Automated quantum error mitigation based on probabilistic error reduction
Benjamin McDonough, Andrea Mari, Nathan Shammah, Nathaniel T. Stemen,, Misty Wahl, William J. Zeng, Peter P. Orth

TL;DR
This paper introduces an automated software framework that combines noise tomography and probabilistic error reduction to improve the accuracy of quantum expectation values on noisy quantum computers.
Contribution
The authors develop a multi-platform Python package that automates probabilistic error reduction using Pauli noise tomography, facilitating widespread application in near-term quantum algorithms.
Findings
Automated PER reduces sampling overhead compared to PEC.
The framework integrates noise tomography with PER and zero-noise extrapolation.
Software supports multiple platforms and existing quantum toolchains.
Abstract
Current quantum computers suffer from a level of noise that prohibits extracting useful results directly from longer computations. The figure of merit in many near-term quantum algorithms is an expectation value measured at the end of the computation, which experiences a bias in the presence of hardware noise. A systematic way to remove such bias is probabilistic error cancellation (PEC). PEC requires a full characterization of the noise and introduces a sampling overhead that increases exponentially with circuit depth, prohibiting high-depth circuits at realistic noise levels. Probabilistic error reduction (PER) is a related quantum error mitigation method that systematically reduces the sampling overhead at the cost of reintroducing bias. In combination with zero-noise extrapolation, PER can yield expectation values with an accuracy comparable to PEC.Noise reduction through PER is…
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