Provided by: python3-lark_1.1.9-1_all bug

NAME

       lark - Lark Documentation

PHILOSOPHY

       Parsers  are innately complicated and confusing. They're difficult to understand, difficult to write, and
       difficult to use. Even experts on the subject can become baffled by  the  nuances  of  these  complicated
       state-machines.

       Lark's  mission  is  to make the process of writing them as simple and abstract as possible, by following
       these design principles:

   Design Principles
       • Readability matters

       • Keep the grammar clean and simple

       • Don't force the user to decide on things that the parser can figure out on its own

       • Usability is more important than performance

       • Performance is still very important

       • Follow the Zen of Python, whenever possible and applicable

       In accordance with these principles, I arrived at the following design choices:

                                                         ----

   Design Choices
   1. Separation of code and grammar
       Grammars are the de-facto reference for your language, and for the structure of your parse-tree. For  any
       non-trivial  language,  the  conflation  of code and grammar always turns out convoluted and difficult to
       read.

       The grammars in Lark are EBNF-inspired, so they are especially easy to read & work with.

   2. Always build a parse-tree (unless told not to)
       Trees are always simpler to work with than state-machines.

       • Trees allow you to see the "state-machine" visually

       • Trees allow your computation to be aware of previous and future states

       • Trees allow you to process the parse in steps, instead of forcing you to do it all at once.

       And anyway, every parse-tree can be replayed as a state-machine, so there is no loss of information.

       See this answer in more detail here.

       To improve performance, you can skip building the tree for LALR(1), by providing Lark with a  transformer
       (see the JSON example).

   3. Earley is the default
       The  Earley algorithm can accept any context-free grammar you throw at it (i.e. any grammar you can write
       in EBNF, it can parse). That makes it extremely friendly to beginners, who are not aware of  the  strange
       and arbitrary restrictions that LALR(1) places on its grammars.

       As  the  users grow to understand the structure of their grammar, the scope of their target language, and
       their performance requirements, they may choose to switch over to LALR(1)  to  gain  a  huge  performance
       boost, possibly at the cost of some language features.

       Both Earley and LALR(1) can use the same grammar, as long as all constraints are satisfied.

       In short, "Premature optimization is the root of all evil."

   Other design features
       • Automatically resolve terminal collisions whenever possible

       • Automatically keep track of line & column numbers

FEATURES

   Main Features
       • Earley parser, capable of parsing any context-free grammar

         • Implements SPPF, for efficient parsing and storing of ambiguous grammars.

       • LALR(1) parser, limited in power of expression, but very efficient in space and performance (O(n)).

         • Implements  a  parse-aware  lexer  that  provides  a better power of expression than traditional LALR
           implementations (such as ply).

       • EBNF-inspired grammar, with extra features (See: Grammar Reference)

       • Builds a parse-tree (AST) automagically based on the grammar

       • Stand-alone parser generator - create a small independent parser to embed in your project. (read more)

       • Flexible error handling by using an interactive parser interface (LALR only)

       • Automatic line & column tracking (for both tokens and matched rules)

       • Automatic terminal collision resolution

       • Warns on regex collisions using the optional interegular library. (read more)

       • Grammar composition - Import terminals and rules from other grammars (see example).

       • Standard library of terminals (strings, numbers, names, etc.)

       • Unicode fully supported

       • Extensive test suite

       • Type annotations (MyPy support)

       • Pure-Python implementation

       Read more about the parsers

   Extra features
       • Support for external regex module (see here)

       • Import grammars from Nearley.js (read more)

       • CYK parser

       • Visualize your parse trees as dot or png files (see_example)

       • Automatic reconstruction of input from parse-tree (see example and another example)

       • Use Lark grammars in Julia and Javascript.

PARSERS

       Lark implements the following parsing algorithms: Earley, LALR(1), and CYK

   Earley
       An Earley Parser is a chart parser capable of parsing any context-free grammar at O(n^3), and O(n^2) when
       the grammar is unambiguous. It can parse most LR grammars at O(n). Most programming languages are LR, and
       can be parsed at a linear time.

       Lark's Earley implementation runs on top of a skipping chart parser,  which  allows  it  to  use  regular
       expressions,  instead  of  matching  characters  one-by-one. This is a huge improvement to Earley that is
       unique to  Lark.  This  feature  is  used  by  default,  but  can  also  be  requested  explicitly  using
       lexer='dynamic'.

       It's  possible  to  bypass the dynamic lexing, and use the regular Earley parser with a basic lexer, that
       tokenizes as an independent first step. Doing so will provide a speed benefit, but will tokenize  without
       using  Earley's  ambiguity-resolution  ability.  So  choose  this  only  if  you  know why! Activate with
       lexer='basic'

       SPPF & Ambiguity resolution

       Lark implements the Shared Packed Parse Forest data-structure for the Earley parser, in order  to  reduce
       the space and computation required to handle ambiguous grammars.

       You can read more about SPPF here

       As a result, Lark can efficiently parse and store every ambiguity in the grammar, when using Earley.

       Lark provides the following options to combat ambiguity:

       • Lark  will  choose  the  best  derivation  for  you  (default).  Users  can  choose  between  different
         disambiguation strategies, and can prioritize (or demote)  individual  rules  over  others,  using  the
         rule-priority syntax.

       • Users  may  choose  to  receive  the  set of all possible parse-trees (using ambiguity='explicit'), and
         choose the best derivation themselves. While simple and flexible, it comes at the  cost  of  space  and
         performance, and so it isn't recommended for highly ambiguous grammars, or very long inputs.

       • As an advanced feature, users may use specialized visitors to iterate the SPPF themselves.

       lexer="dynamic_complete"

       Earley's  "dynamic" lexer uses regular expressions in order to tokenize the text. It tries every possible
       combination of terminals, but it matches each terminal  exactly  once,  returning  the  longest  possible
       match.

       That  means, for example, that when lexer="dynamic" (which is the default), the terminal /a+/, when given
       the text "aa", will return one result, aa, even though a would also be correct.

       This behavior was chosen because it is much faster, and it is usually what you would expect.

       Setting lexer="dynamic_complete" instructs the lexer  to  consider  every  possible  regexp  match.  This
       ensures  that the parser will consider and resolve every ambiguity, even inside the terminals themselves.
       This lexer provides  the  same  capabilities  as  scannerless  Earley,  but  with  different  performance
       tradeoffs.

       Warning: This lexer can be much slower, especially for open-ended terminals such as /.*/

   LALR(1)
       LALR(1)  is  a  very efficient, true-and-tested parsing algorithm. It's incredibly fast and requires very
       little memory. It can parse most programming languages (For example: Python and Java).

       LALR(1) stands for:

       • Left-to-right parsing order

       • Rightmost derivation, bottom-up

       • Lookahead of 1 token

       Lark comes with an efficient implementation that outperforms  every  other  parsing  library  for  Python
       (including PLY)

       Lark  extends  the  traditional YACC-based architecture with a contextual lexer, which processes feedback
       from the parser, making the LALR(1) algorithm stronger than ever.

       The contextual lexer communicates with the parser, and uses the parser's lookahead prediction  to  narrow
       its  choice  of  terminals.  So  at each point, the lexer only matches the subgroup of terminals that are
       legal at that parser state, instead of all of the terminals. It’s  surprisingly  effective  at  resolving
       common  terminal  collisions,  and allows one to parse languages that LALR(1) was previously incapable of
       parsing.

       (If you're familiar with YACC, you can think of it as automatic lexer-states)

       This is an improvement to LALR(1) that is unique to Lark.

   Grammar constraints in LALR(1)
       Due to having only a lookahead of one token, LALR is limited in its ability to choose between rules, when
       they both match the input.

       Tips for writing a conforming grammar:

       • Try to avoid writing different rules that can match the same sequence of characters.

       • For the best performance, prefer left-recursion over right-recursion.

       • Consider setting terminal priority only as a last resort.

       For a better understanding of these constraints, it's recommended to learn how a SLR parser works. SLR is
       very similar to LALR but much simpler.

   CYK Parser
       A CYK parser can parse any context-free grammar at O(n^3*|G|).

       Its too slow to be practical for simple grammars, but it offers good  performance  for  highly  ambiguous
       grammars.

JSON PARSER - TUTORIAL

       Lark  is  a  parser  -  a  program  that  accepts a grammar and text, and produces a structured tree that
       represents that text.  In this tutorial we will write a JSON parser in Lark, and explore  Lark's  various
       features in the process.

       It has 5 parts.

       • Writing the grammar

       • Creating the parser

       • Shaping the tree

       • Evaluating the tree

       • Optimizing

       Knowledge assumed:

       • Using Python

       • A basic understanding of how to use regular expressions

   Part 1 - The Grammar
       Lark accepts its grammars in a format called EBNF. It basically looks like this:

          rule_name : list of rules and TERMINALS to match
                    | another possible list of items
                    | etc.

          TERMINAL: "some text to match"

       (a terminal is a string or a regular expression)

       The  parser  will  try  to  match  each rule (left-part) by matching its items (right-part) sequentially,
       trying each alternative  (In  practice,  the  parser  is  predictive  so  we  don't  have  to  try  every
       alternative).

       How  to structure those rules is beyond the scope of this tutorial, but often it's enough to follow one's
       intuition.

       In the case of JSON, the structure is simple: A json document is either a list, or  a  dictionary,  or  a
       string/number/etc.

       The dictionaries and lists are recursive, and contain other json documents (or "values").

       Let's write this structure in EBNF form:

              value: dict
                   | list
                   | STRING
                   | NUMBER
                   | "true" | "false" | "null"

              list : "[" [value ("," value)*] "]"

              dict : "{" [pair ("," pair)*] "}"
              pair : STRING ":" value

       A quick explanation of the syntax:

       • Parenthesis let us group rules together.

       • rule* means any amount. That means, zero or more instances of that rule.

       • [rule] means optional. That means zero or one instance of that rule.

       Lark also supports the rule+ operator, meaning one or more instances. It also supports the rule? operator
       which is another way to say optional.

       Of  course,  we  still  haven't  defined  "STRING" and "NUMBER". Luckily, both these literals are already
       defined in Lark's common library:

              %import common.ESCAPED_STRING   -> STRING
              %import common.SIGNED_NUMBER    -> NUMBER

       The arrow (->) renames the terminals. But that only adds obscurity in this case, so going  forward  we'll
       just use their original names.

       We'll  also take care of the white-space, which is part of the text, by simply matching and then throwing
       it away.

              %import common.WS
              %ignore WS

       We tell our parser to ignore whitespace. Otherwise, we'd have to fill our grammar with WS terminals.

       By the way, if you're curious what these terminals signify, they are roughly equivalent to this:

              NUMBER : /-?\d+(\.\d+)?([eE][+-]?\d+)?/
              STRING : /".*?(?<!\\)"/
              %ignore /[ \t\n\f\r]+/

       Lark will accept this way of writing too, if you really want to complicate your life :)

       You can find the original definitions in common.lark.  They don't strictly adhere to json.org -  but  our
       purpose here is to accept json, not validate it.

       Notice  that terminals are written in UPPER-CASE, while rules are written in lower-case.  I'll touch more
       on the differences between rules and terminals later.

   Part 2 - Creating the Parser
       Once we have our grammar, creating the parser is very simple.

       We simply instantiate Lark, and tell it to accept a "value":

          from lark import Lark
          json_parser = Lark(r"""
              value: dict
                   | list
                   | ESCAPED_STRING
                   | SIGNED_NUMBER
                   | "true" | "false" | "null"

              list : "[" [value ("," value)*] "]"

              dict : "{" [pair ("," pair)*] "}"
              pair : ESCAPED_STRING ":" value

              %import common.ESCAPED_STRING
              %import common.SIGNED_NUMBER
              %import common.WS
              %ignore WS

              """, start='value')

       It's that simple! Let's test it out:

          >>> text = '{"key": ["item0", "item1", 3.14]}'
          >>> json_parser.parse(text)
          Tree(value, [Tree(dict, [Tree(pair, [Token(STRING, "key"), Tree(value, [Tree(list, [Tree(value, [Token(STRING, "item0")]), Tree(value, [Token(STRING, "item1")]), Tree(value, [Token(NUMBER, 3.14)])])])])])])
          >>> print( _.pretty() )
          value
            dict
              pair
                "key"
                value
                  list
                    value     "item0"
                    value     "item1"
                    value     3.14

       As promised, Lark automagically creates a tree that represents the parsed text.

       But something is suspiciously missing from the tree. Where are the curly braces, the commas and  all  the
       other punctuation literals?

       Lark automatically filters out literals from the tree, based on the following criteria:

       • Filter out string literals without a name, or with a name that starts with an underscore.

       • Keep regexps, even unnamed ones, unless their name starts with an underscore.

       Unfortunately, this means that it will also filter out literals like "true" and "false", and we will lose
       that information. The next section, "Shaping the tree" deals with this issue, and others.

   Part 3 - Shaping the Tree
       We now have a parser that can create a parse tree (or: AST), but the tree has some issues:

       • "true", "false" and "null" are filtered out (test it out yourself!)

       • Is has useless branches, like value, that clutter-up our view.

       I'll present the solution, and then explain it:

              ?value: dict
                    | list
                    | string
                    | SIGNED_NUMBER      -> number
                    | "true"             -> true
                    | "false"            -> false
                    | "null"             -> null

              ...

              string : ESCAPED_STRING

       • Those  little arrows signify aliases. An alias is a name for a specific part of the rule. In this case,
         we will name the true/false/null matches, and this way we won't lose the  information.  We  also  alias
         SIGNED_NUMBER to mark it for later processing.

       • The  question-mark  prefixing  value  ("?value") tells the tree-builder to inline this branch if it has
         only one member. In this case, value will always have only one member, and will always be inlined.

       • We turned the ESCAPED_STRING terminal into a rule. This way it will appear in the  tree  as  a  branch.
         This  is equivalent to aliasing (like we did for the number), but now string can also be used elsewhere
         in the grammar (namely, in the pair rule).

       Here is the new grammar:

          from lark import Lark
          json_parser = Lark(r"""
              ?value: dict
                    | list
                    | string
                    | SIGNED_NUMBER      -> number
                    | "true"             -> true
                    | "false"            -> false
                    | "null"             -> null

              list : "[" [value ("," value)*] "]"

              dict : "{" [pair ("," pair)*] "}"
              pair : string ":" value

              string : ESCAPED_STRING

              %import common.ESCAPED_STRING
              %import common.SIGNED_NUMBER
              %import common.WS
              %ignore WS

              """, start='value')

       And let's test it out:

          >>> text = '{"key": ["item0", "item1", 3.14, true]}'
          >>> print( json_parser.parse(text).pretty() )
          dict
            pair
              string    "key"
              list
                string    "item0"
                string    "item1"
                number    3.14
                true

       Ah! That is much much nicer.

   Part 4 - Evaluating the tree
       It's nice to have a tree, but what we really want is a JSON object.

       The way to do it is to evaluate the tree, using a Transformer.

       A transformer is a class with methods corresponding to branch names. For  each  branch,  the  appropriate
       method  will be called with the children of the branch as its argument, and its return value will replace
       the branch in the tree.

       So let's write a partial transformer, that handles lists and dictionaries:

          from lark import Transformer

          class MyTransformer(Transformer):
              def list(self, items):
                  return list(items)
              def pair(self, key_value):
                  k, v = key_value
                  return k, v
              def dict(self, items):
                  return dict(items)

       And when we run it, we get this:

          >>> tree = json_parser.parse(text)
          >>> MyTransformer().transform(tree)
          {Tree(string, [Token(ANONRE_1, "key")]): [Tree(string, [Token(ANONRE_1, "item0")]), Tree(string, [Token(ANONRE_1, "item1")]), Tree(number, [Token(ANONRE_0, 3.14)]), Tree(true, [])]}

       This is pretty close. Let's write a full transformer that can handle the terminals too.

       Also, our definitions of list and dict are a bit verbose. We can do better:

          from lark import Transformer

          class TreeToJson(Transformer):
              def string(self, s):
                  (s,) = s
                  return s[1:-1]
              def number(self, n):
                  (n,) = n
                  return float(n)

              list = list
              pair = tuple
              dict = dict

              null = lambda self, _: None
              true = lambda self, _: True
              false = lambda self, _: False

       And when we run it:

          >>> tree = json_parser.parse(text)
          >>> TreeToJson().transform(tree)
          {u'key': [u'item0', u'item1', 3.14, True]}

       Magic!

