"""数据同步调度中心模块。 该模块作为数据同步的调度中心,统一管理各类型数据的同步流程。 【重要规范 - sync.py 职责范围】 本模块**仅包含每日更新的数据接口**,季度/低频数据不应放入此文件: ✅ 本模块包含的同步逻辑(每日更新): - api_daily.py: 日线数据同步 (DailySync 类) - api_daily_basic.py: 每日指标数据同步 (DailyBasicSync 类) - api_bak_basic.py: 历史股票列表同步 (BakBasicSync 类) - api_pro_bar.py: Pro Bar 数据同步 (ProBarSync 类) - api_stock_basic.py: 股票基本信息同步 - api_trade_cal.py: 交易日历同步 ❌ 不应包含的同步逻辑(季度/低频更新): - financial_data/: 财务数据(利润表、资产负债表、现金流量表等) 使用方式: from src.data.api_wrappers.financial_data.api_financial_sync import sync_financial sync_financial() - api_namechange.py: 股票名称变更(不频繁) 使用方式: from src.data.api_wrappers import sync_namechange sync_namechange(force=True) 使用方式: # 预览同步(检查数据量,不写入) from src.data.sync import preview_sync preview = preview_sync() # 同步所有每日更新数据(不包括财务数据、namechange) from src.data.sync import sync_all_data result = sync_all_data() # 强制全量重载 result = sync_all_data(force_full=True) """ from typing import Optional, Dict, Union, Any import pandas as pd from src.data.api_wrappers import sync_all_stocks from src.data.api_wrappers.api_daily import sync_daily, preview_daily_sync from src.data.api_wrappers.api_pro_bar import sync_pro_bar from src.data.api_wrappers.api_bak_basic import sync_bak_basic from src.data.api_wrappers.api_daily_basic import sync_daily_basic from src.data.api_wrappers.api_stock_st import sync_stock_st def preview_sync( force_full: bool = False, start_date: Optional[str] = None, end_date: Optional[str] = None, sample_size: int = 3, max_workers: Optional[int] = None, ) -> dict[str, Any]: """预览日线同步数据量和样本(不实际同步)。 这是推荐的方式,可在实际同步前检查将要同步的内容。 Args: force_full: 若为 True,预览全量同步(从 20180101) start_date: 手动指定起始日期(覆盖自动检测) end_date: 手动指定结束日期(默认为今天) sample_size: 预览用样本股票数量(默认: 3) max_workers: 工作线程数(默认: 10) Returns: 包含预览信息的字典: { 'sync_needed': bool, 'stock_count': int, 'start_date': str, 'end_date': str, 'estimated_records': int, 'sample_data': pd.DataFrame, 'mode': str, # 'full', 'incremental', 'partial', 或 'none' } Example: >>> # 预览将要同步的内容 >>> preview = preview_sync() >>> >>> # 预览全量同步 >>> preview = preview_sync(force_full=True) >>> >>> # 预览更多样本 >>> preview = preview_sync(sample_size=5) """ return preview_daily_sync( force_full=force_full, start_date=start_date, end_date=end_date, sample_size=sample_size, ) def sync_all( force_full: bool = False, start_date: Optional[str] = None, end_date: Optional[str] = None, max_workers: Optional[int] = None, dry_run: bool = False, ) -> dict[str, pd.DataFrame]: """同步所有股票的日线数据。 这是日线数据同步的主要入口点。 Args: force_full: 若为 True,强制从 20180101 完整重载 start_date: 手动指定起始日期(YYYYMMDD) end_date: 手动指定结束日期(默认为今天) max_workers: 工作线程数(默认: 10) dry_run: 若为 True,仅预览将要同步的内容,不写入数据 Returns: 映射 ts_code 到 DataFrame 的字典 Example: >>> # 首次同步(从 20180101 全量加载) >>> result = sync_all() >>> >>> # 后续同步(增量 - 仅新数据) >>> result = sync_all() >>> >>> # 强制完整重载 >>> result = sync_all(force_full=True) >>> >>> # 手动指定日期范围 >>> result = sync_all(start_date='20240101', end_date='20240131') >>> >>> # 自定义线程数 >>> result = sync_all(max_workers=20) >>> >>> # Dry run(仅预览) >>> result = sync_all(dry_run=True) """ return sync_daily( force_full=force_full, start_date=start_date, end_date=end_date, max_workers=max_workers, dry_run=dry_run, ) def sync_all_data( force_full: bool = False, max_workers: Optional[int] = None, dry_run: bool = False, ) -> dict[str, Any]: """同步所有每日更新的数据类型。 