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egutierrez 105e56cf05 feat(eda): capítulo text_distr (TEXTO/NLP) — primer capítulo de datos no tabulares
Añade el capítulo `text_distr` al motor AutomaticEDA: perfila columnas de texto
libre largo (reseñas, descripciones, comentarios) que la distribución categórica
no resume bien. Sigue el patrón de cat_distr/num_distr (build_text_distr(profile,
ctx) -> Chapter | None) y se registra en CHAPTER_ORDER tras cat_distr.

Activación en dos fases: gate barato desde el perfil (columna no numérica con
len_mean >= 50 chars) + confirmación con muestra cruda (mediana de palabras >= 20).
Un dataset sin texto largo (p.ej. titanic) devuelve None sin tocar el informe.

Bloques por columna (Group con page_break): resumen (longitudes, vocabulario con
TTR y % hapax, idioma dominante, % duplicados, legibilidad), histograma de
longitudes, top términos (tabla + barras), bigramas/trigramas, idiomas detectados
y nube de palabras opcional. Términos ttr/hapax enganchados al glosario clicable.

Lógica delegada a 7 funciones nuevas del registry (datascience, tag eda),
estilo dict-no-throw:
- extract_text_sample (impura, push-down SQL DuckDB/Postgres)
- compute_text_length_stats, compute_vocabulary_stats, compute_top_ngrams (puras, stdlib)
- detect_corpus_language (langdetect opcional), compute_text_readability (textstat
  opcional), compute_text_duplicates (hash + datasketch opcional)

Versión barata sin modelos pesados: las piezas que dependen de una librería
opcional (langdetect, textstat, wordcloud, datasketch) degradan a omitidas sin
lanzar. Añade langdetect y textstat (ligeras) al pyproject + uv.lock.

Verificado: golden sobre dataset de reviews multi-idioma (capítulo presente en
PDF+PPTX+MD con métricas reales), titanic sin capítulo (None), degradación sin
libs, suite automatic_eda + pipeline verde (128 passed), fn index OK.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-30 20:38:17 +02:00
26 changed files with 2880 additions and 0 deletions
@@ -0,0 +1,559 @@
"""Free-text / NLP distributions chapter (TEXT DISTR) for AutomaticEDA.
First chapter for **non-tabular** content: it profiles the linguistic content of
any column holding long free text (reviews, descriptions, comments, tickets) that
the categorical chapter cannot meaningfully summarize (high cardinality, many
words per value). It is the cheap, model-free counterpart to ``cat_distr`` for
columns that are prose rather than discrete labels.
Activation (returns ``None`` when it does not apply):
1. Cheap gate from the aggregated profile: at least one non-numeric column whose
``categorical.len_mean`` (mean character length) is ``>= _MIN_LEN_CHARS``.
A dataset whose only string columns are short labels (e.g. titanic's
``Name``, ~27 chars) never passes this gate, so the chapter disappears with
zero extra work and the existing report is untouched.
2. Confirmation from a raw sample: each candidate column is sampled (push-down
``extract_text_sample`` over ``ctx['db_path']``/``ctx['table']``, or an
in-memory ``ctx['text_raw']`` for tests) and kept only if the **median word
count is ``>= _MIN_WORDS``** — i.e. it is genuinely long text, not a long
single token. If no column survives, the chapter returns ``None``.
Per surviving column the chapter emits, kept together on its own page/slide
(``Group(page_break_before=...)``):
- a key/value summary (documents, length percentiles, vocabulary richness with
**[[term:ttr]]TTR[[/term]]** and **[[term:hapax]]hapax legomena[[/term]]**,
dominant language, exact-duplicate %, readability when available);
- a word-count histogram figure;
- a top-terms table + a horizontal bar figure;
- bigram and trigram frequency tables;
- a detected-language bar figure (when ``langdetect`` is available);
- an optional word-cloud figure (only when ``wordcloud`` is installed);
- a closing note on duplicates / readability degradation.
Every metric is delegated to pure ``eda`` registry functions
(``compute_text_length_stats``, ``compute_vocabulary_stats``,
``compute_top_ngrams``, ``detect_corpus_language``, ``compute_text_duplicates``,
``compute_text_readability``) and the raw sample to ``extract_text_sample``; all
are imported defensively so a missing function or optional library degrades that
single piece to a note instead of aborting the chapter. Optional libraries
(``langdetect``, ``textstat``, ``wordcloud``, ``datasketch``) are never required:
the piece is silently omitted when they are absent.
Contract: build_<id>(profile, ctx) -> Chapter | None ; CHAPTER_VERSION = "x.y.z".
"""
from __future__ import annotations
from .. import model
CHAPTER_VERSION = "1.0.0"
CHAPTER_ID = "text_distr"
CHAPTER_TITLE = "Texto libre (NLP)"
# Cheap activation gate (characters): a non-numeric column whose mean string
# length reaches this is a candidate for "long text". Short labels (titanic's
# Name ≈ 27 chars) stay below it, so the chapter does not fire on them.
_MIN_LEN_CHARS = 50
# Confirmation gate (words): a candidate is kept only if its median document has
# at least this many words — genuine prose, not a long id/URL token.
_MIN_WORDS = 20
# Bound the document so very wide datasets stay readable.
_MAX_TEXT_COLS = 5
# Raw text rows to sample per column when the chapter must extract them itself.
_SAMPLE_ROWS = 2000
# Rows shown in the frequency tables.
_TOP_TERMS = 15
_TOP_NGRAMS = 10
# Glossary terms this chapter explains (registered in the shared collector and
# marked clickable on first appearance — same mechanism as cat_distr's entropía).
_TERMS = {
"ttr": (
"TTR (type-token ratio)",
"Riqueza léxica de un texto: número de palabras distintas (tipos) "
"dividido por el número total de palabras (tokens). Vale 1 cuando no se "
"repite ninguna palabra (máxima variedad) y baja hacia 0 cuando el "
"vocabulario se repite mucho. Depende de la longitud del corpus, así que "
"compara mejor textos de tamaño parecido."),
"hapax": (
"Hapax legomena",
"Palabras que aparecen una sola vez en todo el corpus. Un porcentaje "
"alto de hapax indica vocabulario muy variado o, a veces, ruido "
"(erratas, identificadores, tokens raros). Se expresa como porcentaje "
"sobre el número de palabras distintas."),
}
def _fmt_int(value) -> str:
if value is None:
return ""
try:
return f"{int(value):,}".replace(",", ".")
except (TypeError, ValueError):
return str(value)
def _fmt_num(value, decimals: int = 2) -> str:
if value is None:
return ""
if isinstance(value, bool):
return str(value)
if isinstance(value, int):
return f"{value:,}".replace(",", ".")
if isinstance(value, float):
if value != value: # NaN
return "NaN"
if value in (float("inf"), float("-inf")):
return str(value)
text = f"{value:.{decimals}f}".rstrip("0").rstrip(".")
return text if text else "0"
return str(value)
def _fmt_pct(value, decimals: int = 1) -> str:
if value is None:
return ""
try:
return f"{float(value):.{decimals}f}%"
except (TypeError, ValueError):
return str(value)
def _truncate(text, limit: int = 40) -> str:
s = model._safe_str(text)
return s if len(s) <= limit else s[: max(1, limit - 1)].rstrip() + ""
# --------------------------------------------------------------------------- #
# Defensive wrappers around the registry functions: each returns the function's
# output dict or a safe empty default, never raising and never importing at
# module load (so the chapter stays importable even if a function is missing).
# --------------------------------------------------------------------------- #
def _length_stats(texts) -> dict:
try:
from datascience.compute_text_length_stats import compute_text_length_stats
out = compute_text_length_stats(texts)
if isinstance(out, dict):
return out
except Exception: # noqa: BLE001
pass
return {}
def _vocab_stats(texts) -> dict:
try:
from datascience.compute_vocabulary_stats import compute_vocabulary_stats
out = compute_vocabulary_stats(texts, top_k=_TOP_TERMS)
if isinstance(out, dict):
return out
except Exception: # noqa: BLE001
pass
return {}
def _ngrams(texts, n) -> list:
try:
from datascience.compute_top_ngrams import compute_top_ngrams
out = compute_top_ngrams(texts, n=n, top_k=_TOP_NGRAMS)
if isinstance(out, dict):
return out.get("top") or []
except Exception: # noqa: BLE001
pass
return []
def _language(texts) -> dict:
try:
from datascience.detect_corpus_language import detect_corpus_language
out = detect_corpus_language(texts)
if isinstance(out, dict):
return out
except Exception: # noqa: BLE001
pass
return {"available": False, "distribution": [], "dominant": None}
def _duplicates(texts) -> dict:
try:
from datascience.compute_text_duplicates import compute_text_duplicates
out = compute_text_duplicates(texts)
if isinstance(out, dict):
return out
except Exception: # noqa: BLE001
pass
return {}
def _readability(texts) -> dict:
try:
from datascience.compute_text_readability import compute_text_readability
out = compute_text_readability(texts)
if isinstance(out, dict):
return out
except Exception: # noqa: BLE001
pass
return {"available": False, "flesch": {}}
# --------------------------------------------------------------------------- #
# Candidate detection + raw sample acquisition.
# --------------------------------------------------------------------------- #
def _candidate_columns(profile: dict) -> list:
"""Cheap gate: non-numeric columns whose mean char length reaches the
threshold. Returns the list of column names (possibly empty)."""
out = []
for col in profile.get("columns") or []:
if not isinstance(col, dict):
continue
if col.get("inferred_type") == "numeric":
continue
cat = col.get("categorical")
if not isinstance(cat, dict):
continue
len_mean = cat.get("len_mean")
if isinstance(len_mean, (int, float)) and not isinstance(len_mean, bool) \
and len_mean >= _MIN_LEN_CHARS:
name = col.get("name")
if name:
out.append(str(name))
return out
def _get_samples(profile: dict, ctx: dict, columns: list) -> dict:
"""Return {col: [str, ...]} raw text samples for the candidate columns.
Prefers an in-memory ``ctx['text_raw']`` (used by tests); otherwise pushes a
sample down to the database via ``extract_text_sample`` using ctx db_path /
table. Never raises: returns {} when no sample can be obtained."""
text_raw = ctx.get("text_raw")
if isinstance(text_raw, dict) and text_raw:
return {c: [str(v) for v in (text_raw.get(c) or []) if v is not None]
for c in columns if text_raw.get(c)}
db_path = ctx.get("db_path")
table = ctx.get("table")
if not db_path or not table:
return {}
backend = ctx.get("backend") or "duckdb"
sample = ctx.get("sample") or _SAMPLE_ROWS
try:
from datascience.extract_text_sample import extract_text_sample
out = extract_text_sample(db_path, table, columns, backend=backend,
sample=sample)
if isinstance(out, dict) and out.get("status") == "ok":
cols = out.get("columns")
if isinstance(cols, dict):
return {c: list(v) for c, v in cols.items() if v}
except Exception: # noqa: BLE001 — dict-no-throw: no sample → chapter omits.
pass
return {}
def _confirm_long_text(samples: dict) -> dict:
"""Keep only columns whose median word count reaches _MIN_WORDS. Returns
{col: length_stats_dict} for the survivors, in input order."""
survivors = {}
for col, texts in samples.items():
stats = _length_stats(texts)
words = stats.get("words") if isinstance(stats, dict) else None
median = words.get("p50") if isinstance(words, dict) else None
if isinstance(median, (int, float)) and not isinstance(median, bool) \
and median >= _MIN_WORDS:
survivors[col] = stats
return survivors
# --------------------------------------------------------------------------- #
# Figures (lazy matplotlib, scaled by the renderers — same style as num_distr).
# --------------------------------------------------------------------------- #
def _hist_figure(name: str, length_stats: dict):
def make():
import matplotlib
matplotlib.use("Agg")
from matplotlib.figure import Figure
fig = Figure(figsize=(6.2, 3.0))
ax = fig.add_subplot(111)
bins = (length_stats or {}).get("word_hist") or []
drew = False
for b in bins:
if not isinstance(b, dict):
continue
lo, hi, count = b.get("lo"), b.get("hi"), b.get("count") or 0
if lo is None or hi is None:
continue
width = (hi - lo) if hi > lo else max(abs(lo) * 1e-3, 1e-6)
ax.bar(lo, count, width=width, align="edge", color="#9ec6df",
edgecolor="#5b8aa6", linewidth=0.4)
drew = True
if not drew:
ax.text(0.5, 0.5, "(sin datos de longitud)", ha="center",
va="center", color="#8a8a8a", transform=ax.transAxes)
ax.set_xlabel("palabras por documento", fontsize=8)
ax.set_ylabel("nº de documentos", fontsize=8)
ax.tick_params(labelsize=7)
for spine in ("top", "right"):
ax.spines[spine].set_visible(False)
ax.set_title(f"Longitud de «{_truncate(name, 30)}»", fontsize=10,
loc="left")
fig.tight_layout()
return fig
return make
def _barh_figure(title: str, items: list, label_key: str, value_key: str,
xlabel: str):
"""Horizontal bar chart from [{label_key:..., value_key:...}, ...]."""
def make():
import matplotlib
matplotlib.use("Agg")
from matplotlib.figure import Figure
rows = [it for it in (items or []) if isinstance(it, dict)
and isinstance(it.get(value_key), (int, float))]
rows = rows[:12]
fig = Figure(figsize=(6.2, max(2.2, 0.32 * len(rows) + 0.8)))
ax = fig.add_subplot(111)
if not rows:
ax.text(0.5, 0.5, "(sin datos)", ha="center", va="center",
color="#8a8a8a", transform=ax.transAxes)
ax.axis("off")
return fig
labels = [_truncate(r.get(label_key), 28) for r in rows][::-1]
values = [float(r.get(value_key) or 0) for r in rows][::-1]
ypos = range(len(rows))
ax.barh(list(ypos), values, color="#9ec6df", edgecolor="#5b8aa6",
linewidth=0.4)
ax.set_yticks(list(ypos))
ax.set_yticklabels(labels, fontsize=7)
ax.set_xlabel(xlabel, fontsize=8)
ax.tick_params(labelsize=7)
for spine in ("top", "right"):
ax.spines[spine].set_visible(False)
ax.set_title(_truncate(title, 44), fontsize=10, loc="left")
fig.tight_layout()
return fig
return make
def _wordcloud_figure(texts):
"""Word-cloud figure callable, or None if wordcloud is not installed."""
try:
import wordcloud # noqa: F401
except Exception: # noqa: BLE001 — optional dependency: omit the figure.