   Part 5 - Optimizing
   Step 1 - Benchmark
       By now, we have a fully working JSON parser, that can accept a string of JSON, and  return  its  Pythonic
       representation.

       But how fast is it?

       Now,  of course there are JSON libraries for Python written in C, and we can never compete with them. But
       since this is applicable to any parser you would write in Lark, let's see how far we can take this.

       The first step for optimizing is to have a benchmark. For this benchmark I'm  going  to  take  data  from
       json-generator.com/.  I  took  their  default  suggestion and changed it to 5000 objects. The result is a
       6.6MB sparse JSON file.

       Our first program is going to be just a concatenation of everything we've done so far:

          import sys
          from lark import Lark, Transformer

          json_grammar = r"""
              ?value: dict
                    | list
                    | string
                    | SIGNED_NUMBER      -> number
                    | "true"             -> true
                    | "false"            -> false
                    | "null"             -> null

              list : "[" [value ("," value)*] "]"

              dict : "{" [pair ("," pair)*] "}"
              pair : string ":" value

              string : ESCAPED_STRING

              %import common.ESCAPED_STRING
              %import common.SIGNED_NUMBER
              %import common.WS
              %ignore WS
              """

          class TreeToJson(Transformer):
              def string(self, s):
                  (s,) = s
                  return s[1:-1]
              def number(self, n):
                  (n,) = n
                  return float(n)

              list = list
              pair = tuple
              dict = dict

              null = lambda self, _: None
              true = lambda self, _: True
              false = lambda self, _: False

          json_parser = Lark(json_grammar, start='value', lexer='basic')

          if __name__ == '__main__':
              with open(sys.argv[1]) as f:
                  tree = json_parser.parse(f.read())
                  print(TreeToJson().transform(tree))

       We run it and get this:

          $ time python tutorial_json.py json_data > /dev/null

          real 0m36.257s
          user 0m34.735s
          sys         0m1.361s

       That's unsatisfactory time for a 6MB file. Maybe if we were parsing configuration or  a  small  DSL,  but
       we're trying to handle large amount of data here.

       Well, turns out there's quite a bit we can do about it!

   Step 2 - LALR(1)
       So  far we've been using the Earley algorithm, which is the default in Lark. Earley is powerful but slow.
       But it just so happens that our grammar is LR-compatible, and specifically LALR(1) compatible.

       So let's switch to LALR(1) and see what happens:

          json_parser = Lark(json_grammar, start='value', parser='lalr')

          $ time python tutorial_json.py json_data > /dev/null

          real        0m7.554s
          user        0m7.352s
          sys         0m0.148s

       Ah, that's much better. The resulting JSON is of course exactly the same. You can run it for yourself and
       see.

       It's important to note that not all grammars are  LR-compatible,  and  so  you  can't  always  switch  to
       LALR(1). But there's no harm in trying! If Lark lets you build the grammar, it means you're good to go.

   Step 3 - Tree-less LALR(1)
       So  far,  we've  built a full parse tree for our JSON, and then transformed it. It's a convenient method,
       but it's not the most efficient in terms of speed and memory. Luckily, Lark lets us  avoid  building  the
       tree when parsing with LALR(1).

       Here's the way to do it:

          json_parser = Lark(json_grammar, start='value', parser='lalr', transformer=TreeToJson())

          if __name__ == '__main__':
              with open(sys.argv[1]) as f:
                  print( json_parser.parse(f.read()) )

       We've  used the transformer we've already written, but this time we plug it straight into the parser. Now
       it can avoid building the parse tree, and just send the data straight into our transformer.  The  parse()
       method now returns the transformed JSON, instead of a tree.

       Let's benchmark it:

          real 0m4.866s
          user 0m4.722s
          sys  0m0.121s

       That's  a  measurable improvement! Also, this way is more memory efficient. Check out the benchmark table
       at the end to see just how much.

       As a general practice, it's recommended to work with parse trees, and only  skip  the  tree-builder  when
       your transformer is already working.

   Step 4 - PyPy
       PyPy is a JIT engine for running Python, and it's designed to be a drop-in replacement.

       Lark is written purely in Python, which makes it very suitable for PyPy.

       Let's get some free performance:

          $ time pypy tutorial_json.py json_data > /dev/null

          real 0m1.397s
          user 0m1.296s
          sys  0m0.083s

       PyPy is awesome!

   Conclusion
       We've brought the run-time down from 36 seconds to 1.1 seconds, in a series of small and simple steps.

       Now let's compare the benchmarks in a nicely organized table.

       I measured memory consumption using a little script called memusg

       I  added  a few other parsers for comparison. PyParsing and funcparselib fair pretty well in their memory
       usage (they don't build a tree), but they can't compete with the run-time speed of LALR(1).

       These benchmarks are for Lark's alpha version. I already have several  optimizations  planned  that  will
       significantly improve run-time speed.

       Once again, shout-out to PyPy for being so effective.

   Afterword
       This is the end of the tutorial. I hoped you liked it and learned a little about Lark.

       To see what else you can do with Lark, check out the examples.

       Read the documentation here: https://lark-parser.readthedocs.io/en/latest/

HOW TO USE LARK - GUIDE

   Work process
       This is the recommended process for working with Lark:

       • Collect  or  create  input  samples,  that demonstrate key features or behaviors in the language you're
         trying to parse.

       • Write a grammar. Try to aim for a structure that is intuitive, and in a way that imitates how you would
         explain your language to a fellow human.

       • Try your grammar in Lark against each input sample. Make sure the resulting parse-trees make sense.

       • Use Lark's grammar features to shape the tree: Get rid of superfluous rules by inlining them,  and  use
         aliases when specific cases need clarification.

         You can perform steps 1-4 repeatedly, gradually growing your grammar to include more sentences.

       • Create  a  transformer  to evaluate the parse-tree into a structure you'll be comfortable to work with.
         This may include evaluating literals, merging branches, or even converting the entire  tree  into  your
         own set of AST classes.

       Of  course,  some specific use-cases may deviate from this process. Feel free to suggest these cases, and
       I'll add them to this page.

   Getting started
       Browse the Examples to find a template that suits your purposes.

       Read the tutorials to get a better understanding of how everything works. (links in the main page)

       Use the Cheatsheet (PDF) for quick reference.

       Use the reference pages for more in-depth explanations. (links in the main page)

   Debug
       Grammars may contain non-obvious bugs, usually caused by rules or terminals interfering with  each  other
       in subtle ways.

       When trying to debug a misbehaving grammar, the following methodology is recommended:

       • Create a copy of the grammar, so you can change the parser/grammar without any worries

       • Find the minimal input that creates the error

       • Slowly remove rules from the grammar, while making sure the error still occurs.

       Usually, by the time you get to a minimal grammar, the problem becomes clear.

       But  if  it  doesn't, feel free to ask us on gitter, or even open an issue. Post a reproducing code, with
       the minimal grammar and input, and we'll do our best to help.

   Regex collisions
       A likely source of bugs occurs when two regexes in a grammar can match the same input. If both  terminals
       have  the  same  priority,  most  lexers would arbitrarily choose the first one that matches, which isn't
       always the desired one. (a notable exception is  the  dynamic_complete  lexer,  which  always  tries  all
       variations. But its users pay for that with performance.)

       These  collisions  can be hard to notice, and their effects can be difficult to debug, as they are subtle
       and sometimes hard to reproduce.

       To help with these situations, Lark can utilize a new external  library  called  interegular.  If  it  is
       installed, Lark uses it to check for collisions, and warn about any conflicts that it can find:

          import logging
          from lark import Lark, logger

          logger.setLevel(logging.WARN)

          collision_grammar = '''
          start: A | B
          A: /a+/
          B: /[ab]+/
          '''
          p = Lark(collision_grammar, parser='lalr')

          # Output:
          # Collision between Terminals B and A. The lexer will choose between them arbitrarily
          # Example Collision: a

       You can install interegular for Lark using pip install 'lark[interegular]'.

       Note 1: Interegular currently only runs when the lexer is basic or contextual.

       Note  2:  Some  advanced  regex  features, such as lookahead and lookbehind, may prevent interegular from
       detecting existing collisions.

   Shift/Reduce collisions
       By default Lark automatically resolves Shift/Reduce conflicts as  Shift.  It  produces  notifications  as
       debug messages.

       when users pass debug=True, those notifications are written as warnings.

       Either way, to get the messages printed you have to configure the logger beforehand. For example:

          import logging
          from lark import Lark, logger

          logger.setLevel(logging.DEBUG)

          collision_grammar = '''
          start: as as
          as: a*
          a: "a"
          '''
          p = Lark(collision_grammar, parser='lalr', debug=True)
          # Shift/Reduce conflict for terminal A: (resolving as shift)
          #  * <as : >
          # Shift/Reduce conflict for terminal A: (resolving as shift)
          #  * <as : __as_star_0>

   Strict-Mode
       Lark,  by  default, accepts grammars with unresolved Shift/Reduce collisions (which it always resolves to
       shift), and regex collisions.

       Strict-mode allows users to validate that their grammars don't contain these collisions.

       When Lark is initialized with strict=True, it raises an exception on any Shift/Reduce or regex collision.

       If interegular isn't installed, an exception is thrown.

       When using strict-mode, users will be expected to resolve their collisions manually:

       • To resolve Shift/Reduce collisions, adjust the priority weights of the rules involved, until there  are
         no more collisions.

       • To resolve regex collisions, change the involved regexes so that they can no longer both match the same
         input (Lark provides an example).

       Strict-mode only applies to LALR for now.

          from lark import Lark

          collision_grammar = '''
          start: as as
          as: a*
          a: "a"
          '''
          p = Lark(collision_grammar, parser='lalr', strict=True)

          # Traceback (most recent call last):
          #   ...
          # lark.exceptions.GrammarError: Shift/Reduce conflict for terminal A. [strict-mode]

   Tools
   Stand-alone parser
       Lark can generate a stand-alone LALR(1) parser from a grammar.

       The  resulting  module  provides  the  same  interface  as  Lark,  but  with a fixed grammar, and reduced
       functionality.

       Run using:

          python -m lark.tools.standalone

       For a play-by-play, read the tutorial

   Import Nearley.js grammars
       It is possible to import Nearley grammars into Lark. The Javascript code is translated using Js2Py.

       See the tools page for more information.

HOW TO DEVELOP LARK - GUIDE

       There are many ways you can help the project:

       • Help solve issues

       • Improve the documentation

       • Write new grammars for Lark's library

       • Write a blog post introducing Lark to your audience

       • Port Lark to another language

       • Help with code development

       If you're interested in taking one of these on, contact us on Gitter or Github Discussion,  and  we  will
       provide more details and assist you in the process.

   Code Style
       Lark does not follow a predefined code style.  We accept any code style that makes sense, as long as it's
       Pythonic and easy to read.

   Unit Tests
       Lark comes with an extensive set of tests. Many of the tests will run several times, once for each parser
       configuration.

       To run the tests, just go to the lark project root, and run the command:

          python -m tests

       or

          pypy -m tests

       For a list of supported interpreters, you can consult the tox.ini file.

       You can also run a single unittest using its class and method name, for example:

          ##   test_package test_class_name.test_function_name
          python -m tests TestLalrBasic.test_keep_all_tokens

   tox
       To  run all Unit Tests with tox, install tox and Python 2.7 up to the latest python interpreter supported
       (consult the file tox.ini).  Then, run the command tox on the  root  of  this  project  (where  the  main
       setup.py file is on).

       And,  for  example,  if you would like to only run the Unit Tests for Python version 2.7, you can run the
       command tox -e py27

   pytest
       You can also run the tests using pytest:

          pytest tests

   Using setup.py
       Another way to run the tests is using setup.py:

          python setup.py test

RECIPES

       A collection of recipes to use Lark and its various features

   Use a transformer to parse integer tokens
       Transformers are the common interface for processing matched rules and tokens.

       They can be used during parsing for better performance.

          from lark import Lark, Transformer

          class T(Transformer):
              def INT(self, tok):
                  "Convert the value of `tok` from string to int, while maintaining line number & column."
                  return tok.update(value=int(tok))

          parser = Lark("""
          start: INT*
          %import common.INT
          %ignore " "
          """, parser="lalr", transformer=T())

          print(parser.parse('3 14 159'))

       Prints out:

          Tree(start, [Token(INT, 3), Token(INT, 14), Token(INT, 159)])

   Collect all comments with lexer_callbacks
       lexer_callbacks can be used to interface with the lexer as it generates tokens.

       It accepts a dictionary of the form

          {TOKEN_TYPE: callback}

       Where callback is of type f(Token) -> Token

       It only works with the basic and contextual lexers.

       This has the same effect of using a transformer, but can also process ignored tokens.

          from lark import Lark

          comments = []

          parser = Lark("""
              start: INT*

              COMMENT: /#.*/

              %import common (INT, WS)
              %ignore COMMENT
              %ignore WS
          """, parser="lalr", lexer_callbacks={'COMMENT': comments.append})

          parser.parse("""
          1 2 3  # hello
          # world
          4 5 6
          """)

          print(comments)

       Prints out:

          [Token(COMMENT, '# hello'), Token(COMMENT, '# world')]

       Note: We don't have to return a token, because comments are ignored

   CollapseAmbiguities
       Parsing ambiguous texts with earley and ambiguity='explicit' produces a single tree with _ambig nodes  to
       mark where the ambiguity occurred.

       However, it's sometimes more convenient instead to work with a list of all possible unambiguous trees.

       Lark provides a utility transformer for that purpose:

          from lark import Lark, Tree, Transformer
          from lark.visitors import CollapseAmbiguities

          grammar = """
              !start: x y

              !x: "a" "b"
                | "ab"
                | "abc"

              !y: "c" "d"
                | "cd"
                | "d"

          """
          parser = Lark(grammar, ambiguity='explicit')

          t = parser.parse('abcd')
          for x in CollapseAmbiguities().transform(t):
              print(x.pretty())

       This prints out:

          start
          x
              a
              b
          y
              c
              d

          start
          x     ab
          y     cd

          start
          x     abc
          y     d

       While  convenient,  this  should  be  used  carefully,  as  highly  ambiguous  trees  will soon create an
       exponential explosion of such unambiguous derivations.

   Keeping track of parents when visiting
       The following visitor assigns a parent attribute for every node in the tree.

       If your tree nodes aren't unique (if there is a shared Tree instance), the assert will fail.

          class Parent(Visitor):
              def __default__(self, tree):
                  for subtree in tree.children:
                      if isinstance(subtree, Tree):
                          assert not hasattr(subtree, 'parent')
                          subtree.parent = proxy(tree)

   Unwinding VisitError after a transformer/visitor exception
       Errors that happen inside visitors and transformers get wrapped inside a VisitError exception.

       This can often be inconvenient, if you wish the actual error to propagate upwards,  or  if  you  want  to
       catch it.

       But,  it's  easy  to  unwrap  it  at the point of calling the transformer, by catching it and raising the
       VisitError.orig_exc attribute.

       For example:

          from lark import Lark, Transformer
          from lark.visitors import VisitError

          tree = Lark('start: "a"').parse('a')

          class T(Transformer):
              def start(self, x):
                  raise KeyError("Original Exception")

          t = T()
          try:
              print( t.transform(tree))
          except VisitError as e:
              raise e.orig_exc

   Adding a Progress Bar to Parsing with tqdm
       Parsing large files can take a long time, even with the parser='lalr' option. To make this  process  more
       user-friendly, it's useful to add a progress bar. One way to achieve this is to use the InteractiveParser
       to  display  each  token  as it is processed. In this example, we use tqdm, but a similar approach should
       work with GUIs.

          from tqdm import tqdm

          def parse_with_progress(parser: Lark, text: str, start=None):
              last = 0
              progress = tqdm(total=len(text))
              pi = parser.parse_interactive(text, start=start)
              for token in pi.iter_parse():
                  if token.end_pos is not None:
                      progress.update(token.end_pos - last)
                      last = token.end_pos
              return pi.result

       Note that we don't simply wrap the iterable because tqdm would  not  be  able  to  determine  the  total.
       Additionally,  keep in mind that this implementation relies on the InteractiveParser and, therefore, only
       works with the LALR(1) parser, not earley.

EXAMPLES FOR LARK

       How to run the examples:

       After cloning the repo, open the terminal into the root directory of the project, and run the following:

          [lark]$ python -m examples.<name_of_example>

       For example, the following will parse all the  Python  files  in  the  standard  library  of  your  local
       installation:

          [lark]$ python -m examples.advanced.python_parser

   Beginner Examples
   Parsing Indentation
       A  demonstration of parsing indentation (“whitespace significant” language) and the usage of the Indenter
       class.

