spaCy/spacy/tokenizer.pyx

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# cython: embedsignature=True
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# cython: profile=True
# coding: utf8
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from __future__ import unicode_literals
from cython.operator cimport dereference as deref
from cython.operator cimport preincrement as preinc
from cymem.cymem cimport Pool
from preshed.maps cimport PreshMap
cimport cython
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from collections import OrderedDict
import re
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import warnings
from .tokens.doc cimport Doc
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from .strings cimport hash_string
from .compat import unescape_unicode, basestring_
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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from .attrs import intify_attrs
from .symbols import ORTH
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from .errors import Errors, Warnings
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from . import util
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cdef class Tokenizer:
"""Segment text, and create Doc objects with the discovered segment
boundaries.
DOCS: https://spacy.io/api/tokenizer
"""
def __init__(self, Vocab vocab, rules=None, prefix_search=None,
suffix_search=None, infix_finditer=None, token_match=None,
url_match=None):
"""Create a `Tokenizer`, to create `Doc` objects given unicode text.
vocab (Vocab): A storage container for lexical types.
rules (dict): Exceptions and special-cases for the tokenizer.
prefix_search (callable): A function matching the signature of
`re.compile(string).search` to match prefixes.
suffix_search (callable): A function matching the signature of
`re.compile(string).search` to match suffixes.
`infix_finditer` (callable): A function matching the signature of
`re.compile(string).finditer` to find infixes.
token_match (callable): A boolean function matching strings to be
recognised as tokens.
url_match (callable): A boolean function matching strings to be
recognised as tokens after considering prefixes and suffixes.
RETURNS (Tokenizer): The newly constructed object.
EXAMPLE:
>>> tokenizer = Tokenizer(nlp.vocab)
>>> tokenizer = English().Defaults.create_tokenizer(nlp)
DOCS: https://spacy.io/api/tokenizer#init
"""
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self.mem = Pool()
self._cache = PreshMap()
self._specials = PreshMap()
self.token_match = token_match
self.url_match = url_match
self.prefix_search = prefix_search
self.suffix_search = suffix_search
self.infix_finditer = infix_finditer
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self.vocab = vocab
self._rules = {}
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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self._load_special_tokenization(rules)
property token_match:
def __get__(self):
return self._token_match
def __set__(self, token_match):
self._token_match = token_match
self._flush_cache()
property url_match:
def __get__(self):
return self._url_match
def __set__(self, url_match):
self._url_match = url_match
self._flush_cache()
property prefix_search:
def __get__(self):
return self._prefix_search
def __set__(self, prefix_search):
self._prefix_search = prefix_search
self._flush_cache()
property suffix_search:
def __get__(self):
return self._suffix_search
def __set__(self, suffix_search):
self._suffix_search = suffix_search
self._flush_cache()
property infix_finditer:
def __get__(self):
return self._infix_finditer
def __set__(self, infix_finditer):
self._infix_finditer = infix_finditer
self._flush_cache()
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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property rules:
def __get__(self):
return self._rules
def __set__(self, rules):
self._rules = {}
self._reset_cache([key for key in self._cache])
self._reset_specials()
self._cache = PreshMap()
self._specials = PreshMap()
self._load_special_tokenization(rules)
def __reduce__(self):
args = (self.vocab,
self.rules,
self.prefix_search,
self.suffix_search,
self.infix_finditer,
self.token_match,
self.url_match)
return (self.__class__, args, None, None)
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cpdef Doc tokens_from_list(self, list strings):
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warnings.warn(Warnings.W002, DeprecationWarning)
return Doc(self.vocab, words=strings)
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@cython.boundscheck(False)
def __call__(self, unicode string):
"""Tokenize a string.
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string (unicode): The string to tokenize.
RETURNS (Doc): A container for linguistic annotations.
DOCS: https://spacy.io/api/tokenizer#call
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"""
if len(string) >= (2 ** 30):
raise ValueError(Errors.E025.format(length=len(string)))
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cdef int length = len(string)
cdef Doc doc = Doc(self.vocab)
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if length == 0:
return doc
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cdef int i = 0
cdef int start = 0
cdef bint cache_hit
cdef bint in_ws = string[0].isspace()
cdef unicode span
# The task here is much like string.split, but not quite
# We find spans of whitespace and non-space characters, and ignore
# spans that are exactly ' '. So, our sequences will all be separated
# by either ' ' or nothing.
for uc in string:
if uc.isspace() != in_ws:
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if start < i:
