mthree (2.8.1)¶
mthree is a package for scalable quantum measurement error mitigation that need not explicitly form the assignment matrix, or its inverse, as is thus a matrix-free measurement mitigation (M3) routine.
M3 works in a reduced subspace defined by the noisy input bitstrings that are to be corrected. Because the number of unique bitstrings can be much smaller than the dimensionality of the full multi-qubit Hilbert space, the resulting linear system of equations is nominally much easier to solve.
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It is often the case that this linear equation is trivial to solve using LU decomposition, using only modest computing resources. However, if the number of unique bistrings is large, and / or one has very tight memory constraints, then the problem can be solved in a matrix-free manner using a preconditioned iterative linear solution method, e.g. the Generalized minimal residual (GMRES) or biconjugate gradient stabilized (BiCGSTAB) methods.
M3 is suitable for problems ameanable to using quasi-probabilities such as those formulated in terms of expectation values, or sampling problems where, for example, one is interested in the bit-string with the highest probability. Quasi-probabilities can be projected onto the nearest probability distribution if true probabilities are desired, but this makes error analysis more difficult. M3 works for mid-circuit measurements as well, provided that one is interested in ensemble averages, as opposed to correcting single-shot measurements; it cannot mitigate single-shot measurements used for conditional-gate logic.