QUANT-PHITLGFeb 17, 2025

Ansatz-free Hamiltonian learning with Heisenberg-limited scaling

arXiv:2502.11900v225 citationsh-index: 49
Originality Highly original
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This work addresses the challenge of ansatz-free Hamiltonian learning for quantum information processing, potentially enabling new benchmarking and verification protocols in complex quantum systems.

The authors tackled the problem of learning arbitrary sparse Hamiltonians without prior structural assumptions, achieving Heisenberg-limited scaling in estimation error through a quantum algorithm that uses only black-box queries and minimal digital controls. They numerically demonstrated their protocol for learning physical Hamiltonians and validated analog quantum simulations, benchmarking against state-of-the-art approaches.

Learning the unknown interactions that govern a quantum system is crucial for quantum information processing, device benchmarking, and quantum sensing. The problem, known as Hamiltonian learning, is well understood under the assumption that interactions are local, but this assumption may not hold for arbitrary Hamiltonians. Previous methods all require high-order inverse polynomial dependency with precision, unable to surpass the standard quantum limit and reach the gold standard Heisenberg-limited scaling. Whether Heisenberg-limited Hamiltonian learning is possible without prior assumptions about the interaction structures, a challenge we term \emph{ansatz-free Hamiltonian learning}, remains an open question. In this work, we present a quantum algorithm to learn arbitrary sparse Hamiltonians without any structure constraints using only black-box queries of the system's real-time evolution and minimal digital controls to attain Heisenberg-limited scaling in estimation error. Our method is also resilient to state-preparation-and-measurement errors, enhancing its practical feasibility. We numerically demonstrate our ansatz-free protocol for learning physical Hamiltonians and validating analog quantum simulations, benchmarking our performance against the state-of-the-art Heisenberg-limited learning approach. Moreover, we establish a fundamental trade-off between total evolution time and quantum control on learning arbitrary interactions, revealing the intrinsic interplay between controllability and total evolution time complexity for any learning algorithm. These results pave the way for further exploration into Heisenberg-limited Hamiltonian learning in complex quantum systems under minimal assumptions, potentially enabling new benchmarking and verification protocols.

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