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| import streamlit as st | |
| import pandas as pd | |
| import requests | |
| import folium | |
| from streamlit_folium import folium_static | |
| from transformers import pipeline | |
| # Fonction pour récupérer les données de l'API | |
| def get_data(): | |
| url = "https://opendata.bordeaux-metropole.fr/api/records/1.0/search/?dataset=met_etablissement_rse&q=&rows=100" | |
| response = requests.get(url) | |
| if response.status_code == 200: | |
| data = response.json() | |
| records = data.get("records", []) | |
| return [record["fields"] for record in records], data.get("nhits", 0) | |
| else: | |
| return [], 0 | |
| # Fonction pour l'onglet "Organisations engagées" | |
| def display_organisations_engagees(): | |
| st.markdown("## OPEN DATA RSE") | |
| st.markdown("### Découvrez les organisations engagées RSE de la métropole de Bordeaux") | |
| data, _ = get_data() | |
| if data: | |
| df = pd.DataFrame(data) | |
| df = df.rename(columns={ | |
| "nom_courant_denomination": "Nom", | |
| "commune": "Commune", | |
| "libelle_section_naf": "Section NAF", | |
| "tranche_effectif_entreprise": "Effectif", | |
| "action_rse": "Action RSE" | |
| }) | |
| df = df[["Nom", "Commune", "Section NAF", "Effectif", "Action RSE"]] | |
| st.dataframe(df, width=None, height=None) | |
| # Fonction pour l'onglet "GeoRSE Insights" | |
| def display_geo_rse_insights(): | |
| data, _ = get_data() | |
| if data: | |
| m = folium.Map(location=[44.84474, -0.60711], zoom_start=11) | |
| for item in data: | |
| point_geo = item.get('point_geo', []) | |
| if point_geo: | |
| lat, lon = point_geo | |
| lat, lon = float(lat), float(lon) | |
| if lat and lon: | |
| folium.Marker( | |
| [lat, lon], | |
| popup=f"<b>{item.get('nom_courant_denomination', 'Sans nom')}</b><br>Action RSE: {item.get('action_rse', 'Non spécifié')}", | |
| icon=folium.Icon(color="green", icon="leaf"), | |
| ).add_to(m) | |
| folium_static(m) | |
| # Fonction pour la classification des actions RSE | |
| def classify_rse_actions(descriptions): | |
| classifier = pipeline("zero-shot-classification", model="typeform/distilbert-base-uncased-mnli") | |
| categories = [ | |
| "La gouvernance de la structure", | |
| "Les droits humains", | |
| "Les conditions et relations de travail", | |
| "La responsabilité environnementale", | |
| "La loyauté des pratiques", | |
| "Les questions relatives au consommateur et à la protection du consommateur", | |
| "Les communautés et le développement local" | |
| ] | |
| classified_data = [] | |
| for description in descriptions: | |
| result = classifier(description, categories) | |
| top_category = result['labels'][0] | |
| classified_data.append(top_category) | |
| return classified_data | |
| # Nouvelle fonction pour l'onglet de classification RSE | |
| def display_rse_categorizer(): | |
| st.header("Classification des Actions RSE") | |
| st.write("Cet outil classe les actions RSE des entreprises selon les normes ISO 26000.") | |
| data, _ = get_data() | |
| if data: | |
| descriptions = [item['action_rse'] for item in data if 'action_rse' in item] | |
| categories = classify_rse_actions(descriptions) | |
| for i, category in enumerate(categories): | |
| st.write(f"Action RSE: {descriptions[i]}") | |
| st.write(f"Catégorie prédite: {category}") | |
| st.write("---") | |
| # Main function orchestrating the app UI | |
| def main(): | |
| st.sidebar.title("Navigation") | |
| app_mode = st.sidebar.radio("Choisissez l'onglet", ["Organisations engagées", "GeoRSE Insights", "Classification RSE"]) | |
| if app_mode == "Organisations engagées": | |
| display_organisations_engagees() | |
| elif app_mode == "GeoRSE Insights": | |
| display_geo_rse_insights() | |
| elif app_mode == "Classification RSE": | |
| display_rse_categorizer() | |
| if __name__ == "__main__": | |
| main() | |