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			174 lines
		
	
	
		
			4.7 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			174 lines
		
	
	
		
			4.7 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
from __future__ import unicode_literals
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import pytest
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@pytest.mark.xfail
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def test_example_war_and_peace(nlp):
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    # from spacy.en import English
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    from spacy._doc_examples import download_war_and_peace
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    unprocessed_unicode = download_war_and_peace()
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    # nlp = English()
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    # TODO: ImportError: No module named _doc_examples
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    doc = nlp(unprocessed_unicode)
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def test_main_entry_point(nlp):
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    # from spacy.en import English
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    # nlp = English()
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    doc = nlp('Some text.') # Applies tagger, parser, entity
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    doc = nlp('Some text.', parse=False) # Applies tagger and entity, not parser
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    doc = nlp('Some text.', entity=False) # Applies tagger and parser, not entity
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    doc = nlp('Some text.', tag=False) # Does not apply tagger, entity or parser
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    doc = nlp('') # Zero-length tokens, not an error
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    # doc = nlp(b'Some text') <-- Error: need unicode
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    doc = nlp(b'Some text'.decode('utf8')) # Encode to unicode first.
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@pytest.mark.models
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def test_sentence_spans(nlp):
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    # from spacy.en import English
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    # nlp = English()
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    doc = nlp("This is a sentence. Here's another...")
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    assert [s.root.orth_ for s in doc.sents] == ["is", "'s"]
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@pytest.mark.models
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def test_entity_spans(nlp):
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    # from spacy.en import English
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    # nlp = English()
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    tokens = nlp('Mr. Best flew to New York on Saturday morning.')
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    ents = list(tokens.ents)
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    assert ents[0].label == 346
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    assert ents[0].label_ == 'PERSON'
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    assert ents[0].orth_ == 'Best'
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    assert ents[0].string == ents[0].string
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@pytest.mark.models
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def test_noun_chunk_spans(nlp):
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    # from spacy.en import English
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    # nlp = English()
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    doc = nlp('The sentence in this example has three noun chunks.')
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    for chunk in doc.noun_chunks:
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        print(chunk.label, chunk.orth_, '<--', chunk.root.head.orth_)
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    # NP The sentence <-- has
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    # NP this example <-- in
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    # NP three noun chunks <-- has
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@pytest.mark.models
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def test_count_by(nlp):
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    # from spacy.en import English, attrs
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    # nlp = English()
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    import numpy
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    from spacy import attrs
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    tokens = nlp('apple apple orange banana')
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    assert tokens.count_by(attrs.ORTH) == {3699: 2, 3750: 1, 5965: 1}
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    assert repr(tokens.to_array([attrs.ORTH])) == repr(numpy.array([[3699],
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                                                        [3699],
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                                                        [3750],
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                                                        [5965]], dtype=numpy.int32))
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@pytest.mark.models
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def test_read_bytes(nlp):
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    from spacy.tokens.doc import Doc
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    loc = '/tmp/test_serialize.bin'
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    with open(loc, 'wb') as file_:
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        file_.write(nlp(u'This is a document.').to_bytes())
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        file_.write(nlp(u'This is another.').to_bytes())
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    docs = []
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    with open(loc, 'rb') as file_:
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        for byte_string in Doc.read_bytes(file_):
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            docs.append(Doc(nlp.vocab).from_bytes(byte_string))
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    assert len(docs) == 2
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def test_token_span(doc):
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    span = doc[4:6]
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    token = span[0]
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    assert token.i == 4
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@pytest.mark.models
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def test_example_i_like_new_york1(nlp):
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    toks = nlp('I like New York in Autumn.')
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@pytest.fixture
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def toks(nlp):
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    return nlp('I like New York in Autumn.')
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def test_example_i_like_new_york2(toks):
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    i, like, new, york, in_, autumn, dot = range(len(toks))
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@pytest.fixture
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def tok(toks, tok):
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    i, like, new, york, in_, autumn, dot = range(len(toks))
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    return locals()[tok]
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@pytest.fixture
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def new(toks):
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    return tok(toks, "new")
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@pytest.fixture
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def york(toks):
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    return tok(toks, "york")
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@pytest.fixture
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def autumn(toks):
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    return tok(toks, "autumn")
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@pytest.fixture
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def dot(toks):
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    return tok(toks, "dot")
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@pytest.mark.models
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def test_example_i_like_new_york3(toks, new, york):
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    assert toks[new].head.orth_ == 'York'
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    assert toks[york].head.orth_ == 'like'
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@pytest.mark.models
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def test_example_i_like_new_york4(toks, new, york):
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    new_york = toks[new:york+1]
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    assert new_york.root.orth_ == 'York'
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@pytest.mark.models
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def test_example_i_like_new_york5(toks, autumn, dot):
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    assert toks[autumn].head.orth_ == 'in'
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    assert toks[dot].head.orth_ == 'like'
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    autumn_dot = toks[autumn:]
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    assert autumn_dot.root.orth_ == 'Autumn'
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@pytest.mark.models
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def test_navigating_the_parse_tree_lefts(doc):
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    # TODO: where does the span object come from?
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    span = doc[:2]
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    lefts = [span.doc[i] for i in range(0, span.start)
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             if span.doc[i].head in span]
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@pytest.mark.models
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def test_navigating_the_parse_tree_rights(doc):
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    span = doc[:2]
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    rights = [span.doc[i] for i in range(span.end, len(span.doc))
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              if span.doc[i].head in span]
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def test_string_store(doc):
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    string_store = doc.vocab.strings
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    for i, string in enumerate(string_store):
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        assert i == string_store[string]
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