feat(portfolio): SleeveSpec/Portfolio/backtest con parità verso report_families

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
This commit is contained in:
2026-05-29 15:55:29 +02:00
parent 9ff469cb8e
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"""Portfolio: definizione (sleeve + schema pesi) con faccia di backtest.
La faccia live è in runner.py."""
from __future__ import annotations
from dataclasses import dataclass, field
import pandas as pd
from src.portfolio import weighting as W
from src.portfolio.sleeves import all_sleeve_equities, sleeve_returns_df
from scripts.analysis.combine_portfolio import port_returns, metrics, yearly_returns, SPLIT
@dataclass
class SleeveSpec:
kind: str
name: str
sid: str
asset: str | None = None
a: str | None = None
b: str | None = None
tf: str = "1h"
params: dict = field(default_factory=dict)
cluster: str = ""
@dataclass
class PortfolioResult:
code: str
weights: dict
full: dict
oos: dict
yearly: dict
risk: dict
@dataclass
class Portfolio:
code: str
label: str
sleeves: list[SleeveSpec]
weighting: str = "equal"
weights: dict | None = None
caps: dict | None = None
total_capital: float = 1000.0
leverage: float = 3.0
rebalance: str = "1D"
vol_lookback: int = 90
@property
def sleeve_ids(self) -> list[str]:
return [s.sid for s in self.sleeves]
@property
def clusters(self) -> dict[str, str]:
return {s.sid: (s.cluster or s.sid) for s in self.sleeves}
def weight_vector(self, returns_df: pd.DataFrame | None = None) -> dict[str, float]:
return W.weight_vector(
self.weighting, self.sleeve_ids, returns_df,
weights=self.weights, caps=self.caps,
clusters=self.clusters, lookback=self.vol_lookback,
)
def backtest(self) -> PortfolioResult:
eq = all_sleeve_equities()
members = {sid: eq[sid] for sid in self.sleeve_ids}
dr = sleeve_returns_df(self.sleeve_ids)
w = self.weight_vector(dr)
port_dr = port_returns(members, w)
full, oos = metrics(port_dr), metrics(port_dr, lo=SPLIT)
import numpy as np
we = np.ones(len(self.sleeve_ids)) / len(self.sleeve_ids)
cov = dr.cov().values
pv = float(we @ cov @ we)
rc = we * (cov @ we)
risk = {sid: float(rc[k] / pv * 100) if pv > 0 else 0.0
for k, sid in enumerate(self.sleeve_ids)}
return PortfolioResult(self.code, w, full, oos, yearly_returns(port_dr), risk)
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import pytest
from src.portfolio.base import Portfolio, SleeveSpec
from scripts.analysis.report_families import build_everything
from scripts.analysis.combine_portfolio import port_returns, metrics, SPLIT
def _master9_specs():
fade = [SleeveSpec(kind="single", name=f"{c}", sid=f"{c}_{a}", asset=a, cluster=f"{a}-rev")
for a in ("BTC", "ETH") for c in ("MR01", "MR02", "MR07")]
honest = [SleeveSpec(kind="single", name="DIP01", sid="DIP01_BTC", asset="BTC", cluster="BTC-rev"),
SleeveSpec(kind="single", name="TR01", sid="TR01_basket", cluster="trend"),
SleeveSpec(kind="single", name="ROT02", sid="ROT02_rot", cluster="rotation")]
return fade + honest
def test_master9_backtest_matches_report():
p = Portfolio(code="PORT03", label="Master", sleeves=_master9_specs(), weighting="equal")
res = p.backtest()
S, _, _, _ = build_everything()
dr_ref = port_returns(S)
ref_full, ref_oos = metrics(dr_ref), metrics(dr_ref, lo=SPLIT)
assert res.full["sharpe"] == pytest.approx(ref_full["sharpe"], abs=1e-6)
assert res.full["dd"] == pytest.approx(ref_full["dd"], abs=1e-6)
assert res.oos["sharpe"] == pytest.approx(ref_oos["sharpe"], abs=1e-6)