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egutierrez faac610745 feat: extraccion masiva footprint_aurgi (41 funcs + 4 types + stack Docker geo)
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>
2026-05-04 23:35:22 +02:00

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---
id: trimmed_mean_py_datascience
name: trimmed_mean
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: pure
signature: "def trimmed_mean(values: list[float], trim: float = 0.05) -> float"
description: "Arithmetic mean after cutting the bottom and top trim percentiles. Returns math.nan for empty input."
tags: [statistics, mean, robust, trimming, outliers]
uses_functions: []
uses_types: []
returns: []
returns_optional: false
error_type: ""
imports: [math, numpy]
example: |
from trimmed_mean import trimmed_mean
result = trimmed_mean([1, 2, 3, 4, 5, 100], 0.1) # ~3.5
tested: true
tests:
- "test_trimmed_mean_basic"
- "test_trimmed_mean_empty_returns_nan"
- "test_trimmed_mean_no_trim"
- "test_trimmed_mean_single_element"
- "test_trimmed_mean_uniform"
test_file_path: "python/functions/datascience/tests/test_trimmed_mean.py"
file_path: "python/functions/datascience/trimmed_mean.py"
params:
- name: values
desc: "List of numeric values to average."
- name: trim
desc: "Fraction to cut from each tail before averaging (0 <= trim < 0.5). Default 0.05."
output: "Trimmed arithmetic mean as float. Returns math.nan if values is empty or all values are trimmed away."
source_repo: "internal:footprint_aurgi"
source_license: "internal-aurgi"
source_file: "aurgi_mapas/generar_pdf_reporte.py:117"
---
## Ejemplo
```python
from trimmed_mean import trimmed_mean
trimmed_mean([1, 2, 3, 4, 5, 100], 0.1) # ~3.5 (100 is trimmed)
trimmed_mean([], 0.05) # math.nan
trimmed_mean([5.0, 5.0, 5.0], 0.0) # 5.0
```
## Notas
Usa numpy.percentile para calcular los umbrales lo y hi, luego filtra valores dentro del rango [lo, hi]. Util para calcular promedios robustos cuando hay valores extremos en la distribucion.