CSC/ECE 517 Fall 2012/ch1 1w8 aa
Introduction
Functional Programming
Functional programming treats computation as the evaluation of mathematical functions. It is compute-centric rather than data-centric. Functional programming keeps no global state, does not use for or while loops, and data is immutable****. Instead, everything is done using functions, usually functions that evaluate mathematical expressions. Each of these functions maintain no internal state and will always produce the same output given the same input.
Let's look at an example. Suppose we have a list of numbers and we want to multiply each number in the list by 2. The first approach is the imperitive style:
array[] = {1,2,3,4,5} for(i=0 ; i<array.length; i++){ array[i] = array[i] * 2; }
In the above example, array[] is a global variable. If we fail to check the array length, then a runtime exception occurs which might result in the program being crashed. As far as functional style, there is a function called map(func,seq)(in python language) where the function 'func' is applied to each member of seq. The following code is written in a functional style.
numbers = [1,2,3,4,5] /* define a method called compute on each number in the list */ def compute(var): var = var * 2 return var /* Now call the map function */ L = map(compute,numbers) print L // L will print [1,4,6,8,10]
Notice that there is no global data nor any nested loops and the bound checking is handled internally within the map function. The programmer is relieved of of runtime errors and thus can debug the program easily.
Some advantages of this approach are:
- Easier debugging: Since every thing is broken down into small simple functions, the functions are often easy to debug.
- More compact code: Functional programming typically requires fewer lines of code. Since compution is done by function code reuse is prevelent.
- Nothing depends on state: Because functional programs keep no state information, the functions will always operate the same regardless of the past history of the program.
Object-oriented Programming
Object-oriented programming (OOP) is a programming paradigm organized around interacting "objects"(usually instances of a class) rather than "actions" and data rather than logic. A basic principle of OOP is that a program consists of a list of subroutines which can perform individually.
An object-oriented programming language provides support for the following object-oriented concepts--object, class, interface and inheritance. To illustrate this idea clearly and vividly let's review the following example-- your limbs. The "Limbs" is a class. Your body has two objects of type "limbs", named arms and legs. Their main functions are controlled/ managed by a set of biological signals sent from central nervous system( through an interface). So the nervous system is an interface which your body uses to interact with your limbs. The "limbs" is a well architected class. The "legs" has a subclass which contains "left leg" and "Right leg". The "legs" is being re-used to create the left leg and right leg by slightly changing the properties of it. If the "legs" owns attributes like length, color of skin etc, then the subclass, which contains "left leg" and "right leg" in this case, automatically inherit these attributes( that is called inheritance).
We could code in object-oriented paradigm as:
class Limbs
def initialize(limbs,length,colorofskin) @limbs=limbs @length=length @colorofskin=colorofskin end
end limbs=Limbs.new("legs","100cm","white")
class Legs<Limbs
def initialize(legs,length,colorofskin) super(length,colorofskin) @legs=legs end
end legs=legs.new("left leg")
Object-oriented programming include the following features:
- [1]. A programmer can simply create a new object that inherits many of its features from super-class. And also, they can overwrite existing operations or add new ones.This makes object-oriented programs easier to modify.
- [2].This refers to hiding the internal representation of the object from the outside view. You can hide unnecessary implementation details from the object user. One of the benefits of encapsulation is data protection.
- [3].This allows identical operations to behave differently in different contexts. The operations that can be performed on an object make up its interface. They enable addressing of operations with the same name in different objects. Consider the operator '+', for numbers it will generate the sum, but for strings it will produce a third string which concatenates the input strings.
Mixing Functional and Object-Oriented Programming
Motivation for Mixing
Functional Techniques useful for Object-Oriented Programming
Lambda
Currying
Pattern Matching
Examples of Mixing
Scala
Scala
Scala is a modern multi-paradigm programming language designed to express common programming patterns in a concise, elegant, and type-safe way. It smoothly integrates features of object-oriented and functional languages. Scala was conceived in 2001 and implemented by Martin Odersky.
