Witt, ArthurArthurWittKörber, ChristopherChristopherKörberKirstaedter, AndreasAndreasKirstaedterLuu, Thomas C.Thomas C.Luu2026-02-142026-02-1420239798350343236https://publica.fraunhofer.de/handle/publica/50681210.1109/QCE57702.2023.000822-s2.0-85180009876Agile networks with fast adaptation and reconfiguration capabilities are required for on-demand provisioning of various network services. We propose a new methodical framework for short-time network optimization based on quantum computing (QC) and integer linear program (ILP) models, which has the potential of realizing a real-time network automation. We define methods to map a nearly real-world ILP model for resource provisioning to a quadratic unconstrained binary optimization (QUBO) problem, which is solvable on quantum annealer (QA). We concentrate on the three-node network to evaluate our approach and its obtainable quality of solution using the state-of-the-art quantum annealer D-Wave Advantage™ 5.2/5.3. By studying the annealing process, we find annealing configuration parameters that obtain feasible solutions close to the reference solution generated by the classical ILP-solver CPLEX. Further, we studied the scaling of the network problem and provide estimations on quantum annealer's hardware requirements to enable a proper QUBO problem embedding of larger networks. We achieved the QUBO embedding of networks with up to 6 nodes on the D-Wave Advantage™. According to our estimates a real-sized network with 12 to 16 nodes require a QA hardware with at least 50000 qubits or more.enfalseinteger linear programnetwork automationoptical networksquantum annealingquantum computingresource allocationTactile Network Resource Allocation Enabled by Quantum Annealing Based on ILP Modelingconference paper