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Wikipedia

Regular expression

A regular expression (shortened as regex or regexp),[1] sometimes referred to as rational expression,[2][3] is a sequence of characters that specifies a match pattern in text. Usually such patterns are used by string-searching algorithms for "find" or "find and replace" operations on strings, or for input validation. Regular expression techniques are developed in theoretical computer science and formal language theory.

Blue highlights show the match results of the regular expression pattern: /h[aeiou]+/g (the letter h followed by one or more vowels).

The concept of regular expressions began in the 1950s, when the American mathematician Stephen Cole Kleene formalized the concept of a regular language. They came into common use with Unix text-processing utilities. Different syntaxes for writing regular expressions have existed since the 1980s, one being the POSIX standard and another, widely used, being the Perl syntax.

Regular expressions are used in search engines, in search and replace dialogs of word processors and text editors, in text processing utilities such as sed and AWK, and in lexical analysis. Regular expressions are supported in many programming languages.

History edit

 
Stephen Cole Kleene, who introduced the concept

Regular expressions originated in 1951, when mathematician Stephen Cole Kleene described regular languages using his mathematical notation called regular events.[4][5] These arose in theoretical computer science, in the subfields of automata theory (models of computation) and the description and classification of formal languages. Other early implementations of pattern matching include the SNOBOL language, which did not use regular expressions, but instead its own pattern matching constructs.

Regular expressions entered popular use from 1968 in two uses: pattern matching in a text editor[6] and lexical analysis in a compiler.[7] Among the first appearances of regular expressions in program form was when Ken Thompson built Kleene's notation into the editor QED as a means to match patterns in text files.[6][8][9][10] For speed, Thompson implemented regular expression matching by just-in-time compilation (JIT) to IBM 7094 code on the Compatible Time-Sharing System, an important early example of JIT compilation.[11] He later added this capability to the Unix editor ed, which eventually led to the popular search tool grep's use of regular expressions ("grep" is a word derived from the command for regular expression searching in the ed editor: g/re/p meaning "Global search for Regular Expression and Print matching lines").[12] Around the same time when Thompson developed QED, a group of researchers including Douglas T. Ross implemented a tool based on regular expressions that is used for lexical analysis in compiler design.[7]

Many variations of these original forms of regular expressions were used in Unix[10] programs at Bell Labs in the 1970s, including vi, lex, sed, AWK, and expr, and in other programs such as Emacs (which has its own, incompatible syntax and behavior). Regexes were subsequently adopted by a wide range of programs, with these early forms standardized in the POSIX.2 standard in 1992.

In the 1980s, the more complicated regexes arose in Perl, which originally derived from a regex library written by Henry Spencer (1986), who later wrote an implementation for Tcl called Advanced Regular Expressions.[13] The Tcl library is a hybrid NFA/DFA implementation with improved performance characteristics. Software projects that have adopted Spencer's Tcl regular expression implementation include PostgreSQL.[14] Perl later expanded on Spencer's original library to add many new features.[15] Part of the effort in the design of Raku (formerly named Perl 6) is to improve Perl's regex integration, and to increase their scope and capabilities to allow the definition of parsing expression grammars.[16] The result is a mini-language called Raku rules, which are used to define Raku grammar as well as provide a tool to programmers in the language. These rules maintain existing features of Perl 5.x regexes, but also allow BNF-style definition of a recursive descent parser via sub-rules.

The use of regexes in structured information standards for document and database modeling started in the 1960s and expanded in the 1980s when industry standards like ISO SGML (precursored by ANSI "GCA 101-1983") consolidated. The kernel of the structure specification language standards consists of regexes. Its use is evident in the DTD element group syntax. Prior to the use of regular expressions, many search languages allowed simple wildcards, for example "*" to match any sequence of characters, and "?" to match a single character. Relics of this can be found today in the glob syntax for filenames, and in the SQL LIKE operator.

Starting in 1997, Philip Hazel developed PCRE (Perl Compatible Regular Expressions), which attempts to closely mimic Perl's regex functionality and is used by many modern tools including PHP and Apache HTTP Server.[citation needed]

Today, regexes are widely supported in programming languages, text processing programs (particularly lexers), advanced text editors, and some other programs. Regex support is part of the standard library of many programming languages, including Java and Python, and is built into the syntax of others, including Perl and ECMAScript. Implementations of regex functionality is often called a regex engine, and a number of libraries are available for reuse. In the late 2010s, several companies started to offer hardware, FPGA,[17] GPU[18] implementations of PCRE compatible regex engines that are faster compared to CPU implementations.

Patterns edit

The phrase regular expressions, or regexes, is often used to mean the specific, standard textual syntax for representing patterns for matching text, as distinct from the mathematical notation described below. Each character in a regular expression (that is, each character in the string describing its pattern) is either a metacharacter, having a special meaning, or a regular character that has a literal meaning. For example, in the regex b., 'b' is a literal character that matches just 'b', while '.' is a metacharacter that matches every character except a newline. Therefore, this regex matches, for example, 'b%', or 'bx', or 'b5'. Together, metacharacters and literal characters can be used to identify text of a given pattern or process a number of instances of it. Pattern matches may vary from a precise equality to a very general similarity, as controlled by the metacharacters. For example, . is a very general pattern, [a-z] (match all lower case letters from 'a' to 'z') is less general and b is a precise pattern (matches just 'b'). The metacharacter syntax is designed specifically to represent prescribed targets in a concise and flexible way to direct the automation of text processing of a variety of input data, in a form easy to type using a standard ASCII keyboard.

A very simple case of a regular expression in this syntax is to locate a word spelled two different ways in a text editor, the regular expression seriali[sz]e matches both "serialise" and "serialize". Wildcard characters also achieve this, but are more limited in what they can pattern, as they have fewer metacharacters and a simple language-base.

The usual context of wildcard characters is in globbing similar names in a list of files, whereas regexes are usually employed in applications that pattern-match text strings in general. For example, the regex ^[ \t]+|[ \t]+$ matches excess whitespace at the beginning or end of a line. An advanced regular expression that matches any numeral is [+-]?(\d+(\.\d*)?|\.\d+)([eE][+-]?\d+)?.

 
Translating the Kleene star
(s* means "zero or more of s")

A regex processor translates a regular expression in the above syntax into an internal representation that can be executed and matched against a string representing the text being searched in. One possible approach is the Thompson's construction algorithm to construct a nondeterministic finite automaton (NFA), which is then made deterministic and the resulting deterministic finite automaton (DFA) is run on the target text string to recognize substrings that match the regular expression. The picture shows the NFA scheme N(s*) obtained from the regular expression s*, where s denotes a simpler regular expression in turn, which has already been recursively translated to the NFA N(s).

Basic concepts edit

A regular expression, often called a pattern, specifies a set of strings required for a particular purpose. A simple way to specify a finite set of strings is to list its elements or members. However, there are often more concise ways: for example, the set containing the three strings "Handel", "Händel", and "Haendel" can be specified by the pattern H(ä|ae?)ndel; we say that this pattern matches each of the three strings. However, there can be many ways to write a regular expression for the same set of strings: for example, (Hän|Han|Haen)del also specifies the same set of three strings in this example.

Most formalisms provide the following operations to construct regular expressions.

Boolean "or"
A vertical bar separates alternatives. For example, gray|grey can match "gray" or "grey".
Grouping
Parentheses are used to define the scope and precedence of the operators (among other uses). For example, gray|grey and gr(a|e)y are equivalent patterns which both describe the set of "gray" or "grey".
Quantification
A quantifier after an element (such as a token, character, or group) specifies how many times the preceding element is allowed to repeat. The most common quantifiers are the question mark ?, the asterisk * (derived from the Kleene star), and the plus sign + (Kleene plus).
? The question mark indicates zero or one occurrences of the preceding element. For example, colou?r matches both "color" and "colour".
* The asterisk indicates zero or more occurrences of the preceding element. For example, ab*c matches "ac", "abc", "abbc", "abbbc", and so on.
+ The plus sign indicates one or more occurrences of the preceding element. For example, ab+c matches "abc", "abbc", "abbbc", and so on, but not "ac".
{n}[19] The preceding item is matched exactly n times.
{min,}[19] The preceding item is matched min or more times.
{,max}[19] The preceding item is matched up to max times.
{min,max}[19] The preceding item is matched at least min times, but not more than max times.
Wildcard
The wildcard . matches any character. For example,
a.b matches any string that contains an "a", and then any character and then "b".
a.*b matches any string that contains an "a", and then the character "b" at some later point.

These constructions can be combined to form arbitrarily complex expressions, much like one can construct arithmetical expressions from numbers and the operations +, −, ×, and ÷.

The precise syntax for regular expressions varies among tools and with context; more detail is given in § Syntax.

Formal language theory edit

Regular expressions describe regular languages in formal language theory. They have the same expressive power as regular grammars.

Formal definition edit

Regular expressions consist of constants, which denote sets of strings, and operator symbols, which denote operations over these sets. The following definition is standard, and found as such in most textbooks on formal language theory.[20][21] Given a finite alphabet Σ, the following constants are defined as regular expressions:

  • (empty set) ∅ denoting the set ∅.
  • (empty string) ε denoting the set containing only the "empty" string, which has no characters at all.
  • (literal character) a in Σ denoting the set containing only the character a.

Given regular expressions R and S, the following operations over them are defined to produce regular expressions:

  • (concatenation) (RS) denotes the set of strings that can be obtained by concatenating a string accepted by R and a string accepted by S (in that order). For example, let R denote {"ab", "c"} and S denote {"d", "ef"}. Then, (RS) denotes {"abd", "abef", "cd", "cef"}.
  • (alternation) (R|S) denotes the set union of sets described by R and S. For example, if R describes {"ab", "c"} and S describes {"ab", "d", "ef"}, expression (R|S) describes {"ab", "c", "d", "ef"}.
  • (Kleene star) (R*) denotes the smallest superset of the set described by R that contains ε and is closed under string concatenation. This is the set of all strings that can be made by concatenating any finite number (including zero) of strings from the set described by R. For example, if R denotes {"0", "1"}, (R*) denotes the set of all finite binary strings (including the empty string). If R denotes {"ab", "c"}, (R*) denotes {ε, "ab", "c", "abab", "abc", "cab", "cc", "ababab", "abcab", ...}.

To avoid parentheses, it is assumed that the Kleene star has the highest priority followed by concatenation, then alternation. If there is no ambiguity, then parentheses may be omitted. For example, (ab)c can be written as abc, and a|(b(c*)) can be written as a|bc*. Many textbooks use the symbols ∪, +, or ∨ for alternation instead of the vertical bar.

Examples:

  • a|b* denotes {ε, "a", "b", "bb", "bbb", ...}
  • (a|b)* denotes the set of all strings with no symbols other than "a" and "b", including the empty string: {ε, "a", "b", "aa", "ab", "ba", "bb", "aaa", ...}
  • ab*(c|ε) denotes the set of strings starting with "a", then zero or more "b"s and finally optionally a "c": {"a", "ac", "ab", "abc", "abb", "abbc", ...}
  • (0|(1(01*0)*1))* denotes the set of binary numbers that are multiples of 3: { ε, "0", "00", "11", "000", "011", "110", "0000", "0011", "0110", "1001", "1100", "1111", "00000", ... }

Expressive power and compactness edit

The formal definition of regular expressions is minimal on purpose, and avoids defining ? and +—these can be expressed as follows: a+ = aa*, and a? = (a|ε). Sometimes the complement operator is added, to give a generalized regular expression; here Rc matches all strings over Σ* that do not match R. In principle, the complement operator is redundant, because it does not grant any more expressive power. However, it can make a regular expression much more concise—eliminating a single complement operator can cause a double exponential blow-up of its length.[22][23][24]

Regular expressions in this sense can express the regular languages, exactly the class of languages accepted by deterministic finite automata. There is, however, a significant difference in compactness. Some classes of regular languages can only be described by deterministic finite automata whose size grows exponentially in the size of the shortest equivalent regular expressions. The standard example here is the languages Lk consisting of all strings over the alphabet {a,b} whose kth-from-last letter equals a. On the one hand, a regular expression describing L4 is given by  .

Generalizing this pattern to Lk gives the expression:  

On the other hand, it is known that every deterministic finite automaton accepting the language Lk must have at least 2k states. Luckily, there is a simple mapping from regular expressions to the more general nondeterministic finite automata (NFAs) that does not lead to such a blowup in size; for this reason NFAs are often used as alternative representations of regular languages. NFAs are a simple variation of the type-3 grammars of the Chomsky hierarchy.[20]

In the opposite direction, there are many languages easily described by a DFA that are not easily described by a regular expression. For instance, determining the validity of a given ISBN requires computing the modulus of the integer base 11, and can be easily implemented with an 11-state DFA. However, a regular expression to answer the same problem of divisibility by 11 is at least multiple megabytes in length.[citation needed]

Given a regular expression, Thompson's construction algorithm computes an equivalent nondeterministic finite automaton. A conversion in the opposite direction is achieved by Kleene's algorithm.

