All use cases
Finance

Quant fund strategy optimization

Rebalancing across hundreds of positions where the firm's strategy parameters — its alpha — never leave the enclave.

Who
A quantitative or systematic fund running daily or intra-day portfolio rebalancing across hundreds of positions under complex, regime-dependent constraints.
The problem
Rebalancing must respect factor exposures, sector limits, leverage caps, correlation budgets, drawdown limits, and execution-cost models. The firm's strategy parameters — factor weights, constraints, the rebalancing logic itself — are the most valuable intellectual property it holds; they define the fund's alpha. Any cloud-based optimizer requires sending those parameters in cleartext, a leak surface quant funds find unacceptable but mostly tolerate because no alternative exists.
What ArcaQ does
The PM submits the rebalance through the Reserve-tier interface using a standard or firm-specific template. The Council-augmented in-enclave model translates strategy parameters and current portfolio state into a QUBO; the circuit runs on hardware via Braket; results return as specific trades with size and timing. Strategy parameters and position data never leave attested compute.
Expected result (published benchmarks)
Published QAOA benchmarks for constrained portfolio optimization show 2–8% improvement in risk-adjusted return on problems with cardinality, lot-size, and minimum-trade constraints — the structure quant rebalancing exhibits.
Why confidentiality matters
The strategy parameters are the alpha. ArcaQ keeps them inside attested compute end to end; the quantum vendor sees only the abstracted mathematics, never the logic that produced it.
Tier fit
Reserve (always-on Council translation, QPU slot reservation) for recurring rebalancing.

The performance ranges below are drawn from published academic and industry benchmarks for the relevant problem class — QAOA portfolio-optimization studies, VQE chemistry benchmarks, and quantum-annealing logistics case studies. They are not ArcaQ measurements. Results vary substantially with problem size, constraint density, and the specific algorithm and hardware used. ArcaQ-specific results will be published after hardware validation.

Quant fund strategy optimization — ArcaQ