ffe-history / code /scripts /features /merge_helpers.py
Pierrax's picture
Upload code/scripts/features/merge_helpers.py with huggingface_hub
a70d8b4 verified
"""Helpers de merge pour feature engineering - ISO 5055.
Ce module contient les fonctions de merge extraites de compute_features_for_split
pour réduire la complexité cyclomatique.
Conformité ISO/IEC 5055 (Code Quality).
"""
from __future__ import annotations
import pandas as pd
def merge_player_features(
result: pd.DataFrame,
feature_df: pd.DataFrame,
feature_cols: list[str],
prefix: str = "",
) -> pd.DataFrame:
"""Merge features joueur pour blanc et noir.
Args:
----
result: DataFrame cible
feature_df: DataFrame source avec joueur_nom
feature_cols: Colonnes à merger
prefix: Préfixe optionnel pour les colonnes
Returns:
-------
DataFrame avec features mergées
"""
if feature_df.empty:
return result
for color in ["blanc", "noir"]:
nom_col = f"{color}_nom"
if nom_col not in result.columns:
continue
cols_exist = [c for c in feature_cols if c in feature_df.columns]
if not cols_exist:
continue
col_mapping = {c: f"{prefix}{c}_{color}" for c in cols_exist}
merge_df = feature_df.rename(columns=col_mapping)
result = result.merge(
merge_df[["joueur_nom"] + list(col_mapping.values())],
left_on=nom_col,
right_on="joueur_nom",
how="left",
)
if "joueur_nom" in result.columns:
result = result.drop(columns=["joueur_nom"])
return result
def merge_club_reliability(
result: pd.DataFrame,
club_reliability: pd.DataFrame,
) -> pd.DataFrame:
"""Merge features de fiabilité club.
Args:
----
result: DataFrame cible
club_reliability: DataFrame fiabilité clubs
Returns:
-------
DataFrame avec features mergées
"""
if club_reliability.empty:
return result
club_cols = ["taux_forfait", "taux_non_joue", "fiabilite_score"]
for suffix, col in [("dom", "equipe_dom"), ("ext", "equipe_ext")]:
if col not in result.columns:
continue
merge_df = club_reliability.rename(columns={c: f"{c}_{suffix}" for c in club_cols})
result = result.merge(
merge_df[["equipe"] + [f"{c}_{suffix}" for c in club_cols]],
left_on=col,
right_on="equipe",
how="left",
)
if "equipe" in result.columns:
result = result.drop(columns=["equipe"])
return result
def merge_team_enjeu(
result: pd.DataFrame,
team_enjeu: pd.DataFrame,
) -> pd.DataFrame:
"""Merge features d'enjeu équipe.
Args:
----
result: DataFrame cible
team_enjeu: DataFrame enjeu équipes
Returns:
-------
DataFrame avec features mergées
"""
if team_enjeu.empty or "ronde" not in team_enjeu.columns:
return result
for suffix, col in [("dom", "equipe_dom"), ("ext", "equipe_ext")]:
result = _merge_single_team_enjeu(result, team_enjeu, suffix, col)
return result
def _merge_single_team_enjeu(
result: pd.DataFrame,
team_enjeu: pd.DataFrame,
suffix: str,
col: str,
) -> pd.DataFrame:
"""Merge enjeu pour une equipe (dom ou ext)."""
cols_exist = _get_enjeu_cols(result, team_enjeu, col)
if not cols_exist:
return result
merge_df = team_enjeu.rename(columns={c: f"{c}_{suffix}" for c in cols_exist})
return _execute_enjeu_merge(result, merge_df, suffix, col, cols_exist)
def _get_enjeu_cols(result: pd.DataFrame, team_enjeu: pd.DataFrame, col: str) -> list[str]:
"""Recupere les colonnes d'enjeu disponibles."""
if col not in result.columns or "saison" not in result.columns:
return []
merge_cols = ["zone_enjeu", "niveau_hierarchique", "position"]
return [c for c in merge_cols if c in team_enjeu.columns]
def _execute_enjeu_merge(
result: pd.DataFrame,
merge_df: pd.DataFrame,
suffix: str,
col: str,
cols_exist: list[str],
) -> pd.DataFrame:
"""Execute le merge d'enjeu."""
