||This article may be in need of reorganization to comply with Wikipedia's layout guidelines. (November 2012)|
- 1 Overview
- 2 History
- 3 Fundamental features and concepts
- 4 Additional features
- 5 Formal semantics
- 6 OOP languages
- 7 Design patterns
- 8 Criticism
- 9 See also
- 10 References
- 11 Further reading
- 12 External links
||The neutrality of this section is disputed. (January 2014)|
Object-oriented programming is an approach to designing modular, reusable software systems. Although discussions of object-oriented technology can get trapped in the details of one language vs. the other, the real key to the object-oriented approach is that it is a modelling approach first. The object-oriented approach is considered a logical extension of good design practices that go back to the very beginning of computer programming rather than being revolutionary as claimed by some proponents. Object-orientation is simply the logical extension of older techniques such as structured programming and abstract data types. An object is an abstract data type with the addition of polymorphism and inheritance.
Rather than structure programs as code and data, an object-oriented system integrates the two using the concept of an "object". An object has state (data) and behavior (code). Objects correspond to things found in the real world. So for example, a graphics program will have objects such as circle, square, menu. An online shopping system will have objects such as shopping cart, customer, product. The shopping system will support behaviors such as place order, make payment, and offer discount. The objects are designed as class hierarchies. So, for example, with the shopping system there might be high level classes such as electronics product, kitchen product, and book. There may be further refinements for example under electronic products: CD Player, DVD player, etc. These classes and subclasses correspond to sets and subsets in mathematical logic.
The goals of object-oriented programming are:
- Increased understanding.
- Ease of maintenance.
- Ease of evolution.
The overall understanding of the system is increased because the semantic gap—the distance between the language spoken by developers and that spoken by users—is lessened. Rather than talking about database tables and programming subroutines, the developer talks about things the user is familiar with: objects from their application domain.
Object orientation eases maintenance by the use of encapsulation and information hiding. One of the most common sources of errors in programs is when one part of the system accidentally interferes with another part. For example, in the very earliest days of programming, it was common for developers to use "go to" statements to jump to arbitrary locations within only a few routines and functions. Critics called this "spaghetti code" because it is disorganized. Structured programming addresses this by encouraging the use of procedures and subroutines. Appropriate usage sections off responsibility for individual blocks to implement separate functionality. So, for example, one would know that the square root function was separate from the launch missiles function, and a change to one could not affect the other.
Object-orientation takes this to the next step. It essentially merges abstract data types with structured programming and divides systems into modular objects which own their own data and are responsible for their own behavior. This feature is known as encapsulation. With encapsulation, not only can the "square root" and "launch missiles" functions not interfere with each other, but also the data for the two are divided up so that changes to one object cannot affect the other. Note that all this relies on the various languages being used appropriately, which, of course, is never certain. Object-orientation is not a software silver bullet.
In addition to providing ease of maintenance, encapsulation and information hiding provide ease of evolution as well. Defining software as modular components that support inheritance makes it easy both to re-use existing components and to extend components as needed by defining new subclasses with specialized behaviors. This goal of being easy to both maintain and reuse is known in the object-oriented paradigm as the "open closed principle". A module is open if it supports extension (e.g. can easily modify behavior, add new properties, provide default values, etc.). A module is closed if it has a well defined stable interface that all other modules must use and that limits the interaction and potential errors that can be introduced into one module by changes in another.
The object-oriented approach encourages the programmer to place data where it is not directly accessible by the rest of the system. Instead, the data is accessed by calling specially written functions, called methods, which are bundled with the data. These act as the intermediaries for retrieving or modifying the data they control. The programming construct that combines data with a set of methods for accessing and managing that data is called an object. The practice of using subroutines to examine or modify certain kinds of data was also used in non-OOP modular programming, well before the widespread use of object-oriented programming.
An object-oriented program usually contains different types of objects, each corresponding to a real-world object or concept such as a bank account, a hockey player, or a bulldozer. A program might contain multiple copies of each type of object, one for each of the real-world objects the program deals with. For instance, there could be one bank account object for each real-world account at a particular bank. Each copy of the bank account object would be alike in the methods it offers for manipulating or reading its data, but the data inside each object would differ, reflecting the different history of each account.
