Quantum Computing for CFD
ORAL
Abstract
Quantum computing (QC) is experiencing rapid developments and is widely expected to provide algorithmic scaling performance with polynomial, or even exponential advantages over what is currently possible on classical computers. Work is in progress to assess the performance of numerical methods that will enable the use of QC for computational fluid dynamics (CFD). As a step toward achieving this capability, a demonstration is made of the use of matrix product states (MPS), a subset of tensor network methods borrowed from many-body physics, to provide a low-rank approximation of the discretized Burger's equation. The corresponding MPS structure is solved on IBM's cloud computing platforms. Simulations are conducted on IBM's quantum simulators and noisy intermediate-scale quantum (NISQ) computers. The results are assessed via comparison with those obtained via classical simulations of the full-ranked equation.
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Presenters
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Hirad Alipanah
University of Pittsburgh
Authors
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Hirad Alipanah
University of Pittsburgh
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Robert Pinkston
University of Pittsburgh
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Peyman Givi
University of Pittsburgh
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Nikita Gourianov
University of Pittsburgh
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Juan José Mendoza Arenas
University of Pittsburgh
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Brian J McDermott
Naval Nuclear Laboratory
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Dieter Jaksch
University of Oxford, University of Hamburg