auto-sync: 2026-05-02 22:35:26
This commit is contained in:
@@ -2,22 +2,23 @@
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"""
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15分钟线数据下载脚本
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数据源降级链:
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1. 腾讯 mkline API(直接返回15分钟线)
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2. 腾讯 minute/query + 聚合为15分钟(仅当天数据)
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数据源降级链:
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1. 新浪财经15分钟K线API(有真实amount,800条/次)
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2. 腾讯 minute/query + 聚合为15分钟(仅当天数据,amount为估算)
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功能:
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功能:
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- 支持HS300 / 全市场下载
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- 增量下载(追加新数据,不覆盖)
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- 断点续传(JSON进度文件)
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- 限频保护(0.3s间隔 + 重试)
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- 与已有84只Parquet格式完全一致
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- 增量下载(追加新数据,不覆盖已有)
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- 断点续传(JSON进度文件)
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- 限频保护(0.3s间隔 + 重试)
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- 与已有84只Parquet格式完全一致(7列,end-of-bar时间戳)
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- 数据校验(价格>0, OHLC一致性)
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用法:
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用法:
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python3 download_minute.py --scope hs300
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python3 download_minute.py --scope all
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python3 download_minute.py --codes 000001 600519
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python3 download_minute.py --scope hs300 --resume # 断点续传
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python3 download_minute.py --scope hs300 --resume
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"""
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import argparse
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@@ -33,7 +34,6 @@ from pathlib import Path
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from typing import Optional, List, Tuple
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import pandas as pd
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import numpy as np
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logging.basicConfig(
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level=logging.INFO,
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@@ -44,90 +44,72 @@ logger = logging.getLogger(__name__)
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# --- 配置 ---
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OUTPUT_DIR = Path("/Volumes/stock/minute_kline/15min")
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PROGRESS_FILE = OUTPUT_DIR / "download_progress.json"
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REQUEST_INTERVAL = 0.3 # 秒/请求
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MAX_RETRIES = 3 # 单只重试次数
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CONSECUTIVE_FAIL_PAUSE = 60 # 连续失败暂停秒数
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MAX_CONSECUTIVE_FAILS = 5 # 连续失败阈值
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HS300_FILE = Path("/Volumes/stock/A股数据/stock_info/hs300_constituents_latest.csv")
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ALL_STOCKS_FILE = Path("/Volumes/stock/sanguo_vnpy/data/all_stocks.csv")
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REQUEST_INTERVAL = 0.3
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MAX_RETRIES = 3
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CONSECUTIVE_FAIL_PAUSE = 60
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MAX_CONSECUTIVE_FAILS = 5
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HS300_FILE = Path("/Users/chufeng/.openclaw/sanguo_projects/sanguo_quant_live/zhaoyun-data/data/raw/stock_info/hs300_constituents_latest.csv")
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ALL_STOCKS_FILE = Path("/Users/chufeng/.openclaw/sanguo_projects/sanguo_quant_live/zhaoyun-data/data/raw/stock_info/stock_basic_info_raw_20260326_113530.csv")
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HEADERS = {
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"User-Agent": "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7)",
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"Referer": "https://finance.qq.com",
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}
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HEADERS = {"User-Agent": "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7)"}
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# --- HTTP 工具 ---
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def fetch_url(url: str, timeout: int = 10) -> str:
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req = urllib.request.Request(url, headers=HEADERS)
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with urllib.request.urlopen(req, timeout=timeout) as resp:
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return resp.read().decode("utf-8", errors="replace")
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def _make_opener():
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"""创建无代理opener,避免akshare代理污染"""
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return urllib.request.build_opener(urllib.request.ProxyHandler({}))
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# --- 腾讯 mkline API ---
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def try_mkline(symbol: str, count: int = 800) -> Optional[pd.DataFrame]:
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# --- 新浪15分钟K线API(主源) ---
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def try_sina_15min(symbol: str, datalen: int = 800) -> Optional[pd.DataFrame]:
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"""
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腾讯mkline API,直接返回15分钟线
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Args:
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symbol: 如 "sz000001"
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count: 返回条数
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新浪财经15分钟K线API
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symbol: sz000001 或 sh600519
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datalen: 返回条数(最大约800)
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返回: DataFrame(day, open, high, low, close, volume, amount) 或 None
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"""
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url = f"http://web.ifzq.gtimg.cn/appstock/app/kline/mkline?param={symbol},m15,,{count}"
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url = (
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f"https://quotes.sina.cn/cn/api/jsonp_v2.php/var%20=min15_{symbol}=/"
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f"CN_MarketDataService.getKLineData?symbol={symbol}&scale=15&ma=no&datalen={datalen}"
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)
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try:
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raw = fetch_url(url)