       Since indentation is context-sensitive, a  postlex  stage  is  introduced  to  manufacture  INDENT/DEDENT
       tokens.

       It is crucial for the indenter that the NL_type matches the spaces (and tabs) after the newline.

          from lark import Lark
          from lark.indenter import Indenter

          tree_grammar = r"""
              ?start: _NL* tree

              tree: NAME _NL [_INDENT tree+ _DEDENT]

              %import common.CNAME -> NAME
              %import common.WS_INLINE
              %declare _INDENT _DEDENT
              %ignore WS_INLINE

              _NL: /(\r?\n[\t ]*)+/
          """

          class TreeIndenter(Indenter):
              NL_type = '_NL'
              OPEN_PAREN_types = []
              CLOSE_PAREN_types = []
              INDENT_type = '_INDENT'
              DEDENT_type = '_DEDENT'
              tab_len = 8

          parser = Lark(tree_grammar, parser='lalr', postlex=TreeIndenter())

          test_tree = """
          a
              b
              c
                  d
                  e
              f
                  g
          """

          def test():
              print(parser.parse(test_tree).pretty())

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Lark Grammar
       A reference implementation of the Lark grammar (using LALR(1))

          import lark
          from pathlib import Path

          examples_path = Path(__file__).parent
          lark_path = Path(lark.__file__).parent

          parser = lark.Lark.open(lark_path / 'grammars/lark.lark', rel_to=__file__, parser="lalr")

          grammar_files = [
              examples_path / 'advanced/python2.lark',
              examples_path / 'relative-imports/multiples.lark',
              examples_path / 'relative-imports/multiple2.lark',
              examples_path / 'relative-imports/multiple3.lark',
              examples_path / 'tests/no_newline_at_end.lark',
              examples_path / 'tests/negative_priority.lark',
              examples_path / 'standalone/json.lark',
              lark_path / 'grammars/common.lark',
              lark_path / 'grammars/lark.lark',
              lark_path / 'grammars/unicode.lark',
              lark_path / 'grammars/python.lark',
          ]

          def test():
              for grammar_file in grammar_files:
                  tree = parser.parse(open(grammar_file).read())
              print("All grammars parsed successfully")

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Handling Ambiguity
       A demonstration of ambiguity

       This example shows how to use get explicit ambiguity from Lark's Earley parser.

          import sys
          from lark import Lark, tree

          grammar = """
              sentence: noun verb noun        -> simple
                      | noun verb "like" noun -> comparative

              noun: adj? NOUN
              verb: VERB
              adj: ADJ

              NOUN: "flies" | "bananas" | "fruit"
              VERB: "like" | "flies"
              ADJ: "fruit"

              %import common.WS
              %ignore WS
          """

          parser = Lark(grammar, start='sentence', ambiguity='explicit')

          sentence = 'fruit flies like bananas'

          def make_png(filename):
              tree.pydot__tree_to_png( parser.parse(sentence), filename)

          def make_dot(filename):
              tree.pydot__tree_to_dot( parser.parse(sentence), filename)

          if __name__ == '__main__':
              print(parser.parse(sentence).pretty())
              # make_png(sys.argv[1])
              # make_dot(sys.argv[1])

          # Output:
          #
          # _ambig
          #   comparative
          #     noun  fruit
          #     verb  flies
          #     noun  bananas
          #   simple
          #     noun
          #       fruit
          #       flies
          #     verb  like
          #     noun  bananas
          #
          # (or view a nicer version at "./fruitflies.png")

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Basic calculator
       A simple example of a REPL calculator

       This example shows how to write a basic calculator with variables.

          from lark import Lark, Transformer, v_args

          try:
              input = raw_input   # For Python2 compatibility
          except NameError:
              pass

          calc_grammar = """
              ?start: sum
                    | NAME "=" sum    -> assign_var

              ?sum: product
                  | sum "+" product   -> add
                  | sum "-" product   -> sub

              ?product: atom
                  | product "*" atom  -> mul
                  | product "/" atom  -> div

              ?atom: NUMBER           -> number
                   | "-" atom         -> neg
                   | NAME             -> var
                   | "(" sum ")"

              %import common.CNAME -> NAME
              %import common.NUMBER
              %import common.WS_INLINE

              %ignore WS_INLINE
          """

          @v_args(inline=True)    # Affects the signatures of the methods
          class CalculateTree(Transformer):
              from operator import add, sub, mul, truediv as div, neg
              number = float

              def __init__(self):
                  self.vars = {}

              def assign_var(self, name, value):
                  self.vars[name] = value
                  return value

              def var(self, name):
                  try:
                      return self.vars[name]
                  except KeyError:
                      raise Exception("Variable not found: %s" % name)

          calc_parser = Lark(calc_grammar, parser='lalr', transformer=CalculateTree())
          calc = calc_parser.parse

          def main():
              while True:
                  try:
                      s = input('> ')
                  except EOFError:
                      break
                  print(calc(s))

          def test():
              print(calc("a = 1+2"))
              print(calc("1+a*-3"))

          if __name__ == '__main__':
              # test()
              main()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Turtle DSL
       Implements a LOGO-like toy language for Python’s turtle, with interpreter.

          try:
              input = raw_input   # For Python2 compatibility
          except NameError:
              pass

          import turtle

          from lark import Lark

          turtle_grammar = """
              start: instruction+

              instruction: MOVEMENT NUMBER            -> movement
                         | "c" COLOR [COLOR]          -> change_color
                         | "fill" code_block          -> fill
                         | "repeat" NUMBER code_block -> repeat

              code_block: "{" instruction+ "}"

              MOVEMENT: "f"|"b"|"l"|"r"
              COLOR: LETTER+

              %import common.LETTER
              %import common.INT -> NUMBER
              %import common.WS
              %ignore WS
          """

          parser = Lark(turtle_grammar)

          def run_instruction(t):
              if t.data == 'change_color':
                  turtle.color(*t.children)   # We just pass the color names as-is

              elif t.data == 'movement':
                  name, number = t.children
                  { 'f': turtle.fd,
                    'b': turtle.bk,
                    'l': turtle.lt,
                    'r': turtle.rt, }[name](int(number))

              elif t.data == 'repeat':
                  count, block = t.children
                  for i in range(int(count)):
                      run_instruction(block)

              elif t.data == 'fill':
                  turtle.begin_fill()
                  run_instruction(t.children[0])
                  turtle.end_fill()

              elif t.data == 'code_block':
                  for cmd in t.children:
                      run_instruction(cmd)
              else:
                  raise SyntaxError('Unknown instruction: %s' % t.data)

          def run_turtle(program):
              parse_tree = parser.parse(program)
              for inst in parse_tree.children:
                  run_instruction(inst)

          def main():
              while True:
                  code = input('> ')
                  try:
                      run_turtle(code)
                  except Exception as e:
                      print(e)

          def test():
              text = """
                  c red yellow
                  fill { repeat 36 {
                      f200 l170
                  }}
              """
              run_turtle(text)

          if __name__ == '__main__':
              # test()
              main()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Simple JSON Parser
       The  code  is  short  and  clear,  and outperforms every other parser (that's written in Python).  For an
       explanation, check out the JSON parser tutorial at /docs/json_tutorial.md

          import sys

          from lark import Lark, Transformer, v_args

          json_grammar = r"""
              ?start: value

              ?value: object
                    | array
                    | string
                    | SIGNED_NUMBER      -> number
                    | "true"             -> true
                    | "false"            -> false
                    | "null"             -> null

              array  : "[" [value ("," value)*] "]"
              object : "{" [pair ("," pair)*] "}"
              pair   : string ":" value

              string : ESCAPED_STRING

              %import common.ESCAPED_STRING
              %import common.SIGNED_NUMBER
              %import common.WS

              %ignore WS
          """

          class TreeToJson(Transformer):
              @v_args(inline=True)
              def string(self, s):
                  return s[1:-1].replace('\\"', '"')

              array = list
              pair = tuple
              object = dict
              number = v_args(inline=True)(float)

              null = lambda self, _: None
              true = lambda self, _: True
              false = lambda self, _: False

          ### Create the JSON parser with Lark, using the Earley algorithm
          # json_parser = Lark(json_grammar, parser='earley', lexer='basic')
          # def parse(x):
          #     return TreeToJson().transform(json_parser.parse(x))

          ### Create the JSON parser with Lark, using the LALR algorithm
          json_parser = Lark(json_grammar, parser='lalr',
                             # Using the basic lexer isn't required, and isn't usually recommended.
                             # But, it's good enough for JSON, and it's slightly faster.
                             lexer='basic',
                             # Disabling propagate_positions and placeholders slightly improves speed
                             propagate_positions=False,
                             maybe_placeholders=False,
                             # Using an internal transformer is faster and more memory efficient
                             transformer=TreeToJson())
          parse = json_parser.parse

          def test():
              test_json = '''
                  {
                      "empty_object" : {},
                      "empty_array"  : [],
                      "booleans"     : { "YES" : true, "NO" : false },
                      "numbers"      : [ 0, 1, -2, 3.3, 4.4e5, 6.6e-7 ],
                      "strings"      : [ "This", [ "And" , "That", "And a \\"b" ] ],
                      "nothing"      : null
                  }
              '''

              j = parse(test_json)
              print(j)
              import json
              assert j == json.loads(test_json)

          if __name__ == '__main__':
              # test()
              with open(sys.argv[1]) as f:
                  print(parse(f.read()))

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Advanced Examples
   LALR’s contextual lexer
       This example demonstrates the power of LALR's contextual lexer, by parsing a toy configuration language.

       The terminals NAME and VALUE overlap. They can match the same input.  A  basic  lexer  would  arbitrarily
       choose  one  over  the other, based on priority, which would lead to a (confusing) parse error.  However,
       due to the unambiguous structure of the grammar, Lark's LALR(1) algorithm knows  which  one  of  them  to
       expect  at  each point during the parse.  The lexer then only matches the tokens that the parser expects.
       The result is a correct parse, something that is impossible with a regular lexer.

       Another approach is to use the Earley algorithm.  It will handle more cases than  the  contextual  lexer,
       but at the cost of performance.  See examples/conf_earley.py for an example of that approach.

          from lark import Lark

          parser = Lark(r"""
                  start: _NL? section+
                  section: "[" NAME "]" _NL item+
                  item: NAME "=" VALUE? _NL

                  NAME: /\w/+
                  VALUE: /./+

                  %import common.NEWLINE -> _NL
                  %import common.WS_INLINE
                  %ignore WS_INLINE
              """, parser="lalr")

          sample_conf = """
          [bla]
          a=Hello
          this="that",4
          empty=
          """

          print(parser.parse(sample_conf).pretty())

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Templates
       This example shows how to use Lark's templates to achieve cleaner grammars

          from lark import Lark

          grammar = r"""
          start: list | dict

          list: "[" _seperated{atom, ","} "]"
          dict: "{" _seperated{key_value, ","} "}"
          key_value: atom ":" atom

          _seperated{x, sep}: x (sep x)*  // Define a sequence of 'x sep x sep x ...'

          atom: NUMBER | ESCAPED_STRING

          %import common (NUMBER, ESCAPED_STRING, WS)
          %ignore WS
          """

          parser = Lark(grammar)

          print(parser.parse('[1, "a", 2]'))
          print(parser.parse('{"a": 2, "b": 6}'))

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Earley’s dynamic lexer
       Demonstrates the power of Earley’s dynamic lexer on a toy configuration language

       Using  a  lexer  for  configuration  files  is  tricky,  because  values  don't  have to be surrounded by
       delimiters. Using a basic lexer for this just won't work.

       In this example we use a dynamic lexer and let the Earley parser resolve the ambiguity.

       Another approach is to use the contextual lexer with LALR. It is less powerful than Earley,  but  it  can
       handle some ambiguity when lexing and it's much faster.  See examples/conf_lalr.py for an example of that
       approach.

          from lark import Lark

          parser = Lark(r"""
                  start: _NL? section+
                  section: "[" NAME "]" _NL item+
                  item: NAME "=" VALUE? _NL

                  NAME: /\w/+
                  VALUE: /./+

                  %import common.NEWLINE -> _NL
                  %import common.WS_INLINE
                  %ignore WS_INLINE
              """, parser="earley")

          def test():
              sample_conf = """
          [bla]

          a=Hello
          this="that",4
          empty=
          """

              r = parser.parse(sample_conf)
              print (r.pretty())

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Error handling using an interactive parser
       This example demonstrates error handling using an interactive parser in LALR

       When  the  parser  encounters  an  UnexpectedToken exception, it creates a an interactive parser with the
       current parse-state, and lets you control how to proceed step-by-step. When you've achieved  the  correct
       parse-state, you can resume the run by returning True.

          from lark import Token

          from _json_parser import json_parser

          def ignore_errors(e):
              if e.token.type == 'COMMA':
                  # Skip comma
                  return True
              elif e.token.type == 'SIGNED_NUMBER':
                  # Try to feed a comma and retry the number
                  e.interactive_parser.feed_token(Token('COMMA', ','))
                  e.interactive_parser.feed_token(e.token)
                  return True

              # Unhandled error. Will stop parse and raise exception
              return False

          def main():
              s = "[0 1, 2,, 3,,, 4, 5 6 ]"
              res = json_parser.parse(s, on_error=ignore_errors)
              print(res)      # prints [0.0, 1.0, 2.0, 3.0, 4.0, 5.0, 6.0]

          main()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Reconstruct a JSON
       Demonstrates the experimental text-reconstruction feature

       The  Reconstructor takes a parse tree (already filtered from punctuation, of course), and reconstructs it
       into correct text, that can be parsed correctly.  It can be useful for creating  "hooks"  to  alter  data
       before handing it to other parsers. You can also use it to generate samples from scratch.

          import json

          from lark import Lark
          from lark.reconstruct import Reconstructor

          from _json_parser import json_grammar

          test_json = '''
              {
                  "empty_object" : {},
                  "empty_array"  : [],
                  "booleans"     : { "YES" : true, "NO" : false },
                  "numbers"      : [ 0, 1, -2, 3.3, 4.4e5, 6.6e-7 ],
                  "strings"      : [ "This", [ "And" , "That", "And a \\"b" ] ],
                  "nothing"      : null
              }
          '''

          def test_earley():

              json_parser = Lark(json_grammar, maybe_placeholders=False)
              tree = json_parser.parse(test_json)

              new_json = Reconstructor(json_parser).reconstruct(tree)
              print (new_json)
              print (json.loads(new_json) == json.loads(test_json))

          def test_lalr():

              json_parser = Lark(json_grammar, parser='lalr', maybe_placeholders=False)
              tree = json_parser.parse(test_json)

              new_json = Reconstructor(json_parser).reconstruct(tree)
              print (new_json)
              print (json.loads(new_json) == json.loads(test_json))

          test_earley()
          test_lalr()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Custom lexer
       Demonstrates using a custom lexer to parse a non-textual stream of data

       You can use a custom lexer to tokenize text when the lexers offered by Lark are too slow, or not flexible
       enough.

