Futures Systematic
objective
Execute futures systematic work with reproducible research, explicit controls, and deployable outputs.
workflow
- •define hypothesis, trade horizon, and capital-allocation constraints.
- •build leak-safe features and align targets to executable decision times.
- •estimate signal edge, turnover impact, and capacity limits.
- •stress performance across volatility, liquidity, and crowding regimes.
- •promote only when net performance remains robust after full trading costs.
required diagnostics
- •signal monotonicity, decay profile, and hit-rate stability.
- •capacity stress from participation growth and liquidity depletion.
- •regime dependency and edge persistence after parameter shifts.
- •cost-adjusted performance versus naive and benchmark alternatives.
- •roll schedule sensitivity near expiry
- •calendar-spread liquidity and slippage stress
risk controls
- •enforce gross and net exposure ceilings by strategy and instrument.
- •enforce concentration and turnover caps to prevent capacity overload.
- •enforce deactivation triggers for edge decay and drawdown breaches.
outputs
- •run
python scripts/futures_systematic_diagnostics.py input.csv --output diagnostics.jsonand keep the json artifact. - •write an implementation memo using
references/futures-systematic-playbook.mdwith assumptions, tests, limits, and rollout plan.
resources
- •use
scripts/futures_systematic_diagnostics.pyfor deterministic diagnostics. - •use
references/futures-systematic-playbook.mdfor the domain-specific checklist and delivery structure.