mirror of
https://github.com/explosion/spaCy.git
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333 lines
11 KiB
Python
333 lines
11 KiB
Python
# coding: utf8
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from __future__ import unicode_literals
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import pytest
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import gc
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import numpy
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import copy
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from spacy.lang.en import English
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from spacy.lang.en.stop_words import STOP_WORDS
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from spacy.lang.lex_attrs import is_stop
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from spacy.vectors import Vectors
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from spacy.vocab import Vocab
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from spacy.language import Language
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from spacy.tokens import Doc, Span, Token
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from spacy.pipeline import Tagger, EntityRecognizer
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from spacy.attrs import HEAD, DEP
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from spacy.matcher import Matcher
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from ..util import make_tempdir
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def test_issue1506():
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def string_generator():
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for _ in range(10001):
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yield "It's sentence produced by that bug."
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for _ in range(10001):
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yield "I erase some hbdsaj lemmas."
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for _ in range(10001):
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yield "I erase lemmas."
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for _ in range(10001):
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yield "It's sentence produced by that bug."
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for _ in range(10001):
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yield "It's sentence produced by that bug."
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nlp = English()
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for i, d in enumerate(nlp.pipe(string_generator())):
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# We should run cleanup more than one time to actually cleanup data.
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# In first run — clean up only mark strings as «not hitted».
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if i == 10000 or i == 20000 or i == 30000:
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gc.collect()
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for t in d:
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str(t.lemma_)
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def test_issue1518():
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"""Test vectors.resize() works."""
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vectors = Vectors(shape=(10, 10))
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vectors.add("hello", row=2)
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vectors.resize((5, 9))
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def test_issue1537():
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"""Test that Span.as_doc() doesn't segfault."""
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string = "The sky is blue . The man is pink . The dog is purple ."
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doc = Doc(Vocab(), words=string.split())
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doc[0].sent_start = True
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for word in doc[1:]:
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if word.nbor(-1).text == ".":
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word.sent_start = True
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else:
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word.sent_start = False
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sents = list(doc.sents)
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sent0 = sents[0].as_doc()
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sent1 = sents[1].as_doc()
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assert isinstance(sent0, Doc)
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assert isinstance(sent1, Doc)
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# TODO: Currently segfaulting, due to l_edge and r_edge misalignment
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# def test_issue1537_model():
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# nlp = load_spacy('en')
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# doc = nlp('The sky is blue. The man is pink. The dog is purple.')
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# sents = [s.as_doc() for s in doc.sents]
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# print(list(sents[0].noun_chunks))
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# print(list(sents[1].noun_chunks))
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def test_issue1539():
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"""Ensure vectors.resize() doesn't try to modify dictionary during iteration."""
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v = Vectors(shape=(10, 10), keys=[5, 3, 98, 100])
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v.resize((100, 100))
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def test_issue1547():
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"""Test that entity labels still match after merging tokens."""
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words = ["\n", "worda", ".", "\n", "wordb", "-", "Biosphere", "2", "-", " \n"]
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doc = Doc(Vocab(), words=words)
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doc.ents = [Span(doc, 6, 8, label=doc.vocab.strings["PRODUCT"])]
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with doc.retokenize() as retokenizer:
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retokenizer.merge(doc[5:7])
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assert [ent.text for ent in doc.ents]
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def test_issue1612(en_tokenizer):
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doc = en_tokenizer("The black cat purrs.")
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span = doc[1:3]
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assert span.orth_ == span.text
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def test_issue1654():
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nlp = Language(Vocab())
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assert not nlp.pipeline
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nlp.add_pipe(lambda doc: doc, name="1")
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nlp.add_pipe(lambda doc: doc, name="2", after="1")
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nlp.add_pipe(lambda doc: doc, name="3", after="2")
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assert nlp.pipe_names == ["1", "2", "3"]
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nlp2 = Language(Vocab())
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assert not nlp2.pipeline
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nlp2.add_pipe(lambda doc: doc, name="3")
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nlp2.add_pipe(lambda doc: doc, name="2", before="3")
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nlp2.add_pipe(lambda doc: doc, name="1", before="2")
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assert nlp2.pipe_names == ["1", "2", "3"]
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@pytest.mark.parametrize("text", ["test@example.com", "john.doe@example.co.uk"])
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def test_issue1698(en_tokenizer, text):
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doc = en_tokenizer(text)
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assert len(doc) == 1
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assert not doc[0].like_url
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def test_issue1727():
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"""Test that models with no pretrained vectors can be deserialized
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correctly after vectors are added."""