       You can also use it (as shown in this example) to tokenize streams of objects.

          from lark import Lark, Transformer, v_args
          from lark.lexer import Lexer, Token

          class TypeLexer(Lexer):
              def __init__(self, lexer_conf):
                  pass

              def lex(self, data):
                  for obj in data:
                      if isinstance(obj, int):
                          yield Token('INT', obj)
                      elif isinstance(obj, (type(''), type(u''))):
                          yield Token('STR', obj)
                      else:
                          raise TypeError(obj)

          parser = Lark("""
                  start: data_item+
                  data_item: STR INT*

                  %declare STR INT
                  """, parser='lalr', lexer=TypeLexer)

          class ParseToDict(Transformer):
              @v_args(inline=True)
              def data_item(self, name, *numbers):
                  return name.value, [n.value for n in numbers]

              start = dict

          def test():
              data = ['alice', 1, 27, 3, 'bob', 4, 'carrie', 'dan', 8, 6]

              print(data)

              tree = parser.parse(data)
              res = ParseToDict().transform(tree)

              print('-->')
              print(res) # prints {'alice': [1, 27, 3], 'bob': [4], 'carrie': [], 'dan': [8, 6]}

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Transform a Forest
       This example demonstrates how to subclass TreeForestTransformer to directly transform a SPPF.

          from lark import Lark
          from lark.parsers.earley_forest import TreeForestTransformer, handles_ambiguity, Discard

          class CustomTransformer(TreeForestTransformer):

              @handles_ambiguity
              def sentence(self, trees):
                  return next(tree for tree in trees if tree.data == 'simple')

              def simple(self, children):
                  children.append('.')
                  return self.tree_class('simple', children)

              def adj(self, children):
                  return Discard

              def __default_token__(self, token):
                  return token.capitalize()

          grammar = """
              sentence: noun verb noun        -> simple
                      | noun verb "like" noun -> comparative

              noun: adj? NOUN
              verb: VERB
              adj: ADJ

              NOUN: "flies" | "bananas" | "fruit"
              VERB: "like" | "flies"
              ADJ: "fruit"

              %import common.WS
              %ignore WS
          """

          parser = Lark(grammar, start='sentence', ambiguity='forest')
          sentence = 'fruit flies like bananas'
          forest = parser.parse(sentence)

          tree = CustomTransformer(resolve_ambiguity=False).transform(forest)
          print(tree.pretty())

          # Output:
          #
          # simple
          #   noun  Flies
          #   verb  Like
          #   noun  Bananas
          #   .
          #

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Simple JSON Parser
       The  code  is  short  and  clear,  and outperforms every other parser (that's written in Python).  For an
       explanation, check out the JSON parser tutorial at /docs/json_tutorial.md

       (this is here for use by the other examples)

          from lark import Lark, Transformer, v_args

          json_grammar = r"""
              ?start: value

              ?value: object
                    | array
                    | string
                    | SIGNED_NUMBER      -> number
                    | "true"             -> true
                    | "false"            -> false
                    | "null"             -> null

              array  : "[" [value ("," value)*] "]"
              object : "{" [pair ("," pair)*] "}"
              pair   : string ":" value

              string : ESCAPED_STRING

              %import common.ESCAPED_STRING
              %import common.SIGNED_NUMBER
              %import common.WS

              %ignore WS
          """

          class TreeToJson(Transformer):
              @v_args(inline=True)
              def string(self, s):
                  return s[1:-1].replace('\\"', '"')

              array = list
              pair = tuple
              object = dict
              number = v_args(inline=True)(float)

              null = lambda self, _: None
              true = lambda self, _: True
              false = lambda self, _: False

          ### Create the JSON parser with Lark, using the LALR algorithm
          json_parser = Lark(json_grammar, parser='lalr',
                             # Using the basic lexer isn't required, and isn't usually recommended.
                             # But, it's good enough for JSON, and it's slightly faster.
                             lexer='basic',
                             # Disabling propagate_positions and placeholders slightly improves speed
                             propagate_positions=False,
                             maybe_placeholders=False,
                             # Using an internal transformer is faster and more memory efficient
                             transformer=TreeToJson())

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Custom SPPF Prioritizer
       This example demonstrates how to subclass ForestVisitor to make a custom SPPF node prioritizer to be used
       in conjunction with TreeForestTransformer.

       Our prioritizer will count the number of descendants of a node that are tokens.  By negating this  count,
       our prioritizer will prefer nodes with fewer token descendants. Thus, we choose the more specific parse.

          from lark import Lark
          from lark.parsers.earley_forest import ForestVisitor, TreeForestTransformer

          class TokenPrioritizer(ForestVisitor):

              def visit_symbol_node_in(self, node):
                  # visit the entire forest by returning node.children
                  return node.children

              def visit_packed_node_in(self, node):
                  return node.children

              def visit_symbol_node_out(self, node):
                  priority = 0
                  for child in node.children:
                      # Tokens do not have a priority attribute
                      # count them as -1
                      priority += getattr(child, 'priority', -1)
                  node.priority = priority

              def visit_packed_node_out(self, node):
                  priority = 0
                  for child in node.children:
                      priority += getattr(child, 'priority', -1)
                  node.priority = priority

              def on_cycle(self, node, path):
                  raise Exception("Oops, we encountered a cycle.")

          grammar = """
          start: hello " " world | hello_world
          hello: "Hello"
          world: "World"
          hello_world: "Hello World"
          """

          parser = Lark(grammar, parser='earley', ambiguity='forest')
          forest = parser.parse("Hello World")

          print("Default prioritizer:")
          tree = TreeForestTransformer(resolve_ambiguity=True).transform(forest)
          print(tree.pretty())

          forest = parser.parse("Hello World")

          print("Custom prioritizer:")
          tree = TreeForestTransformer(resolve_ambiguity=True, prioritizer=TokenPrioritizer()).transform(forest)
          print(tree.pretty())

          # Output:
          #
          # Default prioritizer:
          # start
          #   hello Hello
          #
          #   world World
          #
          # Custom prioritizer:
          # start
          #   hello_world   Hello World

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Python 3 to Python 2 converter (tree templates)
       This  example  demonstrates how to translate between two trees using tree templates.  It parses Python 3,
       translates it to a Python 2 AST, and then outputs the result as Python 2 code.

       Uses reconstruct_python.py for generating the final Python 2 code.

          from lark import Lark
          from lark.tree_templates import TemplateConf, TemplateTranslator

          from lark.indenter import PythonIndenter
          from reconstruct_python import PythonReconstructor

          #
          # 1. Define a Python parser that also accepts template vars in the code (in the form of $var)
          #
          TEMPLATED_PYTHON = r"""
          %import python (single_input, file_input, eval_input, atom, var, stmt, expr, testlist_star_expr, _NEWLINE, _INDENT, _DEDENT, COMMENT, NAME)

          %extend atom: TEMPLATE_NAME -> var

          TEMPLATE_NAME: "$" NAME

          ?template_start: (stmt | testlist_star_expr _NEWLINE)

          %ignore /[\t \f]+/          // WS
          %ignore /\\[\t \f]*\r?\n/   // LINE_CONT
          %ignore COMMENT
          """

          parser = Lark(TEMPLATED_PYTHON, parser='lalr', start=['single_input', 'file_input', 'eval_input', 'template_start'], postlex=PythonIndenter(), maybe_placeholders=False)

          def parse_template(s):
              return parser.parse(s + '\n', start='template_start')

          def parse_code(s):
              return parser.parse(s + '\n', start='file_input')

          #
          # 2. Define translations using templates (each template code is parsed to a template tree)
          #

          pytemplate = TemplateConf(parse=parse_template)

          translations_3to2 = {
              'yield from $a':
                  'for _tmp in $a: yield _tmp',

              'raise $e from $x':
                      'raise $e',

              '$a / $b':
                  'float($a) / $b',
          }
          translations_3to2 = {pytemplate(k): pytemplate(v) for k, v in translations_3to2.items()}

          #
          # 3. Translate and reconstruct Python 3 code into valid Python 2 code
          #

          python_reconstruct = PythonReconstructor(parser)

          def translate_py3to2(code):
              tree = parse_code(code)
              tree = TemplateTranslator(translations_3to2).translate(tree)
              return python_reconstruct.reconstruct(tree)

          #
          # Test Code
          #

          _TEST_CODE = '''
          if a / 2 > 1:
              yield from [1,2,3]
          else:
              raise ValueError(a) from e

          '''

          def test():
              print(_TEST_CODE)
              print('   ----->    ')
              print(translate_py3to2(_TEST_CODE))

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Grammar-complete Python Parser
       A fully-working Python 2 & 3 parser (but not production ready yet!)

       This example demonstrates usage of the included Python grammars

          import sys
          import os, os.path
          from io import open
          import glob, time

          from lark import Lark
          from lark.indenter import PythonIndenter

          kwargs = dict(postlex=PythonIndenter(), start='file_input')

          # Official Python grammar by Lark
          python_parser3 = Lark.open_from_package('lark', 'python.lark', ['grammars'], parser='lalr', **kwargs)

          # Local Python2 grammar
          python_parser2 = Lark.open('python2.lark', rel_to=__file__, parser='lalr', **kwargs)
          python_parser2_earley = Lark.open('python2.lark', rel_to=__file__, parser='earley', lexer='basic', **kwargs)

          try:
              xrange
          except NameError:
              chosen_parser = python_parser3
          else:
              chosen_parser = python_parser2

          def _read(fn, *args):
              kwargs = {'encoding': 'iso-8859-1'}
              with open(fn, *args, **kwargs) as f:
                  return f.read()

          def _get_lib_path():
              if os.name == 'nt':
                  if 'PyPy' in sys.version:
                      return os.path.join(sys.base_prefix, 'lib-python', sys.winver)
                  else:
                      return os.path.join(sys.base_prefix, 'Lib')
              else:
                  return [x for x in sys.path if x.endswith('%s.%s' % sys.version_info[:2])][0]

          def test_python_lib():
              path = _get_lib_path()

              start = time.time()
              files = glob.glob(path+'/*.py')
              total_kb = 0
              for f in files:
                  r = _read(os.path.join(path, f))
                  kb = len(r) / 1024
                  print( '%s -\t%.1f kb' % (f, kb))
                  chosen_parser.parse(r + '\n')
                  total_kb += kb

              end = time.time()
              print( "test_python_lib (%d files, %.1f kb), time: %.2f secs"%(len(files), total_kb, end-start) )

          def test_earley_equals_lalr():
              path = _get_lib_path()

              files = glob.glob(path+'/*.py')
              for f in files:
                  print( f )
                  tree1 = python_parser2.parse(_read(os.path.join(path, f)) + '\n')
                  tree2 = python_parser2_earley.parse(_read(os.path.join(path, f)) + '\n')
                  assert tree1 == tree2

          if __name__ == '__main__':
              test_python_lib()
              # test_earley_equals_lalr()
              # python_parser3.parse(_read(sys.argv[1]) + '\n')

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Creating an AST from the parse tree
          This example demonstrates how to transform a parse-tree into an AST using lark.ast_utils.

          create_transformer() collects every subclass of Ast subclass from  the  module,  and  creates  a  Lark
          transformer that builds the AST with no extra code.

          This example only works with Python 3.

          import sys
          from typing import List
          from dataclasses import dataclass

          from lark import Lark, ast_utils, Transformer, v_args
          from lark.tree import Meta

          this_module = sys.modules[__name__]

          #
          #   Define AST
          #
          class _Ast(ast_utils.Ast):
              # This will be skipped by create_transformer(), because it starts with an underscore
              pass

          class _Statement(_Ast):
              # This will be skipped by create_transformer(), because it starts with an underscore
              pass

          @dataclass
          class Value(_Ast, ast_utils.WithMeta):
              "Uses WithMeta to include line-number metadata in the meta attribute"
              meta: Meta
              value: object

          @dataclass
          class Name(_Ast):
              name: str

          @dataclass
          class CodeBlock(_Ast, ast_utils.AsList):
              # Corresponds to code_block in the grammar
              statements: List[_Statement]

          @dataclass
          class If(_Statement):
              cond: Value
              then: CodeBlock

          @dataclass
          class SetVar(_Statement):
              # Corresponds to set_var in the grammar
              name: str
              value: Value

          @dataclass
          class Print(_Statement):
              value: Value

          class ToAst(Transformer):
              # Define extra transformation functions, for rules that don't correspond to an AST class.

              def STRING(self, s):
                  # Remove quotation marks
                  return s[1:-1]

              def DEC_NUMBER(self, n):
                  return int(n)

              @v_args(inline=True)
              def start(self, x):
                  return x

          #
          #   Define Parser
          #

          parser = Lark("""
              start: code_block

              code_block: statement+

              ?statement: if | set_var | print

              if: "if" value "{" code_block "}"
              set_var: NAME "=" value ";"
              print: "print" value ";"

              value: name | STRING | DEC_NUMBER
              name: NAME

              %import python (NAME, STRING, DEC_NUMBER)
              %import common.WS
              %ignore WS
              """,
              parser="lalr",
          )

          transformer = ast_utils.create_transformer(this_module, ToAst())

          def parse(text):
              tree = parser.parse(text)
              return transformer.transform(tree)

          #
          #   Test
          #

          if __name__ == '__main__':
              print(parse("""
                  a = 1;
                  if a {
                      print "a is 1";
                      a = 2;
                  }
              """))

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Example-Driven Error Reporting
       A   demonstration   of   example-driven   error   reporting   with   the   Earley   parser   (See   also:
       error_reporting_lalr.py)

          from lark import Lark, UnexpectedInput

          from _json_parser import json_grammar   # Using the grammar from the json_parser example

          json_parser = Lark(json_grammar)

          class JsonSyntaxError(SyntaxError):
              def __str__(self):
                  context, line, column = self.args
                  return '%s at line %s, column %s.\n\n%s' % (self.label, line, column, context)

          class JsonMissingValue(JsonSyntaxError):
              label = 'Missing Value'

          class JsonMissingOpening(JsonSyntaxError):
              label = 'Missing Opening'

          class JsonMissingClosing(JsonSyntaxError):
              label = 'Missing Closing'

          class JsonMissingComma(JsonSyntaxError):
              label = 'Missing Comma'

          class JsonTrailingComma(JsonSyntaxError):
              label = 'Trailing Comma'

          def parse(json_text):
              try:
                  j = json_parser.parse(json_text)
              except UnexpectedInput as u:
                  exc_class = u.match_examples(json_parser.parse, {
                      JsonMissingOpening: ['{"foo": ]}',
                                           '{"foor": }}',
                                           '{"foo": }'],
                      JsonMissingClosing: ['{"foo": [}',
                                           '{',
                                           '{"a": 1',
                                           '[1'],
                      JsonMissingComma: ['[1 2]',
                                         '[false 1]',
                                         '["b" 1]',
                                         '{"a":true 1:4}',
                                         '{"a":1 1:4}',
                                         '{"a":"b" 1:4}'],
                      JsonTrailingComma: ['[,]',
                                          '[1,]',
                                          '[1,2,]',
                                          '{"foo":1,}',
                                          '{"foo":false,"bar":true,}']
                  }, use_accepts=True)
                  if not exc_class:
                      raise
                  raise exc_class(u.get_context(json_text), u.line, u.column)

          def test():
              try:
                  parse('{"example1": "value"')
              except JsonMissingClosing as e:
                  print(e)

              try:
                  parse('{"example2": ] ')
              except JsonMissingOpening as e:
                  print(e)

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Example-Driven Error Reporting
       A   demonstration   of   example-driven   error   reporting   with   the   LALR   parser    (See    also:
       error_reporting_earley.py)

          from lark import Lark, UnexpectedInput

          from _json_parser import json_grammar   # Using the grammar from the json_parser example

          json_parser = Lark(json_grammar, parser='lalr')

          class JsonSyntaxError(SyntaxError):
              def __str__(self):
                  context, line, column = self.args
                  return '%s at line %s, column %s.\n\n%s' % (self.label, line, column, context)

          class JsonMissingValue(JsonSyntaxError):
              label = 'Missing Value'

          class JsonMissingOpening(JsonSyntaxError):
              label = 'Missing Opening'

          class JsonMissingClosing(JsonSyntaxError):
              label = 'Missing Closing'

          class JsonMissingComma(JsonSyntaxError):
              label = 'Missing Comma'

          class JsonTrailingComma(JsonSyntaxError):
              label = 'Trailing Comma'

          def parse(json_text):
              try:
                  j = json_parser.parse(json_text)
              except UnexpectedInput as u:
                  exc_class = u.match_examples(json_parser.parse, {
                      JsonMissingOpening: ['{"foo": ]}',
                                           '{"foor": }}',
                                           '{"foo": }'],
                      JsonMissingClosing: ['{"foo": [}',
                                           '{',
                                           '{"a": 1',
                                           '[1'],
                      JsonMissingComma: ['[1 2]',
                                         '[false 1]',
                                         '["b" 1]',
                                         '{"a":true 1:4}',
                                         '{"a":1 1:4}',
                                         '{"a":"b" 1:4}'],
                      JsonTrailingComma: ['[,]',
                                          '[1,]',
                                          '[1,2,]',
                                          '{"foo":1,}',
                                          '{"foo":false,"bar":true,}']
                  }, use_accepts=True)
                  if not exc_class:
                      raise
                  raise exc_class(u.get_context(json_text), u.line, u.column)

          def test():
              try:
                  parse('{"example1": "value"')
              except JsonMissingClosing as e:
                  print(e)

              try:
                  parse('{"example2": ] ')
              except JsonMissingOpening as e:
                  print(e)

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Reconstruct Python
       Demonstrates how Lark's experimental text-reconstruction feature can recreate functional Python code from
       its parse-tree, using just the correct grammar and a small formatter.

          from lark import Token, Lark
          from lark.reconstruct import Reconstructor
          from lark.indenter import PythonIndenter

          # Official Python grammar by Lark
          python_parser3 = Lark.open_from_package('lark', 'python.lark', ['grammars'],
                                                  parser='lalr', postlex=PythonIndenter(), start='file_input',
                                                  maybe_placeholders=False    # Necessary for reconstructor
                                                  )

          SPACE_AFTER = set(',+-*/~@<>="|:')
          SPACE_BEFORE = (SPACE_AFTER - set(',:')) | set('\'')

          def special(sym):
              return Token('SPECIAL', sym.name)

          def postproc(items):
              stack = ['\n']
              actions = []
              last_was_whitespace = True
              for item in items:
                  if isinstance(item, Token) and item.type == 'SPECIAL':
                      actions.append(item.value)
                  else:
                      if actions:
                          assert actions[0] == '_NEWLINE' and '_NEWLINE' not in actions[1:], actions

                          for a in actions[1:]:
                              if a == '_INDENT':
                                  stack.append(stack[-1] + ' ' * 4)
                              else:
                                  assert a == '_DEDENT'
                                  stack.pop()
                          actions.clear()
                          yield stack[-1]
                          last_was_whitespace = True
                      if not last_was_whitespace:
                          if item[0] in SPACE_BEFORE:
                              yield ' '
                      yield item
                      last_was_whitespace = item[-1].isspace()
                      if not last_was_whitespace:
                          if item[-1] in SPACE_AFTER:
                              yield ' '
                              last_was_whitespace = True
              yield "\n"

          class PythonReconstructor:
              def __init__(self, parser):
                  self._recons = Reconstructor(parser, {'_NEWLINE': special, '_DEDENT': special, '_INDENT': special})

              def reconstruct(self, tree):
                  return self._recons.reconstruct(tree, postproc)

          def test():
              python_reconstructor = PythonReconstructor(python_parser3)

              self_contents = open(__file__).read()

              tree = python_parser3.parse(self_contents+'\n')
              output = python_reconstructor.reconstruct(tree)

              tree_new = python_parser3.parse(output)
              print(tree.pretty())
              print(tree_new.pretty())
              # assert tree.pretty() == tree_new.pretty()
              assert tree == tree_new

              print(output)

          if __name__ == '__main__':
              test()

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Using lexer dynamic_complete
       Demonstrates how to use lexer='dynamic_complete' and ambiguity='explicit'

       Sometimes  you  have data that is highly ambiguous or 'broken' in some sense.  When using parser='earley'
       and lexer='dynamic_complete', Lark will be able parse just about anything as long as there is a valid way
       to generate it from the Grammar, including looking 'into' the Regexes.

