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https://github.com/explosion/spaCy.git
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3711af74e5
* Add tokenizer option to allow Matcher handling for all rules
Add tokenizer option `with_faster_rules_heuristics` that determines
whether the special cases applied by the internal `Matcher` are filtered
by whether they contain affixes or space. If `True` (default), the rules
are filtered to prioritize speed over rare edge cases. If `False`, all
rules are included in the final `Matcher`-based pass over the doc.
* Reset all caches when reloading special cases
* Revert "Reset all caches when reloading special cases"
This reverts commit 4ef6bd171d
.
* Initialize max_length properly
* Add new tag to API docs
* Rename to faster heuristics
145 lines
5.3 KiB
Python
145 lines
5.3 KiB
Python
import pickle
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import re
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import pytest
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from spacy.attrs import ENT_IOB, ENT_TYPE
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from spacy.lang.en import English
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from spacy.tokenizer import Tokenizer
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from spacy.tokens import Doc
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from spacy.util import compile_infix_regex, compile_prefix_regex
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from spacy.util import compile_suffix_regex, get_lang_class, load_model
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from ..util import assert_packed_msg_equal, make_tempdir
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def load_tokenizer(b):
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tok = get_lang_class("en")().tokenizer
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tok.from_bytes(b)
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return tok
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@pytest.mark.issue(2833)
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def test_issue2833(en_vocab):
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"""Test that a custom error is raised if a token or span is pickled."""
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doc = Doc(en_vocab, words=["Hello", "world"])
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with pytest.raises(NotImplementedError):
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pickle.dumps(doc[0])
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with pytest.raises(NotImplementedError):
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pickle.dumps(doc[0:2])
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@pytest.mark.issue(3012)
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def test_issue3012(en_vocab):
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"""Test that the is_tagged attribute doesn't get overwritten when we from_array
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without tag information."""
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words = ["This", "is", "10", "%", "."]
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tags = ["DT", "VBZ", "CD", "NN", "."]
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pos = ["DET", "VERB", "NUM", "NOUN", "PUNCT"]
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ents = ["O", "O", "B-PERCENT", "I-PERCENT", "O"]
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doc = Doc(en_vocab, words=words, tags=tags, pos=pos, ents=ents)
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assert doc.has_annotation("TAG")
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expected = ("10", "NUM", "CD", "PERCENT")
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assert (doc[2].text, doc[2].pos_, doc[2].tag_, doc[2].ent_type_) == expected
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header = [ENT_IOB, ENT_TYPE]
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ent_array = doc.to_array(header)
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doc.from_array(header, ent_array)
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assert (doc[2].text, doc[2].pos_, doc[2].tag_, doc[2].ent_type_) == expected
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# Serializing then deserializing
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doc_bytes = doc.to_bytes()
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doc2 = Doc(en_vocab).from_bytes(doc_bytes)
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assert (doc2[2].text, doc2[2].pos_, doc2[2].tag_, doc2[2].ent_type_) == expected
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@pytest.mark.issue(4190)
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def test_issue4190():
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def customize_tokenizer(nlp):
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prefix_re = compile_prefix_regex(nlp.Defaults.prefixes)
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suffix_re = compile_suffix_regex(nlp.Defaults.suffixes)
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infix_re = compile_infix_regex(nlp.Defaults.infixes)
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# Remove all exceptions where a single letter is followed by a period (e.g. 'h.')
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exceptions = {
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k: v
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for k, v in dict(nlp.Defaults.tokenizer_exceptions).items()
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if not (len(k) == 2 and k[1] == ".")
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}
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new_tokenizer = Tokenizer(
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nlp.vocab,
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exceptions,
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prefix_search=prefix_re.search,
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suffix_search=suffix_re.search,
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infix_finditer=infix_re.finditer,
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token_match=nlp.tokenizer.token_match,
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faster_heuristics=False,
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)
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nlp.tokenizer = new_tokenizer
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test_string = "Test c."
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# Load default language
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nlp_1 = English()
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doc_1a = nlp_1(test_string)
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result_1a = [token.text for token in doc_1a] # noqa: F841
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# Modify tokenizer
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customize_tokenizer(nlp_1)
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doc_1b = nlp_1(test_string)
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result_1b = [token.text for token in doc_1b]
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# Save and Reload
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with make_tempdir() as model_dir:
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nlp_1.to_disk(model_dir)
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nlp_2 = load_model(model_dir)
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# This should be the modified tokenizer
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doc_2 = nlp_2(test_string)
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result_2 = [token.text for token in doc_2]
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assert result_1b == result_2
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assert nlp_2.tokenizer.faster_heuristics is False
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def test_serialize_custom_tokenizer(en_vocab, en_tokenizer):
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"""Test that custom tokenizer with not all functions defined or empty
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properties can be serialized and deserialized correctly (see #2494,
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#4991)."""
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tokenizer = Tokenizer(en_vocab, suffix_search=en_tokenizer.suffix_search)
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tokenizer_bytes = tokenizer.to_bytes()
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Tokenizer(en_vocab).from_bytes(tokenizer_bytes)
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# test that empty/unset values are set correctly on deserialization
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tokenizer = get_lang_class("en")().tokenizer
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tokenizer.token_match = re.compile("test").match
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assert tokenizer.rules != {}
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assert tokenizer.token_match is not None
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assert tokenizer.url_match is not None
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assert tokenizer.prefix_search is not None
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assert tokenizer.infix_finditer is not None
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tokenizer.from_bytes(tokenizer_bytes)
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assert tokenizer.rules == {}
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assert tokenizer.token_match is None
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assert tokenizer.url_match is None
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assert tokenizer.prefix_search is None
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assert tokenizer.infix_finditer is None
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tokenizer = Tokenizer(en_vocab, rules={"ABC.": [{"ORTH": "ABC"}, {"ORTH": "."}]})
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tokenizer.rules = {}
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tokenizer_bytes = tokenizer.to_bytes()
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tokenizer_reloaded = Tokenizer(en_vocab).from_bytes(tokenizer_bytes)
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assert tokenizer_reloaded.rules == {}
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@pytest.mark.parametrize("text", ["I💜you", "they’re", "“hello”"])
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def test_serialize_tokenizer_roundtrip_bytes(en_tokenizer, text):
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tokenizer = en_tokenizer
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new_tokenizer = load_tokenizer(tokenizer.to_bytes())
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assert_packed_msg_equal(new_tokenizer.to_bytes(), tokenizer.to_bytes())
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assert new_tokenizer.to_bytes() == tokenizer.to_bytes()
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doc1 = tokenizer(text)
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doc2 = new_tokenizer(text)
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assert [token.text for token in doc1] == [token.text for token in doc2]
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def test_serialize_tokenizer_roundtrip_disk(en_tokenizer):
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tokenizer = en_tokenizer
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with make_tempdir() as d:
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file_path = d / "tokenizer"
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tokenizer.to_disk(file_path)
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tokenizer_d = en_tokenizer.from_disk(file_path)
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assert tokenizer.to_bytes() == tokenizer_d.to_bytes()
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