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data = numpy.ones((3, 300), dtype="f")
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vectors = Vectors(data=data, keys=["I", "am", "Matt"])
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tagger = Tagger(Vocab())
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tagger.add_label("PRP")
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tagger.begin_training()
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assert tagger.cfg.get("pretrained_dims", 0) == 0
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tagger.vocab.vectors = vectors
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with make_tempdir() as path:
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tagger.to_disk(path)
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tagger = Tagger(Vocab()).from_disk(path)
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assert tagger.cfg.get("pretrained_dims", 0) == 0
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def test_issue1757():
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"""Test comparison against None doesn't cause segfault."""
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doc = Doc(Vocab(), words=["a", "b", "c"])
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assert not doc[0] < None
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assert not doc[0] is None
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assert doc[0] >= None
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assert not doc[:2] < None
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assert not doc[:2] is None
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assert doc[:2] >= None
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assert not doc.vocab["a"] is None
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assert not doc.vocab["a"] < None
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def test_issue1758(en_tokenizer):
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"""Test that "would've" is handled by the English tokenizer exceptions."""
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tokens = en_tokenizer("would've")
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assert len(tokens) == 2
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assert tokens[0].tag_ == "MD"
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assert tokens[1].lemma_ == "have"
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def test_issue1773(en_tokenizer):
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"""Test that spaces don't receive a POS but no TAG. This is the root cause
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of the serialization issue reported in #1773."""
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doc = en_tokenizer("\n")
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if doc[0].pos_ == "SPACE":
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assert doc[0].tag_ != ""
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def test_issue1799():
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"""Test sentence boundaries are deserialized correctly, even for
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non-projective sentences."""
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heads_deps = numpy.asarray(
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[
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[1, 397],
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[4, 436],
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[2, 426],
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[1, 402],
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[0, 8206900633647566924],
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[18446744073709551615, 440],
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[18446744073709551614, 442],
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],
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dtype="uint64",
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)
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doc = Doc(Vocab(), words="Just what I was looking for .".split())
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doc.vocab.strings.add("ROOT")
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doc = doc.from_array([HEAD, DEP], heads_deps)
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assert len(list(doc.sents)) == 1
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def test_issue1807():
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"""Test vocab.set_vector also adds the word to the vocab."""
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vocab = Vocab()
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assert "hello" not in vocab
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vocab.set_vector("hello", numpy.ones((50,), dtype="f"))
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assert "hello" in vocab
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def test_issue1834():
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"""Test that sentence boundaries & parse/tag flags are not lost
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during serialization."""
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string = "This is a first sentence . And another one"
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doc = Doc(Vocab(), words=string.split())
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doc[6].sent_start = True
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new_doc = Doc(doc.vocab).from_bytes(doc.to_bytes())
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assert new_doc[6].sent_start
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assert not new_doc.is_parsed
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assert not new_doc.is_tagged
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doc.is_parsed = True
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doc.is_tagged = True
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new_doc = Doc(doc.vocab).from_bytes(doc.to_bytes())
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assert new_doc.is_parsed
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assert new_doc.is_tagged
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def test_issue1868():
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"""Test Vocab.__contains__ works with int keys."""
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vocab = Vocab()
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lex = vocab["hello"]
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assert lex.orth in vocab
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assert lex.orth_ in vocab
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assert "some string" not in vocab
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int_id = vocab.strings.add("some string")
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assert int_id not in vocab
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def test_issue1883():
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matcher = Matcher(Vocab())
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matcher.add("pat1", None, [{"orth": "hello"}])
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doc = Doc(matcher.vocab, words=["hello"])
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assert len(matcher(doc)) == 1
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new_matcher = copy.deepcopy(matcher)
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new_doc = Doc(new_matcher.vocab, words=["hello"])
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assert len(new_matcher(new_doc)) == 1
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@pytest.mark.parametrize("word", ["the"])
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def test_issue1889(word):
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assert is_stop(word, STOP_WORDS) == is_stop(word.upper(), STOP_WORDS)
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def test_issue1915():
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cfg = {"hidden_depth": 2} # should error out
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nlp = Language()
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nlp.add_pipe(nlp.create_pipe("ner"))
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nlp.get_pipe("ner").add_label("answer")
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with pytest.raises(ValueError):
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nlp.begin_training(**cfg)
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def test_issue1945():
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"""Test regression in Matcher introduced in v2.0.6."""
