9cdde4a341
Introduce la capa intermedia entre el contenido de un EDA y su formato de
salida. Un documento es una lista de capítulos versionados; cada capítulo es
un conjunto ordenado de bloques (heading, markdown, kv_table, data_table,
figure, image, caption, note) independientes del formato.
Núcleo (paquete de soporte python/functions/datascience/automatic_eda/):
- model.py: dataclasses de bloques + Chapter, normalizadores defensivos
(aceptan dataclass o dict, nunca lanzan), ENGINE_VERSION y el manifiesto
por capítulo (automatic_eda_manifest.json).
- text_layout.py: medición/wrapping por rejilla de caracteres compartida.
- chapters_registry.py: CHAPTER_ORDER pre-declarado + build_document con
auto-discovery de capítulos por convención (permite añadir capítulos en
paralelo sin editar el registro).
- render_pdf_impl.py: paginador A5 retrato móvil que MIDE cada bloque y nunca
corta: texto a líneas completas, tablas largas partidas por filas repitiendo
cabecera, figuras/imágenes escaladas para caber enteras. Pie versionado por
capítulo.
- render_pptx_impl.py: mismo principio sobre slides 16:9 (continúa en slide
"(cont.)"; tablas repiten cabecera; figuras exportadas a PNG escaladas).
- chapters/portada.py y chapters/overview.py: capítulos de referencia. Portada
con nombre, rótulo Automatic-EDA, fuente, almacenamiento (inferido de
source), fecha europea, filas×cols, descripción, granularidad y calidad con
criterios. Overview con df.head (placeholder honesto si falta head_rows),
diccionario de columnas (tipo/nulos/ejemplos) y describe numérico.
Funciones públicas del registry (grupo eda, dict-no-throw):
- render_automatic_eda_pdf / render_automatic_eda_pptx: aceptan capítulos o un
TableProfile (construyen los capítulos con build_document) y escriben el
manifiesto. Aditivas — no reemplazan render_eda_pdf.
Tests self-contained (sin DuckDB) para ambos renderers: golden (portada +
overview), partición de tablas largas repitiendo cabecera, no-corte de celdas
y markdown largos, profile None/{} válido de 1 página/slide, y error path en
directorio no escribible. 23 tests verdes (incluye los previos de
render_eda_pdf, intactos).
Dependencia nueva python-pptx>=1.0.2 declarada en python/pyproject.toml.
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
117 lines
3.9 KiB
Python
117 lines
3.9 KiB
Python
from .datascience import (
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pearson,
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standardize,
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min_max_scale,
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clip,
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detect_outliers,
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impute,
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histogram,
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rolling_window,
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autocorrelation,
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linspace,
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)
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from .scrape_amazon_bestsellers import scrape_amazon_bestsellers
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from .scrape_google_trends import scrape_google_trends
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from .scrape_competitor_prices import scrape_competitor_prices
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from .scrape_tiktok_creative import scrape_tiktok_creative
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from .scrape_aliexpress_trending import scrape_aliexpress_trending
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from .fetch_reddit_search import fetch_reddit_search
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from .fetch_hackernews_search import fetch_hackernews_search
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from .score_demand_signal import score_demand_signal
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from .pull_gsc_search_analytics import pull_gsc_search_analytics
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from .summarize_table_duckdb import summarize_table_duckdb
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from .summarize_table_pg import summarize_table_pg
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from .describe_numeric import describe_numeric
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from .summarize_categorical import summarize_categorical
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from .infer_semantic_type import infer_semantic_type
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from .column_quality_score import column_quality_score
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from .render_eda_markdown import render_eda_markdown
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from .detect_distribution_type import detect_distribution_type
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from .spearman_corr import spearman_corr
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from .cramers_v import cramers_v
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from .theils_u import theils_u
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from .correlation_ratio import correlation_ratio
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from .mutual_info_columns import mutual_info_columns
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from .infer_fk_containment_duckdb import infer_fk_containment_duckdb
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from .build_join_graph import build_join_graph
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from .association_matrix import association_matrix
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from .correlation_matrix_duckdb import correlation_matrix_duckdb
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from .pca_explained import pca_explained
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from .kmeans_segments import kmeans_segments
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from .isolation_forest_outliers import isolation_forest_outliers
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from .normality_tests import normality_tests
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from .trend_slope import trend_slope
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from .run_eda_models import run_eda_models
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from .eda_llm_insights import eda_llm_insights
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from .build_eda_notebook import build_eda_notebook
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from .decode_qr_image import decode_qr_image
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from .adf_kpss_stationarity import adf_kpss_stationarity
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from .acf_pacf import acf_pacf
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from .stl_decompose import stl_decompose
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from .to_returns import to_returns
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from .fdr_correction import fdr_correction
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from .suggest_reexpression import suggest_reexpression
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from .exploratory_caveats import exploratory_caveats
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from .render_eda_pdf import render_eda_pdf, render_eda_pdf_relational
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from .render_automatic_eda_pdf import render_automatic_eda_pdf
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from .render_automatic_eda_pptx import render_automatic_eda_pptx
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__all__ = [
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"render_automatic_eda_pdf",
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"render_automatic_eda_pptx",
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"decode_qr_image",
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"adf_kpss_stationarity",
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"acf_pacf",
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"stl_decompose",
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"to_returns",
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"fdr_correction",
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"suggest_reexpression",
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"exploratory_caveats",
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"render_eda_pdf",
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"render_eda_pdf_relational",
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"summarize_table_duckdb",
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"summarize_table_pg",
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"spearman_corr",
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"cramers_v",
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"theils_u",
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"correlation_ratio",
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"mutual_info_columns",
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"infer_fk_containment_duckdb",
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"build_join_graph",
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"association_matrix",
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"correlation_matrix_duckdb",
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"pca_explained",
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"kmeans_segments",
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"isolation_forest_outliers",
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"normality_tests",
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"trend_slope",
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"run_eda_models",
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"eda_llm_insights",
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"build_eda_notebook",
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"describe_numeric",
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"summarize_categorical",
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"infer_semantic_type",
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"column_quality_score",
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"render_eda_markdown",
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"detect_distribution_type",
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"pull_gsc_search_analytics",
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"scrape_amazon_bestsellers",
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"scrape_google_trends",
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"scrape_competitor_prices",
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"scrape_tiktok_creative",
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"scrape_aliexpress_trending",
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"fetch_reddit_search",
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"fetch_hackernews_search",
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"score_demand_signal",
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"pearson",
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"standardize",
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"min_max_scale",
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"clip",
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"detect_outliers",
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"impute",
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"histogram",
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"rolling_window",
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"autocorrelation",
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"linspace",
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]
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