# duplicate_checker.py (v1.1 - Lauf 1 Logik + Match-Grund) import logging import pandas as pd from thefuzz import fuzz from config import Config from helpers import normalize_company_name, simple_normalize_url, create_log_filename from google_sheet_handler import GoogleSheetHandler import time # --- Konfiguration --- CRM_SHEET_NAME = "CRM_Accounts" MATCHING_SHEET_NAME = "Matching_Accounts" SCORE_THRESHOLD = 80 # Treffer unter diesem Wert werden nicht als "potenzieller Treffer" angezeigt # --- VOLLSTÄNDIGES LOGGING SETUP --- LOG_LEVEL = logging.DEBUG if Config.DEBUG else logging.INFO LOG_FORMAT = '%(asctime)s - %(levelname)-8s - %(name)s - %(message)s' root_logger = logging.getLogger() root_logger.setLevel(LOG_LEVEL) # Handler nur hinzufügen, wenn noch keine konfiguriert sind if not root_logger.handlers: stream_handler = logging.StreamHandler() stream_handler.setFormatter(logging.Formatter(LOG_FORMAT)) root_logger.addHandler(stream_handler) log_file_path = create_log_filename("duplicate_check_final") if log_file_path: file_handler = logging.FileHandler(log_file_path, mode='a', encoding='utf-8') file_handler.setFormatter(logging.Formatter(LOG_FORMAT)) root_logger.addHandler(file_handler) else: # Finde den Dateipfad aus dem bereits konfigurierten Handler log_file_path = None for handler in root_logger.handlers: if isinstance(handler, logging.FileHandler): log_file_path = handler.baseFilename break logger = logging.getLogger(__name__) def calculate_similarity_with_details(record1, record2): """ Berechnet einen gewichteten Ähnlichkeits-Score und gibt den Score und den Grund zurück. Dies ist die originale Scoring-Logik von Lauf 1. """ scores = {'name': 0, 'location': 0, 'domain': 0} # Domain-Match (100 Punkte) domain1 = record1.get('normalized_domain') domain2 = record2.get('normalized_domain') if domain1 and domain1 != 'k.a.' and domain1 == domain2: scores['domain'] = 100 # Namensähnlichkeit (70% Gewichtung) name1 = record1.get('normalized_name') name2 = record2.get('normalized_name') if name1 and name2: name_similarity = fuzz.token_set_ratio(name1, name2) scores['name'] = round(name_similarity * 0.7) # Standort-Bonus (20 Punkte) ort1 = record1.get('CRM Ort') ort2 = record2.get('CRM Ort') land1 = record1.get('CRM Land') land2 = record2.get('CRM Land') if ort1 and ort1 == ort2 and land1 and land1 == land2: scores['location'] = 20 total_score = sum(scores.values()) reasons = [] if scores['domain'] > 0: reasons.append(f"Domain({scores['domain']})") if scores['name'] > 0: reasons.append(f"Name({scores['name']})") if scores['location'] > 0: reasons.append(f"Ort({scores['location']})") reason_text = " + ".join(reasons) if reasons else "Keine Übereinstimmung" return round(total_score), reason_text def main(): start_time = time.time() logger.info("Starte den Duplikats-Check (v1.1 - Brute-Force mit Match-Grund)...") logger.info(f"Logdatei: {log_file_path}") try: sheet_handler = GoogleSheetHandler() except Exception as e: logger.critical(f"FEHLER bei Initialisierung: {e}") return logger.info(f"Lade Master-Daten aus '{CRM_SHEET_NAME}'...") crm_df = sheet_handler.get_sheet_as_dataframe(CRM_SHEET_NAME) if crm_df is None or crm_df.empty: return logger.info(f"Lade zu prüfende Daten aus '{MATCHING_SHEET_NAME}'...") matching_df = sheet_handler.get_sheet_as_dataframe(MATCHING_SHEET_NAME) if matching_df is None or matching_df.empty: return original_matching_df = matching_df.copy() logger.info("Normalisiere Daten für den Vergleich...") for df in [crm_df, matching_df]: df['normalized_name'] = df['CRM Name'].astype(str).apply(normalize_company_name) df['normalized_domain'] = df['CRM Website'].astype(str).apply(simple_normalize_url) df['CRM Ort'] = df['CRM Ort'].astype(str).str.lower().str.strip() df['CRM Land'] = df['CRM Land'].astype(str).str.lower().str.strip() crm_records = crm_df.to_dict('records') matching_records = matching_df.to_dict('records') logger.info(f"Starte Matching-Prozess: {len(matching_records)} Einträge werden mit {len(crm_records)} CRM-Einträgen verglichen...") results = [] for i, match_record in enumerate(matching_records): best_score = -1 best_match_name = "" best_reason = "" logger.info(f"--- Prüfe {i + 1}/{len(matching_records)}: '{match_record.get('CRM Name', 'N/A')}' ---") # Brute-Force-Vergleich: Jede Zeile wird mit jeder CRM-Zeile verglichen for crm_record in crm_records: score, reason = calculate_similarity_with_details(match_record, crm_record) if score > best_score: best_score = score best_match_name = crm_record.get('CRM Name', 'N/A') best_reason = reason logger.info(f" --> Bester Treffer: '{best_match_name}' mit Score {best_score} (Grund: {best_reason})") results.append({ 'Potenzieller Treffer im CRM': best_match_name if best_score >= SCORE_THRESHOLD else "", 'Ähnlichkeits-Score': best_score, 'Matching-Grund': best_reason }) logging.info("Matching abgeschlossen. Schreibe Ergebnisse zurück ins Sheet...") result_df = pd.DataFrame(results) output_df = pd.concat([original_matching_df.reset_index(drop=True), result_df], axis=1) data_to_write = [output_df.columns.values.tolist()] + output_df.values.tolist() success = sheet_handler.clear_and_write_data(MATCHING_SHEET_NAME, data_to_write) if success: logger.info(f"Ergebnisse erfolgreich in '{MATCHING_SHEET_NAME}' geschrieben.") else: logger.error("FEHLER beim Schreiben der Ergebnisse ins Google Sheet.") end_time = time.time() logger.info(f"Gesamtdauer des Duplikats-Checks: {end_time - start_time:.2f} Sekunden.") logger.info(f"===== Skript beendet =====") if __name__ == "__main__": main()