Finally, it is worth noting that many real-world "regular expression" engines implement features that cannot be described by the regular expressions in the sense of formal language theory; rather, they implement regexes. See below for more on this.

Deciding equivalence of regular expressions edit

As seen in many of the examples above, there is more than one way to construct a regular expression to achieve the same results.

It is possible to write an algorithm that, for two given regular expressions, decides whether the described languages are equal; the algorithm reduces each expression to a minimal deterministic finite state machine, and determines whether they are isomorphic (equivalent).

Algebraic laws for regular expressions can be obtained using a method by Gischer which is best explained along an example: In order to check whether (X+Y)* and (X* Y*)* denote the same regular language, for all regular expressions X, Y, it is necessary and sufficient to check whether the particular regular expressions (a+b)* and (a* b*)* denote the same language over the alphabet Σ={a,b}. More generally, an equation E=F between regular-expression terms with variables holds if, and only if, its instantiation with different variables replaced by different symbol constants holds.[25][26]

Every regular expression can be written solely in terms of the Kleene star and set unions over finite words. This is a surprisingly difficult problem. As simple as the regular expressions are, there is no method to systematically rewrite them to some normal form. The lack of axiom in the past led to the star height problem. In 1991, Dexter Kozen axiomatized regular expressions as a Kleene algebra, using equational and Horn clause axioms.[27] Already in 1964, Redko had proved that no finite set of purely equational axioms can characterize the algebra of regular languages.[28]

Syntax edit

A regex pattern matches a target string. The pattern is composed of a sequence of atoms. An atom is a single point within the regex pattern which it tries to match to the target string. The simplest atom is a literal, but grouping parts of the pattern to match an atom will require using ( ) as metacharacters. Metacharacters help form: atoms; quantifiers telling how many atoms (and whether it is a greedy quantifier or not); a logical OR character, which offers a set of alternatives, and a logical NOT character, which negates an atom's existence; and backreferences to refer to previous atoms of a completing pattern of atoms. A match is made, not when all the atoms of the string are matched, but rather when all the pattern atoms in the regex have matched. The idea is to make a small pattern of characters stand for a large number of possible strings, rather than compiling a large list of all the literal possibilities.

Depending on the regex processor there are about fourteen metacharacters, characters that may or may not have their literal character meaning, depending on context, or whether they are "escaped", i.e. preceded by an escape sequence, in this case, the backslash \. Modern and POSIX extended regexes use metacharacters more often than their literal meaning, so to avoid "backslash-osis" or leaning toothpick syndrome, they have a metacharacter escape to a literal mode; starting out, however, they instead have the four bracketing metacharacters ( ) and { } be primarily literal, and "escape" this usual meaning to become metacharacters. Common standards implement both. The usual metacharacters are {}[]()^$.|*+? and \. The usual characters that become metacharacters when escaped are dswDSW and N.

Delimiters edit

When entering a regex in a programming language, they may be represented as a usual string literal, hence usually quoted; this is common in C, Java, and Python for instance, where the regex re is entered as "re". However, they are often written with slashes as delimiters, as in /re/ for the regex re. This originates in ed, where / is the editor command for searching, and an expression /re/ can be used to specify a range of lines (matching the pattern), which can be combined with other commands on either side, most famously g/re/p as in grep ("global regex print"), which is included in most Unix-based operating systems, such as Linux distributions. A similar convention is used in sed, where search and replace is given by s/re/replacement/ and patterns can be joined with a comma to specify a range of lines as in /re1/,/re2/. This notation is particularly well known due to its use in Perl, where it forms part of the syntax distinct from normal string literals. In some cases, such as sed and Perl, alternative delimiters can be used to avoid collision with contents, and to avoid having to escape occurrences of the delimiter character in the contents. For example, in sed the command s,/,X, will replace a / with an X, using commas as delimiters.

Standards edit

The IEEE POSIX standard has three sets of compliance: BRE (Basic Regular Expressions),[29] ERE (Extended Regular Expressions), and SRE (Simple Regular Expressions). SRE is deprecated,[30] in favor of BRE, as both provide backward compatibility. The subsection below covering the character classes applies to both BRE and ERE.

BRE and ERE work together. ERE adds ?, +, and |, and it removes the need to escape the metacharacters ( ) and { }, which are required in BRE. Furthermore, as long as the POSIX standard syntax for regexes is adhered to, there can be, and often is, additional syntax to serve specific (yet POSIX compliant) applications. Although POSIX.2 leaves some implementation specifics undefined, BRE and ERE provide a "standard" which has since been adopted as the default syntax of many tools, where the choice of BRE or ERE modes is usually a supported option. For example, GNU grep has the following options: "grep -E" for ERE, and "grep -G" for BRE (the default), and "grep -P" for Perl regexes.

Perl regexes have become a de facto standard, having a rich and powerful set of atomic expressions. Perl has no "basic" or "extended" levels. As in POSIX EREs, ( ) and { } are treated as metacharacters unless escaped; other metacharacters are known to be literal or symbolic based on context alone. Additional functionality includes lazy matching, backreferences, named capture groups, and recursive patterns.

POSIX basic and extended edit

In the POSIX standard, Basic Regular Syntax (BRE) requires that the metacharacters ( ) and { } be designated \(\) and \{\}, whereas Extended Regular Syntax (ERE) does not.

Metacharacter Description
^ Matches the starting position within the string. In line-based tools, it matches the starting position of any line.
. Matches any single character (many applications exclude newlines, and exactly which characters are considered newlines is flavor-, character-encoding-, and platform-specific, but it is safe to assume that the line feed character is included). Within POSIX bracket expressions, the dot character matches a literal dot. For example, a.c matches "abc", etc., but [a.c] matches only "a", ".", or "c".
[ ] A bracket expression. Matches a single character that is contained within the brackets. For example, [abc] matches "a", "b", or "c". [a-z] specifies a range which matches any lowercase letter from "a" to "z". These forms can be mixed: [abcx-z] matches "a", "b", "c", "x", "y", or "z", as does [a-cx-z].

The - character is treated as a literal character if it is the last or the first (after the ^, if present) character within the brackets: [abc-], [-abc]. Backslash escapes are not allowed. The ] character can be included in a bracket expression if it is the first (after the ^) character: []abc].

[^ ] Matches a single character that is not contained within the brackets. For example, [^abc] matches any character other than "a", "b", or "c". [^a-z] matches any single character that is not a lowercase letter from "a" to "z". Likewise, literal characters and ranges can be mixed.
$ Matches the ending position of the string or the position just before a string-ending newline. In line-based tools, it matches the ending position of any line.
( ) Defines a marked subexpression. The string matched within the parentheses can be recalled later (see the next entry, \n). A marked subexpression is also called a block or capturing group. BRE mode requires \( \).
\n Matches what the nth marked subexpression matched, where n is a digit from 1 to 9. This construct is defined in the POSIX standard.[31] Some tools allow referencing more than nine capturing groups. Also known as a back-reference, this feature is supported in BRE mode.
* Matches the preceding element zero or more times. For example, ab*c matches "ac", "abc", "abbbc", etc. [xyz]* matches "", "x", "y", "z", "zx", "zyx", "xyzzy", and so on. (ab)* matches "", "ab", "abab", "ababab", and so on.
{m,n} Matches the preceding element at least m and not more than n times. For example, a{3,5} matches only "aaa", "aaaa", and "aaaaa". This is not found in a few older instances of regexes. BRE mode requires \{m,n\}.

Examples:

  • .at matches any three-character string ending with "at", including "hat", "cat", "bat", "4at", "#at" and " at" (starting with a space).
  • [hc]at matches "hat" and "cat".
  • [^b]at matches all strings matched by .at except "bat".
  • [^hc]at matches all strings matched by .at other than "hat" and "cat".
  • ^[hc]at matches "hat" and "cat", but only at the beginning of the string or line.
  • [hc]at$ matches "hat" and "cat", but only at the end of the string or line.
  • \[.\] matches any single character surrounded by "[" and "]" since the brackets are escaped, for example: "[a]", "[b]", "[7]", "[@]", "[]]", and "[ ]" (bracket space bracket).
  • s.* matches s followed by zero or more characters, for example: "s", "saw", "seed", "s3w96.7", and "s6#h%(>>>m n mQ".

According to Ross Cox, the POSIX specification requires ambiguous subexpressions to be handled in a way different from Perl's. The committee replaced Perl's rules with one that is simple to explain, but the new "simple" rules are actually more complex to implement: they were incompatible with pre-existing tooling and made it essentially impossible to define a "lazy match" (see below) extension. As a result, very few programs actually implement the POSIX subexpression rules (even when they implement other parts of the POSIX syntax).[32]

POSIX extended edit

The meaning of metacharacters escaped with a backslash is reversed for some characters in the POSIX Extended Regular Expression (ERE) syntax. With this syntax, a backslash causes the metacharacter to be treated as a literal character. So, for example, \( \) is now ( ) and \{ \} is now { }. Additionally, support is removed for \n backreferences and the following metacharacters are added:

Metacharacter Description
? Matches the preceding element zero or one time. For example, ab?c matches only "ac" or "abc".
+ Matches the preceding element one or more times. For example, ab+c matches "abc", "abbc", "abbbc", and so on, but not "ac".
| The choice (also known as alternation or set union) operator matches either the expression before or the expression after the operator. For example, abc|def matches "abc" or "def".

Examples:

  • [hc]?at matches "at", "hat", and "cat".
  • [hc]*at matches "at", "hat", "cat", "hhat", "chat", "hcat", "cchchat", and so on.
  • [hc]+at matches "hat", "cat", "hhat", "chat", "hcat", "cchchat", and so on, but not "at".
  • cat|dog matches "cat" or "dog".

POSIX Extended Regular Expressions can often be used with modern Unix utilities by including the command line flag -E.

Character classes edit

The character class is the most basic regex concept after a literal match. It makes one small sequence of characters match a larger set of characters. For example, [A-Z] could stand for any uppercase letter in the English alphabet, and \d could mean any digit. Character classes apply to both POSIX levels.

When specifying a range of characters, such as [a-Z] (i.e. lowercase a to uppercase Z), the computer's locale settings determine the contents by the numeric ordering of the character encoding. They could store digits in that sequence, or the ordering could be abc…zABC…Z, or aAbBcC…zZ. So the POSIX standard defines a character class, which will be known by the regex processor installed. Those definitions are in the following table:

Description POSIX Perl/Tcl Vim Java ASCII
ASCII characters \p{ASCII} [\x00-\x7F]
Alphanumeric characters [:alnum:] \p{Alnum} [A-Za-z0-9]
Alphanumeric characters plus "_" \w \w \w [A-Za-z0-9_]
Non-word characters \W \W \W [^A-Za-z0-9_]
Alphabetic characters [:alpha:] \a \p{Alpha} [A-Za-z]
Space and tab [:blank:] \s \p{Blank} [ \t]
Word boundaries \b \< \> \b (?<=\W)(?=\w)|(?<=\w)(?=\W)
Non-word boundaries \B (?<=\W)(?=\W)|(?<=\w)(?=\w)
Control characters [:cntrl:] \p{Cntrl} [\x00-\x1F\x7F]
Digits [:digit:] \d \d \p{Digit} or \d [0-9]
Non-digits \D \D \D [^0-9]
Visible characters [:graph:] \p{Graph} [\x21-\x7E]
Lowercase letters [:lower:] \l \p{Lower} [a-z]
Visible characters and the space character [:print:] \p \p{Print} [\x20-\x7E]
Punctuation characters [:punct:] \p{Punct} [][!"#$%&'()*+,./:;<=>?@\^_`{|}~-]
Whitespace characters [:space:] \s \_s \p{Space} or \s [ \t\r\n\v\f]
Non-whitespace characters \S \S \S [^ \t\r\n\v\f]
Uppercase letters [:upper:] \u \p{Upper} [A-Z]
Hexadecimal digits [:xdigit:] \x \p{XDigit} [A-Fa-f0-9]

POSIX character classes can only be used within bracket expressions. For example, [[:upper:]ab] matches the uppercase letters and lowercase "a" and "b".

An additional non-POSIX class understood by some tools is [:word:], which is usually defined as [:alnum:] plus underscore. This reflects the fact that in many programming languages these are the characters that may be used in identifiers. The editor Vim further distinguishes word and word-head classes (using the notation \w and \h) since in many programming languages the characters that can begin an identifier are not the same as those that can occur in other positions: numbers are generally excluded, so an identifier would look like \h\w* or [[:alpha:]_][[:alnum:]_]* in POSIX notation.

Note that what the POSIX regex standards call character classes are commonly referred to as POSIX character classes in other regex flavors which support them. With most other regex flavors, the term character class is used to describe what POSIX calls bracket expressions.

