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CS 2104 – Prog. Lang. Concepts Functional Programming II

CS 2104 – Prog. Lang. Concepts Functional Programming II. Lecturer : Dr. Abhik Roychoudhury School of Computing From Dr. Khoo Siau Cheng’s lecture notes. +. :. 1. +. 2. :. 1. +. 4. :. 1. 0. 6. []. reduce ( op *) [2,4,6] 1 ==> 2 * (4 * (6 * 1)) ==> 48.

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CS 2104 – Prog. Lang. Concepts Functional Programming II

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  1. CS 2104 – Prog. Lang. ConceptsFunctional Programming II Lecturer : Dr. Abhik Roychoudhury School of Computing From Dr. Khoo Siau Cheng’s lecture notes

  2. + : 1 + 2 : 1 + 4 : 1 0 6 [] reduce (op *) [2,4,6] 1 ==> 2 * (4 * (6 * 1)) ==> 48 reduce (fn (x,y)=>1+y) [2,4,6] 0 ==> 1 + (1 + (1 + 0)) ==> 3

  3. Types: Classification of Values and Their Operators Basic Types TypeValuesOperations bool true,false =, <>, … int …,~1,0,1,2,… =,<>,<,+,div,… real ..,0.0,.,3.14,.. =,<>,<,+,/,… string “foo”,”\”q\””,… =,<>,… Boolean Operations: e1 andalsoe2 e1 orelsee2

  4. Types in ML • Every expression used in a program must be well-typed. • It is typable by the ML Type system. • Declaring a type : 3 : int [1,2] : int list • Usually, there is no need to declare the type in your program – ML infersit for you.

  5. Structured Types Structured Types consist of structured values. • Structured values are built up through • expressions. Eg : (2+3, square 3) • Structured types are denoted by type • expressions. • <type-expr> ::= <type-name> | <type-constant> • | <type-expr>*<type-expr> • | <type-expr><type-expr> • | <type-expr>list • | …

  6. Type of a Tuple (1,2) : int * int (3.14159, x+3,true) : real * int * bool A * B = set of ordered pairs (a,b) DataConstructor : ( , ) as in (a,b) TypeConstructor :*as in A * B In general, (a1,a2,…,an) belongs to A1*A2*…*An.

  7. Type of A List Type Constructor : list [1,2,3] : int list [3.14, 2.414] : real list [1, true, 3.14] : ?? Not well-typed!! Alist= set of all lists of A -typed values. A in A-list refers to any types: (int*int) list : [ ], [(1,3)], [(3,3),(2,1)], … int list list : [ ], [[1,2]], [[1],[0,1,2],[2,3],…

  8. Function TypesDeclaring domain & co-domain fac : int -> int A -> B= set of all functions from Ato B. Type Constructor : -> Data Construction via : 1. Function declaration : fun f x = x + 1 ; 2. Lambda abstraction : fn x => x + 1; Value Selection via function application: f 3  4 (fn x => x + 1) 3  4

  9. Sum of Types Enumerated Types datatypeDays=Mo|Tu|We|Th|Fr|Sa|Su; New Type data / data constructors • Selecting a summand via pattern matching: • cased • ofSa => “Go to cinema” • |Su => “Extra Curriculum” • |_ => “Life goes on”

  10. Combining Sum and Product of Types: Algebraic Data Types Defining an integer binary tree: datatypeIntTree=Leafint| Nodeof(IntTree, int, IntTree); fun height (Leaf x) = 0 | height (Node(t1,n,t2))= 1 + max(height(t1),height(t2)) ;

  11. Some remarks • A functional program consists of an expression, not a sequence of statements. • Higher-order functions are first-class citizen in the language. • It can be nameless • List processing is convenient and expressive • In ML, every expression must be well-typed. • Algebraic data types empowers the language.

