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PPL Unit-V

The document discusses functional programming languages, emphasizing their design based on mathematical functions and their differences from imperative languages. It covers key concepts such as lambda expressions, higher-order functions, and the characteristics of LISP and Scheme. Additionally, it highlights the features of Python as a dynamically typed language with strong typing, procedural abstraction, and a rich module library.
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0% found this document useful (0 votes)
10 views15 pages

PPL Unit-V

The document discusses functional programming languages, emphasizing their design based on mathematical functions and their differences from imperative languages. It covers key concepts such as lambda expressions, higher-order functions, and the characteristics of LISP and Scheme. Additionally, it highlights the features of Python as a dynamically typed language with strong typing, procedural abstraction, and a rich module library.
Copyright
© © All Rights Reserved
We take content rights seriously. If you suspect this is your content, claim it here.
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Download as PDF, TXT or read online on Scribd
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UNIT-5

Functional programming languages

Functional Programming Languages:


 
The design of the imperative languages is based directly on the von Neumann architecture
 primary concern, rather than the suitability of the language for software
Efficiency is the
development. 
 The design of the functional languages is based on mathematical functions
A solid theoretical basis that is also closer to the user, but
relatively unconcerned with the
architecture of the machines on which programs will run

Mathematical Functions:

Def: A mathematical function is a mapping of members of one set, called the domain set,
to another set, called the range set.

A lambda expression specifies the parameter(s) and the mapping of a function in


the following form f(x) x * x * x for the function cube (x) = x * x * x functions.

– Lambda expressions are applied to parameter(s) by placing the parameter(s) after


the expression

g. (f(x) x * x * x)(3) which evaluates to 27.

Functional Forms:

Def: A higher-order function, or functional form, is one that either takes functions
as parameters or yields a function as its result, or both.

1. Function Composition:

A functional form that takes two functions as parameters and yields a function whose
result is a function whose value is the first actual parameter function applied to the result of the
application of the second Form: h(f )° g which means h (x) f ( g ( x))

2. Construction:

A functional form that takes a list of functions as parameters and yields a list of the
results of applying each of its parameter functions to a given parameter

Form: [f, g]
For f (x) = x * x * x and g (x) = x + 3, [f, g] (4) yields (64, 7)

3. Apply-to-all:
A functional form that takes a single function as a parameter and yields a list of
values obtained by applying the given function to each element of a list of parameters

Form:
For h (x) =x * x * x

f( h, (3, 2, 4)) yields (27, 8, 64)

LISP –

LISP is the first functional programming language, it contains two forms those are:
Data object types: originally only atoms and lists

2. List form: parenthesized collections of sub lists and/or atoms e.g., (A B (C D) E)

Fundamentals of Functional Programming Languages:

The objective of the design of a FPL is to mimic mathematical functions to the greatest
extent possible. The basic process of computation is fundamentally different in a FPL than
in an imperative language

  language, operations are done and the results are stored in variables
In an imperative
for later use
Management of variablesis a constant concern and source of complexity for
imperative programming 
 In an FPL, variables are not necessary, as is the case in mathematics
 
In an FPL, the evaluation of a function always produces the same result given the
same parameters 
This is called referential transparency

A Bit of LISP:

– Originally, LISP was a type less language. There were only two data types, atom and list

– LISP lists are stored internally as single-linked lists

– Lambda notation is used to specify functions and function definitions, function


applications, and data all have the same form.

E.g :,

If the list (A B C) is interpreted as data it is a simple list of three atoms, A, B, and C If it is


interpreted as a function application, it means that the function named A is applied to the
two parameters, B and C

The first LISP interpreter appeared only as a demonstration of the universality of


the computational capabilities of the notation

Scheme:

–A mid-1970s dialect of LISP, designed to be cleaner, more modern, and simpler version
than the contemporary dialects of LISP, Uses only static scoping

– Functions are first-class entities, They can be the values of expressions and elements of lists,
They can be assigned to variables and passed as parameters
Primitive Functions:


Arithmetic: +, -, *, /, ABS, SQRT Ex: (+ 5 2) yields 7
– QUOTE: -takes one parameter; returns the parameter without evaluation