Perl and PCRE edit

Because of its expressive power and (relative) ease of reading, many other utilities and programming languages have adopted syntax similar to Perl's—for example, Java, JavaScript, Julia, Python, Ruby, Qt, Microsoft's .NET Framework, and XML Schema. Some languages and tools such as Boost and PHP support multiple regex flavors. Perl-derivative regex implementations are not identical and usually implement a subset of features found in Perl 5.0, released in 1994. Perl sometimes does incorporate features initially found in other languages. For example, Perl 5.10 implements syntactic extensions originally developed in PCRE and Python.[33]

Lazy matching edit

In Python and some other implementations (e.g. Java), the three common quantifiers (*, + and ?) are greedy by default because they match as many characters as possible.[34] The regex ".+" (including the double-quotes) applied to the string

"Ganymede," he continued, "is the largest moon in the Solar System." 

matches the entire line (because the entire line begins and ends with a double-quote) instead of matching only the first part, "Ganymede,". The aforementioned quantifiers may, however, be made lazy or minimal or reluctant, matching as few characters as possible, by appending a question mark: ".+?" matches only "Ganymede,".[34]

Possessive matching edit

In Java and Python 3.11+,[35] quantifiers may be made possessive by appending a plus sign, which disables backing off (in a backtracking engine), even if doing so would allow the overall match to succeed:[36] While the regex ".*" applied to the string

"Ganymede," he continued, "is the largest moon in the Solar System." 

matches the entire line, the regex ".*+" does not match at all, because .*+ consumes the entire input, including the final ". Thus, possessive quantifiers are most useful with negated character classes, e.g. "[^"]*+", which matches "Ganymede," when applied to the same string.

Another common extension serving the same function is atomic grouping, which disables backtracking for a parenthesized group. The typical syntax is (?>group). For example, while ^(wi|w)i$ matches both wi and wii, ^(?>wi|w)i$ only matches wii because the engine is forbidden from backtracking and so cannot try setting the group to "w" after matching "wi".[37]

Possessive quantifiers are easier to implement than greedy and lazy quantifiers, and are typically more efficient at runtime.[36]

Patterns for non-regular languages edit

Many features found in virtually all modern regular expression libraries provide an expressive power that exceeds the regular languages. For example, many implementations allow grouping subexpressions with parentheses and recalling the value they match in the same expression (backreferences). This means that, among other things, a pattern can match strings of repeated words like "papa" or "WikiWiki", called squares in formal language theory. The pattern for these strings is (.+)\1.

The language of squares is not regular, nor is it context-free, due to the pumping lemma. However, pattern matching with an unbounded number of backreferences, as supported by numerous modern tools, is still context sensitive.[38] The general problem of matching any number of backreferences is NP-complete, and the execution time for known algorithms grows exponentially by the number of backreference groups used.[39]

However, many tools, libraries, and engines that provide such constructions still use the term regular expression for their patterns. This has led to a nomenclature where the term regular expression has different meanings in formal language theory and pattern matching. For this reason, some people have taken to using the term regex, regexp, or simply pattern to describe the latter. Larry Wall, author of the Perl programming language, writes in an essay about the design of Raku:

"Regular expressions" […] are only marginally related to real regular expressions. Nevertheless, the term has grown with the capabilities of our pattern matching engines, so I'm not going to try to fight linguistic necessity here. I will, however, generally call them "regexes" (or "regexen", when I'm in an Anglo-Saxon mood).[16]

Assertions edit

Assertion Lookbehind Lookahead
Positive (?<=pattern) (?=pattern)
Negative (?<!pattern) (?!pattern)
Look-behind and look-ahead assertions
in Perl regular expressions

Other features not found in describing regular languages include assertions. These include the ubiquitous ^ and $, used since at least 1970,[40] as well as some more sophisticated extensions like lookaround that appeared in 1994.[41] Lookarounds define the surrounding of a match and do not spill into the match itself, a feature only relevant for the use case of string searching[citation needed]. Some of them can be simulated in a regular language by treating the surroundings as a part of the language as well.[42]

The look-ahead assertions (?=...) and (?!...) have been attested since at least 1994, starting with Perl 5.[41] The look-behind assertions (?<=...) and (?<!...) are attested since 1997 in a commit by Ilya Zakharevich to Perl 5.005.[43]

Implementations and running times edit

There are at least three different algorithms that decide whether and how a given regex matches a string.

The oldest and fastest relies on a result in formal language theory that allows every nondeterministic finite automaton (NFA) to be transformed into a deterministic finite automaton (DFA). The DFA can be constructed explicitly and then run on the resulting input string one symbol at a time. Constructing the DFA for a regular expression of size m has the time and memory cost of O(2m), but it can be run on a string of size n in time O(n). Note that the size of the expression is the size after abbreviations, such as numeric quantifiers, have been expanded.

An alternative approach is to simulate the NFA directly, essentially building each DFA state on demand and then discarding it at the next step. This keeps the DFA implicit and avoids the exponential construction cost, but running cost rises to O(mn). The explicit approach is called the DFA algorithm and the implicit approach the NFA algorithm. Adding caching to the NFA algorithm is often called the "lazy DFA" algorithm, or just the DFA algorithm without making a distinction. These algorithms are fast, but using them for recalling grouped subexpressions, lazy quantification, and similar features is tricky.[44][45] Modern implementations include the re1-re2-sregex family based on Cox's code.

The third algorithm is to match the pattern against the input string by backtracking. This algorithm is commonly called NFA, but this terminology can be confusing. Its running time can be exponential, which simple implementations exhibit when matching against expressions like (a|aa)*b that contain both alternation and unbounded quantification and force the algorithm to consider an exponentially increasing number of sub-cases. This behavior can cause a security problem called Regular expression Denial of Service (ReDoS).

Although backtracking implementations only give an exponential guarantee in the worst case, they provide much greater flexibility and expressive power. For example, any implementation which allows the use of backreferences, or implements the various extensions introduced by Perl, must include some kind of backtracking. Some implementations try to provide the best of both algorithms by first running a fast DFA algorithm, and revert to a potentially slower backtracking algorithm only when a backreference is encountered during the match. GNU grep (and the underlying gnulib DFA) uses such a strategy.[46]

Sublinear runtime algorithms have been achieved using Boyer-Moore (BM) based algorithms and related DFA optimization techniques such as the reverse scan.[47] GNU grep, which supports a wide variety of POSIX syntaxes and extensions, uses BM for a first-pass prefiltering, and then uses an implicit DFA. Wu agrep, which implements approximate matching, combines the prefiltering into the DFA in BDM (backward DAWG matching). NR-grep's BNDM extends the BDM technique with Shift-Or bit-level parallelism.[48]

A few theoretical alternatives to backtracking for backreferences exist, and their "exponents" are tamer in that they are only related to the number of backreferences, a fixed property of some regexp languages such as POSIX. One naive method that duplicates a non-backtracking NFA for each backreference note has a complexity of   time and   space for a haystack of length n and k backreferences in the RegExp.[49] A very recent theoretical work based on memory automata gives a tighter bound based on "active" variable nodes used, and a polynomial possibility for some backreferenced regexps.[50]

Unicode edit

In theoretical terms, any token set can be matched by regular expressions as long as it is pre-defined. In terms of historical implementations, regexes were originally written to use ASCII characters as their token set though regex libraries have supported numerous other character sets. Many modern regex engines offer at least some support for Unicode. In most respects it makes no difference what the character set is, but some issues do arise when extending regexes to support Unicode.

  • Supported encoding. Some regex libraries expect to work on some particular encoding instead of on abstract Unicode characters. Many of these require the UTF-8 encoding, while others might expect UTF-16, or UTF-32. In contrast, Perl and Java are agnostic on encodings, instead operating on decoded characters internally.
  • Supported Unicode range. Many regex engines support only the Basic Multilingual Plane, that is, the characters which can be encoded with only 16 bits. Currently (as of 2016) only a few regex engines (e.g., Perl's and Java's) can handle the full 21-bit Unicode range.
  • Extending ASCII-oriented constructs to Unicode. For example, in ASCII-based implementations, character ranges of the form [x-y] are valid wherever x and y have code points in the range [0x00,0x7F] and codepoint(x) ≤ codepoint(y). The natural extension of such character ranges to Unicode would simply change the requirement that the endpoints lie in [0x00,0x7F] to the requirement that they lie in [0x0000,0x10FFFF]. However, in practice this is often not the case. Some implementations, such as that of gawk, do not allow character ranges to cross Unicode blocks. A range like [0x61,0x7F] is valid since both endpoints fall within the Basic Latin block, as is [0x0530,0x0560] since both endpoints fall within the Armenian block, but a range like [0x0061,0x0532] is invalid since it includes multiple Unicode blocks. Other engines, such as that of the Vim editor, allow block-crossing but the character values must not be more than 256 apart.[51]
  • Case insensitivity. Some case-insensitivity flags affect only the ASCII characters. Other flags affect all characters. Some engines have two different flags, one for ASCII, the other for Unicode. Exactly which characters belong to the POSIX classes also varies.
  • Cousins of case insensitivity. As ASCII has case distinction, case insensitivity became a logical feature in text searching. Unicode introduced alphabetic scripts without case like Devanagari. For these, case sensitivity is not applicable. For scripts like Chinese, another distinction seems logical: between traditional and simplified. In Arabic scripts, insensitivity to initial, medial, final, and isolated position may be desired. In Japanese, insensitivity between hiragana and katakana is sometimes useful.
  • Normalization. Unicode has combining characters. Like old typewriters, plain base characters (white spaces, punctuation characters, symbols, digits, or letters) can be followed by one or more non-spacing symbols (usually diacritics, like accent marks modifying letters) to form a single printable character; but Unicode also provides a limited set of precomposed characters, i.e. characters that already include one or more combining characters. A sequence of a base character + combining characters should be matched with the identical single precomposed character (only some of these combining sequences can be precomposed into a single Unicode character, but infinitely many other combining sequences are possible in Unicode, and needed for various languages, using one or more combining characters after an initial base character; these combining sequences may include a base character or combining characters partially precomposed, but not necessarily in canonical order and not necessarily using the canonical precompositions). The process of standardizing sequences of a base character + combining characters by decomposing these canonically equivalent sequences, before reordering them into canonical order (and optionally recomposing some combining characters into the leading base character) is called normalization.
  • New control codes. Unicode introduced amongst others, byte order marks and text direction markers. These codes might have to be dealt with in a special way.
  • Introduction of character classes for Unicode blocks, scripts, and numerous other character properties. Block properties are much less useful than script properties, because a block can have code points from several different scripts, and a script can have code points from several different blocks.[52] In Perl and the java.util.regex library, properties of the form \p{InX} or \p{Block=X} match characters in block X and \P{InX} or \P{Block=X} matches code points not in that block. Similarly, \p{Armenian}, \p{IsArmenian}, or \p{Script=Armenian} matches any character in the Armenian script. In general, \p{X} matches any character with either the binary property X or the general category X. For example, \p{Lu}, \p{Uppercase_Letter}, or \p{GC=Lu} matches any uppercase letter. Binary properties that are not general categories include \p{White_Space}, \p{Alphabetic}, \p{Math}, and \p{Dash}. Examples of non-binary properties are \p{Bidi_Class=Right_to_Left}, \p{Word_Break=A_Letter}, and \p{Numeric_Value=10}.

Language support edit

Most general-purpose programming languages support regex capabilities, either natively or via libraries. Comprehensive support is included in:

Uses edit

 
A blacklist on Wikipedia which uses regular expressions to identify bad titles

Regexes are useful in a wide variety of text processing tasks, and more generally string processing, where the data need not be textual. Common applications include data validation, data scraping (especially web scraping), data wrangling, simple parsing, the production of syntax highlighting systems, and many other tasks.

While regexes would be useful on Internet search engines, processing them across the entire database could consume excessive computer resources depending on the complexity and design of the regex. Although in many cases system administrators can run regex-based queries internally, most search engines do not offer regex support to the public. Notable exceptions include Google Code Search and Exalead. However, Google Code Search was shut down in January 2012.[62]

Examples edit

The specific syntax rules vary depending on the specific implementation, programming language, or library in use. Additionally, the functionality of regex implementations can vary between versions.

Because regexes can be difficult to both explain and understand without examples, interactive websites for testing regexes are a useful resource for learning regexes by experimentation. This section provides a basic description of some of the properties of regexes by way of illustration.

The following conventions are used in the examples.[63]

metacharacter(s) ;; the metacharacters column specifies the regex syntax being demonstrated =~ m//  ;; indicates a regex match operation in Perl =~ s///  ;; indicates a regex substitution operation in Perl 

Also worth noting is that these regexes are all Perl-like syntax. Standard POSIX regular expressions are different.