Objects can be thought of as encapsulating their data within a set of functions designed to ensure that the data is used appropriately, and to assist in that use. The object's methods typically include checks and safeguards specific to the data types the object contains. An object can also offer simple-to-use, standardized methods for performing particular operations on its data, while concealing the specifics of how those tasks are accomplished. In this way, alterations can be made to the internal structure or methods of an object without requiring that the rest of the program be modified. This approach can also be used to offer standardized methods across different types of objects. As an example, several different types of objects might offer print methods. Each type of object might implement that print method in a different way, reflecting the different kinds of data each contains, but all the different print methods might be called in the same standardized manner from elsewhere in the program. These features become especially useful when more than one programmer is contributing code to a project or when the goal is to reuse code between projects.
Terminology invoking "objects" and "oriented" in the modern sense of object-oriented programming made its first appearance at MIT in the late 1950s and early 1960s. In the environment of the artificial intelligence group, as early as 1960, "object" could refer to identified items (LISP atoms) with properties (attributes); Alan Kay was later to cite a detailed understanding of LISP internals as a strong influence on his thinking in 1966. Another early MIT example was Sketchpad created by Ivan Sutherland in 1960–61; in the glossary of the 1963 technical report based on his dissertation about Sketchpad, Sutherland defined notions of "object" and "instance" (with the class concept covered by "master" or "definition"), albeit specialized to graphical interaction. Also, an MIT ALGOL version, AED-0, linked data structures ("plexes", in that dialect) directly with procedures, prefiguring what were later termed "messages", "methods" and "member functions".
The formal programming concept of objects was introduced in the 1960s in Simula 67, a major revision of Simula I, a programming language designed for discrete event simulation, created by Ole-Johan Dahl and Kristen Nygaard of the Norwegian Computing Center in Oslo. Simula 67 was influenced by SIMSCRIPT and C.A.R. "Tony" Hoare's proposed "record classes". Simula introduced the notion of classes and instances or objects (as well as subclasses, virtual methods, coroutines, and discrete event simulation) as part of an explicit programming paradigm. The language also used automatic garbage collection that had been invented earlier for the functional programming language Lisp. Simula was used for physical modeling, such as models to study and improve the movement of ships and their content through cargo ports. The ideas of Simula 67 influenced many later languages, including Smalltalk, derivatives of LISP (CLOS), Object Pascal, and C++.
The Smalltalk language, which was developed at Xerox PARC (by Alan Kay and others) in the 1970s, introduced the term object-oriented programming to represent the pervasive use of objects and messages as the basis for computation. Smalltalk creators were influenced by the ideas introduced in Simula 67, but Smalltalk was designed to be a fully dynamic system in which classes could be created and modified dynamically rather than statically as in Simula 67. Smalltalk and with it OOP were introduced to a wider audience by the August 1981 issue of Byte Magazine.
In the 1970s, Kay's Smalltalk work had influenced the Lisp community to incorporate object-based techniques that were introduced to developers via the Lisp machine. Experimentation with various extensions to Lisp (such as LOOPS and Flavors introducing multiple inheritance and mixins) eventually led to the Common Lisp Object System, which integrates functional programming and object-oriented programming and allows extension via a Meta-object protocol. In the 1980s, there were a few attempts to design processor architectures that included hardware support for objects in memory but these were not successful. Examples include the Intel iAPX 432 and the Linn Smart Rekursiv.
In 1985, Bertrand Meyer produced the first design of the Eiffel language. Focused on software quality, Eiffel is among the purely object-oriented languages, but differs in the sense that the language itself is not only a programming language, but a notation supporting the entire software lifecycle. Meyer described the Eiffel software development method, based on a small number of key ideas from software engineering and computer science, in Object-Oriented Software Construction. Essential to the quality focus of Eiffel is Meyer's reliability mechanism, Design by Contract, which is an integral part of both the method and language.
Object-oriented programming developed as the dominant programming methodology in the early and mid 1990s when programming languages supporting the techniques became widely available. These included Visual FoxPro 3.0, C++, and Delphi. Its dominance was further enhanced by the rising popularity of graphical user interfaces, which rely heavily upon object-oriented programming techniques. An example of a closely related dynamic GUI library and OOP language can be found in the Cocoa frameworks on Mac OS X, written in Objective-C, an object-oriented, dynamic messaging extension to C based on Smalltalk. OOP toolkits also enhanced the popularity of event-driven programming (although this concept is not limited to OOP). Some[who?] feel that association with GUIs (real or perceived) was what propelled OOP into the programming mainstream.