       This examples shows how to parse a json input  where  the  quotes  have  been  replaced  by  underscores:
       {_foo_:{},  _bar_:  [],  _baz_:  __}  Notice  that  underscores  might  still appear inside strings, so a
       potentially valid reading of the above is: {"foo_:{}, _bar": [], "baz": ""}

          from pprint import pprint

          from lark import Lark, Tree, Transformer, v_args
          from lark.visitors import Transformer_InPlace

          GRAMMAR = r"""
          %import common.SIGNED_NUMBER
          %import common.WS_INLINE
          %import common.NEWLINE
          %ignore WS_INLINE

          ?start: value

          ?value: object
                | array
                | string
                | SIGNED_NUMBER      -> number
                | "true"             -> true
                | "false"            -> false
                | "null"             -> null

          array  : "[" (value ("," value)*)? "]"
          object : "{" (pair ("," pair)*)? "}"
          pair   : string ":" value

          string: STRING
          STRING : ESCAPED_STRING

          ESCAPED_STRING: QUOTE_CHAR _STRING_ESC_INNER QUOTE_CHAR
          QUOTE_CHAR: "_"

          _STRING_INNER: /.*/
          _STRING_ESC_INNER: _STRING_INNER /(?<!\\)(\\\\)*?/

          """

          def score(tree: Tree):
              """
              Scores an option by how many children (and grand-children, and
              grand-grand-children, ...) it has.
              This means that the option with fewer large terminals gets selected

              Between
                  object
                    pair
                      string  _foo_
                      object
                    pair
                      string  _bar_: [], _baz_
                      string  __

              and

                  object
                    pair
                      string  _foo_
                      object
                    pair
                      string  _bar_
                      array
                    pair
                      string  _baz_
                      string  __

              this will give the second a higher score. (9 vs 13)
              """
              return sum(len(t.children) for t in tree.iter_subtrees())

          class RemoveAmbiguities(Transformer_InPlace):
              """
              Selects an option to resolve an ambiguity using the score function above.
              Scores each option and selects the one with the higher score, e.g. the one
              with more nodes.

              If there is a performance problem with the Tree having to many _ambig and
              being slow and to large, this can instead be written as a ForestVisitor.
              Look at the 'Custom SPPF Prioritizer' example.
              """
              def _ambig(self, options):
                  return max(options, key=score)

          class TreeToJson(Transformer):
              """
              This is the same Transformer as the json_parser example.
              """
              @v_args(inline=True)
              def string(self, s):
                  return s[1:-1].replace('\\"', '"')

              array = list
              pair = tuple
              object = dict
              number = v_args(inline=True)(float)

              null = lambda self, _: None
              true = lambda self, _: True
              false = lambda self, _: False

          parser = Lark(GRAMMAR, parser='earley', ambiguity="explicit", lexer='dynamic_complete')

          EXAMPLES = [
              r'{_array_:[1,2,3]}',

              r'{_abc_: _array must be of the following format [_1_, _2_, _3_]_}',

              r'{_foo_:{}, _bar_: [], _baz_: __}',

              r'{_error_:_invalid_client_, _error_description_:_AADSTS7000215: Invalid '
              r'client secret is provided.\r\nTrace ID: '
              r'a0a0aaaa-a0a0-0a00-000a-00a00aaa0a00\r\nCorrelation ID: '
              r'aa0aaa00-0aaa-0000-00a0-00000aaaa0aa\r\nTimestamp: 1997-10-10 00:00:00Z_, '
              r'_error_codes_:[7000215], _timestamp_:_1997-10-10 00:00:00Z_, '
              r'_trace_id_:_a0a0aaaa-a0a0-0a00-000a-00a00aaa0a00_, '
              r'_correlation_id_:_aa0aaa00-0aaa-0000-00a0-00000aaaa0aa_, '
              r'_error_uri_:_https://example.com_}',

          ]
          for example in EXAMPLES:
              tree = parser.parse(example)
              tree = RemoveAmbiguities().transform(tree)
              result = TreeToJson().transform(tree)
              pprint(result)

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Syntax Highlighting
       This example shows how to write a syntax-highlighted editor with Qt and Lark

       Requirements:
          PyQt5==5.15.8 QScintilla==2.13.4

          import sys
          import textwrap

          from PyQt5.QtWidgets import QApplication
          from PyQt5.QtGui import QColor, QFont, QFontMetrics

          from PyQt5.Qsci import QsciScintilla
          from PyQt5.Qsci import QsciLexerCustom

          from lark import Lark

          class LexerJson(QsciLexerCustom):

              def __init__(self, parent=None):
                  super().__init__(parent)
                  self.create_parser()
                  self.create_styles()

              def create_styles(self):
                  deeppink = QColor(249, 38, 114)
                  khaki = QColor(230, 219, 116)
                  mediumpurple = QColor(174, 129, 255)
                  mediumturquoise = QColor(81, 217, 205)
                  yellowgreen = QColor(166, 226, 46)
                  lightcyan = QColor(213, 248, 232)
                  darkslategrey = QColor(39, 40, 34)

                  styles = {
                      0: mediumturquoise,
                      1: mediumpurple,
                      2: yellowgreen,
                      3: deeppink,
                      4: khaki,
                      5: lightcyan
                  }

                  for style, color in styles.items():
                      self.setColor(color, style)
                      self.setPaper(darkslategrey, style)
                      self.setFont(self.parent().font(), style)

                  self.token_styles = {
                      "COLON": 5,
                      "COMMA": 5,
                      "LBRACE": 5,
                      "LSQB": 5,
                      "RBRACE": 5,
                      "RSQB": 5,
                      "FALSE": 0,
                      "NULL": 0,
                      "TRUE": 0,
                      "STRING": 4,
                      "NUMBER": 1,
                  }

              def create_parser(self):
                  grammar = '''
                      anons: ":" "{" "}" "," "[" "]"
                      TRUE: "true"
                      FALSE: "false"
                      NULL: "NULL"
                      %import common.ESCAPED_STRING -> STRING
                      %import common.SIGNED_NUMBER  -> NUMBER
                      %import common.WS
                      %ignore WS
                  '''

                  self.lark = Lark(grammar, parser=None, lexer='basic')
                  # All tokens: print([t.name for t in self.lark.parser.lexer.tokens])

              def defaultPaper(self, style):
                  return QColor(39, 40, 34)

              def language(self):
                  return "Json"

              def description(self, style):
                  return {v: k for k, v in self.token_styles.items()}.get(style, "")

              def styleText(self, start, end):
                  self.startStyling(start)
                  text = self.parent().text()[start:end]
                  last_pos = 0

                  try:
                      for token in self.lark.lex(text):
                          ws_len = token.start_pos - last_pos
                          if ws_len:
                              self.setStyling(ws_len, 0)    # whitespace

                          token_len = len(bytearray(token, "utf-8"))
                          self.setStyling(
                              token_len, self.token_styles.get(token.type, 0))

                          last_pos = token.start_pos + token_len
                  except Exception as e:
                      print(e)

          class EditorAll(QsciScintilla):

              def __init__(self, parent=None):
                  super().__init__(parent)

                  # Set font defaults
                  font = QFont()
                  font.setFamily('Consolas')
                  font.setFixedPitch(True)
                  font.setPointSize(8)
                  font.setBold(True)
                  self.setFont(font)

                  # Set margin defaults
                  fontmetrics = QFontMetrics(font)
                  self.setMarginsFont(font)
                  self.setMarginWidth(0, fontmetrics.width("000") + 6)
                  self.setMarginLineNumbers(0, True)
                  self.setMarginsForegroundColor(QColor(128, 128, 128))
                  self.setMarginsBackgroundColor(QColor(39, 40, 34))
                  self.setMarginType(1, self.SymbolMargin)
                  self.setMarginWidth(1, 12)

                  # Set indentation defaults
                  self.setIndentationsUseTabs(False)
                  self.setIndentationWidth(4)
                  self.setBackspaceUnindents(True)
                  self.setIndentationGuides(True)

                  # self.setFolding(QsciScintilla.CircledFoldStyle)

                  # Set caret defaults
                  self.setCaretForegroundColor(QColor(247, 247, 241))
                  self.setCaretWidth(2)

                  # Set selection color defaults
                  self.setSelectionBackgroundColor(QColor(61, 61, 52))
                  self.resetSelectionForegroundColor()

                  # Set multiselection defaults
                  self.SendScintilla(QsciScintilla.SCI_SETMULTIPLESELECTION, True)
                  self.SendScintilla(QsciScintilla.SCI_SETMULTIPASTE, 1)
                  self.SendScintilla(
                      QsciScintilla.SCI_SETADDITIONALSELECTIONTYPING, True)

                  lexer = LexerJson(self)
                  self.setLexer(lexer)

          EXAMPLE_TEXT = textwrap.dedent("""\
                  {
                      "_id": "5b05ffcbcf8e597939b3f5ca",
                      "about": "Excepteur consequat commodo esse voluptate aute aliquip ad sint deserunt commodo eiusmod irure. Sint aliquip sit magna duis eu est culpa aliqua excepteur ut tempor nulla. Aliqua ex pariatur id labore sit. Quis sit ex aliqua veniam exercitation laboris anim adipisicing. Lorem nisi reprehenderit ullamco labore qui sit ut aliqua tempor consequat pariatur proident.",
                      "address": "665 Malbone Street, Thornport, Louisiana, 243",
                      "age": 23,
                      "balance": "$3,216.91",
                      "company": "BULLJUICE",
                      "email": "elisekelley@bulljuice.com",
                      "eyeColor": "brown",
                      "gender": "female",
                      "guid": "d3a6d865-0f64-4042-8a78-4f53de9b0707",
                      "index": 0,
                      "isActive": false,
                      "isActive2": true,
                      "latitude": -18.660714,
                      "longitude": -85.378048,
                      "name": "Elise Kelley",
                      "phone": "+1 (808) 543-3966",
                      "picture": "http://placehold.it/32x32",
                      "registered": "2017-09-30T03:47:40 -02:00",
                      "tags": [
                          "et",
                          "nostrud",
                          "in",
                          "fugiat",
                          "incididunt",
                          "labore",
                          "nostrud"
                      ]
                  }\
              """)

          def main():
              app = QApplication(sys.argv)
              ex = EditorAll()
              ex.setWindowTitle(__file__)
              ex.setText(EXAMPLE_TEXT)
              ex.resize(800, 600)
              ex.show()
              sys.exit(app.exec_())

          if __name__ == "__main__":
              main()

       Total running time of the script: ( 0 minutes  0.000 seconds)

GRAMMAR COMPOSITION

       This example shows how to do grammar composition in Lark, by creating a new file format that allows  both
       CSV and JSON to co-exist.

       We  show  how, by using namespaces, Lark grammars and their transformers can be fully reused - they don't
       need to care if their grammar is used directly, or being imported, or who is doing the importing.

       See main.py for more details.  Transformer for evaluating json.lark

          from lark import Transformer, v_args

          class JsonTreeToJson(Transformer):
              @v_args(inline=True)
              def string(self, s):
                  return s[1:-1].replace('\\"', '"')

              array = list
              pair = tuple
              object = dict
              number = v_args(inline=True)(float)

              null = lambda self, _: None
              true = lambda self, _: True
              false = lambda self, _: False

       Total running time of the script: ( 0 minutes  0.000 seconds) Transformer for evaluating csv.lark

          from lark import Transformer

          class CsvTreeToPandasDict(Transformer):
              INT = int
              FLOAT = float
              SIGNED_FLOAT = float
              WORD = str
              NON_SEPARATOR_STRING = str

              def row(self, children):
                  return children

              def start(self, children):
                  data = {}

                  header = children[0].children
                  for heading in header:
                      data[heading] = []

                  for row in children[1:]:
                      for i, element in enumerate(row):
                          data[header[i]].append(element)

                  return data

       Total running time of the script: ( 0 minutes  0.000 seconds)

   Grammar Composition
       This example shows how to do grammar composition in Lark, by creating a new file format that allows  both
       CSV and JSON to co-exist.

       1. We define storage.lark, which imports both csv.lark and json.lark,
          and allows them to be used one after the other.

          In the generated tree, each imported rule/terminal is automatically prefixed (with json__ or
          ``

          csv__
          ), which creates an implicit namespace and allows them to coexist without collisions.

       2. We  merge  their  respective  transformers  (unaware  of each other) into a new base transformer.  The
          resulting transformer can evaluate both JSON and CSV in the parse tree.
          The methods of each transformer are renamed into their appropriate namespace, using the given  prefix.
          This  approach  allows  full  re-use:  the  transformers  don't  need to care if their grammar is used
          directly, or being imported, or who is doing the importing.

          from pathlib import Path
          from lark import Lark
          from json import dumps
          from lark.visitors import Transformer, merge_transformers

          from eval_csv import CsvTreeToPandasDict
          from eval_json import JsonTreeToJson

          __dir__ = Path(__file__).parent

          class Storage(Transformer):
              def start(self, children):
                  return children

          storage_transformer = merge_transformers(Storage(), csv=CsvTreeToPandasDict(), json=JsonTreeToJson())

          parser = Lark.open("storage.lark", rel_to=__file__)

          def main():
              json_tree = parser.parse(dumps({"test": "a", "dict": { "list": [1, 1.2] }}))
              res = storage_transformer.transform(json_tree)
              print("Just JSON: ", res)

              csv_json_tree = parser.parse(open(__dir__ / 'combined_csv_and_json.txt').read())
              res = storage_transformer.transform(csv_json_tree)
              print("JSON + CSV: ", dumps(res, indent=2))

          if __name__ == "__main__":
              main()

       Total running time of the script: ( 0 minutes  0.000 seconds)

EXAMPLE GRAMMARS

       This directory is a collection of lark grammars, taken from real world projects.

       • Verilog                            -                             Taken                             from
         https://github.com/circuitgraph/circuitgraph/blob/main/circuitgraph/parsing/verilog.lark

STANDALONE EXAMPLE

       To initialize, cd to this folder, and run:

          ./create_standalone.sh

       Or:

          python -m lark.tools.standalone json.lark > json_parser.py

       Then run using:

          python json_parser_main.py <path-to.json>

   Standalone Parser
          This example demonstrates how to generate and use the standalone parser, using the JSON example.

