185 lines
6.2 KiB
Python
185 lines
6.2 KiB
Python
import pytest
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from pydantic import ValidationError
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# ── Models ──────────────────────────────────────────────────────────────────
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def test_parse_request_valid():
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from models import ParseRequest
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req = ParseRequest(query="Briefe von Opa", lang="de")
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assert req.query == "Briefe von Opa"
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assert req.lang == "de"
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def test_parse_request_rejects_unknown_lang():
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from models import ParseRequest
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with pytest.raises(ValidationError):
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ParseRequest(query="Letters from grandpa", lang="fr")
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def test_parse_response_serializes_nulls():
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from models import ParseResponse
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resp = ParseResponse(
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personNames=["Opa"],
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personRole="sender",
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dateFrom=None,
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dateTo="1920-12-31",
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keywords=["brief"],
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rawQuery="Briefe von Opa",
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)
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data = resp.model_dump()
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assert data["dateFrom"] is None
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assert data["dateTo"] == "1920-12-31"
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assert data["personRole"] == "sender"
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# ── Model loading ────────────────────────────────────────────────────────────
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@pytest.fixture(scope="session")
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def nlp_de():
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from extractor import get_nlp
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return get_nlp("de")
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@pytest.fixture(scope="session")
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def nlp_en():
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from extractor import get_nlp
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return get_nlp("en")
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@pytest.fixture(scope="session")
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def nlp_es():
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from extractor import get_nlp
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return get_nlp("es")
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def test_get_nlp_de_loads(nlp_de):
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doc = nlp_de("Test")
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assert doc is not None
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def test_get_nlp_en_loads(nlp_en):
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doc = nlp_en("Test")
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assert doc is not None
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def test_get_nlp_es_loads(nlp_es):
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doc = nlp_es("Prueba")
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assert doc is not None
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def test_get_nlp_unknown_lang_raises():
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from extractor import get_nlp
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with pytest.raises(ValueError, match="Unsupported language"):
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get_nlp("fr")
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# ── Person name extraction ───────────────────────────────────────────────────
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def _make_doc_with_ents(nlp, text: str, char_ents: list[tuple[int, int, str]]):
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"""Create a Doc with manually injected entity spans (no NER model needed)."""
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doc = nlp.make_doc(text)
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spans = [doc.char_span(s, e, label=lbl) for s, e, lbl in char_ents]
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doc.ents = [sp for sp in spans if sp is not None]
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return doc
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def test_extract_person_names_two_persons(nlp_de):
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from extractor import extract_person_names
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# "Briefe von Opa Hermann an Marie"
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# "Opa Hermann" = chars 11..22, "Marie" = chars 26..31
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doc = _make_doc_with_ents(nlp_de, "Briefe von Opa Hermann an Marie", [
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(11, 22, "PER"),
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(26, 31, "PER"),
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])
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assert extract_person_names(doc) == ["Opa Hermann", "Marie"]
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def test_extract_person_names_preserves_order(nlp_de):
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from extractor import extract_person_names
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# "Marie von Opa" — Marie comes first in text
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# "Marie" = 0..5, "Opa" = 10..13
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doc = _make_doc_with_ents(nlp_de, "Marie von Opa", [
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(0, 5, "PER"),
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(10, 13, "PER"),
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])
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assert extract_person_names(doc) == ["Marie", "Opa"]
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def test_extract_person_names_empty(nlp_de):
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from extractor import extract_person_names
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doc = _make_doc_with_ents(nlp_de, "Briefe aus dem Krieg", [])
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assert extract_person_names(doc) == []
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def test_extract_person_names_ignores_non_per(nlp_de):
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from extractor import extract_person_names
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# DATE entity should not appear in personNames
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doc = _make_doc_with_ents(nlp_de, "Briefe 1920", [(7, 11, "DATE")])
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assert extract_person_names(doc) == []
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# ── Role detection ───────────────────────────────────────────────────────────
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def test_role_sender_von(nlp_de):
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from extractor import detect_person_role
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# "Briefe von Marie" — "von" immediately before "Marie"
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# "Marie" = chars 11..16
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doc = _make_doc_with_ents(nlp_de, "Briefe von Marie", [(11, 16, "PER")])
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per_spans = list(doc.ents)
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assert detect_person_role(doc, per_spans, "de") == "sender"
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def test_role_receiver_an(nlp_de):
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from extractor import detect_person_role
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# "Briefe an Marie" — "an" immediately before "Marie"
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# "Marie" = chars 10..15
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doc = _make_doc_with_ents(nlp_de, "Briefe an Marie", [(10, 15, "PER")])
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per_spans = list(doc.ents)
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assert detect_person_role(doc, per_spans, "de") == "receiver"
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def test_role_two_persons_returns_any(nlp_de):
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from extractor import detect_person_role
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# "von Opa an Marie" — two PER spans → always "any"
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# "Opa" = chars 4..7, "Marie" = chars 11..16
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doc = _make_doc_with_ents(nlp_de, "von Opa an Marie", [
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(4, 7, "PER"),
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(11, 16, "PER"),
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])
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per_spans = list(doc.ents)
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assert detect_person_role(doc, per_spans, "de") == "any"
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def test_role_no_prep_returns_any(nlp_de):
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from extractor import detect_person_role
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# "Briefe Marie" — no preposition
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# "Marie" = chars 7..12
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doc = _make_doc_with_ents(nlp_de, "Briefe Marie", [(7, 12, "PER")])
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per_spans = list(doc.ents)
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assert detect_person_role(doc, per_spans, "de") == "any"
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def test_role_empty_returns_any(nlp_de):
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from extractor import detect_person_role
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doc = _make_doc_with_ents(nlp_de, "Briefe 1920", [])
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assert detect_person_role(doc, [], "de") == "any"
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def test_role_sender_from_english(nlp_en):
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from extractor import detect_person_role
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# "letters from Marie" — "from" before "Marie"
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# "Marie" = chars 13..18
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doc = _make_doc_with_ents(nlp_en, "letters from Marie", [(13, 18, "PER")])
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per_spans = list(doc.ents)
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assert detect_person_role(doc, per_spans, "en") == "sender"
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def test_role_receiver_to_english(nlp_en):
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from extractor import detect_person_role
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# "letters to Marie" — "to" before "Marie"
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# "letters" = 0..7, " " = 7, "to" = 8..10, " " = 10, "Marie" = 11..16
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doc = _make_doc_with_ents(nlp_en, "letters to Marie", [(11, 16, "PER")])
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per_spans = list(doc.ents)
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assert detect_person_role(doc, per_spans, "en") == "receiver"
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