mirror of
https://github.com/explosion/spaCy.git
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299 lines
9.4 KiB
Python
299 lines
9.4 KiB
Python
import itertools
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import pytest
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from spacy.language import Language
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from spacy.tokens import Doc, Span
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from spacy.vocab import Vocab
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from spacy.training import Example
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from spacy.lang.en import English
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from spacy.lang.de import German
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from spacy.util import registry
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import spacy
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from .util import add_vecs_to_vocab, assert_docs_equal
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@pytest.fixture
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def nlp():
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nlp = Language(Vocab())
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textcat = nlp.add_pipe("textcat")
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for label in ("POSITIVE", "NEGATIVE"):
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textcat.add_label(label)
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nlp.initialize()
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return nlp
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def test_language_update(nlp):
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text = "hello world"
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annots = {"cats": {"POSITIVE": 1.0, "NEGATIVE": 0.0}}
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wrongkeyannots = {"LABEL": True}
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doc = Doc(nlp.vocab, words=text.split(" "))
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example = Example.from_dict(doc, annots)
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nlp.update([example])
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# Not allowed to call with just one Example
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with pytest.raises(TypeError):
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nlp.update(example)
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# Update with text and dict: not supported anymore since v.3
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with pytest.raises(TypeError):
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nlp.update((text, annots))
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# Update with doc object and dict
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with pytest.raises(TypeError):
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nlp.update((doc, annots))
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# Create examples badly
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with pytest.raises(ValueError):
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example = Example.from_dict(doc, None)
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with pytest.raises(KeyError):
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example = Example.from_dict(doc, wrongkeyannots)
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def test_language_evaluate(nlp):
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text = "hello world"
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annots = {"doc_annotation": {"cats": {"POSITIVE": 1.0, "NEGATIVE": 0.0}}}
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doc = Doc(nlp.vocab, words=text.split(" "))
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example = Example.from_dict(doc, annots)
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nlp.evaluate([example])
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# Not allowed to call with just one Example
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with pytest.raises(TypeError):
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nlp.evaluate(example)
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# Evaluate with text and dict: not supported anymore since v.3
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with pytest.raises(TypeError):
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nlp.evaluate([(text, annots)])
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# Evaluate with doc object and dict
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with pytest.raises(TypeError):
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nlp.evaluate([(doc, annots)])
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with pytest.raises(TypeError):
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nlp.evaluate([text, annots])
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def test_evaluate_no_pipe(nlp):
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"""Test that docs are processed correctly within Language.pipe if the
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component doesn't expose a .pipe method."""
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@Language.component("test_evaluate_no_pipe")
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def pipe(doc):
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return doc
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text = "hello world"
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annots = {"cats": {"POSITIVE": 1.0, "NEGATIVE": 0.0}}
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nlp = Language(Vocab())
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doc = nlp(text)
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nlp.add_pipe("test_evaluate_no_pipe")
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nlp.evaluate([Example.from_dict(doc, annots)])
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@Language.component("test_language_vector_modification_pipe")
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def vector_modification_pipe(doc):
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doc.vector += 1
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return doc
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@Language.component("test_language_userdata_pipe")
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def userdata_pipe(doc):
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doc.user_data["foo"] = "bar"
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return doc
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@Language.component("test_language_ner_pipe")
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def ner_pipe(doc):
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span = Span(doc, 0, 1, label="FIRST")
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doc.ents += (span,)
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return doc
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@pytest.fixture
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def sample_vectors():
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return [
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("spacy", [-0.1, -0.2, -0.3]),
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("world", [-0.2, -0.3, -0.4]),
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("pipe", [0.7, 0.8, 0.9]),
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]
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@pytest.fixture
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def nlp2(nlp, sample_vectors):
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add_vecs_to_vocab(nlp.vocab, sample_vectors)
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nlp.add_pipe("test_language_vector_modification_pipe")
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nlp.add_pipe("test_language_ner_pipe")
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nlp.add_pipe("test_language_userdata_pipe")
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return nlp
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@pytest.fixture
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def texts():
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data = [
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"Hello world.",
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"This is spacy.",
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"You can use multiprocessing with pipe method.",
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"Please try!",
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]
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return data
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@pytest.mark.parametrize("n_process", [1, 2])
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def test_language_pipe(nlp2, n_process, texts):
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texts = texts * 10
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expecteds = [nlp2(text) for text in texts]
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docs = nlp2.pipe(texts, n_process=n_process, batch_size=2)
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for doc, expected_doc in zip(docs, expecteds):
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assert_docs_equal(doc, expected_doc)
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@pytest.mark.parametrize("n_process", [1, 2])
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def test_language_pipe_stream(nlp2, n_process, texts):
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# check if nlp.pipe can handle infinite length iterator properly.