Features
Statically Typed
Scala belongs to the family of languages which encode the type information of each and every variable in the generated code. The compiler makes sure you are not doing something incorrectly. For example, lets consider the following example of code where the type is not encoded,
In Ruby,
irb(main):001:0> str="Hello World" => "Hello World" irb(main):002:0> puts str.class String irb(main):003:0> str=123 => 123 irb(main):004:0> puts str.class Fixnum
In the above example, first we define 'str' variable to be of type String and then as a number. So basically, no type information is associated with the variable at any point in the program. Hence we can easily reassociate that variable with an object/instance of a different type. This is a feature of all dynamically typed languages(like Ruby, Python, Clojure). However most of the statically typed languages such as Scala, Java, C/C++ do not allow you do so. In Scala,
scala> var str="Hello World" str: java.lang.String = Hello World scala> str=123 <console>:6: error: type mismatch; found : Int(123) required: java.lang.String str=123
Mixed paradigm
Scala is a strange specimen. It is a complete blend of object oriented and functional programming. How can this happen? Functional world advocates immutability but object oriented world is all about state and how do you mutate it to fit your needs. Scala allows you create both mutable and immutable objects. Consider the following example,
val str: String = "Hello World"
In the first line, an immutable version(a misnomer indeed) of str
is being created . Roughly translating the above line to Java is below:
final String str = "Hello World"; //note the extra semi-colon
Consider the next example below,
val list: List[String] = List("Scala", "is", "the coolest", "language", "in the world!")
The same code can be written in Java as below
List<String> mutableList = new ArrayList<String>(); list.add("Scala"); list.add("is"); list.add("the coolest"); list.add("language"); list.add("in the world!"); List<String> immutableList = Collections.immutableList(mutableList);
Compared to Java, Scala reduces the total number of lines you need to type and at the same time looks so much simpler and less verbose. Even though the above example shows immutable collection example, scala also provides mutable collection and object types under the package scala.collection.mutable.*
As it can be observed, even though Scala advocates immutability, it does not restrict you from creating mutable objects. So its the best of both worlds. Another part of functional world is the concept of functions as 'first class members' of the language. Some of the common languages like Ruby, Python and JavaScript all incorporate this feature. In the sense you can pass around functions to methods as a parameter. Enough talking;
Let us have a class say 'Person'
which has properties, name
and another variable age
.
In Java:
class Person{ private String name; private int age; public String getName(){ return name; } public void setName(String s){ this.name = s; } public int getAge(){ return age; } public void setAge(int age){ this.age = age; } }
In Scala:
case class Person(name: String, age: Int)
This single line is equivalent to the above java code! Getters for name
and age
, equals()
, and hashCode()
method are automatically generated for you by the compiler. Isn't this an awesome feature?
Now assume we have a list of persons and we want to filter out all the persons who are of age 23. How would you do that in Java?
List<Person> persons; //has a bunch of person objects in it. List<Person> twentyThree = new ArrayList<Person>(); for(Person p: persons){ if(p.getAge() == 23){ twentyThree.add(p); } }
In Scala:
val twentyThree: List[Person] = persons.filter( _.age == 23)
That's it! In case you are wondering whats going on, filter is a method present on scala.List class and the code block _.age == 23
is a function created on the fly and passed onto the filter method. More precisely its called a closure - a functional concept which can be emulated in java only using anonymous inner classes. Scala's compiler transforms our one line function into some anonymous inner classes when generating java byte code, allowing developers to define functions in a simple manner.
In fact, every function is an object in Scala. Scala's standard library has a number of functions which are objects themselves.
Sophisticated Syntax/Features
Sophisticated syntax and features are present in other functional languages like Haskell, (O)Caml and Erlang. Consider the following example,
val name = "Jackie Chan" println(name.getClass) //prints out String.