# When we want to make this fast, get the data buffer once
# with PyUnicode_AS_DATA, and then maintain a start_byte
# and end_byte, so we can call hash64 directly. That way
# we don't have to create the slice when we hit the cache.
span = string[start:i]
key = hash_string(span)
cache_hit = self._try_cache(key, doc)
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if not cache_hit:
self._tokenize(doc, span, key)
if uc == ' ':
doc.c[doc.length - 1].spacy = True
start = i + 1
else:
start = i
in_ws = not in_ws
i += 1
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if start < i:
span = string[start:]
key = hash_string(span)
cache_hit = self._try_cache(key, doc)
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if not cache_hit:
self._tokenize(doc, span, key)
doc.c[doc.length - 1].spacy = string[-1] == " " and not in_ws
return doc
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def pipe(self, texts, batch_size=1000, n_threads=-1):
"""Tokenize a stream of texts.
texts: A sequence of unicode texts.
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batch_size (int): Number of texts to accumulate in an internal buffer.
Defaults to 1000.
YIELDS (Doc): A sequence of Doc objects, in order.
DOCS: https://spacy.io/api/tokenizer#pipe
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"""
if n_threads != -1:
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warnings.warn(Warnings.W016, DeprecationWarning)
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for text in texts:
yield self(text)
def _flush_cache(self):
self._reset_cache([key for key in self._cache if not key in self._specials])
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def _reset_cache(self, keys):
for k in keys:
del self._cache[k]
if not k in self._specials:
cached = <_Cached*>self._cache.get(k)
if cached is not NULL:
self.mem.free(cached)
def _reset_specials(self):
for k in self._specials:
cached = <_Cached*>self._specials.get(k)
del self._specials[k]
if cached is not NULL:
self.mem.free(cached)
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cdef int _try_cache(self, hash_t key, Doc tokens) except -1:
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cached = <_Cached*>self._cache.get(key)
if cached == NULL:
return False
cdef int i
if cached.is_lex:
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for i in range(cached.length):
tokens.push_back(cached.data.lexemes[i], False)
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else:
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for i in range(cached.length):
tokens.push_back(&cached.data.tokens[i], False)
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return True
cdef int _tokenize(self, Doc tokens, unicode span, hash_t orig_key) except -1:
cdef vector[LexemeC*] prefixes
cdef vector[LexemeC*] suffixes
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cdef int orig_size
cdef int has_special = 0
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orig_size = tokens.length
span = self._split_affixes(tokens.mem, span, &prefixes, &suffixes,
&has_special)
self._attach_tokens(tokens, span, &prefixes, &suffixes)
self._save_cached(&tokens.c[orig_size], orig_key, has_special,
tokens.length - orig_size)
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cdef unicode _split_affixes(self, Pool mem, unicode string,
vector[const LexemeC*] *prefixes,
vector[const LexemeC*] *suffixes,
int* has_special):
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cdef size_t i
cdef unicode prefix
cdef unicode suffix
cdef unicode minus_pre
cdef unicode minus_suf
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cdef size_t last_size = 0
while string and len(string) != last_size:
if self.token_match and self.token_match(string):
break
if self._specials.get(hash_string(string)) != NULL:
has_special[0] = 1
break
last_size = len(string)
pre_len = self.find_prefix(string)
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if pre_len != 0:
prefix = string[:pre_len]
minus_pre = string[pre_len:]
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# Check whether we've hit a special-case
if minus_pre and self._specials.get(hash_string(minus_pre)) != NULL:
string = minus_pre
prefixes.push_back(self.vocab.get(mem, prefix))
has_special[0] = 1
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break
suf_len = self.find_suffix(string)
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if suf_len != 0:
suffix = string[-suf_len:]
minus_suf = string[:-suf_len]
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# Check whether we've hit a special-case
if minus_suf and (self._specials.get(hash_string(minus_suf)) != NULL):
string = minus_suf
suffixes.push_back(self.vocab.get(mem, suffix))
has_special[0] = 1
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break
if pre_len and suf_len and (pre_len + suf_len) <= len(string):
string = string[pre_len:-suf_len]
prefixes.push_back(self.vocab.get(mem, prefix))
suffixes.push_back(self.vocab.get(mem, suffix))
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elif pre_len:
string = minus_pre
prefixes.push_back(self.vocab.get(mem, prefix))
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elif suf_len:
string = minus_suf
suffixes.push_back(self.vocab.get(mem, suffix))
if string and (self._specials.get(hash_string(string)) != NULL):
has_special[0] = 1
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break
return string
cdef int _attach_tokens(self, Doc tokens, unicode string,
vector[const LexemeC*] *prefixes,
vector[const LexemeC*] *suffixes) except -1:
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cdef bint cache_hit
cdef int split, end
cdef const LexemeC* const* lexemes
cdef const LexemeC* lexeme
cdef unicode span
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cdef int i
if prefixes.size():
for i in range(prefixes.size()):
tokens.push_back(prefixes[0][i], False)
if string:
cache_hit = self._try_cache(hash_string(string), tokens)
if cache_hit:
pass
elif (self.token_match and self.token_match(string)) or \
(self.url_match and \
self.url_match(string)):