At ETH Zürich, Niklaus Wirth and his colleagues had also been investigating such topics as data abstraction and modular programming (although this had been in common use in the 1960s or earlier). Modula-2 (1978) included both, and their succeeding design, Oberon, included a distinctive approach to object orientation, classes, and such. The approach is unlike[how?] Smalltalk, and very unlike[how?] C++.
Object-oriented features have been added to many previously existing languages, including Ada, BASIC, Fortran, Pascal, and COBOL. Adding these features to languages that were not initially designed for them often led to problems with compatibility and maintainability of code.
More recently, a number of languages have emerged that are primarily object-oriented, but that are also compatible with procedural methodology. Two such languages are Python and Ruby. Probably the most commercially-important recent object-oriented languages are Visual Basic.NET (VB.NET) and C#, both designed for Microsoft's .NET platform, and Java, developed by Sun Microsystems. Each of these two frameworks shows, in its own way, the benefit of using OOP by creating an abstraction from implementation. VB.NET and C# support cross-language inheritance, allowing classes defined in one language to subclass classes defined in the other language. Developers usually compile Java to bytecode, allowing Java to run on any operating system for which a Java virtual machine is available. VB.NET and C# make use of the Strategy pattern to accomplish cross-language inheritance, whereas Java makes use of the Adapter pattern.
Just as procedural programming led to refinements of techniques such as structured programming, modern object-oriented software design methods include refinements such as the use of design patterns, design by contract, and modeling languages (such as UML).
Fundamental features and concepts 
A survey by Deborah J. Armstrong of nearly 40 years of computing literature identified a number of fundamental concepts, found in the large majority of definitions of OOP.
Not all of these concepts appear in all object-oriented programming languages. For example, object-oriented programming that uses classes is sometimes called class-based programming, while prototype-based programming does not typically use classes. As a result, a significantly different yet analogous terminology is used to define the concepts of object and instance.
Benjamin C. Pierce and some other researchers view any attempt to distill OOP to a minimal set of features as futile. He nonetheless identifies fundamental features that support the OOP programming style in most object-oriented languages:
- Dynamic dispatch – when a method is invoked on an object, the object itself determines what code gets executed by looking up the method at run time in a table associated with the object. This feature distinguishes an object from an abstract data type (or module), which has a fixed (static) implementation of the operations for all instances. It is a programming methodology that gives modular component development while at the same time being very efficient.
- Encapsulation (or multi-methods, in which case the state is kept separate)
- Subtype polymorphism
- Object inheritance (or delegation)
- Open recursion – a special variable (syntactically it may be a keyword), usually called
self, that allows a method body to invoke another method body of the same object. This variable is late-bound; it allows a method defined in one class to invoke another method that is defined later, in some subclass thereof.
Similarly, in his 2003 book, Concepts in programming languages, John C. Mitchell identifies four main features: dynamic dispatch, abstraction, subtype polymorphism, and inheritance. Michael Lee Scott in Programming Language Pragmatics considers only encapsulation, inheritance and dynamic dispatch.
Additional concepts used in object-oriented programming include:
- Classes of objects
- Instances of classes
- Methods which act on the attached objects.
- Message passing
Decoupling refers to careful controls that separate code modules from particular use cases, which increases code re-usability. A common use of decoupling is to polymorphically decouple the encapsulation (see bridge pattern and adapter pattern) – for example, using a method interface that an encapsulated object must satisfy, as opposed to using the object's class.
- Encapsulation enforces modularity
- Encapsulation refers to the creation of self-contained modules that bind processing functions to the data. These user-defined data types are called "classes", and one instance of a class is an "object". For example, in a payroll system, a class could be Manager, and Pat and Jan could be two instances (two objects) of the Manager class. Encapsulation ensures good code modularity, which keeps routines separate and less prone to conflict with each other.