Unless otherwise indicated, the following examples conform to the Perl programming language, release 5.8.8, January 31, 2006. This means that other implementations may lack support for some parts of the syntax shown here (e.g. basic vs. extended regex, \( \) vs. (), or lack of \d instead of POSIX [:digit:]).

The syntax and conventions used in these examples coincide with that of other programming environments as well.[64]

Meta­character(s) Description Example[65]
. Normally matches any character except a newline.
Within square brackets the dot is literal.
$string1 = "Hello World\n"; if ($string1 =~ m/...../) {  print "$string1 has length >= 5.\n"; } 

Output:

Hello World  has length >= 5. 
( ) Groups a series of pattern elements to a single element.
When you match a pattern within parentheses, you can use any of $1, $2, ... later to refer to the previously matched pattern. Some implementations may use a backslash notation instead, like \1, \2.
$string1 = "Hello World\n"; if ($string1 =~ m/(H..).(o..)/) {  print "We matched '$1' and '$2'.\n"; } 

Output:

We matched 'Hel' and 'o W'. 
+ Matches the preceding pattern element one or more times.
$string1 = "Hello World\n"; if ($string1 =~ m/l+/) {  print "There are one or more consecutive letter \"l\"'s in $string1.\n"; } 

Output:

There are one or more consecutive letter "l"'s in Hello World. 
? Matches the preceding pattern element zero or one time.
$string1 = "Hello World\n"; if ($string1 =~ m/H.?e/) {  print "There is an 'H' and a 'e' separated by ";  print "0-1 characters (e.g., He Hue Hee).\n"; } 

Output:

There is an 'H' and a 'e' separated by 0-1 characters (e.g., He Hue Hee). 
? Modifies the *, +, ? or {M,N}'d regex that comes before to match as few times as possible.
$string1 = "Hello World\n"; if ($string1 =~ m/(l.+?o)/) {  print "The non-greedy match with 'l' followed by one or ";  print "more characters is 'llo' rather than 'llo Wo'.\n"; } 

Output:

The non-greedy match with 'l' followed by one or more characters is 'llo' rather than 'llo Wo'. 
* Matches the preceding pattern element zero or more times.
$string1 = "Hello World\n"; if ($string1 =~ m/el*o/) {  print "There is an 'e' followed by zero to many ";  print "'l' followed by 'o' (e.g., eo, elo, ello, elllo).\n"; } 

Output:

There is an 'e' followed by zero to many 'l' followed by 'o' (e.g., eo, elo, ello, elllo). 
{M,N} Denotes the minimum M and the maximum N match count.
N can be omitted and M can be 0: {M} matches "exactly" M times; {M,} matches "at least" M times; {0,N} matches "at most" N times.
x* y+ z? is thus equivalent to x{0,} y{1,} z{0,1}.
$string1 = "Hello World\n"; if ($string1 =~ m/l{1,2}/) {  print "There exists a substring with at least 1 ";  print "and at most 2 l's in $string1\n"; } 

Output:

There exists a substring with at least 1 and at most 2 l's in Hello World 
[…] Denotes a set of possible character matches.
$string1 = "Hello World\n"; if ($string1 =~ m/[aeiou]+/) {  print "$string1 contains one or more vowels.\n"; } 

Output:

Hello World  contains one or more vowels. 
| Separates alternate possibilities.
$string1 = "Hello World\n"; if ($string1 =~ m/(Hello|Hi|Pogo)/) {  print "$string1 contains at least one of Hello, Hi, or Pogo."; } 

Output:

Hello World  contains at least one of Hello, Hi, or Pogo. 
\b Matches a zero-width boundary between a word-class character (see next) and either a non-word class character or an edge; same as

(^\w|\w$|\W\w|\w\W).

$string1 = "Hello World\n"; if ($string1 =~ m/llo\b/) {  print "There is a word that ends with 'llo'.\n"; } 

Output:

There is a word that ends with 'llo'. 
\w Matches an alphanumeric character, including "_";
same as [A-Za-z0-9_] in ASCII, and
[\p{Alphabetic}\p{GC=Mark}\p{GC=Decimal_Number}\p{GC=Connector_Punctuation}]

in Unicode,[52] where the Alphabetic property contains more than Latin letters, and the Decimal_Number property contains more than Arab digits.

$string1 = "Hello World\n"; if ($string1 =~ m/\w/) {  print "There is at least one alphanumeric ";  print "character in $string1 (A-Z, a-z, 0-9, _).\n"; } 

Output:

There is at least one alphanumeric character in Hello World  (A-Z, a-z, 0-9, _). 
\W Matches a non-alphanumeric character, excluding "_";
same as [^A-Za-z0-9_] in ASCII, and
[^\p{Alphabetic}\p{GC=Mark}\p{GC=Decimal_Number}\p{GC=Connector_Punctuation}]

in Unicode.

$string1 = "Hello World\n"; if ($string1 =~ m/\W/) {  print "The space between Hello and ";  print "World is not alphanumeric.\n"; } 

Output:

The space between Hello and World is not alphanumeric. 
\s Matches a whitespace character,
which in ASCII are tab, line feed, form feed, carriage return, and space;
in Unicode, also matches no-break spaces, next line, and the variable-width spaces (amongst others).
$string1 = "Hello World\n"; if ($string1 =~ m/\s.*\s/) {  print "In $string1 there are TWO whitespace characters, which may";  print " be separated by other characters.\n"; } 

Output:

In Hello World  there are TWO whitespace characters, which may be separated by other characters. 
\S Matches anything but a whitespace.
$string1 = "Hello World\n"; if ($string1 =~ m/\S.*\S/) {  print "In $string1 there are TWO non-whitespace characters, which";  print " may be separated by other characters.\n"; } 

Output:

In Hello World  there are TWO non-whitespace characters, which may be separated by other characters. 
\d Matches a digit;
same as [0-9] in ASCII;
in Unicode, same as the \p{Digit} or \p{GC=Decimal_Number} property, which itself the same as the \p{Numeric_Type=Decimal} property.
$string1 = "99 bottles of beer on the wall."; if ($string1 =~ m/(\d+)/) {  print "$1 is the first number in '$string1'\n"; } 

Output:

99 is the first number in '99 bottles of beer on the wall.' 
\D Matches a non-digit;
same as [^0-9] in ASCII or \P{Digit} in Unicode.
$string1 = "Hello World\n"; if ($string1 =~ m/\D/) {  print "There is at least one character in $string1";  print " that is not a digit.\n"; } 

Output:

There is at least one character in Hello World  that is not a digit. 
^ Matches the beginning of a line or string.
$string1 = "Hello World\n"; if ($string1 =~ m/^He/) {  print "$string1 starts with the characters 'He'.\n"; } 

Output:

Hello World  starts with the characters 'He'. 
$ Matches the end of a line or string.
$string1 = "Hello World\n"; if ($string1 =~ m/rld$/) {  print "$string1 is a line or string ";  print "that ends with 'rld'.\n"; } 

Output:

Hello World  is a line or string that ends with 'rld'. 
\A Matches the beginning of a string (but not an internal line).
$string1 = "Hello\nWorld\n"; if ($string1 =~ m/\AH/) {  print "$string1 is a string ";  print "that starts with 'H'.\n"; } 

Output:

Hello World  is a string that starts with 'H'. 
\z Matches the end of a string (but not an internal line).[66]
$string1 = "Hello\nWorld\n"; if ($string1 =~ m/d\n\z/) {  print "$string1 is a string ";  print "that ends with 'd\\n'.\n"; } 

Output:

Hello World  is a string that ends with 'd\n'. 
[^…] Matches every character except the ones inside brackets.
$string1 = "Hello World\n"; if ($string1 =~ m/[^abc]/) {  print "$string1 contains a character other than ";  print "a, b, and c.\n"; } 

Output:

Hello World  contains a character other than a, b, and c. 

Induction edit

Regular expressions can often be created ("induced" or "learned") based on a set of example strings. This is known as the induction of regular languages and is part of the general problem of grammar induction in computational learning theory. Formally, given examples of strings in a regular language, and perhaps also given examples of strings not in that regular language, it is possible to induce a grammar for the language, i.e., a regular expression that generates that language. Not all regular languages can be induced in this way (see language identification in the limit), but many can. For example, the set of examples {1, 10, 100}, and negative set (of counterexamples) {11, 1001, 101, 0} can be used to induce the regular expression 1⋅0* (1 followed by zero or more 0s).

See also edit

Notes edit

  1. ^ Goyvaerts, Jan. . Regular-Expressions.info. Archived from the original on 2016-11-01. Retrieved 2016-10-31.
  2. ^ Mitkov, Ruslan (2003). The Oxford Handbook of Computational Linguistics. Oxford University Press. p. 754. ISBN 978-0-19-927634-9. from the original on 2017-02-28. Retrieved 2016-07-25.
  3. ^ Lawson, Mark V. (17 September 2003). Finite Automata. CRC Press. pp. 98–100. ISBN 978-1-58488-255-8. from the original on 27 February 2017. Retrieved 25 July 2016.
  4. ^ Kleene 1951.
  5. ^ Leung, Hing (16 September 2010). (PDF). New Mexico State University. Archived from the original (PDF) on 5 December 2013. Retrieved 13 August 2019. The concept of regular events was introduced by Kleene via the definition of regular expressions.
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  7. ^ a b Johnson et al. 1968.
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  9. ^ Ritchie, Dennis M. . Archived from the original on 1999-02-21. Retrieved 9 October 2013.
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  11. ^ Aycock 2003, p. 98.
  12. ^ Raymond, Eric S. citing Dennis Ritchie (2003). . Archived from the original on 2011-06-05. Retrieved 2009-02-17.
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  16. ^ a b Wall (2002)
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  21. ^ Sipser (1998)
  22. ^ Gelade & Neven (2008, p. 332, Thm.4.1)
  23. ^ Gruber & Holzer (2008)
  24. ^ Based on Gelade & Neven (2008), a regular expression of length about 850 such that its complement has a length about 232 can be found at File:RegexComplementBlowup.png.
  25. ^ Gischer, Jay L. (1984). (Title unknown) (Technical Report). Stanford Univ., Dept. of Comp. Sc.[title missing]
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  44. ^ Cox (2007)
  45. ^ Laurikari (2009)
  46. ^ . Archived from the original on 2021-08-18. Retrieved 2022-02-12. If the scanner detects a transition on backref, it returns a kind of "semi-success" indicating that the match will have to be verified with a backtracking matcher.
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  62. ^ Horowitz, Bradley (24 October 2011). "A fall sweep". Google Blog. from the original on 21 October 2018. Retrieved 4 May 2019.
  63. ^ The character 'm' is not always required to specify a Perl match operation. For example, m/[^abc]/ could also be rendered as /[^abc]/. The 'm' is only necessary if the user wishes to specify a match operation without using a forward-slash as the regex delimiter. Sometimes it is useful to specify an alternate regex delimiter in order to avoid "delimiter collision". See 'perldoc perlre 2009-12-31 at the Wayback Machine' for more details.
  64. ^ E.g., see Java in a Nutshell, p. 213; Python Scripting for Computational Science, p. 320; Programming PHP, p. 106.
  65. ^ All the if statements return a TRUE value
  66. ^ Conway, Damian (2005). "Regular Expressions, End of String". Perl Best Practices. O'Reilly. p. 240. ISBN 978-0-596-00173-5. from the original on 2020-10-07. Retrieved 2017-09-10.