# We're always saying 'no' to spaces here -- the caller will
# fix up the outermost one, with reference to the original.
# See Issue #859
tokens.push_back(self.vocab.get(tokens.mem, string), False)
else:
matches = self.find_infix(string)
if not matches:
tokens.push_back(self.vocab.get(tokens.mem, string), False)
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else:
# Let's say we have dyn-o-mite-dave - the regex finds the
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# start and end positions of the hyphens
start = 0
start_before_infixes = start
for match in matches:
infix_start = match.start()
infix_end = match.end()
if infix_start == start_before_infixes:
continue
if infix_start != start:
span = string[start:infix_start]
tokens.push_back(self.vocab.get(tokens.mem, span), False)
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if infix_start != infix_end:
# If infix_start != infix_end, it means the infix
# token is non-empty. Empty infix tokens are useful
# for tokenization in some languages (see
# https://github.com/explosion/spaCy/issues/768)
infix_span = string[infix_start:infix_end]
tokens.push_back(self.vocab.get(tokens.mem, infix_span), False)
start = infix_end
span = string[start:]
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if span:
tokens.push_back(self.vocab.get(tokens.mem, span), False)
cdef vector[const LexemeC*].reverse_iterator it = suffixes.rbegin()
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while it != suffixes.rend():
lexeme = deref(it)
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preinc(it)
tokens.push_back(lexeme, False)
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cdef int _save_cached(self, const TokenC* tokens, hash_t key,
int has_special, int n) except -1:
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cdef int i
if n <= 0:
# avoid mem alloc of zero length
return 0
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for i in range(n):
if self.vocab._by_orth.get(tokens[i].lex.orth) == NULL:
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return 0
# See #1250
if has_special:
return 0
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cached = <_Cached*>self.mem.alloc(1, sizeof(_Cached))
cached.length = n
cached.is_lex = True
lexemes = <const LexemeC**>self.mem.alloc(n, sizeof(LexemeC**))
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for i in range(n):
lexemes[i] = tokens[i].lex
cached.data.lexemes = <const LexemeC* const*>lexemes
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self._cache.set(key, cached)
def find_infix(self, unicode string):
"""Find internal split points of the string, such as hyphens.
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string (unicode): The string to segment.
RETURNS (list): A list of `re.MatchObject` objects that have `.start()`
and `.end()` methods, denoting the placement of internal segment
separators, e.g. hyphens.
DOCS: https://spacy.io/api/tokenizer#find_infix
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"""
if self.infix_finditer is None:
return 0
return list(self.infix_finditer(string))
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def find_prefix(self, unicode string):
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"""Find the length of a prefix that should be segmented from the
string, or None if no prefix rules match.
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string (unicode): The string to segment.
RETURNS (int): The length of the prefix if present, otherwise `None`.
DOCS: https://spacy.io/api/tokenizer#find_prefix
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"""
if self.prefix_search is None:
return 0
match = self.prefix_search(string)
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return (match.end() - match.start()) if match is not None else 0
def find_suffix(self, unicode string):
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"""Find the length of a suffix that should be segmented from the
string, or None if no suffix rules match.
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string (unicode): The string to segment.
Returns (int): The length of the suffix if present, otherwise `None`.
DOCS: https://spacy.io/api/tokenizer#find_suffix
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"""
if self.suffix_search is None:
return 0
match = self.suffix_search(string)
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return (match.end() - match.start()) if match is not None else 0
def _load_special_tokenization(self, special_cases):
"""Add special-case tokenization rules."""
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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if special_cases is not None:
for chunk, substrings in sorted(special_cases.items()):
self.add_special_case(chunk, substrings)
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def add_special_case(self, unicode string, substrings):
"""Add a special-case tokenization rule.
string (unicode): The string to specially tokenize.
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substrings (iterable): A sequence of dicts, where each dict describes
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a token and its attributes. The `ORTH` fields of the attributes
must exactly match the string when they are concatenated.
