Exponential qubit reduction in quantum optimization
ORAL · Invited
Abstract
In the first part I will discuss our novel encoding scheme that allows variational quantum algorithms to solve problems of nc classical variables using O(log nc) number of qubits. I will describe how, in conjunction with a variational method, approximate solutions for randomly generated QUBO problems of size nc = 3896 binary variables can be solved using only 15-30 qubits. I will also present applications of the above in two problems from industry– the vehicle routing problem with time windows in logistics, and the transaction settlement in finance. These problem instances were generated using industry-relevant data, and are the largest problem instances of their kind to be solved using gate-based quantum devices
On the second part, I will present another idea utilizing the concept of localization landscape from condensed matter physics to solve QUBO problems. I will describe how low energy solutions can be sampled with higher probability and outline how this state can be prepared using quantum linear solvers, reducing the heuristic nature of finding approximate solutions to QUBO problems within the fault-tolerant regime. In addition, I also discuss how such a state can be prepared using NISQ-friendly approaches, and compare the solutions obtained with those from QAOA.
*This research is supported by the National Research Foundation, Singapore and A*STAR (#21709) under its CQT Bridging Grant and Quantum Engineering Programme (NRF2021-QEP2-02-P02) and by EU HORIZON-Project101080085—QCFD. We acknowledge IBM Quantum, IonQ and Amazon Web Services for access to quantum processors in the cloud. We also acknowledge support in kind from AngelQ PTE LTD as well as in the formation of the research ideas presented.
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Publication: Exponential Qubit Reduction in Optimization for Financial Transaction Settlement
Elias X. Huber, Benjamin Tan, Paul R. Griffin, Dimitris G. Angelakis
EPJ Quantum Technol., 11, 52 (2024)
Qubit efficient quantum algorithms for the vehicle routing problem on quantum computers of the NISQ era
Ioannis D. Leonidas, Alexander Dukakis, Benjamin Tan, Dimitris G. Angelakis
Adv. Quantum Technol. 20, 2300309 (2024)
Landscape approximation of low energy solutions to binary optimization problems
Benjamin Tan, Beng Yee Gan, Daniel Leykam, Dimitris G. Angelakis
Phys. Rev. A 109, 012433 (2024)
Qubit efficient algorithms for binary optimization problems
B. Tan, M. A. Lemonde, S. Thanasilp, J. Tangpanitanon, D. G. Angelakis
Quantum 5, 454 (2021)
Presenters
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Dimitrios Angelakis
- Centre for Quantum Technologies NUS
- Technical University of Crete