ReBulk is a python library that performs advanced searches in strings that would be hard to implement using re module or String methods only.
It includes some features like Patterns, Match, Rule that allows
developers to build a custom and complex string matcher using a readable
and extendable API.
This project is hosted on GitHub: https://github.com/Toilal/rebulk
$ pip install rebulkRegular expression, string and function based patterns are declared in a
Rebulk object. It use a fluent API to chain string, regex, and
functional methods to define various patterns types.
>>> from rebulk import Rebulk
>>> bulk = Rebulk().string('brown').regex(r'qu\w+').functional(lambda s: (20, 25))When Rebulk object is fully configured, you can call matches method
with an input string to retrieve all Match objects found by registered
pattern.
>>> bulk.matches("The quick brown fox jumps over the lazy dog")
[<brown:(10, 15)>, <quick:(4, 9)>, <jumps:(20, 25)>]If multiple Match objects are found at the same position, only the
longer one is kept.
>>> bulk = Rebulk().string('lakers').string('la')
>>> bulk.matches("the lakers are from la")
[<lakers:(4, 10)>, <la:(20, 22)>]String patterns are based on
str.find
method to find matches, but returns all matches in the string.
ignore_case can be enabled to ignore case.
>>> Rebulk().string('la').matches("lalalilala")
[<la:(0, 2)>, <la:(2, 4)>, <la:(6, 8)>, <la:(8, 10)>]
>>> Rebulk().string('la').matches("LalAlilAla")
[<la:(8, 10)>]
>>> Rebulk().string('la', ignore_case=True).matches("LalAlilAla")
[<La:(0, 2)>, <lA:(2, 4)>, <lA:(6, 8)>, <la:(8, 10)>]You can define several patterns with a single string method call.
>>> Rebulk().string('Winter', 'coming').matches("Winter is coming...")
[<Winter:(0, 6)>, <coming:(10, 16)>]Regular Expression patterns are based on a compiled regular expression. re.finditer method is used to find matches.
If regex module is available, it
can be used by rebulk instead of default re
module. Enable it with REBULK_REGEX_ENABLED=1 environment variable.
>>> Rebulk().regex(r'l\w').matches("lolita")
[<lo:(0, 2)>, <li:(2, 4)>]You can define several patterns with a single regex method call.
>>> Rebulk().regex(r'Wint\wr', r'com\w{3}').matches("Winter is coming...")
[<Winter:(0, 6)>, <coming:(10, 16)>]All keyword arguments from re.compile are supported.
>>> import re # import required for flags constant
>>> Rebulk().regex('L[A-Z]KERS', flags=re.IGNORECASE) \
... .matches("The LaKeRs are from La")
[<LaKeRs:(4, 10)>]
>>> Rebulk().regex('L[A-Z]', 'L[A-Z]KERS', flags=re.IGNORECASE) \
... .matches("The LaKeRs are from La")
[<La:(20, 22)>, <LaKeRs:(4, 10)>]
>>> Rebulk().regex(('L[A-Z]', re.IGNORECASE), ('L[a-z]KeRs')) \
... .matches("The LaKeRs are from La")
[<La:(20, 22)>, <LaKeRs:(4, 10)>]If regex module is available, it automatically supports repeated captures.
>>> # If regex module is available, repeated_captures is True by default.
>>> matches = Rebulk().regex(r'(\d+)(?:-(\d+))+').matches("01-02-03-04")
>>> matches[0].children # doctest:+SKIP
[<01:(0, 2)>, <02:(3, 5)>, <03:(6, 8)>, <04:(9, 11)>]
>>> # If regex module is not available, or if repeated_captures is forced to False.
>>> matches = Rebulk().regex(r'(\d+)(?:-(\d+))+', repeated_captures=False) \
... .matches("01-02-03-04")
>>> matches[0].children
[<01:(0, 2)+initiator=01-02-03-04>, <04:(9, 11)+initiator=01-02-03-04>]-
abbreviationsDefined as a list of 2-tuple, each tuple is an abbreviation. It simply replace
tuple[0]withtuple[1]in the expression.>>> Rebulk().regex(r'Custom-separators', abbreviations=[("-", r"[W_]+")])... .matches("Custom_separators using-abbreviations") [<Custom_separators:(0, 17)>]
Functional Patterns are based on the evaluation of a function.
The function should have the same parameters as Rebulk.matches method,
that is the input string, and must return at least start index and end
index of the Match object.
>>> def func(string):
... index = string.find('?')
... if index > -1:
... return 0, index - 11
>>> Rebulk().functional(func).matches("Why do simple ? Forget about it ...")
[<Why:(0, 3)>]You can also return a dict of keywords arguments for Match object.
You can define several patterns with a single functional method call,
and function used can return multiple matches.
Chain Patterns are ordered composition of string, functional and regex patterns. Repeater can be set to define repetition on chain part.
