March 7, 2020

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lark-parser/lark

lark-parser/lark

A modern parsing library for Python, implementing Earley & LALR(1) and an easy interface

repo name lark-parser/lark
repo link https://github.com/lark-parser/lark
homepage
language Python
size (curr.) 1504 kB
stars (curr.) 1641
created 2017-02-04
license MIT License

Lark - a modern parsing library for Python

Parse any context-free grammar, FAST and EASY!

Beginners: Lark is not just another parser. It can parse any grammar you throw at it, no matter how complicated or ambiguous, and do so efficiently. It also constructs a parse-tree for you, without additional code on your part.

Experts: Lark implements both Earley(SPPF) and LALR(1), and several different lexers, so you can trade-off power and speed, according to your requirements. It also provides a variety of sophisticated features and utilities.

Lark can:

  • Parse all context-free grammars, and handle any ambiguity
  • Build a parse-tree automagically, no construction code required
  • Outperform all other Python libraries when using LALR(1) (Yes, including PLY)
  • Run on every Python interpreter (it’s pure-python)
  • Generate a stand-alone parser (for LALR(1) grammars)

And many more features. Read ahead and find out.

Most importantly, Lark will save you time and prevent you from getting parsing headaches.

Install Lark

$ pip install lark-parser

Lark has no dependencies.

Build Status

Syntax Highlighting

Lark provides syntax highlighting for its grammar files (*.lark):

Clones

Hello World

Here is a little program to parse “Hello, World!” (Or any other similar phrase):

from lark import Lark

l = Lark('''start: WORD "," WORD "!"

            %import common.WORD   // imports from terminal library
            %ignore " "           // Disregard spaces in text
         ''')

print( l.parse("Hello, World!") )

And the output is:

Tree(start, [Token(WORD, 'Hello'), Token(WORD, 'World')])

Notice punctuation doesn’t appear in the resulting tree. It’s automatically filtered away by Lark.

Fruit flies like bananas

Lark is great at handling ambiguity. Let’s parse the phrase “fruit flies like bananas”:

fruitflies.png

See more examples here

List of main features

  • Builds a parse-tree (AST) automagically, based on the structure of the grammar
  • Earley parser
    • Can parse all context-free grammars
    • Full support for ambiguous grammars
  • LALR(1) parser
    • Fast and light, competitive with PLY
    • Can generate a stand-alone parser
  • CYK parser, for highly ambiguous grammars (NEW! Courtesy of ehudt)
  • EBNF grammar
  • Unicode fully supported
  • Python 2 & 3 compatible
  • Automatic line & column tracking
  • Standard library of terminals (strings, numbers, names, etc.)
  • Import grammars from Nearley.js
  • Extensive test suite codecov
  • MyPy support using type stubs
  • And much more!

See the full list of features here

Comparison to other libraries

Performance comparison

Lark is the fastest and lightest (lower is better)

Run-time Comparison

Memory Usage Comparison

Check out the JSON tutorial for more details on how the comparison was made.

Note: I really wanted to add PLY to the benchmark, but I couldn’t find a working JSON parser anywhere written in PLY. If anyone can point me to one that actually works, I would be happy to add it!

Note 2: The parsimonious code has been optimized for this specific test, unlike the other benchmarks (Lark included). Its “real-world” performance may not be as good.

Feature comparison

Library Algorithm Grammar Builds tree? Supports ambiguity? Can handle every CFG? Line/Column tracking Generates Stand-alone
Lark Earley/LALR(1) EBNF Yes! Yes! Yes! Yes! Yes! (LALR only)
PLY LALR(1) BNF No No No No No
PyParsing PEG Combinators No No No* No No
Parsley PEG EBNF No No No* No No
Parsimonious PEG EBNF Yes No No* No No
ANTLR LL(*) EBNF Yes No Yes? Yes No

(* PEGs cannot handle non-deterministic grammars. Also, according to Wikipedia, it remains unanswered whether PEGs can really parse all deterministic CFGs)

Projects using Lark

  • storyscript - The programming language for Application Storytelling
  • tartiflette - a GraphQL engine by Dailymotion. Lark is used to parse the GraphQL schemas definitions.
  • Hypothesis - Library for property-based testing
  • mappyfile - a MapFile parser for working with MapServer configuration
  • synapse - an intelligence analysis platform
  • Datacube-core - Open Data Cube analyses continental scale Earth Observation data through time
  • SPFlow - Library for Sum-Product Networks
  • Torchani - Accurate Neural Network Potential on PyTorch
  • Command-Block-Assembly - An assembly language, and C compiler, for Minecraft commands
  • Fabric-SDK-Py - Hyperledger fabric SDK with Python 3.x
  • required - multi-field validation using docstrings
  • miniwdl - A static analysis toolkit for the Workflow Description Language
  • pytreeview - a lightweight tree-based grammar explorer
  • harmalysis - A language for harmonic analysis and music theory

Using Lark? Send me a message and I’ll add your project!

How to use Nearley grammars in Lark

Lark comes with a tool to convert grammars from Nearley, a popular Earley library for Javascript. It uses Js2Py to convert and run the Javascript postprocessing code segments.

Here’s an example:

git clone https://github.com/Hardmath123/nearley
python -m lark.tools.nearley nearley/examples/calculator/arithmetic.ne main nearley > ncalc.py

You can use the output as a regular python module:

>>> import ncalc
>>> ncalc.parse('sin(pi/4) ^ e')
0.38981434460254655

License

Lark uses the MIT license.

(The standalone tool is under MPL2)

Contribute

Lark is currently accepting pull-requests. See How to develop Lark

If you like Lark and feel like donating, you can do so at my patreon page.

If you wish for a specific feature to get a higher priority, you can request it in a follow-up email, and I’ll consider it favorably.

Contact

If you have any questions or want my assistance, you can email me at erezshin at gmail com.

I’m also available for contract work.

Erez

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