return None
def make():
import matplotlib
matplotlib.use("Agg")
from matplotlib.figure import Figure
from wordcloud import WordCloud
fig = Figure(figsize=(6.2, 3.2))
ax = fig.add_subplot(111)
joined = " ".join(t for t in texts if isinstance(t, str))
try:
wc = WordCloud(width=800, height=400, background_color="white",
colormap="viridis").generate(joined)
ax.imshow(wc, interpolation="bilinear")
except Exception: # noqa: BLE001
ax.text(0.5, 0.5, "(nube de palabras no disponible)", ha="center",
va="center", color="#8a8a8a", transform=ax.transAxes)
ax.axis("off")
fig.tight_layout()
return fig
return make
# --------------------------------------------------------------------------- #
# Per-column block assembly.
# --------------------------------------------------------------------------- #
def _summary_kv(n_docs, length_stats, vocab, lang, dup, read):
chars = (length_stats or {}).get("chars") or {}
words = (length_stats or {}).get("words") or {}
sents = (length_stats or {}).get("sentences") or {}
rows = [
("Documentos", _fmt_int(n_docs)),
("Caracteres (media · p50 · p90 · p99)",
f"{_fmt_num(chars.get('mean'))} · {_fmt_int(chars.get('p50'))} · "
f"{_fmt_int(chars.get('p90'))} · {_fmt_int(chars.get('p99'))}"),
("Palabras (media · p50 · p90 · p99)",
f"{_fmt_num(words.get('mean'))} · {_fmt_int(words.get('p50'))} · "
f"{_fmt_int(words.get('p90'))} · {_fmt_int(words.get('p99'))}"),
("Frases (media · máx)",
f"{_fmt_num(sents.get('mean'))} · {_fmt_int(sents.get('max'))}"),
("Vocabulario (tokens · tipos · TTR)",
f"{_fmt_int(vocab.get('n_tokens'))} · {_fmt_int(vocab.get('n_types'))} "
f"· {_fmt_num(vocab.get('ttr'), 3)}"),
("Hapax legomena",
f"{_fmt_int(vocab.get('n_hapax'))} ({_fmt_pct(vocab.get('hapax_pct'))})"),
]
if isinstance(lang, dict) and lang.get("available"):
dom = lang.get("dominant")
n_langs = len(lang.get("distribution") or [])
rows.append(("Idioma dominante · nº idiomas",
f"{model._safe_str(dom) or ''} · {_fmt_int(n_langs)}"))
if isinstance(dup, dict) and dup.get("n_docs"):
rows.append(("Duplicados exactos",
f"{_fmt_int(dup.get('n_exact_dup'))} "
f"({_fmt_pct(dup.get('exact_dup_pct'))})"))
if isinstance(read, dict) and read.get("available"):
flesch = read.get("flesch") or {}
rows.append(("Legibilidad Flesch (media)",
_fmt_num(flesch.get("mean"), 1)))
return model.KVTable(rows=rows, title="Resumen del texto")
def _terms_table(vocab) -> "model.DataTable | None":
top = (vocab or {}).get("top_terms") or []
rows = [[_truncate(t.get("term"), 32), _fmt_int(t.get("count")),
_fmt_pct(t.get("pct"))]
for t in top[:_TOP_TERMS] if isinstance(t, dict)]
if not rows:
return None
return model.DataTable(header=["Término", "Conteo", "% tokens"], rows=rows,
title="Términos más frecuentes",
note="stopwords ES+EN eliminadas")
def _ngram_table(items, n_label) -> "model.DataTable | None":
rows = [[_truncate(it.get("ngram"), 40), _fmt_int(it.get("count"))]
for it in (items or [])[:_TOP_NGRAMS] if isinstance(it, dict)]
if not rows:
return None
return model.DataTable(header=[n_label, "Conteo"], rows=rows,
title=f"{n_label} más frecuentes")
def _dup_note(dup, lang, read) -> "model.Note | None":
bits = []
if isinstance(dup, dict):
nd = dup.get("near_dup") or {}
if nd.get("available"):
bits.append(
f"casi-duplicados detectados (MinHash, umbral "
f"{_fmt_num(nd.get('threshold'))}): "
f"{_fmt_int(nd.get('n_near_dup_docs'))} documentos")
else:
bits.append("near-duplicados no calculados (datasketch no instalado; "
"se reportan solo los duplicados exactos por hash)")
if isinstance(lang, dict) and not lang.get("available"):
bits.append("detección de idioma omitida (langdetect no instalado)")
if isinstance(read, dict) and not read.get("available"):
bits.append("legibilidad omitida (textstat no instalado)")
if not bits:
return None
return model.Note(" · ".join(bits))
def _column_group(name, texts, length_stats, idx, mark_terms):
vocab = _vocab_stats(texts)
lang = _language(texts)
dup = _duplicates(texts)
read = _readability(texts)
n_docs = (length_stats or {}).get("n_docs")
blocks = [
model.Heading(text=str(name), level=2),
_summary_kv(n_docs, length_stats, vocab, lang, dup, read),
model.Figure(make=_hist_figure(name, length_stats),
caption=f"Distribución de la longitud (palabras) de "
f"«{_truncate(name, 30)}»."),
]
terms_tbl = _terms_table(vocab)
if terms_tbl is not None:
blocks.append(terms_tbl)
blocks.append(model.Figure(
make=_barh_figure(f"Top términos de «{_truncate(name, 24)}»",
vocab.get("top_terms"), "term", "count",
"conteo"),
caption="Términos más frecuentes (barras)."))
bi_tbl = _ngram_table(_ngrams(texts, 2), "Bigrama")
if bi_tbl is not None:
blocks.append(bi_tbl)
tri_tbl = _ngram_table(_ngrams(texts, 3), "Trigrama")
if tri_tbl is not None:
blocks.append(tri_tbl)
if isinstance(lang, dict) and lang.get("available") \
and lang.get("distribution"):
blocks.append(model.Figure(
make=_barh_figure(f"Idiomas detectados en «{_truncate(name, 24)}»",
lang.get("distribution"), "lang", "count",
"documentos"),
caption="Distribución de idiomas detectados (langdetect)."))
wc = _wordcloud_figure(texts)
if wc is not None:
blocks.append(model.Figure(
make=wc, caption=f"Nube de palabras de «{_truncate(name, 30)}»."))
note = _dup_note(dup, lang, read)
if note is not None:
blocks.append(note)
return model.Group(blocks=blocks, page_break_before=(idx > 0))
def _intro_blocks(n_cols, mark_terms):
ttr = ("[[term:ttr]]TTR[[/term]]" if mark_terms else "TTR")
hapax = ("[[term:hapax]]hapax legomena[[/term]]" if mark_terms
else "hapax legomena")
text = (
f"Este capítulo perfila las columnas de **texto libre largo** del "
f"dataset (reseñas, descripciones, comentarios): contenido lingüístico "
f"que la distribución categórica no resume bien. Para cada columna se "
f"muestran la longitud de los documentos, la riqueza de vocabulario "
f"(incluido el {ttr} y el porcentaje de {hapax}), los términos y "
f"n-gramas más frecuentes, los idiomas detectados y el nivel de "
f"duplicación. Las métricas son baratas y sin modelos pesados; las "
f"piezas que dependen de una librería opcional se omiten si no está "
f"instalada.")
return [
model.Heading(text=CHAPTER_TITLE, level=1),
model.Markdown(text=text),
]
def build_text_distr(profile: dict, ctx: dict):
"""Build the free-text Chapter, or None if no long-text column applies."""
profile = profile or {}
ctx = ctx or {}
# 1) Cheap gate from the profile (no DB access yet).
candidates = _candidate_columns(profile)
if not candidates:
return None
# 2) Raw sample + 3) confirm genuine long text (median words >= threshold).
samples = _get_samples(profile, ctx, candidates)
if not samples:
return None
survivors = _confirm_long_text(samples)
if not survivors:
return None
# Register glossary terms (clickable) once we know the chapter applies.
glossary = ctx.get("glossary")
mark_terms = False
if isinstance(glossary, model.GlossaryCollector):
for key, (label, definition) in _TERMS.items():
glossary.add(key, label, definition)
mark_terms = True
blocks = list(_intro_blocks(len(survivors), mark_terms))
rendered = list(survivors.items())[:_MAX_TEXT_COLS]
for idx, (name, length_stats) in enumerate(rendered):
texts = samples.get(name) or []
blocks.append(_column_group(name, texts, length_stats, idx, mark_terms))
if len(survivors) > len(rendered):
omitted = len(survivors) - len(rendered)
blocks.append(model.Note(
f"Se muestran las primeras {len(rendered)} columnas de texto; "
f"quedan {omitted} sin mostrar para mantener acotado el informe."))
return model.Chapter(id=CHAPTER_ID, title=CHAPTER_TITLE,
version=CHAPTER_VERSION, blocks=blocks)
@@ -0,0 +1,256 @@
"""Tests for the TEXT DISTR chapter — DoD: golden + edges + degradation.
Self-contained: builds synthetic TableProfiles and feeds the raw text sample
in-memory through ``ctx['text_raw']`` (no DuckDB needed), so the suite is fast
and deterministic. Verifies that ``build_text_distr``:
- GOLDEN: with a long-text column, emits the chapter with its key blocks
(length summary, word histogram, top-terms table, n-gram tables, language
bars) and registers the clickable glossary terms; and that it renders inside
the full document to both PDF and PPTX showing that content.
- EDGE (None): a dataset whose only string column is short labels (titanic-like
``Name``) yields ``None`` without raising — the existing report is untouched.
- EDGE (None): a column that passes the cheap char gate but whose documents are
short (median words below the threshold) is rejected at the confirmation step.
- DEGRADATION: with ``langdetect`` / ``textstat`` / ``wordcloud`` unavailable,
the chapter still builds (those pieces are omitted) and never raises.
"""
import builtins
import os
import tempfile
from pypdf import PdfReader
from pptx import Presentation
from datascience.automatic_eda.model import (
DataTable, Figure, GlossaryCollector, Group, Heading, KVTable, Markdown,
Note,
)
from datascience.automatic_eda.chapters.text_distr import (
CHAPTER_ID, CHAPTER_VERSION, build_text_distr,
)
from datascience.automatic_eda.chapters_registry import build_document
from datascience.render_automatic_eda_pdf import render_automatic_eda_pdf
from datascience.render_automatic_eda_pptx import render_automatic_eda_pptx
# --------------------------------------------------------------------------- #
# Synthetic corpus + profiles.
# --------------------------------------------------------------------------- #
_ES = [
"El producto llegó en perfecto estado y mucho antes de lo previsto por la tienda",
"La calidad de los materiales es realmente excelente y se nota la diferencia al usarlo",
"No me convenció del todo porque esperaba bastante más por el precio que pagué finalmente",
"El servicio de atención al cliente fue rápido amable y resolvió mi problema sin demora",
"Lo recomiendo totalmente ya que ha superado con creces todas mis expectativas iniciales",
]
_EN = [
"The product arrived in perfect condition and much earlier than the store had promised me",
"The build quality is genuinely outstanding and you can really feel the difference using it",
"I was not fully convinced because I expected quite a lot more for the price i finally paid",
"Customer support was fast friendly and solved my whole problem without any delay at all",
"I highly recommend it since it has exceeded by far every one of my initial expectations",
]
def _long_reviews(n=40) -> list:
"""A corpus of long multi-sentence reviews (>= 20 words each), mixing two
languages and including a few exact duplicates."""
out = []
for i in range(n):
base = _ES if i % 3 != 0 else _EN # mostly ES, some EN
a = base[i % len(base)]
b = base[(i + 2) % len(base)]
out.append(f"{a}. {b}.")
# Inject a couple of exact duplicates.
out.append(out[0])
out.append(out[1])
return out
def _text_profile() -> dict:
"""Profile with a long free-text column (review) + a numeric + a short cat."""
return {
"table": "reviews",
"source": "/data/reviews.duckdb",
"profiled_at": "2026-06-30T10:00:00+00:00",
"n_rows": 42,
"n_cols": 3,
"quality_score": 88.0,
"columns": [
{
"name": "review",
"inferred_type": "categorical",
"categorical": {
"top": [{"value": "x", "count": 2, "pct": 0.05}],
"n_distinct": 40,
"len_mean": 180.0,
"len_min": 80,
"len_max": 220,
},
},
{
"name": "rating",
"inferred_type": "numeric",
"numeric": {"mean": 3.1, "median": 3.0, "std": 1.2,
"min": 1, "max": 5},
},
{
"name": "product",
"inferred_type": "categorical",
"categorical": {
"top": [{"value": "teclado", "count": 10, "pct": 0.25}],
"n_distinct": 6,
"len_mean": 7.0,
"len_min": 5, "len_max": 11,
},
},
],
}
def _no_text_profile() -> dict:
"""titanic-like: the only string column is short labels (Name ≈ 27 chars)."""
return {
"table": "titanic",
"n_rows": 891,
"n_cols": 3,
"columns": [
{"name": "Age", "inferred_type": "numeric",
"numeric": {"mean": 29.7, "median": 28.0, "std": 14.5}},
{"name": "Name", "inferred_type": "categorical",
"categorical": {"top": [{"value": "Braund, Mr. Owen Harris",
"count": 1, "pct": 0.001}],
"n_distinct": 891, "len_mean": 27.0,
"len_min": 12, "len_max": 82}},
{"name": "Sex", "inferred_type": "categorical",
"categorical": {"top": [{"value": "male", "count": 577,
"pct": 0.65}],
"n_distinct": 2, "len_mean": 4.6,
"len_min": 4, "len_max": 6}},
],
}
def _flatten(blocks) -> list:
"""Recursively flatten Group blocks so tests can inspect leaf blocks."""
