enginekit / parsing

A pure-Python module that implements an LR(1) parser generator, as well as CFSM and GLR parser drivers.

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Parsing

The Parsing module implements an LR(1) parser generator, as well as the runtime support for using a generated parser, via the Lr and Glr parser drivers. There is no special parser generator input file format, but the parser generator still needs to know what classes/methods correspond to various aspects of the parser. This information is specified via docstrings, which the parser generator introspects in order to generate a parser. Only one parser specification can be embedded in each module, but it is possible to share modules between parser specifications so that, for example, the same token definitions can be used by multiple parser specifications.

The parsing tables are LR(1), but they are generated using a fast algorithm that avoids creating duplicate states that result when using the generic LR(1) algorithm. Creation time and table size are on par with the LALR(1) algorithm. However, LALR(1) can create reduce/reduce conflicts that don't exist in a true LR(1) parser. For more information on the algorithm, see:

A Practical General Method for Constructing LR(k) Parsers
David Pager
Acta Informatica 7, 249-268 (1977)

Parsing table generation requires non-trivial amounts of time for large grammars. Internal pickling support makes it possible to cache the most recent version of the parsing table on disk, and use the table if the current parser specification is still compatible with the one that was used to generate the pickled parsing table. Since the compatibility checking is quite fast, even for large grammars, this removes the need to use the standard code generation method that is used by most parser generators.

Parser specifications are encapsulated by the Spec class. Parser instances use Spec instances, but are themselves based on separate classes. This allows multiple parser instances to exist simultaneously, without requiring multiple copies of the parsing tables. There are two separate parser driver classes:

Lr:
Standard Characteristic Finite State Machine (CFSM) driver, based on unambiguous LR(1) parsing tables. This driver is faster than the Glr driver, but it cannot deal with all parsing tables that the Glr driver can.
Glr:

Generalized LR driver, capable of tracking multiple parse trees simultaneously, if the %split precedence is used to mark ambiguous actions. This driver is closely based on Elkhound's design, which is described in a technical report:

Elkhound: A Fast, Practical GLR Parser Generator
Scott McPeak
Report No. UCB/CSD-2-1214 (December 2002)
http://www.cs.berkeley.edu/~smcpeak/elkhound/

Parser generator directives are embedded in docstrings, and must begin with a '%' character, followed immediately by one of several keywords:

Precedence:
%fail %nonassoc %left %right %split
Token:
%token
Non-terminal:
%start %nonterm
Production:
%reduce

All of these directives are associated with classes except for %reduce. %reduce is associated with methods within non-terminal classes. The Parsing module provides base classes from which precedences, tokens, and non-terminals must be derived. This is not as restrictive as it sounds, since there is nothing preventing, for example, a master Token class that subclasses Parsing.Token, which all of the actual token types then subclass. Also, nothing prevents using multiple inheritance.

Folowing are the base classes to be subclassed by parser specifications:

  • Precedence
  • Token
  • Nonterm

The Parsing module implements the following exception classes:

  • Exception
  • SpecError
  • SyntaxError
  • AttributeError

Author: Jason Evans jasone@canonware.com

Github repo: http://github.com/sprymix/parsing

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A pure-Python module that implements an LR(1) parser generator, as well as CFSM and GLR parser drivers.

License:MIT License


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