【重要】本函数仅同步每日更新的数据,不包含季度/低频数据。 该函数按顺序同步以下每日更新的数据类型: 1. 交易日历 (sync_trade_cal_cache) 2. 股票基本信息 (sync_all_stocks) 3. 日线数据 (sync_daily) 4. Pro Bar 数据 (sync_pro_bar) 5. 每日指标数据 (sync_daily_basic) 6. 历史股票列表 (sync_bak_basic) 7. ST股票列表 (sync_stock_st) 【不包含的同步(需单独调用)】 - 财务数据: 利润表、资产负债表、现金流量表(季度更新) 使用: from src.data.api_wrappers.financial_data.api_financial_sync import sync_financial 调用: sync_financial() - 名称变更 (namechange): 股票曾用名(低频更新) 使用: from src.data.api_wrappers import sync_namechange 调用: sync_namechange(force=True) Args: force_full: 若为 True,强制所有数据类型完整重载 max_workers: 日线数据同步的工作线程数(默认: 10) dry_run: 若为 True,仅显示将要同步的内容,不写入数据 Returns: 映射数据类型到同步结果的字典 Example: >>> result = sync_all_data() >>> >>> # 强制完整重载 >>> result = sync_all_data(force_full=True) >>> >>> # Dry run >>> result = sync_all_data(dry_run=True) """ results: dict[str, Any] = {} print("\n" + "=" * 60) print("[sync_all_data] Starting full data synchronization...") print("=" * 60) # 1. Sync trade calendar (always needed first) print("\n[1/7] Syncing trade calendar cache...") try: from src.data.api_wrappers import sync_trade_cal_cache sync_trade_cal_cache() results["trade_cal"] = pd.DataFrame() print("[1/7] Trade calendar: OK") except Exception as e: print(f"[1/7] Trade calendar: FAILED - {e}") results["trade_cal"] = pd.DataFrame() # 2. Sync stock basic info print("\n[2/7] Syncing stock basic info...") try: sync_all_stocks() results["stock_basic"] = pd.DataFrame() print("[2/7] Stock basic: OK") except Exception as e: print(f"[2/7] Stock basic: FAILED - {e}") results["stock_basic"] = pd.DataFrame() # 3. Sync daily market data # print("\n[3/7] Syncing daily market data...") # try: # # 确保表存在 # from src.data.api_wrappers.api_daily import DailySync # # DailySync().ensure_table_exists() # # daily_result = sync_daily( # force_full=force_full, # max_workers=max_workers, # dry_run=dry_run, # ) # results["daily"] = daily_result # total_daily_records = ( # sum(len(df) for df in daily_result.values()) if daily_result else 0 # ) # print( # f"[3/7] Daily data: OK ({total_daily_records} records from {len(daily_result)} stocks)" # ) # except Exception as e: # print(f"[3/7] Daily data: FAILED - {e}") # results["daily"] = pd.DataFrame() # 4. Sync Pro Bar data print("\n[4/7] Syncing Pro Bar data (with adj, tor, vr)...") try: # 确保表存在 from src.data.api_wrappers.api_pro_bar import ProBarSync ProBarSync().ensure_table_exists() pro_bar_result = sync_pro_bar( force_full=force_full, max_workers=max_workers, dry_run=dry_run, ) results["pro_bar"] = pro_bar_result total_pro_bar_records = ( sum(len(df) for df in pro_bar_result.values()) if pro_bar_result else 0 ) print( f"[4/7] Pro Bar data: OK ({total_pro_bar_records} records from {len(pro_bar_result)} stocks)" ) except Exception as e: print(f"[4/7] Pro Bar data: FAILED - {e}") results["pro_bar"] = pd.DataFrame() # 5. Sync daily basic indicators print( "\n[5/7] Syncing daily basic indicators (PE, PB, turnover rate, market value)..." ) try: # 