          See README.md for more details.

          import sys

          from json_parser import Lark_StandAlone, Transformer, v_args

          inline_args = v_args(inline=True)

          class TreeToJson(Transformer):
              @inline_args
              def string(self, s):
                  return s[1:-1].replace('\\"', '"')

              array = list
              pair = tuple
              object = dict
              number = inline_args(float)

              null = lambda self, _: None
              true = lambda self, _: True
              false = lambda self, _: False

          parser = Lark_StandAlone(transformer=TreeToJson())

          if __name__ == '__main__':
              with open(sys.argv[1]) as f:
                  print(parser.parse(f.read()))

       Total running time of the script: ( 0 minutes  0.000 seconds)

GRAMMAR REFERENCE

   Definitions
       A grammar is a list of rules and terminals, that together define a language.

       Terminals define the alphabet of the language, while rules define its structure.

       In  Lark,  a  terminal  may  be  a  string,  a  regular expression, or a concatenation of these and other
       terminals.

       Each rule is a list of terminals and rules, whose location  and  nesting  define  the  structure  of  the
       resulting parse-tree.

       A parsing algorithm is an algorithm that takes a grammar definition and a sequence of symbols (members of
       the  alphabet),  and matches the entirety of the sequence by searching for a structure that is allowed by
       the grammar.

   General Syntax and notes
       Grammars in Lark are based on EBNF syntax, with several enhancements.

       EBNF is basically a short-hand for common BNF patterns.

       Optionals are expanded:

            a b? c    ->    (a c | a b c)

       Repetition is extracted into a recursion:

            a: b*    ->    a: _b_tag
                           _b_tag: (_b_tag b)?

       And so on.

       Lark grammars are composed of a list of definitions and directives, each on its own line. A definition is
       either a named rule, or a named terminal, with the following syntax, respectively:

            rule: <EBNF EXPRESSION>
                | etc.

            TERM: <EBNF EXPRESSION>   // Rules aren't allowed

       Comments start with either // (C++ style) or # (Python style, since version 1.1.6) and last to the end of
       the line.

       Lark begins the parse with the rule 'start', unless specified otherwise in the options.

       Names of rules are always  in  lowercase,  while  names  of  terminals  are  always  in  uppercase.  This
       distinction  has  practical  effects,  for  the  shape  of  the  generated  parse-tree, and the automatic
       construction of the lexer (aka tokenizer, or scanner).

   Terminals
       Terminals are used to match text into symbols. They can be defined as a combination of literals and other
       terminals.

       Syntax:

          <NAME> [. <priority>] : <literals-and-or-terminals>

       Terminal names must be uppercase.

       Literals can be one of:

       • "string"/regular expression+/"case-insensitive string"i/re with flags/imulx

       • Literal range: "a".."z", "1".."9", etc.

       Terminals also support grammar operators, such as |, +, * and ?.

       Terminals are a linear construct, and therefore may not contain themselves (recursion isn't allowed).

   Templates
       Templates are expanded when preprocessing the grammar.

       Definition syntax:

            my_template{param1, param2, ...}: <EBNF EXPRESSION>

       Use syntax:

          some_rule: my_template{arg1, arg2, ...}

       Example:

          _separated{x, sep}: x (sep x)*  // Define a sequence of 'x sep x sep x ...'

          num_list: "[" _separated{NUMBER, ","} "]"   // Will match "[1, 2, 3]" etc.

   Priority
       Terminals can be assigned a priority to influence lexing. Terminal priorities are signed integers with  a
       default value of 0.

       When using a lexer, the highest priority terminals are always matched first.

       When  using  Earley's  dynamic lexing, terminal priorities are used to prefer certain lexings and resolve
       ambiguity.

   Regexp Flags
       You can use flags on regexps and strings. For example:

          SELECT: "select"i     //# Will ignore case, and match SELECT or Select, etc.
          MULTILINE_TEXT: /.+/s
          SIGNED_INTEGER: /
              [+-]?  # the sign
              (0|[1-9][0-9]*)  # the digits
           /x

       Supported flags are one of: imslux. See Python's regex documentation for more details on each one.

       Regexps/strings of different flags can only be concatenated in Python 3.6+

   Notes for when using a lexer:
       When using a lexer (basic or contextual), it is the grammar-author's  responsibility  to  make  sure  the
       literals  don't  collide, or that if they do, they are matched in the desired order. Literals are matched
       according to the following precedence:

       • Highest priority first (priority is specified as: TERM.number: ...)

       • Length of match (for regexps, the longest theoretical match is used)

       • Length of literal / pattern definition

       • Name

       Examples:

          IF: "if"
          INTEGER : /[0-9]+/
          INTEGER2 : ("0".."9")+          //# Same as INTEGER
          DECIMAL.2: INTEGER? "." INTEGER  //# Will be matched before INTEGER
          WHITESPACE: (" " | /\t/ )+
          SQL_SELECT: "select"i

   Regular expressions & Ambiguity
       Each terminal is eventually compiled to a regular expression. All the operators and references inside  it
       are mapped to their respective expressions.

       For example, in the following grammar, A1 and A2, are equivalent:

          A1: "a" | "b"
          A2: /a|b/

       This means that inside terminals, Lark cannot detect or resolve ambiguity, even when using Earley.

       For example, for this grammar:

          start           : (A | B)+
          A               : "a" | "ab"
          B               : "b"

       We get only one possible derivation, instead of two:

          >>> p = Lark(g, ambiguity="explicit")
          >>> p.parse("ab")
          Tree('start', [Token('A', 'ab')])

       This  is happening because Python's regex engine always returns the best matching option. There is no way
       to access the alternatives.

       If you find yourself in this situation, the recommended solution is to use rules instead.

       Example:

          >>> p = Lark("""start: (a | b)+
          ...             !a: "a" | "ab"
          ...             !b: "b"
          ...             """, ambiguity="explicit")
          >>> print(p.parse("ab").pretty())
          _ambig
            start
              a   ab
            start
              a   a
              b   b

   Rules
       Syntax:

          <name> : <items-to-match>  [-> <alias> ]
                 | ...

       Names of rules and aliases are always in lowercase.

       Rule definitions can be extended to the next line by using the OR operator (signified by a pipe: | ).

       An alias is a name for the specific rule alternative. It affects tree construction.

       Each item is one of:

       • ruleTERMINAL"string literal" or /regexp literal/(item item ..) - Group items

       • [item item ..] - Maybe. Same as (item item ..)?, but when maybe_placeholders=True,  generates  None  if
         there is no match.

       • item? - Zero or one instances of item ("maybe")

       • item* - Zero or more instances of item

       • item+ - One or more instances of item

       • item ~ n - Exactly n instances of item

       • item  ~  n..m  -  Between n to m instances of item (not recommended for wide ranges, due to performance
         issues)

       Examples:

          hello_world: "hello" "world"
          mul: (mul "*")? number     //# Left-recursion is allowed and encouraged!
          expr: expr operator expr
              | value               //# Multi-line, belongs to expr

          four_words: word ~ 4

   Priority
       Like terminals, rules can be assigned a priority. Rule priorities are  signed  integers  with  a  default
       value of 0.

       When using LALR, the highest priority rules are used to resolve collision errors.

       When using Earley, rule priorities are used to resolve ambiguity.

   Directives
   %ignore
       All occurrences of the terminal will be ignored, and won't be part of the parse.

       Using the %ignore directive results in a cleaner grammar.

       It's  especially  important  for  the LALR(1) algorithm, because adding whitespace (or comments, or other
       extraneous elements) explicitly in the grammar, harms its predictive abilities,  which  are  based  on  a
       lookahead of 1.

       Syntax:

          %ignore <TERMINAL>

       Examples:

          %ignore " "

          COMMENT: "#" /[^\n]/*
          %ignore COMMENT

   %import
       Allows one to import terminals and rules from lark grammars.

       When importing rules, all their dependencies will be imported into a namespace, to avoid collisions. It's
       not possible to override their dependencies (e.g. like you would when inheriting a class).

       Syntax:

          %import <module>.<TERMINAL>
          %import <module>.<rule>
          %import <module>.<TERMINAL> -> <NEWTERMINAL>
          %import <module>.<rule> -> <newrule>
          %import <module> (<TERM1>, <TERM2>, <rule1>, <rule2>)

       If the module path is absolute, Lark will attempt to load it from the built-in directory (which currently
       contains common.lark, python.lark, and unicode.lark).

       If  the  module  path  is  relative, such as .path.to.file, Lark will attempt to load it from the current
       working directory. Grammars must have the .lark extension.

       The rule or terminal can be imported under another name with the -> syntax.

       Example:

          %import common.NUMBER

          %import .terminals_file (A, B, C)

          %import .rules_file.rulea -> ruleb

       Note that %ignore directives cannot be imported. Imported rules will  abide  by  the  %ignore  directives
       declared in the main grammar.

   %declare
       Declare a terminal without defining it. Useful for plugins.

   %override
       Override a rule or terminals, affecting all references to it, even in imported grammars.

       Useful for implementing an inheritance pattern when importing grammars.

       Example:

          %import my_grammar (start, number, NUMBER)

          // Add hex support to my_grammar
          %override number: NUMBER | /0x\w+/

   %extend
       Extend  the  definition  of  a  rule  or  terminal, e.g. add a new option on what it can match, like when
       separated with |.

       Useful for splitting up a definition of a complex rule with many different options over multiple files.

       Can also be used to implement a plugin system where a core grammar is extended by others.

       Example:

          %import my_grammar (start, NUMBER)

          // Add hex support to my_grammar
          %extend NUMBER: /0x\w+/

       For both %extend and %override, there is not requirement for a rule/terminal to come from  another  file,
       but that is probably the most common usecase

TREE CONSTRUCTION REFERENCE

       Lark  builds  a tree automatically based on the structure of the grammar, where each rule that is matched
       becomes a branch (node) in the tree, and its children are its matches, in the order of matching.

       For example, the rule node: child1 child2 will create a tree node with two children. If it is matched  as
       part of another rule (i.e. if it isn't the root), the new rule's tree node will become its parent.

       Using item+ or item* will result in a list of items, equivalent to writing item item item ...

       Using item? will return the item if it matched, or nothing.

       If  maybe_placeholders=True  (the  default), then using [item] will return the item if it matched, or the
       value None, if it didn't.

       If maybe_placeholders=False, then [] behaves like ()?.

   Terminals
       Terminals are always values in the tree, never branches.

       Lark filters out certain types of terminals by default, considering them punctuation:

       • Terminals that won't appear in the tree are:

         • Unnamed literals (like "keyword" or "+")

         • Terminals whose name starts with an underscore (like _DIGIT)

       • Terminals that will appear in the tree are:

         • Unnamed regular expressions (like /[0-9]/)

         • Named terminals whose name starts with a letter (like DIGIT)

       Note: Terminals composed of literals  and  other  terminals  always  include  the  entire  match  without
       filtering any part.

       Example:

          start:  PNAME pname

          PNAME:  "(" NAME ")"
          pname:  "(" NAME ")"

          NAME:   /\w+/
          %ignore /\s+/

       Lark will parse "(Hello) (World)" as:

          start
              (Hello)
              pname World

       Rules prefixed with ! will retain all their literals regardless.

       Example:

              expr: "(" expr ")"
                  | NAME+

              NAME: /\w+/

              %ignore " "

       Lark will parse "((hello world))" as:

          expr
              expr
                  expr
                      "hello"
                      "world"

       The  brackets  do  not appear in the tree by design. The words appear because they are matched by a named
       terminal.

   Shaping the tree
       Users can alter the automatic construction of the tree using a collection of grammar features.

       • Rules whose name begins with an underscore will be inlined into their containing rule.

       Example:

              start: "(" _greet ")"
              _greet: /\w+/ /\w+/

       Lark will parse "(hello world)" as:

          start
              "hello"
              "world"

       • Rules that receive a question mark (?) at the beginning of their definition, will be  inlined  if  they
         have a single child, after filtering.

       Example:

              start: greet greet
              ?greet: "(" /\w+/ ")"
                    | /\w+/ /\w+/

       Lark will parse "hello world (planet)" as:

          start
              greet
                  "hello"
                  "world"
              "planet"

       • Rules that begin with an exclamation mark will keep all their terminals (they won't get filtered).

              !expr: "(" expr ")"
                   | NAME+
              NAME: /\w+/
              %ignore " "

       Will parse "((hello world))" as:

          expr
            (
            expr
              (
              expr
                hello
                world
              )
            )

       Using the ! prefix is usually a "code smell", and may point to a flaw in your grammar design.

       • Aliases  -  options  in  a  rule  can receive an alias. It will be then used as the branch name for the
         option, instead of the rule name.

       Example:

              start: greet greet
              greet: "hello"
                   | "world" -> planet

       Lark will parse "hello world" as:

          start
              greet
              planet

API REFERENCE

   Lark
       class lark.Lark(grammar: Grammar | str | IO[str], **options)
              Main interface for the library.

              It's mostly a thin wrapper for the many different parsers, and for the tree constructor.

              Parametersgrammar -- a string or file-object containing the grammar spec (using Lark's ebnf syntax)

                     • options -- a dictionary controlling various aspects of Lark.

              Example

              >>> Lark(r'''start: "foo" ''')
              Lark(...)

              ===  General Options  ===

              start  The start symbol. Either a string, or a  list  of  strings  for  multiple  possible  starts
                     (Default: "start")

              debug  Display debug information and extra warnings. Use only when debugging (Default: False) When
                     used with Earley, it generates a forest graph as "sppf.png", if 'dot' is installed.

              strict Throw  an exception on any potential ambiguity, including shift/reduce conflicts, and regex
                     collisions.

              transformer
                     Applies the transformer to every parse tree (equivalent to applying it after the parse, but
                     faster)

              propagate_positions
                     Propagates positional attributes into the 'meta' attribute  of  all  tree  branches.   Sets
                     attributes: (line, column, end_line, end_column, start_pos, end_pos,
                        container_line, container_column, container_end_line, container_end_column)

                     Accepts  False,  True,  or  a  callable,  which  will  filter  which  nodes  to ignore when
                     propagating.

              maybe_placeholders
                     When True, the [] operator returns None when not matched.  When False,  [] behaves like the
                     ? operator, and returns no value at all.  (default= True)

              cache  Cache the results of the Lark grammar analysis, for x2 to x3 faster loading. LALR only  for
                     now.

                     • When False, does nothing (default)

                     • When True, caches to a temporary file in the local directory

                     • When given a string, caches to the path pointed by the string

              regex  When True, uses the regex module instead of the stdlib re.

              g_regex_flags
                     Flags that are applied to all terminals (both regex and strings)

              keep_all_tokens
                     Prevent the tree builder from automagically removing "punctuation" tokens (Default: False)

              tree_class
                     Lark  will  produce  trees  comprised  of  instances  of  this class instead of the default
                     lark.Tree.

              === Algorithm Options ===

              parser Decides which parser engine to  use.  Accepts  "earley"  or  "lalr".  (Default:  "earley").
                     (there is also a "cyk" option for legacy)

              lexer  Decides whether or not to use a lexer stage

                     • "auto" (default): Choose for me based on the parser

                     • "basic": Use a basic lexer

                     • "contextual": Stronger lexer (only works with parser="lalr")

                     • "dynamic": Flexible and powerful (only with parser="earley")

                     • "dynamic_complete": Same as dynamic, but tries every variation of tokenizing possible.

              ambiguity
                     Decides how to handle ambiguity in the parse. Only relevant if parser="earley"

                     • "resolve":  The  parser  will  automatically  choose  the simplest derivation (it chooses
                       consistently: greedy for tokens, non-greedy for rules)

                     • "explicit": The parser will return all derivations wrapped in "_ambig" tree nodes (i.e. a
                       forest).

                     • "forest": The parser will return the root of the shared packed parse forest.