QUOTE is required because the Scheme interpreter, named EVAL, always evaluates
  function. QUOTE is used to
parameters to function applications before applying the
avoid parameter evaluation when it is not appropriate
QUOTE can be abbreviated with the apostrophe prefix operator e.g., '(A B) is
equivalent to (QUOTE (A B)) 
CAR takes a list parameter; returns the first element of that list

e.g., (CAR '(A B C)) yields A (CAR '((A B) C D)) yields (A B)


CDR takes a listparameter; returns the list after removing its first element e.g., (CDR '(A B
C)) yields (B C)

(CDR '((A B) C D)) yields (C D)

CONS takes two parameters, the first of which can be either an atom or a list and the
second of which is a list; returns a new list that includes the 
first parameter as its first
element and the second parameter as the remainder of its result

e.g., (CONS 'A '(B C)) returns (A B C)


LIST - takes any number of parameters; returns a list with the parameters as elements
– Predicate Functions: (#T and () are true and false)
EQ? takes two symbolic parameters; it returns #T if both parameters are atoms and the

two are the same
e.g.,(EQ? 'A 'A) yields #T
(EQ? 'A '(A B)) yields ()

Note that if EQ? is called with list parameters, the result is not reliable Also, EQ? does
not work for numeric atoms

– LIST? takes one parameter; it returns #T if the parameter is an list; otherwise ()

– NULL? takes one parameter; it returns #T if the parameter is the empty list; otherwise ()
Note that NULL? returns #T if the parameter is ()

– Numeric Predicate Functions

=, <>, >, <, >=, <=, EVEN?, ODD?, ZERO?

Output Utility Functions: (DISPLAY expression) (NEWLINE)

– Lambda Expressions
– Form is based on notation e.g.,
(LAMBDA (L) (CAR (CAR L))) L is called a bound variable

– Lambda expressions can be applied e.g.,

((LAMBDA (L) (CAR (CAR L))) '((A B) C D))

– A Function for Constructing Functions DEFINE - Two forms:


– To bind a symbol to an expression

EX:

(DEFINE pi 3.141593)
(DEFINE two_pi (* 2 pi))

To bind names to lambda expressions

EX:

(DEFINE (cube x) (* x x x))

Evaluation process (for normal functions):



Parameters are evaluated, in no particular order

The values of the parameters are substituted into the function body

The function body is evaluated
The value of the last expression in the body is the value of the function (Special forms use

different evaluation process)
Control Flow:

Selection- the special form, IF (IF predicate then_exp else_exp)


e.g.,
(IF (<> count 0) (/ sum count)0)

ML :

A static-scoped functional language with syntax, that is closer to Pascal than to LISP
Uses type declarations, but also does type inferencing to determine the types

of undeclared variables

It is strongly typed (whereas Scheme is essentially type less) and has no type coercions

Includes exception handling and a module facility for implementing abstract data types

Includes lists and list operations

The val statement binds a name to a value (similar to DEFINE in Scheme)

Function declaration form: fun function_name (formal_parameters)
=function_body_expression; e.g., fun cube (x : int) = x * x * x;
Functions that use arithmetic or relational operators cannot be polymorphic--

those with only list operations can be polymorphic
Applications of Functional Languages:

o APL is used for throw-away programs o LISP is used for artificial intelligence
Knowledge representation
o Machine learning
o Natural language processing
Modeling of speech and vision
Scheme is used to teach introductory

– programming at a significant number of universities

Comparing Functional and Imperative Languages Imperative Languages:



Efficient execution o Complex semantics o Complex syntax

Concurrency is programmer designed

– Functional Languages:

Simple semantics

Simple syntax

Inefficient execution

Programs can automatically be made concurrent

Scripting languages

Pragmatics

– Scripting is a paradigm characterized by:

use of scripts to glue subsystems together;

rapid development and evolution of scripts;

modest efficiency requirements;

very high-level functionality in application-specific areas.

– A software system often consists of a number of subsystems controlled or


connected by a script.

In such a system, the script is said to glue the sub systems together

COMMON CHARACTERISTICS OF SCRIPTING LANGUAGES


– Both batch and interactive use

– Economy of expressions

– Lack of declaration; simple scoping rules

– Flexible dynamic typing

– Easy access to other programs


– High level data types

– Glue other programs together

– Extensive text processing capabilities

– Portable across windows, unix ,mac

PYTHON

– PYTHON was designed in the early 1990s by Guido van Rossum.

– PYTHON borrows ideas from languages as diverse as PERL, HASKELL, and the
object- oriented languages, skillfully integrating these ideas into a coherent
whole.