- Inheritance passes "knowledge" down
- Classes are created in hierarchies, and inheritance lets the structure and methods in one class pass down the hierarchy. That means less programming is required when adding functions to complex systems. If a step is added at the bottom of a hierarchy, only the processing and data associated with that unique step must be added. Everything else above that step is inherited. The ability to reuse existing objects is considered a major advantage of object technology.
- Polymorphism takes any shape
- Object-oriented programming lets programmers create procedures for objects whose exact type is not known until runtime. For example, a screen cursor may change its shape from an arrow to a line depending on the program mode. The routine to move the cursor on screen in response to mouse movement can be written for "cursor", and polymorphism lets that cursor take simulating system behaviour.
Objects are the run-time entities in an object-oriented system. They may represent a person, a place, a bank account, a table of data, or any item that the program has to handle.
There have been several attempts at formalizing the concepts used in object-oriented programming. The following concepts and constructs have been used as interpretations of OOP concepts:
- co algebraic data types
- abstract data types (which have existential types) allow the definition of modules but these do not support dynamic dispatch
- recursive types
- encapsulated state
- records are basis for understanding objects if function literals can be stored in fields (like in functional programming languages), but the actual calculi need be considerably more complex to incorporate essential features of OOP. Several extensions of System F<: that deal with mutable objects have been studied; these allow both subtype polymorphism and parametric polymorphism (generics)
Attempts to find a consensus definition or theory behind objects have not proven very successful (however, see Abadi & Cardelli, A Theory of Objects for formal definitions of many OOP concepts and constructs), and often diverge widely. For example, some definitions focus on mental activities, and some on program structuring. One of the simpler definitions is that OOP is the act of using "map" data structures or arrays that can contain functions and pointers to other maps, all with some syntactic and scoping sugar on top. Inheritance can be performed by cloning the maps (sometimes called "prototyping").
|This section does not cite any references or sources. (August 2009)|
Simula (1967) is generally accepted as the first language with the primary features of an object-oriented language. It was created for making simulation programs, in which what came to be called objects were the most important information representation. Smalltalk (1972 to 1980) is arguably the canonical example, and the one with which much of the theory of object-oriented programming was developed. Concerning the degree of object orientation, the following distinctions can be made:
- Languages called "pure" OO languages, because everything in them is treated consistently as an object, from primitives such as characters and punctuation, all the way up to whole classes, prototypes, blocks, modules, etc. They were designed specifically to facilitate, even enforce, OO methods. Examples: Eiffel, Emerald, JADE, Obix, Ruby, Scala, Smalltalk, Self.
- Languages designed mainly for OO programming, but with some procedural elements. Examples: Delphi/Object Pascal, C++, Java, C#, VB.NET, Python.
- Languages that are historically procedural languages, but have been extended with some OO features. Examples: Pascal, Visual Basic (derived from BASIC), MATLAB, Fortran, Perl, COBOL 2002, PHP, ABAP, Ada 95.
- Languages with most of the features of objects (classes, methods, inheritance), but in a distinctly original form. Examples: Oberon (Oberon-1 or Oberon-2).
- Languages with abstract data type support, but not all features of object-orientation, sometimes called object-based languages. Examples: Modula-2, Pliant, CLU.
- Chameleon languages that support multiple paradigms, including OO. Tcl stands out among these for TclOO, a hybrid object system that supports both prototype-based programming and class-based OO.
OOP in dynamic languages
In recent years, object-oriented programming has become especially popular in dynamic programming languages. Python, Ruby and Groovy are dynamic languages built on OOP principles, while Perl and PHP have been adding object-oriented features since Perl 5 and PHP 4, and ColdFusion since version 6.
Challenges of object-oriented design are addressed by several methodologies. Most common is known as the design patterns codified by Gamma et al.. More broadly, the term "design patterns" can be used to refer to any general, repeatable solution to a commonly occurring problem in software design. Some of these commonly occurring problems have implications and solutions particular to object-oriented development.
Inheritance and behavioral subtyping
It is intuitive to assume that inheritance creates a semantic "is a" relationship, and thus to infer that objects instantiated from subclasses can always be safely used instead of those instantiated from the superclass. This intuition is unfortunately false in most OOP languages, in particular in all those that allow mutable objects. Subtype polymorphism as enforced by the type checker in OOP languages (with mutable objects) cannot guarantee behavioral subtyping in any context. Behavioral subtyping is undecidable in general, so it cannot be implemented by a program (compiler). Class or object hierarchies must be carefully designed, considering possible incorrect uses that cannot be detected syntactically. This issue is known as the Liskov substitution principle.