merge_keys = _get_merge_keys(result, merge_df)
left_keys = [col, "saison"] + (["ronde"] if "ronde" in result.columns else [])
result = result.merge(
merge_df[merge_keys + [f"{c}_{suffix}" for c in cols_exist]].drop_duplicates(),
left_on=left_keys,
right_on=merge_keys,
how="left",
)
if "equipe" in result.columns:
result = result.drop(columns=["equipe"])
return result
def _get_merge_keys(result: pd.DataFrame, merge_df: pd.DataFrame) -> list[str]:
"""Determine les cles de merge."""
merge_keys = ["equipe", "saison"]
if "ronde" in result.columns and "ronde" in merge_df.columns:
merge_keys.append("ronde")
return merge_keys
def merge_noyau_features(
result: pd.DataFrame,
noyau_df: pd.DataFrame,
) -> pd.DataFrame:
"""Merge les features noyau par (joueur, equipe, saison, ronde).
Produit les colonnes:
- est_dans_noyau_blanc / est_dans_noyau_noir
- pct_noyau_equipe_dom / pct_noyau_equipe_ext
Args:
----
result: DataFrame cible avec blanc_nom, noir_nom, equipe_dom,
equipe_ext, saison, ronde
noyau_df: DataFrame depuis extract_noyau_features()
Returns:
-------
DataFrame avec features noyau mergees
"""
if noyau_df.empty:
return result
required = {"joueur_nom", "equipe", "saison", "ronde", "est_dans_noyau", "pct_noyau_match"}
if not required.issubset(noyau_df.columns):
return result
for color, equipe_col in [("blanc", "equipe_dom"), ("noir", "equipe_ext")]:
nom_col = f"{color}_nom"
if nom_col not in result.columns or equipe_col not in result.columns:
continue
rename_map = {
"est_dans_noyau": f"est_dans_noyau_{color}",
"pct_noyau_match": f"pct_noyau_equipe_{'dom' if color == 'blanc' else 'ext'}",
}
sub = noyau_df.rename(columns=rename_map)[
["joueur_nom", "equipe", "saison", "ronde"] + list(rename_map.values())
].drop_duplicates()
result = result.merge(
sub,
left_on=[nom_col, equipe_col, "saison", "ronde"],
right_on=["joueur_nom", "equipe", "saison", "ronde"],
how="left",
)
result = result.drop(columns=["joueur_nom", "equipe"], errors="ignore")
return result
def merge_h2h_features(
result: pd.DataFrame,
h2h: pd.DataFrame,
) -> pd.DataFrame:
"""Merge features head-to-head.
Args:
----
result: DataFrame cible
h2h: DataFrame confrontations directes
Returns:
-------
DataFrame avec features mergées
"""
if h2h.empty:
return result
if "blanc_nom" not in result.columns or "noir_nom" not in result.columns:
return result
def get_h2h_key(row: pd.Series) -> tuple[str, str]:
b, n = str(row["blanc_nom"]), str(row["noir_nom"])
return (b, n) if b < n else (n, b)
result["_h2h_key"] = result.apply(get_h2h_key, axis=1)
h2h["_h2h_key"] = list(zip(h2h["joueur_a"], h2h["joueur_b"], strict=False))
h2h_merge = h2h[["_h2h_key", "nb_confrontations", "avantage_a"]].copy()
result = result.merge(h2h_merge, on="_h2h_key", how="left")
def adjust_h2h(row: pd.Series) -> float:
if pd.isna(row.get("avantage_a")):
return float("nan")
b, n = str(row["blanc_nom"]), str(row["noir_nom"])
return row["avantage_a"] if b < n else -row["avantage_a"]
result["h2h_avantage_blanc"] = result.apply(adjust_h2h, axis=1)
result["h2h_nb_confrontations"] = result["nb_confrontations"]
result = result.drop(columns=["_h2h_key", "nb_confrontations", "avantage_a"], errors="ignore")
return result