Learning many-body Hamiltonians with Heisenberg-limited scaling

Learning a many-body Hamiltonian from its dynamics is a fundamental problem in physics. In this work, we propose the first algorithm to achieve the Heisenberg limit for learning an interacting -qubit local Hamiltonian. After a total evolution time of , the proposed algorithm can efficiently estimate any parameter in the -qubit Hamiltonian to -error with high probability. The proposed algorithm is robust against state preparation and measurement error, does not require eigenstates or thermal states, and only uses experiments. In contrast, the best previous algorithms, such as recent works using gradient-based optimization or polynomial interpolation, require a total evolution time of and experiments. Our algorithm uses ideas from quantum simulation to decouple the unknown -qubit Hamiltonian into noninteracting patches, and learns using a quantum-enhanced divide-and-conquer approach. We prove a matching lower bound to establish the asymptotic optimality of our algorithm.
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