Files
qihuo/recommend_stream.py
T
dekun 074551490f fix: 品种推荐改为最大手数并补算旧缓存。
- 最大手数 = floor(权益×保证金上限%÷1手保证金)
- 加载与 SSE 推送时实时补算,旧缓存缺字段时自动刷新

Co-authored-by: Cursor <cursoragent@cursor.com>
2026-06-25 12:24:10 +08:00

98 lines
3.3 KiB
Python

"""品种推荐 SSE 推送与后台刷新。"""
from __future__ import annotations
import json
import logging
import queue
import threading
import time
from typing import Callable, Optional
from db_conn import connect_db
from kline_stream import sse_format
from recommend_store import (
load_recommend_cache,
recommend_cache_stale,
recommend_payload,
refresh_recommend_cache,
rows_missing_max_lots,
)
logger = logging.getLogger(__name__)
CHECK_INTERVAL_SEC = 3600
class RecommendStreamHub:
def __init__(self) -> None:
self._lock = threading.Lock()
self._subs: list[queue.Queue] = []
def subscribe(self) -> queue.Queue:
q: queue.Queue = queue.Queue(maxsize=8)
with self._lock:
self._subs.append(q)
return q
def unsubscribe(self, q: queue.Queue) -> None:
with self._lock:
try:
self._subs.remove(q)
except ValueError:
pass
def broadcast(self, event: str, data: dict) -> None:
msg = {"event": event, "data": data}
with self._lock:
subs = list(self._subs)
for q in subs:
try:
q.put_nowait(msg)
except queue.Full:
pass
recommend_hub = RecommendStreamHub()
def start_recommend_worker(
*,
db_path: str,
get_capital_fn: Callable,
quote_fn: Callable[[str], Optional[dict]],
init_tables_fn: Callable | None = None,
get_mode_fn: Callable[[], str] | None = None,
get_max_margin_pct_fn: Callable[[], float] | None = None,
interval: int = CHECK_INTERVAL_SEC,
) -> None:
"""后台每日刷新推荐(每小时检查一次是否需更新),并推送给 SSE 订阅者。"""
def _loop() -> None:
while True:
try:
conn = connect_db(db_path)
try:
if init_tables_fn:
init_tables_fn(conn)
capital = float(get_capital_fn(conn) or 0)
mode = get_mode_fn() if get_mode_fn else "simulation"
max_pct = float(get_max_margin_pct_fn()) if get_max_margin_pct_fn else 30.0
cached = load_recommend_cache(conn)
if recommend_cache_stale(cached.get("updated_at")) or rows_missing_max_lots(
cached.get("rows") or [],
):
refresh_recommend_cache(
conn, capital, quote_fn, trading_mode=mode, max_margin_pct=max_pct,
)
cached = load_recommend_cache(conn)
logger.info("品种推荐刷新完成,capital=%.2f rows=%d", capital, len(cached.get("rows") or []))
payload = recommend_payload(conn, live_capital=capital, max_margin_pct=max_pct)
finally:
conn.close()
recommend_hub.broadcast("recommend", {"ok": True, **payload})
except Exception as exc:
logger.warning("recommend worker failed: %s", exc)
time.sleep(max(300, interval))
threading.Thread(target=_loop, daemon=True, name="recommend-worker").start()