References edit

  • Aho, Alfred V. (1990). "Algorithms for finding patterns in strings". In van Leeuwen, Jan (ed.). Handbook of Theoretical Computer Science, volume A: Algorithms and Complexity. The MIT Press. pp. 255–300.
  • Aho, Alfred V.; Ullman, Jeffrey D. (1992). "Chapter 10. Patterns, Automata, and Regular Expressions" (PDF). Foundations of Computer Science. from the original on 2020-10-07. Retrieved 2013-12-14.
  • Aycock, John (June 2003). "A brief history of just-in-time" (PDF). ACM Computing Surveys. 35 (2): 97–113. CiteSeerX 10.1.1.97.3985. doi:10.1145/857076.857077. S2CID 15345671.
  • "Regular Expressions". The Single UNIX Specification, Version 2. The Open Group. 1997. from the original on 2020-10-07. Retrieved 2011-12-13.
  • "Chapter 9: Regular Expressions". The Open Group Base Specifications. The Open Group (6). 2004. IEEE Std 1003.1, 2004 Edition. from the original on 2011-12-02. Retrieved 2011-12-13.
  • Cox, Russ (2007). . Archived from the original on 2010-01-01. Retrieved 2008-04-27.
  • Forta, Ben (2004). Sams Teach Yourself Regular Expressions in 10 Minutes. Sams. ISBN 978-0-672-32566-3.
  • Friedl, Jeffrey E. F. (2002). Mastering Regular Expressions. O'Reilly. ISBN 978-0-596-00289-3. from the original on 2005-08-30. Retrieved 2005-04-26.
  • Gelade, Wouter; Neven, Frank (2008). . Proceedings of the 25th International Symposium on Theoretical Aspects of Computer Science (STACS 2008). pp. 325–336. arXiv:0802.2869. Archived from the original on 2011-07-18. Retrieved 2009-06-15.
  • Goyvaerts, Jan; Levithan, Steven (2009). Regular Expressions Cookbook. [O'reilly]. ISBN 978-0-596-52068-7.
  • Gruber, Hermann; Holzer, Markus (2008). Finite Automata, Digraph Connectivity, and Regular Expression Size (PDF). Proceedings of the 35th International Colloquium on Automata, Languages and Programming (ICALP 2008). Lecture Notes in Computer Science. Vol. 5126. pp. 39–50. doi:10.1007/978-3-540-70583-3_4. ISBN 978-3-540-70582-6. (PDF) from the original on 2011-07-11. Retrieved 2011-02-03.
  • Habibi, Mehran (2004). Real World Regular Expressions with Java 1.4. Springer. ISBN 978-1-59059-107-9.
  • Hopcroft, John E.; Motwani, Rajeev; Ullman, Jeffrey D. (2000). Introduction to Automata Theory, Languages, and Computation (2nd ed.). Addison-Wesley.
  • Johnson, Walter L.; Porter, James H.; Ackley, Stephanie I.; Ross, Douglas T. (1968). "Automatic generation of efficient lexical processors using finite state techniques". Communications of the ACM. 11 (12): 805–813. doi:10.1145/364175.364185. S2CID 17253809.
  • Kleene, Stephen C. (1951). "Representation of Events in Nerve Nets and Finite Automata". In Shannon, Claude E.; McCarthy, John (eds.). Automata Studies (PDF). Princeton University Press. pp. 3–42. (PDF) from the original on 2020-10-07. Retrieved 2017-12-10.
  • Kozen, Dexter (1991). "A completeness theorem for Kleene algebras and the algebra of regular events". [1991] Proceedings Sixth Annual IEEE Symposium on Logic in Computer Science. pp. 214–225. doi:10.1109/LICS.1991.151646. hdl:1813/6963. ISBN 978-0-8186-2230-4. S2CID 19875225.
  • Laurikari, Ville (2009). . Archived from the original on 2010-07-14. Retrieved 2009-04-01.
  • Liger, François; McQueen, Craig; Wilton, Paul (2002). Visual Basic .NET Text Manipulation Handbook. Wrox Press. ISBN 978-1-86100-730-8.
  • Sipser, Michael (1998). "Chapter 1: Regular Languages". Introduction to the Theory of Computation. PWS Publishing. pp. 31–90. ISBN 978-0-534-94728-6.
  • Stubblebine, Tony (2003). Regular Expression Pocket Reference. O'Reilly. ISBN 978-0-596-00415-6.
  • Thompson, Ken (1968). "Programming Techniques: Regular expression search algorithm". Communications of the ACM. 11 (6): 419–422. doi:10.1145/363347.363387. S2CID 21260384.
  • Wall, Larry (2002). "Apocalypse 5: Pattern Matching". from the original on 2010-01-12. Retrieved 2006-10-11.

External links edit

  •   Media related to Regex at Wikimedia Commons
  • Regular Expressions at Curlie
  • ISO/IEC 9945-2:1993 Information technology – Portable Operating System Interface (POSIX) – Part 2: Shell and Utilities
  • ISO/IEC 9945-2:2002 Information technology – Portable Operating System Interface (POSIX) – Part 2: System Interfaces
  • ISO/IEC 9945-2:2003 Information technology – Portable Operating System Interface (POSIX) – Part 2: System Interfaces
  • ISO/IEC/IEEE 9945:2009 Information technology – Portable Operating System Interface (POSIX) Base Specifications, Issue 7
  • Regular Expression, IEEE Std 1003.1-2017, Open Group

