ffe-history / code /scripts /features /pipeline.py
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"""Pipeline helpers pour feature engineering - ISO 5055.
Ce module contient les fonctions d'orchestration du pipeline de features:
- extract_all_features: Extraction de toutes les features depuis l'historique
- merge_all_features: Merge de toutes les features sur le DataFrame cible
Ces fonctions sont extraites de feature_engineering.py pour respecter
la limite de 300 lignes (ISO 5055).
Conformite ISO/IEC:
- 5055: Code maintainable (<300 lignes, SRP)
- 5259: Qualite donnees ML
"""
from __future__ import annotations
import pandas as pd
from scripts.features.advanced import (
calculate_elo_trajectory,
calculate_head_to_head,
calculate_pressure_performance,
)
from scripts.features.club_behavior import extract_club_behavior
from scripts.features.composition import extract_composition_strategy
from scripts.features.ffe_features import extract_ffe_regulatory_features
from scripts.features.merge_helpers import (
merge_club_reliability,
merge_h2h_features,
merge_noyau_features,
merge_player_features,
merge_team_enjeu,
)
from scripts.features.noyau import extract_noyau_features
from scripts.features.performance import (
calculate_board_position,
calculate_color_performance,
calculate_recent_form,
)
from scripts.features.pipeline_extended import (
extract_ali_features,
merge_ali_features,
)
from scripts.features.reliability import (
extract_club_reliability,
extract_player_reliability,
)
from scripts.features.standings import calculate_standings, extract_team_enjeu_features
def extract_all_features(
df_history: pd.DataFrame,
df_history_played: pd.DataFrame,
include_advanced: bool,
) -> dict[str, pd.DataFrame]:
"""Extrait toutes les features de l'historique.
Args:
----
df_history: DataFrame historique complet
df_history_played: DataFrame parties jouees uniquement (sans forfaits)
include_advanced: Inclure features avancees (H2H, fatigue, etc.)
Returns:
-------
Dict[nom_feature, DataFrame] avec toutes les features calculees
"""
# Calcul classement pour zones enjeu (ISO 5259 - position reelle)
standings = calculate_standings(df_history_played)
features = {
"club_reliability": extract_club_reliability(df_history),
"player_reliability": extract_player_reliability(df_history),
"recent_form": calculate_recent_form(df_history_played),
"board_position": calculate_board_position(df_history_played),
"color_perf": calculate_color_performance(df_history_played),
"ffe_regulatory": extract_ffe_regulatory_features(df_history_played),
"team_enjeu": extract_team_enjeu_features(df_history_played, standings),
"club_behavior": extract_club_behavior(df_history),
"noyau": extract_noyau_features(df_history_played),
}
# ALI features (presence + patterns + absence)
ali_features = extract_ali_features(df_history_played)
features.update(ali_features)
if include_advanced:
# Composition strategy (A02 Art. 3.6.e)
compo_raw = extract_composition_strategy(df_history_played)
compo_agg = _aggregate_composition(compo_raw)
features.update(
{
"h2h": calculate_head_to_head(df_history_played),
"pressure": calculate_pressure_performance(df_history_played),
"trajectory": calculate_elo_trajectory(df_history_played),
"composition": compo_agg,
}
)
return features
def _aggregate_composition(compo_raw: pd.DataFrame) -> pd.DataFrame:
"""Agrège les features composition par joueur (moyenne historique)."""
if compo_raw.empty:
return pd.DataFrame(
columns=["joueur_nom", "decalage_position", "joueur_decale_haut", "joueur_decale_bas"]
)
return (
compo_raw.groupby("nom")
.agg(
decalage_position=("decalage_position", "mean"),
joueur_decale_haut=("joueur_decale_haut", "mean"),
joueur_decale_bas=("joueur_decale_bas", "mean"),
)
.reset_index()
.rename(columns={"nom": "joueur_nom"})
)
def merge_all_features(
result: pd.DataFrame,
features: dict[str, pd.DataFrame],
include_advanced: bool,
) -> pd.DataFrame:
"""Merge toutes les features sur le DataFrame cible.
Args:
----
result: DataFrame cible (copie du split)
features: Dict des features extraites par extract_all_features
include_advanced: Inclure features avancees
Returns:
-------
DataFrame avec toutes les features mergees
"""
# Club reliability
result = merge_club_reliability(result, features["club_reliability"])
# Player-based features
result = merge_player_features(
result, features["player_reliability"], ["taux_presence", "joueur_fantome"]
)
result = merge_player_features(
result, features["recent_form"], ["forme_recente", "forme_tendance"]
)
result = merge_player_features(
result, features["board_position"], ["echiquier_moyen", "echiquier_std"]
)
result = merge_player_features(
result,
features["color_perf"],
["score_blancs", "score_noirs", "couleur_preferee", "data_quality"],
)
# FFE regulatory features
result = merge_player_features(
result,
features["ffe_regulatory"],
["nb_equipes", "niveau_max", "niveau_min", "multi_equipe"],
prefix="ffe_",
)
# Team enjeu
result = merge_team_enjeu(result, features["team_enjeu"])
# Club behavior (merge by equipe_dom AND equipe_ext)
result = _merge_club_behavior(result, features.get("club_behavior", pd.DataFrame()))
# Noyau features (joueur x equipe x ronde)
result = merge_noyau_features(result, features.get("noyau", pd.DataFrame()))
# ALI features (presence + patterns + absence per player)
result = merge_ali_features(result, features)
# Advanced features
if include_advanced:
result = _merge_advanced_features(result, features)
return result
def _merge_club_behavior(
result: pd.DataFrame,
club_beh: pd.DataFrame,
) -> pd.DataFrame:
"""Merge club behavior pour equipe_dom ET equipe_ext.
Colonnes dom: nb_joueurs_utilises_dom, rotation_effectif_dom, etc.
Colonnes ext: nb_joueurs_utilises_ext, rotation_effectif_ext, etc.
"""
if club_beh.empty or "equipe" not in club_beh.columns:
return result
beh_cols = [c for c in club_beh.columns if c not in ("equipe", "saison")]
for suffix, equipe_col in [("dom", "equipe_dom"), ("ext", "equipe_ext")]:
if equipe_col not in result.columns:
continue
rename_map = {c: f"{c}_{suffix}" for c in beh_cols}
merge_df = club_beh.rename(columns={"equipe": equipe_col} | rename_map)
result = result.merge(
merge_df[[equipe_col, "saison"] + list(rename_map.values())],
on=[equipe_col, "saison"],
how="left",
)
return result
def _merge_advanced_features(
result: pd.DataFrame,
features: dict[str, pd.DataFrame],
) -> pd.DataFrame:
"""Merge les features avancees (H2H, pressure, trajectory, composition)."""
result = merge_player_features(
result,
features.get("trajectory", pd.DataFrame()),
["elo_trajectory", "momentum"],
)
result = merge_player_features(
result,
features.get("pressure", pd.DataFrame()),
["clutch_factor", "pressure_type"],
)
result = merge_h2h_features(result, features.get("h2h", pd.DataFrame()))
result = merge_player_features(
result,
features.get("composition", pd.DataFrame()),
["decalage_position", "joueur_decale_haut", "joueur_decale_bas"],
)
return result