Previously we saw that Scala is a statically typed language and yet in the above example we don't specify what type name
is. In Java, you would type in the following:
String name = "Jackie Chan"
In Java you specify what type the name variable is, but the scala compiler can automatically detect the type of the variable even if you don't specify it. Consider the following example,
case class Person(name: String, age: Int) val persons = List( Person("Jackie Chan", 51), Person("Jet Li", 41), Person("RajniKanth", 51), Person("Kamal Hasan", 44), Person("Martin Odersky", 18), Person("Steve Yegge", 23)) //notice that you don't have to use 'new' keyword to create new instances. This is taken care of by the companion objects.
The above lines of code create a list with 6 different persons(An immutable list)
Now, just like ruby, scala supports the concepts of closure. Let's see what it is.
val twentyThree: List[Person] = persons.filter( { p: Person => p.age == 3})
In the above set of lines, the code within the '{ }' brackets is a function's body. The compiler created a function which takes a single argument and returns either true or false.
A Scalable Language
In almost all programming languages, there is a necessity to profile the running time of the procedures and tune its performance. The old way of doing things in Java would be:
public class Main{ public static int factorial(int x){ if(x == 0 || x == 1) return 1 else return x * factorial(x-1) } public static void main(String [] args){ long beforeTime = System.currentTimeMillis(); int result = factorial(5); System.out.println("Total time taken to execute factorial(5) is " + (System.currentTimeMillis() - result)+"ms"); System.out.println("factorial(5) = " + result); } }
However, if you want to find out the execution time of some other method, you would have to type in all the above lines again. So much for code re-use or DRY (dont't repeat yourself)! Lets see how its done in Scala.
object Main{ def main(args: Array[String]){ def factorial(x: Int):Int = x match{ case 0 | 1 => 1 case _ => x * factorial(x-1) } import System.currentTimeMillis def timeIt(msg: String = "Time to execute is: ")(func: => Unit){ val before = currentTimeMillis func println(msg + (currentTimeMillis - before) + "ms") } timeIt("Total time taken to execute factorial(5) is "){ val result = factorial(5) println("factorial(5) = " + result) } } //would print: factorial(5) = 120 // Total time taken to execute factorial(5) is 1ms
That's not right! The function timeIt
looks like a feature built into the language. Try saving the above code into a separate file and run it - It will still work. Using this feature, it is possible to build powerful DSL languages which can run at full speed on JVM.
Ruby allows you to add new methods to objects. This feature is often called as Monkey Patching because you are splitting open the class and adding/overriding methods (in)|(to) the class. Often this leads to unexpected behavior at runtime because, other libraries including into build path may depend on some methods which you changed. Scala provides yet another feature called implicits.
In Java, String
class is final
so there is no way you can add new methods to it. But with implicits you can do more! Suppose you have some text in memory and you know it represents a number. But in Java the usual way to convert string to int is to do a Integer.parseInt(string)
which seems so unnecessary. Let us make our lives easier...
implicit def strToInt(str: String) = new { def asInt = Integer.parseInt(str) } val str = "1234" println(str.asInt * 3) //prints out 3702
The above code gives us an impression as if String class has gained new asInt
method. Can static object oriented languages do this? No! Infact scala cheats by calling our implicits to convert it into a different object as and when needed.
The above functionalities are purely object oriented, yet they are safe. They don't pollute the global namespace, unlike Ruby or Python.
Ruby
Clojure
Conclusion
References
Mixing Functional & O-O code
This chapter deals with the mixing of functional and object-oriented programming paradigms. We start with listing the different programming paradigms available today. We introduce functional and object-oriented approaches briefly and then discuss the advantages of one over the other. Following this, we discuss some aspects and features of mixing both the approaches. Finally, we talk about few languages that constitute such a mix.
Programming Paradigms Today
Several programmatic approaches to solve a particular task lead to distinct programming paradigms like,
- Imperative Programming
- Functional programming
- Object Oriented programming
- Logical programming, etc.
Lets focus on functional and object oriented programming approaches.
Functional Programming
Functional programming is the task of decomposing a problem into a number of functions. Selectively executing these functions results in the solution to the problem. The functions mostly behave as mathematical. For given set of inputs the program should always return the same output. It usually concentrates on what type of problem we are dealing with rather than on the details of how to solve the problem. For example lets say there is a function which calculates area of a square. If we use it six times then we end up with area of a cube. Thus functional programming helps to build complex systems.