out = []
for b in blocks:
if isinstance(b, Group):
out.extend(_flatten(b.blocks))
else:
out.append(b)
return out
# --------------------------------------------------------------------------- #
# Golden.
# --------------------------------------------------------------------------- #
def test_golden_activa_con_texto():
glossary = GlossaryCollector()
ctx = {"text_raw": {"review": _long_reviews()}, "glossary": glossary}
ch = build_text_distr(_text_profile(), ctx)
assert ch is not None, "el capítulo debe activarse con una columna de texto largo"
assert ch.id == CHAPTER_ID
assert ch.version == CHAPTER_VERSION
leaves = _flatten(ch.blocks)
kinds = [b.kind for b in leaves]
assert "heading" in kinds
assert "kv_table" in kinds # summary
assert "figure" in kinds # histogram / bars
assert "data_table" in kinds # top terms + n-grams
# KV summary mentions vocabulary metrics.
kv = next(b for b in leaves if isinstance(b, KVTable))
labels = " ".join(str(r[0]) for r in kv.rows)
assert "TTR" in labels
assert "Hapax" in labels or "hapax" in labels
# There is a terms table and at least one n-gram table.
titles = [getattr(b, "title", "") or "" for b in leaves
if isinstance(b, DataTable)]
assert any("Términos" in t for t in titles)
assert any("Bigrama" in t for t in titles)
# Glossary terms were registered (clickable destinations).
assert glossary.has("ttr")
assert glossary.has("hapax")
def test_golden_render_pdf_pptx():
profile = _text_profile()
ctx = {"text_raw": {"review": _long_reviews()},
"dataset_name": "reviews"}
chapters = build_document(profile, ctx)
ids = [c.id for c in chapters]
assert "text_distr" in ids, f"text_distr ausente en {ids}"
with tempfile.TemporaryDirectory() as d:
pdf = os.path.join(d, "t.pdf")
pptx = os.path.join(d, "t.pptx")
rp = render_automatic_eda_pdf(profile, pdf, {"title": "EDA", "ctx": ctx})
rx = render_automatic_eda_pptx(profile, pptx, {"title": "EDA", "ctx": ctx})
assert rp.get("path") and os.path.exists(pdf)
assert rx.get("path") and os.path.exists(pptx)
text = "\n".join(p.extract_text() or "" for p in PdfReader(pdf).pages)
assert "Texto libre" in text or "TTR" in text
prs = Presentation(pptx)
ptext = []
for slide in prs.slides:
for shp in slide.shapes:
if shp.has_text_frame:
ptext.append(shp.text_frame.text)
joined = "\n".join(ptext)
assert "Texto libre" in joined or "TTR" in joined
# --------------------------------------------------------------------------- #
# Edges — None.
# --------------------------------------------------------------------------- #
def test_edge_none_sin_texto_largo():
# titanic-like: short labels only → chapter must not apply.
assert build_text_distr(_no_text_profile(), {}) is None
def test_edge_none_palabras_cortas():
# Char gate passes (len_mean high) but documents are short → confirmation
# rejects them (median words below threshold).
profile = _text_profile()
short = ["palabra " * 3] * 30 # 3 words each, < _MIN_WORDS
ctx = {"text_raw": {"review": short}}
assert build_text_distr(profile, ctx) is None
def test_edge_none_empty_profile():
assert build_text_distr({}, {}) is None
assert build_text_distr(None, None) is None
# --------------------------------------------------------------------------- #
# Degradation — optional libs absent.
# --------------------------------------------------------------------------- #
def test_degradacion_sin_libs(monkeypatch):
real_import = builtins.__import__
blocked = ("langdetect", "textstat", "wordcloud", "datasketch")
def fake_import(name, *a, **k):
if name in blocked or any(name.startswith(b + ".") for b in blocked):
raise ImportError(f"simulado: {name}")
return real_import(name, *a, **k)
monkeypatch.setattr(builtins, "__import__", fake_import)
ctx = {"text_raw": {"review": _long_reviews()}}
ch = build_text_distr(_text_profile(), ctx)
# Still builds (the cheap, stdlib-only pieces remain) and never raises.
assert ch is not None
leaves = _flatten(ch.blocks)
assert any(isinstance(b, KVTable) for b in leaves)
assert any(isinstance(b, DataTable) for b in leaves)
# A degradation note is present mentioning the missing optional libs.
notes = " ".join(b.text for b in leaves if isinstance(b, Note))
assert "langdetect" in notes or "textstat" in notes or "datasketch" in notes
@@ -31,6 +31,7 @@ CHAPTER_ORDER = [
"analisis_llm", # LLM interpretation — sits next to overview (user request)
"num_distr", # numeric distributions
"cat_distr", # categorical distributions
"text_distr", # free-text / NLP distributions (non-tabular content)
"calidad", # data quality
"correlacion", # correlations / associations
"relaciones", # key relations: declared/candidate PK + FK (inter/intra-table)
@@ -0,0 +1,102 @@
---
id: compute_text_duplicates_py_datascience
name: compute_text_duplicates
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: pure
signature: "def compute_text_duplicates(texts, near_threshold=0.85, sample_max=2000) -> dict"
description: "Detecta documentos duplicados en un corpus de texto. Los duplicados EXACTOS se calculan siempre con la stdlib: cada documento se normaliza (colapsa espacios, strip, lower) y se hashea con SHA-1; n_exact_dup es cuántos docs repiten uno ya visto y exact_dup_pct su porcentaje. Los CASI-duplicados (near-dup) usan la dependencia OPCIONAL datasketch (MinHash + LSH sobre 3-shingles de palabras); si no está instalada, esa parte degrada a available:False sin afectar al resto. Estilo dict-no-throw del grupo eda — nunca lanza."
tags: [eda, datascience, text, nlp, duplicates, minhash, pure, python]
uses_functions: []
uses_types: []
returns: []
returns_optional: false
error_type: ""
imports: [hashlib, re]
example: |
from datascience.compute_text_duplicates import compute_text_duplicates
texts = ["El gato come pescado", "El gato come pescado", "Un perro ladra"]
result = compute_text_duplicates(texts)
# {"n_docs": 3, "n_exact_dup": 1, "exact_dup_pct": 33.33, "n_unique": 2,
# "near_dup": {"available": False, "n_near_dup_docs": 0}}
tested: true
tests:
- "test_duplicados_exactos"
- "test_sin_duplicados"
- "test_vacio"
- "test_near_dup_degrada"
test_file_path: "python/functions/datascience/compute_text_duplicates_test.py"
file_path: "python/functions/datascience/compute_text_duplicates.py"
params:
- name: texts
desc: "Lista de documentos de texto. Los elementos None o que no sean str se descartan silenciosamente; n_docs cuenta solo los documentos válidos. None como argumento se trata como lista vacía."
- name: near_threshold
desc: "Umbral de similitud Jaccard (01) para considerar dos documentos casi-duplicados en el cálculo near-dup vía MinHashLSH. Solo aplica si datasketch está instalada. Default 0.85."
- name: sample_max
desc: "Número máximo de documentos muestreados (los primeros) para el cálculo near-dup, que es O(n) en memoria de MinHashes. No afecta al conteo de duplicados exactos, que siempre recorre todo el corpus. Default 2000."
output: "Dict con exactamente 5 claves, siempre presentes: n_docs (int, docs válidos), n_exact_dup (int, docs que repiten un texto normalizado ya visto = n_docs - n_unique), exact_dup_pct (float a 2 decimales = n_exact_dup/n_docs*100, o None si el corpus está vacío), n_unique (int, nº de textos normalizados distintos), y near_dup (sub-dict con available:bool y n_near_dup_docs:int; cuando available es True incluye además threshold con el near_threshold usado). La función nunca lanza: captura toda excepción y degrada."
---
## Ejemplo
```python
from datascience.compute_text_duplicates import compute_text_duplicates
# Tres copias del mismo texto (con espacios/casing distintos) + dos únicos.
texts = [
"El gato come pescado",
"El gato come pescado",
"el GATO come pescado", # mismo tras normalizar
"Un perro ladra",
"La luna brilla",
]
compute_text_duplicates(texts)
# {
# "n_docs": 5,
# "n_exact_dup": 2, # 3 copias del primer texto => 2 repeticiones
# "exact_dup_pct": 40.0, # 2 / 5 * 100
# "n_unique": 3, # 3 textos normalizados distintos
# "near_dup": {"available": False, "n_near_dup_docs": 0}, # datasketch ausente
# }
# Corpus vacío: contrato estable, exact_dup_pct None, sin excepción.
compute_text_duplicates([])
# {"n_docs": 0, "n_exact_dup": 0, "exact_dup_pct": None, "n_unique": 0,
# "near_dup": {"available": False, "n_near_dup_docs": 0}}
```
## Cuando usarla
Úsala en la fase de calidad de un EDA de texto, cuando quieras saber cuánto de
tu corpus es ruido duplicado antes de entrenar, vectorizar o muestrear: te da
el porcentaje de duplicados exactos (`exact_dup_pct`), el número de documentos
únicos (`n_unique`) y, si tienes `datasketch` instalada, una estimación de
casi-duplicados (paráfrasis, copias con pequeñas ediciones) vía MinHash + LSH.
Pásale directamente la columna/lista de textos crudos; la función filtra None y
no-str por ti y nunca lanza, así que es segura para encadenar en pipelines de
perfilado.
## Gotchas
- **Near-dup requiere `datasketch` (opcional).** Si la librería no está
instalada, `near_dup` degrada a `{"available": False, "n_near_dup_docs": 0}`
(sin clave `threshold`) y el resto del resultado se calcula igual. Los
duplicados **exactos** funcionan siempre porque solo usan la stdlib (hash).
- **Normalización de exactos.** Dos textos cuentan como el mismo duplicado
exacto si coinciden tras `" ".join(doc.split()).strip().lower()`: se colapsan
espacios/tabuladores/saltos, se recortan extremos y se ignora el caso. Cambios
de puntuación o acentos SÍ los distinguen (no se eliminan).
- **`n_exact_dup` cuenta repeticiones, no grupos.** Con 3 copias de un mismo
texto, `n_exact_dup` es 2 (las dos copias extra), no 1. Equivale a
`n_docs - n_unique`.
- **`exact_dup_pct` es `None` con corpus vacío** (no `ZeroDivisionError`); en
cualquier otro caso es un float redondeado a 2 decimales.
- **`sample_max` solo limita el near-dup.** El conteo de duplicados exactos
recorre todo el corpus; el near-dup muestrea los primeros `sample_max`
documentos para acotar memoria. Si el corpus está ordenado, considera barajar
antes para que la muestra sea representativa.
- **Elementos no-str se descartan.** `True`/`False` no cuentan como str y se
ignoran igual que `None`; `n_docs` refleja solo los documentos válidos.
@@ -0,0 +1,128 @@
"""Detección de documentos duplicados en un corpus de texto.
Función pura, estilo dict-no-throw del grupo `eda`: nunca lanza, siempre
devuelve el mismo contrato de claves. Los duplicados EXACTOS se calculan
siempre con la stdlib (normalización + hash SHA-1). Los CASI-duplicados
(near-dup) requieren la dependencia opcional `datasketch`; si no está
instalada, esa parte degrada limpiamente a ``available: False`` sin afectar
al resto del cálculo.
"""
import hashlib
import re
def _compute_near_dup(valid, near_threshold, sample_max):
"""Cuenta documentos con al menos otro casi-duplicado vía MinHash + LSH.
Import perezoso de ``datasketch``. Si la librería no está disponible (o
cualquier paso falla), degrada a ``{"available": False, "n_near_dup_docs": 0}``
sin propagar la excepción.
Args:
valid: lista de str ya filtrada (sin None ni no-str).
near_threshold: umbral de similitud Jaccard para LSH.
sample_max: número máximo de documentos a muestrear.
Returns:
dict con ``available`` (bool) y ``n_near_dup_docs`` (int). Cuando
``available`` es True, incluye además ``threshold``.
"""
try:
from datasketch import MinHash, MinHashLSH
except Exception:
return {"available": False, "n_near_dup_docs": 0}
try:
docs = valid[:sample_max]
num_perm = 128
lsh = MinHashLSH(threshold=near_threshold, num_perm=num_perm)
minhashes = {}
for i, doc in enumerate(docs):
tokens = re.findall(r"\w+", doc.lower())
shingles = set()
for j in range(len(tokens) - 2):
shingles.add(" ".join(tokens[j:j + 3]))
# Documentos con menos de 3 tokens no generan 3-shingles: caemos a
# los tokens sueltos para no perderlos del todo.
if not shingles:
shingles = set(tokens)
if not shingles:
# Documento sin tokens (cadena vacía / solo símbolos): se omite.
continue
m = MinHash(num_perm=num_perm)
for sh in shingles:
m.update(sh.encode("utf-8"))
key = "d{}".format(i)
minhashes[key] = m
lsh.insert(key, m)
n_near = 0
for key, m in minhashes.items():
matches = lsh.query(m)
if len(matches) > 1:
n_near += 1
return {
"available": True,
"n_near_dup_docs": int(n_near),
"threshold": near_threshold,
}
except Exception:
return {"available": False, "n_near_dup_docs": 0}
def compute_text_duplicates(texts, near_threshold=0.85, sample_max=2000) -> dict:
"""Detecta duplicados exactos y casi-duplicados en un corpus de texto.
Args:
texts: lista de documentos. Los elementos None o que no sean str se
descartan; ``n_docs`` cuenta solo los válidos.
near_threshold: umbral de similitud Jaccard para considerar dos
documentos casi-duplicados (solo near-dup, requiere datasketch).
sample_max: tope de documentos muestreados para el cálculo near-dup.
Returns:
dict con las claves ``n_docs``, ``n_exact_dup``, ``exact_dup_pct``
(float redondeado a 2 decimales, o None si el corpus está vacío),
``n_unique`` y ``near_dup`` (sub-dict con ``available`` y
``n_near_dup_docs``, más ``threshold`` cuando está disponible).
Nunca lanza: captura toda excepción y degrada.
"""
# Filtrado defensivo de documentos válidos.
try:
valid = [t for t in texts if isinstance(t, str)] if texts is not None else []
except Exception:
valid = []
n_docs = len(valid)
# Duplicados exactos: normalizar + hash SHA-1 (stdlib, siempre disponible).
try:
seen = set()
n_exact_dup = 0
for doc in valid:
norm = " ".join(doc.split()).strip().lower()
digest = hashlib.sha1(norm.encode("utf-8")).hexdigest()
if digest in seen:
n_exact_dup += 1
else:
seen.add(digest)
n_unique = len(seen)
except Exception:
n_exact_dup = 0
n_unique = 0
exact_dup_pct = round(n_exact_dup / n_docs * 100, 2) if n_docs > 0 else None
# Casi-duplicados: opcional vía datasketch, degrada solo.
near_dup = _compute_near_dup(valid, near_threshold, sample_max)
return {
"n_docs": n_docs,
"n_exact_dup": n_exact_dup,
"exact_dup_pct": exact_dup_pct,
"n_unique": n_unique,
"near_dup": near_dup,
}
@@ -0,0 +1,77 @@
"""Tests para compute_text_duplicates.
Importa el modulo hoja directamente (`datascience.compute_text_duplicates`)
para no depender de que el paquete reexporte la funcion en su __init__.
datasketch normalmente NO esta instalada en el venv, asi que near_dup
degrada a available=False; los tests no requieren la libreria.
