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"""Feature Engineering pour ALICE - Pipeline ML.
Ce module orchestre le pipeline de feature engineering.
Les features sont extraites par des modules specialises (ISO 5055 SRP).
Modules:
- features/reliability.py: Fiabilite club/joueur
- features/performance.py: Forme, couleur, position
- features/standings.py: Classement, zones d'enjeu
- features/advanced.py: H2H, fatigue, trajectoire Elo
- features/ffe_features.py: Features reglementaires FFE
- features/pipeline.py: Orchestration extraction/merge
Conformite ISO/IEC:
- 5055: Code maintenable (<300 lignes, SRP)
- 5259: Qualite donnees ML
- 25010: Qualite systeme
- 42001: Gouvernance IA
Usage:
python scripts/feature_engineering.py
python scripts/feature_engineering.py --output-dir data/features
"""
from __future__ import annotations
import argparse
import logging
from pathlib import Path
import pandas as pd
from scripts.features.pipeline import extract_all_features, merge_all_features
# Configuration paths
PROJECT_DIR = Path(__file__).parent.parent
DEFAULT_DATA_DIR = PROJECT_DIR / "data"
# Logging
logging.basicConfig(
level=logging.INFO,
format="%(asctime)s | %(levelname)-7s | %(message)s",
datefmt="%H:%M:%S",
)
logger = logging.getLogger(__name__)
# ==============================================================================
# SPLIT TEMPOREL
# ==============================================================================
def temporal_split(
df: pd.DataFrame,
train_end: int = 2022,
valid_end: int = 2023,
) -> tuple[pd.DataFrame, pd.DataFrame, pd.DataFrame]:
"""Split temporel des données pour éviter data leakage."""
logger.info(
f"Split temporel: train<={train_end}, valid={train_end + 1}-{valid_end}, test>{valid_end}"
)
train = df[df["saison"] <= train_end]
valid = df[(df["saison"] > train_end) & (df["saison"] <= valid_end)]
test = df[df["saison"] > valid_end]
for name, split in [("Train", train), ("Valid", valid), ("Test", test)]:
if not split.empty and "saison" in split.columns:
logger.info(
f" {name}: {len(split):,} échiquiers "
f"({split['saison'].min()}-{split['saison'].max()})"
)
else:
logger.info(f" {name}: {len(split):,} échiquiers")
return train, valid, test
# ==============================================================================
# PIPELINE V2 - SANS DATA LEAKAGE (ISO 5259 / 42001)
# ==============================================================================
def compute_features_for_split(
df_split: pd.DataFrame,
df_history: pd.DataFrame,
split_name: str,
include_advanced: bool = True,
) -> pd.DataFrame:
"""Calcule les features pour un split avec historique approprié.
ISO 5259: Pas de data leakage - historique limité au passé visible.
ISO 5055: Complexité réduite via helpers (merge_helpers.py).
"""
logger.info(
f" Computing features for {split_name} using {len(df_history):,} historical records..."
)
# Filter played games only
df_history_played = df_history[
~df_history["type_resultat"].isin(
["non_joue", "forfait_blanc", "forfait_noir", "double_forfait"]
)
]
# Extract all features from history
features = extract_all_features(df_history, df_history_played, include_advanced)
# Merge features onto split
result = merge_all_features(df_split.copy(), features, include_advanced)
# Direct features (no history needed, computed per-row)
_add_direct_features(result)
# Temporal + adversaire features
_add_contextual_features(result, df_history_played)
logger.info(f" {split_name}: {len(result):,} samples, {len(result.columns)} features")
return result
def _add_direct_features(result: pd.DataFrame) -> None:
"""Add features computed directly from the row (no history needed)."""
from scripts.features.composition import extract_home_feature, extract_title_features
from scripts.features.player_enrichment import enrich_from_joueurs
# Titre FIDE numérique + diff_titre
title_feats = extract_title_features(result)
for col in title_feats.columns:
result[col] = title_feats[col]
# Domicile blanc
home_feat = extract_home_feature(result)
for col in home_feat.columns:
result[col] = home_feat[col]
# Enrichissement joueur depuis joueurs.parquet (elo_type, categorie, k_coefficient)
joueurs_path = DEFAULT_DATA_DIR / "joueurs.parquet"
enrich_from_joueurs(result, joueurs_path)
def _add_contextual_features(result: pd.DataFrame, df_history_played: pd.DataFrame) -> None:
"""Add temporal, adversaire, and match context features."""
from scripts.features.pipeline_extended import (
extract_adversaire_niveau,
extract_match_important,
extract_temporal_features,
)
from scripts.features.standings import calculate_standings
extract_temporal_features(result)
standings = calculate_standings(df_history_played)
extract_adversaire_niveau(result, standings)
# match_important needs zone_enjeu columns already merged
extract_match_important(result)
def run_feature_engineering_v2(
data_dir: Path,
output_dir: Path,
include_advanced: bool = True,
) -> None:
"""Pipeline feature engineering V2 - SANS DATA LEAKAGE.
