spaCy/spacy/tests/serialize/test_serialization.py

118 lines
3.3 KiB
Python

from __future__ import unicode_literals
import pytest
from spacy.tokens import Doc
import spacy.en
from spacy.serialize.packer import Packer
def equal(doc1, doc2):
# tokens
assert [ t.orth for t in doc1 ] == [ t.orth for t in doc2 ]
# tags
assert [ t.pos for t in doc1 ] == [ t.pos for t in doc2 ]
assert [ t.tag for t in doc1 ] == [ t.tag for t in doc2 ]
# parse
assert [ t.head.i for t in doc1 ] == [ t.head.i for t in doc2 ]
assert [ t.dep for t in doc1 ] == [ t.dep for t in doc2 ]
if doc1.is_parsed and doc2.is_parsed:
assert [ s for s in doc1.sents ] == [ s for s in doc2.sents ]
# entities
assert [ t.ent_type for t in doc1 ] == [ t.ent_type for t in doc2 ]
assert [ t.ent_iob for t in doc1 ] == [ t.ent_iob for t in doc2 ]
assert [ ent for ent in doc1.ents ] == [ ent for ent in doc2.ents ]
@pytest.mark.models
def test_serialize_tokens(EN):
doc1 = EN(u'This is a test sentence.',tag=False, parse=False, entity=False)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
@pytest.mark.models
def test_serialize_tokens_tags(EN):
doc1 = EN(u'This is a test sentence.',tag=True, parse=False, entity=False)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
@pytest.mark.models
def test_serialize_tokens_parse(EN):
doc1 = EN(u'This is a test sentence.',tag=False, parse=True, entity=False)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
@pytest.mark.models
def test_serialize_tokens_ner(EN):
doc1 = EN(u'This is a test sentence.', tag=False, parse=False, entity=True)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
@pytest.mark.models
def test_serialize_tokens_tags_parse(EN):
doc1 = EN(u'This is a test sentence.', tag=True, parse=True, entity=False)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
@pytest.mark.models
def test_serialize_tokens_tags_ner(EN):
doc1 = EN(u'This is a test sentence.', tag=True, parse=False, entity=True)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
@pytest.mark.models
def test_serialize_tokens_ner_parse(EN):
doc1 = EN(u'This is a test sentence.', tag=False, parse=True, entity=True)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
@pytest.mark.models
def test_serialize_tokens_tags_parse_ner(EN):
doc1 = EN(u'This is a test sentence.', tag=True, parse=True, entity=True)
doc2 = Doc(EN.vocab).from_bytes(doc1.to_bytes())
equal(doc1, doc2)
def test_serialize_empty_doc():
vocab = spacy.en.English.Defaults.create_vocab()
doc = Doc(vocab)
packer = Packer(vocab, {})
b = packer.pack(doc)
assert b == b''
loaded = Doc(vocab).from_bytes(b)
assert len(loaded) == 0
def test_serialize_after_adding_entity():
# Re issue #514
vocab = spacy.en.English.Defaults.create_vocab()
entity_recognizer = spacy.en.English.Defaults.create_entity()
doc = Doc(vocab, words=u'This is a sentence about pasta .'.split())
entity_recognizer.add_label('Food')
entity_recognizer(doc)
label_id = vocab.strings[u'Food']
doc.ents = [(label_id, 5,6)]
assert [(ent.label_, ent.text) for ent in doc.ents] == [(u'Food', u'pasta')]
byte_string = doc.to_bytes()