PYTHON scripts are concise but readable, and highly expressive

Python is extensible: if we invoke how to program in C, it is easy to add new built in


function or module to the interpreter, either to perform critical operations at maximum speed of
to link python programs to libraries that may only be available in binary form.

Python has following characteristics.

– Easy to learn and program and is object oriented.

– Rapid application development

– Readability is better

– It can work with other languages such as C,C++ and Fortran

– Powerful interpreter

– Extensive modules support is available

Values and types


– PYTHON has a limited repertoire of primitive types: integer, real, and complex
Numbers.

– It has no specific character type; single-character strings are used instead.

– Its boolean values (named False and True) are just small integers.

– PYTHON has a rich repertoire of composite types: tuples, strings, lists,


dictionaries, and objects.

Variables, storage, and control

– PYTHON supports global and local variables.

– Variables are not explicitly declared, simply initialized by assignment.

– PYTHON adopts reference semantics. This is especially significant for mutable


values, which can be selectively updated.

Primitive values and strings are immutable; lists, dictionaries, and objects are mutable; tuples
are mutable if any of their components are mutable

– PYTHON‘s repertoire of commands include assignments, procedure calls, con-


ditional (if- butnotcase-) commands, iterative (while- and for-) commands, and
exception-handling commands.

Pythons reserved words are:

and assert break class continue def del elif else except exec finally for from global
if import in is lambda not or pass print raise return try while yield

Dynamically typed language:

Python is a dynamically typed language. Based on the value, type of the variable
is during the execution of the program.

Python (dynamic)

C=1

C = [1,2,3]

C(static)

Double c; c = 5.2; C = ―a string….


Strongly typed python language:

Weakly vs. strongly typed python language differs in their automatic conversions.

Perl (weak)

$b = `1.2` $c
= 5 * $b;

Python (strong)

b =`1.2` c= 5* b;

PYTHON if- and while-commands are conventional

Bindings and scope

– A PYTHON program consists of a number of modules, which may be grouped into


packages.
– Within a module we may initialize variables, define procedures, and declare classes

–Within a procedure we may initialize local variables and define local procedures.

– Within a class we may initialize variable components and define procedures


(methods).

– PYTHON was originally a dynamically-scoped language, but it is now statically


scoped

In python, variables defined inside the function are local to that function. In order to change
them as global variables, they must be declared as global inside the function as given below.

S=1

Def myfunc(x,y); Z = 0

Global s; S = 2

Return y-1 , z+1;

Procedural abstraction
– PYTHON supports function procedures and proper procedures.

– The only difference is that a function procedure returns a value, while a proper
procedure returns nothing.

Since PYTHON is dynamically typed, a procedure definition states the name but not the type of
each formal parameter.

Python procedure
Eg :Def gcd (m, n): p,q=m,n while
p%q!=0: p,q=q,p%q return q

Python procedure with Dynamic Typing Eg: def minimax (vals):


min = max = vals[0] for val in vals:

if val < min: min = val

elif val > max: max = val return min, max

Data Abstraction

– PYTHON has three different constructs relevant to data abstraction: packages ,modules ,
and classes

– Modules and classes support encapsulation, using a naming convention to distinguish


between public and private components.

– A Package is simply a group of modules

–A Module is a group of components that may be variables, procedures, and classes

– A Class is a group of components that may be class variables, class methods, and instance
methods.

– A procedure defined in a class declaration acts as an instance method if its first formal
parameter is named self and refers to an object of the class being declared. Otherwise
the procedure acts as a class method.
Separate Compilation

– PYTHON modules are compiled separately.

– Each module must explicitly import every other module on which it depends

– Each module‘s source code is stored in a text file. E g: program.py

– When that module is first imported, it is compiled and its object code is stored in a file
named program.pyc

– Compilation is completely automatic

– The PYTHON compiler does not reject code that refers to undeclared identifiers. Such code
simply fails if and when it is executed

– The compiler will not reject code that might fail with a type error, nor even code that will
certainly fail, such as:

Def fail (x): Print x+1, x[0]

Module Library

– PYTHON is equipped with a very rich module library, which supports string handling,
markup, mathematics, and cryptography, multimedia, GUIs, operating system
services, internet services,compilation, and so on.

– Unlike older scripting languages, PYTHON does not have built-in high-level string
processing or GUI support, so module library provides it

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