duplicate_checker.py aktualisiert

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2025-08-01 12:54:27 +00:00
parent a58e4fc16f
commit add6ea53ce

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@@ -1,4 +1,4 @@
# duplicate_checker.py (v2.2 - Multi-Key Blocking & optimiertes Scoring)
# duplicate_checker.py (v1.1 - Lauf 1 Logik + Match-Grund)
import logging
import pandas as pd
@@ -6,55 +6,50 @@ from thefuzz import fuzz
from config import Config
from helpers import normalize_company_name, simple_normalize_url
from google_sheet_handler import GoogleSheetHandler
from collections import defaultdict
import time
# --- Konfiguration ---
CRM_SHEET_NAME = "CRM_Accounts"
MATCHING_SHEET_NAME = "Matching_Accounts"
SCORE_THRESHOLD = 85 # Etwas höherer Schwellenwert für bessere Präzision
SCORE_THRESHOLD = 80 # Treffer unter diesem Wert werden nicht als "potenzieller Treffer" angezeigt
logging.basicConfig(level=logging.INFO, format='%(asctime)s - %(levelname)s - %(message)s')
def calculate_similarity_details(record1, record2):
"""Berechnet einen gewichteten Ähnlichkeits-Score und gibt die Details zurück."""
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)
if record1.get('normalized_domain') and record1['normalized_domain'] != 'k.a.' and record1['normalized_domain'] == record2.get('normalized_domain'):
scores['domain'] = 100
# Höhere Gewichtung für den Namen, da die Website oft fehlt
# Namensähnlichkeit (70% Gewichtung)
if record1.get('normalized_name') and record2.get('normalized_name'):
scores['name'] = round(fuzz.token_set_ratio(record1['normalized_name'], record2['normalized_name']) * 0.85)
name_similarity = fuzz.token_set_ratio(record1['normalized_name'], record2['normalized_name'])
scores['name'] = round(name_similarity * 0.7)
# Standort-Bonus (20 Punkte)
if record1.get('CRM Ort') and record1['CRM Ort'] == record2.get('CRM Ort'):
if record1.get('CRM Land') and record1['CRM Land'] == record2.get('CRM Land'):
scores['location'] = 20
total_score = sum(scores.values())
return {'total': total_score, 'details': scores}
# Erstelle den Begründungstext
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"
def create_blocking_keys(name):
"""Erstellt mehrere Blocking Keys für einen Namen, um die Sensitivität zu erhöhen."""
if not name:
return []
words = name.split()
keys = set()
# 1. Erstes Wort
if len(words) > 0:
keys.add(words[0])
# 2. Zweites Wort (falls vorhanden)
if len(words) > 1:
keys.add(words[1])
# 3. Erste 4 Buchstaben des ersten Wortes
if len(words) > 0 and len(words[0]) >= 4:
keys.add(words[0][:4])
return list(keys)
return round(total_score), reason_text
def main():
logging.info("Starte den Duplikats-Check (v2.2 mit Multi-Key Blocking)...")
start_time = time.time()
logging.info("Starte den Duplikats-Check (v1.1 - Brute-Force mit Match-Grund)...")
try:
sheet_handler = GoogleSheetHandler()
@@ -77,43 +72,32 @@ def main():
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()
df['block_keys'] = df['normalized_name'].apply(create_blocking_keys)
logging.info("Erstelle Index für CRM-Daten zur Beschleunigung...")
crm_index = defaultdict(list)
for record in crm_df.to_dict('records'):
for key in record['block_keys']:
crm_index[key].append(record)
crm_records = crm_df.to_dict('records')
matching_records = matching_df.to_dict('records')
logging.info("Starte Matching-Prozess...")
logging.info(f"Starte Matching-Prozess: {len(matching_records)} Einträge werden mit {len(crm_records)} CRM-Einträgen verglichen...")
results = []
for match_record in matching_df.to_dict('records'):
best_score_info = {'total': 0, 'details': {'name': 0, 'location': 0, 'domain': 0}}
for i, match_record in enumerate(matching_records):
best_score = -1
best_match_name = ""
best_reason = ""
logging.info(f"Prüfe: {match_record['CRM Name']}...")
candidate_pool = {}
for key in match_record['block_keys']:
for crm_record in crm_index.get(key, []):
candidate_pool[crm_record['CRM Name']] = crm_record
logging.info(f"Prüfe {i + 1}/{len(matching_records)}: {match_record.get('CRM Name', 'N/A')}...")
if not candidate_pool:
logging.debug(" -> Keine Kandidaten im Index gefunden.")
for crm_record in candidate_pool.values():
score_info = calculate_similarity_details(match_record, crm_record)
if score_info['total'] > best_score_info['total']:
best_score_info = score_info
best_match_name = crm_record['CRM Name']
# 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
results.append({
'Potenzieller Treffer im CRM': best_match_name if best_score_info['total'] >= SCORE_THRESHOLD else "",
'Score (Gesamt)': best_score_info['total'],
'Score (Name)': best_score_info['details']['name'],
'Bonus (Standort)': best_score_info['details']['location'],
'Bonus (Domain)': best_score_info['details']['domain']
'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...")
@@ -129,5 +113,8 @@ def main():
else:
logging.error("FEHLER beim Schreiben der Ergebnisse ins Google Sheet.")
end_time = time.time()
logging.info(f"Gesamtdauer des Duplikats-Checks: {end_time - start_time:.2f} Sekunden.")
if __name__ == "__main__":
main()