>>> r = Rebulk().regex_defaults(flags=re.IGNORECASE)\
... .defaults(children=True, formatter={'episode': int, 'version': int})\
... .chain()\
... .regex(r'e(?P<episode>\d{1,4})').repeater(1)\
... .regex(r'v(?P<version>\d+)').repeater('?')\
... .regex(r'[ex-](?P<episode>\d{1,4})').repeater('*')\
... .close() # .repeater(1) could be omitted as it's the default behavior
>>> r.matches("This is E14v2-15-16-17").to_dict() # converts matches to dict
MatchesDict([('episode', [14, 15, 16, 17]), ('version', 2)])All patterns have options that can be given as keyword arguments.
-
validatorFunction to validate
Matchvalue given by the pattern. Can also be adict, to usevalidatorwith pattern named with key.>>> def check_leap_year(match): ... return int(match.value) in [1980, 1984, 1988] >>> matches = Rebulk().regex(r'\d{4}', validator=check_leap_year) \ ... .matches("In year 1982 ...") >>> len(matches) 0 >>> matches = Rebulk().regex(r'\d{4}', validator=check_leap_year) \ ... .matches("In year 1984 ...") >>> len(matches) 1
Some base validator functions are available in rebulk.validators
module. Most of those functions have to be configured using
functools.partial to map them to function accepting a single match
argument.
-
formatterFunction to convert
Matchvalue given by the pattern. Can also be adict, to useformatterwith matches named with key.>>> def year_formatter(value): ... return int(value) >>> matches = Rebulk().regex(r'\d{4}', formatter=year_formatter) \ ... .matches("In year 1982 ...") >>> isinstance(matches[0].value, int) True
-
pre_match_processor/post_match_processorFunction to mutagen or invalidate a match generated by a pattern.
Function has a single parameter which is the Match object. If function returns False, it will be considered as an invalid match. If function returns a match instance, it will replace the original match with this instance in the process.
-
post_processorFunction to change the default output of the pattern. Function parameters are Matches list and Pattern object.
-
nameThe name of the pattern. It is automatically passed to
Matchobjects generated by this pattern. -
tagsA list of string that qualifies this pattern.
-
valueOverride value property for generated
Matchobjects. Can also be adict, to usevaluewith pattern named with key. -
validate_allBy default, validator is called for returned
Matchobjects only. Enable this option to validate them all, parent and children included. -
format_allBy default, formatter is called for returned
Matchvalues only. Enable this option to format them all, parent and children included. -
disabledA
function(context)to disable the pattern if returningTrue. -
childrenIf
True, all childrenMatchobjects will be retrieved instead of a single parentMatchobject. -
privateIf
True,Matchobjects generated from this pattern are available internally only. They will be removed at the end ofRebulk.matchesmethod call. -
private_parentForce parent matches to be returned and flag them as private.
-
private_childrenForce children matches to be returned and flag them as private.
-
private_namesMatches names that will be declared as private
-
ignore_namesMatches names that will be ignored from the pattern output, after validation.
-
markerIf
true,Matchobjects generated from this pattern will be markers matches instead of standard matches. They won't be included inMatchessequence, but will be available inMatches.markerssequence (seeMarkerssection).
A Match object is the result created by a registered pattern.
It has a value property defined, and position indices are available
through start, end and span properties.
In some case, it contains children Match objects in children
property, and each child Match object reference its parent in parent
property. Also, a name property can be defined for the match.
If groups are defined in a Regular Expression pattern, each group match
will be converted to a single Match object. If a group has a name
defined ((?P<name>group)), it is set as name property in a child
Match object. The whole regexp match (re.group(0)) will be converted
to the main Match object, and all subgroups (1, 2, ... n) will be
converted to children matches of the main Match object.
>>> matches = Rebulk() \
... .regex(r"One, (?P<one>\w+), Two, (?P<two>\w+), Three, (?P<three>\w+)") \
... .matches("Zero, 0, One, 1, Two, 2, Three, 3, Four, 4")
>>> matches
[<One, 1, Two, 2, Three, 3:(9, 33)>]
>>> for child in matches[0].children:
... '%s = %s' % (child.name, child.value)
'one = 1'
'two = 2'
'three = 3'It's possible to retrieve only children by using children parameters.
You can also customize the way structure is generated with every,
private_parent and private_children parameters.
>>> matches = Rebulk() \
... .regex(r"One, (?P<one>\w+), Two, (?P<two>\w+), Three, (?P<three>\w+)", children=True) \
... .matches("Zero, 0, One, 1, Two, 2, Three, 3, Four, 4")
>>> matches
[<1:(14, 15)+name=one+initiator=One, 1, Two, 2, Three, 3>, <2:(22, 23)+name=two+initiator=One, 1, Two, 2, Three, 3>, <3:(32, 33)+name=three+initiator=One, 1, Two, 2, Three, 3>]Match object has the following properties that can be given to Pattern objects
-
formatterFunction to convert
Matchvalue given by the pattern. Can also be adict, to useformatterwith matches named with key.>>> def year_formatter(value): ... return int(value) >>> matches = Rebulk().regex(r'\d{4}', formatter=year_formatter) \ ... .matches("In year 1982 ...") >>> isinstance(matches[0].value, int) True
-
format_allBy default, formatter is called for returned
Matchvalues only. Enable this option to format them all, parent and children included. -
conflict_solverA
function(match, conflicting_match)used to solve conflict. Returned object will be removed from matches byConflictSolverdefault rule. If__default__string is returned, it will fallback to default behavior keeping longer match.
A Matches object holds the result of Rebulk.matches method call.
It's a sequence of Match objects and it behaves like a list.
All methods accepts a predicate function to filter Match objects
using a callable, and an index int to retrieve a single element from
default returned matches.
It has the following additional methods and properties on it.
-
starting(index, predicate=None, index=None)Retrieves a list of
Matchobjects that starts at given index. -
ending(index, predicate=None, index=None)Retrieves a list of
Matchobjects that ends at given index. -
previous(match, predicate=None, index=None)Retrieves a list of
Matchobjects that are previous and nearest to match. -
next(match, predicate=None, index=None)Retrieves a list of
Matchobjects that are next and nearest to match. -
tagged(tag, predicate=None, index=None)Retrieves a list of
Matchobjects that have the given tag defined. -
named(name, predicate=None, index=None)Retrieves a list of
Matchobjects that have the given name. -
range(start=0, end=None, predicate=None, index=None)Retrieves a list of
Matchobjects for given range, sorted from start to end. -
holes(start=0, end=None, formatter=None, ignore=None, predicate=None, index=None)Retrieves a list of hole
Matchobjects for given range. A hole match is created for each range where no match is available. -
conflicting(match, predicate=None, index=None)Retrieves a list of
Matchobjects that conflicts with given match. -
chain_before(self, position, seps, start=0, predicate=None, index=None):Retrieves a list of chained matches, before position, matching predicate and separated by characters from seps only.
-
chain_after(self, position, seps, end=None, predicate=None, index=None):Retrieves a list of chained matches, after position, matching predicate and separated by characters from seps only.
-
at_match(match, predicate=None, index=None)Retrieves a list of
Matchobjects at the same position as match. -
at_span(span, predicate=None, index=None)Retrieves a list of
Matchobjects from given (start, end) tuple. -
at_index(pos, predicate=None, index=None)Retrieves a list of
Matchobjects from given position. -
namesRetrieves a sequence of all
Match.nameproperties. -
tagsRetrieves a sequence of all
Match.tagsproperties. -
to_dict(details=False, first_value=False, enforce_list=False)Convert to an ordered dict, with
Match.nameas key andMatch.valueas value.It's a subclass of OrderedDict, that contains a
matchesproperty which is a dict withMatch.nameas key and list ofMatchobjects as value.If
first_valueisTrueand distinct values are found for the same name, value will be wrapped to a list. IfFalse, first value only will be kept and values lists can be retrieved withvalues_listwhich is a dict withMatch.nameas key and list ofMatch.valueas value.if
enforce_listisTrue, all values will be wrapped to a list, even if a single value is found.If
detailsis True,Match.valueobjects are replaced with completeMatchobject. -
markersA custom
Matchessequences specialized formarkersmatches (see below)
If you have defined some patterns with markers property, then
Matches.markers points to a special Matches sequence that contains
only markers matches. This sequence supports all methods from
Matches.
Markers matches are not intended to be used in final result, but can be
used to implement a Rule.
Rules are a convenient and readable way to implement advanced
conditional logic involving several Match objects. When a rule is
triggered, it can perform an action on Matches object, like filtering
out, adding additional tags or renaming.
Rules are implemented by extending the abstract Rule class. They are
registered using Rebulk.rule method by giving either a Rule
instance, a Rule class or a module containing Rule classes only.
For a rule to be triggered, Rule.when method must return True, or a
non empty list of Match objects, or any other truthy object. When
triggered, Rule.then method is called to perform the action with
when_response parameter defined as the response of Rule.when call.
Instead of implementing Rule.then method, you can define consequence
class property with a Consequence classe or instance, like
RemoveMatch, RenameMatch or AppendMatch. You can also use a list
of consequence when required : when_response must then be iterable,
and elements of this iterable will be given to each consequence in the
same order.
When many rules are registered, it can be useful to set priority class
variable to define a priority integer between all rule executions
(higher priorities will be executed first). You can also define
dependency to declare another Rule class as dependency for the current
rule, meaning that it will be executed before.
For all rules with the same priority value, when is called before,
and then is called after all.
>>> from rebulk import Rule, RemoveMatch
>>> class FirstOnlyRule(Rule):
... consequence = RemoveMatch
...
... def when(self, matches, context):
... grabbed = matches.named("grabbed", 0)
... if grabbed and matches.previous(grabbed):
... return grabbed
>>> rebulk = Rebulk()
>>> rebulk.regex("This match(.*?)grabbed", name="grabbed")
<...Rebulk object ...>
>>> rebulk.regex("if it's(.*?)first match", private=True)
<...Rebulk object at ...>
>>> rebulk.rules(FirstOnlyRule)
<...Rebulk object at ...>
>>> rebulk.matches("This match is grabbed only if it's the first match")
[<This match is grabbed:(0, 21)+name=grabbed>]
>>> rebulk.matches("if it's NOT the first match, This match is NOT grabbed")
[]