DOCS: https://spacy.io/api/tokenizer#add_special_case
"""
substrings = list(substrings)
cached = <_Cached*>self.mem.alloc(1, sizeof(_Cached))
cached.length = len(substrings)
cached.is_lex = False
cached.data.tokens = self.vocab.make_fused_token(substrings)
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key = hash_string(string)
stale_special = <_Cached*>self._specials.get(key)
stale_cached = <_Cached*>self._cache.get(key)
self._flush_cache()
self._specials.set(key, cached)
self._cache.set(key, cached)
if stale_special is not NULL:
self.mem.free(stale_special)
if stale_special != stale_cached and stale_cached is not NULL:
self.mem.free(stale_cached)
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self._rules[string] = substrings
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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def explain(self, text):
"""A debugging tokenizer that provides information about which
tokenizer rule or pattern was matched for each token. The tokens
produced are identical to `nlp.tokenizer()` except for whitespace
tokens.
string (unicode): The string to tokenize.
RETURNS (list): A list of (pattern_string, token_string) tuples
DOCS: https://spacy.io/api/tokenizer#explain
"""
prefix_search = self.prefix_search
suffix_search = self.suffix_search
infix_finditer = self.infix_finditer
token_match = self.token_match
if token_match is None:
token_match = re.compile("a^").match
url_match = self.url_match
if url_match is None:
url_match = re.compile("a^").match
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
2019-11-20 12:07:25 +00:00
special_cases = {}
for orth, special_tokens in self.rules.items():
special_cases[orth] = [intify_attrs(special_token, strings_map=self.vocab.strings, _do_deprecated=True) for special_token in special_tokens]
tokens = []
for substring in text.split():
suffixes = []
while substring:
while prefix_search(substring) or suffix_search(substring):
if token_match(substring):
tokens.append(("TOKEN_MATCH", substring))
substring = ''
break
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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if substring in special_cases:
tokens.extend(("SPECIAL-" + str(i + 1), self.vocab.strings[e[ORTH]]) for i, e in enumerate(special_cases[substring]))
substring = ''
break
if prefix_search(substring):
split = prefix_search(substring).end()
# break if pattern matches the empty string
if split == 0:
break
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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tokens.append(("PREFIX", substring[:split]))
substring = substring[split:]
if substring in special_cases:
continue
if suffix_search(substring):
split = suffix_search(substring).start()
# break if pattern matches the empty string
if split == len(substring):
break
suffixes.append(("SUFFIX", substring[split:]))
substring = substring[:split]
if token_match(substring):
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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tokens.append(("TOKEN_MATCH", substring))
substring = ''
elif url_match(substring):
tokens.append(("URL_MATCH", substring))
substring = ''
elif substring in special_cases:
tokens.extend(("SPECIAL-" + str(i + 1), self.vocab.strings[e[ORTH]]) for i, e in enumerate(special_cases[substring]))
substring = ''
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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elif list(infix_finditer(substring)):
infixes = infix_finditer(substring)
offset = 0
for match in infixes:
if substring[offset : match.start()]:
tokens.append(("TOKEN", substring[offset : match.start()]))
if substring[match.start() : match.end()]:
tokens.append(("INFIX", substring[match.start() : match.end()]))
Add tokenizer explain() debugging method (#4596) * Expose tokenizer rules as a property Expose the tokenizer rules property in the same way as the other core properties. (The cache resetting is overkill, but consistent with `from_bytes` for now.) Add tests and update Tokenizer API docs. * Update Hungarian punctuation to remove empty string Update Hungarian punctuation definitions so that `_units` does not match an empty string. * Use _load_special_tokenization consistently Use `_load_special_tokenization()` and have it to handle `None` checks. * Fix precedence of `token_match` vs. special cases Remove `token_match` check from `_split_affixes()` so that special cases have precedence over `token_match`. `token_match` is checked only before infixes are split. * Add `make_debug_doc()` to the Tokenizer Add `make_debug_doc()` to the Tokenizer as a working implementation of the pseudo-code in the docs. Add a test (marked as slow) that checks that `nlp.tokenizer()` and `nlp.tokenizer.make_debug_doc()` return the same non-whitespace tokens for all languages that have `examples.sentences` that can be imported. * Update tokenization usage docs Update pseudo-code and algorithm description to correspond to `nlp.tokenizer.make_debug_doc()` with example debugging usage. Add more examples for customizing tokenizers while preserving the existing defaults. Minor edits / clarifications. * Revert "Update Hungarian punctuation to remove empty string" This reverts commit f0a577f7a5c67f55807fdbda9e9a936464723931. * Rework `make_debug_doc()` as `explain()` Rework `make_debug_doc()` as `explain()`, which returns a list of `(pattern_string, token_string)` tuples rather than a non-standard `Doc`. Update docs and tests accordingly, leaving the visualization for future work. * Handle cases with bad tokenizer patterns Detect when tokenizer patterns match empty prefixes and suffixes so that `explain()` does not hang on bad patterns. * Remove unused displacy image * Add tokenizer.explain() to usage docs
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offset = match.end()
if substring[offset:]:
tokens.append(("TOKEN", substring[offset:]))
substring = ''
elif substring:
tokens.append(("TOKEN", substring))
substring = ''
tokens.extend(reversed(suffixes))
return tokens
def to_disk(self, path, **kwargs):
"""Save the current state to a directory.
path (unicode or Path): A path to a directory, which will be created if
it doesn't exist.
exclude (list): String names of serialization fields to exclude.
