ArcaQ use cases

Where confidential quantum optimization earns its place.

ArcaQ is built for combinatorial optimization where the input data is itself the asset. Each use case below keeps that data inside attested compute end to end — the quantum vendor sees mathematics, never what it means.

← ArcaQ overview

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.

ArcaQ Use Cases — Confidential Quantum Optimization