Spaces:
Runtime error
Runtime error
| import gradio as gr | |
| from sklearn import preprocessing | |
| import pandas as pd | |
| import joblib | |
| import os | |
| import numpy as np | |
| model = joblib.load("nutriscore_model.pkl") | |
| labelencoder = joblib.load("labelencoder.pkl") | |
| std_scale = joblib.load("std_scale.pkl") | |
| cols = ['energy_kcal_100g', 'fat_100g', 'saturated_fat_100g', | |
| 'carbohydrates_100g', 'sugars_100g', 'proteins_100g', 'salt_100g'] | |
| temp = pd.DataFrame(columns=cols) | |
| def greet(energy_kcal_100g, fat_100g, saturated_fat_100g, | |
| carbohydrates_100g, sugars_100g, proteins_100g, salt_100g): | |
| total = fat_100g + carbohydrates_100g + proteins_100g + salt_100g | |
| if total > 100: | |
| return "Erreur de saisie : total des informations nutritionnelles pour 100g > 100" | |
| if saturated_fat_100g > fat_100g: | |
| return 'Erreur de saisie : graisses saturées > graisses' | |
| if sugars_100g > carbohydrates_100g: | |
| return 'Erreur de saisie : sucres > glucides' | |
| else: | |
| temp['energy_kcal_100g'] = [energy_kcal_100g] | |
| temp['fat_100g'] = [fat_100g] | |
| temp['saturated_fat_100g'] = [saturated_fat_100g] | |
| temp['carbohydrates_100g'] = [carbohydrates_100g] | |
| temp['sugars_100g'] = [sugars_100g] | |
| temp['proteins_100g'] = [proteins_100g] | |
| temp['salt_100g'] = [salt_100g] | |
| X = temp.values | |
| temp_scaled = std_scale.transform(X) | |
| # Make prediction | |
| y_pred = model.predict(temp_scaled) | |
| # reverse label encoding | |
| y_pred = labelencoder.inverse_transform(y_pred) | |
| return y_pred[0].capitalize() | |
| iface = gr.Interface(fn=greet, inputs=["number", "number", "number", "number","number", "number", "number"], | |
| outputs="text") | |
| iface.launch() |