq implements.
ghci>
Foldable.toList (Seq.fromList [1,2,3])
[1,2,3]
If we want to fold over a Seq, we use the fold
functions from the Data.Foldable
module.
ghci>
Foldable.foldl' (+) 0 (Seq.fromList [1,2,3])
6
The Data.Sequence
module provides a number of
other useful list-like functions. Its documentation is very
thorough, giving time bounds for each operation.
If Seq has so many desirable characteristics, why is it not the default sequence type? Lists are simpler and have less overhead, and so quite often they are good enough for the task at hand. They are also well suited to a lazy setting, where Seq does not fare well.
[31] The type we use for the key must be a
member of the Eq
typeclass.
[32] Non-strict evaluation makes the cost calculation more subtle. We only pay for an append if we actually use the resulting list. Even then, we only pay for as much as we actually use.
[33] Indeed, monoids are ubiquitous throughout programming. The difference is that in Haskell, we recognize them, and talk about them.