Resource Estimation for Quantum Variational Simulations of the Hubbard Model
Zhenyu Cai

TL;DR
This paper assesses the resource requirements and challenges of implementing a 50-qubit Hubbard model VQE on NISQ devices, highlighting the need for improved gate fidelity, error mitigation, and hardware scalability for near-term feasibility.
Contribution
It provides a detailed resource estimation for Hubbard VQE on NISQ hardware, including gate counts, error thresholds, and parallelization strategies, advancing practical understanding of quantum simulation feasibility.
Findings
Approximately 20,000 two-qubit gates needed
Gate error rates must be around 10^{-4} for meaningful results
Parallelization can reduce optimization time from days to minutes
Abstract
As the advances in quantum hardware bring us into the noisy intermediate-scale quantum (NISQ) era, one possible task we can perform without quantum error correction using NISQ machines is the variational quantum eigensolver (VQE) due to its shallow depth. A specific problem that we can tackle is the strongly interacting Fermi-Hubbard model, which is classically intractable and has practical implications in areas like superconductivity. In this Article, we outline the details about the gate sequence, the measurement scheme and the relevant error mitigation techniques for the implementation of the Hubbard VQE on a NISQ platform. We perform resource estimation for both silicon spin qubits and superconducting qubits for a 50-qubit simulation, which cannot be solved exactly via classical means, and find similar results. The number of two-qubit gates required is on the order of 20000. Hence,…
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