Title | Derandomized shallow shadows: Efficient Pauli learning with bounded-depth circuits |
Publication Type | Journal Article |
Year of Publication | 2024 |
Authors | Van Kirk, K, Kokail, C, Kunjummen, J, Hu, H-Y, Teng, Y, Cain, M, Taylor, J, Yelin, SF, Pichler, H, Lukin, M |
Date Published | 12/25/2024 |
Abstract | Efficiently estimating large numbers of non-commuting observables is an important subroutine of many quantum science tasks. We present the derandomized shallow shadows (DSS) algorithm for efficiently learning a large set of non-commuting observables, using shallow circuits to rotate into measurement bases. Exploiting tensor network techniques to ensure polynomial scaling of classical resources, our algorithm outputs a set of shallow measurement circuits that approximately minimizes the sample complexity of estimating a given set of Pauli strings. We numerically demonstrate systematic improvement, in comparison with state-of-the-art techniques, for energy estimation of quantum chemistry benchmarks and verification of quantum many-body systems, and we observe DSS's performance consistently improves as one allows deeper measurement circuits. These results indicate that in addition to being an efficient, low-depth, stand-alone algorithm, DSS can also benefit many larger quantum algorithms requiring estimation of multiple non-commuting observables. |
URL | https://arxiv.org/abs/2412.18973 |