ajout : remplac les notes manquantes par la moyenne de l'appellation

This commit is contained in:
Chahrazad650
2026-03-03 03:18:35 +01:00
parent 5afb6e38fe
commit b0eb5df07e
2 changed files with 40 additions and 6 deletions

View File

@@ -1,9 +1,12 @@
#!/usr/bin/env python3
from pandas import DataFrame, to_numeric
import pandas as pd
SCORE_COLS = ["Robert", "Robinson", "Suckling"]
def display_info(df: DataFrame) -> None:
print(df.all())
df.describe()
print(df.info())
print("\nNombre de valeurs manquantes par colonne :")
print(df.isna().sum())
@@ -46,3 +49,28 @@ def mean_robinson(df: DataFrame) -> DataFrame:
def mean_suckling(df: DataFrame) -> DataFrame:
return mean_score(df, "Suckling")
def fill_missing_scores(df: DataFrame) -> DataFrame:
"""
Remplacer les notes manquantes par la moyenne
des vins de la même appellation.
"""
df_copy = df.copy()
df_copy["Appellation"] = df_copy["Appellation"].astype(str).str.strip()
for score in SCORE_COLS:
df_copy[score] = to_numeric(df_copy[score], errors="coerce")
temp_cols: list[str] = []
for score in SCORE_COLS:
mean_df = mean_score(df_copy, score)
mean_name = f"mean_{score}"
temp_cols.append(mean_name)
df_copy = df_copy.merge(mean_df, on="Appellation", how="left")
df_copy[score] = df_copy[score].fillna(df_copy[mean_name])
df_copy = df_copy.drop(columns=temp_cols)
return df_copy

12
main.py
View File

@@ -9,7 +9,9 @@ from cleaning import (display_info,
drop_empty_appellation,
mean_robert,
mean_robinson,
mean_suckling)
mean_suckling,
fill_missing_scores,
encode_appellation)
def load_csv(filename: str) -> DataFrame:
@@ -44,14 +46,18 @@ def main() -> None:
robinson_means = mean_robinson(df)
save_csv(robinson_means, "mean_robinson_by_appellation.csv")
print("\n===: moyennes Robinson par appellation ===")
print("\n=== moyennes Robinson par appellation ===")
print(robinson_means.head(10))
suckling_means = mean_suckling(df)
save_csv(suckling_means, "mean_suckling_by_appellation.csv")
print("\n===: moyennes Suckling par appellation ===")
print("\n=== moyennes Suckling par appellation ===")
print(suckling_means.head(10))
df_missing_scores = fill_missing_scores(df)
save_csv(df_missing_scores, "donnee_filled.csv")
print("\n=== Après remplissage des notes manquantes ===")
display_info(df_missing_scores)
if __name__ == "__main__":
try: