Expressing and Analyzing Quantum Algorithms with Qualtran

Matthew P. Harrigan, Tanuj Khattar, Charles Yuan, Anurudh Peduri, Noureldin Yosri, Fionn D. Malone, Ryan Babbush, Nicholas C. Rubin
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Abstract

Quantum computing's transition from theory to reality has spurred the need for novel software tools to manage the increasing complexity, sophistication, toil, and fallibility of quantum algorithm development. We present Qualtran, an open-source library for representing and analyzing quantum algorithms. Using appropriate abstractions and data structures, we can simulate and test algorithms, automatically generate information-rich diagrams, and tabulate resource requirements. Qualtran offers a standard library of algorithmic building blocks that are essential for modern cost-minimizing compilations. Its capabilities are showcased through the re-analysis of key algorithms in Hamiltonian simulation, chemistry, and cryptography. Architecture-independent resource counts output by Qualtran can be forwarded to our implementation of cost models to estimate physical costs like wall-clock time and number of physical qubits assuming a surface-code architecture. Qualtran provides a foundation for explicit constructions and reproducible analysis, fostering greater collaboration within the growing quantum algorithm development community.
用 Qualtran 表达和分析量子算法
量子计算从理论到现实的转变促使人们需要新颖的软件工具来管理量子算法开发中日益增长的复杂性、精密性、艰苦性和易错性。我们介绍的 Qualtran 是一个用于表示和分析量子算法的开源库。利用适当的抽象和数据结构,我们可以模拟和测试算法,自动生成信息丰富的图表,并将资源需求制表。Qualtran 提供了现代成本最小化编译所必需的算法构建模块标准库。通过重新分析哈密尔顿仿真、化学和密码学中的关键算法,Qualtran 的能力得到了充分展示。Qualtran 输出的独立于体系结构的资源计数可以转发到我们的成本模型实现中,以估算物理成本,如壁钟时间和假设表面代码体系结构的物理比特数。Qualtran 为明确的构造和可重现的分析提供了基础,促进了日益增长的量子算法开发社区内的更大合作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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