math-backend / report_builders /html_performance.py
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from table_builder import trans
def build_bench_html(bench, bench_ticker, trading_days, equity, bt_stats, has_curr, curr_bt_stats, curr):
bench_html = ""
if bench is not None and not bench.empty:
bench_base = float(bench.iloc[0])
bench_total = (float(bench.iloc[-1]) / bench_base - 1) if bench_base > 1e-5 else 0.0
n_yrs_bt = len(equity) / trading_days
port_ann_r = (1 + bt_stats["total_ret"]) ** (1 / max(n_yrs_bt, 0.1)) - 1
bench_ann_r = (1 + bench_total) ** (1 / max(n_yrs_bt, 0.1)) - 1
curr_ann_r = None
if has_curr and curr_bt_stats:
curr_ann_r = (1 + curr_bt_stats["total_ret"]) ** (1 / max(n_yrs_bt, 0.1)) - 1
bench_html = (
f'<div class="mc"><div class="ml">{bench_ticker} Ann. Return</div>'
f'<div class="mv">{bench_ann_r:+.2%}</div></div>'
f'<div class="mc" title="Annualised return of this portfolio minus {bench_ticker} over the same period">'
f'<div class="ml">Ann. Alpha vs {bench_ticker} &#9432;</div>'
+ trans(curr_ann_r - bench_ann_r if curr_ann_r is not None else None,
port_ann_r - bench_ann_r, curr=curr, has_curr=has_curr, is_pct=True,
tooltip=f"Alpha = your portfolio's ann. return minus {bench_ticker}'s ann. return. Positive = outperformance.")
+ '</div>'
)
return bench_html
def build_oos_section(oos_stats):
oos_section = ""
if oos_stats:
o_col = "green" if oos_stats['ann_ret'] >= 0 else "red"
oos_section = (
f'<div class="mg">'
f'<div class="mc" title="Annualised return on the unseen test year. This is the honest signal.">'
f'<div class="ml">Walk-Fwd Ann. Return &#9432;</div>'
f'<div class="mv {o_col}">{oos_stats["ann_ret"]:+.2%}</div></div>'
f'<div class="mc" title="Risk-adjusted return on the unseen test year.">'
f'<div class="ml">Walk-Fwd Sharpe &#9432;</div>'
f'<div class="mv blue">{oos_stats["sharpe"]:.2f}</div></div>'
f'<div class="mc" title="Worst drawdown during the unseen test year.">'
f'<div class="ml">Walk-Fwd Max DD &#9432;</div>'
f'<div class="mv red">{oos_stats["max_dd"]:.2%}</div></div>'
f'<div class="mc"><div class="ml">DD Duration</div>'
f'<div class="mv yellow">{oos_stats["dd_days"]} days</div></div>'
f'</div>'
)
return oos_section