Approach
Expressions are the collection of variables and operations resulting in a single value this also deals with the way of solving the problem as expressions. Hence also called Expression related programming. It is structured as expression where each expression can be encapsulated in another yielding the result. Making the change in data structures as the program runs is called side effects. Purely functional language has no side effects. Language like Haskell is a pure functional language . Some languages need many approaches for achieving the desired result. Such languages are multi-paradigm. Examples for such languages are C++, Python,Lisp. Its like evaluating an expression and use the resulting value for something.
Structure of functional programming :
(fn2 ( fn1 ()[input list] ) []) => fn1 takes input list and the output of fn1 is used as input to fn2. Its a schematic representation of how functional programming works.
Functional programming feature (Python) :
m = map(lambda i : i*i , numbers)
where numbers is an array of numbers and lambda is closure.
Python has some functions like map, filter, reduce to support functional programming style. In the example above, the 'map' is a high-order function that takes a function and an array of numbers as input. The lambda takes i as input and returns i*i as output. Every result returned is appended to a list and produced as output. In functional programming, the programmer is given a natural framework for developing smaller, simpler, and more general modules, which are then glued together.
Object Oriented Programming
Object-oriented programming is a programming technique where everything is defined as an object. Objects are well-defined discrete bundles of data(attributes) and the associated functions(behavior). They are devised to resemble real-life objects and are uniquely identifiable by a name. The attributes could be of simple datatype(int, String, Boolean) or objects themselves. The behavior is defined by methods to use and manipulate the attributes. The values of attributes of an object at an instant is the state of the object. OO Programming allows objects to have their state retained throughout the code until manipulated otherwise. Objects are capable of housekeeping their own states, interacting and establishing relationships with other objects, inheriting, etc.
Fundamental concepts
A class is a user-defined datatype that provides implementation details to define the attributes and their properties. It is an abstract representation of an object(i.e.,) like a mold for objects. An instance is an executable copy of a class. They are the actual objects created using the ‘class mold’ on run time. Methods are a set of procedural statements or functions to define the behavior of an object, convey the current state, modify values of the attributes, etc.
Example :
An object in Java might look like this:
public class Person {
private String name; public Person() { } public void setName(String name) { this.name = name; } public String getName() { return this.name; }
}
Here, OO Programming allows the programmer to set the name attribute of the class Person and get the name whenever needed in the code. An object of this class Person will remain in memory forever as long as there is a reference to it. As OO Programming allows objects to have their state retained, the value of the name attribute for a particular Person object remains the same across any part of the code until it is set differently.
Features
Three primary characteristics of object oriented programming are Encapsulation, Polymorphism, and Inheritance. Encapsulation is the ability of objects to hide visibility of their attributes and behavior, thereby providing service independent of implementation. Polymorphism allows identical operations to behave differently in different contexts. The operations that can be performed on an object make up its interface. They enable addressing of operations with the same name in different objects. Inheritance is one where an existing type can be used to derive a new type. Derived types inherit the data and operations of the super-type. And also, they can overwrite existing operations or add new ones.
There are other important features of O-O programming like message passing, abstraction, delegation, etc.
Now, we have seen both the approaches and their features in brief. Lets discuss the advantages of one over the other.
Advantages
Functional Approach over OO Approach[8]
- Functional programming solves the problem with lesser number of lines of code than the OO programming style.
- There is no side effect as they use immutable data structures also called Persistent Data Structure which will have no change in the state of variables. Hence program dont have to depend on history.
- There is no limit in the numeric types used as opposed to OO languages which mainly depend on primitive data types.
- A programmer is given the freedom to think in terms of what to solve in the problem rather than concentrating on how to solve and the flow of the program.
- Suitable for calculation intensive programs.
OO Approach over Functional Approach
- Everything can be represented in an object and it has the attributes associated with it and hence the state of the object is known at any time.
- A complex system can be subdivided into modules of objects where as in functional approach, many functions inter operate to form a complex system.
