In computer science, pseudocode is a description of the steps in an algorithm using a mix of conventions of programming languages (like assignment operator, conditional operator, loop) with informal, usually self-explanatory, notation of actions and conditions.[1][2] Although pseudocode shares features with regular programming languages, it is intended for human reading rather than machine control. Pseudocode typically omits details that are essential for machine implementation of the algorithm, meaning that pseudocode can only be verified by hand.[3] The programming language is augmented with natural language description details, where convenient, or with compact mathematical notation. The purpose of using pseudocode is that it is easier for people to understand than conventional programming language code, and that it is an efficient and environment-independent description of the key principles of an algorithm. It is commonly used in textbooks and scientific publications to document algorithms and in planning of software and other algorithms.
No broad standard for pseudocode syntax exists, as a program in pseudocode is not an executable program; however, certain limited standards exist (such as for academic assessment). Pseudocode resembles skeleton programs, which can be compiled without errors. Flowcharts, drakon-charts and Unified Modelling Language (UML) charts can be thought of as a graphical alternative to pseudocode, but need more space on paper. Languages such as HAGGIS bridge the gap between pseudocode and code written in programming languages.
Application
Textbooks and scientific publications related to computer science and numerical computation often use pseudocode in description of algorithms, so that all programmers can understand them, even if they do not all know the same programming languages. In textbooks, there is usually an accompanying introduction explaining the particular conventions in use. The level of detail of the pseudocode may in some cases approach that of formalized general-purpose languages.
A programmer who needs to implement a specific algorithm, especially an unfamiliar one, will often start with a pseudocode description, and then "translate" that description into the target programming language and modify it to interact correctly with the rest of the program. Programmers may also start a project by sketching out the code in pseudocode on paper before writing it in its actual language, as a top-down structuring approach, with a process of steps to be followed as a refinement.
Pseudocode is also used in standardization. For example, the MPEG standards make heavy use of formal C-like pseudocode and cannot be understood without grasping the details of the code.[4]
Syntax
Pseudocode generally does not actually obey the syntax rules of any particular language; there is no systematic standard form. Some writers borrow style and syntax from control structures from some conventional programming language, although this is discouraged.[5][6] Some syntax sources include Fortran, Pascal, BASIC, C, C++, Java, Lisp, and ALGOL. Variable declarations are typically omitted. Function calls and blocks of code, such as code contained within a loop, are often replaced by a one-line natural language sentence.
Depending on the writer, pseudocode may therefore vary widely in style, from a near-exact imitation of a real programming language at one extreme, to a description approaching formatted prose at the other.
This flexibility brings both major advantages and drawbacks: on the positive side, no executable programming language "can beat the convenience of inventing new constructs as needed and letting the reader try to deduce their meaning from informal explanations", on the negative, "untested code is usually incorrect".[7]
In numerical computation, pseudocode often consists of mathematical notation, typically from matrix and set theory, mixed with the control structures of a conventional programming language, and perhaps also natural language descriptions. This is a compact and often informal notation that can be understood by a wide range of mathematically trained people, and is frequently used as a way to describe mathematical algorithms. For example, the sum operator (capital-sigma notation) or the product operator (capital-pi notation) may represent a for-loop and a selection structure in one expression:
Return
Normally non-ASCIItypesetting is used for the mathematical equations, for example by means of markup languages, such as TeX or MathML, or proprietary formula editors.
Mathematical style pseudocode is sometimes referred to as pidgin code, for example pidgin ALGOL (the origin of the concept), pidgin Fortran, pidgin BASIC, pidgin Pascal, pidgin C, and pidgin Lisp.