  12. Outline • More about Higher-order Function • Type inference and Polymorphism • Evaluation Strategies • Exception Handling

  13. Function with Multiple Arguments • Curried functions accept multiple arguments fun twice f x = f (f x) ; Take 2 arguments Curried function enables partial application. let val inc2 = twice (fn x => x + x) in (inc2 1) + (inc2 2) end; val it = 12 ; Apply 1st argument Apply 2nd argument

  14. Curried vs. Uncurried Curriedfunctions fun twice f x = f (f x) ; twice (fn x => x+x) 3  12 Uncurriedfunctions fun twice’ (f, x) = f (f x) ; twice’ (fn x => x+x, 3)  12

  15. Curried Functions Curried functions provide extra flexibility to the language. compose f g = fn x => f (g x)  compose f g x = f (g x)  compose f = fn g => fn x => f (g x)  compose = fn f => fn g => fn x => f (g x)

  16. Types of Multi-Argument Funs fun f(x,y) = x + y f : int*int -> int fun g x y = x + y g : int -> int -> int (g 3) : int -> int ((g 3) 4) : int Function application isleftassociative; -> is right associative

  17. Outline • More about Higher-order Function • Type inference and Polymorphism • Evaluation Strategies • Exception Handling

  18. Type Inference • ML expressions seldom need type declaration. • ML cleverly infers types without much help from • the user. 2 + 2 ; val it = 4 : int fun succ n = n + 1 ; val succ = fn : int -> int

  19. Helping the Type Inference • Explicit types are needed when type coercion is needed. fun add(x,y : real) = x + y ; fun add(x,y) = (x:real) + y; val add = fn : real*real -> real

  20. Every Expression has only One Type fun f x = if x > 0 then x else [1,2,3] val f = fn : Int -> ??? This is not type-able in ML. • Conditional expression has the same type at • both branch. fun abs(x) = if x>0 then x else 0-x ; val abs = fn : int -> int

  21. tt1 t2t3 t intt2 t3 Example of Type Inference fun f g = g (g 1) type(g) = t = intt2 = t2t3 int = t2, t2 = t3 type(g) = t = int  int type(f) = t  t1 = t  t3 = (int  int)  int

  22. Three Type Inference Rules (Application rule) If f x :t, then x : t’and f : t’ -> t for some new typet’. (Equality rule) If both the types x : t and x : t’can be deduced for a variable x, then t = t’. (Function rule) If t u = t’ u’, then t = t’and u = u’.

  23. Example of Type Inference fun f g = g (g 1) Let g : tg(g (g 1)) : trhs So, by function declaration, we have f : tg-> trhs By application rule, let (g 1): t(g 1) g (g 1) : trhsg : t(g 1) -> trhs. By application rule, (g 1) : t(g 1)g : int -> t(g 1). By equality rule : t(g 1)= int = trhs. By equality rule :tg= int -> int Hence,f : (int -> int) -> int

  24. Parametric Polymorphism Type parameter fun I x = x ; val I = fn : ’a -> ’a • A Polymorphic function is one whose type contains • type parameters. • A poymorphic function can be applied to arguments • of more than one type. (I 3) (I [1,2]) (I square) • Interpretation of val I = fn : ’a -> ’a • for all type ‘a, function I takes an input of type ‘a • and returns a result of the same type ‘a.

  25. Polymorphic Functions • A polymorphic function is one whose type contains type parameter. fun map f [] = [] | map f (x::xs) = (f x) :: (map f xs) Type of map : (’a->’b) -> [’a] -> [’b] map (fn x => x+1) [1,2,3] => [2,3,4] map (fn x => [x]) [1,2,3] => [[1],[2],[3]] map (fn x => x) [“y”,“n”] => [“y”, “n”]

  26. t5t6 t1t2t t4 t4t5 t4t6 Examples of Polymorphic Functions fun compose f g = (fn x => f (g x)) type(f) = t1 = t5t6 type(g) = t2 = t4t5 range(compose) = t = t4t6 type(compose) = t1t2t = (t5t6)  (t4t5)  (t4t6)

  27. Examples of Polymorphic Functions fun compose f g = (fn x => f (g x)) Let x:txf:tfg:tgso compose: tf-> tg->trhs (fn x=>f (g x)):trhs => trhs = tx->t(f(gx)) (g x):t(gx)==> g: tx->t(gx)and tg = tx->t(g x) (f (g x)):t(f(gx)) ==> f:t(gx)->t(f(gx))and tf= t(gx)->t(f(gx)) compose: (t(gx)->t(f(gx)))->(tx->t(gx))->(tx->t(f(gx))) Rename the variables: compose: (’a->’b)->(’c->’a)->(’c->’b)