- Re-usability (i.e.) OO approach enables programmers to create new objects that inherits many of its features from existing objects. This makes object-oriented programs easier to modify than functional.
- Debugging in Object Oriented environment is easy compared with functional approach where a small error in one function causes the whole system (i.e. all the functions) to fail.
- Suitable for making application-oriented software.
Both the approaches have their advantages and disadvantages. What if we could get the best of both the worlds? The next section deals with the aspects and features of how well both the approaches are mixed together in some languages.
Mixing Functional & OO Code - Best of both the worlds
Languages that are a mix of functional and object oriented approaches(eg. Scala[1], Clojure[10], etc.) make use of best of both the worlds. They support various aspects of functional and object oriented approaches. They have a bunch of functional approach features[6], which object oriented programming languages(like Java) lack which includes closures. Closures are first-class functions with free variables that are bound in the lexical environment. These languages also sport a very malleable syntax that makes them well suited for "domain specific languages" with the benefits of static typing. They are more expressive, extensible and allow reuse of programming abstractions.
Certain languages like Scala, Clojure, etc run on Java Virtual Machine(JVM) ensuring portability to all underlying platforms. They even support immutable objects. In Scala, new language constructs can be added in the form of libraries. They allow safe reuse[9] of programming abstractions and type-safe extension of software.
Lambda
A lambda[5] expression is an anonymous function that contain expressions and statements, and can be used to create delegates or expression types. Such kind of anonymous function can be defined and passed around as easily as other data types and can be used to contain functionality that need not be named. Some notable examples include closures[5] and currying. Lambda functions with no name can be called using the variable assigned to it.
g = lambda x: x*2 g(3)=6
We can have lambda function without assigning it to a variable which can be used as inline-function.
(lambda x: x*2)(3)
In Clojure as a functional language, the creation of a chunk of behavior that can be assigned to a variable (known as a lambda) is trivial. Below are two ways to create a lambda that returns the square of its argument.
(def square1 (fn [n] (* n n))) (def square2 #(* % %))
Currying
Currying transforms a function that takes multiple parameters into a chain of functions, each taking a single parameter. It reuses a partially applied function where the function is originally defined as accepting n parameters.It can be interpreted as the technique to decompose a function that takes n parameters into n function each of them taking 1 parameter. For example to say in algebraic terms,consider the function f which takes 3 parameters x,y,z and Currying means that we can rewrite the function as a composition of 3 functions:
f(x,y,z) = 4*x+3*y+2*z f(x)(y)(z) = 2*z+(3*y+(4*x))
In Scala, currying takes advantage of Scala’s syntactic sugar. Below is a currying example in Scala. This function creates a multiplier function which takes two arguments and partially defines it by assigning a constant to one argument and assigning it to a variable .Later the function is called by assigning the second argument.
def multiplier(i: Int)(factor: Int) = i * factor => method named multiplier which takes two parameters is defined val byFive = multiplier(5) _ => The method is redefined with accepting one parameter and store it in a variable. val byTen = multiplier(10) _ scala> byFive(2) => Method called by giving the second parameter. res4: Int = 10 scala> byTen(2) res5: Int = 20
Less Verbosity
In Java each variable should have its type defined beforehand. Whereas in languages like Scala, it is more concise and easier to read than the equivalent Java.
For example, a Map can be created with a simple syntax in Scala,Clojure than in Java:
Java Map<String, Integer> nMap = new HashMap<String, Integer>(); nMap.put("one", 1); nMap.put("two", 2); nMap.put("three", 3); |
Scala var nMap = Map("one" -> 1, "two" -> 2, "three" -> 3) |
Clojure (doto (new Java.util.HashMap)(.put “a” 1)(.put “b” 2)) |
Here, Scala compiler knows that nMap uses Strings as keys, and Integers as values. Unlike Java, this need not be specified beforehand. Scala could figure it out itself. Moreover, Scala will give an error if a different key-value pair is tried to insert. This is called "type inference". This prevents a whole class of bugs at run time just like Java but with less verbosity. In a similar way Clojure also involves only few lines of code compared with the object oriented Java language which takes many lines of code.A simple Clojure example and the associated Java code : Example
(defn blank? [s] (every? #(Character/isWhitespace %) s))
The innermost function Character/isWhiteSpace checks the first argument % for any whitespace and returns true if it is. every? invoke the above inner function for all elements in the collection s.It has no variables, no branches etc.