"""
from datascience.compute_text_duplicates import compute_text_duplicates
EXPECTED_KEYS = {"n_docs", "n_exact_dup", "exact_dup_pct", "n_unique", "near_dup"}
def test_duplicados_exactos():
"""3 copias del mismo texto + 2 únicos: n_exact_dup=2, pct>0."""
texts = [
"El gato come pescado",
"El gato come pescado",
"el GATO come pescado", # mismo tras normalizar (espacios + case)
"Un perro ladra",
"La luna brilla",
]
result = compute_text_duplicates(texts)
assert set(result.keys()) == EXPECTED_KEYS
assert result["n_docs"] == 5
# 3 copias del primer texto (2 son repeticion) + 2 textos unicos.
assert result["n_exact_dup"] == 2
assert result["n_unique"] == 3
assert result["exact_dup_pct"] is not None
assert result["exact_dup_pct"] > 0
# 2 / 5 * 100 = 40.0
assert abs(result["exact_dup_pct"] - 40.0) < 1e-9
def test_sin_duplicados():
"""Corpus sin repeticiones: n_exact_dup=0, n_unique==n_docs."""
texts = [
"primero documento distinto",
"segundo documento distinto",
"tercero documento distinto",
]
result = compute_text_duplicates(texts)
assert result["n_docs"] == 3
assert result["n_exact_dup"] == 0
assert result["n_unique"] == 3
assert abs(result["exact_dup_pct"] - 0.0) < 1e-9
def test_vacio():
"""Corpus vacio: n_docs 0, exact_dup_pct None, no lanza."""
result = compute_text_duplicates([])
assert set(result.keys()) == EXPECTED_KEYS
assert result["n_docs"] == 0
assert result["n_exact_dup"] == 0
assert result["exact_dup_pct"] is None
assert result["n_unique"] == 0
assert result["near_dup"]["n_near_dup_docs"] == 0
def test_near_dup_degrada():
"""near_dup expone 'available' (bool) y no lanza aunque falte datasketch."""
texts = ["uno dos tres cuatro", "uno dos tres cuatro cinco", "algo distinto"]
result = compute_text_duplicates(texts)
near = result["near_dup"]
assert "available" in near
assert isinstance(near["available"], bool)
assert "n_near_dup_docs" in near
assert isinstance(near["n_near_dup_docs"], int)
# Tambien tolera None y entradas no-str sin lanzar.
mixed = compute_text_duplicates(["hola", None, 123, "hola"])
assert mixed["n_docs"] == 2
assert mixed["n_exact_dup"] == 1
@@ -0,0 +1,86 @@
---
id: compute_text_length_stats_py_datascience
name: compute_text_length_stats
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: pure
signature: "def compute_text_length_stats(texts, n_bins=20) -> dict"
description: "Profiles the length distribution of a corpus of text documents for EDA: per-document characters, words (unicode \\w+ tokens) and sentences (segments split on .!?… with a minimum of 1 per non-empty doc), each summarized with mean/p50/p90/p99/min/max (nearest-rank percentiles), plus an equal-width histogram of per-document word counts. None and non-str items are discarded. Dict-no-throw: never raises. Stdlib only (re)."
tags: [eda, datascience, text, nlp, length, statistics, pure, python]
uses_functions: []
uses_types: []
returns: []
returns_optional: false
error_type: ""
imports: [re, math]
example: |
from datascience.compute_text_length_stats import compute_text_length_stats
result = compute_text_length_stats(["Hola mundo.", "Una frase mas larga aqui."], n_bins=5)
tested: true
tests:
- "test_basico"
- "test_vacio"
- "test_descarta_none"
- "test_un_documento"
test_file_path: "python/functions/datascience/compute_text_length_stats_test.py"
file_path: "python/functions/datascience/compute_text_length_stats.py"
params:
- name: texts
desc: "List of text documents (str). None entries and any non-str items (ints, floats, etc.) are discarded before any computation. An empty string \"\" is kept (chars 0, words 0, sentences 0)."
- name: n_bins
desc: "Number of equal-width bins for the per-document word-count histogram. Default 20. When all docs have the same word count, there are <2 docs, or n_bins < 1, a single covering bin is returned instead."
output: "Dict with keys n_docs (int), chars, words, sentences and word_hist. Each of the three axis sub-dicts has the exact keys mean (float, 2 decimals), p50, p90, p99, min, max (ints). When there are no valid documents, n_docs is 0, every axis statistic is None and word_hist is []. word_hist is a list of {lo: float, hi: float, count: int} bins; the sum of all bin counts equals n_docs."
---
## Ejemplo
```python
from datascience.compute_text_length_stats import compute_text_length_stats
compute_text_length_stats(
[
"Hola mundo.",
"Una frase mas larga con varias palabras aqui.",
"Esto. Tiene. Tres frases distintas!",
],
n_bins=5,
)
# {
# "n_docs": 3,
# "chars": {"mean": 30.33, "p50": 35, "p90": 45, "p99": 45, "min": 11, "max": 45},
# "words": {"mean": 5.0, "p50": 5, "p90": 8, "p99": 8, "min": 2, "max": 8},
# "sentences": {"mean": 1.67, "p50": 1, "p90": 3, "p99": 3, "min": 1, "max": 3},
# "word_hist": [
# {"lo": 2.0, "hi": 3.2, "count": 1},
# {"lo": 3.2, "hi": 4.4, "count": 0},
# {"lo": 4.4, "hi": 5.6, "count": 1},
# {"lo": 5.6, "hi": 6.8, "count": 0},
# {"lo": 6.8, "hi": 8.0, "count": 1},
# ],
# }
```
## Cuando usarla
Úsala al perfilar una columna o corpus de texto libre en un EDA: cuando
necesites saber lo largos que son los documentos (en caracteres, palabras y
frases) y cómo se reparte esa longitud antes de tokenizar, vectorizar o decidir
truncados/ventanas para un modelo. Pásale la lista de strings crudos de la
columna; `None` y valores no-texto se descartan solos. Encaja en el grupo `eda`
como bloque de longitud junto a `summarize_categorical`.
## Gotchas
- Función pura, solo stdlib (`re`). No usa numpy, pandas ni sklearn.
- Percentiles por método **nearest-rank** (devuelven un valor real de la lista,
no interpolan); por eso p50/p90/p99/min/max son enteros y `mean` es el único
float (redondeado a 2 decimales).
- El conteo de frases es una **aproximación** por puntuación (`.!?…`): un texto
sin esa puntuación cuenta como 1 frase si no está vacío; abreviaturas o
ellipsis pueden inflar o reducir el conteo.
- `word_hist` es equal-width entre min y max de palabras: con todos los docs
del mismo tamaño, menos de 2 docs, o `n_bins < 1`, devuelve un único bin.
- Dict-no-throw: ante input inesperado devuelve la forma vacía
(`n_docs` 0, ejes `None`, `word_hist` []) en vez de lanzar.
@@ -0,0 +1,168 @@
"""Pure EDA helper: document length distribution for the `eda` group.
Given a list of text documents, computes the length distribution along three
axes (characters, words and sentences) plus an equal-width histogram of the
per-document word counts. Stdlib only (``re`` + ``statistics`` semantics via a
hand-rolled nearest-rank percentile). No numpy, no sklearn.
The function is dict-no-throw: it never raises. On any unexpected input it
degrades to the empty-shape result.
"""
import math
import re
_WORD_RE = re.compile(r"\w+", re.UNICODE)
_SENT_RE = re.compile(r"[.!?…]+")
def _empty_axis() -> dict:
"""Return an axis sub-dict with every statistic set to ``None``."""
return {"mean": None, "p50": None, "p90": None, "p99": None, "min": None, "max": None}
def _pct(sorted_vals, q):
"""Nearest-rank percentile of an already-sorted list.
Args:
sorted_vals: List of numbers sorted ascending.
q: Percentile in the 0..100 range.
Returns:
The value at the nearest rank, or ``None`` for an empty list.
"""
n = len(sorted_vals)
if n == 0:
return None
if q <= 0:
return sorted_vals[0]
rank = math.ceil(q / 100.0 * n)
if rank < 1:
rank = 1
if rank > n:
rank = n
return sorted_vals[rank - 1]
def _axis_stats(values) -> dict:
"""Compute mean/p50/p90/p99/min/max over a list of integer counts.
``mean`` is rounded to 2 decimals; every other statistic is an integer
(they are counts). Returns an all-``None`` axis for an empty list.
"""
if not values:
return _empty_axis()
sv = sorted(values)
return {
"mean": round(sum(sv) / len(sv), 2),
"p50": int(_pct(sv, 50)),
"p90": int(_pct(sv, 90)),
"p99": int(_pct(sv, 99)),
"min": int(sv[0]),
"max": int(sv[-1]),
}
def _word_hist(word_counts, n_bins) -> list:
"""Equal-width histogram of per-document word counts.
Builds ``n_bins`` bins between ``min`` and ``max`` of the word counts. When
every document has the same number of words, there are fewer than 2
documents, or ``n_bins`` is not at least 1, a single covering bin is
returned. With no documents the result is ``[]``. The sum of bin ``count``
always equals ``len(word_counts)``.
"""
if not word_counts:
return []
wmin = min(word_counts)
wmax = max(word_counts)
if wmax == wmin or len(word_counts) < 2 or n_bins < 1:
return [{"lo": float(wmin), "hi": float(wmax), "count": len(word_counts)}]
width = (wmax - wmin) / n_bins
bins = []
for i in range(n_bins):
lo = wmin + i * width
hi = wmin + (i + 1) * width
bins.append({"lo": float(lo), "hi": float(hi), "count": 0})
# Pin the last upper edge to the real maximum to avoid float drift.
bins[-1]["hi"] = float(wmax)
for wc in word_counts:
if wc >= wmax:
idx = n_bins - 1
else:
idx = int((wc - wmin) / width)
if idx < 0:
idx = 0
elif idx >= n_bins:
idx = n_bins - 1
bins[idx]["count"] += 1
return bins
def compute_text_length_stats(texts, n_bins=20) -> dict:
"""Summarize the length distribution of a corpus of text documents.
For each document three lengths are measured: characters (``len(doc)``),
words (count of ``\\w+`` unicode tokens) and sentences (non-empty segments
after splitting on ``.!?…``, with a minimum of 1 for any non-empty
document). For each axis the mean, p50, p90, p99, min and max are reported,
plus an equal-width histogram of the per-document word counts.
``None`` entries and any non-``str`` items in ``texts`` are discarded.
The function never raises: on empty/``None`` input or any internal error it
returns the empty-shape result (``n_docs`` 0, all-``None`` axes, ``[]``
histogram).
Args:
texts: List of text documents (``str``). ``None`` and non-``str``
items are dropped.
n_bins: Number of equal-width bins for the word-count histogram.
Default 20.
Returns:
Dict with keys ``n_docs``, ``chars``, ``words``, ``sentences`` and
``word_hist``. Each of the three axes is a sub-dict with ``mean``
(float, 2 decimals), ``p50``, ``p90``, ``p99``, ``min`` and ``max``
(ints), all ``None`` when there are no documents. ``word_hist`` is a
list of ``{lo, hi, count}`` bins whose ``count`` sums to ``n_docs``.
"""
empty_axis = _empty_axis()
fallback = {
"n_docs": 0,
"chars": dict(empty_axis),
"words": dict(empty_axis),
"sentences": dict(empty_axis),
"word_hist": [],
}
try:
if not texts:
return fallback
docs = [t for t in texts if isinstance(t, str)]
n_docs = len(docs)
if n_docs == 0:
return fallback
char_counts = [len(d) for d in docs]
word_counts = [len(_WORD_RE.findall(d)) for d in docs]
sent_counts = []
for d in docs:
segments = [s for s in _SENT_RE.split(d) if s.strip()]
n = len(segments)
if d and n == 0:
# Non-empty document with no detectable sentence: count as 1.
n = 1
sent_counts.append(n)
return {
"n_docs": n_docs,
"chars": _axis_stats(char_counts),
"words": _axis_stats(word_counts),
"sentences": _axis_stats(sent_counts),
"word_hist": _word_hist(word_counts, n_bins),
}
except Exception:
return fallback
@@ -0,0 +1,70 @@
"""Tests para compute_text_length_stats.
Inserta `python/functions` en sys.path (relativo a este archivo) para importar
el modulo hoja por su paquete `datascience`, sin depender de que el paquete lo
reexporte en su __init__.
"""
import os
import sys
sys.path.insert(0, os.path.dirname(os.path.dirname(os.path.abspath(__file__))))
from datascience.compute_text_length_stats import compute_text_length_stats
def test_basico():
"""Varios textos de longitudes distintas: stats y histograma coherentes."""
texts = [
"Hola mundo.", # 2 words, 1 sentence
"Una frase mas larga con varias palabras aqui.", # 8 words, 1 sentence
"Corto.", # 1 word, 1 sentence
"Esto. Tiene. Tres frases distintas!", # 5 words, 3 sentences
]
result = compute_text_length_stats(texts)
assert result["n_docs"] == 4
# Diferentes longitudes en palabras -> max estrictamente mayor que min.
assert result["words"]["max"] > result["words"]["min"]
# El histograma de palabras no esta vacio.
assert result["word_hist"] != []
# La suma de counts del histograma cubre todos los documentos.
assert sum(b["count"] for b in result["word_hist"]) == result["n_docs"]
# mean es float redondeado; min/max son enteros.
assert isinstance(result["words"]["mean"], float)
assert isinstance(result["words"]["min"], int)
assert isinstance(result["words"]["max"], int)
# El documento con 3 frases empuja el max de sentences a >= 3.
assert result["sentences"]["max"] >= 3
def test_vacio():
"""Lista vacia: n_docs 0, subdicts None, word_hist []."""
result = compute_text_length_stats([])
assert result["n_docs"] == 0
for axis in ("chars", "words", "sentences"):
for key in ("mean", "p50", "p90", "p99", "min", "max"):
assert result[axis][key] is None
assert result["word_hist"] == []
def test_descarta_none():
"""None y valores no-str se descartan del computo."""
result = compute_text_length_stats(["hello world", None, 123, 4.5, "foo bar baz"])
# Solo dos strings validos.
assert result["n_docs"] == 2
assert result["words"]["min"] == 2 # "hello world"
assert result["words"]["max"] == 3 # "foo bar baz"
assert sum(b["count"] for b in result["word_hist"]) == 2
def test_un_documento():
"""Un solo documento: word_hist tiene exactamente un bin con count 1."""
result = compute_text_length_stats(["solo un documento aqui"])
assert result["n_docs"] == 1
assert len(result["word_hist"]) == 1
assert result["word_hist"][0]["count"] == 1
# Con un unico documento, p50 == min == max == su numero de palabras (4).
assert result["words"]["min"] == 4
assert result["words"]["max"] == 4
assert result["words"]["p50"] == 4
@@ -0,0 +1,88 @@
---
id: compute_text_readability_py_datascience
name: compute_text_readability
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: pure
signature: "def compute_text_readability(texts, sample_max=500) -> dict"
description: "Calcula la legibilidad Flesch Reading Ease de un corpus de texto usando textstat con import perezoso y degradación. Filtra None/no-str/vacíos, muestrea hasta sample_max documentos (los primeros) y agrega los scores Flesch en {mean, p50, min, max}. Si textstat no está instalada devuelve available=False sin lanzar. Estilo dict-no-throw del grupo eda — nunca lanza."
tags: [eda, datascience, text, nlp, readability, flesch, textstat, pure, python]
uses_functions: []
uses_types: []
returns: []
returns_optional: false
error_type: ""
imports: [math, textstat]
example: |
from datascience.compute_text_readability import compute_text_readability
out = compute_text_readability(["The cat sat on the mat. It was warm and sunny."])
# {"available": True, "n_scored": 1, "flesch": {"mean": 109.0, "p50": 109.0, "min": 108.96..., "max": 108.96...}}
tested: true
tests:
- "test_prosa_ingles"
- "test_vacio"
- "test_degradacion"
test_file_path: "python/functions/datascience/compute_text_readability_test.py"
file_path: "python/functions/datascience/compute_text_readability.py"
params:
- name: texts
desc: "Lista de str (documentos del corpus). Los elementos None, no-str o vacíos tras strip() se descartan silenciosamente. El orden se respeta: el muestreo toma los primeros documentos válidos."