Gang of Four design patterns
Design Patterns: Elements of Reusable Object-Oriented Software is an influential book published in 1995 by Erich Gamma, Richard Helm, Ralph Johnson, and John Vlissides, often referred to humorously as the "Gang of Four". Along with exploring the capabilities and pitfalls of object-oriented programming, it describes 23 common programming problems and patterns for solving them. As of April 2007, the book was in its 36th printing.
The book describes the following patterns:
- Creational patterns (5): Factory method pattern, Abstract factory pattern, Singleton pattern, Builder pattern, Prototype pattern
- Structural patterns (7): Adapter pattern, Bridge pattern, Composite pattern, Decorator pattern, Facade pattern, Flyweight pattern, Proxy pattern
- Behavioral patterns (11): Chain-of-responsibility pattern, Command pattern, Interpreter pattern, Iterator pattern, Mediator pattern, Memento pattern, Observer pattern, State pattern, Strategy pattern, Template method pattern, Visitor pattern
Object-orientation and databases
Both object-oriented programming and relational database management systems (RDBMSs) are extremely common in software today[update]. Since relational databases don't store objects directly (though some RDBMSs have object-oriented features to approximate this), there is a general need to bridge the two worlds. The problem of bridging object-oriented programming accesses and data patterns with relational databases is known as object-relational impedance mismatch. There are a number of approaches to cope with this problem, but no general solution without downsides. One of the most common approaches is object-relational mapping, as found in libraries like Java Data Objects and Ruby on Rails' ActiveRecord.
There are also object databases that can be used to replace RDBMSs, but these have not been as technically and commercially successful as RDBMSs.
Real-world modeling and relationships
OOP can be used to associate real-world objects and processes with digital counterparts. However, not everyone agrees that OOP facilitates direct real-world mapping (see Criticism section) or that real-world mapping is even a worthy goal; Bertrand Meyer argues in Object-Oriented Software Construction that a program is not a model of the world but a model of some part of the world; "Reality is a cousin twice removed". At the same time, some principal limitations of OOP had been noted. For example, the Circle-ellipse problem is difficult to handle using OOP's concept of inheritance.
However, Niklaus Wirth (who popularized the adage now known as Wirth's law: "Software is getting slower more rapidly than hardware becomes faster") said of OOP in his paper, "Good Ideas through the Looking Glass", "This paradigm closely reflects the structure of systems 'in the real world', and it is therefore well suited to model complex systems with complex behaviours" (contrast KISS principle).
Steve Yegge and others noted that natural languages lack the OOP approach of strictly prioritizing things (objects/nouns) before actions (methods/verbs). This problem may cause OOP to suffer more convoluted solutions than procedural programming.
OOP and control flow
OOP was developed to increase the reusability and maintainability of source code. Transparent representation of the control flow had no priority and was meant to be handled by a compiler. With the increasing relevance of parallel hardware and multithreaded coding, developing transparent control flow becomes more important, something hard to achieve with OOP.
Responsibility- vs. data-driven design
Responsibility-driven design defines classes in terms of a contract, that is, a class should be defined around a responsibility and the information that it shares. This is contrasted by Wirfs-Brock and Wilkerson with data-driven design, where classes are defined around the data-structures that must be held. The authors hold that responsibility-driven design is preferable.
The OOP paradigm has been criticised for a number of reasons, including not meeting its stated goals of reusability and modularity, and for overemphasizing one aspect of software design and modeling (data/objects) at the expense of other important aspects (computation/algorithms).
Luca Cardelli has claimed that OOP code is "intrinsically less efficient" than procedural code, that OOP can take longer to compile, and that OOP languages have "extremely poor modularity properties with respect to class extension and modification", and tend to be extremely complex. The latter point is reiterated by Joe Armstrong, the principal inventor of Erlang, who is quoted as saying "The problem with object-oriented languages is they've got all this implicit environment that they carry around with them. You wanted a banana but what you got was a gorilla holding the banana and the entire jungle." A study by Potok et al. has shown no significant difference in productivity between OOP and procedural approaches.
