Quantum linear system algorithm with optimal queries to initial state preparation
Guang Hao Low, Yuan Su

TL;DR
This paper introduces an optimized quantum linear system algorithm that minimizes queries to initial state preparation and matrix encoding, achieving near-optimal complexity and robustness even when success probability is unknown.
Contribution
The authors develop a quantum linear system algorithm with optimal query complexity to initial state preparation, even without prior knowledge of success probability, and introduce a new Tunable VTAA for improved amplitude amplification.
Findings
Query complexity to initial state preparation is nearly optimal and independent of prior success probability.
The algorithm outperforms previous methods in applications like differential equations and eigenvalue estimation.
A new Tunable VTAA enhances amplitude amplification efficiency and generality.
Abstract
Quantum algorithms for linear systems produce the solution state by querying two oracles: that block encodes the coefficient matrix and that prepares the initial state. We present a quantum linear system algorithm making queries to , which is optimal in the success probability, and queries to , nearly optimal in all parameters including the condition number and accuracy. Notably, our complexity scaling of initial state preparation holds even when is not known . This contrasts with recent results achieving complexity to both oracles, which, while optimal in , is highly suboptimal in as …
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