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Quantum Chemistry
GALIC: hybrid multi-qubitwise pauli grouping for quantum computing measurement
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Authors: Matthew X Burns, Chenxu Liu, Samuel Stein, Bo Peng, Karol Kowalski, Ang Li
Year
2024
Paper ID
4950
Status
Peer-reviewed
Abstract Read
~2 min
Abstract Words
162
Citations
N/A
Abstract
Abstract Observable estimation is a core primitive in NISQ-era algorithms targeting quantum chemistry applications. To reduce the state preparation overhead required for accurate estimation, recent works have proposed various simultaneous measurement schemes to lower estimator variance. Two primary grouping schemes have been proposed: full commutativity (FC) and qubit-wise commutativity (QWC), with no compelling means of interpolation. In this work we propose a generalized framework for designing and analyzing context-aware hybrid FC/QWC commutativity relations. We use our framework to propose a noise-and-connectivity aware grouping strategy: Generalized backend-Aware pauLI Commutation (GALIC). We demonstrate how GALIC interpolates between FC and QWC, maintaining estimator accuracy in Hamiltonian estimation while lowering variance by an average of 20% compared to QWC. We also explore the design space of near-term quantum devices using the GALIC framework, specifically comparing device noise levels and connectivity. We find that error suppression has a more than 10 × larger impact on device-aware estimator variance than qubit connectivity with even larger correlation differences in estimator biases.
Why This Paper Matters
- This paper contributes to the Quantum Chemistry research area in the Quantum Articles archive.
- It adds a 2024 reference point for readers tracking recent quantum research.
- Abstract Observable estimation is a core primitive in NISQ-era algorithms targeting quantum chemistry applications.
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