""" 导出轮动策略回测所用的原始数据到本地文件夹 导出内容: 1. index_data.csv - 指数价格数据(宽格式,用于因子计算) 2. etf_data.csv - ETF价格数据(宽格式,用于收益计算) 3. etf_nav_data.csv - ETF净值数据(宽格式,用于溢价率计算) 4. benchmark_data.csv - 基准数据 5. config_snapshot.yaml - 当时使用的策略配置快照 """ import sys import os import time import shutil from datetime import datetime from pathlib import Path # 添加项目根目录 sys.path.insert(0, str(Path(__file__).parent.parent)) import yaml import pandas as pd from dotenv import load_dotenv load_dotenv() from strategies.rotation.engine import RotationStrategy from config.settings import DEFAULT_BENCHMARK_CODE def main(): # 加载配置 config_path = Path(__file__).parent.parent / "config" / "strategies" / "rotation.yaml" with open(config_path, "r", encoding="utf-8") as f: config = yaml.safe_load(f) # 如果未设置 end_date,默认使用今天 if not config.get("end_date"): config["end_date"] = datetime.now().strftime("%Y-%m-%d") start_date = config["start_date"] end_date = config["end_date"] print("=" * 60) print(" 导出轮动策略回测数据") print("=" * 60) print(f" 回测区间: {start_date} ~ {end_date}") print(f" 候选标的: {len(config.get('code_list', {}))} 只") # 创建输出目录 export_dir = Path(__file__).parent.parent / "data" / "rotation_backtest_data" export_dir.mkdir(parents=True, exist_ok=True) print(f" 输出目录: {export_dir}") # 创建策略实例(仅用于获取数据) strategy = RotationStrategy(config) # 获取数据 print("\n" + "=" * 60) print("开始下载数据...") print("=" * 60) benchmark_code = config.get("benchmark", {}).get("code", DEFAULT_BENCHMARK_CODE) code_config = config.get("code_list", {}) with strategy.data_source: index_data, etf_data, etf_nav_data, benchmark_data, valid_codes = ( strategy.data_source.fetch_all( code_config, benchmark_code, start_date, end_date ) ) # 保存数据 print("\n" + "=" * 60) print("保存数据到本地...") print("=" * 60) saved_files = [] # 1. 指数价格数据 if index_data is not None: path = export_dir / "index_data.csv" index_data.to_csv(path) saved_files.append(("index_data.csv", index_data.shape, "指数价格(因子计算用)")) print(f" ✓ index_data.csv: {index_data.shape[0]} 行 × {index_data.shape[1]} 列") # 2. ETF价格数据 if etf_data is not None: path = export_dir / "etf_data.csv" etf_data.to_csv(path) saved_files.append(("etf_data.csv", etf_data.shape, "ETF价格(收益计算用)")) print(f" ✓ etf_data.csv: {etf_data.shape[0]} 行 × {etf_data.shape[1]} 列") # 3. ETF净值数据 if etf_nav_data is not None: path = export_dir / "etf_nav_data.csv" etf_nav_data.to_csv(path) saved_files.append(("etf_nav_data.csv", etf_nav_data.shape, "ETF净值(溢价率计算用)")) print(f" ✓ etf_nav_data.csv: {etf_nav_data.shape[0]} 行 × {etf_nav_data.shape[1]} 列") # 4. 基准数据 if benchmark_data is not None: path = export_dir / "benchmark_data.csv" benchmark_data.to_csv(path) saved_files.append(("benchmark_data.csv", benchmark_data.shape, "基准指数")) print(f" ✓ benchmark_data.csv: {benchmark_data.shape[0]} 行") # 5. 有效代码列表 codes_path = export_dir / "valid_codes.txt" with open(codes_path, "w") as f: for code in valid_codes: name = code_config.get(code, {}).get("name", code) etf = code_config.get(code, {}).get("etf", "") market = code_config.get(code, {}).get("market", "") f.write(f"{code}\t{name}\t{etf or '-'}\t{market}\n") print(f" ✓ valid_codes.txt: {len(valid_codes)} 只有效标的") # 6. 策略配置快照 config_snapshot_path = export_dir / "config_snapshot.yaml" shutil.copy2(config_path, config_snapshot_path) print(f" ✓ config_snapshot.yaml: 策略配置快照") # 汇总 print("\n" + "=" * 60) print("导出完成!") print("=" * 60) print(f" 目录: {export_dir}") print(f" 文件数: {len(saved_files) + 2}") print(f" 数据区间: {start_date} ~ {end_date}") print(f" 有效标的: {len(valid_codes)} 只") for fname, shape, desc in saved_files: print(f" - {fname}: {shape} ({desc})") if __name__ == "__main__": main()