import pytest from mock import Mock from spacy.matcher import DependencyMatcher from spacy.tokens import Doc, Span, DocBin from spacy.gold import Example from spacy.gold.converters.conllu2docs import conllu2docs from spacy.lang.en import English from spacy.kb import KnowledgeBase from spacy.vocab import Vocab from spacy.language import Language from spacy.util import ensure_path, load_model_from_path import numpy import pickle from ..util import get_doc, make_tempdir def test_issue4528(en_vocab): """Test that user_data is correctly serialized in DocBin.""" doc = Doc(en_vocab, words=["hello", "world"]) doc.user_data["foo"] = "bar" # This is how extension attribute values are stored in the user data doc.user_data[("._.", "foo", None, None)] = "bar" doc_bin = DocBin(store_user_data=True) doc_bin.add(doc) doc_bin_bytes = doc_bin.to_bytes() new_doc_bin = DocBin(store_user_data=True).from_bytes(doc_bin_bytes) new_doc = list(new_doc_bin.get_docs(en_vocab))[0] assert new_doc.user_data["foo"] == "bar" assert new_doc.user_data[("._.", "foo", None, None)] == "bar" @pytest.mark.parametrize( "text,words", [("A'B C", ["A", "'", "B", "C"]), ("A-B", ["A-B"])] ) def test_gold_misaligned(en_tokenizer, text, words): doc = en_tokenizer(text) Example.from_dict(doc, {"words": words}) def test_issue4590(en_vocab): """Test that matches param in on_match method are the same as matches run with no on_match method""" pattern = [ {"SPEC": {"NODE_NAME": "jumped"}, "PATTERN": {"ORTH": "jumped"}}, { "SPEC": {"NODE_NAME": "fox", "NBOR_RELOP": ">", "NBOR_NAME": "jumped"}, "PATTERN": {"ORTH": "fox"}, }, { "SPEC": {"NODE_NAME": "quick", "NBOR_RELOP": ".", "NBOR_NAME": "jumped"}, "PATTERN": {"ORTH": "fox"}, }, ] on_match = Mock() matcher = DependencyMatcher(en_vocab) matcher.add("pattern", on_match, pattern) text = "The quick brown fox jumped over the lazy fox" heads = [3, 2, 1, 1, 0, -1, 2, 1, -3] deps = ["det", "amod", "amod", "nsubj", "ROOT", "prep", "det", "amod", "pobj"] doc = get_doc(en_vocab, text.split(), heads=heads, deps=deps) matches = matcher(doc) on_match_args = on_match.call_args assert on_match_args[0][3] == matches def test_issue4651_with_phrase_matcher_attr(): """Test that the EntityRuler PhraseMatcher is deserialized correctly using the method from_disk when the EntityRuler argument phrase_matcher_attr is specified. """ text = "Spacy is a python library for nlp" nlp = English() patterns = [{"label": "PYTHON_LIB", "pattern": "spacy", "id": "spaCy"}] ruler = nlp.add_pipe("entity_ruler", config={"phrase_matcher_attr": "LOWER"}) ruler.add_patterns(patterns) doc = nlp(text) res = [(ent.text, ent.label_, ent.ent_id_) for ent in doc.ents] nlp_reloaded = English() with make_tempdir() as d: file_path = d / "entityruler" ruler.to_disk(file_path) nlp_reloaded.add_pipe("entity_ruler").from_disk(file_path) doc_reloaded = nlp_reloaded(text) res_reloaded = [(ent.text, ent.label_, ent.ent_id_) for ent in doc_reloaded.ents] assert res == res_reloaded def test_issue4651_without_phrase_matcher_attr(): """Test that the EntityRuler PhraseMatcher is deserialized correctly using the method from_disk when the EntityRuler argument phrase_matcher_attr is not specified. """ text = "Spacy is a python library for nlp" nlp = English() patterns = [{"label": "PYTHON_LIB", "pattern": "spacy", "id": "spaCy"}] ruler = nlp.add_pipe("entity_ruler") ruler.add_patterns(patterns) doc = nlp(text) res = [(ent.text, ent.label_, ent.ent_id_) for ent in doc.ents] nlp_reloaded = English() with make_tempdir() as d: file_path = d / "entityruler" ruler.to_disk(file_path) nlp_reloaded.add_pipe("entity_ruler").from_disk(file_path) doc_reloaded = nlp_reloaded(text) res_reloaded = [(ent.text, ent.label_, ent.ent_id_) for ent in doc_reloaded.ents] assert res == res_reloaded def test_issue4665(): """ conllu2json should not raise an exception if the HEAD column contains an underscore """ input_data = """ 1 [ _ PUNCT -LRB- _ _ punct _ _ 2 This _ DET DT _ _ det _ _ 3 killing _ NOUN NN _ _ nsubj _ _ 4 of _ ADP IN _ _ case _ _ 5 a _ DET DT _ _ det _ _ 6 respected _ ADJ JJ _ _ amod _ _ 7 cleric _ NOUN NN _ _ nmod _ _ 8 will _ AUX MD _ _ aux _ _ 9 be _ AUX VB _ _ aux _ _ 10 causing _ VERB VBG _ _ root _ _ 11 us _ PRON PRP _ _ iobj _ _ 12 trouble _ NOUN NN _ _ dobj _ _ 13 for _ ADP IN _ _ case _ _ 14 years _ NOUN NNS _ _ nmod _ _ 15 to _ PART TO _ _ mark _ _ 16 come _ VERB VB _ _ acl _ _ 17 . _ PUNCT . _ _ punct _ _ 18 ] _ PUNCT -RRB- _ _ punct _ _ """ conllu2docs(input_data) def test_issue4674(): """Test that setting entities with overlapping identifiers does not mess up IO""" nlp = English() kb = KnowledgeBase(nlp.vocab, entity_vector_length=3) vector1 = [0.9, 1.1, 1.01] vector2 = [1.8, 2.25, 2.01] with pytest.warns(UserWarning): kb.set_entities( entity_list=["Q1", "Q1"], freq_list=[32, 111], vector_list=[vector1, vector2], ) assert kb.get_size_entities() == 1 # dumping to file & loading back in with make_tempdir() as d: dir_path = ensure_path(d) if not dir_path.exists(): dir_path.mkdir() file_path = dir_path / "kb" kb.to_disk(str(file_path)) kb2 = KnowledgeBase(nlp.vocab, entity_vector_length=3) kb2.from_disk(str(file_path)) assert kb2.get_size_entities() == 1 def test_issue4707(): """Tests that disabled component names are also excluded from nlp.from_disk by default when loading a model. """ nlp = English() nlp.add_pipe("sentencizer") nlp.add_pipe("entity_ruler") assert nlp.pipe_names == ["sentencizer", "entity_ruler"] exclude = ["tokenizer", "sentencizer"] with make_tempdir() as tmpdir: nlp.to_disk(tmpdir, exclude=exclude) new_nlp = load_model_from_path(tmpdir, disable=exclude) assert "sentencizer" not in new_nlp.pipe_names assert "entity_ruler" in new_nlp.pipe_names def test_issue4725_1(): """ Ensure the pickling of the NER goes well""" vocab = Vocab(vectors_name="test_vocab_add_vector") nlp = English(vocab=vocab) config = { "update_with_oracle_cut_size": 111, } ner = nlp.create_pipe("ner", config=config) with make_tempdir() as tmp_path: with (tmp_path / "ner.pkl").open("wb") as file_: pickle.dump(ner, file_) assert ner.cfg["update_with_oracle_cut_size"] == 111 with (tmp_path / "ner.pkl").open("rb") as file_: ner2 = pickle.load(file_) assert ner2.cfg["update_with_oracle_cut_size"] == 111 def test_issue4725_2(): # ensures that this runs correctly and doesn't hang or crash because of the global vectors # if it does crash, it's usually because of calling 'spawn' for multiprocessing (e.g. on Windows), # or because of issues with pickling the NER (cf test_issue4725_1) vocab = Vocab(vectors_name="test_vocab_add_vector") data = numpy.ndarray((5, 3), dtype="f") data[0] = 1.0 data[1] = 2.0 vocab.set_vector("cat", data[0]) vocab.set_vector("dog", data[1]) nlp = English(vocab=vocab) nlp.add_pipe("ner") nlp.begin_training() docs = ["Kurt is in London."] * 10 for _ in nlp.pipe(docs, batch_size=2, n_process=2): pass def test_issue4849(): nlp = English() patterns = [ {"label": "PERSON", "pattern": "joe biden", "id": "joe-biden"}, {"label": "PERSON", "pattern": "bernie sanders", "id": "bernie-sanders"}, ] ruler = nlp.add_pipe("entity_ruler", config={"phrase_matcher_attr": "LOWER"}) ruler.add_patterns(patterns) text = """ The left is starting to take aim at Democratic front-runner Joe Biden. Sen. Bernie Sanders joined in her criticism: "There is no 'middle ground' when it comes to climate policy." """ # USING 1 PROCESS count_ents = 0 for doc in nlp.pipe([text], n_process=1): count_ents += len([ent for ent in doc.ents if ent.ent_id > 0]) assert count_ents == 2 # USING 2 PROCESSES count_ents = 0 for doc in nlp.pipe([text], n_process=2): count_ents += len([ent for ent in doc.ents if ent.ent_id > 0]) assert count_ents == 2 @Language.factory("my_pipe") class CustomPipe: def __init__(self, nlp, name="my_pipe"): self.name = name Span.set_extension("my_ext", getter=self._get_my_ext) Doc.set_extension("my_ext", default=None) def __call__(self, doc): gathered_ext = [] for sent in doc.sents: sent_ext = self._get_my_ext(sent) sent._.set("my_ext", sent_ext) gathered_ext.append(sent_ext) doc._.set("my_ext", "\n".join(gathered_ext)) return doc @staticmethod def _get_my_ext(span): return str(span.end) def test_issue4903(): """Ensure that this runs correctly and doesn't hang or crash on Windows / macOS.""" nlp = English() nlp.add_pipe("sentencizer") nlp.add_pipe("my_pipe", after="sentencizer") text = ["I like bananas.", "Do you like them?", "No, I prefer wasabi."] docs = list(nlp.pipe(text, n_process=2)) assert docs[0].text == "I like bananas." assert docs[1].text == "Do you like them?" assert docs[2].text == "No, I prefer wasabi." def test_issue4924(): nlp = Language() example = Example.from_dict(nlp.make_doc(""), {}) nlp.evaluate([example])