确保表存在 from src.data.api_wrappers.api_daily_basic import DailyBasicSync DailyBasicSync().ensure_table_exists() daily_basic_result = sync_daily_basic(force_full=force_full, dry_run=dry_run) results["daily_basic"] = daily_basic_result print(f"[5/7] Daily basic: OK ({len(daily_basic_result)} records)") except Exception as e: print(f"[5/7] Daily basic: FAILED - {e}") results["daily_basic"] = pd.DataFrame() # 6. Sync stock historical list (bak_basic) print("\n[6/7] Syncing stock historical list (bak_basic)...") try: # 确保表存在 from src.data.api_wrappers.api_bak_basic import BakBasicSync BakBasicSync().ensure_table_exists() bak_basic_result = sync_bak_basic(force_full=force_full) results["bak_basic"] = bak_basic_result print(f"[6/7] Bak basic: OK ({len(bak_basic_result)} records)") except Exception as e: print(f"[6/7] Bak basic: FAILED - {e}") results["bak_basic"] = pd.DataFrame() # 7. Sync ST stock list print("\n[7/7] Syncing ST stock list...") try: # 确保表存在 from src.data.api_wrappers.api_stock_st import StockSTSync StockSTSync().ensure_table_exists() stock_st_result = sync_stock_st(force_full=force_full) results["stock_st"] = stock_st_result print(f"[7/7] ST stock list: OK ({len(stock_st_result)} records)") except Exception as e: print(f"[7/7] ST stock list: FAILED - {e}") results["stock_st"] = pd.DataFrame() # Summary print("\n" + "=" * 60) print("[sync_all_data] Sync Summary") print("=" * 60) for data_type, data in results.items(): if isinstance(data, dict): # 日线和 Pro Bar 返回的是 dict[str, DataFrame] total_records = sum(len(df) for df in data.values()) print(f" {data_type}: {len(data)} stocks, {total_records} total records") else: # daily_basic 和 bak_basic 返回的是 DataFrame print(f" {data_type}: {len(data)} records") print("=" * 60) print("\nNote: namechange is NOT in auto-sync. To sync manually:") print(" from src.data.api_wrappers import sync_namechange") print(" sync_namechange(force=True)") return results if __name__ == "__main__": print("=" * 60) print("Data Sync Module") print("=" * 60) print("\nUsage:") print(" # Sync all data types at once (RECOMMENDED)") print(" from src.data.sync import sync_all_data") print(" result = sync_all_data() # Incremental sync all") print(" result = sync_all_data(force_full=True) # Full reload") print("") print(" # Or sync individual data types:") print(" from src.data.sync import sync_all, preview_sync") print(" from src.data.api_wrappers import sync_daily_basic, sync_bak_basic") print("") print(" # Preview before sync (recommended)") print(" preview = preview_sync()") print("") print(" # Dry run (preview only)") print(" result = sync_all(dry_run=True)") print("") print(" # Actual sync") print(" result = sync_all() # Incremental sync") print(" result = sync_all(force_full=True) # Full reload") print("") print(" # bak_basic sync") print(" result = sync_bak_basic() # Incremental sync") print(" result = sync_bak_basic(force_full=True) # Full reload") print("\n" + "=" * 60) # Run sync_all_data by default print("\n[Main] Running sync_all_data()...") result = sync_all_data() print("\n[Main] Sync completed!") print(f"Total data types synced: {len(result)}")