- name: sample_max
desc: "Número máximo de documentos válidos a puntuar (los primeros). Default 500. Acota el coste en corpus grandes. Valores no convertibles a int caen a 500; negativos se tratan como 0."
output: "Dict con exactamente 3 claves siempre presentes: available (bool: True si textstat se pudo importar), n_scored (int: nº de documentos efectivamente puntuados), flesch (dict con mean, p50, min, max). mean y p50 redondeados a 1 decimal; p50 por nearest-rank sobre los scores ordenados; min/max son los scores extremos sin redondear. Todos los valores de flesch son None cuando n_scored es 0. La función nunca lanza: cualquier excepción global (incluida ImportError de textstat) degrada a available=False, n_scored=0 y flesch todo None."
---
## Ejemplo
```python
from datascience.compute_text_readability import compute_text_readability
textos = [
"The cat sat on the mat. It was a warm and sunny day in the park.",
"Reading is a wonderful habit. Books open doors to new worlds and ideas.",
"He ran quickly to the store to buy some fresh bread and a bottle of milk.",
]
compute_text_readability(textos)
# {
# "available": True,
# "n_scored": 3,
# "flesch": {"mean": 91.4, "p50": 95.4, "min": 70.08..., "max": 108.83...}
# }
# Corpus vacío (textstat presente): available True pero nada que puntuar.
compute_text_readability([])
# {"available": True, "n_scored": 0,
# "flesch": {"mean": None, "p50": None, "min": None, "max": None}}
```
## Cuando usarla
Úsala en un EDA de texto cuando necesites una métrica única y comparable de
**lo fácil que es de leer** un corpus de documentos (descripciones, reviews,
artículos, tickets). Devuelve el resumen Flesch Reading Ease agregado
(`mean`/`p50`/`min`/`max`) listo para un report o un bloque del notebook, sin
tener que iterar `textstat` a mano. Pásale la lista de textos crudos y, si el
corpus es grande, limita el coste con `sample_max`. El estilo dict-no-throw
permite incrustarla en pipelines del grupo `eda` sin envolver en try/except.
## Gotchas
- **`textstat` es una dependencia opcional.** Si no está instalada (o falla al
importar) la función NO lanza: devuelve `available=False`, `n_scored=0` y
`flesch` todo `None`. Comprueba `available` antes de interpretar los números.
- **Flesch Reading Ease está pensado para prosa en inglés.** Aplicado a otros
idiomas o a texto no-prosa (código, listas, tablas, cadenas muy cortas) los
scores no son interpretables, aunque se calculen sin error.
- **Escala Flesch:** valores **altos** = más fácil de leer (≈90100 muy fácil),
valores **bajos** = más difícil (puede ser negativo en texto muy denso). No
se recortan a ningún rango: se reportan tal cual los devuelve `textstat`.
- **`available=True` con `n_scored=0`** significa que `textstat` está presente
pero el corpus no aportó documentos puntuables (vacío, solo None/no-str, o
todos los docs fallaron al puntuar). Es distinto de `available=False`.
- **Muestreo = los primeros `sample_max`**, no aleatorio. Si el orden del corpus
está sesgado, el resumen reflejará ese sesgo.
- **`mean` y `p50` redondean a 1 decimal**; `min`/`max` se devuelven sin
redondear (los scores extremos reales).
@@ -0,0 +1,121 @@
"""Legibilidad Flesch Reading Ease de un corpus de texto.
Función pura del grupo `eda`, estilo dict-no-throw: nunca lanza. Usa la
librería `textstat` con import perezoso y degradación: si `textstat` no está
instalada (o falla al importar), devuelve un resultado con `available=False`
en lugar de propagar el error.
"""
def _percentile_nearest_rank(sorted_values, pct):
"""Percentil por nearest-rank sobre una lista ya ordenada ascendente.
rank = ceil(pct/100 * n); índice 1-based recortado a [1, n].
Devuelve None si la lista está vacía.
"""
n = len(sorted_values)
if n == 0:
return None
import math
rank = math.ceil((pct / 100.0) * n)
if rank < 1:
rank = 1
if rank > n:
rank = n
return sorted_values[rank - 1]
def compute_text_readability(texts, sample_max=500) -> dict:
"""Calcula la legibilidad Flesch Reading Ease de un corpus.
Args:
texts: lista de str. Los elementos None, no-str o vacíos (tras strip)
se descartan. Se muestrean los primeros `sample_max` documentos
válidos.
sample_max: número máximo de documentos a puntuar (los primeros).
Returns:
Dict con la forma exacta::
{"available": bool, "n_scored": int,
"flesch": {"mean": float|None, "p50": float|None,
"min": float|None, "max": float|None}}
`available` es True si `textstat` se pudo importar. La función nunca
lanza: cualquier excepción global degrada a `available=False`.
"""
empty = {
"available": False,
"n_scored": 0,
"flesch": {"mean": None, "p50": None, "min": None, "max": None},
}
try:
# Import perezoso con degradación: textstat es una dependencia opcional.
try:
import textstat
except Exception:
return {
"available": False,
"n_scored": 0,
"flesch": {"mean": None, "p50": None, "min": None, "max": None},
}
# Filtrar y muestrear documentos válidos (los primeros sample_max).
docs = []
if texts is not None:
try:
limit = int(sample_max)
except Exception:
limit = 500
if limit < 0:
limit = 0
for item in texts:
if not isinstance(item, str):
continue
if item.strip() == "":
continue
docs.append(item)
if len(docs) >= limit:
break
scores = []
for doc in docs:
try:
score = textstat.flesch_reading_ease(doc)
except Exception:
continue
try:
score = float(score)
except Exception:
continue
scores.append(score)
n_scored = len(scores)
if n_scored == 0:
# textstat presente pero corpus vacío / sin puntuar.
return {
"available": True,
"n_scored": 0,
"flesch": {"mean": None, "p50": None, "min": None, "max": None},
}
mean_val = round(sum(scores) / n_scored, 1)
sorted_scores = sorted(scores)
p50_raw = _percentile_nearest_rank(sorted_scores, 50)
p50_val = round(p50_raw, 1) if p50_raw is not None else None
min_val = sorted_scores[0]
max_val = sorted_scores[-1]
return {
"available": True,
"n_scored": n_scored,
"flesch": {
"mean": mean_val,
"p50": p50_val,
"min": min_val,
"max": max_val,
},
}
except Exception:
return empty
@@ -0,0 +1,74 @@
"""Tests para compute_text_readability."""
import sys
import os
import builtins
sys.path.insert(0, os.path.join(os.path.dirname(__file__), "..", ".."))
from datascience.compute_text_readability import compute_text_readability
EXPECTED_KEYS = {"available", "n_scored", "flesch"}
FLESCH_KEYS = {"mean", "p50", "min", "max"}
def test_prosa_ingles():
"""Varios textos en prosa inglesa: available True, n_scored>0, mean no None."""
texts = [
"The cat sat on the mat. It was a warm and sunny day in the park.",
"She sells sea shells by the sea shore. The shells she sells are surely sea shells.",
"Reading is a wonderful habit. Books open doors to new worlds and ideas.",
"He ran quickly to the store to buy some fresh bread and a bottle of milk.",
]
out = compute_text_readability(texts)
assert set(out.keys()) == EXPECTED_KEYS
assert out["available"] is True
assert out["n_scored"] > 0
assert set(out["flesch"].keys()) == FLESCH_KEYS
assert out["flesch"]["mean"] is not None
assert out["flesch"]["p50"] is not None
assert out["flesch"]["min"] is not None
assert out["flesch"]["max"] is not None
# min <= mean/p50 <= max coherente.
assert out["flesch"]["min"] <= out["flesch"]["max"]
def test_vacio():
"""Corpus vacío con textstat presente: available True, n_scored 0, flesch None."""
out = compute_text_readability([])
assert set(out.keys()) == EXPECTED_KEYS
assert out["available"] is True
assert out["n_scored"] == 0
assert out["flesch"]["mean"] is None
assert out["flesch"]["p50"] is None
assert out["flesch"]["min"] is None
assert out["flesch"]["max"] is None
# Elementos no-str / vacíos también se descartan -> n_scored 0.
out2 = compute_text_readability([None, "", " ", 123])
assert out2["available"] is True
assert out2["n_scored"] == 0
def test_degradacion(monkeypatch):
"""Sin textstat (ImportError forzado): degrada a available False sin lanzar."""
import datascience.compute_text_readability as m
real = builtins.__import__
def fake(name, *a, **k):
if name == "textstat" or name.startswith("textstat."):
raise ImportError("simulado")
return real(name, *a, **k)
monkeypatch.setattr(builtins, "__import__", fake)
out = m.compute_text_readability(["The cat sat on the mat. It was happy and warm."])
assert out["available"] is False
assert out["n_scored"] == 0
assert out["flesch"]["mean"] is None
assert out["flesch"]["p50"] is None
assert out["flesch"]["min"] is None
assert out["flesch"]["max"] is None
@@ -0,0 +1,103 @@
---
id: compute_top_ngrams_py_datascience
name: compute_top_ngrams
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: pure
signature: "def compute_top_ngrams(texts, n=2, top_k=15, remove_stopwords=True) -> dict"
description: "Calcula los n-gramas de palabras más frecuentes de un corpus de texto (n=1 unigramas, 2 bigramas, 3 trigramas...). Tokeniza a minúsculas con re.findall(r'\\w+', ...), descarta tokens numéricos y, si remove_stopwords=True, elimina stopwords ES+EN ANTES de formar los n-gramas (n-gramas contiguos sobre la secuencia de tokens de contenido, sin cruzar documentos). Pura y autocontenida con collections.Counter, sin sklearn. Estilo dict-no-throw del grupo eda: nunca lanza."
tags: [eda, datascience, text, nlp, ngrams, bigrams, trigrams, pure, python]
uses_functions: []
uses_types: []
returns: []
returns_optional: false
error_type: ""
imports: [re, collections]
example: |
from datascience.compute_top_ngrams import compute_top_ngrams
texts = ["machine learning rocks", "we love machine learning"]
compute_top_ngrams(texts, n=2, top_k=5)
# {"n": 2, "top": [{"ngram": "machine learning", "count": 2}, ...]}
tested: true
tests:
- "test_bigramas"
- "test_trigramas"
- "test_vacio"
- "test_stopwords"
test_file_path: "python/functions/datascience/compute_top_ngrams_test.py"
file_path: "python/functions/datascience/compute_top_ngrams.py"
params:
- name: texts
desc: "Lista (o tupla) de cadenas. Los elementos None o que no sean str se descartan silenciosamente. Cada documento se tokeniza por separado; los n-gramas no cruzan la frontera entre documentos."
- name: n
desc: "Tamaño del n-grama: 1 unigramas, 2 bigramas, 3 trigramas, etc. Valores < 1 o no enteros producen top vacío (se conserva tal cual en la clave 'n' del retorno)."
- name: top_k
desc: "Número máximo de n-gramas a devolver, ordenados por frecuencia descendente con desempate alfabético determinista. Default 15. Valores negativos se tratan como 0."
- name: remove_stopwords
desc: "Si True (default) elimina las stopwords ES+EN de una lista inline (~130 términos de altísima frecuencia) ANTES de formar los n-gramas, de modo que los n-gramas se construyen sobre la secuencia de tokens de contenido."
output: "Dict con exactamente 2 claves: n (el n recibido, sin normalizar) y top (lista de dicts {'ngram': str, 'count': int} ordenada por count descendente, longitud <= top_k). ngram es la unión de los tokens del n-grama por un espacio. Corpus vacío, tokens insuficientes para formar n-gramas o cualquier excepción interna degradan a {'n': n, 'top': []}. La función nunca lanza."
---
## Ejemplo
```python
from datascience.compute_top_ngrams import compute_top_ngrams
texts = [
"machine learning rocks",
"machine learning is fun",
"we love machine learning",
]
# Bigramas (n=2): "machine learning" aparece en los 3 documentos.
compute_top_ngrams(texts, n=2, top_k=5)
# {
# "n": 2,
# "top": [
# {"ngram": "machine learning", "count": 3},
# {"ngram": "learning fun", "count": 1},
# {"ngram": "learning rocks", "count": 1},
# {"ngram": "love machine", "count": 1},
# ],
# }
# Unigramas con stopwords fuera (default): solo palabras de contenido.
compute_top_ngrams(["the cat sat on the mat"], n=1, top_k=3)
# {"n": 1, "top": [{"ngram": "cat", "count": 1},
# {"ngram": "mat", "count": 1},
# {"ngram": "sat", "count": 1}]}
```
## Cuando usarla
Úsala en la fase de EDA de texto cuando, además del vocabulario suelto, necesites
ver qué **combinaciones de palabras contiguas** dominan un corpus: colocaciones,
frases técnicas recurrentes ("machine learning", "data analyst"), o patrones de
trigramas en titulares/descripciones. Es el complemento natural de un perfil de
vocabulario: pasa de "qué palabras aparecen" a "qué secuencias aparecen". Llámala
con `n=1` para unigramas, `n=2` para bigramas y `n=3` para trigramas, y ajusta
`top_k` al tamaño de la tabla que vas a renderizar. Deja `remove_stopwords=True`
para que los n-gramas reflejen contenido y no conectores gramaticales.
## Gotchas
- **Las stopwords se eliminan ANTES de formar los n-gramas.** Con
`remove_stopwords=True` la frase "data of analysis" produce el bigrama
"data analysis" (el "of" intermedio desaparece y los tokens de contenido se
vuelven contiguos), no "data of" ni "of analysis". Si quieres preservar la
adyacencia literal del texto original, pasa `remove_stopwords=False`.
- **Los n-gramas NO cruzan documentos.** Cada elemento de `texts` se tokeniza y
recorre por separado; el último token de un documento nunca se combina con el
primero del siguiente.
- **Tokens puramente numéricos se descartan** (`tok.isdigit()`), pero los
alfanuméricos mixtos no: "3d" o "covid19" sí cuentan como tokens. Un decimal
como "3.5" se parte en "3" y "5" por `\w+` y ambos se descartan por numéricos.
- **La lista de stopwords es inline ES+EN**, pensada para textos generales en
esos dos idiomas. Para otros idiomas o jerga específica de dominio puede dejar
pasar conectores; en ese caso filtra el corpus aguas arriba o usa
`remove_stopwords=False` y posfiltra.
- **`top` puede tener menos de `top_k` elementos** si el corpus no tiene tantos
n-gramas distintos. El desempate por frecuencia es alfabético (determinista),
no por orden de aparición.
@@ -0,0 +1,94 @@
"""Top n-gramas de palabras más frecuentes de un corpus de texto.
Función pura, autocontenida (solo stdlib: re + collections.Counter). No depende
de scikit-learn ni de ninguna otra librería externa. Estilo dict-no-throw del
grupo `eda`: ante cualquier entrada degenerada o excepción interna devuelve
``{"n": n, "top": []}`` en vez de lanzar.
