Quantum Annealing Systems as Reservoirs I: Design and Performance
ORAL
Abstract
Modern quantum processors offer an unprecedented number of quantum degrees of freedom which can be controlled and read-out. Although NISQ constraints limit the utility of such devices for conventional quantum machine learning applications, they can readily serve as the physical platform of a reservoir computer or extreme learning machine. Here we propose a general algorithm to operate an existing Quantum Annealing System as a Reservoir (QASAR), and discuss its application to static pattern recognition and dynamic signal processing tasks, including signal classification and channel equalization. We find robust performance across a variety of tasks, with state-of-the-art resource efficiency in terms of qubits, circuit runs, and training overhead. Unlike conventional quantum machine learning approaches, the dissipation in these fundamentally open systems is an essential ingredient to successful signal processing. We demonstrate how to readily increase this device's feature size and consequent performance through spatial multiplexing and the measurement of higher moments, at the cost of only a modest increase in circuit runs.
*This research was developed with funding from the Defense Advanced Research Projects Agency contract HR00112190072. The views, opinions, and findings expressed are those of the authors and should not be interpreted as representing the official views or policies of the Department of Defense or the U.S. Government.
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Presenters
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Gerasimos M Angelatos
- Princeton University