Mario Berta, David Sutter, et al.
Commun. Math. Phys.
Quantum error-mitigation techniques can reduce noise on current quantum hardware without the need for fault-tolerant quantum error correction. For instance, the quasiprobability method simulates a noise-free quantum computer using a noisy one, with the caveat of only producing the correct expected values of observables. The cost of this error mitigation technique manifests as a sampling overhead which scales exponentially in the number of corrected gates. In this work, we present an algorithm based on mathematical optimization that aims to choose the quasiprobability decomposition in a noise-aware manner. This directly leads to a significantly lower basis of the sampling overhead compared to existing approaches. A key element of the novel algorithm is a robust quasiprobability method that allows for a tradeoff between an approximation error and the sampling overhead via semidefinite programming.
Mario Berta, David Sutter, et al.
Commun. Math. Phys.
Vinay Joshi, Manuel Le Gallo, et al.
Nature Communications
Panagiotis Kl. Barkoutsos, Fotios Gkritsis, et al.
Chemical Science
Irem Boybat, Cecilia Giovinazzo, et al.
ISCAS 2019