Christopher J. Date stated that critical comparison of OOP to other technologies, relational in particular, is difficult because of lack of an agreed-upon and rigorous definition of OOP; however, Date and Darwen have proposed a theoretical foundation on OOP that uses OOP as a kind of customizable type system to support RDBMS.
Alexander Stepanov compares object orientation unfavourably to multimethods: "I find OOP technically unsound. It attempts to decompose the world in terms of interfaces that vary on a single type. To deal with the real problems you need multisorted algebras - families of interfaces that span multiple types. I find OOP philosophically unsound. It claims that everything is an object. Even if it is true it is not very interesting - saying that everything is an object is saying nothing at all. ...".
Paul Graham has suggested that OOP's popularity within large companies is due to "large (and frequently changing) groups of mediocre programmers." According to Graham, the discipline imposed by OOP prevents any one programmer from "doing too much damage."
Steve Yegge noted that, as opposed to functional programming, "Object Oriented Programming puts the Nouns first and foremost. Why would you go to such lengths to put one part of speech on a pedestal? Why should one kind of concept take precedence over another? It's not as if OOP has suddenly made verbs less important in the way we actually think. It's a strangely skewed perspective."
Rich Hickey, creator of Clojure, described object systems as overly simplistic models of the real world. He emphasized the inability of OOP to model time properly, which is getting increasingly problematic as software systems become more concurrent.
||This "see also" section may contain an excessive number of suggestions. Please ensure that only the most relevant suggestions are given and that they are not red links, and consider integrating suggestions into the article itself. (April 2014)|
- Aspect-oriented programming
- Circle-ellipse problem
- Comparison of programming languages (object-oriented programming)
- Comparison of programming paradigms
- Component-based software engineering
- Concurrent object-oriented programming
- Constructor (object-oriented programming)
- Constructor overloading
- Design by contract
- Interface-based programming
- Interface description language
- Modular programming
- Object association
- Object database
- Object-oriented analysis and design
- Object-relational impedance mismatch (and The Third Manifesto)
- Object-relational mapping
- Procedural programming
- Structured programming
- Visual FoxPro
- Kindler, E.; Krivy, I. (2011). Object-Oriented Simulation of systems with sophisticated control. International Journal of General Systems. pp. 313–343.
- Lewis, John; Loftus, William (2008). Java Software Solutions Foundations of Programming Design 6th ed. Pearson Education Inc. ISBN 0-321-53205-8., section 1.6 "Object-Oriented Programming"
- Booch, Grady (1986). Software Engineering with Ada. Addison Wesley. p. 220. ISBN 978-0805306088. "Perhaps the greatest strength of an object-oriented approach to development is that it offers a mechanism that captures a model of the real world."
- Jacobsen, Ivar; Magnus Christerson; Patrik Jonsson; Gunnar Overgaard (1992). Object Oriented Software Engineering. Addison-Wesley ACM Press. pp. 43–69. ISBN 0-201-54435-0.
- Conway, Richard (1978). A primer on disciplined programming using PL/I, PL/CS, and PL/CT. Winthrop Publishers. ISBN 0876267126.
- Brooks, Fred P. (April 1987). "No Silver Bullet — Essence and Accidents of Software Engineering". IEEE Computer 20 (4): 10–19.
- Meyer, Bertrand (1988). Object-Oriented Software Construction. Cambridge: Prentise Hall International Series in Computer Science. p. 23. ISBN 0-13-629049-3.
- McCarthy, J.; Brayton, R.; Edwards, D.; Fox, P.; Hodes, L.; Luckham, D.; Maling, K.; Park, D.; Russell, S. (March 1960). LISP I Programmers Manual. Boston, Massachusetts: Artificial Intelligence Group, M.I.T. Computation Center and Research Laboratory. p. 88f. "In the local M.I.T. patois, association lists [of atomic symbols] are also referred to as "property lists", and atomic symbols are sometimes called "objects"."
- McCarthy, John; Abrahams, Paul W.; Edwards, Daniel J.; Hart, swapnil d.; Levin, Michael I. (1962). LISP 1.5 Programmer's Manual. MIT Press. p. 105. ISBN 0-262-13011-4. "Object - a synonym for atomic symbol"
- "Dr. Alan Kay on the Meaning of "Object-Oriented Programming"". 2003. Retrieved 11 February 2010.