              === Misc. / Domain Specific Options ===

              postlex
                     Lexer post-processing (Default: None) Only works with the basic and contextual lexers.

              priority
                     How priorities should be evaluated - "auto", None, "normal", "invert" (Default: "auto")

              lexer_callbacks
                     Dictionary of callbacks for the lexer. May alter tokens during lexing. Use with caution.

              use_bytes
                     Accept an input of type bytes instead of str.

              ordered_sets
                     Should Earley use ordered-sets to achieve stable output (~10%  slower  than  regular  sets.
                     Default: True)

              edit_terminals
                     A callback for editing the terminals before parse.

              import_paths
                     A List of either paths or loader functions to specify from where grammars are imported

              source_path
                     Override  the  source of from where the grammar was loaded. Useful for relative imports and
                     unconventional grammar loading

              === End of Options ===

              save(f, exclude_options: Collection[str] = ()) -> None
                     Saves the instance into the given file object

                     Useful for caching and multiprocessing.

              classmethod load(f) -> _T
                     Loads an instance from the given file object

                     Useful for caching and multiprocessing.

              classmethod open(grammar_filename: str, rel_to: str | None = None, **options) -> _T
                     Create an instance of Lark with the grammar given by its filename

                     If rel_to is provided, the function will find the grammar filename in relation to it.

                     Example

                     >>> Lark.open("grammar_file.lark", rel_to=__file__, parser="lalr")
                     Lark(...)

              classmethod open_from_package(package: str, grammar_path: str, search_paths: Sequence[str] = [''],
              **options) -> _T
                     Create an instance of Lark with the grammar loaded from within the package  package.   This
                     allows grammar loading from zipapps.

                     Imports   in   the  grammar  will  use  the  package  and  search_paths  provided,  through
                     FromPackageLoader

                     Example

                     Lark.open_from_package(__name__, "example.lark", ("grammars",), parser=...)

              lex(text: str, dont_ignore: bool = False) -> Iterator[Token]
                     Only lex (and postlex) the text, without parsing it. Only relevant when lexer='basic'

                     When dont_ignore=True, the lexer will return all tokens, even those marked for %ignore.

                     Raises UnexpectedCharacters -- In case the lexer cannot find a suitable match.

              get_terminal(name: str) -> TerminalDef
                     Get information about a terminal

              parse_interactive(text: str | None = None, start: str | None = None) -> InteractiveParser
                     Start an interactive parsing session.

                     Parameterstext (str, optional) -- Text to be parsed. Required for resume_parse().

                            • start (str, optional) -- Start symbol

                     Returns
                            A new InteractiveParser instance.

                     See Also: Lark.parse()

              parse(text: str, start: str | None = None, on_error: Callable[[UnexpectedInput], bool] | None =
              None) -> ParseTree
                     Parse the given text, according to the options provided.

                     Parameterstext (str) -- Text to be parsed.

                            • start (str, optional) -- Required  if  Lark  was  given  multiple  possible  start
                              symbols (using the start option).

                            • on_error  (function,  optional)  -- if provided, will be called on UnexpectedToken
                              error.    Return    true    to     resume     parsing.      LALR     only.     See
                              examples/advanced/error_handling.py for an example of how to use on_error.

                     Returns
                            If  a  transformer  is  supplied  to __init__, returns whatever is the result of the
                            transformation. Otherwise, returns a Tree instance.

                     Raises UnexpectedInput -- On  a  parse  error,  one  of  these  sub-exceptions  will  rise:
                            UnexpectedCharacters,  UnexpectedToken,  or  UnexpectedEOF.   For convenience, these
                            sub-exceptions also inherit from ParserError and LexerError.

   Using Unicode character classes with regex
       Python's builtin re module has a few persistent known bugs and also won't parse advanced  regex  features
       such  as  character  classes.  With pip install lark[regex], the regex module will be installed alongside
       lark and can act as a drop-in replacement to re.

       Any instance of Lark instantiated with regex=True will use the regex module instead of re.

       For example, we can use character classes to match PEP-3131 compliant Python identifiers:

          from lark import Lark
          >>> g = Lark(r"""
                              ?start: NAME
                              NAME: ID_START ID_CONTINUE*
                              ID_START: /[\p{Lu}\p{Ll}\p{Lt}\p{Lm}\p{Lo}\p{Nl}_]+/
                              ID_CONTINUE: ID_START | /[\p{Mn}\p{Mc}\p{Nd}\p{Pc}·]+/
                          """, regex=True)

          >>> g.parse('வணக்கம்')
          'வணக்கம்'

   Tree
       class lark.Tree(data: str, children: List[_Leaf_T | Tree[_Leaf_T]], meta: Meta | None = None)
              The main tree class.

              Creates a new tree, and stores "data" and "children" in attributes of the same name.  Trees can be
              hashed and compared.

              Parametersdata -- The name of the rule or alias

                     • children -- List of matched sub-rules and terminals

                     • meta --

                       Line & Column numbers (if  propagate_positions  is  enabled).   meta  attributes:  (line,
                       column, end_line, end_column, start_pos, end_pos,
                          container_line, container_column, container_end_line, container_end_column)

                       container_*  attributes  consider  all symbols, including those that have been inlined in
                       the tree.  For example, in the rule 'a: _A B _C', the regular attributes  will  mark  the
                       start  and  end  of  B, but the container_* attributes will also include _A and _C in the
                       range. However, rules that contain 'a' will consider it in full, including _A and _C  for
                       all attributes.

              pretty(indent_str: str = ' ') -> str
                     Returns an indented string representation of the tree.

                     Great for debugging.

              __rich__(parent: rich.tree.Tree | None = None) -> rich.tree.Tree
                     Returns a tree widget for the 'rich' library.

                     Example

                     ::     from rich import print from lark import Tree

                            tree = Tree('root', ['node1', 'node2']) print(tree)

              iter_subtrees() -> Iterator[Tree[_Leaf_T]]
                     Depth-first iteration.

                     Iterates  over  all the subtrees, never returning to the same node twice (Lark's parse-tree
                     is actually a DAG).

              iter_subtrees_topdown()
                     Breadth-first iteration.

                     Iterates over all the subtrees, return nodes in order like pretty() does.

              find_pred(pred: Callable[[Tree[_Leaf_T]], bool]) -> Iterator[Tree[_Leaf_T]]
                     Returns all nodes of the tree that evaluate pred(node) as true.

              find_data(data: str) -> Iterator[Tree[_Leaf_T]]
                     Returns all nodes of the tree whose data equals the given data.

              scan_values(pred: Callable[[_Leaf_T | Tree[_Leaf_T]], bool]) -> Iterator[_Leaf_T]
                     Return all values in the tree that evaluate pred(value) as true.

                     This can be used to find all the tokens in the tree.

                     Example

                     >>> all_tokens = tree.scan_values(lambda v: isinstance(v, Token))

   Token
       class lark.Token(type: str, value: Any, start_pos: int | None = None, line: int | None = None, column:
       int | None = None, end_line: int | None = None, end_column: int | None = None, end_pos: int | None =
       None)

       class lark.Token(type_: str, value: Any, start_pos: int | None = None, line: int | None = None, column:
       int | None = None, end_line: int | None = None, end_column: int | None = None, end_pos: int | None =
       None)
              A string with meta-information, that is produced by the lexer.

              When parsing text, the resulting chunks of the input that haven't been discarded, will end  up  in
              the  tree  as  Token  instances.  The  Token  class  inherits  from Python's str, so normal string
              comparisons and operations will work as expected.

              type   Name of the token (as specified in grammar)

                     Type   str

              value  Value of the token (redundant, as token.value == token will always be true)

                     Type   Any

              start_pos
                     The index of the token in the text

                     Type   int | None

              line   The line of the token in the text (starting with 1)

                     Type   int | None

              column The column of the token in the text (starting with 1)

                     Type   int | None

              end_line
                     The line where the token ends

                     Type   int | None

              end_column
                     The next column after the end of the token. For example, if the token is a single character
                     with a column value of 4, end_column will be 5.

                     Type   int | None

              end_pos
                     the index where the token ends (basically start_pos + len(token))

                     Type   int | None

   Transformer, Visitor & Interpreter
       See Transformers & Visitors.

   ForestVisitor, ForestTransformer, & TreeForestTransformer
       See Working with the SPPF.

   UnexpectedInput
       class lark.exceptions.UnexpectedInput
              UnexpectedInput Error.

              Used as a base class for the following exceptions:

              • UnexpectedCharacters: The lexer encountered an unexpected string

              • UnexpectedToken: The parser received an unexpected token

              • UnexpectedEOF: The parser expected a token, but the input ended

              After catching one of these exceptions, you may call the following  helper  methods  to  create  a
              nicer error message.

              get_context(text: str, span: int = 40) -> str
                     Returns  a  pretty  string  pinpointing  the error in the text, with span amount of context
                     characters around it.

                     NOTE:
                        The parser doesn't hold a copy of the text it has to parse, so you have  to  provide  it
                        again

              match_examples(parse_fn: Callable[[str], Tree], examples: Mapping[T, Iterable[str]] |
              Iterable[Tuple[T, Iterable[str]]], token_type_match_fallback: bool = False, use_accepts: bool =
              True) -> T | None
                     Allows you to detect what's wrong in the input text by matching against example errors.

                     Given  a  parser  instance  and  a dictionary mapping some label with some malformed syntax
                     examples, it'll return the label for the example that bests matches the current error.  The
                     function  will  iterate  the  dictionary  until  it  finds a matching error, and return the
                     corresponding value.

                     For an example usage, see examples/error_reporting_lalr.py

                     Parametersparse_fn -- parse function (usually lark_instance.parse)

                            • examples -- dictionary of {'example_string': value}.

                            • use_accepts -- Recommended to keep this as use_accepts=True.

       class lark.exceptions.UnexpectedToken(token, expected, considered_rules=None, state=None,
       interactive_parser=None, terminals_by_name=None, token_history=None)
              An exception that is raised by the parser, when the token it received doesn't match any valid step
              forward.

              Parameterstoken -- The mismatched token

                     • expected -- The set of expected tokens

                     • considered_rules -- Which rules were considered, to deduce the expected tokens

                     • state -- A value representing the parser state. Do not rely on its value or type.

                     • interactive_parser -- An instance of InteractiveParser, that is initialized to the  point
                       of failure, and can be used for debugging and error handling.

              Note: These parameters are available as attributes of the instance.

       class lark.exceptions.UnexpectedCharacters(seq, lex_pos, line, column, allowed=None,
       considered_tokens=None, state=None, token_history=None, terminals_by_name=None, considered_rules=None)
              An  exception  that  is raised by the lexer, when it cannot match the next string of characters to
              any of its terminals.

       class lark.exceptions.UnexpectedEOF(expected, state=None, terminals_by_name=None)
              An exception that is raised by the parser, when the input ends while it still expects a token.

   InteractiveParser
       class lark.parsers.lalr_interactive_parser.InteractiveParser(parser, parser_state, lexer_thread:
       LexerThread)
              InteractiveParser gives you advanced control over parsing and error  handling  when  parsing  with
              LALR.

              For a simpler interface, see the on_error argument to Lark.parse().

              feed_token(token: Token)
                     Feed  the  parser with a token, and advance it to the next state, as if it received it from
                     the lexer.

                     Note that token has to be an instance of Token.

              exhaust_lexer() -> List[Token]
                     Try to feed the rest of the lexer state into the interactive parser.

                     Note that this modifies the instance in place and does not feed an '$END' Token

              as_immutable()
                     Convert to an ImmutableInteractiveParser.

              pretty()
                     Print the output of choices() in a way that's easier to read.

              choices()
                     Returns a dictionary of token types, matched to their action in the parser.

                     Only returns token types that are accepted by the current state.

                     Updated by feed_token().

              accepts()
                     Returns the set of possible tokens that will advance the parser into a new valid state.

              resume_parse()
                     Resume automated parsing from the current state.

       class lark.parsers.lalr_interactive_parser.ImmutableInteractiveParser(parser, parser_state, lexer_thread:
       LexerThread)
              Same as InteractiveParser, but operations create a new instance instead of changing it in-place.

              feed_token(token)
                     Feed the parser with a token, and advance it to the next state, as if it received  it  from
                     the lexer.

                     Note that token has to be an instance of Token.

              exhaust_lexer()
                     Try to feed the rest of the lexer state into the parser.

                     Note that this returns a new ImmutableInteractiveParser and does not feed an '$END' Token

              as_mutable()
                     Convert to an InteractiveParser.

              choices()
                     Returns a dictionary of token types, matched to their action in the parser.

                     Only returns token types that are accepted by the current state.

                     Updated by feed_token().

              pretty()
                     Print the output of choices() in a way that's easier to read.

              resume_parse()
                     Resume automated parsing from the current state.

              accepts()
                     Returns the set of possible tokens that will advance the parser into a new valid state.

   ast_utils
       For an example of using ast_utils, see /examples/advanced/create_ast.py

       class lark.ast_utils.Ast
              Abstract class

              Subclasses will be collected by create_transformer()

       class lark.ast_utils.AsList
              Abstract class

              Subclasses will be instantiated with the parse results as a single list, instead of as arguments.

       lark.ast_utils.create_transformer(ast_module: module, transformer: ~lark.visitors.Transformer | None =
       None, decorator_factory: ~typing.Callable = <function v_args>) -> Transformer
              Collects Ast subclasses from the given module, and creates a Lark transformer that builds the AST.

              For  each  class,  we  create  a  corresponding  rule  in  the  transformer, with a matching name.
              CamelCase names will be converted into snake_case. Example: "CodeBlock" -> "code_block".

              Classes starting with an underscore (_) will be skipped.

              Parametersast_module -- A Python module containing all the subclasses of ast_utils.Asttransformer (Optional[Transformer]) -- An initial  transformer.  Its  attributes  may  be
                       overwritten.

                     • decorator_factory  (Callable) -- An optional callable accepting two booleans, inline, and
                       meta, and returning a decorator for the methods of transformer. (default: v_args).

TRANSFORMERS & VISITORS

       Transformers & Visitors provide a convenient interface to process the parse-trees that Lark returns.

       They are used by inheriting from the correct class (visitor or  transformer),  and  implementing  methods
       corresponding  to the rule you wish to process. Each method accepts the children as an argument. That can
       be modified using the v_args decorator, which allows one to inline the arguments (akin to *args), or  add
       the tree meta property as an argument.

       See: visitors.py

   Visitor
       Visitors visit each node of the tree, and run the appropriate method on it according to the node's data.

       They work bottom-up, starting with the leaves and ending at the root of the tree.

       There are two classes that implement the visitor interface:

       • Visitor: Visit every node (without recursion)

       • Visitor_Recursive: Visit every node using recursion. Slightly faster.

       Example:

                 class IncreaseAllNumbers(Visitor):
                     def number(self, tree):
                         assert tree.data == "number"
                         tree.children[0] += 1

                 IncreaseAllNumbers().visit(parse_tree)

       class lark.visitors.Visitor
              Tree visitor, non-recursive (can handle huge trees).

              Visiting a node calls its methods (provided by the user via inheritance) according to tree.data

              visit(tree: Tree[_Leaf_T]) -> Tree[_Leaf_T]
                     Visits the tree, starting with the leaves and finally the root (bottom-up)

              visit_topdown(tree: Tree[_Leaf_T]) -> Tree[_Leaf_T]
                     Visit the tree, starting at the root, and ending at the leaves (top-down)

              __default__(tree)
                     Default function that is called if there is no attribute matching tree.data

                     Can be overridden. Defaults to doing nothing.

       class lark.visitors.Visitor_Recursive
              Bottom-up visitor, recursive.

              Visiting a node calls its methods (provided by the user via inheritance) according to tree.data

              Slightly faster than the non-recursive version.

              visit(tree: Tree[_Leaf_T]) -> Tree[_Leaf_T]
                     Visits the tree, starting with the leaves and finally the root (bottom-up)

              visit_topdown(tree: Tree[_Leaf_T]) -> Tree[_Leaf_T]
                     Visit the tree, starting at the root, and ending at the leaves (top-down)

              __default__(tree)
                     Default function that is called if there is no attribute matching tree.data

                     Can be overridden. Defaults to doing nothing.

   Interpreter
       class lark.visitors.Interpreter
              Interpreter walks the tree starting at the root.

              Visits the tree, starting with the root and finally the leaves (top-down)

              For  each  tree  node,  it  calls  its  methods  (provided  by  user via inheritance) according to
              tree.data.

              Unlike Transformer and Visitor, the Interpreter doesn't automatically visit its sub-branches.  The
              user has to explicitly call visit, visit_children, or use the @visit_children_decor.  This  allows
              the user to implement branching and loops.

       Example:

                 class IncreaseSomeOfTheNumbers(Interpreter):
                     def number(self, tree):
                         tree.children[0] += 1

                     def skip(self, tree):
                         # skip this subtree. don't change any number node inside it.
                         pass

                     IncreaseSomeOfTheNumbers().visit(parse_tree)

   Transformer
       class lark.visitors.Transformer(visit_tokens: bool = True)
              Transformers  work bottom-up (or depth-first), starting with visiting the leaves and working their
              way up until ending at the root of the tree.

