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Structure learning of Hamiltonians from real-time evolution

30 April 2024
Ainesh Bakshi
Allen Liu
Ankur Moitra
Ewin Tang
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Abstract

We study the problem of Hamiltonian structure learning from real-time evolution: given the ability to apply e−iHte^{-\mathrm{i} Ht}e−iHt for an unknown local Hamiltonian H=∑a=1mλaEaH = \sum_{a = 1}^m \lambda_a E_aH=∑a=1m​λa​Ea​ on nnn qubits, the goal is to recover HHH. This problem is already well-understood under the assumption that the interaction terms, EaE_aEa​, are given, and only the interaction strengths, λa\lambda_aλa​, are unknown. But how efficiently can we learn a local Hamiltonian without prior knowledge of its interaction structure?We present a new, general approach to Hamiltonian learning that not only solves the challenging structure learning variant, but also resolves other open questions in the area, all while achieving the gold standard of Heisenberg-limited scaling. In particular, our algorithm recovers the Hamiltonian to ε\varepsilonε error with total evolution time O(log⁡(n)/ε)O(\log (n)/\varepsilon)O(log(n)/ε), and has the following appealing properties: (1) it does not need to know the Hamiltonian terms; (2) it works beyond the short-range setting, extending to any Hamiltonian HHH where the sum of terms interacting with a qubit has bounded norm; (3) it evolves according to HHH in constant time ttt increments, thus achieving constant time resolution. As an application, we can also learn Hamiltonians exhibiting power-law decay up to accuracy ε\varepsilonε with total evolution time beating the standard limit of 1/ε21/\varepsilon^21/ε2.

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