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matcher = Matcher(Vocab())
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matcher.add("MWE", None, [{"orth": "a"}, {"orth": "a"}])
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doc = Doc(matcher.vocab, words=["a", "a", "a"])
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matches = matcher(doc) # we should see two overlapping matches here
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assert len(matches) == 2
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assert matches[0][1:] == (0, 2)
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assert matches[1][1:] == (1, 3)
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def test_issue1963(en_tokenizer):
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"""Test that doc.merge() resizes doc.tensor"""
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doc = en_tokenizer("a b c d")
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doc.tensor = numpy.ones((len(doc), 128), dtype="f")
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with doc.retokenize() as retokenizer:
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retokenizer.merge(doc[0:2])
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assert len(doc) == 3
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assert doc.tensor.shape == (3, 128)
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@pytest.mark.parametrize("label", ["U-JOB-NAME"])
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def test_issue1967(label):
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ner = EntityRecognizer(Vocab())
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entry = ([0], ["word"], ["tag"], [0], ["dep"], [label])
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gold_parses = [(None, [(entry, None)])]
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ner.moves.get_actions(gold_parses=gold_parses)
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def test_issue1971(en_vocab):
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# Possibly related to #2675 and #2671?
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matcher = Matcher(en_vocab)
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pattern = [
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{"ORTH": "Doe"},
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{"ORTH": "!", "OP": "?"},
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{"_": {"optional": True}, "OP": "?"},
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{"ORTH": "!", "OP": "?"},
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]
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Token.set_extension("optional", default=False)
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matcher.add("TEST", None, pattern)
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doc = Doc(en_vocab, words=["Hello", "John", "Doe", "!"])
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# We could also assert length 1 here, but this is more conclusive, because
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# the real problem here is that it returns a duplicate match for a match_id
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# that's not actually in the vocab!
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matches = matcher(doc)
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assert all([match_id in en_vocab.strings for match_id, start, end in matches])
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def test_issue_1971_2(en_vocab):
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matcher = Matcher(en_vocab)
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pattern1 = [{"ORTH": "EUR", "LOWER": {"IN": ["eur"]}}, {"LIKE_NUM": True}]
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pattern2 = [{"LIKE_NUM": True}, {"ORTH": "EUR"}] # {"IN": ["EUR"]}}]
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doc = Doc(en_vocab, words=["EUR", "10", "is", "10", "EUR"])
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matcher.add("TEST1", None, pattern1, pattern2)
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matches = matcher(doc)
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assert len(matches) == 2
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def test_issue_1971_3(en_vocab):
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"""Test that pattern matches correctly for multiple extension attributes."""
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Token.set_extension("a", default=1, force=True)
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Token.set_extension("b", default=2, force=True)
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doc = Doc(en_vocab, words=["hello", "world"])
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matcher = Matcher(en_vocab)
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matcher.add("A", None, [{"_": {"a": 1}}])
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matcher.add("B", None, [{"_": {"b": 2}}])
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matches = sorted((en_vocab.strings[m_id], s, e) for m_id, s, e in matcher(doc))
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assert len(matches) == 4
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assert matches == sorted([("A", 0, 1), ("A", 1, 2), ("B", 0, 1), ("B", 1, 2)])
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def test_issue_1971_4(en_vocab):
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"""Test that pattern matches correctly with multiple extension attribute
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values on a single token.
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"""
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Token.set_extension("ext_a", default="str_a", force=True)
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Token.set_extension("ext_b", default="str_b", force=True)
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matcher = Matcher(en_vocab)
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doc = Doc(en_vocab, words=["this", "is", "text"])
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pattern = [{"_": {"ext_a": "str_a", "ext_b": "str_b"}}] * 3
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matcher.add("TEST", None, pattern)
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matches = matcher(doc)
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# Uncommenting this caused a segmentation fault
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assert len(matches) == 1
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assert matches[0] == (en_vocab.strings["TEST"], 0, 3)
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