              For each node visited, the transformer will call the appropriate method (callbacks), according  to
              the  node's  data,  and  use  the  returned value to replace the node, thereby creating a new tree
              structure.

              Transformers can be used to implement map & reduce patterns. Because nodes are reduced  from  leaf
              to  root,  at  any  point  the callbacks may assume the children have already been transformed (if
              applicable).

              If the transformer cannot find a method with the right name, it  will  instead  call  __default__,
              which by default creates a copy of the node.

              To discard a node, return Discard (lark.visitors.Discard).

              Transformer  can  do anything Visitor can do, but because it reconstructs the tree, it is slightly
              less efficient.

              A transformer without methods essentially performs a non-memoized partial deepcopy.

              All these classes implement the transformer interface:

              • Transformer - Recursively transforms the tree. This is the one you probably want.

              • Transformer_InPlace -  Non-recursive.  Changes  the  tree  in-place  instead  of  returning  new
                instances

              • Transformer_InPlaceRecursive  -  Recursive.  Changes  the tree in-place instead of returning new
                instances

              Parameters
                     visit_tokens (bool, optional) -- Should the transformer visit tokens in addition to  rules.
                     Setting  this  to  False  is  slightly  faster.  Defaults to True.  (For processing ignored
                     tokens, use the lexer_callbacks options)

              transform(tree: Tree[_Leaf_T]) -> _Return_T
                     Transform the given tree, and return the final result

              __mul__(other: Transformer | TransformerChain[_Leaf_U, _Return_V]) -> TransformerChain[_Leaf_T,
              _Return_V]
                     Chain two transformers together, returning a new transformer.

              __default__(data, children, meta)
                     Default function that is called if there is no attribute matching data

                     Can be overridden. Defaults to creating a new copy of the tree node (i.e. return Tree(data,
                     children, meta))

              __default_token__(token)
                     Default function that is called if there is no attribute matching token.type

                     Can be overridden. Defaults to returning the token as-is.

       Example:

                 from lark import Tree, Transformer

                 class EvalExpressions(Transformer):
                     def expr(self, args):
                             return eval(args[0])

                 t = Tree('a', [Tree('expr', ['1+2'])])
                 print(EvalExpressions().transform( t ))

                 # Prints: Tree(a, [3])

       Example:

                 class T(Transformer):
                     INT = int
                     NUMBER = float
                     def NAME(self, name):
                         return lookup_dict.get(name, name)

                 T(visit_tokens=True).transform(tree)

       class lark.visitors.Transformer_NonRecursive(visit_tokens: bool = True)
              Same as Transformer but non-recursive.

              Like Transformer, it doesn't change the original tree.

              Useful for huge trees.

       class lark.visitors.Transformer_InPlace(visit_tokens: bool = True)
              Same as Transformer, but non-recursive, and changes the tree in-place  instead  of  returning  new
              instances

              Useful for huge trees. Conservative in memory.

       class lark.visitors.Transformer_InPlaceRecursive(visit_tokens: bool = True)
              Same as Transformer, recursive, but changes the tree in-place instead of returning new instances

   v_args
       lark.visitors.v_args(inline: bool = False, meta: bool = False, tree: bool = False, wrapper: Callable |
       None = None) -> Callable[[Callable[[...], _Return_T] | type], Callable[[...], _Return_T] | type]
              A convenience decorator factory for modifying the behavior of user-supplied visitor methods.

              By  default,  callback methods of transformers/visitors accept one argument - a list of the node's
              children.

              v_args can modify this behavior. When used on a transformer/visitor class definition,  it  applies
              to all the callback methods inside it.

              v_args can be applied to a single method, or to an entire class. When applied to both, the options
              given to the method take precedence.

              Parametersinline (bool, optional) -- Children are provided as *args instead of a list argument (not
                       recommended for very long lists).

                     • meta  (bool,  optional) -- Provides two arguments: meta and children (instead of just the
                       latter)

                     • tree (bool, optional) -- Provides the  entire  tree  as  the  argument,  instead  of  the
                       children.

                     • wrapper (function, optional) -- Provide a function to decorate all methods.

              Example

                 @v_args(inline=True)
                 class SolveArith(Transformer):
                     def add(self, left, right):
                         return left + right

                     @v_args(meta=True)
                     def mul(self, meta, children):
                         logger.info(f'mul at line {meta.line}')
                         left, right = children
                         return left * right

                 class ReverseNotation(Transformer_InPlace):
                     @v_args(tree=True)
                     def tree_node(self, tree):
                         tree.children = tree.children[::-1]

   merge_transformers
       lark.visitors.merge_transformers(base_transformer=None, **transformers_to_merge)
              Merge a collection of transformers into the base_transformer, each into its own 'namespace'.

              When   called,   it   will  collect  the  methods  from  each  transformer,  and  assign  them  to
              base_transformer, with their name prefixed with the given keyword, as prefix__methodname.

              This function is especially useful for processing grammars that  import  other  grammars,  thereby
              creating some of their rules in a 'namespace'. (i.e with a consistent name prefix).  In this case,
              the key for the transformer should match the name of the imported grammar.

              Parametersbase_transformer  (Transformer,  optional) -- The transformer that all other transformers
                       will be added to.

                     • **transformers_to_merge -- Keyword arguments, in the form of name_prefix = transformer.

              Raises AttributeError -- In case of a name collision in the merged methods

              Example

                 class TBase(Transformer):
                     def start(self, children):
                         return children[0] + 'bar'

                 class TImportedGrammar(Transformer):
                     def foo(self, children):
                         return "foo"

                 composed_transformer = merge_transformers(TBase(), imported=TImportedGrammar())

                 t = Tree('start', [ Tree('imported__foo', []) ])

                 assert composed_transformer.transform(t) == 'foobar'

   Discard
       Discard is the singleton instance of _DiscardType.

       class lark.visitors._DiscardType
              When the Discard value is returned from a transformer callback, that node is discarded  and  won't
              appear in the parent.

              NOTE:
                 This feature is disabled when the transformer is provided to Lark using the transformer keyword
                 (aka Tree-less LALR mode).

              Example

                 class T(Transformer):
                     def ignore_tree(self, children):
                         return Discard

                     def IGNORE_TOKEN(self, token):
                         return Discard

   VisitError
       class lark.exceptions.VisitError(rule, obj, orig_exc)
              VisitError is raised when visitors are interrupted by an exception

              It provides the following attributes for inspection:

              Parametersrule -- the name of the visit rule that failed

                     • obj -- the tree-node or token that was being processed

                     • orig_exc -- the exception that cause it to fail

              Note: These parameters are available as attributes

WORKING WITH THE SPPF

       When  parsing  with Earley, Lark provides the ambiguity='forest' option to obtain the shared packed parse
       forest (SPPF) produced by the parser as an alternative to it being automatically converted to a tree.

       Lark provides a few tools to facilitate working with the SPPF. Here are  some  things  to  consider  when
       deciding whether or not to use the SPPF.

       Pros

       • Efficient storage of highly ambiguous parses

       • Precise handling of ambiguities

       • Custom rule prioritizers

       • Ability to handle infinite ambiguities

       • Directly transform forest -> object instead of forest -> tree -> object

       Cons

       • More complex than working with a tree

       • SPPF may contain nodes corresponding to rules generated internally

       • Loss of Lark grammar features:

         • Rules starting with '_' are not inlined in the SPPF

         • Rules starting with '?' are never inlined in the SPPF

         • All tokens will appear in the SPPF

   SymbolNode
       class lark.parsers.earley_forest.SymbolNode(s, start, end)
              A Symbol Node represents a symbol (or Intermediate LR0).

              Symbol  nodes  are  keyed  by the symbol (s). For intermediate nodes s will be an LR0, stored as a
              tuple of (rule, ptr). For completed symbol nodes, s will be a string representing the non-terminal
              origin (i.e.  the left hand side of the rule).

              The children of a Symbol or Intermediate Node will always be Packed Nodes; with each  Packed  Node
              child representing a single derivation of a production.

              Hence a Symbol Node with a single child is unambiguous.

              Parameterss -- A Symbol, or a tuple of (rule, ptr) for an intermediate node.

                     • start -- The index of the start of the substring matched by this symbol (inclusive).

                     • end -- The index of the end of the substring matched by this symbol (exclusive).

              Properties:
                     is_intermediate:  True if this node is an intermediate node.  priority: The priority of the
                     node's symbol.

              property is_ambiguous
                     Returns True if this node is ambiguous.

              property children
                     Returns a list of this node's children sorted from greatest to least priority.

   PackedNode
       class lark.parsers.earley_forest.PackedNode(parent, s, rule, start, left, right)
              A Packed Node represents a single derivation in a symbol node.

              Parametersrule -- The rule associated with this node.

                     • parent -- The parent of this node.

                     • left -- The left child of this node. None if one does not exist.

                     • right -- The right child of this node. None if one does not exist.

                     • priority -- The priority of this node.

              property children
                     Returns a list of this node's children.

   ForestVisitor
       class lark.parsers.earley_forest.ForestVisitor(single_visit=False)
              An abstract base class for building forest visitors.

              This class performs a controllable depth-first walk of an SPPF.  The visitor will not enter cycles
              and will backtrack if one is encountered.  Subclasses are notified of cycles through the  on_cycle
              method.

              Behavior for visit events is defined by overriding the visit*node* functions.

              The walk is controlled by the return values of the visit*node_in methods. Returning a node(s) will
              schedule them to be visited. The visitor will begin to backtrack if no nodes are returned.

              Parameters
                     single_visit -- If True, non-Token nodes will only be visited once.

              visit_token_node(node)
                     Called when a Token is visited. Token nodes are always leaves.

              visit_symbol_node_in(node)
                     Called  when  a  symbol  node  is  visited. Nodes that are returned will be scheduled to be
                     visited. If visit_intermediate_node_in is not implemented, this function will be called for
                     intermediate nodes as well.

              visit_symbol_node_out(node)
                     Called after all nodes returned from a corresponding visit_symbol_node_in  call  have  been
                     visited.  If  visit_intermediate_node_out  is not implemented, this function will be called
                     for intermediate nodes as well.

              visit_packed_node_in(node)
                     Called when a packed node is visited. Nodes that are  returned  will  be  scheduled  to  be
                     visited.

              visit_packed_node_out(node)
                     Called  after  all  nodes returned from a corresponding visit_packed_node_in call have been
                     visited.

              on_cycle(node, path)
                     Called when a cycle is encountered.

                     Parametersnode -- The node that causes a cycle.

                            • path -- The list of nodes being visited: nodes that  have  been  entered  but  not
                              exited.  The  first element is the root in a forest visit, and the last element is
                              the node visited most recently.  path should be treated as read-only.

              get_cycle_in_path(node, path)
                     A utility function for use in on_cycle to obtain a slice of path  that  only  contains  the
                     nodes that make up the cycle.

   ForestTransformer
       class lark.parsers.earley_forest.ForestTransformer
              The   base   class   for   a  bottom-up  forest  transformation.  Most  users  will  want  to  use
              TreeForestTransformer instead as it has a friendlier interface and covers most use cases.

              Transformations are applied via inheritance and overriding of the transform*node methods.

              transform_token_node receives a Token as an argument.  All other methods receive the node that  is
              being  transformed  and a list of the results of the transformations of that node's children.  The
              return value of these methods are the resulting transformations.

              If Discard is raised in a node's transformation, no data from that node  will  be  passed  to  its
              parent's transformation.

              transform(root)
                     Perform a transformation on an SPPF.

              transform_symbol_node(node, data)
                     Transform a symbol node.

              transform_intermediate_node(node, data)
                     Transform an intermediate node.

              transform_packed_node(node, data)
                     Transform a packed node.

              transform_token_node(node)
                     Transform a Token.

   TreeForestTransformer
       class lark.parsers.earley_forest.TreeForestTransformer(tree_class=<class 'lark.tree.Tree'>,
       prioritizer=<lark.parsers.earley_forest.ForestSumVisitor object>, resolve_ambiguity=True,
       use_cache=False)
              A ForestTransformer with a tree Transformer-like interface.  By default, it will construct a tree.

              Methods provided via inheritance are called based on the rule/symbol names of nodes in the forest.

              Methods  that act on rules will receive a list of the results of the transformations of the rule's
              children. By default, trees and tokens.

              Methods that act on tokens will receive a token.

              Alternatively, methods that act on rules may be annotated with handles_ambiguity.  In  this  case,
              the  function  will  receive a list of all the transformations of all the derivations of the rule.
              By default, a list of trees where each tree.data is equal to the rule name or one of its aliases.

              Non-tree transformations are made possible by  override  of  __default__,  __default_token__,  and
              __default_ambig__.

              NOTE:
                 Tree  shaping  features  such  as  inlined  rules  and  token  filtering are not built into the
                 transformation. Positions are also not propagated.

              Parameterstree_class -- The tree class to use for construction

                     • prioritizer -- A ForestVisitor that manipulates the priorities of nodes in the SPPF.

                     • resolve_ambiguity -- If True, ambiguities will be resolved based on priorities.

                     • use_cache (bool) -- If True, caches the  results  of  some  transformations,  potentially
                       improving  performance  when resolve_ambiguity==False.  Only use if you know what you are
                       doing: i.e. All transformation functions are pure and referentially transparent.

              __default__(name, data)
                     Default operation on tree (for override).

                     Returns a tree with name with data as children.

              __default_ambig__(name, data)
                     Default operation on ambiguous rule (for override).

                     Wraps data in an '_ambig_' node if it contains more than one element.

              __default_token__(node)
                     Default operation on Token (for override).

                     Returns node.

   handles_ambiguity
       lark.parsers.earley_forest.handles_ambiguity(func)
              Decorator for methods of subclasses of TreeForestTransformer.   Denotes  that  the  method  should
              receive a list of transformed derivations.

TOOLS (STAND-ALONE, NEARLEY)

   Stand-alone parser
       Lark can generate a stand-alone LALR(1) parser from a grammar.

       The  resulting  module  provides  the  same  interface  as  Lark,  but  with a fixed grammar, and reduced
       functionality.

       Run using:

          python -m lark.tools.standalone

       For a play-by-play, read the tutorial

   Importing grammars from Nearley.js
       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.

   Requirements
       • Install Lark with the nearley component:

          pip install lark[nearley]

       • Acquire a copy of the Nearley codebase. This can be done using:

          git clone https://github.com/Hardmath123/nearley

   Usage
       The tool can be run using:

          python -m lark.tools.nearley <grammar.ne> <start_rule> <path_to_nearley_repo>

       Here's an example of how to import nearley's calculator example into Lark:

          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

       The Nearley converter also supports an experimental converter for  newer  JavaScript  (ES6+),  using  the
       --es6 flag:

          git clone https://github.com/Hardmath123/nearley
          python -m lark.tools.nearley nearley/examples/calculator/arithmetic.ne main nearley --es6 > ncalc.py

   Notes
       • Lark currently cannot import templates from Nearley

       • Lark currently cannot export grammars to Nearley

       These might get added in the future, if enough users ask for them.

       Lark is a modern parsing library for Python. Lark can parse any context-free grammar.

       Lark provides:

       • Advanced grammar language, based on EBNF

       • Three parsing algorithms to choose from: Earley, LALR(1) and CYK

       • Automatic tree construction, inferred from your grammar

       • Fast unicode lexer with regexp support, and automatic line-counting

INSTALL LARK

          $ pip install lark

SYNTAX HIGHLIGHTING

Sublime Text & TextMateVisual Studio Code (Or install through the vscode plugin system)

       • Intellij & PyCharmVimAtom

RESOURCES

PhilosophyFeaturesExamplesThird-party examplesOnline IDE

       • Tutorials

         • How to write a DSL - Implements a toy LOGO-like language with an interpreter

         • JSON parser - Tutorial - Teaches you how to use Lark

         • Unofficial

           • Program Synthesis is Possible - Creates a DSL for Z3

           • Using Lark to Parse Text - Robin Reynolds-Haertle (PyCascades 2023) (video presentation)

       • Guides

         • How To Use Lark - GuideHow to develop Lark - Guide

       • Reference

         • Grammar ReferenceTree Construction ReferenceTransformers & VisitorsWorking with the SPPFAPI ReferenceTools (Stand-alone, Nearley)Cheatsheet (PDF)

       • Discussion

         • GitterForum (Google Groups)

AUTHOR

       Erez Shinan

COPYRIGHT

       2024, Erez Shinan

                                                  Jan 12, 2024                                           LARK(7)