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LEAP: Scaling Numerical Optimization Based Synthesis Using an Incremental Approach

Quantum Physics 2022-08-22 v2 Emerging Technologies

Abstract

While showing great promise, circuit synthesis techniques that combine numerical optimization with search over circuit structures face scalability challenges due to a large number of parameters, exponential search spaces, and complex objective functions. The LEAP algorithm improves scaling across these dimensions using iterative circuit synthesis, incremental re-optimization, dimensionality reduction, and improved numerical optimization. LEAP draws on the design of the optimal synthesis algorithm QSearch by extending it with an incremental approach to determine constant prefix solutions for a circuit. By narrowing the search space, LEAP improves scalability from four to six qubit circuits. LEAP was evaluated with known quantum circuits such as QFT and physical simulation circuits like the VQE, TFIM, and QITE. LEAP can compile four qubit unitaries up to 59×59\times faster than QSearch and five and six qubit unitaries with up to 1.2×1.2\times fewer CNOTs compared to the QFAST package. LEAP can reduce the CNOT count by up to 36×36\times, or 7×7\times on average, compared to the CQC Tket compiler. Despite its heuristics, LEAP has generated optimal circuits for many test cases with a priori known solutions. The techniques introduced by LEAP are applicable to other numerical-optimization-based synthesis approaches.

Keywords

Cite

@article{arxiv.2106.11246,
  title  = {LEAP: Scaling Numerical Optimization Based Synthesis Using an Incremental Approach},
  author = {Ethan Smith and Marc G. Davis and Jeffrey Larson and Ed Younis and Costin Iancu and Wim Lavrijsen},
  journal= {arXiv preprint arXiv:2106.11246},
  year   = {2022}
}

Comments

21 pages

R2 v1 2026-06-24T03:26:06.333Z