"""Tests für {{key|d}}, ai_caption und Unbekannt-Erkennung.""" from placeholder_registry import ( PlaceholderMetadata, PlaceholderType, OutputType, build_ai_placeholder_caption, ) import placeholder_resolver as pr def test_build_ai_caption_prefers_business_meaning(): m = PlaceholderMetadata( key="test_x", category="Test", description="Kurzbeschreibung", resolver_module="m", resolver_function="f", semantic_contract="Lang Vertrag " * 50, business_meaning="Kernbedeutung für die KI.", unit="g/day", placeholder_type=PlaceholderType.INTERPRETED, output_type=OutputType.NUMERIC, ) cap = build_ai_placeholder_caption(m) assert "Kernbedeutung" in cap def test_build_ai_caption_score_adds_scale(): m = PlaceholderMetadata( key="test_score", category="Test", description="Score", resolver_module="m", resolver_function="f", business_meaning="Gewichteter Gesamtscore.", unit="Score (0-100)", placeholder_type=PlaceholderType.SCORE, output_type=OutputType.NUMERIC, ) cap = build_ai_placeholder_caption(m) assert "0–100" in cap or "0-100" in cap assert "Gewichteter" in cap def test_placeholder_token_regex_optional_modifier(): m0 = pr._PLACEHOLDER_TOKEN_RE.search("{{fat_avg}}") assert m0 and m0.group(1) == "fat_avg" and m0.group(2) is None m1 = pr._PLACEHOLDER_TOKEN_RE.search("{{fat_avg|d}}") assert m1 and m1.group(1) == "fat_avg" and m1.group(2).strip() == "d" m2 = pr._PLACEHOLDER_TOKEN_RE.search("{{ protein_avg | d }}") assert m2 and m2.group(1) == "protein_avg" and m2.group(2).strip() == "d" def test_get_unknown_placeholders_strips_modifier(): unk = pr.get_unknown_placeholders("{{not_a_real_key|d}}") assert set(unk) == {"not_a_real_key"}