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data = json.loads(raw)
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# 解析结构: data -> {symbol} -> data -> day/data
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stock_data = data.get("data", {}).get(symbol, {}).get("data", {})
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# mkline返回的是 { "day": [...], "m15": [...] }
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klines = stock_data.get("m15", stock_data.get("day", []))
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if not klines:
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opener = _make_opener()
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req = urllib.request.Request(url, headers=HEADERS)
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with opener.open(req, timeout=15) as r:
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raw = r.read().decode("utf-8", errors="replace")
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m = re.search(r'\((\[.*\])\)', raw, re.DOTALL)
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if not m:
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return None
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rows = []
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for line in klines:
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parts = line.split()
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if len(parts) >= 6:
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# 格式: "YYYYMMDDHHMM open high low close volume"
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dt_str = parts[0]
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rows.append({
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"day": f"{dt_str[:4]}-{dt_str[4:6]}-{dt_str[6:8]} {dt_str[8:10]}:{dt_str[10:12]}:00",
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"open": float(parts[1]),
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"high": float(parts[2]),
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"low": float(parts[3]),
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"close": float(parts[4]),
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"volume": str(int(float(parts[5]))),
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"amount": str(round(float(parts[4]) * int(float(parts[5])), 2)), # close*volume估算
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})
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if not rows:
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data = json.loads(m.group(1))
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if not data:
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return None
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return pd.DataFrame(rows)
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df = pd.DataFrame(data)
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# 确保列顺序
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cols = ["day", "open", "high", "low", "close", "volume", "amount"]
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for c in cols:
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if c not in df.columns:
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return None
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return df[cols]
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except Exception as e:
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logger.debug("mkline failed for %s: %s", symbol, e)
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logger.debug("新浪15min失败 %s: %s", symbol, e)
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return None
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# --- 腾讯 minute/query API + 聚合 ---
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# --- 腾讯 minute/query + 聚合(备源,仅当天) ---
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def try_minute_query_aggregate(symbol: str, date: str) -> Optional[pd.DataFrame]:
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"""
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腾讯minute/query API,返回1分钟线,聚合为15分钟线
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Args:
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symbol: 如 "sz000001"
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date: 如 "20260502"
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腾讯minute/query API,返回1分钟线,聚合为15分钟线
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symbol: sz000001
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date: 20260502
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"""
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url = f"http://web.ifzq.gtimg.cn/appstock/app/minute/query?code={symbol}"
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try:
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raw = fetch_url(url)
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data = json.loads(raw)
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opener = _make_opener()
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req = urllib.request.Request(url, headers=HEADERS)
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with opener.open(req, timeout=10) as r:
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data = json.loads(r.read())
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minute_data = data.get("data", {}).get(symbol, {}).get("data", {}).get("data", [])
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if not minute_data:
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return None
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# 解析1分钟线: "HHMM price vol amount"
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one_min = []
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for line in minute_data:
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parts = line.split()
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@@ -139,22 +121,18 @@ def try_minute_query_aggregate(symbol: str, date: str) -> Optional[pd.DataFrame]
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"vol": float(parts[2]),
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"amount": float(parts[3]),
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})
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if not one_min:
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return None
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df = pd.DataFrame(one_min)
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return _aggregate_1m_to_15m(df)
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return _aggregate_1m_to_15m(pd.DataFrame(one_min))
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except Exception as e:
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logger.debug("minute_query failed for %s: %s", symbol, e)
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logger.debug("minute_query失败 %s: %s", symbol, e)
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return None
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def _aggregate_1m_to_15m(df: pd.DataFrame) -> pd.DataFrame:
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"""将1分钟线聚合为15分钟线"""
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"""1分钟线聚合为15分钟线(end-of-bar时间戳)"""
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df["time"] = pd.to_datetime(df["time"])
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# 15分钟分组:按时间段切分(9:30-9:45, 9:45-10:00, ...)
