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Extrae al registry funciones del proyecto interno footprint_aurgi: - core (6): slugify_ascii, normalize_for_join, cp_provincia_es, infer_provincia_from_cp, safe_read_csv_fallback, csv_to_parquet_duckdb - geo puras (7): haversine_km, point_in_ring, point_in_polygon, point_in_polygons_bbox, polygon_bbox, extent_with_padding, distance_bucket - geo I/O (4): load_geojson_polygons, load_boundary_gdf, add_basemap_osm, add_basemap_with_timeout - valhalla client (4): valhalla_route, valhalla_isochrone, valhalla_isochrones_async, valhalla_matrix_1_to_n - datascience stats (7): trimmed_mean, geometric_mean, detect_distribution_type, best_central_tendency, summary_stats, kde_density_levels, alpha_shape_concave_hull - datascience fuzzy (3): fuzzy_merge_adaptive (rapidfuzz), words_to_dataset, remove_words_from_column - datascience viz (2): plot_kde_2d, plot_heatmap_log - infra (4): compress_pdf_ghostscript, render_table_page_pdfpages, add_header_logo, osm2pgsql_ingest - pipelines (4): setup_geo_stack_docker, compute_centers_reachability, generate_isochrones_by_zone, count_points_per_zone - types geo (4): LonLat, BBox, IsochroneRequest, Centro Incluye: - apps/footprint_geo_stack/ (PostGIS + Martin + Valhalla via docker-compose) - 131/132 tests pasan (1 skip esperado: osm2pgsql en PATH) - Issue tracker dev/issues/0052-footprint-aurgi-extraction.md - Atribucion uniforme: source_repo internal:footprint_aurgi, source_license internal-aurgi - Build con 9 agentes en paralelo (8 wave 1 + 1 wave 2 pipelines) Tambien commitea trabajo previo no commiteado: aggregate_extraction_results, chunk_with_overlap, clean_pdf_text, merge_entity_aliases, extract_graph_gliner2, extract_relations_mrebel, extract_triples_spacy_es, gliner2/mrebel/marianmt/rebel/spacy_es load_model, parse_rebel_output, translate_es_to_en, issue 0050/0051. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
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4.3 KiB
name, kind, lang, domain, version, purity, signature, description, tags, uses_functions, uses_types, returns, returns_optional, error_type, imports, params, output, tested, tests, test_file_path, file_path, notes
| name | kind | lang | domain | version | purity | signature | description | tags | uses_functions | uses_types | returns | returns_optional | error_type | imports | params | output | tested | tests | test_file_path | file_path | notes | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
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| extract_graph_from_text | pipeline | py | pipelines | 1.0.0 | impure | def extract_graph_from_text(text: str, entity_labels: list[str], relation_labels: list | dict, allowed: dict, model: Any, threshold: float = 0.3, max_chars_per_chunk: int = 1500, overlap_sentences: int = 2) -> dict | Pipeline E2E: texto -> grafo de entidades y relaciones. Orquesta chunking, extraccion con GLiNER2 por chunk, agregacion, filtrado tipado y resolucion de alias. Refactorizacion del playground del analisis gliner_glirel_tuning. |
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false | error_go_core |
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Dict con 'nodes' (lista de {id, type, count}), 'edges' (lista de {from, to, kind}) y 'stats' ({n_chunks, n_nodes, n_edges, n_dropped_typed, elapsed_s}). Listo para serializar a JSON y visualizar con Sigma/D3. | true |
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python/functions/pipelines/tests/test_extract_graph_from_text.py | python/functions/pipelines/extract_graph_from_text.py | Refactorizacion directa del playground/server.py del analisis projects/osint_graph/analysis/gliner_glirel_tuning. Todas las recetas validadas empiricamente en los notebooks 04, 06 y 08: - threshold=0.3 (notebook 04) - overlap_sentences=2 (notebook 06) - filtrado tipado (notebook 08) - coreference normalize+substring (playground/server.py) Para PDFs: usar extract_pdf_text + clean_pdf_text antes de llamar a este pipeline. Para OpenIE sin vocabulario fijo: usar extract_triples_spacy_es como alternativa. |
Ejemplo
from datascience.gliner2_load_model import gliner2_load_model
from pipelines.extract_graph_from_text import extract_graph_from_text
model = gliner2_load_model(device="auto")
ENTITY_LABELS = ["person", "organization", "location"]
RELATION_LABELS = ["works_at", "ceo_of", "headquartered_in", "president_of"]
ALLOWED = {
"ceo_of": (["person"], ["organization"]),
"president_of": (["person"], ["organization"]),
"works_at": (["person"], ["organization"]),
"headquartered_in": (["organization"], ["location"]),
}
text = """Carlos Torres Blanco es el presidente de BBVA.
BBVA tiene su sede corporativa en Bilbao, aunque opera en mas de 30 paises."""
graph = extract_graph_from_text(
text=text,
entity_labels=ENTITY_LABELS,
relation_labels=RELATION_LABELS,
allowed=ALLOWED,
model=model,
)
# graph["nodes"] -> [{"id": "Carlos Torres Blanco", "type": "person", "count": 1}, ...]
# graph["edges"] -> [{"from": "Carlos Torres Blanco", "to": "BBVA", "kind": "president_of"}]
# graph["stats"] -> {"n_chunks": 1, "n_nodes": 3, "n_edges": 2, ...}