1caa63faeb
Replace the old signal/strategy/backtest modules with a decoupled
data → alpha → combo pipeline (parquet between phases, .pq extension).
Alphas:
- BaseAlpha + @register_alpha factory/plugin registry; one file per
built-in (reversal, reversal_vol, momentum); external alphas via
--alpha-module. Alphas are z-scored position weights, not predictors.
Data:
- baostock primary / akshare fallback, treated consistently.
- New --universe all (~5000 A-shares via query_all_stock, filtered).
- login-once batch downloader; empty-string OHLCV coerced to NaN.
- Month-partitioned dataset {output_dir}/{universe}/month=YYYY-MM/*.pq
with chunked durability flushes; --data-path is the dataset dir.
CLI logs at INFO by default (--log-level) so progress is visible.
Docs (README, CLAUDE.md) updated incl. pipeline diagram and roadmap
TODOs for portfolio construction / backtest / paper trading.
Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
93 lines
2.9 KiB
Python
93 lines
2.9 KiB
Python
"""CSI 300 (HS300), CSI 500 (ZZ500), and full A-share universe helpers."""
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import logging
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from datetime import date, timedelta
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import baostock as bs
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import pandas as pd
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logger = logging.getLogger(__name__)
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# A-share code patterns (baostock dotted form): SH main/STAR (sh.6xxxxx),
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# SZ main/SME (sz.0xxxxx), ChiNext (sz.3xxxxx). Excludes indices and B-shares.
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_ASHARE_RE = r"^sh\.6\d{5}$|^sz\.[03]\d{5}$"
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_SZ_INDEX_RE = r"^sz\.399"
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def get_hs300_stocks() -> pd.DataFrame:
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"""Fetch the current CSI 300 constituents from baostock.
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Returns:
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DataFrame with columns ``code`` (e.g. ``sh600000``), ``name``, ``date``.
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"""
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bs.login()
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try:
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rs = bs.query_hs300_stocks()
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stocks = []
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while rs.next():
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stocks.append(rs.get_row_data())
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finally:
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bs.logout()
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df = pd.DataFrame(stocks, columns=["code", "name", "date"])
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df["code"] = df["code"].str.replace(".", "", regex=False)
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return df
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def get_zz500_stocks() -> pd.DataFrame:
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"""Fetch the current CSI 500 (ZZ500) constituents from baostock.
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Returns:
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DataFrame with columns ``code`` (e.g. ``sh600006``), ``name``, ``date``.
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"""
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bs.login()
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try:
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rs = bs.query_zz500_stocks()
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stocks = []
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while rs.next():
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stocks.append(rs.get_row_data())
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finally:
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bs.logout()
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df = pd.DataFrame(stocks, columns=["code", "name", "date"])
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df["code"] = df["code"].str.replace(".", "", regex=False)
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return df
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def get_all_stocks(day: str = "") -> pd.DataFrame:
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"""Fetch every listed A-share from baostock's all-stock snapshot.
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Queries ``query_all_stock`` for a single trading day and keeps only A-shares
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(SH main/STAR, SZ main/SME/ChiNext), dropping indices and B-shares. If the
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given day is a non-trading day baostock returns nothing, so we walk back up
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to 10 days to land on the most recent trading day.
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Args:
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day: ``YYYY-MM-DD`` snapshot day; defaults to today (walks back to the
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last trading day).
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Returns:
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DataFrame with columns ``code`` (e.g. ``sh600000``), ``name``.
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"""
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start = date.fromisoformat(day) if day else date.today()
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bs.login()
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try:
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rows: list = []
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fields: list = []
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for back in range(11):
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probe = (start - timedelta(days=back)).isoformat()
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rs = bs.query_all_stock(day=probe)
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fields = rs.fields
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while rs.next():
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rows.append(rs.get_row_data())
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if rows:
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logger.info("query_all_stock: %d rows on %s", len(rows), probe)
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break
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finally:
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bs.logout()
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df = pd.DataFrame(rows, columns=fields)
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code = df["code"]
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keep = code.str.match(_ASHARE_RE) & ~code.str.match(_SZ_INDEX_RE)
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df = df[keep].copy()
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df["code"] = df["code"].str.replace(".", "", regex=False)
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df = df.rename(columns={"code_name": "name"})
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return df[["code", "name"]].reset_index(drop=True)
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