Strict programming language

Programming language using strict evaluation
(Learn how and when to remove this message)

A strict programming language is a programming language that only allows strict functions (functions whose parameters must be evaluated completely before they may be called) to be defined by the user. A non-strict programming language allows the user to define non-strict functions, and hence may allow lazy evaluation. In most non-strict languages, the non-strictness extends to data constructors.

Description

A strict programming language is a programming language which employs a strict programming paradigm, allowing only strict functions (functions whose parameters must be evaluated completely before they may be called) to be defined by the user. A non-strict programming language allows the user to define non-strict functions, and hence may allow lazy evaluation.[1]

Non-strictness has several disadvantages which have prevented widespread adoption:[citation needed]

Strict programming languages are often associated with eager evaluation, and non-strict languages with lazy evaluation, but other evaluation strategies are possible in each case.[citation needed] The terms "eager programming language" and "lazy programming language" are often used as synonyms for "strict programming language" and "non-strict programming language" respectively.[citation needed]

Examples

Nearly all programming languages in common use today are strict.[citation needed] Examples include C#, Java, Perl (all versions, i.e. through version 5 and version 7), Python,[2] Ruby, Common Lisp, and ML. Some strict programming languages include features that mimic laziness.[clarification needed] Raku (formerly known as Perl 6) has lazy lists,[3] Python has generator functions,[4] and Julia provides a macro system to build non-strict functions,[5] as does Scheme.

Examples for non-strict languages are Haskell, R, Miranda, and Clean.[6]

Extension

In most non-strict languages, the non-strictness extends to data constructors. This allows conceptually infinite data structures (such as the list of all prime numbers) to be manipulated in the same way as ordinary finite data structures. It also allows for the use of very large but finite data structures such as he complete game tree of chess.

Citations

  1. ^ Scott 2006, p. 541.
  2. ^ Lott, Steven (2015). Functional Python Programming. Birmingham, UK: Packt Publishing. p. 35. ISBN 978-1-78439-699-2. Python focuses on strict evaluation
  3. ^ "Raku Programming/Lazy Lists and Feeds - Wikibooks, open books for an open world". en.wikibooks.org. Retrieved 2021-02-09.
  4. ^ Lott, Steven (2015). Functional Python Programming. Birmingham, UK: Packt Publishing. p. 35. ISBN 978-1-78439-699-2. a generator function is non-strict. [...] we can leverage generator functions to create lazy evaluation.
  5. ^ Innes, Mike J. (2021-02-06), MikeInnes/Lazy.jl, retrieved 2021-02-09
  6. ^ Cluet & Hull 1998, pp. 25–26.

References

  • Scott, Michael Lee (2006) [1999], McFadden, Nate; et al. (eds.), Programming Language Pragmatics, vol. 2, Published by Denise Penrose (2nd ed.), San Francisco: Morgan Kaufmann, ISBN 9780126339512, OCLC 551774322, retrieved 21 November 2014
  • Cluet, Sophie; Hull, Rick; et al., eds. (1998) [1997], Database Programming Languages, Lecture Notes in Computer Science, vol. 1369, Berlin; Heidelberg: Springer, ISBN 9783540648239, ISSN 0302-9743, OCLC 873553545, retrieved 21 November 2014