regular, expression, regex, redirects, here, comic, book, redirects, here, operator, pointer, computer, science, pointer, member, regular, expression, shortened, regex, regexp, sometimes, referred, rational, expression, sequence, characters, that, specifies, m. Regex redirects here For the comic book see Re Gex redirects here For the C operator see Pointer computer science Pointer to member A regular expression shortened as regex or regexp 1 sometimes referred to as rational expression 2 3 is a sequence of characters that specifies a match pattern in text Usually such patterns are used by string searching algorithms for find or find and replace operations on strings or for input validation Regular expression techniques are developed in theoretical computer science and formal language theory Blue highlights show the match results of the regular expression pattern span class sr h aeiou span span class nv g span the letter h followed by one or more vowels The concept of regular expressions began in the 1950s when the American mathematician Stephen Cole Kleene formalized the concept of a regular language They came into common use with Unix text processing utilities Different syntaxes for writing regular expressions have existed since the 1980s one being the POSIX standard and another widely used being the Perl syntax Regular expressions are used in search engines in search and replace dialogs of word processors and text editors in text processing utilities such as sed and AWK and in lexical analysis Regular expressions are supported in many programming languages Contents 1 History 2 Patterns 3 Basic concepts 4 Formal language theory 4 1 Formal definition 4 2 Expressive power and compactness 4 3 Deciding equivalence of regular expressions 5 Syntax 5 1 Delimiters 5 2 Standards 5 2 1 POSIX basic and extended 5 2 2 POSIX extended 5 2 3 Character classes 5 3 Perl and PCRE 5 4 Lazy matching 5 5 Possessive matching 6 Patterns for non regular languages 6 1 Assertions 7 Implementations and running times 8 Unicode 9 Language support 10 Uses 11 Examples 12 Induction 13 See also 14 Notes 15 References 16 External linksHistory edit nbsp Stephen Cole Kleene who introduced the conceptRegular expressions originated in 1951 when mathematician Stephen Cole Kleene described regular languages using his mathematical notation called regular events 4 5 These arose in theoretical computer science in the subfields of automata theory models of computation and the description and classification of formal languages Other early implementations of pattern matching include the SNOBOL language which did not use regular expressions but instead its own pattern matching constructs Regular expressions entered popular use from 1968 in two uses pattern matching in a text editor 6 and lexical analysis in a compiler 7 Among the first appearances of regular expressions in program form was when Ken Thompson built Kleene s notation into the editor QED as a means to match patterns in text files 6 8 9 10 For speed Thompson implemented regular expression matching by just in time compilation JIT to IBM 7094 code on the Compatible Time Sharing System an important early example of JIT compilation 11 He later added this capability to the Unix editor ed which eventually led to the popular search tool grep s use of regular expressions grep is a word derived from the command for regular expression searching in the ed editor g i re i p meaning Global search for Regular Expression and Print matching lines 12 Around the same time when Thompson developed QED a group of researchers including Douglas T Ross implemented a tool based on regular expressions that is used for lexical analysis in compiler design 7 Many variations of these original forms of regular expressions were used in Unix 10 programs at Bell Labs in the 1970s including vi lex sed AWK and expr and in other programs such as Emacs which has its own incompatible syntax and behavior Regexes were subsequently adopted by a wide range of programs with these early forms standardized in the POSIX 2 standard in 1992 In the 1980s the more complicated regexes arose in Perl which originally derived from a regex library written by Henry Spencer 1986 who later wrote an implementation for Tcl called Advanced Regular Expressions 13 The Tcl library is a hybrid NFA DFA implementation with improved performance characteristics Software projects that have adopted Spencer s Tcl regular expression implementation include PostgreSQL 14 Perl later expanded on Spencer s original library to add many new features 15 Part of the effort in the design of Raku formerly named Perl 6 is to improve Perl s regex integration and to increase their scope and capabilities to allow the definition of parsing expression grammars 16 The result is a mini language called Raku rules which are used to define Raku grammar as well as provide a tool to programmers in the language These rules maintain existing features of Perl 5 x regexes but also allow BNF style definition of a recursive descent parser via sub rules The use of regexes in structured information standards for document and database modeling started in the 1960s and expanded in the 1980s when industry standards like ISO SGML precursored by ANSI GCA 101 1983 consolidated The kernel of the structure specification language standards consists of regexes Its use is evident in the DTD element group syntax Prior to the use of regular expressions many search languages allowed simple wildcards for example to match any sequence of characters and to match a single character Relics of this can be found today in the glob syntax for filenames and in the SQL LIKE operator Starting in 1997 Philip Hazel developed PCRE Perl Compatible Regular Expressions which attempts to closely mimic Perl s regex functionality and is used by many modern tools including PHP and Apache HTTP Server citation needed Today regexes are widely supported in programming languages text processing programs particularly lexers advanced text editors and some other programs Regex support is part of the standard library of many programming languages including Java and Python and is built into the syntax of others including Perl and ECMAScript Implementations of regex functionality is often called a regex engine and a number of libraries are available for reuse In the late 2010s several companies started to offer hardware FPGA 17 GPU 18 implementations of PCRE compatible regex engines that are faster compared to CPU implementations Patterns editThe phrase regular expressions or regexes is often used to mean the specific standard textual syntax for representing patterns for matching text as distinct from the mathematical notation described below Each character in a regular expression that is each character in the string describing its pattern is either a metacharacter having a special meaning or a regular character that has a literal meaning For example in the regex b b is a literal character that matches just b while is a metacharacter that matches every character except a newline Therefore this regex matches for example b or bx or b5 Together metacharacters and literal characters can be used to identify text of a given pattern or process a number of instances of it Pattern matches may vary from a precise equality to a very general similarity as controlled by the metacharacters For example is a very general pattern a z match all lower case letters from a to z is less general and b is a precise pattern matches just b The metacharacter syntax is designed specifically to represent prescribed targets in a concise and flexible way to direct the automation of text processing of a variety of input data in a form easy to type using a standard ASCII keyboard A very simple case of a regular expression in this syntax is to locate a word spelled two different ways in a text editor the regular expression seriali sz e matches both serialise and serialize Wildcard characters also achieve this but are more limited in what they can pattern as they have fewer metacharacters and a simple language base The usual context of wildcard characters is in globbing similar names in a list of files whereas regexes are usually employed in applications that pattern match text strings in general For example the regex span class o span span class s t span span class o span span class s t span span class o span matches excess whitespace at the beginning or end of a line An advanced regular expression that matches any numeral is span class s span span class o span span class err span span class nv d span span class o span span class err span span class o span span class err span span class nv d span span class o span span class err span span class o span span class err span span class nv d span span class o span span class s eE span span class o span span class err span span class nv d span span class o span nbsp Translating the Kleene star s means zero or more of s A regex processor translates a regular expression in the above syntax into an internal representation that can be executed and matched against a string representing the text being searched in One possible approach is the Thompson s construction algorithm to construct a nondeterministic finite automaton NFA which is then made deterministic and the resulting deterministic finite automaton DFA is run on the target text string to recognize substrings that match the regular expression The picture shows the NFA scheme i N i i s i obtained from the regular expression i s i where s denotes a simpler regular expression in turn which has already been recursively translated to the NFA N s Basic concepts editA regular expression often called a pattern specifies a set of strings required for a particular purpose A simple way to specify a finite set of strings is to list its elements or members However there are often more concise ways for example the set containing the three strings Handel Handel and Haendel can be specified by the pattern H a ae ndel we say that this pattern matches each of the three strings However there can be many ways to write a regular expression for the same set of strings for example Han Han Haen del also specifies the same set of three strings in this example Most formalisms provide the following operations to construct regular expressions Boolean or A vertical bar separates alternatives For example span class n gray span span class o span span class n grey span can match gray or grey Grouping Parentheses are used to define the scope and precedence of the operators among other uses For example gray grey and span class n gr span span class p span span class n a span span class o span span class n e span span class p span span class n y span are equivalent patterns which both describe the set of gray or grey Quantification A quantifier after an element such as a token character or group specifies how many times the preceding element is allowed to repeat The most common quantifiers are the question mark the asterisk derived from the Kleene star and the plus sign Kleene plus b b The question mark indicates zero or one occurrences of the preceding element For example colou r matches both color and colour b b The asterisk indicates zero or more occurrences of the preceding element For example ab c matches ac abc abbc abbbc and so on b b The plus sign indicates one or more occurrences of the preceding element For example ab c matches abc abbc abbbc and so on but not ac b n b 19 The preceding item is matched exactly n times b min b 19 The preceding item is matched min or more times b max b 19 The preceding item is matched up to max times b min max b 19 The preceding item is matched at least min times but not more than max times Wildcard The wildcard b b matches any character For example a b matches any string that contains an a and then any character and then b a b matches any string that contains an a and then the character b at some later point dd These constructions can be combined to form arbitrarily complex expressions much like one can construct arithmetical expressions from numbers and the operations and The precise syntax for regular expressions varies among tools and with context more detail is given in Syntax Formal language theory editRegular expressions describe regular languages in formal language theory They have the same expressive power as regular grammars Formal definition edit Regular expressions consist of constants which denote sets of strings and operator symbols which denote operations over these sets The following definition is standard and found as such in most textbooks on formal language theory 20 21 Given a finite alphabet S the following constants are defined as regular expressions empty set denoting the set empty string e denoting the set containing only the empty string which has no characters at all literal character a in S denoting the set containing only the character a Given regular expressions R and S the following operations over them are defined to produce regular expressions concatenation RS denotes the set of strings that can be obtained by concatenating a string accepted by R and a string accepted by S in that order For example let R denote ab c and S denote d ef Then RS denotes abd abef cd cef alternation R S denotes the set union of sets described by R and S For example if R describes ab c and S describes ab d ef expression R S describes ab c d ef Kleene star R denotes the smallest superset of the set described by R that contains e and is closed under string concatenation This is the set of all strings that can be made by concatenating any finite number including zero of strings from the set described by R For example if R denotes 0 1 R denotes the set of all finite binary strings including the empty string If R denotes ab c R denotes e ab c abab abc cab cc ababab abcab To avoid parentheses it is assumed that the Kleene star has the highest priority followed by concatenation then alternation If there is no ambiguity then parentheses may be omitted For example ab c can be written as abc and a b c can be written as a bc Many textbooks use the symbols or for alternation instead of the vertical bar Examples a b denotes e a b bb bbb a b denotes the set of all strings with no symbols other than a and b including the empty string e a b aa ab ba bb aaa ab c e denotes the set of strings starting with a then zero or more b s and finally optionally a c a ac ab abc abb abbc 0 1 01 0 1 denotes the set of binary numbers that are multiples of 3 e 0 00 11 000 011 110 0000 0011 0110 1001 1100 1111 00000 Expressive power and compactness edit The formal definition of regular expressions is minimal on purpose and avoids defining and these can be expressed as follows a aa and a a e Sometimes the complement operator is added to give a generalized regular expression here Rc matches all strings over S that do not match R In principle the complement operator is redundant because it does not grant any more expressive power However it can make a regular expression much more concise eliminating a single complement operator can cause a double exponential blow up of its length 22 23 24 Regular expressions in this sense can express the regular languages exactly the class of languages accepted by deterministic finite automata There is however a significant difference in compactness Some classes of regular languages can only be described by deterministic finite automata whose size grows exponentially in the size of the shortest equivalent regular expressions The standard example here is the languages Lk consisting of all strings over the alphabet a b whose kth from last letter equals a On the one hand a regular expression describing L4 is given by a b a a b a b a b displaystyle a mid b a a mid b a mid b a mid b nbsp Generalizing this pattern to Lk gives the expression a b a a b a b a b k 1 times displaystyle a mid b a underbrace a mid b a mid b cdots a mid b k 1 text times nbsp On the other hand it is known that every deterministic finite automaton accepting the language Lk must have at least 2k states Luckily there is a simple mapping from regular expressions to the more general nondeterministic finite automata NFAs that does not lead to such a blowup in size for this reason NFAs are often used as alternative representations of regular languages NFAs are a simple variation of the type 3 grammars of the Chomsky hierarchy 20 In the opposite direction there are many languages easily described by a DFA that are not easily described by a regular expression For instance determining the validity of a given ISBN requires computing the modulus of the integer base 11 and can be easily implemented with an 11 state DFA However a regular expression to answer the same problem of divisibility by 11 is at least multiple megabytes in length citation needed Given a regular expression Thompson s construction algorithm computes an equivalent nondeterministic finite automaton A conversion in the opposite direction is achieved by Kleene s algorithm Finally it is worth noting that many real world regular expression engines implement features that cannot be described by the regular expressions in the sense of formal language theory rather they implement regexes See below for more on this Deciding equivalence of regular expressions edit As seen in many of the examples above there is more than one way to construct a regular expression to achieve the same results It is possible to write an algorithm that for two given regular expressions decides whether the described languages are equal the algorithm reduces each expression to a minimal deterministic finite state machine and determines whether they are isomorphic equivalent Algebraic laws for regular expressions can be obtained using a method by Gischer which is best explained along an example In order to check whether X Y and X Y denote the same regular language for all regular expressions X Y it is necessary and sufficient to check whether the particular regular expressions a b and a b denote the same language over the alphabet S a b More generally an equation E F between regular expression terms with variables holds if and only if its instantiation with different variables replaced by different symbol constants holds 25 26 Every regular expression can be written solely in terms of the Kleene star and set unions over finite words This is a surprisingly difficult problem As simple as the regular expressions are there is no method to systematically rewrite them to some normal form The lack of axiom in the past led to the star height problem In 1991 Dexter Kozen axiomatized regular expressions as a Kleene algebra using equational and Horn clause axioms 27 Already in 1964 Redko had proved that no finite set of purely equational axioms can characterize the algebra of regular languages 28 Syntax editA regex pattern matches a target string The pattern is composed of a sequence of atoms An atom is a single point within the regex pattern which it tries to match to the target string The simplest atom is a literal but grouping parts of the pattern to match an atom will require using as metacharacters Metacharacters help form atoms quantifiers telling how many atoms and whether it is a greedy quantifier or not a logical OR character which offers a set of alternatives and a logical NOT character which negates an atom s existence and backreferences to refer to previous atoms of a completing pattern of atoms A match is made not when all the atoms of the string are matched but rather when all the pattern atoms in the regex have matched The idea is to make a small pattern of characters stand for a large number of possible strings rather than compiling a large list of all the literal possibilities Depending on the regex processor there are about fourteen metacharacters characters that may or may not have their literal character meaning depending on context or whether they are escaped i e preceded by an escape sequence in this case the backslash Modern and POSIX extended regexes use metacharacters more often than their literal meaning so to avoid backslash osis or leaning toothpick syndrome they have a metacharacter escape to a literal mode starting out however they instead have the four bracketing metacharacters and be primarily literal and escape this usual meaning to become metacharacters Common standards implement both The usual metacharacters are and The usual characters that become metacharacters when escaped are dswDSW and N Delimiters edit When entering a regex in a programming language they may be represented as a usual string literal hence usually quoted this is common in C Java and Python for instance where the regex re is entered as re However they are often written with slashes as delimiters as in re for the regex re This originates in ed where is the editor command for searching and an expression re can be used to