"""
import re
from collections import Counter
# Lista inline de stopwords ES + EN (~80 términos de altísima frecuencia).
# Se eliminan ANTES de formar los n-gramas: los n-gramas se construyen sobre la
# secuencia de tokens de contenido, no sobre el texto original.
_STOPWORDS = frozenset({
# Español
"de", "la", "que", "el", "en", "y", "a", "los", "del", "se", "las", "por",
"un", "para", "con", "no", "una", "su", "al", "lo", "como", "más", "mas",
"pero", "sus", "le", "ya", "o", "este", "", "si", "porque", "esta",
"entre", "cuando", "muy", "sin", "sobre", "también", "tambien", "me",
"hasta", "hay", "donde", "quien", "desde", "todo", "nos", "durante",
"todos", "uno", "les", "ni", "contra", "otros", "ese", "eso", "ante",
"ellos", "e", "esto", "", "antes", "algunos", "qué", "unos", "yo",
"otro", "otras", "otra", "él", "tanto", "esa", "estos", "mucho", "quienes",
"nada", "muchos", "cual", "poco", "ella", "estar", "estas", "algunas",
"algo", "nosotros",
# Inglés
"the", "of", "and", "to", "in", "is", "it", "for", "on", "with", "as",
"are", "was", "be", "this", "that", "by", "an", "or", "at", "from", "but",
"not", "have", "has", "had", "they", "you", "we", "he", "she", "his",
"her", "their", "its", "i", "my", "me", "our", "us", "do", "does", "did",
"will", "would", "can", "could", "should", "there", "which", "who", "what",
"when", "where", "how", "all", "if", "so", "than", "then", "out", "up",
})
def compute_top_ngrams(texts, n=2, top_k=15, remove_stopwords=True) -> dict:
"""Calcula los n-gramas de palabras más frecuentes de un corpus.
Args:
texts: lista de cadenas. Los elementos ``None`` o que no sean ``str`` se
descartan silenciosamente.
n: tamaño del n-grama (1 = unigramas, 2 = bigramas, 3 = trigramas...).
Valores < 1 o no enteros producen ``top`` vacío.
top_k: número máximo de n-gramas a devolver, ordenados por frecuencia
descendente (con desempate alfabético determinista).
remove_stopwords: si ``True`` elimina las stopwords ES+EN ANTES de
formar los n-gramas, de modo que los n-gramas se construyen sobre la
secuencia de tokens de contenido (no cruzando documentos).
Returns:
``{"n": n, "top": [{"ngram": "w1 w2", "count": int}, ...]}``. Corpus
vacío, sin tokens suficientes o cualquier excepción interna degrada a
``{"n": n, "top": []}``. Nunca lanza.
"""
try:
if not isinstance(n, int) or n < 1:
return {"n": n, "top": []}
try:
limit = int(top_k)
except (TypeError, ValueError):
limit = 0
if limit < 0:
limit = 0
if not isinstance(texts, (list, tuple)):
return {"n": n, "top": []}
counter = Counter()
for doc in texts:
if not isinstance(doc, str):
continue
tokens = [
tok
for tok in re.findall(r"\w+", doc.lower(), re.UNICODE)
if not tok.isdigit()
]
if remove_stopwords:
tokens = [tok for tok in tokens if tok not in _STOPWORDS]
if len(tokens) < n:
continue
for i in range(len(tokens) - n + 1):
ngram = " ".join(tokens[i:i + n])
counter[ngram] += 1
if not counter:
return {"n": n, "top": []}
ordered = sorted(counter.items(), key=lambda kv: (-kv[1], kv[0]))
top = [{"ngram": ngram, "count": count} for ngram, count in ordered[:limit]]
return {"n": n, "top": top}
except Exception:
return {"n": n, "top": []}
@@ -0,0 +1,65 @@
"""Tests para compute_top_ngrams."""
import sys
import os
# sys.path estándar: añade `python/functions/` para importar por paquete raíz.
sys.path.insert(0, os.path.join(os.path.dirname(__file__), "..", ".."))
from datascience.compute_top_ngrams import compute_top_ngrams
def test_bigramas():
# "machine learning" se repite en cada documento -> bigrama más frecuente.
texts = [
"machine learning rocks",
"machine learning is fun",
"we love machine learning",
]
result = compute_top_ngrams(texts, n=2, top_k=5)
assert result["n"] == 2
assert result["top"], "esperaba al menos un bigrama"
assert result["top"][0]["ngram"] == "machine learning"
assert result["top"][0]["count"] == 3
# Cada entrada respeta el contrato {"ngram": str, "count": int}.
for item in result["top"]:
assert isinstance(item["ngram"], str)
assert isinstance(item["count"], int)
def test_trigramas():
texts = [
"alpha beta gamma delta",
"alpha beta gamma omega",
]
# Con stopwords desactivadas para no descartar tokens de contenido.
result = compute_top_ngrams(texts, n=3, top_k=5, remove_stopwords=False)
assert result["n"] == 3
ngrams = {item["ngram"]: item["count"] for item in result["top"]}
# "alpha beta gamma" aparece en ambos documentos.
assert ngrams.get("alpha beta gamma") == 2
# Trigramas únicos de cada documento.
assert ngrams.get("beta gamma delta") == 1
assert ngrams.get("beta gamma omega") == 1
def test_vacio():
assert compute_top_ngrams([], n=2) == {"n": 2, "top": []}
# Documentos no-str / None se descartan -> corpus efectivamente vacío.
assert compute_top_ngrams([None, 123, {"a": 1}], n=2) == {"n": 2, "top": []}
def test_stopwords():
# "the cat" debería desaparecer al quitar stopwords ("the" es stopword EN).
texts = ["the cat the cat the cat"]
con = compute_top_ngrams(texts, n=2, top_k=10, remove_stopwords=True)
sin = compute_top_ngrams(texts, n=2, top_k=10, remove_stopwords=False)
con_ngrams = {item["ngram"] for item in con["top"]}
sin_ngrams = {item["ngram"] for item in sin["top"]}
# Sin filtrar, el bigrama dominante es "the cat".
assert "the cat" in sin_ngrams
# Al filtrar stopwords, ya no aparece "the cat" (queda solo "cat cat").
assert "the cat" not in con_ngrams
assert con_ngrams != sin_ngrams
@@ -0,0 +1,91 @@
---
id: compute_vocabulary_stats_py_datascience
name: compute_vocabulary_stats
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: pure
signature: "def compute_vocabulary_stats(texts: list, top_k: int = 20, remove_stopwords: bool = True) -> dict"
description: "Profiles the vocabulary of a text corpus for EDA: tokenises a list of documents, counts term frequencies and derives lexical-richness measures — total tokens, unique types, type-token ratio (TTR), hapax legomena and the top-k most frequent terms. Pure, stdlib only (re + collections.Counter); no nltk, no sklearn. Inline ES+EN stopword list, opt-out via remove_stopwords. Never raises: empty/degenerate input returns the zeroed result."
tags: [eda, datascience, text, nlp, vocabulary, ttr, hapax, pure, python]
uses_functions: []
uses_types: []
returns: []
returns_optional: false
error_type: ""
imports: [re, collections]
example: |
from datascience.compute_vocabulary_stats import compute_vocabulary_stats
result = compute_vocabulary_stats(["el gato y el perro", "gato veloz"], top_k=5)
tested: true
tests:
- "test_basico"
- "test_vacio"
- "test_stopwords_quitadas"
- "test_stopwords_conservadas"
test_file_path: "python/functions/datascience/compute_vocabulary_stats_test.py"
file_path: "python/functions/datascience/compute_vocabulary_stats.py"
params:
- name: texts
desc: "List of documents (strings) forming the corpus. Entries that are None or not a str are silently discarded. Tokens are extracted per document with re.findall(r'\\w+', doc.lower(), re.UNICODE); purely numeric tokens (tok.isdigit()) are dropped."
- name: top_k
desc: "Maximum number of most-frequent terms to return in top_terms. Default 20. Does not affect n_tokens/n_types/ttr/hapax — only the length of the top_terms list."
- name: remove_stopwords
desc: "When True (default) common Spanish+English stopwords from the inline _STOPWORDS set (~120 entries) are removed from the token stream before any counting. Set False to keep every word (raw lexical profile)."
output: "Dict with the exact keys n_tokens (int), n_types (int), ttr (float|None, n_types/n_tokens rounded to 4 dp), n_hapax (int, terms occurring exactly once), hapax_pct (float|None, n_hapax/n_types*100 rounded to 2 dp) and top_terms (list of {term, count, pct} sorted by count descending, pct = count/n_tokens*100 rounded to 2 dp). For an empty corpus (no tokens after filtering): n_tokens=0, n_types=0, ttr=None, n_hapax=0, hapax_pct=None, top_terms=[]. Any exception degrades to that same empty result — the function never throws."
---
## Ejemplo
```python
from datascience.compute_vocabulary_stats import compute_vocabulary_stats
compute_vocabulary_stats(
["el gato y el perro", "gato veloz corre", "perro perro perro"],
top_k=5,
)
# {
# "n_tokens": 6, # stopwords (el, y) eliminadas por defecto
# "n_types": 3, # gato, perro, veloz, corre -> tras quitar stopwords
# "ttr": 0.5, # n_types / n_tokens
# "n_hapax": 2, # veloz, corre (1 aparicion cada uno)
# "hapax_pct": 50.0, # n_hapax / n_types * 100
# "top_terms": [
# {"term": "perro", "count": 4, "pct": 44.44},
# {"term": "gato", "count": 2, "pct": 22.22},
# ...
# ],
# }
# Perfil lexico crudo (sin filtrar stopwords):
compute_vocabulary_stats(["the cat and the dog"], remove_stopwords=False)
```
## Cuando usarla
Úsala al perfilar una columna o corpus de texto libre en un EDA del grupo `eda`:
cuando necesites medir la riqueza léxica (cuántos tokens y cuántas palabras
distintas, type-token ratio, porcentaje de palabras que solo aparecen una vez) y
ver qué términos dominan el vocabulario (top-k frecuencias). Pásale la lista de
documentos crudos (filas de la columna); `None` y valores no-string se ignoran
solos. Es el equivalente para texto largo de `summarize_categorical`, que perfila
categorías cortas.
## Gotchas
- Función pura y stdlib-only, pero el resultado depende del **idioma**: la lista
`_STOPWORDS` cubre español e inglés. Para otros idiomas pon
`remove_stopwords=False` o filtra fuera, o el perfil mezclará stopwords no
reconocidas en `top_terms`.
- La tokenización es `\w+` con `re.UNICODE`: separa por puntuación y conserva
acentos/ñ, pero NO hace stemming ni lematización — "gato" y "gatos" cuentan
como tipos distintos. Tampoco hace stripping de acentos, así que "más" (con
tilde) y "mas" son tokens diferentes (ambos están en la stoplist).
- Los tokens **puramente numéricos** (`"123"`) se descartan siempre; un token
alfanumérico mixto (`"covid19"`) se conserva.
- `ttr` baja artificialmente en corpus grandes (más texto, más repetición): no
compares TTR entre corpus de tamaños muy distintos sin normalizar.
- Nunca lanza: entrada vacía, `None`, o cualquier excepción interna devuelven el
resultado con ceros/`None`/`[]`. Comprueba `n_tokens == 0` para detectar el
caso degenerado.
@@ -0,0 +1,99 @@
"""Profile the vocabulary of a text corpus for EDA (pure, stdlib only).
Tokenises a list of documents, counts term frequencies and derives lexical
richness measures (type-token ratio, hapax legomena) plus the top-k terms.
No external NLP dependencies (no nltk, no sklearn) — only ``re`` and
``collections`` from the standard library.
"""
import re
from collections import Counter
# Common Spanish + English stopwords. Inline, lowercase, no accents stripped
# beyond what already appears here. Filtering is opt-in via remove_stopwords.
_STOPWORDS = {
# Spanish
"de", "la", "que", "el", "en", "y", "a", "los", "del", "se", "las", "por",
"un", "para", "con", "no", "una", "su", "al", "es", "lo", "como", "mas",
"más", "pero", "sus", "le", "ya", "o", "este", "si", "", "porque",
"esta", "entre", "cuando", "muy", "sin", "sobre", "tambien", "también",
"me", "hasta", "hay", "donde", "quien", "desde", "todo", "nos", "durante",
"todos", "uno", "les", "ni", "contra", "otros", "ese", "eso", "ante",
"ellos", "e", "esto", "antes", "algunos", "que", "unos", "yo", "otro",
"otras", "otra", "el", "tanto", "esa", "estos", "mucho", "nada", "muchos",
# English
"the", "of", "and", "to", "in", "is", "it", "for", "on", "with", "as",
"was", "but", "are", "this", "that", "an", "be", "by", "or", "not", "at",
"from", "my", "i", "you", "he", "she", "we", "they", "his", "her", "its",
"our", "their", "what", "which", "who", "whom", "has", "have", "had", "do",
"does", "did", "will", "would", "can", "could", "should", "may", "might",
"must", "if", "then", "than", "so", "too", "very", "just", "also", "were",
"been", "being", "there", "here", "all", "any", "some", "more", "most",
"out", "up", "down", "into", "over", "such", "only", "own", "same",
}
def compute_vocabulary_stats(texts, top_k=20, remove_stopwords=True) -> dict:
"""Profile the vocabulary of a corpus of documents.
Args:
texts: List of strings (the corpus). Entries that are None or not a
string are discarded silently.
top_k: Maximum number of most-frequent terms to include in
``top_terms``. Default 20. Does not affect the other measures.
remove_stopwords: When True (default) common ES+EN stopwords are
dropped from the token stream before any counting.
Returns:
A dict with the exact keys ``n_tokens``, ``n_types``, ``ttr``,
``n_hapax``, ``hapax_pct`` and ``top_terms``. For an empty corpus (no
tokens after filtering): n_tokens=0, n_types=0, ttr=None, n_hapax=0,
hapax_pct=None, top_terms=[]. Never raises — any exception degrades to
the empty-corpus result.