- Sutherland, I. E. (30 January 1963). "Sketchpad: A Man-Machine Graphical Communication System" (PDF). Technical Report No. 296, Lincoln Laboratory, Massachusetts Institute of Technology via Defense Technical Information Center (stinet.dtic.mil). Retrieved 3 November 2007.
- The Development of the Simula Languages, Kristen Nygaard, Ole-Johan Dahl, p.254 Uni-kl.ac.at
- Ross, Doug. "The first software engineering language". LCS/AI Lab Timeline:. MIT Computer Science and Artificial Intelligence Laboratory. Retrieved 13 May 2010.
- Holmevik, Jan Rune (1994). "Compiling Simula: A historical study of technological genesis". IEEE Annals of the History of Computing 16 (4): 25–37. doi:10.1109/85.329756. Retrieved 12 May 2010.
- Hoare, C. A. (Nov 1965). "Record Handling". ALGOL Bulletin (21): 39–69. doi:10.1145/1061032.1061041.
- Kay, Alan. "The Early History of Smalltalk". Retrieved 13 September 2007.
- 1995 (June) Visual FoxPro 3.0, FoxPro evolves from a procedural language to an object-oriented language. Visual FoxPro 3.0 introduces a database container, seamless client/server capabilities, support for ActiveX technologies, and OLE Automation and null support. Summary of Fox releases
- FoxPro History web site: Foxprohistory.org
- 1995 Reviewers Guide to Visual FoxPro 3.0: DFpug.de
- Armstrong, The Quarks of Object-Oriented Development. In descending order of popularity, the "quarks" are: Inheritance, Object, Class, Encapsulation, Method, Message Passing, Polymorphism, Abstraction
- Pierce, Benjamin (2002). Types and Programming Languages. MIT Press. ISBN 0-262-16209-1., section 18.1 "What is Object-Oriented Programming?"
- John C. Mitchell, Concepts in programming languages, Cambridge University Press, 2003, ISBN 0-521-78098-5, p.278
- Michael Lee Scott, Programming language pragmatics, Edition 2, Morgan Kaufmann, 2006, ISBN 0-12-633951-1, p. 470 vikas
- Poll, Erik. "Subtyping and Inheritance for Categorical Datatypes". Retrieved 5 June 2011.
- Abadi, Martin; Cardelli, Luca (1996). A Theory of Objects. Springer-Verlag New York, Inc. ISBN 0-387-94775-2. Retrieved 21 April 2010.
- "The Emerald Programming Language". 2011-02-26.
- Neward, Ted (26 June 2006). "The Vietnam of Computer Science". Interoperability Happens. Retrieved 2 June 2010.
- Meyer, Second Edition, p. 230
- M.Trofimov, OOOP - The Third "O" Solution: Open OOP. First Class, OMG, 1993, Vol. 3, issue 3, p.14.
- Yegge, Steve (30 March 2006). "Execution in the Kingdom of Nouns". steve-yegge.blogspot.com. Retrieved 3 July 2010.
- Boronczyk, Timothy (11 June 2009). "What's Wrong with OOP". zaemis.blogspot.com. Retrieved 3 July 2010.
- Ambler, Scott (1 January 1998). "A Realistic Look at Object-Oriented Reuse". www.drdobbs.com. Retrieved 4 July 2010.
- Shelly, Asaf (22 August 2008). "Flaws of Object Oriented Modeling". Intel Software Network. Retrieved 4 July 2010.
- James, Justin (1 October 2007). "Multithreading is a verb not a noun". techrepublic.com. Archived from the original on 2 January 2013. Retrieved 4 July 2010.
- Shelly, Asaf (22 August 2008). "HOW TO: Multicore Programming (Multiprocessing) Visual C++ Class Design Guidelines, Member Functions". support.microsoft.com. Retrieved 4 July 2010.
- Robert Harper (17 April 2011). "Some thoughts on teaching FP". Existential Type Blog. Retrieved 5 December 2011.
- Cardelli, Luca (1996). "Bad Engineering Properties of Object-Oriented Languages". ACM Comput. Surv. (ACM) 28 (4es): 150. doi:10.1145/242224.242415. ISSN 0360-0300. Retrieved 21 April 2010.
