import numpy from spacy.tokens import Doc, DocBin from spacy.attrs import DEP, POS, TAG from spacy.lang.en import English from spacy.language import Language from spacy.lang.en.syntax_iterators import noun_chunks from spacy.vocab import Vocab import spacy import pytest from ...util import make_tempdir def test_issue5048(en_vocab): words = ["This", "is", "a", "sentence"] pos_s = ["DET", "VERB", "DET", "NOUN"] spaces = [" ", " ", " ", ""] deps_s = ["dep", "adj", "nn", "atm"] tags_s = ["DT", "VBZ", "DT", "NN"] strings = en_vocab.strings for w in words: strings.add(w) deps = [strings.add(d) for d in deps_s] pos = [strings.add(p) for p in pos_s] tags = [strings.add(t) for t in tags_s] attrs = [POS, DEP, TAG] array = numpy.array(list(zip(pos, deps, tags)), dtype="uint64") doc = Doc(en_vocab, words=words, spaces=spaces) doc.from_array(attrs, array) v1 = [(token.text, token.pos_, token.tag_) for token in doc] doc2 = Doc(en_vocab, words=words, pos=pos_s, deps=deps_s, tags=tags_s) v2 = [(token.text, token.pos_, token.tag_) for token in doc2] assert v1 == v2 def test_issue5082(): # Ensure the 'merge_entities' pipeline does something sensible for the vectors of the merged tokens nlp = English() vocab = nlp.vocab array1 = numpy.asarray([0.1, 0.5, 0.8], dtype=numpy.float32) array2 = numpy.asarray([-0.2, -0.6, -0.9], dtype=numpy.float32) array3 = numpy.asarray([0.3, -0.1, 0.7], dtype=numpy.float32) array4 = numpy.asarray([0.5, 0, 0.3], dtype=numpy.float32) array34 = numpy.asarray([0.4, -0.05, 0.5], dtype=numpy.float32) vocab.set_vector("I", array1) vocab.set_vector("like", array2) vocab.set_vector("David", array3) vocab.set_vector("Bowie", array4) text = "I like David Bowie" patterns = [ {"label": "PERSON", "pattern": [{"LOWER": "david"}, {"LOWER": "bowie"}]} ] ruler = nlp.add_pipe("entity_ruler") ruler.add_patterns(patterns) parsed_vectors_1 = [t.vector for t in nlp(text)] assert len(parsed_vectors_1) == 4 numpy.testing.assert_array_equal(parsed_vectors_1[0], array1) numpy.testing.assert_array_equal(parsed_vectors_1[1], array2) numpy.testing.assert_array_equal(parsed_vectors_1[2], array3) numpy.testing.assert_array_equal(parsed_vectors_1[3], array4) nlp.add_pipe("merge_entities") parsed_vectors_2 = [t.vector for t in nlp(text)] assert len(parsed_vectors_2) == 3 numpy.testing.assert_array_equal(parsed_vectors_2[0], array1) numpy.testing.assert_array_equal(parsed_vectors_2[1], array2) numpy.testing.assert_array_equal(parsed_vectors_2[2], array34) def test_issue5137(): @Language.factory("my_component") class MyComponent: def __init__(self, nlp, name="my_component", categories="all_categories"): self.nlp = nlp self.categories = categories self.name = name def __call__(self, doc): pass def to_disk(self, path, **kwargs): pass def from_disk(self, path, **cfg): pass nlp = English() my_component = nlp.add_pipe("my_component") assert my_component.categories == "all_categories" with make_tempdir() as tmpdir: nlp.to_disk(tmpdir) overrides = {"components": {"my_component": {"categories": "my_categories"}}} nlp2 = spacy.load(tmpdir, config=overrides) assert nlp2.get_pipe("my_component").categories == "my_categories" def test_issue5141(en_vocab): """ Ensure an empty DocBin does not crash on serialization """ doc_bin = DocBin(attrs=["DEP", "HEAD"]) assert list(doc_bin.get_docs(en_vocab)) == [] doc_bin_bytes = doc_bin.to_bytes() doc_bin_2 = DocBin().from_bytes(doc_bin_bytes) assert list(doc_bin_2.get_docs(en_vocab)) == [] def test_issue5152(): # Test that the comparison between a Span and a Token, goes well # There was a bug when the number of tokens in the span equaled the number of characters in the token (!) nlp = English() text = nlp("Talk about being boring!") text_var = nlp("Talk of being boring!") y = nlp("Let") span = text[0:3] # Talk about being span_2 = text[0:3] # Talk about being span_3 = text_var[0:3] # Talk of being token = y[0] # Let with pytest.warns(UserWarning): assert span.similarity(token) == 0.0 assert span.similarity(span_2) == 1.0 with pytest.warns(UserWarning): assert span_2.similarity(span_3) < 1.0 def test_issue5458(): # Test that the noun chuncker does not generate overlapping spans # fmt: off words = ["In", "an", "era", "where", "markets", "have", "brought", "prosperity", "and", "empowerment", "."] vocab = Vocab(strings=words) deps = ["ROOT", "det", "pobj", "advmod", "nsubj", "aux", "relcl", "dobj", "cc", "conj", "punct"] pos = ["ADP", "DET", "NOUN", "ADV", "NOUN", "AUX", "VERB", "NOUN", "CCONJ", "NOUN", "PUNCT"] heads = [0, 2, 0, 9, 6, 6, 2, 6, 7, 7, 0] # fmt: on en_doc = Doc(vocab, words=words, pos=pos, heads=heads, deps=deps) en_doc.noun_chunks_iterator = noun_chunks # if there are overlapping spans, this will fail with an E102 error "Can't merge non-disjoint spans" nlp = English() merge_nps = nlp.create_pipe("merge_noun_chunks") merge_nps(en_doc)