EQUAL: Improving the Fidelity of Quantum Annealers by Injecting Controlled Perturbations
Ramin Ayanzadeh, Poulami Das, Swamit S. Tannu, Moinuddin Qureshi

TL;DR
EQUAL enhances quantum annealer solution quality by injecting controlled perturbations into the program, reducing systematic bias and improving outcomes without extra trials, demonstrated on a 2041-qubit system.
Contribution
This paper introduces EQUAL, a novel method that injects controlled perturbations into quantum annealing programs to mitigate hardware bias effects.
Findings
EQUAL improves solution quality by an average of 14% over baseline.
Combining EQUAL with existing error mitigation schemes increases improvement up to 68%.
EQUAL does not require additional trials to achieve performance gains.
Abstract
Quantum computing is an information processing paradigm that uses quantum-mechanical properties to speedup computationally hard problems. Although promising, existing gate-based quantum computers consist of only a few dozen qubits and are not large enough for most applications. On the other hand, existing QAs with few thousand of qubits have the potential to solve some domain-specific optimization problems. QAs are single instruction machines and to execute a program, the problem is cast to a Hamiltonian, embedded on the hardware, and a single quantum machine instruction (QMI) is run. Unfortunately, noise and imperfections in hardware result in sub-optimal solutions on QAs even if the QMI is run for thousands of trials. The limited programmability of QAs mean that the user executes the same QMI for all trials. This subjects all trials to a similar noise profile throughout the…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Parallel Computing and Optimization Techniques