Java code isBlank() method checks to see whether a string is blank or contains only whitespace.
public class Stringcheck{ public static boolean isBlank(String str){ int len; if(str==null || (strlen =str.length())==0) return true; for(int i=0; i<strlen;i++) { if((Character.isWhitespace(str.charAt(i))==false)){ return false; } } return true; } }
Pattern Matching
To say simply, a Pattern matching is a technique to search string for the occurrence of any patterns or regularity. Pattern matching is an elegant way to decompose objects into their constituent parts for processing.Many languages support the concept of pattern matching. Perl supports pattern matching using the pattern definition mini language called regular expressions, also called regexes or REs, which is borrowed from the regular expressions used in many Unix tools, such as grep() and sed().The risk that the parts of an object might be changed outside of the control of the enclosing object is avoided. For example, if there is a Person class that contains a list of addresses, it will not be an issue to expose that list to clients if the list is immutable. The users will not be able to change the list unexpectedly.Given below is a simple example for pattern matching used in Perl:
$mystring = "Hello world!"; // Perls way of assigning string to a variable. if($mystring =~ m/World/) { print "Yes"; } // Checks the string stored in variable mystring has the string "World". $mystring =~ s/world/mom/; // Replaces the string "world" stored in mystring to mom.
Another sample of regular expression in java :
String mystring="Hello World" ; Pattern str = Pattern.compile("\\w+"); => Pattern stored for matching. Matcher fit = str.matcher(mystring); => Matcher class which perform matching of the string with the pattern defined. if(fit.matches())
As languages like Scala and Clojure support procedural code, pattern matching is done as equal or with less difficulty compared with Java which needs to use regex. Scala can even be embedded into XML as its syntax is somewhat similar.Given below an overview of how regular expression is achieved in Clojure. Data are manipulated in Clojure through the sequence called seq which is a logical list. Clojure can access java collections, its collections, Regular expression matches via the seq also called seq-able. Clojure's regular expression uses java.util.regex library at the lowest level. For achieving that the keyword re-seq is used.
Syntax: (re-seq regexp string) Example (re-seq #"\w+" "Hello World") => ("Hello" "World") => #"\w+" represents the java.util.regex.Pattern
Java Interoperability
Considering Clojure, it gives clean, simple and direct access to java and can access Java API directly.Clojure doesnot wrap Java's string functions. We can call using Java interop forms. It provides syntax for accessing Java elements like classes, instances, constructors, methods and fields and can also wrap Java API. The “.” dot special form is used for accessing Java. Some Clojure syntax which can access Java API:
Java | Clojure |
---|---|
new Widget(“red”) | (new Widget “red”) |
Math.PI | (.Math PI) or Math/PI |
System.currentTimeMillis() | (.System currentTimeMillis) or System/currentTimeMillis |
rnd.nextInt() | (.rnd nextInt) or (.nextInt rnd) |
Clojure pass functions as arguments to other functions. But Java does not support this. So Clojure provides a member function memfn macro to wrap methods or can use anonymous function to wrap a method call.
(map (memfn toUpperCase) [“a” ,”short”,”message”])
or
(map #(.toUpperCase %)[“a”,”short”,”message”]) => #(body) represents the anonymous function in Clojure.
For example,
(def the-digits (map #(Integer. (str %))(filter #(Character/isDigit %) (seq big-num-str)))) where (def big-num-str (str "123785334434se9088af8309304293872adbcdfd”))
The above code extracts the integers from string and discards the non-numeric characters. Lets look at the functions defined in the example. There are totally five functions defined.They are
(seq big-num-str) => get each character defined in big-num-str (Character/isDigit %) => Checks whether the input is an integer (filter #()) => Filter each string from str (map #(Integer. (str %))) => Change the string to integer (def the-digits) => Output the integers only in a string of characters.