specify a range of lines matching the pattern which can be combined with other commands on either side most famously g re p as in grep global regex print which is included in most Unix based operating systems such as Linux distributions A similar convention is used in sed where search and replace is given by s re replacement and patterns can be joined with a comma to specify a range of lines as in re1 re2 This notation is particularly well known due to its use in Perl where it forms part of the syntax distinct from normal string literals In some cases such as sed and Perl alternative delimiters can be used to avoid collision with contents and to avoid having to escape occurrences of the delimiter character in the contents For example in sed the command s X will replace a with an X using commas as delimiters Standards edit The IEEE POSIX standard has three sets of compliance BRE Basic Regular Expressions 29 ERE Extended Regular Expressions and SRE Simple Regular Expressions SRE is deprecated 30 in favor of BRE as both provide backward compatibility The subsection below covering the character classes applies to both BRE and ERE BRE and ERE work together ERE adds and and it removes the need to escape the metacharacters and which are required in BRE Furthermore as long as the POSIX standard syntax for regexes is adhered to there can be and often is additional syntax to serve specific yet POSIX compliant applications Although POSIX 2 leaves some implementation specifics undefined BRE and ERE provide a standard which has since been adopted as the default syntax of many tools where the choice of BRE or ERE modes is usually a supported option For example GNU grep has the following options grep E for ERE and grep G for BRE the default and grep P for Perl regexes Perl regexes have become a de facto standard having a rich and powerful set of atomic expressions Perl has no basic or extended levels As in POSIX EREs and are treated as metacharacters unless escaped other metacharacters are known to be literal or symbolic based on context alone Additional functionality includes lazy matching backreferences named capture groups and recursive patterns POSIX basic and extended edit In the POSIX standard Basic Regular Syntax BRE requires that the metacharacters and be designated and whereas Extended Regular Syntax ERE does not Metacharacter Description Matches the starting position within the string In line based tools it matches the starting position of any line Matches any single character many applications exclude newlines and exactly which characters are considered newlines is flavor character encoding and platform specific but it is safe to assume that the line feed character is included Within POSIX bracket expressions the dot character matches a literal dot For example a c matches abc etc but a c matches only a or c A bracket expression Matches a single character that is contained within the brackets For example abc matches a b or c a z specifies a range which matches any lowercase letter from a to z These forms can be mixed abcx z matches a b c x y or z as does a cx z The character is treated as a literal character if it is the last or the first after the if present character within the brackets abc abc Backslash escapes are not allowed The character can be included in a bracket expression if it is the first after the character abc Matches a single character that is not contained within the brackets For example abc matches any character other than a b or c a z matches any single character that is not a lowercase letter from a to z Likewise literal characters and ranges can be mixed Matches the ending position of the string or the position just before a string ending newline In line based tools it matches the ending position of any line Defines a marked subexpression The string matched within the parentheses can be recalled later see the next entry i n i A marked subexpression is also called a block or capturing group BRE mode requires i n i Matches what the nth marked subexpression matched where n is a digit from 1 to 9 This construct is defined in the POSIX standard 31 Some tools allow referencing more than nine capturing groups Also known as a back reference this feature is supported in BRE mode Matches the preceding element zero or more times For example ab c matches ac abc abbbc etc xyz matches x y z zx zyx xyzzy and so on ab matches ab abab ababab and so on i m i i n i Matches the preceding element at least m and not more than n times For example a 3 5 matches only aaa aaaa and aaaaa This is not found in a few older instances of regexes BRE mode requires span class nowrap i m i i n i span Examples at matches any three character string ending with at including hat cat bat 4at at and at starting with a space hc at matches hat and cat b at matches all strings matched by at except bat hc at matches all strings matched by at other than hat and cat hc at matches hat and cat but only at the beginning of the string or line hc at matches hat and cat but only at the end of the string or line matches any single character surrounded by and since the brackets are escaped for example a b 7 and bracket space bracket s matches s followed by zero or more characters for example s saw seed s3w96 7 and s6 h gt gt gt m n mQ According to Ross Cox the POSIX specification requires ambiguous subexpressions to be handled in a way different from Perl s The committee replaced Perl s rules with one that is simple to explain but the new simple rules are actually more complex to implement they were incompatible with pre existing tooling and made it essentially impossible to define a lazy match see below extension As a result very few programs actually implement the POSIX subexpression rules even when they implement other parts of the POSIX syntax 32 POSIX extended edit The meaning of metacharacters escaped with a backslash is reversed for some characters in the POSIX Extended Regular Expression ERE syntax With this syntax a backslash causes the metacharacter to be treated as a literal character So for example is now and is now Additionally support is removed for i n i backreferences and the following metacharacters are added Metacharacter Description Matches the preceding element zero or one time For example ab c matches only ac or abc Matches the preceding element one or more times For example ab c matches abc abbc abbbc and so on but not ac The choice also known as alternation or set union operator matches either the expression before or the expression after the operator For example abc def matches abc or def Examples hc at matches at hat and cat hc at matches at hat cat hhat chat hcat cchchat and so on hc at matches hat cat hhat chat hcat cchchat and so on but not at cat dog matches cat or dog POSIX Extended Regular Expressions can often be used with modern Unix utilities by including the command line flag E Character classes edit The character class is the most basic regex concept after a literal match It makes one small sequence of characters match a larger set of characters For example span class s A Z span could stand for any uppercase letter in the English alphabet and span class err span span class nv d span could mean any digit Character classes apply to both POSIX levels When specifying a range of characters such as span class s a Z span i e lowercase span class nv a span to uppercase span class nv Z span the computer s locale settings determine the contents by the numeric ordering of the character encoding They could store digits in that sequence or the ordering could be abc zABC Z or aAbBcC zZ So the POSIX standard defines a character class which will be known by the regex processor installed Those definitions are in the following table Description POSIX Perl Tcl Vim Java ASCIIASCII characters span class err span span class nv p span span class p span span class x ASCII span span class p span span class s x00 x7F span Alphanumeric characters span class s alnum span span class err span span class nv p span span class p span span class x Alnum span span class p span span class s A Za z0 9 span Alphanumeric characters plus span class err span span class nv w span span class err span span class nv w span span class err span span class nv w span span class s A Za z0 9 span Non word characters span class err span span class nv W span span class err span span class nv W span span class err span span class nv W span span class s A Za z0 9 span Alphabetic characters span class s alpha span span class err span span class nv a span span class err span span class nv p span span class p span span class x Alpha span span class p span span class s A Za z span Space and tab span class s blank span span class err span span class nv s span span class err span span class nv p span span class p span span class x Blank span span class p span span class s t span Word boundaries span class err span span class nv b span lt gt span class err span span class nv b span span class o span span class err lt span span class o span span class err span span class nv W span span class o span span class err span span class nv w span span class o span span class err lt span span class o span span class err span span class nv w span span class o span span class err span span class nv W span span class o span Non word boundaries span class err span span class nv B span span class o span span class err lt span span class o span span class err span span class nv W span span class o span span class err span span class nv W span span class o span span class err lt span span class o span span class err span span class nv w span span class o span span class err span span class nv w span span class o span Control characters span class s cntrl span span class err span span class nv p span span class p span span class x Cntrl span span class p span span class s x00 x1F x7F span Digits span class s digit span span class err span span class nv d span span class err span span class nv d span span class err span span class nv p span span class p span span class x Digit span span class p span or span class err span span class nv d span span class s 0 9 span Non digits span class err span span class nv D span span class err span span class nv D span span class err span span class nv D span span class s 0 9 span Visible characters span class s graph span span class err span span class nv p span span class p span span class x Graph span span class p span span class s x21 x7E span Lowercase letters span class s lower span span class err span span class nv l span span class err span span class nv p span span class p span span class x Lower span span class p span span class s a z span Visible characters and the space character span class s print span span class err span span class nv p span span class err span span class nv p span span class p span span class x Print span span class p span span class s x20 x7E span Punctuation characters span class s punct span span class err span span class nv p span span class p span span class x Punct span span class p span span class s amp lt gt span Whitespace characters span class s space span span class err span span class nv s span span class err span span class nv s span span class err span span class nv p span span class p span span class x Space span span class p span or span class err span span class nv s span a href 5Ct html class mw redirect title t t a a href 5Cr html class mw redirect title r r a a href 5Cn html class mw redirect title n n a a href 5Cv html class mw redirect title v v a a href 5Cf html class mw redirect title f f a Non whitespace characters span class err span span class nv S span span class err span span class nv S span span class err span span class nv S span span class s t r n v f span Uppercase letters span class s upper span span class err span span class nv u span span class err span span class nv p span span class p span span class x Upper span span class p span span class s A Z span Hexadecimal digits span class s xdigit span span class err span span class nv x span span class err span span class nv p span span class p span span class x XDigit span span class p span span class s A Fa f0 9 span POSIX character classes can only be used within bracket expressions For example span class s upper span span class nv ab span span class err span matches the uppercase letters and lowercase a and b An additional non POSIX class understood by some tools is span class s word span which is usually defined as span class s alnum span plus underscore This reflects the fact that in many programming languages these are the characters that may be used in identifiers The editor Vim further distinguishes word and word head classes using the notation span class err span span class nv w span and span class err span span class nv h span since in many programming languages the characters that can begin an identifier are not the same as those that can occur in other positions numbers are generally excluded so an identifier would look like span class err span span class nv h span span class err span span class nv w span span class o span or span class s alpha span span class nv span span class err span span class s alnum span span class nv span span class err span span class o span in POSIX notation Note that what the POSIX regex standards call character classes are commonly referred to as POSIX character classes in other regex flavors which support them With most other regex flavors the term character class is used to describe what POSIX calls bracket expressions Perl and PCRE edit See also Perl Compatible Regular Expressions Because of its expressive power and relative ease of reading many other utilities and programming languages have adopted syntax similar to Perl s for example Java JavaScript Julia Python Ruby Qt Microsoft s NET Framework and XML Schema Some languages and tools such as Boost and PHP support multiple regex flavors Perl derivative regex implementations are not identical and usually implement a subset of features found in Perl 5 0 released in 1994 Perl sometimes does incorporate features initially found in other languages For example Perl 5 10 implements syntactic extensions originally developed in PCRE and Python 33 Lazy matching edit In Python and some other implementations e g Java the three common quantifiers and are greedy by default because they match as many characters as possible 34 The regex including the double quotes applied to the string Ganymede he continued is the largest moon in the Solar System matches the entire line because the entire line begins and ends with a double quote instead of matching only the first part Ganymede The aforementioned quantifiers may however be made lazy or minimal or reluctant matching as few characters as possible by appending a question mark matches only Ganymede 34 Possessive matching edit In Java and Python 3 11 35 quantifiers may be made possessive by appending a plus sign which disables backing off in a backtracking engine even if doing so would allow the overall match to succeed 36 While the regex applied to the string Ganymede he continued is the largest moon in the Solar System matches the entire line the regex does not match at all because consumes the entire input including the final Thus possessive quantifiers are most useful with negated character classes e g which matches Ganymede when applied to the same string Another common extension serving the same function is atomic grouping which disables backtracking for a parenthesized group The typical syntax is gt group For example while wi w i matches both wi and wii gt wi w i only matches wii because the engine is forbidden from backtracking and so cannot try setting the group to w after matching wi 37 Possessive quantifiers are easier to implement than greedy and lazy quantifiers and are typically more efficient at runtime 36 Patterns for non regular languages editMany features found in virtually all modern regular expression libraries provide an expressive power that exceeds the regular languages For example many implementations allow grouping subexpressions with parentheses and recalling the value they match in the same expression backreferences This means that among other things a pattern can match strings of repeated words like papa or WikiWiki called squares in formal language theory The pattern for these strings is 1 The language of squares is not regular nor is it context free due to the pumping lemma However pattern matching with an unbounded number of backreferences as supported by numerous modern tools is still context sensitive 38 The general problem of matching any number of backreferences is NP complete and the execution time for known algorithms grows exponentially by the number of backreference groups used 39 However many tools libraries and engines that provide such constructions still use the term regular expression for their patterns This has led to a nomenclature where the term regular expression has different meanings in formal language theory and pattern matching For this reason some people have taken to using the term regex regexp or simply pattern to describe the latter Larry Wall author of the Perl programming language writes in an essay about the design of Raku Regular expressions are only marginally related to real regular expressions Nevertheless the term has grown with the capabilities of our pattern matching engines so I m not going to try to fight linguistic necessity here I will however generally call them regexes or regexen when I m in an Anglo Saxon mood 16 Assertions edit Assertion Lookbehind LookaheadPositive b lt b span style display inline border style solid padding 0 0 5ex border color black border width 0px background color black color white font size 80 margin 3px border radius 1ex pattern span b b span style display inline border style solid padding 0 0 5ex border color black border width 0px background color black color white font size 80 margin 3px border radius 1ex pattern span Negative b lt b span style display inline border style solid padding 0 0 5ex border color black border width 0px background color black color white font size 80 margin 3px border radius 1ex pattern span span style padding 1px b b span span style display inline border style solid padding 0 0 5ex border color black border width 0px background color black color white font size 80 margin 3px border radius 1ex pattern span Look behind and look ahead assertionsin Perl regular expressionsOther features not found in describing regular languages include assertions These include the ubiquitous and used since at least 1970 40 as well as some more sophisticated extensions like lookaround that appeared in 1994 41 Lookarounds define the surrounding of a match and do not spill into the match itself a feature only relevant for the use case of string searching citation needed Some of them can be simulated in a regular language by treating the surroundings as a part of the language as well 42 The look ahead assertions and have been attested since at least 1994 starting with Perl 5 41 The look behind assertions lt and lt are attested since 1997 in a commit by Ilya Zakharevich to Perl 5 005 43 Implementations and running times editThere are at least three different algorithms that decide whether and how a given regex matches a string The oldest and fastest relies on a result in formal language theory that allows every nondeterministic finite automaton NFA to be transformed into a deterministic finite automaton DFA The DFA can be constructed explicitly and then run on the resulting input string one symbol at a time Constructing the DFA for a regular expression of size m has the time and memory cost of O 2m but it can be run on a string of size n in time O n Note that the size of the expression is the size after abbreviations such as numeric quantifiers have been expanded An alternative approach is to simulate the NFA directly essentially building each DFA state on demand and then discarding it at the next step This keeps the DFA implicit and avoids the exponential construction cost but running cost rises to O mn The explicit approach is called the DFA algorithm and the implicit approach the NFA algorithm Adding caching to the NFA algorithm is often called the lazy DFA algorithm or just the DFA algorithm without making a distinction These algorithms are fast but using them for recalling grouped subexpressions lazy quantification and similar features is tricky 44 45 Modern implementations include the re1 re2 sregex family based on Cox s code The third algorithm is to match the pattern against the input string by backtracking This algorithm is commonly called NFA but this terminology can be confusing Its running time can be exponential which simple implementations exhibit when matching against expressions like span class p span span class n a span span class o span span