mirror of
https://github.com/explosion/spaCy.git
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98a916e01a
* Make stable private modules public and adjust names * `spacy.ml._character_embed` -> `spacy.ml.character_embed` * `spacy.ml._precomputable_affine` -> `spacy.ml.precomputable_affine` * `spacy.tokens._serialize` -> `spacy.tokens.doc_bin` * `spacy.tokens._retokenize` -> `spacy.tokens.retokenize` * `spacy.tokens._dict_proxies` -> `spacy.tokens.span_groups` * Skip _precomputable_affine * retokenize -> retokenizer * Fix imports
110 lines
3.8 KiB
Python
110 lines
3.8 KiB
Python
from typing import List
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import numpy
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import pytest
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from numpy.testing import assert_almost_equal
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from spacy.vocab import Vocab
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from thinc.api import Model, data_validation, get_current_ops
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from thinc.types import Array2d, Ragged
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from spacy.lang.en import English
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from spacy.ml import FeatureExtractor, StaticVectors
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from spacy.ml.character_embed import CharacterEmbed
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from spacy.tokens import Doc
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OPS = get_current_ops()
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texts = ["These are 4 words", "Here just three"]
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l0 = [[1, 2], [3, 4], [5, 6], [7, 8]]
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l1 = [[9, 8], [7, 6], [5, 4]]
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list_floats = [OPS.xp.asarray(l0, dtype="f"), OPS.xp.asarray(l1, dtype="f")]
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list_ints = [OPS.xp.asarray(l0, dtype="i"), OPS.xp.asarray(l1, dtype="i")]
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array = OPS.xp.asarray(l1, dtype="f")
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ragged = Ragged(array, OPS.xp.asarray([2, 1], dtype="i"))
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def get_docs():
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vocab = Vocab()
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for t in texts:
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for word in t.split():
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hash_id = vocab.strings.add(word)
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vector = numpy.random.uniform(-1, 1, (7,))
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vocab.set_vector(hash_id, vector)
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docs = [English(vocab)(t) for t in texts]
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return docs
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# Test components with a model of type Model[List[Doc], List[Floats2d]]
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@pytest.mark.parametrize("name", ["tagger", "tok2vec", "morphologizer", "senter"])
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def test_components_batching_list(name):
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nlp = English()
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proc = nlp.create_pipe(name)
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util_batch_unbatch_docs_list(proc.model, get_docs(), list_floats)
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# Test components with a model of type Model[List[Doc], Floats2d]
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@pytest.mark.parametrize("name", ["textcat"])
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def test_components_batching_array(name):
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nlp = English()
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proc = nlp.create_pipe(name)
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util_batch_unbatch_docs_array(proc.model, get_docs(), array)
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LAYERS = [
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(CharacterEmbed(nM=5, nC=3), get_docs(), list_floats),
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(FeatureExtractor([100, 200]), get_docs(), list_ints),
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(StaticVectors(), get_docs(), ragged),
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]
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@pytest.mark.parametrize("model,in_data,out_data", LAYERS)
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def test_layers_batching_all(model, in_data, out_data):
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# In = List[Doc]
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if isinstance(in_data, list) and isinstance(in_data[0], Doc):
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if isinstance(out_data, OPS.xp.ndarray) and out_data.ndim == 2:
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util_batch_unbatch_docs_array(model, in_data, out_data)
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elif (
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isinstance(out_data, list)
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and isinstance(out_data[0], OPS.xp.ndarray)
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and out_data[0].ndim == 2
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):
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util_batch_unbatch_docs_list(model, in_data, out_data)
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elif isinstance(out_data, Ragged):
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util_batch_unbatch_docs_ragged(model, in_data, out_data)
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def util_batch_unbatch_docs_list(
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model: Model[List[Doc], List[Array2d]], in_data: List[Doc], out_data: List[Array2d]
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):
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with data_validation(True):
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model.initialize(in_data, out_data)
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Y_batched = model.predict(in_data)
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Y_not_batched = [model.predict([u])[0] for u in in_data]
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for i in range(len(Y_batched)):
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assert_almost_equal(
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OPS.to_numpy(Y_batched[i]), OPS.to_numpy(Y_not_batched[i]), decimal=4
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)
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def util_batch_unbatch_docs_array(
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model: Model[List[Doc], Array2d], in_data: List[Doc], out_data: Array2d
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):
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with data_validation(True):
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model.initialize(in_data, out_data)
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Y_batched = model.predict(in_data).tolist()
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Y_not_batched = [model.predict([u])[0].tolist() for u in in_data]
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assert_almost_equal(Y_batched, Y_not_batched, decimal=4)
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def util_batch_unbatch_docs_ragged(
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model: Model[List[Doc], Ragged], in_data: List[Doc], out_data: Ragged
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):
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with data_validation(True):
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model.initialize(in_data, out_data)
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Y_batched = model.predict(in_data).data.tolist()
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Y_not_batched = []
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for u in in_data:
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Y_not_batched.extend(model.predict([u]).data.tolist())
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assert_almost_equal(Y_batched, Y_not_batched, decimal=4)
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