Quantum Brain
← Back to papers

Robustly learning the Hamiltonian dynamics of a superconducting quantum processor

D. Hangleiter, I. Roth, J. Fuksa, J. Eisert, P. Roushan·August 18, 2021·DOI: 10.1038/s41467-024-52629-3
MedicinePhysics

AI Breakdown

Get a structured breakdown of this paper — what it's about, the core idea, and key takeaways for the field.

Abstract

Precise means of characterizing analog quantum simulators are key to developing quantum simulators capable of beyond-classical computations. Here, we precisely estimate the free Hamiltonian parameters of a superconducting-qubit analog quantum simulator from measured time-series data on up to 14 qubits. To achieve this, we develop a scalable Hamiltonian learning algorithm that is robust against state-preparation and measurement (SPAM) errors and yields tomographic information about those SPAM errors. The key subroutines are a novel super-resolution technique for frequency extraction from matrix time-series, tensorESPRIT, and constrained manifold optimization. Our learning results verify the Hamiltonian dynamics on a Sycamore processor up to sub-MHz accuracy, and allow us to construct a spatial implementation error map for a grid of 27 qubits. Our results constitute an accurate implementation of a dynamical quantum simulation that is precisely characterized using a new diagnostic toolkit for understanding, calibrating, and improving analog quantum processors. Accurately estimating Hamiltonian parameters of a quantum system is crucial in the development of large-scale analog quantum simulators. Here, the authors develop and experimentally demonstrate an algorithm to robustly learn Hamiltonian parameters of bosonic systems undergoing dynamical evolution.

Related Research

Quantum Intelligence

Ask about quantum research, companies, or market developments.