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# end-of-bar对齐:已有84只数据用K线结束时间(09:45, 10:00...)
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# end-of-bar对齐:已有84只数据用K线结束时间(09:45, 10:00...)
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df["group"] = df["time"].dt.floor("15min") + pd.Timedelta(minutes=15)
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agg = df.groupby("group").agg(
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@@ -163,10 +141,10 @@ def _aggregate_1m_to_15m(df: pd.DataFrame) -> pd.DataFrame:
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low=("price", "min"),
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close=("price", "last"),
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volume=("vol", "sum"),
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amount=("amount", "last"), # 累计值取最后
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amount=("amount", "last"),
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).reset_index()
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result = pd.DataFrame({
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return pd.DataFrame({
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"day": agg["group"].dt.strftime("%Y-%m-%d %H:%M:%S"),
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"open": agg["open"],
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"high": agg["high"],
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@@ -175,11 +153,10 @@ def _aggregate_1m_to_15m(df: pd.DataFrame) -> pd.DataFrame:
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"volume": agg["volume"].astype(str),
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"amount": agg["amount"].astype(str),
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})
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return result
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# --- 下载主流程 ---
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def get_market_prefix(code: str) -> str:
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def get_market_prefix(code: str) -> Tuple[str, str]:
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code = re.sub(r"[^0-9]", "", code).zfill(6)
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if code.startswith(("60", "68", "51")):
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return "sh", code
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@@ -187,16 +164,16 @@ def get_market_prefix(code: str) -> str:
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def download_single(code: str) -> Tuple[Optional[pd.DataFrame], str]:
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"""下载单只股票15分钟线,返回(df, source)"""
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"""下载单只股票15分钟线,返回(df, source)"""
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prefix, clean = get_market_prefix(code)
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symbol = f"{prefix}{clean}"
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# 主源:mkline
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df = try_mkline(symbol)
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# 主源:新浪15分钟线
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df = try_sina_15min(symbol)
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if df is not None and len(df) > 0:
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return df, "mkline"
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return df, "sina_15min"
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# 备源:minute/query + 聚合
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# 备源:minute/query + 聚合
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today = datetime.now().strftime("%Y%m%d")
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df = try_minute_query_aggregate(symbol, today)
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if df is not None and len(df) > 0:
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@@ -206,7 +183,7 @@ def download_single(code: str) -> Tuple[Optional[pd.DataFrame], str]:
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def download_with_increment(code: str, output_dir: Path) -> Tuple[str, int]:
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"""增量下载单只股票,返回(status, rows)"""
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"""增量下载单只股票"""
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prefix, clean = get_market_prefix(code)
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filename = f"{prefix}{clean}_15min.parquet"
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parquet_path = output_dir / filename
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@@ -216,23 +193,30 @@ def download_with_increment(code: str, output_dir: Path) -> Tuple[str, int]:
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return "failed", 0
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# 数据校验
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for col in ['open', 'high', 'low', 'close']:
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df_new[col] = pd.to_numeric(df_new[col], errors='coerce')
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for col in ["open", "high", "low", "close"]:
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df_new[col] = pd.to_numeric(df_new[col], errors="coerce")
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df_new["volume"] = pd.to_numeric(df_new["volume"], errors="coerce").fillna(0)
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df_new["amount"] = pd.to_numeric(df_new["amount"], errors="coerce").fillna(0)
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# 价格>0
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bad_zero = (df_new[['close', 'open']] <= 0).any(axis=1)
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bad_zero = (df_new[["close", "open"]] <= 0).any(axis=1)
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if bad_zero.any():
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logger.warning("价格<=0 %s: %d条", code, bad_zero.sum())
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df_new = df_new[~bad_zero]
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# OHLC一致性
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bad_ohlc = (df_new['high'] < df_new[['open', 'close']].max(axis=1)) | (df_new['low'] > df_new[['open', 'close']].min(axis=1))
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bad_ohlc = (df_new["high"] < df_new[["open", "close"]].max(axis=1)) | \
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(df_new["low"] > df_new[["open", "close"]].min(axis=1))
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if bad_ohlc.any():
