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Learning quantum Hamiltonians at any temperature in polynomial time

3 October 2023
Ainesh Bakshi
Allen Liu
Ankur Moitra
Ewin Tang
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Abstract

We study the problem of learning a local quantum Hamiltonian HHH given copies of its Gibbs state ρ=e−βH/tr(e−βH)\rho = e^{-\beta H}/\textrm{tr}(e^{-\beta H})ρ=e−βH/tr(e−βH) at a known inverse temperature β>0\beta>0β>0. Anshu, Arunachalam, Kuwahara, and Soleimanifar (arXiv:2004.07266) gave an algorithm to learn a Hamiltonian on nnn qubits to precision ϵ\epsilonϵ with only polynomially many copies of the Gibbs state, but which takes exponential time. Obtaining a computationally efficient algorithm has been a major open problem [Alhambra'22 (arXiv:2204.08349)], [Anshu, Arunachalam'22 (arXiv:2204.08349)], with prior work only resolving this in the limited cases of high temperature [Haah, Kothari, Tang'21 (arXiv:2108.04842)] or commuting terms [Anshu, Arunachalam, Kuwahara, Soleimanifar'21]. We fully resolve this problem, giving a polynomial time algorithm for learning HHH to precision ϵ\epsilonϵ from polynomially many copies of the Gibbs state at any constant β>0\beta > 0β>0. Our main technical contribution is a new flat polynomial approximation to the exponential function, and a translation between multi-variate scalar polynomials and nested commutators. This enables us to formulate Hamiltonian learning as a polynomial system. We then show that solving a low-degree sum-of-squares relaxation of this polynomial system suffices to accurately learn the Hamiltonian.

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