import pandas as pd import os def import_history(source_file, symbol): """ source_file: path to your historical data (Excel or CSV) symbol: The symbol name matching your instruments.csv (e.g., 'AGI_USD') """ cache_dir = "data_cache" os.makedirs(cache_dir, exist_ok=True) target_path = os.path.join(cache_dir, f"{symbol}.csv") try: # Load your data if source_file.endswith('.xlsx'): df = pd.read_excel(source_file) else: df = pd.read_csv(source_file) # 1. Standardize columns: We need 'date' and 'close' # Adjust these strings if your Excel uses different names like 'Price' or 'Date' df.columns = [c.lower().strip() for c in df.columns] # If your Excel has columns named 'nav' or 'price', rename them rename_map = {'price': 'close', 'nav': 'close', 'valuation date': 'date'} df = df.rename(columns=rename_map) # 2. Convert to proper format df['date'] = pd.to_datetime(df['date']).dt.strftime('%Y-%m-%d') df = df[['date', 'close']].dropna().sort_values('date') # 3. Save to the cache folder df.to_csv(target_path, index=False) print(f"✅ Successfully created cache for {symbol} at {target_path}") print(f"📊 Rows imported: {len(df)}") except Exception as e: print(f"❌ Error importing {symbol}: {e}") # EXAMPLE USAGE: # import_history('my_old_data.xlsx', 'AGI_USD')