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logger.warning("OHLC异常 %s: %d条", code, bad_ohlc.sum())
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df_new = df_new[~bad_ohlc]
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if df_new.empty:
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return "failed", 0
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# 转回object类型与已有数据兼容
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df_new["volume"] = df_new["volume"].astype(str)
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df_new["amount"] = df_new["amount"].astype(str)
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if parquet_path.exists():
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# 增量:合并去重
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existing = pd.read_parquet(parquet_path)
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combined = pd.concat([existing, df_new], ignore_index=True)
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combined = combined.drop_duplicates(subset=["day"], keep="last")
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@@ -264,19 +248,16 @@ def save_progress(progress: dict):
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def get_stock_list(scope: str) -> List[str]:
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if scope == "hs300":
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df = pd.read_csv(HS300_FILE)
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# 尝试多种列名
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for col in ["成分券代码", "代码", "code"]:
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if col in df.columns:
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return [str(c).zfill(6) for c in df[col].tolist()]
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raise ValueError(f"HS300文件中找不到代码列,现有列: {list(df.columns)}")
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raise ValueError(f"HS300文件中找不到代码列,现有列: {list(df.columns)}")
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if scope == "all":
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df = pd.read_csv(ALL_STOCKS_FILE)
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for col in ["代码", "code", "股票代码"]:
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if col in df.columns:
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return [str(c).zfill(6) for c in df[col].tolist()]
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raise ValueError(f"全市场文件中找不到代码列,现有列: {list(df.columns)}")
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raise ValueError(f"全市场文件中找不到代码列,现有列: {list(df.columns)}")
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raise ValueError(f"Unknown scope: {scope}")
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@@ -292,7 +273,6 @@ def main():
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output_dir = Path(args.output_dir)
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output_dir.mkdir(parents=True, exist_ok=True)
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# 获取股票列表
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if args.codes:
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codes = args.codes
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elif args.scope:
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@@ -300,10 +280,8 @@ def main():
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else:
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parser.error("必须指定 --scope 或 --codes")
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# 断点续传
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progress = load_progress() if args.resume else {"completed": [], "failed": []}
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skip_set = set(progress["completed"])
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todo = [c for c in codes if c not in skip_set]
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logger.info("股票总数: %d, 已完成: %d, 待下载: %d", len(codes), len(skip_set), len(todo))
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@@ -313,11 +291,9 @@ def main():
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consecutive_fails = 0
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for i, code in enumerate(todo):
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# 限频
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if i > 0:
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time.sleep(REQUEST_INTERVAL)
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# 重试逻辑
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status = "failed"
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rows = 0
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for attempt in range(MAX_RETRIES):
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@@ -339,24 +315,18 @@ def main():
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consecutive_fails += 1
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progress["failed"].append(code)
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logger.warning("[%d/%d] %s: FAILED", i + 1, len(todo), code)
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# 连续失败保护
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if consecutive_fails >= MAX_CONSECUTIVE_FAILS:
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logger.error("连续失败 %d 次,暂停 %d 秒", consecutive_fails, CONSECUTIVE_FAIL_PAUSE)
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logger.error("连续失败 %d 次,暂停 %d 秒", consecutive_fails, CONSECUTIVE_FAIL_PAUSE)
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time.sleep(CONSECUTIVE_FAIL_PAUSE)
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consecutive_fails =0
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consecutive_fails = 0
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# 定期保存进度
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if (i + 1) % 50 == 0:
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save_progress(progress)
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# 最终保存
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save_progress(progress)
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elapsed = time.time() - t_start
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logger.info("=" * 50)
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logger.info("下载完成: 成功 %d, 失败 %d, 耗时 %.1f 秒", ok_count, fail_count, elapsed)
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logger.info("进度文件: %s", PROGRESS_FILE)
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if __name__ == "__main__":
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Reference in New Issue
Block a user