Common mathematical symbols
Type of operation
Symbol
Example
Assignment
← or :=
c ← 2πr, c := 2πr
Comparison
=, ≠, <, >, ≤, ≥
Arithmetic
+, −, ×, /, mod
Floor/ceiling
⌊, ⌋, ⌈, ⌉
a ← ⌊b⌋ + ⌈c⌉
Logical
and, or
Sums, products
Σ Π
h ← Σa∈A 1/a
Example
The following is a longer example of mathematical-style pseudocode, for the Ford–Fulkerson algorithm:
algorithm ford-fulkerson isinput: Graph G with flow capacity c,
source node s,
sink node toutput: Flow f such that f is maximal from s to t(Note that f(u,v) is the flow from node u to node v, and c(u,v) is the flow capacity from node u to node v)for each edge (u, v) inGEdof(u, v) ← 0
f(v, u) ← 0
while there exists a path p from s to tin the residual network Gfdo
let cf be the flow capacity of the residual network Gfcf(p) ← min{cf(u, v) | (u, v) inp}
for each edge (u, v) inpdof(u, v) ← f(u, v) + cf(p)
f(v, u) ← −f(u, v)returnf
Machine compilation of pseudocode style languages
Natural language grammar in programming languages
Various attempts to bring elements of natural language grammar into computer programming have produced programming languages such as HyperTalk, Lingo, AppleScript, SQL, Inform, and to some extent Python. In these languages, parentheses and other special characters are replaced by prepositions, resulting in quite verbose code. These languages are typically dynamically typed, meaning that variable declarations and other boilerplate code can be omitted. Such languages may make it easier for a person without knowledge about the language to understand the code and perhaps also to learn the language. However, the similarity to natural language is usually more cosmetic than genuine. The syntax rules may be just as strict and formal as in conventional programming, and do not necessarily make development of the programs easier.
Mathematical programming languages
An alternative to using mathematical pseudocode (involving set theory notation or matrix operations) for documentation of algorithms is to use a formal mathematical programming language that is a mix of non-ASCII mathematical notation and program control structures. Then the code can be parsed and interpreted by a machine.
Several formal specification languages include set theory notation using special characters. Examples are:
Some array programming languages include vectorized expressions and matrix operations as non-ASCII formulas, mixed with conventional control structures. Examples are:
^Reisig 2007, p. 23, Pseudocode Programs and Their Semantics.
^An often-repeated definition of pseudocode since at least 2003 is "a detailed yet readable description of what a computer program or algorithm must do, expressed in a formally-styled natural language"
^Ulate-Caballero, Bryan Alexander; Berrocal-Rojas, Allan; Hidalgo-Céspedes, Jeisson (2021). "Concurrent and Distributed Pseudocode: A Systematic Literature Review". 2021 XLVII Latin American Computing Conference (CLEI). pp. 1–10. doi:10.1109/CLEI53233.2021.9640222. ISBN978-1-6654-9503-5.
Roy, Geoffrey G (2006). "Designing and explaining programs with a literate pseudocode". Journal on Educational Resources in Computing. 6 (1). Association for Computing Machinery (ACM): 1. doi:10.1145/1217862.1217863. ISSN1531-4278. S2CID25810599.
Ulate-Caballero, Bryan Alexander; Berrocal-Rojas, Allan; Hidalgo-Cespedes, Jeisson (2021-10-25). "Concurrent and Distributed Pseudocode: A Systematic Literature Review". 2021 XLVII Latin American Computing Conference (CLEI). IEEE. pp. 1–10. doi:10.1109/clei53233.2021.9640222. ISBN978-1-6654-9503-5.
Mitchell, Joan L.; Pennebaker, William B.; Fogg, Chad E.; LeGall, Didier J. (1996). "Pseudocode and Flowcharts". MPEG Video Compression Standard. New York, NY: Springer US. pp. 105–116. doi:10.1007/0-306-46983-9_6. ISBN978-0-412-08771-4.
Bellamy, Rachel (1994-06-01). "What Does Pseudo-Code Do? A Psychological Analysis of the use of Pseudo-Code by Experienced Programmers". Human-Computer Interaction. 9 (2). Informa UK Limited: 225–246. doi:10.1207/s15327051hci0902_3. ISSN0737-0024.
External links
Look up pseudocode in Wiktionary, the free dictionary.