DOCS: https://spacy.io/api/tokenizer#to_disk
"""
path = util.ensure_path(path)
with path.open("wb") as file_:
file_.write(self.to_bytes(**kwargs))
def from_disk(self, path, **kwargs):
"""Loads state from a directory. Modifies the object in place and
returns it.
path (unicode or Path): A path to a directory.
exclude (list): String names of serialization fields to exclude.
RETURNS (Tokenizer): The modified `Tokenizer` object.
DOCS: https://spacy.io/api/tokenizer#from_disk
"""
path = util.ensure_path(path)
with path.open("rb") as file_:
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bytes_data = file_.read()
self.from_bytes(bytes_data, **kwargs)
return self
def to_bytes(self, exclude=tuple(), **kwargs):
"""Serialize the current state to a binary string.
exclude (list): String names of serialization fields to exclude.
RETURNS (bytes): The serialized form of the `Tokenizer` object.
DOCS: https://spacy.io/api/tokenizer#to_bytes
"""
serializers = OrderedDict((
("vocab", lambda: self.vocab.to_bytes()),
("prefix_search", lambda: _get_regex_pattern(self.prefix_search)),
("suffix_search", lambda: _get_regex_pattern(self.suffix_search)),
("infix_finditer", lambda: _get_regex_pattern(self.infix_finditer)),
("token_match", lambda: _get_regex_pattern(self.token_match)),
("url_match", lambda: _get_regex_pattern(self.url_match)),
("exceptions", lambda: OrderedDict(sorted(self._rules.items())))
))
exclude = util.get_serialization_exclude(serializers, exclude, kwargs)
return util.to_bytes(serializers, exclude)
def from_bytes(self, bytes_data, exclude=tuple(), **kwargs):
"""Load state from a binary string.
bytes_data (bytes): The data to load from.
exclude (list): String names of serialization fields to exclude.
RETURNS (Tokenizer): The `Tokenizer` object.
DOCS: https://spacy.io/api/tokenizer#from_bytes
"""
data = OrderedDict()
deserializers = OrderedDict((
("vocab", lambda b: self.vocab.from_bytes(b)),
("prefix_search", lambda b: data.setdefault("prefix_search", b)),
("suffix_search", lambda b: data.setdefault("suffix_search", b)),
("infix_finditer", lambda b: data.setdefault("infix_finditer", b)),
("token_match", lambda b: data.setdefault("token_match", b)),
("url_match", lambda b: data.setdefault("url_match", b)),
("exceptions", lambda b: data.setdefault("rules", b))
))
exclude = util.get_serialization_exclude(deserializers, exclude, kwargs)
msg = util.from_bytes(bytes_data, deserializers, exclude)
for key in ["prefix_search", "suffix_search", "infix_finditer", "token_match", "url_match"]:
if key in data:
data[key] = unescape_unicode(data[key])
if "prefix_search" in data and isinstance(data["prefix_search"], basestring_):
self.prefix_search = re.compile(data["prefix_search"]).search
if "suffix_search" in data and isinstance(data["suffix_search"], basestring_):
self.suffix_search = re.compile(data["suffix_search"]).search
if "infix_finditer" in data and isinstance(data["infix_finditer"], basestring_):
self.infix_finditer = re.compile(data["infix_finditer"]).finditer
if "token_match" in data and isinstance(data["token_match"], basestring_):
self.token_match = re.compile(data["token_match"]).match
if "url_match" in data and isinstance(data["url_match"], basestring_):
self.url_match = re.compile(data["url_match"]).match
if "rules" in data and isinstance(data["rules"], dict):
# make sure to hard reset the cache to remove data from the default exceptions
self._rules = {}
self._reset_cache([key for key in self._cache])
self._reset_specials()
self._cache = PreshMap()
self._specials = PreshMap()
self._load_special_tokenization(data["rules"])
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return self
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def _get_regex_pattern(regex):
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"""Get a pattern string for a regex, or None if the pattern is None."""
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return None if regex is None else regex.__self__.pattern