  28. Outline • More about Higher-order Function • Type inference and Polymorphism • Evaluation Strategies • Exception Handling

  29. Approaches to Expression Evaluation • Different approaches to evaluating an expression may change the expressiveness of a programming language. • Two basic approaches: • Innermost (Strict) Evaluation Strategy • SML, Scheme • Outermost (Lazy) Evaluation Strategy • Haskell, Miranda, Lazy ML

  30. formals body actuals Innermost Evaluation Strategy • To Evaluate the call <name><actuals> : • (1) Evaluate <actuals> ; • (2) Substitute the result of (1) for the formals in the body ; • (3) Evaluate the body of <name> ; • (4) Return the result of (3) as the answer. let fun f x = x + 1 + x in f (2 + 3)end ;

  31. fun f x = x + 2 + x ; f (2+3) ==> f (5) ==> 5 + 2 + 5 ==> 12 fun g x y = if (x < 3) then y else x; g 3 (4/0) ==> g 3  ==>  • Also referred to as call-by-value evaluation. • Occasionally, arguments are evaluated unnecessarily.

  32. Outermost Evaluation Strategy • To Evaluate <name><actuals> : • (1) Substitute actuals for the formals in the body ; • (2) Evaluate the body ; • (3) Return the result of (2) as the answer. fun f x = x + 2 + x ; f (2+3) ==> (2+3) + 2 + (2+3) ==> 12 fun g x y = if x < 3 then y else x ; g 3 (4/0) ==> if 3 < 3 then (4/0) else 3 ==> 3

  33. It is possible toeliminate redundant computation in outermost evaluation strategy. fun f x = x + 2 + x ; f (2+3) ==> x + 2 + x ==> 5 + 2 + x ==> 7 + x ==> 7 + 5 ==> 12 x=(2+3) 5 Note: Arguments are evaluated only when they are needed.

  34. Closer to the meaning of mathematical functions Why Use Outermost Strategy? fun k x y = x ; val const1 = k 1 ; val const2 = k 2 ; • Better modeling of real mathematical objects val naturalNos = let fun inf n = n :: inf (n+1) in inf 1 end ;

  35. Hamming Number List, in ascending order with no repetition, all positive integers with no prime factors other than 2, 3, or 5. 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15,...

  36. n as a prime factor fun scale n [] = [] | scale n (x::xs) = (n*x) :: (scale n xs) scale 2 [1,2,3,4,5] = [2,4,6,8,10] scale 3 [1,2,3,4,5] = [3,6,9,12,15] scale 3 (scale 2 [1,2,3,4,5]) = [6,12,18,24,30]

  37. Merging two Streams fun merge [] [] = [] | merge (x::xs) (y::ys) = if x < y then x :: merge xs (y::ys) else if x > y then y :: merge (x::xs) ys else x :: merge xs ys merge [2,4,6] [3,6,9] = [2,3,4,6,9]

  38. 1 scale 2 :: merge merge scale 3 scale 5 Hamming numbers val hamming = 1 :: merge (scale 2 hamming) (merge (scale 3 hamming) (scale 5 hamming))

  39. Outline • More about Higher-order Function • Type inference and Polymorphism • Evaluation Strategies • Exception Handling

  40. Exception Handling • Handle special cases or failure (the exceptions) • occurred during program execution. • hd []; • uncaught exception hd • Exception can be raised and handled in the program. • exception Nomatch; • exception Nomatch : exn fun member(a,x) = if null(x) then raise Nomatch else if a = hd(x) then x else member(a,tl(x))

  41. fun member(a,x) = if null(x) then raise Nomatch else if a = hd(x) then x else member(a,tl(x)) member(3,[1,2,3,1,2,3]) ; val it = [3,1,2,3] : int list member(4,[]) ; uncaught exception Nomatch member(5,[1,2,3]) handle Nomatch=>[]; val it = [] : int list

  42. Conclusion • More about Higher-order Function • Curried vs Uncurried functions • Full vs Partial Application • Type inference and Polymorphism • Basic Type inference rules • Polymorphic functions • Evaluation Strategies • Innermost • Outermost • Exception Handling is available in ML

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