Here,
#(Character/isDigit) represents the Java method Character.isDigit() and #(Integer.(str %)) represents the new java.lang.Integer(str(%))
Most of the Clojure library functions have defined semantics for objects of Java types. contains? and .get work on Java’s Maps, arrays, Strings, count works on Java Strings, Collections and arrays. Clojure is built around these aspects. It avails the performance of JVM and the richness of both the core APIs and the numerous third-party libraries written in the Java language and restrained from reinventing them.
Multiple Inheritance
Multiple Inheritance2 is the concept of using the methods and variables of more than one superclass to a sub class.Java was designed without multiple inheritance. But Java supports the solution of problems commonly solved with multiple inheritance in other ways with help of interfaces where the methods defined in it are not implemented.In Scala, classes are extended by subclassing and a flexible mixin-based composition mechanism as a clean replacement for multiple inheritance in Java.Lets see how multiple inheritance achieved in Scala:
As interfaces in Java, Scala allows traits but has some methods partially implemented. The only difference to classes is the traits may not have constructor parameters.
trait Similarity { def isSimilar(x: Any): Boolean // not implemented def isNotSimilar(x: Any): Boolean = !isSimilar(x) //implemented method }
This trait defines two methods isSimilar and isNotSimilar where isSimilar does not provide a concrete method implementation (it is abstract in the terminology of Java), and the method isNotSimilar defines a concrete implementation. Consequently, classes that integrate this trait only have to provide a concrete implementation for isSimilar.
class Point(xc: Int, yc: Int) extends Similarity { var x: Int = xc var y: Int = yc def isSimilar(obj: Any) = //need to implement the method here obj.isInstanceOf[Point] && obj.asInstanceOf[Point].x == x }
object TraitsTest extends Application { val p1 = new Point(2, 3) val p2 = new Point(2, 4) val p3 = new Point(3, 3) println(p1.isNotSimilar(p2)) println(p1.isNotSimilar(p3)) //uses the already defined method println(p1.isNotSimilar(2)) }
These are some of the aspects and traits of mixing functional and object-oriented approaches. As we discussed in the advantages section, both the approaches have their benefits and limitations. Mixing them aspect-wise enables the above features in such languages. Lets discuss those languages briefly in the next section.
Languages Supporting Functional and OO code
OCaml and F#[7] are some of the languages which support both functional and object oriented programming. OCaml is as fast as C and its featured as Haskell which is a pure functional language. F#[3] is a dynamically typed language which can run on .NET framework and has supported immutable types i.e. tuples, records, discriminated unions and lists to work in Functional programming. It has functions that can either be in curried or in uncurried form. As in functional language it can pass functions as arguments to other functions, resulting in higher order functions. It also supports lambda functions and closures. F#,behaves like other .NET languages as both in imperative and object oriented style.
Clojure[10] is also a functional programming language and it is a dialect of Lisp. It is not a pure functional language and it is a dynamically typed language. Just like Java it runs on JVM platform. But its syntax differs from Java. It is represented as :
(functions arguments...)
The function followed by its arguments is enclosed in paranthesis. It has features like immutable data structures, high-order functions and recursion, easy and fast java interoperability.
Python and Ruby are also the programming languages which offer the mix of functional and OO languages. But these languages doesn't support the algebraic data types and pattern matching.
Conclusion
The above aspects of functional and object oriented programming techniques discuss some if their merits and demerits. Mixing them produces a new programming paradigm which leads to a new dimension in programming. A few fundamental concepts are explored in Clojure and Scala here. The ability of Clojure and Scala to run in JVM platform makes them more preferable than others in the market. Some of the merits like closure, less verbosity, high order functions, currying along with interoperation with previously written libraries in these languages make them more efficient and useful. There are also other languages which support functional and object oriented techniques. Mixing the approaches, evolve a new dimension in programming which is practical and opens doors to more exploration.
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