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Conversion of a (sub) grammar to (approximated) regular expressions.

Project description

Grammar2Regex

Grammar2Regex converts context-free grammars to regular expressions. Left- and right-linear grammars are always converted precisely. Furthermore, some grammars with a regular language but a more general shape can also be converted. For example, a rule <N> ::= a<A><N> is not right-linear due to the occurrence of <A>; but if <A> does not reach <N> and everything else is regular, we obtain a precise regular expression by computing the regular expression for <A> and inserting it into the rule for <N>.

For grammars with a non-regular language or a suboptimal shape, we "unwind" problematic expansion elements. This step loses information, but enables us to compute under-approximating regular expressions for arbitrary context-free grammars. Grammar2Regex returns expressions either in a custom ADT format suitable for further processing or as ReRef objects of the z3 SMT solver.

Example

Consider the following grammar of XML attribute or tag name identifiers:

import string
from typing import Dict, List
from fuzzingbook.Grammars import srange

xml_id_grammar: Dict[str, List[str]] = {
    "<start>": ["<id>"],
    "<id>": [
        "<id-no-prefix>",
        "<id-with-prefix>"
    ],
    "<id-no-prefix>": [
        "<id-start-char>",
        "<id-start-char><id-chars>",
    ],
    "<id-with-prefix>": ["<id-no-prefix>:<id-no-prefix>"],
    "<id-start-char>": srange("_" + string.ascii_letters),
    "<id-chars>": ["<id-char>", "<id-char><id-chars>"],
    "<id-char>": ["<id-start-char>"] + srange("-." + string.digits),
}

Our chosen grammar format is the one from the Fuzzing Book.

This grammar can be precisely converted into a regular expression:

from grammar_to_regex.cfg2regex import RegexConverter

converter = RegexConverter(xml_id_grammar, compress_unions=True)
print(converter.to_regex('<start>', convert_to_z3=False))

which yields an object of type grammar_to_regex.regex.Regex, in pretty print:

((["-" .. "."] | ["0" .. "9"] | ["A" .. "Z"] | "_" | ["a" .. "z"])* • (["-" .. "."] | ["0" .. "9"] | ["A" .. "Z"] | "_" | ["a" .. "z"]))

You can also obtain an output in the regular expression format of the z3 SMT solver if you need this for further processing (simply omit the convert_to_z3=False or set that parameter to True).

Installation

Grammar2Regex requires Python 3.10.

To install Grammar2Regex, run

pip install grammar2regex

To install it locally for testing, check this repository out and run

pip install -e .[test]

License and Maintainer

This project is licensed under the GNU GENERAL PUBLIC LICENSE v3. It is maintained by Dominic Steinhöfel.

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