Gibbs state sampling via cluster expansions
ORAL
Abstract
Gibbs states (i.e., thermal states) can be used for several applications such as quantum simulation, quantum machine learning, quantum optimization, and the study of open quantum systems. Moreover, semi-definite programming, combinatorial optimization problems, and training quantum Boltzmann machines can all be addressed by sampling from well-prepared Gibbs states. With that, however, comes the fact that preparing and sampling from Gibbs states on a quantum computer are notoriously difficult tasks. Such tasks can require large overhead in resources and/or calibration even in the simplest of cases, as well as the fact that the implementation might be limited to only a specific set of systems. We propose a method based on sampling from a quasi-distribution consisting of tensor products of mixed states on local clusters, i.e., expanding the full Gibbs state into a sum of products of local "Gibbs-cumulant" type states easier to implement and sample from on quantum hardware. We present results we obtained for 1D spin systems, measuring the dynamical correlation functions to calculate the dynamical structure factor and the specific heat for differently sized systems respectively. We further motivate the enhancements that can be made to simulate larger systems.
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Publication: Eassa, N. M., Moustafa, M. M., Banerjee, A., & Cohn, J. (2024). Gibbs state sampling via cluster expansions. npj Quantum Information, 10(1), 97.
Presenters
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Norhan Mahmoud Eassa
Purdue University
Authors
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Norhan Mahmoud Eassa
Purdue University
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Mahmoud M Moustafa
Purdue University
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jeffrey cohn
IBM Thomas J. Watson Research Center
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Arnab Banerjee
Department of Physics and Astronomy, Purdue University, Purdue University