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stream_texts = itertools.cycle(texts)
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texts0, texts1 = itertools.tee(stream_texts)
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expecteds = (nlp2(text) for text in texts0)
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docs = nlp2.pipe(texts1, n_process=n_process, batch_size=2)
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n_fetch = 20
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for doc, expected_doc in itertools.islice(zip(docs, expecteds), n_fetch):
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assert_docs_equal(doc, expected_doc)
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def test_language_from_config_before_after_init():
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name = "test_language_from_config_before_after_init"
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ran_before = False
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ran_after = False
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ran_after_pipeline = False
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@registry.callbacks(f"{name}_before")
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def make_before_creation():
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def before_creation(lang_cls):
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nonlocal ran_before
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ran_before = True
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assert lang_cls is English
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lang_cls.Defaults.foo = "bar"
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return lang_cls
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return before_creation
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@registry.callbacks(f"{name}_after")
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def make_after_creation():
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def after_creation(nlp):
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nonlocal ran_after
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ran_after = True
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assert isinstance(nlp, English)
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assert nlp.pipe_names == []
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assert nlp.Defaults.foo == "bar"
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nlp.meta["foo"] = "bar"
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return nlp
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return after_creation
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@registry.callbacks(f"{name}_after_pipeline")
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def make_after_pipeline_creation():
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def after_pipeline_creation(nlp):
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nonlocal ran_after_pipeline
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ran_after_pipeline = True
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assert isinstance(nlp, English)
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assert nlp.pipe_names == ["sentencizer"]
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assert nlp.Defaults.foo == "bar"
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assert nlp.meta["foo"] == "bar"
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nlp.meta["bar"] = "baz"
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return nlp
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return after_pipeline_creation
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config = {
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"nlp": {
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"pipeline": ["sentencizer"],
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"before_creation": {"@callbacks": f"{name}_before"},
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"after_creation": {"@callbacks": f"{name}_after"},
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"after_pipeline_creation": {"@callbacks": f"{name}_after_pipeline"},
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},
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"components": {"sentencizer": {"factory": "sentencizer"}},
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}
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nlp = English.from_config(config)
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assert all([ran_before, ran_after, ran_after_pipeline])
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assert nlp.Defaults.foo == "bar"
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assert nlp.meta["foo"] == "bar"
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assert nlp.meta["bar"] == "baz"
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assert nlp.pipe_names == ["sentencizer"]
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assert nlp("text")
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def test_language_from_config_before_after_init_invalid():
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"""Check that an error is raised if function doesn't return nlp."""
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name = "test_language_from_config_before_after_init_invalid"
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registry.callbacks(f"{name}_before1", func=lambda: lambda nlp: None)
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registry.callbacks(f"{name}_before2", func=lambda: lambda nlp: nlp())
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registry.callbacks(f"{name}_after1", func=lambda: lambda nlp: None)
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registry.callbacks(f"{name}_after1", func=lambda: lambda nlp: English)
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for callback_name in [f"{name}_before1", f"{name}_before2"]:
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config = {"nlp": {"before_creation": {"@callbacks": callback_name}}}
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with pytest.raises(ValueError):
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English.from_config(config)
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for callback_name in [f"{name}_after1", f"{name}_after2"]:
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config = {"nlp": {"after_creation": {"@callbacks": callback_name}}}
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with pytest.raises(ValueError):
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English.from_config(config)
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for callback_name in [f"{name}_after1", f"{name}_after2"]:
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config = {"nlp": {"after_pipeline_creation": {"@callbacks": callback_name}}}
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with pytest.raises(ValueError):
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English.from_config(config)
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def test_language_custom_tokenizer():
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"""Test that a fully custom tokenizer can be plugged in via the registry."""
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name = "test_language_custom_tokenizer"
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class CustomTokenizer:
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"""Dummy "tokenizer" that splits on spaces and adds prefix to each word."""
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def __init__(self, nlp, prefix):
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self.vocab = nlp.vocab
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self.prefix = prefix
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def __call__(self, text):
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words = [f"{self.prefix}{word}" for word in text.split(" ")]
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return Doc(self.vocab, words=words)
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@registry.tokenizers(name)
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def custom_create_tokenizer(prefix: str = "_"):
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def create_tokenizer(nlp):
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return CustomTokenizer(nlp, prefix=prefix)
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return create_tokenizer
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config = {"nlp": {"tokenizer": {"@tokenizers": name}}}
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nlp = English.from_config(config)
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doc = nlp("hello world")
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assert [t.text for t in doc] == ["_hello", "_world"]
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doc = list(nlp.pipe(["hello world"]))[0]
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assert [t.text for t in doc] == ["_hello", "_world"]
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def test_language_from_config_invalid_lang():
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"""Test that calling Language.from_config raises an error and lang defined
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in config needs to match language-specific subclasses."""
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config = {"nlp": {"lang": "en"}}
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with pytest.raises(ValueError):
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Language.from_config(config)
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with pytest.raises(ValueError):
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German.from_config(config)
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def test_spacy_blank():
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nlp = spacy.blank("en")
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assert nlp.config["training"]["dropout"] == 0.1
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config = {"training": {"dropout": 0.2}}
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meta = {"name": "my_custom_model"}
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nlp = spacy.blank("en", config=config, meta=meta)
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assert nlp.config["training"]["dropout"] == 0.2
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assert nlp.meta["name"] == "my_custom_model"
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@pytest.mark.parametrize("value", [False, None, ["x", "y"], Language, Vocab])
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def test_language_init_invalid_vocab(value):
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err_fragment = "invalid value"
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with pytest.raises(ValueError) as e:
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Language(value)
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assert err_fragment in str(e.value)
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