"""
empty = {
"n_tokens": 0,
"n_types": 0,
"ttr": None,
"n_hapax": 0,
"hapax_pct": None,
"top_terms": [],
}
try:
tokens = []
for doc in texts or []:
if not isinstance(doc, str):
continue
for tok in re.findall(r"\w+", doc.lower(), re.UNICODE):
if tok.isdigit():
continue
if remove_stopwords and tok in _STOPWORDS:
continue
tokens.append(tok)
n_tokens = len(tokens)
if n_tokens == 0:
return dict(empty)
counts = Counter(tokens)
n_types = len(counts)
ttr = round(n_types / n_tokens, 4)
n_hapax = sum(1 for c in counts.values() if c == 1)
hapax_pct = round(n_hapax / n_types * 100, 2)
top_terms = [
{"term": term, "count": count, "pct": round(count / n_tokens * 100, 2)}
for term, count in counts.most_common(top_k)
]
return {
"n_tokens": n_tokens,
"n_types": n_types,
"ttr": ttr,
"n_hapax": n_hapax,
"hapax_pct": hapax_pct,
"top_terms": top_terms,
}
except Exception:
return dict(empty)
@@ -0,0 +1,74 @@
"""Tests para compute_vocabulary_stats."""
import os
import sys
sys.path.insert(
0, os.path.join(os.path.dirname(__file__), "..", "..", "functions")
)
from datascience.compute_vocabulary_stats import compute_vocabulary_stats
def test_basico():
# Corpus con repeticiones y hapax. Stopwords desactivadas para controlar
# exactamente que tokens entran.
texts = ["gato gato perro", "perro perro raton", "elefante"]
r = compute_vocabulary_stats(texts, top_k=10, remove_stopwords=False)
# n_types < n_tokens cuando hay repeticiones.
assert r["n_types"] < r["n_tokens"]
assert r["n_tokens"] == 7
assert r["n_types"] == 4 # gato, perro, raton, elefante
# ttr en (0, 1].
assert 0 < r["ttr"] <= 1
assert r["ttr"] == round(4 / 7, 4)
# top_terms ordenado por count descendente.
counts = [t["count"] for t in r["top_terms"]]
assert counts == sorted(counts, reverse=True)
assert r["top_terms"][0]["term"] == "perro"
assert r["top_terms"][0]["count"] == 3
# hapax: raton y elefante aparecen exactamente una vez.
assert r["n_hapax"] == 2
assert r["hapax_pct"] == round(2 / 4 * 100, 2)
# pct coherente con count/n_tokens.
assert r["top_terms"][0]["pct"] == round(3 / 7 * 100, 2)
def test_vacio():
# Sin documentos validos -> ceros / None / [].
for arg in ([], None, [None, 123, ""], ["123 456"]):
r = compute_vocabulary_stats(arg)
assert r["n_tokens"] == 0
assert r["n_types"] == 0
assert r["ttr"] is None
assert r["n_hapax"] == 0
assert r["hapax_pct"] is None
assert r["top_terms"] == []
def test_stopwords_quitadas():
texts = ["the gato the perro", "de la casa azul"]
r = compute_vocabulary_stats(texts, remove_stopwords=True)
terms = {t["term"] for t in r["top_terms"]}
# Stopwords ES+EN no deben aparecer.
assert "the" not in terms
assert "de" not in terms
assert "la" not in terms
# Palabras de contenido si.
assert "gato" in terms
assert "casa" in terms
def test_stopwords_conservadas():
texts = ["the gato the perro", "de la casa azul"]
r = compute_vocabulary_stats(texts, remove_stopwords=False)
terms = {t["term"] for t in r["top_terms"]}
# Con el filtro desactivado, las stopwords se conservan.
assert "the" in terms
assert "de" in terms
assert "la" in terms
@@ -0,0 +1,80 @@
---
name: detect_corpus_language
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: pure
signature: "def detect_corpus_language(texts, top_k=10, sample_max=1000) -> dict"
description: "Estima la distribucion de idiomas de un corpus de textos con la libreria langdetect (import perezoso). Funcion pura y defensiva del grupo eda: filtra documentos None/no-str/vacios, muestrea hasta sample_max docs, clasifica cada uno con detect() ignorando los que langdetect no puede resolver (LangDetectException), y devuelve la distribucion top_k por frecuencia mas el idioma dominante. Si langdetect no esta instalada o algo falla, degrada a {available: False, ...} y NUNCA lanza (dict-no-throw). Seed fija (DetectorFactory.seed=0) para deteccion determinista."
tags: [eda, datascience, text, nlp, language-detection, langdetect, pure, python]
params:
- name: texts
desc: "Lista de strings (documentos). Los elementos None, no-str o vacios tras strip se descartan antes de clasificar."
- name: top_k
desc: "Numero maximo de idiomas a devolver en distribution, ordenados por count descendente (desempate por codigo ISO ascendente). Default 10."
- name: sample_max
desc: "Numero maximo de documentos a clasificar (se toman los primeros del corpus) para acotar el coste. Default 1000."
output: >
Dict con forma fija (dict-no-throw, nunca lanza):
{"available": bool, "n_detected": int,
"distribution": [{"lang": str, "count": int, "pct": float}, ...],
"dominant": str|None}.
available=True si langdetect es importable; lang son codigos ISO 639-1 ("es","en","fr",...);
pct = count/n_detected*100 redondeado a 2 decimales; n_detected = docs clasificados con exito;
dominant = idioma mas frecuente (None si no hubo detecciones). Corpus vacio con langdetect
presente -> available True, n_detected 0, distribution [], dominant None. Sin langdetect (o
fallo global) -> available False y el resto de campos a su valor vacio.
uses_functions: []
uses_types: []
returns: []
returns_optional: false
error_type: ""
imports: [langdetect]
tested: true
tests: ["test_mixto_es_en", "test_vacio", "test_degradacion"]
test_file_path: "python/functions/datascience/detect_corpus_language_test.py"
file_path: "python/functions/datascience/detect_corpus_language.py"
---
## Ejemplo
```python
import sys, os
sys.path.insert(0, os.path.join("python", "functions"))
from datascience.detect_corpus_language import detect_corpus_language
corpus = [
"este es un texto bastante largo en español para detectar el idioma correctamente",
"la inteligencia artificial transforma la manera en que trabajamos cada dia",
"this is a fairly long english text to detect the language correctly without issues",
]
out = detect_corpus_language(corpus)
# {"available": True, "n_detected": 3,
# "distribution": [{"lang": "es", "count": 2, "pct": 66.67},
# {"lang": "en", "count": 1, "pct": 33.33}],
# "dominant": "es"}
```
## Cuando usarla
Cuando perfiles una columna o corpus de texto en un EDA y necesites saber en
que idioma(s) esta escrito antes de elegir tokenizadores, stopwords, modelos
NLP o stemmers. Util tambien como check de calidad: detectar corpus mezclados
o un idioma inesperado. Llamala con la lista de textos crudos; la funcion
limpia, muestrea y resume sola.
## Gotchas
- `langdetect` es **opcional**: si no esta instalada, la funcion no lanza —
devuelve `{"available": False, "n_detected": 0, "distribution": [], "dominant": None}`.
Comprueba `out["available"]` antes de usar la distribucion.
- **Textos cortos** (pocas palabras o sin features lingüisticas) pueden no
detectarse: langdetect lanza `LangDetectException`, que se ignora y el doc no
cuenta en `n_detected`. Pasa frases razonablemente largas para resultados fiables.
- **Determinismo**: se fija `DetectorFactory.seed = 0` en cada llamada para que la
deteccion sea reproducible; sin esa semilla langdetect puede dar resultados
ligeramente distintos entre ejecuciones.
- `distribution` esta truncada a `top_k`; si el corpus tiene mas idiomas que
`top_k`, la suma de los `count` mostrados puede ser menor que `n_detected`
(pero `dominant` siempre refleja el idioma mas frecuente del corpus completo).
@@ -0,0 +1,91 @@
"""Detecta la distribucion de idiomas de un corpus de textos.
Funcion pura y defensiva: el computo es determinista y local (sin I/O de red).
La libreria opcional `langdetect` se importa de forma perezosa dentro de la
funcion; si no esta instalada (o cualquier paso falla), la funcion degrada
limpiamente a `available=False` y NUNCA lanza excepciones.
"""
def detect_corpus_language(texts, top_k=10, sample_max=1000) -> dict:
"""Estima la distribucion de idiomas de un corpus con `langdetect`.
Args:
texts: lista de strings (documentos). Los elementos None, no-str o
vacios tras strip se descartan.
top_k: numero maximo de idiomas a devolver en `distribution`,
ordenados por frecuencia descendente.
sample_max: numero maximo de documentos a clasificar (se toman los
primeros) para acotar el coste.
Returns:
dict con la forma fija (dict-no-throw):
{
"available": bool, # True si langdetect es importable
"n_detected": int, # documentos clasificados con exito
"distribution": [{"lang": str, "count": int, "pct": float}, ...],
"dominant": str | None,
}
"""
degraded = {
"available": False,
"n_detected": 0,
"distribution": [],
"dominant": None,
}
try:
# Import perezoso con degradacion: si langdetect no esta disponible,
# devolvemos el dict degradado sin lanzar.
try:
from langdetect import detect, DetectorFactory
# Semilla fija -> deteccion determinista entre ejecuciones.
DetectorFactory.seed = 0
except Exception:
return dict(degraded)
# Normaliza y filtra el corpus.
docs = []
if texts:
for t in texts:
if isinstance(t, str):
s = t.strip()
if s:
docs.append(s)
# Muestreo de los primeros `sample_max` documentos.
if sample_max is not None and sample_max >= 0:
docs = docs[:sample_max]
# Conteo por idioma; langdetect lanza LangDetectException en textos
# sin features detectables -> se ignora y se sigue.
counts: dict = {}
for doc in docs:
try:
lang = detect(doc)
except Exception:
continue
counts[lang] = counts.get(lang, 0) + 1
n_detected = sum(counts.values())
# Orden estable: por count descendente, desempate por codigo de idioma.
ordered = sorted(counts.items(), key=lambda kv: (-kv[1], kv[0]))
k = top_k if (top_k is not None and top_k >= 0) else len(ordered)
distribution = []
for lang, count in ordered[:k]:
pct = round(count / n_detected * 100, 2) if n_detected else 0.0
distribution.append({"lang": lang, "count": count, "pct": pct})
dominant = ordered[0][0] if ordered else None
return {
"available": True,
"n_detected": n_detected,
"distribution": distribution,
"dominant": dominant,
}
except Exception:
# Cualquier fallo global degrada a available False sin lanzar.
return dict(degraded)
@@ -0,0 +1,58 @@
"""Tests para detect_corpus_language."""
import builtins
import os
import sys
# Anade python/functions a sys.path para importar el paquete `datascience`.
sys.path.insert(0, os.path.join(os.path.dirname(__file__), ".."))
from datascience.detect_corpus_language import detect_corpus_language
_ES = [
"este es un texto bastante largo en español para detectar el idioma correctamente sin problemas",
"la inteligencia artificial transforma la manera en que trabajamos cada dia en muchos sectores",
]
_EN = [
"this is a fairly long english text to detect the language correctly without any length issues",
"machine learning models can classify documents into many different categories quite reliably",
]
def test_mixto_es_en():
"""Golden: corpus mixto ES+EN claro -> available True, >=2 idiomas, counts coherentes."""
out = detect_corpus_language(_ES + _EN)
assert out["available"] is True
assert out["dominant"] in {"es", "en"}
assert len(out["distribution"]) >= 2
total = sum(item["count"] for item in out["distribution"])
assert total == out["n_detected"]
assert out["n_detected"] == 4
def test_vacio():
"""Edge: lista vacia con langdetect presente -> available True, sin detecciones."""
out = detect_corpus_language([])
assert out["available"] is True
assert out["n_detected"] == 0
assert out["distribution"] == []
assert out["dominant"] is None
def test_degradacion(monkeypatch):
"""Error path: si langdetect no es importable -> degrada a available False sin lanzar."""
import datascience.detect_corpus_language as m
real_import = builtins.__import__
def fake_import(name, *a, **k):
if name == "langdetect" or name.startswith("langdetect."):
raise ImportError("simulado")
return real_import(name, *a, **k)
monkeypatch.setattr(builtins, "__import__", fake_import)
out = m.detect_corpus_language(["hola mundo", "hello world"])
assert out["available"] is False
assert out["n_detected"] == 0
assert out["distribution"] == []
assert out["dominant"] is None
@@ -0,0 +1,102 @@
---
name: extract_text_sample
kind: function
lang: py
domain: datascience
version: "1.0.0"
purity: impure
signature: "def extract_text_sample(db_path: str, table: str, columns: list, backend: str = 'duckdb', sample: int = 2000) -> dict"
description: "Muestrea columnas de texto de una tabla DuckDB/Postgres con push-down SQL (LIMIT sample), SIN traer la tabla entera a RAM. Funcion impura del grupo de capacidad `eda`: la usan los capitulos de texto/NLP del AutomaticEDA que necesitan valores crudos de texto (longitudes, tokens, ejemplos) sobre una muestra acotada. Construye el lector read-only query_fn(sql)->dict igual que build_eda_render_ctx (closure sobre duckdb_query_readonly / pg_query importados perezosamente desde infra). Escapa los identificadores con comillas dobles y lanza una sola query SELECT \"c1\", \"c2\" FROM \"table\" LIMIT n. Por columna, la lista de strings solo contiene valores NO None y NO vacios: cada celda no nula se convierte con str(...) y se descarta si queda cadena vacia. Estilo dict-no-throw del grupo eda: NUNCA lanza; ante cualquier fallo (query, conversion, backend desconocido) devuelve {status:'error', error:str, columns:{}, n:0}. La clave n reporta el numero de FILAS leidas por la query (antes de filtrar None/vacios)."
tags: [eda, datascience, text, nlp, extraction, read-only, duckdb, postgres, python]
uses_functions: [duckdb_query_readonly_py_infra, pg_query_py_infra]
uses_types: []
returns: []
returns_optional: false
error_type: "error_go_core"
imports: []
params:
- name: db_path
desc: "ruta al archivo DuckDB, o DSN PostgreSQL si backend='postgres'. Se inyecta en el closure query_fn. No se valida aqui: si la base no existe o el DSN es invalido, la query devuelve status error y el resultado es {status:'error', ...} (no lanza)."
- name: table
desc: "nombre de la tabla. Se escapa con comillas dobles en la query (SELECT ... FROM \"table\")."
- name: columns
desc: "lista de nombres de columna de texto a muestrear. Se filtra a las entradas que sean str no vacio; cada nombre se escapa con comillas dobles. Si tras filtrar queda vacia -> {status:'ok', columns:{}, n:0} sin tocar la base."
- name: backend
desc: "'duckdb' (default) o 'postgres'. Selecciona el lector read-only del registry (duckdb_query_readonly / pg_query). Cualquier otro valor -> {status:'error', error:'backend desconocido: <valor>', columns:{}, n:0}."
