Efficient quantum linear solver algorithm with detailed running costs

05/19/2023
by   David Jennings, et al.
0

As we progress towards physical implementation of quantum algorithms it is vital to determine the explicit resource costs needed to run them. Solving linear systems of equations is a fundamental problem with a wide variety of applications across many fields of science, and there is increasing effort to develop quantum linear solver algorithms. Here we introduce a quantum linear solver algorithm combining ideas from adiabatic quantum computing with filtering techniques based on quantum signal processing. We give a closed formula for the non-asymptotic query complexity Q – the exact number of calls to a block-encoding of the linear system matrix – as a function of condition number κ, error tolerance ϵ and block-encoding scaling factor α. Our protocol reduces the cost of quantum linear solvers over state-of-the-art close to an order of magnitude for early implementations. The asymptotic scaling is O(κlog(κ/ϵ)), slightly looser than the O(κlog(1/ϵ)) scaling of the asymptotically optimal algorithm of Costa et al. However, our algorithm outperforms the latter for all condition numbers up to κ≈ 10^32, at which point Q is comparably large, and both algorithms are anyway practically unfeasible. The present optimized analysis is both problem-agnostic and architecture-agnostic, and hence can be deployed in any quantum algorithm that uses linear solvers as a subroutine.

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