- Armstrong, Joe. In Coders at Work: Reflections on the Craft of Programming. Peter Seibel, ed. Codersatwork.com, Accessed 13 November 2009.
- Stepanov, Alexander. "STLport: An Interview with A. Stepanov". Retrieved 21 April 2010.
- Rich Hickey, JVM Languages Summit 2009 keynote, Are We There Yet? November 2009.
- Potok, Thomas; Mladen Vouk; Andy Rindos (1999). "Productivity Analysis of Object-Oriented Software Developed in a Commercial Environment". Software – Practice and Experience 29 (10): 833–847. doi:10.1002/(SICI)1097-024X(199908)29:10<833::AID-SPE258>3.0.CO;2-P. Retrieved 21 April 2010.
- C. J. Date, Introduction to Database Systems, 6th-ed., Page 650
- C. J. Date, Hugh Darwen. Foundation for Future Database Systems: The Third Manifesto (2nd Edition)
- Graham, Paul. "Why ARC isn't especially Object–Oriented.". PaulGraham.com. Retrieved 13 November 2009.
- Stevey's Blog Rants
- Abadi, Martin; Luca Cardelli (1998). A Theory of Objects. Springer Verlag. ISBN 0-387-94775-2.
- Abelson, Harold; Gerald Jay Sussman, (1997). Structure and Interpretation of Computer Programs. MIT Press. ISBN 0-262-01153-0.
- Armstrong, Deborah J. (February 2006). "The Quarks of Object-Oriented Development". Communications of the ACM 49 (2): 123–128. doi:10.1145/1113034.1113040. ISSN 0001-0782. Retrieved 8 August 2006.
- Booch, Grady (1997). Object-Oriented Analysis and Design with Applications. Addison-Wesley. ISBN 0-8053-5340-2.
- Eeles, Peter; Oliver Sims (1998). Building Business Objects. John Wiley & Sons. ISBN 0-471-19176-0.
- Gamma, Erich; Richard Helm, Ralph Johnson, John Vlissides (1995). Design Patterns: Elements of Reusable Object Oriented Software. Addison-Wesley. ISBN 0-201-63361-2.
- Harmon, Paul; William Morrissey (1996). The Object Technology Casebook - Lessons from Award-Winning Business Applications. John Wiley & Sons. ISBN 0-471-14717-6.
- Jacobson, Ivar (1992). Object-Oriented Software Engineering: A Use Case-Driven Approach. Addison-Wesley. ISBN 0-201-54435-0.
- Kay, Alan. The Early History of Smalltalk.
- Meyer, Bertrand (1997). Object-Oriented Software Construction. Prentice Hall. ISBN 0-13-629155-4.
- Pecinovsky, Rudolf (2013). OOP - Learn Object Oriented Thinking & Programming. Bruckner Publishing. ISBN 978-80-904661-8-0.
- Rumbaugh, James; Michael Blaha; William Premerlani; Frederick Eddy; William Lorensen (1991). Object-Oriented Modeling and Design. Prentice Hall. ISBN 0-13-629841-9.
- Schach, Stephen (2006). Object-Oriented and Classical Software Engineering, Seventh Edition. McGraw-Hill. ISBN 0-07-319126-4.
- Schreiner, Axel-Tobias (1993). Object oriented programming with ANSI-C. Hanser. ISBN 3-446-17426-5. hdl:1850/8544.
- Taylor, David A. (1992). Object-Oriented Information Systems - Planning and Implementation. John Wiley & Sons. ISBN 0-471-54364-0.
- Weisfeld, Matt (2009). The Object-Oriented Thought Process, Third Edition. Addison-Wesley. ISBN 0-672-33016-4.
|Wikiversity has learning materials about Object-oriented programming at|
|Wikibooks has a book on the topic of: Object Oriented Programming|
- Object-oriented programming at DMOZ
- Chapter on implementing OOP in the programming language C by David Polberger
- Introduction to Object Oriented Programming Concepts (OOP) and More by L.W.C. Nirosh
- Discussion about the flaws of OOD
- OOPS Concepts
- OOP Concepts (Java Tutorials)
- Intel blog - killing OOP