Distributed Simulation of Statevectors and Density Matrices
Tyson Jones, B\'alint Koczor, Simon C. Benjamin

TL;DR
This paper introduces novel distributed algorithms for simulating quantum statevectors and density matrices, enabling exact simulation of larger quantum systems using high-performance computing techniques.
Contribution
It presents new algorithms for distributed full-state quantum simulation, including advanced operations like density matrices and decoherence channels, with improved efficiency and practical implementation.
Findings
Distributed algorithms enable simulation of over 30 qubits.
Implementation available as open-source C++ project.
Algorithms improve simulation of complex quantum gates and noise models.
Abstract
Classical simulation of quantum computers is an irreplaceable step in the design of quantum algorithms. Exponential simulation costs demand the use of high-performance computing techniques, and in particular distribution, whereby the quantum state description is partitioned between a network of cooperating computers - necessary for the exact simulation of more than approximately 30 qubits. Distributed computing is notoriously difficult, requiring bespoke algorithms dissimilar to their serial counterparts with different resource considerations, and which appear to restrict the utilities of a quantum simulator. This manuscript presents a plethora of novel algorithms for distributed full-state simulation of gates, operators, noise channels and other calculations in digital quantum computers. We show how a simple, common but seemingly restrictive distribution model actually permits a rich…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Stochastic Gradient Optimization Techniques
