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Quantifying fault tolerant simulation of strongly correlated systems using the Fermi-Hubbard model
arXiv
Authors: Anjali A. Agrawal, Joshua Job, Tyler L. Wilson, S. N. Saadatmand, Mark J. Hodson, Josh Y. Mutus, Athena Caesura, Peter D. Johnson, Justin E. Elenewski, Kaitlyn J. Morrell, Alexander F. Kemper
Year
2024
Paper ID
66710
Status
Preprint
Abstract Read
~2 min
Abstract Words
159
Citations
N/A
Abstract
Understanding the physics of strongly correlated materials is one of the grand challenge problems for physics today. A large class of scientifically interesting materials, from high-Tc superconductors to spin liquids, involve medium to strong correlations, and building a holistic understanding of these materials is critical. Doing so is hindered by the competition between the kinetic energy and Coulomb repulsion, which renders both analytic and numerical methods unsatisfactory for describing interacting materials. Fault-tolerant quantum computers have been proposed as a path forward to overcome these difficulties, but this potential capability has not yet been fully assessed. Here, using the multi-orbital Fermi-Hubbard model as a representative model and a source of scalable problem specifications, we estimate the resource costs needed to use fault-tolerant quantum computers for obtaining experimentally relevant quantities such as correlation function estimation. We find that advances in quantum algorithms and hardware will be needed in order to reduce quantum resources and feasibly address utility-scale problem instances.
Why This Paper Matters
- This paper contributes to the Quantum Simulation research area in the Quantum Articles archive.
- It adds a 2024 reference point for readers tracking recent quantum research.
- Understanding the physics of strongly correlated materials is one of the grand challenge problems for physics today.
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