Paper ID: 2411.10406 • Published Nov 15, 2024
How to Build a Quantum Supercomputer: Scaling from Hundreds to Millions of Qubits
Masoud Mohseni, Artur Scherer, K. Grace Johnson, Oded Wertheim, Matthew Otten, Navid Anjum Aadit, Yuri Alexeev, Kirk M....
TL;DR
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In the span of four decades, quantum computation has evolved from an
intellectual curiosity to a potentially realizable technology. Today,
small-scale demonstrations have become possible for quantum algorithmic
primitives on hundreds of physical qubits and proof-of-principle
error-correction on a single logical qubit. Nevertheless, despite significant
progress and excitement, the path toward a full-stack scalable technology is
largely unknown. There are significant outstanding quantum hardware,
fabrication, software architecture, and algorithmic challenges that are either
unresolved or overlooked. These issues could seriously undermine the arrival of
utility-scale quantum computers for the foreseeable future. Here, we provide a
comprehensive review of these scaling challenges. We show how the road to
scaling could be paved by adopting existing semiconductor technology to build
much higher-quality qubits, employing system engineering approaches, and
performing distributed quantum computation within heterogeneous
high-performance computing infrastructures. These opportunities for research
and development could unlock certain promising applications, in particular,
efficient quantum simulation/learning of quantum data generated by natural or
engineered quantum systems. To estimate the true cost of such promises, we
provide a detailed resource and sensitivity analysis for classically hard
quantum chemistry calculations on surface-code error-corrected quantum
computers given current, target, and desired hardware specifications based on
superconducting qubits, accounting for a realistic distribution of errors.
Furthermore, we argue that, to tackle industry-scale classical optimization and
machine learning problems in a cost-effective manner, heterogeneous
quantum-probabilistic computing with custom-designed accelerators should be
considered as a complementary path toward scalability.