# coding: utf-8 from __future__ import unicode_literals import pytest import re from spacy.tokens import Doc from spacy.vocab import Vocab from spacy.lang.en import English from spacy.lang.lex_attrs import LEX_ATTRS from spacy.matcher import Matcher from spacy.tokenizer import Tokenizer from spacy.lemmatizer import Lemmatizer from spacy.symbols import ORTH, LEMMA, POS, VERB, VerbForm_part @pytest.mark.xfail( reason="g is split of as a unit, as the suffix regular expression can not look back further (variable-width)" ) def test_issue1235(): """Test that g is not split of if preceded by a number and a letter""" nlp = English() testwords = u'e2g 2g 52g' doc = nlp(testwords) assert len(doc) == 5 assert doc[0].text == "e2g" assert doc[1].text == "2" assert doc[2].text == "g" assert doc[3].text == "52" assert doc[4].text == "g" def test_issue1242(): nlp = English() doc = nlp("") assert len(doc) == 0 docs = list(nlp.pipe(["", "hello"])) assert len(docs[0]) == 0 assert len(docs[1]) == 1 def test_issue1250(): """Test cached special cases.""" special_case = [{ORTH: "reimbur", LEMMA: "reimburse", POS: "VERB"}] nlp = English() nlp.tokenizer.add_special_case("reimbur", special_case) lemmas = [w.lemma_ for w in nlp("reimbur, reimbur...")] assert lemmas == ["reimburse", ",", "reimburse", "..."] lemmas = [w.lemma_ for w in nlp("reimbur, reimbur...")] assert lemmas == ["reimburse", ",", "reimburse", "..."] def test_issue1257(): """Test that tokens compare correctly.""" doc1 = Doc(Vocab(), words=["a", "b", "c"]) doc2 = Doc(Vocab(), words=["a", "c", "e"]) assert doc1[0] != doc2[0] assert not doc1[0] == doc2[0] def test_issue1375(): """Test that token.nbor() raises IndexError for out-of-bounds access.""" doc = Doc(Vocab(), words=["0", "1", "2"]) with pytest.raises(IndexError): assert doc[0].nbor(-1) assert doc[1].nbor(-1).text == "0" with pytest.raises(IndexError): assert doc[2].nbor(1) assert doc[1].nbor(1).text == "2" def test_issue1387(): tag_map = {"VBG": {POS: VERB, VerbForm_part: True}} index = {"verb": ("cope", "cop")} exc = {"verb": {"coping": ("cope",)}} rules = {"verb": [["ing", ""]]} lemmatizer = Lemmatizer(index, exc, rules) vocab = Vocab(lemmatizer=lemmatizer, tag_map=tag_map) doc = Doc(vocab, words=["coping"]) doc[0].tag_ = "VBG" assert doc[0].text == "coping" assert doc[0].lemma_ == "cope" def test_issue1434(): """Test matches occur when optional element at end of short doc.""" pattern = [{"ORTH": "Hello"}, {"IS_ALPHA": True, "OP": "?"}] vocab = Vocab(lex_attr_getters=LEX_ATTRS) hello_world = Doc(vocab, words=["Hello", "World"]) hello = Doc(vocab, words=["Hello"]) matcher = Matcher(vocab) matcher.add("MyMatcher", None, pattern) matches = matcher(hello_world) assert matches matches = matcher(hello) assert matches @pytest.mark.parametrize( "string,start,end", [ ("a", 0, 1), ("a b", 0, 2), ("a c", 0, 1), ("a b c", 0, 2), ("a b b c", 0, 3), ("a b b", 0, 3), ], ) def test_issue1450(string, start, end): """Test matcher works when patterns end with * operator.""" pattern = [{"ORTH": "a"}, {"ORTH": "b", "OP": "*"}] matcher = Matcher(Vocab()) matcher.add("TSTEND", None, pattern) doc = Doc(Vocab(), words=string.split()) matches = matcher(doc) if start is None or end is None: assert matches == [] assert matches[-1][1] == start assert matches[-1][2] == end def test_issue1488(): prefix_re = re.compile(r"""[\[\("']""") suffix_re = re.compile(r"""[\]\)"']""") infix_re = re.compile(r"""[-~\.]""") simple_url_re = re.compile(r"""^https?://""") def my_tokenizer(nlp): return Tokenizer( nlp.vocab, {}, prefix_search=prefix_re.search, suffix_search=suffix_re.search, infix_finditer=infix_re.finditer, token_match=simple_url_re.match, ) nlp = English() nlp.tokenizer = my_tokenizer(nlp) doc = nlp("This is a test.") for token in doc: assert token.text def test_issue1494(): infix_re = re.compile(r"""[^a-z]""") test_cases = [ ("token 123test", ["token", "1", "2", "3", "test"]), ("token 1test", ["token", "1test"]), ("hello...test", ["hello", ".", ".", ".", "test"]), ] def new_tokenizer(nlp): return Tokenizer(nlp.vocab, {}, infix_finditer=infix_re.finditer) nlp = English() nlp.tokenizer = new_tokenizer(nlp) for text, expected in test_cases: assert [token.text for token in nlp(text)] == expected