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>
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---
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name: plot_heatmap_log
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kind: function
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lang: py
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domain: datascience
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version: "1.0.0"
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purity: impure
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signature: "def plot_heatmap_log(ax: Axes, xs: list[float] | np.ndarray, ys: list[float] | np.ndarray, extent: tuple[float, float, float, float], bins: int = 200, cmap: str = 'hot', alpha: float = 0.6) -> None"
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description: "Dibuja un heatmap 2D con escala log1p sobre un Axes de matplotlib. Usa np.histogram2d con el extent dado y ax.imshow para renderizar."
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tags: [visualization, heatmap, histogram, matplotlib, datascience, log]
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uses_functions: []
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uses_types: []
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returns: []
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returns_optional: false
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error_type: "error_go_core"
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imports: ["numpy", "matplotlib"]
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params:
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- name: ax
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desc: "matplotlib Axes sobre el que se dibuja el heatmap."
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- name: xs
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desc: "Coordenadas X de los puntos."
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- name: ys
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desc: "Coordenadas Y de los puntos."
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- name: extent
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desc: "Bounding box como (minx, maxx, miny, maxy) que define el rango del histograma."
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- name: bins
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desc: "Número de bins del histograma en cada eje. Default 200."
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- name: cmap
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desc: "Nombre del colormap de matplotlib. Default 'hot'."
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- name: alpha
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desc: "Opacidad del overlay (0-1). Default 0.6."
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output: "None. Modifica el Axes in-place añadiendo el heatmap como imagen con ax.imshow."
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tested: true
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tests:
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- "100 puntos no lanza excepción"
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- "ax tiene al menos una imagen tras la llamada"
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test_file_path: "python/functions/datascience/tests/test_plot_heatmap_log.py"
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file_path: "python/functions/datascience/plot_heatmap_log.py"
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source_repo: "internal:footprint_aurgi"
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source_license: "internal-aurgi"
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source_file: "zonas_mapas_aurgi/examples/generar_reporte_madrid.py:62"
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---
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## Ejemplo
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```python
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import matplotlib
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matplotlib.use("Agg")
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import matplotlib.pyplot as plt
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import numpy as np
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from datascience.plot_heatmap_log import plot_heatmap_log
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rng = np.random.default_rng(42)
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xs = rng.uniform(-4.0, -3.5, 500)
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ys = rng.uniform(40.3, 40.6, 500)
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fig, ax = plt.subplots()
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plot_heatmap_log(ax, xs, ys, extent=(-4.0, -3.5, 40.3, 40.6), bins=100)
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fig.savefig("heatmap.png")
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```
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## Notas
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Aplica `np.log1p` a las cuentas del histograma para comprimir el rango dinámico y hacer visibles tanto zonas densas como dispersas. El histograma se transpone (`counts.T`) antes de pasar a imshow para alinear correctamente los ejes x/y. `aspect="auto"` permite que la imagen se estire al aspecto del Axes.
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