Unifying non-Markovian characterisation with an efficient and self-consistent framework
Gregory A. L. White, Petar Jurcevic, Charles D. Hill, Kavan Modi

TL;DR
This paper introduces a universal, parameter-free framework for characterizing non-Markovian noise in quantum devices, enabling better understanding and mitigation of complex temporal and spatial correlations affecting quantum information.
Contribution
It develops a self-consistent, experimentally accessible theoretical framework for all non-Markovian phenomena, with an efficient tensor network reconstruction method and practical demonstrations on IBM Quantum hardware.
Findings
Successful estimation of spacetime correlations on quantum devices
Significant improvements in quantum gate fidelity and noise mitigation
Enhanced control techniques like noise-aware compilation and dynamical decoupling
Abstract
Noise on quantum devices is much more complex than it is commonly given credit. Far from usual models of decoherence, nearly all quantum devices are plagued both by a continuum of environments and temporal instabilities. These induce noisy quantum and classical correlations at the level of the circuit. The relevant spatiotemporal effects are difficult enough to understand, let alone combat. There is presently a lack of either scalable or complete methods to address the phenomena responsible for scrambling and loss of quantum information. Here, we make deep strides to remedy this problem. We establish a theoretical framework that uniformly incorporates and classifies all non-Markovian phenomena. Our framework is universal, assumes no parameters values, and is written entirely in terms of experimentally accessible circuit-level quantities. We formulate an efficient reconstruction using…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Parallel Computing and Optimization Techniques · Computational Physics and Python Applications
