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Trapped Ion Quantum Computing
Certified algorithms for quantum Hamiltonian learning via energy-entropy inequalities
arXiv
Authors: Adam Artymowicz, Hamza Fawzi, Omar Fawzi, Samuel O. Scalet
Year
2024
Paper ID
37440
Status
Preprint
Abstract Read
~2 min
Abstract Words
154
Citations
N/A
Abstract
We consider the problem of learning the Hamiltonian of a quantum system from estimates of Gibbs-state expectation values. Various methods for achieving this task were proposed recently, both from a practical and theoretical point of view. On the one hand, some practical algorithms have been implemented and used to analyze experimental data but these algorithms often lack correctness guarantees or fail to scale to large systems. On the other hand, theoretical algorithms with provable asymptotic efficiency guarantees have been proposed, but they seem challenging to implement. Recently, a semidefinite family of Hamiltonian learning algorithms was proposed which was numerically demonstrated to scale well into the 100-qubit regime, but provided no provable accuracy guarantees. We build on this work in two ways, by extending it to provide certified a posteriori lower and upper bounds on the parameters to be learned, and by proving a priori convergence in the special case where the Hamiltonian is commuting.
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- This paper contributes to the Trapped-Ion Quantum Computing research area in the Quantum Articles archive.
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- We consider the problem of learning the Hamiltonian of a quantum system from estimates of Gibbs-state expectation values.
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