class n aa span span class p span span class o span span class n b span that contain both alternation and unbounded quantification and force the algorithm to consider an exponentially increasing number of sub cases This behavior can cause a security problem called Regular expression Denial of Service ReDoS Although backtracking implementations only give an exponential guarantee in the worst case they provide much greater flexibility and expressive power For example any implementation which allows the use of backreferences or implements the various extensions introduced by Perl must include some kind of backtracking Some implementations try to provide the best of both algorithms by first running a fast DFA algorithm and revert to a potentially slower backtracking algorithm only when a backreference is encountered during the match GNU grep and the underlying gnulib DFA uses such a strategy 46 Sublinear runtime algorithms have been achieved using Boyer Moore BM based algorithms and related DFA optimization techniques such as the reverse scan 47 GNU grep which supports a wide variety of POSIX syntaxes and extensions uses BM for a first pass prefiltering and then uses an implicit DFA Wu agrep which implements approximate matching combines the prefiltering into the DFA in BDM backward DAWG matching NR grep s BNDM extends the BDM technique with Shift Or bit level parallelism 48 A few theoretical alternatives to backtracking for backreferences exist and their exponents are tamer in that they are only related to the number of backreferences a fixed property of some regexp languages such as POSIX One naive method that duplicates a non backtracking NFA for each backreference note has a complexity of O n 2 k 2 displaystyle mathrm O n 2k 2 nbsp time and O n 2 k 1 displaystyle mathrm O n 2k 1 nbsp space for a haystack of length n and k backreferences in the RegExp 49 A very recent theoretical work based on memory automata gives a tighter bound based on active variable nodes used and a polynomial possibility for some backreferenced regexps 50 Unicode editIn theoretical terms any token set can be matched by regular expressions as long as it is pre defined In terms of historical implementations regexes were originally written to use ASCII characters as their token set though regex libraries have supported numerous other character sets Many modern regex engines offer at least some support for Unicode In most respects it makes no difference what the character set is but some issues do arise when extending regexes to support Unicode Supported encoding Some regex libraries expect to work on some particular encoding instead of on abstract Unicode characters Many of these require the UTF 8 encoding while others might expect UTF 16 or UTF 32 In contrast Perl and Java are agnostic on encodings instead operating on decoded characters internally Supported Unicode range Many regex engines support only the Basic Multilingual Plane that is the characters which can be encoded with only 16 bits Currently as of 2016 update only a few regex engines e g Perl s and Java s can handle the full 21 bit Unicode range Extending ASCII oriented constructs to Unicode For example in ASCII based implementations character ranges of the form x y are valid wherever x and y have code points in the range 0x00 0x7F and codepoint x codepoint y The natural extension of such character ranges to Unicode would simply change the requirement that the endpoints lie in 0x00 0x7F to the requirement that they lie in 0x0000 0x10FFFF However in practice this is often not the case Some implementations such as that of gawk do not allow character ranges to cross Unicode blocks A range like 0x61 0x7F is valid since both endpoints fall within the Basic Latin block as is 0x0530 0x0560 since both endpoints fall within the Armenian block but a range like 0x0061 0x0532 is invalid since it includes multiple Unicode blocks Other engines such as that of the Vim editor allow block crossing but the character values must not be more than 256 apart 51 Case insensitivity Some case insensitivity flags affect only the ASCII characters Other flags affect all characters Some engines have two different flags one for ASCII the other for Unicode Exactly which characters belong to the POSIX classes also varies Cousins of case insensitivity As ASCII has case distinction case insensitivity became a logical feature in text searching Unicode introduced alphabetic scripts without case like Devanagari For these case sensitivity is not applicable For scripts like Chinese another distinction seems logical between traditional and simplified In Arabic scripts insensitivity to initial medial final and isolated position may be desired In Japanese insensitivity between hiragana and katakana is sometimes useful Normalization Unicode has combining characters Like old typewriters plain base characters white spaces punctuation characters symbols digits or letters can be followed by one or more non spacing symbols usually diacritics like accent marks modifying letters to form a single printable character but Unicode also provides a limited set of precomposed characters i e characters that already include one or more combining characters A sequence of a base character combining characters should be matched with the identical single precomposed character only some of these combining sequences can be precomposed into a single Unicode character but infinitely many other combining sequences are possible in Unicode and needed for various languages using one or more combining characters after an initial base character these combining sequences may include a base character or combining characters partially precomposed but not necessarily in canonical order and not necessarily using the canonical precompositions The process of standardizing sequences of a base character combining characters by decomposing these canonically equivalent sequences before reordering them into canonical order and optionally recomposing some combining characters into the leading base character is called normalization New control codes Unicode introduced amongst others byte order marks and text direction markers These codes might have to be dealt with in a special way Introduction of character classes for Unicode blocks scripts and numerous other character properties Block properties are much less useful than script properties because a block can have code points from several different scripts and a script can have code points from several different blocks 52 In Perl and the java util regex library properties of the form p InX or p Block X match characters in block X and P InX or P Block X matches code points not in that block Similarly p Armenian p IsArmenian or p Script Armenian matches any character in the Armenian script In general p X matches any character with either the binary property X or the general category X For example p Lu p Uppercase Letter or p GC Lu matches any uppercase letter Binary properties that are not general categories include p White Space p Alphabetic p Math and p Dash Examples of non binary properties are p Bidi Class Right to Left p Word Break A Letter and p Numeric Value 10 Language support editMost general purpose programming languages support regex capabilities either natively or via libraries Comprehensive support is included in C 53 C 54 Java 55 JavaScript 56 OCaml 57 Perl 58 PHP 59 Python 60 Rust 61 Uses edit nbsp A blacklist on Wikipedia which uses regular expressions to identify bad titlesRegexes are useful in a wide variety of text processing tasks and more generally string processing where the data need not be textual Common applications include data validation data scraping especially web scraping data wrangling simple parsing the production of syntax highlighting systems and many other tasks While regexes would be useful on Internet search engines processing them across the entire database could consume excessive computer resources depending on the complexity and design of the regex Although in many cases system administrators can run regex based queries internally most search engines do not offer regex support to the public Notable exceptions include Google Code Search and Exalead However Google Code Search was shut down in January 2012 62 Examples editThe specific syntax rules vary depending on the specific implementation programming language or library in use Additionally the functionality of regex implementations can vary between versions Because regexes can be difficult to both explain and understand without examples interactive websites for testing regexes are a useful resource for learning regexes by experimentation This section provides a basic description of some of the properties of regexes by way of illustration The following conventions are used in the examples 63 metacharacter s the metacharacters column specifies the regex syntax being demonstrated m indicates a regex match operation in Perl s indicates a regex substitution operation in Perl Also worth noting is that these regexes are all Perl like syntax Standard POSIX regular expressions are different Unless otherwise indicated the following examples conform to the Perl programming language release 5 8 8 January 31 2006 This means that other implementations may lack support for some parts of the syntax shown here e g basic vs extended regex vs or lack of d instead of POSIX digit The syntax and conventions used in these examples coincide with that of other programming environments as well 64 Meta character s Description Example 65 Normally matches any character except a newline Within square brackets the dot is literal string1 Hello World n if string1 m print string1 has length gt 5 n Output Hello World has length gt 5 Groups a series of pattern elements to a single element When you match a pattern within parentheses you can use any of 1 2 later to refer to the previously matched pattern Some implementations may use a backslash notation instead like 1 2 string1 Hello World n if string1 m H o print We matched 1 and 2 n Output We matched Hel and o W Matches the preceding pattern element one or more times string1 Hello World n if string1 m l print There are one or more consecutive letter l s in string1 n Output There are one or more consecutive letter l s in Hello World Matches the preceding pattern element zero or one time string1 Hello World n if string1 m H e print There is an H and a e separated by print 0 1 characters e g He Hue Hee n Output There is an H and a e separated by 0 1 characters e g He Hue Hee Modifies the or M N d regex that comes before to match as few times as possible string1 Hello World n if string1 m l o print The non greedy match with l followed by one or print more characters is llo rather than llo Wo n Output The non greedy match with l followed by one or more characters is llo rather than llo Wo Matches the preceding pattern element zero or more times string1 Hello World n if string1 m el o print There is an e followed by zero to many print l followed by o e g eo elo ello elllo n Output There is an e followed by zero to many l followed by o e g eo elo ello elllo M N Denotes the minimum M and the maximum N match count N can be omitted and M can be 0 M matches exactly M times M matches at least M times 0 N matches at most N times x y z is thus equivalent to x 0 y 1 z 0 1 string1 Hello World n if string1 m l 1 2 print There exists a substring with at least 1 print and at most 2 l s in string1 n Output There exists a substring with at least 1 and at most 2 l s in Hello World Denotes a set of possible character matches string1 Hello World n if string1 m aeiou print string1 contains one or more vowels n Output Hello World contains one or more vowels Separates alternate possibilities string1 Hello World n if string1 m Hello Hi Pogo print string1 contains at least one of Hello Hi or Pogo Output Hello World contains at least one of Hello Hi or Pogo b Matches a zero width boundary between a word class character see next and either a non word class character or an edge same as w w W w w W string1 Hello World n if string1 m llo b print There is a word that ends with llo n Output There is a word that ends with llo w Matches an alphanumeric character including same as A Za z0 9 in ASCII and p Alphabetic wbr wbr p GC Mark wbr wbr p GC Decimal Number wbr wbr p GC Connector Punctuation in Unicode 52 where the Alphabetic property contains more than Latin letters and the Decimal Number property contains more than Arab digits string1 Hello World n if string1 m w print There is at least one alphanumeric print character in string1 A Z a z 0 9 n Output There is at least one alphanumeric character in Hello World A Z a z 0 9 W Matches a non alphanumeric character excluding same as A Za z0 9 in ASCII and p Alphabetic wbr wbr p GC Mark wbr wbr p GC Decimal Number wbr wbr p GC Connector Punctuation in Unicode string1 Hello World n if string1 m W print The space between Hello and print World is not alphanumeric n Output The space between Hello and World is not alphanumeric s Matches a whitespace character which in ASCII are tab line feed form feed carriage return and space in Unicode also matches no wbr break spaces next line and the variable wbr width spaces amongst others string1 Hello World n if string1 m s s print In string1 there are TWO whitespace characters which may print be separated by other characters n Output In Hello World there are TWO whitespace characters which may be separated by other characters S Matches anything but a whitespace string1 Hello World n if string1 m S S print In string1 there are TWO non whitespace characters which print may be separated by other characters n Output In Hello World there are TWO non whitespace characters which may be separated by other characters d Matches a digit same as 0 9 in ASCII in Unicode same as the p Digit or p GC Decimal Number property which itself the same as the p Numeric Type Decimal property string1 99 bottles of beer on the wall if string1 m d print 1 is the first number in string1 n Output 99 is the first number in 99 bottles of beer on the wall D Matches a non digit same as 0 9 in ASCII or P Digit in Unicode string1 Hello World n if string1 m D print There is at least one character in string1 print that is not a digit n Output There is at least one character in Hello World that is not a digit Matches the beginning of a line or string string1 Hello World n if string1 m He print string1 starts with the characters He n Output Hello World starts with the characters He Matches the end of a line or string string1 Hello World n if string1 m rld print string1 is a line or string print that ends with rld n Output Hello World is a line or string that ends with rld A Matches the beginning of a string but not an internal line string1 Hello nWorld n if string1 m AH print string1 is a string print that starts with H n Output Hello World is a string that starts with H z Matches the end of a string but not an internal line 66 string1 Hello nWorld n if string1 m d n z print string1 is a string print that ends with d n n Output Hello World is a string that ends with d n Matches every character except the ones inside brackets string1 Hello World n if string1 m abc print string1 contains a character other than print a b and c n Output Hello World contains a character other than a b and c Induction editMain article Induction of regular languages Regular expressions can often be created induced or learned based on a set of example strings This is known as the induction of regular languages and is part of the general problem of grammar induction in computational learning theory Formally given examples of strings in a regular language and perhaps also given examples of strings not in that regular language it is possible to induce a grammar for the language i e a regular expression that generates that language Not all regular languages can be induced in this way see language identification in the limit but many can For example the set of examples 1 10 100 and negative set of counterexamples 11 1001 101 0 can be used to induce the regular expression 1 0 1 followed by zero or more 0s See also editComparison of regular expression engines Extended Backus Naur form Matching wildcards Regular tree grammar Thompson s construction converts a regular expression into an equivalent nondeterministic finite automaton NFA Notes edit Goyvaerts Jan Regular Expression Tutorial Learn How to Use Regular Expressions Regular Expressions info Archived from the original on 2016 11 01 Retrieved 2016 10 31 Mitkov Ruslan 2003 The Oxford Handbook of Computational Linguistics Oxford University Press p 754 ISBN 978 0 19 927634 9 Archived from the original on 2017 02 28 Retrieved 2016 07 25 Lawson Mark V 17 September 2003 Finite Automata CRC Press pp 98 100 ISBN 978 1 58488 255 8 Archived from the original on 27 February 2017 Retrieved 25 July 2016 Kleene 1951 Leung Hing 16 September 2010 Regular Languages and Finite Automata PDF New Mexico State University Archived from the original PDF on 5 December 2013 Retrieved 13 August 2019 The concept of regular events was introduced 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on 2010 01 01 Retrieved 2008 04 27 Forta Ben 2004 Sams Teach Yourself Regular Expressions in 10 Minutes Sams ISBN 978 0 672 32566 3 Friedl Jeffrey E F 2002 Mastering Regular Expressions O Reilly ISBN 978 0 596 00289 3 Archived from the original on 2005 08 30 Retrieved 2005 04 26 Gelade Wouter Neven Frank 2008 Succinctness of the Complement and Intersection of Regular Expressions Proceedings of the 25th International Symposium on Theoretical Aspects of Computer Science STACS 2008 pp 325 336 arXiv 0802 2869 Archived from the original on 2011 07 18 Retrieved 2009 06 15 Goyvaerts Jan Levithan Steven 2009 Regular Expressions Cookbook O reilly ISBN 978 0 596 52068 7 Gruber Hermann Holzer Markus 2008 Finite Automata Digraph Connectivity and Regular Expression Size PDF Proceedings of the 35th International Colloquium on Automata Languages and Programming ICALP 2008 Lecture Notes in Computer Science Vol 5126 pp 39 50 doi 10 1007 978 3 540 70583 3 4 ISBN 978 3 540 70582 6 Archived PDF from the original on 2011 07 11 Retrieved 2011 02 03 Habibi Mehran 2004 Real World Regular Expressions with Java 1 4 Springer ISBN 978 1 59059 107 9 Hopcroft John E Motwani Rajeev Ullman Jeffrey D 2000 Introduction to Automata Theory Languages and Computation 2nd ed Addison Wesley Johnson Walter L Porter James H Ackley Stephanie I Ross Douglas T 1968 Automatic generation of efficient lexical processors using finite state techniques Communications of the ACM 11 12 805 813 doi 10 1145 364175 364185 S2CID 17253809 Kleene Stephen C 1951 Representation of Events in Nerve Nets and Finite Automata In Shannon Claude E McCarthy John eds Automata Studies PDF Princeton University Press pp 3 42 Archived PDF from the original on 2020 10 07 Retrieved 2017 12 10 Kozen Dexter 1991 A completeness theorem for Kleene algebras and the algebra of regular events 1991 Proceedings Sixth Annual IEEE Symposium on Logic in Computer Science pp 214 225 doi 10 1109 LICS 1991 151646 hdl 1813 6963 ISBN 978 0 8186 2230 4 S2CID 19875225 Laurikari Ville 2009 TRE library 0 7 6 Archived from the original on 2010 07 14 Retrieved 2009 04 01 Liger Francois McQueen Craig Wilton Paul 2002 Visual Basic NET Text Manipulation Handbook Wrox Press ISBN 978 1 86100 730 8 Sipser Michael 1998 Chapter 1 Regular Languages Introduction to the Theory of Computation PWS Publishing pp 31 90 ISBN 978 0 534 94728 6 Stubblebine Tony 2003 Regular Expression Pocket Reference O Reilly ISBN 978 0 596 00415 6 Thompson Ken 1968 Programming Techniques Regular expression search algorithm Communications of the ACM 11 6 419 422 doi 10 1145 363347 363387 S2CID 21260384 Wall Larry 2002 Apocalypse 5 Pattern Matching Archived from the original on 2010 01 12 Retrieved 2006 10 11 External links edit nbsp Wikibooks has a book on the topic of Regular Expressions nbsp The Wikibook R Programming has a page on the topic of Text Processing nbsp Look up regular expression in Wiktionary the free dictionary nbsp Media related to Regex at Wikimedia Commons Regular Expressions at Curlie ISO IEC 9945 2 1993 Information technology Portable Operating System Interface POSIX Part 2 Shell and Utilities ISO IEC 9945 2 2002 Information technology Portable Operating System Interface POSIX Part 2 System Interfaces ISO IEC 9945 2 2003 Information technology Portable Operating System Interface POSIX Part 2 System Interfaces ISO IEC IEEE 9945 2009 Information technology Portable Operating System Interface POSIX Base Specifications Issue 7 Regular Expression IEEE Std 1003 1 2017 Open Group Retrieved from https en wikipedia org w index php title Regular expression amp oldid 1206732697, wikipedia, wiki, book, books, library,

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