- name: sample
desc: "maximo de filas a muestrear (clausula LIMIT). Default 2000. Acota memoria y tiempo: con tablas grandes obtienes el primer tramo por orden fisico (sin ORDER BY), no un muestreo uniforme."
output: "dict dict-no-throw (NUNCA lanza): {status:'ok'|'error', columns:{col_name:[str,...]}, n:int, error:str}. En exito (status='ok') columns mapea cada columna pedida a la lista de sus valores de texto NO None y NO vacios (cada celda convertida con str(...)); n es el numero de FILAS leidas por la query (antes de filtrar None/vacios). columns vacio -> {status:'ok', columns:{}, n:0}. En error (backend desconocido, query con status!='ok', o cualquier excepcion) -> {status:'error', error:str, columns:{}, n:0}; la clave error solo aparece en este caso."
tested: true
tests: ["test_extract_basic", "test_backend_desconocido", "test_columns_vacio", "test_sample_limit"]
test_file_path: "python/functions/datascience/extract_text_sample_test.py"
file_path: "python/functions/datascience/extract_text_sample.py"
---
## Ejemplo
```python
import sys, os
sys.path.insert(0, os.path.join("python", "functions"))
# Import directo del submodulo (no requiere export en datascience/__init__.py).
from datascience.extract_text_sample import extract_text_sample
# Muestrea hasta 2000 filas de dos columnas de texto de una tabla DuckDB.
res = extract_text_sample(
"data/reviews.duckdb", "reviews", ["title", "body"],
backend="duckdb", sample=2000,
)
# res == {
# "status": "ok",
# "columns": {
# "title": ["Gran producto", "No funciona", ...], # solo no-None, no-""
# "body": ["Lo uso a diario...", ...],
# },
# "n": 2000, # filas leidas por la query (antes de filtrar None/vacios)
# }
# Postgres: db_path es el DSN.
res_pg = extract_text_sample(
"postgresql://user:pass@localhost:5433/trends", "comentarios", ["texto"],
backend="postgres", sample=500,
)
```
## Cuando usarla
Cuando necesites valores CRUDOS de texto de una o varias columnas para analisis
NLP/texto (distribucion de longitudes, conteo de tokens, ejemplos representativos,
deteccion de idioma) pero NO quieras cargar la tabla entera en memoria. Es el
muestreador de texto del grupo `eda`: una sola llamada con push-down `LIMIT`
devuelve listas de strings por columna, limpias de None y vacios, listas para
alimentar un capitulo de texto del AutomaticEDA o cualquier rutina de tokenizado.
Usala junto a `profile_table` / `build_eda_render_ctx` cuando el perfil agregado
no basta y hace falta el texto real.
## Gotchas
- **Impura**: lee de la base de datos a traves de `query_fn` (closure sobre
`duckdb_query_readonly` / `pg_query`). No abre conexiones fuera de esos wrappers
del registry. Estilo dict-no-throw del grupo `eda`: NUNCA lanza; ante cualquier
fallo devuelve `{status:'error', error:str, columns:{}, n:0}`.
- **`error_type` en el frontmatter es `error_go_core` por convencion del registry**
(toda funcion impura debe declararlo y el indexer lo exige), pero el codigo NO
lanza esa excepcion: degrada al dict de error. Es metadata, no comportamiento.
- **Backend desconocido**: con un `backend` que no sea `duckdb` ni `postgres`
devuelve `{status:'error', error:'backend desconocido: <valor>', columns:{},
n:0}` sin tocar la base.
- **Las listas NO incluyen None ni cadenas vacias**: cada celda no nula se pasa
por `str(...)` y se descarta si queda `""`. Por eso `len(columns[col])` puede ser
menor que `n` (que cuenta las filas leidas). Si necesitas alineacion por fila
(una entrada por fila aunque sea None), usa `build_eda_render_ctx` (raw_numeric),
no esta funcion.
- **`LIMIT sample` sin `ORDER BY`**: con tablas grandes obtienes el primer tramo
por orden fisico del backend, no un muestreo uniforme ni reproducible. Sube
`sample` para mas cobertura, o pre-ordena/aleatoriza la tabla si necesitas
representatividad.
- **DuckDB en sandbox por defecto**: `duckdb_query_readonly` abre la conexion con
`enable_external_access=False`, asi que la query solo puede leer la propia base
(no `read_csv`/`httpfs`/`ATTACH` a paths externos). Lee tablas ya existentes en
el archivo DuckDB sin problema.
- **No loguear los datos crudos**: las listas de `columns` pueden contener texto
sensible (reviews, comentarios, PII). En trazas usa solo conteos (`n`,
`len(columns[col])`) y nombres de columna, no el dict completo.
@@ -0,0 +1,112 @@
"""extract_text_sample — muestrea columnas de texto de una tabla sin cargarla en RAM.
Funcion impura (lee de la base de datos) del grupo de capacidad `eda`. Dado un
``db_path`` + ``table`` (DuckDB o PostgreSQL) y una lista de ``columns`` de texto,
trae una MUESTRA de esas columnas con push-down SQL (``LIMIT sample``), nunca la
tabla entera. La usan los capitulos de texto/NLP del AutomaticEDA que necesitan
valores crudos de texto (longitudes, tokens, ejemplos) sin materializar millones
de filas en memoria.
El lector read-only ``query_fn(sql) -> dict`` se construye igual que en
``build_eda_render_ctx`` / ``profile_table``: un closure sobre el wrapper del
registry (``duckdb_query_readonly`` / ``pg_query``), importado perezosamente
dentro de la funcion para no crear ciclos al cargar el ``__init__`` del paquete
``datascience``. Nunca abre conexiones fuera de esos wrappers.
Estilo dict-no-throw del grupo `eda`: la funcion NUNCA lanza. Captura cualquier
excepcion (query, conversion) y devuelve ``{"status":"error", "error":str(e),
"columns":{}, "n":0}``. Si la query subyacente devuelve ``status != "ok"``, se
propaga como error con el mensaje del wrapper.
Por columna, la lista de strings solo contiene valores NO nulos y NO vacios:
cada celda no-None se convierte con ``str(...)`` y se descarta si queda ``""``.
La clave ``n`` reporta el numero de FILAS leidas por la query (antes de filtrar
los None/vacios), util para saber cuanto se muestreo realmente.
"""
def extract_text_sample(db_path, table, columns, backend="duckdb", sample=2000):
"""Muestrea columnas de texto de una tabla DuckDB/Postgres con push-down SQL.
Args:
db_path: ruta al archivo DuckDB, o DSN PostgreSQL si backend="postgres".
Se inyecta en el closure query_fn. No se valida aqui: si la base no
existe o el DSN es invalido, la query devuelve status error y el
resultado es {status:'error', ...} (no lanza).
table: nombre de la tabla. Se escapa con comillas dobles en la query.
columns: lista de nombres de columna de texto a muestrear. Se filtra a las
entradas que sean str no vacio; cada nombre se escapa con comillas
dobles. Si tras filtrar queda vacia -> {status:'ok', columns:{}, n:0}.
backend: "duckdb" (default) o "postgres". Selecciona el lector read-only
del registry (duckdb_query_readonly / pg_query). Cualquier otro valor
-> {status:'error', error:'backend desconocido: ...', columns:{}, n:0}.
sample: maximo de filas a muestrear (clausula LIMIT). Default 2000. Acota
memoria y tiempo: con tablas grandes obtienes el primer tramo por
orden fisico, no un muestreo uniforme.
Returns:
dict (dict-no-throw, NUNCA lanza):
{"status": "ok"|"error",
"columns": {col_name: [str, str, ...], ...}, # solo no-None, no-""
"n": int, # nº de filas leidas por la query (antes de filtrar)
"error": str} # solo presente si status == "error"
"""
try:
# 1) Lector read-only del backend activo, construido como en
# build_eda_render_ctx (closure sobre el wrapper del registry). Imports
# perezosos: este modulo vive en el paquete `datascience`, importar a
# `infra` a nivel de modulo crearia un ciclo al cargar el __init__.
if backend == "duckdb":
from infra import duckdb_query_readonly
def query_fn(sql):
return duckdb_query_readonly(db_path, sql)
elif backend == "postgres":
from infra import pg_query
def query_fn(sql):
return pg_query(db_path, sql)
else:
return {
"status": "error",
"error": f"backend desconocido: {backend}",
"columns": {},
"n": 0,
}
# 2) Columnas validas (str no vacio). Si no queda ninguna, nada que
# muestrear: ok con columns vacio.
cols = []
if isinstance(columns, (list, tuple)):
cols = [c for c in columns if isinstance(c, str) and c != ""]
if not cols:
return {"status": "ok", "columns": {}, "n": 0}
# 3) Push-down: una sola query con LIMIT. Identificadores escapados con
# comillas dobles, igual que build_eda_render_ctx.
cols_sql = ", ".join(f'"{c}"' for c in cols)
sql = f'SELECT {cols_sql} FROM "{table}" LIMIT {int(sample)}'
q = query_fn(sql)
if not isinstance(q, dict) or q.get("status") != "ok":
err = q.get("error") if isinstance(q, dict) else "query sin resultado"
return {"status": "error", "error": str(err), "columns": {}, "n": 0}
rows = q.get("rows") or []
out = {c: [] for c in cols}
for row in rows:
if not isinstance(row, dict):
continue
for c in cols:
value = row.get(c)
if value is None:
continue
s = str(value)
if s == "":
continue
out[c].append(s)
return {"status": "ok", "columns": out, "n": len(rows)}
except Exception as exc: # noqa: BLE001 - dict-no-throw del grupo eda
return {"status": "error", "error": str(exc), "columns": {}, "n": 0}
@@ -0,0 +1,83 @@
"""Tests para extract_text_sample.
Self-contained: crea un DuckDB temporal pequeño con una columna de texto (algunas
filas con NULL) y una numerica, y verifica que la muestra de texto trae solo los
valores no nulos, que el backend desconocido y la lista de columnas vacia se
manejan dict-no-throw, y que sample acota el numero de filas leidas.
"""
import os
import sys
_HERE = os.path.dirname(os.path.abspath(__file__))
_FUNCTIONS = os.path.abspath(os.path.join(_HERE, "..")) # python/functions
if _FUNCTIONS not in sys.path:
sys.path.insert(0, _FUNCTIONS)
import duckdb # noqa: E402
from datascience.extract_text_sample import extract_text_sample # noqa: E402
_TABLE = "t"
# 6 filas: txt VARCHAR con dos NULL, other INT siempre presente.
_ROWS = [
("alpha", 1),
("beta", 2),
(None, 3),
("gamma", 4),
(None, 5),
("delta", 6),
]
_TXT_NON_NULL = {"alpha", "beta", "gamma", "delta"}
def _make_db(tmp_path):
"""Crea un DuckDB temporal con la tabla de prueba y devuelve su ruta."""
db_path = os.path.join(str(tmp_path), "text_sample.duckdb")
con = duckdb.connect(db_path)
try:
con.execute(f'CREATE TABLE "{_TABLE}" (txt VARCHAR, other INTEGER)')
con.executemany(f'INSERT INTO "{_TABLE}" VALUES (?, ?)', _ROWS)
finally:
con.close()
return db_path
def test_extract_basic(tmp_path):
db_path = _make_db(tmp_path)
res = extract_text_sample(db_path, _TABLE, ["txt"])
assert res["status"] == "ok"
# n = filas leidas por la query (6), antes de filtrar None.
assert res["n"] == len(_ROWS)
# columns["txt"] trae solo los strings no nulos (los dos NULL fuera).
assert "txt" in res["columns"]
assert set(res["columns"]["txt"]) == _TXT_NON_NULL
assert len(res["columns"]["txt"]) == len(_TXT_NON_NULL)
# No se pidio "other", no debe aparecer.
assert "other" not in res["columns"]
def test_backend_desconocido(tmp_path):
db_path = _make_db(tmp_path)
res = extract_text_sample(db_path, _TABLE, ["txt"], backend="mysql")
assert res["status"] == "error"
assert "backend desconocido" in res["error"]
assert res["columns"] == {}
assert res["n"] == 0
def test_columns_vacio(tmp_path):
db_path = _make_db(tmp_path)
res = extract_text_sample(db_path, _TABLE, [])
assert res["status"] == "ok"
assert res["columns"] == {}
assert res["n"] == 0
def test_sample_limit(tmp_path):
db_path = _make_db(tmp_path)
res = extract_text_sample(db_path, _TABLE, ["txt"], sample=2)
assert res["status"] == "ok"
# sample=2 -> la query lee como mucho 2 filas.
assert res["n"] == 2
assert len(res["columns"]["txt"]) <= 2
+2
View File
@@ -18,6 +18,7 @@ dependencies = [
"google-cloud-bigquery-storage>=2.27",
"google-cloud-storage>=3.10.1",
"httpx",
"langdetect>=1.0.9",
"matplotlib>=3.10.9",
"opencv-contrib-python-headless>=4.13.0.92",
"openpyxl>=3.1.5",
@@ -40,6 +41,7 @@ dependencies = [
"seaborn>=0.13.2",
"shapely>=2.1.2",
"statsmodels>=0.14.6",
"textstat>=0.7.13",
"trimesh>=4.12.2",
"xlrd>=2.0.2",
]
+96
View File
@@ -899,6 +899,7 @@ dependencies = [
{ name = "google-cloud-bigquery-storage" },
{ name = "google-cloud-storage" },
{ name = "httpx" },
{ name = "langdetect" },
{ name = "matplotlib" },
{ name = "opencv-contrib-python-headless" },
{ name = "openpyxl" },
@@ -906,9 +907,11 @@ dependencies = [
{ name = "polars" },
{ name = "pymeshlab" },
{ name = "pymssql" },
{ name = "pymupdf" },
{ name = "pypdf" },
{ name = "pyproj" },
{ name = "python-docx" },
{ name = "python-pptx" },
{ name = "pyyaml" },
{ name = "qrcode", extra = ["pil"] },
{ name = "rapidfuzz" },
@@ -919,6 +922,7 @@ dependencies = [
{ name = "seaborn" },
{ name = "shapely" },
{ name = "statsmodels" },
{ name = "textstat" },
{ name = "trimesh" },
{ name = "xlrd" },
]
@@ -959,6 +963,7 @@ requires-dist = [
{ name = "jupyter-collaboration", marker = "extra == 'jupyter'", specifier = ">=2.0" },
{ name = "jupyter-mcp-server", marker = "extra == 'jupyter'" },
{ name = "jupyterlab", marker = "extra == 'jupyter'", specifier = ">=4.0" },
{ name = "langdetect", specifier = ">=1.0.9" },
{ name = "matplotlib", specifier = ">=3.10.9" },
{ name = "opencv-contrib-python-headless", specifier = ">=4.13.0.92" },
{ name = "openpyxl", specifier = ">=3.1.5" },
@@ -966,9 +971,11 @@ requires-dist = [
{ name = "polars", specifier = ">=1.40.1" },
{ name = "pymeshlab", specifier = ">=2025.7.post1" },
{ name = "pymssql", specifier = ">=2.3.13" },
{ name = "pymupdf", specifier = ">=1.28.0" },
{ name = "pypdf", specifier = ">=6.10.0" },
{ name = "pyproj", specifier = ">=3.7.2" },
{ name = "python-docx", specifier = ">=1.2.0" },
{ name = "python-pptx", specifier = ">=1.0.2" },
{ name = "pyyaml", specifier = ">=6.0.3" },
{ name = "qrcode", extras = ["pil"], specifier = ">=8.2" },
{ name = "rapidfuzz", specifier = ">=3.14.5" },
@@ -979,6 +986,7 @@ requires-dist = [
{ name = "seaborn", specifier = ">=0.13.2" },
{ name = "shapely", specifier = ">=2.1.2" },
{ name = "statsmodels", specifier = ">=0.14.6" },
{ name = "textstat", specifier = ">=0.7.13" },
{ name = "trimesh", specifier = ">=4.12.2" },
{ name = "xlrd", specifier = ">=2.0.2" },
]
@@ -2198,6 +2206,15 @@ wheels = [
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