ISO/IEC 42001, 5259 Conformant.
"""
logger.info("=" * 60)
logger.info("ALICE Engine - Feature Engineering V2 (No Leakage)")
logger.info("ISO/IEC 42001, 5259 Conformant")
logger.info("=" * 60)
# Charger données
echiquiers_path = data_dir / "echiquiers.parquet"
if not echiquiers_path.exists():
logger.error(f"Fichier non trouvé: {echiquiers_path}")
logger.error("Exécutez d'abord: python scripts/parse_dataset.py")
return
logger.info(f"\nChargement {echiquiers_path}...")
df = pd.read_parquet(echiquiers_path)
logger.info(f" {len(df):,} échiquiers chargés")
# 1. Filtrer parties jouées et Elo valide
logger.info("\n[1/4] Filtrage données...")
df_played = df[
~df["type_resultat"].isin(["non_joue", "forfait_blanc", "forfait_noir", "double_forfait"])
]
df_clean = df_played[(df_played["blanc_elo"] > 0) & (df_played["noir_elo"] > 0)]
logger.info(f" {len(df_clean):,} parties valides")
# 2. SPLIT TEMPOREL D'ABORD (crucial pour éviter leakage)
logger.info("\n[2/4] Split temporel AVANT features...")
train_raw, valid_raw, test_raw = temporal_split(df_clean)
# 3. Calculer features PAR SPLIT avec historique approprié
logger.info("\n[3/4] Calcul features per-split (no leakage)...")
# Train: features calculées sur train uniquement
logger.info("\n --- TRAIN ---")
train = compute_features_for_split(
df_split=train_raw,
df_history=df[df["saison"] <= train_raw["saison"].max()],
split_name="train",
include_advanced=include_advanced,
)
# Valid: features calculées sur train + valid historique
logger.info("\n --- VALID ---")
valid_history = df[df["saison"] <= valid_raw["saison"].max()]
valid = compute_features_for_split(
df_split=valid_raw,
df_history=valid_history,
split_name="valid",
include_advanced=include_advanced,
)
# Test: features calculées sur tout l'historique (avant test)
logger.info("\n --- TEST ---")
test_history = df[df["saison"] <= test_raw["saison"].min() - 1]
test = compute_features_for_split(
df_split=test_raw,
df_history=test_history,
split_name="test",
include_advanced=include_advanced,
)
# 4. Export
logger.info("\n[4/4] Export...")
output_dir.mkdir(parents=True, exist_ok=True)
train.to_parquet(output_dir / "train.parquet", index=False)
valid.to_parquet(output_dir / "valid.parquet", index=False)
test.to_parquet(output_dir / "test.parquet", index=False)
# Résumé
logger.info("\n" + "=" * 60)
logger.info("Feature engineering V2 terminé!")
logger.info("=" * 60)
logger.info(f"\nFichiers générés dans {output_dir}/:")
logger.info(f" - train.parquet ({len(train):,} échiquiers, {len(train.columns)} features)")
logger.info(f" - valid.parquet ({len(valid):,} échiquiers)")
logger.info(f" - test.parquet ({len(test):,} échiquiers)")
logger.info("\nDATA LEAKAGE: CORRIGÉ")
logger.info(" - Split temporel effectué AVANT calcul des features")
logger.info(" - Chaque split utilise uniquement les données historiques visibles")
def main() -> None:
"""Point d'entrée."""
parser = argparse.ArgumentParser(description="Feature engineering ALICE")
parser.add_argument(
"--data-dir",
type=Path,
default=DEFAULT_DATA_DIR,
help="Répertoire des données sources",
)
parser.add_argument(
"--output-dir",
type=Path,
default=DEFAULT_DATA_DIR / "features",
help="Répertoire de sortie",
)
parser.add_argument(
"--no-advanced",
action="store_true",
help="Désactiver features avancées (H2H, fatigue, etc.)",
)
args = parser.parse_args()
run_feature_engineering_v2(
args.data_dir,
args.output_dir,
include_advanced=not args.no_advanced,
)
if __name__ == "__main__":
main()
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