feat: dump alpha values + daily PnL as parquet (pyarrow)

This commit is contained in:
Yuxuan Yan
2026-06-07 10:48:20 +08:00
parent 7033da131b
commit 769cf25daa
4 changed files with 54 additions and 3 deletions
+45
View File
@@ -122,6 +122,51 @@ def plot_ic(signal_eval: dict, output_path: str = "reports/ic.png") -> str:
return output_path
def dump_signals(signals_df: pd.DataFrame, output_dir: str = "results/") -> str:
"""Save the signal matrix (date x stock) as a parquet file.
Args:
signals_df: Date-indexed DataFrame of per-stock signal values.
output_dir: Directory to write the parquet file into.
Returns:
The path the parquet file was written to.
"""
os.makedirs(output_dir, exist_ok=True)
path = os.path.join(output_dir, "signals.parquet")
signals_df.to_parquet(path)
return path
def dump_daily_pnl(
results: list, output_dir: str = "results/", initial_cash: float = 1_000_000.0
) -> str:
"""Extract the daily portfolio value from a backtest run and save as parquet.
Compounds the per-day TimeReturn analyzer into an equity curve.
Args:
results: The list returned by ``cerebro.run()``.
output_dir: Directory to write the parquet file into.
initial_cash: Starting portfolio value for scaling the curve.
Returns:
The path the parquet file was written to.
"""
os.makedirs(output_dir, exist_ok=True)
series = pd.Series(dtype=float)
if results:
tr = results[0].analyzers.timereturn.get_analysis()
series = pd.Series(tr).sort_index()
equity = (1.0 + series).cumprod() * initial_cash
pnl_df = pd.DataFrame({"date": equity.index, "value": equity.values})
path = os.path.join(output_dir, "daily_pnl.parquet")
pnl_df.to_parquet(path)
return path
def generate_report(
results: list,
signal_eval: dict,
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+9 -3
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@@ -11,7 +11,7 @@ import logging
import pandas as pd
from analysis.report import generate_report
from analysis.report import dump_daily_pnl, dump_signals, generate_report
from backtest.config import BacktestConfig
from backtest.runner import BacktestRunner
from data.downloader import download_batch
@@ -36,7 +36,8 @@ def _forward_returns(data: dict[str, pd.DataFrame], horizon: int) -> pd.DataFram
return pd.DataFrame(forward_returns)
def main(forward_horizon: int = 5, universe: str = "csi500", signal_name: str = "reversal_vol"):
def main(forward_horizon: int = 5, universe: str = "csi500", signal_name: str = "reversal_vol",
dump_dir: str = "results/"):
universes = {"hs300": SYMBOLS, "csi500": CSI500_SYMBOLS}
symbols = universes.get(universe, CSI500_SYMBOLS)[:30]
@@ -97,6 +98,10 @@ def main(forward_horizon: int = 5, universe: str = "csi500", signal_name: str =
results, signal_eval, output_dir="reports/", initial_cash=initial_cash
)
# 7b. Dump signals and daily PnL.
dump_signals(signals_df, dump_dir)
dump_daily_pnl(results, dump_dir, initial_cash=initial_cash)
# 8. Print summary.
print("\nSIGNAL IC")
print("=" * 50)
@@ -122,5 +127,6 @@ if __name__ == "__main__":
parser = argparse.ArgumentParser(description="Chinese equity quant backtest")
parser.add_argument("--universe", default="csi500", choices=["hs300", "csi500"])
parser.add_argument("--signal", default="reversal_vol", choices=["reversal", "reversal_vol"])
parser.add_argument("--dump-dir", default="results/")
args = parser.parse_args()
main(universe=args.universe, signal_name=args.signal)
main(universe=args.universe, signal_name=args.signal, dump_dir=args.dump_dir)