State of practice: evaluating GPU performance of state vector and tensor network methods
Marzio Vallero, Flavio Vella, Paolo Rech

TL;DR
This paper evaluates the performance limits of state vector and tensor network quantum simulators on classical hardware, providing insights into their efficiency and guiding optimal simulation strategy selection for large quantum systems.
Contribution
It systematically benchmarks key quantum simulation techniques across various configurations, correlates performance with circuit metrics, and offers practical guidance for choosing the best simulation method.
Findings
State vector simulation faces exponential memory limits.
Tensor network contraction performance depends on circuit structure.
Optimal simulation strategy can achieve up to tenfold speedup.
Abstract
The frontier of quantum computing (QC) simulation on classical hardware is quickly reaching the hard scalability limits for computational feasibility. Nonetheless, there is still a need to simulate large quantum systems classically, as the Noisy Intermediate Scale Quantum (NISQ) devices are yet to be considered fault tolerant and performant enough in terms of operations per second. Each of the two main exact simulation techniques, state vector and tensor network simulators, boasts specific limitations. The exponential memory requirement of state vector simulation, when compared to the qubit register sizes of currently available quantum computers, quickly saturates the capacity of the top HPC machines currently available. Tensor network contraction approaches, which encode quantum circuits into tensor networks and then contract them over an output bit string to obtain its probability…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Parallel Computing and Optimization Techniques · Advanced Data Storage Technologies
